diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/_yaml/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/_yaml/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..7baa8c4b68127d5cdf0be9a799429e61347c2694 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/_yaml/__init__.py @@ -0,0 +1,33 @@ +# This is a stub package designed to roughly emulate the _yaml +# extension module, which previously existed as a standalone module +# and has been moved into the `yaml` package namespace. +# It does not perfectly mimic its old counterpart, but should get +# close enough for anyone who's relying on it even when they shouldn't. +import yaml + +# in some circumstances, the yaml module we imoprted may be from a different version, so we need +# to tread carefully when poking at it here (it may not have the attributes we expect) +if not getattr(yaml, '__with_libyaml__', False): + from sys import version_info + + exc = ModuleNotFoundError if version_info >= (3, 6) else ImportError + raise exc("No module named '_yaml'") +else: + from yaml._yaml import * + import warnings + warnings.warn( + 'The _yaml extension module is now located at yaml._yaml' + ' and its location is subject to change. To use the' + ' LibYAML-based parser and emitter, import from `yaml`:' + ' `from yaml import CLoader as Loader, CDumper as Dumper`.', + DeprecationWarning + ) + del warnings + # Don't `del yaml` here because yaml is actually an existing + # namespace member of _yaml. + +__name__ = '_yaml' +# If the module is top-level (i.e. not a part of any specific package) +# then the attribute should be set to ''. +# https://docs.python.org/3.8/library/types.html +__package__ = '' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/CObjects.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/CObjects.cpp new file mode 100644 index 0000000000000000000000000000000000000000..c135995b690d85696fafe25401e8eed7635100ea --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/CObjects.cpp @@ -0,0 +1,157 @@ +#ifndef COBJECTS_CPP +#define COBJECTS_CPP +/***************************************************************************** + * C interface + * + * These are exported using the CObject API + */ +#ifdef __clang__ +# pragma clang diagnostic push +# pragma clang diagnostic ignored "-Wunused-function" +#endif + +#include "greenlet_exceptions.hpp" + +#include "greenlet_internal.hpp" +#include "greenlet_refs.hpp" + + +#include "TThreadStateDestroy.cpp" + +#include "PyGreenlet.hpp" + +using greenlet::PyErrOccurred; +using greenlet::Require; + + + +extern "C" { +static PyGreenlet* +PyGreenlet_GetCurrent(void) +{ + return GET_THREAD_STATE().state().get_current().relinquish_ownership(); +} + +static int +PyGreenlet_SetParent(PyGreenlet* g, PyGreenlet* nparent) +{ + return green_setparent((PyGreenlet*)g, (PyObject*)nparent, NULL); +} + +static PyGreenlet* +PyGreenlet_New(PyObject* run, PyGreenlet* parent) +{ + using greenlet::refs::NewDictReference; + // In the past, we didn't use green_new and green_init, but that + // was a maintenance issue because we duplicated code. This way is + // much safer, but slightly slower. If that's a problem, we could + // refactor green_init to separate argument parsing from initialization. + OwnedGreenlet g = OwnedGreenlet::consuming(green_new(&PyGreenlet_Type, nullptr, nullptr)); + if (!g) { + return NULL; + } + + try { + NewDictReference kwargs; + if (run) { + kwargs.SetItem(mod_globs->str_run, run); + } + if (parent) { + kwargs.SetItem("parent", (PyObject*)parent); + } + + Require(green_init(g.borrow(), mod_globs->empty_tuple, kwargs.borrow())); + } + catch (const PyErrOccurred&) { + return nullptr; + } + + return g.relinquish_ownership(); +} + +static PyObject* +PyGreenlet_Switch(PyGreenlet* self, PyObject* args, PyObject* kwargs) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return NULL; + } + + if (args == NULL) { + args = mod_globs->empty_tuple; + } + + if (kwargs == NULL || !PyDict_Check(kwargs)) { + kwargs = NULL; + } + + return green_switch(self, args, kwargs); +} + +static PyObject* +PyGreenlet_Throw(PyGreenlet* self, PyObject* typ, PyObject* val, PyObject* tb) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return nullptr; + } + try { + PyErrPieces err_pieces(typ, val, tb); + return internal_green_throw(self, err_pieces).relinquish_ownership(); + } + catch (const PyErrOccurred&) { + return nullptr; + } +} + + + +static int +Extern_PyGreenlet_MAIN(PyGreenlet* self) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return -1; + } + return self->pimpl->main(); +} + +static int +Extern_PyGreenlet_ACTIVE(PyGreenlet* self) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return -1; + } + return self->pimpl->active(); +} + +static int +Extern_PyGreenlet_STARTED(PyGreenlet* self) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return -1; + } + return self->pimpl->started(); +} + +static PyGreenlet* +Extern_PyGreenlet_GET_PARENT(PyGreenlet* self) +{ + if (!PyGreenlet_Check(self)) { + PyErr_BadArgument(); + return NULL; + } + // This can return NULL even if there is no exception + return self->pimpl->parent().acquire(); +} +} // extern C. + +/** End C API ****************************************************************/ +#ifdef __clang__ +# pragma clang diagnostic pop +#endif + + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..29c0bba0b1045da0d4421e3f1e6e373d432348c4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.cpp @@ -0,0 +1,738 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +#ifndef PYGREENLET_CPP +#define PYGREENLET_CPP +/***************** +The Python slot functions for TGreenlet. + */ + + +#define PY_SSIZE_T_CLEAN +#include +#include "structmember.h" // PyMemberDef + +#include "greenlet_internal.hpp" +#include "TThreadStateDestroy.cpp" +#include "TGreenlet.hpp" +// #include "TUserGreenlet.cpp" +// #include "TMainGreenlet.cpp" +// #include "TBrokenGreenlet.cpp" + + +#include "greenlet_refs.hpp" +#include "greenlet_slp_switch.hpp" + +#include "greenlet_thread_support.hpp" +#include "TGreenlet.hpp" + +#include "TGreenletGlobals.cpp" +#include "TThreadStateDestroy.cpp" +#include "PyGreenlet.hpp" +// #include "TGreenlet.cpp" + +// #include "TExceptionState.cpp" +// #include "TPythonState.cpp" +// #include "TStackState.cpp" + +using greenlet::LockGuard; +using greenlet::LockInitError; +using greenlet::PyErrOccurred; +using greenlet::Require; + +using greenlet::g_handle_exit; +using greenlet::single_result; + +using greenlet::Greenlet; +using greenlet::UserGreenlet; +using greenlet::MainGreenlet; +using greenlet::BrokenGreenlet; +using greenlet::ThreadState; +using greenlet::PythonState; + + + +static PyGreenlet* +green_new(PyTypeObject* type, PyObject* UNUSED(args), PyObject* UNUSED(kwds)) +{ + PyGreenlet* o = + (PyGreenlet*)PyBaseObject_Type.tp_new(type, mod_globs->empty_tuple, mod_globs->empty_dict); + if (o) { + new UserGreenlet(o, GET_THREAD_STATE().state().borrow_current()); + assert(Py_REFCNT(o) == 1); + } + return o; +} + + +// green_init is used in the tp_init slot. So it's important that +// it can be called directly from CPython. Thus, we don't use +// BorrowedGreenlet and BorrowedObject --- although in theory +// these should be binary layout compatible, that may not be +// guaranteed to be the case (32-bit linux ppc possibly). +static int +green_init(PyGreenlet* self, PyObject* args, PyObject* kwargs) +{ + PyArgParseParam run; + PyArgParseParam nparent; + static const char* kwlist[] = { + "run", + "parent", + NULL + }; + + // recall: The O specifier does NOT increase the reference count. + if (!PyArg_ParseTupleAndKeywords( + args, kwargs, "|OO:green", (char**)kwlist, &run, &nparent)) { + return -1; + } + + if (run) { + if (green_setrun(self, run, NULL)) { + return -1; + } + } + if (nparent && !nparent.is_None()) { + return green_setparent(self, nparent, NULL); + } + return 0; +} + + + +static int +green_traverse(PyGreenlet* self, visitproc visit, void* arg) +{ + // We must only visit referenced objects, i.e. only objects + // Py_INCREF'ed by this greenlet (directly or indirectly): + // + // - stack_prev is not visited: holds previous stack pointer, but it's not + // referenced + // - frames are not visited as we don't strongly reference them; + // alive greenlets are not garbage collected + // anyway. This can be a problem, however, if this greenlet is + // never allowed to finish, and is referenced from the frame: we + // have an uncollectible cycle in that case. Note that the + // frame object itself is also frequently not even tracked by the GC + // starting with Python 3.7 (frames are allocated by the + // interpreter untracked, and only become tracked when their + // evaluation is finished if they have a refcount > 1). All of + // this is to say that we should probably strongly reference + // the frame object. Doing so, while always allowing GC on a + // greenlet, solves several leaks for us. + + Py_VISIT(self->dict); + if (!self->pimpl) { + // Hmm. I have seen this at interpreter shutdown time, + // I think. That's very odd because this doesn't go away until + // we're ``green_dealloc()``, at which point we shouldn't be + // traversed anymore. + return 0; + } + + return self->pimpl->tp_traverse(visit, arg); +} + +static int +green_is_gc(PyObject* _self) +{ + BorrowedGreenlet self(_self); + int result = 0; + /* Main greenlet can be garbage collected since it can only + become unreachable if the underlying thread exited. + Active greenlets --- including those that are suspended --- + cannot be garbage collected, however. + */ + if (self->main() || !self->active()) { + result = 1; + } + // The main greenlet pointer will eventually go away after the thread dies. + if (self->was_running_in_dead_thread()) { + // Our thread is dead! We can never run again. Might as well + // GC us. Note that if a tuple containing only us and other + // immutable objects had been scanned before this, when we + // would have returned 0, the tuple will take itself out of GC + // tracking and never be investigated again. So that could + // result in both us and the tuple leaking due to an + // unreachable/uncollectible reference. The same goes for + // dictionaries. + // + // It's not a great idea to be changing our GC state on the + // fly. + result = 1; + } + return result; +} + + +static int +green_clear(PyGreenlet* self) +{ + /* Greenlet is only cleared if it is about to be collected. + Since active greenlets are not garbage collectable, we can + be sure that, even if they are deallocated during clear, + nothing they reference is in unreachable or finalizers, + so even if it switches we are relatively safe. */ + // XXX: Are we responsible for clearing weakrefs here? + Py_CLEAR(self->dict); + return self->pimpl->tp_clear(); +} + +/** + * Returns 0 on failure (the object was resurrected) or 1 on success. + **/ +static int +_green_dealloc_kill_started_non_main_greenlet(BorrowedGreenlet self) +{ + /* Hacks hacks hacks copied from instance_dealloc() */ + /* Temporarily resurrect the greenlet. */ + assert(self.REFCNT() == 0); + Py_SET_REFCNT(self.borrow(), 1); + /* Save the current exception, if any. */ + PyErrPieces saved_err; + try { + // BY THE TIME WE GET HERE, the state may actually be going + // away + // if we're shutting down the interpreter and freeing thread + // entries, + // this could result in freeing greenlets that were leaked. So + // we can't try to read the state. + self->deallocing_greenlet_in_thread( + self->thread_state() + ? static_cast(GET_THREAD_STATE()) + : nullptr); + } + catch (const PyErrOccurred&) { + PyErr_WriteUnraisable(self.borrow_o()); + /* XXX what else should we do? */ + } + /* Check for no resurrection must be done while we keep + * our internal reference, otherwise PyFile_WriteObject + * causes recursion if using Py_INCREF/Py_DECREF + */ + if (self.REFCNT() == 1 && self->active()) { + /* Not resurrected, but still not dead! + XXX what else should we do? we complain. */ + PyObject* f = PySys_GetObject("stderr"); + Py_INCREF(self.borrow_o()); /* leak! */ + if (f != NULL) { + PyFile_WriteString("GreenletExit did not kill ", f); + PyFile_WriteObject(self.borrow_o(), f, 0); + PyFile_WriteString("\n", f); + } + } + /* Restore the saved exception. */ + saved_err.PyErrRestore(); + /* Undo the temporary resurrection; can't use DECREF here, + * it would cause a recursive call. + */ + assert(self.REFCNT() > 0); + + Py_ssize_t refcnt = self.REFCNT() - 1; + Py_SET_REFCNT(self.borrow_o(), refcnt); + if (refcnt != 0) { + /* Resurrected! */ + _Py_NewReference(self.borrow_o()); + Py_SET_REFCNT(self.borrow_o(), refcnt); + /* Better to use tp_finalizer slot (PEP 442) + * and call ``PyObject_CallFinalizerFromDealloc``, + * but that's only supported in Python 3.4+; see + * Modules/_io/iobase.c for an example. + * + * The following approach is copied from iobase.c in CPython 2.7. + * (along with much of this function in general). Here's their + * comment: + * + * When called from a heap type's dealloc, the type will be + * decref'ed on return (see e.g. subtype_dealloc in typeobject.c). */ + if (PyType_HasFeature(self.TYPE(), Py_TPFLAGS_HEAPTYPE)) { + Py_INCREF(self.TYPE()); + } + + PyObject_GC_Track((PyObject*)self); + + _Py_DEC_REFTOTAL; +#ifdef COUNT_ALLOCS + --Py_TYPE(self)->tp_frees; + --Py_TYPE(self)->tp_allocs; +#endif /* COUNT_ALLOCS */ + return 0; + } + return 1; +} + + +static void +green_dealloc(PyGreenlet* self) +{ + PyObject_GC_UnTrack(self); + BorrowedGreenlet me(self); + if (me->active() + && me->started() + && !me->main()) { + if (!_green_dealloc_kill_started_non_main_greenlet(me)) { + return; + } + } + + if (self->weakreflist != NULL) { + PyObject_ClearWeakRefs((PyObject*)self); + } + Py_CLEAR(self->dict); + + if (self->pimpl) { + // In case deleting this, which frees some memory, + // somehow winds up calling back into us. That's usually a + //bug in our code. + Greenlet* p = self->pimpl; + self->pimpl = nullptr; + delete p; + } + // and finally we're done. self is now invalid. + Py_TYPE(self)->tp_free((PyObject*)self); +} + + + +static OwnedObject +internal_green_throw(BorrowedGreenlet self, PyErrPieces& err_pieces) +{ + PyObject* result = nullptr; + err_pieces.PyErrRestore(); + assert(PyErr_Occurred()); + if (self->started() && !self->active()) { + /* dead greenlet: turn GreenletExit into a regular return */ + result = g_handle_exit(OwnedObject()).relinquish_ownership(); + } + self->args() <<= result; + + return single_result(self->g_switch()); +} + + + +PyDoc_STRVAR( + green_switch_doc, + "switch(*args, **kwargs)\n" + "\n" + "Switch execution to this greenlet.\n" + "\n" + "If this greenlet has never been run, then this greenlet\n" + "will be switched to using the body of ``self.run(*args, **kwargs)``.\n" + "\n" + "If the greenlet is active (has been run, but was switch()'ed\n" + "out before leaving its run function), then this greenlet will\n" + "be resumed and the return value to its switch call will be\n" + "None if no arguments are given, the given argument if one\n" + "argument is given, or the args tuple and keyword args dict if\n" + "multiple arguments are given.\n" + "\n" + "If the greenlet is dead, or is the current greenlet then this\n" + "function will simply return the arguments using the same rules as\n" + "above.\n"); + +static PyObject* +green_switch(PyGreenlet* self, PyObject* args, PyObject* kwargs) +{ + using greenlet::SwitchingArgs; + SwitchingArgs switch_args(OwnedObject::owning(args), OwnedObject::owning(kwargs)); + self->pimpl->may_switch_away(); + self->pimpl->args() <<= switch_args; + + // If we're switching out of a greenlet, and that switch is the + // last thing the greenlet does, the greenlet ought to be able to + // go ahead and die at that point. Currently, someone else must + // manually switch back to the greenlet so that we "fall off the + // end" and can perform cleanup. You'd think we'd be able to + // figure out that this is happening using the frame's ``f_lasti`` + // member, which is supposed to be an index into + // ``frame->f_code->co_code``, the bytecode string. However, in + // recent interpreters, ``f_lasti`` tends not to be updated thanks + // to things like the PREDICT() macros in ceval.c. So it doesn't + // really work to do that in many cases. For example, the Python + // code: + // def run(): + // greenlet.getcurrent().parent.switch() + // produces bytecode of len 16, with the actual call to switch() + // being at index 10 (in Python 3.10). However, the reported + // ``f_lasti`` we actually see is...5! (Which happens to be the + // second byte of the CALL_METHOD op for ``getcurrent()``). + + try { + //OwnedObject result = single_result(self->pimpl->g_switch()); + OwnedObject result(single_result(self->pimpl->g_switch())); +#ifndef NDEBUG + // Note that the current greenlet isn't necessarily self. If self + // finished, we went to one of its parents. + assert(!self->pimpl->args()); + + const BorrowedGreenlet& current = GET_THREAD_STATE().state().borrow_current(); + // It's possible it's never been switched to. + assert(!current->args()); +#endif + PyObject* p = result.relinquish_ownership(); + + if (!p && !PyErr_Occurred()) { + // This shouldn't be happening anymore, so the asserts + // are there for debug builds. Non-debug builds + // crash "gracefully" in this case, although there is an + // argument to be made for killing the process in all + // cases --- for this to be the case, our switches + // probably nested in an incorrect way, so the state is + // suspicious. Nothing should be corrupt though, just + // confused at the Python level. Letting this propagate is + // probably good enough. + assert(p || PyErr_Occurred()); + throw PyErrOccurred( + mod_globs->PyExc_GreenletError, + "Greenlet.switch() returned NULL without an exception set." + ); + } + return p; + } + catch(const PyErrOccurred&) { + return nullptr; + } +} + +PyDoc_STRVAR( + green_throw_doc, + "Switches execution to this greenlet, but immediately raises the\n" + "given exception in this greenlet. If no argument is provided, the " + "exception\n" + "defaults to `greenlet.GreenletExit`. The normal exception\n" + "propagation rules apply, as described for `switch`. Note that calling " + "this\n" + "method is almost equivalent to the following::\n" + "\n" + " def raiser():\n" + " raise typ, val, tb\n" + " g_raiser = greenlet(raiser, parent=g)\n" + " g_raiser.switch()\n" + "\n" + "except that this trick does not work for the\n" + "`greenlet.GreenletExit` exception, which would not propagate\n" + "from ``g_raiser`` to ``g``.\n"); + +static PyObject* +green_throw(PyGreenlet* self, PyObject* args) +{ + PyArgParseParam typ(mod_globs->PyExc_GreenletExit); + PyArgParseParam val; + PyArgParseParam tb; + + if (!PyArg_ParseTuple(args, "|OOO:throw", &typ, &val, &tb)) { + return nullptr; + } + + assert(typ.borrow() || val.borrow()); + + self->pimpl->may_switch_away(); + try { + // Both normalizing the error and the actual throw_greenlet + // could throw PyErrOccurred. + PyErrPieces err_pieces(typ.borrow(), val.borrow(), tb.borrow()); + + return internal_green_throw(self, err_pieces).relinquish_ownership(); + } + catch (const PyErrOccurred&) { + return nullptr; + } +} + +static int +green_bool(PyGreenlet* self) +{ + return self->pimpl->active(); +} + +/** + * CAUTION: Allocates memory, may run GC and arbitrary Python code. + */ +static PyObject* +green_getdict(PyGreenlet* self, void* UNUSED(context)) +{ + if (self->dict == NULL) { + self->dict = PyDict_New(); + if (self->dict == NULL) { + return NULL; + } + } + Py_INCREF(self->dict); + return self->dict; +} + +static int +green_setdict(PyGreenlet* self, PyObject* val, void* UNUSED(context)) +{ + PyObject* tmp; + + if (val == NULL) { + PyErr_SetString(PyExc_TypeError, "__dict__ may not be deleted"); + return -1; + } + if (!PyDict_Check(val)) { + PyErr_SetString(PyExc_TypeError, "__dict__ must be a dictionary"); + return -1; + } + tmp = self->dict; + Py_INCREF(val); + self->dict = val; + Py_XDECREF(tmp); + return 0; +} + +static bool +_green_not_dead(BorrowedGreenlet self) +{ + // XXX: Where else should we do this? + // Probably on entry to most Python-facing functions? + if (self->was_running_in_dead_thread()) { + self->deactivate_and_free(); + return false; + } + return self->active() || !self->started(); +} + + +static PyObject* +green_getdead(PyGreenlet* self, void* UNUSED(context)) +{ + if (_green_not_dead(self)) { + Py_RETURN_FALSE; + } + else { + Py_RETURN_TRUE; + } +} + +static PyObject* +green_get_stack_saved(PyGreenlet* self, void* UNUSED(context)) +{ + return PyLong_FromSsize_t(self->pimpl->stack_saved()); +} + + +static PyObject* +green_getrun(PyGreenlet* self, void* UNUSED(context)) +{ + try { + OwnedObject result(BorrowedGreenlet(self)->run()); + return result.relinquish_ownership(); + } + catch(const PyErrOccurred&) { + return nullptr; + } +} + + +static int +green_setrun(PyGreenlet* self, PyObject* nrun, void* UNUSED(context)) +{ + try { + BorrowedGreenlet(self)->run(nrun); + return 0; + } + catch(const PyErrOccurred&) { + return -1; + } +} + +static PyObject* +green_getparent(PyGreenlet* self, void* UNUSED(context)) +{ + return BorrowedGreenlet(self)->parent().acquire_or_None(); +} + + +static int +green_setparent(PyGreenlet* self, PyObject* nparent, void* UNUSED(context)) +{ + try { + BorrowedGreenlet(self)->parent(nparent); + } + catch(const PyErrOccurred&) { + return -1; + } + return 0; +} + + +static PyObject* +green_getcontext(const PyGreenlet* self, void* UNUSED(context)) +{ + const Greenlet *const g = self->pimpl; + try { + OwnedObject result(g->context()); + return result.relinquish_ownership(); + } + catch(const PyErrOccurred&) { + return nullptr; + } +} + +static int +green_setcontext(PyGreenlet* self, PyObject* nctx, void* UNUSED(context)) +{ + try { + BorrowedGreenlet(self)->context(nctx); + return 0; + } + catch(const PyErrOccurred&) { + return -1; + } +} + + +static PyObject* +green_getframe(PyGreenlet* self, void* UNUSED(context)) +{ + const PythonState::OwnedFrame& top_frame = BorrowedGreenlet(self)->top_frame(); + return top_frame.acquire_or_None(); +} + + +static PyObject* +green_getstate(PyGreenlet* self) +{ + PyErr_Format(PyExc_TypeError, + "cannot serialize '%s' object", + Py_TYPE(self)->tp_name); + return nullptr; +} + +static PyObject* +green_repr(PyGreenlet* _self) +{ + BorrowedGreenlet self(_self); + /* + Return a string like + + + The handling of greenlets across threads is not super good. + We mostly use the internal definitions of these terms, but they + generally should make sense to users as well. + */ + PyObject* result; + int never_started = !self->started() && !self->active(); + + const char* const tp_name = Py_TYPE(self)->tp_name; + + if (_green_not_dead(self)) { + /* XXX: The otid= is almost useless because you can't correlate it to + any thread identifier exposed to Python. We could use + PyThreadState_GET()->thread_id, but we'd need to save that in the + greenlet, or save the whole PyThreadState object itself. + + As it stands, its only useful for identifying greenlets from the same thread. + */ + const char* state_in_thread; + if (self->was_running_in_dead_thread()) { + // The thread it was running in is dead! + // This can happen, especially at interpreter shut down. + // It complicates debugging output because it may be + // impossible to access the current thread state at that + // time. Thus, don't access the current thread state. + state_in_thread = " (thread exited)"; + } + else { + state_in_thread = GET_THREAD_STATE().state().is_current(self) + ? " current" + : (self->started() ? " suspended" : ""); + } + result = PyUnicode_FromFormat( + "<%s object at %p (otid=%p)%s%s%s%s>", + tp_name, + self.borrow_o(), + self->thread_state(), + state_in_thread, + self->active() ? " active" : "", + never_started ? " pending" : " started", + self->main() ? " main" : "" + ); + } + else { + result = PyUnicode_FromFormat( + "<%s object at %p (otid=%p) %sdead>", + tp_name, + self.borrow_o(), + self->thread_state(), + self->was_running_in_dead_thread() + ? "(thread exited) " + : "" + ); + } + + return result; +} + + +static PyMethodDef green_methods[] = { + { + .ml_name="switch", + .ml_meth=reinterpret_cast(green_switch), + .ml_flags=METH_VARARGS | METH_KEYWORDS, + .ml_doc=green_switch_doc + }, + {.ml_name="throw", .ml_meth=(PyCFunction)green_throw, .ml_flags=METH_VARARGS, .ml_doc=green_throw_doc}, + {.ml_name="__getstate__", .ml_meth=(PyCFunction)green_getstate, .ml_flags=METH_NOARGS, .ml_doc=NULL}, + {.ml_name=NULL, .ml_meth=NULL} /* sentinel */ +}; + +static PyGetSetDef green_getsets[] = { + /* name, getter, setter, doc, context pointer */ + {.name="__dict__", .get=(getter)green_getdict, .set=(setter)green_setdict}, + {.name="run", .get=(getter)green_getrun, .set=(setter)green_setrun}, + {.name="parent", .get=(getter)green_getparent, .set=(setter)green_setparent}, + {.name="gr_frame", .get=(getter)green_getframe }, + { + .name="gr_context", + .get=(getter)green_getcontext, + .set=(setter)green_setcontext + }, + {.name="dead", .get=(getter)green_getdead}, + {.name="_stack_saved", .get=(getter)green_get_stack_saved}, + {.name=NULL} +}; + +static PyMemberDef green_members[] = { + {.name=NULL} +}; + +static PyNumberMethods green_as_number = { + .nb_bool=(inquiry)green_bool, +}; + + +PyTypeObject PyGreenlet_Type = { + .ob_base=PyVarObject_HEAD_INIT(NULL, 0) + .tp_name="greenlet.greenlet", /* tp_name */ + .tp_basicsize=sizeof(PyGreenlet), /* tp_basicsize */ + /* methods */ + .tp_dealloc=(destructor)green_dealloc, /* tp_dealloc */ + .tp_repr=(reprfunc)green_repr, /* tp_repr */ + .tp_as_number=&green_as_number, /* tp_as _number*/ + .tp_flags=G_TPFLAGS_DEFAULT | Py_TPFLAGS_BASETYPE, /* tp_flags */ + .tp_doc="greenlet(run=None, parent=None) -> greenlet\n\n" + "Creates a new greenlet object (without running it).\n\n" + " - *run* -- The callable to invoke.\n" + " - *parent* -- The parent greenlet. The default is the current " + "greenlet.", /* tp_doc */ + .tp_traverse=(traverseproc)green_traverse, /* tp_traverse */ + .tp_clear=(inquiry)green_clear, /* tp_clear */ + .tp_weaklistoffset=offsetof(PyGreenlet, weakreflist), /* tp_weaklistoffset */ + + .tp_methods=green_methods, /* tp_methods */ + .tp_members=green_members, /* tp_members */ + .tp_getset=green_getsets, /* tp_getset */ + .tp_dictoffset=offsetof(PyGreenlet, dict), /* tp_dictoffset */ + .tp_init=(initproc)green_init, /* tp_init */ + .tp_alloc=PyType_GenericAlloc, /* tp_alloc */ + .tp_new=(newfunc)green_new, /* tp_new */ + .tp_free=PyObject_GC_Del, /* tp_free */ + .tp_is_gc=(inquiry)green_is_gc, /* tp_is_gc */ +}; + +#endif + +// Local Variables: +// flycheck-clang-include-path: ("/opt/local/Library/Frameworks/Python.framework/Versions/3.8/include/python3.8") +// End: diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.hpp new file mode 100644 index 0000000000000000000000000000000000000000..df6cd805b497cfd1fecf0310f6baff46181e08cb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenlet.hpp @@ -0,0 +1,35 @@ +#ifndef PYGREENLET_HPP +#define PYGREENLET_HPP + + +#include "greenlet.h" +#include "greenlet_compiler_compat.hpp" +#include "greenlet_refs.hpp" + + +using greenlet::refs::OwnedGreenlet; +using greenlet::refs::BorrowedGreenlet; +using greenlet::refs::BorrowedObject;; +using greenlet::refs::OwnedObject; +using greenlet::refs::PyErrPieces; + + +// XXX: These doesn't really belong here, it's not a Python slot. +static OwnedObject internal_green_throw(BorrowedGreenlet self, PyErrPieces& err_pieces); + +static PyGreenlet* green_new(PyTypeObject* type, PyObject* UNUSED(args), PyObject* UNUSED(kwds)); +static int green_clear(PyGreenlet* self); +static int green_init(PyGreenlet* self, PyObject* args, PyObject* kwargs); +static int green_setparent(PyGreenlet* self, PyObject* nparent, void* UNUSED(context)); +static int green_setrun(PyGreenlet* self, PyObject* nrun, void* UNUSED(context)); +static int green_traverse(PyGreenlet* self, visitproc visit, void* arg); +static void green_dealloc(PyGreenlet* self); +static PyObject* green_getparent(PyGreenlet* self, void* UNUSED(context)); + +static int green_is_gc(PyObject* self); +static PyObject* green_getdead(PyGreenlet* self, void* UNUSED(context)); +static PyObject* green_getrun(PyGreenlet* self, void* UNUSED(context)); +static int green_setcontext(PyGreenlet* self, PyObject* nctx, void* UNUSED(context)); +static PyObject* green_getframe(PyGreenlet* self, void* UNUSED(context)); +static PyObject* green_repr(PyGreenlet* self); +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenletUnswitchable.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenletUnswitchable.cpp new file mode 100644 index 0000000000000000000000000000000000000000..1b768ee349b6c2672abc70bf2e3dbcc3163f885f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyGreenletUnswitchable.cpp @@ -0,0 +1,147 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + Implementation of the Python slots for PyGreenletUnswitchable_Type +*/ +#ifndef PY_GREENLET_UNSWITCHABLE_CPP +#define PY_GREENLET_UNSWITCHABLE_CPP + + + +#define PY_SSIZE_T_CLEAN +#include +#include "structmember.h" // PyMemberDef + +#include "greenlet_internal.hpp" +// Code after this point can assume access to things declared in stdint.h, +// including the fixed-width types. This goes for the platform-specific switch functions +// as well. +#include "greenlet_refs.hpp" +#include "greenlet_slp_switch.hpp" + +#include "greenlet_thread_support.hpp" +#include "TGreenlet.hpp" + +#include "TGreenlet.cpp" +#include "TGreenletGlobals.cpp" +#include "TThreadStateDestroy.cpp" + + +using greenlet::LockGuard; +using greenlet::LockInitError; +using greenlet::PyErrOccurred; +using greenlet::Require; + +using greenlet::g_handle_exit; +using greenlet::single_result; + +using greenlet::Greenlet; +using greenlet::UserGreenlet; +using greenlet::MainGreenlet; +using greenlet::BrokenGreenlet; +using greenlet::ThreadState; +using greenlet::PythonState; + + +#include "PyGreenlet.hpp" + +static PyGreenlet* +green_unswitchable_new(PyTypeObject* type, PyObject* UNUSED(args), PyObject* UNUSED(kwds)) +{ + PyGreenlet* o = + (PyGreenlet*)PyBaseObject_Type.tp_new(type, mod_globs->empty_tuple, mod_globs->empty_dict); + if (o) { + new BrokenGreenlet(o, GET_THREAD_STATE().state().borrow_current()); + assert(Py_REFCNT(o) == 1); + } + return o; +} + +static PyObject* +green_unswitchable_getforce(PyGreenlet* self, void* UNUSED(context)) +{ + BrokenGreenlet* broken = dynamic_cast(self->pimpl); + return PyBool_FromLong(broken->_force_switch_error); +} + +static int +green_unswitchable_setforce(PyGreenlet* self, PyObject* nforce, void* UNUSED(context)) +{ + if (!nforce) { + PyErr_SetString( + PyExc_AttributeError, + "Cannot delete force_switch_error" + ); + return -1; + } + BrokenGreenlet* broken = dynamic_cast(self->pimpl); + int is_true = PyObject_IsTrue(nforce); + if (is_true == -1) { + return -1; + } + broken->_force_switch_error = is_true; + return 0; +} + +static PyObject* +green_unswitchable_getforceslp(PyGreenlet* self, void* UNUSED(context)) +{ + BrokenGreenlet* broken = dynamic_cast(self->pimpl); + return PyBool_FromLong(broken->_force_slp_switch_error); +} + +static int +green_unswitchable_setforceslp(PyGreenlet* self, PyObject* nforce, void* UNUSED(context)) +{ + if (!nforce) { + PyErr_SetString( + PyExc_AttributeError, + "Cannot delete force_slp_switch_error" + ); + return -1; + } + BrokenGreenlet* broken = dynamic_cast(self->pimpl); + int is_true = PyObject_IsTrue(nforce); + if (is_true == -1) { + return -1; + } + broken->_force_slp_switch_error = is_true; + return 0; +} + +static PyGetSetDef green_unswitchable_getsets[] = { + /* name, getter, setter, doc, closure (context pointer) */ + { + .name="force_switch_error", + .get=(getter)green_unswitchable_getforce, + .set=(setter)green_unswitchable_setforce, + .doc=NULL + }, + { + .name="force_slp_switch_error", + .get=(getter)green_unswitchable_getforceslp, + .set=(setter)green_unswitchable_setforceslp, + .doc=nullptr + }, + {.name=nullptr} +}; + +PyTypeObject PyGreenletUnswitchable_Type = { + .ob_base=PyVarObject_HEAD_INIT(NULL, 0) + .tp_name="greenlet._greenlet.UnswitchableGreenlet", + .tp_dealloc= (destructor)green_dealloc, /* tp_dealloc */ + .tp_flags=G_TPFLAGS_DEFAULT | Py_TPFLAGS_BASETYPE, /* tp_flags */ + .tp_doc="Undocumented internal class", /* tp_doc */ + .tp_traverse=(traverseproc)green_traverse, /* tp_traverse */ + .tp_clear=(inquiry)green_clear, /* tp_clear */ + + .tp_getset=green_unswitchable_getsets, /* tp_getset */ + .tp_base=&PyGreenlet_Type, /* tp_base */ + .tp_init=(initproc)green_init, /* tp_init */ + .tp_alloc=PyType_GenericAlloc, /* tp_alloc */ + .tp_new=(newfunc)green_unswitchable_new, /* tp_new */ + .tp_free=PyObject_GC_Del, /* tp_free */ + .tp_is_gc=(inquiry)green_is_gc, /* tp_is_gc */ +}; + + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyModule.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyModule.cpp new file mode 100644 index 0000000000000000000000000000000000000000..6adcb5c3d4b04773997c311e724af07bbb361052 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/PyModule.cpp @@ -0,0 +1,292 @@ +#ifndef PY_MODULE_CPP +#define PY_MODULE_CPP + +#include "greenlet_internal.hpp" + + +#include "TGreenletGlobals.cpp" +#include "TMainGreenlet.cpp" +#include "TThreadStateDestroy.cpp" + +using greenlet::LockGuard; +using greenlet::ThreadState; + +#ifdef __clang__ +# pragma clang diagnostic push +# pragma clang diagnostic ignored "-Wunused-function" +# pragma clang diagnostic ignored "-Wunused-variable" +#endif + +PyDoc_STRVAR(mod_getcurrent_doc, + "getcurrent() -> greenlet\n" + "\n" + "Returns the current greenlet (i.e. the one which called this " + "function).\n"); + +static PyObject* +mod_getcurrent(PyObject* UNUSED(module)) +{ + return GET_THREAD_STATE().state().get_current().relinquish_ownership_o(); +} + +PyDoc_STRVAR(mod_settrace_doc, + "settrace(callback) -> object\n" + "\n" + "Sets a new tracing function and returns the previous one.\n"); +static PyObject* +mod_settrace(PyObject* UNUSED(module), PyObject* args) +{ + PyArgParseParam tracefunc; + if (!PyArg_ParseTuple(args, "O", &tracefunc)) { + return NULL; + } + ThreadState& state = GET_THREAD_STATE(); + OwnedObject previous = state.get_tracefunc(); + if (!previous) { + previous = Py_None; + } + + state.set_tracefunc(tracefunc); + + return previous.relinquish_ownership(); +} + +PyDoc_STRVAR(mod_gettrace_doc, + "gettrace() -> object\n" + "\n" + "Returns the currently set tracing function, or None.\n"); + +static PyObject* +mod_gettrace(PyObject* UNUSED(module)) +{ + OwnedObject tracefunc = GET_THREAD_STATE().state().get_tracefunc(); + if (!tracefunc) { + tracefunc = Py_None; + } + return tracefunc.relinquish_ownership(); +} + + + +PyDoc_STRVAR(mod_set_thread_local_doc, + "set_thread_local(key, value) -> None\n" + "\n" + "Set a value in the current thread-local dictionary. Debugging only.\n"); + +static PyObject* +mod_set_thread_local(PyObject* UNUSED(module), PyObject* args) +{ + PyArgParseParam key; + PyArgParseParam value; + PyObject* result = NULL; + + if (PyArg_UnpackTuple(args, "set_thread_local", 2, 2, &key, &value)) { + if(PyDict_SetItem( + PyThreadState_GetDict(), // borrow + key, + value) == 0 ) { + // success + Py_INCREF(Py_None); + result = Py_None; + } + } + return result; +} + +PyDoc_STRVAR(mod_get_pending_cleanup_count_doc, + "get_pending_cleanup_count() -> Integer\n" + "\n" + "Get the number of greenlet cleanup operations pending. Testing only.\n"); + + +static PyObject* +mod_get_pending_cleanup_count(PyObject* UNUSED(module)) +{ + LockGuard cleanup_lock(*mod_globs->thread_states_to_destroy_lock); + return PyLong_FromSize_t(mod_globs->thread_states_to_destroy.size()); +} + +PyDoc_STRVAR(mod_get_total_main_greenlets_doc, + "get_total_main_greenlets() -> Integer\n" + "\n" + "Quickly return the number of main greenlets that exist. Testing only.\n"); + +static PyObject* +mod_get_total_main_greenlets(PyObject* UNUSED(module)) +{ + return PyLong_FromSize_t(G_TOTAL_MAIN_GREENLETS); +} + + + +PyDoc_STRVAR(mod_get_clocks_used_doing_optional_cleanup_doc, + "get_clocks_used_doing_optional_cleanup() -> Integer\n" + "\n" + "Get the number of clock ticks the program has used doing optional " + "greenlet cleanup.\n" + "Beginning in greenlet 2.0, greenlet tries to find and dispose of greenlets\n" + "that leaked after a thread exited. This requires invoking Python's garbage collector,\n" + "which may have a performance cost proportional to the number of live objects.\n" + "This function returns the amount of processor time\n" + "greenlet has used to do this. In programs that run with very large amounts of live\n" + "objects, this metric can be used to decide whether the cost of doing this cleanup\n" + "is worth the memory leak being corrected. If not, you can disable the cleanup\n" + "using ``enable_optional_cleanup(False)``.\n" + "The units are arbitrary and can only be compared to themselves (similarly to ``time.clock()``);\n" + "for example, to see how it scales with your heap. You can attempt to convert them into seconds\n" + "by dividing by the value of CLOCKS_PER_SEC." + "If cleanup has been disabled, returns None." + "\n" + "This is an implementation specific, provisional API. It may be changed or removed\n" + "in the future.\n" + ".. versionadded:: 2.0" + ); +static PyObject* +mod_get_clocks_used_doing_optional_cleanup(PyObject* UNUSED(module)) +{ + std::clock_t& clocks = ThreadState::clocks_used_doing_gc(); + + if (clocks == std::clock_t(-1)) { + Py_RETURN_NONE; + } + // This might not actually work on some implementations; clock_t + // is an opaque type. + return PyLong_FromSsize_t(clocks); +} + +PyDoc_STRVAR(mod_enable_optional_cleanup_doc, + "mod_enable_optional_cleanup(bool) -> None\n" + "\n" + "Enable or disable optional cleanup operations.\n" + "See ``get_clocks_used_doing_optional_cleanup()`` for details.\n" + ); +static PyObject* +mod_enable_optional_cleanup(PyObject* UNUSED(module), PyObject* flag) +{ + int is_true = PyObject_IsTrue(flag); + if (is_true == -1) { + return nullptr; + } + + std::clock_t& clocks = ThreadState::clocks_used_doing_gc(); + if (is_true) { + // If we already have a value, we don't want to lose it. + if (clocks == std::clock_t(-1)) { + clocks = 0; + } + } + else { + clocks = std::clock_t(-1); + } + Py_RETURN_NONE; +} + + + + +#if !GREENLET_PY313 +PyDoc_STRVAR(mod_get_tstate_trash_delete_nesting_doc, + "get_tstate_trash_delete_nesting() -> Integer\n" + "\n" + "Return the 'trash can' nesting level. Testing only.\n"); +static PyObject* +mod_get_tstate_trash_delete_nesting(PyObject* UNUSED(module)) +{ + PyThreadState* tstate = PyThreadState_GET(); + +#if GREENLET_PY312 + return PyLong_FromLong(tstate->trash.delete_nesting); +#else + return PyLong_FromLong(tstate->trash_delete_nesting); +#endif +} +#endif + + + + +static PyMethodDef GreenMethods[] = { + { + .ml_name="getcurrent", + .ml_meth=(PyCFunction)mod_getcurrent, + .ml_flags=METH_NOARGS, + .ml_doc=mod_getcurrent_doc + }, + { + .ml_name="settrace", + .ml_meth=(PyCFunction)mod_settrace, + .ml_flags=METH_VARARGS, + .ml_doc=mod_settrace_doc + }, + { + .ml_name="gettrace", + .ml_meth=(PyCFunction)mod_gettrace, + .ml_flags=METH_NOARGS, + .ml_doc=mod_gettrace_doc + }, + { + .ml_name="set_thread_local", + .ml_meth=(PyCFunction)mod_set_thread_local, + .ml_flags=METH_VARARGS, + .ml_doc=mod_set_thread_local_doc + }, + { + .ml_name="get_pending_cleanup_count", + .ml_meth=(PyCFunction)mod_get_pending_cleanup_count, + .ml_flags=METH_NOARGS, + .ml_doc=mod_get_pending_cleanup_count_doc + }, + { + .ml_name="get_total_main_greenlets", + .ml_meth=(PyCFunction)mod_get_total_main_greenlets, + .ml_flags=METH_NOARGS, + .ml_doc=mod_get_total_main_greenlets_doc + }, + { + .ml_name="get_clocks_used_doing_optional_cleanup", + .ml_meth=(PyCFunction)mod_get_clocks_used_doing_optional_cleanup, + .ml_flags=METH_NOARGS, + .ml_doc=mod_get_clocks_used_doing_optional_cleanup_doc + }, + { + .ml_name="enable_optional_cleanup", + .ml_meth=(PyCFunction)mod_enable_optional_cleanup, + .ml_flags=METH_O, + .ml_doc=mod_enable_optional_cleanup_doc + }, +#if !GREENLET_PY313 + { + .ml_name="get_tstate_trash_delete_nesting", + .ml_meth=(PyCFunction)mod_get_tstate_trash_delete_nesting, + .ml_flags=METH_NOARGS, + .ml_doc=mod_get_tstate_trash_delete_nesting_doc + }, +#endif + {.ml_name=NULL, .ml_meth=NULL} /* Sentinel */ +}; + +static const char* const copy_on_greentype[] = { + "getcurrent", + "error", + "GreenletExit", + "settrace", + "gettrace", + NULL +}; + +static struct PyModuleDef greenlet_module_def = { + .m_base=PyModuleDef_HEAD_INIT, + .m_name="greenlet._greenlet", + .m_doc=NULL, + .m_size=-1, + .m_methods=GreenMethods, +}; + + +#endif + +#ifdef __clang__ +# pragma clang diagnostic pop +#elif defined(__GNUC__) +# pragma GCC diagnostic pop +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TBrokenGreenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TBrokenGreenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..7e9ab5be9a58c8ccbcc0529dc21b3b857efa4cd9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TBrokenGreenlet.cpp @@ -0,0 +1,45 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of greenlet::UserGreenlet. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ + +#include "TGreenlet.hpp" + +namespace greenlet { + +void* BrokenGreenlet::operator new(size_t UNUSED(count)) +{ + return allocator.allocate(1); +} + + +void BrokenGreenlet::operator delete(void* ptr) +{ + return allocator.deallocate(static_cast(ptr), + 1); +} + +greenlet::PythonAllocator greenlet::BrokenGreenlet::allocator; + +bool +BrokenGreenlet::force_slp_switch_error() const noexcept +{ + return this->_force_slp_switch_error; +} + +UserGreenlet::switchstack_result_t BrokenGreenlet::g_switchstack(void) +{ + if (this->_force_switch_error) { + return switchstack_result_t(-1); + } + return UserGreenlet::g_switchstack(); +} + +}; //namespace greenlet diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TExceptionState.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TExceptionState.cpp new file mode 100644 index 0000000000000000000000000000000000000000..08a94ae83e67fa7884bc8b8fd64ed815a1a4c0ae --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TExceptionState.cpp @@ -0,0 +1,62 @@ +#ifndef GREENLET_EXCEPTION_STATE_CPP +#define GREENLET_EXCEPTION_STATE_CPP + +#include +#include "TGreenlet.hpp" + +namespace greenlet { + + +ExceptionState::ExceptionState() +{ + this->clear(); +} + +void ExceptionState::operator<<(const PyThreadState *const tstate) noexcept +{ + this->exc_info = tstate->exc_info; + this->exc_state = tstate->exc_state; +} + +void ExceptionState::operator>>(PyThreadState *const tstate) noexcept +{ + tstate->exc_state = this->exc_state; + tstate->exc_info = + this->exc_info ? this->exc_info : &tstate->exc_state; + this->clear(); +} + +void ExceptionState::clear() noexcept +{ + this->exc_info = nullptr; + this->exc_state.exc_value = nullptr; +#if !GREENLET_PY311 + this->exc_state.exc_type = nullptr; + this->exc_state.exc_traceback = nullptr; +#endif + this->exc_state.previous_item = nullptr; +} + +int ExceptionState::tp_traverse(visitproc visit, void* arg) noexcept +{ + Py_VISIT(this->exc_state.exc_value); +#if !GREENLET_PY311 + Py_VISIT(this->exc_state.exc_type); + Py_VISIT(this->exc_state.exc_traceback); +#endif + return 0; +} + +void ExceptionState::tp_clear() noexcept +{ + Py_CLEAR(this->exc_state.exc_value); +#if !GREENLET_PY311 + Py_CLEAR(this->exc_state.exc_type); + Py_CLEAR(this->exc_state.exc_traceback); +#endif +} + + +}; // namespace greenlet + +#endif // GREENLET_EXCEPTION_STATE_CPP diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..4698a1784faae52289c9e9904ca4bc218da485ff --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.cpp @@ -0,0 +1,718 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of greenlet::Greenlet. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#ifndef TGREENLET_CPP +#define TGREENLET_CPP +#include "greenlet_internal.hpp" +#include "TGreenlet.hpp" + + +#include "TGreenletGlobals.cpp" +#include "TThreadStateDestroy.cpp" + +namespace greenlet { + +Greenlet::Greenlet(PyGreenlet* p) + : Greenlet(p, StackState()) +{ +} + +Greenlet::Greenlet(PyGreenlet* p, const StackState& initial_stack) + : _self(p), stack_state(initial_stack) +{ + assert(p->pimpl == nullptr); + p->pimpl = this; +} + +Greenlet::~Greenlet() +{ + // XXX: Can't do this. tp_clear is a virtual function, and by the + // time we're here, we've sliced off our child classes. + //this->tp_clear(); + this->_self->pimpl = nullptr; +} + +bool +Greenlet::force_slp_switch_error() const noexcept +{ + return false; +} + +void +Greenlet::release_args() +{ + this->switch_args.CLEAR(); +} + +/** + * CAUTION: This will allocate memory and may trigger garbage + * collection and arbitrary Python code. + */ +OwnedObject +Greenlet::throw_GreenletExit_during_dealloc(const ThreadState& UNUSED(current_thread_state)) +{ + // If we're killed because we lost all references in the + // middle of a switch, that's ok. Don't reset the args/kwargs, + // we still want to pass them to the parent. + PyErr_SetString(mod_globs->PyExc_GreenletExit, + "Killing the greenlet because all references have vanished."); + // To get here it had to have run before + return this->g_switch(); +} + +inline void +Greenlet::slp_restore_state() noexcept +{ +#ifdef SLP_BEFORE_RESTORE_STATE + SLP_BEFORE_RESTORE_STATE(); +#endif + this->stack_state.copy_heap_to_stack( + this->thread_state()->borrow_current()->stack_state); +} + + +inline int +Greenlet::slp_save_state(char *const stackref) noexcept +{ + // XXX: This used to happen in the middle, before saving, but + // after finding the next owner. Does that matter? This is + // only defined for Sparc/GCC where it flushes register + // windows to the stack (I think) +#ifdef SLP_BEFORE_SAVE_STATE + SLP_BEFORE_SAVE_STATE(); +#endif + return this->stack_state.copy_stack_to_heap(stackref, + this->thread_state()->borrow_current()->stack_state); +} + +/** + * CAUTION: This will allocate memory and may trigger garbage + * collection and arbitrary Python code. + */ +OwnedObject +Greenlet::on_switchstack_or_initialstub_failure( + Greenlet* target, + const Greenlet::switchstack_result_t& err, + const bool target_was_me, + const bool was_initial_stub) +{ + // If we get here, either g_initialstub() + // failed, or g_switchstack() failed. Either one of those + // cases SHOULD leave us in the original greenlet with a valid stack. + if (!PyErr_Occurred()) { + PyErr_SetString( + PyExc_SystemError, + was_initial_stub + ? "Failed to switch stacks into a greenlet for the first time." + : "Failed to switch stacks into a running greenlet."); + } + this->release_args(); + + if (target && !target_was_me) { + target->murder_in_place(); + } + + assert(!err.the_new_current_greenlet); + assert(!err.origin_greenlet); + return OwnedObject(); + +} + +OwnedGreenlet +Greenlet::g_switchstack_success() noexcept +{ + PyThreadState* tstate = PyThreadState_GET(); + // restore the saved state + this->python_state >> tstate; + this->exception_state >> tstate; + + // The thread state hasn't been changed yet. + ThreadState* thread_state = this->thread_state(); + OwnedGreenlet result(thread_state->get_current()); + thread_state->set_current(this->self()); + //assert(thread_state->borrow_current().borrow() == this->_self); + return result; +} + +Greenlet::switchstack_result_t +Greenlet::g_switchstack(void) +{ + // if any of these assertions fail, it's likely because we + // switched away and tried to switch back to us. Early stages of + // switching are not reentrant because we re-use ``this->args()``. + // Switching away would happen if we trigger a garbage collection + // (by just using some Python APIs that happen to allocate Python + // objects) and some garbage had weakref callbacks or __del__ that + // switches (people don't write code like that by hand, but with + // gevent it's possible without realizing it) + assert(this->args() || PyErr_Occurred()); + { /* save state */ + if (this->thread_state()->is_current(this->self())) { + // Hmm, nothing to do. + // TODO: Does this bypass trace events that are + // important? + return switchstack_result_t(0, + this, this->thread_state()->borrow_current()); + } + BorrowedGreenlet current = this->thread_state()->borrow_current(); + PyThreadState* tstate = PyThreadState_GET(); + + current->python_state << tstate; + current->exception_state << tstate; + this->python_state.will_switch_from(tstate); + switching_thread_state = this; + current->expose_frames(); + } + assert(this->args() || PyErr_Occurred()); + // If this is the first switch into a greenlet, this will + // return twice, once with 1 in the new greenlet, once with 0 + // in the origin. + int err; + if (this->force_slp_switch_error()) { + err = -1; + } + else { + err = slp_switch(); + } + + if (err < 0) { /* error */ + // Tested by + // test_greenlet.TestBrokenGreenlets.test_failed_to_slp_switch_into_running + // + // It's not clear if it's worth trying to clean up and + // continue here. Failing to switch stacks is a big deal which + // may not be recoverable (who knows what state the stack is in). + // Also, we've stolen references in preparation for calling + // ``g_switchstack_success()`` and we don't have a clean + // mechanism for backing that all out. + Py_FatalError("greenlet: Failed low-level slp_switch(). The stack is probably corrupt."); + } + + // No stack-based variables are valid anymore. + + // But the global is volatile so we can reload it without the + // compiler caching it from earlier. + Greenlet* greenlet_that_switched_in = switching_thread_state; // aka this + switching_thread_state = nullptr; + // except that no stack variables are valid, we would: + // assert(this == greenlet_that_switched_in); + + // switchstack success is where we restore the exception state, + // etc. It returns the origin greenlet because its convenient. + + OwnedGreenlet origin = greenlet_that_switched_in->g_switchstack_success(); + assert(greenlet_that_switched_in->args() || PyErr_Occurred()); + return switchstack_result_t(err, greenlet_that_switched_in, origin); +} + + +inline void +Greenlet::check_switch_allowed() const +{ + // TODO: Make this take a parameter of the current greenlet, + // or current main greenlet, to make the check for + // cross-thread switching cheaper. Surely somewhere up the + // call stack we've already accessed the thread local variable. + + // We expect to always have a main greenlet now; accessing the thread state + // created it. However, if we get here and cleanup has already + // begun because we're a greenlet that was running in a + // (now dead) thread, these invariants will not hold true. In + // fact, accessing `this->thread_state` may not even be possible. + + // If the thread this greenlet was running in is dead, + // we'll still have a reference to a main greenlet, but the + // thread state pointer we have is bogus. + // TODO: Give the objects an API to determine if they belong + // to a dead thread. + + const BorrowedMainGreenlet main_greenlet = this->find_main_greenlet_in_lineage(); + + if (!main_greenlet) { + throw PyErrOccurred(mod_globs->PyExc_GreenletError, + "cannot switch to a garbage collected greenlet"); + } + + if (!main_greenlet->thread_state()) { + throw PyErrOccurred(mod_globs->PyExc_GreenletError, + "cannot switch to a different thread (which happens to have exited)"); + } + + // The main greenlet we found was from the .parent lineage. + // That may or may not have any relationship to the main + // greenlet of the running thread. We can't actually access + // our this->thread_state members to try to check that, + // because it could be in the process of getting destroyed, + // but setting the main_greenlet->thread_state member to NULL + // may not be visible yet. So we need to check against the + // current thread state (once the cheaper checks are out of + // the way) + const BorrowedMainGreenlet current_main_greenlet = GET_THREAD_STATE().state().borrow_main_greenlet(); + if ( + // lineage main greenlet is not this thread's greenlet + current_main_greenlet != main_greenlet + || ( + // atteched to some thread + this->main_greenlet() + // XXX: Same condition as above. Was this supposed to be + // this->main_greenlet()? + && current_main_greenlet != main_greenlet) + // switching into a known dead thread (XXX: which, if we get here, + // is bad, because we just accessed the thread state, which is + // gone!) + || (!current_main_greenlet->thread_state())) { + // CAUTION: This may trigger memory allocations, gc, and + // arbitrary Python code. + throw PyErrOccurred( + mod_globs->PyExc_GreenletError, + "Cannot switch to a different thread\n\tCurrent: %R\n\tExpected: %R", + current_main_greenlet, main_greenlet); + } +} + +const OwnedObject +Greenlet::context() const +{ + using greenlet::PythonStateContext; + OwnedObject result; + + if (this->is_currently_running_in_some_thread()) { + /* Currently running greenlet: context is stored in the thread state, + not the greenlet object. */ + if (GET_THREAD_STATE().state().is_current(this->self())) { + result = PythonStateContext::context(PyThreadState_GET()); + } + else { + throw ValueError( + "cannot get context of a " + "greenlet that is running in a different thread"); + } + } + else { + /* Greenlet is not running: just return context. */ + result = this->python_state.context(); + } + if (!result) { + result = OwnedObject::None(); + } + return result; +} + + +void +Greenlet::context(BorrowedObject given) +{ + using greenlet::PythonStateContext; + if (!given) { + throw AttributeError("can't delete context attribute"); + } + if (given.is_None()) { + /* "Empty context" is stored as NULL, not None. */ + given = nullptr; + } + + //checks type, incrs refcnt + greenlet::refs::OwnedContext context(given); + PyThreadState* tstate = PyThreadState_GET(); + + if (this->is_currently_running_in_some_thread()) { + if (!GET_THREAD_STATE().state().is_current(this->self())) { + throw ValueError("cannot set context of a greenlet" + " that is running in a different thread"); + } + + /* Currently running greenlet: context is stored in the thread state, + not the greenlet object. */ + OwnedObject octx = OwnedObject::consuming(PythonStateContext::context(tstate)); + PythonStateContext::context(tstate, context.relinquish_ownership()); + } + else { + /* Greenlet is not running: just set context. Note that the + greenlet may be dead.*/ + this->python_state.context() = context; + } +} + +/** + * CAUTION: May invoke arbitrary Python code. + * + * Figure out what the result of ``greenlet.switch(arg, kwargs)`` + * should be and transfers ownership of it to the left-hand-side. + * + * If switch() was just passed an arg tuple, then we'll just return that. + * If only keyword arguments were passed, then we'll pass the keyword + * argument dict. Otherwise, we'll create a tuple of (args, kwargs) and + * return both. + * + * CAUTION: This may allocate a new tuple object, which may + * cause the Python garbage collector to run, which in turn may + * run arbitrary Python code that switches. + */ +OwnedObject& operator<<=(OwnedObject& lhs, greenlet::SwitchingArgs& rhs) noexcept +{ + // Because this may invoke arbitrary Python code, which could + // result in switching back to us, we need to get the + // arguments locally on the stack. + assert(rhs); + OwnedObject args = rhs.args(); + OwnedObject kwargs = rhs.kwargs(); + rhs.CLEAR(); + // We shouldn't be called twice for the same switch. + assert(args || kwargs); + assert(!rhs); + + if (!kwargs) { + lhs = args; + } + else if (!PyDict_Size(kwargs.borrow())) { + lhs = args; + } + else if (!PySequence_Length(args.borrow())) { + lhs = kwargs; + } + else { + // PyTuple_Pack allocates memory, may GC, may run arbitrary + // Python code. + lhs = OwnedObject::consuming(PyTuple_Pack(2, args.borrow(), kwargs.borrow())); + } + return lhs; +} + +static OwnedObject +g_handle_exit(const OwnedObject& greenlet_result) +{ + if (!greenlet_result && mod_globs->PyExc_GreenletExit.PyExceptionMatches()) { + /* catch and ignore GreenletExit */ + PyErrFetchParam val; + PyErr_Fetch(PyErrFetchParam(), val, PyErrFetchParam()); + if (!val) { + return OwnedObject::None(); + } + return OwnedObject(val); + } + + if (greenlet_result) { + // package the result into a 1-tuple + // PyTuple_Pack increments the reference of its arguments, + // so we always need to decref the greenlet result; + // the owner will do that. + return OwnedObject::consuming(PyTuple_Pack(1, greenlet_result.borrow())); + } + + return OwnedObject(); +} + + + +/** + * May run arbitrary Python code. + */ +OwnedObject +Greenlet::g_switch_finish(const switchstack_result_t& err) +{ + assert(err.the_new_current_greenlet == this); + + ThreadState& state = *this->thread_state(); + // Because calling the trace function could do arbitrary things, + // including switching away from this greenlet and then maybe + // switching back, we need to capture the arguments now so that + // they don't change. + OwnedObject result; + if (this->args()) { + result <<= this->args(); + } + else { + assert(PyErr_Occurred()); + } + assert(!this->args()); + try { + // Our only caller handles the bad error case + assert(err.status >= 0); + assert(state.borrow_current() == this->self()); + if (OwnedObject tracefunc = state.get_tracefunc()) { + assert(result || PyErr_Occurred()); + g_calltrace(tracefunc, + result ? mod_globs->event_switch : mod_globs->event_throw, + err.origin_greenlet, + this->self()); + } + // The above could have invoked arbitrary Python code, but + // it couldn't switch back to this object and *also* + // throw an exception, so the args won't have changed. + + if (PyErr_Occurred()) { + // We get here if we fell of the end of the run() function + // raising an exception. The switch itself was + // successful, but the function raised. + // valgrind reports that memory allocated here can still + // be reached after a test run. + throw PyErrOccurred::from_current(); + } + return result; + } + catch (const PyErrOccurred&) { + /* Turn switch errors into switch throws */ + /* Turn trace errors into switch throws */ + this->release_args(); + throw; + } +} + +void +Greenlet::g_calltrace(const OwnedObject& tracefunc, + const greenlet::refs::ImmortalEventName& event, + const BorrowedGreenlet& origin, + const BorrowedGreenlet& target) +{ + PyErrPieces saved_exc; + try { + TracingGuard tracing_guard; + // TODO: We have saved the active exception (if any) that's + // about to be raised. In the 'throw' case, we could provide + // the exception to the tracefunction, which seems very helpful. + tracing_guard.CallTraceFunction(tracefunc, event, origin, target); + } + catch (const PyErrOccurred&) { + // In case of exceptions trace function is removed, + // and any existing exception is replaced with the tracing + // exception. + GET_THREAD_STATE().state().set_tracefunc(Py_None); + throw; + } + + saved_exc.PyErrRestore(); + assert( + (event == mod_globs->event_throw && PyErr_Occurred()) + || (event == mod_globs->event_switch && !PyErr_Occurred()) + ); +} + +void +Greenlet::murder_in_place() +{ + if (this->active()) { + assert(!this->is_currently_running_in_some_thread()); + this->deactivate_and_free(); + } +} + +inline void +Greenlet::deactivate_and_free() +{ + if (!this->active()) { + return; + } + // Throw away any saved stack. + this->stack_state = StackState(); + assert(!this->stack_state.active()); + // Throw away any Python references. + // We're holding a borrowed reference to the last + // frame we executed. Since we borrowed it, the + // normal traversal, clear, and dealloc functions + // ignore it, meaning it leaks. (The thread state + // object can't find it to clear it when that's + // deallocated either, because by definition if we + // got an object on this list, it wasn't + // running and the thread state doesn't have + // this frame.) + // So here, we *do* clear it. + this->python_state.tp_clear(true); +} + +bool +Greenlet::belongs_to_thread(const ThreadState* thread_state) const +{ + if (!this->thread_state() // not running anywhere, or thread + // exited + || !thread_state) { // same, or there is no thread state. + return false; + } + return true; +} + + +void +Greenlet::deallocing_greenlet_in_thread(const ThreadState* current_thread_state) +{ + /* Cannot raise an exception to kill the greenlet if + it is not running in the same thread! */ + if (this->belongs_to_thread(current_thread_state)) { + assert(current_thread_state); + // To get here it had to have run before + /* Send the greenlet a GreenletExit exception. */ + + // We don't care about the return value, only whether an + // exception happened. + this->throw_GreenletExit_during_dealloc(*current_thread_state); + return; + } + + // Not the same thread! Temporarily save the greenlet + // into its thread's deleteme list, *if* it exists. + // If that thread has already exited, and processed its pending + // cleanup, we'll never be able to clean everything up: we won't + // be able to raise an exception. + // That's mostly OK! Since we can't add it to a list, our refcount + // won't increase, and we'll go ahead with the DECREFs later. + ThreadState *const thread_state = this->thread_state(); + if (thread_state) { + thread_state->delete_when_thread_running(this->self()); + } + else { + // The thread is dead, we can't raise an exception. + // We need to make it look non-active, though, so that dealloc + // finishes killing it. + this->deactivate_and_free(); + } + return; +} + + +int +Greenlet::tp_traverse(visitproc visit, void* arg) +{ + + int result; + if ((result = this->exception_state.tp_traverse(visit, arg)) != 0) { + return result; + } + //XXX: This is ugly. But so is handling everything having to do + //with the top frame. + bool visit_top_frame = this->was_running_in_dead_thread(); + // When true, the thread is dead. Our implicit weak reference to the + // frame is now all that's left; we consider ourselves to + // strongly own it now. + if ((result = this->python_state.tp_traverse(visit, arg, visit_top_frame)) != 0) { + return result; + } + return 0; +} + +int +Greenlet::tp_clear() +{ + bool own_top_frame = this->was_running_in_dead_thread(); + this->exception_state.tp_clear(); + this->python_state.tp_clear(own_top_frame); + return 0; +} + +bool Greenlet::is_currently_running_in_some_thread() const +{ + return this->stack_state.active() && !this->python_state.top_frame(); +} + +#if GREENLET_PY312 +void GREENLET_NOINLINE(Greenlet::expose_frames)() +{ + if (!this->python_state.top_frame()) { + return; + } + + _PyInterpreterFrame* last_complete_iframe = nullptr; + _PyInterpreterFrame* iframe = this->python_state.top_frame()->f_frame; + while (iframe) { + // We must make a copy before looking at the iframe contents, + // since iframe might point to a portion of the greenlet's C stack + // that was spilled when switching greenlets. + _PyInterpreterFrame iframe_copy; + this->stack_state.copy_from_stack(&iframe_copy, iframe, sizeof(*iframe)); + if (!_PyFrame_IsIncomplete(&iframe_copy)) { + // If the iframe were OWNED_BY_CSTACK then it would always be + // incomplete. Since it's not incomplete, it's not on the C stack + // and we can access it through the original `iframe` pointer + // directly. This is important since GetFrameObject might + // lazily _create_ the frame object and we don't want the + // interpreter to lose track of it. + assert(iframe_copy.owner != FRAME_OWNED_BY_CSTACK); + + // We really want to just write: + // PyFrameObject* frame = _PyFrame_GetFrameObject(iframe); + // but _PyFrame_GetFrameObject calls _PyFrame_MakeAndSetFrameObject + // which is not a visible symbol in libpython. The easiest + // way to get a public function to call it is using + // PyFrame_GetBack, which is defined as follows: + // assert(frame != NULL); + // assert(!_PyFrame_IsIncomplete(frame->f_frame)); + // PyFrameObject *back = frame->f_back; + // if (back == NULL) { + // _PyInterpreterFrame *prev = frame->f_frame->previous; + // prev = _PyFrame_GetFirstComplete(prev); + // if (prev) { + // back = _PyFrame_GetFrameObject(prev); + // } + // } + // return (PyFrameObject*)Py_XNewRef(back); + if (!iframe->frame_obj) { + PyFrameObject dummy_frame; + _PyInterpreterFrame dummy_iframe; + dummy_frame.f_back = nullptr; + dummy_frame.f_frame = &dummy_iframe; + // force the iframe to be considered complete without + // needing to check its code object: + dummy_iframe.owner = FRAME_OWNED_BY_GENERATOR; + dummy_iframe.previous = iframe; + assert(!_PyFrame_IsIncomplete(&dummy_iframe)); + // Drop the returned reference immediately; the iframe + // continues to hold a strong reference + Py_XDECREF(PyFrame_GetBack(&dummy_frame)); + assert(iframe->frame_obj); + } + + // This is a complete frame, so make the last one of those we saw + // point at it, bypassing any incomplete frames (which may have + // been on the C stack) in between the two. We're overwriting + // last_complete_iframe->previous and need that to be reversible, + // so we store the original previous ptr in the frame object + // (which we must have created on a previous iteration through + // this loop). The frame object has a bunch of storage that is + // only used when its iframe is OWNED_BY_FRAME_OBJECT, which only + // occurs when the frame object outlives the frame's execution, + // which can't have happened yet because the frame is currently + // executing as far as the interpreter is concerned. So, we can + // reuse it for our own purposes. + assert(iframe->owner == FRAME_OWNED_BY_THREAD + || iframe->owner == FRAME_OWNED_BY_GENERATOR); + if (last_complete_iframe) { + assert(last_complete_iframe->frame_obj); + memcpy(&last_complete_iframe->frame_obj->_f_frame_data[0], + &last_complete_iframe->previous, sizeof(void *)); + last_complete_iframe->previous = iframe; + } + last_complete_iframe = iframe; + } + // Frames that are OWNED_BY_FRAME_OBJECT are linked via the + // frame's f_back while all others are linked via the iframe's + // previous ptr. Since all the frames we traverse are running + // as far as the interpreter is concerned, we don't have to + // worry about the OWNED_BY_FRAME_OBJECT case. + iframe = iframe_copy.previous; + } + + // Give the outermost complete iframe a null previous pointer to + // account for any potential incomplete/C-stack iframes between it + // and the actual top-of-stack + if (last_complete_iframe) { + assert(last_complete_iframe->frame_obj); + memcpy(&last_complete_iframe->frame_obj->_f_frame_data[0], + &last_complete_iframe->previous, sizeof(void *)); + last_complete_iframe->previous = nullptr; + } +} +#else +void Greenlet::expose_frames() +{ + +} +#endif + +}; // namespace greenlet +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.hpp new file mode 100644 index 0000000000000000000000000000000000000000..aa6d6d5adce211e5bb05c3e0e1e30752e5a4770d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenlet.hpp @@ -0,0 +1,824 @@ +#ifndef GREENLET_GREENLET_HPP +#define GREENLET_GREENLET_HPP +/* + * Declarations of the core data structures. +*/ + +#define PY_SSIZE_T_CLEAN +#include + +#include "greenlet_compiler_compat.hpp" +#include "greenlet_refs.hpp" +#include "greenlet_cpython_compat.hpp" +#include "greenlet_allocator.hpp" + +using greenlet::refs::OwnedObject; +using greenlet::refs::OwnedGreenlet; +using greenlet::refs::OwnedMainGreenlet; +using greenlet::refs::BorrowedGreenlet; + +#if PY_VERSION_HEX < 0x30B00A6 +# define _PyCFrame CFrame +# define _PyInterpreterFrame _interpreter_frame +#endif + +#if GREENLET_PY312 +# define Py_BUILD_CORE +# include "internal/pycore_frame.h" +#endif + +#if GREENLET_PY314 +# include "internal/pycore_interpframe_structs.h" +#if defined(_MSC_VER) || defined(__MINGW64__) +# include "greenlet_msvc_compat.hpp" +#else +# include "internal/pycore_interpframe.h" +#endif +#endif + +// XXX: TODO: Work to remove all virtual functions +// for speed of calling and size of objects (no vtable). +// One pattern is the Curiously Recurring Template +namespace greenlet +{ + class ExceptionState + { + private: + G_NO_COPIES_OF_CLS(ExceptionState); + + // Even though these are borrowed objects, we actually own + // them, when they're not null. + // XXX: Express that in the API. + private: + _PyErr_StackItem* exc_info; + _PyErr_StackItem exc_state; + public: + ExceptionState(); + void operator<<(const PyThreadState *const tstate) noexcept; + void operator>>(PyThreadState* tstate) noexcept; + void clear() noexcept; + + int tp_traverse(visitproc visit, void* arg) noexcept; + void tp_clear() noexcept; + }; + + template + void operator<<(const PyThreadState *const tstate, T& exc); + + class PythonStateContext + { + protected: + greenlet::refs::OwnedContext _context; + public: + inline const greenlet::refs::OwnedContext& context() const + { + return this->_context; + } + inline greenlet::refs::OwnedContext& context() + { + return this->_context; + } + + inline void tp_clear() + { + this->_context.CLEAR(); + } + + template + inline static PyObject* context(T* tstate) + { + return tstate->context; + } + + template + inline static void context(T* tstate, PyObject* new_context) + { + tstate->context = new_context; + tstate->context_ver++; + } + }; + class SwitchingArgs; + class PythonState : public PythonStateContext + { + public: + typedef greenlet::refs::OwnedReference OwnedFrame; + private: + G_NO_COPIES_OF_CLS(PythonState); + // We own this if we're suspended (although currently we don't + // tp_traverse into it; that's a TODO). If we're running, it's + // empty. If we get deallocated and *still* have a frame, it + // won't be reachable from the place that normally decref's + // it, so we need to do it (hence owning it). + OwnedFrame _top_frame; +#if GREENLET_USE_CFRAME + _PyCFrame* cframe; + int use_tracing; +#endif +#if GREENLET_PY314 + int py_recursion_depth; +#elif GREENLET_PY312 + int py_recursion_depth; + int c_recursion_depth; +#else + int recursion_depth; +#endif +#if GREENLET_PY313 + PyObject *delete_later; +#else + int trash_delete_nesting; +#endif +#if GREENLET_PY311 + _PyInterpreterFrame* current_frame; + _PyStackChunk* datastack_chunk; + PyObject** datastack_top; + PyObject** datastack_limit; +#endif + // The PyInterpreterFrame list on 3.12+ contains some entries that are + // on the C stack, which can't be directly accessed while a greenlet is + // suspended. In order to keep greenlet gr_frame introspection working, + // we adjust stack switching to rewrite the interpreter frame list + // to skip these C-stack frames; we call this "exposing" the greenlet's + // frames because it makes them valid to work with in Python. Then when + // the greenlet is resumed we need to remember to reverse the operation + // we did. The C-stack frames are "entry frames" which are a low-level + // interpreter detail; they're not needed for introspection, but do + // need to be present for the eval loop to work. + void unexpose_frames(); + + public: + + PythonState(); + // You can use this for testing whether we have a frame + // or not. It returns const so they can't modify it. + const OwnedFrame& top_frame() const noexcept; + + inline void operator<<(const PyThreadState *const tstate) noexcept; + inline void operator>>(PyThreadState* tstate) noexcept; + void clear() noexcept; + + int tp_traverse(visitproc visit, void* arg, bool visit_top_frame) noexcept; + void tp_clear(bool own_top_frame) noexcept; + void set_initial_state(const PyThreadState* const tstate) noexcept; +#if GREENLET_USE_CFRAME + void set_new_cframe(_PyCFrame& frame) noexcept; +#endif + + void may_switch_away() noexcept; + inline void will_switch_from(PyThreadState *const origin_tstate) noexcept; + void did_finish(PyThreadState* tstate) noexcept; + }; + + class StackState + { + // By having only plain C (POD) members, no virtual functions + // or bases, we get a trivial assignment operator generated + // for us. However, that's not safe since we do manage memory. + // So we declare an assignment operator that only works if we + // don't have any memory allocated. (We don't use + // std::shared_ptr for reference counting just to keep this + // object small) + private: + char* _stack_start; + char* stack_stop; + char* stack_copy; + intptr_t _stack_saved; + StackState* stack_prev; + inline int copy_stack_to_heap_up_to(const char* const stop) noexcept; + inline void free_stack_copy() noexcept; + + public: + /** + * Creates a started, but inactive, state, using *current* + * as the previous. + */ + StackState(void* mark, StackState& current); + /** + * Creates an inactive, unstarted, state. + */ + StackState(); + ~StackState(); + StackState(const StackState& other); + StackState& operator=(const StackState& other); + inline void copy_heap_to_stack(const StackState& current) noexcept; + inline int copy_stack_to_heap(char* const stackref, const StackState& current) noexcept; + inline bool started() const noexcept; + inline bool main() const noexcept; + inline bool active() const noexcept; + inline void set_active() noexcept; + inline void set_inactive() noexcept; + inline intptr_t stack_saved() const noexcept; + inline char* stack_start() const noexcept; + static inline StackState make_main() noexcept; +#ifdef GREENLET_USE_STDIO + friend std::ostream& operator<<(std::ostream& os, const StackState& s); +#endif + + // Fill in [dest, dest + n) with the values that would be at + // [src, src + n) while this greenlet is running. This is like memcpy + // except that if the greenlet is suspended it accounts for the portion + // of the greenlet's stack that was spilled to the heap. `src` may + // be on this greenlet's stack, or on the heap, but not on a different + // greenlet's stack. + void copy_from_stack(void* dest, const void* src, size_t n) const; + }; +#ifdef GREENLET_USE_STDIO + std::ostream& operator<<(std::ostream& os, const StackState& s); +#endif + + class SwitchingArgs + { + private: + G_NO_ASSIGNMENT_OF_CLS(SwitchingArgs); + // If args and kwargs are both false (NULL), this is a *throw*, not a + // switch. PyErr_... must have been called already. + OwnedObject _args; + OwnedObject _kwargs; + public: + + SwitchingArgs() + {} + + SwitchingArgs(const OwnedObject& args, const OwnedObject& kwargs) + : _args(args), + _kwargs(kwargs) + {} + + SwitchingArgs(const SwitchingArgs& other) + : _args(other._args), + _kwargs(other._kwargs) + {} + + const OwnedObject& args() + { + return this->_args; + } + + const OwnedObject& kwargs() + { + return this->_kwargs; + } + + /** + * Moves ownership from the argument to this object. + */ + SwitchingArgs& operator<<=(SwitchingArgs& other) + { + if (this != &other) { + this->_args = other._args; + this->_kwargs = other._kwargs; + other.CLEAR(); + } + return *this; + } + + /** + * Acquires ownership of the argument (consumes the reference). + */ + SwitchingArgs& operator<<=(PyObject* args) + { + this->_args = OwnedObject::consuming(args); + this->_kwargs.CLEAR(); + return *this; + } + + /** + * Acquires ownership of the argument. + * + * Sets the args to be the given value; clears the kwargs. + */ + SwitchingArgs& operator<<=(OwnedObject& args) + { + assert(&args != &this->_args); + this->_args = args; + this->_kwargs.CLEAR(); + args.CLEAR(); + + return *this; + } + + explicit operator bool() const noexcept + { + return this->_args || this->_kwargs; + } + + inline void CLEAR() + { + this->_args.CLEAR(); + this->_kwargs.CLEAR(); + } + + const std::string as_str() const noexcept + { + return PyUnicode_AsUTF8( + OwnedObject::consuming( + PyUnicode_FromFormat( + "SwitchingArgs(args=%R, kwargs=%R)", + this->_args.borrow(), + this->_kwargs.borrow() + ) + ).borrow() + ); + } + }; + + class ThreadState; + + class UserGreenlet; + class MainGreenlet; + + class Greenlet + { + private: + G_NO_COPIES_OF_CLS(Greenlet); + PyGreenlet* const _self; + private: + // XXX: Work to remove these. + friend class ThreadState; + friend class UserGreenlet; + friend class MainGreenlet; + protected: + ExceptionState exception_state; + SwitchingArgs switch_args; + StackState stack_state; + PythonState python_state; + Greenlet(PyGreenlet* p, const StackState& initial_state); + public: + // This constructor takes ownership of the PyGreenlet, by + // setting ``p->pimpl = this;``. + Greenlet(PyGreenlet* p); + virtual ~Greenlet(); + + const OwnedObject context() const; + + // You MUST call this _very_ early in the switching process to + // prepare anything that may need prepared. This might perform + // garbage collections or otherwise run arbitrary Python code. + // + // One specific use of it is for Python 3.11+, preventing + // running arbitrary code at unsafe times. See + // PythonState::may_switch_away(). + inline void may_switch_away() + { + this->python_state.may_switch_away(); + } + + inline void context(refs::BorrowedObject new_context); + + inline SwitchingArgs& args() + { + return this->switch_args; + } + + virtual const refs::BorrowedMainGreenlet main_greenlet() const = 0; + + inline intptr_t stack_saved() const noexcept + { + return this->stack_state.stack_saved(); + } + + // This is used by the macro SLP_SAVE_STATE to compute the + // difference in stack sizes. It might be nice to handle the + // computation ourself, but the type of the result + // varies by platform, so doing it in the macro is the + // simplest way. + inline const char* stack_start() const noexcept + { + return this->stack_state.stack_start(); + } + + virtual OwnedObject throw_GreenletExit_during_dealloc(const ThreadState& current_thread_state); + virtual OwnedObject g_switch() = 0; + /** + * Force the greenlet to appear dead. Used when it's not + * possible to throw an exception into a greenlet anymore. + * + * This losses access to the thread state and the main greenlet. + */ + virtual void murder_in_place(); + + /** + * Called when somebody notices we were running in a dead + * thread to allow cleaning up resources (because we can't + * raise GreenletExit into it anymore). + * This is very similar to ``murder_in_place()``, except that + * it DOES NOT lose the main greenlet or thread state. + */ + inline void deactivate_and_free(); + + + // Called when some thread wants to deallocate a greenlet + // object. + // The thread may or may not be the same thread the greenlet + // was running in. + // The thread state will be null if the thread the greenlet + // was running in was known to have exited. + void deallocing_greenlet_in_thread(const ThreadState* current_state); + + // Must be called on 3.12+ before exposing a suspended greenlet's + // frames to user code. This rewrites the linked list of interpreter + // frames to skip the ones that are being stored on the C stack (which + // can't be safely accessed while the greenlet is suspended because + // that stack space might be hosting a different greenlet), and + // sets PythonState::frames_were_exposed so we remember to restore + // the original list before resuming the greenlet. The C-stack frames + // are a low-level interpreter implementation detail; while they're + // important to the bytecode eval loop, they're superfluous for + // introspection purposes. + void expose_frames(); + + + // TODO: Figure out how to make these non-public. + inline void slp_restore_state() noexcept; + inline int slp_save_state(char *const stackref) noexcept; + + inline bool is_currently_running_in_some_thread() const; + virtual bool belongs_to_thread(const ThreadState* state) const; + + inline bool started() const + { + return this->stack_state.started(); + } + inline bool active() const + { + return this->stack_state.active(); + } + inline bool main() const + { + return this->stack_state.main(); + } + virtual refs::BorrowedMainGreenlet find_main_greenlet_in_lineage() const = 0; + + virtual const OwnedGreenlet parent() const = 0; + virtual void parent(const refs::BorrowedObject new_parent) = 0; + + inline const PythonState::OwnedFrame& top_frame() + { + return this->python_state.top_frame(); + } + + virtual const OwnedObject& run() const = 0; + virtual void run(const refs::BorrowedObject nrun) = 0; + + + virtual int tp_traverse(visitproc visit, void* arg); + virtual int tp_clear(); + + + // Return the thread state that the greenlet is running in, or + // null if the greenlet is not running or the thread is known + // to have exited. + virtual ThreadState* thread_state() const noexcept = 0; + + // Return true if the greenlet is known to have been running + // (active) in a thread that has now exited. + virtual bool was_running_in_dead_thread() const noexcept = 0; + + // Return a borrowed greenlet that is the Python object + // this object represents. + inline BorrowedGreenlet self() const noexcept + { + return BorrowedGreenlet(this->_self); + } + + // For testing. If this returns true, we should pretend that + // slp_switch() failed. + virtual bool force_slp_switch_error() const noexcept; + + protected: + inline void release_args(); + + // The functions that must not be inlined are declared virtual. + // We also mark them as protected, not private, so that the + // compiler is forced to call them through a function pointer. + // (A sufficiently smart compiler could directly call a private + // virtual function since it can never be overridden in a + // subclass). + + // Also TODO: Switch away from integer error codes and to enums, + // or throw exceptions when possible. + struct switchstack_result_t + { + int status; + Greenlet* the_new_current_greenlet; + OwnedGreenlet origin_greenlet; + + switchstack_result_t() + : status(0), + the_new_current_greenlet(nullptr) + {} + + switchstack_result_t(int err) + : status(err), + the_new_current_greenlet(nullptr) + {} + + switchstack_result_t(int err, Greenlet* state, OwnedGreenlet& origin) + : status(err), + the_new_current_greenlet(state), + origin_greenlet(origin) + { + } + + switchstack_result_t(int err, Greenlet* state, const BorrowedGreenlet& origin) + : status(err), + the_new_current_greenlet(state), + origin_greenlet(origin) + { + } + + switchstack_result_t(const switchstack_result_t& other) + : status(other.status), + the_new_current_greenlet(other.the_new_current_greenlet), + origin_greenlet(other.origin_greenlet) + {} + + switchstack_result_t& operator=(const switchstack_result_t& other) + { + this->status = other.status; + this->the_new_current_greenlet = other.the_new_current_greenlet; + this->origin_greenlet = other.origin_greenlet; + return *this; + } + }; + + OwnedObject on_switchstack_or_initialstub_failure( + Greenlet* target, + const switchstack_result_t& err, + const bool target_was_me=false, + const bool was_initial_stub=false); + + // Returns the previous greenlet we just switched away from. + virtual OwnedGreenlet g_switchstack_success() noexcept; + + + // Check the preconditions for switching to this greenlet; if they + // aren't met, throws PyErrOccurred. Most callers will want to + // catch this and clear the arguments + inline void check_switch_allowed() const; + class GreenletStartedWhileInPython : public std::runtime_error + { + public: + GreenletStartedWhileInPython() : std::runtime_error("") + {} + }; + + protected: + + + /** + Perform a stack switch into this greenlet. + + This temporarily sets the global variable + ``switching_thread_state`` to this greenlet; as soon as the + call to ``slp_switch`` completes, this is reset to NULL. + Consequently, this depends on the GIL. + + TODO: Adopt the stackman model and pass ``slp_switch`` a + callback function and context pointer; this eliminates the + need for global variables altogether. + + Because the stack switch happens in this function, this + function can't use its own stack (local) variables, set + before the switch, and then accessed after the switch. + + Further, you con't even access ``g_thread_state_global`` + before and after the switch from the global variable. + Because it is thread local some compilers cache it in a + register/on the stack, notably new versions of MSVC; this + breaks with strange crashes sometime later, because writing + to anything in ``g_thread_state_global`` after the switch + is actually writing to random memory. For this reason, we + call a non-inlined function to finish the operation. (XXX: + The ``/GT`` MSVC compiler argument probably fixes that.) + + It is very important that stack switch is 'atomic', i.e. no + calls into other Python code allowed (except very few that + are safe), because global variables are very fragile. (This + should no longer be the case with thread-local variables.) + + */ + // Made virtual to facilitate subclassing UserGreenlet for testing. + virtual switchstack_result_t g_switchstack(void); + +class TracingGuard +{ +private: + PyThreadState* tstate; +public: + TracingGuard() + : tstate(PyThreadState_GET()) + { + PyThreadState_EnterTracing(this->tstate); + } + + ~TracingGuard() + { + PyThreadState_LeaveTracing(this->tstate); + this->tstate = nullptr; + } + + inline void CallTraceFunction(const OwnedObject& tracefunc, + const greenlet::refs::ImmortalEventName& event, + const BorrowedGreenlet& origin, + const BorrowedGreenlet& target) + { + // TODO: This calls tracefunc(event, (origin, target)). Add a shortcut + // function for that that's specialized to avoid the Py_BuildValue + // string parsing, or start with just using "ON" format with PyTuple_Pack(2, + // origin, target). That seems like what the N format is meant + // for. + // XXX: Why does event not automatically cast back to a PyObject? + // It tries to call the "deleted constructor ImmortalEventName + // const" instead. + assert(tracefunc); + assert(event); + assert(origin); + assert(target); + greenlet::refs::NewReference retval( + PyObject_CallFunction( + tracefunc.borrow(), + "O(OO)", + event.borrow(), + origin.borrow(), + target.borrow() + )); + if (!retval) { + throw PyErrOccurred::from_current(); + } + } +}; + + static void + g_calltrace(const OwnedObject& tracefunc, + const greenlet::refs::ImmortalEventName& event, + const greenlet::refs::BorrowedGreenlet& origin, + const BorrowedGreenlet& target); + private: + OwnedObject g_switch_finish(const switchstack_result_t& err); + + }; + + class UserGreenlet : public Greenlet + { + private: + static greenlet::PythonAllocator allocator; + OwnedMainGreenlet _main_greenlet; + OwnedObject _run_callable; + OwnedGreenlet _parent; + public: + static void* operator new(size_t UNUSED(count)); + static void operator delete(void* ptr); + + UserGreenlet(PyGreenlet* p, BorrowedGreenlet the_parent); + virtual ~UserGreenlet(); + + virtual refs::BorrowedMainGreenlet find_main_greenlet_in_lineage() const; + virtual bool was_running_in_dead_thread() const noexcept; + virtual ThreadState* thread_state() const noexcept; + virtual OwnedObject g_switch(); + virtual const OwnedObject& run() const + { + if (this->started() || !this->_run_callable) { + throw AttributeError("run"); + } + return this->_run_callable; + } + virtual void run(const refs::BorrowedObject nrun); + + virtual const OwnedGreenlet parent() const; + virtual void parent(const refs::BorrowedObject new_parent); + + virtual const refs::BorrowedMainGreenlet main_greenlet() const; + + virtual void murder_in_place(); + virtual bool belongs_to_thread(const ThreadState* state) const; + virtual int tp_traverse(visitproc visit, void* arg); + virtual int tp_clear(); + class ParentIsCurrentGuard + { + private: + OwnedGreenlet oldparent; + UserGreenlet* greenlet; + G_NO_COPIES_OF_CLS(ParentIsCurrentGuard); + public: + ParentIsCurrentGuard(UserGreenlet* p, const ThreadState& thread_state); + ~ParentIsCurrentGuard(); + }; + virtual OwnedObject throw_GreenletExit_during_dealloc(const ThreadState& current_thread_state); + protected: + virtual switchstack_result_t g_initialstub(void* mark); + private: + // This function isn't meant to return. + // This accepts raw pointers and the ownership of them at the + // same time. The caller should use ``inner_bootstrap(origin.relinquish_ownership())``. + void inner_bootstrap(PyGreenlet* origin_greenlet, PyObject* run); + }; + + class BrokenGreenlet : public UserGreenlet + { + private: + static greenlet::PythonAllocator allocator; + public: + bool _force_switch_error = false; + bool _force_slp_switch_error = false; + + static void* operator new(size_t UNUSED(count)); + static void operator delete(void* ptr); + BrokenGreenlet(PyGreenlet* p, BorrowedGreenlet the_parent) + : UserGreenlet(p, the_parent) + {} + virtual ~BrokenGreenlet() + {} + + virtual switchstack_result_t g_switchstack(void); + virtual bool force_slp_switch_error() const noexcept; + + }; + + class MainGreenlet : public Greenlet + { + private: + static greenlet::PythonAllocator allocator; + refs::BorrowedMainGreenlet _self; + ThreadState* _thread_state; + G_NO_COPIES_OF_CLS(MainGreenlet); + public: + static void* operator new(size_t UNUSED(count)); + static void operator delete(void* ptr); + + MainGreenlet(refs::BorrowedMainGreenlet::PyType*, ThreadState*); + virtual ~MainGreenlet(); + + + virtual const OwnedObject& run() const; + virtual void run(const refs::BorrowedObject nrun); + + virtual const OwnedGreenlet parent() const; + virtual void parent(const refs::BorrowedObject new_parent); + + virtual const refs::BorrowedMainGreenlet main_greenlet() const; + + virtual refs::BorrowedMainGreenlet find_main_greenlet_in_lineage() const; + virtual bool was_running_in_dead_thread() const noexcept; + virtual ThreadState* thread_state() const noexcept; + void thread_state(ThreadState*) noexcept; + virtual OwnedObject g_switch(); + virtual int tp_traverse(visitproc visit, void* arg); + }; + + // Instantiate one on the stack to save the GC state, + // and then disable GC. When it goes out of scope, GC will be + // restored to its original state. Sadly, these APIs are only + // available on 3.10+; luckily, we only need them on 3.11+. +#if GREENLET_PY310 + class GCDisabledGuard + { + private: + int was_enabled = 0; + public: + GCDisabledGuard() + : was_enabled(PyGC_IsEnabled()) + { + PyGC_Disable(); + } + + ~GCDisabledGuard() + { + if (this->was_enabled) { + PyGC_Enable(); + } + } + }; +#endif + + OwnedObject& operator<<=(OwnedObject& lhs, greenlet::SwitchingArgs& rhs) noexcept; + + //TODO: Greenlet::g_switch() should call this automatically on its + //return value. As it is, the module code is calling it. + static inline OwnedObject + single_result(const OwnedObject& results) + { + if (results + && PyTuple_Check(results.borrow()) + && PyTuple_GET_SIZE(results.borrow()) == 1) { + PyObject* result = PyTuple_GET_ITEM(results.borrow(), 0); + assert(result); + return OwnedObject::owning(result); + } + return results; + } + + + static OwnedObject + g_handle_exit(const OwnedObject& greenlet_result); + + + template + void operator<<(const PyThreadState *const lhs, T& rhs) + { + rhs.operator<<(lhs); + } + +} // namespace greenlet ; + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenletGlobals.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenletGlobals.cpp new file mode 100644 index 0000000000000000000000000000000000000000..0087d2ff35ce68b1321371b956115872e661c726 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TGreenletGlobals.cpp @@ -0,0 +1,94 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of GreenletGlobals. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#ifndef T_GREENLET_GLOBALS +#define T_GREENLET_GLOBALS + +#include "greenlet_refs.hpp" +#include "greenlet_exceptions.hpp" +#include "greenlet_thread_support.hpp" +#include "greenlet_internal.hpp" + +namespace greenlet { + +// This encapsulates what were previously module global "constants" +// established at init time. +// This is a step towards Python3 style module state that allows +// reloading. +// +// In an earlier iteration of this code, we used placement new to be +// able to allocate this object statically still, so that references +// to its members don't incur an extra pointer indirection. +// But under some scenarios, that could result in crashes at +// shutdown because apparently the destructor was getting run twice? +class GreenletGlobals +{ + +public: + const greenlet::refs::ImmortalEventName event_switch; + const greenlet::refs::ImmortalEventName event_throw; + const greenlet::refs::ImmortalException PyExc_GreenletError; + const greenlet::refs::ImmortalException PyExc_GreenletExit; + const greenlet::refs::ImmortalObject empty_tuple; + const greenlet::refs::ImmortalObject empty_dict; + const greenlet::refs::ImmortalString str_run; + Mutex* const thread_states_to_destroy_lock; + greenlet::cleanup_queue_t thread_states_to_destroy; + + GreenletGlobals() : + event_switch("switch"), + event_throw("throw"), + PyExc_GreenletError("greenlet.error"), + PyExc_GreenletExit("greenlet.GreenletExit", PyExc_BaseException), + empty_tuple(Require(PyTuple_New(0))), + empty_dict(Require(PyDict_New())), + str_run("run"), + thread_states_to_destroy_lock(new Mutex()) + {} + + ~GreenletGlobals() + { + // This object is (currently) effectively immortal, and not + // just because of those placement new tricks; if we try to + // deallocate the static object we allocated, and overwrote, + // we would be doing so at C++ teardown time, which is after + // the final Python GIL is released, and we can't use the API + // then. + // (The members will still be destructed, but they also don't + // do any deallocation.) + } + + void queue_to_destroy(ThreadState* ts) const + { + // we're currently accessed through a static const object, + // implicitly marking our members as const, so code can't just + // call push_back (or pop_back) without casting away the + // const. + // + // Do that for callers. + greenlet::cleanup_queue_t& q = const_cast(this->thread_states_to_destroy); + q.push_back(ts); + } + + ThreadState* take_next_to_destroy() const + { + greenlet::cleanup_queue_t& q = const_cast(this->thread_states_to_destroy); + ThreadState* result = q.back(); + q.pop_back(); + return result; + } +}; + +}; // namespace greenlet + +static const greenlet::GreenletGlobals* mod_globs; + +#endif // T_GREENLET_GLOBALS diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TMainGreenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TMainGreenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..a2a9cfe4bb08c7417e8cb87edc75cd770b16f4fe --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TMainGreenlet.cpp @@ -0,0 +1,153 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of greenlet::MainGreenlet. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#ifndef T_MAIN_GREENLET_CPP +#define T_MAIN_GREENLET_CPP + +#include "TGreenlet.hpp" + + + +// Protected by the GIL. Incremented when we create a main greenlet, +// in a new thread, decremented when it is destroyed. +static Py_ssize_t G_TOTAL_MAIN_GREENLETS; + +namespace greenlet { +greenlet::PythonAllocator MainGreenlet::allocator; + +void* MainGreenlet::operator new(size_t UNUSED(count)) +{ + return allocator.allocate(1); +} + + +void MainGreenlet::operator delete(void* ptr) +{ + return allocator.deallocate(static_cast(ptr), + 1); +} + + +MainGreenlet::MainGreenlet(PyGreenlet* p, ThreadState* state) + : Greenlet(p, StackState::make_main()), + _self(p), + _thread_state(state) +{ + G_TOTAL_MAIN_GREENLETS++; +} + +MainGreenlet::~MainGreenlet() +{ + G_TOTAL_MAIN_GREENLETS--; + this->tp_clear(); +} + +ThreadState* +MainGreenlet::thread_state() const noexcept +{ + return this->_thread_state; +} + +void +MainGreenlet::thread_state(ThreadState* t) noexcept +{ + assert(!t); + this->_thread_state = t; +} + + +const BorrowedMainGreenlet +MainGreenlet::main_greenlet() const +{ + return this->_self; +} + +BorrowedMainGreenlet +MainGreenlet::find_main_greenlet_in_lineage() const +{ + return BorrowedMainGreenlet(this->_self); +} + +bool +MainGreenlet::was_running_in_dead_thread() const noexcept +{ + return !this->_thread_state; +} + +OwnedObject +MainGreenlet::g_switch() +{ + try { + this->check_switch_allowed(); + } + catch (const PyErrOccurred&) { + this->release_args(); + throw; + } + + switchstack_result_t err = this->g_switchstack(); + if (err.status < 0) { + // XXX: This code path is untested, but it is shared + // with the UserGreenlet path that is tested. + return this->on_switchstack_or_initialstub_failure( + this, + err, + true, // target was me + false // was initial stub + ); + } + + return err.the_new_current_greenlet->g_switch_finish(err); +} + +int +MainGreenlet::tp_traverse(visitproc visit, void* arg) +{ + if (this->_thread_state) { + // we've already traversed main, (self), don't do it again. + int result = this->_thread_state->tp_traverse(visit, arg, false); + if (result) { + return result; + } + } + return Greenlet::tp_traverse(visit, arg); +} + +const OwnedObject& +MainGreenlet::run() const +{ + throw AttributeError("Main greenlets do not have a run attribute."); +} + +void +MainGreenlet::run(const BorrowedObject UNUSED(nrun)) +{ + throw AttributeError("Main greenlets do not have a run attribute."); +} + +void +MainGreenlet::parent(const BorrowedObject raw_new_parent) +{ + if (!raw_new_parent) { + throw AttributeError("can't delete attribute"); + } + throw AttributeError("cannot set the parent of a main greenlet"); +} + +const OwnedGreenlet +MainGreenlet::parent() const +{ + return OwnedGreenlet(); // null becomes None +} + +}; // namespace greenlet + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TPythonState.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TPythonState.cpp new file mode 100644 index 0000000000000000000000000000000000000000..a7f743cfed6ea571c1b027194a56a72eb1ac329d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TPythonState.cpp @@ -0,0 +1,402 @@ +#ifndef GREENLET_PYTHON_STATE_CPP +#define GREENLET_PYTHON_STATE_CPP + +#include +#include "TGreenlet.hpp" + +namespace greenlet { + +PythonState::PythonState() + : _top_frame() +#if GREENLET_USE_CFRAME + ,cframe(nullptr) + ,use_tracing(0) +#endif +#if GREENLET_PY314 + ,py_recursion_depth(0) +#elif GREENLET_PY312 + ,py_recursion_depth(0) + ,c_recursion_depth(0) +#else + ,recursion_depth(0) +#endif +#if GREENLET_PY313 + ,delete_later(nullptr) +#else + ,trash_delete_nesting(0) +#endif +#if GREENLET_PY311 + ,current_frame(nullptr) + ,datastack_chunk(nullptr) + ,datastack_top(nullptr) + ,datastack_limit(nullptr) +#endif +{ +#if GREENLET_USE_CFRAME + /* + The PyThreadState->cframe pointer usually points to memory on + the stack, alloceted in a call into PyEval_EvalFrameDefault. + + Initially, before any evaluation begins, it points to the + initial PyThreadState object's ``root_cframe`` object, which is + statically allocated for the lifetime of the thread. + + A greenlet can last for longer than a call to + PyEval_EvalFrameDefault, so we can't set its ``cframe`` pointer + to be the current ``PyThreadState->cframe``; nor could we use + one from the greenlet parent for the same reason. Yet a further + no: we can't allocate one scoped to the greenlet and then + destroy it when the greenlet is deallocated, because inside the + interpreter the _PyCFrame objects form a linked list, and that too + can result in accessing memory beyond its dynamic lifetime (if + the greenlet doesn't actually finish before it dies, its entry + could still be in the list). + + Using the ``root_cframe`` is problematic, though, because its + members are never modified by the interpreter and are set to 0, + meaning that its ``use_tracing`` flag is never updated. We don't + want to modify that value in the ``root_cframe`` ourself: it + *shouldn't* matter much because we should probably never get + back to the point where that's the only cframe on the stack; + even if it did matter, the major consequence of an incorrect + value for ``use_tracing`` is that if its true the interpreter + does some extra work --- however, it's just good code hygiene. + + Our solution: before a greenlet runs, after its initial + creation, it uses the ``root_cframe`` just to have something to + put there. However, once the greenlet is actually switched to + for the first time, ``g_initialstub`` (which doesn't actually + "return" while the greenlet is running) stores a new _PyCFrame on + its local stack, and copies the appropriate values from the + currently running _PyCFrame; this is then made the _PyCFrame for the + newly-minted greenlet. ``g_initialstub`` then proceeds to call + ``glet.run()``, which results in ``PyEval_...`` adding the + _PyCFrame to the list. Switches continue as normal. Finally, when + the greenlet finishes, the call to ``glet.run()`` returns and + the _PyCFrame is taken out of the linked list and the stack value + is now unused and free to expire. + + XXX: I think we can do better. If we're deallocing in the same + thread, can't we traverse the list and unlink our frame? + Can we just keep a reference to the thread state in case we + dealloc in another thread? (Is that even possible if we're still + running and haven't returned from g_initialstub?) + */ + this->cframe = &PyThreadState_GET()->root_cframe; +#endif +} + + +inline void PythonState::may_switch_away() noexcept +{ +#if GREENLET_PY311 + // PyThreadState_GetFrame is probably going to have to allocate a + // new frame object. That may trigger garbage collection. Because + // we call this during the early phases of a switch (it doesn't + // matter to which greenlet, as this has a global effect), if a GC + // triggers a switch away, two things can happen, both bad: + // - We might not get switched back to, halting forward progress. + // this is pathological, but possible. + // - We might get switched back to with a different set of + // arguments or a throw instead of a switch. That would corrupt + // our state (specifically, PyErr_Occurred() and this->args() + // would no longer agree). + // + // Thus, when we call this API, we need to have GC disabled. + // This method serves as a bottleneck we call when maybe beginning + // a switch. In this way, it is always safe -- no risk of GC -- to + // use ``_GetFrame()`` whenever we need to, just as it was in + // <=3.10 (because subsequent calls will be cached and not + // allocate memory). + + GCDisabledGuard no_gc; + Py_XDECREF(PyThreadState_GetFrame(PyThreadState_GET())); +#endif +} + +void PythonState::operator<<(const PyThreadState *const tstate) noexcept +{ + this->_context.steal(tstate->context); +#if GREENLET_USE_CFRAME + /* + IMPORTANT: ``cframe`` is a pointer into the STACK. Thus, because + the call to ``slp_switch()`` changes the contents of the stack, + you cannot read from ``ts_current->cframe`` after that call and + necessarily get the same values you get from reading it here. + Anything you need to restore from now to then must be saved in a + global/threadlocal variable (because we can't use stack + variables here either). For things that need to persist across + the switch, use `will_switch_from`. + */ + this->cframe = tstate->cframe; + #if !GREENLET_PY312 + this->use_tracing = tstate->cframe->use_tracing; + #endif +#endif // GREENLET_USE_CFRAME +#if GREENLET_PY311 + #if GREENLET_PY314 + this->py_recursion_depth = tstate->py_recursion_limit - tstate->py_recursion_remaining; + #elif GREENLET_PY312 + this->py_recursion_depth = tstate->py_recursion_limit - tstate->py_recursion_remaining; + this->c_recursion_depth = Py_C_RECURSION_LIMIT - tstate->c_recursion_remaining; + #else // not 312 + this->recursion_depth = tstate->recursion_limit - tstate->recursion_remaining; + #endif // GREENLET_PY312 + #if GREENLET_PY313 + this->current_frame = tstate->current_frame; + #elif GREENLET_USE_CFRAME + this->current_frame = tstate->cframe->current_frame; + #endif + this->datastack_chunk = tstate->datastack_chunk; + this->datastack_top = tstate->datastack_top; + this->datastack_limit = tstate->datastack_limit; + + PyFrameObject *frame = PyThreadState_GetFrame((PyThreadState *)tstate); + Py_XDECREF(frame); // PyThreadState_GetFrame gives us a new + // reference. + this->_top_frame.steal(frame); + #if GREENLET_PY313 + this->delete_later = Py_XNewRef(tstate->delete_later); + #elif GREENLET_PY312 + this->trash_delete_nesting = tstate->trash.delete_nesting; + #else // not 312 + this->trash_delete_nesting = tstate->trash_delete_nesting; + #endif // GREENLET_PY312 +#else // Not 311 + this->recursion_depth = tstate->recursion_depth; + this->_top_frame.steal(tstate->frame); + this->trash_delete_nesting = tstate->trash_delete_nesting; +#endif // GREENLET_PY311 +} + +#if GREENLET_PY312 +void GREENLET_NOINLINE(PythonState::unexpose_frames)() +{ + if (!this->top_frame()) { + return; + } + + // See GreenletState::expose_frames() and the comment on frames_were_exposed + // for more information about this logic. + _PyInterpreterFrame *iframe = this->_top_frame->f_frame; + while (iframe != nullptr) { + _PyInterpreterFrame *prev_exposed = iframe->previous; + assert(iframe->frame_obj); + memcpy(&iframe->previous, &iframe->frame_obj->_f_frame_data[0], + sizeof(void *)); + iframe = prev_exposed; + } +} +#else +void PythonState::unexpose_frames() +{} +#endif + +void PythonState::operator>>(PyThreadState *const tstate) noexcept +{ + tstate->context = this->_context.relinquish_ownership(); + /* Incrementing this value invalidates the contextvars cache, + which would otherwise remain valid across switches */ + tstate->context_ver++; +#if GREENLET_USE_CFRAME + tstate->cframe = this->cframe; + /* + If we were tracing, we need to keep tracing. + There should never be the possibility of hitting the + root_cframe here. See note above about why we can't + just copy this from ``origin->cframe->use_tracing``. + */ + #if !GREENLET_PY312 + tstate->cframe->use_tracing = this->use_tracing; + #endif +#endif // GREENLET_USE_CFRAME +#if GREENLET_PY311 + #if GREENLET_PY314 + tstate->py_recursion_remaining = tstate->py_recursion_limit - this->py_recursion_depth; + this->unexpose_frames(); + #elif GREENLET_PY312 + tstate->py_recursion_remaining = tstate->py_recursion_limit - this->py_recursion_depth; + tstate->c_recursion_remaining = Py_C_RECURSION_LIMIT - this->c_recursion_depth; + this->unexpose_frames(); + #else // \/ 3.11 + tstate->recursion_remaining = tstate->recursion_limit - this->recursion_depth; + #endif // GREENLET_PY312 + #if GREENLET_PY313 + tstate->current_frame = this->current_frame; + #elif GREENLET_USE_CFRAME + tstate->cframe->current_frame = this->current_frame; + #endif + tstate->datastack_chunk = this->datastack_chunk; + tstate->datastack_top = this->datastack_top; + tstate->datastack_limit = this->datastack_limit; + this->_top_frame.relinquish_ownership(); + #if GREENLET_PY313 + Py_XDECREF(tstate->delete_later); + tstate->delete_later = this->delete_later; + Py_CLEAR(this->delete_later); + #elif GREENLET_PY312 + tstate->trash.delete_nesting = this->trash_delete_nesting; + #else // not 3.12 + tstate->trash_delete_nesting = this->trash_delete_nesting; + #endif // GREENLET_PY312 +#else // not 3.11 + tstate->frame = this->_top_frame.relinquish_ownership(); + tstate->recursion_depth = this->recursion_depth; + tstate->trash_delete_nesting = this->trash_delete_nesting; +#endif // GREENLET_PY311 +} + +inline void PythonState::will_switch_from(PyThreadState *const origin_tstate) noexcept +{ +#if GREENLET_USE_CFRAME && !GREENLET_PY312 + // The weird thing is, we don't actually save this for an + // effect on the current greenlet, it's saved for an + // effect on the target greenlet. That is, we want + // continuity of this setting across the greenlet switch. + this->use_tracing = origin_tstate->cframe->use_tracing; +#endif +} + +void PythonState::set_initial_state(const PyThreadState* const tstate) noexcept +{ + this->_top_frame = nullptr; +#if GREENLET_PY314 + this->py_recursion_depth = tstate->py_recursion_limit - tstate->py_recursion_remaining; +#elif GREENLET_PY312 + this->py_recursion_depth = tstate->py_recursion_limit - tstate->py_recursion_remaining; + // XXX: TODO: Comment from a reviewer: + // Should this be ``Py_C_RECURSION_LIMIT - tstate->c_recursion_remaining``? + // But to me it looks more like that might not be the right + // initialization either? + this->c_recursion_depth = tstate->py_recursion_limit - tstate->py_recursion_remaining; +#elif GREENLET_PY311 + this->recursion_depth = tstate->recursion_limit - tstate->recursion_remaining; +#else + this->recursion_depth = tstate->recursion_depth; +#endif +} +// TODO: Better state management about when we own the top frame. +int PythonState::tp_traverse(visitproc visit, void* arg, bool own_top_frame) noexcept +{ + Py_VISIT(this->_context.borrow()); + if (own_top_frame) { + Py_VISIT(this->_top_frame.borrow()); + } + return 0; +} + +void PythonState::tp_clear(bool own_top_frame) noexcept +{ + PythonStateContext::tp_clear(); + // If we get here owning a frame, + // we got dealloc'd without being finished. We may or may not be + // in the same thread. + if (own_top_frame) { + this->_top_frame.CLEAR(); + } +} + +#if GREENLET_USE_CFRAME +void PythonState::set_new_cframe(_PyCFrame& frame) noexcept +{ + frame = *PyThreadState_GET()->cframe; + /* Make the target greenlet refer to the stack value. */ + this->cframe = &frame; + /* + And restore the link to the previous frame so this one gets + unliked appropriately. + */ + this->cframe->previous = &PyThreadState_GET()->root_cframe; +} +#endif + +const PythonState::OwnedFrame& PythonState::top_frame() const noexcept +{ + return this->_top_frame; +} + +void PythonState::did_finish(PyThreadState* tstate) noexcept +{ +#if GREENLET_PY311 + // See https://github.com/gevent/gevent/issues/1924 and + // https://github.com/python-greenlet/greenlet/issues/328. In + // short, Python 3.11 allocates memory for frames as a sort of + // linked list that's kept as part of PyThreadState in the + // ``datastack_chunk`` member and friends. These are saved and + // restored as part of switching greenlets. + // + // When we initially switch to a greenlet, we set those to NULL. + // That causes the frame management code to treat this like a + // brand new thread and start a fresh list of chunks, beginning + // with a new "root" chunk. As we make calls in this greenlet, + // those chunks get added, and as calls return, they get popped. + // But the frame code (pystate.c) is careful to make sure that the + // root chunk never gets popped. + // + // Thus, when a greenlet exits for the last time, there will be at + // least a single root chunk that we must be responsible for + // deallocating. + // + // The complex part is that these chunks are allocated and freed + // using ``_PyObject_VirtualAlloc``/``Free``. Those aren't public + // functions, and they aren't exported for linking. It so happens + // that we know they are just thin wrappers around the Arena + // allocator, so we can use that directly to deallocate in a + // compatible way. + // + // CAUTION: Check this implementation detail on every major version. + // + // It might be nice to be able to do this in our destructor, but + // can we be sure that no one else is using that memory? Plus, as + // described below, our pointers may not even be valid anymore. As + // a special case, there is one time that we know we can do this, + // and that's from the destructor of the associated UserGreenlet + // (NOT main greenlet) + PyObjectArenaAllocator alloc; + _PyStackChunk* chunk = nullptr; + if (tstate) { + // We really did finish, we can never be switched to again. + chunk = tstate->datastack_chunk; + // Unfortunately, we can't do much sanity checking. Our + // this->datastack_chunk pointer is out of date (evaluation may + // have popped down through it already) so we can't verify that + // we deallocate it. I don't think we can even check datastack_top + // for the same reason. + + PyObject_GetArenaAllocator(&alloc); + tstate->datastack_chunk = nullptr; + tstate->datastack_limit = nullptr; + tstate->datastack_top = nullptr; + + } + else if (this->datastack_chunk) { + // The UserGreenlet (NOT the main greenlet!) is being deallocated. If we're + // still holding a stack chunk, it's garbage because we know + // we can never switch back to let cPython clean it up. + // Because the last time we got switched away from, and we + // haven't run since then, we know our chain is valid and can + // be dealloced. + chunk = this->datastack_chunk; + PyObject_GetArenaAllocator(&alloc); + } + + if (alloc.free && chunk) { + // In case the arena mechanism has been torn down already. + while (chunk) { + _PyStackChunk *prev = chunk->previous; + chunk->previous = nullptr; + alloc.free(alloc.ctx, chunk, chunk->size); + chunk = prev; + } + } + + this->datastack_chunk = nullptr; + this->datastack_limit = nullptr; + this->datastack_top = nullptr; +#endif +} + + +}; // namespace greenlet + +#endif // GREENLET_PYTHON_STATE_CPP diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TStackState.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TStackState.cpp new file mode 100644 index 0000000000000000000000000000000000000000..9743ab51b56738e20d1bcaa70ea1e01c599299dd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TStackState.cpp @@ -0,0 +1,265 @@ +#ifndef GREENLET_STACK_STATE_CPP +#define GREENLET_STACK_STATE_CPP + +#include "TGreenlet.hpp" + +namespace greenlet { + +#ifdef GREENLET_USE_STDIO +#include +using std::cerr; +using std::endl; + +std::ostream& operator<<(std::ostream& os, const StackState& s) +{ + os << "StackState(stack_start=" << (void*)s._stack_start + << ", stack_stop=" << (void*)s.stack_stop + << ", stack_copy=" << (void*)s.stack_copy + << ", stack_saved=" << s._stack_saved + << ", stack_prev=" << s.stack_prev + << ", addr=" << &s + << ")"; + return os; +} +#endif + +StackState::StackState(void* mark, StackState& current) + : _stack_start(nullptr), + stack_stop((char*)mark), + stack_copy(nullptr), + _stack_saved(0), + /* Skip a dying greenlet */ + stack_prev(current._stack_start + ? ¤t + : current.stack_prev) +{ +} + +StackState::StackState() + : _stack_start(nullptr), + stack_stop(nullptr), + stack_copy(nullptr), + _stack_saved(0), + stack_prev(nullptr) +{ +} + +StackState::StackState(const StackState& other) +// can't use a delegating constructor because of +// MSVC for Python 2.7 + : _stack_start(nullptr), + stack_stop(nullptr), + stack_copy(nullptr), + _stack_saved(0), + stack_prev(nullptr) +{ + this->operator=(other); +} + +StackState& StackState::operator=(const StackState& other) +{ + if (&other == this) { + return *this; + } + if (other._stack_saved) { + throw std::runtime_error("Refusing to steal memory."); + } + + //If we have memory allocated, dispose of it + this->free_stack_copy(); + + this->_stack_start = other._stack_start; + this->stack_stop = other.stack_stop; + this->stack_copy = other.stack_copy; + this->_stack_saved = other._stack_saved; + this->stack_prev = other.stack_prev; + return *this; +} + +inline void StackState::free_stack_copy() noexcept +{ + PyMem_Free(this->stack_copy); + this->stack_copy = nullptr; + this->_stack_saved = 0; +} + +inline void StackState::copy_heap_to_stack(const StackState& current) noexcept +{ + + /* Restore the heap copy back into the C stack */ + if (this->_stack_saved != 0) { + memcpy(this->_stack_start, this->stack_copy, this->_stack_saved); + this->free_stack_copy(); + } + StackState* owner = const_cast(¤t); + if (!owner->_stack_start) { + owner = owner->stack_prev; /* greenlet is dying, skip it */ + } + while (owner && owner->stack_stop <= this->stack_stop) { + // cerr << "\tOwner: " << owner << endl; + owner = owner->stack_prev; /* find greenlet with more stack */ + } + this->stack_prev = owner; + // cerr << "\tFinished with: " << *this << endl; +} + +inline int StackState::copy_stack_to_heap_up_to(const char* const stop) noexcept +{ + /* Save more of g's stack into the heap -- at least up to 'stop' + g->stack_stop |________| + | | + | __ stop . . . . . + | | ==> . . + |________| _______ + | | | | + | | | | + g->stack_start | | |_______| g->stack_copy + */ + intptr_t sz1 = this->_stack_saved; + intptr_t sz2 = stop - this->_stack_start; + assert(this->_stack_start); + if (sz2 > sz1) { + char* c = (char*)PyMem_Realloc(this->stack_copy, sz2); + if (!c) { + PyErr_NoMemory(); + return -1; + } + memcpy(c + sz1, this->_stack_start + sz1, sz2 - sz1); + this->stack_copy = c; + this->_stack_saved = sz2; + } + return 0; +} + +inline int StackState::copy_stack_to_heap(char* const stackref, + const StackState& current) noexcept +{ + /* must free all the C stack up to target_stop */ + const char* const target_stop = this->stack_stop; + + StackState* owner = const_cast(¤t); + assert(owner->_stack_saved == 0); // everything is present on the stack + if (!owner->_stack_start) { + owner = owner->stack_prev; /* not saved if dying */ + } + else { + owner->_stack_start = stackref; + } + + while (owner->stack_stop < target_stop) { + /* ts_current is entierely within the area to free */ + if (owner->copy_stack_to_heap_up_to(owner->stack_stop)) { + return -1; /* XXX */ + } + owner = owner->stack_prev; + } + if (owner != this) { + if (owner->copy_stack_to_heap_up_to(target_stop)) { + return -1; /* XXX */ + } + } + return 0; +} + +inline bool StackState::started() const noexcept +{ + return this->stack_stop != nullptr; +} + +inline bool StackState::main() const noexcept +{ + return this->stack_stop == (char*)-1; +} + +inline bool StackState::active() const noexcept +{ + return this->_stack_start != nullptr; +} + +inline void StackState::set_active() noexcept +{ + assert(this->_stack_start == nullptr); + this->_stack_start = (char*)1; +} + +inline void StackState::set_inactive() noexcept +{ + this->_stack_start = nullptr; + // XXX: What if we still have memory out there? + // That case is actually triggered by + // test_issue251_issue252_explicit_reference_not_collectable (greenlet.tests.test_leaks.TestLeaks) + // and + // test_issue251_issue252_need_to_collect_in_background + // (greenlet.tests.test_leaks.TestLeaks) + // + // Those objects never get deallocated, so the destructor never + // runs. + // It *seems* safe to clean up the memory here? + if (this->_stack_saved) { + this->free_stack_copy(); + } +} + +inline intptr_t StackState::stack_saved() const noexcept +{ + return this->_stack_saved; +} + +inline char* StackState::stack_start() const noexcept +{ + return this->_stack_start; +} + + +inline StackState StackState::make_main() noexcept +{ + StackState s; + s._stack_start = (char*)1; + s.stack_stop = (char*)-1; + return s; +} + +StackState::~StackState() +{ + if (this->_stack_saved != 0) { + this->free_stack_copy(); + } +} + +void StackState::copy_from_stack(void* vdest, const void* vsrc, size_t n) const +{ + char* dest = static_cast(vdest); + const char* src = static_cast(vsrc); + if (src + n <= this->_stack_start + || src >= this->_stack_start + this->_stack_saved + || this->_stack_saved == 0) { + // Nothing we're copying was spilled from the stack + memcpy(dest, src, n); + return; + } + + if (src < this->_stack_start) { + // Copy the part before the saved stack. + // We know src + n > _stack_start due to the test above. + const size_t nbefore = this->_stack_start - src; + memcpy(dest, src, nbefore); + dest += nbefore; + src += nbefore; + n -= nbefore; + } + // We know src >= _stack_start after the before-copy, and + // src < _stack_start + _stack_saved due to the first if condition + size_t nspilled = std::min(n, this->_stack_start + this->_stack_saved - src); + memcpy(dest, this->stack_copy + (src - this->_stack_start), nspilled); + dest += nspilled; + src += nspilled; + n -= nspilled; + if (n > 0) { + // Copy the part after the saved stack + memcpy(dest, src, n); + } +} + +}; // namespace greenlet + +#endif // GREENLET_STACK_STATE_CPP diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadState.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadState.hpp new file mode 100644 index 0000000000000000000000000000000000000000..e4e6f6cba952a277b6321d84c9688eaebc34d38d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadState.hpp @@ -0,0 +1,497 @@ +#ifndef GREENLET_THREAD_STATE_HPP +#define GREENLET_THREAD_STATE_HPP + +#include +#include + +#include "greenlet_internal.hpp" +#include "greenlet_refs.hpp" +#include "greenlet_thread_support.hpp" + +using greenlet::refs::BorrowedObject; +using greenlet::refs::BorrowedGreenlet; +using greenlet::refs::BorrowedMainGreenlet; +using greenlet::refs::OwnedMainGreenlet; +using greenlet::refs::OwnedObject; +using greenlet::refs::OwnedGreenlet; +using greenlet::refs::OwnedList; +using greenlet::refs::PyErrFetchParam; +using greenlet::refs::PyArgParseParam; +using greenlet::refs::ImmortalString; +using greenlet::refs::CreatedModule; +using greenlet::refs::PyErrPieces; +using greenlet::refs::NewReference; + +namespace greenlet { +/** + * Thread-local state of greenlets. + * + * Each native thread will get exactly one of these objects, + * automatically accessed through the best available thread-local + * mechanism the compiler supports (``thread_local`` for C++11 + * compilers or ``__thread``/``declspec(thread)`` for older GCC/clang + * or MSVC, respectively.) + * + * Previously, we kept thread-local state mostly in a bunch of + * ``static volatile`` variables in the main greenlet file.. This had + * the problem of requiring extra checks, loops, and great care + * accessing these variables if we potentially invoked any Python code + * that could release the GIL, because the state could change out from + * under us. Making the variables thread-local solves this problem. + * + * When we detected that a greenlet API accessing the current greenlet + * was invoked from a different thread than the greenlet belonged to, + * we stored a reference to the greenlet in the Python thread + * dictionary for the thread the greenlet belonged to. This could lead + * to memory leaks if the thread then exited (because of a reference + * cycle, as greenlets referred to the thread dictionary, and deleting + * non-current greenlets leaked their frame plus perhaps arguments on + * the C stack). If a thread exited while still having running + * greenlet objects (perhaps that had just switched back to the main + * greenlet), and did not invoke one of the greenlet APIs *in that + * thread, immediately before it exited, without some other thread + * then being invoked*, such a leak was guaranteed. + * + * This can be partly solved by using compiler thread-local variables + * instead of the Python thread dictionary, thus avoiding a cycle. + * + * To fully solve this problem, we need a reliable way to know that a + * thread is done and we should clean up the main greenlet. On POSIX, + * we can use the destructor function of ``pthread_key_create``, but + * there's nothing similar on Windows; a C++11 thread local object + * reliably invokes its destructor when the thread it belongs to exits + * (non-C++11 compilers offer ``__thread`` or ``declspec(thread)`` to + * create thread-local variables, but they can't hold C++ objects that + * invoke destructors; the C++11 version is the most portable solution + * I found). When the thread exits, we can drop references and + * otherwise manipulate greenlets and frames that we know can no + * longer be switched to. For compilers that don't support C++11 + * thread locals, we have a solution that uses the python thread + * dictionary, though it may not collect everything as promptly as + * other compilers do, if some other library is using the thread + * dictionary and has a cycle or extra reference. + * + * There are two small wrinkles. The first is that when the thread + * exits, it is too late to actually invoke Python APIs: the Python + * thread state is gone, and the GIL is released. To solve *this* + * problem, our destructor uses ``Py_AddPendingCall`` to transfer the + * destruction work to the main thread. (This is not an issue for the + * dictionary solution.) + * + * The second is that once the thread exits, the thread local object + * is invalid and we can't even access a pointer to it, so we can't + * pass it to ``Py_AddPendingCall``. This is handled by actually using + * a second object that's thread local (ThreadStateCreator) and having + * it dynamically allocate this object so it can live until the + * pending call runs. + */ + + + +class ThreadState { +private: + // As of commit 08ad1dd7012b101db953f492e0021fb08634afad + // this class needed 56 bytes in o Py_DEBUG build + // on 64-bit macOS 11. + // Adding the vector takes us up to 80 bytes () + + /* Strong reference to the main greenlet */ + OwnedMainGreenlet main_greenlet; + + /* Strong reference to the current greenlet. */ + OwnedGreenlet current_greenlet; + + /* Strong reference to the trace function, if any. */ + OwnedObject tracefunc; + + typedef std::vector > deleteme_t; + /* A vector of raw PyGreenlet pointers representing things that need + deleted when this thread is running. The vector owns the + references, but you need to manually INCREF/DECREF as you use + them. We don't use a vector because we + make copy of this vector, and that would become O(n) as all the + refcounts are incremented in the copy. + */ + deleteme_t deleteme; + +#ifdef GREENLET_NEEDS_EXCEPTION_STATE_SAVED + void* exception_state; +#endif + + static std::clock_t _clocks_used_doing_gc; + static ImmortalString get_referrers_name; + static PythonAllocator allocator; + + G_NO_COPIES_OF_CLS(ThreadState); + + + // Allocates a main greenlet for the thread state. If this fails, + // exits the process. Called only during constructing a ThreadState. + MainGreenlet* alloc_main() + { + PyGreenlet* gmain; + + /* create the main greenlet for this thread */ + gmain = reinterpret_cast(PyType_GenericAlloc(&PyGreenlet_Type, 0)); + if (gmain == NULL) { + throw PyFatalError("alloc_main failed to alloc"); //exits the process + } + + MainGreenlet* const main = new MainGreenlet(gmain, this); + + assert(Py_REFCNT(gmain) == 1); + assert(gmain->pimpl == main); + return main; + } + + +public: + static void* operator new(size_t UNUSED(count)) + { + return ThreadState::allocator.allocate(1); + } + + static void operator delete(void* ptr) + { + return ThreadState::allocator.deallocate(static_cast(ptr), + 1); + } + + static void init() + { + ThreadState::get_referrers_name = "get_referrers"; + ThreadState::_clocks_used_doing_gc = 0; + } + + ThreadState() + { + +#ifdef GREENLET_NEEDS_EXCEPTION_STATE_SAVED + this->exception_state = slp_get_exception_state(); +#endif + + // XXX: Potentially dangerous, exposing a not fully + // constructed object. + MainGreenlet* const main = this->alloc_main(); + this->main_greenlet = OwnedMainGreenlet::consuming( + main->self() + ); + assert(this->main_greenlet); + this->current_greenlet = main->self(); + // The main greenlet starts with 1 refs: The returned one. We + // then copied it to the current greenlet. + assert(this->main_greenlet.REFCNT() == 2); + } + + inline void restore_exception_state() + { +#ifdef GREENLET_NEEDS_EXCEPTION_STATE_SAVED + // It's probably important this be inlined and only call C + // functions to avoid adding an SEH frame. + slp_set_exception_state(this->exception_state); +#endif + } + + inline bool has_main_greenlet() const noexcept + { + return bool(this->main_greenlet); + } + + // Called from the ThreadStateCreator when we're in non-standard + // threading mode. In that case, there is an object in the Python + // thread state dictionary that points to us. The main greenlet + // also traverses into us, in which case it's crucial not to + // traverse back into the main greenlet. + int tp_traverse(visitproc visit, void* arg, bool traverse_main=true) + { + if (traverse_main) { + Py_VISIT(main_greenlet.borrow_o()); + } + if (traverse_main || current_greenlet != main_greenlet) { + Py_VISIT(current_greenlet.borrow_o()); + } + Py_VISIT(tracefunc.borrow()); + return 0; + } + + inline BorrowedMainGreenlet borrow_main_greenlet() const noexcept + { + assert(this->main_greenlet); + assert(this->main_greenlet.REFCNT() >= 2); + return this->main_greenlet; + }; + + inline OwnedMainGreenlet get_main_greenlet() const noexcept + { + return this->main_greenlet; + } + + /** + * In addition to returning a new reference to the currunt + * greenlet, this performs any maintenance needed. + */ + inline OwnedGreenlet get_current() + { + /* green_dealloc() cannot delete greenlets from other threads, so + it stores them in the thread dict; delete them now. */ + this->clear_deleteme_list(); + //assert(this->current_greenlet->main_greenlet == this->main_greenlet); + //assert(this->main_greenlet->main_greenlet == this->main_greenlet); + return this->current_greenlet; + } + + /** + * As for non-const get_current(); + */ + inline BorrowedGreenlet borrow_current() + { + this->clear_deleteme_list(); + return this->current_greenlet; + } + + /** + * Does no maintenance. + */ + inline OwnedGreenlet get_current() const + { + return this->current_greenlet; + } + + template + inline bool is_current(const refs::PyObjectPointer& obj) const + { + return this->current_greenlet.borrow_o() == obj.borrow_o(); + } + + inline void set_current(const OwnedGreenlet& target) + { + this->current_greenlet = target; + } + +private: + /** + * Deref and remove the greenlets from the deleteme list. Must be + * holding the GIL. + * + * If *murder* is true, then we must be called from a different + * thread than the one that these greenlets were running in. + * In that case, if the greenlet was actually running, we destroy + * the frame reference and otherwise make it appear dead before + * proceeding; otherwise, we would try (and fail) to raise an + * exception in it and wind up right back in this list. + */ + inline void clear_deleteme_list(const bool murder=false) + { + if (!this->deleteme.empty()) { + // It's possible we could add items to this list while + // running Python code if there's a thread switch, so we + // need to defensively copy it before that can happen. + deleteme_t copy = this->deleteme; + this->deleteme.clear(); // in case things come back on the list + for(deleteme_t::iterator it = copy.begin(), end = copy.end(); + it != end; + ++it ) { + PyGreenlet* to_del = *it; + if (murder) { + // Force each greenlet to appear dead; we can't raise an + // exception into it anymore anyway. + to_del->pimpl->murder_in_place(); + } + + // The only reference to these greenlets should be in + // this list, decreffing them should let them be + // deleted again, triggering calls to green_dealloc() + // in the correct thread (if we're not murdering). + // This may run arbitrary Python code and switch + // threads or greenlets! + Py_DECREF(to_del); + if (PyErr_Occurred()) { + PyErr_WriteUnraisable(nullptr); + PyErr_Clear(); + } + } + } + } + +public: + + /** + * Returns a new reference, or a false object. + */ + inline OwnedObject get_tracefunc() const + { + return tracefunc; + }; + + + inline void set_tracefunc(BorrowedObject tracefunc) + { + assert(tracefunc); + if (tracefunc == BorrowedObject(Py_None)) { + this->tracefunc.CLEAR(); + } + else { + this->tracefunc = tracefunc; + } + } + + /** + * Given a reference to a greenlet that some other thread + * attempted to delete (has a refcount of 0) store it for later + * deletion when the thread this state belongs to is current. + */ + inline void delete_when_thread_running(PyGreenlet* to_del) + { + Py_INCREF(to_del); + this->deleteme.push_back(to_del); + } + + /** + * Set to std::clock_t(-1) to disable. + */ + inline static std::clock_t& clocks_used_doing_gc() + { + return ThreadState::_clocks_used_doing_gc; + } + + ~ThreadState() + { + if (!PyInterpreterState_Head()) { + // We shouldn't get here (our callers protect us) + // but if we do, all we can do is bail early. + return; + } + + // We should not have an "origin" greenlet; that only exists + // for the temporary time during a switch, which should not + // be in progress as the thread dies. + //assert(!this->switching_state.origin); + + this->tracefunc.CLEAR(); + + // Forcibly GC as much as we can. + this->clear_deleteme_list(true); + + // The pending call did this. + assert(this->main_greenlet->thread_state() == nullptr); + + // If the main greenlet is the current greenlet, + // then we "fell off the end" and the thread died. + // It's possible that there is some other greenlet that + // switched to us, leaving a reference to the main greenlet + // on the stack, somewhere uncollectible. Try to detect that. + if (this->current_greenlet == this->main_greenlet && this->current_greenlet) { + assert(this->current_greenlet->is_currently_running_in_some_thread()); + // Drop one reference we hold. + this->current_greenlet.CLEAR(); + assert(!this->current_greenlet); + // Only our reference to the main greenlet should be left, + // But hold onto the pointer in case we need to do extra cleanup. + PyGreenlet* old_main_greenlet = this->main_greenlet.borrow(); + Py_ssize_t cnt = this->main_greenlet.REFCNT(); + this->main_greenlet.CLEAR(); + if (ThreadState::_clocks_used_doing_gc != std::clock_t(-1) + && cnt == 2 && Py_REFCNT(old_main_greenlet) == 1) { + // Highly likely that the reference is somewhere on + // the stack, not reachable by GC. Verify. + // XXX: This is O(n) in the total number of objects. + // TODO: Add a way to disable this at runtime, and + // another way to report on it. + std::clock_t begin = std::clock(); + NewReference gc(PyImport_ImportModule("gc")); + if (gc) { + OwnedObject get_referrers = gc.PyRequireAttr(ThreadState::get_referrers_name); + OwnedList refs(get_referrers.PyCall(old_main_greenlet)); + if (refs && refs.empty()) { + assert(refs.REFCNT() == 1); + // We found nothing! So we left a dangling + // reference: Probably the last thing some + // other greenlet did was call + // 'getcurrent().parent.switch()' to switch + // back to us. Clean it up. This will be the + // case on CPython 3.7 and newer, as they use + // an internal calling conversion that avoids + // creating method objects and storing them on + // the stack. + Py_DECREF(old_main_greenlet); + } + else if (refs + && refs.size() == 1 + && PyCFunction_Check(refs.at(0)) + && Py_REFCNT(refs.at(0)) == 2) { + assert(refs.REFCNT() == 1); + // Ok, we found a C method that refers to the + // main greenlet, and its only referenced + // twice, once in the list we just created, + // once from...somewhere else. If we can't + // find where else, then this is a leak. + // This happens in older versions of CPython + // that create a bound method object somewhere + // on the stack that we'll never get back to. + if (PyCFunction_GetFunction(refs.at(0).borrow()) == (PyCFunction)green_switch) { + BorrowedObject function_w = refs.at(0); + refs.clear(); // destroy the reference + // from the list. + // back to one reference. Can *it* be + // found? + assert(function_w.REFCNT() == 1); + refs = get_referrers.PyCall(function_w); + if (refs && refs.empty()) { + // Nope, it can't be found so it won't + // ever be GC'd. Drop it. + Py_CLEAR(function_w); + } + } + } + std::clock_t end = std::clock(); + ThreadState::_clocks_used_doing_gc += (end - begin); + } + } + } + + // We need to make sure this greenlet appears to be dead, + // because otherwise deallocing it would fail to raise an + // exception in it (the thread is dead) and put it back in our + // deleteme list. + if (this->current_greenlet) { + this->current_greenlet->murder_in_place(); + this->current_greenlet.CLEAR(); + } + + if (this->main_greenlet) { + // Couldn't have been the main greenlet that was running + // when the thread exited (because we already cleared this + // pointer if it was). This shouldn't be possible? + + // If the main greenlet was current when the thread died (it + // should be, right?) then we cleared its self pointer above + // when we cleared the current greenlet's main greenlet pointer. + // assert(this->main_greenlet->main_greenlet == this->main_greenlet + // || !this->main_greenlet->main_greenlet); + // // self reference, probably gone + // this->main_greenlet->main_greenlet.CLEAR(); + + // This will actually go away when the ivar is destructed. + this->main_greenlet.CLEAR(); + } + + if (PyErr_Occurred()) { + PyErr_WriteUnraisable(NULL); + PyErr_Clear(); + } + + } + +}; + +ImmortalString ThreadState::get_referrers_name(nullptr); +PythonAllocator ThreadState::allocator; +std::clock_t ThreadState::_clocks_used_doing_gc(0); + + + + + +}; // namespace greenlet + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateCreator.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateCreator.hpp new file mode 100644 index 0000000000000000000000000000000000000000..2ec7ab55bb5c887da8d216215727d549b2cbcf02 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateCreator.hpp @@ -0,0 +1,102 @@ +#ifndef GREENLET_THREAD_STATE_CREATOR_HPP +#define GREENLET_THREAD_STATE_CREATOR_HPP + +#include +#include + +#include "greenlet_internal.hpp" +#include "greenlet_refs.hpp" +#include "greenlet_thread_support.hpp" + +#include "TThreadState.hpp" + +namespace greenlet { + + +typedef void (*ThreadStateDestructor)(ThreadState* const); + +template +class ThreadStateCreator +{ +private: + // Initialized to 1, and, if still 1, created on access. + // Set to 0 on destruction. + ThreadState* _state; + G_NO_COPIES_OF_CLS(ThreadStateCreator); + + inline bool has_initialized_state() const noexcept + { + return this->_state != (ThreadState*)1; + } + + inline bool has_state() const noexcept + { + return this->has_initialized_state() && this->_state != nullptr; + } + +public: + + // Only one of these, auto created per thread. + // Constructing the state constructs the MainGreenlet. + ThreadStateCreator() : + _state((ThreadState*)1) + { + } + + ~ThreadStateCreator() + { + if (this->has_state()) { + Destructor(this->_state); + } + + this->_state = nullptr; + } + + inline ThreadState& state() + { + // The main greenlet will own this pointer when it is created, + // which will be right after this. The plan is to give every + // greenlet a pointer to the main greenlet for the thread it + // runs in; if we are doing something cross-thread, we need to + // access the pointer from the main greenlet. Deleting the + // thread, and hence the thread-local storage, will delete the + // state pointer in the main greenlet. + if (!this->has_initialized_state()) { + // XXX: Assuming allocation never fails + this->_state = new ThreadState; + // For non-standard threading, we need to store an object + // in the Python thread state dictionary so that it can be + // DECREF'd when the thread ends (ideally; the dict could + // last longer) and clean this object up. + } + if (!this->_state) { + throw std::runtime_error("Accessing state after destruction."); + } + return *this->_state; + } + + operator ThreadState&() + { + return this->state(); + } + + operator ThreadState*() + { + return &this->state(); + } + + inline int tp_traverse(visitproc visit, void* arg) + { + if (this->has_state()) { + return this->_state->tp_traverse(visit, arg); + } + return 0; + } + +}; + + + +}; // namespace greenlet + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateDestroy.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateDestroy.cpp new file mode 100644 index 0000000000000000000000000000000000000000..449b7887113b2398330716dca44e5ca9f7840fc9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TThreadStateDestroy.cpp @@ -0,0 +1,217 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of the ThreadState destructors. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#ifndef T_THREADSTATE_DESTROY +#define T_THREADSTATE_DESTROY + +#include "TGreenlet.hpp" + +#include "greenlet_thread_support.hpp" +#include "greenlet_compiler_compat.hpp" +#include "TGreenletGlobals.cpp" +#include "TThreadState.hpp" +#include "TThreadStateCreator.hpp" + +namespace greenlet { + +extern "C" { + +struct ThreadState_DestroyNoGIL +{ + /** + This function uses the same lock that the PendingCallback does + */ + static void + MarkGreenletDeadAndQueueCleanup(ThreadState* const state) + { +#if GREENLET_BROKEN_THREAD_LOCAL_CLEANUP_JUST_LEAK + return; +#endif + // We are *NOT* holding the GIL. Our thread is in the middle + // of its death throes and the Python thread state is already + // gone so we can't use most Python APIs. One that is safe is + // ``Py_AddPendingCall``, unless the interpreter itself has + // been torn down. There is a limited number of calls that can + // be queued: 32 (NPENDINGCALLS) in CPython 3.10, so we + // coalesce these calls using our own queue. + + if (!MarkGreenletDeadIfNeeded(state)) { + // No state, or no greenlet + return; + } + + // XXX: Because we don't have the GIL, this is a race condition. + if (!PyInterpreterState_Head()) { + // We have to leak the thread state, if the + // interpreter has shut down when we're getting + // deallocated, we can't run the cleanup code that + // deleting it would imply. + return; + } + + AddToCleanupQueue(state); + + } + +private: + + // If the state has an allocated main greenlet: + // - mark the greenlet as dead by disassociating it from the state; + // - return 1 + // Otherwise, return 0. + static bool + MarkGreenletDeadIfNeeded(ThreadState* const state) + { + if (state && state->has_main_greenlet()) { + // mark the thread as dead ASAP. + // this is racy! If we try to throw or switch to a + // greenlet from this thread from some other thread before + // we clear the state pointer, it won't realize the state + // is dead which can crash the process. + PyGreenlet* p(state->borrow_main_greenlet().borrow()); + assert(p->pimpl->thread_state() == state || p->pimpl->thread_state() == nullptr); + dynamic_cast(p->pimpl)->thread_state(nullptr); + return true; + } + return false; + } + + static void + AddToCleanupQueue(ThreadState* const state) + { + assert(state && state->has_main_greenlet()); + + // NOTE: Because we're not holding the GIL here, some other + // Python thread could run and call ``os.fork()``, which would + // be bad if that happened while we are holding the cleanup + // lock (it wouldn't function in the child process). + // Make a best effort to try to keep the duration we hold the + // lock short. + // TODO: On platforms that support it, use ``pthread_atfork`` to + // drop this lock. + LockGuard cleanup_lock(*mod_globs->thread_states_to_destroy_lock); + + mod_globs->queue_to_destroy(state); + if (mod_globs->thread_states_to_destroy.size() == 1) { + // We added the first item to the queue. We need to schedule + // the cleanup. + + // A size greater than 1 means that we have already added the pending call, + // and in fact, it may be executing now. + // If it is executing, our lock makes sure that it will see the item we just added + // to the queue on its next iteration (after we release the lock) + // + // A size of 1 means there is no pending call, OR the pending call is + // currently executing, has dropped the lock, and is deleting the last item + // from the queue; its next iteration will go ahead and delete the item we just added. + // And the pending call we schedule here will have no work to do. + int result = AddPendingCall( + PendingCallback_DestroyQueueWithGIL, + nullptr); + if (result < 0) { + // Hmm, what can we do here? + fprintf(stderr, + "greenlet: WARNING: failed in call to Py_AddPendingCall; " + "expect a memory leak.\n"); + } + } + } + + static int + PendingCallback_DestroyQueueWithGIL(void* UNUSED(arg)) + { + // We're holding the GIL here, so no Python code should be able to + // run to call ``os.fork()``. + while (1) { + ThreadState* to_destroy; + { + LockGuard cleanup_lock(*mod_globs->thread_states_to_destroy_lock); + if (mod_globs->thread_states_to_destroy.empty()) { + break; + } + to_destroy = mod_globs->take_next_to_destroy(); + } + assert(to_destroy); + assert(to_destroy->has_main_greenlet()); + // Drop the lock while we do the actual deletion. + // This allows other calls to MarkGreenletDeadAndQueueCleanup + // to enter and add to our queue. + DestroyOneWithGIL(to_destroy); + } + return 0; + } + + static void + DestroyOneWithGIL(const ThreadState* const state) + { + // Holding the GIL. + // Passed a non-shared pointer to the actual thread state. + // state -> main greenlet + assert(state->has_main_greenlet()); + PyGreenlet* main(state->borrow_main_greenlet()); + // When we need to do cross-thread operations, we check this. + // A NULL value means the thread died some time ago. + // We do this here, rather than in a Python dealloc function + // for the greenlet, in case there's still a reference out + // there. + dynamic_cast(main->pimpl)->thread_state(nullptr); + + delete state; // Deleting this runs the destructor, DECREFs the main greenlet. + } + + + static int AddPendingCall(int (*func)(void*), void* arg) + { + // If the interpreter is in the middle of finalizing, we can't add a + // pending call. Trying to do so will end up in a SIGSEGV, as + // Py_AddPendingCall will not be able to get the interpreter and will + // try to dereference a NULL pointer. It's possible this can still + // segfault if we happen to get context switched, and maybe we should + // just always implement our own AddPendingCall, but I'd like to see if + // this works first +#if GREENLET_PY313 + if (Py_IsFinalizing()) { +#else + if (_Py_IsFinalizing()) { +#endif +#ifdef GREENLET_DEBUG + // No need to log in the general case. Yes, we'll leak, + // but we're shutting down so it should be ok. + fprintf(stderr, + "greenlet: WARNING: Interpreter is finalizing. Ignoring " + "call to Py_AddPendingCall; \n"); +#endif + return 0; + } + return Py_AddPendingCall(func, arg); + } + + + + + +}; +}; + +}; // namespace greenlet + +// The intent when GET_THREAD_STATE() is needed multiple times in a +// function is to take a reference to its return value in a local +// variable, to avoid the thread-local indirection. On some platforms +// (macOS), accessing a thread-local involves a function call (plus an +// initial function call in each function that uses a thread local); +// in contrast, static volatile variables are at some pre-computed +// offset. +typedef greenlet::ThreadStateCreator ThreadStateCreator; +static thread_local ThreadStateCreator g_thread_state_global; +#define GET_THREAD_STATE() g_thread_state_global + +#endif //T_THREADSTATE_DESTROY diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TUserGreenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TUserGreenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..73a81330d1f70dad3b8fbe922bdcd2102cca55dc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/TUserGreenlet.cpp @@ -0,0 +1,662 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/** + * Implementation of greenlet::UserGreenlet. + * + * Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#ifndef T_USER_GREENLET_CPP +#define T_USER_GREENLET_CPP + +#include "greenlet_internal.hpp" +#include "TGreenlet.hpp" + +#include "TThreadStateDestroy.cpp" + + +namespace greenlet { +using greenlet::refs::BorrowedMainGreenlet; +greenlet::PythonAllocator UserGreenlet::allocator; + +void* UserGreenlet::operator new(size_t UNUSED(count)) +{ + return allocator.allocate(1); +} + + +void UserGreenlet::operator delete(void* ptr) +{ + return allocator.deallocate(static_cast(ptr), + 1); +} + + +UserGreenlet::UserGreenlet(PyGreenlet* p, BorrowedGreenlet the_parent) + : Greenlet(p), _parent(the_parent) +{ +} + +UserGreenlet::~UserGreenlet() +{ + // Python 3.11: If we don't clear out the raw frame datastack + // when deleting an unfinished greenlet, + // TestLeaks.test_untracked_memory_doesnt_increase_unfinished_thread_dealloc_in_main fails. + this->python_state.did_finish(nullptr); + this->tp_clear(); +} + + +const BorrowedMainGreenlet +UserGreenlet::main_greenlet() const +{ + return this->_main_greenlet; +} + + +BorrowedMainGreenlet +UserGreenlet::find_main_greenlet_in_lineage() const +{ + if (this->started()) { + assert(this->_main_greenlet); + return BorrowedMainGreenlet(this->_main_greenlet); + } + + if (!this->_parent) { + /* garbage collected greenlet in chain */ + // XXX: WHAT? + return BorrowedMainGreenlet(nullptr); + } + + return this->_parent->find_main_greenlet_in_lineage(); +} + + +/** + * CAUTION: This will allocate memory and may trigger garbage + * collection and arbitrary Python code. + */ +OwnedObject +UserGreenlet::throw_GreenletExit_during_dealloc(const ThreadState& current_thread_state) +{ + /* The dying greenlet cannot be a parent of ts_current + because the 'parent' field chain would hold a + reference */ + UserGreenlet::ParentIsCurrentGuard with_current_parent(this, current_thread_state); + + // We don't care about the return value, only whether an + // exception happened. Whether or not an exception happens, + // we need to restore the parent in case the greenlet gets + // resurrected. + return Greenlet::throw_GreenletExit_during_dealloc(current_thread_state); +} + +ThreadState* +UserGreenlet::thread_state() const noexcept +{ + // TODO: maybe make this throw, if the thread state isn't there? + // if (!this->main_greenlet) { + // throw std::runtime_error("No thread state"); // TODO: Better exception + // } + if (!this->_main_greenlet) { + return nullptr; + } + return this->_main_greenlet->thread_state(); +} + + +bool +UserGreenlet::was_running_in_dead_thread() const noexcept +{ + return this->_main_greenlet && !this->thread_state(); +} + +OwnedObject +UserGreenlet::g_switch() +{ + assert(this->args() || PyErr_Occurred()); + + try { + this->check_switch_allowed(); + } + catch (const PyErrOccurred&) { + this->release_args(); + throw; + } + + // Switching greenlets used to attempt to clean out ones that need + // deleted *if* we detected a thread switch. Should it still do + // that? + // An issue is that if we delete a greenlet from another thread, + // it gets queued to this thread, and ``kill_greenlet()`` switches + // back into the greenlet + + /* find the real target by ignoring dead greenlets, + and if necessary starting a greenlet. */ + switchstack_result_t err; + Greenlet* target = this; + // TODO: probably cleaner to handle the case where we do + // switch to ourself separately from the other cases. + // This can probably even further be simplified if we keep + // track of the switching_state we're going for and just call + // into g_switch() if it's not ourself. The main problem with that + // is that we would be using more stack space. + bool target_was_me = true; + bool was_initial_stub = false; + while (target) { + if (target->active()) { + if (!target_was_me) { + target->args() <<= this->args(); + assert(!this->args()); + } + err = target->g_switchstack(); + break; + } + if (!target->started()) { + // We never encounter a main greenlet that's not started. + assert(!target->main()); + UserGreenlet* real_target = static_cast(target); + assert(real_target); + void* dummymarker; + was_initial_stub = true; + if (!target_was_me) { + target->args() <<= this->args(); + assert(!this->args()); + } + try { + // This can only throw back to us while we're + // still in this greenlet. Once the new greenlet + // is bootstrapped, it has its own exception state. + err = real_target->g_initialstub(&dummymarker); + } + catch (const PyErrOccurred&) { + this->release_args(); + throw; + } + catch (const GreenletStartedWhileInPython&) { + // The greenlet was started sometime before this + // greenlet actually switched to it, i.e., + // "concurrent" calls to switch() or throw(). + // We need to retry the switch. + // Note that the current greenlet has been reset + // to this one (or we wouldn't be running!) + continue; + } + break; + } + + target = target->parent(); + target_was_me = false; + } + // The ``this`` pointer and all other stack or register based + // variables are invalid now, at least where things succeed + // above. + // But this one, probably not so much? It's not clear if it's + // safe to throw an exception at this point. + + if (err.status < 0) { + // If we get here, either g_initialstub() + // failed, or g_switchstack() failed. Either one of those + // cases SHOULD leave us in the original greenlet with a valid + // stack. + return this->on_switchstack_or_initialstub_failure(target, err, target_was_me, was_initial_stub); + } + + // err.the_new_current_greenlet would be the same as ``target``, + // if target wasn't probably corrupt. + return err.the_new_current_greenlet->g_switch_finish(err); +} + + + +Greenlet::switchstack_result_t +UserGreenlet::g_initialstub(void* mark) +{ + OwnedObject run; + + // We need to grab a reference to the current switch arguments + // in case we're entered concurrently during the call to + // GetAttr() and have to try again. + // We'll restore them when we return in that case. + // Scope them tightly to avoid ref leaks. + { + SwitchingArgs args(this->args()); + + /* save exception in case getattr clears it */ + PyErrPieces saved; + + /* + self.run is the object to call in the new greenlet. + This could run arbitrary python code and switch greenlets! + */ + run = this->self().PyRequireAttr(mod_globs->str_run); + /* restore saved exception */ + saved.PyErrRestore(); + + + /* recheck that it's safe to switch in case greenlet reparented anywhere above */ + this->check_switch_allowed(); + + /* by the time we got here another start could happen elsewhere, + * that means it should now be a regular switch. + * This can happen if the Python code is a subclass that implements + * __getattribute__ or __getattr__, or makes ``run`` a descriptor; + * all of those can run arbitrary code that switches back into + * this greenlet. + */ + if (this->stack_state.started()) { + // the successful switch cleared these out, we need to + // restore our version. They will be copied on up to the + // next target. + assert(!this->args()); + this->args() <<= args; + throw GreenletStartedWhileInPython(); + } + } + + // Sweet, if we got here, we have the go-ahead and will switch + // greenlets. + // Nothing we do from here on out should allow for a thread or + // greenlet switch: No arbitrary calls to Python, including + // decref'ing + +#if GREENLET_USE_CFRAME + /* OK, we need it, we're about to switch greenlets, save the state. */ + /* + See green_new(). This is a stack-allocated variable used + while *self* is in PyObject_Call(). + We want to defer copying the state info until we're sure + we need it and are in a stable place to do so. + */ + _PyCFrame trace_info; + + this->python_state.set_new_cframe(trace_info); +#endif + /* start the greenlet */ + ThreadState& thread_state = GET_THREAD_STATE().state(); + this->stack_state = StackState(mark, + thread_state.borrow_current()->stack_state); + this->python_state.set_initial_state(PyThreadState_GET()); + this->exception_state.clear(); + this->_main_greenlet = thread_state.get_main_greenlet(); + + /* perform the initial switch */ + switchstack_result_t err = this->g_switchstack(); + /* returns twice! + The 1st time with ``err == 1``: we are in the new greenlet. + This one owns a greenlet that used to be current. + The 2nd time with ``err <= 0``: back in the caller's + greenlet; this happens if the child finishes or switches + explicitly to us. Either way, the ``err`` variable is + created twice at the same memory location, but possibly + having different ``origin`` values. Note that it's not + constructed for the second time until the switch actually happens. + */ + if (err.status == 1) { + // In the new greenlet. + + // This never returns! Calling inner_bootstrap steals + // the contents of our run object within this stack frame, so + // it is not valid to do anything with it. + try { + this->inner_bootstrap(err.origin_greenlet.relinquish_ownership(), + run.relinquish_ownership()); + } + // Getting a C++ exception here isn't good. It's probably a + // bug in the underlying greenlet, meaning it's probably a + // C++ extension. We're going to abort anyway, but try to + // display some nice information *if* possible. Some obscure + // platforms don't properly support this (old 32-bit Arm, see see + // https://github.com/python-greenlet/greenlet/issues/385); that's not + // great, but should usually be OK because, as mentioned above, we're + // terminating anyway. + // + // The catching is tested by + // ``test_cpp.CPPTests.test_unhandled_exception_in_greenlet_aborts``. + // + // PyErrOccurred can theoretically be thrown by + // inner_bootstrap() -> g_switch_finish(), but that should + // never make it back to here. It is a std::exception and + // would be caught if it is. + catch (const std::exception& e) { + std::string base = "greenlet: Unhandled C++ exception: "; + base += e.what(); + Py_FatalError(base.c_str()); + } + catch (...) { + // Some compilers/runtimes use exceptions internally. + // It appears that GCC on Linux with libstdc++ throws an + // exception internally at process shutdown time to unwind + // stacks and clean up resources. Depending on exactly + // where we are when the process exits, that could result + // in an unknown exception getting here. If we + // Py_FatalError() or abort() here, we interfere with + // orderly process shutdown. Throwing the exception on up + // is the right thing to do. + // + // gevent's ``examples/dns_mass_resolve.py`` demonstrates this. +#ifndef NDEBUG + fprintf(stderr, + "greenlet: inner_bootstrap threw unknown exception; " + "is the process terminating?\n"); +#endif + throw; + } + Py_FatalError("greenlet: inner_bootstrap returned with no exception.\n"); + } + + + // In contrast, notice that we're keeping the origin greenlet + // around as an owned reference; we need it to call the trace + // function for the switch back into the parent. It was only + // captured at the time the switch actually happened, though, + // so we haven't been keeping an extra reference around this + // whole time. + + /* back in the parent */ + if (err.status < 0) { + /* start failed badly, restore greenlet state */ + this->stack_state = StackState(); + this->_main_greenlet.CLEAR(); + // CAUTION: This may run arbitrary Python code. + run.CLEAR(); // inner_bootstrap didn't run, we own the reference. + } + + // In the success case, the spawned code (inner_bootstrap) will + // take care of decrefing this, so we relinquish ownership so as + // to not double-decref. + + run.relinquish_ownership(); + + return err; +} + + +void +UserGreenlet::inner_bootstrap(PyGreenlet* origin_greenlet, PyObject* run) +{ + // The arguments here would be another great place for move. + // As it is, we take them as a reference so that when we clear + // them we clear what's on the stack above us. Do that NOW, and + // without using a C++ RAII object, + // so there's no way that exiting the parent frame can clear it, + // or we clear it unexpectedly. This arises in the context of the + // interpreter shutting down. See https://github.com/python-greenlet/greenlet/issues/325 + //PyObject* run = _run.relinquish_ownership(); + + /* in the new greenlet */ + assert(this->thread_state()->borrow_current() == BorrowedGreenlet(this->_self)); + // C++ exceptions cannot propagate to the parent greenlet from + // here. (TODO: Do we need a catch(...) clause, perhaps on the + // function itself? ALl we could do is terminate the program.) + // NOTE: On 32-bit Windows, the call chain is extremely + // important here in ways that are subtle, having to do with + // the depth of the SEH list. The call to restore it MUST NOT + // add a new SEH handler to the list, or we'll restore it to + // the wrong thing. + this->thread_state()->restore_exception_state(); + /* stack variables from above are no good and also will not unwind! */ + // EXCEPT: That can't be true, we access run, among others, here. + + this->stack_state.set_active(); /* running */ + + // We're about to possibly run Python code again, which + // could switch back/away to/from us, so we need to grab the + // arguments locally. + SwitchingArgs args; + args <<= this->args(); + assert(!this->args()); + + // XXX: We could clear this much earlier, right? + // Or would that introduce the possibility of running Python + // code when we don't want to? + // CAUTION: This may run arbitrary Python code. + this->_run_callable.CLEAR(); + + + // The first switch we need to manually call the trace + // function here instead of in g_switch_finish, because we + // never return there. + if (OwnedObject tracefunc = this->thread_state()->get_tracefunc()) { + OwnedGreenlet trace_origin; + trace_origin = origin_greenlet; + try { + g_calltrace(tracefunc, + args ? mod_globs->event_switch : mod_globs->event_throw, + trace_origin, + this->_self); + } + catch (const PyErrOccurred&) { + /* Turn trace errors into switch throws */ + args.CLEAR(); + } + } + + // We no longer need the origin, it was only here for + // tracing. + // We may never actually exit this stack frame so we need + // to explicitly clear it. + // This could run Python code and switch. + Py_CLEAR(origin_greenlet); + + OwnedObject result; + if (!args) { + /* pending exception */ + result = NULL; + } + else { + /* call g.run(*args, **kwargs) */ + // This could result in further switches + try { + //result = run.PyCall(args.args(), args.kwargs()); + // CAUTION: Just invoking this, before the function even + // runs, may cause memory allocations, which may trigger + // GC, which may run arbitrary Python code. + result = OwnedObject::consuming(PyObject_Call(run, args.args().borrow(), args.kwargs().borrow())); + } + catch (...) { + // Unhandled C++ exception! + + // If we declare ourselves as noexcept, if we don't catch + // this here, most platforms will just abort() the + // process. But on 64-bit Windows with older versions of + // the C runtime, this can actually corrupt memory and + // just return. We see this when compiling with the + // Windows 7.0 SDK targeting Windows Server 2008, but not + // when using the Appveyor Visual Studio 2019 image. So + // this currently only affects Python 2.7 on Windows 64. + // That is, the tests pass and the runtime aborts + // everywhere else. + // + // However, if we catch it and try to continue with a + // Python error, then all Windows 64 bit platforms corrupt + // memory. So all we can do is manually abort, hopefully + // with a good error message. (Note that the above was + // tested WITHOUT the `/EHr` switch being used at compile + // time, so MSVC may have "optimized" out important + // checking. Using that switch, we may be in a better + // place in terms of memory corruption.) But sometimes it + // can't be caught here at all, which is confusing but not + // terribly surprising; so again, the G_NOEXCEPT_WIN32 + // plus "/EHr". + // + // Hopefully the basic C stdlib is still functional enough + // for us to at least print an error. + // + // It gets more complicated than that, though, on some + // platforms, specifically at least Linux/gcc/libstdc++. They use + // an exception to unwind the stack when a background + // thread exits. (See comments about noexcept.) So this + // may not actually represent anything untoward. On those + // platforms we allow throws of this to propagate, or + // attempt to anyway. +# if defined(WIN32) || defined(_WIN32) + Py_FatalError( + "greenlet: Unhandled C++ exception from a greenlet run function. " + "Because memory is likely corrupted, terminating process."); + std::abort(); +#else + throw; +#endif + } + } + // These lines may run arbitrary code + args.CLEAR(); + Py_CLEAR(run); + + if (!result + && mod_globs->PyExc_GreenletExit.PyExceptionMatches() + && (this->args())) { + // This can happen, for example, if our only reference + // goes away after we switch back to the parent. + // See test_dealloc_switch_args_not_lost + PyErrPieces clear_error; + result <<= this->args(); + result = single_result(result); + } + this->release_args(); + this->python_state.did_finish(PyThreadState_GET()); + + result = g_handle_exit(result); + assert(this->thread_state()->borrow_current() == this->_self); + + /* jump back to parent */ + this->stack_state.set_inactive(); /* dead */ + + + // TODO: Can we decref some things here? Release our main greenlet + // and maybe parent? + for (Greenlet* parent = this->_parent; + parent; + parent = parent->parent()) { + // We need to somewhere consume a reference to + // the result; in most cases we'll never have control + // back in this stack frame again. Calling + // green_switch actually adds another reference! + // This would probably be clearer with a specific API + // to hand results to the parent. + parent->args() <<= result; + assert(!result); + // The parent greenlet now owns the result; in the + // typical case we'll never get back here to assign to + // result and thus release the reference. + try { + result = parent->g_switch(); + } + catch (const PyErrOccurred&) { + // Ignore, keep passing the error on up. + } + + /* Return here means switch to parent failed, + * in which case we throw *current* exception + * to the next parent in chain. + */ + assert(!result); + } + /* We ran out of parents, cannot continue */ + PyErr_WriteUnraisable(this->self().borrow_o()); + Py_FatalError("greenlet: ran out of parent greenlets while propagating exception; " + "cannot continue"); + std::abort(); +} + +void +UserGreenlet::run(const BorrowedObject nrun) +{ + if (this->started()) { + throw AttributeError( + "run cannot be set " + "after the start of the greenlet"); + } + this->_run_callable = nrun; +} + +const OwnedGreenlet +UserGreenlet::parent() const +{ + return this->_parent; +} + +void +UserGreenlet::parent(const BorrowedObject raw_new_parent) +{ + if (!raw_new_parent) { + throw AttributeError("can't delete attribute"); + } + + BorrowedMainGreenlet main_greenlet_of_new_parent; + BorrowedGreenlet new_parent(raw_new_parent.borrow()); // could + // throw + // TypeError! + for (BorrowedGreenlet p = new_parent; p; p = p->parent()) { + if (p == this->self()) { + throw ValueError("cyclic parent chain"); + } + main_greenlet_of_new_parent = p->main_greenlet(); + } + + if (!main_greenlet_of_new_parent) { + throw ValueError("parent must not be garbage collected"); + } + + if (this->started() + && this->_main_greenlet != main_greenlet_of_new_parent) { + throw ValueError("parent cannot be on a different thread"); + } + + this->_parent = new_parent; +} + +void +UserGreenlet::murder_in_place() +{ + this->_main_greenlet.CLEAR(); + Greenlet::murder_in_place(); +} + +bool +UserGreenlet::belongs_to_thread(const ThreadState* thread_state) const +{ + return Greenlet::belongs_to_thread(thread_state) && this->_main_greenlet == thread_state->borrow_main_greenlet(); +} + + +int +UserGreenlet::tp_traverse(visitproc visit, void* arg) +{ + Py_VISIT(this->_parent.borrow_o()); + Py_VISIT(this->_main_greenlet.borrow_o()); + Py_VISIT(this->_run_callable.borrow_o()); + + return Greenlet::tp_traverse(visit, arg); +} + +int +UserGreenlet::tp_clear() +{ + Greenlet::tp_clear(); + this->_parent.CLEAR(); + this->_main_greenlet.CLEAR(); + this->_run_callable.CLEAR(); + return 0; +} + +UserGreenlet::ParentIsCurrentGuard::ParentIsCurrentGuard(UserGreenlet* p, + const ThreadState& thread_state) + : oldparent(p->_parent), + greenlet(p) +{ + p->_parent = thread_state.get_current(); +} + +UserGreenlet::ParentIsCurrentGuard::~ParentIsCurrentGuard() +{ + this->greenlet->_parent = oldparent; + oldparent.CLEAR(); +} + +}; //namespace greenlet +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..91f075a2d5db15f9c48be888722f5254eb67370a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/__init__.py @@ -0,0 +1,71 @@ +# -*- coding: utf-8 -*- +""" +The root of the greenlet package. +""" +from __future__ import absolute_import +from __future__ import division +from __future__ import print_function + +__all__ = [ + '__version__', + '_C_API', + + 'GreenletExit', + 'error', + + 'getcurrent', + 'greenlet', + + 'gettrace', + 'settrace', +] + +# pylint:disable=no-name-in-module + +### +# Metadata +### +__version__ = '3.2.3' +from ._greenlet import _C_API # pylint:disable=no-name-in-module + +### +# Exceptions +### +from ._greenlet import GreenletExit +from ._greenlet import error + +### +# greenlets +### +from ._greenlet import getcurrent +from ._greenlet import greenlet + +### +# tracing +### +try: + from ._greenlet import gettrace + from ._greenlet import settrace +except ImportError: + # Tracing wasn't supported. + # XXX: The option to disable it was removed in 1.0, + # so this branch should be dead code. + pass + +### +# Constants +# These constants aren't documented and aren't recommended. +# In 1.0, USE_GC and USE_TRACING are always true, and USE_CONTEXT_VARS +# is the same as ``sys.version_info[:2] >= 3.7`` +### +from ._greenlet import GREENLET_USE_CONTEXT_VARS # pylint:disable=unused-import +from ._greenlet import GREENLET_USE_GC # pylint:disable=unused-import +from ._greenlet import GREENLET_USE_TRACING # pylint:disable=unused-import + +# Controlling the use of the gc module. Provisional API for this greenlet +# implementation in 2.0. +from ._greenlet import CLOCKS_PER_SEC # pylint:disable=unused-import +from ._greenlet import enable_optional_cleanup # pylint:disable=unused-import +from ._greenlet import get_clocks_used_doing_optional_cleanup # pylint:disable=unused-import + +# Other APIS in the _greenlet module are for test support. diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.cpp new file mode 100644 index 0000000000000000000000000000000000000000..e8d92a00bb961e930141e5c3cd8f682dbd667751 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.cpp @@ -0,0 +1,320 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +/* Format with: + * clang-format -i --style=file src/greenlet/greenlet.c + * + * + * Fix missing braces with: + * clang-tidy src/greenlet/greenlet.c -fix -checks="readability-braces-around-statements" +*/ +#include +#include +#include +#include + + +#define PY_SSIZE_T_CLEAN +#include +#include "structmember.h" // PyMemberDef + +#include "greenlet_internal.hpp" +// Code after this point can assume access to things declared in stdint.h, +// including the fixed-width types. This goes for the platform-specific switch functions +// as well. +#include "greenlet_refs.hpp" +#include "greenlet_slp_switch.hpp" + +#include "greenlet_thread_support.hpp" +#include "TGreenlet.hpp" + +#include "TGreenletGlobals.cpp" + +#include "TGreenlet.cpp" +#include "TMainGreenlet.cpp" +#include "TUserGreenlet.cpp" +#include "TBrokenGreenlet.cpp" +#include "TExceptionState.cpp" +#include "TPythonState.cpp" +#include "TStackState.cpp" + +#include "TThreadState.hpp" +#include "TThreadStateCreator.hpp" +#include "TThreadStateDestroy.cpp" + +#include "PyGreenlet.cpp" +#include "PyGreenletUnswitchable.cpp" +#include "CObjects.cpp" + +using greenlet::LockGuard; +using greenlet::LockInitError; +using greenlet::PyErrOccurred; +using greenlet::Require; + +using greenlet::g_handle_exit; +using greenlet::single_result; + +using greenlet::Greenlet; +using greenlet::UserGreenlet; +using greenlet::MainGreenlet; +using greenlet::BrokenGreenlet; +using greenlet::ThreadState; +using greenlet::PythonState; + + + +// ******* Implementation of things from included files +template +greenlet::refs::_BorrowedGreenlet& greenlet::refs::_BorrowedGreenlet::operator=(const greenlet::refs::BorrowedObject& other) +{ + this->_set_raw_pointer(static_cast(other)); + return *this; +} + +template +inline greenlet::refs::_BorrowedGreenlet::operator Greenlet*() const noexcept +{ + if (!this->p) { + return nullptr; + } + return reinterpret_cast(this->p)->pimpl; +} + +template +greenlet::refs::_BorrowedGreenlet::_BorrowedGreenlet(const BorrowedObject& p) + : BorrowedReference(nullptr) +{ + + this->_set_raw_pointer(p.borrow()); +} + +template +inline greenlet::refs::_OwnedGreenlet::operator Greenlet*() const noexcept +{ + if (!this->p) { + return nullptr; + } + return reinterpret_cast(this->p)->pimpl; +} + + + +#ifdef __clang__ +# pragma clang diagnostic push +# pragma clang diagnostic ignored "-Wmissing-field-initializers" +# pragma clang diagnostic ignored "-Wwritable-strings" +#elif defined(__GNUC__) +# pragma GCC diagnostic push +// warning: ISO C++ forbids converting a string constant to ‘char*’ +// (The python APIs aren't const correct and accept writable char*) +# pragma GCC diagnostic ignored "-Wwrite-strings" +#endif + + +/*********************************************************** + +A PyGreenlet is a range of C stack addresses that must be +saved and restored in such a way that the full range of the +stack contains valid data when we switch to it. + +Stack layout for a greenlet: + + | ^^^ | + | older data | + | | + stack_stop . |_______________| + . | | + . | greenlet data | + . | in stack | + . * |_______________| . . _____________ stack_copy + stack_saved + . | | | | + . | data | |greenlet data| + . | unrelated | | saved | + . | to | | in heap | + stack_start . | this | . . |_____________| stack_copy + | greenlet | + | | + | newer data | + | vvv | + + +Note that a greenlet's stack data is typically partly at its correct +place in the stack, and partly saved away in the heap, but always in +the above configuration: two blocks, the more recent one in the heap +and the older one still in the stack (either block may be empty). + +Greenlets are chained: each points to the previous greenlet, which is +the one that owns the data currently in the C stack above my +stack_stop. The currently running greenlet is the first element of +this chain. The main (initial) greenlet is the last one. Greenlets +whose stack is entirely in the heap can be skipped from the chain. + +The chain is not related to execution order, but only to the order +in which bits of C stack happen to belong to greenlets at a particular +point in time. + +The main greenlet doesn't have a stack_stop: it is responsible for the +complete rest of the C stack, and we don't know where it begins. We +use (char*) -1, the largest possible address. + +States: + stack_stop == NULL && stack_start == NULL: did not start yet + stack_stop != NULL && stack_start == NULL: already finished + stack_stop != NULL && stack_start != NULL: active + +The running greenlet's stack_start is undefined but not NULL. + + ***********************************************************/ + + + + +/***********************************************************/ + +/* Some functions must not be inlined: + * slp_restore_state, when inlined into slp_switch might cause + it to restore stack over its own local variables + * slp_save_state, when inlined would add its own local + variables to the saved stack, wasting space + * slp_switch, cannot be inlined for obvious reasons + * g_initialstub, when inlined would receive a pointer into its + own stack frame, leading to incomplete stack save/restore + +g_initialstub is a member function and declared virtual so that the +compiler always calls it through a vtable. + +slp_save_state and slp_restore_state are also member functions. They +are called from trampoline functions that themselves are declared as +not eligible for inlining. +*/ + +extern "C" { +static int GREENLET_NOINLINE(slp_save_state_trampoline)(char* stackref) +{ + return switching_thread_state->slp_save_state(stackref); +} +static void GREENLET_NOINLINE(slp_restore_state_trampoline)() +{ + switching_thread_state->slp_restore_state(); +} +} + + +/***********************************************************/ + + +#include "PyModule.cpp" + + + +static PyObject* +greenlet_internal_mod_init() noexcept +{ + static void* _PyGreenlet_API[PyGreenlet_API_pointers]; + + try { + CreatedModule m(greenlet_module_def); + + Require(PyType_Ready(&PyGreenlet_Type)); + Require(PyType_Ready(&PyGreenletUnswitchable_Type)); + + mod_globs = new greenlet::GreenletGlobals; + ThreadState::init(); + + m.PyAddObject("greenlet", PyGreenlet_Type); + m.PyAddObject("UnswitchableGreenlet", PyGreenletUnswitchable_Type); + m.PyAddObject("error", mod_globs->PyExc_GreenletError); + m.PyAddObject("GreenletExit", mod_globs->PyExc_GreenletExit); + + m.PyAddObject("GREENLET_USE_GC", 1); + m.PyAddObject("GREENLET_USE_TRACING", 1); + m.PyAddObject("GREENLET_USE_CONTEXT_VARS", 1L); + m.PyAddObject("GREENLET_USE_STANDARD_THREADING", 1L); + + OwnedObject clocks_per_sec = OwnedObject::consuming(PyLong_FromSsize_t(CLOCKS_PER_SEC)); + m.PyAddObject("CLOCKS_PER_SEC", clocks_per_sec); + + /* also publish module-level data as attributes of the greentype. */ + // XXX: This is weird, and enables a strange pattern of + // confusing the class greenlet with the module greenlet; with + // the exception of (possibly) ``getcurrent()``, this + // shouldn't be encouraged so don't add new items here. + for (const char* const* p = copy_on_greentype; *p; p++) { + OwnedObject o = m.PyRequireAttr(*p); + PyDict_SetItemString(PyGreenlet_Type.tp_dict, *p, o.borrow()); + } + + /* + * Expose C API + */ + + /* types */ + _PyGreenlet_API[PyGreenlet_Type_NUM] = (void*)&PyGreenlet_Type; + + /* exceptions */ + _PyGreenlet_API[PyExc_GreenletError_NUM] = (void*)mod_globs->PyExc_GreenletError; + _PyGreenlet_API[PyExc_GreenletExit_NUM] = (void*)mod_globs->PyExc_GreenletExit; + + /* methods */ + _PyGreenlet_API[PyGreenlet_New_NUM] = (void*)PyGreenlet_New; + _PyGreenlet_API[PyGreenlet_GetCurrent_NUM] = (void*)PyGreenlet_GetCurrent; + _PyGreenlet_API[PyGreenlet_Throw_NUM] = (void*)PyGreenlet_Throw; + _PyGreenlet_API[PyGreenlet_Switch_NUM] = (void*)PyGreenlet_Switch; + _PyGreenlet_API[PyGreenlet_SetParent_NUM] = (void*)PyGreenlet_SetParent; + + /* Previously macros, but now need to be functions externally. */ + _PyGreenlet_API[PyGreenlet_MAIN_NUM] = (void*)Extern_PyGreenlet_MAIN; + _PyGreenlet_API[PyGreenlet_STARTED_NUM] = (void*)Extern_PyGreenlet_STARTED; + _PyGreenlet_API[PyGreenlet_ACTIVE_NUM] = (void*)Extern_PyGreenlet_ACTIVE; + _PyGreenlet_API[PyGreenlet_GET_PARENT_NUM] = (void*)Extern_PyGreenlet_GET_PARENT; + + /* XXX: Note that our module name is ``greenlet._greenlet``, but for + backwards compatibility with existing C code, we need the _C_API to + be directly in greenlet. + */ + const NewReference c_api_object(Require( + PyCapsule_New( + (void*)_PyGreenlet_API, + "greenlet._C_API", + NULL))); + m.PyAddObject("_C_API", c_api_object); + assert(c_api_object.REFCNT() == 2); + + // cerr << "Sizes:" + // << "\n\tGreenlet : " << sizeof(Greenlet) + // << "\n\tUserGreenlet : " << sizeof(UserGreenlet) + // << "\n\tMainGreenlet : " << sizeof(MainGreenlet) + // << "\n\tExceptionState : " << sizeof(greenlet::ExceptionState) + // << "\n\tPythonState : " << sizeof(greenlet::PythonState) + // << "\n\tStackState : " << sizeof(greenlet::StackState) + // << "\n\tSwitchingArgs : " << sizeof(greenlet::SwitchingArgs) + // << "\n\tOwnedObject : " << sizeof(greenlet::refs::OwnedObject) + // << "\n\tBorrowedObject : " << sizeof(greenlet::refs::BorrowedObject) + // << "\n\tPyGreenlet : " << sizeof(PyGreenlet) + // << endl; + + return m.borrow(); // But really it's the main reference. + } + catch (const LockInitError& e) { + PyErr_SetString(PyExc_MemoryError, e.what()); + return NULL; + } + catch (const PyErrOccurred&) { + return NULL; + } + +} + +extern "C" { + +PyMODINIT_FUNC +PyInit__greenlet(void) +{ + return greenlet_internal_mod_init(); +} + +}; // extern C + +#ifdef __clang__ +# pragma clang diagnostic pop +#elif defined(__GNUC__) +# pragma GCC diagnostic pop +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.h new file mode 100644 index 0000000000000000000000000000000000000000..d02a16e43426fb1c1bb286f1cda463cb9b1185ad --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet.h @@ -0,0 +1,164 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ + +/* Greenlet object interface */ + +#ifndef Py_GREENLETOBJECT_H +#define Py_GREENLETOBJECT_H + + +#include + +#ifdef __cplusplus +extern "C" { +#endif + +/* This is deprecated and undocumented. It does not change. */ +#define GREENLET_VERSION "1.0.0" + +#ifndef GREENLET_MODULE +#define implementation_ptr_t void* +#endif + +typedef struct _greenlet { + PyObject_HEAD + PyObject* weakreflist; + PyObject* dict; + implementation_ptr_t pimpl; +} PyGreenlet; + +#define PyGreenlet_Check(op) (op && PyObject_TypeCheck(op, &PyGreenlet_Type)) + + +/* C API functions */ + +/* Total number of symbols that are exported */ +#define PyGreenlet_API_pointers 12 + +#define PyGreenlet_Type_NUM 0 +#define PyExc_GreenletError_NUM 1 +#define PyExc_GreenletExit_NUM 2 + +#define PyGreenlet_New_NUM 3 +#define PyGreenlet_GetCurrent_NUM 4 +#define PyGreenlet_Throw_NUM 5 +#define PyGreenlet_Switch_NUM 6 +#define PyGreenlet_SetParent_NUM 7 + +#define PyGreenlet_MAIN_NUM 8 +#define PyGreenlet_STARTED_NUM 9 +#define PyGreenlet_ACTIVE_NUM 10 +#define PyGreenlet_GET_PARENT_NUM 11 + +#ifndef GREENLET_MODULE +/* This section is used by modules that uses the greenlet C API */ +static void** _PyGreenlet_API = NULL; + +# define PyGreenlet_Type \ + (*(PyTypeObject*)_PyGreenlet_API[PyGreenlet_Type_NUM]) + +# define PyExc_GreenletError \ + ((PyObject*)_PyGreenlet_API[PyExc_GreenletError_NUM]) + +# define PyExc_GreenletExit \ + ((PyObject*)_PyGreenlet_API[PyExc_GreenletExit_NUM]) + +/* + * PyGreenlet_New(PyObject *args) + * + * greenlet.greenlet(run, parent=None) + */ +# define PyGreenlet_New \ + (*(PyGreenlet * (*)(PyObject * run, PyGreenlet * parent)) \ + _PyGreenlet_API[PyGreenlet_New_NUM]) + +/* + * PyGreenlet_GetCurrent(void) + * + * greenlet.getcurrent() + */ +# define PyGreenlet_GetCurrent \ + (*(PyGreenlet * (*)(void)) _PyGreenlet_API[PyGreenlet_GetCurrent_NUM]) + +/* + * PyGreenlet_Throw( + * PyGreenlet *greenlet, + * PyObject *typ, + * PyObject *val, + * PyObject *tb) + * + * g.throw(...) + */ +# define PyGreenlet_Throw \ + (*(PyObject * (*)(PyGreenlet * self, \ + PyObject * typ, \ + PyObject * val, \ + PyObject * tb)) \ + _PyGreenlet_API[PyGreenlet_Throw_NUM]) + +/* + * PyGreenlet_Switch(PyGreenlet *greenlet, PyObject *args) + * + * g.switch(*args, **kwargs) + */ +# define PyGreenlet_Switch \ + (*(PyObject * \ + (*)(PyGreenlet * greenlet, PyObject * args, PyObject * kwargs)) \ + _PyGreenlet_API[PyGreenlet_Switch_NUM]) + +/* + * PyGreenlet_SetParent(PyObject *greenlet, PyObject *new_parent) + * + * g.parent = new_parent + */ +# define PyGreenlet_SetParent \ + (*(int (*)(PyGreenlet * greenlet, PyGreenlet * nparent)) \ + _PyGreenlet_API[PyGreenlet_SetParent_NUM]) + +/* + * PyGreenlet_GetParent(PyObject* greenlet) + * + * return greenlet.parent; + * + * This could return NULL even if there is no exception active. + * If it does not return NULL, you are responsible for decrementing the + * reference count. + */ +# define PyGreenlet_GetParent \ + (*(PyGreenlet* (*)(PyGreenlet*)) \ + _PyGreenlet_API[PyGreenlet_GET_PARENT_NUM]) + +/* + * deprecated, undocumented alias. + */ +# define PyGreenlet_GET_PARENT PyGreenlet_GetParent + +# define PyGreenlet_MAIN \ + (*(int (*)(PyGreenlet*)) \ + _PyGreenlet_API[PyGreenlet_MAIN_NUM]) + +# define PyGreenlet_STARTED \ + (*(int (*)(PyGreenlet*)) \ + _PyGreenlet_API[PyGreenlet_STARTED_NUM]) + +# define PyGreenlet_ACTIVE \ + (*(int (*)(PyGreenlet*)) \ + _PyGreenlet_API[PyGreenlet_ACTIVE_NUM]) + + + + +/* Macro that imports greenlet and initializes C API */ +/* NOTE: This has actually moved to ``greenlet._greenlet._C_API``, but we + keep the older definition to be sure older code that might have a copy of + the header still works. */ +# define PyGreenlet_Import() \ + { \ + _PyGreenlet_API = (void**)PyCapsule_Import("greenlet._C_API", 0); \ + } + +#endif /* GREENLET_MODULE */ + +#ifdef __cplusplus +} +#endif +#endif /* !Py_GREENLETOBJECT_H */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_allocator.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_allocator.hpp new file mode 100644 index 0000000000000000000000000000000000000000..b452f5444262fb3553bee15c4692e06d7fac549c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_allocator.hpp @@ -0,0 +1,63 @@ +#ifndef GREENLET_ALLOCATOR_HPP +#define GREENLET_ALLOCATOR_HPP + +#define PY_SSIZE_T_CLEAN +#include +#include +#include "greenlet_compiler_compat.hpp" + + +namespace greenlet +{ + // This allocator is stateless; all instances are identical. + // It can *ONLY* be used when we're sure we're holding the GIL + // (Python's allocators require the GIL). + template + struct PythonAllocator : public std::allocator { + + PythonAllocator(const PythonAllocator& UNUSED(other)) + : std::allocator() + { + } + + PythonAllocator(const std::allocator other) + : std::allocator(other) + {} + + template + PythonAllocator(const std::allocator& other) + : std::allocator(other) + { + } + + PythonAllocator() : std::allocator() {} + + T* allocate(size_t number_objects, const void* UNUSED(hint)=0) + { + void* p; + if (number_objects == 1) + p = PyObject_Malloc(sizeof(T)); + else + p = PyMem_Malloc(sizeof(T) * number_objects); + return static_cast(p); + } + + void deallocate(T* t, size_t n) + { + void* p = t; + if (n == 1) { + PyObject_Free(p); + } + else + PyMem_Free(p); + } + // This member is deprecated in C++17 and removed in C++20 + template< class U > + struct rebind { + typedef PythonAllocator other; + }; + + }; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_compiler_compat.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_compiler_compat.hpp new file mode 100644 index 0000000000000000000000000000000000000000..af24bd83e1f2c5c89c5e17b973402a1153514a05 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_compiler_compat.hpp @@ -0,0 +1,98 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +#ifndef GREENLET_COMPILER_COMPAT_HPP +#define GREENLET_COMPILER_COMPAT_HPP + +/** + * Definitions to aid with compatibility with different compilers. + * + * .. caution:: Use extreme care with noexcept. + * Some compilers and runtimes, specifically gcc/libgcc/libstdc++ on + * Linux, implement stack unwinding by throwing an uncatchable + * exception, one that specifically does not appear to be an active + * exception to the rest of the runtime. If this happens while we're in a noexcept function, + * we have violated our dynamic exception contract, and so the runtime + * will call std::terminate(), which kills the process with the + * unhelpful message "terminate called without an active exception". + * + * This has happened in this scenario: A background thread is running + * a greenlet that has made a native call and released the GIL. + * Meanwhile, the main thread finishes and starts shutting down the + * interpreter. When the background thread is scheduled again and + * attempts to obtain the GIL, it notices that the interpreter is + * exiting and calls ``pthread_exit()``. This in turn starts to unwind + * the stack by throwing that exception. But we had the ``PyCall`` + * functions annotated as noexcept, so the runtime terminated us. + * + * #2 0x00007fab26fec2b7 in std::terminate() () from /lib/x86_64-linux-gnu/libstdc++.so.6 + * #3 0x00007fab26febb3c in __gxx_personality_v0 () from /lib/x86_64-linux-gnu/libstdc++.so.6 + * #4 0x00007fab26f34de6 in ?? () from /lib/x86_64-linux-gnu/libgcc_s.so.1 + * #6 0x00007fab276a34c6 in __GI___pthread_unwind at ./nptl/unwind.c:130 + * #7 0x00007fab2769bd3a in __do_cancel () at ../sysdeps/nptl/pthreadP.h:280 + * #8 __GI___pthread_exit (value=value@entry=0x0) at ./nptl/pthread_exit.c:36 + * #9 0x000000000052e567 in PyThread_exit_thread () at ../Python/thread_pthread.h:370 + * #10 0x00000000004d60b5 in take_gil at ../Python/ceval_gil.h:224 + * #11 0x00000000004d65f9 in PyEval_RestoreThread at ../Python/ceval.c:467 + * #12 0x000000000060cce3 in setipaddr at ../Modules/socketmodule.c:1203 + * #13 0x00000000006101cd in socket_gethostbyname + */ + +#include + +# define G_NO_COPIES_OF_CLS(Cls) private: \ + Cls(const Cls& other) = delete; \ + Cls& operator=(const Cls& other) = delete + +# define G_NO_ASSIGNMENT_OF_CLS(Cls) private: \ + Cls& operator=(const Cls& other) = delete + +# define G_NO_COPY_CONSTRUCTOR_OF_CLS(Cls) private: \ + Cls(const Cls& other) = delete; + + +// CAUTION: MSVC is stupidly picky: +// +// "The compiler ignores, without warning, any __declspec keywords +// placed after * or & and in front of the variable identifier in a +// declaration." +// (https://docs.microsoft.com/en-us/cpp/cpp/declspec?view=msvc-160) +// +// So pointer return types must be handled differently (because of the +// trailing *), or you get inscrutable compiler warnings like "error +// C2059: syntax error: ''" +// +// In C++ 11, there is a standard syntax for attributes, and +// GCC defines an attribute to use with this: [[gnu:noinline]]. +// In the future, this is expected to become standard. + +#if defined(__GNUC__) || defined(__clang__) +/* We used to check for GCC 4+ or 3.4+, but those compilers are + laughably out of date. Just assume they support it. */ +# define GREENLET_NOINLINE(name) __attribute__((noinline)) name +# define GREENLET_NOINLINE_P(rtype, name) rtype __attribute__((noinline)) name +# define UNUSED(x) UNUSED_ ## x __attribute__((__unused__)) +#elif defined(_MSC_VER) +/* We used to check for && (_MSC_VER >= 1300) but that's also out of date. */ +# define GREENLET_NOINLINE(name) __declspec(noinline) name +# define GREENLET_NOINLINE_P(rtype, name) __declspec(noinline) rtype name +# define UNUSED(x) UNUSED_ ## x +#endif + +#if defined(_MSC_VER) +# define G_NOEXCEPT_WIN32 noexcept +#else +# define G_NOEXCEPT_WIN32 +#endif + +#if defined(__GNUC__) && defined(__POWERPC__) && defined(__APPLE__) +// 32-bit PPC/MacOSX. Only known to be tested on unreleased versions +// of macOS 10.6 using a macports build gcc 14. It appears that +// running C++ destructors of thread-local variables is broken. + +// See https://github.com/python-greenlet/greenlet/pull/419 +# define GREENLET_BROKEN_THREAD_LOCAL_CLEANUP_JUST_LEAK 1 +#else +# define GREENLET_BROKEN_THREAD_LOCAL_CLEANUP_JUST_LEAK 0 +#endif + + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_cpython_compat.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_cpython_compat.hpp new file mode 100644 index 0000000000000000000000000000000000000000..979d6f94a01e6c965094dc793e1a95de2671250e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_cpython_compat.hpp @@ -0,0 +1,148 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +#ifndef GREENLET_CPYTHON_COMPAT_H +#define GREENLET_CPYTHON_COMPAT_H + +/** + * Helpers for compatibility with multiple versions of CPython. + */ + +#define PY_SSIZE_T_CLEAN +#include "Python.h" + + +#if PY_VERSION_HEX >= 0x30A00B1 +# define GREENLET_PY310 1 +#else +# define GREENLET_PY310 0 +#endif + +/* +Python 3.10 beta 1 changed tstate->use_tracing to a nested cframe member. +See https://github.com/python/cpython/pull/25276 +We have to save and restore this as well. + +Python 3.13 removed PyThreadState.cframe (GH-108035). +*/ +#if GREENLET_PY310 && PY_VERSION_HEX < 0x30D0000 +# define GREENLET_USE_CFRAME 1 +#else +# define GREENLET_USE_CFRAME 0 +#endif + + +#if PY_VERSION_HEX >= 0x30B00A4 +/* +Greenlet won't compile on anything older than Python 3.11 alpha 4 (see +https://bugs.python.org/issue46090). Summary of breaking internal changes: +- Python 3.11 alpha 1 changed how frame objects are represented internally. + - https://github.com/python/cpython/pull/30122 +- Python 3.11 alpha 3 changed how recursion limits are stored. + - https://github.com/python/cpython/pull/29524 +- Python 3.11 alpha 4 changed how exception state is stored. It also includes a + change to help greenlet save and restore the interpreter frame "data stack". + - https://github.com/python/cpython/pull/30122 + - https://github.com/python/cpython/pull/30234 +*/ +# define GREENLET_PY311 1 +#else +# define GREENLET_PY311 0 +#endif + + +#if PY_VERSION_HEX >= 0x30C0000 +# define GREENLET_PY312 1 +#else +# define GREENLET_PY312 0 +#endif + +#if PY_VERSION_HEX >= 0x30D0000 +# define GREENLET_PY313 1 +#else +# define GREENLET_PY313 0 +#endif + +#if PY_VERSION_HEX >= 0x30E0000 +# define GREENLET_PY314 1 +#else +# define GREENLET_PY314 0 +#endif + +#ifndef Py_SET_REFCNT +/* Py_REFCNT and Py_SIZE macros are converted to functions +https://bugs.python.org/issue39573 */ +# define Py_SET_REFCNT(obj, refcnt) Py_REFCNT(obj) = (refcnt) +#endif + +#ifndef _Py_DEC_REFTOTAL +/* _Py_DEC_REFTOTAL macro has been removed from Python 3.9 by: + https://github.com/python/cpython/commit/49932fec62c616ec88da52642339d83ae719e924 + + The symbol we use to replace it was removed by at least 3.12. +*/ +# ifdef Py_REF_DEBUG +# if GREENLET_PY312 +# define _Py_DEC_REFTOTAL +# else +# define _Py_DEC_REFTOTAL _Py_RefTotal-- +# endif +# else +# define _Py_DEC_REFTOTAL +# endif +#endif +// Define these flags like Cython does if we're on an old version. +#ifndef Py_TPFLAGS_CHECKTYPES + #define Py_TPFLAGS_CHECKTYPES 0 +#endif +#ifndef Py_TPFLAGS_HAVE_INDEX + #define Py_TPFLAGS_HAVE_INDEX 0 +#endif +#ifndef Py_TPFLAGS_HAVE_NEWBUFFER + #define Py_TPFLAGS_HAVE_NEWBUFFER 0 +#endif + +#ifndef Py_TPFLAGS_HAVE_VERSION_TAG + #define Py_TPFLAGS_HAVE_VERSION_TAG 0 +#endif + +#define G_TPFLAGS_DEFAULT Py_TPFLAGS_DEFAULT | Py_TPFLAGS_HAVE_VERSION_TAG | Py_TPFLAGS_CHECKTYPES | Py_TPFLAGS_HAVE_NEWBUFFER | Py_TPFLAGS_HAVE_GC + + +#if PY_VERSION_HEX < 0x03090000 +// The official version only became available in 3.9 +# define PyObject_GC_IsTracked(o) _PyObject_GC_IS_TRACKED(o) +#endif + + +// bpo-43760 added PyThreadState_EnterTracing() to Python 3.11.0a2 +#if PY_VERSION_HEX < 0x030B00A2 && !defined(PYPY_VERSION) +static inline void PyThreadState_EnterTracing(PyThreadState *tstate) +{ + tstate->tracing++; +#if PY_VERSION_HEX >= 0x030A00A1 + tstate->cframe->use_tracing = 0; +#else + tstate->use_tracing = 0; +#endif +} +#endif + +// bpo-43760 added PyThreadState_LeaveTracing() to Python 3.11.0a2 +#if PY_VERSION_HEX < 0x030B00A2 && !defined(PYPY_VERSION) +static inline void PyThreadState_LeaveTracing(PyThreadState *tstate) +{ + tstate->tracing--; + int use_tracing = (tstate->c_tracefunc != NULL + || tstate->c_profilefunc != NULL); +#if PY_VERSION_HEX >= 0x030A00A1 + tstate->cframe->use_tracing = use_tracing; +#else + tstate->use_tracing = use_tracing; +#endif +} +#endif + +#if !defined(Py_C_RECURSION_LIMIT) && defined(C_RECURSION_LIMIT) +# define Py_C_RECURSION_LIMIT C_RECURSION_LIMIT +#endif + +#endif /* GREENLET_CPYTHON_COMPAT_H */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_exceptions.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_exceptions.hpp new file mode 100644 index 0000000000000000000000000000000000000000..617f07c2faa372508ea99f383233709443653a5d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_exceptions.hpp @@ -0,0 +1,171 @@ +#ifndef GREENLET_EXCEPTIONS_HPP +#define GREENLET_EXCEPTIONS_HPP + +#define PY_SSIZE_T_CLEAN +#include +#include +#include + +#ifdef __clang__ +# pragma clang diagnostic push +# pragma clang diagnostic ignored "-Wunused-function" +#endif + +namespace greenlet { + + class PyErrOccurred : public std::runtime_error + { + public: + + // CAUTION: In debug builds, may run arbitrary Python code. + static const PyErrOccurred + from_current() + { + assert(PyErr_Occurred()); +#ifndef NDEBUG + // This is not exception safe, and + // not necessarily safe in general (what if it switches?) + // But we only do this in debug mode, where we are in + // tight control of what exceptions are getting raised and + // can prevent those issues. + + // You can't call PyObject_Str with a pending exception. + PyObject* typ; + PyObject* val; + PyObject* tb; + + PyErr_Fetch(&typ, &val, &tb); + PyObject* typs = PyObject_Str(typ); + PyObject* vals = PyObject_Str(val ? val : typ); + const char* typ_msg = PyUnicode_AsUTF8(typs); + const char* val_msg = PyUnicode_AsUTF8(vals); + PyErr_Restore(typ, val, tb); + + std::string msg(typ_msg); + msg += ": "; + msg += val_msg; + PyErrOccurred ex(msg); + Py_XDECREF(typs); + Py_XDECREF(vals); + + return ex; +#else + return PyErrOccurred(); +#endif + } + + PyErrOccurred() : std::runtime_error("") + { + assert(PyErr_Occurred()); + } + + PyErrOccurred(const std::string& msg) : std::runtime_error(msg) + { + assert(PyErr_Occurred()); + } + + PyErrOccurred(PyObject* exc_kind, const char* const msg) + : std::runtime_error(msg) + { + PyErr_SetString(exc_kind, msg); + } + + PyErrOccurred(PyObject* exc_kind, const std::string msg) + : std::runtime_error(msg) + { + // This copies the c_str, so we don't have any lifetime + // issues to worry about. + PyErr_SetString(exc_kind, msg.c_str()); + } + + PyErrOccurred(PyObject* exc_kind, + const std::string msg, //This is the format + //string; that's not + //usually safe! + + PyObject* borrowed_obj_one, PyObject* borrowed_obj_two) + : std::runtime_error(msg) + { + + //This is designed specifically for the + //``check_switch_allowed`` function. + + // PyObject_Str and PyObject_Repr are safe to call with + // NULL pointers; they return the string "" in that + // case. + // This function always returns null. + PyErr_Format(exc_kind, + msg.c_str(), + borrowed_obj_one, borrowed_obj_two); + } + }; + + class TypeError : public PyErrOccurred + { + public: + TypeError(const char* const what) + : PyErrOccurred(PyExc_TypeError, what) + { + } + TypeError(const std::string what) + : PyErrOccurred(PyExc_TypeError, what) + { + } + }; + + class ValueError : public PyErrOccurred + { + public: + ValueError(const char* const what) + : PyErrOccurred(PyExc_ValueError, what) + { + } + }; + + class AttributeError : public PyErrOccurred + { + public: + AttributeError(const char* const what) + : PyErrOccurred(PyExc_AttributeError, what) + { + } + }; + + /** + * Calls `Py_FatalError` when constructed, so you can't actually + * throw this. It just makes static analysis easier. + */ + class PyFatalError : public std::runtime_error + { + public: + PyFatalError(const char* const msg) + : std::runtime_error(msg) + { + Py_FatalError(msg); + } + }; + + static inline PyObject* + Require(PyObject* p, const std::string& msg="") + { + if (!p) { + throw PyErrOccurred(msg); + } + return p; + }; + + static inline void + Require(const int retval) + { + if (retval < 0) { + throw PyErrOccurred(); + } + }; + + +}; +#ifdef __clang__ +# pragma clang diagnostic pop +#endif + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_internal.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_internal.hpp new file mode 100644 index 0000000000000000000000000000000000000000..f2b15d5fa3f8cc240f8fff066bc2338559e9cc60 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_internal.hpp @@ -0,0 +1,107 @@ +/* -*- indent-tabs-mode: nil; tab-width: 4; -*- */ +#ifndef GREENLET_INTERNAL_H +#define GREENLET_INTERNAL_H +#ifdef __clang__ +# pragma clang diagnostic push +# pragma clang diagnostic ignored "-Wunused-function" +#endif + +/** + * Implementation helpers. + * + * C++ templates and inline functions should go here. + */ +#define PY_SSIZE_T_CLEAN +#include "greenlet_compiler_compat.hpp" +#include "greenlet_cpython_compat.hpp" +#include "greenlet_exceptions.hpp" +#include "TGreenlet.hpp" +#include "greenlet_allocator.hpp" + +#include +#include + +#define GREENLET_MODULE +struct _greenlet; +typedef struct _greenlet PyGreenlet; +namespace greenlet { + + class ThreadState; + // We can't use the PythonAllocator for this, because we push to it + // from the thread state destructor, which doesn't have the GIL, + // and Python's allocators can only be called with the GIL. + typedef std::vector cleanup_queue_t; + +}; + + +#define implementation_ptr_t greenlet::Greenlet* + + +#include "greenlet.h" + +void +greenlet::refs::MainGreenletExactChecker(void *p) +{ + if (!p) { + return; + } + // We control the class of the main greenlet exactly. + if (Py_TYPE(p) != &PyGreenlet_Type) { + std::string err("MainGreenlet: Expected exactly a greenlet, not a "); + err += Py_TYPE(p)->tp_name; + throw greenlet::TypeError(err); + } + + // Greenlets from dead threads no longer respond to main() with a + // true value; so in that case we need to perform an additional + // check. + Greenlet* g = static_cast(p)->pimpl; + if (g->main()) { + return; + } + if (!dynamic_cast(g)) { + std::string err("MainGreenlet: Expected exactly a main greenlet, not a "); + err += Py_TYPE(p)->tp_name; + throw greenlet::TypeError(err); + } +} + + + +template +inline greenlet::Greenlet* greenlet::refs::_OwnedGreenlet::operator->() const noexcept +{ + return reinterpret_cast(this->p)->pimpl; +} + +template +inline greenlet::Greenlet* greenlet::refs::_BorrowedGreenlet::operator->() const noexcept +{ + return reinterpret_cast(this->p)->pimpl; +} + +#include +#include + + +extern PyTypeObject PyGreenlet_Type; + + + +/** + * Forward declarations needed in multiple files. + */ +static PyObject* green_switch(PyGreenlet* self, PyObject* args, PyObject* kwargs); + + +#ifdef __clang__ +# pragma clang diagnostic pop +#endif + + +#endif + +// Local Variables: +// flycheck-clang-include-path: ("../../include" "/opt/local/Library/Frameworks/Python.framework/Versions/3.10/include/python3.10") +// End: diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_msvc_compat.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_msvc_compat.hpp new file mode 100644 index 0000000000000000000000000000000000000000..c00245b057cce4d7083e7fd965c4e11bb20292d3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_msvc_compat.hpp @@ -0,0 +1,91 @@ +#ifndef GREENLET_MSVC_COMPAT_HPP +#define GREENLET_MSVC_COMPAT_HPP +/* + * Support for MSVC on Windows. + * + * Beginning with Python 3.14, some of the internal + * include files we need are not compatible with MSVC + * in C++ mode: + * + * internal\pycore_stackref.h(253): error C4576: a parenthesized type + * followed by an initializer list is a non-standard explicit type conversion syntax + * + * This file is included from ``internal/pycore_interpframe.h``, which + * we need for the ``_PyFrame_IsIncomplete`` API. + * + * Unfortunately, that API is a ``static inline`` function, as are a + * bunch of the functions it calls. The only solution seems to be to + * copy those definitions and the supporting inline functions here. + * + * Now, this makes us VERY fragile to changes in those functions. Because + * they're internal and static, the CPython devs might feel free to change + * them in even minor versions, meaning that we could runtime link and load, + * but still crash. We have that problem on all platforms though. It's just worse + * here because we have to keep copying the updated definitions. + */ +#include +#include "greenlet_cpython_compat.hpp" + +// This file is only included on 3.14+ + +extern "C" { + +// pycore_code.h ---------------- +#define _PyCode_CODE(CO) _Py_RVALUE((_Py_CODEUNIT *)(CO)->co_code_adaptive) +// End pycore_code.h ---------- + +// pycore_interpframe.h ---------- +#if !defined(Py_GIL_DISABLED) && defined(Py_STACKREF_DEBUG) + +#define Py_TAG_BITS 0 +#else +#define Py_TAG_BITS ((uintptr_t)1) +#define Py_TAG_DEFERRED (1) +#endif + + +static const _PyStackRef PyStackRef_NULL = { .bits = Py_TAG_DEFERRED}; +#define PyStackRef_IsNull(stackref) ((stackref).bits == PyStackRef_NULL.bits) + +static inline PyObject * +PyStackRef_AsPyObjectBorrow(_PyStackRef stackref) +{ + PyObject *cleared = ((PyObject *)((stackref).bits & (~Py_TAG_BITS))); + return cleared; +} + +static inline PyCodeObject *_PyFrame_GetCode(_PyInterpreterFrame *f) { + assert(!PyStackRef_IsNull(f->f_executable)); + PyObject *executable = PyStackRef_AsPyObjectBorrow(f->f_executable); + assert(PyCode_Check(executable)); + return (PyCodeObject *)executable; +} + + +static inline _Py_CODEUNIT * +_PyFrame_GetBytecode(_PyInterpreterFrame *f) +{ +#ifdef Py_GIL_DISABLED + PyCodeObject *co = _PyFrame_GetCode(f); + _PyCodeArray *tlbc = _PyCode_GetTLBCArray(co); + assert(f->tlbc_index >= 0 && f->tlbc_index < tlbc->size); + return (_Py_CODEUNIT *)tlbc->entries[f->tlbc_index]; +#else + return _PyCode_CODE(_PyFrame_GetCode(f)); +#endif +} + +static inline bool //_Py_NO_SANITIZE_THREAD +_PyFrame_IsIncomplete(_PyInterpreterFrame *frame) +{ + if (frame->owner >= FRAME_OWNED_BY_INTERPRETER) { + return true; + } + return frame->owner != FRAME_OWNED_BY_GENERATOR && + frame->instr_ptr < _PyFrame_GetBytecode(frame) + + _PyFrame_GetCode(frame)->_co_firsttraceable; +} +// pycore_interpframe.h ---------- + +} +#endif // GREENLET_MSVC_COMPAT_HPP diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_refs.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_refs.hpp new file mode 100644 index 0000000000000000000000000000000000000000..b7e5e3f2aba7c2ee9ea48a6e261c8366482531db --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_refs.hpp @@ -0,0 +1,1118 @@ +#ifndef GREENLET_REFS_HPP +#define GREENLET_REFS_HPP + +#define PY_SSIZE_T_CLEAN +#include + +#include + +//#include "greenlet_internal.hpp" +#include "greenlet_compiler_compat.hpp" +#include "greenlet_cpython_compat.hpp" +#include "greenlet_exceptions.hpp" + +struct _greenlet; +struct _PyMainGreenlet; + +typedef struct _greenlet PyGreenlet; +extern PyTypeObject PyGreenlet_Type; + + +#ifdef GREENLET_USE_STDIO +#include +using std::cerr; +using std::endl; +#endif + +namespace greenlet +{ + class Greenlet; + + namespace refs + { + // Type checkers throw a TypeError if the argument is not + // null, and isn't of the required Python type. + // (We can't use most of the defined type checkers + // like PyList_Check, etc, directly, because they are + // implemented as macros.) + typedef void (*TypeChecker)(void*); + + void + NoOpChecker(void*) + { + return; + } + + void + GreenletChecker(void *p) + { + if (!p) { + return; + } + + PyTypeObject* typ = Py_TYPE(p); + // fast, common path. (PyObject_TypeCheck is a macro or + // static inline function, and it also does a + // direct comparison of the type pointers, but its fast + // path only handles one type) + if (typ == &PyGreenlet_Type) { + return; + } + + if (!PyObject_TypeCheck(p, &PyGreenlet_Type)) { + std::string err("GreenletChecker: Expected any type of greenlet, not "); + err += Py_TYPE(p)->tp_name; + throw TypeError(err); + } + } + + void + MainGreenletExactChecker(void *p); + + template + class PyObjectPointer; + + template + class OwnedReference; + + + template + class BorrowedReference; + + typedef BorrowedReference BorrowedObject; + typedef OwnedReference OwnedObject; + + class ImmortalObject; + class ImmortalString; + + template + class _OwnedGreenlet; + + typedef _OwnedGreenlet OwnedGreenlet; + typedef _OwnedGreenlet OwnedMainGreenlet; + + template + class _BorrowedGreenlet; + + typedef _BorrowedGreenlet BorrowedGreenlet; + + void + ContextExactChecker(void *p) + { + if (!p) { + return; + } + if (!PyContext_CheckExact(p)) { + throw TypeError( + "greenlet context must be a contextvars.Context or None" + ); + } + } + + typedef OwnedReference OwnedContext; + } +} + +namespace greenlet { + + + namespace refs { + // A set of classes to make reference counting rules in python + // code explicit. + // + // Rules of use: + // (1) Functions returning a new reference that the caller of the + // function is expected to dispose of should return a + // ``OwnedObject`` object. This object automatically releases its + // reference when it goes out of scope. It works like a ``std::shared_ptr`` + // and can be copied or used as a function parameter (but don't do + // that). Note that constructing a ``OwnedObject`` from a + // PyObject* steals the reference. + // (2) Parameters to functions should be either a + // ``OwnedObject&``, or, more generally, a ``PyObjectPointer&``. + // If the function needs to create its own new reference, it can + // do so by copying to a local ``OwnedObject``. + // (3) Functions returning an existing pointer that is NOT + // incref'd, and which the caller MUST NOT decref, + // should return a ``BorrowedObject``. + + // XXX: The following two paragraphs do not hold for all platforms. + // Notably, 32-bit PPC Linux passes structs by reference, not by + // value, so this actually doesn't work. (Although that's the only + // platform that doesn't work on.) DO NOT ATTEMPT IT. The + // unfortunate consequence of that is that the slots which we + // *know* are already type safe will wind up calling the type + // checker function (when we had the slots accepting + // BorrowedGreenlet, this was bypassed), so this slows us down. + // TODO: Optimize this again. + + // For a class with a single pointer member, whose constructor + // does nothing but copy a pointer parameter into the member, and + // which can then be converted back to the pointer type, compilers + // generate code that's the same as just passing the pointer. + // That is, func(BorrowedObject x) called like ``PyObject* p = + // ...; f(p)`` has 0 overhead. Similarly, they "unpack" to the + // pointer type with 0 overhead. + // + // If there are no virtual functions, no complex inheritance (maybe?) and + // no destructor, these can be directly used as parameters in + // Python callbacks like tp_init: the layout is the same as a + // single pointer. Only subclasses with trivial constructors that + // do nothing but set the single pointer member are safe to use + // that way. + + + // This is the base class for things that can be done with a + // PyObject pointer. It assumes nothing about memory management. + // NOTE: Nothing is virtual, so subclasses shouldn't add new + // storage fields or try to override these methods. + template + class PyObjectPointer + { + public: + typedef T PyType; + protected: + T* p; + public: + PyObjectPointer(T* it=nullptr) : p(it) + { + TC(p); + } + + // We don't allow automatic casting to PyObject* at this + // level, because then we could be passed to Py_DECREF/INCREF, + // but we want nothing to do with memory management. If you + // know better, then you can use the get() method, like on a + // std::shared_ptr. Except we name it borrow() to clarify that + // if this is a reference-tracked object, the pointer you get + // back will go away when the object does. + // TODO: This should probably not exist here, but be moved + // down to relevant sub-types. + + T* borrow() const noexcept + { + return this->p; + } + + PyObject* borrow_o() const noexcept + { + return reinterpret_cast(this->p); + } + + T* operator->() const noexcept + { + return this->p; + } + + bool is_None() const noexcept + { + return this->p == Py_None; + } + + PyObject* acquire_or_None() const noexcept + { + PyObject* result = this->p ? reinterpret_cast(this->p) : Py_None; + Py_INCREF(result); + return result; + } + + explicit operator bool() const noexcept + { + return this->p != nullptr; + } + + bool operator!() const noexcept + { + return this->p == nullptr; + } + + Py_ssize_t REFCNT() const noexcept + { + return p ? Py_REFCNT(p) : -42; + } + + PyTypeObject* TYPE() const noexcept + { + return p ? Py_TYPE(p) : nullptr; + } + + inline OwnedObject PyStr() const noexcept; + inline const std::string as_str() const noexcept; + inline OwnedObject PyGetAttr(const ImmortalObject& name) const noexcept; + inline OwnedObject PyRequireAttr(const char* const name) const; + inline OwnedObject PyRequireAttr(const ImmortalString& name) const; + inline OwnedObject PyCall(const BorrowedObject& arg) const; + inline OwnedObject PyCall(PyGreenlet* arg) const ; + inline OwnedObject PyCall(PyObject* arg) const ; + // PyObject_Call(this, args, kwargs); + inline OwnedObject PyCall(const BorrowedObject args, + const BorrowedObject kwargs) const; + inline OwnedObject PyCall(const OwnedObject& args, + const OwnedObject& kwargs) const; + + protected: + void _set_raw_pointer(void* t) + { + TC(t); + p = reinterpret_cast(t); + } + void* _get_raw_pointer() const + { + return p; + } + }; + +#ifdef GREENLET_USE_STDIO + template + std::ostream& operator<<(std::ostream& os, const PyObjectPointer& s) + { + const std::type_info& t = typeid(s); + os << t.name() + << "(addr=" << s.borrow() + << ", refcnt=" << s.REFCNT() + << ", value=" << s.as_str() + << ")"; + + return os; + } +#endif + + template + inline bool operator==(const PyObjectPointer& lhs, const PyObject* const rhs) noexcept + { + return static_cast(lhs.borrow_o()) == static_cast(rhs); + } + + template + inline bool operator==(const PyObjectPointer& lhs, const PyObjectPointer& rhs) noexcept + { + return lhs.borrow_o() == rhs.borrow_o(); + } + + template + inline bool operator!=(const PyObjectPointer& lhs, + const PyObjectPointer& rhs) noexcept + { + return lhs.borrow_o() != rhs.borrow_o(); + } + + template + class OwnedReference : public PyObjectPointer + { + private: + friend class OwnedList; + + protected: + explicit OwnedReference(T* it) : PyObjectPointer(it) + { + } + + public: + + // Constructors + + static OwnedReference consuming(PyObject* p) + { + return OwnedReference(reinterpret_cast(p)); + } + + static OwnedReference owning(T* p) + { + OwnedReference result(p); + Py_XINCREF(result.p); + return result; + } + + OwnedReference() : PyObjectPointer(nullptr) + {} + + explicit OwnedReference(const PyObjectPointer<>& other) + : PyObjectPointer(nullptr) + { + T* op = other.borrow(); + TC(op); + this->p = other.borrow(); + Py_XINCREF(this->p); + } + + // It would be good to make use of the C++11 distinction + // between move and copy operations, e.g., constructing from a + // pointer should be a move operation. + // In the common case of ``OwnedObject x = Py_SomeFunction()``, + // the call to the copy constructor will be elided completely. + OwnedReference(const OwnedReference& other) + : PyObjectPointer(other.p) + { + Py_XINCREF(this->p); + } + + static OwnedReference None() + { + Py_INCREF(Py_None); + return OwnedReference(Py_None); + } + + // We can assign from exactly our type without any extra checking + OwnedReference& operator=(const OwnedReference& other) + { + Py_XINCREF(other.p); + const T* tmp = this->p; + this->p = other.p; + Py_XDECREF(tmp); + return *this; + } + + OwnedReference& operator=(const BorrowedReference other) + { + return this->operator=(other.borrow()); + } + + OwnedReference& operator=(T* const other) + { + TC(other); + Py_XINCREF(other); + T* tmp = this->p; + this->p = other; + Py_XDECREF(tmp); + return *this; + } + + // We can assign from an arbitrary reference type + // if it passes our check. + template + OwnedReference& operator=(const OwnedReference& other) + { + X* op = other.borrow(); + TC(op); + return this->operator=(reinterpret_cast(op)); + } + + inline void steal(T* other) + { + assert(this->p == nullptr); + TC(other); + this->p = other; + } + + T* relinquish_ownership() + { + T* result = this->p; + this->p = nullptr; + return result; + } + + T* acquire() const + { + // Return a new reference. + // TODO: This may go away when we have reference objects + // throughout the code. + Py_XINCREF(this->p); + return this->p; + } + + // Nothing else declares a destructor, we're the leaf, so we + // should be able to get away without virtual. + ~OwnedReference() + { + Py_CLEAR(this->p); + } + + void CLEAR() + { + Py_CLEAR(this->p); + assert(this->p == nullptr); + } + }; + + static inline + void operator<<=(PyObject*& target, OwnedObject& o) + { + target = o.relinquish_ownership(); + } + + + class NewReference : public OwnedObject + { + private: + G_NO_COPIES_OF_CLS(NewReference); + public: + // Consumes the reference. Only use this + // for API return values. + NewReference(PyObject* it) : OwnedObject(it) + { + } + }; + + class NewDictReference : public NewReference + { + private: + G_NO_COPIES_OF_CLS(NewDictReference); + public: + NewDictReference() : NewReference(PyDict_New()) + { + if (!this->p) { + throw PyErrOccurred(); + } + } + + void SetItem(const char* const key, PyObject* value) + { + Require(PyDict_SetItemString(this->p, key, value)); + } + + void SetItem(const PyObjectPointer<>& key, PyObject* value) + { + Require(PyDict_SetItem(this->p, key.borrow_o(), value)); + } + }; + + template + class _OwnedGreenlet: public OwnedReference + { + private: + protected: + _OwnedGreenlet(T* it) : OwnedReference(it) + {} + + public: + _OwnedGreenlet() : OwnedReference() + {} + + _OwnedGreenlet(const _OwnedGreenlet& other) : OwnedReference(other) + { + } + _OwnedGreenlet(OwnedMainGreenlet& other) : + OwnedReference(reinterpret_cast(other.acquire())) + { + } + _OwnedGreenlet(const BorrowedGreenlet& other); + // Steals a reference. + static _OwnedGreenlet consuming(PyGreenlet* it) + { + return _OwnedGreenlet(reinterpret_cast(it)); + } + + inline _OwnedGreenlet& operator=(const OwnedGreenlet& other) + { + return this->operator=(other.borrow()); + } + + inline _OwnedGreenlet& operator=(const BorrowedGreenlet& other); + + _OwnedGreenlet& operator=(const OwnedMainGreenlet& other) + { + PyGreenlet* owned = other.acquire(); + Py_XDECREF(this->p); + this->p = reinterpret_cast(owned); + return *this; + } + + _OwnedGreenlet& operator=(T* const other) + { + OwnedReference::operator=(other); + return *this; + } + + T* relinquish_ownership() + { + T* result = this->p; + this->p = nullptr; + return result; + } + + PyObject* relinquish_ownership_o() + { + return reinterpret_cast(relinquish_ownership()); + } + + inline Greenlet* operator->() const noexcept; + inline operator Greenlet*() const noexcept; + }; + + template + class BorrowedReference : public PyObjectPointer + { + public: + // Allow implicit creation from PyObject* pointers as we + // transition to using these classes. Also allow automatic + // conversion to PyObject* for passing to C API calls and even + // for Py_INCREF/DECREF, because we ourselves do no memory management. + BorrowedReference(T* it) : PyObjectPointer(it) + {} + + BorrowedReference(const PyObjectPointer& ref) : PyObjectPointer(ref.borrow()) + {} + + BorrowedReference() : PyObjectPointer(nullptr) + {} + + operator T*() const + { + return this->p; + } + }; + + typedef BorrowedReference BorrowedObject; + //typedef BorrowedReference BorrowedGreenlet; + + template + class _BorrowedGreenlet : public BorrowedReference + { + public: + _BorrowedGreenlet() : + BorrowedReference(nullptr) + {} + + _BorrowedGreenlet(T* it) : + BorrowedReference(it) + {} + + _BorrowedGreenlet(const BorrowedObject& it); + + _BorrowedGreenlet(const OwnedGreenlet& it) : + BorrowedReference(it.borrow()) + {} + + _BorrowedGreenlet& operator=(const BorrowedObject& other); + + // We get one of these for PyGreenlet, but one for PyObject + // is handy as well + operator PyObject*() const + { + return reinterpret_cast(this->p); + } + Greenlet* operator->() const noexcept; + operator Greenlet*() const noexcept; + }; + + typedef _BorrowedGreenlet BorrowedGreenlet; + + template + _OwnedGreenlet::_OwnedGreenlet(const BorrowedGreenlet& other) + : OwnedReference(reinterpret_cast(other.borrow())) + { + Py_XINCREF(this->p); + } + + + class BorrowedMainGreenlet + : public _BorrowedGreenlet + { + public: + BorrowedMainGreenlet(const OwnedMainGreenlet& it) : + _BorrowedGreenlet(it.borrow()) + {} + BorrowedMainGreenlet(PyGreenlet* it=nullptr) + : _BorrowedGreenlet(it) + {} + }; + + template + _OwnedGreenlet& _OwnedGreenlet::operator=(const BorrowedGreenlet& other) + { + return this->operator=(other.borrow()); + } + + + class ImmortalObject : public PyObjectPointer<> + { + private: + G_NO_ASSIGNMENT_OF_CLS(ImmortalObject); + public: + explicit ImmortalObject(PyObject* it) : PyObjectPointer<>(it) + { + } + + ImmortalObject(const ImmortalObject& other) + : PyObjectPointer<>(other.p) + { + + } + + /** + * Become the new owner of the object. Does not change the + * reference count. + */ + ImmortalObject& operator=(PyObject* it) + { + assert(this->p == nullptr); + this->p = it; + return *this; + } + + static ImmortalObject consuming(PyObject* it) + { + return ImmortalObject(it); + } + + inline operator PyObject*() const + { + return this->p; + } + }; + + class ImmortalString : public ImmortalObject + { + private: + G_NO_COPIES_OF_CLS(ImmortalString); + const char* str; + public: + ImmortalString(const char* const str) : + ImmortalObject(str ? Require(PyUnicode_InternFromString(str)) : nullptr) + { + this->str = str; + } + + inline ImmortalString& operator=(const char* const str) + { + if (!this->p) { + this->p = Require(PyUnicode_InternFromString(str)); + this->str = str; + } + else { + assert(this->str == str); + } + return *this; + } + + inline operator std::string() const + { + return this->str; + } + + }; + + class ImmortalEventName : public ImmortalString + { + private: + G_NO_COPIES_OF_CLS(ImmortalEventName); + public: + ImmortalEventName(const char* const str) : ImmortalString(str) + {} + }; + + class ImmortalException : public ImmortalObject + { + private: + G_NO_COPIES_OF_CLS(ImmortalException); + public: + ImmortalException(const char* const name, PyObject* base=nullptr) : + ImmortalObject(name + // Python 2.7 isn't const correct + ? Require(PyErr_NewException((char*)name, base, nullptr)) + : nullptr) + {} + + inline bool PyExceptionMatches() const + { + return PyErr_ExceptionMatches(this->p) > 0; + } + + }; + + template + inline OwnedObject PyObjectPointer::PyStr() const noexcept + { + if (!this->p) { + return OwnedObject(); + } + return OwnedObject::consuming(PyObject_Str(reinterpret_cast(this->p))); + } + + template + inline const std::string PyObjectPointer::as_str() const noexcept + { + // NOTE: This is not Python exception safe. + if (this->p) { + // The Python APIs return a cached char* value that's only valid + // as long as the original object stays around, and we're + // about to (probably) toss it. Hence the copy to std::string. + OwnedObject py_str = this->PyStr(); + if (!py_str) { + return "(nil)"; + } + return PyUnicode_AsUTF8(py_str.borrow()); + } + return "(nil)"; + } + + template + inline OwnedObject PyObjectPointer::PyGetAttr(const ImmortalObject& name) const noexcept + { + assert(this->p); + return OwnedObject::consuming(PyObject_GetAttr(reinterpret_cast(this->p), name)); + } + + template + inline OwnedObject PyObjectPointer::PyRequireAttr(const char* const name) const + { + assert(this->p); + return OwnedObject::consuming(Require(PyObject_GetAttrString(this->p, name), name)); + } + + template + inline OwnedObject PyObjectPointer::PyRequireAttr(const ImmortalString& name) const + { + assert(this->p); + return OwnedObject::consuming(Require( + PyObject_GetAttr( + reinterpret_cast(this->p), + name + ), + name + )); + } + + template + inline OwnedObject PyObjectPointer::PyCall(const BorrowedObject& arg) const + { + return this->PyCall(arg.borrow()); + } + + template + inline OwnedObject PyObjectPointer::PyCall(PyGreenlet* arg) const + { + return this->PyCall(reinterpret_cast(arg)); + } + + template + inline OwnedObject PyObjectPointer::PyCall(PyObject* arg) const + { + assert(this->p); + return OwnedObject::consuming(PyObject_CallFunctionObjArgs(this->p, arg, NULL)); + } + + template + inline OwnedObject PyObjectPointer::PyCall(const BorrowedObject args, + const BorrowedObject kwargs) const + { + assert(this->p); + return OwnedObject::consuming(PyObject_Call(this->p, args, kwargs)); + } + + template + inline OwnedObject PyObjectPointer::PyCall(const OwnedObject& args, + const OwnedObject& kwargs) const + { + assert(this->p); + return OwnedObject::consuming(PyObject_Call(this->p, args.borrow(), kwargs.borrow())); + } + + inline void + ListChecker(void * p) + { + if (!p) { + return; + } + if (!PyList_Check(p)) { + throw TypeError("Expected a list"); + } + } + + class OwnedList : public OwnedReference + { + private: + G_NO_ASSIGNMENT_OF_CLS(OwnedList); + public: + // TODO: Would like to use move. + explicit OwnedList(const OwnedObject& other) + : OwnedReference(other) + { + } + + OwnedList& operator=(const OwnedObject& other) + { + if (other && PyList_Check(other.p)) { + // Valid list. Own a new reference to it, discard the + // reference to what we did own. + PyObject* new_ptr = other.p; + Py_INCREF(new_ptr); + Py_XDECREF(this->p); + this->p = new_ptr; + } + else { + // Either the other object was NULL (an error) or it + // wasn't a list. Either way, we're now invalidated. + Py_XDECREF(this->p); + this->p = nullptr; + } + return *this; + } + + inline bool empty() const + { + return PyList_GET_SIZE(p) == 0; + } + + inline Py_ssize_t size() const + { + return PyList_GET_SIZE(p); + } + + inline BorrowedObject at(const Py_ssize_t index) const + { + return PyList_GET_ITEM(p, index); + } + + inline void clear() + { + PyList_SetSlice(p, 0, PyList_GET_SIZE(p), NULL); + } + }; + + // Use this to represent the module object used at module init + // time. + // This could either be a borrowed (Py2) or new (Py3) reference; + // either way, we don't want to do any memory management + // on it here, Python itself will handle that. + // XXX: Actually, that's not quite right. On Python 3, if an + // exception occurs before we return to the interpreter, this will + // leak; but all previous versions also had that problem. + class CreatedModule : public PyObjectPointer<> + { + private: + G_NO_COPIES_OF_CLS(CreatedModule); + public: + CreatedModule(PyModuleDef& mod_def) : PyObjectPointer<>( + Require(PyModule_Create(&mod_def))) + { + } + + // PyAddObject(): Add a reference to the object to the module. + // On return, the reference count of the object is unchanged. + // + // The docs warn that PyModule_AddObject only steals the + // reference on success, so if it fails after we've incref'd + // or allocated, we're responsible for the decref. + void PyAddObject(const char* name, const long new_bool) + { + OwnedObject p = OwnedObject::consuming(Require(PyBool_FromLong(new_bool))); + this->PyAddObject(name, p); + } + + void PyAddObject(const char* name, const OwnedObject& new_object) + { + // The caller already owns a reference they will decref + // when their variable goes out of scope, we still need to + // incref/decref. + this->PyAddObject(name, new_object.borrow()); + } + + void PyAddObject(const char* name, const ImmortalObject& new_object) + { + this->PyAddObject(name, new_object.borrow()); + } + + void PyAddObject(const char* name, PyTypeObject& type) + { + this->PyAddObject(name, reinterpret_cast(&type)); + } + + void PyAddObject(const char* name, PyObject* new_object) + { + Py_INCREF(new_object); + try { + Require(PyModule_AddObject(this->p, name, new_object)); + } + catch (const PyErrOccurred&) { + Py_DECREF(p); + throw; + } + } + }; + + class PyErrFetchParam : public PyObjectPointer<> + { + // Not an owned object, because we can't be initialized with + // one, and we only sometimes acquire ownership. + private: + G_NO_COPIES_OF_CLS(PyErrFetchParam); + public: + // To allow declaring these and passing them to + // PyErr_Fetch we implement the empty constructor, + // and the address operator. + PyErrFetchParam() : PyObjectPointer<>(nullptr) + { + } + + PyObject** operator&() + { + return &this->p; + } + + // This allows us to pass one directly without the &, + // BUT it has higher precedence than the bool operator + // if it's not explicit. + operator PyObject**() + { + return &this->p; + } + + // We don't want to be able to pass these to Py_DECREF and + // such so we don't have the implicit PyObject* conversion. + + inline PyObject* relinquish_ownership() + { + PyObject* result = this->p; + this->p = nullptr; + return result; + } + + ~PyErrFetchParam() + { + Py_XDECREF(p); + } + }; + + class OwnedErrPiece : public OwnedObject + { + private: + + public: + // Unlike OwnedObject, this increments the refcount. + OwnedErrPiece(PyObject* p=nullptr) : OwnedObject(p) + { + this->acquire(); + } + + PyObject** operator&() + { + return &this->p; + } + + inline operator PyObject*() const + { + return this->p; + } + + operator PyTypeObject*() const + { + return reinterpret_cast(this->p); + } + }; + + class PyErrPieces + { + private: + OwnedErrPiece type; + OwnedErrPiece instance; + OwnedErrPiece traceback; + bool restored; + public: + // Takes new references; if we're destroyed before + // restoring the error, we drop the references. + PyErrPieces(PyObject* t, PyObject* v, PyObject* tb) : + type(t), + instance(v), + traceback(tb), + restored(0) + { + this->normalize(); + } + + PyErrPieces() : + restored(0) + { + // PyErr_Fetch transfers ownership to us, so + // we don't actually need to INCREF; but we *do* + // need to DECREF if we're not restored. + PyErrFetchParam t, v, tb; + PyErr_Fetch(&t, &v, &tb); + type.steal(t.relinquish_ownership()); + instance.steal(v.relinquish_ownership()); + traceback.steal(tb.relinquish_ownership()); + } + + void PyErrRestore() + { + // can only do this once + assert(!this->restored); + this->restored = true; + PyErr_Restore( + this->type.relinquish_ownership(), + this->instance.relinquish_ownership(), + this->traceback.relinquish_ownership()); + assert(!this->type && !this->instance && !this->traceback); + } + + private: + void normalize() + { + // First, check the traceback argument, replacing None, + // with NULL + if (traceback.is_None()) { + traceback = nullptr; + } + + if (traceback && !PyTraceBack_Check(traceback.borrow())) { + throw PyErrOccurred(PyExc_TypeError, + "throw() third argument must be a traceback object"); + } + + if (PyExceptionClass_Check(type)) { + // If we just had a type, we'll now have a type and + // instance. + // The type's refcount will have gone up by one + // because of the instance and the instance will have + // a refcount of one. Either way, we owned, and still + // do own, exactly one reference. + PyErr_NormalizeException(&type, &instance, &traceback); + + } + else if (PyExceptionInstance_Check(type)) { + /* Raising an instance --- usually that means an + object that is a subclass of BaseException, but on + Python 2, that can also mean an arbitrary old-style + object. The value should be a dummy. */ + if (instance && !instance.is_None()) { + throw PyErrOccurred( + PyExc_TypeError, + "instance exception may not have a separate value"); + } + /* Normalize to raise , */ + this->instance = this->type; + this->type = PyExceptionInstance_Class(instance.borrow()); + + /* + It would be tempting to do this: + + Py_ssize_t type_count = Py_REFCNT(Py_TYPE(instance.borrow())); + this->type = PyExceptionInstance_Class(instance.borrow()); + assert(this->type.REFCNT() == type_count + 1); + + But that doesn't work on Python 2 in the case of + old-style instances: The result of Py_TYPE is going to + be the global shared that all + old-style classes have, while the return of Instance_Class() + will be the Python-level class object. The two are unrelated. + */ + } + else { + /* Not something you can raise. throw() fails. */ + PyErr_Format(PyExc_TypeError, + "exceptions must be classes, or instances, not %s", + Py_TYPE(type.borrow())->tp_name); + throw PyErrOccurred(); + } + } + }; + + // PyArg_Parse's O argument returns a borrowed reference. + class PyArgParseParam : public BorrowedObject + { + private: + G_NO_COPIES_OF_CLS(PyArgParseParam); + public: + explicit PyArgParseParam(PyObject* p=nullptr) : BorrowedObject(p) + { + } + + inline PyObject** operator&() + { + return &this->p; + } + }; + +};}; + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_slp_switch.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_slp_switch.hpp new file mode 100644 index 0000000000000000000000000000000000000000..bd4b7ae1a6ea950b19fa890784021426822ea274 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_slp_switch.hpp @@ -0,0 +1,99 @@ +#ifndef GREENLET_SLP_SWITCH_HPP +#define GREENLET_SLP_SWITCH_HPP + +#include "greenlet_compiler_compat.hpp" +#include "greenlet_refs.hpp" + +/* + * the following macros are spliced into the OS/compiler + * specific code, in order to simplify maintenance. + */ +// We can save about 10% of the time it takes to switch greenlets if +// we thread the thread state through the slp_save_state() and the +// following slp_restore_state() calls from +// slp_switch()->g_switchstack() (which already needs to access it). +// +// However: +// +// that requires changing the prototypes and implementations of the +// switching functions. If we just change the prototype of +// slp_switch() to accept the argument and update the macros, without +// changing the implementation of slp_switch(), we get crashes on +// 64-bit Linux and 32-bit x86 (for reasons that aren't 100% clear); +// on the other hand, 64-bit macOS seems to be fine. Also, 64-bit +// windows is an issue because slp_switch is written fully in assembly +// and currently ignores its argument so some code would have to be +// adjusted there to pass the argument on to the +// ``slp_save_state_asm()`` function (but interestingly, because of +// the calling convention, the extra argument is just ignored and +// things function fine, albeit slower, if we just modify +// ``slp_save_state_asm`()` to fetch the pointer to pass to the +// macro.) +// +// Our compromise is to use a *glabal*, untracked, weak, pointer +// to the necessary thread state during the process of switching only. +// This is safe because we're protected by the GIL, and if we're +// running this code, the thread isn't exiting. This also nets us a +// 10-12% speed improvement. + +static greenlet::Greenlet* volatile switching_thread_state = nullptr; + + +extern "C" { +static int GREENLET_NOINLINE(slp_save_state_trampoline)(char* stackref); +static void GREENLET_NOINLINE(slp_restore_state_trampoline)(); +} + + +#define SLP_SAVE_STATE(stackref, stsizediff) \ +do { \ + assert(switching_thread_state); \ + stackref += STACK_MAGIC; \ + if (slp_save_state_trampoline((char*)stackref)) \ + return -1; \ + if (!switching_thread_state->active()) \ + return 1; \ + stsizediff = switching_thread_state->stack_start() - (char*)stackref; \ +} while (0) + +#define SLP_RESTORE_STATE() slp_restore_state_trampoline() + +#define SLP_EVAL +extern "C" { +#define slp_switch GREENLET_NOINLINE(slp_switch) +#include "slp_platformselect.h" +} +#undef slp_switch + +#ifndef STACK_MAGIC +# error \ + "greenlet needs to be ported to this platform, or taught how to detect your compiler properly." +#endif /* !STACK_MAGIC */ + + + +#ifdef EXTERNAL_ASM +/* CCP addition: Make these functions, to be called from assembler. + * The token include file for the given platform should enable the + * EXTERNAL_ASM define so that this is included. + */ +extern "C" { +intptr_t +slp_save_state_asm(intptr_t* ref) +{ + intptr_t diff; + SLP_SAVE_STATE(ref, diff); + return diff; +} + +void +slp_restore_state_asm(void) +{ + SLP_RESTORE_STATE(); +} + +extern int slp_switch(void); +}; +#endif + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_thread_support.hpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_thread_support.hpp new file mode 100644 index 0000000000000000000000000000000000000000..3ded7d2b730e79d15c95704491d7020cf58bb92f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/greenlet_thread_support.hpp @@ -0,0 +1,31 @@ +#ifndef GREENLET_THREAD_SUPPORT_HPP +#define GREENLET_THREAD_SUPPORT_HPP + +/** + * Defines various utility functions to help greenlet integrate well + * with threads. This used to be needed when we supported Python + * 2.7 on Windows, which used a very old compiler. We wrote an + * alternative implementation using Python APIs and POSIX or Windows + * APIs, but that's no longer needed. So this file is a shadow of its + * former self --- but may be needed in the future. + */ + +#include +#include +#include + +#include "greenlet_compiler_compat.hpp" + +namespace greenlet { + typedef std::mutex Mutex; + typedef std::lock_guard LockGuard; + class LockInitError : public std::runtime_error + { + public: + LockInitError(const char* what) : std::runtime_error(what) + {}; + }; +}; + + +#endif /* GREENLET_THREAD_SUPPORT_HPP */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/setup_switch_x64_masm.cmd b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/setup_switch_x64_masm.cmd new file mode 100644 index 0000000000000000000000000000000000000000..092859555c23a6802d44761f96f5d35a456a7e8b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/setup_switch_x64_masm.cmd @@ -0,0 +1,2 @@ +call "C:\Program Files (x86)\Microsoft Visual Studio 9.0\VC\vcvarsall.bat" amd64 +ml64 /nologo /c /Fo switch_x64_masm.obj switch_x64_masm.asm diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_aarch64_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_aarch64_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..058617c40982fa9deb804b4046c1bc71809eecdb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_aarch64_gcc.h @@ -0,0 +1,124 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 07-Sep-16 Add clang support using x register naming. Fredrik Fornwall + * 13-Apr-13 Add support for strange GCC caller-save decisions + * 08-Apr-13 File creation. Michael Matz + * + * NOTES + * + * Simply save all callee saved registers + * + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 +#define REGS_TO_SAVE "x19", "x20", "x21", "x22", "x23", "x24", "x25", "x26", \ + "x27", "x28", "x30" /* aka lr */, \ + "v8", "v9", "v10", "v11", \ + "v12", "v13", "v14", "v15" + +/* + * Recall: + asm asm-qualifiers ( AssemblerTemplate + : OutputOperands + [ : InputOperands + [ : Clobbers ] ]) + + or (if asm-qualifiers contains 'goto') + + asm asm-qualifiers ( AssemblerTemplate + : OutputOperands + : InputOperands + : Clobbers + : GotoLabels) + + and OutputOperands are + + [ [asmSymbolicName] ] constraint (cvariablename) + + When a name is given, refer to it as ``%[the name]``. + When not given, ``%i`` where ``i`` is the zero-based index. + + constraints starting with ``=`` means only writing; ``+`` means + reading and writing. + + This is followed by ``r`` (must be register) or ``m`` (must be memory) + and these can be combined. + + The ``cvariablename`` is actually an lvalue expression. + + In AArch65, 31 general purpose registers. If named X0... they are + 64-bit. If named W0... they are the bottom 32 bits of the + corresponding 64 bit register. + + XZR and WZR are hardcoded to 0, and ignore writes. + + Arguments are in X0..X7. C++ uses X0 for ``this``. X0 holds simple return + values (?) + + Whenever a W register is written, the top half of the X register is zeroed. + */ + +static int +slp_switch(void) +{ + int err; + void *fp; + /* Windowz uses a 32-bit long on a 64-bit platform, unlike the rest of + the world, and in theory we can be compiled with GCC/llvm on 64-bit + windows. So we need a fixed-width type. + */ + int64_t *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("str x29, %0" : "=m"(fp) : : ); + __asm__ ("mov %0, sp" : "=r" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "add sp,sp,%0\n" + "add x29,x29,%0\n" + : + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + /* SLP_SAVE_STATE macro contains some return statements + (of -1 and 1). It falls through only when + the return value of slp_save_state() is zero, which + is placed in x0. + In that case we (slp_switch) also want to return zero + (also in x0 of course). + Now, some GCC versions (seen with 4.8) think it's a + good idea to save/restore x0 around the call to + slp_restore_state(), instead of simply zeroing it + at the return below. But slp_restore_state + writes random values to the stack slot used for this + save/restore (from when it once was saved above in + SLP_SAVE_STATE, when it was still uninitialized), so + "restoring" that precious zero actually makes us + return random values. There are some ways to make + GCC not use that zero value in the normal return path + (e.g. making err volatile, but that costs a little + stack space), and the simplest is to call a function + that returns an unknown value (which happens to be zero), + so the saved/restored value is unused. + + Thus, this line stores a 0 into the ``err`` variable + (which must be held in a register for this instruction, + of course). The ``w`` qualifier causes the instruction + to use W0 instead of X0, otherwise we get a warning + about a value size mismatch (because err is an int, + and aarch64 platforms are LP64: 32-bit int, 64 bit long + and pointer). + */ + __asm__ volatile ("mov %w0, #0" : "=r" (err)); + } + __asm__ volatile ("ldr x29, %0" : : "m" (fp) :); + __asm__ volatile ("" : : : REGS_TO_SAVE); + return err; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_alpha_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_alpha_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..7e07abfc27d778e815a628b3fa1a6a5642e6555f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_alpha_unix.h @@ -0,0 +1,30 @@ +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "$9", "$10", "$11", "$12", "$13", "$14", "$15", \ + "$f2", "$f3", "$f4", "$f5", "$f6", "$f7", "$f8", "$f9" + +static int +slp_switch(void) +{ + int ret; + long *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("mov $30, %0" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "addq $30, %0, $30\n\t" + : /* no outputs */ + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("mov $31, %0" : "=r" (ret) : ); + return ret; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_amd64_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_amd64_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..d4701105fb8f88820b174832db34da5b7c309a0c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_amd64_unix.h @@ -0,0 +1,87 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 3-May-13 Ralf Schmitt + * Add support for strange GCC caller-save decisions + * (ported from switch_aarch64_gcc.h) + * 18-Aug-11 Alexey Borzenkov + * Correctly save rbp, csr and cw + * 01-Apr-04 Hye-Shik Chang + * Ported from i386 to amd64. + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for spark + * 31-Avr-02 Armin Rigo + * Added ebx, esi and edi register-saves. + * 01-Mar-02 Samual M. Rushing + * Ported from i386. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +/* #define STACK_MAGIC 3 */ +/* the above works fine with gcc 2.96, but 2.95.3 wants this */ +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "r12", "r13", "r14", "r15" + +static int +slp_switch(void) +{ + int err; + void* rbp; + void* rbx; + unsigned int csr; + unsigned short cw; + /* This used to be declared 'register', but that does nothing in + modern compilers and is explicitly forbidden in some new + standards. */ + long *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("fstcw %0" : "=m" (cw)); + __asm__ volatile ("stmxcsr %0" : "=m" (csr)); + __asm__ volatile ("movq %%rbp, %0" : "=m" (rbp)); + __asm__ volatile ("movq %%rbx, %0" : "=m" (rbx)); + __asm__ ("movq %%rsp, %0" : "=g" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "addq %0, %%rsp\n" + "addq %0, %%rbp\n" + : + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + __asm__ volatile ("xorq %%rax, %%rax" : "=a" (err)); + } + __asm__ volatile ("movq %0, %%rbx" : : "m" (rbx)); + __asm__ volatile ("movq %0, %%rbp" : : "m" (rbp)); + __asm__ volatile ("ldmxcsr %0" : : "m" (csr)); + __asm__ volatile ("fldcw %0" : : "m" (cw)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..655003aa12ca3ba9bba634a879f702c2789e050e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_gcc.h @@ -0,0 +1,79 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 14-Aug-06 File creation. Ported from Arm Thumb. Sylvain Baro + * 3-Sep-06 Commented out saving of r1-r3 (r4 already commented out) as I + * read that these do not need to be saved. Also added notes and + * errors related to the frame pointer. Richard Tew. + * + * NOTES + * + * It is not possible to detect if fp is used or not, so the supplied + * switch function needs to support it, so that you can remove it if + * it does not apply to you. + * + * POSSIBLE ERRORS + * + * "fp cannot be used in asm here" + * + * - Try commenting out "fp" in REGS_TO_SAVE. + * + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 +#define REG_SP "sp" +#define REG_SPSP "sp,sp" +#ifdef __thumb__ +#define REG_FP "r7" +#define REG_FPFP "r7,r7" +#define REGS_TO_SAVE_GENERAL "r4", "r5", "r6", "r8", "r9", "r10", "r11", "lr" +#else +#define REG_FP "fp" +#define REG_FPFP "fp,fp" +#define REGS_TO_SAVE_GENERAL "r4", "r5", "r6", "r7", "r8", "r9", "r10", "lr" +#endif +#if defined(__SOFTFP__) +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL +#elif defined(__VFP_FP__) +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL, "d8", "d9", "d10", "d11", \ + "d12", "d13", "d14", "d15" +#elif defined(__MAVERICK__) +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL, "mvf4", "mvf5", "mvf6", "mvf7", \ + "mvf8", "mvf9", "mvf10", "mvf11", \ + "mvf12", "mvf13", "mvf14", "mvf15" +#else +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL, "f4", "f5", "f6", "f7" +#endif + +static int +#ifdef __GNUC__ +__attribute__((optimize("no-omit-frame-pointer"))) +#endif +slp_switch(void) +{ + void *fp; + int *stackref, stsizediff; + int result; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("mov r0," REG_FP "\n\tstr r0,%0" : "=m" (fp) : : "r0"); + __asm__ ("mov %0," REG_SP : "=r" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "add " REG_SPSP ",%0\n" + "add " REG_FPFP ",%0\n" + : + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("ldr r0,%1\n\tmov " REG_FP ",r0\n\tmov %0, #0" : "=r" (result) : "m" (fp) : "r0"); + __asm__ volatile ("" : : : REGS_TO_SAVE); + return result; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_ios.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_ios.h new file mode 100644 index 0000000000000000000000000000000000000000..9e640e15f1a595cd086549041fc944d41d3fc3ae --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm32_ios.h @@ -0,0 +1,67 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 31-May-15 iOS support. Ported from arm32. Proton + * + * NOTES + * + * It is not possible to detect if fp is used or not, so the supplied + * switch function needs to support it, so that you can remove it if + * it does not apply to you. + * + * POSSIBLE ERRORS + * + * "fp cannot be used in asm here" + * + * - Try commenting out "fp" in REGS_TO_SAVE. + * + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 0 +#define REG_SP "sp" +#define REG_SPSP "sp,sp" +#define REG_FP "r7" +#define REG_FPFP "r7,r7" +#define REGS_TO_SAVE_GENERAL "r4", "r5", "r6", "r8", "r10", "r11", "lr" +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL, "d8", "d9", "d10", "d11", \ + "d12", "d13", "d14", "d15" + +static int +#ifdef __GNUC__ +__attribute__((optimize("no-omit-frame-pointer"))) +#endif +slp_switch(void) +{ + void *fp; + int *stackref, stsizediff, result; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("str " REG_FP ",%0" : "=m" (fp)); + __asm__ ("mov %0," REG_SP : "=r" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "add " REG_SPSP ",%0\n" + "add " REG_FPFP ",%0\n" + : + : "r" (stsizediff) + : REGS_TO_SAVE /* Clobber registers, force compiler to + * recalculate address of void *fp from REG_SP or REG_FP */ + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ( + "ldr " REG_FP ", %1\n\t" + "mov %0, #0" + : "=r" (result) + : "m" (fp) + : REGS_TO_SAVE /* Force compiler to restore saved registers after this */ + ); + return result; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.asm b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.asm new file mode 100644 index 0000000000000000000000000000000000000000..29f9c225e296ab9a088318f14de35ca0496d1801 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.asm @@ -0,0 +1,53 @@ + AREA switch_arm64_masm, CODE, READONLY; + GLOBAL slp_switch [FUNC] + EXTERN slp_save_state_asm + EXTERN slp_restore_state_asm + +slp_switch + ; push callee saved registers to stack + stp x19, x20, [sp, #-16]! + stp x21, x22, [sp, #-16]! + stp x23, x24, [sp, #-16]! + stp x25, x26, [sp, #-16]! + stp x27, x28, [sp, #-16]! + stp x29, x30, [sp, #-16]! + stp d8, d9, [sp, #-16]! + stp d10, d11, [sp, #-16]! + stp d12, d13, [sp, #-16]! + stp d14, d15, [sp, #-16]! + + ; call slp_save_state_asm with stack pointer + mov x0, sp + bl slp_save_state_asm + + ; early return for return value of 1 and -1 + cmp x0, #-1 + b.eq RETURN + cmp x0, #1 + b.eq RETURN + + ; increment stack and frame pointer + add sp, sp, x0 + add x29, x29, x0 + + bl slp_restore_state_asm + + ; store return value for successful completion of routine + mov x0, #0 + +RETURN + ; pop registers from stack + ldp d14, d15, [sp], #16 + ldp d12, d13, [sp], #16 + ldp d10, d11, [sp], #16 + ldp d8, d9, [sp], #16 + ldp x29, x30, [sp], #16 + ldp x27, x28, [sp], #16 + ldp x25, x26, [sp], #16 + ldp x23, x24, [sp], #16 + ldp x21, x22, [sp], #16 + ldp x19, x20, [sp], #16 + + ret + + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.obj b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.obj new file mode 100644 index 0000000000000000000000000000000000000000..f6f220e4310baaa9756110685ce7d6a2bdf90c37 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_masm.obj differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_msvc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_msvc.h new file mode 100644 index 0000000000000000000000000000000000000000..7ab7f45be54a99bb2fef01fadb1cd9d1baefe393 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_arm64_msvc.h @@ -0,0 +1,17 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 21-Oct-21 Niyas Sait + * First version to enable win/arm64 support. + */ + +#define STACK_REFPLUS 1 +#define STACK_MAGIC 0 + +/* Use the generic support for an external assembly language slp_switch function. */ +#define EXTERNAL_ASM + +#ifdef SLP_EVAL +/* This always uses the external masm assembly file. */ +#endif \ No newline at end of file diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_csky_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_csky_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..ac469d3a0c68c51c3b12ee08e94c08291472f697 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_csky_gcc.h @@ -0,0 +1,48 @@ +#ifdef SLP_EVAL +#define STACK_MAGIC 0 +#define REG_FP "r8" +#ifdef __CSKYABIV2__ +#define REGS_TO_SAVE_GENERAL "r4", "r5", "r6", "r7", "r9", "r10", "r11", "r15",\ + "r16", "r17", "r18", "r19", "r20", "r21", "r22",\ + "r23", "r24", "r25" + +#if defined (__CSKY_HARD_FLOAT__) || (__CSKY_VDSP__) +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL, "vr8", "vr9", "vr10", "vr11", "vr12",\ + "vr13", "vr14", "vr15" +#else +#define REGS_TO_SAVE REGS_TO_SAVE_GENERAL +#endif +#else +#define REGS_TO_SAVE "r9", "r10", "r11", "r12", "r13", "r15" +#endif + + +static int +#ifdef __GNUC__ +__attribute__((optimize("no-omit-frame-pointer"))) +#endif +slp_switch(void) +{ + int *stackref, stsizediff; + int result; + + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ ("mov %0, sp" : "=r" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "addu sp,%0\n" + "addu "REG_FP",%0\n" + : + : "r" (stsizediff) + ); + + SLP_RESTORE_STATE(); + } + __asm__ volatile ("movi %0, 0" : "=r" (result)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + + return result; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_loongarch64_linux.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_loongarch64_linux.h new file mode 100644 index 0000000000000000000000000000000000000000..9eaf34ef4328ff3c91e0363f793c4a575063cea4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_loongarch64_linux.h @@ -0,0 +1,31 @@ +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "s0", "s1", "s2", "s3", "s4", "s5", \ + "s6", "s7", "s8", "fp", \ + "f24", "f25", "f26", "f27", "f28", "f29", "f30", "f31" + +static int +slp_switch(void) +{ + int ret; + long *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("move %0, $sp" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "add.d $sp, $sp, %0\n\t" + : /* no outputs */ + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("move %0, $zero" : "=r" (ret) : ); + return ret; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_m68k_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_m68k_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..da761c2da81825aad0463af2c5864c2d9d8580e2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_m68k_gcc.h @@ -0,0 +1,38 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 2014-01-06 Andreas Schwab + * File created. + */ + +#ifdef SLP_EVAL + +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "%d2", "%d3", "%d4", "%d5", "%d6", "%d7", \ + "%a2", "%a3", "%a4" + +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + void *fp, *a5; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("move.l %%fp, %0" : "=m"(fp)); + __asm__ volatile ("move.l %%a5, %0" : "=m"(a5)); + __asm__ ("move.l %%sp, %0" : "=r"(stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ("add.l %0, %%sp; add.l %0, %%fp" : : "r"(stsizediff)); + SLP_RESTORE_STATE(); + __asm__ volatile ("clr.l %0" : "=g" (err)); + } + __asm__ volatile ("move.l %0, %%a5" : : "m"(a5)); + __asm__ volatile ("move.l %0, %%fp" : : "m"(fp)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + return err; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_mips_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_mips_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..b9003e947d3c76cd4a79d6ada2fe78ddd3235361 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_mips_unix.h @@ -0,0 +1,64 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 20-Sep-14 Matt Madison + * Re-code the saving of the gp register for MIPS64. + * 05-Jan-08 Thiemo Seufer + * Ported from ppc. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "$16", "$17", "$18", "$19", "$20", "$21", "$22", \ + "$23", "$30" +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; +#ifdef __mips64 + uint64_t gpsave; +#endif + __asm__ __volatile__ ("" : : : REGS_TO_SAVE); +#ifdef __mips64 + __asm__ __volatile__ ("sd $28,%0" : "=m" (gpsave) : : ); +#endif + __asm__ ("move %0, $29" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ __volatile__ ( +#ifdef __mips64 + "daddu $29, %0\n" +#else + "addu $29, %0\n" +#endif + : /* no outputs */ + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } +#ifdef __mips64 + __asm__ __volatile__ ("ld $28,%0" : : "m" (gpsave) : ); +#endif + __asm__ __volatile__ ("" : : : REGS_TO_SAVE); + __asm__ __volatile__ ("move %0, $0" : "=r" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_aix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_aix.h new file mode 100644 index 0000000000000000000000000000000000000000..e7e0b87764c929c13fa01aa976b53db89562edfd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_aix.h @@ -0,0 +1,103 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 16-Oct-20 Jesse Gorzinski + * Copied from Linux PPC64 implementation + * 04-Sep-18 Alexey Borzenkov + * Workaround a gcc bug using manual save/restore of r30 + * 21-Mar-18 Tulio Magno Quites Machado Filho + * Added r30 to the list of saved registers in order to fully comply with + * both ppc64 ELFv1 ABI and the ppc64le ELFv2 ABI, that classify this + * register as a nonvolatile register used for local variables. + * 21-Mar-18 Laszlo Boszormenyi + * Save r2 (TOC pointer) manually. + * 10-Dec-13 Ulrich Weigand + * Support ELFv2 ABI. Save float/vector registers. + * 09-Mar-12 Michael Ellerman + * 64-bit implementation, copied from 32-bit. + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 04-Oct-02 Gustavo Niemeyer + * Ported from MacOS version. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + * 31-Jul-12 Trevor Bowen + * Changed memory constraints to register only. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 6 + +#if defined(__ALTIVEC__) +#define ALTIVEC_REGS \ + "v20", "v21", "v22", "v23", "v24", "v25", "v26", "v27", \ + "v28", "v29", "v30", "v31", +#else +#define ALTIVEC_REGS +#endif + +#define REGS_TO_SAVE "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "r31", \ + "fr14", "fr15", "fr16", "fr17", "fr18", "fr19", "fr20", "fr21", \ + "fr22", "fr23", "fr24", "fr25", "fr26", "fr27", "fr28", "fr29", \ + "fr30", "fr31", \ + ALTIVEC_REGS \ + "cr2", "cr3", "cr4" + +static int +slp_switch(void) +{ + int err; + long *stackref, stsizediff; + void * toc; + void * r30; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("std 2, %0" : "=m" (toc)); + __asm__ volatile ("std 30, %0" : "=m" (r30)); + __asm__ ("mr %0, 1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "mr 11, %0\n" + "add 1, 1, 11\n" + : /* no outputs */ + : "r" (stsizediff) + : "11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("ld 30, %0" : : "m" (r30)); + __asm__ volatile ("ld 2, %0" : : "m" (toc)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_linux.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_linux.h new file mode 100644 index 0000000000000000000000000000000000000000..3c324d00c62894f7fdc04dd0c6b52b13c3e3c606 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc64_linux.h @@ -0,0 +1,105 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 04-Sep-18 Alexey Borzenkov + * Workaround a gcc bug using manual save/restore of r30 + * 21-Mar-18 Tulio Magno Quites Machado Filho + * Added r30 to the list of saved registers in order to fully comply with + * both ppc64 ELFv1 ABI and the ppc64le ELFv2 ABI, that classify this + * register as a nonvolatile register used for local variables. + * 21-Mar-18 Laszlo Boszormenyi + * Save r2 (TOC pointer) manually. + * 10-Dec-13 Ulrich Weigand + * Support ELFv2 ABI. Save float/vector registers. + * 09-Mar-12 Michael Ellerman + * 64-bit implementation, copied from 32-bit. + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 04-Oct-02 Gustavo Niemeyer + * Ported from MacOS version. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + * 31-Jul-12 Trevor Bowen + * Changed memory constraints to register only. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#if _CALL_ELF == 2 +#define STACK_MAGIC 4 +#else +#define STACK_MAGIC 6 +#endif + +#if defined(__ALTIVEC__) +#define ALTIVEC_REGS \ + "v20", "v21", "v22", "v23", "v24", "v25", "v26", "v27", \ + "v28", "v29", "v30", "v31", +#else +#define ALTIVEC_REGS +#endif + +#define REGS_TO_SAVE "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "r31", \ + "fr14", "fr15", "fr16", "fr17", "fr18", "fr19", "fr20", "fr21", \ + "fr22", "fr23", "fr24", "fr25", "fr26", "fr27", "fr28", "fr29", \ + "fr30", "fr31", \ + ALTIVEC_REGS \ + "cr2", "cr3", "cr4" + +static int +slp_switch(void) +{ + int err; + long *stackref, stsizediff; + void * toc; + void * r30; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("std 2, %0" : "=m" (toc)); + __asm__ volatile ("std 30, %0" : "=m" (r30)); + __asm__ ("mr %0, 1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "mr 11, %0\n" + "add 1, 1, 11\n" + : /* no outputs */ + : "r" (stsizediff) + : "11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("ld 30, %0" : : "m" (r30)); + __asm__ volatile ("ld 2, %0" : : "m" (toc)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_aix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_aix.h new file mode 100644 index 0000000000000000000000000000000000000000..6d93c13266a623bc2b0d59ff2db7f7224fe3b347 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_aix.h @@ -0,0 +1,87 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 07-Mar-11 Floris Bruynooghe + * Do not add stsizediff to general purpose + * register (GPR) 30 as this is a non-volatile and + * unused by the PowerOpen Environment, therefore + * this was modifying a user register instead of the + * frame pointer (which does not seem to exist). + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 04-Oct-02 Gustavo Niemeyer + * Ported from MacOS version. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 3 + +/* !!!!WARNING!!!! need to add "r31" in the next line if this header file + * is meant to be compiled non-dynamically! + */ +#define REGS_TO_SAVE "r13", "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "cr2", "cr3", "cr4" +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ ("mr %0, 1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "mr 11, %0\n" + "add 1, 1, 11\n" + : /* no outputs */ + : "r" (stsizediff) + : "11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_linux.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_linux.h new file mode 100644 index 0000000000000000000000000000000000000000..e83ad70a5f868265e9b1edaf27cd26feddfdf153 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_linux.h @@ -0,0 +1,84 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 04-Oct-02 Gustavo Niemeyer + * Ported from MacOS version. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + * 31-Jul-12 Trevor Bowen + * Changed memory constraints to register only. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 3 + +/* !!!!WARNING!!!! need to add "r31" in the next line if this header file + * is meant to be compiled non-dynamically! + */ +#define REGS_TO_SAVE "r13", "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "cr2", "cr3", "cr4" +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ ("mr %0, 1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "mr 11, %0\n" + "add 1, 1, 11\n" + "add 30, 30, 11\n" + : /* no outputs */ + : "r" (stsizediff) + : "11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_macosx.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_macosx.h new file mode 100644 index 0000000000000000000000000000000000000000..bd414c68ee9bf079ad72f3350a227575714a64a6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_macosx.h @@ -0,0 +1,82 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 3 + +/* !!!!WARNING!!!! need to add "r31" in the next line if this header file + * is meant to be compiled non-dynamically! + */ +#define REGS_TO_SAVE "r13", "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "cr2", "cr3", "cr4" + +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ ("; asm block 2\n\tmr %0, r1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "; asm block 3\n" + "\tmr r11, %0\n" + "\tadd r1, r1, r11\n" + "\tadd r30, r30, r11\n" + : /* no outputs */ + : "r" (stsizediff) + : "r11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..bb188080a30b49a49c49084c5e3a36986136c11e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_ppc_unix.h @@ -0,0 +1,82 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'r31' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 14-Jan-04 Bob Ippolito + * added cr2-cr4 to the registers to be saved. + * Open questions: Should we save FP registers? + * What about vector registers? + * Differences between darwin and unix? + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 04-Oct-02 Gustavo Niemeyer + * Ported from MacOS version. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 29-Jun-02 Christian Tismer + * Added register 13-29, 31 saves. The same way as + * Armin Rigo did for the x86_unix version. + * This seems to be now fully functional! + * 04-Mar-02 Hye-Shik Chang + * Ported from i386. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 3 + +/* !!!!WARNING!!!! need to add "r31" in the next line if this header file + * is meant to be compiled non-dynamically! + */ +#define REGS_TO_SAVE "r13", "r14", "r15", "r16", "r17", "r18", "r19", "r20", \ + "r21", "r22", "r23", "r24", "r25", "r26", "r27", "r28", "r29", \ + "cr2", "cr3", "cr4" +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ ("mr %0, 1" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "mr 11, %0\n" + "add 1, 1, 11\n" + "add 30, 30, 11\n" + : /* no outputs */ + : "r" (stsizediff) + : "11" + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("li %0, 0" : "=r" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_riscv_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_riscv_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..8761122237e1253b898bddb27e6ccc7a34c2daaa --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_riscv_unix.h @@ -0,0 +1,41 @@ +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "s1", "s2", "s3", "s4", "s5", \ + "s6", "s7", "s8", "s9", "s10", "s11", "fs0", "fs1", \ + "fs2", "fs3", "fs4", "fs5", "fs6", "fs7", "fs8", "fs9", \ + "fs10", "fs11" + +static int +slp_switch(void) +{ + int ret; + long fp; + long *stackref, stsizediff; + + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("mv %0, fp" : "=r" (fp) : ); + __asm__ volatile ("mv %0, sp" : "=r" (stackref) : ); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "add sp, sp, %0\n\t" + "add fp, fp, %0\n\t" + : /* no outputs */ + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); +#if __riscv_xlen == 32 + __asm__ volatile ("lw fp, %0" : : "m" (fp)); +#else + __asm__ volatile ("ld fp, %0" : : "m" (fp)); +#endif + __asm__ volatile ("mv %0, zero" : "=r" (ret) : ); + return ret; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_s390_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_s390_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..9199367f8b02d89856ed2be082a3aba6222df205 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_s390_unix.h @@ -0,0 +1,87 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 25-Jan-12 Alexey Borzenkov + * Fixed Linux/S390 port to work correctly with + * different optimization options both on 31-bit + * and 64-bit. Thanks to Stefan Raabe for lots + * of testing. + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 06-Oct-02 Gustavo Niemeyer + * Ported to Linux/S390. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#ifdef __s390x__ +#define STACK_MAGIC 20 /* 20 * 8 = 160 bytes of function call area */ +#else +#define STACK_MAGIC 24 /* 24 * 4 = 96 bytes of function call area */ +#endif + +/* Technically, r11-r13 also need saving, but function prolog starts + with stm(g) and since there are so many saved registers already + it won't be optimized, resulting in all r6-r15 being saved */ +#define REGS_TO_SAVE "r6", "r7", "r8", "r9", "r10", "r14", \ + "f0", "f1", "f2", "f3", "f4", "f5", "f6", "f7", \ + "f8", "f9", "f10", "f11", "f12", "f13", "f14", "f15" + +static int +slp_switch(void) +{ + int ret; + long *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); +#ifdef __s390x__ + __asm__ volatile ("lgr %0, 15" : "=r" (stackref) : ); +#else + __asm__ volatile ("lr %0, 15" : "=r" (stackref) : ); +#endif + { + SLP_SAVE_STATE(stackref, stsizediff); +/* N.B. + r11 may be used as the frame pointer, and in that case it cannot be + clobbered and needs offsetting just like the stack pointer (but in cases + where frame pointer isn't used we might clobber it accidentally). What's + scary is that r11 is 2nd (and even 1st when GOT is used) callee saved + register that gcc would chose for surviving function calls. However, + since r6-r10 are clobbered above, their cost for reuse is reduced, so + gcc IRA will chose them over r11 (not seeing r11 is implicitly saved), + making it relatively safe to offset in all cases. :) */ + __asm__ volatile ( +#ifdef __s390x__ + "agr 15, %0\n\t" + "agr 11, %0" +#else + "ar 15, %0\n\t" + "ar 11, %0" +#endif + : /* no outputs */ + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("lhi %0, 0" : "=r" (ret) : ); + return ret; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sh_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sh_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..5ecc3b3945d36d2c64c323b40de8c518002aa11b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sh_gcc.h @@ -0,0 +1,36 @@ +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL +#define STACK_MAGIC 0 +#define REGS_TO_SAVE "r8", "r9", "r10", "r11", "r13", \ + "fr12", "fr13", "fr14", "fr15" + +// r12 Global context pointer, GP +// r14 Frame pointer, FP +// r15 Stack pointer, SP + +static int +slp_switch(void) +{ + int err; + void* fp; + int *stackref, stsizediff; + __asm__ volatile("" : : : REGS_TO_SAVE); + __asm__ volatile("mov.l r14, %0" : "=m"(fp) : :); + __asm__("mov r15, %0" : "=r"(stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile( + "add %0, r15\n" + "add %0, r14\n" + : /* no outputs */ + : "r"(stsizediff)); + SLP_RESTORE_STATE(); + __asm__ volatile("mov r0, %0" : "=r"(err) : :); + } + __asm__ volatile("mov.l %0, r14" : : "m"(fp) :); + __asm__ volatile("" : : : REGS_TO_SAVE); + return err; +} + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sparc_sun_gcc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sparc_sun_gcc.h new file mode 100644 index 0000000000000000000000000000000000000000..96990c391724c0dd2b3868ae220c929e16a73959 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_sparc_sun_gcc.h @@ -0,0 +1,92 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 16-May-15 Alexey Borzenkov + * Move stack spilling code inside save/restore functions + * 30-Aug-13 Floris Bruynooghe + Clean the register windows again before returning. + This does not clobber the PIC register as it leaves + the current window intact and is required for multi- + threaded code to work correctly. + * 08-Mar-11 Floris Bruynooghe + * No need to set return value register explicitly + * before the stack and framepointer are adjusted + * as none of the other registers are influenced by + * this. Also don't needlessly clean the windows + * ('ta %0" :: "i" (ST_CLEAN_WINDOWS)') as that + * clobbers the gcc PIC register (%l7). + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * added support for SunOS sparc with gcc + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + + +#define STACK_MAGIC 0 + + +#if defined(__sparcv9) +#define SLP_FLUSHW __asm__ volatile ("flushw") +#else +#define SLP_FLUSHW __asm__ volatile ("ta 3") /* ST_FLUSH_WINDOWS */ +#endif + +/* On sparc we need to spill register windows inside save/restore functions */ +#define SLP_BEFORE_SAVE_STATE() SLP_FLUSHW +#define SLP_BEFORE_RESTORE_STATE() SLP_FLUSHW + + +static int +slp_switch(void) +{ + int err; + int *stackref, stsizediff; + + /* Put current stack pointer into stackref. + * Register spilling is done in save/restore. + */ + __asm__ volatile ("mov %%sp, %0" : "=r" (stackref)); + + { + /* Thou shalt put SLP_SAVE_STATE into a local block */ + /* Copy the current stack onto the heap */ + SLP_SAVE_STATE(stackref, stsizediff); + + /* Increment stack and frame pointer by stsizediff */ + __asm__ volatile ( + "add %0, %%sp, %%sp\n\t" + "add %0, %%fp, %%fp" + : : "r" (stsizediff)); + + /* Copy new stack from it's save store on the heap */ + SLP_RESTORE_STATE(); + + __asm__ volatile ("mov %1, %0" : "=r" (err) : "i" (0)); + return err; + } +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x32_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x32_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..893369c7a96aeafcbb030c4e13979d62cb587d08 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x32_unix.h @@ -0,0 +1,63 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 17-Aug-12 Fantix King + * Ported from amd64. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 0 + +#define REGS_TO_SAVE "r12", "r13", "r14", "r15" + + +static int +slp_switch(void) +{ + void* ebp; + void* ebx; + unsigned int csr; + unsigned short cw; + int err; + int *stackref, stsizediff; + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("fstcw %0" : "=m" (cw)); + __asm__ volatile ("stmxcsr %0" : "=m" (csr)); + __asm__ volatile ("movl %%ebp, %0" : "=m" (ebp)); + __asm__ volatile ("movl %%ebx, %0" : "=m" (ebx)); + __asm__ ("movl %%esp, %0" : "=g" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "addl %0, %%esp\n" + "addl %0, %%ebp\n" + : + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + } + __asm__ volatile ("movl %0, %%ebx" : : "m" (ebx)); + __asm__ volatile ("movl %0, %%ebp" : : "m" (ebp)); + __asm__ volatile ("ldmxcsr %0" : : "m" (csr)); + __asm__ volatile ("fldcw %0" : : "m" (cw)); + __asm__ volatile ("" : : : REGS_TO_SAVE); + __asm__ volatile ("xorl %%eax, %%eax" : "=a" (err)); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.asm b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.asm new file mode 100644 index 0000000000000000000000000000000000000000..f5c72a27d5a020ce0d21553de5d7b3c6a1db4fdc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.asm @@ -0,0 +1,111 @@ +; +; stack switching code for MASM on x641 +; Kristjan Valur Jonsson, sept 2005 +; + + +;prototypes for our calls +slp_save_state_asm PROTO +slp_restore_state_asm PROTO + + +pushxmm MACRO reg + sub rsp, 16 + .allocstack 16 + movaps [rsp], reg ; faster than movups, but we must be aligned + ; .savexmm128 reg, offset (don't know what offset is, no documentation) +ENDM +popxmm MACRO reg + movaps reg, [rsp] ; faster than movups, but we must be aligned + add rsp, 16 +ENDM + +pushreg MACRO reg + push reg + .pushreg reg +ENDM +popreg MACRO reg + pop reg +ENDM + + +.code +slp_switch PROC FRAME + ;realign stack to 16 bytes after return address push, makes the following faster + sub rsp,8 + .allocstack 8 + + pushxmm xmm15 + pushxmm xmm14 + pushxmm xmm13 + pushxmm xmm12 + pushxmm xmm11 + pushxmm xmm10 + pushxmm xmm9 + pushxmm xmm8 + pushxmm xmm7 + pushxmm xmm6 + + pushreg r15 + pushreg r14 + pushreg r13 + pushreg r12 + + pushreg rbp + pushreg rbx + pushreg rdi + pushreg rsi + + sub rsp, 10h ;allocate the singlefunction argument (must be multiple of 16) + .allocstack 10h +.endprolog + + lea rcx, [rsp+10h] ;load stack base that we are saving + call slp_save_state_asm ;pass stackpointer, return offset in eax + cmp rax, 1 + je EXIT1 + cmp rax, -1 + je EXIT2 + ;actual stack switch: + add rsp, rax + call slp_restore_state_asm + xor rax, rax ;return 0 + +EXIT: + + add rsp, 10h + popreg rsi + popreg rdi + popreg rbx + popreg rbp + + popreg r12 + popreg r13 + popreg r14 + popreg r15 + + popxmm xmm6 + popxmm xmm7 + popxmm xmm8 + popxmm xmm9 + popxmm xmm10 + popxmm xmm11 + popxmm xmm12 + popxmm xmm13 + popxmm xmm14 + popxmm xmm15 + + add rsp, 8 + ret + +EXIT1: + mov rax, 1 + jmp EXIT + +EXIT2: + sar rax, 1 + jmp EXIT + +slp_switch ENDP + +END \ No newline at end of file diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.obj b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.obj new file mode 100644 index 0000000000000000000000000000000000000000..64e3e6b898ec765d4e37075f7b1635ad24c9efa2 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_masm.obj differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_msvc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_msvc.h new file mode 100644 index 0000000000000000000000000000000000000000..601ea56053cfa03bd99dce523d0aaec7f240276b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x64_msvc.h @@ -0,0 +1,60 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 26-Sep-02 Christian Tismer + * again as a result of virtualized stack access, + * the compiler used less registers. Needed to + * explicit mention registers in order to get them saved. + * Thanks to Jeff Senn for pointing this out and help. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 01-Mar-02 Christian Tismer + * Initial final version after lots of iterations for i386. + */ + +/* Avoid alloca redefined warning on mingw64 */ +#ifndef alloca +#define alloca _alloca +#endif + +#define STACK_REFPLUS 1 +#define STACK_MAGIC 0 + +/* Use the generic support for an external assembly language slp_switch function. */ +#define EXTERNAL_ASM + +#ifdef SLP_EVAL +/* This always uses the external masm assembly file. */ +#endif + +/* + * further self-processing support + */ + +/* we have IsBadReadPtr available, so we can peek at objects */ +/* +#define STACKLESS_SPY + +#ifdef IMPLEMENT_STACKLESSMODULE +#include "Windows.h" +#define CANNOT_READ_MEM(p, bytes) IsBadReadPtr(p, bytes) + +static int IS_ON_STACK(void*p) +{ + int stackref; + intptr_t stackbase = ((intptr_t)&stackref) & 0xfffff000; + return (intptr_t)p >= stackbase && (intptr_t)p < stackbase + 0x00100000; +} + +#endif +*/ \ No newline at end of file diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_msvc.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_msvc.h new file mode 100644 index 0000000000000000000000000000000000000000..0f3a59f52d1ec6da8f88d1911aa13d600b687350 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_msvc.h @@ -0,0 +1,326 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 26-Sep-02 Christian Tismer + * again as a result of virtualized stack access, + * the compiler used less registers. Needed to + * explicit mention registers in order to get them saved. + * Thanks to Jeff Senn for pointing this out and help. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for sparc + * 01-Mar-02 Christian Tismer + * Initial final version after lots of iterations for i386. + */ + +#define alloca _alloca + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +#define STACK_MAGIC 0 + +/* Some magic to quell warnings and keep slp_switch() from crashing when built + with VC90. Disable global optimizations, and the warning: frame pointer + register 'ebp' modified by inline assembly code. + + We used to just disable global optimizations ("g") but upstream stackless + Python, as well as stackman, turn off all optimizations. + +References: +https://github.com/stackless-dev/stackman/blob/dbc72fe5207a2055e658c819fdeab9731dee78b9/stackman/platforms/switch_x86_msvc.h +https://github.com/stackless-dev/stackless/blob/main-slp/Stackless/platf/switch_x86_msvc.h +*/ +#define WIN32_LEAN_AND_MEAN +#include + +#pragma optimize("", off) /* so that autos are stored on the stack */ +#pragma warning(disable:4731) +#pragma warning(disable:4733) /* disable warning about modifying FS[0] */ + +/** + * Most modern compilers and environments handle C++ exceptions without any + * special help from us. MSVC on 32-bit windows is an exception. There, C++ + * exceptions are dealt with using Windows' Structured Exception Handling + * (SEH). + * + * SEH is implemented as a singly linked list of nodes. The + * head of this list is stored in the Thread Information Block, which itself + * is pointed to from the FS register. It's the first field in the structure, + * or offset 0, so we can access it using assembly FS:[0], or the compiler + * intrinsics and field offset information from the headers (as we do below). + * Somewhat unusually, the tail of the list doesn't have prev == NULL, it has + * prev == 0xFFFFFFFF. + * + * SEH was designed for C, and traditionally uses the MSVC compiler + * intrinsincs __try{}/__except{}. It is also utilized for C++ exceptions by + * MSVC; there, every throw of a C++ exception raises a SEH error with the + * ExceptionCode 0xE06D7363; the SEH handler list is then traversed to + * deal with the exception. + * + * If the SEH list is corrupt, then when a C++ exception is thrown the program + * will abruptly exit with exit code 1. This does not use std::terminate(), so + * std::set_terminate() is useless to debug this. + * + * The SEH list is closely tied to the call stack; entering a function that + * uses __try{} or most C++ functions will push a new handler onto the front + * of the list. Returning from the function will remove the handler. Saving + * and restoring the head node of the SEH list (FS:[0]) per-greenlet is NOT + * ENOUGH to make SEH or exceptions work. + * + * Stack switching breaks SEH because the call stack no longer necessarily + * matches the SEH list. For example, given greenlet A that switches to + * greenlet B, at the moment of entering greenlet B, we will have any SEH + * handlers from greenlet A on the SEH list; greenlet B can then add its own + * handlers to the SEH list. When greenlet B switches back to greenlet A, + * greenlet B's handlers would still be on the SEH stack, but when switch() + * returns control to greenlet A, we have replaced the contents of the stack + * in memory, so all the address that greenlet B added to the SEH list are now + * invalid: part of the call stack has been unwound, but the SEH list was out + * of sync with the call stack. The net effect is that exception handling + * stops working. + * + * Thus, when switching greenlets, we need to be sure that the SEH list + * matches the effective call stack, "cutting out" any handlers that were + * pushed by the greenlet that switched out and which are no longer valid. + * + * The easiest way to do this is to capture the SEH list at the time the main + * greenlet for a thread is created, and, when initially starting a greenlet, + * start a new SEH list for it, which contains nothing but the handler + * established for the new greenlet itself, with the tail being the handlers + * for the main greenlet. If we then save and restore the SEH per-greenlet, + * they won't interfere with each others SEH lists. (No greenlet can unwind + * the call stack past the handlers established by the main greenlet). + * + * By observation, a new thread starts with three SEH handlers on the list. By + * the time we get around to creating the main greenlet, though, there can be + * many more, established by transient calls that lead to the creation of the + * main greenlet. Therefore, 3 is a magic constant telling us when to perform + * the initial slice. + * + * All of this can be debugged using a vectored exception handler, which + * operates independently of the SEH handler list, and is called first. + * Walking the SEH list at key points can also be helpful. + * + * References: + * https://en.wikipedia.org/wiki/Win32_Thread_Information_Block + * https://devblogs.microsoft.com/oldnewthing/20100730-00/?p=13273 + * https://docs.microsoft.com/en-us/cpp/cpp/try-except-statement?view=msvc-160 + * https://docs.microsoft.com/en-us/cpp/cpp/structured-exception-handling-c-cpp?view=msvc-160 + * https://docs.microsoft.com/en-us/windows/win32/debug/structured-exception-handling + * https://docs.microsoft.com/en-us/windows/win32/debug/using-a-vectored-exception-handler + * https://bytepointer.com/resources/pietrek_crash_course_depths_of_win32_seh.htm + */ +#define GREENLET_NEEDS_EXCEPTION_STATE_SAVED + + +typedef struct _GExceptionRegistration { + struct _GExceptionRegistration* prev; + void* handler_f; +} GExceptionRegistration; + +static void +slp_set_exception_state(const void *const seh_state) +{ + // Because the stack from from which we do this is ALSO a handler, and + // that one we want to keep, we need to relink the current SEH handler + // frame to point to this one, cutting out the middle men, as it were. + // + // Entering a try block doesn't change the SEH frame, but entering a + // function containing a try block does. + GExceptionRegistration* current_seh_state = (GExceptionRegistration*)__readfsdword(FIELD_OFFSET(NT_TIB, ExceptionList)); + current_seh_state->prev = (GExceptionRegistration*)seh_state; +} + + +static GExceptionRegistration* +x86_slp_get_third_oldest_handler() +{ + GExceptionRegistration* a = NULL; /* Closest to the top */ + GExceptionRegistration* b = NULL; /* second */ + GExceptionRegistration* c = NULL; + GExceptionRegistration* seh_state = (GExceptionRegistration*)__readfsdword(FIELD_OFFSET(NT_TIB, ExceptionList)); + a = b = c = seh_state; + + while (seh_state && seh_state != (GExceptionRegistration*)0xFFFFFFFF) { + if ((void*)seh_state->prev < (void*)100) { + fprintf(stderr, "\tERROR: Broken SEH chain.\n"); + return NULL; + } + a = b; + b = c; + c = seh_state; + + seh_state = seh_state->prev; + } + return a ? a : (b ? b : c); +} + + +static void* +slp_get_exception_state() +{ + // XXX: There appear to be three SEH handlers on the stack already at the + // start of the thread. Is that a guarantee? Almost certainly not. Yet in + // all observed cases it has been three. This is consistent with + // faulthandler off or on, and optimizations off or on. It may not be + // consistent with other operating system versions, though: we only have + // CI on one or two versions (don't ask what there are). + // In theory we could capture the number of handlers on the chain when + // PyInit__greenlet is called: there are probably only the default + // handlers at that point (unless we're embedded and people have used + // __try/__except or a C++ handler)? + return x86_slp_get_third_oldest_handler(); +} + +static int +slp_switch(void) +{ + /* MASM syntax is typically reversed from other assemblers. + It is usually + */ + int *stackref, stsizediff; + /* store the structured exception state for this stack */ + DWORD seh_state = __readfsdword(FIELD_OFFSET(NT_TIB, ExceptionList)); + __asm mov stackref, esp; + /* modify EBX, ESI and EDI in order to get them preserved */ + __asm mov ebx, ebx; + __asm xchg esi, edi; + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm { + mov eax, stsizediff + add esp, eax + add ebp, eax + } + SLP_RESTORE_STATE(); + } + __writefsdword(FIELD_OFFSET(NT_TIB, ExceptionList), seh_state); + return 0; +} + +/* re-enable ebp warning and global optimizations. */ +#pragma optimize("", on) +#pragma warning(default:4731) +#pragma warning(default:4733) /* disable warning about modifying FS[0] */ + + +#endif + +/* + * further self-processing support + */ + +/* we have IsBadReadPtr available, so we can peek at objects */ +#define STACKLESS_SPY + +#ifdef GREENLET_DEBUG + +#define CANNOT_READ_MEM(p, bytes) IsBadReadPtr(p, bytes) + +static int IS_ON_STACK(void*p) +{ + int stackref; + int stackbase = ((int)&stackref) & 0xfffff000; + return (int)p >= stackbase && (int)p < stackbase + 0x00100000; +} + +static void +x86_slp_show_seh_chain() +{ + GExceptionRegistration* seh_state = (GExceptionRegistration*)__readfsdword(FIELD_OFFSET(NT_TIB, ExceptionList)); + fprintf(stderr, "====== SEH Chain ======\n"); + while (seh_state && seh_state != (GExceptionRegistration*)0xFFFFFFFF) { + fprintf(stderr, "\tSEH_chain addr: %p handler: %p prev: %p\n", + seh_state, + seh_state->handler_f, seh_state->prev); + if ((void*)seh_state->prev < (void*)100) { + fprintf(stderr, "\tERROR: Broken chain.\n"); + break; + } + seh_state = seh_state->prev; + } + fprintf(stderr, "====== End SEH Chain ======\n"); + fflush(NULL); + return; +} + +//addVectoredExceptionHandler constants: +//CALL_FIRST means call this exception handler first; +//CALL_LAST means call this exception handler last +#define CALL_FIRST 1 +#define CALL_LAST 0 + +LONG WINAPI +GreenletVectorHandler(PEXCEPTION_POINTERS ExceptionInfo) +{ + // We get one of these for every C++ exception, with code + // E06D7363 + // This is a special value that means "C++ exception from MSVC" + // https://devblogs.microsoft.com/oldnewthing/20100730-00/?p=13273 + // + // Install in the module init function with: + // AddVectoredExceptionHandler(CALL_FIRST, GreenletVectorHandler); + PEXCEPTION_RECORD ExceptionRecord = ExceptionInfo->ExceptionRecord; + + fprintf(stderr, + "GOT VECTORED EXCEPTION:\n" + "\tExceptionCode : %p\n" + "\tExceptionFlags : %p\n" + "\tExceptionAddr : %p\n" + "\tNumberparams : %ld\n", + ExceptionRecord->ExceptionCode, + ExceptionRecord->ExceptionFlags, + ExceptionRecord->ExceptionAddress, + ExceptionRecord->NumberParameters + ); + if (ExceptionRecord->ExceptionFlags & 1) { + fprintf(stderr, "\t\tEH_NONCONTINUABLE\n" ); + } + if (ExceptionRecord->ExceptionFlags & 2) { + fprintf(stderr, "\t\tEH_UNWINDING\n" ); + } + if (ExceptionRecord->ExceptionFlags & 4) { + fprintf(stderr, "\t\tEH_EXIT_UNWIND\n" ); + } + if (ExceptionRecord->ExceptionFlags & 8) { + fprintf(stderr, "\t\tEH_STACK_INVALID\n" ); + } + if (ExceptionRecord->ExceptionFlags & 0x10) { + fprintf(stderr, "\t\tEH_NESTED_CALL\n" ); + } + if (ExceptionRecord->ExceptionFlags & 0x20) { + fprintf(stderr, "\t\tEH_TARGET_UNWIND\n" ); + } + if (ExceptionRecord->ExceptionFlags & 0x40) { + fprintf(stderr, "\t\tEH_COLLIDED_UNWIND\n" ); + } + fprintf(stderr, "\n"); + fflush(NULL); + for(DWORD i = 0; i < ExceptionRecord->NumberParameters; i++) { + fprintf(stderr, "\t\t\tParam %ld: %lX\n", i, ExceptionRecord->ExceptionInformation[i]); + } + + if (ExceptionRecord->NumberParameters == 3) { + fprintf(stderr, "\tAbout to traverse SEH chain\n"); + // C++ Exception records have 3 params. + x86_slp_show_seh_chain(); + } + + return EXCEPTION_CONTINUE_SEARCH; +} + + + + +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_unix.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_unix.h new file mode 100644 index 0000000000000000000000000000000000000000..493fa6baa3b28c74ade1a8d9b6ed2e6a3208e596 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/platform/switch_x86_unix.h @@ -0,0 +1,105 @@ +/* + * this is the internal transfer function. + * + * HISTORY + * 3-May-13 Ralf Schmitt + * Add support for strange GCC caller-save decisions + * (ported from switch_aarch64_gcc.h) + * 19-Aug-11 Alexey Borzenkov + * Correctly save ebp, ebx and cw + * 07-Sep-05 (py-dev mailing list discussion) + * removed 'ebx' from the register-saved. !!!! WARNING !!!! + * It means that this file can no longer be compiled statically! + * It is now only suitable as part of a dynamic library! + * 24-Nov-02 Christian Tismer + * needed to add another magic constant to insure + * that f in slp_eval_frame(PyFrameObject *f) + * STACK_REFPLUS will probably be 1 in most cases. + * gets included into the saved stack area. + * 17-Sep-02 Christian Tismer + * after virtualizing stack save/restore, the + * stack size shrunk a bit. Needed to introduce + * an adjustment STACK_MAGIC per platform. + * 15-Sep-02 Gerd Woetzel + * slightly changed framework for spark + * 31-Avr-02 Armin Rigo + * Added ebx, esi and edi register-saves. + * 01-Mar-02 Samual M. Rushing + * Ported from i386. + */ + +#define STACK_REFPLUS 1 + +#ifdef SLP_EVAL + +/* #define STACK_MAGIC 3 */ +/* the above works fine with gcc 2.96, but 2.95.3 wants this */ +#define STACK_MAGIC 0 + +#if __GNUC__ > 4 || (__GNUC__ == 4 && __GNUC_MINOR__ >= 5) +# define ATTR_NOCLONE __attribute__((noclone)) +#else +# define ATTR_NOCLONE +#endif + +static int +slp_switch(void) +{ + int err; +#ifdef _WIN32 + void *seh; +#endif + void *ebp, *ebx; + unsigned short cw; + int *stackref, stsizediff; + __asm__ volatile ("" : : : "esi", "edi"); + __asm__ volatile ("fstcw %0" : "=m" (cw)); + __asm__ volatile ("movl %%ebp, %0" : "=m" (ebp)); + __asm__ volatile ("movl %%ebx, %0" : "=m" (ebx)); +#ifdef _WIN32 + __asm__ volatile ( + "movl %%fs:0x0, %%eax\n" + "movl %%eax, %0\n" + : "=m" (seh) + : + : "eax"); +#endif + __asm__ ("movl %%esp, %0" : "=g" (stackref)); + { + SLP_SAVE_STATE(stackref, stsizediff); + __asm__ volatile ( + "addl %0, %%esp\n" + "addl %0, %%ebp\n" + : + : "r" (stsizediff) + ); + SLP_RESTORE_STATE(); + __asm__ volatile ("xorl %%eax, %%eax" : "=a" (err)); + } +#ifdef _WIN32 + __asm__ volatile ( + "movl %0, %%eax\n" + "movl %%eax, %%fs:0x0\n" + : + : "m" (seh) + : "eax"); +#endif + __asm__ volatile ("movl %0, %%ebx" : : "m" (ebx)); + __asm__ volatile ("movl %0, %%ebp" : : "m" (ebp)); + __asm__ volatile ("fldcw %0" : : "m" (cw)); + __asm__ volatile ("" : : : "esi", "edi"); + return err; +} + +#endif + +/* + * further self-processing support + */ + +/* + * if you want to add self-inspection tools, place them + * here. See the x86_msvc for the necessary defines. + * These features are highly experimental und not + * essential yet. + */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/slp_platformselect.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/slp_platformselect.h new file mode 100644 index 0000000000000000000000000000000000000000..d9b7d0a71696c45abe1c59f3a4c7f477b139ee06 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/slp_platformselect.h @@ -0,0 +1,77 @@ +/* + * Platform Selection for Stackless Python + */ +#ifdef __cplusplus +extern "C" { +#endif + +#if defined(MS_WIN32) && !defined(MS_WIN64) && defined(_M_IX86) && defined(_MSC_VER) +# include "platform/switch_x86_msvc.h" /* MS Visual Studio on X86 */ +#elif defined(MS_WIN64) && defined(_M_X64) && defined(_MSC_VER) || defined(__MINGW64__) +# include "platform/switch_x64_msvc.h" /* MS Visual Studio on X64 */ +#elif defined(MS_WIN64) && defined(_M_ARM64) +# include "platform/switch_arm64_msvc.h" /* MS Visual Studio on ARM64 */ +#elif defined(__GNUC__) && defined(__amd64__) && defined(__ILP32__) +# include "platform/switch_x32_unix.h" /* gcc on amd64 with x32 ABI */ +#elif defined(__GNUC__) && defined(__amd64__) +# include "platform/switch_amd64_unix.h" /* gcc on amd64 */ +#elif defined(__GNUC__) && defined(__i386__) +# include "platform/switch_x86_unix.h" /* gcc on X86 */ +#elif defined(__GNUC__) && defined(__powerpc64__) && (defined(__linux__) || defined(__FreeBSD__)) +# include "platform/switch_ppc64_linux.h" /* gcc on PowerPC 64-bit */ +#elif defined(__GNUC__) && defined(__PPC__) && (defined(__linux__) || defined(__FreeBSD__)) +# include "platform/switch_ppc_linux.h" /* gcc on PowerPC */ +#elif defined(__GNUC__) && defined(__POWERPC__) && defined(__APPLE__) +# include "platform/switch_ppc_macosx.h" /* Apple MacOS X on 32-bit PowerPC */ +#elif defined(__GNUC__) && defined(__powerpc64__) && defined(_AIX) +# include "platform/switch_ppc64_aix.h" /* gcc on AIX/PowerPC 64-bit */ +#elif defined(__GNUC__) && defined(_ARCH_PPC) && defined(_AIX) +# include "platform/switch_ppc_aix.h" /* gcc on AIX/PowerPC */ +#elif defined(__GNUC__) && defined(__powerpc__) && defined(__NetBSD__) +#include "platform/switch_ppc_unix.h" /* gcc on NetBSD/powerpc */ +#elif defined(__GNUC__) && defined(sparc) +# include "platform/switch_sparc_sun_gcc.h" /* SunOS sparc with gcc */ +#elif defined(__GNUC__) && defined(__sparc__) +# include "platform/switch_sparc_sun_gcc.h" /* NetBSD sparc with gcc */ +#elif defined(__SUNPRO_C) && defined(sparc) && defined(sun) +# include "platform/switch_sparc_sun_gcc.h" /* SunStudio on amd64 */ +#elif defined(__SUNPRO_C) && defined(__amd64__) && defined(sun) +# include "platform/switch_amd64_unix.h" /* SunStudio on amd64 */ +#elif defined(__SUNPRO_C) && defined(__i386__) && defined(sun) +# include "platform/switch_x86_unix.h" /* SunStudio on x86 */ +#elif defined(__GNUC__) && defined(__s390__) && defined(__linux__) +# include "platform/switch_s390_unix.h" /* Linux/S390 */ +#elif defined(__GNUC__) && defined(__s390x__) && defined(__linux__) +# include "platform/switch_s390_unix.h" /* Linux/S390 zSeries (64-bit) */ +#elif defined(__GNUC__) && defined(__arm__) +# ifdef __APPLE__ +# include +# endif +# if TARGET_OS_IPHONE +# include "platform/switch_arm32_ios.h" /* iPhone OS on arm32 */ +# else +# include "platform/switch_arm32_gcc.h" /* gcc using arm32 */ +# endif +#elif defined(__GNUC__) && defined(__mips__) && defined(__linux__) +# include "platform/switch_mips_unix.h" /* Linux/MIPS */ +#elif defined(__GNUC__) && defined(__aarch64__) +# include "platform/switch_aarch64_gcc.h" /* Aarch64 ABI */ +#elif defined(__GNUC__) && defined(__mc68000__) +# include "platform/switch_m68k_gcc.h" /* gcc on m68k */ +#elif defined(__GNUC__) && defined(__csky__) +#include "platform/switch_csky_gcc.h" /* gcc on csky */ +# elif defined(__GNUC__) && defined(__riscv) +# include "platform/switch_riscv_unix.h" /* gcc on RISC-V */ +#elif defined(__GNUC__) && defined(__alpha__) +# include "platform/switch_alpha_unix.h" /* gcc on DEC Alpha */ +#elif defined(MS_WIN32) && defined(__llvm__) && defined(__aarch64__) +# include "platform/switch_aarch64_gcc.h" /* LLVM Aarch64 ABI for Windows */ +#elif defined(__GNUC__) && defined(__loongarch64) && defined(__linux__) +# include "platform/switch_loongarch64_linux.h" /* LoongArch64 */ +#elif defined(__GNUC__) && defined(__sh__) +# include "platform/switch_sh_gcc.h" /* SuperH */ +#endif + +#ifdef __cplusplus +}; +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..5929f2a7715873056060836a474da2b29d57f0f4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/__init__.py @@ -0,0 +1,240 @@ +# -*- coding: utf-8 -*- +""" +Tests for greenlet. + +""" +import os +import sys +import unittest + +from gc import collect +from gc import get_objects +from threading import active_count as active_thread_count +from time import sleep +from time import time + +import psutil + +from greenlet import greenlet as RawGreenlet +from greenlet import getcurrent + +from greenlet._greenlet import get_pending_cleanup_count +from greenlet._greenlet import get_total_main_greenlets + +from . import leakcheck + +PY312 = sys.version_info[:2] >= (3, 12) +PY313 = sys.version_info[:2] >= (3, 13) +# XXX: First tested on 3.14a7. Revisit all uses of this on later versions to ensure they +# are still valid. +PY314 = sys.version_info[:2] >= (3, 14) + +WIN = sys.platform.startswith("win") +RUNNING_ON_GITHUB_ACTIONS = os.environ.get('GITHUB_ACTIONS') +RUNNING_ON_TRAVIS = os.environ.get('TRAVIS') or RUNNING_ON_GITHUB_ACTIONS +RUNNING_ON_APPVEYOR = os.environ.get('APPVEYOR') +RUNNING_ON_CI = RUNNING_ON_TRAVIS or RUNNING_ON_APPVEYOR +RUNNING_ON_MANYLINUX = os.environ.get('GREENLET_MANYLINUX') + +class TestCaseMetaClass(type): + # wrap each test method with + # a) leak checks + def __new__(cls, classname, bases, classDict): + # pylint and pep8 fight over what this should be called (mcs or cls). + # pylint gets it right, but we can't scope disable pep8, so we go with + # its convention. + # pylint: disable=bad-mcs-classmethod-argument + check_totalrefcount = True + + # Python 3: must copy, we mutate the classDict. Interestingly enough, + # it doesn't actually error out, but under 3.6 we wind up wrapping + # and re-wrapping the same items over and over and over. + for key, value in list(classDict.items()): + if key.startswith('test') and callable(value): + classDict.pop(key) + if check_totalrefcount: + value = leakcheck.wrap_refcount(value) + classDict[key] = value + return type.__new__(cls, classname, bases, classDict) + + +class TestCase(unittest.TestCase, metaclass=TestCaseMetaClass): + + cleanup_attempt_sleep_duration = 0.001 + cleanup_max_sleep_seconds = 1 + + def wait_for_pending_cleanups(self, + initial_active_threads=None, + initial_main_greenlets=None): + initial_active_threads = initial_active_threads or self.threads_before_test + initial_main_greenlets = initial_main_greenlets or self.main_greenlets_before_test + sleep_time = self.cleanup_attempt_sleep_duration + # NOTE: This is racy! A Python-level thread object may be dead + # and gone, but the C thread may not yet have fired its + # destructors and added to the queue. There's no particular + # way to know that's about to happen. We try to watch the + # Python threads to make sure they, at least, have gone away. + # Counting the main greenlets, which we can easily do deterministically, + # also helps. + + # Always sleep at least once to let other threads run + sleep(sleep_time) + quit_after = time() + self.cleanup_max_sleep_seconds + # TODO: We could add an API that calls us back when a particular main greenlet is deleted? + # It would have to drop the GIL + while ( + get_pending_cleanup_count() + or active_thread_count() > initial_active_threads + or (not self.expect_greenlet_leak + and get_total_main_greenlets() > initial_main_greenlets)): + sleep(sleep_time) + if time() > quit_after: + print("Time limit exceeded.") + print("Threads: Waiting for only", initial_active_threads, + "-->", active_thread_count()) + print("MGlets : Waiting for only", initial_main_greenlets, + "-->", get_total_main_greenlets()) + break + collect() + + def count_objects(self, kind=list, exact_kind=True): + # pylint:disable=unidiomatic-typecheck + # Collect the garbage. + for _ in range(3): + collect() + if exact_kind: + return sum( + 1 + for x in get_objects() + if type(x) is kind + ) + # instances + return sum( + 1 + for x in get_objects() + if isinstance(x, kind) + ) + + greenlets_before_test = 0 + threads_before_test = 0 + main_greenlets_before_test = 0 + expect_greenlet_leak = False + + def count_greenlets(self): + """ + Find all the greenlets and subclasses tracked by the GC. + """ + return self.count_objects(RawGreenlet, False) + + def setUp(self): + # Ensure the main greenlet exists, otherwise the first test + # gets a false positive leak + super().setUp() + getcurrent() + self.threads_before_test = active_thread_count() + self.main_greenlets_before_test = get_total_main_greenlets() + self.wait_for_pending_cleanups(self.threads_before_test, self.main_greenlets_before_test) + self.greenlets_before_test = self.count_greenlets() + + def tearDown(self): + if getattr(self, 'skipTearDown', False): + return + + self.wait_for_pending_cleanups(self.threads_before_test, self.main_greenlets_before_test) + super().tearDown() + + def get_expected_returncodes_for_aborted_process(self): + import signal + # The child should be aborted in an unusual way. On POSIX + # platforms, this is done with abort() and signal.SIGABRT, + # which is reflected in a negative return value; however, on + # Windows, even though we observe the child print "Fatal + # Python error: Aborted" and in older versions of the C + # runtime "This application has requested the Runtime to + # terminate it in an unusual way," it always has an exit code + # of 3. This is interesting because 3 is the error code for + # ERROR_PATH_NOT_FOUND; BUT: the C runtime abort() function + # also uses this code. + # + # If we link to the static C library on Windows, the error + # code changes to '0xc0000409' (hex(3221226505)), which + # apparently is STATUS_STACK_BUFFER_OVERRUN; but "What this + # means is that nowadays when you get a + # STATUS_STACK_BUFFER_OVERRUN, it doesn’t actually mean that + # there is a stack buffer overrun. It just means that the + # application decided to terminate itself with great haste." + # + # + # On windows, we've also seen '0xc0000005' (hex(3221225477)). + # That's "Access Violation" + # + # See + # https://devblogs.microsoft.com/oldnewthing/20110519-00/?p=10623 + # and + # https://docs.microsoft.com/en-us/previous-versions/k089yyh0(v=vs.140)?redirectedfrom=MSDN + # and + # https://devblogs.microsoft.com/oldnewthing/20190108-00/?p=100655 + expected_exit = ( + -signal.SIGABRT, + # But beginning on Python 3.11, the faulthandler + # that prints the C backtraces sometimes segfaults after + # reporting the exception but before printing the stack. + # This has only been seen on linux/gcc. + -signal.SIGSEGV, + ) if not WIN else ( + 3, + 0xc0000409, + 0xc0000005, + ) + return expected_exit + + def get_process_uss(self): + """ + Return the current process's USS in bytes. + + uss is available on Linux, macOS, Windows. Also known as + "Unique Set Size", this is the memory which is unique to a + process and which would be freed if the process was terminated + right now. + + If this is not supported by ``psutil``, this raises the + :exc:`unittest.SkipTest` exception. + """ + try: + return psutil.Process().memory_full_info().uss + except AttributeError as e: + raise unittest.SkipTest("uss not supported") from e + + def run_script(self, script_name, show_output=True): + import subprocess + script = os.path.join( + os.path.dirname(__file__), + script_name, + ) + + try: + return subprocess.check_output([sys.executable, script], + encoding='utf-8', + stderr=subprocess.STDOUT) + except subprocess.CalledProcessError as ex: + if show_output: + print('-----') + print('Failed to run script', script) + print('~~~~~') + print(ex.output) + print('------') + raise + + + def assertScriptRaises(self, script_name, exitcodes=None): + import subprocess + with self.assertRaises(subprocess.CalledProcessError) as exc: + output = self.run_script(script_name, show_output=False) + __traceback_info__ = output + # We're going to fail the assertion if we get here, at least + # preserve the output in the traceback. + + if exitcodes is None: + exitcodes = self.get_expected_returncodes_for_aborted_process() + self.assertIn(exc.exception.returncode, exitcodes) + return exc.exception diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.c b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.c new file mode 100644 index 0000000000000000000000000000000000000000..05e81c03ad92a8dc2e3a577e00432eecb79b0d69 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.c @@ -0,0 +1,231 @@ +/* This is a set of functions used by test_extension_interface.py to test the + * Greenlet C API. + */ + +#include "../greenlet.h" + +#ifndef Py_RETURN_NONE +# define Py_RETURN_NONE return Py_INCREF(Py_None), Py_None +#endif + +#define TEST_MODULE_NAME "_test_extension" + +static PyObject* +test_switch(PyObject* self, PyObject* greenlet) +{ + PyObject* result = NULL; + + if (greenlet == NULL || !PyGreenlet_Check(greenlet)) { + PyErr_BadArgument(); + return NULL; + } + + result = PyGreenlet_Switch((PyGreenlet*)greenlet, NULL, NULL); + if (result == NULL) { + if (!PyErr_Occurred()) { + PyErr_SetString(PyExc_AssertionError, + "greenlet.switch() failed for some reason."); + } + return NULL; + } + Py_INCREF(result); + return result; +} + +static PyObject* +test_switch_kwargs(PyObject* self, PyObject* args, PyObject* kwargs) +{ + PyGreenlet* g = NULL; + PyObject* result = NULL; + + PyArg_ParseTuple(args, "O!", &PyGreenlet_Type, &g); + + if (g == NULL || !PyGreenlet_Check(g)) { + PyErr_BadArgument(); + return NULL; + } + + result = PyGreenlet_Switch(g, NULL, kwargs); + if (result == NULL) { + if (!PyErr_Occurred()) { + PyErr_SetString(PyExc_AssertionError, + "greenlet.switch() failed for some reason."); + } + return NULL; + } + Py_XINCREF(result); + return result; +} + +static PyObject* +test_getcurrent(PyObject* self) +{ + PyGreenlet* g = PyGreenlet_GetCurrent(); + if (g == NULL || !PyGreenlet_Check(g) || !PyGreenlet_ACTIVE(g)) { + PyErr_SetString(PyExc_AssertionError, + "getcurrent() returned an invalid greenlet"); + Py_XDECREF(g); + return NULL; + } + Py_DECREF(g); + Py_RETURN_NONE; +} + +static PyObject* +test_setparent(PyObject* self, PyObject* arg) +{ + PyGreenlet* current; + PyGreenlet* greenlet = NULL; + + if (arg == NULL || !PyGreenlet_Check(arg)) { + PyErr_BadArgument(); + return NULL; + } + if ((current = PyGreenlet_GetCurrent()) == NULL) { + return NULL; + } + greenlet = (PyGreenlet*)arg; + if (PyGreenlet_SetParent(greenlet, current)) { + Py_DECREF(current); + return NULL; + } + Py_DECREF(current); + if (PyGreenlet_Switch(greenlet, NULL, NULL) == NULL) { + return NULL; + } + Py_RETURN_NONE; +} + +static PyObject* +test_new_greenlet(PyObject* self, PyObject* callable) +{ + PyObject* result = NULL; + PyGreenlet* greenlet = PyGreenlet_New(callable, NULL); + + if (!greenlet) { + return NULL; + } + + result = PyGreenlet_Switch(greenlet, NULL, NULL); + Py_CLEAR(greenlet); + if (result == NULL) { + return NULL; + } + + Py_INCREF(result); + return result; +} + +static PyObject* +test_raise_dead_greenlet(PyObject* self) +{ + PyErr_SetString(PyExc_GreenletExit, "test GreenletExit exception."); + return NULL; +} + +static PyObject* +test_raise_greenlet_error(PyObject* self) +{ + PyErr_SetString(PyExc_GreenletError, "test greenlet.error exception"); + return NULL; +} + +static PyObject* +test_throw(PyObject* self, PyGreenlet* g) +{ + const char msg[] = "take that sucka!"; + PyObject* msg_obj = Py_BuildValue("s", msg); + PyGreenlet_Throw(g, PyExc_ValueError, msg_obj, NULL); + Py_DECREF(msg_obj); + if (PyErr_Occurred()) { + return NULL; + } + Py_RETURN_NONE; +} + +static PyObject* +test_throw_exact(PyObject* self, PyObject* args) +{ + PyGreenlet* g = NULL; + PyObject* typ = NULL; + PyObject* val = NULL; + PyObject* tb = NULL; + + if (!PyArg_ParseTuple(args, "OOOO:throw", &g, &typ, &val, &tb)) { + return NULL; + } + + PyGreenlet_Throw(g, typ, val, tb); + if (PyErr_Occurred()) { + return NULL; + } + Py_RETURN_NONE; +} + +static PyMethodDef test_methods[] = { + {"test_switch", + (PyCFunction)test_switch, + METH_O, + "Switch to the provided greenlet sending provided arguments, and \n" + "return the results."}, + {"test_switch_kwargs", + (PyCFunction)test_switch_kwargs, + METH_VARARGS | METH_KEYWORDS, + "Switch to the provided greenlet sending the provided keyword args."}, + {"test_getcurrent", + (PyCFunction)test_getcurrent, + METH_NOARGS, + "Test PyGreenlet_GetCurrent()"}, + {"test_setparent", + (PyCFunction)test_setparent, + METH_O, + "Se the parent of the provided greenlet and switch to it."}, + {"test_new_greenlet", + (PyCFunction)test_new_greenlet, + METH_O, + "Test PyGreenlet_New()"}, + {"test_raise_dead_greenlet", + (PyCFunction)test_raise_dead_greenlet, + METH_NOARGS, + "Just raise greenlet.GreenletExit"}, + {"test_raise_greenlet_error", + (PyCFunction)test_raise_greenlet_error, + METH_NOARGS, + "Just raise greenlet.error"}, + {"test_throw", + (PyCFunction)test_throw, + METH_O, + "Throw a ValueError at the provided greenlet"}, + {"test_throw_exact", + (PyCFunction)test_throw_exact, + METH_VARARGS, + "Throw exactly the arguments given at the provided greenlet"}, + {NULL, NULL, 0, NULL} +}; + + +#define INITERROR return NULL + +static struct PyModuleDef moduledef = {PyModuleDef_HEAD_INIT, + TEST_MODULE_NAME, + NULL, + 0, + test_methods, + NULL, + NULL, + NULL, + NULL}; + +PyMODINIT_FUNC +PyInit__test_extension(void) +{ + PyObject* module = NULL; + module = PyModule_Create(&moduledef); + + if (module == NULL) { + return NULL; + } + + PyGreenlet_Import(); + return module; +} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..902c76adeb308ce0bdddbea24f6b8d6ba54cc1a9 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpp b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpp new file mode 100644 index 0000000000000000000000000000000000000000..5cbe6a7697cb622e93eb796c089bfd24b332df5a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpp @@ -0,0 +1,226 @@ +/* This is a set of functions used to test C++ exceptions are not + * broken during greenlet switches + */ + +#include "../greenlet.h" +#include "../greenlet_compiler_compat.hpp" +#include +#include + +struct exception_t { + int depth; + exception_t(int depth) : depth(depth) {} +}; + +/* Functions are called via pointers to prevent inlining */ +static void (*p_test_exception_throw_nonstd)(int depth); +static void (*p_test_exception_throw_std)(); +static PyObject* (*p_test_exception_switch_recurse)(int depth, int left); + +static void +test_exception_throw_nonstd(int depth) +{ + throw exception_t(depth); +} + +static void +test_exception_throw_std() +{ + throw std::runtime_error("Thrown from an extension."); +} + +static PyObject* +test_exception_switch_recurse(int depth, int left) +{ + if (left > 0) { + return p_test_exception_switch_recurse(depth, left - 1); + } + + PyObject* result = NULL; + PyGreenlet* self = PyGreenlet_GetCurrent(); + if (self == NULL) + return NULL; + + try { + if (PyGreenlet_Switch(PyGreenlet_GET_PARENT(self), NULL, NULL) == NULL) { + Py_DECREF(self); + return NULL; + } + p_test_exception_throw_nonstd(depth); + PyErr_SetString(PyExc_RuntimeError, + "throwing C++ exception didn't work"); + } + catch (const exception_t& e) { + if (e.depth != depth) + PyErr_SetString(PyExc_AssertionError, "depth mismatch"); + else + result = PyLong_FromLong(depth); + } + catch (...) { + PyErr_SetString(PyExc_RuntimeError, "unexpected C++ exception"); + } + + Py_DECREF(self); + return result; +} + +/* test_exception_switch(int depth) + * - recurses depth times + * - switches to parent inside try/catch block + * - throws an exception that (expected to be caught in the same function) + * - verifies depth matches (exceptions shouldn't be caught in other greenlets) + */ +static PyObject* +test_exception_switch(PyObject* UNUSED(self), PyObject* args) +{ + int depth; + if (!PyArg_ParseTuple(args, "i", &depth)) + return NULL; + return p_test_exception_switch_recurse(depth, depth); +} + + +static PyObject* +py_test_exception_throw_nonstd(PyObject* self, PyObject* args) +{ + if (!PyArg_ParseTuple(args, "")) + return NULL; + p_test_exception_throw_nonstd(0); + PyErr_SetString(PyExc_AssertionError, "unreachable code running after throw"); + return NULL; +} + +static PyObject* +py_test_exception_throw_std(PyObject* self, PyObject* args) +{ + if (!PyArg_ParseTuple(args, "")) + return NULL; + p_test_exception_throw_std(); + PyErr_SetString(PyExc_AssertionError, "unreachable code running after throw"); + return NULL; +} + +static PyObject* +py_test_call(PyObject* self, PyObject* arg) +{ + PyObject* noargs = PyTuple_New(0); + PyObject* ret = PyObject_Call(arg, noargs, nullptr); + Py_DECREF(noargs); + return ret; +} + + + +/* test_exception_switch_and_do_in_g2(g2func) + * - creates new greenlet g2 to run g2func + * - switches to g2 inside try/catch block + * - verifies that no exception has been caught + * + * it is used together with test_exception_throw to verify that unhandled + * exceptions thrown in one greenlet do not propagate to other greenlet nor + * segfault the process. + */ +static PyObject* +test_exception_switch_and_do_in_g2(PyObject* self, PyObject* args) +{ + PyObject* g2func = NULL; + PyObject* result = NULL; + + if (!PyArg_ParseTuple(args, "O", &g2func)) + return NULL; + PyGreenlet* g2 = PyGreenlet_New(g2func, NULL); + if (!g2) { + return NULL; + } + + try { + result = PyGreenlet_Switch(g2, NULL, NULL); + if (!result) { + return NULL; + } + } + catch (const exception_t& e) { + /* if we are here the memory can be already corrupted and the program + * might crash before below py-level exception might become printed. + * -> print something to stderr to make it clear that we had entered + * this catch block. + * See comments in inner_bootstrap() + */ +#if defined(WIN32) || defined(_WIN32) + fprintf(stderr, "C++ exception unexpectedly caught in g1\n"); + PyErr_SetString(PyExc_AssertionError, "C++ exception unexpectedly caught in g1"); + Py_XDECREF(result); + return NULL; +#else + throw; +#endif + } + + Py_XDECREF(result); + Py_RETURN_NONE; +} + +static PyMethodDef test_methods[] = { + {"test_exception_switch", + (PyCFunction)&test_exception_switch, + METH_VARARGS, + "Switches to parent twice, to test exception handling and greenlet " + "switching."}, + {"test_exception_switch_and_do_in_g2", + (PyCFunction)&test_exception_switch_and_do_in_g2, + METH_VARARGS, + "Creates new greenlet g2 to run g2func and switches to it inside try/catch " + "block. Used together with test_exception_throw to verify that unhandled " + "C++ exceptions thrown in a greenlet doe not corrupt memory."}, + {"test_exception_throw_nonstd", + (PyCFunction)&py_test_exception_throw_nonstd, + METH_VARARGS, + "Throws non-standard C++ exception. Calling this function directly should abort the process." + }, + {"test_exception_throw_std", + (PyCFunction)&py_test_exception_throw_std, + METH_VARARGS, + "Throws standard C++ exception. Calling this function directly should abort the process." + }, + {"test_call", + (PyCFunction)&py_test_call, + METH_O, + "Call the given callable. Unlike calling it directly, this creates a " + "new C-level stack frame, which may be helpful in testing." + }, + {NULL, NULL, 0, NULL} +}; + + +static struct PyModuleDef moduledef = {PyModuleDef_HEAD_INIT, + "greenlet.tests._test_extension_cpp", + NULL, + 0, + test_methods, + NULL, + NULL, + NULL, + NULL}; + +PyMODINIT_FUNC +PyInit__test_extension_cpp(void) +{ + PyObject* module = NULL; + + module = PyModule_Create(&moduledef); + + if (module == NULL) { + return NULL; + } + + PyGreenlet_Import(); + if (_PyGreenlet_API == NULL) { + return NULL; + } + + p_test_exception_throw_nonstd = test_exception_throw_nonstd; + p_test_exception_throw_std = test_exception_throw_std; + p_test_exception_switch_recurse = test_exception_switch_recurse; + + return module; +} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..ad3e0293186270d60424d8ffdb0b0c4c5b385cf3 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/_test_extension_cpp.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_clearing_run_switches.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_clearing_run_switches.py new file mode 100644 index 0000000000000000000000000000000000000000..6dd1492ff9e3b48938562f48b5ded0aea61e0481 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_clearing_run_switches.py @@ -0,0 +1,47 @@ +# -*- coding: utf-8 -*- +""" +If we have a run callable passed to the constructor or set as an +attribute, but we don't actually use that (because ``__getattribute__`` +or the like interferes), then when we clear callable before beginning +to run, there's an opportunity for Python code to run. + +""" +import greenlet + +g = None +main = greenlet.getcurrent() + +results = [] + +class RunCallable: + + def __del__(self): + results.append(('RunCallable', '__del__')) + main.switch('from RunCallable') + + +class G(greenlet.greenlet): + + def __getattribute__(self, name): + if name == 'run': + results.append(('G.__getattribute__', 'run')) + return run_func + return object.__getattribute__(self, name) + + +def run_func(): + results.append(('run_func', 'enter')) + + +g = G(RunCallable()) +# Try to start G. It will get to the point where it deletes +# its run callable C++ variable in inner_bootstrap. That triggers +# the __del__ method, which switches back to main before g +# actually even starts running. +x = g.switch() +results.append(('main: g.switch()', x)) +# In the C++ code, this results in g->g_switch() appearing to return, even though +# it has yet to run. +print('In main with', x, flush=True) +g.switch() +print('RESULTS', results) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_cpp_exception.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_cpp_exception.py new file mode 100644 index 0000000000000000000000000000000000000000..fa4dc2eb3e8597eedfe943cb02c0c5ee628e3c49 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_cpp_exception.py @@ -0,0 +1,33 @@ +# -*- coding: utf-8 -*- +""" +Helper for testing a C++ exception throw aborts the process. + +Takes one argument, the name of the function in :mod:`_test_extension_cpp` to call. +""" +import sys +import greenlet +from greenlet.tests import _test_extension_cpp +print('fail_cpp_exception is running') + +def run_unhandled_exception_in_greenlet_aborts(): + def _(): + _test_extension_cpp.test_exception_switch_and_do_in_g2( + _test_extension_cpp.test_exception_throw_nonstd + ) + g1 = greenlet.greenlet(_) + g1.switch() + + +func_name = sys.argv[1] +try: + func = getattr(_test_extension_cpp, func_name) +except AttributeError: + if func_name == run_unhandled_exception_in_greenlet_aborts.__name__: + func = run_unhandled_exception_in_greenlet_aborts + elif func_name == 'run_as_greenlet_target': + g = greenlet.greenlet(_test_extension_cpp.test_exception_throw_std) + func = g.switch + else: + raise +print('raising', func, flush=True) +func() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_initialstub_already_started.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_initialstub_already_started.py new file mode 100644 index 0000000000000000000000000000000000000000..c1a44efd2915e84007ceedc8cd04a68ad853d1aa --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_initialstub_already_started.py @@ -0,0 +1,78 @@ +""" +Testing initialstub throwing an already started exception. +""" + +import greenlet + +a = None +b = None +c = None +main = greenlet.getcurrent() + +# If we switch into a dead greenlet, +# we go looking for its parents. +# if a parent is not yet started, we start it. + +results = [] + +def a_run(*args): + #results.append('A') + results.append(('Begin A', args)) + + +def c_run(): + results.append('Begin C') + b.switch('From C') + results.append('C done') + +class A(greenlet.greenlet): pass + +class B(greenlet.greenlet): + doing_it = False + def __getattribute__(self, name): + if name == 'run' and not self.doing_it: + assert greenlet.getcurrent() is c + self.doing_it = True + results.append('Switch to b from B.__getattribute__ in ' + + type(greenlet.getcurrent()).__name__) + b.switch() + results.append('B.__getattribute__ back from main in ' + + type(greenlet.getcurrent()).__name__) + if name == 'run': + name = '_B_run' + return object.__getattribute__(self, name) + + def _B_run(self, *arg): + results.append(('Begin B', arg)) + results.append('_B_run switching to main') + main.switch('From B') + +class C(greenlet.greenlet): + pass +a = A(a_run) +b = B(parent=a) +c = C(c_run, b) + +# Start a child; while running, it will start B, +# but starting B will ALSO start B. +result = c.switch() +results.append(('main from c', result)) + +# Switch back to C, which was in the middle of switching +# already. This will throw the ``GreenletStartedWhileInPython`` +# exception, which results in parent A getting started (B is finished) +c.switch() + +results.append(('A dead?', a.dead, 'B dead?', b.dead, 'C dead?', c.dead)) + +# A and B should both be dead now. +assert a.dead +assert b.dead +assert not c.dead + +result = c.switch() +results.append(('main from c.2', result)) +# Now C is dead +assert c.dead + +print("RESULTS:", results) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_slp_switch.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_slp_switch.py new file mode 100644 index 0000000000000000000000000000000000000000..09905269fd24fe1c15dfb24505bbd549141469ff --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_slp_switch.py @@ -0,0 +1,29 @@ +# -*- coding: utf-8 -*- +""" +A test helper for seeing what happens when slp_switch() +fails. +""" +# pragma: no cover + +import greenlet + + +print('fail_slp_switch is running', flush=True) + +runs = [] +def func(): + runs.append(1) + greenlet.getcurrent().parent.switch() + runs.append(2) + greenlet.getcurrent().parent.switch() + runs.append(3) + +g = greenlet._greenlet.UnswitchableGreenlet(func) +g.switch() +assert runs == [1] +g.switch() +assert runs == [1, 2] +g.force_slp_switch_error = True + +# This should crash. +g.switch() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets.py new file mode 100644 index 0000000000000000000000000000000000000000..e151b19a65d059fe8d392cd415811f3c6deb9903 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets.py @@ -0,0 +1,44 @@ +""" +Uses a trace function to switch greenlets at unexpected times. + +In the trace function, we switch from the current greenlet to another +greenlet, which switches +""" +import greenlet + +g1 = None +g2 = None + +switch_to_g2 = False + +def tracefunc(*args): + print('TRACE', *args) + global switch_to_g2 + if switch_to_g2: + switch_to_g2 = False + g2.switch() + print('\tLEAVE TRACE', *args) + +def g1_run(): + print('In g1_run') + global switch_to_g2 + switch_to_g2 = True + from_parent = greenlet.getcurrent().parent.switch() + print('Return to g1_run') + print('From parent', from_parent) + +def g2_run(): + #g1.switch() + greenlet.getcurrent().parent.switch() + +greenlet.settrace(tracefunc) + +g1 = greenlet.greenlet(g1_run) +g2 = greenlet.greenlet(g2_run) + +# This switch didn't actually finish! +# And if it did, it would raise TypeError +# because g1_run() doesn't take any arguments. +g1.switch(1) +print('Back in main') +g1.switch(2) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets2.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets2.py new file mode 100644 index 0000000000000000000000000000000000000000..1f6b66bc67109c273616b94b0526129997ff0bd3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_three_greenlets2.py @@ -0,0 +1,55 @@ +""" +Like fail_switch_three_greenlets, but the call into g1_run would actually be +valid. +""" +import greenlet + +g1 = None +g2 = None + +switch_to_g2 = True + +results = [] + +def tracefunc(*args): + results.append(('trace', args[0])) + print('TRACE', *args) + global switch_to_g2 + if switch_to_g2: + switch_to_g2 = False + g2.switch('g2 from tracefunc') + print('\tLEAVE TRACE', *args) + +def g1_run(arg): + results.append(('g1 arg', arg)) + print('In g1_run') + from_parent = greenlet.getcurrent().parent.switch('from g1_run') + results.append(('g1 from parent', from_parent)) + return 'g1 done' + +def g2_run(arg): + #g1.switch() + results.append(('g2 arg', arg)) + parent = greenlet.getcurrent().parent.switch('from g2_run') + global switch_to_g2 + switch_to_g2 = False + results.append(('g2 from parent', parent)) + return 'g2 done' + + +greenlet.settrace(tracefunc) + +g1 = greenlet.greenlet(g1_run) +g2 = greenlet.greenlet(g2_run) + +x = g1.switch('g1 from main') +results.append(('main g1', x)) +print('Back in main', x) +x = g1.switch('g2 from main') +results.append(('main g2', x)) +print('back in amain again', x) +x = g1.switch('g1 from main 2') +results.append(('main g1.2', x)) +x = g2.switch() +results.append(('main g2.2', x)) +print("RESULTS:", results) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_two_greenlets.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_two_greenlets.py new file mode 100644 index 0000000000000000000000000000000000000000..3e52345a609547bc291db58a15efb13e2ed63ac8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/fail_switch_two_greenlets.py @@ -0,0 +1,41 @@ +""" +Uses a trace function to switch greenlets at unexpected times. + +In the trace function, we switch from the current greenlet to another +greenlet, which switches +""" +import greenlet + +g1 = None +g2 = None + +switch_to_g2 = False + +def tracefunc(*args): + print('TRACE', *args) + global switch_to_g2 + if switch_to_g2: + switch_to_g2 = False + g2.switch() + print('\tLEAVE TRACE', *args) + +def g1_run(): + print('In g1_run') + global switch_to_g2 + switch_to_g2 = True + greenlet.getcurrent().parent.switch() + print('Return to g1_run') + print('Falling off end of g1_run') + +def g2_run(): + g1.switch() + print('Falling off end of g2') + +greenlet.settrace(tracefunc) + +g1 = greenlet.greenlet(g1_run) +g2 = greenlet.greenlet(g2_run) + +g1.switch() +print('Falling off end of main') +g2.switch() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/leakcheck.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/leakcheck.py new file mode 100644 index 0000000000000000000000000000000000000000..a5152fb263fdb8ccb251350820b78d8651f45301 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/leakcheck.py @@ -0,0 +1,319 @@ +# Copyright (c) 2018 gevent community +# Copyright (c) 2021 greenlet community +# +# This was originally part of gevent's test suite. The main author +# (Jason Madden) vendored a copy of it into greenlet. +# +# Permission is hereby granted, free of charge, to any person obtaining a copy +# of this software and associated documentation files (the "Software"), to deal +# in the Software without restriction, including without limitation the rights +# to use, copy, modify, merge, publish, distribute, sublicense, and/or sell +# copies of the Software, and to permit persons to whom the Software is +# furnished to do so, subject to the following conditions: +# +# The above copyright notice and this permission notice shall be included in +# all copies or substantial portions of the Software. +# +# THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR +# IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, +# FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE +# AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER +# LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, +# OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN +# THE SOFTWARE. +from __future__ import print_function + +import os +import sys +import gc + +from functools import wraps +import unittest + + +import objgraph + +# graphviz 0.18 (Nov 7 2021), available only on Python 3.6 and newer, +# has added type hints (sigh). It wants to use ``typing.Literal`` for +# some stuff, but that's only available on Python 3.9+. If that's not +# found, it creates a ``unittest.mock.MagicMock`` object and annotates +# with that. These are GC'able objects, and doing almost *anything* +# with them results in an explosion of objects. For example, trying to +# compare them for equality creates new objects. This causes our +# leakchecks to fail, with reports like: +# +# greenlet.tests.leakcheck.LeakCheckError: refcount increased by [337, 1333, 343, 430, 530, 643, 769] +# _Call 1820 +546 +# dict 4094 +76 +# MagicProxy 585 +73 +# tuple 2693 +66 +# _CallList 24 +3 +# weakref 1441 +1 +# function 5996 +1 +# type 736 +1 +# cell 592 +1 +# MagicMock 8 +1 +# +# To avoid this, we *could* filter this type of object out early. In +# principle it could leak, but we don't use mocks in greenlet, so it +# doesn't leak from us. However, a further issue is that ``MagicMock`` +# objects have subobjects that are also GC'able, like ``_Call``, and +# those create new mocks of their own too. So we'd have to filter them +# as well, and they're not public. That's OK, we can workaround the +# problem by being very careful to never compare by equality or other +# user-defined operators, only using object identity or other builtin +# functions. + +RUNNING_ON_GITHUB_ACTIONS = os.environ.get('GITHUB_ACTIONS') +RUNNING_ON_TRAVIS = os.environ.get('TRAVIS') or RUNNING_ON_GITHUB_ACTIONS +RUNNING_ON_APPVEYOR = os.environ.get('APPVEYOR') +RUNNING_ON_CI = RUNNING_ON_TRAVIS or RUNNING_ON_APPVEYOR +RUNNING_ON_MANYLINUX = os.environ.get('GREENLET_MANYLINUX') +SKIP_LEAKCHECKS = RUNNING_ON_MANYLINUX or os.environ.get('GREENLET_SKIP_LEAKCHECKS') +SKIP_FAILING_LEAKCHECKS = os.environ.get('GREENLET_SKIP_FAILING_LEAKCHECKS') +ONLY_FAILING_LEAKCHECKS = os.environ.get('GREENLET_ONLY_FAILING_LEAKCHECKS') + +def ignores_leakcheck(func): + """ + Ignore the given object during leakchecks. + + Can be applied to a method, in which case the method will run, but + will not be subject to leak checks. + + If applied to a class, the entire class will be skipped during leakchecks. This + is intended to be used for classes that are very slow and cause problems such as + test timeouts; typically it will be used for classes that are subclasses of a base + class and specify variants of behaviour (such as pool sizes). + """ + func.ignore_leakcheck = True + return func + +def fails_leakcheck(func): + """ + Mark that the function is known to leak. + """ + func.fails_leakcheck = True + if SKIP_FAILING_LEAKCHECKS: + func = unittest.skip("Skipping known failures")(func) + return func + +class LeakCheckError(AssertionError): + pass + +if hasattr(sys, 'getobjects'): + # In a Python build with ``--with-trace-refs``, make objgraph + # trace *all* the objects, not just those that are tracked by the + # GC + class _MockGC(object): + def get_objects(self): + return sys.getobjects(0) # pylint:disable=no-member + def __getattr__(self, name): + return getattr(gc, name) + objgraph.gc = _MockGC() + fails_strict_leakcheck = fails_leakcheck +else: + def fails_strict_leakcheck(func): + """ + Decorator for a function that is known to fail when running + strict (``sys.getobjects()``) leakchecks. + + This type of leakcheck finds all objects, even those, such as + strings, which are not tracked by the garbage collector. + """ + return func + +class ignores_types_in_strict_leakcheck(object): + def __init__(self, types): + self.types = types + def __call__(self, func): + func.leakcheck_ignore_types = self.types + return func + +class _RefCountChecker(object): + + # Some builtin things that we ignore + # XXX: Those things were ignored by gevent, but they're important here, + # presumably. + IGNORED_TYPES = () #(tuple, dict, types.FrameType, types.TracebackType) + + def __init__(self, testcase, function): + self.testcase = testcase + self.function = function + self.deltas = [] + self.peak_stats = {} + self.ignored_types = () + + # The very first time we are called, we have already been + # self.setUp() by the test runner, so we don't need to do it again. + self.needs_setUp = False + + def _include_object_p(self, obj): + # pylint:disable=too-many-return-statements + # + # See the comment block at the top. We must be careful to + # avoid invoking user-defined operations. + if obj is self: + return False + kind = type(obj) + # ``self._include_object_p == obj`` returns NotImplemented + # for non-function objects, which causes the interpreter + # to try to reverse the order of arguments...which leads + # to the explosion of mock objects. We don't want that, so we implement + # the check manually. + if kind == type(self._include_object_p): + try: + # pylint:disable=not-callable + exact_method_equals = self._include_object_p.__eq__(obj) + except AttributeError: + # Python 2.7 methods may only have __cmp__, and that raises a + # TypeError for non-method arguments + # pylint:disable=no-member + exact_method_equals = self._include_object_p.__cmp__(obj) == 0 + + if exact_method_equals is not NotImplemented and exact_method_equals: + return False + + # Similarly, we need to check identity in our __dict__ to avoid mock explosions. + for x in self.__dict__.values(): + if obj is x: + return False + + + if kind in self.ignored_types or kind in self.IGNORED_TYPES: + return False + + return True + + def _growth(self): + return objgraph.growth(limit=None, peak_stats=self.peak_stats, + filter=self._include_object_p) + + def _report_diff(self, growth): + if not growth: + return "" + + lines = [] + width = max(len(name) for name, _, _ in growth) + for name, count, delta in growth: + lines.append('%-*s%9d %+9d' % (width, name, count, delta)) + + diff = '\n'.join(lines) + return diff + + + def _run_test(self, args, kwargs): + gc_enabled = gc.isenabled() + gc.disable() + + if self.needs_setUp: + self.testcase.setUp() + self.testcase.skipTearDown = False + try: + self.function(self.testcase, *args, **kwargs) + finally: + self.testcase.tearDown() + self.testcase.doCleanups() + self.testcase.skipTearDown = True + self.needs_setUp = True + if gc_enabled: + gc.enable() + + def _growth_after(self): + # Grab post snapshot + # pylint:disable=no-member + if 'urlparse' in sys.modules: + sys.modules['urlparse'].clear_cache() + if 'urllib.parse' in sys.modules: + sys.modules['urllib.parse'].clear_cache() + + return self._growth() + + def _check_deltas(self, growth): + # Return false when we have decided there is no leak, + # true if we should keep looping, raises an assertion + # if we have decided there is a leak. + + deltas = self.deltas + if not deltas: + # We haven't run yet, no data, keep looping + return True + + if gc.garbage: + raise LeakCheckError("Generated uncollectable garbage %r" % (gc.garbage,)) + + + # the following configurations are classified as "no leak" + # [0, 0] + # [x, 0, 0] + # [... a, b, c, d] where a+b+c+d = 0 + # + # the following configurations are classified as "leak" + # [... z, z, z] where z > 0 + + if deltas[-2:] == [0, 0] and len(deltas) in (2, 3): + return False + + if deltas[-3:] == [0, 0, 0]: + return False + + if len(deltas) >= 4 and sum(deltas[-4:]) == 0: + return False + + if len(deltas) >= 3 and deltas[-1] > 0 and deltas[-1] == deltas[-2] and deltas[-2] == deltas[-3]: + diff = self._report_diff(growth) + raise LeakCheckError('refcount increased by %r\n%s' % (deltas, diff)) + + # OK, we don't know for sure yet. Let's search for more + if sum(deltas[-3:]) <= 0 or sum(deltas[-4:]) <= 0 or deltas[-4:].count(0) >= 2: + # this is suspicious, so give a few more runs + limit = 11 + else: + limit = 7 + if len(deltas) >= limit: + raise LeakCheckError('refcount increased by %r\n%s' + % (deltas, + self._report_diff(growth))) + + # We couldn't decide yet, keep going + return True + + def __call__(self, args, kwargs): + for _ in range(3): + gc.collect() + + expect_failure = getattr(self.function, 'fails_leakcheck', False) + if expect_failure: + self.testcase.expect_greenlet_leak = True + self.ignored_types = getattr(self.function, "leakcheck_ignore_types", ()) + + # Capture state before; the incremental will be + # updated by each call to _growth_after + growth = self._growth() + + try: + while self._check_deltas(growth): + self._run_test(args, kwargs) + + growth = self._growth_after() + + self.deltas.append(sum((stat[2] for stat in growth))) + except LeakCheckError: + if not expect_failure: + raise + else: + if expect_failure: + raise LeakCheckError("Expected %s to leak but it did not." % (self.function,)) + +def wrap_refcount(method): + if getattr(method, 'ignore_leakcheck', False) or SKIP_LEAKCHECKS: + return method + + @wraps(method) + def wrapper(self, *args, **kwargs): # pylint:disable=too-many-branches + if getattr(self, 'ignore_leakcheck', False): + raise unittest.SkipTest("This class ignored during leakchecks") + if ONLY_FAILING_LEAKCHECKS and not getattr(method, 'fails_leakcheck', False): + raise unittest.SkipTest("Only running tests that fail leakchecks.") + return _RefCountChecker(self, method)(args, kwargs) + + return wrapper diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_contextvars.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_contextvars.py new file mode 100644 index 0000000000000000000000000000000000000000..b0d1ccf346160d9f9d3125fea7825d696c304fc1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_contextvars.py @@ -0,0 +1,312 @@ +from __future__ import print_function + +import gc +import sys +import unittest + +from functools import partial +from unittest import skipUnless +from unittest import skipIf + +from greenlet import greenlet +from greenlet import getcurrent +from . import TestCase +from . import PY314 + +try: + from contextvars import Context + from contextvars import ContextVar + from contextvars import copy_context + # From the documentation: + # + # Important: Context Variables should be created at the top module + # level and never in closures. Context objects hold strong + # references to context variables which prevents context variables + # from being properly garbage collected. + ID_VAR = ContextVar("id", default=None) + VAR_VAR = ContextVar("var", default=None) + ContextVar = None +except ImportError: + Context = ContextVar = copy_context = None + +# We don't support testing if greenlet's built-in context var support is disabled. +@skipUnless(Context is not None, "ContextVar not supported") +class ContextVarsTests(TestCase): + def _new_ctx_run(self, *args, **kwargs): + return copy_context().run(*args, **kwargs) + + def _increment(self, greenlet_id, callback, counts, expect): + ctx_var = ID_VAR + if expect is None: + self.assertIsNone(ctx_var.get()) + else: + self.assertEqual(ctx_var.get(), expect) + ctx_var.set(greenlet_id) + for _ in range(2): + counts[ctx_var.get()] += 1 + callback() + + def _test_context(self, propagate_by): + # pylint:disable=too-many-branches + ID_VAR.set(0) + + callback = getcurrent().switch + counts = dict((i, 0) for i in range(5)) + + lets = [ + greenlet(partial( + partial( + copy_context().run, + self._increment + ) if propagate_by == "run" else self._increment, + greenlet_id=i, + callback=callback, + counts=counts, + expect=( + i - 1 if propagate_by == "share" else + 0 if propagate_by in ("set", "run") else None + ) + )) + for i in range(1, 5) + ] + + for let in lets: + if propagate_by == "set": + let.gr_context = copy_context() + elif propagate_by == "share": + let.gr_context = getcurrent().gr_context + + for i in range(2): + counts[ID_VAR.get()] += 1 + for let in lets: + let.switch() + + if propagate_by == "run": + # Must leave each context.run() in reverse order of entry + for let in reversed(lets): + let.switch() + else: + # No context.run(), so fine to exit in any order. + for let in lets: + let.switch() + + for let in lets: + self.assertTrue(let.dead) + # When using run(), we leave the run() as the greenlet dies, + # and there's no context "underneath". When not using run(), + # gr_context still reflects the context the greenlet was + # running in. + if propagate_by == 'run': + self.assertIsNone(let.gr_context) + else: + self.assertIsNotNone(let.gr_context) + + + if propagate_by == "share": + self.assertEqual(counts, {0: 1, 1: 1, 2: 1, 3: 1, 4: 6}) + else: + self.assertEqual(set(counts.values()), set([2])) + + def test_context_propagated_by_context_run(self): + self._new_ctx_run(self._test_context, "run") + + def test_context_propagated_by_setting_attribute(self): + self._new_ctx_run(self._test_context, "set") + + def test_context_not_propagated(self): + self._new_ctx_run(self._test_context, None) + + def test_context_shared(self): + self._new_ctx_run(self._test_context, "share") + + def test_break_ctxvars(self): + let1 = greenlet(copy_context().run) + let2 = greenlet(copy_context().run) + let1.switch(getcurrent().switch) + let2.switch(getcurrent().switch) + # Since let2 entered the current context and let1 exits its own, the + # interpreter emits: + # RuntimeError: cannot exit context: thread state references a different context object + let1.switch() + + def test_not_broken_if_using_attribute_instead_of_context_run(self): + let1 = greenlet(getcurrent().switch) + let2 = greenlet(getcurrent().switch) + let1.gr_context = copy_context() + let2.gr_context = copy_context() + let1.switch() + let2.switch() + let1.switch() + let2.switch() + + def test_context_assignment_while_running(self): + # pylint:disable=too-many-statements + ID_VAR.set(None) + + def target(): + self.assertIsNone(ID_VAR.get()) + self.assertIsNone(gr.gr_context) + + # Context is created on first use + ID_VAR.set(1) + self.assertIsInstance(gr.gr_context, Context) + self.assertEqual(ID_VAR.get(), 1) + self.assertEqual(gr.gr_context[ID_VAR], 1) + + # Clearing the context makes it get re-created as another + # empty context when next used + old_context = gr.gr_context + gr.gr_context = None # assign None while running + self.assertIsNone(ID_VAR.get()) + self.assertIsNone(gr.gr_context) + ID_VAR.set(2) + self.assertIsInstance(gr.gr_context, Context) + self.assertEqual(ID_VAR.get(), 2) + self.assertEqual(gr.gr_context[ID_VAR], 2) + + new_context = gr.gr_context + getcurrent().parent.switch((old_context, new_context)) + # parent switches us back to old_context + + self.assertEqual(ID_VAR.get(), 1) + gr.gr_context = new_context # assign non-None while running + self.assertEqual(ID_VAR.get(), 2) + + getcurrent().parent.switch() + # parent switches us back to no context + self.assertIsNone(ID_VAR.get()) + self.assertIsNone(gr.gr_context) + gr.gr_context = old_context + self.assertEqual(ID_VAR.get(), 1) + + getcurrent().parent.switch() + # parent switches us back to no context + self.assertIsNone(ID_VAR.get()) + self.assertIsNone(gr.gr_context) + + gr = greenlet(target) + + with self.assertRaisesRegex(AttributeError, "can't delete context attribute"): + del gr.gr_context + + self.assertIsNone(gr.gr_context) + old_context, new_context = gr.switch() + self.assertIs(new_context, gr.gr_context) + self.assertEqual(old_context[ID_VAR], 1) + self.assertEqual(new_context[ID_VAR], 2) + self.assertEqual(new_context.run(ID_VAR.get), 2) + gr.gr_context = old_context # assign non-None while suspended + gr.switch() + self.assertIs(gr.gr_context, new_context) + gr.gr_context = None # assign None while suspended + gr.switch() + self.assertIs(gr.gr_context, old_context) + gr.gr_context = None + gr.switch() + self.assertIsNone(gr.gr_context) + + # Make sure there are no reference leaks + gr = None + gc.collect() + # Python 3.14 elides reference counting operations + # in some cases. See https://github.com/python/cpython/pull/130708 + self.assertEqual(sys.getrefcount(old_context), 2 if not PY314 else 1) + self.assertEqual(sys.getrefcount(new_context), 2 if not PY314 else 1) + + def test_context_assignment_different_thread(self): + import threading + VAR_VAR.set(None) + ctx = Context() + + is_running = threading.Event() + should_suspend = threading.Event() + did_suspend = threading.Event() + should_exit = threading.Event() + holder = [] + + def greenlet_in_thread_fn(): + VAR_VAR.set(1) + is_running.set() + should_suspend.wait(10) + VAR_VAR.set(2) + getcurrent().parent.switch() + holder.append(VAR_VAR.get()) + + def thread_fn(): + gr = greenlet(greenlet_in_thread_fn) + gr.gr_context = ctx + holder.append(gr) + gr.switch() + did_suspend.set() + should_exit.wait(10) + gr.switch() + del gr + greenlet() # trigger cleanup + + thread = threading.Thread(target=thread_fn, daemon=True) + thread.start() + is_running.wait(10) + gr = holder[0] + + # Can't access or modify context if the greenlet is running + # in a different thread + with self.assertRaisesRegex(ValueError, "running in a different"): + getattr(gr, 'gr_context') + with self.assertRaisesRegex(ValueError, "running in a different"): + gr.gr_context = None + + should_suspend.set() + did_suspend.wait(10) + + # OK to access and modify context if greenlet is suspended + self.assertIs(gr.gr_context, ctx) + self.assertEqual(gr.gr_context[VAR_VAR], 2) + gr.gr_context = None + + should_exit.set() + thread.join(10) + + self.assertEqual(holder, [gr, None]) + + # Context can still be accessed/modified when greenlet is dead: + self.assertIsNone(gr.gr_context) + gr.gr_context = ctx + self.assertIs(gr.gr_context, ctx) + + # Otherwise we leak greenlets on some platforms. + # XXX: Should be able to do this automatically + del holder[:] + gr = None + thread = None + + def test_context_assignment_wrong_type(self): + g = greenlet() + with self.assertRaisesRegex(TypeError, + "greenlet context must be a contextvars.Context or None"): + g.gr_context = self + + +@skipIf(Context is not None, "ContextVar supported") +class NoContextVarsTests(TestCase): + def test_contextvars_errors(self): + let1 = greenlet(getcurrent().switch) + self.assertFalse(hasattr(let1, 'gr_context')) + with self.assertRaises(AttributeError): + getattr(let1, 'gr_context') + + with self.assertRaises(AttributeError): + let1.gr_context = None + + let1.switch() + + with self.assertRaises(AttributeError): + getattr(let1, 'gr_context') + + with self.assertRaises(AttributeError): + let1.gr_context = None + + del let1 + + +if __name__ == '__main__': + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_cpp.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_cpp.py new file mode 100644 index 0000000000000000000000000000000000000000..2d0cc9c9705cadaa7cfee28ce24944ca5cd1f639 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_cpp.py @@ -0,0 +1,73 @@ +from __future__ import print_function +from __future__ import absolute_import + +import subprocess +import unittest + +import greenlet +from . import _test_extension_cpp +from . import TestCase +from . import WIN + +class CPPTests(TestCase): + def test_exception_switch(self): + greenlets = [] + for i in range(4): + g = greenlet.greenlet(_test_extension_cpp.test_exception_switch) + g.switch(i) + greenlets.append(g) + for i, g in enumerate(greenlets): + self.assertEqual(g.switch(), i) + + def _do_test_unhandled_exception(self, target): + import os + import sys + script = os.path.join( + os.path.dirname(__file__), + 'fail_cpp_exception.py', + ) + args = [sys.executable, script, target.__name__ if not isinstance(target, str) else target] + __traceback_info__ = args + with self.assertRaises(subprocess.CalledProcessError) as exc: + subprocess.check_output( + args, + encoding='utf-8', + stderr=subprocess.STDOUT + ) + + ex = exc.exception + expected_exit = self.get_expected_returncodes_for_aborted_process() + self.assertIn(ex.returncode, expected_exit) + self.assertIn('fail_cpp_exception is running', ex.output) + return ex.output + + + def test_unhandled_nonstd_exception_aborts(self): + # verify that plain unhandled throw aborts + self._do_test_unhandled_exception(_test_extension_cpp.test_exception_throw_nonstd) + + def test_unhandled_std_exception_aborts(self): + # verify that plain unhandled throw aborts + self._do_test_unhandled_exception(_test_extension_cpp.test_exception_throw_std) + + @unittest.skipIf(WIN, "XXX: This does not crash on Windows") + # Meaning the exception is getting lost somewhere... + def test_unhandled_std_exception_as_greenlet_function_aborts(self): + # verify that plain unhandled throw aborts + output = self._do_test_unhandled_exception('run_as_greenlet_target') + self.assertIn( + # We really expect this to be prefixed with "greenlet: Unhandled C++ exception:" + # as added by our handler for std::exception (see TUserGreenlet.cpp), but + # that's not correct everywhere --- our handler never runs before std::terminate + # gets called (for example, on arm32). + 'Thrown from an extension.', + output + ) + + def test_unhandled_exception_in_greenlet_aborts(self): + # verify that unhandled throw called in greenlet aborts too + self._do_test_unhandled_exception('run_unhandled_exception_in_greenlet_aborts') + + +if __name__ == '__main__': + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_extension_interface.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_extension_interface.py new file mode 100644 index 0000000000000000000000000000000000000000..34b66567fc60d68988858a41c8ca98d29b90ac5e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_extension_interface.py @@ -0,0 +1,115 @@ +from __future__ import print_function +from __future__ import absolute_import + +import sys + +import greenlet +from . import _test_extension +from . import TestCase + +# pylint:disable=c-extension-no-member + +class CAPITests(TestCase): + def test_switch(self): + self.assertEqual( + 50, _test_extension.test_switch(greenlet.greenlet(lambda: 50))) + + def test_switch_kwargs(self): + def adder(x, y): + return x * y + g = greenlet.greenlet(adder) + self.assertEqual(6, _test_extension.test_switch_kwargs(g, x=3, y=2)) + + def test_setparent(self): + # pylint:disable=disallowed-name + def foo(): + def bar(): + greenlet.getcurrent().parent.switch() + + # This final switch should go back to the main greenlet, since + # the test_setparent() function in the C extension should have + # reparented this greenlet. + greenlet.getcurrent().parent.switch() + raise AssertionError("Should never have reached this code") + child = greenlet.greenlet(bar) + child.switch() + greenlet.getcurrent().parent.switch(child) + greenlet.getcurrent().parent.throw( + AssertionError("Should never reach this code")) + foo_child = greenlet.greenlet(foo).switch() + self.assertEqual(None, _test_extension.test_setparent(foo_child)) + + def test_getcurrent(self): + _test_extension.test_getcurrent() + + def test_new_greenlet(self): + self.assertEqual(-15, _test_extension.test_new_greenlet(lambda: -15)) + + def test_raise_greenlet_dead(self): + self.assertRaises( + greenlet.GreenletExit, _test_extension.test_raise_dead_greenlet) + + def test_raise_greenlet_error(self): + self.assertRaises( + greenlet.error, _test_extension.test_raise_greenlet_error) + + def test_throw(self): + seen = [] + + def foo(): # pylint:disable=disallowed-name + try: + greenlet.getcurrent().parent.switch() + except ValueError: + seen.append(sys.exc_info()[1]) + except greenlet.GreenletExit: + raise AssertionError + g = greenlet.greenlet(foo) + g.switch() + _test_extension.test_throw(g) + self.assertEqual(len(seen), 1) + self.assertTrue( + isinstance(seen[0], ValueError), + "ValueError was not raised in foo()") + self.assertEqual( + str(seen[0]), + 'take that sucka!', + "message doesn't match") + + def test_non_traceback_param(self): + with self.assertRaises(TypeError) as exc: + _test_extension.test_throw_exact( + greenlet.getcurrent(), + Exception, + Exception(), + self + ) + self.assertEqual(str(exc.exception), + "throw() third argument must be a traceback object") + + def test_instance_of_wrong_type(self): + with self.assertRaises(TypeError) as exc: + _test_extension.test_throw_exact( + greenlet.getcurrent(), + Exception(), + BaseException(), + None, + ) + + self.assertEqual(str(exc.exception), + "instance exception may not have a separate value") + + def test_not_throwable(self): + with self.assertRaises(TypeError) as exc: + _test_extension.test_throw_exact( + greenlet.getcurrent(), + "abc", + None, + None, + ) + self.assertEqual(str(exc.exception), + "exceptions must be classes, or instances, not str") + + +if __name__ == '__main__': + import unittest + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_gc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_gc.py new file mode 100644 index 0000000000000000000000000000000000000000..994addb9b757954b8355d04ba6ba5b7d6abda0bc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_gc.py @@ -0,0 +1,86 @@ +import gc + +import weakref + +import greenlet + + +from . import TestCase +from .leakcheck import fails_leakcheck +# These only work with greenlet gc support +# which is no longer optional. +assert greenlet.GREENLET_USE_GC + +class GCTests(TestCase): + def test_dead_circular_ref(self): + o = weakref.ref(greenlet.greenlet(greenlet.getcurrent).switch()) + gc.collect() + if o() is not None: + import sys + print("O IS NOT NONE.", sys.getrefcount(o())) + self.assertIsNone(o()) + self.assertFalse(gc.garbage, gc.garbage) + + def test_circular_greenlet(self): + class circular_greenlet(greenlet.greenlet): + self = None + o = circular_greenlet() + o.self = o + o = weakref.ref(o) + gc.collect() + self.assertIsNone(o()) + self.assertFalse(gc.garbage, gc.garbage) + + def test_inactive_ref(self): + class inactive_greenlet(greenlet.greenlet): + def __init__(self): + greenlet.greenlet.__init__(self, run=self.run) + + def run(self): + pass + o = inactive_greenlet() + o = weakref.ref(o) + gc.collect() + self.assertIsNone(o()) + self.assertFalse(gc.garbage, gc.garbage) + + @fails_leakcheck + def test_finalizer_crash(self): + # This test is designed to crash when active greenlets + # are made garbage collectable, until the underlying + # problem is resolved. How does it work: + # - order of object creation is important + # - array is created first, so it is moved to unreachable first + # - we create a cycle between a greenlet and this array + # - we create an object that participates in gc, is only + # referenced by a greenlet, and would corrupt gc lists + # on destruction, the easiest is to use an object with + # a finalizer + # - because array is the first object in unreachable it is + # cleared first, which causes all references to greenlet + # to disappear and causes greenlet to be destroyed, but since + # it is still live it causes a switch during gc, which causes + # an object with finalizer to be destroyed, which causes stack + # corruption and then a crash + + class object_with_finalizer(object): + def __del__(self): + pass + array = [] + parent = greenlet.getcurrent() + def greenlet_body(): + greenlet.getcurrent().object = object_with_finalizer() + try: + parent.switch() + except greenlet.GreenletExit: + print("Got greenlet exit!") + finally: + del greenlet.getcurrent().object + g = greenlet.greenlet(greenlet_body) + g.array = array + array.append(g) + g.switch() + del array + del g + greenlet.getcurrent() + gc.collect() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator.py new file mode 100644 index 0000000000000000000000000000000000000000..ca4a644b6e300910a78704593da592363d7db8e7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator.py @@ -0,0 +1,59 @@ + +from greenlet import greenlet + +from . import TestCase + +class genlet(greenlet): + parent = None + def __init__(self, *args, **kwds): + self.args = args + self.kwds = kwds + + def run(self): + fn, = self.fn + fn(*self.args, **self.kwds) + + def __iter__(self): + return self + + def __next__(self): + self.parent = greenlet.getcurrent() + result = self.switch() + if self: + return result + + raise StopIteration + + next = __next__ + + +def Yield(value): + g = greenlet.getcurrent() + while not isinstance(g, genlet): + if g is None: + raise RuntimeError('yield outside a genlet') + g = g.parent + g.parent.switch(value) + + +def generator(func): + class Generator(genlet): + fn = (func,) + return Generator + +# ____________________________________________________________ + + +class GeneratorTests(TestCase): + def test_generator(self): + seen = [] + + def g(n): + for i in range(n): + seen.append(i) + Yield(i) + g = generator(g) + for _ in range(3): + for j in g(5): + seen.append(j) + self.assertEqual(seen, 3 * [0, 0, 1, 1, 2, 2, 3, 3, 4, 4]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator_nested.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator_nested.py new file mode 100644 index 0000000000000000000000000000000000000000..8d752a63dd6560995d4d785069a61465e2a729c5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_generator_nested.py @@ -0,0 +1,168 @@ + +from greenlet import greenlet +from . import TestCase +from .leakcheck import fails_leakcheck + +class genlet(greenlet): + parent = None + def __init__(self, *args, **kwds): + self.args = args + self.kwds = kwds + self.child = None + + def run(self): + # Note the function is packed in a tuple + # to avoid creating a bound method for it. + fn, = self.fn + fn(*self.args, **self.kwds) + + def __iter__(self): + return self + + def set_child(self, child): + self.child = child + + def __next__(self): + if self.child: + child = self.child + while child.child: + tmp = child + child = child.child + tmp.child = None + + result = child.switch() + else: + self.parent = greenlet.getcurrent() + result = self.switch() + + if self: + return result + + raise StopIteration + + next = __next__ + +def Yield(value, level=1): + g = greenlet.getcurrent() + + while level != 0: + if not isinstance(g, genlet): + raise RuntimeError('yield outside a genlet') + if level > 1: + g.parent.set_child(g) + g = g.parent + level -= 1 + + g.switch(value) + + +def Genlet(func): + class TheGenlet(genlet): + fn = (func,) + return TheGenlet + +# ____________________________________________________________ + + +def g1(n, seen): + for i in range(n): + seen.append(i + 1) + yield i + + +def g2(n, seen): + for i in range(n): + seen.append(i + 1) + Yield(i) + +g2 = Genlet(g2) + + +def nested(i): + Yield(i) + + +def g3(n, seen): + for i in range(n): + seen.append(i + 1) + nested(i) +g3 = Genlet(g3) + + +def a(n): + if n == 0: + return + for ii in ax(n - 1): + Yield(ii) + Yield(n) +ax = Genlet(a) + + +def perms(l): + if len(l) > 1: + for e in l: + # No syntactical sugar for generator expressions + x = [Yield([e] + p) for p in perms([x for x in l if x != e])] + assert x + else: + Yield(l) +perms = Genlet(perms) + + +def gr1(n): + for ii in range(1, n): + Yield(ii) + Yield(ii * ii, 2) + +gr1 = Genlet(gr1) + + +def gr2(n, seen): + for ii in gr1(n): + seen.append(ii) + +gr2 = Genlet(gr2) + + +class NestedGeneratorTests(TestCase): + def test_layered_genlets(self): + seen = [] + for ii in gr2(5, seen): + seen.append(ii) + self.assertEqual(seen, [1, 1, 2, 4, 3, 9, 4, 16]) + + @fails_leakcheck + def test_permutations(self): + gen_perms = perms(list(range(4))) + permutations = list(gen_perms) + self.assertEqual(len(permutations), 4 * 3 * 2 * 1) + self.assertIn([0, 1, 2, 3], permutations) + self.assertIn([3, 2, 1, 0], permutations) + res = [] + for ii in zip(perms(list(range(4))), perms(list(range(3)))): + res.append(ii) + self.assertEqual( + res, + [([0, 1, 2, 3], [0, 1, 2]), ([0, 1, 3, 2], [0, 2, 1]), + ([0, 2, 1, 3], [1, 0, 2]), ([0, 2, 3, 1], [1, 2, 0]), + ([0, 3, 1, 2], [2, 0, 1]), ([0, 3, 2, 1], [2, 1, 0])]) + # XXX Test to make sure we are working as a generator expression + + def test_genlet_simple(self): + for g in g1, g2, g3: + seen = [] + for _ in range(3): + for j in g(5, seen): + seen.append(j) + self.assertEqual(seen, 3 * [1, 0, 2, 1, 3, 2, 4, 3, 5, 4]) + + def test_genlet_bad(self): + try: + Yield(10) + except RuntimeError: + pass + + def test_nested_genlets(self): + seen = [] + for ii in ax(5): + seen.append(ii) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet.py new file mode 100644 index 0000000000000000000000000000000000000000..fd05c0db1c9750807d587fb43e5567f0852a8970 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet.py @@ -0,0 +1,1327 @@ +import gc +import sys +import time +import threading +import unittest + +from abc import ABCMeta +from abc import abstractmethod + +import greenlet +from greenlet import greenlet as RawGreenlet +from . import TestCase +from . import RUNNING_ON_MANYLINUX +from . import PY313 +from . import PY314 +from .leakcheck import fails_leakcheck + + +# We manually manage locks in many tests +# pylint:disable=consider-using-with +# pylint:disable=too-many-public-methods +# This module is quite large. +# TODO: Refactor into separate test files. For example, +# put all the regression tests that used to produce +# crashes in test_greenlet_no_crash; put tests that DO deliberately crash +# the interpreter into test_greenlet_crash. +# pylint:disable=too-many-lines + +class SomeError(Exception): + pass + + +def fmain(seen): + try: + greenlet.getcurrent().parent.switch() + except: + seen.append(sys.exc_info()[0]) + raise + raise SomeError + + +def send_exception(g, exc): + # note: send_exception(g, exc) can be now done with g.throw(exc). + # the purpose of this test is to explicitly check the propagation rules. + def crasher(exc): + raise exc + g1 = RawGreenlet(crasher, parent=g) + g1.switch(exc) + + +class TestGreenlet(TestCase): + + def _do_simple_test(self): + lst = [] + + def f(): + lst.append(1) + greenlet.getcurrent().parent.switch() + lst.append(3) + g = RawGreenlet(f) + lst.append(0) + g.switch() + lst.append(2) + g.switch() + lst.append(4) + self.assertEqual(lst, list(range(5))) + + def test_simple(self): + self._do_simple_test() + + def test_switch_no_run_raises_AttributeError(self): + g = RawGreenlet() + with self.assertRaises(AttributeError) as exc: + g.switch() + + self.assertIn("run", str(exc.exception)) + + def test_throw_no_run_raises_AttributeError(self): + g = RawGreenlet() + with self.assertRaises(AttributeError) as exc: + g.throw(SomeError) + + self.assertIn("run", str(exc.exception)) + + def test_parent_equals_None(self): + g = RawGreenlet(parent=None) + self.assertIsNotNone(g) + self.assertIs(g.parent, greenlet.getcurrent()) + + def test_run_equals_None(self): + g = RawGreenlet(run=None) + self.assertIsNotNone(g) + self.assertIsNone(g.run) + + def test_two_children(self): + lst = [] + + def f(): + lst.append(1) + greenlet.getcurrent().parent.switch() + lst.extend([1, 1]) + g = RawGreenlet(f) + h = RawGreenlet(f) + g.switch() + self.assertEqual(len(lst), 1) + h.switch() + self.assertEqual(len(lst), 2) + h.switch() + self.assertEqual(len(lst), 4) + self.assertEqual(h.dead, True) + g.switch() + self.assertEqual(len(lst), 6) + self.assertEqual(g.dead, True) + + def test_two_recursive_children(self): + lst = [] + + def f(): + lst.append('b') + greenlet.getcurrent().parent.switch() + + def g(): + lst.append('a') + g = RawGreenlet(f) + g.switch() + lst.append('c') + self.assertEqual(sys.getrefcount(g), 2 if not PY314 else 1) + g = RawGreenlet(g) + # Python 3.14 elides reference counting operations + # in some cases. See https://github.com/python/cpython/pull/130708 + self.assertEqual(sys.getrefcount(g), 2 if not PY314 else 1) + g.switch() + self.assertEqual(lst, ['a', 'b', 'c']) + # Just the one in this frame, plus the one on the stack we pass to the function + self.assertEqual(sys.getrefcount(g), 2 if not PY314 else 1) + + def test_threads(self): + success = [] + + def f(): + self._do_simple_test() + success.append(True) + ths = [threading.Thread(target=f) for i in range(10)] + for th in ths: + th.start() + for th in ths: + th.join(10) + self.assertEqual(len(success), len(ths)) + + def test_exception(self): + seen = [] + g1 = RawGreenlet(fmain) + g2 = RawGreenlet(fmain) + g1.switch(seen) + g2.switch(seen) + g2.parent = g1 + + self.assertEqual(seen, []) + #with self.assertRaises(SomeError): + # p("***Switching back") + # g2.switch() + # Creating this as a bound method can reveal bugs that + # are hidden on newer versions of Python that avoid creating + # bound methods for direct expressions; IOW, don't use the `with` + # form! + self.assertRaises(SomeError, g2.switch) + self.assertEqual(seen, [SomeError]) + + value = g2.switch() + self.assertEqual(value, ()) + self.assertEqual(seen, [SomeError]) + + value = g2.switch(25) + self.assertEqual(value, 25) + self.assertEqual(seen, [SomeError]) + + + def test_send_exception(self): + seen = [] + g1 = RawGreenlet(fmain) + g1.switch(seen) + self.assertRaises(KeyError, send_exception, g1, KeyError) + self.assertEqual(seen, [KeyError]) + + def test_dealloc(self): + seen = [] + g1 = RawGreenlet(fmain) + g2 = RawGreenlet(fmain) + g1.switch(seen) + g2.switch(seen) + self.assertEqual(seen, []) + del g1 + gc.collect() + self.assertEqual(seen, [greenlet.GreenletExit]) + del g2 + gc.collect() + self.assertEqual(seen, [greenlet.GreenletExit, greenlet.GreenletExit]) + + def test_dealloc_catches_GreenletExit_throws_other(self): + def run(): + try: + greenlet.getcurrent().parent.switch() + except greenlet.GreenletExit: + raise SomeError from None + + g = RawGreenlet(run) + g.switch() + # Destroying the only reference to the greenlet causes it + # to get GreenletExit; when it in turn raises, even though we're the parent + # we don't get the exception, it just gets printed. + # When we run on 3.8 only, we can use sys.unraisablehook + oldstderr = sys.stderr + from io import StringIO + stderr = sys.stderr = StringIO() + try: + del g + finally: + sys.stderr = oldstderr + + v = stderr.getvalue() + self.assertIn("Exception", v) + self.assertIn('ignored', v) + self.assertIn("SomeError", v) + + + @unittest.skipIf( + PY313 and RUNNING_ON_MANYLINUX, + "Sometimes flaky (getting one GreenletExit in the second list)" + # Probably due to funky timing interactions? + # TODO: FIXME Make that work. + ) + + def test_dealloc_other_thread(self): + seen = [] + someref = [] + + bg_glet_created_running_and_no_longer_ref_in_bg = threading.Event() + fg_ref_released = threading.Event() + bg_should_be_clear = threading.Event() + ok_to_exit_bg_thread = threading.Event() + + def f(): + g1 = RawGreenlet(fmain) + g1.switch(seen) + someref.append(g1) + del g1 + gc.collect() + + bg_glet_created_running_and_no_longer_ref_in_bg.set() + fg_ref_released.wait(3) + + RawGreenlet() # trigger release + bg_should_be_clear.set() + ok_to_exit_bg_thread.wait(3) + RawGreenlet() # One more time + + t = threading.Thread(target=f) + t.start() + bg_glet_created_running_and_no_longer_ref_in_bg.wait(10) + + self.assertEqual(seen, []) + self.assertEqual(len(someref), 1) + del someref[:] + gc.collect() + # g1 is not released immediately because it's from another thread + self.assertEqual(seen, []) + fg_ref_released.set() + bg_should_be_clear.wait(3) + try: + self.assertEqual(seen, [greenlet.GreenletExit]) + finally: + ok_to_exit_bg_thread.set() + t.join(10) + del seen[:] + del someref[:] + + def test_frame(self): + def f1(): + f = sys._getframe(0) # pylint:disable=protected-access + self.assertEqual(f.f_back, None) + greenlet.getcurrent().parent.switch(f) + return "meaning of life" + g = RawGreenlet(f1) + frame = g.switch() + self.assertTrue(frame is g.gr_frame) + self.assertTrue(g) + + from_g = g.switch() + self.assertFalse(g) + self.assertEqual(from_g, 'meaning of life') + self.assertEqual(g.gr_frame, None) + + def test_thread_bug(self): + def runner(x): + g = RawGreenlet(lambda: time.sleep(x)) + g.switch() + t1 = threading.Thread(target=runner, args=(0.2,)) + t2 = threading.Thread(target=runner, args=(0.3,)) + t1.start() + t2.start() + t1.join(10) + t2.join(10) + + def test_switch_kwargs(self): + def run(a, b): + self.assertEqual(a, 4) + self.assertEqual(b, 2) + return 42 + x = RawGreenlet(run).switch(a=4, b=2) + self.assertEqual(x, 42) + + def test_switch_kwargs_to_parent(self): + def run(x): + greenlet.getcurrent().parent.switch(x=x) + greenlet.getcurrent().parent.switch(2, x=3) + return x, x ** 2 + g = RawGreenlet(run) + self.assertEqual({'x': 3}, g.switch(3)) + self.assertEqual(((2,), {'x': 3}), g.switch()) + self.assertEqual((3, 9), g.switch()) + + def test_switch_to_another_thread(self): + data = {} + created_event = threading.Event() + done_event = threading.Event() + + def run(): + data['g'] = RawGreenlet(lambda: None) + created_event.set() + done_event.wait(10) + thread = threading.Thread(target=run) + thread.start() + created_event.wait(10) + with self.assertRaises(greenlet.error): + data['g'].switch() + done_event.set() + thread.join(10) + # XXX: Should handle this automatically + data.clear() + + def test_exc_state(self): + def f(): + try: + raise ValueError('fun') + except: # pylint:disable=bare-except + exc_info = sys.exc_info() + RawGreenlet(h).switch() + self.assertEqual(exc_info, sys.exc_info()) + + def h(): + self.assertEqual(sys.exc_info(), (None, None, None)) + + RawGreenlet(f).switch() + + def test_instance_dict(self): + def f(): + greenlet.getcurrent().test = 42 + def deldict(g): + del g.__dict__ + def setdict(g, value): + g.__dict__ = value + g = RawGreenlet(f) + self.assertEqual(g.__dict__, {}) + g.switch() + self.assertEqual(g.test, 42) + self.assertEqual(g.__dict__, {'test': 42}) + g.__dict__ = g.__dict__ + self.assertEqual(g.__dict__, {'test': 42}) + self.assertRaises(TypeError, deldict, g) + self.assertRaises(TypeError, setdict, g, 42) + + def test_running_greenlet_has_no_run(self): + has_run = [] + def func(): + has_run.append( + hasattr(greenlet.getcurrent(), 'run') + ) + + g = RawGreenlet(func) + g.switch() + self.assertEqual(has_run, [False]) + + def test_deepcopy(self): + import copy + self.assertRaises(TypeError, copy.copy, RawGreenlet()) + self.assertRaises(TypeError, copy.deepcopy, RawGreenlet()) + + def test_parent_restored_on_kill(self): + hub = RawGreenlet(lambda: None) + main = greenlet.getcurrent() + result = [] + def worker(): + try: + # Wait to be killed by going back to the test. + main.switch() + except greenlet.GreenletExit: + # Resurrect and switch to parent + result.append(greenlet.getcurrent().parent) + result.append(greenlet.getcurrent()) + hub.switch() + g = RawGreenlet(worker, parent=hub) + g.switch() + # delete the only reference, thereby raising GreenletExit + del g + self.assertTrue(result) + self.assertIs(result[0], main) + self.assertIs(result[1].parent, hub) + # Delete them, thereby breaking the cycle between the greenlet + # and the frame, which otherwise would never be collectable + # XXX: We should be able to automatically fix this. + del result[:] + hub = None + main = None + + def test_parent_return_failure(self): + # No run causes AttributeError on switch + g1 = RawGreenlet() + # Greenlet that implicitly switches to parent + g2 = RawGreenlet(lambda: None, parent=g1) + # AttributeError should propagate to us, no fatal errors + with self.assertRaises(AttributeError): + g2.switch() + + def test_throw_exception_not_lost(self): + class mygreenlet(RawGreenlet): + def __getattribute__(self, name): + try: + raise Exception # pylint:disable=broad-exception-raised + except: # pylint:disable=bare-except + pass + return RawGreenlet.__getattribute__(self, name) + g = mygreenlet(lambda: None) + self.assertRaises(SomeError, g.throw, SomeError()) + + @fails_leakcheck + def _do_test_throw_to_dead_thread_doesnt_crash(self, wait_for_cleanup=False): + result = [] + def worker(): + greenlet.getcurrent().parent.switch() + + def creator(): + g = RawGreenlet(worker) + g.switch() + result.append(g) + if wait_for_cleanup: + # Let this greenlet eventually be cleaned up. + g.switch() + greenlet.getcurrent() + t = threading.Thread(target=creator) + t.start() + t.join(10) + del t + # But, depending on the operating system, the thread + # deallocator may not actually have run yet! So we can't be + # sure about the error message unless we wait. + if wait_for_cleanup: + self.wait_for_pending_cleanups() + with self.assertRaises(greenlet.error) as exc: + result[0].throw(SomeError) + + if not wait_for_cleanup: + s = str(exc.exception) + self.assertTrue( + s == "cannot switch to a different thread (which happens to have exited)" + or 'Cannot switch' in s + ) + else: + self.assertEqual( + str(exc.exception), + "cannot switch to a different thread (which happens to have exited)", + ) + + if hasattr(result[0].gr_frame, 'clear'): + # The frame is actually executing (it thinks), we can't clear it. + with self.assertRaises(RuntimeError): + result[0].gr_frame.clear() + # Unfortunately, this doesn't actually clear the references, they're in the + # fast local array. + if not wait_for_cleanup: + # f_locals has no clear method in Python 3.13 + if hasattr(result[0].gr_frame.f_locals, 'clear'): + result[0].gr_frame.f_locals.clear() + else: + self.assertIsNone(result[0].gr_frame) + + del creator + worker = None + del result[:] + # XXX: we ought to be able to automatically fix this. + # See issue 252 + self.expect_greenlet_leak = True # direct us not to wait for it to go away + + @fails_leakcheck + def test_throw_to_dead_thread_doesnt_crash(self): + self._do_test_throw_to_dead_thread_doesnt_crash() + + def test_throw_to_dead_thread_doesnt_crash_wait(self): + self._do_test_throw_to_dead_thread_doesnt_crash(True) + + @fails_leakcheck + def test_recursive_startup(self): + class convoluted(RawGreenlet): + def __init__(self): + RawGreenlet.__init__(self) + self.count = 0 + def __getattribute__(self, name): + if name == 'run' and self.count == 0: + self.count = 1 + self.switch(43) + return RawGreenlet.__getattribute__(self, name) + def run(self, value): + while True: + self.parent.switch(value) + g = convoluted() + self.assertEqual(g.switch(42), 43) + # Exits the running greenlet, otherwise it leaks + # XXX: We should be able to automatically fix this + #g.throw(greenlet.GreenletExit) + #del g + self.expect_greenlet_leak = True + + def test_threaded_updatecurrent(self): + # released when main thread should execute + lock1 = threading.Lock() + lock1.acquire() + # released when another thread should execute + lock2 = threading.Lock() + lock2.acquire() + class finalized(object): + def __del__(self): + # happens while in green_updatecurrent() in main greenlet + # should be very careful not to accidentally call it again + # at the same time we must make sure another thread executes + lock2.release() + lock1.acquire() + # now ts_current belongs to another thread + def deallocator(): + greenlet.getcurrent().parent.switch() + def fthread(): + lock2.acquire() + greenlet.getcurrent() + del g[0] + lock1.release() + lock2.acquire() + greenlet.getcurrent() + lock1.release() + main = greenlet.getcurrent() + g = [RawGreenlet(deallocator)] + g[0].bomb = finalized() + g[0].switch() + t = threading.Thread(target=fthread) + t.start() + # let another thread grab ts_current and deallocate g[0] + lock2.release() + lock1.acquire() + # this is the corner stone + # getcurrent() will notice that ts_current belongs to another thread + # and start the update process, which would notice that g[0] should + # be deallocated, and that will execute an object's finalizer. Now, + # that object will let another thread run so it can grab ts_current + # again, which would likely crash the interpreter if there's no + # check for this case at the end of green_updatecurrent(). This test + # passes if getcurrent() returns correct result, but it's likely + # to randomly crash if it's not anyway. + self.assertEqual(greenlet.getcurrent(), main) + # wait for another thread to complete, just in case + t.join(10) + + def test_dealloc_switch_args_not_lost(self): + seen = [] + def worker(): + # wait for the value + value = greenlet.getcurrent().parent.switch() + # delete all references to ourself + del worker[0] + initiator.parent = greenlet.getcurrent().parent + # switch to main with the value, but because + # ts_current is the last reference to us we + # return here immediately, where we resurrect ourself. + try: + greenlet.getcurrent().parent.switch(value) + finally: + seen.append(greenlet.getcurrent()) + def initiator(): + return 42 # implicitly falls thru to parent + + worker = [RawGreenlet(worker)] + + worker[0].switch() # prime worker + initiator = RawGreenlet(initiator, worker[0]) + value = initiator.switch() + self.assertTrue(seen) + self.assertEqual(value, 42) + + def test_tuple_subclass(self): + # The point of this test is to see what happens when a custom + # tuple subclass is used as an object passed directly to the C + # function ``green_switch``; part of ``green_switch`` checks + # the ``len()`` of the ``args`` tuple, and that can call back + # into Python. Here, when it calls back into Python, we + # recursively enter ``green_switch`` again. + + # This test is really only relevant on Python 2. The builtin + # `apply` function directly passes the given args tuple object + # to the underlying function, whereas the Python 3 version + # unpacks and repacks into an actual tuple. This could still + # happen using the C API on Python 3 though. We should write a + # builtin version of apply() ourself. + def _apply(func, a, k): + func(*a, **k) + + class mytuple(tuple): + def __len__(self): + greenlet.getcurrent().switch() + return tuple.__len__(self) + args = mytuple() + kwargs = dict(a=42) + def switchapply(): + _apply(greenlet.getcurrent().parent.switch, args, kwargs) + g = RawGreenlet(switchapply) + self.assertEqual(g.switch(), kwargs) + + def test_abstract_subclasses(self): + AbstractSubclass = ABCMeta( + 'AbstractSubclass', + (RawGreenlet,), + {'run': abstractmethod(lambda self: None)}) + + class BadSubclass(AbstractSubclass): + pass + + class GoodSubclass(AbstractSubclass): + def run(self): + pass + + GoodSubclass() # should not raise + self.assertRaises(TypeError, BadSubclass) + + def test_implicit_parent_with_threads(self): + if not gc.isenabled(): + return # cannot test with disabled gc + N = gc.get_threshold()[0] + if N < 50: + return # cannot test with such a small N + def attempt(): + lock1 = threading.Lock() + lock1.acquire() + lock2 = threading.Lock() + lock2.acquire() + recycled = [False] + def another_thread(): + lock1.acquire() # wait for gc + greenlet.getcurrent() # update ts_current + lock2.release() # release gc + t = threading.Thread(target=another_thread) + t.start() + class gc_callback(object): + def __del__(self): + lock1.release() + lock2.acquire() + recycled[0] = True + class garbage(object): + def __init__(self): + self.cycle = self + self.callback = gc_callback() + l = [] + x = range(N*2) + current = greenlet.getcurrent() + g = garbage() + for _ in x: + g = None # lose reference to garbage + if recycled[0]: + # gc callback called prematurely + t.join(10) + return False + last = RawGreenlet() + if recycled[0]: + break # yes! gc called in green_new + l.append(last) # increase allocation counter + else: + # gc callback not called when expected + gc.collect() + if recycled[0]: + t.join(10) + return False + self.assertEqual(last.parent, current) + for g in l: + self.assertEqual(g.parent, current) + return True + for _ in range(5): + if attempt(): + break + + def test_issue_245_reference_counting_subclass_no_threads(self): + # https://github.com/python-greenlet/greenlet/issues/245 + # Before the fix, this crashed pretty reliably on + # Python 3.10, at least on macOS; but much less reliably on other + # interpreters (memory layout must have changed). + # The threaded test crashed more reliably on more interpreters. + from greenlet import getcurrent + from greenlet import GreenletExit + + class Greenlet(RawGreenlet): + pass + + initial_refs = sys.getrefcount(Greenlet) + # This has to be an instance variable because + # Python 2 raises a SyntaxError if we delete a local + # variable referenced in an inner scope. + self.glets = [] # pylint:disable=attribute-defined-outside-init + + def greenlet_main(): + try: + getcurrent().parent.switch() + except GreenletExit: + self.glets.append(getcurrent()) + + # Before the + for _ in range(10): + Greenlet(greenlet_main).switch() + + del self.glets + self.assertEqual(sys.getrefcount(Greenlet), initial_refs) + + @unittest.skipIf( + PY313 and RUNNING_ON_MANYLINUX, + "The manylinux images appear to hang on this test on 3.13rc2" + # Or perhaps I just got tired of waiting for the 450s timeout. + # Still, it shouldn't take anywhere near that long. Does not reproduce in + # Ubuntu images, on macOS or Windows. + ) + def test_issue_245_reference_counting_subclass_threads(self): + # https://github.com/python-greenlet/greenlet/issues/245 + from threading import Thread + from threading import Event + + from greenlet import getcurrent + + class MyGreenlet(RawGreenlet): + pass + + glets = [] + ref_cleared = Event() + + def greenlet_main(): + getcurrent().parent.switch() + + def thread_main(greenlet_running_event): + mine = MyGreenlet(greenlet_main) + glets.append(mine) + # The greenlets being deleted must be active + mine.switch() + # Don't keep any reference to it in this thread + del mine + # Let main know we published our greenlet. + greenlet_running_event.set() + # Wait for main to let us know the references are + # gone and the greenlet objects no longer reachable + ref_cleared.wait(10) + # The creating thread must call getcurrent() (or a few other + # greenlet APIs) because that's when the thread-local list of dead + # greenlets gets cleared. + getcurrent() + + # We start with 3 references to the subclass: + # - This module + # - Its __mro__ + # - The __subclassess__ attribute of greenlet + # - (If we call gc.get_referents(), we find four entries, including + # some other tuple ``(greenlet)`` that I'm not sure about but must be part + # of the machinery.) + # + # On Python 3.10 it's often enough to just run 3 threads; on Python 2.7, + # more threads are needed, and the results are still + # non-deterministic. Presumably the memory layouts are different + initial_refs = sys.getrefcount(MyGreenlet) + thread_ready_events = [] + for _ in range( + initial_refs + 45 + ): + event = Event() + thread = Thread(target=thread_main, args=(event,)) + thread_ready_events.append(event) + thread.start() + + + for done_event in thread_ready_events: + done_event.wait(10) + + + del glets[:] + ref_cleared.set() + # Let any other thread run; it will crash the interpreter + # if not fixed (or silently corrupt memory and we possibly crash + # later). + self.wait_for_pending_cleanups() + self.assertEqual(sys.getrefcount(MyGreenlet), initial_refs) + + def test_falling_off_end_switches_to_unstarted_parent_raises_error(self): + def no_args(): + return 13 + + parent_never_started = RawGreenlet(no_args) + + def leaf(): + return 42 + + child = RawGreenlet(leaf, parent_never_started) + + # Because the run function takes to arguments + with self.assertRaises(TypeError): + child.switch() + + def test_falling_off_end_switches_to_unstarted_parent_works(self): + def one_arg(x): + return (x, 24) + + parent_never_started = RawGreenlet(one_arg) + + def leaf(): + return 42 + + child = RawGreenlet(leaf, parent_never_started) + + result = child.switch() + self.assertEqual(result, (42, 24)) + + def test_switch_to_dead_greenlet_with_unstarted_perverse_parent(self): + class Parent(RawGreenlet): + def __getattribute__(self, name): + if name == 'run': + raise SomeError + + + parent_never_started = Parent() + seen = [] + child = RawGreenlet(lambda: seen.append(42), parent_never_started) + # Because we automatically start the parent when the child is + # finished + with self.assertRaises(SomeError): + child.switch() + + self.assertEqual(seen, [42]) + + with self.assertRaises(SomeError): + child.switch() + self.assertEqual(seen, [42]) + + def test_switch_to_dead_greenlet_reparent(self): + seen = [] + parent_never_started = RawGreenlet(lambda: seen.append(24)) + child = RawGreenlet(lambda: seen.append(42)) + + child.switch() + self.assertEqual(seen, [42]) + + child.parent = parent_never_started + # This actually is the same as switching to the parent. + result = child.switch() + self.assertIsNone(result) + self.assertEqual(seen, [42, 24]) + + def test_can_access_f_back_of_suspended_greenlet(self): + # This tests our frame rewriting to work around Python 3.12+ having + # some interpreter frames on the C stack. It will crash in the absence + # of that logic. + main = greenlet.getcurrent() + + def outer(): + inner() + + def inner(): + main.switch(sys._getframe(0)) + + hub = RawGreenlet(outer) + # start it + hub.switch() + + # start another greenlet to make sure we aren't relying on + # anything in `hub` still being on the C stack + unrelated = RawGreenlet(lambda: None) + unrelated.switch() + + # now it is suspended + self.assertIsNotNone(hub.gr_frame) + self.assertEqual(hub.gr_frame.f_code.co_name, "inner") + self.assertIsNotNone(hub.gr_frame.f_back) + self.assertEqual(hub.gr_frame.f_back.f_code.co_name, "outer") + # The next line is what would crash + self.assertIsNone(hub.gr_frame.f_back.f_back) + + def test_get_stack_with_nested_c_calls(self): + from functools import partial + from . import _test_extension_cpp + + def recurse(v): + if v > 0: + return v * _test_extension_cpp.test_call(partial(recurse, v - 1)) + return greenlet.getcurrent().parent.switch() + + gr = RawGreenlet(recurse) + gr.switch(5) + frame = gr.gr_frame + for i in range(5): + self.assertEqual(frame.f_locals["v"], i) + frame = frame.f_back + self.assertEqual(frame.f_locals["v"], 5) + self.assertIsNone(frame.f_back) + self.assertEqual(gr.switch(10), 1200) # 1200 = 5! * 10 + + def test_frames_always_exposed(self): + # On Python 3.12 this will crash if we don't set the + # gr_frames_always_exposed attribute. More background: + # https://github.com/python-greenlet/greenlet/issues/388 + main = greenlet.getcurrent() + + def outer(): + inner(sys._getframe(0)) + + def inner(frame): + main.switch(frame) + + gr = RawGreenlet(outer) + frame = gr.switch() + + # Do something else to clobber the part of the C stack used by `gr`, + # so we can't skate by on "it just happened to still be there" + unrelated = RawGreenlet(lambda: None) + unrelated.switch() + + self.assertEqual(frame.f_code.co_name, "outer") + # The next line crashes on 3.12 if we haven't exposed the frames. + self.assertIsNone(frame.f_back) + + +class TestGreenletSetParentErrors(TestCase): + def test_threaded_reparent(self): + data = {} + created_event = threading.Event() + done_event = threading.Event() + + def run(): + data['g'] = RawGreenlet(lambda: None) + created_event.set() + done_event.wait(10) + + def blank(): + greenlet.getcurrent().parent.switch() + + thread = threading.Thread(target=run) + thread.start() + created_event.wait(10) + g = RawGreenlet(blank) + g.switch() + with self.assertRaises(ValueError) as exc: + g.parent = data['g'] + done_event.set() + thread.join(10) + + self.assertEqual(str(exc.exception), "parent cannot be on a different thread") + + def test_unexpected_reparenting(self): + another = [] + def worker(): + g = RawGreenlet(lambda: None) + another.append(g) + g.switch() + t = threading.Thread(target=worker) + t.start() + t.join(10) + # The first time we switch (running g_initialstub(), which is + # when we look up the run attribute) we attempt to change the + # parent to one from another thread (which also happens to be + # dead). ``g_initialstub()`` should detect this and raise a + # greenlet error. + # + # EXCEPT: With the fix for #252, this is actually detected + # sooner, when setting the parent itself. Prior to that fix, + # the main greenlet from the background thread kept a valid + # value for ``run_info``, and appeared to be a valid parent + # until we actually started the greenlet. But now that it's + # cleared, this test is catching whether ``green_setparent`` + # can detect the dead thread. + # + # Further refactoring once again changes this back to a greenlet.error + # + # We need to wait for the cleanup to happen, but we're + # deliberately leaking a main greenlet here. + self.wait_for_pending_cleanups(initial_main_greenlets=self.main_greenlets_before_test + 1) + + class convoluted(RawGreenlet): + def __getattribute__(self, name): + if name == 'run': + self.parent = another[0] # pylint:disable=attribute-defined-outside-init + return RawGreenlet.__getattribute__(self, name) + g = convoluted(lambda: None) + with self.assertRaises(greenlet.error) as exc: + g.switch() + self.assertEqual(str(exc.exception), + "cannot switch to a different thread (which happens to have exited)") + del another[:] + + def test_unexpected_reparenting_thread_running(self): + # Like ``test_unexpected_reparenting``, except the background thread is + # actually still alive. + another = [] + switched_to_greenlet = threading.Event() + keep_main_alive = threading.Event() + def worker(): + g = RawGreenlet(lambda: None) + another.append(g) + g.switch() + switched_to_greenlet.set() + keep_main_alive.wait(10) + class convoluted(RawGreenlet): + def __getattribute__(self, name): + if name == 'run': + self.parent = another[0] # pylint:disable=attribute-defined-outside-init + return RawGreenlet.__getattribute__(self, name) + + t = threading.Thread(target=worker) + t.start() + + switched_to_greenlet.wait(10) + try: + g = convoluted(lambda: None) + + with self.assertRaises(greenlet.error) as exc: + g.switch() + self.assertIn("Cannot switch to a different thread", str(exc.exception)) + self.assertIn("Expected", str(exc.exception)) + self.assertIn("Current", str(exc.exception)) + finally: + keep_main_alive.set() + t.join(10) + # XXX: Should handle this automatically. + del another[:] + + def test_cannot_delete_parent(self): + worker = RawGreenlet(lambda: None) + self.assertIs(worker.parent, greenlet.getcurrent()) + + with self.assertRaises(AttributeError) as exc: + del worker.parent + self.assertEqual(str(exc.exception), "can't delete attribute") + + def test_cannot_delete_parent_of_main(self): + with self.assertRaises(AttributeError) as exc: + del greenlet.getcurrent().parent + self.assertEqual(str(exc.exception), "can't delete attribute") + + + def test_main_greenlet_parent_is_none(self): + # assuming we're in a main greenlet here. + self.assertIsNone(greenlet.getcurrent().parent) + + def test_set_parent_wrong_types(self): + def bg(): + # Go back to main. + greenlet.getcurrent().parent.switch() + + def check(glet): + for p in None, 1, self, "42": + with self.assertRaises(TypeError) as exc: + glet.parent = p + + self.assertEqual( + str(exc.exception), + "GreenletChecker: Expected any type of greenlet, not " + type(p).__name__) + + # First, not running + g = RawGreenlet(bg) + self.assertFalse(g) + check(g) + + # Then when running. + g.switch() + self.assertTrue(g) + check(g) + + # Let it finish + g.switch() + + + def test_trivial_cycle(self): + glet = RawGreenlet(lambda: None) + with self.assertRaises(ValueError) as exc: + glet.parent = glet + self.assertEqual(str(exc.exception), "cyclic parent chain") + + def test_trivial_cycle_main(self): + # This used to produce a ValueError, but we catch it earlier than that now. + with self.assertRaises(AttributeError) as exc: + greenlet.getcurrent().parent = greenlet.getcurrent() + self.assertEqual(str(exc.exception), "cannot set the parent of a main greenlet") + + def test_deeper_cycle(self): + g1 = RawGreenlet(lambda: None) + g2 = RawGreenlet(lambda: None) + g3 = RawGreenlet(lambda: None) + + g1.parent = g2 + g2.parent = g3 + with self.assertRaises(ValueError) as exc: + g3.parent = g1 + self.assertEqual(str(exc.exception), "cyclic parent chain") + + +class TestRepr(TestCase): + + def assertEndsWith(self, got, suffix): + self.assertTrue(got.endswith(suffix), (got, suffix)) + + def test_main_while_running(self): + r = repr(greenlet.getcurrent()) + self.assertEndsWith(r, " current active started main>") + + def test_main_in_background(self): + main = greenlet.getcurrent() + def run(): + return repr(main) + + g = RawGreenlet(run) + r = g.switch() + self.assertEndsWith(r, ' suspended active started main>') + + def test_initial(self): + r = repr(RawGreenlet()) + self.assertEndsWith(r, ' pending>') + + def test_main_from_other_thread(self): + main = greenlet.getcurrent() + + class T(threading.Thread): + original_main = thread_main = None + main_glet = None + def run(self): + self.original_main = repr(main) + self.main_glet = greenlet.getcurrent() + self.thread_main = repr(self.main_glet) + + t = T() + t.start() + t.join(10) + + self.assertEndsWith(t.original_main, ' suspended active started main>') + self.assertEndsWith(t.thread_main, ' current active started main>') + # give the machinery time to notice the death of the thread, + # and clean it up. Note that we don't use + # ``expect_greenlet_leak`` or wait_for_pending_cleanups, + # because at this point we know we have an extra greenlet + # still reachable. + for _ in range(3): + time.sleep(0.001) + + # In the past, main greenlets, even from dead threads, never + # really appear dead. We have fixed that, and we also report + # that the thread is dead in the repr. (Do this multiple times + # to make sure that we don't self-modify and forget our state + # in the C++ code). + for _ in range(3): + self.assertTrue(t.main_glet.dead) + r = repr(t.main_glet) + self.assertEndsWith(r, ' (thread exited) dead>') + + def test_dead(self): + g = RawGreenlet(lambda: None) + g.switch() + self.assertEndsWith(repr(g), ' dead>') + self.assertNotIn('suspended', repr(g)) + self.assertNotIn('started', repr(g)) + self.assertNotIn('active', repr(g)) + + def test_formatting_produces_native_str(self): + # https://github.com/python-greenlet/greenlet/issues/218 + # %s formatting on Python 2 was producing unicode, not str. + + g_dead = RawGreenlet(lambda: None) + g_not_started = RawGreenlet(lambda: None) + g_cur = greenlet.getcurrent() + + for g in g_dead, g_not_started, g_cur: + + self.assertIsInstance( + '%s' % (g,), + str + ) + self.assertIsInstance( + '%r' % (g,), + str, + ) + + +class TestMainGreenlet(TestCase): + # Tests some implementation details, and relies on some + # implementation details. + + def _check_current_is_main(self): + # implementation detail + assert 'main' in repr(greenlet.getcurrent()) + + t = type(greenlet.getcurrent()) + assert 'main' not in repr(t) + return t + + def test_main_greenlet_type_can_be_subclassed(self): + main_type = self._check_current_is_main() + subclass = type('subclass', (main_type,), {}) + self.assertIsNotNone(subclass) + + def test_main_greenlet_is_greenlet(self): + self._check_current_is_main() + self.assertIsInstance(greenlet.getcurrent(), RawGreenlet) + + + +class TestBrokenGreenlets(TestCase): + # Tests for things that used to, or still do, terminate the interpreter. + # This often means doing unsavory things. + + def test_failed_to_initialstub(self): + def func(): + raise AssertionError("Never get here") + + + g = greenlet._greenlet.UnswitchableGreenlet(func) + g.force_switch_error = True + + with self.assertRaisesRegex(SystemError, + "Failed to switch stacks into a greenlet for the first time."): + g.switch() + + def test_failed_to_switch_into_running(self): + runs = [] + def func(): + runs.append(1) + greenlet.getcurrent().parent.switch() + runs.append(2) + greenlet.getcurrent().parent.switch() + runs.append(3) # pragma: no cover + + g = greenlet._greenlet.UnswitchableGreenlet(func) + g.switch() + self.assertEqual(runs, [1]) + g.switch() + self.assertEqual(runs, [1, 2]) + g.force_switch_error = True + + with self.assertRaisesRegex(SystemError, + "Failed to switch stacks into a running greenlet."): + g.switch() + + # If we stopped here, we would fail the leakcheck, because we've left + # the ``inner_bootstrap()`` C frame and its descendents hanging around, + # which have a bunch of Python references. They'll never get cleaned up + # if we don't let the greenlet finish. + g.force_switch_error = False + g.switch() + self.assertEqual(runs, [1, 2, 3]) + + def test_failed_to_slp_switch_into_running(self): + ex = self.assertScriptRaises('fail_slp_switch.py') + + self.assertIn('fail_slp_switch is running', ex.output) + self.assertIn(ex.returncode, self.get_expected_returncodes_for_aborted_process()) + + def test_reentrant_switch_two_greenlets(self): + # Before we started capturing the arguments in g_switch_finish, this could crash. + output = self.run_script('fail_switch_two_greenlets.py') + self.assertIn('In g1_run', output) + self.assertIn('TRACE', output) + self.assertIn('LEAVE TRACE', output) + self.assertIn('Falling off end of main', output) + self.assertIn('Falling off end of g1_run', output) + self.assertIn('Falling off end of g2', output) + + def test_reentrant_switch_three_greenlets(self): + # On debug builds of greenlet, this used to crash with an assertion error; + # on non-debug versions, it ran fine (which it should not do!). + # Now it always crashes correctly with a TypeError + ex = self.assertScriptRaises('fail_switch_three_greenlets.py', exitcodes=(1,)) + + self.assertIn('TypeError', ex.output) + self.assertIn('positional arguments', ex.output) + + def test_reentrant_switch_three_greenlets2(self): + # This actually passed on debug and non-debug builds. It + # should probably have been triggering some debug assertions + # but it didn't. + # + # I think the fixes for the above test also kicked in here. + output = self.run_script('fail_switch_three_greenlets2.py') + self.assertIn( + "RESULTS: [('trace', 'switch'), " + "('trace', 'switch'), ('g2 arg', 'g2 from tracefunc'), " + "('trace', 'switch'), ('main g1', 'from g2_run'), ('trace', 'switch'), " + "('g1 arg', 'g1 from main'), ('trace', 'switch'), ('main g2', 'from g1_run'), " + "('trace', 'switch'), ('g1 from parent', 'g1 from main 2'), ('trace', 'switch'), " + "('main g1.2', 'g1 done'), ('trace', 'switch'), ('g2 from parent', ()), " + "('trace', 'switch'), ('main g2.2', 'g2 done')]", + output + ) + + def test_reentrant_switch_GreenletAlreadyStartedInPython(self): + output = self.run_script('fail_initialstub_already_started.py') + + self.assertIn( + "RESULTS: ['Begin C', 'Switch to b from B.__getattribute__ in C', " + "('Begin B', ()), '_B_run switching to main', ('main from c', 'From B'), " + "'B.__getattribute__ back from main in C', ('Begin A', (None,)), " + "('A dead?', True, 'B dead?', True, 'C dead?', False), " + "'C done', ('main from c.2', None)]", + output + ) + + def test_reentrant_switch_run_callable_has_del(self): + output = self.run_script('fail_clearing_run_switches.py') + self.assertIn( + "RESULTS [" + "('G.__getattribute__', 'run'), ('RunCallable', '__del__'), " + "('main: g.switch()', 'from RunCallable'), ('run_func', 'enter')" + "]", + output + ) + +if __name__ == '__main__': + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet_trash.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet_trash.py new file mode 100644 index 0000000000000000000000000000000000000000..c1fc1374c7dbffd162dc0a5c1787012d7bb904ce --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_greenlet_trash.py @@ -0,0 +1,187 @@ +# -*- coding: utf-8 -*- +""" +Tests for greenlets interacting with the CPython trash can API. + +The CPython trash can API is not designed to be re-entered from a +single thread. But this can happen using greenlets, if something +during the object deallocation process switches greenlets, and this second +greenlet then causes the trash can to get entered again. Here, we do this +very explicitly, but in other cases (like gevent) it could be arbitrarily more +complicated: for example, a weakref callback might try to acquire a lock that's +already held by another greenlet; that would allow a greenlet switch to occur. + +See https://github.com/gevent/gevent/issues/1909 + +This test is fragile and relies on details of the CPython +implementation (like most of the rest of this package): + + - We enter the trashcan and deferred deallocation after + ``_PyTrash_UNWIND_LEVEL`` calls. This constant, defined in + CPython's object.c, is generally 50. That's basically how many objects are required to + get us into the deferred deallocation situation. + + - The test fails by hitting an ``assert()`` in object.c; if the + build didn't enable assert, then we don't catch this. + + - If the test fails in that way, the interpreter crashes. +""" +from __future__ import print_function, absolute_import, division + +import unittest + + +class TestTrashCanReEnter(unittest.TestCase): + + def test_it(self): + try: + # pylint:disable-next=no-name-in-module + from greenlet._greenlet import get_tstate_trash_delete_nesting # pylint:disable=unused-import + except ImportError: + import sys + # Python 3.13 has not "trash delete nesting" anymore (but "delete later") + assert sys.version_info[:2] >= (3, 13) + self.skipTest("get_tstate_trash_delete_nesting is not available.") + + # Try several times to trigger it, because it isn't 100% + # reliable. + for _ in range(10): + self.check_it() + + def check_it(self): # pylint:disable=too-many-statements + import greenlet + from greenlet._greenlet import get_tstate_trash_delete_nesting # pylint:disable=no-name-in-module + main = greenlet.getcurrent() + + assert get_tstate_trash_delete_nesting() == 0 + + # We expect to be in deferred deallocation after this many + # deallocations have occurred. TODO: I wish we had a better way to do + # this --- that was before get_tstate_trash_delete_nesting; perhaps + # we can use that API to do better? + TRASH_UNWIND_LEVEL = 50 + # How many objects to put in a container; it's the container that + # queues objects for deferred deallocation. + OBJECTS_PER_CONTAINER = 500 + + class Dealloc: # define the class here because we alter class variables each time we run. + """ + An object with a ``__del__`` method. When it starts getting deallocated + from a deferred trash can run, it switches greenlets, allocates more objects + which then also go in the trash can. If we don't save state appropriately, + nesting gets out of order and we can crash the interpreter. + """ + + #: Has our deallocation actually run and switched greenlets? + #: When it does, this will be set to the current greenlet. This should + #: be happening in the main greenlet, so we check that down below. + SPAWNED = False + + #: Has the background greenlet run? + BG_RAN = False + + BG_GLET = None + + #: How many of these things have ever been allocated. + CREATED = 0 + + #: How many of these things have ever been deallocated. + DESTROYED = 0 + + #: How many were destroyed not in the main greenlet. There should always + #: be some. + #: If the test is broken or things change in the trashcan implementation, + #: this may not be correct. + DESTROYED_BG = 0 + + def __init__(self, sequence_number): + """ + :param sequence_number: The ordinal of this object during + one particular creation run. This is used to detect (guess, really) + when we have entered the trash can's deferred deallocation. + """ + self.i = sequence_number + Dealloc.CREATED += 1 + + def __del__(self): + if self.i == TRASH_UNWIND_LEVEL and not self.SPAWNED: + Dealloc.SPAWNED = greenlet.getcurrent() + other = Dealloc.BG_GLET = greenlet.greenlet(background_greenlet) + x = other.switch() + assert x == 42 + # It's important that we don't switch back to the greenlet, + # we leave it hanging there in an incomplete state. But we don't let it + # get collected, either. If we complete it now, while we're still + # in the scope of the initial trash can, things work out and we + # don't see the problem. We need this greenlet to complete + # at some point in the future, after we've exited this trash can invocation. + del other + elif self.i == 40 and greenlet.getcurrent() is not main: + Dealloc.BG_RAN = True + try: + main.switch(42) + except greenlet.GreenletExit as ex: + # We expect this; all references to us go away + # while we're still running, and we need to finish deleting + # ourself. + Dealloc.BG_RAN = type(ex) + del ex + + # Record the fact that we're dead last of all. This ensures that + # we actually get returned too. + Dealloc.DESTROYED += 1 + if greenlet.getcurrent() is not main: + Dealloc.DESTROYED_BG += 1 + + + def background_greenlet(): + # We direct through a second function, instead of + # directly calling ``make_some()``, so that we have complete + # control over when these objects are destroyed: we need them + # to be destroyed in the context of the background greenlet + t = make_some() + del t # Triggere deletion. + + def make_some(): + t = () + i = OBJECTS_PER_CONTAINER + while i: + # Nest the tuples; it's the recursion that gets us + # into trash. + t = (Dealloc(i), t) + i -= 1 + return t + + + some = make_some() + self.assertEqual(Dealloc.CREATED, OBJECTS_PER_CONTAINER) + self.assertEqual(Dealloc.DESTROYED, 0) + + # If we're going to crash, it should be on the following line. + # We only crash if ``assert()`` is enabled, of course. + del some + + # For non-debug builds of CPython, we won't crash. The best we can do is check + # the nesting level explicitly. + self.assertEqual(0, get_tstate_trash_delete_nesting()) + + # Discard this, raising GreenletExit into where it is waiting. + Dealloc.BG_GLET = None + # The same nesting level maintains. + self.assertEqual(0, get_tstate_trash_delete_nesting()) + + # We definitely cleaned some up in the background + self.assertGreater(Dealloc.DESTROYED_BG, 0) + + # Make sure all the cleanups happened. + self.assertIs(Dealloc.SPAWNED, main) + self.assertTrue(Dealloc.BG_RAN) + self.assertEqual(Dealloc.BG_RAN, greenlet.GreenletExit) + self.assertEqual(Dealloc.CREATED, Dealloc.DESTROYED ) + self.assertEqual(Dealloc.CREATED, OBJECTS_PER_CONTAINER * 2) + + import gc + gc.collect() + + +if __name__ == '__main__': + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_leaks.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_leaks.py new file mode 100644 index 0000000000000000000000000000000000000000..99da4ebe6a0a20e53b4aa073f6f1f95a66d2ab17 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_leaks.py @@ -0,0 +1,447 @@ +# -*- coding: utf-8 -*- +""" +Testing scenarios that may have leaked. +""" +from __future__ import print_function, absolute_import, division + +import sys +import gc + +import time +import weakref +import threading + + +import greenlet +from . import TestCase +from . import PY314 +from .leakcheck import fails_leakcheck +from .leakcheck import ignores_leakcheck +from .leakcheck import RUNNING_ON_MANYLINUX + +# pylint:disable=protected-access + +assert greenlet.GREENLET_USE_GC # Option to disable this was removed in 1.0 + +class HasFinalizerTracksInstances(object): + EXTANT_INSTANCES = set() + def __init__(self, msg): + self.msg = sys.intern(msg) + self.EXTANT_INSTANCES.add(id(self)) + def __del__(self): + self.EXTANT_INSTANCES.remove(id(self)) + def __repr__(self): + return "" % ( + id(self), self.msg + ) + @classmethod + def reset(cls): + cls.EXTANT_INSTANCES.clear() + + +class TestLeaks(TestCase): + + def test_arg_refs(self): + args = ('a', 'b', 'c') + refcount_before = sys.getrefcount(args) + # pylint:disable=unnecessary-lambda + g = greenlet.greenlet( + lambda *args: greenlet.getcurrent().parent.switch(*args)) + for _ in range(100): + g.switch(*args) + self.assertEqual(sys.getrefcount(args), refcount_before) + + def test_kwarg_refs(self): + kwargs = {} + self.assertEqual(sys.getrefcount(kwargs), 2 if not PY314 else 1) + # pylint:disable=unnecessary-lambda + g = greenlet.greenlet( + lambda **gkwargs: greenlet.getcurrent().parent.switch(**gkwargs)) + for _ in range(100): + g.switch(**kwargs) + # Python 3.14 elides reference counting operations + # in some cases. See https://github.com/python/cpython/pull/130708 + self.assertEqual(sys.getrefcount(kwargs), 2 if not PY314 else 1) + + + @staticmethod + def __recycle_threads(): + # By introducing a thread that does sleep we allow other threads, + # that have triggered their __block condition, but did not have a + # chance to deallocate their thread state yet, to finally do so. + # The way it works is by requiring a GIL switch (different thread), + # which does a GIL release (sleep), which might do a GIL switch + # to finished threads and allow them to clean up. + def worker(): + time.sleep(0.001) + t = threading.Thread(target=worker) + t.start() + time.sleep(0.001) + t.join(10) + + def test_threaded_leak(self): + gg = [] + def worker(): + # only main greenlet present + gg.append(weakref.ref(greenlet.getcurrent())) + for _ in range(2): + t = threading.Thread(target=worker) + t.start() + t.join(10) + del t + greenlet.getcurrent() # update ts_current + self.__recycle_threads() + greenlet.getcurrent() # update ts_current + gc.collect() + greenlet.getcurrent() # update ts_current + for g in gg: + self.assertIsNone(g()) + + def test_threaded_adv_leak(self): + gg = [] + def worker(): + # main and additional *finished* greenlets + ll = greenlet.getcurrent().ll = [] + def additional(): + ll.append(greenlet.getcurrent()) + for _ in range(2): + greenlet.greenlet(additional).switch() + gg.append(weakref.ref(greenlet.getcurrent())) + for _ in range(2): + t = threading.Thread(target=worker) + t.start() + t.join(10) + del t + greenlet.getcurrent() # update ts_current + self.__recycle_threads() + greenlet.getcurrent() # update ts_current + gc.collect() + greenlet.getcurrent() # update ts_current + for g in gg: + self.assertIsNone(g()) + + def assertClocksUsed(self): + used = greenlet._greenlet.get_clocks_used_doing_optional_cleanup() + self.assertGreaterEqual(used, 0) + # we don't lose the value + greenlet._greenlet.enable_optional_cleanup(True) + used2 = greenlet._greenlet.get_clocks_used_doing_optional_cleanup() + self.assertEqual(used, used2) + self.assertGreater(greenlet._greenlet.CLOCKS_PER_SEC, 1) + + def _check_issue251(self, + manually_collect_background=True, + explicit_reference_to_switch=False): + # See https://github.com/python-greenlet/greenlet/issues/251 + # Killing a greenlet (probably not the main one) + # in one thread from another thread would + # result in leaking a list (the ts_delkey list). + # We no longer use lists to hold that stuff, though. + + # For the test to be valid, even empty lists have to be tracked by the + # GC + + assert gc.is_tracked([]) + HasFinalizerTracksInstances.reset() + greenlet.getcurrent() + greenlets_before = self.count_objects(greenlet.greenlet, exact_kind=False) + + background_glet_running = threading.Event() + background_glet_killed = threading.Event() + background_greenlets = [] + + # XXX: Switching this to a greenlet subclass that overrides + # run results in all callers failing the leaktest; that + # greenlet instance is leaked. There's a bound method for + # run() living on the stack of the greenlet in g_initialstub, + # and since we don't manually switch back to the background + # greenlet to let it "fall off the end" and exit the + # g_initialstub function, it never gets cleaned up. Making the + # garbage collector aware of this bound method (making it an + # attribute of the greenlet structure and traversing into it) + # doesn't help, for some reason. + def background_greenlet(): + # Throw control back to the main greenlet. + jd = HasFinalizerTracksInstances("DELETING STACK OBJECT") + greenlet._greenlet.set_thread_local( + 'test_leaks_key', + HasFinalizerTracksInstances("DELETING THREAD STATE")) + # Explicitly keeping 'switch' in a local variable + # breaks this test in all versions + if explicit_reference_to_switch: + s = greenlet.getcurrent().parent.switch + s([jd]) + else: + greenlet.getcurrent().parent.switch([jd]) + + bg_main_wrefs = [] + + def background_thread(): + glet = greenlet.greenlet(background_greenlet) + bg_main_wrefs.append(weakref.ref(glet.parent)) + + background_greenlets.append(glet) + glet.switch() # Be sure it's active. + # Control is ours again. + del glet # Delete one reference from the thread it runs in. + background_glet_running.set() + background_glet_killed.wait(10) + + # To trigger the background collection of the dead + # greenlet, thus clearing out the contents of the list, we + # need to run some APIs. See issue 252. + if manually_collect_background: + greenlet.getcurrent() + + + t = threading.Thread(target=background_thread) + t.start() + background_glet_running.wait(10) + greenlet.getcurrent() + lists_before = self.count_objects(list, exact_kind=True) + + assert len(background_greenlets) == 1 + self.assertFalse(background_greenlets[0].dead) + # Delete the last reference to the background greenlet + # from a different thread. This puts it in the background thread's + # ts_delkey list. + del background_greenlets[:] + background_glet_killed.set() + + # Now wait for the background thread to die. + t.join(10) + del t + # As part of the fix for 252, we need to cycle the ceval.c + # interpreter loop to be sure it has had a chance to process + # the pending call. + self.wait_for_pending_cleanups() + + lists_after = self.count_objects(list, exact_kind=True) + greenlets_after = self.count_objects(greenlet.greenlet, exact_kind=False) + + # On 2.7, we observe that lists_after is smaller than + # lists_before. No idea what lists got cleaned up. All the + # Python 3 versions match exactly. + self.assertLessEqual(lists_after, lists_before) + # On versions after 3.6, we've successfully cleaned up the + # greenlet references thanks to the internal "vectorcall" + # protocol; prior to that, there is a reference path through + # the ``greenlet.switch`` method still on the stack that we + # can't reach to clean up. The C code goes through terrific + # lengths to clean that up. + if not explicit_reference_to_switch \ + and greenlet._greenlet.get_clocks_used_doing_optional_cleanup() is not None: + # If cleanup was disabled, though, we may not find it. + self.assertEqual(greenlets_after, greenlets_before) + if manually_collect_background: + # TODO: Figure out how to make this work! + # The one on the stack is still leaking somehow + # in the non-manually-collect state. + self.assertEqual(HasFinalizerTracksInstances.EXTANT_INSTANCES, set()) + else: + # The explicit reference prevents us from collecting it + # and it isn't always found by the GC either for some + # reason. The entire frame is leaked somehow, on some + # platforms (e.g., MacPorts builds of Python (all + # versions!)), but not on other platforms (the linux and + # windows builds on GitHub actions and Appveyor). So we'd + # like to write a test that proves that the main greenlet + # sticks around, and we can on my machine (macOS 11.6, + # MacPorts builds of everything) but we can't write that + # same test on other platforms. However, hopefully iteration + # done by leakcheck will find it. + pass + + if greenlet._greenlet.get_clocks_used_doing_optional_cleanup() is not None: + self.assertClocksUsed() + + def test_issue251_killing_cross_thread_leaks_list(self): + self._check_issue251() + + def test_issue251_with_cleanup_disabled(self): + greenlet._greenlet.enable_optional_cleanup(False) + try: + self._check_issue251() + finally: + greenlet._greenlet.enable_optional_cleanup(True) + + @fails_leakcheck + def test_issue251_issue252_need_to_collect_in_background(self): + # Between greenlet 1.1.2 and the next version, this was still + # failing because the leak of the list still exists when we + # don't call a greenlet API before exiting the thread. The + # proximate cause is that neither of the two greenlets from + # the background thread are actually being destroyed, even + # though the GC is in fact visiting both objects. It's not + # clear where that leak is? For some reason the thread-local + # dict holding it isn't being cleaned up. + # + # The leak, I think, is in the CPYthon internal function that + # calls into green_switch(). The argument tuple is still on + # the C stack somewhere and can't be reached? That doesn't + # make sense, because the tuple should be collectable when + # this object goes away. + # + # Note that this test sometimes spuriously passes on Linux, + # for some reason, but I've never seen it pass on macOS. + self._check_issue251(manually_collect_background=False) + + @fails_leakcheck + def test_issue251_issue252_need_to_collect_in_background_cleanup_disabled(self): + self.expect_greenlet_leak = True + greenlet._greenlet.enable_optional_cleanup(False) + try: + self._check_issue251(manually_collect_background=False) + finally: + greenlet._greenlet.enable_optional_cleanup(True) + + @fails_leakcheck + def test_issue251_issue252_explicit_reference_not_collectable(self): + self._check_issue251( + manually_collect_background=False, + explicit_reference_to_switch=True) + + UNTRACK_ATTEMPTS = 100 + + def _only_test_some_versions(self): + # We're only looking for this problem specifically on 3.11, + # and this set of tests is relatively fragile, depending on + # OS and memory management details. So we want to run it on 3.11+ + # (obviously) but not every older 3.x version in order to reduce + # false negatives. At the moment, those false results seem to have + # resolved, so we are actually running this on 3.8+ + assert sys.version_info[0] >= 3 + if sys.version_info[:2] < (3, 8): + self.skipTest('Only observed on 3.11') + if RUNNING_ON_MANYLINUX: + self.skipTest("Slow and not worth repeating here") + + @ignores_leakcheck + # Because we're just trying to track raw memory, not objects, and running + # the leakcheck makes an already slow test slower. + def test_untracked_memory_doesnt_increase(self): + # See https://github.com/gevent/gevent/issues/1924 + # and https://github.com/python-greenlet/greenlet/issues/328 + self._only_test_some_versions() + def f(): + return 1 + + ITER = 10000 + def run_it(): + for _ in range(ITER): + greenlet.greenlet(f).switch() + + # Establish baseline + for _ in range(3): + run_it() + + # uss: (Linux, macOS, Windows): aka "Unique Set Size", this is + # the memory which is unique to a process and which would be + # freed if the process was terminated right now. + uss_before = self.get_process_uss() + + for count in range(self.UNTRACK_ATTEMPTS): + uss_before = max(uss_before, self.get_process_uss()) + run_it() + + uss_after = self.get_process_uss() + if uss_after <= uss_before and count > 1: + break + + self.assertLessEqual(uss_after, uss_before) + + def _check_untracked_memory_thread(self, deallocate_in_thread=True): + self._only_test_some_versions() + # Like the above test, but what if there are a bunch of + # unfinished greenlets in a thread that dies? + # Does it matter if we deallocate in the thread or not? + EXIT_COUNT = [0] + + def f(): + try: + greenlet.getcurrent().parent.switch() + except greenlet.GreenletExit: + EXIT_COUNT[0] += 1 + raise + return 1 + + ITER = 10000 + def run_it(): + glets = [] + for _ in range(ITER): + # Greenlet starts, switches back to us. + # We keep a strong reference to the greenlet though so it doesn't + # get a GreenletExit exception. + g = greenlet.greenlet(f) + glets.append(g) + g.switch() + + return glets + + test = self + + class ThreadFunc: + uss_before = uss_after = 0 + glets = () + ITER = 2 + def __call__(self): + self.uss_before = test.get_process_uss() + + for _ in range(self.ITER): + self.glets += tuple(run_it()) + + for g in self.glets: + test.assertIn('suspended active', str(g)) + # Drop them. + if deallocate_in_thread: + self.glets = () + self.uss_after = test.get_process_uss() + + # Establish baseline + uss_before = uss_after = None + for count in range(self.UNTRACK_ATTEMPTS): + EXIT_COUNT[0] = 0 + thread_func = ThreadFunc() + t = threading.Thread(target=thread_func) + t.start() + t.join(30) + self.assertFalse(t.is_alive()) + + if uss_before is None: + uss_before = thread_func.uss_before + + uss_before = max(uss_before, thread_func.uss_before) + if deallocate_in_thread: + self.assertEqual(thread_func.glets, ()) + self.assertEqual(EXIT_COUNT[0], ITER * thread_func.ITER) + + del thread_func # Deallocate the greenlets; but this won't raise into them + del t + if not deallocate_in_thread: + self.assertEqual(EXIT_COUNT[0], 0) + if deallocate_in_thread: + self.wait_for_pending_cleanups() + + uss_after = self.get_process_uss() + # See if we achieve a non-growth state at some point. Break when we do. + if uss_after <= uss_before and count > 1: + break + + self.wait_for_pending_cleanups() + uss_after = self.get_process_uss() + self.assertLessEqual(uss_after, uss_before, "after attempts %d" % (count,)) + + @ignores_leakcheck + # Because we're just trying to track raw memory, not objects, and running + # the leakcheck makes an already slow test slower. + def test_untracked_memory_doesnt_increase_unfinished_thread_dealloc_in_thread(self): + self._check_untracked_memory_thread(deallocate_in_thread=True) + + @ignores_leakcheck + # Because the main greenlets from the background threads do not exit in a timely fashion, + # we fail the object-based leakchecks. + def test_untracked_memory_doesnt_increase_unfinished_thread_dealloc_in_main(self): + self._check_untracked_memory_thread(deallocate_in_thread=False) + +if __name__ == '__main__': + __import__('unittest').main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_stack_saved.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_stack_saved.py new file mode 100644 index 0000000000000000000000000000000000000000..b362bf95a2d476b4fee2ff49cd7a9c4b53362fb5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_stack_saved.py @@ -0,0 +1,19 @@ +import greenlet +from . import TestCase + + +class Test(TestCase): + + def test_stack_saved(self): + main = greenlet.getcurrent() + self.assertEqual(main._stack_saved, 0) + + def func(): + main.switch(main._stack_saved) + + g = greenlet.greenlet(func) + x = g.switch() + self.assertGreater(x, 0) + self.assertGreater(g._stack_saved, 0) + g.switch() + self.assertEqual(g._stack_saved, 0) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_throw.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_throw.py new file mode 100644 index 0000000000000000000000000000000000000000..f4f9a140293d5a09b4503687d835c8e5cc9ad30d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_throw.py @@ -0,0 +1,128 @@ +import sys + + +from greenlet import greenlet +from . import TestCase + +def switch(*args): + return greenlet.getcurrent().parent.switch(*args) + + +class ThrowTests(TestCase): + def test_class(self): + def f(): + try: + switch("ok") + except RuntimeError: + switch("ok") + return + switch("fail") + g = greenlet(f) + res = g.switch() + self.assertEqual(res, "ok") + res = g.throw(RuntimeError) + self.assertEqual(res, "ok") + + def test_val(self): + def f(): + try: + switch("ok") + except RuntimeError: + val = sys.exc_info()[1] + if str(val) == "ciao": + switch("ok") + return + switch("fail") + + g = greenlet(f) + res = g.switch() + self.assertEqual(res, "ok") + res = g.throw(RuntimeError("ciao")) + self.assertEqual(res, "ok") + + g = greenlet(f) + res = g.switch() + self.assertEqual(res, "ok") + res = g.throw(RuntimeError, "ciao") + self.assertEqual(res, "ok") + + def test_kill(self): + def f(): + switch("ok") + switch("fail") + g = greenlet(f) + res = g.switch() + self.assertEqual(res, "ok") + res = g.throw() + self.assertTrue(isinstance(res, greenlet.GreenletExit)) + self.assertTrue(g.dead) + res = g.throw() # immediately eaten by the already-dead greenlet + self.assertTrue(isinstance(res, greenlet.GreenletExit)) + + def test_throw_goes_to_original_parent(self): + main = greenlet.getcurrent() + + def f1(): + try: + main.switch("f1 ready to catch") + except IndexError: + return "caught" + return "normal exit" + + def f2(): + main.switch("from f2") + + g1 = greenlet(f1) + g2 = greenlet(f2, parent=g1) + with self.assertRaises(IndexError): + g2.throw(IndexError) + self.assertTrue(g2.dead) + self.assertTrue(g1.dead) + + g1 = greenlet(f1) + g2 = greenlet(f2, parent=g1) + res = g1.switch() + self.assertEqual(res, "f1 ready to catch") + res = g2.throw(IndexError) + self.assertEqual(res, "caught") + self.assertTrue(g2.dead) + self.assertTrue(g1.dead) + + g1 = greenlet(f1) + g2 = greenlet(f2, parent=g1) + res = g1.switch() + self.assertEqual(res, "f1 ready to catch") + res = g2.switch() + self.assertEqual(res, "from f2") + res = g2.throw(IndexError) + self.assertEqual(res, "caught") + self.assertTrue(g2.dead) + self.assertTrue(g1.dead) + + def test_non_traceback_param(self): + with self.assertRaises(TypeError) as exc: + greenlet.getcurrent().throw( + Exception, + Exception(), + self + ) + self.assertEqual(str(exc.exception), + "throw() third argument must be a traceback object") + + def test_instance_of_wrong_type(self): + with self.assertRaises(TypeError) as exc: + greenlet.getcurrent().throw( + Exception(), + BaseException() + ) + + self.assertEqual(str(exc.exception), + "instance exception may not have a separate value") + + def test_not_throwable(self): + with self.assertRaises(TypeError) as exc: + greenlet.getcurrent().throw( + "abc" + ) + self.assertEqual(str(exc.exception), + "exceptions must be classes, or instances, not str") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_tracing.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_tracing.py new file mode 100644 index 0000000000000000000000000000000000000000..c044d4b6479b58b354887b921b0ec748881f476f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_tracing.py @@ -0,0 +1,291 @@ +from __future__ import print_function +import sys +import greenlet +import unittest + +from . import TestCase +from . import PY312 + +# https://discuss.python.org/t/cpython-3-12-greenlet-and-tracing-profiling-how-to-not-crash-and-get-correct-results/33144/2 +DEBUG_BUILD_PY312 = ( + PY312 and hasattr(sys, 'gettotalrefcount'), + "Broken on debug builds of Python 3.12" +) + +class SomeError(Exception): + pass + +class GreenletTracer(object): + oldtrace = None + + def __init__(self, error_on_trace=False): + self.actions = [] + self.error_on_trace = error_on_trace + + def __call__(self, *args): + self.actions.append(args) + if self.error_on_trace: + raise SomeError + + def __enter__(self): + self.oldtrace = greenlet.settrace(self) + return self.actions + + def __exit__(self, *args): + greenlet.settrace(self.oldtrace) + + +class TestGreenletTracing(TestCase): + """ + Tests of ``greenlet.settrace()`` + """ + + def test_a_greenlet_tracing(self): + main = greenlet.getcurrent() + def dummy(): + pass + def dummyexc(): + raise SomeError() + + with GreenletTracer() as actions: + g1 = greenlet.greenlet(dummy) + g1.switch() + g2 = greenlet.greenlet(dummyexc) + self.assertRaises(SomeError, g2.switch) + + self.assertEqual(actions, [ + ('switch', (main, g1)), + ('switch', (g1, main)), + ('switch', (main, g2)), + ('throw', (g2, main)), + ]) + + def test_b_exception_disables_tracing(self): + main = greenlet.getcurrent() + def dummy(): + main.switch() + g = greenlet.greenlet(dummy) + g.switch() + with GreenletTracer(error_on_trace=True) as actions: + self.assertRaises(SomeError, g.switch) + self.assertEqual(greenlet.gettrace(), None) + + self.assertEqual(actions, [ + ('switch', (main, g)), + ]) + + def test_set_same_tracer_twice(self): + # https://github.com/python-greenlet/greenlet/issues/332 + # Our logic in asserting that the tracefunction should + # gain a reference was incorrect if the same tracefunction was set + # twice. + tracer = GreenletTracer() + with tracer: + greenlet.settrace(tracer) + + +class PythonTracer(object): + oldtrace = None + + def __init__(self): + self.actions = [] + + def __call__(self, frame, event, arg): + # Record the co_name so we have an idea what function we're in. + self.actions.append((event, frame.f_code.co_name)) + + def __enter__(self): + self.oldtrace = sys.setprofile(self) + return self.actions + + def __exit__(self, *args): + sys.setprofile(self.oldtrace) + +def tpt_callback(): + return 42 + +class TestPythonTracing(TestCase): + """ + Tests of the interaction of ``sys.settrace()`` + with greenlet facilities. + + NOTE: Most of this is probably CPython specific. + """ + + maxDiff = None + + def test_trace_events_trivial(self): + with PythonTracer() as actions: + tpt_callback() + # If we use the sys.settrace instead of setprofile, we get + # this: + + # self.assertEqual(actions, [ + # ('call', 'tpt_callback'), + # ('call', '__exit__'), + # ]) + + self.assertEqual(actions, [ + ('return', '__enter__'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('call', '__exit__'), + ('c_call', '__exit__'), + ]) + + def _trace_switch(self, glet): + with PythonTracer() as actions: + glet.switch() + return actions + + def _check_trace_events_func_already_set(self, glet): + actions = self._trace_switch(glet) + self.assertEqual(actions, [ + ('return', '__enter__'), + ('c_call', '_trace_switch'), + ('call', 'run'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('return', 'run'), + ('c_return', '_trace_switch'), + ('call', '__exit__'), + ('c_call', '__exit__'), + ]) + + def test_trace_events_into_greenlet_func_already_set(self): + def run(): + return tpt_callback() + + self._check_trace_events_func_already_set(greenlet.greenlet(run)) + + def test_trace_events_into_greenlet_subclass_already_set(self): + class X(greenlet.greenlet): + def run(self): + return tpt_callback() + self._check_trace_events_func_already_set(X()) + + def _check_trace_events_from_greenlet_sets_profiler(self, g, tracer): + g.switch() + tpt_callback() + tracer.__exit__() + self.assertEqual(tracer.actions, [ + ('return', '__enter__'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('return', 'run'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('call', '__exit__'), + ('c_call', '__exit__'), + ]) + + + def test_trace_events_from_greenlet_func_sets_profiler(self): + tracer = PythonTracer() + def run(): + tracer.__enter__() + return tpt_callback() + + self._check_trace_events_from_greenlet_sets_profiler(greenlet.greenlet(run), + tracer) + + def test_trace_events_from_greenlet_subclass_sets_profiler(self): + tracer = PythonTracer() + class X(greenlet.greenlet): + def run(self): + tracer.__enter__() + return tpt_callback() + + self._check_trace_events_from_greenlet_sets_profiler(X(), tracer) + + @unittest.skipIf(*DEBUG_BUILD_PY312) + def test_trace_events_multiple_greenlets_switching(self): + tracer = PythonTracer() + + g1 = None + g2 = None + + def g1_run(): + tracer.__enter__() + tpt_callback() + g2.switch() + tpt_callback() + return 42 + + def g2_run(): + tpt_callback() + tracer.__exit__() + tpt_callback() + g1.switch() + + g1 = greenlet.greenlet(g1_run) + g2 = greenlet.greenlet(g2_run) + + x = g1.switch() + self.assertEqual(x, 42) + tpt_callback() # ensure not in the trace + self.assertEqual(tracer.actions, [ + ('return', '__enter__'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('c_call', 'g1_run'), + ('call', 'g2_run'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('call', '__exit__'), + ('c_call', '__exit__'), + ]) + + @unittest.skipIf(*DEBUG_BUILD_PY312) + def test_trace_events_multiple_greenlets_switching_siblings(self): + # Like the first version, but get both greenlets running first + # as "siblings" and then establish the tracing. + tracer = PythonTracer() + + g1 = None + g2 = None + + def g1_run(): + greenlet.getcurrent().parent.switch() + tracer.__enter__() + tpt_callback() + g2.switch() + tpt_callback() + return 42 + + def g2_run(): + greenlet.getcurrent().parent.switch() + + tpt_callback() + tracer.__exit__() + tpt_callback() + g1.switch() + + g1 = greenlet.greenlet(g1_run) + g2 = greenlet.greenlet(g2_run) + + # Start g1 + g1.switch() + # And it immediately returns control to us. + # Start g2 + g2.switch() + # Which also returns. Now kick of the real part of the + # test. + x = g1.switch() + self.assertEqual(x, 42) + + tpt_callback() # ensure not in the trace + self.assertEqual(tracer.actions, [ + ('return', '__enter__'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('c_call', 'g1_run'), + ('call', 'tpt_callback'), + ('return', 'tpt_callback'), + ('call', '__exit__'), + ('c_call', '__exit__'), + ]) + + +if __name__ == '__main__': + unittest.main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_version.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_version.py new file mode 100644 index 0000000000000000000000000000000000000000..96c17cf1700fd501df2113713307251fff8d095c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_version.py @@ -0,0 +1,41 @@ +#! /usr/bin/env python +from __future__ import absolute_import +from __future__ import print_function + +import sys +import os +from unittest import TestCase as NonLeakingTestCase + +import greenlet + +# No reason to run this multiple times under leakchecks, +# it doesn't do anything. +class VersionTests(NonLeakingTestCase): + def test_version(self): + def find_dominating_file(name): + if os.path.exists(name): + return name + + tried = [] + here = os.path.abspath(os.path.dirname(__file__)) + for i in range(10): + up = ['..'] * i + path = [here] + up + [name] + fname = os.path.join(*path) + fname = os.path.abspath(fname) + tried.append(fname) + if os.path.exists(fname): + return fname + raise AssertionError("Could not find file " + name + "; checked " + str(tried)) + + try: + setup_py = find_dominating_file('setup.py') + except AssertionError as e: + self.skipTest("Unable to find setup.py; must be out of tree. " + str(e)) + + + invoke_setup = "%s %s --version" % (sys.executable, setup_py) + with os.popen(invoke_setup) as f: + sversion = f.read().strip() + + self.assertEqual(sversion, greenlet.__version__) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_weakref.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_weakref.py new file mode 100644 index 0000000000000000000000000000000000000000..05a38a7f103c082289cd65f95ace5695bc3a8842 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/greenlet/tests/test_weakref.py @@ -0,0 +1,35 @@ +import gc +import weakref + + +import greenlet +from . import TestCase + +class WeakRefTests(TestCase): + def test_dead_weakref(self): + def _dead_greenlet(): + g = greenlet.greenlet(lambda: None) + g.switch() + return g + o = weakref.ref(_dead_greenlet()) + gc.collect() + self.assertEqual(o(), None) + + def test_inactive_weakref(self): + o = weakref.ref(greenlet.greenlet()) + gc.collect() + self.assertEqual(o(), None) + + def test_dealloc_weakref(self): + seen = [] + def worker(): + try: + greenlet.getcurrent().parent.switch() + finally: + seen.append(g()) + g = greenlet.greenlet(worker) + g.switch() + g2 = greenlet.greenlet(lambda: None, g) + g = weakref.ref(g2) + g2 = None + self.assertEqual(seen, [None]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.py new file mode 100644 index 0000000000000000000000000000000000000000..89579d174540d86cd8cfa27fcbf672d6a39c8f82 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.py @@ -0,0 +1,170 @@ +# This file is generated by numpy's build process +# It contains system_info results at the time of building this package. +from enum import Enum +from numpy._core._multiarray_umath import ( + __cpu_features__, + __cpu_baseline__, + __cpu_dispatch__, +) + +__all__ = ["show_config"] +_built_with_meson = True + + +class DisplayModes(Enum): + stdout = "stdout" + dicts = "dicts" + + +def _cleanup(d): + """ + Removes empty values in a `dict` recursively + This ensures we remove values that Meson could not provide to CONFIG + """ + if isinstance(d, dict): + return {k: _cleanup(v) for k, v in d.items() if v and _cleanup(v)} + else: + return d + + +CONFIG = _cleanup( + { + "Compilers": { + "c": { + "name": "gcc", + "linker": r"ld.bfd", + "version": "10.2.1", + "commands": r"cc", + "args": r"", + "linker args": r"", + }, + "cython": { + "name": "cython", + "linker": r"cython", + "version": "3.1.0", + "commands": r"cython", + "args": r"", + "linker args": r"", + }, + "c++": { + "name": "gcc", + "linker": r"ld.bfd", + "version": "10.2.1", + "commands": r"c++", + "args": r"", + "linker args": r"", + }, + }, + "Machine Information": { + "host": { + "cpu": "x86_64", + "family": "x86_64", + "endian": "little", + "system": "linux", + }, + "build": { + "cpu": "x86_64", + "family": "x86_64", + "endian": "little", + "system": "linux", + }, + "cross-compiled": bool("False".lower().replace("false", "")), + }, + "Build Dependencies": { + "blas": { + "name": "scipy-openblas", + "found": bool("True".lower().replace("false", "")), + "version": "0.3.29", + "detection method": "pkgconfig", + "include directory": r"/opt/_internal/cpython-3.10.15/lib/python3.10/site-packages/scipy_openblas64/include", + "lib directory": r"/opt/_internal/cpython-3.10.15/lib/python3.10/site-packages/scipy_openblas64/lib", + "openblas configuration": r"OpenBLAS 0.3.29 USE64BITINT DYNAMIC_ARCH NO_AFFINITY Haswell MAX_THREADS=64", + "pc file directory": r"/project/.openblas", + }, + "lapack": { + "name": "scipy-openblas", + "found": bool("True".lower().replace("false", "")), + "version": "0.3.29", + "detection method": "pkgconfig", + "include directory": r"/opt/_internal/cpython-3.10.15/lib/python3.10/site-packages/scipy_openblas64/include", + "lib directory": r"/opt/_internal/cpython-3.10.15/lib/python3.10/site-packages/scipy_openblas64/lib", + "openblas configuration": r"OpenBLAS 0.3.29 USE64BITINT DYNAMIC_ARCH NO_AFFINITY Haswell MAX_THREADS=64", + "pc file directory": r"/project/.openblas", + }, + }, + "Python Information": { + "path": r"/tmp/build-env-a8ncef9o/bin/python", + "version": "3.10", + }, + "SIMD Extensions": { + "baseline": __cpu_baseline__, + "found": [ + feature for feature in __cpu_dispatch__ if __cpu_features__[feature] + ], + "not found": [ + feature for feature in __cpu_dispatch__ if not __cpu_features__[feature] + ], + }, + } +) + + +def _check_pyyaml(): + import yaml + + return yaml + + +def show(mode=DisplayModes.stdout.value): + """ + Show libraries and system information on which NumPy was built + and is being used + + Parameters + ---------- + mode : {`'stdout'`, `'dicts'`}, optional. + Indicates how to display the config information. + `'stdout'` prints to console, `'dicts'` returns a dictionary + of the configuration. + + Returns + ------- + out : {`dict`, `None`} + If mode is `'dicts'`, a dict is returned, else None + + See Also + -------- + get_include : Returns the directory containing NumPy C + header files. + + Notes + ----- + 1. The `'stdout'` mode will give more readable + output if ``pyyaml`` is installed + + """ + if mode == DisplayModes.stdout.value: + try: # Non-standard library, check import + yaml = _check_pyyaml() + + print(yaml.dump(CONFIG)) + except ModuleNotFoundError: + import warnings + import json + + warnings.warn("Install `pyyaml` for better output", stacklevel=1) + print(json.dumps(CONFIG, indent=2)) + elif mode == DisplayModes.dicts.value: + return CONFIG + else: + raise AttributeError( + f"Invalid `mode`, use one of: {', '.join([e.value for e in DisplayModes])}" + ) + + +def show_config(mode=DisplayModes.stdout.value): + return show(mode) + + +show_config.__doc__ = show.__doc__ +show_config.__module__ = "numpy" diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..bd01228a1cc85745bc08842c96c518621e4160c6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__config__.pyi @@ -0,0 +1,102 @@ +from enum import Enum +from types import ModuleType +from typing import Final, Literal as L, TypedDict, overload, type_check_only +from typing_extensions import NotRequired + +_CompilerConfigDictValue = TypedDict( + "_CompilerConfigDictValue", + { + "name": str, + "linker": str, + "version": str, + "commands": str, + "args": str, + "linker args": str, + }, +) +_CompilerConfigDict = TypedDict( + "_CompilerConfigDict", + { + "c": _CompilerConfigDictValue, + "cython": _CompilerConfigDictValue, + "c++": _CompilerConfigDictValue, + }, +) +_MachineInformationDict = TypedDict( + "_MachineInformationDict", + { + "host":_MachineInformationDictValue, + "build": _MachineInformationDictValue, + "cross-compiled": NotRequired[L[True]], + }, +) + +@type_check_only +class _MachineInformationDictValue(TypedDict): + cpu: str + family: str + endian: L["little", "big"] + system: str + +_BuildDependenciesDictValue = TypedDict( + "_BuildDependenciesDictValue", + { + "name": str, + "found": NotRequired[L[True]], + "version": str, + "include directory": str, + "lib directory": str, + "openblas configuration": str, + "pc file directory": str, + }, +) + +class _BuildDependenciesDict(TypedDict): + blas: _BuildDependenciesDictValue + lapack: _BuildDependenciesDictValue + +class _PythonInformationDict(TypedDict): + path: str + version: str + +_SIMDExtensionsDict = TypedDict( + "_SIMDExtensionsDict", + { + "baseline": list[str], + "found": list[str], + "not found": list[str], + }, +) + +_ConfigDict = TypedDict( + "_ConfigDict", + { + "Compilers": _CompilerConfigDict, + "Machine Information": _MachineInformationDict, + "Build Dependencies": _BuildDependenciesDict, + "Python Information": _PythonInformationDict, + "SIMD Extensions": _SIMDExtensionsDict, + }, +) + +### + +__all__ = ["show_config"] + +CONFIG: Final[_ConfigDict] = ... + +class DisplayModes(Enum): + stdout = "stdout" + dicts = "dicts" + +def _check_pyyaml() -> ModuleType: ... + +@overload +def show(mode: L["stdout"] = "stdout") -> None: ... +@overload +def show(mode: L["dicts"]) -> _ConfigDict: ... + +@overload +def show_config(mode: L["stdout"] = "stdout") -> None: ... +@overload +def show_config(mode: L["dicts"]) -> _ConfigDict: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.cython-30.pxd b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.cython-30.pxd new file mode 100644 index 0000000000000000000000000000000000000000..0728aad4829f01f8277545facb2f2cfd0cfcc18e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.cython-30.pxd @@ -0,0 +1,1250 @@ +# NumPy static imports for Cython >= 3.0 +# +# If any of the PyArray_* functions are called, import_array must be +# called first. This is done automatically by Cython 3.0+ if a call +# is not detected inside of the module. +# +# Author: Dag Sverre Seljebotn +# + +from cpython.ref cimport Py_INCREF +from cpython.object cimport PyObject, PyTypeObject, PyObject_TypeCheck +cimport libc.stdio as stdio + + +cdef extern from *: + # Leave a marker that the NumPy declarations came from NumPy itself and not from Cython. + # See https://github.com/cython/cython/issues/3573 + """ + /* Using NumPy API declarations from "numpy/__init__.cython-30.pxd" */ + """ + + +cdef extern from "numpy/arrayobject.h": + # It would be nice to use size_t and ssize_t, but ssize_t has special + # implicit conversion rules, so just use "long". + # Note: The actual type only matters for Cython promotion, so long + # is closer than int, but could lead to incorrect promotion. + # (Not to worrying, and always the status-quo.) + ctypedef signed long npy_intp + ctypedef unsigned long npy_uintp + + ctypedef unsigned char npy_bool + + ctypedef signed char npy_byte + ctypedef signed short npy_short + ctypedef signed int npy_int + ctypedef signed long npy_long + ctypedef signed long long npy_longlong + + ctypedef unsigned char npy_ubyte + ctypedef unsigned short npy_ushort + ctypedef unsigned int npy_uint + ctypedef unsigned long npy_ulong + ctypedef unsigned long long npy_ulonglong + + ctypedef float npy_float + ctypedef double npy_double + ctypedef long double npy_longdouble + + ctypedef signed char npy_int8 + ctypedef signed short npy_int16 + ctypedef signed int npy_int32 + ctypedef signed long long npy_int64 + ctypedef signed long long npy_int96 + ctypedef signed long long npy_int128 + + ctypedef unsigned char npy_uint8 + ctypedef unsigned short npy_uint16 + ctypedef unsigned int npy_uint32 + ctypedef unsigned long long npy_uint64 + ctypedef unsigned long long npy_uint96 + ctypedef unsigned long long npy_uint128 + + ctypedef float npy_float32 + ctypedef double npy_float64 + ctypedef long double npy_float80 + ctypedef long double npy_float96 + ctypedef long double npy_float128 + + ctypedef struct npy_cfloat: + pass + + ctypedef struct npy_cdouble: + pass + + ctypedef struct npy_clongdouble: + pass + + ctypedef struct npy_complex64: + pass + + ctypedef struct npy_complex128: + pass + + ctypedef struct npy_complex160: + pass + + ctypedef struct npy_complex192: + pass + + ctypedef struct npy_complex256: + pass + + ctypedef struct PyArray_Dims: + npy_intp *ptr + int len + + + cdef enum NPY_TYPES: + NPY_BOOL + NPY_BYTE + NPY_UBYTE + NPY_SHORT + NPY_USHORT + NPY_INT + NPY_UINT + NPY_LONG + NPY_ULONG + NPY_LONGLONG + NPY_ULONGLONG + NPY_FLOAT + NPY_DOUBLE + NPY_LONGDOUBLE + NPY_CFLOAT + NPY_CDOUBLE + NPY_CLONGDOUBLE + NPY_OBJECT + NPY_STRING + NPY_UNICODE + NPY_VOID + NPY_DATETIME + NPY_TIMEDELTA + NPY_NTYPES_LEGACY + NPY_NOTYPE + + NPY_INT8 + NPY_INT16 + NPY_INT32 + NPY_INT64 + NPY_INT128 + NPY_INT256 + NPY_UINT8 + NPY_UINT16 + NPY_UINT32 + NPY_UINT64 + NPY_UINT128 + NPY_UINT256 + NPY_FLOAT16 + NPY_FLOAT32 + NPY_FLOAT64 + NPY_FLOAT80 + NPY_FLOAT96 + NPY_FLOAT128 + NPY_FLOAT256 + NPY_COMPLEX32 + NPY_COMPLEX64 + NPY_COMPLEX128 + NPY_COMPLEX160 + NPY_COMPLEX192 + NPY_COMPLEX256 + NPY_COMPLEX512 + + NPY_INTP + NPY_UINTP + NPY_DEFAULT_INT # Not a compile time constant (normally)! + + ctypedef enum NPY_ORDER: + NPY_ANYORDER + NPY_CORDER + NPY_FORTRANORDER + NPY_KEEPORDER + + ctypedef enum NPY_CASTING: + NPY_NO_CASTING + NPY_EQUIV_CASTING + NPY_SAFE_CASTING + NPY_SAME_KIND_CASTING + NPY_UNSAFE_CASTING + + ctypedef enum NPY_CLIPMODE: + NPY_CLIP + NPY_WRAP + NPY_RAISE + + ctypedef enum NPY_SCALARKIND: + NPY_NOSCALAR, + NPY_BOOL_SCALAR, + NPY_INTPOS_SCALAR, + NPY_INTNEG_SCALAR, + NPY_FLOAT_SCALAR, + NPY_COMPLEX_SCALAR, + NPY_OBJECT_SCALAR + + ctypedef enum NPY_SORTKIND: + NPY_QUICKSORT + NPY_HEAPSORT + NPY_MERGESORT + + ctypedef enum NPY_SEARCHSIDE: + NPY_SEARCHLEFT + NPY_SEARCHRIGHT + + enum: + # DEPRECATED since NumPy 1.7 ! Do not use in new code! + NPY_C_CONTIGUOUS + NPY_F_CONTIGUOUS + NPY_CONTIGUOUS + NPY_FORTRAN + NPY_OWNDATA + NPY_FORCECAST + NPY_ENSURECOPY + NPY_ENSUREARRAY + NPY_ELEMENTSTRIDES + NPY_ALIGNED + NPY_NOTSWAPPED + NPY_WRITEABLE + NPY_ARR_HAS_DESCR + + NPY_BEHAVED + NPY_BEHAVED_NS + NPY_CARRAY + NPY_CARRAY_RO + NPY_FARRAY + NPY_FARRAY_RO + NPY_DEFAULT + + NPY_IN_ARRAY + NPY_OUT_ARRAY + NPY_INOUT_ARRAY + NPY_IN_FARRAY + NPY_OUT_FARRAY + NPY_INOUT_FARRAY + + NPY_UPDATE_ALL + + enum: + # Added in NumPy 1.7 to replace the deprecated enums above. + NPY_ARRAY_C_CONTIGUOUS + NPY_ARRAY_F_CONTIGUOUS + NPY_ARRAY_OWNDATA + NPY_ARRAY_FORCECAST + NPY_ARRAY_ENSURECOPY + NPY_ARRAY_ENSUREARRAY + NPY_ARRAY_ELEMENTSTRIDES + NPY_ARRAY_ALIGNED + NPY_ARRAY_NOTSWAPPED + NPY_ARRAY_WRITEABLE + NPY_ARRAY_WRITEBACKIFCOPY + + NPY_ARRAY_BEHAVED + NPY_ARRAY_BEHAVED_NS + NPY_ARRAY_CARRAY + NPY_ARRAY_CARRAY_RO + NPY_ARRAY_FARRAY + NPY_ARRAY_FARRAY_RO + NPY_ARRAY_DEFAULT + + NPY_ARRAY_IN_ARRAY + NPY_ARRAY_OUT_ARRAY + NPY_ARRAY_INOUT_ARRAY + NPY_ARRAY_IN_FARRAY + NPY_ARRAY_OUT_FARRAY + NPY_ARRAY_INOUT_FARRAY + + NPY_ARRAY_UPDATE_ALL + + cdef enum: + NPY_MAXDIMS # 64 on NumPy 2.x and 32 on NumPy 1.x + NPY_RAVEL_AXIS # Used for functions like PyArray_Mean + + ctypedef void (*PyArray_VectorUnaryFunc)(void *, void *, npy_intp, void *, void *) + + ctypedef struct PyArray_ArrayDescr: + # shape is a tuple, but Cython doesn't support "tuple shape" + # inside a non-PyObject declaration, so we have to declare it + # as just a PyObject*. + PyObject* shape + + ctypedef struct PyArray_Descr: + pass + + ctypedef class numpy.dtype [object PyArray_Descr, check_size ignore]: + # Use PyDataType_* macros when possible, however there are no macros + # for accessing some of the fields, so some are defined. + cdef PyTypeObject* typeobj + cdef char kind + cdef char type + # Numpy sometimes mutates this without warning (e.g. it'll + # sometimes change "|" to "<" in shared dtype objects on + # little-endian machines). If this matters to you, use + # PyArray_IsNativeByteOrder(dtype.byteorder) instead of + # directly accessing this field. + cdef char byteorder + cdef int type_num + + @property + cdef inline npy_intp itemsize(self) noexcept nogil: + return PyDataType_ELSIZE(self) + + @property + cdef inline npy_intp alignment(self) noexcept nogil: + return PyDataType_ALIGNMENT(self) + + # Use fields/names with care as they may be NULL. You must check + # for this using PyDataType_HASFIELDS. + @property + cdef inline object fields(self): + return PyDataType_FIELDS(self) + + @property + cdef inline tuple names(self): + return PyDataType_NAMES(self) + + # Use PyDataType_HASSUBARRAY to test whether this field is + # valid (the pointer can be NULL). Most users should access + # this field via the inline helper method PyDataType_SHAPE. + @property + cdef inline PyArray_ArrayDescr* subarray(self) noexcept nogil: + return PyDataType_SUBARRAY(self) + + @property + cdef inline npy_uint64 flags(self) noexcept nogil: + """The data types flags.""" + return PyDataType_FLAGS(self) + + + ctypedef class numpy.flatiter [object PyArrayIterObject, check_size ignore]: + # Use through macros + pass + + ctypedef class numpy.broadcast [object PyArrayMultiIterObject, check_size ignore]: + + @property + cdef inline int numiter(self) noexcept nogil: + """The number of arrays that need to be broadcast to the same shape.""" + return PyArray_MultiIter_NUMITER(self) + + @property + cdef inline npy_intp size(self) noexcept nogil: + """The total broadcasted size.""" + return PyArray_MultiIter_SIZE(self) + + @property + cdef inline npy_intp index(self) noexcept nogil: + """The current (1-d) index into the broadcasted result.""" + return PyArray_MultiIter_INDEX(self) + + @property + cdef inline int nd(self) noexcept nogil: + """The number of dimensions in the broadcasted result.""" + return PyArray_MultiIter_NDIM(self) + + @property + cdef inline npy_intp* dimensions(self) noexcept nogil: + """The shape of the broadcasted result.""" + return PyArray_MultiIter_DIMS(self) + + @property + cdef inline void** iters(self) noexcept nogil: + """An array of iterator objects that holds the iterators for the arrays to be broadcast together. + On return, the iterators are adjusted for broadcasting.""" + return PyArray_MultiIter_ITERS(self) + + + ctypedef struct PyArrayObject: + # For use in situations where ndarray can't replace PyArrayObject*, + # like PyArrayObject**. + pass + + ctypedef class numpy.ndarray [object PyArrayObject, check_size ignore]: + cdef __cythonbufferdefaults__ = {"mode": "strided"} + + # NOTE: no field declarations since direct access is deprecated since NumPy 1.7 + # Instead, we use properties that map to the corresponding C-API functions. + + @property + cdef inline PyObject* base(self) noexcept nogil: + """Returns a borrowed reference to the object owning the data/memory. + """ + return PyArray_BASE(self) + + @property + cdef inline dtype descr(self): + """Returns an owned reference to the dtype of the array. + """ + return PyArray_DESCR(self) + + @property + cdef inline int ndim(self) noexcept nogil: + """Returns the number of dimensions in the array. + """ + return PyArray_NDIM(self) + + @property + cdef inline npy_intp *shape(self) noexcept nogil: + """Returns a pointer to the dimensions/shape of the array. + The number of elements matches the number of dimensions of the array (ndim). + Can return NULL for 0-dimensional arrays. + """ + return PyArray_DIMS(self) + + @property + cdef inline npy_intp *strides(self) noexcept nogil: + """Returns a pointer to the strides of the array. + The number of elements matches the number of dimensions of the array (ndim). + """ + return PyArray_STRIDES(self) + + @property + cdef inline npy_intp size(self) noexcept nogil: + """Returns the total size (in number of elements) of the array. + """ + return PyArray_SIZE(self) + + @property + cdef inline char* data(self) noexcept nogil: + """The pointer to the data buffer as a char*. + This is provided for legacy reasons to avoid direct struct field access. + For new code that needs this access, you probably want to cast the result + of `PyArray_DATA()` instead, which returns a 'void*'. + """ + return PyArray_BYTES(self) + + + int _import_array() except -1 + # A second definition so _import_array isn't marked as used when we use it here. + # Do not use - subject to change any time. + int __pyx_import_array "_import_array"() except -1 + + # + # Macros from ndarrayobject.h + # + bint PyArray_CHKFLAGS(ndarray m, int flags) nogil + bint PyArray_IS_C_CONTIGUOUS(ndarray arr) nogil + bint PyArray_IS_F_CONTIGUOUS(ndarray arr) nogil + bint PyArray_ISCONTIGUOUS(ndarray m) nogil + bint PyArray_ISWRITEABLE(ndarray m) nogil + bint PyArray_ISALIGNED(ndarray m) nogil + + int PyArray_NDIM(ndarray) nogil + bint PyArray_ISONESEGMENT(ndarray) nogil + bint PyArray_ISFORTRAN(ndarray) nogil + int PyArray_FORTRANIF(ndarray) nogil + + void* PyArray_DATA(ndarray) nogil + char* PyArray_BYTES(ndarray) nogil + + npy_intp* PyArray_DIMS(ndarray) nogil + npy_intp* PyArray_STRIDES(ndarray) nogil + npy_intp PyArray_DIM(ndarray, size_t) nogil + npy_intp PyArray_STRIDE(ndarray, size_t) nogil + + PyObject *PyArray_BASE(ndarray) nogil # returns borrowed reference! + PyArray_Descr *PyArray_DESCR(ndarray) nogil # returns borrowed reference to dtype! + PyArray_Descr *PyArray_DTYPE(ndarray) nogil # returns borrowed reference to dtype! NP 1.7+ alias for descr. + int PyArray_FLAGS(ndarray) nogil + void PyArray_CLEARFLAGS(ndarray, int flags) nogil # Added in NumPy 1.7 + void PyArray_ENABLEFLAGS(ndarray, int flags) nogil # Added in NumPy 1.7 + npy_intp PyArray_ITEMSIZE(ndarray) nogil + int PyArray_TYPE(ndarray arr) nogil + + object PyArray_GETITEM(ndarray arr, void *itemptr) + int PyArray_SETITEM(ndarray arr, void *itemptr, object obj) except -1 + + bint PyTypeNum_ISBOOL(int) nogil + bint PyTypeNum_ISUNSIGNED(int) nogil + bint PyTypeNum_ISSIGNED(int) nogil + bint PyTypeNum_ISINTEGER(int) nogil + bint PyTypeNum_ISFLOAT(int) nogil + bint PyTypeNum_ISNUMBER(int) nogil + bint PyTypeNum_ISSTRING(int) nogil + bint PyTypeNum_ISCOMPLEX(int) nogil + bint PyTypeNum_ISFLEXIBLE(int) nogil + bint PyTypeNum_ISUSERDEF(int) nogil + bint PyTypeNum_ISEXTENDED(int) nogil + bint PyTypeNum_ISOBJECT(int) nogil + + npy_intp PyDataType_ELSIZE(dtype) nogil + npy_intp PyDataType_ALIGNMENT(dtype) nogil + PyObject* PyDataType_METADATA(dtype) nogil + PyArray_ArrayDescr* PyDataType_SUBARRAY(dtype) nogil + PyObject* PyDataType_NAMES(dtype) nogil + PyObject* PyDataType_FIELDS(dtype) nogil + + bint PyDataType_ISBOOL(dtype) nogil + bint PyDataType_ISUNSIGNED(dtype) nogil + bint PyDataType_ISSIGNED(dtype) nogil + bint PyDataType_ISINTEGER(dtype) nogil + bint PyDataType_ISFLOAT(dtype) nogil + bint PyDataType_ISNUMBER(dtype) nogil + bint PyDataType_ISSTRING(dtype) nogil + bint PyDataType_ISCOMPLEX(dtype) nogil + bint PyDataType_ISFLEXIBLE(dtype) nogil + bint PyDataType_ISUSERDEF(dtype) nogil + bint PyDataType_ISEXTENDED(dtype) nogil + bint PyDataType_ISOBJECT(dtype) nogil + bint PyDataType_HASFIELDS(dtype) nogil + bint PyDataType_HASSUBARRAY(dtype) nogil + npy_uint64 PyDataType_FLAGS(dtype) nogil + + bint PyArray_ISBOOL(ndarray) nogil + bint PyArray_ISUNSIGNED(ndarray) nogil + bint PyArray_ISSIGNED(ndarray) nogil + bint PyArray_ISINTEGER(ndarray) nogil + bint PyArray_ISFLOAT(ndarray) nogil + bint PyArray_ISNUMBER(ndarray) nogil + bint PyArray_ISSTRING(ndarray) nogil + bint PyArray_ISCOMPLEX(ndarray) nogil + bint PyArray_ISFLEXIBLE(ndarray) nogil + bint PyArray_ISUSERDEF(ndarray) nogil + bint PyArray_ISEXTENDED(ndarray) nogil + bint PyArray_ISOBJECT(ndarray) nogil + bint PyArray_HASFIELDS(ndarray) nogil + + bint PyArray_ISVARIABLE(ndarray) nogil + + bint PyArray_SAFEALIGNEDCOPY(ndarray) nogil + bint PyArray_ISNBO(char) nogil # works on ndarray.byteorder + bint PyArray_IsNativeByteOrder(char) nogil # works on ndarray.byteorder + bint PyArray_ISNOTSWAPPED(ndarray) nogil + bint PyArray_ISBYTESWAPPED(ndarray) nogil + + bint PyArray_FLAGSWAP(ndarray, int) nogil + + bint PyArray_ISCARRAY(ndarray) nogil + bint PyArray_ISCARRAY_RO(ndarray) nogil + bint PyArray_ISFARRAY(ndarray) nogil + bint PyArray_ISFARRAY_RO(ndarray) nogil + bint PyArray_ISBEHAVED(ndarray) nogil + bint PyArray_ISBEHAVED_RO(ndarray) nogil + + + bint PyDataType_ISNOTSWAPPED(dtype) nogil + bint PyDataType_ISBYTESWAPPED(dtype) nogil + + bint PyArray_DescrCheck(object) + + bint PyArray_Check(object) + bint PyArray_CheckExact(object) + + # Cannot be supported due to out arg: + # bint PyArray_HasArrayInterfaceType(object, dtype, object, object&) + # bint PyArray_HasArrayInterface(op, out) + + + bint PyArray_IsZeroDim(object) + # Cannot be supported due to ## ## in macro: + # bint PyArray_IsScalar(object, verbatim work) + bint PyArray_CheckScalar(object) + bint PyArray_IsPythonNumber(object) + bint PyArray_IsPythonScalar(object) + bint PyArray_IsAnyScalar(object) + bint PyArray_CheckAnyScalar(object) + + ndarray PyArray_GETCONTIGUOUS(ndarray) + bint PyArray_SAMESHAPE(ndarray, ndarray) nogil + npy_intp PyArray_SIZE(ndarray) nogil + npy_intp PyArray_NBYTES(ndarray) nogil + + object PyArray_FROM_O(object) + object PyArray_FROM_OF(object m, int flags) + object PyArray_FROM_OT(object m, int type) + object PyArray_FROM_OTF(object m, int type, int flags) + object PyArray_FROMANY(object m, int type, int min, int max, int flags) + object PyArray_ZEROS(int nd, npy_intp* dims, int type, int fortran) + object PyArray_EMPTY(int nd, npy_intp* dims, int type, int fortran) + void PyArray_FILLWBYTE(ndarray, int val) + object PyArray_ContiguousFromAny(op, int, int min_depth, int max_depth) + unsigned char PyArray_EquivArrTypes(ndarray a1, ndarray a2) + bint PyArray_EquivByteorders(int b1, int b2) nogil + object PyArray_SimpleNew(int nd, npy_intp* dims, int typenum) + object PyArray_SimpleNewFromData(int nd, npy_intp* dims, int typenum, void* data) + #object PyArray_SimpleNewFromDescr(int nd, npy_intp* dims, dtype descr) + object PyArray_ToScalar(void* data, ndarray arr) + + void* PyArray_GETPTR1(ndarray m, npy_intp i) nogil + void* PyArray_GETPTR2(ndarray m, npy_intp i, npy_intp j) nogil + void* PyArray_GETPTR3(ndarray m, npy_intp i, npy_intp j, npy_intp k) nogil + void* PyArray_GETPTR4(ndarray m, npy_intp i, npy_intp j, npy_intp k, npy_intp l) nogil + + # Cannot be supported due to out arg + # void PyArray_DESCR_REPLACE(descr) + + + object PyArray_Copy(ndarray) + object PyArray_FromObject(object op, int type, int min_depth, int max_depth) + object PyArray_ContiguousFromObject(object op, int type, int min_depth, int max_depth) + object PyArray_CopyFromObject(object op, int type, int min_depth, int max_depth) + + object PyArray_Cast(ndarray mp, int type_num) + object PyArray_Take(ndarray ap, object items, int axis) + object PyArray_Put(ndarray ap, object items, object values) + + void PyArray_ITER_RESET(flatiter it) nogil + void PyArray_ITER_NEXT(flatiter it) nogil + void PyArray_ITER_GOTO(flatiter it, npy_intp* destination) nogil + void PyArray_ITER_GOTO1D(flatiter it, npy_intp ind) nogil + void* PyArray_ITER_DATA(flatiter it) nogil + bint PyArray_ITER_NOTDONE(flatiter it) nogil + + void PyArray_MultiIter_RESET(broadcast multi) nogil + void PyArray_MultiIter_NEXT(broadcast multi) nogil + void PyArray_MultiIter_GOTO(broadcast multi, npy_intp dest) nogil + void PyArray_MultiIter_GOTO1D(broadcast multi, npy_intp ind) nogil + void* PyArray_MultiIter_DATA(broadcast multi, npy_intp i) nogil + void PyArray_MultiIter_NEXTi(broadcast multi, npy_intp i) nogil + bint PyArray_MultiIter_NOTDONE(broadcast multi) nogil + npy_intp PyArray_MultiIter_SIZE(broadcast multi) nogil + int PyArray_MultiIter_NDIM(broadcast multi) nogil + npy_intp PyArray_MultiIter_INDEX(broadcast multi) nogil + int PyArray_MultiIter_NUMITER(broadcast multi) nogil + npy_intp* PyArray_MultiIter_DIMS(broadcast multi) nogil + void** PyArray_MultiIter_ITERS(broadcast multi) nogil + + # Functions from __multiarray_api.h + + # Functions taking dtype and returning object/ndarray are disabled + # for now as they steal dtype references. I'm conservative and disable + # more than is probably needed until it can be checked further. + int PyArray_INCREF (ndarray) except * # uses PyArray_Item_INCREF... + int PyArray_XDECREF (ndarray) except * # uses PyArray_Item_DECREF... + dtype PyArray_DescrFromType (int) + object PyArray_TypeObjectFromType (int) + char * PyArray_Zero (ndarray) + char * PyArray_One (ndarray) + #object PyArray_CastToType (ndarray, dtype, int) + int PyArray_CanCastSafely (int, int) # writes errors + npy_bool PyArray_CanCastTo (dtype, dtype) # writes errors + int PyArray_ObjectType (object, int) except 0 + dtype PyArray_DescrFromObject (object, dtype) + #ndarray* PyArray_ConvertToCommonType (object, int *) + dtype PyArray_DescrFromScalar (object) + dtype PyArray_DescrFromTypeObject (object) + npy_intp PyArray_Size (object) + #object PyArray_Scalar (void *, dtype, object) + #object PyArray_FromScalar (object, dtype) + void PyArray_ScalarAsCtype (object, void *) + #int PyArray_CastScalarToCtype (object, void *, dtype) + #int PyArray_CastScalarDirect (object, dtype, void *, int) + #PyArray_VectorUnaryFunc * PyArray_GetCastFunc (dtype, int) + #object PyArray_FromAny (object, dtype, int, int, int, object) + object PyArray_EnsureArray (object) + object PyArray_EnsureAnyArray (object) + #object PyArray_FromFile (stdio.FILE *, dtype, npy_intp, char *) + #object PyArray_FromString (char *, npy_intp, dtype, npy_intp, char *) + #object PyArray_FromBuffer (object, dtype, npy_intp, npy_intp) + #object PyArray_FromIter (object, dtype, npy_intp) + object PyArray_Return (ndarray) + #object PyArray_GetField (ndarray, dtype, int) + #int PyArray_SetField (ndarray, dtype, int, object) except -1 + object PyArray_Byteswap (ndarray, npy_bool) + object PyArray_Resize (ndarray, PyArray_Dims *, int, NPY_ORDER) + int PyArray_CopyInto (ndarray, ndarray) except -1 + int PyArray_CopyAnyInto (ndarray, ndarray) except -1 + int PyArray_CopyObject (ndarray, object) except -1 + object PyArray_NewCopy (ndarray, NPY_ORDER) + object PyArray_ToList (ndarray) + object PyArray_ToString (ndarray, NPY_ORDER) + int PyArray_ToFile (ndarray, stdio.FILE *, char *, char *) except -1 + int PyArray_Dump (object, object, int) except -1 + object PyArray_Dumps (object, int) + int PyArray_ValidType (int) # Cannot error + void PyArray_UpdateFlags (ndarray, int) + object PyArray_New (type, int, npy_intp *, int, npy_intp *, void *, int, int, object) + #object PyArray_NewFromDescr (type, dtype, int, npy_intp *, npy_intp *, void *, int, object) + #dtype PyArray_DescrNew (dtype) + dtype PyArray_DescrNewFromType (int) + double PyArray_GetPriority (object, double) # clears errors as of 1.25 + object PyArray_IterNew (object) + object PyArray_MultiIterNew (int, ...) + + int PyArray_PyIntAsInt (object) except? -1 + npy_intp PyArray_PyIntAsIntp (object) + int PyArray_Broadcast (broadcast) except -1 + int PyArray_FillWithScalar (ndarray, object) except -1 + npy_bool PyArray_CheckStrides (int, int, npy_intp, npy_intp, npy_intp *, npy_intp *) + dtype PyArray_DescrNewByteorder (dtype, char) + object PyArray_IterAllButAxis (object, int *) + #object PyArray_CheckFromAny (object, dtype, int, int, int, object) + #object PyArray_FromArray (ndarray, dtype, int) + object PyArray_FromInterface (object) + object PyArray_FromStructInterface (object) + #object PyArray_FromArrayAttr (object, dtype, object) + #NPY_SCALARKIND PyArray_ScalarKind (int, ndarray*) + int PyArray_CanCoerceScalar (int, int, NPY_SCALARKIND) + npy_bool PyArray_CanCastScalar (type, type) + int PyArray_RemoveSmallest (broadcast) except -1 + int PyArray_ElementStrides (object) + void PyArray_Item_INCREF (char *, dtype) except * + void PyArray_Item_XDECREF (char *, dtype) except * + object PyArray_Transpose (ndarray, PyArray_Dims *) + object PyArray_TakeFrom (ndarray, object, int, ndarray, NPY_CLIPMODE) + object PyArray_PutTo (ndarray, object, object, NPY_CLIPMODE) + object PyArray_PutMask (ndarray, object, object) + object PyArray_Repeat (ndarray, object, int) + object PyArray_Choose (ndarray, object, ndarray, NPY_CLIPMODE) + int PyArray_Sort (ndarray, int, NPY_SORTKIND) except -1 + object PyArray_ArgSort (ndarray, int, NPY_SORTKIND) + object PyArray_SearchSorted (ndarray, object, NPY_SEARCHSIDE, PyObject *) + object PyArray_ArgMax (ndarray, int, ndarray) + object PyArray_ArgMin (ndarray, int, ndarray) + object PyArray_Reshape (ndarray, object) + object PyArray_Newshape (ndarray, PyArray_Dims *, NPY_ORDER) + object PyArray_Squeeze (ndarray) + #object PyArray_View (ndarray, dtype, type) + object PyArray_SwapAxes (ndarray, int, int) + object PyArray_Max (ndarray, int, ndarray) + object PyArray_Min (ndarray, int, ndarray) + object PyArray_Ptp (ndarray, int, ndarray) + object PyArray_Mean (ndarray, int, int, ndarray) + object PyArray_Trace (ndarray, int, int, int, int, ndarray) + object PyArray_Diagonal (ndarray, int, int, int) + object PyArray_Clip (ndarray, object, object, ndarray) + object PyArray_Conjugate (ndarray, ndarray) + object PyArray_Nonzero (ndarray) + object PyArray_Std (ndarray, int, int, ndarray, int) + object PyArray_Sum (ndarray, int, int, ndarray) + object PyArray_CumSum (ndarray, int, int, ndarray) + object PyArray_Prod (ndarray, int, int, ndarray) + object PyArray_CumProd (ndarray, int, int, ndarray) + object PyArray_All (ndarray, int, ndarray) + object PyArray_Any (ndarray, int, ndarray) + object PyArray_Compress (ndarray, object, int, ndarray) + object PyArray_Flatten (ndarray, NPY_ORDER) + object PyArray_Ravel (ndarray, NPY_ORDER) + npy_intp PyArray_MultiplyList (npy_intp *, int) + int PyArray_MultiplyIntList (int *, int) + void * PyArray_GetPtr (ndarray, npy_intp*) + int PyArray_CompareLists (npy_intp *, npy_intp *, int) + #int PyArray_AsCArray (object*, void *, npy_intp *, int, dtype) + int PyArray_Free (object, void *) + #int PyArray_Converter (object, object*) + int PyArray_IntpFromSequence (object, npy_intp *, int) except -1 + object PyArray_Concatenate (object, int) + object PyArray_InnerProduct (object, object) + object PyArray_MatrixProduct (object, object) + object PyArray_Correlate (object, object, int) + #int PyArray_DescrConverter (object, dtype*) except 0 + #int PyArray_DescrConverter2 (object, dtype*) except 0 + int PyArray_IntpConverter (object, PyArray_Dims *) except 0 + #int PyArray_BufferConverter (object, chunk) except 0 + int PyArray_AxisConverter (object, int *) except 0 + int PyArray_BoolConverter (object, npy_bool *) except 0 + int PyArray_ByteorderConverter (object, char *) except 0 + int PyArray_OrderConverter (object, NPY_ORDER *) except 0 + unsigned char PyArray_EquivTypes (dtype, dtype) # clears errors + #object PyArray_Zeros (int, npy_intp *, dtype, int) + #object PyArray_Empty (int, npy_intp *, dtype, int) + object PyArray_Where (object, object, object) + object PyArray_Arange (double, double, double, int) + #object PyArray_ArangeObj (object, object, object, dtype) + int PyArray_SortkindConverter (object, NPY_SORTKIND *) except 0 + object PyArray_LexSort (object, int) + object PyArray_Round (ndarray, int, ndarray) + unsigned char PyArray_EquivTypenums (int, int) + int PyArray_RegisterDataType (dtype) except -1 + int PyArray_RegisterCastFunc (dtype, int, PyArray_VectorUnaryFunc *) except -1 + int PyArray_RegisterCanCast (dtype, int, NPY_SCALARKIND) except -1 + #void PyArray_InitArrFuncs (PyArray_ArrFuncs *) + object PyArray_IntTupleFromIntp (int, npy_intp *) + int PyArray_ClipmodeConverter (object, NPY_CLIPMODE *) except 0 + #int PyArray_OutputConverter (object, ndarray*) except 0 + object PyArray_BroadcastToShape (object, npy_intp *, int) + #int PyArray_DescrAlignConverter (object, dtype*) except 0 + #int PyArray_DescrAlignConverter2 (object, dtype*) except 0 + int PyArray_SearchsideConverter (object, void *) except 0 + object PyArray_CheckAxis (ndarray, int *, int) + npy_intp PyArray_OverflowMultiplyList (npy_intp *, int) + int PyArray_SetBaseObject(ndarray, base) except -1 # NOTE: steals a reference to base! Use "set_array_base()" instead. + + # The memory handler functions require the NumPy 1.22 API + # and may require defining NPY_TARGET_VERSION + ctypedef struct PyDataMemAllocator: + void *ctx + void* (*malloc) (void *ctx, size_t size) + void* (*calloc) (void *ctx, size_t nelem, size_t elsize) + void* (*realloc) (void *ctx, void *ptr, size_t new_size) + void (*free) (void *ctx, void *ptr, size_t size) + + ctypedef struct PyDataMem_Handler: + char* name + npy_uint8 version + PyDataMemAllocator allocator + + object PyDataMem_SetHandler(object handler) + object PyDataMem_GetHandler() + + # additional datetime related functions are defined below + + +# Typedefs that matches the runtime dtype objects in +# the numpy module. + +# The ones that are commented out needs an IFDEF function +# in Cython to enable them only on the right systems. + +ctypedef npy_int8 int8_t +ctypedef npy_int16 int16_t +ctypedef npy_int32 int32_t +ctypedef npy_int64 int64_t +#ctypedef npy_int96 int96_t +#ctypedef npy_int128 int128_t + +ctypedef npy_uint8 uint8_t +ctypedef npy_uint16 uint16_t +ctypedef npy_uint32 uint32_t +ctypedef npy_uint64 uint64_t +#ctypedef npy_uint96 uint96_t +#ctypedef npy_uint128 uint128_t + +ctypedef npy_float32 float32_t +ctypedef npy_float64 float64_t +#ctypedef npy_float80 float80_t +#ctypedef npy_float128 float128_t + +ctypedef float complex complex64_t +ctypedef double complex complex128_t + +ctypedef npy_longlong longlong_t +ctypedef npy_ulonglong ulonglong_t + +ctypedef npy_intp intp_t +ctypedef npy_uintp uintp_t + +ctypedef npy_double float_t +ctypedef npy_double double_t +ctypedef npy_longdouble longdouble_t + +ctypedef float complex cfloat_t +ctypedef double complex cdouble_t +ctypedef double complex complex_t +ctypedef long double complex clongdouble_t + +cdef inline object PyArray_MultiIterNew1(a): + return PyArray_MultiIterNew(1, a) + +cdef inline object PyArray_MultiIterNew2(a, b): + return PyArray_MultiIterNew(2, a, b) + +cdef inline object PyArray_MultiIterNew3(a, b, c): + return PyArray_MultiIterNew(3, a, b, c) + +cdef inline object PyArray_MultiIterNew4(a, b, c, d): + return PyArray_MultiIterNew(4, a, b, c, d) + +cdef inline object PyArray_MultiIterNew5(a, b, c, d, e): + return PyArray_MultiIterNew(5, a, b, c, d, e) + +cdef inline tuple PyDataType_SHAPE(dtype d): + if PyDataType_HASSUBARRAY(d): + return d.subarray.shape + else: + return () + + +cdef extern from "numpy/ndarrayobject.h": + PyTypeObject PyTimedeltaArrType_Type + PyTypeObject PyDatetimeArrType_Type + ctypedef int64_t npy_timedelta + ctypedef int64_t npy_datetime + +cdef extern from "numpy/ndarraytypes.h": + ctypedef struct PyArray_DatetimeMetaData: + NPY_DATETIMEUNIT base + int64_t num + + ctypedef struct npy_datetimestruct: + int64_t year + int32_t month, day, hour, min, sec, us, ps, as + + # Iterator API added in v1.6 + # + # These don't match the definition in the C API because Cython can't wrap + # function pointers that return functions. + # https://github.com/cython/cython/issues/6720 + ctypedef int (*NpyIter_IterNextFunc "NpyIter_IterNextFunc *")(NpyIter* it) noexcept nogil + ctypedef void (*NpyIter_GetMultiIndexFunc "NpyIter_GetMultiIndexFunc *")(NpyIter* it, npy_intp* outcoords) noexcept nogil + + +cdef extern from "numpy/arrayscalars.h": + + # abstract types + ctypedef class numpy.generic [object PyObject]: + pass + ctypedef class numpy.number [object PyObject]: + pass + ctypedef class numpy.integer [object PyObject]: + pass + ctypedef class numpy.signedinteger [object PyObject]: + pass + ctypedef class numpy.unsignedinteger [object PyObject]: + pass + ctypedef class numpy.inexact [object PyObject]: + pass + ctypedef class numpy.floating [object PyObject]: + pass + ctypedef class numpy.complexfloating [object PyObject]: + pass + ctypedef class numpy.flexible [object PyObject]: + pass + ctypedef class numpy.character [object PyObject]: + pass + + ctypedef struct PyDatetimeScalarObject: + # PyObject_HEAD + npy_datetime obval + PyArray_DatetimeMetaData obmeta + + ctypedef struct PyTimedeltaScalarObject: + # PyObject_HEAD + npy_timedelta obval + PyArray_DatetimeMetaData obmeta + + ctypedef enum NPY_DATETIMEUNIT: + NPY_FR_Y + NPY_FR_M + NPY_FR_W + NPY_FR_D + NPY_FR_B + NPY_FR_h + NPY_FR_m + NPY_FR_s + NPY_FR_ms + NPY_FR_us + NPY_FR_ns + NPY_FR_ps + NPY_FR_fs + NPY_FR_as + NPY_FR_GENERIC + + +cdef extern from "numpy/arrayobject.h": + # These are part of the C-API defined in `__multiarray_api.h` + + # NumPy internal definitions in datetime_strings.c: + int get_datetime_iso_8601_strlen "NpyDatetime_GetDatetimeISO8601StrLen" ( + int local, NPY_DATETIMEUNIT base) + int make_iso_8601_datetime "NpyDatetime_MakeISO8601Datetime" ( + npy_datetimestruct *dts, char *outstr, npy_intp outlen, + int local, int utc, NPY_DATETIMEUNIT base, int tzoffset, + NPY_CASTING casting) except -1 + + # NumPy internal definition in datetime.c: + # May return 1 to indicate that object does not appear to be a datetime + # (returns 0 on success). + int convert_pydatetime_to_datetimestruct "NpyDatetime_ConvertPyDateTimeToDatetimeStruct" ( + PyObject *obj, npy_datetimestruct *out, + NPY_DATETIMEUNIT *out_bestunit, int apply_tzinfo) except -1 + int convert_datetime64_to_datetimestruct "NpyDatetime_ConvertDatetime64ToDatetimeStruct" ( + PyArray_DatetimeMetaData *meta, npy_datetime dt, + npy_datetimestruct *out) except -1 + int convert_datetimestruct_to_datetime64 "NpyDatetime_ConvertDatetimeStructToDatetime64"( + PyArray_DatetimeMetaData *meta, const npy_datetimestruct *dts, + npy_datetime *out) except -1 + + +# +# ufunc API +# + +cdef extern from "numpy/ufuncobject.h": + + ctypedef void (*PyUFuncGenericFunction) (char **, npy_intp *, npy_intp *, void *) + + ctypedef class numpy.ufunc [object PyUFuncObject, check_size ignore]: + cdef: + int nin, nout, nargs + int identity + PyUFuncGenericFunction *functions + void **data + int ntypes + int check_return + char *name + char *types + char *doc + void *ptr + PyObject *obj + PyObject *userloops + + cdef enum: + PyUFunc_Zero + PyUFunc_One + PyUFunc_None + UFUNC_FPE_DIVIDEBYZERO + UFUNC_FPE_OVERFLOW + UFUNC_FPE_UNDERFLOW + UFUNC_FPE_INVALID + + object PyUFunc_FromFuncAndData(PyUFuncGenericFunction *, + void **, char *, int, int, int, int, char *, char *, int) + int PyUFunc_RegisterLoopForType(ufunc, int, + PyUFuncGenericFunction, int *, void *) except -1 + void PyUFunc_f_f_As_d_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_d_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_f_f \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_g_g \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_F_F_As_D_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_F_F \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_D_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_G_G \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_O_O \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_ff_f_As_dd_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_ff_f \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_dd_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_gg_g \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_FF_F_As_DD_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_DD_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_FF_F \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_GG_G \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_OO_O \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_O_O_method \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_OO_O_method \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_On_Om \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_clearfperr() + int PyUFunc_getfperr() + int PyUFunc_ReplaceLoopBySignature \ + (ufunc, PyUFuncGenericFunction, int *, PyUFuncGenericFunction *) + object PyUFunc_FromFuncAndDataAndSignature \ + (PyUFuncGenericFunction *, void **, char *, int, int, int, + int, char *, char *, int, char *) + + int _import_umath() except -1 + +cdef inline void set_array_base(ndarray arr, object base) except *: + Py_INCREF(base) # important to do this before stealing the reference below! + PyArray_SetBaseObject(arr, base) + +cdef inline object get_array_base(ndarray arr): + base = PyArray_BASE(arr) + if base is NULL: + return None + return base + +# Versions of the import_* functions which are more suitable for +# Cython code. +cdef inline int import_array() except -1: + try: + __pyx_import_array() + except Exception: + raise ImportError("numpy._core.multiarray failed to import") + +cdef inline int import_umath() except -1: + try: + _import_umath() + except Exception: + raise ImportError("numpy._core.umath failed to import") + +cdef inline int import_ufunc() except -1: + try: + _import_umath() + except Exception: + raise ImportError("numpy._core.umath failed to import") + + +cdef inline bint is_timedelta64_object(object obj) noexcept: + """ + Cython equivalent of `isinstance(obj, np.timedelta64)` + + Parameters + ---------- + obj : object + + Returns + ------- + bool + """ + return PyObject_TypeCheck(obj, &PyTimedeltaArrType_Type) + + +cdef inline bint is_datetime64_object(object obj) noexcept: + """ + Cython equivalent of `isinstance(obj, np.datetime64)` + + Parameters + ---------- + obj : object + + Returns + ------- + bool + """ + return PyObject_TypeCheck(obj, &PyDatetimeArrType_Type) + + +cdef inline npy_datetime get_datetime64_value(object obj) noexcept nogil: + """ + returns the int64 value underlying scalar numpy datetime64 object + + Note that to interpret this as a datetime, the corresponding unit is + also needed. That can be found using `get_datetime64_unit`. + """ + return (obj).obval + + +cdef inline npy_timedelta get_timedelta64_value(object obj) noexcept nogil: + """ + returns the int64 value underlying scalar numpy timedelta64 object + """ + return (obj).obval + + +cdef inline NPY_DATETIMEUNIT get_datetime64_unit(object obj) noexcept nogil: + """ + returns the unit part of the dtype for a numpy datetime64 object. + """ + return (obj).obmeta.base + + +cdef extern from "numpy/arrayobject.h": + + ctypedef struct NpyIter: + pass + + cdef enum: + NPY_FAIL + NPY_SUCCEED + + cdef enum: + # Track an index representing C order + NPY_ITER_C_INDEX + # Track an index representing Fortran order + NPY_ITER_F_INDEX + # Track a multi-index + NPY_ITER_MULTI_INDEX + # User code external to the iterator does the 1-dimensional innermost loop + NPY_ITER_EXTERNAL_LOOP + # Convert all the operands to a common data type + NPY_ITER_COMMON_DTYPE + # Operands may hold references, requiring API access during iteration + NPY_ITER_REFS_OK + # Zero-sized operands should be permitted, iteration checks IterSize for 0 + NPY_ITER_ZEROSIZE_OK + # Permits reductions (size-0 stride with dimension size > 1) + NPY_ITER_REDUCE_OK + # Enables sub-range iteration + NPY_ITER_RANGED + # Enables buffering + NPY_ITER_BUFFERED + # When buffering is enabled, grows the inner loop if possible + NPY_ITER_GROWINNER + # Delay allocation of buffers until first Reset* call + NPY_ITER_DELAY_BUFALLOC + # When NPY_KEEPORDER is specified, disable reversing negative-stride axes + NPY_ITER_DONT_NEGATE_STRIDES + NPY_ITER_COPY_IF_OVERLAP + # The operand will be read from and written to + NPY_ITER_READWRITE + # The operand will only be read from + NPY_ITER_READONLY + # The operand will only be written to + NPY_ITER_WRITEONLY + # The operand's data must be in native byte order + NPY_ITER_NBO + # The operand's data must be aligned + NPY_ITER_ALIGNED + # The operand's data must be contiguous (within the inner loop) + NPY_ITER_CONTIG + # The operand may be copied to satisfy requirements + NPY_ITER_COPY + # The operand may be copied with WRITEBACKIFCOPY to satisfy requirements + NPY_ITER_UPDATEIFCOPY + # Allocate the operand if it is NULL + NPY_ITER_ALLOCATE + # If an operand is allocated, don't use any subtype + NPY_ITER_NO_SUBTYPE + # This is a virtual array slot, operand is NULL but temporary data is there + NPY_ITER_VIRTUAL + # Require that the dimension match the iterator dimensions exactly + NPY_ITER_NO_BROADCAST + # A mask is being used on this array, affects buffer -> array copy + NPY_ITER_WRITEMASKED + # This array is the mask for all WRITEMASKED operands + NPY_ITER_ARRAYMASK + # Assume iterator order data access for COPY_IF_OVERLAP + NPY_ITER_OVERLAP_ASSUME_ELEMENTWISE + + # construction and destruction functions + NpyIter* NpyIter_New(ndarray arr, npy_uint32 flags, NPY_ORDER order, + NPY_CASTING casting, dtype datatype) except NULL + NpyIter* NpyIter_MultiNew(npy_intp nop, PyArrayObject** op, npy_uint32 flags, + NPY_ORDER order, NPY_CASTING casting, npy_uint32* + op_flags, PyArray_Descr** op_dtypes) except NULL + NpyIter* NpyIter_AdvancedNew(npy_intp nop, PyArrayObject** op, + npy_uint32 flags, NPY_ORDER order, + NPY_CASTING casting, npy_uint32* op_flags, + PyArray_Descr** op_dtypes, int oa_ndim, + int** op_axes, const npy_intp* itershape, + npy_intp buffersize) except NULL + NpyIter* NpyIter_Copy(NpyIter* it) except NULL + int NpyIter_RemoveAxis(NpyIter* it, int axis) except NPY_FAIL + int NpyIter_RemoveMultiIndex(NpyIter* it) except NPY_FAIL + int NpyIter_EnableExternalLoop(NpyIter* it) except NPY_FAIL + int NpyIter_Deallocate(NpyIter* it) except NPY_FAIL + int NpyIter_Reset(NpyIter* it, char** errmsg) except NPY_FAIL + int NpyIter_ResetToIterIndexRange(NpyIter* it, npy_intp istart, + npy_intp iend, char** errmsg) except NPY_FAIL + int NpyIter_ResetBasePointers(NpyIter* it, char** baseptrs, char** errmsg) except NPY_FAIL + int NpyIter_GotoMultiIndex(NpyIter* it, const npy_intp* multi_index) except NPY_FAIL + int NpyIter_GotoIndex(NpyIter* it, npy_intp index) except NPY_FAIL + npy_intp NpyIter_GetIterSize(NpyIter* it) nogil + npy_intp NpyIter_GetIterIndex(NpyIter* it) nogil + void NpyIter_GetIterIndexRange(NpyIter* it, npy_intp* istart, + npy_intp* iend) nogil + int NpyIter_GotoIterIndex(NpyIter* it, npy_intp iterindex) except NPY_FAIL + npy_bool NpyIter_HasDelayedBufAlloc(NpyIter* it) nogil + npy_bool NpyIter_HasExternalLoop(NpyIter* it) nogil + npy_bool NpyIter_HasMultiIndex(NpyIter* it) nogil + npy_bool NpyIter_HasIndex(NpyIter* it) nogil + npy_bool NpyIter_RequiresBuffering(NpyIter* it) nogil + npy_bool NpyIter_IsBuffered(NpyIter* it) nogil + npy_bool NpyIter_IsGrowInner(NpyIter* it) nogil + npy_intp NpyIter_GetBufferSize(NpyIter* it) nogil + int NpyIter_GetNDim(NpyIter* it) nogil + int NpyIter_GetNOp(NpyIter* it) nogil + npy_intp* NpyIter_GetAxisStrideArray(NpyIter* it, int axis) except NULL + int NpyIter_GetShape(NpyIter* it, npy_intp* outshape) nogil + PyArray_Descr** NpyIter_GetDescrArray(NpyIter* it) + PyArrayObject** NpyIter_GetOperandArray(NpyIter* it) + ndarray NpyIter_GetIterView(NpyIter* it, npy_intp i) + void NpyIter_GetReadFlags(NpyIter* it, char* outreadflags) + void NpyIter_GetWriteFlags(NpyIter* it, char* outwriteflags) + int NpyIter_CreateCompatibleStrides(NpyIter* it, npy_intp itemsize, + npy_intp* outstrides) except NPY_FAIL + npy_bool NpyIter_IsFirstVisit(NpyIter* it, int iop) nogil + # functions for iterating an NpyIter object + # + # These don't match the definition in the C API because Cython can't wrap + # function pointers that return functions. + NpyIter_IterNextFunc NpyIter_GetIterNext(NpyIter* it, char** errmsg) except NULL + NpyIter_GetMultiIndexFunc NpyIter_GetGetMultiIndex(NpyIter* it, + char** errmsg) except NULL + char** NpyIter_GetDataPtrArray(NpyIter* it) nogil + char** NpyIter_GetInitialDataPtrArray(NpyIter* it) nogil + npy_intp* NpyIter_GetIndexPtr(NpyIter* it) + npy_intp* NpyIter_GetInnerStrideArray(NpyIter* it) nogil + npy_intp* NpyIter_GetInnerLoopSizePtr(NpyIter* it) nogil + void NpyIter_GetInnerFixedStrideArray(NpyIter* it, npy_intp* outstrides) nogil + npy_bool NpyIter_IterationNeedsAPI(NpyIter* it) nogil + void NpyIter_DebugPrint(NpyIter* it) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pxd b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pxd new file mode 100644 index 0000000000000000000000000000000000000000..6a62a38200426043fe3259f06434473b8bd8bb5c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pxd @@ -0,0 +1,1164 @@ +# NumPy static imports for Cython < 3.0 +# +# If any of the PyArray_* functions are called, import_array must be +# called first. +# +# Author: Dag Sverre Seljebotn +# + +DEF _buffer_format_string_len = 255 + +cimport cpython.buffer as pybuf +from cpython.ref cimport Py_INCREF +from cpython.mem cimport PyObject_Malloc, PyObject_Free +from cpython.object cimport PyObject, PyTypeObject +from cpython.buffer cimport PyObject_GetBuffer +from cpython.type cimport type +cimport libc.stdio as stdio + + +cdef extern from *: + # Leave a marker that the NumPy declarations came from NumPy itself and not from Cython. + # See https://github.com/cython/cython/issues/3573 + """ + /* Using NumPy API declarations from "numpy/__init__.pxd" */ + """ + + +cdef extern from "Python.h": + ctypedef int Py_intptr_t + bint PyObject_TypeCheck(object obj, PyTypeObject* type) + +cdef extern from "numpy/arrayobject.h": + # It would be nice to use size_t and ssize_t, but ssize_t has special + # implicit conversion rules, so just use "long". + # Note: The actual type only matters for Cython promotion, so long + # is closer than int, but could lead to incorrect promotion. + # (Not to worrying, and always the status-quo.) + ctypedef signed long npy_intp + ctypedef unsigned long npy_uintp + + ctypedef unsigned char npy_bool + + ctypedef signed char npy_byte + ctypedef signed short npy_short + ctypedef signed int npy_int + ctypedef signed long npy_long + ctypedef signed long long npy_longlong + + ctypedef unsigned char npy_ubyte + ctypedef unsigned short npy_ushort + ctypedef unsigned int npy_uint + ctypedef unsigned long npy_ulong + ctypedef unsigned long long npy_ulonglong + + ctypedef float npy_float + ctypedef double npy_double + ctypedef long double npy_longdouble + + ctypedef signed char npy_int8 + ctypedef signed short npy_int16 + ctypedef signed int npy_int32 + ctypedef signed long long npy_int64 + ctypedef signed long long npy_int96 + ctypedef signed long long npy_int128 + + ctypedef unsigned char npy_uint8 + ctypedef unsigned short npy_uint16 + ctypedef unsigned int npy_uint32 + ctypedef unsigned long long npy_uint64 + ctypedef unsigned long long npy_uint96 + ctypedef unsigned long long npy_uint128 + + ctypedef float npy_float32 + ctypedef double npy_float64 + ctypedef long double npy_float80 + ctypedef long double npy_float96 + ctypedef long double npy_float128 + + ctypedef struct npy_cfloat: + pass + + ctypedef struct npy_cdouble: + pass + + ctypedef struct npy_clongdouble: + pass + + ctypedef struct npy_complex64: + pass + + ctypedef struct npy_complex128: + pass + + ctypedef struct npy_complex160: + pass + + ctypedef struct npy_complex192: + pass + + ctypedef struct npy_complex256: + pass + + ctypedef struct PyArray_Dims: + npy_intp *ptr + int len + + + cdef enum NPY_TYPES: + NPY_BOOL + NPY_BYTE + NPY_UBYTE + NPY_SHORT + NPY_USHORT + NPY_INT + NPY_UINT + NPY_LONG + NPY_ULONG + NPY_LONGLONG + NPY_ULONGLONG + NPY_FLOAT + NPY_DOUBLE + NPY_LONGDOUBLE + NPY_CFLOAT + NPY_CDOUBLE + NPY_CLONGDOUBLE + NPY_OBJECT + NPY_STRING + NPY_UNICODE + NPY_VOID + NPY_DATETIME + NPY_TIMEDELTA + NPY_NTYPES_LEGACY + NPY_NOTYPE + + NPY_INT8 + NPY_INT16 + NPY_INT32 + NPY_INT64 + NPY_INT128 + NPY_INT256 + NPY_UINT8 + NPY_UINT16 + NPY_UINT32 + NPY_UINT64 + NPY_UINT128 + NPY_UINT256 + NPY_FLOAT16 + NPY_FLOAT32 + NPY_FLOAT64 + NPY_FLOAT80 + NPY_FLOAT96 + NPY_FLOAT128 + NPY_FLOAT256 + NPY_COMPLEX32 + NPY_COMPLEX64 + NPY_COMPLEX128 + NPY_COMPLEX160 + NPY_COMPLEX192 + NPY_COMPLEX256 + NPY_COMPLEX512 + + NPY_INTP + NPY_UINTP + NPY_DEFAULT_INT # Not a compile time constant (normally)! + + ctypedef enum NPY_ORDER: + NPY_ANYORDER + NPY_CORDER + NPY_FORTRANORDER + NPY_KEEPORDER + + ctypedef enum NPY_CASTING: + NPY_NO_CASTING + NPY_EQUIV_CASTING + NPY_SAFE_CASTING + NPY_SAME_KIND_CASTING + NPY_UNSAFE_CASTING + + ctypedef enum NPY_CLIPMODE: + NPY_CLIP + NPY_WRAP + NPY_RAISE + + ctypedef enum NPY_SCALARKIND: + NPY_NOSCALAR, + NPY_BOOL_SCALAR, + NPY_INTPOS_SCALAR, + NPY_INTNEG_SCALAR, + NPY_FLOAT_SCALAR, + NPY_COMPLEX_SCALAR, + NPY_OBJECT_SCALAR + + ctypedef enum NPY_SORTKIND: + NPY_QUICKSORT + NPY_HEAPSORT + NPY_MERGESORT + + ctypedef enum NPY_SEARCHSIDE: + NPY_SEARCHLEFT + NPY_SEARCHRIGHT + + enum: + # DEPRECATED since NumPy 1.7 ! Do not use in new code! + NPY_C_CONTIGUOUS + NPY_F_CONTIGUOUS + NPY_CONTIGUOUS + NPY_FORTRAN + NPY_OWNDATA + NPY_FORCECAST + NPY_ENSURECOPY + NPY_ENSUREARRAY + NPY_ELEMENTSTRIDES + NPY_ALIGNED + NPY_NOTSWAPPED + NPY_WRITEABLE + NPY_ARR_HAS_DESCR + + NPY_BEHAVED + NPY_BEHAVED_NS + NPY_CARRAY + NPY_CARRAY_RO + NPY_FARRAY + NPY_FARRAY_RO + NPY_DEFAULT + + NPY_IN_ARRAY + NPY_OUT_ARRAY + NPY_INOUT_ARRAY + NPY_IN_FARRAY + NPY_OUT_FARRAY + NPY_INOUT_FARRAY + + NPY_UPDATE_ALL + + enum: + # Added in NumPy 1.7 to replace the deprecated enums above. + NPY_ARRAY_C_CONTIGUOUS + NPY_ARRAY_F_CONTIGUOUS + NPY_ARRAY_OWNDATA + NPY_ARRAY_FORCECAST + NPY_ARRAY_ENSURECOPY + NPY_ARRAY_ENSUREARRAY + NPY_ARRAY_ELEMENTSTRIDES + NPY_ARRAY_ALIGNED + NPY_ARRAY_NOTSWAPPED + NPY_ARRAY_WRITEABLE + NPY_ARRAY_WRITEBACKIFCOPY + + NPY_ARRAY_BEHAVED + NPY_ARRAY_BEHAVED_NS + NPY_ARRAY_CARRAY + NPY_ARRAY_CARRAY_RO + NPY_ARRAY_FARRAY + NPY_ARRAY_FARRAY_RO + NPY_ARRAY_DEFAULT + + NPY_ARRAY_IN_ARRAY + NPY_ARRAY_OUT_ARRAY + NPY_ARRAY_INOUT_ARRAY + NPY_ARRAY_IN_FARRAY + NPY_ARRAY_OUT_FARRAY + NPY_ARRAY_INOUT_FARRAY + + NPY_ARRAY_UPDATE_ALL + + cdef enum: + NPY_MAXDIMS # 64 on NumPy 2.x and 32 on NumPy 1.x + NPY_RAVEL_AXIS # Used for functions like PyArray_Mean + + ctypedef void (*PyArray_VectorUnaryFunc)(void *, void *, npy_intp, void *, void *) + + ctypedef struct PyArray_ArrayDescr: + # shape is a tuple, but Cython doesn't support "tuple shape" + # inside a non-PyObject declaration, so we have to declare it + # as just a PyObject*. + PyObject* shape + + ctypedef struct PyArray_Descr: + pass + + ctypedef class numpy.dtype [object PyArray_Descr, check_size ignore]: + # Use PyDataType_* macros when possible, however there are no macros + # for accessing some of the fields, so some are defined. + cdef PyTypeObject* typeobj + cdef char kind + cdef char type + # Numpy sometimes mutates this without warning (e.g. it'll + # sometimes change "|" to "<" in shared dtype objects on + # little-endian machines). If this matters to you, use + # PyArray_IsNativeByteOrder(dtype.byteorder) instead of + # directly accessing this field. + cdef char byteorder + # Flags are not directly accessible on Cython <3. Use PyDataType_FLAGS. + # cdef char flags + cdef int type_num + # itemsize/elsize, alignment, fields, names, and subarray must + # use the `PyDataType_*` accessor macros. With Cython 3 you can + # still use getter attributes `dtype.itemsize` + + ctypedef class numpy.flatiter [object PyArrayIterObject, check_size ignore]: + # Use through macros + pass + + ctypedef class numpy.broadcast [object PyArrayMultiIterObject, check_size ignore]: + cdef int numiter + cdef npy_intp size, index + cdef int nd + cdef npy_intp *dimensions + cdef void **iters + + ctypedef struct PyArrayObject: + # For use in situations where ndarray can't replace PyArrayObject*, + # like PyArrayObject**. + pass + + ctypedef class numpy.ndarray [object PyArrayObject, check_size ignore]: + cdef __cythonbufferdefaults__ = {"mode": "strided"} + + cdef: + # Only taking a few of the most commonly used and stable fields. + # One should use PyArray_* macros instead to access the C fields. + char *data + int ndim "nd" + npy_intp *shape "dimensions" + npy_intp *strides + dtype descr # deprecated since NumPy 1.7 ! + PyObject* base # NOT PUBLIC, DO NOT USE ! + + + int _import_array() except -1 + # A second definition so _import_array isn't marked as used when we use it here. + # Do not use - subject to change any time. + int __pyx_import_array "_import_array"() except -1 + + # + # Macros from ndarrayobject.h + # + bint PyArray_CHKFLAGS(ndarray m, int flags) nogil + bint PyArray_IS_C_CONTIGUOUS(ndarray arr) nogil + bint PyArray_IS_F_CONTIGUOUS(ndarray arr) nogil + bint PyArray_ISCONTIGUOUS(ndarray m) nogil + bint PyArray_ISWRITEABLE(ndarray m) nogil + bint PyArray_ISALIGNED(ndarray m) nogil + + int PyArray_NDIM(ndarray) nogil + bint PyArray_ISONESEGMENT(ndarray) nogil + bint PyArray_ISFORTRAN(ndarray) nogil + int PyArray_FORTRANIF(ndarray) nogil + + void* PyArray_DATA(ndarray) nogil + char* PyArray_BYTES(ndarray) nogil + + npy_intp* PyArray_DIMS(ndarray) nogil + npy_intp* PyArray_STRIDES(ndarray) nogil + npy_intp PyArray_DIM(ndarray, size_t) nogil + npy_intp PyArray_STRIDE(ndarray, size_t) nogil + + PyObject *PyArray_BASE(ndarray) nogil # returns borrowed reference! + PyArray_Descr *PyArray_DESCR(ndarray) nogil # returns borrowed reference to dtype! + PyArray_Descr *PyArray_DTYPE(ndarray) nogil # returns borrowed reference to dtype! NP 1.7+ alias for descr. + int PyArray_FLAGS(ndarray) nogil + void PyArray_CLEARFLAGS(ndarray, int flags) nogil # Added in NumPy 1.7 + void PyArray_ENABLEFLAGS(ndarray, int flags) nogil # Added in NumPy 1.7 + npy_intp PyArray_ITEMSIZE(ndarray) nogil + int PyArray_TYPE(ndarray arr) nogil + + object PyArray_GETITEM(ndarray arr, void *itemptr) + int PyArray_SETITEM(ndarray arr, void *itemptr, object obj) except -1 + + bint PyTypeNum_ISBOOL(int) nogil + bint PyTypeNum_ISUNSIGNED(int) nogil + bint PyTypeNum_ISSIGNED(int) nogil + bint PyTypeNum_ISINTEGER(int) nogil + bint PyTypeNum_ISFLOAT(int) nogil + bint PyTypeNum_ISNUMBER(int) nogil + bint PyTypeNum_ISSTRING(int) nogil + bint PyTypeNum_ISCOMPLEX(int) nogil + bint PyTypeNum_ISFLEXIBLE(int) nogil + bint PyTypeNum_ISUSERDEF(int) nogil + bint PyTypeNum_ISEXTENDED(int) nogil + bint PyTypeNum_ISOBJECT(int) nogil + + npy_intp PyDataType_ELSIZE(dtype) nogil + npy_intp PyDataType_ALIGNMENT(dtype) nogil + PyObject* PyDataType_METADATA(dtype) nogil + PyArray_ArrayDescr* PyDataType_SUBARRAY(dtype) nogil + PyObject* PyDataType_NAMES(dtype) nogil + PyObject* PyDataType_FIELDS(dtype) nogil + + bint PyDataType_ISBOOL(dtype) nogil + bint PyDataType_ISUNSIGNED(dtype) nogil + bint PyDataType_ISSIGNED(dtype) nogil + bint PyDataType_ISINTEGER(dtype) nogil + bint PyDataType_ISFLOAT(dtype) nogil + bint PyDataType_ISNUMBER(dtype) nogil + bint PyDataType_ISSTRING(dtype) nogil + bint PyDataType_ISCOMPLEX(dtype) nogil + bint PyDataType_ISFLEXIBLE(dtype) nogil + bint PyDataType_ISUSERDEF(dtype) nogil + bint PyDataType_ISEXTENDED(dtype) nogil + bint PyDataType_ISOBJECT(dtype) nogil + bint PyDataType_HASFIELDS(dtype) nogil + bint PyDataType_HASSUBARRAY(dtype) nogil + npy_uint64 PyDataType_FLAGS(dtype) nogil + + bint PyArray_ISBOOL(ndarray) nogil + bint PyArray_ISUNSIGNED(ndarray) nogil + bint PyArray_ISSIGNED(ndarray) nogil + bint PyArray_ISINTEGER(ndarray) nogil + bint PyArray_ISFLOAT(ndarray) nogil + bint PyArray_ISNUMBER(ndarray) nogil + bint PyArray_ISSTRING(ndarray) nogil + bint PyArray_ISCOMPLEX(ndarray) nogil + bint PyArray_ISFLEXIBLE(ndarray) nogil + bint PyArray_ISUSERDEF(ndarray) nogil + bint PyArray_ISEXTENDED(ndarray) nogil + bint PyArray_ISOBJECT(ndarray) nogil + bint PyArray_HASFIELDS(ndarray) nogil + + bint PyArray_ISVARIABLE(ndarray) nogil + + bint PyArray_SAFEALIGNEDCOPY(ndarray) nogil + bint PyArray_ISNBO(char) nogil # works on ndarray.byteorder + bint PyArray_IsNativeByteOrder(char) nogil # works on ndarray.byteorder + bint PyArray_ISNOTSWAPPED(ndarray) nogil + bint PyArray_ISBYTESWAPPED(ndarray) nogil + + bint PyArray_FLAGSWAP(ndarray, int) nogil + + bint PyArray_ISCARRAY(ndarray) nogil + bint PyArray_ISCARRAY_RO(ndarray) nogil + bint PyArray_ISFARRAY(ndarray) nogil + bint PyArray_ISFARRAY_RO(ndarray) nogil + bint PyArray_ISBEHAVED(ndarray) nogil + bint PyArray_ISBEHAVED_RO(ndarray) nogil + + + bint PyDataType_ISNOTSWAPPED(dtype) nogil + bint PyDataType_ISBYTESWAPPED(dtype) nogil + + bint PyArray_DescrCheck(object) + + bint PyArray_Check(object) + bint PyArray_CheckExact(object) + + # Cannot be supported due to out arg: + # bint PyArray_HasArrayInterfaceType(object, dtype, object, object&) + # bint PyArray_HasArrayInterface(op, out) + + + bint PyArray_IsZeroDim(object) + # Cannot be supported due to ## ## in macro: + # bint PyArray_IsScalar(object, verbatim work) + bint PyArray_CheckScalar(object) + bint PyArray_IsPythonNumber(object) + bint PyArray_IsPythonScalar(object) + bint PyArray_IsAnyScalar(object) + bint PyArray_CheckAnyScalar(object) + + ndarray PyArray_GETCONTIGUOUS(ndarray) + bint PyArray_SAMESHAPE(ndarray, ndarray) nogil + npy_intp PyArray_SIZE(ndarray) nogil + npy_intp PyArray_NBYTES(ndarray) nogil + + object PyArray_FROM_O(object) + object PyArray_FROM_OF(object m, int flags) + object PyArray_FROM_OT(object m, int type) + object PyArray_FROM_OTF(object m, int type, int flags) + object PyArray_FROMANY(object m, int type, int min, int max, int flags) + object PyArray_ZEROS(int nd, npy_intp* dims, int type, int fortran) + object PyArray_EMPTY(int nd, npy_intp* dims, int type, int fortran) + void PyArray_FILLWBYTE(ndarray, int val) + object PyArray_ContiguousFromAny(op, int, int min_depth, int max_depth) + unsigned char PyArray_EquivArrTypes(ndarray a1, ndarray a2) + bint PyArray_EquivByteorders(int b1, int b2) nogil + object PyArray_SimpleNew(int nd, npy_intp* dims, int typenum) + object PyArray_SimpleNewFromData(int nd, npy_intp* dims, int typenum, void* data) + #object PyArray_SimpleNewFromDescr(int nd, npy_intp* dims, dtype descr) + object PyArray_ToScalar(void* data, ndarray arr) + + void* PyArray_GETPTR1(ndarray m, npy_intp i) nogil + void* PyArray_GETPTR2(ndarray m, npy_intp i, npy_intp j) nogil + void* PyArray_GETPTR3(ndarray m, npy_intp i, npy_intp j, npy_intp k) nogil + void* PyArray_GETPTR4(ndarray m, npy_intp i, npy_intp j, npy_intp k, npy_intp l) nogil + + # Cannot be supported due to out arg + # void PyArray_DESCR_REPLACE(descr) + + + object PyArray_Copy(ndarray) + object PyArray_FromObject(object op, int type, int min_depth, int max_depth) + object PyArray_ContiguousFromObject(object op, int type, int min_depth, int max_depth) + object PyArray_CopyFromObject(object op, int type, int min_depth, int max_depth) + + object PyArray_Cast(ndarray mp, int type_num) + object PyArray_Take(ndarray ap, object items, int axis) + object PyArray_Put(ndarray ap, object items, object values) + + void PyArray_ITER_RESET(flatiter it) nogil + void PyArray_ITER_NEXT(flatiter it) nogil + void PyArray_ITER_GOTO(flatiter it, npy_intp* destination) nogil + void PyArray_ITER_GOTO1D(flatiter it, npy_intp ind) nogil + void* PyArray_ITER_DATA(flatiter it) nogil + bint PyArray_ITER_NOTDONE(flatiter it) nogil + + void PyArray_MultiIter_RESET(broadcast multi) nogil + void PyArray_MultiIter_NEXT(broadcast multi) nogil + void PyArray_MultiIter_GOTO(broadcast multi, npy_intp dest) nogil + void PyArray_MultiIter_GOTO1D(broadcast multi, npy_intp ind) nogil + void* PyArray_MultiIter_DATA(broadcast multi, npy_intp i) nogil + void PyArray_MultiIter_NEXTi(broadcast multi, npy_intp i) nogil + bint PyArray_MultiIter_NOTDONE(broadcast multi) nogil + npy_intp PyArray_MultiIter_SIZE(broadcast multi) nogil + int PyArray_MultiIter_NDIM(broadcast multi) nogil + npy_intp PyArray_MultiIter_INDEX(broadcast multi) nogil + int PyArray_MultiIter_NUMITER(broadcast multi) nogil + npy_intp* PyArray_MultiIter_DIMS(broadcast multi) nogil + void** PyArray_MultiIter_ITERS(broadcast multi) nogil + + # Functions from __multiarray_api.h + + # Functions taking dtype and returning object/ndarray are disabled + # for now as they steal dtype references. I'm conservative and disable + # more than is probably needed until it can be checked further. + int PyArray_INCREF (ndarray) except * # uses PyArray_Item_INCREF... + int PyArray_XDECREF (ndarray) except * # uses PyArray_Item_DECREF... + dtype PyArray_DescrFromType (int) + object PyArray_TypeObjectFromType (int) + char * PyArray_Zero (ndarray) + char * PyArray_One (ndarray) + #object PyArray_CastToType (ndarray, dtype, int) + int PyArray_CanCastSafely (int, int) # writes errors + npy_bool PyArray_CanCastTo (dtype, dtype) # writes errors + int PyArray_ObjectType (object, int) except 0 + dtype PyArray_DescrFromObject (object, dtype) + #ndarray* PyArray_ConvertToCommonType (object, int *) + dtype PyArray_DescrFromScalar (object) + dtype PyArray_DescrFromTypeObject (object) + npy_intp PyArray_Size (object) + #object PyArray_Scalar (void *, dtype, object) + #object PyArray_FromScalar (object, dtype) + void PyArray_ScalarAsCtype (object, void *) + #int PyArray_CastScalarToCtype (object, void *, dtype) + #int PyArray_CastScalarDirect (object, dtype, void *, int) + #PyArray_VectorUnaryFunc * PyArray_GetCastFunc (dtype, int) + #object PyArray_FromAny (object, dtype, int, int, int, object) + object PyArray_EnsureArray (object) + object PyArray_EnsureAnyArray (object) + #object PyArray_FromFile (stdio.FILE *, dtype, npy_intp, char *) + #object PyArray_FromString (char *, npy_intp, dtype, npy_intp, char *) + #object PyArray_FromBuffer (object, dtype, npy_intp, npy_intp) + #object PyArray_FromIter (object, dtype, npy_intp) + object PyArray_Return (ndarray) + #object PyArray_GetField (ndarray, dtype, int) + #int PyArray_SetField (ndarray, dtype, int, object) except -1 + object PyArray_Byteswap (ndarray, npy_bool) + object PyArray_Resize (ndarray, PyArray_Dims *, int, NPY_ORDER) + int PyArray_CopyInto (ndarray, ndarray) except -1 + int PyArray_CopyAnyInto (ndarray, ndarray) except -1 + int PyArray_CopyObject (ndarray, object) except -1 + object PyArray_NewCopy (ndarray, NPY_ORDER) + object PyArray_ToList (ndarray) + object PyArray_ToString (ndarray, NPY_ORDER) + int PyArray_ToFile (ndarray, stdio.FILE *, char *, char *) except -1 + int PyArray_Dump (object, object, int) except -1 + object PyArray_Dumps (object, int) + int PyArray_ValidType (int) # Cannot error + void PyArray_UpdateFlags (ndarray, int) + object PyArray_New (type, int, npy_intp *, int, npy_intp *, void *, int, int, object) + #object PyArray_NewFromDescr (type, dtype, int, npy_intp *, npy_intp *, void *, int, object) + #dtype PyArray_DescrNew (dtype) + dtype PyArray_DescrNewFromType (int) + double PyArray_GetPriority (object, double) # clears errors as of 1.25 + object PyArray_IterNew (object) + object PyArray_MultiIterNew (int, ...) + + int PyArray_PyIntAsInt (object) except? -1 + npy_intp PyArray_PyIntAsIntp (object) + int PyArray_Broadcast (broadcast) except -1 + int PyArray_FillWithScalar (ndarray, object) except -1 + npy_bool PyArray_CheckStrides (int, int, npy_intp, npy_intp, npy_intp *, npy_intp *) + dtype PyArray_DescrNewByteorder (dtype, char) + object PyArray_IterAllButAxis (object, int *) + #object PyArray_CheckFromAny (object, dtype, int, int, int, object) + #object PyArray_FromArray (ndarray, dtype, int) + object PyArray_FromInterface (object) + object PyArray_FromStructInterface (object) + #object PyArray_FromArrayAttr (object, dtype, object) + #NPY_SCALARKIND PyArray_ScalarKind (int, ndarray*) + int PyArray_CanCoerceScalar (int, int, NPY_SCALARKIND) + npy_bool PyArray_CanCastScalar (type, type) + int PyArray_RemoveSmallest (broadcast) except -1 + int PyArray_ElementStrides (object) + void PyArray_Item_INCREF (char *, dtype) except * + void PyArray_Item_XDECREF (char *, dtype) except * + object PyArray_Transpose (ndarray, PyArray_Dims *) + object PyArray_TakeFrom (ndarray, object, int, ndarray, NPY_CLIPMODE) + object PyArray_PutTo (ndarray, object, object, NPY_CLIPMODE) + object PyArray_PutMask (ndarray, object, object) + object PyArray_Repeat (ndarray, object, int) + object PyArray_Choose (ndarray, object, ndarray, NPY_CLIPMODE) + int PyArray_Sort (ndarray, int, NPY_SORTKIND) except -1 + object PyArray_ArgSort (ndarray, int, NPY_SORTKIND) + object PyArray_SearchSorted (ndarray, object, NPY_SEARCHSIDE, PyObject *) + object PyArray_ArgMax (ndarray, int, ndarray) + object PyArray_ArgMin (ndarray, int, ndarray) + object PyArray_Reshape (ndarray, object) + object PyArray_Newshape (ndarray, PyArray_Dims *, NPY_ORDER) + object PyArray_Squeeze (ndarray) + #object PyArray_View (ndarray, dtype, type) + object PyArray_SwapAxes (ndarray, int, int) + object PyArray_Max (ndarray, int, ndarray) + object PyArray_Min (ndarray, int, ndarray) + object PyArray_Ptp (ndarray, int, ndarray) + object PyArray_Mean (ndarray, int, int, ndarray) + object PyArray_Trace (ndarray, int, int, int, int, ndarray) + object PyArray_Diagonal (ndarray, int, int, int) + object PyArray_Clip (ndarray, object, object, ndarray) + object PyArray_Conjugate (ndarray, ndarray) + object PyArray_Nonzero (ndarray) + object PyArray_Std (ndarray, int, int, ndarray, int) + object PyArray_Sum (ndarray, int, int, ndarray) + object PyArray_CumSum (ndarray, int, int, ndarray) + object PyArray_Prod (ndarray, int, int, ndarray) + object PyArray_CumProd (ndarray, int, int, ndarray) + object PyArray_All (ndarray, int, ndarray) + object PyArray_Any (ndarray, int, ndarray) + object PyArray_Compress (ndarray, object, int, ndarray) + object PyArray_Flatten (ndarray, NPY_ORDER) + object PyArray_Ravel (ndarray, NPY_ORDER) + npy_intp PyArray_MultiplyList (npy_intp *, int) + int PyArray_MultiplyIntList (int *, int) + void * PyArray_GetPtr (ndarray, npy_intp*) + int PyArray_CompareLists (npy_intp *, npy_intp *, int) + #int PyArray_AsCArray (object*, void *, npy_intp *, int, dtype) + int PyArray_Free (object, void *) + #int PyArray_Converter (object, object*) + int PyArray_IntpFromSequence (object, npy_intp *, int) except -1 + object PyArray_Concatenate (object, int) + object PyArray_InnerProduct (object, object) + object PyArray_MatrixProduct (object, object) + object PyArray_Correlate (object, object, int) + #int PyArray_DescrConverter (object, dtype*) except 0 + #int PyArray_DescrConverter2 (object, dtype*) except 0 + int PyArray_IntpConverter (object, PyArray_Dims *) except 0 + #int PyArray_BufferConverter (object, chunk) except 0 + int PyArray_AxisConverter (object, int *) except 0 + int PyArray_BoolConverter (object, npy_bool *) except 0 + int PyArray_ByteorderConverter (object, char *) except 0 + int PyArray_OrderConverter (object, NPY_ORDER *) except 0 + unsigned char PyArray_EquivTypes (dtype, dtype) # clears errors + #object PyArray_Zeros (int, npy_intp *, dtype, int) + #object PyArray_Empty (int, npy_intp *, dtype, int) + object PyArray_Where (object, object, object) + object PyArray_Arange (double, double, double, int) + #object PyArray_ArangeObj (object, object, object, dtype) + int PyArray_SortkindConverter (object, NPY_SORTKIND *) except 0 + object PyArray_LexSort (object, int) + object PyArray_Round (ndarray, int, ndarray) + unsigned char PyArray_EquivTypenums (int, int) + int PyArray_RegisterDataType (dtype) except -1 + int PyArray_RegisterCastFunc (dtype, int, PyArray_VectorUnaryFunc *) except -1 + int PyArray_RegisterCanCast (dtype, int, NPY_SCALARKIND) except -1 + #void PyArray_InitArrFuncs (PyArray_ArrFuncs *) + object PyArray_IntTupleFromIntp (int, npy_intp *) + int PyArray_ClipmodeConverter (object, NPY_CLIPMODE *) except 0 + #int PyArray_OutputConverter (object, ndarray*) except 0 + object PyArray_BroadcastToShape (object, npy_intp *, int) + #int PyArray_DescrAlignConverter (object, dtype*) except 0 + #int PyArray_DescrAlignConverter2 (object, dtype*) except 0 + int PyArray_SearchsideConverter (object, void *) except 0 + object PyArray_CheckAxis (ndarray, int *, int) + npy_intp PyArray_OverflowMultiplyList (npy_intp *, int) + int PyArray_SetBaseObject(ndarray, base) except -1 # NOTE: steals a reference to base! Use "set_array_base()" instead. + + # The memory handler functions require the NumPy 1.22 API + # and may require defining NPY_TARGET_VERSION + ctypedef struct PyDataMemAllocator: + void *ctx + void* (*malloc) (void *ctx, size_t size) + void* (*calloc) (void *ctx, size_t nelem, size_t elsize) + void* (*realloc) (void *ctx, void *ptr, size_t new_size) + void (*free) (void *ctx, void *ptr, size_t size) + + ctypedef struct PyDataMem_Handler: + char* name + npy_uint8 version + PyDataMemAllocator allocator + + object PyDataMem_SetHandler(object handler) + object PyDataMem_GetHandler() + + # additional datetime related functions are defined below + + +# Typedefs that matches the runtime dtype objects in +# the numpy module. + +# The ones that are commented out needs an IFDEF function +# in Cython to enable them only on the right systems. + +ctypedef npy_int8 int8_t +ctypedef npy_int16 int16_t +ctypedef npy_int32 int32_t +ctypedef npy_int64 int64_t +#ctypedef npy_int96 int96_t +#ctypedef npy_int128 int128_t + +ctypedef npy_uint8 uint8_t +ctypedef npy_uint16 uint16_t +ctypedef npy_uint32 uint32_t +ctypedef npy_uint64 uint64_t +#ctypedef npy_uint96 uint96_t +#ctypedef npy_uint128 uint128_t + +ctypedef npy_float32 float32_t +ctypedef npy_float64 float64_t +#ctypedef npy_float80 float80_t +#ctypedef npy_float128 float128_t + +ctypedef float complex complex64_t +ctypedef double complex complex128_t + +ctypedef npy_longlong longlong_t +ctypedef npy_ulonglong ulonglong_t + +ctypedef npy_intp intp_t +ctypedef npy_uintp uintp_t + +ctypedef npy_double float_t +ctypedef npy_double double_t +ctypedef npy_longdouble longdouble_t + +ctypedef float complex cfloat_t +ctypedef double complex cdouble_t +ctypedef double complex complex_t +ctypedef long double complex clongdouble_t + +cdef inline object PyArray_MultiIterNew1(a): + return PyArray_MultiIterNew(1, a) + +cdef inline object PyArray_MultiIterNew2(a, b): + return PyArray_MultiIterNew(2, a, b) + +cdef inline object PyArray_MultiIterNew3(a, b, c): + return PyArray_MultiIterNew(3, a, b, c) + +cdef inline object PyArray_MultiIterNew4(a, b, c, d): + return PyArray_MultiIterNew(4, a, b, c, d) + +cdef inline object PyArray_MultiIterNew5(a, b, c, d, e): + return PyArray_MultiIterNew(5, a, b, c, d, e) + +cdef inline tuple PyDataType_SHAPE(dtype d): + if PyDataType_HASSUBARRAY(d): + return d.subarray.shape + else: + return () + + +cdef extern from "numpy/ndarrayobject.h": + PyTypeObject PyTimedeltaArrType_Type + PyTypeObject PyDatetimeArrType_Type + ctypedef int64_t npy_timedelta + ctypedef int64_t npy_datetime + +cdef extern from "numpy/ndarraytypes.h": + ctypedef struct PyArray_DatetimeMetaData: + NPY_DATETIMEUNIT base + int64_t num + + ctypedef struct npy_datetimestruct: + int64_t year + int32_t month, day, hour, min, sec, us, ps, as + + # Iterator API added in v1.6 + # + # These don't match the definition in the C API because Cython can't wrap + # function pointers that return functions. + # https://github.com/cython/cython/issues/6720 + ctypedef int (*NpyIter_IterNextFunc "NpyIter_IterNextFunc *")(NpyIter* it) noexcept nogil + ctypedef void (*NpyIter_GetMultiIndexFunc "NpyIter_GetMultiIndexFunc *")(NpyIter* it, npy_intp* outcoords) noexcept nogil + +cdef extern from "numpy/arrayscalars.h": + + # abstract types + ctypedef class numpy.generic [object PyObject]: + pass + ctypedef class numpy.number [object PyObject]: + pass + ctypedef class numpy.integer [object PyObject]: + pass + ctypedef class numpy.signedinteger [object PyObject]: + pass + ctypedef class numpy.unsignedinteger [object PyObject]: + pass + ctypedef class numpy.inexact [object PyObject]: + pass + ctypedef class numpy.floating [object PyObject]: + pass + ctypedef class numpy.complexfloating [object PyObject]: + pass + ctypedef class numpy.flexible [object PyObject]: + pass + ctypedef class numpy.character [object PyObject]: + pass + + ctypedef struct PyDatetimeScalarObject: + # PyObject_HEAD + npy_datetime obval + PyArray_DatetimeMetaData obmeta + + ctypedef struct PyTimedeltaScalarObject: + # PyObject_HEAD + npy_timedelta obval + PyArray_DatetimeMetaData obmeta + + ctypedef enum NPY_DATETIMEUNIT: + NPY_FR_Y + NPY_FR_M + NPY_FR_W + NPY_FR_D + NPY_FR_B + NPY_FR_h + NPY_FR_m + NPY_FR_s + NPY_FR_ms + NPY_FR_us + NPY_FR_ns + NPY_FR_ps + NPY_FR_fs + NPY_FR_as + NPY_FR_GENERIC + + +cdef extern from "numpy/arrayobject.h": + # These are part of the C-API defined in `__multiarray_api.h` + + # NumPy internal definitions in datetime_strings.c: + int get_datetime_iso_8601_strlen "NpyDatetime_GetDatetimeISO8601StrLen" ( + int local, NPY_DATETIMEUNIT base) + int make_iso_8601_datetime "NpyDatetime_MakeISO8601Datetime" ( + npy_datetimestruct *dts, char *outstr, npy_intp outlen, + int local, int utc, NPY_DATETIMEUNIT base, int tzoffset, + NPY_CASTING casting) except -1 + + # NumPy internal definition in datetime.c: + # May return 1 to indicate that object does not appear to be a datetime + # (returns 0 on success). + int convert_pydatetime_to_datetimestruct "NpyDatetime_ConvertPyDateTimeToDatetimeStruct" ( + PyObject *obj, npy_datetimestruct *out, + NPY_DATETIMEUNIT *out_bestunit, int apply_tzinfo) except -1 + int convert_datetime64_to_datetimestruct "NpyDatetime_ConvertDatetime64ToDatetimeStruct" ( + PyArray_DatetimeMetaData *meta, npy_datetime dt, + npy_datetimestruct *out) except -1 + int convert_datetimestruct_to_datetime64 "NpyDatetime_ConvertDatetimeStructToDatetime64"( + PyArray_DatetimeMetaData *meta, const npy_datetimestruct *dts, + npy_datetime *out) except -1 + + +# +# ufunc API +# + +cdef extern from "numpy/ufuncobject.h": + + ctypedef void (*PyUFuncGenericFunction) (char **, npy_intp *, npy_intp *, void *) + + ctypedef class numpy.ufunc [object PyUFuncObject, check_size ignore]: + cdef: + int nin, nout, nargs + int identity + PyUFuncGenericFunction *functions + void **data + int ntypes + int check_return + char *name + char *types + char *doc + void *ptr + PyObject *obj + PyObject *userloops + + cdef enum: + PyUFunc_Zero + PyUFunc_One + PyUFunc_None + UFUNC_FPE_DIVIDEBYZERO + UFUNC_FPE_OVERFLOW + UFUNC_FPE_UNDERFLOW + UFUNC_FPE_INVALID + + object PyUFunc_FromFuncAndData(PyUFuncGenericFunction *, + void **, char *, int, int, int, int, char *, char *, int) + int PyUFunc_RegisterLoopForType(ufunc, int, + PyUFuncGenericFunction, int *, void *) except -1 + void PyUFunc_f_f_As_d_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_d_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_f_f \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_g_g \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_F_F_As_D_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_F_F \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_D_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_G_G \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_O_O \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_ff_f_As_dd_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_ff_f \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_dd_d \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_gg_g \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_FF_F_As_DD_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_DD_D \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_FF_F \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_GG_G \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_OO_O \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_O_O_method \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_OO_O_method \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_On_Om \ + (char **, npy_intp *, npy_intp *, void *) + void PyUFunc_clearfperr() + int PyUFunc_getfperr() + int PyUFunc_ReplaceLoopBySignature \ + (ufunc, PyUFuncGenericFunction, int *, PyUFuncGenericFunction *) + object PyUFunc_FromFuncAndDataAndSignature \ + (PyUFuncGenericFunction *, void **, char *, int, int, int, + int, char *, char *, int, char *) + + int _import_umath() except -1 + +cdef inline void set_array_base(ndarray arr, object base): + Py_INCREF(base) # important to do this before stealing the reference below! + PyArray_SetBaseObject(arr, base) + +cdef inline object get_array_base(ndarray arr): + base = PyArray_BASE(arr) + if base is NULL: + return None + return base + +# Versions of the import_* functions which are more suitable for +# Cython code. +cdef inline int import_array() except -1: + try: + __pyx_import_array() + except Exception: + raise ImportError("numpy._core.multiarray failed to import") + +cdef inline int import_umath() except -1: + try: + _import_umath() + except Exception: + raise ImportError("numpy._core.umath failed to import") + +cdef inline int import_ufunc() except -1: + try: + _import_umath() + except Exception: + raise ImportError("numpy._core.umath failed to import") + + +cdef inline bint is_timedelta64_object(object obj): + """ + Cython equivalent of `isinstance(obj, np.timedelta64)` + + Parameters + ---------- + obj : object + + Returns + ------- + bool + """ + return PyObject_TypeCheck(obj, &PyTimedeltaArrType_Type) + + +cdef inline bint is_datetime64_object(object obj): + """ + Cython equivalent of `isinstance(obj, np.datetime64)` + + Parameters + ---------- + obj : object + + Returns + ------- + bool + """ + return PyObject_TypeCheck(obj, &PyDatetimeArrType_Type) + + +cdef inline npy_datetime get_datetime64_value(object obj) nogil: + """ + returns the int64 value underlying scalar numpy datetime64 object + + Note that to interpret this as a datetime, the corresponding unit is + also needed. That can be found using `get_datetime64_unit`. + """ + return (obj).obval + + +cdef inline npy_timedelta get_timedelta64_value(object obj) nogil: + """ + returns the int64 value underlying scalar numpy timedelta64 object + """ + return (obj).obval + + +cdef inline NPY_DATETIMEUNIT get_datetime64_unit(object obj) nogil: + """ + returns the unit part of the dtype for a numpy datetime64 object. + """ + return (obj).obmeta.base + + +cdef extern from "numpy/arrayobject.h": + + ctypedef struct NpyIter: + pass + + cdef enum: + NPY_FAIL + NPY_SUCCEED + + cdef enum: + # Track an index representing C order + NPY_ITER_C_INDEX + # Track an index representing Fortran order + NPY_ITER_F_INDEX + # Track a multi-index + NPY_ITER_MULTI_INDEX + # User code external to the iterator does the 1-dimensional innermost loop + NPY_ITER_EXTERNAL_LOOP + # Convert all the operands to a common data type + NPY_ITER_COMMON_DTYPE + # Operands may hold references, requiring API access during iteration + NPY_ITER_REFS_OK + # Zero-sized operands should be permitted, iteration checks IterSize for 0 + NPY_ITER_ZEROSIZE_OK + # Permits reductions (size-0 stride with dimension size > 1) + NPY_ITER_REDUCE_OK + # Enables sub-range iteration + NPY_ITER_RANGED + # Enables buffering + NPY_ITER_BUFFERED + # When buffering is enabled, grows the inner loop if possible + NPY_ITER_GROWINNER + # Delay allocation of buffers until first Reset* call + NPY_ITER_DELAY_BUFALLOC + # When NPY_KEEPORDER is specified, disable reversing negative-stride axes + NPY_ITER_DONT_NEGATE_STRIDES + NPY_ITER_COPY_IF_OVERLAP + # The operand will be read from and written to + NPY_ITER_READWRITE + # The operand will only be read from + NPY_ITER_READONLY + # The operand will only be written to + NPY_ITER_WRITEONLY + # The operand's data must be in native byte order + NPY_ITER_NBO + # The operand's data must be aligned + NPY_ITER_ALIGNED + # The operand's data must be contiguous (within the inner loop) + NPY_ITER_CONTIG + # The operand may be copied to satisfy requirements + NPY_ITER_COPY + # The operand may be copied with WRITEBACKIFCOPY to satisfy requirements + NPY_ITER_UPDATEIFCOPY + # Allocate the operand if it is NULL + NPY_ITER_ALLOCATE + # If an operand is allocated, don't use any subtype + NPY_ITER_NO_SUBTYPE + # This is a virtual array slot, operand is NULL but temporary data is there + NPY_ITER_VIRTUAL + # Require that the dimension match the iterator dimensions exactly + NPY_ITER_NO_BROADCAST + # A mask is being used on this array, affects buffer -> array copy + NPY_ITER_WRITEMASKED + # This array is the mask for all WRITEMASKED operands + NPY_ITER_ARRAYMASK + # Assume iterator order data access for COPY_IF_OVERLAP + NPY_ITER_OVERLAP_ASSUME_ELEMENTWISE + + # construction and destruction functions + NpyIter* NpyIter_New(ndarray arr, npy_uint32 flags, NPY_ORDER order, + NPY_CASTING casting, dtype datatype) except NULL + NpyIter* NpyIter_MultiNew(npy_intp nop, PyArrayObject** op, npy_uint32 flags, + NPY_ORDER order, NPY_CASTING casting, npy_uint32* + op_flags, PyArray_Descr** op_dtypes) except NULL + NpyIter* NpyIter_AdvancedNew(npy_intp nop, PyArrayObject** op, + npy_uint32 flags, NPY_ORDER order, + NPY_CASTING casting, npy_uint32* op_flags, + PyArray_Descr** op_dtypes, int oa_ndim, + int** op_axes, const npy_intp* itershape, + npy_intp buffersize) except NULL + NpyIter* NpyIter_Copy(NpyIter* it) except NULL + int NpyIter_RemoveAxis(NpyIter* it, int axis) except NPY_FAIL + int NpyIter_RemoveMultiIndex(NpyIter* it) except NPY_FAIL + int NpyIter_EnableExternalLoop(NpyIter* it) except NPY_FAIL + int NpyIter_Deallocate(NpyIter* it) except NPY_FAIL + int NpyIter_Reset(NpyIter* it, char** errmsg) except NPY_FAIL + int NpyIter_ResetToIterIndexRange(NpyIter* it, npy_intp istart, + npy_intp iend, char** errmsg) except NPY_FAIL + int NpyIter_ResetBasePointers(NpyIter* it, char** baseptrs, char** errmsg) except NPY_FAIL + int NpyIter_GotoMultiIndex(NpyIter* it, const npy_intp* multi_index) except NPY_FAIL + int NpyIter_GotoIndex(NpyIter* it, npy_intp index) except NPY_FAIL + npy_intp NpyIter_GetIterSize(NpyIter* it) nogil + npy_intp NpyIter_GetIterIndex(NpyIter* it) nogil + void NpyIter_GetIterIndexRange(NpyIter* it, npy_intp* istart, + npy_intp* iend) nogil + int NpyIter_GotoIterIndex(NpyIter* it, npy_intp iterindex) except NPY_FAIL + npy_bool NpyIter_HasDelayedBufAlloc(NpyIter* it) nogil + npy_bool NpyIter_HasExternalLoop(NpyIter* it) nogil + npy_bool NpyIter_HasMultiIndex(NpyIter* it) nogil + npy_bool NpyIter_HasIndex(NpyIter* it) nogil + npy_bool NpyIter_RequiresBuffering(NpyIter* it) nogil + npy_bool NpyIter_IsBuffered(NpyIter* it) nogil + npy_bool NpyIter_IsGrowInner(NpyIter* it) nogil + npy_intp NpyIter_GetBufferSize(NpyIter* it) nogil + int NpyIter_GetNDim(NpyIter* it) nogil + int NpyIter_GetNOp(NpyIter* it) nogil + npy_intp* NpyIter_GetAxisStrideArray(NpyIter* it, int axis) except NULL + int NpyIter_GetShape(NpyIter* it, npy_intp* outshape) nogil + PyArray_Descr** NpyIter_GetDescrArray(NpyIter* it) + PyArrayObject** NpyIter_GetOperandArray(NpyIter* it) + ndarray NpyIter_GetIterView(NpyIter* it, npy_intp i) + void NpyIter_GetReadFlags(NpyIter* it, char* outreadflags) + void NpyIter_GetWriteFlags(NpyIter* it, char* outwriteflags) + int NpyIter_CreateCompatibleStrides(NpyIter* it, npy_intp itemsize, + npy_intp* outstrides) except NPY_FAIL + npy_bool NpyIter_IsFirstVisit(NpyIter* it, int iop) nogil + # functions for iterating an NpyIter object + # + # These don't match the definition in the C API because Cython can't wrap + # function pointers that return functions. + NpyIter_IterNextFunc* NpyIter_GetIterNext(NpyIter* it, char** errmsg) except NULL + NpyIter_GetMultiIndexFunc* NpyIter_GetGetMultiIndex(NpyIter* it, + char** errmsg) except NULL + char** NpyIter_GetDataPtrArray(NpyIter* it) nogil + char** NpyIter_GetInitialDataPtrArray(NpyIter* it) nogil + npy_intp* NpyIter_GetIndexPtr(NpyIter* it) + npy_intp* NpyIter_GetInnerStrideArray(NpyIter* it) nogil + npy_intp* NpyIter_GetInnerLoopSizePtr(NpyIter* it) nogil + void NpyIter_GetInnerFixedStrideArray(NpyIter* it, npy_intp* outstrides) nogil + npy_bool NpyIter_IterationNeedsAPI(NpyIter* it) nogil + void NpyIter_DebugPrint(NpyIter* it) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..2a4fd03b6a445cb98a214c28eff14b157aaea458 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.py @@ -0,0 +1,547 @@ +""" +NumPy +===== + +Provides + 1. An array object of arbitrary homogeneous items + 2. Fast mathematical operations over arrays + 3. Linear Algebra, Fourier Transforms, Random Number Generation + +How to use the documentation +---------------------------- +Documentation is available in two forms: docstrings provided +with the code, and a loose standing reference guide, available from +`the NumPy homepage `_. + +We recommend exploring the docstrings using +`IPython `_, an advanced Python shell with +TAB-completion and introspection capabilities. See below for further +instructions. + +The docstring examples assume that `numpy` has been imported as ``np``:: + + >>> import numpy as np + +Code snippets are indicated by three greater-than signs:: + + >>> x = 42 + >>> x = x + 1 + +Use the built-in ``help`` function to view a function's docstring:: + + >>> help(np.sort) + ... # doctest: +SKIP + +For some objects, ``np.info(obj)`` may provide additional help. This is +particularly true if you see the line "Help on ufunc object:" at the top +of the help() page. Ufuncs are implemented in C, not Python, for speed. +The native Python help() does not know how to view their help, but our +np.info() function does. + +Available subpackages +--------------------- +lib + Basic functions used by several sub-packages. +random + Core Random Tools +linalg + Core Linear Algebra Tools +fft + Core FFT routines +polynomial + Polynomial tools +testing + NumPy testing tools +distutils + Enhancements to distutils with support for + Fortran compilers support and more (for Python <= 3.11) + +Utilities +--------- +test + Run numpy unittests +show_config + Show numpy build configuration +__version__ + NumPy version string + +Viewing documentation using IPython +----------------------------------- + +Start IPython and import `numpy` usually under the alias ``np``: `import +numpy as np`. Then, directly past or use the ``%cpaste`` magic to paste +examples into the shell. To see which functions are available in `numpy`, +type ``np.`` (where ```` refers to the TAB key), or use +``np.*cos*?`` (where ```` refers to the ENTER key) to narrow +down the list. To view the docstring for a function, use +``np.cos?`` (to view the docstring) and ``np.cos??`` (to view +the source code). + +Copies vs. in-place operation +----------------------------- +Most of the functions in `numpy` return a copy of the array argument +(e.g., `np.sort`). In-place versions of these functions are often +available as array methods, i.e. ``x = np.array([1,2,3]); x.sort()``. +Exceptions to this rule are documented. + +""" +import os +import sys +import warnings + +from ._globals import _NoValue, _CopyMode +from ._expired_attrs_2_0 import __expired_attributes__ + + +# If a version with git hash was stored, use that instead +from . import version +from .version import __version__ + +# We first need to detect if we're being called as part of the numpy setup +# procedure itself in a reliable manner. +try: + __NUMPY_SETUP__ +except NameError: + __NUMPY_SETUP__ = False + +if __NUMPY_SETUP__: + sys.stderr.write('Running from numpy source directory.\n') +else: + # Allow distributors to run custom init code before importing numpy._core + from . import _distributor_init + + try: + from numpy.__config__ import show_config + except ImportError as e: + msg = """Error importing numpy: you should not try to import numpy from + its source directory; please exit the numpy source tree, and relaunch + your python interpreter from there.""" + raise ImportError(msg) from e + + from . import _core + from ._core import ( + False_, ScalarType, True_, + abs, absolute, acos, acosh, add, all, allclose, + amax, amin, any, arange, arccos, arccosh, arcsin, arcsinh, + arctan, arctan2, arctanh, argmax, argmin, argpartition, argsort, + argwhere, around, array, array2string, array_equal, array_equiv, + array_repr, array_str, asanyarray, asarray, ascontiguousarray, + asfortranarray, asin, asinh, atan, atanh, atan2, astype, atleast_1d, + atleast_2d, atleast_3d, base_repr, binary_repr, bitwise_and, + bitwise_count, bitwise_invert, bitwise_left_shift, bitwise_not, + bitwise_or, bitwise_right_shift, bitwise_xor, block, bool, bool_, + broadcast, busday_count, busday_offset, busdaycalendar, byte, bytes_, + can_cast, cbrt, cdouble, ceil, character, choose, clip, clongdouble, + complex128, complex64, complexfloating, compress, concat, concatenate, + conj, conjugate, convolve, copysign, copyto, correlate, cos, cosh, + count_nonzero, cross, csingle, cumprod, cumsum, cumulative_prod, + cumulative_sum, datetime64, datetime_as_string, datetime_data, + deg2rad, degrees, diagonal, divide, divmod, dot, double, dtype, e, + einsum, einsum_path, empty, empty_like, equal, errstate, euler_gamma, + exp, exp2, expm1, fabs, finfo, flatiter, flatnonzero, flexible, + float16, float32, float64, float_power, floating, floor, floor_divide, + fmax, fmin, fmod, format_float_positional, format_float_scientific, + frexp, from_dlpack, frombuffer, fromfile, fromfunction, fromiter, + frompyfunc, fromstring, full, full_like, gcd, generic, geomspace, + get_printoptions, getbufsize, geterr, geterrcall, greater, + greater_equal, half, heaviside, hstack, hypot, identity, iinfo, + indices, inexact, inf, inner, int16, int32, int64, int8, int_, intc, + integer, intp, invert, is_busday, isclose, isdtype, isfinite, + isfortran, isinf, isnan, isnat, isscalar, issubdtype, lcm, ldexp, + left_shift, less, less_equal, lexsort, linspace, little_endian, log, + log10, log1p, log2, logaddexp, logaddexp2, logical_and, logical_not, + logical_or, logical_xor, logspace, long, longdouble, longlong, matmul, + matvec, matrix_transpose, max, maximum, may_share_memory, mean, memmap, + min, min_scalar_type, minimum, mod, modf, moveaxis, multiply, nan, + ndarray, ndim, nditer, negative, nested_iters, newaxis, nextafter, + nonzero, not_equal, number, object_, ones, ones_like, outer, partition, + permute_dims, pi, positive, pow, power, printoptions, prod, + promote_types, ptp, put, putmask, rad2deg, radians, ravel, recarray, + reciprocal, record, remainder, repeat, require, reshape, resize, + result_type, right_shift, rint, roll, rollaxis, round, sctypeDict, + searchsorted, set_printoptions, setbufsize, seterr, seterrcall, shape, + shares_memory, short, sign, signbit, signedinteger, sin, single, sinh, + size, sort, spacing, sqrt, square, squeeze, stack, std, + str_, subtract, sum, swapaxes, take, tan, tanh, tensordot, + timedelta64, trace, transpose, true_divide, trunc, typecodes, ubyte, + ufunc, uint, uint16, uint32, uint64, uint8, uintc, uintp, ulong, + ulonglong, unsignedinteger, unstack, ushort, var, vdot, vecdot, + vecmat, void, vstack, where, zeros, zeros_like + ) + + # NOTE: It's still under discussion whether these aliases + # should be removed. + for ta in ["float96", "float128", "complex192", "complex256"]: + try: + globals()[ta] = getattr(_core, ta) + except AttributeError: + pass + del ta + + from . import lib + from .lib import scimath as emath + from .lib._histograms_impl import ( + histogram, histogram_bin_edges, histogramdd + ) + from .lib._nanfunctions_impl import ( + nanargmax, nanargmin, nancumprod, nancumsum, nanmax, nanmean, + nanmedian, nanmin, nanpercentile, nanprod, nanquantile, nanstd, + nansum, nanvar + ) + from .lib._function_base_impl import ( + select, piecewise, trim_zeros, copy, iterable, percentile, diff, + gradient, angle, unwrap, sort_complex, flip, rot90, extract, place, + vectorize, asarray_chkfinite, average, bincount, digitize, cov, + corrcoef, median, sinc, hamming, hanning, bartlett, blackman, + kaiser, trapezoid, trapz, i0, meshgrid, delete, insert, append, + interp, quantile + ) + from .lib._twodim_base_impl import ( + diag, diagflat, eye, fliplr, flipud, tri, triu, tril, vander, + histogram2d, mask_indices, tril_indices, tril_indices_from, + triu_indices, triu_indices_from + ) + from .lib._shape_base_impl import ( + apply_over_axes, apply_along_axis, array_split, column_stack, dsplit, + dstack, expand_dims, hsplit, kron, put_along_axis, row_stack, split, + take_along_axis, tile, vsplit + ) + from .lib._type_check_impl import ( + iscomplexobj, isrealobj, imag, iscomplex, isreal, nan_to_num, real, + real_if_close, typename, mintypecode, common_type + ) + from .lib._arraysetops_impl import ( + ediff1d, in1d, intersect1d, isin, setdiff1d, setxor1d, union1d, + unique, unique_all, unique_counts, unique_inverse, unique_values + ) + from .lib._ufunclike_impl import fix, isneginf, isposinf + from .lib._arraypad_impl import pad + from .lib._utils_impl import ( + show_runtime, get_include, info + ) + from .lib._stride_tricks_impl import ( + broadcast_arrays, broadcast_shapes, broadcast_to + ) + from .lib._polynomial_impl import ( + poly, polyint, polyder, polyadd, polysub, polymul, polydiv, polyval, + polyfit, poly1d, roots + ) + from .lib._npyio_impl import ( + savetxt, loadtxt, genfromtxt, load, save, savez, packbits, + savez_compressed, unpackbits, fromregex + ) + from .lib._index_tricks_impl import ( + diag_indices_from, diag_indices, fill_diagonal, ndindex, ndenumerate, + ix_, c_, r_, s_, ogrid, mgrid, unravel_index, ravel_multi_index, + index_exp + ) + + from . import matrixlib as _mat + from .matrixlib import ( + asmatrix, bmat, matrix + ) + + # public submodules are imported lazily, therefore are accessible from + # __getattr__. Note that `distutils` (deprecated) and `array_api` + # (experimental label) are not added here, because `from numpy import *` + # must not raise any warnings - that's too disruptive. + __numpy_submodules__ = { + "linalg", "fft", "dtypes", "random", "polynomial", "ma", + "exceptions", "lib", "ctypeslib", "testing", "typing", + "f2py", "test", "rec", "char", "core", "strings", + } + + # We build warning messages for former attributes + _msg = ( + "module 'numpy' has no attribute '{n}'.\n" + "`np.{n}` was a deprecated alias for the builtin `{n}`. " + "To avoid this error in existing code, use `{n}` by itself. " + "Doing this will not modify any behavior and is safe. {extended_msg}\n" + "The aliases was originally deprecated in NumPy 1.20; for more " + "details and guidance see the original release note at:\n" + " https://numpy.org/devdocs/release/1.20.0-notes.html#deprecations") + + _specific_msg = ( + "If you specifically wanted the numpy scalar type, use `np.{}` here.") + + _int_extended_msg = ( + "When replacing `np.{}`, you may wish to use e.g. `np.int64` " + "or `np.int32` to specify the precision. If you wish to review " + "your current use, check the release note link for " + "additional information.") + + _type_info = [ + ("object", ""), # The NumPy scalar only exists by name. + ("float", _specific_msg.format("float64")), + ("complex", _specific_msg.format("complex128")), + ("str", _specific_msg.format("str_")), + ("int", _int_extended_msg.format("int"))] + + __former_attrs__ = { + n: _msg.format(n=n, extended_msg=extended_msg) + for n, extended_msg in _type_info + } + + + # Some of these could be defined right away, but most were aliases to + # the Python objects and only removed in NumPy 1.24. Defining them should + # probably wait for NumPy 1.26 or 2.0. + # When defined, these should possibly not be added to `__all__` to avoid + # import with `from numpy import *`. + __future_scalars__ = {"str", "bytes", "object"} + + __array_api_version__ = "2023.12" + + from ._array_api_info import __array_namespace_info__ + + # now that numpy core module is imported, can initialize limits + _core.getlimits._register_known_types() + + __all__ = list( + __numpy_submodules__ | + set(_core.__all__) | + set(_mat.__all__) | + set(lib._histograms_impl.__all__) | + set(lib._nanfunctions_impl.__all__) | + set(lib._function_base_impl.__all__) | + set(lib._twodim_base_impl.__all__) | + set(lib._shape_base_impl.__all__) | + set(lib._type_check_impl.__all__) | + set(lib._arraysetops_impl.__all__) | + set(lib._ufunclike_impl.__all__) | + set(lib._arraypad_impl.__all__) | + set(lib._utils_impl.__all__) | + set(lib._stride_tricks_impl.__all__) | + set(lib._polynomial_impl.__all__) | + set(lib._npyio_impl.__all__) | + set(lib._index_tricks_impl.__all__) | + {"emath", "show_config", "__version__", "__array_namespace_info__"} + ) + + # Filter out Cython harmless warnings + warnings.filterwarnings("ignore", message="numpy.dtype size changed") + warnings.filterwarnings("ignore", message="numpy.ufunc size changed") + warnings.filterwarnings("ignore", message="numpy.ndarray size changed") + + def __getattr__(attr): + # Warn for expired attributes + import warnings + + if attr == "linalg": + import numpy.linalg as linalg + return linalg + elif attr == "fft": + import numpy.fft as fft + return fft + elif attr == "dtypes": + import numpy.dtypes as dtypes + return dtypes + elif attr == "random": + import numpy.random as random + return random + elif attr == "polynomial": + import numpy.polynomial as polynomial + return polynomial + elif attr == "ma": + import numpy.ma as ma + return ma + elif attr == "ctypeslib": + import numpy.ctypeslib as ctypeslib + return ctypeslib + elif attr == "exceptions": + import numpy.exceptions as exceptions + return exceptions + elif attr == "testing": + import numpy.testing as testing + return testing + elif attr == "matlib": + import numpy.matlib as matlib + return matlib + elif attr == "f2py": + import numpy.f2py as f2py + return f2py + elif attr == "typing": + import numpy.typing as typing + return typing + elif attr == "rec": + import numpy.rec as rec + return rec + elif attr == "char": + import numpy.char as char + return char + elif attr == "array_api": + raise AttributeError("`numpy.array_api` is not available from " + "numpy 2.0 onwards", name=None) + elif attr == "core": + import numpy.core as core + return core + elif attr == "strings": + import numpy.strings as strings + return strings + elif attr == "distutils": + if 'distutils' in __numpy_submodules__: + import numpy.distutils as distutils + return distutils + else: + raise AttributeError("`numpy.distutils` is not available from " + "Python 3.12 onwards", name=None) + + if attr in __future_scalars__: + # And future warnings for those that will change, but also give + # the AttributeError + warnings.warn( + f"In the future `np.{attr}` will be defined as the " + "corresponding NumPy scalar.", FutureWarning, stacklevel=2) + + if attr in __former_attrs__: + raise AttributeError(__former_attrs__[attr], name=None) + + if attr in __expired_attributes__: + raise AttributeError( + f"`np.{attr}` was removed in the NumPy 2.0 release. " + f"{__expired_attributes__[attr]}", + name=None + ) + + if attr == "chararray": + warnings.warn( + "`np.chararray` is deprecated and will be removed from " + "the main namespace in the future. Use an array with a string " + "or bytes dtype instead.", DeprecationWarning, stacklevel=2) + import numpy.char as char + return char.chararray + + raise AttributeError("module {!r} has no attribute " + "{!r}".format(__name__, attr)) + + def __dir__(): + public_symbols = ( + globals().keys() | __numpy_submodules__ + ) + public_symbols -= { + "matrixlib", "matlib", "tests", "conftest", "version", + "compat", "distutils", "array_api" + } + return list(public_symbols) + + # Pytest testing + from numpy._pytesttester import PytestTester + test = PytestTester(__name__) + del PytestTester + + def _sanity_check(): + """ + Quick sanity checks for common bugs caused by environment. + There are some cases e.g. with wrong BLAS ABI that cause wrong + results under specific runtime conditions that are not necessarily + achieved during test suite runs, and it is useful to catch those early. + + See https://github.com/numpy/numpy/issues/8577 and other + similar bug reports. + + """ + try: + x = ones(2, dtype=float32) + if not abs(x.dot(x) - float32(2.0)) < 1e-5: + raise AssertionError + except AssertionError: + msg = ("The current Numpy installation ({!r}) fails to " + "pass simple sanity checks. This can be caused for example " + "by incorrect BLAS library being linked in, or by mixing " + "package managers (pip, conda, apt, ...). Search closed " + "numpy issues for similar problems.") + raise RuntimeError(msg.format(__file__)) from None + + _sanity_check() + del _sanity_check + + def _mac_os_check(): + """ + Quick Sanity check for Mac OS look for accelerate build bugs. + Testing numpy polyfit calls init_dgelsd(LAPACK) + """ + try: + c = array([3., 2., 1.]) + x = linspace(0, 2, 5) + y = polyval(c, x) + _ = polyfit(x, y, 2, cov=True) + except ValueError: + pass + + if sys.platform == "darwin": + from . import exceptions + with warnings.catch_warnings(record=True) as w: + _mac_os_check() + # Throw runtime error, if the test failed Check for warning and error_message + if len(w) > 0: + for _wn in w: + if _wn.category is exceptions.RankWarning: + # Ignore other warnings, they may not be relevant (see gh-25433). + error_message = ( + f"{_wn.category.__name__}: {_wn.message}" + ) + msg = ( + "Polyfit sanity test emitted a warning, most likely due " + "to using a buggy Accelerate backend." + "\nIf you compiled yourself, more information is available at:" + "\nhttps://numpy.org/devdocs/building/index.html" + "\nOtherwise report this to the vendor " + "that provided NumPy.\n\n{}\n".format(error_message)) + raise RuntimeError(msg) + del _wn + del w + del _mac_os_check + + def hugepage_setup(): + """ + We usually use madvise hugepages support, but on some old kernels it + is slow and thus better avoided. Specifically kernel version 4.6 + had a bug fix which probably fixed this: + https://github.com/torvalds/linux/commit/7cf91a98e607c2f935dbcc177d70011e95b8faff + """ + use_hugepage = os.environ.get("NUMPY_MADVISE_HUGEPAGE", None) + if sys.platform == "linux" and use_hugepage is None: + # If there is an issue with parsing the kernel version, + # set use_hugepage to 0. Usage of LooseVersion will handle + # the kernel version parsing better, but avoided since it + # will increase the import time. + # See: #16679 for related discussion. + try: + use_hugepage = 1 + kernel_version = os.uname().release.split(".")[:2] + kernel_version = tuple(int(v) for v in kernel_version) + if kernel_version < (4, 6): + use_hugepage = 0 + except ValueError: + use_hugepage = 0 + elif use_hugepage is None: + # This is not Linux, so it should not matter, just enable anyway + use_hugepage = 1 + else: + use_hugepage = int(use_hugepage) + return use_hugepage + + # Note that this will currently only make a difference on Linux + _core.multiarray._set_madvise_hugepage(hugepage_setup()) + del hugepage_setup + + # Give a warning if NumPy is reloaded or imported on a sub-interpreter + # We do this from python, since the C-module may not be reloaded and + # it is tidier organized. + _core.multiarray._multiarray_umath._reload_guard() + + # TODO: Remove the environment variable entirely now that it is "weak" + if (os.environ.get("NPY_PROMOTION_STATE", "weak") != "weak"): + warnings.warn( + "NPY_PROMOTION_STATE was a temporary feature for NumPy 2.0 " + "transition and is ignored after NumPy 2.2.", + UserWarning, stacklevel=2) + + # Tell PyInstaller where to find hook-numpy.py + def _pyinstaller_hooks_dir(): + from pathlib import Path + return [str(Path(__file__).with_name("_pyinstaller").resolve())] + + +# Remove symbols imported for internal use +del os, sys, warnings diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..cbd77a128ab95641cc039e0309188cc40268cc98 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/__init__.pyi @@ -0,0 +1,5419 @@ +# ruff: noqa: I001 +import builtins +import sys +import mmap +import ctypes as ct +import array as _array +import datetime as dt +from abc import abstractmethod +from types import EllipsisType, ModuleType, TracebackType, MappingProxyType, GenericAlias +from decimal import Decimal +from fractions import Fraction +from uuid import UUID + +import numpy as np +from numpy.__config__ import show as show_config +from numpy._pytesttester import PytestTester +from numpy._core._internal import _ctypes + +from numpy._typing import ( + # Arrays + ArrayLike, + NDArray, + _SupportsArray, + _NestedSequence, + _ArrayLike, + _ArrayLikeBool_co, + _ArrayLikeUInt_co, + _ArrayLikeInt, + _ArrayLikeInt_co, + _ArrayLikeFloat64_co, + _ArrayLikeFloat_co, + _ArrayLikeComplex128_co, + _ArrayLikeComplex_co, + _ArrayLikeNumber_co, + _ArrayLikeObject_co, + _ArrayLikeBytes_co, + _ArrayLikeStr_co, + _ArrayLikeString_co, + _ArrayLikeTD64_co, + _ArrayLikeDT64_co, + # DTypes + DTypeLike, + _DTypeLike, + _DTypeLikeVoid, + _VoidDTypeLike, + # Shapes + _Shape, + _ShapeLike, + # Scalars + _CharLike_co, + _IntLike_co, + _FloatLike_co, + _TD64Like_co, + _NumberLike_co, + _ScalarLike_co, + # `number` precision + NBitBase, + # NOTE: Do not remove the extended precision bit-types even if seemingly unused; + # they're used by the mypy plugin + _256Bit, + _128Bit, + _96Bit, + _80Bit, + _64Bit, + _32Bit, + _16Bit, + _8Bit, + _NBitByte, + _NBitShort, + _NBitIntC, + _NBitIntP, + _NBitLong, + _NBitLongLong, + _NBitHalf, + _NBitSingle, + _NBitDouble, + _NBitLongDouble, + # Character codes + _BoolCodes, + _UInt8Codes, + _UInt16Codes, + _UInt32Codes, + _UInt64Codes, + _Int8Codes, + _Int16Codes, + _Int32Codes, + _Int64Codes, + _Float16Codes, + _Float32Codes, + _Float64Codes, + _Complex64Codes, + _Complex128Codes, + _ByteCodes, + _ShortCodes, + _IntCCodes, + _IntPCodes, + _LongCodes, + _LongLongCodes, + _UByteCodes, + _UShortCodes, + _UIntCCodes, + _UIntPCodes, + _ULongCodes, + _ULongLongCodes, + _HalfCodes, + _SingleCodes, + _DoubleCodes, + _LongDoubleCodes, + _CSingleCodes, + _CDoubleCodes, + _CLongDoubleCodes, + _DT64Codes, + _TD64Codes, + _StrCodes, + _BytesCodes, + _VoidCodes, + _ObjectCodes, + _StringCodes, + _UnsignedIntegerCodes, + _SignedIntegerCodes, + _IntegerCodes, + _FloatingCodes, + _ComplexFloatingCodes, + _InexactCodes, + _NumberCodes, + _CharacterCodes, + _FlexibleCodes, + _GenericCodes, + # Ufuncs + _UFunc_Nin1_Nout1, + _UFunc_Nin2_Nout1, + _UFunc_Nin1_Nout2, + _UFunc_Nin2_Nout2, + _GUFunc_Nin2_Nout1, +) + +from numpy._typing._callable import ( + _BoolOp, + _BoolBitOp, + _BoolSub, + _BoolTrueDiv, + _BoolMod, + _BoolDivMod, + _IntTrueDiv, + _UnsignedIntOp, + _UnsignedIntBitOp, + _UnsignedIntMod, + _UnsignedIntDivMod, + _SignedIntOp, + _SignedIntBitOp, + _SignedIntMod, + _SignedIntDivMod, + _FloatOp, + _FloatMod, + _FloatDivMod, + _NumberOp, + _ComparisonOpLT, + _ComparisonOpLE, + _ComparisonOpGT, + _ComparisonOpGE, +) + +# NOTE: Numpy's mypy plugin is used for removing the types unavailable +# to the specific platform +from numpy._typing._extended_precision import ( + uint128, + uint256, + int128, + int256, + float80, + float96, + float128, + float256, + complex160, + complex192, + complex256, + complex512, +) + +from numpy._array_api_info import __array_namespace_info__ + +from collections.abc import ( + Callable, + Iterable, + Iterator, + Mapping, + Sequence, +) + +if sys.version_info >= (3, 12): + from collections.abc import Buffer as _SupportsBuffer +else: + _SupportsBuffer: TypeAlias = ( + bytes + | bytearray + | memoryview + | _array.array[Any] + | mmap.mmap + | NDArray[Any] + | generic + ) + +from typing import ( + Any, + ClassVar, + Final, + Generic, + Literal as L, + NoReturn, + SupportsComplex, + SupportsFloat, + SupportsInt, + SupportsIndex, + TypeAlias, + TypedDict, + final, + type_check_only, +) + +# NOTE: `typing_extensions` and `_typeshed` are always available in `.pyi` stubs, even +# if not available at runtime. This is because the `typeshed` stubs for the standard +# library include `typing_extensions` stubs: +# https://github.com/python/typeshed/blob/main/stdlib/typing_extensions.pyi +from _typeshed import StrOrBytesPath, SupportsFlush, SupportsLenAndGetItem, SupportsWrite +from typing_extensions import CapsuleType, LiteralString, Never, Protocol, Self, TypeVar, Unpack, deprecated, overload + +from numpy import ( + char, + core, + ctypeslib, + dtypes, + exceptions, + f2py, + fft, + lib, + linalg, + ma, + polynomial, + random, + rec, + strings, + testing, + typing, +) + +# available through `__getattr__`, but not in `__all__` or `__dir__` +from numpy import ( + __config__ as __config__, + matlib as matlib, + matrixlib as matrixlib, + version as version, +) +if sys.version_info < (3, 12): + from numpy import distutils as distutils + +from numpy._core.records import ( + record, + recarray, +) + +from numpy._core.function_base import ( + linspace, + logspace, + geomspace, +) + +from numpy._core.fromnumeric import ( + take, + reshape, + choose, + repeat, + put, + swapaxes, + transpose, + matrix_transpose, + partition, + argpartition, + sort, + argsort, + argmax, + argmin, + searchsorted, + resize, + squeeze, + diagonal, + trace, + ravel, + nonzero, + shape, + compress, + clip, + sum, + all, + any, + cumsum, + cumulative_sum, + ptp, + max, + min, + amax, + amin, + prod, + cumprod, + cumulative_prod, + ndim, + size, + around, + round, + mean, + std, + var, +) + +from numpy._core._asarray import ( + require, +) + +from numpy._core._type_aliases import ( + sctypeDict, +) + +from numpy._core._ufunc_config import ( + seterr, + geterr, + setbufsize, + getbufsize, + seterrcall, + geterrcall, + _ErrKind, + _ErrCall, +) + +from numpy._core.arrayprint import ( + set_printoptions, + get_printoptions, + array2string, + format_float_scientific, + format_float_positional, + array_repr, + array_str, + printoptions, +) + +from numpy._core.einsumfunc import ( + einsum, + einsum_path, +) + +from numpy._core.multiarray import ( + array, + empty_like, + empty, + zeros, + concatenate, + inner, + where, + lexsort, + can_cast, + min_scalar_type, + result_type, + dot, + vdot, + bincount, + copyto, + putmask, + packbits, + unpackbits, + shares_memory, + may_share_memory, + asarray, + asanyarray, + ascontiguousarray, + asfortranarray, + arange, + busday_count, + busday_offset, + datetime_as_string, + datetime_data, + frombuffer, + fromfile, + fromiter, + is_busday, + promote_types, + fromstring, + frompyfunc, + nested_iters, + flagsobj, +) + +from numpy._core.numeric import ( + zeros_like, + ones, + ones_like, + full, + full_like, + count_nonzero, + isfortran, + argwhere, + flatnonzero, + correlate, + convolve, + outer, + tensordot, + roll, + rollaxis, + moveaxis, + cross, + indices, + fromfunction, + isscalar, + binary_repr, + base_repr, + identity, + allclose, + isclose, + array_equal, + array_equiv, + astype, +) + +from numpy._core.numerictypes import ( + isdtype, + issubdtype, + ScalarType, + typecodes, +) + +from numpy._core.shape_base import ( + atleast_1d, + atleast_2d, + atleast_3d, + block, + hstack, + stack, + vstack, + unstack, +) + +from ._expired_attrs_2_0 import __expired_attributes__ as __expired_attributes__ + +from numpy.lib import ( + scimath as emath, +) + +from numpy.lib._arraypad_impl import ( + pad, +) + +from numpy.lib._arraysetops_impl import ( + ediff1d, + in1d, + intersect1d, + isin, + setdiff1d, + setxor1d, + union1d, + unique, + unique_all, + unique_counts, + unique_inverse, + unique_values, +) + +from numpy.lib._function_base_impl import ( + select, + piecewise, + trim_zeros, + copy, + iterable, + percentile, + diff, + gradient, + angle, + unwrap, + sort_complex, + flip, + rot90, + extract, + place, + asarray_chkfinite, + average, + bincount, + digitize, + cov, + corrcoef, + median, + sinc, + hamming, + hanning, + bartlett, + blackman, + kaiser, + trapezoid, + trapz, + i0, + meshgrid, + delete, + insert, + append, + interp, + quantile, +) + +from numpy._globals import _CopyMode + +from numpy.lib._histograms_impl import ( + histogram_bin_edges, + histogram, + histogramdd, +) + +from numpy.lib._index_tricks_impl import ( + ndenumerate, + ndindex, + ravel_multi_index, + unravel_index, + mgrid, + ogrid, + r_, + c_, + s_, + index_exp, + ix_, + fill_diagonal, + diag_indices, + diag_indices_from, +) + +from numpy.lib._nanfunctions_impl import ( + nansum, + nanmax, + nanmin, + nanargmax, + nanargmin, + nanmean, + nanmedian, + nanpercentile, + nanvar, + nanstd, + nanprod, + nancumsum, + nancumprod, + nanquantile, +) + +from numpy.lib._npyio_impl import ( + savetxt, + loadtxt, + genfromtxt, + load, + save, + savez, + savez_compressed, + packbits, + unpackbits, + fromregex, +) + +from numpy.lib._polynomial_impl import ( + poly, + roots, + polyint, + polyder, + polyadd, + polysub, + polymul, + polydiv, + polyval, + polyfit, +) + +from numpy.lib._shape_base_impl import ( + column_stack, + row_stack, + dstack, + array_split, + split, + hsplit, + vsplit, + dsplit, + apply_over_axes, + expand_dims, + apply_along_axis, + kron, + tile, + take_along_axis, + put_along_axis, +) + +from numpy.lib._stride_tricks_impl import ( + broadcast_to, + broadcast_arrays, + broadcast_shapes, +) + +from numpy.lib._twodim_base_impl import ( + diag, + diagflat, + eye, + fliplr, + flipud, + tri, + triu, + tril, + vander, + histogram2d, + mask_indices, + tril_indices, + tril_indices_from, + triu_indices, + triu_indices_from, +) + +from numpy.lib._type_check_impl import ( + mintypecode, + real, + imag, + iscomplex, + isreal, + iscomplexobj, + isrealobj, + nan_to_num, + real_if_close, + typename, + common_type, +) + +from numpy.lib._ufunclike_impl import ( + fix, + isposinf, + isneginf, +) + +from numpy.lib._utils_impl import ( + get_include, + info, + show_runtime, +) + +from numpy.matrixlib import ( + asmatrix, + bmat, +) + +__all__ = [ # noqa: RUF022 + # __numpy_submodules__ + "char", "core", "ctypeslib", "dtypes", "exceptions", "f2py", "fft", "lib", "linalg", + "ma", "polynomial", "random", "rec", "strings", "test", "testing", "typing", + + # _core.__all__ + "abs", "acos", "acosh", "asin", "asinh", "atan", "atanh", "atan2", "bitwise_invert", + "bitwise_left_shift", "bitwise_right_shift", "concat", "pow", "permute_dims", + "memmap", "sctypeDict", "record", "recarray", + + # _core.numeric.__all__ + "newaxis", "ndarray", "flatiter", "nditer", "nested_iters", "ufunc", "arange", + "array", "asarray", "asanyarray", "ascontiguousarray", "asfortranarray", "zeros", + "count_nonzero", "empty", "broadcast", "dtype", "fromstring", "fromfile", + "frombuffer", "from_dlpack", "where", "argwhere", "copyto", "concatenate", + "lexsort", "astype", "can_cast", "promote_types", "min_scalar_type", "result_type", + "isfortran", "empty_like", "zeros_like", "ones_like", "correlate", "convolve", + "inner", "dot", "outer", "vdot", "roll", "rollaxis", "moveaxis", "cross", + "tensordot", "little_endian", "fromiter", "array_equal", "array_equiv", "indices", + "fromfunction", "isclose", "isscalar", "binary_repr", "base_repr", "ones", + "identity", "allclose", "putmask", "flatnonzero", "inf", "nan", "False_", "True_", + "bitwise_not", "full", "full_like", "matmul", "vecdot", "vecmat", + "shares_memory", "may_share_memory", + "all", "amax", "amin", "any", "argmax", "argmin", "argpartition", "argsort", + "around", "choose", "clip", "compress", "cumprod", "cumsum", "cumulative_prod", + "cumulative_sum", "diagonal", "mean", "max", "min", "matrix_transpose", "ndim", + "nonzero", "partition", "prod", "ptp", "put", "ravel", "repeat", "reshape", + "resize", "round", "searchsorted", "shape", "size", "sort", "squeeze", "std", "sum", + "swapaxes", "take", "trace", "transpose", "var", + "absolute", "add", "arccos", "arccosh", "arcsin", "arcsinh", "arctan", "arctan2", + "arctanh", "bitwise_and", "bitwise_or", "bitwise_xor", "cbrt", "ceil", "conj", + "conjugate", "copysign", "cos", "cosh", "bitwise_count", "deg2rad", "degrees", + "divide", "divmod", "e", "equal", "euler_gamma", "exp", "exp2", "expm1", "fabs", + "floor", "floor_divide", "float_power", "fmax", "fmin", "fmod", "frexp", + "frompyfunc", "gcd", "greater", "greater_equal", "heaviside", "hypot", "invert", + "isfinite", "isinf", "isnan", "isnat", "lcm", "ldexp", "left_shift", "less", + "less_equal", "log", "log10", "log1p", "log2", "logaddexp", "logaddexp2", + "logical_and", "logical_not", "logical_or", "logical_xor", "matvec", "maximum", "minimum", + "mod", "modf", "multiply", "negative", "nextafter", "not_equal", "pi", "positive", + "power", "rad2deg", "radians", "reciprocal", "remainder", "right_shift", "rint", + "sign", "signbit", "sin", "sinh", "spacing", "sqrt", "square", "subtract", "tan", + "tanh", "true_divide", "trunc", "ScalarType", "typecodes", "issubdtype", + "datetime_data", "datetime_as_string", "busday_offset", "busday_count", "is_busday", + "busdaycalendar", "isdtype", + "complexfloating", "character", "unsignedinteger", "inexact", "generic", "floating", + "integer", "signedinteger", "number", "flexible", "bool", "float16", "float32", + "float64", "longdouble", "complex64", "complex128", "clongdouble", + "bytes_", "str_", "void", "object_", "datetime64", "timedelta64", "int8", "byte", + "uint8", "ubyte", "int16", "short", "uint16", "ushort", "int32", "intc", "uint32", + "uintc", "int64", "long", "uint64", "ulong", "longlong", "ulonglong", "intp", + "uintp", "double", "cdouble", "single", "csingle", "half", "bool_", "int_", "uint", + "uint128", "uint256", "int128", "int256", "float80", "float96", "float128", + "float256", "complex160", "complex192", "complex256", "complex512", + "array2string", "array_str", "array_repr", "set_printoptions", "get_printoptions", + "printoptions", "format_float_positional", "format_float_scientific", "require", + "seterr", "geterr", "setbufsize", "getbufsize", "seterrcall", "geterrcall", + "errstate", + # _core.function_base.__all__ + "logspace", "linspace", "geomspace", + # _core.getlimits.__all__ + "finfo", "iinfo", + # _core.shape_base.__all__ + "atleast_1d", "atleast_2d", "atleast_3d", "block", "hstack", "stack", "unstack", + "vstack", + # _core.einsumfunc.__all__ + "einsum", "einsum_path", + # matrixlib.__all__ + "matrix", "bmat", "asmatrix", + # lib._histograms_impl.__all__ + "histogram", "histogramdd", "histogram_bin_edges", + # lib._nanfunctions_impl.__all__ + "nansum", "nanmax", "nanmin", "nanargmax", "nanargmin", "nanmean", "nanmedian", + "nanpercentile", "nanvar", "nanstd", "nanprod", "nancumsum", "nancumprod", + "nanquantile", + # lib._function_base_impl.__all__ + "select", "piecewise", "trim_zeros", "copy", "iterable", "percentile", "diff", + "gradient", "angle", "unwrap", "sort_complex", "flip", "rot90", "extract", "place", + "vectorize", "asarray_chkfinite", "average", "bincount", "digitize", "cov", + "corrcoef", "median", "sinc", "hamming", "hanning", "bartlett", "blackman", + "kaiser", "trapezoid", "trapz", "i0", "meshgrid", "delete", "insert", "append", + "interp", "quantile", + # lib._twodim_base_impl.__all__ + "diag", "diagflat", "eye", "fliplr", "flipud", "tri", "triu", "tril", "vander", + "histogram2d", "mask_indices", "tril_indices", "tril_indices_from", "triu_indices", + "triu_indices_from", + # lib._shape_base_impl.__all__ + "column_stack", "dstack", "array_split", "split", "hsplit", "vsplit", "dsplit", + "apply_over_axes", "expand_dims", "apply_along_axis", "kron", "tile", + "take_along_axis", "put_along_axis", "row_stack", + # lib._type_check_impl.__all__ + "iscomplexobj", "isrealobj", "imag", "iscomplex", "isreal", "nan_to_num", "real", + "real_if_close", "typename", "mintypecode", "common_type", + # lib._arraysetops_impl.__all__ + "ediff1d", "in1d", "intersect1d", "isin", "setdiff1d", "setxor1d", "union1d", + "unique", "unique_all", "unique_counts", "unique_inverse", "unique_values", + # lib._ufunclike_impl.__all__ + "fix", "isneginf", "isposinf", + # lib._arraypad_impl.__all__ + "pad", + # lib._utils_impl.__all__ + "get_include", "info", "show_runtime", + # lib._stride_tricks_impl.__all__ + "broadcast_to", "broadcast_arrays", "broadcast_shapes", + # lib._polynomial_impl.__all__ + "poly", "roots", "polyint", "polyder", "polyadd", "polysub", "polymul", "polydiv", + "polyval", "poly1d", "polyfit", + # lib._npyio_impl.__all__ + "savetxt", "loadtxt", "genfromtxt", "load", "save", "savez", "savez_compressed", + "packbits", "unpackbits", "fromregex", + # lib._index_tricks_impl.__all__ + "ravel_multi_index", "unravel_index", "mgrid", "ogrid", "r_", "c_", "s_", + "index_exp", "ix_", "ndenumerate", "ndindex", "fill_diagonal", "diag_indices", + "diag_indices_from", + + # __init__.__all__ + "emath", "show_config", "__version__", "__array_namespace_info__", +] # fmt: skip + +### Constrained types (for internal use only) +# Only use these for functions; never as generic type parameter. + +_AnyStr = TypeVar("_AnyStr", LiteralString, str, bytes) +_AnyShapeType = TypeVar( + "_AnyShapeType", + tuple[()], # 0-d + tuple[int], # 1-d + tuple[int, int], # 2-d + tuple[int, int, int], # 3-d + tuple[int, int, int, int], # 4-d + tuple[int, int, int, int, int], # 5-d + tuple[int, int, int, int, int, int], # 6-d + tuple[int, int, int, int, int, int, int], # 7-d + tuple[int, int, int, int, int, int, int, int], # 8-d + tuple[int, ...], # N-d +) +_AnyNBitInexact = TypeVar("_AnyNBitInexact", _NBitHalf, _NBitSingle, _NBitDouble, _NBitLongDouble) +_AnyTD64Item = TypeVar("_AnyTD64Item", dt.timedelta, int, None, dt.timedelta | int | None) +_AnyDT64Arg = TypeVar("_AnyDT64Arg", dt.datetime, dt.date, None) +_AnyDT64Item = TypeVar("_AnyDT64Item", dt.datetime, dt.date, int, None, dt.date, int | None) +_AnyDate = TypeVar("_AnyDate", dt.date, dt.datetime) +_AnyDateOrTime = TypeVar("_AnyDateOrTime", dt.date, dt.datetime, dt.timedelta) + +### Type parameters (for internal use only) + +_T = TypeVar("_T") +_T_co = TypeVar("_T_co", covariant=True) +_T_contra = TypeVar("_T_contra", contravariant=True) +_RealT_co = TypeVar("_RealT_co", covariant=True) +_ImagT_co = TypeVar("_ImagT_co", covariant=True) + +_CallableT = TypeVar("_CallableT", bound=Callable[..., object]) + +_DType = TypeVar("_DType", bound=dtype[Any]) +_DType_co = TypeVar("_DType_co", bound=dtype[Any], covariant=True) +_FlexDType = TypeVar("_FlexDType", bound=dtype[flexible]) + +_ArrayT = TypeVar("_ArrayT", bound=NDArray[Any]) +_ArrayT_co = TypeVar("_ArrayT_co", bound=NDArray[Any], covariant=True) +_IntegralArrayT = TypeVar("_IntegralArrayT", bound=NDArray[integer[Any] | np.bool | object_]) +_RealArrayT = TypeVar("_RealArrayT", bound=NDArray[floating[Any] | integer[Any] | timedelta64 | np.bool | object_]) +_NumericArrayT = TypeVar("_NumericArrayT", bound=NDArray[number[Any] | timedelta64 | object_]) + +_ShapeT = TypeVar("_ShapeT", bound=_Shape) +_ShapeT_co = TypeVar("_ShapeT_co", bound=_Shape, covariant=True) +_1DShapeT = TypeVar("_1DShapeT", bound=_1D) +_2DShapeT_co = TypeVar("_2DShapeT_co", bound=_2D, covariant=True) +_1NShapeT = TypeVar("_1NShapeT", bound=tuple[L[1], Unpack[tuple[L[1], ...]]]) # (1,) | (1, 1) | (1, 1, 1) | ... + +_SCT = TypeVar("_SCT", bound=generic) +_SCT_co = TypeVar("_SCT_co", bound=generic, covariant=True) +_NumberT = TypeVar("_NumberT", bound=number[Any]) +_RealNumberT = TypeVar("_RealNumberT", bound=floating | integer) +_FloatingT_co = TypeVar("_FloatingT_co", bound=floating[Any], default=floating[Any], covariant=True) +_IntegerT = TypeVar("_IntegerT", bound=integer) +_IntegerT_co = TypeVar("_IntegerT_co", bound=integer[Any], default=integer[Any], covariant=True) + +_NBit = TypeVar("_NBit", bound=NBitBase, default=Any) +_NBit1 = TypeVar("_NBit1", bound=NBitBase, default=Any) +_NBit2 = TypeVar("_NBit2", bound=NBitBase, default=_NBit1) + +_ItemT_co = TypeVar("_ItemT_co", default=Any, covariant=True) +_BoolItemT = TypeVar("_BoolItemT", bound=builtins.bool) +_BoolItemT_co = TypeVar("_BoolItemT_co", bound=builtins.bool, default=builtins.bool, covariant=True) +_NumberItemT_co = TypeVar("_NumberItemT_co", bound=int | float | complex, default=int | float | complex, covariant=True) +_InexactItemT_co = TypeVar("_InexactItemT_co", bound=float | complex, default=float | complex, covariant=True) +_FlexibleItemT_co = TypeVar( + "_FlexibleItemT_co", + bound=_CharLike_co | tuple[Any, ...], + default=_CharLike_co | tuple[Any, ...], + covariant=True, +) +_CharacterItemT_co = TypeVar("_CharacterItemT_co", bound=_CharLike_co, default=_CharLike_co, covariant=True) +_TD64ItemT_co = TypeVar("_TD64ItemT_co", bound=dt.timedelta | int | None, default=dt.timedelta | int | None, covariant=True) +_DT64ItemT_co = TypeVar("_DT64ItemT_co", bound=dt.date | int | None, default=dt.date | int | None, covariant=True) +_TD64UnitT = TypeVar("_TD64UnitT", bound=_TD64Unit, default=_TD64Unit) + +### Type Aliases (for internal use only) + +_Falsy: TypeAlias = L[False, 0] | np.bool[L[False]] +_Truthy: TypeAlias = L[True, 1] | np.bool[L[True]] + +_1D: TypeAlias = tuple[int] +_2D: TypeAlias = tuple[int, int] +_2Tuple: TypeAlias = tuple[_T, _T] + +_ArrayUInt_co: TypeAlias = NDArray[unsignedinteger | np.bool] +_ArrayInt_co: TypeAlias = NDArray[integer | np.bool] +_ArrayFloat64_co: TypeAlias = NDArray[floating[_64Bit] | float32 | float16 | integer | np.bool] +_ArrayFloat_co: TypeAlias = NDArray[floating | integer | np.bool] +_ArrayComplex128_co: TypeAlias = NDArray[number[_64Bit] | number[_32Bit] | float16 | integer | np.bool] +_ArrayComplex_co: TypeAlias = NDArray[inexact | integer | np.bool] +_ArrayNumber_co: TypeAlias = NDArray[number | np.bool] +_ArrayTD64_co: TypeAlias = NDArray[timedelta64 | integer | np.bool] + +_Float64_co: TypeAlias = float | floating[_64Bit] | float32 | float16 | integer | np.bool +_Complex64_co: TypeAlias = number[_32Bit] | number[_16Bit] | number[_8Bit] | builtins.bool | np.bool +_Complex128_co: TypeAlias = complex | number[_64Bit] | _Complex64_co + +_ToIndex: TypeAlias = SupportsIndex | slice | EllipsisType | _ArrayLikeInt_co | None +_ToIndices: TypeAlias = _ToIndex | tuple[_ToIndex, ...] + +_UnsignedIntegerCType: TypeAlias = type[ + ct.c_uint8 | ct.c_uint16 | ct.c_uint32 | ct.c_uint64 + | ct.c_ushort | ct.c_uint | ct.c_ulong | ct.c_ulonglong + | ct.c_size_t | ct.c_void_p +] # fmt: skip +_SignedIntegerCType: TypeAlias = type[ + ct.c_int8 | ct.c_int16 | ct.c_int32 | ct.c_int64 + | ct.c_short | ct.c_int | ct.c_long | ct.c_longlong + | ct.c_ssize_t +] # fmt: skip +_FloatingCType: TypeAlias = type[ct.c_float | ct.c_double | ct.c_longdouble] +_IntegerCType: TypeAlias = _UnsignedIntegerCType | _SignedIntegerCType +_NumberCType: TypeAlias = _IntegerCType | _IntegerCType +_GenericCType: TypeAlias = _NumberCType | type[ct.c_bool | ct.c_char | ct.py_object[Any]] + +# some commonly used builtin types that are known to result in a +# `dtype[object_]`, when their *type* is passed to the `dtype` constructor +# NOTE: `builtins.object` should not be included here +_BuiltinObjectLike: TypeAlias = ( + slice | Decimal | Fraction | UUID + | dt.date | dt.time | dt.timedelta | dt.tzinfo + | tuple[Any, ...] | list[Any] | set[Any] | frozenset[Any] | dict[Any, Any] +) # fmt: skip + +# Introduce an alias for `dtype` to avoid naming conflicts. +_dtype: TypeAlias = dtype[_SCT] + +_ByteOrderChar: TypeAlias = L["<", ">", "=", "|"] +# can be anything, is case-insensitive, and only the first character matters +_ByteOrder: TypeAlias = L[ + "S", # swap the current order (default) + "<", "L", "little", # little-endian + ">", "B", "big", # big endian + "=", "N", "native", # native order + "|", "I", # ignore +] # fmt: skip +_DTypeKind: TypeAlias = L[ + "b", # boolean + "i", # signed integer + "u", # unsigned integer + "f", # floating-point + "c", # complex floating-point + "m", # timedelta64 + "M", # datetime64 + "O", # python object + "S", # byte-string (fixed-width) + "U", # unicode-string (fixed-width) + "V", # void + "T", # unicode-string (variable-width) +] +_DTypeChar: TypeAlias = L[ + "?", # bool + "b", # byte + "B", # ubyte + "h", # short + "H", # ushort + "i", # intc + "I", # uintc + "l", # long + "L", # ulong + "q", # longlong + "Q", # ulonglong + "e", # half + "f", # single + "d", # double + "g", # longdouble + "F", # csingle + "D", # cdouble + "G", # clongdouble + "O", # object + "S", # bytes_ (S0) + "a", # bytes_ (deprecated) + "U", # str_ + "V", # void + "M", # datetime64 + "m", # timedelta64 + "c", # bytes_ (S1) + "T", # StringDType +] +_DTypeNum: TypeAlias = L[ + 0, # bool + 1, # byte + 2, # ubyte + 3, # short + 4, # ushort + 5, # intc + 6, # uintc + 7, # long + 8, # ulong + 9, # longlong + 10, # ulonglong + 23, # half + 11, # single + 12, # double + 13, # longdouble + 14, # csingle + 15, # cdouble + 16, # clongdouble + 17, # object + 18, # bytes_ + 19, # str_ + 20, # void + 21, # datetime64 + 22, # timedelta64 + 25, # no type + 256, # user-defined + 2056, # StringDType +] +_DTypeBuiltinKind: TypeAlias = L[0, 1, 2] + +_ArrayAPIVersion: TypeAlias = L["2021.12", "2022.12", "2023.12"] + +_CastingKind: TypeAlias = L["no", "equiv", "safe", "same_kind", "unsafe"] + +_OrderKACF: TypeAlias = L[None, "K", "A", "C", "F"] +_OrderACF: TypeAlias = L[None, "A", "C", "F"] +_OrderCF: TypeAlias = L[None, "C", "F"] + +_ModeKind: TypeAlias = L["raise", "wrap", "clip"] +_PartitionKind: TypeAlias = L["introselect"] +# in practice, only the first case-insensitive character is considered (so e.g. +# "QuantumSort3000" will be interpreted as quicksort). +_SortKind: TypeAlias = L[ + "Q", "quick", "quicksort", + "M", "merge", "mergesort", + "H", "heap", "heapsort", + "S", "stable", "stablesort", +] +_SortSide: TypeAlias = L["left", "right"] + +_ConvertibleToInt: TypeAlias = SupportsInt | SupportsIndex | _CharLike_co +_ConvertibleToFloat: TypeAlias = SupportsFloat | SupportsIndex | _CharLike_co +if sys.version_info >= (3, 11): + _ConvertibleToComplex: TypeAlias = SupportsComplex | SupportsFloat | SupportsIndex | _CharLike_co +else: + _ConvertibleToComplex: TypeAlias = complex | SupportsComplex | SupportsFloat | SupportsIndex | _CharLike_co +_ConvertibleToTD64: TypeAlias = dt.timedelta | int | _CharLike_co | character | number | timedelta64 | np.bool | None +_ConvertibleToDT64: TypeAlias = dt.date | int | _CharLike_co | character | number | datetime64 | np.bool | None + +_NDIterFlagsKind: TypeAlias = L[ + "buffered", + "c_index", + "copy_if_overlap", + "common_dtype", + "delay_bufalloc", + "external_loop", + "f_index", + "grow_inner", "growinner", + "multi_index", + "ranged", + "refs_ok", + "reduce_ok", + "zerosize_ok", +] +_NDIterFlagsOp: TypeAlias = L[ + "aligned", + "allocate", + "arraymask", + "copy", + "config", + "nbo", + "no_subtype", + "no_broadcast", + "overlap_assume_elementwise", + "readonly", + "readwrite", + "updateifcopy", + "virtual", + "writeonly", + "writemasked" +] + +_MemMapModeKind: TypeAlias = L[ + "readonly", "r", + "copyonwrite", "c", + "readwrite", "r+", + "write", "w+", +] + +_DT64Date: TypeAlias = _HasDateAttributes | L["TODAY", "today", b"TODAY", b"today"] +_DT64Now: TypeAlias = L["NOW", "now", b"NOW", b"now"] +_NaTValue: TypeAlias = L["NAT","NaT", "nat",b"NAT", b"NaT", b"nat"] + +_MonthUnit: TypeAlias = L["Y", "M", b"Y", b"M"] +_DayUnit: TypeAlias = L["W", "D", b"W", b"D"] +_DateUnit: TypeAlias = L[_MonthUnit, _DayUnit] +_NativeTimeUnit: TypeAlias = L["h", "m", "s", "ms", "us", "μs", b"h", b"m", b"s", b"ms", b"us"] +_IntTimeUnit: TypeAlias = L["ns", "ps", "fs", "as", b"ns", b"ps", b"fs", b"as"] +_TimeUnit: TypeAlias = L[_NativeTimeUnit, _IntTimeUnit] +_NativeTD64Unit: TypeAlias = L[_DayUnit, _NativeTimeUnit] +_IntTD64Unit: TypeAlias = L[_MonthUnit, _IntTimeUnit] +_TD64Unit: TypeAlias = L[_DateUnit, _TimeUnit] +_TimeUnitSpec: TypeAlias = _TD64UnitT | tuple[_TD64UnitT, SupportsIndex] + +### TypedDict's (for internal use only) + +@type_check_only +class _FormerAttrsDict(TypedDict): + object: LiteralString + float: LiteralString + complex: LiteralString + str: LiteralString + int: LiteralString + +### Protocols (for internal use only) + +@type_check_only +class _SupportsFileMethods(SupportsFlush, Protocol): + # Protocol for representing file-like-objects accepted by `ndarray.tofile` and `fromfile` + def fileno(self) -> SupportsIndex: ... + def tell(self) -> SupportsIndex: ... + def seek(self, offset: int, whence: int, /) -> object: ... + +@type_check_only +class _SupportsFileMethodsRW(SupportsWrite[bytes], _SupportsFileMethods, Protocol): + pass + +@type_check_only +class _SupportsItem(Protocol[_T_co]): + def item(self, /) -> _T_co: ... + +@type_check_only +class _SupportsDLPack(Protocol[_T_contra]): + def __dlpack__(self, /, *, stream: _T_contra | None = None) -> CapsuleType: ... + +@type_check_only +class _HasDType(Protocol[_T_co]): + @property + def dtype(self, /) -> _T_co: ... + +@type_check_only +class _HasRealAndImag(Protocol[_RealT_co, _ImagT_co]): + @property + def real(self, /) -> _RealT_co: ... + @property + def imag(self, /) -> _ImagT_co: ... + +@type_check_only +class _HasTypeWithRealAndImag(Protocol[_RealT_co, _ImagT_co]): + @property + def type(self, /) -> type[_HasRealAndImag[_RealT_co, _ImagT_co]]: ... + +@type_check_only +class _HasDTypeWithRealAndImag(Protocol[_RealT_co, _ImagT_co]): + @property + def dtype(self, /) -> _HasTypeWithRealAndImag[_RealT_co, _ImagT_co]: ... + +@type_check_only +class _HasDateAttributes(Protocol): + # The `datetime64` constructors requires an object with the three attributes below, + # and thus supports datetime duck typing + @property + def day(self) -> int: ... + @property + def month(self) -> int: ... + @property + def year(self) -> int: ... + + +### Mixins (for internal use only) + +@type_check_only +class _RealMixin: + @property + def real(self) -> Self: ... + @property + def imag(self) -> Self: ... + +@type_check_only +class _RoundMixin: + @overload + def __round__(self, /, ndigits: None = None) -> int: ... + @overload + def __round__(self, /, ndigits: SupportsIndex) -> Self: ... + +@type_check_only +class _IntegralMixin(_RealMixin): + @property + def numerator(self) -> Self: ... + @property + def denominator(self) -> L[1]: ... + + def is_integer(self, /) -> L[True]: ... + +### Public API + +__version__: Final[LiteralString] = ... + +e: Final[float] = ... +euler_gamma: Final[float] = ... +pi: Final[float] = ... +inf: Final[float] = ... +nan: Final[float] = ... +little_endian: Final[builtins.bool] = ... +False_: Final[np.bool[L[False]]] = ... +True_: Final[np.bool[L[True]]] = ... +newaxis: Final[None] = None + +# not in __all__ +__NUMPY_SETUP__: Final[L[False]] = False +__numpy_submodules__: Final[set[LiteralString]] = ... +__former_attrs__: Final[_FormerAttrsDict] = ... +__future_scalars__: Final[set[L["bytes", "str", "object"]]] = ... +__array_api_version__: Final[L["2023.12"]] = "2023.12" +test: Final[PytestTester] = ... + +@type_check_only +class _DTypeMeta(type): + @property + def type(cls, /) -> type[generic] | None: ... + @property + def _abstract(cls, /) -> bool: ... + @property + def _is_numeric(cls, /) -> bool: ... + @property + def _parametric(cls, /) -> bool: ... + @property + def _legacy(cls, /) -> bool: ... + +@final +class dtype(Generic[_SCT_co], metaclass=_DTypeMeta): + names: None | tuple[builtins.str, ...] + def __hash__(self) -> int: ... + + # `None` results in the default dtype + @overload + def __new__( + cls, + dtype: None | type[float64], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ... + ) -> dtype[float64]: ... + + # Overload for `dtype` instances, scalar types, and instances that have a + # `dtype: dtype[_SCT]` attribute + @overload + def __new__( + cls, + dtype: _DTypeLike[_SCT], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[_SCT]: ... + + # Builtin types + # + # NOTE: Typecheckers act as if `bool <: int <: float <: complex <: object`, + # even though at runtime `int`, `float`, and `complex` aren't subtypes.. + # This makes it impossible to express e.g. "a float that isn't an int", + # since type checkers treat `_: float` like `_: float | int`. + # + # For more details, see: + # - https://github.com/numpy/numpy/issues/27032#issuecomment-2278958251 + # - https://typing.readthedocs.io/en/latest/spec/special-types.html#special-cases-for-float-and-complex + @overload + def __new__( + cls, + dtype: type[builtins.bool | np.bool], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[np.bool]: ... + # NOTE: `_: type[int]` also accepts `type[int | bool]` + @overload + def __new__( + cls, + dtype: type[int | int_ | np.bool], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[int_ | np.bool]: ... + # NOTE: `_: type[float]` also accepts `type[float | int | bool]` + # NOTE: `float64` inherits from `float` at runtime; but this isn't + # reflected in these stubs. So an explicit `float64` is required here. + @overload + def __new__( + cls, + dtype: None | type[float | float64 | int_ | np.bool], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[float64 | int_ | np.bool]: ... + # NOTE: `_: type[complex]` also accepts `type[complex | float | int | bool]` + @overload + def __new__( + cls, + dtype: type[complex | complex128 | float64 | int_ | np.bool], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[complex128 | float64 | int_ | np.bool]: ... + @overload + def __new__( + cls, + dtype: type[bytes], # also includes `type[bytes_]` + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[bytes_]: ... + @overload + def __new__( + cls, + dtype: type[str], # also includes `type[str_]` + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[str_]: ... + # NOTE: These `memoryview` overloads assume PEP 688, which requires mypy to + # be run with the (undocumented) `--disable-memoryview-promotion` flag, + # This will be the default in a future mypy release, see: + # https://github.com/python/mypy/issues/15313 + # Pyright / Pylance requires setting `disableBytesTypePromotions=true`, + # which is the default in strict mode + @overload + def __new__( + cls, + dtype: type[memoryview | void], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[void]: ... + # NOTE: `_: type[object]` would also accept e.g. `type[object | complex]`, + # and is therefore not included here + @overload + def __new__( + cls, + dtype: type[_BuiltinObjectLike | object_], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[object_]: ... + + # Unions of builtins. + @overload + def __new__( + cls, + dtype: type[bytes | str], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[character]: ... + @overload + def __new__( + cls, + dtype: type[bytes | str | memoryview], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[flexible]: ... + @overload + def __new__( + cls, + dtype: type[complex | bytes | str | memoryview | _BuiltinObjectLike], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[str, Any] = ..., + ) -> dtype[np.bool | int_ | float64 | complex128 | flexible | object_]: ... + + # `unsignedinteger` string-based representations and ctypes + @overload + def __new__(cls, dtype: _UInt8Codes | type[ct.c_uint8], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint8]: ... + @overload + def __new__(cls, dtype: _UInt16Codes | type[ct.c_uint16], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint16]: ... + @overload + def __new__(cls, dtype: _UInt32Codes | type[ct.c_uint32], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint32]: ... + @overload + def __new__(cls, dtype: _UInt64Codes | type[ct.c_uint64], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uint64]: ... + @overload + def __new__(cls, dtype: _UByteCodes | type[ct.c_ubyte], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ubyte]: ... + @overload + def __new__(cls, dtype: _UShortCodes | type[ct.c_ushort], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ushort]: ... + @overload + def __new__(cls, dtype: _UIntCCodes | type[ct.c_uint], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uintc]: ... + # NOTE: We're assuming here that `uint_ptr_t == size_t`, + # an assumption that does not hold in rare cases (same for `ssize_t`) + @overload + def __new__(cls, dtype: _UIntPCodes | type[ct.c_void_p] | type[ct.c_size_t], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[uintp]: ... + @overload + def __new__(cls, dtype: _ULongCodes | type[ct.c_ulong], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ulong]: ... + @overload + def __new__(cls, dtype: _ULongLongCodes | type[ct.c_ulonglong], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[ulonglong]: ... + + # `signedinteger` string-based representations and ctypes + @overload + def __new__(cls, dtype: _Int8Codes | type[ct.c_int8], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int8]: ... + @overload + def __new__(cls, dtype: _Int16Codes | type[ct.c_int16], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int16]: ... + @overload + def __new__(cls, dtype: _Int32Codes | type[ct.c_int32], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int32]: ... + @overload + def __new__(cls, dtype: _Int64Codes | type[ct.c_int64], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[int64]: ... + @overload + def __new__(cls, dtype: _ByteCodes | type[ct.c_byte], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[byte]: ... + @overload + def __new__(cls, dtype: _ShortCodes | type[ct.c_short], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[short]: ... + @overload + def __new__(cls, dtype: _IntCCodes | type[ct.c_int], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intc]: ... + @overload + def __new__(cls, dtype: _IntPCodes | type[ct.c_ssize_t], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[intp]: ... + @overload + def __new__(cls, dtype: _LongCodes | type[ct.c_long], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[long]: ... + @overload + def __new__(cls, dtype: _LongLongCodes | type[ct.c_longlong], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longlong]: ... + + # `floating` string-based representations and ctypes + @overload + def __new__(cls, dtype: _Float16Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float16]: ... + @overload + def __new__(cls, dtype: _Float32Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float32]: ... + @overload + def __new__(cls, dtype: _Float64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[float64]: ... + @overload + def __new__(cls, dtype: _HalfCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[half]: ... + @overload + def __new__(cls, dtype: _SingleCodes | type[ct.c_float], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[single]: ... + @overload + def __new__(cls, dtype: _DoubleCodes | type[ct.c_double], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[double]: ... + @overload + def __new__(cls, dtype: _LongDoubleCodes | type[ct.c_longdouble], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[longdouble]: ... + + # `complexfloating` string-based representations + @overload + def __new__(cls, dtype: _Complex64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex64]: ... + @overload + def __new__(cls, dtype: _Complex128Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[complex128]: ... + @overload + def __new__(cls, dtype: _CSingleCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[csingle]: ... + @overload + def __new__(cls, dtype: _CDoubleCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[cdouble]: ... + @overload + def __new__(cls, dtype: _CLongDoubleCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[clongdouble]: ... + + # Miscellaneous string-based representations and ctypes + @overload + def __new__(cls, dtype: _BoolCodes | type[ct.c_bool], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[np.bool]: ... + @overload + def __new__(cls, dtype: _TD64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[timedelta64]: ... + @overload + def __new__(cls, dtype: _DT64Codes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[datetime64]: ... + @overload + def __new__(cls, dtype: _StrCodes, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[str_]: ... + @overload + def __new__(cls, dtype: _BytesCodes | type[ct.c_char], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[bytes_]: ... + @overload + def __new__(cls, dtype: _VoidCodes | _VoidDTypeLike, align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[void]: ... + @overload + def __new__(cls, dtype: _ObjectCodes | type[ct.py_object[Any]], align: builtins.bool = ..., copy: builtins.bool = ..., metadata: dict[builtins.str, Any] = ...) -> dtype[object_]: ... + + # `StringDType` requires special treatment because it has no scalar type + @overload + def __new__( + cls, + dtype: dtypes.StringDType | _StringCodes, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ... + ) -> dtypes.StringDType: ... + + # Combined char-codes and ctypes, analogous to the scalar-type hierarchy + @overload + def __new__( + cls, + dtype: _UnsignedIntegerCodes | _UnsignedIntegerCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[unsignedinteger[Any]]: ... + @overload + def __new__( + cls, + dtype: _SignedIntegerCodes | _SignedIntegerCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[signedinteger[Any]]: ... + @overload + def __new__( + cls, + dtype: _IntegerCodes | _IntegerCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[integer[Any]]: ... + @overload + def __new__( + cls, + dtype: _FloatingCodes | _FloatingCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[floating[Any]]: ... + @overload + def __new__( + cls, + dtype: _ComplexFloatingCodes, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[complexfloating[Any, Any]]: ... + @overload + def __new__( + cls, + dtype: _InexactCodes | _FloatingCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[inexact[Any]]: ... + @overload + def __new__( + cls, + dtype: _NumberCodes | _NumberCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[number[Any]]: ... + @overload + def __new__( + cls, + dtype: _CharacterCodes | type[ct.c_char], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[character]: ... + @overload + def __new__( + cls, + dtype: _FlexibleCodes | type[ct.c_char], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[flexible]: ... + @overload + def __new__( + cls, + dtype: _GenericCodes | _GenericCType, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[generic]: ... + + # Handle strings that can't be expressed as literals; i.e. "S1", "S2", ... + @overload + def __new__( + cls, + dtype: builtins.str, + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[Any]: ... + + # Catch-all overload for object-likes + # NOTE: `object_ | Any` is *not* equivalent to `Any` -- it describes some + # (static) type `T` s.t. `object_ <: T <: builtins.object` (`<:` denotes + # the subtyping relation, the (gradual) typing analogue of `issubclass()`). + # https://typing.readthedocs.io/en/latest/spec/concepts.html#union-types + @overload + def __new__( + cls, + dtype: type[object], + align: builtins.bool = ..., + copy: builtins.bool = ..., + metadata: dict[builtins.str, Any] = ..., + ) -> dtype[object_ | Any]: ... + + def __class_getitem__(cls, item: Any, /) -> GenericAlias: ... + + @overload + def __getitem__(self: dtype[void], key: list[builtins.str], /) -> dtype[void]: ... + @overload + def __getitem__(self: dtype[void], key: builtins.str | SupportsIndex, /) -> dtype[Any]: ... + + # NOTE: In the future 1-based multiplications will also yield `flexible` dtypes + @overload + def __mul__(self: _DType, value: L[1], /) -> _DType: ... + @overload + def __mul__(self: _FlexDType, value: SupportsIndex, /) -> _FlexDType: ... + @overload + def __mul__(self, value: SupportsIndex, /) -> dtype[void]: ... + + # NOTE: `__rmul__` seems to be broken when used in combination with + # literals as of mypy 0.902. Set the return-type to `dtype[Any]` for + # now for non-flexible dtypes. + @overload + def __rmul__(self: _FlexDType, value: SupportsIndex, /) -> _FlexDType: ... + @overload + def __rmul__(self, value: SupportsIndex, /) -> dtype[Any]: ... + + def __gt__(self, other: DTypeLike, /) -> builtins.bool: ... + def __ge__(self, other: DTypeLike, /) -> builtins.bool: ... + def __lt__(self, other: DTypeLike, /) -> builtins.bool: ... + def __le__(self, other: DTypeLike, /) -> builtins.bool: ... + + # Explicitly defined `__eq__` and `__ne__` to get around mypy's + # `strict_equality` option; even though their signatures are + # identical to their `object`-based counterpart + def __eq__(self, other: Any, /) -> builtins.bool: ... + def __ne__(self, other: Any, /) -> builtins.bool: ... + + @property + def alignment(self) -> int: ... + @property + def base(self) -> dtype[Any]: ... + @property + def byteorder(self) -> _ByteOrderChar: ... + @property + def char(self) -> _DTypeChar: ... + @property + def descr(self) -> list[tuple[LiteralString, LiteralString] | tuple[LiteralString, LiteralString, _Shape]]: ... + @property + def fields(self,) -> None | MappingProxyType[LiteralString, tuple[dtype[Any], int] | tuple[dtype[Any], int, Any]]: ... + @property + def flags(self) -> int: ... + @property + def hasobject(self) -> builtins.bool: ... + @property + def isbuiltin(self) -> _DTypeBuiltinKind: ... + @property + def isnative(self) -> builtins.bool: ... + @property + def isalignedstruct(self) -> builtins.bool: ... + @property + def itemsize(self) -> int: ... + @property + def kind(self) -> _DTypeKind: ... + @property + def metadata(self) -> None | MappingProxyType[builtins.str, Any]: ... + @property + def name(self) -> LiteralString: ... + @property + def num(self) -> _DTypeNum: ... + @property + def shape(self) -> tuple[()] | _Shape: ... + @property + def ndim(self) -> int: ... + @property + def subdtype(self) -> None | tuple[dtype[Any], _Shape]: ... + def newbyteorder(self, new_order: _ByteOrder = ..., /) -> Self: ... + @property + def str(self) -> LiteralString: ... + @property + def type(self) -> type[_SCT_co]: ... + + +@final +class flatiter(Generic[_ArrayT_co]): + __hash__: ClassVar[None] + @property + def base(self) -> _ArrayT_co: ... + @property + def coords(self) -> _Shape: ... + @property + def index(self) -> int: ... + def copy(self) -> _ArrayT_co: ... + def __iter__(self) -> Self: ... + def __next__(self: flatiter[NDArray[_SCT]]) -> _SCT: ... + def __len__(self) -> int: ... + @overload + def __getitem__( + self: flatiter[NDArray[_SCT]], + key: int | integer[Any] | tuple[int | integer[Any]], + ) -> _SCT: ... + @overload + def __getitem__( + self, + key: _ArrayLikeInt | slice | EllipsisType | tuple[_ArrayLikeInt | slice | EllipsisType], + ) -> _ArrayT_co: ... + # TODO: `__setitem__` operates via `unsafe` casting rules, and can + # thus accept any type accepted by the relevant underlying `np.generic` + # constructor. + # This means that `value` must in reality be a supertype of `npt.ArrayLike`. + def __setitem__( + self, + key: _ArrayLikeInt | slice | EllipsisType | tuple[_ArrayLikeInt | slice | EllipsisType], + value: Any, + ) -> None: ... + @overload + def __array__(self: flatiter[ndarray[_1DShapeT, _DType]], dtype: None = ..., /) -> ndarray[_1DShapeT, _DType]: ... + @overload + def __array__(self: flatiter[ndarray[_1DShapeT, Any]], dtype: _DType, /) -> ndarray[_1DShapeT, _DType]: ... + @overload + def __array__(self: flatiter[ndarray[_Shape, _DType]], dtype: None = ..., /) -> ndarray[_Shape, _DType]: ... + @overload + def __array__(self, dtype: _DType, /) -> ndarray[_Shape, _DType]: ... + +@type_check_only +class _ArrayOrScalarCommon: + @property + def real(self, /) -> Any: ... + @property + def imag(self, /) -> Any: ... + @property + def T(self) -> Self: ... + @property + def mT(self) -> Self: ... + @property + def data(self) -> memoryview: ... + @property + def flags(self) -> flagsobj: ... + @property + def itemsize(self) -> int: ... + @property + def nbytes(self) -> int: ... + @property + def device(self) -> L["cpu"]: ... + + def __bool__(self, /) -> builtins.bool: ... + def __int__(self, /) -> int: ... + def __float__(self, /) -> float: ... + def __copy__(self) -> Self: ... + def __deepcopy__(self, memo: None | dict[int, Any], /) -> Self: ... + + # TODO: How to deal with the non-commutative nature of `==` and `!=`? + # xref numpy/numpy#17368 + def __eq__(self, other: Any, /) -> Any: ... + def __ne__(self, other: Any, /) -> Any: ... + + def copy(self, order: _OrderKACF = ...) -> Self: ... + def dump(self, file: StrOrBytesPath | SupportsWrite[bytes]) -> None: ... + def dumps(self) -> bytes: ... + def tobytes(self, order: _OrderKACF = ...) -> bytes: ... + # NOTE: `tostring()` is deprecated and therefore excluded + # def tostring(self, order=...): ... + def tofile(self, fid: StrOrBytesPath | _SupportsFileMethods, sep: str = ..., format: str = ...) -> None: ... + # generics and 0d arrays return builtin scalars + def tolist(self) -> Any: ... + def to_device(self, device: L["cpu"], /, *, stream: None | int | Any = ...) -> Self: ... + + @property + def __array_interface__(self) -> dict[str, Any]: ... + @property + def __array_priority__(self) -> float: ... + @property + def __array_struct__(self) -> CapsuleType: ... # builtins.PyCapsule + def __array_namespace__(self, /, *, api_version: _ArrayAPIVersion | None = None) -> ModuleType: ... + def __setstate__(self, state: tuple[ + SupportsIndex, # version + _ShapeLike, # Shape + _DType_co, # DType + np.bool, # F-continuous + bytes | list[Any], # Data + ], /) -> None: ... + + def conj(self) -> Self: ... + def conjugate(self) -> Self: ... + + def argsort( + self, + axis: None | SupportsIndex = ..., + kind: None | _SortKind = ..., + order: None | str | Sequence[str] = ..., + *, + stable: None | bool = ..., + ) -> NDArray[Any]: ... + + @overload # axis=None (default), out=None (default), keepdims=False (default) + def argmax(self, /, axis: None = None, out: None = None, *, keepdims: L[False] = False) -> intp: ... + @overload # axis=index, out=None (default) + def argmax(self, /, axis: SupportsIndex, out: None = None, *, keepdims: builtins.bool = False) -> Any: ... + @overload # axis=index, out=ndarray + def argmax(self, /, axis: SupportsIndex | None, out: _ArrayT, *, keepdims: builtins.bool = False) -> _ArrayT: ... + @overload + def argmax(self, /, axis: SupportsIndex | None = None, *, out: _ArrayT, keepdims: builtins.bool = False) -> _ArrayT: ... + + @overload # axis=None (default), out=None (default), keepdims=False (default) + def argmin(self, /, axis: None = None, out: None = None, *, keepdims: L[False] = False) -> intp: ... + @overload # axis=index, out=None (default) + def argmin(self, /, axis: SupportsIndex, out: None = None, *, keepdims: builtins.bool = False) -> Any: ... + @overload # axis=index, out=ndarray + def argmin(self, /, axis: SupportsIndex | None, out: _ArrayT, *, keepdims: builtins.bool = False) -> _ArrayT: ... + @overload + def argmin(self, /, axis: SupportsIndex | None = None, *, out: _ArrayT, keepdims: builtins.bool = False) -> _ArrayT: ... + + @overload # out=None (default) + def round(self, /, decimals: SupportsIndex = 0, out: None = None) -> Self: ... + @overload # out=ndarray + def round(self, /, decimals: SupportsIndex, out: _ArrayT) -> _ArrayT: ... + @overload + def round(self, /, decimals: SupportsIndex = 0, *, out: _ArrayT) -> _ArrayT: ... + + @overload # out=None (default) + def choose(self, /, choices: ArrayLike, out: None = None, mode: _ModeKind = "raise") -> NDArray[Any]: ... + @overload # out=ndarray + def choose(self, /, choices: ArrayLike, out: _ArrayT, mode: _ModeKind = "raise") -> _ArrayT: ... + + # TODO: Annotate kwargs with an unpacked `TypedDict` + @overload # out: None (default) + def clip(self, /, min: ArrayLike, max: ArrayLike | None = None, out: None = None, **kwargs: Any) -> NDArray[Any]: ... + @overload + def clip(self, /, min: None, max: ArrayLike, out: None = None, **kwargs: Any) -> NDArray[Any]: ... + @overload + def clip(self, /, min: None = None, *, max: ArrayLike, out: None = None, **kwargs: Any) -> NDArray[Any]: ... + @overload # out: ndarray + def clip(self, /, min: ArrayLike, max: ArrayLike | None, out: _ArrayT, **kwargs: Any) -> _ArrayT: ... + @overload + def clip(self, /, min: ArrayLike, max: ArrayLike | None = None, *, out: _ArrayT, **kwargs: Any) -> _ArrayT: ... + @overload + def clip(self, /, min: None, max: ArrayLike, out: _ArrayT, **kwargs: Any) -> _ArrayT: ... + @overload + def clip(self, /, min: None = None, *, max: ArrayLike, out: _ArrayT, **kwargs: Any) -> _ArrayT: ... + + @overload + def compress(self, /, condition: _ArrayLikeInt_co, axis: SupportsIndex | None = None, out: None = None) -> NDArray[Any]: ... + @overload + def compress(self, /, condition: _ArrayLikeInt_co, axis: SupportsIndex | None, out: _ArrayT) -> _ArrayT: ... + @overload + def compress(self, /, condition: _ArrayLikeInt_co, axis: SupportsIndex | None = None, *, out: _ArrayT) -> _ArrayT: ... + + @overload # out: None (default) + def cumprod(self, /, axis: SupportsIndex | None = None, dtype: DTypeLike | None = None, out: None = None) -> NDArray[Any]: ... + @overload # out: ndarray + def cumprod(self, /, axis: SupportsIndex | None, dtype: DTypeLike | None, out: _ArrayT) -> _ArrayT: ... + @overload + def cumprod(self, /, axis: SupportsIndex | None = None, dtype: DTypeLike | None = None, *, out: _ArrayT) -> _ArrayT: ... + + @overload # out: None (default) + def cumsum(self, /, axis: SupportsIndex | None = None, dtype: DTypeLike | None = None, out: None = None) -> NDArray[Any]: ... + @overload # out: ndarray + def cumsum(self, /, axis: SupportsIndex | None, dtype: DTypeLike | None, out: _ArrayT) -> _ArrayT: ... + @overload + def cumsum(self, /, axis: SupportsIndex | None = None, dtype: DTypeLike | None = None, *, out: _ArrayT) -> _ArrayT: ... + + @overload + def max( + self, + /, + axis: _ShapeLike | None = None, + out: None = None, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> Any: ... + @overload + def max( + self, + /, + axis: _ShapeLike | None, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def max( + self, + /, + axis: _ShapeLike | None = None, + *, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def min( + self, + /, + axis: _ShapeLike | None = None, + out: None = None, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> Any: ... + @overload + def min( + self, + /, + axis: _ShapeLike | None, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def min( + self, + /, + axis: _ShapeLike | None = None, + *, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def sum( + self, + /, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + out: None = None, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 0, + where: _ArrayLikeBool_co = True, + ) -> Any: ... + @overload + def sum( + self, + /, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 0, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def sum( + self, + /, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + *, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 0, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def prod( + self, + /, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + out: None = None, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 1, + where: _ArrayLikeBool_co = True, + ) -> Any: ... + @overload + def prod( + self, + /, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 1, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def prod( + self, + /, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + *, + out: _ArrayT, + keepdims: builtins.bool = False, + initial: _NumberLike_co = 1, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def mean( + self, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + out: None = None, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + ) -> Any: ... + @overload + def mean( + self, + /, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def mean( + self, + /, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + *, + out: _ArrayT, + keepdims: builtins.bool = False, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def std( + self, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + out: None = None, + ddof: float = 0, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> Any: ... + @overload + def std( + self, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + ddof: float = 0, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> _ArrayT: ... + @overload + def std( + self, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + *, + out: _ArrayT, + ddof: float = 0, + keepdims: builtins.bool = False, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> _ArrayT: ... + + @overload + def var( + self, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + out: None = None, + ddof: float = 0, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> Any: ... + @overload + def var( + self, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + ddof: float = 0, + keepdims: builtins.bool = False, + *, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> _ArrayT: ... + @overload + def var( + self, + axis: _ShapeLike | None = None, + dtype: DTypeLike | None = None, + *, + out: _ArrayT, + ddof: float = 0, + keepdims: builtins.bool = False, + where: _ArrayLikeBool_co = True, + mean: _ArrayLikeNumber_co = ..., + correction: float = ..., + ) -> _ArrayT: ... + +class ndarray(_ArrayOrScalarCommon, Generic[_ShapeT_co, _DType_co]): + __hash__: ClassVar[None] # type: ignore[assignment] # pyright: ignore[reportIncompatibleMethodOverride] + @property + def base(self) -> None | NDArray[Any]: ... + @property + def ndim(self) -> int: ... + @property + def size(self) -> int: ... + @property + def real(self: _HasDTypeWithRealAndImag[_SCT, object], /) -> ndarray[_ShapeT_co, dtype[_SCT]]: ... + @real.setter + def real(self, value: ArrayLike, /) -> None: ... + @property + def imag(self: _HasDTypeWithRealAndImag[object, _SCT], /) -> ndarray[_ShapeT_co, dtype[_SCT]]: ... + @imag.setter + def imag(self, value: ArrayLike, /) -> None: ... + + def __new__( + cls, + shape: _ShapeLike, + dtype: DTypeLike = ..., + buffer: None | _SupportsBuffer = ..., + offset: SupportsIndex = ..., + strides: None | _ShapeLike = ..., + order: _OrderKACF = ..., + ) -> Self: ... + + if sys.version_info >= (3, 12): + def __buffer__(self, flags: int, /) -> memoryview: ... + + def __class_getitem__(cls, item: Any, /) -> GenericAlias: ... + + @overload + def __array__( + self, dtype: None = ..., /, *, copy: None | bool = ... + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __array__( + self, dtype: _DType, /, *, copy: None | bool = ... + ) -> ndarray[_ShapeT_co, _DType]: ... + + def __array_ufunc__( + self, + ufunc: ufunc, + method: L["__call__", "reduce", "reduceat", "accumulate", "outer", "at"], + *inputs: Any, + **kwargs: Any, + ) -> Any: ... + + def __array_function__( + self, + func: Callable[..., Any], + types: Iterable[type], + args: Iterable[Any], + kwargs: Mapping[str, Any], + ) -> Any: ... + + # NOTE: In practice any object is accepted by `obj`, but as `__array_finalize__` + # is a pseudo-abstract method the type has been narrowed down in order to + # grant subclasses a bit more flexibility + def __array_finalize__(self, obj: None | NDArray[Any], /) -> None: ... + + def __array_wrap__( + self, + array: ndarray[_ShapeT, _DType], + context: None | tuple[ufunc, tuple[Any, ...], int] = ..., + return_scalar: builtins.bool = ..., + /, + ) -> ndarray[_ShapeT, _DType]: ... + + @overload + def __getitem__(self, key: _ArrayInt_co | tuple[_ArrayInt_co, ...], /) -> ndarray[_Shape, _DType_co]: ... + @overload + def __getitem__(self, key: SupportsIndex | tuple[SupportsIndex, ...], /) -> Any: ... + @overload + def __getitem__(self, key: _ToIndices, /) -> ndarray[_Shape, _DType_co]: ... + @overload + def __getitem__(self: NDArray[void], key: str, /) -> ndarray[_ShapeT_co, np.dtype[Any]]: ... + @overload + def __getitem__(self: NDArray[void], key: list[str], /) -> ndarray[_ShapeT_co, _dtype[void]]: ... + + @overload # flexible | object_ | bool + def __setitem__( + self: ndarray[Any, dtype[flexible | object_ | np.bool] | dtypes.StringDType], + key: _ToIndices, + value: object, + /, + ) -> None: ... + @overload # integer + def __setitem__( + self: NDArray[integer], + key: _ToIndices, + value: _ConvertibleToInt | _NestedSequence[_ConvertibleToInt] | _ArrayLikeInt_co, + /, + ) -> None: ... + @overload # floating + def __setitem__( + self: NDArray[floating], + key: _ToIndices, + value: _ConvertibleToFloat | _NestedSequence[_ConvertibleToFloat | None] | _ArrayLikeFloat_co | None, + /, + ) -> None: ... + @overload # complexfloating + def __setitem__( + self: NDArray[complexfloating], + key: _ToIndices, + value: _ConvertibleToComplex | _NestedSequence[_ConvertibleToComplex | None] | _ArrayLikeNumber_co | None, + /, + ) -> None: ... + @overload # timedelta64 + def __setitem__( + self: NDArray[timedelta64], + key: _ToIndices, + value: _ConvertibleToTD64 | _NestedSequence[_ConvertibleToTD64], + /, + ) -> None: ... + @overload # datetime64 + def __setitem__( + self: NDArray[datetime64], + key: _ToIndices, + value: _ConvertibleToDT64 | _NestedSequence[_ConvertibleToDT64], + /, + ) -> None: ... + @overload # void + def __setitem__(self: NDArray[void], key: str | list[str], value: object, /) -> None: ... + @overload # catch-all + def __setitem__(self, key: _ToIndices, value: ArrayLike, /) -> None: ... + + @property + def ctypes(self) -> _ctypes[int]: ... + @property + def shape(self) -> _ShapeT_co: ... + @shape.setter + def shape(self, value: _ShapeLike) -> None: ... + @property + def strides(self) -> _Shape: ... + @strides.setter + def strides(self, value: _ShapeLike) -> None: ... + def byteswap(self, inplace: builtins.bool = ...) -> Self: ... + def fill(self, value: Any) -> None: ... + @property + def flat(self) -> flatiter[Self]: ... + + @overload # use the same output type as that of the underlying `generic` + def item(self: NDArray[generic[_T]], i0: SupportsIndex | tuple[SupportsIndex, ...] = ..., /, *args: SupportsIndex) -> _T: ... + @overload # special casing for `StringDType`, which has no scalar type + def item( + self: ndarray[Any, dtypes.StringDType], + arg0: SupportsIndex | tuple[SupportsIndex, ...] = ..., + /, + *args: SupportsIndex, + ) -> str: ... + + @overload + def tolist(self: ndarray[tuple[()], dtype[generic[_T]]], /) -> _T: ... + @overload + def tolist(self: ndarray[tuple[int], dtype[generic[_T]]], /) -> list[_T]: ... + @overload + def tolist(self: ndarray[tuple[int, int], dtype[generic[_T]]], /) -> list[list[_T]]: ... + @overload + def tolist(self: ndarray[tuple[int, int, int], dtype[generic[_T]]], /) -> list[list[list[_T]]]: ... + @overload + def tolist(self, /) -> Any: ... + + @overload + def resize(self, new_shape: _ShapeLike, /, *, refcheck: builtins.bool = ...) -> None: ... + @overload + def resize(self, /, *new_shape: SupportsIndex, refcheck: builtins.bool = ...) -> None: ... + + def setflags(self, write: builtins.bool = ..., align: builtins.bool = ..., uic: builtins.bool = ...) -> None: ... + + def squeeze( + self, + axis: None | SupportsIndex | tuple[SupportsIndex, ...] = ..., + ) -> ndarray[_Shape, _DType_co]: ... + + def swapaxes( + self, + axis1: SupportsIndex, + axis2: SupportsIndex, + ) -> ndarray[_Shape, _DType_co]: ... + + @overload + def transpose(self, axes: None | _ShapeLike, /) -> Self: ... + @overload + def transpose(self, *axes: SupportsIndex) -> Self: ... + + @overload + def all( + self, + axis: None = None, + out: None = None, + keepdims: L[False, 0] = False, + *, + where: _ArrayLikeBool_co = True + ) -> np.bool: ... + @overload + def all( + self, + axis: None | int | tuple[int, ...] = None, + out: None = None, + keepdims: SupportsIndex = False, + *, + where: _ArrayLikeBool_co = True, + ) -> np.bool | NDArray[np.bool]: ... + @overload + def all( + self, + axis: None | int | tuple[int, ...], + out: _ArrayT, + keepdims: SupportsIndex = False, + *, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def all( + self, + axis: None | int | tuple[int, ...] = None, + *, + out: _ArrayT, + keepdims: SupportsIndex = False, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + @overload + def any( + self, + axis: None = None, + out: None = None, + keepdims: L[False, 0] = False, + *, + where: _ArrayLikeBool_co = True + ) -> np.bool: ... + @overload + def any( + self, + axis: None | int | tuple[int, ...] = None, + out: None = None, + keepdims: SupportsIndex = False, + *, + where: _ArrayLikeBool_co = True, + ) -> np.bool | NDArray[np.bool]: ... + @overload + def any( + self, + axis: None | int | tuple[int, ...], + out: _ArrayT, + keepdims: SupportsIndex = False, + *, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + @overload + def any( + self, + axis: None | int | tuple[int, ...] = None, + *, + out: _ArrayT, + keepdims: SupportsIndex = False, + where: _ArrayLikeBool_co = True, + ) -> _ArrayT: ... + + # + @overload + def partition( + self, + /, + kth: _ArrayLikeInt, + axis: SupportsIndex = -1, + kind: _PartitionKind = "introselect", + order: None = None, + ) -> None: ... + @overload + def partition( + self: NDArray[void], + /, + kth: _ArrayLikeInt, + axis: SupportsIndex = -1, + kind: _PartitionKind = "introselect", + order: str | Sequence[str] | None = None, + ) -> None: ... + + # + @overload + def argpartition( + self, + /, + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: None = None, + ) -> NDArray[intp]: ... + @overload + def argpartition( + self: NDArray[void], + /, + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: str | Sequence[str] | None = None, + ) -> NDArray[intp]: ... + + # + def diagonal( + self, + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., + ) -> ndarray[_Shape, _DType_co]: ... + + # 1D + 1D returns a scalar; + # all other with at least 1 non-0D array return an ndarray. + @overload + def dot(self, b: _ScalarLike_co, out: None = ...) -> NDArray[Any]: ... + @overload + def dot(self, b: ArrayLike, out: None = ...) -> Any: ... # type: ignore[misc] + @overload + def dot(self, b: ArrayLike, out: _ArrayT) -> _ArrayT: ... + + # `nonzero()` is deprecated for 0d arrays/generics + def nonzero(self) -> tuple[NDArray[intp], ...]: ... + + # `put` is technically available to `generic`, + # but is pointless as `generic`s are immutable + def put(self, /, indices: _ArrayLikeInt_co, values: ArrayLike, mode: _ModeKind = "raise") -> None: ... + + @overload + def searchsorted( # type: ignore[misc] + self, # >= 1D array + v: _ScalarLike_co, # 0D array-like + side: _SortSide = ..., + sorter: None | _ArrayLikeInt_co = ..., + ) -> intp: ... + @overload + def searchsorted( + self, # >= 1D array + v: ArrayLike, + side: _SortSide = ..., + sorter: None | _ArrayLikeInt_co = ..., + ) -> NDArray[intp]: ... + + def sort( + self, + axis: SupportsIndex = ..., + kind: None | _SortKind = ..., + order: None | str | Sequence[str] = ..., + *, + stable: None | bool = ..., + ) -> None: ... + + @overload + def trace( + self, # >= 2D array + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None = ..., + ) -> Any: ... + @overload + def trace( + self, # >= 2D array + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: _ArrayT = ..., + ) -> _ArrayT: ... + + @overload + def take( # type: ignore[misc] + self: NDArray[_SCT], + indices: _IntLike_co, + axis: None | SupportsIndex = ..., + out: None = ..., + mode: _ModeKind = ..., + ) -> _SCT: ... + @overload + def take( # type: ignore[misc] + self, + indices: _ArrayLikeInt_co, + axis: None | SupportsIndex = ..., + out: None = ..., + mode: _ModeKind = ..., + ) -> ndarray[_Shape, _DType_co]: ... + @overload + def take( + self, + indices: _ArrayLikeInt_co, + axis: None | SupportsIndex = ..., + out: _ArrayT = ..., + mode: _ModeKind = ..., + ) -> _ArrayT: ... + + def repeat( + self, + repeats: _ArrayLikeInt_co, + axis: None | SupportsIndex = ..., + ) -> ndarray[_Shape, _DType_co]: ... + + def flatten(self, /, order: _OrderKACF = "C") -> ndarray[tuple[int], _DType_co]: ... + def ravel(self, /, order: _OrderKACF = "C") -> ndarray[tuple[int], _DType_co]: ... + + # NOTE: reshape also accepts negative integers, so we can't use integer literals + @overload # (None) + def reshape(self, shape: None, /, *, order: _OrderACF = "C", copy: builtins.bool | None = None) -> Self: ... + @overload # (empty_sequence) + def reshape( # type: ignore[overload-overlap] # mypy false positive + self, + shape: Sequence[Never], + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[()], _DType_co]: ... + @overload # (() | (int) | (int, int) | ....) # up to 8-d + def reshape( + self, + shape: _AnyShapeType, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[_AnyShapeType, _DType_co]: ... + @overload # (index) + def reshape( + self, + size1: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[int], _DType_co]: ... + @overload # (index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[int, int], _DType_co]: ... + @overload # (index, index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + size3: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[int, int, int], _DType_co]: ... + @overload # (index, index, index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + size3: SupportsIndex, + size4: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[int, int, int, int], _DType_co]: ... + @overload # (int, *(index, ...)) + def reshape( + self, + size0: SupportsIndex, + /, + *shape: SupportsIndex, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[_Shape, _DType_co]: ... + @overload # (sequence[index]) + def reshape( + self, + shape: Sequence[SupportsIndex], + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[_Shape, _DType_co]: ... + + @overload + def astype( + self, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + casting: _CastingKind = ..., + subok: builtins.bool = ..., + copy: builtins.bool | _CopyMode = ..., + ) -> ndarray[_ShapeT_co, dtype[_SCT]]: ... + @overload + def astype( + self, + dtype: DTypeLike, + order: _OrderKACF = ..., + casting: _CastingKind = ..., + subok: builtins.bool = ..., + copy: builtins.bool | _CopyMode = ..., + ) -> ndarray[_ShapeT_co, dtype[Any]]: ... + + # + @overload # () + def view(self, /) -> Self: ... + @overload # (dtype: T) + def view(self, /, dtype: _DType | _HasDType[_DType]) -> ndarray[_ShapeT_co, _DType]: ... + @overload # (dtype: dtype[T]) + def view(self, /, dtype: _DTypeLike[_SCT]) -> NDArray[_SCT]: ... + @overload # (type: T) + def view(self, /, *, type: type[_ArrayT]) -> _ArrayT: ... + @overload # (_: T) + def view(self, /, dtype: type[_ArrayT]) -> _ArrayT: ... + @overload # (dtype: ?) + def view(self, /, dtype: DTypeLike) -> ndarray[_ShapeT_co, dtype[Any]]: ... + @overload # (dtype: ?, type: type[T]) + def view(self, /, dtype: DTypeLike, type: type[_ArrayT]) -> _ArrayT: ... + + def setfield(self, /, val: ArrayLike, dtype: DTypeLike, offset: SupportsIndex = 0) -> None: ... + @overload + def getfield(self, dtype: _DTypeLike[_SCT], offset: SupportsIndex = 0) -> NDArray[_SCT]: ... + @overload + def getfield(self, dtype: DTypeLike, offset: SupportsIndex = 0) -> NDArray[Any]: ... + + def __index__(self: NDArray[integer], /) -> int: ... + def __complex__(self: NDArray[number | np.bool | object_], /) -> complex: ... + + def __len__(self) -> int: ... + def __contains__(self, value: object, /) -> builtins.bool: ... + + @overload # == 1-d & object_ + def __iter__(self: ndarray[tuple[int], dtype[object_]], /) -> Iterator[Any]: ... + @overload # == 1-d + def __iter__(self: ndarray[tuple[int], dtype[_SCT]], /) -> Iterator[_SCT]: ... + @overload # >= 2-d + def __iter__(self: ndarray[tuple[int, int, Unpack[tuple[int, ...]]], dtype[_SCT]], /) -> Iterator[NDArray[_SCT]]: ... + @overload # ?-d + def __iter__(self, /) -> Iterator[Any]: ... + + # + @overload + def __lt__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ... + @overload + def __lt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ... + @overload + def __lt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ... + @overload + def __lt__(self: NDArray[bytes_], other: _ArrayLikeBytes_co, /) -> NDArray[np.bool]: ... + @overload + def __lt__( + self: ndarray[Any, dtype[str_] | dtypes.StringDType], other: _ArrayLikeStr_co | _ArrayLikeString_co, / + ) -> NDArray[np.bool]: ... + @overload + def __lt__(self: NDArray[object_], other: object, /) -> NDArray[np.bool]: ... + @overload + def __lt__(self, other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ... + + # + @overload + def __le__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ... + @overload + def __le__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ... + @overload + def __le__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ... + @overload + def __le__(self: NDArray[bytes_], other: _ArrayLikeBytes_co, /) -> NDArray[np.bool]: ... + @overload + def __le__( + self: ndarray[Any, dtype[str_] | dtypes.StringDType], other: _ArrayLikeStr_co | _ArrayLikeString_co, / + ) -> NDArray[np.bool]: ... + @overload + def __le__(self: NDArray[object_], other: object, /) -> NDArray[np.bool]: ... + @overload + def __le__(self, other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ... + + # + @overload + def __gt__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ... + @overload + def __gt__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ... + @overload + def __gt__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ... + @overload + def __gt__(self: NDArray[bytes_], other: _ArrayLikeBytes_co, /) -> NDArray[np.bool]: ... + @overload + def __gt__( + self: ndarray[Any, dtype[str_] | dtypes.StringDType], other: _ArrayLikeStr_co | _ArrayLikeString_co, / + ) -> NDArray[np.bool]: ... + @overload + def __gt__(self: NDArray[object_], other: object, /) -> NDArray[np.bool]: ... + @overload + def __gt__(self, other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ... + + # + @overload + def __ge__(self: _ArrayNumber_co, other: _ArrayLikeNumber_co, /) -> NDArray[np.bool]: ... + @overload + def __ge__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[np.bool]: ... + @overload + def __ge__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[np.bool]: ... + @overload + def __ge__(self: NDArray[bytes_], other: _ArrayLikeBytes_co, /) -> NDArray[np.bool]: ... + @overload + def __ge__( + self: ndarray[Any, dtype[str_] | dtypes.StringDType], other: _ArrayLikeStr_co | _ArrayLikeString_co, / + ) -> NDArray[np.bool]: ... + @overload + def __ge__(self: NDArray[object_], other: object, /) -> NDArray[np.bool]: ... + @overload + def __ge__(self, other: _ArrayLikeObject_co, /) -> NDArray[np.bool]: ... + + # Unary ops + + # TODO: Uncomment once https://github.com/python/mypy/issues/14070 is fixed + # @overload + # def __abs__(self: ndarray[_ShapeType, dtypes.Complex64DType], /) -> ndarray[_ShapeType, dtypes.Float32DType]: ... + # @overload + # def __abs__(self: ndarray[_ShapeType, dtypes.Complex128DType], /) -> ndarray[_ShapeType, dtypes.Float64DType]: ... + # @overload + # def __abs__(self: ndarray[_ShapeType, dtypes.CLongDoubleDType], /) -> ndarray[_ShapeType, dtypes.LongDoubleDType]: ... + # @overload + # def __abs__(self: ndarray[_ShapeType, dtype[complex128]], /) -> ndarray[_ShapeType, dtype[float64]]: ... + @overload + def __abs__(self: ndarray[_ShapeT, dtype[complexfloating[_NBit]]], /) -> ndarray[_ShapeT, dtype[floating[_NBit]]]: ... + @overload + def __abs__(self: _RealArrayT, /) -> _RealArrayT: ... + + def __invert__(self: _IntegralArrayT, /) -> _IntegralArrayT: ... # noqa: PYI019 + def __neg__(self: _NumericArrayT, /) -> _NumericArrayT: ... # noqa: PYI019 + def __pos__(self: _NumericArrayT, /) -> _NumericArrayT: ... # noqa: PYI019 + + # Binary ops + + # TODO: Support the "1d @ 1d -> scalar" case + @overload + def __matmul__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... + @overload + def __matmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __matmul__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __matmul__(self: NDArray[floating[_64Bit]], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __matmul__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __matmul__(self: NDArray[complexfloating[_64Bit]], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __matmul__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __matmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __matmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __matmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __matmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... + @overload + def __matmul__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __matmul__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __matmul__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload # signature equivalent to __matmul__ + def __rmatmul__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... + @overload + def __rmatmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __rmatmul__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rmatmul__(self: NDArray[floating[_64Bit]], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rmatmul__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rmatmul__(self: NDArray[complexfloating[_64Bit]], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __rmatmul__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __rmatmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[overload-overlap] + @overload + def __rmatmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... # type: ignore[overload-overlap] + @overload + def __rmatmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating[Any]]: ... # type: ignore[overload-overlap] + @overload + def __rmatmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating[Any, Any]]: ... + @overload + def __rmatmul__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number[Any]]: ... + @overload + def __rmatmul__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rmatmul__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __mod__(self: NDArray[_RealNumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_RealNumberT]]: ... + @overload + def __mod__(self: NDArray[_RealNumberT], other: _ArrayLikeBool_co, /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __mod__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __mod__(self: NDArray[np.bool], other: _ArrayLike[_RealNumberT], /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __mod__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __mod__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __mod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __mod__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __mod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... + @overload + def __mod__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __mod__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __mod__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload # signature equivalent to __mod__ + def __rmod__(self: NDArray[_RealNumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_RealNumberT]]: ... + @overload + def __rmod__(self: NDArray[_RealNumberT], other: _ArrayLikeBool_co, /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __rmod__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __rmod__(self: NDArray[np.bool], other: _ArrayLike[_RealNumberT], /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __rmod__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rmod__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rmod__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rmod__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rmod__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... + @overload + def __rmod__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __rmod__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rmod__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __divmod__(self: NDArray[_RealNumberT], rhs: int | np.bool, /) -> _2Tuple[ndarray[_ShapeT_co, dtype[_RealNumberT]]]: ... + @overload + def __divmod__(self: NDArray[_RealNumberT], rhs: _ArrayLikeBool_co, /) -> _2Tuple[NDArray[_RealNumberT]]: ... # type: ignore[overload-overlap] + @overload + def __divmod__(self: NDArray[np.bool], rhs: _ArrayLikeBool_co, /) -> _2Tuple[NDArray[int8]]: ... # type: ignore[overload-overlap] + @overload + def __divmod__(self: NDArray[np.bool], rhs: _ArrayLike[_RealNumberT], /) -> _2Tuple[NDArray[_RealNumberT]]: ... # type: ignore[overload-overlap] + @overload + def __divmod__(self: NDArray[float64], rhs: _ArrayLikeFloat64_co, /) -> _2Tuple[NDArray[float64]]: ... + @overload + def __divmod__(self: _ArrayFloat64_co, rhs: _ArrayLike[floating[_64Bit]], /) -> _2Tuple[NDArray[float64]]: ... + @overload + def __divmod__(self: _ArrayUInt_co, rhs: _ArrayLikeUInt_co, /) -> _2Tuple[NDArray[unsignedinteger]]: ... # type: ignore[overload-overlap] + @overload + def __divmod__(self: _ArrayInt_co, rhs: _ArrayLikeInt_co, /) -> _2Tuple[NDArray[signedinteger]]: ... # type: ignore[overload-overlap] + @overload + def __divmod__(self: _ArrayFloat_co, rhs: _ArrayLikeFloat_co, /) -> _2Tuple[NDArray[floating]]: ... + @overload + def __divmod__(self: NDArray[timedelta64], rhs: _ArrayLike[timedelta64], /) -> tuple[NDArray[int64], NDArray[timedelta64]]: ... + + @overload # signature equivalent to __divmod__ + def __rdivmod__(self: NDArray[_RealNumberT], lhs: int | np.bool, /) -> _2Tuple[ndarray[_ShapeT_co, dtype[_RealNumberT]]]: ... + @overload + def __rdivmod__(self: NDArray[_RealNumberT], lhs: _ArrayLikeBool_co, /) -> _2Tuple[NDArray[_RealNumberT]]: ... # type: ignore[overload-overlap] + @overload + def __rdivmod__(self: NDArray[np.bool], lhs: _ArrayLikeBool_co, /) -> _2Tuple[NDArray[int8]]: ... # type: ignore[overload-overlap] + @overload + def __rdivmod__(self: NDArray[np.bool], lhs: _ArrayLike[_RealNumberT], /) -> _2Tuple[NDArray[_RealNumberT]]: ... # type: ignore[overload-overlap] + @overload + def __rdivmod__(self: NDArray[float64], lhs: _ArrayLikeFloat64_co, /) -> _2Tuple[NDArray[float64]]: ... + @overload + def __rdivmod__(self: _ArrayFloat64_co, lhs: _ArrayLike[floating[_64Bit]], /) -> _2Tuple[NDArray[float64]]: ... + @overload + def __rdivmod__(self: _ArrayUInt_co, lhs: _ArrayLikeUInt_co, /) -> _2Tuple[NDArray[unsignedinteger]]: ... # type: ignore[overload-overlap] + @overload + def __rdivmod__(self: _ArrayInt_co, lhs: _ArrayLikeInt_co, /) -> _2Tuple[NDArray[signedinteger]]: ... # type: ignore[overload-overlap] + @overload + def __rdivmod__(self: _ArrayFloat_co, lhs: _ArrayLikeFloat_co, /) -> _2Tuple[NDArray[floating]]: ... + @overload + def __rdivmod__(self: NDArray[timedelta64], lhs: _ArrayLike[timedelta64], /) -> tuple[NDArray[int64], NDArray[timedelta64]]: ... + + @overload + def __add__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __add__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __add__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __add__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __add__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __add__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... # type: ignore[overload-overlap] + @overload + def __add__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[timedelta64]: ... + @overload + def __add__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co, /) -> NDArray[datetime64]: ... + @overload + def __add__(self: NDArray[datetime64], other: _ArrayLikeTD64_co, /) -> NDArray[datetime64]: ... + @overload + def __add__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __add__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload # signature equivalent to __add__ + def __radd__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __radd__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __radd__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __radd__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __radd__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __radd__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... # type: ignore[overload-overlap] + @overload + def __radd__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[timedelta64]: ... + @overload + def __radd__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co, /) -> NDArray[datetime64]: ... + @overload + def __radd__(self: NDArray[datetime64], other: _ArrayLikeTD64_co, /) -> NDArray[datetime64]: ... + @overload + def __radd__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __radd__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __sub__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __sub__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NoReturn: ... + @overload + def __sub__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __sub__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __sub__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __sub__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __sub__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... # type: ignore[overload-overlap] + @overload + def __sub__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[timedelta64]: ... + @overload + def __sub__(self: NDArray[datetime64], other: _ArrayLikeTD64_co, /) -> NDArray[datetime64]: ... + @overload + def __sub__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[timedelta64]: ... + @overload + def __sub__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __sub__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rsub__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __rsub__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NoReturn: ... + @overload + def __rsub__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rsub__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rsub__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __rsub__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __rsub__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... # type: ignore[overload-overlap] + @overload + def __rsub__(self: _ArrayTD64_co, other: _ArrayLikeTD64_co, /) -> NDArray[timedelta64]: ... + @overload + def __rsub__(self: _ArrayTD64_co, other: _ArrayLikeDT64_co, /) -> NDArray[datetime64]: ... + @overload + def __rsub__(self: NDArray[datetime64], other: _ArrayLikeDT64_co, /) -> NDArray[timedelta64]: ... + @overload + def __rsub__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rsub__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __mul__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __mul__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __mul__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __mul__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __mul__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __mul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __mul__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __mul__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co, /) -> NDArray[timedelta64]: ... + @overload + def __mul__(self: _ArrayFloat_co, other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __mul__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __mul__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload # signature equivalent to __mul__ + def __rmul__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __rmul__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rmul__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rmul__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __rmul__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __rmul__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... # type: ignore[overload-overlap] + @overload + def __rmul__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __rmul__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co, /) -> NDArray[timedelta64]: ... + @overload + def __rmul__(self: _ArrayFloat_co, other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __rmul__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rmul__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __truediv__(self: _ArrayInt_co | NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __truediv__(self: _ArrayFloat64_co, other: _ArrayLikeInt_co | _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __truediv__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __truediv__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __truediv__(self: NDArray[floating], other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... + @overload + def __truediv__(self: _ArrayFloat_co, other: _ArrayLike[floating], /) -> NDArray[floating]: ... + @overload + def __truediv__(self: NDArray[complexfloating], other: _ArrayLikeNumber_co, /) -> NDArray[complexfloating]: ... + @overload + def __truediv__(self: _ArrayNumber_co, other: _ArrayLike[complexfloating], /) -> NDArray[complexfloating]: ... + @overload + def __truediv__(self: NDArray[inexact], other: _ArrayLikeNumber_co, /) -> NDArray[inexact]: ... + @overload + def __truediv__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __truediv__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[float64]: ... + @overload + def __truediv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co, /) -> NoReturn: ... + @overload + def __truediv__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co, /) -> NDArray[timedelta64]: ... + @overload + def __truediv__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __truediv__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rtruediv__(self: _ArrayInt_co | NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rtruediv__(self: _ArrayFloat64_co, other: _ArrayLikeInt_co | _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rtruediv__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __rtruediv__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __rtruediv__(self: NDArray[floating], other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... + @overload + def __rtruediv__(self: _ArrayFloat_co, other: _ArrayLike[floating], /) -> NDArray[floating]: ... + @overload + def __rtruediv__(self: NDArray[complexfloating], other: _ArrayLikeNumber_co, /) -> NDArray[complexfloating]: ... + @overload + def __rtruediv__(self: _ArrayNumber_co, other: _ArrayLike[complexfloating], /) -> NDArray[complexfloating]: ... + @overload + def __rtruediv__(self: NDArray[inexact], other: _ArrayLikeNumber_co, /) -> NDArray[inexact]: ... + @overload + def __rtruediv__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __rtruediv__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[float64]: ... + @overload + def __rtruediv__(self: NDArray[integer | floating], other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __rtruediv__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rtruediv__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __floordiv__(self: NDArray[_RealNumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_RealNumberT]]: ... + @overload + def __floordiv__(self: NDArray[_RealNumberT], other: _ArrayLikeBool_co, /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __floordiv__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __floordiv__(self: NDArray[np.bool], other: _ArrayLike[_RealNumberT], /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __floordiv__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __floordiv__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __floordiv__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __floordiv__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __floordiv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... + @overload + def __floordiv__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[int64]: ... + @overload + def __floordiv__(self: NDArray[timedelta64], other: _ArrayLikeBool_co, /) -> NoReturn: ... + @overload + def __floordiv__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co, /) -> NDArray[timedelta64]: ... + @overload + def __floordiv__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __floordiv__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rfloordiv__(self: NDArray[_RealNumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_RealNumberT]]: ... + @overload + def __rfloordiv__(self: NDArray[_RealNumberT], other: _ArrayLikeBool_co, /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: NDArray[np.bool], other: _ArrayLike[_RealNumberT], /) -> NDArray[_RealNumberT]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rfloordiv__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rfloordiv__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __rfloordiv__(self: NDArray[timedelta64], other: _ArrayLike[timedelta64], /) -> NDArray[int64]: ... + @overload + def __rfloordiv__(self: NDArray[floating | integer], other: _ArrayLike[timedelta64], /) -> NDArray[timedelta64]: ... + @overload + def __rfloordiv__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rfloordiv__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __pow__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __pow__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __pow__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __pow__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __pow__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __pow__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __pow__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... + @overload + def __pow__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __pow__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __pow__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rpow__(self: NDArray[_NumberT], other: int | np.bool, /) -> ndarray[_ShapeT_co, dtype[_NumberT]]: ... + @overload + def __rpow__(self: NDArray[_NumberT], other: _ArrayLikeBool_co, /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: NDArray[np.bool], other: _ArrayLike[_NumberT], /) -> NDArray[_NumberT]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: NDArray[float64], other: _ArrayLikeFloat64_co, /) -> NDArray[float64]: ... + @overload + def __rpow__(self: _ArrayFloat64_co, other: _ArrayLike[floating[_64Bit]], /) -> NDArray[float64]: ... + @overload + def __rpow__(self: NDArray[complex128], other: _ArrayLikeComplex128_co, /) -> NDArray[complex128]: ... + @overload + def __rpow__(self: _ArrayComplex128_co, other: _ArrayLike[complexfloating[_64Bit]], /) -> NDArray[complex128]: ... + @overload + def __rpow__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: _ArrayFloat_co, other: _ArrayLikeFloat_co, /) -> NDArray[floating]: ... # type: ignore[overload-overlap] + @overload + def __rpow__(self: _ArrayComplex_co, other: _ArrayLikeComplex_co, /) -> NDArray[complexfloating]: ... + @overload + def __rpow__(self: NDArray[number], other: _ArrayLikeNumber_co, /) -> NDArray[number]: ... + @overload + def __rpow__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rpow__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __lshift__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[misc] + @overload + def __lshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __lshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __lshift__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __lshift__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rlshift__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[misc] + @overload + def __rlshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __rlshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __rlshift__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rlshift__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rshift__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[misc] + @overload + def __rshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __rshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __rshift__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rshift__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rrshift__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[int8]: ... # type: ignore[misc] + @overload + def __rrshift__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __rrshift__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __rrshift__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rrshift__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __and__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __and__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __and__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __and__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __and__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rand__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __rand__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __rand__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __rand__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rand__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __xor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __xor__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __xor__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __xor__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __xor__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __rxor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __rxor__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __rxor__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __rxor__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __rxor__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __or__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __or__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __or__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __or__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __or__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + @overload + def __ror__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> NDArray[np.bool]: ... # type: ignore[misc] + @overload + def __ror__(self: _ArrayUInt_co, other: _ArrayLikeUInt_co, /) -> NDArray[unsignedinteger[Any]]: ... # type: ignore[misc] + @overload + def __ror__(self: _ArrayInt_co, other: _ArrayLikeInt_co, /) -> NDArray[signedinteger[Any]]: ... + @overload + def __ror__(self: NDArray[object_], other: Any, /) -> Any: ... + @overload + def __ror__(self: NDArray[Any], other: _ArrayLikeObject_co, /) -> Any: ... + + # `np.generic` does not support inplace operations + + # NOTE: Inplace ops generally use "same_kind" casting w.r.t. to the left + # operand. An exception to this rule are unsigned integers though, which + # also accepts a signed integer for the right operand as long it is a 0D + # object and its value is >= 0 + # NOTE: Due to a mypy bug, overloading on e.g. `self: NDArray[SCT_floating]` won't + # work, as this will lead to `false negatives` when using these inplace ops. + @overload + def __iadd__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[complex128], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[complexfloating[Any]], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[timedelta64], other: _ArrayLikeTD64_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[datetime64], other: _ArrayLikeTD64_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iadd__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # + @overload + def __isub__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[complex128], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[complexfloating[Any]], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[timedelta64], other: _ArrayLikeTD64_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[datetime64], other: _ArrayLikeTD64_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __isub__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # + @overload + def __imul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[complex128], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[complexfloating[Any]], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[timedelta64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imul__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + @overload + def __ipow__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[complex128], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[complexfloating[Any]], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ipow__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # + @overload + def __itruediv__(self: NDArray[floating], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __itruediv__(self: NDArray[complexfloating], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __itruediv__(self: NDArray[timedelta64], other: _ArrayLikeInt, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __itruediv__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + + # keep in sync with `__imod__` + @overload + def __ifloordiv__( + self: NDArray[unsignedinteger], + other: _ArrayLikeUInt_co | _IntLike_co, + / + ) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __ifloordiv__(self: NDArray[signedinteger], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __ifloordiv__(self: NDArray[floating], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __ifloordiv__(self: NDArray[timedelta64], other: _ArrayLikeInt, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + @overload + def __ifloordiv__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DTypeT_co]: ... + + # keep in sync with `__ifloordiv__` + @overload + def __imod__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imod__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imod__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imod__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imod__( + self: NDArray[timedelta64], + other: _SupportsArray[_dtype[timedelta64]] | _NestedSequence[_SupportsArray[_dtype[timedelta64]]], + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imod__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # keep in sync with `__irshift__` + @overload + def __ilshift__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ilshift__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ilshift__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # keep in sync with `__ilshift__` + @overload + def __irshift__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __irshift__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __irshift__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # keep in sync with `__ixor__` and `__ior__` + @overload + def __iand__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iand__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iand__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __iand__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # keep in sync with `__iand__` and `__ior__` + @overload + def __ixor__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ixor__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ixor__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ixor__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # keep in sync with `__iand__` and `__ixor__` + @overload + def __ior__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ior__( + self: NDArray[unsignedinteger[Any]], + other: _ArrayLikeUInt_co | _IntLike_co, + /, + ) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ior__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __ior__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # + @overload + def __imatmul__(self: NDArray[np.bool], other: _ArrayLikeBool_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[unsignedinteger[Any]], other: _ArrayLikeUInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[signedinteger[Any]], other: _ArrayLikeInt_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[float64], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[floating[Any]], other: _ArrayLikeFloat_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[complex128], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[complexfloating[Any]], other: _ArrayLikeComplex_co, /) -> ndarray[_ShapeT_co, _DType_co]: ... + @overload + def __imatmul__(self: NDArray[object_], other: Any, /) -> ndarray[_ShapeT_co, _DType_co]: ... + + # + def __dlpack__( + self: NDArray[number[Any]], + /, + *, + stream: int | Any | None = None, + max_version: tuple[int, int] | None = None, + dl_device: tuple[int, int] | None = None, + copy: builtins.bool | None = None, + ) -> CapsuleType: ... + def __dlpack_device__(self, /) -> tuple[L[1], L[0]]: ... + + # Keep `dtype` at the bottom to avoid name conflicts with `np.dtype` + @property + def dtype(self) -> _DType_co: ... + +# NOTE: while `np.generic` is not technically an instance of `ABCMeta`, +# the `@abstractmethod` decorator is herein used to (forcefully) deny +# the creation of `np.generic` instances. +# The `# type: ignore` comments are necessary to silence mypy errors regarding +# the missing `ABCMeta` metaclass. +# See https://github.com/numpy/numpy-stubs/pull/80 for more details. +class generic(_ArrayOrScalarCommon, Generic[_ItemT_co]): + @abstractmethod + def __init__(self, *args: Any, **kwargs: Any) -> None: ... + def __hash__(self) -> int: ... + @overload + def __array__(self, dtype: None = None, /) -> ndarray[tuple[()], dtype[Self]]: ... + @overload + def __array__(self, dtype: _DType, /) -> ndarray[tuple[()], _DType]: ... + if sys.version_info >= (3, 12): + def __buffer__(self, flags: int, /) -> memoryview: ... + + @property + def base(self) -> None: ... + @property + def ndim(self) -> L[0]: ... + @property + def size(self) -> L[1]: ... + @property + def shape(self) -> tuple[()]: ... + @property + def strides(self) -> tuple[()]: ... + @property + def flat(self) -> flatiter[ndarray[tuple[int], dtype[Self]]]: ... + + @overload + def item(self, /) -> _ItemT_co: ... + @overload + def item(self, arg0: L[0, -1] | tuple[L[0, -1]] | tuple[()] = ..., /) -> _ItemT_co: ... + def tolist(self, /) -> _ItemT_co: ... + + def byteswap(self, inplace: L[False] = ...) -> Self: ... + + @overload + def astype( + self, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + casting: _CastingKind = ..., + subok: builtins.bool = ..., + copy: builtins.bool | _CopyMode = ..., + ) -> _SCT: ... + @overload + def astype( + self, + dtype: DTypeLike, + order: _OrderKACF = ..., + casting: _CastingKind = ..., + subok: builtins.bool = ..., + copy: builtins.bool | _CopyMode = ..., + ) -> Any: ... + + # NOTE: `view` will perform a 0D->scalar cast, + # thus the array `type` is irrelevant to the output type + @overload + def view(self, type: type[NDArray[Any]] = ...) -> Self: ... + @overload + def view( + self, + dtype: _DTypeLike[_SCT], + type: type[NDArray[Any]] = ..., + ) -> _SCT: ... + @overload + def view( + self, + dtype: DTypeLike, + type: type[NDArray[Any]] = ..., + ) -> Any: ... + + @overload + def getfield( + self, + dtype: _DTypeLike[_SCT], + offset: SupportsIndex = ... + ) -> _SCT: ... + @overload + def getfield( + self, + dtype: DTypeLike, + offset: SupportsIndex = ... + ) -> Any: ... + + @overload + def take( # type: ignore[misc] + self, + indices: _IntLike_co, + axis: None | SupportsIndex = ..., + out: None = ..., + mode: _ModeKind = ..., + ) -> Self: ... + @overload + def take( # type: ignore[misc] + self, + indices: _ArrayLikeInt_co, + axis: None | SupportsIndex = ..., + out: None = ..., + mode: _ModeKind = ..., + ) -> NDArray[Self]: ... + @overload + def take( + self, + indices: _ArrayLikeInt_co, + axis: None | SupportsIndex = ..., + out: _ArrayT = ..., + mode: _ModeKind = ..., + ) -> _ArrayT: ... + + def repeat(self, repeats: _ArrayLikeInt_co, axis: None | SupportsIndex = ...) -> NDArray[Self]: ... + def flatten(self, /, order: _OrderKACF = "C") -> ndarray[tuple[int], dtype[Self]]: ... + def ravel(self, /, order: _OrderKACF = "C") -> ndarray[tuple[int], dtype[Self]]: ... + + @overload # (() | []) + def reshape( + self, + shape: tuple[()] | list[Never], + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> Self: ... + @overload # ((1, *(1, ...))@_ShapeType) + def reshape( + self, + shape: _1NShapeT, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[_1NShapeT, dtype[Self]]: ... + @overload # (Sequence[index, ...]) # not recommended + def reshape( + self, + shape: Sequence[SupportsIndex], + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> Self | ndarray[tuple[L[1], ...], dtype[Self]]: ... + @overload # _(index) + def reshape( + self, + size1: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[L[1]], dtype[Self]]: ... + @overload # _(index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[L[1], L[1]], dtype[Self]]: ... + @overload # _(index, index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + size3: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[L[1], L[1], L[1]], dtype[Self]]: ... + @overload # _(index, index, index, index) + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + size3: SupportsIndex, + size4: SupportsIndex, + /, + *, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[L[1], L[1], L[1], L[1]], dtype[Self]]: ... + @overload # _(index, index, index, index, index, *index) # ndim >= 5 + def reshape( + self, + size1: SupportsIndex, + size2: SupportsIndex, + size3: SupportsIndex, + size4: SupportsIndex, + size5: SupportsIndex, + /, + *sizes6_: SupportsIndex, + order: _OrderACF = "C", + copy: builtins.bool | None = None, + ) -> ndarray[tuple[L[1], L[1], L[1], L[1], L[1], Unpack[tuple[L[1], ...]]], dtype[Self]]: ... + + def squeeze(self, axis: None | L[0] | tuple[()] = ...) -> Self: ... + def transpose(self, axes: None | tuple[()] = ..., /) -> Self: ... + + @overload + def all( + self, + /, + axis: L[0, -1] | tuple[()] | None = None, + out: None = None, + keepdims: SupportsIndex = False, + *, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True + ) -> np.bool: ... + @overload + def all( + self, + /, + axis: L[0, -1] | tuple[()] | None, + out: ndarray[tuple[()], dtype[_SCT]], + keepdims: SupportsIndex = False, + *, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True, + ) -> _SCT: ... + @overload + def all( + self, + /, + axis: L[0, -1] | tuple[()] | None = None, + *, + out: ndarray[tuple[()], dtype[_SCT]], + keepdims: SupportsIndex = False, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True, + ) -> _SCT: ... + + @overload + def any( + self, + /, + axis: L[0, -1] | tuple[()] | None = None, + out: None = None, + keepdims: SupportsIndex = False, + *, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True + ) -> np.bool: ... + @overload + def any( + self, + /, + axis: L[0, -1] | tuple[()] | None, + out: ndarray[tuple[()], dtype[_SCT]], + keepdims: SupportsIndex = False, + *, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True, + ) -> _SCT: ... + @overload + def any( + self, + /, + axis: L[0, -1] | tuple[()] | None = None, + *, + out: ndarray[tuple[()], dtype[_SCT]], + keepdims: SupportsIndex = False, + where: builtins.bool | np.bool | ndarray[tuple[()], dtype[np.bool]] = True, + ) -> _SCT: ... + + # Keep `dtype` at the bottom to avoid name conflicts with `np.dtype` + @property + def dtype(self) -> _dtype[Self]: ... + +class number(generic[_NumberItemT_co], Generic[_NBit, _NumberItemT_co]): + @abstractmethod + def __init__(self, value: _NumberItemT_co, /) -> None: ... + def __class_getitem__(cls, item: Any, /) -> GenericAlias: ... + + def __neg__(self) -> Self: ... + def __pos__(self) -> Self: ... + def __abs__(self) -> Self: ... + + __add__: _NumberOp + __radd__: _NumberOp + __sub__: _NumberOp + __rsub__: _NumberOp + __mul__: _NumberOp + __rmul__: _NumberOp + __floordiv__: _NumberOp + __rfloordiv__: _NumberOp + __pow__: _NumberOp + __rpow__: _NumberOp + __truediv__: _NumberOp + __rtruediv__: _NumberOp + + __lt__: _ComparisonOpLT[_NumberLike_co, _ArrayLikeNumber_co] + __le__: _ComparisonOpLE[_NumberLike_co, _ArrayLikeNumber_co] + __gt__: _ComparisonOpGT[_NumberLike_co, _ArrayLikeNumber_co] + __ge__: _ComparisonOpGE[_NumberLike_co, _ArrayLikeNumber_co] + +class bool(generic[_BoolItemT_co], Generic[_BoolItemT_co]): + @property + def itemsize(self) -> L[1]: ... + @property + def nbytes(self) -> L[1]: ... + @property + def real(self) -> Self: ... + @property + def imag(self) -> np.bool[L[False]]: ... + + @overload + def __init__(self: np.bool[L[False]], /) -> None: ... + @overload + def __init__(self: np.bool[L[False]], value: _Falsy = ..., /) -> None: ... + @overload + def __init__(self: np.bool[L[True]], value: _Truthy, /) -> None: ... + @overload + def __init__(self, value: object, /) -> None: ... + + def __bool__(self, /) -> _BoolItemT_co: ... + @overload + def __int__(self: np.bool[L[False]], /) -> L[0]: ... + @overload + def __int__(self: np.bool[L[True]], /) -> L[1]: ... + @overload + def __int__(self, /) -> L[0, 1]: ... + @deprecated("In future, it will be an error for 'np.bool' scalars to be interpreted as an index") + def __index__(self, /) -> L[0, 1]: ... + def __abs__(self) -> Self: ... + + @overload + def __invert__(self: np.bool[L[False]], /) -> np.bool[L[True]]: ... + @overload + def __invert__(self: np.bool[L[True]], /) -> np.bool[L[False]]: ... + @overload + def __invert__(self, /) -> np.bool: ... + + __add__: _BoolOp[np.bool] + __radd__: _BoolOp[np.bool] + __sub__: _BoolSub + __rsub__: _BoolSub + __mul__: _BoolOp[np.bool] + __rmul__: _BoolOp[np.bool] + __truediv__: _BoolTrueDiv + __rtruediv__: _BoolTrueDiv + __floordiv__: _BoolOp[int8] + __rfloordiv__: _BoolOp[int8] + __pow__: _BoolOp[int8] + __rpow__: _BoolOp[int8] + + __lshift__: _BoolBitOp[int8] + __rlshift__: _BoolBitOp[int8] + __rshift__: _BoolBitOp[int8] + __rrshift__: _BoolBitOp[int8] + + @overload + def __and__(self: np.bool[L[False]], other: builtins.bool | np.bool, /) -> np.bool[L[False]]: ... + @overload + def __and__(self, other: L[False] | np.bool[L[False]], /) -> np.bool[L[False]]: ... + @overload + def __and__(self, other: L[True] | np.bool[L[True]], /) -> Self: ... + @overload + def __and__(self, other: builtins.bool | np.bool, /) -> np.bool: ... + @overload + def __and__(self, other: _IntegerT, /) -> _IntegerT: ... + @overload + def __and__(self, other: int, /) -> np.bool | intp: ... + __rand__ = __and__ + + @overload + def __xor__(self: np.bool[L[False]], other: _BoolItemT | np.bool[_BoolItemT], /) -> np.bool[_BoolItemT]: ... + @overload + def __xor__(self: np.bool[L[True]], other: L[True] | np.bool[L[True]], /) -> np.bool[L[False]]: ... + @overload + def __xor__(self, other: L[False] | np.bool[L[False]], /) -> Self: ... + @overload + def __xor__(self, other: builtins.bool | np.bool, /) -> np.bool: ... + @overload + def __xor__(self, other: _IntegerT, /) -> _IntegerT: ... + @overload + def __xor__(self, other: int, /) -> np.bool | intp: ... + __rxor__ = __xor__ + + @overload + def __or__(self: np.bool[L[True]], other: builtins.bool | np.bool, /) -> np.bool[L[True]]: ... + @overload + def __or__(self, other: L[False] | np.bool[L[False]], /) -> Self: ... + @overload + def __or__(self, other: L[True] | np.bool[L[True]], /) -> np.bool[L[True]]: ... + @overload + def __or__(self, other: builtins.bool | np.bool, /) -> np.bool: ... + @overload + def __or__(self, other: _IntegerT, /) -> _IntegerT: ... + @overload + def __or__(self, other: int, /) -> np.bool | intp: ... + __ror__ = __or__ + + __mod__: _BoolMod + __rmod__: _BoolMod + __divmod__: _BoolDivMod + __rdivmod__: _BoolDivMod + + __lt__: _ComparisonOpLT[_NumberLike_co, _ArrayLikeNumber_co] + __le__: _ComparisonOpLE[_NumberLike_co, _ArrayLikeNumber_co] + __gt__: _ComparisonOpGT[_NumberLike_co, _ArrayLikeNumber_co] + __ge__: _ComparisonOpGE[_NumberLike_co, _ArrayLikeNumber_co] + +# NOTE: This should _not_ be `Final` or a `TypeAlias` +bool_ = bool + +# NOTE: The `object_` constructor returns the passed object, so instances with type +# `object_` cannot exists (at runtime). +# NOTE: Because mypy has some long-standing bugs related to `__new__`, `object_` can't +# be made generic. +@final +class object_(_RealMixin, generic[Any]): + @overload + def __new__(cls, nothing_to_see_here: None = None, /) -> None: ... # type: ignore[misc] + @overload + def __new__(cls, stringy: _AnyStr, /) -> _AnyStr: ... # type: ignore[misc] + @overload + def __new__(cls, array: ndarray[_ShapeT, Any], /) -> ndarray[_ShapeT, dtype[Self]]: ... # type: ignore[misc] + @overload + def __new__(cls, sequence: SupportsLenAndGetItem[object], /) -> NDArray[Self]: ... # type: ignore[misc] + @overload + def __new__(cls, value: _T, /) -> _T: ... # type: ignore[misc] + @overload # catch-all + def __new__(cls, value: Any = ..., /) -> object | NDArray[Self]: ... # type: ignore[misc] + def __init__(self, value: object = ..., /) -> None: ... + def __hash__(self, /) -> int: ... + def __abs__(self, /) -> object_: ... # this affects NDArray[object_].__abs__ + def __call__(self, /, *args: object, **kwargs: object) -> Any: ... + + if sys.version_info >= (3, 12): + def __release_buffer__(self, buffer: memoryview, /) -> None: ... + +class integer(_IntegralMixin, _RoundMixin, number[_NBit, int]): + @abstractmethod + def __init__(self, value: _ConvertibleToInt = ..., /) -> None: ... + + # NOTE: `bit_count` and `__index__` are technically defined in the concrete subtypes + def bit_count(self, /) -> int: ... + def __index__(self, /) -> int: ... + def __invert__(self, /) -> Self: ... + + __truediv__: _IntTrueDiv[_NBit] + __rtruediv__: _IntTrueDiv[_NBit] + def __mod__(self, value: _IntLike_co, /) -> integer[Any]: ... + def __rmod__(self, value: _IntLike_co, /) -> integer[Any]: ... + # Ensure that objects annotated as `integer` support bit-wise operations + def __lshift__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __rlshift__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __rshift__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __rrshift__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __and__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __rand__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __or__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __ror__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __xor__(self, other: _IntLike_co, /) -> integer[Any]: ... + def __rxor__(self, other: _IntLike_co, /) -> integer[Any]: ... + +class signedinteger(integer[_NBit1]): + def __init__(self, value: _ConvertibleToInt = ..., /) -> None: ... + + __add__: _SignedIntOp[_NBit1] + __radd__: _SignedIntOp[_NBit1] + __sub__: _SignedIntOp[_NBit1] + __rsub__: _SignedIntOp[_NBit1] + __mul__: _SignedIntOp[_NBit1] + __rmul__: _SignedIntOp[_NBit1] + __floordiv__: _SignedIntOp[_NBit1] + __rfloordiv__: _SignedIntOp[_NBit1] + __pow__: _SignedIntOp[_NBit1] + __rpow__: _SignedIntOp[_NBit1] + __lshift__: _SignedIntBitOp[_NBit1] + __rlshift__: _SignedIntBitOp[_NBit1] + __rshift__: _SignedIntBitOp[_NBit1] + __rrshift__: _SignedIntBitOp[_NBit1] + __and__: _SignedIntBitOp[_NBit1] + __rand__: _SignedIntBitOp[_NBit1] + __xor__: _SignedIntBitOp[_NBit1] + __rxor__: _SignedIntBitOp[_NBit1] + __or__: _SignedIntBitOp[_NBit1] + __ror__: _SignedIntBitOp[_NBit1] + __mod__: _SignedIntMod[_NBit1] + __rmod__: _SignedIntMod[_NBit1] + __divmod__: _SignedIntDivMod[_NBit1] + __rdivmod__: _SignedIntDivMod[_NBit1] + +int8 = signedinteger[_8Bit] +int16 = signedinteger[_16Bit] +int32 = signedinteger[_32Bit] +int64 = signedinteger[_64Bit] + +byte = signedinteger[_NBitByte] +short = signedinteger[_NBitShort] +intc = signedinteger[_NBitIntC] +intp = signedinteger[_NBitIntP] +int_ = intp +long = signedinteger[_NBitLong] +longlong = signedinteger[_NBitLongLong] + +class unsignedinteger(integer[_NBit1]): + # NOTE: `uint64 + signedinteger -> float64` + def __init__(self, value: _ConvertibleToInt = ..., /) -> None: ... + + __add__: _UnsignedIntOp[_NBit1] + __radd__: _UnsignedIntOp[_NBit1] + __sub__: _UnsignedIntOp[_NBit1] + __rsub__: _UnsignedIntOp[_NBit1] + __mul__: _UnsignedIntOp[_NBit1] + __rmul__: _UnsignedIntOp[_NBit1] + __floordiv__: _UnsignedIntOp[_NBit1] + __rfloordiv__: _UnsignedIntOp[_NBit1] + __pow__: _UnsignedIntOp[_NBit1] + __rpow__: _UnsignedIntOp[_NBit1] + __lshift__: _UnsignedIntBitOp[_NBit1] + __rlshift__: _UnsignedIntBitOp[_NBit1] + __rshift__: _UnsignedIntBitOp[_NBit1] + __rrshift__: _UnsignedIntBitOp[_NBit1] + __and__: _UnsignedIntBitOp[_NBit1] + __rand__: _UnsignedIntBitOp[_NBit1] + __xor__: _UnsignedIntBitOp[_NBit1] + __rxor__: _UnsignedIntBitOp[_NBit1] + __or__: _UnsignedIntBitOp[_NBit1] + __ror__: _UnsignedIntBitOp[_NBit1] + __mod__: _UnsignedIntMod[_NBit1] + __rmod__: _UnsignedIntMod[_NBit1] + __divmod__: _UnsignedIntDivMod[_NBit1] + __rdivmod__: _UnsignedIntDivMod[_NBit1] + +uint8: TypeAlias = unsignedinteger[_8Bit] +uint16: TypeAlias = unsignedinteger[_16Bit] +uint32: TypeAlias = unsignedinteger[_32Bit] +uint64: TypeAlias = unsignedinteger[_64Bit] + +ubyte: TypeAlias = unsignedinteger[_NBitByte] +ushort: TypeAlias = unsignedinteger[_NBitShort] +uintc: TypeAlias = unsignedinteger[_NBitIntC] +uintp: TypeAlias = unsignedinteger[_NBitIntP] +uint: TypeAlias = uintp +ulong: TypeAlias = unsignedinteger[_NBitLong] +ulonglong: TypeAlias = unsignedinteger[_NBitLongLong] + +class inexact(number[_NBit, _InexactItemT_co], Generic[_NBit, _InexactItemT_co]): + @abstractmethod + def __init__(self, value: _InexactItemT_co | None = ..., /) -> None: ... + +class floating(_RealMixin, _RoundMixin, inexact[_NBit1, float]): + def __init__(self, value: _ConvertibleToFloat | None = ..., /) -> None: ... + + __add__: _FloatOp[_NBit1] + __radd__: _FloatOp[_NBit1] + __sub__: _FloatOp[_NBit1] + __rsub__: _FloatOp[_NBit1] + __mul__: _FloatOp[_NBit1] + __rmul__: _FloatOp[_NBit1] + __truediv__: _FloatOp[_NBit1] + __rtruediv__: _FloatOp[_NBit1] + __floordiv__: _FloatOp[_NBit1] + __rfloordiv__: _FloatOp[_NBit1] + __pow__: _FloatOp[_NBit1] + __rpow__: _FloatOp[_NBit1] + __mod__: _FloatMod[_NBit1] + __rmod__: _FloatMod[_NBit1] + __divmod__: _FloatDivMod[_NBit1] + __rdivmod__: _FloatDivMod[_NBit1] + + # NOTE: `is_integer` and `as_integer_ratio` are technically defined in the concrete subtypes + def is_integer(self, /) -> builtins.bool: ... + def as_integer_ratio(self, /) -> tuple[int, int]: ... + +float16: TypeAlias = floating[_16Bit] +float32: TypeAlias = floating[_32Bit] + +# either a C `double`, `float`, or `longdouble` +class float64(floating[_64Bit], float): # type: ignore[misc] + def __new__(cls, x: _ConvertibleToFloat | None = ..., /) -> Self: ... + + # + @property + def itemsize(self) -> L[8]: ... + @property + def nbytes(self) -> L[8]: ... + + # overrides for `floating` and `builtins.float` compatibility (`_RealMixin` doesn't work) + @property + def real(self) -> Self: ... + @property + def imag(self) -> Self: ... + def conjugate(self) -> Self: ... + def __getformat__(self, typestr: L["double", "float"], /) -> str: ... + def __getnewargs__(self, /) -> tuple[float]: ... + + # float64-specific operator overrides + @overload + def __add__(self, other: _Float64_co, /) -> float64: ... + @overload + def __add__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __add__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __add__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __radd__(self, other: _Float64_co, /) -> float64: ... + @overload + def __radd__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __radd__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __radd__(self, other: complex, /) -> float64 | complex128: ... + + @overload + def __sub__(self, other: _Float64_co, /) -> float64: ... + @overload + def __sub__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __sub__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __sub__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __rsub__(self, other: _Float64_co, /) -> float64: ... + @overload + def __rsub__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __rsub__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __rsub__(self, other: complex, /) -> float64 | complex128: ... + + @overload + def __mul__(self, other: _Float64_co, /) -> float64: ... + @overload + def __mul__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __mul__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __mul__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __rmul__(self, other: _Float64_co, /) -> float64: ... + @overload + def __rmul__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __rmul__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __rmul__(self, other: complex, /) -> float64 | complex128: ... + + @overload + def __truediv__(self, other: _Float64_co, /) -> float64: ... + @overload + def __truediv__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __truediv__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __truediv__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __rtruediv__(self, other: _Float64_co, /) -> float64: ... + @overload + def __rtruediv__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __rtruediv__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __rtruediv__(self, other: complex, /) -> float64 | complex128: ... + + @overload + def __floordiv__(self, other: _Float64_co, /) -> float64: ... + @overload + def __floordiv__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __floordiv__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __floordiv__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __rfloordiv__(self, other: _Float64_co, /) -> float64: ... + @overload + def __rfloordiv__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __rfloordiv__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __rfloordiv__(self, other: complex, /) -> float64 | complex128: ... + + @overload + def __pow__(self, other: _Float64_co, /) -> float64: ... + @overload + def __pow__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __pow__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __pow__(self, other: complex, /) -> float64 | complex128: ... + @overload + def __rpow__(self, other: _Float64_co, /) -> float64: ... + @overload + def __rpow__(self, other: complexfloating[_64Bit, _64Bit], /) -> complex128: ... + @overload + def __rpow__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + @overload + def __rpow__(self, other: complex, /) -> float64 | complex128: ... + + def __mod__(self, other: _Float64_co, /) -> float64: ... # type: ignore[override] + def __rmod__(self, other: _Float64_co, /) -> float64: ... # type: ignore[override] + + def __divmod__(self, other: _Float64_co, /) -> _2Tuple[float64]: ... # type: ignore[override] + def __rdivmod__(self, other: _Float64_co, /) -> _2Tuple[float64]: ... # type: ignore[override] + + +half: TypeAlias = floating[_NBitHalf] +single: TypeAlias = floating[_NBitSingle] +double: TypeAlias = floating[_NBitDouble] +longdouble: TypeAlias = floating[_NBitLongDouble] + +# The main reason for `complexfloating` having two typevars is cosmetic. +# It is used to clarify why `complex128`s precision is `_64Bit`, the latter +# describing the two 64 bit floats representing its real and imaginary component + +class complexfloating(inexact[_NBit1, complex], Generic[_NBit1, _NBit2]): + @overload + def __init__( + self, + real: complex | SupportsComplex | SupportsFloat | SupportsIndex = ..., + imag: complex | SupportsFloat | SupportsIndex = ..., + /, + ) -> None: ... + @overload + def __init__(self, real: _ConvertibleToComplex | None = ..., /) -> None: ... + + @property + def real(self) -> floating[_NBit1]: ... # type: ignore[override] + @property + def imag(self) -> floating[_NBit2]: ... # type: ignore[override] + + # NOTE: `__complex__` is technically defined in the concrete subtypes + def __complex__(self, /) -> complex: ... + def __abs__(self, /) -> floating[_NBit1 | _NBit2]: ... # type: ignore[override] + @deprecated( + "The Python built-in `round` is deprecated for complex scalars, and will raise a `TypeError` in a future release. " + "Use `np.round` or `scalar.round` instead." + ) + def __round__(self, /, ndigits: SupportsIndex | None = None) -> Self: ... + + @overload + def __add__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __add__(self, other: complex | float64 | complex128, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __add__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + @overload + def __radd__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __radd__(self, other: complex, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __radd__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + + @overload + def __sub__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __sub__(self, other: complex | float64 | complex128, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __sub__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + @overload + def __rsub__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __rsub__(self, other: complex, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __rsub__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + + @overload + def __mul__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __mul__(self, other: complex | float64 | complex128, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __mul__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + @overload + def __rmul__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __rmul__(self, other: complex, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __rmul__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + + @overload + def __truediv__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __truediv__(self, other: complex | float64 | complex128, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __truediv__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + @overload + def __rtruediv__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __rtruediv__(self, other: complex, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __rtruediv__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + + @overload + def __pow__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __pow__(self, other: complex | float64 | complex128, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __pow__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + @overload + def __rpow__(self, other: _Complex64_co, /) -> complexfloating[_NBit1, _NBit2]: ... + @overload + def __rpow__(self, other: complex, /) -> complexfloating[_NBit1, _NBit2] | complex128: ... + @overload + def __rpow__(self, other: number[_NBit], /) -> complexfloating[_NBit1, _NBit2] | complexfloating[_NBit, _NBit]: ... + +complex64: TypeAlias = complexfloating[_32Bit, _32Bit] + +class complex128(complexfloating[_64Bit, _64Bit], complex): # type: ignore[misc] + @overload + def __new__( + cls, + real: complex | SupportsComplex | SupportsFloat | SupportsIndex = ..., + imag: complex | SupportsFloat | SupportsIndex = ..., + /, + ) -> Self: ... + @overload + def __new__(cls, real: _ConvertibleToComplex | None = ..., /) -> Self: ... + + # + @property + def itemsize(self) -> L[16]: ... + @property + def nbytes(self) -> L[16]: ... + + # overrides for `floating` and `builtins.float` compatibility + @property + def real(self) -> float64: ... + @property + def imag(self) -> float64: ... + def conjugate(self) -> Self: ... + def __abs__(self) -> float64: ... # type: ignore[override] + def __getnewargs__(self, /) -> tuple[float, float]: ... + + # complex128-specific operator overrides + @overload + def __add__(self, other: _Complex128_co, /) -> complex128: ... + @overload + def __add__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + def __radd__(self, other: _Complex128_co, /) -> complex128: ... + + @overload + def __sub__(self, other: _Complex128_co, /) -> complex128: ... + @overload + def __sub__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + def __rsub__(self, other: _Complex128_co, /) -> complex128: ... + + @overload + def __mul__(self, other: _Complex128_co, /) -> complex128: ... + @overload + def __mul__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + def __rmul__(self, other: _Complex128_co, /) -> complex128: ... + + @overload + def __truediv__(self, other: _Complex128_co, /) -> complex128: ... + @overload + def __truediv__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + def __rtruediv__(self, other: _Complex128_co, /) -> complex128: ... + + @overload + def __pow__(self, other: _Complex128_co, /) -> complex128: ... + @overload + def __pow__(self, other: complexfloating[_NBit1, _NBit2], /) -> complexfloating[_NBit1 | _64Bit, _NBit2 | _64Bit]: ... + def __rpow__(self, other: _Complex128_co, /) -> complex128: ... + +csingle: TypeAlias = complexfloating[_NBitSingle, _NBitSingle] +cdouble: TypeAlias = complexfloating[_NBitDouble, _NBitDouble] +clongdouble: TypeAlias = complexfloating[_NBitLongDouble, _NBitLongDouble] + +class timedelta64(_IntegralMixin, generic[_TD64ItemT_co], Generic[_TD64ItemT_co]): + @property + def itemsize(self) -> L[8]: ... + @property + def nbytes(self) -> L[8]: ... + + @overload + def __init__(self, value: _TD64ItemT_co | timedelta64[_TD64ItemT_co], /) -> None: ... + @overload + def __init__(self: timedelta64[L[0]], /) -> None: ... + @overload + def __init__(self: timedelta64[None], value: _NaTValue | None, format: _TimeUnitSpec, /) -> None: ... + @overload + def __init__(self: timedelta64[L[0]], value: L[0], format: _TimeUnitSpec[_IntTD64Unit] = ..., /) -> None: ... + @overload + def __init__(self: timedelta64[int], value: _IntLike_co, format: _TimeUnitSpec[_IntTD64Unit] = ..., /) -> None: ... + @overload + def __init__(self: timedelta64[int], value: dt.timedelta, format: _TimeUnitSpec[_IntTimeUnit], /) -> None: ... + @overload + def __init__( + self: timedelta64[dt.timedelta], + value: dt.timedelta | _IntLike_co, + format: _TimeUnitSpec[_NativeTD64Unit] = ..., + /, + ) -> None: ... + @overload + def __init__(self, value: _ConvertibleToTD64, format: _TimeUnitSpec = ..., /) -> None: ... + + # inherited at runtime from `signedinteger` + def __class_getitem__(cls, type_arg: type | object, /) -> GenericAlias: ... + + # NOTE: Only a limited number of units support conversion + # to builtin scalar types: `Y`, `M`, `ns`, `ps`, `fs`, `as` + def __int__(self: timedelta64[int], /) -> int: ... + def __float__(self: timedelta64[int], /) -> float: ... + + def __neg__(self, /) -> Self: ... + def __pos__(self, /) -> Self: ... + def __abs__(self, /) -> Self: ... + + @overload + def __add__(self: timedelta64[None], x: _TD64Like_co, /) -> timedelta64[None]: ... + @overload + def __add__(self: timedelta64[int], x: timedelta64[int | dt.timedelta], /) -> timedelta64[int]: ... + @overload + def __add__(self: timedelta64[int], x: timedelta64, /) -> timedelta64[int | None]: ... + @overload + def __add__(self: timedelta64[dt.timedelta], x: _AnyDateOrTime, /) -> _AnyDateOrTime: ... + @overload + def __add__(self: timedelta64[_AnyTD64Item], x: timedelta64[_AnyTD64Item] | _IntLike_co, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __add__(self, x: timedelta64[None], /) -> timedelta64[None]: ... + __radd__ = __add__ + + @overload + def __mul__(self: timedelta64[_AnyTD64Item], x: int | np.integer[Any] | np.bool, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __mul__(self: timedelta64[_AnyTD64Item], x: float | np.floating[Any], /) -> timedelta64[_AnyTD64Item | None]: ... + @overload + def __mul__(self, x: float | np.floating[Any] | np.integer[Any] | np.bool, /) -> timedelta64: ... + __rmul__ = __mul__ + + @overload + def __mod__(self, x: timedelta64[None | L[0]], /) -> timedelta64[None]: ... + @overload + def __mod__(self: timedelta64[None], x: timedelta64, /) -> timedelta64[None]: ... + @overload + def __mod__(self: timedelta64[int], x: timedelta64[int | dt.timedelta], /) -> timedelta64[int | None]: ... + @overload + def __mod__(self: timedelta64[dt.timedelta], x: timedelta64[_AnyTD64Item], /) -> timedelta64[_AnyTD64Item | None]: ... + @overload + def __mod__(self: timedelta64[dt.timedelta], x: dt.timedelta, /) -> dt.timedelta: ... + @overload + def __mod__(self, x: timedelta64[int], /) -> timedelta64[int | None]: ... + @overload + def __mod__(self, x: timedelta64, /) -> timedelta64: ... + + # the L[0] makes __mod__ non-commutative, which the first two overloads reflect + @overload + def __rmod__(self, x: timedelta64[None], /) -> timedelta64[None]: ... + @overload + def __rmod__(self: timedelta64[None | L[0]], x: timedelta64, /) -> timedelta64[None]: ... + @overload + def __rmod__(self: timedelta64[int], x: timedelta64[int | dt.timedelta], /) -> timedelta64[int | None]: ... + @overload + def __rmod__(self: timedelta64[dt.timedelta], x: timedelta64[_AnyTD64Item], /) -> timedelta64[_AnyTD64Item | None]: ... + @overload + def __rmod__(self: timedelta64[dt.timedelta], x: dt.timedelta, /) -> dt.timedelta: ... + @overload + def __rmod__(self, x: timedelta64[int], /) -> timedelta64[int | None]: ... + @overload + def __rmod__(self, x: timedelta64, /) -> timedelta64: ... + + # keep in sync with __mod__ + @overload + def __divmod__(self, x: timedelta64[None | L[0]], /) -> tuple[int64, timedelta64[None]]: ... + @overload + def __divmod__(self: timedelta64[None], x: timedelta64, /) -> tuple[int64, timedelta64[None]]: ... + @overload + def __divmod__(self: timedelta64[int], x: timedelta64[int | dt.timedelta], /) -> tuple[int64, timedelta64[int | None]]: ... + @overload + def __divmod__(self: timedelta64[dt.timedelta], x: timedelta64[_AnyTD64Item], /) -> tuple[int64, timedelta64[_AnyTD64Item | None]]: ... + @overload + def __divmod__(self: timedelta64[dt.timedelta], x: dt.timedelta, /) -> tuple[int, dt.timedelta]: ... + @overload + def __divmod__(self, x: timedelta64[int], /) -> tuple[int64, timedelta64[int | None]]: ... + @overload + def __divmod__(self, x: timedelta64, /) -> tuple[int64, timedelta64]: ... + + # keep in sync with __rmod__ + @overload + def __rdivmod__(self, x: timedelta64[None], /) -> tuple[int64, timedelta64[None]]: ... + @overload + def __rdivmod__(self: timedelta64[None | L[0]], x: timedelta64, /) -> tuple[int64, timedelta64[None]]: ... + @overload + def __rdivmod__(self: timedelta64[int], x: timedelta64[int | dt.timedelta], /) -> tuple[int64, timedelta64[int | None]]: ... + @overload + def __rdivmod__(self: timedelta64[dt.timedelta], x: timedelta64[_AnyTD64Item], /) -> tuple[int64, timedelta64[_AnyTD64Item | None]]: ... + @overload + def __rdivmod__(self: timedelta64[dt.timedelta], x: dt.timedelta, /) -> tuple[int, dt.timedelta]: ... + @overload + def __rdivmod__(self, x: timedelta64[int], /) -> tuple[int64, timedelta64[int | None]]: ... + @overload + def __rdivmod__(self, x: timedelta64, /) -> tuple[int64, timedelta64]: ... + + @overload + def __sub__(self: timedelta64[None], b: _TD64Like_co, /) -> timedelta64[None]: ... + @overload + def __sub__(self: timedelta64[int], b: timedelta64[int | dt.timedelta], /) -> timedelta64[int]: ... + @overload + def __sub__(self: timedelta64[int], b: timedelta64, /) -> timedelta64[int | None]: ... + @overload + def __sub__(self: timedelta64[dt.timedelta], b: dt.timedelta, /) -> dt.timedelta: ... + @overload + def __sub__(self: timedelta64[_AnyTD64Item], b: timedelta64[_AnyTD64Item] | _IntLike_co, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __sub__(self, b: timedelta64[None], /) -> timedelta64[None]: ... + + @overload + def __rsub__(self: timedelta64[None], a: _TD64Like_co, /) -> timedelta64[None]: ... + @overload + def __rsub__(self: timedelta64[dt.timedelta], a: _AnyDateOrTime, /) -> _AnyDateOrTime: ... + @overload + def __rsub__(self: timedelta64[dt.timedelta], a: timedelta64[_AnyTD64Item], /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __rsub__(self: timedelta64[_AnyTD64Item], a: timedelta64[_AnyTD64Item] | _IntLike_co, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __rsub__(self, a: timedelta64[None], /) -> timedelta64[None]: ... + @overload + def __rsub__(self, a: datetime64[None], /) -> datetime64[None]: ... + + @overload + def __truediv__(self: timedelta64[dt.timedelta], b: dt.timedelta, /) -> float: ... + @overload + def __truediv__(self, b: timedelta64, /) -> float64: ... + @overload + def __truediv__(self: timedelta64[_AnyTD64Item], b: int | integer, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __truediv__(self: timedelta64[_AnyTD64Item], b: float | floating, /) -> timedelta64[_AnyTD64Item | None]: ... + @overload + def __truediv__(self, b: float | floating | integer, /) -> timedelta64: ... + @overload + def __rtruediv__(self: timedelta64[dt.timedelta], a: dt.timedelta, /) -> float: ... + @overload + def __rtruediv__(self, a: timedelta64, /) -> float64: ... + + @overload + def __floordiv__(self: timedelta64[dt.timedelta], b: dt.timedelta, /) -> int: ... + @overload + def __floordiv__(self, b: timedelta64, /) -> int64: ... + @overload + def __floordiv__(self: timedelta64[_AnyTD64Item], b: int | integer, /) -> timedelta64[_AnyTD64Item]: ... + @overload + def __floordiv__(self: timedelta64[_AnyTD64Item], b: float | floating, /) -> timedelta64[_AnyTD64Item | None]: ... + @overload + def __rfloordiv__(self: timedelta64[dt.timedelta], a: dt.timedelta, /) -> int: ... + @overload + def __rfloordiv__(self, a: timedelta64, /) -> int64: ... + + __lt__: _ComparisonOpLT[_TD64Like_co, _ArrayLikeTD64_co] + __le__: _ComparisonOpLE[_TD64Like_co, _ArrayLikeTD64_co] + __gt__: _ComparisonOpGT[_TD64Like_co, _ArrayLikeTD64_co] + __ge__: _ComparisonOpGE[_TD64Like_co, _ArrayLikeTD64_co] + +class datetime64(_RealMixin, generic[_DT64ItemT_co], Generic[_DT64ItemT_co]): + @property + def itemsize(self) -> L[8]: ... + @property + def nbytes(self) -> L[8]: ... + + @overload + def __init__(self, value: datetime64[_DT64ItemT_co], /) -> None: ... + @overload + def __init__(self: datetime64[_AnyDT64Arg], value: _AnyDT64Arg, /) -> None: ... + @overload + def __init__(self: datetime64[None], value: _NaTValue | None = ..., format: _TimeUnitSpec = ..., /) -> None: ... + @overload + def __init__(self: datetime64[dt.datetime], value: _DT64Now, format: _TimeUnitSpec[_NativeTimeUnit] = ..., /) -> None: ... + @overload + def __init__(self: datetime64[dt.date], value: _DT64Date, format: _TimeUnitSpec[_DateUnit] = ..., /) -> None: ... + @overload + def __init__(self: datetime64[int], value: int | bytes | str | dt.date, format: _TimeUnitSpec[_IntTimeUnit], /) -> None: ... + @overload + def __init__( + self: datetime64[dt.datetime], value: int | bytes | str | dt.date, format: _TimeUnitSpec[_NativeTimeUnit], / + ) -> None: ... + @overload + def __init__(self: datetime64[dt.date], value: int | bytes | str | dt.date, format: _TimeUnitSpec[_DateUnit], /) -> None: ... + @overload + def __init__(self, value: bytes | str | dt.date | None, format: _TimeUnitSpec = ..., /) -> None: ... + + @overload + def __add__(self: datetime64[_AnyDT64Item], x: int | integer[Any] | np.bool, /) -> datetime64[_AnyDT64Item]: ... + @overload + def __add__(self: datetime64[None], x: _TD64Like_co, /) -> datetime64[None]: ... + @overload + def __add__(self: datetime64[int], x: timedelta64[int | dt.timedelta], /) -> datetime64[int]: ... + @overload + def __add__(self: datetime64[dt.datetime], x: timedelta64[dt.timedelta], /) -> datetime64[dt.datetime]: ... + @overload + def __add__(self: datetime64[dt.date], x: timedelta64[dt.timedelta], /) -> datetime64[dt.date]: ... + @overload + def __add__(self: datetime64[dt.date], x: timedelta64[int], /) -> datetime64[int]: ... + @overload + def __add__(self, x: datetime64[None], /) -> datetime64[None]: ... + @overload + def __add__(self, x: _TD64Like_co, /) -> datetime64: ... + __radd__ = __add__ + + @overload + def __sub__(self: datetime64[_AnyDT64Item], x: int | integer[Any] | np.bool, /) -> datetime64[_AnyDT64Item]: ... + @overload + def __sub__(self: datetime64[_AnyDate], x: _AnyDate, /) -> dt.timedelta: ... + @overload + def __sub__(self: datetime64[None], x: timedelta64, /) -> datetime64[None]: ... + @overload + def __sub__(self: datetime64[None], x: datetime64, /) -> timedelta64[None]: ... + @overload + def __sub__(self: datetime64[int], x: timedelta64, /) -> datetime64[int]: ... + @overload + def __sub__(self: datetime64[int], x: datetime64, /) -> timedelta64[int]: ... + @overload + def __sub__(self: datetime64[dt.datetime], x: timedelta64[int], /) -> datetime64[int]: ... + @overload + def __sub__(self: datetime64[dt.datetime], x: timedelta64[dt.timedelta], /) -> datetime64[dt.datetime]: ... + @overload + def __sub__(self: datetime64[dt.datetime], x: datetime64[int], /) -> timedelta64[int]: ... + @overload + def __sub__(self: datetime64[dt.date], x: timedelta64[int], /) -> datetime64[dt.date | int]: ... + @overload + def __sub__(self: datetime64[dt.date], x: timedelta64[dt.timedelta], /) -> datetime64[dt.date]: ... + @overload + def __sub__(self: datetime64[dt.date], x: datetime64[dt.date], /) -> timedelta64[dt.timedelta]: ... + @overload + def __sub__(self, x: timedelta64[None], /) -> datetime64[None]: ... + @overload + def __sub__(self, x: datetime64[None], /) -> timedelta64[None]: ... + @overload + def __sub__(self, x: _TD64Like_co, /) -> datetime64: ... + @overload + def __sub__(self, x: datetime64, /) -> timedelta64: ... + + @overload + def __rsub__(self: datetime64[_AnyDT64Item], x: int | integer[Any] | np.bool, /) -> datetime64[_AnyDT64Item]: ... + @overload + def __rsub__(self: datetime64[_AnyDate], x: _AnyDate, /) -> dt.timedelta: ... + @overload + def __rsub__(self: datetime64[None], x: datetime64, /) -> timedelta64[None]: ... + @overload + def __rsub__(self: datetime64[int], x: datetime64, /) -> timedelta64[int]: ... + @overload + def __rsub__(self: datetime64[dt.datetime], x: datetime64[int], /) -> timedelta64[int]: ... + @overload + def __rsub__(self: datetime64[dt.datetime], x: datetime64[dt.date], /) -> timedelta64[dt.timedelta]: ... + @overload + def __rsub__(self, x: datetime64[None], /) -> timedelta64[None]: ... + @overload + def __rsub__(self, x: datetime64, /) -> timedelta64: ... + + __lt__: _ComparisonOpLT[datetime64, _ArrayLikeDT64_co] + __le__: _ComparisonOpLE[datetime64, _ArrayLikeDT64_co] + __gt__: _ComparisonOpGT[datetime64, _ArrayLikeDT64_co] + __ge__: _ComparisonOpGE[datetime64, _ArrayLikeDT64_co] + +class flexible(_RealMixin, generic[_FlexibleItemT_co], Generic[_FlexibleItemT_co]): ... + +class void(flexible[bytes | tuple[Any, ...]]): + @overload + def __init__(self, value: _IntLike_co | bytes, /, dtype: None = None) -> None: ... + @overload + def __init__(self, value: Any, /, dtype: _DTypeLikeVoid) -> None: ... + + @overload + def __getitem__(self, key: str | SupportsIndex, /) -> Any: ... + @overload + def __getitem__(self, key: list[str], /) -> void: ... + def __setitem__(self, key: str | list[str] | SupportsIndex, value: ArrayLike, /) -> None: ... + + def setfield(self, val: ArrayLike, dtype: DTypeLike, offset: int = ...) -> None: ... + +class character(flexible[_CharacterItemT_co], Generic[_CharacterItemT_co]): + @abstractmethod + def __init__(self, value: _CharacterItemT_co = ..., /) -> None: ... + +# NOTE: Most `np.bytes_` / `np.str_` methods return their builtin `bytes` / `str` counterpart + +class bytes_(character[bytes], bytes): + @overload + def __new__(cls, o: object = ..., /) -> Self: ... + @overload + def __new__(cls, s: str, /, encoding: str, errors: str = ...) -> Self: ... + + # + @overload + def __init__(self, o: object = ..., /) -> None: ... + @overload + def __init__(self, s: str, /, encoding: str, errors: str = ...) -> None: ... + + # + def __bytes__(self, /) -> bytes: ... + +class str_(character[str], str): + @overload + def __new__(cls, value: object = ..., /) -> Self: ... + @overload + def __new__(cls, value: bytes, /, encoding: str = ..., errors: str = ...) -> Self: ... + + # + @overload + def __init__(self, value: object = ..., /) -> None: ... + @overload + def __init__(self, value: bytes, /, encoding: str = ..., errors: str = ...) -> None: ... + +# See `numpy._typing._ufunc` for more concrete nin-/nout-specific stubs +@final +class ufunc: + @property + def __name__(self) -> LiteralString: ... + @property + def __qualname__(self) -> LiteralString: ... + @property + def __doc__(self) -> str: ... + @property + def nin(self) -> int: ... + @property + def nout(self) -> int: ... + @property + def nargs(self) -> int: ... + @property + def ntypes(self) -> int: ... + @property + def types(self) -> list[LiteralString]: ... + # Broad return type because it has to encompass things like + # + # >>> np.logical_and.identity is True + # True + # >>> np.add.identity is 0 + # True + # >>> np.sin.identity is None + # True + # + # and any user-defined ufuncs. + @property + def identity(self) -> Any: ... + # This is None for ufuncs and a string for gufuncs. + @property + def signature(self) -> None | LiteralString: ... + + def __call__(self, *args: Any, **kwargs: Any) -> Any: ... + # The next four methods will always exist, but they will just + # raise a ValueError ufuncs with that don't accept two input + # arguments and return one output argument. Because of that we + # can't type them very precisely. + def reduce(self, /, *args: Any, **kwargs: Any) -> Any: ... + def accumulate(self, /, *args: Any, **kwargs: Any) -> NDArray[Any]: ... + def reduceat(self, /, *args: Any, **kwargs: Any) -> NDArray[Any]: ... + def outer(self, *args: Any, **kwargs: Any) -> Any: ... + # Similarly at won't be defined for ufuncs that return multiple + # outputs, so we can't type it very precisely. + def at(self, /, *args: Any, **kwargs: Any) -> None: ... + + # + def resolve_dtypes( + self, + /, + dtypes: tuple[dtype[Any] | type | None, ...], + *, + signature: tuple[dtype[Any] | None, ...] | None = None, + casting: _CastingKind | None = None, + reduction: builtins.bool = False, + ) -> tuple[dtype[Any], ...]: ... + +# Parameters: `__name__`, `ntypes` and `identity` +absolute: _UFunc_Nin1_Nout1[L['absolute'], L[20], None] +add: _UFunc_Nin2_Nout1[L['add'], L[22], L[0]] +arccos: _UFunc_Nin1_Nout1[L['arccos'], L[8], None] +arccosh: _UFunc_Nin1_Nout1[L['arccosh'], L[8], None] +arcsin: _UFunc_Nin1_Nout1[L['arcsin'], L[8], None] +arcsinh: _UFunc_Nin1_Nout1[L['arcsinh'], L[8], None] +arctan2: _UFunc_Nin2_Nout1[L['arctan2'], L[5], None] +arctan: _UFunc_Nin1_Nout1[L['arctan'], L[8], None] +arctanh: _UFunc_Nin1_Nout1[L['arctanh'], L[8], None] +bitwise_and: _UFunc_Nin2_Nout1[L['bitwise_and'], L[12], L[-1]] +bitwise_count: _UFunc_Nin1_Nout1[L['bitwise_count'], L[11], None] +bitwise_not: _UFunc_Nin1_Nout1[L['invert'], L[12], None] +bitwise_or: _UFunc_Nin2_Nout1[L['bitwise_or'], L[12], L[0]] +bitwise_xor: _UFunc_Nin2_Nout1[L['bitwise_xor'], L[12], L[0]] +cbrt: _UFunc_Nin1_Nout1[L['cbrt'], L[5], None] +ceil: _UFunc_Nin1_Nout1[L['ceil'], L[7], None] +conj: _UFunc_Nin1_Nout1[L['conjugate'], L[18], None] +conjugate: _UFunc_Nin1_Nout1[L['conjugate'], L[18], None] +copysign: _UFunc_Nin2_Nout1[L['copysign'], L[4], None] +cos: _UFunc_Nin1_Nout1[L['cos'], L[9], None] +cosh: _UFunc_Nin1_Nout1[L['cosh'], L[8], None] +deg2rad: _UFunc_Nin1_Nout1[L['deg2rad'], L[5], None] +degrees: _UFunc_Nin1_Nout1[L['degrees'], L[5], None] +divide: _UFunc_Nin2_Nout1[L['true_divide'], L[11], None] +divmod: _UFunc_Nin2_Nout2[L['divmod'], L[15], None] +equal: _UFunc_Nin2_Nout1[L['equal'], L[23], None] +exp2: _UFunc_Nin1_Nout1[L['exp2'], L[8], None] +exp: _UFunc_Nin1_Nout1[L['exp'], L[10], None] +expm1: _UFunc_Nin1_Nout1[L['expm1'], L[8], None] +fabs: _UFunc_Nin1_Nout1[L['fabs'], L[5], None] +float_power: _UFunc_Nin2_Nout1[L['float_power'], L[4], None] +floor: _UFunc_Nin1_Nout1[L['floor'], L[7], None] +floor_divide: _UFunc_Nin2_Nout1[L['floor_divide'], L[21], None] +fmax: _UFunc_Nin2_Nout1[L['fmax'], L[21], None] +fmin: _UFunc_Nin2_Nout1[L['fmin'], L[21], None] +fmod: _UFunc_Nin2_Nout1[L['fmod'], L[15], None] +frexp: _UFunc_Nin1_Nout2[L['frexp'], L[4], None] +gcd: _UFunc_Nin2_Nout1[L['gcd'], L[11], L[0]] +greater: _UFunc_Nin2_Nout1[L['greater'], L[23], None] +greater_equal: _UFunc_Nin2_Nout1[L['greater_equal'], L[23], None] +heaviside: _UFunc_Nin2_Nout1[L['heaviside'], L[4], None] +hypot: _UFunc_Nin2_Nout1[L['hypot'], L[5], L[0]] +invert: _UFunc_Nin1_Nout1[L['invert'], L[12], None] +isfinite: _UFunc_Nin1_Nout1[L['isfinite'], L[20], None] +isinf: _UFunc_Nin1_Nout1[L['isinf'], L[20], None] +isnan: _UFunc_Nin1_Nout1[L['isnan'], L[20], None] +isnat: _UFunc_Nin1_Nout1[L['isnat'], L[2], None] +lcm: _UFunc_Nin2_Nout1[L['lcm'], L[11], None] +ldexp: _UFunc_Nin2_Nout1[L['ldexp'], L[8], None] +left_shift: _UFunc_Nin2_Nout1[L['left_shift'], L[11], None] +less: _UFunc_Nin2_Nout1[L['less'], L[23], None] +less_equal: _UFunc_Nin2_Nout1[L['less_equal'], L[23], None] +log10: _UFunc_Nin1_Nout1[L['log10'], L[8], None] +log1p: _UFunc_Nin1_Nout1[L['log1p'], L[8], None] +log2: _UFunc_Nin1_Nout1[L['log2'], L[8], None] +log: _UFunc_Nin1_Nout1[L['log'], L[10], None] +logaddexp2: _UFunc_Nin2_Nout1[L['logaddexp2'], L[4], float] +logaddexp: _UFunc_Nin2_Nout1[L['logaddexp'], L[4], float] +logical_and: _UFunc_Nin2_Nout1[L['logical_and'], L[20], L[True]] +logical_not: _UFunc_Nin1_Nout1[L['logical_not'], L[20], None] +logical_or: _UFunc_Nin2_Nout1[L['logical_or'], L[20], L[False]] +logical_xor: _UFunc_Nin2_Nout1[L['logical_xor'], L[19], L[False]] +matmul: _GUFunc_Nin2_Nout1[L['matmul'], L[19], None, L["(n?,k),(k,m?)->(n?,m?)"]] +matvec: _GUFunc_Nin2_Nout1[L['matvec'], L[19], None, L["(m,n),(n)->(m)"]] +maximum: _UFunc_Nin2_Nout1[L['maximum'], L[21], None] +minimum: _UFunc_Nin2_Nout1[L['minimum'], L[21], None] +mod: _UFunc_Nin2_Nout1[L['remainder'], L[16], None] +modf: _UFunc_Nin1_Nout2[L['modf'], L[4], None] +multiply: _UFunc_Nin2_Nout1[L['multiply'], L[23], L[1]] +negative: _UFunc_Nin1_Nout1[L['negative'], L[19], None] +nextafter: _UFunc_Nin2_Nout1[L['nextafter'], L[4], None] +not_equal: _UFunc_Nin2_Nout1[L['not_equal'], L[23], None] +positive: _UFunc_Nin1_Nout1[L['positive'], L[19], None] +power: _UFunc_Nin2_Nout1[L['power'], L[18], None] +rad2deg: _UFunc_Nin1_Nout1[L['rad2deg'], L[5], None] +radians: _UFunc_Nin1_Nout1[L['radians'], L[5], None] +reciprocal: _UFunc_Nin1_Nout1[L['reciprocal'], L[18], None] +remainder: _UFunc_Nin2_Nout1[L['remainder'], L[16], None] +right_shift: _UFunc_Nin2_Nout1[L['right_shift'], L[11], None] +rint: _UFunc_Nin1_Nout1[L['rint'], L[10], None] +sign: _UFunc_Nin1_Nout1[L['sign'], L[19], None] +signbit: _UFunc_Nin1_Nout1[L['signbit'], L[4], None] +sin: _UFunc_Nin1_Nout1[L['sin'], L[9], None] +sinh: _UFunc_Nin1_Nout1[L['sinh'], L[8], None] +spacing: _UFunc_Nin1_Nout1[L['spacing'], L[4], None] +sqrt: _UFunc_Nin1_Nout1[L['sqrt'], L[10], None] +square: _UFunc_Nin1_Nout1[L['square'], L[18], None] +subtract: _UFunc_Nin2_Nout1[L['subtract'], L[21], None] +tan: _UFunc_Nin1_Nout1[L['tan'], L[8], None] +tanh: _UFunc_Nin1_Nout1[L['tanh'], L[8], None] +true_divide: _UFunc_Nin2_Nout1[L['true_divide'], L[11], None] +trunc: _UFunc_Nin1_Nout1[L['trunc'], L[7], None] +vecdot: _GUFunc_Nin2_Nout1[L['vecdot'], L[19], None, L["(n),(n)->()"]] +vecmat: _GUFunc_Nin2_Nout1[L['vecmat'], L[19], None, L["(n),(n,m)->(m)"]] + +abs = absolute +acos = arccos +acosh = arccosh +asin = arcsin +asinh = arcsinh +atan = arctan +atanh = arctanh +atan2 = arctan2 +concat = concatenate +bitwise_left_shift = left_shift +bitwise_invert = invert +bitwise_right_shift = right_shift +permute_dims = transpose +pow = power + +class errstate: + def __init__( + self, + *, + call: _ErrCall = ..., + all: None | _ErrKind = ..., + divide: None | _ErrKind = ..., + over: None | _ErrKind = ..., + under: None | _ErrKind = ..., + invalid: None | _ErrKind = ..., + ) -> None: ... + def __enter__(self) -> None: ... + def __exit__( + self, + exc_type: None | type[BaseException], + exc_value: None | BaseException, + traceback: None | TracebackType, + /, + ) -> None: ... + def __call__(self, func: _CallableT) -> _CallableT: ... + +# TODO: The type of each `__next__` and `iters` return-type depends +# on the length and dtype of `args`; we can't describe this behavior yet +# as we lack variadics (PEP 646). +@final +class broadcast: + def __new__(cls, *args: ArrayLike) -> broadcast: ... + @property + def index(self) -> int: ... + @property + def iters(self) -> tuple[flatiter[Any], ...]: ... + @property + def nd(self) -> int: ... + @property + def ndim(self) -> int: ... + @property + def numiter(self) -> int: ... + @property + def shape(self) -> _Shape: ... + @property + def size(self) -> int: ... + def __next__(self) -> tuple[Any, ...]: ... + def __iter__(self) -> Self: ... + def reset(self) -> None: ... + +@final +class busdaycalendar: + def __new__( + cls, + weekmask: ArrayLike = ..., + holidays: ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + ) -> busdaycalendar: ... + @property + def weekmask(self) -> NDArray[np.bool]: ... + @property + def holidays(self) -> NDArray[datetime64]: ... + +class finfo(Generic[_FloatingT_co]): + dtype: Final[dtype[_FloatingT_co]] + bits: Final[int] + eps: Final[_FloatingT_co] + epsneg: Final[_FloatingT_co] + iexp: Final[int] + machep: Final[int] + max: Final[_FloatingT_co] + maxexp: Final[int] + min: Final[_FloatingT_co] + minexp: Final[int] + negep: Final[int] + nexp: Final[int] + nmant: Final[int] + precision: Final[int] + resolution: Final[_FloatingT_co] + smallest_subnormal: Final[_FloatingT_co] + @property + def smallest_normal(self) -> _FloatingT_co: ... + @property + def tiny(self) -> _FloatingT_co: ... + @overload + def __new__( + cls, dtype: inexact[_NBit1] | _DTypeLike[inexact[_NBit1]] + ) -> finfo[floating[_NBit1]]: ... + @overload + def __new__( + cls, dtype: complex | float | type[complex] | type[float] + ) -> finfo[float64]: ... + @overload + def __new__( + cls, dtype: str + ) -> finfo[floating[Any]]: ... + + +class iinfo(Generic[_IntegerT_co]): + dtype: Final[dtype[_IntegerT_co]] + kind: Final[LiteralString] + bits: Final[int] + key: Final[LiteralString] + @property + def min(self) -> int: ... + @property + def max(self) -> int: ... + + @overload + def __new__( + cls, dtype: _IntegerT_co | _DTypeLike[_IntegerT_co] + ) -> iinfo[_IntegerT_co]: ... + @overload + def __new__(cls, dtype: int | type[int]) -> iinfo[int_]: ... + @overload + def __new__(cls, dtype: str) -> iinfo[Any]: ... + +@final +class nditer: + def __new__( + cls, + op: ArrayLike | Sequence[ArrayLike | None], + flags: None | Sequence[_NDIterFlagsKind] = ..., + op_flags: None | Sequence[Sequence[_NDIterFlagsOp]] = ..., + op_dtypes: DTypeLike | Sequence[DTypeLike] = ..., + order: _OrderKACF = ..., + casting: _CastingKind = ..., + op_axes: None | Sequence[Sequence[SupportsIndex]] = ..., + itershape: None | _ShapeLike = ..., + buffersize: SupportsIndex = ..., + ) -> nditer: ... + def __enter__(self) -> nditer: ... + def __exit__( + self, + exc_type: None | type[BaseException], + exc_value: None | BaseException, + traceback: None | TracebackType, + ) -> None: ... + def __iter__(self) -> nditer: ... + def __next__(self) -> tuple[NDArray[Any], ...]: ... + def __len__(self) -> int: ... + def __copy__(self) -> nditer: ... + @overload + def __getitem__(self, index: SupportsIndex) -> NDArray[Any]: ... + @overload + def __getitem__(self, index: slice) -> tuple[NDArray[Any], ...]: ... + def __setitem__(self, index: slice | SupportsIndex, value: ArrayLike) -> None: ... + def close(self) -> None: ... + def copy(self) -> nditer: ... + def debug_print(self) -> None: ... + def enable_external_loop(self) -> None: ... + def iternext(self) -> builtins.bool: ... + def remove_axis(self, i: SupportsIndex, /) -> None: ... + def remove_multi_index(self) -> None: ... + def reset(self) -> None: ... + @property + def dtypes(self) -> tuple[dtype[Any], ...]: ... + @property + def finished(self) -> builtins.bool: ... + @property + def has_delayed_bufalloc(self) -> builtins.bool: ... + @property + def has_index(self) -> builtins.bool: ... + @property + def has_multi_index(self) -> builtins.bool: ... + @property + def index(self) -> int: ... + @property + def iterationneedsapi(self) -> builtins.bool: ... + @property + def iterindex(self) -> int: ... + @property + def iterrange(self) -> tuple[int, ...]: ... + @property + def itersize(self) -> int: ... + @property + def itviews(self) -> tuple[NDArray[Any], ...]: ... + @property + def multi_index(self) -> tuple[int, ...]: ... + @property + def ndim(self) -> int: ... + @property + def nop(self) -> int: ... + @property + def operands(self) -> tuple[NDArray[Any], ...]: ... + @property + def shape(self) -> tuple[int, ...]: ... + @property + def value(self) -> tuple[NDArray[Any], ...]: ... + +class memmap(ndarray[_ShapeT_co, _DType_co]): + __array_priority__: ClassVar[float] + filename: str | None + offset: int + mode: str + @overload + def __new__( + subtype, + filename: StrOrBytesPath | _SupportsFileMethodsRW, + dtype: type[uint8] = ..., + mode: _MemMapModeKind = ..., + offset: int = ..., + shape: None | int | tuple[int, ...] = ..., + order: _OrderKACF = ..., + ) -> memmap[Any, dtype[uint8]]: ... + @overload + def __new__( + subtype, + filename: StrOrBytesPath | _SupportsFileMethodsRW, + dtype: _DTypeLike[_SCT], + mode: _MemMapModeKind = ..., + offset: int = ..., + shape: None | int | tuple[int, ...] = ..., + order: _OrderKACF = ..., + ) -> memmap[Any, dtype[_SCT]]: ... + @overload + def __new__( + subtype, + filename: StrOrBytesPath | _SupportsFileMethodsRW, + dtype: DTypeLike, + mode: _MemMapModeKind = ..., + offset: int = ..., + shape: None | int | tuple[int, ...] = ..., + order: _OrderKACF = ..., + ) -> memmap[Any, dtype[Any]]: ... + def __array_finalize__(self, obj: object) -> None: ... + def __array_wrap__( + self, + array: memmap[_ShapeT_co, _DType_co], + context: None | tuple[ufunc, tuple[Any, ...], int] = ..., + return_scalar: builtins.bool = ..., + ) -> Any: ... + def flush(self) -> None: ... + +# TODO: Add a mypy plugin for managing functions whose output type is dependent +# on the literal value of some sort of signature (e.g. `einsum` and `vectorize`) +class vectorize: + pyfunc: Callable[..., Any] + cache: builtins.bool + signature: None | LiteralString + otypes: None | LiteralString + excluded: set[int | str] + __doc__: None | str + def __init__( + self, + pyfunc: Callable[..., Any], + otypes: None | str | Iterable[DTypeLike] = ..., + doc: None | str = ..., + excluded: None | Iterable[int | str] = ..., + cache: builtins.bool = ..., + signature: None | str = ..., + ) -> None: ... + def __call__(self, *args: Any, **kwargs: Any) -> Any: ... + +class poly1d: + @property + def variable(self) -> LiteralString: ... + @property + def order(self) -> int: ... + @property + def o(self) -> int: ... + @property + def roots(self) -> NDArray[Any]: ... + @property + def r(self) -> NDArray[Any]: ... + + @property + def coeffs(self) -> NDArray[Any]: ... + @coeffs.setter + def coeffs(self, value: NDArray[Any]) -> None: ... + + @property + def c(self) -> NDArray[Any]: ... + @c.setter + def c(self, value: NDArray[Any]) -> None: ... + + @property + def coef(self) -> NDArray[Any]: ... + @coef.setter + def coef(self, value: NDArray[Any]) -> None: ... + + @property + def coefficients(self) -> NDArray[Any]: ... + @coefficients.setter + def coefficients(self, value: NDArray[Any]) -> None: ... + + __hash__: ClassVar[None] # type: ignore[assignment] # pyright: ignore[reportIncompatibleMethodOverride] + + @overload + def __array__(self, /, t: None = None, copy: builtins.bool | None = None) -> ndarray[tuple[int], dtype[Any]]: ... + @overload + def __array__(self, /, t: _DType, copy: builtins.bool | None = None) -> ndarray[tuple[int], _DType]: ... + + @overload + def __call__(self, val: _ScalarLike_co) -> Any: ... + @overload + def __call__(self, val: poly1d) -> poly1d: ... + @overload + def __call__(self, val: ArrayLike) -> NDArray[Any]: ... + + def __init__( + self, + c_or_r: ArrayLike, + r: builtins.bool = ..., + variable: None | str = ..., + ) -> None: ... + def __len__(self) -> int: ... + def __neg__(self) -> poly1d: ... + def __pos__(self) -> poly1d: ... + def __mul__(self, other: ArrayLike, /) -> poly1d: ... + def __rmul__(self, other: ArrayLike, /) -> poly1d: ... + def __add__(self, other: ArrayLike, /) -> poly1d: ... + def __radd__(self, other: ArrayLike, /) -> poly1d: ... + def __pow__(self, val: _FloatLike_co, /) -> poly1d: ... # Integral floats are accepted + def __sub__(self, other: ArrayLike, /) -> poly1d: ... + def __rsub__(self, other: ArrayLike, /) -> poly1d: ... + def __div__(self, other: ArrayLike, /) -> poly1d: ... + def __truediv__(self, other: ArrayLike, /) -> poly1d: ... + def __rdiv__(self, other: ArrayLike, /) -> poly1d: ... + def __rtruediv__(self, other: ArrayLike, /) -> poly1d: ... + def __getitem__(self, val: int, /) -> Any: ... + def __setitem__(self, key: int, val: Any, /) -> None: ... + def __iter__(self) -> Iterator[Any]: ... + def deriv(self, m: SupportsInt | SupportsIndex = ...) -> poly1d: ... + def integ( + self, + m: SupportsInt | SupportsIndex = ..., + k: None | _ArrayLikeComplex_co | _ArrayLikeObject_co = ..., + ) -> poly1d: ... + + +class matrix(ndarray[_2DShapeT_co, _DType_co]): + __array_priority__: ClassVar[float] + def __new__( + subtype, + data: ArrayLike, + dtype: DTypeLike = ..., + copy: builtins.bool = ..., + ) -> matrix[_2D, Any]: ... + def __array_finalize__(self, obj: object) -> None: ... + + @overload + def __getitem__( + self, + key: ( + SupportsIndex + | _ArrayLikeInt_co + | tuple[SupportsIndex | _ArrayLikeInt_co, ...] + ), + /, + ) -> Any: ... + @overload + def __getitem__( + self, + key: ( + None + | slice + | EllipsisType + | SupportsIndex + | _ArrayLikeInt_co + | tuple[None | slice | EllipsisType | _ArrayLikeInt_co | SupportsIndex, ...] + ), + /, + ) -> matrix[_2D, _DType_co]: ... + @overload + def __getitem__(self: NDArray[void], key: str, /) -> matrix[_2D, dtype[Any]]: ... + @overload + def __getitem__(self: NDArray[void], key: list[str], /) -> matrix[_2DShapeT_co, dtype[void]]: ... + + def __mul__(self, other: ArrayLike, /) -> matrix[_2D, Any]: ... + def __rmul__(self, other: ArrayLike, /) -> matrix[_2D, Any]: ... + def __imul__(self, other: ArrayLike, /) -> matrix[_2DShapeT_co, _DType_co]: ... + def __pow__(self, other: ArrayLike, /) -> matrix[_2D, Any]: ... + def __ipow__(self, other: ArrayLike, /) -> matrix[_2DShapeT_co, _DType_co]: ... + + @overload + def sum(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... + @overload + def sum(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[_2D, Any]: ... + @overload + def sum(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def mean(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... + @overload + def mean(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[_2D, Any]: ... + @overload + def mean(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def std(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> Any: ... + @overload + def std(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> matrix[_2D, Any]: ... + @overload + def std(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _ArrayT = ..., ddof: float = ...) -> _ArrayT: ... + + @overload + def var(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> Any: ... + @overload + def var(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ..., ddof: float = ...) -> matrix[_2D, Any]: ... + @overload + def var(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _ArrayT = ..., ddof: float = ...) -> _ArrayT: ... + + @overload + def prod(self, axis: None = ..., dtype: DTypeLike = ..., out: None = ...) -> Any: ... + @overload + def prod(self, axis: _ShapeLike, dtype: DTypeLike = ..., out: None = ...) -> matrix[_2D, Any]: ... + @overload + def prod(self, axis: None | _ShapeLike = ..., dtype: DTypeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def any(self, axis: None = ..., out: None = ...) -> np.bool: ... + @overload + def any(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, dtype[np.bool]]: ... + @overload + def any(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def all(self, axis: None = ..., out: None = ...) -> np.bool: ... + @overload + def all(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, dtype[np.bool]]: ... + @overload + def all(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def max(self: NDArray[_SCT], axis: None = ..., out: None = ...) -> _SCT: ... + @overload + def max(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, _DType_co]: ... + @overload + def max(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def min(self: NDArray[_SCT], axis: None = ..., out: None = ...) -> _SCT: ... + @overload + def min(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, _DType_co]: ... + @overload + def min(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def argmax(self: NDArray[_SCT], axis: None = ..., out: None = ...) -> intp: ... + @overload + def argmax(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, dtype[intp]]: ... + @overload + def argmax(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def argmin(self: NDArray[_SCT], axis: None = ..., out: None = ...) -> intp: ... + @overload + def argmin(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, dtype[intp]]: ... + @overload + def argmin(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + @overload + def ptp(self: NDArray[_SCT], axis: None = ..., out: None = ...) -> _SCT: ... + @overload + def ptp(self, axis: _ShapeLike, out: None = ...) -> matrix[_2D, _DType_co]: ... + @overload + def ptp(self, axis: None | _ShapeLike = ..., out: _ArrayT = ...) -> _ArrayT: ... + + def squeeze(self, axis: None | _ShapeLike = ...) -> matrix[_2D, _DType_co]: ... + def tolist(self: matrix[Any, dtype[generic[_T]]]) -> list[list[_T]]: ... # pyright: ignore[reportIncompatibleMethodOverride] + def ravel(self, /, order: _OrderKACF = "C") -> matrix[tuple[L[1], int], _DType_co]: ... # pyright: ignore[reportIncompatibleMethodOverride] + def flatten(self, /, order: _OrderKACF = "C") -> matrix[tuple[L[1], int], _DType_co]: ... # pyright: ignore[reportIncompatibleMethodOverride] + + @property + def T(self) -> matrix[_2D, _DType_co]: ... + @property + def I(self) -> matrix[_2D, Any]: ... + @property + def A(self) -> ndarray[_2DShapeT_co, _DType_co]: ... + @property + def A1(self) -> ndarray[_Shape, _DType_co]: ... + @property + def H(self) -> matrix[_2D, _DType_co]: ... + def getT(self) -> matrix[_2D, _DType_co]: ... + def getI(self) -> matrix[_2D, Any]: ... + def getA(self) -> ndarray[_2DShapeT_co, _DType_co]: ... + def getA1(self) -> ndarray[_Shape, _DType_co]: ... + def getH(self) -> matrix[_2D, _DType_co]: ... + + +def from_dlpack( + x: _SupportsDLPack[None], + /, + *, + device: L["cpu"] | None = None, + copy: builtins.bool | None = None, +) -> NDArray[number[Any] | np.bool]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.py new file mode 100644 index 0000000000000000000000000000000000000000..0167a2fe7985513f99e9959d85410a9f62e44310 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.py @@ -0,0 +1,346 @@ +""" +Array API Inspection namespace + +This is the namespace for inspection functions as defined by the array API +standard. See +https://data-apis.org/array-api/latest/API_specification/inspection.html for +more details. + +""" +from numpy._core import ( + dtype, + bool, + intp, + int8, + int16, + int32, + int64, + uint8, + uint16, + uint32, + uint64, + float32, + float64, + complex64, + complex128, +) + + +class __array_namespace_info__: + """ + Get the array API inspection namespace for NumPy. + + The array API inspection namespace defines the following functions: + + - capabilities() + - default_device() + - default_dtypes() + - dtypes() + - devices() + + See + https://data-apis.org/array-api/latest/API_specification/inspection.html + for more details. + + Returns + ------- + info : ModuleType + The array API inspection namespace for NumPy. + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.default_dtypes() + {'real floating': numpy.float64, + 'complex floating': numpy.complex128, + 'integral': numpy.int64, + 'indexing': numpy.int64} + + """ + + __module__ = 'numpy' + + def capabilities(self): + """ + Return a dictionary of array API library capabilities. + + The resulting dictionary has the following keys: + + - **"boolean indexing"**: boolean indicating whether an array library + supports boolean indexing. Always ``True`` for NumPy. + + - **"data-dependent shapes"**: boolean indicating whether an array + library supports data-dependent output shapes. Always ``True`` for + NumPy. + + See + https://data-apis.org/array-api/latest/API_specification/generated/array_api.info.capabilities.html + for more details. + + See Also + -------- + __array_namespace_info__.default_device, + __array_namespace_info__.default_dtypes, + __array_namespace_info__.dtypes, + __array_namespace_info__.devices + + Returns + ------- + capabilities : dict + A dictionary of array API library capabilities. + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.capabilities() + {'boolean indexing': True, + 'data-dependent shapes': True} + + """ + return { + "boolean indexing": True, + "data-dependent shapes": True, + # 'max rank' will be part of the 2024.12 standard + # "max rank": 64, + } + + def default_device(self): + """ + The default device used for new NumPy arrays. + + For NumPy, this always returns ``'cpu'``. + + See Also + -------- + __array_namespace_info__.capabilities, + __array_namespace_info__.default_dtypes, + __array_namespace_info__.dtypes, + __array_namespace_info__.devices + + Returns + ------- + device : str + The default device used for new NumPy arrays. + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.default_device() + 'cpu' + + """ + return "cpu" + + def default_dtypes(self, *, device=None): + """ + The default data types used for new NumPy arrays. + + For NumPy, this always returns the following dictionary: + + - **"real floating"**: ``numpy.float64`` + - **"complex floating"**: ``numpy.complex128`` + - **"integral"**: ``numpy.intp`` + - **"indexing"**: ``numpy.intp`` + + Parameters + ---------- + device : str, optional + The device to get the default data types for. For NumPy, only + ``'cpu'`` is allowed. + + Returns + ------- + dtypes : dict + A dictionary describing the default data types used for new NumPy + arrays. + + See Also + -------- + __array_namespace_info__.capabilities, + __array_namespace_info__.default_device, + __array_namespace_info__.dtypes, + __array_namespace_info__.devices + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.default_dtypes() + {'real floating': numpy.float64, + 'complex floating': numpy.complex128, + 'integral': numpy.int64, + 'indexing': numpy.int64} + + """ + if device not in ["cpu", None]: + raise ValueError( + 'Device not understood. Only "cpu" is allowed, but received:' + f' {device}' + ) + return { + "real floating": dtype(float64), + "complex floating": dtype(complex128), + "integral": dtype(intp), + "indexing": dtype(intp), + } + + def dtypes(self, *, device=None, kind=None): + """ + The array API data types supported by NumPy. + + Note that this function only returns data types that are defined by + the array API. + + Parameters + ---------- + device : str, optional + The device to get the data types for. For NumPy, only ``'cpu'`` is + allowed. + kind : str or tuple of str, optional + The kind of data types to return. If ``None``, all data types are + returned. If a string, only data types of that kind are returned. + If a tuple, a dictionary containing the union of the given kinds + is returned. The following kinds are supported: + + - ``'bool'``: boolean data types (i.e., ``bool``). + - ``'signed integer'``: signed integer data types (i.e., ``int8``, + ``int16``, ``int32``, ``int64``). + - ``'unsigned integer'``: unsigned integer data types (i.e., + ``uint8``, ``uint16``, ``uint32``, ``uint64``). + - ``'integral'``: integer data types. Shorthand for ``('signed + integer', 'unsigned integer')``. + - ``'real floating'``: real-valued floating-point data types + (i.e., ``float32``, ``float64``). + - ``'complex floating'``: complex floating-point data types (i.e., + ``complex64``, ``complex128``). + - ``'numeric'``: numeric data types. Shorthand for ``('integral', + 'real floating', 'complex floating')``. + + Returns + ------- + dtypes : dict + A dictionary mapping the names of data types to the corresponding + NumPy data types. + + See Also + -------- + __array_namespace_info__.capabilities, + __array_namespace_info__.default_device, + __array_namespace_info__.default_dtypes, + __array_namespace_info__.devices + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.dtypes(kind='signed integer') + {'int8': numpy.int8, + 'int16': numpy.int16, + 'int32': numpy.int32, + 'int64': numpy.int64} + + """ + if device not in ["cpu", None]: + raise ValueError( + 'Device not understood. Only "cpu" is allowed, but received:' + f' {device}' + ) + if kind is None: + return { + "bool": dtype(bool), + "int8": dtype(int8), + "int16": dtype(int16), + "int32": dtype(int32), + "int64": dtype(int64), + "uint8": dtype(uint8), + "uint16": dtype(uint16), + "uint32": dtype(uint32), + "uint64": dtype(uint64), + "float32": dtype(float32), + "float64": dtype(float64), + "complex64": dtype(complex64), + "complex128": dtype(complex128), + } + if kind == "bool": + return {"bool": bool} + if kind == "signed integer": + return { + "int8": dtype(int8), + "int16": dtype(int16), + "int32": dtype(int32), + "int64": dtype(int64), + } + if kind == "unsigned integer": + return { + "uint8": dtype(uint8), + "uint16": dtype(uint16), + "uint32": dtype(uint32), + "uint64": dtype(uint64), + } + if kind == "integral": + return { + "int8": dtype(int8), + "int16": dtype(int16), + "int32": dtype(int32), + "int64": dtype(int64), + "uint8": dtype(uint8), + "uint16": dtype(uint16), + "uint32": dtype(uint32), + "uint64": dtype(uint64), + } + if kind == "real floating": + return { + "float32": dtype(float32), + "float64": dtype(float64), + } + if kind == "complex floating": + return { + "complex64": dtype(complex64), + "complex128": dtype(complex128), + } + if kind == "numeric": + return { + "int8": dtype(int8), + "int16": dtype(int16), + "int32": dtype(int32), + "int64": dtype(int64), + "uint8": dtype(uint8), + "uint16": dtype(uint16), + "uint32": dtype(uint32), + "uint64": dtype(uint64), + "float32": dtype(float32), + "float64": dtype(float64), + "complex64": dtype(complex64), + "complex128": dtype(complex128), + } + if isinstance(kind, tuple): + res = {} + for k in kind: + res.update(self.dtypes(kind=k)) + return res + raise ValueError(f"unsupported kind: {kind!r}") + + def devices(self): + """ + The devices supported by NumPy. + + For NumPy, this always returns ``['cpu']``. + + Returns + ------- + devices : list of str + The devices supported by NumPy. + + See Also + -------- + __array_namespace_info__.capabilities, + __array_namespace_info__.default_device, + __array_namespace_info__.default_dtypes, + __array_namespace_info__.dtypes + + Examples + -------- + >>> info = np.__array_namespace_info__() + >>> info.devices() + ['cpu'] + + """ + return ["cpu"] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.pyi new file mode 100644 index 0000000000000000000000000000000000000000..e9c17a6f18ce6b8016d4b69664c7ed2bdde2b5a5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_array_api_info.pyi @@ -0,0 +1,210 @@ +from typing import ( + ClassVar, + Literal, + TypeAlias, + TypedDict, + TypeVar, + final, + overload, + type_check_only, +) +from typing_extensions import Never + +import numpy as np + + +_Device: TypeAlias = Literal["cpu"] +_DeviceLike: TypeAlias = None | _Device + +_Capabilities = TypedDict( + "_Capabilities", + { + "boolean indexing": Literal[True], + "data-dependent shapes": Literal[True], + }, +) + +_DefaultDTypes = TypedDict( + "_DefaultDTypes", + { + "real floating": np.dtype[np.float64], + "complex floating": np.dtype[np.complex128], + "integral": np.dtype[np.intp], + "indexing": np.dtype[np.intp], + }, +) + + +_KindBool: TypeAlias = Literal["bool"] +_KindInt: TypeAlias = Literal["signed integer"] +_KindUInt: TypeAlias = Literal["unsigned integer"] +_KindInteger: TypeAlias = Literal["integral"] +_KindFloat: TypeAlias = Literal["real floating"] +_KindComplex: TypeAlias = Literal["complex floating"] +_KindNumber: TypeAlias = Literal["numeric"] +_Kind: TypeAlias = ( + _KindBool + | _KindInt + | _KindUInt + | _KindInteger + | _KindFloat + | _KindComplex + | _KindNumber +) + + +_T1 = TypeVar("_T1") +_T2 = TypeVar("_T2") +_T3 = TypeVar("_T3") +_Permute1: TypeAlias = _T1 | tuple[_T1] +_Permute2: TypeAlias = tuple[_T1, _T2] | tuple[_T2, _T1] +_Permute3: TypeAlias = ( + tuple[_T1, _T2, _T3] | tuple[_T1, _T3, _T2] + | tuple[_T2, _T1, _T3] | tuple[_T2, _T3, _T1] + | tuple[_T3, _T1, _T2] | tuple[_T3, _T2, _T1] +) + +@type_check_only +class _DTypesBool(TypedDict): + bool: np.dtype[np.bool] + +@type_check_only +class _DTypesInt(TypedDict): + int8: np.dtype[np.int8] + int16: np.dtype[np.int16] + int32: np.dtype[np.int32] + int64: np.dtype[np.int64] + +@type_check_only +class _DTypesUInt(TypedDict): + uint8: np.dtype[np.uint8] + uint16: np.dtype[np.uint16] + uint32: np.dtype[np.uint32] + uint64: np.dtype[np.uint64] + +@type_check_only +class _DTypesInteger(_DTypesInt, _DTypesUInt): ... + +@type_check_only +class _DTypesFloat(TypedDict): + float32: np.dtype[np.float32] + float64: np.dtype[np.float64] + +@type_check_only +class _DTypesComplex(TypedDict): + complex64: np.dtype[np.complex64] + complex128: np.dtype[np.complex128] + +@type_check_only +class _DTypesNumber(_DTypesInteger, _DTypesFloat, _DTypesComplex): ... + +@type_check_only +class _DTypes(_DTypesBool, _DTypesNumber): ... + +@type_check_only +class _DTypesUnion(TypedDict, total=False): + bool: np.dtype[np.bool] + int8: np.dtype[np.int8] + int16: np.dtype[np.int16] + int32: np.dtype[np.int32] + int64: np.dtype[np.int64] + uint8: np.dtype[np.uint8] + uint16: np.dtype[np.uint16] + uint32: np.dtype[np.uint32] + uint64: np.dtype[np.uint64] + float32: np.dtype[np.float32] + float64: np.dtype[np.float64] + complex64: np.dtype[np.complex64] + complex128: np.dtype[np.complex128] + +_EmptyDict: TypeAlias = dict[Never, Never] + +@final +class __array_namespace_info__: + __module__: ClassVar[Literal['numpy']] + + def capabilities(self) -> _Capabilities: ... + def default_device(self) -> _Device: ... + def default_dtypes( + self, + *, + device: _DeviceLike = ..., + ) -> _DefaultDTypes: ... + def devices(self) -> list[_Device]: ... + + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: None = ..., + ) -> _DTypes: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: _Permute1[_KindBool], + ) -> _DTypesBool: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: _Permute1[_KindInt], + ) -> _DTypesInt: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: _Permute1[_KindUInt], + ) -> _DTypesUInt: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: _Permute1[_KindFloat], + ) -> _DTypesFloat: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: _Permute1[_KindComplex], + ) -> _DTypesComplex: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: ( + _Permute1[_KindInteger] + | _Permute2[_KindInt, _KindUInt] + ), + ) -> _DTypesInteger: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: ( + _Permute1[_KindNumber] + | _Permute3[_KindInteger, _KindFloat, _KindComplex] + ), + ) -> _DTypesNumber: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: tuple[()], + ) -> _EmptyDict: ... + @overload + def dtypes( + self, + *, + device: _DeviceLike = ..., + kind: tuple[_Kind, ...], + ) -> _DTypesUnion: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.py new file mode 100644 index 0000000000000000000000000000000000000000..70a14b876bccd9dab58c4b989785e2aec4c690fa --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.py @@ -0,0 +1,39 @@ +import argparse +from pathlib import Path +import sys + +from .version import __version__ +from .lib._utils_impl import get_include + + +def main() -> None: + parser = argparse.ArgumentParser() + parser.add_argument( + "--version", + action="version", + version=__version__, + help="Print the version and exit.", + ) + parser.add_argument( + "--cflags", + action="store_true", + help="Compile flag needed when using the NumPy headers.", + ) + parser.add_argument( + "--pkgconfigdir", + action="store_true", + help=("Print the pkgconfig directory in which `numpy.pc` is stored " + "(useful for setting $PKG_CONFIG_PATH)."), + ) + args = parser.parse_args() + if not sys.argv[1:]: + parser.print_help() + if args.cflags: + print("-I" + get_include()) + if args.pkgconfigdir: + _path = Path(get_include()) / '..' / 'lib' / 'pkgconfig' + print(_path.resolve()) + + +if __name__ == "__main__": + main() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.pyi new file mode 100644 index 0000000000000000000000000000000000000000..7e7363e797f3f5a33f66efd0349814c562e349e6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_configtool.pyi @@ -0,0 +1 @@ +def main() -> None: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..4b90877138a3ae5e06f35eb668200931073f394b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.py @@ -0,0 +1,180 @@ +""" +Contains the core of NumPy: ndarray, ufuncs, dtypes, etc. + +Please note that this module is private. All functions and objects +are available in the main ``numpy`` namespace - use that instead. + +""" + +import os + +from numpy.version import version as __version__ + + +# disables OpenBLAS affinity setting of the main thread that limits +# python threads or processes to one core +env_added = [] +for envkey in ['OPENBLAS_MAIN_FREE', 'GOTOBLAS_MAIN_FREE']: + if envkey not in os.environ: + os.environ[envkey] = '1' + env_added.append(envkey) + +try: + from . import multiarray +except ImportError as exc: + import sys + msg = """ + +IMPORTANT: PLEASE READ THIS FOR ADVICE ON HOW TO SOLVE THIS ISSUE! + +Importing the numpy C-extensions failed. This error can happen for +many reasons, often due to issues with your setup or how NumPy was +installed. + +We have compiled some common reasons and troubleshooting tips at: + + https://numpy.org/devdocs/user/troubleshooting-importerror.html + +Please note and check the following: + + * The Python version is: Python%d.%d from "%s" + * The NumPy version is: "%s" + +and make sure that they are the versions you expect. +Please carefully study the documentation linked above for further help. + +Original error was: %s +""" % (sys.version_info[0], sys.version_info[1], sys.executable, + __version__, exc) + raise ImportError(msg) +finally: + for envkey in env_added: + del os.environ[envkey] +del envkey +del env_added +del os + +from . import umath + +# Check that multiarray,umath are pure python modules wrapping +# _multiarray_umath and not either of the old c-extension modules +if not (hasattr(multiarray, '_multiarray_umath') and + hasattr(umath, '_multiarray_umath')): + import sys + path = sys.modules['numpy'].__path__ + msg = ("Something is wrong with the numpy installation. " + "While importing we detected an older version of " + "numpy in {}. One method of fixing this is to repeatedly uninstall " + "numpy until none is found, then reinstall this version.") + raise ImportError(msg.format(path)) + +from . import numerictypes as nt +from .numerictypes import sctypes, sctypeDict +multiarray.set_typeDict(nt.sctypeDict) +from . import numeric +from .numeric import * +from . import fromnumeric +from .fromnumeric import * +from .records import record, recarray +# Note: module name memmap is overwritten by a class with same name +from .memmap import * +from . import function_base +from .function_base import * +from . import _machar +from . import getlimits +from .getlimits import * +from . import shape_base +from .shape_base import * +from . import einsumfunc +from .einsumfunc import * +del nt + +from .numeric import absolute as abs + +# do this after everything else, to minimize the chance of this misleadingly +# appearing in an import-time traceback +from . import _add_newdocs +from . import _add_newdocs_scalars +# add these for module-freeze analysis (like PyInstaller) +from . import _dtype_ctypes +from . import _internal +from . import _dtype +from . import _methods + +acos = numeric.arccos +acosh = numeric.arccosh +asin = numeric.arcsin +asinh = numeric.arcsinh +atan = numeric.arctan +atanh = numeric.arctanh +atan2 = numeric.arctan2 +concat = numeric.concatenate +bitwise_left_shift = numeric.left_shift +bitwise_invert = numeric.invert +bitwise_right_shift = numeric.right_shift +permute_dims = numeric.transpose +pow = numeric.power + +__all__ = [ + "abs", "acos", "acosh", "asin", "asinh", "atan", "atanh", "atan2", + "bitwise_invert", "bitwise_left_shift", "bitwise_right_shift", "concat", + "pow", "permute_dims", "memmap", "sctypeDict", "record", "recarray" +] +__all__ += numeric.__all__ +__all__ += function_base.__all__ +__all__ += getlimits.__all__ +__all__ += shape_base.__all__ +__all__ += einsumfunc.__all__ + + +def _ufunc_reduce(func): + # Report the `__name__`. pickle will try to find the module. Note that + # pickle supports for this `__name__` to be a `__qualname__`. It may + # make sense to add a `__qualname__` to ufuncs, to allow this more + # explicitly (Numba has ufuncs as attributes). + # See also: https://github.com/dask/distributed/issues/3450 + return func.__name__ + + +def _DType_reconstruct(scalar_type): + # This is a work-around to pickle type(np.dtype(np.float64)), etc. + # and it should eventually be replaced with a better solution, e.g. when + # DTypes become HeapTypes. + return type(dtype(scalar_type)) + + +def _DType_reduce(DType): + # As types/classes, most DTypes can simply be pickled by their name: + if not DType._legacy or DType.__module__ == "numpy.dtypes": + return DType.__name__ + + # However, user defined legacy dtypes (like rational) do not end up in + # `numpy.dtypes` as module and do not have a public class at all. + # For these, we pickle them by reconstructing them from the scalar type: + scalar_type = DType.type + return _DType_reconstruct, (scalar_type,) + + +def __getattr__(name): + # Deprecated 2022-11-22, NumPy 1.25. + if name == "MachAr": + import warnings + warnings.warn( + "The `np._core.MachAr` is considered private API (NumPy 1.24)", + DeprecationWarning, stacklevel=2, + ) + return _machar.MachAr + raise AttributeError(f"Module {__name__!r} has no attribute {name!r}") + + +import copyreg + +copyreg.pickle(ufunc, _ufunc_reduce) +copyreg.pickle(type(dtype), _DType_reduce, _DType_reconstruct) + +# Unclutter namespace (must keep _*_reconstruct for unpickling) +del copyreg, _ufunc_reduce, _DType_reduce + +from numpy._pytesttester import PytestTester +test = PytestTester(__name__) +del PytestTester diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..40d9c411b97cf7f9e5df910b7567db9238a61e5d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/__init__.pyi @@ -0,0 +1,2 @@ +# NOTE: The `np._core` namespace is deliberately kept empty due to it +# being private diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.py new file mode 100644 index 0000000000000000000000000000000000000000..d860aadedd83f3bcfcb3afef3fe194ec99730517 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.py @@ -0,0 +1,6974 @@ +""" +This is only meant to add docs to objects defined in C-extension modules. +The purpose is to allow easier editing of the docstrings without +requiring a re-compile. + +NOTE: Many of the methods of ndarray have corresponding functions. + If you update these docstrings, please keep also the ones in + _core/fromnumeric.py, matrixlib/defmatrix.py up-to-date. + +""" + +from numpy._core.function_base import add_newdoc +from numpy._core.overrides import get_array_function_like_doc + + +############################################################################### +# +# flatiter +# +# flatiter needs a toplevel description +# +############################################################################### + +add_newdoc('numpy._core', 'flatiter', + """ + Flat iterator object to iterate over arrays. + + A `flatiter` iterator is returned by ``x.flat`` for any array `x`. + It allows iterating over the array as if it were a 1-D array, + either in a for-loop or by calling its `next` method. + + Iteration is done in row-major, C-style order (the last + index varying the fastest). The iterator can also be indexed using + basic slicing or advanced indexing. + + See Also + -------- + ndarray.flat : Return a flat iterator over an array. + ndarray.flatten : Returns a flattened copy of an array. + + Notes + ----- + A `flatiter` iterator can not be constructed directly from Python code + by calling the `flatiter` constructor. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2, 3) + >>> fl = x.flat + >>> type(fl) + + >>> for item in fl: + ... print(item) + ... + 0 + 1 + 2 + 3 + 4 + 5 + + >>> fl[2:4] + array([2, 3]) + + """) + +# flatiter attributes + +add_newdoc('numpy._core', 'flatiter', ('base', + """ + A reference to the array that is iterated over. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(5) + >>> fl = x.flat + >>> fl.base is x + True + + """)) + + +add_newdoc('numpy._core', 'flatiter', ('coords', + """ + An N-dimensional tuple of current coordinates. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2, 3) + >>> fl = x.flat + >>> fl.coords + (0, 0) + >>> next(fl) + 0 + >>> fl.coords + (0, 1) + + """)) + + +add_newdoc('numpy._core', 'flatiter', ('index', + """ + Current flat index into the array. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2, 3) + >>> fl = x.flat + >>> fl.index + 0 + >>> next(fl) + 0 + >>> fl.index + 1 + + """)) + +# flatiter functions + +add_newdoc('numpy._core', 'flatiter', ('__array__', + """__array__(type=None) Get array from iterator + + """)) + + +add_newdoc('numpy._core', 'flatiter', ('copy', + """ + copy() + + Get a copy of the iterator as a 1-D array. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2, 3) + >>> x + array([[0, 1, 2], + [3, 4, 5]]) + >>> fl = x.flat + >>> fl.copy() + array([0, 1, 2, 3, 4, 5]) + + """)) + + +############################################################################### +# +# nditer +# +############################################################################### + +add_newdoc('numpy._core', 'nditer', + """ + nditer(op, flags=None, op_flags=None, op_dtypes=None, order='K', + casting='safe', op_axes=None, itershape=None, buffersize=0) + + Efficient multi-dimensional iterator object to iterate over arrays. + To get started using this object, see the + :ref:`introductory guide to array iteration `. + + Parameters + ---------- + op : ndarray or sequence of array_like + The array(s) to iterate over. + + flags : sequence of str, optional + Flags to control the behavior of the iterator. + + * ``buffered`` enables buffering when required. + * ``c_index`` causes a C-order index to be tracked. + * ``f_index`` causes a Fortran-order index to be tracked. + * ``multi_index`` causes a multi-index, or a tuple of indices + with one per iteration dimension, to be tracked. + * ``common_dtype`` causes all the operands to be converted to + a common data type, with copying or buffering as necessary. + * ``copy_if_overlap`` causes the iterator to determine if read + operands have overlap with write operands, and make temporary + copies as necessary to avoid overlap. False positives (needless + copying) are possible in some cases. + * ``delay_bufalloc`` delays allocation of the buffers until + a reset() call is made. Allows ``allocate`` operands to + be initialized before their values are copied into the buffers. + * ``external_loop`` causes the ``values`` given to be + one-dimensional arrays with multiple values instead of + zero-dimensional arrays. + * ``grow_inner`` allows the ``value`` array sizes to be made + larger than the buffer size when both ``buffered`` and + ``external_loop`` is used. + * ``ranged`` allows the iterator to be restricted to a sub-range + of the iterindex values. + * ``refs_ok`` enables iteration of reference types, such as + object arrays. + * ``reduce_ok`` enables iteration of ``readwrite`` operands + which are broadcasted, also known as reduction operands. + * ``zerosize_ok`` allows `itersize` to be zero. + op_flags : list of list of str, optional + This is a list of flags for each operand. At minimum, one of + ``readonly``, ``readwrite``, or ``writeonly`` must be specified. + + * ``readonly`` indicates the operand will only be read from. + * ``readwrite`` indicates the operand will be read from and written to. + * ``writeonly`` indicates the operand will only be written to. + * ``no_broadcast`` prevents the operand from being broadcasted. + * ``contig`` forces the operand data to be contiguous. + * ``aligned`` forces the operand data to be aligned. + * ``nbo`` forces the operand data to be in native byte order. + * ``copy`` allows a temporary read-only copy if required. + * ``updateifcopy`` allows a temporary read-write copy if required. + * ``allocate`` causes the array to be allocated if it is None + in the ``op`` parameter. + * ``no_subtype`` prevents an ``allocate`` operand from using a subtype. + * ``arraymask`` indicates that this operand is the mask to use + for selecting elements when writing to operands with the + 'writemasked' flag set. The iterator does not enforce this, + but when writing from a buffer back to the array, it only + copies those elements indicated by this mask. + * ``writemasked`` indicates that only elements where the chosen + ``arraymask`` operand is True will be written to. + * ``overlap_assume_elementwise`` can be used to mark operands that are + accessed only in the iterator order, to allow less conservative + copying when ``copy_if_overlap`` is present. + op_dtypes : dtype or tuple of dtype(s), optional + The required data type(s) of the operands. If copying or buffering + is enabled, the data will be converted to/from their original types. + order : {'C', 'F', 'A', 'K'}, optional + Controls the iteration order. 'C' means C order, 'F' means + Fortran order, 'A' means 'F' order if all the arrays are Fortran + contiguous, 'C' order otherwise, and 'K' means as close to the + order the array elements appear in memory as possible. This also + affects the element memory order of ``allocate`` operands, as they + are allocated to be compatible with iteration order. + Default is 'K'. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur when making a copy + or buffering. Setting this to 'unsafe' is not recommended, + as it can adversely affect accumulations. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + op_axes : list of list of ints, optional + If provided, is a list of ints or None for each operands. + The list of axes for an operand is a mapping from the dimensions + of the iterator to the dimensions of the operand. A value of + -1 can be placed for entries, causing that dimension to be + treated as `newaxis`. + itershape : tuple of ints, optional + The desired shape of the iterator. This allows ``allocate`` operands + with a dimension mapped by op_axes not corresponding to a dimension + of a different operand to get a value not equal to 1 for that + dimension. + buffersize : int, optional + When buffering is enabled, controls the size of the temporary + buffers. Set to 0 for the default value. + + Attributes + ---------- + dtypes : tuple of dtype(s) + The data types of the values provided in `value`. This may be + different from the operand data types if buffering is enabled. + Valid only before the iterator is closed. + finished : bool + Whether the iteration over the operands is finished or not. + has_delayed_bufalloc : bool + If True, the iterator was created with the ``delay_bufalloc`` flag, + and no reset() function was called on it yet. + has_index : bool + If True, the iterator was created with either the ``c_index`` or + the ``f_index`` flag, and the property `index` can be used to + retrieve it. + has_multi_index : bool + If True, the iterator was created with the ``multi_index`` flag, + and the property `multi_index` can be used to retrieve it. + index + When the ``c_index`` or ``f_index`` flag was used, this property + provides access to the index. Raises a ValueError if accessed + and ``has_index`` is False. + iterationneedsapi : bool + Whether iteration requires access to the Python API, for example + if one of the operands is an object array. + iterindex : int + An index which matches the order of iteration. + itersize : int + Size of the iterator. + itviews + Structured view(s) of `operands` in memory, matching the reordered + and optimized iterator access pattern. Valid only before the iterator + is closed. + multi_index + When the ``multi_index`` flag was used, this property + provides access to the index. Raises a ValueError if accessed + accessed and ``has_multi_index`` is False. + ndim : int + The dimensions of the iterator. + nop : int + The number of iterator operands. + operands : tuple of operand(s) + The array(s) to be iterated over. Valid only before the iterator is + closed. + shape : tuple of ints + Shape tuple, the shape of the iterator. + value + Value of ``operands`` at current iteration. Normally, this is a + tuple of array scalars, but if the flag ``external_loop`` is used, + it is a tuple of one dimensional arrays. + + Notes + ----- + `nditer` supersedes `flatiter`. The iterator implementation behind + `nditer` is also exposed by the NumPy C API. + + The Python exposure supplies two iteration interfaces, one which follows + the Python iterator protocol, and another which mirrors the C-style + do-while pattern. The native Python approach is better in most cases, but + if you need the coordinates or index of an iterator, use the C-style pattern. + + Examples + -------- + Here is how we might write an ``iter_add`` function, using the + Python iterator protocol: + + >>> import numpy as np + + >>> def iter_add_py(x, y, out=None): + ... addop = np.add + ... it = np.nditer([x, y, out], [], + ... [['readonly'], ['readonly'], ['writeonly','allocate']]) + ... with it: + ... for (a, b, c) in it: + ... addop(a, b, out=c) + ... return it.operands[2] + + Here is the same function, but following the C-style pattern: + + >>> def iter_add(x, y, out=None): + ... addop = np.add + ... it = np.nditer([x, y, out], [], + ... [['readonly'], ['readonly'], ['writeonly','allocate']]) + ... with it: + ... while not it.finished: + ... addop(it[0], it[1], out=it[2]) + ... it.iternext() + ... return it.operands[2] + + Here is an example outer product function: + + >>> def outer_it(x, y, out=None): + ... mulop = np.multiply + ... it = np.nditer([x, y, out], ['external_loop'], + ... [['readonly'], ['readonly'], ['writeonly', 'allocate']], + ... op_axes=[list(range(x.ndim)) + [-1] * y.ndim, + ... [-1] * x.ndim + list(range(y.ndim)), + ... None]) + ... with it: + ... for (a, b, c) in it: + ... mulop(a, b, out=c) + ... return it.operands[2] + + >>> a = np.arange(2)+1 + >>> b = np.arange(3)+1 + >>> outer_it(a,b) + array([[1, 2, 3], + [2, 4, 6]]) + + Here is an example function which operates like a "lambda" ufunc: + + >>> def luf(lamdaexpr, *args, **kwargs): + ... '''luf(lambdaexpr, op1, ..., opn, out=None, order='K', casting='safe', buffersize=0)''' + ... nargs = len(args) + ... op = (kwargs.get('out',None),) + args + ... it = np.nditer(op, ['buffered','external_loop'], + ... [['writeonly','allocate','no_broadcast']] + + ... [['readonly','nbo','aligned']]*nargs, + ... order=kwargs.get('order','K'), + ... casting=kwargs.get('casting','safe'), + ... buffersize=kwargs.get('buffersize',0)) + ... while not it.finished: + ... it[0] = lamdaexpr(*it[1:]) + ... it.iternext() + ... return it.operands[0] + + >>> a = np.arange(5) + >>> b = np.ones(5) + >>> luf(lambda i,j:i*i + j/2, a, b) + array([ 0.5, 1.5, 4.5, 9.5, 16.5]) + + If operand flags ``"writeonly"`` or ``"readwrite"`` are used the + operands may be views into the original data with the + `WRITEBACKIFCOPY` flag. In this case `nditer` must be used as a + context manager or the `nditer.close` method must be called before + using the result. The temporary data will be written back to the + original data when the :meth:`~object.__exit__` function is called + but not before: + + >>> a = np.arange(6, dtype='i4')[::-2] + >>> with np.nditer(a, [], + ... [['writeonly', 'updateifcopy']], + ... casting='unsafe', + ... op_dtypes=[np.dtype('f4')]) as i: + ... x = i.operands[0] + ... x[:] = [-1, -2, -3] + ... # a still unchanged here + >>> a, x + (array([-1, -2, -3], dtype=int32), array([-1., -2., -3.], dtype=float32)) + + It is important to note that once the iterator is exited, dangling + references (like `x` in the example) may or may not share data with + the original data `a`. If writeback semantics were active, i.e. if + `x.base.flags.writebackifcopy` is `True`, then exiting the iterator + will sever the connection between `x` and `a`, writing to `x` will + no longer write to `a`. If writeback semantics are not active, then + `x.data` will still point at some part of `a.data`, and writing to + one will affect the other. + + Context management and the `close` method appeared in version 1.15.0. + + """) + +# nditer methods + +add_newdoc('numpy._core', 'nditer', ('copy', + """ + copy() + + Get a copy of the iterator in its current state. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(10) + >>> y = x + 1 + >>> it = np.nditer([x, y]) + >>> next(it) + (array(0), array(1)) + >>> it2 = it.copy() + >>> next(it2) + (array(1), array(2)) + + """)) + +add_newdoc('numpy._core', 'nditer', ('operands', + """ + operands[`Slice`] + + The array(s) to be iterated over. Valid only before the iterator is closed. + """)) + +add_newdoc('numpy._core', 'nditer', ('debug_print', + """ + debug_print() + + Print the current state of the `nditer` instance and debug info to stdout. + + """)) + +add_newdoc('numpy._core', 'nditer', ('enable_external_loop', + """ + enable_external_loop() + + When the "external_loop" was not used during construction, but + is desired, this modifies the iterator to behave as if the flag + was specified. + + """)) + +add_newdoc('numpy._core', 'nditer', ('iternext', + """ + iternext() + + Check whether iterations are left, and perform a single internal iteration + without returning the result. Used in the C-style pattern do-while + pattern. For an example, see `nditer`. + + Returns + ------- + iternext : bool + Whether or not there are iterations left. + + """)) + +add_newdoc('numpy._core', 'nditer', ('remove_axis', + """ + remove_axis(i, /) + + Removes axis `i` from the iterator. Requires that the flag "multi_index" + be enabled. + + """)) + +add_newdoc('numpy._core', 'nditer', ('remove_multi_index', + """ + remove_multi_index() + + When the "multi_index" flag was specified, this removes it, allowing + the internal iteration structure to be optimized further. + + """)) + +add_newdoc('numpy._core', 'nditer', ('reset', + """ + reset() + + Reset the iterator to its initial state. + + """)) + +add_newdoc('numpy._core', 'nested_iters', + """ + nested_iters(op, axes, flags=None, op_flags=None, op_dtypes=None, \ + order="K", casting="safe", buffersize=0) + + Create nditers for use in nested loops + + Create a tuple of `nditer` objects which iterate in nested loops over + different axes of the op argument. The first iterator is used in the + outermost loop, the last in the innermost loop. Advancing one will change + the subsequent iterators to point at its new element. + + Parameters + ---------- + op : ndarray or sequence of array_like + The array(s) to iterate over. + + axes : list of list of int + Each item is used as an "op_axes" argument to an nditer + + flags, op_flags, op_dtypes, order, casting, buffersize (optional) + See `nditer` parameters of the same name + + Returns + ------- + iters : tuple of nditer + An nditer for each item in `axes`, outermost first + + See Also + -------- + nditer + + Examples + -------- + + Basic usage. Note how y is the "flattened" version of + [a[:, 0, :], a[:, 1, 0], a[:, 2, :]] since we specified + the first iter's axes as [1] + + >>> import numpy as np + >>> a = np.arange(12).reshape(2, 3, 2) + >>> i, j = np.nested_iters(a, [[1], [0, 2]], flags=["multi_index"]) + >>> for x in i: + ... print(i.multi_index) + ... for y in j: + ... print('', j.multi_index, y) + (0,) + (0, 0) 0 + (0, 1) 1 + (1, 0) 6 + (1, 1) 7 + (1,) + (0, 0) 2 + (0, 1) 3 + (1, 0) 8 + (1, 1) 9 + (2,) + (0, 0) 4 + (0, 1) 5 + (1, 0) 10 + (1, 1) 11 + + """) + +add_newdoc('numpy._core', 'nditer', ('close', + """ + close() + + Resolve all writeback semantics in writeable operands. + + See Also + -------- + + :ref:`nditer-context-manager` + + """)) + + +############################################################################### +# +# broadcast +# +############################################################################### + +add_newdoc('numpy._core', 'broadcast', + """ + Produce an object that mimics broadcasting. + + Parameters + ---------- + in1, in2, ... : array_like + Input parameters. + + Returns + ------- + b : broadcast object + Broadcast the input parameters against one another, and + return an object that encapsulates the result. + Amongst others, it has ``shape`` and ``nd`` properties, and + may be used as an iterator. + + See Also + -------- + broadcast_arrays + broadcast_to + broadcast_shapes + + Examples + -------- + + Manually adding two vectors, using broadcasting: + + >>> import numpy as np + >>> x = np.array([[1], [2], [3]]) + >>> y = np.array([4, 5, 6]) + >>> b = np.broadcast(x, y) + + >>> out = np.empty(b.shape) + >>> out.flat = [u+v for (u,v) in b] + >>> out + array([[5., 6., 7.], + [6., 7., 8.], + [7., 8., 9.]]) + + Compare against built-in broadcasting: + + >>> x + y + array([[5, 6, 7], + [6, 7, 8], + [7, 8, 9]]) + + """) + +# attributes + +add_newdoc('numpy._core', 'broadcast', ('index', + """ + current index in broadcasted result + + Examples + -------- + + >>> import numpy as np + >>> x = np.array([[1], [2], [3]]) + >>> y = np.array([4, 5, 6]) + >>> b = np.broadcast(x, y) + >>> b.index + 0 + >>> next(b), next(b), next(b) + ((1, 4), (1, 5), (1, 6)) + >>> b.index + 3 + + """)) + +add_newdoc('numpy._core', 'broadcast', ('iters', + """ + tuple of iterators along ``self``'s "components." + + Returns a tuple of `numpy.flatiter` objects, one for each "component" + of ``self``. + + See Also + -------- + numpy.flatiter + + Examples + -------- + + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> row, col = b.iters + >>> next(row), next(col) + (1, 4) + + """)) + +add_newdoc('numpy._core', 'broadcast', ('ndim', + """ + Number of dimensions of broadcasted result. Alias for `nd`. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.ndim + 2 + + """)) + +add_newdoc('numpy._core', 'broadcast', ('nd', + """ + Number of dimensions of broadcasted result. For code intended for NumPy + 1.12.0 and later the more consistent `ndim` is preferred. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.nd + 2 + + """)) + +add_newdoc('numpy._core', 'broadcast', ('numiter', + """ + Number of iterators possessed by the broadcasted result. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.numiter + 2 + + """)) + +add_newdoc('numpy._core', 'broadcast', ('shape', + """ + Shape of broadcasted result. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.shape + (3, 3) + + """)) + +add_newdoc('numpy._core', 'broadcast', ('size', + """ + Total size of broadcasted result. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.size + 9 + + """)) + +add_newdoc('numpy._core', 'broadcast', ('reset', + """ + reset() + + Reset the broadcasted result's iterator(s). + + Parameters + ---------- + None + + Returns + ------- + None + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> y = np.array([[4], [5], [6]]) + >>> b = np.broadcast(x, y) + >>> b.index + 0 + >>> next(b), next(b), next(b) + ((1, 4), (2, 4), (3, 4)) + >>> b.index + 3 + >>> b.reset() + >>> b.index + 0 + + """)) + +############################################################################### +# +# numpy functions +# +############################################################################### + +add_newdoc('numpy._core.multiarray', 'array', + """ + array(object, dtype=None, *, copy=True, order='K', subok=False, ndmin=0, + like=None) + + Create an array. + + Parameters + ---------- + object : array_like + An array, any object exposing the array interface, an object whose + ``__array__`` method returns an array, or any (nested) sequence. + If object is a scalar, a 0-dimensional array containing object is + returned. + dtype : data-type, optional + The desired data-type for the array. If not given, NumPy will try to use + a default ``dtype`` that can represent the values (by applying promotion + rules when necessary.) + copy : bool, optional + If ``True`` (default), then the array data is copied. If ``None``, + a copy will only be made if ``__array__`` returns a copy, if obj is + a nested sequence, or if a copy is needed to satisfy any of the other + requirements (``dtype``, ``order``, etc.). Note that any copy of + the data is shallow, i.e., for arrays with object dtype, the new + array will point to the same objects. See Examples for `ndarray.copy`. + For ``False`` it raises a ``ValueError`` if a copy cannot be avoided. + Default: ``True``. + order : {'K', 'A', 'C', 'F'}, optional + Specify the memory layout of the array. If object is not an array, the + newly created array will be in C order (row major) unless 'F' is + specified, in which case it will be in Fortran order (column major). + If object is an array the following holds. + + ===== ========= =================================================== + order no copy copy=True + ===== ========= =================================================== + 'K' unchanged F & C order preserved, otherwise most similar order + 'A' unchanged F order if input is F and not C, otherwise C order + 'C' C order C order + 'F' F order F order + ===== ========= =================================================== + + When ``copy=None`` and a copy is made for other reasons, the result is + the same as if ``copy=True``, with some exceptions for 'A', see the + Notes section. The default order is 'K'. + subok : bool, optional + If True, then sub-classes will be passed-through, otherwise + the returned array will be forced to be a base-class array (default). + ndmin : int, optional + Specifies the minimum number of dimensions that the resulting + array should have. Ones will be prepended to the shape as + needed to meet this requirement. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + An array object satisfying the specified requirements. + + See Also + -------- + empty_like : Return an empty array with shape and type of input. + ones_like : Return an array of ones with shape and type of input. + zeros_like : Return an array of zeros with shape and type of input. + full_like : Return a new array with shape of input filled with value. + empty : Return a new uninitialized array. + ones : Return a new array setting values to one. + zeros : Return a new array setting values to zero. + full : Return a new array of given shape filled with value. + copy: Return an array copy of the given object. + + + Notes + ----- + When order is 'A' and ``object`` is an array in neither 'C' nor 'F' order, + and a copy is forced by a change in dtype, then the order of the result is + not necessarily 'C' as expected. This is likely a bug. + + Examples + -------- + >>> import numpy as np + >>> np.array([1, 2, 3]) + array([1, 2, 3]) + + Upcasting: + + >>> np.array([1, 2, 3.0]) + array([ 1., 2., 3.]) + + More than one dimension: + + >>> np.array([[1, 2], [3, 4]]) + array([[1, 2], + [3, 4]]) + + Minimum dimensions 2: + + >>> np.array([1, 2, 3], ndmin=2) + array([[1, 2, 3]]) + + Type provided: + + >>> np.array([1, 2, 3], dtype=complex) + array([ 1.+0.j, 2.+0.j, 3.+0.j]) + + Data-type consisting of more than one element: + + >>> x = np.array([(1,2),(3,4)],dtype=[('a','>> x['a'] + array([1, 3], dtype=int32) + + Creating an array from sub-classes: + + >>> np.array(np.asmatrix('1 2; 3 4')) + array([[1, 2], + [3, 4]]) + + >>> np.array(np.asmatrix('1 2; 3 4'), subok=True) + matrix([[1, 2], + [3, 4]]) + + """) + +add_newdoc('numpy._core.multiarray', 'asarray', + """ + asarray(a, dtype=None, order=None, *, device=None, copy=None, like=None) + + Convert the input to an array. + + Parameters + ---------- + a : array_like + Input data, in any form that can be converted to an array. This + includes lists, lists of tuples, tuples, tuples of tuples, tuples + of lists and ndarrays. + dtype : data-type, optional + By default, the data-type is inferred from the input data. + order : {'C', 'F', 'A', 'K'}, optional + Memory layout. 'A' and 'K' depend on the order of input array a. + 'C' row-major (C-style), + 'F' column-major (Fortran-style) memory representation. + 'A' (any) means 'F' if `a` is Fortran contiguous, 'C' otherwise + 'K' (keep) preserve input order + Defaults to 'K'. + device : str, optional + The device on which to place the created array. Default: ``None``. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + copy : bool, optional + If ``True``, then the object is copied. If ``None`` then the object is + copied only if needed, i.e. if ``__array__`` returns a copy, if obj + is a nested sequence, or if a copy is needed to satisfy any of + the other requirements (``dtype``, ``order``, etc.). + For ``False`` it raises a ``ValueError`` if a copy cannot be avoided. + Default: ``None``. + + .. versionadded:: 2.0.0 + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array interpretation of ``a``. No copy is performed if the input + is already an ndarray with matching dtype and order. If ``a`` is a + subclass of ndarray, a base class ndarray is returned. + + See Also + -------- + asanyarray : Similar function which passes through subclasses. + ascontiguousarray : Convert input to a contiguous array. + asfortranarray : Convert input to an ndarray with column-major + memory order. + asarray_chkfinite : Similar function which checks input for NaNs and Infs. + fromiter : Create an array from an iterator. + fromfunction : Construct an array by executing a function on grid + positions. + + Examples + -------- + Convert a list into an array: + + >>> a = [1, 2] + >>> import numpy as np + >>> np.asarray(a) + array([1, 2]) + + Existing arrays are not copied: + + >>> a = np.array([1, 2]) + >>> np.asarray(a) is a + True + + If `dtype` is set, array is copied only if dtype does not match: + + >>> a = np.array([1, 2], dtype=np.float32) + >>> np.shares_memory(np.asarray(a, dtype=np.float32), a) + True + >>> np.shares_memory(np.asarray(a, dtype=np.float64), a) + False + + Contrary to `asanyarray`, ndarray subclasses are not passed through: + + >>> issubclass(np.recarray, np.ndarray) + True + >>> a = np.array([(1., 2), (3., 4)], dtype='f4,i4').view(np.recarray) + >>> np.asarray(a) is a + False + >>> np.asanyarray(a) is a + True + + """) + +add_newdoc('numpy._core.multiarray', 'asanyarray', + """ + asanyarray(a, dtype=None, order=None, *, device=None, copy=None, like=None) + + Convert the input to an ndarray, but pass ndarray subclasses through. + + Parameters + ---------- + a : array_like + Input data, in any form that can be converted to an array. This + includes scalars, lists, lists of tuples, tuples, tuples of tuples, + tuples of lists, and ndarrays. + dtype : data-type, optional + By default, the data-type is inferred from the input data. + order : {'C', 'F', 'A', 'K'}, optional + Memory layout. 'A' and 'K' depend on the order of input array a. + 'C' row-major (C-style), + 'F' column-major (Fortran-style) memory representation. + 'A' (any) means 'F' if `a` is Fortran contiguous, 'C' otherwise + 'K' (keep) preserve input order + Defaults to 'C'. + device : str, optional + The device on which to place the created array. Default: ``None``. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.1.0 + + copy : bool, optional + If ``True``, then the object is copied. If ``None`` then the object is + copied only if needed, i.e. if ``__array__`` returns a copy, if obj + is a nested sequence, or if a copy is needed to satisfy any of + the other requirements (``dtype``, ``order``, etc.). + For ``False`` it raises a ``ValueError`` if a copy cannot be avoided. + Default: ``None``. + + .. versionadded:: 2.1.0 + + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray or an ndarray subclass + Array interpretation of `a`. If `a` is an ndarray or a subclass + of ndarray, it is returned as-is and no copy is performed. + + See Also + -------- + asarray : Similar function which always returns ndarrays. + ascontiguousarray : Convert input to a contiguous array. + asfortranarray : Convert input to an ndarray with column-major + memory order. + asarray_chkfinite : Similar function which checks input for NaNs and + Infs. + fromiter : Create an array from an iterator. + fromfunction : Construct an array by executing a function on grid + positions. + + Examples + -------- + Convert a list into an array: + + >>> a = [1, 2] + >>> import numpy as np + >>> np.asanyarray(a) + array([1, 2]) + + Instances of `ndarray` subclasses are passed through as-is: + + >>> a = np.array([(1., 2), (3., 4)], dtype='f4,i4').view(np.recarray) + >>> np.asanyarray(a) is a + True + + """) + +add_newdoc('numpy._core.multiarray', 'ascontiguousarray', + """ + ascontiguousarray(a, dtype=None, *, like=None) + + Return a contiguous array (ndim >= 1) in memory (C order). + + Parameters + ---------- + a : array_like + Input array. + dtype : str or dtype object, optional + Data-type of returned array. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Contiguous array of same shape and content as `a`, with type `dtype` + if specified. + + See Also + -------- + asfortranarray : Convert input to an ndarray with column-major + memory order. + require : Return an ndarray that satisfies requirements. + ndarray.flags : Information about the memory layout of the array. + + Examples + -------- + Starting with a Fortran-contiguous array: + + >>> import numpy as np + >>> x = np.ones((2, 3), order='F') + >>> x.flags['F_CONTIGUOUS'] + True + + Calling ``ascontiguousarray`` makes a C-contiguous copy: + + >>> y = np.ascontiguousarray(x) + >>> y.flags['C_CONTIGUOUS'] + True + >>> np.may_share_memory(x, y) + False + + Now, starting with a C-contiguous array: + + >>> x = np.ones((2, 3), order='C') + >>> x.flags['C_CONTIGUOUS'] + True + + Then, calling ``ascontiguousarray`` returns the same object: + + >>> y = np.ascontiguousarray(x) + >>> x is y + True + + Note: This function returns an array with at least one-dimension (1-d) + so it will not preserve 0-d arrays. + + """) + +add_newdoc('numpy._core.multiarray', 'asfortranarray', + """ + asfortranarray(a, dtype=None, *, like=None) + + Return an array (ndim >= 1) laid out in Fortran order in memory. + + Parameters + ---------- + a : array_like + Input array. + dtype : str or dtype object, optional + By default, the data-type is inferred from the input data. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + The input `a` in Fortran, or column-major, order. + + See Also + -------- + ascontiguousarray : Convert input to a contiguous (C order) array. + asanyarray : Convert input to an ndarray with either row or + column-major memory order. + require : Return an ndarray that satisfies requirements. + ndarray.flags : Information about the memory layout of the array. + + Examples + -------- + Starting with a C-contiguous array: + + >>> import numpy as np + >>> x = np.ones((2, 3), order='C') + >>> x.flags['C_CONTIGUOUS'] + True + + Calling ``asfortranarray`` makes a Fortran-contiguous copy: + + >>> y = np.asfortranarray(x) + >>> y.flags['F_CONTIGUOUS'] + True + >>> np.may_share_memory(x, y) + False + + Now, starting with a Fortran-contiguous array: + + >>> x = np.ones((2, 3), order='F') + >>> x.flags['F_CONTIGUOUS'] + True + + Then, calling ``asfortranarray`` returns the same object: + + >>> y = np.asfortranarray(x) + >>> x is y + True + + Note: This function returns an array with at least one-dimension (1-d) + so it will not preserve 0-d arrays. + + """) + +add_newdoc('numpy._core.multiarray', 'empty', + """ + empty(shape, dtype=float, order='C', *, device=None, like=None) + + Return a new array of given shape and type, without initializing entries. + + Parameters + ---------- + shape : int or tuple of int + Shape of the empty array, e.g., ``(2, 3)`` or ``2``. + dtype : data-type, optional + Desired output data-type for the array, e.g, `numpy.int8`. Default is + `numpy.float64`. + order : {'C', 'F'}, optional, default: 'C' + Whether to store multi-dimensional data in row-major + (C-style) or column-major (Fortran-style) order in + memory. + device : str, optional + The device on which to place the created array. Default: ``None``. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array of uninitialized (arbitrary) data of the given shape, dtype, and + order. Object arrays will be initialized to None. + + See Also + -------- + empty_like : Return an empty array with shape and type of input. + ones : Return a new array setting values to one. + zeros : Return a new array setting values to zero. + full : Return a new array of given shape filled with value. + + Notes + ----- + Unlike other array creation functions (e.g. `zeros`, `ones`, `full`), + `empty` does not initialize the values of the array, and may therefore be + marginally faster. However, the values stored in the newly allocated array + are arbitrary. For reproducible behavior, be sure to set each element of + the array before reading. + + Examples + -------- + >>> import numpy as np + >>> np.empty([2, 2]) + array([[ -9.74499359e+001, 6.69583040e-309], + [ 2.13182611e-314, 3.06959433e-309]]) #uninitialized + + >>> np.empty([2, 2], dtype=int) + array([[-1073741821, -1067949133], + [ 496041986, 19249760]]) #uninitialized + + """) + +add_newdoc('numpy._core.multiarray', 'scalar', + """ + scalar(dtype, obj) + + Return a new scalar array of the given type initialized with obj. + + This function is meant mainly for pickle support. `dtype` must be a + valid data-type descriptor. If `dtype` corresponds to an object + descriptor, then `obj` can be any object, otherwise `obj` must be a + string. If `obj` is not given, it will be interpreted as None for object + type and as zeros for all other types. + + """) + +add_newdoc('numpy._core.multiarray', 'zeros', + """ + zeros(shape, dtype=float, order='C', *, like=None) + + Return a new array of given shape and type, filled with zeros. + + Parameters + ---------- + shape : int or tuple of ints + Shape of the new array, e.g., ``(2, 3)`` or ``2``. + dtype : data-type, optional + The desired data-type for the array, e.g., `numpy.int8`. Default is + `numpy.float64`. + order : {'C', 'F'}, optional, default: 'C' + Whether to store multi-dimensional data in row-major + (C-style) or column-major (Fortran-style) order in + memory. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array of zeros with the given shape, dtype, and order. + + See Also + -------- + zeros_like : Return an array of zeros with shape and type of input. + empty : Return a new uninitialized array. + ones : Return a new array setting values to one. + full : Return a new array of given shape filled with value. + + Examples + -------- + >>> import numpy as np + >>> np.zeros(5) + array([ 0., 0., 0., 0., 0.]) + + >>> np.zeros((5,), dtype=int) + array([0, 0, 0, 0, 0]) + + >>> np.zeros((2, 1)) + array([[ 0.], + [ 0.]]) + + >>> s = (2,2) + >>> np.zeros(s) + array([[ 0., 0.], + [ 0., 0.]]) + + >>> np.zeros((2,), dtype=[('x', 'i4'), ('y', 'i4')]) # custom dtype + array([(0, 0), (0, 0)], + dtype=[('x', '>> import numpy as np + >>> np.fromstring('1 2', dtype=int, sep=' ') + array([1, 2]) + >>> np.fromstring('1, 2', dtype=int, sep=',') + array([1, 2]) + + """) + +add_newdoc('numpy._core.multiarray', 'compare_chararrays', + """ + compare_chararrays(a1, a2, cmp, rstrip) + + Performs element-wise comparison of two string arrays using the + comparison operator specified by `cmp`. + + Parameters + ---------- + a1, a2 : array_like + Arrays to be compared. + cmp : {"<", "<=", "==", ">=", ">", "!="} + Type of comparison. + rstrip : Boolean + If True, the spaces at the end of Strings are removed before the comparison. + + Returns + ------- + out : ndarray + The output array of type Boolean with the same shape as a and b. + + Raises + ------ + ValueError + If `cmp` is not valid. + TypeError + If at least one of `a` or `b` is a non-string array + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["a", "b", "cde"]) + >>> b = np.array(["a", "a", "dec"]) + >>> np.char.compare_chararrays(a, b, ">", True) + array([False, True, False]) + + """) + +add_newdoc('numpy._core.multiarray', 'fromiter', + """ + fromiter(iter, dtype, count=-1, *, like=None) + + Create a new 1-dimensional array from an iterable object. + + Parameters + ---------- + iter : iterable object + An iterable object providing data for the array. + dtype : data-type + The data-type of the returned array. + + .. versionchanged:: 1.23 + Object and subarray dtypes are now supported (note that the final + result is not 1-D for a subarray dtype). + + count : int, optional + The number of items to read from *iterable*. The default is -1, + which means all data is read. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + The output array. + + Notes + ----- + Specify `count` to improve performance. It allows ``fromiter`` to + pre-allocate the output array, instead of resizing it on demand. + + Examples + -------- + >>> import numpy as np + >>> iterable = (x*x for x in range(5)) + >>> np.fromiter(iterable, float) + array([ 0., 1., 4., 9., 16.]) + + A carefully constructed subarray dtype will lead to higher dimensional + results: + + >>> iterable = ((x+1, x+2) for x in range(5)) + >>> np.fromiter(iterable, dtype=np.dtype((int, 2))) + array([[1, 2], + [2, 3], + [3, 4], + [4, 5], + [5, 6]]) + + + """) + +add_newdoc('numpy._core.multiarray', 'fromfile', + """ + fromfile(file, dtype=float, count=-1, sep='', offset=0, *, like=None) + + Construct an array from data in a text or binary file. + + A highly efficient way of reading binary data with a known data-type, + as well as parsing simply formatted text files. Data written using the + `tofile` method can be read using this function. + + Parameters + ---------- + file : file or str or Path + Open file object or filename. + dtype : data-type + Data type of the returned array. + For binary files, it is used to determine the size and byte-order + of the items in the file. + Most builtin numeric types are supported and extension types may be supported. + count : int + Number of items to read. ``-1`` means all items (i.e., the complete + file). + sep : str + Separator between items if file is a text file. + Empty ("") separator means the file should be treated as binary. + Spaces (" ") in the separator match zero or more whitespace characters. + A separator consisting only of spaces must match at least one + whitespace. + offset : int + The offset (in bytes) from the file's current position. Defaults to 0. + Only permitted for binary files. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + See also + -------- + load, save + ndarray.tofile + loadtxt : More flexible way of loading data from a text file. + + Notes + ----- + Do not rely on the combination of `tofile` and `fromfile` for + data storage, as the binary files generated are not platform + independent. In particular, no byte-order or data-type information is + saved. Data can be stored in the platform independent ``.npy`` format + using `save` and `load` instead. + + Examples + -------- + Construct an ndarray: + + >>> import numpy as np + >>> dt = np.dtype([('time', [('min', np.int64), ('sec', np.int64)]), + ... ('temp', float)]) + >>> x = np.zeros((1,), dtype=dt) + >>> x['time']['min'] = 10; x['temp'] = 98.25 + >>> x + array([((10, 0), 98.25)], + dtype=[('time', [('min', '>> import tempfile + >>> fname = tempfile.mkstemp()[1] + >>> x.tofile(fname) + + Read the raw data from disk: + + >>> np.fromfile(fname, dtype=dt) + array([((10, 0), 98.25)], + dtype=[('time', [('min', '>> np.save(fname, x) + >>> np.load(fname + '.npy') + array([((10, 0), 98.25)], + dtype=[('time', [('min', '>> dt = np.dtype(int) + >>> dt = dt.newbyteorder('>') + >>> np.frombuffer(buf, dtype=dt) # doctest: +SKIP + + The data of the resulting array will not be byteswapped, but will be + interpreted correctly. + + This function creates a view into the original object. This should be safe + in general, but it may make sense to copy the result when the original + object is mutable or untrusted. + + Examples + -------- + >>> import numpy as np + >>> s = b'hello world' + >>> np.frombuffer(s, dtype='S1', count=5, offset=6) + array([b'w', b'o', b'r', b'l', b'd'], dtype='|S1') + + >>> np.frombuffer(b'\\x01\\x02', dtype=np.uint8) + array([1, 2], dtype=uint8) + >>> np.frombuffer(b'\\x01\\x02\\x03\\x04\\x05', dtype=np.uint8, count=3) + array([1, 2, 3], dtype=uint8) + + """) + +add_newdoc('numpy._core.multiarray', 'from_dlpack', + """ + from_dlpack(x, /, *, device=None, copy=None) + + Create a NumPy array from an object implementing the ``__dlpack__`` + protocol. Generally, the returned NumPy array is a view of the input + object. See [1]_ and [2]_ for more details. + + Parameters + ---------- + x : object + A Python object that implements the ``__dlpack__`` and + ``__dlpack_device__`` methods. + device : device, optional + Device on which to place the created array. Default: ``None``. + Must be ``"cpu"`` if passed which may allow importing an array + that is not already CPU available. + copy : bool, optional + Boolean indicating whether or not to copy the input. If ``True``, + the copy will be made. If ``False``, the function will never copy, + and will raise ``BufferError`` in case a copy is deemed necessary. + Passing it requests a copy from the exporter who may or may not + implement the capability. + If ``None``, the function will reuse the existing memory buffer if + possible and copy otherwise. Default: ``None``. + + + Returns + ------- + out : ndarray + + References + ---------- + .. [1] Array API documentation, + https://data-apis.org/array-api/latest/design_topics/data_interchange.html#syntax-for-data-interchange-with-dlpack + + .. [2] Python specification for DLPack, + https://dmlc.github.io/dlpack/latest/python_spec.html + + Examples + -------- + >>> import torch # doctest: +SKIP + >>> x = torch.arange(10) # doctest: +SKIP + >>> # create a view of the torch tensor "x" in NumPy + >>> y = np.from_dlpack(x) # doctest: +SKIP + """) + +add_newdoc('numpy._core.multiarray', 'correlate', + """cross_correlate(a,v, mode=0)""") + +add_newdoc('numpy._core.multiarray', 'arange', + """ + arange([start,] stop[, step,], dtype=None, *, device=None, like=None) + + Return evenly spaced values within a given interval. + + ``arange`` can be called with a varying number of positional arguments: + + * ``arange(stop)``: Values are generated within the half-open interval + ``[0, stop)`` (in other words, the interval including `start` but + excluding `stop`). + * ``arange(start, stop)``: Values are generated within the half-open + interval ``[start, stop)``. + * ``arange(start, stop, step)`` Values are generated within the half-open + interval ``[start, stop)``, with spacing between values given by + ``step``. + + For integer arguments the function is roughly equivalent to the Python + built-in :py:class:`range`, but returns an ndarray rather than a ``range`` + instance. + + When using a non-integer step, such as 0.1, it is often better to use + `numpy.linspace`. + + See the Warning sections below for more information. + + Parameters + ---------- + start : integer or real, optional + Start of interval. The interval includes this value. The default + start value is 0. + stop : integer or real + End of interval. The interval does not include this value, except + in some cases where `step` is not an integer and floating point + round-off affects the length of `out`. + step : integer or real, optional + Spacing between values. For any output `out`, this is the distance + between two adjacent values, ``out[i+1] - out[i]``. The default + step size is 1. If `step` is specified as a position argument, + `start` must also be given. + dtype : dtype, optional + The type of the output array. If `dtype` is not given, infer the data + type from the other input arguments. + device : str, optional + The device on which to place the created array. Default: ``None``. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + arange : ndarray + Array of evenly spaced values. + + For floating point arguments, the length of the result is + ``ceil((stop - start)/step)``. Because of floating point overflow, + this rule may result in the last element of `out` being greater + than `stop`. + + Warnings + -------- + The length of the output might not be numerically stable. + + Another stability issue is due to the internal implementation of + `numpy.arange`. + The actual step value used to populate the array is + ``dtype(start + step) - dtype(start)`` and not `step`. Precision loss + can occur here, due to casting or due to using floating points when + `start` is much larger than `step`. This can lead to unexpected + behaviour. For example:: + + >>> np.arange(0, 5, 0.5, dtype=int) + array([0, 0, 0, 0, 0, 0, 0, 0, 0, 0]) + >>> np.arange(-3, 3, 0.5, dtype=int) + array([-3, -2, -1, 0, 1, 2, 3, 4, 5, 6, 7, 8]) + + In such cases, the use of `numpy.linspace` should be preferred. + + The built-in :py:class:`range` generates :std:doc:`Python built-in integers + that have arbitrary size `, while `numpy.arange` + produces `numpy.int32` or `numpy.int64` numbers. This may result in + incorrect results for large integer values:: + + >>> power = 40 + >>> modulo = 10000 + >>> x1 = [(n ** power) % modulo for n in range(8)] + >>> x2 = [(n ** power) % modulo for n in np.arange(8)] + >>> print(x1) + [0, 1, 7776, 8801, 6176, 625, 6576, 4001] # correct + >>> print(x2) + [0, 1, 7776, 7185, 0, 5969, 4816, 3361] # incorrect + + See Also + -------- + numpy.linspace : Evenly spaced numbers with careful handling of endpoints. + numpy.ogrid: Arrays of evenly spaced numbers in N-dimensions. + numpy.mgrid: Grid-shaped arrays of evenly spaced numbers in N-dimensions. + :ref:`how-to-partition` + + Examples + -------- + >>> import numpy as np + >>> np.arange(3) + array([0, 1, 2]) + >>> np.arange(3.0) + array([ 0., 1., 2.]) + >>> np.arange(3,7) + array([3, 4, 5, 6]) + >>> np.arange(3,7,2) + array([3, 5]) + + """) + +add_newdoc('numpy._core.multiarray', '_get_ndarray_c_version', + """_get_ndarray_c_version() + + Return the compile time NPY_VERSION (formerly called NDARRAY_VERSION) number. + + """) + +add_newdoc('numpy._core.multiarray', '_reconstruct', + """_reconstruct(subtype, shape, dtype) + + Construct an empty array. Used by Pickles. + + """) + +add_newdoc('numpy._core.multiarray', 'promote_types', + """ + promote_types(type1, type2) + + Returns the data type with the smallest size and smallest scalar + kind to which both ``type1`` and ``type2`` may be safely cast. + The returned data type is always considered "canonical", this mainly + means that the promoted dtype will always be in native byte order. + + This function is symmetric, but rarely associative. + + Parameters + ---------- + type1 : dtype or dtype specifier + First data type. + type2 : dtype or dtype specifier + Second data type. + + Returns + ------- + out : dtype + The promoted data type. + + Notes + ----- + Please see `numpy.result_type` for additional information about promotion. + + Starting in NumPy 1.9, promote_types function now returns a valid string + length when given an integer or float dtype as one argument and a string + dtype as another argument. Previously it always returned the input string + dtype, even if it wasn't long enough to store the max integer/float value + converted to a string. + + .. versionchanged:: 1.23.0 + + NumPy now supports promotion for more structured dtypes. It will now + remove unnecessary padding from a structure dtype and promote included + fields individually. + + See Also + -------- + result_type, dtype, can_cast + + Examples + -------- + >>> import numpy as np + >>> np.promote_types('f4', 'f8') + dtype('float64') + + >>> np.promote_types('i8', 'f4') + dtype('float64') + + >>> np.promote_types('>i8', '>> np.promote_types('i4', 'S8') + dtype('S11') + + An example of a non-associative case: + + >>> p = np.promote_types + >>> p('S', p('i1', 'u1')) + dtype('S6') + >>> p(p('S', 'i1'), 'u1') + dtype('S4') + + """) + +add_newdoc('numpy._core.multiarray', 'c_einsum', + """ + c_einsum(subscripts, *operands, out=None, dtype=None, order='K', + casting='safe') + + *This documentation shadows that of the native python implementation of the `einsum` function, + except all references and examples related to the `optimize` argument (v 0.12.0) have been removed.* + + Evaluates the Einstein summation convention on the operands. + + Using the Einstein summation convention, many common multi-dimensional, + linear algebraic array operations can be represented in a simple fashion. + In *implicit* mode `einsum` computes these values. + + In *explicit* mode, `einsum` provides further flexibility to compute + other array operations that might not be considered classical Einstein + summation operations, by disabling, or forcing summation over specified + subscript labels. + + See the notes and examples for clarification. + + Parameters + ---------- + subscripts : str + Specifies the subscripts for summation as comma separated list of + subscript labels. An implicit (classical Einstein summation) + calculation is performed unless the explicit indicator '->' is + included as well as subscript labels of the precise output form. + operands : list of array_like + These are the arrays for the operation. + out : ndarray, optional + If provided, the calculation is done into this array. + dtype : {data-type, None}, optional + If provided, forces the calculation to use the data type specified. + Note that you may have to also give a more liberal `casting` + parameter to allow the conversions. Default is None. + order : {'C', 'F', 'A', 'K'}, optional + Controls the memory layout of the output. 'C' means it should + be C contiguous. 'F' means it should be Fortran contiguous, + 'A' means it should be 'F' if the inputs are all 'F', 'C' otherwise. + 'K' means it should be as close to the layout of the inputs as + is possible, including arbitrarily permuted axes. + Default is 'K'. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Setting this to + 'unsafe' is not recommended, as it can adversely affect accumulations. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + + Default is 'safe'. + optimize : {False, True, 'greedy', 'optimal'}, optional + Controls if intermediate optimization should occur. No optimization + will occur if False and True will default to the 'greedy' algorithm. + Also accepts an explicit contraction list from the ``np.einsum_path`` + function. See ``np.einsum_path`` for more details. Defaults to False. + + Returns + ------- + output : ndarray + The calculation based on the Einstein summation convention. + + See Also + -------- + einsum_path, dot, inner, outer, tensordot, linalg.multi_dot + + Notes + ----- + The Einstein summation convention can be used to compute + many multi-dimensional, linear algebraic array operations. `einsum` + provides a succinct way of representing these. + + A non-exhaustive list of these operations, + which can be computed by `einsum`, is shown below along with examples: + + * Trace of an array, :py:func:`numpy.trace`. + * Return a diagonal, :py:func:`numpy.diag`. + * Array axis summations, :py:func:`numpy.sum`. + * Transpositions and permutations, :py:func:`numpy.transpose`. + * Matrix multiplication and dot product, :py:func:`numpy.matmul` :py:func:`numpy.dot`. + * Vector inner and outer products, :py:func:`numpy.inner` :py:func:`numpy.outer`. + * Broadcasting, element-wise and scalar multiplication, :py:func:`numpy.multiply`. + * Tensor contractions, :py:func:`numpy.tensordot`. + * Chained array operations, in efficient calculation order, :py:func:`numpy.einsum_path`. + + The subscripts string is a comma-separated list of subscript labels, + where each label refers to a dimension of the corresponding operand. + Whenever a label is repeated it is summed, so ``np.einsum('i,i', a, b)`` + is equivalent to :py:func:`np.inner(a,b) `. If a label + appears only once, it is not summed, so ``np.einsum('i', a)`` produces a + view of ``a`` with no changes. A further example ``np.einsum('ij,jk', a, b)`` + describes traditional matrix multiplication and is equivalent to + :py:func:`np.matmul(a,b) `. Repeated subscript labels in one + operand take the diagonal. For example, ``np.einsum('ii', a)`` is equivalent + to :py:func:`np.trace(a) `. + + In *implicit mode*, the chosen subscripts are important + since the axes of the output are reordered alphabetically. This + means that ``np.einsum('ij', a)`` doesn't affect a 2D array, while + ``np.einsum('ji', a)`` takes its transpose. Additionally, + ``np.einsum('ij,jk', a, b)`` returns a matrix multiplication, while, + ``np.einsum('ij,jh', a, b)`` returns the transpose of the + multiplication since subscript 'h' precedes subscript 'i'. + + In *explicit mode* the output can be directly controlled by + specifying output subscript labels. This requires the + identifier '->' as well as the list of output subscript labels. + This feature increases the flexibility of the function since + summing can be disabled or forced when required. The call + ``np.einsum('i->', a)`` is like :py:func:`np.sum(a) ` + if ``a`` is a 1-D array, and ``np.einsum('ii->i', a)`` + is like :py:func:`np.diag(a) ` if ``a`` is a square 2-D array. + The difference is that `einsum` does not allow broadcasting by default. + Additionally ``np.einsum('ij,jh->ih', a, b)`` directly specifies the + order of the output subscript labels and therefore returns matrix + multiplication, unlike the example above in implicit mode. + + To enable and control broadcasting, use an ellipsis. Default + NumPy-style broadcasting is done by adding an ellipsis + to the left of each term, like ``np.einsum('...ii->...i', a)``. + ``np.einsum('...i->...', a)`` is like + :py:func:`np.sum(a, axis=-1) ` for array ``a`` of any shape. + To take the trace along the first and last axes, + you can do ``np.einsum('i...i', a)``, or to do a matrix-matrix + product with the left-most indices instead of rightmost, one can do + ``np.einsum('ij...,jk...->ik...', a, b)``. + + When there is only one operand, no axes are summed, and no output + parameter is provided, a view into the operand is returned instead + of a new array. Thus, taking the diagonal as ``np.einsum('ii->i', a)`` + produces a view (changed in version 1.10.0). + + `einsum` also provides an alternative way to provide the subscripts + and operands as ``einsum(op0, sublist0, op1, sublist1, ..., [sublistout])``. + If the output shape is not provided in this format `einsum` will be + calculated in implicit mode, otherwise it will be performed explicitly. + The examples below have corresponding `einsum` calls with the two + parameter methods. + + Views returned from einsum are now writeable whenever the input array + is writeable. For example, ``np.einsum('ijk...->kji...', a)`` will now + have the same effect as :py:func:`np.swapaxes(a, 0, 2) ` + and ``np.einsum('ii->i', a)`` will return a writeable view of the diagonal + of a 2D array. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(25).reshape(5,5) + >>> b = np.arange(5) + >>> c = np.arange(6).reshape(2,3) + + Trace of a matrix: + + >>> np.einsum('ii', a) + 60 + >>> np.einsum(a, [0,0]) + 60 + >>> np.trace(a) + 60 + + Extract the diagonal (requires explicit form): + + >>> np.einsum('ii->i', a) + array([ 0, 6, 12, 18, 24]) + >>> np.einsum(a, [0,0], [0]) + array([ 0, 6, 12, 18, 24]) + >>> np.diag(a) + array([ 0, 6, 12, 18, 24]) + + Sum over an axis (requires explicit form): + + >>> np.einsum('ij->i', a) + array([ 10, 35, 60, 85, 110]) + >>> np.einsum(a, [0,1], [0]) + array([ 10, 35, 60, 85, 110]) + >>> np.sum(a, axis=1) + array([ 10, 35, 60, 85, 110]) + + For higher dimensional arrays summing a single axis can be done with ellipsis: + + >>> np.einsum('...j->...', a) + array([ 10, 35, 60, 85, 110]) + >>> np.einsum(a, [Ellipsis,1], [Ellipsis]) + array([ 10, 35, 60, 85, 110]) + + Compute a matrix transpose, or reorder any number of axes: + + >>> np.einsum('ji', c) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.einsum('ij->ji', c) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.einsum(c, [1,0]) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.transpose(c) + array([[0, 3], + [1, 4], + [2, 5]]) + + Vector inner products: + + >>> np.einsum('i,i', b, b) + 30 + >>> np.einsum(b, [0], b, [0]) + 30 + >>> np.inner(b,b) + 30 + + Matrix vector multiplication: + + >>> np.einsum('ij,j', a, b) + array([ 30, 80, 130, 180, 230]) + >>> np.einsum(a, [0,1], b, [1]) + array([ 30, 80, 130, 180, 230]) + >>> np.dot(a, b) + array([ 30, 80, 130, 180, 230]) + >>> np.einsum('...j,j', a, b) + array([ 30, 80, 130, 180, 230]) + + Broadcasting and scalar multiplication: + + >>> np.einsum('..., ...', 3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.einsum(',ij', 3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.einsum(3, [Ellipsis], c, [Ellipsis]) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.multiply(3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + + Vector outer product: + + >>> np.einsum('i,j', np.arange(2)+1, b) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + >>> np.einsum(np.arange(2)+1, [0], b, [1]) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + >>> np.outer(np.arange(2)+1, b) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + + Tensor contraction: + + >>> a = np.arange(60.).reshape(3,4,5) + >>> b = np.arange(24.).reshape(4,3,2) + >>> np.einsum('ijk,jil->kl', a, b) + array([[ 4400., 4730.], + [ 4532., 4874.], + [ 4664., 5018.], + [ 4796., 5162.], + [ 4928., 5306.]]) + >>> np.einsum(a, [0,1,2], b, [1,0,3], [2,3]) + array([[ 4400., 4730.], + [ 4532., 4874.], + [ 4664., 5018.], + [ 4796., 5162.], + [ 4928., 5306.]]) + >>> np.tensordot(a,b, axes=([1,0],[0,1])) + array([[ 4400., 4730.], + [ 4532., 4874.], + [ 4664., 5018.], + [ 4796., 5162.], + [ 4928., 5306.]]) + + Writeable returned arrays (since version 1.10.0): + + >>> a = np.zeros((3, 3)) + >>> np.einsum('ii->i', a)[:] = 1 + >>> a + array([[ 1., 0., 0.], + [ 0., 1., 0.], + [ 0., 0., 1.]]) + + Example of ellipsis use: + + >>> a = np.arange(6).reshape((3,2)) + >>> b = np.arange(12).reshape((4,3)) + >>> np.einsum('ki,jk->ij', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + >>> np.einsum('ki,...k->i...', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + >>> np.einsum('k...,jk', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + + """) + + +############################################################################## +# +# Documentation for ndarray attributes and methods +# +############################################################################## + + +############################################################################## +# +# ndarray object +# +############################################################################## + + +add_newdoc('numpy._core.multiarray', 'ndarray', + """ + ndarray(shape, dtype=float, buffer=None, offset=0, + strides=None, order=None) + + An array object represents a multidimensional, homogeneous array + of fixed-size items. An associated data-type object describes the + format of each element in the array (its byte-order, how many bytes it + occupies in memory, whether it is an integer, a floating point number, + or something else, etc.) + + Arrays should be constructed using `array`, `zeros` or `empty` (refer + to the See Also section below). The parameters given here refer to + a low-level method (`ndarray(...)`) for instantiating an array. + + For more information, refer to the `numpy` module and examine the + methods and attributes of an array. + + Parameters + ---------- + (for the __new__ method; see Notes below) + + shape : tuple of ints + Shape of created array. + dtype : data-type, optional + Any object that can be interpreted as a numpy data type. + buffer : object exposing buffer interface, optional + Used to fill the array with data. + offset : int, optional + Offset of array data in buffer. + strides : tuple of ints, optional + Strides of data in memory. + order : {'C', 'F'}, optional + Row-major (C-style) or column-major (Fortran-style) order. + + Attributes + ---------- + T : ndarray + Transpose of the array. + data : buffer + The array's elements, in memory. + dtype : dtype object + Describes the format of the elements in the array. + flags : dict + Dictionary containing information related to memory use, e.g., + 'C_CONTIGUOUS', 'OWNDATA', 'WRITEABLE', etc. + flat : numpy.flatiter object + Flattened version of the array as an iterator. The iterator + allows assignments, e.g., ``x.flat = 3`` (See `ndarray.flat` for + assignment examples; TODO). + imag : ndarray + Imaginary part of the array. + real : ndarray + Real part of the array. + size : int + Number of elements in the array. + itemsize : int + The memory use of each array element in bytes. + nbytes : int + The total number of bytes required to store the array data, + i.e., ``itemsize * size``. + ndim : int + The array's number of dimensions. + shape : tuple of ints + Shape of the array. + strides : tuple of ints + The step-size required to move from one element to the next in + memory. For example, a contiguous ``(3, 4)`` array of type + ``int16`` in C-order has strides ``(8, 2)``. This implies that + to move from element to element in memory requires jumps of 2 bytes. + To move from row-to-row, one needs to jump 8 bytes at a time + (``2 * 4``). + ctypes : ctypes object + Class containing properties of the array needed for interaction + with ctypes. + base : ndarray + If the array is a view into another array, that array is its `base` + (unless that array is also a view). The `base` array is where the + array data is actually stored. + + See Also + -------- + array : Construct an array. + zeros : Create an array, each element of which is zero. + empty : Create an array, but leave its allocated memory unchanged (i.e., + it contains "garbage"). + dtype : Create a data-type. + numpy.typing.NDArray : An ndarray alias :term:`generic ` + w.r.t. its `dtype.type `. + + Notes + ----- + There are two modes of creating an array using ``__new__``: + + 1. If `buffer` is None, then only `shape`, `dtype`, and `order` + are used. + 2. If `buffer` is an object exposing the buffer interface, then + all keywords are interpreted. + + No ``__init__`` method is needed because the array is fully initialized + after the ``__new__`` method. + + Examples + -------- + These examples illustrate the low-level `ndarray` constructor. Refer + to the `See Also` section above for easier ways of constructing an + ndarray. + + First mode, `buffer` is None: + + >>> import numpy as np + >>> np.ndarray(shape=(2,2), dtype=float, order='F') + array([[0.0e+000, 0.0e+000], # random + [ nan, 2.5e-323]]) + + Second mode: + + >>> np.ndarray((2,), buffer=np.array([1,2,3]), + ... offset=np.int_().itemsize, + ... dtype=int) # offset = 1*itemsize, i.e. skip first element + array([2, 3]) + + """) + + +############################################################################## +# +# ndarray attributes +# +############################################################################## + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array_interface__', + """Array protocol: Python side.""")) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array_priority__', + """Array priority.""")) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array_struct__', + """Array protocol: C-struct side.""")) + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__dlpack__', + """ + a.__dlpack__(*, stream=None, max_version=None, dl_device=None, copy=None) + + DLPack Protocol: Part of the Array API. + + """)) + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__dlpack_device__', + """ + a.__dlpack_device__() + + DLPack Protocol: Part of the Array API. + + """)) + +add_newdoc('numpy._core.multiarray', 'ndarray', ('base', + """ + Base object if memory is from some other object. + + Examples + -------- + The base of an array that owns its memory is None: + + >>> import numpy as np + >>> x = np.array([1,2,3,4]) + >>> x.base is None + True + + Slicing creates a view, whose memory is shared with x: + + >>> y = x[2:] + >>> y.base is x + True + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('ctypes', + """ + An object to simplify the interaction of the array with the ctypes + module. + + This attribute creates an object that makes it easier to use arrays + when calling shared libraries with the ctypes module. The returned + object has, among others, data, shape, and strides attributes (see + Notes below) which themselves return ctypes objects that can be used + as arguments to a shared library. + + Parameters + ---------- + None + + Returns + ------- + c : Python object + Possessing attributes data, shape, strides, etc. + + See Also + -------- + numpy.ctypeslib + + Notes + ----- + Below are the public attributes of this object which were documented + in "Guide to NumPy" (we have omitted undocumented public attributes, + as well as documented private attributes): + + .. autoattribute:: numpy._core._internal._ctypes.data + :noindex: + + .. autoattribute:: numpy._core._internal._ctypes.shape + :noindex: + + .. autoattribute:: numpy._core._internal._ctypes.strides + :noindex: + + .. automethod:: numpy._core._internal._ctypes.data_as + :noindex: + + .. automethod:: numpy._core._internal._ctypes.shape_as + :noindex: + + .. automethod:: numpy._core._internal._ctypes.strides_as + :noindex: + + If the ctypes module is not available, then the ctypes attribute + of array objects still returns something useful, but ctypes objects + are not returned and errors may be raised instead. In particular, + the object will still have the ``as_parameter`` attribute which will + return an integer equal to the data attribute. + + Examples + -------- + >>> import numpy as np + >>> import ctypes + >>> x = np.array([[0, 1], [2, 3]], dtype=np.int32) + >>> x + array([[0, 1], + [2, 3]], dtype=int32) + >>> x.ctypes.data + 31962608 # may vary + >>> x.ctypes.data_as(ctypes.POINTER(ctypes.c_uint32)) + <__main__.LP_c_uint object at 0x7ff2fc1fc200> # may vary + >>> x.ctypes.data_as(ctypes.POINTER(ctypes.c_uint32)).contents + c_uint(0) + >>> x.ctypes.data_as(ctypes.POINTER(ctypes.c_uint64)).contents + c_ulong(4294967296) + >>> x.ctypes.shape + # may vary + >>> x.ctypes.strides + # may vary + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('data', + """Python buffer object pointing to the start of the array's data.""")) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('dtype', + """ + Data-type of the array's elements. + + .. warning:: + + Setting ``arr.dtype`` is discouraged and may be deprecated in the + future. Setting will replace the ``dtype`` without modifying the + memory (see also `ndarray.view` and `ndarray.astype`). + + Parameters + ---------- + None + + Returns + ------- + d : numpy dtype object + + See Also + -------- + ndarray.astype : Cast the values contained in the array to a new data-type. + ndarray.view : Create a view of the same data but a different data-type. + numpy.dtype + + Examples + -------- + >>> x + array([[0, 1], + [2, 3]]) + >>> x.dtype + dtype('int32') + >>> type(x.dtype) + + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('imag', + """ + The imaginary part of the array. + + Examples + -------- + >>> import numpy as np + >>> x = np.sqrt([1+0j, 0+1j]) + >>> x.imag + array([ 0. , 0.70710678]) + >>> x.imag.dtype + dtype('float64') + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('itemsize', + """ + Length of one array element in bytes. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1,2,3], dtype=np.float64) + >>> x.itemsize + 8 + >>> x = np.array([1,2,3], dtype=np.complex128) + >>> x.itemsize + 16 + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('flags', + """ + Information about the memory layout of the array. + + Attributes + ---------- + C_CONTIGUOUS (C) + The data is in a single, C-style contiguous segment. + F_CONTIGUOUS (F) + The data is in a single, Fortran-style contiguous segment. + OWNDATA (O) + The array owns the memory it uses or borrows it from another object. + WRITEABLE (W) + The data area can be written to. Setting this to False locks + the data, making it read-only. A view (slice, etc.) inherits WRITEABLE + from its base array at creation time, but a view of a writeable + array may be subsequently locked while the base array remains writeable. + (The opposite is not true, in that a view of a locked array may not + be made writeable. However, currently, locking a base object does not + lock any views that already reference it, so under that circumstance it + is possible to alter the contents of a locked array via a previously + created writeable view onto it.) Attempting to change a non-writeable + array raises a RuntimeError exception. + ALIGNED (A) + The data and all elements are aligned appropriately for the hardware. + WRITEBACKIFCOPY (X) + This array is a copy of some other array. The C-API function + PyArray_ResolveWritebackIfCopy must be called before deallocating + to the base array will be updated with the contents of this array. + FNC + F_CONTIGUOUS and not C_CONTIGUOUS. + FORC + F_CONTIGUOUS or C_CONTIGUOUS (one-segment test). + BEHAVED (B) + ALIGNED and WRITEABLE. + CARRAY (CA) + BEHAVED and C_CONTIGUOUS. + FARRAY (FA) + BEHAVED and F_CONTIGUOUS and not C_CONTIGUOUS. + + Notes + ----- + The `flags` object can be accessed dictionary-like (as in ``a.flags['WRITEABLE']``), + or by using lowercased attribute names (as in ``a.flags.writeable``). Short flag + names are only supported in dictionary access. + + Only the WRITEBACKIFCOPY, WRITEABLE, and ALIGNED flags can be + changed by the user, via direct assignment to the attribute or dictionary + entry, or by calling `ndarray.setflags`. + + The array flags cannot be set arbitrarily: + + - WRITEBACKIFCOPY can only be set ``False``. + - ALIGNED can only be set ``True`` if the data is truly aligned. + - WRITEABLE can only be set ``True`` if the array owns its own memory + or the ultimate owner of the memory exposes a writeable buffer + interface or is a string. + + Arrays can be both C-style and Fortran-style contiguous simultaneously. + This is clear for 1-dimensional arrays, but can also be true for higher + dimensional arrays. + + Even for contiguous arrays a stride for a given dimension + ``arr.strides[dim]`` may be *arbitrary* if ``arr.shape[dim] == 1`` + or the array has no elements. + It does *not* generally hold that ``self.strides[-1] == self.itemsize`` + for C-style contiguous arrays or ``self.strides[0] == self.itemsize`` for + Fortran-style contiguous arrays is true. + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('flat', + """ + A 1-D iterator over the array. + + This is a `numpy.flatiter` instance, which acts similarly to, but is not + a subclass of, Python's built-in iterator object. + + See Also + -------- + flatten : Return a copy of the array collapsed into one dimension. + + flatiter + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(1, 7).reshape(2, 3) + >>> x + array([[1, 2, 3], + [4, 5, 6]]) + >>> x.flat[3] + 4 + >>> x.T + array([[1, 4], + [2, 5], + [3, 6]]) + >>> x.T.flat[3] + 5 + >>> type(x.flat) + + + An assignment example: + + >>> x.flat = 3; x + array([[3, 3, 3], + [3, 3, 3]]) + >>> x.flat[[1,4]] = 1; x + array([[3, 1, 3], + [3, 1, 3]]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('nbytes', + """ + Total bytes consumed by the elements of the array. + + Notes + ----- + Does not include memory consumed by non-element attributes of the + array object. + + See Also + -------- + sys.getsizeof + Memory consumed by the object itself without parents in case view. + This does include memory consumed by non-element attributes. + + Examples + -------- + >>> import numpy as np + >>> x = np.zeros((3,5,2), dtype=np.complex128) + >>> x.nbytes + 480 + >>> np.prod(x.shape) * x.itemsize + 480 + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('ndim', + """ + Number of array dimensions. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3]) + >>> x.ndim + 1 + >>> y = np.zeros((2, 3, 4)) + >>> y.ndim + 3 + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('real', + """ + The real part of the array. + + Examples + -------- + >>> import numpy as np + >>> x = np.sqrt([1+0j, 0+1j]) + >>> x.real + array([ 1. , 0.70710678]) + >>> x.real.dtype + dtype('float64') + + See Also + -------- + numpy.real : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('shape', + """ + Tuple of array dimensions. + + The shape property is usually used to get the current shape of an array, + but may also be used to reshape the array in-place by assigning a tuple of + array dimensions to it. As with `numpy.reshape`, one of the new shape + dimensions can be -1, in which case its value is inferred from the size of + the array and the remaining dimensions. Reshaping an array in-place will + fail if a copy is required. + + .. warning:: + + Setting ``arr.shape`` is discouraged and may be deprecated in the + future. Using `ndarray.reshape` is the preferred approach. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3, 4]) + >>> x.shape + (4,) + >>> y = np.zeros((2, 3, 4)) + >>> y.shape + (2, 3, 4) + >>> y.shape = (3, 8) + >>> y + array([[ 0., 0., 0., 0., 0., 0., 0., 0.], + [ 0., 0., 0., 0., 0., 0., 0., 0.], + [ 0., 0., 0., 0., 0., 0., 0., 0.]]) + >>> y.shape = (3, 6) + Traceback (most recent call last): + File "", line 1, in + ValueError: total size of new array must be unchanged + >>> np.zeros((4,2))[::2].shape = (-1,) + Traceback (most recent call last): + File "", line 1, in + AttributeError: Incompatible shape for in-place modification. Use + `.reshape()` to make a copy with the desired shape. + + See Also + -------- + numpy.shape : Equivalent getter function. + numpy.reshape : Function similar to setting ``shape``. + ndarray.reshape : Method similar to setting ``shape``. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('size', + """ + Number of elements in the array. + + Equal to ``np.prod(a.shape)``, i.e., the product of the array's + dimensions. + + Notes + ----- + `a.size` returns a standard arbitrary precision Python integer. This + may not be the case with other methods of obtaining the same value + (like the suggested ``np.prod(a.shape)``, which returns an instance + of ``np.int_``), and may be relevant if the value is used further in + calculations that may overflow a fixed size integer type. + + Examples + -------- + >>> import numpy as np + >>> x = np.zeros((3, 5, 2), dtype=np.complex128) + >>> x.size + 30 + >>> np.prod(x.shape) + 30 + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('strides', + """ + Tuple of bytes to step in each dimension when traversing an array. + + The byte offset of element ``(i[0], i[1], ..., i[n])`` in an array `a` + is:: + + offset = sum(np.array(i) * a.strides) + + A more detailed explanation of strides can be found in + :ref:`arrays.ndarray`. + + .. warning:: + + Setting ``arr.strides`` is discouraged and may be deprecated in the + future. `numpy.lib.stride_tricks.as_strided` should be preferred + to create a new view of the same data in a safer way. + + Notes + ----- + Imagine an array of 32-bit integers (each 4 bytes):: + + x = np.array([[0, 1, 2, 3, 4], + [5, 6, 7, 8, 9]], dtype=np.int32) + + This array is stored in memory as 40 bytes, one after the other + (known as a contiguous block of memory). The strides of an array tell + us how many bytes we have to skip in memory to move to the next position + along a certain axis. For example, we have to skip 4 bytes (1 value) to + move to the next column, but 20 bytes (5 values) to get to the same + position in the next row. As such, the strides for the array `x` will be + ``(20, 4)``. + + See Also + -------- + numpy.lib.stride_tricks.as_strided + + Examples + -------- + >>> import numpy as np + >>> y = np.reshape(np.arange(2*3*4), (2,3,4)) + >>> y + array([[[ 0, 1, 2, 3], + [ 4, 5, 6, 7], + [ 8, 9, 10, 11]], + [[12, 13, 14, 15], + [16, 17, 18, 19], + [20, 21, 22, 23]]]) + >>> y.strides + (48, 16, 4) + >>> y[1,1,1] + 17 + >>> offset=sum(y.strides * np.array((1,1,1))) + >>> offset/y.itemsize + 17 + + >>> x = np.reshape(np.arange(5*6*7*8), (5,6,7,8)).transpose(2,3,1,0) + >>> x.strides + (32, 4, 224, 1344) + >>> i = np.array([3,5,2,2]) + >>> offset = sum(i * x.strides) + >>> x[3,5,2,2] + 813 + >>> offset / x.itemsize + 813 + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('T', + """ + View of the transposed array. + + Same as ``self.transpose()``. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> a + array([[1, 2], + [3, 4]]) + >>> a.T + array([[1, 3], + [2, 4]]) + + >>> a = np.array([1, 2, 3, 4]) + >>> a + array([1, 2, 3, 4]) + >>> a.T + array([1, 2, 3, 4]) + + See Also + -------- + transpose + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('mT', + """ + View of the matrix transposed array. + + The matrix transpose is the transpose of the last two dimensions, even + if the array is of higher dimension. + + .. versionadded:: 2.0 + + Raises + ------ + ValueError + If the array is of dimension less than 2. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> a + array([[1, 2], + [3, 4]]) + >>> a.mT + array([[1, 3], + [2, 4]]) + + >>> a = np.arange(8).reshape((2, 2, 2)) + >>> a + array([[[0, 1], + [2, 3]], + + [[4, 5], + [6, 7]]]) + >>> a.mT + array([[[0, 2], + [1, 3]], + + [[4, 6], + [5, 7]]]) + + """)) +############################################################################## +# +# ndarray methods +# +############################################################################## + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array__', + """ + a.__array__([dtype], *, copy=None) + + For ``dtype`` parameter it returns a new reference to self if + ``dtype`` is not given or it matches array's data type. + A new array of provided data type is returned if ``dtype`` + is different from the current data type of the array. + For ``copy`` parameter it returns a new reference to self if + ``copy=False`` or ``copy=None`` and copying isn't enforced by ``dtype`` + parameter. The method returns a new array for ``copy=True``, regardless of + ``dtype`` parameter. + + A more detailed explanation of the ``__array__`` interface + can be found in :ref:`dunder_array.interface`. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array_finalize__', + """ + a.__array_finalize__(obj, /) + + Present so subclasses can call super. Does nothing. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__array_wrap__', + """ + a.__array_wrap__(array[, context], /) + + Returns a view of `array` with the same type as self. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__copy__', + """ + a.__copy__() + + Used if :func:`copy.copy` is called on an array. Returns a copy of the array. + + Equivalent to ``a.copy(order='K')``. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__class_getitem__', + """ + a.__class_getitem__(item, /) + + Return a parametrized wrapper around the `~numpy.ndarray` type. + + .. versionadded:: 1.22 + + Returns + ------- + alias : types.GenericAlias + A parametrized `~numpy.ndarray` type. + + Examples + -------- + >>> from typing import Any + >>> import numpy as np + + >>> np.ndarray[Any, np.dtype[Any]] + numpy.ndarray[typing.Any, numpy.dtype[typing.Any]] + + See Also + -------- + :pep:`585` : Type hinting generics in standard collections. + numpy.typing.NDArray : An ndarray alias :term:`generic ` + w.r.t. its `dtype.type `. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__deepcopy__', + """ + a.__deepcopy__(memo, /) + + Used if :func:`copy.deepcopy` is called on an array. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__reduce__', + """ + a.__reduce__() + + For pickling. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('__setstate__', + """ + a.__setstate__(state, /) + + For unpickling. + + The `state` argument must be a sequence that contains the following + elements: + + Parameters + ---------- + version : int + optional pickle version. If omitted defaults to 0. + shape : tuple + dtype : data-type + isFortran : bool + rawdata : string or list + a binary string with the data (or a list if 'a' is an object array) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('all', + """ + a.all(axis=None, out=None, keepdims=False, *, where=True) + + Returns True if all elements evaluate to True. + + Refer to `numpy.all` for full documentation. + + See Also + -------- + numpy.all : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('any', + """ + a.any(axis=None, out=None, keepdims=False, *, where=True) + + Returns True if any of the elements of `a` evaluate to True. + + Refer to `numpy.any` for full documentation. + + See Also + -------- + numpy.any : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('argmax', + """ + a.argmax(axis=None, out=None, *, keepdims=False) + + Return indices of the maximum values along the given axis. + + Refer to `numpy.argmax` for full documentation. + + See Also + -------- + numpy.argmax : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('argmin', + """ + a.argmin(axis=None, out=None, *, keepdims=False) + + Return indices of the minimum values along the given axis. + + Refer to `numpy.argmin` for detailed documentation. + + See Also + -------- + numpy.argmin : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('argsort', + """ + a.argsort(axis=-1, kind=None, order=None) + + Returns the indices that would sort this array. + + Refer to `numpy.argsort` for full documentation. + + See Also + -------- + numpy.argsort : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('argpartition', + """ + a.argpartition(kth, axis=-1, kind='introselect', order=None) + + Returns the indices that would partition this array. + + Refer to `numpy.argpartition` for full documentation. + + See Also + -------- + numpy.argpartition : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('astype', + """ + a.astype(dtype, order='K', casting='unsafe', subok=True, copy=True) + + Copy of the array, cast to a specified type. + + Parameters + ---------- + dtype : str or dtype + Typecode or data-type to which the array is cast. + order : {'C', 'F', 'A', 'K'}, optional + Controls the memory layout order of the result. + 'C' means C order, 'F' means Fortran order, 'A' + means 'F' order if all the arrays are Fortran contiguous, + 'C' order otherwise, and 'K' means as close to the + order the array elements appear in memory as possible. + Default is 'K'. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Defaults to 'unsafe' + for backwards compatibility. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + subok : bool, optional + If True, then sub-classes will be passed-through (default), otherwise + the returned array will be forced to be a base-class array. + copy : bool, optional + By default, astype always returns a newly allocated array. If this + is set to false, and the `dtype`, `order`, and `subok` + requirements are satisfied, the input array is returned instead + of a copy. + + Returns + ------- + arr_t : ndarray + Unless `copy` is False and the other conditions for returning the input + array are satisfied (see description for `copy` input parameter), `arr_t` + is a new array of the same shape as the input array, with dtype, order + given by `dtype`, `order`. + + Raises + ------ + ComplexWarning + When casting from complex to float or int. To avoid this, + one should use ``a.real.astype(t)``. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 2.5]) + >>> x + array([1. , 2. , 2.5]) + + >>> x.astype(int) + array([1, 2, 2]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('byteswap', + """ + a.byteswap(inplace=False) + + Swap the bytes of the array elements + + Toggle between low-endian and big-endian data representation by + returning a byteswapped array, optionally swapped in-place. + Arrays of byte-strings are not swapped. The real and imaginary + parts of a complex number are swapped individually. + + Parameters + ---------- + inplace : bool, optional + If ``True``, swap bytes in-place, default is ``False``. + + Returns + ------- + out : ndarray + The byteswapped array. If `inplace` is ``True``, this is + a view to self. + + Examples + -------- + >>> import numpy as np + >>> A = np.array([1, 256, 8755], dtype=np.int16) + >>> list(map(hex, A)) + ['0x1', '0x100', '0x2233'] + >>> A.byteswap(inplace=True) + array([ 256, 1, 13090], dtype=int16) + >>> list(map(hex, A)) + ['0x100', '0x1', '0x3322'] + + Arrays of byte-strings are not swapped + + >>> A = np.array([b'ceg', b'fac']) + >>> A.byteswap() + array([b'ceg', b'fac'], dtype='|S3') + + ``A.view(A.dtype.newbyteorder()).byteswap()`` produces an array with + the same values but different representation in memory + + >>> A = np.array([1, 2, 3],dtype=np.int64) + >>> A.view(np.uint8) + array([1, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, 0, 3, 0, 0, 0, 0, 0, + 0, 0], dtype=uint8) + >>> A.view(A.dtype.newbyteorder()).byteswap(inplace=True) + array([1, 2, 3], dtype='>i8') + >>> A.view(np.uint8) + array([0, 0, 0, 0, 0, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0, 2, 0, 0, 0, 0, 0, 0, + 0, 3], dtype=uint8) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('choose', + """ + a.choose(choices, out=None, mode='raise') + + Use an index array to construct a new array from a set of choices. + + Refer to `numpy.choose` for full documentation. + + See Also + -------- + numpy.choose : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('clip', + """ + a.clip(min=None, max=None, out=None, **kwargs) + + Return an array whose values are limited to ``[min, max]``. + One of max or min must be given. + + Refer to `numpy.clip` for full documentation. + + See Also + -------- + numpy.clip : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('compress', + """ + a.compress(condition, axis=None, out=None) + + Return selected slices of this array along given axis. + + Refer to `numpy.compress` for full documentation. + + See Also + -------- + numpy.compress : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('conj', + """ + a.conj() + + Complex-conjugate all elements. + + Refer to `numpy.conjugate` for full documentation. + + See Also + -------- + numpy.conjugate : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('conjugate', + """ + a.conjugate() + + Return the complex conjugate, element-wise. + + Refer to `numpy.conjugate` for full documentation. + + See Also + -------- + numpy.conjugate : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('copy', + """ + a.copy(order='C') + + Return a copy of the array. + + Parameters + ---------- + order : {'C', 'F', 'A', 'K'}, optional + Controls the memory layout of the copy. 'C' means C-order, + 'F' means F-order, 'A' means 'F' if `a` is Fortran contiguous, + 'C' otherwise. 'K' means match the layout of `a` as closely + as possible. (Note that this function and :func:`numpy.copy` are very + similar but have different default values for their order= + arguments, and this function always passes sub-classes through.) + + See also + -------- + numpy.copy : Similar function with different default behavior + numpy.copyto + + Notes + ----- + This function is the preferred method for creating an array copy. The + function :func:`numpy.copy` is similar, but it defaults to using order 'K', + and will not pass sub-classes through by default. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[1,2,3],[4,5,6]], order='F') + + >>> y = x.copy() + + >>> x.fill(0) + + >>> x + array([[0, 0, 0], + [0, 0, 0]]) + + >>> y + array([[1, 2, 3], + [4, 5, 6]]) + + >>> y.flags['C_CONTIGUOUS'] + True + + For arrays containing Python objects (e.g. dtype=object), + the copy is a shallow one. The new array will contain the + same object which may lead to surprises if that object can + be modified (is mutable): + + >>> a = np.array([1, 'm', [2, 3, 4]], dtype=object) + >>> b = a.copy() + >>> b[2][0] = 10 + >>> a + array([1, 'm', list([10, 3, 4])], dtype=object) + + To ensure all elements within an ``object`` array are copied, + use `copy.deepcopy`: + + >>> import copy + >>> a = np.array([1, 'm', [2, 3, 4]], dtype=object) + >>> c = copy.deepcopy(a) + >>> c[2][0] = 10 + >>> c + array([1, 'm', list([10, 3, 4])], dtype=object) + >>> a + array([1, 'm', list([2, 3, 4])], dtype=object) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('cumprod', + """ + a.cumprod(axis=None, dtype=None, out=None) + + Return the cumulative product of the elements along the given axis. + + Refer to `numpy.cumprod` for full documentation. + + See Also + -------- + numpy.cumprod : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('cumsum', + """ + a.cumsum(axis=None, dtype=None, out=None) + + Return the cumulative sum of the elements along the given axis. + + Refer to `numpy.cumsum` for full documentation. + + See Also + -------- + numpy.cumsum : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('diagonal', + """ + a.diagonal(offset=0, axis1=0, axis2=1) + + Return specified diagonals. In NumPy 1.9 the returned array is a + read-only view instead of a copy as in previous NumPy versions. In + a future version the read-only restriction will be removed. + + Refer to :func:`numpy.diagonal` for full documentation. + + See Also + -------- + numpy.diagonal : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('dot')) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('dump', + """ + a.dump(file) + + Dump a pickle of the array to the specified file. + The array can be read back with pickle.load or numpy.load. + + Parameters + ---------- + file : str or Path + A string naming the dump file. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('dumps', + """ + a.dumps() + + Returns the pickle of the array as a string. + pickle.loads will convert the string back to an array. + + Parameters + ---------- + None + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('fill', + """ + a.fill(value) + + Fill the array with a scalar value. + + Parameters + ---------- + value : scalar + All elements of `a` will be assigned this value. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([1, 2]) + >>> a.fill(0) + >>> a + array([0, 0]) + >>> a = np.empty(2) + >>> a.fill(1) + >>> a + array([1., 1.]) + + Fill expects a scalar value and always behaves the same as assigning + to a single array element. The following is a rare example where this + distinction is important: + + >>> a = np.array([None, None], dtype=object) + >>> a[0] = np.array(3) + >>> a + array([array(3), None], dtype=object) + >>> a.fill(np.array(3)) + >>> a + array([array(3), array(3)], dtype=object) + + Where other forms of assignments will unpack the array being assigned: + + >>> a[...] = np.array(3) + >>> a + array([3, 3], dtype=object) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('flatten', + """ + a.flatten(order='C') + + Return a copy of the array collapsed into one dimension. + + Parameters + ---------- + order : {'C', 'F', 'A', 'K'}, optional + 'C' means to flatten in row-major (C-style) order. + 'F' means to flatten in column-major (Fortran- + style) order. 'A' means to flatten in column-major + order if `a` is Fortran *contiguous* in memory, + row-major order otherwise. 'K' means to flatten + `a` in the order the elements occur in memory. + The default is 'C'. + + Returns + ------- + y : ndarray + A copy of the input array, flattened to one dimension. + + See Also + -------- + ravel : Return a flattened array. + flat : A 1-D flat iterator over the array. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,2], [3,4]]) + >>> a.flatten() + array([1, 2, 3, 4]) + >>> a.flatten('F') + array([1, 3, 2, 4]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('getfield', + """ + a.getfield(dtype, offset=0) + + Returns a field of the given array as a certain type. + + A field is a view of the array data with a given data-type. The values in + the view are determined by the given type and the offset into the current + array in bytes. The offset needs to be such that the view dtype fits in the + array dtype; for example an array of dtype complex128 has 16-byte elements. + If taking a view with a 32-bit integer (4 bytes), the offset needs to be + between 0 and 12 bytes. + + Parameters + ---------- + dtype : str or dtype + The data type of the view. The dtype size of the view can not be larger + than that of the array itself. + offset : int + Number of bytes to skip before beginning the element view. + + Examples + -------- + >>> import numpy as np + >>> x = np.diag([1.+1.j]*2) + >>> x[1, 1] = 2 + 4.j + >>> x + array([[1.+1.j, 0.+0.j], + [0.+0.j, 2.+4.j]]) + >>> x.getfield(np.float64) + array([[1., 0.], + [0., 2.]]) + + By choosing an offset of 8 bytes we can select the complex part of the + array for our view: + + >>> x.getfield(np.float64, offset=8) + array([[1., 0.], + [0., 4.]]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('item', + """ + a.item(*args) + + Copy an element of an array to a standard Python scalar and return it. + + Parameters + ---------- + \\*args : Arguments (variable number and type) + + * none: in this case, the method only works for arrays + with one element (`a.size == 1`), which element is + copied into a standard Python scalar object and returned. + + * int_type: this argument is interpreted as a flat index into + the array, specifying which element to copy and return. + + * tuple of int_types: functions as does a single int_type argument, + except that the argument is interpreted as an nd-index into the + array. + + Returns + ------- + z : Standard Python scalar object + A copy of the specified element of the array as a suitable + Python scalar + + Notes + ----- + When the data type of `a` is longdouble or clongdouble, item() returns + a scalar array object because there is no available Python scalar that + would not lose information. Void arrays return a buffer object for item(), + unless fields are defined, in which case a tuple is returned. + + `item` is very similar to a[args], except, instead of an array scalar, + a standard Python scalar is returned. This can be useful for speeding up + access to elements of the array and doing arithmetic on elements of the + array using Python's optimized math. + + Examples + -------- + >>> import numpy as np + >>> np.random.seed(123) + >>> x = np.random.randint(9, size=(3, 3)) + >>> x + array([[2, 2, 6], + [1, 3, 6], + [1, 0, 1]]) + >>> x.item(3) + 1 + >>> x.item(7) + 0 + >>> x.item((0, 1)) + 2 + >>> x.item((2, 2)) + 1 + + For an array with object dtype, elements are returned as-is. + + >>> a = np.array([np.int64(1)], dtype=object) + >>> a.item() #return np.int64 + np.int64(1) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('max', + """ + a.max(axis=None, out=None, keepdims=False, initial=, where=True) + + Return the maximum along a given axis. + + Refer to `numpy.amax` for full documentation. + + See Also + -------- + numpy.amax : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('mean', + """ + a.mean(axis=None, dtype=None, out=None, keepdims=False, *, where=True) + + Returns the average of the array elements along given axis. + + Refer to `numpy.mean` for full documentation. + + See Also + -------- + numpy.mean : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('min', + """ + a.min(axis=None, out=None, keepdims=False, initial=, where=True) + + Return the minimum along a given axis. + + Refer to `numpy.amin` for full documentation. + + See Also + -------- + numpy.amin : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('nonzero', + """ + a.nonzero() + + Return the indices of the elements that are non-zero. + + Refer to `numpy.nonzero` for full documentation. + + See Also + -------- + numpy.nonzero : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('prod', + """ + a.prod(axis=None, dtype=None, out=None, keepdims=False, + initial=1, where=True) + + Return the product of the array elements over the given axis + + Refer to `numpy.prod` for full documentation. + + See Also + -------- + numpy.prod : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('put', + """ + a.put(indices, values, mode='raise') + + Set ``a.flat[n] = values[n]`` for all `n` in indices. + + Refer to `numpy.put` for full documentation. + + See Also + -------- + numpy.put : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('ravel', + """ + a.ravel([order]) + + Return a flattened array. + + Refer to `numpy.ravel` for full documentation. + + See Also + -------- + numpy.ravel : equivalent function + + ndarray.flat : a flat iterator on the array. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('repeat', + """ + a.repeat(repeats, axis=None) + + Repeat elements of an array. + + Refer to `numpy.repeat` for full documentation. + + See Also + -------- + numpy.repeat : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('reshape', + """ + a.reshape(shape, /, *, order='C', copy=None) + + Returns an array containing the same data with a new shape. + + Refer to `numpy.reshape` for full documentation. + + See Also + -------- + numpy.reshape : equivalent function + + Notes + ----- + Unlike the free function `numpy.reshape`, this method on `ndarray` allows + the elements of the shape parameter to be passed in as separate arguments. + For example, ``a.reshape(10, 11)`` is equivalent to + ``a.reshape((10, 11))``. + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('resize', + """ + a.resize(new_shape, refcheck=True) + + Change shape and size of array in-place. + + Parameters + ---------- + new_shape : tuple of ints, or `n` ints + Shape of resized array. + refcheck : bool, optional + If False, reference count will not be checked. Default is True. + + Returns + ------- + None + + Raises + ------ + ValueError + If `a` does not own its own data or references or views to it exist, + and the data memory must be changed. + PyPy only: will always raise if the data memory must be changed, since + there is no reliable way to determine if references or views to it + exist. + + SystemError + If the `order` keyword argument is specified. This behaviour is a + bug in NumPy. + + See Also + -------- + resize : Return a new array with the specified shape. + + Notes + ----- + This reallocates space for the data area if necessary. + + Only contiguous arrays (data elements consecutive in memory) can be + resized. + + The purpose of the reference count check is to make sure you + do not use this array as a buffer for another Python object and then + reallocate the memory. However, reference counts can increase in + other ways so if you are sure that you have not shared the memory + for this array with another Python object, then you may safely set + `refcheck` to False. + + Examples + -------- + Shrinking an array: array is flattened (in the order that the data are + stored in memory), resized, and reshaped: + + >>> import numpy as np + + >>> a = np.array([[0, 1], [2, 3]], order='C') + >>> a.resize((2, 1)) + >>> a + array([[0], + [1]]) + + >>> a = np.array([[0, 1], [2, 3]], order='F') + >>> a.resize((2, 1)) + >>> a + array([[0], + [2]]) + + Enlarging an array: as above, but missing entries are filled with zeros: + + >>> b = np.array([[0, 1], [2, 3]]) + >>> b.resize(2, 3) # new_shape parameter doesn't have to be a tuple + >>> b + array([[0, 1, 2], + [3, 0, 0]]) + + Referencing an array prevents resizing... + + >>> c = a + >>> a.resize((1, 1)) + Traceback (most recent call last): + ... + ValueError: cannot resize an array that references or is referenced ... + + Unless `refcheck` is False: + + >>> a.resize((1, 1), refcheck=False) + >>> a + array([[0]]) + >>> c + array([[0]]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('round', + """ + a.round(decimals=0, out=None) + + Return `a` with each element rounded to the given number of decimals. + + Refer to `numpy.around` for full documentation. + + See Also + -------- + numpy.around : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('searchsorted', + """ + a.searchsorted(v, side='left', sorter=None) + + Find indices where elements of v should be inserted in a to maintain order. + + For full documentation, see `numpy.searchsorted` + + See Also + -------- + numpy.searchsorted : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('setfield', + """ + a.setfield(val, dtype, offset=0) + + Put a value into a specified place in a field defined by a data-type. + + Place `val` into `a`'s field defined by `dtype` and beginning `offset` + bytes into the field. + + Parameters + ---------- + val : object + Value to be placed in field. + dtype : dtype object + Data-type of the field in which to place `val`. + offset : int, optional + The number of bytes into the field at which to place `val`. + + Returns + ------- + None + + See Also + -------- + getfield + + Examples + -------- + >>> import numpy as np + >>> x = np.eye(3) + >>> x.getfield(np.float64) + array([[1., 0., 0.], + [0., 1., 0.], + [0., 0., 1.]]) + >>> x.setfield(3, np.int32) + >>> x.getfield(np.int32) + array([[3, 3, 3], + [3, 3, 3], + [3, 3, 3]], dtype=int32) + >>> x + array([[1.0e+000, 1.5e-323, 1.5e-323], + [1.5e-323, 1.0e+000, 1.5e-323], + [1.5e-323, 1.5e-323, 1.0e+000]]) + >>> x.setfield(np.eye(3), np.int32) + >>> x + array([[1., 0., 0.], + [0., 1., 0.], + [0., 0., 1.]]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('setflags', + """ + a.setflags(write=None, align=None, uic=None) + + Set array flags WRITEABLE, ALIGNED, WRITEBACKIFCOPY, + respectively. + + These Boolean-valued flags affect how numpy interprets the memory + area used by `a` (see Notes below). The ALIGNED flag can only + be set to True if the data is actually aligned according to the type. + The WRITEBACKIFCOPY flag can never be set + to True. The flag WRITEABLE can only be set to True if the array owns its + own memory, or the ultimate owner of the memory exposes a writeable buffer + interface, or is a string. (The exception for string is made so that + unpickling can be done without copying memory.) + + Parameters + ---------- + write : bool, optional + Describes whether or not `a` can be written to. + align : bool, optional + Describes whether or not `a` is aligned properly for its type. + uic : bool, optional + Describes whether or not `a` is a copy of another "base" array. + + Notes + ----- + Array flags provide information about how the memory area used + for the array is to be interpreted. There are 7 Boolean flags + in use, only three of which can be changed by the user: + WRITEBACKIFCOPY, WRITEABLE, and ALIGNED. + + WRITEABLE (W) the data area can be written to; + + ALIGNED (A) the data and strides are aligned appropriately for the hardware + (as determined by the compiler); + + WRITEBACKIFCOPY (X) this array is a copy of some other array (referenced + by .base). When the C-API function PyArray_ResolveWritebackIfCopy is + called, the base array will be updated with the contents of this array. + + All flags can be accessed using the single (upper case) letter as well + as the full name. + + Examples + -------- + >>> import numpy as np + >>> y = np.array([[3, 1, 7], + ... [2, 0, 0], + ... [8, 5, 9]]) + >>> y + array([[3, 1, 7], + [2, 0, 0], + [8, 5, 9]]) + >>> y.flags + C_CONTIGUOUS : True + F_CONTIGUOUS : False + OWNDATA : True + WRITEABLE : True + ALIGNED : True + WRITEBACKIFCOPY : False + >>> y.setflags(write=0, align=0) + >>> y.flags + C_CONTIGUOUS : True + F_CONTIGUOUS : False + OWNDATA : True + WRITEABLE : False + ALIGNED : False + WRITEBACKIFCOPY : False + >>> y.setflags(uic=1) + Traceback (most recent call last): + File "", line 1, in + ValueError: cannot set WRITEBACKIFCOPY flag to True + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('sort', + """ + a.sort(axis=-1, kind=None, order=None) + + Sort an array in-place. Refer to `numpy.sort` for full documentation. + + Parameters + ---------- + axis : int, optional + Axis along which to sort. Default is -1, which means sort along the + last axis. + kind : {'quicksort', 'mergesort', 'heapsort', 'stable'}, optional + Sorting algorithm. The default is 'quicksort'. Note that both 'stable' + and 'mergesort' use timsort under the covers and, in general, the + actual implementation will vary with datatype. The 'mergesort' option + is retained for backwards compatibility. + order : str or list of str, optional + When `a` is an array with fields defined, this argument specifies + which fields to compare first, second, etc. A single field can + be specified as a string, and not all fields need be specified, + but unspecified fields will still be used, in the order in which + they come up in the dtype, to break ties. + + See Also + -------- + numpy.sort : Return a sorted copy of an array. + numpy.argsort : Indirect sort. + numpy.lexsort : Indirect stable sort on multiple keys. + numpy.searchsorted : Find elements in sorted array. + numpy.partition: Partial sort. + + Notes + ----- + See `numpy.sort` for notes on the different sorting algorithms. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,4], [3,1]]) + >>> a.sort(axis=1) + >>> a + array([[1, 4], + [1, 3]]) + >>> a.sort(axis=0) + >>> a + array([[1, 3], + [1, 4]]) + + Use the `order` keyword to specify a field to use when sorting a + structured array: + + >>> a = np.array([('a', 2), ('c', 1)], dtype=[('x', 'S1'), ('y', int)]) + >>> a.sort(order='y') + >>> a + array([(b'c', 1), (b'a', 2)], + dtype=[('x', 'S1'), ('y', '>> import numpy as np + >>> a = np.array([3, 4, 2, 1]) + >>> a.partition(3) + >>> a + array([2, 1, 3, 4]) # may vary + + >>> a.partition((1, 3)) + >>> a + array([1, 2, 3, 4]) + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('squeeze', + """ + a.squeeze(axis=None) + + Remove axes of length one from `a`. + + Refer to `numpy.squeeze` for full documentation. + + See Also + -------- + numpy.squeeze : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('std', + """ + a.std(axis=None, dtype=None, out=None, ddof=0, keepdims=False, *, where=True) + + Returns the standard deviation of the array elements along given axis. + + Refer to `numpy.std` for full documentation. + + See Also + -------- + numpy.std : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('sum', + """ + a.sum(axis=None, dtype=None, out=None, keepdims=False, initial=0, where=True) + + Return the sum of the array elements over the given axis. + + Refer to `numpy.sum` for full documentation. + + See Also + -------- + numpy.sum : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('swapaxes', + """ + a.swapaxes(axis1, axis2) + + Return a view of the array with `axis1` and `axis2` interchanged. + + Refer to `numpy.swapaxes` for full documentation. + + See Also + -------- + numpy.swapaxes : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('take', + """ + a.take(indices, axis=None, out=None, mode='raise') + + Return an array formed from the elements of `a` at the given indices. + + Refer to `numpy.take` for full documentation. + + See Also + -------- + numpy.take : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('tofile', + """ + a.tofile(fid, sep="", format="%s") + + Write array to a file as text or binary (default). + + Data is always written in 'C' order, independent of the order of `a`. + The data produced by this method can be recovered using the function + fromfile(). + + Parameters + ---------- + fid : file or str or Path + An open file object, or a string containing a filename. + sep : str + Separator between array items for text output. + If "" (empty), a binary file is written, equivalent to + ``file.write(a.tobytes())``. + format : str + Format string for text file output. + Each entry in the array is formatted to text by first converting + it to the closest Python type, and then using "format" % item. + + Notes + ----- + This is a convenience function for quick storage of array data. + Information on endianness and precision is lost, so this method is not a + good choice for files intended to archive data or transport data between + machines with different endianness. Some of these problems can be overcome + by outputting the data as text files, at the expense of speed and file + size. + + When fid is a file object, array contents are directly written to the + file, bypassing the file object's ``write`` method. As a result, tofile + cannot be used with files objects supporting compression (e.g., GzipFile) + or file-like objects that do not support ``fileno()`` (e.g., BytesIO). + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('tolist', + """ + a.tolist() + + Return the array as an ``a.ndim``-levels deep nested list of Python scalars. + + Return a copy of the array data as a (nested) Python list. + Data items are converted to the nearest compatible builtin Python type, via + the `~numpy.ndarray.item` function. + + If ``a.ndim`` is 0, then since the depth of the nested list is 0, it will + not be a list at all, but a simple Python scalar. + + Parameters + ---------- + none + + Returns + ------- + y : object, or list of object, or list of list of object, or ... + The possibly nested list of array elements. + + Notes + ----- + The array may be recreated via ``a = np.array(a.tolist())``, although this + may sometimes lose precision. + + Examples + -------- + For a 1D array, ``a.tolist()`` is almost the same as ``list(a)``, + except that ``tolist`` changes numpy scalars to Python scalars: + + >>> import numpy as np + >>> a = np.uint32([1, 2]) + >>> a_list = list(a) + >>> a_list + [np.uint32(1), np.uint32(2)] + >>> type(a_list[0]) + + >>> a_tolist = a.tolist() + >>> a_tolist + [1, 2] + >>> type(a_tolist[0]) + + + Additionally, for a 2D array, ``tolist`` applies recursively: + + >>> a = np.array([[1, 2], [3, 4]]) + >>> list(a) + [array([1, 2]), array([3, 4])] + >>> a.tolist() + [[1, 2], [3, 4]] + + The base case for this recursion is a 0D array: + + >>> a = np.array(1) + >>> list(a) + Traceback (most recent call last): + ... + TypeError: iteration over a 0-d array + >>> a.tolist() + 1 + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('tobytes', """ + a.tobytes(order='C') + + Construct Python bytes containing the raw data bytes in the array. + + Constructs Python bytes showing a copy of the raw contents of + data memory. The bytes object is produced in C-order by default. + This behavior is controlled by the ``order`` parameter. + + Parameters + ---------- + order : {'C', 'F', 'A'}, optional + Controls the memory layout of the bytes object. 'C' means C-order, + 'F' means F-order, 'A' (short for *Any*) means 'F' if `a` is + Fortran contiguous, 'C' otherwise. Default is 'C'. + + Returns + ------- + s : bytes + Python bytes exhibiting a copy of `a`'s raw data. + + See also + -------- + frombuffer + Inverse of this operation, construct a 1-dimensional array from Python + bytes. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[0, 1], [2, 3]], dtype='>> x.tobytes() + b'\\x00\\x00\\x01\\x00\\x02\\x00\\x03\\x00' + >>> x.tobytes('C') == x.tobytes() + True + >>> x.tobytes('F') + b'\\x00\\x00\\x02\\x00\\x01\\x00\\x03\\x00' + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('tostring', r""" + a.tostring(order='C') + + A compatibility alias for `~ndarray.tobytes`, with exactly the same + behavior. + + Despite its name, it returns :class:`bytes` not :class:`str`\ s. + + .. deprecated:: 1.19.0 + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('trace', + """ + a.trace(offset=0, axis1=0, axis2=1, dtype=None, out=None) + + Return the sum along diagonals of the array. + + Refer to `numpy.trace` for full documentation. + + See Also + -------- + numpy.trace : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('transpose', + """ + a.transpose(*axes) + + Returns a view of the array with axes transposed. + + Refer to `numpy.transpose` for full documentation. + + Parameters + ---------- + axes : None, tuple of ints, or `n` ints + + * None or no argument: reverses the order of the axes. + + * tuple of ints: `i` in the `j`-th place in the tuple means that the + array's `i`-th axis becomes the transposed array's `j`-th axis. + + * `n` ints: same as an n-tuple of the same ints (this form is + intended simply as a "convenience" alternative to the tuple form). + + Returns + ------- + p : ndarray + View of the array with its axes suitably permuted. + + See Also + -------- + transpose : Equivalent function. + ndarray.T : Array property returning the array transposed. + ndarray.reshape : Give a new shape to an array without changing its data. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> a + array([[1, 2], + [3, 4]]) + >>> a.transpose() + array([[1, 3], + [2, 4]]) + >>> a.transpose((1, 0)) + array([[1, 3], + [2, 4]]) + >>> a.transpose(1, 0) + array([[1, 3], + [2, 4]]) + + >>> a = np.array([1, 2, 3, 4]) + >>> a + array([1, 2, 3, 4]) + >>> a.transpose() + array([1, 2, 3, 4]) + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('var', + """ + a.var(axis=None, dtype=None, out=None, ddof=0, keepdims=False, *, where=True) + + Returns the variance of the array elements, along given axis. + + Refer to `numpy.var` for full documentation. + + See Also + -------- + numpy.var : equivalent function + + """)) + + +add_newdoc('numpy._core.multiarray', 'ndarray', ('view', + """ + a.view([dtype][, type]) + + New view of array with the same data. + + .. note:: + Passing None for ``dtype`` is different from omitting the parameter, + since the former invokes ``dtype(None)`` which is an alias for + ``dtype('float64')``. + + Parameters + ---------- + dtype : data-type or ndarray sub-class, optional + Data-type descriptor of the returned view, e.g., float32 or int16. + Omitting it results in the view having the same data-type as `a`. + This argument can also be specified as an ndarray sub-class, which + then specifies the type of the returned object (this is equivalent to + setting the ``type`` parameter). + type : Python type, optional + Type of the returned view, e.g., ndarray or matrix. Again, omission + of the parameter results in type preservation. + + Notes + ----- + ``a.view()`` is used two different ways: + + ``a.view(some_dtype)`` or ``a.view(dtype=some_dtype)`` constructs a view + of the array's memory with a different data-type. This can cause a + reinterpretation of the bytes of memory. + + ``a.view(ndarray_subclass)`` or ``a.view(type=ndarray_subclass)`` just + returns an instance of `ndarray_subclass` that looks at the same array + (same shape, dtype, etc.) This does not cause a reinterpretation of the + memory. + + For ``a.view(some_dtype)``, if ``some_dtype`` has a different number of + bytes per entry than the previous dtype (for example, converting a regular + array to a structured array), then the last axis of ``a`` must be + contiguous. This axis will be resized in the result. + + .. versionchanged:: 1.23.0 + Only the last axis needs to be contiguous. Previously, the entire array + had to be C-contiguous. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([(-1, 2)], dtype=[('a', np.int8), ('b', np.int8)]) + + Viewing array data using a different type and dtype: + + >>> nonneg = np.dtype([("a", np.uint8), ("b", np.uint8)]) + >>> y = x.view(dtype=nonneg, type=np.recarray) + >>> x["a"] + array([-1], dtype=int8) + >>> y.a + array([255], dtype=uint8) + + Creating a view on a structured array so it can be used in calculations + + >>> x = np.array([(1, 2),(3,4)], dtype=[('a', np.int8), ('b', np.int8)]) + >>> xv = x.view(dtype=np.int8).reshape(-1,2) + >>> xv + array([[1, 2], + [3, 4]], dtype=int8) + >>> xv.mean(0) + array([2., 3.]) + + Making changes to the view changes the underlying array + + >>> xv[0,1] = 20 + >>> x + array([(1, 20), (3, 4)], dtype=[('a', 'i1'), ('b', 'i1')]) + + Using a view to convert an array to a recarray: + + >>> z = x.view(np.recarray) + >>> z.a + array([1, 3], dtype=int8) + + Views share data: + + >>> x[0] = (9, 10) + >>> z[0] + np.record((9, 10), dtype=[('a', 'i1'), ('b', 'i1')]) + + Views that change the dtype size (bytes per entry) should normally be + avoided on arrays defined by slices, transposes, fortran-ordering, etc.: + + >>> x = np.array([[1, 2, 3], [4, 5, 6]], dtype=np.int16) + >>> y = x[:, ::2] + >>> y + array([[1, 3], + [4, 6]], dtype=int16) + >>> y.view(dtype=[('width', np.int16), ('length', np.int16)]) + Traceback (most recent call last): + ... + ValueError: To change to a dtype of a different size, the last axis must be contiguous + >>> z = y.copy() + >>> z.view(dtype=[('width', np.int16), ('length', np.int16)]) + array([[(1, 3)], + [(4, 6)]], dtype=[('width', '>> x = np.arange(2 * 3 * 4, dtype=np.int8).reshape(2, 3, 4) + >>> x.transpose(1, 0, 2).view(np.int16) + array([[[ 256, 770], + [3340, 3854]], + + [[1284, 1798], + [4368, 4882]], + + [[2312, 2826], + [5396, 5910]]], dtype=int16) + + """)) + + +############################################################################## +# +# umath functions +# +############################################################################## + +add_newdoc('numpy._core.umath', 'frompyfunc', + """ + frompyfunc(func, /, nin, nout, *[, identity]) + + Takes an arbitrary Python function and returns a NumPy ufunc. + + Can be used, for example, to add broadcasting to a built-in Python + function (see Examples section). + + Parameters + ---------- + func : Python function object + An arbitrary Python function. + nin : int + The number of input arguments. + nout : int + The number of objects returned by `func`. + identity : object, optional + The value to use for the `~numpy.ufunc.identity` attribute of the resulting + object. If specified, this is equivalent to setting the underlying + C ``identity`` field to ``PyUFunc_IdentityValue``. + If omitted, the identity is set to ``PyUFunc_None``. Note that this is + _not_ equivalent to setting the identity to ``None``, which implies the + operation is reorderable. + + Returns + ------- + out : ufunc + Returns a NumPy universal function (``ufunc``) object. + + See Also + -------- + vectorize : Evaluates pyfunc over input arrays using broadcasting rules of numpy. + + Notes + ----- + The returned ufunc always returns PyObject arrays. + + Examples + -------- + Use frompyfunc to add broadcasting to the Python function ``oct``: + + >>> import numpy as np + >>> oct_array = np.frompyfunc(oct, 1, 1) + >>> oct_array(np.array((10, 30, 100))) + array(['0o12', '0o36', '0o144'], dtype=object) + >>> np.array((oct(10), oct(30), oct(100))) # for comparison + array(['0o12', '0o36', '0o144'], dtype='doc is NULL.) + + Parameters + ---------- + ufunc : numpy.ufunc + A ufunc whose current doc is NULL. + new_docstring : string + The new docstring for the ufunc. + + Notes + ----- + This method allocates memory for new_docstring on + the heap. Technically this creates a memory leak, since this + memory will not be reclaimed until the end of the program + even if the ufunc itself is removed. However this will only + be a problem if the user is repeatedly creating ufuncs with + no documentation, adding documentation via add_newdoc_ufunc, + and then throwing away the ufunc. + """) + +add_newdoc('numpy._core.multiarray', 'get_handler_name', + """ + get_handler_name(a: ndarray) -> str,None + + Return the name of the memory handler used by `a`. If not provided, return + the name of the memory handler that will be used to allocate data for the + next `ndarray` in this context. May return None if `a` does not own its + memory, in which case you can traverse ``a.base`` for a memory handler. + """) + +add_newdoc('numpy._core.multiarray', 'get_handler_version', + """ + get_handler_version(a: ndarray) -> int,None + + Return the version of the memory handler used by `a`. If not provided, + return the version of the memory handler that will be used to allocate data + for the next `ndarray` in this context. May return None if `a` does not own + its memory, in which case you can traverse ``a.base`` for a memory handler. + """) + +add_newdoc('numpy._core._multiarray_umath', '_array_converter', + """ + _array_converter(*array_likes) + + Helper to convert one or more objects to arrays. Integrates machinery + to deal with the ``result_type`` and ``__array_wrap__``. + + The reason for this is that e.g. ``result_type`` needs to convert to arrays + to find the ``dtype``. But converting to an array before calling + ``result_type`` would incorrectly "forget" whether it was a Python int, + float, or complex. + """) + +add_newdoc( + 'numpy._core._multiarray_umath', '_array_converter', ('scalar_input', + """ + A tuple which indicates for each input whether it was a scalar that + was coerced to a 0-D array (and was not already an array or something + converted via a protocol like ``__array__()``). + """)) + +add_newdoc('numpy._core._multiarray_umath', '_array_converter', ('as_arrays', + """ + as_arrays(/, subok=True, pyscalars="convert_if_no_array") + + Return the inputs as arrays or scalars. + + Parameters + ---------- + subok : True or False, optional + Whether array subclasses are preserved. + pyscalars : {"convert", "preserve", "convert_if_no_array"}, optional + To allow NEP 50 weak promotion later, it may be desirable to preserve + Python scalars. As default, these are preserved unless all inputs + are Python scalars. "convert" enforces an array return. + """)) + +add_newdoc('numpy._core._multiarray_umath', '_array_converter', ('result_type', + """result_type(/, extra_dtype=None, ensure_inexact=False) + + Find the ``result_type`` just as ``np.result_type`` would, but taking + into account that the original inputs (before converting to an array) may + have been Python scalars with weak promotion. + + Parameters + ---------- + extra_dtype : dtype instance or class + An additional DType or dtype instance to promote (e.g. could be used + to ensure the result precision is at least float32). + ensure_inexact : True or False + When ``True``, ensures a floating point (or complex) result replacing + the ``arr * 1.`` or ``result_type(..., 0.0)`` pattern. + """)) + +add_newdoc('numpy._core._multiarray_umath', '_array_converter', ('wrap', + """ + wrap(arr, /, to_scalar=None) + + Call ``__array_wrap__`` on ``arr`` if ``arr`` is not the same subclass + as the input the ``__array_wrap__`` method was retrieved from. + + Parameters + ---------- + arr : ndarray + The object to be wrapped. Normally an ndarray or subclass, + although for backward compatibility NumPy scalars are also accepted + (these will be converted to a NumPy array before being passed on to + the ``__array_wrap__`` method). + to_scalar : {True, False, None}, optional + When ``True`` will convert a 0-d array to a scalar via ``result[()]`` + (with a fast-path for non-subclasses). If ``False`` the result should + be an array-like (as ``__array_wrap__`` is free to return a non-array). + By default (``None``), a scalar is returned if all inputs were scalar. + """)) + + +add_newdoc('numpy._core.multiarray', '_get_madvise_hugepage', + """ + _get_madvise_hugepage() -> bool + + Get use of ``madvise (2)`` MADV_HUGEPAGE support when + allocating the array data. Returns the currently set value. + See `global_state` for more information. + """) + +add_newdoc('numpy._core.multiarray', '_set_madvise_hugepage', + """ + _set_madvise_hugepage(enabled: bool) -> bool + + Set or unset use of ``madvise (2)`` MADV_HUGEPAGE support when + allocating the array data. Returns the previously set value. + See `global_state` for more information. + """) + + +############################################################################## +# +# Documentation for ufunc attributes and methods +# +############################################################################## + + +############################################################################## +# +# ufunc object +# +############################################################################## + +add_newdoc('numpy._core', 'ufunc', + """ + Functions that operate element by element on whole arrays. + + To see the documentation for a specific ufunc, use `info`. For + example, ``np.info(np.sin)``. Because ufuncs are written in C + (for speed) and linked into Python with NumPy's ufunc facility, + Python's help() function finds this page whenever help() is called + on a ufunc. + + A detailed explanation of ufuncs can be found in the docs for :ref:`ufuncs`. + + **Calling ufuncs:** ``op(*x[, out], where=True, **kwargs)`` + + Apply `op` to the arguments `*x` elementwise, broadcasting the arguments. + + The broadcasting rules are: + + * Dimensions of length 1 may be prepended to either array. + * Arrays may be repeated along dimensions of length 1. + + Parameters + ---------- + *x : array_like + Input arrays. + out : ndarray, None, or tuple of ndarray and None, optional + Alternate array object(s) in which to put the result; if provided, it + must have a shape that the inputs broadcast to. A tuple of arrays + (possible only as a keyword argument) must have length equal to the + number of outputs; use None for uninitialized outputs to be + allocated by the ufunc. + where : array_like, optional + This condition is broadcast over the input. At locations where the + condition is True, the `out` array will be set to the ufunc result. + Elsewhere, the `out` array will retain its original value. + Note that if an uninitialized `out` array is created via the default + ``out=None``, locations within it where the condition is False will + remain uninitialized. + **kwargs + For other keyword-only arguments, see the :ref:`ufunc docs `. + + Returns + ------- + r : ndarray or tuple of ndarray + `r` will have the shape that the arrays in `x` broadcast to; if `out` is + provided, it will be returned. If not, `r` will be allocated and + may contain uninitialized values. If the function has more than one + output, then the result will be a tuple of arrays. + + """) + + +############################################################################## +# +# ufunc attributes +# +############################################################################## + +add_newdoc('numpy._core', 'ufunc', ('identity', + """ + The identity value. + + Data attribute containing the identity element for the ufunc, + if it has one. If it does not, the attribute value is None. + + Examples + -------- + >>> import numpy as np + >>> np.add.identity + 0 + >>> np.multiply.identity + 1 + >>> np.power.identity + 1 + >>> print(np.exp.identity) + None + """)) + +add_newdoc('numpy._core', 'ufunc', ('nargs', + """ + The number of arguments. + + Data attribute containing the number of arguments the ufunc takes, including + optional ones. + + Notes + ----- + Typically this value will be one more than what you might expect + because all ufuncs take the optional "out" argument. + + Examples + -------- + >>> import numpy as np + >>> np.add.nargs + 3 + >>> np.multiply.nargs + 3 + >>> np.power.nargs + 3 + >>> np.exp.nargs + 2 + """)) + +add_newdoc('numpy._core', 'ufunc', ('nin', + """ + The number of inputs. + + Data attribute containing the number of arguments the ufunc treats as input. + + Examples + -------- + >>> import numpy as np + >>> np.add.nin + 2 + >>> np.multiply.nin + 2 + >>> np.power.nin + 2 + >>> np.exp.nin + 1 + """)) + +add_newdoc('numpy._core', 'ufunc', ('nout', + """ + The number of outputs. + + Data attribute containing the number of arguments the ufunc treats as output. + + Notes + ----- + Since all ufuncs can take output arguments, this will always be at least 1. + + Examples + -------- + >>> import numpy as np + >>> np.add.nout + 1 + >>> np.multiply.nout + 1 + >>> np.power.nout + 1 + >>> np.exp.nout + 1 + + """)) + +add_newdoc('numpy._core', 'ufunc', ('ntypes', + """ + The number of types. + + The number of numerical NumPy types - of which there are 18 total - on which + the ufunc can operate. + + See Also + -------- + numpy.ufunc.types + + Examples + -------- + >>> import numpy as np + >>> np.add.ntypes + 18 + >>> np.multiply.ntypes + 18 + >>> np.power.ntypes + 17 + >>> np.exp.ntypes + 7 + >>> np.remainder.ntypes + 14 + + """)) + +add_newdoc('numpy._core', 'ufunc', ('types', + """ + Returns a list with types grouped input->output. + + Data attribute listing the data-type "Domain-Range" groupings the ufunc can + deliver. The data-types are given using the character codes. + + See Also + -------- + numpy.ufunc.ntypes + + Examples + -------- + >>> import numpy as np + >>> np.add.types + ['??->?', 'bb->b', 'BB->B', 'hh->h', 'HH->H', 'ii->i', 'II->I', 'll->l', + 'LL->L', 'qq->q', 'QQ->Q', 'ff->f', 'dd->d', 'gg->g', 'FF->F', 'DD->D', + 'GG->G', 'OO->O'] + + >>> np.multiply.types + ['??->?', 'bb->b', 'BB->B', 'hh->h', 'HH->H', 'ii->i', 'II->I', 'll->l', + 'LL->L', 'qq->q', 'QQ->Q', 'ff->f', 'dd->d', 'gg->g', 'FF->F', 'DD->D', + 'GG->G', 'OO->O'] + + >>> np.power.types + ['bb->b', 'BB->B', 'hh->h', 'HH->H', 'ii->i', 'II->I', 'll->l', 'LL->L', + 'qq->q', 'QQ->Q', 'ff->f', 'dd->d', 'gg->g', 'FF->F', 'DD->D', 'GG->G', + 'OO->O'] + + >>> np.exp.types + ['f->f', 'd->d', 'g->g', 'F->F', 'D->D', 'G->G', 'O->O'] + + >>> np.remainder.types + ['bb->b', 'BB->B', 'hh->h', 'HH->H', 'ii->i', 'II->I', 'll->l', 'LL->L', + 'qq->q', 'QQ->Q', 'ff->f', 'dd->d', 'gg->g', 'OO->O'] + + """)) + +add_newdoc('numpy._core', 'ufunc', ('signature', + """ + Definition of the core elements a generalized ufunc operates on. + + The signature determines how the dimensions of each input/output array + are split into core and loop dimensions: + + 1. Each dimension in the signature is matched to a dimension of the + corresponding passed-in array, starting from the end of the shape tuple. + 2. Core dimensions assigned to the same label in the signature must have + exactly matching sizes, no broadcasting is performed. + 3. The core dimensions are removed from all inputs and the remaining + dimensions are broadcast together, defining the loop dimensions. + + Notes + ----- + Generalized ufuncs are used internally in many linalg functions, and in + the testing suite; the examples below are taken from these. + For ufuncs that operate on scalars, the signature is None, which is + equivalent to '()' for every argument. + + Examples + -------- + >>> import numpy as np + >>> np.linalg._umath_linalg.det.signature + '(m,m)->()' + >>> np.matmul.signature + '(n?,k),(k,m?)->(n?,m?)' + >>> np.add.signature is None + True # equivalent to '(),()->()' + """)) + +############################################################################## +# +# ufunc methods +# +############################################################################## + +add_newdoc('numpy._core', 'ufunc', ('reduce', + """ + reduce(array, axis=0, dtype=None, out=None, keepdims=False, initial=, where=True) + + Reduces `array`'s dimension by one, by applying ufunc along one axis. + + Let :math:`array.shape = (N_0, ..., N_i, ..., N_{M-1})`. Then + :math:`ufunc.reduce(array, axis=i)[k_0, ..,k_{i-1}, k_{i+1}, .., k_{M-1}]` = + the result of iterating `j` over :math:`range(N_i)`, cumulatively applying + ufunc to each :math:`array[k_0, ..,k_{i-1}, j, k_{i+1}, .., k_{M-1}]`. + For a one-dimensional array, reduce produces results equivalent to: + :: + + r = op.identity # op = ufunc + for i in range(len(A)): + r = op(r, A[i]) + return r + + For example, add.reduce() is equivalent to sum(). + + Parameters + ---------- + array : array_like + The array to act on. + axis : None or int or tuple of ints, optional + Axis or axes along which a reduction is performed. + The default (`axis` = 0) is perform a reduction over the first + dimension of the input array. `axis` may be negative, in + which case it counts from the last to the first axis. + + If this is None, a reduction is performed over all the axes. + If this is a tuple of ints, a reduction is performed on multiple + axes, instead of a single axis or all the axes as before. + + For operations which are either not commutative or not associative, + doing a reduction over multiple axes is not well-defined. The + ufuncs do not currently raise an exception in this case, but will + likely do so in the future. + dtype : data-type code, optional + The data type used to perform the operation. Defaults to that of + ``out`` if given, and the data type of ``array`` otherwise (though + upcast to conserve precision for some cases, such as + ``numpy.add.reduce`` for integer or boolean input). + out : ndarray, None, or tuple of ndarray and None, optional + A location into which the result is stored. If not provided or None, + a freshly-allocated array is returned. For consistency with + ``ufunc.__call__``, if given as a keyword, this may be wrapped in a + 1-element tuple. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the original `array`. + initial : scalar, optional + The value with which to start the reduction. + If the ufunc has no identity or the dtype is object, this defaults + to None - otherwise it defaults to ufunc.identity. + If ``None`` is given, the first element of the reduction is used, + and an error is thrown if the reduction is empty. + where : array_like of bool, optional + A boolean array which is broadcasted to match the dimensions + of `array`, and selects elements to include in the reduction. Note + that for ufuncs like ``minimum`` that do not have an identity + defined, one has to pass in also ``initial``. + + Returns + ------- + r : ndarray + The reduced array. If `out` was supplied, `r` is a reference to it. + + Examples + -------- + >>> import numpy as np + >>> np.multiply.reduce([2,3,5]) + 30 + + A multi-dimensional array example: + + >>> X = np.arange(8).reshape((2,2,2)) + >>> X + array([[[0, 1], + [2, 3]], + [[4, 5], + [6, 7]]]) + >>> np.add.reduce(X, 0) + array([[ 4, 6], + [ 8, 10]]) + >>> np.add.reduce(X) # confirm: default axis value is 0 + array([[ 4, 6], + [ 8, 10]]) + >>> np.add.reduce(X, 1) + array([[ 2, 4], + [10, 12]]) + >>> np.add.reduce(X, 2) + array([[ 1, 5], + [ 9, 13]]) + + You can use the ``initial`` keyword argument to initialize the reduction + with a different value, and ``where`` to select specific elements to include: + + >>> np.add.reduce([10], initial=5) + 15 + >>> np.add.reduce(np.ones((2, 2, 2)), axis=(0, 2), initial=10) + array([14., 14.]) + >>> a = np.array([10., np.nan, 10]) + >>> np.add.reduce(a, where=~np.isnan(a)) + 20.0 + + Allows reductions of empty arrays where they would normally fail, i.e. + for ufuncs without an identity. + + >>> np.minimum.reduce([], initial=np.inf) + inf + >>> np.minimum.reduce([[1., 2.], [3., 4.]], initial=10., where=[True, False]) + array([ 1., 10.]) + >>> np.minimum.reduce([]) + Traceback (most recent call last): + ... + ValueError: zero-size array to reduction operation minimum which has no identity + """)) + +add_newdoc('numpy._core', 'ufunc', ('accumulate', + """ + accumulate(array, axis=0, dtype=None, out=None) + + Accumulate the result of applying the operator to all elements. + + For a one-dimensional array, accumulate produces results equivalent to:: + + r = np.empty(len(A)) + t = op.identity # op = the ufunc being applied to A's elements + for i in range(len(A)): + t = op(t, A[i]) + r[i] = t + return r + + For example, add.accumulate() is equivalent to np.cumsum(). + + For a multi-dimensional array, accumulate is applied along only one + axis (axis zero by default; see Examples below) so repeated use is + necessary if one wants to accumulate over multiple axes. + + Parameters + ---------- + array : array_like + The array to act on. + axis : int, optional + The axis along which to apply the accumulation; default is zero. + dtype : data-type code, optional + The data-type used to represent the intermediate results. Defaults + to the data-type of the output array if such is provided, or the + data-type of the input array if no output array is provided. + out : ndarray, None, or tuple of ndarray and None, optional + A location into which the result is stored. If not provided or None, + a freshly-allocated array is returned. For consistency with + ``ufunc.__call__``, if given as a keyword, this may be wrapped in a + 1-element tuple. + + Returns + ------- + r : ndarray + The accumulated values. If `out` was supplied, `r` is a reference to + `out`. + + Examples + -------- + 1-D array examples: + + >>> import numpy as np + >>> np.add.accumulate([2, 3, 5]) + array([ 2, 5, 10]) + >>> np.multiply.accumulate([2, 3, 5]) + array([ 2, 6, 30]) + + 2-D array examples: + + >>> I = np.eye(2) + >>> I + array([[1., 0.], + [0., 1.]]) + + Accumulate along axis 0 (rows), down columns: + + >>> np.add.accumulate(I, 0) + array([[1., 0.], + [1., 1.]]) + >>> np.add.accumulate(I) # no axis specified = axis zero + array([[1., 0.], + [1., 1.]]) + + Accumulate along axis 1 (columns), through rows: + + >>> np.add.accumulate(I, 1) + array([[1., 1.], + [0., 1.]]) + + """)) + +add_newdoc('numpy._core', 'ufunc', ('reduceat', + """ + reduceat(array, indices, axis=0, dtype=None, out=None) + + Performs a (local) reduce with specified slices over a single axis. + + For i in ``range(len(indices))``, `reduceat` computes + ``ufunc.reduce(array[indices[i]:indices[i+1]])``, which becomes the i-th + generalized "row" parallel to `axis` in the final result (i.e., in a + 2-D array, for example, if `axis = 0`, it becomes the i-th row, but if + `axis = 1`, it becomes the i-th column). There are three exceptions to this: + + * when ``i = len(indices) - 1`` (so for the last index), + ``indices[i+1] = array.shape[axis]``. + * if ``indices[i] >= indices[i + 1]``, the i-th generalized "row" is + simply ``array[indices[i]]``. + * if ``indices[i] >= len(array)`` or ``indices[i] < 0``, an error is raised. + + The shape of the output depends on the size of `indices`, and may be + larger than `array` (this happens if ``len(indices) > array.shape[axis]``). + + Parameters + ---------- + array : array_like + The array to act on. + indices : array_like + Paired indices, comma separated (not colon), specifying slices to + reduce. + axis : int, optional + The axis along which to apply the reduceat. + dtype : data-type code, optional + The data type used to perform the operation. Defaults to that of + ``out`` if given, and the data type of ``array`` otherwise (though + upcast to conserve precision for some cases, such as + ``numpy.add.reduce`` for integer or boolean input). + out : ndarray, None, or tuple of ndarray and None, optional + A location into which the result is stored. If not provided or None, + a freshly-allocated array is returned. For consistency with + ``ufunc.__call__``, if given as a keyword, this may be wrapped in a + 1-element tuple. + + Returns + ------- + r : ndarray + The reduced values. If `out` was supplied, `r` is a reference to + `out`. + + Notes + ----- + A descriptive example: + + If `array` is 1-D, the function `ufunc.accumulate(array)` is the same as + ``ufunc.reduceat(array, indices)[::2]`` where `indices` is + ``range(len(array) - 1)`` with a zero placed + in every other element: + ``indices = zeros(2 * len(array) - 1)``, + ``indices[1::2] = range(1, len(array))``. + + Don't be fooled by this attribute's name: `reduceat(array)` is not + necessarily smaller than `array`. + + Examples + -------- + To take the running sum of four successive values: + + >>> import numpy as np + >>> np.add.reduceat(np.arange(8),[0,4, 1,5, 2,6, 3,7])[::2] + array([ 6, 10, 14, 18]) + + A 2-D example: + + >>> x = np.linspace(0, 15, 16).reshape(4,4) + >>> x + array([[ 0., 1., 2., 3.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.], + [12., 13., 14., 15.]]) + + :: + + # reduce such that the result has the following five rows: + # [row1 + row2 + row3] + # [row4] + # [row2] + # [row3] + # [row1 + row2 + row3 + row4] + + >>> np.add.reduceat(x, [0, 3, 1, 2, 0]) + array([[12., 15., 18., 21.], + [12., 13., 14., 15.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.], + [24., 28., 32., 36.]]) + + :: + + # reduce such that result has the following two columns: + # [col1 * col2 * col3, col4] + + >>> np.multiply.reduceat(x, [0, 3], 1) + array([[ 0., 3.], + [ 120., 7.], + [ 720., 11.], + [2184., 15.]]) + + """)) + +add_newdoc('numpy._core', 'ufunc', ('outer', + r""" + outer(A, B, /, **kwargs) + + Apply the ufunc `op` to all pairs (a, b) with a in `A` and b in `B`. + + Let ``M = A.ndim``, ``N = B.ndim``. Then the result, `C`, of + ``op.outer(A, B)`` is an array of dimension M + N such that: + + .. math:: C[i_0, ..., i_{M-1}, j_0, ..., j_{N-1}] = + op(A[i_0, ..., i_{M-1}], B[j_0, ..., j_{N-1}]) + + For `A` and `B` one-dimensional, this is equivalent to:: + + r = empty(len(A),len(B)) + for i in range(len(A)): + for j in range(len(B)): + r[i,j] = op(A[i], B[j]) # op = ufunc in question + + Parameters + ---------- + A : array_like + First array + B : array_like + Second array + kwargs : any + Arguments to pass on to the ufunc. Typically `dtype` or `out`. + See `ufunc` for a comprehensive overview of all available arguments. + + Returns + ------- + r : ndarray + Output array + + See Also + -------- + numpy.outer : A less powerful version of ``np.multiply.outer`` + that `ravel`\ s all inputs to 1D. This exists + primarily for compatibility with old code. + + tensordot : ``np.tensordot(a, b, axes=((), ()))`` and + ``np.multiply.outer(a, b)`` behave same for all + dimensions of a and b. + + Examples + -------- + >>> np.multiply.outer([1, 2, 3], [4, 5, 6]) + array([[ 4, 5, 6], + [ 8, 10, 12], + [12, 15, 18]]) + + A multi-dimensional example: + + >>> A = np.array([[1, 2, 3], [4, 5, 6]]) + >>> A.shape + (2, 3) + >>> B = np.array([[1, 2, 3, 4]]) + >>> B.shape + (1, 4) + >>> C = np.multiply.outer(A, B) + >>> C.shape; C + (2, 3, 1, 4) + array([[[[ 1, 2, 3, 4]], + [[ 2, 4, 6, 8]], + [[ 3, 6, 9, 12]]], + [[[ 4, 8, 12, 16]], + [[ 5, 10, 15, 20]], + [[ 6, 12, 18, 24]]]]) + + """)) + +add_newdoc('numpy._core', 'ufunc', ('at', + """ + at(a, indices, b=None, /) + + Performs unbuffered in place operation on operand 'a' for elements + specified by 'indices'. For addition ufunc, this method is equivalent to + ``a[indices] += b``, except that results are accumulated for elements that + are indexed more than once. For example, ``a[[0,0]] += 1`` will only + increment the first element once because of buffering, whereas + ``add.at(a, [0,0], 1)`` will increment the first element twice. + + Parameters + ---------- + a : array_like + The array to perform in place operation on. + indices : array_like or tuple + Array like index object or slice object for indexing into first + operand. If first operand has multiple dimensions, indices can be a + tuple of array like index objects or slice objects. + b : array_like + Second operand for ufuncs requiring two operands. Operand must be + broadcastable over first operand after indexing or slicing. + + Examples + -------- + Set items 0 and 1 to their negative values: + + >>> import numpy as np + >>> a = np.array([1, 2, 3, 4]) + >>> np.negative.at(a, [0, 1]) + >>> a + array([-1, -2, 3, 4]) + + Increment items 0 and 1, and increment item 2 twice: + + >>> a = np.array([1, 2, 3, 4]) + >>> np.add.at(a, [0, 1, 2, 2], 1) + >>> a + array([2, 3, 5, 4]) + + Add items 0 and 1 in first array to second array, + and store results in first array: + + >>> a = np.array([1, 2, 3, 4]) + >>> b = np.array([1, 2]) + >>> np.add.at(a, [0, 1], b) + >>> a + array([2, 4, 3, 4]) + + """)) + +add_newdoc('numpy._core', 'ufunc', ('resolve_dtypes', + """ + resolve_dtypes(dtypes, *, signature=None, casting=None, reduction=False) + + Find the dtypes NumPy will use for the operation. Both input and + output dtypes are returned and may differ from those provided. + + .. note:: + + This function always applies NEP 50 rules since it is not provided + any actual values. The Python types ``int``, ``float``, and + ``complex`` thus behave weak and should be passed for "untyped" + Python input. + + Parameters + ---------- + dtypes : tuple of dtypes, None, or literal int, float, complex + The input dtypes for each operand. Output operands can be + None, indicating that the dtype must be found. + signature : tuple of DTypes or None, optional + If given, enforces exact DType (classes) of the specific operand. + The ufunc ``dtype`` argument is equivalent to passing a tuple with + only output dtypes set. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + The casting mode when casting is necessary. This is identical to + the ufunc call casting modes. + reduction : boolean + If given, the resolution assumes a reduce operation is happening + which slightly changes the promotion and type resolution rules. + `dtypes` is usually something like ``(None, np.dtype("i2"), None)`` + for reductions (first input is also the output). + + .. note:: + + The default casting mode is "same_kind", however, as of + NumPy 1.24, NumPy uses "unsafe" for reductions. + + Returns + ------- + dtypes : tuple of dtypes + The dtypes which NumPy would use for the calculation. Note that + dtypes may not match the passed in ones (casting is necessary). + + + Examples + -------- + This API requires passing dtypes, define them for convenience: + + >>> import numpy as np + >>> int32 = np.dtype("int32") + >>> float32 = np.dtype("float32") + + The typical ufunc call does not pass an output dtype. `numpy.add` has two + inputs and one output, so leave the output as ``None`` (not provided): + + >>> np.add.resolve_dtypes((int32, float32, None)) + (dtype('float64'), dtype('float64'), dtype('float64')) + + The loop found uses "float64" for all operands (including the output), the + first input would be cast. + + ``resolve_dtypes`` supports "weak" handling for Python scalars by passing + ``int``, ``float``, or ``complex``: + + >>> np.add.resolve_dtypes((float32, float, None)) + (dtype('float32'), dtype('float32'), dtype('float32')) + + Where the Python ``float`` behaves similar to a Python value ``0.0`` + in a ufunc call. (See :ref:`NEP 50 ` for details.) + + """)) + +add_newdoc('numpy._core', 'ufunc', ('_resolve_dtypes_and_context', + """ + _resolve_dtypes_and_context(dtypes, *, signature=None, casting=None, reduction=False) + + See `numpy.ufunc.resolve_dtypes` for parameter information. This + function is considered *unstable*. You may use it, but the returned + information is NumPy version specific and expected to change. + Large API/ABI changes are not expected, but a new NumPy version is + expected to require updating code using this functionality. + + This function is designed to be used in conjunction with + `numpy.ufunc._get_strided_loop`. The calls are split to mirror the C API + and allow future improvements. + + Returns + ------- + dtypes : tuple of dtypes + call_info : + PyCapsule with all necessary information to get access to low level + C calls. See `numpy.ufunc._get_strided_loop` for more information. + + """)) + +add_newdoc('numpy._core', 'ufunc', ('_get_strided_loop', + """ + _get_strided_loop(call_info, /, *, fixed_strides=None) + + This function fills in the ``call_info`` capsule to include all + information necessary to call the low-level strided loop from NumPy. + + See notes for more information. + + Parameters + ---------- + call_info : PyCapsule + The PyCapsule returned by `numpy.ufunc._resolve_dtypes_and_context`. + fixed_strides : tuple of int or None, optional + A tuple with fixed byte strides of all input arrays. NumPy may use + this information to find specialized loops, so any call must follow + the given stride. Use ``None`` to indicate that the stride is not + known (or not fixed) for all calls. + + Notes + ----- + Together with `numpy.ufunc._resolve_dtypes_and_context` this function + gives low-level access to the NumPy ufunc loops. + The first function does general preparation and returns the required + information. It returns this as a C capsule with the version specific + name ``numpy_1.24_ufunc_call_info``. + The NumPy 1.24 ufunc call info capsule has the following layout:: + + typedef struct { + PyArrayMethod_StridedLoop *strided_loop; + PyArrayMethod_Context *context; + NpyAuxData *auxdata; + + /* Flag information (expected to change) */ + npy_bool requires_pyapi; /* GIL is required by loop */ + + /* Loop doesn't set FPE flags; if not set check FPE flags */ + npy_bool no_floatingpoint_errors; + } ufunc_call_info; + + Note that the first call only fills in the ``context``. The call to + ``_get_strided_loop`` fills in all other data. The main thing to note is + that the new-style loops return 0 on success, -1 on failure. They are + passed context as new first input and ``auxdata`` as (replaced) last. + + Only the ``strided_loop``signature is considered guaranteed stable + for NumPy bug-fix releases. All other API is tied to the experimental + API versioning. + + The reason for the split call is that cast information is required to + decide what the fixed-strides will be. + + NumPy ties the lifetime of the ``auxdata`` information to the capsule. + + """)) + + + +############################################################################## +# +# Documentation for dtype attributes and methods +# +############################################################################## + +############################################################################## +# +# dtype object +# +############################################################################## + +add_newdoc('numpy._core.multiarray', 'dtype', + """ + dtype(dtype, align=False, copy=False, [metadata]) + + Create a data type object. + + A numpy array is homogeneous, and contains elements described by a + dtype object. A dtype object can be constructed from different + combinations of fundamental numeric types. + + Parameters + ---------- + dtype + Object to be converted to a data type object. + align : bool, optional + Add padding to the fields to match what a C compiler would output + for a similar C-struct. Can be ``True`` only if `obj` is a dictionary + or a comma-separated string. If a struct dtype is being created, + this also sets a sticky alignment flag ``isalignedstruct``. + copy : bool, optional + Make a new copy of the data-type object. If ``False``, the result + may just be a reference to a built-in data-type object. + metadata : dict, optional + An optional dictionary with dtype metadata. + + See also + -------- + result_type + + Examples + -------- + Using array-scalar type: + + >>> import numpy as np + >>> np.dtype(np.int16) + dtype('int16') + + Structured type, one field name 'f1', containing int16: + + >>> np.dtype([('f1', np.int16)]) + dtype([('f1', '>> np.dtype([('f1', [('f1', np.int16)])]) + dtype([('f1', [('f1', '>> np.dtype([('f1', np.uint64), ('f2', np.int32)]) + dtype([('f1', '>> np.dtype([('a','f8'),('b','S10')]) + dtype([('a', '>> np.dtype("i4, (2,3)f8") + dtype([('f0', '>> np.dtype([('hello',(np.int64,3)),('world',np.void,10)]) + dtype([('hello', '>> np.dtype((np.int16, {'x':(np.int8,0), 'y':(np.int8,1)})) + dtype((numpy.int16, [('x', 'i1'), ('y', 'i1')])) + + Using dictionaries. Two fields named 'gender' and 'age': + + >>> np.dtype({'names':['gender','age'], 'formats':['S1',np.uint8]}) + dtype([('gender', 'S1'), ('age', 'u1')]) + + Offsets in bytes, here 0 and 25: + + >>> np.dtype({'surname':('S25',0),'age':(np.uint8,25)}) + dtype([('surname', 'S25'), ('age', 'u1')]) + + """) + +############################################################################## +# +# dtype attributes +# +############################################################################## + +add_newdoc('numpy._core.multiarray', 'dtype', ('alignment', + """ + The required alignment (bytes) of this data-type according to the compiler. + + More information is available in the C-API section of the manual. + + Examples + -------- + + >>> import numpy as np + >>> x = np.dtype('i4') + >>> x.alignment + 4 + + >>> x = np.dtype(float) + >>> x.alignment + 8 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('byteorder', + """ + A character indicating the byte-order of this data-type object. + + One of: + + === ============== + '=' native + '<' little-endian + '>' big-endian + '|' not applicable + === ============== + + All built-in data-type objects have byteorder either '=' or '|'. + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype('i2') + >>> dt.byteorder + '=' + >>> # endian is not relevant for 8 bit numbers + >>> np.dtype('i1').byteorder + '|' + >>> # or ASCII strings + >>> np.dtype('S2').byteorder + '|' + >>> # Even if specific code is given, and it is native + >>> # '=' is the byteorder + >>> import sys + >>> sys_is_le = sys.byteorder == 'little' + >>> native_code = '<' if sys_is_le else '>' + >>> swapped_code = '>' if sys_is_le else '<' + >>> dt = np.dtype(native_code + 'i2') + >>> dt.byteorder + '=' + >>> # Swapped code shows up as itself + >>> dt = np.dtype(swapped_code + 'i2') + >>> dt.byteorder == swapped_code + True + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('char', + """A unique character code for each of the 21 different built-in types. + + Examples + -------- + + >>> import numpy as np + >>> x = np.dtype(float) + >>> x.char + 'd' + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('descr', + """ + `__array_interface__` description of the data-type. + + The format is that required by the 'descr' key in the + `__array_interface__` attribute. + + Warning: This attribute exists specifically for `__array_interface__`, + and passing it directly to `numpy.dtype` will not accurately reconstruct + some dtypes (e.g., scalar and subarray dtypes). + + Examples + -------- + + >>> import numpy as np + >>> x = np.dtype(float) + >>> x.descr + [('', '>> dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + >>> dt.descr + [('name', '>> import numpy as np + >>> dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + >>> print(dt.fields) + {'grades': (dtype(('float64',(2,))), 16), 'name': (dtype('|S16'), 0)} + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('flags', + """ + Bit-flags describing how this data type is to be interpreted. + + Bit-masks are in ``numpy._core.multiarray`` as the constants + `ITEM_HASOBJECT`, `LIST_PICKLE`, `ITEM_IS_POINTER`, `NEEDS_INIT`, + `NEEDS_PYAPI`, `USE_GETITEM`, `USE_SETITEM`. A full explanation + of these flags is in C-API documentation; they are largely useful + for user-defined data-types. + + The following example demonstrates that operations on this particular + dtype requires Python C-API. + + Examples + -------- + + >>> import numpy as np + >>> x = np.dtype([('a', np.int32, 8), ('b', np.float64, 6)]) + >>> x.flags + 16 + >>> np._core.multiarray.NEEDS_PYAPI + 16 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('hasobject', + """ + Boolean indicating whether this dtype contains any reference-counted + objects in any fields or sub-dtypes. + + Recall that what is actually in the ndarray memory representing + the Python object is the memory address of that object (a pointer). + Special handling may be required, and this attribute is useful for + distinguishing data types that may contain arbitrary Python objects + and data-types that won't. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('isbuiltin', + """ + Integer indicating how this dtype relates to the built-in dtypes. + + Read-only. + + = ======================================================================== + 0 if this is a structured array type, with fields + 1 if this is a dtype compiled into numpy (such as ints, floats etc) + 2 if the dtype is for a user-defined numpy type + A user-defined type uses the numpy C-API machinery to extend + numpy to handle a new array type. See + :ref:`user.user-defined-data-types` in the NumPy manual. + = ======================================================================== + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype('i2') + >>> dt.isbuiltin + 1 + >>> dt = np.dtype('f8') + >>> dt.isbuiltin + 1 + >>> dt = np.dtype([('field1', 'f8')]) + >>> dt.isbuiltin + 0 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('isnative', + """ + Boolean indicating whether the byte order of this dtype is native + to the platform. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('isalignedstruct', + """ + Boolean indicating whether the dtype is a struct which maintains + field alignment. This flag is sticky, so when combining multiple + structs together, it is preserved and produces new dtypes which + are also aligned. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('itemsize', + """ + The element size of this data-type object. + + For 18 of the 21 types this number is fixed by the data-type. + For the flexible data-types, this number can be anything. + + Examples + -------- + + >>> import numpy as np + >>> arr = np.array([[1, 2], [3, 4]]) + >>> arr.dtype + dtype('int64') + >>> arr.itemsize + 8 + + >>> dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + >>> dt.itemsize + 80 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('kind', + """ + A character code (one of 'biufcmMOSUV') identifying the general kind of data. + + = ====================== + b boolean + i signed integer + u unsigned integer + f floating-point + c complex floating-point + m timedelta + M datetime + O object + S (byte-)string + U Unicode + V void + = ====================== + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype('i4') + >>> dt.kind + 'i' + >>> dt = np.dtype('f8') + >>> dt.kind + 'f' + >>> dt = np.dtype([('field1', 'f8')]) + >>> dt.kind + 'V' + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('metadata', + """ + Either ``None`` or a readonly dictionary of metadata (mappingproxy). + + The metadata field can be set using any dictionary at data-type + creation. NumPy currently has no uniform approach to propagating + metadata; although some array operations preserve it, there is no + guarantee that others will. + + .. warning:: + + Although used in certain projects, this feature was long undocumented + and is not well supported. Some aspects of metadata propagation + are expected to change in the future. + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype(float, metadata={"key": "value"}) + >>> dt.metadata["key"] + 'value' + >>> arr = np.array([1, 2, 3], dtype=dt) + >>> arr.dtype.metadata + mappingproxy({'key': 'value'}) + + Adding arrays with identical datatypes currently preserves the metadata: + + >>> (arr + arr).dtype.metadata + mappingproxy({'key': 'value'}) + + But if the arrays have different dtype metadata, the metadata may be + dropped: + + >>> dt2 = np.dtype(float, metadata={"key2": "value2"}) + >>> arr2 = np.array([3, 2, 1], dtype=dt2) + >>> (arr + arr2).dtype.metadata is None + True # The metadata field is cleared so None is returned + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('name', + """ + A bit-width name for this data-type. + + Un-sized flexible data-type objects do not have this attribute. + + Examples + -------- + + >>> import numpy as np + >>> x = np.dtype(float) + >>> x.name + 'float64' + >>> x = np.dtype([('a', np.int32, 8), ('b', np.float64, 6)]) + >>> x.name + 'void640' + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('names', + """ + Ordered list of field names, or ``None`` if there are no fields. + + The names are ordered according to increasing byte offset. This can be + used, for example, to walk through all of the named fields in offset order. + + Examples + -------- + >>> dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + >>> dt.names + ('name', 'grades') + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('num', + """ + A unique number for each of the 21 different built-in types. + + These are roughly ordered from least-to-most precision. + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype(str) + >>> dt.num + 19 + + >>> dt = np.dtype(float) + >>> dt.num + 12 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('shape', + """ + Shape tuple of the sub-array if this data type describes a sub-array, + and ``()`` otherwise. + + Examples + -------- + + >>> import numpy as np + >>> dt = np.dtype(('i4', 4)) + >>> dt.shape + (4,) + + >>> dt = np.dtype(('i4', (2, 3))) + >>> dt.shape + (2, 3) + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('ndim', + """ + Number of dimensions of the sub-array if this data type describes a + sub-array, and ``0`` otherwise. + + Examples + -------- + >>> import numpy as np + >>> x = np.dtype(float) + >>> x.ndim + 0 + + >>> x = np.dtype((float, 8)) + >>> x.ndim + 1 + + >>> x = np.dtype(('i4', (3, 4))) + >>> x.ndim + 2 + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('str', + """The array-protocol typestring of this data-type object.""")) + +add_newdoc('numpy._core.multiarray', 'dtype', ('subdtype', + """ + Tuple ``(item_dtype, shape)`` if this `dtype` describes a sub-array, and + None otherwise. + + The *shape* is the fixed shape of the sub-array described by this + data type, and *item_dtype* the data type of the array. + + If a field whose dtype object has this attribute is retrieved, + then the extra dimensions implied by *shape* are tacked on to + the end of the retrieved array. + + See Also + -------- + dtype.base + + Examples + -------- + >>> import numpy as np + >>> x = numpy.dtype('8f') + >>> x.subdtype + (dtype('float32'), (8,)) + + >>> x = numpy.dtype('i2') + >>> x.subdtype + >>> + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('base', + """ + Returns dtype for the base element of the subarrays, + regardless of their dimension or shape. + + See Also + -------- + dtype.subdtype + + Examples + -------- + >>> import numpy as np + >>> x = numpy.dtype('8f') + >>> x.base + dtype('float32') + + >>> x = numpy.dtype('i2') + >>> x.base + dtype('int16') + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('type', + """The type object used to instantiate a scalar of this data-type.""")) + +############################################################################## +# +# dtype methods +# +############################################################################## + +add_newdoc('numpy._core.multiarray', 'dtype', ('newbyteorder', + """ + newbyteorder(new_order='S', /) + + Return a new dtype with a different byte order. + + Changes are also made in all fields and sub-arrays of the data type. + + Parameters + ---------- + new_order : string, optional + Byte order to force; a value from the byte order specifications + below. The default value ('S') results in swapping the current + byte order. `new_order` codes can be any of: + + * 'S' - swap dtype from current to opposite endian + * {'<', 'little'} - little endian + * {'>', 'big'} - big endian + * {'=', 'native'} - native order + * {'|', 'I'} - ignore (no change to byte order) + + Returns + ------- + new_dtype : dtype + New dtype object with the given change to the byte order. + + Notes + ----- + Changes are also made in all fields and sub-arrays of the data type. + + Examples + -------- + >>> import sys + >>> sys_is_le = sys.byteorder == 'little' + >>> native_code = '<' if sys_is_le else '>' + >>> swapped_code = '>' if sys_is_le else '<' + >>> import numpy as np + >>> native_dt = np.dtype(native_code+'i2') + >>> swapped_dt = np.dtype(swapped_code+'i2') + >>> native_dt.newbyteorder('S') == swapped_dt + True + >>> native_dt.newbyteorder() == swapped_dt + True + >>> native_dt == swapped_dt.newbyteorder('S') + True + >>> native_dt == swapped_dt.newbyteorder('=') + True + >>> native_dt == swapped_dt.newbyteorder('N') + True + >>> native_dt == native_dt.newbyteorder('|') + True + >>> np.dtype('>> np.dtype('>> np.dtype('>i2') == native_dt.newbyteorder('>') + True + >>> np.dtype('>i2') == native_dt.newbyteorder('B') + True + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('__class_getitem__', + """ + __class_getitem__(item, /) + + Return a parametrized wrapper around the `~numpy.dtype` type. + + .. versionadded:: 1.22 + + Returns + ------- + alias : types.GenericAlias + A parametrized `~numpy.dtype` type. + + Examples + -------- + >>> import numpy as np + + >>> np.dtype[np.int64] + numpy.dtype[numpy.int64] + + See Also + -------- + :pep:`585` : Type hinting generics in standard collections. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('__ge__', + """ + __ge__(value, /) + + Return ``self >= value``. + + Equivalent to ``np.can_cast(value, self, casting="safe")``. + + See Also + -------- + can_cast : Returns True if cast between data types can occur according to + the casting rule. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('__le__', + """ + __le__(value, /) + + Return ``self <= value``. + + Equivalent to ``np.can_cast(self, value, casting="safe")``. + + See Also + -------- + can_cast : Returns True if cast between data types can occur according to + the casting rule. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('__gt__', + """ + __ge__(value, /) + + Return ``self > value``. + + Equivalent to + ``self != value and np.can_cast(value, self, casting="safe")``. + + See Also + -------- + can_cast : Returns True if cast between data types can occur according to + the casting rule. + + """)) + +add_newdoc('numpy._core.multiarray', 'dtype', ('__lt__', + """ + __lt__(value, /) + + Return ``self < value``. + + Equivalent to + ``self != value and np.can_cast(self, value, casting="safe")``. + + See Also + -------- + can_cast : Returns True if cast between data types can occur according to + the casting rule. + + """)) + +############################################################################## +# +# Datetime-related Methods +# +############################################################################## + +add_newdoc('numpy._core.multiarray', 'busdaycalendar', + """ + busdaycalendar(weekmask='1111100', holidays=None) + + A business day calendar object that efficiently stores information + defining valid days for the busday family of functions. + + The default valid days are Monday through Friday ("business days"). + A busdaycalendar object can be specified with any set of weekly + valid days, plus an optional "holiday" dates that always will be invalid. + + Once a busdaycalendar object is created, the weekmask and holidays + cannot be modified. + + Parameters + ---------- + weekmask : str or array_like of bool, optional + A seven-element array indicating which of Monday through Sunday are + valid days. May be specified as a length-seven list or array, like + [1,1,1,1,1,0,0]; a length-seven string, like '1111100'; or a string + like "Mon Tue Wed Thu Fri", made up of 3-character abbreviations for + weekdays, optionally separated by white space. Valid abbreviations + are: Mon Tue Wed Thu Fri Sat Sun + holidays : array_like of datetime64[D], optional + An array of dates to consider as invalid dates, no matter which + weekday they fall upon. Holiday dates may be specified in any + order, and NaT (not-a-time) dates are ignored. This list is + saved in a normalized form that is suited for fast calculations + of valid days. + + Returns + ------- + out : busdaycalendar + A business day calendar object containing the specified + weekmask and holidays values. + + See Also + -------- + is_busday : Returns a boolean array indicating valid days. + busday_offset : Applies an offset counted in valid days. + busday_count : Counts how many valid days are in a half-open date range. + + Attributes + ---------- + weekmask : (copy) seven-element array of bool + holidays : (copy) sorted array of datetime64[D] + + Notes + ----- + Once a busdaycalendar object is created, you cannot modify the + weekmask or holidays. The attributes return copies of internal data. + + Examples + -------- + >>> import numpy as np + >>> # Some important days in July + ... bdd = np.busdaycalendar( + ... holidays=['2011-07-01', '2011-07-04', '2011-07-17']) + >>> # Default is Monday to Friday weekdays + ... bdd.weekmask + array([ True, True, True, True, True, False, False]) + >>> # Any holidays already on the weekend are removed + ... bdd.holidays + array(['2011-07-01', '2011-07-04'], dtype='datetime64[D]') + """) + +add_newdoc('numpy._core.multiarray', 'busdaycalendar', ('weekmask', + """A copy of the seven-element boolean mask indicating valid days.""")) + +add_newdoc('numpy._core.multiarray', 'busdaycalendar', ('holidays', + """A copy of the holiday array indicating additional invalid days.""")) + +add_newdoc('numpy._core.multiarray', 'normalize_axis_index', + """ + normalize_axis_index(axis, ndim, msg_prefix=None) + + Normalizes an axis index, `axis`, such that is a valid positive index into + the shape of array with `ndim` dimensions. Raises an AxisError with an + appropriate message if this is not possible. + + Used internally by all axis-checking logic. + + Parameters + ---------- + axis : int + The un-normalized index of the axis. Can be negative + ndim : int + The number of dimensions of the array that `axis` should be normalized + against + msg_prefix : str + A prefix to put before the message, typically the name of the argument + + Returns + ------- + normalized_axis : int + The normalized axis index, such that `0 <= normalized_axis < ndim` + + Raises + ------ + AxisError + If the axis index is invalid, when `-ndim <= axis < ndim` is false. + + Examples + -------- + >>> import numpy as np + >>> from numpy.lib.array_utils import normalize_axis_index + >>> normalize_axis_index(0, ndim=3) + 0 + >>> normalize_axis_index(1, ndim=3) + 1 + >>> normalize_axis_index(-1, ndim=3) + 2 + + >>> normalize_axis_index(3, ndim=3) + Traceback (most recent call last): + ... + numpy.exceptions.AxisError: axis 3 is out of bounds for array ... + >>> normalize_axis_index(-4, ndim=3, msg_prefix='axes_arg') + Traceback (most recent call last): + ... + numpy.exceptions.AxisError: axes_arg: axis -4 is out of bounds ... + """) + +add_newdoc('numpy._core.multiarray', 'datetime_data', + """ + datetime_data(dtype, /) + + Get information about the step size of a date or time type. + + The returned tuple can be passed as the second argument of `numpy.datetime64` and + `numpy.timedelta64`. + + Parameters + ---------- + dtype : dtype + The dtype object, which must be a `datetime64` or `timedelta64` type. + + Returns + ------- + unit : str + The :ref:`datetime unit ` on which this dtype + is based. + count : int + The number of base units in a step. + + Examples + -------- + >>> import numpy as np + >>> dt_25s = np.dtype('timedelta64[25s]') + >>> np.datetime_data(dt_25s) + ('s', 25) + >>> np.array(10, dt_25s).astype('timedelta64[s]') + array(250, dtype='timedelta64[s]') + + The result can be used to construct a datetime that uses the same units + as a timedelta + + >>> np.datetime64('2010', np.datetime_data(dt_25s)) + np.datetime64('2010-01-01T00:00:00','25s') + """) + + +############################################################################## +# +# Documentation for `generic` attributes and methods +# +############################################################################## + +add_newdoc('numpy._core.numerictypes', 'generic', + """ + Base class for numpy scalar types. + + Class from which most (all?) numpy scalar types are derived. For + consistency, exposes the same API as `ndarray`, despite many + consequent attributes being either "get-only," or completely irrelevant. + This is the class from which it is strongly suggested users should derive + custom scalar types. + + """) + +# Attributes + +def refer_to_array_attribute(attr, method=True): + docstring = """ + Scalar {} identical to the corresponding array attribute. + + Please see `ndarray.{}`. + """ + + return attr, docstring.format("method" if method else "attribute", attr) + + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('T', method=False)) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('base', method=False)) + +add_newdoc('numpy._core.numerictypes', 'generic', ('data', + """Pointer to start of data.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('dtype', + """Get array data-descriptor.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('flags', + """The integer value of flags.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('flat', + """A 1-D view of the scalar.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('imag', + """The imaginary part of the scalar.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('itemsize', + """The length of one element in bytes.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('ndim', + """The number of array dimensions.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('real', + """The real part of the scalar.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('shape', + """Tuple of array dimensions.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('size', + """The number of elements in the gentype.""")) + +add_newdoc('numpy._core.numerictypes', 'generic', ('strides', + """Tuple of bytes steps in each dimension.""")) + +# Methods + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('all')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('any')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('argmax')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('argmin')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('argsort')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('astype')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('byteswap')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('choose')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('clip')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('compress')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('conjugate')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('copy')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('cumprod')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('cumsum')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('diagonal')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('dump')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('dumps')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('fill')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('flatten')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('getfield')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('item')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('max')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('mean')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('min')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('nonzero')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('prod')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('put')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('ravel')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('repeat')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('reshape')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('resize')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('round')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('searchsorted')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('setfield')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('setflags')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('sort')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('squeeze')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('std')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('sum')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('swapaxes')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('take')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('tofile')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('tolist')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('tostring')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('trace')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('transpose')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('var')) + +add_newdoc('numpy._core.numerictypes', 'generic', + refer_to_array_attribute('view')) + +add_newdoc('numpy._core.numerictypes', 'number', ('__class_getitem__', + """ + __class_getitem__(item, /) + + Return a parametrized wrapper around the `~numpy.number` type. + + .. versionadded:: 1.22 + + Returns + ------- + alias : types.GenericAlias + A parametrized `~numpy.number` type. + + Examples + -------- + >>> from typing import Any + >>> import numpy as np + + >>> np.signedinteger[Any] + numpy.signedinteger[typing.Any] + + See Also + -------- + :pep:`585` : Type hinting generics in standard collections. + + """)) + +############################################################################## +# +# Documentation for scalar type abstract base classes in type hierarchy +# +############################################################################## + + +add_newdoc('numpy._core.numerictypes', 'number', + """ + Abstract base class of all numeric scalar types. + + """) + +add_newdoc('numpy._core.numerictypes', 'integer', + """ + Abstract base class of all integer scalar types. + + """) + +add_newdoc('numpy._core.numerictypes', 'signedinteger', + """ + Abstract base class of all signed integer scalar types. + + """) + +add_newdoc('numpy._core.numerictypes', 'unsignedinteger', + """ + Abstract base class of all unsigned integer scalar types. + + """) + +add_newdoc('numpy._core.numerictypes', 'inexact', + """ + Abstract base class of all numeric scalar types with a (potentially) + inexact representation of the values in its range, such as + floating-point numbers. + + """) + +add_newdoc('numpy._core.numerictypes', 'floating', + """ + Abstract base class of all floating-point scalar types. + + """) + +add_newdoc('numpy._core.numerictypes', 'complexfloating', + """ + Abstract base class of all complex number scalar types that are made up of + floating-point numbers. + + """) + +add_newdoc('numpy._core.numerictypes', 'flexible', + """ + Abstract base class of all scalar types without predefined length. + The actual size of these types depends on the specific `numpy.dtype` + instantiation. + + """) + +add_newdoc('numpy._core.numerictypes', 'character', + """ + Abstract base class of all character string scalar types. + + """) + +add_newdoc('numpy._core.multiarray', 'StringDType', + """ + StringDType(*, na_object=np._NoValue, coerce=True) + + Create a StringDType instance. + + StringDType can be used to store UTF-8 encoded variable-width strings in + a NumPy array. + + Parameters + ---------- + na_object : object, optional + Object used to represent missing data. If unset, the array will not + use a missing data sentinel. + coerce : bool, optional + Whether or not items in an array-like passed to an array creation + function that are neither a str or str subtype should be coerced to + str. Defaults to True. If set to False, creating a StringDType + array from an array-like containing entries that are not already + strings will raise an error. + + Examples + -------- + + >>> import numpy as np + + >>> from numpy.dtypes import StringDType + >>> np.array(["hello", "world"], dtype=StringDType()) + array(["hello", "world"], dtype=StringDType()) + + >>> arr = np.array(["hello", None, "world"], + ... dtype=StringDType(na_object=None)) + >>> arr + array(["hello", None, "world"], dtype=StringDType(na_object=None)) + >>> arr[1] is None + True + + >>> arr = np.array(["hello", np.nan, "world"], + ... dtype=StringDType(na_object=np.nan)) + >>> np.isnan(arr) + array([False, True, False]) + + >>> np.array([1.2, object(), "hello world"], + ... dtype=StringDType(coerce=True)) + ValueError: StringDType only allows string data when string coercion + is disabled. + + >>> np.array(["hello", "world"], dtype=StringDType(coerce=True)) + array(["hello", "world"], dtype=StringDType(coerce=True)) + """) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.pyi new file mode 100644 index 0000000000000000000000000000000000000000..b23c3b1adedd9b9b9f24930ac4940501a4a3dc91 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs.pyi @@ -0,0 +1,3 @@ +from .overrides import get_array_function_like_doc as get_array_function_like_doc + +def refer_to_array_attribute(attr: str, method: bool = True) -> tuple[str, str]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.py new file mode 100644 index 0000000000000000000000000000000000000000..52035e9fb4ae6e0819b69eea516e5b8b14293b17 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.py @@ -0,0 +1,389 @@ +""" +This file is separate from ``_add_newdocs.py`` so that it can be mocked out by +our sphinx ``conf.py`` during doc builds, where we want to avoid showing +platform-dependent information. +""" +import sys +import os +from numpy._core import dtype +from numpy._core import numerictypes as _numerictypes +from numpy._core.function_base import add_newdoc + +############################################################################## +# +# Documentation for concrete scalar classes +# +############################################################################## + +def numeric_type_aliases(aliases): + def type_aliases_gen(): + for alias, doc in aliases: + try: + alias_type = getattr(_numerictypes, alias) + except AttributeError: + # The set of aliases that actually exist varies between platforms + pass + else: + yield (alias_type, alias, doc) + return list(type_aliases_gen()) + + +possible_aliases = numeric_type_aliases([ + ('int8', '8-bit signed integer (``-128`` to ``127``)'), + ('int16', '16-bit signed integer (``-32_768`` to ``32_767``)'), + ('int32', '32-bit signed integer (``-2_147_483_648`` to ``2_147_483_647``)'), + ('int64', '64-bit signed integer (``-9_223_372_036_854_775_808`` to ``9_223_372_036_854_775_807``)'), + ('intp', 'Signed integer large enough to fit pointer, compatible with C ``intptr_t``'), + ('uint8', '8-bit unsigned integer (``0`` to ``255``)'), + ('uint16', '16-bit unsigned integer (``0`` to ``65_535``)'), + ('uint32', '32-bit unsigned integer (``0`` to ``4_294_967_295``)'), + ('uint64', '64-bit unsigned integer (``0`` to ``18_446_744_073_709_551_615``)'), + ('uintp', 'Unsigned integer large enough to fit pointer, compatible with C ``uintptr_t``'), + ('float16', '16-bit-precision floating-point number type: sign bit, 5 bits exponent, 10 bits mantissa'), + ('float32', '32-bit-precision floating-point number type: sign bit, 8 bits exponent, 23 bits mantissa'), + ('float64', '64-bit precision floating-point number type: sign bit, 11 bits exponent, 52 bits mantissa'), + ('float96', '96-bit extended-precision floating-point number type'), + ('float128', '128-bit extended-precision floating-point number type'), + ('complex64', 'Complex number type composed of 2 32-bit-precision floating-point numbers'), + ('complex128', 'Complex number type composed of 2 64-bit-precision floating-point numbers'), + ('complex192', 'Complex number type composed of 2 96-bit extended-precision floating-point numbers'), + ('complex256', 'Complex number type composed of 2 128-bit extended-precision floating-point numbers'), + ]) + + +def _get_platform_and_machine(): + try: + system, _, _, _, machine = os.uname() + except AttributeError: + system = sys.platform + if system == 'win32': + machine = os.environ.get('PROCESSOR_ARCHITEW6432', '') \ + or os.environ.get('PROCESSOR_ARCHITECTURE', '') + else: + machine = 'unknown' + return system, machine + + +_system, _machine = _get_platform_and_machine() +_doc_alias_string = f":Alias on this platform ({_system} {_machine}):" + + +def add_newdoc_for_scalar_type(obj, fixed_aliases, doc): + # note: `:field: value` is rST syntax which renders as field lists. + o = getattr(_numerictypes, obj) + + character_code = dtype(o).char + canonical_name_doc = "" if obj == o.__name__ else \ + f":Canonical name: `numpy.{obj}`\n " + if fixed_aliases: + alias_doc = ''.join(f":Alias: `numpy.{alias}`\n " + for alias in fixed_aliases) + else: + alias_doc = '' + alias_doc += ''.join(f"{_doc_alias_string} `numpy.{alias}`: {doc}.\n " + for (alias_type, alias, doc) in possible_aliases if alias_type is o) + + docstring = f""" + {doc.strip()} + + :Character code: ``'{character_code}'`` + {canonical_name_doc}{alias_doc} + """ + + add_newdoc('numpy._core.numerictypes', obj, docstring) + + +_bool_docstring = ( + """ + Boolean type (True or False), stored as a byte. + + .. warning:: + + The :class:`bool` type is not a subclass of the :class:`int_` type + (the :class:`bool` is not even a number type). This is different + than Python's default implementation of :class:`bool` as a + sub-class of :class:`int`. + """ +) + +add_newdoc_for_scalar_type('bool', [], _bool_docstring) + +add_newdoc_for_scalar_type('bool_', [], _bool_docstring) + +add_newdoc_for_scalar_type('byte', [], + """ + Signed integer type, compatible with C ``char``. + """) + +add_newdoc_for_scalar_type('short', [], + """ + Signed integer type, compatible with C ``short``. + """) + +add_newdoc_for_scalar_type('intc', [], + """ + Signed integer type, compatible with C ``int``. + """) + +# TODO: These docs probably need an if to highlight the default rather than +# the C-types (and be correct). +add_newdoc_for_scalar_type('int_', [], + """ + Default signed integer type, 64bit on 64bit systems and 32bit on 32bit + systems. + """) + +add_newdoc_for_scalar_type('longlong', [], + """ + Signed integer type, compatible with C ``long long``. + """) + +add_newdoc_for_scalar_type('ubyte', [], + """ + Unsigned integer type, compatible with C ``unsigned char``. + """) + +add_newdoc_for_scalar_type('ushort', [], + """ + Unsigned integer type, compatible with C ``unsigned short``. + """) + +add_newdoc_for_scalar_type('uintc', [], + """ + Unsigned integer type, compatible with C ``unsigned int``. + """) + +add_newdoc_for_scalar_type('uint', [], + """ + Unsigned signed integer type, 64bit on 64bit systems and 32bit on 32bit + systems. + """) + +add_newdoc_for_scalar_type('ulonglong', [], + """ + Signed integer type, compatible with C ``unsigned long long``. + """) + +add_newdoc_for_scalar_type('half', [], + """ + Half-precision floating-point number type. + """) + +add_newdoc_for_scalar_type('single', [], + """ + Single-precision floating-point number type, compatible with C ``float``. + """) + +add_newdoc_for_scalar_type('double', [], + """ + Double-precision floating-point number type, compatible with Python + :class:`float` and C ``double``. + """) + +add_newdoc_for_scalar_type('longdouble', [], + """ + Extended-precision floating-point number type, compatible with C + ``long double`` but not necessarily with IEEE 754 quadruple-precision. + """) + +add_newdoc_for_scalar_type('csingle', [], + """ + Complex number type composed of two single-precision floating-point + numbers. + """) + +add_newdoc_for_scalar_type('cdouble', [], + """ + Complex number type composed of two double-precision floating-point + numbers, compatible with Python :class:`complex`. + """) + +add_newdoc_for_scalar_type('clongdouble', [], + """ + Complex number type composed of two extended-precision floating-point + numbers. + """) + +add_newdoc_for_scalar_type('object_', [], + """ + Any Python object. + """) + +add_newdoc_for_scalar_type('str_', [], + r""" + A unicode string. + + This type strips trailing null codepoints. + + >>> s = np.str_("abc\x00") + >>> s + 'abc' + + Unlike the builtin :class:`str`, this supports the + :ref:`python:bufferobjects`, exposing its contents as UCS4: + + >>> m = memoryview(np.str_("abc")) + >>> m.format + '3w' + >>> m.tobytes() + b'a\x00\x00\x00b\x00\x00\x00c\x00\x00\x00' + """) + +add_newdoc_for_scalar_type('bytes_', [], + r""" + A byte string. + + When used in arrays, this type strips trailing null bytes. + """) + +add_newdoc_for_scalar_type('void', [], + r""" + np.void(length_or_data, /, dtype=None) + + Create a new structured or unstructured void scalar. + + Parameters + ---------- + length_or_data : int, array-like, bytes-like, object + One of multiple meanings (see notes). The length or + bytes data of an unstructured void. Or alternatively, + the data to be stored in the new scalar when `dtype` + is provided. + This can be an array-like, in which case an array may + be returned. + dtype : dtype, optional + If provided the dtype of the new scalar. This dtype must + be "void" dtype (i.e. a structured or unstructured void, + see also :ref:`defining-structured-types`). + + .. versionadded:: 1.24 + + Notes + ----- + For historical reasons and because void scalars can represent both + arbitrary byte data and structured dtypes, the void constructor + has three calling conventions: + + 1. ``np.void(5)`` creates a ``dtype="V5"`` scalar filled with five + ``\0`` bytes. The 5 can be a Python or NumPy integer. + 2. ``np.void(b"bytes-like")`` creates a void scalar from the byte string. + The dtype itemsize will match the byte string length, here ``"V10"``. + 3. When a ``dtype=`` is passed the call is roughly the same as an + array creation. However, a void scalar rather than array is returned. + + Please see the examples which show all three different conventions. + + Examples + -------- + >>> np.void(5) + np.void(b'\x00\x00\x00\x00\x00') + >>> np.void(b'abcd') + np.void(b'\x61\x62\x63\x64') + >>> np.void((3.2, b'eggs'), dtype="d,S5") + np.void((3.2, b'eggs'), dtype=[('f0', '>> np.void(3, dtype=[('x', np.int8), ('y', np.int8)]) + np.void((3, 3), dtype=[('x', 'i1'), ('y', 'i1')]) + + """) + +add_newdoc_for_scalar_type('datetime64', [], + """ + If created from a 64-bit integer, it represents an offset from + ``1970-01-01T00:00:00``. + If created from string, the string can be in ISO 8601 date + or datetime format. + + When parsing a string to create a datetime object, if the string contains + a trailing timezone (A 'Z' or a timezone offset), the timezone will be + dropped and a User Warning is given. + + Datetime64 objects should be considered to be UTC and therefore have an + offset of +0000. + + >>> np.datetime64(10, 'Y') + np.datetime64('1980') + >>> np.datetime64('1980', 'Y') + np.datetime64('1980') + >>> np.datetime64(10, 'D') + np.datetime64('1970-01-11') + + See :ref:`arrays.datetime` for more information. + """) + +add_newdoc_for_scalar_type('timedelta64', [], + """ + A timedelta stored as a 64-bit integer. + + See :ref:`arrays.datetime` for more information. + """) + +add_newdoc('numpy._core.numerictypes', "integer", ('is_integer', + """ + integer.is_integer() -> bool + + Return ``True`` if the number is finite with integral value. + + .. versionadded:: 1.22 + + Examples + -------- + >>> import numpy as np + >>> np.int64(-2).is_integer() + True + >>> np.uint32(5).is_integer() + True + """)) + +# TODO: work out how to put this on the base class, np.floating +for float_name in ('half', 'single', 'double', 'longdouble'): + add_newdoc('numpy._core.numerictypes', float_name, ('as_integer_ratio', + """ + {ftype}.as_integer_ratio() -> (int, int) + + Return a pair of integers, whose ratio is exactly equal to the original + floating point number, and with a positive denominator. + Raise `OverflowError` on infinities and a `ValueError` on NaNs. + + >>> np.{ftype}(10.0).as_integer_ratio() + (10, 1) + >>> np.{ftype}(0.0).as_integer_ratio() + (0, 1) + >>> np.{ftype}(-.25).as_integer_ratio() + (-1, 4) + """.format(ftype=float_name))) + + add_newdoc('numpy._core.numerictypes', float_name, ('is_integer', + f""" + {float_name}.is_integer() -> bool + + Return ``True`` if the floating point number is finite with integral + value, and ``False`` otherwise. + + .. versionadded:: 1.22 + + Examples + -------- + >>> np.{float_name}(-2.0).is_integer() + True + >>> np.{float_name}(3.2).is_integer() + False + """)) + +for int_name in ('int8', 'uint8', 'int16', 'uint16', 'int32', 'uint32', + 'int64', 'uint64', 'int64', 'uint64', 'int64', 'uint64'): + # Add negative examples for signed cases by checking typecode + add_newdoc('numpy._core.numerictypes', int_name, ('bit_count', + f""" + {int_name}.bit_count() -> int + + Computes the number of 1-bits in the absolute value of the input. + Analogous to the builtin `int.bit_count` or ``popcount`` in C++. + + Examples + -------- + >>> np.{int_name}(127).bit_count() + 7""" + + (f""" + >>> np.{int_name}(-127).bit_count() + 7 + """ if dtype(int_name).char.islower() else ""))) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.pyi new file mode 100644 index 0000000000000000000000000000000000000000..4a06c9b07d748d0f6d064ff9e0fdf7839118e143 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_add_newdocs_scalars.pyi @@ -0,0 +1,16 @@ +from collections.abc import Iterable +from typing import Final + +import numpy as np + +possible_aliases: Final[list[tuple[type[np.number], str, str]]] = ... +_system: Final[str] = ... +_machine: Final[str] = ... +_doc_alias_string: Final[str] = ... +_bool_docstring: Final[str] = ... +int_name: str = ... +float_name: str = ... + +def numeric_type_aliases(aliases: list[tuple[str, str]]) -> list[tuple[type[np.number], str, str]]: ... +def add_newdoc_for_scalar_type(obj: str, fixed_aliases: Iterable[str], doc: str) -> None: ... +def _get_platform_and_machine() -> tuple[str, str]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.py new file mode 100644 index 0000000000000000000000000000000000000000..28ee8eaa8c5805bab297d24dfb4e9a1c8d4d8917 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.py @@ -0,0 +1,135 @@ +""" +Functions in the ``as*array`` family that promote array-likes into arrays. + +`require` fits this category despite its name not matching this pattern. +""" +from .overrides import ( + array_function_dispatch, + finalize_array_function_like, + set_module, +) +from .multiarray import array, asanyarray + + +__all__ = ["require"] + + +POSSIBLE_FLAGS = { + 'C': 'C', 'C_CONTIGUOUS': 'C', 'CONTIGUOUS': 'C', + 'F': 'F', 'F_CONTIGUOUS': 'F', 'FORTRAN': 'F', + 'A': 'A', 'ALIGNED': 'A', + 'W': 'W', 'WRITEABLE': 'W', + 'O': 'O', 'OWNDATA': 'O', + 'E': 'E', 'ENSUREARRAY': 'E' +} + + +@finalize_array_function_like +@set_module('numpy') +def require(a, dtype=None, requirements=None, *, like=None): + """ + Return an ndarray of the provided type that satisfies requirements. + + This function is useful to be sure that an array with the correct flags + is returned for passing to compiled code (perhaps through ctypes). + + Parameters + ---------- + a : array_like + The object to be converted to a type-and-requirement-satisfying array. + dtype : data-type + The required data-type. If None preserve the current dtype. If your + application requires the data to be in native byteorder, include + a byteorder specification as a part of the dtype specification. + requirements : str or sequence of str + The requirements list can be any of the following + + * 'F_CONTIGUOUS' ('F') - ensure a Fortran-contiguous array + * 'C_CONTIGUOUS' ('C') - ensure a C-contiguous array + * 'ALIGNED' ('A') - ensure a data-type aligned array + * 'WRITEABLE' ('W') - ensure a writable array + * 'OWNDATA' ('O') - ensure an array that owns its own data + * 'ENSUREARRAY', ('E') - ensure a base array, instead of a subclass + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array with specified requirements and type if given. + + See Also + -------- + asarray : Convert input to an ndarray. + asanyarray : Convert to an ndarray, but pass through ndarray subclasses. + ascontiguousarray : Convert input to a contiguous array. + asfortranarray : Convert input to an ndarray with column-major + memory order. + ndarray.flags : Information about the memory layout of the array. + + Notes + ----- + The returned array will be guaranteed to have the listed requirements + by making a copy if needed. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2,3) + >>> x.flags + C_CONTIGUOUS : True + F_CONTIGUOUS : False + OWNDATA : False + WRITEABLE : True + ALIGNED : True + WRITEBACKIFCOPY : False + + >>> y = np.require(x, dtype=np.float32, requirements=['A', 'O', 'W', 'F']) + >>> y.flags + C_CONTIGUOUS : False + F_CONTIGUOUS : True + OWNDATA : True + WRITEABLE : True + ALIGNED : True + WRITEBACKIFCOPY : False + + """ + if like is not None: + return _require_with_like( + like, + a, + dtype=dtype, + requirements=requirements, + ) + + if not requirements: + return asanyarray(a, dtype=dtype) + + requirements = {POSSIBLE_FLAGS[x.upper()] for x in requirements} + + if 'E' in requirements: + requirements.remove('E') + subok = False + else: + subok = True + + order = 'A' + if requirements >= {'C', 'F'}: + raise ValueError('Cannot specify both "C" and "F" order') + elif 'F' in requirements: + order = 'F' + requirements.remove('F') + elif 'C' in requirements: + order = 'C' + requirements.remove('C') + + arr = array(a, dtype=dtype, order=order, copy=None, subok=subok) + + for prop in requirements: + if not arr.flags[prop]: + return arr.copy(order) + return arr + + +_require_with_like = array_function_dispatch()(require) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.pyi new file mode 100644 index 0000000000000000000000000000000000000000..356d31b009e837817b7027357783d0207e29bc0e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_asarray.pyi @@ -0,0 +1,41 @@ +from collections.abc import Iterable +from typing import Any, TypeAlias, TypeVar, overload, Literal + +from numpy._typing import NDArray, DTypeLike, _SupportsArrayFunc + +_ArrayType = TypeVar("_ArrayType", bound=NDArray[Any]) + +_Requirements: TypeAlias = Literal[ + "C", "C_CONTIGUOUS", "CONTIGUOUS", + "F", "F_CONTIGUOUS", "FORTRAN", + "A", "ALIGNED", + "W", "WRITEABLE", + "O", "OWNDATA" +] +_E: TypeAlias = Literal["E", "ENSUREARRAY"] +_RequirementsWithE: TypeAlias = _Requirements | _E + +@overload +def require( + a: _ArrayType, + dtype: None = ..., + requirements: None | _Requirements | Iterable[_Requirements] = ..., + *, + like: _SupportsArrayFunc = ... +) -> _ArrayType: ... +@overload +def require( + a: object, + dtype: DTypeLike = ..., + requirements: _E | Iterable[_RequirementsWithE] = ..., + *, + like: _SupportsArrayFunc = ... +) -> NDArray[Any]: ... +@overload +def require( + a: object, + dtype: DTypeLike = ..., + requirements: None | _Requirements | Iterable[_Requirements] = ..., + *, + like: _SupportsArrayFunc = ... +) -> NDArray[Any]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..ee9b965902633c3834de86d7e6ec4747cda1183f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.py @@ -0,0 +1,374 @@ +""" +A place for code to be called from the implementation of np.dtype + +String handling is much easier to do correctly in python. +""" +import numpy as np + + +_kind_to_stem = { + 'u': 'uint', + 'i': 'int', + 'c': 'complex', + 'f': 'float', + 'b': 'bool', + 'V': 'void', + 'O': 'object', + 'M': 'datetime', + 'm': 'timedelta', + 'S': 'bytes', + 'U': 'str', +} + + +def _kind_name(dtype): + try: + return _kind_to_stem[dtype.kind] + except KeyError as e: + raise RuntimeError( + "internal dtype error, unknown kind {!r}" + .format(dtype.kind) + ) from None + + +def __str__(dtype): + if dtype.fields is not None: + return _struct_str(dtype, include_align=True) + elif dtype.subdtype: + return _subarray_str(dtype) + elif issubclass(dtype.type, np.flexible) or not dtype.isnative: + return dtype.str + else: + return dtype.name + + +def __repr__(dtype): + arg_str = _construction_repr(dtype, include_align=False) + if dtype.isalignedstruct: + arg_str = arg_str + ", align=True" + return "dtype({})".format(arg_str) + + +def _unpack_field(dtype, offset, title=None): + """ + Helper function to normalize the items in dtype.fields. + + Call as: + + dtype, offset, title = _unpack_field(*dtype.fields[name]) + """ + return dtype, offset, title + + +def _isunsized(dtype): + # PyDataType_ISUNSIZED + return dtype.itemsize == 0 + + +def _construction_repr(dtype, include_align=False, short=False): + """ + Creates a string repr of the dtype, excluding the 'dtype()' part + surrounding the object. This object may be a string, a list, or + a dict depending on the nature of the dtype. This + is the object passed as the first parameter to the dtype + constructor, and if no additional constructor parameters are + given, will reproduce the exact memory layout. + + Parameters + ---------- + short : bool + If true, this creates a shorter repr using 'kind' and 'itemsize', + instead of the longer type name. + + include_align : bool + If true, this includes the 'align=True' parameter + inside the struct dtype construction dict when needed. Use this flag + if you want a proper repr string without the 'dtype()' part around it. + + If false, this does not preserve the + 'align=True' parameter or sticky NPY_ALIGNED_STRUCT flag for + struct arrays like the regular repr does, because the 'align' + flag is not part of first dtype constructor parameter. This + mode is intended for a full 'repr', where the 'align=True' is + provided as the second parameter. + """ + if dtype.fields is not None: + return _struct_str(dtype, include_align=include_align) + elif dtype.subdtype: + return _subarray_str(dtype) + else: + return _scalar_str(dtype, short=short) + + +def _scalar_str(dtype, short): + byteorder = _byte_order_str(dtype) + + if dtype.type == np.bool: + if short: + return "'?'" + else: + return "'bool'" + + elif dtype.type == np.object_: + # The object reference may be different sizes on different + # platforms, so it should never include the itemsize here. + return "'O'" + + elif dtype.type == np.bytes_: + if _isunsized(dtype): + return "'S'" + else: + return "'S%d'" % dtype.itemsize + + elif dtype.type == np.str_: + if _isunsized(dtype): + return "'%sU'" % byteorder + else: + return "'%sU%d'" % (byteorder, dtype.itemsize / 4) + + elif dtype.type == str: + return "'T'" + + elif not type(dtype)._legacy: + return f"'{byteorder}{type(dtype).__name__}{dtype.itemsize * 8}'" + + # unlike the other types, subclasses of void are preserved - but + # historically the repr does not actually reveal the subclass + elif issubclass(dtype.type, np.void): + if _isunsized(dtype): + return "'V'" + else: + return "'V%d'" % dtype.itemsize + + elif dtype.type == np.datetime64: + return "'%sM8%s'" % (byteorder, _datetime_metadata_str(dtype)) + + elif dtype.type == np.timedelta64: + return "'%sm8%s'" % (byteorder, _datetime_metadata_str(dtype)) + + elif np.issubdtype(dtype, np.number): + # Short repr with endianness, like '' """ + # hack to obtain the native and swapped byte order characters + swapped = np.dtype(int).newbyteorder('S') + native = swapped.newbyteorder('S') + + byteorder = dtype.byteorder + if byteorder == '=': + return native.byteorder + if byteorder == 'S': + # TODO: this path can never be reached + return swapped.byteorder + elif byteorder == '|': + return '' + else: + return byteorder + + +def _datetime_metadata_str(dtype): + # TODO: this duplicates the C metastr_to_unicode functionality + unit, count = np.datetime_data(dtype) + if unit == 'generic': + return '' + elif count == 1: + return '[{}]'.format(unit) + else: + return '[{}{}]'.format(count, unit) + + +def _struct_dict_str(dtype, includealignedflag): + # unpack the fields dictionary into ls + names = dtype.names + fld_dtypes = [] + offsets = [] + titles = [] + for name in names: + fld_dtype, offset, title = _unpack_field(*dtype.fields[name]) + fld_dtypes.append(fld_dtype) + offsets.append(offset) + titles.append(title) + + # Build up a string to make the dictionary + + if np._core.arrayprint._get_legacy_print_mode() <= 121: + colon = ":" + fieldsep = "," + else: + colon = ": " + fieldsep = ", " + + # First, the names + ret = "{'names'%s[" % colon + ret += fieldsep.join(repr(name) for name in names) + + # Second, the formats + ret += "], 'formats'%s[" % colon + ret += fieldsep.join( + _construction_repr(fld_dtype, short=True) for fld_dtype in fld_dtypes) + + # Third, the offsets + ret += "], 'offsets'%s[" % colon + ret += fieldsep.join("%d" % offset for offset in offsets) + + # Fourth, the titles + if any(title is not None for title in titles): + ret += "], 'titles'%s[" % colon + ret += fieldsep.join(repr(title) for title in titles) + + # Fifth, the itemsize + ret += "], 'itemsize'%s%d" % (colon, dtype.itemsize) + + if (includealignedflag and dtype.isalignedstruct): + # Finally, the aligned flag + ret += ", 'aligned'%sTrue}" % colon + else: + ret += "}" + + return ret + + +def _aligned_offset(offset, alignment): + # round up offset: + return - (-offset // alignment) * alignment + + +def _is_packed(dtype): + """ + Checks whether the structured data type in 'dtype' + has a simple layout, where all the fields are in order, + and follow each other with no alignment padding. + + When this returns true, the dtype can be reconstructed + from a list of the field names and dtypes with no additional + dtype parameters. + + Duplicates the C `is_dtype_struct_simple_unaligned_layout` function. + """ + align = dtype.isalignedstruct + max_alignment = 1 + total_offset = 0 + for name in dtype.names: + fld_dtype, fld_offset, title = _unpack_field(*dtype.fields[name]) + + if align: + total_offset = _aligned_offset(total_offset, fld_dtype.alignment) + max_alignment = max(max_alignment, fld_dtype.alignment) + + if fld_offset != total_offset: + return False + total_offset += fld_dtype.itemsize + + if align: + total_offset = _aligned_offset(total_offset, max_alignment) + + return total_offset == dtype.itemsize + + +def _struct_list_str(dtype): + items = [] + for name in dtype.names: + fld_dtype, fld_offset, title = _unpack_field(*dtype.fields[name]) + + item = "(" + if title is not None: + item += "({!r}, {!r}), ".format(title, name) + else: + item += "{!r}, ".format(name) + # Special case subarray handling here + if fld_dtype.subdtype is not None: + base, shape = fld_dtype.subdtype + item += "{}, {}".format( + _construction_repr(base, short=True), + shape + ) + else: + item += _construction_repr(fld_dtype, short=True) + + item += ")" + items.append(item) + + return "[" + ", ".join(items) + "]" + + +def _struct_str(dtype, include_align): + # The list str representation can't include the 'align=' flag, + # so if it is requested and the struct has the aligned flag set, + # we must use the dict str instead. + if not (include_align and dtype.isalignedstruct) and _is_packed(dtype): + sub = _struct_list_str(dtype) + + else: + sub = _struct_dict_str(dtype, include_align) + + # If the data type isn't the default, void, show it + if dtype.type != np.void: + return "({t.__module__}.{t.__name__}, {f})".format(t=dtype.type, f=sub) + else: + return sub + + +def _subarray_str(dtype): + base, shape = dtype.subdtype + return "({}, {})".format( + _construction_repr(base, short=True), + shape + ) + + +def _name_includes_bit_suffix(dtype): + if dtype.type == np.object_: + # pointer size varies by system, best to omit it + return False + elif dtype.type == np.bool: + # implied + return False + elif dtype.type is None: + return True + elif np.issubdtype(dtype, np.flexible) and _isunsized(dtype): + # unspecified + return False + else: + return True + + +def _name_get(dtype): + # provides dtype.name.__get__, documented as returning a "bit name" + + if dtype.isbuiltin == 2: + # user dtypes don't promise to do anything special + return dtype.type.__name__ + + if not type(dtype)._legacy: + name = type(dtype).__name__ + + elif issubclass(dtype.type, np.void): + # historically, void subclasses preserve their name, eg `record64` + name = dtype.type.__name__ + else: + name = _kind_name(dtype) + + # append bit counts + if _name_includes_bit_suffix(dtype): + name += "{}".format(dtype.itemsize * 8) + + # append metadata to datetimes + if dtype.type in (np.datetime64, np.timedelta64): + name += _datetime_metadata_str(dtype) + + return name diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.pyi new file mode 100644 index 0000000000000000000000000000000000000000..c3e966e3f51729aca69365ce3520ab23e3c1a7ea --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype.pyi @@ -0,0 +1,58 @@ +from typing import Any, Final, TypeAlias, TypedDict, overload, type_check_only +from typing import Literal as L + +from typing_extensions import ReadOnly, TypeVar + +import numpy as np + +### + +_T = TypeVar("_T") + +_Name: TypeAlias = L["uint", "int", "complex", "float", "bool", "void", "object", "datetime", "timedelta", "bytes", "str"] + +@type_check_only +class _KindToStemType(TypedDict): + u: ReadOnly[L["uint"]] + i: ReadOnly[L["int"]] + c: ReadOnly[L["complex"]] + f: ReadOnly[L["float"]] + b: ReadOnly[L["bool"]] + V: ReadOnly[L["void"]] + O: ReadOnly[L["object"]] + M: ReadOnly[L["datetime"]] + m: ReadOnly[L["timedelta"]] + S: ReadOnly[L["bytes"]] + U: ReadOnly[L["str"]] + +### + +_kind_to_stem: Final[_KindToStemType] = ... + +# +def _kind_name(dtype: np.dtype[Any]) -> _Name: ... +def __str__(dtype: np.dtype[Any]) -> str: ... +def __repr__(dtype: np.dtype[Any]) -> str: ... + +# +def _isunsized(dtype: np.dtype[Any]) -> bool: ... +def _is_packed(dtype: np.dtype[Any]) -> bool: ... +def _name_includes_bit_suffix(dtype: np.dtype[Any]) -> bool: ... + +# +def _construction_repr(dtype: np.dtype[Any], include_align: bool = False, short: bool = False) -> str: ... +def _scalar_str(dtype: np.dtype[Any], short: bool) -> str: ... +def _byte_order_str(dtype: np.dtype[Any]) -> str: ... +def _datetime_metadata_str(dtype: np.dtype[Any]) -> str: ... +def _struct_dict_str(dtype: np.dtype[Any], includealignedflag: bool) -> str: ... +def _struct_list_str(dtype: np.dtype[Any]) -> str: ... +def _struct_str(dtype: np.dtype[Any], include_align: bool) -> str: ... +def _subarray_str(dtype: np.dtype[Any]) -> str: ... +def _name_get(dtype: np.dtype[Any]) -> str: ... + +# +@overload +def _unpack_field(dtype: np.dtype[Any], offset: int, title: _T) -> tuple[np.dtype[Any], int, _T]: ... +@overload +def _unpack_field(dtype: np.dtype[Any], offset: int, title: None = None) -> tuple[np.dtype[Any], int, None]: ... +def _aligned_offset(offset: int, alignment: int) -> int: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py new file mode 100644 index 0000000000000000000000000000000000000000..fef1e0db35f2fcd97269e25ca442b881a8a1a757 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py @@ -0,0 +1,120 @@ +""" +Conversion from ctypes to dtype. + +In an ideal world, we could achieve this through the PEP3118 buffer protocol, +something like:: + + def dtype_from_ctypes_type(t): + # needed to ensure that the shape of `t` is within memoryview.format + class DummyStruct(ctypes.Structure): + _fields_ = [('a', t)] + + # empty to avoid memory allocation + ctype_0 = (DummyStruct * 0)() + mv = memoryview(ctype_0) + + # convert the struct, and slice back out the field + return _dtype_from_pep3118(mv.format)['a'] + +Unfortunately, this fails because: + +* ctypes cannot handle length-0 arrays with PEP3118 (bpo-32782) +* PEP3118 cannot represent unions, but both numpy and ctypes can +* ctypes cannot handle big-endian structs with PEP3118 (bpo-32780) +""" + +# We delay-import ctypes for distributions that do not include it. +# While this module is not used unless the user passes in ctypes +# members, it is eagerly imported from numpy/_core/__init__.py. +import numpy as np + + +def _from_ctypes_array(t): + return np.dtype((dtype_from_ctypes_type(t._type_), (t._length_,))) + + +def _from_ctypes_structure(t): + for item in t._fields_: + if len(item) > 2: + raise TypeError( + "ctypes bitfields have no dtype equivalent") + + if hasattr(t, "_pack_"): + import ctypes + formats = [] + offsets = [] + names = [] + current_offset = 0 + for fname, ftyp in t._fields_: + names.append(fname) + formats.append(dtype_from_ctypes_type(ftyp)) + # Each type has a default offset, this is platform dependent + # for some types. + effective_pack = min(t._pack_, ctypes.alignment(ftyp)) + current_offset = ( + (current_offset + effective_pack - 1) // effective_pack + ) * effective_pack + offsets.append(current_offset) + current_offset += ctypes.sizeof(ftyp) + + return np.dtype(dict( + formats=formats, + offsets=offsets, + names=names, + itemsize=ctypes.sizeof(t))) + else: + fields = [] + for fname, ftyp in t._fields_: + fields.append((fname, dtype_from_ctypes_type(ftyp))) + + # by default, ctypes structs are aligned + return np.dtype(fields, align=True) + + +def _from_ctypes_scalar(t): + """ + Return the dtype type with endianness included if it's the case + """ + if getattr(t, '__ctype_be__', None) is t: + return np.dtype('>' + t._type_) + elif getattr(t, '__ctype_le__', None) is t: + return np.dtype('<' + t._type_) + else: + return np.dtype(t._type_) + + +def _from_ctypes_union(t): + import ctypes + formats = [] + offsets = [] + names = [] + for fname, ftyp in t._fields_: + names.append(fname) + formats.append(dtype_from_ctypes_type(ftyp)) + offsets.append(0) # Union fields are offset to 0 + + return np.dtype(dict( + formats=formats, + offsets=offsets, + names=names, + itemsize=ctypes.sizeof(t))) + + +def dtype_from_ctypes_type(t): + """ + Construct a dtype object from a ctypes type + """ + import _ctypes + if issubclass(t, _ctypes.Array): + return _from_ctypes_array(t) + elif issubclass(t, _ctypes._Pointer): + raise TypeError("ctypes pointers have no dtype equivalent") + elif issubclass(t, _ctypes.Structure): + return _from_ctypes_structure(t) + elif issubclass(t, _ctypes.Union): + return _from_ctypes_union(t) + elif isinstance(getattr(t, '_type_', None), str): + return _from_ctypes_scalar(t) + else: + raise NotImplementedError( + "Unknown ctypes type {}".format(t.__name__)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.pyi new file mode 100644 index 0000000000000000000000000000000000000000..69438a2c1b4c98cda8b36d45440fd459f118ebb9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.pyi @@ -0,0 +1,83 @@ +import _ctypes +import ctypes as ct +from typing import Any, overload + +import numpy as np + +# +@overload +def dtype_from_ctypes_type(t: type[_ctypes.Array[Any] | _ctypes.Structure]) -> np.dtype[np.void]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_bool]) -> np.dtype[np.bool]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_int8 | ct.c_byte]) -> np.dtype[np.int8]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_uint8 | ct.c_ubyte]) -> np.dtype[np.uint8]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_int16 | ct.c_short]) -> np.dtype[np.int16]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_uint16 | ct.c_ushort]) -> np.dtype[np.uint16]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_int32 | ct.c_int]) -> np.dtype[np.int32]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_uint32 | ct.c_uint]) -> np.dtype[np.uint32]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_ssize_t | ct.c_long]) -> np.dtype[np.int32 | np.int64]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_size_t | ct.c_ulong]) -> np.dtype[np.uint32 | np.uint64]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_int64 | ct.c_longlong]) -> np.dtype[np.int64]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_uint64 | ct.c_ulonglong]) -> np.dtype[np.uint64]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_float]) -> np.dtype[np.float32]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_double]) -> np.dtype[np.float64]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_longdouble]) -> np.dtype[np.longdouble]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.c_char]) -> np.dtype[np.bytes_]: ... +@overload +def dtype_from_ctypes_type(t: type[ct.py_object[Any]]) -> np.dtype[np.object_]: ... + +# NOTE: the complex ctypes on python>=3.14 are not yet supported at runtim, see +# https://github.com/numpy/numpy/issues/28360 + +# +def _from_ctypes_array(t: type[_ctypes.Array[Any]]) -> np.dtype[np.void]: ... +def _from_ctypes_structure(t: type[_ctypes.Structure]) -> np.dtype[np.void]: ... +def _from_ctypes_union(t: type[_ctypes.Union]) -> np.dtype[np.void]: ... + +# keep in sync with `dtype_from_ctypes_type` (minus the first overload) +@overload +def _from_ctypes_scalar(t: type[ct.c_bool]) -> np.dtype[np.bool]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_int8 | ct.c_byte]) -> np.dtype[np.int8]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_uint8 | ct.c_ubyte]) -> np.dtype[np.uint8]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_int16 | ct.c_short]) -> np.dtype[np.int16]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_uint16 | ct.c_ushort]) -> np.dtype[np.uint16]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_int32 | ct.c_int]) -> np.dtype[np.int32]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_uint32 | ct.c_uint]) -> np.dtype[np.uint32]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_ssize_t | ct.c_long]) -> np.dtype[np.int32 | np.int64]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_size_t | ct.c_ulong]) -> np.dtype[np.uint32 | np.uint64]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_int64 | ct.c_longlong]) -> np.dtype[np.int64]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_uint64 | ct.c_ulonglong]) -> np.dtype[np.uint64]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_float]) -> np.dtype[np.float32]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_double]) -> np.dtype[np.float64]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_longdouble]) -> np.dtype[np.longdouble]: ... +@overload +def _from_ctypes_scalar(t: type[ct.c_char]) -> np.dtype[np.bytes_]: ... +@overload +def _from_ctypes_scalar(t: type[ct.py_object[Any]]) -> np.dtype[np.object_]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.py new file mode 100644 index 0000000000000000000000000000000000000000..87d4213a6d42cf090f8db75571244840dd68cd5a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.py @@ -0,0 +1,172 @@ +""" +Various richly-typed exceptions, that also help us deal with string formatting +in python where it's easier. + +By putting the formatting in `__str__`, we also avoid paying the cost for +users who silence the exceptions. +""" +from .._utils import set_module + +def _unpack_tuple(tup): + if len(tup) == 1: + return tup[0] + else: + return tup + + +def _display_as_base(cls): + """ + A decorator that makes an exception class look like its base. + + We use this to hide subclasses that are implementation details - the user + should catch the base type, which is what the traceback will show them. + + Classes decorated with this decorator are subject to removal without a + deprecation warning. + """ + assert issubclass(cls, Exception) + cls.__name__ = cls.__base__.__name__ + return cls + + +class UFuncTypeError(TypeError): + """ Base class for all ufunc exceptions """ + def __init__(self, ufunc): + self.ufunc = ufunc + + +@_display_as_base +class _UFuncNoLoopError(UFuncTypeError): + """ Thrown when a ufunc loop cannot be found """ + def __init__(self, ufunc, dtypes): + super().__init__(ufunc) + self.dtypes = tuple(dtypes) + + def __str__(self): + return ( + "ufunc {!r} did not contain a loop with signature matching types " + "{!r} -> {!r}" + ).format( + self.ufunc.__name__, + _unpack_tuple(self.dtypes[:self.ufunc.nin]), + _unpack_tuple(self.dtypes[self.ufunc.nin:]) + ) + + +@_display_as_base +class _UFuncBinaryResolutionError(_UFuncNoLoopError): + """ Thrown when a binary resolution fails """ + def __init__(self, ufunc, dtypes): + super().__init__(ufunc, dtypes) + assert len(self.dtypes) == 2 + + def __str__(self): + return ( + "ufunc {!r} cannot use operands with types {!r} and {!r}" + ).format( + self.ufunc.__name__, *self.dtypes + ) + + +@_display_as_base +class _UFuncCastingError(UFuncTypeError): + def __init__(self, ufunc, casting, from_, to): + super().__init__(ufunc) + self.casting = casting + self.from_ = from_ + self.to = to + + +@_display_as_base +class _UFuncInputCastingError(_UFuncCastingError): + """ Thrown when a ufunc input cannot be casted """ + def __init__(self, ufunc, casting, from_, to, i): + super().__init__(ufunc, casting, from_, to) + self.in_i = i + + def __str__(self): + # only show the number if more than one input exists + i_str = "{} ".format(self.in_i) if self.ufunc.nin != 1 else "" + return ( + "Cannot cast ufunc {!r} input {}from {!r} to {!r} with casting " + "rule {!r}" + ).format( + self.ufunc.__name__, i_str, self.from_, self.to, self.casting + ) + + +@_display_as_base +class _UFuncOutputCastingError(_UFuncCastingError): + """ Thrown when a ufunc output cannot be casted """ + def __init__(self, ufunc, casting, from_, to, i): + super().__init__(ufunc, casting, from_, to) + self.out_i = i + + def __str__(self): + # only show the number if more than one output exists + i_str = "{} ".format(self.out_i) if self.ufunc.nout != 1 else "" + return ( + "Cannot cast ufunc {!r} output {}from {!r} to {!r} with casting " + "rule {!r}" + ).format( + self.ufunc.__name__, i_str, self.from_, self.to, self.casting + ) + + +@_display_as_base +class _ArrayMemoryError(MemoryError): + """ Thrown when an array cannot be allocated""" + def __init__(self, shape, dtype): + self.shape = shape + self.dtype = dtype + + @property + def _total_size(self): + num_bytes = self.dtype.itemsize + for dim in self.shape: + num_bytes *= dim + return num_bytes + + @staticmethod + def _size_to_string(num_bytes): + """ Convert a number of bytes into a binary size string """ + + # https://en.wikipedia.org/wiki/Binary_prefix + LOG2_STEP = 10 + STEP = 1024 + units = ['bytes', 'KiB', 'MiB', 'GiB', 'TiB', 'PiB', 'EiB'] + + unit_i = max(num_bytes.bit_length() - 1, 1) // LOG2_STEP + unit_val = 1 << (unit_i * LOG2_STEP) + n_units = num_bytes / unit_val + del unit_val + + # ensure we pick a unit that is correct after rounding + if round(n_units) == STEP: + unit_i += 1 + n_units /= STEP + + # deal with sizes so large that we don't have units for them + if unit_i >= len(units): + new_unit_i = len(units) - 1 + n_units *= 1 << ((unit_i - new_unit_i) * LOG2_STEP) + unit_i = new_unit_i + + unit_name = units[unit_i] + # format with a sensible number of digits + if unit_i == 0: + # no decimal point on bytes + return '{:.0f} {}'.format(n_units, unit_name) + elif round(n_units) < 1000: + # 3 significant figures, if none are dropped to the left of the . + return '{:#.3g} {}'.format(n_units, unit_name) + else: + # just give all the digits otherwise + return '{:#.0f} {}'.format(n_units, unit_name) + + def __str__(self): + size_str = self._size_to_string(self._total_size) + return ( + "Unable to allocate {} for an array with shape {} and data type {}" + .format(size_str, self.shape, self.dtype) + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.pyi new file mode 100644 index 0000000000000000000000000000000000000000..5abfc779c2120734c29d017844dd6ecc2b171bdb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_exceptions.pyi @@ -0,0 +1,73 @@ +from collections.abc import Iterable +from typing import Any, Final, overload + +from typing_extensions import TypeVar, Unpack + +import numpy as np +from numpy import _CastingKind +from numpy._utils import set_module as set_module + +### + +_T = TypeVar("_T") +_TupleT = TypeVar("_TupleT", bound=tuple[()] | tuple[Any, Any, Unpack[tuple[Any, ...]]]) +_ExceptionT = TypeVar("_ExceptionT", bound=Exception) + +### + +class UFuncTypeError(TypeError): + ufunc: Final[np.ufunc] + def __init__(self, /, ufunc: np.ufunc) -> None: ... + +class _UFuncNoLoopError(UFuncTypeError): + dtypes: tuple[np.dtype[Any], ...] + def __init__(self, /, ufunc: np.ufunc, dtypes: Iterable[np.dtype[Any]]) -> None: ... + +class _UFuncBinaryResolutionError(_UFuncNoLoopError): + dtypes: tuple[np.dtype[Any], np.dtype[Any]] + def __init__(self, /, ufunc: np.ufunc, dtypes: Iterable[np.dtype[Any]]) -> None: ... + +class _UFuncCastingError(UFuncTypeError): + casting: Final[_CastingKind] + from_: Final[np.dtype[Any]] + to: Final[np.dtype[Any]] + def __init__(self, /, ufunc: np.ufunc, casting: _CastingKind, from_: np.dtype[Any], to: np.dtype[Any]) -> None: ... + +class _UFuncInputCastingError(_UFuncCastingError): + in_i: Final[int] + def __init__( + self, + /, + ufunc: np.ufunc, + casting: _CastingKind, + from_: np.dtype[Any], + to: np.dtype[Any], + i: int, + ) -> None: ... + +class _UFuncOutputCastingError(_UFuncCastingError): + out_i: Final[int] + def __init__( + self, + /, + ufunc: np.ufunc, + casting: _CastingKind, + from_: np.dtype[Any], + to: np.dtype[Any], + i: int, + ) -> None: ... + +class _ArrayMemoryError(MemoryError): + shape: tuple[int, ...] + dtype: np.dtype[Any] + def __init__(self, /, shape: tuple[int, ...], dtype: np.dtype[Any]) -> None: ... + @property + def _total_size(self) -> int: ... + @staticmethod + def _size_to_string(num_bytes: int) -> str: ... + +@overload +def _unpack_tuple(tup: tuple[_T]) -> _T: ... +@overload +def _unpack_tuple(tup: _TupleT) -> _TupleT: ... +def _display_as_base(cls: type[_ExceptionT]) -> type[_ExceptionT]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.py new file mode 100644 index 0000000000000000000000000000000000000000..c0142bf44f034f7f635e07841e00f451c3907dfd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.py @@ -0,0 +1,963 @@ +""" +A place for internal code + +Some things are more easily handled Python. + +""" +import ast +import math +import re +import sys +import warnings + +from ..exceptions import DTypePromotionError +from .multiarray import dtype, array, ndarray, promote_types, StringDType +from numpy import _NoValue +try: + import ctypes +except ImportError: + ctypes = None + +IS_PYPY = sys.implementation.name == 'pypy' + +if sys.byteorder == 'little': + _nbo = '<' +else: + _nbo = '>' + +def _makenames_list(adict, align): + allfields = [] + + for fname, obj in adict.items(): + n = len(obj) + if not isinstance(obj, tuple) or n not in (2, 3): + raise ValueError("entry not a 2- or 3- tuple") + if n > 2 and obj[2] == fname: + continue + num = int(obj[1]) + if num < 0: + raise ValueError("invalid offset.") + format = dtype(obj[0], align=align) + if n > 2: + title = obj[2] + else: + title = None + allfields.append((fname, format, num, title)) + # sort by offsets + allfields.sort(key=lambda x: x[2]) + names = [x[0] for x in allfields] + formats = [x[1] for x in allfields] + offsets = [x[2] for x in allfields] + titles = [x[3] for x in allfields] + + return names, formats, offsets, titles + +# Called in PyArray_DescrConverter function when +# a dictionary without "names" and "formats" +# fields is used as a data-type descriptor. +def _usefields(adict, align): + try: + names = adict[-1] + except KeyError: + names = None + if names is None: + names, formats, offsets, titles = _makenames_list(adict, align) + else: + formats = [] + offsets = [] + titles = [] + for name in names: + res = adict[name] + formats.append(res[0]) + offsets.append(res[1]) + if len(res) > 2: + titles.append(res[2]) + else: + titles.append(None) + + return dtype({"names": names, + "formats": formats, + "offsets": offsets, + "titles": titles}, align) + + +# construct an array_protocol descriptor list +# from the fields attribute of a descriptor +# This calls itself recursively but should eventually hit +# a descriptor that has no fields and then return +# a simple typestring + +def _array_descr(descriptor): + fields = descriptor.fields + if fields is None: + subdtype = descriptor.subdtype + if subdtype is None: + if descriptor.metadata is None: + return descriptor.str + else: + new = descriptor.metadata.copy() + if new: + return (descriptor.str, new) + else: + return descriptor.str + else: + return (_array_descr(subdtype[0]), subdtype[1]) + + names = descriptor.names + ordered_fields = [fields[x] + (x,) for x in names] + result = [] + offset = 0 + for field in ordered_fields: + if field[1] > offset: + num = field[1] - offset + result.append(('', f'|V{num}')) + offset += num + elif field[1] < offset: + raise ValueError( + "dtype.descr is not defined for types with overlapping or " + "out-of-order fields") + if len(field) > 3: + name = (field[2], field[3]) + else: + name = field[2] + if field[0].subdtype: + tup = (name, _array_descr(field[0].subdtype[0]), + field[0].subdtype[1]) + else: + tup = (name, _array_descr(field[0])) + offset += field[0].itemsize + result.append(tup) + + if descriptor.itemsize > offset: + num = descriptor.itemsize - offset + result.append(('', f'|V{num}')) + + return result + + +# format_re was originally from numarray by J. Todd Miller + +format_re = re.compile(r'(?P[<>|=]?)' + r'(?P *[(]?[ ,0-9]*[)]? *)' + r'(?P[<>|=]?)' + r'(?P[A-Za-z0-9.?]*(?:\[[a-zA-Z0-9,.]+\])?)') +sep_re = re.compile(r'\s*,\s*') +space_re = re.compile(r'\s+$') + +# astr is a string (perhaps comma separated) + +_convorder = {'=': _nbo} + +def _commastring(astr): + startindex = 0 + result = [] + islist = False + while startindex < len(astr): + mo = format_re.match(astr, pos=startindex) + try: + (order1, repeats, order2, dtype) = mo.groups() + except (TypeError, AttributeError): + raise ValueError( + f'format number {len(result)+1} of "{astr}" is not recognized' + ) from None + startindex = mo.end() + # Separator or ending padding + if startindex < len(astr): + if space_re.match(astr, pos=startindex): + startindex = len(astr) + else: + mo = sep_re.match(astr, pos=startindex) + if not mo: + raise ValueError( + 'format number %d of "%s" is not recognized' % + (len(result)+1, astr)) + startindex = mo.end() + islist = True + + if order2 == '': + order = order1 + elif order1 == '': + order = order2 + else: + order1 = _convorder.get(order1, order1) + order2 = _convorder.get(order2, order2) + if (order1 != order2): + raise ValueError( + 'inconsistent byte-order specification %s and %s' % + (order1, order2)) + order = order1 + + if order in ('|', '=', _nbo): + order = '' + dtype = order + dtype + if repeats == '': + newitem = dtype + else: + if (repeats[0] == "(" and repeats[-1] == ")" + and repeats[1:-1].strip() != "" + and "," not in repeats): + warnings.warn( + 'Passing in a parenthesized single number for repeats ' + 'is deprecated; pass either a single number or indicate ' + 'a tuple with a comma, like "(2,)".', DeprecationWarning, + stacklevel=2) + newitem = (dtype, ast.literal_eval(repeats)) + + result.append(newitem) + + return result if islist else result[0] + +class dummy_ctype: + + def __init__(self, cls): + self._cls = cls + + def __mul__(self, other): + return self + + def __call__(self, *other): + return self._cls(other) + + def __eq__(self, other): + return self._cls == other._cls + + def __ne__(self, other): + return self._cls != other._cls + +def _getintp_ctype(): + val = _getintp_ctype.cache + if val is not None: + return val + if ctypes is None: + import numpy as np + val = dummy_ctype(np.intp) + else: + char = dtype('n').char + if char == 'i': + val = ctypes.c_int + elif char == 'l': + val = ctypes.c_long + elif char == 'q': + val = ctypes.c_longlong + else: + val = ctypes.c_long + _getintp_ctype.cache = val + return val + + +_getintp_ctype.cache = None + +# Used for .ctypes attribute of ndarray + +class _missing_ctypes: + def cast(self, num, obj): + return num.value + + class c_void_p: + def __init__(self, ptr): + self.value = ptr + + +class _ctypes: + def __init__(self, array, ptr=None): + self._arr = array + + if ctypes: + self._ctypes = ctypes + self._data = self._ctypes.c_void_p(ptr) + else: + # fake a pointer-like object that holds onto the reference + self._ctypes = _missing_ctypes() + self._data = self._ctypes.c_void_p(ptr) + self._data._objects = array + + if self._arr.ndim == 0: + self._zerod = True + else: + self._zerod = False + + def data_as(self, obj): + """ + Return the data pointer cast to a particular c-types object. + For example, calling ``self._as_parameter_`` is equivalent to + ``self.data_as(ctypes.c_void_p)``. Perhaps you want to use + the data as a pointer to a ctypes array of floating-point data: + ``self.data_as(ctypes.POINTER(ctypes.c_double))``. + + The returned pointer will keep a reference to the array. + """ + # _ctypes.cast function causes a circular reference of self._data in + # self._data._objects. Attributes of self._data cannot be released + # until gc.collect is called. Make a copy of the pointer first then + # let it hold the array reference. This is a workaround to circumvent + # the CPython bug https://bugs.python.org/issue12836. + ptr = self._ctypes.cast(self._data, obj) + ptr._arr = self._arr + return ptr + + def shape_as(self, obj): + """ + Return the shape tuple as an array of some other c-types + type. For example: ``self.shape_as(ctypes.c_short)``. + """ + if self._zerod: + return None + return (obj*self._arr.ndim)(*self._arr.shape) + + def strides_as(self, obj): + """ + Return the strides tuple as an array of some other + c-types type. For example: ``self.strides_as(ctypes.c_longlong)``. + """ + if self._zerod: + return None + return (obj*self._arr.ndim)(*self._arr.strides) + + @property + def data(self): + """ + A pointer to the memory area of the array as a Python integer. + This memory area may contain data that is not aligned, or not in + correct byte-order. The memory area may not even be writeable. + The array flags and data-type of this array should be respected + when passing this attribute to arbitrary C-code to avoid trouble + that can include Python crashing. User Beware! The value of this + attribute is exactly the same as: + ``self._array_interface_['data'][0]``. + + Note that unlike ``data_as``, a reference won't be kept to the array: + code like ``ctypes.c_void_p((a + b).ctypes.data)`` will result in a + pointer to a deallocated array, and should be spelt + ``(a + b).ctypes.data_as(ctypes.c_void_p)`` + """ + return self._data.value + + @property + def shape(self): + """ + (c_intp*self.ndim): A ctypes array of length self.ndim where + the basetype is the C-integer corresponding to ``dtype('p')`` on this + platform (see `~numpy.ctypeslib.c_intp`). This base-type could be + `ctypes.c_int`, `ctypes.c_long`, or `ctypes.c_longlong` depending on + the platform. The ctypes array contains the shape of + the underlying array. + """ + return self.shape_as(_getintp_ctype()) + + @property + def strides(self): + """ + (c_intp*self.ndim): A ctypes array of length self.ndim where + the basetype is the same as for the shape attribute. This ctypes + array contains the strides information from the underlying array. + This strides information is important for showing how many bytes + must be jumped to get to the next element in the array. + """ + return self.strides_as(_getintp_ctype()) + + @property + def _as_parameter_(self): + """ + Overrides the ctypes semi-magic method + + Enables `c_func(some_array.ctypes)` + """ + return self.data_as(ctypes.c_void_p) + + # Numpy 1.21.0, 2021-05-18 + + def get_data(self): + """Deprecated getter for the `_ctypes.data` property. + + .. deprecated:: 1.21 + """ + warnings.warn('"get_data" is deprecated. Use "data" instead', + DeprecationWarning, stacklevel=2) + return self.data + + def get_shape(self): + """Deprecated getter for the `_ctypes.shape` property. + + .. deprecated:: 1.21 + """ + warnings.warn('"get_shape" is deprecated. Use "shape" instead', + DeprecationWarning, stacklevel=2) + return self.shape + + def get_strides(self): + """Deprecated getter for the `_ctypes.strides` property. + + .. deprecated:: 1.21 + """ + warnings.warn('"get_strides" is deprecated. Use "strides" instead', + DeprecationWarning, stacklevel=2) + return self.strides + + def get_as_parameter(self): + """Deprecated getter for the `_ctypes._as_parameter_` property. + + .. deprecated:: 1.21 + """ + warnings.warn( + '"get_as_parameter" is deprecated. Use "_as_parameter_" instead', + DeprecationWarning, stacklevel=2, + ) + return self._as_parameter_ + + +def _newnames(datatype, order): + """ + Given a datatype and an order object, return a new names tuple, with the + order indicated + """ + oldnames = datatype.names + nameslist = list(oldnames) + if isinstance(order, str): + order = [order] + seen = set() + if isinstance(order, (list, tuple)): + for name in order: + try: + nameslist.remove(name) + except ValueError: + if name in seen: + raise ValueError(f"duplicate field name: {name}") from None + else: + raise ValueError(f"unknown field name: {name}") from None + seen.add(name) + return tuple(list(order) + nameslist) + raise ValueError(f"unsupported order value: {order}") + +def _copy_fields(ary): + """Return copy of structured array with padding between fields removed. + + Parameters + ---------- + ary : ndarray + Structured array from which to remove padding bytes + + Returns + ------- + ary_copy : ndarray + Copy of ary with padding bytes removed + """ + dt = ary.dtype + copy_dtype = {'names': dt.names, + 'formats': [dt.fields[name][0] for name in dt.names]} + return array(ary, dtype=copy_dtype, copy=True) + +def _promote_fields(dt1, dt2): + """ Perform type promotion for two structured dtypes. + + Parameters + ---------- + dt1 : structured dtype + First dtype. + dt2 : structured dtype + Second dtype. + + Returns + ------- + out : dtype + The promoted dtype + + Notes + ----- + If one of the inputs is aligned, the result will be. The titles of + both descriptors must match (point to the same field). + """ + # Both must be structured and have the same names in the same order + if (dt1.names is None or dt2.names is None) or dt1.names != dt2.names: + raise DTypePromotionError( + f"field names `{dt1.names}` and `{dt2.names}` mismatch.") + + # if both are identical, we can (maybe!) just return the same dtype. + identical = dt1 is dt2 + new_fields = [] + for name in dt1.names: + field1 = dt1.fields[name] + field2 = dt2.fields[name] + new_descr = promote_types(field1[0], field2[0]) + identical = identical and new_descr is field1[0] + + # Check that the titles match (if given): + if field1[2:] != field2[2:]: + raise DTypePromotionError( + f"field titles of field '{name}' mismatch") + if len(field1) == 2: + new_fields.append((name, new_descr)) + else: + new_fields.append(((field1[2], name), new_descr)) + + res = dtype(new_fields, align=dt1.isalignedstruct or dt2.isalignedstruct) + + # Might as well preserve identity (and metadata) if the dtype is identical + # and the itemsize, offsets are also unmodified. This could probably be + # sped up, but also probably just be removed entirely. + if identical and res.itemsize == dt1.itemsize: + for name in dt1.names: + if dt1.fields[name][1] != res.fields[name][1]: + return res # the dtype changed. + return dt1 + + return res + + +def _getfield_is_safe(oldtype, newtype, offset): + """ Checks safety of getfield for object arrays. + + As in _view_is_safe, we need to check that memory containing objects is not + reinterpreted as a non-object datatype and vice versa. + + Parameters + ---------- + oldtype : data-type + Data type of the original ndarray. + newtype : data-type + Data type of the field being accessed by ndarray.getfield + offset : int + Offset of the field being accessed by ndarray.getfield + + Raises + ------ + TypeError + If the field access is invalid + + """ + if newtype.hasobject or oldtype.hasobject: + if offset == 0 and newtype == oldtype: + return + if oldtype.names is not None: + for name in oldtype.names: + if (oldtype.fields[name][1] == offset and + oldtype.fields[name][0] == newtype): + return + raise TypeError("Cannot get/set field of an object array") + return + +def _view_is_safe(oldtype, newtype): + """ Checks safety of a view involving object arrays, for example when + doing:: + + np.zeros(10, dtype=oldtype).view(newtype) + + Parameters + ---------- + oldtype : data-type + Data type of original ndarray + newtype : data-type + Data type of the view + + Raises + ------ + TypeError + If the new type is incompatible with the old type. + + """ + + # if the types are equivalent, there is no problem. + # for example: dtype((np.record, 'i4,i4')) == dtype((np.void, 'i4,i4')) + if oldtype == newtype: + return + + if newtype.hasobject or oldtype.hasobject: + raise TypeError("Cannot change data-type for array of references.") + return + + +# Given a string containing a PEP 3118 format specifier, +# construct a NumPy dtype + +_pep3118_native_map = { + '?': '?', + 'c': 'S1', + 'b': 'b', + 'B': 'B', + 'h': 'h', + 'H': 'H', + 'i': 'i', + 'I': 'I', + 'l': 'l', + 'L': 'L', + 'q': 'q', + 'Q': 'Q', + 'e': 'e', + 'f': 'f', + 'd': 'd', + 'g': 'g', + 'Zf': 'F', + 'Zd': 'D', + 'Zg': 'G', + 's': 'S', + 'w': 'U', + 'O': 'O', + 'x': 'V', # padding +} +_pep3118_native_typechars = ''.join(_pep3118_native_map.keys()) + +_pep3118_standard_map = { + '?': '?', + 'c': 'S1', + 'b': 'b', + 'B': 'B', + 'h': 'i2', + 'H': 'u2', + 'i': 'i4', + 'I': 'u4', + 'l': 'i4', + 'L': 'u4', + 'q': 'i8', + 'Q': 'u8', + 'e': 'f2', + 'f': 'f', + 'd': 'd', + 'Zf': 'F', + 'Zd': 'D', + 's': 'S', + 'w': 'U', + 'O': 'O', + 'x': 'V', # padding +} +_pep3118_standard_typechars = ''.join(_pep3118_standard_map.keys()) + +_pep3118_unsupported_map = { + 'u': 'UCS-2 strings', + '&': 'pointers', + 't': 'bitfields', + 'X': 'function pointers', +} + +class _Stream: + def __init__(self, s): + self.s = s + self.byteorder = '@' + + def advance(self, n): + res = self.s[:n] + self.s = self.s[n:] + return res + + def consume(self, c): + if self.s[:len(c)] == c: + self.advance(len(c)) + return True + return False + + def consume_until(self, c): + if callable(c): + i = 0 + while i < len(self.s) and not c(self.s[i]): + i = i + 1 + return self.advance(i) + else: + i = self.s.index(c) + res = self.advance(i) + self.advance(len(c)) + return res + + @property + def next(self): + return self.s[0] + + def __bool__(self): + return bool(self.s) + + +def _dtype_from_pep3118(spec): + stream = _Stream(spec) + dtype, align = __dtype_from_pep3118(stream, is_subdtype=False) + return dtype + +def __dtype_from_pep3118(stream, is_subdtype): + field_spec = dict( + names=[], + formats=[], + offsets=[], + itemsize=0 + ) + offset = 0 + common_alignment = 1 + is_padding = False + + # Parse spec + while stream: + value = None + + # End of structure, bail out to upper level + if stream.consume('}'): + break + + # Sub-arrays (1) + shape = None + if stream.consume('('): + shape = stream.consume_until(')') + shape = tuple(map(int, shape.split(','))) + + # Byte order + if stream.next in ('@', '=', '<', '>', '^', '!'): + byteorder = stream.advance(1) + if byteorder == '!': + byteorder = '>' + stream.byteorder = byteorder + + # Byte order characters also control native vs. standard type sizes + if stream.byteorder in ('@', '^'): + type_map = _pep3118_native_map + type_map_chars = _pep3118_native_typechars + else: + type_map = _pep3118_standard_map + type_map_chars = _pep3118_standard_typechars + + # Item sizes + itemsize_str = stream.consume_until(lambda c: not c.isdigit()) + if itemsize_str: + itemsize = int(itemsize_str) + else: + itemsize = 1 + + # Data types + is_padding = False + + if stream.consume('T{'): + value, align = __dtype_from_pep3118( + stream, is_subdtype=True) + elif stream.next in type_map_chars: + if stream.next == 'Z': + typechar = stream.advance(2) + else: + typechar = stream.advance(1) + + is_padding = (typechar == 'x') + dtypechar = type_map[typechar] + if dtypechar in 'USV': + dtypechar += '%d' % itemsize + itemsize = 1 + numpy_byteorder = {'@': '=', '^': '='}.get( + stream.byteorder, stream.byteorder) + value = dtype(numpy_byteorder + dtypechar) + align = value.alignment + elif stream.next in _pep3118_unsupported_map: + desc = _pep3118_unsupported_map[stream.next] + raise NotImplementedError( + "Unrepresentable PEP 3118 data type {!r} ({})" + .format(stream.next, desc)) + else: + raise ValueError( + "Unknown PEP 3118 data type specifier %r" % stream.s + ) + + # + # Native alignment may require padding + # + # Here we assume that the presence of a '@' character implicitly + # implies that the start of the array is *already* aligned. + # + extra_offset = 0 + if stream.byteorder == '@': + start_padding = (-offset) % align + intra_padding = (-value.itemsize) % align + + offset += start_padding + + if intra_padding != 0: + if itemsize > 1 or (shape is not None and _prod(shape) > 1): + # Inject internal padding to the end of the sub-item + value = _add_trailing_padding(value, intra_padding) + else: + # We can postpone the injection of internal padding, + # as the item appears at most once + extra_offset += intra_padding + + # Update common alignment + common_alignment = _lcm(align, common_alignment) + + # Convert itemsize to sub-array + if itemsize != 1: + value = dtype((value, (itemsize,))) + + # Sub-arrays (2) + if shape is not None: + value = dtype((value, shape)) + + # Field name + if stream.consume(':'): + name = stream.consume_until(':') + else: + name = None + + if not (is_padding and name is None): + if name is not None and name in field_spec['names']: + raise RuntimeError( + f"Duplicate field name '{name}' in PEP3118 format" + ) + field_spec['names'].append(name) + field_spec['formats'].append(value) + field_spec['offsets'].append(offset) + + offset += value.itemsize + offset += extra_offset + + field_spec['itemsize'] = offset + + # extra final padding for aligned types + if stream.byteorder == '@': + field_spec['itemsize'] += (-offset) % common_alignment + + # Check if this was a simple 1-item type, and unwrap it + if (field_spec['names'] == [None] + and field_spec['offsets'][0] == 0 + and field_spec['itemsize'] == field_spec['formats'][0].itemsize + and not is_subdtype): + ret = field_spec['formats'][0] + else: + _fix_names(field_spec) + ret = dtype(field_spec) + + # Finished + return ret, common_alignment + +def _fix_names(field_spec): + """ Replace names which are None with the next unused f%d name """ + names = field_spec['names'] + for i, name in enumerate(names): + if name is not None: + continue + + j = 0 + while True: + name = f'f{j}' + if name not in names: + break + j = j + 1 + names[i] = name + +def _add_trailing_padding(value, padding): + """Inject the specified number of padding bytes at the end of a dtype""" + if value.fields is None: + field_spec = dict( + names=['f0'], + formats=[value], + offsets=[0], + itemsize=value.itemsize + ) + else: + fields = value.fields + names = value.names + field_spec = dict( + names=names, + formats=[fields[name][0] for name in names], + offsets=[fields[name][1] for name in names], + itemsize=value.itemsize + ) + + field_spec['itemsize'] += padding + return dtype(field_spec) + +def _prod(a): + p = 1 + for x in a: + p *= x + return p + +def _gcd(a, b): + """Calculate the greatest common divisor of a and b""" + if not (math.isfinite(a) and math.isfinite(b)): + raise ValueError('Can only find greatest common divisor of ' + f'finite arguments, found "{a}" and "{b}"') + while b: + a, b = b, a % b + return a + +def _lcm(a, b): + return a // _gcd(a, b) * b + +def array_ufunc_errmsg_formatter(dummy, ufunc, method, *inputs, **kwargs): + """ Format the error message for when __array_ufunc__ gives up. """ + args_string = ', '.join(['{!r}'.format(arg) for arg in inputs] + + ['{}={!r}'.format(k, v) + for k, v in kwargs.items()]) + args = inputs + kwargs.get('out', ()) + types_string = ', '.join(repr(type(arg).__name__) for arg in args) + return ('operand type(s) all returned NotImplemented from ' + '__array_ufunc__({!r}, {!r}, {}): {}' + .format(ufunc, method, args_string, types_string)) + + +def array_function_errmsg_formatter(public_api, types): + """ Format the error message for when __array_ufunc__ gives up. """ + func_name = '{}.{}'.format(public_api.__module__, public_api.__name__) + return ("no implementation found for '{}' on types that implement " + '__array_function__: {}'.format(func_name, list(types))) + + +def _ufunc_doc_signature_formatter(ufunc): + """ + Builds a signature string which resembles PEP 457 + + This is used to construct the first line of the docstring + """ + + # input arguments are simple + if ufunc.nin == 1: + in_args = 'x' + else: + in_args = ', '.join(f'x{i+1}' for i in range(ufunc.nin)) + + # output arguments are both keyword or positional + if ufunc.nout == 0: + out_args = ', /, out=()' + elif ufunc.nout == 1: + out_args = ', /, out=None' + else: + out_args = '[, {positional}], / [, out={default}]'.format( + positional=', '.join( + 'out{}'.format(i+1) for i in range(ufunc.nout)), + default=repr((None,)*ufunc.nout) + ) + + # keyword only args depend on whether this is a gufunc + kwargs = ( + ", casting='same_kind'" + ", order='K'" + ", dtype=None" + ", subok=True" + ) + + # NOTE: gufuncs may or may not support the `axis` parameter + if ufunc.signature is None: + kwargs = f", where=True{kwargs}[, signature]" + else: + kwargs += "[, signature, axes, axis]" + + # join all the parts together + return '{name}({in_args}{out_args}, *{kwargs})'.format( + name=ufunc.__name__, + in_args=in_args, + out_args=out_args, + kwargs=kwargs + ) + + +def npy_ctypes_check(cls): + # determine if a class comes from ctypes, in order to work around + # a bug in the buffer protocol for those objects, bpo-10746 + try: + # ctypes class are new-style, so have an __mro__. This probably fails + # for ctypes classes with multiple inheritance. + if IS_PYPY: + # (..., _ctypes.basics._CData, Bufferable, object) + ctype_base = cls.__mro__[-3] + else: + # # (..., _ctypes._CData, object) + ctype_base = cls.__mro__[-2] + # right now, they're part of the _ctypes module + return '_ctypes' in ctype_base.__module__ + except Exception: + return False + +# used to handle the _NoValue default argument for na_object +# in the C implementation of the __reduce__ method for stringdtype +def _convert_to_stringdtype_kwargs(coerce, na_object=_NoValue): + if na_object is _NoValue: + return StringDType(coerce=coerce) + return StringDType(coerce=coerce, na_object=na_object) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.pyi new file mode 100644 index 0000000000000000000000000000000000000000..15726fe3064ec71c9f5f65211bcdad7a0f2ee646 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_internal.pyi @@ -0,0 +1,72 @@ +import ctypes as ct +import re +from collections.abc import Callable, Iterable +from typing import Any, Final, Generic, overload + +from typing_extensions import Self, TypeVar, deprecated + +import numpy as np +import numpy.typing as npt +from numpy.ctypeslib import c_intp + +_CastT = TypeVar("_CastT", bound=ct._CanCastTo) +_T_co = TypeVar("_T_co", covariant=True) +_CT = TypeVar("_CT", bound=ct._CData) +_PT_co = TypeVar("_PT_co", bound=int | None, default=None, covariant=True) + +### + +IS_PYPY: Final[bool] = ... + +format_re: Final[re.Pattern[str]] = ... +sep_re: Final[re.Pattern[str]] = ... +space_re: Final[re.Pattern[str]] = ... + +### + +# TODO: Let the likes of `shape_as` and `strides_as` return `None` +# for 0D arrays once we've got shape-support + +class _ctypes(Generic[_PT_co]): + @overload + def __init__(self: _ctypes[None], /, array: npt.NDArray[Any], ptr: None = None) -> None: ... + @overload + def __init__(self, /, array: npt.NDArray[Any], ptr: _PT_co) -> None: ... + + # + @property + def data(self) -> _PT_co: ... + @property + def shape(self) -> ct.Array[c_intp]: ... + @property + def strides(self) -> ct.Array[c_intp]: ... + @property + def _as_parameter_(self) -> ct.c_void_p: ... + + # + def data_as(self, /, obj: type[_CastT]) -> _CastT: ... + def shape_as(self, /, obj: type[_CT]) -> ct.Array[_CT]: ... + def strides_as(self, /, obj: type[_CT]) -> ct.Array[_CT]: ... + + # + @deprecated('"get_data" is deprecated. Use "data" instead') + def get_data(self, /) -> _PT_co: ... + @deprecated('"get_shape" is deprecated. Use "shape" instead') + def get_shape(self, /) -> ct.Array[c_intp]: ... + @deprecated('"get_strides" is deprecated. Use "strides" instead') + def get_strides(self, /) -> ct.Array[c_intp]: ... + @deprecated('"get_as_parameter" is deprecated. Use "_as_parameter_" instead') + def get_as_parameter(self, /) -> ct.c_void_p: ... + +class dummy_ctype(Generic[_T_co]): + _cls: type[_T_co] + + def __init__(self, /, cls: type[_T_co]) -> None: ... + def __eq__(self, other: Self, /) -> bool: ... # type: ignore[override] # pyright: ignore[reportIncompatibleMethodOverride] + def __ne__(self, other: Self, /) -> bool: ... # type: ignore[override] # pyright: ignore[reportIncompatibleMethodOverride] + def __mul__(self, other: object, /) -> Self: ... + def __call__(self, /, *other: object) -> _T_co: ... + +def array_ufunc_errmsg_formatter(dummy: object, ufunc: np.ufunc, method: str, *inputs: object, **kwargs: object) -> str: ... +def array_function_errmsg_formatter(public_api: Callable[..., object], types: Iterable[str]) -> str: ... +def npy_ctypes_check(cls: type) -> bool: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.py new file mode 100644 index 0000000000000000000000000000000000000000..d6e2d1496f28b785fda25a71b0552f0da80cdd3b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.py @@ -0,0 +1,356 @@ +""" +Machine arithmetic - determine the parameters of the +floating-point arithmetic system + +Author: Pearu Peterson, September 2003 + +""" +__all__ = ['MachAr'] + +from .fromnumeric import any +from ._ufunc_config import errstate +from .._utils import set_module + +# Need to speed this up...especially for longdouble + +# Deprecated 2021-10-20, NumPy 1.22 +class MachAr: + """ + Diagnosing machine parameters. + + Attributes + ---------- + ibeta : int + Radix in which numbers are represented. + it : int + Number of base-`ibeta` digits in the floating point mantissa M. + machep : int + Exponent of the smallest (most negative) power of `ibeta` that, + added to 1.0, gives something different from 1.0 + eps : float + Floating-point number ``beta**machep`` (floating point precision) + negep : int + Exponent of the smallest power of `ibeta` that, subtracted + from 1.0, gives something different from 1.0. + epsneg : float + Floating-point number ``beta**negep``. + iexp : int + Number of bits in the exponent (including its sign and bias). + minexp : int + Smallest (most negative) power of `ibeta` consistent with there + being no leading zeros in the mantissa. + xmin : float + Floating-point number ``beta**minexp`` (the smallest [in + magnitude] positive floating point number with full precision). + maxexp : int + Smallest (positive) power of `ibeta` that causes overflow. + xmax : float + ``(1-epsneg) * beta**maxexp`` (the largest [in magnitude] + usable floating value). + irnd : int + In ``range(6)``, information on what kind of rounding is done + in addition, and on how underflow is handled. + ngrd : int + Number of 'guard digits' used when truncating the product + of two mantissas to fit the representation. + epsilon : float + Same as `eps`. + tiny : float + An alias for `smallest_normal`, kept for backwards compatibility. + huge : float + Same as `xmax`. + precision : float + ``- int(-log10(eps))`` + resolution : float + ``- 10**(-precision)`` + smallest_normal : float + The smallest positive floating point number with 1 as leading bit in + the mantissa following IEEE-754. Same as `xmin`. + smallest_subnormal : float + The smallest positive floating point number with 0 as leading bit in + the mantissa following IEEE-754. + + Parameters + ---------- + float_conv : function, optional + Function that converts an integer or integer array to a float + or float array. Default is `float`. + int_conv : function, optional + Function that converts a float or float array to an integer or + integer array. Default is `int`. + float_to_float : function, optional + Function that converts a float array to float. Default is `float`. + Note that this does not seem to do anything useful in the current + implementation. + float_to_str : function, optional + Function that converts a single float to a string. Default is + ``lambda v:'%24.16e' %v``. + title : str, optional + Title that is printed in the string representation of `MachAr`. + + See Also + -------- + finfo : Machine limits for floating point types. + iinfo : Machine limits for integer types. + + References + ---------- + .. [1] Press, Teukolsky, Vetterling and Flannery, + "Numerical Recipes in C++," 2nd ed, + Cambridge University Press, 2002, p. 31. + + """ + + def __init__(self, float_conv=float,int_conv=int, + float_to_float=float, + float_to_str=lambda v:'%24.16e' % v, + title='Python floating point number'): + """ + + float_conv - convert integer to float (array) + int_conv - convert float (array) to integer + float_to_float - convert float array to float + float_to_str - convert array float to str + title - description of used floating point numbers + + """ + # We ignore all errors here because we are purposely triggering + # underflow to detect the properties of the running arch. + with errstate(under='ignore'): + self._do_init(float_conv, int_conv, float_to_float, float_to_str, title) + + def _do_init(self, float_conv, int_conv, float_to_float, float_to_str, title): + max_iterN = 10000 + msg = "Did not converge after %d tries with %s" + one = float_conv(1) + two = one + one + zero = one - one + + # Do we really need to do this? Aren't they 2 and 2.0? + # Determine ibeta and beta + a = one + for _ in range(max_iterN): + a = a + a + temp = a + one + temp1 = temp - a + if any(temp1 - one != zero): + break + else: + raise RuntimeError(msg % (_, one.dtype)) + b = one + for _ in range(max_iterN): + b = b + b + temp = a + b + itemp = int_conv(temp-a) + if any(itemp != 0): + break + else: + raise RuntimeError(msg % (_, one.dtype)) + ibeta = itemp + beta = float_conv(ibeta) + + # Determine it and irnd + it = -1 + b = one + for _ in range(max_iterN): + it = it + 1 + b = b * beta + temp = b + one + temp1 = temp - b + if any(temp1 - one != zero): + break + else: + raise RuntimeError(msg % (_, one.dtype)) + + betah = beta / two + a = one + for _ in range(max_iterN): + a = a + a + temp = a + one + temp1 = temp - a + if any(temp1 - one != zero): + break + else: + raise RuntimeError(msg % (_, one.dtype)) + temp = a + betah + irnd = 0 + if any(temp-a != zero): + irnd = 1 + tempa = a + beta + temp = tempa + betah + if irnd == 0 and any(temp-tempa != zero): + irnd = 2 + + # Determine negep and epsneg + negep = it + 3 + betain = one / beta + a = one + for i in range(negep): + a = a * betain + b = a + for _ in range(max_iterN): + temp = one - a + if any(temp-one != zero): + break + a = a * beta + negep = negep - 1 + # Prevent infinite loop on PPC with gcc 4.0: + if negep < 0: + raise RuntimeError("could not determine machine tolerance " + "for 'negep', locals() -> %s" % (locals())) + else: + raise RuntimeError(msg % (_, one.dtype)) + negep = -negep + epsneg = a + + # Determine machep and eps + machep = - it - 3 + a = b + + for _ in range(max_iterN): + temp = one + a + if any(temp-one != zero): + break + a = a * beta + machep = machep + 1 + else: + raise RuntimeError(msg % (_, one.dtype)) + eps = a + + # Determine ngrd + ngrd = 0 + temp = one + eps + if irnd == 0 and any(temp*one - one != zero): + ngrd = 1 + + # Determine iexp + i = 0 + k = 1 + z = betain + t = one + eps + nxres = 0 + for _ in range(max_iterN): + y = z + z = y*y + a = z*one # Check here for underflow + temp = z*t + if any(a+a == zero) or any(abs(z) >= y): + break + temp1 = temp * betain + if any(temp1*beta == z): + break + i = i + 1 + k = k + k + else: + raise RuntimeError(msg % (_, one.dtype)) + if ibeta != 10: + iexp = i + 1 + mx = k + k + else: + iexp = 2 + iz = ibeta + while k >= iz: + iz = iz * ibeta + iexp = iexp + 1 + mx = iz + iz - 1 + + # Determine minexp and xmin + for _ in range(max_iterN): + xmin = y + y = y * betain + a = y * one + temp = y * t + if any((a + a) != zero) and any(abs(y) < xmin): + k = k + 1 + temp1 = temp * betain + if any(temp1*beta == y) and any(temp != y): + nxres = 3 + xmin = y + break + else: + break + else: + raise RuntimeError(msg % (_, one.dtype)) + minexp = -k + + # Determine maxexp, xmax + if mx <= k + k - 3 and ibeta != 10: + mx = mx + mx + iexp = iexp + 1 + maxexp = mx + minexp + irnd = irnd + nxres + if irnd >= 2: + maxexp = maxexp - 2 + i = maxexp + minexp + if ibeta == 2 and not i: + maxexp = maxexp - 1 + if i > 20: + maxexp = maxexp - 1 + if any(a != y): + maxexp = maxexp - 2 + xmax = one - epsneg + if any(xmax*one != xmax): + xmax = one - beta*epsneg + xmax = xmax / (xmin*beta*beta*beta) + i = maxexp + minexp + 3 + for j in range(i): + if ibeta == 2: + xmax = xmax + xmax + else: + xmax = xmax * beta + + smallest_subnormal = abs(xmin / beta ** (it)) + + self.ibeta = ibeta + self.it = it + self.negep = negep + self.epsneg = float_to_float(epsneg) + self._str_epsneg = float_to_str(epsneg) + self.machep = machep + self.eps = float_to_float(eps) + self._str_eps = float_to_str(eps) + self.ngrd = ngrd + self.iexp = iexp + self.minexp = minexp + self.xmin = float_to_float(xmin) + self._str_xmin = float_to_str(xmin) + self.maxexp = maxexp + self.xmax = float_to_float(xmax) + self._str_xmax = float_to_str(xmax) + self.irnd = irnd + + self.title = title + # Commonly used parameters + self.epsilon = self.eps + self.tiny = self.xmin + self.huge = self.xmax + self.smallest_normal = self.xmin + self._str_smallest_normal = float_to_str(self.xmin) + self.smallest_subnormal = float_to_float(smallest_subnormal) + self._str_smallest_subnormal = float_to_str(smallest_subnormal) + + import math + self.precision = int(-math.log10(float_to_float(self.eps))) + ten = two + two + two + two + two + resolution = ten ** (-self.precision) + self.resolution = float_to_float(resolution) + self._str_resolution = float_to_str(resolution) + + def __str__(self): + fmt = ( + 'Machine parameters for %(title)s\n' + '---------------------------------------------------------------------\n' + 'ibeta=%(ibeta)s it=%(it)s iexp=%(iexp)s ngrd=%(ngrd)s irnd=%(irnd)s\n' + 'machep=%(machep)s eps=%(_str_eps)s (beta**machep == epsilon)\n' + 'negep =%(negep)s epsneg=%(_str_epsneg)s (beta**epsneg)\n' + 'minexp=%(minexp)s xmin=%(_str_xmin)s (beta**minexp == tiny)\n' + 'maxexp=%(maxexp)s xmax=%(_str_xmax)s ((1-epsneg)*beta**maxexp == huge)\n' + 'smallest_normal=%(smallest_normal)s ' + 'smallest_subnormal=%(smallest_subnormal)s\n' + '---------------------------------------------------------------------\n' + ) + return fmt % self.__dict__ + + +if __name__ == '__main__': + print(MachAr()) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.pyi new file mode 100644 index 0000000000000000000000000000000000000000..5abfc779c2120734c29d017844dd6ecc2b171bdb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_machar.pyi @@ -0,0 +1,73 @@ +from collections.abc import Iterable +from typing import Any, Final, overload + +from typing_extensions import TypeVar, Unpack + +import numpy as np +from numpy import _CastingKind +from numpy._utils import set_module as set_module + +### + +_T = TypeVar("_T") +_TupleT = TypeVar("_TupleT", bound=tuple[()] | tuple[Any, Any, Unpack[tuple[Any, ...]]]) +_ExceptionT = TypeVar("_ExceptionT", bound=Exception) + +### + +class UFuncTypeError(TypeError): + ufunc: Final[np.ufunc] + def __init__(self, /, ufunc: np.ufunc) -> None: ... + +class _UFuncNoLoopError(UFuncTypeError): + dtypes: tuple[np.dtype[Any], ...] + def __init__(self, /, ufunc: np.ufunc, dtypes: Iterable[np.dtype[Any]]) -> None: ... + +class _UFuncBinaryResolutionError(_UFuncNoLoopError): + dtypes: tuple[np.dtype[Any], np.dtype[Any]] + def __init__(self, /, ufunc: np.ufunc, dtypes: Iterable[np.dtype[Any]]) -> None: ... + +class _UFuncCastingError(UFuncTypeError): + casting: Final[_CastingKind] + from_: Final[np.dtype[Any]] + to: Final[np.dtype[Any]] + def __init__(self, /, ufunc: np.ufunc, casting: _CastingKind, from_: np.dtype[Any], to: np.dtype[Any]) -> None: ... + +class _UFuncInputCastingError(_UFuncCastingError): + in_i: Final[int] + def __init__( + self, + /, + ufunc: np.ufunc, + casting: _CastingKind, + from_: np.dtype[Any], + to: np.dtype[Any], + i: int, + ) -> None: ... + +class _UFuncOutputCastingError(_UFuncCastingError): + out_i: Final[int] + def __init__( + self, + /, + ufunc: np.ufunc, + casting: _CastingKind, + from_: np.dtype[Any], + to: np.dtype[Any], + i: int, + ) -> None: ... + +class _ArrayMemoryError(MemoryError): + shape: tuple[int, ...] + dtype: np.dtype[Any] + def __init__(self, /, shape: tuple[int, ...], dtype: np.dtype[Any]) -> None: ... + @property + def _total_size(self) -> int: ... + @staticmethod + def _size_to_string(num_bytes: int) -> str: ... + +@overload +def _unpack_tuple(tup: tuple[_T]) -> _T: ... +@overload +def _unpack_tuple(tup: _TupleT) -> _TupleT: ... +def _display_as_base(cls: type[_ExceptionT]) -> type[_ExceptionT]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.py new file mode 100644 index 0000000000000000000000000000000000000000..03c673fc0ff881d8de7f5d6f52abf975c9db3360 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.py @@ -0,0 +1,256 @@ +""" +Array methods which are called by both the C-code for the method +and the Python code for the NumPy-namespace function + +""" +import os +import pickle +import warnings +from contextlib import nullcontext + +import numpy as np +from numpy._core import multiarray as mu +from numpy._core import umath as um +from numpy._core.multiarray import asanyarray +from numpy._core import numerictypes as nt +from numpy._core import _exceptions +from numpy._globals import _NoValue + +# save those O(100) nanoseconds! +bool_dt = mu.dtype("bool") +umr_maximum = um.maximum.reduce +umr_minimum = um.minimum.reduce +umr_sum = um.add.reduce +umr_prod = um.multiply.reduce +umr_bitwise_count = um.bitwise_count +umr_any = um.logical_or.reduce +umr_all = um.logical_and.reduce + +# Complex types to -> (2,)float view for fast-path computation in _var() +_complex_to_float = { + nt.dtype(nt.csingle) : nt.dtype(nt.single), + nt.dtype(nt.cdouble) : nt.dtype(nt.double), +} +# Special case for windows: ensure double takes precedence +if nt.dtype(nt.longdouble) != nt.dtype(nt.double): + _complex_to_float.update({ + nt.dtype(nt.clongdouble) : nt.dtype(nt.longdouble), + }) + +# avoid keyword arguments to speed up parsing, saves about 15%-20% for very +# small reductions +def _amax(a, axis=None, out=None, keepdims=False, + initial=_NoValue, where=True): + return umr_maximum(a, axis, None, out, keepdims, initial, where) + +def _amin(a, axis=None, out=None, keepdims=False, + initial=_NoValue, where=True): + return umr_minimum(a, axis, None, out, keepdims, initial, where) + +def _sum(a, axis=None, dtype=None, out=None, keepdims=False, + initial=_NoValue, where=True): + return umr_sum(a, axis, dtype, out, keepdims, initial, where) + +def _prod(a, axis=None, dtype=None, out=None, keepdims=False, + initial=_NoValue, where=True): + return umr_prod(a, axis, dtype, out, keepdims, initial, where) + +def _any(a, axis=None, dtype=None, out=None, keepdims=False, *, where=True): + # By default, return a boolean for any and all + if dtype is None: + dtype = bool_dt + # Parsing keyword arguments is currently fairly slow, so avoid it for now + if where is True: + return umr_any(a, axis, dtype, out, keepdims) + return umr_any(a, axis, dtype, out, keepdims, where=where) + +def _all(a, axis=None, dtype=None, out=None, keepdims=False, *, where=True): + # By default, return a boolean for any and all + if dtype is None: + dtype = bool_dt + # Parsing keyword arguments is currently fairly slow, so avoid it for now + if where is True: + return umr_all(a, axis, dtype, out, keepdims) + return umr_all(a, axis, dtype, out, keepdims, where=where) + +def _count_reduce_items(arr, axis, keepdims=False, where=True): + # fast-path for the default case + if where is True: + # no boolean mask given, calculate items according to axis + if axis is None: + axis = tuple(range(arr.ndim)) + elif not isinstance(axis, tuple): + axis = (axis,) + items = 1 + for ax in axis: + items *= arr.shape[mu.normalize_axis_index(ax, arr.ndim)] + items = nt.intp(items) + else: + # TODO: Optimize case when `where` is broadcast along a non-reduction + # axis and full sum is more excessive than needed. + + # guarded to protect circular imports + from numpy.lib._stride_tricks_impl import broadcast_to + # count True values in (potentially broadcasted) boolean mask + items = umr_sum(broadcast_to(where, arr.shape), axis, nt.intp, None, + keepdims) + return items + +def _clip(a, min=None, max=None, out=None, **kwargs): + if a.dtype.kind in "iu": + # If min/max is a Python integer, deal with out-of-bound values here. + # (This enforces NEP 50 rules as no value based promotion is done.) + if type(min) is int and min <= np.iinfo(a.dtype).min: + min = None + if type(max) is int and max >= np.iinfo(a.dtype).max: + max = None + + if min is None and max is None: + # return identity + return um.positive(a, out=out, **kwargs) + elif min is None: + return um.minimum(a, max, out=out, **kwargs) + elif max is None: + return um.maximum(a, min, out=out, **kwargs) + else: + return um.clip(a, min, max, out=out, **kwargs) + +def _mean(a, axis=None, dtype=None, out=None, keepdims=False, *, where=True): + arr = asanyarray(a) + + is_float16_result = False + + rcount = _count_reduce_items(arr, axis, keepdims=keepdims, where=where) + if rcount == 0 if where is True else umr_any(rcount == 0, axis=None): + warnings.warn("Mean of empty slice.", RuntimeWarning, stacklevel=2) + + # Cast bool, unsigned int, and int to float64 by default + if dtype is None: + if issubclass(arr.dtype.type, (nt.integer, nt.bool)): + dtype = mu.dtype('f8') + elif issubclass(arr.dtype.type, nt.float16): + dtype = mu.dtype('f4') + is_float16_result = True + + ret = umr_sum(arr, axis, dtype, out, keepdims, where=where) + if isinstance(ret, mu.ndarray): + ret = um.true_divide( + ret, rcount, out=ret, casting='unsafe', subok=False) + if is_float16_result and out is None: + ret = arr.dtype.type(ret) + elif hasattr(ret, 'dtype'): + if is_float16_result: + ret = arr.dtype.type(ret / rcount) + else: + ret = ret.dtype.type(ret / rcount) + else: + ret = ret / rcount + + return ret + +def _var(a, axis=None, dtype=None, out=None, ddof=0, keepdims=False, *, + where=True, mean=None): + arr = asanyarray(a) + + rcount = _count_reduce_items(arr, axis, keepdims=keepdims, where=where) + # Make this warning show up on top. + if ddof >= rcount if where is True else umr_any(ddof >= rcount, axis=None): + warnings.warn("Degrees of freedom <= 0 for slice", RuntimeWarning, + stacklevel=2) + + # Cast bool, unsigned int, and int to float64 by default + if dtype is None and issubclass(arr.dtype.type, (nt.integer, nt.bool)): + dtype = mu.dtype('f8') + + if mean is not None: + arrmean = mean + else: + # Compute the mean. + # Note that if dtype is not of inexact type then arraymean will + # not be either. + arrmean = umr_sum(arr, axis, dtype, keepdims=True, where=where) + # The shape of rcount has to match arrmean to not change the shape of + # out in broadcasting. Otherwise, it cannot be stored back to arrmean. + if rcount.ndim == 0: + # fast-path for default case when where is True + div = rcount + else: + # matching rcount to arrmean when where is specified as array + div = rcount.reshape(arrmean.shape) + if isinstance(arrmean, mu.ndarray): + arrmean = um.true_divide(arrmean, div, out=arrmean, + casting='unsafe', subok=False) + elif hasattr(arrmean, "dtype"): + arrmean = arrmean.dtype.type(arrmean / rcount) + else: + arrmean = arrmean / rcount + + # Compute sum of squared deviations from mean + # Note that x may not be inexact and that we need it to be an array, + # not a scalar. + x = asanyarray(arr - arrmean) + + if issubclass(arr.dtype.type, (nt.floating, nt.integer)): + x = um.multiply(x, x, out=x) + # Fast-paths for built-in complex types + elif x.dtype in _complex_to_float: + xv = x.view(dtype=(_complex_to_float[x.dtype], (2,))) + um.multiply(xv, xv, out=xv) + x = um.add(xv[..., 0], xv[..., 1], out=x.real).real + # Most general case; includes handling object arrays containing imaginary + # numbers and complex types with non-native byteorder + else: + x = um.multiply(x, um.conjugate(x), out=x).real + + ret = umr_sum(x, axis, dtype, out, keepdims=keepdims, where=where) + + # Compute degrees of freedom and make sure it is not negative. + rcount = um.maximum(rcount - ddof, 0) + + # divide by degrees of freedom + if isinstance(ret, mu.ndarray): + ret = um.true_divide( + ret, rcount, out=ret, casting='unsafe', subok=False) + elif hasattr(ret, 'dtype'): + ret = ret.dtype.type(ret / rcount) + else: + ret = ret / rcount + + return ret + +def _std(a, axis=None, dtype=None, out=None, ddof=0, keepdims=False, *, + where=True, mean=None): + ret = _var(a, axis=axis, dtype=dtype, out=out, ddof=ddof, + keepdims=keepdims, where=where, mean=mean) + + if isinstance(ret, mu.ndarray): + ret = um.sqrt(ret, out=ret) + elif hasattr(ret, 'dtype'): + ret = ret.dtype.type(um.sqrt(ret)) + else: + ret = um.sqrt(ret) + + return ret + +def _ptp(a, axis=None, out=None, keepdims=False): + return um.subtract( + umr_maximum(a, axis, None, out, keepdims), + umr_minimum(a, axis, None, None, keepdims), + out + ) + +def _dump(self, file, protocol=2): + if hasattr(file, 'write'): + ctx = nullcontext(file) + else: + ctx = open(os.fspath(file), "wb") + with ctx as f: + pickle.dump(self, f, protocol=protocol) + +def _dumps(self, protocol=2): + return pickle.dumps(self, protocol=protocol) + +def _bitwise_count(a, out=None, *, where=True, casting='same_kind', + order='K', dtype=None, subok=True): + return umr_bitwise_count(a, out, where=where, casting=casting, + order=order, dtype=dtype, subok=subok) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.pyi new file mode 100644 index 0000000000000000000000000000000000000000..45e2b8b9f761d9144fbc054a8f461d557a3f7690 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_methods.pyi @@ -0,0 +1,24 @@ +from collections.abc import Callable +from typing import Any, TypeAlias + +from typing_extensions import Concatenate + +import numpy as np + +from . import _exceptions as _exceptions + +### + +_Reduce2: TypeAlias = Callable[Concatenate[object, ...], Any] + +### + +bool_dt: np.dtype[np.bool] = ... +umr_maximum: _Reduce2 = ... +umr_minimum: _Reduce2 = ... +umr_sum: _Reduce2 = ... +umr_prod: _Reduce2 = ... +umr_bitwise_count = np.bitwise_count +umr_any: _Reduce2 = ... +umr_all: _Reduce2 = ... +_complex_to_float: dict[np.dtype[np.complexfloating], np.dtype[np.floating]] = ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_operand_flag_tests.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_operand_flag_tests.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..d59f49e9b59fa7f7099de3a42f9dc3f64689180f Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_operand_flag_tests.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_rational_tests.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_rational_tests.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..c1d1743efb448697e4b7aa3a0373579f73c55f65 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_rational_tests.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_simd.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_simd.pyi new file mode 100644 index 0000000000000000000000000000000000000000..70bb7077797e044f6214a731642cc815bf63868d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_simd.pyi @@ -0,0 +1,25 @@ +from types import ModuleType +from typing import TypedDict, type_check_only + +# NOTE: these 5 are only defined on systems with an intel processor +SSE42: ModuleType | None = ... +FMA3: ModuleType | None = ... +AVX2: ModuleType | None = ... +AVX512F: ModuleType | None = ... +AVX512_SKX: ModuleType | None = ... + +baseline: ModuleType | None = ... + +@type_check_only +class SimdTargets(TypedDict): + SSE42: ModuleType | None + AVX2: ModuleType | None + FMA3: ModuleType | None + AVX512F: ModuleType | None + AVX512_SKX: ModuleType | None + baseline: ModuleType | None + +targets: SimdTargets = ... + +def clear_floatstatus() -> None: ... +def get_floatstatus() -> int: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.py new file mode 100644 index 0000000000000000000000000000000000000000..8a64ab5a05e43714d07245b3ad7cd204e1831095 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.py @@ -0,0 +1,100 @@ +""" +String-handling utilities to avoid locale-dependence. + +Used primarily to generate type name aliases. +""" +# "import string" is costly to import! +# Construct the translation tables directly +# "A" = chr(65), "a" = chr(97) +_all_chars = tuple(map(chr, range(256))) +_ascii_upper = _all_chars[65:65+26] +_ascii_lower = _all_chars[97:97+26] +LOWER_TABLE = _all_chars[:65] + _ascii_lower + _all_chars[65+26:] +UPPER_TABLE = _all_chars[:97] + _ascii_upper + _all_chars[97+26:] + + +def english_lower(s): + """ Apply English case rules to convert ASCII strings to all lower case. + + This is an internal utility function to replace calls to str.lower() such + that we can avoid changing behavior with changing locales. In particular, + Turkish has distinct dotted and dotless variants of the Latin letter "I" in + both lowercase and uppercase. Thus, "I".lower() != "i" in a "tr" locale. + + Parameters + ---------- + s : str + + Returns + ------- + lowered : str + + Examples + -------- + >>> from numpy._core.numerictypes import english_lower + >>> english_lower('ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz0123456789_') + 'abcdefghijklmnopqrstuvwxyzabcdefghijklmnopqrstuvwxyz0123456789_' + >>> english_lower('') + '' + """ + lowered = s.translate(LOWER_TABLE) + return lowered + + +def english_upper(s): + """ Apply English case rules to convert ASCII strings to all upper case. + + This is an internal utility function to replace calls to str.upper() such + that we can avoid changing behavior with changing locales. In particular, + Turkish has distinct dotted and dotless variants of the Latin letter "I" in + both lowercase and uppercase. Thus, "i".upper() != "I" in a "tr" locale. + + Parameters + ---------- + s : str + + Returns + ------- + uppered : str + + Examples + -------- + >>> from numpy._core.numerictypes import english_upper + >>> english_upper('ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz0123456789_') + 'ABCDEFGHIJKLMNOPQRSTUVWXYZABCDEFGHIJKLMNOPQRSTUVWXYZ0123456789_' + >>> english_upper('') + '' + """ + uppered = s.translate(UPPER_TABLE) + return uppered + + +def english_capitalize(s): + """ Apply English case rules to convert the first character of an ASCII + string to upper case. + + This is an internal utility function to replace calls to str.capitalize() + such that we can avoid changing behavior with changing locales. + + Parameters + ---------- + s : str + + Returns + ------- + capitalized : str + + Examples + -------- + >>> from numpy._core.numerictypes import english_capitalize + >>> english_capitalize('int8') + 'Int8' + >>> english_capitalize('Int8') + 'Int8' + >>> english_capitalize('') + '' + """ + if s: + return english_upper(s[0]) + s[1:] + else: + return s diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.pyi new file mode 100644 index 0000000000000000000000000000000000000000..6a85832b7a930edf28cf414e1f7801e6a3d94605 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_string_helpers.pyi @@ -0,0 +1,12 @@ +from typing import Final + +_all_chars: Final[tuple[str, ...]] = ... +_ascii_upper: Final[tuple[str, ...]] = ... +_ascii_lower: Final[tuple[str, ...]] = ... + +LOWER_TABLE: Final[tuple[str, ...]] = ... +UPPER_TABLE: Final[tuple[str, ...]] = ... + +def english_lower(s: str) -> str: ... +def english_upper(s: str) -> str: ... +def english_capitalize(s: str) -> str: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_struct_ufunc_tests.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_struct_ufunc_tests.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..13a0f4984c3f15de34d6285a34f2ec84c455b58c Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_struct_ufunc_tests.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.py new file mode 100644 index 0000000000000000000000000000000000000000..b8ea3851f0e5c4375b272925f375752a34118a24 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.py @@ -0,0 +1,119 @@ +""" +Due to compatibility, numpy has a very large number of different naming +conventions for the scalar types (those subclassing from `numpy.generic`). +This file produces a convoluted set of dictionaries mapping names to types, +and sometimes other mappings too. + +.. data:: allTypes + A dictionary of names to types that will be exposed as attributes through + ``np._core.numerictypes.*`` + +.. data:: sctypeDict + Similar to `allTypes`, but maps a broader set of aliases to their types. + +.. data:: sctypes + A dictionary keyed by a "type group" string, providing a list of types + under that group. + +""" + +import numpy._core.multiarray as ma +from numpy._core.multiarray import typeinfo, dtype + +###################################### +# Building `sctypeDict` and `allTypes` +###################################### + +sctypeDict = {} +allTypes = {} +c_names_dict = {} + +_abstract_type_names = { + "generic", "integer", "inexact", "floating", "number", + "flexible", "character", "complexfloating", "unsignedinteger", + "signedinteger" +} + +for _abstract_type_name in _abstract_type_names: + allTypes[_abstract_type_name] = getattr(ma, _abstract_type_name) + +for k, v in typeinfo.items(): + if k.startswith("NPY_") and v not in c_names_dict: + c_names_dict[k[4:]] = v + else: + concrete_type = v.type + allTypes[k] = concrete_type + sctypeDict[k] = concrete_type + +_aliases = { + "double": "float64", + "cdouble": "complex128", + "single": "float32", + "csingle": "complex64", + "half": "float16", + "bool_": "bool", + # Default integer: + "int_": "intp", + "uint": "uintp", +} + +for k, v in _aliases.items(): + sctypeDict[k] = allTypes[v] + allTypes[k] = allTypes[v] + +# extra aliases are added only to `sctypeDict` +# to support dtype name access, such as`np.dtype("float")` +_extra_aliases = { + "float": "float64", + "complex": "complex128", + "object": "object_", + "bytes": "bytes_", + "a": "bytes_", + "int": "int_", + "str": "str_", + "unicode": "str_", +} + +for k, v in _extra_aliases.items(): + sctypeDict[k] = allTypes[v] + +# include extended precision sized aliases +for is_complex, full_name in [(False, "longdouble"), (True, "clongdouble")]: + longdouble_type: type = allTypes[full_name] + + bits: int = dtype(longdouble_type).itemsize * 8 + base_name: str = "complex" if is_complex else "float" + extended_prec_name: str = f"{base_name}{bits}" + if extended_prec_name not in allTypes: + sctypeDict[extended_prec_name] = longdouble_type + allTypes[extended_prec_name] = longdouble_type + + +#################### +# Building `sctypes` +#################### + +sctypes = {"int": set(), "uint": set(), "float": set(), + "complex": set(), "others": set()} + +for type_info in typeinfo.values(): + if type_info.kind in ["M", "m"]: # exclude timedelta and datetime + continue + + concrete_type = type_info.type + + # find proper group for each concrete type + for type_group, abstract_type in [ + ("int", ma.signedinteger), ("uint", ma.unsignedinteger), + ("float", ma.floating), ("complex", ma.complexfloating), + ("others", ma.generic) + ]: + if issubclass(concrete_type, abstract_type): + sctypes[type_group].add(concrete_type) + break + +# sort sctype groups by bitsize +for sctype_key in sctypes.keys(): + sctype_list = list(sctypes[sctype_key]) + sctype_list.sort(key=lambda x: dtype(x).itemsize) + sctypes[sctype_key] = sctype_list diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.pyi new file mode 100644 index 0000000000000000000000000000000000000000..f92958a67d55a04e9bb66c4cf5aeefdf7aa2650d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_type_aliases.pyi @@ -0,0 +1,96 @@ +from collections.abc import Collection +from typing import Any, Final, Literal as L, TypeAlias, TypedDict, type_check_only + +import numpy as np + +__all__ = ( + "_abstract_type_names", + "_aliases", + "_extra_aliases", + "allTypes", + "c_names_dict", + "sctypeDict", + "sctypes", +) + +sctypeDict: Final[dict[str, type[np.generic]]] +allTypes: Final[dict[str, type[np.generic]]] + +@type_check_only +class _CNamesDict(TypedDict): + BOOL: np.dtype[np.bool] + HALF: np.dtype[np.half] + FLOAT: np.dtype[np.single] + DOUBLE: np.dtype[np.double] + LONGDOUBLE: np.dtype[np.longdouble] + CFLOAT: np.dtype[np.csingle] + CDOUBLE: np.dtype[np.cdouble] + CLONGDOUBLE: np.dtype[np.clongdouble] + STRING: np.dtype[np.bytes_] + UNICODE: np.dtype[np.str_] + VOID: np.dtype[np.void] + OBJECT: np.dtype[np.object_] + DATETIME: np.dtype[np.datetime64] + TIMEDELTA: np.dtype[np.timedelta64] + BYTE: np.dtype[np.byte] + UBYTE: np.dtype[np.ubyte] + SHORT: np.dtype[np.short] + USHORT: np.dtype[np.ushort] + INT: np.dtype[np.intc] + UINT: np.dtype[np.uintc] + LONG: np.dtype[np.long] + ULONG: np.dtype[np.ulong] + LONGLONG: np.dtype[np.longlong] + ULONGLONG: np.dtype[np.ulonglong] + +c_names_dict: Final[_CNamesDict] + +_AbstractTypeName: TypeAlias = L[ + "generic", + "flexible", + "character", + "number", + "integer", + "inexact", + "unsignedinteger", + "signedinteger", + "floating", + "complexfloating", +] +_abstract_type_names: Final[set[_AbstractTypeName]] + +@type_check_only +class _AliasesType(TypedDict): + double: L["float64"] + cdouble: L["complex128"] + single: L["float32"] + csingle: L["complex64"] + half: L["float16"] + bool_: L["bool"] + int_: L["intp"] + uint: L["intp"] + +_aliases: Final[_AliasesType] + +@type_check_only +class _ExtraAliasesType(TypedDict): + float: L["float64"] + complex: L["complex128"] + object: L["object_"] + bytes: L["bytes_"] + a: L["bytes_"] + int: L["int_"] + str: L["str_"] + unicode: L["str_"] + +_extra_aliases: Final[_ExtraAliasesType] + +@type_check_only +class _SCTypes(TypedDict): + int: Collection[type[np.signedinteger[Any]]] + uint: Collection[type[np.unsignedinteger[Any]]] + float: Collection[type[np.floating[Any]]] + complex: Collection[type[np.complexfloating[Any, Any]]] + others: Collection[type[np.flexible | np.bool | np.object_]] + +sctypes: Final[_SCTypes] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.py new file mode 100644 index 0000000000000000000000000000000000000000..4563f66cb52f521b762bf6a2134c319328c5ef92 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.py @@ -0,0 +1,483 @@ +""" +Functions for changing global ufunc configuration + +This provides helpers which wrap `_get_extobj_dict` and `_make_extobj`, and +`_extobj_contextvar` from umath. +""" +import contextlib +import contextvars +import functools + +from .._utils import set_module +from .umath import _make_extobj, _get_extobj_dict, _extobj_contextvar + +__all__ = [ + "seterr", "geterr", "setbufsize", "getbufsize", "seterrcall", "geterrcall", + "errstate" +] + + +@set_module('numpy') +def seterr(all=None, divide=None, over=None, under=None, invalid=None): + """ + Set how floating-point errors are handled. + + Note that operations on integer scalar types (such as `int16`) are + handled like floating point, and are affected by these settings. + + Parameters + ---------- + all : {'ignore', 'warn', 'raise', 'call', 'print', 'log'}, optional + Set treatment for all types of floating-point errors at once: + + - ignore: Take no action when the exception occurs. + - warn: Print a :exc:`RuntimeWarning` (via the Python `warnings` + module). + - raise: Raise a :exc:`FloatingPointError`. + - call: Call a function specified using the `seterrcall` function. + - print: Print a warning directly to ``stdout``. + - log: Record error in a Log object specified by `seterrcall`. + + The default is not to change the current behavior. + divide : {'ignore', 'warn', 'raise', 'call', 'print', 'log'}, optional + Treatment for division by zero. + over : {'ignore', 'warn', 'raise', 'call', 'print', 'log'}, optional + Treatment for floating-point overflow. + under : {'ignore', 'warn', 'raise', 'call', 'print', 'log'}, optional + Treatment for floating-point underflow. + invalid : {'ignore', 'warn', 'raise', 'call', 'print', 'log'}, optional + Treatment for invalid floating-point operation. + + Returns + ------- + old_settings : dict + Dictionary containing the old settings. + + See also + -------- + seterrcall : Set a callback function for the 'call' mode. + geterr, geterrcall, errstate + + Notes + ----- + The floating-point exceptions are defined in the IEEE 754 standard [1]_: + + - Division by zero: infinite result obtained from finite numbers. + - Overflow: result too large to be expressed. + - Underflow: result so close to zero that some precision + was lost. + - Invalid operation: result is not an expressible number, typically + indicates that a NaN was produced. + + .. [1] https://en.wikipedia.org/wiki/IEEE_754 + + Examples + -------- + >>> import numpy as np + >>> orig_settings = np.seterr(all='ignore') # seterr to known value + >>> np.int16(32000) * np.int16(3) + np.int16(30464) + >>> np.seterr(over='raise') + {'divide': 'ignore', 'over': 'ignore', 'under': 'ignore', 'invalid': 'ignore'} + >>> old_settings = np.seterr(all='warn', over='raise') + >>> np.int16(32000) * np.int16(3) + Traceback (most recent call last): + File "", line 1, in + FloatingPointError: overflow encountered in scalar multiply + + >>> old_settings = np.seterr(all='print') + >>> np.geterr() + {'divide': 'print', 'over': 'print', 'under': 'print', 'invalid': 'print'} + >>> np.int16(32000) * np.int16(3) + np.int16(30464) + >>> np.seterr(**orig_settings) # restore original + {'divide': 'print', 'over': 'print', 'under': 'print', 'invalid': 'print'} + + """ + + old = _get_extobj_dict() + # The errstate doesn't include call and bufsize, so pop them: + old.pop("call", None) + old.pop("bufsize", None) + + extobj = _make_extobj( + all=all, divide=divide, over=over, under=under, invalid=invalid) + _extobj_contextvar.set(extobj) + return old + + +@set_module('numpy') +def geterr(): + """ + Get the current way of handling floating-point errors. + + Returns + ------- + res : dict + A dictionary with keys "divide", "over", "under", and "invalid", + whose values are from the strings "ignore", "print", "log", "warn", + "raise", and "call". The keys represent possible floating-point + exceptions, and the values define how these exceptions are handled. + + See Also + -------- + geterrcall, seterr, seterrcall + + Notes + ----- + For complete documentation of the types of floating-point exceptions and + treatment options, see `seterr`. + + Examples + -------- + >>> import numpy as np + >>> np.geterr() + {'divide': 'warn', 'over': 'warn', 'under': 'ignore', 'invalid': 'warn'} + >>> np.arange(3.) / np.arange(3.) # doctest: +SKIP + array([nan, 1., 1.]) + RuntimeWarning: invalid value encountered in divide + + >>> oldsettings = np.seterr(all='warn', invalid='raise') + >>> np.geterr() + {'divide': 'warn', 'over': 'warn', 'under': 'warn', 'invalid': 'raise'} + >>> np.arange(3.) / np.arange(3.) + Traceback (most recent call last): + ... + FloatingPointError: invalid value encountered in divide + >>> oldsettings = np.seterr(**oldsettings) # restore original + + """ + res = _get_extobj_dict() + # The "geterr" doesn't include call and bufsize,: + res.pop("call", None) + res.pop("bufsize", None) + return res + + +@set_module('numpy') +def setbufsize(size): + """ + Set the size of the buffer used in ufuncs. + + .. versionchanged:: 2.0 + The scope of setting the buffer is tied to the `numpy.errstate` + context. Exiting a ``with errstate():`` will also restore the bufsize. + + Parameters + ---------- + size : int + Size of buffer. + + Returns + ------- + bufsize : int + Previous size of ufunc buffer in bytes. + + Examples + -------- + When exiting a `numpy.errstate` context manager the bufsize is restored: + + >>> import numpy as np + >>> with np.errstate(): + ... np.setbufsize(4096) + ... print(np.getbufsize()) + ... + 8192 + 4096 + >>> np.getbufsize() + 8192 + + """ + old = _get_extobj_dict()["bufsize"] + extobj = _make_extobj(bufsize=size) + _extobj_contextvar.set(extobj) + return old + + +@set_module('numpy') +def getbufsize(): + """ + Return the size of the buffer used in ufuncs. + + Returns + ------- + getbufsize : int + Size of ufunc buffer in bytes. + + Examples + -------- + >>> import numpy as np + >>> np.getbufsize() + 8192 + + """ + return _get_extobj_dict()["bufsize"] + + +@set_module('numpy') +def seterrcall(func): + """ + Set the floating-point error callback function or log object. + + There are two ways to capture floating-point error messages. The first + is to set the error-handler to 'call', using `seterr`. Then, set + the function to call using this function. + + The second is to set the error-handler to 'log', using `seterr`. + Floating-point errors then trigger a call to the 'write' method of + the provided object. + + Parameters + ---------- + func : callable f(err, flag) or object with write method + Function to call upon floating-point errors ('call'-mode) or + object whose 'write' method is used to log such message ('log'-mode). + + The call function takes two arguments. The first is a string describing + the type of error (such as "divide by zero", "overflow", "underflow", + or "invalid value"), and the second is the status flag. The flag is a + byte, whose four least-significant bits indicate the type of error, one + of "divide", "over", "under", "invalid":: + + [0 0 0 0 divide over under invalid] + + In other words, ``flags = divide + 2*over + 4*under + 8*invalid``. + + If an object is provided, its write method should take one argument, + a string. + + Returns + ------- + h : callable, log instance or None + The old error handler. + + See Also + -------- + seterr, geterr, geterrcall + + Examples + -------- + Callback upon error: + + >>> def err_handler(type, flag): + ... print("Floating point error (%s), with flag %s" % (type, flag)) + ... + + >>> import numpy as np + + >>> orig_handler = np.seterrcall(err_handler) + >>> orig_err = np.seterr(all='call') + + >>> np.array([1, 2, 3]) / 0.0 + Floating point error (divide by zero), with flag 1 + array([inf, inf, inf]) + + >>> np.seterrcall(orig_handler) + + >>> np.seterr(**orig_err) + {'divide': 'call', 'over': 'call', 'under': 'call', 'invalid': 'call'} + + Log error message: + + >>> class Log: + ... def write(self, msg): + ... print("LOG: %s" % msg) + ... + + >>> log = Log() + >>> saved_handler = np.seterrcall(log) + >>> save_err = np.seterr(all='log') + + >>> np.array([1, 2, 3]) / 0.0 + LOG: Warning: divide by zero encountered in divide + array([inf, inf, inf]) + + >>> np.seterrcall(orig_handler) + + >>> np.seterr(**orig_err) + {'divide': 'log', 'over': 'log', 'under': 'log', 'invalid': 'log'} + + """ + old = _get_extobj_dict()["call"] + extobj = _make_extobj(call=func) + _extobj_contextvar.set(extobj) + return old + + +@set_module('numpy') +def geterrcall(): + """ + Return the current callback function used on floating-point errors. + + When the error handling for a floating-point error (one of "divide", + "over", "under", or "invalid") is set to 'call' or 'log', the function + that is called or the log instance that is written to is returned by + `geterrcall`. This function or log instance has been set with + `seterrcall`. + + Returns + ------- + errobj : callable, log instance or None + The current error handler. If no handler was set through `seterrcall`, + ``None`` is returned. + + See Also + -------- + seterrcall, seterr, geterr + + Notes + ----- + For complete documentation of the types of floating-point exceptions and + treatment options, see `seterr`. + + Examples + -------- + >>> import numpy as np + >>> np.geterrcall() # we did not yet set a handler, returns None + + >>> orig_settings = np.seterr(all='call') + >>> def err_handler(type, flag): + ... print("Floating point error (%s), with flag %s" % (type, flag)) + >>> old_handler = np.seterrcall(err_handler) + >>> np.array([1, 2, 3]) / 0.0 + Floating point error (divide by zero), with flag 1 + array([inf, inf, inf]) + + >>> cur_handler = np.geterrcall() + >>> cur_handler is err_handler + True + >>> old_settings = np.seterr(**orig_settings) # restore original + >>> old_handler = np.seterrcall(None) # restore original + + """ + return _get_extobj_dict()["call"] + + +class _unspecified: + pass + + +_Unspecified = _unspecified() + + +@set_module('numpy') +class errstate: + """ + errstate(**kwargs) + + Context manager for floating-point error handling. + + Using an instance of `errstate` as a context manager allows statements in + that context to execute with a known error handling behavior. Upon entering + the context the error handling is set with `seterr` and `seterrcall`, and + upon exiting it is reset to what it was before. + + .. versionchanged:: 1.17.0 + `errstate` is also usable as a function decorator, saving + a level of indentation if an entire function is wrapped. + + .. versionchanged:: 2.0 + `errstate` is now fully thread and asyncio safe, but may not be + entered more than once. + It is not safe to decorate async functions using ``errstate``. + + Parameters + ---------- + kwargs : {divide, over, under, invalid} + Keyword arguments. The valid keywords are the possible floating-point + exceptions. Each keyword should have a string value that defines the + treatment for the particular error. Possible values are + {'ignore', 'warn', 'raise', 'call', 'print', 'log'}. + + See Also + -------- + seterr, geterr, seterrcall, geterrcall + + Notes + ----- + For complete documentation of the types of floating-point exceptions and + treatment options, see `seterr`. + + Examples + -------- + >>> import numpy as np + >>> olderr = np.seterr(all='ignore') # Set error handling to known state. + + >>> np.arange(3) / 0. + array([nan, inf, inf]) + >>> with np.errstate(divide='ignore'): + ... np.arange(3) / 0. + array([nan, inf, inf]) + + >>> np.sqrt(-1) + np.float64(nan) + >>> with np.errstate(invalid='raise'): + ... np.sqrt(-1) + Traceback (most recent call last): + File "", line 2, in + FloatingPointError: invalid value encountered in sqrt + + Outside the context the error handling behavior has not changed: + + >>> np.geterr() + {'divide': 'ignore', 'over': 'ignore', 'under': 'ignore', 'invalid': 'ignore'} + >>> olderr = np.seterr(**olderr) # restore original state + + """ + __slots__ = ( + "_call", "_all", "_divide", "_over", "_under", "_invalid", "_token") + + def __init__(self, *, call=_Unspecified, + all=None, divide=None, over=None, under=None, invalid=None): + self._token = None + self._call = call + self._all = all + self._divide = divide + self._over = over + self._under = under + self._invalid = invalid + + def __enter__(self): + # Note that __call__ duplicates much of this logic + if self._token is not None: + raise TypeError("Cannot enter `np.errstate` twice.") + if self._call is _Unspecified: + extobj = _make_extobj( + all=self._all, divide=self._divide, over=self._over, + under=self._under, invalid=self._invalid) + else: + extobj = _make_extobj( + call=self._call, + all=self._all, divide=self._divide, over=self._over, + under=self._under, invalid=self._invalid) + + self._token = _extobj_contextvar.set(extobj) + + def __exit__(self, *exc_info): + _extobj_contextvar.reset(self._token) + + def __call__(self, func): + # We need to customize `__call__` compared to `ContextDecorator` + # because we must store the token per-thread so cannot store it on + # the instance (we could create a new instance for this). + # This duplicates the code from `__enter__`. + @functools.wraps(func) + def inner(*args, **kwargs): + if self._call is _Unspecified: + extobj = _make_extobj( + all=self._all, divide=self._divide, over=self._over, + under=self._under, invalid=self._invalid) + else: + extobj = _make_extobj( + call=self._call, + all=self._all, divide=self._divide, over=self._over, + under=self._under, invalid=self._invalid) + + _token = _extobj_contextvar.set(extobj) + try: + # Call the original, decorated, function: + return func(*args, **kwargs) + finally: + _extobj_contextvar.reset(_token) + + return inner diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.pyi new file mode 100644 index 0000000000000000000000000000000000000000..78c9660323d1257e913bc62f9ade1ad21cef87dd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_ufunc_config.pyi @@ -0,0 +1,39 @@ +from _typeshed import SupportsWrite +from collections.abc import Callable +from typing import Any, Literal, TypeAlias, TypedDict, type_check_only + +from numpy import errstate as errstate + +_ErrKind: TypeAlias = Literal["ignore", "warn", "raise", "call", "print", "log"] +_ErrFunc: TypeAlias = Callable[[str, int], Any] +_ErrCall: TypeAlias = _ErrFunc | SupportsWrite[str] + +@type_check_only +class _ErrDict(TypedDict): + divide: _ErrKind + over: _ErrKind + under: _ErrKind + invalid: _ErrKind + +@type_check_only +class _ErrDictOptional(TypedDict, total=False): + all: None | _ErrKind + divide: None | _ErrKind + over: None | _ErrKind + under: None | _ErrKind + invalid: None | _ErrKind + +def seterr( + all: None | _ErrKind = ..., + divide: None | _ErrKind = ..., + over: None | _ErrKind = ..., + under: None | _ErrKind = ..., + invalid: None | _ErrKind = ..., +) -> _ErrDict: ... +def geterr() -> _ErrDict: ... +def setbufsize(size: int) -> int: ... +def getbufsize() -> int: ... +def seterrcall(func: _ErrCall | None) -> _ErrCall | None: ... +def geterrcall() -> _ErrCall | None: ... + +# See `numpy/__init__.pyi` for the `errstate` class and `no_nep5_warnings` diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_umath_tests.cpython-310-x86_64-linux-gnu.so b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_umath_tests.cpython-310-x86_64-linux-gnu.so new file mode 100644 index 0000000000000000000000000000000000000000..70a9651056856e4279991ed37d12cca2d74234af Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/_umath_tests.cpython-310-x86_64-linux-gnu.so differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.py new file mode 100644 index 0000000000000000000000000000000000000000..d95093a6a4e11983bac70eba7f572ddc955a6aed --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.py @@ -0,0 +1,1756 @@ +"""Array printing function + +$Id: arrayprint.py,v 1.9 2005/09/13 13:58:44 teoliphant Exp $ + +""" +__all__ = ["array2string", "array_str", "array_repr", + "set_printoptions", "get_printoptions", "printoptions", + "format_float_positional", "format_float_scientific"] +__docformat__ = 'restructuredtext' + +# +# Written by Konrad Hinsen +# last revision: 1996-3-13 +# modified by Jim Hugunin 1997-3-3 for repr's and str's (and other details) +# and by Perry Greenfield 2000-4-1 for numarray +# and by Travis Oliphant 2005-8-22 for numpy + + +# Note: Both scalartypes.c.src and arrayprint.py implement strs for numpy +# scalars but for different purposes. scalartypes.c.src has str/reprs for when +# the scalar is printed on its own, while arrayprint.py has strs for when +# scalars are printed inside an ndarray. Only the latter strs are currently +# user-customizable. + +import functools +import numbers +import sys +try: + from _thread import get_ident +except ImportError: + from _dummy_thread import get_ident + +import numpy as np +from . import numerictypes as _nt +from .umath import absolute, isinf, isfinite, isnat +from . import multiarray +from .multiarray import (array, dragon4_positional, dragon4_scientific, + datetime_as_string, datetime_data, ndarray) +from .fromnumeric import any +from .numeric import concatenate, asarray, errstate +from .numerictypes import (longlong, intc, int_, float64, complex128, + flexible) +from .overrides import array_function_dispatch, set_module +from .printoptions import format_options +import operator +import warnings +import contextlib + + +def _make_options_dict(precision=None, threshold=None, edgeitems=None, + linewidth=None, suppress=None, nanstr=None, infstr=None, + sign=None, formatter=None, floatmode=None, legacy=None, + override_repr=None): + """ + Make a dictionary out of the non-None arguments, plus conversion of + *legacy* and sanity checks. + """ + + options = {k: v for k, v in list(locals().items()) if v is not None} + + if suppress is not None: + options['suppress'] = bool(suppress) + + modes = ['fixed', 'unique', 'maxprec', 'maxprec_equal'] + if floatmode not in modes + [None]: + raise ValueError("floatmode option must be one of " + + ", ".join('"{}"'.format(m) for m in modes)) + + if sign not in [None, '-', '+', ' ']: + raise ValueError("sign option must be one of ' ', '+', or '-'") + + if legacy is False: + options['legacy'] = sys.maxsize + elif legacy == False: # noqa: E712 + warnings.warn( + f"Passing `legacy={legacy!r}` is deprecated.", + FutureWarning, stacklevel=3 + ) + options['legacy'] = sys.maxsize + elif legacy == '1.13': + options['legacy'] = 113 + elif legacy == '1.21': + options['legacy'] = 121 + elif legacy == '1.25': + options['legacy'] = 125 + elif legacy == '2.1': + options['legacy'] = 201 + elif legacy is None: + pass # OK, do nothing. + else: + warnings.warn( + "legacy printing option can currently only be '1.13', '1.21', " + "'1.25', '2.1, or `False`", stacklevel=3) + + if threshold is not None: + # forbid the bad threshold arg suggested by stack overflow, gh-12351 + if not isinstance(threshold, numbers.Number): + raise TypeError("threshold must be numeric") + if np.isnan(threshold): + raise ValueError("threshold must be non-NAN, try " + "sys.maxsize for untruncated representation") + + if precision is not None: + # forbid the bad precision arg as suggested by issue #18254 + try: + options['precision'] = operator.index(precision) + except TypeError as e: + raise TypeError('precision must be an integer') from e + + return options + + +@set_module('numpy') +def set_printoptions(precision=None, threshold=None, edgeitems=None, + linewidth=None, suppress=None, nanstr=None, + infstr=None, formatter=None, sign=None, floatmode=None, + *, legacy=None, override_repr=None): + """ + Set printing options. + + These options determine the way floating point numbers, arrays and + other NumPy objects are displayed. + + Parameters + ---------- + precision : int or None, optional + Number of digits of precision for floating point output (default 8). + May be None if `floatmode` is not `fixed`, to print as many digits as + necessary to uniquely specify the value. + threshold : int, optional + Total number of array elements which trigger summarization + rather than full repr (default 1000). + To always use the full repr without summarization, pass `sys.maxsize`. + edgeitems : int, optional + Number of array items in summary at beginning and end of + each dimension (default 3). + linewidth : int, optional + The number of characters per line for the purpose of inserting + line breaks (default 75). + suppress : bool, optional + If True, always print floating point numbers using fixed point + notation, in which case numbers equal to zero in the current precision + will print as zero. If False, then scientific notation is used when + absolute value of the smallest number is < 1e-4 or the ratio of the + maximum absolute value to the minimum is > 1e3. The default is False. + nanstr : str, optional + String representation of floating point not-a-number (default nan). + infstr : str, optional + String representation of floating point infinity (default inf). + sign : string, either '-', '+', or ' ', optional + Controls printing of the sign of floating-point types. If '+', always + print the sign of positive values. If ' ', always prints a space + (whitespace character) in the sign position of positive values. If + '-', omit the sign character of positive values. (default '-') + + .. versionchanged:: 2.0 + The sign parameter can now be an integer type, previously + types were floating-point types. + + formatter : dict of callables, optional + If not None, the keys should indicate the type(s) that the respective + formatting function applies to. Callables should return a string. + Types that are not specified (by their corresponding keys) are handled + by the default formatters. Individual types for which a formatter + can be set are: + + - 'bool' + - 'int' + - 'timedelta' : a `numpy.timedelta64` + - 'datetime' : a `numpy.datetime64` + - 'float' + - 'longfloat' : 128-bit floats + - 'complexfloat' + - 'longcomplexfloat' : composed of two 128-bit floats + - 'numpystr' : types `numpy.bytes_` and `numpy.str_` + - 'object' : `np.object_` arrays + + Other keys that can be used to set a group of types at once are: + + - 'all' : sets all types + - 'int_kind' : sets 'int' + - 'float_kind' : sets 'float' and 'longfloat' + - 'complex_kind' : sets 'complexfloat' and 'longcomplexfloat' + - 'str_kind' : sets 'numpystr' + floatmode : str, optional + Controls the interpretation of the `precision` option for + floating-point types. Can take the following values + (default maxprec_equal): + + * 'fixed': Always print exactly `precision` fractional digits, + even if this would print more or fewer digits than + necessary to specify the value uniquely. + * 'unique': Print the minimum number of fractional digits necessary + to represent each value uniquely. Different elements may + have a different number of digits. The value of the + `precision` option is ignored. + * 'maxprec': Print at most `precision` fractional digits, but if + an element can be uniquely represented with fewer digits + only print it with that many. + * 'maxprec_equal': Print at most `precision` fractional digits, + but if every element in the array can be uniquely + represented with an equal number of fewer digits, use that + many digits for all elements. + legacy : string or `False`, optional + If set to the string ``'1.13'`` enables 1.13 legacy printing mode. This + approximates numpy 1.13 print output by including a space in the sign + position of floats and different behavior for 0d arrays. This also + enables 1.21 legacy printing mode (described below). + + If set to the string ``'1.21'`` enables 1.21 legacy printing mode. This + approximates numpy 1.21 print output of complex structured dtypes + by not inserting spaces after commas that separate fields and after + colons. + + If set to ``'1.25'`` approximates printing of 1.25 which mainly means + that numeric scalars are printed without their type information, e.g. + as ``3.0`` rather than ``np.float64(3.0)``. + + If set to ``'2.1'``, shape information is not given when arrays are + summarized (i.e., multiple elements replaced with ``...``). + + If set to `False`, disables legacy mode. + + Unrecognized strings will be ignored with a warning for forward + compatibility. + + .. versionchanged:: 1.22.0 + .. versionchanged:: 2.2 + + override_repr: callable, optional + If set a passed function will be used for generating arrays' repr. + Other options will be ignored. + + See Also + -------- + get_printoptions, printoptions, array2string + + Notes + ----- + `formatter` is always reset with a call to `set_printoptions`. + + Use `printoptions` as a context manager to set the values temporarily. + + Examples + -------- + Floating point precision can be set: + + >>> import numpy as np + >>> np.set_printoptions(precision=4) + >>> np.array([1.123456789]) + [1.1235] + + Long arrays can be summarised: + + >>> np.set_printoptions(threshold=5) + >>> np.arange(10) + array([0, 1, 2, ..., 7, 8, 9], shape=(10,)) + + Small results can be suppressed: + + >>> eps = np.finfo(float).eps + >>> x = np.arange(4.) + >>> x**2 - (x + eps)**2 + array([-4.9304e-32, -4.4409e-16, 0.0000e+00, 0.0000e+00]) + >>> np.set_printoptions(suppress=True) + >>> x**2 - (x + eps)**2 + array([-0., -0., 0., 0.]) + + A custom formatter can be used to display array elements as desired: + + >>> np.set_printoptions(formatter={'all':lambda x: 'int: '+str(-x)}) + >>> x = np.arange(3) + >>> x + array([int: 0, int: -1, int: -2]) + >>> np.set_printoptions() # formatter gets reset + >>> x + array([0, 1, 2]) + + To put back the default options, you can use: + + >>> np.set_printoptions(edgeitems=3, infstr='inf', + ... linewidth=75, nanstr='nan', precision=8, + ... suppress=False, threshold=1000, formatter=None) + + Also to temporarily override options, use `printoptions` + as a context manager: + + >>> with np.printoptions(precision=2, suppress=True, threshold=5): + ... np.linspace(0, 10, 10) + array([ 0. , 1.11, 2.22, ..., 7.78, 8.89, 10. ], shape=(10,)) + + """ + _set_printoptions(precision, threshold, edgeitems, linewidth, suppress, + nanstr, infstr, formatter, sign, floatmode, + legacy=legacy, override_repr=override_repr) + + +def _set_printoptions(precision=None, threshold=None, edgeitems=None, + linewidth=None, suppress=None, nanstr=None, + infstr=None, formatter=None, sign=None, floatmode=None, + *, legacy=None, override_repr=None): + new_opt = _make_options_dict(precision, threshold, edgeitems, linewidth, + suppress, nanstr, infstr, sign, formatter, + floatmode, legacy) + # formatter and override_repr are always reset + new_opt['formatter'] = formatter + new_opt['override_repr'] = override_repr + + updated_opt = format_options.get() | new_opt + updated_opt.update(new_opt) + + if updated_opt['legacy'] == 113: + updated_opt['sign'] = '-' + + return format_options.set(updated_opt) + + +@set_module('numpy') +def get_printoptions(): + """ + Return the current print options. + + Returns + ------- + print_opts : dict + Dictionary of current print options with keys + + - precision : int + - threshold : int + - edgeitems : int + - linewidth : int + - suppress : bool + - nanstr : str + - infstr : str + - sign : str + - formatter : dict of callables + - floatmode : str + - legacy : str or False + + For a full description of these options, see `set_printoptions`. + + See Also + -------- + set_printoptions, printoptions + + Examples + -------- + >>> import numpy as np + + >>> np.get_printoptions() + {'edgeitems': 3, 'threshold': 1000, ..., 'override_repr': None} + + >>> np.get_printoptions()['linewidth'] + 75 + >>> np.set_printoptions(linewidth=100) + >>> np.get_printoptions()['linewidth'] + 100 + + """ + opts = format_options.get().copy() + opts['legacy'] = { + 113: '1.13', 121: '1.21', 125: '1.25', sys.maxsize: False, + }[opts['legacy']] + return opts + + +def _get_legacy_print_mode(): + """Return the legacy print mode as an int.""" + return format_options.get()['legacy'] + + +@set_module('numpy') +@contextlib.contextmanager +def printoptions(*args, **kwargs): + """Context manager for setting print options. + + Set print options for the scope of the `with` block, and restore the old + options at the end. See `set_printoptions` for the full description of + available options. + + Examples + -------- + >>> import numpy as np + + >>> from numpy.testing import assert_equal + >>> with np.printoptions(precision=2): + ... np.array([2.0]) / 3 + array([0.67]) + + The `as`-clause of the `with`-statement gives the current print options: + + >>> with np.printoptions(precision=2) as opts: + ... assert_equal(opts, np.get_printoptions()) + + See Also + -------- + set_printoptions, get_printoptions + + """ + token = _set_printoptions(*args, **kwargs) + + try: + yield get_printoptions() + finally: + format_options.reset(token) + + +def _leading_trailing(a, edgeitems, index=()): + """ + Keep only the N-D corners (leading and trailing edges) of an array. + + Should be passed a base-class ndarray, since it makes no guarantees about + preserving subclasses. + """ + axis = len(index) + if axis == a.ndim: + return a[index] + + if a.shape[axis] > 2*edgeitems: + return concatenate(( + _leading_trailing(a, edgeitems, index + np.index_exp[:edgeitems]), + _leading_trailing(a, edgeitems, index + np.index_exp[-edgeitems:]) + ), axis=axis) + else: + return _leading_trailing(a, edgeitems, index + np.index_exp[:]) + + +def _object_format(o): + """ Object arrays containing lists should be printed unambiguously """ + if type(o) is list: + fmt = 'list({!r})' + else: + fmt = '{!r}' + return fmt.format(o) + +def repr_format(x): + if isinstance(x, (np.str_, np.bytes_)): + return repr(x.item()) + return repr(x) + +def str_format(x): + if isinstance(x, (np.str_, np.bytes_)): + return str(x.item()) + return str(x) + +def _get_formatdict(data, *, precision, floatmode, suppress, sign, legacy, + formatter, **kwargs): + # note: extra arguments in kwargs are ignored + + # wrapped in lambdas to avoid taking a code path + # with the wrong type of data + formatdict = { + 'bool': lambda: BoolFormat(data), + 'int': lambda: IntegerFormat(data, sign), + 'float': lambda: FloatingFormat( + data, precision, floatmode, suppress, sign, legacy=legacy), + 'longfloat': lambda: FloatingFormat( + data, precision, floatmode, suppress, sign, legacy=legacy), + 'complexfloat': lambda: ComplexFloatingFormat( + data, precision, floatmode, suppress, sign, legacy=legacy), + 'longcomplexfloat': lambda: ComplexFloatingFormat( + data, precision, floatmode, suppress, sign, legacy=legacy), + 'datetime': lambda: DatetimeFormat(data, legacy=legacy), + 'timedelta': lambda: TimedeltaFormat(data), + 'object': lambda: _object_format, + 'void': lambda: str_format, + 'numpystr': lambda: repr_format} + + # we need to wrap values in `formatter` in a lambda, so that the interface + # is the same as the above values. + def indirect(x): + return lambda: x + + if formatter is not None: + fkeys = [k for k in formatter.keys() if formatter[k] is not None] + if 'all' in fkeys: + for key in formatdict.keys(): + formatdict[key] = indirect(formatter['all']) + if 'int_kind' in fkeys: + for key in ['int']: + formatdict[key] = indirect(formatter['int_kind']) + if 'float_kind' in fkeys: + for key in ['float', 'longfloat']: + formatdict[key] = indirect(formatter['float_kind']) + if 'complex_kind' in fkeys: + for key in ['complexfloat', 'longcomplexfloat']: + formatdict[key] = indirect(formatter['complex_kind']) + if 'str_kind' in fkeys: + formatdict['numpystr'] = indirect(formatter['str_kind']) + for key in formatdict.keys(): + if key in fkeys: + formatdict[key] = indirect(formatter[key]) + + return formatdict + +def _get_format_function(data, **options): + """ + find the right formatting function for the dtype_ + """ + dtype_ = data.dtype + dtypeobj = dtype_.type + formatdict = _get_formatdict(data, **options) + if dtypeobj is None: + return formatdict["numpystr"]() + elif issubclass(dtypeobj, _nt.bool): + return formatdict['bool']() + elif issubclass(dtypeobj, _nt.integer): + if issubclass(dtypeobj, _nt.timedelta64): + return formatdict['timedelta']() + else: + return formatdict['int']() + elif issubclass(dtypeobj, _nt.floating): + if issubclass(dtypeobj, _nt.longdouble): + return formatdict['longfloat']() + else: + return formatdict['float']() + elif issubclass(dtypeobj, _nt.complexfloating): + if issubclass(dtypeobj, _nt.clongdouble): + return formatdict['longcomplexfloat']() + else: + return formatdict['complexfloat']() + elif issubclass(dtypeobj, (_nt.str_, _nt.bytes_)): + return formatdict['numpystr']() + elif issubclass(dtypeobj, _nt.datetime64): + return formatdict['datetime']() + elif issubclass(dtypeobj, _nt.object_): + return formatdict['object']() + elif issubclass(dtypeobj, _nt.void): + if dtype_.names is not None: + return StructuredVoidFormat.from_data(data, **options) + else: + return formatdict['void']() + else: + return formatdict['numpystr']() + + +def _recursive_guard(fillvalue='...'): + """ + Like the python 3.2 reprlib.recursive_repr, but forwards *args and **kwargs + + Decorates a function such that if it calls itself with the same first + argument, it returns `fillvalue` instead of recursing. + + Largely copied from reprlib.recursive_repr + """ + + def decorating_function(f): + repr_running = set() + + @functools.wraps(f) + def wrapper(self, *args, **kwargs): + key = id(self), get_ident() + if key in repr_running: + return fillvalue + repr_running.add(key) + try: + return f(self, *args, **kwargs) + finally: + repr_running.discard(key) + + return wrapper + + return decorating_function + + +# gracefully handle recursive calls, when object arrays contain themselves +@_recursive_guard() +def _array2string(a, options, separator=' ', prefix=""): + # The formatter __init__s in _get_format_function cannot deal with + # subclasses yet, and we also need to avoid recursion issues in + # _formatArray with subclasses which return 0d arrays in place of scalars + data = asarray(a) + if a.shape == (): + a = data + + if a.size > options['threshold']: + summary_insert = "..." + data = _leading_trailing(data, options['edgeitems']) + else: + summary_insert = "" + + # find the right formatting function for the array + format_function = _get_format_function(data, **options) + + # skip over "[" + next_line_prefix = " " + # skip over array( + next_line_prefix += " "*len(prefix) + + lst = _formatArray(a, format_function, options['linewidth'], + next_line_prefix, separator, options['edgeitems'], + summary_insert, options['legacy']) + return lst + + +def _array2string_dispatcher( + a, max_line_width=None, precision=None, + suppress_small=None, separator=None, prefix=None, + style=None, formatter=None, threshold=None, + edgeitems=None, sign=None, floatmode=None, suffix=None, + *, legacy=None): + return (a,) + + +@array_function_dispatch(_array2string_dispatcher, module='numpy') +def array2string(a, max_line_width=None, precision=None, + suppress_small=None, separator=' ', prefix="", + style=np._NoValue, formatter=None, threshold=None, + edgeitems=None, sign=None, floatmode=None, suffix="", + *, legacy=None): + """ + Return a string representation of an array. + + Parameters + ---------- + a : ndarray + Input array. + max_line_width : int, optional + Inserts newlines if text is longer than `max_line_width`. + Defaults to ``numpy.get_printoptions()['linewidth']``. + precision : int or None, optional + Floating point precision. + Defaults to ``numpy.get_printoptions()['precision']``. + suppress_small : bool, optional + Represent numbers "very close" to zero as zero; default is False. + Very close is defined by precision: if the precision is 8, e.g., + numbers smaller (in absolute value) than 5e-9 are represented as + zero. + Defaults to ``numpy.get_printoptions()['suppress']``. + separator : str, optional + Inserted between elements. + prefix : str, optional + suffix : str, optional + The length of the prefix and suffix strings are used to respectively + align and wrap the output. An array is typically printed as:: + + prefix + array2string(a) + suffix + + The output is left-padded by the length of the prefix string, and + wrapping is forced at the column ``max_line_width - len(suffix)``. + It should be noted that the content of prefix and suffix strings are + not included in the output. + style : _NoValue, optional + Has no effect, do not use. + + .. deprecated:: 1.14.0 + formatter : dict of callables, optional + If not None, the keys should indicate the type(s) that the respective + formatting function applies to. Callables should return a string. + Types that are not specified (by their corresponding keys) are handled + by the default formatters. Individual types for which a formatter + can be set are: + + - 'bool' + - 'int' + - 'timedelta' : a `numpy.timedelta64` + - 'datetime' : a `numpy.datetime64` + - 'float' + - 'longfloat' : 128-bit floats + - 'complexfloat' + - 'longcomplexfloat' : composed of two 128-bit floats + - 'void' : type `numpy.void` + - 'numpystr' : types `numpy.bytes_` and `numpy.str_` + + Other keys that can be used to set a group of types at once are: + + - 'all' : sets all types + - 'int_kind' : sets 'int' + - 'float_kind' : sets 'float' and 'longfloat' + - 'complex_kind' : sets 'complexfloat' and 'longcomplexfloat' + - 'str_kind' : sets 'numpystr' + threshold : int, optional + Total number of array elements which trigger summarization + rather than full repr. + Defaults to ``numpy.get_printoptions()['threshold']``. + edgeitems : int, optional + Number of array items in summary at beginning and end of + each dimension. + Defaults to ``numpy.get_printoptions()['edgeitems']``. + sign : string, either '-', '+', or ' ', optional + Controls printing of the sign of floating-point types. If '+', always + print the sign of positive values. If ' ', always prints a space + (whitespace character) in the sign position of positive values. If + '-', omit the sign character of positive values. + Defaults to ``numpy.get_printoptions()['sign']``. + + .. versionchanged:: 2.0 + The sign parameter can now be an integer type, previously + types were floating-point types. + + floatmode : str, optional + Controls the interpretation of the `precision` option for + floating-point types. + Defaults to ``numpy.get_printoptions()['floatmode']``. + Can take the following values: + + - 'fixed': Always print exactly `precision` fractional digits, + even if this would print more or fewer digits than + necessary to specify the value uniquely. + - 'unique': Print the minimum number of fractional digits necessary + to represent each value uniquely. Different elements may + have a different number of digits. The value of the + `precision` option is ignored. + - 'maxprec': Print at most `precision` fractional digits, but if + an element can be uniquely represented with fewer digits + only print it with that many. + - 'maxprec_equal': Print at most `precision` fractional digits, + but if every element in the array can be uniquely + represented with an equal number of fewer digits, use that + many digits for all elements. + legacy : string or `False`, optional + If set to the string ``'1.13'`` enables 1.13 legacy printing mode. This + approximates numpy 1.13 print output by including a space in the sign + position of floats and different behavior for 0d arrays. If set to + `False`, disables legacy mode. Unrecognized strings will be ignored + with a warning for forward compatibility. + + Returns + ------- + array_str : str + String representation of the array. + + Raises + ------ + TypeError + if a callable in `formatter` does not return a string. + + See Also + -------- + array_str, array_repr, set_printoptions, get_printoptions + + Notes + ----- + If a formatter is specified for a certain type, the `precision` keyword is + ignored for that type. + + This is a very flexible function; `array_repr` and `array_str` are using + `array2string` internally so keywords with the same name should work + identically in all three functions. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1e-16,1,2,3]) + >>> np.array2string(x, precision=2, separator=',', + ... suppress_small=True) + '[0.,1.,2.,3.]' + + >>> x = np.arange(3.) + >>> np.array2string(x, formatter={'float_kind':lambda x: "%.2f" % x}) + '[0.00 1.00 2.00]' + + >>> x = np.arange(3) + >>> np.array2string(x, formatter={'int':lambda x: hex(x)}) + '[0x0 0x1 0x2]' + + """ + + overrides = _make_options_dict(precision, threshold, edgeitems, + max_line_width, suppress_small, None, None, + sign, formatter, floatmode, legacy) + options = format_options.get().copy() + options.update(overrides) + + if options['legacy'] <= 113: + if style is np._NoValue: + style = repr + + if a.shape == () and a.dtype.names is None: + return style(a.item()) + elif style is not np._NoValue: + # Deprecation 11-9-2017 v1.14 + warnings.warn("'style' argument is deprecated and no longer functional" + " except in 1.13 'legacy' mode", + DeprecationWarning, stacklevel=2) + + if options['legacy'] > 113: + options['linewidth'] -= len(suffix) + + # treat as a null array if any of shape elements == 0 + if a.size == 0: + return "[]" + + return _array2string(a, options, separator, prefix) + + +def _extendLine(s, line, word, line_width, next_line_prefix, legacy): + needs_wrap = len(line) + len(word) > line_width + if legacy > 113: + # don't wrap lines if it won't help + if len(line) <= len(next_line_prefix): + needs_wrap = False + + if needs_wrap: + s += line.rstrip() + "\n" + line = next_line_prefix + line += word + return s, line + + +def _extendLine_pretty(s, line, word, line_width, next_line_prefix, legacy): + """ + Extends line with nicely formatted (possibly multi-line) string ``word``. + """ + words = word.splitlines() + if len(words) == 1 or legacy <= 113: + return _extendLine(s, line, word, line_width, next_line_prefix, legacy) + + max_word_length = max(len(word) for word in words) + if (len(line) + max_word_length > line_width and + len(line) > len(next_line_prefix)): + s += line.rstrip() + '\n' + line = next_line_prefix + words[0] + indent = next_line_prefix + else: + indent = len(line)*' ' + line += words[0] + + for word in words[1::]: + s += line.rstrip() + '\n' + line = indent + word + + suffix_length = max_word_length - len(words[-1]) + line += suffix_length*' ' + + return s, line + +def _formatArray(a, format_function, line_width, next_line_prefix, + separator, edge_items, summary_insert, legacy): + """formatArray is designed for two modes of operation: + + 1. Full output + + 2. Summarized output + + """ + def recurser(index, hanging_indent, curr_width): + """ + By using this local function, we don't need to recurse with all the + arguments. Since this function is not created recursively, the cost is + not significant + """ + axis = len(index) + axes_left = a.ndim - axis + + if axes_left == 0: + return format_function(a[index]) + + # when recursing, add a space to align with the [ added, and reduce the + # length of the line by 1 + next_hanging_indent = hanging_indent + ' ' + if legacy <= 113: + next_width = curr_width + else: + next_width = curr_width - len(']') + + a_len = a.shape[axis] + show_summary = summary_insert and 2*edge_items < a_len + if show_summary: + leading_items = edge_items + trailing_items = edge_items + else: + leading_items = 0 + trailing_items = a_len + + # stringify the array with the hanging indent on the first line too + s = '' + + # last axis (rows) - wrap elements if they would not fit on one line + if axes_left == 1: + # the length up until the beginning of the separator / bracket + if legacy <= 113: + elem_width = curr_width - len(separator.rstrip()) + else: + elem_width = curr_width - max( + len(separator.rstrip()), len(']') + ) + + line = hanging_indent + for i in range(leading_items): + word = recurser(index + (i,), next_hanging_indent, next_width) + s, line = _extendLine_pretty( + s, line, word, elem_width, hanging_indent, legacy) + line += separator + + if show_summary: + s, line = _extendLine( + s, line, summary_insert, elem_width, hanging_indent, legacy + ) + if legacy <= 113: + line += ", " + else: + line += separator + + for i in range(trailing_items, 1, -1): + word = recurser(index + (-i,), next_hanging_indent, next_width) + s, line = _extendLine_pretty( + s, line, word, elem_width, hanging_indent, legacy) + line += separator + + if legacy <= 113: + # width of the separator is not considered on 1.13 + elem_width = curr_width + word = recurser(index + (-1,), next_hanging_indent, next_width) + s, line = _extendLine_pretty( + s, line, word, elem_width, hanging_indent, legacy) + + s += line + + # other axes - insert newlines between rows + else: + s = '' + line_sep = separator.rstrip() + '\n'*(axes_left - 1) + + for i in range(leading_items): + nested = recurser( + index + (i,), next_hanging_indent, next_width + ) + s += hanging_indent + nested + line_sep + + if show_summary: + if legacy <= 113: + # trailing space, fixed nbr of newlines, + # and fixed separator + s += hanging_indent + summary_insert + ", \n" + else: + s += hanging_indent + summary_insert + line_sep + + for i in range(trailing_items, 1, -1): + nested = recurser(index + (-i,), next_hanging_indent, + next_width) + s += hanging_indent + nested + line_sep + + nested = recurser(index + (-1,), next_hanging_indent, next_width) + s += hanging_indent + nested + + # remove the hanging indent, and wrap in [] + s = '[' + s[len(hanging_indent):] + ']' + return s + + try: + # invoke the recursive part with an initial index and prefix + return recurser(index=(), + hanging_indent=next_line_prefix, + curr_width=line_width) + finally: + # recursive closures have a cyclic reference to themselves, which + # requires gc to collect (gh-10620). To avoid this problem, for + # performance and PyPy friendliness, we break the cycle: + recurser = None + +def _none_or_positive_arg(x, name): + if x is None: + return -1 + if x < 0: + raise ValueError("{} must be >= 0".format(name)) + return x + +class FloatingFormat: + """ Formatter for subtypes of np.floating """ + def __init__(self, data, precision, floatmode, suppress_small, sign=False, + *, legacy=None): + # for backcompatibility, accept bools + if isinstance(sign, bool): + sign = '+' if sign else '-' + + self._legacy = legacy + if self._legacy <= 113: + # when not 0d, legacy does not support '-' + if data.shape != () and sign == '-': + sign = ' ' + + self.floatmode = floatmode + if floatmode == 'unique': + self.precision = None + else: + self.precision = precision + + self.precision = _none_or_positive_arg(self.precision, 'precision') + + self.suppress_small = suppress_small + self.sign = sign + self.exp_format = False + self.large_exponent = False + self.fillFormat(data) + + def fillFormat(self, data): + # only the finite values are used to compute the number of digits + finite_vals = data[isfinite(data)] + + # choose exponential mode based on the non-zero finite values: + abs_non_zero = absolute(finite_vals[finite_vals != 0]) + if len(abs_non_zero) != 0: + max_val = np.max(abs_non_zero) + min_val = np.min(abs_non_zero) + with errstate(over='ignore'): # division can overflow + if max_val >= 1.e8 or (not self.suppress_small and + (min_val < 0.0001 or max_val/min_val > 1000.)): + self.exp_format = True + + # do a first pass of printing all the numbers, to determine sizes + if len(finite_vals) == 0: + self.pad_left = 0 + self.pad_right = 0 + self.trim = '.' + self.exp_size = -1 + self.unique = True + self.min_digits = None + elif self.exp_format: + trim, unique = '.', True + if self.floatmode == 'fixed' or self._legacy <= 113: + trim, unique = 'k', False + strs = (dragon4_scientific(x, precision=self.precision, + unique=unique, trim=trim, sign=self.sign == '+') + for x in finite_vals) + frac_strs, _, exp_strs = zip(*(s.partition('e') for s in strs)) + int_part, frac_part = zip(*(s.split('.') for s in frac_strs)) + self.exp_size = max(len(s) for s in exp_strs) - 1 + + self.trim = 'k' + self.precision = max(len(s) for s in frac_part) + self.min_digits = self.precision + self.unique = unique + + # for back-compat with np 1.13, use 2 spaces & sign and full prec + if self._legacy <= 113: + self.pad_left = 3 + else: + # this should be only 1 or 2. Can be calculated from sign. + self.pad_left = max(len(s) for s in int_part) + # pad_right is only needed for nan length calculation + self.pad_right = self.exp_size + 2 + self.precision + else: + trim, unique = '.', True + if self.floatmode == 'fixed': + trim, unique = 'k', False + strs = (dragon4_positional(x, precision=self.precision, + fractional=True, + unique=unique, trim=trim, + sign=self.sign == '+') + for x in finite_vals) + int_part, frac_part = zip(*(s.split('.') for s in strs)) + if self._legacy <= 113: + self.pad_left = 1 + max(len(s.lstrip('-+')) for s in int_part) + else: + self.pad_left = max(len(s) for s in int_part) + self.pad_right = max(len(s) for s in frac_part) + self.exp_size = -1 + self.unique = unique + + if self.floatmode in ['fixed', 'maxprec_equal']: + self.precision = self.min_digits = self.pad_right + self.trim = 'k' + else: + self.trim = '.' + self.min_digits = 0 + + if self._legacy > 113: + # account for sign = ' ' by adding one to pad_left + if self.sign == ' ' and not any(np.signbit(finite_vals)): + self.pad_left += 1 + + # if there are non-finite values, may need to increase pad_left + if data.size != finite_vals.size: + neginf = self.sign != '-' or any(data[isinf(data)] < 0) + offset = self.pad_right + 1 # +1 for decimal pt + current_options = format_options.get() + self.pad_left = max( + self.pad_left, len(current_options['nanstr']) - offset, + len(current_options['infstr']) + neginf - offset + ) + + def __call__(self, x): + if not np.isfinite(x): + with errstate(invalid='ignore'): + current_options = format_options.get() + if np.isnan(x): + sign = '+' if self.sign == '+' else '' + ret = sign + current_options['nanstr'] + else: # isinf + sign = '-' if x < 0 else '+' if self.sign == '+' else '' + ret = sign + current_options['infstr'] + return ' '*( + self.pad_left + self.pad_right + 1 - len(ret) + ) + ret + + if self.exp_format: + return dragon4_scientific(x, + precision=self.precision, + min_digits=self.min_digits, + unique=self.unique, + trim=self.trim, + sign=self.sign == '+', + pad_left=self.pad_left, + exp_digits=self.exp_size) + else: + return dragon4_positional(x, + precision=self.precision, + min_digits=self.min_digits, + unique=self.unique, + fractional=True, + trim=self.trim, + sign=self.sign == '+', + pad_left=self.pad_left, + pad_right=self.pad_right) + + +@set_module('numpy') +def format_float_scientific(x, precision=None, unique=True, trim='k', + sign=False, pad_left=None, exp_digits=None, + min_digits=None): + """ + Format a floating-point scalar as a decimal string in scientific notation. + + Provides control over rounding, trimming and padding. Uses and assumes + IEEE unbiased rounding. Uses the "Dragon4" algorithm. + + Parameters + ---------- + x : python float or numpy floating scalar + Value to format. + precision : non-negative integer or None, optional + Maximum number of digits to print. May be None if `unique` is + `True`, but must be an integer if unique is `False`. + unique : boolean, optional + If `True`, use a digit-generation strategy which gives the shortest + representation which uniquely identifies the floating-point number from + other values of the same type, by judicious rounding. If `precision` + is given fewer digits than necessary can be printed. If `min_digits` + is given more can be printed, in which cases the last digit is rounded + with unbiased rounding. + If `False`, digits are generated as if printing an infinite-precision + value and stopping after `precision` digits, rounding the remaining + value with unbiased rounding + trim : one of 'k', '.', '0', '-', optional + Controls post-processing trimming of trailing digits, as follows: + + * 'k' : keep trailing zeros, keep decimal point (no trimming) + * '.' : trim all trailing zeros, leave decimal point + * '0' : trim all but the zero before the decimal point. Insert the + zero if it is missing. + * '-' : trim trailing zeros and any trailing decimal point + sign : boolean, optional + Whether to show the sign for positive values. + pad_left : non-negative integer, optional + Pad the left side of the string with whitespace until at least that + many characters are to the left of the decimal point. + exp_digits : non-negative integer, optional + Pad the exponent with zeros until it contains at least this + many digits. If omitted, the exponent will be at least 2 digits. + min_digits : non-negative integer or None, optional + Minimum number of digits to print. This only has an effect for + `unique=True`. In that case more digits than necessary to uniquely + identify the value may be printed and rounded unbiased. + + .. versionadded:: 1.21.0 + + Returns + ------- + rep : string + The string representation of the floating point value + + See Also + -------- + format_float_positional + + Examples + -------- + >>> import numpy as np + >>> np.format_float_scientific(np.float32(np.pi)) + '3.1415927e+00' + >>> s = np.float32(1.23e24) + >>> np.format_float_scientific(s, unique=False, precision=15) + '1.230000071797338e+24' + >>> np.format_float_scientific(s, exp_digits=4) + '1.23e+0024' + """ + precision = _none_or_positive_arg(precision, 'precision') + pad_left = _none_or_positive_arg(pad_left, 'pad_left') + exp_digits = _none_or_positive_arg(exp_digits, 'exp_digits') + min_digits = _none_or_positive_arg(min_digits, 'min_digits') + if min_digits > 0 and precision > 0 and min_digits > precision: + raise ValueError("min_digits must be less than or equal to precision") + return dragon4_scientific(x, precision=precision, unique=unique, + trim=trim, sign=sign, pad_left=pad_left, + exp_digits=exp_digits, min_digits=min_digits) + + +@set_module('numpy') +def format_float_positional(x, precision=None, unique=True, + fractional=True, trim='k', sign=False, + pad_left=None, pad_right=None, min_digits=None): + """ + Format a floating-point scalar as a decimal string in positional notation. + + Provides control over rounding, trimming and padding. Uses and assumes + IEEE unbiased rounding. Uses the "Dragon4" algorithm. + + Parameters + ---------- + x : python float or numpy floating scalar + Value to format. + precision : non-negative integer or None, optional + Maximum number of digits to print. May be None if `unique` is + `True`, but must be an integer if unique is `False`. + unique : boolean, optional + If `True`, use a digit-generation strategy which gives the shortest + representation which uniquely identifies the floating-point number from + other values of the same type, by judicious rounding. If `precision` + is given fewer digits than necessary can be printed, or if `min_digits` + is given more can be printed, in which cases the last digit is rounded + with unbiased rounding. + If `False`, digits are generated as if printing an infinite-precision + value and stopping after `precision` digits, rounding the remaining + value with unbiased rounding + fractional : boolean, optional + If `True`, the cutoffs of `precision` and `min_digits` refer to the + total number of digits after the decimal point, including leading + zeros. + If `False`, `precision` and `min_digits` refer to the total number of + significant digits, before or after the decimal point, ignoring leading + zeros. + trim : one of 'k', '.', '0', '-', optional + Controls post-processing trimming of trailing digits, as follows: + + * 'k' : keep trailing zeros, keep decimal point (no trimming) + * '.' : trim all trailing zeros, leave decimal point + * '0' : trim all but the zero before the decimal point. Insert the + zero if it is missing. + * '-' : trim trailing zeros and any trailing decimal point + sign : boolean, optional + Whether to show the sign for positive values. + pad_left : non-negative integer, optional + Pad the left side of the string with whitespace until at least that + many characters are to the left of the decimal point. + pad_right : non-negative integer, optional + Pad the right side of the string with whitespace until at least that + many characters are to the right of the decimal point. + min_digits : non-negative integer or None, optional + Minimum number of digits to print. Only has an effect if `unique=True` + in which case additional digits past those necessary to uniquely + identify the value may be printed, rounding the last additional digit. + + .. versionadded:: 1.21.0 + + Returns + ------- + rep : string + The string representation of the floating point value + + See Also + -------- + format_float_scientific + + Examples + -------- + >>> import numpy as np + >>> np.format_float_positional(np.float32(np.pi)) + '3.1415927' + >>> np.format_float_positional(np.float16(np.pi)) + '3.14' + >>> np.format_float_positional(np.float16(0.3)) + '0.3' + >>> np.format_float_positional(np.float16(0.3), unique=False, precision=10) + '0.3000488281' + """ + precision = _none_or_positive_arg(precision, 'precision') + pad_left = _none_or_positive_arg(pad_left, 'pad_left') + pad_right = _none_or_positive_arg(pad_right, 'pad_right') + min_digits = _none_or_positive_arg(min_digits, 'min_digits') + if not fractional and precision == 0: + raise ValueError("precision must be greater than 0 if " + "fractional=False") + if min_digits > 0 and precision > 0 and min_digits > precision: + raise ValueError("min_digits must be less than or equal to precision") + return dragon4_positional(x, precision=precision, unique=unique, + fractional=fractional, trim=trim, + sign=sign, pad_left=pad_left, + pad_right=pad_right, min_digits=min_digits) + +class IntegerFormat: + def __init__(self, data, sign='-'): + if data.size > 0: + data_max = np.max(data) + data_min = np.min(data) + data_max_str_len = len(str(data_max)) + if sign == ' ' and data_min < 0: + sign = '-' + if data_max >= 0 and sign in "+ ": + data_max_str_len += 1 + max_str_len = max(data_max_str_len, + len(str(data_min))) + else: + max_str_len = 0 + self.format = f'{{:{sign}{max_str_len}d}}' + + def __call__(self, x): + return self.format.format(x) + +class BoolFormat: + def __init__(self, data, **kwargs): + # add an extra space so " True" and "False" have the same length and + # array elements align nicely when printed, except in 0d arrays + self.truestr = ' True' if data.shape != () else 'True' + + def __call__(self, x): + return self.truestr if x else "False" + + +class ComplexFloatingFormat: + """ Formatter for subtypes of np.complexfloating """ + def __init__(self, x, precision, floatmode, suppress_small, + sign=False, *, legacy=None): + # for backcompatibility, accept bools + if isinstance(sign, bool): + sign = '+' if sign else '-' + + floatmode_real = floatmode_imag = floatmode + if legacy <= 113: + floatmode_real = 'maxprec_equal' + floatmode_imag = 'maxprec' + + self.real_format = FloatingFormat( + x.real, precision, floatmode_real, suppress_small, + sign=sign, legacy=legacy + ) + self.imag_format = FloatingFormat( + x.imag, precision, floatmode_imag, suppress_small, + sign='+', legacy=legacy + ) + + def __call__(self, x): + r = self.real_format(x.real) + i = self.imag_format(x.imag) + + # add the 'j' before the terminal whitespace in i + sp = len(i.rstrip()) + i = i[:sp] + 'j' + i[sp:] + + return r + i + + +class _TimelikeFormat: + def __init__(self, data): + non_nat = data[~isnat(data)] + if len(non_nat) > 0: + # Max str length of non-NaT elements + max_str_len = max(len(self._format_non_nat(np.max(non_nat))), + len(self._format_non_nat(np.min(non_nat)))) + else: + max_str_len = 0 + if len(non_nat) < data.size: + # data contains a NaT + max_str_len = max(max_str_len, 5) + self._format = '%{}s'.format(max_str_len) + self._nat = "'NaT'".rjust(max_str_len) + + def _format_non_nat(self, x): + # override in subclass + raise NotImplementedError + + def __call__(self, x): + if isnat(x): + return self._nat + else: + return self._format % self._format_non_nat(x) + + +class DatetimeFormat(_TimelikeFormat): + def __init__(self, x, unit=None, timezone=None, casting='same_kind', + legacy=False): + # Get the unit from the dtype + if unit is None: + if x.dtype.kind == 'M': + unit = datetime_data(x.dtype)[0] + else: + unit = 's' + + if timezone is None: + timezone = 'naive' + self.timezone = timezone + self.unit = unit + self.casting = casting + self.legacy = legacy + + # must be called after the above are configured + super().__init__(x) + + def __call__(self, x): + if self.legacy <= 113: + return self._format_non_nat(x) + return super().__call__(x) + + def _format_non_nat(self, x): + return "'%s'" % datetime_as_string(x, + unit=self.unit, + timezone=self.timezone, + casting=self.casting) + + +class TimedeltaFormat(_TimelikeFormat): + def _format_non_nat(self, x): + return str(x.astype('i8')) + + +class SubArrayFormat: + def __init__(self, format_function, **options): + self.format_function = format_function + self.threshold = options['threshold'] + self.edge_items = options['edgeitems'] + + def __call__(self, a): + self.summary_insert = "..." if a.size > self.threshold else "" + return self.format_array(a) + + def format_array(self, a): + if np.ndim(a) == 0: + return self.format_function(a) + + if self.summary_insert and a.shape[0] > 2*self.edge_items: + formatted = ( + [self.format_array(a_) for a_ in a[:self.edge_items]] + + [self.summary_insert] + + [self.format_array(a_) for a_ in a[-self.edge_items:]] + ) + else: + formatted = [self.format_array(a_) for a_ in a] + + return "[" + ", ".join(formatted) + "]" + + +class StructuredVoidFormat: + """ + Formatter for structured np.void objects. + + This does not work on structured alias types like + np.dtype(('i4', 'i2,i2')), as alias scalars lose their field information, + and the implementation relies upon np.void.__getitem__. + """ + def __init__(self, format_functions): + self.format_functions = format_functions + + @classmethod + def from_data(cls, data, **options): + """ + This is a second way to initialize StructuredVoidFormat, + using the raw data as input. Added to avoid changing + the signature of __init__. + """ + format_functions = [] + for field_name in data.dtype.names: + format_function = _get_format_function(data[field_name], **options) + if data.dtype[field_name].shape != (): + format_function = SubArrayFormat(format_function, **options) + format_functions.append(format_function) + return cls(format_functions) + + def __call__(self, x): + str_fields = [ + format_function(field) + for field, format_function in zip(x, self.format_functions) + ] + if len(str_fields) == 1: + return "({},)".format(str_fields[0]) + else: + return "({})".format(", ".join(str_fields)) + + +def _void_scalar_to_string(x, is_repr=True): + """ + Implements the repr for structured-void scalars. It is called from the + scalartypes.c.src code, and is placed here because it uses the elementwise + formatters defined above. + """ + options = format_options.get().copy() + + if options["legacy"] <= 125: + return StructuredVoidFormat.from_data(array(x), **options)(x) + + if options.get('formatter') is None: + options['formatter'] = {} + options['formatter'].setdefault('float_kind', str) + val_repr = StructuredVoidFormat.from_data(array(x), **options)(x) + if not is_repr: + return val_repr + cls = type(x) + cls_fqn = cls.__module__.replace("numpy", "np") + "." + cls.__name__ + void_dtype = np.dtype((np.void, x.dtype)) + return f"{cls_fqn}({val_repr}, dtype={void_dtype!s})" + + +_typelessdata = [int_, float64, complex128, _nt.bool] + + +def dtype_is_implied(dtype): + """ + Determine if the given dtype is implied by the representation + of its values. + + Parameters + ---------- + dtype : dtype + Data type + + Returns + ------- + implied : bool + True if the dtype is implied by the representation of its values. + + Examples + -------- + >>> import numpy as np + >>> np._core.arrayprint.dtype_is_implied(int) + True + >>> np.array([1, 2, 3], int) + array([1, 2, 3]) + >>> np._core.arrayprint.dtype_is_implied(np.int8) + False + >>> np.array([1, 2, 3], np.int8) + array([1, 2, 3], dtype=int8) + """ + dtype = np.dtype(dtype) + if format_options.get()['legacy'] <= 113 and dtype.type == np.bool: + return False + + # not just void types can be structured, and names are not part of the repr + if dtype.names is not None: + return False + + # should care about endianness *unless size is 1* (e.g., int8, bool) + if not dtype.isnative: + return False + + return dtype.type in _typelessdata + + +def dtype_short_repr(dtype): + """ + Convert a dtype to a short form which evaluates to the same dtype. + + The intent is roughly that the following holds + + >>> from numpy import * + >>> dt = np.int64([1, 2]).dtype + >>> assert eval(dtype_short_repr(dt)) == dt + """ + if type(dtype).__repr__ != np.dtype.__repr__: + # TODO: Custom repr for user DTypes, logic should likely move. + return repr(dtype) + if dtype.names is not None: + # structured dtypes give a list or tuple repr + return str(dtype) + elif issubclass(dtype.type, flexible): + # handle these separately so they don't give garbage like str256 + return "'%s'" % str(dtype) + + typename = dtype.name + if not dtype.isnative: + # deal with cases like dtype(' 210 + and arr.size > current_options['threshold']): + extras.append(f"shape={arr.shape}") + if not dtype_is_implied(arr.dtype) or arr.size == 0: + extras.append(f"dtype={dtype_short_repr(arr.dtype)}") + + if not extras: + return prefix + lst + ")" + + arr_str = prefix + lst + "," + extra_str = ", ".join(extras) + ")" + # compute whether we should put extras on a new line: Do so if adding the + # extras would extend the last line past max_line_width. + # Note: This line gives the correct result even when rfind returns -1. + last_line_len = len(arr_str) - (arr_str.rfind('\n') + 1) + spacer = " " + if current_options['legacy'] <= 113: + if issubclass(arr.dtype.type, flexible): + spacer = '\n' + ' '*len(prefix) + elif last_line_len + len(extra_str) + 1 > max_line_width: + spacer = '\n' + ' '*len(prefix) + + return arr_str + spacer + extra_str + + +def _array_repr_dispatcher( + arr, max_line_width=None, precision=None, suppress_small=None): + return (arr,) + + +@array_function_dispatch(_array_repr_dispatcher, module='numpy') +def array_repr(arr, max_line_width=None, precision=None, suppress_small=None): + """ + Return the string representation of an array. + + Parameters + ---------- + arr : ndarray + Input array. + max_line_width : int, optional + Inserts newlines if text is longer than `max_line_width`. + Defaults to ``numpy.get_printoptions()['linewidth']``. + precision : int, optional + Floating point precision. + Defaults to ``numpy.get_printoptions()['precision']``. + suppress_small : bool, optional + Represent numbers "very close" to zero as zero; default is False. + Very close is defined by precision: if the precision is 8, e.g., + numbers smaller (in absolute value) than 5e-9 are represented as + zero. + Defaults to ``numpy.get_printoptions()['suppress']``. + + Returns + ------- + string : str + The string representation of an array. + + See Also + -------- + array_str, array2string, set_printoptions + + Examples + -------- + >>> import numpy as np + >>> np.array_repr(np.array([1,2])) + 'array([1, 2])' + >>> np.array_repr(np.ma.array([0.])) + 'MaskedArray([0.])' + >>> np.array_repr(np.array([], np.int32)) + 'array([], dtype=int32)' + + >>> x = np.array([1e-6, 4e-7, 2, 3]) + >>> np.array_repr(x, precision=6, suppress_small=True) + 'array([0.000001, 0. , 2. , 3. ])' + + """ + return _array_repr_implementation( + arr, max_line_width, precision, suppress_small) + + +@_recursive_guard() +def _guarded_repr_or_str(v): + if isinstance(v, bytes): + return repr(v) + return str(v) + + +def _array_str_implementation( + a, max_line_width=None, precision=None, suppress_small=None, + array2string=array2string): + """Internal version of array_str() that allows overriding array2string.""" + if (format_options.get()['legacy'] <= 113 and + a.shape == () and not a.dtype.names): + return str(a.item()) + + # the str of 0d arrays is a special case: It should appear like a scalar, + # so floats are not truncated by `precision`, and strings are not wrapped + # in quotes. So we return the str of the scalar value. + if a.shape == (): + # obtain a scalar and call str on it, avoiding problems for subclasses + # for which indexing with () returns a 0d instead of a scalar by using + # ndarray's getindex. Also guard against recursive 0d object arrays. + return _guarded_repr_or_str(np.ndarray.__getitem__(a, ())) + + return array2string(a, max_line_width, precision, suppress_small, ' ', "") + + +def _array_str_dispatcher( + a, max_line_width=None, precision=None, suppress_small=None): + return (a,) + + +@array_function_dispatch(_array_str_dispatcher, module='numpy') +def array_str(a, max_line_width=None, precision=None, suppress_small=None): + """ + Return a string representation of the data in an array. + + The data in the array is returned as a single string. This function is + similar to `array_repr`, the difference being that `array_repr` also + returns information on the kind of array and its data type. + + Parameters + ---------- + a : ndarray + Input array. + max_line_width : int, optional + Inserts newlines if text is longer than `max_line_width`. + Defaults to ``numpy.get_printoptions()['linewidth']``. + precision : int, optional + Floating point precision. + Defaults to ``numpy.get_printoptions()['precision']``. + suppress_small : bool, optional + Represent numbers "very close" to zero as zero; default is False. + Very close is defined by precision: if the precision is 8, e.g., + numbers smaller (in absolute value) than 5e-9 are represented as + zero. + Defaults to ``numpy.get_printoptions()['suppress']``. + + See Also + -------- + array2string, array_repr, set_printoptions + + Examples + -------- + >>> import numpy as np + >>> np.array_str(np.arange(3)) + '[0 1 2]' + + """ + return _array_str_implementation( + a, max_line_width, precision, suppress_small) + + +# needed if __array_function__ is disabled +_array2string_impl = getattr(array2string, '__wrapped__', array2string) +_default_array_str = functools.partial(_array_str_implementation, + array2string=_array2string_impl) +_default_array_repr = functools.partial(_array_repr_implementation, + array2string=_array2string_impl) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.pyi new file mode 100644 index 0000000000000000000000000000000000000000..1f8be64d5e7ba36d5b60e26f2101d9c3838f1ed3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/arrayprint.pyi @@ -0,0 +1,229 @@ +from collections.abc import Callable + +# Using a private class is by no means ideal, but it is simply a consequence +# of a `contextlib.context` returning an instance of aforementioned class +from contextlib import _GeneratorContextManager +from typing import Any, Final, Literal, SupportsIndex, TypeAlias, TypedDict, overload, type_check_only + +from typing_extensions import deprecated + +import numpy as np +from numpy._globals import _NoValueType +from numpy._typing import NDArray, _CharLike_co, _FloatLike_co + +__all__ = [ + "array2string", + "array_repr", + "array_str", + "format_float_positional", + "format_float_scientific", + "get_printoptions", + "printoptions", + "set_printoptions", +] + +### + +_FloatMode: TypeAlias = Literal["fixed", "unique", "maxprec", "maxprec_equal"] +_LegacyNoStyle: TypeAlias = Literal["1.21", "1.25", "2.1", False] +_Legacy: TypeAlias = Literal["1.13", _LegacyNoStyle] +_Sign: TypeAlias = Literal["-", "+", " "] +_Trim: TypeAlias = Literal["k", ".", "0", "-"] +_ReprFunc: TypeAlias = Callable[[NDArray[Any]], str] + +@type_check_only +class _FormatDict(TypedDict, total=False): + bool: Callable[[np.bool], str] + int: Callable[[np.integer], str] + timedelta: Callable[[np.timedelta64], str] + datetime: Callable[[np.datetime64], str] + float: Callable[[np.floating], str] + longfloat: Callable[[np.longdouble], str] + complexfloat: Callable[[np.complexfloating], str] + longcomplexfloat: Callable[[np.clongdouble], str] + void: Callable[[np.void], str] + numpystr: Callable[[_CharLike_co], str] + object: Callable[[object], str] + all: Callable[[object], str] + int_kind: Callable[[np.integer], str] + float_kind: Callable[[np.floating], str] + complex_kind: Callable[[np.complexfloating], str] + str_kind: Callable[[_CharLike_co], str] + +@type_check_only +class _FormatOptions(TypedDict): + precision: int + threshold: int + edgeitems: int + linewidth: int + suppress: bool + nanstr: str + infstr: str + formatter: _FormatDict | None + sign: _Sign + floatmode: _FloatMode + legacy: _Legacy + +### + +__docformat__: Final = "restructuredtext" # undocumented + +def set_printoptions( + precision: None | SupportsIndex = ..., + threshold: None | int = ..., + edgeitems: None | int = ..., + linewidth: None | int = ..., + suppress: None | bool = ..., + nanstr: None | str = ..., + infstr: None | str = ..., + formatter: None | _FormatDict = ..., + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + *, + legacy: _Legacy | None = None, + override_repr: _ReprFunc | None = None, +) -> None: ... +def get_printoptions() -> _FormatOptions: ... + +# public numpy export +@overload # no style +def array2string( + a: NDArray[Any], + max_line_width: int | None = None, + precision: SupportsIndex | None = None, + suppress_small: bool | None = None, + separator: str = " ", + prefix: str = "", + style: _NoValueType = ..., + formatter: _FormatDict | None = None, + threshold: int | None = None, + edgeitems: int | None = None, + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + suffix: str = "", + *, + legacy: _Legacy | None = None, +) -> str: ... +@overload # style= (positional), legacy="1.13" +def array2string( + a: NDArray[Any], + max_line_width: int | None, + precision: SupportsIndex | None, + suppress_small: bool | None, + separator: str, + prefix: str, + style: _ReprFunc, + formatter: _FormatDict | None = None, + threshold: int | None = None, + edgeitems: int | None = None, + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + suffix: str = "", + *, + legacy: Literal["1.13"], +) -> str: ... +@overload # style= (keyword), legacy="1.13" +def array2string( + a: NDArray[Any], + max_line_width: int | None = None, + precision: SupportsIndex | None = None, + suppress_small: bool | None = None, + separator: str = " ", + prefix: str = "", + *, + style: _ReprFunc, + formatter: _FormatDict | None = None, + threshold: int | None = None, + edgeitems: int | None = None, + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + suffix: str = "", + legacy: Literal["1.13"], +) -> str: ... +@overload # style= (positional), legacy!="1.13" +@deprecated("'style' argument is deprecated and no longer functional except in 1.13 'legacy' mode") +def array2string( + a: NDArray[Any], + max_line_width: int | None, + precision: SupportsIndex | None, + suppress_small: bool | None, + separator: str, + prefix: str, + style: _ReprFunc, + formatter: _FormatDict | None = None, + threshold: int | None = None, + edgeitems: int | None = None, + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + suffix: str = "", + *, + legacy: _LegacyNoStyle | None = None, +) -> str: ... +@overload # style= (keyword), legacy="1.13" +@deprecated("'style' argument is deprecated and no longer functional except in 1.13 'legacy' mode") +def array2string( + a: NDArray[Any], + max_line_width: int | None = None, + precision: SupportsIndex | None = None, + suppress_small: bool | None = None, + separator: str = " ", + prefix: str = "", + *, + style: _ReprFunc, + formatter: _FormatDict | None = None, + threshold: int | None = None, + edgeitems: int | None = None, + sign: _Sign | None = None, + floatmode: _FloatMode | None = None, + suffix: str = "", + legacy: _LegacyNoStyle | None = None, +) -> str: ... + +def format_float_scientific( + x: _FloatLike_co, + precision: None | int = ..., + unique: bool = ..., + trim: _Trim = "k", + sign: bool = ..., + pad_left: None | int = ..., + exp_digits: None | int = ..., + min_digits: None | int = ..., +) -> str: ... +def format_float_positional( + x: _FloatLike_co, + precision: None | int = ..., + unique: bool = ..., + fractional: bool = ..., + trim: _Trim = "k", + sign: bool = ..., + pad_left: None | int = ..., + pad_right: None | int = ..., + min_digits: None | int = ..., +) -> str: ... +def array_repr( + arr: NDArray[Any], + max_line_width: None | int = ..., + precision: None | SupportsIndex = ..., + suppress_small: None | bool = ..., +) -> str: ... +def array_str( + a: NDArray[Any], + max_line_width: None | int = ..., + precision: None | SupportsIndex = ..., + suppress_small: None | bool = ..., +) -> str: ... +def printoptions( + precision: None | SupportsIndex = ..., + threshold: None | int = ..., + edgeitems: None | int = ..., + linewidth: None | int = ..., + suppress: None | bool = ..., + nanstr: None | str = ..., + infstr: None | str = ..., + formatter: None | _FormatDict = ..., + sign: None | _Sign = None, + floatmode: _FloatMode | None = None, + *, + legacy: _Legacy | None = None, + override_repr: _ReprFunc | None = None, +) -> _GeneratorContextManager[_FormatOptions]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/cversions.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/cversions.py new file mode 100644 index 0000000000000000000000000000000000000000..00159c3a8031d8ccd44b226db42090f97014cd9f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/cversions.py @@ -0,0 +1,13 @@ +"""Simple script to compute the api hash of the current API. + +The API has is defined by numpy_api_order and ufunc_api_order. + +""" +from os.path import dirname + +from code_generators.genapi import fullapi_hash +from code_generators.numpy_api import full_api + +if __name__ == '__main__': + curdir = dirname(__file__) + print(fullapi_hash(full_api)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/defchararray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/defchararray.py new file mode 100644 index 0000000000000000000000000000000000000000..49ed5d38525e91401241b2759e00e5ab18d0c606 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/defchararray.py @@ -0,0 +1,1414 @@ +""" +This module contains a set of functions for vectorized string +operations and methods. + +.. note:: + The `chararray` class exists for backwards compatibility with + Numarray, it is not recommended for new development. Starting from numpy + 1.4, if one needs arrays of strings, it is recommended to use arrays of + `dtype` `object_`, `bytes_` or `str_`, and use the free functions + in the `numpy.char` module for fast vectorized string operations. + +Some methods will only be available if the corresponding string method is +available in your version of Python. + +The preferred alias for `defchararray` is `numpy.char`. + +""" +import functools + +import numpy as np +from .._utils import set_module +from .numerictypes import bytes_, str_, character +from .numeric import ndarray, array as narray, asarray as asnarray +from numpy._core.multiarray import compare_chararrays +from numpy._core import overrides +from numpy.strings import * +from numpy.strings import ( + multiply as strings_multiply, + partition as strings_partition, + rpartition as strings_rpartition, +) +from numpy._core.strings import ( + _split as split, + _rsplit as rsplit, + _splitlines as splitlines, + _join as join, +) + +__all__ = [ + 'equal', 'not_equal', 'greater_equal', 'less_equal', + 'greater', 'less', 'str_len', 'add', 'multiply', 'mod', 'capitalize', + 'center', 'count', 'decode', 'encode', 'endswith', 'expandtabs', + 'find', 'index', 'isalnum', 'isalpha', 'isdigit', 'islower', 'isspace', + 'istitle', 'isupper', 'join', 'ljust', 'lower', 'lstrip', 'partition', + 'replace', 'rfind', 'rindex', 'rjust', 'rpartition', 'rsplit', + 'rstrip', 'split', 'splitlines', 'startswith', 'strip', 'swapcase', + 'title', 'translate', 'upper', 'zfill', 'isnumeric', 'isdecimal', + 'array', 'asarray', 'compare_chararrays', 'chararray' + ] + + +array_function_dispatch = functools.partial( + overrides.array_function_dispatch, module='numpy.char') + + +def _binary_op_dispatcher(x1, x2): + return (x1, x2) + + +@array_function_dispatch(_binary_op_dispatcher) +def equal(x1, x2): + """ + Return (x1 == x2) element-wise. + + Unlike `numpy.equal`, this comparison is performed by first + stripping whitespace characters from the end of the string. This + behavior is provided for backward-compatibility with numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + Examples + -------- + >>> import numpy as np + >>> y = "aa " + >>> x = "aa" + >>> np.char.equal(x, y) + array(True) + + See Also + -------- + not_equal, greater_equal, less_equal, greater, less + """ + return compare_chararrays(x1, x2, '==', True) + + +@array_function_dispatch(_binary_op_dispatcher) +def not_equal(x1, x2): + """ + Return (x1 != x2) element-wise. + + Unlike `numpy.not_equal`, this comparison is performed by first + stripping whitespace characters from the end of the string. This + behavior is provided for backward-compatibility with numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + See Also + -------- + equal, greater_equal, less_equal, greater, less + + Examples + -------- + >>> import numpy as np + >>> x1 = np.array(['a', 'b', 'c']) + >>> np.char.not_equal(x1, 'b') + array([ True, False, True]) + + """ + return compare_chararrays(x1, x2, '!=', True) + + +@array_function_dispatch(_binary_op_dispatcher) +def greater_equal(x1, x2): + """ + Return (x1 >= x2) element-wise. + + Unlike `numpy.greater_equal`, this comparison is performed by + first stripping whitespace characters from the end of the string. + This behavior is provided for backward-compatibility with + numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + See Also + -------- + equal, not_equal, less_equal, greater, less + + Examples + -------- + >>> import numpy as np + >>> x1 = np.array(['a', 'b', 'c']) + >>> np.char.greater_equal(x1, 'b') + array([False, True, True]) + + """ + return compare_chararrays(x1, x2, '>=', True) + + +@array_function_dispatch(_binary_op_dispatcher) +def less_equal(x1, x2): + """ + Return (x1 <= x2) element-wise. + + Unlike `numpy.less_equal`, this comparison is performed by first + stripping whitespace characters from the end of the string. This + behavior is provided for backward-compatibility with numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + See Also + -------- + equal, not_equal, greater_equal, greater, less + + Examples + -------- + >>> import numpy as np + >>> x1 = np.array(['a', 'b', 'c']) + >>> np.char.less_equal(x1, 'b') + array([ True, True, False]) + + """ + return compare_chararrays(x1, x2, '<=', True) + + +@array_function_dispatch(_binary_op_dispatcher) +def greater(x1, x2): + """ + Return (x1 > x2) element-wise. + + Unlike `numpy.greater`, this comparison is performed by first + stripping whitespace characters from the end of the string. This + behavior is provided for backward-compatibility with numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + See Also + -------- + equal, not_equal, greater_equal, less_equal, less + + Examples + -------- + >>> import numpy as np + >>> x1 = np.array(['a', 'b', 'c']) + >>> np.char.greater(x1, 'b') + array([False, False, True]) + + """ + return compare_chararrays(x1, x2, '>', True) + + +@array_function_dispatch(_binary_op_dispatcher) +def less(x1, x2): + """ + Return (x1 < x2) element-wise. + + Unlike `numpy.greater`, this comparison is performed by first + stripping whitespace characters from the end of the string. This + behavior is provided for backward-compatibility with numarray. + + Parameters + ---------- + x1, x2 : array_like of str or unicode + Input arrays of the same shape. + + Returns + ------- + out : ndarray + Output array of bools. + + See Also + -------- + equal, not_equal, greater_equal, less_equal, greater + + Examples + -------- + >>> import numpy as np + >>> x1 = np.array(['a', 'b', 'c']) + >>> np.char.less(x1, 'b') + array([True, False, False]) + + """ + return compare_chararrays(x1, x2, '<', True) + + +@set_module("numpy.char") +def multiply(a, i): + """ + Return (a * i), that is string multiple concatenation, + element-wise. + + Values in ``i`` of less than 0 are treated as 0 (which yields an + empty string). + + Parameters + ---------- + a : array_like, with `np.bytes_` or `np.str_` dtype + + i : array_like, with any integer dtype + + Returns + ------- + out : ndarray + Output array of str or unicode, depending on input types + + Notes + ----- + This is a thin wrapper around np.strings.multiply that raises + `ValueError` when ``i`` is not an integer. It only + exists for backwards-compatibility. + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["a", "b", "c"]) + >>> np.strings.multiply(a, 3) + array(['aaa', 'bbb', 'ccc'], dtype='>> i = np.array([1, 2, 3]) + >>> np.strings.multiply(a, i) + array(['a', 'bb', 'ccc'], dtype='>> np.strings.multiply(np.array(['a']), i) + array(['a', 'aa', 'aaa'], dtype='>> a = np.array(['a', 'b', 'c', 'd', 'e', 'f']).reshape((2, 3)) + >>> np.strings.multiply(a, 3) + array([['aaa', 'bbb', 'ccc'], + ['ddd', 'eee', 'fff']], dtype='>> np.strings.multiply(a, i) + array([['a', 'bb', 'ccc'], + ['d', 'ee', 'fff']], dtype='>> import numpy as np + >>> x = np.array(["Numpy is nice!"]) + >>> np.char.partition(x, " ") + array([['Numpy', ' ', 'is nice!']], dtype='>> import numpy as np + >>> a = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> np.char.rpartition(a, 'A') + array([['aAaAa', 'A', ''], + [' a', 'A', ' '], + ['abB', 'A', 'Bba']], dtype='= 2`` and ``order='F'``, in which case `strides` + is in "Fortran order". + + Methods + ------- + astype + argsort + copy + count + decode + dump + dumps + encode + endswith + expandtabs + fill + find + flatten + getfield + index + isalnum + isalpha + isdecimal + isdigit + islower + isnumeric + isspace + istitle + isupper + item + join + ljust + lower + lstrip + nonzero + put + ravel + repeat + replace + reshape + resize + rfind + rindex + rjust + rsplit + rstrip + searchsorted + setfield + setflags + sort + split + splitlines + squeeze + startswith + strip + swapaxes + swapcase + take + title + tofile + tolist + tostring + translate + transpose + upper + view + zfill + + Parameters + ---------- + shape : tuple + Shape of the array. + itemsize : int, optional + Length of each array element, in number of characters. Default is 1. + unicode : bool, optional + Are the array elements of type unicode (True) or string (False). + Default is False. + buffer : object exposing the buffer interface or str, optional + Memory address of the start of the array data. Default is None, + in which case a new array is created. + offset : int, optional + Fixed stride displacement from the beginning of an axis? + Default is 0. Needs to be >=0. + strides : array_like of ints, optional + Strides for the array (see `~numpy.ndarray.strides` for + full description). Default is None. + order : {'C', 'F'}, optional + The order in which the array data is stored in memory: 'C' -> + "row major" order (the default), 'F' -> "column major" + (Fortran) order. + + Examples + -------- + >>> import numpy as np + >>> charar = np.char.chararray((3, 3)) + >>> charar[:] = 'a' + >>> charar + chararray([[b'a', b'a', b'a'], + [b'a', b'a', b'a'], + [b'a', b'a', b'a']], dtype='|S1') + + >>> charar = np.char.chararray(charar.shape, itemsize=5) + >>> charar[:] = 'abc' + >>> charar + chararray([[b'abc', b'abc', b'abc'], + [b'abc', b'abc', b'abc'], + [b'abc', b'abc', b'abc']], dtype='|S5') + + """ + def __new__(subtype, shape, itemsize=1, unicode=False, buffer=None, + offset=0, strides=None, order='C'): + if unicode: + dtype = str_ + else: + dtype = bytes_ + + # force itemsize to be a Python int, since using NumPy integer + # types results in itemsize.itemsize being used as the size of + # strings in the new array. + itemsize = int(itemsize) + + if isinstance(buffer, str): + # unicode objects do not have the buffer interface + filler = buffer + buffer = None + else: + filler = None + + if buffer is None: + self = ndarray.__new__(subtype, shape, (dtype, itemsize), + order=order) + else: + self = ndarray.__new__(subtype, shape, (dtype, itemsize), + buffer=buffer, + offset=offset, strides=strides, + order=order) + if filler is not None: + self[...] = filler + + return self + + def __array_wrap__(self, arr, context=None, return_scalar=False): + # When calling a ufunc (and some other functions), we return a + # chararray if the ufunc output is a string-like array, + # or an ndarray otherwise + if arr.dtype.char in "SUbc": + return arr.view(type(self)) + return arr + + def __array_finalize__(self, obj): + # The b is a special case because it is used for reconstructing. + if self.dtype.char not in 'VSUbc': + raise ValueError("Can only create a chararray from string data.") + + def __getitem__(self, obj): + val = ndarray.__getitem__(self, obj) + if isinstance(val, character): + return val.rstrip() + return val + + # IMPLEMENTATION NOTE: Most of the methods of this class are + # direct delegations to the free functions in this module. + # However, those that return an array of strings should instead + # return a chararray, so some extra wrapping is required. + + def __eq__(self, other): + """ + Return (self == other) element-wise. + + See Also + -------- + equal + """ + return equal(self, other) + + def __ne__(self, other): + """ + Return (self != other) element-wise. + + See Also + -------- + not_equal + """ + return not_equal(self, other) + + def __ge__(self, other): + """ + Return (self >= other) element-wise. + + See Also + -------- + greater_equal + """ + return greater_equal(self, other) + + def __le__(self, other): + """ + Return (self <= other) element-wise. + + See Also + -------- + less_equal + """ + return less_equal(self, other) + + def __gt__(self, other): + """ + Return (self > other) element-wise. + + See Also + -------- + greater + """ + return greater(self, other) + + def __lt__(self, other): + """ + Return (self < other) element-wise. + + See Also + -------- + less + """ + return less(self, other) + + def __add__(self, other): + """ + Return (self + other), that is string concatenation, + element-wise for a pair of array_likes of str or unicode. + + See Also + -------- + add + """ + return add(self, other) + + def __radd__(self, other): + """ + Return (other + self), that is string concatenation, + element-wise for a pair of array_likes of `bytes_` or `str_`. + + See Also + -------- + add + """ + return add(other, self) + + def __mul__(self, i): + """ + Return (self * i), that is string multiple concatenation, + element-wise. + + See Also + -------- + multiply + """ + return asarray(multiply(self, i)) + + def __rmul__(self, i): + """ + Return (self * i), that is string multiple concatenation, + element-wise. + + See Also + -------- + multiply + """ + return asarray(multiply(self, i)) + + def __mod__(self, i): + """ + Return (self % i), that is pre-Python 2.6 string formatting + (interpolation), element-wise for a pair of array_likes of `bytes_` + or `str_`. + + See Also + -------- + mod + """ + return asarray(mod(self, i)) + + def __rmod__(self, other): + return NotImplemented + + def argsort(self, axis=-1, kind=None, order=None): + """ + Return the indices that sort the array lexicographically. + + For full documentation see `numpy.argsort`, for which this method is + in fact merely a "thin wrapper." + + Examples + -------- + >>> c = np.array(['a1b c', '1b ca', 'b ca1', 'Ca1b'], 'S5') + >>> c = c.view(np.char.chararray); c + chararray(['a1b c', '1b ca', 'b ca1', 'Ca1b'], + dtype='|S5') + >>> c[c.argsort()] + chararray(['1b ca', 'Ca1b', 'a1b c', 'b ca1'], + dtype='|S5') + + """ + return self.__array__().argsort(axis, kind, order) + argsort.__doc__ = ndarray.argsort.__doc__ + + def capitalize(self): + """ + Return a copy of `self` with only the first character of each element + capitalized. + + See Also + -------- + char.capitalize + + """ + return asarray(capitalize(self)) + + def center(self, width, fillchar=' '): + """ + Return a copy of `self` with its elements centered in a + string of length `width`. + + See Also + -------- + center + """ + return asarray(center(self, width, fillchar)) + + def count(self, sub, start=0, end=None): + """ + Returns an array with the number of non-overlapping occurrences of + substring `sub` in the range [`start`, `end`]. + + See Also + -------- + char.count + + """ + return count(self, sub, start, end) + + def decode(self, encoding=None, errors=None): + """ + Calls ``bytes.decode`` element-wise. + + See Also + -------- + char.decode + + """ + return decode(self, encoding, errors) + + def encode(self, encoding=None, errors=None): + """ + Calls :meth:`str.encode` element-wise. + + See Also + -------- + char.encode + + """ + return encode(self, encoding, errors) + + def endswith(self, suffix, start=0, end=None): + """ + Returns a boolean array which is `True` where the string element + in `self` ends with `suffix`, otherwise `False`. + + See Also + -------- + char.endswith + + """ + return endswith(self, suffix, start, end) + + def expandtabs(self, tabsize=8): + """ + Return a copy of each string element where all tab characters are + replaced by one or more spaces. + + See Also + -------- + char.expandtabs + + """ + return asarray(expandtabs(self, tabsize)) + + def find(self, sub, start=0, end=None): + """ + For each element, return the lowest index in the string where + substring `sub` is found. + + See Also + -------- + char.find + + """ + return find(self, sub, start, end) + + def index(self, sub, start=0, end=None): + """ + Like `find`, but raises :exc:`ValueError` when the substring is not + found. + + See Also + -------- + char.index + + """ + return index(self, sub, start, end) + + def isalnum(self): + """ + Returns true for each element if all characters in the string + are alphanumeric and there is at least one character, false + otherwise. + + See Also + -------- + char.isalnum + + """ + return isalnum(self) + + def isalpha(self): + """ + Returns true for each element if all characters in the string + are alphabetic and there is at least one character, false + otherwise. + + See Also + -------- + char.isalpha + + """ + return isalpha(self) + + def isdigit(self): + """ + Returns true for each element if all characters in the string are + digits and there is at least one character, false otherwise. + + See Also + -------- + char.isdigit + + """ + return isdigit(self) + + def islower(self): + """ + Returns true for each element if all cased characters in the + string are lowercase and there is at least one cased character, + false otherwise. + + See Also + -------- + char.islower + + """ + return islower(self) + + def isspace(self): + """ + Returns true for each element if there are only whitespace + characters in the string and there is at least one character, + false otherwise. + + See Also + -------- + char.isspace + + """ + return isspace(self) + + def istitle(self): + """ + Returns true for each element if the element is a titlecased + string and there is at least one character, false otherwise. + + See Also + -------- + char.istitle + + """ + return istitle(self) + + def isupper(self): + """ + Returns true for each element if all cased characters in the + string are uppercase and there is at least one character, false + otherwise. + + See Also + -------- + char.isupper + + """ + return isupper(self) + + def join(self, seq): + """ + Return a string which is the concatenation of the strings in the + sequence `seq`. + + See Also + -------- + char.join + + """ + return join(self, seq) + + def ljust(self, width, fillchar=' '): + """ + Return an array with the elements of `self` left-justified in a + string of length `width`. + + See Also + -------- + char.ljust + + """ + return asarray(ljust(self, width, fillchar)) + + def lower(self): + """ + Return an array with the elements of `self` converted to + lowercase. + + See Also + -------- + char.lower + + """ + return asarray(lower(self)) + + def lstrip(self, chars=None): + """ + For each element in `self`, return a copy with the leading characters + removed. + + See Also + -------- + char.lstrip + + """ + return lstrip(self, chars) + + def partition(self, sep): + """ + Partition each element in `self` around `sep`. + + See Also + -------- + partition + """ + return asarray(partition(self, sep)) + + def replace(self, old, new, count=None): + """ + For each element in `self`, return a copy of the string with all + occurrences of substring `old` replaced by `new`. + + See Also + -------- + char.replace + + """ + return replace(self, old, new, count if count is not None else -1) + + def rfind(self, sub, start=0, end=None): + """ + For each element in `self`, return the highest index in the string + where substring `sub` is found, such that `sub` is contained + within [`start`, `end`]. + + See Also + -------- + char.rfind + + """ + return rfind(self, sub, start, end) + + def rindex(self, sub, start=0, end=None): + """ + Like `rfind`, but raises :exc:`ValueError` when the substring `sub` is + not found. + + See Also + -------- + char.rindex + + """ + return rindex(self, sub, start, end) + + def rjust(self, width, fillchar=' '): + """ + Return an array with the elements of `self` + right-justified in a string of length `width`. + + See Also + -------- + char.rjust + + """ + return asarray(rjust(self, width, fillchar)) + + def rpartition(self, sep): + """ + Partition each element in `self` around `sep`. + + See Also + -------- + rpartition + """ + return asarray(rpartition(self, sep)) + + def rsplit(self, sep=None, maxsplit=None): + """ + For each element in `self`, return a list of the words in + the string, using `sep` as the delimiter string. + + See Also + -------- + char.rsplit + + """ + return rsplit(self, sep, maxsplit) + + def rstrip(self, chars=None): + """ + For each element in `self`, return a copy with the trailing + characters removed. + + See Also + -------- + char.rstrip + + """ + return rstrip(self, chars) + + def split(self, sep=None, maxsplit=None): + """ + For each element in `self`, return a list of the words in the + string, using `sep` as the delimiter string. + + See Also + -------- + char.split + + """ + return split(self, sep, maxsplit) + + def splitlines(self, keepends=None): + """ + For each element in `self`, return a list of the lines in the + element, breaking at line boundaries. + + See Also + -------- + char.splitlines + + """ + return splitlines(self, keepends) + + def startswith(self, prefix, start=0, end=None): + """ + Returns a boolean array which is `True` where the string element + in `self` starts with `prefix`, otherwise `False`. + + See Also + -------- + char.startswith + + """ + return startswith(self, prefix, start, end) + + def strip(self, chars=None): + """ + For each element in `self`, return a copy with the leading and + trailing characters removed. + + See Also + -------- + char.strip + + """ + return strip(self, chars) + + def swapcase(self): + """ + For each element in `self`, return a copy of the string with + uppercase characters converted to lowercase and vice versa. + + See Also + -------- + char.swapcase + + """ + return asarray(swapcase(self)) + + def title(self): + """ + For each element in `self`, return a titlecased version of the + string: words start with uppercase characters, all remaining cased + characters are lowercase. + + See Also + -------- + char.title + + """ + return asarray(title(self)) + + def translate(self, table, deletechars=None): + """ + For each element in `self`, return a copy of the string where + all characters occurring in the optional argument + `deletechars` are removed, and the remaining characters have + been mapped through the given translation table. + + See Also + -------- + char.translate + + """ + return asarray(translate(self, table, deletechars)) + + def upper(self): + """ + Return an array with the elements of `self` converted to + uppercase. + + See Also + -------- + char.upper + + """ + return asarray(upper(self)) + + def zfill(self, width): + """ + Return the numeric string left-filled with zeros in a string of + length `width`. + + See Also + -------- + char.zfill + + """ + return asarray(zfill(self, width)) + + def isnumeric(self): + """ + For each element in `self`, return True if there are only + numeric characters in the element. + + See Also + -------- + char.isnumeric + + """ + return isnumeric(self) + + def isdecimal(self): + """ + For each element in `self`, return True if there are only + decimal characters in the element. + + See Also + -------- + char.isdecimal + + """ + return isdecimal(self) + + +@set_module("numpy.char") +def array(obj, itemsize=None, copy=True, unicode=None, order=None): + """ + Create a `~numpy.char.chararray`. + + .. note:: + This class is provided for numarray backward-compatibility. + New code (not concerned with numarray compatibility) should use + arrays of type `bytes_` or `str_` and use the free functions + in :mod:`numpy.char` for fast vectorized string operations instead. + + Versus a NumPy array of dtype `bytes_` or `str_`, this + class adds the following functionality: + + 1) values automatically have whitespace removed from the end + when indexed + + 2) comparison operators automatically remove whitespace from the + end when comparing values + + 3) vectorized string operations are provided as methods + (e.g. `chararray.endswith `) + and infix operators (e.g. ``+, *, %``) + + Parameters + ---------- + obj : array of str or unicode-like + + itemsize : int, optional + `itemsize` is the number of characters per scalar in the + resulting array. If `itemsize` is None, and `obj` is an + object array or a Python list, the `itemsize` will be + automatically determined. If `itemsize` is provided and `obj` + is of type str or unicode, then the `obj` string will be + chunked into `itemsize` pieces. + + copy : bool, optional + If true (default), then the object is copied. Otherwise, a copy + will only be made if ``__array__`` returns a copy, if obj is a + nested sequence, or if a copy is needed to satisfy any of the other + requirements (`itemsize`, unicode, `order`, etc.). + + unicode : bool, optional + When true, the resulting `~numpy.char.chararray` can contain Unicode + characters, when false only 8-bit characters. If unicode is + None and `obj` is one of the following: + + - a `~numpy.char.chararray`, + - an ndarray of type :class:`str_` or :class:`bytes_` + - a Python :class:`str` or :class:`bytes` object, + + then the unicode setting of the output array will be + automatically determined. + + order : {'C', 'F', 'A'}, optional + Specify the order of the array. If order is 'C' (default), then the + array will be in C-contiguous order (last-index varies the + fastest). If order is 'F', then the returned array + will be in Fortran-contiguous order (first-index varies the + fastest). If order is 'A', then the returned array may + be in any order (either C-, Fortran-contiguous, or even + discontiguous). + + Examples + -------- + + >>> import numpy as np + >>> char_array = np.char.array(['hello', 'world', 'numpy','array']) + >>> char_array + chararray(['hello', 'world', 'numpy', 'array'], dtype='`) + and infix operators (e.g. ``+``, ``*``, ``%``) + + Parameters + ---------- + obj : array of str or unicode-like + + itemsize : int, optional + `itemsize` is the number of characters per scalar in the + resulting array. If `itemsize` is None, and `obj` is an + object array or a Python list, the `itemsize` will be + automatically determined. If `itemsize` is provided and `obj` + is of type str or unicode, then the `obj` string will be + chunked into `itemsize` pieces. + + unicode : bool, optional + When true, the resulting `~numpy.char.chararray` can contain Unicode + characters, when false only 8-bit characters. If unicode is + None and `obj` is one of the following: + + - a `~numpy.char.chararray`, + - an ndarray of type `str_` or `unicode_` + - a Python str or unicode object, + + then the unicode setting of the output array will be + automatically determined. + + order : {'C', 'F'}, optional + Specify the order of the array. If order is 'C' (default), then the + array will be in C-contiguous order (last-index varies the + fastest). If order is 'F', then the returned array + will be in Fortran-contiguous order (first-index varies the + fastest). + + Examples + -------- + >>> import numpy as np + >>> np.char.asarray(['hello', 'world']) + chararray(['hello', 'world'], dtype=' chararray[_Shape, dtype[bytes_]]: ... + @overload + def __new__( + subtype, + shape: _ShapeLike, + itemsize: SupportsIndex | SupportsInt = ..., + unicode: L[True] = ..., + buffer: _SupportsBuffer = ..., + offset: SupportsIndex = ..., + strides: _ShapeLike = ..., + order: _OrderKACF = ..., + ) -> chararray[_Shape, dtype[str_]]: ... + + def __array_finalize__(self, obj: object) -> None: ... + def __mul__(self, other: i_co) -> chararray[_Shape, _CharDType_co]: ... + def __rmul__(self, other: i_co) -> chararray[_Shape, _CharDType_co]: ... + def __mod__(self, i: Any) -> chararray[_Shape, _CharDType_co]: ... + + @overload + def __eq__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __eq__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __ne__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __ne__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __ge__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __ge__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __le__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __le__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __gt__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __gt__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __lt__( + self: _CharArray[str_], + other: U_co, + ) -> NDArray[np.bool]: ... + @overload + def __lt__( + self: _CharArray[bytes_], + other: S_co, + ) -> NDArray[np.bool]: ... + + @overload + def __add__( + self: _CharArray[str_], + other: U_co, + ) -> _CharArray[str_]: ... + @overload + def __add__( + self: _CharArray[bytes_], + other: S_co, + ) -> _CharArray[bytes_]: ... + + @overload + def __radd__( + self: _CharArray[str_], + other: U_co, + ) -> _CharArray[str_]: ... + @overload + def __radd__( + self: _CharArray[bytes_], + other: S_co, + ) -> _CharArray[bytes_]: ... + + @overload + def center( + self: _CharArray[str_], + width: i_co, + fillchar: U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def center( + self: _CharArray[bytes_], + width: i_co, + fillchar: S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def count( + self: _CharArray[str_], + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + @overload + def count( + self: _CharArray[bytes_], + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + + def decode( + self: _CharArray[bytes_], + encoding: None | str = ..., + errors: None | str = ..., + ) -> _CharArray[str_]: ... + + def encode( + self: _CharArray[str_], + encoding: None | str = ..., + errors: None | str = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def endswith( + self: _CharArray[str_], + suffix: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[np.bool]: ... + @overload + def endswith( + self: _CharArray[bytes_], + suffix: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[np.bool]: ... + + def expandtabs( + self, + tabsize: i_co = ..., + ) -> chararray[_Shape, _CharDType_co]: ... + + @overload + def find( + self: _CharArray[str_], + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + @overload + def find( + self: _CharArray[bytes_], + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + + @overload + def index( + self: _CharArray[str_], + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + @overload + def index( + self: _CharArray[bytes_], + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + + @overload + def join( + self: _CharArray[str_], + seq: U_co, + ) -> _CharArray[str_]: ... + @overload + def join( + self: _CharArray[bytes_], + seq: S_co, + ) -> _CharArray[bytes_]: ... + + @overload + def ljust( + self: _CharArray[str_], + width: i_co, + fillchar: U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def ljust( + self: _CharArray[bytes_], + width: i_co, + fillchar: S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def lstrip( + self: _CharArray[str_], + chars: None | U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def lstrip( + self: _CharArray[bytes_], + chars: None | S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def partition( + self: _CharArray[str_], + sep: U_co, + ) -> _CharArray[str_]: ... + @overload + def partition( + self: _CharArray[bytes_], + sep: S_co, + ) -> _CharArray[bytes_]: ... + + @overload + def replace( + self: _CharArray[str_], + old: U_co, + new: U_co, + count: None | i_co = ..., + ) -> _CharArray[str_]: ... + @overload + def replace( + self: _CharArray[bytes_], + old: S_co, + new: S_co, + count: None | i_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def rfind( + self: _CharArray[str_], + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + @overload + def rfind( + self: _CharArray[bytes_], + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + + @overload + def rindex( + self: _CharArray[str_], + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + @overload + def rindex( + self: _CharArray[bytes_], + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[int_]: ... + + @overload + def rjust( + self: _CharArray[str_], + width: i_co, + fillchar: U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def rjust( + self: _CharArray[bytes_], + width: i_co, + fillchar: S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def rpartition( + self: _CharArray[str_], + sep: U_co, + ) -> _CharArray[str_]: ... + @overload + def rpartition( + self: _CharArray[bytes_], + sep: S_co, + ) -> _CharArray[bytes_]: ... + + @overload + def rsplit( + self: _CharArray[str_], + sep: None | U_co = ..., + maxsplit: None | i_co = ..., + ) -> NDArray[object_]: ... + @overload + def rsplit( + self: _CharArray[bytes_], + sep: None | S_co = ..., + maxsplit: None | i_co = ..., + ) -> NDArray[object_]: ... + + @overload + def rstrip( + self: _CharArray[str_], + chars: None | U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def rstrip( + self: _CharArray[bytes_], + chars: None | S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def split( + self: _CharArray[str_], + sep: None | U_co = ..., + maxsplit: None | i_co = ..., + ) -> NDArray[object_]: ... + @overload + def split( + self: _CharArray[bytes_], + sep: None | S_co = ..., + maxsplit: None | i_co = ..., + ) -> NDArray[object_]: ... + + def splitlines(self, keepends: None | b_co = ...) -> NDArray[object_]: ... + + @overload + def startswith( + self: _CharArray[str_], + prefix: U_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[np.bool]: ... + @overload + def startswith( + self: _CharArray[bytes_], + prefix: S_co, + start: i_co = ..., + end: None | i_co = ..., + ) -> NDArray[np.bool]: ... + + @overload + def strip( + self: _CharArray[str_], + chars: None | U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def strip( + self: _CharArray[bytes_], + chars: None | S_co = ..., + ) -> _CharArray[bytes_]: ... + + @overload + def translate( + self: _CharArray[str_], + table: U_co, + deletechars: None | U_co = ..., + ) -> _CharArray[str_]: ... + @overload + def translate( + self: _CharArray[bytes_], + table: S_co, + deletechars: None | S_co = ..., + ) -> _CharArray[bytes_]: ... + + def zfill(self, width: i_co) -> chararray[_Shape, _CharDType_co]: ... + def capitalize(self) -> chararray[_ShapeT_co, _CharDType_co]: ... + def title(self) -> chararray[_ShapeT_co, _CharDType_co]: ... + def swapcase(self) -> chararray[_ShapeT_co, _CharDType_co]: ... + def lower(self) -> chararray[_ShapeT_co, _CharDType_co]: ... + def upper(self) -> chararray[_ShapeT_co, _CharDType_co]: ... + def isalnum(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isalpha(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isdigit(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def islower(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isspace(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def istitle(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isupper(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isnumeric(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + def isdecimal(self) -> ndarray[_ShapeT_co, dtype[np.bool]]: ... + + +# Comparison +@overload +def equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def not_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def not_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def not_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def greater_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def greater_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def greater_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def less_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def less_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def less_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def greater(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def greater(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def greater(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def less(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def less(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def less(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def add(x1: U_co, x2: U_co) -> NDArray[np.str_]: ... +@overload +def add(x1: S_co, x2: S_co) -> NDArray[np.bytes_]: ... +@overload +def add(x1: _StringDTypeSupportsArray, x2: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def add(x1: T_co, T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def multiply(a: U_co, i: i_co) -> NDArray[np.str_]: ... +@overload +def multiply(a: S_co, i: i_co) -> NDArray[np.bytes_]: ... +@overload +def multiply(a: _StringDTypeSupportsArray, i: i_co) -> _StringDTypeArray: ... +@overload +def multiply(a: T_co, i: i_co) -> _StringDTypeOrUnicodeArray: ... + + +@overload +def mod(a: U_co, value: Any) -> NDArray[np.str_]: ... +@overload +def mod(a: S_co, value: Any) -> NDArray[np.bytes_]: ... +@overload +def mod(a: _StringDTypeSupportsArray, value: Any) -> _StringDTypeArray: ... +@overload +def mod(a: T_co, value: Any) -> _StringDTypeOrUnicodeArray: ... + +@overload +def capitalize(a: U_co) -> NDArray[str_]: ... +@overload +def capitalize(a: S_co) -> NDArray[bytes_]: ... +@overload +def capitalize(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def capitalize(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def center(a: U_co, width: i_co, fillchar: U_co = ...) -> NDArray[str_]: ... +@overload +def center(a: S_co, width: i_co, fillchar: S_co = ...) -> NDArray[bytes_]: ... +@overload +def center(a: _StringDTypeSupportsArray, width: i_co, fillchar: _StringDTypeSupportsArray = ...) -> _StringDTypeArray: ... +@overload +def center(a: T_co, width: i_co, fillchar: T_co = ...) -> _StringDTypeOrUnicodeArray: ... + +def decode( + a: S_co, + encoding: None | str = ..., + errors: None | str = ..., +) -> NDArray[str_]: ... +def encode( + a: U_co | T_co, + encoding: None | str = ..., + errors: None | str = ..., +) -> NDArray[bytes_]: ... + +@overload +def expandtabs(a: U_co, tabsize: i_co = ...) -> NDArray[str_]: ... +@overload +def expandtabs(a: S_co, tabsize: i_co = ...) -> NDArray[bytes_]: ... +@overload +def expandtabs(a: _StringDTypeSupportsArray, tabsize: i_co = ...) -> _StringDTypeArray: ... +@overload +def expandtabs(a: T_co, tabsize: i_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def join(sep: U_co, seq: U_co) -> NDArray[str_]: ... +@overload +def join(sep: S_co, seq: S_co) -> NDArray[bytes_]: ... +@overload +def join(sep: _StringDTypeSupportsArray, seq: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def join(sep: T_co, seq: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def ljust(a: U_co, width: i_co, fillchar: U_co = ...) -> NDArray[str_]: ... +@overload +def ljust(a: S_co, width: i_co, fillchar: S_co = ...) -> NDArray[bytes_]: ... +@overload +def ljust(a: _StringDTypeSupportsArray, width: i_co, fillchar: _StringDTypeSupportsArray = ...) -> _StringDTypeArray: ... +@overload +def ljust(a: T_co, width: i_co, fillchar: T_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def lower(a: U_co) -> NDArray[str_]: ... +@overload +def lower(a: S_co) -> NDArray[bytes_]: ... +@overload +def lower(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def lower(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def lstrip(a: U_co, chars: None | U_co = ...) -> NDArray[str_]: ... +@overload +def lstrip(a: S_co, chars: None | S_co = ...) -> NDArray[bytes_]: ... +@overload +def lstrip(a: _StringDTypeSupportsArray, chars: None | _StringDTypeSupportsArray = ...) -> _StringDTypeArray: ... +@overload +def lstrip(a: T_co, chars: None | T_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def partition(a: U_co, sep: U_co) -> NDArray[str_]: ... +@overload +def partition(a: S_co, sep: S_co) -> NDArray[bytes_]: ... +@overload +def partition(a: _StringDTypeSupportsArray, sep: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def partition(a: T_co, sep: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def replace( + a: U_co, + old: U_co, + new: U_co, + count: None | i_co = ..., +) -> NDArray[str_]: ... +@overload +def replace( + a: S_co, + old: S_co, + new: S_co, + count: None | i_co = ..., +) -> NDArray[bytes_]: ... +@overload +def replace( + a: _StringDTypeSupportsArray, + old: _StringDTypeSupportsArray, + new: _StringDTypeSupportsArray, + count: i_co = ..., +) -> _StringDTypeArray: ... +@overload +def replace( + a: T_co, + old: T_co, + new: T_co, + count: i_co = ..., +) -> _StringDTypeOrUnicodeArray: ... + +@overload +def rjust( + a: U_co, + width: i_co, + fillchar: U_co = ..., +) -> NDArray[str_]: ... +@overload +def rjust( + a: S_co, + width: i_co, + fillchar: S_co = ..., +) -> NDArray[bytes_]: ... +@overload +def rjust( + a: _StringDTypeSupportsArray, + width: i_co, + fillchar: _StringDTypeSupportsArray = ..., +) -> _StringDTypeArray: ... +@overload +def rjust( + a: T_co, + width: i_co, + fillchar: T_co = ..., +) -> _StringDTypeOrUnicodeArray: ... + +@overload +def rpartition(a: U_co, sep: U_co) -> NDArray[str_]: ... +@overload +def rpartition(a: S_co, sep: S_co) -> NDArray[bytes_]: ... +@overload +def rpartition(a: _StringDTypeSupportsArray, sep: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def rpartition(a: T_co, sep: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def rsplit( + a: U_co, + sep: None | U_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def rsplit( + a: S_co, + sep: None | S_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def rsplit( + a: _StringDTypeSupportsArray, + sep: None | _StringDTypeSupportsArray = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def rsplit( + a: T_co, + sep: None | T_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... + +@overload +def rstrip(a: U_co, chars: None | U_co = ...) -> NDArray[str_]: ... +@overload +def rstrip(a: S_co, chars: None | S_co = ...) -> NDArray[bytes_]: ... +@overload +def rstrip(a: _StringDTypeSupportsArray, chars: None | _StringDTypeSupportsArray = ...) -> _StringDTypeArray: ... +@overload +def rstrip(a: T_co, chars: None | T_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def split( + a: U_co, + sep: None | U_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def split( + a: S_co, + sep: None | S_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def split( + a: _StringDTypeSupportsArray, + sep: None | _StringDTypeSupportsArray = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... +@overload +def split( + a: T_co, + sep: None | T_co = ..., + maxsplit: None | i_co = ..., +) -> NDArray[object_]: ... + +def splitlines(a: UST_co, keepends: None | b_co = ...) -> NDArray[np.object_]: ... + +@overload +def strip(a: U_co, chars: None | U_co = ...) -> NDArray[str_]: ... +@overload +def strip(a: S_co, chars: None | S_co = ...) -> NDArray[bytes_]: ... +@overload +def strip(a: _StringDTypeSupportsArray, chars: None | _StringDTypeSupportsArray = ...) -> _StringDTypeArray: ... +@overload +def strip(a: T_co, chars: None | T_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def swapcase(a: U_co) -> NDArray[str_]: ... +@overload +def swapcase(a: S_co) -> NDArray[bytes_]: ... +@overload +def swapcase(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def swapcase(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def title(a: U_co) -> NDArray[str_]: ... +@overload +def title(a: S_co) -> NDArray[bytes_]: ... +@overload +def title(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def title(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def translate( + a: U_co, + table: str, + deletechars: None | str = ..., +) -> NDArray[str_]: ... +@overload +def translate( + a: S_co, + table: str, + deletechars: None | str = ..., +) -> NDArray[bytes_]: ... +@overload +def translate( + a: _StringDTypeSupportsArray, + table: str, + deletechars: None | str = ..., +) -> _StringDTypeArray: ... +@overload +def translate( + a: T_co, + table: str, + deletechars: None | str = ..., +) -> _StringDTypeOrUnicodeArray: ... + +@overload +def upper(a: U_co) -> NDArray[str_]: ... +@overload +def upper(a: S_co) -> NDArray[bytes_]: ... +@overload +def upper(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def upper(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def zfill(a: U_co, width: i_co) -> NDArray[str_]: ... +@overload +def zfill(a: S_co, width: i_co) -> NDArray[bytes_]: ... +@overload +def zfill(a: _StringDTypeSupportsArray, width: i_co) -> _StringDTypeArray: ... +@overload +def zfill(a: T_co, width: i_co) -> _StringDTypeOrUnicodeArray: ... + +# String information +@overload +def count( + a: U_co, + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def count( + a: S_co, + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def count( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def endswith( + a: U_co, + suffix: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[np.bool]: ... +@overload +def endswith( + a: S_co, + suffix: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[np.bool]: ... +@overload +def endswith( + a: T_co, + suffix: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... + +@overload +def find( + a: U_co, + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def find( + a: S_co, + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def find( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def index( + a: U_co, + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def index( + a: S_co, + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def index( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +def isalpha(a: UST_co) -> NDArray[np.bool]: ... +def isalnum(a: UST_co) -> NDArray[np.bool]: ... +def isdecimal(a: U_co | T_co) -> NDArray[np.bool]: ... +def isdigit(a: UST_co) -> NDArray[np.bool]: ... +def islower(a: UST_co) -> NDArray[np.bool]: ... +def isnumeric(a: U_co | T_co) -> NDArray[np.bool]: ... +def isspace(a: UST_co) -> NDArray[np.bool]: ... +def istitle(a: UST_co) -> NDArray[np.bool]: ... +def isupper(a: UST_co) -> NDArray[np.bool]: ... + +@overload +def rfind( + a: U_co, + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def rfind( + a: S_co, + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def rfind( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def rindex( + a: U_co, + sub: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def rindex( + a: S_co, + sub: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[int_]: ... +@overload +def rindex( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def startswith( + a: U_co, + prefix: U_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[np.bool]: ... +@overload +def startswith( + a: S_co, + prefix: S_co, + start: i_co = ..., + end: None | i_co = ..., +) -> NDArray[np.bool]: ... +@overload +def startswith( + a: T_co, + suffix: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... + +def str_len(A: UST_co) -> NDArray[int_]: ... + +# Overload 1 and 2: str- or bytes-based array-likes +# overload 3: arbitrary object with unicode=False (-> bytes_) +# overload 4: arbitrary object with unicode=True (-> str_) +@overload +def array( + obj: U_co, + itemsize: None | int = ..., + copy: bool = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[str_]: ... +@overload +def array( + obj: S_co, + itemsize: None | int = ..., + copy: bool = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[bytes_]: ... +@overload +def array( + obj: object, + itemsize: None | int = ..., + copy: bool = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[bytes_]: ... +@overload +def array( + obj: object, + itemsize: None | int = ..., + copy: bool = ..., + unicode: L[True] = ..., + order: _OrderKACF = ..., +) -> _CharArray[str_]: ... + +@overload +def asarray( + obj: U_co, + itemsize: None | int = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[str_]: ... +@overload +def asarray( + obj: S_co, + itemsize: None | int = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[bytes_]: ... +@overload +def asarray( + obj: object, + itemsize: None | int = ..., + unicode: L[False] = ..., + order: _OrderKACF = ..., +) -> _CharArray[bytes_]: ... +@overload +def asarray( + obj: object, + itemsize: None | int = ..., + unicode: L[True] = ..., + order: _OrderKACF = ..., +) -> _CharArray[str_]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.py new file mode 100644 index 0000000000000000000000000000000000000000..f74dd46e17825a75d6646a675ce980a1fb80025c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.py @@ -0,0 +1,1499 @@ +""" +Implementation of optimized einsum. + +""" +import itertools +import operator + +from numpy._core.multiarray import c_einsum +from numpy._core.numeric import asanyarray, tensordot +from numpy._core.overrides import array_function_dispatch + +__all__ = ['einsum', 'einsum_path'] + +# importing string for string.ascii_letters would be too slow +# the first import before caching has been measured to take 800 µs (#23777) +einsum_symbols = 'abcdefghijklmnopqrstuvwxyzABCDEFGHIJKLMNOPQRSTUVWXYZ' +einsum_symbols_set = set(einsum_symbols) + + +def _flop_count(idx_contraction, inner, num_terms, size_dictionary): + """ + Computes the number of FLOPS in the contraction. + + Parameters + ---------- + idx_contraction : iterable + The indices involved in the contraction + inner : bool + Does this contraction require an inner product? + num_terms : int + The number of terms in a contraction + size_dictionary : dict + The size of each of the indices in idx_contraction + + Returns + ------- + flop_count : int + The total number of FLOPS required for the contraction. + + Examples + -------- + + >>> _flop_count('abc', False, 1, {'a': 2, 'b':3, 'c':5}) + 30 + + >>> _flop_count('abc', True, 2, {'a': 2, 'b':3, 'c':5}) + 60 + + """ + + overall_size = _compute_size_by_dict(idx_contraction, size_dictionary) + op_factor = max(1, num_terms - 1) + if inner: + op_factor += 1 + + return overall_size * op_factor + +def _compute_size_by_dict(indices, idx_dict): + """ + Computes the product of the elements in indices based on the dictionary + idx_dict. + + Parameters + ---------- + indices : iterable + Indices to base the product on. + idx_dict : dictionary + Dictionary of index sizes + + Returns + ------- + ret : int + The resulting product. + + Examples + -------- + >>> _compute_size_by_dict('abbc', {'a': 2, 'b':3, 'c':5}) + 90 + + """ + ret = 1 + for i in indices: + ret *= idx_dict[i] + return ret + + +def _find_contraction(positions, input_sets, output_set): + """ + Finds the contraction for a given set of input and output sets. + + Parameters + ---------- + positions : iterable + Integer positions of terms used in the contraction. + input_sets : list + List of sets that represent the lhs side of the einsum subscript + output_set : set + Set that represents the rhs side of the overall einsum subscript + + Returns + ------- + new_result : set + The indices of the resulting contraction + remaining : list + List of sets that have not been contracted, the new set is appended to + the end of this list + idx_removed : set + Indices removed from the entire contraction + idx_contraction : set + The indices used in the current contraction + + Examples + -------- + + # A simple dot product test case + >>> pos = (0, 1) + >>> isets = [set('ab'), set('bc')] + >>> oset = set('ac') + >>> _find_contraction(pos, isets, oset) + ({'a', 'c'}, [{'a', 'c'}], {'b'}, {'a', 'b', 'c'}) + + # A more complex case with additional terms in the contraction + >>> pos = (0, 2) + >>> isets = [set('abd'), set('ac'), set('bdc')] + >>> oset = set('ac') + >>> _find_contraction(pos, isets, oset) + ({'a', 'c'}, [{'a', 'c'}, {'a', 'c'}], {'b', 'd'}, {'a', 'b', 'c', 'd'}) + """ + + idx_contract = set() + idx_remain = output_set.copy() + remaining = [] + for ind, value in enumerate(input_sets): + if ind in positions: + idx_contract |= value + else: + remaining.append(value) + idx_remain |= value + + new_result = idx_remain & idx_contract + idx_removed = (idx_contract - new_result) + remaining.append(new_result) + + return (new_result, remaining, idx_removed, idx_contract) + + +def _optimal_path(input_sets, output_set, idx_dict, memory_limit): + """ + Computes all possible pair contractions, sieves the results based + on ``memory_limit`` and returns the lowest cost path. This algorithm + scales factorial with respect to the elements in the list ``input_sets``. + + Parameters + ---------- + input_sets : list + List of sets that represent the lhs side of the einsum subscript + output_set : set + Set that represents the rhs side of the overall einsum subscript + idx_dict : dictionary + Dictionary of index sizes + memory_limit : int + The maximum number of elements in a temporary array + + Returns + ------- + path : list + The optimal contraction order within the memory limit constraint. + + Examples + -------- + >>> isets = [set('abd'), set('ac'), set('bdc')] + >>> oset = set() + >>> idx_sizes = {'a': 1, 'b':2, 'c':3, 'd':4} + >>> _optimal_path(isets, oset, idx_sizes, 5000) + [(0, 2), (0, 1)] + """ + + full_results = [(0, [], input_sets)] + for iteration in range(len(input_sets) - 1): + iter_results = [] + + # Compute all unique pairs + for curr in full_results: + cost, positions, remaining = curr + for con in itertools.combinations( + range(len(input_sets) - iteration), 2 + ): + + # Find the contraction + cont = _find_contraction(con, remaining, output_set) + new_result, new_input_sets, idx_removed, idx_contract = cont + + # Sieve the results based on memory_limit + new_size = _compute_size_by_dict(new_result, idx_dict) + if new_size > memory_limit: + continue + + # Build (total_cost, positions, indices_remaining) + total_cost = cost + _flop_count( + idx_contract, idx_removed, len(con), idx_dict + ) + new_pos = positions + [con] + iter_results.append((total_cost, new_pos, new_input_sets)) + + # Update combinatorial list, if we did not find anything return best + # path + remaining contractions + if iter_results: + full_results = iter_results + else: + path = min(full_results, key=lambda x: x[0])[1] + path += [tuple(range(len(input_sets) - iteration))] + return path + + # If we have not found anything return single einsum contraction + if len(full_results) == 0: + return [tuple(range(len(input_sets)))] + + path = min(full_results, key=lambda x: x[0])[1] + return path + +def _parse_possible_contraction( + positions, input_sets, output_set, idx_dict, + memory_limit, path_cost, naive_cost + ): + """Compute the cost (removed size + flops) and resultant indices for + performing the contraction specified by ``positions``. + + Parameters + ---------- + positions : tuple of int + The locations of the proposed tensors to contract. + input_sets : list of sets + The indices found on each tensors. + output_set : set + The output indices of the expression. + idx_dict : dict + Mapping of each index to its size. + memory_limit : int + The total allowed size for an intermediary tensor. + path_cost : int + The contraction cost so far. + naive_cost : int + The cost of the unoptimized expression. + + Returns + ------- + cost : (int, int) + A tuple containing the size of any indices removed, and the flop cost. + positions : tuple of int + The locations of the proposed tensors to contract. + new_input_sets : list of sets + The resulting new list of indices if this proposed contraction + is performed. + + """ + + # Find the contraction + contract = _find_contraction(positions, input_sets, output_set) + idx_result, new_input_sets, idx_removed, idx_contract = contract + + # Sieve the results based on memory_limit + new_size = _compute_size_by_dict(idx_result, idx_dict) + if new_size > memory_limit: + return None + + # Build sort tuple + old_sizes = ( + _compute_size_by_dict(input_sets[p], idx_dict) for p in positions + ) + removed_size = sum(old_sizes) - new_size + + # NB: removed_size used to be just the size of any removed indices i.e.: + # helpers.compute_size_by_dict(idx_removed, idx_dict) + cost = _flop_count(idx_contract, idx_removed, len(positions), idx_dict) + sort = (-removed_size, cost) + + # Sieve based on total cost as well + if (path_cost + cost) > naive_cost: + return None + + # Add contraction to possible choices + return [sort, positions, new_input_sets] + + +def _update_other_results(results, best): + """Update the positions and provisional input_sets of ``results`` + based on performing the contraction result ``best``. Remove any + involving the tensors contracted. + + Parameters + ---------- + results : list + List of contraction results produced by + ``_parse_possible_contraction``. + best : list + The best contraction of ``results`` i.e. the one that + will be performed. + + Returns + ------- + mod_results : list + The list of modified results, updated with outcome of + ``best`` contraction. + """ + + best_con = best[1] + bx, by = best_con + mod_results = [] + + for cost, (x, y), con_sets in results: + + # Ignore results involving tensors just contracted + if x in best_con or y in best_con: + continue + + # Update the input_sets + del con_sets[by - int(by > x) - int(by > y)] + del con_sets[bx - int(bx > x) - int(bx > y)] + con_sets.insert(-1, best[2][-1]) + + # Update the position indices + mod_con = x - int(x > bx) - int(x > by), y - int(y > bx) - int(y > by) + mod_results.append((cost, mod_con, con_sets)) + + return mod_results + +def _greedy_path(input_sets, output_set, idx_dict, memory_limit): + """ + Finds the path by contracting the best pair until the input list is + exhausted. The best pair is found by minimizing the tuple + ``(-prod(indices_removed), cost)``. What this amounts to is prioritizing + matrix multiplication or inner product operations, then Hadamard like + operations, and finally outer operations. Outer products are limited by + ``memory_limit``. This algorithm scales cubically with respect to the + number of elements in the list ``input_sets``. + + Parameters + ---------- + input_sets : list + List of sets that represent the lhs side of the einsum subscript + output_set : set + Set that represents the rhs side of the overall einsum subscript + idx_dict : dictionary + Dictionary of index sizes + memory_limit : int + The maximum number of elements in a temporary array + + Returns + ------- + path : list + The greedy contraction order within the memory limit constraint. + + Examples + -------- + >>> isets = [set('abd'), set('ac'), set('bdc')] + >>> oset = set() + >>> idx_sizes = {'a': 1, 'b':2, 'c':3, 'd':4} + >>> _greedy_path(isets, oset, idx_sizes, 5000) + [(0, 2), (0, 1)] + """ + + # Handle trivial cases that leaked through + if len(input_sets) == 1: + return [(0,)] + elif len(input_sets) == 2: + return [(0, 1)] + + # Build up a naive cost + contract = _find_contraction( + range(len(input_sets)), input_sets, output_set + ) + idx_result, new_input_sets, idx_removed, idx_contract = contract + naive_cost = _flop_count( + idx_contract, idx_removed, len(input_sets), idx_dict + ) + + # Initially iterate over all pairs + comb_iter = itertools.combinations(range(len(input_sets)), 2) + known_contractions = [] + + path_cost = 0 + path = [] + + for iteration in range(len(input_sets) - 1): + + # Iterate over all pairs on the first step, only previously + # found pairs on subsequent steps + for positions in comb_iter: + + # Always initially ignore outer products + if input_sets[positions[0]].isdisjoint(input_sets[positions[1]]): + continue + + result = _parse_possible_contraction( + positions, input_sets, output_set, idx_dict, + memory_limit, path_cost, naive_cost + ) + if result is not None: + known_contractions.append(result) + + # If we do not have a inner contraction, rescan pairs + # including outer products + if len(known_contractions) == 0: + + # Then check the outer products + for positions in itertools.combinations( + range(len(input_sets)), 2 + ): + result = _parse_possible_contraction( + positions, input_sets, output_set, idx_dict, + memory_limit, path_cost, naive_cost + ) + if result is not None: + known_contractions.append(result) + + # If we still did not find any remaining contractions, + # default back to einsum like behavior + if len(known_contractions) == 0: + path.append(tuple(range(len(input_sets)))) + break + + # Sort based on first index + best = min(known_contractions, key=lambda x: x[0]) + + # Now propagate as many unused contractions as possible + # to the next iteration + known_contractions = _update_other_results(known_contractions, best) + + # Next iteration only compute contractions with the new tensor + # All other contractions have been accounted for + input_sets = best[2] + new_tensor_pos = len(input_sets) - 1 + comb_iter = ((i, new_tensor_pos) for i in range(new_tensor_pos)) + + # Update path and total cost + path.append(best[1]) + path_cost += best[0][1] + + return path + + +def _can_dot(inputs, result, idx_removed): + """ + Checks if we can use BLAS (np.tensordot) call and its beneficial to do so. + + Parameters + ---------- + inputs : list of str + Specifies the subscripts for summation. + result : str + Resulting summation. + idx_removed : set + Indices that are removed in the summation + + + Returns + ------- + type : bool + Returns true if BLAS should and can be used, else False + + Notes + ----- + If the operations is BLAS level 1 or 2 and is not already aligned + we default back to einsum as the memory movement to copy is more + costly than the operation itself. + + + Examples + -------- + + # Standard GEMM operation + >>> _can_dot(['ij', 'jk'], 'ik', set('j')) + True + + # Can use the standard BLAS, but requires odd data movement + >>> _can_dot(['ijj', 'jk'], 'ik', set('j')) + False + + # DDOT where the memory is not aligned + >>> _can_dot(['ijk', 'ikj'], '', set('ijk')) + False + + """ + + # All `dot` calls remove indices + if len(idx_removed) == 0: + return False + + # BLAS can only handle two operands + if len(inputs) != 2: + return False + + input_left, input_right = inputs + + for c in set(input_left + input_right): + # can't deal with repeated indices on same input or more than 2 total + nl, nr = input_left.count(c), input_right.count(c) + if (nl > 1) or (nr > 1) or (nl + nr > 2): + return False + + # can't do implicit summation or dimension collapse e.g. + # "ab,bc->c" (implicitly sum over 'a') + # "ab,ca->ca" (take diagonal of 'a') + if nl + nr - 1 == int(c in result): + return False + + # Build a few temporaries + set_left = set(input_left) + set_right = set(input_right) + keep_left = set_left - idx_removed + keep_right = set_right - idx_removed + rs = len(idx_removed) + + # At this point we are a DOT, GEMV, or GEMM operation + + # Handle inner products + + # DDOT with aligned data + if input_left == input_right: + return True + + # DDOT without aligned data (better to use einsum) + if set_left == set_right: + return False + + # Handle the 4 possible (aligned) GEMV or GEMM cases + + # GEMM or GEMV no transpose + if input_left[-rs:] == input_right[:rs]: + return True + + # GEMM or GEMV transpose both + if input_left[:rs] == input_right[-rs:]: + return True + + # GEMM or GEMV transpose right + if input_left[-rs:] == input_right[-rs:]: + return True + + # GEMM or GEMV transpose left + if input_left[:rs] == input_right[:rs]: + return True + + # Einsum is faster than GEMV if we have to copy data + if not keep_left or not keep_right: + return False + + # We are a matrix-matrix product, but we need to copy data + return True + + +def _parse_einsum_input(operands): + """ + A reproduction of einsum c side einsum parsing in python. + + Returns + ------- + input_strings : str + Parsed input strings + output_string : str + Parsed output string + operands : list of array_like + The operands to use in the numpy contraction + + Examples + -------- + The operand list is simplified to reduce printing: + + >>> np.random.seed(123) + >>> a = np.random.rand(4, 4) + >>> b = np.random.rand(4, 4, 4) + >>> _parse_einsum_input(('...a,...a->...', a, b)) + ('za,xza', 'xz', [a, b]) # may vary + + >>> _parse_einsum_input((a, [Ellipsis, 0], b, [Ellipsis, 0])) + ('za,xza', 'xz', [a, b]) # may vary + """ + + if len(operands) == 0: + raise ValueError("No input operands") + + if isinstance(operands[0], str): + subscripts = operands[0].replace(" ", "") + operands = [asanyarray(v) for v in operands[1:]] + + # Ensure all characters are valid + for s in subscripts: + if s in '.,->': + continue + if s not in einsum_symbols: + raise ValueError("Character %s is not a valid symbol." % s) + + else: + tmp_operands = list(operands) + operand_list = [] + subscript_list = [] + for p in range(len(operands) // 2): + operand_list.append(tmp_operands.pop(0)) + subscript_list.append(tmp_operands.pop(0)) + + output_list = tmp_operands[-1] if len(tmp_operands) else None + operands = [asanyarray(v) for v in operand_list] + subscripts = "" + last = len(subscript_list) - 1 + for num, sub in enumerate(subscript_list): + for s in sub: + if s is Ellipsis: + subscripts += "..." + else: + try: + s = operator.index(s) + except TypeError as e: + raise TypeError( + "For this input type lists must contain " + "either int or Ellipsis" + ) from e + subscripts += einsum_symbols[s] + if num != last: + subscripts += "," + + if output_list is not None: + subscripts += "->" + for s in output_list: + if s is Ellipsis: + subscripts += "..." + else: + try: + s = operator.index(s) + except TypeError as e: + raise TypeError( + "For this input type lists must contain " + "either int or Ellipsis" + ) from e + subscripts += einsum_symbols[s] + # Check for proper "->" + if ("-" in subscripts) or (">" in subscripts): + invalid = (subscripts.count("-") > 1) or (subscripts.count(">") > 1) + if invalid or (subscripts.count("->") != 1): + raise ValueError("Subscripts can only contain one '->'.") + + # Parse ellipses + if "." in subscripts: + used = subscripts.replace(".", "").replace(",", "").replace("->", "") + unused = list(einsum_symbols_set - set(used)) + ellipse_inds = "".join(unused) + longest = 0 + + if "->" in subscripts: + input_tmp, output_sub = subscripts.split("->") + split_subscripts = input_tmp.split(",") + out_sub = True + else: + split_subscripts = subscripts.split(',') + out_sub = False + + for num, sub in enumerate(split_subscripts): + if "." in sub: + if (sub.count(".") != 3) or (sub.count("...") != 1): + raise ValueError("Invalid Ellipses.") + + # Take into account numerical values + if operands[num].shape == (): + ellipse_count = 0 + else: + ellipse_count = max(operands[num].ndim, 1) + ellipse_count -= (len(sub) - 3) + + if ellipse_count > longest: + longest = ellipse_count + + if ellipse_count < 0: + raise ValueError("Ellipses lengths do not match.") + elif ellipse_count == 0: + split_subscripts[num] = sub.replace('...', '') + else: + rep_inds = ellipse_inds[-ellipse_count:] + split_subscripts[num] = sub.replace('...', rep_inds) + + subscripts = ",".join(split_subscripts) + if longest == 0: + out_ellipse = "" + else: + out_ellipse = ellipse_inds[-longest:] + + if out_sub: + subscripts += "->" + output_sub.replace("...", out_ellipse) + else: + # Special care for outputless ellipses + output_subscript = "" + tmp_subscripts = subscripts.replace(",", "") + for s in sorted(set(tmp_subscripts)): + if s not in (einsum_symbols): + raise ValueError("Character %s is not a valid symbol." % s) + if tmp_subscripts.count(s) == 1: + output_subscript += s + normal_inds = ''.join(sorted(set(output_subscript) - + set(out_ellipse))) + + subscripts += "->" + out_ellipse + normal_inds + + # Build output string if does not exist + if "->" in subscripts: + input_subscripts, output_subscript = subscripts.split("->") + else: + input_subscripts = subscripts + # Build output subscripts + tmp_subscripts = subscripts.replace(",", "") + output_subscript = "" + for s in sorted(set(tmp_subscripts)): + if s not in einsum_symbols: + raise ValueError("Character %s is not a valid symbol." % s) + if tmp_subscripts.count(s) == 1: + output_subscript += s + + # Make sure output subscripts are in the input + for char in output_subscript: + if output_subscript.count(char) != 1: + raise ValueError("Output character %s appeared more than once in " + "the output." % char) + if char not in input_subscripts: + raise ValueError("Output character %s did not appear in the input" + % char) + + # Make sure number operands is equivalent to the number of terms + if len(input_subscripts.split(',')) != len(operands): + raise ValueError("Number of einsum subscripts must be equal to the " + "number of operands.") + + return (input_subscripts, output_subscript, operands) + + +def _einsum_path_dispatcher(*operands, optimize=None, einsum_call=None): + # NOTE: technically, we should only dispatch on array-like arguments, not + # subscripts (given as strings). But separating operands into + # arrays/subscripts is a little tricky/slow (given einsum's two supported + # signatures), so as a practical shortcut we dispatch on everything. + # Strings will be ignored for dispatching since they don't define + # __array_function__. + return operands + + +@array_function_dispatch(_einsum_path_dispatcher, module='numpy') +def einsum_path(*operands, optimize='greedy', einsum_call=False): + """ + einsum_path(subscripts, *operands, optimize='greedy') + + Evaluates the lowest cost contraction order for an einsum expression by + considering the creation of intermediate arrays. + + Parameters + ---------- + subscripts : str + Specifies the subscripts for summation. + *operands : list of array_like + These are the arrays for the operation. + optimize : {bool, list, tuple, 'greedy', 'optimal'} + Choose the type of path. If a tuple is provided, the second argument is + assumed to be the maximum intermediate size created. If only a single + argument is provided the largest input or output array size is used + as a maximum intermediate size. + + * if a list is given that starts with ``einsum_path``, uses this as the + contraction path + * if False no optimization is taken + * if True defaults to the 'greedy' algorithm + * 'optimal' An algorithm that combinatorially explores all possible + ways of contracting the listed tensors and chooses the least costly + path. Scales exponentially with the number of terms in the + contraction. + * 'greedy' An algorithm that chooses the best pair contraction + at each step. Effectively, this algorithm searches the largest inner, + Hadamard, and then outer products at each step. Scales cubically with + the number of terms in the contraction. Equivalent to the 'optimal' + path for most contractions. + + Default is 'greedy'. + + Returns + ------- + path : list of tuples + A list representation of the einsum path. + string_repr : str + A printable representation of the einsum path. + + Notes + ----- + The resulting path indicates which terms of the input contraction should be + contracted first, the result of this contraction is then appended to the + end of the contraction list. This list can then be iterated over until all + intermediate contractions are complete. + + See Also + -------- + einsum, linalg.multi_dot + + Examples + -------- + + We can begin with a chain dot example. In this case, it is optimal to + contract the ``b`` and ``c`` tensors first as represented by the first + element of the path ``(1, 2)``. The resulting tensor is added to the end + of the contraction and the remaining contraction ``(0, 1)`` is then + completed. + + >>> np.random.seed(123) + >>> a = np.random.rand(2, 2) + >>> b = np.random.rand(2, 5) + >>> c = np.random.rand(5, 2) + >>> path_info = np.einsum_path('ij,jk,kl->il', a, b, c, optimize='greedy') + >>> print(path_info[0]) + ['einsum_path', (1, 2), (0, 1)] + >>> print(path_info[1]) + Complete contraction: ij,jk,kl->il # may vary + Naive scaling: 4 + Optimized scaling: 3 + Naive FLOP count: 1.600e+02 + Optimized FLOP count: 5.600e+01 + Theoretical speedup: 2.857 + Largest intermediate: 4.000e+00 elements + ------------------------------------------------------------------------- + scaling current remaining + ------------------------------------------------------------------------- + 3 kl,jk->jl ij,jl->il + 3 jl,ij->il il->il + + + A more complex index transformation example. + + >>> I = np.random.rand(10, 10, 10, 10) + >>> C = np.random.rand(10, 10) + >>> path_info = np.einsum_path('ea,fb,abcd,gc,hd->efgh', C, C, I, C, C, + ... optimize='greedy') + + >>> print(path_info[0]) + ['einsum_path', (0, 2), (0, 3), (0, 2), (0, 1)] + >>> print(path_info[1]) + Complete contraction: ea,fb,abcd,gc,hd->efgh # may vary + Naive scaling: 8 + Optimized scaling: 5 + Naive FLOP count: 8.000e+08 + Optimized FLOP count: 8.000e+05 + Theoretical speedup: 1000.000 + Largest intermediate: 1.000e+04 elements + -------------------------------------------------------------------------- + scaling current remaining + -------------------------------------------------------------------------- + 5 abcd,ea->bcde fb,gc,hd,bcde->efgh + 5 bcde,fb->cdef gc,hd,cdef->efgh + 5 cdef,gc->defg hd,defg->efgh + 5 defg,hd->efgh efgh->efgh + """ + + # Figure out what the path really is + path_type = optimize + if path_type is True: + path_type = 'greedy' + if path_type is None: + path_type = False + + explicit_einsum_path = False + memory_limit = None + + # No optimization or a named path algorithm + if (path_type is False) or isinstance(path_type, str): + pass + + # Given an explicit path + elif len(path_type) and (path_type[0] == 'einsum_path'): + explicit_einsum_path = True + + # Path tuple with memory limit + elif ((len(path_type) == 2) and isinstance(path_type[0], str) and + isinstance(path_type[1], (int, float))): + memory_limit = int(path_type[1]) + path_type = path_type[0] + + else: + raise TypeError("Did not understand the path: %s" % str(path_type)) + + # Hidden option, only einsum should call this + einsum_call_arg = einsum_call + + # Python side parsing + input_subscripts, output_subscript, operands = ( + _parse_einsum_input(operands) + ) + + # Build a few useful list and sets + input_list = input_subscripts.split(',') + input_sets = [set(x) for x in input_list] + output_set = set(output_subscript) + indices = set(input_subscripts.replace(',', '')) + + # Get length of each unique dimension and ensure all dimensions are correct + dimension_dict = {} + broadcast_indices = [[] for x in range(len(input_list))] + for tnum, term in enumerate(input_list): + sh = operands[tnum].shape + if len(sh) != len(term): + raise ValueError("Einstein sum subscript %s does not contain the " + "correct number of indices for operand %d." + % (input_subscripts[tnum], tnum)) + for cnum, char in enumerate(term): + dim = sh[cnum] + + # Build out broadcast indices + if dim == 1: + broadcast_indices[tnum].append(char) + + if char in dimension_dict.keys(): + # For broadcasting cases we always want the largest dim size + if dimension_dict[char] == 1: + dimension_dict[char] = dim + elif dim not in (1, dimension_dict[char]): + raise ValueError("Size of label '%s' for operand %d (%d) " + "does not match previous terms (%d)." + % (char, tnum, dimension_dict[char], dim)) + else: + dimension_dict[char] = dim + + # Convert broadcast inds to sets + broadcast_indices = [set(x) for x in broadcast_indices] + + # Compute size of each input array plus the output array + size_list = [_compute_size_by_dict(term, dimension_dict) + for term in input_list + [output_subscript]] + max_size = max(size_list) + + if memory_limit is None: + memory_arg = max_size + else: + memory_arg = memory_limit + + # Compute naive cost + # This isn't quite right, need to look into exactly how einsum does this + inner_product = (sum(len(x) for x in input_sets) - len(indices)) > 0 + naive_cost = _flop_count( + indices, inner_product, len(input_list), dimension_dict + ) + + # Compute the path + if explicit_einsum_path: + path = path_type[1:] + elif ( + (path_type is False) + or (len(input_list) in [1, 2]) + or (indices == output_set) + ): + # Nothing to be optimized, leave it to einsum + path = [tuple(range(len(input_list)))] + elif path_type == "greedy": + path = _greedy_path( + input_sets, output_set, dimension_dict, memory_arg + ) + elif path_type == "optimal": + path = _optimal_path( + input_sets, output_set, dimension_dict, memory_arg + ) + else: + raise KeyError("Path name %s not found", path_type) + + cost_list, scale_list, size_list, contraction_list = [], [], [], [] + + # Build contraction tuple (positions, gemm, einsum_str, remaining) + for cnum, contract_inds in enumerate(path): + # Make sure we remove inds from right to left + contract_inds = tuple(sorted(contract_inds, reverse=True)) + + contract = _find_contraction(contract_inds, input_sets, output_set) + out_inds, input_sets, idx_removed, idx_contract = contract + + cost = _flop_count( + idx_contract, idx_removed, len(contract_inds), dimension_dict + ) + cost_list.append(cost) + scale_list.append(len(idx_contract)) + size_list.append(_compute_size_by_dict(out_inds, dimension_dict)) + + bcast = set() + tmp_inputs = [] + for x in contract_inds: + tmp_inputs.append(input_list.pop(x)) + bcast |= broadcast_indices.pop(x) + + new_bcast_inds = bcast - idx_removed + + # If we're broadcasting, nix blas + if not len(idx_removed & bcast): + do_blas = _can_dot(tmp_inputs, out_inds, idx_removed) + else: + do_blas = False + + # Last contraction + if (cnum - len(path)) == -1: + idx_result = output_subscript + else: + sort_result = [(dimension_dict[ind], ind) for ind in out_inds] + idx_result = "".join([x[1] for x in sorted(sort_result)]) + + input_list.append(idx_result) + broadcast_indices.append(new_bcast_inds) + einsum_str = ",".join(tmp_inputs) + "->" + idx_result + + contraction = ( + contract_inds, idx_removed, einsum_str, input_list[:], do_blas + ) + contraction_list.append(contraction) + + opt_cost = sum(cost_list) + 1 + + if len(input_list) != 1: + # Explicit "einsum_path" is usually trusted, but we detect this kind of + # mistake in order to prevent from returning an intermediate value. + raise RuntimeError( + "Invalid einsum_path is specified: {} more operands has to be " + "contracted.".format(len(input_list) - 1)) + + if einsum_call_arg: + return (operands, contraction_list) + + # Return the path along with a nice string representation + overall_contraction = input_subscripts + "->" + output_subscript + header = ("scaling", "current", "remaining") + + speedup = naive_cost / opt_cost + max_i = max(size_list) + + path_print = " Complete contraction: %s\n" % overall_contraction + path_print += " Naive scaling: %d\n" % len(indices) + path_print += " Optimized scaling: %d\n" % max(scale_list) + path_print += " Naive FLOP count: %.3e\n" % naive_cost + path_print += " Optimized FLOP count: %.3e\n" % opt_cost + path_print += " Theoretical speedup: %3.3f\n" % speedup + path_print += " Largest intermediate: %.3e elements\n" % max_i + path_print += "-" * 74 + "\n" + path_print += "%6s %24s %40s\n" % header + path_print += "-" * 74 + + for n, contraction in enumerate(contraction_list): + inds, idx_rm, einsum_str, remaining, blas = contraction + remaining_str = ",".join(remaining) + "->" + output_subscript + path_run = (scale_list[n], einsum_str, remaining_str) + path_print += "\n%4d %24s %40s" % path_run + + path = ['einsum_path'] + path + return (path, path_print) + + +def _einsum_dispatcher(*operands, out=None, optimize=None, **kwargs): + # Arguably we dispatch on more arguments than we really should; see note in + # _einsum_path_dispatcher for why. + yield from operands + yield out + + +# Rewrite einsum to handle different cases +@array_function_dispatch(_einsum_dispatcher, module='numpy') +def einsum(*operands, out=None, optimize=False, **kwargs): + """ + einsum(subscripts, *operands, out=None, dtype=None, order='K', + casting='safe', optimize=False) + + Evaluates the Einstein summation convention on the operands. + + Using the Einstein summation convention, many common multi-dimensional, + linear algebraic array operations can be represented in a simple fashion. + In *implicit* mode `einsum` computes these values. + + In *explicit* mode, `einsum` provides further flexibility to compute + other array operations that might not be considered classical Einstein + summation operations, by disabling, or forcing summation over specified + subscript labels. + + See the notes and examples for clarification. + + Parameters + ---------- + subscripts : str + Specifies the subscripts for summation as comma separated list of + subscript labels. An implicit (classical Einstein summation) + calculation is performed unless the explicit indicator '->' is + included as well as subscript labels of the precise output form. + operands : list of array_like + These are the arrays for the operation. + out : ndarray, optional + If provided, the calculation is done into this array. + dtype : {data-type, None}, optional + If provided, forces the calculation to use the data type specified. + Note that you may have to also give a more liberal `casting` + parameter to allow the conversions. Default is None. + order : {'C', 'F', 'A', 'K'}, optional + Controls the memory layout of the output. 'C' means it should + be C contiguous. 'F' means it should be Fortran contiguous, + 'A' means it should be 'F' if the inputs are all 'F', 'C' otherwise. + 'K' means it should be as close to the layout as the inputs as + is possible, including arbitrarily permuted axes. + Default is 'K'. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Setting this to + 'unsafe' is not recommended, as it can adversely affect accumulations. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + + Default is 'safe'. + optimize : {False, True, 'greedy', 'optimal'}, optional + Controls if intermediate optimization should occur. No optimization + will occur if False and True will default to the 'greedy' algorithm. + Also accepts an explicit contraction list from the ``np.einsum_path`` + function. See ``np.einsum_path`` for more details. Defaults to False. + + Returns + ------- + output : ndarray + The calculation based on the Einstein summation convention. + + See Also + -------- + einsum_path, dot, inner, outer, tensordot, linalg.multi_dot + einsum: + Similar verbose interface is provided by the + `einops `_ package to cover + additional operations: transpose, reshape/flatten, repeat/tile, + squeeze/unsqueeze and reductions. + The `opt_einsum `_ + optimizes contraction order for einsum-like expressions + in backend-agnostic manner. + + Notes + ----- + The Einstein summation convention can be used to compute + many multi-dimensional, linear algebraic array operations. `einsum` + provides a succinct way of representing these. + + A non-exhaustive list of these operations, + which can be computed by `einsum`, is shown below along with examples: + + * Trace of an array, :py:func:`numpy.trace`. + * Return a diagonal, :py:func:`numpy.diag`. + * Array axis summations, :py:func:`numpy.sum`. + * Transpositions and permutations, :py:func:`numpy.transpose`. + * Matrix multiplication and dot product, :py:func:`numpy.matmul` + :py:func:`numpy.dot`. + * Vector inner and outer products, :py:func:`numpy.inner` + :py:func:`numpy.outer`. + * Broadcasting, element-wise and scalar multiplication, + :py:func:`numpy.multiply`. + * Tensor contractions, :py:func:`numpy.tensordot`. + * Chained array operations, in efficient calculation order, + :py:func:`numpy.einsum_path`. + + The subscripts string is a comma-separated list of subscript labels, + where each label refers to a dimension of the corresponding operand. + Whenever a label is repeated it is summed, so ``np.einsum('i,i', a, b)`` + is equivalent to :py:func:`np.inner(a,b) `. If a label + appears only once, it is not summed, so ``np.einsum('i', a)`` + produces a view of ``a`` with no changes. A further example + ``np.einsum('ij,jk', a, b)`` describes traditional matrix multiplication + and is equivalent to :py:func:`np.matmul(a,b) `. + Repeated subscript labels in one operand take the diagonal. + For example, ``np.einsum('ii', a)`` is equivalent to + :py:func:`np.trace(a) `. + + In *implicit mode*, the chosen subscripts are important + since the axes of the output are reordered alphabetically. This + means that ``np.einsum('ij', a)`` doesn't affect a 2D array, while + ``np.einsum('ji', a)`` takes its transpose. Additionally, + ``np.einsum('ij,jk', a, b)`` returns a matrix multiplication, while, + ``np.einsum('ij,jh', a, b)`` returns the transpose of the + multiplication since subscript 'h' precedes subscript 'i'. + + In *explicit mode* the output can be directly controlled by + specifying output subscript labels. This requires the + identifier '->' as well as the list of output subscript labels. + This feature increases the flexibility of the function since + summing can be disabled or forced when required. The call + ``np.einsum('i->', a)`` is like :py:func:`np.sum(a) ` + if ``a`` is a 1-D array, and ``np.einsum('ii->i', a)`` + is like :py:func:`np.diag(a) ` if ``a`` is a square 2-D array. + The difference is that `einsum` does not allow broadcasting by default. + Additionally ``np.einsum('ij,jh->ih', a, b)`` directly specifies the + order of the output subscript labels and therefore returns matrix + multiplication, unlike the example above in implicit mode. + + To enable and control broadcasting, use an ellipsis. Default + NumPy-style broadcasting is done by adding an ellipsis + to the left of each term, like ``np.einsum('...ii->...i', a)``. + ``np.einsum('...i->...', a)`` is like + :py:func:`np.sum(a, axis=-1) ` for array ``a`` of any shape. + To take the trace along the first and last axes, + you can do ``np.einsum('i...i', a)``, or to do a matrix-matrix + product with the left-most indices instead of rightmost, one can do + ``np.einsum('ij...,jk...->ik...', a, b)``. + + When there is only one operand, no axes are summed, and no output + parameter is provided, a view into the operand is returned instead + of a new array. Thus, taking the diagonal as ``np.einsum('ii->i', a)`` + produces a view (changed in version 1.10.0). + + `einsum` also provides an alternative way to provide the subscripts and + operands as ``einsum(op0, sublist0, op1, sublist1, ..., [sublistout])``. + If the output shape is not provided in this format `einsum` will be + calculated in implicit mode, otherwise it will be performed explicitly. + The examples below have corresponding `einsum` calls with the two + parameter methods. + + Views returned from einsum are now writeable whenever the input array + is writeable. For example, ``np.einsum('ijk...->kji...', a)`` will now + have the same effect as :py:func:`np.swapaxes(a, 0, 2) ` + and ``np.einsum('ii->i', a)`` will return a writeable view of the diagonal + of a 2D array. + + Added the ``optimize`` argument which will optimize the contraction order + of an einsum expression. For a contraction with three or more operands + this can greatly increase the computational efficiency at the cost of + a larger memory footprint during computation. + + Typically a 'greedy' algorithm is applied which empirical tests have shown + returns the optimal path in the majority of cases. In some cases 'optimal' + will return the superlative path through a more expensive, exhaustive + search. For iterative calculations it may be advisable to calculate + the optimal path once and reuse that path by supplying it as an argument. + An example is given below. + + See :py:func:`numpy.einsum_path` for more details. + + Examples + -------- + >>> a = np.arange(25).reshape(5,5) + >>> b = np.arange(5) + >>> c = np.arange(6).reshape(2,3) + + Trace of a matrix: + + >>> np.einsum('ii', a) + 60 + >>> np.einsum(a, [0,0]) + 60 + >>> np.trace(a) + 60 + + Extract the diagonal (requires explicit form): + + >>> np.einsum('ii->i', a) + array([ 0, 6, 12, 18, 24]) + >>> np.einsum(a, [0,0], [0]) + array([ 0, 6, 12, 18, 24]) + >>> np.diag(a) + array([ 0, 6, 12, 18, 24]) + + Sum over an axis (requires explicit form): + + >>> np.einsum('ij->i', a) + array([ 10, 35, 60, 85, 110]) + >>> np.einsum(a, [0,1], [0]) + array([ 10, 35, 60, 85, 110]) + >>> np.sum(a, axis=1) + array([ 10, 35, 60, 85, 110]) + + For higher dimensional arrays summing a single axis can be done + with ellipsis: + + >>> np.einsum('...j->...', a) + array([ 10, 35, 60, 85, 110]) + >>> np.einsum(a, [Ellipsis,1], [Ellipsis]) + array([ 10, 35, 60, 85, 110]) + + Compute a matrix transpose, or reorder any number of axes: + + >>> np.einsum('ji', c) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.einsum('ij->ji', c) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.einsum(c, [1,0]) + array([[0, 3], + [1, 4], + [2, 5]]) + >>> np.transpose(c) + array([[0, 3], + [1, 4], + [2, 5]]) + + Vector inner products: + + >>> np.einsum('i,i', b, b) + 30 + >>> np.einsum(b, [0], b, [0]) + 30 + >>> np.inner(b,b) + 30 + + Matrix vector multiplication: + + >>> np.einsum('ij,j', a, b) + array([ 30, 80, 130, 180, 230]) + >>> np.einsum(a, [0,1], b, [1]) + array([ 30, 80, 130, 180, 230]) + >>> np.dot(a, b) + array([ 30, 80, 130, 180, 230]) + >>> np.einsum('...j,j', a, b) + array([ 30, 80, 130, 180, 230]) + + Broadcasting and scalar multiplication: + + >>> np.einsum('..., ...', 3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.einsum(',ij', 3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.einsum(3, [Ellipsis], c, [Ellipsis]) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + >>> np.multiply(3, c) + array([[ 0, 3, 6], + [ 9, 12, 15]]) + + Vector outer product: + + >>> np.einsum('i,j', np.arange(2)+1, b) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + >>> np.einsum(np.arange(2)+1, [0], b, [1]) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + >>> np.outer(np.arange(2)+1, b) + array([[0, 1, 2, 3, 4], + [0, 2, 4, 6, 8]]) + + Tensor contraction: + + >>> a = np.arange(60.).reshape(3,4,5) + >>> b = np.arange(24.).reshape(4,3,2) + >>> np.einsum('ijk,jil->kl', a, b) + array([[4400., 4730.], + [4532., 4874.], + [4664., 5018.], + [4796., 5162.], + [4928., 5306.]]) + >>> np.einsum(a, [0,1,2], b, [1,0,3], [2,3]) + array([[4400., 4730.], + [4532., 4874.], + [4664., 5018.], + [4796., 5162.], + [4928., 5306.]]) + >>> np.tensordot(a,b, axes=([1,0],[0,1])) + array([[4400., 4730.], + [4532., 4874.], + [4664., 5018.], + [4796., 5162.], + [4928., 5306.]]) + + Writeable returned arrays (since version 1.10.0): + + >>> a = np.zeros((3, 3)) + >>> np.einsum('ii->i', a)[:] = 1 + >>> a + array([[1., 0., 0.], + [0., 1., 0.], + [0., 0., 1.]]) + + Example of ellipsis use: + + >>> a = np.arange(6).reshape((3,2)) + >>> b = np.arange(12).reshape((4,3)) + >>> np.einsum('ki,jk->ij', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + >>> np.einsum('ki,...k->i...', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + >>> np.einsum('k...,jk', a, b) + array([[10, 28, 46, 64], + [13, 40, 67, 94]]) + + Chained array operations. For more complicated contractions, speed ups + might be achieved by repeatedly computing a 'greedy' path or pre-computing + the 'optimal' path and repeatedly applying it, using an `einsum_path` + insertion (since version 1.12.0). Performance improvements can be + particularly significant with larger arrays: + + >>> a = np.ones(64).reshape(2,4,8) + + Basic `einsum`: ~1520ms (benchmarked on 3.1GHz Intel i5.) + + >>> for iteration in range(500): + ... _ = np.einsum('ijk,ilm,njm,nlk,abc->',a,a,a,a,a) + + Sub-optimal `einsum` (due to repeated path calculation time): ~330ms + + >>> for iteration in range(500): + ... _ = np.einsum('ijk,ilm,njm,nlk,abc->',a,a,a,a,a, + ... optimize='optimal') + + Greedy `einsum` (faster optimal path approximation): ~160ms + + >>> for iteration in range(500): + ... _ = np.einsum('ijk,ilm,njm,nlk,abc->',a,a,a,a,a, optimize='greedy') + + Optimal `einsum` (best usage pattern in some use cases): ~110ms + + >>> path = np.einsum_path('ijk,ilm,njm,nlk,abc->',a,a,a,a,a, + ... optimize='optimal')[0] + >>> for iteration in range(500): + ... _ = np.einsum('ijk,ilm,njm,nlk,abc->',a,a,a,a,a, optimize=path) + + """ + # Special handling if out is specified + specified_out = out is not None + + # If no optimization, run pure einsum + if optimize is False: + if specified_out: + kwargs['out'] = out + return c_einsum(*operands, **kwargs) + + # Check the kwargs to avoid a more cryptic error later, without having to + # repeat default values here + valid_einsum_kwargs = ['dtype', 'order', 'casting'] + unknown_kwargs = [k for (k, v) in kwargs.items() if + k not in valid_einsum_kwargs] + if len(unknown_kwargs): + raise TypeError("Did not understand the following kwargs: %s" + % unknown_kwargs) + + # Build the contraction list and operand + operands, contraction_list = einsum_path(*operands, optimize=optimize, + einsum_call=True) + + # Handle order kwarg for output array, c_einsum allows mixed case + output_order = kwargs.pop('order', 'K') + if output_order.upper() == 'A': + if all(arr.flags.f_contiguous for arr in operands): + output_order = 'F' + else: + output_order = 'C' + + # Start contraction loop + for num, contraction in enumerate(contraction_list): + inds, idx_rm, einsum_str, remaining, blas = contraction + tmp_operands = [operands.pop(x) for x in inds] + + # Do we need to deal with the output? + handle_out = specified_out and ((num + 1) == len(contraction_list)) + + # Call tensordot if still possible + if blas: + # Checks have already been handled + input_str, results_index = einsum_str.split('->') + input_left, input_right = input_str.split(',') + + tensor_result = input_left + input_right + for s in idx_rm: + tensor_result = tensor_result.replace(s, "") + + # Find indices to contract over + left_pos, right_pos = [], [] + for s in sorted(idx_rm): + left_pos.append(input_left.find(s)) + right_pos.append(input_right.find(s)) + + # Contract! + new_view = tensordot( + *tmp_operands, axes=(tuple(left_pos), tuple(right_pos)) + ) + + # Build a new view if needed + if (tensor_result != results_index) or handle_out: + if handle_out: + kwargs["out"] = out + new_view = c_einsum( + tensor_result + '->' + results_index, new_view, **kwargs + ) + + # Call einsum + else: + # If out was specified + if handle_out: + kwargs["out"] = out + + # Do the contraction + new_view = c_einsum(einsum_str, *tmp_operands, **kwargs) + + # Append new items and dereference what we can + operands.append(new_view) + del tmp_operands, new_view + + if specified_out: + return out + else: + return asanyarray(operands[0], order=output_order) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.pyi new file mode 100644 index 0000000000000000000000000000000000000000..00629a478c25a69749ff4479570123891e49d392 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/einsumfunc.pyi @@ -0,0 +1,185 @@ +from collections.abc import Sequence +from typing import TypeAlias, TypeVar, Any, overload, Literal + +import numpy as np +from numpy import number, _OrderKACF +from numpy._typing import ( + NDArray, + _ArrayLikeBool_co, + _ArrayLikeUInt_co, + _ArrayLikeInt_co, + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, + _ArrayLikeObject_co, + _DTypeLikeBool, + _DTypeLikeUInt, + _DTypeLikeInt, + _DTypeLikeFloat, + _DTypeLikeComplex, + _DTypeLikeComplex_co, + _DTypeLikeObject, +) + +__all__ = ["einsum", "einsum_path"] + +_ArrayType = TypeVar( + "_ArrayType", + bound=NDArray[np.bool | number[Any]], +) + +_OptimizeKind: TypeAlias = bool | Literal["greedy", "optimal"] | Sequence[Any] | None +_CastingSafe: TypeAlias = Literal["no", "equiv", "safe", "same_kind"] +_CastingUnsafe: TypeAlias = Literal["unsafe"] + + +# TODO: Properly handle the `casting`-based combinatorics +# TODO: We need to evaluate the content `__subscripts` in order +# to identify whether or an array or scalar is returned. At a cursory +# glance this seems like something that can quite easily be done with +# a mypy plugin. +# Something like `is_scalar = bool(__subscripts.partition("->")[-1])` +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeBool_co, + out: None = ..., + dtype: None | _DTypeLikeBool = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeUInt_co, + out: None = ..., + dtype: None | _DTypeLikeUInt = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeInt_co, + out: None = ..., + dtype: None | _DTypeLikeInt = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeFloat_co, + out: None = ..., + dtype: None | _DTypeLikeFloat = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeComplex_co, + out: None = ..., + dtype: None | _DTypeLikeComplex = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: Any, + casting: _CastingUnsafe, + dtype: None | _DTypeLikeComplex_co = ..., + out: None = ..., + order: _OrderKACF = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeComplex_co, + out: _ArrayType, + dtype: None | _DTypeLikeComplex_co = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> _ArrayType: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: Any, + out: _ArrayType, + casting: _CastingUnsafe, + dtype: None | _DTypeLikeComplex_co = ..., + order: _OrderKACF = ..., + optimize: _OptimizeKind = ..., +) -> _ArrayType: ... + +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeObject_co, + out: None = ..., + dtype: None | _DTypeLikeObject = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: Any, + casting: _CastingUnsafe, + dtype: None | _DTypeLikeObject = ..., + out: None = ..., + order: _OrderKACF = ..., + optimize: _OptimizeKind = ..., +) -> Any: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeObject_co, + out: _ArrayType, + dtype: None | _DTypeLikeObject = ..., + order: _OrderKACF = ..., + casting: _CastingSafe = ..., + optimize: _OptimizeKind = ..., +) -> _ArrayType: ... +@overload +def einsum( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: Any, + out: _ArrayType, + casting: _CastingUnsafe, + dtype: None | _DTypeLikeObject = ..., + order: _OrderKACF = ..., + optimize: _OptimizeKind = ..., +) -> _ArrayType: ... + +# NOTE: `einsum_call` is a hidden kwarg unavailable for public use. +# It is therefore excluded from the signatures below. +# NOTE: In practice the list consists of a `str` (first element) +# and a variable number of integer tuples. +def einsum_path( + subscripts: str | _ArrayLikeInt_co, + /, + *operands: _ArrayLikeComplex_co | _DTypeLikeObject, + optimize: _OptimizeKind = "greedy", + einsum_call: Literal[False] = False, +) -> tuple[list[Any], str]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.py new file mode 100644 index 0000000000000000000000000000000000000000..202bcde9e5701e4f98a540af31b87f4b57e6b2c1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.py @@ -0,0 +1,4269 @@ +"""Module containing non-deprecated functions borrowed from Numeric. + +""" +import functools +import types +import warnings + +import numpy as np +from .._utils import set_module +from . import multiarray as mu +from . import overrides +from . import umath as um +from . import numerictypes as nt +from .multiarray import asarray, array, asanyarray, concatenate +from ._multiarray_umath import _array_converter +from . import _methods + +_dt_ = nt.sctype2char + +# functions that are methods +__all__ = [ + 'all', 'amax', 'amin', 'any', 'argmax', + 'argmin', 'argpartition', 'argsort', 'around', 'choose', 'clip', + 'compress', 'cumprod', 'cumsum', 'cumulative_prod', 'cumulative_sum', + 'diagonal', 'mean', 'max', 'min', 'matrix_transpose', + 'ndim', 'nonzero', 'partition', 'prod', 'ptp', 'put', + 'ravel', 'repeat', 'reshape', 'resize', 'round', + 'searchsorted', 'shape', 'size', 'sort', 'squeeze', + 'std', 'sum', 'swapaxes', 'take', 'trace', 'transpose', 'var', +] + +_gentype = types.GeneratorType +# save away Python sum +_sum_ = sum + +array_function_dispatch = functools.partial( + overrides.array_function_dispatch, module='numpy') + + +# functions that are now methods +def _wrapit(obj, method, *args, **kwds): + conv = _array_converter(obj) + # As this already tried the method, subok is maybe quite reasonable here + # but this follows what was done before. TODO: revisit this. + arr, = conv.as_arrays(subok=False) + result = getattr(arr, method)(*args, **kwds) + + return conv.wrap(result, to_scalar=False) + + +def _wrapfunc(obj, method, *args, **kwds): + bound = getattr(obj, method, None) + if bound is None: + return _wrapit(obj, method, *args, **kwds) + + try: + return bound(*args, **kwds) + except TypeError: + # A TypeError occurs if the object does have such a method in its + # class, but its signature is not identical to that of NumPy's. This + # situation has occurred in the case of a downstream library like + # 'pandas'. + # + # Call _wrapit from within the except clause to ensure a potential + # exception has a traceback chain. + return _wrapit(obj, method, *args, **kwds) + + +def _wrapreduction(obj, ufunc, method, axis, dtype, out, **kwargs): + passkwargs = {k: v for k, v in kwargs.items() + if v is not np._NoValue} + + if type(obj) is not mu.ndarray: + try: + reduction = getattr(obj, method) + except AttributeError: + pass + else: + # This branch is needed for reductions like any which don't + # support a dtype. + if dtype is not None: + return reduction(axis=axis, dtype=dtype, out=out, **passkwargs) + else: + return reduction(axis=axis, out=out, **passkwargs) + + return ufunc.reduce(obj, axis, dtype, out, **passkwargs) + + +def _wrapreduction_any_all(obj, ufunc, method, axis, out, **kwargs): + # Same as above function, but dtype is always bool (but never passed on) + passkwargs = {k: v for k, v in kwargs.items() + if v is not np._NoValue} + + if type(obj) is not mu.ndarray: + try: + reduction = getattr(obj, method) + except AttributeError: + pass + else: + return reduction(axis=axis, out=out, **passkwargs) + + return ufunc.reduce(obj, axis, bool, out, **passkwargs) + + +def _take_dispatcher(a, indices, axis=None, out=None, mode=None): + return (a, out) + + +@array_function_dispatch(_take_dispatcher) +def take(a, indices, axis=None, out=None, mode='raise'): + """ + Take elements from an array along an axis. + + When axis is not None, this function does the same thing as "fancy" + indexing (indexing arrays using arrays); however, it can be easier to use + if you need elements along a given axis. A call such as + ``np.take(arr, indices, axis=3)`` is equivalent to + ``arr[:,:,:,indices,...]``. + + Explained without fancy indexing, this is equivalent to the following use + of `ndindex`, which sets each of ``ii``, ``jj``, and ``kk`` to a tuple of + indices:: + + Ni, Nk = a.shape[:axis], a.shape[axis+1:] + Nj = indices.shape + for ii in ndindex(Ni): + for jj in ndindex(Nj): + for kk in ndindex(Nk): + out[ii + jj + kk] = a[ii + (indices[jj],) + kk] + + Parameters + ---------- + a : array_like (Ni..., M, Nk...) + The source array. + indices : array_like (Nj...) + The indices of the values to extract. + Also allow scalars for indices. + axis : int, optional + The axis over which to select values. By default, the flattened + input array is used. + out : ndarray, optional (Ni..., Nj..., Nk...) + If provided, the result will be placed in this array. It should + be of the appropriate shape and dtype. Note that `out` is always + buffered if `mode='raise'`; use other modes for better performance. + mode : {'raise', 'wrap', 'clip'}, optional + Specifies how out-of-bounds indices will behave. + + * 'raise' -- raise an error (default) + * 'wrap' -- wrap around + * 'clip' -- clip to the range + + 'clip' mode means that all indices that are too large are replaced + by the index that addresses the last element along that axis. Note + that this disables indexing with negative numbers. + + Returns + ------- + out : ndarray (Ni..., Nj..., Nk...) + The returned array has the same type as `a`. + + See Also + -------- + compress : Take elements using a boolean mask + ndarray.take : equivalent method + take_along_axis : Take elements by matching the array and the index arrays + + Notes + ----- + By eliminating the inner loop in the description above, and using `s_` to + build simple slice objects, `take` can be expressed in terms of applying + fancy indexing to each 1-d slice:: + + Ni, Nk = a.shape[:axis], a.shape[axis+1:] + for ii in ndindex(Ni): + for kk in ndindex(Nj): + out[ii + s_[...,] + kk] = a[ii + s_[:,] + kk][indices] + + For this reason, it is equivalent to (but faster than) the following use + of `apply_along_axis`:: + + out = np.apply_along_axis(lambda a_1d: a_1d[indices], axis, a) + + Examples + -------- + >>> import numpy as np + >>> a = [4, 3, 5, 7, 6, 8] + >>> indices = [0, 1, 4] + >>> np.take(a, indices) + array([4, 3, 6]) + + In this example if `a` is an ndarray, "fancy" indexing can be used. + + >>> a = np.array(a) + >>> a[indices] + array([4, 3, 6]) + + If `indices` is not one dimensional, the output also has these dimensions. + + >>> np.take(a, [[0, 1], [2, 3]]) + array([[4, 3], + [5, 7]]) + """ + return _wrapfunc(a, 'take', indices, axis=axis, out=out, mode=mode) + + +def _reshape_dispatcher(a, /, shape=None, order=None, *, newshape=None, + copy=None): + return (a,) + + +@array_function_dispatch(_reshape_dispatcher) +def reshape(a, /, shape=None, order='C', *, newshape=None, copy=None): + """ + Gives a new shape to an array without changing its data. + + Parameters + ---------- + a : array_like + Array to be reshaped. + shape : int or tuple of ints + The new shape should be compatible with the original shape. If + an integer, then the result will be a 1-D array of that length. + One shape dimension can be -1. In this case, the value is + inferred from the length of the array and remaining dimensions. + order : {'C', 'F', 'A'}, optional + Read the elements of ``a`` using this index order, and place the + elements into the reshaped array using this index order. 'C' + means to read / write the elements using C-like index order, + with the last axis index changing fastest, back to the first + axis index changing slowest. 'F' means to read / write the + elements using Fortran-like index order, with the first index + changing fastest, and the last index changing slowest. Note that + the 'C' and 'F' options take no account of the memory layout of + the underlying array, and only refer to the order of indexing. + 'A' means to read / write the elements in Fortran-like index + order if ``a`` is Fortran *contiguous* in memory, C-like order + otherwise. + newshape : int or tuple of ints + .. deprecated:: 2.1 + Replaced by ``shape`` argument. Retained for backward + compatibility. + copy : bool, optional + If ``True``, then the array data is copied. If ``None``, a copy will + only be made if it's required by ``order``. For ``False`` it raises + a ``ValueError`` if a copy cannot be avoided. Default: ``None``. + + Returns + ------- + reshaped_array : ndarray + This will be a new view object if possible; otherwise, it will + be a copy. Note there is no guarantee of the *memory layout* (C- or + Fortran- contiguous) of the returned array. + + See Also + -------- + ndarray.reshape : Equivalent method. + + Notes + ----- + It is not always possible to change the shape of an array without copying + the data. + + The ``order`` keyword gives the index ordering both for *fetching* + the values from ``a``, and then *placing* the values into the output + array. For example, let's say you have an array: + + >>> a = np.arange(6).reshape((3, 2)) + >>> a + array([[0, 1], + [2, 3], + [4, 5]]) + + You can think of reshaping as first raveling the array (using the given + index order), then inserting the elements from the raveled array into the + new array using the same kind of index ordering as was used for the + raveling. + + >>> np.reshape(a, (2, 3)) # C-like index ordering + array([[0, 1, 2], + [3, 4, 5]]) + >>> np.reshape(np.ravel(a), (2, 3)) # equivalent to C ravel then C reshape + array([[0, 1, 2], + [3, 4, 5]]) + >>> np.reshape(a, (2, 3), order='F') # Fortran-like index ordering + array([[0, 4, 3], + [2, 1, 5]]) + >>> np.reshape(np.ravel(a, order='F'), (2, 3), order='F') + array([[0, 4, 3], + [2, 1, 5]]) + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,2,3], [4,5,6]]) + >>> np.reshape(a, 6) + array([1, 2, 3, 4, 5, 6]) + >>> np.reshape(a, 6, order='F') + array([1, 4, 2, 5, 3, 6]) + + >>> np.reshape(a, (3,-1)) # the unspecified value is inferred to be 2 + array([[1, 2], + [3, 4], + [5, 6]]) + """ + if newshape is None and shape is None: + raise TypeError( + "reshape() missing 1 required positional argument: 'shape'") + if newshape is not None: + if shape is not None: + raise TypeError( + "You cannot specify 'newshape' and 'shape' arguments " + "at the same time.") + # Deprecated in NumPy 2.1, 2024-04-18 + warnings.warn( + "`newshape` keyword argument is deprecated, " + "use `shape=...` or pass shape positionally instead. " + "(deprecated in NumPy 2.1)", + DeprecationWarning, + stacklevel=2, + ) + shape = newshape + if copy is not None: + return _wrapfunc(a, 'reshape', shape, order=order, copy=copy) + return _wrapfunc(a, 'reshape', shape, order=order) + + +def _choose_dispatcher(a, choices, out=None, mode=None): + yield a + yield from choices + yield out + + +@array_function_dispatch(_choose_dispatcher) +def choose(a, choices, out=None, mode='raise'): + """ + Construct an array from an index array and a list of arrays to choose from. + + First of all, if confused or uncertain, definitely look at the Examples - + in its full generality, this function is less simple than it might + seem from the following code description:: + + np.choose(a,c) == np.array([c[a[I]][I] for I in np.ndindex(a.shape)]) + + But this omits some subtleties. Here is a fully general summary: + + Given an "index" array (`a`) of integers and a sequence of ``n`` arrays + (`choices`), `a` and each choice array are first broadcast, as necessary, + to arrays of a common shape; calling these *Ba* and *Bchoices[i], i = + 0,...,n-1* we have that, necessarily, ``Ba.shape == Bchoices[i].shape`` + for each ``i``. Then, a new array with shape ``Ba.shape`` is created as + follows: + + * if ``mode='raise'`` (the default), then, first of all, each element of + ``a`` (and thus ``Ba``) must be in the range ``[0, n-1]``; now, suppose + that ``i`` (in that range) is the value at the ``(j0, j1, ..., jm)`` + position in ``Ba`` - then the value at the same position in the new array + is the value in ``Bchoices[i]`` at that same position; + + * if ``mode='wrap'``, values in `a` (and thus `Ba`) may be any (signed) + integer; modular arithmetic is used to map integers outside the range + `[0, n-1]` back into that range; and then the new array is constructed + as above; + + * if ``mode='clip'``, values in `a` (and thus ``Ba``) may be any (signed) + integer; negative integers are mapped to 0; values greater than ``n-1`` + are mapped to ``n-1``; and then the new array is constructed as above. + + Parameters + ---------- + a : int array + This array must contain integers in ``[0, n-1]``, where ``n`` is the + number of choices, unless ``mode=wrap`` or ``mode=clip``, in which + cases any integers are permissible. + choices : sequence of arrays + Choice arrays. `a` and all of the choices must be broadcastable to the + same shape. If `choices` is itself an array (not recommended), then + its outermost dimension (i.e., the one corresponding to + ``choices.shape[0]``) is taken as defining the "sequence". + out : array, optional + If provided, the result will be inserted into this array. It should + be of the appropriate shape and dtype. Note that `out` is always + buffered if ``mode='raise'``; use other modes for better performance. + mode : {'raise' (default), 'wrap', 'clip'}, optional + Specifies how indices outside ``[0, n-1]`` will be treated: + + * 'raise' : an exception is raised + * 'wrap' : value becomes value mod ``n`` + * 'clip' : values < 0 are mapped to 0, values > n-1 are mapped to n-1 + + Returns + ------- + merged_array : array + The merged result. + + Raises + ------ + ValueError: shape mismatch + If `a` and each choice array are not all broadcastable to the same + shape. + + See Also + -------- + ndarray.choose : equivalent method + numpy.take_along_axis : Preferable if `choices` is an array + + Notes + ----- + To reduce the chance of misinterpretation, even though the following + "abuse" is nominally supported, `choices` should neither be, nor be + thought of as, a single array, i.e., the outermost sequence-like container + should be either a list or a tuple. + + Examples + -------- + + >>> import numpy as np + >>> choices = [[0, 1, 2, 3], [10, 11, 12, 13], + ... [20, 21, 22, 23], [30, 31, 32, 33]] + >>> np.choose([2, 3, 1, 0], choices + ... # the first element of the result will be the first element of the + ... # third (2+1) "array" in choices, namely, 20; the second element + ... # will be the second element of the fourth (3+1) choice array, i.e., + ... # 31, etc. + ... ) + array([20, 31, 12, 3]) + >>> np.choose([2, 4, 1, 0], choices, mode='clip') # 4 goes to 3 (4-1) + array([20, 31, 12, 3]) + >>> # because there are 4 choice arrays + >>> np.choose([2, 4, 1, 0], choices, mode='wrap') # 4 goes to (4 mod 4) + array([20, 1, 12, 3]) + >>> # i.e., 0 + + A couple examples illustrating how choose broadcasts: + + >>> a = [[1, 0, 1], [0, 1, 0], [1, 0, 1]] + >>> choices = [-10, 10] + >>> np.choose(a, choices) + array([[ 10, -10, 10], + [-10, 10, -10], + [ 10, -10, 10]]) + + >>> # With thanks to Anne Archibald + >>> a = np.array([0, 1]).reshape((2,1,1)) + >>> c1 = np.array([1, 2, 3]).reshape((1,3,1)) + >>> c2 = np.array([-1, -2, -3, -4, -5]).reshape((1,1,5)) + >>> np.choose(a, (c1, c2)) # result is 2x3x5, res[0,:,:]=c1, res[1,:,:]=c2 + array([[[ 1, 1, 1, 1, 1], + [ 2, 2, 2, 2, 2], + [ 3, 3, 3, 3, 3]], + [[-1, -2, -3, -4, -5], + [-1, -2, -3, -4, -5], + [-1, -2, -3, -4, -5]]]) + + """ + return _wrapfunc(a, 'choose', choices, out=out, mode=mode) + + +def _repeat_dispatcher(a, repeats, axis=None): + return (a,) + + +@array_function_dispatch(_repeat_dispatcher) +def repeat(a, repeats, axis=None): + """ + Repeat each element of an array after themselves + + Parameters + ---------- + a : array_like + Input array. + repeats : int or array of ints + The number of repetitions for each element. `repeats` is broadcasted + to fit the shape of the given axis. + axis : int, optional + The axis along which to repeat values. By default, use the + flattened input array, and return a flat output array. + + Returns + ------- + repeated_array : ndarray + Output array which has the same shape as `a`, except along + the given axis. + + See Also + -------- + tile : Tile an array. + unique : Find the unique elements of an array. + + Examples + -------- + >>> import numpy as np + >>> np.repeat(3, 4) + array([3, 3, 3, 3]) + >>> x = np.array([[1,2],[3,4]]) + >>> np.repeat(x, 2) + array([1, 1, 2, 2, 3, 3, 4, 4]) + >>> np.repeat(x, 3, axis=1) + array([[1, 1, 1, 2, 2, 2], + [3, 3, 3, 4, 4, 4]]) + >>> np.repeat(x, [1, 2], axis=0) + array([[1, 2], + [3, 4], + [3, 4]]) + + """ + return _wrapfunc(a, 'repeat', repeats, axis=axis) + + +def _put_dispatcher(a, ind, v, mode=None): + return (a, ind, v) + + +@array_function_dispatch(_put_dispatcher) +def put(a, ind, v, mode='raise'): + """ + Replaces specified elements of an array with given values. + + The indexing works on the flattened target array. `put` is roughly + equivalent to: + + :: + + a.flat[ind] = v + + Parameters + ---------- + a : ndarray + Target array. + ind : array_like + Target indices, interpreted as integers. + v : array_like + Values to place in `a` at target indices. If `v` is shorter than + `ind` it will be repeated as necessary. + mode : {'raise', 'wrap', 'clip'}, optional + Specifies how out-of-bounds indices will behave. + + * 'raise' -- raise an error (default) + * 'wrap' -- wrap around + * 'clip' -- clip to the range + + 'clip' mode means that all indices that are too large are replaced + by the index that addresses the last element along that axis. Note + that this disables indexing with negative numbers. In 'raise' mode, + if an exception occurs the target array may still be modified. + + See Also + -------- + putmask, place + put_along_axis : Put elements by matching the array and the index arrays + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(5) + >>> np.put(a, [0, 2], [-44, -55]) + >>> a + array([-44, 1, -55, 3, 4]) + + >>> a = np.arange(5) + >>> np.put(a, 22, -5, mode='clip') + >>> a + array([ 0, 1, 2, 3, -5]) + + """ + try: + put = a.put + except AttributeError as e: + raise TypeError("argument 1 must be numpy.ndarray, " + "not {name}".format(name=type(a).__name__)) from e + + return put(ind, v, mode=mode) + + +def _swapaxes_dispatcher(a, axis1, axis2): + return (a,) + + +@array_function_dispatch(_swapaxes_dispatcher) +def swapaxes(a, axis1, axis2): + """ + Interchange two axes of an array. + + Parameters + ---------- + a : array_like + Input array. + axis1 : int + First axis. + axis2 : int + Second axis. + + Returns + ------- + a_swapped : ndarray + For NumPy >= 1.10.0, if `a` is an ndarray, then a view of `a` is + returned; otherwise a new array is created. For earlier NumPy + versions a view of `a` is returned only if the order of the + axes is changed, otherwise the input array is returned. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[1,2,3]]) + >>> np.swapaxes(x,0,1) + array([[1], + [2], + [3]]) + + >>> x = np.array([[[0,1],[2,3]],[[4,5],[6,7]]]) + >>> x + array([[[0, 1], + [2, 3]], + [[4, 5], + [6, 7]]]) + + >>> np.swapaxes(x,0,2) + array([[[0, 4], + [2, 6]], + [[1, 5], + [3, 7]]]) + + """ + return _wrapfunc(a, 'swapaxes', axis1, axis2) + + +def _transpose_dispatcher(a, axes=None): + return (a,) + + +@array_function_dispatch(_transpose_dispatcher) +def transpose(a, axes=None): + """ + Returns an array with axes transposed. + + For a 1-D array, this returns an unchanged view of the original array, as a + transposed vector is simply the same vector. + To convert a 1-D array into a 2-D column vector, an additional dimension + must be added, e.g., ``np.atleast_2d(a).T`` achieves this, as does + ``a[:, np.newaxis]``. + For a 2-D array, this is the standard matrix transpose. + For an n-D array, if axes are given, their order indicates how the + axes are permuted (see Examples). If axes are not provided, then + ``transpose(a).shape == a.shape[::-1]``. + + Parameters + ---------- + a : array_like + Input array. + axes : tuple or list of ints, optional + If specified, it must be a tuple or list which contains a permutation + of [0, 1, ..., N-1] where N is the number of axes of `a`. Negative + indices can also be used to specify axes. The i-th axis of the returned + array will correspond to the axis numbered ``axes[i]`` of the input. + If not specified, defaults to ``range(a.ndim)[::-1]``, which reverses + the order of the axes. + + Returns + ------- + p : ndarray + `a` with its axes permuted. A view is returned whenever possible. + + See Also + -------- + ndarray.transpose : Equivalent method. + moveaxis : Move axes of an array to new positions. + argsort : Return the indices that would sort an array. + + Notes + ----- + Use ``transpose(a, argsort(axes))`` to invert the transposition of tensors + when using the `axes` keyword argument. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> a + array([[1, 2], + [3, 4]]) + >>> np.transpose(a) + array([[1, 3], + [2, 4]]) + + >>> a = np.array([1, 2, 3, 4]) + >>> a + array([1, 2, 3, 4]) + >>> np.transpose(a) + array([1, 2, 3, 4]) + + >>> a = np.ones((1, 2, 3)) + >>> np.transpose(a, (1, 0, 2)).shape + (2, 1, 3) + + >>> a = np.ones((2, 3, 4, 5)) + >>> np.transpose(a).shape + (5, 4, 3, 2) + + >>> a = np.arange(3*4*5).reshape((3, 4, 5)) + >>> np.transpose(a, (-1, 0, -2)).shape + (5, 3, 4) + + """ + return _wrapfunc(a, 'transpose', axes) + + +def _matrix_transpose_dispatcher(x): + return (x,) + +@array_function_dispatch(_matrix_transpose_dispatcher) +def matrix_transpose(x, /): + """ + Transposes a matrix (or a stack of matrices) ``x``. + + This function is Array API compatible. + + Parameters + ---------- + x : array_like + Input array having shape (..., M, N) and whose two innermost + dimensions form ``MxN`` matrices. + + Returns + ------- + out : ndarray + An array containing the transpose for each matrix and having shape + (..., N, M). + + See Also + -------- + transpose : Generic transpose method. + + Examples + -------- + >>> import numpy as np + >>> np.matrix_transpose([[1, 2], [3, 4]]) + array([[1, 3], + [2, 4]]) + + >>> np.matrix_transpose([[[1, 2], [3, 4]], [[5, 6], [7, 8]]]) + array([[[1, 3], + [2, 4]], + [[5, 7], + [6, 8]]]) + + """ + x = asanyarray(x) + if x.ndim < 2: + raise ValueError( + f"Input array must be at least 2-dimensional, but it is {x.ndim}" + ) + return swapaxes(x, -1, -2) + + +def _partition_dispatcher(a, kth, axis=None, kind=None, order=None): + return (a,) + + +@array_function_dispatch(_partition_dispatcher) +def partition(a, kth, axis=-1, kind='introselect', order=None): + """ + Return a partitioned copy of an array. + + Creates a copy of the array and partially sorts it in such a way that + the value of the element in k-th position is in the position it would be + in a sorted array. In the output array, all elements smaller than the k-th + element are located to the left of this element and all equal or greater + are located to its right. The ordering of the elements in the two + partitions on the either side of the k-th element in the output array is + undefined. + + Parameters + ---------- + a : array_like + Array to be sorted. + kth : int or sequence of ints + Element index to partition by. The k-th value of the element + will be in its final sorted position and all smaller elements + will be moved before it and all equal or greater elements behind + it. The order of all elements in the partitions is undefined. If + provided with a sequence of k-th it will partition all elements + indexed by k-th of them into their sorted position at once. + + .. deprecated:: 1.22.0 + Passing booleans as index is deprecated. + axis : int or None, optional + Axis along which to sort. If None, the array is flattened before + sorting. The default is -1, which sorts along the last axis. + kind : {'introselect'}, optional + Selection algorithm. Default is 'introselect'. + order : str or list of str, optional + When `a` is an array with fields defined, this argument + specifies which fields to compare first, second, etc. A single + field can be specified as a string. Not all fields need be + specified, but unspecified fields will still be used, in the + order in which they come up in the dtype, to break ties. + + Returns + ------- + partitioned_array : ndarray + Array of the same type and shape as `a`. + + See Also + -------- + ndarray.partition : Method to sort an array in-place. + argpartition : Indirect partition. + sort : Full sorting + + Notes + ----- + The various selection algorithms are characterized by their average + speed, worst case performance, work space size, and whether they are + stable. A stable sort keeps items with the same key in the same + relative order. The available algorithms have the following + properties: + + ================= ======= ============= ============ ======= + kind speed worst case work space stable + ================= ======= ============= ============ ======= + 'introselect' 1 O(n) 0 no + ================= ======= ============= ============ ======= + + All the partition algorithms make temporary copies of the data when + partitioning along any but the last axis. Consequently, + partitioning along the last axis is faster and uses less space than + partitioning along any other axis. + + The sort order for complex numbers is lexicographic. If both the + real and imaginary parts are non-nan then the order is determined by + the real parts except when they are equal, in which case the order + is determined by the imaginary parts. + + The sort order of ``np.nan`` is bigger than ``np.inf``. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([7, 1, 7, 7, 1, 5, 7, 2, 3, 2, 6, 2, 3, 0]) + >>> p = np.partition(a, 4) + >>> p + array([0, 1, 2, 1, 2, 5, 2, 3, 3, 6, 7, 7, 7, 7]) # may vary + + ``p[4]`` is 2; all elements in ``p[:4]`` are less than or equal + to ``p[4]``, and all elements in ``p[5:]`` are greater than or + equal to ``p[4]``. The partition is:: + + [0, 1, 2, 1], [2], [5, 2, 3, 3, 6, 7, 7, 7, 7] + + The next example shows the use of multiple values passed to `kth`. + + >>> p2 = np.partition(a, (4, 8)) + >>> p2 + array([0, 1, 2, 1, 2, 3, 3, 2, 5, 6, 7, 7, 7, 7]) + + ``p2[4]`` is 2 and ``p2[8]`` is 5. All elements in ``p2[:4]`` + are less than or equal to ``p2[4]``, all elements in ``p2[5:8]`` + are greater than or equal to ``p2[4]`` and less than or equal to + ``p2[8]``, and all elements in ``p2[9:]`` are greater than or + equal to ``p2[8]``. The partition is:: + + [0, 1, 2, 1], [2], [3, 3, 2], [5], [6, 7, 7, 7, 7] + """ + if axis is None: + # flatten returns (1, N) for np.matrix, so always use the last axis + a = asanyarray(a).flatten() + axis = -1 + else: + a = asanyarray(a).copy(order="K") + a.partition(kth, axis=axis, kind=kind, order=order) + return a + + +def _argpartition_dispatcher(a, kth, axis=None, kind=None, order=None): + return (a,) + + +@array_function_dispatch(_argpartition_dispatcher) +def argpartition(a, kth, axis=-1, kind='introselect', order=None): + """ + Perform an indirect partition along the given axis using the + algorithm specified by the `kind` keyword. It returns an array of + indices of the same shape as `a` that index data along the given + axis in partitioned order. + + Parameters + ---------- + a : array_like + Array to sort. + kth : int or sequence of ints + Element index to partition by. The k-th element will be in its + final sorted position and all smaller elements will be moved + before it and all larger elements behind it. The order of all + elements in the partitions is undefined. If provided with a + sequence of k-th it will partition all of them into their sorted + position at once. + + .. deprecated:: 1.22.0 + Passing booleans as index is deprecated. + axis : int or None, optional + Axis along which to sort. The default is -1 (the last axis). If + None, the flattened array is used. + kind : {'introselect'}, optional + Selection algorithm. Default is 'introselect' + order : str or list of str, optional + When `a` is an array with fields defined, this argument + specifies which fields to compare first, second, etc. A single + field can be specified as a string, and not all fields need be + specified, but unspecified fields will still be used, in the + order in which they come up in the dtype, to break ties. + + Returns + ------- + index_array : ndarray, int + Array of indices that partition `a` along the specified axis. + If `a` is one-dimensional, ``a[index_array]`` yields a partitioned `a`. + More generally, ``np.take_along_axis(a, index_array, axis=axis)`` + always yields the partitioned `a`, irrespective of dimensionality. + + See Also + -------- + partition : Describes partition algorithms used. + ndarray.partition : Inplace partition. + argsort : Full indirect sort. + take_along_axis : Apply ``index_array`` from argpartition + to an array as if by calling partition. + + Notes + ----- + The returned indices are not guaranteed to be sorted according to + the values. Furthermore, the default selection algorithm ``introselect`` + is unstable, and hence the returned indices are not guaranteed + to be the earliest/latest occurrence of the element. + + `argpartition` works for real/complex inputs with nan values, + see `partition` for notes on the enhanced sort order and + different selection algorithms. + + Examples + -------- + One dimensional array: + + >>> import numpy as np + >>> x = np.array([3, 4, 2, 1]) + >>> x[np.argpartition(x, 3)] + array([2, 1, 3, 4]) # may vary + >>> x[np.argpartition(x, (1, 3))] + array([1, 2, 3, 4]) # may vary + + >>> x = [3, 4, 2, 1] + >>> np.array(x)[np.argpartition(x, 3)] + array([2, 1, 3, 4]) # may vary + + Multi-dimensional array: + + >>> x = np.array([[3, 4, 2], [1, 3, 1]]) + >>> index_array = np.argpartition(x, kth=1, axis=-1) + >>> # below is the same as np.partition(x, kth=1) + >>> np.take_along_axis(x, index_array, axis=-1) + array([[2, 3, 4], + [1, 1, 3]]) + + """ + return _wrapfunc(a, 'argpartition', kth, axis=axis, kind=kind, order=order) + + +def _sort_dispatcher(a, axis=None, kind=None, order=None, *, stable=None): + return (a,) + + +@array_function_dispatch(_sort_dispatcher) +def sort(a, axis=-1, kind=None, order=None, *, stable=None): + """ + Return a sorted copy of an array. + + Parameters + ---------- + a : array_like + Array to be sorted. + axis : int or None, optional + Axis along which to sort. If None, the array is flattened before + sorting. The default is -1, which sorts along the last axis. + kind : {'quicksort', 'mergesort', 'heapsort', 'stable'}, optional + Sorting algorithm. The default is 'quicksort'. Note that both 'stable' + and 'mergesort' use timsort or radix sort under the covers and, + in general, the actual implementation will vary with data type. + The 'mergesort' option is retained for backwards compatibility. + order : str or list of str, optional + When `a` is an array with fields defined, this argument specifies + which fields to compare first, second, etc. A single field can + be specified as a string, and not all fields need be specified, + but unspecified fields will still be used, in the order in which + they come up in the dtype, to break ties. + stable : bool, optional + Sort stability. If ``True``, the returned array will maintain + the relative order of ``a`` values which compare as equal. + If ``False`` or ``None``, this is not guaranteed. Internally, + this option selects ``kind='stable'``. Default: ``None``. + + .. versionadded:: 2.0.0 + + Returns + ------- + sorted_array : ndarray + Array of the same type and shape as `a`. + + See Also + -------- + ndarray.sort : Method to sort an array in-place. + argsort : Indirect sort. + lexsort : Indirect stable sort on multiple keys. + searchsorted : Find elements in a sorted array. + partition : Partial sort. + + Notes + ----- + The various sorting algorithms are characterized by their average speed, + worst case performance, work space size, and whether they are stable. A + stable sort keeps items with the same key in the same relative + order. The four algorithms implemented in NumPy have the following + properties: + + =========== ======= ============= ============ ======== + kind speed worst case work space stable + =========== ======= ============= ============ ======== + 'quicksort' 1 O(n^2) 0 no + 'heapsort' 3 O(n*log(n)) 0 no + 'mergesort' 2 O(n*log(n)) ~n/2 yes + 'timsort' 2 O(n*log(n)) ~n/2 yes + =========== ======= ============= ============ ======== + + .. note:: The datatype determines which of 'mergesort' or 'timsort' + is actually used, even if 'mergesort' is specified. User selection + at a finer scale is not currently available. + + For performance, ``sort`` makes a temporary copy if needed to make the data + `contiguous `_ + in memory along the sort axis. For even better performance and reduced + memory consumption, ensure that the array is already contiguous along the + sort axis. + + The sort order for complex numbers is lexicographic. If both the real + and imaginary parts are non-nan then the order is determined by the + real parts except when they are equal, in which case the order is + determined by the imaginary parts. + + Previous to numpy 1.4.0 sorting real and complex arrays containing nan + values led to undefined behaviour. In numpy versions >= 1.4.0 nan + values are sorted to the end. The extended sort order is: + + * Real: [R, nan] + * Complex: [R + Rj, R + nanj, nan + Rj, nan + nanj] + + where R is a non-nan real value. Complex values with the same nan + placements are sorted according to the non-nan part if it exists. + Non-nan values are sorted as before. + + quicksort has been changed to: + `introsort `_. + When sorting does not make enough progress it switches to + `heapsort `_. + This implementation makes quicksort O(n*log(n)) in the worst case. + + 'stable' automatically chooses the best stable sorting algorithm + for the data type being sorted. + It, along with 'mergesort' is currently mapped to + `timsort `_ + or `radix sort `_ + depending on the data type. + API forward compatibility currently limits the + ability to select the implementation and it is hardwired for the different + data types. + + Timsort is added for better performance on already or nearly + sorted data. On random data timsort is almost identical to + mergesort. It is now used for stable sort while quicksort is still the + default sort if none is chosen. For timsort details, refer to + `CPython listsort.txt + `_ + 'mergesort' and 'stable' are mapped to radix sort for integer data types. + Radix sort is an O(n) sort instead of O(n log n). + + NaT now sorts to the end of arrays for consistency with NaN. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,4],[3,1]]) + >>> np.sort(a) # sort along the last axis + array([[1, 4], + [1, 3]]) + >>> np.sort(a, axis=None) # sort the flattened array + array([1, 1, 3, 4]) + >>> np.sort(a, axis=0) # sort along the first axis + array([[1, 1], + [3, 4]]) + + Use the `order` keyword to specify a field to use when sorting a + structured array: + + >>> dtype = [('name', 'S10'), ('height', float), ('age', int)] + >>> values = [('Arthur', 1.8, 41), ('Lancelot', 1.9, 38), + ... ('Galahad', 1.7, 38)] + >>> a = np.array(values, dtype=dtype) # create a structured array + >>> np.sort(a, order='height') # doctest: +SKIP + array([('Galahad', 1.7, 38), ('Arthur', 1.8, 41), + ('Lancelot', 1.8999999999999999, 38)], + dtype=[('name', '|S10'), ('height', '>> np.sort(a, order=['age', 'height']) # doctest: +SKIP + array([('Galahad', 1.7, 38), ('Lancelot', 1.8999999999999999, 38), + ('Arthur', 1.8, 41)], + dtype=[('name', '|S10'), ('height', '>> import numpy as np + >>> x = np.array([3, 1, 2]) + >>> np.argsort(x) + array([1, 2, 0]) + + Two-dimensional array: + + >>> x = np.array([[0, 3], [2, 2]]) + >>> x + array([[0, 3], + [2, 2]]) + + >>> ind = np.argsort(x, axis=0) # sorts along first axis (down) + >>> ind + array([[0, 1], + [1, 0]]) + >>> np.take_along_axis(x, ind, axis=0) # same as np.sort(x, axis=0) + array([[0, 2], + [2, 3]]) + + >>> ind = np.argsort(x, axis=1) # sorts along last axis (across) + >>> ind + array([[0, 1], + [0, 1]]) + >>> np.take_along_axis(x, ind, axis=1) # same as np.sort(x, axis=1) + array([[0, 3], + [2, 2]]) + + Indices of the sorted elements of a N-dimensional array: + + >>> ind = np.unravel_index(np.argsort(x, axis=None), x.shape) + >>> ind + (array([0, 1, 1, 0]), array([0, 0, 1, 1])) + >>> x[ind] # same as np.sort(x, axis=None) + array([0, 2, 2, 3]) + + Sorting with keys: + + >>> x = np.array([(1, 0), (0, 1)], dtype=[('x', '>> x + array([(1, 0), (0, 1)], + dtype=[('x', '>> np.argsort(x, order=('x','y')) + array([1, 0]) + + >>> np.argsort(x, order=('y','x')) + array([0, 1]) + + """ + return _wrapfunc( + a, 'argsort', axis=axis, kind=kind, order=order, stable=stable + ) + +def _argmax_dispatcher(a, axis=None, out=None, *, keepdims=np._NoValue): + return (a, out) + + +@array_function_dispatch(_argmax_dispatcher) +def argmax(a, axis=None, out=None, *, keepdims=np._NoValue): + """ + Returns the indices of the maximum values along an axis. + + Parameters + ---------- + a : array_like + Input array. + axis : int, optional + By default, the index is into the flattened array, otherwise + along the specified axis. + out : array, optional + If provided, the result will be inserted into this array. It should + be of the appropriate shape and dtype. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the array. + + .. versionadded:: 1.22.0 + + Returns + ------- + index_array : ndarray of ints + Array of indices into the array. It has the same shape as ``a.shape`` + with the dimension along `axis` removed. If `keepdims` is set to True, + then the size of `axis` will be 1 with the resulting array having same + shape as ``a.shape``. + + See Also + -------- + ndarray.argmax, argmin + amax : The maximum value along a given axis. + unravel_index : Convert a flat index into an index tuple. + take_along_axis : Apply ``np.expand_dims(index_array, axis)`` + from argmax to an array as if by calling max. + + Notes + ----- + In case of multiple occurrences of the maximum values, the indices + corresponding to the first occurrence are returned. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(6).reshape(2,3) + 10 + >>> a + array([[10, 11, 12], + [13, 14, 15]]) + >>> np.argmax(a) + 5 + >>> np.argmax(a, axis=0) + array([1, 1, 1]) + >>> np.argmax(a, axis=1) + array([2, 2]) + + Indexes of the maximal elements of a N-dimensional array: + + >>> ind = np.unravel_index(np.argmax(a, axis=None), a.shape) + >>> ind + (1, 2) + >>> a[ind] + 15 + + >>> b = np.arange(6) + >>> b[1] = 5 + >>> b + array([0, 5, 2, 3, 4, 5]) + >>> np.argmax(b) # Only the first occurrence is returned. + 1 + + >>> x = np.array([[4,2,3], [1,0,3]]) + >>> index_array = np.argmax(x, axis=-1) + >>> # Same as np.amax(x, axis=-1, keepdims=True) + >>> np.take_along_axis(x, np.expand_dims(index_array, axis=-1), axis=-1) + array([[4], + [3]]) + >>> # Same as np.amax(x, axis=-1) + >>> np.take_along_axis(x, np.expand_dims(index_array, axis=-1), + ... axis=-1).squeeze(axis=-1) + array([4, 3]) + + Setting `keepdims` to `True`, + + >>> x = np.arange(24).reshape((2, 3, 4)) + >>> res = np.argmax(x, axis=1, keepdims=True) + >>> res.shape + (2, 1, 4) + """ + kwds = {'keepdims': keepdims} if keepdims is not np._NoValue else {} + return _wrapfunc(a, 'argmax', axis=axis, out=out, **kwds) + + +def _argmin_dispatcher(a, axis=None, out=None, *, keepdims=np._NoValue): + return (a, out) + + +@array_function_dispatch(_argmin_dispatcher) +def argmin(a, axis=None, out=None, *, keepdims=np._NoValue): + """ + Returns the indices of the minimum values along an axis. + + Parameters + ---------- + a : array_like + Input array. + axis : int, optional + By default, the index is into the flattened array, otherwise + along the specified axis. + out : array, optional + If provided, the result will be inserted into this array. It should + be of the appropriate shape and dtype. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the array. + + .. versionadded:: 1.22.0 + + Returns + ------- + index_array : ndarray of ints + Array of indices into the array. It has the same shape as `a.shape` + with the dimension along `axis` removed. If `keepdims` is set to True, + then the size of `axis` will be 1 with the resulting array having same + shape as `a.shape`. + + See Also + -------- + ndarray.argmin, argmax + amin : The minimum value along a given axis. + unravel_index : Convert a flat index into an index tuple. + take_along_axis : Apply ``np.expand_dims(index_array, axis)`` + from argmin to an array as if by calling min. + + Notes + ----- + In case of multiple occurrences of the minimum values, the indices + corresponding to the first occurrence are returned. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(6).reshape(2,3) + 10 + >>> a + array([[10, 11, 12], + [13, 14, 15]]) + >>> np.argmin(a) + 0 + >>> np.argmin(a, axis=0) + array([0, 0, 0]) + >>> np.argmin(a, axis=1) + array([0, 0]) + + Indices of the minimum elements of a N-dimensional array: + + >>> ind = np.unravel_index(np.argmin(a, axis=None), a.shape) + >>> ind + (0, 0) + >>> a[ind] + 10 + + >>> b = np.arange(6) + 10 + >>> b[4] = 10 + >>> b + array([10, 11, 12, 13, 10, 15]) + >>> np.argmin(b) # Only the first occurrence is returned. + 0 + + >>> x = np.array([[4,2,3], [1,0,3]]) + >>> index_array = np.argmin(x, axis=-1) + >>> # Same as np.amin(x, axis=-1, keepdims=True) + >>> np.take_along_axis(x, np.expand_dims(index_array, axis=-1), axis=-1) + array([[2], + [0]]) + >>> # Same as np.amax(x, axis=-1) + >>> np.take_along_axis(x, np.expand_dims(index_array, axis=-1), + ... axis=-1).squeeze(axis=-1) + array([2, 0]) + + Setting `keepdims` to `True`, + + >>> x = np.arange(24).reshape((2, 3, 4)) + >>> res = np.argmin(x, axis=1, keepdims=True) + >>> res.shape + (2, 1, 4) + """ + kwds = {'keepdims': keepdims} if keepdims is not np._NoValue else {} + return _wrapfunc(a, 'argmin', axis=axis, out=out, **kwds) + + +def _searchsorted_dispatcher(a, v, side=None, sorter=None): + return (a, v, sorter) + + +@array_function_dispatch(_searchsorted_dispatcher) +def searchsorted(a, v, side='left', sorter=None): + """ + Find indices where elements should be inserted to maintain order. + + Find the indices into a sorted array `a` such that, if the + corresponding elements in `v` were inserted before the indices, the + order of `a` would be preserved. + + Assuming that `a` is sorted: + + ====== ============================ + `side` returned index `i` satisfies + ====== ============================ + left ``a[i-1] < v <= a[i]`` + right ``a[i-1] <= v < a[i]`` + ====== ============================ + + Parameters + ---------- + a : 1-D array_like + Input array. If `sorter` is None, then it must be sorted in + ascending order, otherwise `sorter` must be an array of indices + that sort it. + v : array_like + Values to insert into `a`. + side : {'left', 'right'}, optional + If 'left', the index of the first suitable location found is given. + If 'right', return the last such index. If there is no suitable + index, return either 0 or N (where N is the length of `a`). + sorter : 1-D array_like, optional + Optional array of integer indices that sort array a into ascending + order. They are typically the result of argsort. + + Returns + ------- + indices : int or array of ints + Array of insertion points with the same shape as `v`, + or an integer if `v` is a scalar. + + See Also + -------- + sort : Return a sorted copy of an array. + histogram : Produce histogram from 1-D data. + + Notes + ----- + Binary search is used to find the required insertion points. + + As of NumPy 1.4.0 `searchsorted` works with real/complex arrays containing + `nan` values. The enhanced sort order is documented in `sort`. + + This function uses the same algorithm as the builtin python + `bisect.bisect_left` (``side='left'``) and `bisect.bisect_right` + (``side='right'``) functions, which is also vectorized + in the `v` argument. + + Examples + -------- + >>> import numpy as np + >>> np.searchsorted([11,12,13,14,15], 13) + 2 + >>> np.searchsorted([11,12,13,14,15], 13, side='right') + 3 + >>> np.searchsorted([11,12,13,14,15], [-10, 20, 12, 13]) + array([0, 5, 1, 2]) + + When `sorter` is used, the returned indices refer to the sorted + array of `a` and not `a` itself: + + >>> a = np.array([40, 10, 20, 30]) + >>> sorter = np.argsort(a) + >>> sorter + array([1, 2, 3, 0]) # Indices that would sort the array 'a' + >>> result = np.searchsorted(a, 25, sorter=sorter) + >>> result + 2 + >>> a[sorter[result]] + 30 # The element at index 2 of the sorted array is 30. + """ + return _wrapfunc(a, 'searchsorted', v, side=side, sorter=sorter) + + +def _resize_dispatcher(a, new_shape): + return (a,) + + +@array_function_dispatch(_resize_dispatcher) +def resize(a, new_shape): + """ + Return a new array with the specified shape. + + If the new array is larger than the original array, then the new + array is filled with repeated copies of `a`. Note that this behavior + is different from a.resize(new_shape) which fills with zeros instead + of repeated copies of `a`. + + Parameters + ---------- + a : array_like + Array to be resized. + + new_shape : int or tuple of int + Shape of resized array. + + Returns + ------- + reshaped_array : ndarray + The new array is formed from the data in the old array, repeated + if necessary to fill out the required number of elements. The + data are repeated iterating over the array in C-order. + + See Also + -------- + numpy.reshape : Reshape an array without changing the total size. + numpy.pad : Enlarge and pad an array. + numpy.repeat : Repeat elements of an array. + ndarray.resize : resize an array in-place. + + Notes + ----- + When the total size of the array does not change `~numpy.reshape` should + be used. In most other cases either indexing (to reduce the size) + or padding (to increase the size) may be a more appropriate solution. + + Warning: This functionality does **not** consider axes separately, + i.e. it does not apply interpolation/extrapolation. + It fills the return array with the required number of elements, iterating + over `a` in C-order, disregarding axes (and cycling back from the start if + the new shape is larger). This functionality is therefore not suitable to + resize images, or data where each axis represents a separate and distinct + entity. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[0,1],[2,3]]) + >>> np.resize(a,(2,3)) + array([[0, 1, 2], + [3, 0, 1]]) + >>> np.resize(a,(1,4)) + array([[0, 1, 2, 3]]) + >>> np.resize(a,(2,4)) + array([[0, 1, 2, 3], + [0, 1, 2, 3]]) + + """ + if isinstance(new_shape, (int, nt.integer)): + new_shape = (new_shape,) + + a = ravel(a) + + new_size = 1 + for dim_length in new_shape: + new_size *= dim_length + if dim_length < 0: + raise ValueError( + 'all elements of `new_shape` must be non-negative' + ) + + if a.size == 0 or new_size == 0: + # First case must zero fill. The second would have repeats == 0. + return np.zeros_like(a, shape=new_shape) + + repeats = -(-new_size // a.size) # ceil division + a = concatenate((a,) * repeats)[:new_size] + + return reshape(a, new_shape) + + +def _squeeze_dispatcher(a, axis=None): + return (a,) + + +@array_function_dispatch(_squeeze_dispatcher) +def squeeze(a, axis=None): + """ + Remove axes of length one from `a`. + + Parameters + ---------- + a : array_like + Input data. + axis : None or int or tuple of ints, optional + Selects a subset of the entries of length one in the + shape. If an axis is selected with shape entry greater than + one, an error is raised. + + Returns + ------- + squeezed : ndarray + The input array, but with all or a subset of the + dimensions of length 1 removed. This is always `a` itself + or a view into `a`. Note that if all axes are squeezed, + the result is a 0d array and not a scalar. + + Raises + ------ + ValueError + If `axis` is not None, and an axis being squeezed is not of length 1 + + See Also + -------- + expand_dims : The inverse operation, adding entries of length one + reshape : Insert, remove, and combine dimensions, and resize existing ones + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[[0], [1], [2]]]) + >>> x.shape + (1, 3, 1) + >>> np.squeeze(x).shape + (3,) + >>> np.squeeze(x, axis=0).shape + (3, 1) + >>> np.squeeze(x, axis=1).shape + Traceback (most recent call last): + ... + ValueError: cannot select an axis to squeeze out which has size + not equal to one + >>> np.squeeze(x, axis=2).shape + (1, 3) + >>> x = np.array([[1234]]) + >>> x.shape + (1, 1) + >>> np.squeeze(x) + array(1234) # 0d array + >>> np.squeeze(x).shape + () + >>> np.squeeze(x)[()] + 1234 + + """ + try: + squeeze = a.squeeze + except AttributeError: + return _wrapit(a, 'squeeze', axis=axis) + if axis is None: + return squeeze() + else: + return squeeze(axis=axis) + + +def _diagonal_dispatcher(a, offset=None, axis1=None, axis2=None): + return (a,) + + +@array_function_dispatch(_diagonal_dispatcher) +def diagonal(a, offset=0, axis1=0, axis2=1): + """ + Return specified diagonals. + + If `a` is 2-D, returns the diagonal of `a` with the given offset, + i.e., the collection of elements of the form ``a[i, i+offset]``. If + `a` has more than two dimensions, then the axes specified by `axis1` + and `axis2` are used to determine the 2-D sub-array whose diagonal is + returned. The shape of the resulting array can be determined by + removing `axis1` and `axis2` and appending an index to the right equal + to the size of the resulting diagonals. + + In versions of NumPy prior to 1.7, this function always returned a new, + independent array containing a copy of the values in the diagonal. + + In NumPy 1.7 and 1.8, it continues to return a copy of the diagonal, + but depending on this fact is deprecated. Writing to the resulting + array continues to work as it used to, but a FutureWarning is issued. + + Starting in NumPy 1.9 it returns a read-only view on the original array. + Attempting to write to the resulting array will produce an error. + + In some future release, it will return a read/write view and writing to + the returned array will alter your original array. The returned array + will have the same type as the input array. + + If you don't write to the array returned by this function, then you can + just ignore all of the above. + + If you depend on the current behavior, then we suggest copying the + returned array explicitly, i.e., use ``np.diagonal(a).copy()`` instead + of just ``np.diagonal(a)``. This will work with both past and future + versions of NumPy. + + Parameters + ---------- + a : array_like + Array from which the diagonals are taken. + offset : int, optional + Offset of the diagonal from the main diagonal. Can be positive or + negative. Defaults to main diagonal (0). + axis1 : int, optional + Axis to be used as the first axis of the 2-D sub-arrays from which + the diagonals should be taken. Defaults to first axis (0). + axis2 : int, optional + Axis to be used as the second axis of the 2-D sub-arrays from + which the diagonals should be taken. Defaults to second axis (1). + + Returns + ------- + array_of_diagonals : ndarray + If `a` is 2-D, then a 1-D array containing the diagonal and of the + same type as `a` is returned unless `a` is a `matrix`, in which case + a 1-D array rather than a (2-D) `matrix` is returned in order to + maintain backward compatibility. + + If ``a.ndim > 2``, then the dimensions specified by `axis1` and `axis2` + are removed, and a new axis inserted at the end corresponding to the + diagonal. + + Raises + ------ + ValueError + If the dimension of `a` is less than 2. + + See Also + -------- + diag : MATLAB work-a-like for 1-D and 2-D arrays. + diagflat : Create diagonal arrays. + trace : Sum along diagonals. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(4).reshape(2,2) + >>> a + array([[0, 1], + [2, 3]]) + >>> a.diagonal() + array([0, 3]) + >>> a.diagonal(1) + array([1]) + + A 3-D example: + + >>> a = np.arange(8).reshape(2,2,2); a + array([[[0, 1], + [2, 3]], + [[4, 5], + [6, 7]]]) + >>> a.diagonal(0, # Main diagonals of two arrays created by skipping + ... 0, # across the outer(left)-most axis last and + ... 1) # the "middle" (row) axis first. + array([[0, 6], + [1, 7]]) + + The sub-arrays whose main diagonals we just obtained; note that each + corresponds to fixing the right-most (column) axis, and that the + diagonals are "packed" in rows. + + >>> a[:,:,0] # main diagonal is [0 6] + array([[0, 2], + [4, 6]]) + >>> a[:,:,1] # main diagonal is [1 7] + array([[1, 3], + [5, 7]]) + + The anti-diagonal can be obtained by reversing the order of elements + using either `numpy.flipud` or `numpy.fliplr`. + + >>> a = np.arange(9).reshape(3, 3) + >>> a + array([[0, 1, 2], + [3, 4, 5], + [6, 7, 8]]) + >>> np.fliplr(a).diagonal() # Horizontal flip + array([2, 4, 6]) + >>> np.flipud(a).diagonal() # Vertical flip + array([6, 4, 2]) + + Note that the order in which the diagonal is retrieved varies depending + on the flip function. + """ + if isinstance(a, np.matrix): + # Make diagonal of matrix 1-D to preserve backward compatibility. + return asarray(a).diagonal(offset=offset, axis1=axis1, axis2=axis2) + else: + return asanyarray(a).diagonal(offset=offset, axis1=axis1, axis2=axis2) + + +def _trace_dispatcher( + a, offset=None, axis1=None, axis2=None, dtype=None, out=None): + return (a, out) + + +@array_function_dispatch(_trace_dispatcher) +def trace(a, offset=0, axis1=0, axis2=1, dtype=None, out=None): + """ + Return the sum along diagonals of the array. + + If `a` is 2-D, the sum along its diagonal with the given offset + is returned, i.e., the sum of elements ``a[i,i+offset]`` for all i. + + If `a` has more than two dimensions, then the axes specified by axis1 and + axis2 are used to determine the 2-D sub-arrays whose traces are returned. + The shape of the resulting array is the same as that of `a` with `axis1` + and `axis2` removed. + + Parameters + ---------- + a : array_like + Input array, from which the diagonals are taken. + offset : int, optional + Offset of the diagonal from the main diagonal. Can be both positive + and negative. Defaults to 0. + axis1, axis2 : int, optional + Axes to be used as the first and second axis of the 2-D sub-arrays + from which the diagonals should be taken. Defaults are the first two + axes of `a`. + dtype : dtype, optional + Determines the data-type of the returned array and of the accumulator + where the elements are summed. If dtype has the value None and `a` is + of integer type of precision less than the default integer + precision, then the default integer precision is used. Otherwise, + the precision is the same as that of `a`. + out : ndarray, optional + Array into which the output is placed. Its type is preserved and + it must be of the right shape to hold the output. + + Returns + ------- + sum_along_diagonals : ndarray + If `a` is 2-D, the sum along the diagonal is returned. If `a` has + larger dimensions, then an array of sums along diagonals is returned. + + See Also + -------- + diag, diagonal, diagflat + + Examples + -------- + >>> import numpy as np + >>> np.trace(np.eye(3)) + 3.0 + >>> a = np.arange(8).reshape((2,2,2)) + >>> np.trace(a) + array([6, 8]) + + >>> a = np.arange(24).reshape((2,2,2,3)) + >>> np.trace(a).shape + (2, 3) + + """ + if isinstance(a, np.matrix): + # Get trace of matrix via an array to preserve backward compatibility. + return asarray(a).trace( + offset=offset, axis1=axis1, axis2=axis2, dtype=dtype, out=out + ) + else: + return asanyarray(a).trace( + offset=offset, axis1=axis1, axis2=axis2, dtype=dtype, out=out + ) + + +def _ravel_dispatcher(a, order=None): + return (a,) + + +@array_function_dispatch(_ravel_dispatcher) +def ravel(a, order='C'): + """Return a contiguous flattened array. + + A 1-D array, containing the elements of the input, is returned. A copy is + made only if needed. + + As of NumPy 1.10, the returned array will have the same type as the input + array. (for example, a masked array will be returned for a masked array + input) + + Parameters + ---------- + a : array_like + Input array. The elements in `a` are read in the order specified by + `order`, and packed as a 1-D array. + order : {'C','F', 'A', 'K'}, optional + + The elements of `a` are read using this index order. 'C' means + to index the elements in row-major, C-style order, + with the last axis index changing fastest, back to the first + axis index changing slowest. 'F' means to index the elements + in column-major, Fortran-style order, with the + first index changing fastest, and the last index changing + slowest. Note that the 'C' and 'F' options take no account of + the memory layout of the underlying array, and only refer to + the order of axis indexing. 'A' means to read the elements in + Fortran-like index order if `a` is Fortran *contiguous* in + memory, C-like order otherwise. 'K' means to read the + elements in the order they occur in memory, except for + reversing the data when strides are negative. By default, 'C' + index order is used. + + Returns + ------- + y : array_like + y is a contiguous 1-D array of the same subtype as `a`, + with shape ``(a.size,)``. + Note that matrices are special cased for backward compatibility, + if `a` is a matrix, then y is a 1-D ndarray. + + See Also + -------- + ndarray.flat : 1-D iterator over an array. + ndarray.flatten : 1-D array copy of the elements of an array + in row-major order. + ndarray.reshape : Change the shape of an array without changing its data. + + Notes + ----- + In row-major, C-style order, in two dimensions, the row index + varies the slowest, and the column index the quickest. This can + be generalized to multiple dimensions, where row-major order + implies that the index along the first axis varies slowest, and + the index along the last quickest. The opposite holds for + column-major, Fortran-style index ordering. + + When a view is desired in as many cases as possible, ``arr.reshape(-1)`` + may be preferable. However, ``ravel`` supports ``K`` in the optional + ``order`` argument while ``reshape`` does not. + + Examples + -------- + It is equivalent to ``reshape(-1, order=order)``. + + >>> import numpy as np + >>> x = np.array([[1, 2, 3], [4, 5, 6]]) + >>> np.ravel(x) + array([1, 2, 3, 4, 5, 6]) + + >>> x.reshape(-1) + array([1, 2, 3, 4, 5, 6]) + + >>> np.ravel(x, order='F') + array([1, 4, 2, 5, 3, 6]) + + When ``order`` is 'A', it will preserve the array's 'C' or 'F' ordering: + + >>> np.ravel(x.T) + array([1, 4, 2, 5, 3, 6]) + >>> np.ravel(x.T, order='A') + array([1, 2, 3, 4, 5, 6]) + + When ``order`` is 'K', it will preserve orderings that are neither 'C' + nor 'F', but won't reverse axes: + + >>> a = np.arange(3)[::-1]; a + array([2, 1, 0]) + >>> a.ravel(order='C') + array([2, 1, 0]) + >>> a.ravel(order='K') + array([2, 1, 0]) + + >>> a = np.arange(12).reshape(2,3,2).swapaxes(1,2); a + array([[[ 0, 2, 4], + [ 1, 3, 5]], + [[ 6, 8, 10], + [ 7, 9, 11]]]) + >>> a.ravel(order='C') + array([ 0, 2, 4, 1, 3, 5, 6, 8, 10, 7, 9, 11]) + >>> a.ravel(order='K') + array([ 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11]) + + """ + if isinstance(a, np.matrix): + return asarray(a).ravel(order=order) + else: + return asanyarray(a).ravel(order=order) + + +def _nonzero_dispatcher(a): + return (a,) + + +@array_function_dispatch(_nonzero_dispatcher) +def nonzero(a): + """ + Return the indices of the elements that are non-zero. + + Returns a tuple of arrays, one for each dimension of `a`, + containing the indices of the non-zero elements in that + dimension. The values in `a` are always tested and returned in + row-major, C-style order. + + To group the indices by element, rather than dimension, use `argwhere`, + which returns a row for each non-zero element. + + .. note:: + + When called on a zero-d array or scalar, ``nonzero(a)`` is treated + as ``nonzero(atleast_1d(a))``. + + .. deprecated:: 1.17.0 + + Use `atleast_1d` explicitly if this behavior is deliberate. + + Parameters + ---------- + a : array_like + Input array. + + Returns + ------- + tuple_of_arrays : tuple + Indices of elements that are non-zero. + + See Also + -------- + flatnonzero : + Return indices that are non-zero in the flattened version of the input + array. + ndarray.nonzero : + Equivalent ndarray method. + count_nonzero : + Counts the number of non-zero elements in the input array. + + Notes + ----- + While the nonzero values can be obtained with ``a[nonzero(a)]``, it is + recommended to use ``x[x.astype(bool)]`` or ``x[x != 0]`` instead, which + will correctly handle 0-d arrays. + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[3, 0, 0], [0, 4, 0], [5, 6, 0]]) + >>> x + array([[3, 0, 0], + [0, 4, 0], + [5, 6, 0]]) + >>> np.nonzero(x) + (array([0, 1, 2, 2]), array([0, 1, 0, 1])) + + >>> x[np.nonzero(x)] + array([3, 4, 5, 6]) + >>> np.transpose(np.nonzero(x)) + array([[0, 0], + [1, 1], + [2, 0], + [2, 1]]) + + A common use for ``nonzero`` is to find the indices of an array, where + a condition is True. Given an array `a`, the condition `a` > 3 is a + boolean array and since False is interpreted as 0, np.nonzero(a > 3) + yields the indices of the `a` where the condition is true. + + >>> a = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + >>> a > 3 + array([[False, False, False], + [ True, True, True], + [ True, True, True]]) + >>> np.nonzero(a > 3) + (array([1, 1, 1, 2, 2, 2]), array([0, 1, 2, 0, 1, 2])) + + Using this result to index `a` is equivalent to using the mask directly: + + >>> a[np.nonzero(a > 3)] + array([4, 5, 6, 7, 8, 9]) + >>> a[a > 3] # prefer this spelling + array([4, 5, 6, 7, 8, 9]) + + ``nonzero`` can also be called as a method of the array. + + >>> (a > 3).nonzero() + (array([1, 1, 1, 2, 2, 2]), array([0, 1, 2, 0, 1, 2])) + + """ + return _wrapfunc(a, 'nonzero') + + +def _shape_dispatcher(a): + return (a,) + + +@array_function_dispatch(_shape_dispatcher) +def shape(a): + """ + Return the shape of an array. + + Parameters + ---------- + a : array_like + Input array. + + Returns + ------- + shape : tuple of ints + The elements of the shape tuple give the lengths of the + corresponding array dimensions. + + See Also + -------- + len : ``len(a)`` is equivalent to ``np.shape(a)[0]`` for N-D arrays with + ``N>=1``. + ndarray.shape : Equivalent array method. + + Examples + -------- + >>> import numpy as np + >>> np.shape(np.eye(3)) + (3, 3) + >>> np.shape([[1, 3]]) + (1, 2) + >>> np.shape([0]) + (1,) + >>> np.shape(0) + () + + >>> a = np.array([(1, 2), (3, 4), (5, 6)], + ... dtype=[('x', 'i4'), ('y', 'i4')]) + >>> np.shape(a) + (3,) + >>> a.shape + (3,) + + """ + try: + result = a.shape + except AttributeError: + result = asarray(a).shape + return result + + +def _compress_dispatcher(condition, a, axis=None, out=None): + return (condition, a, out) + + +@array_function_dispatch(_compress_dispatcher) +def compress(condition, a, axis=None, out=None): + """ + Return selected slices of an array along given axis. + + When working along a given axis, a slice along that axis is returned in + `output` for each index where `condition` evaluates to True. When + working on a 1-D array, `compress` is equivalent to `extract`. + + Parameters + ---------- + condition : 1-D array of bools + Array that selects which entries to return. If len(condition) + is less than the size of `a` along the given axis, then output is + truncated to the length of the condition array. + a : array_like + Array from which to extract a part. + axis : int, optional + Axis along which to take slices. If None (default), work on the + flattened array. + out : ndarray, optional + Output array. Its type is preserved and it must be of the right + shape to hold the output. + + Returns + ------- + compressed_array : ndarray + A copy of `a` without the slices along axis for which `condition` + is false. + + See Also + -------- + take, choose, diag, diagonal, select + ndarray.compress : Equivalent method in ndarray + extract : Equivalent method when working on 1-D arrays + :ref:`ufuncs-output-type` + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4], [5, 6]]) + >>> a + array([[1, 2], + [3, 4], + [5, 6]]) + >>> np.compress([0, 1], a, axis=0) + array([[3, 4]]) + >>> np.compress([False, True, True], a, axis=0) + array([[3, 4], + [5, 6]]) + >>> np.compress([False, True], a, axis=1) + array([[2], + [4], + [6]]) + + Working on the flattened array does not return slices along an axis but + selects elements. + + >>> np.compress([False, True], a) + array([2]) + + """ + return _wrapfunc(a, 'compress', condition, axis=axis, out=out) + + +def _clip_dispatcher(a, a_min=None, a_max=None, out=None, *, min=None, + max=None, **kwargs): + return (a, a_min, a_max, out, min, max) + + +@array_function_dispatch(_clip_dispatcher) +def clip(a, a_min=np._NoValue, a_max=np._NoValue, out=None, *, + min=np._NoValue, max=np._NoValue, **kwargs): + """ + Clip (limit) the values in an array. + + Given an interval, values outside the interval are clipped to + the interval edges. For example, if an interval of ``[0, 1]`` + is specified, values smaller than 0 become 0, and values larger + than 1 become 1. + + Equivalent to but faster than ``np.minimum(a_max, np.maximum(a, a_min))``. + + No check is performed to ensure ``a_min < a_max``. + + Parameters + ---------- + a : array_like + Array containing elements to clip. + a_min, a_max : array_like or None + Minimum and maximum value. If ``None``, clipping is not performed on + the corresponding edge. If both ``a_min`` and ``a_max`` are ``None``, + the elements of the returned array stay the same. Both are broadcasted + against ``a``. + out : ndarray, optional + The results will be placed in this array. It may be the input + array for in-place clipping. `out` must be of the right shape + to hold the output. Its type is preserved. + min, max : array_like or None + Array API compatible alternatives for ``a_min`` and ``a_max`` + arguments. Either ``a_min`` and ``a_max`` or ``min`` and ``max`` + can be passed at the same time. Default: ``None``. + + .. versionadded:: 2.1.0 + **kwargs + For other keyword-only arguments, see the + :ref:`ufunc docs `. + + Returns + ------- + clipped_array : ndarray + An array with the elements of `a`, but where values + < `a_min` are replaced with `a_min`, and those > `a_max` + with `a_max`. + + See Also + -------- + :ref:`ufuncs-output-type` + + Notes + ----- + When `a_min` is greater than `a_max`, `clip` returns an + array in which all values are equal to `a_max`, + as shown in the second example. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(10) + >>> a + array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) + >>> np.clip(a, 1, 8) + array([1, 1, 2, 3, 4, 5, 6, 7, 8, 8]) + >>> np.clip(a, 8, 1) + array([1, 1, 1, 1, 1, 1, 1, 1, 1, 1]) + >>> np.clip(a, 3, 6, out=a) + array([3, 3, 3, 3, 4, 5, 6, 6, 6, 6]) + >>> a + array([3, 3, 3, 3, 4, 5, 6, 6, 6, 6]) + >>> a = np.arange(10) + >>> a + array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) + >>> np.clip(a, [3, 4, 1, 1, 1, 4, 4, 4, 4, 4], 8) + array([3, 4, 2, 3, 4, 5, 6, 7, 8, 8]) + + """ + if a_min is np._NoValue and a_max is np._NoValue: + a_min = None if min is np._NoValue else min + a_max = None if max is np._NoValue else max + elif a_min is np._NoValue: + raise TypeError("clip() missing 1 required positional " + "argument: 'a_min'") + elif a_max is np._NoValue: + raise TypeError("clip() missing 1 required positional " + "argument: 'a_max'") + elif min is not np._NoValue or max is not np._NoValue: + raise ValueError("Passing `min` or `max` keyword argument when " + "`a_min` and `a_max` are provided is forbidden.") + + return _wrapfunc(a, 'clip', a_min, a_max, out=out, **kwargs) + + +def _sum_dispatcher(a, axis=None, dtype=None, out=None, keepdims=None, + initial=None, where=None): + return (a, out) + + +@array_function_dispatch(_sum_dispatcher) +def sum(a, axis=None, dtype=None, out=None, keepdims=np._NoValue, + initial=np._NoValue, where=np._NoValue): + """ + Sum of array elements over a given axis. + + Parameters + ---------- + a : array_like + Elements to sum. + axis : None or int or tuple of ints, optional + Axis or axes along which a sum is performed. The default, + axis=None, will sum all of the elements of the input array. If + axis is negative it counts from the last to the first axis. If + axis is a tuple of ints, a sum is performed on all of the axes + specified in the tuple instead of a single axis or all the axes as + before. + dtype : dtype, optional + The type of the returned array and of the accumulator in which the + elements are summed. The dtype of `a` is used by default unless `a` + has an integer dtype of less precision than the default platform + integer. In that case, if `a` is signed then the platform integer + is used while if `a` is unsigned then an unsigned integer of the + same precision as the platform integer is used. + out : ndarray, optional + Alternative output array in which to place the result. It must have + the same shape as the expected output, but the type of the output + values will be cast if necessary. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `sum` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + initial : scalar, optional + Starting value for the sum. See `~numpy.ufunc.reduce` for details. + where : array_like of bool, optional + Elements to include in the sum. See `~numpy.ufunc.reduce` for details. + + Returns + ------- + sum_along_axis : ndarray + An array with the same shape as `a`, with the specified + axis removed. If `a` is a 0-d array, or if `axis` is None, a scalar + is returned. If an output array is specified, a reference to + `out` is returned. + + See Also + -------- + ndarray.sum : Equivalent method. + add: ``numpy.add.reduce`` equivalent function. + cumsum : Cumulative sum of array elements. + trapezoid : Integration of array values using composite trapezoidal rule. + + mean, average + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. + + The sum of an empty array is the neutral element 0: + + >>> np.sum([]) + 0.0 + + For floating point numbers the numerical precision of sum (and + ``np.add.reduce``) is in general limited by directly adding each number + individually to the result causing rounding errors in every step. + However, often numpy will use a numerically better approach (partial + pairwise summation) leading to improved precision in many use-cases. + This improved precision is always provided when no ``axis`` is given. + When ``axis`` is given, it will depend on which axis is summed. + Technically, to provide the best speed possible, the improved precision + is only used when the summation is along the fast axis in memory. + Note that the exact precision may vary depending on other parameters. + In contrast to NumPy, Python's ``math.fsum`` function uses a slower but + more precise approach to summation. + Especially when summing a large number of lower precision floating point + numbers, such as ``float32``, numerical errors can become significant. + In such cases it can be advisable to use `dtype="float64"` to use a higher + precision for the output. + + Examples + -------- + >>> import numpy as np + >>> np.sum([0.5, 1.5]) + 2.0 + >>> np.sum([0.5, 0.7, 0.2, 1.5], dtype=np.int32) + np.int32(1) + >>> np.sum([[0, 1], [0, 5]]) + 6 + >>> np.sum([[0, 1], [0, 5]], axis=0) + array([0, 6]) + >>> np.sum([[0, 1], [0, 5]], axis=1) + array([1, 5]) + >>> np.sum([[0, 1], [np.nan, 5]], where=[False, True], axis=1) + array([1., 5.]) + + If the accumulator is too small, overflow occurs: + + >>> np.ones(128, dtype=np.int8).sum(dtype=np.int8) + np.int8(-128) + + You can also start the sum with a value other than zero: + + >>> np.sum([10], initial=5) + 15 + """ + if isinstance(a, _gentype): + # 2018-02-25, 1.15.0 + warnings.warn( + "Calling np.sum(generator) is deprecated, and in the future will " + "give a different result. Use np.sum(np.fromiter(generator)) or " + "the python sum builtin instead.", + DeprecationWarning, stacklevel=2 + ) + + res = _sum_(a) + if out is not None: + out[...] = res + return out + return res + + return _wrapreduction( + a, np.add, 'sum', axis, dtype, out, + keepdims=keepdims, initial=initial, where=where + ) + + +def _any_dispatcher(a, axis=None, out=None, keepdims=None, *, + where=np._NoValue): + return (a, where, out) + + +@array_function_dispatch(_any_dispatcher) +def any(a, axis=None, out=None, keepdims=np._NoValue, *, where=np._NoValue): + """ + Test whether any array element along a given axis evaluates to True. + + Returns single boolean if `axis` is ``None`` + + Parameters + ---------- + a : array_like + Input array or object that can be converted to an array. + axis : None or int or tuple of ints, optional + Axis or axes along which a logical OR reduction is performed. + The default (``axis=None``) is to perform a logical OR over all + the dimensions of the input array. `axis` may be negative, in + which case it counts from the last to the first axis. If this + is a tuple of ints, a reduction is performed on multiple + axes, instead of a single axis or all the axes as before. + out : ndarray, optional + Alternate output array in which to place the result. It must have + the same shape as the expected output and its type is preserved + (e.g., if it is of type float, then it will remain so, returning + 1.0 for True and 0.0 for False, regardless of the type of `a`). + See :ref:`ufuncs-output-type` for more details. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `any` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + where : array_like of bool, optional + Elements to include in checking for any `True` values. + See `~numpy.ufunc.reduce` for details. + + .. versionadded:: 1.20.0 + + Returns + ------- + any : bool or ndarray + A new boolean or `ndarray` is returned unless `out` is specified, + in which case a reference to `out` is returned. + + See Also + -------- + ndarray.any : equivalent method + + all : Test whether all elements along a given axis evaluate to True. + + Notes + ----- + Not a Number (NaN), positive infinity and negative infinity evaluate + to `True` because these are not equal to zero. + + .. versionchanged:: 2.0 + Before NumPy 2.0, ``any`` did not return booleans for object dtype + input arrays. + This behavior is still available via ``np.logical_or.reduce``. + + Examples + -------- + >>> import numpy as np + >>> np.any([[True, False], [True, True]]) + True + + >>> np.any([[True, False, True ], + ... [False, False, False]], axis=0) + array([ True, False, True]) + + >>> np.any([-1, 0, 5]) + True + + >>> np.any([[np.nan], [np.inf]], axis=1, keepdims=True) + array([[ True], + [ True]]) + + >>> np.any([[True, False], [False, False]], where=[[False], [True]]) + False + + >>> a = np.array([[1, 0, 0], + ... [0, 0, 1], + ... [0, 0, 0]]) + >>> np.any(a, axis=0) + array([ True, False, True]) + >>> np.any(a, axis=1) + array([ True, True, False]) + + >>> o=np.array(False) + >>> z=np.any([-1, 4, 5], out=o) + >>> z, o + (array(True), array(True)) + >>> # Check now that z is a reference to o + >>> z is o + True + >>> id(z), id(o) # identity of z and o # doctest: +SKIP + (191614240, 191614240) + + """ + return _wrapreduction_any_all(a, np.logical_or, 'any', axis, out, + keepdims=keepdims, where=where) + + +def _all_dispatcher(a, axis=None, out=None, keepdims=None, *, + where=None): + return (a, where, out) + + +@array_function_dispatch(_all_dispatcher) +def all(a, axis=None, out=None, keepdims=np._NoValue, *, where=np._NoValue): + """ + Test whether all array elements along a given axis evaluate to True. + + Parameters + ---------- + a : array_like + Input array or object that can be converted to an array. + axis : None or int or tuple of ints, optional + Axis or axes along which a logical AND reduction is performed. + The default (``axis=None``) is to perform a logical AND over all + the dimensions of the input array. `axis` may be negative, in + which case it counts from the last to the first axis. If this + is a tuple of ints, a reduction is performed on multiple + axes, instead of a single axis or all the axes as before. + out : ndarray, optional + Alternate output array in which to place the result. + It must have the same shape as the expected output and its + type is preserved (e.g., if ``dtype(out)`` is float, the result + will consist of 0.0's and 1.0's). See :ref:`ufuncs-output-type` + for more details. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `all` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + where : array_like of bool, optional + Elements to include in checking for all `True` values. + See `~numpy.ufunc.reduce` for details. + + .. versionadded:: 1.20.0 + + Returns + ------- + all : ndarray, bool + A new boolean or array is returned unless `out` is specified, + in which case a reference to `out` is returned. + + See Also + -------- + ndarray.all : equivalent method + + any : Test whether any element along a given axis evaluates to True. + + Notes + ----- + Not a Number (NaN), positive infinity and negative infinity + evaluate to `True` because these are not equal to zero. + + .. versionchanged:: 2.0 + Before NumPy 2.0, ``all`` did not return booleans for object dtype + input arrays. + This behavior is still available via ``np.logical_and.reduce``. + + Examples + -------- + >>> import numpy as np + >>> np.all([[True,False],[True,True]]) + False + + >>> np.all([[True,False],[True,True]], axis=0) + array([ True, False]) + + >>> np.all([-1, 4, 5]) + True + + >>> np.all([1.0, np.nan]) + True + + >>> np.all([[True, True], [False, True]], where=[[True], [False]]) + True + + >>> o=np.array(False) + >>> z=np.all([-1, 4, 5], out=o) + >>> id(z), id(o), z + (28293632, 28293632, array(True)) # may vary + + """ + return _wrapreduction_any_all(a, np.logical_and, 'all', axis, out, + keepdims=keepdims, where=where) + + +def _cumulative_func(x, func, axis, dtype, out, include_initial): + x = np.atleast_1d(x) + x_ndim = x.ndim + if axis is None: + if x_ndim >= 2: + raise ValueError("For arrays which have more than one dimension " + "``axis`` argument is required.") + axis = 0 + + if out is not None and include_initial: + item = [slice(None)] * x_ndim + item[axis] = slice(1, None) + func.accumulate(x, axis=axis, dtype=dtype, out=out[tuple(item)]) + item[axis] = 0 + out[tuple(item)] = func.identity + return out + + res = func.accumulate(x, axis=axis, dtype=dtype, out=out) + if include_initial: + initial_shape = list(x.shape) + initial_shape[axis] = 1 + res = np.concat( + [np.full_like(res, func.identity, shape=initial_shape), res], + axis=axis, + ) + + return res + + +def _cumulative_prod_dispatcher(x, /, *, axis=None, dtype=None, out=None, + include_initial=None): + return (x, out) + + +@array_function_dispatch(_cumulative_prod_dispatcher) +def cumulative_prod(x, /, *, axis=None, dtype=None, out=None, + include_initial=False): + """ + Return the cumulative product of elements along a given axis. + + This function is an Array API compatible alternative to `numpy.cumprod`. + + Parameters + ---------- + x : array_like + Input array. + axis : int, optional + Axis along which the cumulative product is computed. The default + (None) is only allowed for one-dimensional arrays. For arrays + with more than one dimension ``axis`` is required. + dtype : dtype, optional + Type of the returned array, as well as of the accumulator in which + the elements are multiplied. If ``dtype`` is not specified, it + defaults to the dtype of ``x``, unless ``x`` has an integer dtype + with a precision less than that of the default platform integer. + In that case, the default platform integer is used instead. + out : ndarray, optional + Alternative output array in which to place the result. It must + have the same shape and buffer length as the expected output + but the type of the resulting values will be cast if necessary. + See :ref:`ufuncs-output-type` for more details. + include_initial : bool, optional + Boolean indicating whether to include the initial value (ones) as + the first value in the output. With ``include_initial=True`` + the shape of the output is different than the shape of the input. + Default: ``False``. + + Returns + ------- + cumulative_prod_along_axis : ndarray + A new array holding the result is returned unless ``out`` is + specified, in which case a reference to ``out`` is returned. The + result has the same shape as ``x`` if ``include_initial=False``. + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. + + Examples + -------- + >>> a = np.array([1, 2, 3]) + >>> np.cumulative_prod(a) # intermediate results 1, 1*2 + ... # total product 1*2*3 = 6 + array([1, 2, 6]) + >>> a = np.array([1, 2, 3, 4, 5, 6]) + >>> np.cumulative_prod(a, dtype=float) # specify type of output + array([ 1., 2., 6., 24., 120., 720.]) + + The cumulative product for each column (i.e., over the rows) of ``b``: + + >>> b = np.array([[1, 2, 3], [4, 5, 6]]) + >>> np.cumulative_prod(b, axis=0) + array([[ 1, 2, 3], + [ 4, 10, 18]]) + + The cumulative product for each row (i.e. over the columns) of ``b``: + + >>> np.cumulative_prod(b, axis=1) + array([[ 1, 2, 6], + [ 4, 20, 120]]) + + """ + return _cumulative_func(x, um.multiply, axis, dtype, out, include_initial) + + +def _cumulative_sum_dispatcher(x, /, *, axis=None, dtype=None, out=None, + include_initial=None): + return (x, out) + + +@array_function_dispatch(_cumulative_sum_dispatcher) +def cumulative_sum(x, /, *, axis=None, dtype=None, out=None, + include_initial=False): + """ + Return the cumulative sum of the elements along a given axis. + + This function is an Array API compatible alternative to `numpy.cumsum`. + + Parameters + ---------- + x : array_like + Input array. + axis : int, optional + Axis along which the cumulative sum is computed. The default + (None) is only allowed for one-dimensional arrays. For arrays + with more than one dimension ``axis`` is required. + dtype : dtype, optional + Type of the returned array and of the accumulator in which the + elements are summed. If ``dtype`` is not specified, it defaults + to the dtype of ``x``, unless ``x`` has an integer dtype with + a precision less than that of the default platform integer. + In that case, the default platform integer is used. + out : ndarray, optional + Alternative output array in which to place the result. It must + have the same shape and buffer length as the expected output + but the type will be cast if necessary. See :ref:`ufuncs-output-type` + for more details. + include_initial : bool, optional + Boolean indicating whether to include the initial value (zeros) as + the first value in the output. With ``include_initial=True`` + the shape of the output is different than the shape of the input. + Default: ``False``. + + Returns + ------- + cumulative_sum_along_axis : ndarray + A new array holding the result is returned unless ``out`` is + specified, in which case a reference to ``out`` is returned. The + result has the same shape as ``x`` if ``include_initial=False``. + + See Also + -------- + sum : Sum array elements. + trapezoid : Integration of array values using composite trapezoidal rule. + diff : Calculate the n-th discrete difference along given axis. + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. + + ``cumulative_sum(a)[-1]`` may not be equal to ``sum(a)`` for + floating-point values since ``sum`` may use a pairwise summation routine, + reducing the roundoff-error. See `sum` for more information. + + Examples + -------- + >>> a = np.array([1, 2, 3, 4, 5, 6]) + >>> a + array([1, 2, 3, 4, 5, 6]) + >>> np.cumulative_sum(a) + array([ 1, 3, 6, 10, 15, 21]) + >>> np.cumulative_sum(a, dtype=float) # specifies type of output value(s) + array([ 1., 3., 6., 10., 15., 21.]) + + >>> b = np.array([[1, 2, 3], [4, 5, 6]]) + >>> np.cumulative_sum(b,axis=0) # sum over rows for each of the 3 columns + array([[1, 2, 3], + [5, 7, 9]]) + >>> np.cumulative_sum(b,axis=1) # sum over columns for each of the 2 rows + array([[ 1, 3, 6], + [ 4, 9, 15]]) + + ``cumulative_sum(c)[-1]`` may not be equal to ``sum(c)`` + + >>> c = np.array([1, 2e-9, 3e-9] * 1000000) + >>> np.cumulative_sum(c)[-1] + 1000000.0050045159 + >>> c.sum() + 1000000.0050000029 + + """ + return _cumulative_func(x, um.add, axis, dtype, out, include_initial) + + +def _cumsum_dispatcher(a, axis=None, dtype=None, out=None): + return (a, out) + + +@array_function_dispatch(_cumsum_dispatcher) +def cumsum(a, axis=None, dtype=None, out=None): + """ + Return the cumulative sum of the elements along a given axis. + + Parameters + ---------- + a : array_like + Input array. + axis : int, optional + Axis along which the cumulative sum is computed. The default + (None) is to compute the cumsum over the flattened array. + dtype : dtype, optional + Type of the returned array and of the accumulator in which the + elements are summed. If `dtype` is not specified, it defaults + to the dtype of `a`, unless `a` has an integer dtype with a + precision less than that of the default platform integer. In + that case, the default platform integer is used. + out : ndarray, optional + Alternative output array in which to place the result. It must + have the same shape and buffer length as the expected output + but the type will be cast if necessary. See :ref:`ufuncs-output-type` + for more details. + + Returns + ------- + cumsum_along_axis : ndarray. + A new array holding the result is returned unless `out` is + specified, in which case a reference to `out` is returned. The + result has the same size as `a`, and the same shape as `a` if + `axis` is not None or `a` is a 1-d array. + + See Also + -------- + cumulative_sum : Array API compatible alternative for ``cumsum``. + sum : Sum array elements. + trapezoid : Integration of array values using composite trapezoidal rule. + diff : Calculate the n-th discrete difference along given axis. + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. + + ``cumsum(a)[-1]`` may not be equal to ``sum(a)`` for floating-point + values since ``sum`` may use a pairwise summation routine, reducing + the roundoff-error. See `sum` for more information. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,2,3], [4,5,6]]) + >>> a + array([[1, 2, 3], + [4, 5, 6]]) + >>> np.cumsum(a) + array([ 1, 3, 6, 10, 15, 21]) + >>> np.cumsum(a, dtype=float) # specifies type of output value(s) + array([ 1., 3., 6., 10., 15., 21.]) + + >>> np.cumsum(a,axis=0) # sum over rows for each of the 3 columns + array([[1, 2, 3], + [5, 7, 9]]) + >>> np.cumsum(a,axis=1) # sum over columns for each of the 2 rows + array([[ 1, 3, 6], + [ 4, 9, 15]]) + + ``cumsum(b)[-1]`` may not be equal to ``sum(b)`` + + >>> b = np.array([1, 2e-9, 3e-9] * 1000000) + >>> b.cumsum()[-1] + 1000000.0050045159 + >>> b.sum() + 1000000.0050000029 + + """ + return _wrapfunc(a, 'cumsum', axis=axis, dtype=dtype, out=out) + + +def _ptp_dispatcher(a, axis=None, out=None, keepdims=None): + return (a, out) + + +@array_function_dispatch(_ptp_dispatcher) +def ptp(a, axis=None, out=None, keepdims=np._NoValue): + """ + Range of values (maximum - minimum) along an axis. + + The name of the function comes from the acronym for 'peak to peak'. + + .. warning:: + `ptp` preserves the data type of the array. This means the + return value for an input of signed integers with n bits + (e.g. `numpy.int8`, `numpy.int16`, etc) is also a signed integer + with n bits. In that case, peak-to-peak values greater than + ``2**(n-1)-1`` will be returned as negative values. An example + with a work-around is shown below. + + Parameters + ---------- + a : array_like + Input values. + axis : None or int or tuple of ints, optional + Axis along which to find the peaks. By default, flatten the + array. `axis` may be negative, in + which case it counts from the last to the first axis. + If this is a tuple of ints, a reduction is performed on multiple + axes, instead of a single axis or all the axes as before. + out : array_like + Alternative output array in which to place the result. It must + have the same shape and buffer length as the expected output, + but the type of the output values will be cast if necessary. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `ptp` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + Returns + ------- + ptp : ndarray or scalar + The range of a given array - `scalar` if array is one-dimensional + or a new array holding the result along the given axis + + Examples + -------- + >>> import numpy as np + >>> x = np.array([[4, 9, 2, 10], + ... [6, 9, 7, 12]]) + + >>> np.ptp(x, axis=1) + array([8, 6]) + + >>> np.ptp(x, axis=0) + array([2, 0, 5, 2]) + + >>> np.ptp(x) + 10 + + This example shows that a negative value can be returned when + the input is an array of signed integers. + + >>> y = np.array([[1, 127], + ... [0, 127], + ... [-1, 127], + ... [-2, 127]], dtype=np.int8) + >>> np.ptp(y, axis=1) + array([ 126, 127, -128, -127], dtype=int8) + + A work-around is to use the `view()` method to view the result as + unsigned integers with the same bit width: + + >>> np.ptp(y, axis=1).view(np.uint8) + array([126, 127, 128, 129], dtype=uint8) + + """ + kwargs = {} + if keepdims is not np._NoValue: + kwargs['keepdims'] = keepdims + return _methods._ptp(a, axis=axis, out=out, **kwargs) + + +def _max_dispatcher(a, axis=None, out=None, keepdims=None, initial=None, + where=None): + return (a, out) + + +@array_function_dispatch(_max_dispatcher) +@set_module('numpy') +def max(a, axis=None, out=None, keepdims=np._NoValue, initial=np._NoValue, + where=np._NoValue): + """ + Return the maximum of an array or maximum along an axis. + + Parameters + ---------- + a : array_like + Input data. + axis : None or int or tuple of ints, optional + Axis or axes along which to operate. By default, flattened input is + used. If this is a tuple of ints, the maximum is selected over + multiple axes, instead of a single axis or all the axes as before. + + out : ndarray, optional + Alternative output array in which to place the result. Must + be of the same shape and buffer length as the expected output. + See :ref:`ufuncs-output-type` for more details. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the ``max`` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + initial : scalar, optional + The minimum value of an output element. Must be present to allow + computation on empty slice. See `~numpy.ufunc.reduce` for details. + + where : array_like of bool, optional + Elements to compare for the maximum. See `~numpy.ufunc.reduce` + for details. + + Returns + ------- + max : ndarray or scalar + Maximum of `a`. If `axis` is None, the result is a scalar value. + If `axis` is an int, the result is an array of dimension + ``a.ndim - 1``. If `axis` is a tuple, the result is an array of + dimension ``a.ndim - len(axis)``. + + See Also + -------- + amin : + The minimum value of an array along a given axis, propagating any NaNs. + nanmax : + The maximum value of an array along a given axis, ignoring any NaNs. + maximum : + Element-wise maximum of two arrays, propagating any NaNs. + fmax : + Element-wise maximum of two arrays, ignoring any NaNs. + argmax : + Return the indices of the maximum values. + + nanmin, minimum, fmin + + Notes + ----- + NaN values are propagated, that is if at least one item is NaN, the + corresponding max value will be NaN as well. To ignore NaN values + (MATLAB behavior), please use nanmax. + + Don't use `~numpy.max` for element-wise comparison of 2 arrays; when + ``a.shape[0]`` is 2, ``maximum(a[0], a[1])`` is faster than + ``max(a, axis=0)``. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(4).reshape((2,2)) + >>> a + array([[0, 1], + [2, 3]]) + >>> np.max(a) # Maximum of the flattened array + 3 + >>> np.max(a, axis=0) # Maxima along the first axis + array([2, 3]) + >>> np.max(a, axis=1) # Maxima along the second axis + array([1, 3]) + >>> np.max(a, where=[False, True], initial=-1, axis=0) + array([-1, 3]) + >>> b = np.arange(5, dtype=float) + >>> b[2] = np.nan + >>> np.max(b) + np.float64(nan) + >>> np.max(b, where=~np.isnan(b), initial=-1) + 4.0 + >>> np.nanmax(b) + 4.0 + + You can use an initial value to compute the maximum of an empty slice, or + to initialize it to a different value: + + >>> np.max([[-50], [10]], axis=-1, initial=0) + array([ 0, 10]) + + Notice that the initial value is used as one of the elements for which the + maximum is determined, unlike for the default argument Python's max + function, which is only used for empty iterables. + + >>> np.max([5], initial=6) + 6 + >>> max([5], default=6) + 5 + """ + return _wrapreduction(a, np.maximum, 'max', axis, None, out, + keepdims=keepdims, initial=initial, where=where) + + +@array_function_dispatch(_max_dispatcher) +def amax(a, axis=None, out=None, keepdims=np._NoValue, initial=np._NoValue, + where=np._NoValue): + """ + Return the maximum of an array or maximum along an axis. + + `amax` is an alias of `~numpy.max`. + + See Also + -------- + max : alias of this function + ndarray.max : equivalent method + """ + return _wrapreduction(a, np.maximum, 'max', axis, None, out, + keepdims=keepdims, initial=initial, where=where) + + +def _min_dispatcher(a, axis=None, out=None, keepdims=None, initial=None, + where=None): + return (a, out) + + +@array_function_dispatch(_min_dispatcher) +def min(a, axis=None, out=None, keepdims=np._NoValue, initial=np._NoValue, + where=np._NoValue): + """ + Return the minimum of an array or minimum along an axis. + + Parameters + ---------- + a : array_like + Input data. + axis : None or int or tuple of ints, optional + Axis or axes along which to operate. By default, flattened input is + used. + + If this is a tuple of ints, the minimum is selected over multiple axes, + instead of a single axis or all the axes as before. + out : ndarray, optional + Alternative output array in which to place the result. Must + be of the same shape and buffer length as the expected output. + See :ref:`ufuncs-output-type` for more details. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the ``min`` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + initial : scalar, optional + The maximum value of an output element. Must be present to allow + computation on empty slice. See `~numpy.ufunc.reduce` for details. + + where : array_like of bool, optional + Elements to compare for the minimum. See `~numpy.ufunc.reduce` + for details. + + Returns + ------- + min : ndarray or scalar + Minimum of `a`. If `axis` is None, the result is a scalar value. + If `axis` is an int, the result is an array of dimension + ``a.ndim - 1``. If `axis` is a tuple, the result is an array of + dimension ``a.ndim - len(axis)``. + + See Also + -------- + amax : + The maximum value of an array along a given axis, propagating any NaNs. + nanmin : + The minimum value of an array along a given axis, ignoring any NaNs. + minimum : + Element-wise minimum of two arrays, propagating any NaNs. + fmin : + Element-wise minimum of two arrays, ignoring any NaNs. + argmin : + Return the indices of the minimum values. + + nanmax, maximum, fmax + + Notes + ----- + NaN values are propagated, that is if at least one item is NaN, the + corresponding min value will be NaN as well. To ignore NaN values + (MATLAB behavior), please use nanmin. + + Don't use `~numpy.min` for element-wise comparison of 2 arrays; when + ``a.shape[0]`` is 2, ``minimum(a[0], a[1])`` is faster than + ``min(a, axis=0)``. + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(4).reshape((2,2)) + >>> a + array([[0, 1], + [2, 3]]) + >>> np.min(a) # Minimum of the flattened array + 0 + >>> np.min(a, axis=0) # Minima along the first axis + array([0, 1]) + >>> np.min(a, axis=1) # Minima along the second axis + array([0, 2]) + >>> np.min(a, where=[False, True], initial=10, axis=0) + array([10, 1]) + + >>> b = np.arange(5, dtype=float) + >>> b[2] = np.nan + >>> np.min(b) + np.float64(nan) + >>> np.min(b, where=~np.isnan(b), initial=10) + 0.0 + >>> np.nanmin(b) + 0.0 + + >>> np.min([[-50], [10]], axis=-1, initial=0) + array([-50, 0]) + + Notice that the initial value is used as one of the elements for which the + minimum is determined, unlike for the default argument Python's max + function, which is only used for empty iterables. + + Notice that this isn't the same as Python's ``default`` argument. + + >>> np.min([6], initial=5) + 5 + >>> min([6], default=5) + 6 + """ + return _wrapreduction(a, np.minimum, 'min', axis, None, out, + keepdims=keepdims, initial=initial, where=where) + + +@array_function_dispatch(_min_dispatcher) +def amin(a, axis=None, out=None, keepdims=np._NoValue, initial=np._NoValue, + where=np._NoValue): + """ + Return the minimum of an array or minimum along an axis. + + `amin` is an alias of `~numpy.min`. + + See Also + -------- + min : alias of this function + ndarray.min : equivalent method + """ + return _wrapreduction(a, np.minimum, 'min', axis, None, out, + keepdims=keepdims, initial=initial, where=where) + + +def _prod_dispatcher(a, axis=None, dtype=None, out=None, keepdims=None, + initial=None, where=None): + return (a, out) + + +@array_function_dispatch(_prod_dispatcher) +def prod(a, axis=None, dtype=None, out=None, keepdims=np._NoValue, + initial=np._NoValue, where=np._NoValue): + """ + Return the product of array elements over a given axis. + + Parameters + ---------- + a : array_like + Input data. + axis : None or int or tuple of ints, optional + Axis or axes along which a product is performed. The default, + axis=None, will calculate the product of all the elements in the + input array. If axis is negative it counts from the last to the + first axis. + + If axis is a tuple of ints, a product is performed on all of the + axes specified in the tuple instead of a single axis or all the + axes as before. + dtype : dtype, optional + The type of the returned array, as well as of the accumulator in + which the elements are multiplied. The dtype of `a` is used by + default unless `a` has an integer dtype of less precision than the + default platform integer. In that case, if `a` is signed then the + platform integer is used while if `a` is unsigned then an unsigned + integer of the same precision as the platform integer is used. + out : ndarray, optional + Alternative output array in which to place the result. It must have + the same shape as the expected output, but the type of the output + values will be cast if necessary. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left in the + result as dimensions with size one. With this option, the result + will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `prod` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + initial : scalar, optional + The starting value for this product. See `~numpy.ufunc.reduce` + for details. + where : array_like of bool, optional + Elements to include in the product. See `~numpy.ufunc.reduce` + for details. + + Returns + ------- + product_along_axis : ndarray, see `dtype` parameter above. + An array shaped as `a` but with the specified axis removed. + Returns a reference to `out` if specified. + + See Also + -------- + ndarray.prod : equivalent method + :ref:`ufuncs-output-type` + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. That means that, on a 32-bit platform: + + >>> x = np.array([536870910, 536870910, 536870910, 536870910]) + >>> np.prod(x) + 16 # may vary + + The product of an empty array is the neutral element 1: + + >>> np.prod([]) + 1.0 + + Examples + -------- + By default, calculate the product of all elements: + + >>> import numpy as np + >>> np.prod([1.,2.]) + 2.0 + + Even when the input array is two-dimensional: + + >>> a = np.array([[1., 2.], [3., 4.]]) + >>> np.prod(a) + 24.0 + + But we can also specify the axis over which to multiply: + + >>> np.prod(a, axis=1) + array([ 2., 12.]) + >>> np.prod(a, axis=0) + array([3., 8.]) + + Or select specific elements to include: + + >>> np.prod([1., np.nan, 3.], where=[True, False, True]) + 3.0 + + If the type of `x` is unsigned, then the output type is + the unsigned platform integer: + + >>> x = np.array([1, 2, 3], dtype=np.uint8) + >>> np.prod(x).dtype == np.uint + True + + If `x` is of a signed integer type, then the output type + is the default platform integer: + + >>> x = np.array([1, 2, 3], dtype=np.int8) + >>> np.prod(x).dtype == int + True + + You can also start the product with a value other than one: + + >>> np.prod([1, 2], initial=5) + 10 + """ + return _wrapreduction(a, np.multiply, 'prod', axis, dtype, out, + keepdims=keepdims, initial=initial, where=where) + + +def _cumprod_dispatcher(a, axis=None, dtype=None, out=None): + return (a, out) + + +@array_function_dispatch(_cumprod_dispatcher) +def cumprod(a, axis=None, dtype=None, out=None): + """ + Return the cumulative product of elements along a given axis. + + Parameters + ---------- + a : array_like + Input array. + axis : int, optional + Axis along which the cumulative product is computed. By default + the input is flattened. + dtype : dtype, optional + Type of the returned array, as well as of the accumulator in which + the elements are multiplied. If *dtype* is not specified, it + defaults to the dtype of `a`, unless `a` has an integer dtype with + a precision less than that of the default platform integer. In + that case, the default platform integer is used instead. + out : ndarray, optional + Alternative output array in which to place the result. It must + have the same shape and buffer length as the expected output + but the type of the resulting values will be cast if necessary. + + Returns + ------- + cumprod : ndarray + A new array holding the result is returned unless `out` is + specified, in which case a reference to out is returned. + + See Also + -------- + cumulative_prod : Array API compatible alternative for ``cumprod``. + :ref:`ufuncs-output-type` + + Notes + ----- + Arithmetic is modular when using integer types, and no error is + raised on overflow. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([1,2,3]) + >>> np.cumprod(a) # intermediate results 1, 1*2 + ... # total product 1*2*3 = 6 + array([1, 2, 6]) + >>> a = np.array([[1, 2, 3], [4, 5, 6]]) + >>> np.cumprod(a, dtype=float) # specify type of output + array([ 1., 2., 6., 24., 120., 720.]) + + The cumulative product for each column (i.e., over the rows) of `a`: + + >>> np.cumprod(a, axis=0) + array([[ 1, 2, 3], + [ 4, 10, 18]]) + + The cumulative product for each row (i.e. over the columns) of `a`: + + >>> np.cumprod(a,axis=1) + array([[ 1, 2, 6], + [ 4, 20, 120]]) + + """ + return _wrapfunc(a, 'cumprod', axis=axis, dtype=dtype, out=out) + + +def _ndim_dispatcher(a): + return (a,) + + +@array_function_dispatch(_ndim_dispatcher) +def ndim(a): + """ + Return the number of dimensions of an array. + + Parameters + ---------- + a : array_like + Input array. If it is not already an ndarray, a conversion is + attempted. + + Returns + ------- + number_of_dimensions : int + The number of dimensions in `a`. Scalars are zero-dimensional. + + See Also + -------- + ndarray.ndim : equivalent method + shape : dimensions of array + ndarray.shape : dimensions of array + + Examples + -------- + >>> import numpy as np + >>> np.ndim([[1,2,3],[4,5,6]]) + 2 + >>> np.ndim(np.array([[1,2,3],[4,5,6]])) + 2 + >>> np.ndim(1) + 0 + + """ + try: + return a.ndim + except AttributeError: + return asarray(a).ndim + + +def _size_dispatcher(a, axis=None): + return (a,) + + +@array_function_dispatch(_size_dispatcher) +def size(a, axis=None): + """ + Return the number of elements along a given axis. + + Parameters + ---------- + a : array_like + Input data. + axis : int, optional + Axis along which the elements are counted. By default, give + the total number of elements. + + Returns + ------- + element_count : int + Number of elements along the specified axis. + + See Also + -------- + shape : dimensions of array + ndarray.shape : dimensions of array + ndarray.size : number of elements in array + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1,2,3],[4,5,6]]) + >>> np.size(a) + 6 + >>> np.size(a,1) + 3 + >>> np.size(a,0) + 2 + + """ + if axis is None: + try: + return a.size + except AttributeError: + return asarray(a).size + else: + try: + return a.shape[axis] + except AttributeError: + return asarray(a).shape[axis] + + +def _round_dispatcher(a, decimals=None, out=None): + return (a, out) + + +@array_function_dispatch(_round_dispatcher) +def round(a, decimals=0, out=None): + """ + Evenly round to the given number of decimals. + + Parameters + ---------- + a : array_like + Input data. + decimals : int, optional + Number of decimal places to round to (default: 0). If + decimals is negative, it specifies the number of positions to + the left of the decimal point. + out : ndarray, optional + Alternative output array in which to place the result. It must have + the same shape as the expected output, but the type of the output + values will be cast if necessary. See :ref:`ufuncs-output-type` + for more details. + + Returns + ------- + rounded_array : ndarray + An array of the same type as `a`, containing the rounded values. + Unless `out` was specified, a new array is created. A reference to + the result is returned. + + The real and imaginary parts of complex numbers are rounded + separately. The result of rounding a float is a float. + + See Also + -------- + ndarray.round : equivalent method + around : an alias for this function + ceil, fix, floor, rint, trunc + + + Notes + ----- + For values exactly halfway between rounded decimal values, NumPy + rounds to the nearest even value. Thus 1.5 and 2.5 round to 2.0, + -0.5 and 0.5 round to 0.0, etc. + + ``np.round`` uses a fast but sometimes inexact algorithm to round + floating-point datatypes. For positive `decimals` it is equivalent to + ``np.true_divide(np.rint(a * 10**decimals), 10**decimals)``, which has + error due to the inexact representation of decimal fractions in the IEEE + floating point standard [1]_ and errors introduced when scaling by powers + of ten. For instance, note the extra "1" in the following: + + >>> np.round(56294995342131.5, 3) + 56294995342131.51 + + If your goal is to print such values with a fixed number of decimals, it is + preferable to use numpy's float printing routines to limit the number of + printed decimals: + + >>> np.format_float_positional(56294995342131.5, precision=3) + '56294995342131.5' + + The float printing routines use an accurate but much more computationally + demanding algorithm to compute the number of digits after the decimal + point. + + Alternatively, Python's builtin `round` function uses a more accurate + but slower algorithm for 64-bit floating point values: + + >>> round(56294995342131.5, 3) + 56294995342131.5 + >>> np.round(16.055, 2), round(16.055, 2) # equals 16.0549999999999997 + (16.06, 16.05) + + + References + ---------- + .. [1] "Lecture Notes on the Status of IEEE 754", William Kahan, + https://people.eecs.berkeley.edu/~wkahan/ieee754status/IEEE754.PDF + + Examples + -------- + >>> import numpy as np + >>> np.round([0.37, 1.64]) + array([0., 2.]) + >>> np.round([0.37, 1.64], decimals=1) + array([0.4, 1.6]) + >>> np.round([.5, 1.5, 2.5, 3.5, 4.5]) # rounds to nearest even value + array([0., 2., 2., 4., 4.]) + >>> np.round([1,2,3,11], decimals=1) # ndarray of ints is returned + array([ 1, 2, 3, 11]) + >>> np.round([1,2,3,11], decimals=-1) + array([ 0, 0, 0, 10]) + + """ + return _wrapfunc(a, 'round', decimals=decimals, out=out) + + +@array_function_dispatch(_round_dispatcher) +def around(a, decimals=0, out=None): + """ + Round an array to the given number of decimals. + + `around` is an alias of `~numpy.round`. + + See Also + -------- + ndarray.round : equivalent method + round : alias for this function + ceil, fix, floor, rint, trunc + + """ + return _wrapfunc(a, 'round', decimals=decimals, out=out) + + +def _mean_dispatcher(a, axis=None, dtype=None, out=None, keepdims=None, *, + where=None): + return (a, where, out) + + +@array_function_dispatch(_mean_dispatcher) +def mean(a, axis=None, dtype=None, out=None, keepdims=np._NoValue, *, + where=np._NoValue): + """ + Compute the arithmetic mean along the specified axis. + + Returns the average of the array elements. The average is taken over + the flattened array by default, otherwise over the specified axis. + `float64` intermediate and return values are used for integer inputs. + + Parameters + ---------- + a : array_like + Array containing numbers whose mean is desired. If `a` is not an + array, a conversion is attempted. + axis : None or int or tuple of ints, optional + Axis or axes along which the means are computed. The default is to + compute the mean of the flattened array. + + If this is a tuple of ints, a mean is performed over multiple axes, + instead of a single axis or all the axes as before. + dtype : data-type, optional + Type to use in computing the mean. For integer inputs, the default + is `float64`; for floating point inputs, it is the same as the + input dtype. + out : ndarray, optional + Alternate output array in which to place the result. The default + is ``None``; if provided, it must have the same shape as the + expected output, but the type will be cast if necessary. + See :ref:`ufuncs-output-type` for more details. + See :ref:`ufuncs-output-type` for more details. + + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `mean` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + + where : array_like of bool, optional + Elements to include in the mean. See `~numpy.ufunc.reduce` for details. + + .. versionadded:: 1.20.0 + + Returns + ------- + m : ndarray, see dtype parameter above + If `out=None`, returns a new array containing the mean values, + otherwise a reference to the output array is returned. + + See Also + -------- + average : Weighted average + std, var, nanmean, nanstd, nanvar + + Notes + ----- + The arithmetic mean is the sum of the elements along the axis divided + by the number of elements. + + Note that for floating-point input, the mean is computed using the + same precision the input has. Depending on the input data, this can + cause the results to be inaccurate, especially for `float32` (see + example below). Specifying a higher-precision accumulator using the + `dtype` keyword can alleviate this issue. + + By default, `float16` results are computed using `float32` intermediates + for extra precision. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> np.mean(a) + 2.5 + >>> np.mean(a, axis=0) + array([2., 3.]) + >>> np.mean(a, axis=1) + array([1.5, 3.5]) + + In single precision, `mean` can be inaccurate: + + >>> a = np.zeros((2, 512*512), dtype=np.float32) + >>> a[0, :] = 1.0 + >>> a[1, :] = 0.1 + >>> np.mean(a) + np.float32(0.54999924) + + Computing the mean in float64 is more accurate: + + >>> np.mean(a, dtype=np.float64) + 0.55000000074505806 # may vary + + Computing the mean in timedelta64 is available: + + >>> b = np.array([1, 3], dtype="timedelta64[D]") + >>> np.mean(b) + np.timedelta64(2,'D') + + Specifying a where argument: + + >>> a = np.array([[5, 9, 13], [14, 10, 12], [11, 15, 19]]) + >>> np.mean(a) + 12.0 + >>> np.mean(a, where=[[True], [False], [False]]) + 9.0 + + """ + kwargs = {} + if keepdims is not np._NoValue: + kwargs['keepdims'] = keepdims + if where is not np._NoValue: + kwargs['where'] = where + if type(a) is not mu.ndarray: + try: + mean = a.mean + except AttributeError: + pass + else: + return mean(axis=axis, dtype=dtype, out=out, **kwargs) + + return _methods._mean(a, axis=axis, dtype=dtype, + out=out, **kwargs) + + +def _std_dispatcher(a, axis=None, dtype=None, out=None, ddof=None, + keepdims=None, *, where=None, mean=None, correction=None): + return (a, where, out, mean) + + +@array_function_dispatch(_std_dispatcher) +def std(a, axis=None, dtype=None, out=None, ddof=0, keepdims=np._NoValue, *, + where=np._NoValue, mean=np._NoValue, correction=np._NoValue): + r""" + Compute the standard deviation along the specified axis. + + Returns the standard deviation, a measure of the spread of a distribution, + of the array elements. The standard deviation is computed for the + flattened array by default, otherwise over the specified axis. + + Parameters + ---------- + a : array_like + Calculate the standard deviation of these values. + axis : None or int or tuple of ints, optional + Axis or axes along which the standard deviation is computed. The + default is to compute the standard deviation of the flattened array. + If this is a tuple of ints, a standard deviation is performed over + multiple axes, instead of a single axis or all the axes as before. + dtype : dtype, optional + Type to use in computing the standard deviation. For arrays of + integer type the default is float64, for arrays of float types it is + the same as the array type. + out : ndarray, optional + Alternative output array in which to place the result. It must have + the same shape as the expected output but the type (of the calculated + values) will be cast if necessary. + See :ref:`ufuncs-output-type` for more details. + ddof : {int, float}, optional + Means Delta Degrees of Freedom. The divisor used in calculations + is ``N - ddof``, where ``N`` represents the number of elements. + By default `ddof` is zero. See Notes for details about use of `ddof`. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `std` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + where : array_like of bool, optional + Elements to include in the standard deviation. + See `~numpy.ufunc.reduce` for details. + + .. versionadded:: 1.20.0 + + mean : array_like, optional + Provide the mean to prevent its recalculation. The mean should have + a shape as if it was calculated with ``keepdims=True``. + The axis for the calculation of the mean should be the same as used in + the call to this std function. + + .. versionadded:: 2.0.0 + + correction : {int, float}, optional + Array API compatible name for the ``ddof`` parameter. Only one of them + can be provided at the same time. + + .. versionadded:: 2.0.0 + + Returns + ------- + standard_deviation : ndarray, see dtype parameter above. + If `out` is None, return a new array containing the standard deviation, + otherwise return a reference to the output array. + + See Also + -------- + var, mean, nanmean, nanstd, nanvar + :ref:`ufuncs-output-type` + + Notes + ----- + There are several common variants of the array standard deviation + calculation. Assuming the input `a` is a one-dimensional NumPy array + and ``mean`` is either provided as an argument or computed as + ``a.mean()``, NumPy computes the standard deviation of an array as:: + + N = len(a) + d2 = abs(a - mean)**2 # abs is for complex `a` + var = d2.sum() / (N - ddof) # note use of `ddof` + std = var**0.5 + + Different values of the argument `ddof` are useful in different + contexts. NumPy's default ``ddof=0`` corresponds with the expression: + + .. math:: + + \sqrt{\frac{\sum_i{|a_i - \bar{a}|^2 }}{N}} + + which is sometimes called the "population standard deviation" in the field + of statistics because it applies the definition of standard deviation to + `a` as if `a` were a complete population of possible observations. + + Many other libraries define the standard deviation of an array + differently, e.g.: + + .. math:: + + \sqrt{\frac{\sum_i{|a_i - \bar{a}|^2 }}{N - 1}} + + In statistics, the resulting quantity is sometimes called the "sample + standard deviation" because if `a` is a random sample from a larger + population, this calculation provides the square root of an unbiased + estimate of the variance of the population. The use of :math:`N-1` in the + denominator is often called "Bessel's correction" because it corrects for + bias (toward lower values) in the variance estimate introduced when the + sample mean of `a` is used in place of the true mean of the population. + The resulting estimate of the standard deviation is still biased, but less + than it would have been without the correction. For this quantity, use + ``ddof=1``. + + Note that, for complex numbers, `std` takes the absolute + value before squaring, so that the result is always real and nonnegative. + + For floating-point input, the standard deviation is computed using the same + precision the input has. Depending on the input data, this can cause + the results to be inaccurate, especially for float32 (see example below). + Specifying a higher-accuracy accumulator using the `dtype` keyword can + alleviate this issue. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> np.std(a) + 1.1180339887498949 # may vary + >>> np.std(a, axis=0) + array([1., 1.]) + >>> np.std(a, axis=1) + array([0.5, 0.5]) + + In single precision, std() can be inaccurate: + + >>> a = np.zeros((2, 512*512), dtype=np.float32) + >>> a[0, :] = 1.0 + >>> a[1, :] = 0.1 + >>> np.std(a) + np.float32(0.45000005) + + Computing the standard deviation in float64 is more accurate: + + >>> np.std(a, dtype=np.float64) + 0.44999999925494177 # may vary + + Specifying a where argument: + + >>> a = np.array([[14, 8, 11, 10], [7, 9, 10, 11], [10, 15, 5, 10]]) + >>> np.std(a) + 2.614064523559687 # may vary + >>> np.std(a, where=[[True], [True], [False]]) + 2.0 + + Using the mean keyword to save computation time: + + >>> import numpy as np + >>> from timeit import timeit + >>> a = np.array([[14, 8, 11, 10], [7, 9, 10, 11], [10, 15, 5, 10]]) + >>> mean = np.mean(a, axis=1, keepdims=True) + >>> + >>> g = globals() + >>> n = 10000 + >>> t1 = timeit("std = np.std(a, axis=1, mean=mean)", globals=g, number=n) + >>> t2 = timeit("std = np.std(a, axis=1)", globals=g, number=n) + >>> print(f'Percentage execution time saved {100*(t2-t1)/t2:.0f}%') + #doctest: +SKIP + Percentage execution time saved 30% + + """ + kwargs = {} + if keepdims is not np._NoValue: + kwargs['keepdims'] = keepdims + if where is not np._NoValue: + kwargs['where'] = where + if mean is not np._NoValue: + kwargs['mean'] = mean + + if correction != np._NoValue: + if ddof != 0: + raise ValueError( + "ddof and correction can't be provided simultaneously." + ) + else: + ddof = correction + + if type(a) is not mu.ndarray: + try: + std = a.std + except AttributeError: + pass + else: + return std(axis=axis, dtype=dtype, out=out, ddof=ddof, **kwargs) + + return _methods._std(a, axis=axis, dtype=dtype, out=out, ddof=ddof, + **kwargs) + + +def _var_dispatcher(a, axis=None, dtype=None, out=None, ddof=None, + keepdims=None, *, where=None, mean=None, correction=None): + return (a, where, out, mean) + + +@array_function_dispatch(_var_dispatcher) +def var(a, axis=None, dtype=None, out=None, ddof=0, keepdims=np._NoValue, *, + where=np._NoValue, mean=np._NoValue, correction=np._NoValue): + r""" + Compute the variance along the specified axis. + + Returns the variance of the array elements, a measure of the spread of a + distribution. The variance is computed for the flattened array by + default, otherwise over the specified axis. + + Parameters + ---------- + a : array_like + Array containing numbers whose variance is desired. If `a` is not an + array, a conversion is attempted. + axis : None or int or tuple of ints, optional + Axis or axes along which the variance is computed. The default is to + compute the variance of the flattened array. + If this is a tuple of ints, a variance is performed over multiple axes, + instead of a single axis or all the axes as before. + dtype : data-type, optional + Type to use in computing the variance. For arrays of integer type + the default is `float64`; for arrays of float types it is the same as + the array type. + out : ndarray, optional + Alternate output array in which to place the result. It must have + the same shape as the expected output, but the type is cast if + necessary. + ddof : {int, float}, optional + "Delta Degrees of Freedom": the divisor used in the calculation is + ``N - ddof``, where ``N`` represents the number of elements. By + default `ddof` is zero. See notes for details about use of `ddof`. + keepdims : bool, optional + If this is set to True, the axes which are reduced are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + If the default value is passed, then `keepdims` will not be + passed through to the `var` method of sub-classes of + `ndarray`, however any non-default value will be. If the + sub-class' method does not implement `keepdims` any + exceptions will be raised. + where : array_like of bool, optional + Elements to include in the variance. See `~numpy.ufunc.reduce` for + details. + + .. versionadded:: 1.20.0 + + mean : array like, optional + Provide the mean to prevent its recalculation. The mean should have + a shape as if it was calculated with ``keepdims=True``. + The axis for the calculation of the mean should be the same as used in + the call to this var function. + + .. versionadded:: 2.0.0 + + correction : {int, float}, optional + Array API compatible name for the ``ddof`` parameter. Only one of them + can be provided at the same time. + + .. versionadded:: 2.0.0 + + Returns + ------- + variance : ndarray, see dtype parameter above + If ``out=None``, returns a new array containing the variance; + otherwise, a reference to the output array is returned. + + See Also + -------- + std, mean, nanmean, nanstd, nanvar + :ref:`ufuncs-output-type` + + Notes + ----- + There are several common variants of the array variance calculation. + Assuming the input `a` is a one-dimensional NumPy array and ``mean`` is + either provided as an argument or computed as ``a.mean()``, NumPy + computes the variance of an array as:: + + N = len(a) + d2 = abs(a - mean)**2 # abs is for complex `a` + var = d2.sum() / (N - ddof) # note use of `ddof` + + Different values of the argument `ddof` are useful in different + contexts. NumPy's default ``ddof=0`` corresponds with the expression: + + .. math:: + + \frac{\sum_i{|a_i - \bar{a}|^2 }}{N} + + which is sometimes called the "population variance" in the field of + statistics because it applies the definition of variance to `a` as if `a` + were a complete population of possible observations. + + Many other libraries define the variance of an array differently, e.g.: + + .. math:: + + \frac{\sum_i{|a_i - \bar{a}|^2}}{N - 1} + + In statistics, the resulting quantity is sometimes called the "sample + variance" because if `a` is a random sample from a larger population, + this calculation provides an unbiased estimate of the variance of the + population. The use of :math:`N-1` in the denominator is often called + "Bessel's correction" because it corrects for bias (toward lower values) + in the variance estimate introduced when the sample mean of `a` is used + in place of the true mean of the population. For this quantity, use + ``ddof=1``. + + Note that for complex numbers, the absolute value is taken before + squaring, so that the result is always real and nonnegative. + + For floating-point input, the variance is computed using the same + precision the input has. Depending on the input data, this can cause + the results to be inaccurate, especially for `float32` (see example + below). Specifying a higher-accuracy accumulator using the ``dtype`` + keyword can alleviate this issue. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> np.var(a) + 1.25 + >>> np.var(a, axis=0) + array([1., 1.]) + >>> np.var(a, axis=1) + array([0.25, 0.25]) + + In single precision, var() can be inaccurate: + + >>> a = np.zeros((2, 512*512), dtype=np.float32) + >>> a[0, :] = 1.0 + >>> a[1, :] = 0.1 + >>> np.var(a) + np.float32(0.20250003) + + Computing the variance in float64 is more accurate: + + >>> np.var(a, dtype=np.float64) + 0.20249999932944759 # may vary + >>> ((1-0.55)**2 + (0.1-0.55)**2)/2 + 0.2025 + + Specifying a where argument: + + >>> a = np.array([[14, 8, 11, 10], [7, 9, 10, 11], [10, 15, 5, 10]]) + >>> np.var(a) + 6.833333333333333 # may vary + >>> np.var(a, where=[[True], [True], [False]]) + 4.0 + + Using the mean keyword to save computation time: + + >>> import numpy as np + >>> from timeit import timeit + >>> + >>> a = np.array([[14, 8, 11, 10], [7, 9, 10, 11], [10, 15, 5, 10]]) + >>> mean = np.mean(a, axis=1, keepdims=True) + >>> + >>> g = globals() + >>> n = 10000 + >>> t1 = timeit("var = np.var(a, axis=1, mean=mean)", globals=g, number=n) + >>> t2 = timeit("var = np.var(a, axis=1)", globals=g, number=n) + >>> print(f'Percentage execution time saved {100*(t2-t1)/t2:.0f}%') + #doctest: +SKIP + Percentage execution time saved 32% + + """ + kwargs = {} + if keepdims is not np._NoValue: + kwargs['keepdims'] = keepdims + if where is not np._NoValue: + kwargs['where'] = where + if mean is not np._NoValue: + kwargs['mean'] = mean + + if correction != np._NoValue: + if ddof != 0: + raise ValueError( + "ddof and correction can't be provided simultaneously." + ) + else: + ddof = correction + + if type(a) is not mu.ndarray: + try: + var = a.var + + except AttributeError: + pass + else: + return var(axis=axis, dtype=dtype, out=out, ddof=ddof, **kwargs) + + return _methods._var(a, axis=axis, dtype=dtype, out=out, ddof=ddof, + **kwargs) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.pyi new file mode 100644 index 0000000000000000000000000000000000000000..48648593d72f0d14d16f5ce8a7bd18b2a3707bec --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/fromnumeric.pyi @@ -0,0 +1,1733 @@ +# ruff: noqa: ANN401 +from collections.abc import Sequence +from typing import ( + Any, + Literal, + Protocol, + SupportsIndex, + TypeAlias, + TypeVar, + overload, + type_check_only, +) + +from _typeshed import Incomplete +from typing_extensions import Never, deprecated + +import numpy as np +from numpy import ( + number, + uint64, + int_, + int64, + intp, + float16, + floating, + complexfloating, + timedelta64, + object_, + generic, + _AnyShapeType, + _OrderKACF, + _OrderACF, + _ModeKind, + _PartitionKind, + _SortKind, + _SortSide, + _CastingKind, +) +from numpy._globals import _NoValueType +from numpy._typing import ( + DTypeLike, + _DTypeLike, + ArrayLike, + _ArrayLike, + NDArray, + _NestedSequence, + _ShapeLike, + _ArrayLikeBool_co, + _ArrayLikeUInt_co, + _ArrayLikeInt, + _ArrayLikeInt_co, + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, + _ArrayLikeObject_co, + _IntLike_co, + _BoolLike_co, + _ComplexLike_co, + _NumberLike_co, + _ScalarLike_co, +) + +__all__ = [ + "all", + "amax", + "amin", + "any", + "argmax", + "argmin", + "argpartition", + "argsort", + "around", + "choose", + "clip", + "compress", + "cumprod", + "cumsum", + "cumulative_prod", + "cumulative_sum", + "diagonal", + "mean", + "max", + "min", + "matrix_transpose", + "ndim", + "nonzero", + "partition", + "prod", + "ptp", + "put", + "ravel", + "repeat", + "reshape", + "resize", + "round", + "searchsorted", + "shape", + "size", + "sort", + "squeeze", + "std", + "sum", + "swapaxes", + "take", + "trace", + "transpose", + "var", +] + +_SCT = TypeVar("_SCT", bound=generic) +_SCT_uifcO = TypeVar("_SCT_uifcO", bound=number[Any] | object_) +_ArrayT = TypeVar("_ArrayT", bound=np.ndarray[Any, Any]) +_ShapeType = TypeVar("_ShapeType", bound=tuple[int, ...]) +_ShapeType_co = TypeVar("_ShapeType_co", bound=tuple[int, ...], covariant=True) + +@type_check_only +class _SupportsShape(Protocol[_ShapeType_co]): + # NOTE: it matters that `self` is positional only + @property + def shape(self, /) -> _ShapeType_co: ... + +# a "sequence" that isn't a string, bytes, bytearray, or memoryview +_T = TypeVar("_T") +_PyArray: TypeAlias = list[_T] | tuple[_T, ...] +# `int` also covers `bool` +_PyScalar: TypeAlias = float | complex | bytes | str + +@overload +def take( + a: _ArrayLike[_SCT], + indices: _IntLike_co, + axis: None = ..., + out: None = ..., + mode: _ModeKind = ..., +) -> _SCT: ... +@overload +def take( + a: ArrayLike, + indices: _IntLike_co, + axis: SupportsIndex | None = ..., + out: None = ..., + mode: _ModeKind = ..., +) -> Any: ... +@overload +def take( + a: _ArrayLike[_SCT], + indices: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., + out: None = ..., + mode: _ModeKind = ..., +) -> NDArray[_SCT]: ... +@overload +def take( + a: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., + out: None = ..., + mode: _ModeKind = ..., +) -> NDArray[Any]: ... +@overload +def take( + a: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex | None, + out: _ArrayT, + mode: _ModeKind = ..., +) -> _ArrayT: ... +@overload +def take( + a: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., + *, + out: _ArrayT, + mode: _ModeKind = ..., +) -> _ArrayT: ... + +@overload +def reshape( # shape: index + a: _ArrayLike[_SCT], + /, + shape: SupportsIndex, + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> np.ndarray[tuple[int], np.dtype[_SCT]]: ... +@overload +def reshape( # shape: (int, ...) @ _AnyShapeType + a: _ArrayLike[_SCT], + /, + shape: _AnyShapeType, + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> np.ndarray[_AnyShapeType, np.dtype[_SCT]]: ... +@overload # shape: Sequence[index] +def reshape( + a: _ArrayLike[_SCT], + /, + shape: Sequence[SupportsIndex], + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> NDArray[_SCT]: ... +@overload # shape: index +def reshape( + a: ArrayLike, + /, + shape: SupportsIndex, + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> np.ndarray[tuple[int], np.dtype[Any]]: ... +@overload +def reshape( # shape: (int, ...) @ _AnyShapeType + a: ArrayLike, + /, + shape: _AnyShapeType, + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> np.ndarray[_AnyShapeType, np.dtype[Any]]: ... +@overload # shape: Sequence[index] +def reshape( + a: ArrayLike, + /, + shape: Sequence[SupportsIndex], + order: _OrderACF = "C", + *, + copy: bool | None = None, +) -> NDArray[Any]: ... +@overload +@deprecated( + "`newshape` keyword argument is deprecated, " + "use `shape=...` or pass shape positionally instead. " + "(deprecated in NumPy 2.1)", +) +def reshape( + a: ArrayLike, + /, + shape: None = None, + order: _OrderACF = "C", + *, + newshape: _ShapeLike, + copy: bool | None = None, +) -> NDArray[Any]: ... + +@overload +def choose( + a: _IntLike_co, + choices: ArrayLike, + out: None = ..., + mode: _ModeKind = ..., +) -> Any: ... +@overload +def choose( + a: _ArrayLikeInt_co, + choices: _ArrayLike[_SCT], + out: None = ..., + mode: _ModeKind = ..., +) -> NDArray[_SCT]: ... +@overload +def choose( + a: _ArrayLikeInt_co, + choices: ArrayLike, + out: None = ..., + mode: _ModeKind = ..., +) -> NDArray[Any]: ... +@overload +def choose( + a: _ArrayLikeInt_co, + choices: ArrayLike, + out: _ArrayT, + mode: _ModeKind = ..., +) -> _ArrayT: ... + +@overload +def repeat( + a: _ArrayLike[_SCT], + repeats: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., +) -> NDArray[_SCT]: ... +@overload +def repeat( + a: ArrayLike, + repeats: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., +) -> NDArray[Any]: ... + +def put( + a: NDArray[Any], + ind: _ArrayLikeInt_co, + v: ArrayLike, + mode: _ModeKind = ..., +) -> None: ... + +@overload +def swapaxes( + a: _ArrayLike[_SCT], + axis1: SupportsIndex, + axis2: SupportsIndex, +) -> NDArray[_SCT]: ... +@overload +def swapaxes( + a: ArrayLike, + axis1: SupportsIndex, + axis2: SupportsIndex, +) -> NDArray[Any]: ... + +@overload +def transpose( + a: _ArrayLike[_SCT], + axes: _ShapeLike | None = ... +) -> NDArray[_SCT]: ... +@overload +def transpose( + a: ArrayLike, + axes: _ShapeLike | None = ... +) -> NDArray[Any]: ... + +@overload +def matrix_transpose(x: _ArrayLike[_SCT], /) -> NDArray[_SCT]: ... +@overload +def matrix_transpose(x: ArrayLike, /) -> NDArray[Any]: ... + +# +@overload +def partition( + a: _ArrayLike[_SCT], + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: None = None, +) -> NDArray[_SCT]: ... +@overload +def partition( + a: _ArrayLike[np.void], + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: str | Sequence[str] | None = None, +) -> NDArray[np.void]: ... +@overload +def partition( + a: ArrayLike, + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: str | Sequence[str] | None = None, +) -> NDArray[Any]: ... + +# +def argpartition( + a: ArrayLike, + kth: _ArrayLikeInt, + axis: SupportsIndex | None = -1, + kind: _PartitionKind = "introselect", + order: str | Sequence[str] | None = None, +) -> NDArray[intp]: ... + +# +@overload +def sort( + a: _ArrayLike[_SCT], + axis: SupportsIndex | None = ..., + kind: _SortKind | None = ..., + order: str | Sequence[str] | None = ..., + *, + stable: bool | None = ..., +) -> NDArray[_SCT]: ... +@overload +def sort( + a: ArrayLike, + axis: SupportsIndex | None = ..., + kind: _SortKind | None = ..., + order: str | Sequence[str] | None = ..., + *, + stable: bool | None = ..., +) -> NDArray[Any]: ... + +def argsort( + a: ArrayLike, + axis: SupportsIndex | None = ..., + kind: _SortKind | None = ..., + order: str | Sequence[str] | None = ..., + *, + stable: bool | None = ..., +) -> NDArray[intp]: ... + +@overload +def argmax( + a: ArrayLike, + axis: None = ..., + out: None = ..., + *, + keepdims: Literal[False] = ..., +) -> intp: ... +@overload +def argmax( + a: ArrayLike, + axis: SupportsIndex | None = ..., + out: None = ..., + *, + keepdims: bool = ..., +) -> Any: ... +@overload +def argmax( + a: ArrayLike, + axis: SupportsIndex | None, + out: _ArrayT, + *, + keepdims: bool = ..., +) -> _ArrayT: ... +@overload +def argmax( + a: ArrayLike, + axis: SupportsIndex | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., +) -> _ArrayT: ... + +@overload +def argmin( + a: ArrayLike, + axis: None = ..., + out: None = ..., + *, + keepdims: Literal[False] = ..., +) -> intp: ... +@overload +def argmin( + a: ArrayLike, + axis: SupportsIndex | None = ..., + out: None = ..., + *, + keepdims: bool = ..., +) -> Any: ... +@overload +def argmin( + a: ArrayLike, + axis: SupportsIndex | None, + out: _ArrayT, + *, + keepdims: bool = ..., +) -> _ArrayT: ... +@overload +def argmin( + a: ArrayLike, + axis: SupportsIndex | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., +) -> _ArrayT: ... + +@overload +def searchsorted( + a: ArrayLike, + v: _ScalarLike_co, + side: _SortSide = ..., + sorter: _ArrayLikeInt_co | None = ..., # 1D int array +) -> intp: ... +@overload +def searchsorted( + a: ArrayLike, + v: ArrayLike, + side: _SortSide = ..., + sorter: _ArrayLikeInt_co | None = ..., # 1D int array +) -> NDArray[intp]: ... + +# +@overload +def resize(a: _ArrayLike[_SCT], new_shape: SupportsIndex | tuple[SupportsIndex]) -> np.ndarray[tuple[int], np.dtype[_SCT]]: ... +@overload +def resize(a: _ArrayLike[_SCT], new_shape: _AnyShapeType) -> np.ndarray[_AnyShapeType, np.dtype[_SCT]]: ... +@overload +def resize(a: _ArrayLike[_SCT], new_shape: _ShapeLike) -> NDArray[_SCT]: ... +@overload +def resize(a: ArrayLike, new_shape: SupportsIndex | tuple[SupportsIndex]) -> np.ndarray[tuple[int], np.dtype[Any]]: ... +@overload +def resize(a: ArrayLike, new_shape: _AnyShapeType) -> np.ndarray[_AnyShapeType, np.dtype[Any]]: ... +@overload +def resize(a: ArrayLike, new_shape: _ShapeLike) -> NDArray[Any]: ... + +@overload +def squeeze( + a: _SCT, + axis: _ShapeLike | None = ..., +) -> _SCT: ... +@overload +def squeeze( + a: _ArrayLike[_SCT], + axis: _ShapeLike | None = ..., +) -> NDArray[_SCT]: ... +@overload +def squeeze( + a: ArrayLike, + axis: _ShapeLike | None = ..., +) -> NDArray[Any]: ... + +@overload +def diagonal( + a: _ArrayLike[_SCT], + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., # >= 2D array +) -> NDArray[_SCT]: ... +@overload +def diagonal( + a: ArrayLike, + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., # >= 2D array +) -> NDArray[Any]: ... + +@overload +def trace( + a: ArrayLike, # >= 2D array + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None = ..., +) -> Any: ... +@overload +def trace( + a: ArrayLike, # >= 2D array + offset: SupportsIndex, + axis1: SupportsIndex, + axis2: SupportsIndex, + dtype: DTypeLike, + out: _ArrayT, +) -> _ArrayT: ... +@overload +def trace( + a: ArrayLike, # >= 2D array + offset: SupportsIndex = ..., + axis1: SupportsIndex = ..., + axis2: SupportsIndex = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, +) -> _ArrayT: ... + +_Array1D: TypeAlias = np.ndarray[tuple[int], np.dtype[_SCT]] + +@overload +def ravel(a: _ArrayLike[_SCT], order: _OrderKACF = "C") -> _Array1D[_SCT]: ... +@overload +def ravel(a: bytes | _NestedSequence[bytes], order: _OrderKACF = "C") -> _Array1D[np.bytes_]: ... +@overload +def ravel(a: str | _NestedSequence[str], order: _OrderKACF = "C") -> _Array1D[np.str_]: ... +@overload +def ravel(a: bool | _NestedSequence[bool], order: _OrderKACF = "C") -> _Array1D[np.bool]: ... +@overload +def ravel(a: int | _NestedSequence[int], order: _OrderKACF = "C") -> _Array1D[np.int_ | np.bool]: ... +@overload +def ravel(a: float | _NestedSequence[float], order: _OrderKACF = "C") -> _Array1D[np.float64 | np.int_ | np.bool]: ... +@overload +def ravel( + a: complex | _NestedSequence[complex], + order: _OrderKACF = "C", +) -> _Array1D[np.complex128 | np.float64 | np.int_ | np.bool]: ... +@overload +def ravel(a: ArrayLike, order: _OrderKACF = "C") -> np.ndarray[tuple[int], np.dtype[Any]]: ... + +def nonzero(a: _ArrayLike[Any]) -> tuple[NDArray[intp], ...]: ... + +# this prevents `Any` from being returned with Pyright +@overload +def shape(a: _SupportsShape[Never]) -> tuple[int, ...]: ... +@overload +def shape(a: _SupportsShape[_ShapeType]) -> _ShapeType: ... +@overload +def shape(a: _PyScalar) -> tuple[()]: ... +# `collections.abc.Sequence` can't be used hesre, since `bytes` and `str` are +# subtypes of it, which would make the return types incompatible. +@overload +def shape(a: _PyArray[_PyScalar]) -> tuple[int]: ... +@overload +def shape(a: _PyArray[_PyArray[_PyScalar]]) -> tuple[int, int]: ... +# this overload will be skipped by typecheckers that don't support PEP 688 +@overload +def shape(a: memoryview | bytearray) -> tuple[int]: ... +@overload +def shape(a: ArrayLike) -> tuple[int, ...]: ... + +@overload +def compress( + condition: _ArrayLikeBool_co, # 1D bool array + a: _ArrayLike[_SCT], + axis: SupportsIndex | None = ..., + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def compress( + condition: _ArrayLikeBool_co, # 1D bool array + a: ArrayLike, + axis: SupportsIndex | None = ..., + out: None = ..., +) -> NDArray[Any]: ... +@overload +def compress( + condition: _ArrayLikeBool_co, # 1D bool array + a: ArrayLike, + axis: SupportsIndex | None, + out: _ArrayT, +) -> _ArrayT: ... +@overload +def compress( + condition: _ArrayLikeBool_co, # 1D bool array + a: ArrayLike, + axis: SupportsIndex | None = ..., + *, + out: _ArrayT, +) -> _ArrayT: ... + +@overload +def clip( + a: _SCT, + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: None = ..., + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: None = ..., + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> _SCT: ... +@overload +def clip( + a: _ScalarLike_co, + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: None = ..., + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: None = ..., + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> Any: ... +@overload +def clip( + a: _ArrayLike[_SCT], + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: None = ..., + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: None = ..., + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> NDArray[_SCT]: ... +@overload +def clip( + a: ArrayLike, + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: None = ..., + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: None = ..., + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> NDArray[Any]: ... +@overload +def clip( + a: ArrayLike, + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: _ArrayT, + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: DTypeLike = ..., + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> _ArrayT: ... +@overload +def clip( + a: ArrayLike, + a_min: ArrayLike | None, + a_max: ArrayLike | None, + out: ArrayLike = ..., + *, + min: ArrayLike | None = ..., + max: ArrayLike | None = ..., + dtype: DTypeLike, + where: _ArrayLikeBool_co | None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + signature: str | tuple[str | None, ...] = ..., + casting: _CastingKind = ..., +) -> Any: ... + +@overload +def sum( + a: _ArrayLike[_SCT], + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def sum( + a: _ArrayLike[_SCT], + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT | NDArray[_SCT]: ... +@overload +def sum( + a: ArrayLike, + axis: None, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def sum( + a: ArrayLike, + axis: None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def sum( + a: ArrayLike, + axis: _ShapeLike | None, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT | NDArray[_SCT]: ... +@overload +def sum( + a: ArrayLike, + axis: _ShapeLike | None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT | NDArray[_SCT]: ... +@overload +def sum( + a: ArrayLike, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> Any: ... +@overload +def sum( + a: ArrayLike, + axis: _ShapeLike | None, + dtype: DTypeLike, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... +@overload +def sum( + a: ArrayLike, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... + +@overload +def all( + a: ArrayLike, + axis: None = None, + out: None = None, + keepdims: Literal[False, 0] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> np.bool: ... +@overload +def all( + a: ArrayLike, + axis: int | tuple[int, ...] | None = None, + out: None = None, + keepdims: _BoolLike_co | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> Incomplete: ... +@overload +def all( + a: ArrayLike, + axis: int | tuple[int, ...] | None, + out: _ArrayT, + keepdims: _BoolLike_co | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def all( + a: ArrayLike, + axis: int | tuple[int, ...] | None = None, + *, + out: _ArrayT, + keepdims: _BoolLike_co | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... + +@overload +def any( + a: ArrayLike, + axis: None = None, + out: None = None, + keepdims: Literal[False, 0] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> np.bool: ... +@overload +def any( + a: ArrayLike, + axis: int | tuple[int, ...] | None = None, + out: None = None, + keepdims: _BoolLike_co | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> Incomplete: ... +@overload +def any( + a: ArrayLike, + axis: int | tuple[int, ...] | None, + out: _ArrayT, + keepdims: _BoolLike_co | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def any( + a: ArrayLike, + axis: int | tuple[int, ...] | None = None, + *, + out: _ArrayT, + keepdims: _BoolLike_co | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... + +@overload +def cumsum( + a: _ArrayLike[_SCT], + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[Any]: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None, + dtype: _DTypeLike[_SCT], + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: None = ..., +) -> NDArray[Any]: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None, + dtype: DTypeLike, + out: _ArrayT, +) -> _ArrayT: ... +@overload +def cumsum( + a: ArrayLike, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, +) -> _ArrayT: ... + +@overload +def cumulative_sum( + x: _ArrayLike[_SCT], + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[_SCT]: ... +@overload +def cumulative_sum( + x: ArrayLike, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[Any]: ... +@overload +def cumulative_sum( + x: ArrayLike, + /, + *, + axis: SupportsIndex | None = ..., + dtype: _DTypeLike[_SCT], + out: None = ..., + include_initial: bool = ..., +) -> NDArray[_SCT]: ... +@overload +def cumulative_sum( + x: ArrayLike, + /, + *, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[Any]: ... +@overload +def cumulative_sum( + x: ArrayLike, + /, + *, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: _ArrayT, + include_initial: bool = ..., +) -> _ArrayT: ... + +@overload +def ptp( + a: _ArrayLike[_SCT], + axis: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., +) -> _SCT: ... +@overload +def ptp( + a: ArrayLike, + axis: _ShapeLike | None = ..., + out: None = ..., + keepdims: bool = ..., +) -> Any: ... +@overload +def ptp( + a: ArrayLike, + axis: _ShapeLike | None, + out: _ArrayT, + keepdims: bool = ..., +) -> _ArrayT: ... +@overload +def ptp( + a: ArrayLike, + axis: _ShapeLike | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., +) -> _ArrayT: ... + +@overload +def amax( + a: _ArrayLike[_SCT], + axis: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def amax( + a: ArrayLike, + axis: _ShapeLike | None = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> Any: ... +@overload +def amax( + a: ArrayLike, + axis: _ShapeLike | None, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... +@overload +def amax( + a: ArrayLike, + axis: _ShapeLike | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... + +@overload +def amin( + a: _ArrayLike[_SCT], + axis: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def amin( + a: ArrayLike, + axis: _ShapeLike | None = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> Any: ... +@overload +def amin( + a: ArrayLike, + axis: _ShapeLike | None, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... +@overload +def amin( + a: ArrayLike, + axis: _ShapeLike | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... + +# TODO: `np.prod()``: For object arrays `initial` does not necessarily +# have to be a numerical scalar. +# The only requirement is that it is compatible +# with the `.__mul__()` method(s) of the passed array's elements. + +# Note that the same situation holds for all wrappers around +# `np.ufunc.reduce`, e.g. `np.sum()` (`.__add__()`). +@overload +def prod( + a: _ArrayLikeBool_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> int_: ... +@overload +def prod( + a: _ArrayLikeUInt_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> uint64: ... +@overload +def prod( + a: _ArrayLikeInt_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> int64: ... +@overload +def prod( + a: _ArrayLikeFloat_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> floating[Any]: ... +@overload +def prod( + a: _ArrayLikeComplex_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> complexfloating[Any, Any]: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: None = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> Any: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _SCT: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike | None = ..., + out: None = ..., + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> Any: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: DTypeLike | None, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... +@overload +def prod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike | None = ..., + *, + out: _ArrayT, + keepdims: bool = ..., + initial: _NumberLike_co = ..., + where: _ArrayLikeBool_co = ..., +) -> _ArrayT: ... + +@overload +def cumprod( + a: _ArrayLikeBool_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[int_]: ... +@overload +def cumprod( + a: _ArrayLikeUInt_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[uint64]: ... +@overload +def cumprod( + a: _ArrayLikeInt_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[int64]: ... +@overload +def cumprod( + a: _ArrayLikeFloat_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[floating[Any]]: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def cumprod( + a: _ArrayLikeObject_co, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., +) -> NDArray[object_]: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: SupportsIndex | None, + dtype: _DTypeLike[_SCT], + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: SupportsIndex | None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., +) -> NDArray[_SCT]: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: None = ..., +) -> NDArray[Any]: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: SupportsIndex | None, + dtype: DTypeLike, + out: _ArrayT, +) -> _ArrayT: ... +@overload +def cumprod( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, +) -> _ArrayT: ... + +@overload +def cumulative_prod( + x: _ArrayLikeBool_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[int_]: ... +@overload +def cumulative_prod( + x: _ArrayLikeUInt_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[uint64]: ... +@overload +def cumulative_prod( + x: _ArrayLikeInt_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[int64]: ... +@overload +def cumulative_prod( + x: _ArrayLikeFloat_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[floating[Any]]: ... +@overload +def cumulative_prod( + x: _ArrayLikeComplex_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def cumulative_prod( + x: _ArrayLikeObject_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: None = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[object_]: ... +@overload +def cumulative_prod( + x: _ArrayLikeComplex_co | _ArrayLikeObject_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: _DTypeLike[_SCT], + out: None = ..., + include_initial: bool = ..., +) -> NDArray[_SCT]: ... +@overload +def cumulative_prod( + x: _ArrayLikeComplex_co | _ArrayLikeObject_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: None = ..., + include_initial: bool = ..., +) -> NDArray[Any]: ... +@overload +def cumulative_prod( + x: _ArrayLikeComplex_co | _ArrayLikeObject_co, + /, + *, + axis: SupportsIndex | None = ..., + dtype: DTypeLike = ..., + out: _ArrayT, + include_initial: bool = ..., +) -> _ArrayT: ... + +def ndim(a: ArrayLike) -> int: ... + +def size(a: ArrayLike, axis: int | None = ...) -> int: ... + +@overload +def around( + a: _BoolLike_co, + decimals: SupportsIndex = ..., + out: None = ..., +) -> float16: ... +@overload +def around( + a: _SCT_uifcO, + decimals: SupportsIndex = ..., + out: None = ..., +) -> _SCT_uifcO: ... +@overload +def around( + a: _ComplexLike_co | object_, + decimals: SupportsIndex = ..., + out: None = ..., +) -> Any: ... +@overload +def around( + a: _ArrayLikeBool_co, + decimals: SupportsIndex = ..., + out: None = ..., +) -> NDArray[float16]: ... +@overload +def around( + a: _ArrayLike[_SCT_uifcO], + decimals: SupportsIndex = ..., + out: None = ..., +) -> NDArray[_SCT_uifcO]: ... +@overload +def around( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + decimals: SupportsIndex = ..., + out: None = ..., +) -> NDArray[Any]: ... +@overload +def around( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + decimals: SupportsIndex, + out: _ArrayT, +) -> _ArrayT: ... +@overload +def around( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + decimals: SupportsIndex = ..., + *, + out: _ArrayT, +) -> _ArrayT: ... + +@overload +def mean( + a: _ArrayLikeFloat_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> floating[Any]: ... +@overload +def mean( + a: _ArrayLikeComplex_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> complexfloating[Any]: ... +@overload +def mean( + a: _ArrayLike[np.timedelta64], + axis: None = ..., + dtype: None = ..., + out: None = ..., + keepdims: Literal[False] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> timedelta64: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: DTypeLike, + out: _ArrayT, + keepdims: bool | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike | None = ..., + *, + out: _ArrayT, + keepdims: bool | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _SCT: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: Literal[False] | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _SCT: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: _DTypeLike[_SCT], + out: None, + keepdims: Literal[True, 1], + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> NDArray[_SCT]: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: _DTypeLike[_SCT], + out: None = ..., + *, + keepdims: bool | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _SCT | NDArray[_SCT]: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + keepdims: bool | _NoValueType = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> _SCT | NDArray[_SCT]: ... +@overload +def mean( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike | None = ..., + out: None = ..., + keepdims: bool | _NoValueType = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., +) -> Incomplete: ... + +@overload +def std( + a: _ArrayLikeComplex_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> floating[Any]: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: None = ..., + out: None = ..., + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> Any: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None, + dtype: _DTypeLike[_SCT], + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _SCT: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _SCT: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + out: None = ..., + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> Any: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: DTypeLike, + out: _ArrayT, + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def std( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, + ddof: float = ..., + keepdims: bool = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _ArrayT: ... + +@overload +def var( + a: _ArrayLikeComplex_co, + axis: None = ..., + dtype: None = ..., + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> floating[Any]: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: None = ..., + out: None = ..., + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> Any: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None, + dtype: _DTypeLike[_SCT], + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _SCT: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: None = ..., + *, + dtype: _DTypeLike[_SCT], + out: None = ..., + ddof: float = ..., + keepdims: Literal[False] = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _SCT: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + out: None = ..., + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> Any: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None, + dtype: DTypeLike, + out: _ArrayT, + ddof: float = ..., + keepdims: bool = ..., + *, + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _ArrayT: ... +@overload +def var( + a: _ArrayLikeComplex_co | _ArrayLikeObject_co, + axis: _ShapeLike | None = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayT, + ddof: float = ..., + keepdims: bool = ..., + where: _ArrayLikeBool_co | _NoValueType = ..., + mean: _ArrayLikeComplex_co | _ArrayLikeObject_co | _NoValueType = ..., + correction: float | _NoValueType = ..., +) -> _ArrayT: ... + +max = amax +min = amin +round = around diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.py new file mode 100644 index 0000000000000000000000000000000000000000..cba071768ab707b088000742403d5e3b820772dc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.py @@ -0,0 +1,546 @@ +import functools +import warnings +import operator +import types + +import numpy as np +from . import numeric as _nx +from .numeric import result_type, nan, asanyarray, ndim +from numpy._core.multiarray import add_docstring +from numpy._core._multiarray_umath import _array_converter +from numpy._core import overrides + +__all__ = ['logspace', 'linspace', 'geomspace'] + + +array_function_dispatch = functools.partial( + overrides.array_function_dispatch, module='numpy') + + +def _linspace_dispatcher(start, stop, num=None, endpoint=None, retstep=None, + dtype=None, axis=None, *, device=None): + return (start, stop) + + +@array_function_dispatch(_linspace_dispatcher) +def linspace(start, stop, num=50, endpoint=True, retstep=False, dtype=None, + axis=0, *, device=None): + """ + Return evenly spaced numbers over a specified interval. + + Returns `num` evenly spaced samples, calculated over the + interval [`start`, `stop`]. + + The endpoint of the interval can optionally be excluded. + + .. versionchanged:: 1.20.0 + Values are rounded towards ``-inf`` instead of ``0`` when an + integer ``dtype`` is specified. The old behavior can + still be obtained with ``np.linspace(start, stop, num).astype(int)`` + + Parameters + ---------- + start : array_like + The starting value of the sequence. + stop : array_like + The end value of the sequence, unless `endpoint` is set to False. + In that case, the sequence consists of all but the last of ``num + 1`` + evenly spaced samples, so that `stop` is excluded. Note that the step + size changes when `endpoint` is False. + num : int, optional + Number of samples to generate. Default is 50. Must be non-negative. + endpoint : bool, optional + If True, `stop` is the last sample. Otherwise, it is not included. + Default is True. + retstep : bool, optional + If True, return (`samples`, `step`), where `step` is the spacing + between samples. + dtype : dtype, optional + The type of the output array. If `dtype` is not given, the data type + is inferred from `start` and `stop`. The inferred dtype will never be + an integer; `float` is chosen even if the arguments would produce an + array of integers. + axis : int, optional + The axis in the result to store the samples. Relevant only if start + or stop are array-like. By default (0), the samples will be along a + new axis inserted at the beginning. Use -1 to get an axis at the end. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + + Returns + ------- + samples : ndarray + There are `num` equally spaced samples in the closed interval + ``[start, stop]`` or the half-open interval ``[start, stop)`` + (depending on whether `endpoint` is True or False). + step : float, optional + Only returned if `retstep` is True + + Size of spacing between samples. + + + See Also + -------- + arange : Similar to `linspace`, but uses a step size (instead of the + number of samples). + geomspace : Similar to `linspace`, but with numbers spaced evenly on a log + scale (a geometric progression). + logspace : Similar to `geomspace`, but with the end points specified as + logarithms. + :ref:`how-to-partition` + + Examples + -------- + >>> import numpy as np + >>> np.linspace(2.0, 3.0, num=5) + array([2. , 2.25, 2.5 , 2.75, 3. ]) + >>> np.linspace(2.0, 3.0, num=5, endpoint=False) + array([2. , 2.2, 2.4, 2.6, 2.8]) + >>> np.linspace(2.0, 3.0, num=5, retstep=True) + (array([2. , 2.25, 2.5 , 2.75, 3. ]), 0.25) + + Graphical illustration: + + >>> import matplotlib.pyplot as plt + >>> N = 8 + >>> y = np.zeros(N) + >>> x1 = np.linspace(0, 10, N, endpoint=True) + >>> x2 = np.linspace(0, 10, N, endpoint=False) + >>> plt.plot(x1, y, 'o') + [] + >>> plt.plot(x2, y + 0.5, 'o') + [] + >>> plt.ylim([-0.5, 1]) + (-0.5, 1) + >>> plt.show() + + """ + num = operator.index(num) + if num < 0: + raise ValueError( + "Number of samples, %s, must be non-negative." % num + ) + div = (num - 1) if endpoint else num + + conv = _array_converter(start, stop) + start, stop = conv.as_arrays() + dt = conv.result_type(ensure_inexact=True) + + if dtype is None: + dtype = dt + integer_dtype = False + else: + integer_dtype = _nx.issubdtype(dtype, _nx.integer) + + # Use `dtype=type(dt)` to enforce a floating point evaluation: + delta = np.subtract(stop, start, dtype=type(dt)) + y = _nx.arange( + 0, num, dtype=dt, device=device + ).reshape((-1,) + (1,) * ndim(delta)) + + # In-place multiplication y *= delta/div is faster, but prevents + # the multiplicant from overriding what class is produced, and thus + # prevents, e.g. use of Quantities, see gh-7142. Hence, we multiply + # in place only for standard scalar types. + if div > 0: + _mult_inplace = _nx.isscalar(delta) + step = delta / div + any_step_zero = ( + step == 0 if _mult_inplace else _nx.asanyarray(step == 0).any()) + if any_step_zero: + # Special handling for denormal numbers, gh-5437 + y /= div + if _mult_inplace: + y *= delta + else: + y = y * delta + else: + if _mult_inplace: + y *= step + else: + y = y * step + else: + # sequences with 0 items or 1 item with endpoint=True (i.e. div <= 0) + # have an undefined step + step = nan + # Multiply with delta to allow possible override of output class. + y = y * delta + + y += start + + if endpoint and num > 1: + y[-1, ...] = stop + + if axis != 0: + y = _nx.moveaxis(y, 0, axis) + + if integer_dtype: + _nx.floor(y, out=y) + + y = conv.wrap(y.astype(dtype, copy=False)) + if retstep: + return y, step + else: + return y + + +def _logspace_dispatcher(start, stop, num=None, endpoint=None, base=None, + dtype=None, axis=None): + return (start, stop, base) + + +@array_function_dispatch(_logspace_dispatcher) +def logspace(start, stop, num=50, endpoint=True, base=10.0, dtype=None, + axis=0): + """ + Return numbers spaced evenly on a log scale. + + In linear space, the sequence starts at ``base ** start`` + (`base` to the power of `start`) and ends with ``base ** stop`` + (see `endpoint` below). + + .. versionchanged:: 1.25.0 + Non-scalar 'base` is now supported + + Parameters + ---------- + start : array_like + ``base ** start`` is the starting value of the sequence. + stop : array_like + ``base ** stop`` is the final value of the sequence, unless `endpoint` + is False. In that case, ``num + 1`` values are spaced over the + interval in log-space, of which all but the last (a sequence of + length `num`) are returned. + num : integer, optional + Number of samples to generate. Default is 50. + endpoint : boolean, optional + If true, `stop` is the last sample. Otherwise, it is not included. + Default is True. + base : array_like, optional + The base of the log space. The step size between the elements in + ``ln(samples) / ln(base)`` (or ``log_base(samples)``) is uniform. + Default is 10.0. + dtype : dtype + The type of the output array. If `dtype` is not given, the data type + is inferred from `start` and `stop`. The inferred type will never be + an integer; `float` is chosen even if the arguments would produce an + array of integers. + axis : int, optional + The axis in the result to store the samples. Relevant only if start, + stop, or base are array-like. By default (0), the samples will be + along a new axis inserted at the beginning. Use -1 to get an axis at + the end. + + Returns + ------- + samples : ndarray + `num` samples, equally spaced on a log scale. + + See Also + -------- + arange : Similar to linspace, with the step size specified instead of the + number of samples. Note that, when used with a float endpoint, the + endpoint may or may not be included. + linspace : Similar to logspace, but with the samples uniformly distributed + in linear space, instead of log space. + geomspace : Similar to logspace, but with endpoints specified directly. + :ref:`how-to-partition` + + Notes + ----- + If base is a scalar, logspace is equivalent to the code + + >>> y = np.linspace(start, stop, num=num, endpoint=endpoint) + ... # doctest: +SKIP + >>> power(base, y).astype(dtype) + ... # doctest: +SKIP + + Examples + -------- + >>> import numpy as np + >>> np.logspace(2.0, 3.0, num=4) + array([ 100. , 215.443469 , 464.15888336, 1000. ]) + >>> np.logspace(2.0, 3.0, num=4, endpoint=False) + array([100. , 177.827941 , 316.22776602, 562.34132519]) + >>> np.logspace(2.0, 3.0, num=4, base=2.0) + array([4. , 5.0396842 , 6.34960421, 8. ]) + >>> np.logspace(2.0, 3.0, num=4, base=[2.0, 3.0], axis=-1) + array([[ 4. , 5.0396842 , 6.34960421, 8. ], + [ 9. , 12.98024613, 18.72075441, 27. ]]) + + Graphical illustration: + + >>> import matplotlib.pyplot as plt + >>> N = 10 + >>> x1 = np.logspace(0.1, 1, N, endpoint=True) + >>> x2 = np.logspace(0.1, 1, N, endpoint=False) + >>> y = np.zeros(N) + >>> plt.plot(x1, y, 'o') + [] + >>> plt.plot(x2, y + 0.5, 'o') + [] + >>> plt.ylim([-0.5, 1]) + (-0.5, 1) + >>> plt.show() + + """ + if not isinstance(base, (float, int)) and np.ndim(base): + # If base is non-scalar, broadcast it with the others, since it + # may influence how axis is interpreted. + ndmax = np.broadcast(start, stop, base).ndim + start, stop, base = ( + np.array(a, copy=None, subok=True, ndmin=ndmax) + for a in (start, stop, base) + ) + base = np.expand_dims(base, axis=axis) + y = linspace(start, stop, num=num, endpoint=endpoint, axis=axis) + if dtype is None: + return _nx.power(base, y) + return _nx.power(base, y).astype(dtype, copy=False) + + +def _geomspace_dispatcher(start, stop, num=None, endpoint=None, dtype=None, + axis=None): + return (start, stop) + + +@array_function_dispatch(_geomspace_dispatcher) +def geomspace(start, stop, num=50, endpoint=True, dtype=None, axis=0): + """ + Return numbers spaced evenly on a log scale (a geometric progression). + + This is similar to `logspace`, but with endpoints specified directly. + Each output sample is a constant multiple of the previous. + + Parameters + ---------- + start : array_like + The starting value of the sequence. + stop : array_like + The final value of the sequence, unless `endpoint` is False. + In that case, ``num + 1`` values are spaced over the + interval in log-space, of which all but the last (a sequence of + length `num`) are returned. + num : integer, optional + Number of samples to generate. Default is 50. + endpoint : boolean, optional + If true, `stop` is the last sample. Otherwise, it is not included. + Default is True. + dtype : dtype + The type of the output array. If `dtype` is not given, the data type + is inferred from `start` and `stop`. The inferred dtype will never be + an integer; `float` is chosen even if the arguments would produce an + array of integers. + axis : int, optional + The axis in the result to store the samples. Relevant only if start + or stop are array-like. By default (0), the samples will be along a + new axis inserted at the beginning. Use -1 to get an axis at the end. + + Returns + ------- + samples : ndarray + `num` samples, equally spaced on a log scale. + + See Also + -------- + logspace : Similar to geomspace, but with endpoints specified using log + and base. + linspace : Similar to geomspace, but with arithmetic instead of geometric + progression. + arange : Similar to linspace, with the step size specified instead of the + number of samples. + :ref:`how-to-partition` + + Notes + ----- + If the inputs or dtype are complex, the output will follow a logarithmic + spiral in the complex plane. (There are an infinite number of spirals + passing through two points; the output will follow the shortest such path.) + + Examples + -------- + >>> import numpy as np + >>> np.geomspace(1, 1000, num=4) + array([ 1., 10., 100., 1000.]) + >>> np.geomspace(1, 1000, num=3, endpoint=False) + array([ 1., 10., 100.]) + >>> np.geomspace(1, 1000, num=4, endpoint=False) + array([ 1. , 5.62341325, 31.6227766 , 177.827941 ]) + >>> np.geomspace(1, 256, num=9) + array([ 1., 2., 4., 8., 16., 32., 64., 128., 256.]) + + Note that the above may not produce exact integers: + + >>> np.geomspace(1, 256, num=9, dtype=int) + array([ 1, 2, 4, 7, 16, 32, 63, 127, 256]) + >>> np.around(np.geomspace(1, 256, num=9)).astype(int) + array([ 1, 2, 4, 8, 16, 32, 64, 128, 256]) + + Negative, decreasing, and complex inputs are allowed: + + >>> np.geomspace(1000, 1, num=4) + array([1000., 100., 10., 1.]) + >>> np.geomspace(-1000, -1, num=4) + array([-1000., -100., -10., -1.]) + >>> np.geomspace(1j, 1000j, num=4) # Straight line + array([0. +1.j, 0. +10.j, 0. +100.j, 0.+1000.j]) + >>> np.geomspace(-1+0j, 1+0j, num=5) # Circle + array([-1.00000000e+00+1.22464680e-16j, -7.07106781e-01+7.07106781e-01j, + 6.12323400e-17+1.00000000e+00j, 7.07106781e-01+7.07106781e-01j, + 1.00000000e+00+0.00000000e+00j]) + + Graphical illustration of `endpoint` parameter: + + >>> import matplotlib.pyplot as plt + >>> N = 10 + >>> y = np.zeros(N) + >>> plt.semilogx(np.geomspace(1, 1000, N, endpoint=True), y + 1, 'o') + [] + >>> plt.semilogx(np.geomspace(1, 1000, N, endpoint=False), y + 2, 'o') + [] + >>> plt.axis([0.5, 2000, 0, 3]) + [0.5, 2000, 0, 3] + >>> plt.grid(True, color='0.7', linestyle='-', which='both', axis='both') + >>> plt.show() + + """ + start = asanyarray(start) + stop = asanyarray(stop) + if _nx.any(start == 0) or _nx.any(stop == 0): + raise ValueError('Geometric sequence cannot include zero') + + dt = result_type(start, stop, float(num), _nx.zeros((), dtype)) + if dtype is None: + dtype = dt + else: + # complex to dtype('complex128'), for instance + dtype = _nx.dtype(dtype) + + # Promote both arguments to the same dtype in case, for instance, one is + # complex and another is negative and log would produce NaN otherwise. + # Copy since we may change things in-place further down. + start = start.astype(dt, copy=True) + stop = stop.astype(dt, copy=True) + + # Allow negative real values and ensure a consistent result for complex + # (including avoiding negligible real or imaginary parts in output) by + # rotating start to positive real, calculating, then undoing rotation. + out_sign = _nx.sign(start) + start /= out_sign + stop = stop / out_sign + + log_start = _nx.log10(start) + log_stop = _nx.log10(stop) + result = logspace(log_start, log_stop, num=num, + endpoint=endpoint, base=10.0, dtype=dt) + + # Make sure the endpoints match the start and stop arguments. This is + # necessary because np.exp(np.log(x)) is not necessarily equal to x. + if num > 0: + result[0] = start + if num > 1 and endpoint: + result[-1] = stop + + result *= out_sign + + if axis != 0: + result = _nx.moveaxis(result, 0, axis) + + return result.astype(dtype, copy=False) + + +def _needs_add_docstring(obj): + """ + Returns true if the only way to set the docstring of `obj` from python is + via add_docstring. + + This function errs on the side of being overly conservative. + """ + Py_TPFLAGS_HEAPTYPE = 1 << 9 + + if isinstance(obj, (types.FunctionType, types.MethodType, property)): + return False + + if isinstance(obj, type) and obj.__flags__ & Py_TPFLAGS_HEAPTYPE: + return False + + return True + + +def _add_docstring(obj, doc, warn_on_python): + if warn_on_python and not _needs_add_docstring(obj): + warnings.warn( + "add_newdoc was used on a pure-python object {}. " + "Prefer to attach it directly to the source." + .format(obj), + UserWarning, + stacklevel=3) + try: + add_docstring(obj, doc) + except Exception: + pass + + +def add_newdoc(place, obj, doc, warn_on_python=True): + """ + Add documentation to an existing object, typically one defined in C + + The purpose is to allow easier editing of the docstrings without requiring + a re-compile. This exists primarily for internal use within numpy itself. + + Parameters + ---------- + place : str + The absolute name of the module to import from + obj : str or None + The name of the object to add documentation to, typically a class or + function name. + doc : {str, Tuple[str, str], List[Tuple[str, str]]} + If a string, the documentation to apply to `obj` + + If a tuple, then the first element is interpreted as an attribute + of `obj` and the second as the docstring to apply - + ``(method, docstring)`` + + If a list, then each element of the list should be a tuple of length + two - ``[(method1, docstring1), (method2, docstring2), ...]`` + warn_on_python : bool + If True, the default, emit `UserWarning` if this is used to attach + documentation to a pure-python object. + + Notes + ----- + This routine never raises an error if the docstring can't be written, but + will raise an error if the object being documented does not exist. + + This routine cannot modify read-only docstrings, as appear + in new-style classes or built-in functions. Because this + routine never raises an error the caller must check manually + that the docstrings were changed. + + Since this function grabs the ``char *`` from a c-level str object and puts + it into the ``tp_doc`` slot of the type of `obj`, it violates a number of + C-API best-practices, by: + + - modifying a `PyTypeObject` after calling `PyType_Ready` + - calling `Py_INCREF` on the str and losing the reference, so the str + will never be released + + If possible it should be avoided. + """ + new = getattr(__import__(place, globals(), {}, [obj]), obj) + if isinstance(doc, str): + if "${ARRAY_FUNCTION_LIKE}" in doc: + doc = overrides.get_array_function_like_doc(new, doc) + _add_docstring(new, doc.strip(), warn_on_python) + elif isinstance(doc, tuple): + attr, docstring = doc + _add_docstring(getattr(new, attr), docstring.strip(), warn_on_python) + elif isinstance(doc, list): + for attr, docstring in doc: + _add_docstring( + getattr(new, attr), docstring.strip(), warn_on_python + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.pyi new file mode 100644 index 0000000000000000000000000000000000000000..12fdf677d0f5ff604ee9aca5d38c602ca79b295e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/function_base.pyi @@ -0,0 +1,235 @@ +from typing import ( + Literal as L, + overload, + Any, + SupportsIndex, + TypeVar, +) + +from numpy import floating, complexfloating, generic +from numpy._typing import ( + NDArray, + DTypeLike, + _DTypeLike, + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, +) + +__all__ = ["logspace", "linspace", "geomspace"] + +_SCT = TypeVar("_SCT", bound=generic) + +@overload +def linspace( + start: _ArrayLikeFloat_co, + stop: _ArrayLikeFloat_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + retstep: L[False] = ..., + dtype: None = ..., + axis: SupportsIndex = ..., + *, + device: L["cpu"] | None = ..., +) -> NDArray[floating]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + retstep: L[False] = ..., + dtype: None = ..., + axis: SupportsIndex = ..., + *, + device: L["cpu"] | None = ..., +) -> NDArray[complexfloating]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex, + endpoint: bool, + retstep: L[False], + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., + *, + device: L["cpu"] | None = ..., +) -> NDArray[_SCT]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + retstep: L[False] = ..., + *, + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., + device: L["cpu"] | None = ..., +) -> NDArray[_SCT]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + retstep: L[False] = ..., + dtype: DTypeLike = ..., + axis: SupportsIndex = ..., + *, + device: L["cpu"] | None = ..., +) -> NDArray[Any]: ... +@overload +def linspace( + start: _ArrayLikeFloat_co, + stop: _ArrayLikeFloat_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + *, + retstep: L[True], + dtype: None = ..., + axis: SupportsIndex = ..., + device: L["cpu"] | None = ..., +) -> tuple[NDArray[floating], floating]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + *, + retstep: L[True], + dtype: None = ..., + axis: SupportsIndex = ..., + device: L["cpu"] | None = ..., +) -> tuple[NDArray[complexfloating], complexfloating]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + *, + retstep: L[True], + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., + device: L["cpu"] | None = ..., +) -> tuple[NDArray[_SCT], _SCT]: ... +@overload +def linspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + *, + retstep: L[True], + dtype: DTypeLike = ..., + axis: SupportsIndex = ..., + device: L["cpu"] | None = ..., +) -> tuple[NDArray[Any], Any]: ... + +@overload +def logspace( + start: _ArrayLikeFloat_co, + stop: _ArrayLikeFloat_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + base: _ArrayLikeFloat_co = ..., + dtype: None = ..., + axis: SupportsIndex = ..., +) -> NDArray[floating]: ... +@overload +def logspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + base: _ArrayLikeComplex_co = ..., + dtype: None = ..., + axis: SupportsIndex = ..., +) -> NDArray[complexfloating]: ... +@overload +def logspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex, + endpoint: bool, + base: _ArrayLikeComplex_co, + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., +) -> NDArray[_SCT]: ... +@overload +def logspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + base: _ArrayLikeComplex_co = ..., + *, + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., +) -> NDArray[_SCT]: ... +@overload +def logspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + base: _ArrayLikeComplex_co = ..., + dtype: DTypeLike = ..., + axis: SupportsIndex = ..., +) -> NDArray[Any]: ... + +@overload +def geomspace( + start: _ArrayLikeFloat_co, + stop: _ArrayLikeFloat_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + dtype: None = ..., + axis: SupportsIndex = ..., +) -> NDArray[floating]: ... +@overload +def geomspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + dtype: None = ..., + axis: SupportsIndex = ..., +) -> NDArray[complexfloating]: ... +@overload +def geomspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex, + endpoint: bool, + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., +) -> NDArray[_SCT]: ... +@overload +def geomspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + *, + dtype: _DTypeLike[_SCT], + axis: SupportsIndex = ..., +) -> NDArray[_SCT]: ... +@overload +def geomspace( + start: _ArrayLikeComplex_co, + stop: _ArrayLikeComplex_co, + num: SupportsIndex = ..., + endpoint: bool = ..., + dtype: DTypeLike = ..., + axis: SupportsIndex = ..., +) -> NDArray[Any]: ... + +def add_newdoc( + place: str, + obj: str, + doc: str | tuple[str, str] | list[tuple[str, str]], + warn_on_python: bool = ..., +) -> None: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.py new file mode 100644 index 0000000000000000000000000000000000000000..3ceb8139ee70582cb0865da7801b51b01293e5a7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.py @@ -0,0 +1,747 @@ +"""Machine limits for Float32 and Float64 and (long double) if available... + +""" +__all__ = ['finfo', 'iinfo'] + +import types +import warnings + +from .._utils import set_module +from ._machar import MachAr +from . import numeric +from . import numerictypes as ntypes +from .numeric import array, inf, nan +from .umath import log10, exp2, nextafter, isnan + + +def _fr0(a): + """fix rank-0 --> rank-1""" + if a.ndim == 0: + a = a.copy() + a.shape = (1,) + return a + + +def _fr1(a): + """fix rank > 0 --> rank-0""" + if a.size == 1: + a = a.copy() + a.shape = () + return a + + +class MachArLike: + """ Object to simulate MachAr instance """ + def __init__(self, ftype, *, eps, epsneg, huge, tiny, + ibeta, smallest_subnormal=None, **kwargs): + self.params = _MACHAR_PARAMS[ftype] + self.ftype = ftype + self.title = self.params['title'] + # Parameter types same as for discovered MachAr object. + if not smallest_subnormal: + self._smallest_subnormal = nextafter( + self.ftype(0), self.ftype(1), dtype=self.ftype) + else: + self._smallest_subnormal = smallest_subnormal + self.epsilon = self.eps = self._float_to_float(eps) + self.epsneg = self._float_to_float(epsneg) + self.xmax = self.huge = self._float_to_float(huge) + self.xmin = self._float_to_float(tiny) + self.smallest_normal = self.tiny = self._float_to_float(tiny) + self.ibeta = self.params['itype'](ibeta) + self.__dict__.update(kwargs) + self.precision = int(-log10(self.eps)) + self.resolution = self._float_to_float( + self._float_conv(10) ** (-self.precision)) + self._str_eps = self._float_to_str(self.eps) + self._str_epsneg = self._float_to_str(self.epsneg) + self._str_xmin = self._float_to_str(self.xmin) + self._str_xmax = self._float_to_str(self.xmax) + self._str_resolution = self._float_to_str(self.resolution) + self._str_smallest_normal = self._float_to_str(self.xmin) + + @property + def smallest_subnormal(self): + """Return the value for the smallest subnormal. + + Returns + ------- + smallest_subnormal : float + value for the smallest subnormal. + + Warns + ----- + UserWarning + If the calculated value for the smallest subnormal is zero. + """ + # Check that the calculated value is not zero, in case it raises a + # warning. + value = self._smallest_subnormal + if self.ftype(0) == value: + warnings.warn( + 'The value of the smallest subnormal for {} type ' + 'is zero.'.format(self.ftype), UserWarning, stacklevel=2) + + return self._float_to_float(value) + + @property + def _str_smallest_subnormal(self): + """Return the string representation of the smallest subnormal.""" + return self._float_to_str(self.smallest_subnormal) + + def _float_to_float(self, value): + """Converts float to float. + + Parameters + ---------- + value : float + value to be converted. + """ + return _fr1(self._float_conv(value)) + + def _float_conv(self, value): + """Converts float to conv. + + Parameters + ---------- + value : float + value to be converted. + """ + return array([value], self.ftype) + + def _float_to_str(self, value): + """Converts float to str. + + Parameters + ---------- + value : float + value to be converted. + """ + return self.params['fmt'] % array(_fr0(value)[0], self.ftype) + + +_convert_to_float = { + ntypes.csingle: ntypes.single, + ntypes.complex128: ntypes.float64, + ntypes.clongdouble: ntypes.longdouble + } + +# Parameters for creating MachAr / MachAr-like objects +_title_fmt = 'numpy {} precision floating point number' +_MACHAR_PARAMS = { + ntypes.double: dict( + itype = ntypes.int64, + fmt = '%24.16e', + title = _title_fmt.format('double')), + ntypes.single: dict( + itype = ntypes.int32, + fmt = '%15.7e', + title = _title_fmt.format('single')), + ntypes.longdouble: dict( + itype = ntypes.longlong, + fmt = '%s', + title = _title_fmt.format('long double')), + ntypes.half: dict( + itype = ntypes.int16, + fmt = '%12.5e', + title = _title_fmt.format('half'))} + +# Key to identify the floating point type. Key is result of +# +# ftype = np.longdouble # or float64, float32, etc. +# v = (ftype(-1.0) / ftype(10.0)) +# v.view(v.dtype.newbyteorder('<')).tobytes() +# +# Uses division to work around deficiencies in strtold on some platforms. +# See: +# https://perl5.git.perl.org/perl.git/blob/3118d7d684b56cbeb702af874f4326683c45f045:/Configure + +_KNOWN_TYPES = {} +def _register_type(machar, bytepat): + _KNOWN_TYPES[bytepat] = machar + + +_float_ma = {} + + +def _register_known_types(): + # Known parameters for float16 + # See docstring of MachAr class for description of parameters. + f16 = ntypes.float16 + float16_ma = MachArLike(f16, + machep=-10, + negep=-11, + minexp=-14, + maxexp=16, + it=10, + iexp=5, + ibeta=2, + irnd=5, + ngrd=0, + eps=exp2(f16(-10)), + epsneg=exp2(f16(-11)), + huge=f16(65504), + tiny=f16(2 ** -14)) + _register_type(float16_ma, b'f\xae') + _float_ma[16] = float16_ma + + # Known parameters for float32 + f32 = ntypes.float32 + float32_ma = MachArLike(f32, + machep=-23, + negep=-24, + minexp=-126, + maxexp=128, + it=23, + iexp=8, + ibeta=2, + irnd=5, + ngrd=0, + eps=exp2(f32(-23)), + epsneg=exp2(f32(-24)), + huge=f32((1 - 2 ** -24) * 2**128), + tiny=exp2(f32(-126))) + _register_type(float32_ma, b'\xcd\xcc\xcc\xbd') + _float_ma[32] = float32_ma + + # Known parameters for float64 + f64 = ntypes.float64 + epsneg_f64 = 2.0 ** -53.0 + tiny_f64 = 2.0 ** -1022.0 + float64_ma = MachArLike(f64, + machep=-52, + negep=-53, + minexp=-1022, + maxexp=1024, + it=52, + iexp=11, + ibeta=2, + irnd=5, + ngrd=0, + eps=2.0 ** -52.0, + epsneg=epsneg_f64, + huge=(1.0 - epsneg_f64) / tiny_f64 * f64(4), + tiny=tiny_f64) + _register_type(float64_ma, b'\x9a\x99\x99\x99\x99\x99\xb9\xbf') + _float_ma[64] = float64_ma + + # Known parameters for IEEE 754 128-bit binary float + ld = ntypes.longdouble + epsneg_f128 = exp2(ld(-113)) + tiny_f128 = exp2(ld(-16382)) + # Ignore runtime error when this is not f128 + with numeric.errstate(all='ignore'): + huge_f128 = (ld(1) - epsneg_f128) / tiny_f128 * ld(4) + float128_ma = MachArLike(ld, + machep=-112, + negep=-113, + minexp=-16382, + maxexp=16384, + it=112, + iexp=15, + ibeta=2, + irnd=5, + ngrd=0, + eps=exp2(ld(-112)), + epsneg=epsneg_f128, + huge=huge_f128, + tiny=tiny_f128) + # IEEE 754 128-bit binary float + _register_type(float128_ma, + b'\x9a\x99\x99\x99\x99\x99\x99\x99\x99\x99\x99\x99\x99\x99\xfb\xbf') + _float_ma[128] = float128_ma + + # Known parameters for float80 (Intel 80-bit extended precision) + epsneg_f80 = exp2(ld(-64)) + tiny_f80 = exp2(ld(-16382)) + # Ignore runtime error when this is not f80 + with numeric.errstate(all='ignore'): + huge_f80 = (ld(1) - epsneg_f80) / tiny_f80 * ld(4) + float80_ma = MachArLike(ld, + machep=-63, + negep=-64, + minexp=-16382, + maxexp=16384, + it=63, + iexp=15, + ibeta=2, + irnd=5, + ngrd=0, + eps=exp2(ld(-63)), + epsneg=epsneg_f80, + huge=huge_f80, + tiny=tiny_f80) + # float80, first 10 bytes containing actual storage + _register_type(float80_ma, b'\xcd\xcc\xcc\xcc\xcc\xcc\xcc\xcc\xfb\xbf') + _float_ma[80] = float80_ma + + # Guessed / known parameters for double double; see: + # https://en.wikipedia.org/wiki/Quadruple-precision_floating-point_format#Double-double_arithmetic + # These numbers have the same exponent range as float64, but extended + # number of digits in the significand. + huge_dd = nextafter(ld(inf), ld(0), dtype=ld) + # As the smallest_normal in double double is so hard to calculate we set + # it to NaN. + smallest_normal_dd = nan + # Leave the same value for the smallest subnormal as double + smallest_subnormal_dd = ld(nextafter(0., 1.)) + float_dd_ma = MachArLike(ld, + machep=-105, + negep=-106, + minexp=-1022, + maxexp=1024, + it=105, + iexp=11, + ibeta=2, + irnd=5, + ngrd=0, + eps=exp2(ld(-105)), + epsneg=exp2(ld(-106)), + huge=huge_dd, + tiny=smallest_normal_dd, + smallest_subnormal=smallest_subnormal_dd) + # double double; low, high order (e.g. PPC 64) + _register_type(float_dd_ma, + b'\x9a\x99\x99\x99\x99\x99Y<\x9a\x99\x99\x99\x99\x99\xb9\xbf') + # double double; high, low order (e.g. PPC 64 le) + _register_type(float_dd_ma, + b'\x9a\x99\x99\x99\x99\x99\xb9\xbf\x9a\x99\x99\x99\x99\x99Y<') + _float_ma['dd'] = float_dd_ma + + +def _get_machar(ftype): + """ Get MachAr instance or MachAr-like instance + + Get parameters for floating point type, by first trying signatures of + various known floating point types, then, if none match, attempting to + identify parameters by analysis. + + Parameters + ---------- + ftype : class + Numpy floating point type class (e.g. ``np.float64``) + + Returns + ------- + ma_like : instance of :class:`MachAr` or :class:`MachArLike` + Object giving floating point parameters for `ftype`. + + Warns + ----- + UserWarning + If the binary signature of the float type is not in the dictionary of + known float types. + """ + params = _MACHAR_PARAMS.get(ftype) + if params is None: + raise ValueError(repr(ftype)) + # Detect known / suspected types + # ftype(-1.0) / ftype(10.0) is better than ftype('-0.1') because stold + # may be deficient + key = (ftype(-1.0) / ftype(10.)) + key = key.view(key.dtype.newbyteorder("<")).tobytes() + ma_like = None + if ftype == ntypes.longdouble: + # Could be 80 bit == 10 byte extended precision, where last bytes can + # be random garbage. + # Comparing first 10 bytes to pattern first to avoid branching on the + # random garbage. + ma_like = _KNOWN_TYPES.get(key[:10]) + if ma_like is None: + # see if the full key is known. + ma_like = _KNOWN_TYPES.get(key) + if ma_like is None and len(key) == 16: + # machine limits could be f80 masquerading as np.float128, + # find all keys with length 16 and make new dict, but make the keys + # only 10 bytes long, the last bytes can be random garbage + _kt = {k[:10]: v for k, v in _KNOWN_TYPES.items() if len(k) == 16} + ma_like = _kt.get(key[:10]) + if ma_like is not None: + return ma_like + # Fall back to parameter discovery + warnings.warn( + f'Signature {key} for {ftype} does not match any known type: ' + 'falling back to type probe function.\n' + 'This warnings indicates broken support for the dtype!', + UserWarning, stacklevel=2) + return _discovered_machar(ftype) + + +def _discovered_machar(ftype): + """ Create MachAr instance with found information on float types + + TODO: MachAr should be retired completely ideally. We currently only + ever use it system with broken longdouble (valgrind, WSL). + """ + params = _MACHAR_PARAMS[ftype] + return MachAr(lambda v: array([v], ftype), + lambda v: _fr0(v.astype(params['itype']))[0], + lambda v: array(_fr0(v)[0], ftype), + lambda v: params['fmt'] % array(_fr0(v)[0], ftype), + params['title']) + + +@set_module('numpy') +class finfo: + """ + finfo(dtype) + + Machine limits for floating point types. + + Attributes + ---------- + bits : int + The number of bits occupied by the type. + dtype : dtype + Returns the dtype for which `finfo` returns information. For complex + input, the returned dtype is the associated ``float*`` dtype for its + real and complex components. + eps : float + The difference between 1.0 and the next smallest representable float + larger than 1.0. For example, for 64-bit binary floats in the IEEE-754 + standard, ``eps = 2**-52``, approximately 2.22e-16. + epsneg : float + The difference between 1.0 and the next smallest representable float + less than 1.0. For example, for 64-bit binary floats in the IEEE-754 + standard, ``epsneg = 2**-53``, approximately 1.11e-16. + iexp : int + The number of bits in the exponent portion of the floating point + representation. + machep : int + The exponent that yields `eps`. + max : floating point number of the appropriate type + The largest representable number. + maxexp : int + The smallest positive power of the base (2) that causes overflow. + min : floating point number of the appropriate type + The smallest representable number, typically ``-max``. + minexp : int + The most negative power of the base (2) consistent with there + being no leading 0's in the mantissa. + negep : int + The exponent that yields `epsneg`. + nexp : int + The number of bits in the exponent including its sign and bias. + nmant : int + The number of bits in the mantissa. + precision : int + The approximate number of decimal digits to which this kind of + float is precise. + resolution : floating point number of the appropriate type + The approximate decimal resolution of this type, i.e., + ``10**-precision``. + tiny : float + An alias for `smallest_normal`, kept for backwards compatibility. + smallest_normal : float + The smallest positive floating point number with 1 as leading bit in + the mantissa following IEEE-754 (see Notes). + smallest_subnormal : float + The smallest positive floating point number with 0 as leading bit in + the mantissa following IEEE-754. + + Parameters + ---------- + dtype : float, dtype, or instance + Kind of floating point or complex floating point + data-type about which to get information. + + See Also + -------- + iinfo : The equivalent for integer data types. + spacing : The distance between a value and the nearest adjacent number + nextafter : The next floating point value after x1 towards x2 + + Notes + ----- + For developers of NumPy: do not instantiate this at the module level. + The initial calculation of these parameters is expensive and negatively + impacts import times. These objects are cached, so calling ``finfo()`` + repeatedly inside your functions is not a problem. + + Note that ``smallest_normal`` is not actually the smallest positive + representable value in a NumPy floating point type. As in the IEEE-754 + standard [1]_, NumPy floating point types make use of subnormal numbers to + fill the gap between 0 and ``smallest_normal``. However, subnormal numbers + may have significantly reduced precision [2]_. + + This function can also be used for complex data types as well. If used, + the output will be the same as the corresponding real float type + (e.g. numpy.finfo(numpy.csingle) is the same as numpy.finfo(numpy.single)). + However, the output is true for the real and imaginary components. + + References + ---------- + .. [1] IEEE Standard for Floating-Point Arithmetic, IEEE Std 754-2008, + pp.1-70, 2008, https://doi.org/10.1109/IEEESTD.2008.4610935 + .. [2] Wikipedia, "Denormal Numbers", + https://en.wikipedia.org/wiki/Denormal_number + + Examples + -------- + >>> import numpy as np + >>> np.finfo(np.float64).dtype + dtype('float64') + >>> np.finfo(np.complex64).dtype + dtype('float32') + + """ + + _finfo_cache = {} + + __class_getitem__ = classmethod(types.GenericAlias) + + def __new__(cls, dtype): + try: + obj = cls._finfo_cache.get(dtype) # most common path + if obj is not None: + return obj + except TypeError: + pass + + if dtype is None: + # Deprecated in NumPy 1.25, 2023-01-16 + warnings.warn( + "finfo() dtype cannot be None. This behavior will " + "raise an error in the future. (Deprecated in NumPy 1.25)", + DeprecationWarning, + stacklevel=2 + ) + + try: + dtype = numeric.dtype(dtype) + except TypeError: + # In case a float instance was given + dtype = numeric.dtype(type(dtype)) + + obj = cls._finfo_cache.get(dtype) + if obj is not None: + return obj + dtypes = [dtype] + newdtype = ntypes.obj2sctype(dtype) + if newdtype is not dtype: + dtypes.append(newdtype) + dtype = newdtype + if not issubclass(dtype, numeric.inexact): + raise ValueError("data type %r not inexact" % (dtype)) + obj = cls._finfo_cache.get(dtype) + if obj is not None: + return obj + if not issubclass(dtype, numeric.floating): + newdtype = _convert_to_float[dtype] + if newdtype is not dtype: + # dtype changed, for example from complex128 to float64 + dtypes.append(newdtype) + dtype = newdtype + + obj = cls._finfo_cache.get(dtype, None) + if obj is not None: + # the original dtype was not in the cache, but the new + # dtype is in the cache. we add the original dtypes to + # the cache and return the result + for dt in dtypes: + cls._finfo_cache[dt] = obj + return obj + obj = object.__new__(cls)._init(dtype) + for dt in dtypes: + cls._finfo_cache[dt] = obj + return obj + + def _init(self, dtype): + self.dtype = numeric.dtype(dtype) + machar = _get_machar(dtype) + + for word in ['precision', 'iexp', + 'maxexp', 'minexp', 'negep', + 'machep']: + setattr(self, word, getattr(machar, word)) + for word in ['resolution', 'epsneg', 'smallest_subnormal']: + setattr(self, word, getattr(machar, word).flat[0]) + self.bits = self.dtype.itemsize * 8 + self.max = machar.huge.flat[0] + self.min = -self.max + self.eps = machar.eps.flat[0] + self.nexp = machar.iexp + self.nmant = machar.it + self._machar = machar + self._str_tiny = machar._str_xmin.strip() + self._str_max = machar._str_xmax.strip() + self._str_epsneg = machar._str_epsneg.strip() + self._str_eps = machar._str_eps.strip() + self._str_resolution = machar._str_resolution.strip() + self._str_smallest_normal = machar._str_smallest_normal.strip() + self._str_smallest_subnormal = machar._str_smallest_subnormal.strip() + return self + + def __str__(self): + fmt = ( + 'Machine parameters for %(dtype)s\n' + '---------------------------------------------------------------\n' + 'precision = %(precision)3s resolution = %(_str_resolution)s\n' + 'machep = %(machep)6s eps = %(_str_eps)s\n' + 'negep = %(negep)6s epsneg = %(_str_epsneg)s\n' + 'minexp = %(minexp)6s tiny = %(_str_tiny)s\n' + 'maxexp = %(maxexp)6s max = %(_str_max)s\n' + 'nexp = %(nexp)6s min = -max\n' + 'smallest_normal = %(_str_smallest_normal)s ' + 'smallest_subnormal = %(_str_smallest_subnormal)s\n' + '---------------------------------------------------------------\n' + ) + return fmt % self.__dict__ + + def __repr__(self): + c = self.__class__.__name__ + d = self.__dict__.copy() + d['klass'] = c + return (("%(klass)s(resolution=%(resolution)s, min=-%(_str_max)s," + " max=%(_str_max)s, dtype=%(dtype)s)") % d) + + @property + def smallest_normal(self): + """Return the value for the smallest normal. + + Returns + ------- + smallest_normal : float + Value for the smallest normal. + + Warns + ----- + UserWarning + If the calculated value for the smallest normal is requested for + double-double. + """ + # This check is necessary because the value for smallest_normal is + # platform dependent for longdouble types. + if isnan(self._machar.smallest_normal.flat[0]): + warnings.warn( + 'The value of smallest normal is undefined for double double', + UserWarning, stacklevel=2) + return self._machar.smallest_normal.flat[0] + + @property + def tiny(self): + """Return the value for tiny, alias of smallest_normal. + + Returns + ------- + tiny : float + Value for the smallest normal, alias of smallest_normal. + + Warns + ----- + UserWarning + If the calculated value for the smallest normal is requested for + double-double. + """ + return self.smallest_normal + + +@set_module('numpy') +class iinfo: + """ + iinfo(type) + + Machine limits for integer types. + + Attributes + ---------- + bits : int + The number of bits occupied by the type. + dtype : dtype + Returns the dtype for which `iinfo` returns information. + min : int + The smallest integer expressible by the type. + max : int + The largest integer expressible by the type. + + Parameters + ---------- + int_type : integer type, dtype, or instance + The kind of integer data type to get information about. + + See Also + -------- + finfo : The equivalent for floating point data types. + + Examples + -------- + With types: + + >>> import numpy as np + >>> ii16 = np.iinfo(np.int16) + >>> ii16.min + -32768 + >>> ii16.max + 32767 + >>> ii32 = np.iinfo(np.int32) + >>> ii32.min + -2147483648 + >>> ii32.max + 2147483647 + + With instances: + + >>> ii32 = np.iinfo(np.int32(10)) + >>> ii32.min + -2147483648 + >>> ii32.max + 2147483647 + + """ + + _min_vals = {} + _max_vals = {} + + __class_getitem__ = classmethod(types.GenericAlias) + + def __init__(self, int_type): + try: + self.dtype = numeric.dtype(int_type) + except TypeError: + self.dtype = numeric.dtype(type(int_type)) + self.kind = self.dtype.kind + self.bits = self.dtype.itemsize * 8 + self.key = "%s%d" % (self.kind, self.bits) + if self.kind not in 'iu': + raise ValueError("Invalid integer data type %r." % (self.kind,)) + + @property + def min(self): + """Minimum value of given dtype.""" + if self.kind == 'u': + return 0 + else: + try: + val = iinfo._min_vals[self.key] + except KeyError: + val = int(-(1 << (self.bits-1))) + iinfo._min_vals[self.key] = val + return val + + @property + def max(self): + """Maximum value of given dtype.""" + try: + val = iinfo._max_vals[self.key] + except KeyError: + if self.kind == 'u': + val = int((1 << self.bits) - 1) + else: + val = int((1 << (self.bits-1)) - 1) + iinfo._max_vals[self.key] = val + return val + + def __str__(self): + """String representation.""" + fmt = ( + 'Machine parameters for %(dtype)s\n' + '---------------------------------------------------------------\n' + 'min = %(min)s\n' + 'max = %(max)s\n' + '---------------------------------------------------------------\n' + ) + return fmt % {'dtype': self.dtype, 'min': self.min, 'max': self.max} + + def __repr__(self): + return "%s(min=%s, max=%s, dtype=%s)" % (self.__class__.__name__, + self.min, self.max, self.dtype) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.pyi new file mode 100644 index 0000000000000000000000000000000000000000..9d79b178f4dc07ec25c365e06a186cc9ae2e5baf --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/getlimits.pyi @@ -0,0 +1,3 @@ +from numpy import finfo, iinfo + +__all__ = ["finfo", "iinfo"] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.py new file mode 100644 index 0000000000000000000000000000000000000000..a5fa10c0e036fd6908810b0c20b401c22f75849b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.py @@ -0,0 +1,361 @@ +from contextlib import nullcontext +import operator +import numpy as np +from .._utils import set_module +from .numeric import uint8, ndarray, dtype + +__all__ = ['memmap'] + +dtypedescr = dtype +valid_filemodes = ["r", "c", "r+", "w+"] +writeable_filemodes = ["r+", "w+"] + +mode_equivalents = { + "readonly":"r", + "copyonwrite":"c", + "readwrite":"r+", + "write":"w+" + } + + +@set_module('numpy') +class memmap(ndarray): + """Create a memory-map to an array stored in a *binary* file on disk. + + Memory-mapped files are used for accessing small segments of large files + on disk, without reading the entire file into memory. NumPy's + memmap's are array-like objects. This differs from Python's ``mmap`` + module, which uses file-like objects. + + This subclass of ndarray has some unpleasant interactions with + some operations, because it doesn't quite fit properly as a subclass. + An alternative to using this subclass is to create the ``mmap`` + object yourself, then create an ndarray with ndarray.__new__ directly, + passing the object created in its 'buffer=' parameter. + + This class may at some point be turned into a factory function + which returns a view into an mmap buffer. + + Flush the memmap instance to write the changes to the file. Currently there + is no API to close the underlying ``mmap``. It is tricky to ensure the + resource is actually closed, since it may be shared between different + memmap instances. + + + Parameters + ---------- + filename : str, file-like object, or pathlib.Path instance + The file name or file object to be used as the array data buffer. + dtype : data-type, optional + The data-type used to interpret the file contents. + Default is `uint8`. + mode : {'r+', 'r', 'w+', 'c'}, optional + The file is opened in this mode: + + +------+-------------------------------------------------------------+ + | 'r' | Open existing file for reading only. | + +------+-------------------------------------------------------------+ + | 'r+' | Open existing file for reading and writing. | + +------+-------------------------------------------------------------+ + | 'w+' | Create or overwrite existing file for reading and writing. | + | | If ``mode == 'w+'`` then `shape` must also be specified. | + +------+-------------------------------------------------------------+ + | 'c' | Copy-on-write: assignments affect data in memory, but | + | | changes are not saved to disk. The file on disk is | + | | read-only. | + +------+-------------------------------------------------------------+ + + Default is 'r+'. + offset : int, optional + In the file, array data starts at this offset. Since `offset` is + measured in bytes, it should normally be a multiple of the byte-size + of `dtype`. When ``mode != 'r'``, even positive offsets beyond end of + file are valid; The file will be extended to accommodate the + additional data. By default, ``memmap`` will start at the beginning of + the file, even if ``filename`` is a file pointer ``fp`` and + ``fp.tell() != 0``. + shape : int or sequence of ints, optional + The desired shape of the array. If ``mode == 'r'`` and the number + of remaining bytes after `offset` is not a multiple of the byte-size + of `dtype`, you must specify `shape`. By default, the returned array + will be 1-D with the number of elements determined by file size + and data-type. + + .. versionchanged:: 2.0 + The shape parameter can now be any integer sequence type, previously + types were limited to tuple and int. + + order : {'C', 'F'}, optional + Specify the order of the ndarray memory layout: + :term:`row-major`, C-style or :term:`column-major`, + Fortran-style. This only has an effect if the shape is + greater than 1-D. The default order is 'C'. + + Attributes + ---------- + filename : str or pathlib.Path instance + Path to the mapped file. + offset : int + Offset position in the file. + mode : str + File mode. + + Methods + ------- + flush + Flush any changes in memory to file on disk. + When you delete a memmap object, flush is called first to write + changes to disk. + + + See also + -------- + lib.format.open_memmap : Create or load a memory-mapped ``.npy`` file. + + Notes + ----- + The memmap object can be used anywhere an ndarray is accepted. + Given a memmap ``fp``, ``isinstance(fp, numpy.ndarray)`` returns + ``True``. + + Memory-mapped files cannot be larger than 2GB on 32-bit systems. + + When a memmap causes a file to be created or extended beyond its + current size in the filesystem, the contents of the new part are + unspecified. On systems with POSIX filesystem semantics, the extended + part will be filled with zero bytes. + + Examples + -------- + >>> import numpy as np + >>> data = np.arange(12, dtype='float32') + >>> data.resize((3,4)) + + This example uses a temporary file so that doctest doesn't write + files to your directory. You would use a 'normal' filename. + + >>> from tempfile import mkdtemp + >>> import os.path as path + >>> filename = path.join(mkdtemp(), 'newfile.dat') + + Create a memmap with dtype and shape that matches our data: + + >>> fp = np.memmap(filename, dtype='float32', mode='w+', shape=(3,4)) + >>> fp + memmap([[0., 0., 0., 0.], + [0., 0., 0., 0.], + [0., 0., 0., 0.]], dtype=float32) + + Write data to memmap array: + + >>> fp[:] = data[:] + >>> fp + memmap([[ 0., 1., 2., 3.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.]], dtype=float32) + + >>> fp.filename == path.abspath(filename) + True + + Flushes memory changes to disk in order to read them back + + >>> fp.flush() + + Load the memmap and verify data was stored: + + >>> newfp = np.memmap(filename, dtype='float32', mode='r', shape=(3,4)) + >>> newfp + memmap([[ 0., 1., 2., 3.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.]], dtype=float32) + + Read-only memmap: + + >>> fpr = np.memmap(filename, dtype='float32', mode='r', shape=(3,4)) + >>> fpr.flags.writeable + False + + Copy-on-write memmap: + + >>> fpc = np.memmap(filename, dtype='float32', mode='c', shape=(3,4)) + >>> fpc.flags.writeable + True + + It's possible to assign to copy-on-write array, but values are only + written into the memory copy of the array, and not written to disk: + + >>> fpc + memmap([[ 0., 1., 2., 3.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.]], dtype=float32) + >>> fpc[0,:] = 0 + >>> fpc + memmap([[ 0., 0., 0., 0.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.]], dtype=float32) + + File on disk is unchanged: + + >>> fpr + memmap([[ 0., 1., 2., 3.], + [ 4., 5., 6., 7.], + [ 8., 9., 10., 11.]], dtype=float32) + + Offset into a memmap: + + >>> fpo = np.memmap(filename, dtype='float32', mode='r', offset=16) + >>> fpo + memmap([ 4., 5., 6., 7., 8., 9., 10., 11.], dtype=float32) + + """ + + __array_priority__ = -100.0 + + def __new__(subtype, filename, dtype=uint8, mode='r+', offset=0, + shape=None, order='C'): + # Import here to minimize 'import numpy' overhead + import mmap + import os.path + try: + mode = mode_equivalents[mode] + except KeyError as e: + if mode not in valid_filemodes: + raise ValueError( + "mode must be one of {!r} (got {!r})" + .format(valid_filemodes + list(mode_equivalents.keys()), mode) + ) from None + + if mode == 'w+' and shape is None: + raise ValueError("shape must be given if mode == 'w+'") + + if hasattr(filename, 'read'): + f_ctx = nullcontext(filename) + else: + f_ctx = open( + os.fspath(filename), + ('r' if mode == 'c' else mode)+'b' + ) + + with f_ctx as fid: + fid.seek(0, 2) + flen = fid.tell() + descr = dtypedescr(dtype) + _dbytes = descr.itemsize + + if shape is None: + bytes = flen - offset + if bytes % _dbytes: + raise ValueError("Size of available data is not a " + "multiple of the data-type size.") + size = bytes // _dbytes + shape = (size,) + else: + if type(shape) not in (tuple, list): + try: + shape = [operator.index(shape)] + except TypeError: + pass + shape = tuple(shape) + size = np.intp(1) # avoid default choice of np.int_, which might overflow + for k in shape: + size *= k + + bytes = int(offset + size*_dbytes) + + if mode in ('w+', 'r+'): + # gh-27723 + # if bytes == 0, we write out 1 byte to allow empty memmap. + bytes = max(bytes, 1) + if flen < bytes: + fid.seek(bytes - 1, 0) + fid.write(b'\0') + fid.flush() + + if mode == 'c': + acc = mmap.ACCESS_COPY + elif mode == 'r': + acc = mmap.ACCESS_READ + else: + acc = mmap.ACCESS_WRITE + + start = offset - offset % mmap.ALLOCATIONGRANULARITY + bytes -= start + # bytes == 0 is problematic as in mmap length=0 maps the full file. + # See PR gh-27723 for a more detailed explanation. + if bytes == 0 and start > 0: + bytes += mmap.ALLOCATIONGRANULARITY + start -= mmap.ALLOCATIONGRANULARITY + array_offset = offset - start + mm = mmap.mmap(fid.fileno(), bytes, access=acc, offset=start) + + self = ndarray.__new__(subtype, shape, dtype=descr, buffer=mm, + offset=array_offset, order=order) + self._mmap = mm + self.offset = offset + self.mode = mode + + if isinstance(filename, os.PathLike): + # special case - if we were constructed with a pathlib.path, + # then filename is a path object, not a string + self.filename = filename.resolve() + elif hasattr(fid, "name") and isinstance(fid.name, str): + # py3 returns int for TemporaryFile().name + self.filename = os.path.abspath(fid.name) + # same as memmap copies (e.g. memmap + 1) + else: + self.filename = None + + return self + + def __array_finalize__(self, obj): + if hasattr(obj, '_mmap') and np.may_share_memory(self, obj): + self._mmap = obj._mmap + self.filename = obj.filename + self.offset = obj.offset + self.mode = obj.mode + else: + self._mmap = None + self.filename = None + self.offset = None + self.mode = None + + def flush(self): + """ + Write any changes in the array to the file on disk. + + For further information, see `memmap`. + + Parameters + ---------- + None + + See Also + -------- + memmap + + """ + if self.base is not None and hasattr(self.base, 'flush'): + self.base.flush() + + def __array_wrap__(self, arr, context=None, return_scalar=False): + arr = super().__array_wrap__(arr, context) + + # Return a memmap if a memmap was given as the output of the + # ufunc. Leave the arr class unchanged if self is not a memmap + # to keep original memmap subclasses behavior + if self is arr or type(self) is not memmap: + return arr + + # Return scalar instead of 0d memmap, e.g. for np.sum with + # axis=None (note that subclasses will not reach here) + if return_scalar: + return arr[()] + + # Return ndarray otherwise + return arr.view(np.ndarray) + + def __getitem__(self, index): + res = super().__getitem__(index) + if type(res) is memmap and res._mmap is None: + return res.view(type=ndarray) + return res diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.pyi new file mode 100644 index 0000000000000000000000000000000000000000..0b31328404fb397614bd03832af9282ce251c4f4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/memmap.pyi @@ -0,0 +1,3 @@ +from numpy import memmap + +__all__ = ["memmap"] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.py new file mode 100644 index 0000000000000000000000000000000000000000..088de1073e7ecb6ded523ec82482be658f97fb2c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.py @@ -0,0 +1,1754 @@ +""" +Create the numpy._core.multiarray namespace for backward compatibility. +In v1.16 the multiarray and umath c-extension modules were merged into +a single _multiarray_umath extension module. So we replicate the old +namespace by importing from the extension module. + +""" + +import functools +from . import overrides +from . import _multiarray_umath +from ._multiarray_umath import * # noqa: F403 +# These imports are needed for backward compatibility, +# do not change them. issue gh-15518 +# _get_ndarray_c_version is semi-public, on purpose not added to __all__ +from ._multiarray_umath import ( + _flagdict, from_dlpack, _place, _reconstruct, + _vec_string, _ARRAY_API, _monotonicity, _get_ndarray_c_version, + _get_madvise_hugepage, _set_madvise_hugepage, + ) + +__all__ = [ + '_ARRAY_API', 'ALLOW_THREADS', 'BUFSIZE', 'CLIP', 'DATETIMEUNITS', + 'ITEM_HASOBJECT', 'ITEM_IS_POINTER', 'LIST_PICKLE', 'MAXDIMS', + 'MAY_SHARE_BOUNDS', 'MAY_SHARE_EXACT', 'NEEDS_INIT', 'NEEDS_PYAPI', + 'RAISE', 'USE_GETITEM', 'USE_SETITEM', 'WRAP', + '_flagdict', 'from_dlpack', '_place', '_reconstruct', '_vec_string', + '_monotonicity', 'add_docstring', 'arange', 'array', 'asarray', + 'asanyarray', 'ascontiguousarray', 'asfortranarray', 'bincount', + 'broadcast', 'busday_count', 'busday_offset', 'busdaycalendar', 'can_cast', + 'compare_chararrays', 'concatenate', 'copyto', 'correlate', 'correlate2', + 'count_nonzero', 'c_einsum', 'datetime_as_string', 'datetime_data', + 'dot', 'dragon4_positional', 'dragon4_scientific', 'dtype', + 'empty', 'empty_like', 'error', 'flagsobj', 'flatiter', 'format_longfloat', + 'frombuffer', 'fromfile', 'fromiter', 'fromstring', + 'get_handler_name', 'get_handler_version', 'inner', 'interp', + 'interp_complex', 'is_busday', 'lexsort', 'matmul', 'vecdot', + 'may_share_memory', 'min_scalar_type', 'ndarray', 'nditer', 'nested_iters', + 'normalize_axis_index', 'packbits', 'promote_types', 'putmask', + 'ravel_multi_index', 'result_type', 'scalar', 'set_datetimeparse_function', + 'set_typeDict', 'shares_memory', 'typeinfo', + 'unpackbits', 'unravel_index', 'vdot', 'where', 'zeros'] + +# For backward compatibility, make sure pickle imports +# these functions from here +_reconstruct.__module__ = 'numpy._core.multiarray' +scalar.__module__ = 'numpy._core.multiarray' + + +from_dlpack.__module__ = 'numpy' +arange.__module__ = 'numpy' +array.__module__ = 'numpy' +asarray.__module__ = 'numpy' +asanyarray.__module__ = 'numpy' +ascontiguousarray.__module__ = 'numpy' +asfortranarray.__module__ = 'numpy' +datetime_data.__module__ = 'numpy' +empty.__module__ = 'numpy' +frombuffer.__module__ = 'numpy' +fromfile.__module__ = 'numpy' +fromiter.__module__ = 'numpy' +frompyfunc.__module__ = 'numpy' +fromstring.__module__ = 'numpy' +may_share_memory.__module__ = 'numpy' +nested_iters.__module__ = 'numpy' +promote_types.__module__ = 'numpy' +zeros.__module__ = 'numpy' +normalize_axis_index.__module__ = 'numpy.lib.array_utils' +add_docstring.__module__ = 'numpy.lib' +compare_chararrays.__module__ = 'numpy.char' + + +def _override___module__(): + namespace_names = globals() + for ufunc_name in [ + 'absolute', 'arccos', 'arccosh', 'add', 'arcsin', 'arcsinh', 'arctan', + 'arctan2', 'arctanh', 'bitwise_and', 'bitwise_count', 'invert', + 'left_shift', 'bitwise_or', 'right_shift', 'bitwise_xor', 'cbrt', + 'ceil', 'conjugate', 'copysign', 'cos', 'cosh', 'deg2rad', 'degrees', + 'divide', 'divmod', 'equal', 'exp', 'exp2', 'expm1', 'fabs', + 'float_power', 'floor', 'floor_divide', 'fmax', 'fmin', 'fmod', + 'frexp', 'gcd', 'greater', 'greater_equal', 'heaviside', 'hypot', + 'isfinite', 'isinf', 'isnan', 'isnat', 'lcm', 'ldexp', 'less', + 'less_equal', 'log', 'log10', 'log1p', 'log2', 'logaddexp', + 'logaddexp2', 'logical_and', 'logical_not', 'logical_or', + 'logical_xor', 'matmul', 'matvec', 'maximum', 'minimum', 'remainder', + 'modf', 'multiply', 'negative', 'nextafter', 'not_equal', 'positive', + 'power', 'rad2deg', 'radians', 'reciprocal', 'rint', 'sign', 'signbit', + 'sin', 'sinh', 'spacing', 'sqrt', 'square', 'subtract', 'tan', 'tanh', + 'trunc', 'vecdot', 'vecmat', + ]: + ufunc = namespace_names[ufunc_name] + ufunc.__module__ = "numpy" + ufunc.__qualname__ = ufunc_name + + +_override___module__() + + +# We can't verify dispatcher signatures because NumPy's C functions don't +# support introspection. +array_function_from_c_func_and_dispatcher = functools.partial( + overrides.array_function_from_dispatcher, + module='numpy', docs_from_dispatcher=True, verify=False) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.empty_like) +def empty_like( + prototype, dtype=None, order=None, subok=None, shape=None, *, device=None +): + """ + empty_like(prototype, dtype=None, order='K', subok=True, shape=None, *, + device=None) + + Return a new array with the same shape and type as a given array. + + Parameters + ---------- + prototype : array_like + The shape and data-type of `prototype` define these same attributes + of the returned array. + dtype : data-type, optional + Overrides the data type of the result. + order : {'C', 'F', 'A', or 'K'}, optional + Overrides the memory layout of the result. 'C' means C-order, + 'F' means F-order, 'A' means 'F' if `prototype` is Fortran + contiguous, 'C' otherwise. 'K' means match the layout of `prototype` + as closely as possible. + subok : bool, optional. + If True, then the newly created array will use the sub-class + type of `prototype`, otherwise it will be a base-class array. Defaults + to True. + shape : int or sequence of ints, optional. + Overrides the shape of the result. If order='K' and the number of + dimensions is unchanged, will try to keep order, otherwise, + order='C' is implied. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + + Returns + ------- + out : ndarray + Array of uninitialized (arbitrary) data with the same + shape and type as `prototype`. + + See Also + -------- + ones_like : Return an array of ones with shape and type of input. + zeros_like : Return an array of zeros with shape and type of input. + full_like : Return a new array with shape of input filled with value. + empty : Return a new uninitialized array. + + Notes + ----- + Unlike other array creation functions (e.g. `zeros_like`, `ones_like`, + `full_like`), `empty_like` does not initialize the values of the array, + and may therefore be marginally faster. However, the values stored in the + newly allocated array are arbitrary. For reproducible behavior, be sure + to set each element of the array before reading. + + Examples + -------- + >>> import numpy as np + >>> a = ([1,2,3], [4,5,6]) # a is array-like + >>> np.empty_like(a) + array([[-1073741821, -1073741821, 3], # uninitialized + [ 0, 0, -1073741821]]) + >>> a = np.array([[1., 2., 3.],[4.,5.,6.]]) + >>> np.empty_like(a) + array([[ -2.00000715e+000, 1.48219694e-323, -2.00000572e+000], # uninitialized + [ 4.38791518e-305, -2.00000715e+000, 4.17269252e-309]]) + + """ # NOQA + return (prototype,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.concatenate) +def concatenate(arrays, axis=None, out=None, *, dtype=None, casting=None): + """ + concatenate( + (a1, a2, ...), + axis=0, + out=None, + dtype=None, + casting="same_kind" + ) + + Join a sequence of arrays along an existing axis. + + Parameters + ---------- + a1, a2, ... : sequence of array_like + The arrays must have the same shape, except in the dimension + corresponding to `axis` (the first, by default). + axis : int, optional + The axis along which the arrays will be joined. If axis is None, + arrays are flattened before use. Default is 0. + out : ndarray, optional + If provided, the destination to place the result. The shape must be + correct, matching that of what concatenate would have returned if no + out argument were specified. + dtype : str or dtype + If provided, the destination array will have this dtype. Cannot be + provided together with `out`. + + .. versionadded:: 1.20.0 + + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Defaults to 'same_kind'. + For a description of the options, please see :term:`casting`. + + .. versionadded:: 1.20.0 + + Returns + ------- + res : ndarray + The concatenated array. + + See Also + -------- + ma.concatenate : Concatenate function that preserves input masks. + array_split : Split an array into multiple sub-arrays of equal or + near-equal size. + split : Split array into a list of multiple sub-arrays of equal size. + hsplit : Split array into multiple sub-arrays horizontally (column wise). + vsplit : Split array into multiple sub-arrays vertically (row wise). + dsplit : Split array into multiple sub-arrays along the 3rd axis (depth). + stack : Stack a sequence of arrays along a new axis. + block : Assemble arrays from blocks. + hstack : Stack arrays in sequence horizontally (column wise). + vstack : Stack arrays in sequence vertically (row wise). + dstack : Stack arrays in sequence depth wise (along third dimension). + column_stack : Stack 1-D arrays as columns into a 2-D array. + + Notes + ----- + When one or more of the arrays to be concatenated is a MaskedArray, + this function will return a MaskedArray object instead of an ndarray, + but the input masks are *not* preserved. In cases where a MaskedArray + is expected as input, use the ma.concatenate function from the masked + array module instead. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[1, 2], [3, 4]]) + >>> b = np.array([[5, 6]]) + >>> np.concatenate((a, b), axis=0) + array([[1, 2], + [3, 4], + [5, 6]]) + >>> np.concatenate((a, b.T), axis=1) + array([[1, 2, 5], + [3, 4, 6]]) + >>> np.concatenate((a, b), axis=None) + array([1, 2, 3, 4, 5, 6]) + + This function will not preserve masking of MaskedArray inputs. + + >>> a = np.ma.arange(3) + >>> a[1] = np.ma.masked + >>> b = np.arange(2, 5) + >>> a + masked_array(data=[0, --, 2], + mask=[False, True, False], + fill_value=999999) + >>> b + array([2, 3, 4]) + >>> np.concatenate([a, b]) + masked_array(data=[0, 1, 2, 2, 3, 4], + mask=False, + fill_value=999999) + >>> np.ma.concatenate([a, b]) + masked_array(data=[0, --, 2, 2, 3, 4], + mask=[False, True, False, False, False, False], + fill_value=999999) + + """ + if out is not None: + # optimize for the typical case where only arrays is provided + arrays = list(arrays) + arrays.append(out) + return arrays + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.inner) +def inner(a, b): + """ + inner(a, b, /) + + Inner product of two arrays. + + Ordinary inner product of vectors for 1-D arrays (without complex + conjugation), in higher dimensions a sum product over the last axes. + + Parameters + ---------- + a, b : array_like + If `a` and `b` are nonscalar, their last dimensions must match. + + Returns + ------- + out : ndarray + If `a` and `b` are both + scalars or both 1-D arrays then a scalar is returned; otherwise + an array is returned. + ``out.shape = (*a.shape[:-1], *b.shape[:-1])`` + + Raises + ------ + ValueError + If both `a` and `b` are nonscalar and their last dimensions have + different sizes. + + See Also + -------- + tensordot : Sum products over arbitrary axes. + dot : Generalised matrix product, using second last dimension of `b`. + vecdot : Vector dot product of two arrays. + einsum : Einstein summation convention. + + Notes + ----- + For vectors (1-D arrays) it computes the ordinary inner-product:: + + np.inner(a, b) = sum(a[:]*b[:]) + + More generally, if ``ndim(a) = r > 0`` and ``ndim(b) = s > 0``:: + + np.inner(a, b) = np.tensordot(a, b, axes=(-1,-1)) + + or explicitly:: + + np.inner(a, b)[i0,...,ir-2,j0,...,js-2] + = sum(a[i0,...,ir-2,:]*b[j0,...,js-2,:]) + + In addition `a` or `b` may be scalars, in which case:: + + np.inner(a,b) = a*b + + Examples + -------- + Ordinary inner product for vectors: + + >>> import numpy as np + >>> a = np.array([1,2,3]) + >>> b = np.array([0,1,0]) + >>> np.inner(a, b) + 2 + + Some multidimensional examples: + + >>> a = np.arange(24).reshape((2,3,4)) + >>> b = np.arange(4) + >>> c = np.inner(a, b) + >>> c.shape + (2, 3) + >>> c + array([[ 14, 38, 62], + [ 86, 110, 134]]) + + >>> a = np.arange(2).reshape((1,1,2)) + >>> b = np.arange(6).reshape((3,2)) + >>> c = np.inner(a, b) + >>> c.shape + (1, 1, 3) + >>> c + array([[[1, 3, 5]]]) + + An example where `b` is a scalar: + + >>> np.inner(np.eye(2), 7) + array([[7., 0.], + [0., 7.]]) + + """ + return (a, b) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.where) +def where(condition, x=None, y=None): + """ + where(condition, [x, y], /) + + Return elements chosen from `x` or `y` depending on `condition`. + + .. note:: + When only `condition` is provided, this function is a shorthand for + ``np.asarray(condition).nonzero()``. Using `nonzero` directly should be + preferred, as it behaves correctly for subclasses. The rest of this + documentation covers only the case where all three arguments are + provided. + + Parameters + ---------- + condition : array_like, bool + Where True, yield `x`, otherwise yield `y`. + x, y : array_like + Values from which to choose. `x`, `y` and `condition` need to be + broadcastable to some shape. + + Returns + ------- + out : ndarray + An array with elements from `x` where `condition` is True, and elements + from `y` elsewhere. + + See Also + -------- + choose + nonzero : The function that is called when x and y are omitted + + Notes + ----- + If all the arrays are 1-D, `where` is equivalent to:: + + [xv if c else yv + for c, xv, yv in zip(condition, x, y)] + + Examples + -------- + >>> import numpy as np + >>> a = np.arange(10) + >>> a + array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) + >>> np.where(a < 5, a, 10*a) + array([ 0, 1, 2, 3, 4, 50, 60, 70, 80, 90]) + + This can be used on multidimensional arrays too: + + >>> np.where([[True, False], [True, True]], + ... [[1, 2], [3, 4]], + ... [[9, 8], [7, 6]]) + array([[1, 8], + [3, 4]]) + + The shapes of x, y, and the condition are broadcast together: + + >>> x, y = np.ogrid[:3, :4] + >>> np.where(x < y, x, 10 + y) # both x and 10+y are broadcast + array([[10, 0, 0, 0], + [10, 11, 1, 1], + [10, 11, 12, 2]]) + + >>> a = np.array([[0, 1, 2], + ... [0, 2, 4], + ... [0, 3, 6]]) + >>> np.where(a < 4, a, -1) # -1 is broadcast + array([[ 0, 1, 2], + [ 0, 2, -1], + [ 0, 3, -1]]) + """ + return (condition, x, y) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.lexsort) +def lexsort(keys, axis=None): + """ + lexsort(keys, axis=-1) + + Perform an indirect stable sort using a sequence of keys. + + Given multiple sorting keys, lexsort returns an array of integer indices + that describes the sort order by multiple keys. The last key in the + sequence is used for the primary sort order, ties are broken by the + second-to-last key, and so on. + + Parameters + ---------- + keys : (k, m, n, ...) array-like + The `k` keys to be sorted. The *last* key (e.g, the last + row if `keys` is a 2D array) is the primary sort key. + Each element of `keys` along the zeroth axis must be + an array-like object of the same shape. + axis : int, optional + Axis to be indirectly sorted. By default, sort over the last axis + of each sequence. Separate slices along `axis` sorted over + independently; see last example. + + Returns + ------- + indices : (m, n, ...) ndarray of ints + Array of indices that sort the keys along the specified axis. + + See Also + -------- + argsort : Indirect sort. + ndarray.sort : In-place sort. + sort : Return a sorted copy of an array. + + Examples + -------- + Sort names: first by surname, then by name. + + >>> import numpy as np + >>> surnames = ('Hertz', 'Galilei', 'Hertz') + >>> first_names = ('Heinrich', 'Galileo', 'Gustav') + >>> ind = np.lexsort((first_names, surnames)) + >>> ind + array([1, 2, 0]) + + >>> [surnames[i] + ", " + first_names[i] for i in ind] + ['Galilei, Galileo', 'Hertz, Gustav', 'Hertz, Heinrich'] + + Sort according to two numerical keys, first by elements + of ``a``, then breaking ties according to elements of ``b``: + + >>> a = [1, 5, 1, 4, 3, 4, 4] # First sequence + >>> b = [9, 4, 0, 4, 0, 2, 1] # Second sequence + >>> ind = np.lexsort((b, a)) # Sort by `a`, then by `b` + >>> ind + array([2, 0, 4, 6, 5, 3, 1]) + >>> [(a[i], b[i]) for i in ind] + [(1, 0), (1, 9), (3, 0), (4, 1), (4, 2), (4, 4), (5, 4)] + + Compare against `argsort`, which would sort each key independently. + + >>> np.argsort((b, a), kind='stable') + array([[2, 4, 6, 5, 1, 3, 0], + [0, 2, 4, 3, 5, 6, 1]]) + + To sort lexicographically with `argsort`, we would need to provide a + structured array. + + >>> x = np.array([(ai, bi) for ai, bi in zip(a, b)], + ... dtype = np.dtype([('x', int), ('y', int)])) + >>> np.argsort(x) # or np.argsort(x, order=('x', 'y')) + array([2, 0, 4, 6, 5, 3, 1]) + + The zeroth axis of `keys` always corresponds with the sequence of keys, + so 2D arrays are treated just like other sequences of keys. + + >>> arr = np.asarray([b, a]) + >>> ind2 = np.lexsort(arr) + >>> np.testing.assert_equal(ind2, ind) + + Accordingly, the `axis` parameter refers to an axis of *each* key, not of + the `keys` argument itself. For instance, the array ``arr`` is treated as + a sequence of two 1-D keys, so specifying ``axis=0`` is equivalent to + using the default axis, ``axis=-1``. + + >>> np.testing.assert_equal(np.lexsort(arr, axis=0), + ... np.lexsort(arr, axis=-1)) + + For higher-dimensional arrays, the axis parameter begins to matter. The + resulting array has the same shape as each key, and the values are what + we would expect if `lexsort` were performed on corresponding slices + of the keys independently. For instance, + + >>> x = [[1, 2, 3, 4], + ... [4, 3, 2, 1], + ... [2, 1, 4, 3]] + >>> y = [[2, 2, 1, 1], + ... [1, 2, 1, 2], + ... [1, 1, 2, 1]] + >>> np.lexsort((x, y), axis=1) + array([[2, 3, 0, 1], + [2, 0, 3, 1], + [1, 0, 3, 2]]) + + Each row of the result is what we would expect if we were to perform + `lexsort` on the corresponding row of the keys: + + >>> for i in range(3): + ... print(np.lexsort((x[i], y[i]))) + [2 3 0 1] + [2 0 3 1] + [1 0 3 2] + + """ + if isinstance(keys, tuple): + return keys + else: + return (keys,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.can_cast) +def can_cast(from_, to, casting=None): + """ + can_cast(from_, to, casting='safe') + + Returns True if cast between data types can occur according to the + casting rule. + + Parameters + ---------- + from_ : dtype, dtype specifier, NumPy scalar, or array + Data type, NumPy scalar, or array to cast from. + to : dtype or dtype specifier + Data type to cast to. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + + Returns + ------- + out : bool + True if cast can occur according to the casting rule. + + Notes + ----- + .. versionchanged:: 2.0 + This function does not support Python scalars anymore and does not + apply any value-based logic for 0-D arrays and NumPy scalars. + + See also + -------- + dtype, result_type + + Examples + -------- + Basic examples + + >>> import numpy as np + >>> np.can_cast(np.int32, np.int64) + True + >>> np.can_cast(np.float64, complex) + True + >>> np.can_cast(complex, float) + False + + >>> np.can_cast('i8', 'f8') + True + >>> np.can_cast('i8', 'f4') + False + >>> np.can_cast('i4', 'S4') + False + + """ + return (from_,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.min_scalar_type) +def min_scalar_type(a): + """ + min_scalar_type(a, /) + + For scalar ``a``, returns the data type with the smallest size + and smallest scalar kind which can hold its value. For non-scalar + array ``a``, returns the vector's dtype unmodified. + + Floating point values are not demoted to integers, + and complex values are not demoted to floats. + + Parameters + ---------- + a : scalar or array_like + The value whose minimal data type is to be found. + + Returns + ------- + out : dtype + The minimal data type. + + See Also + -------- + result_type, promote_types, dtype, can_cast + + Examples + -------- + >>> import numpy as np + >>> np.min_scalar_type(10) + dtype('uint8') + + >>> np.min_scalar_type(-260) + dtype('int16') + + >>> np.min_scalar_type(3.1) + dtype('float16') + + >>> np.min_scalar_type(1e50) + dtype('float64') + + >>> np.min_scalar_type(np.arange(4,dtype='f8')) + dtype('float64') + + """ + return (a,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.result_type) +def result_type(*arrays_and_dtypes): + """ + result_type(*arrays_and_dtypes) + + Returns the type that results from applying the NumPy + type promotion rules to the arguments. + + Type promotion in NumPy works similarly to the rules in languages + like C++, with some slight differences. When both scalars and + arrays are used, the array's type takes precedence and the actual value + of the scalar is taken into account. + + For example, calculating 3*a, where a is an array of 32-bit floats, + intuitively should result in a 32-bit float output. If the 3 is a + 32-bit integer, the NumPy rules indicate it can't convert losslessly + into a 32-bit float, so a 64-bit float should be the result type. + By examining the value of the constant, '3', we see that it fits in + an 8-bit integer, which can be cast losslessly into the 32-bit float. + + Parameters + ---------- + arrays_and_dtypes : list of arrays and dtypes + The operands of some operation whose result type is needed. + + Returns + ------- + out : dtype + The result type. + + See also + -------- + dtype, promote_types, min_scalar_type, can_cast + + Notes + ----- + The specific algorithm used is as follows. + + Categories are determined by first checking which of boolean, + integer (int/uint), or floating point (float/complex) the maximum + kind of all the arrays and the scalars are. + + If there are only scalars or the maximum category of the scalars + is higher than the maximum category of the arrays, + the data types are combined with :func:`promote_types` + to produce the return value. + + Otherwise, `min_scalar_type` is called on each scalar, and + the resulting data types are all combined with :func:`promote_types` + to produce the return value. + + The set of int values is not a subset of the uint values for types + with the same number of bits, something not reflected in + :func:`min_scalar_type`, but handled as a special case in `result_type`. + + Examples + -------- + >>> import numpy as np + >>> np.result_type(3, np.arange(7, dtype='i1')) + dtype('int8') + + >>> np.result_type('i4', 'c8') + dtype('complex128') + + >>> np.result_type(3.0, -2) + dtype('float64') + + """ + return arrays_and_dtypes + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.dot) +def dot(a, b, out=None): + """ + dot(a, b, out=None) + + Dot product of two arrays. Specifically, + + - If both `a` and `b` are 1-D arrays, it is inner product of vectors + (without complex conjugation). + + - If both `a` and `b` are 2-D arrays, it is matrix multiplication, + but using :func:`matmul` or ``a @ b`` is preferred. + + - If either `a` or `b` is 0-D (scalar), it is equivalent to + :func:`multiply` and using ``numpy.multiply(a, b)`` or ``a * b`` is + preferred. + + - If `a` is an N-D array and `b` is a 1-D array, it is a sum product over + the last axis of `a` and `b`. + + - If `a` is an N-D array and `b` is an M-D array (where ``M>=2``), it is a + sum product over the last axis of `a` and the second-to-last axis of + `b`:: + + dot(a, b)[i,j,k,m] = sum(a[i,j,:] * b[k,:,m]) + + It uses an optimized BLAS library when possible (see `numpy.linalg`). + + Parameters + ---------- + a : array_like + First argument. + b : array_like + Second argument. + out : ndarray, optional + Output argument. This must have the exact kind that would be returned + if it was not used. In particular, it must have the right type, must be + C-contiguous, and its dtype must be the dtype that would be returned + for `dot(a,b)`. This is a performance feature. Therefore, if these + conditions are not met, an exception is raised, instead of attempting + to be flexible. + + Returns + ------- + output : ndarray + Returns the dot product of `a` and `b`. If `a` and `b` are both + scalars or both 1-D arrays then a scalar is returned; otherwise + an array is returned. + If `out` is given, then it is returned. + + Raises + ------ + ValueError + If the last dimension of `a` is not the same size as + the second-to-last dimension of `b`. + + See Also + -------- + vdot : Complex-conjugating dot product. + vecdot : Vector dot product of two arrays. + tensordot : Sum products over arbitrary axes. + einsum : Einstein summation convention. + matmul : '@' operator as method with out parameter. + linalg.multi_dot : Chained dot product. + + Examples + -------- + >>> import numpy as np + >>> np.dot(3, 4) + 12 + + Neither argument is complex-conjugated: + + >>> np.dot([2j, 3j], [2j, 3j]) + (-13+0j) + + For 2-D arrays it is the matrix product: + + >>> a = [[1, 0], [0, 1]] + >>> b = [[4, 1], [2, 2]] + >>> np.dot(a, b) + array([[4, 1], + [2, 2]]) + + >>> a = np.arange(3*4*5*6).reshape((3,4,5,6)) + >>> b = np.arange(3*4*5*6)[::-1].reshape((5,4,6,3)) + >>> np.dot(a, b)[2,3,2,1,2,2] + 499128 + >>> sum(a[2,3,2,:] * b[1,2,:,2]) + 499128 + + """ + return (a, b, out) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.vdot) +def vdot(a, b): + r""" + vdot(a, b, /) + + Return the dot product of two vectors. + + The `vdot` function handles complex numbers differently than `dot`: + if the first argument is complex, it is replaced by its complex conjugate + in the dot product calculation. `vdot` also handles multidimensional + arrays differently than `dot`: it does not perform a matrix product, but + flattens the arguments to 1-D arrays before taking a vector dot product. + + Consequently, when the arguments are 2-D arrays of the same shape, this + function effectively returns their + `Frobenius inner product `_ + (also known as the *trace inner product* or the *standard inner product* + on a vector space of matrices). + + Parameters + ---------- + a : array_like + If `a` is complex the complex conjugate is taken before calculation + of the dot product. + b : array_like + Second argument to the dot product. + + Returns + ------- + output : ndarray + Dot product of `a` and `b`. Can be an int, float, or + complex depending on the types of `a` and `b`. + + See Also + -------- + dot : Return the dot product without using the complex conjugate of the + first argument. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([1+2j,3+4j]) + >>> b = np.array([5+6j,7+8j]) + >>> np.vdot(a, b) + (70-8j) + >>> np.vdot(b, a) + (70+8j) + + Note that higher-dimensional arrays are flattened! + + >>> a = np.array([[1, 4], [5, 6]]) + >>> b = np.array([[4, 1], [2, 2]]) + >>> np.vdot(a, b) + 30 + >>> np.vdot(b, a) + 30 + >>> 1*4 + 4*1 + 5*2 + 6*2 + 30 + + """ # noqa: E501 + return (a, b) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.bincount) +def bincount(x, weights=None, minlength=None): + """ + bincount(x, /, weights=None, minlength=0) + + Count number of occurrences of each value in array of non-negative ints. + + The number of bins (of size 1) is one larger than the largest value in + `x`. If `minlength` is specified, there will be at least this number + of bins in the output array (though it will be longer if necessary, + depending on the contents of `x`). + Each bin gives the number of occurrences of its index value in `x`. + If `weights` is specified the input array is weighted by it, i.e. if a + value ``n`` is found at position ``i``, ``out[n] += weight[i]`` instead + of ``out[n] += 1``. + + Parameters + ---------- + x : array_like, 1 dimension, nonnegative ints + Input array. + weights : array_like, optional + Weights, array of the same shape as `x`. + minlength : int, optional + A minimum number of bins for the output array. + + Returns + ------- + out : ndarray of ints + The result of binning the input array. + The length of `out` is equal to ``np.amax(x)+1``. + + Raises + ------ + ValueError + If the input is not 1-dimensional, or contains elements with negative + values, or if `minlength` is negative. + TypeError + If the type of the input is float or complex. + + See Also + -------- + histogram, digitize, unique + + Examples + -------- + >>> import numpy as np + >>> np.bincount(np.arange(5)) + array([1, 1, 1, 1, 1]) + >>> np.bincount(np.array([0, 1, 1, 3, 2, 1, 7])) + array([1, 3, 1, 1, 0, 0, 0, 1]) + + >>> x = np.array([0, 1, 1, 3, 2, 1, 7, 23]) + >>> np.bincount(x).size == np.amax(x)+1 + True + + The input array needs to be of integer dtype, otherwise a + TypeError is raised: + + >>> np.bincount(np.arange(5, dtype=float)) + Traceback (most recent call last): + ... + TypeError: Cannot cast array data from dtype('float64') to dtype('int64') + according to the rule 'safe' + + A possible use of ``bincount`` is to perform sums over + variable-size chunks of an array, using the ``weights`` keyword. + + >>> w = np.array([0.3, 0.5, 0.2, 0.7, 1., -0.6]) # weights + >>> x = np.array([0, 1, 1, 2, 2, 2]) + >>> np.bincount(x, weights=w) + array([ 0.3, 0.7, 1.1]) + + """ + return (x, weights) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.ravel_multi_index) +def ravel_multi_index(multi_index, dims, mode=None, order=None): + """ + ravel_multi_index(multi_index, dims, mode='raise', order='C') + + Converts a tuple of index arrays into an array of flat + indices, applying boundary modes to the multi-index. + + Parameters + ---------- + multi_index : tuple of array_like + A tuple of integer arrays, one array for each dimension. + dims : tuple of ints + The shape of array into which the indices from ``multi_index`` apply. + mode : {'raise', 'wrap', 'clip'}, optional + Specifies how out-of-bounds indices are handled. Can specify + either one mode or a tuple of modes, one mode per index. + + * 'raise' -- raise an error (default) + * 'wrap' -- wrap around + * 'clip' -- clip to the range + + In 'clip' mode, a negative index which would normally + wrap will clip to 0 instead. + order : {'C', 'F'}, optional + Determines whether the multi-index should be viewed as + indexing in row-major (C-style) or column-major + (Fortran-style) order. + + Returns + ------- + raveled_indices : ndarray + An array of indices into the flattened version of an array + of dimensions ``dims``. + + See Also + -------- + unravel_index + + Examples + -------- + >>> import numpy as np + >>> arr = np.array([[3,6,6],[4,5,1]]) + >>> np.ravel_multi_index(arr, (7,6)) + array([22, 41, 37]) + >>> np.ravel_multi_index(arr, (7,6), order='F') + array([31, 41, 13]) + >>> np.ravel_multi_index(arr, (4,6), mode='clip') + array([22, 23, 19]) + >>> np.ravel_multi_index(arr, (4,4), mode=('clip','wrap')) + array([12, 13, 13]) + + >>> np.ravel_multi_index((3,1,4,1), (6,7,8,9)) + 1621 + """ + return multi_index + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.unravel_index) +def unravel_index(indices, shape=None, order=None): + """ + unravel_index(indices, shape, order='C') + + Converts a flat index or array of flat indices into a tuple + of coordinate arrays. + + Parameters + ---------- + indices : array_like + An integer array whose elements are indices into the flattened + version of an array of dimensions ``shape``. Before version 1.6.0, + this function accepted just one index value. + shape : tuple of ints + The shape of the array to use for unraveling ``indices``. + order : {'C', 'F'}, optional + Determines whether the indices should be viewed as indexing in + row-major (C-style) or column-major (Fortran-style) order. + + Returns + ------- + unraveled_coords : tuple of ndarray + Each array in the tuple has the same shape as the ``indices`` + array. + + See Also + -------- + ravel_multi_index + + Examples + -------- + >>> import numpy as np + >>> np.unravel_index([22, 41, 37], (7,6)) + (array([3, 6, 6]), array([4, 5, 1])) + >>> np.unravel_index([31, 41, 13], (7,6), order='F') + (array([3, 6, 6]), array([4, 5, 1])) + + >>> np.unravel_index(1621, (6,7,8,9)) + (3, 1, 4, 1) + + """ + return (indices,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.copyto) +def copyto(dst, src, casting=None, where=None): + """ + copyto(dst, src, casting='same_kind', where=True) + + Copies values from one array to another, broadcasting as necessary. + + Raises a TypeError if the `casting` rule is violated, and if + `where` is provided, it selects which elements to copy. + + Parameters + ---------- + dst : ndarray + The array into which values are copied. + src : array_like + The array from which values are copied. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur when copying. + + * 'no' means the data types should not be cast at all. + * 'equiv' means only byte-order changes are allowed. + * 'safe' means only casts which can preserve values are allowed. + * 'same_kind' means only safe casts or casts within a kind, + like float64 to float32, are allowed. + * 'unsafe' means any data conversions may be done. + where : array_like of bool, optional + A boolean array which is broadcasted to match the dimensions + of `dst`, and selects elements to copy from `src` to `dst` + wherever it contains the value True. + + Examples + -------- + >>> import numpy as np + >>> A = np.array([4, 5, 6]) + >>> B = [1, 2, 3] + >>> np.copyto(A, B) + >>> A + array([1, 2, 3]) + + >>> A = np.array([[1, 2, 3], [4, 5, 6]]) + >>> B = [[4, 5, 6], [7, 8, 9]] + >>> np.copyto(A, B) + >>> A + array([[4, 5, 6], + [7, 8, 9]]) + + """ + return (dst, src, where) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.putmask) +def putmask(a, /, mask, values): + """ + putmask(a, mask, values) + + Changes elements of an array based on conditional and input values. + + Sets ``a.flat[n] = values[n]`` for each n where ``mask.flat[n]==True``. + + If `values` is not the same size as `a` and `mask` then it will repeat. + This gives behavior different from ``a[mask] = values``. + + Parameters + ---------- + a : ndarray + Target array. + mask : array_like + Boolean mask array. It has to be the same shape as `a`. + values : array_like + Values to put into `a` where `mask` is True. If `values` is smaller + than `a` it will be repeated. + + See Also + -------- + place, put, take, copyto + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2, 3) + >>> np.putmask(x, x>2, x**2) + >>> x + array([[ 0, 1, 2], + [ 9, 16, 25]]) + + If `values` is smaller than `a` it is repeated: + + >>> x = np.arange(5) + >>> np.putmask(x, x>1, [-33, -44]) + >>> x + array([ 0, 1, -33, -44, -33]) + + """ + return (a, mask, values) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.packbits) +def packbits(a, axis=None, bitorder='big'): + """ + packbits(a, /, axis=None, bitorder='big') + + Packs the elements of a binary-valued array into bits in a uint8 array. + + The result is padded to full bytes by inserting zero bits at the end. + + Parameters + ---------- + a : array_like + An array of integers or booleans whose elements should be packed to + bits. + axis : int, optional + The dimension over which bit-packing is done. + ``None`` implies packing the flattened array. + bitorder : {'big', 'little'}, optional + The order of the input bits. 'big' will mimic bin(val), + ``[0, 0, 0, 0, 0, 0, 1, 1] => 3 = 0b00000011``, 'little' will + reverse the order so ``[1, 1, 0, 0, 0, 0, 0, 0] => 3``. + Defaults to 'big'. + + Returns + ------- + packed : ndarray + Array of type uint8 whose elements represent bits corresponding to the + logical (0 or nonzero) value of the input elements. The shape of + `packed` has the same number of dimensions as the input (unless `axis` + is None, in which case the output is 1-D). + + See Also + -------- + unpackbits: Unpacks elements of a uint8 array into a binary-valued output + array. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[[1,0,1], + ... [0,1,0]], + ... [[1,1,0], + ... [0,0,1]]]) + >>> b = np.packbits(a, axis=-1) + >>> b + array([[[160], + [ 64]], + [[192], + [ 32]]], dtype=uint8) + + Note that in binary 160 = 1010 0000, 64 = 0100 0000, 192 = 1100 0000, + and 32 = 0010 0000. + + """ + return (a,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.unpackbits) +def unpackbits(a, axis=None, count=None, bitorder='big'): + """ + unpackbits(a, /, axis=None, count=None, bitorder='big') + + Unpacks elements of a uint8 array into a binary-valued output array. + + Each element of `a` represents a bit-field that should be unpacked + into a binary-valued output array. The shape of the output array is + either 1-D (if `axis` is ``None``) or the same shape as the input + array with unpacking done along the axis specified. + + Parameters + ---------- + a : ndarray, uint8 type + Input array. + axis : int, optional + The dimension over which bit-unpacking is done. + ``None`` implies unpacking the flattened array. + count : int or None, optional + The number of elements to unpack along `axis`, provided as a way + of undoing the effect of packing a size that is not a multiple + of eight. A non-negative number means to only unpack `count` + bits. A negative number means to trim off that many bits from + the end. ``None`` means to unpack the entire array (the + default). Counts larger than the available number of bits will + add zero padding to the output. Negative counts must not + exceed the available number of bits. + bitorder : {'big', 'little'}, optional + The order of the returned bits. 'big' will mimic bin(val), + ``3 = 0b00000011 => [0, 0, 0, 0, 0, 0, 1, 1]``, 'little' will reverse + the order to ``[1, 1, 0, 0, 0, 0, 0, 0]``. + Defaults to 'big'. + + Returns + ------- + unpacked : ndarray, uint8 type + The elements are binary-valued (0 or 1). + + See Also + -------- + packbits : Packs the elements of a binary-valued array into bits in + a uint8 array. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([[2], [7], [23]], dtype=np.uint8) + >>> a + array([[ 2], + [ 7], + [23]], dtype=uint8) + >>> b = np.unpackbits(a, axis=1) + >>> b + array([[0, 0, 0, 0, 0, 0, 1, 0], + [0, 0, 0, 0, 0, 1, 1, 1], + [0, 0, 0, 1, 0, 1, 1, 1]], dtype=uint8) + >>> c = np.unpackbits(a, axis=1, count=-3) + >>> c + array([[0, 0, 0, 0, 0], + [0, 0, 0, 0, 0], + [0, 0, 0, 1, 0]], dtype=uint8) + + >>> p = np.packbits(b, axis=0) + >>> np.unpackbits(p, axis=0) + array([[0, 0, 0, 0, 0, 0, 1, 0], + [0, 0, 0, 0, 0, 1, 1, 1], + [0, 0, 0, 1, 0, 1, 1, 1], + [0, 0, 0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0, 0, 0]], dtype=uint8) + >>> np.array_equal(b, np.unpackbits(p, axis=0, count=b.shape[0])) + True + + """ + return (a,) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.shares_memory) +def shares_memory(a, b, max_work=None): + """ + shares_memory(a, b, /, max_work=None) + + Determine if two arrays share memory. + + .. warning:: + + This function can be exponentially slow for some inputs, unless + `max_work` is set to zero or a positive integer. + If in doubt, use `numpy.may_share_memory` instead. + + Parameters + ---------- + a, b : ndarray + Input arrays + max_work : int, optional + Effort to spend on solving the overlap problem (maximum number + of candidate solutions to consider). The following special + values are recognized: + + max_work=-1 (default) + The problem is solved exactly. In this case, the function returns + True only if there is an element shared between the arrays. Finding + the exact solution may take extremely long in some cases. + max_work=0 + Only the memory bounds of a and b are checked. + This is equivalent to using ``may_share_memory()``. + + Raises + ------ + numpy.exceptions.TooHardError + Exceeded max_work. + + Returns + ------- + out : bool + + See Also + -------- + may_share_memory + + Examples + -------- + >>> import numpy as np + >>> x = np.array([1, 2, 3, 4]) + >>> np.shares_memory(x, np.array([5, 6, 7])) + False + >>> np.shares_memory(x[::2], x) + True + >>> np.shares_memory(x[::2], x[1::2]) + False + + Checking whether two arrays share memory is NP-complete, and + runtime may increase exponentially in the number of + dimensions. Hence, `max_work` should generally be set to a finite + number, as it is possible to construct examples that take + extremely long to run: + + >>> from numpy.lib.stride_tricks import as_strided + >>> x = np.zeros([192163377], dtype=np.int8) + >>> x1 = as_strided( + ... x, strides=(36674, 61119, 85569), shape=(1049, 1049, 1049)) + >>> x2 = as_strided( + ... x[64023025:], strides=(12223, 12224, 1), shape=(1049, 1049, 1)) + >>> np.shares_memory(x1, x2, max_work=1000) + Traceback (most recent call last): + ... + numpy.exceptions.TooHardError: Exceeded max_work + + Running ``np.shares_memory(x1, x2)`` without `max_work` set takes + around 1 minute for this case. It is possible to find problems + that take still significantly longer. + + """ + return (a, b) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.may_share_memory) +def may_share_memory(a, b, max_work=None): + """ + may_share_memory(a, b, /, max_work=None) + + Determine if two arrays might share memory + + A return of True does not necessarily mean that the two arrays + share any element. It just means that they *might*. + + Only the memory bounds of a and b are checked by default. + + Parameters + ---------- + a, b : ndarray + Input arrays + max_work : int, optional + Effort to spend on solving the overlap problem. See + `shares_memory` for details. Default for ``may_share_memory`` + is to do a bounds check. + + Returns + ------- + out : bool + + See Also + -------- + shares_memory + + Examples + -------- + >>> import numpy as np + >>> np.may_share_memory(np.array([1,2]), np.array([5,8,9])) + False + >>> x = np.zeros([3, 4]) + >>> np.may_share_memory(x[:,0], x[:,1]) + True + + """ + return (a, b) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.is_busday) +def is_busday(dates, weekmask=None, holidays=None, busdaycal=None, out=None): + """ + is_busday( + dates, + weekmask='1111100', + holidays=None, + busdaycal=None, + out=None + ) + + Calculates which of the given dates are valid days, and which are not. + + Parameters + ---------- + dates : array_like of datetime64[D] + The array of dates to process. + weekmask : str or array_like of bool, optional + A seven-element array indicating which of Monday through Sunday are + valid days. May be specified as a length-seven list or array, like + [1,1,1,1,1,0,0]; a length-seven string, like '1111100'; or a string + like "Mon Tue Wed Thu Fri", made up of 3-character abbreviations for + weekdays, optionally separated by white space. Valid abbreviations + are: Mon Tue Wed Thu Fri Sat Sun + holidays : array_like of datetime64[D], optional + An array of dates to consider as invalid dates. They may be + specified in any order, and NaT (not-a-time) dates are ignored. + This list is saved in a normalized form that is suited for + fast calculations of valid days. + busdaycal : busdaycalendar, optional + A `busdaycalendar` object which specifies the valid days. If this + parameter is provided, neither weekmask nor holidays may be + provided. + out : array of bool, optional + If provided, this array is filled with the result. + + Returns + ------- + out : array of bool + An array with the same shape as ``dates``, containing True for + each valid day, and False for each invalid day. + + See Also + -------- + busdaycalendar : An object that specifies a custom set of valid days. + busday_offset : Applies an offset counted in valid days. + busday_count : Counts how many valid days are in a half-open date range. + + Examples + -------- + >>> import numpy as np + >>> # The weekdays are Friday, Saturday, and Monday + ... np.is_busday(['2011-07-01', '2011-07-02', '2011-07-18'], + ... holidays=['2011-07-01', '2011-07-04', '2011-07-17']) + array([False, False, True]) + """ + return (dates, weekmask, holidays, out) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.busday_offset) +def busday_offset(dates, offsets, roll=None, weekmask=None, holidays=None, + busdaycal=None, out=None): + """ + busday_offset( + dates, + offsets, + roll='raise', + weekmask='1111100', + holidays=None, + busdaycal=None, + out=None + ) + + First adjusts the date to fall on a valid day according to + the ``roll`` rule, then applies offsets to the given dates + counted in valid days. + + Parameters + ---------- + dates : array_like of datetime64[D] + The array of dates to process. + offsets : array_like of int + The array of offsets, which is broadcast with ``dates``. + roll : {'raise', 'nat', 'forward', 'following', 'backward', 'preceding', \ + 'modifiedfollowing', 'modifiedpreceding'}, optional + How to treat dates that do not fall on a valid day. The default + is 'raise'. + + * 'raise' means to raise an exception for an invalid day. + * 'nat' means to return a NaT (not-a-time) for an invalid day. + * 'forward' and 'following' mean to take the first valid day + later in time. + * 'backward' and 'preceding' mean to take the first valid day + earlier in time. + * 'modifiedfollowing' means to take the first valid day + later in time unless it is across a Month boundary, in which + case to take the first valid day earlier in time. + * 'modifiedpreceding' means to take the first valid day + earlier in time unless it is across a Month boundary, in which + case to take the first valid day later in time. + weekmask : str or array_like of bool, optional + A seven-element array indicating which of Monday through Sunday are + valid days. May be specified as a length-seven list or array, like + [1,1,1,1,1,0,0]; a length-seven string, like '1111100'; or a string + like "Mon Tue Wed Thu Fri", made up of 3-character abbreviations for + weekdays, optionally separated by white space. Valid abbreviations + are: Mon Tue Wed Thu Fri Sat Sun + holidays : array_like of datetime64[D], optional + An array of dates to consider as invalid dates. They may be + specified in any order, and NaT (not-a-time) dates are ignored. + This list is saved in a normalized form that is suited for + fast calculations of valid days. + busdaycal : busdaycalendar, optional + A `busdaycalendar` object which specifies the valid days. If this + parameter is provided, neither weekmask nor holidays may be + provided. + out : array of datetime64[D], optional + If provided, this array is filled with the result. + + Returns + ------- + out : array of datetime64[D] + An array with a shape from broadcasting ``dates`` and ``offsets`` + together, containing the dates with offsets applied. + + See Also + -------- + busdaycalendar : An object that specifies a custom set of valid days. + is_busday : Returns a boolean array indicating valid days. + busday_count : Counts how many valid days are in a half-open date range. + + Examples + -------- + >>> import numpy as np + >>> # First business day in October 2011 (not accounting for holidays) + ... np.busday_offset('2011-10', 0, roll='forward') + np.datetime64('2011-10-03') + >>> # Last business day in February 2012 (not accounting for holidays) + ... np.busday_offset('2012-03', -1, roll='forward') + np.datetime64('2012-02-29') + >>> # Third Wednesday in January 2011 + ... np.busday_offset('2011-01', 2, roll='forward', weekmask='Wed') + np.datetime64('2011-01-19') + >>> # 2012 Mother's Day in Canada and the U.S. + ... np.busday_offset('2012-05', 1, roll='forward', weekmask='Sun') + np.datetime64('2012-05-13') + + >>> # First business day on or after a date + ... np.busday_offset('2011-03-20', 0, roll='forward') + np.datetime64('2011-03-21') + >>> np.busday_offset('2011-03-22', 0, roll='forward') + np.datetime64('2011-03-22') + >>> # First business day after a date + ... np.busday_offset('2011-03-20', 1, roll='backward') + np.datetime64('2011-03-21') + >>> np.busday_offset('2011-03-22', 1, roll='backward') + np.datetime64('2011-03-23') + """ + return (dates, offsets, weekmask, holidays, out) + + +@array_function_from_c_func_and_dispatcher(_multiarray_umath.busday_count) +def busday_count(begindates, enddates, weekmask=None, holidays=None, + busdaycal=None, out=None): + """ + busday_count( + begindates, + enddates, + weekmask='1111100', + holidays=[], + busdaycal=None, + out=None + ) + + Counts the number of valid days between `begindates` and + `enddates`, not including the day of `enddates`. + + If ``enddates`` specifies a date value that is earlier than the + corresponding ``begindates`` date value, the count will be negative. + + Parameters + ---------- + begindates : array_like of datetime64[D] + The array of the first dates for counting. + enddates : array_like of datetime64[D] + The array of the end dates for counting, which are excluded + from the count themselves. + weekmask : str or array_like of bool, optional + A seven-element array indicating which of Monday through Sunday are + valid days. May be specified as a length-seven list or array, like + [1,1,1,1,1,0,0]; a length-seven string, like '1111100'; or a string + like "Mon Tue Wed Thu Fri", made up of 3-character abbreviations for + weekdays, optionally separated by white space. Valid abbreviations + are: Mon Tue Wed Thu Fri Sat Sun + holidays : array_like of datetime64[D], optional + An array of dates to consider as invalid dates. They may be + specified in any order, and NaT (not-a-time) dates are ignored. + This list is saved in a normalized form that is suited for + fast calculations of valid days. + busdaycal : busdaycalendar, optional + A `busdaycalendar` object which specifies the valid days. If this + parameter is provided, neither weekmask nor holidays may be + provided. + out : array of int, optional + If provided, this array is filled with the result. + + Returns + ------- + out : array of int + An array with a shape from broadcasting ``begindates`` and ``enddates`` + together, containing the number of valid days between + the begin and end dates. + + See Also + -------- + busdaycalendar : An object that specifies a custom set of valid days. + is_busday : Returns a boolean array indicating valid days. + busday_offset : Applies an offset counted in valid days. + + Examples + -------- + >>> import numpy as np + >>> # Number of weekdays in January 2011 + ... np.busday_count('2011-01', '2011-02') + 21 + >>> # Number of weekdays in 2011 + >>> np.busday_count('2011', '2012') + 260 + >>> # Number of Saturdays in 2011 + ... np.busday_count('2011', '2012', weekmask='Sat') + 53 + """ + return (begindates, enddates, weekmask, holidays, out) + + +@array_function_from_c_func_and_dispatcher( + _multiarray_umath.datetime_as_string) +def datetime_as_string(arr, unit=None, timezone=None, casting=None): + """ + datetime_as_string(arr, unit=None, timezone='naive', casting='same_kind') + + Convert an array of datetimes into an array of strings. + + Parameters + ---------- + arr : array_like of datetime64 + The array of UTC timestamps to format. + unit : str + One of None, 'auto', or + a :ref:`datetime unit `. + timezone : {'naive', 'UTC', 'local'} or tzinfo + Timezone information to use when displaying the datetime. If 'UTC', + end with a Z to indicate UTC time. If 'local', convert to the local + timezone first, and suffix with a +-#### timezone offset. If a tzinfo + object, then do as with 'local', but use the specified timezone. + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'} + Casting to allow when changing between datetime units. + + Returns + ------- + str_arr : ndarray + An array of strings the same shape as `arr`. + + Examples + -------- + >>> import numpy as np + >>> import pytz + >>> d = np.arange('2002-10-27T04:30', 4*60, 60, dtype='M8[m]') + >>> d + array(['2002-10-27T04:30', '2002-10-27T05:30', '2002-10-27T06:30', + '2002-10-27T07:30'], dtype='datetime64[m]') + + Setting the timezone to UTC shows the same information, but with a Z suffix + + >>> np.datetime_as_string(d, timezone='UTC') + array(['2002-10-27T04:30Z', '2002-10-27T05:30Z', '2002-10-27T06:30Z', + '2002-10-27T07:30Z'], dtype='>> np.datetime_as_string(d, timezone=pytz.timezone('US/Eastern')) + array(['2002-10-27T00:30-0400', '2002-10-27T01:30-0400', + '2002-10-27T01:30-0500', '2002-10-27T02:30-0500'], dtype='>> np.datetime_as_string(d, unit='h') + array(['2002-10-27T04', '2002-10-27T05', '2002-10-27T06', '2002-10-27T07'], + dtype='>> np.datetime_as_string(d, unit='s') + array(['2002-10-27T04:30:00', '2002-10-27T05:30:00', '2002-10-27T06:30:00', + '2002-10-27T07:30:00'], dtype='>> np.datetime_as_string(d, unit='h', casting='safe') + Traceback (most recent call last): + ... + TypeError: Cannot create a datetime string as units 'h' from a NumPy + datetime with units 'm' according to the rule 'safe' + """ + return (arr,) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.pyi new file mode 100644 index 0000000000000000000000000000000000000000..ea304c0789aba1c4d44003c376e26847e6f06183 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/multiarray.pyi @@ -0,0 +1,1355 @@ +# TODO: Sort out any and all missing functions in this namespace +import datetime as dt +from _typeshed import StrOrBytesPath, SupportsLenAndGetItem +from collections.abc import Sequence, Callable, Iterable +from typing import ( + Literal as L, + Any, + TypeAlias, + overload, + TypeVar, + TypedDict, + SupportsIndex, + final, + Final, + Protocol, + ClassVar, + type_check_only, +) +from typing_extensions import CapsuleType, Unpack + +import numpy as np +from numpy import ( # type: ignore[attr-defined] + # Re-exports + busdaycalendar, + broadcast, + correlate, + count_nonzero, + dtype, + einsum as c_einsum, + flatiter, + from_dlpack, + interp, + matmul, + ndarray, + nditer, + vecdot, + + # The rest + ufunc, + str_, + uint8, + intp, + int_, + float64, + timedelta64, + datetime64, + generic, + unsignedinteger, + signedinteger, + floating, + complexfloating, + _AnyShapeType, + _OrderKACF, + _OrderCF, + _CastingKind, + _ModeKind, + _SupportsBuffer, + _SupportsFileMethods, + _CopyMode, + _NDIterFlagsKind, + _NDIterFlagsOp, +) +from numpy.lib._array_utils_impl import normalize_axis_index + +from numpy._typing import ( + # Shapes + _ShapeLike, + + # DTypes + DTypeLike, + _DTypeLike, + _SupportsDType, + + # Arrays + NDArray, + ArrayLike, + _ArrayLike, + _SupportsArrayFunc, + _NestedSequence, + _ArrayLikeBool_co, + _ArrayLikeUInt_co, + _ArrayLikeInt_co, + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, + _ArrayLikeTD64_co, + _ArrayLikeDT64_co, + _ArrayLikeObject_co, + _ArrayLikeStr_co, + _ArrayLikeBytes_co, + _ScalarLike_co, + _IntLike_co, + _FloatLike_co, + _TD64Like_co, +) +from numpy._typing._ufunc import ( + _2PTuple, + _PyFunc_Nin1_Nout1, + _PyFunc_Nin2_Nout1, + _PyFunc_Nin3P_Nout1, + _PyFunc_Nin1P_Nout2P, +) + +__all__ = [ + "_ARRAY_API", + "ALLOW_THREADS", + "BUFSIZE", + "CLIP", + "DATETIMEUNITS", + "ITEM_HASOBJECT", + "ITEM_IS_POINTER", + "LIST_PICKLE", + "MAXDIMS", + "MAY_SHARE_BOUNDS", + "MAY_SHARE_EXACT", + "NEEDS_INIT", + "NEEDS_PYAPI", + "RAISE", + "USE_GETITEM", + "USE_SETITEM", + "WRAP", + "_flagdict", + "from_dlpack", + "_place", + "_reconstruct", + "_vec_string", + "_monotonicity", + "add_docstring", + "arange", + "array", + "asarray", + "asanyarray", + "ascontiguousarray", + "asfortranarray", + "bincount", + "broadcast", + "busday_count", + "busday_offset", + "busdaycalendar", + "can_cast", + "compare_chararrays", + "concatenate", + "copyto", + "correlate", + "correlate2", + "count_nonzero", + "c_einsum", + "datetime_as_string", + "datetime_data", + "dot", + "dragon4_positional", + "dragon4_scientific", + "dtype", + "empty", + "empty_like", + "error", + "flagsobj", + "flatiter", + "format_longfloat", + "frombuffer", + "fromfile", + "fromiter", + "fromstring", + "get_handler_name", + "get_handler_version", + "inner", + "interp", + "interp_complex", + "is_busday", + "lexsort", + "matmul", + "vecdot", + "may_share_memory", + "min_scalar_type", + "ndarray", + "nditer", + "nested_iters", + "normalize_axis_index", + "packbits", + "promote_types", + "putmask", + "ravel_multi_index", + "result_type", + "scalar", + "set_datetimeparse_function", + "set_typeDict", + "shares_memory", + "typeinfo", + "unpackbits", + "unravel_index", + "vdot", + "where", + "zeros", +] + +_SCT = TypeVar("_SCT", bound=generic) +_DType = TypeVar("_DType", bound=np.dtype[Any]) +_ArrayType = TypeVar("_ArrayType", bound=ndarray[Any, Any]) +_ArrayType_co = TypeVar( + "_ArrayType_co", + bound=ndarray[Any, Any], + covariant=True, +) +_ReturnType = TypeVar("_ReturnType") +_IDType = TypeVar("_IDType") +_Nin = TypeVar("_Nin", bound=int) +_Nout = TypeVar("_Nout", bound=int) + +_ShapeT = TypeVar("_ShapeT", bound=tuple[int, ...]) +_Array: TypeAlias = ndarray[_ShapeT, dtype[_SCT]] +_Array1D: TypeAlias = ndarray[tuple[int], dtype[_SCT]] + +# Valid time units +_UnitKind: TypeAlias = L[ + "Y", + "M", + "D", + "h", + "m", + "s", + "ms", + "us", "μs", + "ns", + "ps", + "fs", + "as", +] +_RollKind: TypeAlias = L[ # `raise` is deliberately excluded + "nat", + "forward", + "following", + "backward", + "preceding", + "modifiedfollowing", + "modifiedpreceding", +] + +@type_check_only +class _SupportsArray(Protocol[_ArrayType_co]): + def __array__(self, /) -> _ArrayType_co: ... + +@type_check_only +class _KwargsEmpty(TypedDict, total=False): + device: None | L["cpu"] + like: None | _SupportsArrayFunc + +@type_check_only +class _ConstructorEmpty(Protocol): + # 1-D shape + @overload + def __call__( + self, + /, + shape: SupportsIndex, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array1D[float64]: ... + @overload + def __call__( + self, + /, + shape: SupportsIndex, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> ndarray[tuple[int], _DType]: ... + @overload + def __call__( + self, + /, + shape: SupportsIndex, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array1D[_SCT]: ... + @overload + def __call__( + self, + /, + shape: SupportsIndex, + dtype: DTypeLike, + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array1D[Any]: ... + + # known shape + @overload + def __call__( + self, + /, + shape: _AnyShapeType, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array[_AnyShapeType, float64]: ... + @overload + def __call__( + self, + /, + shape: _AnyShapeType, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> ndarray[_AnyShapeType, _DType]: ... + @overload + def __call__( + self, + /, + shape: _AnyShapeType, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array[_AnyShapeType, _SCT]: ... + @overload + def __call__( + self, + /, + shape: _AnyShapeType, + dtype: DTypeLike, + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> _Array[_AnyShapeType, Any]: ... + + # unknown shape + @overload + def __call__( + self, /, + shape: _ShapeLike, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> NDArray[float64]: ... + @overload + def __call__( + self, /, + shape: _ShapeLike, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> ndarray[Any, _DType]: ... + @overload + def __call__( + self, /, + shape: _ShapeLike, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> NDArray[_SCT]: ... + @overload + def __call__( + self, /, + shape: _ShapeLike, + dtype: DTypeLike, + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], + ) -> NDArray[Any]: ... + +# using `Final` or `TypeAlias` will break stubtest +error = Exception + +# from ._multiarray_umath +ITEM_HASOBJECT: Final[L[1]] +LIST_PICKLE: Final[L[2]] +ITEM_IS_POINTER: Final[L[4]] +NEEDS_INIT: Final[L[8]] +NEEDS_PYAPI: Final[L[16]] +USE_GETITEM: Final[L[32]] +USE_SETITEM: Final[L[64]] +DATETIMEUNITS: Final[CapsuleType] +_ARRAY_API: Final[CapsuleType] +_flagdict: Final[dict[str, int]] +_monotonicity: Final[Callable[..., object]] +_place: Final[Callable[..., object]] +_reconstruct: Final[Callable[..., object]] +_vec_string: Final[Callable[..., object]] +correlate2: Final[Callable[..., object]] +dragon4_positional: Final[Callable[..., object]] +dragon4_scientific: Final[Callable[..., object]] +interp_complex: Final[Callable[..., object]] +set_datetimeparse_function: Final[Callable[..., object]] +def get_handler_name(a: NDArray[Any] = ..., /) -> str | None: ... +def get_handler_version(a: NDArray[Any] = ..., /) -> int | None: ... +def format_longfloat(x: np.longdouble, precision: int) -> str: ... +def scalar(dtype: _DType, object: bytes | object = ...) -> ndarray[tuple[()], _DType]: ... +def set_typeDict(dict_: dict[str, np.dtype[Any]], /) -> None: ... +typeinfo: Final[dict[str, np.dtype[np.generic]]] + +ALLOW_THREADS: Final[int] # 0 or 1 (system-specific) +BUFSIZE: L[8192] +CLIP: L[0] +WRAP: L[1] +RAISE: L[2] +MAXDIMS: L[32] +MAY_SHARE_BOUNDS: L[0] +MAY_SHARE_EXACT: L[-1] +tracemalloc_domain: L[389047] + +zeros: Final[_ConstructorEmpty] +empty: Final[_ConstructorEmpty] + +@overload +def empty_like( + prototype: _ArrayType, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> _ArrayType: ... +@overload +def empty_like( + prototype: _ArrayLike[_SCT], + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def empty_like( + prototype: object, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... +@overload +def empty_like( + prototype: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def empty_like( + prototype: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... + +@overload +def array( + object: _ArrayType, + dtype: None = ..., + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: L[True], + ndmin: int = ..., + like: None | _SupportsArrayFunc = ..., +) -> _ArrayType: ... +@overload +def array( + object: _SupportsArray[_ArrayType], + dtype: None = ..., + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: L[True], + ndmin: L[0] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _ArrayType: ... +@overload +def array( + object: _ArrayLike[_SCT], + dtype: None = ..., + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: bool = ..., + ndmin: int = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def array( + object: object, + dtype: None = ..., + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: bool = ..., + ndmin: int = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... +@overload +def array( + object: Any, + dtype: _DTypeLike[_SCT], + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: bool = ..., + ndmin: int = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def array( + object: Any, + dtype: DTypeLike, + *, + copy: None | bool | _CopyMode = ..., + order: _OrderKACF = ..., + subok: bool = ..., + ndmin: int = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def unravel_index( # type: ignore[misc] + indices: _IntLike_co, + shape: _ShapeLike, + order: _OrderCF = ..., +) -> tuple[intp, ...]: ... +@overload +def unravel_index( + indices: _ArrayLikeInt_co, + shape: _ShapeLike, + order: _OrderCF = ..., +) -> tuple[NDArray[intp], ...]: ... + +@overload +def ravel_multi_index( # type: ignore[misc] + multi_index: Sequence[_IntLike_co], + dims: Sequence[SupportsIndex], + mode: _ModeKind | tuple[_ModeKind, ...] = ..., + order: _OrderCF = ..., +) -> intp: ... +@overload +def ravel_multi_index( + multi_index: Sequence[_ArrayLikeInt_co], + dims: Sequence[SupportsIndex], + mode: _ModeKind | tuple[_ModeKind, ...] = ..., + order: _OrderCF = ..., +) -> NDArray[intp]: ... + +# NOTE: Allow any sequence of array-like objects +@overload +def concatenate( # type: ignore[misc] + arrays: _ArrayLike[_SCT], + /, + axis: None | SupportsIndex = ..., + out: None = ..., + *, + dtype: None = ..., + casting: None | _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def concatenate( # type: ignore[misc] + arrays: SupportsLenAndGetItem[ArrayLike], + /, + axis: None | SupportsIndex = ..., + out: None = ..., + *, + dtype: None = ..., + casting: None | _CastingKind = ... +) -> NDArray[Any]: ... +@overload +def concatenate( # type: ignore[misc] + arrays: SupportsLenAndGetItem[ArrayLike], + /, + axis: None | SupportsIndex = ..., + out: None = ..., + *, + dtype: _DTypeLike[_SCT], + casting: None | _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def concatenate( # type: ignore[misc] + arrays: SupportsLenAndGetItem[ArrayLike], + /, + axis: None | SupportsIndex = ..., + out: None = ..., + *, + dtype: DTypeLike, + casting: None | _CastingKind = ... +) -> NDArray[Any]: ... +@overload +def concatenate( + arrays: SupportsLenAndGetItem[ArrayLike], + /, + axis: None | SupportsIndex = ..., + out: _ArrayType = ..., + *, + dtype: DTypeLike = ..., + casting: None | _CastingKind = ... +) -> _ArrayType: ... + +def inner( + a: ArrayLike, + b: ArrayLike, + /, +) -> Any: ... + +@overload +def where( + condition: ArrayLike, + /, +) -> tuple[NDArray[intp], ...]: ... +@overload +def where( + condition: ArrayLike, + x: ArrayLike, + y: ArrayLike, + /, +) -> NDArray[Any]: ... + +def lexsort( + keys: ArrayLike, + axis: None | SupportsIndex = ..., +) -> Any: ... + +def can_cast( + from_: ArrayLike | DTypeLike, + to: DTypeLike, + casting: None | _CastingKind = ..., +) -> bool: ... + +def min_scalar_type( + a: ArrayLike, /, +) -> dtype[Any]: ... + +def result_type( + *arrays_and_dtypes: ArrayLike | DTypeLike, +) -> dtype[Any]: ... + +@overload +def dot(a: ArrayLike, b: ArrayLike, out: None = ...) -> Any: ... +@overload +def dot(a: ArrayLike, b: ArrayLike, out: _ArrayType) -> _ArrayType: ... + +@overload +def vdot(a: _ArrayLikeBool_co, b: _ArrayLikeBool_co, /) -> np.bool: ... # type: ignore[misc] +@overload +def vdot(a: _ArrayLikeUInt_co, b: _ArrayLikeUInt_co, /) -> unsignedinteger[Any]: ... # type: ignore[misc] +@overload +def vdot(a: _ArrayLikeInt_co, b: _ArrayLikeInt_co, /) -> signedinteger[Any]: ... # type: ignore[misc] +@overload +def vdot(a: _ArrayLikeFloat_co, b: _ArrayLikeFloat_co, /) -> floating[Any]: ... # type: ignore[misc] +@overload +def vdot(a: _ArrayLikeComplex_co, b: _ArrayLikeComplex_co, /) -> complexfloating[Any, Any]: ... # type: ignore[misc] +@overload +def vdot(a: _ArrayLikeTD64_co, b: _ArrayLikeTD64_co, /) -> timedelta64: ... +@overload +def vdot(a: _ArrayLikeObject_co, b: Any, /) -> Any: ... +@overload +def vdot(a: Any, b: _ArrayLikeObject_co, /) -> Any: ... + +def bincount( + x: ArrayLike, + /, + weights: None | ArrayLike = ..., + minlength: SupportsIndex = ..., +) -> NDArray[intp]: ... + +def copyto( + dst: NDArray[Any], + src: ArrayLike, + casting: None | _CastingKind = ..., + where: None | _ArrayLikeBool_co = ..., +) -> None: ... + +def putmask( + a: NDArray[Any], + /, + mask: _ArrayLikeBool_co, + values: ArrayLike, +) -> None: ... + +def packbits( + a: _ArrayLikeInt_co, + /, + axis: None | SupportsIndex = ..., + bitorder: L["big", "little"] = ..., +) -> NDArray[uint8]: ... + +def unpackbits( + a: _ArrayLike[uint8], + /, + axis: None | SupportsIndex = ..., + count: None | SupportsIndex = ..., + bitorder: L["big", "little"] = ..., +) -> NDArray[uint8]: ... + +def shares_memory( + a: object, + b: object, + /, + max_work: None | int = ..., +) -> bool: ... + +def may_share_memory( + a: object, + b: object, + /, + max_work: None | int = ..., +) -> bool: ... + +@overload +def asarray( + a: _ArrayLike[_SCT], + dtype: None = ..., + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asarray( + a: object, + dtype: None = ..., + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... +@overload +def asarray( + a: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asarray( + a: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def asanyarray( + a: _ArrayType, # Preserve subclass-information + dtype: None = ..., + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> _ArrayType: ... +@overload +def asanyarray( + a: _ArrayLike[_SCT], + dtype: None = ..., + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asanyarray( + a: object, + dtype: None = ..., + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... +@overload +def asanyarray( + a: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asanyarray( + a: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + *, + device: None | L["cpu"] = ..., + copy: None | bool = ..., + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def ascontiguousarray( + a: _ArrayLike[_SCT], + dtype: None = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def ascontiguousarray( + a: object, + dtype: None = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... +@overload +def ascontiguousarray( + a: Any, + dtype: _DTypeLike[_SCT], + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def ascontiguousarray( + a: Any, + dtype: DTypeLike, + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def asfortranarray( + a: _ArrayLike[_SCT], + dtype: None = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asfortranarray( + a: object, + dtype: None = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... +@overload +def asfortranarray( + a: Any, + dtype: _DTypeLike[_SCT], + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def asfortranarray( + a: Any, + dtype: DTypeLike, + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +def promote_types(__type1: DTypeLike, __type2: DTypeLike) -> dtype[Any]: ... + +# `sep` is a de facto mandatory argument, as its default value is deprecated +@overload +def fromstring( + string: str | bytes, + dtype: None = ..., + count: SupportsIndex = ..., + *, + sep: str, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[float64]: ... +@overload +def fromstring( + string: str | bytes, + dtype: _DTypeLike[_SCT], + count: SupportsIndex = ..., + *, + sep: str, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def fromstring( + string: str | bytes, + dtype: DTypeLike, + count: SupportsIndex = ..., + *, + sep: str, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[[Any], _ReturnType], /, + nin: L[1], + nout: L[1], + *, + identity: None = ..., +) -> _PyFunc_Nin1_Nout1[_ReturnType, None]: ... +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[[Any], _ReturnType], /, + nin: L[1], + nout: L[1], + *, + identity: _IDType, +) -> _PyFunc_Nin1_Nout1[_ReturnType, _IDType]: ... +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[[Any, Any], _ReturnType], /, + nin: L[2], + nout: L[1], + *, + identity: None = ..., +) -> _PyFunc_Nin2_Nout1[_ReturnType, None]: ... +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[[Any, Any], _ReturnType], /, + nin: L[2], + nout: L[1], + *, + identity: _IDType, +) -> _PyFunc_Nin2_Nout1[_ReturnType, _IDType]: ... +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[..., _ReturnType], /, + nin: _Nin, + nout: L[1], + *, + identity: None = ..., +) -> _PyFunc_Nin3P_Nout1[_ReturnType, None, _Nin]: ... +@overload +def frompyfunc( # type: ignore[overload-overlap] + func: Callable[..., _ReturnType], /, + nin: _Nin, + nout: L[1], + *, + identity: _IDType, +) -> _PyFunc_Nin3P_Nout1[_ReturnType, _IDType, _Nin]: ... +@overload +def frompyfunc( + func: Callable[..., _2PTuple[_ReturnType]], /, + nin: _Nin, + nout: _Nout, + *, + identity: None = ..., +) -> _PyFunc_Nin1P_Nout2P[_ReturnType, None, _Nin, _Nout]: ... +@overload +def frompyfunc( + func: Callable[..., _2PTuple[_ReturnType]], /, + nin: _Nin, + nout: _Nout, + *, + identity: _IDType, +) -> _PyFunc_Nin1P_Nout2P[_ReturnType, _IDType, _Nin, _Nout]: ... +@overload +def frompyfunc( + func: Callable[..., Any], /, + nin: SupportsIndex, + nout: SupportsIndex, + *, + identity: None | object = ..., +) -> ufunc: ... + +@overload +def fromfile( + file: StrOrBytesPath | _SupportsFileMethods, + dtype: None = ..., + count: SupportsIndex = ..., + sep: str = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[float64]: ... +@overload +def fromfile( + file: StrOrBytesPath | _SupportsFileMethods, + dtype: _DTypeLike[_SCT], + count: SupportsIndex = ..., + sep: str = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def fromfile( + file: StrOrBytesPath | _SupportsFileMethods, + dtype: DTypeLike, + count: SupportsIndex = ..., + sep: str = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def fromiter( + iter: Iterable[Any], + dtype: _DTypeLike[_SCT], + count: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def fromiter( + iter: Iterable[Any], + dtype: DTypeLike, + count: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def frombuffer( + buffer: _SupportsBuffer, + dtype: None = ..., + count: SupportsIndex = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[float64]: ... +@overload +def frombuffer( + buffer: _SupportsBuffer, + dtype: _DTypeLike[_SCT], + count: SupportsIndex = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def frombuffer( + buffer: _SupportsBuffer, + dtype: DTypeLike, + count: SupportsIndex = ..., + offset: SupportsIndex = ..., + *, + like: None | _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +@overload +def arange( # type: ignore[misc] + stop: _IntLike_co, + /, *, + dtype: None = ..., + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[signedinteger]: ... +@overload +def arange( # type: ignore[misc] + start: _IntLike_co, + stop: _IntLike_co, + step: _IntLike_co = ..., + dtype: None = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[signedinteger]: ... +@overload +def arange( # type: ignore[misc] + stop: _FloatLike_co, + /, *, + dtype: None = ..., + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[floating]: ... +@overload +def arange( # type: ignore[misc] + start: _FloatLike_co, + stop: _FloatLike_co, + step: _FloatLike_co = ..., + dtype: None = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[floating]: ... +@overload +def arange( + stop: _TD64Like_co, + /, *, + dtype: None = ..., + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[timedelta64]: ... +@overload +def arange( + start: _TD64Like_co, + stop: _TD64Like_co, + step: _TD64Like_co = ..., + dtype: None = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[timedelta64]: ... +@overload +def arange( # both start and stop must always be specified for datetime64 + start: datetime64, + stop: datetime64, + step: datetime64 = ..., + dtype: None = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[datetime64]: ... +@overload +def arange( + stop: Any, + /, *, + dtype: _DTypeLike[_SCT], + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[_SCT]: ... +@overload +def arange( + start: Any, + stop: Any, + step: Any = ..., + dtype: _DTypeLike[_SCT] = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[_SCT]: ... +@overload +def arange( + stop: Any, /, + *, + dtype: DTypeLike, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[Any]: ... +@overload +def arange( + start: Any, + stop: Any, + step: Any = ..., + dtype: DTypeLike = ..., + *, + device: None | L["cpu"] = ..., + like: None | _SupportsArrayFunc = ..., +) -> _Array1D[Any]: ... + +def datetime_data( + dtype: str | _DTypeLike[datetime64] | _DTypeLike[timedelta64], /, +) -> tuple[str, int]: ... + +# The datetime functions perform unsafe casts to `datetime64[D]`, +# so a lot of different argument types are allowed here + +@overload +def busday_count( # type: ignore[misc] + begindates: _ScalarLike_co | dt.date, + enddates: _ScalarLike_co | dt.date, + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> int_: ... +@overload +def busday_count( # type: ignore[misc] + begindates: ArrayLike | dt.date | _NestedSequence[dt.date], + enddates: ArrayLike | dt.date | _NestedSequence[dt.date], + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> NDArray[int_]: ... +@overload +def busday_count( + begindates: ArrayLike | dt.date | _NestedSequence[dt.date], + enddates: ArrayLike | dt.date | _NestedSequence[dt.date], + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: _ArrayType = ..., +) -> _ArrayType: ... + +# `roll="raise"` is (more or less?) equivalent to `casting="safe"` +@overload +def busday_offset( # type: ignore[misc] + dates: datetime64 | dt.date, + offsets: _TD64Like_co | dt.timedelta, + roll: L["raise"] = ..., + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> datetime64: ... +@overload +def busday_offset( # type: ignore[misc] + dates: _ArrayLike[datetime64] | dt.date | _NestedSequence[dt.date], + offsets: _ArrayLikeTD64_co | dt.timedelta | _NestedSequence[dt.timedelta], + roll: L["raise"] = ..., + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> NDArray[datetime64]: ... +@overload +def busday_offset( # type: ignore[misc] + dates: _ArrayLike[datetime64] | dt.date | _NestedSequence[dt.date], + offsets: _ArrayLikeTD64_co | dt.timedelta | _NestedSequence[dt.timedelta], + roll: L["raise"] = ..., + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: _ArrayType = ..., +) -> _ArrayType: ... +@overload +def busday_offset( # type: ignore[misc] + dates: _ScalarLike_co | dt.date, + offsets: _ScalarLike_co | dt.timedelta, + roll: _RollKind, + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> datetime64: ... +@overload +def busday_offset( # type: ignore[misc] + dates: ArrayLike | dt.date | _NestedSequence[dt.date], + offsets: ArrayLike | dt.timedelta | _NestedSequence[dt.timedelta], + roll: _RollKind, + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> NDArray[datetime64]: ... +@overload +def busday_offset( + dates: ArrayLike | dt.date | _NestedSequence[dt.date], + offsets: ArrayLike | dt.timedelta | _NestedSequence[dt.timedelta], + roll: _RollKind, + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: _ArrayType = ..., +) -> _ArrayType: ... + +@overload +def is_busday( # type: ignore[misc] + dates: _ScalarLike_co | dt.date, + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> np.bool: ... +@overload +def is_busday( # type: ignore[misc] + dates: ArrayLike | _NestedSequence[dt.date], + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: None = ..., +) -> NDArray[np.bool]: ... +@overload +def is_busday( + dates: ArrayLike | _NestedSequence[dt.date], + weekmask: ArrayLike = ..., + holidays: None | ArrayLike | dt.date | _NestedSequence[dt.date] = ..., + busdaycal: None | busdaycalendar = ..., + out: _ArrayType = ..., +) -> _ArrayType: ... + +@overload +def datetime_as_string( # type: ignore[misc] + arr: datetime64 | dt.date, + unit: None | L["auto"] | _UnitKind = ..., + timezone: L["naive", "UTC", "local"] | dt.tzinfo = ..., + casting: _CastingKind = ..., +) -> str_: ... +@overload +def datetime_as_string( + arr: _ArrayLikeDT64_co | _NestedSequence[dt.date], + unit: None | L["auto"] | _UnitKind = ..., + timezone: L["naive", "UTC", "local"] | dt.tzinfo = ..., + casting: _CastingKind = ..., +) -> NDArray[str_]: ... + +@overload +def compare_chararrays( + a1: _ArrayLikeStr_co, + a2: _ArrayLikeStr_co, + cmp: L["<", "<=", "==", ">=", ">", "!="], + rstrip: bool, +) -> NDArray[np.bool]: ... +@overload +def compare_chararrays( + a1: _ArrayLikeBytes_co, + a2: _ArrayLikeBytes_co, + cmp: L["<", "<=", "==", ">=", ">", "!="], + rstrip: bool, +) -> NDArray[np.bool]: ... + +def add_docstring(obj: Callable[..., Any], docstring: str, /) -> None: ... + +_GetItemKeys: TypeAlias = L[ + "C", "CONTIGUOUS", "C_CONTIGUOUS", + "F", "FORTRAN", "F_CONTIGUOUS", + "W", "WRITEABLE", + "B", "BEHAVED", + "O", "OWNDATA", + "A", "ALIGNED", + "X", "WRITEBACKIFCOPY", + "CA", "CARRAY", + "FA", "FARRAY", + "FNC", + "FORC", +] +_SetItemKeys: TypeAlias = L[ + "A", "ALIGNED", + "W", "WRITEABLE", + "X", "WRITEBACKIFCOPY", +] + +@final +class flagsobj: + __hash__: ClassVar[None] # type: ignore[assignment] + aligned: bool + # NOTE: deprecated + # updateifcopy: bool + writeable: bool + writebackifcopy: bool + @property + def behaved(self) -> bool: ... + @property + def c_contiguous(self) -> bool: ... + @property + def carray(self) -> bool: ... + @property + def contiguous(self) -> bool: ... + @property + def f_contiguous(self) -> bool: ... + @property + def farray(self) -> bool: ... + @property + def fnc(self) -> bool: ... + @property + def forc(self) -> bool: ... + @property + def fortran(self) -> bool: ... + @property + def num(self) -> int: ... + @property + def owndata(self) -> bool: ... + def __getitem__(self, key: _GetItemKeys) -> bool: ... + def __setitem__(self, key: _SetItemKeys, value: bool) -> None: ... + +def nested_iters( + op: ArrayLike | Sequence[ArrayLike], + axes: Sequence[Sequence[SupportsIndex]], + flags: None | Sequence[_NDIterFlagsKind] = ..., + op_flags: None | Sequence[Sequence[_NDIterFlagsOp]] = ..., + op_dtypes: DTypeLike | Sequence[DTypeLike] = ..., + order: _OrderKACF = ..., + casting: _CastingKind = ..., + buffersize: SupportsIndex = ..., +) -> tuple[nditer, ...]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..d4ca10a635dd8b226e87ecd7198e0274677010b7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.py @@ -0,0 +1,2713 @@ +import functools +import itertools +import operator +import sys +import warnings +import numbers +import builtins +import math + +import numpy as np +from . import multiarray +from . import numerictypes as nt +from .multiarray import ( + ALLOW_THREADS, BUFSIZE, CLIP, MAXDIMS, MAY_SHARE_BOUNDS, MAY_SHARE_EXACT, + RAISE, WRAP, arange, array, asarray, asanyarray, ascontiguousarray, + asfortranarray, broadcast, can_cast, concatenate, copyto, dot, dtype, + empty, empty_like, flatiter, frombuffer, from_dlpack, fromfile, fromiter, + fromstring, inner, lexsort, matmul, may_share_memory, min_scalar_type, + ndarray, nditer, nested_iters, promote_types, putmask, result_type, + shares_memory, vdot, where, zeros, normalize_axis_index, vecdot +) + +from . import overrides +from . import umath +from . import shape_base +from .overrides import finalize_array_function_like, set_module +from .umath import (multiply, invert, sin, PINF, NAN) +from . import numerictypes +from ..exceptions import AxisError +from ._ufunc_config import errstate + +bitwise_not = invert +ufunc = type(sin) +newaxis = None + +array_function_dispatch = functools.partial( + overrides.array_function_dispatch, module='numpy') + + +__all__ = [ + 'newaxis', 'ndarray', 'flatiter', 'nditer', 'nested_iters', 'ufunc', + 'arange', 'array', 'asarray', 'asanyarray', 'ascontiguousarray', + 'asfortranarray', 'zeros', 'count_nonzero', 'empty', 'broadcast', 'dtype', + 'fromstring', 'fromfile', 'frombuffer', 'from_dlpack', 'where', + 'argwhere', 'copyto', 'concatenate', 'lexsort', 'astype', + 'can_cast', 'promote_types', 'min_scalar_type', + 'result_type', 'isfortran', 'empty_like', 'zeros_like', 'ones_like', + 'correlate', 'convolve', 'inner', 'dot', 'outer', 'vdot', 'roll', + 'rollaxis', 'moveaxis', 'cross', 'tensordot', 'little_endian', + 'fromiter', 'array_equal', 'array_equiv', 'indices', 'fromfunction', + 'isclose', 'isscalar', 'binary_repr', 'base_repr', 'ones', + 'identity', 'allclose', 'putmask', + 'flatnonzero', 'inf', 'nan', 'False_', 'True_', 'bitwise_not', + 'full', 'full_like', 'matmul', 'vecdot', 'shares_memory', + 'may_share_memory'] + + +def _zeros_like_dispatcher( + a, dtype=None, order=None, subok=None, shape=None, *, device=None +): + return (a,) + + +@array_function_dispatch(_zeros_like_dispatcher) +def zeros_like( + a, dtype=None, order='K', subok=True, shape=None, *, device=None +): + """ + Return an array of zeros with the same shape and type as a given array. + + Parameters + ---------- + a : array_like + The shape and data-type of `a` define these same attributes of + the returned array. + dtype : data-type, optional + Overrides the data type of the result. + order : {'C', 'F', 'A', or 'K'}, optional + Overrides the memory layout of the result. 'C' means C-order, + 'F' means F-order, 'A' means 'F' if `a` is Fortran contiguous, + 'C' otherwise. 'K' means match the layout of `a` as closely + as possible. + subok : bool, optional. + If True, then the newly created array will use the sub-class + type of `a`, otherwise it will be a base-class array. Defaults + to True. + shape : int or sequence of ints, optional. + Overrides the shape of the result. If order='K' and the number of + dimensions is unchanged, will try to keep order, otherwise, + order='C' is implied. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + + Returns + ------- + out : ndarray + Array of zeros with the same shape and type as `a`. + + See Also + -------- + empty_like : Return an empty array with shape and type of input. + ones_like : Return an array of ones with shape and type of input. + full_like : Return a new array with shape of input filled with value. + zeros : Return a new array setting values to zero. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6) + >>> x = x.reshape((2, 3)) + >>> x + array([[0, 1, 2], + [3, 4, 5]]) + >>> np.zeros_like(x) + array([[0, 0, 0], + [0, 0, 0]]) + + >>> y = np.arange(3, dtype=float) + >>> y + array([0., 1., 2.]) + >>> np.zeros_like(y) + array([0., 0., 0.]) + + """ + res = empty_like( + a, dtype=dtype, order=order, subok=subok, shape=shape, device=device + ) + # needed instead of a 0 to get same result as zeros for string dtypes + z = zeros(1, dtype=res.dtype) + multiarray.copyto(res, z, casting='unsafe') + return res + + +@finalize_array_function_like +@set_module('numpy') +def ones(shape, dtype=None, order='C', *, device=None, like=None): + """ + Return a new array of given shape and type, filled with ones. + + Parameters + ---------- + shape : int or sequence of ints + Shape of the new array, e.g., ``(2, 3)`` or ``2``. + dtype : data-type, optional + The desired data-type for the array, e.g., `numpy.int8`. Default is + `numpy.float64`. + order : {'C', 'F'}, optional, default: C + Whether to store multi-dimensional data in row-major + (C-style) or column-major (Fortran-style) order in + memory. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array of ones with the given shape, dtype, and order. + + See Also + -------- + ones_like : Return an array of ones with shape and type of input. + empty : Return a new uninitialized array. + zeros : Return a new array setting values to zero. + full : Return a new array of given shape filled with value. + + Examples + -------- + >>> import numpy as np + >>> np.ones(5) + array([1., 1., 1., 1., 1.]) + + >>> np.ones((5,), dtype=int) + array([1, 1, 1, 1, 1]) + + >>> np.ones((2, 1)) + array([[1.], + [1.]]) + + >>> s = (2,2) + >>> np.ones(s) + array([[1., 1.], + [1., 1.]]) + + """ + if like is not None: + return _ones_with_like( + like, shape, dtype=dtype, order=order, device=device + ) + + a = empty(shape, dtype, order, device=device) + multiarray.copyto(a, 1, casting='unsafe') + return a + + +_ones_with_like = array_function_dispatch()(ones) + + +def _ones_like_dispatcher( + a, dtype=None, order=None, subok=None, shape=None, *, device=None +): + return (a,) + + +@array_function_dispatch(_ones_like_dispatcher) +def ones_like( + a, dtype=None, order='K', subok=True, shape=None, *, device=None +): + """ + Return an array of ones with the same shape and type as a given array. + + Parameters + ---------- + a : array_like + The shape and data-type of `a` define these same attributes of + the returned array. + dtype : data-type, optional + Overrides the data type of the result. + order : {'C', 'F', 'A', or 'K'}, optional + Overrides the memory layout of the result. 'C' means C-order, + 'F' means F-order, 'A' means 'F' if `a` is Fortran contiguous, + 'C' otherwise. 'K' means match the layout of `a` as closely + as possible. + subok : bool, optional. + If True, then the newly created array will use the sub-class + type of `a`, otherwise it will be a base-class array. Defaults + to True. + shape : int or sequence of ints, optional. + Overrides the shape of the result. If order='K' and the number of + dimensions is unchanged, will try to keep order, otherwise, + order='C' is implied. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + + Returns + ------- + out : ndarray + Array of ones with the same shape and type as `a`. + + See Also + -------- + empty_like : Return an empty array with shape and type of input. + zeros_like : Return an array of zeros with shape and type of input. + full_like : Return a new array with shape of input filled with value. + ones : Return a new array setting values to one. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6) + >>> x = x.reshape((2, 3)) + >>> x + array([[0, 1, 2], + [3, 4, 5]]) + >>> np.ones_like(x) + array([[1, 1, 1], + [1, 1, 1]]) + + >>> y = np.arange(3, dtype=float) + >>> y + array([0., 1., 2.]) + >>> np.ones_like(y) + array([1., 1., 1.]) + + """ + res = empty_like( + a, dtype=dtype, order=order, subok=subok, shape=shape, device=device + ) + multiarray.copyto(res, 1, casting='unsafe') + return res + + +def _full_dispatcher( + shape, fill_value, dtype=None, order=None, *, device=None, like=None +): + return(like,) + + +@finalize_array_function_like +@set_module('numpy') +def full(shape, fill_value, dtype=None, order='C', *, device=None, like=None): + """ + Return a new array of given shape and type, filled with `fill_value`. + + Parameters + ---------- + shape : int or sequence of ints + Shape of the new array, e.g., ``(2, 3)`` or ``2``. + fill_value : scalar or array_like + Fill value. + dtype : data-type, optional + The desired data-type for the array The default, None, means + ``np.array(fill_value).dtype``. + order : {'C', 'F'}, optional + Whether to store multidimensional data in C- or Fortran-contiguous + (row- or column-wise) order in memory. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + Array of `fill_value` with the given shape, dtype, and order. + + See Also + -------- + full_like : Return a new array with shape of input filled with value. + empty : Return a new uninitialized array. + ones : Return a new array setting values to one. + zeros : Return a new array setting values to zero. + + Examples + -------- + >>> import numpy as np + >>> np.full((2, 2), np.inf) + array([[inf, inf], + [inf, inf]]) + >>> np.full((2, 2), 10) + array([[10, 10], + [10, 10]]) + + >>> np.full((2, 2), [1, 2]) + array([[1, 2], + [1, 2]]) + + """ + if like is not None: + return _full_with_like( + like, shape, fill_value, dtype=dtype, order=order, device=device + ) + + if dtype is None: + fill_value = asarray(fill_value) + dtype = fill_value.dtype + a = empty(shape, dtype, order, device=device) + multiarray.copyto(a, fill_value, casting='unsafe') + return a + + +_full_with_like = array_function_dispatch()(full) + + +def _full_like_dispatcher( + a, fill_value, dtype=None, order=None, subok=None, shape=None, + *, device=None +): + return (a,) + + +@array_function_dispatch(_full_like_dispatcher) +def full_like( + a, fill_value, dtype=None, order='K', subok=True, shape=None, + *, device=None +): + """ + Return a full array with the same shape and type as a given array. + + Parameters + ---------- + a : array_like + The shape and data-type of `a` define these same attributes of + the returned array. + fill_value : array_like + Fill value. + dtype : data-type, optional + Overrides the data type of the result. + order : {'C', 'F', 'A', or 'K'}, optional + Overrides the memory layout of the result. 'C' means C-order, + 'F' means F-order, 'A' means 'F' if `a` is Fortran contiguous, + 'C' otherwise. 'K' means match the layout of `a` as closely + as possible. + subok : bool, optional. + If True, then the newly created array will use the sub-class + type of `a`, otherwise it will be a base-class array. Defaults + to True. + shape : int or sequence of ints, optional. + Overrides the shape of the result. If order='K' and the number of + dimensions is unchanged, will try to keep order, otherwise, + order='C' is implied. + device : str, optional + The device on which to place the created array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.0.0 + + Returns + ------- + out : ndarray + Array of `fill_value` with the same shape and type as `a`. + + See Also + -------- + empty_like : Return an empty array with shape and type of input. + ones_like : Return an array of ones with shape and type of input. + zeros_like : Return an array of zeros with shape and type of input. + full : Return a new array of given shape filled with value. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6, dtype=int) + >>> np.full_like(x, 1) + array([1, 1, 1, 1, 1, 1]) + >>> np.full_like(x, 0.1) + array([0, 0, 0, 0, 0, 0]) + >>> np.full_like(x, 0.1, dtype=np.double) + array([0.1, 0.1, 0.1, 0.1, 0.1, 0.1]) + >>> np.full_like(x, np.nan, dtype=np.double) + array([nan, nan, nan, nan, nan, nan]) + + >>> y = np.arange(6, dtype=np.double) + >>> np.full_like(y, 0.1) + array([0.1, 0.1, 0.1, 0.1, 0.1, 0.1]) + + >>> y = np.zeros([2, 2, 3], dtype=int) + >>> np.full_like(y, [0, 0, 255]) + array([[[ 0, 0, 255], + [ 0, 0, 255]], + [[ 0, 0, 255], + [ 0, 0, 255]]]) + """ + res = empty_like( + a, dtype=dtype, order=order, subok=subok, shape=shape, device=device + ) + multiarray.copyto(res, fill_value, casting='unsafe') + return res + + +def _count_nonzero_dispatcher(a, axis=None, *, keepdims=None): + return (a,) + + +@array_function_dispatch(_count_nonzero_dispatcher) +def count_nonzero(a, axis=None, *, keepdims=False): + """ + Counts the number of non-zero values in the array ``a``. + + The word "non-zero" is in reference to the Python 2.x + built-in method ``__nonzero__()`` (renamed ``__bool__()`` + in Python 3.x) of Python objects that tests an object's + "truthfulness". For example, any number is considered + truthful if it is nonzero, whereas any string is considered + truthful if it is not the empty string. Thus, this function + (recursively) counts how many elements in ``a`` (and in + sub-arrays thereof) have their ``__nonzero__()`` or ``__bool__()`` + method evaluated to ``True``. + + Parameters + ---------- + a : array_like + The array for which to count non-zeros. + axis : int or tuple, optional + Axis or tuple of axes along which to count non-zeros. + Default is None, meaning that non-zeros will be counted + along a flattened version of ``a``. + keepdims : bool, optional + If this is set to True, the axes that are counted are left + in the result as dimensions with size one. With this option, + the result will broadcast correctly against the input array. + + Returns + ------- + count : int or array of int + Number of non-zero values in the array along a given axis. + Otherwise, the total number of non-zero values in the array + is returned. + + See Also + -------- + nonzero : Return the coordinates of all the non-zero values. + + Examples + -------- + >>> import numpy as np + >>> np.count_nonzero(np.eye(4)) + 4 + >>> a = np.array([[0, 1, 7, 0], + ... [3, 0, 2, 19]]) + >>> np.count_nonzero(a) + 5 + >>> np.count_nonzero(a, axis=0) + array([1, 1, 2, 1]) + >>> np.count_nonzero(a, axis=1) + array([2, 3]) + >>> np.count_nonzero(a, axis=1, keepdims=True) + array([[2], + [3]]) + """ + if axis is None and not keepdims: + return multiarray.count_nonzero(a) + + a = asanyarray(a) + + # TODO: this works around .astype(bool) not working properly (gh-9847) + if np.issubdtype(a.dtype, np.character): + a_bool = a != a.dtype.type() + else: + a_bool = a.astype(np.bool, copy=False) + + return a_bool.sum(axis=axis, dtype=np.intp, keepdims=keepdims) + + +@set_module('numpy') +def isfortran(a): + """ + Check if the array is Fortran contiguous but *not* C contiguous. + + This function is obsolete. If you only want to check if an array is Fortran + contiguous use ``a.flags.f_contiguous`` instead. + + Parameters + ---------- + a : ndarray + Input array. + + Returns + ------- + isfortran : bool + Returns True if the array is Fortran contiguous but *not* C contiguous. + + + Examples + -------- + + np.array allows to specify whether the array is written in C-contiguous + order (last index varies the fastest), or FORTRAN-contiguous order in + memory (first index varies the fastest). + + >>> import numpy as np + >>> a = np.array([[1, 2, 3], [4, 5, 6]], order='C') + >>> a + array([[1, 2, 3], + [4, 5, 6]]) + >>> np.isfortran(a) + False + + >>> b = np.array([[1, 2, 3], [4, 5, 6]], order='F') + >>> b + array([[1, 2, 3], + [4, 5, 6]]) + >>> np.isfortran(b) + True + + + The transpose of a C-ordered array is a FORTRAN-ordered array. + + >>> a = np.array([[1, 2, 3], [4, 5, 6]], order='C') + >>> a + array([[1, 2, 3], + [4, 5, 6]]) + >>> np.isfortran(a) + False + >>> b = a.T + >>> b + array([[1, 4], + [2, 5], + [3, 6]]) + >>> np.isfortran(b) + True + + C-ordered arrays evaluate as False even if they are also FORTRAN-ordered. + + >>> np.isfortran(np.array([1, 2], order='F')) + False + + """ + return a.flags.fnc + + +def _argwhere_dispatcher(a): + return (a,) + + +@array_function_dispatch(_argwhere_dispatcher) +def argwhere(a): + """ + Find the indices of array elements that are non-zero, grouped by element. + + Parameters + ---------- + a : array_like + Input data. + + Returns + ------- + index_array : (N, a.ndim) ndarray + Indices of elements that are non-zero. Indices are grouped by element. + This array will have shape ``(N, a.ndim)`` where ``N`` is the number of + non-zero items. + + See Also + -------- + where, nonzero + + Notes + ----- + ``np.argwhere(a)`` is almost the same as ``np.transpose(np.nonzero(a))``, + but produces a result of the correct shape for a 0D array. + + The output of ``argwhere`` is not suitable for indexing arrays. + For this purpose use ``nonzero(a)`` instead. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(6).reshape(2,3) + >>> x + array([[0, 1, 2], + [3, 4, 5]]) + >>> np.argwhere(x>1) + array([[0, 2], + [1, 0], + [1, 1], + [1, 2]]) + + """ + # nonzero does not behave well on 0d, so promote to 1d + if np.ndim(a) == 0: + a = shape_base.atleast_1d(a) + # then remove the added dimension + return argwhere(a)[:, :0] + return transpose(nonzero(a)) + + +def _flatnonzero_dispatcher(a): + return (a,) + + +@array_function_dispatch(_flatnonzero_dispatcher) +def flatnonzero(a): + """ + Return indices that are non-zero in the flattened version of a. + + This is equivalent to ``np.nonzero(np.ravel(a))[0]``. + + Parameters + ---------- + a : array_like + Input data. + + Returns + ------- + res : ndarray + Output array, containing the indices of the elements of ``a.ravel()`` + that are non-zero. + + See Also + -------- + nonzero : Return the indices of the non-zero elements of the input array. + ravel : Return a 1-D array containing the elements of the input array. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(-2, 3) + >>> x + array([-2, -1, 0, 1, 2]) + >>> np.flatnonzero(x) + array([0, 1, 3, 4]) + + Use the indices of the non-zero elements as an index array to extract + these elements: + + >>> x.ravel()[np.flatnonzero(x)] + array([-2, -1, 1, 2]) + + """ + return np.nonzero(np.ravel(a))[0] + + +def _correlate_dispatcher(a, v, mode=None): + return (a, v) + + +@array_function_dispatch(_correlate_dispatcher) +def correlate(a, v, mode='valid'): + r""" + Cross-correlation of two 1-dimensional sequences. + + This function computes the correlation as generally defined in signal + processing texts [1]_: + + .. math:: c_k = \sum_n a_{n+k} \cdot \overline{v}_n + + with a and v sequences being zero-padded where necessary and + :math:`\overline v` denoting complex conjugation. + + Parameters + ---------- + a, v : array_like + Input sequences. + mode : {'valid', 'same', 'full'}, optional + Refer to the `convolve` docstring. Note that the default + is 'valid', unlike `convolve`, which uses 'full'. + + Returns + ------- + out : ndarray + Discrete cross-correlation of `a` and `v`. + + See Also + -------- + convolve : Discrete, linear convolution of two one-dimensional sequences. + scipy.signal.correlate : uses FFT which has superior performance + on large arrays. + + Notes + ----- + The definition of correlation above is not unique and sometimes + correlation may be defined differently. Another common definition is [1]_: + + .. math:: c'_k = \sum_n a_{n} \cdot \overline{v_{n+k}} + + which is related to :math:`c_k` by :math:`c'_k = c_{-k}`. + + `numpy.correlate` may perform slowly in large arrays (i.e. n = 1e5) + because it does not use the FFT to compute the convolution; in that case, + `scipy.signal.correlate` might be preferable. + + References + ---------- + .. [1] Wikipedia, "Cross-correlation", + https://en.wikipedia.org/wiki/Cross-correlation + + Examples + -------- + >>> import numpy as np + >>> np.correlate([1, 2, 3], [0, 1, 0.5]) + array([3.5]) + >>> np.correlate([1, 2, 3], [0, 1, 0.5], "same") + array([2. , 3.5, 3. ]) + >>> np.correlate([1, 2, 3], [0, 1, 0.5], "full") + array([0.5, 2. , 3.5, 3. , 0. ]) + + Using complex sequences: + + >>> np.correlate([1+1j, 2, 3-1j], [0, 1, 0.5j], 'full') + array([ 0.5-0.5j, 1.0+0.j , 1.5-1.5j, 3.0-1.j , 0.0+0.j ]) + + Note that you get the time reversed, complex conjugated result + (:math:`\overline{c_{-k}}`) when the two input sequences a and v change + places: + + >>> np.correlate([0, 1, 0.5j], [1+1j, 2, 3-1j], 'full') + array([ 0.0+0.j , 3.0+1.j , 1.5+1.5j, 1.0+0.j , 0.5+0.5j]) + + """ + return multiarray.correlate2(a, v, mode) + + +def _convolve_dispatcher(a, v, mode=None): + return (a, v) + + +@array_function_dispatch(_convolve_dispatcher) +def convolve(a, v, mode='full'): + """ + Returns the discrete, linear convolution of two one-dimensional sequences. + + The convolution operator is often seen in signal processing, where it + models the effect of a linear time-invariant system on a signal [1]_. In + probability theory, the sum of two independent random variables is + distributed according to the convolution of their individual + distributions. + + If `v` is longer than `a`, the arrays are swapped before computation. + + Parameters + ---------- + a : (N,) array_like + First one-dimensional input array. + v : (M,) array_like + Second one-dimensional input array. + mode : {'full', 'valid', 'same'}, optional + 'full': + By default, mode is 'full'. This returns the convolution + at each point of overlap, with an output shape of (N+M-1,). At + the end-points of the convolution, the signals do not overlap + completely, and boundary effects may be seen. + + 'same': + Mode 'same' returns output of length ``max(M, N)``. Boundary + effects are still visible. + + 'valid': + Mode 'valid' returns output of length + ``max(M, N) - min(M, N) + 1``. The convolution product is only given + for points where the signals overlap completely. Values outside + the signal boundary have no effect. + + Returns + ------- + out : ndarray + Discrete, linear convolution of `a` and `v`. + + See Also + -------- + scipy.signal.fftconvolve : Convolve two arrays using the Fast Fourier + Transform. + scipy.linalg.toeplitz : Used to construct the convolution operator. + polymul : Polynomial multiplication. Same output as convolve, but also + accepts poly1d objects as input. + + Notes + ----- + The discrete convolution operation is defined as + + .. math:: (a * v)_n = \\sum_{m = -\\infty}^{\\infty} a_m v_{n - m} + + It can be shown that a convolution :math:`x(t) * y(t)` in time/space + is equivalent to the multiplication :math:`X(f) Y(f)` in the Fourier + domain, after appropriate padding (padding is necessary to prevent + circular convolution). Since multiplication is more efficient (faster) + than convolution, the function `scipy.signal.fftconvolve` exploits the + FFT to calculate the convolution of large data-sets. + + References + ---------- + .. [1] Wikipedia, "Convolution", + https://en.wikipedia.org/wiki/Convolution + + Examples + -------- + Note how the convolution operator flips the second array + before "sliding" the two across one another: + + >>> import numpy as np + >>> np.convolve([1, 2, 3], [0, 1, 0.5]) + array([0. , 1. , 2.5, 4. , 1.5]) + + Only return the middle values of the convolution. + Contains boundary effects, where zeros are taken + into account: + + >>> np.convolve([1,2,3],[0,1,0.5], 'same') + array([1. , 2.5, 4. ]) + + The two arrays are of the same length, so there + is only one position where they completely overlap: + + >>> np.convolve([1,2,3],[0,1,0.5], 'valid') + array([2.5]) + + """ + a, v = array(a, copy=None, ndmin=1), array(v, copy=None, ndmin=1) + if (len(v) > len(a)): + a, v = v, a + if len(a) == 0: + raise ValueError('a cannot be empty') + if len(v) == 0: + raise ValueError('v cannot be empty') + return multiarray.correlate(a, v[::-1], mode) + + +def _outer_dispatcher(a, b, out=None): + return (a, b, out) + + +@array_function_dispatch(_outer_dispatcher) +def outer(a, b, out=None): + """ + Compute the outer product of two vectors. + + Given two vectors `a` and `b` of length ``M`` and ``N``, respectively, + the outer product [1]_ is:: + + [[a_0*b_0 a_0*b_1 ... a_0*b_{N-1} ] + [a_1*b_0 . + [ ... . + [a_{M-1}*b_0 a_{M-1}*b_{N-1} ]] + + Parameters + ---------- + a : (M,) array_like + First input vector. Input is flattened if + not already 1-dimensional. + b : (N,) array_like + Second input vector. Input is flattened if + not already 1-dimensional. + out : (M, N) ndarray, optional + A location where the result is stored + + Returns + ------- + out : (M, N) ndarray + ``out[i, j] = a[i] * b[j]`` + + See also + -------- + inner + einsum : ``einsum('i,j->ij', a.ravel(), b.ravel())`` is the equivalent. + ufunc.outer : A generalization to dimensions other than 1D and other + operations. ``np.multiply.outer(a.ravel(), b.ravel())`` + is the equivalent. + linalg.outer : An Array API compatible variation of ``np.outer``, + which accepts 1-dimensional inputs only. + tensordot : ``np.tensordot(a.ravel(), b.ravel(), axes=((), ()))`` + is the equivalent. + + References + ---------- + .. [1] G. H. Golub and C. F. Van Loan, *Matrix Computations*, 3rd + ed., Baltimore, MD, Johns Hopkins University Press, 1996, + pg. 8. + + Examples + -------- + Make a (*very* coarse) grid for computing a Mandelbrot set: + + >>> import numpy as np + >>> rl = np.outer(np.ones((5,)), np.linspace(-2, 2, 5)) + >>> rl + array([[-2., -1., 0., 1., 2.], + [-2., -1., 0., 1., 2.], + [-2., -1., 0., 1., 2.], + [-2., -1., 0., 1., 2.], + [-2., -1., 0., 1., 2.]]) + >>> im = np.outer(1j*np.linspace(2, -2, 5), np.ones((5,))) + >>> im + array([[0.+2.j, 0.+2.j, 0.+2.j, 0.+2.j, 0.+2.j], + [0.+1.j, 0.+1.j, 0.+1.j, 0.+1.j, 0.+1.j], + [0.+0.j, 0.+0.j, 0.+0.j, 0.+0.j, 0.+0.j], + [0.-1.j, 0.-1.j, 0.-1.j, 0.-1.j, 0.-1.j], + [0.-2.j, 0.-2.j, 0.-2.j, 0.-2.j, 0.-2.j]]) + >>> grid = rl + im + >>> grid + array([[-2.+2.j, -1.+2.j, 0.+2.j, 1.+2.j, 2.+2.j], + [-2.+1.j, -1.+1.j, 0.+1.j, 1.+1.j, 2.+1.j], + [-2.+0.j, -1.+0.j, 0.+0.j, 1.+0.j, 2.+0.j], + [-2.-1.j, -1.-1.j, 0.-1.j, 1.-1.j, 2.-1.j], + [-2.-2.j, -1.-2.j, 0.-2.j, 1.-2.j, 2.-2.j]]) + + An example using a "vector" of letters: + + >>> x = np.array(['a', 'b', 'c'], dtype=object) + >>> np.outer(x, [1, 2, 3]) + array([['a', 'aa', 'aaa'], + ['b', 'bb', 'bbb'], + ['c', 'cc', 'ccc']], dtype=object) + + """ + a = asarray(a) + b = asarray(b) + return multiply(a.ravel()[:, newaxis], b.ravel()[newaxis, :], out) + + +def _tensordot_dispatcher(a, b, axes=None): + return (a, b) + + +@array_function_dispatch(_tensordot_dispatcher) +def tensordot(a, b, axes=2): + """ + Compute tensor dot product along specified axes. + + Given two tensors, `a` and `b`, and an array_like object containing + two array_like objects, ``(a_axes, b_axes)``, sum the products of + `a`'s and `b`'s elements (components) over the axes specified by + ``a_axes`` and ``b_axes``. The third argument can be a single non-negative + integer_like scalar, ``N``; if it is such, then the last ``N`` dimensions + of `a` and the first ``N`` dimensions of `b` are summed over. + + Parameters + ---------- + a, b : array_like + Tensors to "dot". + + axes : int or (2,) array_like + * integer_like + If an int N, sum over the last N axes of `a` and the first N axes + of `b` in order. The sizes of the corresponding axes must match. + * (2,) array_like + Or, a list of axes to be summed over, first sequence applying to `a`, + second to `b`. Both elements array_like must be of the same length. + + Returns + ------- + output : ndarray + The tensor dot product of the input. + + See Also + -------- + dot, einsum + + Notes + ----- + Three common use cases are: + * ``axes = 0`` : tensor product :math:`a\\otimes b` + * ``axes = 1`` : tensor dot product :math:`a\\cdot b` + * ``axes = 2`` : (default) tensor double contraction :math:`a:b` + + When `axes` is integer_like, the sequence of axes for evaluation + will be: from the -Nth axis to the -1th axis in `a`, + and from the 0th axis to (N-1)th axis in `b`. + For example, ``axes = 2`` is the equal to + ``axes = [[-2, -1], [0, 1]]``. + When N-1 is smaller than 0, or when -N is larger than -1, + the element of `a` and `b` are defined as the `axes`. + + When there is more than one axis to sum over - and they are not the last + (first) axes of `a` (`b`) - the argument `axes` should consist of + two sequences of the same length, with the first axis to sum over given + first in both sequences, the second axis second, and so forth. + The calculation can be referred to ``numpy.einsum``. + + The shape of the result consists of the non-contracted axes of the + first tensor, followed by the non-contracted axes of the second. + + Examples + -------- + An example on integer_like: + + >>> a_0 = np.array([[1, 2], [3, 4]]) + >>> b_0 = np.array([[5, 6], [7, 8]]) + >>> c_0 = np.tensordot(a_0, b_0, axes=0) + >>> c_0.shape + (2, 2, 2, 2) + >>> c_0 + array([[[[ 5, 6], + [ 7, 8]], + [[10, 12], + [14, 16]]], + [[[15, 18], + [21, 24]], + [[20, 24], + [28, 32]]]]) + + An example on array_like: + + >>> a = np.arange(60.).reshape(3,4,5) + >>> b = np.arange(24.).reshape(4,3,2) + >>> c = np.tensordot(a,b, axes=([1,0],[0,1])) + >>> c.shape + (5, 2) + >>> c + array([[4400., 4730.], + [4532., 4874.], + [4664., 5018.], + [4796., 5162.], + [4928., 5306.]]) + + A slower but equivalent way of computing the same... + + >>> d = np.zeros((5,2)) + >>> for i in range(5): + ... for j in range(2): + ... for k in range(3): + ... for n in range(4): + ... d[i,j] += a[k,n,i] * b[n,k,j] + >>> c == d + array([[ True, True], + [ True, True], + [ True, True], + [ True, True], + [ True, True]]) + + An extended example taking advantage of the overloading of + and \\*: + + >>> a = np.array(range(1, 9)) + >>> a.shape = (2, 2, 2) + >>> A = np.array(('a', 'b', 'c', 'd'), dtype=object) + >>> A.shape = (2, 2) + >>> a; A + array([[[1, 2], + [3, 4]], + [[5, 6], + [7, 8]]]) + array([['a', 'b'], + ['c', 'd']], dtype=object) + + >>> np.tensordot(a, A) # third argument default is 2 for double-contraction + array(['abbcccdddd', 'aaaaabbbbbbcccccccdddddddd'], dtype=object) + + >>> np.tensordot(a, A, 1) + array([[['acc', 'bdd'], + ['aaacccc', 'bbbdddd']], + [['aaaaacccccc', 'bbbbbdddddd'], + ['aaaaaaacccccccc', 'bbbbbbbdddddddd']]], dtype=object) + + >>> np.tensordot(a, A, 0) # tensor product (result too long to incl.) + array([[[[['a', 'b'], + ['c', 'd']], + ... + + >>> np.tensordot(a, A, (0, 1)) + array([[['abbbbb', 'cddddd'], + ['aabbbbbb', 'ccdddddd']], + [['aaabbbbbbb', 'cccddddddd'], + ['aaaabbbbbbbb', 'ccccdddddddd']]], dtype=object) + + >>> np.tensordot(a, A, (2, 1)) + array([[['abb', 'cdd'], + ['aaabbbb', 'cccdddd']], + [['aaaaabbbbbb', 'cccccdddddd'], + ['aaaaaaabbbbbbbb', 'cccccccdddddddd']]], dtype=object) + + >>> np.tensordot(a, A, ((0, 1), (0, 1))) + array(['abbbcccccddddddd', 'aabbbbccccccdddddddd'], dtype=object) + + >>> np.tensordot(a, A, ((2, 1), (1, 0))) + array(['acccbbdddd', 'aaaaacccccccbbbbbbdddddddd'], dtype=object) + + """ + try: + iter(axes) + except Exception: + axes_a = list(range(-axes, 0)) + axes_b = list(range(0, axes)) + else: + axes_a, axes_b = axes + try: + na = len(axes_a) + axes_a = list(axes_a) + except TypeError: + axes_a = [axes_a] + na = 1 + try: + nb = len(axes_b) + axes_b = list(axes_b) + except TypeError: + axes_b = [axes_b] + nb = 1 + + a, b = asarray(a), asarray(b) + as_ = a.shape + nda = a.ndim + bs = b.shape + ndb = b.ndim + equal = True + if na != nb: + equal = False + else: + for k in range(na): + if as_[axes_a[k]] != bs[axes_b[k]]: + equal = False + break + if axes_a[k] < 0: + axes_a[k] += nda + if axes_b[k] < 0: + axes_b[k] += ndb + if not equal: + raise ValueError("shape-mismatch for sum") + + # Move the axes to sum over to the end of "a" + # and to the front of "b" + notin = [k for k in range(nda) if k not in axes_a] + newaxes_a = notin + axes_a + N2 = math.prod(as_[axis] for axis in axes_a) + newshape_a = (math.prod([as_[ax] for ax in notin]), N2) + olda = [as_[axis] for axis in notin] + + notin = [k for k in range(ndb) if k not in axes_b] + newaxes_b = axes_b + notin + N2 = math.prod(bs[axis] for axis in axes_b) + newshape_b = (N2, math.prod([bs[ax] for ax in notin])) + oldb = [bs[axis] for axis in notin] + + at = a.transpose(newaxes_a).reshape(newshape_a) + bt = b.transpose(newaxes_b).reshape(newshape_b) + res = dot(at, bt) + return res.reshape(olda + oldb) + + +def _roll_dispatcher(a, shift, axis=None): + return (a,) + + +@array_function_dispatch(_roll_dispatcher) +def roll(a, shift, axis=None): + """ + Roll array elements along a given axis. + + Elements that roll beyond the last position are re-introduced at + the first. + + Parameters + ---------- + a : array_like + Input array. + shift : int or tuple of ints + The number of places by which elements are shifted. If a tuple, + then `axis` must be a tuple of the same size, and each of the + given axes is shifted by the corresponding number. If an int + while `axis` is a tuple of ints, then the same value is used for + all given axes. + axis : int or tuple of ints, optional + Axis or axes along which elements are shifted. By default, the + array is flattened before shifting, after which the original + shape is restored. + + Returns + ------- + res : ndarray + Output array, with the same shape as `a`. + + See Also + -------- + rollaxis : Roll the specified axis backwards, until it lies in a + given position. + + Notes + ----- + Supports rolling over multiple dimensions simultaneously. + + Examples + -------- + >>> import numpy as np + >>> x = np.arange(10) + >>> np.roll(x, 2) + array([8, 9, 0, 1, 2, 3, 4, 5, 6, 7]) + >>> np.roll(x, -2) + array([2, 3, 4, 5, 6, 7, 8, 9, 0, 1]) + + >>> x2 = np.reshape(x, (2, 5)) + >>> x2 + array([[0, 1, 2, 3, 4], + [5, 6, 7, 8, 9]]) + >>> np.roll(x2, 1) + array([[9, 0, 1, 2, 3], + [4, 5, 6, 7, 8]]) + >>> np.roll(x2, -1) + array([[1, 2, 3, 4, 5], + [6, 7, 8, 9, 0]]) + >>> np.roll(x2, 1, axis=0) + array([[5, 6, 7, 8, 9], + [0, 1, 2, 3, 4]]) + >>> np.roll(x2, -1, axis=0) + array([[5, 6, 7, 8, 9], + [0, 1, 2, 3, 4]]) + >>> np.roll(x2, 1, axis=1) + array([[4, 0, 1, 2, 3], + [9, 5, 6, 7, 8]]) + >>> np.roll(x2, -1, axis=1) + array([[1, 2, 3, 4, 0], + [6, 7, 8, 9, 5]]) + >>> np.roll(x2, (1, 1), axis=(1, 0)) + array([[9, 5, 6, 7, 8], + [4, 0, 1, 2, 3]]) + >>> np.roll(x2, (2, 1), axis=(1, 0)) + array([[8, 9, 5, 6, 7], + [3, 4, 0, 1, 2]]) + + """ + a = asanyarray(a) + if axis is None: + return roll(a.ravel(), shift, 0).reshape(a.shape) + + else: + axis = normalize_axis_tuple(axis, a.ndim, allow_duplicate=True) + broadcasted = broadcast(shift, axis) + if broadcasted.ndim > 1: + raise ValueError( + "'shift' and 'axis' should be scalars or 1D sequences") + shifts = {ax: 0 for ax in range(a.ndim)} + for sh, ax in broadcasted: + shifts[ax] += int(sh) + + rolls = [((slice(None), slice(None)),)] * a.ndim + for ax, offset in shifts.items(): + offset %= a.shape[ax] or 1 # If `a` is empty, nothing matters. + if offset: + # (original, result), (original, result) + rolls[ax] = ((slice(None, -offset), slice(offset, None)), + (slice(-offset, None), slice(None, offset))) + + result = empty_like(a) + for indices in itertools.product(*rolls): + arr_index, res_index = zip(*indices) + result[res_index] = a[arr_index] + + return result + + +def _rollaxis_dispatcher(a, axis, start=None): + return (a,) + + +@array_function_dispatch(_rollaxis_dispatcher) +def rollaxis(a, axis, start=0): + """ + Roll the specified axis backwards, until it lies in a given position. + + This function continues to be supported for backward compatibility, but you + should prefer `moveaxis`. The `moveaxis` function was added in NumPy + 1.11. + + Parameters + ---------- + a : ndarray + Input array. + axis : int + The axis to be rolled. The positions of the other axes do not + change relative to one another. + start : int, optional + When ``start <= axis``, the axis is rolled back until it lies in + this position. When ``start > axis``, the axis is rolled until it + lies before this position. The default, 0, results in a "complete" + roll. The following table describes how negative values of ``start`` + are interpreted: + + .. table:: + :align: left + + +-------------------+----------------------+ + | ``start`` | Normalized ``start`` | + +===================+======================+ + | ``-(arr.ndim+1)`` | raise ``AxisError`` | + +-------------------+----------------------+ + | ``-arr.ndim`` | 0 | + +-------------------+----------------------+ + | |vdots| | |vdots| | + +-------------------+----------------------+ + | ``-1`` | ``arr.ndim-1`` | + +-------------------+----------------------+ + | ``0`` | ``0`` | + +-------------------+----------------------+ + | |vdots| | |vdots| | + +-------------------+----------------------+ + | ``arr.ndim`` | ``arr.ndim`` | + +-------------------+----------------------+ + | ``arr.ndim + 1`` | raise ``AxisError`` | + +-------------------+----------------------+ + + .. |vdots| unicode:: U+22EE .. Vertical Ellipsis + + Returns + ------- + res : ndarray + For NumPy >= 1.10.0 a view of `a` is always returned. For earlier + NumPy versions a view of `a` is returned only if the order of the + axes is changed, otherwise the input array is returned. + + See Also + -------- + moveaxis : Move array axes to new positions. + roll : Roll the elements of an array by a number of positions along a + given axis. + + Examples + -------- + >>> import numpy as np + >>> a = np.ones((3,4,5,6)) + >>> np.rollaxis(a, 3, 1).shape + (3, 6, 4, 5) + >>> np.rollaxis(a, 2).shape + (5, 3, 4, 6) + >>> np.rollaxis(a, 1, 4).shape + (3, 5, 6, 4) + + """ + n = a.ndim + axis = normalize_axis_index(axis, n) + if start < 0: + start += n + msg = "'%s' arg requires %d <= %s < %d, but %d was passed in" + if not (0 <= start < n + 1): + raise AxisError(msg % ('start', -n, 'start', n + 1, start)) + if axis < start: + # it's been removed + start -= 1 + if axis == start: + return a[...] + axes = list(range(0, n)) + axes.remove(axis) + axes.insert(start, axis) + return a.transpose(axes) + + +@set_module("numpy.lib.array_utils") +def normalize_axis_tuple(axis, ndim, argname=None, allow_duplicate=False): + """ + Normalizes an axis argument into a tuple of non-negative integer axes. + + This handles shorthands such as ``1`` and converts them to ``(1,)``, + as well as performing the handling of negative indices covered by + `normalize_axis_index`. + + By default, this forbids axes from being specified multiple times. + + Used internally by multi-axis-checking logic. + + Parameters + ---------- + axis : int, iterable of int + The un-normalized index or indices of the axis. + ndim : int + The number of dimensions of the array that `axis` should be normalized + against. + argname : str, optional + A prefix to put before the error message, typically the name of the + argument. + allow_duplicate : bool, optional + If False, the default, disallow an axis from being specified twice. + + Returns + ------- + normalized_axes : tuple of int + The normalized axis index, such that `0 <= normalized_axis < ndim` + + Raises + ------ + AxisError + If any axis provided is out of range + ValueError + If an axis is repeated + + See also + -------- + normalize_axis_index : normalizing a single scalar axis + """ + # Optimization to speed-up the most common cases. + if type(axis) not in (tuple, list): + try: + axis = [operator.index(axis)] + except TypeError: + pass + # Going via an iterator directly is slower than via list comprehension. + axis = tuple([normalize_axis_index(ax, ndim, argname) for ax in axis]) + if not allow_duplicate and len(set(axis)) != len(axis): + if argname: + raise ValueError('repeated axis in `{}` argument'.format(argname)) + else: + raise ValueError('repeated axis') + return axis + + +def _moveaxis_dispatcher(a, source, destination): + return (a,) + + +@array_function_dispatch(_moveaxis_dispatcher) +def moveaxis(a, source, destination): + """ + Move axes of an array to new positions. + + Other axes remain in their original order. + + Parameters + ---------- + a : np.ndarray + The array whose axes should be reordered. + source : int or sequence of int + Original positions of the axes to move. These must be unique. + destination : int or sequence of int + Destination positions for each of the original axes. These must also be + unique. + + Returns + ------- + result : np.ndarray + Array with moved axes. This array is a view of the input array. + + See Also + -------- + transpose : Permute the dimensions of an array. + swapaxes : Interchange two axes of an array. + + Examples + -------- + >>> import numpy as np + >>> x = np.zeros((3, 4, 5)) + >>> np.moveaxis(x, 0, -1).shape + (4, 5, 3) + >>> np.moveaxis(x, -1, 0).shape + (5, 3, 4) + + These all achieve the same result: + + >>> np.transpose(x).shape + (5, 4, 3) + >>> np.swapaxes(x, 0, -1).shape + (5, 4, 3) + >>> np.moveaxis(x, [0, 1], [-1, -2]).shape + (5, 4, 3) + >>> np.moveaxis(x, [0, 1, 2], [-1, -2, -3]).shape + (5, 4, 3) + + """ + try: + # allow duck-array types if they define transpose + transpose = a.transpose + except AttributeError: + a = asarray(a) + transpose = a.transpose + + source = normalize_axis_tuple(source, a.ndim, 'source') + destination = normalize_axis_tuple(destination, a.ndim, 'destination') + if len(source) != len(destination): + raise ValueError('`source` and `destination` arguments must have ' + 'the same number of elements') + + order = [n for n in range(a.ndim) if n not in source] + + for dest, src in sorted(zip(destination, source)): + order.insert(dest, src) + + result = transpose(order) + return result + + +def _cross_dispatcher(a, b, axisa=None, axisb=None, axisc=None, axis=None): + return (a, b) + + +@array_function_dispatch(_cross_dispatcher) +def cross(a, b, axisa=-1, axisb=-1, axisc=-1, axis=None): + """ + Return the cross product of two (arrays of) vectors. + + The cross product of `a` and `b` in :math:`R^3` is a vector perpendicular + to both `a` and `b`. If `a` and `b` are arrays of vectors, the vectors + are defined by the last axis of `a` and `b` by default, and these axes + can have dimensions 2 or 3. Where the dimension of either `a` or `b` is + 2, the third component of the input vector is assumed to be zero and the + cross product calculated accordingly. In cases where both input vectors + have dimension 2, the z-component of the cross product is returned. + + Parameters + ---------- + a : array_like + Components of the first vector(s). + b : array_like + Components of the second vector(s). + axisa : int, optional + Axis of `a` that defines the vector(s). By default, the last axis. + axisb : int, optional + Axis of `b` that defines the vector(s). By default, the last axis. + axisc : int, optional + Axis of `c` containing the cross product vector(s). Ignored if + both input vectors have dimension 2, as the return is scalar. + By default, the last axis. + axis : int, optional + If defined, the axis of `a`, `b` and `c` that defines the vector(s) + and cross product(s). Overrides `axisa`, `axisb` and `axisc`. + + Returns + ------- + c : ndarray + Vector cross product(s). + + Raises + ------ + ValueError + When the dimension of the vector(s) in `a` and/or `b` does not + equal 2 or 3. + + See Also + -------- + inner : Inner product + outer : Outer product. + linalg.cross : An Array API compatible variation of ``np.cross``, + which accepts (arrays of) 3-element vectors only. + ix_ : Construct index arrays. + + Notes + ----- + Supports full broadcasting of the inputs. + + Dimension-2 input arrays were deprecated in 2.0.0. If you do need this + functionality, you can use:: + + def cross2d(x, y): + return x[..., 0] * y[..., 1] - x[..., 1] * y[..., 0] + + Examples + -------- + Vector cross-product. + + >>> import numpy as np + >>> x = [1, 2, 3] + >>> y = [4, 5, 6] + >>> np.cross(x, y) + array([-3, 6, -3]) + + One vector with dimension 2. + + >>> x = [1, 2] + >>> y = [4, 5, 6] + >>> np.cross(x, y) + array([12, -6, -3]) + + Equivalently: + + >>> x = [1, 2, 0] + >>> y = [4, 5, 6] + >>> np.cross(x, y) + array([12, -6, -3]) + + Both vectors with dimension 2. + + >>> x = [1,2] + >>> y = [4,5] + >>> np.cross(x, y) + array(-3) + + Multiple vector cross-products. Note that the direction of the cross + product vector is defined by the *right-hand rule*. + + >>> x = np.array([[1,2,3], [4,5,6]]) + >>> y = np.array([[4,5,6], [1,2,3]]) + >>> np.cross(x, y) + array([[-3, 6, -3], + [ 3, -6, 3]]) + + The orientation of `c` can be changed using the `axisc` keyword. + + >>> np.cross(x, y, axisc=0) + array([[-3, 3], + [ 6, -6], + [-3, 3]]) + + Change the vector definition of `x` and `y` using `axisa` and `axisb`. + + >>> x = np.array([[1,2,3], [4,5,6], [7, 8, 9]]) + >>> y = np.array([[7, 8, 9], [4,5,6], [1,2,3]]) + >>> np.cross(x, y) + array([[ -6, 12, -6], + [ 0, 0, 0], + [ 6, -12, 6]]) + >>> np.cross(x, y, axisa=0, axisb=0) + array([[-24, 48, -24], + [-30, 60, -30], + [-36, 72, -36]]) + + """ + if axis is not None: + axisa, axisb, axisc = (axis,) * 3 + a = asarray(a) + b = asarray(b) + + if (a.ndim < 1) or (b.ndim < 1): + raise ValueError("At least one array has zero dimension") + + # Check axisa and axisb are within bounds + axisa = normalize_axis_index(axisa, a.ndim, msg_prefix='axisa') + axisb = normalize_axis_index(axisb, b.ndim, msg_prefix='axisb') + + # Move working axis to the end of the shape + a = moveaxis(a, axisa, -1) + b = moveaxis(b, axisb, -1) + msg = ("incompatible dimensions for cross product\n" + "(dimension must be 2 or 3)") + if a.shape[-1] not in (2, 3) or b.shape[-1] not in (2, 3): + raise ValueError(msg) + if a.shape[-1] == 2 or b.shape[-1] == 2: + # Deprecated in NumPy 2.0, 2023-09-26 + warnings.warn( + "Arrays of 2-dimensional vectors are deprecated. Use arrays of " + "3-dimensional vectors instead. (deprecated in NumPy 2.0)", + DeprecationWarning, stacklevel=2 + ) + + # Create the output array + shape = broadcast(a[..., 0], b[..., 0]).shape + if a.shape[-1] == 3 or b.shape[-1] == 3: + shape += (3,) + # Check axisc is within bounds + axisc = normalize_axis_index(axisc, len(shape), msg_prefix='axisc') + dtype = promote_types(a.dtype, b.dtype) + cp = empty(shape, dtype) + + # recast arrays as dtype + a = a.astype(dtype) + b = b.astype(dtype) + + # create local aliases for readability + a0 = a[..., 0] + a1 = a[..., 1] + if a.shape[-1] == 3: + a2 = a[..., 2] + b0 = b[..., 0] + b1 = b[..., 1] + if b.shape[-1] == 3: + b2 = b[..., 2] + if cp.ndim != 0 and cp.shape[-1] == 3: + cp0 = cp[..., 0] + cp1 = cp[..., 1] + cp2 = cp[..., 2] + + if a.shape[-1] == 2: + if b.shape[-1] == 2: + # a0 * b1 - a1 * b0 + multiply(a0, b1, out=cp) + cp -= a1 * b0 + return cp + else: + assert b.shape[-1] == 3 + # cp0 = a1 * b2 - 0 (a2 = 0) + # cp1 = 0 - a0 * b2 (a2 = 0) + # cp2 = a0 * b1 - a1 * b0 + multiply(a1, b2, out=cp0) + multiply(a0, b2, out=cp1) + negative(cp1, out=cp1) + multiply(a0, b1, out=cp2) + cp2 -= a1 * b0 + else: + assert a.shape[-1] == 3 + if b.shape[-1] == 3: + # cp0 = a1 * b2 - a2 * b1 + # cp1 = a2 * b0 - a0 * b2 + # cp2 = a0 * b1 - a1 * b0 + multiply(a1, b2, out=cp0) + tmp = array(a2 * b1) + cp0 -= tmp + multiply(a2, b0, out=cp1) + multiply(a0, b2, out=tmp) + cp1 -= tmp + multiply(a0, b1, out=cp2) + multiply(a1, b0, out=tmp) + cp2 -= tmp + else: + assert b.shape[-1] == 2 + # cp0 = 0 - a2 * b1 (b2 = 0) + # cp1 = a2 * b0 - 0 (b2 = 0) + # cp2 = a0 * b1 - a1 * b0 + multiply(a2, b1, out=cp0) + negative(cp0, out=cp0) + multiply(a2, b0, out=cp1) + multiply(a0, b1, out=cp2) + cp2 -= a1 * b0 + + return moveaxis(cp, -1, axisc) + + +little_endian = (sys.byteorder == 'little') + + +@set_module('numpy') +def indices(dimensions, dtype=int, sparse=False): + """ + Return an array representing the indices of a grid. + + Compute an array where the subarrays contain index values 0, 1, ... + varying only along the corresponding axis. + + Parameters + ---------- + dimensions : sequence of ints + The shape of the grid. + dtype : dtype, optional + Data type of the result. + sparse : boolean, optional + Return a sparse representation of the grid instead of a dense + representation. Default is False. + + Returns + ------- + grid : one ndarray or tuple of ndarrays + If sparse is False: + Returns one array of grid indices, + ``grid.shape = (len(dimensions),) + tuple(dimensions)``. + If sparse is True: + Returns a tuple of arrays, with + ``grid[i].shape = (1, ..., 1, dimensions[i], 1, ..., 1)`` with + dimensions[i] in the ith place + + See Also + -------- + mgrid, ogrid, meshgrid + + Notes + ----- + The output shape in the dense case is obtained by prepending the number + of dimensions in front of the tuple of dimensions, i.e. if `dimensions` + is a tuple ``(r0, ..., rN-1)`` of length ``N``, the output shape is + ``(N, r0, ..., rN-1)``. + + The subarrays ``grid[k]`` contains the N-D array of indices along the + ``k-th`` axis. Explicitly:: + + grid[k, i0, i1, ..., iN-1] = ik + + Examples + -------- + >>> import numpy as np + >>> grid = np.indices((2, 3)) + >>> grid.shape + (2, 2, 3) + >>> grid[0] # row indices + array([[0, 0, 0], + [1, 1, 1]]) + >>> grid[1] # column indices + array([[0, 1, 2], + [0, 1, 2]]) + + The indices can be used as an index into an array. + + >>> x = np.arange(20).reshape(5, 4) + >>> row, col = np.indices((2, 3)) + >>> x[row, col] + array([[0, 1, 2], + [4, 5, 6]]) + + Note that it would be more straightforward in the above example to + extract the required elements directly with ``x[:2, :3]``. + + If sparse is set to true, the grid will be returned in a sparse + representation. + + >>> i, j = np.indices((2, 3), sparse=True) + >>> i.shape + (2, 1) + >>> j.shape + (1, 3) + >>> i # row indices + array([[0], + [1]]) + >>> j # column indices + array([[0, 1, 2]]) + + """ + dimensions = tuple(dimensions) + N = len(dimensions) + shape = (1,)*N + if sparse: + res = tuple() + else: + res = empty((N,)+dimensions, dtype=dtype) + for i, dim in enumerate(dimensions): + idx = arange(dim, dtype=dtype).reshape( + shape[:i] + (dim,) + shape[i+1:] + ) + if sparse: + res = res + (idx,) + else: + res[i] = idx + return res + + +@finalize_array_function_like +@set_module('numpy') +def fromfunction(function, shape, *, dtype=float, like=None, **kwargs): + """ + Construct an array by executing a function over each coordinate. + + The resulting array therefore has a value ``fn(x, y, z)`` at + coordinate ``(x, y, z)``. + + Parameters + ---------- + function : callable + The function is called with N parameters, where N is the rank of + `shape`. Each parameter represents the coordinates of the array + varying along a specific axis. For example, if `shape` + were ``(2, 2)``, then the parameters would be + ``array([[0, 0], [1, 1]])`` and ``array([[0, 1], [0, 1]])`` + shape : (N,) tuple of ints + Shape of the output array, which also determines the shape of + the coordinate arrays passed to `function`. + dtype : data-type, optional + Data-type of the coordinate arrays passed to `function`. + By default, `dtype` is float. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + fromfunction : any + The result of the call to `function` is passed back directly. + Therefore the shape of `fromfunction` is completely determined by + `function`. If `function` returns a scalar value, the shape of + `fromfunction` would not match the `shape` parameter. + + See Also + -------- + indices, meshgrid + + Notes + ----- + Keywords other than `dtype` and `like` are passed to `function`. + + Examples + -------- + >>> import numpy as np + >>> np.fromfunction(lambda i, j: i, (2, 2), dtype=float) + array([[0., 0.], + [1., 1.]]) + + >>> np.fromfunction(lambda i, j: j, (2, 2), dtype=float) + array([[0., 1.], + [0., 1.]]) + + >>> np.fromfunction(lambda i, j: i == j, (3, 3), dtype=int) + array([[ True, False, False], + [False, True, False], + [False, False, True]]) + + >>> np.fromfunction(lambda i, j: i + j, (3, 3), dtype=int) + array([[0, 1, 2], + [1, 2, 3], + [2, 3, 4]]) + + """ + if like is not None: + return _fromfunction_with_like( + like, function, shape, dtype=dtype, **kwargs) + + args = indices(shape, dtype=dtype) + return function(*args, **kwargs) + + +_fromfunction_with_like = array_function_dispatch()(fromfunction) + + +def _frombuffer(buf, dtype, shape, order): + return frombuffer(buf, dtype=dtype).reshape(shape, order=order) + + +@set_module('numpy') +def isscalar(element): + """ + Returns True if the type of `element` is a scalar type. + + Parameters + ---------- + element : any + Input argument, can be of any type and shape. + + Returns + ------- + val : bool + True if `element` is a scalar type, False if it is not. + + See Also + -------- + ndim : Get the number of dimensions of an array + + Notes + ----- + If you need a stricter way to identify a *numerical* scalar, use + ``isinstance(x, numbers.Number)``, as that returns ``False`` for most + non-numerical elements such as strings. + + In most cases ``np.ndim(x) == 0`` should be used instead of this function, + as that will also return true for 0d arrays. This is how numpy overloads + functions in the style of the ``dx`` arguments to `gradient` and + the ``bins`` argument to `histogram`. Some key differences: + + +------------------------------------+---------------+-------------------+ + | x |``isscalar(x)``|``np.ndim(x) == 0``| + +====================================+===============+===================+ + | PEP 3141 numeric objects | ``True`` | ``True`` | + | (including builtins) | | | + +------------------------------------+---------------+-------------------+ + | builtin string and buffer objects | ``True`` | ``True`` | + +------------------------------------+---------------+-------------------+ + | other builtin objects, like | ``False`` | ``True`` | + | `pathlib.Path`, `Exception`, | | | + | the result of `re.compile` | | | + +------------------------------------+---------------+-------------------+ + | third-party objects like | ``False`` | ``True`` | + | `matplotlib.figure.Figure` | | | + +------------------------------------+---------------+-------------------+ + | zero-dimensional numpy arrays | ``False`` | ``True`` | + +------------------------------------+---------------+-------------------+ + | other numpy arrays | ``False`` | ``False`` | + +------------------------------------+---------------+-------------------+ + | `list`, `tuple`, and other | ``False`` | ``False`` | + | sequence objects | | | + +------------------------------------+---------------+-------------------+ + + Examples + -------- + >>> import numpy as np + + >>> np.isscalar(3.1) + True + + >>> np.isscalar(np.array(3.1)) + False + + >>> np.isscalar([3.1]) + False + + >>> np.isscalar(False) + True + + >>> np.isscalar('numpy') + True + + NumPy supports PEP 3141 numbers: + + >>> from fractions import Fraction + >>> np.isscalar(Fraction(5, 17)) + True + >>> from numbers import Number + >>> np.isscalar(Number()) + True + + """ + return (isinstance(element, generic) + or type(element) in ScalarType + or isinstance(element, numbers.Number)) + + +@set_module('numpy') +def binary_repr(num, width=None): + """ + Return the binary representation of the input number as a string. + + For negative numbers, if width is not given, a minus sign is added to the + front. If width is given, the two's complement of the number is + returned, with respect to that width. + + In a two's-complement system negative numbers are represented by the two's + complement of the absolute value. This is the most common method of + representing signed integers on computers [1]_. A N-bit two's-complement + system can represent every integer in the range + :math:`-2^{N-1}` to :math:`+2^{N-1}-1`. + + Parameters + ---------- + num : int + Only an integer decimal number can be used. + width : int, optional + The length of the returned string if `num` is positive, or the length + of the two's complement if `num` is negative, provided that `width` is + at least a sufficient number of bits for `num` to be represented in + the designated form. If the `width` value is insufficient, an error is + raised. + + Returns + ------- + bin : str + Binary representation of `num` or two's complement of `num`. + + See Also + -------- + base_repr: Return a string representation of a number in the given base + system. + bin: Python's built-in binary representation generator of an integer. + + Notes + ----- + `binary_repr` is equivalent to using `base_repr` with base 2, but about 25x + faster. + + References + ---------- + .. [1] Wikipedia, "Two's complement", + https://en.wikipedia.org/wiki/Two's_complement + + Examples + -------- + >>> import numpy as np + >>> np.binary_repr(3) + '11' + >>> np.binary_repr(-3) + '-11' + >>> np.binary_repr(3, width=4) + '0011' + + The two's complement is returned when the input number is negative and + width is specified: + + >>> np.binary_repr(-3, width=3) + '101' + >>> np.binary_repr(-3, width=5) + '11101' + + """ + def err_if_insufficient(width, binwidth): + if width is not None and width < binwidth: + raise ValueError( + f"Insufficient bit {width=} provided for {binwidth=}" + ) + + # Ensure that num is a Python integer to avoid overflow or unwanted + # casts to floating point. + num = operator.index(num) + + if num == 0: + return '0' * (width or 1) + + elif num > 0: + binary = bin(num)[2:] + binwidth = len(binary) + outwidth = (binwidth if width is None + else builtins.max(binwidth, width)) + err_if_insufficient(width, binwidth) + return binary.zfill(outwidth) + + else: + if width is None: + return '-' + bin(-num)[2:] + + else: + poswidth = len(bin(-num)[2:]) + + # See gh-8679: remove extra digit + # for numbers at boundaries. + if 2**(poswidth - 1) == -num: + poswidth -= 1 + + twocomp = 2**(poswidth + 1) + num + binary = bin(twocomp)[2:] + binwidth = len(binary) + + outwidth = builtins.max(binwidth, width) + err_if_insufficient(width, binwidth) + return '1' * (outwidth - binwidth) + binary + + +@set_module('numpy') +def base_repr(number, base=2, padding=0): + """ + Return a string representation of a number in the given base system. + + Parameters + ---------- + number : int + The value to convert. Positive and negative values are handled. + base : int, optional + Convert `number` to the `base` number system. The valid range is 2-36, + the default value is 2. + padding : int, optional + Number of zeros padded on the left. Default is 0 (no padding). + + Returns + ------- + out : str + String representation of `number` in `base` system. + + See Also + -------- + binary_repr : Faster version of `base_repr` for base 2. + + Examples + -------- + >>> import numpy as np + >>> np.base_repr(5) + '101' + >>> np.base_repr(6, 5) + '11' + >>> np.base_repr(7, base=5, padding=3) + '00012' + + >>> np.base_repr(10, base=16) + 'A' + >>> np.base_repr(32, base=16) + '20' + + """ + digits = '0123456789ABCDEFGHIJKLMNOPQRSTUVWXYZ' + if base > len(digits): + raise ValueError("Bases greater than 36 not handled in base_repr.") + elif base < 2: + raise ValueError("Bases less than 2 not handled in base_repr.") + + num = abs(int(number)) + res = [] + while num: + res.append(digits[num % base]) + num //= base + if padding: + res.append('0' * padding) + if number < 0: + res.append('-') + return ''.join(reversed(res or '0')) + + +# These are all essentially abbreviations +# These might wind up in a special abbreviations module + + +def _maketup(descr, val): + dt = dtype(descr) + # Place val in all scalar tuples: + fields = dt.fields + if fields is None: + return val + else: + res = [_maketup(fields[name][0], val) for name in dt.names] + return tuple(res) + + +@finalize_array_function_like +@set_module('numpy') +def identity(n, dtype=None, *, like=None): + """ + Return the identity array. + + The identity array is a square array with ones on + the main diagonal. + + Parameters + ---------- + n : int + Number of rows (and columns) in `n` x `n` output. + dtype : data-type, optional + Data-type of the output. Defaults to ``float``. + ${ARRAY_FUNCTION_LIKE} + + .. versionadded:: 1.20.0 + + Returns + ------- + out : ndarray + `n` x `n` array with its main diagonal set to one, + and all other elements 0. + + Examples + -------- + >>> import numpy as np + >>> np.identity(3) + array([[1., 0., 0.], + [0., 1., 0.], + [0., 0., 1.]]) + + """ + if like is not None: + return _identity_with_like(like, n, dtype=dtype) + + from numpy import eye + return eye(n, dtype=dtype, like=like) + + +_identity_with_like = array_function_dispatch()(identity) + + +def _allclose_dispatcher(a, b, rtol=None, atol=None, equal_nan=None): + return (a, b, rtol, atol) + + +@array_function_dispatch(_allclose_dispatcher) +def allclose(a, b, rtol=1.e-5, atol=1.e-8, equal_nan=False): + """ + Returns True if two arrays are element-wise equal within a tolerance. + + The tolerance values are positive, typically very small numbers. The + relative difference (`rtol` * abs(`b`)) and the absolute difference + `atol` are added together to compare against the absolute difference + between `a` and `b`. + + .. warning:: The default `atol` is not appropriate for comparing numbers + with magnitudes much smaller than one (see Notes). + + NaNs are treated as equal if they are in the same place and if + ``equal_nan=True``. Infs are treated as equal if they are in the same + place and of the same sign in both arrays. + + Parameters + ---------- + a, b : array_like + Input arrays to compare. + rtol : array_like + The relative tolerance parameter (see Notes). + atol : array_like + The absolute tolerance parameter (see Notes). + equal_nan : bool + Whether to compare NaN's as equal. If True, NaN's in `a` will be + considered equal to NaN's in `b` in the output array. + + Returns + ------- + allclose : bool + Returns True if the two arrays are equal within the given + tolerance; False otherwise. + + See Also + -------- + isclose, all, any, equal + + Notes + ----- + If the following equation is element-wise True, then allclose returns + True.:: + + absolute(a - b) <= (atol + rtol * absolute(b)) + + The above equation is not symmetric in `a` and `b`, so that + ``allclose(a, b)`` might be different from ``allclose(b, a)`` in + some rare cases. + + The default value of `atol` is not appropriate when the reference value + `b` has magnitude smaller than one. For example, it is unlikely that + ``a = 1e-9`` and ``b = 2e-9`` should be considered "close", yet + ``allclose(1e-9, 2e-9)`` is ``True`` with default settings. Be sure + to select `atol` for the use case at hand, especially for defining the + threshold below which a non-zero value in `a` will be considered "close" + to a very small or zero value in `b`. + + The comparison of `a` and `b` uses standard broadcasting, which + means that `a` and `b` need not have the same shape in order for + ``allclose(a, b)`` to evaluate to True. The same is true for + `equal` but not `array_equal`. + + `allclose` is not defined for non-numeric data types. + `bool` is considered a numeric data-type for this purpose. + + Examples + -------- + >>> import numpy as np + >>> np.allclose([1e10,1e-7], [1.00001e10,1e-8]) + False + + >>> np.allclose([1e10,1e-8], [1.00001e10,1e-9]) + True + + >>> np.allclose([1e10,1e-8], [1.0001e10,1e-9]) + False + + >>> np.allclose([1.0, np.nan], [1.0, np.nan]) + False + + >>> np.allclose([1.0, np.nan], [1.0, np.nan], equal_nan=True) + True + + + """ + res = all(isclose(a, b, rtol=rtol, atol=atol, equal_nan=equal_nan)) + return builtins.bool(res) + + +def _isclose_dispatcher(a, b, rtol=None, atol=None, equal_nan=None): + return (a, b, rtol, atol) + + +@array_function_dispatch(_isclose_dispatcher) +def isclose(a, b, rtol=1.e-5, atol=1.e-8, equal_nan=False): + """ + Returns a boolean array where two arrays are element-wise equal within a + tolerance. + + The tolerance values are positive, typically very small numbers. The + relative difference (`rtol` * abs(`b`)) and the absolute difference + `atol` are added together to compare against the absolute difference + between `a` and `b`. + + .. warning:: The default `atol` is not appropriate for comparing numbers + with magnitudes much smaller than one (see Notes). + + Parameters + ---------- + a, b : array_like + Input arrays to compare. + rtol : array_like + The relative tolerance parameter (see Notes). + atol : array_like + The absolute tolerance parameter (see Notes). + equal_nan : bool + Whether to compare NaN's as equal. If True, NaN's in `a` will be + considered equal to NaN's in `b` in the output array. + + Returns + ------- + y : array_like + Returns a boolean array of where `a` and `b` are equal within the + given tolerance. If both `a` and `b` are scalars, returns a single + boolean value. + + See Also + -------- + allclose + math.isclose + + Notes + ----- + For finite values, isclose uses the following equation to test whether + two floating point values are equivalent.:: + + absolute(a - b) <= (atol + rtol * absolute(b)) + + Unlike the built-in `math.isclose`, the above equation is not symmetric + in `a` and `b` -- it assumes `b` is the reference value -- so that + `isclose(a, b)` might be different from `isclose(b, a)`. + + The default value of `atol` is not appropriate when the reference value + `b` has magnitude smaller than one. For example, it is unlikely that + ``a = 1e-9`` and ``b = 2e-9`` should be considered "close", yet + ``isclose(1e-9, 2e-9)`` is ``True`` with default settings. Be sure + to select `atol` for the use case at hand, especially for defining the + threshold below which a non-zero value in `a` will be considered "close" + to a very small or zero value in `b`. + + `isclose` is not defined for non-numeric data types. + :class:`bool` is considered a numeric data-type for this purpose. + + Examples + -------- + >>> import numpy as np + >>> np.isclose([1e10,1e-7], [1.00001e10,1e-8]) + array([ True, False]) + + >>> np.isclose([1e10,1e-8], [1.00001e10,1e-9]) + array([ True, True]) + + >>> np.isclose([1e10,1e-8], [1.0001e10,1e-9]) + array([False, True]) + + >>> np.isclose([1.0, np.nan], [1.0, np.nan]) + array([ True, False]) + + >>> np.isclose([1.0, np.nan], [1.0, np.nan], equal_nan=True) + array([ True, True]) + + >>> np.isclose([1e-8, 1e-7], [0.0, 0.0]) + array([ True, False]) + + >>> np.isclose([1e-100, 1e-7], [0.0, 0.0], atol=0.0) + array([False, False]) + + >>> np.isclose([1e-10, 1e-10], [1e-20, 0.0]) + array([ True, True]) + + >>> np.isclose([1e-10, 1e-10], [1e-20, 0.999999e-10], atol=0.0) + array([False, True]) + + """ + # Turn all but python scalars into arrays. + x, y, atol, rtol = ( + a if isinstance(a, (int, float, complex)) else asanyarray(a) + for a in (a, b, atol, rtol)) + + # Make sure y is an inexact type to avoid bad behavior on abs(MIN_INT). + # This will cause casting of x later. Also, make sure to allow subclasses + # (e.g., for numpy.ma). + # NOTE: We explicitly allow timedelta, which used to work. This could + # possibly be deprecated. See also gh-18286. + # timedelta works if `atol` is an integer or also a timedelta. + # Although, the default tolerances are unlikely to be useful + if (dtype := getattr(y, "dtype", None)) is not None and dtype.kind != "m": + dt = multiarray.result_type(y, 1.) + y = asanyarray(y, dtype=dt) + elif isinstance(y, int): + y = float(y) + + with errstate(invalid='ignore'): + result = (less_equal(abs(x-y), atol + rtol * abs(y)) + & isfinite(y) + | (x == y)) + if equal_nan: + result |= isnan(x) & isnan(y) + + return result[()] # Flatten 0d arrays to scalars + + +def _array_equal_dispatcher(a1, a2, equal_nan=None): + return (a1, a2) + + +_no_nan_types = { + # should use np.dtype.BoolDType, but as of writing + # that fails the reloading test. + type(dtype(nt.bool)), + type(dtype(nt.int8)), + type(dtype(nt.int16)), + type(dtype(nt.int32)), + type(dtype(nt.int64)), +} + + +def _dtype_cannot_hold_nan(dtype): + return type(dtype) in _no_nan_types + + +@array_function_dispatch(_array_equal_dispatcher) +def array_equal(a1, a2, equal_nan=False): + """ + True if two arrays have the same shape and elements, False otherwise. + + Parameters + ---------- + a1, a2 : array_like + Input arrays. + equal_nan : bool + Whether to compare NaN's as equal. If the dtype of a1 and a2 is + complex, values will be considered equal if either the real or the + imaginary component of a given value is ``nan``. + + Returns + ------- + b : bool + Returns True if the arrays are equal. + + See Also + -------- + allclose: Returns True if two arrays are element-wise equal within a + tolerance. + array_equiv: Returns True if input arrays are shape consistent and all + elements equal. + + Examples + -------- + >>> import numpy as np + + >>> np.array_equal([1, 2], [1, 2]) + True + + >>> np.array_equal(np.array([1, 2]), np.array([1, 2])) + True + + >>> np.array_equal([1, 2], [1, 2, 3]) + False + + >>> np.array_equal([1, 2], [1, 4]) + False + + >>> a = np.array([1, np.nan]) + >>> np.array_equal(a, a) + False + + >>> np.array_equal(a, a, equal_nan=True) + True + + When ``equal_nan`` is True, complex values with nan components are + considered equal if either the real *or* the imaginary components are nan. + + >>> a = np.array([1 + 1j]) + >>> b = a.copy() + >>> a.real = np.nan + >>> b.imag = np.nan + >>> np.array_equal(a, b, equal_nan=True) + True + """ + try: + a1, a2 = asarray(a1), asarray(a2) + except Exception: + return False + if a1.shape != a2.shape: + return False + if not equal_nan: + return builtins.bool((asanyarray(a1 == a2)).all()) + + if a1 is a2: + # nan will compare equal so an array will compare equal to itself. + return True + + cannot_have_nan = (_dtype_cannot_hold_nan(a1.dtype) + and _dtype_cannot_hold_nan(a2.dtype)) + if cannot_have_nan: + return builtins.bool(asarray(a1 == a2).all()) + + # Handling NaN values if equal_nan is True + a1nan, a2nan = isnan(a1), isnan(a2) + # NaN's occur at different locations + if not (a1nan == a2nan).all(): + return False + # Shapes of a1, a2 and masks are guaranteed to be consistent by this point + return builtins.bool((a1[~a1nan] == a2[~a1nan]).all()) + + +def _array_equiv_dispatcher(a1, a2): + return (a1, a2) + + +@array_function_dispatch(_array_equiv_dispatcher) +def array_equiv(a1, a2): + """ + Returns True if input arrays are shape consistent and all elements equal. + + Shape consistent means they are either the same shape, or one input array + can be broadcasted to create the same shape as the other one. + + Parameters + ---------- + a1, a2 : array_like + Input arrays. + + Returns + ------- + out : bool + True if equivalent, False otherwise. + + Examples + -------- + >>> import numpy as np + >>> np.array_equiv([1, 2], [1, 2]) + True + >>> np.array_equiv([1, 2], [1, 3]) + False + + Showing the shape equivalence: + + >>> np.array_equiv([1, 2], [[1, 2], [1, 2]]) + True + >>> np.array_equiv([1, 2], [[1, 2, 1, 2], [1, 2, 1, 2]]) + False + + >>> np.array_equiv([1, 2], [[1, 2], [1, 3]]) + False + + """ + try: + a1, a2 = asarray(a1), asarray(a2) + except Exception: + return False + try: + multiarray.broadcast(a1, a2) + except Exception: + return False + + return builtins.bool(asanyarray(a1 == a2).all()) + + +def _astype_dispatcher(x, dtype, /, *, copy=None, device=None): + return (x, dtype) + + +@array_function_dispatch(_astype_dispatcher) +def astype(x, dtype, /, *, copy=True, device=None): + """ + Copies an array to a specified data type. + + This function is an Array API compatible alternative to + `numpy.ndarray.astype`. + + Parameters + ---------- + x : ndarray + Input NumPy array to cast. ``array_likes`` are explicitly not + supported here. + dtype : dtype + Data type of the result. + copy : bool, optional + Specifies whether to copy an array when the specified dtype matches + the data type of the input array ``x``. If ``True``, a newly allocated + array must always be returned. If ``False`` and the specified dtype + matches the data type of the input array, the input array must be + returned; otherwise, a newly allocated array must be returned. + Defaults to ``True``. + device : str, optional + The device on which to place the returned array. Default: None. + For Array-API interoperability only, so must be ``"cpu"`` if passed. + + .. versionadded:: 2.1.0 + + Returns + ------- + out : ndarray + An array having the specified data type. + + See Also + -------- + ndarray.astype + + Examples + -------- + >>> import numpy as np + >>> arr = np.array([1, 2, 3]); arr + array([1, 2, 3]) + >>> np.astype(arr, np.float64) + array([1., 2., 3.]) + + Non-copy case: + + >>> arr = np.array([1, 2, 3]) + >>> arr_noncpy = np.astype(arr, arr.dtype, copy=False) + >>> np.shares_memory(arr, arr_noncpy) + True + + """ + if not (isinstance(x, np.ndarray) or isscalar(x)): + raise TypeError( + "Input should be a NumPy array or scalar. " + f"It is a {type(x)} instead." + ) + if device is not None and device != "cpu": + raise ValueError( + 'Device not understood. Only "cpu" is allowed, but received:' + f' {device}' + ) + return x.astype(dtype, copy=copy) + + +inf = PINF +nan = NAN +False_ = nt.bool(False) +True_ = nt.bool(True) + + +def extend_all(module): + existing = set(__all__) + mall = module.__all__ + for a in mall: + if a not in existing: + __all__.append(a) + + +from .umath import * +from .numerictypes import * +from . import fromnumeric +from .fromnumeric import * +from . import arrayprint +from .arrayprint import * +from . import _asarray +from ._asarray import * +from . import _ufunc_config +from ._ufunc_config import * +extend_all(fromnumeric) +extend_all(umath) +extend_all(numerictypes) +extend_all(arrayprint) +extend_all(_asarray) +extend_all(_ufunc_config) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.pyi new file mode 100644 index 0000000000000000000000000000000000000000..23e8a95878bbb9b1e677bc4272f89b74e0ed490f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numeric.pyi @@ -0,0 +1,896 @@ +from collections.abc import Callable, Sequence +from typing import ( + Any, + Final, + TypeAlias, + overload, + TypeVar, + Literal as L, + SupportsAbs, + SupportsIndex, + NoReturn, + TypeGuard, +) +from typing_extensions import Unpack + +import numpy as np +from numpy import ( + # re-exports + bitwise_not, + False_, + True_, + broadcast, + dtype, + flatiter, + from_dlpack, + inf, + little_endian, + matmul, + vecdot, + nan, + ndarray, + nditer, + newaxis, + ufunc, + + # other + generic, + unsignedinteger, + signedinteger, + floating, + complexfloating, + int_, + intp, + float64, + timedelta64, + object_, + _AnyShapeType, + _OrderKACF, + _OrderCF, +) +from .fromnumeric import ( + all as all, + any as any, + argpartition as argpartition, + matrix_transpose as matrix_transpose, + mean as mean, +) +from .multiarray import ( + # re-exports + arange, + array, + asarray, + asanyarray, + ascontiguousarray, + asfortranarray, + can_cast, + concatenate, + copyto, + dot, + empty, + empty_like, + frombuffer, + fromfile, + fromiter, + fromstring, + inner, + lexsort, + may_share_memory, + min_scalar_type, + nested_iters, + putmask, + promote_types, + result_type, + shares_memory, + vdot, + where, + zeros, + + # other + _Array, + _ConstructorEmpty, + _KwargsEmpty, +) + +from numpy._typing import ( + ArrayLike, + NDArray, + DTypeLike, + _SupportsDType, + _ShapeLike, + _DTypeLike, + _ArrayLike, + _SupportsArrayFunc, + _ScalarLike_co, + _ArrayLikeBool_co, + _ArrayLikeUInt_co, + _ArrayLikeInt_co, + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, + _ArrayLikeTD64_co, + _ArrayLikeObject_co, + _ArrayLikeUnknown, + _NestedSequence, +) + +__all__ = [ + "newaxis", + "ndarray", + "flatiter", + "nditer", + "nested_iters", + "ufunc", + "arange", + "array", + "asarray", + "asanyarray", + "ascontiguousarray", + "asfortranarray", + "zeros", + "count_nonzero", + "empty", + "broadcast", + "dtype", + "fromstring", + "fromfile", + "frombuffer", + "from_dlpack", + "where", + "argwhere", + "copyto", + "concatenate", + "lexsort", + "astype", + "can_cast", + "promote_types", + "min_scalar_type", + "result_type", + "isfortran", + "empty_like", + "zeros_like", + "ones_like", + "correlate", + "convolve", + "inner", + "dot", + "outer", + "vdot", + "roll", + "rollaxis", + "moveaxis", + "cross", + "tensordot", + "little_endian", + "fromiter", + "array_equal", + "array_equiv", + "indices", + "fromfunction", + "isclose", + "isscalar", + "binary_repr", + "base_repr", + "ones", + "identity", + "allclose", + "putmask", + "flatnonzero", + "inf", + "nan", + "False_", + "True_", + "bitwise_not", + "full", + "full_like", + "matmul", + "vecdot", + "shares_memory", + "may_share_memory", +] + +_T = TypeVar("_T") +_SCT = TypeVar("_SCT", bound=generic) +_DType = TypeVar("_DType", bound=np.dtype[Any]) +_ArrayType = TypeVar("_ArrayType", bound=np.ndarray[Any, Any]) +_ShapeType = TypeVar("_ShapeType", bound=tuple[int, ...]) + +_CorrelateMode: TypeAlias = L["valid", "same", "full"] + +@overload +def zeros_like( + a: _ArrayType, + dtype: None = ..., + order: _OrderKACF = ..., + subok: L[True] = ..., + shape: None = ..., + *, + device: None | L["cpu"] = ..., +) -> _ArrayType: ... +@overload +def zeros_like( + a: _ArrayLike[_SCT], + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def zeros_like( + a: object, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... +@overload +def zeros_like( + a: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def zeros_like( + a: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... + +ones: Final[_ConstructorEmpty] + +@overload +def ones_like( + a: _ArrayType, + dtype: None = ..., + order: _OrderKACF = ..., + subok: L[True] = ..., + shape: None = ..., + *, + device: None | L["cpu"] = ..., +) -> _ArrayType: ... +@overload +def ones_like( + a: _ArrayLike[_SCT], + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def ones_like( + a: object, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... +@overload +def ones_like( + a: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def ones_like( + a: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... + +# TODO: Add overloads for bool, int, float, complex, str, bytes, and memoryview +# 1-D shape +@overload +def full( + shape: SupportsIndex, + fill_value: _SCT, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[tuple[int], _SCT]: ... +@overload +def full( + shape: SupportsIndex, + fill_value: Any, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> np.ndarray[tuple[int], _DType]: ... +@overload +def full( + shape: SupportsIndex, + fill_value: Any, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[tuple[int], _SCT]: ... +@overload +def full( + shape: SupportsIndex, + fill_value: Any, + dtype: None | DTypeLike = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[tuple[int], Any]: ... +# known shape +@overload +def full( + shape: _AnyShapeType, + fill_value: _SCT, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[_AnyShapeType, _SCT]: ... +@overload +def full( + shape: _AnyShapeType, + fill_value: Any, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> np.ndarray[_AnyShapeType, _DType]: ... +@overload +def full( + shape: _AnyShapeType, + fill_value: Any, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[_AnyShapeType, _SCT]: ... +@overload +def full( + shape: _AnyShapeType, + fill_value: Any, + dtype: None | DTypeLike = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> _Array[_AnyShapeType, Any]: ... +# unknown shape +@overload +def full( + shape: _ShapeLike, + fill_value: _SCT, + dtype: None = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> NDArray[_SCT]: ... +@overload +def full( + shape: _ShapeLike, + fill_value: Any, + dtype: _DType | _SupportsDType[_DType], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> np.ndarray[Any, _DType]: ... +@overload +def full( + shape: _ShapeLike, + fill_value: Any, + dtype: type[_SCT], + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> NDArray[_SCT]: ... +@overload +def full( + shape: _ShapeLike, + fill_value: Any, + dtype: None | DTypeLike = ..., + order: _OrderCF = ..., + **kwargs: Unpack[_KwargsEmpty], +) -> NDArray[Any]: ... + +@overload +def full_like( + a: _ArrayType, + fill_value: Any, + dtype: None = ..., + order: _OrderKACF = ..., + subok: L[True] = ..., + shape: None = ..., + *, + device: None | L["cpu"] = ..., +) -> _ArrayType: ... +@overload +def full_like( + a: _ArrayLike[_SCT], + fill_value: Any, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike = ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def full_like( + a: object, + fill_value: Any, + dtype: None = ..., + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... +@overload +def full_like( + a: Any, + fill_value: Any, + dtype: _DTypeLike[_SCT], + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[_SCT]: ... +@overload +def full_like( + a: Any, + fill_value: Any, + dtype: DTypeLike, + order: _OrderKACF = ..., + subok: bool = ..., + shape: None | _ShapeLike= ..., + *, + device: None | L["cpu"] = ..., +) -> NDArray[Any]: ... + +# +@overload +def count_nonzero(a: ArrayLike, axis: None = None, *, keepdims: L[False] = False) -> int: ... +@overload +def count_nonzero(a: _ScalarLike_co, axis: _ShapeLike | None = None, *, keepdims: L[True]) -> np.intp: ... +@overload +def count_nonzero( + a: NDArray[Any] | _NestedSequence[ArrayLike], axis: _ShapeLike | None = None, *, keepdims: L[True] +) -> NDArray[np.intp]: ... +@overload +def count_nonzero(a: ArrayLike, axis: _ShapeLike | None = None, *, keepdims: bool = False) -> Any: ... + +# +def isfortran(a: NDArray[Any] | generic) -> bool: ... + +def argwhere(a: ArrayLike) -> NDArray[intp]: ... + +def flatnonzero(a: ArrayLike) -> NDArray[intp]: ... + +@overload +def correlate( + a: _ArrayLikeUnknown, + v: _ArrayLikeUnknown, + mode: _CorrelateMode = ..., +) -> NDArray[Any]: ... +@overload +def correlate( + a: _ArrayLikeBool_co, + v: _ArrayLikeBool_co, + mode: _CorrelateMode = ..., +) -> NDArray[np.bool]: ... +@overload +def correlate( + a: _ArrayLikeUInt_co, + v: _ArrayLikeUInt_co, + mode: _CorrelateMode = ..., +) -> NDArray[unsignedinteger[Any]]: ... +@overload +def correlate( + a: _ArrayLikeInt_co, + v: _ArrayLikeInt_co, + mode: _CorrelateMode = ..., +) -> NDArray[signedinteger[Any]]: ... +@overload +def correlate( + a: _ArrayLikeFloat_co, + v: _ArrayLikeFloat_co, + mode: _CorrelateMode = ..., +) -> NDArray[floating[Any]]: ... +@overload +def correlate( + a: _ArrayLikeComplex_co, + v: _ArrayLikeComplex_co, + mode: _CorrelateMode = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def correlate( + a: _ArrayLikeTD64_co, + v: _ArrayLikeTD64_co, + mode: _CorrelateMode = ..., +) -> NDArray[timedelta64]: ... +@overload +def correlate( + a: _ArrayLikeObject_co, + v: _ArrayLikeObject_co, + mode: _CorrelateMode = ..., +) -> NDArray[object_]: ... + +@overload +def convolve( + a: _ArrayLikeUnknown, + v: _ArrayLikeUnknown, + mode: _CorrelateMode = ..., +) -> NDArray[Any]: ... +@overload +def convolve( + a: _ArrayLikeBool_co, + v: _ArrayLikeBool_co, + mode: _CorrelateMode = ..., +) -> NDArray[np.bool]: ... +@overload +def convolve( + a: _ArrayLikeUInt_co, + v: _ArrayLikeUInt_co, + mode: _CorrelateMode = ..., +) -> NDArray[unsignedinteger[Any]]: ... +@overload +def convolve( + a: _ArrayLikeInt_co, + v: _ArrayLikeInt_co, + mode: _CorrelateMode = ..., +) -> NDArray[signedinteger[Any]]: ... +@overload +def convolve( + a: _ArrayLikeFloat_co, + v: _ArrayLikeFloat_co, + mode: _CorrelateMode = ..., +) -> NDArray[floating[Any]]: ... +@overload +def convolve( + a: _ArrayLikeComplex_co, + v: _ArrayLikeComplex_co, + mode: _CorrelateMode = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def convolve( + a: _ArrayLikeTD64_co, + v: _ArrayLikeTD64_co, + mode: _CorrelateMode = ..., +) -> NDArray[timedelta64]: ... +@overload +def convolve( + a: _ArrayLikeObject_co, + v: _ArrayLikeObject_co, + mode: _CorrelateMode = ..., +) -> NDArray[object_]: ... + +@overload +def outer( + a: _ArrayLikeUnknown, + b: _ArrayLikeUnknown, + out: None = ..., +) -> NDArray[Any]: ... +@overload +def outer( + a: _ArrayLikeBool_co, + b: _ArrayLikeBool_co, + out: None = ..., +) -> NDArray[np.bool]: ... +@overload +def outer( + a: _ArrayLikeUInt_co, + b: _ArrayLikeUInt_co, + out: None = ..., +) -> NDArray[unsignedinteger[Any]]: ... +@overload +def outer( + a: _ArrayLikeInt_co, + b: _ArrayLikeInt_co, + out: None = ..., +) -> NDArray[signedinteger[Any]]: ... +@overload +def outer( + a: _ArrayLikeFloat_co, + b: _ArrayLikeFloat_co, + out: None = ..., +) -> NDArray[floating[Any]]: ... +@overload +def outer( + a: _ArrayLikeComplex_co, + b: _ArrayLikeComplex_co, + out: None = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def outer( + a: _ArrayLikeTD64_co, + b: _ArrayLikeTD64_co, + out: None = ..., +) -> NDArray[timedelta64]: ... +@overload +def outer( + a: _ArrayLikeObject_co, + b: _ArrayLikeObject_co, + out: None = ..., +) -> NDArray[object_]: ... +@overload +def outer( + a: _ArrayLikeComplex_co | _ArrayLikeTD64_co | _ArrayLikeObject_co, + b: _ArrayLikeComplex_co | _ArrayLikeTD64_co | _ArrayLikeObject_co, + out: _ArrayType, +) -> _ArrayType: ... + +@overload +def tensordot( + a: _ArrayLikeUnknown, + b: _ArrayLikeUnknown, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[Any]: ... +@overload +def tensordot( + a: _ArrayLikeBool_co, + b: _ArrayLikeBool_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[np.bool]: ... +@overload +def tensordot( + a: _ArrayLikeUInt_co, + b: _ArrayLikeUInt_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[unsignedinteger[Any]]: ... +@overload +def tensordot( + a: _ArrayLikeInt_co, + b: _ArrayLikeInt_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[signedinteger[Any]]: ... +@overload +def tensordot( + a: _ArrayLikeFloat_co, + b: _ArrayLikeFloat_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[floating[Any]]: ... +@overload +def tensordot( + a: _ArrayLikeComplex_co, + b: _ArrayLikeComplex_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def tensordot( + a: _ArrayLikeTD64_co, + b: _ArrayLikeTD64_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[timedelta64]: ... +@overload +def tensordot( + a: _ArrayLikeObject_co, + b: _ArrayLikeObject_co, + axes: int | tuple[_ShapeLike, _ShapeLike] = ..., +) -> NDArray[object_]: ... + +@overload +def roll( + a: _ArrayLike[_SCT], + shift: _ShapeLike, + axis: None | _ShapeLike = ..., +) -> NDArray[_SCT]: ... +@overload +def roll( + a: ArrayLike, + shift: _ShapeLike, + axis: None | _ShapeLike = ..., +) -> NDArray[Any]: ... + +def rollaxis( + a: NDArray[_SCT], + axis: int, + start: int = ..., +) -> NDArray[_SCT]: ... + +def moveaxis( + a: NDArray[_SCT], + source: _ShapeLike, + destination: _ShapeLike, +) -> NDArray[_SCT]: ... + +@overload +def cross( + a: _ArrayLikeUnknown, + b: _ArrayLikeUnknown, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[Any]: ... +@overload +def cross( + a: _ArrayLikeBool_co, + b: _ArrayLikeBool_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NoReturn: ... +@overload +def cross( + a: _ArrayLikeUInt_co, + b: _ArrayLikeUInt_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[unsignedinteger[Any]]: ... +@overload +def cross( + a: _ArrayLikeInt_co, + b: _ArrayLikeInt_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[signedinteger[Any]]: ... +@overload +def cross( + a: _ArrayLikeFloat_co, + b: _ArrayLikeFloat_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[floating[Any]]: ... +@overload +def cross( + a: _ArrayLikeComplex_co, + b: _ArrayLikeComplex_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[complexfloating[Any, Any]]: ... +@overload +def cross( + a: _ArrayLikeObject_co, + b: _ArrayLikeObject_co, + axisa: int = ..., + axisb: int = ..., + axisc: int = ..., + axis: None | int = ..., +) -> NDArray[object_]: ... + +@overload +def indices( + dimensions: Sequence[int], + dtype: type[int] = ..., + sparse: L[False] = ..., +) -> NDArray[int_]: ... +@overload +def indices( + dimensions: Sequence[int], + dtype: type[int] = ..., + sparse: L[True] = ..., +) -> tuple[NDArray[int_], ...]: ... +@overload +def indices( + dimensions: Sequence[int], + dtype: _DTypeLike[_SCT], + sparse: L[False] = ..., +) -> NDArray[_SCT]: ... +@overload +def indices( + dimensions: Sequence[int], + dtype: _DTypeLike[_SCT], + sparse: L[True], +) -> tuple[NDArray[_SCT], ...]: ... +@overload +def indices( + dimensions: Sequence[int], + dtype: DTypeLike, + sparse: L[False] = ..., +) -> NDArray[Any]: ... +@overload +def indices( + dimensions: Sequence[int], + dtype: DTypeLike, + sparse: L[True], +) -> tuple[NDArray[Any], ...]: ... + +def fromfunction( + function: Callable[..., _T], + shape: Sequence[int], + *, + dtype: DTypeLike = ..., + like: _SupportsArrayFunc = ..., + **kwargs: Any, +) -> _T: ... + +def isscalar(element: object) -> TypeGuard[ + generic | bool | int | float | complex | str | bytes | memoryview +]: ... + +def binary_repr(num: SupportsIndex, width: None | int = ...) -> str: ... + +def base_repr( + number: SupportsAbs[float], + base: float = ..., + padding: SupportsIndex = ..., +) -> str: ... + +@overload +def identity( + n: int, + dtype: None = ..., + *, + like: _SupportsArrayFunc = ..., +) -> NDArray[float64]: ... +@overload +def identity( + n: int, + dtype: _DTypeLike[_SCT], + *, + like: _SupportsArrayFunc = ..., +) -> NDArray[_SCT]: ... +@overload +def identity( + n: int, + dtype: DTypeLike, + *, + like: _SupportsArrayFunc = ..., +) -> NDArray[Any]: ... + +def allclose( + a: ArrayLike, + b: ArrayLike, + rtol: ArrayLike = ..., + atol: ArrayLike = ..., + equal_nan: bool = ..., +) -> bool: ... + +@overload +def isclose( + a: _ScalarLike_co, + b: _ScalarLike_co, + rtol: ArrayLike = ..., + atol: ArrayLike = ..., + equal_nan: bool = ..., +) -> np.bool: ... +@overload +def isclose( + a: ArrayLike, + b: ArrayLike, + rtol: ArrayLike = ..., + atol: ArrayLike = ..., + equal_nan: bool = ..., +) -> NDArray[np.bool]: ... + +def array_equal(a1: ArrayLike, a2: ArrayLike, equal_nan: bool = ...) -> bool: ... + +def array_equiv(a1: ArrayLike, a2: ArrayLike) -> bool: ... + +@overload +def astype( + x: ndarray[_ShapeType, dtype[Any]], + dtype: _DTypeLike[_SCT], + /, + *, + copy: bool = ..., + device: None | L["cpu"] = ..., +) -> ndarray[_ShapeType, dtype[_SCT]]: ... +@overload +def astype( + x: ndarray[_ShapeType, dtype[Any]], + dtype: DTypeLike, + /, + *, + copy: bool = ..., + device: None | L["cpu"] = ..., +) -> ndarray[_ShapeType, dtype[Any]]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.py new file mode 100644 index 0000000000000000000000000000000000000000..70bba5b9c515d47ca771b82ae6aaedd001b1c539 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.py @@ -0,0 +1,629 @@ +""" +numerictypes: Define the numeric type objects + +This module is designed so "from numerictypes import \\*" is safe. +Exported symbols include: + + Dictionary with all registered number types (including aliases): + sctypeDict + + Type objects (not all will be available, depends on platform): + see variable sctypes for which ones you have + + Bit-width names + + int8 int16 int32 int64 int128 + uint8 uint16 uint32 uint64 uint128 + float16 float32 float64 float96 float128 float256 + complex32 complex64 complex128 complex192 complex256 complex512 + datetime64 timedelta64 + + c-based names + + bool + + object_ + + void, str_ + + byte, ubyte, + short, ushort + intc, uintc, + intp, uintp, + int_, uint, + longlong, ulonglong, + + single, csingle, + double, cdouble, + longdouble, clongdouble, + + As part of the type-hierarchy: xx -- is bit-width + + generic + +-> bool (kind=b) + +-> number + | +-> integer + | | +-> signedinteger (intxx) (kind=i) + | | | byte + | | | short + | | | intc + | | | intp + | | | int_ + | | | longlong + | | \\-> unsignedinteger (uintxx) (kind=u) + | | ubyte + | | ushort + | | uintc + | | uintp + | | uint + | | ulonglong + | +-> inexact + | +-> floating (floatxx) (kind=f) + | | half + | | single + | | double + | | longdouble + | \\-> complexfloating (complexxx) (kind=c) + | csingle + | cdouble + | clongdouble + +-> flexible + | +-> character + | | bytes_ (kind=S) + | | str_ (kind=U) + | | + | \\-> void (kind=V) + \\-> object_ (not used much) (kind=O) + +""" +import numbers +import warnings + +from . import multiarray as ma +from .multiarray import ( + ndarray, dtype, datetime_data, datetime_as_string, + busday_offset, busday_count, is_busday, busdaycalendar + ) +from .._utils import set_module + +# we add more at the bottom +__all__ = [ + 'ScalarType', 'typecodes', 'issubdtype', 'datetime_data', + 'datetime_as_string', 'busday_offset', 'busday_count', + 'is_busday', 'busdaycalendar', 'isdtype' +] + +# we don't need all these imports, but we need to keep them for compatibility +# for users using np._core.numerictypes.UPPER_TABLE +from ._string_helpers import ( # noqa: F401 + english_lower, english_upper, english_capitalize, LOWER_TABLE, UPPER_TABLE +) + +from ._type_aliases import ( + sctypeDict, allTypes, sctypes +) +from ._dtype import _kind_name + +# we don't export these for import *, but we do want them accessible +# as numerictypes.bool, etc. +from builtins import bool, int, float, complex, object, str, bytes # noqa: F401, UP029 + + +# We use this later +generic = allTypes['generic'] + +genericTypeRank = ['bool', 'int8', 'uint8', 'int16', 'uint16', + 'int32', 'uint32', 'int64', 'uint64', 'int128', + 'uint128', 'float16', + 'float32', 'float64', 'float80', 'float96', 'float128', + 'float256', + 'complex32', 'complex64', 'complex128', 'complex160', + 'complex192', 'complex256', 'complex512', 'object'] + +@set_module('numpy') +def maximum_sctype(t): + """ + Return the scalar type of highest precision of the same kind as the input. + + .. deprecated:: 2.0 + Use an explicit dtype like int64 or float64 instead. + + Parameters + ---------- + t : dtype or dtype specifier + The input data type. This can be a `dtype` object or an object that + is convertible to a `dtype`. + + Returns + ------- + out : dtype + The highest precision data type of the same kind (`dtype.kind`) as `t`. + + See Also + -------- + obj2sctype, mintypecode, sctype2char + dtype + + Examples + -------- + >>> from numpy._core.numerictypes import maximum_sctype + >>> maximum_sctype(int) + + >>> maximum_sctype(np.uint8) + + >>> maximum_sctype(complex) + # may vary + + >>> maximum_sctype(str) + + + >>> maximum_sctype('i2') + + >>> maximum_sctype('f4') + # may vary + + """ + + # Deprecated in NumPy 2.0, 2023-07-11 + warnings.warn( + "`maximum_sctype` is deprecated. Use an explicit dtype like int64 " + "or float64 instead. (deprecated in NumPy 2.0)", + DeprecationWarning, + stacklevel=2 + ) + + g = obj2sctype(t) + if g is None: + return t + t = g + base = _kind_name(dtype(t)) + if base in sctypes: + return sctypes[base][-1] + else: + return t + + +@set_module('numpy') +def issctype(rep): + """ + Determines whether the given object represents a scalar data-type. + + Parameters + ---------- + rep : any + If `rep` is an instance of a scalar dtype, True is returned. If not, + False is returned. + + Returns + ------- + out : bool + Boolean result of check whether `rep` is a scalar dtype. + + See Also + -------- + issubsctype, issubdtype, obj2sctype, sctype2char + + Examples + -------- + >>> from numpy._core.numerictypes import issctype + >>> issctype(np.int32) + True + >>> issctype(list) + False + >>> issctype(1.1) + False + + Strings are also a scalar type: + + >>> issctype(np.dtype('str')) + True + + """ + if not isinstance(rep, (type, dtype)): + return False + try: + res = obj2sctype(rep) + if res and res != object_: + return True + else: + return False + except Exception: + return False + + +@set_module('numpy') +def obj2sctype(rep, default=None): + """ + Return the scalar dtype or NumPy equivalent of Python type of an object. + + Parameters + ---------- + rep : any + The object of which the type is returned. + default : any, optional + If given, this is returned for objects whose types can not be + determined. If not given, None is returned for those objects. + + Returns + ------- + dtype : dtype or Python type + The data type of `rep`. + + See Also + -------- + sctype2char, issctype, issubsctype, issubdtype + + Examples + -------- + >>> from numpy._core.numerictypes import obj2sctype + >>> obj2sctype(np.int32) + + >>> obj2sctype(np.array([1., 2.])) + + >>> obj2sctype(np.array([1.j])) + + + >>> obj2sctype(dict) + + >>> obj2sctype('string') + + >>> obj2sctype(1, default=list) + + + """ + # prevent abstract classes being upcast + if isinstance(rep, type) and issubclass(rep, generic): + return rep + # extract dtype from arrays + if isinstance(rep, ndarray): + return rep.dtype.type + # fall back on dtype to convert + try: + res = dtype(rep) + except Exception: + return default + else: + return res.type + + +@set_module('numpy') +def issubclass_(arg1, arg2): + """ + Determine if a class is a subclass of a second class. + + `issubclass_` is equivalent to the Python built-in ``issubclass``, + except that it returns False instead of raising a TypeError if one + of the arguments is not a class. + + Parameters + ---------- + arg1 : class + Input class. True is returned if `arg1` is a subclass of `arg2`. + arg2 : class or tuple of classes. + Input class. If a tuple of classes, True is returned if `arg1` is a + subclass of any of the tuple elements. + + Returns + ------- + out : bool + Whether `arg1` is a subclass of `arg2` or not. + + See Also + -------- + issubsctype, issubdtype, issctype + + Examples + -------- + >>> np.issubclass_(np.int32, int) + False + >>> np.issubclass_(np.int32, float) + False + >>> np.issubclass_(np.float64, float) + True + + """ + try: + return issubclass(arg1, arg2) + except TypeError: + return False + + +@set_module('numpy') +def issubsctype(arg1, arg2): + """ + Determine if the first argument is a subclass of the second argument. + + Parameters + ---------- + arg1, arg2 : dtype or dtype specifier + Data-types. + + Returns + ------- + out : bool + The result. + + See Also + -------- + issctype, issubdtype, obj2sctype + + Examples + -------- + >>> from numpy._core import issubsctype + >>> issubsctype('S8', str) + False + >>> issubsctype(np.array([1]), int) + True + >>> issubsctype(np.array([1]), float) + False + + """ + return issubclass(obj2sctype(arg1), obj2sctype(arg2)) + + +class _PreprocessDTypeError(Exception): + pass + + +def _preprocess_dtype(dtype): + """ + Preprocess dtype argument by: + 1. fetching type from a data type + 2. verifying that types are built-in NumPy dtypes + """ + if isinstance(dtype, ma.dtype): + dtype = dtype.type + if isinstance(dtype, ndarray) or dtype not in allTypes.values(): + raise _PreprocessDTypeError + return dtype + + +@set_module('numpy') +def isdtype(dtype, kind): + """ + Determine if a provided dtype is of a specified data type ``kind``. + + This function only supports built-in NumPy's data types. + Third-party dtypes are not yet supported. + + Parameters + ---------- + dtype : dtype + The input dtype. + kind : dtype or str or tuple of dtypes/strs. + dtype or dtype kind. Allowed dtype kinds are: + * ``'bool'`` : boolean kind + * ``'signed integer'`` : signed integer data types + * ``'unsigned integer'`` : unsigned integer data types + * ``'integral'`` : integer data types + * ``'real floating'`` : real-valued floating-point data types + * ``'complex floating'`` : complex floating-point data types + * ``'numeric'`` : numeric data types + + Returns + ------- + out : bool + + See Also + -------- + issubdtype + + Examples + -------- + >>> import numpy as np + >>> np.isdtype(np.float32, np.float64) + False + >>> np.isdtype(np.float32, "real floating") + True + >>> np.isdtype(np.complex128, ("real floating", "complex floating")) + True + + """ + try: + dtype = _preprocess_dtype(dtype) + except _PreprocessDTypeError: + raise TypeError( + "dtype argument must be a NumPy dtype, " + f"but it is a {type(dtype)}." + ) from None + + input_kinds = kind if isinstance(kind, tuple) else (kind,) + + processed_kinds = set() + + for kind in input_kinds: + if kind == "bool": + processed_kinds.add(allTypes["bool"]) + elif kind == "signed integer": + processed_kinds.update(sctypes["int"]) + elif kind == "unsigned integer": + processed_kinds.update(sctypes["uint"]) + elif kind == "integral": + processed_kinds.update(sctypes["int"] + sctypes["uint"]) + elif kind == "real floating": + processed_kinds.update(sctypes["float"]) + elif kind == "complex floating": + processed_kinds.update(sctypes["complex"]) + elif kind == "numeric": + processed_kinds.update( + sctypes["int"] + sctypes["uint"] + + sctypes["float"] + sctypes["complex"] + ) + elif isinstance(kind, str): + raise ValueError( + "kind argument is a string, but" + f" {kind!r} is not a known kind name." + ) + else: + try: + kind = _preprocess_dtype(kind) + except _PreprocessDTypeError: + raise TypeError( + "kind argument must be comprised of " + "NumPy dtypes or strings only, " + f"but is a {type(kind)}." + ) from None + processed_kinds.add(kind) + + return dtype in processed_kinds + + +@set_module('numpy') +def issubdtype(arg1, arg2): + r""" + Returns True if first argument is a typecode lower/equal in type hierarchy. + + This is like the builtin :func:`issubclass`, but for `dtype`\ s. + + Parameters + ---------- + arg1, arg2 : dtype_like + `dtype` or object coercible to one + + Returns + ------- + out : bool + + See Also + -------- + :ref:`arrays.scalars` : Overview of the numpy type hierarchy. + + Examples + -------- + `issubdtype` can be used to check the type of arrays: + + >>> ints = np.array([1, 2, 3], dtype=np.int32) + >>> np.issubdtype(ints.dtype, np.integer) + True + >>> np.issubdtype(ints.dtype, np.floating) + False + + >>> floats = np.array([1, 2, 3], dtype=np.float32) + >>> np.issubdtype(floats.dtype, np.integer) + False + >>> np.issubdtype(floats.dtype, np.floating) + True + + Similar types of different sizes are not subdtypes of each other: + + >>> np.issubdtype(np.float64, np.float32) + False + >>> np.issubdtype(np.float32, np.float64) + False + + but both are subtypes of `floating`: + + >>> np.issubdtype(np.float64, np.floating) + True + >>> np.issubdtype(np.float32, np.floating) + True + + For convenience, dtype-like objects are allowed too: + + >>> np.issubdtype('S1', np.bytes_) + True + >>> np.issubdtype('i4', np.signedinteger) + True + + """ + if not issubclass_(arg1, generic): + arg1 = dtype(arg1).type + if not issubclass_(arg2, generic): + arg2 = dtype(arg2).type + + return issubclass(arg1, arg2) + + +@set_module('numpy') +def sctype2char(sctype): + """ + Return the string representation of a scalar dtype. + + Parameters + ---------- + sctype : scalar dtype or object + If a scalar dtype, the corresponding string character is + returned. If an object, `sctype2char` tries to infer its scalar type + and then return the corresponding string character. + + Returns + ------- + typechar : str + The string character corresponding to the scalar type. + + Raises + ------ + ValueError + If `sctype` is an object for which the type can not be inferred. + + See Also + -------- + obj2sctype, issctype, issubsctype, mintypecode + + Examples + -------- + >>> from numpy._core.numerictypes import sctype2char + >>> for sctype in [np.int32, np.double, np.cdouble, np.bytes_, np.ndarray]: + ... print(sctype2char(sctype)) + l # may vary + d + D + S + O + + >>> x = np.array([1., 2-1.j]) + >>> sctype2char(x) + 'D' + >>> sctype2char(list) + 'O' + + """ + sctype = obj2sctype(sctype) + if sctype is None: + raise ValueError("unrecognized type") + if sctype not in sctypeDict.values(): + # for compatibility + raise KeyError(sctype) + return dtype(sctype).char + + +def _scalar_type_key(typ): + """A ``key`` function for `sorted`.""" + dt = dtype(typ) + return (dt.kind.lower(), dt.itemsize) + + +ScalarType = [int, float, complex, bool, bytes, str, memoryview] +ScalarType += sorted(set(sctypeDict.values()), key=_scalar_type_key) +ScalarType = tuple(ScalarType) + + +# Now add the types we've determined to this module +for key in allTypes: + globals()[key] = allTypes[key] + __all__.append(key) + +del key + +typecodes = {'Character': 'c', + 'Integer': 'bhilqnp', + 'UnsignedInteger': 'BHILQNP', + 'Float': 'efdg', + 'Complex': 'FDG', + 'AllInteger': 'bBhHiIlLqQnNpP', + 'AllFloat': 'efdgFDG', + 'Datetime': 'Mm', + 'All': '?bhilqnpBHILQNPefdgFDGSUVOMm'} + +# backwards compatibility --- deprecated name +# Formal deprecation: Numpy 1.20.0, 2020-10-19 (see numpy/__init__.py) +typeDict = sctypeDict + +def _register_types(): + numbers.Integral.register(integer) + numbers.Complex.register(inexact) + numbers.Real.register(floating) + numbers.Number.register(number) + + +_register_types() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.pyi new file mode 100644 index 0000000000000000000000000000000000000000..ace5913f0f84ddebecbec169d4585474be107bc4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/numerictypes.pyi @@ -0,0 +1,217 @@ +import builtins +from typing import ( + Any, + Literal as L, + TypedDict, + type_check_only, +) + +import numpy as np +from numpy import ( + dtype, + generic, + bool, + bool_, + uint8, + uint16, + uint32, + uint64, + ubyte, + ushort, + uintc, + ulong, + ulonglong, + uintp, + uint, + int8, + int16, + int32, + int64, + byte, + short, + intc, + long, + longlong, + intp, + int_, + float16, + float32, + float64, + half, + single, + double, + longdouble, + complex64, + complex128, + csingle, + cdouble, + clongdouble, + datetime64, + timedelta64, + object_, + str_, + bytes_, + void, + unsignedinteger, + character, + inexact, + number, + integer, + flexible, + complexfloating, + signedinteger, + floating, +) +from ._type_aliases import sctypeDict # noqa: F401 +from .multiarray import ( + busday_count, + busday_offset, + busdaycalendar, + datetime_as_string, + datetime_data, + is_busday, +) + +from numpy._typing import DTypeLike +from numpy._typing._extended_precision import ( + uint128, + uint256, + int128, + int256, + float80, + float96, + float128, + float256, + complex160, + complex192, + complex256, + complex512, +) + +__all__ = [ + "ScalarType", + "typecodes", + "issubdtype", + "datetime_data", + "datetime_as_string", + "busday_offset", + "busday_count", + "is_busday", + "busdaycalendar", + "isdtype", + "generic", + "unsignedinteger", + "character", + "inexact", + "number", + "integer", + "flexible", + "complexfloating", + "signedinteger", + "floating", + "bool", + "float16", + "float32", + "float64", + "longdouble", + "complex64", + "complex128", + "clongdouble", + "bytes_", + "str_", + "void", + "object_", + "datetime64", + "timedelta64", + "int8", + "byte", + "uint8", + "ubyte", + "int16", + "short", + "uint16", + "ushort", + "int32", + "intc", + "uint32", + "uintc", + "int64", + "long", + "uint64", + "ulong", + "longlong", + "ulonglong", + "intp", + "uintp", + "double", + "cdouble", + "single", + "csingle", + "half", + "bool_", + "int_", + "uint", + "uint128", + "uint256", + "int128", + "int256", + "float80", + "float96", + "float128", + "float256", + "complex160", + "complex192", + "complex256", + "complex512", +] + +@type_check_only +class _TypeCodes(TypedDict): + Character: L['c'] + Integer: L['bhilqnp'] + UnsignedInteger: L['BHILQNP'] + Float: L['efdg'] + Complex: L['FDG'] + AllInteger: L['bBhHiIlLqQnNpP'] + AllFloat: L['efdgFDG'] + Datetime: L['Mm'] + All: L['?bhilqnpBHILQNPefdgFDGSUVOMm'] + +def isdtype(dtype: dtype[Any] | type[Any], kind: DTypeLike | tuple[DTypeLike, ...]) -> builtins.bool: ... + +def issubdtype(arg1: DTypeLike, arg2: DTypeLike) -> builtins.bool: ... + +typecodes: _TypeCodes +ScalarType: tuple[ + type[int], + type[float], + type[complex], + type[builtins.bool], + type[bytes], + type[str], + type[memoryview], + type[np.bool], + type[csingle], + type[cdouble], + type[clongdouble], + type[half], + type[single], + type[double], + type[longdouble], + type[byte], + type[short], + type[intc], + type[long], + type[longlong], + type[timedelta64], + type[datetime64], + type[object_], + type[bytes_], + type[str_], + type[ubyte], + type[ushort], + type[uintc], + type[ulong], + type[ulonglong], + type[void], +] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.py new file mode 100644 index 0000000000000000000000000000000000000000..cb466408cd39a9d9b558d7da4a95849077f01832 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.py @@ -0,0 +1,181 @@ +"""Implementation of __array_function__ overrides from NEP-18.""" +import collections +import functools + +from .._utils import set_module +from .._utils._inspect import getargspec +from numpy._core._multiarray_umath import ( + add_docstring, _get_implementing_args, _ArrayFunctionDispatcher) + + +ARRAY_FUNCTIONS = set() + +array_function_like_doc = ( + """like : array_like, optional + Reference object to allow the creation of arrays which are not + NumPy arrays. If an array-like passed in as ``like`` supports + the ``__array_function__`` protocol, the result will be defined + by it. In this case, it ensures the creation of an array object + compatible with that passed in via this argument.""" +) + +def get_array_function_like_doc(public_api, docstring_template=""): + ARRAY_FUNCTIONS.add(public_api) + docstring = public_api.__doc__ or docstring_template + return docstring.replace("${ARRAY_FUNCTION_LIKE}", array_function_like_doc) + +def finalize_array_function_like(public_api): + public_api.__doc__ = get_array_function_like_doc(public_api) + return public_api + + +add_docstring( + _ArrayFunctionDispatcher, + """ + Class to wrap functions with checks for __array_function__ overrides. + + All arguments are required, and can only be passed by position. + + Parameters + ---------- + dispatcher : function or None + The dispatcher function that returns a single sequence-like object + of all arguments relevant. It must have the same signature (except + the default values) as the actual implementation. + If ``None``, this is a ``like=`` dispatcher and the + ``_ArrayFunctionDispatcher`` must be called with ``like`` as the + first (additional and positional) argument. + implementation : function + Function that implements the operation on NumPy arrays without + overrides. Arguments passed calling the ``_ArrayFunctionDispatcher`` + will be forwarded to this (and the ``dispatcher``) as if using + ``*args, **kwargs``. + + Attributes + ---------- + _implementation : function + The original implementation passed in. + """) + + +# exposed for testing purposes; used internally by _ArrayFunctionDispatcher +add_docstring( + _get_implementing_args, + """ + Collect arguments on which to call __array_function__. + + Parameters + ---------- + relevant_args : iterable of array-like + Iterable of possibly array-like arguments to check for + __array_function__ methods. + + Returns + ------- + Sequence of arguments with __array_function__ methods, in the order in + which they should be called. + """) + + +ArgSpec = collections.namedtuple('ArgSpec', 'args varargs keywords defaults') + + +def verify_matching_signatures(implementation, dispatcher): + """Verify that a dispatcher function has the right signature.""" + implementation_spec = ArgSpec(*getargspec(implementation)) + dispatcher_spec = ArgSpec(*getargspec(dispatcher)) + + if (implementation_spec.args != dispatcher_spec.args or + implementation_spec.varargs != dispatcher_spec.varargs or + implementation_spec.keywords != dispatcher_spec.keywords or + (bool(implementation_spec.defaults) != + bool(dispatcher_spec.defaults)) or + (implementation_spec.defaults is not None and + len(implementation_spec.defaults) != + len(dispatcher_spec.defaults))): + raise RuntimeError('implementation and dispatcher for %s have ' + 'different function signatures' % implementation) + + if implementation_spec.defaults is not None: + if dispatcher_spec.defaults != (None,) * len(dispatcher_spec.defaults): + raise RuntimeError('dispatcher functions can only use None for ' + 'default argument values') + + +def array_function_dispatch(dispatcher=None, module=None, verify=True, + docs_from_dispatcher=False): + """Decorator for adding dispatch with the __array_function__ protocol. + + See NEP-18 for example usage. + + Parameters + ---------- + dispatcher : callable or None + Function that when called like ``dispatcher(*args, **kwargs)`` with + arguments from the NumPy function call returns an iterable of + array-like arguments to check for ``__array_function__``. + + If `None`, the first argument is used as the single `like=` argument + and not passed on. A function implementing `like=` must call its + dispatcher with `like` as the first non-keyword argument. + module : str, optional + __module__ attribute to set on new function, e.g., ``module='numpy'``. + By default, module is copied from the decorated function. + verify : bool, optional + If True, verify the that the signature of the dispatcher and decorated + function signatures match exactly: all required and optional arguments + should appear in order with the same names, but the default values for + all optional arguments should be ``None``. Only disable verification + if the dispatcher's signature needs to deviate for some particular + reason, e.g., because the function has a signature like + ``func(*args, **kwargs)``. + docs_from_dispatcher : bool, optional + If True, copy docs from the dispatcher function onto the dispatched + function, rather than from the implementation. This is useful for + functions defined in C, which otherwise don't have docstrings. + + Returns + ------- + Function suitable for decorating the implementation of a NumPy function. + + """ + def decorator(implementation): + if verify: + if dispatcher is not None: + verify_matching_signatures(implementation, dispatcher) + else: + # Using __code__ directly similar to verify_matching_signature + co = implementation.__code__ + last_arg = co.co_argcount + co.co_kwonlyargcount - 1 + last_arg = co.co_varnames[last_arg] + if last_arg != "like" or co.co_kwonlyargcount == 0: + raise RuntimeError( + "__array_function__ expects `like=` to be the last " + "argument and a keyword-only argument. " + f"{implementation} does not seem to comply.") + + if docs_from_dispatcher: + add_docstring(implementation, dispatcher.__doc__) + + public_api = _ArrayFunctionDispatcher(dispatcher, implementation) + public_api = functools.wraps(implementation)(public_api) + + if module is not None: + public_api.__module__ = module + + ARRAY_FUNCTIONS.add(public_api) + + return public_api + + return decorator + + +def array_function_from_dispatcher( + implementation, module=None, verify=True, docs_from_dispatcher=True): + """Like array_function_dispatcher, but with function arguments flipped.""" + + def decorator(dispatcher): + return array_function_dispatch( + dispatcher, module, verify=verify, + docs_from_dispatcher=docs_from_dispatcher)(implementation) + return decorator diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.pyi new file mode 100644 index 0000000000000000000000000000000000000000..9babbcc26a0b2a52a5d42fd49aacf186b5e59c57 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/overrides.pyi @@ -0,0 +1,50 @@ +from collections.abc import Callable, Iterable +from typing import Any, Final, NamedTuple + +from typing_extensions import ParamSpec, TypeVar + +from numpy._typing import _SupportsArrayFunc + +_T = TypeVar("_T") +_Tss = ParamSpec("_Tss") +_FuncT = TypeVar("_FuncT", bound=Callable[..., object]) + +### + +ARRAY_FUNCTIONS: set[Callable[..., Any]] = ... +array_function_like_doc: Final[str] = ... + +class ArgSpec(NamedTuple): + args: list[str] + varargs: str | None + keywords: str | None + defaults: tuple[Any, ...] + +def get_array_function_like_doc(public_api: Callable[..., Any], docstring_template: str = "") -> str: ... +def finalize_array_function_like(public_api: _FuncT) -> _FuncT: ... + +# +def verify_matching_signatures( + implementation: Callable[_Tss, object], + dispatcher: Callable[_Tss, Iterable[_SupportsArrayFunc]], +) -> None: ... + +# NOTE: This actually returns a `_ArrayFunctionDispatcher` callable wrapper object, with +# the original wrapped callable stored in the `._implementation` attribute. It checks +# for any `__array_function__` of the values of specific arguments that the dispatcher +# specifies. Since the dispatcher only returns an iterable of passed array-like args, +# this overridable behaviour is impossible to annotate. +def array_function_dispatch( + dispatcher: Callable[_Tss, Iterable[_SupportsArrayFunc]] | None = None, + module: str | None = None, + verify: bool = True, + docs_from_dispatcher: bool = False, +) -> Callable[[_FuncT], _FuncT]: ... + +# +def array_function_from_dispatcher( + implementation: Callable[_Tss, _T], + module: str | None = None, + verify: bool = True, + docs_from_dispatcher: bool = True, +) -> Callable[[Callable[_Tss, Iterable[_SupportsArrayFunc]]], Callable[_Tss, _T]]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.py new file mode 100644 index 0000000000000000000000000000000000000000..7ac93c2290e0e37ffaee3a0dddb32a713a978881 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.py @@ -0,0 +1,32 @@ +""" +Stores and defines the low-level format_options context variable. + +This is defined in its own file outside of the arrayprint module +so we can import it from C while initializing the multiarray +C module during import without introducing circular dependencies. +""" + +import sys +from contextvars import ContextVar + +__all__ = ["format_options"] + +default_format_options_dict = { + "edgeitems": 3, # repr N leading and trailing items of each dimension + "threshold": 1000, # total items > triggers array summarization + "floatmode": "maxprec", + "precision": 8, # precision of floating point representations + "suppress": False, # suppress printing small floating values in exp format + "linewidth": 75, + "nanstr": "nan", + "infstr": "inf", + "sign": "-", + "formatter": None, + # Internally stored as an int to simplify comparisons; converted from/to + # str/False on the way in/out. + 'legacy': sys.maxsize, + 'override_repr': None, +} + +format_options = ContextVar( + "format_options", default=default_format_options_dict.copy()) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.pyi new file mode 100644 index 0000000000000000000000000000000000000000..bd7c7b40692d4afb0cb2ab6a8f48b0065cc9c127 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/printoptions.pyi @@ -0,0 +1,28 @@ +from collections.abc import Callable +from contextvars import ContextVar +from typing import Any, Final, TypedDict + +from .arrayprint import _FormatDict + +__all__ = ["format_options"] + +### + +class _FormatOptionsDict(TypedDict): + edgeitems: int + threshold: int + floatmode: str + precision: int + suppress: bool + linewidth: int + nanstr: str + infstr: str + sign: str + formatter: _FormatDict | None + legacy: int + override_repr: Callable[[Any], str] | None + +### + +default_format_options_dict: Final[_FormatOptionsDict] = ... +format_options: ContextVar[_FormatOptionsDict] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/records.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/records.py new file mode 100644 index 0000000000000000000000000000000000000000..90993badc141e05e41556d2f2f0dbef7944d410d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/records.py @@ -0,0 +1,1091 @@ +""" +This module contains a set of functions for record arrays. +""" +import os +import warnings +from collections import Counter +from contextlib import nullcontext + +from .._utils import set_module +from . import numeric as sb +from . import numerictypes as nt +from .arrayprint import _get_legacy_print_mode + +# All of the functions allow formats to be a dtype +__all__ = [ + 'record', 'recarray', 'format_parser', 'fromarrays', 'fromrecords', + 'fromstring', 'fromfile', 'array', 'find_duplicate', +] + + +ndarray = sb.ndarray + +_byteorderconv = {'b': '>', + 'l': '<', + 'n': '=', + 'B': '>', + 'L': '<', + 'N': '=', + 'S': 's', + 's': 's', + '>': '>', + '<': '<', + '=': '=', + '|': '|', + 'I': '|', + 'i': '|'} + +# formats regular expression +# allows multidimensional spec with a tuple syntax in front +# of the letter code '(2,3)f4' and ' ( 2 , 3 ) f4 ' +# are equally allowed + +numfmt = nt.sctypeDict + + +@set_module('numpy.rec') +def find_duplicate(list): + """Find duplication in a list, return a list of duplicated elements""" + return [ + item + for item, counts in Counter(list).items() + if counts > 1 + ] + + +@set_module('numpy.rec') +class format_parser: + """ + Class to convert formats, names, titles description to a dtype. + + After constructing the format_parser object, the dtype attribute is + the converted data-type: + ``dtype = format_parser(formats, names, titles).dtype`` + + Attributes + ---------- + dtype : dtype + The converted data-type. + + Parameters + ---------- + formats : str or list of str + The format description, either specified as a string with + comma-separated format descriptions in the form ``'f8, i4, S5'``, or + a list of format description strings in the form + ``['f8', 'i4', 'S5']``. + names : str or list/tuple of str + The field names, either specified as a comma-separated string in the + form ``'col1, col2, col3'``, or as a list or tuple of strings in the + form ``['col1', 'col2', 'col3']``. + An empty list can be used, in that case default field names + ('f0', 'f1', ...) are used. + titles : sequence + Sequence of title strings. An empty list can be used to leave titles + out. + aligned : bool, optional + If True, align the fields by padding as the C-compiler would. + Default is False. + byteorder : str, optional + If specified, all the fields will be changed to the + provided byte-order. Otherwise, the default byte-order is + used. For all available string specifiers, see `dtype.newbyteorder`. + + See Also + -------- + numpy.dtype, numpy.typename + + Examples + -------- + >>> import numpy as np + >>> np.rec.format_parser(['>> np.rec.format_parser(['f8', 'i4', 'a5'], ['col1', 'col2', 'col3'], + ... []).dtype + dtype([('col1', '>> np.rec.format_parser([' len(titles): + self._titles += [None] * (self._nfields - len(titles)) + + def _createdtype(self, byteorder): + dtype = sb.dtype({ + 'names': self._names, + 'formats': self._f_formats, + 'offsets': self._offsets, + 'titles': self._titles, + }) + if byteorder is not None: + byteorder = _byteorderconv[byteorder[0]] + dtype = dtype.newbyteorder(byteorder) + + self.dtype = dtype + + +class record(nt.void): + """A data-type scalar that allows field access as attribute lookup. + """ + + # manually set name and module so that this class's type shows up + # as numpy.record when printed + __name__ = 'record' + __module__ = 'numpy' + + def __repr__(self): + if _get_legacy_print_mode() <= 113: + return self.__str__() + return super().__repr__() + + def __str__(self): + if _get_legacy_print_mode() <= 113: + return str(self.item()) + return super().__str__() + + def __getattribute__(self, attr): + if attr in ('setfield', 'getfield', 'dtype'): + return nt.void.__getattribute__(self, attr) + try: + return nt.void.__getattribute__(self, attr) + except AttributeError: + pass + fielddict = nt.void.__getattribute__(self, 'dtype').fields + res = fielddict.get(attr, None) + if res: + obj = self.getfield(*res[:2]) + # if it has fields return a record, + # otherwise return the object + try: + dt = obj.dtype + except AttributeError: + #happens if field is Object type + return obj + if dt.names is not None: + return obj.view((self.__class__, obj.dtype)) + return obj + else: + raise AttributeError("'record' object has no " + "attribute '%s'" % attr) + + def __setattr__(self, attr, val): + if attr in ('setfield', 'getfield', 'dtype'): + raise AttributeError("Cannot set '%s' attribute" % attr) + fielddict = nt.void.__getattribute__(self, 'dtype').fields + res = fielddict.get(attr, None) + if res: + return self.setfield(val, *res[:2]) + else: + if getattr(self, attr, None): + return nt.void.__setattr__(self, attr, val) + else: + raise AttributeError("'record' object has no " + "attribute '%s'" % attr) + + def __getitem__(self, indx): + obj = nt.void.__getitem__(self, indx) + + # copy behavior of record.__getattribute__, + if isinstance(obj, nt.void) and obj.dtype.names is not None: + return obj.view((self.__class__, obj.dtype)) + else: + # return a single element + return obj + + def pprint(self): + """Pretty-print all fields.""" + # pretty-print all fields + names = self.dtype.names + maxlen = max(len(name) for name in names) + fmt = '%% %ds: %%s' % maxlen + rows = [fmt % (name, getattr(self, name)) for name in names] + return "\n".join(rows) + +# The recarray is almost identical to a standard array (which supports +# named fields already) The biggest difference is that it can use +# attribute-lookup to find the fields and it is constructed using +# a record. + +# If byteorder is given it forces a particular byteorder on all +# the fields (and any subfields) + + +@set_module("numpy.rec") +class recarray(ndarray): + """Construct an ndarray that allows field access using attributes. + + Arrays may have a data-types containing fields, analogous + to columns in a spread sheet. An example is ``[(x, int), (y, float)]``, + where each entry in the array is a pair of ``(int, float)``. Normally, + these attributes are accessed using dictionary lookups such as ``arr['x']`` + and ``arr['y']``. Record arrays allow the fields to be accessed as members + of the array, using ``arr.x`` and ``arr.y``. + + Parameters + ---------- + shape : tuple + Shape of output array. + dtype : data-type, optional + The desired data-type. By default, the data-type is determined + from `formats`, `names`, `titles`, `aligned` and `byteorder`. + formats : list of data-types, optional + A list containing the data-types for the different columns, e.g. + ``['i4', 'f8', 'i4']``. `formats` does *not* support the new + convention of using types directly, i.e. ``(int, float, int)``. + Note that `formats` must be a list, not a tuple. + Given that `formats` is somewhat limited, we recommend specifying + `dtype` instead. + names : tuple of str, optional + The name of each column, e.g. ``('x', 'y', 'z')``. + buf : buffer, optional + By default, a new array is created of the given shape and data-type. + If `buf` is specified and is an object exposing the buffer interface, + the array will use the memory from the existing buffer. In this case, + the `offset` and `strides` keywords are available. + + Other Parameters + ---------------- + titles : tuple of str, optional + Aliases for column names. For example, if `names` were + ``('x', 'y', 'z')`` and `titles` is + ``('x_coordinate', 'y_coordinate', 'z_coordinate')``, then + ``arr['x']`` is equivalent to both ``arr.x`` and ``arr.x_coordinate``. + byteorder : {'<', '>', '='}, optional + Byte-order for all fields. + aligned : bool, optional + Align the fields in memory as the C-compiler would. + strides : tuple of ints, optional + Buffer (`buf`) is interpreted according to these strides (strides + define how many bytes each array element, row, column, etc. + occupy in memory). + offset : int, optional + Start reading buffer (`buf`) from this offset onwards. + order : {'C', 'F'}, optional + Row-major (C-style) or column-major (Fortran-style) order. + + Returns + ------- + rec : recarray + Empty array of the given shape and type. + + See Also + -------- + numpy.rec.fromrecords : Construct a record array from data. + numpy.record : fundamental data-type for `recarray`. + numpy.rec.format_parser : determine data-type from formats, names, titles. + + Notes + ----- + This constructor can be compared to ``empty``: it creates a new record + array but does not fill it with data. To create a record array from data, + use one of the following methods: + + 1. Create a standard ndarray and convert it to a record array, + using ``arr.view(np.recarray)`` + 2. Use the `buf` keyword. + 3. Use `np.rec.fromrecords`. + + Examples + -------- + Create an array with two fields, ``x`` and ``y``: + + >>> import numpy as np + >>> x = np.array([(1.0, 2), (3.0, 4)], dtype=[('x', '>> x + array([(1., 2), (3., 4)], dtype=[('x', '>> x['x'] + array([1., 3.]) + + View the array as a record array: + + >>> x = x.view(np.recarray) + + >>> x.x + array([1., 3.]) + + >>> x.y + array([2, 4]) + + Create a new, empty record array: + + >>> np.recarray((2,), + ... dtype=[('x', int), ('y', float), ('z', int)]) #doctest: +SKIP + rec.array([(-1073741821, 1.2249118382103472e-301, 24547520), + (3471280, 1.2134086255804012e-316, 0)], + dtype=[('x', ' 0 or self.shape == (0,): + lst = sb.array2string( + self, separator=', ', prefix=prefix, suffix=',') + else: + # show zero-length shape unless it is (0,) + lst = "[], shape=%s" % (repr(self.shape),) + + lf = '\n'+' '*len(prefix) + if _get_legacy_print_mode() <= 113: + lf = ' ' + lf # trailing space + return fmt % (lst, lf, repr_dtype) + + def field(self, attr, val=None): + if isinstance(attr, int): + names = ndarray.__getattribute__(self, 'dtype').names + attr = names[attr] + + fielddict = ndarray.__getattribute__(self, 'dtype').fields + + res = fielddict[attr][:2] + + if val is None: + obj = self.getfield(*res) + if obj.dtype.names is not None: + return obj + return obj.view(ndarray) + else: + return self.setfield(val, *res) + + +def _deprecate_shape_0_as_None(shape): + if shape == 0: + warnings.warn( + "Passing `shape=0` to have the shape be inferred is deprecated, " + "and in future will be equivalent to `shape=(0,)`. To infer " + "the shape and suppress this warning, pass `shape=None` instead.", + FutureWarning, stacklevel=3) + return None + else: + return shape + + +@set_module("numpy.rec") +def fromarrays(arrayList, dtype=None, shape=None, formats=None, + names=None, titles=None, aligned=False, byteorder=None): + """Create a record array from a (flat) list of arrays + + Parameters + ---------- + arrayList : list or tuple + List of array-like objects (such as lists, tuples, + and ndarrays). + dtype : data-type, optional + valid dtype for all arrays + shape : int or tuple of ints, optional + Shape of the resulting array. If not provided, inferred from + ``arrayList[0]``. + formats, names, titles, aligned, byteorder : + If `dtype` is ``None``, these arguments are passed to + `numpy.rec.format_parser` to construct a dtype. See that function for + detailed documentation. + + Returns + ------- + np.recarray + Record array consisting of given arrayList columns. + + Examples + -------- + >>> x1=np.array([1,2,3,4]) + >>> x2=np.array(['a','dd','xyz','12']) + >>> x3=np.array([1.1,2,3,4]) + >>> r = np.rec.fromarrays([x1,x2,x3],names='a,b,c') + >>> print(r[1]) + (2, 'dd', 2.0) # may vary + >>> x1[1]=34 + >>> r.a + array([1, 2, 3, 4]) + + >>> x1 = np.array([1, 2, 3, 4]) + >>> x2 = np.array(['a', 'dd', 'xyz', '12']) + >>> x3 = np.array([1.1, 2, 3,4]) + >>> r = np.rec.fromarrays( + ... [x1, x2, x3], + ... dtype=np.dtype([('a', np.int32), ('b', 'S3'), ('c', np.float32)])) + >>> r + rec.array([(1, b'a', 1.1), (2, b'dd', 2. ), (3, b'xyz', 3. ), + (4, b'12', 4. )], + dtype=[('a', ' 0: + shape = shape[:-nn] + + _array = recarray(shape, descr) + + # populate the record array (makes a copy) + for k, obj in enumerate(arrayList): + nn = descr[k].ndim + testshape = obj.shape[:obj.ndim - nn] + name = _names[k] + if testshape != shape: + raise ValueError(f'array-shape mismatch in array {k} ("{name}")') + + _array[name] = obj + + return _array + + +@set_module("numpy.rec") +def fromrecords(recList, dtype=None, shape=None, formats=None, names=None, + titles=None, aligned=False, byteorder=None): + """Create a recarray from a list of records in text form. + + Parameters + ---------- + recList : sequence + data in the same field may be heterogeneous - they will be promoted + to the highest data type. + dtype : data-type, optional + valid dtype for all arrays + shape : int or tuple of ints, optional + shape of each array. + formats, names, titles, aligned, byteorder : + If `dtype` is ``None``, these arguments are passed to + `numpy.format_parser` to construct a dtype. See that function for + detailed documentation. + + If both `formats` and `dtype` are None, then this will auto-detect + formats. Use list of tuples rather than list of lists for faster + processing. + + Returns + ------- + np.recarray + record array consisting of given recList rows. + + Examples + -------- + >>> r=np.rec.fromrecords([(456,'dbe',1.2),(2,'de',1.3)], + ... names='col1,col2,col3') + >>> print(r[0]) + (456, 'dbe', 1.2) + >>> r.col1 + array([456, 2]) + >>> r.col2 + array(['dbe', 'de'], dtype='>> import pickle + >>> pickle.loads(pickle.dumps(r)) + rec.array([(456, 'dbe', 1.2), ( 2, 'de', 1.3)], + dtype=[('col1', ' 1: + raise ValueError("Can only deal with 1-d array.") + _array = recarray(shape, descr) + for k in range(_array.size): + _array[k] = tuple(recList[k]) + # list of lists instead of list of tuples ? + # 2018-02-07, 1.14.1 + warnings.warn( + "fromrecords expected a list of tuples, may have received a list " + "of lists instead. In the future that will raise an error", + FutureWarning, stacklevel=2) + return _array + else: + if shape is not None and retval.shape != shape: + retval.shape = shape + + res = retval.view(recarray) + + return res + + +@set_module("numpy.rec") +def fromstring(datastring, dtype=None, shape=None, offset=0, formats=None, + names=None, titles=None, aligned=False, byteorder=None): + r"""Create a record array from binary data + + Note that despite the name of this function it does not accept `str` + instances. + + Parameters + ---------- + datastring : bytes-like + Buffer of binary data + dtype : data-type, optional + Valid dtype for all arrays + shape : int or tuple of ints, optional + Shape of each array. + offset : int, optional + Position in the buffer to start reading from. + formats, names, titles, aligned, byteorder : + If `dtype` is ``None``, these arguments are passed to + `numpy.format_parser` to construct a dtype. See that function for + detailed documentation. + + + Returns + ------- + np.recarray + Record array view into the data in datastring. This will be readonly + if `datastring` is readonly. + + See Also + -------- + numpy.frombuffer + + Examples + -------- + >>> a = b'\x01\x02\x03abc' + >>> np.rec.fromstring(a, dtype='u1,u1,u1,S3') + rec.array([(1, 2, 3, b'abc')], + dtype=[('f0', 'u1'), ('f1', 'u1'), ('f2', 'u1'), ('f3', 'S3')]) + + >>> grades_dtype = [('Name', (np.str_, 10)), ('Marks', np.float64), + ... ('GradeLevel', np.int32)] + >>> grades_array = np.array([('Sam', 33.3, 3), ('Mike', 44.4, 5), + ... ('Aadi', 66.6, 6)], dtype=grades_dtype) + >>> np.rec.fromstring(grades_array.tobytes(), dtype=grades_dtype) + rec.array([('Sam', 33.3, 3), ('Mike', 44.4, 5), ('Aadi', 66.6, 6)], + dtype=[('Name', '>> s = '\x01\x02\x03abc' + >>> np.rec.fromstring(s, dtype='u1,u1,u1,S3') + Traceback (most recent call last): + ... + TypeError: a bytes-like object is required, not 'str' + """ + + if dtype is None and formats is None: + raise TypeError("fromstring() needs a 'dtype' or 'formats' argument") + + if dtype is not None: + descr = sb.dtype(dtype) + else: + descr = format_parser(formats, names, titles, aligned, byteorder).dtype + + itemsize = descr.itemsize + + # NumPy 1.19.0, 2020-01-01 + shape = _deprecate_shape_0_as_None(shape) + + if shape in (None, -1): + shape = (len(datastring) - offset) // itemsize + + _array = recarray(shape, descr, buf=datastring, offset=offset) + return _array + +def get_remaining_size(fd): + pos = fd.tell() + try: + fd.seek(0, 2) + return fd.tell() - pos + finally: + fd.seek(pos, 0) + + +@set_module("numpy.rec") +def fromfile(fd, dtype=None, shape=None, offset=0, formats=None, + names=None, titles=None, aligned=False, byteorder=None): + """Create an array from binary file data + + Parameters + ---------- + fd : str or file type + If file is a string or a path-like object then that file is opened, + else it is assumed to be a file object. The file object must + support random access (i.e. it must have tell and seek methods). + dtype : data-type, optional + valid dtype for all arrays + shape : int or tuple of ints, optional + shape of each array. + offset : int, optional + Position in the file to start reading from. + formats, names, titles, aligned, byteorder : + If `dtype` is ``None``, these arguments are passed to + `numpy.format_parser` to construct a dtype. See that function for + detailed documentation + + Returns + ------- + np.recarray + record array consisting of data enclosed in file. + + Examples + -------- + >>> from tempfile import TemporaryFile + >>> a = np.empty(10,dtype='f8,i4,a5') + >>> a[5] = (0.5,10,'abcde') + >>> + >>> fd=TemporaryFile() + >>> a = a.view(a.dtype.newbyteorder('<')) + >>> a.tofile(fd) + >>> + >>> _ = fd.seek(0) + >>> r=np.rec.fromfile(fd, formats='f8,i4,a5', shape=10, + ... byteorder='<') + >>> print(r[5]) + (0.5, 10, b'abcde') + >>> r.shape + (10,) + """ + + if dtype is None and formats is None: + raise TypeError("fromfile() needs a 'dtype' or 'formats' argument") + + # NumPy 1.19.0, 2020-01-01 + shape = _deprecate_shape_0_as_None(shape) + + if shape is None: + shape = (-1,) + elif isinstance(shape, int): + shape = (shape,) + + if hasattr(fd, 'readinto'): + # GH issue 2504. fd supports io.RawIOBase or io.BufferedIOBase + # interface. Example of fd: gzip, BytesIO, BufferedReader + # file already opened + ctx = nullcontext(fd) + else: + # open file + ctx = open(os.fspath(fd), 'rb') + + with ctx as fd: + if offset > 0: + fd.seek(offset, 1) + size = get_remaining_size(fd) + + if dtype is not None: + descr = sb.dtype(dtype) + else: + descr = format_parser( + formats, names, titles, aligned, byteorder + ).dtype + + itemsize = descr.itemsize + + shapeprod = sb.array(shape).prod(dtype=nt.intp) + shapesize = shapeprod * itemsize + if shapesize < 0: + shape = list(shape) + shape[shape.index(-1)] = size // -shapesize + shape = tuple(shape) + shapeprod = sb.array(shape).prod(dtype=nt.intp) + + nbytes = shapeprod * itemsize + + if nbytes > size: + raise ValueError( + "Not enough bytes left in file for specified " + "shape and type." + ) + + # create the array + _array = recarray(shape, descr) + nbytesread = fd.readinto(_array.data) + if nbytesread != nbytes: + raise OSError("Didn't read as many bytes as expected") + + return _array + + +@set_module("numpy.rec") +def array(obj, dtype=None, shape=None, offset=0, strides=None, formats=None, + names=None, titles=None, aligned=False, byteorder=None, copy=True): + """ + Construct a record array from a wide-variety of objects. + + A general-purpose record array constructor that dispatches to the + appropriate `recarray` creation function based on the inputs (see Notes). + + Parameters + ---------- + obj : any + Input object. See Notes for details on how various input types are + treated. + dtype : data-type, optional + Valid dtype for array. + shape : int or tuple of ints, optional + Shape of each array. + offset : int, optional + Position in the file or buffer to start reading from. + strides : tuple of ints, optional + Buffer (`buf`) is interpreted according to these strides (strides + define how many bytes each array element, row, column, etc. + occupy in memory). + formats, names, titles, aligned, byteorder : + If `dtype` is ``None``, these arguments are passed to + `numpy.format_parser` to construct a dtype. See that function for + detailed documentation. + copy : bool, optional + Whether to copy the input object (True), or to use a reference instead. + This option only applies when the input is an ndarray or recarray. + Defaults to True. + + Returns + ------- + np.recarray + Record array created from the specified object. + + Notes + ----- + If `obj` is ``None``, then call the `~numpy.recarray` constructor. If + `obj` is a string, then call the `fromstring` constructor. If `obj` is a + list or a tuple, then if the first object is an `~numpy.ndarray`, call + `fromarrays`, otherwise call `fromrecords`. If `obj` is a + `~numpy.recarray`, then make a copy of the data in the recarray + (if ``copy=True``) and use the new formats, names, and titles. If `obj` + is a file, then call `fromfile`. Finally, if obj is an `ndarray`, then + return ``obj.view(recarray)``, making a copy of the data if ``copy=True``. + + Examples + -------- + >>> a = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]]) + >>> a + array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]]) + + >>> np.rec.array(a) + rec.array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]], + dtype=int64) + + >>> b = [(1, 1), (2, 4), (3, 9)] + >>> c = np.rec.array(b, formats = ['i2', 'f2'], names = ('x', 'y')) + >>> c + rec.array([(1, 1.), (2, 4.), (3, 9.)], + dtype=[('x', '>> c.x + array([1, 2, 3], dtype=int16) + + >>> c.y + array([1., 4., 9.], dtype=float16) + + >>> r = np.rec.array(['abc','def'], names=['col1','col2']) + >>> print(r.col1) + abc + + >>> r.col1 + array('abc', dtype='>> r.col2 + array('def', dtype=' object: ... + def tell(self, /) -> int: ... + def readinto(self, buffer: memoryview, /) -> int: ... + +### + +# exported in `numpy.rec` +class record(np.void): + def __getattribute__(self, attr: str) -> Any: ... + def __setattr__(self, attr: str, val: ArrayLike) -> None: ... + def pprint(self) -> str: ... + @overload + def __getitem__(self, key: str | SupportsIndex) -> Any: ... + @overload + def __getitem__(self, key: list[str]) -> record: ... + +# exported in `numpy.rec` +class recarray(np.ndarray[_ShapeT_co, _DTypeT_co]): + __name__: ClassVar[Literal["record"]] = "record" + __module__: Literal["numpy"] = "numpy" + @overload + def __new__( + subtype, + shape: _ShapeLike, + dtype: None = None, + buf: _SupportsBuffer | None = None, + offset: SupportsIndex = 0, + strides: _ShapeLike | None = None, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + byteorder: _ByteOrder | None = None, + aligned: bool = False, + order: _OrderKACF = "C", + ) -> _RecArray[record]: ... + @overload + def __new__( + subtype, + shape: _ShapeLike, + dtype: DTypeLike, + buf: _SupportsBuffer | None = None, + offset: SupportsIndex = 0, + strides: _ShapeLike | None = None, + formats: None = None, + names: None = None, + titles: None = None, + byteorder: None = None, + aligned: Literal[False] = False, + order: _OrderKACF = "C", + ) -> _RecArray[Any]: ... + def __array_finalize__(self, /, obj: object) -> None: ... + def __getattribute__(self, attr: str, /) -> Any: ... + def __setattr__(self, attr: str, val: ArrayLike, /) -> None: ... + + # + @overload + def field(self, /, attr: int | str, val: ArrayLike) -> None: ... + @overload + def field(self, /, attr: int | str, val: None = None) -> Any: ... + +# exported in `numpy.rec` +class format_parser: + dtype: np.dtype[np.void] + def __init__( + self, + /, + formats: DTypeLike, + names: str | Sequence[str] | None, + titles: str | Sequence[str] | None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, + ) -> None: ... + +# exported in `numpy.rec` +@overload +def fromarrays( + arrayList: Iterable[ArrayLike], + dtype: DTypeLike | None = None, + shape: _ShapeLike | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, +) -> _RecArray[Any]: ... +@overload +def fromarrays( + arrayList: Iterable[ArrayLike], + dtype: None = None, + shape: _ShapeLike | None = None, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, +) -> _RecArray[record]: ... + +@overload +def fromrecords( + recList: _ArrayLikeVoid_co | tuple[object, ...] | _NestedSequence[tuple[object, ...]], + dtype: DTypeLike | None = None, + shape: _ShapeLike | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, +) -> _RecArray[record]: ... +@overload +def fromrecords( + recList: _ArrayLikeVoid_co | tuple[object, ...] | _NestedSequence[tuple[object, ...]], + dtype: None = None, + shape: _ShapeLike | None = None, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, +) -> _RecArray[record]: ... + +# exported in `numpy.rec` +@overload +def fromstring( + datastring: _SupportsBuffer, + dtype: DTypeLike, + shape: _ShapeLike | None = None, + offset: int = 0, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, +) -> _RecArray[record]: ... +@overload +def fromstring( + datastring: _SupportsBuffer, + dtype: None = None, + shape: _ShapeLike | None = None, + offset: int = 0, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, +) -> _RecArray[record]: ... + +# exported in `numpy.rec` +@overload +def fromfile( + fd: StrOrBytesPath | _SupportsReadInto, + dtype: DTypeLike, + shape: _ShapeLike | None = None, + offset: int = 0, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, +) -> _RecArray[Any]: ... +@overload +def fromfile( + fd: StrOrBytesPath | _SupportsReadInto, + dtype: None = None, + shape: _ShapeLike | None = None, + offset: int = 0, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, +) -> _RecArray[record]: ... + +# exported in `numpy.rec` +@overload +def array( + obj: _SCT | NDArray[_SCT], + dtype: None = None, + shape: _ShapeLike | None = None, + offset: int = 0, + strides: tuple[int, ...] | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, + copy: bool = True, +) -> _RecArray[_SCT]: ... +@overload +def array( + obj: ArrayLike, + dtype: DTypeLike, + shape: _ShapeLike | None = None, + offset: int = 0, + strides: tuple[int, ...] | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, + copy: bool = True, +) -> _RecArray[Any]: ... +@overload +def array( + obj: ArrayLike, + dtype: None = None, + shape: _ShapeLike | None = None, + offset: int = 0, + strides: tuple[int, ...] | None = None, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, + copy: bool = True, +) -> _RecArray[record]: ... +@overload +def array( + obj: None, + dtype: DTypeLike, + shape: _ShapeLike, + offset: int = 0, + strides: tuple[int, ...] | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, + copy: bool = True, +) -> _RecArray[Any]: ... +@overload +def array( + obj: None, + dtype: None = None, + *, + shape: _ShapeLike, + offset: int = 0, + strides: tuple[int, ...] | None = None, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, + copy: bool = True, +) -> _RecArray[record]: ... +@overload +def array( + obj: _SupportsReadInto, + dtype: DTypeLike, + shape: _ShapeLike | None = None, + offset: int = 0, + strides: tuple[int, ...] | None = None, + formats: None = None, + names: None = None, + titles: None = None, + aligned: bool = False, + byteorder: None = None, + copy: bool = True, +) -> _RecArray[Any]: ... +@overload +def array( + obj: _SupportsReadInto, + dtype: None = None, + shape: _ShapeLike | None = None, + offset: int = 0, + strides: tuple[int, ...] | None = None, + *, + formats: DTypeLike, + names: str | Sequence[str] | None = None, + titles: str | Sequence[str] | None = None, + aligned: bool = False, + byteorder: _ByteOrder | None = None, + copy: bool = True, +) -> _RecArray[record]: ... + +# exported in `numpy.rec` +def find_duplicate(list: Iterable[_T]) -> list[_T]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.py new file mode 100644 index 0000000000000000000000000000000000000000..cc08ab4600938ee47d1d872b64997cc597196feb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.py @@ -0,0 +1,1004 @@ +__all__ = ['atleast_1d', 'atleast_2d', 'atleast_3d', 'block', 'hstack', + 'stack', 'unstack', 'vstack'] + +import functools +import itertools +import operator + +from . import numeric as _nx +from . import overrides +from .multiarray import array, asanyarray, normalize_axis_index +from . import fromnumeric as _from_nx + +array_function_dispatch = functools.partial( + overrides.array_function_dispatch, module='numpy') + + +def _atleast_1d_dispatcher(*arys): + return arys + + +@array_function_dispatch(_atleast_1d_dispatcher) +def atleast_1d(*arys): + """ + Convert inputs to arrays with at least one dimension. + + Scalar inputs are converted to 1-dimensional arrays, whilst + higher-dimensional inputs are preserved. + + Parameters + ---------- + arys1, arys2, ... : array_like + One or more input arrays. + + Returns + ------- + ret : ndarray + An array, or tuple of arrays, each with ``a.ndim >= 1``. + Copies are made only if necessary. + + See Also + -------- + atleast_2d, atleast_3d + + Examples + -------- + >>> import numpy as np + >>> np.atleast_1d(1.0) + array([1.]) + + >>> x = np.arange(9.0).reshape(3,3) + >>> np.atleast_1d(x) + array([[0., 1., 2.], + [3., 4., 5.], + [6., 7., 8.]]) + >>> np.atleast_1d(x) is x + True + + >>> np.atleast_1d(1, [3, 4]) + (array([1]), array([3, 4])) + + """ + if len(arys) == 1: + result = asanyarray(arys[0]) + if result.ndim == 0: + result = result.reshape(1) + return result + res = [] + for ary in arys: + result = asanyarray(ary) + if result.ndim == 0: + result = result.reshape(1) + res.append(result) + return tuple(res) + + +def _atleast_2d_dispatcher(*arys): + return arys + + +@array_function_dispatch(_atleast_2d_dispatcher) +def atleast_2d(*arys): + """ + View inputs as arrays with at least two dimensions. + + Parameters + ---------- + arys1, arys2, ... : array_like + One or more array-like sequences. Non-array inputs are converted + to arrays. Arrays that already have two or more dimensions are + preserved. + + Returns + ------- + res, res2, ... : ndarray + An array, or tuple of arrays, each with ``a.ndim >= 2``. + Copies are avoided where possible, and views with two or more + dimensions are returned. + + See Also + -------- + atleast_1d, atleast_3d + + Examples + -------- + >>> import numpy as np + >>> np.atleast_2d(3.0) + array([[3.]]) + + >>> x = np.arange(3.0) + >>> np.atleast_2d(x) + array([[0., 1., 2.]]) + >>> np.atleast_2d(x).base is x + True + + >>> np.atleast_2d(1, [1, 2], [[1, 2]]) + (array([[1]]), array([[1, 2]]), array([[1, 2]])) + + """ + res = [] + for ary in arys: + ary = asanyarray(ary) + if ary.ndim == 0: + result = ary.reshape(1, 1) + elif ary.ndim == 1: + result = ary[_nx.newaxis, :] + else: + result = ary + res.append(result) + if len(res) == 1: + return res[0] + else: + return tuple(res) + + +def _atleast_3d_dispatcher(*arys): + return arys + + +@array_function_dispatch(_atleast_3d_dispatcher) +def atleast_3d(*arys): + """ + View inputs as arrays with at least three dimensions. + + Parameters + ---------- + arys1, arys2, ... : array_like + One or more array-like sequences. Non-array inputs are converted to + arrays. Arrays that already have three or more dimensions are + preserved. + + Returns + ------- + res1, res2, ... : ndarray + An array, or tuple of arrays, each with ``a.ndim >= 3``. Copies are + avoided where possible, and views with three or more dimensions are + returned. For example, a 1-D array of shape ``(N,)`` becomes a view + of shape ``(1, N, 1)``, and a 2-D array of shape ``(M, N)`` becomes a + view of shape ``(M, N, 1)``. + + See Also + -------- + atleast_1d, atleast_2d + + Examples + -------- + >>> import numpy as np + >>> np.atleast_3d(3.0) + array([[[3.]]]) + + >>> x = np.arange(3.0) + >>> np.atleast_3d(x).shape + (1, 3, 1) + + >>> x = np.arange(12.0).reshape(4,3) + >>> np.atleast_3d(x).shape + (4, 3, 1) + >>> np.atleast_3d(x).base is x.base # x is a reshape, so not base itself + True + + >>> for arr in np.atleast_3d([1, 2], [[1, 2]], [[[1, 2]]]): + ... print(arr, arr.shape) # doctest: +SKIP + ... + [[[1] + [2]]] (1, 2, 1) + [[[1] + [2]]] (1, 2, 1) + [[[1 2]]] (1, 1, 2) + + """ + res = [] + for ary in arys: + ary = asanyarray(ary) + if ary.ndim == 0: + result = ary.reshape(1, 1, 1) + elif ary.ndim == 1: + result = ary[_nx.newaxis, :, _nx.newaxis] + elif ary.ndim == 2: + result = ary[:, :, _nx.newaxis] + else: + result = ary + res.append(result) + if len(res) == 1: + return res[0] + else: + return tuple(res) + + +def _arrays_for_stack_dispatcher(arrays): + if not hasattr(arrays, "__getitem__"): + raise TypeError('arrays to stack must be passed as a "sequence" type ' + 'such as list or tuple.') + + return tuple(arrays) + + +def _vhstack_dispatcher(tup, *, dtype=None, casting=None): + return _arrays_for_stack_dispatcher(tup) + + +@array_function_dispatch(_vhstack_dispatcher) +def vstack(tup, *, dtype=None, casting="same_kind"): + """ + Stack arrays in sequence vertically (row wise). + + This is equivalent to concatenation along the first axis after 1-D arrays + of shape `(N,)` have been reshaped to `(1,N)`. Rebuilds arrays divided by + `vsplit`. + + This function makes most sense for arrays with up to 3 dimensions. For + instance, for pixel-data with a height (first axis), width (second axis), + and r/g/b channels (third axis). The functions `concatenate`, `stack` and + `block` provide more general stacking and concatenation operations. + + Parameters + ---------- + tup : sequence of ndarrays + The arrays must have the same shape along all but the first axis. + 1-D arrays must have the same length. In the case of a single + array_like input, it will be treated as a sequence of arrays; i.e., + each element along the zeroth axis is treated as a separate array. + + dtype : str or dtype + If provided, the destination array will have this dtype. Cannot be + provided together with `out`. + + .. versionadded:: 1.24 + + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Defaults to 'same_kind'. + + .. versionadded:: 1.24 + + Returns + ------- + stacked : ndarray + The array formed by stacking the given arrays, will be at least 2-D. + + See Also + -------- + concatenate : Join a sequence of arrays along an existing axis. + stack : Join a sequence of arrays along a new axis. + block : Assemble an nd-array from nested lists of blocks. + hstack : Stack arrays in sequence horizontally (column wise). + dstack : Stack arrays in sequence depth wise (along third axis). + column_stack : Stack 1-D arrays as columns into a 2-D array. + vsplit : Split an array into multiple sub-arrays vertically (row-wise). + unstack : Split an array into a tuple of sub-arrays along an axis. + + Examples + -------- + >>> import numpy as np + >>> a = np.array([1, 2, 3]) + >>> b = np.array([4, 5, 6]) + >>> np.vstack((a,b)) + array([[1, 2, 3], + [4, 5, 6]]) + + >>> a = np.array([[1], [2], [3]]) + >>> b = np.array([[4], [5], [6]]) + >>> np.vstack((a,b)) + array([[1], + [2], + [3], + [4], + [5], + [6]]) + + """ + arrs = atleast_2d(*tup) + if not isinstance(arrs, tuple): + arrs = (arrs,) + return _nx.concatenate(arrs, 0, dtype=dtype, casting=casting) + + +@array_function_dispatch(_vhstack_dispatcher) +def hstack(tup, *, dtype=None, casting="same_kind"): + """ + Stack arrays in sequence horizontally (column wise). + + This is equivalent to concatenation along the second axis, except for 1-D + arrays where it concatenates along the first axis. Rebuilds arrays divided + by `hsplit`. + + This function makes most sense for arrays with up to 3 dimensions. For + instance, for pixel-data with a height (first axis), width (second axis), + and r/g/b channels (third axis). The functions `concatenate`, `stack` and + `block` provide more general stacking and concatenation operations. + + Parameters + ---------- + tup : sequence of ndarrays + The arrays must have the same shape along all but the second axis, + except 1-D arrays which can be any length. In the case of a single + array_like input, it will be treated as a sequence of arrays; i.e., + each element along the zeroth axis is treated as a separate array. + + dtype : str or dtype + If provided, the destination array will have this dtype. Cannot be + provided together with `out`. + + .. versionadded:: 1.24 + + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Defaults to 'same_kind'. + + .. versionadded:: 1.24 + + Returns + ------- + stacked : ndarray + The array formed by stacking the given arrays. + + See Also + -------- + concatenate : Join a sequence of arrays along an existing axis. + stack : Join a sequence of arrays along a new axis. + block : Assemble an nd-array from nested lists of blocks. + vstack : Stack arrays in sequence vertically (row wise). + dstack : Stack arrays in sequence depth wise (along third axis). + column_stack : Stack 1-D arrays as columns into a 2-D array. + hsplit : Split an array into multiple sub-arrays + horizontally (column-wise). + unstack : Split an array into a tuple of sub-arrays along an axis. + + Examples + -------- + >>> import numpy as np + >>> a = np.array((1,2,3)) + >>> b = np.array((4,5,6)) + >>> np.hstack((a,b)) + array([1, 2, 3, 4, 5, 6]) + >>> a = np.array([[1],[2],[3]]) + >>> b = np.array([[4],[5],[6]]) + >>> np.hstack((a,b)) + array([[1, 4], + [2, 5], + [3, 6]]) + + """ + arrs = atleast_1d(*tup) + if not isinstance(arrs, tuple): + arrs = (arrs,) + # As a special case, dimension 0 of 1-dimensional arrays is "horizontal" + if arrs and arrs[0].ndim == 1: + return _nx.concatenate(arrs, 0, dtype=dtype, casting=casting) + else: + return _nx.concatenate(arrs, 1, dtype=dtype, casting=casting) + + +def _stack_dispatcher(arrays, axis=None, out=None, *, + dtype=None, casting=None): + arrays = _arrays_for_stack_dispatcher(arrays) + if out is not None: + # optimize for the typical case where only arrays is provided + arrays = list(arrays) + arrays.append(out) + return arrays + + +@array_function_dispatch(_stack_dispatcher) +def stack(arrays, axis=0, out=None, *, dtype=None, casting="same_kind"): + """ + Join a sequence of arrays along a new axis. + + The ``axis`` parameter specifies the index of the new axis in the + dimensions of the result. For example, if ``axis=0`` it will be the first + dimension and if ``axis=-1`` it will be the last dimension. + + Parameters + ---------- + arrays : sequence of ndarrays + Each array must have the same shape. In the case of a single ndarray + array_like input, it will be treated as a sequence of arrays; i.e., + each element along the zeroth axis is treated as a separate array. + + axis : int, optional + The axis in the result array along which the input arrays are stacked. + + out : ndarray, optional + If provided, the destination to place the result. The shape must be + correct, matching that of what stack would have returned if no + out argument were specified. + + dtype : str or dtype + If provided, the destination array will have this dtype. Cannot be + provided together with `out`. + + .. versionadded:: 1.24 + + casting : {'no', 'equiv', 'safe', 'same_kind', 'unsafe'}, optional + Controls what kind of data casting may occur. Defaults to 'same_kind'. + + .. versionadded:: 1.24 + + + Returns + ------- + stacked : ndarray + The stacked array has one more dimension than the input arrays. + + See Also + -------- + concatenate : Join a sequence of arrays along an existing axis. + block : Assemble an nd-array from nested lists of blocks. + split : Split array into a list of multiple sub-arrays of equal size. + unstack : Split an array into a tuple of sub-arrays along an axis. + + Examples + -------- + >>> import numpy as np + >>> rng = np.random.default_rng() + >>> arrays = [rng.normal(size=(3,4)) for _ in range(10)] + >>> np.stack(arrays, axis=0).shape + (10, 3, 4) + + >>> np.stack(arrays, axis=1).shape + (3, 10, 4) + + >>> np.stack(arrays, axis=2).shape + (3, 4, 10) + + >>> a = np.array([1, 2, 3]) + >>> b = np.array([4, 5, 6]) + >>> np.stack((a, b)) + array([[1, 2, 3], + [4, 5, 6]]) + + >>> np.stack((a, b), axis=-1) + array([[1, 4], + [2, 5], + [3, 6]]) + + """ + arrays = [asanyarray(arr) for arr in arrays] + if not arrays: + raise ValueError('need at least one array to stack') + + shapes = {arr.shape for arr in arrays} + if len(shapes) != 1: + raise ValueError('all input arrays must have the same shape') + + result_ndim = arrays[0].ndim + 1 + axis = normalize_axis_index(axis, result_ndim) + + sl = (slice(None),) * axis + (_nx.newaxis,) + expanded_arrays = [arr[sl] for arr in arrays] + return _nx.concatenate(expanded_arrays, axis=axis, out=out, + dtype=dtype, casting=casting) + +def _unstack_dispatcher(x, /, *, axis=None): + return (x,) + +@array_function_dispatch(_unstack_dispatcher) +def unstack(x, /, *, axis=0): + """ + Split an array into a sequence of arrays along the given axis. + + The ``axis`` parameter specifies the dimension along which the array will + be split. For example, if ``axis=0`` (the default) it will be the first + dimension and if ``axis=-1`` it will be the last dimension. + + The result is a tuple of arrays split along ``axis``. + + .. versionadded:: 2.1.0 + + Parameters + ---------- + x : ndarray + The array to be unstacked. + axis : int, optional + Axis along which the array will be split. Default: ``0``. + + Returns + ------- + unstacked : tuple of ndarrays + The unstacked arrays. + + See Also + -------- + stack : Join a sequence of arrays along a new axis. + concatenate : Join a sequence of arrays along an existing axis. + block : Assemble an nd-array from nested lists of blocks. + split : Split array into a list of multiple sub-arrays of equal size. + + Notes + ----- + ``unstack`` serves as the reverse operation of :py:func:`stack`, i.e., + ``stack(unstack(x, axis=axis), axis=axis) == x``. + + This function is equivalent to ``tuple(np.moveaxis(x, axis, 0))``, since + iterating on an array iterates along the first axis. + + Examples + -------- + >>> arr = np.arange(24).reshape((2, 3, 4)) + >>> np.unstack(arr) + (array([[ 0, 1, 2, 3], + [ 4, 5, 6, 7], + [ 8, 9, 10, 11]]), + array([[12, 13, 14, 15], + [16, 17, 18, 19], + [20, 21, 22, 23]])) + >>> np.unstack(arr, axis=1) + (array([[ 0, 1, 2, 3], + [12, 13, 14, 15]]), + array([[ 4, 5, 6, 7], + [16, 17, 18, 19]]), + array([[ 8, 9, 10, 11], + [20, 21, 22, 23]])) + >>> arr2 = np.stack(np.unstack(arr, axis=1), axis=1) + >>> arr2.shape + (2, 3, 4) + >>> np.all(arr == arr2) + np.True_ + + """ + if x.ndim == 0: + raise ValueError("Input array must be at least 1-d.") + return tuple(_nx.moveaxis(x, axis, 0)) + +# Internal functions to eliminate the overhead of repeated dispatch in one of +# the two possible paths inside np.block. +# Use getattr to protect against __array_function__ being disabled. +_size = getattr(_from_nx.size, '__wrapped__', _from_nx.size) +_ndim = getattr(_from_nx.ndim, '__wrapped__', _from_nx.ndim) +_concatenate = getattr(_from_nx.concatenate, + '__wrapped__', _from_nx.concatenate) + + +def _block_format_index(index): + """ + Convert a list of indices ``[0, 1, 2]`` into ``"arrays[0][1][2]"``. + """ + idx_str = ''.join('[{}]'.format(i) for i in index if i is not None) + return 'arrays' + idx_str + + +def _block_check_depths_match(arrays, parent_index=[]): + """ + Recursive function checking that the depths of nested lists in `arrays` + all match. Mismatch raises a ValueError as described in the block + docstring below. + + The entire index (rather than just the depth) needs to be calculated + for each innermost list, in case an error needs to be raised, so that + the index of the offending list can be printed as part of the error. + + Parameters + ---------- + arrays : nested list of arrays + The arrays to check + parent_index : list of int + The full index of `arrays` within the nested lists passed to + `_block_check_depths_match` at the top of the recursion. + + Returns + ------- + first_index : list of int + The full index of an element from the bottom of the nesting in + `arrays`. If any element at the bottom is an empty list, this will + refer to it, and the last index along the empty axis will be None. + max_arr_ndim : int + The maximum of the ndims of the arrays nested in `arrays`. + final_size: int + The number of elements in the final array. This is used the motivate + the choice of algorithm used using benchmarking wisdom. + + """ + if type(arrays) is tuple: + # not strictly necessary, but saves us from: + # - more than one way to do things - no point treating tuples like + # lists + # - horribly confusing behaviour that results when tuples are + # treated like ndarray + raise TypeError( + '{} is a tuple. ' + 'Only lists can be used to arrange blocks, and np.block does ' + 'not allow implicit conversion from tuple to ndarray.'.format( + _block_format_index(parent_index) + ) + ) + elif type(arrays) is list and len(arrays) > 0: + idxs_ndims = (_block_check_depths_match(arr, parent_index + [i]) + for i, arr in enumerate(arrays)) + + first_index, max_arr_ndim, final_size = next(idxs_ndims) + for index, ndim, size in idxs_ndims: + final_size += size + if ndim > max_arr_ndim: + max_arr_ndim = ndim + if len(index) != len(first_index): + raise ValueError( + "List depths are mismatched. First element was at depth " + "{}, but there is an element at depth {} ({})".format( + len(first_index), + len(index), + _block_format_index(index) + ) + ) + # propagate our flag that indicates an empty list at the bottom + if index[-1] is None: + first_index = index + + return first_index, max_arr_ndim, final_size + elif type(arrays) is list and len(arrays) == 0: + # We've 'bottomed out' on an empty list + return parent_index + [None], 0, 0 + else: + # We've 'bottomed out' - arrays is either a scalar or an array + size = _size(arrays) + return parent_index, _ndim(arrays), size + + +def _atleast_nd(a, ndim): + # Ensures `a` has at least `ndim` dimensions by prepending + # ones to `a.shape` as necessary + return array(a, ndmin=ndim, copy=None, subok=True) + + +def _accumulate(values): + return list(itertools.accumulate(values)) + + +def _concatenate_shapes(shapes, axis): + """Given array shapes, return the resulting shape and slices prefixes. + + These help in nested concatenation. + + Returns + ------- + shape: tuple of int + This tuple satisfies:: + + shape, _ = _concatenate_shapes([arr.shape for shape in arrs], axis) + shape == concatenate(arrs, axis).shape + + slice_prefixes: tuple of (slice(start, end), ) + For a list of arrays being concatenated, this returns the slice + in the larger array at axis that needs to be sliced into. + + For example, the following holds:: + + ret = concatenate([a, b, c], axis) + _, (sl_a, sl_b, sl_c) = concatenate_slices([a, b, c], axis) + + ret[(slice(None),) * axis + sl_a] == a + ret[(slice(None),) * axis + sl_b] == b + ret[(slice(None),) * axis + sl_c] == c + + These are called slice prefixes since they are used in the recursive + blocking algorithm to compute the left-most slices during the + recursion. Therefore, they must be prepended to rest of the slice + that was computed deeper in the recursion. + + These are returned as tuples to ensure that they can quickly be added + to existing slice tuple without creating a new tuple every time. + + """ + # Cache a result that will be reused. + shape_at_axis = [shape[axis] for shape in shapes] + + # Take a shape, any shape + first_shape = shapes[0] + first_shape_pre = first_shape[:axis] + first_shape_post = first_shape[axis+1:] + + if any(shape[:axis] != first_shape_pre or + shape[axis+1:] != first_shape_post for shape in shapes): + raise ValueError( + 'Mismatched array shapes in block along axis {}.'.format(axis)) + + shape = (first_shape_pre + (sum(shape_at_axis),) + first_shape[axis+1:]) + + offsets_at_axis = _accumulate(shape_at_axis) + slice_prefixes = [(slice(start, end),) + for start, end in zip([0] + offsets_at_axis, + offsets_at_axis)] + return shape, slice_prefixes + + +def _block_info_recursion(arrays, max_depth, result_ndim, depth=0): + """ + Returns the shape of the final array, along with a list + of slices and a list of arrays that can be used for assignment inside the + new array + + Parameters + ---------- + arrays : nested list of arrays + The arrays to check + max_depth : list of int + The number of nested lists + result_ndim : int + The number of dimensions in thefinal array. + + Returns + ------- + shape : tuple of int + The shape that the final array will take on. + slices: list of tuple of slices + The slices into the full array required for assignment. These are + required to be prepended with ``(Ellipsis, )`` to obtain to correct + final index. + arrays: list of ndarray + The data to assign to each slice of the full array + + """ + if depth < max_depth: + shapes, slices, arrays = zip( + *[_block_info_recursion(arr, max_depth, result_ndim, depth+1) + for arr in arrays]) + + axis = result_ndim - max_depth + depth + shape, slice_prefixes = _concatenate_shapes(shapes, axis) + + # Prepend the slice prefix and flatten the slices + slices = [slice_prefix + the_slice + for slice_prefix, inner_slices in zip(slice_prefixes, slices) + for the_slice in inner_slices] + + # Flatten the array list + arrays = functools.reduce(operator.add, arrays) + + return shape, slices, arrays + else: + # We've 'bottomed out' - arrays is either a scalar or an array + # type(arrays) is not list + # Return the slice and the array inside a list to be consistent with + # the recursive case. + arr = _atleast_nd(arrays, result_ndim) + return arr.shape, [()], [arr] + + +def _block(arrays, max_depth, result_ndim, depth=0): + """ + Internal implementation of block based on repeated concatenation. + `arrays` is the argument passed to + block. `max_depth` is the depth of nested lists within `arrays` and + `result_ndim` is the greatest of the dimensions of the arrays in + `arrays` and the depth of the lists in `arrays` (see block docstring + for details). + """ + if depth < max_depth: + arrs = [_block(arr, max_depth, result_ndim, depth+1) + for arr in arrays] + return _concatenate(arrs, axis=-(max_depth-depth)) + else: + # We've 'bottomed out' - arrays is either a scalar or an array + # type(arrays) is not list + return _atleast_nd(arrays, result_ndim) + + +def _block_dispatcher(arrays): + # Use type(...) is list to match the behavior of np.block(), which special + # cases list specifically rather than allowing for generic iterables or + # tuple. Also, we know that list.__array_function__ will never exist. + if type(arrays) is list: + for subarrays in arrays: + yield from _block_dispatcher(subarrays) + else: + yield arrays + + +@array_function_dispatch(_block_dispatcher) +def block(arrays): + """ + Assemble an nd-array from nested lists of blocks. + + Blocks in the innermost lists are concatenated (see `concatenate`) along + the last dimension (-1), then these are concatenated along the + second-last dimension (-2), and so on until the outermost list is reached. + + Blocks can be of any dimension, but will not be broadcasted using + the normal rules. Instead, leading axes of size 1 are inserted, + to make ``block.ndim`` the same for all blocks. This is primarily useful + for working with scalars, and means that code like ``np.block([v, 1])`` + is valid, where ``v.ndim == 1``. + + When the nested list is two levels deep, this allows block matrices to be + constructed from their components. + + Parameters + ---------- + arrays : nested list of array_like or scalars (but not tuples) + If passed a single ndarray or scalar (a nested list of depth 0), this + is returned unmodified (and not copied). + + Elements shapes must match along the appropriate axes (without + broadcasting), but leading 1s will be prepended to the shape as + necessary to make the dimensions match. + + Returns + ------- + block_array : ndarray + The array assembled from the given blocks. + + The dimensionality of the output is equal to the greatest of: + + * the dimensionality of all the inputs + * the depth to which the input list is nested + + Raises + ------ + ValueError + * If list depths are mismatched - for instance, ``[[a, b], c]`` is + illegal, and should be spelt ``[[a, b], [c]]`` + * If lists are empty - for instance, ``[[a, b], []]`` + + See Also + -------- + concatenate : Join a sequence of arrays along an existing axis. + stack : Join a sequence of arrays along a new axis. + vstack : Stack arrays in sequence vertically (row wise). + hstack : Stack arrays in sequence horizontally (column wise). + dstack : Stack arrays in sequence depth wise (along third axis). + column_stack : Stack 1-D arrays as columns into a 2-D array. + vsplit : Split an array into multiple sub-arrays vertically (row-wise). + unstack : Split an array into a tuple of sub-arrays along an axis. + + Notes + ----- + When called with only scalars, ``np.block`` is equivalent to an ndarray + call. So ``np.block([[1, 2], [3, 4]])`` is equivalent to + ``np.array([[1, 2], [3, 4]])``. + + This function does not enforce that the blocks lie on a fixed grid. + ``np.block([[a, b], [c, d]])`` is not restricted to arrays of the form:: + + AAAbb + AAAbb + cccDD + + But is also allowed to produce, for some ``a, b, c, d``:: + + AAAbb + AAAbb + cDDDD + + Since concatenation happens along the last axis first, `block` is *not* + capable of producing the following directly:: + + AAAbb + cccbb + cccDD + + Matlab's "square bracket stacking", ``[A, B, ...; p, q, ...]``, is + equivalent to ``np.block([[A, B, ...], [p, q, ...]])``. + + Examples + -------- + The most common use of this function is to build a block matrix: + + >>> import numpy as np + >>> A = np.eye(2) * 2 + >>> B = np.eye(3) * 3 + >>> np.block([ + ... [A, np.zeros((2, 3))], + ... [np.ones((3, 2)), B ] + ... ]) + array([[2., 0., 0., 0., 0.], + [0., 2., 0., 0., 0.], + [1., 1., 3., 0., 0.], + [1., 1., 0., 3., 0.], + [1., 1., 0., 0., 3.]]) + + With a list of depth 1, `block` can be used as `hstack`: + + >>> np.block([1, 2, 3]) # hstack([1, 2, 3]) + array([1, 2, 3]) + + >>> a = np.array([1, 2, 3]) + >>> b = np.array([4, 5, 6]) + >>> np.block([a, b, 10]) # hstack([a, b, 10]) + array([ 1, 2, 3, 4, 5, 6, 10]) + + >>> A = np.ones((2, 2), int) + >>> B = 2 * A + >>> np.block([A, B]) # hstack([A, B]) + array([[1, 1, 2, 2], + [1, 1, 2, 2]]) + + With a list of depth 2, `block` can be used in place of `vstack`: + + >>> a = np.array([1, 2, 3]) + >>> b = np.array([4, 5, 6]) + >>> np.block([[a], [b]]) # vstack([a, b]) + array([[1, 2, 3], + [4, 5, 6]]) + + >>> A = np.ones((2, 2), int) + >>> B = 2 * A + >>> np.block([[A], [B]]) # vstack([A, B]) + array([[1, 1], + [1, 1], + [2, 2], + [2, 2]]) + + It can also be used in place of `atleast_1d` and `atleast_2d`: + + >>> a = np.array(0) + >>> b = np.array([1]) + >>> np.block([a]) # atleast_1d(a) + array([0]) + >>> np.block([b]) # atleast_1d(b) + array([1]) + + >>> np.block([[a]]) # atleast_2d(a) + array([[0]]) + >>> np.block([[b]]) # atleast_2d(b) + array([[1]]) + + + """ + arrays, list_ndim, result_ndim, final_size = _block_setup(arrays) + + # It was found through benchmarking that making an array of final size + # around 256x256 was faster by straight concatenation on a + # i7-7700HQ processor and dual channel ram 2400MHz. + # It didn't seem to matter heavily on the dtype used. + # + # A 2D array using repeated concatenation requires 2 copies of the array. + # + # The fastest algorithm will depend on the ratio of CPU power to memory + # speed. + # One can monitor the results of the benchmark + # https://pv.github.io/numpy-bench/#bench_shape_base.Block2D.time_block2d + # to tune this parameter until a C version of the `_block_info_recursion` + # algorithm is implemented which would likely be faster than the python + # version. + if list_ndim * final_size > (2 * 512 * 512): + return _block_slicing(arrays, list_ndim, result_ndim) + else: + return _block_concatenate(arrays, list_ndim, result_ndim) + + +# These helper functions are mostly used for testing. +# They allow us to write tests that directly call `_block_slicing` +# or `_block_concatenate` without blocking large arrays to force the wisdom +# to trigger the desired path. +def _block_setup(arrays): + """ + Returns + (`arrays`, list_ndim, result_ndim, final_size) + """ + bottom_index, arr_ndim, final_size = _block_check_depths_match(arrays) + list_ndim = len(bottom_index) + if bottom_index and bottom_index[-1] is None: + raise ValueError( + 'List at {} cannot be empty'.format( + _block_format_index(bottom_index) + ) + ) + result_ndim = max(arr_ndim, list_ndim) + return arrays, list_ndim, result_ndim, final_size + + +def _block_slicing(arrays, list_ndim, result_ndim): + shape, slices, arrays = _block_info_recursion( + arrays, list_ndim, result_ndim) + dtype = _nx.result_type(*[arr.dtype for arr in arrays]) + + # Test preferring F only in the case that all input arrays are F + F_order = all(arr.flags['F_CONTIGUOUS'] for arr in arrays) + C_order = all(arr.flags['C_CONTIGUOUS'] for arr in arrays) + order = 'F' if F_order and not C_order else 'C' + result = _nx.empty(shape=shape, dtype=dtype, order=order) + # Note: In a c implementation, the function + # PyArray_CreateMultiSortedStridePerm could be used for more advanced + # guessing of the desired order. + + for the_slice, arr in zip(slices, arrays): + result[(Ellipsis,) + the_slice] = arr + return result + + +def _block_concatenate(arrays, list_ndim, result_ndim): + result = _block(arrays, list_ndim, result_ndim) + if list_ndim == 0: + # Catch an edge case where _block returns a view because + # `arrays` is a single numpy array and not a list of numpy arrays. + # This might copy scalars or lists twice, but this isn't a likely + # usecase for those interested in performance + result = result.copy() + return result diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.pyi new file mode 100644 index 0000000000000000000000000000000000000000..decb7be48f9e0cb2d8010bac2f494c5f43ea173c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/shape_base.pyi @@ -0,0 +1,175 @@ +from collections.abc import Sequence +from typing import Any, SupportsIndex, TypeVar, overload + +from numpy import _CastingKind, generic +from numpy._typing import ArrayLike, DTypeLike, NDArray, _ArrayLike, _DTypeLike + +__all__ = [ + "atleast_1d", + "atleast_2d", + "atleast_3d", + "block", + "hstack", + "stack", + "unstack", + "vstack", +] + +_SCT = TypeVar("_SCT", bound=generic) +_SCT1 = TypeVar("_SCT1", bound=generic) +_SCT2 = TypeVar("_SCT2", bound=generic) +_ArrayT = TypeVar("_ArrayT", bound=NDArray[Any]) + +### + +@overload +def atleast_1d(a0: _ArrayLike[_SCT], /) -> NDArray[_SCT]: ... +@overload +def atleast_1d(a0: _ArrayLike[_SCT1], a1: _ArrayLike[_SCT2], /) -> tuple[NDArray[_SCT1], NDArray[_SCT2]]: ... +@overload +def atleast_1d(a0: _ArrayLike[_SCT], a1: _ArrayLike[_SCT], /, *arys: _ArrayLike[_SCT]) -> tuple[NDArray[_SCT], ...]: ... +@overload +def atleast_1d(a0: ArrayLike, /) -> NDArray[Any]: ... +@overload +def atleast_1d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[NDArray[Any], NDArray[Any]]: ... +@overload +def atleast_1d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[NDArray[Any], ...]: ... + +# +@overload +def atleast_2d(a0: _ArrayLike[_SCT], /) -> NDArray[_SCT]: ... +@overload +def atleast_2d(a0: _ArrayLike[_SCT1], a1: _ArrayLike[_SCT2], /) -> tuple[NDArray[_SCT1], NDArray[_SCT2]]: ... +@overload +def atleast_2d(a0: _ArrayLike[_SCT], a1: _ArrayLike[_SCT], /, *arys: _ArrayLike[_SCT]) -> tuple[NDArray[_SCT], ...]: ... +@overload +def atleast_2d(a0: ArrayLike, /) -> NDArray[Any]: ... +@overload +def atleast_2d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[NDArray[Any], NDArray[Any]]: ... +@overload +def atleast_2d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[NDArray[Any], ...]: ... + +# +@overload +def atleast_3d(a0: _ArrayLike[_SCT], /) -> NDArray[_SCT]: ... +@overload +def atleast_3d(a0: _ArrayLike[_SCT1], a1: _ArrayLike[_SCT2], /) -> tuple[NDArray[_SCT1], NDArray[_SCT2]]: ... +@overload +def atleast_3d(a0: _ArrayLike[_SCT], a1: _ArrayLike[_SCT], /, *arys: _ArrayLike[_SCT]) -> tuple[NDArray[_SCT], ...]: ... +@overload +def atleast_3d(a0: ArrayLike, /) -> NDArray[Any]: ... +@overload +def atleast_3d(a0: ArrayLike, a1: ArrayLike, /) -> tuple[NDArray[Any], NDArray[Any]]: ... +@overload +def atleast_3d(a0: ArrayLike, a1: ArrayLike, /, *ai: ArrayLike) -> tuple[NDArray[Any], ...]: ... + +# +@overload +def vstack( + tup: Sequence[_ArrayLike[_SCT]], + *, + dtype: None = ..., + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def vstack( + tup: Sequence[ArrayLike], + *, + dtype: _DTypeLike[_SCT], + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def vstack( + tup: Sequence[ArrayLike], + *, + dtype: DTypeLike = ..., + casting: _CastingKind = ... +) -> NDArray[Any]: ... + +@overload +def hstack( + tup: Sequence[_ArrayLike[_SCT]], + *, + dtype: None = ..., + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def hstack( + tup: Sequence[ArrayLike], + *, + dtype: _DTypeLike[_SCT], + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def hstack( + tup: Sequence[ArrayLike], + *, + dtype: DTypeLike = ..., + casting: _CastingKind = ... +) -> NDArray[Any]: ... + +@overload +def stack( + arrays: Sequence[_ArrayLike[_SCT]], + axis: SupportsIndex = ..., + out: None = ..., + *, + dtype: None = ..., + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def stack( + arrays: Sequence[ArrayLike], + axis: SupportsIndex = ..., + out: None = ..., + *, + dtype: _DTypeLike[_SCT], + casting: _CastingKind = ... +) -> NDArray[_SCT]: ... +@overload +def stack( + arrays: Sequence[ArrayLike], + axis: SupportsIndex = ..., + out: None = ..., + *, + dtype: DTypeLike = ..., + casting: _CastingKind = ... +) -> NDArray[Any]: ... +@overload +def stack( + arrays: Sequence[ArrayLike], + axis: SupportsIndex, + out: _ArrayT, + *, + dtype: DTypeLike | None = None, + casting: _CastingKind = "same_kind", +) -> _ArrayT: ... +@overload +def stack( + arrays: Sequence[ArrayLike], + axis: SupportsIndex = 0, + *, + out: _ArrayT, + dtype: DTypeLike | None = None, + casting: _CastingKind = "same_kind", +) -> _ArrayT: ... + +@overload +def unstack( + array: _ArrayLike[_SCT], + /, + *, + axis: int = ..., +) -> tuple[NDArray[_SCT], ...]: ... +@overload +def unstack( + array: ArrayLike, + /, + *, + axis: int = ..., +) -> tuple[NDArray[Any], ...]: ... + +@overload +def block(arrays: _ArrayLike[_SCT]) -> NDArray[_SCT]: ... +@overload +def block(arrays: ArrayLike) -> NDArray[Any]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/strings.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/strings.py new file mode 100644 index 0000000000000000000000000000000000000000..b751b5d773a0cc270d0e507eb3fba4a051b56508 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/strings.py @@ -0,0 +1,1641 @@ +""" +This module contains a set of functions for vectorized string +operations. +""" + +import sys +import numpy as np +from numpy import ( + equal, not_equal, less, less_equal, greater, greater_equal, + add, multiply as _multiply_ufunc, +) +from numpy._core.multiarray import _vec_string +from numpy._core.overrides import set_module +from numpy._core.umath import ( + isalpha, + isdigit, + isspace, + isalnum, + islower, + isupper, + istitle, + isdecimal, + isnumeric, + str_len, + find as _find_ufunc, + rfind as _rfind_ufunc, + index as _index_ufunc, + rindex as _rindex_ufunc, + count as _count_ufunc, + startswith as _startswith_ufunc, + endswith as _endswith_ufunc, + _lstrip_whitespace, + _lstrip_chars, + _rstrip_whitespace, + _rstrip_chars, + _strip_whitespace, + _strip_chars, + _replace, + _expandtabs_length, + _expandtabs, + _center, + _ljust, + _rjust, + _zfill, + _partition, + _partition_index, + _rpartition, + _rpartition_index, +) + + +def _override___module__(): + for ufunc in [ + isalnum, isalpha, isdecimal, isdigit, islower, isnumeric, isspace, + istitle, isupper, str_len, + ]: + ufunc.__module__ = "numpy.strings" + ufunc.__qualname__ = ufunc.__name__ + + +_override___module__() + + +__all__ = [ + # UFuncs + "equal", "not_equal", "less", "less_equal", "greater", "greater_equal", + "add", "multiply", "isalpha", "isdigit", "isspace", "isalnum", "islower", + "isupper", "istitle", "isdecimal", "isnumeric", "str_len", "find", + "rfind", "index", "rindex", "count", "startswith", "endswith", "lstrip", + "rstrip", "strip", "replace", "expandtabs", "center", "ljust", "rjust", + "zfill", "partition", "rpartition", + + # _vec_string - Will gradually become ufuncs as well + "upper", "lower", "swapcase", "capitalize", "title", + + # _vec_string - Will probably not become ufuncs + "mod", "decode", "encode", "translate", + + # Removed from namespace until behavior has been crystallized + # "join", "split", "rsplit", "splitlines", +] + + +MAX = np.iinfo(np.int64).max + + +def _get_num_chars(a): + """ + Helper function that returns the number of characters per field in + a string or unicode array. This is to abstract out the fact that + for a unicode array this is itemsize / 4. + """ + if issubclass(a.dtype.type, np.str_): + return a.itemsize // 4 + return a.itemsize + + +def _to_bytes_or_str_array(result, output_dtype_like): + """ + Helper function to cast a result back into an array + with the appropriate dtype if an object array must be used + as an intermediary. + """ + output_dtype_like = np.asarray(output_dtype_like) + if result.size == 0: + # Calling asarray & tolist in an empty array would result + # in losing shape information + return result.astype(output_dtype_like.dtype) + ret = np.asarray(result.tolist()) + if isinstance(output_dtype_like.dtype, np.dtypes.StringDType): + return ret.astype(type(output_dtype_like.dtype)) + return ret.astype(type(output_dtype_like.dtype)(_get_num_chars(ret))) + + +def _clean_args(*args): + """ + Helper function for delegating arguments to Python string + functions. + + Many of the Python string operations that have optional arguments + do not use 'None' to indicate a default value. In these cases, + we need to remove all None arguments, and those following them. + """ + newargs = [] + for chk in args: + if chk is None: + break + newargs.append(chk) + return newargs + + +@set_module("numpy.strings") +def multiply(a, i): + """ + Return (a * i), that is string multiple concatenation, + element-wise. + + Values in ``i`` of less than 0 are treated as 0 (which yields an + empty string). + + Parameters + ---------- + a : array_like, with ``StringDType``, ``bytes_`` or ``str_`` dtype + + i : array_like, with any integer dtype + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["a", "b", "c"]) + >>> np.strings.multiply(a, 3) + array(['aaa', 'bbb', 'ccc'], dtype='>> i = np.array([1, 2, 3]) + >>> np.strings.multiply(a, i) + array(['a', 'bb', 'ccc'], dtype='>> np.strings.multiply(np.array(['a']), i) + array(['a', 'aa', 'aaa'], dtype='>> a = np.array(['a', 'b', 'c', 'd', 'e', 'f']).reshape((2, 3)) + >>> np.strings.multiply(a, 3) + array([['aaa', 'bbb', 'ccc'], + ['ddd', 'eee', 'fff']], dtype='>> np.strings.multiply(a, i) + array([['a', 'bb', 'ccc'], + ['d', 'ee', 'fff']], dtype=' sys.maxsize / np.maximum(i, 1)): + raise MemoryError("repeated string is too long") + + buffersizes = a_len * i + out_dtype = f"{a.dtype.char}{buffersizes.max()}" + out = np.empty_like(a, shape=buffersizes.shape, dtype=out_dtype) + return _multiply_ufunc(a, i, out=out) + + +@set_module("numpy.strings") +def mod(a, values): + """ + Return (a % i), that is pre-Python 2.6 string formatting + (interpolation), element-wise for a pair of array_likes of str + or unicode. + + Parameters + ---------- + a : array_like, with `np.bytes_` or `np.str_` dtype + + values : array_like of values + These values will be element-wise interpolated into the string. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["NumPy is a %s library"]) + >>> np.strings.mod(a, values=["Python"]) + array(['NumPy is a Python library'], dtype='>> a = np.array([b'%d bytes', b'%d bits']) + >>> values = np.array([8, 64]) + >>> np.strings.mod(a, values) + array([b'8 bytes', b'64 bits'], dtype='|S7') + + """ + return _to_bytes_or_str_array( + _vec_string(a, np.object_, '__mod__', (values,)), a) + + +@set_module("numpy.strings") +def find(a, sub, start=0, end=None): + """ + For each element, return the lowest index in the string where + substring ``sub`` is found, such that ``sub`` is contained in the + range [``start``, ``end``). + + Parameters + ---------- + a : array_like, with ``StringDType``, ``bytes_`` or ``str_`` dtype + + sub : array_like, with `np.bytes_` or `np.str_` dtype + The substring to search for. + + start, end : array_like, with any integer dtype + The range to look in, interpreted as in slice notation. + + Returns + ------- + y : ndarray + Output array of ints + + See Also + -------- + str.find + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["NumPy is a Python library"]) + >>> np.strings.find(a, "Python") + array([11]) + + """ + end = end if end is not None else MAX + return _find_ufunc(a, sub, start, end) + + +@set_module("numpy.strings") +def rfind(a, sub, start=0, end=None): + """ + For each element, return the highest index in the string where + substring ``sub`` is found, such that ``sub`` is contained in the + range [``start``, ``end``). + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + sub : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + The substring to search for. + + start, end : array_like, with any integer dtype + The range to look in, interpreted as in slice notation. + + Returns + ------- + y : ndarray + Output array of ints + + See Also + -------- + str.rfind + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["Computer Science"]) + >>> np.strings.rfind(a, "Science", start=0, end=None) + array([9]) + >>> np.strings.rfind(a, "Science", start=0, end=8) + array([-1]) + >>> b = np.array(["Computer Science", "Science"]) + >>> np.strings.rfind(b, "Science", start=0, end=None) + array([9, 0]) + + """ + end = end if end is not None else MAX + return _rfind_ufunc(a, sub, start, end) + + +@set_module("numpy.strings") +def index(a, sub, start=0, end=None): + """ + Like `find`, but raises :exc:`ValueError` when the substring is not found. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + sub : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + start, end : array_like, with any integer dtype, optional + + Returns + ------- + out : ndarray + Output array of ints. + + See Also + -------- + find, str.index + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["Computer Science"]) + >>> np.strings.index(a, "Science", start=0, end=None) + array([9]) + + """ + end = end if end is not None else MAX + return _index_ufunc(a, sub, start, end) + + +@set_module("numpy.strings") +def rindex(a, sub, start=0, end=None): + """ + Like `rfind`, but raises :exc:`ValueError` when the substring `sub` is + not found. + + Parameters + ---------- + a : array-like, with `np.bytes_` or `np.str_` dtype + + sub : array-like, with `np.bytes_` or `np.str_` dtype + + start, end : array-like, with any integer dtype, optional + + Returns + ------- + out : ndarray + Output array of ints. + + See Also + -------- + rfind, str.rindex + + Examples + -------- + >>> a = np.array(["Computer Science"]) + >>> np.strings.rindex(a, "Science", start=0, end=None) + array([9]) + + """ + end = end if end is not None else MAX + return _rindex_ufunc(a, sub, start, end) + + +@set_module("numpy.strings") +def count(a, sub, start=0, end=None): + """ + Returns an array with the number of non-overlapping occurrences of + substring ``sub`` in the range [``start``, ``end``). + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + sub : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + The substring to search for. + + start, end : array_like, with any integer dtype + The range to look in, interpreted as in slice notation. + + Returns + ------- + y : ndarray + Output array of ints + + See Also + -------- + str.count + + Examples + -------- + >>> import numpy as np + >>> c = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> c + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> np.strings.count(c, 'A') + array([3, 1, 1]) + >>> np.strings.count(c, 'aA') + array([3, 1, 0]) + >>> np.strings.count(c, 'A', start=1, end=4) + array([2, 1, 1]) + >>> np.strings.count(c, 'A', start=1, end=3) + array([1, 0, 0]) + + """ + end = end if end is not None else MAX + return _count_ufunc(a, sub, start, end) + + +@set_module("numpy.strings") +def startswith(a, prefix, start=0, end=None): + """ + Returns a boolean array which is `True` where the string element + in ``a`` starts with ``prefix``, otherwise `False`. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + prefix : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + start, end : array_like, with any integer dtype + With ``start``, test beginning at that position. With ``end``, + stop comparing at that position. + + Returns + ------- + out : ndarray + Output array of bools + + See Also + -------- + str.startswith + + Examples + -------- + >>> import numpy as np + >>> s = np.array(['foo', 'bar']) + >>> s + array(['foo', 'bar'], dtype='>> np.strings.startswith(s, 'fo') + array([True, False]) + >>> np.strings.startswith(s, 'o', start=1, end=2) + array([True, False]) + + """ + end = end if end is not None else MAX + return _startswith_ufunc(a, prefix, start, end) + + +@set_module("numpy.strings") +def endswith(a, suffix, start=0, end=None): + """ + Returns a boolean array which is `True` where the string element + in ``a`` ends with ``suffix``, otherwise `False`. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + suffix : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + start, end : array_like, with any integer dtype + With ``start``, test beginning at that position. With ``end``, + stop comparing at that position. + + Returns + ------- + out : ndarray + Output array of bools + + See Also + -------- + str.endswith + + Examples + -------- + >>> import numpy as np + >>> s = np.array(['foo', 'bar']) + >>> s + array(['foo', 'bar'], dtype='>> np.strings.endswith(s, 'ar') + array([False, True]) + >>> np.strings.endswith(s, 'a', start=1, end=2) + array([False, True]) + + """ + end = end if end is not None else MAX + return _endswith_ufunc(a, suffix, start, end) + + +@set_module("numpy.strings") +def decode(a, encoding=None, errors=None): + r""" + Calls :meth:`bytes.decode` element-wise. + + The set of available codecs comes from the Python standard library, + and may be extended at runtime. For more information, see the + :mod:`codecs` module. + + Parameters + ---------- + a : array_like, with ``bytes_`` dtype + + encoding : str, optional + The name of an encoding + + errors : str, optional + Specifies how to handle encoding errors + + Returns + ------- + out : ndarray + + See Also + -------- + :py:meth:`bytes.decode` + + Notes + ----- + The type of the result will depend on the encoding specified. + + Examples + -------- + >>> import numpy as np + >>> c = np.array([b'\x81\xc1\x81\xc1\x81\xc1', b'@@\x81\xc1@@', + ... b'\x81\x82\xc2\xc1\xc2\x82\x81']) + >>> c + array([b'\x81\xc1\x81\xc1\x81\xc1', b'@@\x81\xc1@@', + b'\x81\x82\xc2\xc1\xc2\x82\x81'], dtype='|S7') + >>> np.strings.decode(c, encoding='cp037') + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> import numpy as np + >>> a = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> np.strings.encode(a, encoding='cp037') + array([b'\x81\xc1\x81\xc1\x81\xc1', b'@@\x81\xc1@@', + b'\x81\x82\xc2\xc1\xc2\x82\x81'], dtype='|S7') + + """ + return _to_bytes_or_str_array( + _vec_string(a, np.object_, 'encode', _clean_args(encoding, errors)), + np.bytes_(b'')) + + +@set_module("numpy.strings") +def expandtabs(a, tabsize=8): + """ + Return a copy of each string element where all tab characters are + replaced by one or more spaces. + + Calls :meth:`str.expandtabs` element-wise. + + Return a copy of each string element where all tab characters are + replaced by one or more spaces, depending on the current column + and the given `tabsize`. The column number is reset to zero after + each newline occurring in the string. This doesn't understand other + non-printing characters or escape sequences. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + Input array + tabsize : int, optional + Replace tabs with `tabsize` number of spaces. If not given defaults + to 8 spaces. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input type + + See Also + -------- + str.expandtabs + + Examples + -------- + >>> import numpy as np + >>> a = np.array(['\t\tHello\tworld']) + >>> np.strings.expandtabs(a, tabsize=4) # doctest: +SKIP + array([' Hello world'], dtype='>> import numpy as np + >>> c = np.array(['a1b2','1b2a','b2a1','2a1b']); c + array(['a1b2', '1b2a', 'b2a1', '2a1b'], dtype='>> np.strings.center(c, width=9) + array([' a1b2 ', ' 1b2a ', ' b2a1 ', ' 2a1b '], dtype='>> np.strings.center(c, width=9, fillchar='*') + array(['***a1b2**', '***1b2a**', '***b2a1**', '***2a1b**'], dtype='>> np.strings.center(c, width=1) + array(['a1b2', '1b2a', 'b2a1', '2a1b'], dtype='>> import numpy as np + >>> c = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> np.strings.ljust(c, width=3) + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> np.strings.ljust(c, width=9) + array(['aAaAaA ', ' aA ', 'abBABba '], dtype='>> import numpy as np + >>> a = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> np.strings.rjust(a, width=3) + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> np.strings.rjust(a, width=9) + array([' aAaAaA', ' aA ', ' abBABba'], dtype='>> import numpy as np + >>> np.strings.zfill(['1', '-1', '+1'], 3) + array(['001', '-01', '+01'], dtype='>> import numpy as np + >>> c = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> c + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> np.strings.lstrip(c, 'a') + array(['AaAaA', ' aA ', 'bBABba'], dtype='>> np.strings.lstrip(c, 'A') # leaves c unchanged + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> (np.strings.lstrip(c, ' ') == np.strings.lstrip(c, '')).all() + np.False_ + >>> (np.strings.lstrip(c, ' ') == np.strings.lstrip(c)).all() + np.True_ + + """ + if chars is None: + return _lstrip_whitespace(a) + return _lstrip_chars(a, chars) + + +@set_module("numpy.strings") +def rstrip(a, chars=None): + """ + For each element in `a`, return a copy with the trailing characters + removed. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + chars : scalar with the same dtype as ``a``, optional + The ``chars`` argument is a string specifying the set of + characters to be removed. If ``None``, the ``chars`` + argument defaults to removing whitespace. The ``chars`` argument + is not a prefix or suffix; rather, all combinations of its + values are stripped. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + See Also + -------- + str.rstrip + + Examples + -------- + >>> import numpy as np + >>> c = np.array(['aAaAaA', 'abBABba']) + >>> c + array(['aAaAaA', 'abBABba'], dtype='>> np.strings.rstrip(c, 'a') + array(['aAaAaA', 'abBABb'], dtype='>> np.strings.rstrip(c, 'A') + array(['aAaAa', 'abBABba'], dtype='>> import numpy as np + >>> c = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> c + array(['aAaAaA', ' aA ', 'abBABba'], dtype='>> np.strings.strip(c) + array(['aAaAaA', 'aA', 'abBABba'], dtype='>> np.strings.strip(c, 'a') + array(['AaAaA', ' aA ', 'bBABb'], dtype='>> np.strings.strip(c, 'A') + array(['aAaAa', ' aA ', 'abBABba'], dtype='>> import numpy as np + >>> c = np.array(['a1b c', '1bca', 'bca1']); c + array(['a1b c', '1bca', 'bca1'], dtype='>> np.strings.upper(c) + array(['A1B C', '1BCA', 'BCA1'], dtype='>> import numpy as np + >>> c = np.array(['A1B C', '1BCA', 'BCA1']); c + array(['A1B C', '1BCA', 'BCA1'], dtype='>> np.strings.lower(c) + array(['a1b c', '1bca', 'bca1'], dtype='>> import numpy as np + >>> c=np.array(['a1B c','1b Ca','b Ca1','cA1b'],'S5'); c + array(['a1B c', '1b Ca', 'b Ca1', 'cA1b'], + dtype='|S5') + >>> np.strings.swapcase(c) + array(['A1b C', '1B cA', 'B cA1', 'Ca1B'], + dtype='|S5') + + """ + a_arr = np.asarray(a) + return _vec_string(a_arr, a_arr.dtype, 'swapcase') + + +@set_module("numpy.strings") +def capitalize(a): + """ + Return a copy of ``a`` with only the first character of each element + capitalized. + + Calls :meth:`str.capitalize` element-wise. + + For byte strings, this method is locale-dependent. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + Input array of strings to capitalize. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + See Also + -------- + str.capitalize + + Examples + -------- + >>> import numpy as np + >>> c = np.array(['a1b2','1b2a','b2a1','2a1b'],'S4'); c + array(['a1b2', '1b2a', 'b2a1', '2a1b'], + dtype='|S4') + >>> np.strings.capitalize(c) + array(['A1b2', '1b2a', 'B2a1', '2a1b'], + dtype='|S4') + + """ + a_arr = np.asarray(a) + return _vec_string(a_arr, a_arr.dtype, 'capitalize') + + +@set_module("numpy.strings") +def title(a): + """ + Return element-wise title cased version of string or unicode. + + Title case words start with uppercase characters, all remaining cased + characters are lowercase. + + Calls :meth:`str.title` element-wise. + + For 8-bit strings, this method is locale-dependent. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + Input array. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + See Also + -------- + str.title + + Examples + -------- + >>> import numpy as np + >>> c=np.array(['a1b c','1b ca','b ca1','ca1b'],'S5'); c + array(['a1b c', '1b ca', 'b ca1', 'ca1b'], + dtype='|S5') + >>> np.strings.title(c) + array(['A1B C', '1B Ca', 'B Ca1', 'Ca1B'], + dtype='|S5') + + """ + a_arr = np.asarray(a) + return _vec_string(a_arr, a_arr.dtype, 'title') + + +@set_module("numpy.strings") +def replace(a, old, new, count=-1): + """ + For each element in ``a``, return a copy of the string with + occurrences of substring ``old`` replaced by ``new``. + + Parameters + ---------- + a : array_like, with ``bytes_`` or ``str_`` dtype + + old, new : array_like, with ``bytes_`` or ``str_`` dtype + + count : array_like, with ``int_`` dtype + If the optional argument ``count`` is given, only the first + ``count`` occurrences are replaced. + + Returns + ------- + out : ndarray + Output array of ``StringDType``, ``bytes_`` or ``str_`` dtype, + depending on input types + + See Also + -------- + str.replace + + Examples + -------- + >>> import numpy as np + >>> a = np.array(["That is a mango", "Monkeys eat mangos"]) + >>> np.strings.replace(a, 'mango', 'banana') + array(['That is a banana', 'Monkeys eat bananas'], dtype='>> a = np.array(["The dish is fresh", "This is it"]) + >>> np.strings.replace(a, 'is', 'was') + array(['The dwash was fresh', 'Thwas was it'], dtype='>> import numpy as np + >>> np.strings.join('-', 'osd') # doctest: +SKIP + array('o-s-d', dtype='>> np.strings.join(['-', '.'], ['ghc', 'osd']) # doctest: +SKIP + array(['g-h-c', 'o.s.d'], dtype='>> import numpy as np + >>> x = np.array("Numpy is nice!") + >>> np.strings.split(x, " ") # doctest: +SKIP + array(list(['Numpy', 'is', 'nice!']), dtype=object) # doctest: +SKIP + + >>> np.strings.split(x, " ", 1) # doctest: +SKIP + array(list(['Numpy', 'is nice!']), dtype=object) # doctest: +SKIP + + See Also + -------- + str.split, rsplit + + """ + # This will return an array of lists of different sizes, so we + # leave it as an object array + return _vec_string( + a, np.object_, 'split', [sep] + _clean_args(maxsplit)) + + +def _rsplit(a, sep=None, maxsplit=None): + """ + For each element in `a`, return a list of the words in the + string, using `sep` as the delimiter string. + + Calls :meth:`str.rsplit` element-wise. + + Except for splitting from the right, `rsplit` + behaves like `split`. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + sep : str or unicode, optional + If `sep` is not specified or None, any whitespace string + is a separator. + maxsplit : int, optional + If `maxsplit` is given, at most `maxsplit` splits are done, + the rightmost ones. + + Returns + ------- + out : ndarray + Array of list objects + + See Also + -------- + str.rsplit, split + + Examples + -------- + >>> import numpy as np + >>> a = np.array(['aAaAaA', 'abBABba']) + >>> np.strings.rsplit(a, 'A') # doctest: +SKIP + array([list(['a', 'a', 'a', '']), # doctest: +SKIP + list(['abB', 'Bba'])], dtype=object) # doctest: +SKIP + + """ + # This will return an array of lists of different sizes, so we + # leave it as an object array + return _vec_string( + a, np.object_, 'rsplit', [sep] + _clean_args(maxsplit)) + + +def _splitlines(a, keepends=None): + """ + For each element in `a`, return a list of the lines in the + element, breaking at line boundaries. + + Calls :meth:`str.splitlines` element-wise. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + + keepends : bool, optional + Line breaks are not included in the resulting list unless + keepends is given and true. + + Returns + ------- + out : ndarray + Array of list objects + + See Also + -------- + str.splitlines + + Examples + -------- + >>> np.char.splitlines("first line\\nsecond line") + array(list(['first line', 'second line']), dtype=object) + >>> a = np.array(["first\\nsecond", "third\\nfourth"]) + >>> np.char.splitlines(a) + array([list(['first', 'second']), list(['third', 'fourth'])], dtype=object) + + """ + return _vec_string( + a, np.object_, 'splitlines', _clean_args(keepends)) + + +@set_module("numpy.strings") +def partition(a, sep): + """ + Partition each element in ``a`` around ``sep``. + + For each element in ``a``, split the element at the first + occurrence of ``sep``, and return a 3-tuple containing the part + before the separator, the separator itself, and the part after + the separator. If the separator is not found, the first item of + the tuple will contain the whole string, and the second and third + ones will be the empty string. + + Parameters + ---------- + a : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + Input array + sep : array-like, with ``StringDType``, ``bytes_``, or ``str_`` dtype + Separator to split each string element in ``a``. + + Returns + ------- + out : 3-tuple: + - array with ``StringDType``, ``bytes_`` or ``str_`` dtype with the + part before the separator + - array with ``StringDType``, ``bytes_`` or ``str_`` dtype with the + separator + - array with ``StringDType``, ``bytes_`` or ``str_`` dtype with the + part after the separator + + See Also + -------- + str.partition + + Examples + -------- + >>> import numpy as np + >>> x = np.array(["Numpy is nice!"]) + >>> np.strings.partition(x, " ") + (array(['Numpy'], dtype='>> import numpy as np + >>> a = np.array(['aAaAaA', ' aA ', 'abBABba']) + >>> np.strings.rpartition(a, 'A') + (array(['aAaAa', ' a', 'abB'], dtype='>> import numpy as np + >>> a = np.array(['a1b c', '1bca', 'bca1']) + >>> table = a[0].maketrans('abc', '123') + >>> deletechars = ' ' + >>> np.char.translate(a, table, deletechars) + array(['112 3', '1231', '2311'], dtype=' NDArray[np.bool]: ... +@overload +def equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def not_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def not_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def not_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def greater_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def greater_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def greater_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def less_equal(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def less_equal(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def less_equal(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def greater(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def greater(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def greater(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def less(x1: U_co, x2: U_co) -> NDArray[np.bool]: ... +@overload +def less(x1: S_co, x2: S_co) -> NDArray[np.bool]: ... +@overload +def less(x1: T_co, x2: T_co) -> NDArray[np.bool]: ... + +@overload +def add(x1: U_co, x2: U_co) -> NDArray[np.str_]: ... +@overload +def add(x1: S_co, x2: S_co) -> NDArray[np.bytes_]: ... +@overload +def add(x1: _StringDTypeSupportsArray, x2: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def add(x1: T_co, x2: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def multiply(a: U_co, i: i_co) -> NDArray[np.str_]: ... +@overload +def multiply(a: S_co, i: i_co) -> NDArray[np.bytes_]: ... +@overload +def multiply(a: _StringDTypeSupportsArray, i: i_co) -> _StringDTypeArray: ... +@overload +def multiply(a: T_co, i: i_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def mod(a: U_co, value: object) -> NDArray[np.str_]: ... +@overload +def mod(a: S_co, value: object) -> NDArray[np.bytes_]: ... +@overload +def mod(a: _StringDTypeSupportsArray, value: object) -> _StringDTypeArray: ... +@overload +def mod(a: T_co, value: object) -> _StringDTypeOrUnicodeArray: ... + +def isalpha(x: UST_co) -> NDArray[np.bool]: ... +def isalnum(a: UST_co) -> NDArray[np.bool]: ... +def isdigit(x: UST_co) -> NDArray[np.bool]: ... +def isspace(x: UST_co) -> NDArray[np.bool]: ... +def isdecimal(x: U_co | T_co) -> NDArray[np.bool]: ... +def isnumeric(x: U_co | T_co) -> NDArray[np.bool]: ... +def islower(a: UST_co) -> NDArray[np.bool]: ... +def istitle(a: UST_co) -> NDArray[np.bool]: ... +def isupper(a: UST_co) -> NDArray[np.bool]: ... + +def str_len(x: UST_co) -> NDArray[np.int_]: ... + +@overload +def find( + a: U_co, + sub: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def find( + a: S_co, + sub: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def find( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def rfind( + a: U_co, + sub: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def rfind( + a: S_co, + sub: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def rfind( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def index( + a: U_co, + sub: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def index( + a: S_co, + sub: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def index( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def rindex( + a: U_co, + sub: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def rindex( + a: S_co, + sub: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def rindex( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def count( + a: U_co, + sub: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def count( + a: S_co, + sub: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... +@overload +def count( + a: T_co, + sub: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.int_]: ... + +@overload +def startswith( + a: U_co, + prefix: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... +@overload +def startswith( + a: S_co, + prefix: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... +@overload +def startswith( + a: T_co, + prefix: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... + +@overload +def endswith( + a: U_co, + suffix: U_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... +@overload +def endswith( + a: S_co, + suffix: S_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... +@overload +def endswith( + a: T_co, + suffix: T_co, + start: i_co = ..., + end: i_co | None = ..., +) -> NDArray[np.bool]: ... + +def decode( + a: S_co, + encoding: str | None = None, + errors: str | None = None, +) -> NDArray[np.str_]: ... +def encode( + a: U_co | T_co, + encoding: str | None = None, + errors: str | None = None, +) -> NDArray[np.bytes_]: ... + +@overload +def expandtabs(a: U_co, tabsize: i_co = ...) -> NDArray[np.str_]: ... +@overload +def expandtabs(a: S_co, tabsize: i_co = ...) -> NDArray[np.bytes_]: ... +@overload +def expandtabs(a: _StringDTypeSupportsArray, tabsize: i_co = ...) -> _StringDTypeArray: ... +@overload +def expandtabs(a: T_co, tabsize: i_co = ...) -> _StringDTypeOrUnicodeArray: ... + +@overload +def center(a: U_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.str_]: ... +@overload +def center(a: S_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.bytes_]: ... +@overload +def center(a: _StringDTypeSupportsArray, width: i_co, fillchar: UST_co = " ") -> _StringDTypeArray: ... +@overload +def center(a: T_co, width: i_co, fillchar: UST_co = " ") -> _StringDTypeOrUnicodeArray: ... + +@overload +def ljust(a: U_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.str_]: ... +@overload +def ljust(a: S_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.bytes_]: ... +@overload +def ljust(a: _StringDTypeSupportsArray, width: i_co, fillchar: UST_co = " ") -> _StringDTypeArray: ... +@overload +def ljust(a: T_co, width: i_co, fillchar: UST_co = " ") -> _StringDTypeOrUnicodeArray: ... + +@overload +def rjust(a: U_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.str_]: ... +@overload +def rjust(a: S_co, width: i_co, fillchar: UST_co = " ") -> NDArray[np.bytes_]: ... +@overload +def rjust(a: _StringDTypeSupportsArray, width: i_co, fillchar: UST_co = " ") -> _StringDTypeArray: ... +@overload +def rjust(a: T_co, width: i_co, fillchar: UST_co = " ") -> _StringDTypeOrUnicodeArray: ... + +@overload +def lstrip(a: U_co, chars: U_co | None = None) -> NDArray[np.str_]: ... +@overload +def lstrip(a: S_co, chars: S_co | None = None) -> NDArray[np.bytes_]: ... +@overload +def lstrip(a: _StringDTypeSupportsArray, chars: T_co | None = None) -> _StringDTypeArray: ... +@overload +def lstrip(a: T_co, chars: T_co | None = None) -> _StringDTypeOrUnicodeArray: ... + +@overload +def rstrip(a: U_co, chars: U_co | None = None) -> NDArray[np.str_]: ... +@overload +def rstrip(a: S_co, chars: S_co | None = None) -> NDArray[np.bytes_]: ... +@overload +def rstrip(a: _StringDTypeSupportsArray, chars: T_co | None = None) -> _StringDTypeArray: ... +@overload +def rstrip(a: T_co, chars: T_co | None = None) -> _StringDTypeOrUnicodeArray: ... + +@overload +def strip(a: U_co, chars: U_co | None = None) -> NDArray[np.str_]: ... +@overload +def strip(a: S_co, chars: S_co | None = None) -> NDArray[np.bytes_]: ... +@overload +def strip(a: _StringDTypeSupportsArray, chars: T_co | None = None) -> _StringDTypeArray: ... +@overload +def strip(a: T_co, chars: T_co | None = None) -> _StringDTypeOrUnicodeArray: ... + +@overload +def zfill(a: U_co, width: i_co) -> NDArray[np.str_]: ... +@overload +def zfill(a: S_co, width: i_co) -> NDArray[np.bytes_]: ... +@overload +def zfill(a: _StringDTypeSupportsArray, width: i_co) -> _StringDTypeArray: ... +@overload +def zfill(a: T_co, width: i_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def upper(a: U_co) -> NDArray[np.str_]: ... +@overload +def upper(a: S_co) -> NDArray[np.bytes_]: ... +@overload +def upper(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def upper(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def lower(a: U_co) -> NDArray[np.str_]: ... +@overload +def lower(a: S_co) -> NDArray[np.bytes_]: ... +@overload +def lower(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def lower(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def swapcase(a: U_co) -> NDArray[np.str_]: ... +@overload +def swapcase(a: S_co) -> NDArray[np.bytes_]: ... +@overload +def swapcase(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def swapcase(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def capitalize(a: U_co) -> NDArray[np.str_]: ... +@overload +def capitalize(a: S_co) -> NDArray[np.bytes_]: ... +@overload +def capitalize(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def capitalize(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def title(a: U_co) -> NDArray[np.str_]: ... +@overload +def title(a: S_co) -> NDArray[np.bytes_]: ... +@overload +def title(a: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def title(a: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def replace( + a: U_co, + old: U_co, + new: U_co, + count: i_co = ..., +) -> NDArray[np.str_]: ... +@overload +def replace( + a: S_co, + old: S_co, + new: S_co, + count: i_co = ..., +) -> NDArray[np.bytes_]: ... +@overload +def replace( + a: _StringDTypeSupportsArray, + old: _StringDTypeSupportsArray, + new: _StringDTypeSupportsArray, + count: i_co = ..., +) -> _StringDTypeArray: ... +@overload +def replace( + a: T_co, + old: T_co, + new: T_co, + count: i_co = ..., +) -> _StringDTypeOrUnicodeArray: ... + +@overload +def partition(a: U_co, sep: U_co) -> NDArray[np.str_]: ... +@overload +def partition(a: S_co, sep: S_co) -> NDArray[np.bytes_]: ... +@overload +def partition(a: _StringDTypeSupportsArray, sep: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def partition(a: T_co, sep: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def rpartition(a: U_co, sep: U_co) -> NDArray[np.str_]: ... +@overload +def rpartition(a: S_co, sep: S_co) -> NDArray[np.bytes_]: ... +@overload +def rpartition(a: _StringDTypeSupportsArray, sep: _StringDTypeSupportsArray) -> _StringDTypeArray: ... +@overload +def rpartition(a: T_co, sep: T_co) -> _StringDTypeOrUnicodeArray: ... + +@overload +def translate( + a: U_co, + table: str, + deletechars: str | None = None, +) -> NDArray[np.str_]: ... +@overload +def translate( + a: S_co, + table: str, + deletechars: str | None = None, +) -> NDArray[np.bytes_]: ... +@overload +def translate( + a: _StringDTypeSupportsArray, + table: str, + deletechars: str | None = None, +) -> _StringDTypeArray: ... +@overload +def translate( + a: T_co, + table: str, + deletechars: str | None = None, +) -> _StringDTypeOrUnicodeArray: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/__pycache__/_natype.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/__pycache__/_natype.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..470a53f35a503e3efddb850396446f7a6bfeede9 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/__pycache__/_natype.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_locales.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_locales.py new file mode 100644 index 0000000000000000000000000000000000000000..2244e0abda7100e345272073b6728fcb6b2c23b3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_locales.py @@ -0,0 +1,72 @@ +"""Provide class for testing in French locale + +""" +import sys +import locale + +import pytest + +__ALL__ = ['CommaDecimalPointLocale'] + + +def find_comma_decimal_point_locale(): + """See if platform has a decimal point as comma locale. + + Find a locale that uses a comma instead of a period as the + decimal point. + + Returns + ------- + old_locale: str + Locale when the function was called. + new_locale: {str, None) + First French locale found, None if none found. + + """ + if sys.platform == 'win32': + locales = ['FRENCH'] + else: + locales = ['fr_FR', 'fr_FR.UTF-8', 'fi_FI', 'fi_FI.UTF-8'] + + old_locale = locale.getlocale(locale.LC_NUMERIC) + new_locale = None + try: + for loc in locales: + try: + locale.setlocale(locale.LC_NUMERIC, loc) + new_locale = loc + break + except locale.Error: + pass + finally: + locale.setlocale(locale.LC_NUMERIC, locale=old_locale) + return old_locale, new_locale + + +class CommaDecimalPointLocale: + """Sets LC_NUMERIC to a locale with comma as decimal point. + + Classes derived from this class have setup and teardown methods that run + tests with locale.LC_NUMERIC set to a locale where commas (',') are used as + the decimal point instead of periods ('.'). On exit the locale is restored + to the initial locale. It also serves as context manager with the same + effect. If no such locale is available, the test is skipped. + + """ + (cur_locale, tst_locale) = find_comma_decimal_point_locale() + + def setup_method(self): + if self.tst_locale is None: + pytest.skip("No French locale available") + locale.setlocale(locale.LC_NUMERIC, locale=self.tst_locale) + + def teardown_method(self): + locale.setlocale(locale.LC_NUMERIC, locale=self.cur_locale) + + def __enter__(self): + if self.tst_locale is None: + pytest.skip("No French locale available") + locale.setlocale(locale.LC_NUMERIC, locale=self.tst_locale) + + def __exit__(self, type, value, traceback): + locale.setlocale(locale.LC_NUMERIC, locale=self.cur_locale) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_natype.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_natype.py new file mode 100644 index 0000000000000000000000000000000000000000..e529e548cf1ebc066db31431804202e79bfc9d20 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/_natype.py @@ -0,0 +1,198 @@ +# Vendored implementation of pandas.NA, adapted from pandas/_libs/missing.pyx +# +# This is vendored to avoid adding pandas as a test dependency. + +__all__ = ["pd_NA"] + +import numbers + +import numpy as np + +def _create_binary_propagating_op(name, is_divmod=False): + is_cmp = name.strip("_") in ["eq", "ne", "le", "lt", "ge", "gt"] + + def method(self, other): + if ( + other is pd_NA + or isinstance(other, (str, bytes)) + or isinstance(other, (numbers.Number, np.bool)) + or isinstance(other, np.ndarray) + and not other.shape + ): + # Need the other.shape clause to handle NumPy scalars, + # since we do a setitem on `out` below, which + # won't work for NumPy scalars. + if is_divmod: + return pd_NA, pd_NA + else: + return pd_NA + + elif isinstance(other, np.ndarray): + out = np.empty(other.shape, dtype=object) + out[:] = pd_NA + + if is_divmod: + return out, out.copy() + else: + return out + + elif is_cmp and isinstance(other, (np.datetime64, np.timedelta64)): + return pd_NA + + elif isinstance(other, np.datetime64): + if name in ["__sub__", "__rsub__"]: + return pd_NA + + elif isinstance(other, np.timedelta64): + if name in ["__sub__", "__rsub__", "__add__", "__radd__"]: + return pd_NA + + return NotImplemented + + method.__name__ = name + return method + + +def _create_unary_propagating_op(name: str): + def method(self): + return pd_NA + + method.__name__ = name + return method + + +class NAType: + def __repr__(self) -> str: + return "" + + def __format__(self, format_spec) -> str: + try: + return self.__repr__().__format__(format_spec) + except ValueError: + return self.__repr__() + + def __bool__(self): + raise TypeError("boolean value of NA is ambiguous") + + def __hash__(self): + exponent = 31 if is_32bit else 61 + return 2**exponent - 1 + + def __reduce__(self): + return "pd_NA" + + # Binary arithmetic and comparison ops -> propagate + + __add__ = _create_binary_propagating_op("__add__") + __radd__ = _create_binary_propagating_op("__radd__") + __sub__ = _create_binary_propagating_op("__sub__") + __rsub__ = _create_binary_propagating_op("__rsub__") + __mul__ = _create_binary_propagating_op("__mul__") + __rmul__ = _create_binary_propagating_op("__rmul__") + __matmul__ = _create_binary_propagating_op("__matmul__") + __rmatmul__ = _create_binary_propagating_op("__rmatmul__") + __truediv__ = _create_binary_propagating_op("__truediv__") + __rtruediv__ = _create_binary_propagating_op("__rtruediv__") + __floordiv__ = _create_binary_propagating_op("__floordiv__") + __rfloordiv__ = _create_binary_propagating_op("__rfloordiv__") + __mod__ = _create_binary_propagating_op("__mod__") + __rmod__ = _create_binary_propagating_op("__rmod__") + __divmod__ = _create_binary_propagating_op("__divmod__", is_divmod=True) + __rdivmod__ = _create_binary_propagating_op("__rdivmod__", is_divmod=True) + # __lshift__ and __rshift__ are not implemented + + __eq__ = _create_binary_propagating_op("__eq__") + __ne__ = _create_binary_propagating_op("__ne__") + __le__ = _create_binary_propagating_op("__le__") + __lt__ = _create_binary_propagating_op("__lt__") + __gt__ = _create_binary_propagating_op("__gt__") + __ge__ = _create_binary_propagating_op("__ge__") + + # Unary ops + + __neg__ = _create_unary_propagating_op("__neg__") + __pos__ = _create_unary_propagating_op("__pos__") + __abs__ = _create_unary_propagating_op("__abs__") + __invert__ = _create_unary_propagating_op("__invert__") + + # pow has special + def __pow__(self, other): + if other is pd_NA: + return pd_NA + elif isinstance(other, (numbers.Number, np.bool)): + if other == 0: + # returning positive is correct for +/- 0. + return type(other)(1) + else: + return pd_NA + elif util.is_array(other): + return np.where(other == 0, other.dtype.type(1), pd_NA) + + return NotImplemented + + def __rpow__(self, other): + if other is pd_NA: + return pd_NA + elif isinstance(other, (numbers.Number, np.bool)): + if other == 1: + return other + else: + return pd_NA + elif util.is_array(other): + return np.where(other == 1, other, pd_NA) + return NotImplemented + + # Logical ops using Kleene logic + + def __and__(self, other): + if other is False: + return False + elif other is True or other is pd_NA: + return pd_NA + return NotImplemented + + __rand__ = __and__ + + def __or__(self, other): + if other is True: + return True + elif other is False or other is pd_NA: + return pd_NA + return NotImplemented + + __ror__ = __or__ + + def __xor__(self, other): + if other is False or other is True or other is pd_NA: + return pd_NA + return NotImplemented + + __rxor__ = __xor__ + + __array_priority__ = 1000 + _HANDLED_TYPES = (np.ndarray, numbers.Number, str, np.bool) + + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + types = self._HANDLED_TYPES + (NAType,) + for x in inputs: + if not isinstance(x, types): + return NotImplemented + + if method != "__call__": + raise ValueError(f"ufunc method '{method}' not supported for NA") + result = maybe_dispatch_ufunc_to_dunder_op( + self, ufunc, method, *inputs, **kwargs + ) + if result is NotImplemented: + # For a NumPy ufunc that's not a binop, like np.logaddexp + index = [i for i, x in enumerate(inputs) if x is pd_NA][0] + result = np.broadcast_arrays(*inputs)[index] + if result.ndim == 0: + result = result.item() + if ufunc.nout > 1: + result = (pd_NA,) * ufunc.nout + + return result + + +pd_NA = NAType() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/data/recarray_from_file.fits b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/data/recarray_from_file.fits new file mode 100644 index 0000000000000000000000000000000000000000..ca48ee85153645a7510e201d574e9b119c089dce Binary files /dev/null and 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b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/data/umath-validation-set-cos.csv @@ -0,0 +1,1375 @@ +dtype,input,output,ulperrortol +## +ve denormals ## +np.float32,0x004b4716,0x3f800000,2 +np.float32,0x007b2490,0x3f800000,2 +np.float32,0x007c99fa,0x3f800000,2 +np.float32,0x00734a0c,0x3f800000,2 +np.float32,0x0070de24,0x3f800000,2 +np.float32,0x007fffff,0x3f800000,2 +np.float32,0x00000001,0x3f800000,2 +## -ve denormals ## +np.float32,0x80495d65,0x3f800000,2 +np.float32,0x806894f6,0x3f800000,2 +np.float32,0x80555a76,0x3f800000,2 +np.float32,0x804e1fb8,0x3f800000,2 +np.float32,0x80687de9,0x3f800000,2 +np.float32,0x807fffff,0x3f800000,2 +np.float32,0x80000001,0x3f800000,2 +## +/-0.0f, +/-FLT_MIN +/-FLT_MAX ## +np.float32,0x00000000,0x3f800000,2 +np.float32,0x80000000,0x3f800000,2 +np.float32,0x00800000,0x3f800000,2 +np.float32,0x80800000,0x3f800000,2 +## 1.00f + 0x00000001 ## +np.float32,0x3f800000,0x3f0a5140,2 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0000000000000000000000000000000000000000..b8f6b08757d5bddbec06328ac2c3f6b694d85fd3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/data/umath-validation-set-log.csv @@ -0,0 +1,271 @@ +dtype,input,output,ulperrortol +## +ve denormals ## +np.float32,0x004b4716,0xc2afbc1b,4 +np.float32,0x007b2490,0xc2aec01e,4 +np.float32,0x007c99fa,0xc2aeba17,4 +np.float32,0x00734a0c,0xc2aee1dc,4 +np.float32,0x0070de24,0xc2aeecba,4 +np.float32,0x007fffff,0xc2aeac50,4 +np.float32,0x00000001,0xc2ce8ed0,4 +## -ve denormals ## +np.float32,0x80495d65,0xffc00000,4 +np.float32,0x806894f6,0xffc00000,4 +np.float32,0x80555a76,0xffc00000,4 +np.float32,0x804e1fb8,0xffc00000,4 +np.float32,0x80687de9,0xffc00000,4 +np.float32,0x807fffff,0xffc00000,4 +np.float32,0x80000001,0xffc00000,4 +## +/-0.0f, +/-FLT_MIN +/-FLT_MAX ## +np.float32,0x00000000,0xff800000,4 +np.float32,0x80000000,0xff800000,4 +np.float32,0x7f7fffff,0x42b17218,4 +np.float32,0x80800000,0xffc00000,4 +np.float32,0xff7fffff,0xffc00000,4 +## 1.00f + 0x00000001 ## +np.float32,0x3f800000,0x00000000,4 +np.float32,0x3f800001,0x33ffffff,4 +np.float32,0x3f800002,0x347ffffe,4 +np.float32,0x3f7fffff,0xb3800000,4 +np.float32,0x3f7ffffe,0xb4000000,4 +np.float32,0x3f7ffffd,0xb4400001,4 +np.float32,0x402df853,0x3f7ffffe,4 +np.float32,0x402df854,0x3f7fffff,4 +np.float32,0x402df855,0x3f800000,4 +np.float32,0x402df856,0x3f800001,4 +np.float32,0x3ebc5ab0,0xbf800001,4 +np.float32,0x3ebc5ab1,0xbf800000,4 +np.float32,0x3ebc5ab2,0xbf800000,4 +np.float32,0x3ebc5ab3,0xbf7ffffe,4 +np.float32,0x423ef575,0x407768ab,4 +np.float32,0x427b8c61,0x408485dd,4 +np.float32,0x4211e9ee,0x406630b0,4 +np.float32,0x424d5c41,0x407c0fed,4 +np.float32,0x42be722a,0x4091cc91,4 +np.float32,0x42b73d30,0x4090908b,4 +np.float32,0x427e48e2,0x4084de7f,4 +np.float32,0x428f759b,0x4088bba3,4 +np.float32,0x41629069,0x4029a0cc,4 +np.float32,0x4272c99d,0x40836379,4 +np.float32,0x4d1b7458,0x4197463d,4 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+np.float64,0x3fe79584a9ef2b09,0x3fe9c71fa9e40eb5,1 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/checks.pyx b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/checks.pyx new file mode 100644 index 0000000000000000000000000000000000000000..028dc6a6c9e45dfa83b3afacf53f6b922ad7049b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/checks.pyx @@ -0,0 +1,283 @@ +#cython: language_level=3 + +""" +Functions in this module give python-space wrappers for cython functions +exposed in numpy/__init__.pxd, so they can be tested in test_cython.py +""" +cimport numpy as cnp +cnp.import_array() + + +def is_td64(obj): + return cnp.is_timedelta64_object(obj) + + +def is_dt64(obj): + return cnp.is_datetime64_object(obj) + + +def get_dt64_value(obj): + return cnp.get_datetime64_value(obj) + + +def get_td64_value(obj): + return cnp.get_timedelta64_value(obj) + + +def get_dt64_unit(obj): + return cnp.get_datetime64_unit(obj) + + +def is_integer(obj): + return isinstance(obj, (cnp.integer, int)) + + +def get_datetime_iso_8601_strlen(): + return cnp.get_datetime_iso_8601_strlen(0, cnp.NPY_FR_ns) + + +def convert_datetime64_to_datetimestruct(): + cdef: + cnp.npy_datetimestruct dts + cnp.PyArray_DatetimeMetaData meta + cnp.int64_t value = 1647374515260292 + # i.e. (time.time() * 10**6) at 2022-03-15 20:01:55.260292 UTC + + meta.base = cnp.NPY_FR_us + meta.num = 1 + cnp.convert_datetime64_to_datetimestruct(&meta, value, &dts) + return dts + + +def make_iso_8601_datetime(dt: "datetime"): + cdef: + cnp.npy_datetimestruct dts + char result[36] # 36 corresponds to NPY_FR_s passed below + int local = 0 + int utc = 0 + int tzoffset = 0 + + dts.year = dt.year + dts.month = dt.month + dts.day = dt.day + dts.hour = dt.hour + dts.min = dt.minute + dts.sec = dt.second + dts.us = dt.microsecond + dts.ps = dts.as = 0 + + cnp.make_iso_8601_datetime( + &dts, + result, + sizeof(result), + local, + utc, + cnp.NPY_FR_s, + tzoffset, + cnp.NPY_NO_CASTING, + ) + return result + + +cdef cnp.broadcast multiiter_from_broadcast_obj(object bcast): + cdef dict iter_map = { + 1: cnp.PyArray_MultiIterNew1, + 2: cnp.PyArray_MultiIterNew2, + 3: cnp.PyArray_MultiIterNew3, + 4: cnp.PyArray_MultiIterNew4, + 5: cnp.PyArray_MultiIterNew5, + } + arrays = [x.base for x in bcast.iters] + cdef cnp.broadcast result = iter_map[len(arrays)](*arrays) + return result + + +def get_multiiter_size(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return multi.size + + +def get_multiiter_number_of_dims(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return multi.nd + + +def get_multiiter_current_index(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return multi.index + + +def get_multiiter_num_of_iterators(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return multi.numiter + + +def get_multiiter_shape(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return tuple([multi.dimensions[i] for i in range(bcast.nd)]) + + +def get_multiiter_iters(bcast: "broadcast"): + cdef cnp.broadcast multi = multiiter_from_broadcast_obj(bcast) + return tuple([multi.iters[i] for i in range(bcast.numiter)]) + + +def get_default_integer(): + if cnp.NPY_DEFAULT_INT == cnp.NPY_LONG: + return cnp.dtype("long") + if cnp.NPY_DEFAULT_INT == cnp.NPY_INTP: + return cnp.dtype("intp") + return None + +def get_ravel_axis(): + return cnp.NPY_RAVEL_AXIS + + +def conv_intp(cnp.intp_t val): + return val + + +def get_dtype_flags(cnp.dtype dtype): + return dtype.flags + + +cdef cnp.NpyIter* npyiter_from_nditer_obj(object it): + """A function to create a NpyIter struct from a nditer object. + + This function is only meant for testing purposes and only extracts the + necessary info from nditer to test the functionality of NpyIter methods + """ + cdef: + cnp.NpyIter* cit + cnp.PyArray_Descr* op_dtypes[3] + cnp.npy_uint32 op_flags[3] + cnp.PyArrayObject* ops[3] + cnp.npy_uint32 flags = 0 + + if it.has_index: + flags |= cnp.NPY_ITER_C_INDEX + if it.has_delayed_bufalloc: + flags |= cnp.NPY_ITER_BUFFERED | cnp.NPY_ITER_DELAY_BUFALLOC + if it.has_multi_index: + flags |= cnp.NPY_ITER_MULTI_INDEX + + # one of READWRITE, READONLY and WRTIEONLY at the minimum must be specified for op_flags + for i in range(it.nop): + op_flags[i] = cnp.NPY_ITER_READONLY + + for i in range(it.nop): + op_dtypes[i] = cnp.PyArray_DESCR(it.operands[i]) + ops[i] = it.operands[i] + + cit = cnp.NpyIter_MultiNew(it.nop, &ops[0], flags, cnp.NPY_KEEPORDER, + cnp.NPY_NO_CASTING, &op_flags[0], + NULL) + return cit + + +def get_npyiter_size(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_GetIterSize(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def get_npyiter_ndim(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_GetNDim(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def get_npyiter_nop(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_GetNOp(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def get_npyiter_operands(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + try: + arr = cnp.NpyIter_GetOperandArray(cit) + return tuple([arr[i] for i in range(it.nop)]) + finally: + cnp.NpyIter_Deallocate(cit) + + +def get_npyiter_itviews(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = tuple([cnp.NpyIter_GetIterView(cit, i) for i in range(it.nop)]) + cnp.NpyIter_Deallocate(cit) + return result + + +def get_npyiter_dtypes(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + try: + arr = cnp.NpyIter_GetDescrArray(cit) + return tuple([arr[i] for i in range(it.nop)]) + finally: + cnp.NpyIter_Deallocate(cit) + + +def npyiter_has_delayed_bufalloc(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_HasDelayedBufAlloc(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def npyiter_has_index(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_HasIndex(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def npyiter_has_multi_index(it: "nditer"): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + result = cnp.NpyIter_HasMultiIndex(cit) + cnp.NpyIter_Deallocate(cit) + return result + + +def test_get_multi_index_iter_next(it: "nditer", cnp.ndarray[cnp.float64_t, ndim=2] arr): + cdef cnp.NpyIter* cit = npyiter_from_nditer_obj(it) + cdef cnp.NpyIter_GetMultiIndexFunc get_multi_index = \ + cnp.NpyIter_GetGetMultiIndex(cit, NULL) + cdef cnp.NpyIter_IterNextFunc iternext = \ + cnp.NpyIter_GetIterNext(cit, NULL) + return 1 + + +def npyiter_has_finished(it: "nditer"): + cdef cnp.NpyIter* cit + try: + cit = npyiter_from_nditer_obj(it) + cnp.NpyIter_GotoIterIndex(cit, it.index) + return not (cnp.NpyIter_GetIterIndex(cit) < cnp.NpyIter_GetIterSize(cit)) + finally: + cnp.NpyIter_Deallocate(cit) + +def compile_fillwithbyte(): + # Regression test for gh-25878, mostly checks it compiles. + cdef cnp.npy_intp dims[2] + dims = (1, 2) + pos = cnp.PyArray_ZEROS(2, dims, cnp.NPY_UINT8, 0) + cnp.PyArray_FILLWBYTE(pos, 1) + return pos + +def inc2_cfloat_struct(cnp.ndarray[cnp.cfloat_t] arr): + # This works since we compile in C mode, it will fail in cpp mode + arr[1].real += 1 + arr[1].imag += 1 + # This works in both modes + arr[1].real = arr[1].real + 1 + arr[1].imag = arr[1].imag + 1 + + +def check_npy_uintp_type_enum(): + # Regression test for gh-27890: cnp.NPY_UINTP was not defined. + # Cython would fail to compile this before gh-27890 was fixed. + return cnp.NPY_UINTP > 0 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/meson.build b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/meson.build new file mode 100644 index 0000000000000000000000000000000000000000..8362c339ae7372ece36b97d57e2e03509f4e4c0b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/meson.build @@ -0,0 +1,43 @@ +project('checks', 'c', 'cython') + +py = import('python').find_installation(pure: false) + +cc = meson.get_compiler('c') +cy = meson.get_compiler('cython') + +# Keep synced with pyproject.toml +if not cy.version().version_compare('>=3.0.6') + error('tests requires Cython >= 3.0.6') +endif + +cython_args = [] +if cy.version().version_compare('>=3.1.0') + cython_args += ['-Xfreethreading_compatible=True'] +endif + +npy_include_path = run_command(py, [ + '-c', + 'import os; os.chdir(".."); import numpy; print(os.path.abspath(numpy.get_include()))' + ], check: true).stdout().strip() + +npy_path = run_command(py, [ + '-c', + 'import os; os.chdir(".."); import numpy; print(os.path.dirname(numpy.__file__).removesuffix("numpy"))' + ], check: true).stdout().strip() + +# TODO: This is a hack due to gh-25135, where cython may not find the right +# __init__.pyd file. +add_project_arguments('-I', npy_path, language : 'cython') + +py.extension_module( + 'checks', + 'checks.pyx', + install: false, + c_args: [ + '-DNPY_NO_DEPRECATED_API=0', # Cython still uses old NumPy C API + # Require 1.25+ to test datetime additions + '-DNPY_TARGET_VERSION=NPY_2_0_API_VERSION', + ], + include_directories: [npy_include_path], + cython_args: cython_args, +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/setup.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/setup.py new file mode 100644 index 0000000000000000000000000000000000000000..1bf027700748ffd7d7521dbc781a64541d20e94f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/cython/setup.py @@ -0,0 +1,37 @@ +""" +Provide python-space access to the functions exposed in numpy/__init__.pxd +for testing. +""" + +import Cython +import numpy as np +from numpy._utils import _pep440 +from distutils.core import setup +from Cython.Build import cythonize +from setuptools.extension import Extension +import os + +macros = [ + ("NPY_NO_DEPRECATED_API", 0), + # Require 1.25+ to test datetime additions + ("NPY_TARGET_VERSION", "NPY_2_0_API_VERSION"), +] + +checks = Extension( + "checks", + sources=[os.path.join('.', "checks.pyx")], + include_dirs=[np.get_include()], + define_macros=macros, +) + +extensions = [checks] + +compiler_directives = {} +if _pep440.parse(Cython.__version__) >= _pep440.parse("3.1.0a0"): + compiler_directives['freethreading_compatible'] = True + +setup( + ext_modules=cythonize( + extensions, + compiler_directives=compiler_directives) +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api1.c b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api1.c new file mode 100644 index 0000000000000000000000000000000000000000..3dbf5698f1d4cfaf7ee859cce266e401f0d83ddd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api1.c @@ -0,0 +1,17 @@ +#define Py_LIMITED_API 0x03060000 + +#include +#include +#include + +static PyModuleDef moduledef = { + .m_base = PyModuleDef_HEAD_INIT, + .m_name = "limited_api1" +}; + +PyMODINIT_FUNC PyInit_limited_api1(void) +{ + import_array(); + import_umath(); + return PyModule_Create(&moduledef); +} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api2.pyx b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api2.pyx new file mode 100644 index 0000000000000000000000000000000000000000..327d5b038c6c8b7b00ab5272ec75fde74572ce0e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api2.pyx @@ -0,0 +1,11 @@ +#cython: language_level=3 + +""" +Make sure cython can compile in limited API mode (see meson.build) +""" + +cdef extern from "numpy/arrayobject.h": + pass +cdef extern from "numpy/arrayscalars.h": + pass + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api_latest.c b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api_latest.c new file mode 100644 index 0000000000000000000000000000000000000000..13668f2f0ebf78fbac1cbf98c9b474325f864e4d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/limited_api_latest.c @@ -0,0 +1,19 @@ +#if Py_LIMITED_API != PY_VERSION_HEX & 0xffff0000 + # error "Py_LIMITED_API not defined to Python major+minor version" +#endif + +#include +#include +#include + +static PyModuleDef moduledef = { + .m_base = PyModuleDef_HEAD_INIT, + .m_name = "limited_api_latest" +}; + +PyMODINIT_FUNC PyInit_limited_api_latest(void) +{ + import_array(); + import_umath(); + return PyModule_Create(&moduledef); +} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/meson.build b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/meson.build new file mode 100644 index 0000000000000000000000000000000000000000..65287d8654f50f93c8e2695b91d36f27c1bfe204 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/meson.build @@ -0,0 +1,59 @@ +project('checks', 'c', 'cython') + +py = import('python').find_installation(pure: false) + +cc = meson.get_compiler('c') +cy = meson.get_compiler('cython') + +# Keep synced with pyproject.toml +if not cy.version().version_compare('>=3.0.6') + error('tests requires Cython >= 3.0.6') +endif + +npy_include_path = run_command(py, [ + '-c', + 'import os; os.chdir(".."); import numpy; print(os.path.abspath(numpy.get_include()))' + ], check: true).stdout().strip() + +npy_path = run_command(py, [ + '-c', + 'import os; os.chdir(".."); import numpy; print(os.path.dirname(numpy.__file__).removesuffix("numpy"))' + ], check: true).stdout().strip() + +# TODO: This is a hack due to https://github.com/cython/cython/issues/5820, +# where cython may not find the right __init__.pyd file. +add_project_arguments('-I', npy_path, language : 'cython') + +py.extension_module( + 'limited_api1', + 'limited_api1.c', + c_args: [ + '-DNPY_NO_DEPRECATED_API=NPY_1_21_API_VERSION', + ], + include_directories: [npy_include_path], + limited_api: '3.6', +) + +py.extension_module( + 'limited_api_latest', + 'limited_api_latest.c', + c_args: [ + '-DNPY_NO_DEPRECATED_API=NPY_1_21_API_VERSION', + ], + include_directories: [npy_include_path], + limited_api: py.language_version(), +) + +py.extension_module( + 'limited_api2', + 'limited_api2.pyx', + install: false, + c_args: [ + '-DNPY_NO_DEPRECATED_API=0', + # Require 1.25+ to test datetime additions + '-DNPY_TARGET_VERSION=NPY_2_0_API_VERSION', + '-DCYTHON_LIMITED_API=1', + ], + include_directories: [npy_include_path], + limited_api: '3.7', +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/setup.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/setup.py new file mode 100644 index 0000000000000000000000000000000000000000..18747dc80896c087f37a878674e7c3c34bbd1e3f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/examples/limited_api/setup.py @@ -0,0 +1,22 @@ +""" +Build an example package using the limited Python C API. +""" + +import numpy as np +from setuptools import setup, Extension +import os + +macros = [("NPY_NO_DEPRECATED_API", 0), ("Py_LIMITED_API", "0x03060000")] + +limited_api = Extension( + "limited_api", + sources=[os.path.join('.', "limited_api.c")], + include_dirs=[np.get_include()], + define_macros=macros, +) + +extensions = [limited_api] + +setup( + ext_modules=extensions +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test__exceptions.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test__exceptions.py new file mode 100644 index 0000000000000000000000000000000000000000..fe792c8e37da46310b26322f19f9d45caf7b1765 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test__exceptions.py @@ -0,0 +1,89 @@ +""" +Tests of the ._exceptions module. Primarily for exercising the __str__ methods. +""" + +import pickle + +import pytest +import numpy as np +from numpy.exceptions import AxisError + +_ArrayMemoryError = np._core._exceptions._ArrayMemoryError +_UFuncNoLoopError = np._core._exceptions._UFuncNoLoopError + +class TestArrayMemoryError: + def test_pickling(self): + """ Test that _ArrayMemoryError can be pickled """ + error = _ArrayMemoryError((1023,), np.dtype(np.uint8)) + res = pickle.loads(pickle.dumps(error)) + assert res._total_size == error._total_size + + def test_str(self): + e = _ArrayMemoryError((1023,), np.dtype(np.uint8)) + str(e) # not crashing is enough + + # testing these properties is easier than testing the full string repr + def test__size_to_string(self): + """ Test e._size_to_string """ + f = _ArrayMemoryError._size_to_string + Ki = 1024 + assert f(0) == '0 bytes' + assert f(1) == '1 bytes' + assert f(1023) == '1023 bytes' + assert f(Ki) == '1.00 KiB' + assert f(Ki+1) == '1.00 KiB' + assert f(10*Ki) == '10.0 KiB' + assert f(int(999.4*Ki)) == '999. KiB' + assert f(int(1023.4*Ki)) == '1023. KiB' + assert f(int(1023.5*Ki)) == '1.00 MiB' + assert f(Ki*Ki) == '1.00 MiB' + + # 1023.9999 Mib should round to 1 GiB + assert f(int(Ki*Ki*Ki*0.9999)) == '1.00 GiB' + assert f(Ki*Ki*Ki*Ki*Ki*Ki) == '1.00 EiB' + # larger than sys.maxsize, adding larger prefixes isn't going to help + # anyway. + assert f(Ki*Ki*Ki*Ki*Ki*Ki*123456) == '123456. EiB' + + def test__total_size(self): + """ Test e._total_size """ + e = _ArrayMemoryError((1,), np.dtype(np.uint8)) + assert e._total_size == 1 + + e = _ArrayMemoryError((2, 4), np.dtype((np.uint64, 16))) + assert e._total_size == 1024 + + +class TestUFuncNoLoopError: + def test_pickling(self): + """ Test that _UFuncNoLoopError can be pickled """ + assert isinstance(pickle.dumps(_UFuncNoLoopError), bytes) + + +@pytest.mark.parametrize("args", [ + (2, 1, None), + (2, 1, "test_prefix"), + ("test message",), +]) +class TestAxisError: + def test_attr(self, args): + """Validate attribute types.""" + exc = AxisError(*args) + if len(args) == 1: + assert exc.axis is None + assert exc.ndim is None + else: + axis, ndim, *_ = args + assert exc.axis == axis + assert exc.ndim == ndim + + def test_pickling(self, args): + """Test that `AxisError` can be pickled.""" + exc = AxisError(*args) + exc2 = pickle.loads(pickle.dumps(exc)) + + assert type(exc) is type(exc2) + for name in ("axis", "ndim", "args"): + attr1 = getattr(exc, name) + attr2 = getattr(exc2, name) + assert attr1 == attr2, name diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_abc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_abc.py new file mode 100644 index 0000000000000000000000000000000000000000..f7ab6b6358812a42992967c11f61cefa6418cee7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_abc.py @@ -0,0 +1,54 @@ +from numpy.testing import assert_ + +import numbers + +import numpy as np +from numpy._core.numerictypes import sctypes + +class TestABC: + def test_abstract(self): + assert_(issubclass(np.number, numbers.Number)) + + assert_(issubclass(np.inexact, numbers.Complex)) + assert_(issubclass(np.complexfloating, numbers.Complex)) + assert_(issubclass(np.floating, numbers.Real)) + + assert_(issubclass(np.integer, numbers.Integral)) + assert_(issubclass(np.signedinteger, numbers.Integral)) + assert_(issubclass(np.unsignedinteger, numbers.Integral)) + + def test_floats(self): + for t in sctypes['float']: + assert_(isinstance(t(), numbers.Real), + f"{t.__name__} is not instance of Real") + assert_(issubclass(t, numbers.Real), + f"{t.__name__} is not subclass of Real") + assert_(not isinstance(t(), numbers.Rational), + f"{t.__name__} is instance of Rational") + assert_(not issubclass(t, numbers.Rational), + f"{t.__name__} is subclass of Rational") + + def test_complex(self): + for t in sctypes['complex']: + assert_(isinstance(t(), numbers.Complex), + f"{t.__name__} is not instance of Complex") + assert_(issubclass(t, numbers.Complex), + f"{t.__name__} is not subclass of Complex") + assert_(not isinstance(t(), numbers.Real), + f"{t.__name__} is instance of Real") + assert_(not issubclass(t, numbers.Real), + f"{t.__name__} is subclass of Real") + + def test_int(self): + for t in sctypes['int']: + assert_(isinstance(t(), numbers.Integral), + f"{t.__name__} is not instance of Integral") + assert_(issubclass(t, numbers.Integral), + f"{t.__name__} is not subclass of Integral") + + def test_uint(self): + for t in sctypes['uint']: + assert_(isinstance(t(), numbers.Integral), + f"{t.__name__} is not instance of Integral") + assert_(issubclass(t, numbers.Integral), + f"{t.__name__} is not subclass of Integral") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_api.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_api.py new file mode 100644 index 0000000000000000000000000000000000000000..0a3edcce2bc4a01ee7f69e4db7dc44b5a0f38aa4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_api.py @@ -0,0 +1,616 @@ +import sys + +import numpy as np +import numpy._core.umath as ncu +from numpy._core._rational_tests import rational +import pytest +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, assert_raises, assert_warns, + HAS_REFCOUNT + ) + + +def test_array_array(): + tobj = type(object) + ones11 = np.ones((1, 1), np.float64) + tndarray = type(ones11) + # Test is_ndarray + assert_equal(np.array(ones11, dtype=np.float64), ones11) + if HAS_REFCOUNT: + old_refcount = sys.getrefcount(tndarray) + np.array(ones11) + assert_equal(old_refcount, sys.getrefcount(tndarray)) + + # test None + assert_equal(np.array(None, dtype=np.float64), + np.array(np.nan, dtype=np.float64)) + if HAS_REFCOUNT: + old_refcount = sys.getrefcount(tobj) + np.array(None, dtype=np.float64) + assert_equal(old_refcount, sys.getrefcount(tobj)) + + # test scalar + assert_equal(np.array(1.0, dtype=np.float64), + np.ones((), dtype=np.float64)) + if HAS_REFCOUNT: + old_refcount = sys.getrefcount(np.float64) + np.array(np.array(1.0, dtype=np.float64), dtype=np.float64) + assert_equal(old_refcount, sys.getrefcount(np.float64)) + + # test string + S2 = np.dtype((bytes, 2)) + S3 = np.dtype((bytes, 3)) + S5 = np.dtype((bytes, 5)) + assert_equal(np.array(b"1.0", dtype=np.float64), + np.ones((), dtype=np.float64)) + assert_equal(np.array(b"1.0").dtype, S3) + assert_equal(np.array(b"1.0", dtype=bytes).dtype, S3) + assert_equal(np.array(b"1.0", dtype=S2), np.array(b"1.")) + assert_equal(np.array(b"1", dtype=S5), np.ones((), dtype=S5)) + + # test string + U2 = np.dtype((str, 2)) + U3 = np.dtype((str, 3)) + U5 = np.dtype((str, 5)) + assert_equal(np.array("1.0", dtype=np.float64), + np.ones((), dtype=np.float64)) + assert_equal(np.array("1.0").dtype, U3) + assert_equal(np.array("1.0", dtype=str).dtype, U3) + assert_equal(np.array("1.0", dtype=U2), np.array(str("1."))) + assert_equal(np.array("1", dtype=U5), np.ones((), dtype=U5)) + + builtins = getattr(__builtins__, '__dict__', __builtins__) + assert_(hasattr(builtins, 'get')) + + # test memoryview + dat = np.array(memoryview(b'1.0'), dtype=np.float64) + assert_equal(dat, [49.0, 46.0, 48.0]) + assert_(dat.dtype.type is np.float64) + + dat = np.array(memoryview(b'1.0')) + assert_equal(dat, [49, 46, 48]) + assert_(dat.dtype.type is np.uint8) + + # test array interface + a = np.array(100.0, dtype=np.float64) + o = type("o", (object,), + dict(__array_interface__=a.__array_interface__)) + assert_equal(np.array(o, dtype=np.float64), a) + + # test array_struct interface + a = np.array([(1, 4.0, 'Hello'), (2, 6.0, 'World')], + dtype=[('f0', int), ('f1', float), ('f2', str)]) + o = type("o", (object,), + dict(__array_struct__=a.__array_struct__)) + ## wasn't what I expected... is np.array(o) supposed to equal a ? + ## instead we get a array([...], dtype=">V18") + assert_equal(bytes(np.array(o).data), bytes(a.data)) + + # test array + def custom__array__(self, dtype=None, copy=None): + return np.array(100.0, dtype=dtype, copy=copy) + + o = type("o", (object,), dict(__array__=custom__array__))() + assert_equal(np.array(o, dtype=np.float64), np.array(100.0, np.float64)) + + # test recursion + nested = 1.5 + for i in range(ncu.MAXDIMS): + nested = [nested] + + # no error + np.array(nested) + + # Exceeds recursion limit + assert_raises(ValueError, np.array, [nested], dtype=np.float64) + + # Try with lists... + # float32 + assert_equal(np.array([None] * 10, dtype=np.float32), + np.full((10,), np.nan, dtype=np.float32)) + assert_equal(np.array([[None]] * 10, dtype=np.float32), + np.full((10, 1), np.nan, dtype=np.float32)) + assert_equal(np.array([[None] * 10], dtype=np.float32), + np.full((1, 10), np.nan, dtype=np.float32)) + assert_equal(np.array([[None] * 10] * 10, dtype=np.float32), + np.full((10, 10), np.nan, dtype=np.float32)) + # float64 + assert_equal(np.array([None] * 10, dtype=np.float64), + np.full((10,), np.nan, dtype=np.float64)) + assert_equal(np.array([[None]] * 10, dtype=np.float64), + np.full((10, 1), np.nan, dtype=np.float64)) + assert_equal(np.array([[None] * 10], dtype=np.float64), + np.full((1, 10), np.nan, dtype=np.float64)) + assert_equal(np.array([[None] * 10] * 10, dtype=np.float64), + np.full((10, 10), np.nan, dtype=np.float64)) + + assert_equal(np.array([1.0] * 10, dtype=np.float64), + np.ones((10,), dtype=np.float64)) + assert_equal(np.array([[1.0]] * 10, dtype=np.float64), + np.ones((10, 1), dtype=np.float64)) + assert_equal(np.array([[1.0] * 10], dtype=np.float64), + np.ones((1, 10), dtype=np.float64)) + assert_equal(np.array([[1.0] * 10] * 10, dtype=np.float64), + np.ones((10, 10), dtype=np.float64)) + + # Try with tuples + assert_equal(np.array((None,) * 10, dtype=np.float64), + np.full((10,), np.nan, dtype=np.float64)) + assert_equal(np.array([(None,)] * 10, dtype=np.float64), + np.full((10, 1), np.nan, dtype=np.float64)) + assert_equal(np.array([(None,) * 10], dtype=np.float64), + np.full((1, 10), np.nan, dtype=np.float64)) + assert_equal(np.array([(None,) * 10] * 10, dtype=np.float64), + np.full((10, 10), np.nan, dtype=np.float64)) + + assert_equal(np.array((1.0,) * 10, dtype=np.float64), + np.ones((10,), dtype=np.float64)) + assert_equal(np.array([(1.0,)] * 10, dtype=np.float64), + np.ones((10, 1), dtype=np.float64)) + assert_equal(np.array([(1.0,) * 10], dtype=np.float64), + np.ones((1, 10), dtype=np.float64)) + assert_equal(np.array([(1.0,) * 10] * 10, dtype=np.float64), + np.ones((10, 10), dtype=np.float64)) + +@pytest.mark.parametrize("array", [True, False]) +def test_array_impossible_casts(array): + # All builtin types can be forcibly cast, at least theoretically, + # but user dtypes cannot necessarily. + rt = rational(1, 2) + if array: + rt = np.array(rt) + with assert_raises(TypeError): + np.array(rt, dtype="M8") + + +def test_array_astype(): + a = np.arange(6, dtype='f4').reshape(2, 3) + # Default behavior: allows unsafe casts, keeps memory layout, + # always copies. + b = a.astype('i4') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('i4')) + assert_equal(a.strides, b.strides) + b = a.T.astype('i4') + assert_equal(a.T, b) + assert_equal(b.dtype, np.dtype('i4')) + assert_equal(a.T.strides, b.strides) + b = a.astype('f4') + assert_equal(a, b) + assert_(not (a is b)) + + # copy=False parameter skips a copy + b = a.astype('f4', copy=False) + assert_(a is b) + + # order parameter allows overriding of the memory layout, + # forcing a copy if the layout is wrong + b = a.astype('f4', order='F', copy=False) + assert_equal(a, b) + assert_(not (a is b)) + assert_(b.flags.f_contiguous) + + b = a.astype('f4', order='C', copy=False) + assert_equal(a, b) + assert_(a is b) + assert_(b.flags.c_contiguous) + + # casting parameter allows catching bad casts + b = a.astype('c8', casting='safe') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('c8')) + + assert_raises(TypeError, a.astype, 'i4', casting='safe') + + # subok=False passes through a non-subclassed array + b = a.astype('f4', subok=0, copy=False) + assert_(a is b) + + class MyNDArray(np.ndarray): + pass + + a = np.array([[0, 1, 2], [3, 4, 5]], dtype='f4').view(MyNDArray) + + # subok=True passes through a subclass + b = a.astype('f4', subok=True, copy=False) + assert_(a is b) + + # subok=True is default, and creates a subtype on a cast + b = a.astype('i4', copy=False) + assert_equal(a, b) + assert_equal(type(b), MyNDArray) + + # subok=False never returns a subclass + b = a.astype('f4', subok=False, copy=False) + assert_equal(a, b) + assert_(not (a is b)) + assert_(type(b) is not MyNDArray) + + # Make sure converting from string object to fixed length string + # does not truncate. + a = np.array([b'a'*100], dtype='O') + b = a.astype('S') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('S100')) + a = np.array(['a'*100], dtype='O') + b = a.astype('U') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('U100')) + + # Same test as above but for strings shorter than 64 characters + a = np.array([b'a'*10], dtype='O') + b = a.astype('S') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('S10')) + a = np.array(['a'*10], dtype='O') + b = a.astype('U') + assert_equal(a, b) + assert_equal(b.dtype, np.dtype('U10')) + + a = np.array(123456789012345678901234567890, dtype='O').astype('S') + assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30')) + a = np.array(123456789012345678901234567890, dtype='O').astype('U') + assert_array_equal(a, np.array('1234567890' * 3, dtype='U30')) + + a = np.array([123456789012345678901234567890], dtype='O').astype('S') + assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30')) + a = np.array([123456789012345678901234567890], dtype='O').astype('U') + assert_array_equal(a, np.array('1234567890' * 3, dtype='U30')) + + a = np.array(123456789012345678901234567890, dtype='S') + assert_array_equal(a, np.array(b'1234567890' * 3, dtype='S30')) + a = np.array(123456789012345678901234567890, dtype='U') + assert_array_equal(a, np.array('1234567890' * 3, dtype='U30')) + + a = np.array('a\u0140', dtype='U') + b = np.ndarray(buffer=a, dtype='uint32', shape=2) + assert_(b.size == 2) + + a = np.array([1000], dtype='i4') + assert_raises(TypeError, a.astype, 'S1', casting='safe') + + a = np.array(1000, dtype='i4') + assert_raises(TypeError, a.astype, 'U1', casting='safe') + + # gh-24023 + assert_raises(TypeError, a.astype) + +@pytest.mark.parametrize("dt", ["S", "U"]) +def test_array_astype_to_string_discovery_empty(dt): + # See also gh-19085 + arr = np.array([""], dtype=object) + # Note, the itemsize is the `0 -> 1` logic, which should change. + # The important part the test is rather that it does not error. + assert arr.astype(dt).dtype.itemsize == np.dtype(f"{dt}1").itemsize + + # check the same thing for `np.can_cast` (since it accepts arrays) + assert np.can_cast(arr, dt, casting="unsafe") + assert not np.can_cast(arr, dt, casting="same_kind") + # as well as for the object as a descriptor: + assert np.can_cast("O", dt, casting="unsafe") + +@pytest.mark.parametrize("dt", ["d", "f", "S13", "U32"]) +def test_array_astype_to_void(dt): + dt = np.dtype(dt) + arr = np.array([], dtype=dt) + assert arr.astype("V").dtype.itemsize == dt.itemsize + +def test_object_array_astype_to_void(): + # This is different to `test_array_astype_to_void` as object arrays + # are inspected. The default void is "V8" (8 is the length of double) + arr = np.array([], dtype="O").astype("V") + assert arr.dtype == "V8" + +@pytest.mark.parametrize("t", + np._core.sctypes['uint'] + + np._core.sctypes['int'] + + np._core.sctypes['float'] +) +def test_array_astype_warning(t): + # test ComplexWarning when casting from complex to float or int + a = np.array(10, dtype=np.complex128) + assert_warns(np.exceptions.ComplexWarning, a.astype, t) + +@pytest.mark.parametrize(["dtype", "out_dtype"], + [(np.bytes_, np.bool), + (np.str_, np.bool), + (np.dtype("S10,S9"), np.dtype("?,?")), + # The following also checks unaligned unicode access: + (np.dtype("S7,U9"), np.dtype("?,?"))]) +def test_string_to_boolean_cast(dtype, out_dtype): + # Only the last two (empty) strings are falsy (the `\0` is stripped): + arr = np.array( + ["10", "10\0\0\0", "0\0\0", "0", "False", " ", "", "\0"], + dtype=dtype) + expected = np.array( + [True, True, True, True, True, True, False, False], + dtype=out_dtype) + assert_array_equal(arr.astype(out_dtype), expected) + # As it's similar, check that nonzero behaves the same (structs are + # nonzero if all entries are) + assert_array_equal(np.nonzero(arr), np.nonzero(expected)) + +@pytest.mark.parametrize("str_type", [str, bytes, np.str_]) +@pytest.mark.parametrize("scalar_type", + [np.complex64, np.complex128, np.clongdouble]) +def test_string_to_complex_cast(str_type, scalar_type): + value = scalar_type(b"1+3j") + assert scalar_type(value) == 1+3j + assert np.array([value], dtype=object).astype(scalar_type)[()] == 1+3j + assert np.array(value).astype(scalar_type)[()] == 1+3j + arr = np.zeros(1, dtype=scalar_type) + arr[0] = value + assert arr[0] == 1+3j + +@pytest.mark.parametrize("dtype", np.typecodes["AllFloat"]) +def test_none_to_nan_cast(dtype): + # Note that at the time of writing this test, the scalar constructors + # reject None + arr = np.zeros(1, dtype=dtype) + arr[0] = None + assert np.isnan(arr)[0] + assert np.isnan(np.array(None, dtype=dtype))[()] + assert np.isnan(np.array([None], dtype=dtype))[0] + assert np.isnan(np.array(None).astype(dtype))[()] + +def test_copyto_fromscalar(): + a = np.arange(6, dtype='f4').reshape(2, 3) + + # Simple copy + np.copyto(a, 1.5) + assert_equal(a, 1.5) + np.copyto(a.T, 2.5) + assert_equal(a, 2.5) + + # Where-masked copy + mask = np.array([[0, 1, 0], [0, 0, 1]], dtype='?') + np.copyto(a, 3.5, where=mask) + assert_equal(a, [[2.5, 3.5, 2.5], [2.5, 2.5, 3.5]]) + mask = np.array([[0, 1], [1, 1], [1, 0]], dtype='?') + np.copyto(a.T, 4.5, where=mask) + assert_equal(a, [[2.5, 4.5, 4.5], [4.5, 4.5, 3.5]]) + +def test_copyto(): + a = np.arange(6, dtype='i4').reshape(2, 3) + + # Simple copy + np.copyto(a, [[3, 1, 5], [6, 2, 1]]) + assert_equal(a, [[3, 1, 5], [6, 2, 1]]) + + # Overlapping copy should work + np.copyto(a[:, :2], a[::-1, 1::-1]) + assert_equal(a, [[2, 6, 5], [1, 3, 1]]) + + # Defaults to 'same_kind' casting + assert_raises(TypeError, np.copyto, a, 1.5) + + # Force a copy with 'unsafe' casting, truncating 1.5 to 1 + np.copyto(a, 1.5, casting='unsafe') + assert_equal(a, 1) + + # Copying with a mask + np.copyto(a, 3, where=[True, False, True]) + assert_equal(a, [[3, 1, 3], [3, 1, 3]]) + + # Casting rule still applies with a mask + assert_raises(TypeError, np.copyto, a, 3.5, where=[True, False, True]) + + # Lists of integer 0's and 1's is ok too + np.copyto(a, 4.0, casting='unsafe', where=[[0, 1, 1], [1, 0, 0]]) + assert_equal(a, [[3, 4, 4], [4, 1, 3]]) + + # Overlapping copy with mask should work + np.copyto(a[:, :2], a[::-1, 1::-1], where=[[0, 1], [1, 1]]) + assert_equal(a, [[3, 4, 4], [4, 3, 3]]) + + # 'dst' must be an array + assert_raises(TypeError, np.copyto, [1, 2, 3], [2, 3, 4]) + + +def test_copyto_cast_safety(): + with pytest.raises(TypeError): + np.copyto(np.arange(3), 3., casting="safe") + + # Can put integer and float scalars safely (and equiv): + np.copyto(np.arange(3), 3, casting="equiv") + np.copyto(np.arange(3.), 3., casting="equiv") + # And also with less precision safely: + np.copyto(np.arange(3, dtype="uint8"), 3, casting="safe") + np.copyto(np.arange(3., dtype="float32"), 3., casting="safe") + + # But not equiv: + with pytest.raises(TypeError): + np.copyto(np.arange(3, dtype="uint8"), 3, casting="equiv") + + with pytest.raises(TypeError): + np.copyto(np.arange(3., dtype="float32"), 3., casting="equiv") + + # As a special thing, object is equiv currently: + np.copyto(np.arange(3, dtype=object), 3, casting="equiv") + + # The following raises an overflow error/gives a warning but not + # type error (due to casting), though: + with pytest.raises(OverflowError): + np.copyto(np.arange(3), 2**80, casting="safe") + + with pytest.warns(RuntimeWarning): + np.copyto(np.arange(3, dtype=np.float32), 2e300, casting="safe") + + +def test_copyto_permut(): + # test explicit overflow case + pad = 500 + l = [True] * pad + [True, True, True, True] + r = np.zeros(len(l)-pad) + d = np.ones(len(l)-pad) + mask = np.array(l)[pad:] + np.copyto(r, d, where=mask[::-1]) + + # test all permutation of possible masks, 9 should be sufficient for + # current 4 byte unrolled code + power = 9 + d = np.ones(power) + for i in range(2**power): + r = np.zeros(power) + l = [(i & x) != 0 for x in range(power)] + mask = np.array(l) + np.copyto(r, d, where=mask) + assert_array_equal(r == 1, l) + assert_equal(r.sum(), sum(l)) + + r = np.zeros(power) + np.copyto(r, d, where=mask[::-1]) + assert_array_equal(r == 1, l[::-1]) + assert_equal(r.sum(), sum(l)) + + r = np.zeros(power) + np.copyto(r[::2], d[::2], where=mask[::2]) + assert_array_equal(r[::2] == 1, l[::2]) + assert_equal(r[::2].sum(), sum(l[::2])) + + r = np.zeros(power) + np.copyto(r[::2], d[::2], where=mask[::-2]) + assert_array_equal(r[::2] == 1, l[::-2]) + assert_equal(r[::2].sum(), sum(l[::-2])) + + for c in [0xFF, 0x7F, 0x02, 0x10]: + r = np.zeros(power) + mask = np.array(l) + imask = np.array(l).view(np.uint8) + imask[mask != 0] = c + np.copyto(r, d, where=mask) + assert_array_equal(r == 1, l) + assert_equal(r.sum(), sum(l)) + + r = np.zeros(power) + np.copyto(r, d, where=True) + assert_equal(r.sum(), r.size) + r = np.ones(power) + d = np.zeros(power) + np.copyto(r, d, where=False) + assert_equal(r.sum(), r.size) + +def test_copy_order(): + a = np.arange(24).reshape(2, 1, 3, 4) + b = a.copy(order='F') + c = np.arange(24).reshape(2, 1, 4, 3).swapaxes(2, 3) + + def check_copy_result(x, y, ccontig, fcontig, strides=False): + assert_(not (x is y)) + assert_equal(x, y) + assert_equal(res.flags.c_contiguous, ccontig) + assert_equal(res.flags.f_contiguous, fcontig) + + # Validate the initial state of a, b, and c + assert_(a.flags.c_contiguous) + assert_(not a.flags.f_contiguous) + assert_(not b.flags.c_contiguous) + assert_(b.flags.f_contiguous) + assert_(not c.flags.c_contiguous) + assert_(not c.flags.f_contiguous) + + # Copy with order='C' + res = a.copy(order='C') + check_copy_result(res, a, ccontig=True, fcontig=False, strides=True) + res = b.copy(order='C') + check_copy_result(res, b, ccontig=True, fcontig=False, strides=False) + res = c.copy(order='C') + check_copy_result(res, c, ccontig=True, fcontig=False, strides=False) + res = np.copy(a, order='C') + check_copy_result(res, a, ccontig=True, fcontig=False, strides=True) + res = np.copy(b, order='C') + check_copy_result(res, b, ccontig=True, fcontig=False, strides=False) + res = np.copy(c, order='C') + check_copy_result(res, c, ccontig=True, fcontig=False, strides=False) + + # Copy with order='F' + res = a.copy(order='F') + check_copy_result(res, a, ccontig=False, fcontig=True, strides=False) + res = b.copy(order='F') + check_copy_result(res, b, ccontig=False, fcontig=True, strides=True) + res = c.copy(order='F') + check_copy_result(res, c, ccontig=False, fcontig=True, strides=False) + res = np.copy(a, order='F') + check_copy_result(res, a, ccontig=False, fcontig=True, strides=False) + res = np.copy(b, order='F') + check_copy_result(res, b, ccontig=False, fcontig=True, strides=True) + res = np.copy(c, order='F') + check_copy_result(res, c, ccontig=False, fcontig=True, strides=False) + + # Copy with order='K' + res = a.copy(order='K') + check_copy_result(res, a, ccontig=True, fcontig=False, strides=True) + res = b.copy(order='K') + check_copy_result(res, b, ccontig=False, fcontig=True, strides=True) + res = c.copy(order='K') + check_copy_result(res, c, ccontig=False, fcontig=False, strides=True) + res = np.copy(a, order='K') + check_copy_result(res, a, ccontig=True, fcontig=False, strides=True) + res = np.copy(b, order='K') + check_copy_result(res, b, ccontig=False, fcontig=True, strides=True) + res = np.copy(c, order='K') + check_copy_result(res, c, ccontig=False, fcontig=False, strides=True) + +def test_contiguous_flags(): + a = np.ones((4, 4, 1))[::2,:,:] + a.strides = a.strides[:2] + (-123,) + b = np.ones((2, 2, 1, 2, 2)).swapaxes(3, 4) + + def check_contig(a, ccontig, fcontig): + assert_(a.flags.c_contiguous == ccontig) + assert_(a.flags.f_contiguous == fcontig) + + # Check if new arrays are correct: + check_contig(a, False, False) + check_contig(b, False, False) + check_contig(np.empty((2, 2, 0, 2, 2)), True, True) + check_contig(np.array([[[1], [2]]], order='F'), True, True) + check_contig(np.empty((2, 2)), True, False) + check_contig(np.empty((2, 2), order='F'), False, True) + + # Check that np.array creates correct contiguous flags: + check_contig(np.array(a, copy=None), False, False) + check_contig(np.array(a, copy=None, order='C'), True, False) + check_contig(np.array(a, ndmin=4, copy=None, order='F'), False, True) + + # Check slicing update of flags and : + check_contig(a[0], True, True) + check_contig(a[None, ::4, ..., None], True, True) + check_contig(b[0, 0, ...], False, True) + check_contig(b[:, :, 0:0, :, :], True, True) + + # Test ravel and squeeze. + check_contig(a.ravel(), True, True) + check_contig(np.ones((1, 3, 1)).squeeze(), True, True) + +def test_broadcast_arrays(): + # Test user defined dtypes + a = np.array([(1, 2, 3)], dtype='u4,u4,u4') + b = np.array([(1, 2, 3), (4, 5, 6), (7, 8, 9)], dtype='u4,u4,u4') + result = np.broadcast_arrays(a, b) + assert_equal(result[0], np.array([(1, 2, 3), (1, 2, 3), (1, 2, 3)], dtype='u4,u4,u4')) + assert_equal(result[1], np.array([(1, 2, 3), (4, 5, 6), (7, 8, 9)], dtype='u4,u4,u4')) + +@pytest.mark.parametrize(["shape", "fill_value", "expected_output"], + [((2, 2), [5.0, 6.0], np.array([[5.0, 6.0], [5.0, 6.0]])), + ((3, 2), [1.0, 2.0], np.array([[1.0, 2.0], [1.0, 2.0], [1.0, 2.0]]))]) +def test_full_from_list(shape, fill_value, expected_output): + output = np.full(shape, fill_value) + assert_equal(output, expected_output) + +def test_astype_copyflag(): + # test the various copyflag options + arr = np.arange(10, dtype=np.intp) + + res_true = arr.astype(np.intp, copy=True) + assert not np.shares_memory(arr, res_true) + + res_false = arr.astype(np.intp, copy=False) + assert np.shares_memory(arr, res_false) + + res_false_float = arr.astype(np.float64, copy=False) + assert not np.shares_memory(arr, res_false_float) + + # _CopyMode enum isn't allowed + assert_raises(ValueError, arr.astype, np.float64, + copy=np._CopyMode.NEVER) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_argparse.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_argparse.py new file mode 100644 index 0000000000000000000000000000000000000000..ededced3b9fee9f8615ae49c6a8b8d38626154ae --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_argparse.py @@ -0,0 +1,90 @@ +""" +Tests for the private NumPy argument parsing functionality. +They mainly exists to ensure good test coverage without having to try the +weirder cases on actual numpy functions but test them in one place. + +The test function is defined in C to be equivalent to (errors may not always +match exactly, and could be adjusted): + + def func(arg1, /, arg2, *, arg3): + i = integer(arg1) # reproducing the 'i' parsing in Python. + return None +""" + +import threading + +import pytest + +import numpy as np +from numpy._core._multiarray_tests import ( + argparse_example_function as func, + threaded_argparse_example_function as thread_func, +) +from numpy.testing import IS_WASM + + +@pytest.mark.skipif(IS_WASM, reason="wasm doesn't have support for threads") +def test_thread_safe_argparse_cache(): + b = threading.Barrier(8) + + def call_thread_func(): + b.wait() + thread_func(arg1=3, arg2=None) + + tasks = [threading.Thread(target=call_thread_func) for _ in range(8)] + [t.start() for t in tasks] + [t.join() for t in tasks] + + +def test_invalid_integers(): + with pytest.raises(TypeError, + match="integer argument expected, got float"): + func(1.) + with pytest.raises(OverflowError): + func(2**100) + + +def test_missing_arguments(): + with pytest.raises(TypeError, + match="missing required positional argument 0"): + func() + with pytest.raises(TypeError, + match="missing required positional argument 0"): + func(arg2=1, arg3=4) + with pytest.raises(TypeError, + match=r"missing required argument \'arg2\' \(pos 1\)"): + func(1, arg3=5) + + +def test_too_many_positional(): + # the second argument is positional but can be passed as keyword. + with pytest.raises(TypeError, + match="takes from 2 to 3 positional arguments but 4 were given"): + func(1, 2, 3, 4) + + +def test_multiple_values(): + with pytest.raises(TypeError, + match=r"given by name \('arg2'\) and position \(position 1\)"): + func(1, 2, arg2=3) + + +def test_string_fallbacks(): + # We can (currently?) use numpy strings to test the "slow" fallbacks + # that should normally not be taken due to string interning. + arg2 = np.str_("arg2") + missing_arg = np.str_("missing_arg") + func(1, **{arg2: 3}) + with pytest.raises(TypeError, + match="got an unexpected keyword argument 'missing_arg'"): + func(2, **{missing_arg: 3}) + + +def test_too_many_arguments_method_forwarding(): + # Not directly related to the standard argument parsing, but we sometimes + # forward methods to Python: arr.mean() calls np._core._methods._mean() + # This adds code coverage for this `npy_forward_method`. + arr = np.arange(3) + args = range(1000) + with pytest.raises(TypeError): + arr.mean(*args) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_api_info.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_api_info.py new file mode 100644 index 0000000000000000000000000000000000000000..cccf5d346c8b441de4c6c780ad01a6f5e93d8f3f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_api_info.py @@ -0,0 +1,112 @@ +import numpy as np +import pytest + +info = np.__array_namespace_info__() + + +def test_capabilities(): + caps = info.capabilities() + assert caps["boolean indexing"] is True + assert caps["data-dependent shapes"] is True + + # This will be added in the 2024.12 release of the array API standard. + + # assert caps["max rank"] == 64 + # np.zeros((1,)*64) + # with pytest.raises(ValueError): + # np.zeros((1,)*65) + + +def test_default_device(): + assert info.default_device() == "cpu" == np.asarray(0).device + + +def test_default_dtypes(): + dtypes = info.default_dtypes() + assert dtypes["real floating"] == np.float64 == np.asarray(0.0).dtype + assert dtypes["complex floating"] == np.complex128 == \ + np.asarray(0.0j).dtype + assert dtypes["integral"] == np.intp == np.asarray(0).dtype + assert dtypes["indexing"] == np.intp == np.argmax(np.zeros(10)).dtype + + with pytest.raises(ValueError, match="Device not understood"): + info.default_dtypes(device="gpu") + + +def test_dtypes_all(): + dtypes = info.dtypes() + assert dtypes == { + "bool": np.bool_, + "int8": np.int8, + "int16": np.int16, + "int32": np.int32, + "int64": np.int64, + "uint8": np.uint8, + "uint16": np.uint16, + "uint32": np.uint32, + "uint64": np.uint64, + "float32": np.float32, + "float64": np.float64, + "complex64": np.complex64, + "complex128": np.complex128, + } + + +dtype_categories = { + "bool": {"bool": np.bool_}, + "signed integer": { + "int8": np.int8, + "int16": np.int16, + "int32": np.int32, + "int64": np.int64, + }, + "unsigned integer": { + "uint8": np.uint8, + "uint16": np.uint16, + "uint32": np.uint32, + "uint64": np.uint64, + }, + "integral": ("signed integer", "unsigned integer"), + "real floating": {"float32": np.float32, "float64": np.float64}, + "complex floating": {"complex64": np.complex64, "complex128": + np.complex128}, + "numeric": ("integral", "real floating", "complex floating"), +} + + +@pytest.mark.parametrize("kind", dtype_categories) +def test_dtypes_kind(kind): + expected = dtype_categories[kind] + if isinstance(expected, tuple): + assert info.dtypes(kind=kind) == info.dtypes(kind=expected) + else: + assert info.dtypes(kind=kind) == expected + + +def test_dtypes_tuple(): + dtypes = info.dtypes(kind=("bool", "integral")) + assert dtypes == { + "bool": np.bool_, + "int8": np.int8, + "int16": np.int16, + "int32": np.int32, + "int64": np.int64, + "uint8": np.uint8, + "uint16": np.uint16, + "uint32": np.uint32, + "uint64": np.uint64, + } + + +def test_dtypes_invalid_kind(): + with pytest.raises(ValueError, match="unsupported kind"): + info.dtypes(kind="invalid") + + +def test_dtypes_invalid_device(): + with pytest.raises(ValueError, match="Device not understood"): + info.dtypes(device="gpu") + + +def test_devices(): + assert info.devices() == ["cpu"] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_coercion.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_coercion.py new file mode 100644 index 0000000000000000000000000000000000000000..55c5005149c1de10188e6f1b0017c0b52672a657 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_coercion.py @@ -0,0 +1,911 @@ +""" +Tests for array coercion, mainly through testing `np.array` results directly. +Note that other such tests exist, e.g., in `test_api.py` and many corner-cases +are tested (sometimes indirectly) elsewhere. +""" + +from itertools import permutations, product + +import pytest +from pytest import param + +import numpy as np +import numpy._core._multiarray_umath as ncu +from numpy._core._rational_tests import rational + +from numpy.testing import ( + assert_array_equal, assert_warns, IS_PYPY, IS_64BIT +) + + +def arraylikes(): + """ + Generator for functions converting an array into various array-likes. + If full is True (default) it includes array-likes not capable of handling + all dtypes. + """ + # base array: + def ndarray(a): + return a + + yield param(ndarray, id="ndarray") + + # subclass: + class MyArr(np.ndarray): + pass + + def subclass(a): + return a.view(MyArr) + + yield subclass + + class _SequenceLike: + # Older NumPy versions, sometimes cared whether a protocol array was + # also _SequenceLike. This shouldn't matter, but keep it for now + # for __array__ and not the others. + def __len__(self): + raise TypeError + + def __getitem__(self): + raise TypeError + + # Array-interface + class ArrayDunder(_SequenceLike): + def __init__(self, a): + self.a = a + + def __array__(self, dtype=None, copy=None): + if dtype is None: + return self.a + return self.a.astype(dtype) + + yield param(ArrayDunder, id="__array__") + + # memory-view + yield param(memoryview, id="memoryview") + + # Array-interface + class ArrayInterface: + def __init__(self, a): + self.a = a # need to hold on to keep interface valid + self.__array_interface__ = a.__array_interface__ + + yield param(ArrayInterface, id="__array_interface__") + + # Array-Struct + class ArrayStruct: + def __init__(self, a): + self.a = a # need to hold on to keep struct valid + self.__array_struct__ = a.__array_struct__ + + yield param(ArrayStruct, id="__array_struct__") + + +def scalar_instances(times=True, extended_precision=True, user_dtype=True): + # Hard-coded list of scalar instances. + # Floats: + yield param(np.sqrt(np.float16(5)), id="float16") + yield param(np.sqrt(np.float32(5)), id="float32") + yield param(np.sqrt(np.float64(5)), id="float64") + if extended_precision: + yield param(np.sqrt(np.longdouble(5)), id="longdouble") + + # Complex: + yield param(np.sqrt(np.complex64(2+3j)), id="complex64") + yield param(np.sqrt(np.complex128(2+3j)), id="complex128") + if extended_precision: + yield param(np.sqrt(np.clongdouble(2+3j)), id="clongdouble") + + # Bool: + # XFAIL: Bool should be added, but has some bad properties when it + # comes to strings, see also gh-9875 + # yield param(np.bool(0), id="bool") + + # Integers: + yield param(np.int8(2), id="int8") + yield param(np.int16(2), id="int16") + yield param(np.int32(2), id="int32") + yield param(np.int64(2), id="int64") + + yield param(np.uint8(2), id="uint8") + yield param(np.uint16(2), id="uint16") + yield param(np.uint32(2), id="uint32") + yield param(np.uint64(2), id="uint64") + + # Rational: + if user_dtype: + yield param(rational(1, 2), id="rational") + + # Cannot create a structured void scalar directly: + structured = np.array([(1, 3)], "i,i")[0] + assert isinstance(structured, np.void) + assert structured.dtype == np.dtype("i,i") + yield param(structured, id="structured") + + if times: + # Datetimes and timedelta + yield param(np.timedelta64(2), id="timedelta64[generic]") + yield param(np.timedelta64(23, "s"), id="timedelta64[s]") + yield param(np.timedelta64("NaT", "s"), id="timedelta64[s](NaT)") + + yield param(np.datetime64("NaT"), id="datetime64[generic](NaT)") + yield param(np.datetime64("2020-06-07 12:43", "ms"), id="datetime64[ms]") + + # Strings and unstructured void: + yield param(np.bytes_(b"1234"), id="bytes") + yield param(np.str_("2345"), id="unicode") + yield param(np.void(b"4321"), id="unstructured_void") + + +def is_parametric_dtype(dtype): + """Returns True if the dtype is a parametric legacy dtype (itemsize + is 0, or a datetime without units) + """ + if dtype.itemsize == 0: + return True + if issubclass(dtype.type, (np.datetime64, np.timedelta64)): + if dtype.name.endswith("64"): + # Generic time units + return True + return False + + +class TestStringDiscovery: + @pytest.mark.parametrize("obj", + [object(), 1.2, 10**43, None, "string"], + ids=["object", "1.2", "10**43", "None", "string"]) + def test_basic_stringlength(self, obj): + length = len(str(obj)) + expected = np.dtype(f"S{length}") + + assert np.array(obj, dtype="S").dtype == expected + assert np.array([obj], dtype="S").dtype == expected + + # A nested array is also discovered correctly + arr = np.array(obj, dtype="O") + assert np.array(arr, dtype="S").dtype == expected + # Also if we use the dtype class + assert np.array(arr, dtype=type(expected)).dtype == expected + # Check that .astype() behaves identical + assert arr.astype("S").dtype == expected + # The DType class is accepted by `.astype()` + assert arr.astype(type(np.dtype("S"))).dtype == expected + + @pytest.mark.parametrize("obj", + [object(), 1.2, 10**43, None, "string"], + ids=["object", "1.2", "10**43", "None", "string"]) + def test_nested_arrays_stringlength(self, obj): + length = len(str(obj)) + expected = np.dtype(f"S{length}") + arr = np.array(obj, dtype="O") + assert np.array([arr, arr], dtype="S").dtype == expected + + @pytest.mark.parametrize("arraylike", arraylikes()) + def test_unpack_first_level(self, arraylike): + # We unpack exactly one level of array likes + obj = np.array([None]) + obj[0] = np.array(1.2) + # the length of the included item, not of the float dtype + length = len(str(obj[0])) + expected = np.dtype(f"S{length}") + + obj = arraylike(obj) + # casting to string usually calls str(obj) + arr = np.array([obj], dtype="S") + assert arr.shape == (1, 1) + assert arr.dtype == expected + + +class TestScalarDiscovery: + def test_void_special_case(self): + # Void dtypes with structures discover tuples as elements + arr = np.array((1, 2, 3), dtype="i,i,i") + assert arr.shape == () + arr = np.array([(1, 2, 3)], dtype="i,i,i") + assert arr.shape == (1,) + + def test_char_special_case(self): + arr = np.array("string", dtype="c") + assert arr.shape == (6,) + assert arr.dtype.char == "c" + arr = np.array(["string"], dtype="c") + assert arr.shape == (1, 6) + assert arr.dtype.char == "c" + + def test_char_special_case_deep(self): + # Check that the character special case errors correctly if the + # array is too deep: + nested = ["string"] # 2 dimensions (due to string being sequence) + for i in range(ncu.MAXDIMS - 2): + nested = [nested] + + arr = np.array(nested, dtype='c') + assert arr.shape == (1,) * (ncu.MAXDIMS - 1) + (6,) + with pytest.raises(ValueError): + np.array([nested], dtype="c") + + def test_unknown_object(self): + arr = np.array(object()) + assert arr.shape == () + assert arr.dtype == np.dtype("O") + + @pytest.mark.parametrize("scalar", scalar_instances()) + def test_scalar(self, scalar): + arr = np.array(scalar) + assert arr.shape == () + assert arr.dtype == scalar.dtype + + arr = np.array([[scalar, scalar]]) + assert arr.shape == (1, 2) + assert arr.dtype == scalar.dtype + + # Additionally to string this test also runs into a corner case + # with datetime promotion (the difference is the promotion order). + @pytest.mark.filterwarnings("ignore:Promotion of numbers:FutureWarning") + def test_scalar_promotion(self): + for sc1, sc2 in product(scalar_instances(), scalar_instances()): + sc1, sc2 = sc1.values[0], sc2.values[0] + # test all combinations: + try: + arr = np.array([sc1, sc2]) + except (TypeError, ValueError): + # The promotion between two times can fail + # XFAIL (ValueError): Some object casts are currently undefined + continue + assert arr.shape == (2,) + try: + dt1, dt2 = sc1.dtype, sc2.dtype + expected_dtype = np.promote_types(dt1, dt2) + assert arr.dtype == expected_dtype + except TypeError as e: + # Will currently always go to object dtype + assert arr.dtype == np.dtype("O") + + @pytest.mark.parametrize("scalar", scalar_instances()) + def test_scalar_coercion(self, scalar): + # This tests various scalar coercion paths, mainly for the numerical + # types. It includes some paths not directly related to `np.array`. + if isinstance(scalar, np.inexact): + # Ensure we have a full-precision number if available + scalar = type(scalar)((scalar * 2)**0.5) + + if type(scalar) is rational: + # Rational generally fails due to a missing cast. In the future + # object casts should automatically be defined based on `setitem`. + pytest.xfail("Rational to object cast is undefined currently.") + + # Use casting from object: + arr = np.array(scalar, dtype=object).astype(scalar.dtype) + + # Test various ways to create an array containing this scalar: + arr1 = np.array(scalar).reshape(1) + arr2 = np.array([scalar]) + arr3 = np.empty(1, dtype=scalar.dtype) + arr3[0] = scalar + arr4 = np.empty(1, dtype=scalar.dtype) + arr4[:] = [scalar] + # All of these methods should yield the same results + assert_array_equal(arr, arr1) + assert_array_equal(arr, arr2) + assert_array_equal(arr, arr3) + assert_array_equal(arr, arr4) + + @pytest.mark.xfail(IS_PYPY, reason="`int(np.complex128(3))` fails on PyPy") + @pytest.mark.filterwarnings("ignore::numpy.exceptions.ComplexWarning") + @pytest.mark.parametrize("cast_to", scalar_instances()) + def test_scalar_coercion_same_as_cast_and_assignment(self, cast_to): + """ + Test that in most cases: + * `np.array(scalar, dtype=dtype)` + * `np.empty((), dtype=dtype)[()] = scalar` + * `np.array(scalar).astype(dtype)` + should behave the same. The only exceptions are parametric dtypes + (mainly datetime/timedelta without unit) and void without fields. + """ + dtype = cast_to.dtype # use to parametrize only the target dtype + + for scalar in scalar_instances(times=False): + scalar = scalar.values[0] + + if dtype.type == np.void: + if scalar.dtype.fields is not None and dtype.fields is None: + # Here, coercion to "V6" works, but the cast fails. + # Since the types are identical, SETITEM takes care of + # this, but has different rules than the cast. + with pytest.raises(TypeError): + np.array(scalar).astype(dtype) + np.array(scalar, dtype=dtype) + np.array([scalar], dtype=dtype) + continue + + # The main test, we first try to use casting and if it succeeds + # continue below testing that things are the same, otherwise + # test that the alternative paths at least also fail. + try: + cast = np.array(scalar).astype(dtype) + except (TypeError, ValueError, RuntimeError): + # coercion should also raise (error type may change) + with pytest.raises(Exception): + np.array(scalar, dtype=dtype) + + if (isinstance(scalar, rational) and + np.issubdtype(dtype, np.signedinteger)): + return + + with pytest.raises(Exception): + np.array([scalar], dtype=dtype) + # assignment should also raise + res = np.zeros((), dtype=dtype) + with pytest.raises(Exception): + res[()] = scalar + + return + + # Non error path: + arr = np.array(scalar, dtype=dtype) + assert_array_equal(arr, cast) + # assignment behaves the same + ass = np.zeros((), dtype=dtype) + ass[()] = scalar + assert_array_equal(ass, cast) + + @pytest.mark.parametrize("pyscalar", [10, 10.32, 10.14j, 10**100]) + def test_pyscalar_subclasses(self, pyscalar): + """NumPy arrays are read/write which means that anything but invariant + behaviour is on thin ice. However, we currently are happy to discover + subclasses of Python float, int, complex the same as the base classes. + This should potentially be deprecated. + """ + class MyScalar(type(pyscalar)): + pass + + res = np.array(MyScalar(pyscalar)) + expected = np.array(pyscalar) + assert_array_equal(res, expected) + + @pytest.mark.parametrize("dtype_char", np.typecodes["All"]) + def test_default_dtype_instance(self, dtype_char): + if dtype_char in "SU": + dtype = np.dtype(dtype_char + "1") + elif dtype_char == "V": + # Legacy behaviour was to use V8. The reason was float64 being the + # default dtype and that having 8 bytes. + dtype = np.dtype("V8") + else: + dtype = np.dtype(dtype_char) + + discovered_dtype, _ = ncu._discover_array_parameters([], type(dtype)) + + assert discovered_dtype == dtype + assert discovered_dtype.itemsize == dtype.itemsize + + @pytest.mark.parametrize("dtype", np.typecodes["Integer"]) + @pytest.mark.parametrize(["scalar", "error"], + [(np.float64(np.nan), ValueError), + (np.array(-1).astype(np.ulonglong)[()], OverflowError)]) + def test_scalar_to_int_coerce_does_not_cast(self, dtype, scalar, error): + """ + Signed integers are currently different in that they do not cast other + NumPy scalar, but instead use scalar.__int__(). The hardcoded + exception to this rule is `np.array(scalar, dtype=integer)`. + """ + dtype = np.dtype(dtype) + + # This is a special case using casting logic. It warns for the NaN + # but allows the cast (giving undefined behaviour). + with np.errstate(invalid="ignore"): + coerced = np.array(scalar, dtype=dtype) + cast = np.array(scalar).astype(dtype) + assert_array_equal(coerced, cast) + + # However these fail: + with pytest.raises(error): + np.array([scalar], dtype=dtype) + with pytest.raises(error): + cast[()] = scalar + + +class TestTimeScalars: + @pytest.mark.parametrize("dtype", [np.int64, np.float32]) + @pytest.mark.parametrize("scalar", + [param(np.timedelta64("NaT", "s"), id="timedelta64[s](NaT)"), + param(np.timedelta64(123, "s"), id="timedelta64[s]"), + param(np.datetime64("NaT", "generic"), id="datetime64[generic](NaT)"), + param(np.datetime64(1, "D"), id="datetime64[D]")],) + def test_coercion_basic(self, dtype, scalar): + # Note the `[scalar]` is there because np.array(scalar) uses stricter + # `scalar.__int__()` rules for backward compatibility right now. + arr = np.array(scalar, dtype=dtype) + cast = np.array(scalar).astype(dtype) + assert_array_equal(arr, cast) + + ass = np.ones((), dtype=dtype) + if issubclass(dtype, np.integer): + with pytest.raises(TypeError): + # raises, as would np.array([scalar], dtype=dtype), this is + # conversion from times, but behaviour of integers. + ass[()] = scalar + else: + ass[()] = scalar + assert_array_equal(ass, cast) + + @pytest.mark.parametrize("dtype", [np.int64, np.float32]) + @pytest.mark.parametrize("scalar", + [param(np.timedelta64(123, "ns"), id="timedelta64[ns]"), + param(np.timedelta64(12, "generic"), id="timedelta64[generic]")]) + def test_coercion_timedelta_convert_to_number(self, dtype, scalar): + # Only "ns" and "generic" timedeltas can be converted to numbers + # so these are slightly special. + arr = np.array(scalar, dtype=dtype) + cast = np.array(scalar).astype(dtype) + ass = np.ones((), dtype=dtype) + ass[()] = scalar # raises, as would np.array([scalar], dtype=dtype) + + assert_array_equal(arr, cast) + assert_array_equal(cast, cast) + + @pytest.mark.parametrize("dtype", ["S6", "U6"]) + @pytest.mark.parametrize(["val", "unit"], + [param(123, "s", id="[s]"), param(123, "D", id="[D]")]) + def test_coercion_assignment_datetime(self, val, unit, dtype): + # String from datetime64 assignment is currently special cased to + # never use casting. This is because casting will error in this + # case, and traditionally in most cases the behaviour is maintained + # like this. (`np.array(scalar, dtype="U6")` would have failed before) + # TODO: This discrepancy _should_ be resolved, either by relaxing the + # cast, or by deprecating the first part. + scalar = np.datetime64(val, unit) + dtype = np.dtype(dtype) + cut_string = dtype.type(str(scalar)[:6]) + + arr = np.array(scalar, dtype=dtype) + assert arr[()] == cut_string + ass = np.ones((), dtype=dtype) + ass[()] = scalar + assert ass[()] == cut_string + + with pytest.raises(RuntimeError): + # However, unlike the above assignment using `str(scalar)[:6]` + # due to being handled by the string DType and not be casting + # the explicit cast fails: + np.array(scalar).astype(dtype) + + + @pytest.mark.parametrize(["val", "unit"], + [param(123, "s", id="[s]"), param(123, "D", id="[D]")]) + def test_coercion_assignment_timedelta(self, val, unit): + scalar = np.timedelta64(val, unit) + + # Unlike datetime64, timedelta allows the unsafe cast: + np.array(scalar, dtype="S6") + cast = np.array(scalar).astype("S6") + ass = np.ones((), dtype="S6") + ass[()] = scalar + expected = scalar.astype("S")[:6] + assert cast[()] == expected + assert ass[()] == expected + +class TestNested: + def test_nested_simple(self): + initial = [1.2] + nested = initial + for i in range(ncu.MAXDIMS - 1): + nested = [nested] + + arr = np.array(nested, dtype="float64") + assert arr.shape == (1,) * ncu.MAXDIMS + with pytest.raises(ValueError): + np.array([nested], dtype="float64") + + with pytest.raises(ValueError, match=".*would exceed the maximum"): + np.array([nested]) # user must ask for `object` explicitly + + arr = np.array([nested], dtype=object) + assert arr.dtype == np.dtype("O") + assert arr.shape == (1,) * ncu.MAXDIMS + assert arr.item() is initial + + def test_pathological_self_containing(self): + # Test that this also works for two nested sequences + l = [] + l.append(l) + arr = np.array([l, l, l], dtype=object) + assert arr.shape == (3,) + (1,) * (ncu.MAXDIMS - 1) + + # Also check a ragged case: + arr = np.array([l, [None], l], dtype=object) + assert arr.shape == (3, 1) + + @pytest.mark.parametrize("arraylike", arraylikes()) + def test_nested_arraylikes(self, arraylike): + # We try storing an array like into an array, but the array-like + # will have too many dimensions. This means the shape discovery + # decides that the array-like must be treated as an object (a special + # case of ragged discovery). The result will be an array with one + # dimension less than the maximum dimensions, and the array being + # assigned to it (which does work for object or if `float(arraylike)` + # works). + initial = arraylike(np.ones((1, 1))) + + nested = initial + for i in range(ncu.MAXDIMS - 1): + nested = [nested] + + with pytest.raises(ValueError, match=".*would exceed the maximum"): + # It will refuse to assign the array into + np.array(nested, dtype="float64") + + # If this is object, we end up assigning a (1, 1) array into (1,) + # (due to running out of dimensions), this is currently supported but + # a special case which is not ideal. + arr = np.array(nested, dtype=object) + assert arr.shape == (1,) * ncu.MAXDIMS + assert arr.item() == np.array(initial).item() + + @pytest.mark.parametrize("arraylike", arraylikes()) + def test_uneven_depth_ragged(self, arraylike): + arr = np.arange(4).reshape((2, 2)) + arr = arraylike(arr) + + # Array is ragged in the second dimension already: + out = np.array([arr, [arr]], dtype=object) + assert out.shape == (2,) + assert out[0] is arr + assert type(out[1]) is list + + # Array is ragged in the third dimension: + with pytest.raises(ValueError): + # This is a broadcast error during assignment, because + # the array shape would be (2, 2, 2) but `arr[0, 0] = arr` fails. + np.array([arr, [arr, arr]], dtype=object) + + def test_empty_sequence(self): + arr = np.array([[], [1], [[1]]], dtype=object) + assert arr.shape == (3,) + + # The empty sequence stops further dimension discovery, so the + # result shape will be (0,) which leads to an error during: + with pytest.raises(ValueError): + np.array([[], np.empty((0, 1))], dtype=object) + + def test_array_of_different_depths(self): + # When multiple arrays (or array-likes) are included in a + # sequences and have different depth, we currently discover + # as many dimensions as they share. (see also gh-17224) + arr = np.zeros((3, 2)) + mismatch_first_dim = np.zeros((1, 2)) + mismatch_second_dim = np.zeros((3, 3)) + + dtype, shape = ncu._discover_array_parameters( + [arr, mismatch_second_dim], dtype=np.dtype("O")) + assert shape == (2, 3) + + dtype, shape = ncu._discover_array_parameters( + [arr, mismatch_first_dim], dtype=np.dtype("O")) + assert shape == (2,) + # The second case is currently supported because the arrays + # can be stored as objects: + res = np.asarray([arr, mismatch_first_dim], dtype=np.dtype("O")) + assert res[0] is arr + assert res[1] is mismatch_first_dim + + +class TestBadSequences: + # These are tests for bad objects passed into `np.array`, in general + # these have undefined behaviour. In the old code they partially worked + # when now they will fail. We could (and maybe should) create a copy + # of all sequences to be safe against bad-actors. + + def test_growing_list(self): + # List to coerce, `mylist` will append to it during coercion + obj = [] + class mylist(list): + def __len__(self): + obj.append([1, 2]) + return super().__len__() + + obj.append(mylist([1, 2])) + + with pytest.raises(RuntimeError): + np.array(obj) + + # Note: We do not test a shrinking list. These do very evil things + # and the only way to fix them would be to copy all sequences. + # (which may be a real option in the future). + + def test_mutated_list(self): + # List to coerce, `mylist` will mutate the first element + obj = [] + class mylist(list): + def __len__(self): + obj[0] = [2, 3] # replace with a different list. + return super().__len__() + + obj.append([2, 3]) + obj.append(mylist([1, 2])) + # Does not crash: + np.array(obj) + + def test_replace_0d_array(self): + # List to coerce, `mylist` will mutate the first element + obj = [] + class baditem: + def __len__(self): + obj[0][0] = 2 # replace with a different list. + raise ValueError("not actually a sequence!") + + def __getitem__(self): + pass + + # Runs into a corner case in the new code, the `array(2)` is cached + # so replacing it invalidates the cache. + obj.append([np.array(2), baditem()]) + with pytest.raises(RuntimeError): + np.array(obj) + + +class TestArrayLikes: + @pytest.mark.parametrize("arraylike", arraylikes()) + def test_0d_object_special_case(self, arraylike): + arr = np.array(0.) + obj = arraylike(arr) + # A single array-like is always converted: + res = np.array(obj, dtype=object) + assert_array_equal(arr, res) + + # But a single 0-D nested array-like never: + res = np.array([obj], dtype=object) + assert res[0] is obj + + @pytest.mark.parametrize("arraylike", arraylikes()) + @pytest.mark.parametrize("arr", [np.array(0.), np.arange(4)]) + def test_object_assignment_special_case(self, arraylike, arr): + obj = arraylike(arr) + empty = np.arange(1, dtype=object) + empty[:] = [obj] + assert empty[0] is obj + + def test_0d_generic_special_case(self): + class ArraySubclass(np.ndarray): + def __float__(self): + raise TypeError("e.g. quantities raise on this") + + arr = np.array(0.) + obj = arr.view(ArraySubclass) + res = np.array(obj) + # The subclass is simply cast: + assert_array_equal(arr, res) + + # If the 0-D array-like is included, __float__ is currently + # guaranteed to be used. We may want to change that, quantities + # and masked arrays half make use of this. + with pytest.raises(TypeError): + np.array([obj]) + + # The same holds for memoryview: + obj = memoryview(arr) + res = np.array(obj) + assert_array_equal(arr, res) + with pytest.raises(ValueError): + # The error type does not matter much here. + np.array([obj]) + + def test_arraylike_classes(self): + # The classes of array-likes should generally be acceptable to be + # stored inside a numpy (object) array. This tests all of the + # special attributes (since all are checked during coercion). + arr = np.array(np.int64) + assert arr[()] is np.int64 + arr = np.array([np.int64]) + assert arr[0] is np.int64 + + # This also works for properties/unbound methods: + class ArrayLike: + @property + def __array_interface__(self): + pass + + @property + def __array_struct__(self): + pass + + def __array__(self, dtype=None, copy=None): + pass + + arr = np.array(ArrayLike) + assert arr[()] is ArrayLike + arr = np.array([ArrayLike]) + assert arr[0] is ArrayLike + + @pytest.mark.skipif(not IS_64BIT, reason="Needs 64bit platform") + def test_too_large_array_error_paths(self): + """Test the error paths, including for memory leaks""" + arr = np.array(0, dtype="uint8") + # Guarantees that a contiguous copy won't work: + arr = np.broadcast_to(arr, 2**62) + + for i in range(5): + # repeat, to ensure caching cannot have an effect: + with pytest.raises(MemoryError): + np.array(arr) + with pytest.raises(MemoryError): + np.array([arr]) + + @pytest.mark.parametrize("attribute", + ["__array_interface__", "__array__", "__array_struct__"]) + @pytest.mark.parametrize("error", [RecursionError, MemoryError]) + def test_bad_array_like_attributes(self, attribute, error): + # RecursionError and MemoryError are considered fatal. All errors + # (except AttributeError) should probably be raised in the future, + # but shapely made use of it, so it will require a deprecation. + + class BadInterface: + def __getattr__(self, attr): + if attr == attribute: + raise error + super().__getattr__(attr) + + with pytest.raises(error): + np.array(BadInterface()) + + @pytest.mark.parametrize("error", [RecursionError, MemoryError]) + def test_bad_array_like_bad_length(self, error): + # RecursionError and MemoryError are considered "critical" in + # sequences. We could expand this more generally though. (NumPy 1.20) + class BadSequence: + def __len__(self): + raise error + def __getitem__(self): + # must have getitem to be a Sequence + return 1 + + with pytest.raises(error): + np.array(BadSequence()) + + def test_array_interface_descr_optional(self): + # The descr should be optional regression test for gh-27249 + arr = np.ones(10, dtype="V10") + iface = arr.__array_interface__ + iface.pop("descr") + + class MyClass: + __array_interface__ = iface + + assert_array_equal(np.asarray(MyClass), arr) + + +class TestAsArray: + """Test expected behaviors of ``asarray``.""" + + def test_dtype_identity(self): + """Confirm the intended behavior for *dtype* kwarg. + + The result of ``asarray()`` should have the dtype provided through the + keyword argument, when used. This forces unique array handles to be + produced for unique np.dtype objects, but (for equivalent dtypes), the + underlying data (the base object) is shared with the original array + object. + + Ref https://github.com/numpy/numpy/issues/1468 + """ + int_array = np.array([1, 2, 3], dtype='i') + assert np.asarray(int_array) is int_array + + # The character code resolves to the singleton dtype object provided + # by the numpy package. + assert np.asarray(int_array, dtype='i') is int_array + + # Derive a dtype from n.dtype('i'), but add a metadata object to force + # the dtype to be distinct. + unequal_type = np.dtype('i', metadata={'spam': True}) + annotated_int_array = np.asarray(int_array, dtype=unequal_type) + assert annotated_int_array is not int_array + assert annotated_int_array.base is int_array + # Create an equivalent descriptor with a new and distinct dtype + # instance. + equivalent_requirement = np.dtype('i', metadata={'spam': True}) + annotated_int_array_alt = np.asarray(annotated_int_array, + dtype=equivalent_requirement) + assert unequal_type == equivalent_requirement + assert unequal_type is not equivalent_requirement + assert annotated_int_array_alt is not annotated_int_array + assert annotated_int_array_alt.dtype is equivalent_requirement + + # Check the same logic for a pair of C types whose equivalence may vary + # between computing environments. + # Find an equivalent pair. + integer_type_codes = ('i', 'l', 'q') + integer_dtypes = [np.dtype(code) for code in integer_type_codes] + typeA = None + typeB = None + for typeA, typeB in permutations(integer_dtypes, r=2): + if typeA == typeB: + assert typeA is not typeB + break + assert isinstance(typeA, np.dtype) and isinstance(typeB, np.dtype) + + # These ``asarray()`` calls may produce a new view or a copy, + # but never the same object. + long_int_array = np.asarray(int_array, dtype='l') + long_long_int_array = np.asarray(int_array, dtype='q') + assert long_int_array is not int_array + assert long_long_int_array is not int_array + assert np.asarray(long_int_array, dtype='q') is not long_int_array + array_a = np.asarray(int_array, dtype=typeA) + assert typeA == typeB + assert typeA is not typeB + assert array_a.dtype is typeA + assert array_a is not np.asarray(array_a, dtype=typeB) + assert np.asarray(array_a, dtype=typeB).dtype is typeB + assert array_a is np.asarray(array_a, dtype=typeB).base + + +class TestSpecialAttributeLookupFailure: + # An exception was raised while fetching the attribute + + class WeirdArrayLike: + @property + def __array__(self, dtype=None, copy=None): + raise RuntimeError("oops!") + + class WeirdArrayInterface: + @property + def __array_interface__(self): + raise RuntimeError("oops!") + + def test_deprecated(self): + with pytest.raises(RuntimeError): + np.array(self.WeirdArrayLike()) + with pytest.raises(RuntimeError): + np.array(self.WeirdArrayInterface()) + + +def test_subarray_from_array_construction(): + # Arrays are more complex, since they "broadcast" on success: + arr = np.array([1, 2]) + + res = arr.astype("2i") + assert_array_equal(res, [[1, 1], [2, 2]]) + + res = np.array(arr, dtype="(2,)i") + + assert_array_equal(res, [[1, 1], [2, 2]]) + + res = np.array([[(1,), (2,)], arr], dtype="2i") + assert_array_equal(res, [[[1, 1], [2, 2]], [[1, 1], [2, 2]]]) + + # Also try a multi-dimensional example: + arr = np.arange(5 * 2).reshape(5, 2) + expected = np.broadcast_to(arr[:, :, np.newaxis, np.newaxis], (5, 2, 2, 2)) + + res = arr.astype("(2,2)f") + assert_array_equal(res, expected) + + res = np.array(arr, dtype="(2,2)f") + assert_array_equal(res, expected) + + +def test_empty_string(): + # Empty strings are unfortunately often converted to S1 and we need to + # make sure we are filling the S1 and not the (possibly) detected S0 + # result. This should likely just return S0 and if not maybe the decision + # to return S1 should be moved. + res = np.array([""] * 10, dtype="S") + assert_array_equal(res, np.array("\0", "S1")) + assert res.dtype == "S1" + + arr = np.array([""] * 10, dtype=object) + + res = arr.astype("S") + assert_array_equal(res, b"") + assert res.dtype == "S1" + + res = np.array(arr, dtype="S") + assert_array_equal(res, b"") + # TODO: This is arguably weird/wrong, but seems old: + assert res.dtype == f"S{np.dtype('O').itemsize}" + + res = np.array([[""] * 10, arr], dtype="S") + assert_array_equal(res, b"") + assert res.shape == (2, 10) + assert res.dtype == "S1" diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_interface.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_interface.py new file mode 100644 index 0000000000000000000000000000000000000000..ae719568a4b2057457aa9b2c1fced2c3b18c9d89 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_array_interface.py @@ -0,0 +1,219 @@ +import sys +import pytest +import numpy as np +from numpy.testing import extbuild, IS_WASM, IS_EDITABLE + + +@pytest.fixture +def get_module(tmp_path): + """ Some codes to generate data and manage temporary buffers use when + sharing with numpy via the array interface protocol. + """ + if sys.platform.startswith('cygwin'): + pytest.skip('link fails on cygwin') + if IS_WASM: + pytest.skip("Can't build module inside Wasm") + if IS_EDITABLE: + pytest.skip("Can't build module for editable install") + + prologue = ''' + #include + #define NPY_NO_DEPRECATED_API NPY_1_7_API_VERSION + #include + #include + #include + + NPY_NO_EXPORT + void delete_array_struct(PyObject *cap) { + + /* get the array interface structure */ + PyArrayInterface *inter = (PyArrayInterface*) + PyCapsule_GetPointer(cap, NULL); + + /* get the buffer by which data was shared */ + double *ptr = (double*)PyCapsule_GetContext(cap); + + /* for the purposes of the regression test set the elements + to nan */ + for (npy_intp i = 0; i < inter->shape[0]; ++i) + ptr[i] = nan(""); + + /* free the shared buffer */ + free(ptr); + + /* free the array interface structure */ + free(inter->shape); + free(inter); + + fprintf(stderr, "delete_array_struct\\ncap = %ld inter = %ld" + " ptr = %ld\\n", (long)cap, (long)inter, (long)ptr); + } + ''' + + functions = [ + ("new_array_struct", "METH_VARARGS", """ + + long long n_elem = 0; + double value = 0.0; + + if (!PyArg_ParseTuple(args, "Ld", &n_elem, &value)) { + Py_RETURN_NONE; + } + + /* allocate and initialize the data to share with numpy */ + long long n_bytes = n_elem*sizeof(double); + double *data = (double*)malloc(n_bytes); + + if (!data) { + PyErr_Format(PyExc_MemoryError, + "Failed to malloc %lld bytes", n_bytes); + + Py_RETURN_NONE; + } + + for (long long i = 0; i < n_elem; ++i) { + data[i] = value; + } + + /* calculate the shape and stride */ + int nd = 1; + + npy_intp *ss = (npy_intp*)malloc(2*nd*sizeof(npy_intp)); + npy_intp *shape = ss; + npy_intp *stride = ss + nd; + + shape[0] = n_elem; + stride[0] = sizeof(double); + + /* construct the array interface */ + PyArrayInterface *inter = (PyArrayInterface*) + malloc(sizeof(PyArrayInterface)); + + memset(inter, 0, sizeof(PyArrayInterface)); + + inter->two = 2; + inter->nd = nd; + inter->typekind = 'f'; + inter->itemsize = sizeof(double); + inter->shape = shape; + inter->strides = stride; + inter->data = data; + inter->flags = NPY_ARRAY_WRITEABLE | NPY_ARRAY_NOTSWAPPED | + NPY_ARRAY_ALIGNED | NPY_ARRAY_C_CONTIGUOUS; + + /* package into a capsule */ + PyObject *cap = PyCapsule_New(inter, NULL, delete_array_struct); + + /* save the pointer to the data */ + PyCapsule_SetContext(cap, data); + + fprintf(stderr, "new_array_struct\\ncap = %ld inter = %ld" + " ptr = %ld\\n", (long)cap, (long)inter, (long)data); + + return cap; + """) + ] + + more_init = "import_array();" + + try: + import array_interface_testing + return array_interface_testing + except ImportError: + pass + + # if it does not exist, build and load it + return extbuild.build_and_import_extension('array_interface_testing', + functions, + prologue=prologue, + include_dirs=[np.get_include()], + build_dir=tmp_path, + more_init=more_init) + + +@pytest.mark.slow +def test_cstruct(get_module): + + class data_source: + """ + This class is for testing the timing of the PyCapsule destructor + invoked when numpy release its reference to the shared data as part of + the numpy array interface protocol. If the PyCapsule destructor is + called early the shared data is freed and invalid memory accesses will + occur. + """ + + def __init__(self, size, value): + self.size = size + self.value = value + + @property + def __array_struct__(self): + return get_module.new_array_struct(self.size, self.value) + + # write to the same stream as the C code + stderr = sys.__stderr__ + + # used to validate the shared data. + expected_value = -3.1415 + multiplier = -10000.0 + + # create some data to share with numpy via the array interface + # assign the data an expected value. + stderr.write(' ---- create an object to share data ---- \n') + buf = data_source(256, expected_value) + stderr.write(' ---- OK!\n\n') + + # share the data + stderr.write(' ---- share data via the array interface protocol ---- \n') + arr = np.array(buf, copy=False) + stderr.write('arr.__array_interface___ = %s\n' % ( + str(arr.__array_interface__))) + stderr.write('arr.base = %s\n' % (str(arr.base))) + stderr.write(' ---- OK!\n\n') + + # release the source of the shared data. this will not release the data + # that was shared with numpy, that is done in the PyCapsule destructor. + stderr.write(' ---- destroy the object that shared data ---- \n') + buf = None + stderr.write(' ---- OK!\n\n') + + # check that we got the expected data. If the PyCapsule destructor we + # defined was prematurely called then this test will fail because our + # destructor sets the elements of the array to NaN before free'ing the + # buffer. Reading the values here may also cause a SEGV + assert np.allclose(arr, expected_value) + + # read the data. If the PyCapsule destructor we defined was prematurely + # called then reading the values here may cause a SEGV and will be reported + # as invalid reads by valgrind + stderr.write(' ---- read shared data ---- \n') + stderr.write('arr = %s\n' % (str(arr))) + stderr.write(' ---- OK!\n\n') + + # write to the shared buffer. If the shared data was prematurely deleted + # this will may cause a SEGV and valgrind will report invalid writes + stderr.write(' ---- modify shared data ---- \n') + arr *= multiplier + expected_value *= multiplier + stderr.write('arr.__array_interface___ = %s\n' % ( + str(arr.__array_interface__))) + stderr.write('arr.base = %s\n' % (str(arr.base))) + stderr.write(' ---- OK!\n\n') + + # read the data. If the shared data was prematurely deleted this + # will may cause a SEGV and valgrind will report invalid reads + stderr.write(' ---- read modified shared data ---- \n') + stderr.write('arr = %s\n' % (str(arr))) + stderr.write(' ---- OK!\n\n') + + # check that we got the expected data. If the PyCapsule destructor we + # defined was prematurely called then this test will fail because our + # destructor sets the elements of the array to NaN before free'ing the + # buffer. Reading the values here may also cause a SEGV + assert np.allclose(arr, expected_value) + + # free the shared data, the PyCapsule destructor should run here + stderr.write(' ---- free shared data ---- \n') + arr = None + stderr.write(' ---- OK!\n\n') diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arraymethod.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arraymethod.py new file mode 100644 index 0000000000000000000000000000000000000000..6083381af858d6fce4347a4b043ffc6883ec82ec --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arraymethod.py @@ -0,0 +1,86 @@ +""" +This file tests the generic aspects of ArrayMethod. At the time of writing +this is private API, but when added, public API may be added here. +""" + +from __future__ import annotations + +import types +from typing import Any + +import pytest + +import numpy as np +from numpy._core._multiarray_umath import _get_castingimpl as get_castingimpl + + +class TestResolveDescriptors: + # Test mainly error paths of the resolve_descriptors function, + # note that the `casting_unittests` tests exercise this non-error paths. + + # Casting implementations are the main/only current user: + method = get_castingimpl(type(np.dtype("d")), type(np.dtype("f"))) + + @pytest.mark.parametrize("args", [ + (True,), # Not a tuple. + ((None,)), # Too few elements + ((None, None, None),), # Too many + ((None, None),), # Input dtype is None, which is invalid. + ((np.dtype("d"), True),), # Output dtype is not a dtype + ((np.dtype("f"), None),), # Input dtype does not match method + ]) + def test_invalid_arguments(self, args): + with pytest.raises(TypeError): + self.method._resolve_descriptors(*args) + + +class TestSimpleStridedCall: + # Test mainly error paths of the resolve_descriptors function, + # note that the `casting_unittests` tests exercise this non-error paths. + + # Casting implementations are the main/only current user: + method = get_castingimpl(type(np.dtype("d")), type(np.dtype("f"))) + + @pytest.mark.parametrize(["args", "error"], [ + ((True,), TypeError), # Not a tuple + (((None,),), TypeError), # Too few elements + ((None, None), TypeError), # Inputs are not arrays. + (((None, None, None),), TypeError), # Too many + (((np.arange(3), np.arange(3)),), TypeError), # Incorrect dtypes + (((np.ones(3, dtype=">d"), np.ones(3, dtype=" None: + """Test `ndarray.__class_getitem__`.""" + alias = cls[Any, Any] + assert isinstance(alias, types.GenericAlias) + assert alias.__origin__ is cls + + @pytest.mark.parametrize("arg_len", range(4)) + def test_subscript_tup(self, cls: type[np.ndarray], arg_len: int) -> None: + arg_tup = (Any,) * arg_len + if arg_len in (1, 2): + assert cls[arg_tup] + else: + match = f"Too {'few' if arg_len == 0 else 'many'} arguments" + with pytest.raises(TypeError, match=match): + cls[arg_tup] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayobject.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayobject.py new file mode 100644 index 0000000000000000000000000000000000000000..ffa1ba001776a7fde500f82b5ef2521e1c935c60 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayobject.py @@ -0,0 +1,75 @@ +import pytest + +import numpy as np +from numpy.testing import assert_array_equal + + +def test_matrix_transpose_raises_error_for_1d(): + msg = "matrix transpose with ndim < 2 is undefined" + arr = np.arange(48) + with pytest.raises(ValueError, match=msg): + arr.mT + + +def test_matrix_transpose_equals_transpose_2d(): + arr = np.arange(48).reshape((6, 8)) + assert_array_equal(arr.T, arr.mT) + + +ARRAY_SHAPES_TO_TEST = ( + (5, 2), + (5, 2, 3), + (5, 2, 3, 4), +) + + +@pytest.mark.parametrize("shape", ARRAY_SHAPES_TO_TEST) +def test_matrix_transpose_equals_swapaxes(shape): + num_of_axes = len(shape) + vec = np.arange(shape[-1]) + arr = np.broadcast_to(vec, shape) + tgt = np.swapaxes(arr, num_of_axes - 2, num_of_axes - 1) + mT = arr.mT + assert_array_equal(tgt, mT) + + +class MyArr(np.ndarray): + def __array_wrap__(self, arr, context=None, return_scalar=None): + return super().__array_wrap__(arr, context, return_scalar) + + +class MyArrNoWrap(np.ndarray): + pass + + +@pytest.mark.parametrize("subclass_self", [np.ndarray, MyArr, MyArrNoWrap]) +@pytest.mark.parametrize("subclass_arr", [np.ndarray, MyArr, MyArrNoWrap]) +def test_array_wrap(subclass_self, subclass_arr): + # NumPy should allow `__array_wrap__` to be called on arrays, it's logic + # is designed in a way that: + # + # * Subclasses never return scalars by default (to preserve their + # information). They can choose to if they wish. + # * NumPy returns scalars, if `return_scalar` is passed as True to allow + # manual calls to `arr.__array_wrap__` to do the right thing. + # * The type of the input should be ignored (it should be a base-class + # array, but I am not sure this is guaranteed). + + arr = np.arange(3).view(subclass_self) + + arr0d = np.array(3, dtype=np.int8).view(subclass_arr) + # With third argument True, ndarray allows "decay" to scalar. + # (I don't think NumPy would pass `None`, but it seems clear to support) + if subclass_self is np.ndarray: + assert type(arr.__array_wrap__(arr0d, None, True)) is np.int8 + else: + assert type(arr.__array_wrap__(arr0d, None, True)) is type(arr) + + # Otherwise, result should be viewed as the subclass + assert type(arr.__array_wrap__(arr0d)) is type(arr) + assert type(arr.__array_wrap__(arr0d, None, None)) is type(arr) + assert type(arr.__array_wrap__(arr0d, None, False)) is type(arr) + + # Non 0-D array can't be converted to scalar, so we ignore that + arr1d = np.array([3], dtype=np.int8).view(subclass_arr) + assert type(arr.__array_wrap__(arr1d, None, True)) is type(arr) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayprint.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayprint.py new file mode 100644 index 0000000000000000000000000000000000000000..aebfd6d087ab49f9c1bf7494ab473e1448537319 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_arrayprint.py @@ -0,0 +1,1281 @@ +import sys +import gc +from hypothesis import given +from hypothesis.extra import numpy as hynp +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_warns, HAS_REFCOUNT, + assert_raises_regex, IS_WASM + ) +from numpy.testing._private.utils import run_threaded +from numpy._core.arrayprint import _typelessdata +import textwrap + +class TestArrayRepr: + def test_nan_inf(self): + x = np.array([np.nan, np.inf]) + assert_equal(repr(x), 'array([nan, inf])') + + def test_subclass(self): + class sub(np.ndarray): + pass + + # one dimensional + x1d = np.array([1, 2]).view(sub) + assert_equal(repr(x1d), 'sub([1, 2])') + + # two dimensional + x2d = np.array([[1, 2], [3, 4]]).view(sub) + assert_equal(repr(x2d), + 'sub([[1, 2],\n' + ' [3, 4]])') + + # two dimensional with flexible dtype + xstruct = np.ones((2,2), dtype=[('a', ' 1) + y = sub(None) + x[()] = y + y[()] = x + assert_equal(repr(x), + 'sub(sub(sub(..., dtype=object), dtype=object), dtype=object)') + assert_equal(str(x), '...') + x[()] = 0 # resolve circular references for garbage collector + + # nested 0d-subclass-object + x = sub(None) + x[()] = sub(None) + assert_equal(repr(x), 'sub(sub(None, dtype=object), dtype=object)') + assert_equal(str(x), 'None') + + # gh-10663 + class DuckCounter(np.ndarray): + def __getitem__(self, item): + result = super().__getitem__(item) + if not isinstance(result, DuckCounter): + result = result[...].view(DuckCounter) + return result + + def to_string(self): + return {0: 'zero', 1: 'one', 2: 'two'}.get(self.item(), 'many') + + def __str__(self): + if self.shape == (): + return self.to_string() + else: + fmt = {'all': lambda x: x.to_string()} + return np.array2string(self, formatter=fmt) + + dc = np.arange(5).view(DuckCounter) + assert_equal(str(dc), "[zero one two many many]") + assert_equal(str(dc[0]), "zero") + + def test_self_containing(self): + arr0d = np.array(None) + arr0d[()] = arr0d + assert_equal(repr(arr0d), + 'array(array(..., dtype=object), dtype=object)') + arr0d[()] = 0 # resolve recursion for garbage collector + + arr1d = np.array([None, None]) + arr1d[1] = arr1d + assert_equal(repr(arr1d), + 'array([None, array(..., dtype=object)], dtype=object)') + arr1d[1] = 0 # resolve recursion for garbage collector + + first = np.array(None) + second = np.array(None) + first[()] = second + second[()] = first + assert_equal(repr(first), + 'array(array(array(..., dtype=object), dtype=object), dtype=object)') + first[()] = 0 # resolve circular references for garbage collector + + def test_containing_list(self): + # printing square brackets directly would be ambiguous + arr1d = np.array([None, None]) + arr1d[0] = [1, 2] + arr1d[1] = [3] + assert_equal(repr(arr1d), + 'array([list([1, 2]), list([3])], dtype=object)') + + def test_void_scalar_recursion(self): + # gh-9345 + repr(np.void(b'test')) # RecursionError ? + + def test_fieldless_structured(self): + # gh-10366 + no_fields = np.dtype([]) + arr_no_fields = np.empty(4, dtype=no_fields) + assert_equal(repr(arr_no_fields), 'array([(), (), (), ()], dtype=[])') + + +class TestComplexArray: + def test_str(self): + rvals = [0, 1, -1, np.inf, -np.inf, np.nan] + cvals = [complex(rp, ip) for rp in rvals for ip in rvals] + dtypes = [np.complex64, np.cdouble, np.clongdouble] + actual = [str(np.array([c], dt)) for c in cvals for dt in dtypes] + wanted = [ + '[0.+0.j]', '[0.+0.j]', '[0.+0.j]', + '[0.+1.j]', '[0.+1.j]', '[0.+1.j]', + '[0.-1.j]', '[0.-1.j]', '[0.-1.j]', + '[0.+infj]', '[0.+infj]', '[0.+infj]', + '[0.-infj]', '[0.-infj]', '[0.-infj]', + '[0.+nanj]', '[0.+nanj]', '[0.+nanj]', + '[1.+0.j]', '[1.+0.j]', '[1.+0.j]', + '[1.+1.j]', '[1.+1.j]', '[1.+1.j]', + '[1.-1.j]', '[1.-1.j]', '[1.-1.j]', + '[1.+infj]', '[1.+infj]', '[1.+infj]', + '[1.-infj]', '[1.-infj]', '[1.-infj]', + '[1.+nanj]', '[1.+nanj]', '[1.+nanj]', + '[-1.+0.j]', '[-1.+0.j]', '[-1.+0.j]', + '[-1.+1.j]', '[-1.+1.j]', '[-1.+1.j]', + '[-1.-1.j]', '[-1.-1.j]', '[-1.-1.j]', + '[-1.+infj]', '[-1.+infj]', '[-1.+infj]', + '[-1.-infj]', '[-1.-infj]', '[-1.-infj]', + '[-1.+nanj]', '[-1.+nanj]', '[-1.+nanj]', + '[inf+0.j]', '[inf+0.j]', '[inf+0.j]', + '[inf+1.j]', '[inf+1.j]', '[inf+1.j]', + '[inf-1.j]', '[inf-1.j]', '[inf-1.j]', + '[inf+infj]', '[inf+infj]', '[inf+infj]', + '[inf-infj]', '[inf-infj]', '[inf-infj]', + '[inf+nanj]', '[inf+nanj]', '[inf+nanj]', + '[-inf+0.j]', '[-inf+0.j]', '[-inf+0.j]', + '[-inf+1.j]', '[-inf+1.j]', '[-inf+1.j]', + '[-inf-1.j]', '[-inf-1.j]', '[-inf-1.j]', + '[-inf+infj]', '[-inf+infj]', '[-inf+infj]', + '[-inf-infj]', '[-inf-infj]', '[-inf-infj]', + '[-inf+nanj]', '[-inf+nanj]', '[-inf+nanj]', + '[nan+0.j]', '[nan+0.j]', '[nan+0.j]', + '[nan+1.j]', '[nan+1.j]', '[nan+1.j]', + '[nan-1.j]', '[nan-1.j]', '[nan-1.j]', + '[nan+infj]', '[nan+infj]', '[nan+infj]', + '[nan-infj]', '[nan-infj]', '[nan-infj]', + '[nan+nanj]', '[nan+nanj]', '[nan+nanj]'] + + for res, val in zip(actual, wanted): + assert_equal(res, val) + +class TestArray2String: + def test_basic(self): + """Basic test of array2string.""" + a = np.arange(3) + assert_(np.array2string(a) == '[0 1 2]') + assert_(np.array2string(a, max_line_width=4, legacy='1.13') == '[0 1\n 2]') + assert_(np.array2string(a, max_line_width=4) == '[0\n 1\n 2]') + + def test_unexpected_kwarg(self): + # ensure than an appropriate TypeError + # is raised when array2string receives + # an unexpected kwarg + + with assert_raises_regex(TypeError, 'nonsense'): + np.array2string(np.array([1, 2, 3]), + nonsense=None) + + def test_format_function(self): + """Test custom format function for each element in array.""" + def _format_function(x): + if np.abs(x) < 1: + return '.' + elif np.abs(x) < 2: + return 'o' + else: + return 'O' + + x = np.arange(3) + x_hex = "[0x0 0x1 0x2]" + x_oct = "[0o0 0o1 0o2]" + assert_(np.array2string(x, formatter={'all':_format_function}) == + "[. o O]") + assert_(np.array2string(x, formatter={'int_kind':_format_function}) == + "[. o O]") + assert_(np.array2string(x, formatter={'all':lambda x: "%.4f" % x}) == + "[0.0000 1.0000 2.0000]") + assert_equal(np.array2string(x, formatter={'int':lambda x: hex(x)}), + x_hex) + assert_equal(np.array2string(x, formatter={'int':lambda x: oct(x)}), + x_oct) + + x = np.arange(3.) + assert_(np.array2string(x, formatter={'float_kind':lambda x: "%.2f" % x}) == + "[0.00 1.00 2.00]") + assert_(np.array2string(x, formatter={'float':lambda x: "%.2f" % x}) == + "[0.00 1.00 2.00]") + + s = np.array(['abc', 'def']) + assert_(np.array2string(s, formatter={'numpystr':lambda s: s*2}) == + '[abcabc defdef]') + + def test_structure_format_mixed(self): + dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + x = np.array([('Sarah', (8.0, 7.0)), ('John', (6.0, 7.0))], dtype=dt) + assert_equal(np.array2string(x), + "[('Sarah', [8., 7.]) ('John', [6., 7.])]") + + np.set_printoptions(legacy='1.13') + try: + # for issue #5692 + A = np.zeros(shape=10, dtype=[("A", "M8[s]")]) + A[5:].fill(np.datetime64('NaT')) + assert_equal( + np.array2string(A), + textwrap.dedent("""\ + [('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) + ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) ('NaT',) ('NaT',) + ('NaT',) ('NaT',) ('NaT',)]""") + ) + finally: + np.set_printoptions(legacy=False) + + # same again, but with non-legacy behavior + assert_equal( + np.array2string(A), + textwrap.dedent("""\ + [('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) + ('1970-01-01T00:00:00',) ('1970-01-01T00:00:00',) + ('1970-01-01T00:00:00',) ( 'NaT',) + ( 'NaT',) ( 'NaT',) + ( 'NaT',) ( 'NaT',)]""") + ) + + # and again, with timedeltas + A = np.full(10, 123456, dtype=[("A", "m8[s]")]) + A[5:].fill(np.datetime64('NaT')) + assert_equal( + np.array2string(A), + textwrap.dedent("""\ + [(123456,) (123456,) (123456,) (123456,) (123456,) ( 'NaT',) ( 'NaT',) + ( 'NaT',) ( 'NaT',) ( 'NaT',)]""") + ) + + def test_structure_format_int(self): + # See #8160 + struct_int = np.array([([1, -1],), ([123, 1],)], + dtype=[('B', 'i4', 2)]) + assert_equal(np.array2string(struct_int), + "[([ 1, -1],) ([123, 1],)]") + struct_2dint = np.array([([[0, 1], [2, 3]],), ([[12, 0], [0, 0]],)], + dtype=[('B', 'i4', (2, 2))]) + assert_equal(np.array2string(struct_2dint), + "[([[ 0, 1], [ 2, 3]],) ([[12, 0], [ 0, 0]],)]") + + def test_structure_format_float(self): + # See #8172 + array_scalar = np.array( + (1., 2.1234567890123456789, 3.), dtype=('f8,f8,f8')) + assert_equal(np.array2string(array_scalar), "(1., 2.12345679, 3.)") + + def test_unstructured_void_repr(self): + a = np.array([27, 91, 50, 75, 7, 65, 10, 8, + 27, 91, 51, 49,109, 82,101,100], dtype='u1').view('V8') + assert_equal(repr(a[0]), + r"np.void(b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08')") + assert_equal(str(a[0]), r"b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08'") + assert_equal(repr(a), + r"array([b'\x1B\x5B\x32\x4B\x07\x41\x0A\x08'," "\n" + r" b'\x1B\x5B\x33\x31\x6D\x52\x65\x64'], dtype='|V8')") + + assert_equal(eval(repr(a), vars(np)), a) + assert_equal(eval(repr(a[0]), dict(np=np)), a[0]) + + def test_edgeitems_kwarg(self): + # previously the global print options would be taken over the kwarg + arr = np.zeros(3, int) + assert_equal( + np.array2string(arr, edgeitems=1, threshold=0), + "[0 ... 0]" + ) + + def test_summarize_1d(self): + A = np.arange(1001) + strA = '[ 0 1 2 ... 998 999 1000]' + assert_equal(str(A), strA) + + reprA = 'array([ 0, 1, 2, ..., 998, 999, 1000])' + try: + np.set_printoptions(legacy='2.1') + assert_equal(repr(A), reprA) + finally: + np.set_printoptions(legacy=False) + + assert_equal(repr(A), reprA.replace(')', ', shape=(1001,))')) + + def test_summarize_2d(self): + A = np.arange(1002).reshape(2, 501) + strA = '[[ 0 1 2 ... 498 499 500]\n' \ + ' [ 501 502 503 ... 999 1000 1001]]' + assert_equal(str(A), strA) + + reprA = 'array([[ 0, 1, 2, ..., 498, 499, 500],\n' \ + ' [ 501, 502, 503, ..., 999, 1000, 1001]])' + try: + np.set_printoptions(legacy='2.1') + assert_equal(repr(A), reprA) + finally: + np.set_printoptions(legacy=False) + + assert_equal(repr(A), reprA.replace(')', ', shape=(2, 501))')) + + def test_summarize_2d_dtype(self): + A = np.arange(1002, dtype='i2').reshape(2, 501) + strA = '[[ 0 1 2 ... 498 499 500]\n' \ + ' [ 501 502 503 ... 999 1000 1001]]' + assert_equal(str(A), strA) + + reprA = ('array([[ 0, 1, 2, ..., 498, 499, 500],\n' + ' [ 501, 502, 503, ..., 999, 1000, 1001]],\n' + ' shape=(2, 501), dtype=int16)') + assert_equal(repr(A), reprA) + + def test_summarize_structure(self): + A = (np.arange(2002, dtype="i8", (2, 1001))]) + strB = "[([[1, 1, 1, ..., 1, 1, 1], [1, 1, 1, ..., 1, 1, 1]],)]" + assert_equal(str(B), strB) + + reprB = ( + "array([([[1, 1, 1, ..., 1, 1, 1], [1, 1, 1, ..., 1, 1, 1]],)],\n" + " dtype=[('i', '>i8', (2, 1001))])" + ) + assert_equal(repr(B), reprB) + + C = (np.arange(22, dtype=" 1: + # if the type is >1 byte, the non-native endian version + # must show endianness. + assert non_native_repr != native_repr + assert f"dtype='{non_native_dtype.byteorder}" in non_native_repr + + def test_linewidth_repr(self): + a = np.full(7, fill_value=2) + np.set_printoptions(linewidth=17) + assert_equal( + repr(a), + textwrap.dedent("""\ + array([2, 2, 2, + 2, 2, 2, + 2])""") + ) + np.set_printoptions(linewidth=17, legacy='1.13') + assert_equal( + repr(a), + textwrap.dedent("""\ + array([2, 2, 2, + 2, 2, 2, 2])""") + ) + + a = np.full(8, fill_value=2) + + np.set_printoptions(linewidth=18, legacy=False) + assert_equal( + repr(a), + textwrap.dedent("""\ + array([2, 2, 2, + 2, 2, 2, + 2, 2])""") + ) + + np.set_printoptions(linewidth=18, legacy='1.13') + assert_equal( + repr(a), + textwrap.dedent("""\ + array([2, 2, 2, 2, + 2, 2, 2, 2])""") + ) + + def test_linewidth_str(self): + a = np.full(18, fill_value=2) + np.set_printoptions(linewidth=18) + assert_equal( + str(a), + textwrap.dedent("""\ + [2 2 2 2 2 2 2 2 + 2 2 2 2 2 2 2 2 + 2 2]""") + ) + np.set_printoptions(linewidth=18, legacy='1.13') + assert_equal( + str(a), + textwrap.dedent("""\ + [2 2 2 2 2 2 2 2 2 + 2 2 2 2 2 2 2 2 2]""") + ) + + def test_edgeitems(self): + np.set_printoptions(edgeitems=1, threshold=1) + a = np.arange(27).reshape((3, 3, 3)) + assert_equal( + repr(a), + textwrap.dedent("""\ + array([[[ 0, ..., 2], + ..., + [ 6, ..., 8]], + + ..., + + [[18, ..., 20], + ..., + [24, ..., 26]]], shape=(3, 3, 3))""") + ) + + b = np.zeros((3, 3, 1, 1)) + assert_equal( + repr(b), + textwrap.dedent("""\ + array([[[[0.]], + + ..., + + [[0.]]], + + + ..., + + + [[[0.]], + + ..., + + [[0.]]]], shape=(3, 3, 1, 1))""") + ) + + # 1.13 had extra trailing spaces, and was missing newlines + try: + np.set_printoptions(legacy='1.13') + assert_equal(repr(a), ( + "array([[[ 0, ..., 2],\n" + " ..., \n" + " [ 6, ..., 8]],\n" + "\n" + " ..., \n" + " [[18, ..., 20],\n" + " ..., \n" + " [24, ..., 26]]])") + ) + assert_equal(repr(b), ( + "array([[[[ 0.]],\n" + "\n" + " ..., \n" + " [[ 0.]]],\n" + "\n" + "\n" + " ..., \n" + " [[[ 0.]],\n" + "\n" + " ..., \n" + " [[ 0.]]]])") + ) + finally: + np.set_printoptions(legacy=False) + + def test_edgeitems_structured(self): + np.set_printoptions(edgeitems=1, threshold=1) + A = np.arange(5*2*3, dtype="f4')])"), + (np.void(b'a'), r"void(b'\x61')", r"np.void(b'\x61')"), + ]) +def test_scalar_repr_special(scalar, legacy_repr, representation): + # Test NEP 51 scalar repr (and legacy option) for numeric types + assert repr(scalar) == representation + + with np.printoptions(legacy="1.25"): + assert repr(scalar) == legacy_repr + +def test_scalar_void_float_str(): + # Note that based on this currently we do not print the same as a tuple + # would, since the tuple would include the repr() inside for floats, but + # we do not do that. + scalar = np.void((1.0, 2.0), dtype=[('f0', 'f4')]) + assert str(scalar) == "(1.0, 2.0)" + +@pytest.mark.skipif(IS_WASM, reason="wasm doesn't support asyncio") +@pytest.mark.skipif(sys.version_info < (3, 11), + reason="asyncio.barrier was added in Python 3.11") +def test_printoptions_asyncio_safe(): + asyncio = pytest.importorskip("asyncio") + + b = asyncio.Barrier(2) + + async def legacy_113(): + np.set_printoptions(legacy='1.13', precision=12) + await b.wait() + po = np.get_printoptions() + assert po['legacy'] == '1.13' + assert po['precision'] == 12 + orig_linewidth = po['linewidth'] + with np.printoptions(linewidth=34, legacy='1.21'): + po = np.get_printoptions() + assert po['legacy'] == '1.21' + assert po['precision'] == 12 + assert po['linewidth'] == 34 + po = np.get_printoptions() + assert po['linewidth'] == orig_linewidth + assert po['legacy'] == '1.13' + assert po['precision'] == 12 + + async def legacy_125(): + np.set_printoptions(legacy='1.25', precision=7) + await b.wait() + po = np.get_printoptions() + assert po['legacy'] == '1.25' + assert po['precision'] == 7 + orig_linewidth = po['linewidth'] + with np.printoptions(linewidth=6, legacy='1.13'): + po = np.get_printoptions() + assert po['legacy'] == '1.13' + assert po['precision'] == 7 + assert po['linewidth'] == 6 + po = np.get_printoptions() + assert po['linewidth'] == orig_linewidth + assert po['legacy'] == '1.25' + assert po['precision'] == 7 + + async def main(): + await asyncio.gather(legacy_125(), legacy_125()) + + loop = asyncio.new_event_loop() + asyncio.run(main()) + loop.close() + +@pytest.mark.skipif(IS_WASM, reason="wasm doesn't support threads") +def test_multithreaded_array_printing(): + # the dragon4 implementation uses a static scratch space for performance + # reasons this test makes sure it is set up in a thread-safe manner + + run_threaded(TestPrintOptions().test_floatmode, 500) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_floatingpoint_errors.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_floatingpoint_errors.py new file mode 100644 index 0000000000000000000000000000000000000000..d448b94d979812aaf2220b770d9e8c246b9d4c16 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_floatingpoint_errors.py @@ -0,0 +1,154 @@ +import pytest +from pytest import param +from numpy.testing import IS_WASM +import numpy as np + + +def values_and_dtypes(): + """ + Generate value+dtype pairs that generate floating point errors during + casts. The invalid casts to integers will generate "invalid" value + warnings, the float casts all generate "overflow". + + (The Python int/float paths don't need to get tested in all the same + situations, but it does not hurt.) + """ + # Casting to float16: + yield param(70000, "float16", id="int-to-f2") + yield param("70000", "float16", id="str-to-f2") + yield param(70000.0, "float16", id="float-to-f2") + yield param(np.longdouble(70000.), "float16", id="longdouble-to-f2") + yield param(np.float64(70000.), "float16", id="double-to-f2") + yield param(np.float32(70000.), "float16", id="float-to-f2") + # Casting to float32: + yield param(10**100, "float32", id="int-to-f4") + yield param(1e100, "float32", id="float-to-f2") + yield param(np.longdouble(1e300), "float32", id="longdouble-to-f2") + yield param(np.float64(1e300), "float32", id="double-to-f2") + # Casting to float64: + # If longdouble is double-double, its max can be rounded down to the double + # max. So we correct the double spacing (a bit weird, admittedly): + max_ld = np.finfo(np.longdouble).max + spacing = np.spacing(np.nextafter(np.finfo("f8").max, 0)) + if max_ld - spacing > np.finfo("f8").max: + yield param(np.finfo(np.longdouble).max, "float64", + id="longdouble-to-f8") + + # Cast to complex32: + yield param(2e300, "complex64", id="float-to-c8") + yield param(2e300+0j, "complex64", id="complex-to-c8") + yield param(2e300j, "complex64", id="complex-to-c8") + yield param(np.longdouble(2e300), "complex64", id="longdouble-to-c8") + + # Invalid float to integer casts: + with np.errstate(over="ignore"): + for to_dt in np.typecodes["AllInteger"]: + for value in [np.inf, np.nan]: + for from_dt in np.typecodes["AllFloat"]: + from_dt = np.dtype(from_dt) + from_val = from_dt.type(value) + + yield param(from_val, to_dt, id=f"{from_val}-to-{to_dt}") + + +def check_operations(dtype, value): + """ + There are many dedicated paths in NumPy which cast and should check for + floating point errors which occurred during those casts. + """ + if dtype.kind != 'i': + # These assignments use the stricter setitem logic: + def assignment(): + arr = np.empty(3, dtype=dtype) + arr[0] = value + + yield assignment + + def fill(): + arr = np.empty(3, dtype=dtype) + arr.fill(value) + + yield fill + + def copyto_scalar(): + arr = np.empty(3, dtype=dtype) + np.copyto(arr, value, casting="unsafe") + + yield copyto_scalar + + def copyto(): + arr = np.empty(3, dtype=dtype) + np.copyto(arr, np.array([value, value, value]), casting="unsafe") + + yield copyto + + def copyto_scalar_masked(): + arr = np.empty(3, dtype=dtype) + np.copyto(arr, value, casting="unsafe", + where=[True, False, True]) + + yield copyto_scalar_masked + + def copyto_masked(): + arr = np.empty(3, dtype=dtype) + np.copyto(arr, np.array([value, value, value]), casting="unsafe", + where=[True, False, True]) + + yield copyto_masked + + def direct_cast(): + np.array([value, value, value]).astype(dtype) + + yield direct_cast + + def direct_cast_nd_strided(): + arr = np.full((5, 5, 5), fill_value=value)[:, ::2, :] + arr.astype(dtype) + + yield direct_cast_nd_strided + + def boolean_array_assignment(): + arr = np.empty(3, dtype=dtype) + arr[[True, False, True]] = np.array([value, value]) + + yield boolean_array_assignment + + def integer_array_assignment(): + arr = np.empty(3, dtype=dtype) + values = np.array([value, value]) + + arr[[0, 1]] = values + + yield integer_array_assignment + + def integer_array_assignment_with_subspace(): + arr = np.empty((5, 3), dtype=dtype) + values = np.array([value, value, value]) + + arr[[0, 2]] = values + + yield integer_array_assignment_with_subspace + + def flat_assignment(): + arr = np.empty((3,), dtype=dtype) + values = np.array([value, value, value]) + arr.flat[:] = values + + yield flat_assignment + +@pytest.mark.skipif(IS_WASM, reason="no wasm fp exception support") +@pytest.mark.parametrize(["value", "dtype"], values_and_dtypes()) +@pytest.mark.filterwarnings("ignore::numpy.exceptions.ComplexWarning") +def test_floatingpoint_errors_casting(dtype, value): + dtype = np.dtype(dtype) + for operation in check_operations(dtype, value): + dtype = np.dtype(dtype) + + match = "invalid" if dtype.kind in 'iu' else "overflow" + with pytest.warns(RuntimeWarning, match=match): + operation() + + with np.errstate(all="raise"): + with pytest.raises(FloatingPointError, match=match): + operation() + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_unittests.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_unittests.py new file mode 100644 index 0000000000000000000000000000000000000000..50b4f45b1f5ab960481fb449a47804553477d7da --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_casting_unittests.py @@ -0,0 +1,818 @@ +""" +The tests exercise the casting machinery in a more low-level manner. +The reason is mostly to test a new implementation of the casting machinery. + +Unlike most tests in NumPy, these are closer to unit-tests rather +than integration tests. +""" + +import pytest +import textwrap +import enum +import random +import ctypes + +import numpy as np +from numpy.lib.stride_tricks import as_strided + +from numpy.testing import assert_array_equal +from numpy._core._multiarray_umath import _get_castingimpl as get_castingimpl + + +# Simple skips object, parametric and long double (unsupported by struct) +simple_dtypes = "?bhilqBHILQefdFD" +if np.dtype("l").itemsize != np.dtype("q").itemsize: + # Remove l and L, the table was generated with 64bit linux in mind. + simple_dtypes = simple_dtypes.replace("l", "").replace("L", "") +simple_dtypes = [type(np.dtype(c)) for c in simple_dtypes] + + +def simple_dtype_instances(): + for dtype_class in simple_dtypes: + dt = dtype_class() + yield pytest.param(dt, id=str(dt)) + if dt.byteorder != "|": + dt = dt.newbyteorder() + yield pytest.param(dt, id=str(dt)) + + +def get_expected_stringlength(dtype): + """Returns the string length when casting the basic dtypes to strings. + """ + if dtype == np.bool: + return 5 + if dtype.kind in "iu": + if dtype.itemsize == 1: + length = 3 + elif dtype.itemsize == 2: + length = 5 + elif dtype.itemsize == 4: + length = 10 + elif dtype.itemsize == 8: + length = 20 + else: + raise AssertionError(f"did not find expected length for {dtype}") + + if dtype.kind == "i": + length += 1 # adds one character for the sign + + return length + + # Note: Can't do dtype comparison for longdouble on windows + if dtype.char == "g": + return 48 + elif dtype.char == "G": + return 48 * 2 + elif dtype.kind == "f": + return 32 # also for half apparently. + elif dtype.kind == "c": + return 32 * 2 + + raise AssertionError(f"did not find expected length for {dtype}") + + +class Casting(enum.IntEnum): + no = 0 + equiv = 1 + safe = 2 + same_kind = 3 + unsafe = 4 + + +def _get_cancast_table(): + table = textwrap.dedent(""" + X ? b h i l q B H I L Q e f d g F D G S U V O M m + ? # = = = = = = = = = = = = = = = = = = = = = . = + b . # = = = = . . . . . = = = = = = = = = = = . = + h . ~ # = = = . . . . . ~ = = = = = = = = = = . = + i . ~ ~ # = = . . . . . ~ ~ = = ~ = = = = = = . = + l . ~ ~ ~ # # . . . . . ~ ~ = = ~ = = = = = = . = + q . ~ ~ ~ # # . . . . . ~ ~ = = ~ = = = = = = . = + B . ~ = = = = # = = = = = = = = = = = = = = = . = + H . ~ ~ = = = ~ # = = = ~ = = = = = = = = = = . = + I . ~ ~ ~ = = ~ ~ # = = ~ ~ = = ~ = = = = = = . = + L . ~ ~ ~ ~ ~ ~ ~ ~ # # ~ ~ = = ~ = = = = = = . ~ + Q . ~ ~ ~ ~ ~ ~ ~ ~ # # ~ ~ = = ~ = = = = = = . ~ + e . . . . . . . . . . . # = = = = = = = = = = . . + f . . . . . . . . . . . ~ # = = = = = = = = = . . + d . . . . . . . . . . . ~ ~ # = ~ = = = = = = . . + g . . . . . . . . . . . ~ ~ ~ # ~ ~ = = = = = . . + F . . . . . . . . . . . . . . . # = = = = = = . . + D . . . . . . . . . . . . . . . ~ # = = = = = . . + G . . . . . . . . . . . . . . . ~ ~ # = = = = . . + S . . . . . . . . . . . . . . . . . . # = = = . . + U . . . . . . . . . . . . . . . . . . . # = = . . + V . . . . . . . . . . . . . . . . . . . . # = . . + O . . . . . . . . . . . . . . . . . . . . = # . . + M . . . . . . . . . . . . . . . . . . . . = = # . + m . . . . . . . . . . . . . . . . . . . . = = . # + """).strip().split("\n") + dtypes = [type(np.dtype(c)) for c in table[0][2::2]] + + convert_cast = {".": Casting.unsafe, "~": Casting.same_kind, + "=": Casting.safe, "#": Casting.equiv, + " ": -1} + + cancast = {} + for from_dt, row in zip(dtypes, table[1:]): + cancast[from_dt] = {} + for to_dt, c in zip(dtypes, row[2::2]): + cancast[from_dt][to_dt] = convert_cast[c] + + return cancast + +CAST_TABLE = _get_cancast_table() + + +class TestChanges: + """ + These test cases exercise some behaviour changes + """ + @pytest.mark.parametrize("string", ["S", "U"]) + @pytest.mark.parametrize("floating", ["e", "f", "d", "g"]) + def test_float_to_string(self, floating, string): + assert np.can_cast(floating, string) + # 100 is long enough to hold any formatted floating + assert np.can_cast(floating, f"{string}100") + + def test_to_void(self): + # But in general, we do consider these safe: + assert np.can_cast("d", "V") + assert np.can_cast("S20", "V") + + # Do not consider it a safe cast if the void is too smaller: + assert not np.can_cast("d", "V1") + assert not np.can_cast("S20", "V1") + assert not np.can_cast("U1", "V1") + # Structured to unstructured is just like any other: + assert np.can_cast("d,i", "V", casting="same_kind") + # Unstructured void to unstructured is actually no cast at all: + assert np.can_cast("V3", "V", casting="no") + assert np.can_cast("V0", "V", casting="no") + + +class TestCasting: + size = 1500 # Best larger than NPY_LOWLEVEL_BUFFER_BLOCKSIZE * itemsize + + def get_data(self, dtype1, dtype2): + if dtype2 is None or dtype1.itemsize >= dtype2.itemsize: + length = self.size // dtype1.itemsize + else: + length = self.size // dtype2.itemsize + + # Assume that the base array is well enough aligned for all inputs. + arr1 = np.empty(length, dtype=dtype1) + assert arr1.flags.c_contiguous + assert arr1.flags.aligned + + values = [random.randrange(-128, 128) for _ in range(length)] + + for i, value in enumerate(values): + # Use item assignment to ensure this is not using casting: + if value < 0 and dtype1.kind == "u": + # Manually rollover unsigned integers (-1 -> int.max) + value = value + np.iinfo(dtype1).max + 1 + arr1[i] = value + + if dtype2 is None: + if dtype1.char == "?": + values = [bool(v) for v in values] + return arr1, values + + if dtype2.char == "?": + values = [bool(v) for v in values] + + arr2 = np.empty(length, dtype=dtype2) + assert arr2.flags.c_contiguous + assert arr2.flags.aligned + + for i, value in enumerate(values): + # Use item assignment to ensure this is not using casting: + if value < 0 and dtype2.kind == "u": + # Manually rollover unsigned integers (-1 -> int.max) + value = value + np.iinfo(dtype2).max + 1 + arr2[i] = value + + return arr1, arr2, values + + def get_data_variation(self, arr1, arr2, aligned=True, contig=True): + """ + Returns a copy of arr1 that may be non-contiguous or unaligned, and a + matching array for arr2 (although not a copy). + """ + if contig: + stride1 = arr1.dtype.itemsize + stride2 = arr2.dtype.itemsize + elif aligned: + stride1 = 2 * arr1.dtype.itemsize + stride2 = 2 * arr2.dtype.itemsize + else: + stride1 = arr1.dtype.itemsize + 1 + stride2 = arr2.dtype.itemsize + 1 + + max_size1 = len(arr1) * 3 * arr1.dtype.itemsize + 1 + max_size2 = len(arr2) * 3 * arr2.dtype.itemsize + 1 + from_bytes = np.zeros(max_size1, dtype=np.uint8) + to_bytes = np.zeros(max_size2, dtype=np.uint8) + + # Sanity check that the above is large enough: + assert stride1 * len(arr1) <= from_bytes.nbytes + assert stride2 * len(arr2) <= to_bytes.nbytes + + if aligned: + new1 = as_strided(from_bytes[:-1].view(arr1.dtype), + arr1.shape, (stride1,)) + new2 = as_strided(to_bytes[:-1].view(arr2.dtype), + arr2.shape, (stride2,)) + else: + new1 = as_strided(from_bytes[1:].view(arr1.dtype), + arr1.shape, (stride1,)) + new2 = as_strided(to_bytes[1:].view(arr2.dtype), + arr2.shape, (stride2,)) + + new1[...] = arr1 + + if not contig: + # Ensure we did not overwrite bytes that should not be written: + offset = arr1.dtype.itemsize if aligned else 0 + buf = from_bytes[offset::stride1].tobytes() + assert buf.count(b"\0") == len(buf) + + if contig: + assert new1.flags.c_contiguous + assert new2.flags.c_contiguous + else: + assert not new1.flags.c_contiguous + assert not new2.flags.c_contiguous + + if aligned: + assert new1.flags.aligned + assert new2.flags.aligned + else: + assert not new1.flags.aligned or new1.dtype.alignment == 1 + assert not new2.flags.aligned or new2.dtype.alignment == 1 + + return new1, new2 + + @pytest.mark.parametrize("from_Dt", simple_dtypes) + def test_simple_cancast(self, from_Dt): + for to_Dt in simple_dtypes: + cast = get_castingimpl(from_Dt, to_Dt) + + for from_dt in [from_Dt(), from_Dt().newbyteorder()]: + default = cast._resolve_descriptors((from_dt, None))[1][1] + assert default == to_Dt() + del default + + for to_dt in [to_Dt(), to_Dt().newbyteorder()]: + casting, (from_res, to_res), view_off = ( + cast._resolve_descriptors((from_dt, to_dt))) + assert(type(from_res) == from_Dt) + assert(type(to_res) == to_Dt) + if view_off is not None: + # If a view is acceptable, this is "no" casting + # and byte order must be matching. + assert casting == Casting.no + # The above table lists this as "equivalent" + assert Casting.equiv == CAST_TABLE[from_Dt][to_Dt] + # Note that to_res may not be the same as from_dt + assert from_res.isnative == to_res.isnative + else: + if from_Dt == to_Dt: + # Note that to_res may not be the same as from_dt + assert from_res.isnative != to_res.isnative + assert casting == CAST_TABLE[from_Dt][to_Dt] + + if from_Dt is to_Dt: + assert(from_dt is from_res) + assert(to_dt is to_res) + + @pytest.mark.filterwarnings("ignore::numpy.exceptions.ComplexWarning") + @pytest.mark.parametrize("from_dt", simple_dtype_instances()) + def test_simple_direct_casts(self, from_dt): + """ + This test checks numeric direct casts for dtypes supported also by the + struct module (plus complex). It tries to be test a wide range of + inputs, but skips over possibly undefined behaviour (e.g. int rollover). + Longdouble and CLongdouble are tested, but only using double precision. + + If this test creates issues, it should possibly just be simplified + or even removed (checking whether unaligned/non-contiguous casts give + the same results is useful, though). + """ + for to_dt in simple_dtype_instances(): + to_dt = to_dt.values[0] + cast = get_castingimpl(type(from_dt), type(to_dt)) + + casting, (from_res, to_res), view_off = cast._resolve_descriptors( + (from_dt, to_dt)) + + if from_res is not from_dt or to_res is not to_dt: + # Do not test this case, it is handled in multiple steps, + # each of which should is tested individually. + return + + safe = casting <= Casting.safe + del from_res, to_res, casting + + arr1, arr2, values = self.get_data(from_dt, to_dt) + + cast._simple_strided_call((arr1, arr2)) + + # Check via python list + assert arr2.tolist() == values + + # Check that the same results are achieved for strided loops + arr1_o, arr2_o = self.get_data_variation(arr1, arr2, True, False) + cast._simple_strided_call((arr1_o, arr2_o)) + + assert_array_equal(arr2_o, arr2) + assert arr2_o.tobytes() == arr2.tobytes() + + # Check if alignment makes a difference, but only if supported + # and only if the alignment can be wrong + if ((from_dt.alignment == 1 and to_dt.alignment == 1) or + not cast._supports_unaligned): + return + + arr1_o, arr2_o = self.get_data_variation(arr1, arr2, False, True) + cast._simple_strided_call((arr1_o, arr2_o)) + + assert_array_equal(arr2_o, arr2) + assert arr2_o.tobytes() == arr2.tobytes() + + arr1_o, arr2_o = self.get_data_variation(arr1, arr2, False, False) + cast._simple_strided_call((arr1_o, arr2_o)) + + assert_array_equal(arr2_o, arr2) + assert arr2_o.tobytes() == arr2.tobytes() + + del arr1_o, arr2_o, cast + + @pytest.mark.parametrize("from_Dt", simple_dtypes) + def test_numeric_to_times(self, from_Dt): + # We currently only implement contiguous loops, so only need to + # test those. + from_dt = from_Dt() + + time_dtypes = [np.dtype("M8"), np.dtype("M8[ms]"), np.dtype("M8[4D]"), + np.dtype("m8"), np.dtype("m8[ms]"), np.dtype("m8[4D]")] + for time_dt in time_dtypes: + cast = get_castingimpl(type(from_dt), type(time_dt)) + + casting, (from_res, to_res), view_off = cast._resolve_descriptors( + (from_dt, time_dt)) + + assert from_res is from_dt + assert to_res is time_dt + del from_res, to_res + + assert casting & CAST_TABLE[from_Dt][type(time_dt)] + assert view_off is None + + int64_dt = np.dtype(np.int64) + arr1, arr2, values = self.get_data(from_dt, int64_dt) + arr2 = arr2.view(time_dt) + arr2[...] = np.datetime64("NaT") + + if time_dt == np.dtype("M8"): + # This is a bit of a strange path, and could probably be removed + arr1[-1] = 0 # ensure at least one value is not NaT + + # The cast currently succeeds, but the values are invalid: + cast._simple_strided_call((arr1, arr2)) + with pytest.raises(ValueError): + str(arr2[-1]) # e.g. conversion to string fails + return + + cast._simple_strided_call((arr1, arr2)) + + assert [int(v) for v in arr2.tolist()] == values + + # Check that the same results are achieved for strided loops + arr1_o, arr2_o = self.get_data_variation(arr1, arr2, True, False) + cast._simple_strided_call((arr1_o, arr2_o)) + + assert_array_equal(arr2_o, arr2) + assert arr2_o.tobytes() == arr2.tobytes() + + @pytest.mark.parametrize( + ["from_dt", "to_dt", "expected_casting", "expected_view_off", + "nom", "denom"], + [("M8[ns]", None, Casting.no, 0, 1, 1), + (str(np.dtype("M8[ns]").newbyteorder()), None, + Casting.equiv, None, 1, 1), + ("M8", "M8[ms]", Casting.safe, 0, 1, 1), + # should be invalid cast: + ("M8[ms]", "M8", Casting.unsafe, None, 1, 1), + ("M8[5ms]", "M8[5ms]", Casting.no, 0, 1, 1), + ("M8[ns]", "M8[ms]", Casting.same_kind, None, 1, 10**6), + ("M8[ms]", "M8[ns]", Casting.safe, None, 10**6, 1), + ("M8[ms]", "M8[7ms]", Casting.same_kind, None, 1, 7), + ("M8[4D]", "M8[1M]", Casting.same_kind, None, None, + # give full values based on NumPy 1.19.x + [-2**63, 0, -1, 1314, -1315, 564442610]), + ("m8[ns]", None, Casting.no, 0, 1, 1), + (str(np.dtype("m8[ns]").newbyteorder()), None, + Casting.equiv, None, 1, 1), + ("m8", "m8[ms]", Casting.safe, 0, 1, 1), + # should be invalid cast: + ("m8[ms]", "m8", Casting.unsafe, None, 1, 1), + ("m8[5ms]", "m8[5ms]", Casting.no, 0, 1, 1), + ("m8[ns]", "m8[ms]", Casting.same_kind, None, 1, 10**6), + ("m8[ms]", "m8[ns]", Casting.safe, None, 10**6, 1), + ("m8[ms]", "m8[7ms]", Casting.same_kind, None, 1, 7), + ("m8[4D]", "m8[1M]", Casting.unsafe, None, None, + # give full values based on NumPy 1.19.x + [-2**63, 0, 0, 1314, -1315, 564442610])]) + def test_time_to_time(self, from_dt, to_dt, + expected_casting, expected_view_off, + nom, denom): + from_dt = np.dtype(from_dt) + if to_dt is not None: + to_dt = np.dtype(to_dt) + + # Test a few values for casting (results generated with NumPy 1.19) + values = np.array([-2**63, 1, 2**63-1, 10000, -10000, 2**32]) + values = values.astype(np.dtype("int64").newbyteorder(from_dt.byteorder)) + assert values.dtype.byteorder == from_dt.byteorder + assert np.isnat(values.view(from_dt)[0]) + + DType = type(from_dt) + cast = get_castingimpl(DType, DType) + casting, (from_res, to_res), view_off = cast._resolve_descriptors( + (from_dt, to_dt)) + assert from_res is from_dt + assert to_res is to_dt or to_dt is None + assert casting == expected_casting + assert view_off == expected_view_off + + if nom is not None: + expected_out = (values * nom // denom).view(to_res) + expected_out[0] = "NaT" + else: + expected_out = np.empty_like(values) + expected_out[...] = denom + expected_out = expected_out.view(to_dt) + + orig_arr = values.view(from_dt) + orig_out = np.empty_like(expected_out) + + if casting == Casting.unsafe and (to_dt == "m8" or to_dt == "M8"): + # Casting from non-generic to generic units is an error and should + # probably be reported as an invalid cast earlier. + with pytest.raises(ValueError): + cast._simple_strided_call((orig_arr, orig_out)) + return + + for aligned in [True, True]: + for contig in [True, True]: + arr, out = self.get_data_variation( + orig_arr, orig_out, aligned, contig) + out[...] = 0 + cast._simple_strided_call((arr, out)) + assert_array_equal(out.view("int64"), expected_out.view("int64")) + + def string_with_modified_length(self, dtype, change_length): + fact = 1 if dtype.char == "S" else 4 + length = dtype.itemsize // fact + change_length + return np.dtype(f"{dtype.byteorder}{dtype.char}{length}") + + @pytest.mark.parametrize("other_DT", simple_dtypes) + @pytest.mark.parametrize("string_char", ["S", "U"]) + def test_string_cancast(self, other_DT, string_char): + fact = 1 if string_char == "S" else 4 + + string_DT = type(np.dtype(string_char)) + cast = get_castingimpl(other_DT, string_DT) + + other_dt = other_DT() + expected_length = get_expected_stringlength(other_dt) + string_dt = np.dtype(f"{string_char}{expected_length}") + + safety, (res_other_dt, res_dt), view_off = cast._resolve_descriptors( + (other_dt, None)) + assert res_dt.itemsize == expected_length * fact + assert safety == Casting.safe # we consider to string casts "safe" + assert view_off is None + assert isinstance(res_dt, string_DT) + + # These casts currently implement changing the string length, so + # check the cast-safety for too long/fixed string lengths: + for change_length in [-1, 0, 1]: + if change_length >= 0: + expected_safety = Casting.safe + else: + expected_safety = Casting.same_kind + + to_dt = self.string_with_modified_length(string_dt, change_length) + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (other_dt, to_dt)) + assert res_dt is to_dt + assert safety == expected_safety + assert view_off is None + + # The opposite direction is always considered unsafe: + cast = get_castingimpl(string_DT, other_DT) + + safety, _, view_off = cast._resolve_descriptors((string_dt, other_dt)) + assert safety == Casting.unsafe + assert view_off is None + + cast = get_castingimpl(string_DT, other_DT) + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (string_dt, None)) + assert safety == Casting.unsafe + assert view_off is None + assert other_dt is res_dt # returns the singleton for simple dtypes + + @pytest.mark.parametrize("string_char", ["S", "U"]) + @pytest.mark.parametrize("other_dt", simple_dtype_instances()) + def test_simple_string_casts_roundtrip(self, other_dt, string_char): + """ + Tests casts from and to string by checking the roundtripping property. + + The test also covers some string to string casts (but not all). + + If this test creates issues, it should possibly just be simplified + or even removed (checking whether unaligned/non-contiguous casts give + the same results is useful, though). + """ + string_DT = type(np.dtype(string_char)) + + cast = get_castingimpl(type(other_dt), string_DT) + cast_back = get_castingimpl(string_DT, type(other_dt)) + _, (res_other_dt, string_dt), _ = cast._resolve_descriptors( + (other_dt, None)) + + if res_other_dt is not other_dt: + # do not support non-native byteorder, skip test in that case + assert other_dt.byteorder != res_other_dt.byteorder + return + + orig_arr, values = self.get_data(other_dt, None) + str_arr = np.zeros(len(orig_arr), dtype=string_dt) + string_dt_short = self.string_with_modified_length(string_dt, -1) + str_arr_short = np.zeros(len(orig_arr), dtype=string_dt_short) + string_dt_long = self.string_with_modified_length(string_dt, 1) + str_arr_long = np.zeros(len(orig_arr), dtype=string_dt_long) + + assert not cast._supports_unaligned # if support is added, should test + assert not cast_back._supports_unaligned + + for contig in [True, False]: + other_arr, str_arr = self.get_data_variation( + orig_arr, str_arr, True, contig) + _, str_arr_short = self.get_data_variation( + orig_arr, str_arr_short.copy(), True, contig) + _, str_arr_long = self.get_data_variation( + orig_arr, str_arr_long, True, contig) + + cast._simple_strided_call((other_arr, str_arr)) + + cast._simple_strided_call((other_arr, str_arr_short)) + assert_array_equal(str_arr.astype(string_dt_short), str_arr_short) + + cast._simple_strided_call((other_arr, str_arr_long)) + assert_array_equal(str_arr, str_arr_long) + + if other_dt.kind == "b": + # Booleans do not roundtrip + continue + + other_arr[...] = 0 + cast_back._simple_strided_call((str_arr, other_arr)) + assert_array_equal(orig_arr, other_arr) + + other_arr[...] = 0 + cast_back._simple_strided_call((str_arr_long, other_arr)) + assert_array_equal(orig_arr, other_arr) + + @pytest.mark.parametrize("other_dt", ["S8", "U8"]) + @pytest.mark.parametrize("string_char", ["S", "U"]) + def test_string_to_string_cancast(self, other_dt, string_char): + other_dt = np.dtype(other_dt) + + fact = 1 if string_char == "S" else 4 + div = 1 if other_dt.char == "S" else 4 + + string_DT = type(np.dtype(string_char)) + cast = get_castingimpl(type(other_dt), string_DT) + + expected_length = other_dt.itemsize // div + string_dt = np.dtype(f"{string_char}{expected_length}") + + safety, (res_other_dt, res_dt), view_off = cast._resolve_descriptors( + (other_dt, None)) + assert res_dt.itemsize == expected_length * fact + assert isinstance(res_dt, string_DT) + + expected_view_off = None + if other_dt.char == string_char: + if other_dt.isnative: + expected_safety = Casting.no + expected_view_off = 0 + else: + expected_safety = Casting.equiv + elif string_char == "U": + expected_safety = Casting.safe + else: + expected_safety = Casting.unsafe + + assert view_off == expected_view_off + assert expected_safety == safety + + for change_length in [-1, 0, 1]: + to_dt = self.string_with_modified_length(string_dt, change_length) + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (other_dt, to_dt)) + + assert res_dt is to_dt + if change_length <= 0: + assert view_off == expected_view_off + else: + assert view_off is None + if expected_safety == Casting.unsafe: + assert safety == expected_safety + elif change_length < 0: + assert safety == Casting.same_kind + elif change_length == 0: + assert safety == expected_safety + elif change_length > 0: + assert safety == Casting.safe + + @pytest.mark.parametrize("order1", [">", "<"]) + @pytest.mark.parametrize("order2", [">", "<"]) + def test_unicode_byteswapped_cast(self, order1, order2): + # Very specific tests (not using the castingimpl directly) + # that tests unicode bytedwaps including for unaligned array data. + dtype1 = np.dtype(f"{order1}U30") + dtype2 = np.dtype(f"{order2}U30") + data1 = np.empty(30 * 4 + 1, dtype=np.uint8)[1:].view(dtype1) + data2 = np.empty(30 * 4 + 1, dtype=np.uint8)[1:].view(dtype2) + if dtype1.alignment != 1: + # alignment should always be >1, but skip the check if not + assert not data1.flags.aligned + assert not data2.flags.aligned + + element = "this is a ünicode string‽" + data1[()] = element + # Test both `data1` and `data1.copy()` (which should be aligned) + for data in [data1, data1.copy()]: + data2[...] = data1 + assert data2[()] == element + assert data2.copy()[()] == element + + def test_void_to_string_special_case(self): + # Cover a small special case in void to string casting that could + # probably just as well be turned into an error (compare + # `test_object_to_parametric_internal_error` below). + assert np.array([], dtype="V5").astype("S").dtype.itemsize == 5 + assert np.array([], dtype="V5").astype("U").dtype.itemsize == 4 * 5 + + def test_object_to_parametric_internal_error(self): + # We reject casting from object to a parametric type, without + # figuring out the correct instance first. + object_dtype = type(np.dtype(object)) + other_dtype = type(np.dtype(str)) + cast = get_castingimpl(object_dtype, other_dtype) + with pytest.raises(TypeError, + match="casting from object to the parametric DType"): + cast._resolve_descriptors((np.dtype("O"), None)) + + @pytest.mark.parametrize("dtype", simple_dtype_instances()) + def test_object_and_simple_resolution(self, dtype): + # Simple test to exercise the cast when no instance is specified + object_dtype = type(np.dtype(object)) + cast = get_castingimpl(object_dtype, type(dtype)) + + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (np.dtype("O"), dtype)) + assert safety == Casting.unsafe + assert view_off is None + assert res_dt is dtype + + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (np.dtype("O"), None)) + assert safety == Casting.unsafe + assert view_off is None + assert res_dt == dtype.newbyteorder("=") + + @pytest.mark.parametrize("dtype", simple_dtype_instances()) + def test_simple_to_object_resolution(self, dtype): + # Simple test to exercise the cast when no instance is specified + object_dtype = type(np.dtype(object)) + cast = get_castingimpl(type(dtype), object_dtype) + + safety, (_, res_dt), view_off = cast._resolve_descriptors( + (dtype, None)) + assert safety == Casting.safe + assert view_off is None + assert res_dt is np.dtype("O") + + @pytest.mark.parametrize("casting", ["no", "unsafe"]) + def test_void_and_structured_with_subarray(self, casting): + # test case corresponding to gh-19325 + dtype = np.dtype([("foo", " casts may succeed or fail, but a NULL'ed array must + # behave the same as one filled with None's. + arr_normal = np.array([None] * 5) + arr_NULLs = np.empty_like(arr_normal) + ctypes.memset(arr_NULLs.ctypes.data, 0, arr_NULLs.nbytes) + # If the check fails (maybe it should) the test would lose its purpose: + assert arr_NULLs.tobytes() == b"\x00" * arr_NULLs.nbytes + + try: + expected = arr_normal.astype(dtype) + except TypeError: + with pytest.raises(TypeError): + arr_NULLs.astype(dtype), + else: + assert_array_equal(expected, arr_NULLs.astype(dtype)) + + @pytest.mark.parametrize("dtype", + np.typecodes["AllInteger"] + np.typecodes["AllFloat"]) + def test_nonstandard_bool_to_other(self, dtype): + # simple test for casting bool_ to numeric types, which should not + # expose the detail that NumPy bools can sometimes take values other + # than 0 and 1. See also gh-19514. + nonstandard_bools = np.array([0, 3, -7], dtype=np.int8).view(bool) + res = nonstandard_bools.astype(dtype) + expected = [0, 1, 1] + assert_array_equal(res, expected) + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_conversion_utils.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_conversion_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..51676320fa0dafcbcf095d7cc02f20e91ac21e16 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_conversion_utils.py @@ -0,0 +1,209 @@ +""" +Tests for numpy/_core/src/multiarray/conversion_utils.c +""" +import re +import sys + +import pytest + +import numpy as np +import numpy._core._multiarray_tests as mt +from numpy._core.multiarray import CLIP, WRAP, RAISE +from numpy.testing import assert_warns, IS_PYPY + + +class StringConverterTestCase: + allow_bytes = True + case_insensitive = True + exact_match = False + warn = True + + def _check_value_error(self, val): + pattern = r'\(got {}\)'.format(re.escape(repr(val))) + with pytest.raises(ValueError, match=pattern) as exc: + self.conv(val) + + def _check_conv_assert_warn(self, val, expected): + if self.warn: + with assert_warns(DeprecationWarning) as exc: + assert self.conv(val) == expected + else: + assert self.conv(val) == expected + + def _check(self, val, expected): + """Takes valid non-deprecated inputs for converters, + runs converters on inputs, checks correctness of outputs, + warnings and errors""" + assert self.conv(val) == expected + + if self.allow_bytes: + assert self.conv(val.encode('ascii')) == expected + else: + with pytest.raises(TypeError): + self.conv(val.encode('ascii')) + + if len(val) != 1: + if self.exact_match: + self._check_value_error(val[:1]) + self._check_value_error(val + '\0') + else: + self._check_conv_assert_warn(val[:1], expected) + + if self.case_insensitive: + if val != val.lower(): + self._check_conv_assert_warn(val.lower(), expected) + if val != val.upper(): + self._check_conv_assert_warn(val.upper(), expected) + else: + if val != val.lower(): + self._check_value_error(val.lower()) + if val != val.upper(): + self._check_value_error(val.upper()) + + def test_wrong_type(self): + # common cases which apply to all the below + with pytest.raises(TypeError): + self.conv({}) + with pytest.raises(TypeError): + self.conv([]) + + def test_wrong_value(self): + # nonsense strings + self._check_value_error('') + self._check_value_error('\N{greek small letter pi}') + + if self.allow_bytes: + self._check_value_error(b'') + # bytes which can't be converted to strings via utf8 + self._check_value_error(b"\xFF") + if self.exact_match: + self._check_value_error("there's no way this is supported") + + +class TestByteorderConverter(StringConverterTestCase): + """ Tests of PyArray_ByteorderConverter """ + conv = mt.run_byteorder_converter + warn = False + + def test_valid(self): + for s in ['big', '>']: + self._check(s, 'NPY_BIG') + for s in ['little', '<']: + self._check(s, 'NPY_LITTLE') + for s in ['native', '=']: + self._check(s, 'NPY_NATIVE') + for s in ['ignore', '|']: + self._check(s, 'NPY_IGNORE') + for s in ['swap']: + self._check(s, 'NPY_SWAP') + + +class TestSortkindConverter(StringConverterTestCase): + """ Tests of PyArray_SortkindConverter """ + conv = mt.run_sortkind_converter + warn = False + + def test_valid(self): + self._check('quicksort', 'NPY_QUICKSORT') + self._check('heapsort', 'NPY_HEAPSORT') + self._check('mergesort', 'NPY_STABLESORT') # alias + self._check('stable', 'NPY_STABLESORT') + + +class TestSelectkindConverter(StringConverterTestCase): + """ Tests of PyArray_SelectkindConverter """ + conv = mt.run_selectkind_converter + case_insensitive = False + exact_match = True + + def test_valid(self): + self._check('introselect', 'NPY_INTROSELECT') + + +class TestSearchsideConverter(StringConverterTestCase): + """ Tests of PyArray_SearchsideConverter """ + conv = mt.run_searchside_converter + def test_valid(self): + self._check('left', 'NPY_SEARCHLEFT') + self._check('right', 'NPY_SEARCHRIGHT') + + +class TestOrderConverter(StringConverterTestCase): + """ Tests of PyArray_OrderConverter """ + conv = mt.run_order_converter + warn = False + + def test_valid(self): + self._check('c', 'NPY_CORDER') + self._check('f', 'NPY_FORTRANORDER') + self._check('a', 'NPY_ANYORDER') + self._check('k', 'NPY_KEEPORDER') + + def test_flatten_invalid_order(self): + # invalid after gh-14596 + with pytest.raises(ValueError): + self.conv('Z') + for order in [False, True, 0, 8]: + with pytest.raises(TypeError): + self.conv(order) + + +class TestClipmodeConverter(StringConverterTestCase): + """ Tests of PyArray_ClipmodeConverter """ + conv = mt.run_clipmode_converter + def test_valid(self): + self._check('clip', 'NPY_CLIP') + self._check('wrap', 'NPY_WRAP') + self._check('raise', 'NPY_RAISE') + + # integer values allowed here + assert self.conv(CLIP) == 'NPY_CLIP' + assert self.conv(WRAP) == 'NPY_WRAP' + assert self.conv(RAISE) == 'NPY_RAISE' + + +class TestCastingConverter(StringConverterTestCase): + """ Tests of PyArray_CastingConverter """ + conv = mt.run_casting_converter + case_insensitive = False + exact_match = True + + def test_valid(self): + self._check("no", "NPY_NO_CASTING") + self._check("equiv", "NPY_EQUIV_CASTING") + self._check("safe", "NPY_SAFE_CASTING") + self._check("same_kind", "NPY_SAME_KIND_CASTING") + self._check("unsafe", "NPY_UNSAFE_CASTING") + + +class TestIntpConverter: + """ Tests of PyArray_IntpConverter """ + conv = mt.run_intp_converter + + def test_basic(self): + assert self.conv(1) == (1,) + assert self.conv((1, 2)) == (1, 2) + assert self.conv([1, 2]) == (1, 2) + assert self.conv(()) == () + + def test_none(self): + # once the warning expires, this will raise TypeError + with pytest.warns(DeprecationWarning): + assert self.conv(None) == () + + @pytest.mark.skipif(IS_PYPY and sys.implementation.version <= (7, 3, 8), + reason="PyPy bug in error formatting") + def test_float(self): + with pytest.raises(TypeError): + self.conv(1.0) + with pytest.raises(TypeError): + self.conv([1, 1.0]) + + def test_too_large(self): + with pytest.raises(ValueError): + self.conv(2**64) + + def test_too_many_dims(self): + assert self.conv([1]*64) == (1,)*64 + with pytest.raises(ValueError): + self.conv([1]*65) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_dispatcher.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_dispatcher.py new file mode 100644 index 0000000000000000000000000000000000000000..959725ea7bc865de7532f9fc4378c73d222b2039 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_dispatcher.py @@ -0,0 +1,45 @@ +from numpy._core._multiarray_umath import ( + __cpu_features__, __cpu_baseline__, __cpu_dispatch__ +) +from numpy._core import _umath_tests +from numpy.testing import assert_equal + +def test_dispatcher(): + """ + Testing the utilities of the CPU dispatcher + """ + targets = ( + "SSE2", "SSE41", "AVX2", + "VSX", "VSX2", "VSX3", + "NEON", "ASIMD", "ASIMDHP", + "VX", "VXE" + ) + highest_sfx = "" # no suffix for the baseline + all_sfx = [] + for feature in reversed(targets): + # skip baseline features, by the default `CCompilerOpt` do not generate separated objects + # for the baseline, just one object combined all of them via 'baseline' option + # within the configuration statements. + if feature in __cpu_baseline__: + continue + # check compiler and running machine support + if feature not in __cpu_dispatch__ or not __cpu_features__[feature]: + continue + + if not highest_sfx: + highest_sfx = "_" + feature + all_sfx.append("func" + "_" + feature) + + test = _umath_tests.test_dispatch() + assert_equal(test["func"], "func" + highest_sfx) + assert_equal(test["var"], "var" + highest_sfx) + + if highest_sfx: + assert_equal(test["func_xb"], "func" + highest_sfx) + assert_equal(test["var_xb"], "var" + highest_sfx) + else: + assert_equal(test["func_xb"], "nobase") + assert_equal(test["var_xb"], "nobase") + + all_sfx.append("func") # add the baseline + assert_equal(test["all"], all_sfx) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_features.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_features.py new file mode 100644 index 0000000000000000000000000000000000000000..570a2b893b06630a88a4cd4cfe9de1a3e700923b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cpu_features.py @@ -0,0 +1,419 @@ +import os +import re +import sys +import pathlib +import platform +import subprocess +import pytest +from numpy._core._multiarray_umath import ( + __cpu_features__, + __cpu_baseline__, + __cpu_dispatch__, +) +import numpy as np + +def assert_features_equal(actual, desired, fname): + __tracebackhide__ = True # Hide traceback for py.test + actual, desired = str(actual), str(desired) + if actual == desired: + return + detected = str(__cpu_features__).replace("'", "") + try: + with open("/proc/cpuinfo") as fd: + cpuinfo = fd.read(2048) + except Exception as err: + cpuinfo = str(err) + + try: + import subprocess + auxv = subprocess.check_output(['/bin/true'], env=dict(LD_SHOW_AUXV="1")) + auxv = auxv.decode() + except Exception as err: + auxv = str(err) + + import textwrap + error_report = textwrap.indent( +""" +########################################### +### Extra debugging information +########################################### +------------------------------------------- +--- NumPy Detections +------------------------------------------- +%s +------------------------------------------- +--- SYS / CPUINFO +------------------------------------------- +%s.... +------------------------------------------- +--- SYS / AUXV +------------------------------------------- +%s +""" % (detected, cpuinfo, auxv), prefix='\r') + + raise AssertionError(( + "Failure Detection\n" + " NAME: '%s'\n" + " ACTUAL: %s\n" + " DESIRED: %s\n" + "%s" + ) % (fname, actual, desired, error_report)) + +def _text_to_list(txt): + out = txt.strip("][\n").replace("'", "").split(', ') + return None if out[0] == "" else out + +class AbstractTest: + features = [] + features_groups = {} + features_map = {} + features_flags = set() + + def load_flags(self): + # a hook + pass + def test_features(self): + self.load_flags() + for gname, features in self.features_groups.items(): + test_features = [self.cpu_have(f) for f in features] + assert_features_equal(__cpu_features__.get(gname), all(test_features), gname) + + for feature_name in self.features: + cpu_have = self.cpu_have(feature_name) + npy_have = __cpu_features__.get(feature_name) + assert_features_equal(npy_have, cpu_have, feature_name) + + def cpu_have(self, feature_name): + map_names = self.features_map.get(feature_name, feature_name) + if isinstance(map_names, str): + return map_names in self.features_flags + return any(f in self.features_flags for f in map_names) + + def load_flags_cpuinfo(self, magic_key): + self.features_flags = self.get_cpuinfo_item(magic_key) + + def get_cpuinfo_item(self, magic_key): + values = set() + with open('/proc/cpuinfo') as fd: + for line in fd: + if not line.startswith(magic_key): + continue + flags_value = [s.strip() for s in line.split(':', 1)] + if len(flags_value) == 2: + values = values.union(flags_value[1].upper().split()) + return values + + def load_flags_auxv(self): + auxv = subprocess.check_output(['/bin/true'], env=dict(LD_SHOW_AUXV="1")) + for at in auxv.split(b'\n'): + if not at.startswith(b"AT_HWCAP"): + continue + hwcap_value = [s.strip() for s in at.split(b':', 1)] + if len(hwcap_value) == 2: + self.features_flags = self.features_flags.union( + hwcap_value[1].upper().decode().split() + ) + +@pytest.mark.skipif( + sys.platform == 'emscripten', + reason= ( + "The subprocess module is not available on WASM platforms and" + " therefore this test class cannot be properly executed." + ), +) +class TestEnvPrivation: + cwd = pathlib.Path(__file__).parent.resolve() + env = os.environ.copy() + _enable = os.environ.pop('NPY_ENABLE_CPU_FEATURES', None) + _disable = os.environ.pop('NPY_DISABLE_CPU_FEATURES', None) + SUBPROCESS_ARGS = dict(cwd=cwd, capture_output=True, text=True, check=True) + unavailable_feats = [ + feat for feat in __cpu_dispatch__ if not __cpu_features__[feat] + ] + UNAVAILABLE_FEAT = ( + None if len(unavailable_feats) == 0 + else unavailable_feats[0] + ) + BASELINE_FEAT = None if len(__cpu_baseline__) == 0 else __cpu_baseline__[0] + SCRIPT = """ +def main(): + from numpy._core._multiarray_umath import ( + __cpu_features__, + __cpu_dispatch__ + ) + + detected = [feat for feat in __cpu_dispatch__ if __cpu_features__[feat]] + print(detected) + +if __name__ == "__main__": + main() + """ + + @pytest.fixture(autouse=True) + def setup_class(self, tmp_path_factory): + file = tmp_path_factory.mktemp("runtime_test_script") + file /= "_runtime_detect.py" + file.write_text(self.SCRIPT) + self.file = file + return + + def _run(self): + return subprocess.run( + [sys.executable, self.file], + env=self.env, + **self.SUBPROCESS_ARGS, + ) + + # Helper function mimicking pytest.raises for subprocess call + def _expect_error( + self, + msg, + err_type, + no_error_msg="Failed to generate error" + ): + try: + self._run() + except subprocess.CalledProcessError as e: + assertion_message = f"Expected: {msg}\nGot: {e.stderr}" + assert re.search(msg, e.stderr), assertion_message + + assertion_message = ( + f"Expected error of type: {err_type}; see full " + f"error:\n{e.stderr}" + ) + assert re.search(err_type, e.stderr), assertion_message + else: + assert False, no_error_msg + + def setup_method(self): + """Ensure that the environment is reset""" + self.env = os.environ.copy() + return + + def test_runtime_feature_selection(self): + """ + Ensure that when selecting `NPY_ENABLE_CPU_FEATURES`, only the + features exactly specified are dispatched. + """ + + # Capture runtime-enabled features + out = self._run() + non_baseline_features = _text_to_list(out.stdout) + + if non_baseline_features is None: + pytest.skip( + "No dispatchable features outside of baseline detected." + ) + feature = non_baseline_features[0] + + # Capture runtime-enabled features when `NPY_ENABLE_CPU_FEATURES` is + # specified + self.env['NPY_ENABLE_CPU_FEATURES'] = feature + out = self._run() + enabled_features = _text_to_list(out.stdout) + + # Ensure that only one feature is enabled, and it is exactly the one + # specified by `NPY_ENABLE_CPU_FEATURES` + assert set(enabled_features) == {feature} + + if len(non_baseline_features) < 2: + pytest.skip("Only one non-baseline feature detected.") + # Capture runtime-enabled features when `NPY_ENABLE_CPU_FEATURES` is + # specified + self.env['NPY_ENABLE_CPU_FEATURES'] = ",".join(non_baseline_features) + out = self._run() + enabled_features = _text_to_list(out.stdout) + + # Ensure that both features are enabled, and they are exactly the ones + # specified by `NPY_ENABLE_CPU_FEATURES` + assert set(enabled_features) == set(non_baseline_features) + return + + @pytest.mark.parametrize("enabled, disabled", + [ + ("feature", "feature"), + ("feature", "same"), + ]) + def test_both_enable_disable_set(self, enabled, disabled): + """ + Ensure that when both environment variables are set then an + ImportError is thrown + """ + self.env['NPY_ENABLE_CPU_FEATURES'] = enabled + self.env['NPY_DISABLE_CPU_FEATURES'] = disabled + msg = "Both NPY_DISABLE_CPU_FEATURES and NPY_ENABLE_CPU_FEATURES" + err_type = "ImportError" + self._expect_error(msg, err_type) + + @pytest.mark.skipif( + not __cpu_dispatch__, + reason=( + "NPY_*_CPU_FEATURES only parsed if " + "`__cpu_dispatch__` is non-empty" + ) + ) + @pytest.mark.parametrize("action", ["ENABLE", "DISABLE"]) + def test_variable_too_long(self, action): + """ + Test that an error is thrown if the environment variables are too long + to be processed. Current limit is 1024, but this may change later. + """ + MAX_VAR_LENGTH = 1024 + # Actual length is MAX_VAR_LENGTH + 1 due to null-termination + self.env[f'NPY_{action}_CPU_FEATURES'] = "t" * MAX_VAR_LENGTH + msg = ( + f"Length of environment variable 'NPY_{action}_CPU_FEATURES' is " + f"{MAX_VAR_LENGTH + 1}, only {MAX_VAR_LENGTH} accepted" + ) + err_type = "RuntimeError" + self._expect_error(msg, err_type) + + @pytest.mark.skipif( + not __cpu_dispatch__, + reason=( + "NPY_*_CPU_FEATURES only parsed if " + "`__cpu_dispatch__` is non-empty" + ) + ) + def test_impossible_feature_disable(self): + """ + Test that a RuntimeError is thrown if an impossible feature-disabling + request is made. This includes disabling a baseline feature. + """ + + if self.BASELINE_FEAT is None: + pytest.skip("There are no unavailable features to test with") + bad_feature = self.BASELINE_FEAT + self.env['NPY_DISABLE_CPU_FEATURES'] = bad_feature + msg = ( + f"You cannot disable CPU feature '{bad_feature}', since it is " + "part of the baseline optimizations" + ) + err_type = "RuntimeError" + self._expect_error(msg, err_type) + + def test_impossible_feature_enable(self): + """ + Test that a RuntimeError is thrown if an impossible feature-enabling + request is made. This includes enabling a feature not supported by the + machine, or disabling a baseline optimization. + """ + + if self.UNAVAILABLE_FEAT is None: + pytest.skip("There are no unavailable features to test with") + bad_feature = self.UNAVAILABLE_FEAT + self.env['NPY_ENABLE_CPU_FEATURES'] = bad_feature + msg = ( + f"You cannot enable CPU features \\({bad_feature}\\), since " + "they are not supported by your machine." + ) + err_type = "RuntimeError" + self._expect_error(msg, err_type) + + # Ensure that it fails even when providing garbage in addition + feats = f"{bad_feature}, Foobar" + self.env['NPY_ENABLE_CPU_FEATURES'] = feats + msg = ( + f"You cannot enable CPU features \\({bad_feature}\\), since they " + "are not supported by your machine." + ) + self._expect_error(msg, err_type) + + if self.BASELINE_FEAT is not None: + # Ensure that only the bad feature gets reported + feats = f"{bad_feature}, {self.BASELINE_FEAT}" + self.env['NPY_ENABLE_CPU_FEATURES'] = feats + msg = ( + f"You cannot enable CPU features \\({bad_feature}\\), since " + "they are not supported by your machine." + ) + self._expect_error(msg, err_type) + +is_linux = sys.platform.startswith('linux') +is_cygwin = sys.platform.startswith('cygwin') +machine = platform.machine() +is_x86 = re.match("^(amd64|x86|i386|i686)", machine, re.IGNORECASE) +@pytest.mark.skipif( + not (is_linux or is_cygwin) or not is_x86, reason="Only for Linux and x86" +) +class Test_X86_Features(AbstractTest): + features = [ + "MMX", "SSE", "SSE2", "SSE3", "SSSE3", "SSE41", "POPCNT", "SSE42", + "AVX", "F16C", "XOP", "FMA4", "FMA3", "AVX2", "AVX512F", "AVX512CD", + "AVX512ER", "AVX512PF", "AVX5124FMAPS", "AVX5124VNNIW", "AVX512VPOPCNTDQ", + "AVX512VL", "AVX512BW", "AVX512DQ", "AVX512VNNI", "AVX512IFMA", + "AVX512VBMI", "AVX512VBMI2", "AVX512BITALG", "AVX512FP16", + ] + features_groups = dict( + AVX512_KNL = ["AVX512F", "AVX512CD", "AVX512ER", "AVX512PF"], + AVX512_KNM = ["AVX512F", "AVX512CD", "AVX512ER", "AVX512PF", "AVX5124FMAPS", + "AVX5124VNNIW", "AVX512VPOPCNTDQ"], + AVX512_SKX = ["AVX512F", "AVX512CD", "AVX512BW", "AVX512DQ", "AVX512VL"], + AVX512_CLX = ["AVX512F", "AVX512CD", "AVX512BW", "AVX512DQ", "AVX512VL", "AVX512VNNI"], + AVX512_CNL = ["AVX512F", "AVX512CD", "AVX512BW", "AVX512DQ", "AVX512VL", "AVX512IFMA", + "AVX512VBMI"], + AVX512_ICL = ["AVX512F", "AVX512CD", "AVX512BW", "AVX512DQ", "AVX512VL", "AVX512IFMA", + "AVX512VBMI", "AVX512VNNI", "AVX512VBMI2", "AVX512BITALG", "AVX512VPOPCNTDQ"], + AVX512_SPR = ["AVX512F", "AVX512CD", "AVX512BW", "AVX512DQ", + "AVX512VL", "AVX512IFMA", "AVX512VBMI", "AVX512VNNI", + "AVX512VBMI2", "AVX512BITALG", "AVX512VPOPCNTDQ", + "AVX512FP16"], + ) + features_map = dict( + SSE3="PNI", SSE41="SSE4_1", SSE42="SSE4_2", FMA3="FMA", + AVX512VNNI="AVX512_VNNI", AVX512BITALG="AVX512_BITALG", AVX512VBMI2="AVX512_VBMI2", + AVX5124FMAPS="AVX512_4FMAPS", AVX5124VNNIW="AVX512_4VNNIW", AVX512VPOPCNTDQ="AVX512_VPOPCNTDQ", + AVX512FP16="AVX512_FP16", + ) + def load_flags(self): + self.load_flags_cpuinfo("flags") + +is_power = re.match("^(powerpc|ppc)64", machine, re.IGNORECASE) +@pytest.mark.skipif(not is_linux or not is_power, reason="Only for Linux and Power") +class Test_POWER_Features(AbstractTest): + features = ["VSX", "VSX2", "VSX3", "VSX4"] + features_map = dict(VSX2="ARCH_2_07", VSX3="ARCH_3_00", VSX4="ARCH_3_1") + + def load_flags(self): + self.load_flags_auxv() + + +is_zarch = re.match("^(s390x)", machine, re.IGNORECASE) +@pytest.mark.skipif(not is_linux or not is_zarch, + reason="Only for Linux and IBM Z") +class Test_ZARCH_Features(AbstractTest): + features = ["VX", "VXE", "VXE2"] + + def load_flags(self): + self.load_flags_auxv() + + +is_arm = re.match("^(arm|aarch64)", machine, re.IGNORECASE) +@pytest.mark.skipif(not is_linux or not is_arm, reason="Only for Linux and ARM") +class Test_ARM_Features(AbstractTest): + features = [ + "SVE", "NEON", "ASIMD", "FPHP", "ASIMDHP", "ASIMDDP", "ASIMDFHM" + ] + features_groups = dict( + NEON_FP16 = ["NEON", "HALF"], + NEON_VFPV4 = ["NEON", "VFPV4"], + ) + def load_flags(self): + self.load_flags_cpuinfo("Features") + arch = self.get_cpuinfo_item("CPU architecture") + # in case of mounting virtual filesystem of aarch64 kernel without linux32 + is_rootfs_v8 = ( + not re.match("^armv[0-9]+l$", machine) and + (int('0' + next(iter(arch))) > 7 if arch else 0) + ) + if re.match("^(aarch64|AARCH64)", machine) or is_rootfs_v8: + self.features_map = { + "NEON": "ASIMD", "HALF": "ASIMD", "VFPV4": "ASIMD" + } + else: + self.features_map = dict( + # ELF auxiliary vector and /proc/cpuinfo on Linux kernel(armv8 aarch32) + # doesn't provide information about ASIMD, so we assume that ASIMD is supported + # if the kernel reports any one of the following ARM8 features. + ASIMD=("AES", "SHA1", "SHA2", "PMULL", "CRC32") + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_custom_dtypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_custom_dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..6120bb36b32056fe264d47b10e8e022b692b5d68 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_custom_dtypes.py @@ -0,0 +1,311 @@ +from tempfile import NamedTemporaryFile + +import pytest + +import numpy as np +from numpy.testing import assert_array_equal +from numpy._core._multiarray_umath import ( + _discover_array_parameters as discover_array_params, _get_sfloat_dtype) + + +SF = _get_sfloat_dtype() + + +class TestSFloat: + def _get_array(self, scaling, aligned=True): + if not aligned: + a = np.empty(3*8 + 1, dtype=np.uint8)[1:] + a = a.view(np.float64) + a[:] = [1., 2., 3.] + else: + a = np.array([1., 2., 3.]) + + a *= 1./scaling # the casting code also uses the reciprocal. + return a.view(SF(scaling)) + + def test_sfloat_rescaled(self): + sf = SF(1.) + sf2 = sf.scaled_by(2.) + assert sf2.get_scaling() == 2. + sf6 = sf2.scaled_by(3.) + assert sf6.get_scaling() == 6. + + def test_class_discovery(self): + # This does not test much, since we always discover the scaling as 1. + # But most of NumPy (when writing) does not understand DType classes + dt, _ = discover_array_params([1., 2., 3.], dtype=SF) + assert dt == SF(1.) + + @pytest.mark.parametrize("scaling", [1., -1., 2.]) + def test_scaled_float_from_floats(self, scaling): + a = np.array([1., 2., 3.], dtype=SF(scaling)) + + assert a.dtype.get_scaling() == scaling + assert_array_equal(scaling * a.view(np.float64), [1., 2., 3.]) + + def test_repr(self): + # Check the repr, mainly to cover the code paths: + assert repr(SF(scaling=1.)) == "_ScaledFloatTestDType(scaling=1.0)" + + def test_dtype_name(self): + assert SF(1.).name == "_ScaledFloatTestDType64" + + def test_sfloat_structured_dtype_printing(self): + dt = np.dtype([("id", int), ("value", SF(0.5))]) + # repr of structured dtypes need special handling because the + # implementation bypasses the object repr + assert "('value', '_ScaledFloatTestDType64')" in repr(dt) + + @pytest.mark.parametrize("scaling", [1., -1., 2.]) + def test_sfloat_from_float(self, scaling): + a = np.array([1., 2., 3.]).astype(dtype=SF(scaling)) + + assert a.dtype.get_scaling() == scaling + assert_array_equal(scaling * a.view(np.float64), [1., 2., 3.]) + + @pytest.mark.parametrize("aligned", [True, False]) + @pytest.mark.parametrize("scaling", [1., -1., 2.]) + def test_sfloat_getitem(self, aligned, scaling): + a = self._get_array(1., aligned) + assert a.tolist() == [1., 2., 3.] + + @pytest.mark.parametrize("aligned", [True, False]) + def test_sfloat_casts(self, aligned): + a = self._get_array(1., aligned) + + assert np.can_cast(a, SF(-1.), casting="equiv") + assert not np.can_cast(a, SF(-1.), casting="no") + na = a.astype(SF(-1.)) + assert_array_equal(-1 * na.view(np.float64), a.view(np.float64)) + + assert np.can_cast(a, SF(2.), casting="same_kind") + assert not np.can_cast(a, SF(2.), casting="safe") + a2 = a.astype(SF(2.)) + assert_array_equal(2 * a2.view(np.float64), a.view(np.float64)) + + @pytest.mark.parametrize("aligned", [True, False]) + def test_sfloat_cast_internal_errors(self, aligned): + a = self._get_array(2e300, aligned) + + with pytest.raises(TypeError, + match="error raised inside the core-loop: non-finite factor!"): + a.astype(SF(2e-300)) + + def test_sfloat_promotion(self): + assert np.result_type(SF(2.), SF(3.)) == SF(3.) + assert np.result_type(SF(3.), SF(2.)) == SF(3.) + # Float64 -> SF(1.) and then promotes normally, so both of this work: + assert np.result_type(SF(3.), np.float64) == SF(3.) + assert np.result_type(np.float64, SF(0.5)) == SF(1.) + + # Test an undefined promotion: + with pytest.raises(TypeError): + np.result_type(SF(1.), np.int64) + + def test_basic_multiply(self): + a = self._get_array(2.) + b = self._get_array(4.) + + res = a * b + # multiplies dtype scaling and content separately: + assert res.dtype.get_scaling() == 8. + expected_view = a.view(np.float64) * b.view(np.float64) + assert_array_equal(res.view(np.float64), expected_view) + + def test_possible_and_impossible_reduce(self): + # For reductions to work, the first and last operand must have the + # same dtype. For this parametric DType that is not necessarily true. + a = self._get_array(2.) + # Addition reduction works (as of writing requires to pass initial + # because setting a scaled-float from the default `0` fails). + res = np.add.reduce(a, initial=0.) + assert res == a.astype(np.float64).sum() + + # But each multiplication changes the factor, so a reduction is not + # possible (the relaxed version of the old refusal to handle any + # flexible dtype). + with pytest.raises(TypeError, + match="the resolved dtypes are not compatible"): + np.multiply.reduce(a) + + def test_basic_ufunc_at(self): + float_a = np.array([1., 2., 3.]) + b = self._get_array(2.) + + float_b = b.view(np.float64).copy() + np.multiply.at(float_b, [1, 1, 1], float_a) + np.multiply.at(b, [1, 1, 1], float_a) + + assert_array_equal(b.view(np.float64), float_b) + + def test_basic_multiply_promotion(self): + float_a = np.array([1., 2., 3.]) + b = self._get_array(2.) + + res1 = float_a * b + res2 = b * float_a + + # one factor is one, so we get the factor of b: + assert res1.dtype == res2.dtype == b.dtype + expected_view = float_a * b.view(np.float64) + assert_array_equal(res1.view(np.float64), expected_view) + assert_array_equal(res2.view(np.float64), expected_view) + + # Check that promotion works when `out` is used: + np.multiply(b, float_a, out=res2) + with pytest.raises(TypeError): + # The promoter accepts this (maybe it should not), but the SFloat + # result cannot be cast to integer: + np.multiply(b, float_a, out=np.arange(3)) + + def test_basic_addition(self): + a = self._get_array(2.) + b = self._get_array(4.) + + res = a + b + # addition uses the type promotion rules for the result: + assert res.dtype == np.result_type(a.dtype, b.dtype) + expected_view = (a.astype(res.dtype).view(np.float64) + + b.astype(res.dtype).view(np.float64)) + assert_array_equal(res.view(np.float64), expected_view) + + def test_addition_cast_safety(self): + """The addition method is special for the scaled float, because it + includes the "cast" between different factors, thus cast-safety + is influenced by the implementation. + """ + a = self._get_array(2.) + b = self._get_array(-2.) + c = self._get_array(3.) + + # sign change is "equiv": + np.add(a, b, casting="equiv") + with pytest.raises(TypeError): + np.add(a, b, casting="no") + + # Different factor is "same_kind" (default) so check that "safe" fails + with pytest.raises(TypeError): + np.add(a, c, casting="safe") + + # Check that casting the output fails also (done by the ufunc here) + with pytest.raises(TypeError): + np.add(a, a, out=c, casting="safe") + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or, np.logical_xor]) + def test_logical_ufuncs_casts_to_bool(self, ufunc): + a = self._get_array(2.) + a[0] = 0. # make sure first element is considered False. + + float_equiv = a.astype(float) + expected = ufunc(float_equiv, float_equiv) + res = ufunc(a, a) + assert_array_equal(res, expected) + + # also check that the same works for reductions: + expected = ufunc.reduce(float_equiv) + res = ufunc.reduce(a) + assert_array_equal(res, expected) + + # The output casting does not match the bool, bool -> bool loop: + with pytest.raises(TypeError): + ufunc(a, a, out=np.empty(a.shape, dtype=int), casting="equiv") + + def test_wrapped_and_wrapped_reductions(self): + a = self._get_array(2.) + float_equiv = a.astype(float) + + expected = np.hypot(float_equiv, float_equiv) + res = np.hypot(a, a) + assert res.dtype == a.dtype + res_float = res.view(np.float64) * 2 + assert_array_equal(res_float, expected) + + # Also check reduction (keepdims, due to incorrect getitem) + res = np.hypot.reduce(a, keepdims=True) + assert res.dtype == a.dtype + expected = np.hypot.reduce(float_equiv, keepdims=True) + assert res.view(np.float64) * 2 == expected + + def test_astype_class(self): + # Very simple test that we accept `.astype()` also on the class. + # ScaledFloat always returns the default descriptor, but it does + # check the relevant code paths. + arr = np.array([1., 2., 3.], dtype=object) + + res = arr.astype(SF) # passing the class class + expected = arr.astype(SF(1.)) # above will have discovered 1. scaling + assert_array_equal(res.view(np.float64), expected.view(np.float64)) + + def test_creation_class(self): + # passing in a dtype class should return + # the default descriptor + arr1 = np.array([1., 2., 3.], dtype=SF) + assert arr1.dtype == SF(1.) + arr2 = np.array([1., 2., 3.], dtype=SF(1.)) + assert_array_equal(arr1.view(np.float64), arr2.view(np.float64)) + assert arr1.dtype == arr2.dtype + + assert np.empty(3, dtype=SF).dtype == SF(1.) + assert np.empty_like(arr1, dtype=SF).dtype == SF(1.) + assert np.zeros(3, dtype=SF).dtype == SF(1.) + assert np.zeros_like(arr1, dtype=SF).dtype == SF(1.) + + def test_np_save_load(self): + # this monkeypatch is needed because pickle + # uses the repr of a type to reconstruct it + np._ScaledFloatTestDType = SF + + arr = np.array([1.0, 2.0, 3.0], dtype=SF(1.0)) + + # adapted from RoundtripTest.roundtrip in np.save tests + with NamedTemporaryFile("wb", delete=False, suffix=".npz") as f: + with pytest.warns(UserWarning) as record: + np.savez(f.name, arr) + + assert len(record) == 1 + + with np.load(f.name, allow_pickle=True) as data: + larr = data["arr_0"] + assert_array_equal(arr.view(np.float64), larr.view(np.float64)) + assert larr.dtype == arr.dtype == SF(1.0) + + del np._ScaledFloatTestDType + + def test_flatiter(self): + arr = np.array([1.0, 2.0, 3.0], dtype=SF(1.0)) + + for i, val in enumerate(arr.flat): + assert arr[i] == val + + @pytest.mark.parametrize( + "index", [ + [1, 2], ..., slice(None, 2, None), + np.array([True, True, False]), np.array([0, 1]) + ], ids=["int_list", "ellipsis", "slice", "bool_array", "int_array"]) + def test_flatiter_index(self, index): + arr = np.array([1.0, 2.0, 3.0], dtype=SF(1.0)) + np.testing.assert_array_equal( + arr[index].view(np.float64), arr.flat[index].view(np.float64)) + + arr2 = arr.copy() + arr[index] = 5.0 + arr2.flat[index] = 5.0 + np.testing.assert_array_equal( + arr.view(np.float64), arr2.view(np.float64)) + +def test_type_pickle(): + # can't actually unpickle, but we can pickle (if in namespace) + import pickle + + np._ScaledFloatTestDType = SF + + s = pickle.dumps(SF) + res = pickle.loads(s) + assert res is SF + + del np._ScaledFloatTestDType + + +def test_is_numeric(): + assert SF._is_numeric diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cython.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cython.py new file mode 100644 index 0000000000000000000000000000000000000000..ac29a2f7407b8a56276b6232288b1623ee187baa --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_cython.py @@ -0,0 +1,304 @@ +from datetime import datetime +import os +import subprocess +import sys +import pytest + +import numpy as np +from numpy.testing import assert_array_equal, IS_WASM, IS_EDITABLE + +# This import is copied from random.tests.test_extending +try: + import cython + from Cython.Compiler.Version import version as cython_version +except ImportError: + cython = None +else: + from numpy._utils import _pep440 + + # Note: keep in sync with the one in pyproject.toml + required_version = "3.0.6" + if _pep440.parse(cython_version) < _pep440.Version(required_version): + # too old or wrong cython, skip the test + cython = None + +pytestmark = pytest.mark.skipif(cython is None, reason="requires cython") + + +if IS_EDITABLE: + pytest.skip( + "Editable install doesn't support tests with a compile step", + allow_module_level=True + ) + + +@pytest.fixture(scope='module') +def install_temp(tmpdir_factory): + # Based in part on test_cython from random.tests.test_extending + if IS_WASM: + pytest.skip("No subprocess") + + srcdir = os.path.join(os.path.dirname(__file__), 'examples', 'cython') + build_dir = tmpdir_factory.mktemp("cython_test") / "build" + os.makedirs(build_dir, exist_ok=True) + # Ensure we use the correct Python interpreter even when `meson` is + # installed in a different Python environment (see gh-24956) + native_file = str(build_dir / 'interpreter-native-file.ini') + with open(native_file, 'w') as f: + f.write("[binaries]\n") + f.write(f"python = '{sys.executable}'\n") + f.write(f"python3 = '{sys.executable}'") + + try: + subprocess.check_call(["meson", "--version"]) + except FileNotFoundError: + pytest.skip("No usable 'meson' found") + if sys.platform == "win32": + subprocess.check_call(["meson", "setup", + "--buildtype=release", + "--vsenv", "--native-file", native_file, + str(srcdir)], + cwd=build_dir, + ) + else: + subprocess.check_call(["meson", "setup", + "--native-file", native_file, str(srcdir)], + cwd=build_dir + ) + try: + subprocess.check_call(["meson", "compile", "-vv"], cwd=build_dir) + except subprocess.CalledProcessError: + print("----------------") + print("meson build failed when doing") + print(f"'meson setup --native-file {native_file} {srcdir}'") + print("'meson compile -vv'") + print(f"in {build_dir}") + print("----------------") + raise + + sys.path.append(str(build_dir)) + + +def test_is_timedelta64_object(install_temp): + import checks + + assert checks.is_td64(np.timedelta64(1234)) + assert checks.is_td64(np.timedelta64(1234, "ns")) + assert checks.is_td64(np.timedelta64("NaT", "ns")) + + assert not checks.is_td64(1) + assert not checks.is_td64(None) + assert not checks.is_td64("foo") + assert not checks.is_td64(np.datetime64("now", "s")) + + +def test_is_datetime64_object(install_temp): + import checks + + assert checks.is_dt64(np.datetime64(1234, "ns")) + assert checks.is_dt64(np.datetime64("NaT", "ns")) + + assert not checks.is_dt64(1) + assert not checks.is_dt64(None) + assert not checks.is_dt64("foo") + assert not checks.is_dt64(np.timedelta64(1234)) + + +def test_get_datetime64_value(install_temp): + import checks + + dt64 = np.datetime64("2016-01-01", "ns") + + result = checks.get_dt64_value(dt64) + expected = dt64.view("i8") + + assert result == expected + + +def test_get_timedelta64_value(install_temp): + import checks + + td64 = np.timedelta64(12345, "h") + + result = checks.get_td64_value(td64) + expected = td64.view("i8") + + assert result == expected + + +def test_get_datetime64_unit(install_temp): + import checks + + dt64 = np.datetime64("2016-01-01", "ns") + result = checks.get_dt64_unit(dt64) + expected = 10 + assert result == expected + + td64 = np.timedelta64(12345, "h") + result = checks.get_dt64_unit(td64) + expected = 5 + assert result == expected + + +def test_abstract_scalars(install_temp): + import checks + + assert checks.is_integer(1) + assert checks.is_integer(np.int8(1)) + assert checks.is_integer(np.uint64(1)) + +def test_default_int(install_temp): + import checks + + assert checks.get_default_integer() is np.dtype(int) + + +def test_ravel_axis(install_temp): + import checks + + assert checks.get_ravel_axis() == np.iinfo("intc").min + + +def test_convert_datetime64_to_datetimestruct(install_temp): + # GH#21199 + import checks + + res = checks.convert_datetime64_to_datetimestruct() + + exp = { + "year": 2022, + "month": 3, + "day": 15, + "hour": 20, + "min": 1, + "sec": 55, + "us": 260292, + "ps": 0, + "as": 0, + } + + assert res == exp + + +class TestDatetimeStrings: + def test_make_iso_8601_datetime(self, install_temp): + # GH#21199 + import checks + dt = datetime(2016, 6, 2, 10, 45, 19) + # uses NPY_FR_s + result = checks.make_iso_8601_datetime(dt) + assert result == b"2016-06-02T10:45:19" + + def test_get_datetime_iso_8601_strlen(self, install_temp): + # GH#21199 + import checks + # uses NPY_FR_ns + res = checks.get_datetime_iso_8601_strlen() + assert res == 48 + + +@pytest.mark.parametrize( + "arrays", + [ + [np.random.rand(2)], + [np.random.rand(2), np.random.rand(3, 1)], + [np.random.rand(2), np.random.rand(2, 3, 2), np.random.rand(1, 3, 2)], + [np.random.rand(2, 1)] * 4 + [np.random.rand(1, 1, 1)], + ] +) +def test_multiiter_fields(install_temp, arrays): + import checks + bcast = np.broadcast(*arrays) + + assert bcast.ndim == checks.get_multiiter_number_of_dims(bcast) + assert bcast.size == checks.get_multiiter_size(bcast) + assert bcast.numiter == checks.get_multiiter_num_of_iterators(bcast) + assert bcast.shape == checks.get_multiiter_shape(bcast) + assert bcast.index == checks.get_multiiter_current_index(bcast) + assert all( + x.base is y.base + for x, y in zip(bcast.iters, checks.get_multiiter_iters(bcast)) + ) + + +def test_dtype_flags(install_temp): + import checks + dtype = np.dtype("i,O") # dtype with somewhat interesting flags + assert dtype.flags == checks.get_dtype_flags(dtype) + + +def test_conv_intp(install_temp): + import checks + + class myint: + def __int__(self): + return 3 + + # These conversion passes via `__int__`, not `__index__`: + assert checks.conv_intp(3.) == 3 + assert checks.conv_intp(myint()) == 3 + + +def test_npyiter_api(install_temp): + import checks + arr = np.random.rand(3, 2) + + it = np.nditer(arr) + assert checks.get_npyiter_size(it) == it.itersize == np.prod(arr.shape) + assert checks.get_npyiter_ndim(it) == it.ndim == 1 + assert checks.npyiter_has_index(it) == it.has_index == False + + it = np.nditer(arr, flags=["c_index"]) + assert checks.npyiter_has_index(it) == it.has_index == True + assert ( + checks.npyiter_has_delayed_bufalloc(it) + == it.has_delayed_bufalloc + == False + ) + + it = np.nditer(arr, flags=["buffered", "delay_bufalloc"]) + assert ( + checks.npyiter_has_delayed_bufalloc(it) + == it.has_delayed_bufalloc + == True + ) + + it = np.nditer(arr, flags=["multi_index"]) + assert checks.get_npyiter_size(it) == it.itersize == np.prod(arr.shape) + assert checks.npyiter_has_multi_index(it) == it.has_multi_index == True + assert checks.get_npyiter_ndim(it) == it.ndim == 2 + assert checks.test_get_multi_index_iter_next(it, arr) + + arr2 = np.random.rand(2, 1, 2) + it = np.nditer([arr, arr2]) + assert checks.get_npyiter_nop(it) == it.nop == 2 + assert checks.get_npyiter_size(it) == it.itersize == 12 + assert checks.get_npyiter_ndim(it) == it.ndim == 3 + assert all( + x is y for x, y in zip(checks.get_npyiter_operands(it), it.operands) + ) + assert all( + np.allclose(x, y) + for x, y in zip(checks.get_npyiter_itviews(it), it.itviews) + ) + + +def test_fillwithbytes(install_temp): + import checks + + arr = checks.compile_fillwithbyte() + assert_array_equal(arr, np.ones((1, 2))) + + +def test_complex(install_temp): + from checks import inc2_cfloat_struct + + arr = np.array([0, 10+10j], dtype="F") + inc2_cfloat_struct(arr) + assert arr[1] == (12 + 12j) + + +def test_npy_uintp_type_enum(): + import checks + assert checks.check_npy_uintp_type_enum() + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_datetime.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_datetime.py new file mode 100644 index 0000000000000000000000000000000000000000..17b25a75716ebaac5da7702a791295ff37297bd8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_datetime.py @@ -0,0 +1,2705 @@ +import datetime +import pickle + +import pytest + +import numpy +import numpy as np +from numpy.testing import ( + IS_WASM, + assert_, assert_equal, assert_raises, assert_warns, suppress_warnings, + assert_raises_regex, assert_array_equal, + ) + +# Use pytz to test out various time zones if available +try: + from pytz import timezone as tz + _has_pytz = True +except ImportError: + _has_pytz = False + +try: + RecursionError +except NameError: + RecursionError = RuntimeError # python < 3.5 + + +def _assert_equal_hash(v1, v2): + assert v1 == v2 + assert hash(v1) == hash(v2) + assert v2 in {v1} + + +class TestDateTime: + + def test_string(self): + msg = "no explicit representation of timezones available for " \ + "np.datetime64" + with pytest.warns(UserWarning, match=msg): + np.datetime64('2000-01-01T00+01') + + def test_datetime(self): + msg = "no explicit representation of timezones available for " \ + "np.datetime64" + with pytest.warns(UserWarning, match=msg): + t0 = np.datetime64('2023-06-09T12:18:40Z', 'ns') + + t0 = np.datetime64('2023-06-09T12:18:40', 'ns') + + def test_datetime_dtype_creation(self): + for unit in ['Y', 'M', 'W', 'D', + 'h', 'm', 's', 'ms', 'us', + 'μs', # alias for us + 'ns', 'ps', 'fs', 'as']: + dt1 = np.dtype('M8[750%s]' % unit) + assert_(dt1 == np.dtype('datetime64[750%s]' % unit)) + dt2 = np.dtype('m8[%s]' % unit) + assert_(dt2 == np.dtype('timedelta64[%s]' % unit)) + + # Generic units shouldn't add [] to the end + assert_equal(str(np.dtype("M8")), "datetime64") + + # Should be possible to specify the endianness + assert_equal(np.dtype("=M8"), np.dtype("M8")) + assert_equal(np.dtype("=M8[s]"), np.dtype("M8[s]")) + assert_(np.dtype(">M8") == np.dtype("M8") or + np.dtype("M8[D]") == np.dtype("M8[D]") or + np.dtype("M8") != np.dtype("m8") == np.dtype("m8") or + np.dtype("m8[D]") == np.dtype("m8[D]") or + np.dtype("m8") != np.dtype(" Scalars + assert_equal(np.datetime64(b, '[s]'), np.datetime64('NaT', '[s]')) + assert_equal(np.datetime64(b, '[ms]'), np.datetime64('NaT', '[ms]')) + assert_equal(np.datetime64(b, '[M]'), np.datetime64('NaT', '[M]')) + assert_equal(np.datetime64(b, '[Y]'), np.datetime64('NaT', '[Y]')) + assert_equal(np.datetime64(b, '[W]'), np.datetime64('NaT', '[W]')) + + # Arrays -> Scalars + assert_equal(np.datetime64(a, '[s]'), np.datetime64('NaT', '[s]')) + assert_equal(np.datetime64(a, '[ms]'), np.datetime64('NaT', '[ms]')) + assert_equal(np.datetime64(a, '[M]'), np.datetime64('NaT', '[M]')) + assert_equal(np.datetime64(a, '[Y]'), np.datetime64('NaT', '[Y]')) + assert_equal(np.datetime64(a, '[W]'), np.datetime64('NaT', '[W]')) + + # NaN -> NaT + nan = np.array([np.nan] * 8 + [0]) + fnan = nan.astype('f') + lnan = nan.astype('g') + cnan = nan.astype('D') + cfnan = nan.astype('F') + clnan = nan.astype('G') + hnan = nan.astype(np.half) + + nat = np.array([np.datetime64('NaT')] * 8 + [np.datetime64(0, 'D')]) + assert_equal(nan.astype('M8[ns]'), nat) + assert_equal(fnan.astype('M8[ns]'), nat) + assert_equal(lnan.astype('M8[ns]'), nat) + assert_equal(cnan.astype('M8[ns]'), nat) + assert_equal(cfnan.astype('M8[ns]'), nat) + assert_equal(clnan.astype('M8[ns]'), nat) + assert_equal(hnan.astype('M8[ns]'), nat) + + nat = np.array([np.timedelta64('NaT')] * 8 + [np.timedelta64(0)]) + assert_equal(nan.astype('timedelta64[ns]'), nat) + assert_equal(fnan.astype('timedelta64[ns]'), nat) + assert_equal(lnan.astype('timedelta64[ns]'), nat) + assert_equal(cnan.astype('timedelta64[ns]'), nat) + assert_equal(cfnan.astype('timedelta64[ns]'), nat) + assert_equal(clnan.astype('timedelta64[ns]'), nat) + assert_equal(hnan.astype('timedelta64[ns]'), nat) + + def test_days_creation(self): + assert_equal(np.array('1599', dtype='M8[D]').astype('i8'), + (1600-1970)*365 - (1972-1600)/4 + 3 - 365) + assert_equal(np.array('1600', dtype='M8[D]').astype('i8'), + (1600-1970)*365 - (1972-1600)/4 + 3) + assert_equal(np.array('1601', dtype='M8[D]').astype('i8'), + (1600-1970)*365 - (1972-1600)/4 + 3 + 366) + assert_equal(np.array('1900', dtype='M8[D]').astype('i8'), + (1900-1970)*365 - (1970-1900)//4) + assert_equal(np.array('1901', dtype='M8[D]').astype('i8'), + (1900-1970)*365 - (1970-1900)//4 + 365) + assert_equal(np.array('1967', dtype='M8[D]').astype('i8'), -3*365 - 1) + assert_equal(np.array('1968', dtype='M8[D]').astype('i8'), -2*365 - 1) + assert_equal(np.array('1969', dtype='M8[D]').astype('i8'), -1*365) + assert_equal(np.array('1970', dtype='M8[D]').astype('i8'), 0*365) + assert_equal(np.array('1971', dtype='M8[D]').astype('i8'), 1*365) + assert_equal(np.array('1972', dtype='M8[D]').astype('i8'), 2*365) + assert_equal(np.array('1973', dtype='M8[D]').astype('i8'), 3*365 + 1) + assert_equal(np.array('1974', dtype='M8[D]').astype('i8'), 4*365 + 1) + assert_equal(np.array('2000', dtype='M8[D]').astype('i8'), + (2000 - 1970)*365 + (2000 - 1972)//4) + assert_equal(np.array('2001', dtype='M8[D]').astype('i8'), + (2000 - 1970)*365 + (2000 - 1972)//4 + 366) + assert_equal(np.array('2400', dtype='M8[D]').astype('i8'), + (2400 - 1970)*365 + (2400 - 1972)//4 - 3) + assert_equal(np.array('2401', dtype='M8[D]').astype('i8'), + (2400 - 1970)*365 + (2400 - 1972)//4 - 3 + 366) + + assert_equal(np.array('1600-02-29', dtype='M8[D]').astype('i8'), + (1600-1970)*365 - (1972-1600)//4 + 3 + 31 + 28) + assert_equal(np.array('1600-03-01', dtype='M8[D]').astype('i8'), + (1600-1970)*365 - (1972-1600)//4 + 3 + 31 + 29) + assert_equal(np.array('2000-02-29', dtype='M8[D]').astype('i8'), + (2000 - 1970)*365 + (2000 - 1972)//4 + 31 + 28) + assert_equal(np.array('2000-03-01', dtype='M8[D]').astype('i8'), + (2000 - 1970)*365 + (2000 - 1972)//4 + 31 + 29) + assert_equal(np.array('2001-03-22', dtype='M8[D]').astype('i8'), + (2000 - 1970)*365 + (2000 - 1972)//4 + 366 + 31 + 28 + 21) + + def test_days_to_pydate(self): + assert_equal(np.array('1599', dtype='M8[D]').astype('O'), + datetime.date(1599, 1, 1)) + assert_equal(np.array('1600', dtype='M8[D]').astype('O'), + datetime.date(1600, 1, 1)) + assert_equal(np.array('1601', dtype='M8[D]').astype('O'), + datetime.date(1601, 1, 1)) + assert_equal(np.array('1900', dtype='M8[D]').astype('O'), + datetime.date(1900, 1, 1)) + assert_equal(np.array('1901', dtype='M8[D]').astype('O'), + datetime.date(1901, 1, 1)) + assert_equal(np.array('2000', dtype='M8[D]').astype('O'), + datetime.date(2000, 1, 1)) + assert_equal(np.array('2001', dtype='M8[D]').astype('O'), + datetime.date(2001, 1, 1)) + assert_equal(np.array('1600-02-29', dtype='M8[D]').astype('O'), + datetime.date(1600, 2, 29)) + assert_equal(np.array('1600-03-01', dtype='M8[D]').astype('O'), + datetime.date(1600, 3, 1)) + assert_equal(np.array('2001-03-22', dtype='M8[D]').astype('O'), + datetime.date(2001, 3, 22)) + + def test_dtype_comparison(self): + assert_(not (np.dtype('M8[us]') == np.dtype('M8[ms]'))) + assert_(np.dtype('M8[us]') != np.dtype('M8[ms]')) + assert_(np.dtype('M8[2D]') != np.dtype('M8[D]')) + assert_(np.dtype('M8[D]') != np.dtype('M8[2D]')) + + def test_pydatetime_creation(self): + a = np.array(['1960-03-12', datetime.date(1960, 3, 12)], dtype='M8[D]') + assert_equal(a[0], a[1]) + a = np.array(['1999-12-31', datetime.date(1999, 12, 31)], dtype='M8[D]') + assert_equal(a[0], a[1]) + a = np.array(['2000-01-01', datetime.date(2000, 1, 1)], dtype='M8[D]') + assert_equal(a[0], a[1]) + # Will fail if the date changes during the exact right moment + a = np.array(['today', datetime.date.today()], dtype='M8[D]') + assert_equal(a[0], a[1]) + # datetime.datetime.now() returns local time, not UTC + #a = np.array(['now', datetime.datetime.now()], dtype='M8[s]') + #assert_equal(a[0], a[1]) + + # we can give a datetime.date time units + assert_equal(np.array(datetime.date(1960, 3, 12), dtype='M8[s]'), + np.array(np.datetime64('1960-03-12T00:00:00'))) + + def test_datetime_string_conversion(self): + a = ['2011-03-16', '1920-01-01', '2013-05-19'] + str_a = np.array(a, dtype='S') + uni_a = np.array(a, dtype='U') + dt_a = np.array(a, dtype='M') + + # String to datetime + assert_equal(dt_a, str_a.astype('M')) + assert_equal(dt_a.dtype, str_a.astype('M').dtype) + dt_b = np.empty_like(dt_a) + dt_b[...] = str_a + assert_equal(dt_a, dt_b) + + # Datetime to string + assert_equal(str_a, dt_a.astype('S0')) + str_b = np.empty_like(str_a) + str_b[...] = dt_a + assert_equal(str_a, str_b) + + # Unicode to datetime + assert_equal(dt_a, uni_a.astype('M')) + assert_equal(dt_a.dtype, uni_a.astype('M').dtype) + dt_b = np.empty_like(dt_a) + dt_b[...] = uni_a + assert_equal(dt_a, dt_b) + + # Datetime to unicode + assert_equal(uni_a, dt_a.astype('U')) + uni_b = np.empty_like(uni_a) + uni_b[...] = dt_a + assert_equal(uni_a, uni_b) + + # Datetime to long string - gh-9712 + assert_equal(str_a, dt_a.astype((np.bytes_, 128))) + str_b = np.empty(str_a.shape, dtype=(np.bytes_, 128)) + str_b[...] = dt_a + assert_equal(str_a, str_b) + + @pytest.mark.parametrize("time_dtype", ["m8[D]", "M8[Y]"]) + def test_time_byteswapping(self, time_dtype): + times = np.array(["2017", "NaT"], dtype=time_dtype) + times_swapped = times.astype(times.dtype.newbyteorder()) + assert_array_equal(times, times_swapped) + + unswapped = times_swapped.view(np.dtype("int64").newbyteorder()) + assert_array_equal(unswapped, times.view(np.int64)) + + @pytest.mark.parametrize(["time1", "time2"], + [("M8[s]", "M8[D]"), ("m8[s]", "m8[ns]")]) + def test_time_byteswapped_cast(self, time1, time2): + dtype1 = np.dtype(time1) + dtype2 = np.dtype(time2) + times = np.array(["2017", "NaT"], dtype=dtype1) + expected = times.astype(dtype2) + + # Test that every byte-swapping combination also returns the same + # results (previous tests check that this comparison works fine). + res = times.astype(dtype1.newbyteorder()).astype(dtype2) + assert_array_equal(res, expected) + res = times.astype(dtype2.newbyteorder()) + assert_array_equal(res, expected) + res = times.astype(dtype1.newbyteorder()).astype(dtype2.newbyteorder()) + assert_array_equal(res, expected) + + @pytest.mark.parametrize("time_dtype", ["m8[D]", "M8[Y]"]) + @pytest.mark.parametrize("str_dtype", ["U", "S"]) + def test_datetime_conversions_byteorders(self, str_dtype, time_dtype): + times = np.array(["2017", "NaT"], dtype=time_dtype) + # Unfortunately, timedelta does not roundtrip: + from_strings = np.array(["2017", "NaT"], dtype=str_dtype) + to_strings = times.astype(str_dtype) # assume this is correct + + # Check that conversion from times to string works if src is swapped: + times_swapped = times.astype(times.dtype.newbyteorder()) + res = times_swapped.astype(str_dtype) + assert_array_equal(res, to_strings) + # And also if both are swapped: + res = times_swapped.astype(to_strings.dtype.newbyteorder()) + assert_array_equal(res, to_strings) + # only destination is swapped: + res = times.astype(to_strings.dtype.newbyteorder()) + assert_array_equal(res, to_strings) + + # Check that conversion from string to times works if src is swapped: + from_strings_swapped = from_strings.astype( + from_strings.dtype.newbyteorder()) + res = from_strings_swapped.astype(time_dtype) + assert_array_equal(res, times) + # And if both are swapped: + res = from_strings_swapped.astype(times.dtype.newbyteorder()) + assert_array_equal(res, times) + # Only destination is swapped: + res = from_strings.astype(times.dtype.newbyteorder()) + assert_array_equal(res, times) + + def test_datetime_array_str(self): + a = np.array(['2011-03-16', '1920-01-01', '2013-05-19'], dtype='M') + assert_equal(str(a), "['2011-03-16' '1920-01-01' '2013-05-19']") + + a = np.array(['2011-03-16T13:55', '1920-01-01T03:12'], dtype='M') + assert_equal(np.array2string(a, separator=', ', + formatter={'datetime': lambda x: + "'%s'" % np.datetime_as_string(x, timezone='UTC')}), + "['2011-03-16T13:55Z', '1920-01-01T03:12Z']") + + # Check that one NaT doesn't corrupt subsequent entries + a = np.array(['2010', 'NaT', '2030']).astype('M') + assert_equal(str(a), "['2010' 'NaT' '2030']") + + def test_timedelta_array_str(self): + a = np.array([-1, 0, 100], dtype='m') + assert_equal(str(a), "[ -1 0 100]") + a = np.array(['NaT', 'NaT'], dtype='m') + assert_equal(str(a), "['NaT' 'NaT']") + # Check right-alignment with NaTs + a = np.array([-1, 'NaT', 0], dtype='m') + assert_equal(str(a), "[ -1 'NaT' 0]") + a = np.array([-1, 'NaT', 1234567], dtype='m') + assert_equal(str(a), "[ -1 'NaT' 1234567]") + + # Test with other byteorder: + a = np.array([-1, 'NaT', 1234567], dtype='>m') + assert_equal(str(a), "[ -1 'NaT' 1234567]") + a = np.array([-1, 'NaT', 1234567], dtype=''\np4\nNNNI-1\nI-1\nI0\n((dp5\n(S'us'\np6\n" + \ + b"I1\nI1\nI1\ntp7\ntp8\ntp9\nb." + assert_equal(pickle.loads(pkl), np.dtype('>M8[us]')) + + def test_setstate(self): + "Verify that datetime dtype __setstate__ can handle bad arguments" + dt = np.dtype('>M8[us]') + assert_raises(ValueError, dt.__setstate__, (4, '>', None, None, None, -1, -1, 0, 1)) + assert_(dt.__reduce__()[2] == np.dtype('>M8[us]').__reduce__()[2]) + assert_raises(TypeError, dt.__setstate__, (4, '>', None, None, None, -1, -1, 0, ({}, 'xxx'))) + assert_(dt.__reduce__()[2] == np.dtype('>M8[us]').__reduce__()[2]) + + def test_dtype_promotion(self): + # datetime datetime computes the metadata gcd + # timedelta timedelta computes the metadata gcd + for mM in ['m', 'M']: + assert_equal( + np.promote_types(np.dtype(mM+'8[2Y]'), np.dtype(mM+'8[2Y]')), + np.dtype(mM+'8[2Y]')) + assert_equal( + np.promote_types(np.dtype(mM+'8[12Y]'), np.dtype(mM+'8[15Y]')), + np.dtype(mM+'8[3Y]')) + assert_equal( + np.promote_types(np.dtype(mM+'8[62M]'), np.dtype(mM+'8[24M]')), + np.dtype(mM+'8[2M]')) + assert_equal( + np.promote_types(np.dtype(mM+'8[1W]'), np.dtype(mM+'8[2D]')), + np.dtype(mM+'8[1D]')) + assert_equal( + np.promote_types(np.dtype(mM+'8[W]'), np.dtype(mM+'8[13s]')), + np.dtype(mM+'8[s]')) + assert_equal( + np.promote_types(np.dtype(mM+'8[13W]'), np.dtype(mM+'8[49s]')), + np.dtype(mM+'8[7s]')) + # timedelta timedelta raises when there is no reasonable gcd + assert_raises(TypeError, np.promote_types, + np.dtype('m8[Y]'), np.dtype('m8[D]')) + assert_raises(TypeError, np.promote_types, + np.dtype('m8[M]'), np.dtype('m8[W]')) + # timedelta and float cannot be safely cast with each other + assert_raises(TypeError, np.promote_types, "float32", "m8") + assert_raises(TypeError, np.promote_types, "m8", "float32") + assert_raises(TypeError, np.promote_types, "uint64", "m8") + assert_raises(TypeError, np.promote_types, "m8", "uint64") + + # timedelta timedelta may overflow with big unit ranges + assert_raises(OverflowError, np.promote_types, + np.dtype('m8[W]'), np.dtype('m8[fs]')) + assert_raises(OverflowError, np.promote_types, + np.dtype('m8[s]'), np.dtype('m8[as]')) + + def test_cast_overflow(self): + # gh-4486 + def cast(): + numpy.datetime64("1971-01-01 00:00:00.000000000000000").astype("datetime64[%s]', + 'timedelta64[%s]']) + def test_isfinite_isinf_isnan_units(self, unit, dstr): + '''check isfinite, isinf, isnan for all units of M, m dtypes + ''' + arr_val = [123, -321, "NaT"] + arr = np.array(arr_val, dtype= dstr % unit) + pos = np.array([True, True, False]) + neg = np.array([False, False, True]) + false = np.array([False, False, False]) + assert_equal(np.isfinite(arr), pos) + assert_equal(np.isinf(arr), false) + assert_equal(np.isnan(arr), neg) + + def test_assert_equal(self): + assert_raises(AssertionError, assert_equal, + np.datetime64('nat'), np.timedelta64('nat')) + + def test_corecursive_input(self): + # construct a co-recursive list + a, b = [], [] + a.append(b) + b.append(a) + obj_arr = np.array([None]) + obj_arr[0] = a + + # At some point this caused a stack overflow (gh-11154). Now raises + # ValueError since the nested list cannot be converted to a datetime. + assert_raises(ValueError, obj_arr.astype, 'M8') + assert_raises(ValueError, obj_arr.astype, 'm8') + + @pytest.mark.parametrize("shape", [(), (1,)]) + def test_discovery_from_object_array(self, shape): + arr = np.array("2020-10-10", dtype=object).reshape(shape) + res = np.array("2020-10-10", dtype="M8").reshape(shape) + assert res.dtype == np.dtype("M8[D]") + assert_equal(arr.astype("M8"), res) + arr[...] = np.bytes_("2020-10-10") # try a numpy string type + assert_equal(arr.astype("M8"), res) + arr = arr.astype("S") + assert_equal(arr.astype("S").astype("M8"), res) + + @pytest.mark.parametrize("time_unit", [ + "Y", "M", "W", "D", "h", "m", "s", "ms", "us", "ns", "ps", "fs", "as", + # compound units + "10D", "2M", + ]) + def test_limit_symmetry(self, time_unit): + """ + Dates should have symmetric limits around the unix epoch at +/-np.int64 + """ + epoch = np.datetime64(0, time_unit) + latest = np.datetime64(np.iinfo(np.int64).max, time_unit) + earliest = np.datetime64(-np.iinfo(np.int64).max, time_unit) + + # above should not have overflowed + assert earliest < epoch < latest + + @pytest.mark.parametrize("time_unit", [ + "Y", "M", + pytest.param("W", marks=pytest.mark.xfail(reason="gh-13197")), + "D", "h", "m", + "s", "ms", "us", "ns", "ps", "fs", "as", + pytest.param("10D", marks=pytest.mark.xfail(reason="similar to gh-13197")), + ]) + @pytest.mark.parametrize("sign", [-1, 1]) + def test_limit_str_roundtrip(self, time_unit, sign): + """ + Limits should roundtrip when converted to strings. + + This tests the conversion to and from npy_datetimestruct. + """ + # TODO: add absolute (gold standard) time span limit strings + limit = np.datetime64(np.iinfo(np.int64).max * sign, time_unit) + + # Convert to string and back. Explicit unit needed since the day and + # week reprs are not distinguishable. + limit_via_str = np.datetime64(str(limit), time_unit) + assert limit_via_str == limit + + def test_datetime_hash_nat(self): + nat1 = np.datetime64() + nat2 = np.datetime64() + assert nat1 is not nat2 + assert nat1 != nat2 + assert hash(nat1) != hash(nat2) + + @pytest.mark.parametrize('unit', ('Y', 'M', 'W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_datetime_hash_weeks(self, unit): + dt = np.datetime64(2348, 'W') # 2015-01-01 + dt2 = np.datetime64(dt, unit) + _assert_equal_hash(dt, dt2) + + dt3 = np.datetime64(int(dt2.astype(int)) + 1, unit) + assert hash(dt) != hash(dt3) # doesn't collide + + @pytest.mark.parametrize('unit', ('h', 'm', 's', 'ms', 'us')) + def test_datetime_hash_weeks_vs_pydatetime(self, unit): + dt = np.datetime64(2348, 'W') # 2015-01-01 + dt2 = np.datetime64(dt, unit) + pydt = dt2.astype(datetime.datetime) + assert isinstance(pydt, datetime.datetime) + _assert_equal_hash(pydt, dt2) + + @pytest.mark.parametrize('unit', ('Y', 'M', 'W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_datetime_hash_big_negative(self, unit): + dt = np.datetime64(-102894, 'W') # -002-01-01 + dt2 = np.datetime64(dt, unit) + _assert_equal_hash(dt, dt2) + + # can only go down to "fs" before integer overflow + @pytest.mark.parametrize('unit', ('m', 's', 'ms', 'us', 'ns', 'ps', 'fs')) + def test_datetime_hash_minutes(self, unit): + dt = np.datetime64(3, 'm') + dt2 = np.datetime64(dt, unit) + _assert_equal_hash(dt, dt2) + + @pytest.mark.parametrize('unit', ('ns', 'ps', 'fs', 'as')) + def test_datetime_hash_ns(self, unit): + dt = np.datetime64(3, 'ns') + dt2 = np.datetime64(dt, unit) + _assert_equal_hash(dt, dt2) + + dt3 = np.datetime64(int(dt2.astype(int)) + 1, unit) + assert hash(dt) != hash(dt3) # doesn't collide + + @pytest.mark.parametrize('wk', range(500000, 500010)) # 11552-09-04 + @pytest.mark.parametrize('unit', ('W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_datetime_hash_big_positive(self, wk, unit): + dt = np.datetime64(wk, 'W') + dt2 = np.datetime64(dt, unit) + _assert_equal_hash(dt, dt2) + + def test_timedelta_hash_generic(self): + assert_raises(ValueError, hash, np.timedelta64(123)) # generic + + @pytest.mark.parametrize('unit', ('Y', 'M')) + def test_timedelta_hash_year_month(self, unit): + td = np.timedelta64(45, 'Y') + td2 = np.timedelta64(td, unit) + _assert_equal_hash(td, td2) + + @pytest.mark.parametrize('unit', ('W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_timedelta_hash_weeks(self, unit): + td = np.timedelta64(10, 'W') + td2 = np.timedelta64(td, unit) + _assert_equal_hash(td, td2) + + td3 = np.timedelta64(int(td2.astype(int)) + 1, unit) + assert hash(td) != hash(td3) # doesn't collide + + @pytest.mark.parametrize('unit', ('W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_timedelta_hash_weeks_vs_pydelta(self, unit): + td = np.timedelta64(10, 'W') + td2 = np.timedelta64(td, unit) + pytd = td2.astype(datetime.timedelta) + assert isinstance(pytd, datetime.timedelta) + _assert_equal_hash(pytd, td2) + + @pytest.mark.parametrize('unit', ('ms', 'us', 'ns', 'ps', 'fs', 'as')) + def test_timedelta_hash_ms(self, unit): + td = np.timedelta64(3, 'ms') + td2 = np.timedelta64(td, unit) + _assert_equal_hash(td, td2) + + td3 = np.timedelta64(int(td2.astype(int)) + 1, unit) + assert hash(td) != hash(td3) # doesn't collide + + @pytest.mark.parametrize('wk', range(500000, 500010)) + @pytest.mark.parametrize('unit', ('W', 'D', 'h', 'm', 's', 'ms', 'us')) + def test_timedelta_hash_big_positive(self, wk, unit): + td = np.timedelta64(wk, 'W') + td2 = np.timedelta64(td, unit) + _assert_equal_hash(td, td2) + + +class TestDateTimeData: + + def test_basic(self): + a = np.array(['1980-03-23'], dtype=np.datetime64) + assert_equal(np.datetime_data(a.dtype), ('D', 1)) + + def test_bytes(self): + # byte units are converted to unicode + dt = np.datetime64('2000', (b'ms', 5)) + assert np.datetime_data(dt.dtype) == ('ms', 5) + + dt = np.datetime64('2000', b'5ms') + assert np.datetime_data(dt.dtype) == ('ms', 5) + + def test_non_ascii(self): + # μs is normalized to μ + dt = np.datetime64('2000', ('μs', 5)) + assert np.datetime_data(dt.dtype) == ('us', 5) + + dt = np.datetime64('2000', '5μs') + assert np.datetime_data(dt.dtype) == ('us', 5) + + +def test_comparisons_return_not_implemented(): + # GH#17017 + + class custom: + __array_priority__ = 10000 + + obj = custom() + + dt = np.datetime64('2000', 'ns') + td = dt - dt + + for item in [dt, td]: + assert item.__eq__(obj) is NotImplemented + assert item.__ne__(obj) is NotImplemented + assert item.__le__(obj) is NotImplemented + assert item.__lt__(obj) is NotImplemented + assert item.__ge__(obj) is NotImplemented + assert item.__gt__(obj) is NotImplemented diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_defchararray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_defchararray.py new file mode 100644 index 0000000000000000000000000000000000000000..6b688ab443a4014772a4fc90b0497ec520b78629 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_defchararray.py @@ -0,0 +1,822 @@ +import pytest + +import numpy as np +from numpy._core.multiarray import _vec_string +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, assert_raises, + assert_raises_regex + ) + +kw_unicode_true = {'unicode': True} # make 2to3 work properly +kw_unicode_false = {'unicode': False} + +class TestBasic: + def test_from_object_array(self): + A = np.array([['abc', 2], + ['long ', '0123456789']], dtype='O') + B = np.char.array(A) + assert_equal(B.dtype.itemsize, 10) + assert_array_equal(B, [[b'abc', b'2'], + [b'long', b'0123456789']]) + + def test_from_object_array_unicode(self): + A = np.array([['abc', 'Sigma \u03a3'], + ['long ', '0123456789']], dtype='O') + assert_raises(ValueError, np.char.array, (A,)) + B = np.char.array(A, **kw_unicode_true) + assert_equal(B.dtype.itemsize, 10 * np.array('a', 'U').dtype.itemsize) + assert_array_equal(B, [['abc', 'Sigma \u03a3'], + ['long', '0123456789']]) + + def test_from_string_array(self): + A = np.array([[b'abc', b'foo'], + [b'long ', b'0123456789']]) + assert_equal(A.dtype.type, np.bytes_) + B = np.char.array(A) + assert_array_equal(B, A) + assert_equal(B.dtype, A.dtype) + assert_equal(B.shape, A.shape) + B[0, 0] = 'changed' + assert_(B[0, 0] != A[0, 0]) + C = np.char.asarray(A) + assert_array_equal(C, A) + assert_equal(C.dtype, A.dtype) + C[0, 0] = 'changed again' + assert_(C[0, 0] != B[0, 0]) + assert_(C[0, 0] == A[0, 0]) + + def test_from_unicode_array(self): + A = np.array([['abc', 'Sigma \u03a3'], + ['long ', '0123456789']]) + assert_equal(A.dtype.type, np.str_) + B = np.char.array(A) + assert_array_equal(B, A) + assert_equal(B.dtype, A.dtype) + assert_equal(B.shape, A.shape) + B = np.char.array(A, **kw_unicode_true) + assert_array_equal(B, A) + assert_equal(B.dtype, A.dtype) + assert_equal(B.shape, A.shape) + + def fail(): + np.char.array(A, **kw_unicode_false) + + assert_raises(UnicodeEncodeError, fail) + + def test_unicode_upconvert(self): + A = np.char.array(['abc']) + B = np.char.array(['\u03a3']) + assert_(issubclass((A + B).dtype.type, np.str_)) + + def test_from_string(self): + A = np.char.array(b'abc') + assert_equal(len(A), 1) + assert_equal(len(A[0]), 3) + assert_(issubclass(A.dtype.type, np.bytes_)) + + def test_from_unicode(self): + A = np.char.array('\u03a3') + assert_equal(len(A), 1) + assert_equal(len(A[0]), 1) + assert_equal(A.itemsize, 4) + assert_(issubclass(A.dtype.type, np.str_)) + +class TestVecString: + def test_non_existent_method(self): + + def fail(): + _vec_string('a', np.bytes_, 'bogus') + + assert_raises(AttributeError, fail) + + def test_non_string_array(self): + + def fail(): + _vec_string(1, np.bytes_, 'strip') + + assert_raises(TypeError, fail) + + def test_invalid_args_tuple(self): + + def fail(): + _vec_string(['a'], np.bytes_, 'strip', 1) + + assert_raises(TypeError, fail) + + def test_invalid_type_descr(self): + + def fail(): + _vec_string(['a'], 'BOGUS', 'strip') + + assert_raises(TypeError, fail) + + def test_invalid_function_args(self): + + def fail(): + _vec_string(['a'], np.bytes_, 'strip', (1,)) + + assert_raises(TypeError, fail) + + def test_invalid_result_type(self): + + def fail(): + _vec_string(['a'], np.int_, 'strip') + + assert_raises(TypeError, fail) + + def test_broadcast_error(self): + + def fail(): + _vec_string([['abc', 'def']], np.int_, 'find', (['a', 'd', 'j'],)) + + assert_raises(ValueError, fail) + + +class TestWhitespace: + def setup_method(self): + self.A = np.array([['abc ', '123 '], + ['789 ', 'xyz ']]).view(np.char.chararray) + self.B = np.array([['abc', '123'], + ['789', 'xyz']]).view(np.char.chararray) + + def test1(self): + assert_(np.all(self.A == self.B)) + assert_(np.all(self.A >= self.B)) + assert_(np.all(self.A <= self.B)) + assert_(not np.any(self.A > self.B)) + assert_(not np.any(self.A < self.B)) + assert_(not np.any(self.A != self.B)) + +class TestChar: + def setup_method(self): + self.A = np.array('abc1', dtype='c').view(np.char.chararray) + + def test_it(self): + assert_equal(self.A.shape, (4,)) + assert_equal(self.A.upper()[:2].tobytes(), b'AB') + +class TestComparisons: + def setup_method(self): + self.A = np.array([['abc', 'abcc', '123'], + ['789', 'abc', 'xyz']]).view(np.char.chararray) + self.B = np.array([['efg', 'efg', '123 '], + ['051', 'efgg', 'tuv']]).view(np.char.chararray) + + def test_not_equal(self): + assert_array_equal((self.A != self.B), + [[True, True, False], [True, True, True]]) + + def test_equal(self): + assert_array_equal((self.A == self.B), + [[False, False, True], [False, False, False]]) + + def test_greater_equal(self): + assert_array_equal((self.A >= self.B), + [[False, False, True], [True, False, True]]) + + def test_less_equal(self): + assert_array_equal((self.A <= self.B), + [[True, True, True], [False, True, False]]) + + def test_greater(self): + assert_array_equal((self.A > self.B), + [[False, False, False], [True, False, True]]) + + def test_less(self): + assert_array_equal((self.A < self.B), + [[True, True, False], [False, True, False]]) + + def test_type(self): + out1 = np.char.equal(self.A, self.B) + out2 = np.char.equal('a', 'a') + assert_(isinstance(out1, np.ndarray)) + assert_(isinstance(out2, np.ndarray)) + +class TestComparisonsMixed1(TestComparisons): + """Ticket #1276""" + + def setup_method(self): + TestComparisons.setup_method(self) + self.B = np.array( + [['efg', 'efg', '123 '], + ['051', 'efgg', 'tuv']], np.str_).view(np.char.chararray) + +class TestComparisonsMixed2(TestComparisons): + """Ticket #1276""" + + def setup_method(self): + TestComparisons.setup_method(self) + self.A = np.array( + [['abc', 'abcc', '123'], + ['789', 'abc', 'xyz']], np.str_).view(np.char.chararray) + +class TestInformation: + def setup_method(self): + self.A = np.array([[' abc ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']]) \ + .view(np.char.chararray) + self.B = np.array([[' \u03a3 ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']]) \ + .view(np.char.chararray) + # Array with longer strings, > MEMCHR_CUT_OFF in code. + self.C = (np.array(['ABCDEFGHIJKLMNOPQRSTUVWXYZ', + '01234567890123456789012345']) + .view(np.char.chararray)) + + def test_len(self): + assert_(issubclass(np.char.str_len(self.A).dtype.type, np.integer)) + assert_array_equal(np.char.str_len(self.A), [[5, 0], [5, 9], [12, 5]]) + assert_array_equal(np.char.str_len(self.B), [[3, 0], [5, 9], [12, 5]]) + + def test_count(self): + assert_(issubclass(self.A.count('').dtype.type, np.integer)) + assert_array_equal(self.A.count('a'), [[1, 0], [0, 1], [0, 0]]) + assert_array_equal(self.A.count('123'), [[0, 0], [1, 0], [1, 0]]) + # Python doesn't seem to like counting NULL characters + # assert_array_equal(self.A.count('\0'), [[0, 0], [0, 0], [1, 0]]) + assert_array_equal(self.A.count('a', 0, 2), [[1, 0], [0, 0], [0, 0]]) + assert_array_equal(self.B.count('a'), [[0, 0], [0, 1], [0, 0]]) + assert_array_equal(self.B.count('123'), [[0, 0], [1, 0], [1, 0]]) + # assert_array_equal(self.B.count('\0'), [[0, 0], [0, 0], [1, 0]]) + + def test_endswith(self): + assert_(issubclass(self.A.endswith('').dtype.type, np.bool)) + assert_array_equal(self.A.endswith(' '), [[1, 0], [0, 0], [1, 0]]) + assert_array_equal(self.A.endswith('3', 0, 3), [[0, 0], [1, 0], [1, 0]]) + + def fail(): + self.A.endswith('3', 'fdjk') + + assert_raises(TypeError, fail) + + @pytest.mark.parametrize( + "dtype, encode", + [("U", str), + ("S", lambda x: x.encode('ascii')), + ]) + def test_find(self, dtype, encode): + A = self.A.astype(dtype) + assert_(issubclass(A.find(encode('a')).dtype.type, np.integer)) + assert_array_equal(A.find(encode('a')), + [[1, -1], [-1, 6], [-1, -1]]) + assert_array_equal(A.find(encode('3')), + [[-1, -1], [2, -1], [2, -1]]) + assert_array_equal(A.find(encode('a'), 0, 2), + [[1, -1], [-1, -1], [-1, -1]]) + assert_array_equal(A.find([encode('1'), encode('P')]), + [[-1, -1], [0, -1], [0, 1]]) + C = self.C.astype(dtype) + assert_array_equal(C.find(encode('M')), [12, -1]) + + def test_index(self): + + def fail(): + self.A.index('a') + + assert_raises(ValueError, fail) + assert_(np.char.index('abcba', 'b') == 1) + assert_(issubclass(np.char.index('abcba', 'b').dtype.type, np.integer)) + + def test_isalnum(self): + assert_(issubclass(self.A.isalnum().dtype.type, np.bool)) + assert_array_equal(self.A.isalnum(), [[False, False], [True, True], [False, True]]) + + def test_isalpha(self): + assert_(issubclass(self.A.isalpha().dtype.type, np.bool)) + assert_array_equal(self.A.isalpha(), [[False, False], [False, True], [False, True]]) + + def test_isdigit(self): + assert_(issubclass(self.A.isdigit().dtype.type, np.bool)) + assert_array_equal(self.A.isdigit(), [[False, False], [True, False], [False, False]]) + + def test_islower(self): + assert_(issubclass(self.A.islower().dtype.type, np.bool)) + assert_array_equal(self.A.islower(), [[True, False], [False, False], [False, False]]) + + def test_isspace(self): + assert_(issubclass(self.A.isspace().dtype.type, np.bool)) + assert_array_equal(self.A.isspace(), [[False, False], [False, False], [False, False]]) + + def test_istitle(self): + assert_(issubclass(self.A.istitle().dtype.type, np.bool)) + assert_array_equal(self.A.istitle(), [[False, False], [False, False], [False, False]]) + + def test_isupper(self): + assert_(issubclass(self.A.isupper().dtype.type, np.bool)) + assert_array_equal(self.A.isupper(), [[False, False], [False, False], [False, True]]) + + def test_rfind(self): + assert_(issubclass(self.A.rfind('a').dtype.type, np.integer)) + assert_array_equal(self.A.rfind('a'), [[1, -1], [-1, 6], [-1, -1]]) + assert_array_equal(self.A.rfind('3'), [[-1, -1], [2, -1], [6, -1]]) + assert_array_equal(self.A.rfind('a', 0, 2), [[1, -1], [-1, -1], [-1, -1]]) + assert_array_equal(self.A.rfind(['1', 'P']), [[-1, -1], [0, -1], [0, 2]]) + + def test_rindex(self): + + def fail(): + self.A.rindex('a') + + assert_raises(ValueError, fail) + assert_(np.char.rindex('abcba', 'b') == 3) + assert_(issubclass(np.char.rindex('abcba', 'b').dtype.type, np.integer)) + + def test_startswith(self): + assert_(issubclass(self.A.startswith('').dtype.type, np.bool)) + assert_array_equal(self.A.startswith(' '), [[1, 0], [0, 0], [0, 0]]) + assert_array_equal(self.A.startswith('1', 0, 3), [[0, 0], [1, 0], [1, 0]]) + + def fail(): + self.A.startswith('3', 'fdjk') + + assert_raises(TypeError, fail) + + +class TestMethods: + def setup_method(self): + self.A = np.array([[' abc ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']], + dtype='S').view(np.char.chararray) + self.B = np.array([[' \u03a3 ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']]).view( + np.char.chararray) + + def test_capitalize(self): + tgt = [[b' abc ', b''], + [b'12345', b'Mixedcase'], + [b'123 \t 345 \0 ', b'Upper']] + assert_(issubclass(self.A.capitalize().dtype.type, np.bytes_)) + assert_array_equal(self.A.capitalize(), tgt) + + tgt = [[' \u03c3 ', ''], + ['12345', 'Mixedcase'], + ['123 \t 345 \0 ', 'Upper']] + assert_(issubclass(self.B.capitalize().dtype.type, np.str_)) + assert_array_equal(self.B.capitalize(), tgt) + + def test_center(self): + assert_(issubclass(self.A.center(10).dtype.type, np.bytes_)) + C = self.A.center([10, 20]) + assert_array_equal(np.char.str_len(C), [[10, 20], [10, 20], [12, 20]]) + + C = self.A.center(20, b'#') + assert_(np.all(C.startswith(b'#'))) + assert_(np.all(C.endswith(b'#'))) + + C = np.char.center(b'FOO', [[10, 20], [15, 8]]) + tgt = [[b' FOO ', b' FOO '], + [b' FOO ', b' FOO ']] + assert_(issubclass(C.dtype.type, np.bytes_)) + assert_array_equal(C, tgt) + + def test_decode(self): + A = np.char.array([b'\\u03a3']) + assert_(A.decode('unicode-escape')[0] == '\u03a3') + + def test_encode(self): + B = self.B.encode('unicode_escape') + assert_(B[0][0] == str(' \\u03a3 ').encode('latin1')) + + def test_expandtabs(self): + T = self.A.expandtabs() + assert_(T[2, 0] == b'123 345 \0') + + def test_join(self): + # NOTE: list(b'123') == [49, 50, 51] + # so that b','.join(b'123') results to an error on Py3 + A0 = self.A.decode('ascii') + + A = np.char.join([',', '#'], A0) + assert_(issubclass(A.dtype.type, np.str_)) + tgt = np.array([[' ,a,b,c, ', ''], + ['1,2,3,4,5', 'M#i#x#e#d#C#a#s#e'], + ['1,2,3, ,\t, ,3,4,5, ,\x00, ', 'U#P#P#E#R']]) + assert_array_equal(np.char.join([',', '#'], A0), tgt) + + def test_ljust(self): + assert_(issubclass(self.A.ljust(10).dtype.type, np.bytes_)) + + C = self.A.ljust([10, 20]) + assert_array_equal(np.char.str_len(C), [[10, 20], [10, 20], [12, 20]]) + + C = self.A.ljust(20, b'#') + assert_array_equal(C.startswith(b'#'), [ + [False, True], [False, False], [False, False]]) + assert_(np.all(C.endswith(b'#'))) + + C = np.char.ljust(b'FOO', [[10, 20], [15, 8]]) + tgt = [[b'FOO ', b'FOO '], + [b'FOO ', b'FOO ']] + assert_(issubclass(C.dtype.type, np.bytes_)) + assert_array_equal(C, tgt) + + def test_lower(self): + tgt = [[b' abc ', b''], + [b'12345', b'mixedcase'], + [b'123 \t 345 \0 ', b'upper']] + assert_(issubclass(self.A.lower().dtype.type, np.bytes_)) + assert_array_equal(self.A.lower(), tgt) + + tgt = [[' \u03c3 ', ''], + ['12345', 'mixedcase'], + ['123 \t 345 \0 ', 'upper']] + assert_(issubclass(self.B.lower().dtype.type, np.str_)) + assert_array_equal(self.B.lower(), tgt) + + def test_lstrip(self): + tgt = [[b'abc ', b''], + [b'12345', b'MixedCase'], + [b'123 \t 345 \0 ', b'UPPER']] + assert_(issubclass(self.A.lstrip().dtype.type, np.bytes_)) + assert_array_equal(self.A.lstrip(), tgt) + + tgt = [[b' abc', b''], + [b'2345', b'ixedCase'], + [b'23 \t 345 \x00', b'UPPER']] + assert_array_equal(self.A.lstrip([b'1', b'M']), tgt) + + tgt = [['\u03a3 ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']] + assert_(issubclass(self.B.lstrip().dtype.type, np.str_)) + assert_array_equal(self.B.lstrip(), tgt) + + def test_partition(self): + P = self.A.partition([b'3', b'M']) + tgt = [[(b' abc ', b'', b''), (b'', b'', b'')], + [(b'12', b'3', b'45'), (b'', b'M', b'ixedCase')], + [(b'12', b'3', b' \t 345 \0 '), (b'UPPER', b'', b'')]] + assert_(issubclass(P.dtype.type, np.bytes_)) + assert_array_equal(P, tgt) + + def test_replace(self): + R = self.A.replace([b'3', b'a'], + [b'##########', b'@']) + tgt = [[b' abc ', b''], + [b'12##########45', b'MixedC@se'], + [b'12########## \t ##########45 \x00 ', b'UPPER']] + assert_(issubclass(R.dtype.type, np.bytes_)) + assert_array_equal(R, tgt) + # Test special cases that should just return the input array, + # since replacements are not possible or do nothing. + S1 = self.A.replace(b'A very long byte string, longer than A', b'') + assert_array_equal(S1, self.A) + S2 = self.A.replace(b'', b'') + assert_array_equal(S2, self.A) + S3 = self.A.replace(b'3', b'3') + assert_array_equal(S3, self.A) + S4 = self.A.replace(b'3', b'', count=0) + assert_array_equal(S4, self.A) + + def test_replace_count_and_size(self): + a = np.array(['0123456789' * i for i in range(4)] + ).view(np.char.chararray) + r1 = a.replace('5', 'ABCDE') + assert r1.dtype.itemsize == (3*10 + 3*4) * 4 + assert_array_equal(r1, np.array(['01234ABCDE6789' * i + for i in range(4)])) + r2 = a.replace('5', 'ABCDE', count=1) + assert r2.dtype.itemsize == (3*10 + 4) * 4 + r3 = a.replace('5', 'ABCDE', count=0) + assert r3.dtype.itemsize == a.dtype.itemsize + assert_array_equal(r3, a) + # Negative values mean to replace all. + r4 = a.replace('5', 'ABCDE', count=-1) + assert r4.dtype.itemsize == (3*10 + 3*4) * 4 + assert_array_equal(r4, r1) + # We can do count on an element-by-element basis. + r5 = a.replace('5', 'ABCDE', count=[-1, -1, -1, 1]) + assert r5.dtype.itemsize == (3*10 + 4) * 4 + assert_array_equal(r5, np.array( + ['01234ABCDE6789' * i for i in range(3)] + + ['01234ABCDE6789' + '0123456789' * 2])) + + def test_replace_broadcasting(self): + a = np.array('0,0,0').view(np.char.chararray) + r1 = a.replace('0', '1', count=np.arange(3)) + assert r1.dtype == a.dtype + assert_array_equal(r1, np.array(['0,0,0', '1,0,0', '1,1,0'])) + r2 = a.replace('0', [['1'], ['2']], count=np.arange(1, 4)) + assert_array_equal(r2, np.array([['1,0,0', '1,1,0', '1,1,1'], + ['2,0,0', '2,2,0', '2,2,2']])) + r3 = a.replace(['0', '0,0', '0,0,0'], 'X') + assert_array_equal(r3, np.array(['X,X,X', 'X,0', 'X'])) + + def test_rjust(self): + assert_(issubclass(self.A.rjust(10).dtype.type, np.bytes_)) + + C = self.A.rjust([10, 20]) + assert_array_equal(np.char.str_len(C), [[10, 20], [10, 20], [12, 20]]) + + C = self.A.rjust(20, b'#') + assert_(np.all(C.startswith(b'#'))) + assert_array_equal(C.endswith(b'#'), + [[False, True], [False, False], [False, False]]) + + C = np.char.rjust(b'FOO', [[10, 20], [15, 8]]) + tgt = [[b' FOO', b' FOO'], + [b' FOO', b' FOO']] + assert_(issubclass(C.dtype.type, np.bytes_)) + assert_array_equal(C, tgt) + + def test_rpartition(self): + P = self.A.rpartition([b'3', b'M']) + tgt = [[(b'', b'', b' abc '), (b'', b'', b'')], + [(b'12', b'3', b'45'), (b'', b'M', b'ixedCase')], + [(b'123 \t ', b'3', b'45 \0 '), (b'', b'', b'UPPER')]] + assert_(issubclass(P.dtype.type, np.bytes_)) + assert_array_equal(P, tgt) + + def test_rsplit(self): + A = self.A.rsplit(b'3') + tgt = [[[b' abc '], [b'']], + [[b'12', b'45'], [b'MixedCase']], + [[b'12', b' \t ', b'45 \x00 '], [b'UPPER']]] + assert_(issubclass(A.dtype.type, np.object_)) + assert_equal(A.tolist(), tgt) + + def test_rstrip(self): + assert_(issubclass(self.A.rstrip().dtype.type, np.bytes_)) + + tgt = [[b' abc', b''], + [b'12345', b'MixedCase'], + [b'123 \t 345', b'UPPER']] + assert_array_equal(self.A.rstrip(), tgt) + + tgt = [[b' abc ', b''], + [b'1234', b'MixedCase'], + [b'123 \t 345 \x00', b'UPP'] + ] + assert_array_equal(self.A.rstrip([b'5', b'ER']), tgt) + + tgt = [[' \u03a3', ''], + ['12345', 'MixedCase'], + ['123 \t 345', 'UPPER']] + assert_(issubclass(self.B.rstrip().dtype.type, np.str_)) + assert_array_equal(self.B.rstrip(), tgt) + + def test_strip(self): + tgt = [[b'abc', b''], + [b'12345', b'MixedCase'], + [b'123 \t 345', b'UPPER']] + assert_(issubclass(self.A.strip().dtype.type, np.bytes_)) + assert_array_equal(self.A.strip(), tgt) + + tgt = [[b' abc ', b''], + [b'234', b'ixedCas'], + [b'23 \t 345 \x00', b'UPP']] + assert_array_equal(self.A.strip([b'15', b'EReM']), tgt) + + tgt = [['\u03a3', ''], + ['12345', 'MixedCase'], + ['123 \t 345', 'UPPER']] + assert_(issubclass(self.B.strip().dtype.type, np.str_)) + assert_array_equal(self.B.strip(), tgt) + + def test_split(self): + A = self.A.split(b'3') + tgt = [ + [[b' abc '], [b'']], + [[b'12', b'45'], [b'MixedCase']], + [[b'12', b' \t ', b'45 \x00 '], [b'UPPER']]] + assert_(issubclass(A.dtype.type, np.object_)) + assert_equal(A.tolist(), tgt) + + def test_splitlines(self): + A = np.char.array(['abc\nfds\nwer']).splitlines() + assert_(issubclass(A.dtype.type, np.object_)) + assert_(A.shape == (1,)) + assert_(len(A[0]) == 3) + + def test_swapcase(self): + tgt = [[b' ABC ', b''], + [b'12345', b'mIXEDcASE'], + [b'123 \t 345 \0 ', b'upper']] + assert_(issubclass(self.A.swapcase().dtype.type, np.bytes_)) + assert_array_equal(self.A.swapcase(), tgt) + + tgt = [[' \u03c3 ', ''], + ['12345', 'mIXEDcASE'], + ['123 \t 345 \0 ', 'upper']] + assert_(issubclass(self.B.swapcase().dtype.type, np.str_)) + assert_array_equal(self.B.swapcase(), tgt) + + def test_title(self): + tgt = [[b' Abc ', b''], + [b'12345', b'Mixedcase'], + [b'123 \t 345 \0 ', b'Upper']] + assert_(issubclass(self.A.title().dtype.type, np.bytes_)) + assert_array_equal(self.A.title(), tgt) + + tgt = [[' \u03a3 ', ''], + ['12345', 'Mixedcase'], + ['123 \t 345 \0 ', 'Upper']] + assert_(issubclass(self.B.title().dtype.type, np.str_)) + assert_array_equal(self.B.title(), tgt) + + def test_upper(self): + tgt = [[b' ABC ', b''], + [b'12345', b'MIXEDCASE'], + [b'123 \t 345 \0 ', b'UPPER']] + assert_(issubclass(self.A.upper().dtype.type, np.bytes_)) + assert_array_equal(self.A.upper(), tgt) + + tgt = [[' \u03a3 ', ''], + ['12345', 'MIXEDCASE'], + ['123 \t 345 \0 ', 'UPPER']] + assert_(issubclass(self.B.upper().dtype.type, np.str_)) + assert_array_equal(self.B.upper(), tgt) + + def test_isnumeric(self): + + def fail(): + self.A.isnumeric() + + assert_raises(TypeError, fail) + assert_(issubclass(self.B.isnumeric().dtype.type, np.bool)) + assert_array_equal(self.B.isnumeric(), [ + [False, False], [True, False], [False, False]]) + + def test_isdecimal(self): + + def fail(): + self.A.isdecimal() + + assert_raises(TypeError, fail) + assert_(issubclass(self.B.isdecimal().dtype.type, np.bool)) + assert_array_equal(self.B.isdecimal(), [ + [False, False], [True, False], [False, False]]) + + +class TestOperations: + def setup_method(self): + self.A = np.array([['abc', '123'], + ['789', 'xyz']]).view(np.char.chararray) + self.B = np.array([['efg', '456'], + ['051', 'tuv']]).view(np.char.chararray) + + def test_add(self): + AB = np.array([['abcefg', '123456'], + ['789051', 'xyztuv']]).view(np.char.chararray) + assert_array_equal(AB, (self.A + self.B)) + assert_(len((self.A + self.B)[0][0]) == 6) + + def test_radd(self): + QA = np.array([['qabc', 'q123'], + ['q789', 'qxyz']]).view(np.char.chararray) + assert_array_equal(QA, ('q' + self.A)) + + def test_mul(self): + A = self.A + for r in (2, 3, 5, 7, 197): + Ar = np.array([[A[0, 0]*r, A[0, 1]*r], + [A[1, 0]*r, A[1, 1]*r]]).view(np.char.chararray) + + assert_array_equal(Ar, (self.A * r)) + + for ob in [object(), 'qrs']: + with assert_raises_regex(ValueError, + 'Can only multiply by integers'): + A*ob + + def test_rmul(self): + A = self.A + for r in (2, 3, 5, 7, 197): + Ar = np.array([[A[0, 0]*r, A[0, 1]*r], + [A[1, 0]*r, A[1, 1]*r]]).view(np.char.chararray) + assert_array_equal(Ar, (r * self.A)) + + for ob in [object(), 'qrs']: + with assert_raises_regex(ValueError, + 'Can only multiply by integers'): + ob * A + + def test_mod(self): + """Ticket #856""" + F = np.array([['%d', '%f'], ['%s', '%r']]).view(np.char.chararray) + C = np.array([[3, 7], [19, 1]], dtype=np.int64) + FC = np.array([['3', '7.000000'], + ['19', 'np.int64(1)']]).view(np.char.chararray) + assert_array_equal(FC, F % C) + + A = np.array([['%.3f', '%d'], ['%s', '%r']]).view(np.char.chararray) + A1 = np.array([['1.000', '1'], + ['1', repr(np.array(1)[()])]]).view(np.char.chararray) + assert_array_equal(A1, (A % 1)) + + A2 = np.array([['1.000', '2'], + ['3', repr(np.array(4)[()])]]).view(np.char.chararray) + assert_array_equal(A2, (A % [[1, 2], [3, 4]])) + + def test_rmod(self): + assert_(("%s" % self.A) == str(self.A)) + assert_(("%r" % self.A) == repr(self.A)) + + for ob in [42, object()]: + with assert_raises_regex( + TypeError, "unsupported operand type.* and 'chararray'"): + ob % self.A + + def test_slice(self): + """Regression test for https://github.com/numpy/numpy/issues/5982""" + + arr = np.array([['abc ', 'def '], ['geh ', 'ijk ']], + dtype='S4').view(np.char.chararray) + sl1 = arr[:] + assert_array_equal(sl1, arr) + assert_(sl1.base is arr) + assert_(sl1.base.base is arr.base) + + sl2 = arr[:, :] + assert_array_equal(sl2, arr) + assert_(sl2.base is arr) + assert_(sl2.base.base is arr.base) + + assert_(arr[0, 0] == b'abc') + + @pytest.mark.parametrize('data', [['plate', ' ', 'shrimp'], + [b'retro', b' ', b'encabulator']]) + def test_getitem_length_zero_item(self, data): + # Regression test for gh-26375. + a = np.char.array(data) + # a.dtype.type() will be an empty string or bytes instance. + # The equality test will fail if a[1] has the wrong type + # or does not have length 0. + assert_equal(a[1], a.dtype.type()) + + +class TestMethodsEmptyArray: + def setup_method(self): + self.U = np.array([], dtype='U') + self.S = np.array([], dtype='S') + + def test_encode(self): + res = np.char.encode(self.U) + assert_array_equal(res, []) + assert_(res.dtype.char == 'S') + + def test_decode(self): + res = np.char.decode(self.S) + assert_array_equal(res, []) + assert_(res.dtype.char == 'U') + + def test_decode_with_reshape(self): + res = np.char.decode(self.S.reshape((1, 0, 1))) + assert_(res.shape == (1, 0, 1)) + + +class TestMethodsScalarValues: + def test_mod(self): + A = np.array([[' abc ', ''], + ['12345', 'MixedCase'], + ['123 \t 345 \0 ', 'UPPER']], dtype='S') + tgt = [[b'123 abc ', b'123'], + [b'12312345', b'123MixedCase'], + [b'123123 \t 345 \0 ', b'123UPPER']] + assert_array_equal(np.char.mod(b"123%s", A), tgt) + + def test_decode(self): + bytestring = b'\x81\xc1\x81\xc1\x81\xc1' + assert_equal(np.char.decode(bytestring, encoding='cp037'), + 'aAaAaA') + + def test_encode(self): + unicode = 'aAaAaA' + assert_equal(np.char.encode(unicode, encoding='cp037'), + b'\x81\xc1\x81\xc1\x81\xc1') + + def test_expandtabs(self): + s = "\tone level of indentation\n\t\ttwo levels of indentation" + assert_equal( + np.char.expandtabs(s, tabsize=2), + " one level of indentation\n two levels of indentation" + ) + + def test_join(self): + seps = np.array(['-', '_']) + assert_array_equal(np.char.join(seps, 'hello'), + ['h-e-l-l-o', 'h_e_l_l_o']) + + def test_partition(self): + assert_equal(np.char.partition('This string', ' '), + ['This', ' ', 'string']) + + def test_rpartition(self): + assert_equal(np.char.rpartition('This string here', ' '), + ['This string', ' ', 'here']) + + def test_replace(self): + assert_equal(np.char.replace('Python is good', 'good', 'great'), + 'Python is great') + + +def test_empty_indexing(): + """Regression test for ticket 1948.""" + # Check that indexing a chararray with an empty list/array returns an + # empty chararray instead of a chararray with a single empty string in it. + s = np.char.chararray((4,)) + assert_(s[[]].size == 0) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_deprecations.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_deprecations.py new file mode 100644 index 0000000000000000000000000000000000000000..f0ac55fc5c6f95447b80984f68defb01b9199940 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_deprecations.py @@ -0,0 +1,745 @@ +""" +Tests related to deprecation warnings. Also a convenient place +to document how deprecations should eventually be turned into errors. + +""" +import warnings +import pytest +import tempfile +import re + +import numpy as np +from numpy.testing import ( + assert_raises, assert_warns, assert_, assert_array_equal, SkipTest, + KnownFailureException, break_cycles, temppath + ) + +from numpy._core._multiarray_tests import fromstring_null_term_c_api +import numpy._core._struct_ufunc_tests as struct_ufunc + +try: + import pytz + _has_pytz = True +except ImportError: + _has_pytz = False + + +class _DeprecationTestCase: + # Just as warning: warnings uses re.match, so the start of this message + # must match. + message = '' + warning_cls = DeprecationWarning + + def setup_method(self): + self.warn_ctx = warnings.catch_warnings(record=True) + self.log = self.warn_ctx.__enter__() + + # Do *not* ignore other DeprecationWarnings. Ignoring warnings + # can give very confusing results because of + # https://bugs.python.org/issue4180 and it is probably simplest to + # try to keep the tests cleanly giving only the right warning type. + # (While checking them set to "error" those are ignored anyway) + # We still have them show up, because otherwise they would be raised + warnings.filterwarnings("always", category=self.warning_cls) + warnings.filterwarnings("always", message=self.message, + category=self.warning_cls) + + def teardown_method(self): + self.warn_ctx.__exit__() + + def assert_deprecated(self, function, num=1, ignore_others=False, + function_fails=False, + exceptions=np._NoValue, + args=(), kwargs={}): + """Test if DeprecationWarnings are given and raised. + + This first checks if the function when called gives `num` + DeprecationWarnings, after that it tries to raise these + DeprecationWarnings and compares them with `exceptions`. + The exceptions can be different for cases where this code path + is simply not anticipated and the exception is replaced. + + Parameters + ---------- + function : callable + The function to test + num : int + Number of DeprecationWarnings to expect. This should normally be 1. + ignore_others : bool + Whether warnings of the wrong type should be ignored (note that + the message is not checked) + function_fails : bool + If the function would normally fail, setting this will check for + warnings inside a try/except block. + exceptions : Exception or tuple of Exceptions + Exception to expect when turning the warnings into an error. + The default checks for DeprecationWarnings. If exceptions is + empty the function is expected to run successfully. + args : tuple + Arguments for `function` + kwargs : dict + Keyword arguments for `function` + """ + __tracebackhide__ = True # Hide traceback for py.test + + # reset the log + self.log[:] = [] + + if exceptions is np._NoValue: + exceptions = (self.warning_cls,) + + try: + function(*args, **kwargs) + except (Exception if function_fails else tuple()): + pass + + # just in case, clear the registry + num_found = 0 + for warning in self.log: + if warning.category is self.warning_cls: + num_found += 1 + elif not ignore_others: + raise AssertionError( + "expected %s but got: %s" % + (self.warning_cls.__name__, warning.category)) + if num is not None and num_found != num: + msg = "%i warnings found but %i expected." % (len(self.log), num) + lst = [str(w) for w in self.log] + raise AssertionError("\n".join([msg] + lst)) + + with warnings.catch_warnings(): + warnings.filterwarnings("error", message=self.message, + category=self.warning_cls) + try: + function(*args, **kwargs) + if exceptions != tuple(): + raise AssertionError( + "No error raised during function call") + except exceptions: + if exceptions == tuple(): + raise AssertionError( + "Error raised during function call") + + def assert_not_deprecated(self, function, args=(), kwargs={}): + """Test that warnings are not raised. + + This is just a shorthand for: + + self.assert_deprecated(function, num=0, ignore_others=True, + exceptions=tuple(), args=args, kwargs=kwargs) + """ + self.assert_deprecated(function, num=0, ignore_others=True, + exceptions=tuple(), args=args, kwargs=kwargs) + + +class _VisibleDeprecationTestCase(_DeprecationTestCase): + warning_cls = np.exceptions.VisibleDeprecationWarning + + +class TestDTypeAttributeIsDTypeDeprecation(_DeprecationTestCase): + # Deprecated 2021-01-05, NumPy 1.21 + message = r".*`.dtype` attribute" + + def test_deprecation_dtype_attribute_is_dtype(self): + class dt: + dtype = "f8" + + class vdt(np.void): + dtype = "f,f" + + self.assert_deprecated(lambda: np.dtype(dt)) + self.assert_deprecated(lambda: np.dtype(dt())) + self.assert_deprecated(lambda: np.dtype(vdt)) + self.assert_deprecated(lambda: np.dtype(vdt(1))) + + +class TestTestDeprecated: + def test_assert_deprecated(self): + test_case_instance = _DeprecationTestCase() + test_case_instance.setup_method() + assert_raises(AssertionError, + test_case_instance.assert_deprecated, + lambda: None) + + def foo(): + warnings.warn("foo", category=DeprecationWarning, stacklevel=2) + + test_case_instance.assert_deprecated(foo) + test_case_instance.teardown_method() + + +class TestNonNumericConjugate(_DeprecationTestCase): + """ + Deprecate no-op behavior of ndarray.conjugate on non-numeric dtypes, + which conflicts with the error behavior of np.conjugate. + """ + def test_conjugate(self): + for a in np.array(5), np.array(5j): + self.assert_not_deprecated(a.conjugate) + for a in (np.array('s'), np.array('2016', 'M'), + np.array((1, 2), [('a', int), ('b', int)])): + self.assert_deprecated(a.conjugate) + + +class TestDatetimeEvent(_DeprecationTestCase): + # 2017-08-11, 1.14.0 + def test_3_tuple(self): + for cls in (np.datetime64, np.timedelta64): + # two valid uses - (unit, num) and (unit, num, den, None) + self.assert_not_deprecated(cls, args=(1, ('ms', 2))) + self.assert_not_deprecated(cls, args=(1, ('ms', 2, 1, None))) + + # trying to use the event argument, removed in 1.7.0, is deprecated + # it used to be a uint8 + self.assert_deprecated(cls, args=(1, ('ms', 2, 'event'))) + self.assert_deprecated(cls, args=(1, ('ms', 2, 63))) + self.assert_deprecated(cls, args=(1, ('ms', 2, 1, 'event'))) + self.assert_deprecated(cls, args=(1, ('ms', 2, 1, 63))) + + +class TestBincount(_DeprecationTestCase): + # 2017-06-01, 1.14.0 + def test_bincount_minlength(self): + self.assert_deprecated(lambda: np.bincount([1, 2, 3], minlength=None)) + + # 2024-07-29, 2.1.0 + @pytest.mark.parametrize('badlist', [[0.5, 1.2, 1.5], + ['0', '1', '1']]) + def test_bincount_bad_list(self, badlist): + self.assert_deprecated(lambda: np.bincount(badlist)) + + +class TestGeneratorSum(_DeprecationTestCase): + # 2018-02-25, 1.15.0 + def test_generator_sum(self): + self.assert_deprecated(np.sum, args=((i for i in range(5)),)) + + +class TestFromstring(_DeprecationTestCase): + # 2017-10-19, 1.14 + def test_fromstring(self): + self.assert_deprecated(np.fromstring, args=('\x00'*80,)) + + +class TestFromStringAndFileInvalidData(_DeprecationTestCase): + # 2019-06-08, 1.17.0 + # Tests should be moved to real tests when deprecation is done. + message = "string or file could not be read to its end" + + @pytest.mark.parametrize("invalid_str", [",invalid_data", "invalid_sep"]) + def test_deprecate_unparsable_data_file(self, invalid_str): + x = np.array([1.51, 2, 3.51, 4], dtype=float) + + with tempfile.TemporaryFile(mode="w") as f: + x.tofile(f, sep=',', format='%.2f') + f.write(invalid_str) + + f.seek(0) + self.assert_deprecated(lambda: np.fromfile(f, sep=",")) + f.seek(0) + self.assert_deprecated(lambda: np.fromfile(f, sep=",", count=5)) + # Should not raise: + with warnings.catch_warnings(): + warnings.simplefilter("error", DeprecationWarning) + f.seek(0) + res = np.fromfile(f, sep=",", count=4) + assert_array_equal(res, x) + + @pytest.mark.parametrize("invalid_str", [",invalid_data", "invalid_sep"]) + def test_deprecate_unparsable_string(self, invalid_str): + x = np.array([1.51, 2, 3.51, 4], dtype=float) + x_str = "1.51,2,3.51,4{}".format(invalid_str) + + self.assert_deprecated(lambda: np.fromstring(x_str, sep=",")) + self.assert_deprecated(lambda: np.fromstring(x_str, sep=",", count=5)) + + # The C-level API can use not fixed size, but 0 terminated strings, + # so test that as well: + bytestr = x_str.encode("ascii") + self.assert_deprecated(lambda: fromstring_null_term_c_api(bytestr)) + + with assert_warns(DeprecationWarning): + # this is slightly strange, in that fromstring leaves data + # potentially uninitialized (would be good to error when all is + # read, but count is larger then actual data maybe). + res = np.fromstring(x_str, sep=",", count=5) + assert_array_equal(res[:-1], x) + + with warnings.catch_warnings(): + warnings.simplefilter("error", DeprecationWarning) + + # Should not raise: + res = np.fromstring(x_str, sep=",", count=4) + assert_array_equal(res, x) + + +class TestToString(_DeprecationTestCase): + # 2020-03-06 1.19.0 + message = re.escape("tostring() is deprecated. Use tobytes() instead.") + + def test_tostring(self): + arr = np.array(list(b"test\xFF"), dtype=np.uint8) + self.assert_deprecated(arr.tostring) + + def test_tostring_matches_tobytes(self): + arr = np.array(list(b"test\xFF"), dtype=np.uint8) + b = arr.tobytes() + with assert_warns(DeprecationWarning): + s = arr.tostring() + assert s == b + + +class TestDTypeCoercion(_DeprecationTestCase): + # 2020-02-06 1.19.0 + message = "Converting .* to a dtype .*is deprecated" + deprecated_types = [ + # The builtin scalar super types: + np.generic, np.flexible, np.number, + np.inexact, np.floating, np.complexfloating, + np.integer, np.unsignedinteger, np.signedinteger, + # character is a deprecated S1 special case: + np.character, + ] + + def test_dtype_coercion(self): + for scalar_type in self.deprecated_types: + self.assert_deprecated(np.dtype, args=(scalar_type,)) + + def test_array_construction(self): + for scalar_type in self.deprecated_types: + self.assert_deprecated(np.array, args=([], scalar_type,)) + + def test_not_deprecated(self): + # All specific types are not deprecated: + for group in np._core.sctypes.values(): + for scalar_type in group: + self.assert_not_deprecated(np.dtype, args=(scalar_type,)) + + for scalar_type in [type, dict, list, tuple]: + # Typical python types are coerced to object currently: + self.assert_not_deprecated(np.dtype, args=(scalar_type,)) + + +class BuiltInRoundComplexDType(_DeprecationTestCase): + # 2020-03-31 1.19.0 + deprecated_types = [np.csingle, np.cdouble, np.clongdouble] + not_deprecated_types = [ + np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64, + np.float16, np.float32, np.float64, + ] + + def test_deprecated(self): + for scalar_type in self.deprecated_types: + scalar = scalar_type(0) + self.assert_deprecated(round, args=(scalar,)) + self.assert_deprecated(round, args=(scalar, 0)) + self.assert_deprecated(round, args=(scalar,), kwargs={'ndigits': 0}) + + def test_not_deprecated(self): + for scalar_type in self.not_deprecated_types: + scalar = scalar_type(0) + self.assert_not_deprecated(round, args=(scalar,)) + self.assert_not_deprecated(round, args=(scalar, 0)) + self.assert_not_deprecated(round, args=(scalar,), kwargs={'ndigits': 0}) + + +class TestIncorrectAdvancedIndexWithEmptyResult(_DeprecationTestCase): + # 2020-05-27, NumPy 1.20.0 + message = "Out of bound index found. This was previously ignored.*" + + @pytest.mark.parametrize("index", [([3, 0],), ([0, 0], [3, 0])]) + def test_empty_subspace(self, index): + # Test for both a single and two/multiple advanced indices. These + # This will raise an IndexError in the future. + arr = np.ones((2, 2, 0)) + self.assert_deprecated(arr.__getitem__, args=(index,)) + self.assert_deprecated(arr.__setitem__, args=(index, 0.)) + + # for this array, the subspace is only empty after applying the slice + arr2 = np.ones((2, 2, 1)) + index2 = (slice(0, 0),) + index + self.assert_deprecated(arr2.__getitem__, args=(index2,)) + self.assert_deprecated(arr2.__setitem__, args=(index2, 0.)) + + def test_empty_index_broadcast_not_deprecated(self): + arr = np.ones((2, 2, 2)) + + index = ([[3], [2]], []) # broadcast to an empty result. + self.assert_not_deprecated(arr.__getitem__, args=(index,)) + self.assert_not_deprecated(arr.__setitem__, + args=(index, np.empty((2, 0, 2)))) + + +class TestNonExactMatchDeprecation(_DeprecationTestCase): + # 2020-04-22 + def test_non_exact_match(self): + arr = np.array([[3, 6, 6], [4, 5, 1]]) + # misspelt mode check + self.assert_deprecated(lambda: np.ravel_multi_index(arr, (7, 6), mode='Cilp')) + # using completely different word with first character as R + self.assert_deprecated(lambda: np.searchsorted(arr[0], 4, side='Random')) + + +class TestMatrixInOuter(_DeprecationTestCase): + # 2020-05-13 NumPy 1.20.0 + message = (r"add.outer\(\) was passed a numpy matrix as " + r"(first|second) argument.") + + def test_deprecated(self): + arr = np.array([1, 2, 3]) + m = np.array([1, 2, 3]).view(np.matrix) + self.assert_deprecated(np.add.outer, args=(m, m), num=2) + self.assert_deprecated(np.add.outer, args=(arr, m)) + self.assert_deprecated(np.add.outer, args=(m, arr)) + self.assert_not_deprecated(np.add.outer, args=(arr, arr)) + + +class FlatteningConcatenateUnsafeCast(_DeprecationTestCase): + # NumPy 1.20, 2020-09-03 + message = "concatenate with `axis=None` will use same-kind casting" + + def test_deprecated(self): + self.assert_deprecated(np.concatenate, + args=(([0.], [1.]),), + kwargs=dict(axis=None, out=np.empty(2, dtype=np.int64))) + + def test_not_deprecated(self): + self.assert_not_deprecated(np.concatenate, + args=(([0.], [1.]),), + kwargs={'axis': None, 'out': np.empty(2, dtype=np.int64), + 'casting': "unsafe"}) + + with assert_raises(TypeError): + # Tests should notice if the deprecation warning is given first... + np.concatenate(([0.], [1.]), out=np.empty(2, dtype=np.int64), + casting="same_kind") + + +class TestDeprecatedUnpickleObjectScalar(_DeprecationTestCase): + # Deprecated 2020-11-24, NumPy 1.20 + """ + Technically, it should be impossible to create numpy object scalars, + but there was an unpickle path that would in theory allow it. That + path is invalid and must lead to the warning. + """ + message = "Unpickling a scalar with object dtype is deprecated." + + def test_deprecated(self): + ctor = np._core.multiarray.scalar + self.assert_deprecated(lambda: ctor(np.dtype("O"), 1)) + + +class TestSingleElementSignature(_DeprecationTestCase): + # Deprecated 2021-04-01, NumPy 1.21 + message = r"The use of a length 1" + + def test_deprecated(self): + self.assert_deprecated(lambda: np.add(1, 2, signature="d")) + self.assert_deprecated(lambda: np.add(1, 2, sig=(np.dtype("l"),))) + + +class TestCtypesGetter(_DeprecationTestCase): + # Deprecated 2021-05-18, Numpy 1.21.0 + warning_cls = DeprecationWarning + ctypes = np.array([1]).ctypes + + @pytest.mark.parametrize( + "name", ["get_data", "get_shape", "get_strides", "get_as_parameter"] + ) + def test_deprecated(self, name: str) -> None: + func = getattr(self.ctypes, name) + self.assert_deprecated(lambda: func()) + + @pytest.mark.parametrize( + "name", ["data", "shape", "strides", "_as_parameter_"] + ) + def test_not_deprecated(self, name: str) -> None: + self.assert_not_deprecated(lambda: getattr(self.ctypes, name)) + + +PARTITION_DICT = { + "partition method": np.arange(10).partition, + "argpartition method": np.arange(10).argpartition, + "partition function": lambda kth: np.partition(np.arange(10), kth), + "argpartition function": lambda kth: np.argpartition(np.arange(10), kth), +} + + +@pytest.mark.parametrize("func", PARTITION_DICT.values(), ids=PARTITION_DICT) +class TestPartitionBoolIndex(_DeprecationTestCase): + # Deprecated 2021-09-29, NumPy 1.22 + warning_cls = DeprecationWarning + message = "Passing booleans as partition index is deprecated" + + def test_deprecated(self, func): + self.assert_deprecated(lambda: func(True)) + self.assert_deprecated(lambda: func([False, True])) + + def test_not_deprecated(self, func): + self.assert_not_deprecated(lambda: func(1)) + self.assert_not_deprecated(lambda: func([0, 1])) + + +class TestMachAr(_DeprecationTestCase): + # Deprecated 2022-11-22, NumPy 1.25 + warning_cls = DeprecationWarning + + def test_deprecated_module(self): + self.assert_deprecated(lambda: np._core.MachAr) + + +class TestQuantileInterpolationDeprecation(_DeprecationTestCase): + # Deprecated 2021-11-08, NumPy 1.22 + @pytest.mark.parametrize("func", + [np.percentile, np.quantile, np.nanpercentile, np.nanquantile]) + def test_deprecated(self, func): + self.assert_deprecated( + lambda: func([0., 1.], 0., interpolation="linear")) + self.assert_deprecated( + lambda: func([0., 1.], 0., interpolation="nearest")) + + @pytest.mark.parametrize("func", + [np.percentile, np.quantile, np.nanpercentile, np.nanquantile]) + def test_both_passed(self, func): + with warnings.catch_warnings(): + # catch the DeprecationWarning so that it does not raise: + warnings.simplefilter("always", DeprecationWarning) + with pytest.raises(TypeError): + func([0., 1.], 0., interpolation="nearest", method="nearest") + + +class TestArrayFinalizeNone(_DeprecationTestCase): + message = "Setting __array_finalize__ = None" + + def test_use_none_is_deprecated(self): + # Deprecated way that ndarray itself showed nothing needs finalizing. + class NoFinalize(np.ndarray): + __array_finalize__ = None + + self.assert_deprecated(lambda: np.array(1).view(NoFinalize)) + + +class TestLoadtxtParseIntsViaFloat(_DeprecationTestCase): + # Deprecated 2022-07-03, NumPy 1.23 + # This test can be removed without replacement after the deprecation. + # The tests: + # * numpy/lib/tests/test_loadtxt.py::test_integer_signs + # * lib/tests/test_loadtxt.py::test_implicit_cast_float_to_int_fails + # Have a warning filter that needs to be removed. + message = r"loadtxt\(\): Parsing an integer via a float is deprecated.*" + + @pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) + def test_deprecated_warning(self, dtype): + with pytest.warns(DeprecationWarning, match=self.message): + np.loadtxt(["10.5"], dtype=dtype) + + @pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) + def test_deprecated_raised(self, dtype): + # The DeprecationWarning is chained when raised, so test manually: + with warnings.catch_warnings(): + warnings.simplefilter("error", DeprecationWarning) + try: + np.loadtxt(["10.5"], dtype=dtype) + except ValueError as e: + assert isinstance(e.__cause__, DeprecationWarning) + + +class TestScalarConversion(_DeprecationTestCase): + # 2023-01-02, 1.25.0 + def test_float_conversion(self): + self.assert_deprecated(float, args=(np.array([3.14]),)) + + def test_behaviour(self): + b = np.array([[3.14]]) + c = np.zeros(5) + with pytest.warns(DeprecationWarning): + c[0] = b + + +class TestPyIntConversion(_DeprecationTestCase): + message = r".*stop allowing conversion of out-of-bound.*" + + @pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) + def test_deprecated_scalar(self, dtype): + dtype = np.dtype(dtype) + info = np.iinfo(dtype) + + # Cover the most common creation paths (all end up in the + # same place): + def scalar(value, dtype): + dtype.type(value) + + def assign(value, dtype): + arr = np.array([0, 0, 0], dtype=dtype) + arr[2] = value + + def create(value, dtype): + np.array([value], dtype=dtype) + + for creation_func in [scalar, assign, create]: + try: + self.assert_deprecated( + lambda: creation_func(info.min - 1, dtype)) + except OverflowError: + pass # OverflowErrors always happened also before and are OK. + + try: + self.assert_deprecated( + lambda: creation_func(info.max + 1, dtype)) + except OverflowError: + pass # OverflowErrors always happened also before and are OK. + + +@pytest.mark.parametrize("name", ["str", "bytes", "object"]) +def test_future_scalar_attributes(name): + # FutureWarning added 2022-11-17, NumPy 1.24, + assert name not in dir(np) # we may want to not add them + with pytest.warns(FutureWarning, + match=f"In the future .*{name}"): + assert not hasattr(np, name) + + # Unfortunately, they are currently still valid via `np.dtype()` + np.dtype(name) + name in np._core.sctypeDict + + +# Ignore the above future attribute warning for this test. +@pytest.mark.filterwarnings("ignore:In the future:FutureWarning") +class TestRemovedGlobals: + # Removed 2023-01-12, NumPy 1.24.0 + # Not a deprecation, but the large error was added to aid those who missed + # the previous deprecation, and should be removed similarly to one + # (or faster). + @pytest.mark.parametrize("name", + ["object", "float", "complex", "str", "int"]) + def test_attributeerror_includes_info(self, name): + msg = f".*\n`np.{name}` was a deprecated alias for the builtin" + with pytest.raises(AttributeError, match=msg): + getattr(np, name) + + +class TestDeprecatedFinfo(_DeprecationTestCase): + # Deprecated in NumPy 1.25, 2023-01-16 + def test_deprecated_none(self): + self.assert_deprecated(np.finfo, args=(None,)) + + +class TestMathAlias(_DeprecationTestCase): + def test_deprecated_np_lib_math(self): + self.assert_deprecated(lambda: np.lib.math) + + +class TestLibImports(_DeprecationTestCase): + # Deprecated in Numpy 1.26.0, 2023-09 + def test_lib_functions_deprecation_call(self): + from numpy.lib._utils_impl import safe_eval + from numpy.lib._npyio_impl import recfromcsv, recfromtxt + from numpy.lib._function_base_impl import disp + from numpy.lib._shape_base_impl import get_array_wrap + from numpy._core.numerictypes import maximum_sctype + from numpy.lib.tests.test_io import TextIO + from numpy import in1d, row_stack, trapz + + self.assert_deprecated(lambda: safe_eval("None")) + + data_gen = lambda: TextIO('A,B\n0,1\n2,3') + kwargs = dict(delimiter=",", missing_values="N/A", names=True) + self.assert_deprecated(lambda: recfromcsv(data_gen())) + self.assert_deprecated(lambda: recfromtxt(data_gen(), **kwargs)) + + self.assert_deprecated(lambda: disp("test")) + self.assert_deprecated(lambda: get_array_wrap()) + self.assert_deprecated(lambda: maximum_sctype(int)) + + self.assert_deprecated(lambda: in1d([1], [1])) + self.assert_deprecated(lambda: row_stack([[]])) + self.assert_deprecated(lambda: trapz([1], [1])) + self.assert_deprecated(lambda: np.chararray) + + +class TestDeprecatedDTypeAliases(_DeprecationTestCase): + + def _check_for_warning(self, func): + with warnings.catch_warnings(record=True) as caught_warnings: + func() + assert len(caught_warnings) == 1 + w = caught_warnings[0] + assert w.category is DeprecationWarning + assert "alias 'a' was deprecated in NumPy 2.0" in str(w.message) + + def test_a_dtype_alias(self): + for dtype in ["a", "a10"]: + f = lambda: np.dtype(dtype) + self._check_for_warning(f) + self.assert_deprecated(f) + f = lambda: np.array(["hello", "world"]).astype("a10") + self._check_for_warning(f) + self.assert_deprecated(f) + + +class TestDeprecatedArrayWrap(_DeprecationTestCase): + message = "__array_wrap__.*" + + def test_deprecated(self): + class Test1: + def __array__(self, dtype=None, copy=None): + return np.arange(4) + + def __array_wrap__(self, arr, context=None): + self.called = True + return 'pass context' + + class Test2(Test1): + def __array_wrap__(self, arr): + self.called = True + return 'pass' + + test1 = Test1() + test2 = Test2() + self.assert_deprecated(lambda: np.negative(test1)) + assert test1.called + self.assert_deprecated(lambda: np.negative(test2)) + assert test2.called + + + +class TestDeprecatedDTypeParenthesizedRepeatCount(_DeprecationTestCase): + message = "Passing in a parenthesized single number" + + @pytest.mark.parametrize("string", ["(2)i,", "(3)3S,", "f,(2)f"]) + def test_parenthesized_repeat_count(self, string): + self.assert_deprecated(np.dtype, args=(string,)) + + +class TestDeprecatedSaveFixImports(_DeprecationTestCase): + # Deprecated in Numpy 2.1, 2024-05 + message = "The 'fix_imports' flag is deprecated and has no effect." + + def test_deprecated(self): + with temppath(suffix='.npy') as path: + sample_args = (path, np.array(np.zeros((1024, 10)))) + self.assert_not_deprecated(np.save, args=sample_args) + self.assert_deprecated(np.save, args=sample_args, + kwargs={'fix_imports': True}) + self.assert_deprecated(np.save, args=sample_args, + kwargs={'fix_imports': False}) + for allow_pickle in [True, False]: + self.assert_not_deprecated(np.save, args=sample_args, + kwargs={'allow_pickle': allow_pickle}) + self.assert_deprecated(np.save, args=sample_args, + kwargs={'allow_pickle': allow_pickle, + 'fix_imports': True}) + self.assert_deprecated(np.save, args=sample_args, + kwargs={'allow_pickle': allow_pickle, + 'fix_imports': False}) + + +class TestAddNewdocUFunc(_DeprecationTestCase): + # Deprecated in Numpy 2.2, 2024-11 + def test_deprecated(self): + self.assert_deprecated( + lambda: np._core.umath._add_newdoc_ufunc( + struct_ufunc.add_triplet, "new docs" + ) + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dlpack.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dlpack.py new file mode 100644 index 0000000000000000000000000000000000000000..41dd7242958062a178507e41cd38859c182396db --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dlpack.py @@ -0,0 +1,189 @@ +import sys +import pytest + +import numpy as np +from numpy.testing import assert_array_equal, IS_PYPY + + +def new_and_old_dlpack(): + yield np.arange(5) + + class OldDLPack(np.ndarray): + # Support only the "old" version + def __dlpack__(self, stream=None): + return super().__dlpack__(stream=None) + + yield np.arange(5).view(OldDLPack) + + +class TestDLPack: + @pytest.mark.skipif(IS_PYPY, reason="PyPy can't get refcounts.") + @pytest.mark.parametrize("max_version", [(0, 0), None, (1, 0), (100, 3)]) + def test_dunder_dlpack_refcount(self, max_version): + x = np.arange(5) + y = x.__dlpack__(max_version=max_version) + assert sys.getrefcount(x) == 3 + del y + assert sys.getrefcount(x) == 2 + + def test_dunder_dlpack_stream(self): + x = np.arange(5) + x.__dlpack__(stream=None) + + with pytest.raises(RuntimeError): + x.__dlpack__(stream=1) + + def test_dunder_dlpack_copy(self): + # Checks the argument parsing of __dlpack__ explicitly. + # Honoring the flag is tested in the from_dlpack round-tripping test. + x = np.arange(5) + x.__dlpack__(copy=True) + x.__dlpack__(copy=None) + x.__dlpack__(copy=False) + + with pytest.raises(ValueError): + # NOTE: The copy converter should be stricter, but not just here. + x.__dlpack__(copy=np.array([1, 2, 3])) + + def test_strides_not_multiple_of_itemsize(self): + dt = np.dtype([('int', np.int32), ('char', np.int8)]) + y = np.zeros((5,), dtype=dt) + z = y['int'] + + with pytest.raises(BufferError): + np.from_dlpack(z) + + @pytest.mark.skipif(IS_PYPY, reason="PyPy can't get refcounts.") + @pytest.mark.parametrize("arr", new_and_old_dlpack()) + def test_from_dlpack_refcount(self, arr): + arr = arr.copy() + y = np.from_dlpack(arr) + assert sys.getrefcount(arr) == 3 + del y + assert sys.getrefcount(arr) == 2 + + @pytest.mark.parametrize("dtype", [ + np.bool, + np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64, + np.float16, np.float32, np.float64, + np.complex64, np.complex128 + ]) + @pytest.mark.parametrize("arr", new_and_old_dlpack()) + def test_dtype_passthrough(self, arr, dtype): + x = arr.astype(dtype) + y = np.from_dlpack(x) + + assert y.dtype == x.dtype + assert_array_equal(x, y) + + def test_invalid_dtype(self): + x = np.asarray(np.datetime64('2021-05-27')) + + with pytest.raises(BufferError): + np.from_dlpack(x) + + def test_invalid_byte_swapping(self): + dt = np.dtype('=i8').newbyteorder() + x = np.arange(5, dtype=dt) + + with pytest.raises(BufferError): + np.from_dlpack(x) + + def test_non_contiguous(self): + x = np.arange(25).reshape((5, 5)) + + y1 = x[0] + assert_array_equal(y1, np.from_dlpack(y1)) + + y2 = x[:, 0] + assert_array_equal(y2, np.from_dlpack(y2)) + + y3 = x[1, :] + assert_array_equal(y3, np.from_dlpack(y3)) + + y4 = x[1] + assert_array_equal(y4, np.from_dlpack(y4)) + + y5 = np.diagonal(x).copy() + assert_array_equal(y5, np.from_dlpack(y5)) + + @pytest.mark.parametrize("ndim", range(33)) + def test_higher_dims(self, ndim): + shape = (1,) * ndim + x = np.zeros(shape, dtype=np.float64) + + assert shape == np.from_dlpack(x).shape + + def test_dlpack_device(self): + x = np.arange(5) + assert x.__dlpack_device__() == (1, 0) + y = np.from_dlpack(x) + assert y.__dlpack_device__() == (1, 0) + z = y[::2] + assert z.__dlpack_device__() == (1, 0) + + def dlpack_deleter_exception(self, max_version): + x = np.arange(5) + _ = x.__dlpack__(max_version=max_version) + raise RuntimeError + + @pytest.mark.parametrize("max_version", [None, (1, 0)]) + def test_dlpack_destructor_exception(self, max_version): + with pytest.raises(RuntimeError): + self.dlpack_deleter_exception(max_version=max_version) + + def test_readonly(self): + x = np.arange(5) + x.flags.writeable = False + # Raises without max_version + with pytest.raises(BufferError): + x.__dlpack__() + + # But works fine if we try with version + y = np.from_dlpack(x) + assert not y.flags.writeable + + def test_writeable(self): + x_new, x_old = new_and_old_dlpack() + + # new dlpacks respect writeability + y = np.from_dlpack(x_new) + assert y.flags.writeable + + # old dlpacks are not writeable for backwards compatibility + y = np.from_dlpack(x_old) + assert not y.flags.writeable + + def test_ndim0(self): + x = np.array(1.0) + y = np.from_dlpack(x) + assert_array_equal(x, y) + + def test_size1dims_arrays(self): + x = np.ndarray(dtype='f8', shape=(10, 5, 1), strides=(8, 80, 4), + buffer=np.ones(1000, dtype=np.uint8), order='F') + y = np.from_dlpack(x) + assert_array_equal(x, y) + + def test_copy(self): + x = np.arange(5) + + y = np.from_dlpack(x) + assert np.may_share_memory(x, y) + y = np.from_dlpack(x, copy=False) + assert np.may_share_memory(x, y) + y = np.from_dlpack(x, copy=True) + assert not np.may_share_memory(x, y) + + def test_device(self): + x = np.arange(5) + # requesting (1, 0), i.e. CPU device works in both calls: + x.__dlpack__(dl_device=(1, 0)) + np.from_dlpack(x, device="cpu") + np.from_dlpack(x, device=None) + + with pytest.raises(ValueError): + x.__dlpack__(dl_device=(10, 0)) + with pytest.raises(ValueError): + np.from_dlpack(x, device="gpu") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dtype.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..deeca5171c2db67d5e2da57db1462dcdc801e2a2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_dtype.py @@ -0,0 +1,1963 @@ +import sys +import operator +import pytest +import ctypes +import gc +import types +from typing import Any +import pickle + +import numpy as np +import numpy.dtypes +from numpy._core._rational_tests import rational +from numpy._core._multiarray_tests import create_custom_field_dtype +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, assert_raises, HAS_REFCOUNT, + IS_PYSTON) +from itertools import permutations +import random + +import hypothesis +from hypothesis.extra import numpy as hynp + + + +def assert_dtype_equal(a, b): + assert_equal(a, b) + assert_equal(hash(a), hash(b), + "two equivalent types do not hash to the same value !") + +def assert_dtype_not_equal(a, b): + assert_(a != b) + assert_(hash(a) != hash(b), + "two different types hash to the same value !") + +class TestBuiltin: + @pytest.mark.parametrize('t', [int, float, complex, np.int32, str, object]) + def test_run(self, t): + """Only test hash runs at all.""" + dt = np.dtype(t) + hash(dt) + + @pytest.mark.parametrize('t', [int, float]) + def test_dtype(self, t): + # Make sure equivalent byte order char hash the same (e.g. < and = on + # little endian) + dt = np.dtype(t) + dt2 = dt.newbyteorder("<") + dt3 = dt.newbyteorder(">") + if dt == dt2: + assert_(dt.byteorder != dt2.byteorder, "bogus test") + assert_dtype_equal(dt, dt2) + else: + assert_(dt.byteorder != dt3.byteorder, "bogus test") + assert_dtype_equal(dt, dt3) + + def test_equivalent_dtype_hashing(self): + # Make sure equivalent dtypes with different type num hash equal + uintp = np.dtype(np.uintp) + if uintp.itemsize == 4: + left = uintp + right = np.dtype(np.uint32) + else: + left = uintp + right = np.dtype(np.ulonglong) + assert_(left == right) + assert_(hash(left) == hash(right)) + + def test_invalid_types(self): + # Make sure invalid type strings raise an error + + assert_raises(TypeError, np.dtype, 'O3') + assert_raises(TypeError, np.dtype, 'O5') + assert_raises(TypeError, np.dtype, 'O7') + assert_raises(TypeError, np.dtype, 'b3') + assert_raises(TypeError, np.dtype, 'h4') + assert_raises(TypeError, np.dtype, 'I5') + assert_raises(TypeError, np.dtype, 'e3') + assert_raises(TypeError, np.dtype, 'f5') + + if np.dtype('g').itemsize == 8 or np.dtype('g').itemsize == 16: + assert_raises(TypeError, np.dtype, 'g12') + elif np.dtype('g').itemsize == 12: + assert_raises(TypeError, np.dtype, 'g16') + + if np.dtype('l').itemsize == 8: + assert_raises(TypeError, np.dtype, 'l4') + assert_raises(TypeError, np.dtype, 'L4') + else: + assert_raises(TypeError, np.dtype, 'l8') + assert_raises(TypeError, np.dtype, 'L8') + + if np.dtype('q').itemsize == 8: + assert_raises(TypeError, np.dtype, 'q4') + assert_raises(TypeError, np.dtype, 'Q4') + else: + assert_raises(TypeError, np.dtype, 'q8') + assert_raises(TypeError, np.dtype, 'Q8') + + # Make sure negative-sized dtype raises an error + assert_raises(TypeError, np.dtype, 'S-1') + assert_raises(TypeError, np.dtype, 'U-1') + assert_raises(TypeError, np.dtype, 'V-1') + + def test_richcompare_invalid_dtype_equality(self): + # Make sure objects that cannot be converted to valid + # dtypes results in False/True when compared to valid dtypes. + # Here 7 cannot be converted to dtype. No exceptions should be raised + + assert not np.dtype(np.int32) == 7, "dtype richcompare failed for ==" + assert np.dtype(np.int32) != 7, "dtype richcompare failed for !=" + + @pytest.mark.parametrize( + 'operation', + [operator.le, operator.lt, operator.ge, operator.gt]) + def test_richcompare_invalid_dtype_comparison(self, operation): + # Make sure TypeError is raised for comparison operators + # for invalid dtypes. Here 7 is an invalid dtype. + + with pytest.raises(TypeError): + operation(np.dtype(np.int32), 7) + + @pytest.mark.parametrize("dtype", + ['Bool', 'Bytes0', 'Complex32', 'Complex64', + 'Datetime64', 'Float16', 'Float32', 'Float64', + 'Int8', 'Int16', 'Int32', 'Int64', + 'Object0', 'Str0', 'Timedelta64', + 'UInt8', 'UInt16', 'Uint32', 'UInt32', + 'Uint64', 'UInt64', 'Void0', + "Float128", "Complex128"]) + def test_numeric_style_types_are_invalid(self, dtype): + with assert_raises(TypeError): + np.dtype(dtype) + + def test_expired_dtypes_with_bad_bytesize(self): + match: str = r".*removed in NumPy 2.0.*" + with pytest.raises(TypeError, match=match): + np.dtype("int0") + with pytest.raises(TypeError, match=match): + np.dtype("uint0") + with pytest.raises(TypeError, match=match): + np.dtype("bool8") + with pytest.raises(TypeError, match=match): + np.dtype("bytes0") + with pytest.raises(TypeError, match=match): + np.dtype("str0") + with pytest.raises(TypeError, match=match): + np.dtype("object0") + with pytest.raises(TypeError, match=match): + np.dtype("void0") + + @pytest.mark.parametrize( + 'value', + ['m8', 'M8', 'datetime64', 'timedelta64', + 'i4, (2,3)f8, f4', 'S3, 3u8, (3,4)S10', + '>f', '= (3, 12), + reason="Python 3.12 has immortal refcounts, this test will no longer " + "work. See gh-23986" +) +@pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") +class TestStructuredObjectRefcounting: + """These tests cover various uses of complicated structured types which + include objects and thus require reference counting. + """ + @pytest.mark.parametrize(['dt', 'pat', 'count', 'singleton'], + iter_struct_object_dtypes()) + @pytest.mark.parametrize(["creation_func", "creation_obj"], [ + pytest.param(np.empty, None, + # None is probably used for too many things + marks=pytest.mark.skip("unreliable due to python's behaviour")), + (np.ones, 1), + (np.zeros, 0)]) + def test_structured_object_create_delete(self, dt, pat, count, singleton, + creation_func, creation_obj): + """Structured object reference counting in creation and deletion""" + # The test assumes that 0, 1, and None are singletons. + gc.collect() + before = sys.getrefcount(creation_obj) + arr = creation_func(3, dt) + + now = sys.getrefcount(creation_obj) + assert now - before == count * 3 + del arr + now = sys.getrefcount(creation_obj) + assert now == before + + @pytest.mark.parametrize(['dt', 'pat', 'count', 'singleton'], + iter_struct_object_dtypes()) + def test_structured_object_item_setting(self, dt, pat, count, singleton): + """Structured object reference counting for simple item setting""" + one = 1 + + gc.collect() + before = sys.getrefcount(singleton) + arr = np.array([pat] * 3, dt) + assert sys.getrefcount(singleton) - before == count * 3 + # Fill with `1` and check that it was replaced correctly: + before2 = sys.getrefcount(one) + arr[...] = one + after2 = sys.getrefcount(one) + assert after2 - before2 == count * 3 + del arr + gc.collect() + assert sys.getrefcount(one) == before2 + assert sys.getrefcount(singleton) == before + + @pytest.mark.parametrize(['dt', 'pat', 'count', 'singleton'], + iter_struct_object_dtypes()) + @pytest.mark.parametrize( + ['shape', 'index', 'items_changed'], + [((3,), ([0, 2],), 2), + ((3, 2), ([0, 2], slice(None)), 4), + ((3, 2), ([0, 2], [1]), 2), + ((3,), ([True, False, True]), 2)]) + def test_structured_object_indexing(self, shape, index, items_changed, + dt, pat, count, singleton): + """Structured object reference counting for advanced indexing.""" + # Use two small negative values (should be singletons, but less likely + # to run into race-conditions). This failed in some threaded envs + # When using 0 and 1. If it fails again, should remove all explicit + # checks, and rely on `pytest-leaks` reference count checker only. + val0 = -4 + val1 = -5 + + arr = np.full(shape, val0, dt) + + gc.collect() + before_val0 = sys.getrefcount(val0) + before_val1 = sys.getrefcount(val1) + # Test item getting: + part = arr[index] + after_val0 = sys.getrefcount(val0) + assert after_val0 - before_val0 == count * items_changed + del part + # Test item setting: + arr[index] = val1 + gc.collect() + after_val0 = sys.getrefcount(val0) + after_val1 = sys.getrefcount(val1) + assert before_val0 - after_val0 == count * items_changed + assert after_val1 - before_val1 == count * items_changed + + @pytest.mark.parametrize(['dt', 'pat', 'count', 'singleton'], + iter_struct_object_dtypes()) + def test_structured_object_take_and_repeat(self, dt, pat, count, singleton): + """Structured object reference counting for specialized functions. + The older functions such as take and repeat use different code paths + then item setting (when writing this). + """ + indices = [0, 1] + + arr = np.array([pat] * 3, dt) + gc.collect() + before = sys.getrefcount(singleton) + res = arr.take(indices) + after = sys.getrefcount(singleton) + assert after - before == count * 2 + new = res.repeat(10) + gc.collect() + after_repeat = sys.getrefcount(singleton) + assert after_repeat - after == count * 2 * 10 + + +class TestStructuredDtypeSparseFields: + """Tests subarray fields which contain sparse dtypes so that + not all memory is used by the dtype work. Such dtype's should + leave the underlying memory unchanged. + """ + dtype = np.dtype([('a', {'names':['aa', 'ab'], 'formats':['f', 'f'], + 'offsets':[0, 4]}, (2, 3))]) + sparse_dtype = np.dtype([('a', {'names':['ab'], 'formats':['f'], + 'offsets':[4]}, (2, 3))]) + + def test_sparse_field_assignment(self): + arr = np.zeros(3, self.dtype) + sparse_arr = arr.view(self.sparse_dtype) + + sparse_arr[...] = np.finfo(np.float32).max + # dtype is reduced when accessing the field, so shape is (3, 2, 3): + assert_array_equal(arr["a"]["aa"], np.zeros((3, 2, 3))) + + def test_sparse_field_assignment_fancy(self): + # Fancy assignment goes to the copyswap function for complex types: + arr = np.zeros(3, self.dtype) + sparse_arr = arr.view(self.sparse_dtype) + + sparse_arr[[0, 1, 2]] = np.finfo(np.float32).max + # dtype is reduced when accessing the field, so shape is (3, 2, 3): + assert_array_equal(arr["a"]["aa"], np.zeros((3, 2, 3))) + + +class TestMonsterType: + """Test deeply nested subtypes.""" + + def test1(self): + simple1 = np.dtype({'names': ['r', 'b'], 'formats': ['u1', 'u1'], + 'titles': ['Red pixel', 'Blue pixel']}) + a = np.dtype([('yo', int), ('ye', simple1), + ('yi', np.dtype((int, (3, 2))))]) + b = np.dtype([('yo', int), ('ye', simple1), + ('yi', np.dtype((int, (3, 2))))]) + assert_dtype_equal(a, b) + + c = np.dtype([('yo', int), ('ye', simple1), + ('yi', np.dtype((a, (3, 2))))]) + d = np.dtype([('yo', int), ('ye', simple1), + ('yi', np.dtype((a, (3, 2))))]) + assert_dtype_equal(c, d) + + @pytest.mark.skipif(IS_PYSTON, reason="Pyston disables recursion checking") + def test_list_recursion(self): + l = list() + l.append(('f', l)) + with pytest.raises(RecursionError): + np.dtype(l) + + @pytest.mark.skipif(IS_PYSTON, reason="Pyston disables recursion checking") + def test_tuple_recursion(self): + d = np.int32 + for i in range(100000): + d = (d, (1,)) + with pytest.raises(RecursionError): + np.dtype(d) + + @pytest.mark.skipif(IS_PYSTON, reason="Pyston disables recursion checking") + def test_dict_recursion(self): + d = dict(names=['self'], formats=[None], offsets=[0]) + d['formats'][0] = d + with pytest.raises(RecursionError): + np.dtype(d) + + +class TestMetadata: + def test_no_metadata(self): + d = np.dtype(int) + assert_(d.metadata is None) + + def test_metadata_takes_dict(self): + d = np.dtype(int, metadata={'datum': 1}) + assert_(d.metadata == {'datum': 1}) + + def test_metadata_rejects_nondict(self): + assert_raises(TypeError, np.dtype, int, metadata='datum') + assert_raises(TypeError, np.dtype, int, metadata=1) + assert_raises(TypeError, np.dtype, int, metadata=None) + + def test_nested_metadata(self): + d = np.dtype([('a', np.dtype(int, metadata={'datum': 1}))]) + assert_(d['a'].metadata == {'datum': 1}) + + def test_base_metadata_copied(self): + d = np.dtype((np.void, np.dtype('i4,i4', metadata={'datum': 1}))) + assert_(d.metadata == {'datum': 1}) + +class TestString: + def test_complex_dtype_str(self): + dt = np.dtype([('top', [('tiles', ('>f4', (64, 64)), (1,)), + ('rtile', '>f4', (64, 36))], (3,)), + ('bottom', [('bleft', ('>f4', (8, 64)), (1,)), + ('bright', '>f4', (8, 36))])]) + assert_equal(str(dt), + "[('top', [('tiles', ('>f4', (64, 64)), (1,)), " + "('rtile', '>f4', (64, 36))], (3,)), " + "('bottom', [('bleft', ('>f4', (8, 64)), (1,)), " + "('bright', '>f4', (8, 36))])]") + + # If the sticky aligned flag is set to True, it makes the + # str() function use a dict representation with an 'aligned' flag + dt = np.dtype([('top', [('tiles', ('>f4', (64, 64)), (1,)), + ('rtile', '>f4', (64, 36))], + (3,)), + ('bottom', [('bleft', ('>f4', (8, 64)), (1,)), + ('bright', '>f4', (8, 36))])], + align=True) + assert_equal(str(dt), + "{'names': ['top', 'bottom']," + " 'formats': [([('tiles', ('>f4', (64, 64)), (1,)), " + "('rtile', '>f4', (64, 36))], (3,)), " + "[('bleft', ('>f4', (8, 64)), (1,)), " + "('bright', '>f4', (8, 36))]]," + " 'offsets': [0, 76800]," + " 'itemsize': 80000," + " 'aligned': True}") + with np.printoptions(legacy='1.21'): + assert_equal(str(dt), + "{'names':['top','bottom'], " + "'formats':[([('tiles', ('>f4', (64, 64)), (1,)), " + "('rtile', '>f4', (64, 36))], (3,))," + "[('bleft', ('>f4', (8, 64)), (1,)), " + "('bright', '>f4', (8, 36))]], " + "'offsets':[0,76800], " + "'itemsize':80000, " + "'aligned':True}") + assert_equal(np.dtype(eval(str(dt))), dt) + + dt = np.dtype({'names': ['r', 'g', 'b'], 'formats': ['u1', 'u1', 'u1'], + 'offsets': [0, 1, 2], + 'titles': ['Red pixel', 'Green pixel', 'Blue pixel']}) + assert_equal(str(dt), + "[(('Red pixel', 'r'), 'u1'), " + "(('Green pixel', 'g'), 'u1'), " + "(('Blue pixel', 'b'), 'u1')]") + + dt = np.dtype({'names': ['rgba', 'r', 'g', 'b'], + 'formats': ['f4', (64, 64)), (1,)), + ('rtile', '>f4', (64, 36))], (3,)), + ('bottom', [('bleft', ('>f4', (8, 64)), (1,)), + ('bright', '>f4', (8, 36))])]) + assert_equal(repr(dt), + "dtype([('top', [('tiles', ('>f4', (64, 64)), (1,)), " + "('rtile', '>f4', (64, 36))], (3,)), " + "('bottom', [('bleft', ('>f4', (8, 64)), (1,)), " + "('bright', '>f4', (8, 36))])])") + + dt = np.dtype({'names': ['r', 'g', 'b'], 'formats': ['u1', 'u1', 'u1'], + 'offsets': [0, 1, 2], + 'titles': ['Red pixel', 'Green pixel', 'Blue pixel']}, + align=True) + assert_equal(repr(dt), + "dtype([(('Red pixel', 'r'), 'u1'), " + "(('Green pixel', 'g'), 'u1'), " + "(('Blue pixel', 'b'), 'u1')], align=True)") + + def test_repr_structured_not_packed(self): + dt = np.dtype({'names': ['rgba', 'r', 'g', 'b'], + 'formats': ['i4") + assert np.result_type(dt).isnative + assert np.result_type(dt).num == dt.num + + # dtype with empty space: + struct_dt = np.dtype(">i4,i1,f4', (2, 1)), ('b', 'u4')]) + self.check(BigEndStruct, expected) + + def test_little_endian_structure_packed(self): + class LittleEndStruct(ctypes.LittleEndianStructure): + _fields_ = [ + ('one', ctypes.c_uint8), + ('two', ctypes.c_uint32) + ] + _pack_ = 1 + expected = np.dtype([('one', 'u1'), ('two', 'B'), + ('b', '>H') + ], align=True) + self.check(PaddedStruct, expected) + + def test_simple_endian_types(self): + self.check(ctypes.c_uint16.__ctype_le__, np.dtype('u2')) + self.check(ctypes.c_uint8.__ctype_le__, np.dtype('u1')) + self.check(ctypes.c_uint8.__ctype_be__, np.dtype('u1')) + + all_types = set(np.typecodes['All']) + all_pairs = permutations(all_types, 2) + + @pytest.mark.parametrize("pair", all_pairs) + def test_pairs(self, pair): + """ + Check that np.dtype('x,y') matches [np.dtype('x'), np.dtype('y')] + Example: np.dtype('d,I') -> dtype([('f0', ' None: + alias = np.dtype[Any] + assert isinstance(alias, types.GenericAlias) + assert alias.__origin__ is np.dtype + + @pytest.mark.parametrize("code", np.typecodes["All"]) + def test_dtype_subclass(self, code: str) -> None: + cls = type(np.dtype(code)) + alias = cls[Any] + assert isinstance(alias, types.GenericAlias) + assert alias.__origin__ is cls + + @pytest.mark.parametrize("arg_len", range(4)) + def test_subscript_tuple(self, arg_len: int) -> None: + arg_tup = (Any,) * arg_len + if arg_len == 1: + assert np.dtype[arg_tup] + else: + with pytest.raises(TypeError): + np.dtype[arg_tup] + + def test_subscript_scalar(self) -> None: + assert np.dtype[Any] + + +def test_result_type_integers_and_unitless_timedelta64(): + # Regression test for gh-20077. The following call of `result_type` + # would cause a seg. fault. + td = np.timedelta64(4) + result = np.result_type(0, td) + assert_dtype_equal(result, td.dtype) + + +def test_creating_dtype_with_dtype_class_errors(): + # Regression test for #25031, calling `np.dtype` with itself segfaulted. + with pytest.raises(TypeError, match="Cannot convert np.dtype into a"): + np.array(np.ones(10), dtype=np.dtype) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_einsum.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_einsum.py new file mode 100644 index 0000000000000000000000000000000000000000..636c97f03e87995fa07df6819ceb5c924a32954f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_einsum.py @@ -0,0 +1,1229 @@ +import itertools + +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, assert_almost_equal, + assert_raises, suppress_warnings, assert_raises_regex, assert_allclose + ) + +# Setup for optimize einsum +chars = 'abcdefghij' +sizes = np.array([2, 3, 4, 5, 4, 3, 2, 6, 5, 4, 3]) +global_size_dict = dict(zip(chars, sizes)) + + +class TestEinsum: + @pytest.mark.parametrize("do_opt", [True, False]) + @pytest.mark.parametrize("einsum_fn", [np.einsum, np.einsum_path]) + def test_einsum_errors(self, do_opt, einsum_fn): + # Need enough arguments + assert_raises(ValueError, einsum_fn, optimize=do_opt) + assert_raises(ValueError, einsum_fn, "", optimize=do_opt) + + # subscripts must be a string + assert_raises(TypeError, einsum_fn, 0, 0, optimize=do_opt) + + # issue 4528 revealed a segfault with this call + assert_raises(TypeError, einsum_fn, *(None,)*63, optimize=do_opt) + + # number of operands must match count in subscripts string + assert_raises(ValueError, einsum_fn, "", 0, 0, optimize=do_opt) + assert_raises(ValueError, einsum_fn, ",", 0, [0], [0], + optimize=do_opt) + assert_raises(ValueError, einsum_fn, ",", [0], optimize=do_opt) + + # can't have more subscripts than dimensions in the operand + assert_raises(ValueError, einsum_fn, "i", 0, optimize=do_opt) + assert_raises(ValueError, einsum_fn, "ij", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "...i", 0, optimize=do_opt) + assert_raises(ValueError, einsum_fn, "i...j", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "i...", 0, optimize=do_opt) + assert_raises(ValueError, einsum_fn, "ij...", [0, 0], optimize=do_opt) + + # invalid ellipsis + assert_raises(ValueError, einsum_fn, "i..", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, ".i...", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "j->..j", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "j->.j...", [0, 0], + optimize=do_opt) + + # invalid subscript character + assert_raises(ValueError, einsum_fn, "i%...", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "...j$", [0, 0], optimize=do_opt) + assert_raises(ValueError, einsum_fn, "i->&", [0, 0], optimize=do_opt) + + # output subscripts must appear in input + assert_raises(ValueError, einsum_fn, "i->ij", [0, 0], optimize=do_opt) + + # output subscripts may only be specified once + assert_raises(ValueError, einsum_fn, "ij->jij", [[0, 0], [0, 0]], + optimize=do_opt) + + # dimensions must match when being collapsed + assert_raises(ValueError, einsum_fn, "ii", + np.arange(6).reshape(2, 3), optimize=do_opt) + assert_raises(ValueError, einsum_fn, "ii->i", + np.arange(6).reshape(2, 3), optimize=do_opt) + + with assert_raises_regex(ValueError, "'b'"): + # gh-11221 - 'c' erroneously appeared in the error message + a = np.ones((3, 3, 4, 5, 6)) + b = np.ones((3, 4, 5)) + einsum_fn('aabcb,abc', a, b) + + @pytest.mark.parametrize("do_opt", [True, False]) + def test_einsum_specific_errors(self, do_opt): + # out parameter must be an array + assert_raises(TypeError, np.einsum, "", 0, out='test', + optimize=do_opt) + + # order parameter must be a valid order + assert_raises(ValueError, np.einsum, "", 0, order='W', + optimize=do_opt) + + # casting parameter must be a valid casting + assert_raises(ValueError, np.einsum, "", 0, casting='blah', + optimize=do_opt) + + # dtype parameter must be a valid dtype + assert_raises(TypeError, np.einsum, "", 0, dtype='bad_data_type', + optimize=do_opt) + + # other keyword arguments are rejected + assert_raises(TypeError, np.einsum, "", 0, bad_arg=0, optimize=do_opt) + + # broadcasting to new dimensions must be enabled explicitly + assert_raises(ValueError, np.einsum, "i", np.arange(6).reshape(2, 3), + optimize=do_opt) + assert_raises(ValueError, np.einsum, "i->i", [[0, 1], [0, 1]], + out=np.arange(4).reshape(2, 2), optimize=do_opt) + + # Check order kwarg, asanyarray allows 1d to pass through + assert_raises(ValueError, np.einsum, "i->i", + np.arange(6).reshape(-1, 1), optimize=do_opt, order='d') + + def test_einsum_object_errors(self): + # Exceptions created by object arithmetic should + # successfully propagate + + class CustomException(Exception): + pass + + class DestructoBox: + + def __init__(self, value, destruct): + self._val = value + self._destruct = destruct + + def __add__(self, other): + tmp = self._val + other._val + if tmp >= self._destruct: + raise CustomException + else: + self._val = tmp + return self + + def __radd__(self, other): + if other == 0: + return self + else: + return self.__add__(other) + + def __mul__(self, other): + tmp = self._val * other._val + if tmp >= self._destruct: + raise CustomException + else: + self._val = tmp + return self + + def __rmul__(self, other): + if other == 0: + return self + else: + return self.__mul__(other) + + a = np.array([DestructoBox(i, 5) for i in range(1, 10)], + dtype='object').reshape(3, 3) + + # raised from unbuffered_loop_nop1_ndim2 + assert_raises(CustomException, np.einsum, "ij->i", a) + + # raised from unbuffered_loop_nop1_ndim3 + b = np.array([DestructoBox(i, 100) for i in range(0, 27)], + dtype='object').reshape(3, 3, 3) + assert_raises(CustomException, np.einsum, "i...k->...", b) + + # raised from unbuffered_loop_nop2_ndim2 + b = np.array([DestructoBox(i, 55) for i in range(1, 4)], + dtype='object') + assert_raises(CustomException, np.einsum, "ij, j", a, b) + + # raised from unbuffered_loop_nop2_ndim3 + assert_raises(CustomException, np.einsum, "ij, jh", a, a) + + # raised from PyArray_EinsteinSum + assert_raises(CustomException, np.einsum, "ij->", a) + + def test_einsum_views(self): + # pass-through + for do_opt in [True, False]: + a = np.arange(6) + a.shape = (2, 3) + + b = np.einsum("...", a, optimize=do_opt) + assert_(b.base is a) + + b = np.einsum(a, [Ellipsis], optimize=do_opt) + assert_(b.base is a) + + b = np.einsum("ij", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a) + + b = np.einsum(a, [0, 1], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a) + + # output is writeable whenever input is writeable + b = np.einsum("...", a, optimize=do_opt) + assert_(b.flags['WRITEABLE']) + a.flags['WRITEABLE'] = False + b = np.einsum("...", a, optimize=do_opt) + assert_(not b.flags['WRITEABLE']) + + # transpose + a = np.arange(6) + a.shape = (2, 3) + + b = np.einsum("ji", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a.T) + + b = np.einsum(a, [1, 0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a.T) + + # diagonal + a = np.arange(9) + a.shape = (3, 3) + + b = np.einsum("ii->i", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[i, i] for i in range(3)]) + + b = np.einsum(a, [0, 0], [0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[i, i] for i in range(3)]) + + # diagonal with various ways of broadcasting an additional dimension + a = np.arange(27) + a.shape = (3, 3, 3) + + b = np.einsum("...ii->...i", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] for x in a]) + + b = np.einsum(a, [Ellipsis, 0, 0], [Ellipsis, 0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] for x in a]) + + b = np.einsum("ii...->...i", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] + for x in a.transpose(2, 0, 1)]) + + b = np.einsum(a, [0, 0, Ellipsis], [Ellipsis, 0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] + for x in a.transpose(2, 0, 1)]) + + b = np.einsum("...ii->i...", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[:, i, i] for i in range(3)]) + + b = np.einsum(a, [Ellipsis, 0, 0], [0, Ellipsis], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[:, i, i] for i in range(3)]) + + b = np.einsum("jii->ij", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[:, i, i] for i in range(3)]) + + b = np.einsum(a, [1, 0, 0], [0, 1], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[:, i, i] for i in range(3)]) + + b = np.einsum("ii...->i...", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a.transpose(2, 0, 1)[:, i, i] for i in range(3)]) + + b = np.einsum(a, [0, 0, Ellipsis], [0, Ellipsis], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a.transpose(2, 0, 1)[:, i, i] for i in range(3)]) + + b = np.einsum("i...i->i...", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a.transpose(1, 0, 2)[:, i, i] for i in range(3)]) + + b = np.einsum(a, [0, Ellipsis, 0], [0, Ellipsis], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a.transpose(1, 0, 2)[:, i, i] for i in range(3)]) + + b = np.einsum("i...i->...i", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] + for x in a.transpose(1, 0, 2)]) + + b = np.einsum(a, [0, Ellipsis, 0], [Ellipsis, 0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [[x[i, i] for i in range(3)] + for x in a.transpose(1, 0, 2)]) + + # triple diagonal + a = np.arange(27) + a.shape = (3, 3, 3) + + b = np.einsum("iii->i", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[i, i, i] for i in range(3)]) + + b = np.einsum(a, [0, 0, 0], [0], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, [a[i, i, i] for i in range(3)]) + + # swap axes + a = np.arange(24) + a.shape = (2, 3, 4) + + b = np.einsum("ijk->jik", a, optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a.swapaxes(0, 1)) + + b = np.einsum(a, [0, 1, 2], [1, 0, 2], optimize=do_opt) + assert_(b.base is a) + assert_equal(b, a.swapaxes(0, 1)) + + def check_einsum_sums(self, dtype, do_opt=False): + dtype = np.dtype(dtype) + # Check various sums. Does many sizes to exercise unrolled loops. + + # sum(a, axis=-1) + for n in range(1, 17): + a = np.arange(n, dtype=dtype) + b = np.sum(a, axis=-1) + if hasattr(b, 'astype'): + b = b.astype(dtype) + assert_equal(np.einsum("i->", a, optimize=do_opt), b) + assert_equal(np.einsum(a, [0], [], optimize=do_opt), b) + + for n in range(1, 17): + a = np.arange(2*3*n, dtype=dtype).reshape(2, 3, n) + b = np.sum(a, axis=-1) + if hasattr(b, 'astype'): + b = b.astype(dtype) + assert_equal(np.einsum("...i->...", a, optimize=do_opt), b) + assert_equal(np.einsum(a, [Ellipsis, 0], [Ellipsis], optimize=do_opt), b) + + # sum(a, axis=0) + for n in range(1, 17): + a = np.arange(2*n, dtype=dtype).reshape(2, n) + b = np.sum(a, axis=0) + if hasattr(b, 'astype'): + b = b.astype(dtype) + assert_equal(np.einsum("i...->...", a, optimize=do_opt), b) + assert_equal(np.einsum(a, [0, Ellipsis], [Ellipsis], optimize=do_opt), b) + + for n in range(1, 17): + a = np.arange(2*3*n, dtype=dtype).reshape(2, 3, n) + b = np.sum(a, axis=0) + if hasattr(b, 'astype'): + b = b.astype(dtype) + assert_equal(np.einsum("i...->...", a, optimize=do_opt), b) + assert_equal(np.einsum(a, [0, Ellipsis], [Ellipsis], optimize=do_opt), b) + + # trace(a) + for n in range(1, 17): + a = np.arange(n*n, dtype=dtype).reshape(n, n) + b = np.trace(a) + if hasattr(b, 'astype'): + b = b.astype(dtype) + assert_equal(np.einsum("ii", a, optimize=do_opt), b) + assert_equal(np.einsum(a, [0, 0], optimize=do_opt), b) + + # gh-15961: should accept numpy int64 type in subscript list + np_array = np.asarray([0, 0]) + assert_equal(np.einsum(a, np_array, optimize=do_opt), b) + assert_equal(np.einsum(a, list(np_array), optimize=do_opt), b) + + # multiply(a, b) + assert_equal(np.einsum("..., ...", 3, 4), 12) # scalar case + for n in range(1, 17): + a = np.arange(3 * n, dtype=dtype).reshape(3, n) + b = np.arange(2 * 3 * n, dtype=dtype).reshape(2, 3, n) + assert_equal(np.einsum("..., ...", a, b, optimize=do_opt), + np.multiply(a, b)) + assert_equal(np.einsum(a, [Ellipsis], b, [Ellipsis], optimize=do_opt), + np.multiply(a, b)) + + # inner(a,b) + for n in range(1, 17): + a = np.arange(2 * 3 * n, dtype=dtype).reshape(2, 3, n) + b = np.arange(n, dtype=dtype) + assert_equal(np.einsum("...i, ...i", a, b, optimize=do_opt), np.inner(a, b)) + assert_equal(np.einsum(a, [Ellipsis, 0], b, [Ellipsis, 0], optimize=do_opt), + np.inner(a, b)) + + for n in range(1, 11): + a = np.arange(n * 3 * 2, dtype=dtype).reshape(n, 3, 2) + b = np.arange(n, dtype=dtype) + assert_equal(np.einsum("i..., i...", a, b, optimize=do_opt), + np.inner(a.T, b.T).T) + assert_equal(np.einsum(a, [0, Ellipsis], b, [0, Ellipsis], optimize=do_opt), + np.inner(a.T, b.T).T) + + # outer(a,b) + for n in range(1, 17): + a = np.arange(3, dtype=dtype)+1 + b = np.arange(n, dtype=dtype)+1 + assert_equal(np.einsum("i,j", a, b, optimize=do_opt), + np.outer(a, b)) + assert_equal(np.einsum(a, [0], b, [1], optimize=do_opt), + np.outer(a, b)) + + # Suppress the complex warnings for the 'as f8' tests + with suppress_warnings() as sup: + sup.filter(np.exceptions.ComplexWarning) + + # matvec(a,b) / a.dot(b) where a is matrix, b is vector + for n in range(1, 17): + a = np.arange(4*n, dtype=dtype).reshape(4, n) + b = np.arange(n, dtype=dtype) + assert_equal(np.einsum("ij, j", a, b, optimize=do_opt), + np.dot(a, b)) + assert_equal(np.einsum(a, [0, 1], b, [1], optimize=do_opt), + np.dot(a, b)) + + c = np.arange(4, dtype=dtype) + np.einsum("ij,j", a, b, out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, + np.dot(a.astype('f8'), + b.astype('f8')).astype(dtype)) + c[...] = 0 + np.einsum(a, [0, 1], b, [1], out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, + np.dot(a.astype('f8'), + b.astype('f8')).astype(dtype)) + + for n in range(1, 17): + a = np.arange(4*n, dtype=dtype).reshape(4, n) + b = np.arange(n, dtype=dtype) + assert_equal(np.einsum("ji,j", a.T, b.T, optimize=do_opt), + np.dot(b.T, a.T)) + assert_equal(np.einsum(a.T, [1, 0], b.T, [1], optimize=do_opt), + np.dot(b.T, a.T)) + + c = np.arange(4, dtype=dtype) + np.einsum("ji,j", a.T, b.T, out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, + np.dot(b.T.astype('f8'), + a.T.astype('f8')).astype(dtype)) + c[...] = 0 + np.einsum(a.T, [1, 0], b.T, [1], out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, + np.dot(b.T.astype('f8'), + a.T.astype('f8')).astype(dtype)) + + # matmat(a,b) / a.dot(b) where a is matrix, b is matrix + for n in range(1, 17): + if n < 8 or dtype != 'f2': + a = np.arange(4*n, dtype=dtype).reshape(4, n) + b = np.arange(n*6, dtype=dtype).reshape(n, 6) + assert_equal(np.einsum("ij,jk", a, b, optimize=do_opt), + np.dot(a, b)) + assert_equal(np.einsum(a, [0, 1], b, [1, 2], optimize=do_opt), + np.dot(a, b)) + + for n in range(1, 17): + a = np.arange(4*n, dtype=dtype).reshape(4, n) + b = np.arange(n*6, dtype=dtype).reshape(n, 6) + c = np.arange(24, dtype=dtype).reshape(4, 6) + np.einsum("ij,jk", a, b, out=c, dtype='f8', casting='unsafe', + optimize=do_opt) + assert_equal(c, + np.dot(a.astype('f8'), + b.astype('f8')).astype(dtype)) + c[...] = 0 + np.einsum(a, [0, 1], b, [1, 2], out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, + np.dot(a.astype('f8'), + b.astype('f8')).astype(dtype)) + + # matrix triple product (note this is not currently an efficient + # way to multiply 3 matrices) + a = np.arange(12, dtype=dtype).reshape(3, 4) + b = np.arange(20, dtype=dtype).reshape(4, 5) + c = np.arange(30, dtype=dtype).reshape(5, 6) + if dtype != 'f2': + assert_equal(np.einsum("ij,jk,kl", a, b, c, optimize=do_opt), + a.dot(b).dot(c)) + assert_equal(np.einsum(a, [0, 1], b, [1, 2], c, [2, 3], + optimize=do_opt), a.dot(b).dot(c)) + + d = np.arange(18, dtype=dtype).reshape(3, 6) + np.einsum("ij,jk,kl", a, b, c, out=d, + dtype='f8', casting='unsafe', optimize=do_opt) + tgt = a.astype('f8').dot(b.astype('f8')) + tgt = tgt.dot(c.astype('f8')).astype(dtype) + assert_equal(d, tgt) + + d[...] = 0 + np.einsum(a, [0, 1], b, [1, 2], c, [2, 3], out=d, + dtype='f8', casting='unsafe', optimize=do_opt) + tgt = a.astype('f8').dot(b.astype('f8')) + tgt = tgt.dot(c.astype('f8')).astype(dtype) + assert_equal(d, tgt) + + # tensordot(a, b) + if np.dtype(dtype) != np.dtype('f2'): + a = np.arange(60, dtype=dtype).reshape(3, 4, 5) + b = np.arange(24, dtype=dtype).reshape(4, 3, 2) + assert_equal(np.einsum("ijk, jil -> kl", a, b), + np.tensordot(a, b, axes=([1, 0], [0, 1]))) + assert_equal(np.einsum(a, [0, 1, 2], b, [1, 0, 3], [2, 3]), + np.tensordot(a, b, axes=([1, 0], [0, 1]))) + + c = np.arange(10, dtype=dtype).reshape(5, 2) + np.einsum("ijk,jil->kl", a, b, out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, np.tensordot(a.astype('f8'), b.astype('f8'), + axes=([1, 0], [0, 1])).astype(dtype)) + c[...] = 0 + np.einsum(a, [0, 1, 2], b, [1, 0, 3], [2, 3], out=c, + dtype='f8', casting='unsafe', optimize=do_opt) + assert_equal(c, np.tensordot(a.astype('f8'), b.astype('f8'), + axes=([1, 0], [0, 1])).astype(dtype)) + + # logical_and(logical_and(a!=0, b!=0), c!=0) + neg_val = -2 if dtype.kind != "u" else np.iinfo(dtype).max - 1 + a = np.array([1, 3, neg_val, 0, 12, 13, 0, 1], dtype=dtype) + b = np.array([0, 3.5, 0., neg_val, 0, 1, 3, 12], dtype=dtype) + c = np.array([True, True, False, True, True, False, True, True]) + + assert_equal(np.einsum("i,i,i->i", a, b, c, + dtype='?', casting='unsafe', optimize=do_opt), + np.logical_and(np.logical_and(a != 0, b != 0), c != 0)) + assert_equal(np.einsum(a, [0], b, [0], c, [0], [0], + dtype='?', casting='unsafe'), + np.logical_and(np.logical_and(a != 0, b != 0), c != 0)) + + a = np.arange(9, dtype=dtype) + assert_equal(np.einsum(",i->", 3, a), 3*np.sum(a)) + assert_equal(np.einsum(3, [], a, [0], []), 3*np.sum(a)) + assert_equal(np.einsum("i,->", a, 3), 3*np.sum(a)) + assert_equal(np.einsum(a, [0], 3, [], []), 3*np.sum(a)) + + # Various stride0, contiguous, and SSE aligned variants + for n in range(1, 25): + a = np.arange(n, dtype=dtype) + if np.dtype(dtype).itemsize > 1: + assert_equal(np.einsum("...,...", a, a, optimize=do_opt), + np.multiply(a, a)) + assert_equal(np.einsum("i,i", a, a, optimize=do_opt), np.dot(a, a)) + assert_equal(np.einsum("i,->i", a, 2, optimize=do_opt), 2*a) + assert_equal(np.einsum(",i->i", 2, a, optimize=do_opt), 2*a) + assert_equal(np.einsum("i,->", a, 2, optimize=do_opt), 2*np.sum(a)) + assert_equal(np.einsum(",i->", 2, a, optimize=do_opt), 2*np.sum(a)) + + assert_equal(np.einsum("...,...", a[1:], a[:-1], optimize=do_opt), + np.multiply(a[1:], a[:-1])) + assert_equal(np.einsum("i,i", a[1:], a[:-1], optimize=do_opt), + np.dot(a[1:], a[:-1])) + assert_equal(np.einsum("i,->i", a[1:], 2, optimize=do_opt), 2*a[1:]) + assert_equal(np.einsum(",i->i", 2, a[1:], optimize=do_opt), 2*a[1:]) + assert_equal(np.einsum("i,->", a[1:], 2, optimize=do_opt), + 2*np.sum(a[1:])) + assert_equal(np.einsum(",i->", 2, a[1:], optimize=do_opt), + 2*np.sum(a[1:])) + + # An object array, summed as the data type + a = np.arange(9, dtype=object) + + b = np.einsum("i->", a, dtype=dtype, casting='unsafe') + assert_equal(b, np.sum(a)) + if hasattr(b, "dtype"): + # Can be a python object when dtype is object + assert_equal(b.dtype, np.dtype(dtype)) + + b = np.einsum(a, [0], [], dtype=dtype, casting='unsafe') + assert_equal(b, np.sum(a)) + if hasattr(b, "dtype"): + # Can be a python object when dtype is object + assert_equal(b.dtype, np.dtype(dtype)) + + # A case which was failing (ticket #1885) + p = np.arange(2) + 1 + q = np.arange(4).reshape(2, 2) + 3 + r = np.arange(4).reshape(2, 2) + 7 + assert_equal(np.einsum('z,mz,zm->', p, q, r), 253) + + # singleton dimensions broadcast (gh-10343) + p = np.ones((10,2)) + q = np.ones((1,2)) + assert_array_equal(np.einsum('ij,ij->j', p, q, optimize=True), + np.einsum('ij,ij->j', p, q, optimize=False)) + assert_array_equal(np.einsum('ij,ij->j', p, q, optimize=True), + [10.] * 2) + + # a blas-compatible contraction broadcasting case which was failing + # for optimize=True (ticket #10930) + x = np.array([2., 3.]) + y = np.array([4.]) + assert_array_equal(np.einsum("i, i", x, y, optimize=False), 20.) + assert_array_equal(np.einsum("i, i", x, y, optimize=True), 20.) + + # all-ones array was bypassing bug (ticket #10930) + p = np.ones((1, 5)) / 2 + q = np.ones((5, 5)) / 2 + for optimize in (True, False): + assert_array_equal(np.einsum("...ij,...jk->...ik", p, p, + optimize=optimize), + np.einsum("...ij,...jk->...ik", p, q, + optimize=optimize)) + assert_array_equal(np.einsum("...ij,...jk->...ik", p, q, + optimize=optimize), + np.full((1, 5), 1.25)) + + # Cases which were failing (gh-10899) + x = np.eye(2, dtype=dtype) + y = np.ones(2, dtype=dtype) + assert_array_equal(np.einsum("ji,i->", x, y, optimize=optimize), + [2.]) # contig_contig_outstride0_two + assert_array_equal(np.einsum("i,ij->", y, x, optimize=optimize), + [2.]) # stride0_contig_outstride0_two + assert_array_equal(np.einsum("ij,i->", x, y, optimize=optimize), + [2.]) # contig_stride0_outstride0_two + + def test_einsum_sums_int8(self): + self.check_einsum_sums('i1') + + def test_einsum_sums_uint8(self): + self.check_einsum_sums('u1') + + def test_einsum_sums_int16(self): + self.check_einsum_sums('i2') + + def test_einsum_sums_uint16(self): + self.check_einsum_sums('u2') + + def test_einsum_sums_int32(self): + self.check_einsum_sums('i4') + self.check_einsum_sums('i4', True) + + def test_einsum_sums_uint32(self): + self.check_einsum_sums('u4') + self.check_einsum_sums('u4', True) + + def test_einsum_sums_int64(self): + self.check_einsum_sums('i8') + + def test_einsum_sums_uint64(self): + self.check_einsum_sums('u8') + + def test_einsum_sums_float16(self): + self.check_einsum_sums('f2') + + def test_einsum_sums_float32(self): + self.check_einsum_sums('f4') + + def test_einsum_sums_float64(self): + self.check_einsum_sums('f8') + self.check_einsum_sums('f8', True) + + def test_einsum_sums_longdouble(self): + self.check_einsum_sums(np.longdouble) + + def test_einsum_sums_cfloat64(self): + self.check_einsum_sums('c8') + self.check_einsum_sums('c8', True) + + def test_einsum_sums_cfloat128(self): + self.check_einsum_sums('c16') + + def test_einsum_sums_clongdouble(self): + self.check_einsum_sums(np.clongdouble) + + def test_einsum_sums_object(self): + self.check_einsum_sums('object') + self.check_einsum_sums('object', True) + + def test_einsum_misc(self): + # This call used to crash because of a bug in + # PyArray_AssignZero + a = np.ones((1, 2)) + b = np.ones((2, 2, 1)) + assert_equal(np.einsum('ij...,j...->i...', a, b), [[[2], [2]]]) + assert_equal(np.einsum('ij...,j...->i...', a, b, optimize=True), [[[2], [2]]]) + + # Regression test for issue #10369 (test unicode inputs with Python 2) + assert_equal(np.einsum('ij...,j...->i...', a, b), [[[2], [2]]]) + assert_equal(np.einsum('...i,...i', [1, 2, 3], [2, 3, 4]), 20) + assert_equal(np.einsum('...i,...i', [1, 2, 3], [2, 3, 4], + optimize='greedy'), 20) + + # The iterator had an issue with buffering this reduction + a = np.ones((5, 12, 4, 2, 3), np.int64) + b = np.ones((5, 12, 11), np.int64) + assert_equal(np.einsum('ijklm,ijn,ijn->', a, b, b), + np.einsum('ijklm,ijn->', a, b)) + assert_equal(np.einsum('ijklm,ijn,ijn->', a, b, b, optimize=True), + np.einsum('ijklm,ijn->', a, b, optimize=True)) + + # Issue #2027, was a problem in the contiguous 3-argument + # inner loop implementation + a = np.arange(1, 3) + b = np.arange(1, 5).reshape(2, 2) + c = np.arange(1, 9).reshape(4, 2) + assert_equal(np.einsum('x,yx,zx->xzy', a, b, c), + [[[1, 3], [3, 9], [5, 15], [7, 21]], + [[8, 16], [16, 32], [24, 48], [32, 64]]]) + assert_equal(np.einsum('x,yx,zx->xzy', a, b, c, optimize=True), + [[[1, 3], [3, 9], [5, 15], [7, 21]], + [[8, 16], [16, 32], [24, 48], [32, 64]]]) + + # Ensure explicitly setting out=None does not cause an error + # see issue gh-15776 and issue gh-15256 + assert_equal(np.einsum('i,j', [1], [2], out=None), [[2]]) + + def test_object_loop(self): + + class Mult: + def __mul__(self, other): + return 42 + + objMult = np.array([Mult()]) + objNULL = np.ndarray(buffer = b'\0' * np.intp(0).itemsize, shape=1, dtype=object) + + with pytest.raises(TypeError): + np.einsum("i,j", [1], objNULL) + with pytest.raises(TypeError): + np.einsum("i,j", objNULL, [1]) + assert np.einsum("i,j", objMult, objMult) == 42 + + def test_subscript_range(self): + # Issue #7741, make sure that all letters of Latin alphabet (both uppercase & lowercase) can be used + # when creating a subscript from arrays + a = np.ones((2, 3)) + b = np.ones((3, 4)) + np.einsum(a, [0, 20], b, [20, 2], [0, 2], optimize=False) + np.einsum(a, [0, 27], b, [27, 2], [0, 2], optimize=False) + np.einsum(a, [0, 51], b, [51, 2], [0, 2], optimize=False) + assert_raises(ValueError, lambda: np.einsum(a, [0, 52], b, [52, 2], [0, 2], optimize=False)) + assert_raises(ValueError, lambda: np.einsum(a, [-1, 5], b, [5, 2], [-1, 2], optimize=False)) + + def test_einsum_broadcast(self): + # Issue #2455 change in handling ellipsis + # remove the 'middle broadcast' error + # only use the 'RIGHT' iteration in prepare_op_axes + # adds auto broadcast on left where it belongs + # broadcast on right has to be explicit + # We need to test the optimized parsing as well + + A = np.arange(2 * 3 * 4).reshape(2, 3, 4) + B = np.arange(3) + ref = np.einsum('ijk,j->ijk', A, B, optimize=False) + for opt in [True, False]: + assert_equal(np.einsum('ij...,j...->ij...', A, B, optimize=opt), ref) + assert_equal(np.einsum('ij...,...j->ij...', A, B, optimize=opt), ref) + assert_equal(np.einsum('ij...,j->ij...', A, B, optimize=opt), ref) # used to raise error + + A = np.arange(12).reshape((4, 3)) + B = np.arange(6).reshape((3, 2)) + ref = np.einsum('ik,kj->ij', A, B, optimize=False) + for opt in [True, False]: + assert_equal(np.einsum('ik...,k...->i...', A, B, optimize=opt), ref) + assert_equal(np.einsum('ik...,...kj->i...j', A, B, optimize=opt), ref) + assert_equal(np.einsum('...k,kj', A, B, optimize=opt), ref) # used to raise error + assert_equal(np.einsum('ik,k...->i...', A, B, optimize=opt), ref) # used to raise error + + dims = [2, 3, 4, 5] + a = np.arange(np.prod(dims)).reshape(dims) + v = np.arange(dims[2]) + ref = np.einsum('ijkl,k->ijl', a, v, optimize=False) + for opt in [True, False]: + assert_equal(np.einsum('ijkl,k', a, v, optimize=opt), ref) + assert_equal(np.einsum('...kl,k', a, v, optimize=opt), ref) # used to raise error + assert_equal(np.einsum('...kl,k...', a, v, optimize=opt), ref) + + J, K, M = 160, 160, 120 + A = np.arange(J * K * M).reshape(1, 1, 1, J, K, M) + B = np.arange(J * K * M * 3).reshape(J, K, M, 3) + ref = np.einsum('...lmn,...lmno->...o', A, B, optimize=False) + for opt in [True, False]: + assert_equal(np.einsum('...lmn,lmno->...o', A, B, + optimize=opt), ref) # used to raise error + + def test_einsum_fixedstridebug(self): + # Issue #4485 obscure einsum bug + # This case revealed a bug in nditer where it reported a stride + # as 'fixed' (0) when it was in fact not fixed during processing + # (0 or 4). The reason for the bug was that the check for a fixed + # stride was using the information from the 2D inner loop reuse + # to restrict the iteration dimensions it had to validate to be + # the same, but that 2D inner loop reuse logic is only triggered + # during the buffer copying step, and hence it was invalid to + # rely on those values. The fix is to check all the dimensions + # of the stride in question, which in the test case reveals that + # the stride is not fixed. + # + # NOTE: This test is triggered by the fact that the default buffersize, + # used by einsum, is 8192, and 3*2731 = 8193, is larger than that + # and results in a mismatch between the buffering and the + # striding for operand A. + A = np.arange(2 * 3).reshape(2, 3).astype(np.float32) + B = np.arange(2 * 3 * 2731).reshape(2, 3, 2731).astype(np.int16) + es = np.einsum('cl, cpx->lpx', A, B) + tp = np.tensordot(A, B, axes=(0, 0)) + assert_equal(es, tp) + # The following is the original test case from the bug report, + # made repeatable by changing random arrays to aranges. + A = np.arange(3 * 3).reshape(3, 3).astype(np.float64) + B = np.arange(3 * 3 * 64 * 64).reshape(3, 3, 64, 64).astype(np.float32) + es = np.einsum('cl, cpxy->lpxy', A, B) + tp = np.tensordot(A, B, axes=(0, 0)) + assert_equal(es, tp) + + def test_einsum_fixed_collapsingbug(self): + # Issue #5147. + # The bug only occurred when output argument of einssum was used. + x = np.random.normal(0, 1, (5, 5, 5, 5)) + y1 = np.zeros((5, 5)) + np.einsum('aabb->ab', x, out=y1) + idx = np.arange(5) + y2 = x[idx[:, None], idx[:, None], idx, idx] + assert_equal(y1, y2) + + def test_einsum_failed_on_p9_and_s390x(self): + # Issues gh-14692 and gh-12689 + # Bug with signed vs unsigned char errored on power9 and s390x Linux + tensor = np.random.random_sample((10, 10, 10, 10)) + x = np.einsum('ijij->', tensor) + y = tensor.trace(axis1=0, axis2=2).trace() + assert_allclose(x, y) + + def test_einsum_all_contig_non_contig_output(self): + # Issue gh-5907, tests that the all contiguous special case + # actually checks the contiguity of the output + x = np.ones((5, 5)) + out = np.ones(10)[::2] + correct_base = np.ones(10) + correct_base[::2] = 5 + # Always worked (inner iteration is done with 0-stride): + np.einsum('mi,mi,mi->m', x, x, x, out=out) + assert_array_equal(out.base, correct_base) + # Example 1: + out = np.ones(10)[::2] + np.einsum('im,im,im->m', x, x, x, out=out) + assert_array_equal(out.base, correct_base) + # Example 2, buffering causes x to be contiguous but + # special cases do not catch the operation before: + out = np.ones((2, 2, 2))[..., 0] + correct_base = np.ones((2, 2, 2)) + correct_base[..., 0] = 2 + x = np.ones((2, 2), np.float32) + np.einsum('ij,jk->ik', x, x, out=out) + assert_array_equal(out.base, correct_base) + + @pytest.mark.parametrize("dtype", + np.typecodes["AllFloat"] + np.typecodes["AllInteger"]) + def test_different_paths(self, dtype): + # Test originally added to cover broken float16 path: gh-20305 + # Likely most are covered elsewhere, at least partially. + dtype = np.dtype(dtype) + # Simple test, designed to exercise most specialized code paths, + # note the +0.5 for floats. This makes sure we use a float value + # where the results must be exact. + arr = (np.arange(7) + 0.5).astype(dtype) + scalar = np.array(2, dtype=dtype) + + # contig -> scalar: + res = np.einsum('i->', arr) + assert res == arr.sum() + # contig, contig -> contig: + res = np.einsum('i,i->i', arr, arr) + assert_array_equal(res, arr * arr) + # noncontig, noncontig -> contig: + res = np.einsum('i,i->i', arr.repeat(2)[::2], arr.repeat(2)[::2]) + assert_array_equal(res, arr * arr) + # contig + contig -> scalar + assert np.einsum('i,i->', arr, arr) == (arr * arr).sum() + # contig + scalar -> contig (with out) + out = np.ones(7, dtype=dtype) + res = np.einsum('i,->i', arr, dtype.type(2), out=out) + assert_array_equal(res, arr * dtype.type(2)) + # scalar + contig -> contig (with out) + res = np.einsum(',i->i', scalar, arr) + assert_array_equal(res, arr * dtype.type(2)) + # scalar + contig -> scalar + res = np.einsum(',i->', scalar, arr) + # Use einsum to compare to not have difference due to sum round-offs: + assert res == np.einsum('i->', scalar * arr) + # contig + scalar -> scalar + res = np.einsum('i,->', arr, scalar) + # Use einsum to compare to not have difference due to sum round-offs: + assert res == np.einsum('i->', scalar * arr) + # contig + contig + contig -> scalar + arr = np.array([0.5, 0.5, 0.25, 4.5, 3.], dtype=dtype) + res = np.einsum('i,i,i->', arr, arr, arr) + assert_array_equal(res, (arr * arr * arr).sum()) + # four arrays: + res = np.einsum('i,i,i,i->', arr, arr, arr, arr) + assert_array_equal(res, (arr * arr * arr * arr).sum()) + + def test_small_boolean_arrays(self): + # See gh-5946. + # Use array of True embedded in False. + a = np.zeros((16, 1, 1), dtype=np.bool)[:2] + a[...] = True + out = np.zeros((16, 1, 1), dtype=np.bool)[:2] + tgt = np.ones((2, 1, 1), dtype=np.bool) + res = np.einsum('...ij,...jk->...ik', a, a, out=out) + assert_equal(res, tgt) + + def test_out_is_res(self): + a = np.arange(9).reshape(3, 3) + res = np.einsum('...ij,...jk->...ik', a, a, out=a) + assert res is a + + def optimize_compare(self, subscripts, operands=None): + # Tests all paths of the optimization function against + # conventional einsum + if operands is None: + args = [subscripts] + terms = subscripts.split('->')[0].split(',') + for term in terms: + dims = [global_size_dict[x] for x in term] + args.append(np.random.rand(*dims)) + else: + args = [subscripts] + operands + + noopt = np.einsum(*args, optimize=False) + opt = np.einsum(*args, optimize='greedy') + assert_almost_equal(opt, noopt) + opt = np.einsum(*args, optimize='optimal') + assert_almost_equal(opt, noopt) + + def test_hadamard_like_products(self): + # Hadamard outer products + self.optimize_compare('a,ab,abc->abc') + self.optimize_compare('a,b,ab->ab') + + def test_index_transformations(self): + # Simple index transformation cases + self.optimize_compare('ea,fb,gc,hd,abcd->efgh') + self.optimize_compare('ea,fb,abcd,gc,hd->efgh') + self.optimize_compare('abcd,ea,fb,gc,hd->efgh') + + def test_complex(self): + # Long test cases + self.optimize_compare('acdf,jbje,gihb,hfac,gfac,gifabc,hfac') + self.optimize_compare('acdf,jbje,gihb,hfac,gfac,gifabc,hfac') + self.optimize_compare('cd,bdhe,aidb,hgca,gc,hgibcd,hgac') + self.optimize_compare('abhe,hidj,jgba,hiab,gab') + self.optimize_compare('bde,cdh,agdb,hica,ibd,hgicd,hiac') + self.optimize_compare('chd,bde,agbc,hiad,hgc,hgi,hiad') + self.optimize_compare('chd,bde,agbc,hiad,bdi,cgh,agdb') + self.optimize_compare('bdhe,acad,hiab,agac,hibd') + + def test_collapse(self): + # Inner products + self.optimize_compare('ab,ab,c->') + self.optimize_compare('ab,ab,c->c') + self.optimize_compare('ab,ab,cd,cd->') + self.optimize_compare('ab,ab,cd,cd->ac') + self.optimize_compare('ab,ab,cd,cd->cd') + self.optimize_compare('ab,ab,cd,cd,ef,ef->') + + def test_expand(self): + # Outer products + self.optimize_compare('ab,cd,ef->abcdef') + self.optimize_compare('ab,cd,ef->acdf') + self.optimize_compare('ab,cd,de->abcde') + self.optimize_compare('ab,cd,de->be') + self.optimize_compare('ab,bcd,cd->abcd') + self.optimize_compare('ab,bcd,cd->abd') + + def test_edge_cases(self): + # Difficult edge cases for optimization + self.optimize_compare('eb,cb,fb->cef') + self.optimize_compare('dd,fb,be,cdb->cef') + self.optimize_compare('bca,cdb,dbf,afc->') + self.optimize_compare('dcc,fce,ea,dbf->ab') + self.optimize_compare('fdf,cdd,ccd,afe->ae') + self.optimize_compare('abcd,ad') + self.optimize_compare('ed,fcd,ff,bcf->be') + self.optimize_compare('baa,dcf,af,cde->be') + self.optimize_compare('bd,db,eac->ace') + self.optimize_compare('fff,fae,bef,def->abd') + self.optimize_compare('efc,dbc,acf,fd->abe') + self.optimize_compare('ba,ac,da->bcd') + + def test_inner_product(self): + # Inner products + self.optimize_compare('ab,ab') + self.optimize_compare('ab,ba') + self.optimize_compare('abc,abc') + self.optimize_compare('abc,bac') + self.optimize_compare('abc,cba') + + def test_random_cases(self): + # Randomly built test cases + self.optimize_compare('aab,fa,df,ecc->bde') + self.optimize_compare('ecb,fef,bad,ed->ac') + self.optimize_compare('bcf,bbb,fbf,fc->') + self.optimize_compare('bb,ff,be->e') + self.optimize_compare('bcb,bb,fc,fff->') + self.optimize_compare('fbb,dfd,fc,fc->') + self.optimize_compare('afd,ba,cc,dc->bf') + self.optimize_compare('adb,bc,fa,cfc->d') + self.optimize_compare('bbd,bda,fc,db->acf') + self.optimize_compare('dba,ead,cad->bce') + self.optimize_compare('aef,fbc,dca->bde') + + def test_combined_views_mapping(self): + # gh-10792 + a = np.arange(9).reshape(1, 1, 3, 1, 3) + b = np.einsum('bbcdc->d', a) + assert_equal(b, [12]) + + def test_broadcasting_dot_cases(self): + # Ensures broadcasting cases are not mistaken for GEMM + + a = np.random.rand(1, 5, 4) + b = np.random.rand(4, 6) + c = np.random.rand(5, 6) + d = np.random.rand(10) + + self.optimize_compare('ijk,kl,jl', operands=[a, b, c]) + self.optimize_compare('ijk,kl,jl,i->i', operands=[a, b, c, d]) + + e = np.random.rand(1, 1, 5, 4) + f = np.random.rand(7, 7) + self.optimize_compare('abjk,kl,jl', operands=[e, b, c]) + self.optimize_compare('abjk,kl,jl,ab->ab', operands=[e, b, c, f]) + + # Edge case found in gh-11308 + g = np.arange(64).reshape(2, 4, 8) + self.optimize_compare('obk,ijk->ioj', operands=[g, g]) + + def test_output_order(self): + # Ensure output order is respected for optimize cases, the below + # contraction should yield a reshaped tensor view + # gh-16415 + + a = np.ones((2, 3, 5), order='F') + b = np.ones((4, 3), order='F') + + for opt in [True, False]: + tmp = np.einsum('...ft,mf->...mt', a, b, order='a', optimize=opt) + assert_(tmp.flags.f_contiguous) + + tmp = np.einsum('...ft,mf->...mt', a, b, order='f', optimize=opt) + assert_(tmp.flags.f_contiguous) + + tmp = np.einsum('...ft,mf->...mt', a, b, order='c', optimize=opt) + assert_(tmp.flags.c_contiguous) + + tmp = np.einsum('...ft,mf->...mt', a, b, order='k', optimize=opt) + assert_(tmp.flags.c_contiguous is False) + assert_(tmp.flags.f_contiguous is False) + + tmp = np.einsum('...ft,mf->...mt', a, b, optimize=opt) + assert_(tmp.flags.c_contiguous is False) + assert_(tmp.flags.f_contiguous is False) + + c = np.ones((4, 3), order='C') + for opt in [True, False]: + tmp = np.einsum('...ft,mf->...mt', a, c, order='a', optimize=opt) + assert_(tmp.flags.c_contiguous) + + d = np.ones((2, 3, 5), order='C') + for opt in [True, False]: + tmp = np.einsum('...ft,mf->...mt', d, c, order='a', optimize=opt) + assert_(tmp.flags.c_contiguous) + +class TestEinsumPath: + def build_operands(self, string, size_dict=global_size_dict): + + # Builds views based off initial operands + operands = [string] + terms = string.split('->')[0].split(',') + for term in terms: + dims = [size_dict[x] for x in term] + operands.append(np.random.rand(*dims)) + + return operands + + def assert_path_equal(self, comp, benchmark): + # Checks if list of tuples are equivalent + ret = (len(comp) == len(benchmark)) + assert_(ret) + for pos in range(len(comp) - 1): + ret &= isinstance(comp[pos + 1], tuple) + ret &= (comp[pos + 1] == benchmark[pos + 1]) + assert_(ret) + + def test_memory_contraints(self): + # Ensure memory constraints are satisfied + + outer_test = self.build_operands('a,b,c->abc') + + path, path_str = np.einsum_path(*outer_test, optimize=('greedy', 0)) + self.assert_path_equal(path, ['einsum_path', (0, 1, 2)]) + + path, path_str = np.einsum_path(*outer_test, optimize=('optimal', 0)) + self.assert_path_equal(path, ['einsum_path', (0, 1, 2)]) + + long_test = self.build_operands('acdf,jbje,gihb,hfac') + path, path_str = np.einsum_path(*long_test, optimize=('greedy', 0)) + self.assert_path_equal(path, ['einsum_path', (0, 1, 2, 3)]) + + path, path_str = np.einsum_path(*long_test, optimize=('optimal', 0)) + self.assert_path_equal(path, ['einsum_path', (0, 1, 2, 3)]) + + def test_long_paths(self): + # Long complex cases + + # Long test 1 + long_test1 = self.build_operands('acdf,jbje,gihb,hfac,gfac,gifabc,hfac') + path, path_str = np.einsum_path(*long_test1, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', + (3, 6), (3, 4), (2, 4), (2, 3), (0, 2), (0, 1)]) + + path, path_str = np.einsum_path(*long_test1, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', + (3, 6), (3, 4), (2, 4), (2, 3), (0, 2), (0, 1)]) + + # Long test 2 + long_test2 = self.build_operands('chd,bde,agbc,hiad,bdi,cgh,agdb') + path, path_str = np.einsum_path(*long_test2, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', + (3, 4), (0, 3), (3, 4), (1, 3), (1, 2), (0, 1)]) + + path, path_str = np.einsum_path(*long_test2, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', + (0, 5), (1, 4), (3, 4), (1, 3), (1, 2), (0, 1)]) + + def test_edge_paths(self): + # Difficult edge cases + + # Edge test1 + edge_test1 = self.build_operands('eb,cb,fb->cef') + path, path_str = np.einsum_path(*edge_test1, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', (0, 2), (0, 1)]) + + path, path_str = np.einsum_path(*edge_test1, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', (0, 2), (0, 1)]) + + # Edge test2 + edge_test2 = self.build_operands('dd,fb,be,cdb->cef') + path, path_str = np.einsum_path(*edge_test2, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', (0, 3), (0, 1), (0, 1)]) + + path, path_str = np.einsum_path(*edge_test2, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', (0, 3), (0, 1), (0, 1)]) + + # Edge test3 + edge_test3 = self.build_operands('bca,cdb,dbf,afc->') + path, path_str = np.einsum_path(*edge_test3, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', (1, 2), (0, 2), (0, 1)]) + + path, path_str = np.einsum_path(*edge_test3, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', (1, 2), (0, 2), (0, 1)]) + + # Edge test4 + edge_test4 = self.build_operands('dcc,fce,ea,dbf->ab') + path, path_str = np.einsum_path(*edge_test4, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', (1, 2), (0, 1), (0, 1)]) + + path, path_str = np.einsum_path(*edge_test4, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', (1, 2), (0, 2), (0, 1)]) + + # Edge test5 + edge_test4 = self.build_operands('a,ac,ab,ad,cd,bd,bc->', + size_dict={"a": 20, "b": 20, "c": 20, "d": 20}) + path, path_str = np.einsum_path(*edge_test4, optimize='greedy') + self.assert_path_equal(path, ['einsum_path', (0, 1), (0, 1, 2, 3, 4, 5)]) + + path, path_str = np.einsum_path(*edge_test4, optimize='optimal') + self.assert_path_equal(path, ['einsum_path', (0, 1), (0, 1, 2, 3, 4, 5)]) + + def test_path_type_input(self): + # Test explicit path handling + path_test = self.build_operands('dcc,fce,ea,dbf->ab') + + path, path_str = np.einsum_path(*path_test, optimize=False) + self.assert_path_equal(path, ['einsum_path', (0, 1, 2, 3)]) + + path, path_str = np.einsum_path(*path_test, optimize=True) + self.assert_path_equal(path, ['einsum_path', (1, 2), (0, 1), (0, 1)]) + + exp_path = ['einsum_path', (0, 2), (0, 2), (0, 1)] + path, path_str = np.einsum_path(*path_test, optimize=exp_path) + self.assert_path_equal(path, exp_path) + + # Double check einsum works on the input path + noopt = np.einsum(*path_test, optimize=False) + opt = np.einsum(*path_test, optimize=exp_path) + assert_almost_equal(noopt, opt) + + def test_path_type_input_internal_trace(self): + #gh-20962 + path_test = self.build_operands('cab,cdd->ab') + exp_path = ['einsum_path', (1,), (0, 1)] + + path, path_str = np.einsum_path(*path_test, optimize=exp_path) + self.assert_path_equal(path, exp_path) + + # Double check einsum works on the input path + noopt = np.einsum(*path_test, optimize=False) + opt = np.einsum(*path_test, optimize=exp_path) + assert_almost_equal(noopt, opt) + + def test_path_type_input_invalid(self): + path_test = self.build_operands('ab,bc,cd,de->ae') + exp_path = ['einsum_path', (2, 3), (0, 1)] + assert_raises(RuntimeError, np.einsum, *path_test, optimize=exp_path) + assert_raises( + RuntimeError, np.einsum_path, *path_test, optimize=exp_path) + + path_test = self.build_operands('a,a,a->a') + exp_path = ['einsum_path', (1,), (0, 1)] + assert_raises(RuntimeError, np.einsum, *path_test, optimize=exp_path) + assert_raises( + RuntimeError, np.einsum_path, *path_test, optimize=exp_path) + + def test_spaces(self): + #gh-10794 + arr = np.array([[1]]) + for sp in itertools.product(['', ' '], repeat=4): + # no error for any spacing + np.einsum('{}...a{}->{}...a{}'.format(*sp), arr) + +def test_overlap(): + a = np.arange(9, dtype=int).reshape(3, 3) + b = np.arange(9, dtype=int).reshape(3, 3) + d = np.dot(a, b) + # sanity check + c = np.einsum('ij,jk->ik', a, b) + assert_equal(c, d) + #gh-10080, out overlaps one of the operands + c = np.einsum('ij,jk->ik', a, b, out=b) + assert_equal(c, d) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_errstate.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_errstate.py new file mode 100644 index 0000000000000000000000000000000000000000..628c9ddca4113a3e9f11813dc3cbd6e6b2d0c44f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_errstate.py @@ -0,0 +1,129 @@ +import pytest +import sysconfig + +import numpy as np +from numpy.testing import assert_, assert_raises, IS_WASM + +# The floating point emulation on ARM EABI systems lacking a hardware FPU is +# known to be buggy. This is an attempt to identify these hosts. It may not +# catch all possible cases, but it catches the known cases of gh-413 and +# gh-15562. +hosttype = sysconfig.get_config_var('HOST_GNU_TYPE') +arm_softfloat = False if hosttype is None else hosttype.endswith('gnueabi') + +class TestErrstate: + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif(arm_softfloat, + reason='platform/cpu issue with FPU (gh-413,-15562)') + def test_invalid(self): + with np.errstate(all='raise', under='ignore'): + a = -np.arange(3) + # This should work + with np.errstate(invalid='ignore'): + np.sqrt(a) + # While this should fail! + with assert_raises(FloatingPointError): + np.sqrt(a) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif(arm_softfloat, + reason='platform/cpu issue with FPU (gh-15562)') + def test_divide(self): + with np.errstate(all='raise', under='ignore'): + a = -np.arange(3) + # This should work + with np.errstate(divide='ignore'): + a // 0 + # While this should fail! + with assert_raises(FloatingPointError): + a // 0 + # As should this, see gh-15562 + with assert_raises(FloatingPointError): + a // a + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif(arm_softfloat, + reason='platform/cpu issue with FPU (gh-15562)') + def test_errcall(self): + count = 0 + def foo(*args): + nonlocal count + count += 1 + + olderrcall = np.geterrcall() + with np.errstate(call=foo): + assert np.geterrcall() is foo + with np.errstate(call=None): + assert np.geterrcall() is None + assert np.geterrcall() is olderrcall + assert count == 0 + + with np.errstate(call=foo, invalid="call"): + np.array(np.inf) - np.array(np.inf) + + assert count == 1 + + def test_errstate_decorator(self): + @np.errstate(all='ignore') + def foo(): + a = -np.arange(3) + a // 0 + + foo() + + def test_errstate_enter_once(self): + errstate = np.errstate(invalid="warn") + with errstate: + pass + + # The errstate context cannot be entered twice as that would not be + # thread-safe + with pytest.raises(TypeError, + match="Cannot enter `np.errstate` twice"): + with errstate: + pass + + @pytest.mark.skipif(IS_WASM, reason="wasm doesn't support asyncio") + def test_asyncio_safe(self): + # asyncio may not always work, lets assume its fine if missing + # Pyodide/wasm doesn't support it. If this test makes problems, + # it should just be skipped liberally (or run differently). + asyncio = pytest.importorskip("asyncio") + + @np.errstate(invalid="ignore") + def decorated(): + # Decorated non-async function (it is not safe to decorate an + # async one) + assert np.geterr()["invalid"] == "ignore" + + async def func1(): + decorated() + await asyncio.sleep(0.1) + decorated() + + async def func2(): + with np.errstate(invalid="raise"): + assert np.geterr()["invalid"] == "raise" + await asyncio.sleep(0.125) + assert np.geterr()["invalid"] == "raise" + + # for good sport, a third one with yet another state: + async def func3(): + with np.errstate(invalid="print"): + assert np.geterr()["invalid"] == "print" + await asyncio.sleep(0.11) + assert np.geterr()["invalid"] == "print" + + async def main(): + # simply run all three function multiple times: + await asyncio.gather( + func1(), func2(), func3(), func1(), func2(), func3(), + func1(), func2(), func3(), func1(), func2(), func3()) + + loop = asyncio.new_event_loop() + with np.errstate(invalid="warn"): + asyncio.run(main()) + assert np.geterr()["invalid"] == "warn" + + assert np.geterr()["invalid"] == "warn" # the default + loop.close() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_extint128.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_extint128.py new file mode 100644 index 0000000000000000000000000000000000000000..bd97cc20c016ff912a80f6b2f0f79037061d9dcb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_extint128.py @@ -0,0 +1,219 @@ +import itertools +import contextlib +import operator +import pytest + +import numpy as np +import numpy._core._multiarray_tests as mt + +from numpy.testing import assert_raises, assert_equal + + +INT64_MAX = np.iinfo(np.int64).max +INT64_MIN = np.iinfo(np.int64).min +INT64_MID = 2**32 + +# int128 is not two's complement, the sign bit is separate +INT128_MAX = 2**128 - 1 +INT128_MIN = -INT128_MAX +INT128_MID = 2**64 + +INT64_VALUES = ( + [INT64_MIN + j for j in range(20)] + + [INT64_MAX - j for j in range(20)] + + [INT64_MID + j for j in range(-20, 20)] + + [2*INT64_MID + j for j in range(-20, 20)] + + [INT64_MID//2 + j for j in range(-20, 20)] + + list(range(-70, 70)) +) + +INT128_VALUES = ( + [INT128_MIN + j for j in range(20)] + + [INT128_MAX - j for j in range(20)] + + [INT128_MID + j for j in range(-20, 20)] + + [2*INT128_MID + j for j in range(-20, 20)] + + [INT128_MID//2 + j for j in range(-20, 20)] + + list(range(-70, 70)) + + [False] # negative zero +) + +INT64_POS_VALUES = [x for x in INT64_VALUES if x > 0] + + +@contextlib.contextmanager +def exc_iter(*args): + """ + Iterate over Cartesian product of *args, and if an exception is raised, + add information of the current iterate. + """ + + value = [None] + + def iterate(): + for v in itertools.product(*args): + value[0] = v + yield v + + try: + yield iterate() + except Exception: + import traceback + msg = "At: %r\n%s" % (repr(value[0]), + traceback.format_exc()) + raise AssertionError(msg) + + +def test_safe_binop(): + # Test checked arithmetic routines + + ops = [ + (operator.add, 1), + (operator.sub, 2), + (operator.mul, 3) + ] + + with exc_iter(ops, INT64_VALUES, INT64_VALUES) as it: + for xop, a, b in it: + pyop, op = xop + c = pyop(a, b) + + if not (INT64_MIN <= c <= INT64_MAX): + assert_raises(OverflowError, mt.extint_safe_binop, a, b, op) + else: + d = mt.extint_safe_binop(a, b, op) + if c != d: + # assert_equal is slow + assert_equal(d, c) + + +def test_to_128(): + with exc_iter(INT64_VALUES) as it: + for a, in it: + b = mt.extint_to_128(a) + if a != b: + assert_equal(b, a) + + +def test_to_64(): + with exc_iter(INT128_VALUES) as it: + for a, in it: + if not (INT64_MIN <= a <= INT64_MAX): + assert_raises(OverflowError, mt.extint_to_64, a) + else: + b = mt.extint_to_64(a) + if a != b: + assert_equal(b, a) + + +def test_mul_64_64(): + with exc_iter(INT64_VALUES, INT64_VALUES) as it: + for a, b in it: + c = a * b + d = mt.extint_mul_64_64(a, b) + if c != d: + assert_equal(d, c) + + +def test_add_128(): + with exc_iter(INT128_VALUES, INT128_VALUES) as it: + for a, b in it: + c = a + b + if not (INT128_MIN <= c <= INT128_MAX): + assert_raises(OverflowError, mt.extint_add_128, a, b) + else: + d = mt.extint_add_128(a, b) + if c != d: + assert_equal(d, c) + + +def test_sub_128(): + with exc_iter(INT128_VALUES, INT128_VALUES) as it: + for a, b in it: + c = a - b + if not (INT128_MIN <= c <= INT128_MAX): + assert_raises(OverflowError, mt.extint_sub_128, a, b) + else: + d = mt.extint_sub_128(a, b) + if c != d: + assert_equal(d, c) + + +def test_neg_128(): + with exc_iter(INT128_VALUES) as it: + for a, in it: + b = -a + c = mt.extint_neg_128(a) + if b != c: + assert_equal(c, b) + + +def test_shl_128(): + with exc_iter(INT128_VALUES) as it: + for a, in it: + if a < 0: + b = -(((-a) << 1) & (2**128-1)) + else: + b = (a << 1) & (2**128-1) + c = mt.extint_shl_128(a) + if b != c: + assert_equal(c, b) + + +def test_shr_128(): + with exc_iter(INT128_VALUES) as it: + for a, in it: + if a < 0: + b = -((-a) >> 1) + else: + b = a >> 1 + c = mt.extint_shr_128(a) + if b != c: + assert_equal(c, b) + + +def test_gt_128(): + with exc_iter(INT128_VALUES, INT128_VALUES) as it: + for a, b in it: + c = a > b + d = mt.extint_gt_128(a, b) + if c != d: + assert_equal(d, c) + + +@pytest.mark.slow +def test_divmod_128_64(): + with exc_iter(INT128_VALUES, INT64_POS_VALUES) as it: + for a, b in it: + if a >= 0: + c, cr = divmod(a, b) + else: + c, cr = divmod(-a, b) + c = -c + cr = -cr + + d, dr = mt.extint_divmod_128_64(a, b) + + if c != d or d != dr or b*d + dr != a: + assert_equal(d, c) + assert_equal(dr, cr) + assert_equal(b*d + dr, a) + + +def test_floordiv_128_64(): + with exc_iter(INT128_VALUES, INT64_POS_VALUES) as it: + for a, b in it: + c = a // b + d = mt.extint_floordiv_128_64(a, b) + + if c != d: + assert_equal(d, c) + + +def test_ceildiv_128_64(): + with exc_iter(INT128_VALUES, INT64_POS_VALUES) as it: + for a, b in it: + c = (a + b - 1) // b + d = mt.extint_ceildiv_128_64(a, b) + + if c != d: + assert_equal(d, c) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_function_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_function_base.py new file mode 100644 index 0000000000000000000000000000000000000000..b879f12ae8ea0e7e96cc20586be611fa6f4b4d84 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_function_base.py @@ -0,0 +1,488 @@ +import sys +import platform +import pytest + +import numpy as np +from numpy import ( + logspace, linspace, geomspace, dtype, array, arange, isnan, + ndarray, sqrt, nextafter, stack, errstate + ) +from numpy._core import sctypes +from numpy._core.function_base import add_newdoc +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_array_equal, assert_allclose, + IS_PYPY + ) + +def _is_armhf(): + # Check if the current platform is ARMHF (32-bit ARM architecture) + return platform.machine().startswith('arm') and platform.architecture()[0] == '32bit' + +class PhysicalQuantity(float): + def __new__(cls, value): + return float.__new__(cls, value) + + def __add__(self, x): + assert_(isinstance(x, PhysicalQuantity)) + return PhysicalQuantity(float(x) + float(self)) + __radd__ = __add__ + + def __sub__(self, x): + assert_(isinstance(x, PhysicalQuantity)) + return PhysicalQuantity(float(self) - float(x)) + + def __rsub__(self, x): + assert_(isinstance(x, PhysicalQuantity)) + return PhysicalQuantity(float(x) - float(self)) + + def __mul__(self, x): + return PhysicalQuantity(float(x) * float(self)) + __rmul__ = __mul__ + + def __div__(self, x): + return PhysicalQuantity(float(self) / float(x)) + + def __rdiv__(self, x): + return PhysicalQuantity(float(x) / float(self)) + + +class PhysicalQuantity2(ndarray): + __array_priority__ = 10 + + +class TestLogspace: + + def test_basic(self): + y = logspace(0, 6) + assert_(len(y) == 50) + y = logspace(0, 6, num=100) + assert_(y[-1] == 10 ** 6) + y = logspace(0, 6, endpoint=False) + assert_(y[-1] < 10 ** 6) + y = logspace(0, 6, num=7) + assert_array_equal(y, [1, 10, 100, 1e3, 1e4, 1e5, 1e6]) + + def test_start_stop_array(self): + start = array([0., 1.]) + stop = array([6., 7.]) + t1 = logspace(start, stop, 6) + t2 = stack([logspace(_start, _stop, 6) + for _start, _stop in zip(start, stop)], axis=1) + assert_equal(t1, t2) + t3 = logspace(start, stop[0], 6) + t4 = stack([logspace(_start, stop[0], 6) + for _start in start], axis=1) + assert_equal(t3, t4) + t5 = logspace(start, stop, 6, axis=-1) + assert_equal(t5, t2.T) + + @pytest.mark.parametrize("axis", [0, 1, -1]) + def test_base_array(self, axis: int): + start = 1 + stop = 2 + num = 6 + base = array([1, 2]) + t1 = logspace(start, stop, num=num, base=base, axis=axis) + t2 = stack( + [logspace(start, stop, num=num, base=_base) for _base in base], + axis=(axis + 1) % t1.ndim, + ) + assert_equal(t1, t2) + + @pytest.mark.parametrize("axis", [0, 1, -1]) + def test_stop_base_array(self, axis: int): + start = 1 + stop = array([2, 3]) + num = 6 + base = array([1, 2]) + t1 = logspace(start, stop, num=num, base=base, axis=axis) + t2 = stack( + [logspace(start, _stop, num=num, base=_base) + for _stop, _base in zip(stop, base)], + axis=(axis + 1) % t1.ndim, + ) + assert_equal(t1, t2) + + def test_dtype(self): + y = logspace(0, 6, dtype='float32') + assert_equal(y.dtype, dtype('float32')) + y = logspace(0, 6, dtype='float64') + assert_equal(y.dtype, dtype('float64')) + y = logspace(0, 6, dtype='int32') + assert_equal(y.dtype, dtype('int32')) + + def test_physical_quantities(self): + a = PhysicalQuantity(1.0) + b = PhysicalQuantity(5.0) + assert_equal(logspace(a, b), logspace(1.0, 5.0)) + + def test_subclass(self): + a = array(1).view(PhysicalQuantity2) + b = array(7).view(PhysicalQuantity2) + ls = logspace(a, b) + assert type(ls) is PhysicalQuantity2 + assert_equal(ls, logspace(1.0, 7.0)) + ls = logspace(a, b, 1) + assert type(ls) is PhysicalQuantity2 + assert_equal(ls, logspace(1.0, 7.0, 1)) + + +class TestGeomspace: + + def test_basic(self): + y = geomspace(1, 1e6) + assert_(len(y) == 50) + y = geomspace(1, 1e6, num=100) + assert_(y[-1] == 10 ** 6) + y = geomspace(1, 1e6, endpoint=False) + assert_(y[-1] < 10 ** 6) + y = geomspace(1, 1e6, num=7) + assert_array_equal(y, [1, 10, 100, 1e3, 1e4, 1e5, 1e6]) + + y = geomspace(8, 2, num=3) + assert_allclose(y, [8, 4, 2]) + assert_array_equal(y.imag, 0) + + y = geomspace(-1, -100, num=3) + assert_array_equal(y, [-1, -10, -100]) + assert_array_equal(y.imag, 0) + + y = geomspace(-100, -1, num=3) + assert_array_equal(y, [-100, -10, -1]) + assert_array_equal(y.imag, 0) + + def test_boundaries_match_start_and_stop_exactly(self): + # make sure that the boundaries of the returned array exactly + # equal 'start' and 'stop' - this isn't obvious because + # np.exp(np.log(x)) isn't necessarily exactly equal to x + start = 0.3 + stop = 20.3 + + y = geomspace(start, stop, num=1) + assert_equal(y[0], start) + + y = geomspace(start, stop, num=1, endpoint=False) + assert_equal(y[0], start) + + y = geomspace(start, stop, num=3) + assert_equal(y[0], start) + assert_equal(y[-1], stop) + + y = geomspace(start, stop, num=3, endpoint=False) + assert_equal(y[0], start) + + def test_nan_interior(self): + with errstate(invalid='ignore'): + y = geomspace(-3, 3, num=4) + + assert_equal(y[0], -3.0) + assert_(isnan(y[1:-1]).all()) + assert_equal(y[3], 3.0) + + with errstate(invalid='ignore'): + y = geomspace(-3, 3, num=4, endpoint=False) + + assert_equal(y[0], -3.0) + assert_(isnan(y[1:]).all()) + + def test_complex(self): + # Purely imaginary + y = geomspace(1j, 16j, num=5) + assert_allclose(y, [1j, 2j, 4j, 8j, 16j]) + assert_array_equal(y.real, 0) + + y = geomspace(-4j, -324j, num=5) + assert_allclose(y, [-4j, -12j, -36j, -108j, -324j]) + assert_array_equal(y.real, 0) + + y = geomspace(1+1j, 1000+1000j, num=4) + assert_allclose(y, [1+1j, 10+10j, 100+100j, 1000+1000j]) + + y = geomspace(-1+1j, -1000+1000j, num=4) + assert_allclose(y, [-1+1j, -10+10j, -100+100j, -1000+1000j]) + + # Logarithmic spirals + y = geomspace(-1, 1, num=3, dtype=complex) + assert_allclose(y, [-1, 1j, +1]) + + y = geomspace(0+3j, -3+0j, 3) + assert_allclose(y, [0+3j, -3/sqrt(2)+3j/sqrt(2), -3+0j]) + y = geomspace(0+3j, 3+0j, 3) + assert_allclose(y, [0+3j, 3/sqrt(2)+3j/sqrt(2), 3+0j]) + y = geomspace(-3+0j, 0-3j, 3) + assert_allclose(y, [-3+0j, -3/sqrt(2)-3j/sqrt(2), 0-3j]) + y = geomspace(0+3j, -3+0j, 3) + assert_allclose(y, [0+3j, -3/sqrt(2)+3j/sqrt(2), -3+0j]) + y = geomspace(-2-3j, 5+7j, 7) + assert_allclose(y, [-2-3j, -0.29058977-4.15771027j, + 2.08885354-4.34146838j, 4.58345529-3.16355218j, + 6.41401745-0.55233457j, 6.75707386+3.11795092j, + 5+7j]) + + # Type promotion should prevent the -5 from becoming a NaN + y = geomspace(3j, -5, 2) + assert_allclose(y, [3j, -5]) + y = geomspace(-5, 3j, 2) + assert_allclose(y, [-5, 3j]) + + def test_complex_shortest_path(self): + # test the shortest logarithmic spiral is used, see gh-25644 + x = 1.2 + 3.4j + y = np.exp(1j*(np.pi-.1)) * x + z = np.geomspace(x, y, 5) + expected = np.array([1.2 + 3.4j, -1.47384 + 3.2905616j, + -3.33577588 + 1.36842949j, -3.36011056 - 1.30753855j, + -1.53343861 - 3.26321406j]) + np.testing.assert_array_almost_equal(z, expected) + + + def test_dtype(self): + y = geomspace(1, 1e6, dtype='float32') + assert_equal(y.dtype, dtype('float32')) + y = geomspace(1, 1e6, dtype='float64') + assert_equal(y.dtype, dtype('float64')) + y = geomspace(1, 1e6, dtype='int32') + assert_equal(y.dtype, dtype('int32')) + + # Native types + y = geomspace(1, 1e6, dtype=float) + assert_equal(y.dtype, dtype('float64')) + y = geomspace(1, 1e6, dtype=complex) + assert_equal(y.dtype, dtype('complex128')) + + def test_start_stop_array_scalar(self): + lim1 = array([120, 100], dtype="int8") + lim2 = array([-120, -100], dtype="int8") + lim3 = array([1200, 1000], dtype="uint16") + t1 = geomspace(lim1[0], lim1[1], 5) + t2 = geomspace(lim2[0], lim2[1], 5) + t3 = geomspace(lim3[0], lim3[1], 5) + t4 = geomspace(120.0, 100.0, 5) + t5 = geomspace(-120.0, -100.0, 5) + t6 = geomspace(1200.0, 1000.0, 5) + + # t3 uses float32, t6 uses float64 + assert_allclose(t1, t4, rtol=1e-2) + assert_allclose(t2, t5, rtol=1e-2) + assert_allclose(t3, t6, rtol=1e-5) + + def test_start_stop_array(self): + # Try to use all special cases. + start = array([1.e0, 32., 1j, -4j, 1+1j, -1]) + stop = array([1.e4, 2., 16j, -324j, 10000+10000j, 1]) + t1 = geomspace(start, stop, 5) + t2 = stack([geomspace(_start, _stop, 5) + for _start, _stop in zip(start, stop)], axis=1) + assert_equal(t1, t2) + t3 = geomspace(start, stop[0], 5) + t4 = stack([geomspace(_start, stop[0], 5) + for _start in start], axis=1) + assert_equal(t3, t4) + t5 = geomspace(start, stop, 5, axis=-1) + assert_equal(t5, t2.T) + + def test_physical_quantities(self): + a = PhysicalQuantity(1.0) + b = PhysicalQuantity(5.0) + assert_equal(geomspace(a, b), geomspace(1.0, 5.0)) + + def test_subclass(self): + a = array(1).view(PhysicalQuantity2) + b = array(7).view(PhysicalQuantity2) + gs = geomspace(a, b) + assert type(gs) is PhysicalQuantity2 + assert_equal(gs, geomspace(1.0, 7.0)) + gs = geomspace(a, b, 1) + assert type(gs) is PhysicalQuantity2 + assert_equal(gs, geomspace(1.0, 7.0, 1)) + + def test_bounds(self): + assert_raises(ValueError, geomspace, 0, 10) + assert_raises(ValueError, geomspace, 10, 0) + assert_raises(ValueError, geomspace, 0, 0) + + +class TestLinspace: + + def test_basic(self): + y = linspace(0, 10) + assert_(len(y) == 50) + y = linspace(2, 10, num=100) + assert_(y[-1] == 10) + y = linspace(2, 10, endpoint=False) + assert_(y[-1] < 10) + assert_raises(ValueError, linspace, 0, 10, num=-1) + + def test_corner(self): + y = list(linspace(0, 1, 1)) + assert_(y == [0.0], y) + assert_raises(TypeError, linspace, 0, 1, num=2.5) + + def test_type(self): + t1 = linspace(0, 1, 0).dtype + t2 = linspace(0, 1, 1).dtype + t3 = linspace(0, 1, 2).dtype + assert_equal(t1, t2) + assert_equal(t2, t3) + + def test_dtype(self): + y = linspace(0, 6, dtype='float32') + assert_equal(y.dtype, dtype('float32')) + y = linspace(0, 6, dtype='float64') + assert_equal(y.dtype, dtype('float64')) + y = linspace(0, 6, dtype='int32') + assert_equal(y.dtype, dtype('int32')) + + def test_start_stop_array_scalar(self): + lim1 = array([-120, 100], dtype="int8") + lim2 = array([120, -100], dtype="int8") + lim3 = array([1200, 1000], dtype="uint16") + t1 = linspace(lim1[0], lim1[1], 5) + t2 = linspace(lim2[0], lim2[1], 5) + t3 = linspace(lim3[0], lim3[1], 5) + t4 = linspace(-120.0, 100.0, 5) + t5 = linspace(120.0, -100.0, 5) + t6 = linspace(1200.0, 1000.0, 5) + assert_equal(t1, t4) + assert_equal(t2, t5) + assert_equal(t3, t6) + + def test_start_stop_array(self): + start = array([-120, 120], dtype="int8") + stop = array([100, -100], dtype="int8") + t1 = linspace(start, stop, 5) + t2 = stack([linspace(_start, _stop, 5) + for _start, _stop in zip(start, stop)], axis=1) + assert_equal(t1, t2) + t3 = linspace(start, stop[0], 5) + t4 = stack([linspace(_start, stop[0], 5) + for _start in start], axis=1) + assert_equal(t3, t4) + t5 = linspace(start, stop, 5, axis=-1) + assert_equal(t5, t2.T) + + def test_complex(self): + lim1 = linspace(1 + 2j, 3 + 4j, 5) + t1 = array([1.0+2.j, 1.5+2.5j, 2.0+3j, 2.5+3.5j, 3.0+4j]) + lim2 = linspace(1j, 10, 5) + t2 = array([0.0+1.j, 2.5+0.75j, 5.0+0.5j, 7.5+0.25j, 10.0+0j]) + assert_equal(lim1, t1) + assert_equal(lim2, t2) + + def test_physical_quantities(self): + a = PhysicalQuantity(0.0) + b = PhysicalQuantity(1.0) + assert_equal(linspace(a, b), linspace(0.0, 1.0)) + + def test_subclass(self): + a = array(0).view(PhysicalQuantity2) + b = array(1).view(PhysicalQuantity2) + ls = linspace(a, b) + assert type(ls) is PhysicalQuantity2 + assert_equal(ls, linspace(0.0, 1.0)) + ls = linspace(a, b, 1) + assert type(ls) is PhysicalQuantity2 + assert_equal(ls, linspace(0.0, 1.0, 1)) + + def test_array_interface(self): + # Regression test for https://github.com/numpy/numpy/pull/6659 + # Ensure that start/stop can be objects that implement + # __array_interface__ and are convertible to numeric scalars + + class Arrayish: + """ + A generic object that supports the __array_interface__ and hence + can in principle be converted to a numeric scalar, but is not + otherwise recognized as numeric, but also happens to support + multiplication by floats. + + Data should be an object that implements the buffer interface, + and contains at least 4 bytes. + """ + + def __init__(self, data): + self._data = data + + @property + def __array_interface__(self): + return {'shape': (), 'typestr': ' 300) + assert_(len(np.lib._index_tricks_impl.mgrid.__doc__) > 300) + + @pytest.mark.skipif(sys.flags.optimize == 2, reason="Python running -OO") + def test_errors_are_ignored(self): + prev_doc = np._core.flatiter.index.__doc__ + # nothing changed, but error ignored, this should probably + # give a warning (or even error) in the future. + add_newdoc("numpy._core", "flatiter", ("index", "bad docstring")) + assert prev_doc == np._core.flatiter.index.__doc__ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_getlimits.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_getlimits.py new file mode 100644 index 0000000000000000000000000000000000000000..3fe67a1f403735a3b5983e9d42ef588356632dce --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_getlimits.py @@ -0,0 +1,203 @@ +""" Test functions for limits module. + +""" +import types +import warnings +import numpy as np +import pytest +from numpy._core import finfo, iinfo +from numpy import half, single, double, longdouble +from numpy.testing import assert_equal, assert_, assert_raises +from numpy._core.getlimits import _discovered_machar, _float_ma + +################################################## + +class TestPythonFloat: + def test_singleton(self): + ftype = finfo(float) + ftype2 = finfo(float) + assert_equal(id(ftype), id(ftype2)) + +class TestHalf: + def test_singleton(self): + ftype = finfo(half) + ftype2 = finfo(half) + assert_equal(id(ftype), id(ftype2)) + +class TestSingle: + def test_singleton(self): + ftype = finfo(single) + ftype2 = finfo(single) + assert_equal(id(ftype), id(ftype2)) + +class TestDouble: + def test_singleton(self): + ftype = finfo(double) + ftype2 = finfo(double) + assert_equal(id(ftype), id(ftype2)) + +class TestLongdouble: + def test_singleton(self): + ftype = finfo(longdouble) + ftype2 = finfo(longdouble) + assert_equal(id(ftype), id(ftype2)) + +def assert_finfo_equal(f1, f2): + # assert two finfo instances have the same attributes + for attr in ('bits', 'eps', 'epsneg', 'iexp', 'machep', + 'max', 'maxexp', 'min', 'minexp', 'negep', 'nexp', + 'nmant', 'precision', 'resolution', 'tiny', + 'smallest_normal', 'smallest_subnormal'): + assert_equal(getattr(f1, attr), getattr(f2, attr), + f'finfo instances {f1} and {f2} differ on {attr}') + +def assert_iinfo_equal(i1, i2): + # assert two iinfo instances have the same attributes + for attr in ('bits', 'min', 'max'): + assert_equal(getattr(i1, attr), getattr(i2, attr), + f'iinfo instances {i1} and {i2} differ on {attr}') + +class TestFinfo: + def test_basic(self): + dts = list(zip(['f2', 'f4', 'f8', 'c8', 'c16'], + [np.float16, np.float32, np.float64, np.complex64, + np.complex128])) + for dt1, dt2 in dts: + assert_finfo_equal(finfo(dt1), finfo(dt2)) + + assert_raises(ValueError, finfo, 'i4') + + def test_regression_gh23108(self): + # np.float32(1.0) and np.float64(1.0) have the same hash and are + # equal under the == operator + f1 = np.finfo(np.float32(1.0)) + f2 = np.finfo(np.float64(1.0)) + assert f1 != f2 + + def test_regression_gh23867(self): + class NonHashableWithDtype: + __hash__ = None + dtype = np.dtype('float32') + + x = NonHashableWithDtype() + assert np.finfo(x) == np.finfo(x.dtype) + + +class TestIinfo: + def test_basic(self): + dts = list(zip(['i1', 'i2', 'i4', 'i8', + 'u1', 'u2', 'u4', 'u8'], + [np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64])) + for dt1, dt2 in dts: + assert_iinfo_equal(iinfo(dt1), iinfo(dt2)) + + assert_raises(ValueError, iinfo, 'f4') + + def test_unsigned_max(self): + types = np._core.sctypes['uint'] + for T in types: + with np.errstate(over="ignore"): + max_calculated = T(0) - T(1) + assert_equal(iinfo(T).max, max_calculated) + +class TestRepr: + def test_iinfo_repr(self): + expected = "iinfo(min=-32768, max=32767, dtype=int16)" + assert_equal(repr(np.iinfo(np.int16)), expected) + + def test_finfo_repr(self): + expected = "finfo(resolution=1e-06, min=-3.4028235e+38," + \ + " max=3.4028235e+38, dtype=float32)" + assert_equal(repr(np.finfo(np.float32)), expected) + + +def test_instances(): + # Test the finfo and iinfo results on numeric instances agree with + # the results on the corresponding types + + for c in [int, np.int16, np.int32, np.int64]: + class_iinfo = iinfo(c) + instance_iinfo = iinfo(c(12)) + + assert_iinfo_equal(class_iinfo, instance_iinfo) + + for c in [float, np.float16, np.float32, np.float64]: + class_finfo = finfo(c) + instance_finfo = finfo(c(1.2)) + assert_finfo_equal(class_finfo, instance_finfo) + + with pytest.raises(ValueError): + iinfo(10.) + + with pytest.raises(ValueError): + iinfo('hi') + + with pytest.raises(ValueError): + finfo(np.int64(1)) + + +def assert_ma_equal(discovered, ma_like): + # Check MachAr-like objects same as calculated MachAr instances + for key, value in discovered.__dict__.items(): + assert_equal(value, getattr(ma_like, key)) + if hasattr(value, 'shape'): + assert_equal(value.shape, getattr(ma_like, key).shape) + assert_equal(value.dtype, getattr(ma_like, key).dtype) + + +def test_known_types(): + # Test we are correctly compiling parameters for known types + for ftype, ma_like in ((np.float16, _float_ma[16]), + (np.float32, _float_ma[32]), + (np.float64, _float_ma[64])): + assert_ma_equal(_discovered_machar(ftype), ma_like) + # Suppress warning for broken discovery of double double on PPC + with np.errstate(all='ignore'): + ld_ma = _discovered_machar(np.longdouble) + bytes = np.dtype(np.longdouble).itemsize + if (ld_ma.it, ld_ma.maxexp) == (63, 16384) and bytes in (12, 16): + # 80-bit extended precision + assert_ma_equal(ld_ma, _float_ma[80]) + elif (ld_ma.it, ld_ma.maxexp) == (112, 16384) and bytes == 16: + # IEE 754 128-bit + assert_ma_equal(ld_ma, _float_ma[128]) + + +def test_subnormal_warning(): + """Test that the subnormal is zero warning is not being raised.""" + with np.errstate(all='ignore'): + ld_ma = _discovered_machar(np.longdouble) + bytes = np.dtype(np.longdouble).itemsize + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter('always') + if (ld_ma.it, ld_ma.maxexp) == (63, 16384) and bytes in (12, 16): + # 80-bit extended precision + ld_ma.smallest_subnormal + assert len(w) == 0 + elif (ld_ma.it, ld_ma.maxexp) == (112, 16384) and bytes == 16: + # IEE 754 128-bit + ld_ma.smallest_subnormal + assert len(w) == 0 + else: + # Double double + ld_ma.smallest_subnormal + # This test may fail on some platforms + assert len(w) == 0 + + +def test_plausible_finfo(): + # Assert that finfo returns reasonable results for all types + for ftype in np._core.sctypes['float'] + np._core.sctypes['complex']: + info = np.finfo(ftype) + assert_(info.nmant > 1) + assert_(info.minexp < -1) + assert_(info.maxexp > 1) + + +class TestRuntimeSubscriptable: + def test_finfo_generic(self): + assert isinstance(np.finfo[np.float64], types.GenericAlias) + + def test_iinfo_generic(self): + assert isinstance(np.iinfo[np.int_], types.GenericAlias) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_half.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_half.py new file mode 100644 index 0000000000000000000000000000000000000000..0eced33b28f8e49cee52eaca18429c1dc9d5309c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_half.py @@ -0,0 +1,567 @@ +import platform +import pytest + +import numpy as np +from numpy import uint16, float16, float32, float64 +from numpy.testing import assert_, assert_equal, IS_WASM + + +def assert_raises_fpe(strmatch, callable, *args, **kwargs): + try: + callable(*args, **kwargs) + except FloatingPointError as exc: + assert_(str(exc).find(strmatch) >= 0, + "Did not raise floating point %s error" % strmatch) + else: + assert_(False, + "Did not raise floating point %s error" % strmatch) + +class TestHalf: + def setup_method(self): + # An array of all possible float16 values + self.all_f16 = np.arange(0x10000, dtype=uint16) + self.all_f16.dtype = float16 + + # NaN value can cause an invalid FP exception if HW is being used + with np.errstate(invalid='ignore'): + self.all_f32 = np.array(self.all_f16, dtype=float32) + self.all_f64 = np.array(self.all_f16, dtype=float64) + + # An array of all non-NaN float16 values, in sorted order + self.nonan_f16 = np.concatenate( + (np.arange(0xfc00, 0x7fff, -1, dtype=uint16), + np.arange(0x0000, 0x7c01, 1, dtype=uint16))) + self.nonan_f16.dtype = float16 + self.nonan_f32 = np.array(self.nonan_f16, dtype=float32) + self.nonan_f64 = np.array(self.nonan_f16, dtype=float64) + + # An array of all finite float16 values, in sorted order + self.finite_f16 = self.nonan_f16[1:-1] + self.finite_f32 = self.nonan_f32[1:-1] + self.finite_f64 = self.nonan_f64[1:-1] + + def test_half_conversions(self): + """Checks that all 16-bit values survive conversion + to/from 32-bit and 64-bit float""" + # Because the underlying routines preserve the NaN bits, every + # value is preserved when converting to/from other floats. + + # Convert from float32 back to float16 + with np.errstate(invalid='ignore'): + b = np.array(self.all_f32, dtype=float16) + # avoid testing NaNs due to differing bit patterns in Q/S NaNs + b_nn = b == b + assert_equal(self.all_f16[b_nn].view(dtype=uint16), + b[b_nn].view(dtype=uint16)) + + # Convert from float64 back to float16 + with np.errstate(invalid='ignore'): + b = np.array(self.all_f64, dtype=float16) + b_nn = b == b + assert_equal(self.all_f16[b_nn].view(dtype=uint16), + b[b_nn].view(dtype=uint16)) + + # Convert float16 to longdouble and back + # This doesn't necessarily preserve the extra NaN bits, + # so exclude NaNs. + a_ld = np.array(self.nonan_f16, dtype=np.longdouble) + b = np.array(a_ld, dtype=float16) + assert_equal(self.nonan_f16.view(dtype=uint16), + b.view(dtype=uint16)) + + # Check the range for which all integers can be represented + i_int = np.arange(-2048, 2049) + i_f16 = np.array(i_int, dtype=float16) + j = np.array(i_f16, dtype=int) + assert_equal(i_int, j) + + @pytest.mark.parametrize("string_dt", ["S", "U"]) + def test_half_conversion_to_string(self, string_dt): + # Currently uses S/U32 (which is sufficient for float32) + expected_dt = np.dtype(f"{string_dt}32") + assert np.promote_types(np.float16, string_dt) == expected_dt + assert np.promote_types(string_dt, np.float16) == expected_dt + + arr = np.ones(3, dtype=np.float16).astype(string_dt) + assert arr.dtype == expected_dt + + @pytest.mark.parametrize("string_dt", ["S", "U"]) + def test_half_conversion_from_string(self, string_dt): + string = np.array("3.1416", dtype=string_dt) + assert string.astype(np.float16) == np.array(3.1416, dtype=np.float16) + + @pytest.mark.parametrize("offset", [None, "up", "down"]) + @pytest.mark.parametrize("shift", [None, "up", "down"]) + @pytest.mark.parametrize("float_t", [np.float32, np.float64]) + def test_half_conversion_rounding(self, float_t, shift, offset): + # Assumes that round to even is used during casting. + max_pattern = np.float16(np.finfo(np.float16).max).view(np.uint16) + + # Test all (positive) finite numbers, denormals are most interesting + # however: + f16s_patterns = np.arange(0, max_pattern+1, dtype=np.uint16) + f16s_float = f16s_patterns.view(np.float16).astype(float_t) + + # Shift the values by half a bit up or a down (or do not shift), + if shift == "up": + f16s_float = 0.5 * (f16s_float[:-1] + f16s_float[1:])[1:] + elif shift == "down": + f16s_float = 0.5 * (f16s_float[:-1] + f16s_float[1:])[:-1] + else: + f16s_float = f16s_float[1:-1] + + # Increase the float by a minimal value: + if offset == "up": + f16s_float = np.nextafter(f16s_float, float_t(np.inf)) + elif offset == "down": + f16s_float = np.nextafter(f16s_float, float_t(-np.inf)) + + # Convert back to float16 and its bit pattern: + res_patterns = f16s_float.astype(np.float16).view(np.uint16) + + # The above calculation tries the original values, or the exact + # midpoints between the float16 values. It then further offsets them + # by as little as possible. If no offset occurs, "round to even" + # logic will be necessary, an arbitrarily small offset should cause + # normal up/down rounding always. + + # Calculate the expected pattern: + cmp_patterns = f16s_patterns[1:-1].copy() + + if shift == "down" and offset != "up": + shift_pattern = -1 + elif shift == "up" and offset != "down": + shift_pattern = 1 + else: + # There cannot be a shift, either shift is None, so all rounding + # will go back to original, or shift is reduced by offset too much. + shift_pattern = 0 + + # If rounding occurs, is it normal rounding or round to even? + if offset is None: + # Round to even occurs, modify only non-even, cast to allow + (-1) + cmp_patterns[0::2].view(np.int16)[...] += shift_pattern + else: + cmp_patterns.view(np.int16)[...] += shift_pattern + + assert_equal(res_patterns, cmp_patterns) + + @pytest.mark.parametrize(["float_t", "uint_t", "bits"], + [(np.float32, np.uint32, 23), + (np.float64, np.uint64, 52)]) + def test_half_conversion_denormal_round_even(self, float_t, uint_t, bits): + # Test specifically that all bits are considered when deciding + # whether round to even should occur (i.e. no bits are lost at the + # end. Compare also gh-12721. The most bits can get lost for the + # smallest denormal: + smallest_value = np.uint16(1).view(np.float16).astype(float_t) + assert smallest_value == 2**-24 + + # Will be rounded to zero based on round to even rule: + rounded_to_zero = smallest_value / float_t(2) + assert rounded_to_zero.astype(np.float16) == 0 + + # The significand will be all 0 for the float_t, test that we do not + # lose the lower ones of these: + for i in range(bits): + # slightly increasing the value should make it round up: + larger_pattern = rounded_to_zero.view(uint_t) | uint_t(1 << i) + larger_value = larger_pattern.view(float_t) + assert larger_value.astype(np.float16) == smallest_value + + def test_nans_infs(self): + with np.errstate(all='ignore'): + # Check some of the ufuncs + assert_equal(np.isnan(self.all_f16), np.isnan(self.all_f32)) + assert_equal(np.isinf(self.all_f16), np.isinf(self.all_f32)) + assert_equal(np.isfinite(self.all_f16), np.isfinite(self.all_f32)) + assert_equal(np.signbit(self.all_f16), np.signbit(self.all_f32)) + assert_equal(np.spacing(float16(65504)), np.inf) + + # Check comparisons of all values with NaN + nan = float16(np.nan) + + assert_(not (self.all_f16 == nan).any()) + assert_(not (nan == self.all_f16).any()) + + assert_((self.all_f16 != nan).all()) + assert_((nan != self.all_f16).all()) + + assert_(not (self.all_f16 < nan).any()) + assert_(not (nan < self.all_f16).any()) + + assert_(not (self.all_f16 <= nan).any()) + assert_(not (nan <= self.all_f16).any()) + + assert_(not (self.all_f16 > nan).any()) + assert_(not (nan > self.all_f16).any()) + + assert_(not (self.all_f16 >= nan).any()) + assert_(not (nan >= self.all_f16).any()) + + def test_half_values(self): + """Confirms a small number of known half values""" + a = np.array([1.0, -1.0, + 2.0, -2.0, + 0.0999755859375, 0.333251953125, # 1/10, 1/3 + 65504, -65504, # Maximum magnitude + 2.0**(-14), -2.0**(-14), # Minimum normal + 2.0**(-24), -2.0**(-24), # Minimum subnormal + 0, -1/1e1000, # Signed zeros + np.inf, -np.inf]) + b = np.array([0x3c00, 0xbc00, + 0x4000, 0xc000, + 0x2e66, 0x3555, + 0x7bff, 0xfbff, + 0x0400, 0x8400, + 0x0001, 0x8001, + 0x0000, 0x8000, + 0x7c00, 0xfc00], dtype=uint16) + b.dtype = float16 + assert_equal(a, b) + + def test_half_rounding(self): + """Checks that rounding when converting to half is correct""" + a = np.array([2.0**-25 + 2.0**-35, # Rounds to minimum subnormal + 2.0**-25, # Underflows to zero (nearest even mode) + 2.0**-26, # Underflows to zero + 1.0+2.0**-11 + 2.0**-16, # rounds to 1.0+2**(-10) + 1.0+2.0**-11, # rounds to 1.0 (nearest even mode) + 1.0+2.0**-12, # rounds to 1.0 + 65519, # rounds to 65504 + 65520], # rounds to inf + dtype=float64) + rounded = [2.0**-24, + 0.0, + 0.0, + 1.0+2.0**(-10), + 1.0, + 1.0, + 65504, + np.inf] + + # Check float64->float16 rounding + with np.errstate(over="ignore"): + b = np.array(a, dtype=float16) + assert_equal(b, rounded) + + # Check float32->float16 rounding + a = np.array(a, dtype=float32) + with np.errstate(over="ignore"): + b = np.array(a, dtype=float16) + assert_equal(b, rounded) + + def test_half_correctness(self): + """Take every finite float16, and check the casting functions with + a manual conversion.""" + + # Create an array of all finite float16s + a_bits = self.finite_f16.view(dtype=uint16) + + # Convert to 64-bit float manually + a_sgn = (-1.0)**((a_bits & 0x8000) >> 15) + a_exp = np.array((a_bits & 0x7c00) >> 10, dtype=np.int32) - 15 + a_man = (a_bits & 0x03ff) * 2.0**(-10) + # Implicit bit of normalized floats + a_man[a_exp != -15] += 1 + # Denormalized exponent is -14 + a_exp[a_exp == -15] = -14 + + a_manual = a_sgn * a_man * 2.0**a_exp + + a32_fail = np.nonzero(self.finite_f32 != a_manual)[0] + if len(a32_fail) != 0: + bad_index = a32_fail[0] + assert_equal(self.finite_f32, a_manual, + "First non-equal is half value 0x%x -> %g != %g" % + (a_bits[bad_index], + self.finite_f32[bad_index], + a_manual[bad_index])) + + a64_fail = np.nonzero(self.finite_f64 != a_manual)[0] + if len(a64_fail) != 0: + bad_index = a64_fail[0] + assert_equal(self.finite_f64, a_manual, + "First non-equal is half value 0x%x -> %g != %g" % + (a_bits[bad_index], + self.finite_f64[bad_index], + a_manual[bad_index])) + + def test_half_ordering(self): + """Make sure comparisons are working right""" + + # All non-NaN float16 values in reverse order + a = self.nonan_f16[::-1].copy() + + # 32-bit float copy + b = np.array(a, dtype=float32) + + # Should sort the same + a.sort() + b.sort() + assert_equal(a, b) + + # Comparisons should work + assert_((a[:-1] <= a[1:]).all()) + assert_(not (a[:-1] > a[1:]).any()) + assert_((a[1:] >= a[:-1]).all()) + assert_(not (a[1:] < a[:-1]).any()) + # All != except for +/-0 + assert_equal(np.nonzero(a[:-1] < a[1:])[0].size, a.size-2) + assert_equal(np.nonzero(a[1:] > a[:-1])[0].size, a.size-2) + + def test_half_funcs(self): + """Test the various ArrFuncs""" + + # fill + assert_equal(np.arange(10, dtype=float16), + np.arange(10, dtype=float32)) + + # fillwithscalar + a = np.zeros((5,), dtype=float16) + a.fill(1) + assert_equal(a, np.ones((5,), dtype=float16)) + + # nonzero and copyswap + a = np.array([0, 0, -1, -1/1e20, 0, 2.0**-24, 7.629e-6], dtype=float16) + assert_equal(a.nonzero()[0], + [2, 5, 6]) + a = a.byteswap() + a = a.view(a.dtype.newbyteorder()) + assert_equal(a.nonzero()[0], + [2, 5, 6]) + + # dot + a = np.arange(0, 10, 0.5, dtype=float16) + b = np.ones((20,), dtype=float16) + assert_equal(np.dot(a, b), + 95) + + # argmax + a = np.array([0, -np.inf, -2, 0.5, 12.55, 7.3, 2.1, 12.4], dtype=float16) + assert_equal(a.argmax(), + 4) + a = np.array([0, -np.inf, -2, np.inf, 12.55, np.nan, 2.1, 12.4], dtype=float16) + assert_equal(a.argmax(), + 5) + + # getitem + a = np.arange(10, dtype=float16) + for i in range(10): + assert_equal(a.item(i), i) + + def test_spacing_nextafter(self): + """Test np.spacing and np.nextafter""" + # All non-negative finite #'s + a = np.arange(0x7c00, dtype=uint16) + hinf = np.array((np.inf,), dtype=float16) + hnan = np.array((np.nan,), dtype=float16) + a_f16 = a.view(dtype=float16) + + assert_equal(np.spacing(a_f16[:-1]), a_f16[1:]-a_f16[:-1]) + + assert_equal(np.nextafter(a_f16[:-1], hinf), a_f16[1:]) + assert_equal(np.nextafter(a_f16[0], -hinf), -a_f16[1]) + assert_equal(np.nextafter(a_f16[1:], -hinf), a_f16[:-1]) + + assert_equal(np.nextafter(hinf, a_f16), a_f16[-1]) + assert_equal(np.nextafter(-hinf, a_f16), -a_f16[-1]) + + assert_equal(np.nextafter(hinf, hinf), hinf) + assert_equal(np.nextafter(hinf, -hinf), a_f16[-1]) + assert_equal(np.nextafter(-hinf, hinf), -a_f16[-1]) + assert_equal(np.nextafter(-hinf, -hinf), -hinf) + + assert_equal(np.nextafter(a_f16, hnan), hnan[0]) + assert_equal(np.nextafter(hnan, a_f16), hnan[0]) + + assert_equal(np.nextafter(hnan, hnan), hnan) + assert_equal(np.nextafter(hinf, hnan), hnan) + assert_equal(np.nextafter(hnan, hinf), hnan) + + # switch to negatives + a |= 0x8000 + + assert_equal(np.spacing(a_f16[0]), np.spacing(a_f16[1])) + assert_equal(np.spacing(a_f16[1:]), a_f16[:-1]-a_f16[1:]) + + assert_equal(np.nextafter(a_f16[0], hinf), -a_f16[1]) + assert_equal(np.nextafter(a_f16[1:], hinf), a_f16[:-1]) + assert_equal(np.nextafter(a_f16[:-1], -hinf), a_f16[1:]) + + assert_equal(np.nextafter(hinf, a_f16), -a_f16[-1]) + assert_equal(np.nextafter(-hinf, a_f16), a_f16[-1]) + + assert_equal(np.nextafter(a_f16, hnan), hnan[0]) + assert_equal(np.nextafter(hnan, a_f16), hnan[0]) + + def test_half_ufuncs(self): + """Test the various ufuncs""" + + a = np.array([0, 1, 2, 4, 2], dtype=float16) + b = np.array([-2, 5, 1, 4, 3], dtype=float16) + c = np.array([0, -1, -np.inf, np.nan, 6], dtype=float16) + + assert_equal(np.add(a, b), [-2, 6, 3, 8, 5]) + assert_equal(np.subtract(a, b), [2, -4, 1, 0, -1]) + assert_equal(np.multiply(a, b), [0, 5, 2, 16, 6]) + assert_equal(np.divide(a, b), [0, 0.199951171875, 2, 1, 0.66650390625]) + + assert_equal(np.equal(a, b), [False, False, False, True, False]) + assert_equal(np.not_equal(a, b), [True, True, True, False, True]) + assert_equal(np.less(a, b), [False, True, False, False, True]) + assert_equal(np.less_equal(a, b), [False, True, False, True, True]) + assert_equal(np.greater(a, b), [True, False, True, False, False]) + assert_equal(np.greater_equal(a, b), [True, False, True, True, False]) + assert_equal(np.logical_and(a, b), [False, True, True, True, True]) + assert_equal(np.logical_or(a, b), [True, True, True, True, True]) + assert_equal(np.logical_xor(a, b), [True, False, False, False, False]) + assert_equal(np.logical_not(a), [True, False, False, False, False]) + + assert_equal(np.isnan(c), [False, False, False, True, False]) + assert_equal(np.isinf(c), [False, False, True, False, False]) + assert_equal(np.isfinite(c), [True, True, False, False, True]) + assert_equal(np.signbit(b), [True, False, False, False, False]) + + assert_equal(np.copysign(b, a), [2, 5, 1, 4, 3]) + + assert_equal(np.maximum(a, b), [0, 5, 2, 4, 3]) + + x = np.maximum(b, c) + assert_(np.isnan(x[3])) + x[3] = 0 + assert_equal(x, [0, 5, 1, 0, 6]) + + assert_equal(np.minimum(a, b), [-2, 1, 1, 4, 2]) + + x = np.minimum(b, c) + assert_(np.isnan(x[3])) + x[3] = 0 + assert_equal(x, [-2, -1, -np.inf, 0, 3]) + + assert_equal(np.fmax(a, b), [0, 5, 2, 4, 3]) + assert_equal(np.fmax(b, c), [0, 5, 1, 4, 6]) + assert_equal(np.fmin(a, b), [-2, 1, 1, 4, 2]) + assert_equal(np.fmin(b, c), [-2, -1, -np.inf, 4, 3]) + + assert_equal(np.floor_divide(a, b), [0, 0, 2, 1, 0]) + assert_equal(np.remainder(a, b), [0, 1, 0, 0, 2]) + assert_equal(np.divmod(a, b), ([0, 0, 2, 1, 0], [0, 1, 0, 0, 2])) + assert_equal(np.square(b), [4, 25, 1, 16, 9]) + assert_equal(np.reciprocal(b), [-0.5, 0.199951171875, 1, 0.25, 0.333251953125]) + assert_equal(np.ones_like(b), [1, 1, 1, 1, 1]) + assert_equal(np.conjugate(b), b) + assert_equal(np.absolute(b), [2, 5, 1, 4, 3]) + assert_equal(np.negative(b), [2, -5, -1, -4, -3]) + assert_equal(np.positive(b), b) + assert_equal(np.sign(b), [-1, 1, 1, 1, 1]) + assert_equal(np.modf(b), ([0, 0, 0, 0, 0], b)) + assert_equal(np.frexp(b), ([-0.5, 0.625, 0.5, 0.5, 0.75], [2, 3, 1, 3, 2])) + assert_equal(np.ldexp(b, [0, 1, 2, 4, 2]), [-2, 10, 4, 64, 12]) + + def test_half_coercion(self): + """Test that half gets coerced properly with the other types""" + a16 = np.array((1,), dtype=float16) + a32 = np.array((1,), dtype=float32) + b16 = float16(1) + b32 = float32(1) + + assert np.power(a16, 2).dtype == float16 + assert np.power(a16, 2.0).dtype == float16 + assert np.power(a16, b16).dtype == float16 + assert np.power(a16, b32).dtype == float32 + assert np.power(a16, a16).dtype == float16 + assert np.power(a16, a32).dtype == float32 + + assert np.power(b16, 2).dtype == float16 + assert np.power(b16, 2.0).dtype == float16 + assert np.power(b16, b16).dtype, float16 + assert np.power(b16, b32).dtype, float32 + assert np.power(b16, a16).dtype, float16 + assert np.power(b16, a32).dtype, float32 + + assert np.power(a32, a16).dtype == float32 + assert np.power(a32, b16).dtype == float32 + assert np.power(b32, a16).dtype == float32 + assert np.power(b32, b16).dtype == float32 + + @pytest.mark.skipif(platform.machine() == "armv5tel", + reason="See gh-413.") + @pytest.mark.skipif(IS_WASM, + reason="fp exceptions don't work in wasm.") + def test_half_fpe(self): + with np.errstate(all='raise'): + sx16 = np.array((1e-4,), dtype=float16) + bx16 = np.array((1e4,), dtype=float16) + sy16 = float16(1e-4) + by16 = float16(1e4) + + # Underflow errors + assert_raises_fpe('underflow', lambda a, b:a*b, sx16, sx16) + assert_raises_fpe('underflow', lambda a, b:a*b, sx16, sy16) + assert_raises_fpe('underflow', lambda a, b:a*b, sy16, sx16) + assert_raises_fpe('underflow', lambda a, b:a*b, sy16, sy16) + assert_raises_fpe('underflow', lambda a, b:a/b, sx16, bx16) + assert_raises_fpe('underflow', lambda a, b:a/b, sx16, by16) + assert_raises_fpe('underflow', lambda a, b:a/b, sy16, bx16) + assert_raises_fpe('underflow', lambda a, b:a/b, sy16, by16) + assert_raises_fpe('underflow', lambda a, b:a/b, + float16(2.**-14), float16(2**11)) + assert_raises_fpe('underflow', lambda a, b:a/b, + float16(-2.**-14), float16(2**11)) + assert_raises_fpe('underflow', lambda a, b:a/b, + float16(2.**-14+2**-24), float16(2)) + assert_raises_fpe('underflow', lambda a, b:a/b, + float16(-2.**-14-2**-24), float16(2)) + assert_raises_fpe('underflow', lambda a, b:a/b, + float16(2.**-14+2**-23), float16(4)) + + # Overflow errors + assert_raises_fpe('overflow', lambda a, b:a*b, bx16, bx16) + assert_raises_fpe('overflow', lambda a, b:a*b, bx16, by16) + assert_raises_fpe('overflow', lambda a, b:a*b, by16, bx16) + assert_raises_fpe('overflow', lambda a, b:a*b, by16, by16) + assert_raises_fpe('overflow', lambda a, b:a/b, bx16, sx16) + assert_raises_fpe('overflow', lambda a, b:a/b, bx16, sy16) + assert_raises_fpe('overflow', lambda a, b:a/b, by16, sx16) + assert_raises_fpe('overflow', lambda a, b:a/b, by16, sy16) + assert_raises_fpe('overflow', lambda a, b:a+b, + float16(65504), float16(17)) + assert_raises_fpe('overflow', lambda a, b:a-b, + float16(-65504), float16(17)) + assert_raises_fpe('overflow', np.nextafter, float16(65504), float16(np.inf)) + assert_raises_fpe('overflow', np.nextafter, float16(-65504), float16(-np.inf)) + assert_raises_fpe('overflow', np.spacing, float16(65504)) + + # Invalid value errors + assert_raises_fpe('invalid', np.divide, float16(np.inf), float16(np.inf)) + assert_raises_fpe('invalid', np.spacing, float16(np.inf)) + assert_raises_fpe('invalid', np.spacing, float16(np.nan)) + + # These should not raise + float16(65472)+float16(32) + float16(2**-13)/float16(2) + float16(2**-14)/float16(2**10) + np.spacing(float16(-65504)) + np.nextafter(float16(65504), float16(-np.inf)) + np.nextafter(float16(-65504), float16(np.inf)) + np.nextafter(float16(np.inf), float16(0)) + np.nextafter(float16(-np.inf), float16(0)) + np.nextafter(float16(0), float16(np.nan)) + np.nextafter(float16(np.nan), float16(0)) + float16(2**-14)/float16(2**10) + float16(-2**-14)/float16(2**10) + float16(2**-14+2**-23)/float16(2) + float16(-2**-14-2**-23)/float16(2) + + def test_half_array_interface(self): + """Test that half is compatible with __array_interface__""" + class Dummy: + pass + + a = np.ones((1,), dtype=float16) + b = Dummy() + b.__array_interface__ = a.__array_interface__ + c = np.array(b) + assert_(c.dtype == float16) + assert_equal(a, c) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_hashtable.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_hashtable.py new file mode 100644 index 0000000000000000000000000000000000000000..41da06be3f2b5010dceebcebd77fdaf458be3e08 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_hashtable.py @@ -0,0 +1,35 @@ +import pytest + +import random +from numpy._core._multiarray_tests import identityhash_tester + + +@pytest.mark.parametrize("key_length", [1, 3, 6]) +@pytest.mark.parametrize("length", [1, 16, 2000]) +def test_identity_hashtable(key_length, length): + # use a 30 object pool for everything (duplicates will happen) + pool = [object() for i in range(20)] + keys_vals = [] + for i in range(length): + keys = tuple(random.choices(pool, k=key_length)) + keys_vals.append((keys, random.choice(pool))) + + dictionary = dict(keys_vals) + + # add a random item at the end: + keys_vals.append(random.choice(keys_vals)) + # the expected one could be different with duplicates: + expected = dictionary[keys_vals[-1][0]] + + res = identityhash_tester(key_length, keys_vals, replace=True) + assert res is expected + + if length == 1: + return + + # add a new item with a key that is already used and a new value, this + # should error if replace is False, see gh-26690 + new_key = (keys_vals[1][0], object()) + keys_vals[0] = new_key + with pytest.raises(RuntimeError): + identityhash_tester(key_length, keys_vals) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexerrors.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexerrors.py new file mode 100644 index 0000000000000000000000000000000000000000..c1faa9555813a649662e8809df7c9c552c28ee48 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexerrors.py @@ -0,0 +1,124 @@ +import numpy as np +from numpy.testing import ( + assert_raises, assert_raises_regex, + ) + + +class TestIndexErrors: + '''Tests to exercise indexerrors not covered by other tests.''' + + def test_arraytypes_fasttake(self): + 'take from a 0-length dimension' + x = np.empty((2, 3, 0, 4)) + assert_raises(IndexError, x.take, [0], axis=2) + assert_raises(IndexError, x.take, [1], axis=2) + assert_raises(IndexError, x.take, [0], axis=2, mode='wrap') + assert_raises(IndexError, x.take, [0], axis=2, mode='clip') + + def test_take_from_object(self): + # Check exception taking from object array + d = np.zeros(5, dtype=object) + assert_raises(IndexError, d.take, [6]) + + # Check exception taking from 0-d array + d = np.zeros((5, 0), dtype=object) + assert_raises(IndexError, d.take, [1], axis=1) + assert_raises(IndexError, d.take, [0], axis=1) + assert_raises(IndexError, d.take, [0]) + assert_raises(IndexError, d.take, [0], mode='wrap') + assert_raises(IndexError, d.take, [0], mode='clip') + + def test_multiindex_exceptions(self): + a = np.empty(5, dtype=object) + assert_raises(IndexError, a.item, 20) + a = np.empty((5, 0), dtype=object) + assert_raises(IndexError, a.item, (0, 0)) + + def test_put_exceptions(self): + a = np.zeros((5, 5)) + assert_raises(IndexError, a.put, 100, 0) + a = np.zeros((5, 5), dtype=object) + assert_raises(IndexError, a.put, 100, 0) + a = np.zeros((5, 5, 0)) + assert_raises(IndexError, a.put, 100, 0) + a = np.zeros((5, 5, 0), dtype=object) + assert_raises(IndexError, a.put, 100, 0) + + def test_iterators_exceptions(self): + "cases in iterators.c" + def assign(obj, ind, val): + obj[ind] = val + + a = np.zeros([1, 2, 3]) + assert_raises(IndexError, lambda: a[0, 5, None, 2]) + assert_raises(IndexError, lambda: a[0, 5, 0, 2]) + assert_raises(IndexError, lambda: assign(a, (0, 5, None, 2), 1)) + assert_raises(IndexError, lambda: assign(a, (0, 5, 0, 2), 1)) + + a = np.zeros([1, 0, 3]) + assert_raises(IndexError, lambda: a[0, 0, None, 2]) + assert_raises(IndexError, lambda: assign(a, (0, 0, None, 2), 1)) + + a = np.zeros([1, 2, 3]) + assert_raises(IndexError, lambda: a.flat[10]) + assert_raises(IndexError, lambda: assign(a.flat, 10, 5)) + a = np.zeros([1, 0, 3]) + assert_raises(IndexError, lambda: a.flat[10]) + assert_raises(IndexError, lambda: assign(a.flat, 10, 5)) + + a = np.zeros([1, 2, 3]) + assert_raises(IndexError, lambda: a.flat[np.array(10)]) + assert_raises(IndexError, lambda: assign(a.flat, np.array(10), 5)) + a = np.zeros([1, 0, 3]) + assert_raises(IndexError, lambda: a.flat[np.array(10)]) + assert_raises(IndexError, lambda: assign(a.flat, np.array(10), 5)) + + a = np.zeros([1, 2, 3]) + assert_raises(IndexError, lambda: a.flat[np.array([10])]) + assert_raises(IndexError, lambda: assign(a.flat, np.array([10]), 5)) + a = np.zeros([1, 0, 3]) + assert_raises(IndexError, lambda: a.flat[np.array([10])]) + assert_raises(IndexError, lambda: assign(a.flat, np.array([10]), 5)) + + def test_mapping(self): + "cases from mapping.c" + + def assign(obj, ind, val): + obj[ind] = val + + a = np.zeros((0, 10)) + assert_raises(IndexError, lambda: a[12]) + + a = np.zeros((3, 5)) + assert_raises(IndexError, lambda: a[(10, 20)]) + assert_raises(IndexError, lambda: assign(a, (10, 20), 1)) + a = np.zeros((3, 0)) + assert_raises(IndexError, lambda: a[(1, 0)]) + assert_raises(IndexError, lambda: assign(a, (1, 0), 1)) + + a = np.zeros((10,)) + assert_raises(IndexError, lambda: assign(a, 10, 1)) + a = np.zeros((0,)) + assert_raises(IndexError, lambda: assign(a, 10, 1)) + + a = np.zeros((3, 5)) + assert_raises(IndexError, lambda: a[(1, [1, 20])]) + assert_raises(IndexError, lambda: assign(a, (1, [1, 20]), 1)) + a = np.zeros((3, 0)) + assert_raises(IndexError, lambda: a[(1, [0, 1])]) + assert_raises(IndexError, lambda: assign(a, (1, [0, 1]), 1)) + + def test_mapping_error_message(self): + a = np.zeros((3, 5)) + index = (1, 2, 3, 4, 5) + assert_raises_regex( + IndexError, + "too many indices for array: " + "array is 2-dimensional, but 5 were indexed", + lambda: a[index]) + + def test_methods(self): + "cases from methods.c" + + a = np.zeros((3, 3)) + assert_raises(IndexError, lambda: a.item(100)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexing.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexing.py new file mode 100644 index 0000000000000000000000000000000000000000..f393c401cd9b4929cfa04c377891bc5c692fc2e5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_indexing.py @@ -0,0 +1,1444 @@ +import sys +import warnings +import functools +import operator + +import pytest + +import numpy as np +from numpy._core._multiarray_tests import array_indexing +from itertools import product +from numpy.exceptions import ComplexWarning, VisibleDeprecationWarning +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex, + assert_array_equal, assert_warns, HAS_REFCOUNT, IS_WASM + ) + + +class TestIndexing: + def test_index_no_floats(self): + a = np.array([[[5]]]) + + assert_raises(IndexError, lambda: a[0.0]) + assert_raises(IndexError, lambda: a[0, 0.0]) + assert_raises(IndexError, lambda: a[0.0, 0]) + assert_raises(IndexError, lambda: a[0.0,:]) + assert_raises(IndexError, lambda: a[:, 0.0]) + assert_raises(IndexError, lambda: a[:, 0.0,:]) + assert_raises(IndexError, lambda: a[0.0,:,:]) + assert_raises(IndexError, lambda: a[0, 0, 0.0]) + assert_raises(IndexError, lambda: a[0.0, 0, 0]) + assert_raises(IndexError, lambda: a[0, 0.0, 0]) + assert_raises(IndexError, lambda: a[-1.4]) + assert_raises(IndexError, lambda: a[0, -1.4]) + assert_raises(IndexError, lambda: a[-1.4, 0]) + assert_raises(IndexError, lambda: a[-1.4,:]) + assert_raises(IndexError, lambda: a[:, -1.4]) + assert_raises(IndexError, lambda: a[:, -1.4,:]) + assert_raises(IndexError, lambda: a[-1.4,:,:]) + assert_raises(IndexError, lambda: a[0, 0, -1.4]) + assert_raises(IndexError, lambda: a[-1.4, 0, 0]) + assert_raises(IndexError, lambda: a[0, -1.4, 0]) + assert_raises(IndexError, lambda: a[0.0:, 0.0]) + assert_raises(IndexError, lambda: a[0.0:, 0.0,:]) + + def test_slicing_no_floats(self): + a = np.array([[5]]) + + # start as float. + assert_raises(TypeError, lambda: a[0.0:]) + assert_raises(TypeError, lambda: a[0:, 0.0:2]) + assert_raises(TypeError, lambda: a[0.0::2, :0]) + assert_raises(TypeError, lambda: a[0.0:1:2,:]) + assert_raises(TypeError, lambda: a[:, 0.0:]) + # stop as float. + assert_raises(TypeError, lambda: a[:0.0]) + assert_raises(TypeError, lambda: a[:0, 1:2.0]) + assert_raises(TypeError, lambda: a[:0.0:2, :0]) + assert_raises(TypeError, lambda: a[:0.0,:]) + assert_raises(TypeError, lambda: a[:, 0:4.0:2]) + # step as float. + assert_raises(TypeError, lambda: a[::1.0]) + assert_raises(TypeError, lambda: a[0:, :2:2.0]) + assert_raises(TypeError, lambda: a[1::4.0, :0]) + assert_raises(TypeError, lambda: a[::5.0,:]) + assert_raises(TypeError, lambda: a[:, 0:4:2.0]) + # mixed. + assert_raises(TypeError, lambda: a[1.0:2:2.0]) + assert_raises(TypeError, lambda: a[1.0::2.0]) + assert_raises(TypeError, lambda: a[0:, :2.0:2.0]) + assert_raises(TypeError, lambda: a[1.0:1:4.0, :0]) + assert_raises(TypeError, lambda: a[1.0:5.0:5.0,:]) + assert_raises(TypeError, lambda: a[:, 0.4:4.0:2.0]) + # should still get the DeprecationWarning if step = 0. + assert_raises(TypeError, lambda: a[::0.0]) + + def test_index_no_array_to_index(self): + # No non-scalar arrays. + a = np.array([[[1]]]) + + assert_raises(TypeError, lambda: a[a:a:a]) + + def test_none_index(self): + # `None` index adds newaxis + a = np.array([1, 2, 3]) + assert_equal(a[None], a[np.newaxis]) + assert_equal(a[None].ndim, a.ndim + 1) + + def test_empty_tuple_index(self): + # Empty tuple index creates a view + a = np.array([1, 2, 3]) + assert_equal(a[()], a) + assert_(a[()].base is a) + a = np.array(0) + assert_(isinstance(a[()], np.int_)) + + def test_void_scalar_empty_tuple(self): + s = np.zeros((), dtype='V4') + assert_equal(s[()].dtype, s.dtype) + assert_equal(s[()], s) + assert_equal(type(s[...]), np.ndarray) + + def test_same_kind_index_casting(self): + # Indexes should be cast with same-kind and not safe, even if that + # is somewhat unsafe. So test various different code paths. + index = np.arange(5) + u_index = index.astype(np.uintp) + arr = np.arange(10) + + assert_array_equal(arr[index], arr[u_index]) + arr[u_index] = np.arange(5) + assert_array_equal(arr, np.arange(10)) + + arr = np.arange(10).reshape(5, 2) + assert_array_equal(arr[index], arr[u_index]) + + arr[u_index] = np.arange(5)[:,None] + assert_array_equal(arr, np.arange(5)[:,None].repeat(2, axis=1)) + + arr = np.arange(25).reshape(5, 5) + assert_array_equal(arr[u_index, u_index], arr[index, index]) + + def test_empty_fancy_index(self): + # Empty list index creates an empty array + # with the same dtype (but with weird shape) + a = np.array([1, 2, 3]) + assert_equal(a[[]], []) + assert_equal(a[[]].dtype, a.dtype) + + b = np.array([], dtype=np.intp) + assert_equal(a[[]], []) + assert_equal(a[[]].dtype, a.dtype) + + b = np.array([]) + assert_raises(IndexError, a.__getitem__, b) + + def test_gh_26542(self): + a = np.array([0, 1, 2]) + idx = np.array([2, 1, 0]) + a[idx] = a + expected = np.array([2, 1, 0]) + assert_equal(a, expected) + + def test_gh_26542_2d(self): + a = np.array([[0, 1, 2]]) + idx_row = np.zeros(3, dtype=int) + idx_col = np.array([2, 1, 0]) + a[idx_row, idx_col] = a + expected = np.array([[2, 1, 0]]) + assert_equal(a, expected) + + def test_gh_26542_index_overlap(self): + arr = np.arange(100) + expected_vals = np.copy(arr[:-10]) + arr[10:] = arr[:-10] + actual_vals = arr[10:] + assert_equal(actual_vals, expected_vals) + + def test_ellipsis_index(self): + a = np.array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]]) + assert_(a[...] is not a) + assert_equal(a[...], a) + # `a[...]` was `a` in numpy <1.9. + assert_(a[...].base is a) + + # Slicing with ellipsis can skip an + # arbitrary number of dimensions + assert_equal(a[0, ...], a[0]) + assert_equal(a[0, ...], a[0,:]) + assert_equal(a[..., 0], a[:, 0]) + + # Slicing with ellipsis always results + # in an array, not a scalar + assert_equal(a[0, ..., 1], np.array(2)) + + # Assignment with `(Ellipsis,)` on 0-d arrays + b = np.array(1) + b[(Ellipsis,)] = 2 + assert_equal(b, 2) + + def test_single_int_index(self): + # Single integer index selects one row + a = np.array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]]) + + assert_equal(a[0], [1, 2, 3]) + assert_equal(a[-1], [7, 8, 9]) + + # Index out of bounds produces IndexError + assert_raises(IndexError, a.__getitem__, 1 << 30) + # Index overflow produces IndexError + assert_raises(IndexError, a.__getitem__, 1 << 64) + + def test_single_bool_index(self): + # Single boolean index + a = np.array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]]) + + assert_equal(a[np.array(True)], a[None]) + assert_equal(a[np.array(False)], a[None][0:0]) + + def test_boolean_shape_mismatch(self): + arr = np.ones((5, 4, 3)) + + index = np.array([True]) + assert_raises(IndexError, arr.__getitem__, index) + + index = np.array([False] * 6) + assert_raises(IndexError, arr.__getitem__, index) + + index = np.zeros((4, 4), dtype=bool) + assert_raises(IndexError, arr.__getitem__, index) + + assert_raises(IndexError, arr.__getitem__, (slice(None), index)) + + def test_boolean_indexing_onedim(self): + # Indexing a 2-dimensional array with + # boolean array of length one + a = np.array([[ 0., 0., 0.]]) + b = np.array([ True], dtype=bool) + assert_equal(a[b], a) + # boolean assignment + a[b] = 1. + assert_equal(a, [[1., 1., 1.]]) + + def test_boolean_assignment_value_mismatch(self): + # A boolean assignment should fail when the shape of the values + # cannot be broadcast to the subscription. (see also gh-3458) + a = np.arange(4) + + def f(a, v): + a[a > -1] = v + + assert_raises(ValueError, f, a, []) + assert_raises(ValueError, f, a, [1, 2, 3]) + assert_raises(ValueError, f, a[:1], [1, 2, 3]) + + def test_boolean_assignment_needs_api(self): + # See also gh-7666 + # This caused a segfault on Python 2 due to the GIL not being + # held when the iterator does not need it, but the transfer function + # does + arr = np.zeros(1000) + indx = np.zeros(1000, dtype=bool) + indx[:100] = True + arr[indx] = np.ones(100, dtype=object) + + expected = np.zeros(1000) + expected[:100] = 1 + assert_array_equal(arr, expected) + + def test_boolean_indexing_twodim(self): + # Indexing a 2-dimensional array with + # 2-dimensional boolean array + a = np.array([[1, 2, 3], + [4, 5, 6], + [7, 8, 9]]) + b = np.array([[ True, False, True], + [False, True, False], + [ True, False, True]]) + assert_equal(a[b], [1, 3, 5, 7, 9]) + assert_equal(a[b[1]], [[4, 5, 6]]) + assert_equal(a[b[0]], a[b[2]]) + + # boolean assignment + a[b] = 0 + assert_equal(a, [[0, 2, 0], + [4, 0, 6], + [0, 8, 0]]) + + def test_boolean_indexing_list(self): + # Regression test for #13715. It's a use-after-free bug which the + # test won't directly catch, but it will show up in valgrind. + a = np.array([1, 2, 3]) + b = [True, False, True] + # Two variants of the test because the first takes a fast path + assert_equal(a[b], [1, 3]) + assert_equal(a[None, b], [[1, 3]]) + + def test_reverse_strides_and_subspace_bufferinit(self): + # This tests that the strides are not reversed for simple and + # subspace fancy indexing. + a = np.ones(5) + b = np.zeros(5, dtype=np.intp)[::-1] + c = np.arange(5)[::-1] + + a[b] = c + # If the strides are not reversed, the 0 in the arange comes last. + assert_equal(a[0], 0) + + # This also tests that the subspace buffer is initialized: + a = np.ones((5, 2)) + c = np.arange(10).reshape(5, 2)[::-1] + a[b, :] = c + assert_equal(a[0], [0, 1]) + + def test_reversed_strides_result_allocation(self): + # Test a bug when calculating the output strides for a result array + # when the subspace size was 1 (and test other cases as well) + a = np.arange(10)[:, None] + i = np.arange(10)[::-1] + assert_array_equal(a[i], a[i.copy('C')]) + + a = np.arange(20).reshape(-1, 2) + + def test_uncontiguous_subspace_assignment(self): + # During development there was a bug activating a skip logic + # based on ndim instead of size. + a = np.full((3, 4, 2), -1) + b = np.full((3, 4, 2), -1) + + a[[0, 1]] = np.arange(2 * 4 * 2).reshape(2, 4, 2).T + b[[0, 1]] = np.arange(2 * 4 * 2).reshape(2, 4, 2).T.copy() + + assert_equal(a, b) + + def test_too_many_fancy_indices_special_case(self): + # Just documents behaviour, this is a small limitation. + a = np.ones((1,) * 64) # 64 is NPY_MAXDIMS + assert_raises(IndexError, a.__getitem__, (np.array([0]),) * 64) + + def test_scalar_array_bool(self): + # NumPy bools can be used as boolean index (python ones as of yet not) + a = np.array(1) + assert_equal(a[np.bool(True)], a[np.array(True)]) + assert_equal(a[np.bool(False)], a[np.array(False)]) + + # After deprecating bools as integers: + #a = np.array([0,1,2]) + #assert_equal(a[True, :], a[None, :]) + #assert_equal(a[:, True], a[:, None]) + # + #assert_(not np.may_share_memory(a, a[True, :])) + + def test_everything_returns_views(self): + # Before `...` would return a itself. + a = np.arange(5) + + assert_(a is not a[()]) + assert_(a is not a[...]) + assert_(a is not a[:]) + + def test_broaderrors_indexing(self): + a = np.zeros((5, 5)) + assert_raises(IndexError, a.__getitem__, ([0, 1], [0, 1, 2])) + assert_raises(IndexError, a.__setitem__, ([0, 1], [0, 1, 2]), 0) + + def test_trivial_fancy_out_of_bounds(self): + a = np.zeros(5) + ind = np.ones(20, dtype=np.intp) + ind[-1] = 10 + assert_raises(IndexError, a.__getitem__, ind) + assert_raises(IndexError, a.__setitem__, ind, 0) + ind = np.ones(20, dtype=np.intp) + ind[0] = 11 + assert_raises(IndexError, a.__getitem__, ind) + assert_raises(IndexError, a.__setitem__, ind, 0) + + def test_trivial_fancy_not_possible(self): + # Test that the fast path for trivial assignment is not incorrectly + # used when the index is not contiguous or 1D, see also gh-11467. + a = np.arange(6) + idx = np.arange(6, dtype=np.intp).reshape(2, 1, 3)[:, :, 0] + assert_array_equal(a[idx], idx) + + # this case must not go into the fast path, note that idx is + # a non-contiguous none 1D array here. + a[idx] = -1 + res = np.arange(6) + res[0] = -1 + res[3] = -1 + assert_array_equal(a, res) + + def test_nonbaseclass_values(self): + class SubClass(np.ndarray): + def __array_finalize__(self, old): + # Have array finalize do funny things + self.fill(99) + + a = np.zeros((5, 5)) + s = a.copy().view(type=SubClass) + s.fill(1) + + a[[0, 1, 2, 3, 4], :] = s + assert_((a == 1).all()) + + # Subspace is last, so transposing might want to finalize + a[:, [0, 1, 2, 3, 4]] = s + assert_((a == 1).all()) + + a.fill(0) + a[...] = s + assert_((a == 1).all()) + + def test_array_like_values(self): + # Similar to the above test, but use a memoryview instead + a = np.zeros((5, 5)) + s = np.arange(25, dtype=np.float64).reshape(5, 5) + + a[[0, 1, 2, 3, 4], :] = memoryview(s) + assert_array_equal(a, s) + + a[:, [0, 1, 2, 3, 4]] = memoryview(s) + assert_array_equal(a, s) + + a[...] = memoryview(s) + assert_array_equal(a, s) + + @pytest.mark.parametrize("writeable", [True, False]) + def test_subclass_writeable(self, writeable): + d = np.rec.array([('NGC1001', 11), ('NGC1002', 1.), ('NGC1003', 1.)], + dtype=[('target', 'S20'), ('V_mag', '>f4')]) + d.flags.writeable = writeable + # Advanced indexing results are always writeable: + ind = np.array([False, True, True], dtype=bool) + assert d[ind].flags.writeable + ind = np.array([0, 1]) + assert d[ind].flags.writeable + # Views should be writeable if the original array is: + assert d[...].flags.writeable == writeable + assert d[0].flags.writeable == writeable + + def test_memory_order(self): + # This is not necessary to preserve. Memory layouts for + # more complex indices are not as simple. + a = np.arange(10) + b = np.arange(10).reshape(5,2).T + assert_(a[b].flags.f_contiguous) + + # Takes a different implementation branch: + a = a.reshape(-1, 1) + assert_(a[b, 0].flags.f_contiguous) + + def test_scalar_return_type(self): + # Full scalar indices should return scalars and object + # arrays should not call PyArray_Return on their items + class Zero: + # The most basic valid indexing + def __index__(self): + return 0 + + z = Zero() + + class ArrayLike: + # Simple array, should behave like the array + def __array__(self, dtype=None, copy=None): + return np.array(0) + + a = np.zeros(()) + assert_(isinstance(a[()], np.float64)) + a = np.zeros(1) + assert_(isinstance(a[z], np.float64)) + a = np.zeros((1, 1)) + assert_(isinstance(a[z, np.array(0)], np.float64)) + assert_(isinstance(a[z, ArrayLike()], np.float64)) + + # And object arrays do not call it too often: + b = np.array(0) + a = np.array(0, dtype=object) + a[()] = b + assert_(isinstance(a[()], np.ndarray)) + a = np.array([b, None]) + assert_(isinstance(a[z], np.ndarray)) + a = np.array([[b, None]]) + assert_(isinstance(a[z, np.array(0)], np.ndarray)) + assert_(isinstance(a[z, ArrayLike()], np.ndarray)) + + def test_small_regressions(self): + # Reference count of intp for index checks + a = np.array([0]) + if HAS_REFCOUNT: + refcount = sys.getrefcount(np.dtype(np.intp)) + # item setting always checks indices in separate function: + a[np.array([0], dtype=np.intp)] = 1 + a[np.array([0], dtype=np.uint8)] = 1 + assert_raises(IndexError, a.__setitem__, + np.array([1], dtype=np.intp), 1) + assert_raises(IndexError, a.__setitem__, + np.array([1], dtype=np.uint8), 1) + + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(np.dtype(np.intp)), refcount) + + def test_unaligned(self): + v = (np.zeros(64, dtype=np.int8) + ord('a'))[1:-7] + d = v.view(np.dtype("S8")) + # unaligned source + x = (np.zeros(16, dtype=np.int8) + ord('a'))[1:-7] + x = x.view(np.dtype("S8")) + x[...] = np.array("b" * 8, dtype="S") + b = np.arange(d.size) + #trivial + assert_equal(d[b], d) + d[b] = x + # nontrivial + # unaligned index array + b = np.zeros(d.size + 1).view(np.int8)[1:-(np.intp(0).itemsize - 1)] + b = b.view(np.intp)[:d.size] + b[...] = np.arange(d.size) + assert_equal(d[b.astype(np.int16)], d) + d[b.astype(np.int16)] = x + # boolean + d[b % 2 == 0] + d[b % 2 == 0] = x[::2] + + def test_tuple_subclass(self): + arr = np.ones((5, 5)) + + # A tuple subclass should also be an nd-index + class TupleSubclass(tuple): + pass + index = ([1], [1]) + index = TupleSubclass(index) + assert_(arr[index].shape == (1,)) + # Unlike the non nd-index: + assert_(arr[index,].shape != (1,)) + + def test_broken_sequence_not_nd_index(self): + # See gh-5063: + # If we have an object which claims to be a sequence, but fails + # on item getting, this should not be converted to an nd-index (tuple) + # If this object happens to be a valid index otherwise, it should work + # This object here is very dubious and probably bad though: + class SequenceLike: + def __index__(self): + return 0 + + def __len__(self): + return 1 + + def __getitem__(self, item): + raise IndexError('Not possible') + + arr = np.arange(10) + assert_array_equal(arr[SequenceLike()], arr[SequenceLike(),]) + + # also test that field indexing does not segfault + # for a similar reason, by indexing a structured array + arr = np.zeros((1,), dtype=[('f1', 'i8'), ('f2', 'i8')]) + assert_array_equal(arr[SequenceLike()], arr[SequenceLike(),]) + + def test_indexing_array_weird_strides(self): + # See also gh-6221 + # the shapes used here come from the issue and create the correct + # size for the iterator buffering size. + x = np.ones(10) + x2 = np.ones((10, 2)) + ind = np.arange(10)[:, None, None, None] + ind = np.broadcast_to(ind, (10, 55, 4, 4)) + + # single advanced index case + assert_array_equal(x[ind], x[ind.copy()]) + # higher dimensional advanced index + zind = np.zeros(4, dtype=np.intp) + assert_array_equal(x2[ind, zind], x2[ind.copy(), zind]) + + def test_indexing_array_negative_strides(self): + # From gh-8264, + # core dumps if negative strides are used in iteration + arro = np.zeros((4, 4)) + arr = arro[::-1, ::-1] + + slices = (slice(None), [0, 1, 2, 3]) + arr[slices] = 10 + assert_array_equal(arr, 10.) + + def test_character_assignment(self): + # This is an example a function going through CopyObject which + # used to have an untested special path for scalars + # (the character special dtype case, should be deprecated probably) + arr = np.zeros((1, 5), dtype="c") + arr[0] = np.str_("asdfg") # must assign as a sequence + assert_array_equal(arr[0], np.array("asdfg", dtype="c")) + assert arr[0, 1] == b"s" # make sure not all were set to "a" for both + + @pytest.mark.parametrize("index", + [True, False, np.array([0])]) + @pytest.mark.parametrize("num", [64, 80]) + @pytest.mark.parametrize("original_ndim", [1, 64]) + def test_too_many_advanced_indices(self, index, num, original_ndim): + # These are limitations based on the number of arguments we can process. + # For `num=32` (and all boolean cases), the result is actually define; + # but the use of NpyIter (NPY_MAXARGS) limits it for technical reasons. + arr = np.ones((1,) * original_ndim) + with pytest.raises(IndexError): + arr[(index,) * num] + with pytest.raises(IndexError): + arr[(index,) * num] = 1. + + @pytest.mark.skipif(IS_WASM, reason="no threading") + def test_structured_advanced_indexing(self): + # Test that copyswap(n) used by integer array indexing is threadsafe + # for structured datatypes, see gh-15387. This test can behave randomly. + from concurrent.futures import ThreadPoolExecutor + + # Create a deeply nested dtype to make a failure more likely: + dt = np.dtype([("", "f8")]) + dt = np.dtype([("", dt)] * 2) + dt = np.dtype([("", dt)] * 2) + # The array should be large enough to likely run into threading issues + arr = np.random.uniform(size=(6000, 8)).view(dt)[:, 0] + + rng = np.random.default_rng() + def func(arr): + indx = rng.integers(0, len(arr), size=6000, dtype=np.intp) + arr[indx] + + tpe = ThreadPoolExecutor(max_workers=8) + futures = [tpe.submit(func, arr) for _ in range(10)] + for f in futures: + f.result() + + assert arr.dtype is dt + + def test_nontuple_ndindex(self): + a = np.arange(25).reshape((5, 5)) + assert_equal(a[[0, 1]], np.array([a[0], a[1]])) + assert_equal(a[[0, 1], [0, 1]], np.array([0, 6])) + assert_raises(IndexError, a.__getitem__, [slice(None)]) + + +class TestFieldIndexing: + def test_scalar_return_type(self): + # Field access on an array should return an array, even if it + # is 0-d. + a = np.zeros((), [('a','f8')]) + assert_(isinstance(a['a'], np.ndarray)) + assert_(isinstance(a[['a']], np.ndarray)) + + +class TestBroadcastedAssignments: + def assign(self, a, ind, val): + a[ind] = val + return a + + def test_prepending_ones(self): + a = np.zeros((3, 2)) + + a[...] = np.ones((1, 3, 2)) + # Fancy with subspace with and without transpose + a[[0, 1, 2], :] = np.ones((1, 3, 2)) + a[:, [0, 1]] = np.ones((1, 3, 2)) + # Fancy without subspace (with broadcasting) + a[[[0], [1], [2]], [0, 1]] = np.ones((1, 3, 2)) + + def test_prepend_not_one(self): + assign = self.assign + s_ = np.s_ + a = np.zeros(5) + + # Too large and not only ones. + assert_raises(ValueError, assign, a, s_[...], np.ones((2, 1))) + assert_raises(ValueError, assign, a, s_[[1, 2, 3],], np.ones((2, 1))) + assert_raises(ValueError, assign, a, s_[[[1], [2]],], np.ones((2,2,1))) + + def test_simple_broadcasting_errors(self): + assign = self.assign + s_ = np.s_ + a = np.zeros((5, 1)) + + assert_raises(ValueError, assign, a, s_[...], np.zeros((5, 2))) + assert_raises(ValueError, assign, a, s_[...], np.zeros((5, 0))) + assert_raises(ValueError, assign, a, s_[:, [0]], np.zeros((5, 2))) + assert_raises(ValueError, assign, a, s_[:, [0]], np.zeros((5, 0))) + assert_raises(ValueError, assign, a, s_[[0], :], np.zeros((2, 1))) + + @pytest.mark.parametrize("index", [ + (..., [1, 2], slice(None)), + ([0, 1], ..., 0), + (..., [1, 2], [1, 2])]) + def test_broadcast_error_reports_correct_shape(self, index): + values = np.zeros((100, 100)) # will never broadcast below + + arr = np.zeros((3, 4, 5, 6, 7)) + # We currently report without any spaces (could be changed) + shape_str = str(arr[index].shape).replace(" ", "") + + with pytest.raises(ValueError) as e: + arr[index] = values + + assert str(e.value).endswith(shape_str) + + def test_index_is_larger(self): + # Simple case of fancy index broadcasting of the index. + a = np.zeros((5, 5)) + a[[[0], [1], [2]], [0, 1, 2]] = [2, 3, 4] + + assert_((a[:3, :3] == [2, 3, 4]).all()) + + def test_broadcast_subspace(self): + a = np.zeros((100, 100)) + v = np.arange(100)[:,None] + b = np.arange(100)[::-1] + a[b] = v + assert_((a[::-1] == v).all()) + + +class TestSubclasses: + def test_basic(self): + # Test that indexing in various ways produces SubClass instances, + # and that the base is set up correctly: the original subclass + # instance for views, and a new ndarray for advanced/boolean indexing + # where a copy was made (latter a regression test for gh-11983). + class SubClass(np.ndarray): + pass + + a = np.arange(5) + s = a.view(SubClass) + s_slice = s[:3] + assert_(type(s_slice) is SubClass) + assert_(s_slice.base is s) + assert_array_equal(s_slice, a[:3]) + + s_fancy = s[[0, 1, 2]] + assert_(type(s_fancy) is SubClass) + assert_(s_fancy.base is not s) + assert_(type(s_fancy.base) is np.ndarray) + assert_array_equal(s_fancy, a[[0, 1, 2]]) + assert_array_equal(s_fancy.base, a[[0, 1, 2]]) + + s_bool = s[s > 0] + assert_(type(s_bool) is SubClass) + assert_(s_bool.base is not s) + assert_(type(s_bool.base) is np.ndarray) + assert_array_equal(s_bool, a[a > 0]) + assert_array_equal(s_bool.base, a[a > 0]) + + def test_fancy_on_read_only(self): + # Test that fancy indexing on read-only SubClass does not make a + # read-only copy (gh-14132) + class SubClass(np.ndarray): + pass + + a = np.arange(5) + s = a.view(SubClass) + s.flags.writeable = False + s_fancy = s[[0, 1, 2]] + assert_(s_fancy.flags.writeable) + + + def test_finalize_gets_full_info(self): + # Array finalize should be called on the filled array. + class SubClass(np.ndarray): + def __array_finalize__(self, old): + self.finalize_status = np.array(self) + self.old = old + + s = np.arange(10).view(SubClass) + new_s = s[:3] + assert_array_equal(new_s.finalize_status, new_s) + assert_array_equal(new_s.old, s) + + new_s = s[[0,1,2,3]] + assert_array_equal(new_s.finalize_status, new_s) + assert_array_equal(new_s.old, s) + + new_s = s[s > 0] + assert_array_equal(new_s.finalize_status, new_s) + assert_array_equal(new_s.old, s) + + +class TestFancyIndexingCast: + def test_boolean_index_cast_assign(self): + # Setup the boolean index and float arrays. + shape = (8, 63) + bool_index = np.zeros(shape).astype(bool) + bool_index[0, 1] = True + zero_array = np.zeros(shape) + + # Assigning float is fine. + zero_array[bool_index] = np.array([1]) + assert_equal(zero_array[0, 1], 1) + + # Fancy indexing works, although we get a cast warning. + assert_warns(ComplexWarning, + zero_array.__setitem__, ([0], [1]), np.array([2 + 1j])) + assert_equal(zero_array[0, 1], 2) # No complex part + + # Cast complex to float, throwing away the imaginary portion. + assert_warns(ComplexWarning, + zero_array.__setitem__, bool_index, np.array([1j])) + assert_equal(zero_array[0, 1], 0) + +class TestFancyIndexingEquivalence: + def test_object_assign(self): + # Check that the field and object special case using copyto is active. + # The right hand side cannot be converted to an array here. + a = np.arange(5, dtype=object) + b = a.copy() + a[:3] = [1, (1,2), 3] + b[[0, 1, 2]] = [1, (1,2), 3] + assert_array_equal(a, b) + + # test same for subspace fancy indexing + b = np.arange(5, dtype=object)[None, :] + b[[0], :3] = [[1, (1,2), 3]] + assert_array_equal(a, b[0]) + + # Check that swapping of axes works. + # There was a bug that made the later assignment throw a ValueError + # do to an incorrectly transposed temporary right hand side (gh-5714) + b = b.T + b[:3, [0]] = [[1], [(1,2)], [3]] + assert_array_equal(a, b[:, 0]) + + # Another test for the memory order of the subspace + arr = np.ones((3, 4, 5), dtype=object) + # Equivalent slicing assignment for comparison + cmp_arr = arr.copy() + cmp_arr[:1, ...] = [[[1], [2], [3], [4]]] + arr[[0], ...] = [[[1], [2], [3], [4]]] + assert_array_equal(arr, cmp_arr) + arr = arr.copy('F') + arr[[0], ...] = [[[1], [2], [3], [4]]] + assert_array_equal(arr, cmp_arr) + + def test_cast_equivalence(self): + # Yes, normal slicing uses unsafe casting. + a = np.arange(5) + b = a.copy() + + a[:3] = np.array(['2', '-3', '-1']) + b[[0, 2, 1]] = np.array(['2', '-1', '-3']) + assert_array_equal(a, b) + + # test the same for subspace fancy indexing + b = np.arange(5)[None, :] + b[[0], :3] = np.array([['2', '-3', '-1']]) + assert_array_equal(a, b[0]) + + +class TestMultiIndexingAutomated: + """ + These tests use code to mimic the C-Code indexing for selection. + + NOTE: + + * This still lacks tests for complex item setting. + * If you change behavior of indexing, you might want to modify + these tests to try more combinations. + * Behavior was written to match numpy version 1.8. (though a + first version matched 1.7.) + * Only tuple indices are supported by the mimicking code. + (and tested as of writing this) + * Error types should match most of the time as long as there + is only one error. For multiple errors, what gets raised + will usually not be the same one. They are *not* tested. + + Update 2016-11-30: It is probably not worth maintaining this test + indefinitely and it can be dropped if maintenance becomes a burden. + + """ + + def setup_method(self): + self.a = np.arange(np.prod([3, 1, 5, 6])).reshape(3, 1, 5, 6) + self.b = np.empty((3, 0, 5, 6)) + self.complex_indices = ['skip', Ellipsis, + 0, + # Boolean indices, up to 3-d for some special cases of eating up + # dimensions, also need to test all False + np.array([True, False, False]), + np.array([[True, False], [False, True]]), + np.array([[[False, False], [False, False]]]), + # Some slices: + slice(-5, 5, 2), + slice(1, 1, 100), + slice(4, -1, -2), + slice(None, None, -3), + # Some Fancy indexes: + np.empty((0, 1, 1), dtype=np.intp), # empty and can be broadcast + np.array([0, 1, -2]), + np.array([[2], [0], [1]]), + np.array([[0, -1], [0, 1]], dtype=np.dtype('intp').newbyteorder()), + np.array([2, -1], dtype=np.int8), + np.zeros([1]*31, dtype=int), # trigger too large array. + np.array([0., 1.])] # invalid datatype + # Some simpler indices that still cover a bit more + self.simple_indices = [Ellipsis, None, -1, [1], np.array([True]), + 'skip'] + # Very simple ones to fill the rest: + self.fill_indices = [slice(None, None), 0] + + def _get_multi_index(self, arr, indices): + """Mimic multi dimensional indexing. + + Parameters + ---------- + arr : ndarray + Array to be indexed. + indices : tuple of index objects + + Returns + ------- + out : ndarray + An array equivalent to the indexing operation (but always a copy). + `arr[indices]` should be identical. + no_copy : bool + Whether the indexing operation requires a copy. If this is `True`, + `np.may_share_memory(arr, arr[indices])` should be `True` (with + some exceptions for scalars and possibly 0-d arrays). + + Notes + ----- + While the function may mostly match the errors of normal indexing this + is generally not the case. + """ + in_indices = list(indices) + indices = [] + # if False, this is a fancy or boolean index + no_copy = True + # number of fancy/scalar indexes that are not consecutive + num_fancy = 0 + # number of dimensions indexed by a "fancy" index + fancy_dim = 0 + # NOTE: This is a funny twist (and probably OK to change). + # The boolean array has illegal indexes, but this is + # allowed if the broadcast fancy-indices are 0-sized. + # This variable is to catch that case. + error_unless_broadcast_to_empty = False + + # We need to handle Ellipsis and make arrays from indices, also + # check if this is fancy indexing (set no_copy). + ndim = 0 + ellipsis_pos = None # define here mostly to replace all but first. + for i, indx in enumerate(in_indices): + if indx is None: + continue + if isinstance(indx, np.ndarray) and indx.dtype == bool: + no_copy = False + if indx.ndim == 0: + raise IndexError + # boolean indices can have higher dimensions + ndim += indx.ndim + fancy_dim += indx.ndim + continue + if indx is Ellipsis: + if ellipsis_pos is None: + ellipsis_pos = i + continue # do not increment ndim counter + raise IndexError + if isinstance(indx, slice): + ndim += 1 + continue + if not isinstance(indx, np.ndarray): + # This could be open for changes in numpy. + # numpy should maybe raise an error if casting to intp + # is not safe. It rejects np.array([1., 2.]) but not + # [1., 2.] as index (same for ie. np.take). + # (Note the importance of empty lists if changing this here) + try: + indx = np.array(indx, dtype=np.intp) + except ValueError: + raise IndexError + in_indices[i] = indx + elif indx.dtype.kind != 'b' and indx.dtype.kind != 'i': + raise IndexError('arrays used as indices must be of ' + 'integer (or boolean) type') + if indx.ndim != 0: + no_copy = False + ndim += 1 + fancy_dim += 1 + + if arr.ndim - ndim < 0: + # we can't take more dimensions then we have, not even for 0-d + # arrays. since a[()] makes sense, but not a[(),]. We will + # raise an error later on, unless a broadcasting error occurs + # first. + raise IndexError + + if ndim == 0 and None not in in_indices: + # Well we have no indexes or one Ellipsis. This is legal. + return arr.copy(), no_copy + + if ellipsis_pos is not None: + in_indices[ellipsis_pos:ellipsis_pos+1] = ([slice(None, None)] * + (arr.ndim - ndim)) + + for ax, indx in enumerate(in_indices): + if isinstance(indx, slice): + # convert to an index array + indx = np.arange(*indx.indices(arr.shape[ax])) + indices.append(['s', indx]) + continue + elif indx is None: + # this is like taking a slice with one element from a new axis: + indices.append(['n', np.array([0], dtype=np.intp)]) + arr = arr.reshape(arr.shape[:ax] + (1,) + arr.shape[ax:]) + continue + if isinstance(indx, np.ndarray) and indx.dtype == bool: + if indx.shape != arr.shape[ax:ax+indx.ndim]: + raise IndexError + + try: + flat_indx = np.ravel_multi_index(np.nonzero(indx), + arr.shape[ax:ax+indx.ndim], mode='raise') + except Exception: + error_unless_broadcast_to_empty = True + # fill with 0s instead, and raise error later + flat_indx = np.array([0]*indx.sum(), dtype=np.intp) + # concatenate axis into a single one: + if indx.ndim != 0: + arr = arr.reshape(arr.shape[:ax] + + (np.prod(arr.shape[ax:ax+indx.ndim]),) + + arr.shape[ax+indx.ndim:]) + indx = flat_indx + else: + # This could be changed, a 0-d boolean index can + # make sense (even outside the 0-d indexed array case) + # Note that originally this is could be interpreted as + # integer in the full integer special case. + raise IndexError + else: + # If the index is a singleton, the bounds check is done + # before the broadcasting. This used to be different in <1.9 + if indx.ndim == 0: + if indx >= arr.shape[ax] or indx < -arr.shape[ax]: + raise IndexError + if indx.ndim == 0: + # The index is a scalar. This used to be two fold, but if + # fancy indexing was active, the check was done later, + # possibly after broadcasting it away (1.7. or earlier). + # Now it is always done. + if indx >= arr.shape[ax] or indx < - arr.shape[ax]: + raise IndexError + if (len(indices) > 0 and + indices[-1][0] == 'f' and + ax != ellipsis_pos): + # NOTE: There could still have been a 0-sized Ellipsis + # between them. Checked that with ellipsis_pos. + indices[-1].append(indx) + else: + # We have a fancy index that is not after an existing one. + # NOTE: A 0-d array triggers this as well, while one may + # expect it to not trigger it, since a scalar would not be + # considered fancy indexing. + num_fancy += 1 + indices.append(['f', indx]) + + if num_fancy > 1 and not no_copy: + # We have to flush the fancy indexes left + new_indices = indices[:] + axes = list(range(arr.ndim)) + fancy_axes = [] + new_indices.insert(0, ['f']) + ni = 0 + ai = 0 + for indx in indices: + ni += 1 + if indx[0] == 'f': + new_indices[0].extend(indx[1:]) + del new_indices[ni] + ni -= 1 + for ax in range(ai, ai + len(indx[1:])): + fancy_axes.append(ax) + axes.remove(ax) + ai += len(indx) - 1 # axis we are at + indices = new_indices + # and now we need to transpose arr: + arr = arr.transpose(*(fancy_axes + axes)) + + # We only have one 'f' index now and arr is transposed accordingly. + # Now handle newaxis by reshaping... + ax = 0 + for indx in indices: + if indx[0] == 'f': + if len(indx) == 1: + continue + # First of all, reshape arr to combine fancy axes into one: + orig_shape = arr.shape + orig_slice = orig_shape[ax:ax + len(indx[1:])] + arr = arr.reshape(arr.shape[:ax] + + (np.prod(orig_slice).astype(int),) + + arr.shape[ax + len(indx[1:]):]) + + # Check if broadcasting works + res = np.broadcast(*indx[1:]) + # unfortunately the indices might be out of bounds. So check + # that first, and use mode='wrap' then. However only if + # there are any indices... + if res.size != 0: + if error_unless_broadcast_to_empty: + raise IndexError + for _indx, _size in zip(indx[1:], orig_slice): + if _indx.size == 0: + continue + if np.any(_indx >= _size) or np.any(_indx < -_size): + raise IndexError + if len(indx[1:]) == len(orig_slice): + if np.prod(orig_slice) == 0: + # Work around for a crash or IndexError with 'wrap' + # in some 0-sized cases. + try: + mi = np.ravel_multi_index(indx[1:], orig_slice, + mode='raise') + except Exception: + # This happens with 0-sized orig_slice (sometimes?) + # here it is a ValueError, but indexing gives a: + raise IndexError('invalid index into 0-sized') + else: + mi = np.ravel_multi_index(indx[1:], orig_slice, + mode='wrap') + else: + # Maybe never happens... + raise ValueError + arr = arr.take(mi.ravel(), axis=ax) + try: + arr = arr.reshape(arr.shape[:ax] + + mi.shape + + arr.shape[ax+1:]) + except ValueError: + # too many dimensions, probably + raise IndexError + ax += mi.ndim + continue + + # If we are here, we have a 1D array for take: + arr = arr.take(indx[1], axis=ax) + ax += 1 + + return arr, no_copy + + def _check_multi_index(self, arr, index): + """Check a multi index item getting and simple setting. + + Parameters + ---------- + arr : ndarray + Array to be indexed, must be a reshaped arange. + index : tuple of indexing objects + Index being tested. + """ + # Test item getting + try: + mimic_get, no_copy = self._get_multi_index(arr, index) + except Exception as e: + if HAS_REFCOUNT: + prev_refcount = sys.getrefcount(arr) + assert_raises(type(e), arr.__getitem__, index) + assert_raises(type(e), arr.__setitem__, index, 0) + if HAS_REFCOUNT: + assert_equal(prev_refcount, sys.getrefcount(arr)) + return + + self._compare_index_result(arr, index, mimic_get, no_copy) + + def _check_single_index(self, arr, index): + """Check a single index item getting and simple setting. + + Parameters + ---------- + arr : ndarray + Array to be indexed, must be an arange. + index : indexing object + Index being tested. Must be a single index and not a tuple + of indexing objects (see also `_check_multi_index`). + """ + try: + mimic_get, no_copy = self._get_multi_index(arr, (index,)) + except Exception as e: + if HAS_REFCOUNT: + prev_refcount = sys.getrefcount(arr) + assert_raises(type(e), arr.__getitem__, index) + assert_raises(type(e), arr.__setitem__, index, 0) + if HAS_REFCOUNT: + assert_equal(prev_refcount, sys.getrefcount(arr)) + return + + self._compare_index_result(arr, index, mimic_get, no_copy) + + def _compare_index_result(self, arr, index, mimic_get, no_copy): + """Compare mimicked result to indexing result. + """ + arr = arr.copy() + indexed_arr = arr[index] + assert_array_equal(indexed_arr, mimic_get) + # Check if we got a view, unless its a 0-sized or 0-d array. + # (then its not a view, and that does not matter) + if indexed_arr.size != 0 and indexed_arr.ndim != 0: + assert_(np.may_share_memory(indexed_arr, arr) == no_copy) + # Check reference count of the original array + if HAS_REFCOUNT: + if no_copy: + # refcount increases by one: + assert_equal(sys.getrefcount(arr), 3) + else: + assert_equal(sys.getrefcount(arr), 2) + + # Test non-broadcast setitem: + b = arr.copy() + b[index] = mimic_get + 1000 + if b.size == 0: + return # nothing to compare here... + if no_copy and indexed_arr.ndim != 0: + # change indexed_arr in-place to manipulate original: + indexed_arr += 1000 + assert_array_equal(arr, b) + return + # Use the fact that the array is originally an arange: + arr.flat[indexed_arr.ravel()] += 1000 + assert_array_equal(arr, b) + + def test_boolean(self): + a = np.array(5) + assert_equal(a[np.array(True)], 5) + a[np.array(True)] = 1 + assert_equal(a, 1) + # NOTE: This is different from normal broadcasting, as + # arr[boolean_array] works like in a multi index. Which means + # it is aligned to the left. This is probably correct for + # consistency with arr[boolean_array,] also no broadcasting + # is done at all + self._check_multi_index( + self.a, (np.zeros_like(self.a, dtype=bool),)) + self._check_multi_index( + self.a, (np.zeros_like(self.a, dtype=bool)[..., 0],)) + self._check_multi_index( + self.a, (np.zeros_like(self.a, dtype=bool)[None, ...],)) + + def test_multidim(self): + # Automatically test combinations with complex indexes on 2nd (or 1st) + # spot and the simple ones in one other spot. + with warnings.catch_warnings(): + # This is so that np.array(True) is not accepted in a full integer + # index, when running the file separately. + warnings.filterwarnings('error', '', DeprecationWarning) + warnings.filterwarnings('error', '', VisibleDeprecationWarning) + + def isskip(idx): + return isinstance(idx, str) and idx == "skip" + + for simple_pos in [0, 2, 3]: + tocheck = [self.fill_indices, self.complex_indices, + self.fill_indices, self.fill_indices] + tocheck[simple_pos] = self.simple_indices + for index in product(*tocheck): + index = tuple(i for i in index if not isskip(i)) + self._check_multi_index(self.a, index) + self._check_multi_index(self.b, index) + + # Check very simple item getting: + self._check_multi_index(self.a, (0, 0, 0, 0)) + self._check_multi_index(self.b, (0, 0, 0, 0)) + # Also check (simple cases of) too many indices: + assert_raises(IndexError, self.a.__getitem__, (0, 0, 0, 0, 0)) + assert_raises(IndexError, self.a.__setitem__, (0, 0, 0, 0, 0), 0) + assert_raises(IndexError, self.a.__getitem__, (0, 0, [1], 0, 0)) + assert_raises(IndexError, self.a.__setitem__, (0, 0, [1], 0, 0), 0) + + def test_1d(self): + a = np.arange(10) + for index in self.complex_indices: + self._check_single_index(a, index) + +class TestFloatNonIntegerArgument: + """ + These test that ``TypeError`` is raised when you try to use + non-integers as arguments to for indexing and slicing e.g. ``a[0.0:5]`` + and ``a[0.5]``, or other functions like ``array.reshape(1., -1)``. + + """ + def test_valid_indexing(self): + # These should raise no errors. + a = np.array([[[5]]]) + + a[np.array([0])] + a[[0, 0]] + a[:, [0, 0]] + a[:, 0,:] + a[:,:,:] + + def test_valid_slicing(self): + # These should raise no errors. + a = np.array([[[5]]]) + + a[::] + a[0:] + a[:2] + a[0:2] + a[::2] + a[1::2] + a[:2:2] + a[1:2:2] + + def test_non_integer_argument_errors(self): + a = np.array([[5]]) + + assert_raises(TypeError, np.reshape, a, (1., 1., -1)) + assert_raises(TypeError, np.reshape, a, (np.array(1.), -1)) + assert_raises(TypeError, np.take, a, [0], 1.) + assert_raises(TypeError, np.take, a, [0], np.float64(1.)) + + def test_non_integer_sequence_multiplication(self): + # NumPy scalar sequence multiply should not work with non-integers + def mult(a, b): + return a * b + + assert_raises(TypeError, mult, [1], np.float64(3)) + # following should be OK + mult([1], np.int_(3)) + + def test_reduce_axis_float_index(self): + d = np.zeros((3,3,3)) + assert_raises(TypeError, np.min, d, 0.5) + assert_raises(TypeError, np.min, d, (0.5, 1)) + assert_raises(TypeError, np.min, d, (1, 2.2)) + assert_raises(TypeError, np.min, d, (.2, 1.2)) + + +class TestBooleanIndexing: + # Using a boolean as integer argument/indexing is an error. + def test_bool_as_int_argument_errors(self): + a = np.array([[[1]]]) + + assert_raises(TypeError, np.reshape, a, (True, -1)) + assert_raises(TypeError, np.reshape, a, (np.bool(True), -1)) + # Note that operator.index(np.array(True)) does not work, a boolean + # array is thus also deprecated, but not with the same message: + assert_raises(TypeError, operator.index, np.array(True)) + assert_warns(DeprecationWarning, operator.index, np.True_) + assert_raises(TypeError, np.take, args=(a, [0], False)) + + def test_boolean_indexing_weirdness(self): + # Weird boolean indexing things + a = np.ones((2, 3, 4)) + assert a[False, True, ...].shape == (0, 2, 3, 4) + assert a[True, [0, 1], True, True, [1], [[2]]].shape == (1, 2) + assert_raises(IndexError, lambda: a[False, [0, 1], ...]) + + def test_boolean_indexing_fast_path(self): + # These used to either give the wrong error, or incorrectly give no + # error. + a = np.ones((3, 3)) + + # This used to incorrectly work (and give an array of shape (0,)) + idx1 = np.array([[False]*9]) + assert_raises_regex(IndexError, + "boolean index did not match indexed array along axis 0; " + "size of axis is 3 but size of corresponding boolean axis is 1", + lambda: a[idx1]) + + # This used to incorrectly give a ValueError: operands could not be broadcast together + idx2 = np.array([[False]*8 + [True]]) + assert_raises_regex(IndexError, + "boolean index did not match indexed array along axis 0; " + "size of axis is 3 but size of corresponding boolean axis is 1", + lambda: a[idx2]) + + # This is the same as it used to be. The above two should work like this. + idx3 = np.array([[False]*10]) + assert_raises_regex(IndexError, + "boolean index did not match indexed array along axis 0; " + "size of axis is 3 but size of corresponding boolean axis is 1", + lambda: a[idx3]) + + # This used to give ValueError: non-broadcastable operand + a = np.ones((1, 1, 2)) + idx = np.array([[[True], [False]]]) + assert_raises_regex(IndexError, + "boolean index did not match indexed array along axis 1; " + "size of axis is 1 but size of corresponding boolean axis is 2", + lambda: a[idx]) + + +class TestArrayToIndexDeprecation: + """Creating an index from array not 0-D is an error. + + """ + def test_array_to_index_error(self): + # so no exception is expected. The raising is effectively tested above. + a = np.array([[[1]]]) + + assert_raises(TypeError, operator.index, np.array([1])) + assert_raises(TypeError, np.reshape, a, (a, -1)) + assert_raises(TypeError, np.take, a, [0], a) + + +class TestNonIntegerArrayLike: + """Tests that array_likes only valid if can safely cast to integer. + + For instance, lists give IndexError when they cannot be safely cast to + an integer. + + """ + def test_basic(self): + a = np.arange(10) + + assert_raises(IndexError, a.__getitem__, [0.5, 1.5]) + assert_raises(IndexError, a.__getitem__, (['1', '2'],)) + + # The following is valid + a.__getitem__([]) + + +class TestMultipleEllipsisError: + """An index can only have a single ellipsis. + + """ + def test_basic(self): + a = np.arange(10) + assert_raises(IndexError, lambda: a[..., ...]) + assert_raises(IndexError, a.__getitem__, ((Ellipsis,) * 2,)) + assert_raises(IndexError, a.__getitem__, ((Ellipsis,) * 3,)) + + +class TestCApiAccess: + def test_getitem(self): + subscript = functools.partial(array_indexing, 0) + + # 0-d arrays don't work: + assert_raises(IndexError, subscript, np.ones(()), 0) + # Out of bound values: + assert_raises(IndexError, subscript, np.ones(10), 11) + assert_raises(IndexError, subscript, np.ones(10), -11) + assert_raises(IndexError, subscript, np.ones((10, 10)), 11) + assert_raises(IndexError, subscript, np.ones((10, 10)), -11) + + a = np.arange(10) + assert_array_equal(a[4], subscript(a, 4)) + a = a.reshape(5, 2) + assert_array_equal(a[-4], subscript(a, -4)) + + def test_setitem(self): + assign = functools.partial(array_indexing, 1) + + # Deletion is impossible: + assert_raises(ValueError, assign, np.ones(10), 0) + # 0-d arrays don't work: + assert_raises(IndexError, assign, np.ones(()), 0, 0) + # Out of bound values: + assert_raises(IndexError, assign, np.ones(10), 11, 0) + assert_raises(IndexError, assign, np.ones(10), -11, 0) + assert_raises(IndexError, assign, np.ones((10, 10)), 11, 0) + assert_raises(IndexError, assign, np.ones((10, 10)), -11, 0) + + a = np.arange(10) + assign(a, 4, 10) + assert_(a[4] == 10) + + a = a.reshape(5, 2) + assign(a, 4, 10) + assert_array_equal(a[-1], [10, 10]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_item_selection.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_item_selection.py new file mode 100644 index 0000000000000000000000000000000000000000..5660ef583edb52824494efb4d444d10ad2be5b6a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_item_selection.py @@ -0,0 +1,165 @@ +import sys + +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_raises, assert_array_equal, HAS_REFCOUNT + ) + + +class TestTake: + def test_simple(self): + a = [[1, 2], [3, 4]] + a_str = [[b'1', b'2'], [b'3', b'4']] + modes = ['raise', 'wrap', 'clip'] + indices = [-1, 4] + index_arrays = [np.empty(0, dtype=np.intp), + np.empty(tuple(), dtype=np.intp), + np.empty((1, 1), dtype=np.intp)] + real_indices = {'raise': {-1: 1, 4: IndexError}, + 'wrap': {-1: 1, 4: 0}, + 'clip': {-1: 0, 4: 1}} + # Currently all types but object, use the same function generation. + # So it should not be necessary to test all. However test also a non + # refcounted struct on top of object, which has a size that hits the + # default (non-specialized) path. + types = int, object, np.dtype([('', 'i2', 3)]) + for t in types: + # ta works, even if the array may be odd if buffer interface is used + ta = np.array(a if np.issubdtype(t, np.number) else a_str, dtype=t) + tresult = list(ta.T.copy()) + for index_array in index_arrays: + if index_array.size != 0: + tresult[0].shape = (2,) + index_array.shape + tresult[1].shape = (2,) + index_array.shape + for mode in modes: + for index in indices: + real_index = real_indices[mode][index] + if real_index is IndexError and index_array.size != 0: + index_array.put(0, index) + assert_raises(IndexError, ta.take, index_array, + mode=mode, axis=1) + elif index_array.size != 0: + index_array.put(0, index) + res = ta.take(index_array, mode=mode, axis=1) + assert_array_equal(res, tresult[real_index]) + else: + res = ta.take(index_array, mode=mode, axis=1) + assert_(res.shape == (2,) + index_array.shape) + + def test_refcounting(self): + objects = [object() for i in range(10)] + for mode in ('raise', 'clip', 'wrap'): + a = np.array(objects) + b = np.array([2, 2, 4, 5, 3, 5]) + a.take(b, out=a[:6], mode=mode) + del a + if HAS_REFCOUNT: + assert_(all(sys.getrefcount(o) == 3 for o in objects)) + # not contiguous, example: + a = np.array(objects * 2)[::2] + a.take(b, out=a[:6], mode=mode) + del a + if HAS_REFCOUNT: + assert_(all(sys.getrefcount(o) == 3 for o in objects)) + + def test_unicode_mode(self): + d = np.arange(10) + k = b'\xc3\xa4'.decode("UTF8") + assert_raises(ValueError, d.take, 5, mode=k) + + def test_empty_partition(self): + # In reference to github issue #6530 + a_original = np.array([0, 2, 4, 6, 8, 10]) + a = a_original.copy() + + # An empty partition should be a successful no-op + a.partition(np.array([], dtype=np.int16)) + + assert_array_equal(a, a_original) + + def test_empty_argpartition(self): + # In reference to github issue #6530 + a = np.array([0, 2, 4, 6, 8, 10]) + a = a.argpartition(np.array([], dtype=np.int16)) + + b = np.array([0, 1, 2, 3, 4, 5]) + assert_array_equal(a, b) + + +class TestPutMask: + @pytest.mark.parametrize("dtype", list(np.typecodes["All"]) + ["i,O"]) + def test_simple(self, dtype): + if dtype.lower() == "m": + dtype += "8[ns]" + + # putmask is weird and doesn't care about value length (even shorter) + vals = np.arange(1001).astype(dtype=dtype) + + mask = np.random.randint(2, size=1000).astype(bool) + # Use vals.dtype in case of flexible dtype (i.e. string) + arr = np.zeros(1000, dtype=vals.dtype) + zeros = arr.copy() + + np.putmask(arr, mask, vals) + assert_array_equal(arr[mask], vals[:len(mask)][mask]) + assert_array_equal(arr[~mask], zeros[~mask]) + + @pytest.mark.parametrize("dtype", list(np.typecodes["All"])[1:] + ["i,O"]) + @pytest.mark.parametrize("mode", ["raise", "wrap", "clip"]) + def test_empty(self, dtype, mode): + arr = np.zeros(1000, dtype=dtype) + arr_copy = arr.copy() + mask = np.random.randint(2, size=1000).astype(bool) + + # Allowing empty values like this is weird... + np.put(arr, mask, []) + assert_array_equal(arr, arr_copy) + + +class TestPut: + @pytest.mark.parametrize("dtype", list(np.typecodes["All"])[1:] + ["i,O"]) + @pytest.mark.parametrize("mode", ["raise", "wrap", "clip"]) + def test_simple(self, dtype, mode): + if dtype.lower() == "m": + dtype += "8[ns]" + + # put is weird and doesn't care about value length (even shorter) + vals = np.arange(1001).astype(dtype=dtype) + + # Use vals.dtype in case of flexible dtype (i.e. string) + arr = np.zeros(1000, dtype=vals.dtype) + zeros = arr.copy() + + if mode == "clip": + # Special because 0 and -1 value are "reserved" for clip test + indx = np.random.permutation(len(arr) - 2)[:-500] + 1 + + indx[-1] = 0 + indx[-2] = len(arr) - 1 + indx_put = indx.copy() + indx_put[-1] = -1389 + indx_put[-2] = 1321 + else: + # Avoid duplicates (for simplicity) and fill half only + indx = np.random.permutation(len(arr) - 3)[:-500] + indx_put = indx + if mode == "wrap": + indx_put = indx_put + len(arr) + + np.put(arr, indx_put, vals, mode=mode) + assert_array_equal(arr[indx], vals[:len(indx)]) + untouched = np.ones(len(arr), dtype=bool) + untouched[indx] = False + assert_array_equal(arr[untouched], zeros[:untouched.sum()]) + + @pytest.mark.parametrize("dtype", list(np.typecodes["All"])[1:] + ["i,O"]) + @pytest.mark.parametrize("mode", ["raise", "wrap", "clip"]) + def test_empty(self, dtype, mode): + arr = np.zeros(1000, dtype=dtype) + arr_copy = arr.copy() + + # Allowing empty values like this is weird... + np.put(arr, [1, 2, 3], []) + assert_array_equal(arr, arr_copy) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_limited_api.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_limited_api.py new file mode 100644 index 0000000000000000000000000000000000000000..d476456fb6e1c4b73f923d0144245a2c1f838ec0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_limited_api.py @@ -0,0 +1,100 @@ +import os +import subprocess +import sys +import sysconfig +import pytest + +from numpy.testing import IS_WASM, IS_PYPY, NOGIL_BUILD, IS_EDITABLE + +# This import is copied from random.tests.test_extending +try: + import cython + from Cython.Compiler.Version import version as cython_version +except ImportError: + cython = None +else: + from numpy._utils import _pep440 + + # Note: keep in sync with the one in pyproject.toml + required_version = "3.0.6" + if _pep440.parse(cython_version) < _pep440.Version(required_version): + # too old or wrong cython, skip the test + cython = None + +pytestmark = pytest.mark.skipif(cython is None, reason="requires cython") + + +if IS_EDITABLE: + pytest.skip( + "Editable install doesn't support tests with a compile step", + allow_module_level=True + ) + + +@pytest.fixture(scope='module') +def install_temp(tmpdir_factory): + # Based in part on test_cython from random.tests.test_extending + if IS_WASM: + pytest.skip("No subprocess") + + srcdir = os.path.join(os.path.dirname(__file__), 'examples', 'limited_api') + build_dir = tmpdir_factory.mktemp("limited_api") / "build" + os.makedirs(build_dir, exist_ok=True) + # Ensure we use the correct Python interpreter even when `meson` is + # installed in a different Python environment (see gh-24956) + native_file = str(build_dir / 'interpreter-native-file.ini') + with open(native_file, 'w') as f: + f.write("[binaries]\n") + f.write(f"python = '{sys.executable}'\n") + f.write(f"python3 = '{sys.executable}'") + + try: + subprocess.check_call(["meson", "--version"]) + except FileNotFoundError: + pytest.skip("No usable 'meson' found") + if sys.platform == "win32": + subprocess.check_call(["meson", "setup", + "--werror", + "--buildtype=release", + "--vsenv", "--native-file", native_file, + str(srcdir)], + cwd=build_dir, + ) + else: + subprocess.check_call(["meson", "setup", "--werror", + "--native-file", native_file, str(srcdir)], + cwd=build_dir + ) + try: + subprocess.check_call( + ["meson", "compile", "-vv"], cwd=build_dir) + except subprocess.CalledProcessError as p: + print(f"{p.stdout=}") + print(f"{p.stderr=}") + raise + + sys.path.append(str(build_dir)) + + + +@pytest.mark.skipif(IS_WASM, reason="Can't start subprocess") +@pytest.mark.xfail( + sysconfig.get_config_var("Py_DEBUG"), + reason=( + "Py_LIMITED_API is incompatible with Py_DEBUG, Py_TRACE_REFS, " + "and Py_REF_DEBUG" + ), +) +@pytest.mark.xfail( + NOGIL_BUILD, + reason="Py_GIL_DISABLED builds do not currently support the limited API", +) +@pytest.mark.skipif(IS_PYPY, reason="no support for limited API in PyPy") +def test_limited_api(install_temp): + """Test building a third-party C extension with the limited API + and building a cython extension with the limited API + """ + + import limited_api1 # Earliest (3.6) + import limited_api_latest # Latest version (current Python) + import limited_api2 # cython diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_longdouble.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_longdouble.py new file mode 100644 index 0000000000000000000000000000000000000000..a7ad5c9e57916976c395a083171236f70ce9d338 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_longdouble.py @@ -0,0 +1,395 @@ +import warnings +import platform +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_warns, assert_array_equal, + temppath, IS_MUSL + ) +from numpy._core.tests._locales import CommaDecimalPointLocale + + +LD_INFO = np.finfo(np.longdouble) +longdouble_longer_than_double = (LD_INFO.eps < np.finfo(np.double).eps) + + +_o = 1 + LD_INFO.eps +string_to_longdouble_inaccurate = (_o != np.longdouble(str(_o))) +del _o + + +def test_scalar_extraction(): + """Confirm that extracting a value doesn't convert to python float""" + o = 1 + LD_INFO.eps + a = np.array([o, o, o]) + assert_equal(a[1], o) + + +# Conversions string -> long double + +# 0.1 not exactly representable in base 2 floating point. +repr_precision = len(repr(np.longdouble(0.1))) +# +2 from macro block starting around line 842 in scalartypes.c.src. + + +@pytest.mark.skipif(IS_MUSL, + reason="test flaky on musllinux") +@pytest.mark.skipif(LD_INFO.precision + 2 >= repr_precision, + reason="repr precision not enough to show eps") +def test_str_roundtrip(): + # We will only see eps in repr if within printing precision. + o = 1 + LD_INFO.eps + assert_equal(np.longdouble(str(o)), o, "str was %s" % str(o)) + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +def test_str_roundtrip_bytes(): + o = 1 + LD_INFO.eps + assert_equal(np.longdouble(str(o).encode("ascii")), o) + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +@pytest.mark.parametrize("strtype", (np.str_, np.bytes_, str, bytes)) +def test_array_and_stringlike_roundtrip(strtype): + """ + Test that string representations of long-double roundtrip both + for array casting and scalar coercion, see also gh-15608. + """ + o = 1 + LD_INFO.eps + + if strtype in (np.bytes_, bytes): + o_str = strtype(str(o).encode("ascii")) + else: + o_str = strtype(str(o)) + + # Test that `o` is correctly coerced from the string-like + assert o == np.longdouble(o_str) + + # Test that arrays also roundtrip correctly: + o_strarr = np.asarray([o] * 3, dtype=strtype) + assert (o == o_strarr.astype(np.longdouble)).all() + + # And array coercion and casting to string give the same as scalar repr: + assert (o_strarr == o_str).all() + assert (np.asarray([o] * 3).astype(strtype) == o_str).all() + + +def test_bogus_string(): + assert_raises(ValueError, np.longdouble, "spam") + assert_raises(ValueError, np.longdouble, "1.0 flub") + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +def test_fromstring(): + o = 1 + LD_INFO.eps + s = (" " + str(o))*5 + a = np.array([o]*5) + assert_equal(np.fromstring(s, sep=" ", dtype=np.longdouble), a, + err_msg="reading '%s'" % s) + + +def test_fromstring_complex(): + for ctype in ["complex", "cdouble"]: + # Check spacing between separator + assert_equal(np.fromstring("1, 2 , 3 ,4", sep=",", dtype=ctype), + np.array([1., 2., 3., 4.])) + # Real component not specified + assert_equal(np.fromstring("1j, -2j, 3j, 4e1j", sep=",", dtype=ctype), + np.array([1.j, -2.j, 3.j, 40.j])) + # Both components specified + assert_equal(np.fromstring("1+1j,2-2j, -3+3j, -4e1+4j", sep=",", dtype=ctype), + np.array([1. + 1.j, 2. - 2.j, - 3. + 3.j, - 40. + 4j])) + # Spaces at wrong places + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+2 j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+ 2j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1 +2j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+j", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1j+1", dtype=ctype, sep=","), + np.array([1j])) + + +def test_fromstring_bogus(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1. 2. 3. flop 4.", dtype=float, sep=" "), + np.array([1., 2., 3.])) + + +def test_fromstring_empty(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("xxxxx", sep="x"), + np.array([])) + + +def test_fromstring_missing(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1xx3x4x5x6", sep="x"), + np.array([1])) + + +class TestFileBased: + + ldbl = 1 + LD_INFO.eps + tgt = np.array([ldbl]*5) + out = ''.join([str(t) + '\n' for t in tgt]) + + def test_fromfile_bogus(self): + with temppath() as path: + with open(path, 'w') as f: + f.write("1. 2. 3. flop 4.\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=float, sep=" ") + assert_equal(res, np.array([1., 2., 3.])) + + def test_fromfile_complex(self): + for ctype in ["complex", "cdouble"]: + # Check spacing between separator and only real component specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1, 2 , 3 ,4\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1., 2., 3., 4.])) + + # Real component not specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1j, -2j, 3j, 4e1j\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.j, -2.j, 3.j, 40.j])) + + # Both components specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1+1j,2-2j, -3+3j, -4e1+4j\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1. + 1.j, 2. - 2.j, - 3. + 3.j, - 40. + 4j])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+2 j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+ 2j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1 +2j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+j\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1j+1\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.j])) + + + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_fromfile(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.fromfile(path, dtype=np.longdouble, sep="\n") + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_genfromtxt(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.genfromtxt(path, dtype=np.longdouble) + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_loadtxt(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.loadtxt(path, dtype=np.longdouble) + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_tofile_roundtrip(self): + with temppath() as path: + self.tgt.tofile(path, sep=" ") + res = np.fromfile(path, dtype=np.longdouble, sep=" ") + assert_equal(res, self.tgt) + + +# Conversions long double -> string + + +def test_str_exact(): + o = 1 + LD_INFO.eps + assert_(str(o) != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, reason="BUG #2376") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_format(): + o = 1 + LD_INFO.eps + assert_("{0:.40g}".format(o) != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, reason="BUG #2376") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_percent(): + o = 1 + LD_INFO.eps + assert_("%.40g" % o != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, + reason="array repr problem") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_array_repr(): + o = 1 + LD_INFO.eps + a = np.array([o]) + b = np.array([1], dtype=np.longdouble) + if not np.all(a != b): + raise ValueError("precision loss creating arrays") + assert_(repr(a) != repr(b)) + +# +# Locale tests: scalar types formatting should be independent of the locale +# + +class TestCommaDecimalPointLocale(CommaDecimalPointLocale): + + def test_str_roundtrip_foreign(self): + o = 1.5 + assert_equal(o, np.longdouble(str(o))) + + def test_fromstring_foreign_repr(self): + f = 1.234 + a = np.fromstring(repr(f), dtype=float, sep=" ") + assert_equal(a[0], f) + + def test_fromstring_best_effort_float(self): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1,234", dtype=float, sep=" "), + np.array([1.])) + + def test_fromstring_best_effort(self): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1,234", dtype=np.longdouble, sep=" "), + np.array([1.])) + + def test_fromstring_foreign(self): + s = "1.234" + a = np.fromstring(s, dtype=np.longdouble, sep=" ") + assert_equal(a[0], np.longdouble(s)) + + def test_fromstring_foreign_sep(self): + a = np.array([1, 2, 3, 4]) + b = np.fromstring("1,2,3,4,", dtype=np.longdouble, sep=",") + assert_array_equal(a, b) + + def test_fromstring_foreign_value(self): + with assert_warns(DeprecationWarning): + b = np.fromstring("1,234", dtype=np.longdouble, sep=" ") + assert_array_equal(b[0], 1) + + +@pytest.mark.parametrize("int_val", [ + # cases discussed in gh-10723 + # and gh-9968 + 2 ** 1024, 0]) +def test_longdouble_from_int(int_val): + # for issue gh-9968 + str_val = str(int_val) + # we'll expect a RuntimeWarning on platforms + # with np.longdouble equivalent to np.double + # for large integer input + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + # can be inf==inf on some platforms + assert np.longdouble(int_val) == np.longdouble(str_val) + # we can't directly compare the int and + # max longdouble value on all platforms + if np.allclose(np.finfo(np.longdouble).max, + np.finfo(np.double).max) and w: + assert w[0].category is RuntimeWarning + +@pytest.mark.parametrize("bool_val", [ + True, False]) +def test_longdouble_from_bool(bool_val): + assert np.longdouble(bool_val) == np.longdouble(int(bool_val)) + + +@pytest.mark.skipif( + not (IS_MUSL and platform.machine() == "x86_64"), + reason="only need to run on musllinux_x86_64" +) +def test_musllinux_x86_64_signature(): + # this test may fail if you're emulating musllinux_x86_64 on a different + # architecture, but should pass natively. + known_sigs = [b'\xcd\xcc\xcc\xcc\xcc\xcc\xcc\xcc\xfb\xbf'] + sig = (np.longdouble(-1.0) / np.longdouble(10.0)) + sig = sig.view(sig.dtype.newbyteorder('<')).tobytes()[:10] + assert sig in known_sigs + + +def test_eps_positive(): + # np.finfo('g').eps should be positive on all platforms. If this isn't true + # then something may have gone wrong with the MachArLike, e.g. if + # np._core.getlimits._discovered_machar didn't work properly + assert np.finfo(np.longdouble).eps > 0. diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_machar.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_machar.py new file mode 100644 index 0000000000000000000000000000000000000000..c7f677075dcac04cd1d2202bbcac5076ceabb703 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_machar.py @@ -0,0 +1,30 @@ +""" +Test machar. Given recent changes to hardcode type data, we might want to get +rid of both MachAr and this test at some point. + +""" +from numpy._core._machar import MachAr +import numpy._core.numerictypes as ntypes +from numpy import errstate, array + + +class TestMachAr: + def _run_machar_highprec(self): + # Instantiate MachAr instance with high enough precision to cause + # underflow + try: + hiprec = ntypes.float96 + MachAr(lambda v: array(v, hiprec)) + except AttributeError: + # Fixme, this needs to raise a 'skip' exception. + "Skipping test: no ntypes.float96 available on this platform." + + def test_underlow(self): + # Regression test for #759: + # instantiating MachAr for dtype = np.float96 raises spurious warning. + with errstate(all='raise'): + try: + self._run_machar_highprec() + except FloatingPointError as e: + msg = "Caught %s exception, should not have been raised." % e + raise AssertionError(msg) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_overlap.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_overlap.py new file mode 100644 index 0000000000000000000000000000000000000000..49a6b90da118e1d0c172383e9e74dc86ef3d43e0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_overlap.py @@ -0,0 +1,933 @@ +import itertools +import pytest + +import numpy as np +from numpy._core._multiarray_tests import solve_diophantine, internal_overlap +from numpy._core import _umath_tests +from numpy.lib.stride_tricks import as_strided +from numpy.testing import ( + assert_, assert_raises, assert_equal, assert_array_equal + ) + + +ndims = 2 +size = 10 +shape = tuple([size] * ndims) + +MAY_SHARE_BOUNDS = 0 +MAY_SHARE_EXACT = -1 + + +def _indices_for_nelems(nelems): + """Returns slices of length nelems, from start onwards, in direction sign.""" + + if nelems == 0: + return [size // 2] # int index + + res = [] + for step in (1, 2): + for sign in (-1, 1): + start = size // 2 - nelems * step * sign // 2 + stop = start + nelems * step * sign + res.append(slice(start, stop, step * sign)) + + return res + + +def _indices_for_axis(): + """Returns (src, dst) pairs of indices.""" + + res = [] + for nelems in (0, 2, 3): + ind = _indices_for_nelems(nelems) + res.extend(itertools.product(ind, ind)) # all assignments of size "nelems" + + return res + + +def _indices(ndims): + """Returns ((axis0_src, axis0_dst), (axis1_src, axis1_dst), ... ) index pairs.""" + + ind = _indices_for_axis() + return itertools.product(ind, repeat=ndims) + + +def _check_assignment(srcidx, dstidx): + """Check assignment arr[dstidx] = arr[srcidx] works.""" + + arr = np.arange(np.prod(shape)).reshape(shape) + + cpy = arr.copy() + + cpy[dstidx] = arr[srcidx] + arr[dstidx] = arr[srcidx] + + assert_(np.all(arr == cpy), + 'assigning arr[%s] = arr[%s]' % (dstidx, srcidx)) + + +def test_overlapping_assignments(): + # Test automatically generated assignments which overlap in memory. + + inds = _indices(ndims) + + for ind in inds: + srcidx = tuple([a[0] for a in ind]) + dstidx = tuple([a[1] for a in ind]) + + _check_assignment(srcidx, dstidx) + + +@pytest.mark.slow +def test_diophantine_fuzz(): + # Fuzz test the diophantine solver + rng = np.random.RandomState(1234) + + max_int = np.iinfo(np.intp).max + + for ndim in range(10): + feasible_count = 0 + infeasible_count = 0 + + min_count = 500//(ndim + 1) + + while min(feasible_count, infeasible_count) < min_count: + # Ensure big and small integer problems + A_max = 1 + rng.randint(0, 11, dtype=np.intp)**6 + U_max = rng.randint(0, 11, dtype=np.intp)**6 + + A_max = min(max_int, A_max) + U_max = min(max_int-1, U_max) + + A = tuple(int(rng.randint(1, A_max+1, dtype=np.intp)) + for j in range(ndim)) + U = tuple(int(rng.randint(0, U_max+2, dtype=np.intp)) + for j in range(ndim)) + + b_ub = min(max_int-2, sum(a*ub for a, ub in zip(A, U))) + b = int(rng.randint(-1, b_ub+2, dtype=np.intp)) + + if ndim == 0 and feasible_count < min_count: + b = 0 + + X = solve_diophantine(A, U, b) + + if X is None: + # Check the simplified decision problem agrees + X_simplified = solve_diophantine(A, U, b, simplify=1) + assert_(X_simplified is None, (A, U, b, X_simplified)) + + # Check no solution exists (provided the problem is + # small enough so that brute force checking doesn't + # take too long) + ranges = tuple(range(0, a*ub+1, a) for a, ub in zip(A, U)) + + size = 1 + for r in ranges: + size *= len(r) + if size < 100000: + assert_(not any(sum(w) == b for w in itertools.product(*ranges))) + infeasible_count += 1 + else: + # Check the simplified decision problem agrees + X_simplified = solve_diophantine(A, U, b, simplify=1) + assert_(X_simplified is not None, (A, U, b, X_simplified)) + + # Check validity + assert_(sum(a*x for a, x in zip(A, X)) == b) + assert_(all(0 <= x <= ub for x, ub in zip(X, U))) + feasible_count += 1 + + +def test_diophantine_overflow(): + # Smoke test integer overflow detection + max_intp = np.iinfo(np.intp).max + max_int64 = np.iinfo(np.int64).max + + if max_int64 <= max_intp: + # Check that the algorithm works internally in 128-bit; + # solving this problem requires large intermediate numbers + A = (max_int64//2, max_int64//2 - 10) + U = (max_int64//2, max_int64//2 - 10) + b = 2*(max_int64//2) - 10 + + assert_equal(solve_diophantine(A, U, b), (1, 1)) + + +def check_may_share_memory_exact(a, b): + got = np.may_share_memory(a, b, max_work=MAY_SHARE_EXACT) + + assert_equal(np.may_share_memory(a, b), + np.may_share_memory(a, b, max_work=MAY_SHARE_BOUNDS)) + + a.fill(0) + b.fill(0) + a.fill(1) + exact = b.any() + + err_msg = "" + if got != exact: + err_msg = " " + "\n ".join([ + "base_a - base_b = %r" % (a.__array_interface__['data'][0] - b.__array_interface__['data'][0],), + "shape_a = %r" % (a.shape,), + "shape_b = %r" % (b.shape,), + "strides_a = %r" % (a.strides,), + "strides_b = %r" % (b.strides,), + "size_a = %r" % (a.size,), + "size_b = %r" % (b.size,) + ]) + + assert_equal(got, exact, err_msg=err_msg) + + +def test_may_share_memory_manual(): + # Manual test cases for may_share_memory + + # Base arrays + xs0 = [ + np.zeros([13, 21, 23, 22], dtype=np.int8), + np.zeros([13, 21, 23*2, 22], dtype=np.int8)[:,:,::2,:] + ] + + # Generate all negative stride combinations + xs = [] + for x in xs0: + for ss in itertools.product(*(([slice(None), slice(None, None, -1)],)*4)): + xp = x[ss] + xs.append(xp) + + for x in xs: + # The default is a simple extent check + assert_(np.may_share_memory(x[:,0,:], x[:,1,:])) + assert_(np.may_share_memory(x[:,0,:], x[:,1,:], max_work=None)) + + # Exact checks + check_may_share_memory_exact(x[:,0,:], x[:,1,:]) + check_may_share_memory_exact(x[:,::7], x[:,3::3]) + + try: + xp = x.ravel() + if xp.flags.owndata: + continue + xp = xp.view(np.int16) + except ValueError: + continue + + # 0-size arrays cannot overlap + check_may_share_memory_exact(x.ravel()[6:6], + xp.reshape(13, 21, 23, 11)[:,::7]) + + # Test itemsize is dealt with + check_may_share_memory_exact(x[:,::7], + xp.reshape(13, 21, 23, 11)) + check_may_share_memory_exact(x[:,::7], + xp.reshape(13, 21, 23, 11)[:,3::3]) + check_may_share_memory_exact(x.ravel()[6:7], + xp.reshape(13, 21, 23, 11)[:,::7]) + + # Check unit size + x = np.zeros([1], dtype=np.int8) + check_may_share_memory_exact(x, x) + check_may_share_memory_exact(x, x.copy()) + + +def iter_random_view_pairs(x, same_steps=True, equal_size=False): + rng = np.random.RandomState(1234) + + if equal_size and same_steps: + raise ValueError + + def random_slice(n, step): + start = rng.randint(0, n+1, dtype=np.intp) + stop = rng.randint(start, n+1, dtype=np.intp) + if rng.randint(0, 2, dtype=np.intp) == 0: + stop, start = start, stop + step *= -1 + return slice(start, stop, step) + + def random_slice_fixed_size(n, step, size): + start = rng.randint(0, n+1 - size*step) + stop = start + (size-1)*step + 1 + if rng.randint(0, 2) == 0: + stop, start = start-1, stop-1 + if stop < 0: + stop = None + step *= -1 + return slice(start, stop, step) + + # First a few regular views + yield x, x + for j in range(1, 7, 3): + yield x[j:], x[:-j] + yield x[...,j:], x[...,:-j] + + # An array with zero stride internal overlap + strides = list(x.strides) + strides[0] = 0 + xp = as_strided(x, shape=x.shape, strides=strides) + yield x, xp + yield xp, xp + + # An array with non-zero stride internal overlap + strides = list(x.strides) + if strides[0] > 1: + strides[0] = 1 + xp = as_strided(x, shape=x.shape, strides=strides) + yield x, xp + yield xp, xp + + # Then discontiguous views + while True: + steps = tuple(rng.randint(1, 11, dtype=np.intp) + if rng.randint(0, 5, dtype=np.intp) == 0 else 1 + for j in range(x.ndim)) + s1 = tuple(random_slice(p, s) for p, s in zip(x.shape, steps)) + + t1 = np.arange(x.ndim) + rng.shuffle(t1) + + if equal_size: + t2 = t1 + else: + t2 = np.arange(x.ndim) + rng.shuffle(t2) + + a = x[s1] + + if equal_size: + if a.size == 0: + continue + + steps2 = tuple(rng.randint(1, max(2, p//(1+pa))) + if rng.randint(0, 5) == 0 else 1 + for p, s, pa in zip(x.shape, s1, a.shape)) + s2 = tuple(random_slice_fixed_size(p, s, pa) + for p, s, pa in zip(x.shape, steps2, a.shape)) + elif same_steps: + steps2 = steps + else: + steps2 = tuple(rng.randint(1, 11, dtype=np.intp) + if rng.randint(0, 5, dtype=np.intp) == 0 else 1 + for j in range(x.ndim)) + + if not equal_size: + s2 = tuple(random_slice(p, s) for p, s in zip(x.shape, steps2)) + + a = a.transpose(t1) + b = x[s2].transpose(t2) + + yield a, b + + +def check_may_share_memory_easy_fuzz(get_max_work, same_steps, min_count): + # Check that overlap problems with common strides are solved with + # little work. + x = np.zeros([17,34,71,97], dtype=np.int16) + + feasible = 0 + infeasible = 0 + + pair_iter = iter_random_view_pairs(x, same_steps) + + while min(feasible, infeasible) < min_count: + a, b = next(pair_iter) + + bounds_overlap = np.may_share_memory(a, b) + may_share_answer = np.may_share_memory(a, b) + easy_answer = np.may_share_memory(a, b, max_work=get_max_work(a, b)) + exact_answer = np.may_share_memory(a, b, max_work=MAY_SHARE_EXACT) + + if easy_answer != exact_answer: + # assert_equal is slow... + assert_equal(easy_answer, exact_answer) + + if may_share_answer != bounds_overlap: + assert_equal(may_share_answer, bounds_overlap) + + if bounds_overlap: + if exact_answer: + feasible += 1 + else: + infeasible += 1 + + +@pytest.mark.slow +def test_may_share_memory_easy_fuzz(): + # Check that overlap problems with common strides are always + # solved with little work. + + check_may_share_memory_easy_fuzz(get_max_work=lambda a, b: 1, + same_steps=True, + min_count=2000) + + +@pytest.mark.slow +def test_may_share_memory_harder_fuzz(): + # Overlap problems with not necessarily common strides take more + # work. + # + # The work bound below can't be reduced much. Harder problems can + # also exist but not be detected here, as the set of problems + # comes from RNG. + + check_may_share_memory_easy_fuzz(get_max_work=lambda a, b: max(a.size, b.size)//2, + same_steps=False, + min_count=2000) + + +def test_shares_memory_api(): + x = np.zeros([4, 5, 6], dtype=np.int8) + + assert_equal(np.shares_memory(x, x), True) + assert_equal(np.shares_memory(x, x.copy()), False) + + a = x[:,::2,::3] + b = x[:,::3,::2] + assert_equal(np.shares_memory(a, b), True) + assert_equal(np.shares_memory(a, b, max_work=None), True) + assert_raises( + np.exceptions.TooHardError, np.shares_memory, a, b, max_work=1 + ) + + +def test_may_share_memory_bad_max_work(): + x = np.zeros([1]) + assert_raises(OverflowError, np.may_share_memory, x, x, max_work=10**100) + assert_raises(OverflowError, np.shares_memory, x, x, max_work=10**100) + + +def test_internal_overlap_diophantine(): + def check(A, U, exists=None): + X = solve_diophantine(A, U, 0, require_ub_nontrivial=1) + + if exists is None: + exists = (X is not None) + + if X is not None: + assert_(sum(a*x for a, x in zip(A, X)) == sum(a*u//2 for a, u in zip(A, U))) + assert_(all(0 <= x <= u for x, u in zip(X, U))) + assert_(any(x != u//2 for x, u in zip(X, U))) + + if exists: + assert_(X is not None, repr(X)) + else: + assert_(X is None, repr(X)) + + # Smoke tests + check((3, 2), (2*2, 3*2), exists=True) + check((3*2, 2), (15*2, (3-1)*2), exists=False) + + +def test_internal_overlap_slices(): + # Slicing an array never generates internal overlap + + x = np.zeros([17,34,71,97], dtype=np.int16) + + rng = np.random.RandomState(1234) + + def random_slice(n, step): + start = rng.randint(0, n+1, dtype=np.intp) + stop = rng.randint(start, n+1, dtype=np.intp) + if rng.randint(0, 2, dtype=np.intp) == 0: + stop, start = start, stop + step *= -1 + return slice(start, stop, step) + + cases = 0 + min_count = 5000 + + while cases < min_count: + steps = tuple(rng.randint(1, 11, dtype=np.intp) + if rng.randint(0, 5, dtype=np.intp) == 0 else 1 + for j in range(x.ndim)) + t1 = np.arange(x.ndim) + rng.shuffle(t1) + s1 = tuple(random_slice(p, s) for p, s in zip(x.shape, steps)) + a = x[s1].transpose(t1) + + assert_(not internal_overlap(a)) + cases += 1 + + +def check_internal_overlap(a, manual_expected=None): + got = internal_overlap(a) + + # Brute-force check + m = set() + ranges = tuple(range(n) for n in a.shape) + for v in itertools.product(*ranges): + offset = sum(s*w for s, w in zip(a.strides, v)) + if offset in m: + expected = True + break + else: + m.add(offset) + else: + expected = False + + # Compare + if got != expected: + assert_equal(got, expected, err_msg=repr((a.strides, a.shape))) + if manual_expected is not None and expected != manual_expected: + assert_equal(expected, manual_expected) + return got + + +def test_internal_overlap_manual(): + # Stride tricks can construct arrays with internal overlap + + # We don't care about memory bounds, the array is not + # read/write accessed + x = np.arange(1).astype(np.int8) + + # Check low-dimensional special cases + + check_internal_overlap(x, False) # 1-dim + check_internal_overlap(x.reshape([]), False) # 0-dim + + a = as_strided(x, strides=(3, 4), shape=(4, 4)) + check_internal_overlap(a, False) + + a = as_strided(x, strides=(3, 4), shape=(5, 4)) + check_internal_overlap(a, True) + + a = as_strided(x, strides=(0,), shape=(0,)) + check_internal_overlap(a, False) + + a = as_strided(x, strides=(0,), shape=(1,)) + check_internal_overlap(a, False) + + a = as_strided(x, strides=(0,), shape=(2,)) + check_internal_overlap(a, True) + + a = as_strided(x, strides=(0, -9993), shape=(87, 22)) + check_internal_overlap(a, True) + + a = as_strided(x, strides=(0, -9993), shape=(1, 22)) + check_internal_overlap(a, False) + + a = as_strided(x, strides=(0, -9993), shape=(0, 22)) + check_internal_overlap(a, False) + + +def test_internal_overlap_fuzz(): + # Fuzz check; the brute-force check is fairly slow + + x = np.arange(1).astype(np.int8) + + overlap = 0 + no_overlap = 0 + min_count = 100 + + rng = np.random.RandomState(1234) + + while min(overlap, no_overlap) < min_count: + ndim = rng.randint(1, 4, dtype=np.intp) + + strides = tuple(rng.randint(-1000, 1000, dtype=np.intp) + for j in range(ndim)) + shape = tuple(rng.randint(1, 30, dtype=np.intp) + for j in range(ndim)) + + a = as_strided(x, strides=strides, shape=shape) + result = check_internal_overlap(a) + + if result: + overlap += 1 + else: + no_overlap += 1 + + +def test_non_ndarray_inputs(): + # Regression check for gh-5604 + + class MyArray: + def __init__(self, data): + self.data = data + + @property + def __array_interface__(self): + return self.data.__array_interface__ + + class MyArray2: + def __init__(self, data): + self.data = data + + def __array__(self, dtype=None, copy=None): + return self.data + + for cls in [MyArray, MyArray2]: + x = np.arange(5) + + assert_(np.may_share_memory(cls(x[::2]), x[1::2])) + assert_(not np.shares_memory(cls(x[::2]), x[1::2])) + + assert_(np.shares_memory(cls(x[1::3]), x[::2])) + assert_(np.may_share_memory(cls(x[1::3]), x[::2])) + + +def view_element_first_byte(x): + """Construct an array viewing the first byte of each element of `x`""" + from numpy.lib._stride_tricks_impl import DummyArray + interface = dict(x.__array_interface__) + interface['typestr'] = '|b1' + interface['descr'] = [('', '|b1')] + return np.asarray(DummyArray(interface, x)) + + +def assert_copy_equivalent(operation, args, out, **kwargs): + """ + Check that operation(*args, out=out) produces results + equivalent to out[...] = operation(*args, out=out.copy()) + """ + + kwargs['out'] = out + kwargs2 = dict(kwargs) + kwargs2['out'] = out.copy() + + out_orig = out.copy() + out[...] = operation(*args, **kwargs2) + expected = out.copy() + out[...] = out_orig + + got = operation(*args, **kwargs).copy() + + if (got != expected).any(): + assert_equal(got, expected) + + +class TestUFunc: + """ + Test ufunc call memory overlap handling + """ + + def check_unary_fuzz(self, operation, get_out_axis_size, dtype=np.int16, + count=5000): + shapes = [7, 13, 8, 21, 29, 32] + + rng = np.random.RandomState(1234) + + for ndim in range(1, 6): + x = rng.randint(0, 2**16, size=shapes[:ndim]).astype(dtype) + + it = iter_random_view_pairs(x, same_steps=False, equal_size=True) + + min_count = count // (ndim + 1)**2 + + overlapping = 0 + while overlapping < min_count: + a, b = next(it) + + a_orig = a.copy() + b_orig = b.copy() + + if get_out_axis_size is None: + assert_copy_equivalent(operation, [a], out=b) + + if np.shares_memory(a, b): + overlapping += 1 + else: + for axis in itertools.chain(range(ndim), [None]): + a[...] = a_orig + b[...] = b_orig + + # Determine size for reduction axis (None if scalar) + outsize, scalarize = get_out_axis_size(a, b, axis) + if outsize == 'skip': + continue + + # Slice b to get an output array of the correct size + sl = [slice(None)] * ndim + if axis is None: + if outsize is None: + sl = [slice(0, 1)] + [0]*(ndim - 1) + else: + sl = [slice(0, outsize)] + [0]*(ndim - 1) + else: + if outsize is None: + k = b.shape[axis]//2 + if ndim == 1: + sl[axis] = slice(k, k + 1) + else: + sl[axis] = k + else: + assert b.shape[axis] >= outsize + sl[axis] = slice(0, outsize) + b_out = b[tuple(sl)] + + if scalarize: + b_out = b_out.reshape([]) + + if np.shares_memory(a, b_out): + overlapping += 1 + + # Check result + assert_copy_equivalent(operation, [a], out=b_out, axis=axis) + + @pytest.mark.slow + def test_unary_ufunc_call_fuzz(self): + self.check_unary_fuzz(np.invert, None, np.int16) + + @pytest.mark.slow + def test_unary_ufunc_call_complex_fuzz(self): + # Complex typically has a smaller alignment than itemsize + self.check_unary_fuzz(np.negative, None, np.complex128, count=500) + + def test_binary_ufunc_accumulate_fuzz(self): + def get_out_axis_size(a, b, axis): + if axis is None: + if a.ndim == 1: + return a.size, False + else: + return 'skip', False # accumulate doesn't support this + else: + return a.shape[axis], False + + self.check_unary_fuzz(np.add.accumulate, get_out_axis_size, + dtype=np.int16, count=500) + + def test_binary_ufunc_reduce_fuzz(self): + def get_out_axis_size(a, b, axis): + return None, (axis is None or a.ndim == 1) + + self.check_unary_fuzz(np.add.reduce, get_out_axis_size, + dtype=np.int16, count=500) + + def test_binary_ufunc_reduceat_fuzz(self): + def get_out_axis_size(a, b, axis): + if axis is None: + if a.ndim == 1: + return a.size, False + else: + return 'skip', False # reduceat doesn't support this + else: + return a.shape[axis], False + + def do_reduceat(a, out, axis): + if axis is None: + size = len(a) + step = size//len(out) + else: + size = a.shape[axis] + step = a.shape[axis] // out.shape[axis] + idx = np.arange(0, size, step) + return np.add.reduceat(a, idx, out=out, axis=axis) + + self.check_unary_fuzz(do_reduceat, get_out_axis_size, + dtype=np.int16, count=500) + + def test_binary_ufunc_reduceat_manual(self): + def check(ufunc, a, ind, out): + c1 = ufunc.reduceat(a.copy(), ind.copy(), out=out.copy()) + c2 = ufunc.reduceat(a, ind, out=out) + assert_array_equal(c1, c2) + + # Exactly same input/output arrays + a = np.arange(10000, dtype=np.int16) + check(np.add, a, a[::-1].copy(), a) + + # Overlap with index + a = np.arange(10000, dtype=np.int16) + check(np.add, a, a[::-1], a) + + @pytest.mark.slow + def test_unary_gufunc_fuzz(self): + shapes = [7, 13, 8, 21, 29, 32] + gufunc = _umath_tests.euclidean_pdist + + rng = np.random.RandomState(1234) + + for ndim in range(2, 6): + x = rng.rand(*shapes[:ndim]) + + it = iter_random_view_pairs(x, same_steps=False, equal_size=True) + + min_count = 500 // (ndim + 1)**2 + + overlapping = 0 + while overlapping < min_count: + a, b = next(it) + + if min(a.shape[-2:]) < 2 or min(b.shape[-2:]) < 2 or a.shape[-1] < 2: + continue + + # Ensure the shapes are so that euclidean_pdist is happy + if b.shape[-1] > b.shape[-2]: + b = b[...,0,:] + else: + b = b[...,:,0] + + n = a.shape[-2] + p = n * (n - 1) // 2 + if p <= b.shape[-1] and p > 0: + b = b[...,:p] + else: + n = max(2, int(np.sqrt(b.shape[-1]))//2) + p = n * (n - 1) // 2 + a = a[...,:n,:] + b = b[...,:p] + + # Call + if np.shares_memory(a, b): + overlapping += 1 + + with np.errstate(over='ignore', invalid='ignore'): + assert_copy_equivalent(gufunc, [a], out=b) + + def test_ufunc_at_manual(self): + def check(ufunc, a, ind, b=None): + a0 = a.copy() + if b is None: + ufunc.at(a0, ind.copy()) + c1 = a0.copy() + ufunc.at(a, ind) + c2 = a.copy() + else: + ufunc.at(a0, ind.copy(), b.copy()) + c1 = a0.copy() + ufunc.at(a, ind, b) + c2 = a.copy() + assert_array_equal(c1, c2) + + # Overlap with index + a = np.arange(10000, dtype=np.int16) + check(np.invert, a[::-1], a) + + # Overlap with second data array + a = np.arange(100, dtype=np.int16) + ind = np.arange(0, 100, 2, dtype=np.int16) + check(np.add, a, ind, a[25:75]) + + def test_unary_ufunc_1d_manual(self): + # Exercise ufunc fast-paths (that avoid creation of an `np.nditer`) + + def check(a, b): + a_orig = a.copy() + b_orig = b.copy() + + b0 = b.copy() + c1 = ufunc(a, out=b0) + c2 = ufunc(a, out=b) + assert_array_equal(c1, c2) + + # Trigger "fancy ufunc loop" code path + mask = view_element_first_byte(b).view(np.bool) + + a[...] = a_orig + b[...] = b_orig + c1 = ufunc(a, out=b.copy(), where=mask.copy()).copy() + + a[...] = a_orig + b[...] = b_orig + c2 = ufunc(a, out=b, where=mask.copy()).copy() + + # Also, mask overlapping with output + a[...] = a_orig + b[...] = b_orig + c3 = ufunc(a, out=b, where=mask).copy() + + assert_array_equal(c1, c2) + assert_array_equal(c1, c3) + + dtypes = [np.int8, np.int16, np.int32, np.int64, np.float32, + np.float64, np.complex64, np.complex128] + dtypes = [np.dtype(x) for x in dtypes] + + for dtype in dtypes: + if np.issubdtype(dtype, np.integer): + ufunc = np.invert + else: + ufunc = np.reciprocal + + n = 1000 + k = 10 + indices = [ + np.index_exp[:n], + np.index_exp[k:k+n], + np.index_exp[n-1::-1], + np.index_exp[k+n-1:k-1:-1], + np.index_exp[:2*n:2], + np.index_exp[k:k+2*n:2], + np.index_exp[2*n-1::-2], + np.index_exp[k+2*n-1:k-1:-2], + ] + + for xi, yi in itertools.product(indices, indices): + v = np.arange(1, 1 + n*2 + k, dtype=dtype) + x = v[xi] + y = v[yi] + + with np.errstate(all='ignore'): + check(x, y) + + # Scalar cases + check(x[:1], y) + check(x[-1:], y) + check(x[:1].reshape([]), y) + check(x[-1:].reshape([]), y) + + def test_unary_ufunc_where_same(self): + # Check behavior at wheremask overlap + ufunc = np.invert + + def check(a, out, mask): + c1 = ufunc(a, out=out.copy(), where=mask.copy()) + c2 = ufunc(a, out=out, where=mask) + assert_array_equal(c1, c2) + + # Check behavior with same input and output arrays + x = np.arange(100).astype(np.bool) + check(x, x, x) + check(x, x.copy(), x) + check(x, x, x.copy()) + + @pytest.mark.slow + def test_binary_ufunc_1d_manual(self): + ufunc = np.add + + def check(a, b, c): + c0 = c.copy() + c1 = ufunc(a, b, out=c0) + c2 = ufunc(a, b, out=c) + assert_array_equal(c1, c2) + + for dtype in [np.int8, np.int16, np.int32, np.int64, + np.float32, np.float64, np.complex64, np.complex128]: + # Check different data dependency orders + + n = 1000 + k = 10 + + indices = [] + for p in [1, 2]: + indices.extend([ + np.index_exp[:p*n:p], + np.index_exp[k:k+p*n:p], + np.index_exp[p*n-1::-p], + np.index_exp[k+p*n-1:k-1:-p], + ]) + + for x, y, z in itertools.product(indices, indices, indices): + v = np.arange(6*n).astype(dtype) + x = v[x] + y = v[y] + z = v[z] + + check(x, y, z) + + # Scalar cases + check(x[:1], y, z) + check(x[-1:], y, z) + check(x[:1].reshape([]), y, z) + check(x[-1:].reshape([]), y, z) + check(x, y[:1], z) + check(x, y[-1:], z) + check(x, y[:1].reshape([]), z) + check(x, y[-1:].reshape([]), z) + + def test_inplace_op_simple_manual(self): + rng = np.random.RandomState(1234) + x = rng.rand(200, 200) # bigger than bufsize + + x += x.T + assert_array_equal(x - x.T, 0) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_policy.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_policy.py new file mode 100644 index 0000000000000000000000000000000000000000..9846f89c404cafe4168e8f4b2659f8b6a39ebabd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_mem_policy.py @@ -0,0 +1,449 @@ +import asyncio +import gc +import os +import sys +import threading + +import pytest + +import numpy as np +from numpy.testing import extbuild, assert_warns, IS_WASM, IS_EDITABLE +from numpy._core.multiarray import get_handler_name + + +@pytest.fixture +def get_module(tmp_path): + """ Add a memory policy that returns a false pointer 64 bytes into the + actual allocation, and fill the prefix with some text. Then check at each + memory manipulation that the prefix exists, to make sure all alloc/realloc/ + free/calloc go via the functions here. + """ + if sys.platform.startswith('cygwin'): + pytest.skip('link fails on cygwin') + if IS_WASM: + pytest.skip("Can't build module inside Wasm") + if IS_EDITABLE: + pytest.skip("Can't build module for editable install") + + functions = [ + ("get_default_policy", "METH_NOARGS", """ + Py_INCREF(PyDataMem_DefaultHandler); + return PyDataMem_DefaultHandler; + """), + ("set_secret_data_policy", "METH_NOARGS", """ + PyObject *secret_data = + PyCapsule_New(&secret_data_handler, "mem_handler", NULL); + if (secret_data == NULL) { + return NULL; + } + PyObject *old = PyDataMem_SetHandler(secret_data); + Py_DECREF(secret_data); + return old; + """), + ("set_wrong_capsule_name_data_policy", "METH_NOARGS", """ + PyObject *wrong_name_capsule = + PyCapsule_New(&secret_data_handler, "not_mem_handler", NULL); + if (wrong_name_capsule == NULL) { + return NULL; + } + PyObject *old = PyDataMem_SetHandler(wrong_name_capsule); + Py_DECREF(wrong_name_capsule); + return old; + """), + ("set_old_policy", "METH_O", """ + PyObject *old; + if (args != NULL && PyCapsule_CheckExact(args)) { + old = PyDataMem_SetHandler(args); + } + else { + old = PyDataMem_SetHandler(NULL); + } + return old; + """), + ("get_array", "METH_NOARGS", """ + char *buf = (char *)malloc(20); + npy_intp dims[1]; + dims[0] = 20; + PyArray_Descr *descr = PyArray_DescrNewFromType(NPY_UINT8); + return PyArray_NewFromDescr(&PyArray_Type, descr, 1, dims, NULL, + buf, NPY_ARRAY_WRITEABLE, NULL); + """), + ("set_own", "METH_O", """ + if (!PyArray_Check(args)) { + PyErr_SetString(PyExc_ValueError, + "need an ndarray"); + return NULL; + } + PyArray_ENABLEFLAGS((PyArrayObject*)args, NPY_ARRAY_OWNDATA); + // Maybe try this too? + // PyArray_BASE(PyArrayObject *)args) = NULL; + Py_RETURN_NONE; + """), + ("get_array_with_base", "METH_NOARGS", """ + char *buf = (char *)malloc(20); + npy_intp dims[1]; + dims[0] = 20; + PyArray_Descr *descr = PyArray_DescrNewFromType(NPY_UINT8); + PyObject *arr = PyArray_NewFromDescr(&PyArray_Type, descr, 1, dims, + NULL, buf, + NPY_ARRAY_WRITEABLE, NULL); + if (arr == NULL) return NULL; + PyObject *obj = PyCapsule_New(buf, "buf capsule", + (PyCapsule_Destructor)&warn_on_free); + if (obj == NULL) { + Py_DECREF(arr); + return NULL; + } + if (PyArray_SetBaseObject((PyArrayObject *)arr, obj) < 0) { + Py_DECREF(arr); + Py_DECREF(obj); + return NULL; + } + return arr; + + """), + ] + prologue = ''' + #define NPY_TARGET_VERSION NPY_1_22_API_VERSION + #define NPY_NO_DEPRECATED_API NPY_1_7_API_VERSION + #include + /* + * This struct allows the dynamic configuration of the allocator funcs + * of the `secret_data_allocator`. It is provided here for + * demonstration purposes, as a valid `ctx` use-case scenario. + */ + typedef struct { + void *(*malloc)(size_t); + void *(*calloc)(size_t, size_t); + void *(*realloc)(void *, size_t); + void (*free)(void *); + } SecretDataAllocatorFuncs; + + NPY_NO_EXPORT void * + shift_alloc(void *ctx, size_t sz) { + SecretDataAllocatorFuncs *funcs = (SecretDataAllocatorFuncs *)ctx; + char *real = (char *)funcs->malloc(sz + 64); + if (real == NULL) { + return NULL; + } + snprintf(real, 64, "originally allocated %ld", (unsigned long)sz); + return (void *)(real + 64); + } + NPY_NO_EXPORT void * + shift_zero(void *ctx, size_t sz, size_t cnt) { + SecretDataAllocatorFuncs *funcs = (SecretDataAllocatorFuncs *)ctx; + char *real = (char *)funcs->calloc(sz + 64, cnt); + if (real == NULL) { + return NULL; + } + snprintf(real, 64, "originally allocated %ld via zero", + (unsigned long)sz); + return (void *)(real + 64); + } + NPY_NO_EXPORT void + shift_free(void *ctx, void * p, npy_uintp sz) { + SecretDataAllocatorFuncs *funcs = (SecretDataAllocatorFuncs *)ctx; + if (p == NULL) { + return ; + } + char *real = (char *)p - 64; + if (strncmp(real, "originally allocated", 20) != 0) { + fprintf(stdout, "uh-oh, unmatched shift_free, " + "no appropriate prefix\\n"); + /* Make C runtime crash by calling free on the wrong address */ + funcs->free((char *)p + 10); + /* funcs->free(real); */ + } + else { + npy_uintp i = (npy_uintp)atoi(real +20); + if (i != sz) { + fprintf(stderr, "uh-oh, unmatched shift_free" + "(ptr, %ld) but allocated %ld\\n", sz, i); + /* This happens in some places, only print */ + funcs->free(real); + } + else { + funcs->free(real); + } + } + } + NPY_NO_EXPORT void * + shift_realloc(void *ctx, void * p, npy_uintp sz) { + SecretDataAllocatorFuncs *funcs = (SecretDataAllocatorFuncs *)ctx; + if (p != NULL) { + char *real = (char *)p - 64; + if (strncmp(real, "originally allocated", 20) != 0) { + fprintf(stdout, "uh-oh, unmatched shift_realloc\\n"); + return realloc(p, sz); + } + return (void *)((char *)funcs->realloc(real, sz + 64) + 64); + } + else { + char *real = (char *)funcs->realloc(p, sz + 64); + if (real == NULL) { + return NULL; + } + snprintf(real, 64, "originally allocated " + "%ld via realloc", (unsigned long)sz); + return (void *)(real + 64); + } + } + /* As an example, we use the standard {m|c|re}alloc/free funcs. */ + static SecretDataAllocatorFuncs secret_data_handler_ctx = { + malloc, + calloc, + realloc, + free + }; + static PyDataMem_Handler secret_data_handler = { + "secret_data_allocator", + 1, + { + &secret_data_handler_ctx, /* ctx */ + shift_alloc, /* malloc */ + shift_zero, /* calloc */ + shift_realloc, /* realloc */ + shift_free /* free */ + } + }; + void warn_on_free(void *capsule) { + PyErr_WarnEx(PyExc_UserWarning, "in warn_on_free", 1); + void * obj = PyCapsule_GetPointer(capsule, + PyCapsule_GetName(capsule)); + free(obj); + }; + ''' + more_init = "import_array();" + try: + import mem_policy + return mem_policy + except ImportError: + pass + # if it does not exist, build and load it + return extbuild.build_and_import_extension('mem_policy', + functions, + prologue=prologue, + include_dirs=[np.get_include()], + build_dir=tmp_path, + more_init=more_init) + + +def test_set_policy(get_module): + + get_handler_name = np._core.multiarray.get_handler_name + get_handler_version = np._core.multiarray.get_handler_version + orig_policy_name = get_handler_name() + + a = np.arange(10).reshape((2, 5)) # a doesn't own its own data + assert get_handler_name(a) is None + assert get_handler_version(a) is None + assert get_handler_name(a.base) == orig_policy_name + assert get_handler_version(a.base) == 1 + + orig_policy = get_module.set_secret_data_policy() + + b = np.arange(10).reshape((2, 5)) # b doesn't own its own data + assert get_handler_name(b) is None + assert get_handler_version(b) is None + assert get_handler_name(b.base) == 'secret_data_allocator' + assert get_handler_version(b.base) == 1 + + if orig_policy_name == 'default_allocator': + get_module.set_old_policy(None) # tests PyDataMem_SetHandler(NULL) + assert get_handler_name() == 'default_allocator' + else: + get_module.set_old_policy(orig_policy) + assert get_handler_name() == orig_policy_name + + with pytest.raises(ValueError, + match="Capsule must be named 'mem_handler'"): + get_module.set_wrong_capsule_name_data_policy() + + +def test_default_policy_singleton(get_module): + get_handler_name = np._core.multiarray.get_handler_name + + # set the policy to default + orig_policy = get_module.set_old_policy(None) + + assert get_handler_name() == 'default_allocator' + + # re-set the policy to default + def_policy_1 = get_module.set_old_policy(None) + + assert get_handler_name() == 'default_allocator' + + # set the policy to original + def_policy_2 = get_module.set_old_policy(orig_policy) + + # since default policy is a singleton, + # these should be the same object + assert def_policy_1 is def_policy_2 is get_module.get_default_policy() + + +def test_policy_propagation(get_module): + # The memory policy goes hand-in-hand with flags.owndata + + class MyArr(np.ndarray): + pass + + get_handler_name = np._core.multiarray.get_handler_name + orig_policy_name = get_handler_name() + a = np.arange(10).view(MyArr).reshape((2, 5)) + assert get_handler_name(a) is None + assert a.flags.owndata is False + + assert get_handler_name(a.base) is None + assert a.base.flags.owndata is False + + assert get_handler_name(a.base.base) == orig_policy_name + assert a.base.base.flags.owndata is True + + +async def concurrent_context1(get_module, orig_policy_name, event): + if orig_policy_name == 'default_allocator': + get_module.set_secret_data_policy() + assert get_handler_name() == 'secret_data_allocator' + else: + get_module.set_old_policy(None) + assert get_handler_name() == 'default_allocator' + event.set() + + +async def concurrent_context2(get_module, orig_policy_name, event): + await event.wait() + # the policy is not affected by changes in parallel contexts + assert get_handler_name() == orig_policy_name + # change policy in the child context + if orig_policy_name == 'default_allocator': + get_module.set_secret_data_policy() + assert get_handler_name() == 'secret_data_allocator' + else: + get_module.set_old_policy(None) + assert get_handler_name() == 'default_allocator' + + +async def async_test_context_locality(get_module): + orig_policy_name = np._core.multiarray.get_handler_name() + + event = asyncio.Event() + # the child contexts inherit the parent policy + concurrent_task1 = asyncio.create_task( + concurrent_context1(get_module, orig_policy_name, event)) + concurrent_task2 = asyncio.create_task( + concurrent_context2(get_module, orig_policy_name, event)) + await concurrent_task1 + await concurrent_task2 + + # the parent context is not affected by child policy changes + assert np._core.multiarray.get_handler_name() == orig_policy_name + + +def test_context_locality(get_module): + if (sys.implementation.name == 'pypy' + and sys.pypy_version_info[:3] < (7, 3, 6)): + pytest.skip('no context-locality support in PyPy < 7.3.6') + asyncio.run(async_test_context_locality(get_module)) + + +def concurrent_thread1(get_module, event): + get_module.set_secret_data_policy() + assert np._core.multiarray.get_handler_name() == 'secret_data_allocator' + event.set() + + +def concurrent_thread2(get_module, event): + event.wait() + # the policy is not affected by changes in parallel threads + assert np._core.multiarray.get_handler_name() == 'default_allocator' + # change policy in the child thread + get_module.set_secret_data_policy() + + +def test_thread_locality(get_module): + orig_policy_name = np._core.multiarray.get_handler_name() + + event = threading.Event() + # the child threads do not inherit the parent policy + concurrent_task1 = threading.Thread(target=concurrent_thread1, + args=(get_module, event)) + concurrent_task2 = threading.Thread(target=concurrent_thread2, + args=(get_module, event)) + concurrent_task1.start() + concurrent_task2.start() + concurrent_task1.join() + concurrent_task2.join() + + # the parent thread is not affected by child policy changes + assert np._core.multiarray.get_handler_name() == orig_policy_name + + +@pytest.mark.skip(reason="too slow, see gh-23975") +def test_new_policy(get_module): + a = np.arange(10) + orig_policy_name = np._core.multiarray.get_handler_name(a) + + orig_policy = get_module.set_secret_data_policy() + + b = np.arange(10) + assert np._core.multiarray.get_handler_name(b) == 'secret_data_allocator' + + # test array manipulation. This is slow + if orig_policy_name == 'default_allocator': + # when the np._core.test tests recurse into this test, the + # policy will be set so this "if" will be false, preventing + # infinite recursion + # + # if needed, debug this by + # - running tests with -- -s (to not capture stdout/stderr + # - setting verbose=2 + # - setting extra_argv=['-vv'] here + assert np._core.test('full', verbose=1, extra_argv=[]) + # also try the ma tests, the pickling test is quite tricky + assert np.ma.test('full', verbose=1, extra_argv=[]) + + get_module.set_old_policy(orig_policy) + + c = np.arange(10) + assert np._core.multiarray.get_handler_name(c) == orig_policy_name + + +@pytest.mark.xfail(sys.implementation.name == "pypy", + reason=("bad interaction between getenv and " + "os.environ inside pytest")) +@pytest.mark.parametrize("policy", ["0", "1", None]) +def test_switch_owner(get_module, policy): + a = get_module.get_array() + assert np._core.multiarray.get_handler_name(a) is None + get_module.set_own(a) + + if policy is None: + # See what we expect to be set based on the env variable + policy = os.getenv("NUMPY_WARN_IF_NO_MEM_POLICY", "0") == "1" + oldval = None + else: + policy = policy == "1" + oldval = np._core._multiarray_umath._set_numpy_warn_if_no_mem_policy( + policy) + try: + # The policy should be NULL, so we have to assume we can call + # "free". A warning is given if the policy == "1" + if policy: + with assert_warns(RuntimeWarning) as w: + del a + gc.collect() + else: + del a + gc.collect() + + finally: + if oldval is not None: + np._core._multiarray_umath._set_numpy_warn_if_no_mem_policy(oldval) + + +def test_owner_is_base(get_module): + a = get_module.get_array_with_base() + with pytest.warns(UserWarning, match='warn_on_free'): + del a + gc.collect() + gc.collect() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_memmap.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_memmap.py new file mode 100644 index 0000000000000000000000000000000000000000..4ee8444432adff543569d17923a0201e740676be --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_memmap.py @@ -0,0 +1,230 @@ +import sys +import os +import mmap +import pytest +from pathlib import Path +from tempfile import NamedTemporaryFile, TemporaryFile + +from numpy import ( + memmap, sum, average, prod, ndarray, isscalar, add, subtract, multiply) + +from numpy import arange, allclose, asarray +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, suppress_warnings, IS_PYPY, + break_cycles + ) + +class TestMemmap: + def setup_method(self): + self.tmpfp = NamedTemporaryFile(prefix='mmap') + self.shape = (3, 4) + self.dtype = 'float32' + self.data = arange(12, dtype=self.dtype) + self.data.resize(self.shape) + + def teardown_method(self): + self.tmpfp.close() + self.data = None + if IS_PYPY: + break_cycles() + break_cycles() + + def test_roundtrip(self): + # Write data to file + fp = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + fp[:] = self.data[:] + del fp # Test __del__ machinery, which handles cleanup + + # Read data back from file + newfp = memmap(self.tmpfp, dtype=self.dtype, mode='r', + shape=self.shape) + assert_(allclose(self.data, newfp)) + assert_array_equal(self.data, newfp) + assert_equal(newfp.flags.writeable, False) + + def test_open_with_filename(self, tmp_path): + tmpname = tmp_path / 'mmap' + fp = memmap(tmpname, dtype=self.dtype, mode='w+', + shape=self.shape) + fp[:] = self.data[:] + del fp + + def test_unnamed_file(self): + with TemporaryFile() as f: + fp = memmap(f, dtype=self.dtype, shape=self.shape) + del fp + + def test_attributes(self): + offset = 1 + mode = "w+" + fp = memmap(self.tmpfp, dtype=self.dtype, mode=mode, + shape=self.shape, offset=offset) + assert_equal(offset, fp.offset) + assert_equal(mode, fp.mode) + del fp + + def test_filename(self, tmp_path): + tmpname = tmp_path / "mmap" + fp = memmap(tmpname, dtype=self.dtype, mode='w+', + shape=self.shape) + abspath = Path(os.path.abspath(tmpname)) + fp[:] = self.data[:] + assert_equal(abspath, fp.filename) + b = fp[:1] + assert_equal(abspath, b.filename) + del b + del fp + + def test_path(self, tmp_path): + tmpname = tmp_path / "mmap" + fp = memmap(Path(tmpname), dtype=self.dtype, mode='w+', + shape=self.shape) + # os.path.realpath does not resolve symlinks on Windows + # see: https://bugs.python.org/issue9949 + # use Path.resolve, just as memmap class does internally + abspath = str(Path(tmpname).resolve()) + fp[:] = self.data[:] + assert_equal(abspath, str(fp.filename.resolve())) + b = fp[:1] + assert_equal(abspath, str(b.filename.resolve())) + del b + del fp + + def test_filename_fileobj(self): + fp = memmap(self.tmpfp, dtype=self.dtype, mode="w+", + shape=self.shape) + assert_equal(fp.filename, self.tmpfp.name) + + @pytest.mark.skipif(sys.platform == 'gnu0', + reason="Known to fail on hurd") + def test_flush(self): + fp = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + fp[:] = self.data[:] + assert_equal(fp[0], self.data[0]) + fp.flush() + + def test_del(self): + # Make sure a view does not delete the underlying mmap + fp_base = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + fp_base[0] = 5 + fp_view = fp_base[0:1] + assert_equal(fp_view[0], 5) + del fp_view + # Should still be able to access and assign values after + # deleting the view + assert_equal(fp_base[0], 5) + fp_base[0] = 6 + assert_equal(fp_base[0], 6) + + def test_arithmetic_drops_references(self): + fp = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + tmp = (fp + 10) + if isinstance(tmp, memmap): + assert_(tmp._mmap is not fp._mmap) + + def test_indexing_drops_references(self): + fp = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + tmp = fp[(1, 2), (2, 3)] + if isinstance(tmp, memmap): + assert_(tmp._mmap is not fp._mmap) + + def test_slicing_keeps_references(self): + fp = memmap(self.tmpfp, dtype=self.dtype, mode='w+', + shape=self.shape) + assert_(fp[:2, :2]._mmap is fp._mmap) + + def test_view(self): + fp = memmap(self.tmpfp, dtype=self.dtype, shape=self.shape) + new1 = fp.view() + new2 = new1.view() + assert_(new1.base is fp) + assert_(new2.base is fp) + new_array = asarray(fp) + assert_(new_array.base is fp) + + def test_ufunc_return_ndarray(self): + fp = memmap(self.tmpfp, dtype=self.dtype, shape=self.shape) + fp[:] = self.data + + with suppress_warnings() as sup: + sup.filter(FutureWarning, "np.average currently does not preserve") + for unary_op in [sum, average, prod]: + result = unary_op(fp) + assert_(isscalar(result)) + assert_(result.__class__ is self.data[0, 0].__class__) + + assert_(unary_op(fp, axis=0).__class__ is ndarray) + assert_(unary_op(fp, axis=1).__class__ is ndarray) + + for binary_op in [add, subtract, multiply]: + assert_(binary_op(fp, self.data).__class__ is ndarray) + assert_(binary_op(self.data, fp).__class__ is ndarray) + assert_(binary_op(fp, fp).__class__ is ndarray) + + fp += 1 + assert(fp.__class__ is memmap) + add(fp, 1, out=fp) + assert(fp.__class__ is memmap) + + def test_getitem(self): + fp = memmap(self.tmpfp, dtype=self.dtype, shape=self.shape) + fp[:] = self.data + + assert_(fp[1:, :-1].__class__ is memmap) + # Fancy indexing returns a copy that is not memmapped + assert_(fp[[0, 1]].__class__ is ndarray) + + def test_memmap_subclass(self): + class MemmapSubClass(memmap): + pass + + fp = MemmapSubClass(self.tmpfp, dtype=self.dtype, shape=self.shape) + fp[:] = self.data + + # We keep previous behavior for subclasses of memmap, i.e. the + # ufunc and __getitem__ output is never turned into a ndarray + assert_(sum(fp, axis=0).__class__ is MemmapSubClass) + assert_(sum(fp).__class__ is MemmapSubClass) + assert_(fp[1:, :-1].__class__ is MemmapSubClass) + assert(fp[[0, 1]].__class__ is MemmapSubClass) + + def test_mmap_offset_greater_than_allocation_granularity(self): + size = 5 * mmap.ALLOCATIONGRANULARITY + offset = mmap.ALLOCATIONGRANULARITY + 1 + fp = memmap(self.tmpfp, shape=size, mode='w+', offset=offset) + assert_(fp.offset == offset) + + def test_empty_array_with_offset_multiple_of_allocation_granularity(self): + self.tmpfp.write(b'a'*mmap.ALLOCATIONGRANULARITY) + size = 0 + offset = mmap.ALLOCATIONGRANULARITY + fp = memmap(self.tmpfp, shape=size, mode='w+', offset=offset) + assert_equal(fp.offset, offset) + + def test_no_shape(self): + self.tmpfp.write(b'a'*16) + mm = memmap(self.tmpfp, dtype='float64') + assert_equal(mm.shape, (2,)) + + def test_empty_array(self): + # gh-12653 + with pytest.raises(ValueError, match='empty file'): + memmap(self.tmpfp, shape=(0, 4), mode='r') + + # gh-27723 + # empty memmap works with mode in ('w+','r+') + memmap(self.tmpfp, shape=(0, 4), mode='w+') + + # ok now the file is not empty + memmap(self.tmpfp, shape=(0, 4), mode='w+') + + def test_shape_type(self): + memmap(self.tmpfp, shape=3, mode='w+') + memmap(self.tmpfp, shape=self.shape, mode='w+') + memmap(self.tmpfp, shape=list(self.shape), mode='w+') + memmap(self.tmpfp, shape=asarray(self.shape), mode='w+') diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_multiarray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_multiarray.py new file mode 100644 index 0000000000000000000000000000000000000000..87508732d85c4e63efbb798d76aba88bb63dc689 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_multiarray.py @@ -0,0 +1,10381 @@ +from __future__ import annotations + +import collections.abc +import tempfile +import sys +import warnings +import operator +import io +import itertools +import functools +import ctypes +import os +import gc +import re +import weakref +import pytest +from contextlib import contextmanager +import pickle +import pathlib +import builtins +from decimal import Decimal +import mmap + +import numpy as np +import numpy._core._multiarray_tests as _multiarray_tests +from numpy._core._rational_tests import rational +from numpy.exceptions import AxisError, ComplexWarning +from numpy.testing import ( + assert_, assert_raises, assert_warns, assert_equal, assert_almost_equal, + assert_array_equal, assert_raises_regex, assert_array_almost_equal, + assert_allclose, IS_PYPY, IS_WASM, IS_PYSTON, HAS_REFCOUNT, + assert_array_less, runstring, temppath, suppress_warnings, break_cycles, + check_support_sve, assert_array_compare, IS_64BIT + ) +from numpy.testing._private.utils import requires_memory, _no_tracing +from numpy._core.tests._locales import CommaDecimalPointLocale +from numpy.lib.recfunctions import repack_fields +from numpy._core.multiarray import _get_ndarray_c_version, dot + +# Need to test an object that does not fully implement math interface +from datetime import timedelta, datetime + + +def assert_arg_sorted(arr, arg): + # resulting array should be sorted and arg values should be unique + assert_equal(arr[arg], np.sort(arr)) + assert_equal(np.sort(arg), np.arange(len(arg))) + + +def assert_arr_partitioned(kth, k, arr_part): + assert_equal(arr_part[k], kth) + assert_array_compare(operator.__le__, arr_part[:k], kth) + assert_array_compare(operator.__ge__, arr_part[k:], kth) + + +def _aligned_zeros(shape, dtype=float, order="C", align=None): + """ + Allocate a new ndarray with aligned memory. + + The ndarray is guaranteed *not* aligned to twice the requested alignment. + Eg, if align=4, guarantees it is not aligned to 8. If align=None uses + dtype.alignment.""" + dtype = np.dtype(dtype) + if dtype == np.dtype(object): + # Can't do this, fall back to standard allocation (which + # should always be sufficiently aligned) + if align is not None: + raise ValueError("object array alignment not supported") + return np.zeros(shape, dtype=dtype, order=order) + if align is None: + align = dtype.alignment + if not hasattr(shape, '__len__'): + shape = (shape,) + size = functools.reduce(operator.mul, shape) * dtype.itemsize + buf = np.empty(size + 2*align + 1, np.uint8) + + ptr = buf.__array_interface__['data'][0] + offset = ptr % align + if offset != 0: + offset = align - offset + if (ptr % (2*align)) == 0: + offset += align + + # Note: slices producing 0-size arrays do not necessarily change + # data pointer --- so we use and allocate size+1 + buf = buf[offset:offset+size+1][:-1] + buf.fill(0) + data = np.ndarray(shape, dtype, buf, order=order) + return data + + +class TestFlags: + def setup_method(self): + self.a = np.arange(10) + + def test_writeable(self): + mydict = locals() + self.a.flags.writeable = False + assert_raises(ValueError, runstring, 'self.a[0] = 3', mydict) + self.a.flags.writeable = True + self.a[0] = 5 + self.a[0] = 0 + + def test_writeable_any_base(self): + # Ensure that any base being writeable is sufficient to change flag; + # this is especially interesting for arrays from an array interface. + arr = np.arange(10) + + class subclass(np.ndarray): + pass + + # Create subclass so base will not be collapsed, this is OK to change + view1 = arr.view(subclass) + view2 = view1[...] + arr.flags.writeable = False + view2.flags.writeable = False + view2.flags.writeable = True # Can be set to True again. + + arr = np.arange(10) + + class frominterface: + def __init__(self, arr): + self.arr = arr + self.__array_interface__ = arr.__array_interface__ + + view1 = np.asarray(frominterface) + view2 = view1[...] + view2.flags.writeable = False + view2.flags.writeable = True + + view1.flags.writeable = False + view2.flags.writeable = False + with assert_raises(ValueError): + # Must assume not writeable, since only base is not: + view2.flags.writeable = True + + def test_writeable_from_readonly(self): + # gh-9440 - make sure fromstring, from buffer on readonly buffers + # set writeable False + data = b'\x00' * 100 + vals = np.frombuffer(data, 'B') + assert_raises(ValueError, vals.setflags, write=True) + types = np.dtype( [('vals', 'u1'), ('res3', 'S4')] ) + values = np._core.records.fromstring(data, types) + vals = values['vals'] + assert_raises(ValueError, vals.setflags, write=True) + + def test_writeable_from_buffer(self): + data = bytearray(b'\x00' * 100) + vals = np.frombuffer(data, 'B') + assert_(vals.flags.writeable) + vals.setflags(write=False) + assert_(vals.flags.writeable is False) + vals.setflags(write=True) + assert_(vals.flags.writeable) + types = np.dtype( [('vals', 'u1'), ('res3', 'S4')] ) + values = np._core.records.fromstring(data, types) + vals = values['vals'] + assert_(vals.flags.writeable) + vals.setflags(write=False) + assert_(vals.flags.writeable is False) + vals.setflags(write=True) + assert_(vals.flags.writeable) + + @pytest.mark.skipif(IS_PYPY, reason="PyPy always copies") + def test_writeable_pickle(self): + import pickle + # Small arrays will be copied without setting base. + # See condition for using PyArray_SetBaseObject in + # array_setstate. + a = np.arange(1000) + for v in range(pickle.HIGHEST_PROTOCOL): + vals = pickle.loads(pickle.dumps(a, v)) + assert_(vals.flags.writeable) + assert_(isinstance(vals.base, bytes)) + + def test_writeable_from_c_data(self): + # Test that the writeable flag can be changed for an array wrapping + # low level C-data, but not owning its data. + # Also see that this is deprecated to change from python. + from numpy._core._multiarray_tests import get_c_wrapping_array + + arr_writeable = get_c_wrapping_array(True) + assert not arr_writeable.flags.owndata + assert arr_writeable.flags.writeable + view = arr_writeable[...] + + # Toggling the writeable flag works on the view: + view.flags.writeable = False + assert not view.flags.writeable + view.flags.writeable = True + assert view.flags.writeable + # Flag can be unset on the arr_writeable: + arr_writeable.flags.writeable = False + + arr_readonly = get_c_wrapping_array(False) + assert not arr_readonly.flags.owndata + assert not arr_readonly.flags.writeable + + for arr in [arr_writeable, arr_readonly]: + view = arr[...] + view.flags.writeable = False # make sure it is readonly + arr.flags.writeable = False + assert not arr.flags.writeable + + with assert_raises(ValueError): + view.flags.writeable = True + + with warnings.catch_warnings(): + warnings.simplefilter("error", DeprecationWarning) + with assert_raises(DeprecationWarning): + arr.flags.writeable = True + + with assert_warns(DeprecationWarning): + arr.flags.writeable = True + + def test_warnonwrite(self): + a = np.arange(10) + a.flags._warn_on_write = True + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always') + a[1] = 10 + a[2] = 10 + # only warn once + assert_(len(w) == 1) + + @pytest.mark.parametrize(["flag", "flag_value", "writeable"], + [("writeable", True, True), + # Delete _warn_on_write after deprecation and simplify + # the parameterization: + ("_warn_on_write", True, False), + ("writeable", False, False)]) + def test_readonly_flag_protocols(self, flag, flag_value, writeable): + a = np.arange(10) + setattr(a.flags, flag, flag_value) + + class MyArr: + __array_struct__ = a.__array_struct__ + + assert memoryview(a).readonly is not writeable + assert a.__array_interface__['data'][1] is not writeable + assert np.asarray(MyArr()).flags.writeable is writeable + + def test_otherflags(self): + assert_equal(self.a.flags.carray, True) + assert_equal(self.a.flags['C'], True) + assert_equal(self.a.flags.farray, False) + assert_equal(self.a.flags.behaved, True) + assert_equal(self.a.flags.fnc, False) + assert_equal(self.a.flags.forc, True) + assert_equal(self.a.flags.owndata, True) + assert_equal(self.a.flags.writeable, True) + assert_equal(self.a.flags.aligned, True) + assert_equal(self.a.flags.writebackifcopy, False) + assert_equal(self.a.flags['X'], False) + assert_equal(self.a.flags['WRITEBACKIFCOPY'], False) + + def test_string_align(self): + a = np.zeros(4, dtype=np.dtype('|S4')) + assert_(a.flags.aligned) + # not power of two are accessed byte-wise and thus considered aligned + a = np.zeros(5, dtype=np.dtype('|S4')) + assert_(a.flags.aligned) + + def test_void_align(self): + a = np.zeros(4, dtype=np.dtype([("a", "i4"), ("b", "i4")])) + assert_(a.flags.aligned) + + @pytest.mark.parametrize("row_size", [5, 1 << 16]) + @pytest.mark.parametrize("row_count", [1, 5]) + @pytest.mark.parametrize("ndmin", [0, 1, 2]) + def test_xcontiguous_load_txt(self, row_size, row_count, ndmin): + s = io.StringIO('\n'.join(['1.0 ' * row_size] * row_count)) + a = np.loadtxt(s, ndmin=ndmin) + + assert a.flags.c_contiguous + x = [i for i in a.shape if i != 1] + assert a.flags.f_contiguous == (len(x) <= 1) + + +class TestHash: + # see #3793 + def test_int(self): + for st, ut, s in [(np.int8, np.uint8, 8), + (np.int16, np.uint16, 16), + (np.int32, np.uint32, 32), + (np.int64, np.uint64, 64)]: + for i in range(1, s): + assert_equal(hash(st(-2**i)), hash(-2**i), + err_msg="%r: -2**%d" % (st, i)) + assert_equal(hash(st(2**(i - 1))), hash(2**(i - 1)), + err_msg="%r: 2**%d" % (st, i - 1)) + assert_equal(hash(st(2**i - 1)), hash(2**i - 1), + err_msg="%r: 2**%d - 1" % (st, i)) + + i = max(i - 1, 1) + assert_equal(hash(ut(2**(i - 1))), hash(2**(i - 1)), + err_msg="%r: 2**%d" % (ut, i - 1)) + assert_equal(hash(ut(2**i - 1)), hash(2**i - 1), + err_msg="%r: 2**%d - 1" % (ut, i)) + + +class TestAttributes: + def setup_method(self): + self.one = np.arange(10) + self.two = np.arange(20).reshape(4, 5) + self.three = np.arange(60, dtype=np.float64).reshape(2, 5, 6) + + def test_attributes(self): + assert_equal(self.one.shape, (10,)) + assert_equal(self.two.shape, (4, 5)) + assert_equal(self.three.shape, (2, 5, 6)) + self.three.shape = (10, 3, 2) + assert_equal(self.three.shape, (10, 3, 2)) + self.three.shape = (2, 5, 6) + assert_equal(self.one.strides, (self.one.itemsize,)) + num = self.two.itemsize + assert_equal(self.two.strides, (5*num, num)) + num = self.three.itemsize + assert_equal(self.three.strides, (30*num, 6*num, num)) + assert_equal(self.one.ndim, 1) + assert_equal(self.two.ndim, 2) + assert_equal(self.three.ndim, 3) + num = self.two.itemsize + assert_equal(self.two.size, 20) + assert_equal(self.two.nbytes, 20*num) + assert_equal(self.two.itemsize, self.two.dtype.itemsize) + assert_equal(self.two.base, np.arange(20)) + + def test_dtypeattr(self): + assert_equal(self.one.dtype, np.dtype(np.int_)) + assert_equal(self.three.dtype, np.dtype(np.float64)) + assert_equal(self.one.dtype.char, np.dtype(int).char) + assert self.one.dtype.char in "lq" + assert_equal(self.three.dtype.char, 'd') + assert_(self.three.dtype.str[0] in '<>') + assert_equal(self.one.dtype.str[1], 'i') + assert_equal(self.three.dtype.str[1], 'f') + + def test_int_subclassing(self): + # Regression test for https://github.com/numpy/numpy/pull/3526 + + numpy_int = np.int_(0) + + # int_ doesn't inherit from Python int, because it's not fixed-width + assert_(not isinstance(numpy_int, int)) + + def test_stridesattr(self): + x = self.one + + def make_array(size, offset, strides): + return np.ndarray(size, buffer=x, dtype=int, + offset=offset*x.itemsize, + strides=strides*x.itemsize) + + assert_equal(make_array(4, 4, -1), np.array([4, 3, 2, 1])) + assert_raises(ValueError, make_array, 4, 4, -2) + assert_raises(ValueError, make_array, 4, 2, -1) + assert_raises(ValueError, make_array, 8, 3, 1) + assert_equal(make_array(8, 3, 0), np.array([3]*8)) + # Check behavior reported in gh-2503: + assert_raises(ValueError, make_array, (2, 3), 5, np.array([-2, -3])) + make_array(0, 0, 10) + + def test_set_stridesattr(self): + x = self.one + + def make_array(size, offset, strides): + try: + r = np.ndarray([size], dtype=int, buffer=x, + offset=offset*x.itemsize) + except Exception as e: + raise RuntimeError(e) + r.strides = strides = strides*x.itemsize + return r + + assert_equal(make_array(4, 4, -1), np.array([4, 3, 2, 1])) + assert_equal(make_array(7, 3, 1), np.array([3, 4, 5, 6, 7, 8, 9])) + assert_raises(ValueError, make_array, 4, 4, -2) + assert_raises(ValueError, make_array, 4, 2, -1) + assert_raises(RuntimeError, make_array, 8, 3, 1) + # Check that the true extent of the array is used. + # Test relies on as_strided base not exposing a buffer. + x = np.lib.stride_tricks.as_strided(np.arange(1), (10, 10), (0, 0)) + + def set_strides(arr, strides): + arr.strides = strides + + assert_raises(ValueError, set_strides, x, (10*x.itemsize, x.itemsize)) + + # Test for offset calculations: + x = np.lib.stride_tricks.as_strided(np.arange(10, dtype=np.int8)[-1], + shape=(10,), strides=(-1,)) + assert_raises(ValueError, set_strides, x[::-1], -1) + a = x[::-1] + a.strides = 1 + a[::2].strides = 2 + + # test 0d + arr_0d = np.array(0) + arr_0d.strides = () + assert_raises(TypeError, set_strides, arr_0d, None) + + def test_fill(self): + for t in "?bhilqpBHILQPfdgFDGO": + x = np.empty((3, 2, 1), t) + y = np.empty((3, 2, 1), t) + x.fill(1) + y[...] = 1 + assert_equal(x, y) + + def test_fill_max_uint64(self): + x = np.empty((3, 2, 1), dtype=np.uint64) + y = np.empty((3, 2, 1), dtype=np.uint64) + value = 2**64 - 1 + y[...] = value + x.fill(value) + assert_array_equal(x, y) + + def test_fill_struct_array(self): + # Filling from a scalar + x = np.array([(0, 0.0), (1, 1.0)], dtype='i4,f8') + x.fill(x[0]) + assert_equal(x['f1'][1], x['f1'][0]) + # Filling from a tuple that can be converted + # to a scalar + x = np.zeros(2, dtype=[('a', 'f8'), ('b', 'i4')]) + x.fill((3.5, -2)) + assert_array_equal(x['a'], [3.5, 3.5]) + assert_array_equal(x['b'], [-2, -2]) + + def test_fill_readonly(self): + # gh-22922 + a = np.zeros(11) + a.setflags(write=False) + with pytest.raises(ValueError, match=".*read-only"): + a.fill(0) + + def test_fill_subarrays(self): + # NOTE: + # This is also a regression test for a crash with PYTHONMALLOC=debug + + dtype = np.dtype("2i4')) + assert_(np.dtype([('a', 'i4')])) + + def test_structured_non_void(self): + fields = [('a', 'i8'), ('b', 'f8')]) + assert_equal(a == b, [False, True]) + assert_equal(a != b, [True, False]) + + a = np.array([(5, 42), (10, 1)], dtype=[('a', '>f8'), ('b', 'i8')]) + assert_equal(a == b, [False, True]) + assert_equal(a != b, [True, False]) + + # Including with embedded subarray dtype (although subarray comparison + # itself may still be a bit weird and compare the raw data) + a = np.array([(5, 42), (10, 1)], dtype=[('a', '10>f8'), ('b', '5i8')]) + assert_equal(a == b, [False, True]) + assert_equal(a != b, [True, False]) + + @pytest.mark.parametrize("op", [ + operator.eq, lambda x, y: operator.eq(y, x), + operator.ne, lambda x, y: operator.ne(y, x)]) + def test_void_comparison_failures(self, op): + # In principle, one could decide to return an array of False for some + # if comparisons are impossible. But right now we return TypeError + # when "void" dtype are involved. + x = np.zeros(3, dtype=[('a', 'i1')]) + y = np.zeros(3) + # Cannot compare non-structured to structured: + with pytest.raises(TypeError): + op(x, y) + + # Added title prevents promotion, but casts are OK: + y = np.zeros(3, dtype=[(('title', 'a'), 'i1')]) + assert np.can_cast(y.dtype, x.dtype) + with pytest.raises(TypeError): + op(x, y) + + x = np.zeros(3, dtype="V7") + y = np.zeros(3, dtype="V8") + with pytest.raises(TypeError): + op(x, y) + + def test_casting(self): + # Check that casting a structured array to change its byte order + # works + a = np.array([(1,)], dtype=[('a', 'i4')], casting='unsafe')) + b = a.astype([('a', '>i4')]) + a_tmp = a.byteswap() + a_tmp = a_tmp.view(a_tmp.dtype.newbyteorder()) + assert_equal(b, a_tmp) + assert_equal(a['a'][0], b['a'][0]) + + # Check that equality comparison works on structured arrays if + # they are 'equiv'-castable + a = np.array([(5, 42), (10, 1)], dtype=[('a', '>i4'), ('b', 'f8')]) + assert_(np.can_cast(a.dtype, b.dtype, casting='equiv')) + assert_equal(a == b, [True, True]) + + # Check that 'equiv' casting can change byte order + assert_(np.can_cast(a.dtype, b.dtype, casting='equiv')) + c = a.astype(b.dtype, casting='equiv') + assert_equal(a == c, [True, True]) + + # Check that 'safe' casting can change byte order and up-cast + # fields + t = [('a', 'f8')] + assert_(np.can_cast(a.dtype, t, casting='safe')) + c = a.astype(t, casting='safe') + assert_equal((c == np.array([(5, 42), (10, 1)], dtype=t)), + [True, True]) + + # Check that 'same_kind' casting can change byte order and + # change field widths within a "kind" + t = [('a', 'f4')] + assert_(np.can_cast(a.dtype, t, casting='same_kind')) + c = a.astype(t, casting='same_kind') + assert_equal((c == np.array([(5, 42), (10, 1)], dtype=t)), + [True, True]) + + # Check that casting fails if the casting rule should fail on + # any of the fields + t = [('a', '>i8'), ('b', 'i2'), ('b', 'i8'), ('b', 'i4')] + assert_(not np.can_cast(a.dtype, t, casting=casting)) + t = [('a', '>i4'), ('b', 'i8") + ab = np.array([(1, 2)], dtype=[A, B]) + ba = np.array([(1, 2)], dtype=[B, A]) + assert_raises(TypeError, np.concatenate, ab, ba) + assert_raises(TypeError, np.result_type, ab.dtype, ba.dtype) + assert_raises(TypeError, np.promote_types, ab.dtype, ba.dtype) + + # dtypes with same field names/order but different memory offsets + # and byte-order are promotable to packed nbo. + assert_equal(np.promote_types(ab.dtype, ba[['a', 'b']].dtype), + repack_fields(ab.dtype.newbyteorder('N'))) + + # gh-13667 + # dtypes with different fieldnames but castable field types are castable + assert_equal(np.can_cast(ab.dtype, ba.dtype), True) + assert_equal(ab.astype(ba.dtype).dtype, ba.dtype) + assert_equal(np.can_cast('f8,i8', [('f0', 'f8'), ('f1', 'i8')]), True) + assert_equal(np.can_cast('f8,i8', [('f1', 'f8'), ('f0', 'i8')]), True) + assert_equal(np.can_cast('f8,i8', [('f1', 'i8'), ('f0', 'f8')]), False) + assert_equal(np.can_cast('f8,i8', [('f1', 'i8'), ('f0', 'f8')], + casting='unsafe'), True) + + ab[:] = ba # make sure assignment still works + + # tests of type-promotion of corresponding fields + dt1 = np.dtype([("", "i4")]) + dt2 = np.dtype([("", "i8")]) + assert_equal(np.promote_types(dt1, dt2), np.dtype([('f0', 'i8')])) + assert_equal(np.promote_types(dt2, dt1), np.dtype([('f0', 'i8')])) + assert_raises(TypeError, np.promote_types, dt1, np.dtype([("", "V3")])) + assert_equal(np.promote_types('i4,f8', 'i8,f4'), + np.dtype([('f0', 'i8'), ('f1', 'f8')])) + # test nested case + dt1nest = np.dtype([("", dt1)]) + dt2nest = np.dtype([("", dt2)]) + assert_equal(np.promote_types(dt1nest, dt2nest), + np.dtype([('f0', np.dtype([('f0', 'i8')]))])) + + # note that offsets are lost when promoting: + dt = np.dtype({'names': ['x'], 'formats': ['i4'], 'offsets': [8]}) + a = np.ones(3, dtype=dt) + assert_equal(np.concatenate([a, a]).dtype, np.dtype([('x', 'i4')])) + + @pytest.mark.parametrize("dtype_dict", [ + dict(names=["a", "b"], formats=["i4", "f"], itemsize=100), + dict(names=["a", "b"], formats=["i4", "f"], + offsets=[0, 12])]) + @pytest.mark.parametrize("align", [True, False]) + def test_structured_promotion_packs(self, dtype_dict, align): + # Structured dtypes are packed when promoted (we consider the packed + # form to be "canonical"), so tere is no extra padding. + dtype = np.dtype(dtype_dict, align=align) + # Remove non "canonical" dtype options: + dtype_dict.pop("itemsize", None) + dtype_dict.pop("offsets", None) + expected = np.dtype(dtype_dict, align=align) + + res = np.promote_types(dtype, dtype) + assert res.itemsize == expected.itemsize + assert res.fields == expected.fields + + # But the "expected" one, should just be returned unchanged: + res = np.promote_types(expected, expected) + assert res is expected + + def test_structured_asarray_is_view(self): + # A scalar viewing an array preserves its view even when creating a + # new array. This test documents behaviour, it may not be the best + # desired behaviour. + arr = np.array([1], dtype="i,i") + scalar = arr[0] + assert not scalar.flags.owndata # view into the array + assert np.asarray(scalar).base is scalar + # But never when a dtype is passed in: + assert np.asarray(scalar, dtype=scalar.dtype).base is None + # A scalar which owns its data does not have this property. + # It is not easy to create one, one method is to use pickle: + scalar = pickle.loads(pickle.dumps(scalar)) + assert scalar.flags.owndata + assert np.asarray(scalar).base is None + +class TestBool: + def test_test_interning(self): + a0 = np.bool(0) + b0 = np.bool(False) + assert_(a0 is b0) + a1 = np.bool(1) + b1 = np.bool(True) + assert_(a1 is b1) + assert_(np.array([True])[0] is a1) + assert_(np.array(True)[()] is a1) + + def test_sum(self): + d = np.ones(101, dtype=bool) + assert_equal(d.sum(), d.size) + assert_equal(d[::2].sum(), d[::2].size) + assert_equal(d[::-2].sum(), d[::-2].size) + + d = np.frombuffer(b'\xff\xff' * 100, dtype=bool) + assert_equal(d.sum(), d.size) + assert_equal(d[::2].sum(), d[::2].size) + assert_equal(d[::-2].sum(), d[::-2].size) + + def check_count_nonzero(self, power, length): + powers = [2 ** i for i in range(length)] + for i in range(2**power): + l = [(i & x) != 0 for x in powers] + a = np.array(l, dtype=bool) + c = builtins.sum(l) + assert_equal(np.count_nonzero(a), c) + av = a.view(np.uint8) + av *= 3 + assert_equal(np.count_nonzero(a), c) + av *= 4 + assert_equal(np.count_nonzero(a), c) + av[av != 0] = 0xFF + assert_equal(np.count_nonzero(a), c) + + def test_count_nonzero(self): + # check all 12 bit combinations in a length 17 array + # covers most cases of the 16 byte unrolled code + self.check_count_nonzero(12, 17) + + @pytest.mark.slow + def test_count_nonzero_all(self): + # check all combinations in a length 17 array + # covers all cases of the 16 byte unrolled code + self.check_count_nonzero(17, 17) + + def test_count_nonzero_unaligned(self): + # prevent mistakes as e.g. gh-4060 + for o in range(7): + a = np.zeros((18,), dtype=bool)[o+1:] + a[:o] = True + assert_equal(np.count_nonzero(a), builtins.sum(a.tolist())) + a = np.ones((18,), dtype=bool)[o+1:] + a[:o] = False + assert_equal(np.count_nonzero(a), builtins.sum(a.tolist())) + + def _test_cast_from_flexible(self, dtype): + # empty string -> false + for n in range(3): + v = np.array(b'', (dtype, n)) + assert_equal(bool(v), False) + assert_equal(bool(v[()]), False) + assert_equal(v.astype(bool), False) + assert_(isinstance(v.astype(bool), np.ndarray)) + assert_(v[()].astype(bool) is np.False_) + + # anything else -> true + for n in range(1, 4): + for val in [b'a', b'0', b' ']: + v = np.array(val, (dtype, n)) + assert_equal(bool(v), True) + assert_equal(bool(v[()]), True) + assert_equal(v.astype(bool), True) + assert_(isinstance(v.astype(bool), np.ndarray)) + assert_(v[()].astype(bool) is np.True_) + + def test_cast_from_void(self): + self._test_cast_from_flexible(np.void) + + @pytest.mark.xfail(reason="See gh-9847") + def test_cast_from_unicode(self): + self._test_cast_from_flexible(np.str_) + + @pytest.mark.xfail(reason="See gh-9847") + def test_cast_from_bytes(self): + self._test_cast_from_flexible(np.bytes_) + + +class TestZeroSizeFlexible: + @staticmethod + def _zeros(shape, dtype=str): + dtype = np.dtype(dtype) + if dtype == np.void: + return np.zeros(shape, dtype=(dtype, 0)) + + # not constructable directly + dtype = np.dtype([('x', dtype, 0)]) + return np.zeros(shape, dtype=dtype)['x'] + + def test_create(self): + zs = self._zeros(10, bytes) + assert_equal(zs.itemsize, 0) + zs = self._zeros(10, np.void) + assert_equal(zs.itemsize, 0) + zs = self._zeros(10, str) + assert_equal(zs.itemsize, 0) + + def _test_sort_partition(self, name, kinds, **kwargs): + # Previously, these would all hang + for dt in [bytes, np.void, str]: + zs = self._zeros(10, dt) + sort_method = getattr(zs, name) + sort_func = getattr(np, name) + for kind in kinds: + sort_method(kind=kind, **kwargs) + sort_func(zs, kind=kind, **kwargs) + + def test_sort(self): + self._test_sort_partition('sort', kinds='qhs') + + def test_argsort(self): + self._test_sort_partition('argsort', kinds='qhs') + + def test_partition(self): + self._test_sort_partition('partition', kinds=['introselect'], kth=2) + + def test_argpartition(self): + self._test_sort_partition('argpartition', kinds=['introselect'], kth=2) + + def test_resize(self): + # previously an error + for dt in [bytes, np.void, str]: + zs = self._zeros(10, dt) + zs.resize(25) + zs.resize((10, 10)) + + def test_view(self): + for dt in [bytes, np.void, str]: + zs = self._zeros(10, dt) + + # viewing as itself should be allowed + assert_equal(zs.view(dt).dtype, np.dtype(dt)) + + # viewing as any non-empty type gives an empty result + assert_equal(zs.view((dt, 1)).shape, (0,)) + + def test_dumps(self): + zs = self._zeros(10, int) + assert_equal(zs, pickle.loads(zs.dumps())) + + def test_pickle(self): + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + for dt in [bytes, np.void, str]: + zs = self._zeros(10, dt) + p = pickle.dumps(zs, protocol=proto) + zs2 = pickle.loads(p) + + assert_equal(zs.dtype, zs2.dtype) + + def test_pickle_empty(self): + """Checking if an empty array pickled and un-pickled will not cause a + segmentation fault""" + arr = np.array([]).reshape(999999, 0) + pk_dmp = pickle.dumps(arr) + pk_load = pickle.loads(pk_dmp) + + assert pk_load.size == 0 + + @pytest.mark.skipif(pickle.HIGHEST_PROTOCOL < 5, + reason="requires pickle protocol 5") + def test_pickle_with_buffercallback(self): + array = np.arange(10) + buffers = [] + bytes_string = pickle.dumps(array, buffer_callback=buffers.append, + protocol=5) + array_from_buffer = pickle.loads(bytes_string, buffers=buffers) + # when using pickle protocol 5 with buffer callbacks, + # array_from_buffer is reconstructed from a buffer holding a view + # to the initial array's data, so modifying an element in array + # should modify it in array_from_buffer too. + array[0] = -1 + assert array_from_buffer[0] == -1, array_from_buffer[0] + + +class TestMethods: + + sort_kinds = ['quicksort', 'heapsort', 'stable'] + + def test_all_where(self): + a = np.array([[True, False, True], + [False, False, False], + [True, True, True]]) + wh_full = np.array([[True, False, True], + [False, False, False], + [True, False, True]]) + wh_lower = np.array([[False], + [False], + [True]]) + for _ax in [0, None]: + assert_equal(a.all(axis=_ax, where=wh_lower), + np.all(a[wh_lower[:,0],:], axis=_ax)) + assert_equal(np.all(a, axis=_ax, where=wh_lower), + a[wh_lower[:,0],:].all(axis=_ax)) + + assert_equal(a.all(where=wh_full), True) + assert_equal(np.all(a, where=wh_full), True) + assert_equal(a.all(where=False), True) + assert_equal(np.all(a, where=False), True) + + def test_any_where(self): + a = np.array([[True, False, True], + [False, False, False], + [True, True, True]]) + wh_full = np.array([[False, True, False], + [True, True, True], + [False, False, False]]) + wh_middle = np.array([[False], + [True], + [False]]) + for _ax in [0, None]: + assert_equal(a.any(axis=_ax, where=wh_middle), + np.any(a[wh_middle[:,0],:], axis=_ax)) + assert_equal(np.any(a, axis=_ax, where=wh_middle), + a[wh_middle[:,0],:].any(axis=_ax)) + assert_equal(a.any(where=wh_full), False) + assert_equal(np.any(a, where=wh_full), False) + assert_equal(a.any(where=False), False) + assert_equal(np.any(a, where=False), False) + + @pytest.mark.parametrize("dtype", + ["i8", "U10", "object", "datetime64[ms]"]) + def test_any_and_all_result_dtype(self, dtype): + arr = np.ones(3, dtype=dtype) + assert arr.any().dtype == np.bool + assert arr.all().dtype == np.bool + + def test_any_and_all_object_dtype(self): + # (seberg) Not sure we should even allow dtype here, but it is. + arr = np.ones(3, dtype=object) + # keepdims to prevent getting a scalar. + assert arr.any(dtype=object, keepdims=True).dtype == object + assert arr.all(dtype=object, keepdims=True).dtype == object + + def test_compress(self): + tgt = [[5, 6, 7, 8, 9]] + arr = np.arange(10).reshape(2, 5) + out = arr.compress([0, 1], axis=0) + assert_equal(out, tgt) + + tgt = [[1, 3], [6, 8]] + out = arr.compress([0, 1, 0, 1, 0], axis=1) + assert_equal(out, tgt) + + tgt = [[1], [6]] + arr = np.arange(10).reshape(2, 5) + out = arr.compress([0, 1], axis=1) + assert_equal(out, tgt) + + arr = np.arange(10).reshape(2, 5) + out = arr.compress([0, 1]) + assert_equal(out, 1) + + def test_choose(self): + x = 2*np.ones((3,), dtype=int) + y = 3*np.ones((3,), dtype=int) + x2 = 2*np.ones((2, 3), dtype=int) + y2 = 3*np.ones((2, 3), dtype=int) + ind = np.array([0, 0, 1]) + + A = ind.choose((x, y)) + assert_equal(A, [2, 2, 3]) + + A = ind.choose((x2, y2)) + assert_equal(A, [[2, 2, 3], [2, 2, 3]]) + + A = ind.choose((x, y2)) + assert_equal(A, [[2, 2, 3], [2, 2, 3]]) + + oned = np.ones(1) + # gh-12031, caused SEGFAULT + assert_raises(TypeError, oned.choose,np.void(0), [oned]) + + out = np.array(0) + ret = np.choose(np.array(1), [10, 20, 30], out=out) + assert out is ret + assert_equal(out[()], 20) + + # gh-6272 check overlap on out + x = np.arange(5) + y = np.choose([0,0,0], [x[:3], x[:3], x[:3]], out=x[1:4], mode='wrap') + assert_equal(y, np.array([0, 1, 2])) + + def test_prod(self): + ba = [1, 2, 10, 11, 6, 5, 4] + ba2 = [[1, 2, 3, 4], [5, 6, 7, 9], [10, 3, 4, 5]] + + for ctype in [np.int16, np.uint16, np.int32, np.uint32, + np.float32, np.float64, np.complex64, np.complex128]: + a = np.array(ba, ctype) + a2 = np.array(ba2, ctype) + if ctype in ['1', 'b']: + assert_raises(ArithmeticError, a.prod) + assert_raises(ArithmeticError, a2.prod, axis=1) + else: + assert_equal(a.prod(axis=0), 26400) + assert_array_equal(a2.prod(axis=0), + np.array([50, 36, 84, 180], ctype)) + assert_array_equal(a2.prod(axis=-1), + np.array([24, 1890, 600], ctype)) + + @pytest.mark.parametrize('dtype', [None, object]) + def test_repeat(self, dtype): + m = np.array([1, 2, 3, 4, 5, 6], dtype=dtype) + m_rect = m.reshape((2, 3)) + + A = m.repeat([1, 3, 2, 1, 1, 2]) + assert_equal(A, [1, 2, 2, 2, 3, + 3, 4, 5, 6, 6]) + + A = m.repeat(2) + assert_equal(A, [1, 1, 2, 2, 3, 3, + 4, 4, 5, 5, 6, 6]) + + A = m_rect.repeat([2, 1], axis=0) + assert_equal(A, [[1, 2, 3], + [1, 2, 3], + [4, 5, 6]]) + + A = m_rect.repeat([1, 3, 2], axis=1) + assert_equal(A, [[1, 2, 2, 2, 3, 3], + [4, 5, 5, 5, 6, 6]]) + + A = m_rect.repeat(2, axis=0) + assert_equal(A, [[1, 2, 3], + [1, 2, 3], + [4, 5, 6], + [4, 5, 6]]) + + A = m_rect.repeat(2, axis=1) + assert_equal(A, [[1, 1, 2, 2, 3, 3], + [4, 4, 5, 5, 6, 6]]) + + def test_reshape(self): + arr = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9], [10, 11, 12]]) + + tgt = [[1, 2, 3, 4, 5, 6], [7, 8, 9, 10, 11, 12]] + assert_equal(arr.reshape(2, 6), tgt) + + tgt = [[1, 2, 3, 4], [5, 6, 7, 8], [9, 10, 11, 12]] + assert_equal(arr.reshape(3, 4), tgt) + + tgt = [[1, 10, 8, 6], [4, 2, 11, 9], [7, 5, 3, 12]] + assert_equal(arr.reshape((3, 4), order='F'), tgt) + + tgt = [[1, 4, 7, 10], [2, 5, 8, 11], [3, 6, 9, 12]] + assert_equal(arr.T.reshape((3, 4), order='C'), tgt) + + def test_round(self): + def check_round(arr, expected, *round_args): + assert_equal(arr.round(*round_args), expected) + # With output array + out = np.zeros_like(arr) + res = arr.round(*round_args, out=out) + assert_equal(out, expected) + assert out is res + + check_round(np.array([1.2, 1.5]), [1, 2]) + check_round(np.array(1.5), 2) + check_round(np.array([12.2, 15.5]), [10, 20], -1) + check_round(np.array([12.15, 15.51]), [12.2, 15.5], 1) + # Complex rounding + check_round(np.array([4.5 + 1.5j]), [4 + 2j]) + check_round(np.array([12.5 + 15.5j]), [10 + 20j], -1) + + def test_squeeze(self): + a = np.array([[[1], [2], [3]]]) + assert_equal(a.squeeze(), [1, 2, 3]) + assert_equal(a.squeeze(axis=(0,)), [[1], [2], [3]]) + assert_raises(ValueError, a.squeeze, axis=(1,)) + assert_equal(a.squeeze(axis=(2,)), [[1, 2, 3]]) + + def test_transpose(self): + a = np.array([[1, 2], [3, 4]]) + assert_equal(a.transpose(), [[1, 3], [2, 4]]) + assert_raises(ValueError, lambda: a.transpose(0)) + assert_raises(ValueError, lambda: a.transpose(0, 0)) + assert_raises(ValueError, lambda: a.transpose(0, 1, 2)) + + def test_sort(self): + # test ordering for floats and complex containing nans. It is only + # necessary to check the less-than comparison, so sorts that + # only follow the insertion sort path are sufficient. We only + # test doubles and complex doubles as the logic is the same. + + # check doubles + msg = "Test real sort order with nans" + a = np.array([np.nan, 1, 0]) + b = np.sort(a) + assert_equal(b, a[::-1], msg) + # check complex + msg = "Test complex sort order with nans" + a = np.zeros(9, dtype=np.complex128) + a.real += [np.nan, np.nan, np.nan, 1, 0, 1, 1, 0, 0] + a.imag += [np.nan, 1, 0, np.nan, np.nan, 1, 0, 1, 0] + b = np.sort(a) + assert_equal(b, a[::-1], msg) + + with assert_raises_regex( + ValueError, + "kind` and `stable` parameters can't be provided at the same time" + ): + np.sort(a, kind="stable", stable=True) + + # all c scalar sorts use the same code with different types + # so it suffices to run a quick check with one type. The number + # of sorted items must be greater than ~50 to check the actual + # algorithm because quick and merge sort fall over to insertion + # sort for small arrays. + + @pytest.mark.parametrize('dtype', [np.uint8, np.uint16, np.uint32, np.uint64, + np.float16, np.float32, np.float64, + np.longdouble]) + def test_sort_unsigned(self, dtype): + a = np.arange(101, dtype=dtype) + b = a[::-1].copy() + for kind in self.sort_kinds: + msg = "scalar sort, kind=%s" % kind + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + c = b.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + @pytest.mark.parametrize('dtype', + [np.int8, np.int16, np.int32, np.int64, np.float16, + np.float32, np.float64, np.longdouble]) + def test_sort_signed(self, dtype): + a = np.arange(-50, 51, dtype=dtype) + b = a[::-1].copy() + for kind in self.sort_kinds: + msg = "scalar sort, kind=%s" % (kind) + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + c = b.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + @pytest.mark.parametrize('dtype', [np.float32, np.float64, np.longdouble]) + @pytest.mark.parametrize('part', ['real', 'imag']) + def test_sort_complex(self, part, dtype): + # test complex sorts. These use the same code as the scalars + # but the compare function differs. + cdtype = { + np.single: np.csingle, + np.double: np.cdouble, + np.longdouble: np.clongdouble, + }[dtype] + a = np.arange(-50, 51, dtype=dtype) + b = a[::-1].copy() + ai = (a * (1+1j)).astype(cdtype) + bi = (b * (1+1j)).astype(cdtype) + setattr(ai, part, 1) + setattr(bi, part, 1) + for kind in self.sort_kinds: + msg = "complex sort, %s part == 1, kind=%s" % (part, kind) + c = ai.copy() + c.sort(kind=kind) + assert_equal(c, ai, msg) + c = bi.copy() + c.sort(kind=kind) + assert_equal(c, ai, msg) + + def test_sort_complex_byte_swapping(self): + # test sorting of complex arrays requiring byte-swapping, gh-5441 + for endianness in '<>': + for dt in np.typecodes['Complex']: + arr = np.array([1+3.j, 2+2.j, 3+1.j], dtype=endianness + dt) + c = arr.copy() + c.sort() + msg = 'byte-swapped complex sort, dtype={0}'.format(dt) + assert_equal(c, arr, msg) + + @pytest.mark.parametrize('dtype', [np.bytes_, np.str_]) + def test_sort_string(self, dtype): + # np.array will perform the encoding to bytes for us in the bytes test + a = np.array(['aaaaaaaa' + chr(i) for i in range(101)], dtype=dtype) + b = a[::-1].copy() + for kind in self.sort_kinds: + msg = "kind=%s" % kind + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + c = b.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + def test_sort_object(self): + # test object array sorts. + a = np.empty((101,), dtype=object) + a[:] = list(range(101)) + b = a[::-1] + for kind in ['q', 'h', 'm']: + msg = "kind=%s" % kind + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + c = b.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + @pytest.mark.parametrize("dt", [ + np.dtype([('f', float), ('i', int)]), + np.dtype([('f', float), ('i', object)])]) + @pytest.mark.parametrize("step", [1, 2]) + def test_sort_structured(self, dt, step): + # test record array sorts. + a = np.array([(i, i) for i in range(101*step)], dtype=dt) + b = a[::-1] + for kind in ['q', 'h', 'm']: + msg = "kind=%s" % kind + c = a.copy()[::step] + indx = c.argsort(kind=kind) + c.sort(kind=kind) + assert_equal(c, a[::step], msg) + assert_equal(a[::step][indx], a[::step], msg) + c = b.copy()[::step] + indx = c.argsort(kind=kind) + c.sort(kind=kind) + assert_equal(c, a[step-1::step], msg) + assert_equal(b[::step][indx], a[step-1::step], msg) + + @pytest.mark.parametrize('dtype', ['datetime64[D]', 'timedelta64[D]']) + def test_sort_time(self, dtype): + # test datetime64 and timedelta64 sorts. + a = np.arange(0, 101, dtype=dtype) + b = a[::-1] + for kind in ['q', 'h', 'm']: + msg = "kind=%s" % kind + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + c = b.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + def test_sort_axis(self): + # check axis handling. This should be the same for all type + # specific sorts, so we only check it for one type and one kind + a = np.array([[3, 2], [1, 0]]) + b = np.array([[1, 0], [3, 2]]) + c = np.array([[2, 3], [0, 1]]) + d = a.copy() + d.sort(axis=0) + assert_equal(d, b, "test sort with axis=0") + d = a.copy() + d.sort(axis=1) + assert_equal(d, c, "test sort with axis=1") + d = a.copy() + d.sort() + assert_equal(d, c, "test sort with default axis") + + def test_sort_size_0(self): + # check axis handling for multidimensional empty arrays + a = np.array([]) + a.shape = (3, 2, 1, 0) + for axis in range(-a.ndim, a.ndim): + msg = 'test empty array sort with axis={0}'.format(axis) + assert_equal(np.sort(a, axis=axis), a, msg) + msg = 'test empty array sort with axis=None' + assert_equal(np.sort(a, axis=None), a.ravel(), msg) + + def test_sort_bad_ordering(self): + # test generic class with bogus ordering, + # should not segfault. + class Boom: + def __lt__(self, other): + return True + + a = np.array([Boom()] * 100, dtype=object) + for kind in self.sort_kinds: + msg = "kind=%s" % kind + c = a.copy() + c.sort(kind=kind) + assert_equal(c, a, msg) + + def test_void_sort(self): + # gh-8210 - previously segfaulted + for i in range(4): + rand = np.random.randint(256, size=4000, dtype=np.uint8) + arr = rand.view('V4') + arr[::-1].sort() + + dt = np.dtype([('val', 'i4', (1,))]) + for i in range(4): + rand = np.random.randint(256, size=4000, dtype=np.uint8) + arr = rand.view(dt) + arr[::-1].sort() + + def test_sort_raises(self): + #gh-9404 + arr = np.array([0, datetime.now(), 1], dtype=object) + for kind in self.sort_kinds: + assert_raises(TypeError, arr.sort, kind=kind) + #gh-3879 + class Raiser: + def raises_anything(*args, **kwargs): + raise TypeError("SOMETHING ERRORED") + __eq__ = __ne__ = __lt__ = __gt__ = __ge__ = __le__ = raises_anything + arr = np.array([[Raiser(), n] for n in range(10)]).reshape(-1) + np.random.shuffle(arr) + for kind in self.sort_kinds: + assert_raises(TypeError, arr.sort, kind=kind) + + def test_sort_degraded(self): + # test degraded dataset would take minutes to run with normal qsort + d = np.arange(1000000) + do = d.copy() + x = d + # create a median of 3 killer where each median is the sorted second + # last element of the quicksort partition + while x.size > 3: + mid = x.size // 2 + x[mid], x[-2] = x[-2], x[mid] + x = x[:-2] + + assert_equal(np.sort(d), do) + assert_equal(d[np.argsort(d)], do) + + def test_copy(self): + def assert_fortran(arr): + assert_(arr.flags.fortran) + assert_(arr.flags.f_contiguous) + assert_(not arr.flags.c_contiguous) + + def assert_c(arr): + assert_(not arr.flags.fortran) + assert_(not arr.flags.f_contiguous) + assert_(arr.flags.c_contiguous) + + a = np.empty((2, 2), order='F') + # Test copying a Fortran array + assert_c(a.copy()) + assert_c(a.copy('C')) + assert_fortran(a.copy('F')) + assert_fortran(a.copy('A')) + + # Now test starting with a C array. + a = np.empty((2, 2), order='C') + assert_c(a.copy()) + assert_c(a.copy('C')) + assert_fortran(a.copy('F')) + assert_c(a.copy('A')) + + @pytest.mark.parametrize("dtype", ['O', np.int32, 'i,O']) + def test__deepcopy__(self, dtype): + # Force the entry of NULLs into array + a = np.empty(4, dtype=dtype) + ctypes.memset(a.ctypes.data, 0, a.nbytes) + + # Ensure no error is raised, see gh-21833 + b = a.__deepcopy__({}) + + a[0] = 42 + with pytest.raises(AssertionError): + assert_array_equal(a, b) + + def test__deepcopy__catches_failure(self): + class MyObj: + def __deepcopy__(self, *args, **kwargs): + raise RuntimeError + + arr = np.array([1, MyObj(), 3], dtype='O') + with pytest.raises(RuntimeError): + arr.__deepcopy__({}) + + def test_sort_order(self): + # Test sorting an array with fields + x1 = np.array([21, 32, 14]) + x2 = np.array(['my', 'first', 'name']) + x3 = np.array([3.1, 4.5, 6.2]) + r = np.rec.fromarrays([x1, x2, x3], names='id,word,number') + + r.sort(order=['id']) + assert_equal(r.id, np.array([14, 21, 32])) + assert_equal(r.word, np.array(['name', 'my', 'first'])) + assert_equal(r.number, np.array([6.2, 3.1, 4.5])) + + r.sort(order=['word']) + assert_equal(r.id, np.array([32, 21, 14])) + assert_equal(r.word, np.array(['first', 'my', 'name'])) + assert_equal(r.number, np.array([4.5, 3.1, 6.2])) + + r.sort(order=['number']) + assert_equal(r.id, np.array([21, 32, 14])) + assert_equal(r.word, np.array(['my', 'first', 'name'])) + assert_equal(r.number, np.array([3.1, 4.5, 6.2])) + + assert_raises_regex(ValueError, 'duplicate', + lambda: r.sort(order=['id', 'id'])) + + if sys.byteorder == 'little': + strtype = '>i2' + else: + strtype = '': + for dt in np.typecodes['Complex']: + arr = np.array([1+3.j, 2+2.j, 3+1.j], dtype=endianness + dt) + msg = 'byte-swapped complex argsort, dtype={0}'.format(dt) + assert_equal(arr.argsort(), + np.arange(len(arr), dtype=np.intp), msg) + + # test string argsorts. + s = 'aaaaaaaa' + a = np.array([s + chr(i) for i in range(101)]) + b = a[::-1].copy() + r = np.arange(101) + rr = r[::-1] + for kind in self.sort_kinds: + msg = "string argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # test unicode argsorts. + s = 'aaaaaaaa' + a = np.array([s + chr(i) for i in range(101)], dtype=np.str_) + b = a[::-1] + r = np.arange(101) + rr = r[::-1] + for kind in self.sort_kinds: + msg = "unicode argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # test object array argsorts. + a = np.empty((101,), dtype=object) + a[:] = list(range(101)) + b = a[::-1] + r = np.arange(101) + rr = r[::-1] + for kind in self.sort_kinds: + msg = "object argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # test structured array argsorts. + dt = np.dtype([('f', float), ('i', int)]) + a = np.array([(i, i) for i in range(101)], dtype=dt) + b = a[::-1] + r = np.arange(101) + rr = r[::-1] + for kind in self.sort_kinds: + msg = "structured array argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # test datetime64 argsorts. + a = np.arange(0, 101, dtype='datetime64[D]') + b = a[::-1] + r = np.arange(101) + rr = r[::-1] + for kind in ['q', 'h', 'm']: + msg = "datetime64 argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # test timedelta64 argsorts. + a = np.arange(0, 101, dtype='timedelta64[D]') + b = a[::-1] + r = np.arange(101) + rr = r[::-1] + for kind in ['q', 'h', 'm']: + msg = "timedelta64 argsort, kind=%s" % kind + assert_equal(a.copy().argsort(kind=kind), r, msg) + assert_equal(b.copy().argsort(kind=kind), rr, msg) + + # check axis handling. This should be the same for all type + # specific argsorts, so we only check it for one type and one kind + a = np.array([[3, 2], [1, 0]]) + b = np.array([[1, 1], [0, 0]]) + c = np.array([[1, 0], [1, 0]]) + assert_equal(a.copy().argsort(axis=0), b) + assert_equal(a.copy().argsort(axis=1), c) + assert_equal(a.copy().argsort(), c) + + # check axis handling for multidimensional empty arrays + a = np.array([]) + a.shape = (3, 2, 1, 0) + for axis in range(-a.ndim, a.ndim): + msg = 'test empty array argsort with axis={0}'.format(axis) + assert_equal(np.argsort(a, axis=axis), + np.zeros_like(a, dtype=np.intp), msg) + msg = 'test empty array argsort with axis=None' + assert_equal(np.argsort(a, axis=None), + np.zeros_like(a.ravel(), dtype=np.intp), msg) + + # check that stable argsorts are stable + r = np.arange(100) + # scalars + a = np.zeros(100) + assert_equal(a.argsort(kind='m'), r) + # complex + a = np.zeros(100, dtype=complex) + assert_equal(a.argsort(kind='m'), r) + # string + a = np.array(['aaaaaaaaa' for i in range(100)]) + assert_equal(a.argsort(kind='m'), r) + # unicode + a = np.array(['aaaaaaaaa' for i in range(100)], dtype=np.str_) + assert_equal(a.argsort(kind='m'), r) + + with assert_raises_regex( + ValueError, + "kind` and `stable` parameters can't be provided at the same time" + ): + np.argsort(a, kind="stable", stable=True) + + def test_sort_unicode_kind(self): + d = np.arange(10) + k = b'\xc3\xa4'.decode("UTF8") + assert_raises(ValueError, d.sort, kind=k) + assert_raises(ValueError, d.argsort, kind=k) + + @pytest.mark.parametrize('a', [ + np.array([0, 1, np.nan], dtype=np.float16), + np.array([0, 1, np.nan], dtype=np.float32), + np.array([0, 1, np.nan]), + ]) + def test_searchsorted_floats(self, a): + # test for floats arrays containing nans. Explicitly test + # half, single, and double precision floats to verify that + # the NaN-handling is correct. + msg = "Test real (%s) searchsorted with nans, side='l'" % a.dtype + b = a.searchsorted(a, side='left') + assert_equal(b, np.arange(3), msg) + msg = "Test real (%s) searchsorted with nans, side='r'" % a.dtype + b = a.searchsorted(a, side='right') + assert_equal(b, np.arange(1, 4), msg) + # check keyword arguments + a.searchsorted(v=1) + x = np.array([0, 1, np.nan], dtype='float32') + y = np.searchsorted(x, x[-1]) + assert_equal(y, 2) + + def test_searchsorted_complex(self): + # test for complex arrays containing nans. + # The search sorted routines use the compare functions for the + # array type, so this checks if that is consistent with the sort + # order. + # check double complex + a = np.zeros(9, dtype=np.complex128) + a.real += [0, 0, 1, 1, 0, 1, np.nan, np.nan, np.nan] + a.imag += [0, 1, 0, 1, np.nan, np.nan, 0, 1, np.nan] + msg = "Test complex searchsorted with nans, side='l'" + b = a.searchsorted(a, side='left') + assert_equal(b, np.arange(9), msg) + msg = "Test complex searchsorted with nans, side='r'" + b = a.searchsorted(a, side='right') + assert_equal(b, np.arange(1, 10), msg) + msg = "Test searchsorted with little endian, side='l'" + a = np.array([0, 128], dtype=' p[:, i]).all(), + msg="%d: %r < %r" % (i, p[:, i], p[:, i + 1:].T)) + for row in range(p.shape[0]): + self.assert_partitioned(p[row], [i]) + self.assert_partitioned(parg[row], [i]) + + p = np.partition(d0, i, axis=0, kind=k) + parg = d0[np.argpartition(d0, i, axis=0, kind=k), + np.arange(d0.shape[1])[None, :]] + aae(p[i, :], np.array([i] * d1.shape[0], dtype=dt)) + # array_less does not seem to work right + at((p[:i, :] <= p[i, :]).all(), + msg="%d: %r <= %r" % (i, p[i, :], p[:i, :])) + at((p[i + 1:, :] > p[i, :]).all(), + msg="%d: %r < %r" % (i, p[i, :], p[:, i + 1:])) + for col in range(p.shape[1]): + self.assert_partitioned(p[:, col], [i]) + self.assert_partitioned(parg[:, col], [i]) + + # check inplace + dc = d.copy() + dc.partition(i, kind=k) + assert_equal(dc, np.partition(d, i, kind=k)) + dc = d0.copy() + dc.partition(i, axis=0, kind=k) + assert_equal(dc, np.partition(d0, i, axis=0, kind=k)) + dc = d1.copy() + dc.partition(i, axis=1, kind=k) + assert_equal(dc, np.partition(d1, i, axis=1, kind=k)) + + def assert_partitioned(self, d, kth): + prev = 0 + for k in np.sort(kth): + assert_array_compare(operator.__le__, d[prev:k], d[k], + err_msg='kth %d' % k) + assert_((d[k:] >= d[k]).all(), + msg="kth %d, %r not greater equal %r" % (k, d[k:], d[k])) + prev = k + 1 + + def test_partition_iterative(self): + d = np.arange(17) + kth = (0, 1, 2, 429, 231) + assert_raises(ValueError, d.partition, kth) + assert_raises(ValueError, d.argpartition, kth) + d = np.arange(10).reshape((2, 5)) + assert_raises(ValueError, d.partition, kth, axis=0) + assert_raises(ValueError, d.partition, kth, axis=1) + assert_raises(ValueError, np.partition, d, kth, axis=1) + assert_raises(ValueError, np.partition, d, kth, axis=None) + + d = np.array([3, 4, 2, 1]) + p = np.partition(d, (0, 3)) + self.assert_partitioned(p, (0, 3)) + self.assert_partitioned(d[np.argpartition(d, (0, 3))], (0, 3)) + + assert_array_equal(p, np.partition(d, (-3, -1))) + assert_array_equal(p, d[np.argpartition(d, (-3, -1))]) + + d = np.arange(17) + np.random.shuffle(d) + d.partition(range(d.size)) + assert_array_equal(np.arange(17), d) + np.random.shuffle(d) + assert_array_equal(np.arange(17), d[d.argpartition(range(d.size))]) + + # test unsorted kth + d = np.arange(17) + np.random.shuffle(d) + keys = np.array([1, 3, 8, -2]) + np.random.shuffle(d) + p = np.partition(d, keys) + self.assert_partitioned(p, keys) + p = d[np.argpartition(d, keys)] + self.assert_partitioned(p, keys) + np.random.shuffle(keys) + assert_array_equal(np.partition(d, keys), p) + assert_array_equal(d[np.argpartition(d, keys)], p) + + # equal kth + d = np.arange(20)[::-1] + self.assert_partitioned(np.partition(d, [5]*4), [5]) + self.assert_partitioned(np.partition(d, [5]*4 + [6, 13]), + [5]*4 + [6, 13]) + self.assert_partitioned(d[np.argpartition(d, [5]*4)], [5]) + self.assert_partitioned(d[np.argpartition(d, [5]*4 + [6, 13])], + [5]*4 + [6, 13]) + + d = np.arange(12) + np.random.shuffle(d) + d1 = np.tile(np.arange(12), (4, 1)) + map(np.random.shuffle, d1) + d0 = np.transpose(d1) + + kth = (1, 6, 7, -1) + p = np.partition(d1, kth, axis=1) + pa = d1[np.arange(d1.shape[0])[:, None], + d1.argpartition(kth, axis=1)] + assert_array_equal(p, pa) + for i in range(d1.shape[0]): + self.assert_partitioned(p[i,:], kth) + p = np.partition(d0, kth, axis=0) + pa = d0[np.argpartition(d0, kth, axis=0), + np.arange(d0.shape[1])[None,:]] + assert_array_equal(p, pa) + for i in range(d0.shape[1]): + self.assert_partitioned(p[:, i], kth) + + def test_partition_cdtype(self): + d = np.array([('Galahad', 1.7, 38), ('Arthur', 1.8, 41), + ('Lancelot', 1.9, 38)], + dtype=[('name', '|S10'), ('height', ' (numpy ufunc, has_in_place_version, preferred_dtype) + ops = { + 'add': (np.add, True, float), + 'sub': (np.subtract, True, float), + 'mul': (np.multiply, True, float), + 'truediv': (np.true_divide, True, float), + 'floordiv': (np.floor_divide, True, float), + 'mod': (np.remainder, True, float), + 'divmod': (np.divmod, False, float), + 'pow': (np.power, True, int), + 'lshift': (np.left_shift, True, int), + 'rshift': (np.right_shift, True, int), + 'and': (np.bitwise_and, True, int), + 'xor': (np.bitwise_xor, True, int), + 'or': (np.bitwise_or, True, int), + 'matmul': (np.matmul, True, float), + # 'ge': (np.less_equal, False), + # 'gt': (np.less, False), + # 'le': (np.greater_equal, False), + # 'lt': (np.greater, False), + # 'eq': (np.equal, False), + # 'ne': (np.not_equal, False), + } + + class Coerced(Exception): + pass + + def array_impl(self): + raise Coerced + + def op_impl(self, other): + return "forward" + + def rop_impl(self, other): + return "reverse" + + def iop_impl(self, other): + return "in-place" + + def array_ufunc_impl(self, ufunc, method, *args, **kwargs): + return ("__array_ufunc__", ufunc, method, args, kwargs) + + # Create an object with the given base, in the given module, with a + # bunch of placeholder __op__ methods, and optionally a + # __array_ufunc__ and __array_priority__. + def make_obj(base, array_priority=False, array_ufunc=False, + alleged_module="__main__"): + class_namespace = {"__array__": array_impl} + if array_priority is not False: + class_namespace["__array_priority__"] = array_priority + for op in ops: + class_namespace["__{0}__".format(op)] = op_impl + class_namespace["__r{0}__".format(op)] = rop_impl + class_namespace["__i{0}__".format(op)] = iop_impl + if array_ufunc is not False: + class_namespace["__array_ufunc__"] = array_ufunc + eval_namespace = {"base": base, + "class_namespace": class_namespace, + "__name__": alleged_module, + } + MyType = eval("type('MyType', (base,), class_namespace)", + eval_namespace) + if issubclass(MyType, np.ndarray): + # Use this range to avoid special case weirdnesses around + # divide-by-0, pow(x, 2), overflow due to pow(big, big), etc. + return np.arange(3, 7).reshape(2, 2).view(MyType) + else: + return MyType() + + def check(obj, binop_override_expected, ufunc_override_expected, + inplace_override_expected, check_scalar=True): + for op, (ufunc, has_inplace, dtype) in ops.items(): + err_msg = ('op: %s, ufunc: %s, has_inplace: %s, dtype: %s' + % (op, ufunc, has_inplace, dtype)) + check_objs = [np.arange(3, 7, dtype=dtype).reshape(2, 2)] + if check_scalar: + check_objs.append(check_objs[0][0]) + for arr in check_objs: + arr_method = getattr(arr, "__{0}__".format(op)) + + def first_out_arg(result): + if op == "divmod": + assert_(isinstance(result, tuple)) + return result[0] + else: + return result + + # arr __op__ obj + if binop_override_expected: + assert_equal(arr_method(obj), NotImplemented, err_msg) + elif ufunc_override_expected: + assert_equal(arr_method(obj)[0], "__array_ufunc__", + err_msg) + else: + if (isinstance(obj, np.ndarray) and + (type(obj).__array_ufunc__ is + np.ndarray.__array_ufunc__)): + # __array__ gets ignored + res = first_out_arg(arr_method(obj)) + assert_(res.__class__ is obj.__class__, err_msg) + else: + assert_raises((TypeError, Coerced), + arr_method, obj, err_msg=err_msg) + # obj __op__ arr + arr_rmethod = getattr(arr, "__r{0}__".format(op)) + if ufunc_override_expected: + res = arr_rmethod(obj) + assert_equal(res[0], "__array_ufunc__", + err_msg=err_msg) + assert_equal(res[1], ufunc, err_msg=err_msg) + else: + if (isinstance(obj, np.ndarray) and + (type(obj).__array_ufunc__ is + np.ndarray.__array_ufunc__)): + # __array__ gets ignored + res = first_out_arg(arr_rmethod(obj)) + assert_(res.__class__ is obj.__class__, err_msg) + else: + # __array_ufunc__ = "asdf" creates a TypeError + assert_raises((TypeError, Coerced), + arr_rmethod, obj, err_msg=err_msg) + + # arr __iop__ obj + # array scalars don't have in-place operators + if has_inplace and isinstance(arr, np.ndarray): + arr_imethod = getattr(arr, "__i{0}__".format(op)) + if inplace_override_expected: + assert_equal(arr_method(obj), NotImplemented, + err_msg=err_msg) + elif ufunc_override_expected: + res = arr_imethod(obj) + assert_equal(res[0], "__array_ufunc__", err_msg) + assert_equal(res[1], ufunc, err_msg) + assert_(type(res[-1]["out"]) is tuple, err_msg) + assert_(res[-1]["out"][0] is arr, err_msg) + else: + if (isinstance(obj, np.ndarray) and + (type(obj).__array_ufunc__ is + np.ndarray.__array_ufunc__)): + # __array__ gets ignored + assert_(arr_imethod(obj) is arr, err_msg) + else: + assert_raises((TypeError, Coerced), + arr_imethod, obj, + err_msg=err_msg) + + op_fn = getattr(operator, op, None) + if op_fn is None: + op_fn = getattr(operator, op + "_", None) + if op_fn is None: + op_fn = getattr(builtins, op) + assert_equal(op_fn(obj, arr), "forward", err_msg) + if not isinstance(obj, np.ndarray): + if binop_override_expected: + assert_equal(op_fn(arr, obj), "reverse", err_msg) + elif ufunc_override_expected: + assert_equal(op_fn(arr, obj)[0], "__array_ufunc__", + err_msg) + if ufunc_override_expected: + assert_equal(ufunc(obj, arr)[0], "__array_ufunc__", + err_msg) + + # No array priority, no array_ufunc -> nothing called + check(make_obj(object), False, False, False) + # Negative array priority, no array_ufunc -> nothing called + # (has to be very negative, because scalar priority is -1000000.0) + check(make_obj(object, array_priority=-2**30), False, False, False) + # Positive array priority, no array_ufunc -> binops and iops only + check(make_obj(object, array_priority=1), True, False, True) + # ndarray ignores array_priority for ndarray subclasses + check(make_obj(np.ndarray, array_priority=1), False, False, False, + check_scalar=False) + # Positive array_priority and array_ufunc -> array_ufunc only + check(make_obj(object, array_priority=1, + array_ufunc=array_ufunc_impl), False, True, False) + check(make_obj(np.ndarray, array_priority=1, + array_ufunc=array_ufunc_impl), False, True, False) + # array_ufunc set to None -> defer binops only + check(make_obj(object, array_ufunc=None), True, False, False) + check(make_obj(np.ndarray, array_ufunc=None), True, False, False, + check_scalar=False) + + @pytest.mark.parametrize("priority", [None, "runtime error"]) + def test_ufunc_binop_bad_array_priority(self, priority): + # Mainly checks that this does not crash. The second array has a lower + # priority than -1 ("error value"). If the __radd__ actually exists, + # bad things can happen (I think via the scalar paths). + # In principle both of these can probably just be errors in the future. + class BadPriority: + @property + def __array_priority__(self): + if priority == "runtime error": + raise RuntimeError("RuntimeError in __array_priority__!") + return priority + + def __radd__(self, other): + return "result" + + class LowPriority(np.ndarray): + __array_priority__ = -1000 + + # Priority failure uses the same as scalars (smaller -1000). So the + # LowPriority wins with 'result' for each element (inner operation). + res = np.arange(3).view(LowPriority) + BadPriority() + assert res.shape == (3,) + assert res[0] == 'result' + + @pytest.mark.parametrize("scalar", [ + np.longdouble(1), np.timedelta64(120, 'm')]) + @pytest.mark.parametrize("op", [operator.add, operator.xor]) + def test_scalar_binop_guarantees_ufunc(self, scalar, op): + # Test that __array_ufunc__ will always cause ufunc use even when + # we have to protect some other calls from recursing (see gh-26904). + class SomeClass: + def __array_ufunc__(self, ufunc, method, *inputs, **kw): + return "result" + + assert SomeClass() + scalar == "result" + assert scalar + SomeClass() == "result" + + def test_ufunc_override_normalize_signature(self): + # gh-5674 + class SomeClass: + def __array_ufunc__(self, ufunc, method, *inputs, **kw): + return kw + + a = SomeClass() + kw = np.add(a, [1]) + assert_('sig' not in kw and 'signature' not in kw) + kw = np.add(a, [1], sig='ii->i') + assert_('sig' not in kw and 'signature' in kw) + assert_equal(kw['signature'], 'ii->i') + kw = np.add(a, [1], signature='ii->i') + assert_('sig' not in kw and 'signature' in kw) + assert_equal(kw['signature'], 'ii->i') + + def test_array_ufunc_index(self): + # Check that index is set appropriately, also if only an output + # is passed on (latter is another regression tests for github bug 4753) + # This also checks implicitly that 'out' is always a tuple. + class CheckIndex: + def __array_ufunc__(self, ufunc, method, *inputs, **kw): + for i, a in enumerate(inputs): + if a is self: + return i + # calls below mean we must be in an output. + for j, a in enumerate(kw['out']): + if a is self: + return (j,) + + a = CheckIndex() + dummy = np.arange(2.) + # 1 input, 1 output + assert_equal(np.sin(a), 0) + assert_equal(np.sin(dummy, a), (0,)) + assert_equal(np.sin(dummy, out=a), (0,)) + assert_equal(np.sin(dummy, out=(a,)), (0,)) + assert_equal(np.sin(a, a), 0) + assert_equal(np.sin(a, out=a), 0) + assert_equal(np.sin(a, out=(a,)), 0) + # 1 input, 2 outputs + assert_equal(np.modf(dummy, a), (0,)) + assert_equal(np.modf(dummy, None, a), (1,)) + assert_equal(np.modf(dummy, dummy, a), (1,)) + assert_equal(np.modf(dummy, out=(a, None)), (0,)) + assert_equal(np.modf(dummy, out=(a, dummy)), (0,)) + assert_equal(np.modf(dummy, out=(None, a)), (1,)) + assert_equal(np.modf(dummy, out=(dummy, a)), (1,)) + assert_equal(np.modf(a, out=(dummy, a)), 0) + with assert_raises(TypeError): + # Out argument must be tuple, since there are multiple outputs + np.modf(dummy, out=a) + + assert_raises(ValueError, np.modf, dummy, out=(a,)) + + # 2 inputs, 1 output + assert_equal(np.add(a, dummy), 0) + assert_equal(np.add(dummy, a), 1) + assert_equal(np.add(dummy, dummy, a), (0,)) + assert_equal(np.add(dummy, a, a), 1) + assert_equal(np.add(dummy, dummy, out=a), (0,)) + assert_equal(np.add(dummy, dummy, out=(a,)), (0,)) + assert_equal(np.add(a, dummy, out=a), 0) + + def test_out_override(self): + # regression test for github bug 4753 + class OutClass(np.ndarray): + def __array_ufunc__(self, ufunc, method, *inputs, **kw): + if 'out' in kw: + tmp_kw = kw.copy() + tmp_kw.pop('out') + func = getattr(ufunc, method) + kw['out'][0][...] = func(*inputs, **tmp_kw) + + A = np.array([0]).view(OutClass) + B = np.array([5]) + C = np.array([6]) + np.multiply(C, B, A) + assert_equal(A[0], 30) + assert_(isinstance(A, OutClass)) + A[0] = 0 + np.multiply(C, B, out=A) + assert_equal(A[0], 30) + assert_(isinstance(A, OutClass)) + + def test_pow_override_with_errors(self): + # regression test for gh-9112 + class PowerOnly(np.ndarray): + def __array_ufunc__(self, ufunc, method, *inputs, **kw): + if ufunc is not np.power: + raise NotImplementedError + return "POWER!" + # explicit cast to float, to ensure the fast power path is taken. + a = np.array(5., dtype=np.float64).view(PowerOnly) + assert_equal(a ** 2.5, "POWER!") + with assert_raises(NotImplementedError): + a ** 0.5 + with assert_raises(NotImplementedError): + a ** 0 + with assert_raises(NotImplementedError): + a ** 1 + with assert_raises(NotImplementedError): + a ** -1 + with assert_raises(NotImplementedError): + a ** 2 + + def test_pow_array_object_dtype(self): + # test pow on arrays of object dtype + class SomeClass: + def __init__(self, num=None): + self.num = num + + # want to ensure a fast pow path is not taken + def __mul__(self, other): + raise AssertionError('__mul__ should not be called') + + def __div__(self, other): + raise AssertionError('__div__ should not be called') + + def __pow__(self, exp): + return SomeClass(num=self.num ** exp) + + def __eq__(self, other): + if isinstance(other, SomeClass): + return self.num == other.num + + __rpow__ = __pow__ + + def pow_for(exp, arr): + return np.array([x ** exp for x in arr]) + + obj_arr = np.array([SomeClass(1), SomeClass(2), SomeClass(3)]) + + assert_equal(obj_arr ** 0.5, pow_for(0.5, obj_arr)) + assert_equal(obj_arr ** 0, pow_for(0, obj_arr)) + assert_equal(obj_arr ** 1, pow_for(1, obj_arr)) + assert_equal(obj_arr ** -1, pow_for(-1, obj_arr)) + assert_equal(obj_arr ** 2, pow_for(2, obj_arr)) + + def test_pos_array_ufunc_override(self): + class A(np.ndarray): + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return getattr(ufunc, method)(*[i.view(np.ndarray) for + i in inputs], **kwargs) + tst = np.array('foo').view(A) + with assert_raises(TypeError): + +tst + + +class TestTemporaryElide: + # elision is only triggered on relatively large arrays + + def test_extension_incref_elide(self): + # test extension (e.g. cython) calling PyNumber_* slots without + # increasing the reference counts + # + # def incref_elide(a): + # d = input.copy() # refcount 1 + # return d, d + d # PyNumber_Add without increasing refcount + from numpy._core._multiarray_tests import incref_elide + d = np.ones(100000) + orig, res = incref_elide(d) + d + d + # the return original should not be changed to an inplace operation + assert_array_equal(orig, d) + assert_array_equal(res, d + d) + + def test_extension_incref_elide_stack(self): + # scanning if the refcount == 1 object is on the python stack to check + # that we are called directly from python is flawed as object may still + # be above the stack pointer and we have no access to the top of it + # + # def incref_elide_l(d): + # return l[4] + l[4] # PyNumber_Add without increasing refcount + from numpy._core._multiarray_tests import incref_elide_l + # padding with 1 makes sure the object on the stack is not overwritten + l = [1, 1, 1, 1, np.ones(100000)] + res = incref_elide_l(l) + # the return original should not be changed to an inplace operation + assert_array_equal(l[4], np.ones(100000)) + assert_array_equal(res, l[4] + l[4]) + + def test_temporary_with_cast(self): + # check that we don't elide into a temporary which would need casting + d = np.ones(200000, dtype=np.int64) + r = ((d + d) + np.array(2**222, dtype='O')) + assert_equal(r.dtype, np.dtype('O')) + + r = ((d + d) / 2) + assert_equal(r.dtype, np.dtype('f8')) + + r = np.true_divide((d + d), 2) + assert_equal(r.dtype, np.dtype('f8')) + + r = ((d + d) / 2.) + assert_equal(r.dtype, np.dtype('f8')) + + r = ((d + d) // 2) + assert_equal(r.dtype, np.dtype(np.int64)) + + # commutative elision into the astype result + f = np.ones(100000, dtype=np.float32) + assert_equal(((f + f) + f.astype(np.float64)).dtype, np.dtype('f8')) + + # no elision into lower type + d = f.astype(np.float64) + assert_equal(((f + f) + d).dtype, d.dtype) + l = np.ones(100000, dtype=np.longdouble) + assert_equal(((d + d) + l).dtype, l.dtype) + + # test unary abs with different output dtype + for dt in (np.complex64, np.complex128, np.clongdouble): + c = np.ones(100000, dtype=dt) + r = abs(c * 2.0) + assert_equal(r.dtype, np.dtype('f%d' % (c.itemsize // 2))) + + def test_elide_broadcast(self): + # test no elision on broadcast to higher dimension + # only triggers elision code path in debug mode as triggering it in + # normal mode needs 256kb large matching dimension, so a lot of memory + d = np.ones((2000, 1), dtype=int) + b = np.ones((2000), dtype=bool) + r = (1 - d) + b + assert_equal(r, 1) + assert_equal(r.shape, (2000, 2000)) + + def test_elide_scalar(self): + # check inplace op does not create ndarray from scalars + a = np.bool() + assert_(type(~(a & a)) is np.bool) + + def test_elide_scalar_readonly(self): + # The imaginary part of a real array is readonly. This needs to go + # through fast_scalar_power which is only called for powers of + # +1, -1, 0, 0.5, and 2, so use 2. Also need valid refcount for + # elision which can be gotten for the imaginary part of a real + # array. Should not error. + a = np.empty(100000, dtype=np.float64) + a.imag ** 2 + + def test_elide_readonly(self): + # don't try to elide readonly temporaries + r = np.asarray(np.broadcast_to(np.zeros(1), 100000).flat) * 0.0 + assert_equal(r, 0) + + def test_elide_updateifcopy(self): + a = np.ones(2**20)[::2] + b = a.flat.__array__() + 1 + del b + assert_equal(a, 1) + + +class TestCAPI: + def test_IsPythonScalar(self): + from numpy._core._multiarray_tests import IsPythonScalar + assert_(IsPythonScalar(b'foobar')) + assert_(IsPythonScalar(1)) + assert_(IsPythonScalar(2**80)) + assert_(IsPythonScalar(2.)) + assert_(IsPythonScalar("a")) + + @pytest.mark.parametrize("converter", + [_multiarray_tests.run_scalar_intp_converter, + _multiarray_tests.run_scalar_intp_from_sequence]) + def test_intp_sequence_converters(self, converter): + # Test simple values (-1 is special for error return paths) + assert converter(10) == (10,) + assert converter(-1) == (-1,) + # A 0-D array looks a bit like a sequence but must take the integer + # path: + assert converter(np.array(123)) == (123,) + # Test simple sequences (intp_from_sequence only supports length 1): + assert converter((10,)) == (10,) + assert converter(np.array([11])) == (11,) + + @pytest.mark.parametrize("converter", + [_multiarray_tests.run_scalar_intp_converter, + _multiarray_tests.run_scalar_intp_from_sequence]) + @pytest.mark.skipif(IS_PYPY and sys.implementation.version <= (7, 3, 8), + reason="PyPy bug in error formatting") + def test_intp_sequence_converters_errors(self, converter): + with pytest.raises(TypeError, + match="expected a sequence of integers or a single integer, "): + converter(object()) + with pytest.raises(TypeError, + match="expected a sequence of integers or a single integer, " + "got '32.0'"): + converter(32.) + with pytest.raises(TypeError, + match="'float' object cannot be interpreted as an integer"): + converter([32.]) + with pytest.raises(ValueError, + match="Maximum allowed dimension"): + # These converters currently convert overflows to a ValueError + converter(2**64) + + +class TestSubscripting: + def test_test_zero_rank(self): + x = np.array([1, 2, 3]) + assert_(isinstance(x[0], np.int_)) + assert_(type(x[0, ...]) is np.ndarray) + + +class TestPickling: + @pytest.mark.skipif(pickle.HIGHEST_PROTOCOL >= 5, + reason=('this tests the error messages when trying to' + 'protocol 5 although it is not available')) + def test_correct_protocol5_error_message(self): + array = np.arange(10) + + def test_record_array_with_object_dtype(self): + my_object = object() + + arr_with_object = np.array( + [(my_object, 1, 2.0)], + dtype=[('a', object), ('b', int), ('c', float)]) + arr_without_object = np.array( + [('xxx', 1, 2.0)], + dtype=[('a', str), ('b', int), ('c', float)]) + + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + depickled_arr_with_object = pickle.loads( + pickle.dumps(arr_with_object, protocol=proto)) + depickled_arr_without_object = pickle.loads( + pickle.dumps(arr_without_object, protocol=proto)) + + assert_equal(arr_with_object.dtype, + depickled_arr_with_object.dtype) + assert_equal(arr_without_object.dtype, + depickled_arr_without_object.dtype) + + @pytest.mark.skipif(pickle.HIGHEST_PROTOCOL < 5, + reason="requires pickle protocol 5") + def test_f_contiguous_array(self): + f_contiguous_array = np.array([[1, 2, 3], [4, 5, 6]], order='F') + buffers = [] + + # When using pickle protocol 5, Fortran-contiguous arrays can be + # serialized using out-of-band buffers + bytes_string = pickle.dumps(f_contiguous_array, protocol=5, + buffer_callback=buffers.append) + + assert len(buffers) > 0 + + depickled_f_contiguous_array = pickle.loads(bytes_string, + buffers=buffers) + + assert_equal(f_contiguous_array, depickled_f_contiguous_array) + + def test_non_contiguous_array(self): + non_contiguous_array = np.arange(12).reshape(3, 4)[:, :2] + assert not non_contiguous_array.flags.c_contiguous + assert not non_contiguous_array.flags.f_contiguous + + # make sure non-contiguous arrays can be pickled-depickled + # using any protocol + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + depickled_non_contiguous_array = pickle.loads( + pickle.dumps(non_contiguous_array, protocol=proto)) + + assert_equal(non_contiguous_array, depickled_non_contiguous_array) + + def test_roundtrip(self): + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + carray = np.array([[2, 9], [7, 0], [3, 8]]) + DATA = [ + carray, + np.transpose(carray), + np.array([('xxx', 1, 2.0)], dtype=[('a', (str, 3)), ('b', int), + ('c', float)]) + ] + + refs = [weakref.ref(a) for a in DATA] + for a in DATA: + assert_equal( + a, pickle.loads(pickle.dumps(a, protocol=proto)), + err_msg="%r" % a) + del a, DATA, carray + break_cycles() + # check for reference leaks (gh-12793) + for ref in refs: + assert ref() is None + + def _loads(self, obj): + return pickle.loads(obj, encoding='latin1') + + # version 0 pickles, using protocol=2 to pickle + # version 0 doesn't have a version field + def test_version0_int8(self): + s = b"\x80\x02cnumpy.core._internal\n_reconstruct\nq\x01cnumpy\nndarray\nq\x02K\x00\x85U\x01b\x87Rq\x03(K\x04\x85cnumpy\ndtype\nq\x04U\x02i1K\x00K\x01\x87Rq\x05(U\x01|NNJ\xff\xff\xff\xffJ\xff\xff\xff\xfftb\x89U\x04\x01\x02\x03\x04tb." # noqa + a = np.array([1, 2, 3, 4], dtype=np.int8) + p = self._loads(s) + assert_equal(a, p) + + def test_version0_float32(self): + s = b"\x80\x02cnumpy.core._internal\n_reconstruct\nq\x01cnumpy\nndarray\nq\x02K\x00\x85U\x01b\x87Rq\x03(K\x04\x85cnumpy\ndtype\nq\x04U\x02f4K\x00K\x01\x87Rq\x05(U\x01= g2, [g1[i] >= g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 < g2, [g1[i] < g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 > g2, [g1[i] > g2[i] for i in [0, 1, 2]]) + + def test_mixed(self): + g1 = np.array(["spam", "spa", "spammer", "and eggs"]) + g2 = "spam" + assert_array_equal(g1 == g2, [x == g2 for x in g1]) + assert_array_equal(g1 != g2, [x != g2 for x in g1]) + assert_array_equal(g1 < g2, [x < g2 for x in g1]) + assert_array_equal(g1 > g2, [x > g2 for x in g1]) + assert_array_equal(g1 <= g2, [x <= g2 for x in g1]) + assert_array_equal(g1 >= g2, [x >= g2 for x in g1]) + + def test_unicode(self): + g1 = np.array(["This", "is", "example"]) + g2 = np.array(["This", "was", "example"]) + assert_array_equal(g1 == g2, [g1[i] == g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 != g2, [g1[i] != g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 <= g2, [g1[i] <= g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 >= g2, [g1[i] >= g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 < g2, [g1[i] < g2[i] for i in [0, 1, 2]]) + assert_array_equal(g1 > g2, [g1[i] > g2[i] for i in [0, 1, 2]]) + +class TestArgmaxArgminCommon: + + sizes = [(), (3,), (3, 2), (2, 3), + (3, 3), (2, 3, 4), (4, 3, 2), + (1, 2, 3, 4), (2, 3, 4, 1), + (3, 4, 1, 2), (4, 1, 2, 3), + (64,), (128,), (256,)] + + @pytest.mark.parametrize("size, axis", itertools.chain(*[[(size, axis) + for axis in list(range(-len(size), len(size))) + [None]] + for size in sizes])) + @pytest.mark.parametrize('method', [np.argmax, np.argmin]) + def test_np_argmin_argmax_keepdims(self, size, axis, method): + + arr = np.random.normal(size=size) + + # contiguous arrays + if axis is None: + new_shape = [1 for _ in range(len(size))] + else: + new_shape = list(size) + new_shape[axis] = 1 + new_shape = tuple(new_shape) + + _res_orig = method(arr, axis=axis) + res_orig = _res_orig.reshape(new_shape) + res = method(arr, axis=axis, keepdims=True) + assert_equal(res, res_orig) + assert_(res.shape == new_shape) + outarray = np.empty(res.shape, dtype=res.dtype) + res1 = method(arr, axis=axis, out=outarray, + keepdims=True) + assert_(res1 is outarray) + assert_equal(res, outarray) + + if len(size) > 0: + wrong_shape = list(new_shape) + if axis is not None: + wrong_shape[axis] = 2 + else: + wrong_shape[0] = 2 + wrong_outarray = np.empty(wrong_shape, dtype=res.dtype) + with pytest.raises(ValueError): + method(arr.T, axis=axis, + out=wrong_outarray, keepdims=True) + + # non-contiguous arrays + if axis is None: + new_shape = [1 for _ in range(len(size))] + else: + new_shape = list(size)[::-1] + new_shape[axis] = 1 + new_shape = tuple(new_shape) + + _res_orig = method(arr.T, axis=axis) + res_orig = _res_orig.reshape(new_shape) + res = method(arr.T, axis=axis, keepdims=True) + assert_equal(res, res_orig) + assert_(res.shape == new_shape) + outarray = np.empty(new_shape[::-1], dtype=res.dtype) + outarray = outarray.T + res1 = method(arr.T, axis=axis, out=outarray, + keepdims=True) + assert_(res1 is outarray) + assert_equal(res, outarray) + + if len(size) > 0: + # one dimension lesser for non-zero sized + # array should raise an error + with pytest.raises(ValueError): + method(arr[0], axis=axis, + out=outarray, keepdims=True) + + if len(size) > 0: + wrong_shape = list(new_shape) + if axis is not None: + wrong_shape[axis] = 2 + else: + wrong_shape[0] = 2 + wrong_outarray = np.empty(wrong_shape, dtype=res.dtype) + with pytest.raises(ValueError): + method(arr.T, axis=axis, + out=wrong_outarray, keepdims=True) + + @pytest.mark.parametrize('method', ['max', 'min']) + def test_all(self, method): + a = np.random.normal(0, 1, (4, 5, 6, 7, 8)) + arg_method = getattr(a, 'arg' + method) + val_method = getattr(a, method) + for i in range(a.ndim): + a_maxmin = val_method(i) + aarg_maxmin = arg_method(i) + axes = list(range(a.ndim)) + axes.remove(i) + assert_(np.all(a_maxmin == aarg_maxmin.choose( + *a.transpose(i, *axes)))) + + @pytest.mark.parametrize('method', ['argmax', 'argmin']) + def test_output_shape(self, method): + # see also gh-616 + a = np.ones((10, 5)) + arg_method = getattr(a, method) + # Check some simple shape mismatches + out = np.ones(11, dtype=np.int_) + assert_raises(ValueError, arg_method, -1, out) + + out = np.ones((2, 5), dtype=np.int_) + assert_raises(ValueError, arg_method, -1, out) + + # these could be relaxed possibly (used to allow even the previous) + out = np.ones((1, 10), dtype=np.int_) + assert_raises(ValueError, arg_method, -1, out) + + out = np.ones(10, dtype=np.int_) + arg_method(-1, out=out) + assert_equal(out, arg_method(-1)) + + @pytest.mark.parametrize('ndim', [0, 1]) + @pytest.mark.parametrize('method', ['argmax', 'argmin']) + def test_ret_is_out(self, ndim, method): + a = np.ones((4,) + (256,)*ndim) + arg_method = getattr(a, method) + out = np.empty((256,)*ndim, dtype=np.intp) + ret = arg_method(axis=0, out=out) + assert ret is out + + @pytest.mark.parametrize('np_array, method, idx, val', + [(np.zeros, 'argmax', 5942, "as"), + (np.ones, 'argmin', 6001, "0")]) + def test_unicode(self, np_array, method, idx, val): + d = np_array(6031, dtype='= cmin)) + assert_(np.all(x <= cmax)) + + def _clip_type(self, type_group, array_max, + clip_min, clip_max, inplace=False, + expected_min=None, expected_max=None): + if expected_min is None: + expected_min = clip_min + if expected_max is None: + expected_max = clip_max + + for T in np._core.sctypes[type_group]: + if sys.byteorder == 'little': + byte_orders = ['=', '>'] + else: + byte_orders = ['<', '='] + + for byteorder in byte_orders: + dtype = np.dtype(T).newbyteorder(byteorder) + + x = (np.random.random(1000) * array_max).astype(dtype) + if inplace: + # The tests that call us pass clip_min and clip_max that + # might not fit in the destination dtype. They were written + # assuming the previous unsafe casting, which now must be + # passed explicitly to avoid a warning. + x.clip(clip_min, clip_max, x, casting='unsafe') + else: + x = x.clip(clip_min, clip_max) + byteorder = '=' + + if x.dtype.byteorder == '|': + byteorder = '|' + assert_equal(x.dtype.byteorder, byteorder) + self._check_range(x, expected_min, expected_max) + return x + + def test_basic(self): + for inplace in [False, True]: + self._clip_type( + 'float', 1024, -12.8, 100.2, inplace=inplace) + self._clip_type( + 'float', 1024, 0, 0, inplace=inplace) + + self._clip_type( + 'int', 1024, -120, 100, inplace=inplace) + self._clip_type( + 'int', 1024, 0, 0, inplace=inplace) + + self._clip_type( + 'uint', 1024, 0, 0, inplace=inplace) + self._clip_type( + 'uint', 1024, 10, 100, inplace=inplace) + + @pytest.mark.parametrize("inplace", [False, True]) + def test_int_out_of_range(self, inplace): + # Simple check for out-of-bound integers, also testing the in-place + # path. + x = (np.random.random(1000) * 255).astype("uint8") + out = np.empty_like(x) + res = x.clip(-1, 300, out=out if inplace else None) + assert res is out or not inplace + assert (res == x).all() + + res = x.clip(-1, 50, out=out if inplace else None) + assert res is out or not inplace + assert (res <= 50).all() + assert (res[x <= 50] == x[x <= 50]).all() + + res = x.clip(100, 1000, out=out if inplace else None) + assert res is out or not inplace + assert (res >= 100).all() + assert (res[x >= 100] == x[x >= 100]).all() + + def test_record_array(self): + rec = np.array([(-5, 2.0, 3.0), (5.0, 4.0, 3.0)], + dtype=[('x', '= 3)) + x = val.clip(min=3) + assert_(np.all(x >= 3)) + x = val.clip(max=4) + assert_(np.all(x <= 4)) + + def test_nan(self): + input_arr = np.array([-2., np.nan, 0.5, 3., 0.25, np.nan]) + result = input_arr.clip(-1, 1) + expected = np.array([-1., np.nan, 0.5, 1., 0.25, np.nan]) + assert_array_equal(result, expected) + + +class TestCompress: + def test_axis(self): + tgt = [[5, 6, 7, 8, 9]] + arr = np.arange(10).reshape(2, 5) + out = np.compress([0, 1], arr, axis=0) + assert_equal(out, tgt) + + tgt = [[1, 3], [6, 8]] + out = np.compress([0, 1, 0, 1, 0], arr, axis=1) + assert_equal(out, tgt) + + def test_truncate(self): + tgt = [[1], [6]] + arr = np.arange(10).reshape(2, 5) + out = np.compress([0, 1], arr, axis=1) + assert_equal(out, tgt) + + def test_flatten(self): + arr = np.arange(10).reshape(2, 5) + out = np.compress([0, 1], arr) + assert_equal(out, 1) + + +class TestPutmask: + def tst_basic(self, x, T, mask, val): + np.putmask(x, mask, val) + assert_equal(x[mask], np.array(val, T)) + + def test_ip_types(self): + unchecked_types = [bytes, str, np.void] + + x = np.random.random(1000)*100 + mask = x < 40 + + for val in [-100, 0, 15]: + for types in np._core.sctypes.values(): + for T in types: + if T not in unchecked_types: + if val < 0 and np.dtype(T).kind == "u": + val = np.iinfo(T).max - 99 + self.tst_basic(x.copy().astype(T), T, mask, val) + + # Also test string of a length which uses an untypical length + dt = np.dtype("S3") + self.tst_basic(x.astype(dt), dt.type, mask, dt.type(val)[:3]) + + def test_mask_size(self): + assert_raises(ValueError, np.putmask, np.array([1, 2, 3]), [True], 5) + + @pytest.mark.parametrize('dtype', ('>i4', 'f8'), ('z', '= 2, 3) + + def test_kwargs(self): + x = np.array([0, 0]) + np.putmask(x, [0, 1], [-1, -2]) + assert_array_equal(x, [0, -2]) + + x = np.array([0, 0]) + np.putmask(x, mask=[0, 1], values=[-1, -2]) + assert_array_equal(x, [0, -2]) + + x = np.array([0, 0]) + np.putmask(x, values=[-1, -2], mask=[0, 1]) + assert_array_equal(x, [0, -2]) + + with pytest.raises(TypeError): + np.putmask(a=x, values=[-1, -2], mask=[0, 1]) + + +class TestTake: + def tst_basic(self, x): + ind = list(range(x.shape[0])) + assert_array_equal(x.take(ind, axis=0), x) + + def test_ip_types(self): + unchecked_types = [bytes, str, np.void] + + x = np.random.random(24)*100 + x.shape = 2, 3, 4 + for types in np._core.sctypes.values(): + for T in types: + if T not in unchecked_types: + self.tst_basic(x.copy().astype(T)) + + # Also test string of a length which uses an untypical length + self.tst_basic(x.astype("S3")) + + def test_raise(self): + x = np.random.random(24)*100 + x.shape = 2, 3, 4 + assert_raises(IndexError, x.take, [0, 1, 2], axis=0) + assert_raises(IndexError, x.take, [-3], axis=0) + assert_array_equal(x.take([-1], axis=0)[0], x[1]) + + def test_clip(self): + x = np.random.random(24)*100 + x.shape = 2, 3, 4 + assert_array_equal(x.take([-1], axis=0, mode='clip')[0], x[0]) + assert_array_equal(x.take([2], axis=0, mode='clip')[0], x[1]) + + def test_wrap(self): + x = np.random.random(24)*100 + x.shape = 2, 3, 4 + assert_array_equal(x.take([-1], axis=0, mode='wrap')[0], x[1]) + assert_array_equal(x.take([2], axis=0, mode='wrap')[0], x[0]) + assert_array_equal(x.take([3], axis=0, mode='wrap')[0], x[1]) + + @pytest.mark.parametrize('dtype', ('>i4', 'f8'), ('z', ' 16MB + d = np.zeros(4 * 1024 ** 2) + d.tofile(tmp_filename) + assert_equal(os.path.getsize(tmp_filename), d.nbytes) + assert_array_equal(d, np.fromfile(tmp_filename)) + # check offset + with open(tmp_filename, "r+b") as f: + f.seek(d.nbytes) + d.tofile(f) + assert_equal(os.path.getsize(tmp_filename), d.nbytes * 2) + # check append mode (gh-8329) + open(tmp_filename, "w").close() # delete file contents + with open(tmp_filename, "ab") as f: + d.tofile(f) + assert_array_equal(d, np.fromfile(tmp_filename)) + with open(tmp_filename, "ab") as f: + d.tofile(f) + assert_equal(os.path.getsize(tmp_filename), d.nbytes * 2) + + def test_io_open_buffered_fromfile(self, x, tmp_filename): + # gh-6632 + x.tofile(tmp_filename) + with open(tmp_filename, 'rb', buffering=-1) as f: + y = np.fromfile(f, dtype=x.dtype) + assert_array_equal(y, x.flat) + + def test_file_position_after_fromfile(self, tmp_filename): + # gh-4118 + sizes = [io.DEFAULT_BUFFER_SIZE//8, + io.DEFAULT_BUFFER_SIZE, + io.DEFAULT_BUFFER_SIZE*8] + + for size in sizes: + with open(tmp_filename, 'wb') as f: + f.seek(size-1) + f.write(b'\0') + + for mode in ['rb', 'r+b']: + err_msg = "%d %s" % (size, mode) + + with open(tmp_filename, mode) as f: + f.read(2) + np.fromfile(f, dtype=np.float64, count=1) + pos = f.tell() + assert_equal(pos, 10, err_msg=err_msg) + + def test_file_position_after_tofile(self, tmp_filename): + # gh-4118 + sizes = [io.DEFAULT_BUFFER_SIZE//8, + io.DEFAULT_BUFFER_SIZE, + io.DEFAULT_BUFFER_SIZE*8] + + for size in sizes: + err_msg = "%d" % (size,) + + with open(tmp_filename, 'wb') as f: + f.seek(size-1) + f.write(b'\0') + f.seek(10) + f.write(b'12') + np.array([0], dtype=np.float64).tofile(f) + pos = f.tell() + assert_equal(pos, 10 + 2 + 8, err_msg=err_msg) + + with open(tmp_filename, 'r+b') as f: + f.read(2) + f.seek(0, 1) # seek between read&write required by ANSI C + np.array([0], dtype=np.float64).tofile(f) + pos = f.tell() + assert_equal(pos, 10, err_msg=err_msg) + + def test_load_object_array_fromfile(self, tmp_filename): + # gh-12300 + with open(tmp_filename, 'w') as f: + # Ensure we have a file with consistent contents + pass + + with open(tmp_filename, 'rb') as f: + assert_raises_regex(ValueError, "Cannot read into object array", + np.fromfile, f, dtype=object) + + assert_raises_regex(ValueError, "Cannot read into object array", + np.fromfile, tmp_filename, dtype=object) + + def test_fromfile_offset(self, x, tmp_filename): + with open(tmp_filename, 'wb') as f: + x.tofile(f) + + with open(tmp_filename, 'rb') as f: + y = np.fromfile(f, dtype=x.dtype, offset=0) + assert_array_equal(y, x.flat) + + with open(tmp_filename, 'rb') as f: + count_items = len(x.flat) // 8 + offset_items = len(x.flat) // 4 + offset_bytes = x.dtype.itemsize * offset_items + y = np.fromfile( + f, dtype=x.dtype, count=count_items, offset=offset_bytes + ) + assert_array_equal( + y, x.flat[offset_items:offset_items+count_items] + ) + + # subsequent seeks should stack + offset_bytes = x.dtype.itemsize + z = np.fromfile(f, dtype=x.dtype, offset=offset_bytes) + assert_array_equal(z, x.flat[offset_items+count_items+1:]) + + with open(tmp_filename, 'wb') as f: + x.tofile(f, sep=",") + + with open(tmp_filename, 'rb') as f: + assert_raises_regex( + TypeError, + "'offset' argument only permitted for binary files", + np.fromfile, tmp_filename, dtype=x.dtype, + sep=",", offset=1) + + @pytest.mark.skipif(IS_PYPY, reason="bug in PyPy's PyNumber_AsSsize_t") + def test_fromfile_bad_dup(self, x, tmp_filename): + def dup_str(fd): + return 'abc' + + def dup_bigint(fd): + return 2**68 + + old_dup = os.dup + try: + with open(tmp_filename, 'wb') as f: + x.tofile(f) + for dup, exc in ((dup_str, TypeError), (dup_bigint, OSError)): + os.dup = dup + assert_raises(exc, np.fromfile, f) + finally: + os.dup = old_dup + + def _check_from(self, s, value, filename, **kw): + if 'sep' not in kw: + y = np.frombuffer(s, **kw) + else: + y = np.fromstring(s, **kw) + assert_array_equal(y, value) + + with open(filename, 'wb') as f: + f.write(s) + y = np.fromfile(filename, **kw) + assert_array_equal(y, value) + + @pytest.fixture(params=["period", "comma"]) + def decimal_sep_localization(self, request): + """ + Including this fixture in a test will automatically + execute it with both types of decimal separator. + + So:: + + def test_decimal(decimal_sep_localization): + pass + + is equivalent to the following two tests:: + + def test_decimal_period_separator(): + pass + + def test_decimal_comma_separator(): + with CommaDecimalPointLocale(): + pass + """ + if request.param == "period": + yield + elif request.param == "comma": + with CommaDecimalPointLocale(): + yield + else: + assert False, request.param + + def test_nan(self, tmp_filename, decimal_sep_localization): + self._check_from( + b"nan +nan -nan NaN nan(foo) +NaN(BAR) -NAN(q_u_u_x_)", + [np.nan, np.nan, np.nan, np.nan, np.nan, np.nan, np.nan], + tmp_filename, + sep=' ') + + def test_inf(self, tmp_filename, decimal_sep_localization): + self._check_from( + b"inf +inf -inf infinity -Infinity iNfInItY -inF", + [np.inf, np.inf, -np.inf, np.inf, -np.inf, np.inf, -np.inf], + tmp_filename, + sep=' ') + + def test_numbers(self, tmp_filename, decimal_sep_localization): + self._check_from( + b"1.234 -1.234 .3 .3e55 -123133.1231e+133", + [1.234, -1.234, .3, .3e55, -123133.1231e+133], + tmp_filename, + sep=' ') + + def test_binary(self, tmp_filename): + self._check_from( + b'\x00\x00\x80?\x00\x00\x00@\x00\x00@@\x00\x00\x80@', + np.array([1, 2, 3, 4]), + tmp_filename, + dtype='']) + @pytest.mark.parametrize('dtype', [float, int, complex]) + def test_basic(self, byteorder, dtype): + dt = np.dtype(dtype).newbyteorder(byteorder) + x = (np.random.random((4, 7)) * 5).astype(dt) + buf = x.tobytes() + assert_array_equal(np.frombuffer(buf, dtype=dt), x.flat) + + @pytest.mark.parametrize("obj", [np.arange(10), b"12345678"]) + def test_array_base(self, obj): + # Objects (including NumPy arrays), which do not use the + # `release_buffer` slot should be directly used as a base object. + # See also gh-21612 + new = np.frombuffer(obj) + assert new.base is obj + + def test_empty(self): + assert_array_equal(np.frombuffer(b''), np.array([])) + + @pytest.mark.skipif(IS_PYPY, + reason="PyPy's memoryview currently does not track exports. See: " + "https://foss.heptapod.net/pypy/pypy/-/issues/3724") + def test_mmap_close(self): + # The old buffer protocol was not safe for some things that the new + # one is. But `frombuffer` always used the old one for a long time. + # Checks that it is safe with the new one (using memoryviews) + with tempfile.TemporaryFile(mode='wb') as tmp: + tmp.write(b"asdf") + tmp.flush() + mm = mmap.mmap(tmp.fileno(), 0) + arr = np.frombuffer(mm, dtype=np.uint8) + with pytest.raises(BufferError): + mm.close() # cannot close while array uses the buffer + del arr + mm.close() + +class TestFlat: + def setup_method(self): + a0 = np.arange(20.0) + a = a0.reshape(4, 5) + a0.shape = (4, 5) + a.flags.writeable = False + self.a = a + self.b = a[::2, ::2] + self.a0 = a0 + self.b0 = a0[::2, ::2] + + def test_contiguous(self): + testpassed = False + try: + self.a.flat[12] = 100.0 + except ValueError: + testpassed = True + assert_(testpassed) + assert_(self.a.flat[12] == 12.0) + + def test_discontiguous(self): + testpassed = False + try: + self.b.flat[4] = 100.0 + except ValueError: + testpassed = True + assert_(testpassed) + assert_(self.b.flat[4] == 12.0) + + def test___array__(self): + c = self.a.flat.__array__() + d = self.b.flat.__array__() + e = self.a0.flat.__array__() + f = self.b0.flat.__array__() + + assert_(c.flags.writeable is False) + assert_(d.flags.writeable is False) + assert_(e.flags.writeable is True) + assert_(f.flags.writeable is False) + assert_(c.flags.writebackifcopy is False) + assert_(d.flags.writebackifcopy is False) + assert_(e.flags.writebackifcopy is False) + assert_(f.flags.writebackifcopy is False) + + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_refcount(self): + # includes regression test for reference count error gh-13165 + inds = [np.intp(0), np.array([True]*self.a.size), np.array([0]), None] + indtype = np.dtype(np.intp) + rc_indtype = sys.getrefcount(indtype) + for ind in inds: + rc_ind = sys.getrefcount(ind) + for _ in range(100): + try: + self.a.flat[ind] + except IndexError: + pass + assert_(abs(sys.getrefcount(ind) - rc_ind) < 50) + assert_(abs(sys.getrefcount(indtype) - rc_indtype) < 50) + + def test_index_getset(self): + it = np.arange(10).reshape(2, 1, 5).flat + with pytest.raises(AttributeError): + it.index = 10 + + for _ in it: + pass + # Check the value of `.index` is updated correctly (see also gh-19153) + # If the type was incorrect, this would show up on big-endian machines + assert it.index == it.base.size + + def test_maxdims(self): + # The flat iterator and thus attribute is currently unfortunately + # limited to only 32 dimensions (after bumping it to 64 for 2.0) + a = np.ones((1,) * 64) + + with pytest.raises(RuntimeError, + match=".*32 dimensions but the array has 64"): + a.flat + + +class TestResize: + + @_no_tracing + def test_basic(self): + x = np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]) + if IS_PYPY: + x.resize((5, 5), refcheck=False) + else: + x.resize((5, 5)) + assert_array_equal(x.flat[:9], + np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]).flat) + assert_array_equal(x[9:].flat, 0) + + def test_check_reference(self): + x = np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]) + y = x + assert_raises(ValueError, x.resize, (5, 1)) + del y # avoid pyflakes unused variable warning. + + @_no_tracing + def test_int_shape(self): + x = np.eye(3) + if IS_PYPY: + x.resize(3, refcheck=False) + else: + x.resize(3) + assert_array_equal(x, np.eye(3)[0,:]) + + def test_none_shape(self): + x = np.eye(3) + x.resize(None) + assert_array_equal(x, np.eye(3)) + x.resize() + assert_array_equal(x, np.eye(3)) + + def test_0d_shape(self): + # to it multiple times to test it does not break alloc cache gh-9216 + for i in range(10): + x = np.empty((1,)) + x.resize(()) + assert_equal(x.shape, ()) + assert_equal(x.size, 1) + x = np.empty(()) + x.resize((1,)) + assert_equal(x.shape, (1,)) + assert_equal(x.size, 1) + + def test_invalid_arguments(self): + assert_raises(TypeError, np.eye(3).resize, 'hi') + assert_raises(ValueError, np.eye(3).resize, -1) + assert_raises(TypeError, np.eye(3).resize, order=1) + assert_raises(TypeError, np.eye(3).resize, refcheck='hi') + + @_no_tracing + def test_freeform_shape(self): + x = np.eye(3) + if IS_PYPY: + x.resize(3, 2, 1, refcheck=False) + else: + x.resize(3, 2, 1) + assert_(x.shape == (3, 2, 1)) + + @_no_tracing + def test_zeros_appended(self): + x = np.eye(3) + if IS_PYPY: + x.resize(2, 3, 3, refcheck=False) + else: + x.resize(2, 3, 3) + assert_array_equal(x[0], np.eye(3)) + assert_array_equal(x[1], np.zeros((3, 3))) + + @_no_tracing + def test_obj_obj(self): + # check memory is initialized on resize, gh-4857 + a = np.ones(10, dtype=[('k', object, 2)]) + if IS_PYPY: + a.resize(15, refcheck=False) + else: + a.resize(15,) + assert_equal(a.shape, (15,)) + assert_array_equal(a['k'][-5:], 0) + assert_array_equal(a['k'][:-5], 1) + + def test_empty_view(self): + # check that sizes containing a zero don't trigger a reallocate for + # already empty arrays + x = np.zeros((10, 0), int) + x_view = x[...] + x_view.resize((0, 10)) + x_view.resize((0, 100)) + + def test_check_weakref(self): + x = np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]) + xref = weakref.ref(x) + assert_raises(ValueError, x.resize, (5, 1)) + del xref # avoid pyflakes unused variable warning. + + +class TestRecord: + def test_field_rename(self): + dt = np.dtype([('f', float), ('i', int)]) + dt.names = ['p', 'q'] + assert_equal(dt.names, ['p', 'q']) + + def test_multiple_field_name_occurrence(self): + def test_dtype_init(): + np.dtype([("A", "f8"), ("B", "f8"), ("A", "f8")]) + + # Error raised when multiple fields have the same name + assert_raises(ValueError, test_dtype_init) + + def test_bytes_fields(self): + # Bytes are not allowed in field names and not recognized in titles + # on Py3 + assert_raises(TypeError, np.dtype, [(b'a', int)]) + assert_raises(TypeError, np.dtype, [(('b', b'a'), int)]) + + dt = np.dtype([((b'a', 'b'), int)]) + assert_raises(TypeError, dt.__getitem__, b'a') + + x = np.array([(1,), (2,), (3,)], dtype=dt) + assert_raises(IndexError, x.__getitem__, b'a') + + y = x[0] + assert_raises(IndexError, y.__getitem__, b'a') + + def test_multiple_field_name_unicode(self): + def test_dtype_unicode(): + np.dtype([("\u20B9", "f8"), ("B", "f8"), ("\u20B9", "f8")]) + + # Error raised when multiple fields have the same name(unicode included) + assert_raises(ValueError, test_dtype_unicode) + + def test_fromarrays_unicode(self): + # A single name string provided to fromarrays() is allowed to be unicode + # on both Python 2 and 3: + x = np._core.records.fromarrays( + [[0], [1]], names='a,b', formats='i4,i4') + assert_equal(x['a'][0], 0) + assert_equal(x['b'][0], 1) + + def test_unicode_order(self): + # Test that we can sort with order as a unicode field name in both Python 2 and + # 3: + name = 'b' + x = np.array([1, 3, 2], dtype=[(name, int)]) + x.sort(order=name) + assert_equal(x['b'], np.array([1, 2, 3])) + + def test_field_names(self): + # Test unicode and 8-bit / byte strings can be used + a = np.zeros((1,), dtype=[('f1', 'i4'), + ('f2', 'i4'), + ('f3', [('sf1', 'i4')])]) + # byte string indexing fails gracefully + assert_raises(IndexError, a.__setitem__, b'f1', 1) + assert_raises(IndexError, a.__getitem__, b'f1') + assert_raises(IndexError, a['f1'].__setitem__, b'sf1', 1) + assert_raises(IndexError, a['f1'].__getitem__, b'sf1') + b = a.copy() + fn1 = str('f1') + b[fn1] = 1 + assert_equal(b[fn1], 1) + fnn = str('not at all') + assert_raises(ValueError, b.__setitem__, fnn, 1) + assert_raises(ValueError, b.__getitem__, fnn) + b[0][fn1] = 2 + assert_equal(b[fn1], 2) + # Subfield + assert_raises(ValueError, b[0].__setitem__, fnn, 1) + assert_raises(ValueError, b[0].__getitem__, fnn) + # Subfield + fn3 = str('f3') + sfn1 = str('sf1') + b[fn3][sfn1] = 1 + assert_equal(b[fn3][sfn1], 1) + assert_raises(ValueError, b[fn3].__setitem__, fnn, 1) + assert_raises(ValueError, b[fn3].__getitem__, fnn) + # multiple subfields + fn2 = str('f2') + b[fn2] = 3 + + assert_equal(b[['f1', 'f2']][0].tolist(), (2, 3)) + assert_equal(b[['f2', 'f1']][0].tolist(), (3, 2)) + assert_equal(b[['f1', 'f3']][0].tolist(), (2, (1,))) + + # non-ascii unicode field indexing is well behaved + assert_raises(ValueError, a.__setitem__, '\u03e0', 1) + assert_raises(ValueError, a.__getitem__, '\u03e0') + + def test_record_hash(self): + a = np.array([(1, 2), (1, 2)], dtype='i1,i2') + a.flags.writeable = False + b = np.array([(1, 2), (3, 4)], dtype=[('num1', 'i1'), ('num2', 'i2')]) + b.flags.writeable = False + c = np.array([(1, 2), (3, 4)], dtype='i1,i2') + c.flags.writeable = False + assert_(hash(a[0]) == hash(a[1])) + assert_(hash(a[0]) == hash(b[0])) + assert_(hash(a[0]) != hash(b[1])) + assert_(hash(c[0]) == hash(a[0]) and c[0] == a[0]) + + def test_record_no_hash(self): + a = np.array([(1, 2), (1, 2)], dtype='i1,i2') + assert_raises(TypeError, hash, a[0]) + + def test_empty_structure_creation(self): + # make sure these do not raise errors (gh-5631) + np.array([()], dtype={'names': [], 'formats': [], + 'offsets': [], 'itemsize': 12}) + np.array([(), (), (), (), ()], dtype={'names': [], 'formats': [], + 'offsets': [], 'itemsize': 12}) + + def test_multifield_indexing_view(self): + a = np.ones(3, dtype=[('a', 'i4'), ('b', 'f4'), ('c', 'u4')]) + v = a[['a', 'c']] + assert_(v.base is a) + assert_(v.dtype == np.dtype({'names': ['a', 'c'], + 'formats': ['i4', 'u4'], + 'offsets': [0, 8]})) + v[:] = (4,5) + assert_equal(a[0].item(), (4, 1, 5)) + +class TestView: + def test_basic(self): + x = np.array([(1, 2, 3, 4), (5, 6, 7, 8)], + dtype=[('r', np.int8), ('g', np.int8), + ('b', np.int8), ('a', np.int8)]) + # We must be specific about the endianness here: + y = x.view(dtype=' 0) + assert_(issubclass(w[0].category, RuntimeWarning)) + + def test_empty(self): + A = np.zeros((0, 3)) + for f in self.funcs: + for axis in [0, None]: + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter('always') + assert_(np.isnan(f(A, axis=axis)).all()) + assert_(len(w) > 0) + assert_(issubclass(w[0].category, RuntimeWarning)) + for axis in [1]: + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter('always') + assert_equal(f(A, axis=axis), np.zeros([])) + + def test_mean_values(self): + for mat in [self.rmat, self.cmat, self.omat]: + for axis in [0, 1]: + tgt = mat.sum(axis=axis) + res = _mean(mat, axis=axis) * mat.shape[axis] + assert_almost_equal(res, tgt) + for axis in [None]: + tgt = mat.sum(axis=axis) + res = _mean(mat, axis=axis) * np.prod(mat.shape) + assert_almost_equal(res, tgt) + + def test_mean_float16(self): + # This fail if the sum inside mean is done in float16 instead + # of float32. + assert_(_mean(np.ones(100000, dtype='float16')) == 1) + + def test_mean_axis_error(self): + # Ensure that AxisError is raised instead of IndexError when axis is + # out of bounds, see gh-15817. + with assert_raises(np.exceptions.AxisError): + np.arange(10).mean(axis=2) + + def test_mean_where(self): + a = np.arange(16).reshape((4, 4)) + wh_full = np.array([[False, True, False, True], + [True, False, True, False], + [True, True, False, False], + [False, False, True, True]]) + wh_partial = np.array([[False], + [True], + [True], + [False]]) + _cases = [(1, True, [1.5, 5.5, 9.5, 13.5]), + (0, wh_full, [6., 5., 10., 9.]), + (1, wh_full, [2., 5., 8.5, 14.5]), + (0, wh_partial, [6., 7., 8., 9.])] + for _ax, _wh, _res in _cases: + assert_allclose(a.mean(axis=_ax, where=_wh), + np.array(_res)) + assert_allclose(np.mean(a, axis=_ax, where=_wh), + np.array(_res)) + + a3d = np.arange(16).reshape((2, 2, 4)) + _wh_partial = np.array([False, True, True, False]) + _res = [[1.5, 5.5], [9.5, 13.5]] + assert_allclose(a3d.mean(axis=2, where=_wh_partial), + np.array(_res)) + assert_allclose(np.mean(a3d, axis=2, where=_wh_partial), + np.array(_res)) + + with pytest.warns(RuntimeWarning) as w: + assert_allclose(a.mean(axis=1, where=wh_partial), + np.array([np.nan, 5.5, 9.5, np.nan])) + with pytest.warns(RuntimeWarning) as w: + assert_equal(a.mean(where=False), np.nan) + with pytest.warns(RuntimeWarning) as w: + assert_equal(np.mean(a, where=False), np.nan) + + def test_var_values(self): + for mat in [self.rmat, self.cmat, self.omat]: + for axis in [0, 1, None]: + msqr = _mean(mat * mat.conj(), axis=axis) + mean = _mean(mat, axis=axis) + tgt = msqr - mean * mean.conjugate() + res = _var(mat, axis=axis) + assert_almost_equal(res, tgt) + + @pytest.mark.parametrize(('complex_dtype', 'ndec'), ( + ('complex64', 6), + ('complex128', 7), + ('clongdouble', 7), + )) + def test_var_complex_values(self, complex_dtype, ndec): + # Test fast-paths for every builtin complex type + for axis in [0, 1, None]: + mat = self.cmat.copy().astype(complex_dtype) + msqr = _mean(mat * mat.conj(), axis=axis) + mean = _mean(mat, axis=axis) + tgt = msqr - mean * mean.conjugate() + res = _var(mat, axis=axis) + assert_almost_equal(res, tgt, decimal=ndec) + + def test_var_dimensions(self): + # _var paths for complex number introduce additions on views that + # increase dimensions. Ensure this generalizes to higher dims + mat = np.stack([self.cmat]*3) + for axis in [0, 1, 2, -1, None]: + msqr = _mean(mat * mat.conj(), axis=axis) + mean = _mean(mat, axis=axis) + tgt = msqr - mean * mean.conjugate() + res = _var(mat, axis=axis) + assert_almost_equal(res, tgt) + + def test_var_complex_byteorder(self): + # Test that var fast-path does not cause failures for complex arrays + # with non-native byteorder + cmat = self.cmat.copy().astype('complex128') + cmat_swapped = cmat.astype(cmat.dtype.newbyteorder()) + assert_almost_equal(cmat.var(), cmat_swapped.var()) + + def test_var_axis_error(self): + # Ensure that AxisError is raised instead of IndexError when axis is + # out of bounds, see gh-15817. + with assert_raises(np.exceptions.AxisError): + np.arange(10).var(axis=2) + + def test_var_where(self): + a = np.arange(25).reshape((5, 5)) + wh_full = np.array([[False, True, False, True, True], + [True, False, True, True, False], + [True, True, False, False, True], + [False, True, True, False, True], + [True, False, True, True, False]]) + wh_partial = np.array([[False], + [True], + [True], + [False], + [True]]) + _cases = [(0, True, [50., 50., 50., 50., 50.]), + (1, True, [2., 2., 2., 2., 2.])] + for _ax, _wh, _res in _cases: + assert_allclose(a.var(axis=_ax, where=_wh), + np.array(_res)) + assert_allclose(np.var(a, axis=_ax, where=_wh), + np.array(_res)) + + a3d = np.arange(16).reshape((2, 2, 4)) + _wh_partial = np.array([False, True, True, False]) + _res = [[0.25, 0.25], [0.25, 0.25]] + assert_allclose(a3d.var(axis=2, where=_wh_partial), + np.array(_res)) + assert_allclose(np.var(a3d, axis=2, where=_wh_partial), + np.array(_res)) + + assert_allclose(np.var(a, axis=1, where=wh_full), + np.var(a[wh_full].reshape((5, 3)), axis=1)) + assert_allclose(np.var(a, axis=0, where=wh_partial), + np.var(a[wh_partial[:,0]], axis=0)) + with pytest.warns(RuntimeWarning) as w: + assert_equal(a.var(where=False), np.nan) + with pytest.warns(RuntimeWarning) as w: + assert_equal(np.var(a, where=False), np.nan) + + def test_std_values(self): + for mat in [self.rmat, self.cmat, self.omat]: + for axis in [0, 1, None]: + tgt = np.sqrt(_var(mat, axis=axis)) + res = _std(mat, axis=axis) + assert_almost_equal(res, tgt) + + def test_std_where(self): + a = np.arange(25).reshape((5,5))[::-1] + whf = np.array([[False, True, False, True, True], + [True, False, True, False, True], + [True, True, False, True, False], + [True, False, True, True, False], + [False, True, False, True, True]]) + whp = np.array([[False], + [False], + [True], + [True], + [False]]) + _cases = [ + (0, True, 7.07106781*np.ones(5)), + (1, True, 1.41421356*np.ones(5)), + (0, whf, + np.array([4.0824829 , 8.16496581, 5., 7.39509973, 8.49836586])), + (0, whp, 2.5*np.ones(5)) + ] + for _ax, _wh, _res in _cases: + assert_allclose(a.std(axis=_ax, where=_wh), _res) + assert_allclose(np.std(a, axis=_ax, where=_wh), _res) + + a3d = np.arange(16).reshape((2, 2, 4)) + _wh_partial = np.array([False, True, True, False]) + _res = [[0.5, 0.5], [0.5, 0.5]] + assert_allclose(a3d.std(axis=2, where=_wh_partial), + np.array(_res)) + assert_allclose(np.std(a3d, axis=2, where=_wh_partial), + np.array(_res)) + + assert_allclose(a.std(axis=1, where=whf), + np.std(a[whf].reshape((5,3)), axis=1)) + assert_allclose(np.std(a, axis=1, where=whf), + (a[whf].reshape((5,3))).std(axis=1)) + assert_allclose(a.std(axis=0, where=whp), + np.std(a[whp[:,0]], axis=0)) + assert_allclose(np.std(a, axis=0, where=whp), + (a[whp[:,0]]).std(axis=0)) + with pytest.warns(RuntimeWarning) as w: + assert_equal(a.std(where=False), np.nan) + with pytest.warns(RuntimeWarning) as w: + assert_equal(np.std(a, where=False), np.nan) + + def test_subclass(self): + class TestArray(np.ndarray): + def __new__(cls, data, info): + result = np.array(data) + result = result.view(cls) + result.info = info + return result + + def __array_finalize__(self, obj): + self.info = getattr(obj, "info", '') + + dat = TestArray([[1, 2, 3, 4], [5, 6, 7, 8]], 'jubba') + res = dat.mean(1) + assert_(res.info == dat.info) + res = dat.std(1) + assert_(res.info == dat.info) + res = dat.var(1) + assert_(res.info == dat.info) + + +class TestVdot: + def test_basic(self): + dt_numeric = np.typecodes['AllFloat'] + np.typecodes['AllInteger'] + dt_complex = np.typecodes['Complex'] + + # test real + a = np.eye(3) + for dt in dt_numeric + 'O': + b = a.astype(dt) + res = np.vdot(b, b) + assert_(np.isscalar(res)) + assert_equal(np.vdot(b, b), 3) + + # test complex + a = np.eye(3) * 1j + for dt in dt_complex + 'O': + b = a.astype(dt) + res = np.vdot(b, b) + assert_(np.isscalar(res)) + assert_equal(np.vdot(b, b), 3) + + # test boolean + b = np.eye(3, dtype=bool) + res = np.vdot(b, b) + assert_(np.isscalar(res)) + assert_equal(np.vdot(b, b), True) + + def test_vdot_array_order(self): + a = np.array([[1, 2], [3, 4]], order='C') + b = np.array([[1, 2], [3, 4]], order='F') + res = np.vdot(a, a) + + # integer arrays are exact + assert_equal(np.vdot(a, b), res) + assert_equal(np.vdot(b, a), res) + assert_equal(np.vdot(b, b), res) + + def test_vdot_uncontiguous(self): + for size in [2, 1000]: + # Different sizes match different branches in vdot. + a = np.zeros((size, 2, 2)) + b = np.zeros((size, 2, 2)) + a[:, 0, 0] = np.arange(size) + b[:, 0, 0] = np.arange(size) + 1 + # Make a and b uncontiguous: + a = a[..., 0] + b = b[..., 0] + + assert_equal(np.vdot(a, b), + np.vdot(a.flatten(), b.flatten())) + assert_equal(np.vdot(a, b.copy()), + np.vdot(a.flatten(), b.flatten())) + assert_equal(np.vdot(a.copy(), b), + np.vdot(a.flatten(), b.flatten())) + assert_equal(np.vdot(a.copy('F'), b), + np.vdot(a.flatten(), b.flatten())) + assert_equal(np.vdot(a, b.copy('F')), + np.vdot(a.flatten(), b.flatten())) + + +class TestDot: + def setup_method(self): + np.random.seed(128) + self.A = np.random.rand(4, 2) + self.b1 = np.random.rand(2, 1) + self.b2 = np.random.rand(2) + self.b3 = np.random.rand(1, 2) + self.b4 = np.random.rand(4) + self.N = 7 + + def test_dotmatmat(self): + A = self.A + res = np.dot(A.transpose(), A) + tgt = np.array([[1.45046013, 0.86323640], + [0.86323640, 0.84934569]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotmatvec(self): + A, b1 = self.A, self.b1 + res = np.dot(A, b1) + tgt = np.array([[0.32114320], [0.04889721], + [0.15696029], [0.33612621]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotmatvec2(self): + A, b2 = self.A, self.b2 + res = np.dot(A, b2) + tgt = np.array([0.29677940, 0.04518649, 0.14468333, 0.31039293]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecmat(self): + A, b4 = self.A, self.b4 + res = np.dot(b4, A) + tgt = np.array([1.23495091, 1.12222648]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecmat2(self): + b3, A = self.b3, self.A + res = np.dot(b3, A.transpose()) + tgt = np.array([[0.58793804, 0.08957460, 0.30605758, 0.62716383]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecmat3(self): + A, b4 = self.A, self.b4 + res = np.dot(A.transpose(), b4) + tgt = np.array([1.23495091, 1.12222648]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecvecouter(self): + b1, b3 = self.b1, self.b3 + res = np.dot(b1, b3) + tgt = np.array([[0.20128610, 0.08400440], [0.07190947, 0.03001058]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecvecinner(self): + b1, b3 = self.b1, self.b3 + res = np.dot(b3, b1) + tgt = np.array([[ 0.23129668]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotcolumnvect1(self): + b1 = np.ones((3, 1)) + b2 = [5.3] + res = np.dot(b1, b2) + tgt = np.array([5.3, 5.3, 5.3]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotcolumnvect2(self): + b1 = np.ones((3, 1)).transpose() + b2 = [6.2] + res = np.dot(b2, b1) + tgt = np.array([6.2, 6.2, 6.2]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecscalar(self): + np.random.seed(100) + b1 = np.random.rand(1, 1) + b2 = np.random.rand(1, 4) + res = np.dot(b1, b2) + tgt = np.array([[0.15126730, 0.23068496, 0.45905553, 0.00256425]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_dotvecscalar2(self): + np.random.seed(100) + b1 = np.random.rand(4, 1) + b2 = np.random.rand(1, 1) + res = np.dot(b1, b2) + tgt = np.array([[0.00256425],[0.00131359],[0.00200324],[ 0.00398638]]) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_all(self): + dims = [(), (1,), (1, 1)] + dout = [(), (1,), (1, 1), (1,), (), (1,), (1, 1), (1,), (1, 1)] + for dim, (dim1, dim2) in zip(dout, itertools.product(dims, dims)): + b1 = np.zeros(dim1) + b2 = np.zeros(dim2) + res = np.dot(b1, b2) + tgt = np.zeros(dim) + assert_(res.shape == tgt.shape) + assert_almost_equal(res, tgt, decimal=self.N) + + def test_vecobject(self): + class Vec: + def __init__(self, sequence=None): + if sequence is None: + sequence = [] + self.array = np.array(sequence) + + def __add__(self, other): + out = Vec() + out.array = self.array + other.array + return out + + def __sub__(self, other): + out = Vec() + out.array = self.array - other.array + return out + + def __mul__(self, other): # with scalar + out = Vec(self.array.copy()) + out.array *= other + return out + + def __rmul__(self, other): + return self*other + + U_non_cont = np.transpose([[1., 1.], [1., 2.]]) + U_cont = np.ascontiguousarray(U_non_cont) + x = np.array([Vec([1., 0.]), Vec([0., 1.])]) + zeros = np.array([Vec([0., 0.]), Vec([0., 0.])]) + zeros_test = np.dot(U_cont, x) - np.dot(U_non_cont, x) + assert_equal(zeros[0].array, zeros_test[0].array) + assert_equal(zeros[1].array, zeros_test[1].array) + + def test_dot_2args(self): + + a = np.array([[1, 2], [3, 4]], dtype=float) + b = np.array([[1, 0], [1, 1]], dtype=float) + c = np.array([[3, 2], [7, 4]], dtype=float) + + d = dot(a, b) + assert_allclose(c, d) + + def test_dot_3args(self): + + np.random.seed(22) + f = np.random.random_sample((1024, 16)) + v = np.random.random_sample((16, 32)) + + r = np.empty((1024, 32)) + for i in range(12): + dot(f, v, r) + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(r), 2) + r2 = dot(f, v, out=None) + assert_array_equal(r2, r) + assert_(r is dot(f, v, out=r)) + + v = v[:, 0].copy() # v.shape == (16,) + r = r[:, 0].copy() # r.shape == (1024,) + r2 = dot(f, v) + assert_(r is dot(f, v, r)) + assert_array_equal(r2, r) + + def test_dot_3args_errors(self): + + np.random.seed(22) + f = np.random.random_sample((1024, 16)) + v = np.random.random_sample((16, 32)) + + r = np.empty((1024, 31)) + assert_raises(ValueError, dot, f, v, r) + + r = np.empty((1024,)) + assert_raises(ValueError, dot, f, v, r) + + r = np.empty((32,)) + assert_raises(ValueError, dot, f, v, r) + + r = np.empty((32, 1024)) + assert_raises(ValueError, dot, f, v, r) + assert_raises(ValueError, dot, f, v, r.T) + + r = np.empty((1024, 64)) + assert_raises(ValueError, dot, f, v, r[:, ::2]) + assert_raises(ValueError, dot, f, v, r[:, :32]) + + r = np.empty((1024, 32), dtype=np.float32) + assert_raises(ValueError, dot, f, v, r) + + r = np.empty((1024, 32), dtype=int) + assert_raises(ValueError, dot, f, v, r) + + def test_dot_out_result(self): + x = np.ones((), dtype=np.float16) + y = np.ones((5,), dtype=np.float16) + z = np.zeros((5,), dtype=np.float16) + res = x.dot(y, out=z) + assert np.array_equal(res, y) + assert np.array_equal(z, y) + + def test_dot_out_aliasing(self): + x = np.ones((), dtype=np.float16) + y = np.ones((5,), dtype=np.float16) + z = np.zeros((5,), dtype=np.float16) + res = x.dot(y, out=z) + z[0] = 2 + assert np.array_equal(res, z) + + def test_dot_array_order(self): + a = np.array([[1, 2], [3, 4]], order='C') + b = np.array([[1, 2], [3, 4]], order='F') + res = np.dot(a, a) + + # integer arrays are exact + assert_equal(np.dot(a, b), res) + assert_equal(np.dot(b, a), res) + assert_equal(np.dot(b, b), res) + + def test_accelerate_framework_sgemv_fix(self): + + def aligned_array(shape, align, dtype, order='C'): + d = dtype(0) + N = np.prod(shape) + tmp = np.zeros(N * d.nbytes + align, dtype=np.uint8) + address = tmp.__array_interface__["data"][0] + for offset in range(align): + if (address + offset) % align == 0: + break + tmp = tmp[offset:offset+N*d.nbytes].view(dtype=dtype) + return tmp.reshape(shape, order=order) + + def as_aligned(arr, align, dtype, order='C'): + aligned = aligned_array(arr.shape, align, dtype, order) + aligned[:] = arr[:] + return aligned + + def assert_dot_close(A, X, desired): + assert_allclose(np.dot(A, X), desired, rtol=1e-5, atol=1e-7) + + m = aligned_array(100, 15, np.float32) + s = aligned_array((100, 100), 15, np.float32) + np.dot(s, m) # this will always segfault if the bug is present + + testdata = itertools.product((15, 32), (10000,), (200, 89), ('C', 'F')) + for align, m, n, a_order in testdata: + # Calculation in double precision + A_d = np.random.rand(m, n) + X_d = np.random.rand(n) + desired = np.dot(A_d, X_d) + # Calculation with aligned single precision + A_f = as_aligned(A_d, align, np.float32, order=a_order) + X_f = as_aligned(X_d, align, np.float32) + assert_dot_close(A_f, X_f, desired) + # Strided A rows + A_d_2 = A_d[::2] + desired = np.dot(A_d_2, X_d) + A_f_2 = A_f[::2] + assert_dot_close(A_f_2, X_f, desired) + # Strided A columns, strided X vector + A_d_22 = A_d_2[:, ::2] + X_d_2 = X_d[::2] + desired = np.dot(A_d_22, X_d_2) + A_f_22 = A_f_2[:, ::2] + X_f_2 = X_f[::2] + assert_dot_close(A_f_22, X_f_2, desired) + # Check the strides are as expected + if a_order == 'F': + assert_equal(A_f_22.strides, (8, 8 * m)) + else: + assert_equal(A_f_22.strides, (8 * n, 8)) + assert_equal(X_f_2.strides, (8,)) + # Strides in A rows + cols only + X_f_2c = as_aligned(X_f_2, align, np.float32) + assert_dot_close(A_f_22, X_f_2c, desired) + # Strides just in A cols + A_d_12 = A_d[:, ::2] + desired = np.dot(A_d_12, X_d_2) + A_f_12 = A_f[:, ::2] + assert_dot_close(A_f_12, X_f_2c, desired) + # Strides in A cols and X + assert_dot_close(A_f_12, X_f_2, desired) + + @pytest.mark.slow + @pytest.mark.parametrize("dtype", [np.float64, np.complex128]) + @requires_memory(free_bytes=18e9) # complex case needs 18GiB+ + def test_huge_vectordot(self, dtype): + # Large vector multiplications are chunked with 32bit BLAS + # Test that the chunking does the right thing, see also gh-22262 + data = np.ones(2**30+100, dtype=dtype) + res = np.dot(data, data) + assert res == 2**30+100 + + def test_dtype_discovery_fails(self): + # See gh-14247, error checking was missing for failed dtype discovery + class BadObject: + def __array__(self, dtype=None, copy=None): + raise TypeError("just this tiny mint leaf") + + with pytest.raises(TypeError): + np.dot(BadObject(), BadObject()) + + with pytest.raises(TypeError): + np.dot(3.0, BadObject()) + + +class MatmulCommon: + """Common tests for '@' operator and numpy.matmul. + + """ + # Should work with these types. Will want to add + # "O" at some point + types = "?bhilqBHILQefdgFDGO" + + def test_exceptions(self): + dims = [ + ((1,), (2,)), # mismatched vector vector + ((2, 1,), (2,)), # mismatched matrix vector + ((2,), (1, 2)), # mismatched vector matrix + ((1, 2), (3, 1)), # mismatched matrix matrix + ((1,), ()), # vector scalar + ((), (1)), # scalar vector + ((1, 1), ()), # matrix scalar + ((), (1, 1)), # scalar matrix + ((2, 2, 1), (3, 1, 2)), # cannot broadcast + ] + + for dt, (dm1, dm2) in itertools.product(self.types, dims): + a = np.ones(dm1, dtype=dt) + b = np.ones(dm2, dtype=dt) + assert_raises(ValueError, self.matmul, a, b) + + def test_shapes(self): + dims = [ + ((1, 1), (2, 1, 1)), # broadcast first argument + ((2, 1, 1), (1, 1)), # broadcast second argument + ((2, 1, 1), (2, 1, 1)), # matrix stack sizes match + ] + + for dt, (dm1, dm2) in itertools.product(self.types, dims): + a = np.ones(dm1, dtype=dt) + b = np.ones(dm2, dtype=dt) + res = self.matmul(a, b) + assert_(res.shape == (2, 1, 1)) + + # vector vector returns scalars. + for dt in self.types: + a = np.ones((2,), dtype=dt) + b = np.ones((2,), dtype=dt) + c = self.matmul(a, b) + assert_(np.array(c).shape == ()) + + def test_result_types(self): + mat = np.ones((1,1)) + vec = np.ones((1,)) + for dt in self.types: + m = mat.astype(dt) + v = vec.astype(dt) + for arg in [(m, v), (v, m), (m, m)]: + res = self.matmul(*arg) + assert_(res.dtype == dt) + + # vector vector returns scalars + if dt != "O": + res = self.matmul(v, v) + assert_(type(res) is np.dtype(dt).type) + + def test_scalar_output(self): + vec1 = np.array([2]) + vec2 = np.array([3, 4]).reshape(1, -1) + tgt = np.array([6, 8]) + for dt in self.types[1:]: + v1 = vec1.astype(dt) + v2 = vec2.astype(dt) + res = self.matmul(v1, v2) + assert_equal(res, tgt) + res = self.matmul(v2.T, v1) + assert_equal(res, tgt) + + # boolean type + vec = np.array([True, True], dtype='?').reshape(1, -1) + res = self.matmul(vec[:, 0], vec) + assert_equal(res, True) + + def test_vector_vector_values(self): + vec1 = np.array([1, 2]) + vec2 = np.array([3, 4]).reshape(-1, 1) + tgt1 = np.array([11]) + tgt2 = np.array([[3, 6], [4, 8]]) + for dt in self.types[1:]: + v1 = vec1.astype(dt) + v2 = vec2.astype(dt) + res = self.matmul(v1, v2) + assert_equal(res, tgt1) + # no broadcast, we must make v1 into a 2d ndarray + res = self.matmul(v2, v1.reshape(1, -1)) + assert_equal(res, tgt2) + + # boolean type + vec = np.array([True, True], dtype='?') + res = self.matmul(vec, vec) + assert_equal(res, True) + + def test_vector_matrix_values(self): + vec = np.array([1, 2]) + mat1 = np.array([[1, 2], [3, 4]]) + mat2 = np.stack([mat1]*2, axis=0) + tgt1 = np.array([7, 10]) + tgt2 = np.stack([tgt1]*2, axis=0) + for dt in self.types[1:]: + v = vec.astype(dt) + m1 = mat1.astype(dt) + m2 = mat2.astype(dt) + res = self.matmul(v, m1) + assert_equal(res, tgt1) + res = self.matmul(v, m2) + assert_equal(res, tgt2) + + # boolean type + vec = np.array([True, False]) + mat1 = np.array([[True, False], [False, True]]) + mat2 = np.stack([mat1]*2, axis=0) + tgt1 = np.array([True, False]) + tgt2 = np.stack([tgt1]*2, axis=0) + + res = self.matmul(vec, mat1) + assert_equal(res, tgt1) + res = self.matmul(vec, mat2) + assert_equal(res, tgt2) + + def test_matrix_vector_values(self): + vec = np.array([1, 2]) + mat1 = np.array([[1, 2], [3, 4]]) + mat2 = np.stack([mat1]*2, axis=0) + tgt1 = np.array([5, 11]) + tgt2 = np.stack([tgt1]*2, axis=0) + for dt in self.types[1:]: + v = vec.astype(dt) + m1 = mat1.astype(dt) + m2 = mat2.astype(dt) + res = self.matmul(m1, v) + assert_equal(res, tgt1) + res = self.matmul(m2, v) + assert_equal(res, tgt2) + + # boolean type + vec = np.array([True, False]) + mat1 = np.array([[True, False], [False, True]]) + mat2 = np.stack([mat1]*2, axis=0) + tgt1 = np.array([True, False]) + tgt2 = np.stack([tgt1]*2, axis=0) + + res = self.matmul(vec, mat1) + assert_equal(res, tgt1) + res = self.matmul(vec, mat2) + assert_equal(res, tgt2) + + def test_matrix_matrix_values(self): + mat1 = np.array([[1, 2], [3, 4]]) + mat2 = np.array([[1, 0], [1, 1]]) + mat12 = np.stack([mat1, mat2], axis=0) + mat21 = np.stack([mat2, mat1], axis=0) + tgt11 = np.array([[7, 10], [15, 22]]) + tgt12 = np.array([[3, 2], [7, 4]]) + tgt21 = np.array([[1, 2], [4, 6]]) + tgt12_21 = np.stack([tgt12, tgt21], axis=0) + tgt11_12 = np.stack((tgt11, tgt12), axis=0) + tgt11_21 = np.stack((tgt11, tgt21), axis=0) + for dt in self.types[1:]: + m1 = mat1.astype(dt) + m2 = mat2.astype(dt) + m12 = mat12.astype(dt) + m21 = mat21.astype(dt) + + # matrix @ matrix + res = self.matmul(m1, m2) + assert_equal(res, tgt12) + res = self.matmul(m2, m1) + assert_equal(res, tgt21) + + # stacked @ matrix + res = self.matmul(m12, m1) + assert_equal(res, tgt11_21) + + # matrix @ stacked + res = self.matmul(m1, m12) + assert_equal(res, tgt11_12) + + # stacked @ stacked + res = self.matmul(m12, m21) + assert_equal(res, tgt12_21) + + # boolean type + m1 = np.array([[1, 1], [0, 0]], dtype=np.bool) + m2 = np.array([[1, 0], [1, 1]], dtype=np.bool) + m12 = np.stack([m1, m2], axis=0) + m21 = np.stack([m2, m1], axis=0) + tgt11 = m1 + tgt12 = m1 + tgt21 = np.array([[1, 1], [1, 1]], dtype=np.bool) + tgt12_21 = np.stack([tgt12, tgt21], axis=0) + tgt11_12 = np.stack((tgt11, tgt12), axis=0) + tgt11_21 = np.stack((tgt11, tgt21), axis=0) + + # matrix @ matrix + res = self.matmul(m1, m2) + assert_equal(res, tgt12) + res = self.matmul(m2, m1) + assert_equal(res, tgt21) + + # stacked @ matrix + res = self.matmul(m12, m1) + assert_equal(res, tgt11_21) + + # matrix @ stacked + res = self.matmul(m1, m12) + assert_equal(res, tgt11_12) + + # stacked @ stacked + res = self.matmul(m12, m21) + assert_equal(res, tgt12_21) + + +class TestMatmul(MatmulCommon): + matmul = np.matmul + + def test_out_arg(self): + a = np.ones((5, 2), dtype=float) + b = np.array([[1, 3], [5, 7]], dtype=float) + tgt = np.dot(a, b) + + # test as positional argument + msg = "out positional argument" + out = np.zeros((5, 2), dtype=float) + self.matmul(a, b, out) + assert_array_equal(out, tgt, err_msg=msg) + + # test as keyword argument + msg = "out keyword argument" + out = np.zeros((5, 2), dtype=float) + self.matmul(a, b, out=out) + assert_array_equal(out, tgt, err_msg=msg) + + # test out with not allowed type cast (safe casting) + msg = "Cannot cast ufunc .* output" + out = np.zeros((5, 2), dtype=np.int32) + assert_raises_regex(TypeError, msg, self.matmul, a, b, out=out) + + # test out with type upcast to complex + out = np.zeros((5, 2), dtype=np.complex128) + c = self.matmul(a, b, out=out) + assert_(c is out) + with suppress_warnings() as sup: + sup.filter(ComplexWarning, '') + c = c.astype(tgt.dtype) + assert_array_equal(c, tgt) + + def test_empty_out(self): + # Check that the output cannot be broadcast, so that it cannot be + # size zero when the outer dimensions (iterator size) has size zero. + arr = np.ones((0, 1, 1)) + out = np.ones((1, 1, 1)) + assert self.matmul(arr, arr).shape == (0, 1, 1) + + with pytest.raises(ValueError, match=r"non-broadcastable"): + self.matmul(arr, arr, out=out) + + def test_out_contiguous(self): + a = np.ones((5, 2), dtype=float) + b = np.array([[1, 3], [5, 7]], dtype=float) + v = np.array([1, 3], dtype=float) + tgt = np.dot(a, b) + tgt_mv = np.dot(a, v) + + # test out non-contiguous + out = np.ones((5, 2, 2), dtype=float) + c = self.matmul(a, b, out=out[..., 0]) + assert c.base is out + assert_array_equal(c, tgt) + c = self.matmul(a, v, out=out[:, 0, 0]) + assert_array_equal(c, tgt_mv) + c = self.matmul(v, a.T, out=out[:, 0, 0]) + assert_array_equal(c, tgt_mv) + + # test out contiguous in only last dim + out = np.ones((10, 2), dtype=float) + c = self.matmul(a, b, out=out[::2, :]) + assert_array_equal(c, tgt) + + # test transposes of out, args + out = np.ones((5, 2), dtype=float) + c = self.matmul(b.T, a.T, out=out.T) + assert_array_equal(out, tgt) + + m1 = np.arange(15.).reshape(5, 3) + m2 = np.arange(21.).reshape(3, 7) + m3 = np.arange(30.).reshape(5, 6)[:, ::2] # non-contiguous + vc = np.arange(10.) + vr = np.arange(6.) + m0 = np.zeros((3, 0)) + @pytest.mark.parametrize('args', ( + # matrix-matrix + (m1, m2), (m2.T, m1.T), (m2.T.copy(), m1.T), (m2.T, m1.T.copy()), + # matrix-matrix-transpose, contiguous and non + (m1, m1.T), (m1.T, m1), (m1, m3.T), (m3, m1.T), + (m3, m3.T), (m3.T, m3), + # matrix-matrix non-contiguous + (m3, m2), (m2.T, m3.T), (m2.T.copy(), m3.T), + # vector-matrix, matrix-vector, contiguous + (m1, vr[:3]), (vc[:5], m1), (m1.T, vc[:5]), (vr[:3], m1.T), + # vector-matrix, matrix-vector, vector non-contiguous + (m1, vr[::2]), (vc[::2], m1), (m1.T, vc[::2]), (vr[::2], m1.T), + # vector-matrix, matrix-vector, matrix non-contiguous + (m3, vr[:3]), (vc[:5], m3), (m3.T, vc[:5]), (vr[:3], m3.T), + # vector-matrix, matrix-vector, both non-contiguous + (m3, vr[::2]), (vc[::2], m3), (m3.T, vc[::2]), (vr[::2], m3.T), + # size == 0 + (m0, m0.T), (m0.T, m0), (m1, m0), (m0.T, m1.T), + )) + def test_dot_equivalent(self, args): + r1 = np.matmul(*args) + r2 = np.dot(*args) + assert_equal(r1, r2) + + r3 = np.matmul(args[0].copy(), args[1].copy()) + assert_equal(r1, r3) + + def test_matmul_object(self): + import fractions + + f = np.vectorize(fractions.Fraction) + def random_ints(): + return np.random.randint(1, 1000, size=(10, 3, 3)) + M1 = f(random_ints(), random_ints()) + M2 = f(random_ints(), random_ints()) + + M3 = self.matmul(M1, M2) + + [N1, N2, N3] = [a.astype(float) for a in [M1, M2, M3]] + + assert_allclose(N3, self.matmul(N1, N2)) + + def test_matmul_object_type_scalar(self): + from fractions import Fraction as F + v = np.array([F(2,3), F(5,7)]) + res = self.matmul(v, v) + assert_(type(res) is F) + + def test_matmul_empty(self): + a = np.empty((3, 0), dtype=object) + b = np.empty((0, 3), dtype=object) + c = np.zeros((3, 3)) + assert_array_equal(np.matmul(a, b), c) + + def test_matmul_exception_multiply(self): + # test that matmul fails if `__mul__` is missing + class add_not_multiply: + def __add__(self, other): + return self + a = np.full((3,3), add_not_multiply()) + with assert_raises(TypeError): + b = np.matmul(a, a) + + def test_matmul_exception_add(self): + # test that matmul fails if `__add__` is missing + class multiply_not_add: + def __mul__(self, other): + return self + a = np.full((3,3), multiply_not_add()) + with assert_raises(TypeError): + b = np.matmul(a, a) + + def test_matmul_bool(self): + # gh-14439 + a = np.array([[1, 0],[1, 1]], dtype=bool) + assert np.max(a.view(np.uint8)) == 1 + b = np.matmul(a, a) + # matmul with boolean output should always be 0, 1 + assert np.max(b.view(np.uint8)) == 1 + + rg = np.random.default_rng(np.random.PCG64(43)) + d = rg.integers(2, size=4*5, dtype=np.int8) + d = d.reshape(4, 5) > 0 + out1 = np.matmul(d, d.reshape(5, 4)) + out2 = np.dot(d, d.reshape(5, 4)) + assert_equal(out1, out2) + + c = np.matmul(np.zeros((2, 0), dtype=bool), np.zeros(0, dtype=bool)) + assert not np.any(c) + + +class TestMatmulOperator(MatmulCommon): + import operator + matmul = operator.matmul + + def test_array_priority_override(self): + + class A: + __array_priority__ = 1000 + + def __matmul__(self, other): + return "A" + + def __rmatmul__(self, other): + return "A" + + a = A() + b = np.ones(2) + assert_equal(self.matmul(a, b), "A") + assert_equal(self.matmul(b, a), "A") + + def test_matmul_raises(self): + assert_raises(TypeError, self.matmul, np.int8(5), np.int8(5)) + assert_raises(TypeError, self.matmul, np.void(b'abc'), np.void(b'abc')) + assert_raises(TypeError, self.matmul, np.arange(10), np.void(b'abc')) + + +class TestMatmulInplace: + DTYPES = {} + for i in MatmulCommon.types: + for j in MatmulCommon.types: + if np.can_cast(j, i): + DTYPES[f"{i}-{j}"] = (np.dtype(i), np.dtype(j)) + + @pytest.mark.parametrize("dtype1,dtype2", DTYPES.values(), ids=DTYPES) + def test_basic(self, dtype1: np.dtype, dtype2: np.dtype) -> None: + a = np.arange(10).reshape(5, 2).astype(dtype1) + a_id = id(a) + b = np.ones((2, 2), dtype=dtype2) + + ref = a @ b + a @= b + + assert id(a) == a_id + assert a.dtype == dtype1 + assert a.shape == (5, 2) + if dtype1.kind in "fc": + np.testing.assert_allclose(a, ref) + else: + np.testing.assert_array_equal(a, ref) + + SHAPES = { + "2d_large": ((10**5, 10), (10, 10)), + "3d_large": ((10**4, 10, 10), (1, 10, 10)), + "1d": ((3,), (3,)), + "2d_1d": ((3, 3), (3,)), + "1d_2d": ((3,), (3, 3)), + "2d_broadcast": ((3, 3), (3, 1)), + "2d_broadcast_reverse": ((1, 3), (3, 3)), + "3d_broadcast1": ((3, 3, 3), (1, 3, 1)), + "3d_broadcast2": ((3, 3, 3), (1, 3, 3)), + "3d_broadcast3": ((3, 3, 3), (3, 3, 1)), + "3d_broadcast_reverse1": ((1, 3, 3), (3, 3, 3)), + "3d_broadcast_reverse2": ((3, 1, 3), (3, 3, 3)), + "3d_broadcast_reverse3": ((1, 1, 3), (3, 3, 3)), + } + + @pytest.mark.parametrize("a_shape,b_shape", SHAPES.values(), ids=SHAPES) + def test_shapes(self, a_shape: tuple[int, ...], b_shape: tuple[int, ...]): + a_size = np.prod(a_shape) + a = np.arange(a_size).reshape(a_shape).astype(np.float64) + a_id = id(a) + + b_size = np.prod(b_shape) + b = np.arange(b_size).reshape(b_shape) + + ref = a @ b + if ref.shape != a_shape: + with pytest.raises(ValueError): + a @= b + return + else: + a @= b + + assert id(a) == a_id + assert a.dtype.type == np.float64 + assert a.shape == a_shape + np.testing.assert_allclose(a, ref) + + +def test_matmul_axes(): + a = np.arange(3*4*5).reshape(3, 4, 5) + c = np.matmul(a, a, axes=[(-2, -1), (-1, -2), (1, 2)]) + assert c.shape == (3, 4, 4) + d = np.matmul(a, a, axes=[(-2, -1), (-1, -2), (0, 1)]) + assert d.shape == (4, 4, 3) + e = np.swapaxes(d, 0, 2) + assert_array_equal(e, c) + f = np.matmul(a, np.arange(3), axes=[(1, 0), (0), (0)]) + assert f.shape == (4, 5) + + +class TestInner: + + def test_inner_type_mismatch(self): + c = 1. + A = np.array((1,1), dtype='i,i') + + assert_raises(TypeError, np.inner, c, A) + assert_raises(TypeError, np.inner, A, c) + + def test_inner_scalar_and_vector(self): + for dt in np.typecodes['AllInteger'] + np.typecodes['AllFloat'] + '?': + sca = np.array(3, dtype=dt)[()] + vec = np.array([1, 2], dtype=dt) + desired = np.array([3, 6], dtype=dt) + assert_equal(np.inner(vec, sca), desired) + assert_equal(np.inner(sca, vec), desired) + + def test_vecself(self): + # Ticket 844. + # Inner product of a vector with itself segfaults or give + # meaningless result + a = np.zeros(shape=(1, 80), dtype=np.float64) + p = np.inner(a, a) + assert_almost_equal(p, 0, decimal=14) + + def test_inner_product_with_various_contiguities(self): + # github issue 6532 + for dt in np.typecodes['AllInteger'] + np.typecodes['AllFloat'] + '?': + # check an inner product involving a matrix transpose + A = np.array([[1, 2], [3, 4]], dtype=dt) + B = np.array([[1, 3], [2, 4]], dtype=dt) + C = np.array([1, 1], dtype=dt) + desired = np.array([4, 6], dtype=dt) + assert_equal(np.inner(A.T, C), desired) + assert_equal(np.inner(C, A.T), desired) + assert_equal(np.inner(B, C), desired) + assert_equal(np.inner(C, B), desired) + # check a matrix product + desired = np.array([[7, 10], [15, 22]], dtype=dt) + assert_equal(np.inner(A, B), desired) + # check the syrk vs. gemm paths + desired = np.array([[5, 11], [11, 25]], dtype=dt) + assert_equal(np.inner(A, A), desired) + assert_equal(np.inner(A, A.copy()), desired) + # check an inner product involving an aliased and reversed view + a = np.arange(5).astype(dt) + b = a[::-1] + desired = np.array(10, dtype=dt).item() + assert_equal(np.inner(b, a), desired) + + def test_3d_tensor(self): + for dt in np.typecodes['AllInteger'] + np.typecodes['AllFloat'] + '?': + a = np.arange(24).reshape(2,3,4).astype(dt) + b = np.arange(24, 48).reshape(2,3,4).astype(dt) + desired = np.array( + [[[[ 158, 182, 206], + [ 230, 254, 278]], + + [[ 566, 654, 742], + [ 830, 918, 1006]], + + [[ 974, 1126, 1278], + [1430, 1582, 1734]]], + + [[[1382, 1598, 1814], + [2030, 2246, 2462]], + + [[1790, 2070, 2350], + [2630, 2910, 3190]], + + [[2198, 2542, 2886], + [3230, 3574, 3918]]]] + ).astype(dt) + assert_equal(np.inner(a, b), desired) + assert_equal(np.inner(b, a).transpose(2,3,0,1), desired) + + +class TestChoose: + def setup_method(self): + self.x = 2*np.ones((3,), dtype=int) + self.y = 3*np.ones((3,), dtype=int) + self.x2 = 2*np.ones((2, 3), dtype=int) + self.y2 = 3*np.ones((2, 3), dtype=int) + self.ind = [0, 0, 1] + + def test_basic(self): + A = np.choose(self.ind, (self.x, self.y)) + assert_equal(A, [2, 2, 3]) + + def test_broadcast1(self): + A = np.choose(self.ind, (self.x2, self.y2)) + assert_equal(A, [[2, 2, 3], [2, 2, 3]]) + + def test_broadcast2(self): + A = np.choose(self.ind, (self.x, self.y2)) + assert_equal(A, [[2, 2, 3], [2, 2, 3]]) + + @pytest.mark.parametrize("ops", + [(1000, np.array([1], dtype=np.uint8)), + (-1, np.array([1], dtype=np.uint8)), + (1., np.float32(3)), + (1., np.array([3], dtype=np.float32))],) + def test_output_dtype(self, ops): + expected_dt = np.result_type(*ops) + assert(np.choose([0], ops).dtype == expected_dt) + + def test_dimension_and_args_limit(self): + # Maxdims for the legacy iterator is 32, but the maximum number + # of arguments is actually larger (a itself also counts here) + a = np.ones((1,) * 32, dtype=np.intp) + res = a.choose([0, a] + [2] * 61) + with pytest.raises(ValueError, + match="Need at least 0 and at most 64 array objects"): + a.choose([0, a] + [2] * 62) + + assert_array_equal(res, a) + # Choose is unfortunately limited to 32 dims as of NumPy 2.0 + a = np.ones((1,) * 60, dtype=np.intp) + with pytest.raises(RuntimeError, + match=".*32 dimensions but the array has 60"): + a.choose([a, a]) + + +class TestRepeat: + def setup_method(self): + self.m = np.array([1, 2, 3, 4, 5, 6]) + self.m_rect = self.m.reshape((2, 3)) + + def test_basic(self): + A = np.repeat(self.m, [1, 3, 2, 1, 1, 2]) + assert_equal(A, [1, 2, 2, 2, 3, + 3, 4, 5, 6, 6]) + + def test_broadcast1(self): + A = np.repeat(self.m, 2) + assert_equal(A, [1, 1, 2, 2, 3, 3, + 4, 4, 5, 5, 6, 6]) + + def test_axis_spec(self): + A = np.repeat(self.m_rect, [2, 1], axis=0) + assert_equal(A, [[1, 2, 3], + [1, 2, 3], + [4, 5, 6]]) + + A = np.repeat(self.m_rect, [1, 3, 2], axis=1) + assert_equal(A, [[1, 2, 2, 2, 3, 3], + [4, 5, 5, 5, 6, 6]]) + + def test_broadcast2(self): + A = np.repeat(self.m_rect, 2, axis=0) + assert_equal(A, [[1, 2, 3], + [1, 2, 3], + [4, 5, 6], + [4, 5, 6]]) + + A = np.repeat(self.m_rect, 2, axis=1) + assert_equal(A, [[1, 1, 2, 2, 3, 3], + [4, 4, 5, 5, 6, 6]]) + + +# TODO: test for multidimensional +NEIGH_MODE = {'zero': 0, 'one': 1, 'constant': 2, 'circular': 3, 'mirror': 4} + + +@pytest.mark.parametrize('dt', [float, Decimal], ids=['float', 'object']) +class TestNeighborhoodIter: + # Simple, 2d tests + def test_simple2d(self, dt): + # Test zero and one padding for simple data type + x = np.array([[0, 1], [2, 3]], dtype=dt) + r = [np.array([[0, 0, 0], [0, 0, 1]], dtype=dt), + np.array([[0, 0, 0], [0, 1, 0]], dtype=dt), + np.array([[0, 0, 1], [0, 2, 3]], dtype=dt), + np.array([[0, 1, 0], [2, 3, 0]], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 0, -1, 1], x[0], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + r = [np.array([[1, 1, 1], [1, 0, 1]], dtype=dt), + np.array([[1, 1, 1], [0, 1, 1]], dtype=dt), + np.array([[1, 0, 1], [1, 2, 3]], dtype=dt), + np.array([[0, 1, 1], [2, 3, 1]], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 0, -1, 1], x[0], NEIGH_MODE['one']) + assert_array_equal(l, r) + + r = [np.array([[4, 4, 4], [4, 0, 1]], dtype=dt), + np.array([[4, 4, 4], [0, 1, 4]], dtype=dt), + np.array([[4, 0, 1], [4, 2, 3]], dtype=dt), + np.array([[0, 1, 4], [2, 3, 4]], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 0, -1, 1], 4, NEIGH_MODE['constant']) + assert_array_equal(l, r) + + # Test with start in the middle + r = [np.array([[4, 0, 1], [4, 2, 3]], dtype=dt), + np.array([[0, 1, 4], [2, 3, 4]], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 0, -1, 1], 4, NEIGH_MODE['constant'], 2) + assert_array_equal(l, r) + + def test_mirror2d(self, dt): + x = np.array([[0, 1], [2, 3]], dtype=dt) + r = [np.array([[0, 0, 1], [0, 0, 1]], dtype=dt), + np.array([[0, 1, 1], [0, 1, 1]], dtype=dt), + np.array([[0, 0, 1], [2, 2, 3]], dtype=dt), + np.array([[0, 1, 1], [2, 3, 3]], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 0, -1, 1], x[0], NEIGH_MODE['mirror']) + assert_array_equal(l, r) + + # Simple, 1d tests + def test_simple(self, dt): + # Test padding with constant values + x = np.linspace(1, 5, 5).astype(dt) + r = [[0, 1, 2], [1, 2, 3], [2, 3, 4], [3, 4, 5], [4, 5, 0]] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 1], x[0], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + r = [[1, 1, 2], [1, 2, 3], [2, 3, 4], [3, 4, 5], [4, 5, 1]] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 1], x[0], NEIGH_MODE['one']) + assert_array_equal(l, r) + + r = [[x[4], 1, 2], [1, 2, 3], [2, 3, 4], [3, 4, 5], [4, 5, x[4]]] + l = _multiarray_tests.test_neighborhood_iterator( + x, [-1, 1], x[4], NEIGH_MODE['constant']) + assert_array_equal(l, r) + + # Test mirror modes + def test_mirror(self, dt): + x = np.linspace(1, 5, 5).astype(dt) + r = np.array([[2, 1, 1, 2, 3], [1, 1, 2, 3, 4], [1, 2, 3, 4, 5], + [2, 3, 4, 5, 5], [3, 4, 5, 5, 4]], dtype=dt) + l = _multiarray_tests.test_neighborhood_iterator( + x, [-2, 2], x[1], NEIGH_MODE['mirror']) + assert_([i.dtype == dt for i in l]) + assert_array_equal(l, r) + + # Circular mode + def test_circular(self, dt): + x = np.linspace(1, 5, 5).astype(dt) + r = np.array([[4, 5, 1, 2, 3], [5, 1, 2, 3, 4], [1, 2, 3, 4, 5], + [2, 3, 4, 5, 1], [3, 4, 5, 1, 2]], dtype=dt) + l = _multiarray_tests.test_neighborhood_iterator( + x, [-2, 2], x[0], NEIGH_MODE['circular']) + assert_array_equal(l, r) + + +# Test stacking neighborhood iterators +class TestStackedNeighborhoodIter: + # Simple, 1d test: stacking 2 constant-padded neigh iterators + def test_simple_const(self): + dt = np.float64 + # Test zero and one padding for simple data type + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([0], dtype=dt), + np.array([0], dtype=dt), + np.array([1], dtype=dt), + np.array([2], dtype=dt), + np.array([3], dtype=dt), + np.array([0], dtype=dt), + np.array([0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-2, 4], NEIGH_MODE['zero'], [0, 0], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + r = [np.array([1, 0, 1], dtype=dt), + np.array([0, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 0], dtype=dt), + np.array([3, 0, 1], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [-1, 1], NEIGH_MODE['one']) + assert_array_equal(l, r) + + # 2nd simple, 1d test: stacking 2 neigh iterators, mixing const padding and + # mirror padding + def test_simple_mirror(self): + dt = np.float64 + # Stacking zero on top of mirror + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([0, 1, 1], dtype=dt), + np.array([1, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 3], dtype=dt), + np.array([3, 3, 0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['mirror'], [-1, 1], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([1, 0, 0], dtype=dt), + np.array([0, 0, 1], dtype=dt), + np.array([0, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [-2, 0], NEIGH_MODE['mirror']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero: 2nd + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([0, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 0], dtype=dt), + np.array([3, 0, 0], dtype=dt), + np.array([0, 0, 3], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [0, 2], NEIGH_MODE['mirror']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero: 3rd + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([1, 0, 0, 1, 2], dtype=dt), + np.array([0, 0, 1, 2, 3], dtype=dt), + np.array([0, 1, 2, 3, 0], dtype=dt), + np.array([1, 2, 3, 0, 0], dtype=dt), + np.array([2, 3, 0, 0, 3], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [-2, 2], NEIGH_MODE['mirror']) + assert_array_equal(l, r) + + # 3rd simple, 1d test: stacking 2 neigh iterators, mixing const padding and + # circular padding + def test_simple_circular(self): + dt = np.float64 + # Stacking zero on top of mirror + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([0, 3, 1], dtype=dt), + np.array([3, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 1], dtype=dt), + np.array([3, 1, 0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['circular'], [-1, 1], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([3, 0, 0], dtype=dt), + np.array([0, 0, 1], dtype=dt), + np.array([0, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [-2, 0], NEIGH_MODE['circular']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero: 2nd + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([0, 1, 2], dtype=dt), + np.array([1, 2, 3], dtype=dt), + np.array([2, 3, 0], dtype=dt), + np.array([3, 0, 0], dtype=dt), + np.array([0, 0, 1], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [0, 2], NEIGH_MODE['circular']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero: 3rd + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([3, 0, 0, 1, 2], dtype=dt), + np.array([0, 0, 1, 2, 3], dtype=dt), + np.array([0, 1, 2, 3, 0], dtype=dt), + np.array([1, 2, 3, 0, 0], dtype=dt), + np.array([2, 3, 0, 0, 1], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [-1, 3], NEIGH_MODE['zero'], [-2, 2], NEIGH_MODE['circular']) + assert_array_equal(l, r) + + # 4th simple, 1d test: stacking 2 neigh iterators, but with lower iterator + # being strictly within the array + def test_simple_strict_within(self): + dt = np.float64 + # Stacking zero on top of zero, first neighborhood strictly inside the + # array + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([1, 2, 3, 0], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [1, 1], NEIGH_MODE['zero'], [-1, 2], NEIGH_MODE['zero']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero, first neighborhood strictly inside the + # array + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([1, 2, 3, 3], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [1, 1], NEIGH_MODE['zero'], [-1, 2], NEIGH_MODE['mirror']) + assert_array_equal(l, r) + + # Stacking mirror on top of zero, first neighborhood strictly inside the + # array + x = np.array([1, 2, 3], dtype=dt) + r = [np.array([1, 2, 3, 1], dtype=dt)] + l = _multiarray_tests.test_neighborhood_iterator_oob( + x, [1, 1], NEIGH_MODE['zero'], [-1, 2], NEIGH_MODE['circular']) + assert_array_equal(l, r) + +class TestWarnings: + + def test_complex_warning(self): + x = np.array([1, 2]) + y = np.array([1-2j, 1+2j]) + + with warnings.catch_warnings(): + warnings.simplefilter("error", ComplexWarning) + assert_raises(ComplexWarning, x.__setitem__, slice(None), y) + assert_equal(x, [1, 2]) + + +class TestMinScalarType: + + def test_usigned_shortshort(self): + dt = np.min_scalar_type(2**8-1) + wanted = np.dtype('uint8') + assert_equal(wanted, dt) + + def test_usigned_short(self): + dt = np.min_scalar_type(2**16-1) + wanted = np.dtype('uint16') + assert_equal(wanted, dt) + + def test_usigned_int(self): + dt = np.min_scalar_type(2**32-1) + wanted = np.dtype('uint32') + assert_equal(wanted, dt) + + def test_usigned_longlong(self): + dt = np.min_scalar_type(2**63-1) + wanted = np.dtype('uint64') + assert_equal(wanted, dt) + + def test_object(self): + dt = np.min_scalar_type(2**64) + wanted = np.dtype('O') + assert_equal(wanted, dt) + + +from numpy._core._internal import _dtype_from_pep3118 + + +class TestPEP3118Dtype: + def _check(self, spec, wanted): + dt = np.dtype(wanted) + actual = _dtype_from_pep3118(spec) + assert_equal(actual, dt, + err_msg="spec %r != dtype %r" % (spec, wanted)) + + def test_native_padding(self): + align = np.dtype('i').alignment + for j in range(8): + if j == 0: + s = 'bi' + else: + s = 'b%dxi' % j + self._check('@'+s, {'f0': ('i1', 0), + 'f1': ('i', align*(1 + j//align))}) + self._check('='+s, {'f0': ('i1', 0), + 'f1': ('i', 1+j)}) + + def test_native_padding_2(self): + # Native padding should work also for structs and sub-arrays + self._check('x3T{xi}', {'f0': (({'f0': ('i', 4)}, (3,)), 4)}) + self._check('^x3T{xi}', {'f0': (({'f0': ('i', 1)}, (3,)), 1)}) + + def test_trailing_padding(self): + # Trailing padding should be included, *and*, the item size + # should match the alignment if in aligned mode + align = np.dtype('i').alignment + size = np.dtype('i').itemsize + + def aligned(n): + return align*(1 + (n-1)//align) + + base = dict(formats=['i'], names=['f0']) + + self._check('ix', dict(itemsize=aligned(size + 1), **base)) + self._check('ixx', dict(itemsize=aligned(size + 2), **base)) + self._check('ixxx', dict(itemsize=aligned(size + 3), **base)) + self._check('ixxxx', dict(itemsize=aligned(size + 4), **base)) + self._check('i7x', dict(itemsize=aligned(size + 7), **base)) + + self._check('^ix', dict(itemsize=size + 1, **base)) + self._check('^ixx', dict(itemsize=size + 2, **base)) + self._check('^ixxx', dict(itemsize=size + 3, **base)) + self._check('^ixxxx', dict(itemsize=size + 4, **base)) + self._check('^i7x', dict(itemsize=size + 7, **base)) + + def test_native_padding_3(self): + dt = np.dtype( + [('a', 'b'), ('b', 'i'), + ('sub', np.dtype('b,i')), ('c', 'i')], + align=True) + self._check("T{b:a:xxxi:b:T{b:f0:=i:f1:}:sub:xxxi:c:}", dt) + + dt = np.dtype( + [('a', 'b'), ('b', 'i'), ('c', 'b'), ('d', 'b'), + ('e', 'b'), ('sub', np.dtype('b,i', align=True))]) + self._check("T{b:a:=i:b:b:c:b:d:b:e:T{b:f0:xxxi:f1:}:sub:}", dt) + + def test_padding_with_array_inside_struct(self): + dt = np.dtype( + [('a', 'b'), ('b', 'i'), ('c', 'b', (3,)), + ('d', 'i')], + align=True) + self._check("T{b:a:xxxi:b:3b:c:xi:d:}", dt) + + def test_byteorder_inside_struct(self): + # The byte order after @T{=i} should be '=', not '@'. + # Check this by noting the absence of native alignment. + self._check('@T{^i}xi', {'f0': ({'f0': ('i', 0)}, 0), + 'f1': ('i', 5)}) + + def test_intra_padding(self): + # Natively aligned sub-arrays may require some internal padding + align = np.dtype('i').alignment + size = np.dtype('i').itemsize + + def aligned(n): + return (align*(1 + (n-1)//align)) + + self._check('(3)T{ix}', (dict( + names=['f0'], + formats=['i'], + offsets=[0], + itemsize=aligned(size + 1) + ), (3,))) + + def test_char_vs_string(self): + dt = np.dtype('c') + self._check('c', dt) + + dt = np.dtype([('f0', 'S1', (4,)), ('f1', 'S4')]) + self._check('4c4s', dt) + + def test_field_order(self): + # gh-9053 - previously, we relied on dictionary key order + self._check("(0)I:a:f:b:", [('a', 'I', (0,)), ('b', 'f')]) + self._check("(0)I:b:f:a:", [('b', 'I', (0,)), ('a', 'f')]) + + def test_unnamed_fields(self): + self._check('ii', [('f0', 'i'), ('f1', 'i')]) + self._check('ii:f0:', [('f1', 'i'), ('f0', 'i')]) + + self._check('i', 'i') + self._check('i:f0:', [('f0', 'i')]) + + +class TestNewBufferProtocol: + """ Test PEP3118 buffers """ + + def _check_roundtrip(self, obj): + obj = np.asarray(obj) + x = memoryview(obj) + y = np.asarray(x) + y2 = np.array(x) + assert_(not y.flags.owndata) + assert_(y2.flags.owndata) + + assert_equal(y.dtype, obj.dtype) + assert_equal(y.shape, obj.shape) + assert_array_equal(obj, y) + + assert_equal(y2.dtype, obj.dtype) + assert_equal(y2.shape, obj.shape) + assert_array_equal(obj, y2) + + def test_roundtrip(self): + x = np.array([1, 2, 3, 4, 5], dtype='i4') + self._check_roundtrip(x) + + x = np.array([[1, 2], [3, 4]], dtype=np.float64) + self._check_roundtrip(x) + + x = np.zeros((3, 3, 3), dtype=np.float32)[:, 0,:] + self._check_roundtrip(x) + + dt = [('a', 'b'), + ('b', 'h'), + ('c', 'i'), + ('d', 'l'), + ('dx', 'q'), + ('e', 'B'), + ('f', 'H'), + ('g', 'I'), + ('h', 'L'), + ('hx', 'Q'), + ('i', np.single), + ('j', np.double), + ('k', np.longdouble), + ('ix', np.csingle), + ('jx', np.cdouble), + ('kx', np.clongdouble), + ('l', 'S4'), + ('m', 'U4'), + ('n', 'V3'), + ('o', '?'), + ('p', np.half), + ] + x = np.array( + [(1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, + b'aaaa', 'bbbb', b'xxx', True, 1.0)], + dtype=dt) + self._check_roundtrip(x) + + x = np.array(([[1, 2], [3, 4]],), dtype=[('a', (int, (2, 2)))]) + self._check_roundtrip(x) + + x = np.array([1, 2, 3], dtype='>i2') + self._check_roundtrip(x) + + x = np.array([1, 2, 3], dtype='') + x = np.zeros(4, dtype=dt) + self._check_roundtrip(x) + + def test_roundtrip_scalar(self): + # Issue #4015. + self._check_roundtrip(0) + + def test_invalid_buffer_format(self): + # datetime64 cannot be used fully in a buffer yet + # Should be fixed in the next Numpy major release + dt = np.dtype([('a', 'uint16'), ('b', 'M8[s]')]) + a = np.empty(3, dt) + assert_raises((ValueError, BufferError), memoryview, a) + assert_raises((ValueError, BufferError), memoryview, np.array((3), 'M8[D]')) + + def test_export_simple_1d(self): + x = np.array([1, 2, 3, 4, 5], dtype='i') + y = memoryview(x) + assert_equal(y.format, 'i') + assert_equal(y.shape, (5,)) + assert_equal(y.ndim, 1) + assert_equal(y.strides, (4,)) + assert_equal(y.suboffsets, ()) + assert_equal(y.itemsize, 4) + + def test_export_simple_nd(self): + x = np.array([[1, 2], [3, 4]], dtype=np.float64) + y = memoryview(x) + assert_equal(y.format, 'd') + assert_equal(y.shape, (2, 2)) + assert_equal(y.ndim, 2) + assert_equal(y.strides, (16, 8)) + assert_equal(y.suboffsets, ()) + assert_equal(y.itemsize, 8) + + def test_export_discontiguous(self): + x = np.zeros((3, 3, 3), dtype=np.float32)[:, 0,:] + y = memoryview(x) + assert_equal(y.format, 'f') + assert_equal(y.shape, (3, 3)) + assert_equal(y.ndim, 2) + assert_equal(y.strides, (36, 4)) + assert_equal(y.suboffsets, ()) + assert_equal(y.itemsize, 4) + + def test_export_record(self): + dt = [('a', 'b'), + ('b', 'h'), + ('c', 'i'), + ('d', 'l'), + ('dx', 'q'), + ('e', 'B'), + ('f', 'H'), + ('g', 'I'), + ('h', 'L'), + ('hx', 'Q'), + ('i', np.single), + ('j', np.double), + ('k', np.longdouble), + ('ix', np.csingle), + ('jx', np.cdouble), + ('kx', np.clongdouble), + ('l', 'S4'), + ('m', 'U4'), + ('n', 'V3'), + ('o', '?'), + ('p', np.half), + ] + x = np.array( + [(1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, + b'aaaa', 'bbbb', b' ', True, 1.0)], + dtype=dt) + y = memoryview(x) + assert_equal(y.shape, (1,)) + assert_equal(y.ndim, 1) + assert_equal(y.suboffsets, ()) + + sz = sum([np.dtype(b).itemsize for a, b in dt]) + if np.dtype('l').itemsize == 4: + assert_equal(y.format, 'T{b:a:=h:b:i:c:l:d:q:dx:B:e:@H:f:=I:g:L:h:Q:hx:f:i:d:j:^g:k:=Zf:ix:Zd:jx:^Zg:kx:4s:l:=4w:m:3x:n:?:o:@e:p:}') + else: + assert_equal(y.format, 'T{b:a:=h:b:i:c:q:d:q:dx:B:e:@H:f:=I:g:Q:h:Q:hx:f:i:d:j:^g:k:=Zf:ix:Zd:jx:^Zg:kx:4s:l:=4w:m:3x:n:?:o:@e:p:}') + assert_equal(y.strides, (sz,)) + assert_equal(y.itemsize, sz) + + def test_export_subarray(self): + x = np.array(([[1, 2], [3, 4]],), dtype=[('a', ('i', (2, 2)))]) + y = memoryview(x) + assert_equal(y.format, 'T{(2,2)i:a:}') + assert_equal(y.shape, ()) + assert_equal(y.ndim, 0) + assert_equal(y.strides, ()) + assert_equal(y.suboffsets, ()) + assert_equal(y.itemsize, 16) + + def test_export_endian(self): + x = np.array([1, 2, 3], dtype='>i') + y = memoryview(x) + if sys.byteorder == 'little': + assert_equal(y.format, '>i') + else: + assert_equal(y.format, 'i') + + x = np.array([1, 2, 3], dtype=' np.array(0, dtype=dt1), "type %s failed" % (dt1,)) + assert_(not 1 < np.array(0, dtype=dt1), "type %s failed" % (dt1,)) + + for dt2 in np.typecodes['AllInteger']: + assert_(np.array(1, dtype=dt1) > np.array(0, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1) < np.array(0, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + + # Unsigned integers + for dt1 in 'BHILQP': + assert_(-1 < np.array(1, dtype=dt1), "type %s failed" % (dt1,)) + assert_(not -1 > np.array(1, dtype=dt1), "type %s failed" % (dt1,)) + assert_(-1 != np.array(1, dtype=dt1), "type %s failed" % (dt1,)) + + # Unsigned vs signed + for dt2 in 'bhilqp': + assert_(np.array(1, dtype=dt1) > np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1) < np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + assert_(np.array(1, dtype=dt1) != np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + + # Signed integers and floats + for dt1 in 'bhlqp' + np.typecodes['Float']: + assert_(1 > np.array(-1, dtype=dt1), "type %s failed" % (dt1,)) + assert_(not 1 < np.array(-1, dtype=dt1), "type %s failed" % (dt1,)) + assert_(-1 == np.array(-1, dtype=dt1), "type %s failed" % (dt1,)) + + for dt2 in 'bhlqp' + np.typecodes['Float']: + assert_(np.array(1, dtype=dt1) > np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1) < np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + assert_(np.array(-1, dtype=dt1) == np.array(-1, dtype=dt2), + "type %s and %s failed" % (dt1, dt2)) + + def test_to_bool_scalar(self): + assert_equal(bool(np.array([False])), False) + assert_equal(bool(np.array([True])), True) + assert_equal(bool(np.array([[42]])), True) + + def test_to_bool_scalar_not_convertible(self): + + class NotConvertible: + def __bool__(self): + raise NotImplementedError + + assert_raises(NotImplementedError, bool, np.array(NotConvertible())) + assert_raises(NotImplementedError, bool, np.array([NotConvertible()])) + if IS_PYSTON: + pytest.skip("Pyston disables recursion checking") + + self_containing = np.array([None]) + self_containing[0] = self_containing + + Error = RecursionError + + assert_raises(Error, bool, self_containing) # previously stack overflow + self_containing[0] = None # resolve circular reference + + def test_to_bool_scalar_size_errors(self): + with pytest.raises(ValueError, match=".*one element is ambiguous"): + bool(np.array([1, 2])) + + with pytest.raises(ValueError, match=".*empty array is ambiguous"): + bool(np.empty((3, 0))) + + with pytest.raises(ValueError, match=".*empty array is ambiguous"): + bool(np.empty((0,))) + + def test_to_int_scalar(self): + # gh-9972 means that these aren't always the same + int_funcs = (int, lambda x: x.__int__()) + for int_func in int_funcs: + assert_equal(int_func(np.array(0)), 0) + with assert_warns(DeprecationWarning): + assert_equal(int_func(np.array([1])), 1) + with assert_warns(DeprecationWarning): + assert_equal(int_func(np.array([[42]])), 42) + assert_raises(TypeError, int_func, np.array([1, 2])) + + # gh-9972 + assert_equal(4, int_func(np.array('4'))) + assert_equal(5, int_func(np.bytes_(b'5'))) + assert_equal(6, int_func(np.str_('6'))) + + # The delegation of int() to __trunc__ was deprecated in + # Python 3.11. + if sys.version_info < (3, 11): + class HasTrunc: + def __trunc__(self): + return 3 + assert_equal(3, int_func(np.array(HasTrunc()))) + with assert_warns(DeprecationWarning): + assert_equal(3, int_func(np.array([HasTrunc()]))) + else: + pass + + class NotConvertible: + def __int__(self): + raise NotImplementedError + assert_raises(NotImplementedError, + int_func, np.array(NotConvertible())) + with assert_warns(DeprecationWarning): + assert_raises(NotImplementedError, + int_func, np.array([NotConvertible()])) + + +class TestWhere: + def test_basic(self): + dts = [bool, np.int16, np.int32, np.int64, np.double, np.complex128, + np.longdouble, np.clongdouble] + for dt in dts: + c = np.ones(53, dtype=bool) + assert_equal(np.where( c, dt(0), dt(1)), dt(0)) + assert_equal(np.where(~c, dt(0), dt(1)), dt(1)) + assert_equal(np.where(True, dt(0), dt(1)), dt(0)) + assert_equal(np.where(False, dt(0), dt(1)), dt(1)) + d = np.ones_like(c).astype(dt) + e = np.zeros_like(d) + r = d.astype(dt) + c[7] = False + r[7] = e[7] + assert_equal(np.where(c, e, e), e) + assert_equal(np.where(c, d, e), r) + assert_equal(np.where(c, d, e[0]), r) + assert_equal(np.where(c, d[0], e), r) + assert_equal(np.where(c[::2], d[::2], e[::2]), r[::2]) + assert_equal(np.where(c[1::2], d[1::2], e[1::2]), r[1::2]) + assert_equal(np.where(c[::3], d[::3], e[::3]), r[::3]) + assert_equal(np.where(c[1::3], d[1::3], e[1::3]), r[1::3]) + assert_equal(np.where(c[::-2], d[::-2], e[::-2]), r[::-2]) + assert_equal(np.where(c[::-3], d[::-3], e[::-3]), r[::-3]) + assert_equal(np.where(c[1::-3], d[1::-3], e[1::-3]), r[1::-3]) + + @pytest.mark.skipif(IS_WASM, reason="no wasm fp exception support") + def test_exotic(self): + # object + assert_array_equal(np.where(True, None, None), np.array(None)) + # zero sized + m = np.array([], dtype=bool).reshape(0, 3) + b = np.array([], dtype=np.float64).reshape(0, 3) + assert_array_equal(np.where(m, 0, b), np.array([]).reshape(0, 3)) + + # object cast + d = np.array([-1.34, -0.16, -0.54, -0.31, -0.08, -0.95, 0.000, 0.313, + 0.547, -0.18, 0.876, 0.236, 1.969, 0.310, 0.699, 1.013, + 1.267, 0.229, -1.39, 0.487]) + nan = float('NaN') + e = np.array(['5z', '0l', nan, 'Wz', nan, nan, 'Xq', 'cs', nan, nan, + 'QN', nan, nan, 'Fd', nan, nan, 'kp', nan, '36', 'i1'], + dtype=object) + m = np.array([0, 0, 1, 0, 1, 1, 0, 0, 1, 1, + 0, 1, 1, 0, 1, 1, 0, 1, 0, 0], dtype=bool) + + r = e[:] + r[np.where(m)] = d[np.where(m)] + assert_array_equal(np.where(m, d, e), r) + + r = e[:] + r[np.where(~m)] = d[np.where(~m)] + assert_array_equal(np.where(m, e, d), r) + + assert_array_equal(np.where(m, e, e), e) + + # minimal dtype result with NaN scalar (e.g required by pandas) + d = np.array([1., 2.], dtype=np.float32) + e = float('NaN') + assert_equal(np.where(True, d, e).dtype, np.float32) + e = float('Infinity') + assert_equal(np.where(True, d, e).dtype, np.float32) + e = float('-Infinity') + assert_equal(np.where(True, d, e).dtype, np.float32) + # With NEP 50 adopted, the float will overflow here: + e = float(1e150) + with pytest.warns(RuntimeWarning, match="overflow"): + res = np.where(True, d, e) + assert res.dtype == np.float32 + + def test_ndim(self): + c = [True, False] + a = np.zeros((2, 25)) + b = np.ones((2, 25)) + r = np.where(np.array(c)[:,np.newaxis], a, b) + assert_array_equal(r[0], a[0]) + assert_array_equal(r[1], b[0]) + + a = a.T + b = b.T + r = np.where(c, a, b) + assert_array_equal(r[:,0], a[:,0]) + assert_array_equal(r[:,1], b[:,0]) + + def test_dtype_mix(self): + c = np.array([False, True, False, False, False, False, True, False, + False, False, True, False]) + a = np.uint32(1) + b = np.array([5., 0., 3., 2., -1., -4., 0., -10., 10., 1., 0., 3.], + dtype=np.float64) + r = np.array([5., 1., 3., 2., -1., -4., 1., -10., 10., 1., 1., 3.], + dtype=np.float64) + assert_equal(np.where(c, a, b), r) + + a = a.astype(np.float32) + b = b.astype(np.int64) + assert_equal(np.where(c, a, b), r) + + # non bool mask + c = c.astype(int) + c[c != 0] = 34242324 + assert_equal(np.where(c, a, b), r) + # invert + tmpmask = c != 0 + c[c == 0] = 41247212 + c[tmpmask] = 0 + assert_equal(np.where(c, b, a), r) + + def test_foreign(self): + c = np.array([False, True, False, False, False, False, True, False, + False, False, True, False]) + r = np.array([5., 1., 3., 2., -1., -4., 1., -10., 10., 1., 1., 3.], + dtype=np.float64) + a = np.ones(1, dtype='>i4') + b = np.array([5., 0., 3., 2., -1., -4., 0., -10., 10., 1., 0., 3.], + dtype=np.float64) + assert_equal(np.where(c, a, b), r) + + b = b.astype('>f8') + assert_equal(np.where(c, a, b), r) + + a = a.astype('i4') + assert_equal(np.where(c, a, b), r) + + def test_error(self): + c = [True, True] + a = np.ones((4, 5)) + b = np.ones((5, 5)) + assert_raises(ValueError, np.where, c, a, a) + assert_raises(ValueError, np.where, c[0], a, b) + + def test_string(self): + # gh-4778 check strings are properly filled with nulls + a = np.array("abc") + b = np.array("x" * 753) + assert_equal(np.where(True, a, b), "abc") + assert_equal(np.where(False, b, a), "abc") + + # check native datatype sized strings + a = np.array("abcd") + b = np.array("x" * 8) + assert_equal(np.where(True, a, b), "abcd") + assert_equal(np.where(False, b, a), "abcd") + + def test_empty_result(self): + # pass empty where result through an assignment which reads the data of + # empty arrays, error detectable with valgrind, see gh-8922 + x = np.zeros((1, 1)) + ibad = np.vstack(np.where(x == 99.)) + assert_array_equal(ibad, + np.atleast_2d(np.array([[],[]], dtype=np.intp))) + + def test_largedim(self): + # invalid read regression gh-9304 + shape = [10, 2, 3, 4, 5, 6] + np.random.seed(2) + array = np.random.rand(*shape) + + for i in range(10): + benchmark = array.nonzero() + result = array.nonzero() + assert_array_equal(benchmark, result) + + def test_kwargs(self): + a = np.zeros(1) + with assert_raises(TypeError): + np.where(a, x=a, y=a) + + +if not IS_PYPY: + # sys.getsizeof() is not valid on PyPy + class TestSizeOf: + + def test_empty_array(self): + x = np.array([]) + assert_(sys.getsizeof(x) > 0) + + def check_array(self, dtype): + elem_size = dtype(0).itemsize + + for length in [10, 50, 100, 500]: + x = np.arange(length, dtype=dtype) + assert_(sys.getsizeof(x) > length * elem_size) + + def test_array_int32(self): + self.check_array(np.int32) + + def test_array_int64(self): + self.check_array(np.int64) + + def test_array_float32(self): + self.check_array(np.float32) + + def test_array_float64(self): + self.check_array(np.float64) + + def test_view(self): + d = np.ones(100) + assert_(sys.getsizeof(d[...]) < sys.getsizeof(d)) + + def test_reshape(self): + d = np.ones(100) + assert_(sys.getsizeof(d) < sys.getsizeof(d.reshape(100, 1, 1).copy())) + + @_no_tracing + def test_resize(self): + d = np.ones(100) + old = sys.getsizeof(d) + d.resize(50) + assert_(old > sys.getsizeof(d)) + d.resize(150) + assert_(old < sys.getsizeof(d)) + + @pytest.mark.parametrize("dtype", ["u4,f4", "u4,O"]) + def test_resize_structured(self, dtype): + a = np.array([(0, 0.0) for i in range(5)], dtype=dtype) + a.resize(1000) + assert_array_equal(a, np.zeros(1000, dtype=dtype)) + + def test_error(self): + d = np.ones(100) + assert_raises(TypeError, d.__sizeof__, "a") + + +class TestHashing: + + def test_arrays_not_hashable(self): + x = np.ones(3) + assert_raises(TypeError, hash, x) + + def test_collections_hashable(self): + x = np.array([]) + assert_(not isinstance(x, collections.abc.Hashable)) + + +class TestArrayPriority: + # This will go away when __array_priority__ is settled, meanwhile + # it serves to check unintended changes. + op = operator + binary_ops = [ + op.pow, op.add, op.sub, op.mul, op.floordiv, op.truediv, op.mod, + op.and_, op.or_, op.xor, op.lshift, op.rshift, op.mod, op.gt, + op.ge, op.lt, op.le, op.ne, op.eq + ] + + class Foo(np.ndarray): + __array_priority__ = 100. + + def __new__(cls, *args, **kwargs): + return np.array(*args, **kwargs).view(cls) + + class Bar(np.ndarray): + __array_priority__ = 101. + + def __new__(cls, *args, **kwargs): + return np.array(*args, **kwargs).view(cls) + + class Other: + __array_priority__ = 1000. + + def _all(self, other): + return self.__class__() + + __add__ = __radd__ = _all + __sub__ = __rsub__ = _all + __mul__ = __rmul__ = _all + __pow__ = __rpow__ = _all + __div__ = __rdiv__ = _all + __mod__ = __rmod__ = _all + __truediv__ = __rtruediv__ = _all + __floordiv__ = __rfloordiv__ = _all + __and__ = __rand__ = _all + __xor__ = __rxor__ = _all + __or__ = __ror__ = _all + __lshift__ = __rlshift__ = _all + __rshift__ = __rrshift__ = _all + __eq__ = _all + __ne__ = _all + __gt__ = _all + __ge__ = _all + __lt__ = _all + __le__ = _all + + def test_ndarray_subclass(self): + a = np.array([1, 2]) + b = self.Bar([1, 2]) + for f in self.binary_ops: + msg = repr(f) + assert_(isinstance(f(a, b), self.Bar), msg) + assert_(isinstance(f(b, a), self.Bar), msg) + + def test_ndarray_other(self): + a = np.array([1, 2]) + b = self.Other() + for f in self.binary_ops: + msg = repr(f) + assert_(isinstance(f(a, b), self.Other), msg) + assert_(isinstance(f(b, a), self.Other), msg) + + def test_subclass_subclass(self): + a = self.Foo([1, 2]) + b = self.Bar([1, 2]) + for f in self.binary_ops: + msg = repr(f) + assert_(isinstance(f(a, b), self.Bar), msg) + assert_(isinstance(f(b, a), self.Bar), msg) + + def test_subclass_other(self): + a = self.Foo([1, 2]) + b = self.Other() + for f in self.binary_ops: + msg = repr(f) + assert_(isinstance(f(a, b), self.Other), msg) + assert_(isinstance(f(b, a), self.Other), msg) + + +class TestBytestringArrayNonzero: + + def test_empty_bstring_array_is_falsey(self): + assert_(not np.array([''], dtype=str)) + + def test_whitespace_bstring_array_is_truthy(self): + a = np.array(['spam'], dtype=str) + a[0] = ' \0\0' + assert_(a) + + def test_all_null_bstring_array_is_falsey(self): + a = np.array(['spam'], dtype=str) + a[0] = '\0\0\0\0' + assert_(not a) + + def test_null_inside_bstring_array_is_truthy(self): + a = np.array(['spam'], dtype=str) + a[0] = ' \0 \0' + assert_(a) + + +class TestUnicodeEncoding: + """ + Tests for encoding related bugs, such as UCS2 vs UCS4, round-tripping + issues, etc + """ + def test_round_trip(self): + """ Tests that GETITEM, SETITEM, and PyArray_Scalar roundtrip """ + # gh-15363 + arr = np.zeros(shape=(), dtype="U1") + for i in range(1, sys.maxunicode + 1): + expected = chr(i) + arr[()] = expected + assert arr[()] == expected + assert arr.item() == expected + + def test_assign_scalar(self): + # gh-3258 + l = np.array(['aa', 'bb']) + l[:] = np.str_('cc') + assert_equal(l, ['cc', 'cc']) + + def test_fill_scalar(self): + # gh-7227 + l = np.array(['aa', 'bb']) + l.fill(np.str_('cc')) + assert_equal(l, ['cc', 'cc']) + + +class TestUnicodeArrayNonzero: + + def test_empty_ustring_array_is_falsey(self): + assert_(not np.array([''], dtype=np.str_)) + + def test_whitespace_ustring_array_is_truthy(self): + a = np.array(['eggs'], dtype=np.str_) + a[0] = ' \0\0' + assert_(a) + + def test_all_null_ustring_array_is_falsey(self): + a = np.array(['eggs'], dtype=np.str_) + a[0] = '\0\0\0\0' + assert_(not a) + + def test_null_inside_ustring_array_is_truthy(self): + a = np.array(['eggs'], dtype=np.str_) + a[0] = ' \0 \0' + assert_(a) + + +class TestFormat: + + def test_0d(self): + a = np.array(np.pi) + assert_equal('{:0.3g}'.format(a), '3.14') + assert_equal('{:0.3g}'.format(a[()]), '3.14') + + def test_1d_no_format(self): + a = np.array([np.pi]) + assert_equal('{}'.format(a), str(a)) + + def test_1d_format(self): + # until gh-5543, ensure that the behaviour matches what it used to be + a = np.array([np.pi]) + assert_raises(TypeError, '{:30}'.format, a) + + +from numpy.testing import IS_PYPY + + +class TestCTypes: + + def test_ctypes_is_available(self): + test_arr = np.array([[1, 2, 3], [4, 5, 6]]) + + assert_equal(ctypes, test_arr.ctypes._ctypes) + assert_equal(tuple(test_arr.ctypes.shape), (2, 3)) + + def test_ctypes_is_not_available(self): + from numpy._core import _internal + _internal.ctypes = None + try: + test_arr = np.array([[1, 2, 3], [4, 5, 6]]) + + assert_(isinstance(test_arr.ctypes._ctypes, + _internal._missing_ctypes)) + assert_equal(tuple(test_arr.ctypes.shape), (2, 3)) + finally: + _internal.ctypes = ctypes + + def _make_readonly(x): + x.flags.writeable = False + return x + + @pytest.mark.parametrize('arr', [ + np.array([1, 2, 3]), + np.array([['one', 'two'], ['three', 'four']]), + np.array((1, 2), dtype='i4,i4'), + np.zeros((2,), dtype= + np.dtype(dict( + formats=['2, [44, 55]) + assert_equal(a, np.array([[0, 44], [1, 55], [2, 44]])) + # hit one of the failing paths + assert_raises(ValueError, np.place, a, a>20, []) + + def test_put_noncontiguous(self): + a = np.arange(6).reshape(2, 3).T # force non-c-contiguous + np.put(a, [0, 2], [44, 55]) + assert_equal(a, np.array([[44, 3], [55, 4], [2, 5]])) + + def test_putmask_noncontiguous(self): + a = np.arange(6).reshape(2, 3).T # force non-c-contiguous + # uses arr_putmask + np.putmask(a, a>2, a**2) + assert_equal(a, np.array([[0, 9], [1, 16], [2, 25]])) + + def test_take_mode_raise(self): + a = np.arange(6, dtype='int') + out = np.empty(2, dtype='int') + np.take(a, [0, 2], out=out, mode='raise') + assert_equal(out, np.array([0, 2])) + + def test_choose_mod_raise(self): + a = np.array([[1, 0, 1], [0, 1, 0], [1, 0, 1]]) + out = np.empty((3,3), dtype='int') + choices = [-10, 10] + np.choose(a, choices, out=out, mode='raise') + assert_equal(out, np.array([[ 10, -10, 10], + [-10, 10, -10], + [ 10, -10, 10]])) + + def test_flatiter__array__(self): + a = np.arange(9).reshape(3, 3) + b = a.T.flat + c = b.__array__() + # triggers the WRITEBACKIFCOPY resolution, assuming refcount semantics + del c + + def test_dot_out(self): + # if HAVE_CBLAS, will use WRITEBACKIFCOPY + a = np.arange(9, dtype=float).reshape(3, 3) + b = np.dot(a, a, out=a) + assert_equal(b, np.array([[15, 18, 21], [42, 54, 66], [69, 90, 111]])) + + def test_view_assign(self): + from numpy._core._multiarray_tests import ( + npy_create_writebackifcopy, npy_resolve + ) + + arr = np.arange(9).reshape(3, 3).T + arr_wb = npy_create_writebackifcopy(arr) + assert_(arr_wb.flags.writebackifcopy) + assert_(arr_wb.base is arr) + arr_wb[...] = -100 + npy_resolve(arr_wb) + # arr changes after resolve, even though we assigned to arr_wb + assert_equal(arr, -100) + # after resolve, the two arrays no longer reference each other + assert_(arr_wb.ctypes.data != 0) + assert_equal(arr_wb.base, None) + # assigning to arr_wb does not get transferred to arr + arr_wb[...] = 100 + assert_equal(arr, -100) + + @pytest.mark.leaks_references( + reason="increments self in dealloc; ignore since deprecated path.") + def test_dealloc_warning(self): + with suppress_warnings() as sup: + sup.record(RuntimeWarning) + arr = np.arange(9).reshape(3, 3) + v = arr.T + _multiarray_tests.npy_abuse_writebackifcopy(v) + assert len(sup.log) == 1 + + def test_view_discard_refcount(self): + from numpy._core._multiarray_tests import ( + npy_create_writebackifcopy, npy_discard + ) + + arr = np.arange(9).reshape(3, 3).T + orig = arr.copy() + if HAS_REFCOUNT: + arr_cnt = sys.getrefcount(arr) + arr_wb = npy_create_writebackifcopy(arr) + assert_(arr_wb.flags.writebackifcopy) + assert_(arr_wb.base is arr) + arr_wb[...] = -100 + npy_discard(arr_wb) + # arr remains unchanged after discard + assert_equal(arr, orig) + # after discard, the two arrays no longer reference each other + assert_(arr_wb.ctypes.data != 0) + assert_equal(arr_wb.base, None) + if HAS_REFCOUNT: + assert_equal(arr_cnt, sys.getrefcount(arr)) + # assigning to arr_wb does not get transferred to arr + arr_wb[...] = 100 + assert_equal(arr, orig) + + +class TestArange: + def test_infinite(self): + assert_raises_regex( + ValueError, "size exceeded", + np.arange, 0, np.inf + ) + + def test_nan_step(self): + assert_raises_regex( + ValueError, "cannot compute length", + np.arange, 0, 1, np.nan + ) + + def test_zero_step(self): + assert_raises(ZeroDivisionError, np.arange, 0, 10, 0) + assert_raises(ZeroDivisionError, np.arange, 0.0, 10.0, 0.0) + + # empty range + assert_raises(ZeroDivisionError, np.arange, 0, 0, 0) + assert_raises(ZeroDivisionError, np.arange, 0.0, 0.0, 0.0) + + def test_require_range(self): + assert_raises(TypeError, np.arange) + assert_raises(TypeError, np.arange, step=3) + assert_raises(TypeError, np.arange, dtype='int64') + assert_raises(TypeError, np.arange, start=4) + + def test_start_stop_kwarg(self): + keyword_stop = np.arange(stop=3) + keyword_zerotostop = np.arange(0, stop=3) + keyword_start_stop = np.arange(start=3, stop=9) + + assert len(keyword_stop) == 3 + assert len(keyword_zerotostop) == 3 + assert len(keyword_start_stop) == 6 + assert_array_equal(keyword_stop, keyword_zerotostop) + + def test_arange_booleans(self): + # Arange makes some sense for booleans and works up to length 2. + # But it is weird since `arange(2, 4, dtype=bool)` works. + # Arguably, much or all of this could be deprecated/removed. + res = np.arange(False, dtype=bool) + assert_array_equal(res, np.array([], dtype="bool")) + + res = np.arange(True, dtype="bool") + assert_array_equal(res, [False]) + + res = np.arange(2, dtype="bool") + assert_array_equal(res, [False, True]) + + # This case is especially weird, but drops out without special case: + res = np.arange(6, 8, dtype="bool") + assert_array_equal(res, [True, True]) + + with pytest.raises(TypeError): + np.arange(3, dtype="bool") + + @pytest.mark.parametrize("dtype", ["S3", "U", "5i"]) + def test_rejects_bad_dtypes(self, dtype): + dtype = np.dtype(dtype) + DType_name = re.escape(str(type(dtype))) + with pytest.raises(TypeError, + match=rf"arange\(\) not supported for inputs .* {DType_name}"): + np.arange(2, dtype=dtype) + + def test_rejects_strings(self): + # Explicitly test error for strings which may call "b" - "a": + DType_name = re.escape(str(type(np.array("a").dtype))) + with pytest.raises(TypeError, + match=rf"arange\(\) not supported for inputs .* {DType_name}"): + np.arange("a", "b") + + def test_byteswapped(self): + res_be = np.arange(1, 1000, dtype=">i4") + res_le = np.arange(1, 1000, dtype="i4" + assert res_le.dtype == " arr2 + + +@pytest.mark.parametrize("op", [ + operator.eq, operator.ne, operator.le, operator.lt, operator.ge, + operator.gt]) +def test_comparisons_forwards_error(op): + class NotArray: + def __array__(self, dtype=None, copy=None): + raise TypeError("run you fools") + + with pytest.raises(TypeError, match="run you fools"): + op(np.arange(2), NotArray()) + + with pytest.raises(TypeError, match="run you fools"): + op(NotArray(), np.arange(2)) + + +def test_richcompare_scalar_boolean_singleton_return(): + # These are currently guaranteed to be the boolean singletons, but maybe + # returning NumPy booleans would also be OK: + assert (np.array(0) == "a") is False + assert (np.array(0) != "a") is True + assert (np.int16(0) == "a") is False + assert (np.int16(0) != "a") is True + + +@pytest.mark.parametrize("op", [ + operator.eq, operator.ne, operator.le, operator.lt, operator.ge, + operator.gt]) +def test_ragged_comparison_fails(op): + # This needs to convert the internal array to True/False, which fails: + a = np.array([1, np.array([1, 2, 3])], dtype=object) + b = np.array([1, np.array([1, 2, 3])], dtype=object) + + with pytest.raises(ValueError, match="The truth value.*ambiguous"): + op(a, b) + + +@pytest.mark.parametrize( + ["fun", "npfun"], + [ + (_multiarray_tests.npy_cabs, np.absolute), + (_multiarray_tests.npy_carg, np.angle) + ] +) +@pytest.mark.parametrize("x", [1, np.inf, -np.inf, np.nan]) +@pytest.mark.parametrize("y", [1, np.inf, -np.inf, np.nan]) +@pytest.mark.parametrize("test_dtype", np.complexfloating.__subclasses__()) +def test_npymath_complex(fun, npfun, x, y, test_dtype): + # Smoketest npymath functions + z = test_dtype(complex(x, y)) + with np.errstate(invalid='ignore'): + # Fallback implementations may emit a warning for +-inf (see gh-24876): + # RuntimeWarning: invalid value encountered in absolute + got = fun(z) + expected = npfun(z) + assert_allclose(got, expected) + + +def test_npymath_real(): + # Smoketest npymath functions + from numpy._core._multiarray_tests import ( + npy_log10, npy_cosh, npy_sinh, npy_tan, npy_tanh) + + funcs = {npy_log10: np.log10, + npy_cosh: np.cosh, + npy_sinh: np.sinh, + npy_tan: np.tan, + npy_tanh: np.tanh} + vals = (1, np.inf, -np.inf, np.nan) + types = (np.float32, np.float64, np.longdouble) + + with np.errstate(all='ignore'): + for fun, npfun in funcs.items(): + for x, t in itertools.product(vals, types): + z = t(x) + got = fun(z) + expected = npfun(z) + assert_allclose(got, expected) + +def test_uintalignment_and_alignment(): + # alignment code needs to satisfy these requirements: + # 1. numpy structs match C struct layout + # 2. ufuncs/casting is safe wrt to aligned access + # 3. copy code is safe wrt to "uint alidned" access + # + # Complex types are the main problem, whose alignment may not be the same + # as their "uint alignment". + # + # This test might only fail on certain platforms, where uint64 alignment is + # not equal to complex64 alignment. The second 2 tests will only fail + # for DEBUG=1. + + d1 = np.dtype('u1,c8', align=True) + d2 = np.dtype('u4,c8', align=True) + d3 = np.dtype({'names': ['a', 'b'], 'formats': ['u1', d1]}, align=True) + + assert_equal(np.zeros(1, dtype=d1)['f1'].flags['ALIGNED'], True) + assert_equal(np.zeros(1, dtype=d2)['f1'].flags['ALIGNED'], True) + assert_equal(np.zeros(1, dtype='u1,c8')['f1'].flags['ALIGNED'], False) + + # check that C struct matches numpy struct size + s = _multiarray_tests.get_struct_alignments() + for d, (alignment, size) in zip([d1,d2,d3], s): + assert_equal(d.alignment, alignment) + assert_equal(d.itemsize, size) + + # check that ufuncs don't complain in debug mode + # (this is probably OK if the aligned flag is true above) + src = np.zeros((2,2), dtype=d1)['f1'] # 4-byte aligned, often + np.exp(src) # assert fails? + + # check that copy code doesn't complain in debug mode + dst = np.zeros((2,2), dtype='c8') + dst[:,1] = src[:,1] # assert in lowlevel_strided_loops fails? + +class TestAlignment: + # adapted from scipy._lib.tests.test__util.test__aligned_zeros + # Checks that unusual memory alignments don't trip up numpy. + + def check(self, shape, dtype, order, align): + err_msg = repr((shape, dtype, order, align)) + x = _aligned_zeros(shape, dtype, order, align=align) + if align is None: + align = np.dtype(dtype).alignment + assert_equal(x.__array_interface__['data'][0] % align, 0) + if hasattr(shape, '__len__'): + assert_equal(x.shape, shape, err_msg) + else: + assert_equal(x.shape, (shape,), err_msg) + assert_equal(x.dtype, dtype) + if order == "C": + assert_(x.flags.c_contiguous, err_msg) + elif order == "F": + if x.size > 0: + assert_(x.flags.f_contiguous, err_msg) + elif order is None: + assert_(x.flags.c_contiguous, err_msg) + else: + raise ValueError + + def test_various_alignments(self): + for align in [1, 2, 3, 4, 8, 12, 16, 32, 64, None]: + for n in [0, 1, 3, 11]: + for order in ["C", "F", None]: + for dtype in list(np.typecodes["All"]) + ['i4,i4,i4']: + if dtype == 'O': + # object dtype can't be misaligned + continue + for shape in [n, (1, 2, 3, n)]: + self.check(shape, np.dtype(dtype), order, align) + + def test_strided_loop_alignments(self): + # particularly test that complex64 and float128 use right alignment + # code-paths, since these are particularly problematic. It is useful to + # turn on USE_DEBUG for this test, so lowlevel-loop asserts are run. + for align in [1, 2, 4, 8, 12, 16, None]: + xf64 = _aligned_zeros(3, np.float64) + + xc64 = _aligned_zeros(3, np.complex64, align=align) + xf128 = _aligned_zeros(3, np.longdouble, align=align) + + # test casting, both to and from misaligned + with suppress_warnings() as sup: + sup.filter(ComplexWarning, "Casting complex values") + xc64.astype('f8') + xf64.astype(np.complex64) + test = xc64 + xf64 + + xf128.astype('f8') + xf64.astype(np.longdouble) + test = xf128 + xf64 + + test = xf128 + xc64 + + # test copy, both to and from misaligned + # contig copy + xf64[:] = xf64.copy() + xc64[:] = xc64.copy() + xf128[:] = xf128.copy() + # strided copy + xf64[::2] = xf64[::2].copy() + xc64[::2] = xc64[::2].copy() + xf128[::2] = xf128[::2].copy() + +def test_getfield(): + a = np.arange(32, dtype='uint16') + if sys.byteorder == 'little': + i = 0 + j = 1 + else: + i = 1 + j = 0 + b = a.getfield('int8', i) + assert_equal(b, a) + b = a.getfield('int8', j) + assert_equal(b, 0) + pytest.raises(ValueError, a.getfield, 'uint8', -1) + pytest.raises(ValueError, a.getfield, 'uint8', 16) + pytest.raises(ValueError, a.getfield, 'uint64', 0) + + +class TestViewDtype: + """ + Verify that making a view of a non-contiguous array works as expected. + """ + def test_smaller_dtype_multiple(self): + # x is non-contiguous + x = np.arange(10, dtype=' rc_a) + assert_(sys.getrefcount(dt) > rc_dt) + # del 'it' + it = None + assert_equal(sys.getrefcount(a), rc_a) + assert_equal(sys.getrefcount(dt), rc_dt) + + # With a copy + a = arange(6, dtype='f4') + dt = np.dtype('f4') + rc_a = sys.getrefcount(a) + rc_dt = sys.getrefcount(dt) + it = nditer(a, [], + [['readwrite']], + op_dtypes=[dt]) + rc2_a = sys.getrefcount(a) + rc2_dt = sys.getrefcount(dt) + it2 = it.copy() + assert_(sys.getrefcount(a) > rc2_a) + if sys.version_info < (3, 13): + # np.dtype('f4') is immortal after Python 3.13 + assert_(sys.getrefcount(dt) > rc2_dt) + it = None + assert_equal(sys.getrefcount(a), rc2_a) + assert_equal(sys.getrefcount(dt), rc2_dt) + it2 = None + assert_equal(sys.getrefcount(a), rc_a) + assert_equal(sys.getrefcount(dt), rc_dt) + + del it2 # avoid pyflakes unused variable warning + +def test_iter_best_order(): + # The iterator should always find the iteration order + # with increasing memory addresses + + # Test the ordering for 1-D to 5-D shapes + for shape in [(5,), (3, 4), (2, 3, 4), (2, 3, 4, 3), (2, 3, 2, 2, 3)]: + a = arange(np.prod(shape)) + # Test each combination of positive and negative strides + for dirs in range(2**len(shape)): + dirs_index = [slice(None)]*len(shape) + for bit in range(len(shape)): + if ((2**bit) & dirs): + dirs_index[bit] = slice(None, None, -1) + dirs_index = tuple(dirs_index) + + aview = a.reshape(shape)[dirs_index] + # C-order + i = nditer(aview, [], [['readonly']]) + assert_equal(list(i), a) + # Fortran-order + i = nditer(aview.T, [], [['readonly']]) + assert_equal(list(i), a) + # Other order + if len(shape) > 2: + i = nditer(aview.swapaxes(0, 1), [], [['readonly']]) + assert_equal(list(i), a) + +def test_iter_c_order(): + # Test forcing C order + + # Test the ordering for 1-D to 5-D shapes + for shape in [(5,), (3, 4), (2, 3, 4), (2, 3, 4, 3), (2, 3, 2, 2, 3)]: + a = arange(np.prod(shape)) + # Test each combination of positive and negative strides + for dirs in range(2**len(shape)): + dirs_index = [slice(None)]*len(shape) + for bit in range(len(shape)): + if ((2**bit) & dirs): + dirs_index[bit] = slice(None, None, -1) + dirs_index = tuple(dirs_index) + + aview = a.reshape(shape)[dirs_index] + # C-order + i = nditer(aview, order='C') + assert_equal(list(i), aview.ravel(order='C')) + # Fortran-order + i = nditer(aview.T, order='C') + assert_equal(list(i), aview.T.ravel(order='C')) + # Other order + if len(shape) > 2: + i = nditer(aview.swapaxes(0, 1), order='C') + assert_equal(list(i), + aview.swapaxes(0, 1).ravel(order='C')) + +def test_iter_f_order(): + # Test forcing F order + + # Test the ordering for 1-D to 5-D shapes + for shape in [(5,), (3, 4), (2, 3, 4), (2, 3, 4, 3), (2, 3, 2, 2, 3)]: + a = arange(np.prod(shape)) + # Test each combination of positive and negative strides + for dirs in range(2**len(shape)): + dirs_index = [slice(None)]*len(shape) + for bit in range(len(shape)): + if ((2**bit) & dirs): + dirs_index[bit] = slice(None, None, -1) + dirs_index = tuple(dirs_index) + + aview = a.reshape(shape)[dirs_index] + # C-order + i = nditer(aview, order='F') + assert_equal(list(i), aview.ravel(order='F')) + # Fortran-order + i = nditer(aview.T, order='F') + assert_equal(list(i), aview.T.ravel(order='F')) + # Other order + if len(shape) > 2: + i = nditer(aview.swapaxes(0, 1), order='F') + assert_equal(list(i), + aview.swapaxes(0, 1).ravel(order='F')) + +def test_iter_c_or_f_order(): + # Test forcing any contiguous (C or F) order + + # Test the ordering for 1-D to 5-D shapes + for shape in [(5,), (3, 4), (2, 3, 4), (2, 3, 4, 3), (2, 3, 2, 2, 3)]: + a = arange(np.prod(shape)) + # Test each combination of positive and negative strides + for dirs in range(2**len(shape)): + dirs_index = [slice(None)]*len(shape) + for bit in range(len(shape)): + if ((2**bit) & dirs): + dirs_index[bit] = slice(None, None, -1) + dirs_index = tuple(dirs_index) + + aview = a.reshape(shape)[dirs_index] + # C-order + i = nditer(aview, order='A') + assert_equal(list(i), aview.ravel(order='A')) + # Fortran-order + i = nditer(aview.T, order='A') + assert_equal(list(i), aview.T.ravel(order='A')) + # Other order + if len(shape) > 2: + i = nditer(aview.swapaxes(0, 1), order='A') + assert_equal(list(i), + aview.swapaxes(0, 1).ravel(order='A')) + +def test_nditer_multi_index_set(): + # Test the multi_index set + a = np.arange(6).reshape(2, 3) + it = np.nditer(a, flags=['multi_index']) + + # Removes the iteration on two first elements of a[0] + it.multi_index = (0, 2,) + + assert_equal(list(it), [2, 3, 4, 5]) + +@pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") +def test_nditer_multi_index_set_refcount(): + # Test if the reference count on index variable is decreased + + index = 0 + i = np.nditer(np.array([111, 222, 333, 444]), flags=['multi_index']) + + start_count = sys.getrefcount(index) + i.multi_index = (index,) + end_count = sys.getrefcount(index) + + assert_equal(start_count, end_count) + +def test_iter_best_order_multi_index_1d(): + # The multi-indices should be correct with any reordering + + a = arange(4) + # 1D order + i = nditer(a, ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(0,), (1,), (2,), (3,)]) + # 1D reversed order + i = nditer(a[::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(3,), (2,), (1,), (0,)]) + +def test_iter_best_order_multi_index_2d(): + # The multi-indices should be correct with any reordering + + a = arange(6) + # 2D C-order + i = nditer(a.reshape(2, 3), ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(0, 0), (0, 1), (0, 2), (1, 0), (1, 1), (1, 2)]) + # 2D Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F'), ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(0, 0), (1, 0), (0, 1), (1, 1), (0, 2), (1, 2)]) + # 2D reversed C-order + i = nditer(a.reshape(2, 3)[::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(1, 0), (1, 1), (1, 2), (0, 0), (0, 1), (0, 2)]) + i = nditer(a.reshape(2, 3)[:, ::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(0, 2), (0, 1), (0, 0), (1, 2), (1, 1), (1, 0)]) + i = nditer(a.reshape(2, 3)[::-1, ::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(1, 2), (1, 1), (1, 0), (0, 2), (0, 1), (0, 0)]) + # 2D reversed Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F')[::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(1, 0), (0, 0), (1, 1), (0, 1), (1, 2), (0, 2)]) + i = nditer(a.reshape(2, 3).copy(order='F')[:, ::-1], + ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(0, 2), (1, 2), (0, 1), (1, 1), (0, 0), (1, 0)]) + i = nditer(a.reshape(2, 3).copy(order='F')[::-1, ::-1], + ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), [(1, 2), (0, 2), (1, 1), (0, 1), (1, 0), (0, 0)]) + +def test_iter_best_order_multi_index_3d(): + # The multi-indices should be correct with any reordering + + a = arange(12) + # 3D C-order + i = nditer(a.reshape(2, 3, 2), ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 0, 0), (0, 0, 1), (0, 1, 0), (0, 1, 1), (0, 2, 0), (0, 2, 1), + (1, 0, 0), (1, 0, 1), (1, 1, 0), (1, 1, 1), (1, 2, 0), (1, 2, 1)]) + # 3D Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F'), ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 0, 0), (1, 0, 0), (0, 1, 0), (1, 1, 0), (0, 2, 0), (1, 2, 0), + (0, 0, 1), (1, 0, 1), (0, 1, 1), (1, 1, 1), (0, 2, 1), (1, 2, 1)]) + # 3D reversed C-order + i = nditer(a.reshape(2, 3, 2)[::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(1, 0, 0), (1, 0, 1), (1, 1, 0), (1, 1, 1), (1, 2, 0), (1, 2, 1), + (0, 0, 0), (0, 0, 1), (0, 1, 0), (0, 1, 1), (0, 2, 0), (0, 2, 1)]) + i = nditer(a.reshape(2, 3, 2)[:, ::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 2, 0), (0, 2, 1), (0, 1, 0), (0, 1, 1), (0, 0, 0), (0, 0, 1), + (1, 2, 0), (1, 2, 1), (1, 1, 0), (1, 1, 1), (1, 0, 0), (1, 0, 1)]) + i = nditer(a.reshape(2, 3, 2)[:, :, ::-1], ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 0, 1), (0, 0, 0), (0, 1, 1), (0, 1, 0), (0, 2, 1), (0, 2, 0), + (1, 0, 1), (1, 0, 0), (1, 1, 1), (1, 1, 0), (1, 2, 1), (1, 2, 0)]) + # 3D reversed Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F')[::-1], + ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(1, 0, 0), (0, 0, 0), (1, 1, 0), (0, 1, 0), (1, 2, 0), (0, 2, 0), + (1, 0, 1), (0, 0, 1), (1, 1, 1), (0, 1, 1), (1, 2, 1), (0, 2, 1)]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, ::-1], + ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 2, 0), (1, 2, 0), (0, 1, 0), (1, 1, 0), (0, 0, 0), (1, 0, 0), + (0, 2, 1), (1, 2, 1), (0, 1, 1), (1, 1, 1), (0, 0, 1), (1, 0, 1)]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, :, ::-1], + ['multi_index'], [['readonly']]) + assert_equal(iter_multi_index(i), + [(0, 0, 1), (1, 0, 1), (0, 1, 1), (1, 1, 1), (0, 2, 1), (1, 2, 1), + (0, 0, 0), (1, 0, 0), (0, 1, 0), (1, 1, 0), (0, 2, 0), (1, 2, 0)]) + +def test_iter_best_order_c_index_1d(): + # The C index should be correct with any reordering + + a = arange(4) + # 1D order + i = nditer(a, ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 1, 2, 3]) + # 1D reversed order + i = nditer(a[::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [3, 2, 1, 0]) + +def test_iter_best_order_c_index_2d(): + # The C index should be correct with any reordering + + a = arange(6) + # 2D C-order + i = nditer(a.reshape(2, 3), ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 1, 2, 3, 4, 5]) + # 2D Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F'), + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 3, 1, 4, 2, 5]) + # 2D reversed C-order + i = nditer(a.reshape(2, 3)[::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [3, 4, 5, 0, 1, 2]) + i = nditer(a.reshape(2, 3)[:, ::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [2, 1, 0, 5, 4, 3]) + i = nditer(a.reshape(2, 3)[::-1, ::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [5, 4, 3, 2, 1, 0]) + # 2D reversed Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F')[::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [3, 0, 4, 1, 5, 2]) + i = nditer(a.reshape(2, 3).copy(order='F')[:, ::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [2, 5, 1, 4, 0, 3]) + i = nditer(a.reshape(2, 3).copy(order='F')[::-1, ::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), [5, 2, 4, 1, 3, 0]) + +def test_iter_best_order_c_index_3d(): + # The C index should be correct with any reordering + + a = arange(12) + # 3D C-order + i = nditer(a.reshape(2, 3, 2), ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11]) + # 3D Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F'), + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [0, 6, 2, 8, 4, 10, 1, 7, 3, 9, 5, 11]) + # 3D reversed C-order + i = nditer(a.reshape(2, 3, 2)[::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [6, 7, 8, 9, 10, 11, 0, 1, 2, 3, 4, 5]) + i = nditer(a.reshape(2, 3, 2)[:, ::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [4, 5, 2, 3, 0, 1, 10, 11, 8, 9, 6, 7]) + i = nditer(a.reshape(2, 3, 2)[:, :, ::-1], ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [1, 0, 3, 2, 5, 4, 7, 6, 9, 8, 11, 10]) + # 3D reversed Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F')[::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [6, 0, 8, 2, 10, 4, 7, 1, 9, 3, 11, 5]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, ::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [4, 10, 2, 8, 0, 6, 5, 11, 3, 9, 1, 7]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, :, ::-1], + ['c_index'], [['readonly']]) + assert_equal(iter_indices(i), + [1, 7, 3, 9, 5, 11, 0, 6, 2, 8, 4, 10]) + +def test_iter_best_order_f_index_1d(): + # The Fortran index should be correct with any reordering + + a = arange(4) + # 1D order + i = nditer(a, ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 1, 2, 3]) + # 1D reversed order + i = nditer(a[::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [3, 2, 1, 0]) + +def test_iter_best_order_f_index_2d(): + # The Fortran index should be correct with any reordering + + a = arange(6) + # 2D C-order + i = nditer(a.reshape(2, 3), ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 2, 4, 1, 3, 5]) + # 2D Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F'), + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [0, 1, 2, 3, 4, 5]) + # 2D reversed C-order + i = nditer(a.reshape(2, 3)[::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [1, 3, 5, 0, 2, 4]) + i = nditer(a.reshape(2, 3)[:, ::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [4, 2, 0, 5, 3, 1]) + i = nditer(a.reshape(2, 3)[::-1, ::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [5, 3, 1, 4, 2, 0]) + # 2D reversed Fortran-order + i = nditer(a.reshape(2, 3).copy(order='F')[::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [1, 0, 3, 2, 5, 4]) + i = nditer(a.reshape(2, 3).copy(order='F')[:, ::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [4, 5, 2, 3, 0, 1]) + i = nditer(a.reshape(2, 3).copy(order='F')[::-1, ::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), [5, 4, 3, 2, 1, 0]) + +def test_iter_best_order_f_index_3d(): + # The Fortran index should be correct with any reordering + + a = arange(12) + # 3D C-order + i = nditer(a.reshape(2, 3, 2), ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [0, 6, 2, 8, 4, 10, 1, 7, 3, 9, 5, 11]) + # 3D Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F'), + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11]) + # 3D reversed C-order + i = nditer(a.reshape(2, 3, 2)[::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [1, 7, 3, 9, 5, 11, 0, 6, 2, 8, 4, 10]) + i = nditer(a.reshape(2, 3, 2)[:, ::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [4, 10, 2, 8, 0, 6, 5, 11, 3, 9, 1, 7]) + i = nditer(a.reshape(2, 3, 2)[:, :, ::-1], ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [6, 0, 8, 2, 10, 4, 7, 1, 9, 3, 11, 5]) + # 3D reversed Fortran-order + i = nditer(a.reshape(2, 3, 2).copy(order='F')[::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [1, 0, 3, 2, 5, 4, 7, 6, 9, 8, 11, 10]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, ::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [4, 5, 2, 3, 0, 1, 10, 11, 8, 9, 6, 7]) + i = nditer(a.reshape(2, 3, 2).copy(order='F')[:, :, ::-1], + ['f_index'], [['readonly']]) + assert_equal(iter_indices(i), + [6, 7, 8, 9, 10, 11, 0, 1, 2, 3, 4, 5]) + +def test_iter_no_inner_full_coalesce(): + # Check no_inner iterators which coalesce into a single inner loop + + for shape in [(5,), (3, 4), (2, 3, 4), (2, 3, 4, 3), (2, 3, 2, 2, 3)]: + size = np.prod(shape) + a = arange(size) + # Test each combination of forward and backwards indexing + for dirs in range(2**len(shape)): + dirs_index = [slice(None)]*len(shape) + for bit in range(len(shape)): + if ((2**bit) & dirs): + dirs_index[bit] = slice(None, None, -1) + dirs_index = tuple(dirs_index) + + aview = a.reshape(shape)[dirs_index] + # C-order + i = nditer(aview, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 1) + assert_equal(i[0].shape, (size,)) + # Fortran-order + i = nditer(aview.T, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 1) + assert_equal(i[0].shape, (size,)) + # Other order + if len(shape) > 2: + i = nditer(aview.swapaxes(0, 1), + ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 1) + assert_equal(i[0].shape, (size,)) + +def test_iter_no_inner_dim_coalescing(): + # Check no_inner iterators whose dimensions may not coalesce completely + + # Skipping the last element in a dimension prevents coalescing + # with the next-bigger dimension + a = arange(24).reshape(2, 3, 4)[:, :, :-1] + i = nditer(a, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 2) + assert_equal(i[0].shape, (3,)) + a = arange(24).reshape(2, 3, 4)[:, :-1, :] + i = nditer(a, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 2) + assert_equal(i[0].shape, (8,)) + a = arange(24).reshape(2, 3, 4)[:-1, :, :] + i = nditer(a, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 1) + assert_equal(i[0].shape, (12,)) + + # Even with lots of 1-sized dimensions, should still coalesce + a = arange(24).reshape(1, 1, 2, 1, 1, 3, 1, 1, 4, 1, 1) + i = nditer(a, ['external_loop'], [['readonly']]) + assert_equal(i.ndim, 1) + assert_equal(i[0].shape, (24,)) + +def test_iter_dim_coalescing(): + # Check that the correct number of dimensions are coalesced + + # Tracking a multi-index disables coalescing + a = arange(24).reshape(2, 3, 4) + i = nditer(a, ['multi_index'], [['readonly']]) + assert_equal(i.ndim, 3) + + # A tracked index can allow coalescing if it's compatible with the array + a3d = arange(24).reshape(2, 3, 4) + i = nditer(a3d, ['c_index'], [['readonly']]) + assert_equal(i.ndim, 1) + i = nditer(a3d.swapaxes(0, 1), ['c_index'], [['readonly']]) + assert_equal(i.ndim, 3) + i = nditer(a3d.T, ['c_index'], [['readonly']]) + assert_equal(i.ndim, 3) + i = nditer(a3d.T, ['f_index'], [['readonly']]) + assert_equal(i.ndim, 1) + i = nditer(a3d.T.swapaxes(0, 1), ['f_index'], [['readonly']]) + assert_equal(i.ndim, 3) + + # When C or F order is forced, coalescing may still occur + a3d = arange(24).reshape(2, 3, 4) + i = nditer(a3d, order='C') + assert_equal(i.ndim, 1) + i = nditer(a3d.T, order='C') + assert_equal(i.ndim, 3) + i = nditer(a3d, order='F') + assert_equal(i.ndim, 3) + i = nditer(a3d.T, order='F') + assert_equal(i.ndim, 1) + i = nditer(a3d, order='A') + assert_equal(i.ndim, 1) + i = nditer(a3d.T, order='A') + assert_equal(i.ndim, 1) + +def test_iter_broadcasting(): + # Standard NumPy broadcasting rules + + # 1D with scalar + i = nditer([arange(6), np.int32(2)], ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 6) + assert_equal(i.shape, (6,)) + + # 2D with scalar + i = nditer([arange(6).reshape(2, 3), np.int32(2)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 6) + assert_equal(i.shape, (2, 3)) + # 2D with 1D + i = nditer([arange(6).reshape(2, 3), arange(3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 6) + assert_equal(i.shape, (2, 3)) + i = nditer([arange(2).reshape(2, 1), arange(3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 6) + assert_equal(i.shape, (2, 3)) + # 2D with 2D + i = nditer([arange(2).reshape(2, 1), arange(3).reshape(1, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 6) + assert_equal(i.shape, (2, 3)) + + # 3D with scalar + i = nditer([np.int32(2), arange(24).reshape(4, 2, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + # 3D with 1D + i = nditer([arange(3), arange(24).reshape(4, 2, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + i = nditer([arange(3), arange(8).reshape(4, 2, 1)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + # 3D with 2D + i = nditer([arange(6).reshape(2, 3), arange(24).reshape(4, 2, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + i = nditer([arange(2).reshape(2, 1), arange(24).reshape(4, 2, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + i = nditer([arange(3).reshape(1, 3), arange(8).reshape(4, 2, 1)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + # 3D with 3D + i = nditer([arange(2).reshape(1, 2, 1), arange(3).reshape(1, 1, 3), + arange(4).reshape(4, 1, 1)], + ['multi_index'], [['readonly']]*3) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + i = nditer([arange(6).reshape(1, 2, 3), arange(4).reshape(4, 1, 1)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + i = nditer([arange(24).reshape(4, 2, 3), arange(12).reshape(4, 1, 3)], + ['multi_index'], [['readonly']]*2) + assert_equal(i.itersize, 24) + assert_equal(i.shape, (4, 2, 3)) + +def test_iter_itershape(): + # Check that allocated outputs work with a specified shape + a = np.arange(6, dtype='i2').reshape(2, 3) + i = nditer([a, None], [], [['readonly'], ['writeonly', 'allocate']], + op_axes=[[0, 1, None], None], + itershape=(-1, -1, 4)) + assert_equal(i.operands[1].shape, (2, 3, 4)) + assert_equal(i.operands[1].strides, (24, 8, 2)) + + i = nditer([a.T, None], [], [['readonly'], ['writeonly', 'allocate']], + op_axes=[[0, 1, None], None], + itershape=(-1, -1, 4)) + assert_equal(i.operands[1].shape, (3, 2, 4)) + assert_equal(i.operands[1].strides, (8, 24, 2)) + + i = nditer([a.T, None], [], [['readonly'], ['writeonly', 'allocate']], + order='F', + op_axes=[[0, 1, None], None], + itershape=(-1, -1, 4)) + assert_equal(i.operands[1].shape, (3, 2, 4)) + assert_equal(i.operands[1].strides, (2, 6, 12)) + + # If we specify 1 in the itershape, it shouldn't allow broadcasting + # of that dimension to a bigger value + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['writeonly', 'allocate']], + op_axes=[[0, 1, None], None], + itershape=(-1, 1, 4)) + # Test bug that for no op_axes but itershape, they are NULLed correctly + i = np.nditer([np.ones(2), None, None], itershape=(2,)) + +def test_iter_broadcasting_errors(): + # Check that errors are thrown for bad broadcasting shapes + + # 1D with 1D + assert_raises(ValueError, nditer, [arange(2), arange(3)], + [], [['readonly']]*2) + # 2D with 1D + assert_raises(ValueError, nditer, + [arange(6).reshape(2, 3), arange(2)], + [], [['readonly']]*2) + # 2D with 2D + assert_raises(ValueError, nditer, + [arange(6).reshape(2, 3), arange(9).reshape(3, 3)], + [], [['readonly']]*2) + assert_raises(ValueError, nditer, + [arange(6).reshape(2, 3), arange(4).reshape(2, 2)], + [], [['readonly']]*2) + # 3D with 3D + assert_raises(ValueError, nditer, + [arange(36).reshape(3, 3, 4), arange(24).reshape(2, 3, 4)], + [], [['readonly']]*2) + assert_raises(ValueError, nditer, + [arange(8).reshape(2, 4, 1), arange(24).reshape(2, 3, 4)], + [], [['readonly']]*2) + + # Verify that the error message mentions the right shapes + try: + nditer([arange(2).reshape(1, 2, 1), + arange(3).reshape(1, 3), + arange(6).reshape(2, 3)], + [], + [['readonly'], ['readonly'], ['writeonly', 'no_broadcast']]) + raise AssertionError('Should have raised a broadcast error') + except ValueError as e: + msg = str(e) + # The message should contain the shape of the 3rd operand + assert_(msg.find('(2,3)') >= 0, + 'Message "%s" doesn\'t contain operand shape (2,3)' % msg) + # The message should contain the broadcast shape + assert_(msg.find('(1,2,3)') >= 0, + 'Message "%s" doesn\'t contain broadcast shape (1,2,3)' % msg) + + try: + nditer([arange(6).reshape(2, 3), arange(2)], + [], + [['readonly'], ['readonly']], + op_axes=[[0, 1], [0, np.newaxis]], + itershape=(4, 3)) + raise AssertionError('Should have raised a broadcast error') + except ValueError as e: + msg = str(e) + # The message should contain "shape->remappedshape" for each operand + assert_(msg.find('(2,3)->(2,3)') >= 0, + 'Message "%s" doesn\'t contain operand shape (2,3)->(2,3)' % msg) + assert_(msg.find('(2,)->(2,newaxis)') >= 0, + ('Message "%s" doesn\'t contain remapped operand shape' + + '(2,)->(2,newaxis)') % msg) + # The message should contain the itershape parameter + assert_(msg.find('(4,3)') >= 0, + 'Message "%s" doesn\'t contain itershape parameter (4,3)' % msg) + + try: + nditer([np.zeros((2, 1, 1)), np.zeros((2,))], + [], + [['writeonly', 'no_broadcast'], ['readonly']]) + raise AssertionError('Should have raised a broadcast error') + except ValueError as e: + msg = str(e) + # The message should contain the shape of the bad operand + assert_(msg.find('(2,1,1)') >= 0, + 'Message "%s" doesn\'t contain operand shape (2,1,1)' % msg) + # The message should contain the broadcast shape + assert_(msg.find('(2,1,2)') >= 0, + 'Message "%s" doesn\'t contain the broadcast shape (2,1,2)' % msg) + +def test_iter_flags_errors(): + # Check that bad combinations of flags produce errors + + a = arange(6) + + # Not enough operands + assert_raises(ValueError, nditer, [], [], []) + # Too many operands + assert_raises(ValueError, nditer, [a]*100, [], [['readonly']]*100) + # Bad global flag + assert_raises(ValueError, nditer, [a], ['bad flag'], [['readonly']]) + # Bad op flag + assert_raises(ValueError, nditer, [a], [], [['readonly', 'bad flag']]) + # Bad order parameter + assert_raises(ValueError, nditer, [a], [], [['readonly']], order='G') + # Bad casting parameter + assert_raises(ValueError, nditer, [a], [], [['readonly']], casting='noon') + # op_flags must match ops + assert_raises(ValueError, nditer, [a]*3, [], [['readonly']]*2) + # Cannot track both a C and an F index + assert_raises(ValueError, nditer, a, + ['c_index', 'f_index'], [['readonly']]) + # Inner iteration and multi-indices/indices are incompatible + assert_raises(ValueError, nditer, a, + ['external_loop', 'multi_index'], [['readonly']]) + assert_raises(ValueError, nditer, a, + ['external_loop', 'c_index'], [['readonly']]) + assert_raises(ValueError, nditer, a, + ['external_loop', 'f_index'], [['readonly']]) + # Must specify exactly one of readwrite/readonly/writeonly per operand + assert_raises(ValueError, nditer, a, [], [[]]) + assert_raises(ValueError, nditer, a, [], [['readonly', 'writeonly']]) + assert_raises(ValueError, nditer, a, [], [['readonly', 'readwrite']]) + assert_raises(ValueError, nditer, a, [], [['writeonly', 'readwrite']]) + assert_raises(ValueError, nditer, a, + [], [['readonly', 'writeonly', 'readwrite']]) + # Python scalars are always readonly + assert_raises(TypeError, nditer, 1.5, [], [['writeonly']]) + assert_raises(TypeError, nditer, 1.5, [], [['readwrite']]) + # Array scalars are always readonly + assert_raises(TypeError, nditer, np.int32(1), [], [['writeonly']]) + assert_raises(TypeError, nditer, np.int32(1), [], [['readwrite']]) + # Check readonly array + a.flags.writeable = False + assert_raises(ValueError, nditer, a, [], [['writeonly']]) + assert_raises(ValueError, nditer, a, [], [['readwrite']]) + a.flags.writeable = True + # Multi-indices available only with the multi_index flag + i = nditer(arange(6), [], [['readonly']]) + assert_raises(ValueError, lambda i: i.multi_index, i) + # Index available only with an index flag + assert_raises(ValueError, lambda i: i.index, i) + # GotoCoords and GotoIndex incompatible with buffering or no_inner + + def assign_multi_index(i): + i.multi_index = (0,) + + def assign_index(i): + i.index = 0 + + def assign_iterindex(i): + i.iterindex = 0 + + def assign_iterrange(i): + i.iterrange = (0, 1) + i = nditer(arange(6), ['external_loop']) + assert_raises(ValueError, assign_multi_index, i) + assert_raises(ValueError, assign_index, i) + assert_raises(ValueError, assign_iterindex, i) + assert_raises(ValueError, assign_iterrange, i) + i = nditer(arange(6), ['buffered']) + assert_raises(ValueError, assign_multi_index, i) + assert_raises(ValueError, assign_index, i) + assert_raises(ValueError, assign_iterrange, i) + # Can't iterate if size is zero + assert_raises(ValueError, nditer, np.array([])) + +def test_iter_slice(): + a, b, c = np.arange(3), np.arange(3), np.arange(3.) + i = nditer([a, b, c], [], ['readwrite']) + with i: + i[0:2] = (3, 3) + assert_equal(a, [3, 1, 2]) + assert_equal(b, [3, 1, 2]) + assert_equal(c, [0, 1, 2]) + i[1] = 12 + assert_equal(i[0:2], [3, 12]) + +def test_iter_assign_mapping(): + a = np.arange(24, dtype='f8').reshape(2, 3, 4).T + it = np.nditer(a, [], [['readwrite', 'updateifcopy']], + casting='same_kind', op_dtypes=[np.dtype('f4')]) + with it: + it.operands[0][...] = 3 + it.operands[0][...] = 14 + assert_equal(a, 14) + it = np.nditer(a, [], [['readwrite', 'updateifcopy']], + casting='same_kind', op_dtypes=[np.dtype('f4')]) + with it: + x = it.operands[0][-1:1] + x[...] = 14 + it.operands[0][...] = -1234 + assert_equal(a, -1234) + # check for no warnings on dealloc + x = None + it = None + +def test_iter_nbo_align_contig(): + # Check that byte order, alignment, and contig changes work + + # Byte order change by requesting a specific dtype + a = np.arange(6, dtype='f4') + au = a.byteswap() + au = au.view(au.dtype.newbyteorder()) + assert_(a.dtype.byteorder != au.dtype.byteorder) + i = nditer(au, [], [['readwrite', 'updateifcopy']], + casting='equiv', + op_dtypes=[np.dtype('f4')]) + with i: + # context manager triggers WRITEBACKIFCOPY on i at exit + assert_equal(i.dtypes[0].byteorder, a.dtype.byteorder) + assert_equal(i.operands[0].dtype.byteorder, a.dtype.byteorder) + assert_equal(i.operands[0], a) + i.operands[0][:] = 2 + assert_equal(au, [2]*6) + del i # should not raise a warning + # Byte order change by requesting NBO + a = np.arange(6, dtype='f4') + au = a.byteswap() + au = au.view(au.dtype.newbyteorder()) + assert_(a.dtype.byteorder != au.dtype.byteorder) + with nditer(au, [], [['readwrite', 'updateifcopy', 'nbo']], + casting='equiv') as i: + # context manager triggers UPDATEIFCOPY on i at exit + assert_equal(i.dtypes[0].byteorder, a.dtype.byteorder) + assert_equal(i.operands[0].dtype.byteorder, a.dtype.byteorder) + assert_equal(i.operands[0], a) + i.operands[0][:] = 12345 + i.operands[0][:] = 2 + assert_equal(au, [2]*6) + + # Unaligned input + a = np.zeros((6*4+1,), dtype='i1')[1:] + a.dtype = 'f4' + a[:] = np.arange(6, dtype='f4') + assert_(not a.flags.aligned) + # Without 'aligned', shouldn't copy + i = nditer(a, [], [['readonly']]) + assert_(not i.operands[0].flags.aligned) + assert_equal(i.operands[0], a) + # With 'aligned', should make a copy + with nditer(a, [], [['readwrite', 'updateifcopy', 'aligned']]) as i: + assert_(i.operands[0].flags.aligned) + # context manager triggers UPDATEIFCOPY on i at exit + assert_equal(i.operands[0], a) + i.operands[0][:] = 3 + assert_equal(a, [3]*6) + + # Discontiguous input + a = arange(12) + # If it is contiguous, shouldn't copy + i = nditer(a[:6], [], [['readonly']]) + assert_(i.operands[0].flags.contiguous) + assert_equal(i.operands[0], a[:6]) + # If it isn't contiguous, should buffer + i = nditer(a[::2], ['buffered', 'external_loop'], + [['readonly', 'contig']], + buffersize=10) + assert_(i[0].flags.contiguous) + assert_equal(i[0], a[::2]) + +def test_iter_array_cast(): + # Check that arrays are cast as requested + + # No cast 'f4' -> 'f4' + a = np.arange(6, dtype='f4').reshape(2, 3) + i = nditer(a, [], [['readwrite']], op_dtypes=[np.dtype('f4')]) + with i: + assert_equal(i.operands[0], a) + assert_equal(i.operands[0].dtype, np.dtype('f4')) + + # Byte-order cast ' '>f4' + a = np.arange(6, dtype='f4')]) as i: + assert_equal(i.operands[0], a) + assert_equal(i.operands[0].dtype, np.dtype('>f4')) + + # Safe case 'f4' -> 'f8' + a = np.arange(24, dtype='f4').reshape(2, 3, 4).swapaxes(1, 2) + i = nditer(a, [], [['readonly', 'copy']], + casting='safe', + op_dtypes=[np.dtype('f8')]) + assert_equal(i.operands[0], a) + assert_equal(i.operands[0].dtype, np.dtype('f8')) + # The memory layout of the temporary should match a (a is (48,4,16)) + # except negative strides get flipped to positive strides. + assert_equal(i.operands[0].strides, (96, 8, 32)) + a = a[::-1, :, ::-1] + i = nditer(a, [], [['readonly', 'copy']], + casting='safe', + op_dtypes=[np.dtype('f8')]) + assert_equal(i.operands[0], a) + assert_equal(i.operands[0].dtype, np.dtype('f8')) + assert_equal(i.operands[0].strides, (96, 8, 32)) + + # Same-kind cast 'f8' -> 'f4' -> 'f8' + a = np.arange(24, dtype='f8').reshape(2, 3, 4).T + with nditer(a, [], + [['readwrite', 'updateifcopy']], + casting='same_kind', + op_dtypes=[np.dtype('f4')]) as i: + assert_equal(i.operands[0], a) + assert_equal(i.operands[0].dtype, np.dtype('f4')) + assert_equal(i.operands[0].strides, (4, 16, 48)) + # Check that WRITEBACKIFCOPY is activated at exit + i.operands[0][2, 1, 1] = -12.5 + assert_(a[2, 1, 1] != -12.5) + assert_equal(a[2, 1, 1], -12.5) + + a = np.arange(6, dtype='i4')[::-2] + with nditer(a, [], + [['writeonly', 'updateifcopy']], + casting='unsafe', + op_dtypes=[np.dtype('f4')]) as i: + assert_equal(i.operands[0].dtype, np.dtype('f4')) + # Even though the stride was negative in 'a', it + # becomes positive in the temporary + assert_equal(i.operands[0].strides, (4,)) + i.operands[0][:] = [1, 2, 3] + assert_equal(a, [1, 2, 3]) + +def test_iter_array_cast_errors(): + # Check that invalid casts are caught + + # Need to enable copying for casts to occur + assert_raises(TypeError, nditer, arange(2, dtype='f4'), [], + [['readonly']], op_dtypes=[np.dtype('f8')]) + # Also need to allow casting for casts to occur + assert_raises(TypeError, nditer, arange(2, dtype='f4'), [], + [['readonly', 'copy']], casting='no', + op_dtypes=[np.dtype('f8')]) + assert_raises(TypeError, nditer, arange(2, dtype='f4'), [], + [['readonly', 'copy']], casting='equiv', + op_dtypes=[np.dtype('f8')]) + assert_raises(TypeError, nditer, arange(2, dtype='f8'), [], + [['writeonly', 'updateifcopy']], + casting='no', + op_dtypes=[np.dtype('f4')]) + assert_raises(TypeError, nditer, arange(2, dtype='f8'), [], + [['writeonly', 'updateifcopy']], + casting='equiv', + op_dtypes=[np.dtype('f4')]) + # ' '>f4' should not work with casting='no' + assert_raises(TypeError, nditer, arange(2, dtype='f4')]) + # 'f4' -> 'f8' is a safe cast, but 'f8' -> 'f4' isn't + assert_raises(TypeError, nditer, arange(2, dtype='f4'), [], + [['readwrite', 'updateifcopy']], + casting='safe', + op_dtypes=[np.dtype('f8')]) + assert_raises(TypeError, nditer, arange(2, dtype='f8'), [], + [['readwrite', 'updateifcopy']], + casting='safe', + op_dtypes=[np.dtype('f4')]) + # 'f4' -> 'i4' is neither a safe nor a same-kind cast + assert_raises(TypeError, nditer, arange(2, dtype='f4'), [], + [['readonly', 'copy']], + casting='same_kind', + op_dtypes=[np.dtype('i4')]) + assert_raises(TypeError, nditer, arange(2, dtype='i4'), [], + [['writeonly', 'updateifcopy']], + casting='same_kind', + op_dtypes=[np.dtype('f4')]) + +def test_iter_scalar_cast(): + # Check that scalars are cast as requested + + # No cast 'f4' -> 'f4' + i = nditer(np.float32(2.5), [], [['readonly']], + op_dtypes=[np.dtype('f4')]) + assert_equal(i.dtypes[0], np.dtype('f4')) + assert_equal(i.value.dtype, np.dtype('f4')) + assert_equal(i.value, 2.5) + # Safe cast 'f4' -> 'f8' + i = nditer(np.float32(2.5), [], + [['readonly', 'copy']], + casting='safe', + op_dtypes=[np.dtype('f8')]) + assert_equal(i.dtypes[0], np.dtype('f8')) + assert_equal(i.value.dtype, np.dtype('f8')) + assert_equal(i.value, 2.5) + # Same-kind cast 'f8' -> 'f4' + i = nditer(np.float64(2.5), [], + [['readonly', 'copy']], + casting='same_kind', + op_dtypes=[np.dtype('f4')]) + assert_equal(i.dtypes[0], np.dtype('f4')) + assert_equal(i.value.dtype, np.dtype('f4')) + assert_equal(i.value, 2.5) + # Unsafe cast 'f8' -> 'i4' + i = nditer(np.float64(3.0), [], + [['readonly', 'copy']], + casting='unsafe', + op_dtypes=[np.dtype('i4')]) + assert_equal(i.dtypes[0], np.dtype('i4')) + assert_equal(i.value.dtype, np.dtype('i4')) + assert_equal(i.value, 3) + # Readonly scalars may be cast even without setting COPY or BUFFERED + i = nditer(3, [], [['readonly']], op_dtypes=[np.dtype('f8')]) + assert_equal(i[0].dtype, np.dtype('f8')) + assert_equal(i[0], 3.) + +def test_iter_scalar_cast_errors(): + # Check that invalid casts are caught + + # Need to allow copying/buffering for write casts of scalars to occur + assert_raises(TypeError, nditer, np.float32(2), [], + [['readwrite']], op_dtypes=[np.dtype('f8')]) + assert_raises(TypeError, nditer, 2.5, [], + [['readwrite']], op_dtypes=[np.dtype('f4')]) + # 'f8' -> 'f4' isn't a safe cast if the value would overflow + assert_raises(TypeError, nditer, np.float64(1e60), [], + [['readonly']], + casting='safe', + op_dtypes=[np.dtype('f4')]) + # 'f4' -> 'i4' is neither a safe nor a same-kind cast + assert_raises(TypeError, nditer, np.float32(2), [], + [['readonly']], + casting='same_kind', + op_dtypes=[np.dtype('i4')]) + +def test_iter_object_arrays_basic(): + # Check that object arrays work + + obj = {'a': 3, 'b': 'd'} + a = np.array([[1, 2, 3], None, obj, None], dtype='O') + if HAS_REFCOUNT: + rc = sys.getrefcount(obj) + + # Need to allow references for object arrays + assert_raises(TypeError, nditer, a) + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(obj), rc) + + i = nditer(a, ['refs_ok'], ['readonly']) + vals = [x_[()] for x_ in i] + assert_equal(np.array(vals, dtype='O'), a) + vals, i, x = [None]*3 + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(obj), rc) + + i = nditer(a.reshape(2, 2).T, ['refs_ok', 'buffered'], + ['readonly'], order='C') + assert_(i.iterationneedsapi) + vals = [x_[()] for x_ in i] + assert_equal(np.array(vals, dtype='O'), a.reshape(2, 2).ravel(order='F')) + vals, i, x = [None]*3 + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(obj), rc) + + i = nditer(a.reshape(2, 2).T, ['refs_ok', 'buffered'], + ['readwrite'], order='C') + with i: + for x in i: + x[...] = None + vals, i, x = [None]*3 + if HAS_REFCOUNT: + assert_(sys.getrefcount(obj) == rc-1) + assert_equal(a, np.array([None]*4, dtype='O')) + +def test_iter_object_arrays_conversions(): + # Conversions to/from objects + a = np.arange(6, dtype='O') + i = nditer(a, ['refs_ok', 'buffered'], ['readwrite'], + casting='unsafe', op_dtypes='i4') + with i: + for x in i: + x[...] += 1 + assert_equal(a, np.arange(6)+1) + + a = np.arange(6, dtype='i4') + i = nditer(a, ['refs_ok', 'buffered'], ['readwrite'], + casting='unsafe', op_dtypes='O') + with i: + for x in i: + x[...] += 1 + assert_equal(a, np.arange(6)+1) + + # Non-contiguous object array + a = np.zeros((6,), dtype=[('p', 'i1'), ('a', 'O')]) + a = a['a'] + a[:] = np.arange(6) + i = nditer(a, ['refs_ok', 'buffered'], ['readwrite'], + casting='unsafe', op_dtypes='i4') + with i: + for x in i: + x[...] += 1 + assert_equal(a, np.arange(6)+1) + + #Non-contiguous value array + a = np.zeros((6,), dtype=[('p', 'i1'), ('a', 'i4')]) + a = a['a'] + a[:] = np.arange(6) + 98172488 + i = nditer(a, ['refs_ok', 'buffered'], ['readwrite'], + casting='unsafe', op_dtypes='O') + with i: + ob = i[0][()] + if HAS_REFCOUNT: + rc = sys.getrefcount(ob) + for x in i: + x[...] += 1 + if HAS_REFCOUNT: + assert_(sys.getrefcount(ob) == rc-1) + assert_equal(a, np.arange(6)+98172489) + +def test_iter_common_dtype(): + # Check that the iterator finds a common data type correctly + # (some checks are somewhat duplicate after adopting NEP 50) + + i = nditer([array([3], dtype='f4'), array([0], dtype='f8')], + ['common_dtype'], + [['readonly', 'copy']]*2, + casting='safe') + assert_equal(i.dtypes[0], np.dtype('f8')) + assert_equal(i.dtypes[1], np.dtype('f8')) + i = nditer([array([3], dtype='i4'), array([0], dtype='f4')], + ['common_dtype'], + [['readonly', 'copy']]*2, + casting='safe') + assert_equal(i.dtypes[0], np.dtype('f8')) + assert_equal(i.dtypes[1], np.dtype('f8')) + i = nditer([array([3], dtype='f4'), array(0, dtype='f8')], + ['common_dtype'], + [['readonly', 'copy']]*2, + casting='same_kind') + assert_equal(i.dtypes[0], np.dtype('f8')) + assert_equal(i.dtypes[1], np.dtype('f8')) + i = nditer([array([3], dtype='u4'), array(0, dtype='i4')], + ['common_dtype'], + [['readonly', 'copy']]*2, + casting='safe') + assert_equal(i.dtypes[0], np.dtype('i8')) + assert_equal(i.dtypes[1], np.dtype('i8')) + i = nditer([array([3], dtype='u4'), array(-12, dtype='i4')], + ['common_dtype'], + [['readonly', 'copy']]*2, + casting='safe') + assert_equal(i.dtypes[0], np.dtype('i8')) + assert_equal(i.dtypes[1], np.dtype('i8')) + i = nditer([array([3], dtype='u4'), array(-12, dtype='i4'), + array([2j], dtype='c8'), array([9], dtype='f8')], + ['common_dtype'], + [['readonly', 'copy']]*4, + casting='safe') + assert_equal(i.dtypes[0], np.dtype('c16')) + assert_equal(i.dtypes[1], np.dtype('c16')) + assert_equal(i.dtypes[2], np.dtype('c16')) + assert_equal(i.dtypes[3], np.dtype('c16')) + assert_equal(i.value, (3, -12, 2j, 9)) + + # When allocating outputs, other outputs aren't factored in + i = nditer([array([3], dtype='i4'), None, array([2j], dtype='c16')], [], + [['readonly', 'copy'], + ['writeonly', 'allocate'], + ['writeonly']], + casting='safe') + assert_equal(i.dtypes[0], np.dtype('i4')) + assert_equal(i.dtypes[1], np.dtype('i4')) + assert_equal(i.dtypes[2], np.dtype('c16')) + # But, if common data types are requested, they are + i = nditer([array([3], dtype='i4'), None, array([2j], dtype='c16')], + ['common_dtype'], + [['readonly', 'copy'], + ['writeonly', 'allocate'], + ['writeonly']], + casting='safe') + assert_equal(i.dtypes[0], np.dtype('c16')) + assert_equal(i.dtypes[1], np.dtype('c16')) + assert_equal(i.dtypes[2], np.dtype('c16')) + +def test_iter_copy_if_overlap(): + # Ensure the iterator makes copies on read/write overlap, if requested + + # Copy not needed, 1 op + for flag in ['readonly', 'writeonly', 'readwrite']: + a = arange(10) + i = nditer([a], ['copy_if_overlap'], [[flag]]) + with i: + assert_(i.operands[0] is a) + + # Copy needed, 2 ops, read-write overlap + x = arange(10) + a = x[1:] + b = x[:-1] + with nditer([a, b], ['copy_if_overlap'], [['readonly'], ['readwrite']]) as i: + assert_(not np.shares_memory(*i.operands)) + + # Copy not needed with elementwise, 2 ops, exactly same arrays + x = arange(10) + a = x + b = x + i = nditer([a, b], ['copy_if_overlap'], [['readonly', 'overlap_assume_elementwise'], + ['readwrite', 'overlap_assume_elementwise']]) + with i: + assert_(i.operands[0] is a and i.operands[1] is b) + with nditer([a, b], ['copy_if_overlap'], [['readonly'], ['readwrite']]) as i: + assert_(i.operands[0] is a and not np.shares_memory(i.operands[1], b)) + + # Copy not needed, 2 ops, no overlap + x = arange(10) + a = x[::2] + b = x[1::2] + i = nditer([a, b], ['copy_if_overlap'], [['readonly'], ['writeonly']]) + assert_(i.operands[0] is a and i.operands[1] is b) + + # Copy needed, 2 ops, read-write overlap + x = arange(4, dtype=np.int8) + a = x[3:] + b = x.view(np.int32)[:1] + with nditer([a, b], ['copy_if_overlap'], [['readonly'], ['writeonly']]) as i: + assert_(not np.shares_memory(*i.operands)) + + # Copy needed, 3 ops, read-write overlap + for flag in ['writeonly', 'readwrite']: + x = np.ones([10, 10]) + a = x + b = x.T + c = x + with nditer([a, b, c], ['copy_if_overlap'], + [['readonly'], ['readonly'], [flag]]) as i: + a2, b2, c2 = i.operands + assert_(not np.shares_memory(a2, c2)) + assert_(not np.shares_memory(b2, c2)) + + # Copy not needed, 3 ops, read-only overlap + x = np.ones([10, 10]) + a = x + b = x.T + c = x + i = nditer([a, b, c], ['copy_if_overlap'], + [['readonly'], ['readonly'], ['readonly']]) + a2, b2, c2 = i.operands + assert_(a is a2) + assert_(b is b2) + assert_(c is c2) + + # Copy not needed, 3 ops, read-only overlap + x = np.ones([10, 10]) + a = x + b = np.ones([10, 10]) + c = x.T + i = nditer([a, b, c], ['copy_if_overlap'], + [['readonly'], ['writeonly'], ['readonly']]) + a2, b2, c2 = i.operands + assert_(a is a2) + assert_(b is b2) + assert_(c is c2) + + # Copy not needed, 3 ops, write-only overlap + x = np.arange(7) + a = x[:3] + b = x[3:6] + c = x[4:7] + i = nditer([a, b, c], ['copy_if_overlap'], + [['readonly'], ['writeonly'], ['writeonly']]) + a2, b2, c2 = i.operands + assert_(a is a2) + assert_(b is b2) + assert_(c is c2) + +def test_iter_op_axes(): + # Check that custom axes work + + # Reverse the axes + a = arange(6).reshape(2, 3) + i = nditer([a, a.T], [], [['readonly']]*2, op_axes=[[0, 1], [1, 0]]) + assert_(all([x == y for (x, y) in i])) + a = arange(24).reshape(2, 3, 4) + i = nditer([a.T, a], [], [['readonly']]*2, op_axes=[[2, 1, 0], None]) + assert_(all([x == y for (x, y) in i])) + + # Broadcast 1D to any dimension + a = arange(1, 31).reshape(2, 3, 5) + b = arange(1, 3) + i = nditer([a, b], [], [['readonly']]*2, op_axes=[None, [0, -1, -1]]) + assert_equal([x*y for (x, y) in i], (a*b.reshape(2, 1, 1)).ravel()) + b = arange(1, 4) + i = nditer([a, b], [], [['readonly']]*2, op_axes=[None, [-1, 0, -1]]) + assert_equal([x*y for (x, y) in i], (a*b.reshape(1, 3, 1)).ravel()) + b = arange(1, 6) + i = nditer([a, b], [], [['readonly']]*2, + op_axes=[None, [np.newaxis, np.newaxis, 0]]) + assert_equal([x*y for (x, y) in i], (a*b.reshape(1, 1, 5)).ravel()) + + # Inner product-style broadcasting + a = arange(24).reshape(2, 3, 4) + b = arange(40).reshape(5, 2, 4) + i = nditer([a, b], ['multi_index'], [['readonly']]*2, + op_axes=[[0, 1, -1, -1], [-1, -1, 0, 1]]) + assert_equal(i.shape, (2, 3, 5, 2)) + + # Matrix product-style broadcasting + a = arange(12).reshape(3, 4) + b = arange(20).reshape(4, 5) + i = nditer([a, b], ['multi_index'], [['readonly']]*2, + op_axes=[[0, -1], [-1, 1]]) + assert_equal(i.shape, (3, 5)) + +def test_iter_op_axes_errors(): + # Check that custom axes throws errors for bad inputs + + # Wrong number of items in op_axes + a = arange(6).reshape(2, 3) + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0], [1], [0]]) + # Out of bounds items in op_axes + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[2, 1], [0, 1]]) + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0, 1], [2, -1]]) + # Duplicate items in op_axes + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0, 0], [0, 1]]) + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0, 1], [1, 1]]) + + # Different sized arrays in op_axes + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0, 1], [0, 1, 0]]) + + # Non-broadcastable dimensions in the result + assert_raises(ValueError, nditer, [a, a], [], [['readonly']]*2, + op_axes=[[0, 1], [1, 0]]) + +def test_iter_copy(): + # Check that copying the iterator works correctly + a = arange(24).reshape(2, 3, 4) + + # Simple iterator + i = nditer(a) + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + i.iterindex = 3 + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + # Buffered iterator + i = nditer(a, ['buffered', 'ranged'], order='F', buffersize=3) + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + i.iterindex = 3 + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + i.iterrange = (3, 9) + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + i.iterrange = (2, 18) + next(i) + next(i) + j = i.copy() + assert_equal([x[()] for x in i], [x[()] for x in j]) + + # Casting iterator + with nditer(a, ['buffered'], order='F', casting='unsafe', + op_dtypes='f8', buffersize=5) as i: + j = i.copy() + assert_equal([x[()] for x in j], a.ravel(order='F')) + + a = arange(24, dtype=' unstructured (any to object), and many other + # casts, which cause this to require all steps in the casting machinery + # one level down as well as the iterator copy (which uses NpyAuxData clone) + in_dtype = np.dtype([("a", np.dtype("i,")), + ("b", np.dtype(">i,d,S17,>d,3f,O,i1"))]) + out_dtype = np.dtype([("a", np.dtype("O")), + ("b", np.dtype(">i,>i,S17,>d,>U3,3d,i1,O"))]) + arr = np.ones(1000, dtype=in_dtype) + + it = np.nditer((arr,), ["buffered", "external_loop", "refs_ok"], + op_dtypes=[out_dtype], casting="unsafe") + it_copy = it.copy() + + res1 = next(it) + del it + res2 = next(it_copy) + del it_copy + + expected = arr["a"].astype(out_dtype["a"]) + assert_array_equal(res1["a"], expected) + assert_array_equal(res2["a"], expected) + + for field in in_dtype["b"].names: + # Note that the .base avoids the subarray field + expected = arr["b"][field].astype(out_dtype["b"][field].base) + assert_array_equal(res1["b"][field], expected) + assert_array_equal(res2["b"][field], expected) + + +def test_iter_copy_casts_structured2(): + # Similar to the above, this is a fairly arcane test to cover internals + in_dtype = np.dtype([("a", np.dtype("O,O")), + ("b", np.dtype("5O,3O,(1,)O,(1,)i,(1,)O"))]) + out_dtype = np.dtype([("a", np.dtype("O")), + ("b", np.dtype("O,3i,4O,4O,4i"))]) + + arr = np.ones(1, dtype=in_dtype) + it = np.nditer((arr,), ["buffered", "external_loop", "refs_ok"], + op_dtypes=[out_dtype], casting="unsafe") + it_copy = it.copy() + + res1 = next(it) + del it + res2 = next(it_copy) + del it_copy + + # Array of two structured scalars: + for res in res1, res2: + # Cast to tuple by getitem, which may be weird and changeable?: + assert type(res["a"][0]) == tuple + assert res["a"][0] == (1, 1) + + for res in res1, res2: + assert_array_equal(res["b"]["f0"][0], np.ones(5, dtype=object)) + assert_array_equal(res["b"]["f1"], np.ones((1, 3), dtype="i")) + assert res["b"]["f2"].shape == (1, 4) + assert_array_equal(res["b"]["f2"][0], np.ones(4, dtype=object)) + assert_array_equal(res["b"]["f3"][0], np.ones(4, dtype=object)) + assert_array_equal(res["b"]["f3"][0], np.ones(4, dtype="i")) + + +def test_iter_allocate_output_simple(): + # Check that the iterator will properly allocate outputs + + # Simple case + a = arange(6) + i = nditer([a, None], [], [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')]) + assert_equal(i.operands[1].shape, a.shape) + assert_equal(i.operands[1].dtype, np.dtype('f4')) + +def test_iter_allocate_output_buffered_readwrite(): + # Allocated output with buffering + delay_bufalloc + + a = arange(6) + i = nditer([a, None], ['buffered', 'delay_bufalloc'], + [['readonly'], ['allocate', 'readwrite']]) + with i: + i.operands[1][:] = 1 + i.reset() + for x in i: + x[1][...] += x[0][...] + assert_equal(i.operands[1], a+1) + +def test_iter_allocate_output_itorder(): + # The allocated output should match the iteration order + + # C-order input, best iteration order + a = arange(6, dtype='i4').reshape(2, 3) + i = nditer([a, None], [], [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')]) + assert_equal(i.operands[1].shape, a.shape) + assert_equal(i.operands[1].strides, a.strides) + assert_equal(i.operands[1].dtype, np.dtype('f4')) + # F-order input, best iteration order + a = arange(24, dtype='i4').reshape(2, 3, 4).T + i = nditer([a, None], [], [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')]) + assert_equal(i.operands[1].shape, a.shape) + assert_equal(i.operands[1].strides, a.strides) + assert_equal(i.operands[1].dtype, np.dtype('f4')) + # Non-contiguous input, C iteration order + a = arange(24, dtype='i4').reshape(2, 3, 4).swapaxes(0, 1) + i = nditer([a, None], [], + [['readonly'], ['writeonly', 'allocate']], + order='C', + op_dtypes=[None, np.dtype('f4')]) + assert_equal(i.operands[1].shape, a.shape) + assert_equal(i.operands[1].strides, (32, 16, 4)) + assert_equal(i.operands[1].dtype, np.dtype('f4')) + +def test_iter_allocate_output_opaxes(): + # Specifying op_axes should work + + a = arange(24, dtype='i4').reshape(2, 3, 4) + i = nditer([None, a], [], [['writeonly', 'allocate'], ['readonly']], + op_dtypes=[np.dtype('u4'), None], + op_axes=[[1, 2, 0], None]) + assert_equal(i.operands[0].shape, (4, 2, 3)) + assert_equal(i.operands[0].strides, (4, 48, 16)) + assert_equal(i.operands[0].dtype, np.dtype('u4')) + +def test_iter_allocate_output_types_promotion(): + # Check type promotion of automatic outputs (this was more interesting + # before NEP 50...) + + i = nditer([array([3], dtype='f4'), array([0], dtype='f8'), None], [], + [['readonly']]*2+[['writeonly', 'allocate']]) + assert_equal(i.dtypes[2], np.dtype('f8')) + i = nditer([array([3], dtype='i4'), array([0], dtype='f4'), None], [], + [['readonly']]*2+[['writeonly', 'allocate']]) + assert_equal(i.dtypes[2], np.dtype('f8')) + i = nditer([array([3], dtype='f4'), array(0, dtype='f8'), None], [], + [['readonly']]*2+[['writeonly', 'allocate']]) + assert_equal(i.dtypes[2], np.dtype('f8')) + i = nditer([array([3], dtype='u4'), array(0, dtype='i4'), None], [], + [['readonly']]*2+[['writeonly', 'allocate']]) + assert_equal(i.dtypes[2], np.dtype('i8')) + i = nditer([array([3], dtype='u4'), array(-12, dtype='i4'), None], [], + [['readonly']]*2+[['writeonly', 'allocate']]) + assert_equal(i.dtypes[2], np.dtype('i8')) + +def test_iter_allocate_output_types_byte_order(): + # Verify the rules for byte order changes + + # When there's just one input, the output type exactly matches + a = array([3], dtype='u4') + a = a.view(a.dtype.newbyteorder()) + i = nditer([a, None], [], + [['readonly'], ['writeonly', 'allocate']]) + assert_equal(i.dtypes[0], i.dtypes[1]) + # With two or more inputs, the output type is in native byte order + i = nditer([a, a, None], [], + [['readonly'], ['readonly'], ['writeonly', 'allocate']]) + assert_(i.dtypes[0] != i.dtypes[2]) + assert_equal(i.dtypes[0].newbyteorder('='), i.dtypes[2]) + +def test_iter_allocate_output_types_scalar(): + # If the inputs are all scalars, the output should be a scalar + + i = nditer([None, 1, 2.3, np.float32(12), np.complex128(3)], [], + [['writeonly', 'allocate']] + [['readonly']]*4) + assert_equal(i.operands[0].dtype, np.dtype('complex128')) + assert_equal(i.operands[0].ndim, 0) + +def test_iter_allocate_output_subtype(): + # Make sure that the subtype with priority wins + class MyNDArray(np.ndarray): + __array_priority__ = 15 + + # subclass vs ndarray + a = np.array([[1, 2], [3, 4]]).view(MyNDArray) + b = np.arange(4).reshape(2, 2).T + i = nditer([a, b, None], [], + [['readonly'], ['readonly'], ['writeonly', 'allocate']]) + assert_equal(type(a), type(i.operands[2])) + assert_(type(b) is not type(i.operands[2])) + assert_equal(i.operands[2].shape, (2, 2)) + + # If subtypes are disabled, we should get back an ndarray. + i = nditer([a, b, None], [], + [['readonly'], ['readonly'], + ['writeonly', 'allocate', 'no_subtype']]) + assert_equal(type(b), type(i.operands[2])) + assert_(type(a) is not type(i.operands[2])) + assert_equal(i.operands[2].shape, (2, 2)) + +def test_iter_allocate_output_errors(): + # Check that the iterator will throw errors for bad output allocations + + # Need an input if no output data type is specified + a = arange(6) + assert_raises(TypeError, nditer, [a, None], [], + [['writeonly'], ['writeonly', 'allocate']]) + # Allocated output should be flagged for writing + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['allocate', 'readonly']]) + # Allocated output can't have buffering without delayed bufalloc + assert_raises(ValueError, nditer, [a, None], ['buffered'], + ['allocate', 'readwrite']) + # Must specify dtype if there are no inputs (cannot promote existing ones; + # maybe this should use the 'f4' here, but it does not historically.) + assert_raises(TypeError, nditer, [None, None], [], + [['writeonly', 'allocate'], + ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')]) + # If using op_axes, must specify all the axes + a = arange(24, dtype='i4').reshape(2, 3, 4) + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')], + op_axes=[None, [0, np.newaxis, 1]]) + # If using op_axes, the axes must be within bounds + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')], + op_axes=[None, [0, 3, 1]]) + # If using op_axes, there can't be duplicates + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['writeonly', 'allocate']], + op_dtypes=[None, np.dtype('f4')], + op_axes=[None, [0, 2, 1, 0]]) + # Not all axes may be specified if a reduction. If there is a hole + # in op_axes, this is an error. + a = arange(24, dtype='i4').reshape(2, 3, 4) + assert_raises(ValueError, nditer, [a, None], ["reduce_ok"], + [['readonly'], ['readwrite', 'allocate']], + op_dtypes=[None, np.dtype('f4')], + op_axes=[None, [0, np.newaxis, 2]]) + +def test_all_allocated(): + # When no output and no shape is given, `()` is used as shape. + i = np.nditer([None], op_dtypes=["int64"]) + assert i.operands[0].shape == () + assert i.dtypes == (np.dtype("int64"),) + + i = np.nditer([None], op_dtypes=["int64"], itershape=(2, 3, 4)) + assert i.operands[0].shape == (2, 3, 4) + +def test_iter_remove_axis(): + a = arange(24).reshape(2, 3, 4) + + i = nditer(a, ['multi_index']) + i.remove_axis(1) + assert_equal(list(i), a[:, 0, :].ravel()) + + a = a[::-1, :, :] + i = nditer(a, ['multi_index']) + i.remove_axis(0) + assert_equal(list(i), a[0, :, :].ravel()) + +def test_iter_remove_multi_index_inner_loop(): + # Check that removing multi-index support works + + a = arange(24).reshape(2, 3, 4) + + i = nditer(a, ['multi_index']) + assert_equal(i.ndim, 3) + assert_equal(i.shape, (2, 3, 4)) + assert_equal(i.itviews[0].shape, (2, 3, 4)) + + # Removing the multi-index tracking causes all dimensions to coalesce + before = list(i) + i.remove_multi_index() + after = list(i) + + assert_equal(before, after) + assert_equal(i.ndim, 1) + assert_raises(ValueError, lambda i: i.shape, i) + assert_equal(i.itviews[0].shape, (24,)) + + # Removing the inner loop means there's just one iteration + i.reset() + assert_equal(i.itersize, 24) + assert_equal(i[0].shape, tuple()) + i.enable_external_loop() + assert_equal(i.itersize, 24) + assert_equal(i[0].shape, (24,)) + assert_equal(i.value, arange(24)) + +def test_iter_iterindex(): + # Make sure iterindex works + + buffersize = 5 + a = arange(24).reshape(4, 3, 2) + for flags in ([], ['buffered']): + i = nditer(a, flags, buffersize=buffersize) + assert_equal(iter_iterindices(i), list(range(24))) + i.iterindex = 2 + assert_equal(iter_iterindices(i), list(range(2, 24))) + + i = nditer(a, flags, order='F', buffersize=buffersize) + assert_equal(iter_iterindices(i), list(range(24))) + i.iterindex = 5 + assert_equal(iter_iterindices(i), list(range(5, 24))) + + i = nditer(a[::-1], flags, order='F', buffersize=buffersize) + assert_equal(iter_iterindices(i), list(range(24))) + i.iterindex = 9 + assert_equal(iter_iterindices(i), list(range(9, 24))) + + i = nditer(a[::-1, ::-1], flags, order='C', buffersize=buffersize) + assert_equal(iter_iterindices(i), list(range(24))) + i.iterindex = 13 + assert_equal(iter_iterindices(i), list(range(13, 24))) + + i = nditer(a[::1, ::-1], flags, buffersize=buffersize) + assert_equal(iter_iterindices(i), list(range(24))) + i.iterindex = 23 + assert_equal(iter_iterindices(i), list(range(23, 24))) + i.reset() + i.iterindex = 2 + assert_equal(iter_iterindices(i), list(range(2, 24))) + +def test_iter_iterrange(): + # Make sure getting and resetting the iterrange works + + buffersize = 5 + a = arange(24, dtype='i4').reshape(4, 3, 2) + a_fort = a.ravel(order='F') + + i = nditer(a, ['ranged'], ['readonly'], order='F', + buffersize=buffersize) + assert_equal(i.iterrange, (0, 24)) + assert_equal([x[()] for x in i], a_fort) + for r in [(0, 24), (1, 2), (3, 24), (5, 5), (0, 20), (23, 24)]: + i.iterrange = r + assert_equal(i.iterrange, r) + assert_equal([x[()] for x in i], a_fort[r[0]:r[1]]) + + i = nditer(a, ['ranged', 'buffered'], ['readonly'], order='F', + op_dtypes='f8', buffersize=buffersize) + assert_equal(i.iterrange, (0, 24)) + assert_equal([x[()] for x in i], a_fort) + for r in [(0, 24), (1, 2), (3, 24), (5, 5), (0, 20), (23, 24)]: + i.iterrange = r + assert_equal(i.iterrange, r) + assert_equal([x[()] for x in i], a_fort[r[0]:r[1]]) + + def get_array(i): + val = np.array([], dtype='f8') + for x in i: + val = np.concatenate((val, x)) + return val + + i = nditer(a, ['ranged', 'buffered', 'external_loop'], + ['readonly'], order='F', + op_dtypes='f8', buffersize=buffersize) + assert_equal(i.iterrange, (0, 24)) + assert_equal(get_array(i), a_fort) + for r in [(0, 24), (1, 2), (3, 24), (5, 5), (0, 20), (23, 24)]: + i.iterrange = r + assert_equal(i.iterrange, r) + assert_equal(get_array(i), a_fort[r[0]:r[1]]) + +def test_iter_buffering(): + # Test buffering with several buffer sizes and types + arrays = [] + # F-order swapped array + _tmp = np.arange(24, dtype='c16').reshape(2, 3, 4).T + _tmp = _tmp.view(_tmp.dtype.newbyteorder()).byteswap() + arrays.append(_tmp) + # Contiguous 1-dimensional array + arrays.append(np.arange(10, dtype='f4')) + # Unaligned array + a = np.zeros((4*16+1,), dtype='i1')[1:] + a.dtype = 'i4' + a[:] = np.arange(16, dtype='i4') + arrays.append(a) + # 4-D F-order array + arrays.append(np.arange(120, dtype='i4').reshape(5, 3, 2, 4).T) + for a in arrays: + for buffersize in (1, 2, 3, 5, 8, 11, 16, 1024): + vals = [] + i = nditer(a, ['buffered', 'external_loop'], + [['readonly', 'nbo', 'aligned']], + order='C', + casting='equiv', + buffersize=buffersize) + while not i.finished: + assert_(i[0].size <= buffersize) + vals.append(i[0].copy()) + i.iternext() + assert_equal(np.concatenate(vals), a.ravel(order='C')) + +def test_iter_write_buffering(): + # Test that buffering of writes is working + + # F-order swapped array + a = np.arange(24).reshape(2, 3, 4).T + a = a.view(a.dtype.newbyteorder()).byteswap() + i = nditer(a, ['buffered'], + [['readwrite', 'nbo', 'aligned']], + casting='equiv', + order='C', + buffersize=16) + x = 0 + with i: + while not i.finished: + i[0] = x + x += 1 + i.iternext() + assert_equal(a.ravel(order='C'), np.arange(24)) + +def test_iter_buffering_delayed_alloc(): + # Test that delaying buffer allocation works + + a = np.arange(6) + b = np.arange(1, dtype='f4') + i = nditer([a, b], ['buffered', 'delay_bufalloc', 'multi_index', 'reduce_ok'], + ['readwrite'], + casting='unsafe', + op_dtypes='f4') + assert_(i.has_delayed_bufalloc) + assert_raises(ValueError, lambda i: i.multi_index, i) + assert_raises(ValueError, lambda i: i[0], i) + assert_raises(ValueError, lambda i: i[0:2], i) + + def assign_iter(i): + i[0] = 0 + assert_raises(ValueError, assign_iter, i) + + i.reset() + assert_(not i.has_delayed_bufalloc) + assert_equal(i.multi_index, (0,)) + with i: + assert_equal(i[0], 0) + i[1] = 1 + assert_equal(i[0:2], [0, 1]) + assert_equal([[x[0][()], x[1][()]] for x in i], list(zip(range(6), [1]*6))) + +def test_iter_buffered_cast_simple(): + # Test that buffering can handle a simple cast + + a = np.arange(10, dtype='f4') + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('f8')], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + + assert_equal(a, 2*np.arange(10, dtype='f4')) + +def test_iter_buffered_cast_byteswapped(): + # Test that buffering can handle a cast which requires swap->cast->swap + + a = np.arange(10, dtype='f4') + a = a.view(a.dtype.newbyteorder()).byteswap() + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('f8').newbyteorder()], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + + assert_equal(a, 2*np.arange(10, dtype='f4')) + + with suppress_warnings() as sup: + sup.filter(np.exceptions.ComplexWarning) + + a = np.arange(10, dtype='f8') + a = a.view(a.dtype.newbyteorder()).byteswap() + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='unsafe', + op_dtypes=[np.dtype('c8').newbyteorder()], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + + assert_equal(a, 2*np.arange(10, dtype='f8')) + +def test_iter_buffered_cast_byteswapped_complex(): + # Test that buffering can handle a cast which requires swap->cast->copy + + a = np.arange(10, dtype='c8') + a = a.view(a.dtype.newbyteorder()).byteswap() + a += 2j + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('c16')], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + assert_equal(a, 2*np.arange(10, dtype='c8') + 4j) + + a = np.arange(10, dtype='c8') + a += 2j + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('c16').newbyteorder()], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + assert_equal(a, 2*np.arange(10, dtype='c8') + 4j) + + a = np.arange(10, dtype=np.clongdouble) + a = a.view(a.dtype.newbyteorder()).byteswap() + a += 2j + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('c16')], + buffersize=3) + with i: + for v in i: + v[...] *= 2 + assert_equal(a, 2*np.arange(10, dtype=np.clongdouble) + 4j) + + a = np.arange(10, dtype=np.longdouble) + a = a.view(a.dtype.newbyteorder()).byteswap() + i = nditer(a, ['buffered', 'external_loop'], + [['readwrite', 'nbo', 'aligned']], + casting='same_kind', + op_dtypes=[np.dtype('f4')], + buffersize=7) + with i: + for v in i: + v[...] *= 2 + assert_equal(a, 2*np.arange(10, dtype=np.longdouble)) + +def test_iter_buffered_cast_structured_type(): + # Tests buffering of structured types + + # simple -> struct type (duplicates the value) + sdt = [('a', 'f4'), ('b', 'i8'), ('c', 'c8', (2, 3)), ('d', 'O')] + a = np.arange(3, dtype='f4') + 0.5 + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt) + vals = [np.array(x) for x in i] + assert_equal(vals[0]['a'], 0.5) + assert_equal(vals[0]['b'], 0) + assert_equal(vals[0]['c'], [[(0.5)]*3]*2) + assert_equal(vals[0]['d'], 0.5) + assert_equal(vals[1]['a'], 1.5) + assert_equal(vals[1]['b'], 1) + assert_equal(vals[1]['c'], [[(1.5)]*3]*2) + assert_equal(vals[1]['d'], 1.5) + assert_equal(vals[0].dtype, np.dtype(sdt)) + + # object -> struct type + sdt = [('a', 'f4'), ('b', 'i8'), ('c', 'c8', (2, 3)), ('d', 'O')] + a = np.zeros((3,), dtype='O') + a[0] = (0.5, 0.5, [[0.5, 0.5, 0.5], [0.5, 0.5, 0.5]], 0.5) + a[1] = (1.5, 1.5, [[1.5, 1.5, 1.5], [1.5, 1.5, 1.5]], 1.5) + a[2] = (2.5, 2.5, [[2.5, 2.5, 2.5], [2.5, 2.5, 2.5]], 2.5) + if HAS_REFCOUNT: + rc = sys.getrefcount(a[0]) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt) + vals = [x.copy() for x in i] + assert_equal(vals[0]['a'], 0.5) + assert_equal(vals[0]['b'], 0) + assert_equal(vals[0]['c'], [[(0.5)]*3]*2) + assert_equal(vals[0]['d'], 0.5) + assert_equal(vals[1]['a'], 1.5) + assert_equal(vals[1]['b'], 1) + assert_equal(vals[1]['c'], [[(1.5)]*3]*2) + assert_equal(vals[1]['d'], 1.5) + assert_equal(vals[0].dtype, np.dtype(sdt)) + vals, i, x = [None]*3 + if HAS_REFCOUNT: + assert_equal(sys.getrefcount(a[0]), rc) + + # single-field struct type -> simple + sdt = [('a', 'f4')] + a = np.array([(5.5,), (8,)], dtype=sdt) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes='i4') + assert_equal([x_[()] for x_ in i], [5, 8]) + + # make sure multi-field struct type -> simple doesn't work + sdt = [('a', 'f4'), ('b', 'i8'), ('d', 'O')] + a = np.array([(5.5, 7, 'test'), (8, 10, 11)], dtype=sdt) + assert_raises(TypeError, lambda: ( + nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes='i4'))) + + # struct type -> struct type (field-wise copy) + sdt1 = [('a', 'f4'), ('b', 'i8'), ('d', 'O')] + sdt2 = [('d', 'u2'), ('a', 'O'), ('b', 'f8')] + a = np.array([(1, 2, 3), (4, 5, 6)], dtype=sdt1) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + assert_equal([np.array(x_) for x_ in i], + [np.array((1, 2, 3), dtype=sdt2), + np.array((4, 5, 6), dtype=sdt2)]) + + +def test_iter_buffered_cast_structured_type_failure_with_cleanup(): + # make sure struct type -> struct type with different + # number of fields fails + sdt1 = [('a', 'f4'), ('b', 'i8'), ('d', 'O')] + sdt2 = [('b', 'O'), ('a', 'f8')] + a = np.array([(1, 2, 3), (4, 5, 6)], dtype=sdt1) + + for intent in ["readwrite", "readonly", "writeonly"]: + # This test was initially designed to test an error at a different + # place, but will now raise earlier to to the cast not being possible: + # `assert np.can_cast(a.dtype, sdt2, casting="unsafe")` fails. + # Without a faulty DType, there is probably no reliable + # way to get the initial tested behaviour. + simple_arr = np.array([1, 2], dtype="i,i") # requires clean up + with pytest.raises(TypeError): + nditer((simple_arr, a), ['buffered', 'refs_ok'], [intent, intent], + casting='unsafe', op_dtypes=["f,f", sdt2]) + + +def test_buffered_cast_error_paths(): + with pytest.raises(ValueError): + # The input is cast into an `S3` buffer + np.nditer((np.array("a", dtype="S1"),), op_dtypes=["i"], + casting="unsafe", flags=["buffered"]) + + # The `M8[ns]` is cast into the `S3` output + it = np.nditer((np.array(1, dtype="i"),), op_dtypes=["S1"], + op_flags=["writeonly"], casting="unsafe", flags=["buffered"]) + with pytest.raises(ValueError): + with it: + buf = next(it) + buf[...] = "a" # cannot be converted to int. + +@pytest.mark.skipif(IS_WASM, reason="Cannot start subprocess") +@pytest.mark.skipif(not HAS_REFCOUNT, reason="PyPy seems to not hit this.") +def test_buffered_cast_error_paths_unraisable(): + # The following gives an unraisable error. Pytest sometimes captures that + # (depending python and/or pytest version). So with Python>=3.8 this can + # probably be cleaned out in the future to check for + # pytest.PytestUnraisableExceptionWarning: + code = textwrap.dedent(""" + import numpy as np + + it = np.nditer((np.array(1, dtype="i"),), op_dtypes=["S1"], + op_flags=["writeonly"], casting="unsafe", flags=["buffered"]) + buf = next(it) + buf[...] = "a" + del buf, it # Flushing only happens during deallocate right now. + """) + res = subprocess.check_output([sys.executable, "-c", code], + stderr=subprocess.STDOUT, text=True) + assert "ValueError" in res + + +def test_iter_buffered_cast_subarray(): + # Tests buffering of subarrays + + # one element -> many (copies it to all) + sdt1 = [('a', 'f4')] + sdt2 = [('a', 'f8', (3, 2, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + for x, count in zip(i, list(range(6))): + assert_(np.all(x['a'] == count)) + + # one element -> many -> back (copies it to all) + sdt1 = [('a', 'O', (1, 1))] + sdt2 = [('a', 'O', (3, 2, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'][:, 0, 0] = np.arange(6) + i = nditer(a, ['buffered', 'refs_ok'], ['readwrite'], + casting='unsafe', + op_dtypes=sdt2) + with i: + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_(np.all(x['a'] == count)) + x['a'][0] += 2 + count += 1 + assert_equal(a['a'], np.arange(6).reshape(6, 1, 1)+2) + + # many -> one element -> back (copies just element 0) + sdt1 = [('a', 'O', (3, 2, 2))] + sdt2 = [('a', 'O', (1,))] + a = np.zeros((6,), dtype=sdt1) + a['a'][:, 0, 0, 0] = np.arange(6) + i = nditer(a, ['buffered', 'refs_ok'], ['readwrite'], + casting='unsafe', + op_dtypes=sdt2) + with i: + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'], count) + x['a'] += 2 + count += 1 + assert_equal(a['a'], np.arange(6).reshape(6, 1, 1, 1)*np.ones((1, 3, 2, 2))+2) + + # many -> one element -> back (copies just element 0) + sdt1 = [('a', 'f8', (3, 2, 2))] + sdt2 = [('a', 'O', (1,))] + a = np.zeros((6,), dtype=sdt1) + a['a'][:, 0, 0, 0] = np.arange(6) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'], count) + count += 1 + + # many -> one element (copies just element 0) + sdt1 = [('a', 'O', (3, 2, 2))] + sdt2 = [('a', 'f4', (1,))] + a = np.zeros((6,), dtype=sdt1) + a['a'][:, 0, 0, 0] = np.arange(6) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'], count) + count += 1 + + # many -> matching shape (straightforward copy) + sdt1 = [('a', 'O', (3, 2, 2))] + sdt2 = [('a', 'f4', (3, 2, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*3*2*2).reshape(6, 3, 2, 2) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'], a[count]['a']) + count += 1 + + # vector -> smaller vector (truncates) + sdt1 = [('a', 'f8', (6,))] + sdt2 = [('a', 'f4', (2,))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*6).reshape(6, 6) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'], a[count]['a'][:2]) + count += 1 + + # vector -> bigger vector (pads with zeros) + sdt1 = [('a', 'f8', (2,))] + sdt2 = [('a', 'f4', (6,))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*2).reshape(6, 2) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'][:2], a[count]['a']) + assert_equal(x['a'][2:], [0, 0, 0, 0]) + count += 1 + + # vector -> matrix (broadcasts) + sdt1 = [('a', 'f8', (2,))] + sdt2 = [('a', 'f4', (2, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*2).reshape(6, 2) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'][0], a[count]['a']) + assert_equal(x['a'][1], a[count]['a']) + count += 1 + + # vector -> matrix (broadcasts and zero-pads) + sdt1 = [('a', 'f8', (2, 1))] + sdt2 = [('a', 'f4', (3, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*2).reshape(6, 2, 1) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'][:2, 0], a[count]['a'][:, 0]) + assert_equal(x['a'][:2, 1], a[count]['a'][:, 0]) + assert_equal(x['a'][2, :], [0, 0]) + count += 1 + + # matrix -> matrix (truncates and zero-pads) + sdt1 = [('a', 'f8', (2, 3))] + sdt2 = [('a', 'f4', (3, 2))] + a = np.zeros((6,), dtype=sdt1) + a['a'] = np.arange(6*2*3).reshape(6, 2, 3) + i = nditer(a, ['buffered', 'refs_ok'], ['readonly'], + casting='unsafe', + op_dtypes=sdt2) + assert_equal(i[0].dtype, np.dtype(sdt2)) + count = 0 + for x in i: + assert_equal(x['a'][:2, 0], a[count]['a'][:, 0]) + assert_equal(x['a'][:2, 1], a[count]['a'][:, 1]) + assert_equal(x['a'][2, :], [0, 0]) + count += 1 + +def test_iter_buffering_badwriteback(): + # Writing back from a buffer cannot combine elements + + # a needs write buffering, but had a broadcast dimension + a = np.arange(6).reshape(2, 3, 1) + b = np.arange(12).reshape(2, 3, 2) + assert_raises(ValueError, nditer, [a, b], + ['buffered', 'external_loop'], + [['readwrite'], ['writeonly']], + order='C') + + # But if a is readonly, it's fine + nditer([a, b], ['buffered', 'external_loop'], + [['readonly'], ['writeonly']], + order='C') + + # If a has just one element, it's fine too (constant 0 stride, a reduction) + a = np.arange(1).reshape(1, 1, 1) + nditer([a, b], ['buffered', 'external_loop', 'reduce_ok'], + [['readwrite'], ['writeonly']], + order='C') + + # check that it fails on other dimensions too + a = np.arange(6).reshape(1, 3, 2) + assert_raises(ValueError, nditer, [a, b], + ['buffered', 'external_loop'], + [['readwrite'], ['writeonly']], + order='C') + a = np.arange(4).reshape(2, 1, 2) + assert_raises(ValueError, nditer, [a, b], + ['buffered', 'external_loop'], + [['readwrite'], ['writeonly']], + order='C') + +def test_iter_buffering_string(): + # Safe casting disallows shrinking strings + a = np.array(['abc', 'a', 'abcd'], dtype=np.bytes_) + assert_equal(a.dtype, np.dtype('S4')) + assert_raises(TypeError, nditer, a, ['buffered'], ['readonly'], + op_dtypes='S2') + i = nditer(a, ['buffered'], ['readonly'], op_dtypes='S6') + assert_equal(i[0], b'abc') + assert_equal(i[0].dtype, np.dtype('S6')) + + a = np.array(['abc', 'a', 'abcd'], dtype=np.str_) + assert_equal(a.dtype, np.dtype('U4')) + assert_raises(TypeError, nditer, a, ['buffered'], ['readonly'], + op_dtypes='U2') + i = nditer(a, ['buffered'], ['readonly'], op_dtypes='U6') + assert_equal(i[0], 'abc') + assert_equal(i[0].dtype, np.dtype('U6')) + +def test_iter_buffering_growinner(): + # Test that the inner loop grows when no buffering is needed + a = np.arange(30) + i = nditer(a, ['buffered', 'growinner', 'external_loop'], + buffersize=5) + # Should end up with just one inner loop here + assert_equal(i[0].size, a.size) + + +@pytest.mark.slow +def test_iter_buffered_reduce_reuse(): + # large enough array for all views, including negative strides. + a = np.arange(2*3**5)[3**5:3**5+1] + flags = ['buffered', 'delay_bufalloc', 'multi_index', 'reduce_ok', 'refs_ok'] + op_flags = [('readonly',), ('readwrite', 'allocate')] + op_axes_list = [[(0, 1, 2), (0, 1, -1)], [(0, 1, 2), (0, -1, -1)]] + # wrong dtype to force buffering + op_dtypes = [float, a.dtype] + + def get_params(): + for xs in range(-3**2, 3**2 + 1): + for ys in range(xs, 3**2 + 1): + for op_axes in op_axes_list: + # last stride is reduced and because of that not + # important for this test, as it is the inner stride. + strides = (xs * a.itemsize, ys * a.itemsize, a.itemsize) + arr = np.lib.stride_tricks.as_strided(a, (3, 3, 3), strides) + + for skip in [0, 1]: + yield arr, op_axes, skip + + for arr, op_axes, skip in get_params(): + nditer2 = np.nditer([arr.copy(), None], + op_axes=op_axes, flags=flags, op_flags=op_flags, + op_dtypes=op_dtypes) + with nditer2: + nditer2.operands[-1][...] = 0 + nditer2.reset() + nditer2.iterindex = skip + + for (a2_in, b2_in) in nditer2: + b2_in += a2_in.astype(np.int_) + + comp_res = nditer2.operands[-1] + + for bufsize in range(0, 3**3): + nditer1 = np.nditer([arr, None], + op_axes=op_axes, flags=flags, op_flags=op_flags, + buffersize=bufsize, op_dtypes=op_dtypes) + with nditer1: + nditer1.operands[-1][...] = 0 + nditer1.reset() + nditer1.iterindex = skip + + for (a1_in, b1_in) in nditer1: + b1_in += a1_in.astype(np.int_) + + res = nditer1.operands[-1] + assert_array_equal(res, comp_res) + + +def test_iter_no_broadcast(): + # Test that the no_broadcast flag works + a = np.arange(24).reshape(2, 3, 4) + b = np.arange(6).reshape(2, 3, 1) + c = np.arange(12).reshape(3, 4) + + nditer([a, b, c], [], + [['readonly', 'no_broadcast'], + ['readonly'], ['readonly']]) + assert_raises(ValueError, nditer, [a, b, c], [], + [['readonly'], ['readonly', 'no_broadcast'], ['readonly']]) + assert_raises(ValueError, nditer, [a, b, c], [], + [['readonly'], ['readonly'], ['readonly', 'no_broadcast']]) + + +class TestIterNested: + + def test_basic(self): + # Test nested iteration basic usage + a = arange(12).reshape(2, 3, 2) + + i, j = np.nested_iters(a, [[0], [1, 2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1, 2, 3, 4, 5], [6, 7, 8, 9, 10, 11]]) + + i, j = np.nested_iters(a, [[0, 1], [2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1], [2, 3], [4, 5], [6, 7], [8, 9], [10, 11]]) + + i, j = np.nested_iters(a, [[0, 2], [1]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 2, 4], [1, 3, 5], [6, 8, 10], [7, 9, 11]]) + + def test_reorder(self): + # Test nested iteration basic usage + a = arange(12).reshape(2, 3, 2) + + # In 'K' order (default), it gets reordered + i, j = np.nested_iters(a, [[0], [2, 1]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1, 2, 3, 4, 5], [6, 7, 8, 9, 10, 11]]) + + i, j = np.nested_iters(a, [[1, 0], [2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1], [2, 3], [4, 5], [6, 7], [8, 9], [10, 11]]) + + i, j = np.nested_iters(a, [[2, 0], [1]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 2, 4], [1, 3, 5], [6, 8, 10], [7, 9, 11]]) + + # In 'C' order, it doesn't + i, j = np.nested_iters(a, [[0], [2, 1]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 2, 4, 1, 3, 5], [6, 8, 10, 7, 9, 11]]) + + i, j = np.nested_iters(a, [[1, 0], [2]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1], [6, 7], [2, 3], [8, 9], [4, 5], [10, 11]]) + + i, j = np.nested_iters(a, [[2, 0], [1]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 2, 4], [6, 8, 10], [1, 3, 5], [7, 9, 11]]) + + def test_flip_axes(self): + # Test nested iteration with negative axes + a = arange(12).reshape(2, 3, 2)[::-1, ::-1, ::-1] + + # In 'K' order (default), the axes all get flipped + i, j = np.nested_iters(a, [[0], [1, 2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1, 2, 3, 4, 5], [6, 7, 8, 9, 10, 11]]) + + i, j = np.nested_iters(a, [[0, 1], [2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1], [2, 3], [4, 5], [6, 7], [8, 9], [10, 11]]) + + i, j = np.nested_iters(a, [[0, 2], [1]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 2, 4], [1, 3, 5], [6, 8, 10], [7, 9, 11]]) + + # In 'C' order, flipping axes is disabled + i, j = np.nested_iters(a, [[0], [1, 2]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[11, 10, 9, 8, 7, 6], [5, 4, 3, 2, 1, 0]]) + + i, j = np.nested_iters(a, [[0, 1], [2]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[11, 10], [9, 8], [7, 6], [5, 4], [3, 2], [1, 0]]) + + i, j = np.nested_iters(a, [[0, 2], [1]], order='C') + vals = [list(j) for _ in i] + assert_equal(vals, [[11, 9, 7], [10, 8, 6], [5, 3, 1], [4, 2, 0]]) + + def test_broadcast(self): + # Test nested iteration with broadcasting + a = arange(2).reshape(2, 1) + b = arange(3).reshape(1, 3) + + i, j = np.nested_iters([a, b], [[0], [1]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[[0, 0], [0, 1], [0, 2]], [[1, 0], [1, 1], [1, 2]]]) + + i, j = np.nested_iters([a, b], [[1], [0]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[[0, 0], [1, 0]], [[0, 1], [1, 1]], [[0, 2], [1, 2]]]) + + def test_dtype_copy(self): + # Test nested iteration with a copy to change dtype + + # copy + a = arange(6, dtype='i4').reshape(2, 3) + i, j = np.nested_iters(a, [[0], [1]], + op_flags=['readonly', 'copy'], + op_dtypes='f8') + assert_equal(j[0].dtype, np.dtype('f8')) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1, 2], [3, 4, 5]]) + vals = None + + # writebackifcopy - using context manager + a = arange(6, dtype='f4').reshape(2, 3) + i, j = np.nested_iters(a, [[0], [1]], + op_flags=['readwrite', 'updateifcopy'], + casting='same_kind', + op_dtypes='f8') + with i, j: + assert_equal(j[0].dtype, np.dtype('f8')) + for x in i: + for y in j: + y[...] += 1 + assert_equal(a, [[0, 1, 2], [3, 4, 5]]) + assert_equal(a, [[1, 2, 3], [4, 5, 6]]) + + # writebackifcopy - using close() + a = arange(6, dtype='f4').reshape(2, 3) + i, j = np.nested_iters(a, [[0], [1]], + op_flags=['readwrite', 'updateifcopy'], + casting='same_kind', + op_dtypes='f8') + assert_equal(j[0].dtype, np.dtype('f8')) + for x in i: + for y in j: + y[...] += 1 + assert_equal(a, [[0, 1, 2], [3, 4, 5]]) + i.close() + j.close() + assert_equal(a, [[1, 2, 3], [4, 5, 6]]) + + def test_dtype_buffered(self): + # Test nested iteration with buffering to change dtype + + a = arange(6, dtype='f4').reshape(2, 3) + i, j = np.nested_iters(a, [[0], [1]], + flags=['buffered'], + op_flags=['readwrite'], + casting='same_kind', + op_dtypes='f8') + assert_equal(j[0].dtype, np.dtype('f8')) + for x in i: + for y in j: + y[...] += 1 + assert_equal(a, [[1, 2, 3], [4, 5, 6]]) + + def test_0d(self): + a = np.arange(12).reshape(2, 3, 2) + i, j = np.nested_iters(a, [[], [1, 0, 2]]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11]]) + + i, j = np.nested_iters(a, [[1, 0, 2], []]) + vals = [list(j) for _ in i] + assert_equal(vals, [[0], [1], [2], [3], [4], [5], [6], [7], [8], [9], [10], [11]]) + + i, j, k = np.nested_iters(a, [[2, 0], [], [1]]) + vals = [] + for x in i: + for y in j: + vals.append(list(k)) + assert_equal(vals, [[0, 2, 4], [1, 3, 5], [6, 8, 10], [7, 9, 11]]) + + def test_iter_nested_iters_dtype_buffered(self): + # Test nested iteration with buffering to change dtype + + a = arange(6, dtype='f4').reshape(2, 3) + i, j = np.nested_iters(a, [[0], [1]], + flags=['buffered'], + op_flags=['readwrite'], + casting='same_kind', + op_dtypes='f8') + with i, j: + assert_equal(j[0].dtype, np.dtype('f8')) + for x in i: + for y in j: + y[...] += 1 + assert_equal(a, [[1, 2, 3], [4, 5, 6]]) + +def test_iter_reduction_error(): + + a = np.arange(6) + assert_raises(ValueError, nditer, [a, None], [], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[[0], [-1]]) + + a = np.arange(6).reshape(2, 3) + assert_raises(ValueError, nditer, [a, None], ['external_loop'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[[0, 1], [-1, -1]]) + +def test_iter_reduction(): + # Test doing reductions with the iterator + + a = np.arange(6) + i = nditer([a, None], ['reduce_ok'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[[0], [-1]]) + # Need to initialize the output operand to the addition unit + with i: + i.operands[1][...] = 0 + # Do the reduction + for x, y in i: + y[...] += x + # Since no axes were specified, should have allocated a scalar + assert_equal(i.operands[1].ndim, 0) + assert_equal(i.operands[1], np.sum(a)) + + a = np.arange(6).reshape(2, 3) + i = nditer([a, None], ['reduce_ok', 'external_loop'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[[0, 1], [-1, -1]]) + # Need to initialize the output operand to the addition unit + with i: + i.operands[1][...] = 0 + # Reduction shape/strides for the output + assert_equal(i[1].shape, (6,)) + assert_equal(i[1].strides, (0,)) + # Do the reduction + for x, y in i: + # Use a for loop instead of ``y[...] += x`` + # (equivalent to ``y[...] = y[...].copy() + x``), + # because y has zero strides we use for the reduction + for j in range(len(y)): + y[j] += x[j] + # Since no axes were specified, should have allocated a scalar + assert_equal(i.operands[1].ndim, 0) + assert_equal(i.operands[1], np.sum(a)) + + # This is a tricky reduction case for the buffering double loop + # to handle + a = np.ones((2, 3, 5)) + it1 = nditer([a, None], ['reduce_ok', 'external_loop'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[None, [0, -1, 1]]) + it2 = nditer([a, None], ['reduce_ok', 'external_loop', + 'buffered', 'delay_bufalloc'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[None, [0, -1, 1]], buffersize=10) + with it1, it2: + it1.operands[1].fill(0) + it2.operands[1].fill(0) + it2.reset() + for x in it1: + x[1][...] += x[0] + for x in it2: + x[1][...] += x[0] + assert_equal(it1.operands[1], it2.operands[1]) + assert_equal(it2.operands[1].sum(), a.size) + +def test_iter_buffering_reduction(): + # Test doing buffered reductions with the iterator + + a = np.arange(6) + b = np.array(0., dtype='f8').byteswap() + b = b.view(b.dtype.newbyteorder()) + i = nditer([a, b], ['reduce_ok', 'buffered'], + [['readonly'], ['readwrite', 'nbo']], + op_axes=[[0], [-1]]) + with i: + assert_equal(i[1].dtype, np.dtype('f8')) + assert_(i[1].dtype != b.dtype) + # Do the reduction + for x, y in i: + y[...] += x + # Since no axes were specified, should have allocated a scalar + assert_equal(b, np.sum(a)) + + a = np.arange(6).reshape(2, 3) + b = np.array([0, 0], dtype='f8').byteswap() + b = b.view(b.dtype.newbyteorder()) + i = nditer([a, b], ['reduce_ok', 'external_loop', 'buffered'], + [['readonly'], ['readwrite', 'nbo']], + op_axes=[[0, 1], [0, -1]]) + # Reduction shape/strides for the output + with i: + assert_equal(i[1].shape, (3,)) + assert_equal(i[1].strides, (0,)) + # Do the reduction + for x, y in i: + # Use a for loop instead of ``y[...] += x`` + # (equivalent to ``y[...] = y[...].copy() + x``), + # because y has zero strides we use for the reduction + for j in range(len(y)): + y[j] += x[j] + assert_equal(b, np.sum(a, axis=1)) + + # Iterator inner double loop was wrong on this one + p = np.arange(2) + 1 + it = np.nditer([p, None], + ['delay_bufalloc', 'reduce_ok', 'buffered', 'external_loop'], + [['readonly'], ['readwrite', 'allocate']], + op_axes=[[-1, 0], [-1, -1]], + itershape=(2, 2)) + with it: + it.operands[1].fill(0) + it.reset() + assert_equal(it[0], [1, 2, 1, 2]) + + # Iterator inner loop should take argument contiguity into account + x = np.ones((7, 13, 8), np.int8)[4:6, 1:11:6, 1:5].transpose(1, 2, 0) + x[...] = np.arange(x.size).reshape(x.shape) + y_base = np.arange(4*4, dtype=np.int8).reshape(4, 4) + y_base_copy = y_base.copy() + y = y_base[::2, :, None] + + it = np.nditer([y, x], + ['buffered', 'external_loop', 'reduce_ok'], + [['readwrite'], ['readonly']]) + with it: + for a, b in it: + a.fill(2) + + assert_equal(y_base[1::2], y_base_copy[1::2]) + assert_equal(y_base[::2], 2) + +def test_iter_buffering_reduction_reuse_reduce_loops(): + # There was a bug triggering reuse of the reduce loop inappropriately, + # which caused processing to happen in unnecessarily small chunks + # and overran the buffer. + + a = np.zeros((2, 7)) + b = np.zeros((1, 7)) + it = np.nditer([a, b], flags=['reduce_ok', 'external_loop', 'buffered'], + op_flags=[['readonly'], ['readwrite']], + buffersize=5) + + with it: + bufsizes = [x.shape[0] for x, y in it] + assert_equal(bufsizes, [5, 2, 5, 2]) + assert_equal(sum(bufsizes), a.size) + +def test_iter_writemasked_badinput(): + a = np.zeros((2, 3)) + b = np.zeros((3,)) + m = np.array([[True, True, False], [False, True, False]]) + m2 = np.array([True, True, False]) + m3 = np.array([0, 1, 1], dtype='u1') + mbad1 = np.array([0, 1, 1], dtype='i1') + mbad2 = np.array([0, 1, 1], dtype='f4') + + # Need an 'arraymask' if any operand is 'writemasked' + assert_raises(ValueError, nditer, [a, m], [], + [['readwrite', 'writemasked'], ['readonly']]) + + # A 'writemasked' operand must not be readonly + assert_raises(ValueError, nditer, [a, m], [], + [['readonly', 'writemasked'], ['readonly', 'arraymask']]) + + # 'writemasked' and 'arraymask' may not be used together + assert_raises(ValueError, nditer, [a, m], [], + [['readonly'], ['readwrite', 'arraymask', 'writemasked']]) + + # 'arraymask' may only be specified once + assert_raises(ValueError, nditer, [a, m, m2], [], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask'], + ['readonly', 'arraymask']]) + + # An 'arraymask' with nothing 'writemasked' also doesn't make sense + assert_raises(ValueError, nditer, [a, m], [], + [['readwrite'], ['readonly', 'arraymask']]) + + # A writemasked reduction requires a similarly smaller mask + assert_raises(ValueError, nditer, [a, b, m], ['reduce_ok'], + [['readonly'], + ['readwrite', 'writemasked'], + ['readonly', 'arraymask']]) + # But this should work with a smaller/equal mask to the reduction operand + np.nditer([a, b, m2], ['reduce_ok'], + [['readonly'], + ['readwrite', 'writemasked'], + ['readonly', 'arraymask']]) + # The arraymask itself cannot be a reduction + assert_raises(ValueError, nditer, [a, b, m2], ['reduce_ok'], + [['readonly'], + ['readwrite', 'writemasked'], + ['readwrite', 'arraymask']]) + + # A uint8 mask is ok too + np.nditer([a, m3], ['buffered'], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']], + op_dtypes=['f4', None], + casting='same_kind') + # An int8 mask isn't ok + assert_raises(TypeError, np.nditer, [a, mbad1], ['buffered'], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']], + op_dtypes=['f4', None], + casting='same_kind') + # A float32 mask isn't ok + assert_raises(TypeError, np.nditer, [a, mbad2], ['buffered'], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']], + op_dtypes=['f4', None], + casting='same_kind') + + +def _is_buffered(iterator): + try: + iterator.itviews + except ValueError: + return True + return False + +@pytest.mark.parametrize("a", + [np.zeros((3,), dtype='f8'), + np.zeros((9876, 3*5), dtype='f8')[::2, :], + np.zeros((4, 312, 124, 3), dtype='f8')[::2, :, ::2, :], + # Also test with the last dimension strided (so it does not fit if + # there is repeated access) + np.zeros((9,), dtype='f8')[::3], + np.zeros((9876, 3*10), dtype='f8')[::2, ::5], + np.zeros((4, 312, 124, 3), dtype='f8')[::2, :, ::2, ::-1]]) +def test_iter_writemasked(a): + # Note, the slicing above is to ensure that nditer cannot combine multiple + # axes into one. The repetition is just to make things a bit more + # interesting. + shape = a.shape + reps = shape[-1] // 3 + msk = np.empty(shape, dtype=bool) + msk[...] = [True, True, False] * reps + + # When buffering is unused, 'writemasked' effectively does nothing. + # It's up to the user of the iterator to obey the requested semantics. + it = np.nditer([a, msk], [], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']]) + with it: + for x, m in it: + x[...] = 1 + # Because we violated the semantics, all the values became 1 + assert_equal(a, np.broadcast_to([1, 1, 1] * reps, shape)) + + # Even if buffering is enabled, we still may be accessing the array + # directly. + it = np.nditer([a, msk], ['buffered'], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']]) + # @seberg: I honestly don't currently understand why a "buffered" iterator + # would end up not using a buffer for the small array here at least when + # "writemasked" is used, that seems confusing... Check by testing for + # actual memory overlap! + is_buffered = True + with it: + for x, m in it: + x[...] = 2.5 + if np.may_share_memory(x, a): + is_buffered = False + + if not is_buffered: + # Because we violated the semantics, all the values became 2.5 + assert_equal(a, np.broadcast_to([2.5, 2.5, 2.5] * reps, shape)) + else: + # For large sizes, the iterator may be buffered: + assert_equal(a, np.broadcast_to([2.5, 2.5, 1] * reps, shape)) + a[...] = 2.5 + + # If buffering will definitely happening, for instance because of + # a cast, only the items selected by the mask will be copied back from + # the buffer. + it = np.nditer([a, msk], ['buffered'], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']], + op_dtypes=['i8', None], + casting='unsafe') + with it: + for x, m in it: + x[...] = 3 + # Even though we violated the semantics, only the selected values + # were copied back + assert_equal(a, np.broadcast_to([3, 3, 2.5] * reps, shape)) + + +@pytest.mark.parametrize(["mask", "mask_axes"], [ + # Allocated operand (only broadcasts with -1) + (None, [-1, 0]), + # Reduction along the first dimension (with and without op_axes) + (np.zeros((1, 4), dtype="bool"), [0, 1]), + (np.zeros((1, 4), dtype="bool"), None), + # Test 0-D and -1 op_axes + (np.zeros(4, dtype="bool"), [-1, 0]), + (np.zeros((), dtype="bool"), [-1, -1]), + (np.zeros((), dtype="bool"), None)]) +def test_iter_writemasked_broadcast_error(mask, mask_axes): + # This assumes that a readwrite mask makes sense. This is likely not the + # case and should simply be deprecated. + arr = np.zeros((3, 4)) + itflags = ["reduce_ok"] + mask_flags = ["arraymask", "readwrite", "allocate"] + a_flags = ["writeonly", "writemasked"] + if mask_axes is None: + op_axes = None + else: + op_axes = [mask_axes, [0, 1]] + + with assert_raises(ValueError): + np.nditer((mask, arr), flags=itflags, op_flags=[mask_flags, a_flags], + op_axes=op_axes) + + +def test_iter_writemasked_decref(): + # force casting (to make it interesting) by using a structured dtype. + arr = np.arange(10000).astype(">i,O") + original = arr.copy() + mask = np.random.randint(0, 2, size=10000).astype(bool) + + it = np.nditer([arr, mask], ['buffered', "refs_ok"], + [['readwrite', 'writemasked'], + ['readonly', 'arraymask']], + op_dtypes=[" string -> longdouble` for the + # conversion. But Python may refuse `str(int)` for huge ints. + # In that case, RuntimeWarning would be correct, but conversion + # fails earlier (seems to happen on 32bit linux, possibly only debug). + if dtype in "gG": + try: + str(too_big_int) + except ValueError: + pytest.skip("`huge_int -> string -> longdouble` failed") + + # Otherwise, we overflow to infinity: + with pytest.warns(RuntimeWarning): + res = scalar_type(1) + too_big_int + assert res.dtype == dtype + assert res == np.inf + + with pytest.warns(RuntimeWarning): + # We force the dtype here, since windows may otherwise pick the + # double instead of the longdouble loop. That leads to slightly + # different results (conversion of the int fails as above). + res = np.add(np.array(1, dtype=dtype), too_big_int, dtype=dtype) + assert res.dtype == dtype + assert res == np.inf + + +@pytest.mark.parametrize("op", [operator.add, operator.pow]) +def test_weak_promotion_scalar_path(op): + # Some additional paths exercising the weak scalars. + + # Integer path: + res = op(np.uint8(3), 5) + assert res == op(3, 5) + assert res.dtype == np.uint8 or res.dtype == bool + + with pytest.raises(OverflowError): + op(np.uint8(3), 1000) + + # Float path: + res = op(np.float32(3), 5.) + assert res == op(3., 5.) + assert res.dtype == np.float32 or res.dtype == bool + + +def test_nep50_complex_promotion(): + with pytest.warns(RuntimeWarning, match=".*overflow"): + res = np.complex64(3) + complex(2**300) + + assert type(res) == np.complex64 + + +def test_nep50_integer_conversion_errors(): + # Implementation for error paths is mostly missing (as of writing) + with pytest.raises(OverflowError, match=".*uint8"): + np.array([1], np.uint8) + 300 + + with pytest.raises(OverflowError, match=".*uint8"): + np.uint8(1) + 300 + + # Error message depends on platform (maybe unsigned int or unsigned long) + with pytest.raises(OverflowError, + match="Python integer -1 out of bounds for uint8"): + np.uint8(1) + -1 + + +def test_nep50_with_axisconcatenator(): + # Concatenate/r_ does not promote, so this has to error: + with pytest.raises(OverflowError): + np.r_[np.arange(5, dtype=np.int8), 255] + + +@pytest.mark.parametrize("ufunc", [np.add, np.power]) +def test_nep50_huge_integers(ufunc): + # Very large integers are complicated, because they go to uint64 or + # object dtype. This tests covers a few possible paths. + with pytest.raises(OverflowError): + ufunc(np.int64(0), 2**63) # 2**63 too large for int64 + + with pytest.raises(OverflowError): + ufunc(np.uint64(0), 2**64) # 2**64 cannot be represented by uint64 + + # However, 2**63 can be represented by the uint64 (and that is used): + res = ufunc(np.uint64(1), 2**63) + + assert res.dtype == np.uint64 + assert res == ufunc(1, 2**63, dtype=object) + + # The following paths fail to warn correctly about the change: + with pytest.raises(OverflowError): + ufunc(np.int64(1), 2**63) # np.array(2**63) would go to uint + + with pytest.raises(OverflowError): + ufunc(np.int64(1), 2**100) # np.array(2**100) would go to object + + # This would go to object and thus a Python float, not a NumPy one: + res = ufunc(1.0, 2**100) + assert isinstance(res, np.float64) + + +def test_nep50_in_concat_and_choose(): + res = np.concatenate([np.float32(1), 1.], axis=None) + assert res.dtype == "float32" + + res = np.choose(1, [np.float32(1), 1.]) + assert res.dtype == "float32" + + +@pytest.mark.parametrize("expected,dtypes,optional_dtypes", [ + (np.float32, [np.float32], + [np.float16, 0.0, np.uint16, np.int16, np.int8, 0]), + (np.complex64, [np.float32, 0j], + [np.float16, 0.0, np.uint16, np.int16, np.int8, 0]), + (np.float32, [np.int16, np.uint16, np.float16], + [np.int8, np.uint8, np.float32, 0., 0]), + (np.int32, [np.int16, np.uint16], + [np.int8, np.uint8, 0, np.bool]), + ]) +@hypothesis.given(data=strategies.data()) +def test_expected_promotion(expected, dtypes, optional_dtypes, data): + # Sample randomly while ensuring "dtypes" is always present: + optional = data.draw(strategies.lists( + strategies.sampled_from(dtypes + optional_dtypes))) + all_dtypes = dtypes + optional + dtypes_sample = data.draw(strategies.permutations(all_dtypes)) + + res = np.result_type(*dtypes_sample) + assert res == expected + + +@pytest.mark.parametrize("sctype", + [np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64]) +@pytest.mark.parametrize("other_val", + [-2*100, -1, 0, 9, 10, 11, 2**63, 2*100]) +@pytest.mark.parametrize("comp", + [operator.eq, operator.ne, operator.le, operator.lt, + operator.ge, operator.gt]) +def test_integer_comparison(sctype, other_val, comp): + # Test that comparisons with integers (especially out-of-bound) ones + # works correctly. + val_obj = 10 + val = sctype(val_obj) + # Check that the scalar behaves the same as the python int: + assert comp(10, other_val) == comp(val, other_val) + assert comp(val, other_val) == comp(10, other_val) + # Except for the result type: + assert type(comp(val, other_val)) is np.bool + + # Check that the integer array and object array behave the same: + val_obj = np.array([10, 10], dtype=object) + val = val_obj.astype(sctype) + assert_array_equal(comp(val_obj, other_val), comp(val, other_val)) + assert_array_equal(comp(other_val, val_obj), comp(other_val, val)) + + +@pytest.mark.parametrize("arr", [ + np.ones((100, 100), dtype=np.uint8)[::2], # not trivially iterable + np.ones(20000, dtype=">u4"), # cast and >buffersize + np.ones(100, dtype=">u4"), # fast path compatible with cast +]) +def test_integer_comparison_with_cast(arr): + # Similar to above, but mainly test a few cases that cover the slow path + # the test is limited to unsigned ints and -1 for simplicity. + res = arr >= -1 + assert_array_equal(res, np.ones_like(arr, dtype=bool)) + res = arr < -1 + assert_array_equal(res, np.zeros_like(arr, dtype=bool)) + + +@pytest.mark.parametrize("comp", + [np.equal, np.not_equal, np.less_equal, np.less, + np.greater_equal, np.greater]) +def test_integer_integer_comparison(comp): + # Test that the NumPy comparison ufuncs work with large Python integers + assert comp(2**200, -2**200) == comp(2**200, -2**200, dtype=object) + + +def create_with_scalar(sctype, value): + return sctype(value) + + +def create_with_array(sctype, value): + return np.array([value], dtype=sctype) + + +@pytest.mark.parametrize("sctype", + [np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64]) +@pytest.mark.parametrize("create", [create_with_scalar, create_with_array]) +def test_oob_creation(sctype, create): + iinfo = np.iinfo(sctype) + + with pytest.raises(OverflowError): + create(sctype, iinfo.min - 1) + + with pytest.raises(OverflowError): + create(sctype, iinfo.max + 1) + + with pytest.raises(OverflowError): + create(sctype, str(iinfo.min - 1)) + + with pytest.raises(OverflowError): + create(sctype, str(iinfo.max + 1)) + + assert create(sctype, iinfo.min) == iinfo.min + assert create(sctype, iinfo.max) == iinfo.max diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numeric.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..8e63536cbd5501ce2f2854fa2190035b825b5f96 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numeric.py @@ -0,0 +1,4210 @@ +import sys +import warnings +import itertools +import platform +import pytest +import math +from decimal import Decimal + +import numpy as np +from numpy._core import umath, sctypes +from numpy._core.numerictypes import obj2sctype +from numpy.exceptions import AxisError +from numpy.random import rand, randint, randn +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex, + assert_array_equal, assert_almost_equal, assert_array_almost_equal, + assert_warns, assert_array_max_ulp, HAS_REFCOUNT, IS_WASM + ) +from numpy._core._rational_tests import rational +from numpy import ma + +from hypothesis import given, strategies as st +from hypothesis.extra import numpy as hynp + + +class TestResize: + def test_copies(self): + A = np.array([[1, 2], [3, 4]]) + Ar1 = np.array([[1, 2, 3, 4], [1, 2, 3, 4]]) + assert_equal(np.resize(A, (2, 4)), Ar1) + + Ar2 = np.array([[1, 2], [3, 4], [1, 2], [3, 4]]) + assert_equal(np.resize(A, (4, 2)), Ar2) + + Ar3 = np.array([[1, 2, 3], [4, 1, 2], [3, 4, 1], [2, 3, 4]]) + assert_equal(np.resize(A, (4, 3)), Ar3) + + def test_repeats(self): + A = np.array([1, 2, 3]) + Ar1 = np.array([[1, 2, 3, 1], [2, 3, 1, 2]]) + assert_equal(np.resize(A, (2, 4)), Ar1) + + Ar2 = np.array([[1, 2], [3, 1], [2, 3], [1, 2]]) + assert_equal(np.resize(A, (4, 2)), Ar2) + + Ar3 = np.array([[1, 2, 3], [1, 2, 3], [1, 2, 3], [1, 2, 3]]) + assert_equal(np.resize(A, (4, 3)), Ar3) + + def test_zeroresize(self): + A = np.array([[1, 2], [3, 4]]) + Ar = np.resize(A, (0,)) + assert_array_equal(Ar, np.array([])) + assert_equal(A.dtype, Ar.dtype) + + Ar = np.resize(A, (0, 2)) + assert_equal(Ar.shape, (0, 2)) + + Ar = np.resize(A, (2, 0)) + assert_equal(Ar.shape, (2, 0)) + + def test_reshape_from_zero(self): + # See also gh-6740 + A = np.zeros(0, dtype=[('a', np.float32)]) + Ar = np.resize(A, (2, 1)) + assert_array_equal(Ar, np.zeros((2, 1), Ar.dtype)) + assert_equal(A.dtype, Ar.dtype) + + def test_negative_resize(self): + A = np.arange(0, 10, dtype=np.float32) + new_shape = (-10, -1) + with pytest.raises(ValueError, match=r"negative"): + np.resize(A, new_shape=new_shape) + + def test_subclass(self): + class MyArray(np.ndarray): + __array_priority__ = 1. + + my_arr = np.array([1]).view(MyArray) + assert type(np.resize(my_arr, 5)) is MyArray + assert type(np.resize(my_arr, 0)) is MyArray + + my_arr = np.array([]).view(MyArray) + assert type(np.resize(my_arr, 5)) is MyArray + + +class TestNonarrayArgs: + # check that non-array arguments to functions wrap them in arrays + def test_choose(self): + choices = [[0, 1, 2], + [3, 4, 5], + [5, 6, 7]] + tgt = [5, 1, 5] + a = [2, 0, 1] + + out = np.choose(a, choices) + assert_equal(out, tgt) + + def test_clip(self): + arr = [-1, 5, 2, 3, 10, -4, -9] + out = np.clip(arr, 2, 7) + tgt = [2, 5, 2, 3, 7, 2, 2] + assert_equal(out, tgt) + + def test_compress(self): + arr = [[0, 1, 2, 3, 4], + [5, 6, 7, 8, 9]] + tgt = [[5, 6, 7, 8, 9]] + out = np.compress([0, 1], arr, axis=0) + assert_equal(out, tgt) + + def test_count_nonzero(self): + arr = [[0, 1, 7, 0, 0], + [3, 0, 0, 2, 19]] + tgt = np.array([2, 3]) + out = np.count_nonzero(arr, axis=1) + assert_equal(out, tgt) + + def test_diagonal(self): + a = [[0, 1, 2, 3], + [4, 5, 6, 7], + [8, 9, 10, 11]] + out = np.diagonal(a) + tgt = [0, 5, 10] + + assert_equal(out, tgt) + + def test_mean(self): + A = [[1, 2, 3], [4, 5, 6]] + assert_(np.mean(A) == 3.5) + assert_(np.all(np.mean(A, 0) == np.array([2.5, 3.5, 4.5]))) + assert_(np.all(np.mean(A, 1) == np.array([2., 5.]))) + + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + assert_(np.isnan(np.mean([]))) + assert_(w[0].category is RuntimeWarning) + + def test_ptp(self): + a = [3, 4, 5, 10, -3, -5, 6.0] + assert_equal(np.ptp(a, axis=0), 15.0) + + def test_prod(self): + arr = [[1, 2, 3, 4], + [5, 6, 7, 9], + [10, 3, 4, 5]] + tgt = [24, 1890, 600] + + assert_equal(np.prod(arr, axis=-1), tgt) + + def test_ravel(self): + a = [[1, 2, 3], [4, 5, 6], [7, 8, 9], [10, 11, 12]] + tgt = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12] + assert_equal(np.ravel(a), tgt) + + def test_repeat(self): + a = [1, 2, 3] + tgt = [1, 1, 2, 2, 3, 3] + + out = np.repeat(a, 2) + assert_equal(out, tgt) + + def test_reshape(self): + arr = [[1, 2, 3], [4, 5, 6], [7, 8, 9], [10, 11, 12]] + tgt = [[1, 2, 3, 4, 5, 6], [7, 8, 9, 10, 11, 12]] + assert_equal(np.reshape(arr, (2, 6)), tgt) + + def test_reshape_shape_arg(self): + arr = np.arange(12) + shape = (3, 4) + expected = arr.reshape(shape) + + with pytest.raises( + TypeError, + match="You cannot specify 'newshape' and 'shape' " + "arguments at the same time." + ): + np.reshape(arr, shape=shape, newshape=shape) + with pytest.raises( + TypeError, + match=r"reshape\(\) missing 1 required positional " + "argument: 'shape'" + ): + np.reshape(arr) + + assert_equal(np.reshape(arr, shape), expected) + assert_equal(np.reshape(arr, shape, order="C"), expected) + assert_equal(np.reshape(arr, shape, "C"), expected) + assert_equal(np.reshape(arr, shape=shape), expected) + assert_equal(np.reshape(arr, shape=shape, order="C"), expected) + with pytest.warns(DeprecationWarning): + actual = np.reshape(arr, newshape=shape) + assert_equal(actual, expected) + + def test_reshape_copy_arg(self): + arr = np.arange(24).reshape(2, 3, 4) + arr_f_ord = np.array(arr, order="F") + shape = (12, 2) + + assert np.shares_memory(np.reshape(arr, shape), arr) + assert np.shares_memory(np.reshape(arr, shape, order="C"), arr) + assert np.shares_memory( + np.reshape(arr_f_ord, shape, order="F"), arr_f_ord) + assert np.shares_memory(np.reshape(arr, shape, copy=None), arr) + assert np.shares_memory(np.reshape(arr, shape, copy=False), arr) + assert np.shares_memory(arr.reshape(shape, copy=False), arr) + assert not np.shares_memory(np.reshape(arr, shape, copy=True), arr) + assert not np.shares_memory( + np.reshape(arr, shape, order="C", copy=True), arr) + assert not np.shares_memory( + np.reshape(arr, shape, order="F", copy=True), arr) + assert not np.shares_memory( + np.reshape(arr, shape, order="F", copy=None), arr) + + err_msg = "Unable to avoid creating a copy while reshaping." + with pytest.raises(ValueError, match=err_msg): + np.reshape(arr, shape, order="F", copy=False) + with pytest.raises(ValueError, match=err_msg): + np.reshape(arr_f_ord, shape, order="C", copy=False) + + def test_round(self): + arr = [1.56, 72.54, 6.35, 3.25] + tgt = [1.6, 72.5, 6.4, 3.2] + assert_equal(np.around(arr, decimals=1), tgt) + s = np.float64(1.) + assert_(isinstance(s.round(), np.float64)) + assert_equal(s.round(), 1.) + + @pytest.mark.parametrize('dtype', [ + np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64, + np.float16, np.float32, np.float64, + ]) + def test_dunder_round(self, dtype): + s = dtype(1) + assert_(isinstance(round(s), int)) + assert_(isinstance(round(s, None), int)) + assert_(isinstance(round(s, ndigits=None), int)) + assert_equal(round(s), 1) + assert_equal(round(s, None), 1) + assert_equal(round(s, ndigits=None), 1) + + @pytest.mark.parametrize('val, ndigits', [ + pytest.param(2**31 - 1, -1, + marks=pytest.mark.skip(reason="Out of range of int32") + ), + (2**31 - 1, 1-math.ceil(math.log10(2**31 - 1))), + (2**31 - 1, -math.ceil(math.log10(2**31 - 1))) + ]) + def test_dunder_round_edgecases(self, val, ndigits): + assert_equal(round(val, ndigits), round(np.int32(val), ndigits)) + + def test_dunder_round_accuracy(self): + f = np.float64(5.1 * 10**73) + assert_(isinstance(round(f, -73), np.float64)) + assert_array_max_ulp(round(f, -73), 5.0 * 10**73) + assert_(isinstance(round(f, ndigits=-73), np.float64)) + assert_array_max_ulp(round(f, ndigits=-73), 5.0 * 10**73) + + i = np.int64(501) + assert_(isinstance(round(i, -2), np.int64)) + assert_array_max_ulp(round(i, -2), 500) + assert_(isinstance(round(i, ndigits=-2), np.int64)) + assert_array_max_ulp(round(i, ndigits=-2), 500) + + @pytest.mark.xfail(raises=AssertionError, reason="gh-15896") + def test_round_py_consistency(self): + f = 5.1 * 10**73 + assert_equal(round(np.float64(f), -73), round(f, -73)) + + def test_searchsorted(self): + arr = [-8, -5, -1, 3, 6, 10] + out = np.searchsorted(arr, 0) + assert_equal(out, 3) + + def test_size(self): + A = [[1, 2, 3], [4, 5, 6]] + assert_(np.size(A) == 6) + assert_(np.size(A, 0) == 2) + assert_(np.size(A, 1) == 3) + + def test_squeeze(self): + A = [[[1, 1, 1], [2, 2, 2], [3, 3, 3]]] + assert_equal(np.squeeze(A).shape, (3, 3)) + assert_equal(np.squeeze(np.zeros((1, 3, 1))).shape, (3,)) + assert_equal(np.squeeze(np.zeros((1, 3, 1)), axis=0).shape, (3, 1)) + assert_equal(np.squeeze(np.zeros((1, 3, 1)), axis=-1).shape, (1, 3)) + assert_equal(np.squeeze(np.zeros((1, 3, 1)), axis=2).shape, (1, 3)) + assert_equal(np.squeeze([np.zeros((3, 1))]).shape, (3,)) + assert_equal(np.squeeze([np.zeros((3, 1))], axis=0).shape, (3, 1)) + assert_equal(np.squeeze([np.zeros((3, 1))], axis=2).shape, (1, 3)) + assert_equal(np.squeeze([np.zeros((3, 1))], axis=-1).shape, (1, 3)) + + def test_std(self): + A = [[1, 2, 3], [4, 5, 6]] + assert_almost_equal(np.std(A), 1.707825127659933) + assert_almost_equal(np.std(A, 0), np.array([1.5, 1.5, 1.5])) + assert_almost_equal(np.std(A, 1), np.array([0.81649658, 0.81649658])) + + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + assert_(np.isnan(np.std([]))) + assert_(w[0].category is RuntimeWarning) + + def test_swapaxes(self): + tgt = [[[0, 4], [2, 6]], [[1, 5], [3, 7]]] + a = [[[0, 1], [2, 3]], [[4, 5], [6, 7]]] + out = np.swapaxes(a, 0, 2) + assert_equal(out, tgt) + + def test_sum(self): + m = [[1, 2, 3], + [4, 5, 6], + [7, 8, 9]] + tgt = [[6], [15], [24]] + out = np.sum(m, axis=1, keepdims=True) + + assert_equal(tgt, out) + + def test_take(self): + tgt = [2, 3, 5] + indices = [1, 2, 4] + a = [1, 2, 3, 4, 5] + + out = np.take(a, indices) + assert_equal(out, tgt) + + pairs = [ + (np.int32, np.int32), (np.int32, np.int64), + (np.int64, np.int32), (np.int64, np.int64) + ] + for array_type, indices_type in pairs: + x = np.array([1, 2, 3, 4, 5], dtype=array_type) + ind = np.array([0, 2, 2, 3], dtype=indices_type) + tgt = np.array([1, 3, 3, 4], dtype=array_type) + out = np.take(x, ind) + assert_equal(out, tgt) + assert_equal(out.dtype, tgt.dtype) + + def test_trace(self): + c = [[1, 2], [3, 4], [5, 6]] + assert_equal(np.trace(c), 5) + + def test_transpose(self): + arr = [[1, 2], [3, 4], [5, 6]] + tgt = [[1, 3, 5], [2, 4, 6]] + assert_equal(np.transpose(arr, (1, 0)), tgt) + assert_equal(np.transpose(arr, (-1, -2)), tgt) + assert_equal(np.matrix_transpose(arr), tgt) + + def test_var(self): + A = [[1, 2, 3], [4, 5, 6]] + assert_almost_equal(np.var(A), 2.9166666666666665) + assert_almost_equal(np.var(A, 0), np.array([2.25, 2.25, 2.25])) + assert_almost_equal(np.var(A, 1), np.array([0.66666667, 0.66666667])) + + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + assert_(np.isnan(np.var([]))) + assert_(w[0].category is RuntimeWarning) + + B = np.array([None, 0]) + B[0] = 1j + assert_almost_equal(np.var(B), 0.25) + + def test_std_with_mean_keyword(self): + # Setting the seed to make the test reproducible + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + mean_out = np.zeros((10, 1, 5)) + std_out = np.zeros((10, 1, 5)) + + mean = np.mean(A, + out=mean_out, + axis=1, + keepdims=True) + + # The returned object should be the object specified during calling + assert mean_out is mean + + std = np.std(A, + out=std_out, + axis=1, + keepdims=True, + mean=mean) + + # The returned object should be the object specified during calling + assert std_out is std + + # Shape of returned mean and std should be same + assert std.shape == mean.shape + assert std.shape == (10, 1, 5) + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=1, keepdims=True) + + assert std_old.shape == mean.shape + assert_almost_equal(std, std_old) + + def test_var_with_mean_keyword(self): + # Setting the seed to make the test reproducible + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + mean_out = np.zeros((10, 1, 5)) + var_out = np.zeros((10, 1, 5)) + + mean = np.mean(A, + out=mean_out, + axis=1, + keepdims=True) + + # The returned object should be the object specified during calling + assert mean_out is mean + + var = np.var(A, + out=var_out, + axis=1, + keepdims=True, + mean=mean) + + # The returned object should be the object specified during calling + assert var_out is var + + # Shape of returned mean and var should be same + assert var.shape == mean.shape + assert var.shape == (10, 1, 5) + + # Output should be the same as from the individual algorithms + var_old = np.var(A, axis=1, keepdims=True) + + assert var_old.shape == mean.shape + assert_almost_equal(var, var_old) + + def test_std_with_mean_keyword_keepdims_false(self): + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + mean = np.mean(A, + axis=1, + keepdims=True) + + std = np.std(A, + axis=1, + keepdims=False, + mean=mean) + + # Shape of returned mean and std should be same + assert std.shape == (10, 5) + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=1, keepdims=False) + mean_old = np.mean(A, axis=1, keepdims=False) + + assert std_old.shape == mean_old.shape + assert_equal(std, std_old) + + def test_var_with_mean_keyword_keepdims_false(self): + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + mean = np.mean(A, + axis=1, + keepdims=True) + + var = np.var(A, + axis=1, + keepdims=False, + mean=mean) + + # Shape of returned mean and var should be same + assert var.shape == (10, 5) + + # Output should be the same as from the individual algorithms + var_old = np.var(A, axis=1, keepdims=False) + mean_old = np.mean(A, axis=1, keepdims=False) + + assert var_old.shape == mean_old.shape + assert_equal(var, var_old) + + def test_std_with_mean_keyword_where_nontrivial(self): + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + where = A > 0.5 + + mean = np.mean(A, + axis=1, + keepdims=True, + where=where) + + std = np.std(A, + axis=1, + keepdims=False, + mean=mean, + where=where) + + # Shape of returned mean and std should be same + assert std.shape == (10, 5) + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=1, where=where) + mean_old = np.mean(A, axis=1, where=where) + + assert std_old.shape == mean_old.shape + assert_equal(std, std_old) + + def test_var_with_mean_keyword_where_nontrivial(self): + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + where = A > 0.5 + + mean = np.mean(A, + axis=1, + keepdims=True, + where=where) + + var = np.var(A, + axis=1, + keepdims=False, + mean=mean, + where=where) + + # Shape of returned mean and var should be same + assert var.shape == (10, 5) + + # Output should be the same as from the individual algorithms + var_old = np.var(A, axis=1, where=where) + mean_old = np.mean(A, axis=1, where=where) + + assert var_old.shape == mean_old.shape + assert_equal(var, var_old) + + def test_std_with_mean_keyword_multiple_axis(self): + # Setting the seed to make the test reproducible + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + axis = (0, 2) + + mean = np.mean(A, + out=None, + axis=axis, + keepdims=True) + + std = np.std(A, + out=None, + axis=axis, + keepdims=False, + mean=mean) + + # Shape of returned mean and std should be same + assert std.shape == (20,) + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=axis, keepdims=False) + + assert_almost_equal(std, std_old) + + def test_std_with_mean_keyword_axis_None(self): + # Setting the seed to make the test reproducible + rng = np.random.RandomState(1234) + A = rng.randn(10, 20, 5) + 0.5 + + axis = None + + mean = np.mean(A, + out=None, + axis=axis, + keepdims=True) + + std = np.std(A, + out=None, + axis=axis, + keepdims=False, + mean=mean) + + # Shape of returned mean and std should be same + assert std.shape == () + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=axis, keepdims=False) + + assert_almost_equal(std, std_old) + + def test_std_with_mean_keyword_keepdims_true_masked(self): + + A = ma.array([[2., 3., 4., 5.], + [1., 2., 3., 4.]], + mask=[[True, False, True, False], + [True, False, True, False]]) + + B = ma.array([[100., 3., 104., 5.], + [101., 2., 103., 4.]], + mask=[[True, False, True, False], + [True, False, True, False]]) + + mean_out = ma.array([[0., 0., 0., 0.]], + mask=[[False, False, False, False]]) + std_out = ma.array([[0., 0., 0., 0.]], + mask=[[False, False, False, False]]) + + axis = 0 + + mean = np.mean(A, out=mean_out, + axis=axis, keepdims=True) + + std = np.std(A, out=std_out, + axis=axis, keepdims=True, + mean=mean) + + # Shape of returned mean and std should be same + assert std.shape == mean.shape + assert std.shape == (1, 4) + + # Output should be the same as from the individual algorithms + std_old = np.std(A, axis=axis, keepdims=True) + mean_old = np.mean(A, axis=axis, keepdims=True) + + assert std_old.shape == mean_old.shape + assert_almost_equal(std, std_old) + assert_almost_equal(mean, mean_old) + + assert mean_out is mean + assert std_out is std + + # masked elements should be ignored + mean_b = np.mean(B, axis=axis, keepdims=True) + std_b = np.std(B, axis=axis, keepdims=True, mean=mean_b) + assert_almost_equal(std, std_b) + assert_almost_equal(mean, mean_b) + + def test_var_with_mean_keyword_keepdims_true_masked(self): + + A = ma.array([[2., 3., 4., 5.], + [1., 2., 3., 4.]], + mask=[[True, False, True, False], + [True, False, True, False]]) + + B = ma.array([[100., 3., 104., 5.], + [101., 2., 103., 4.]], + mask=[[True, False, True, False], + [True, False, True, False]]) + + mean_out = ma.array([[0., 0., 0., 0.]], + mask=[[False, False, False, False]]) + var_out = ma.array([[0., 0., 0., 0.]], + mask=[[False, False, False, False]]) + + axis = 0 + + mean = np.mean(A, out=mean_out, + axis=axis, keepdims=True) + + var = np.var(A, out=var_out, + axis=axis, keepdims=True, + mean=mean) + + # Shape of returned mean and var should be same + assert var.shape == mean.shape + assert var.shape == (1, 4) + + # Output should be the same as from the individual algorithms + var_old = np.var(A, axis=axis, keepdims=True) + mean_old = np.mean(A, axis=axis, keepdims=True) + + assert var_old.shape == mean_old.shape + assert_almost_equal(var, var_old) + assert_almost_equal(mean, mean_old) + + assert mean_out is mean + assert var_out is var + + # masked elements should be ignored + mean_b = np.mean(B, axis=axis, keepdims=True) + var_b = np.var(B, axis=axis, keepdims=True, mean=mean_b) + assert_almost_equal(var, var_b) + assert_almost_equal(mean, mean_b) + + +class TestIsscalar: + def test_isscalar(self): + assert_(np.isscalar(3.1)) + assert_(np.isscalar(np.int16(12345))) + assert_(np.isscalar(False)) + assert_(np.isscalar('numpy')) + assert_(not np.isscalar([3.1])) + assert_(not np.isscalar(None)) + + # PEP 3141 + from fractions import Fraction + assert_(np.isscalar(Fraction(5, 17))) + from numbers import Number + assert_(np.isscalar(Number())) + + +class TestBoolScalar: + def test_logical(self): + f = np.False_ + t = np.True_ + s = "xyz" + assert_((t and s) is s) + assert_((f and s) is f) + + def test_bitwise_or(self): + f = np.False_ + t = np.True_ + assert_((t | t) is t) + assert_((f | t) is t) + assert_((t | f) is t) + assert_((f | f) is f) + + def test_bitwise_and(self): + f = np.False_ + t = np.True_ + assert_((t & t) is t) + assert_((f & t) is f) + assert_((t & f) is f) + assert_((f & f) is f) + + def test_bitwise_xor(self): + f = np.False_ + t = np.True_ + assert_((t ^ t) is f) + assert_((f ^ t) is t) + assert_((t ^ f) is t) + assert_((f ^ f) is f) + + +class TestBoolArray: + def setup_method(self): + # offset for simd tests + self.t = np.array([True] * 41, dtype=bool)[1::] + self.f = np.array([False] * 41, dtype=bool)[1::] + self.o = np.array([False] * 42, dtype=bool)[2::] + self.nm = self.f.copy() + self.im = self.t.copy() + self.nm[3] = True + self.nm[-2] = True + self.im[3] = False + self.im[-2] = False + + def test_all_any(self): + assert_(self.t.all()) + assert_(self.t.any()) + assert_(not self.f.all()) + assert_(not self.f.any()) + assert_(self.nm.any()) + assert_(self.im.any()) + assert_(not self.nm.all()) + assert_(not self.im.all()) + # check bad element in all positions + for i in range(256 - 7): + d = np.array([False] * 256, dtype=bool)[7::] + d[i] = True + assert_(np.any(d)) + e = np.array([True] * 256, dtype=bool)[7::] + e[i] = False + assert_(not np.all(e)) + assert_array_equal(e, ~d) + # big array test for blocked libc loops + for i in list(range(9, 6000, 507)) + [7764, 90021, -10]: + d = np.array([False] * 100043, dtype=bool) + d[i] = True + assert_(np.any(d), msg="%r" % i) + e = np.array([True] * 100043, dtype=bool) + e[i] = False + assert_(not np.all(e), msg="%r" % i) + + def test_logical_not_abs(self): + assert_array_equal(~self.t, self.f) + assert_array_equal(np.abs(~self.t), self.f) + assert_array_equal(np.abs(~self.f), self.t) + assert_array_equal(np.abs(self.f), self.f) + assert_array_equal(~np.abs(self.f), self.t) + assert_array_equal(~np.abs(self.t), self.f) + assert_array_equal(np.abs(~self.nm), self.im) + np.logical_not(self.t, out=self.o) + assert_array_equal(self.o, self.f) + np.abs(self.t, out=self.o) + assert_array_equal(self.o, self.t) + + def test_logical_and_or_xor(self): + assert_array_equal(self.t | self.t, self.t) + assert_array_equal(self.f | self.f, self.f) + assert_array_equal(self.t | self.f, self.t) + assert_array_equal(self.f | self.t, self.t) + np.logical_or(self.t, self.t, out=self.o) + assert_array_equal(self.o, self.t) + assert_array_equal(self.t & self.t, self.t) + assert_array_equal(self.f & self.f, self.f) + assert_array_equal(self.t & self.f, self.f) + assert_array_equal(self.f & self.t, self.f) + np.logical_and(self.t, self.t, out=self.o) + assert_array_equal(self.o, self.t) + assert_array_equal(self.t ^ self.t, self.f) + assert_array_equal(self.f ^ self.f, self.f) + assert_array_equal(self.t ^ self.f, self.t) + assert_array_equal(self.f ^ self.t, self.t) + np.logical_xor(self.t, self.t, out=self.o) + assert_array_equal(self.o, self.f) + + assert_array_equal(self.nm & self.t, self.nm) + assert_array_equal(self.im & self.f, False) + assert_array_equal(self.nm & True, self.nm) + assert_array_equal(self.im & False, self.f) + assert_array_equal(self.nm | self.t, self.t) + assert_array_equal(self.im | self.f, self.im) + assert_array_equal(self.nm | True, self.t) + assert_array_equal(self.im | False, self.im) + assert_array_equal(self.nm ^ self.t, self.im) + assert_array_equal(self.im ^ self.f, self.im) + assert_array_equal(self.nm ^ True, self.im) + assert_array_equal(self.im ^ False, self.im) + + +class TestBoolCmp: + def setup_method(self): + self.f = np.ones(256, dtype=np.float32) + self.ef = np.ones(self.f.size, dtype=bool) + self.d = np.ones(128, dtype=np.float64) + self.ed = np.ones(self.d.size, dtype=bool) + # generate values for all permutation of 256bit simd vectors + s = 0 + for i in range(32): + self.f[s:s+8] = [i & 2**x for x in range(8)] + self.ef[s:s+8] = [(i & 2**x) != 0 for x in range(8)] + s += 8 + s = 0 + for i in range(16): + self.d[s:s+4] = [i & 2**x for x in range(4)] + self.ed[s:s+4] = [(i & 2**x) != 0 for x in range(4)] + s += 4 + + self.nf = self.f.copy() + self.nd = self.d.copy() + self.nf[self.ef] = np.nan + self.nd[self.ed] = np.nan + + self.inff = self.f.copy() + self.infd = self.d.copy() + self.inff[::3][self.ef[::3]] = np.inf + self.infd[::3][self.ed[::3]] = np.inf + self.inff[1::3][self.ef[1::3]] = -np.inf + self.infd[1::3][self.ed[1::3]] = -np.inf + self.inff[2::3][self.ef[2::3]] = np.nan + self.infd[2::3][self.ed[2::3]] = np.nan + self.efnonan = self.ef.copy() + self.efnonan[2::3] = False + self.ednonan = self.ed.copy() + self.ednonan[2::3] = False + + self.signf = self.f.copy() + self.signd = self.d.copy() + self.signf[self.ef] *= -1. + self.signd[self.ed] *= -1. + self.signf[1::6][self.ef[1::6]] = -np.inf + self.signd[1::6][self.ed[1::6]] = -np.inf + # On RISC-V, many operations that produce NaNs, such as converting + # a -NaN from f64 to f32, return a canonical NaN. The canonical + # NaNs are always positive. See section 11.3 NaN Generation and + # Propagation of the RISC-V Unprivileged ISA for more details. + # We disable the float32 sign test on riscv64 for -np.nan as the sign + # of the NaN will be lost when it's converted to a float32. + if platform.machine() != 'riscv64': + self.signf[3::6][self.ef[3::6]] = -np.nan + self.signd[3::6][self.ed[3::6]] = -np.nan + self.signf[4::6][self.ef[4::6]] = -0. + self.signd[4::6][self.ed[4::6]] = -0. + + def test_float(self): + # offset for alignment test + for i in range(4): + assert_array_equal(self.f[i:] > 0, self.ef[i:]) + assert_array_equal(self.f[i:] - 1 >= 0, self.ef[i:]) + assert_array_equal(self.f[i:] == 0, ~self.ef[i:]) + assert_array_equal(-self.f[i:] < 0, self.ef[i:]) + assert_array_equal(-self.f[i:] + 1 <= 0, self.ef[i:]) + r = self.f[i:] != 0 + assert_array_equal(r, self.ef[i:]) + r2 = self.f[i:] != np.zeros_like(self.f[i:]) + r3 = 0 != self.f[i:] + assert_array_equal(r, r2) + assert_array_equal(r, r3) + # check bool == 0x1 + assert_array_equal(r.view(np.int8), r.astype(np.int8)) + assert_array_equal(r2.view(np.int8), r2.astype(np.int8)) + assert_array_equal(r3.view(np.int8), r3.astype(np.int8)) + + # isnan on amd64 takes the same code path + assert_array_equal(np.isnan(self.nf[i:]), self.ef[i:]) + assert_array_equal(np.isfinite(self.nf[i:]), ~self.ef[i:]) + assert_array_equal(np.isfinite(self.inff[i:]), ~self.ef[i:]) + assert_array_equal(np.isinf(self.inff[i:]), self.efnonan[i:]) + assert_array_equal(np.signbit(self.signf[i:]), self.ef[i:]) + + def test_double(self): + # offset for alignment test + for i in range(2): + assert_array_equal(self.d[i:] > 0, self.ed[i:]) + assert_array_equal(self.d[i:] - 1 >= 0, self.ed[i:]) + assert_array_equal(self.d[i:] == 0, ~self.ed[i:]) + assert_array_equal(-self.d[i:] < 0, self.ed[i:]) + assert_array_equal(-self.d[i:] + 1 <= 0, self.ed[i:]) + r = self.d[i:] != 0 + assert_array_equal(r, self.ed[i:]) + r2 = self.d[i:] != np.zeros_like(self.d[i:]) + r3 = 0 != self.d[i:] + assert_array_equal(r, r2) + assert_array_equal(r, r3) + # check bool == 0x1 + assert_array_equal(r.view(np.int8), r.astype(np.int8)) + assert_array_equal(r2.view(np.int8), r2.astype(np.int8)) + assert_array_equal(r3.view(np.int8), r3.astype(np.int8)) + + # isnan on amd64 takes the same code path + assert_array_equal(np.isnan(self.nd[i:]), self.ed[i:]) + assert_array_equal(np.isfinite(self.nd[i:]), ~self.ed[i:]) + assert_array_equal(np.isfinite(self.infd[i:]), ~self.ed[i:]) + assert_array_equal(np.isinf(self.infd[i:]), self.ednonan[i:]) + assert_array_equal(np.signbit(self.signd[i:]), self.ed[i:]) + + +class TestSeterr: + def test_default(self): + err = np.geterr() + assert_equal(err, + dict(divide='warn', + invalid='warn', + over='warn', + under='ignore') + ) + + def test_set(self): + with np.errstate(): + err = np.seterr() + old = np.seterr(divide='print') + assert_(err == old) + new = np.seterr() + assert_(new['divide'] == 'print') + np.seterr(over='raise') + assert_(np.geterr()['over'] == 'raise') + assert_(new['divide'] == 'print') + np.seterr(**old) + assert_(np.geterr() == old) + + @pytest.mark.skipif(IS_WASM, reason="no wasm fp exception support") + @pytest.mark.skipif(platform.machine() == "armv5tel", reason="See gh-413.") + def test_divide_err(self): + with np.errstate(divide='raise'): + with assert_raises(FloatingPointError): + np.array([1.]) / np.array([0.]) + + np.seterr(divide='ignore') + np.array([1.]) / np.array([0.]) + + +class TestFloatExceptions: + def assert_raises_fpe(self, fpeerr, flop, x, y): + ftype = type(x) + try: + flop(x, y) + assert_(False, + "Type %s did not raise fpe error '%s'." % (ftype, fpeerr)) + except FloatingPointError as exc: + assert_(str(exc).find(fpeerr) >= 0, + "Type %s raised wrong fpe error '%s'." % (ftype, exc)) + + def assert_op_raises_fpe(self, fpeerr, flop, sc1, sc2): + # Check that fpe exception is raised. + # + # Given a floating operation `flop` and two scalar values, check that + # the operation raises the floating point exception specified by + # `fpeerr`. Tests all variants with 0-d array scalars as well. + + self.assert_raises_fpe(fpeerr, flop, sc1, sc2) + self.assert_raises_fpe(fpeerr, flop, sc1[()], sc2) + self.assert_raises_fpe(fpeerr, flop, sc1, sc2[()]) + self.assert_raises_fpe(fpeerr, flop, sc1[()], sc2[()]) + + # Test for all real and complex float types + @pytest.mark.skipif(IS_WASM, reason="no wasm fp exception support") + @pytest.mark.parametrize("typecode", np.typecodes["AllFloat"]) + def test_floating_exceptions(self, typecode): + if 'bsd' in sys.platform and typecode in 'gG': + pytest.skip(reason="Fallback impl for (c)longdouble may not raise " + "FPE errors as expected on BSD OSes, " + "see gh-24876, gh-23379") + + # Test basic arithmetic function errors + with np.errstate(all='raise'): + ftype = obj2sctype(typecode) + if np.dtype(ftype).kind == 'f': + # Get some extreme values for the type + fi = np.finfo(ftype) + ft_tiny = fi._machar.tiny + ft_max = fi.max + ft_eps = fi.eps + underflow = 'underflow' + divbyzero = 'divide by zero' + else: + # 'c', complex, corresponding real dtype + rtype = type(ftype(0).real) + fi = np.finfo(rtype) + ft_tiny = ftype(fi._machar.tiny) + ft_max = ftype(fi.max) + ft_eps = ftype(fi.eps) + # The complex types raise different exceptions + underflow = '' + divbyzero = '' + overflow = 'overflow' + invalid = 'invalid' + + # The value of tiny for double double is NaN, so we need to + # pass the assert + if not np.isnan(ft_tiny): + self.assert_raises_fpe(underflow, + lambda a, b: a/b, ft_tiny, ft_max) + self.assert_raises_fpe(underflow, + lambda a, b: a*b, ft_tiny, ft_tiny) + self.assert_raises_fpe(overflow, + lambda a, b: a*b, ft_max, ftype(2)) + self.assert_raises_fpe(overflow, + lambda a, b: a/b, ft_max, ftype(0.5)) + self.assert_raises_fpe(overflow, + lambda a, b: a+b, ft_max, ft_max*ft_eps) + self.assert_raises_fpe(overflow, + lambda a, b: a-b, -ft_max, ft_max*ft_eps) + self.assert_raises_fpe(overflow, + np.power, ftype(2), ftype(2**fi.nexp)) + self.assert_raises_fpe(divbyzero, + lambda a, b: a/b, ftype(1), ftype(0)) + self.assert_raises_fpe( + invalid, lambda a, b: a/b, ftype(np.inf), ftype(np.inf) + ) + self.assert_raises_fpe(invalid, + lambda a, b: a/b, ftype(0), ftype(0)) + self.assert_raises_fpe( + invalid, lambda a, b: a-b, ftype(np.inf), ftype(np.inf) + ) + self.assert_raises_fpe( + invalid, lambda a, b: a+b, ftype(np.inf), ftype(-np.inf) + ) + self.assert_raises_fpe(invalid, + lambda a, b: a*b, ftype(0), ftype(np.inf)) + + @pytest.mark.skipif(IS_WASM, reason="no wasm fp exception support") + def test_warnings(self): + # test warning code path + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter("always") + with np.errstate(all="warn"): + np.divide(1, 0.) + assert_equal(len(w), 1) + assert_("divide by zero" in str(w[0].message)) + np.array(1e300) * np.array(1e300) + assert_equal(len(w), 2) + assert_("overflow" in str(w[-1].message)) + np.array(np.inf) - np.array(np.inf) + assert_equal(len(w), 3) + assert_("invalid value" in str(w[-1].message)) + np.array(1e-300) * np.array(1e-300) + assert_equal(len(w), 4) + assert_("underflow" in str(w[-1].message)) + + +class TestTypes: + def check_promotion_cases(self, promote_func): + # tests that the scalars get coerced correctly. + b = np.bool(0) + i8, i16, i32, i64 = np.int8(0), np.int16(0), np.int32(0), np.int64(0) + u8, u16, u32, u64 = np.uint8(0), np.uint16(0), np.uint32(0), np.uint64(0) + f32, f64, fld = np.float32(0), np.float64(0), np.longdouble(0) + c64, c128, cld = np.complex64(0), np.complex128(0), np.clongdouble(0) + + # coercion within the same kind + assert_equal(promote_func(i8, i16), np.dtype(np.int16)) + assert_equal(promote_func(i32, i8), np.dtype(np.int32)) + assert_equal(promote_func(i16, i64), np.dtype(np.int64)) + assert_equal(promote_func(u8, u32), np.dtype(np.uint32)) + assert_equal(promote_func(f32, f64), np.dtype(np.float64)) + assert_equal(promote_func(fld, f32), np.dtype(np.longdouble)) + assert_equal(promote_func(f64, fld), np.dtype(np.longdouble)) + assert_equal(promote_func(c128, c64), np.dtype(np.complex128)) + assert_equal(promote_func(cld, c128), np.dtype(np.clongdouble)) + assert_equal(promote_func(c64, fld), np.dtype(np.clongdouble)) + + # coercion between kinds + assert_equal(promote_func(b, i32), np.dtype(np.int32)) + assert_equal(promote_func(b, u8), np.dtype(np.uint8)) + assert_equal(promote_func(i8, u8), np.dtype(np.int16)) + assert_equal(promote_func(u8, i32), np.dtype(np.int32)) + assert_equal(promote_func(i64, u32), np.dtype(np.int64)) + assert_equal(promote_func(u64, i32), np.dtype(np.float64)) + assert_equal(promote_func(i32, f32), np.dtype(np.float64)) + assert_equal(promote_func(i64, f32), np.dtype(np.float64)) + assert_equal(promote_func(f32, i16), np.dtype(np.float32)) + assert_equal(promote_func(f32, u32), np.dtype(np.float64)) + assert_equal(promote_func(f32, c64), np.dtype(np.complex64)) + assert_equal(promote_func(c128, f32), np.dtype(np.complex128)) + assert_equal(promote_func(cld, f64), np.dtype(np.clongdouble)) + + # coercion between scalars and 1-D arrays + assert_equal(promote_func(np.array([b]), i8), np.dtype(np.int8)) + assert_equal(promote_func(np.array([b]), u8), np.dtype(np.uint8)) + assert_equal(promote_func(np.array([b]), i32), np.dtype(np.int32)) + assert_equal(promote_func(np.array([b]), u32), np.dtype(np.uint32)) + assert_equal(promote_func(np.array([i8]), i64), np.dtype(np.int64)) + # unsigned and signed unfortunately tend to promote to float64: + assert_equal(promote_func(u64, np.array([i32])), np.dtype(np.float64)) + assert_equal(promote_func(i64, np.array([u32])), np.dtype(np.int64)) + assert_equal(promote_func(np.array([u16]), i32), np.dtype(np.int32)) + assert_equal(promote_func(np.int32(-1), np.array([u64])), + np.dtype(np.float64)) + assert_equal(promote_func(f64, np.array([f32])), np.dtype(np.float64)) + assert_equal(promote_func(fld, np.array([f32])), + np.dtype(np.longdouble)) + assert_equal(promote_func(np.array([f64]), fld), + np.dtype(np.longdouble)) + assert_equal(promote_func(fld, np.array([c64])), + np.dtype(np.clongdouble)) + assert_equal(promote_func(c64, np.array([f64])), + np.dtype(np.complex128)) + assert_equal(promote_func(np.complex64(3j), np.array([f64])), + np.dtype(np.complex128)) + assert_equal(promote_func(np.array([f32]), c128), + np.dtype(np.complex128)) + + # coercion between scalars and 1-D arrays, where + # the scalar has greater kind than the array + assert_equal(promote_func(np.array([b]), f64), np.dtype(np.float64)) + assert_equal(promote_func(np.array([b]), i64), np.dtype(np.int64)) + assert_equal(promote_func(np.array([b]), u64), np.dtype(np.uint64)) + assert_equal(promote_func(np.array([i8]), f64), np.dtype(np.float64)) + assert_equal(promote_func(np.array([u16]), f64), np.dtype(np.float64)) + + + def test_coercion(self): + def res_type(a, b): + return np.add(a, b).dtype + + self.check_promotion_cases(res_type) + + # Use-case: float/complex scalar * bool/int8 array + # shouldn't narrow the float/complex type + for a in [np.array([True, False]), np.array([-3, 12], dtype=np.int8)]: + b = 1.234 * a + assert_equal(b.dtype, np.dtype('f8'), "array type %s" % a.dtype) + b = np.longdouble(1.234) * a + assert_equal(b.dtype, np.dtype(np.longdouble), + "array type %s" % a.dtype) + b = np.float64(1.234) * a + assert_equal(b.dtype, np.dtype('f8'), "array type %s" % a.dtype) + b = np.float32(1.234) * a + assert_equal(b.dtype, np.dtype('f4'), "array type %s" % a.dtype) + b = np.float16(1.234) * a + assert_equal(b.dtype, np.dtype('f2'), "array type %s" % a.dtype) + + b = 1.234j * a + assert_equal(b.dtype, np.dtype('c16'), "array type %s" % a.dtype) + b = np.clongdouble(1.234j) * a + assert_equal(b.dtype, np.dtype(np.clongdouble), + "array type %s" % a.dtype) + b = np.complex128(1.234j) * a + assert_equal(b.dtype, np.dtype('c16'), "array type %s" % a.dtype) + b = np.complex64(1.234j) * a + assert_equal(b.dtype, np.dtype('c8'), "array type %s" % a.dtype) + + # The following use-case is problematic, and to resolve its + # tricky side-effects requires more changes. + # + # Use-case: (1-t)*a, where 't' is a boolean array and 'a' is + # a float32, shouldn't promote to float64 + # + # a = np.array([1.0, 1.5], dtype=np.float32) + # t = np.array([True, False]) + # b = t*a + # assert_equal(b, [1.0, 0.0]) + # assert_equal(b.dtype, np.dtype('f4')) + # b = (1-t)*a + # assert_equal(b, [0.0, 1.5]) + # assert_equal(b.dtype, np.dtype('f4')) + # + # Probably ~t (bitwise negation) is more proper to use here, + # but this is arguably less intuitive to understand at a glance, and + # would fail if 't' is actually an integer array instead of boolean: + # + # b = (~t)*a + # assert_equal(b, [0.0, 1.5]) + # assert_equal(b.dtype, np.dtype('f4')) + + def test_result_type(self): + self.check_promotion_cases(np.result_type) + assert_(np.result_type(None) == np.dtype(None)) + + def test_promote_types_endian(self): + # promote_types should always return native-endian types + assert_equal(np.promote_types('i8', '>i8'), np.dtype('i8')) + + assert_equal(np.promote_types('>i8', '>U16'), np.dtype('U21')) + assert_equal(np.promote_types('U16', '>i8'), np.dtype('U21')) + assert_equal(np.promote_types('S5', '>U8'), np.dtype('U8')) + assert_equal(np.promote_types('U8', '>S5'), np.dtype('U8')) + assert_equal(np.promote_types('U8', '>U5'), np.dtype('U8')) + + assert_equal(np.promote_types('M8', '>M8'), np.dtype('M8')) + assert_equal(np.promote_types('m8', '>m8'), np.dtype('m8')) + + def test_can_cast_and_promote_usertypes(self): + # The rational type defines safe casting for signed integers, + # boolean. Rational itself *does* cast safely to double. + # (rational does not actually cast to all signed integers, e.g. + # int64 can be both long and longlong and it registers only the first) + valid_types = ["int8", "int16", "int32", "int64", "bool"] + invalid_types = "BHILQP" + "FDG" + "mM" + "f" + "V" + + rational_dt = np.dtype(rational) + for numpy_dtype in valid_types: + numpy_dtype = np.dtype(numpy_dtype) + assert np.can_cast(numpy_dtype, rational_dt) + assert np.promote_types(numpy_dtype, rational_dt) is rational_dt + + for numpy_dtype in invalid_types: + numpy_dtype = np.dtype(numpy_dtype) + assert not np.can_cast(numpy_dtype, rational_dt) + with pytest.raises(TypeError): + np.promote_types(numpy_dtype, rational_dt) + + double_dt = np.dtype("double") + assert np.can_cast(rational_dt, double_dt) + assert np.promote_types(double_dt, rational_dt) is double_dt + + @pytest.mark.parametrize("swap", ["", "swap"]) + @pytest.mark.parametrize("string_dtype", ["U", "S"]) + def test_promote_types_strings(self, swap, string_dtype): + if swap == "swap": + promote_types = lambda a, b: np.promote_types(b, a) + else: + promote_types = np.promote_types + + S = string_dtype + + # Promote numeric with unsized string: + assert_equal(promote_types('bool', S), np.dtype(S+'5')) + assert_equal(promote_types('b', S), np.dtype(S+'4')) + assert_equal(promote_types('u1', S), np.dtype(S+'3')) + assert_equal(promote_types('u2', S), np.dtype(S+'5')) + assert_equal(promote_types('u4', S), np.dtype(S+'10')) + assert_equal(promote_types('u8', S), np.dtype(S+'20')) + assert_equal(promote_types('i1', S), np.dtype(S+'4')) + assert_equal(promote_types('i2', S), np.dtype(S+'6')) + assert_equal(promote_types('i4', S), np.dtype(S+'11')) + assert_equal(promote_types('i8', S), np.dtype(S+'21')) + # Promote numeric with sized string: + assert_equal(promote_types('bool', S+'1'), np.dtype(S+'5')) + assert_equal(promote_types('bool', S+'30'), np.dtype(S+'30')) + assert_equal(promote_types('b', S+'1'), np.dtype(S+'4')) + assert_equal(promote_types('b', S+'30'), np.dtype(S+'30')) + assert_equal(promote_types('u1', S+'1'), np.dtype(S+'3')) + assert_equal(promote_types('u1', S+'30'), np.dtype(S+'30')) + assert_equal(promote_types('u2', S+'1'), np.dtype(S+'5')) + assert_equal(promote_types('u2', S+'30'), np.dtype(S+'30')) + assert_equal(promote_types('u4', S+'1'), np.dtype(S+'10')) + assert_equal(promote_types('u4', S+'30'), np.dtype(S+'30')) + assert_equal(promote_types('u8', S+'1'), np.dtype(S+'20')) + assert_equal(promote_types('u8', S+'30'), np.dtype(S+'30')) + # Promote with object: + assert_equal(promote_types('O', S+'30'), np.dtype('O')) + + @pytest.mark.parametrize(["dtype1", "dtype2"], + [[np.dtype("V6"), np.dtype("V10")], # mismatch shape + # Mismatching names: + [np.dtype([("name1", "i8")]), np.dtype([("name2", "i8")])], + ]) + def test_invalid_void_promotion(self, dtype1, dtype2): + with pytest.raises(TypeError): + np.promote_types(dtype1, dtype2) + + @pytest.mark.parametrize(["dtype1", "dtype2"], + [[np.dtype("V10"), np.dtype("V10")], + [np.dtype([("name1", "i8")]), + np.dtype([("name1", np.dtype("i8").newbyteorder())])], + [np.dtype("i8,i8"), np.dtype("i8,>i8")], + [np.dtype("i8,i8"), np.dtype("i4,i4")], + ]) + def test_valid_void_promotion(self, dtype1, dtype2): + assert np.promote_types(dtype1, dtype2) == dtype1 + + @pytest.mark.parametrize("dtype", + list(np.typecodes["All"]) + + ["i,i", "10i", "S3", "S100", "U3", "U100", rational]) + def test_promote_identical_types_metadata(self, dtype): + # The same type passed in twice to promote types always + # preserves metadata + metadata = {1: 1} + dtype = np.dtype(dtype, metadata=metadata) + + res = np.promote_types(dtype, dtype) + assert res.metadata == dtype.metadata + + # byte-swapping preserves and makes the dtype native: + dtype = dtype.newbyteorder() + if dtype.isnative: + # The type does not have byte swapping + return + + res = np.promote_types(dtype, dtype) + + # Metadata is (currently) generally lost on byte-swapping (except for + # unicode. + if dtype.char != "U": + assert res.metadata is None + else: + assert res.metadata == metadata + assert res.isnative + + @pytest.mark.slow + @pytest.mark.filterwarnings('ignore:Promotion of numbers:FutureWarning') + @pytest.mark.parametrize(["dtype1", "dtype2"], + itertools.product( + list(np.typecodes["All"]) + + ["i,i", "S3", "S100", "U3", "U100", rational], + repeat=2)) + def test_promote_types_metadata(self, dtype1, dtype2): + """Metadata handling in promotion does not appear formalized + right now in NumPy. This test should thus be considered to + document behaviour, rather than test the correct definition of it. + + This test is very ugly, it was useful for rewriting part of the + promotion, but probably should eventually be replaced/deleted + (i.e. when metadata handling in promotion is better defined). + """ + metadata1 = {1: 1} + metadata2 = {2: 2} + dtype1 = np.dtype(dtype1, metadata=metadata1) + dtype2 = np.dtype(dtype2, metadata=metadata2) + + try: + res = np.promote_types(dtype1, dtype2) + except TypeError: + # Promotion failed, this test only checks metadata + return + + if res.char not in "USV" or res.names is not None or res.shape != (): + # All except string dtypes (and unstructured void) lose metadata + # on promotion (unless both dtypes are identical). + # At some point structured ones did not, but were restrictive. + assert res.metadata is None + elif res == dtype1: + # If one result is the result, it is usually returned unchanged: + assert res is dtype1 + elif res == dtype2: + # dtype1 may have been cast to the same type/kind as dtype2. + # If the resulting dtype is identical we currently pick the cast + # version of dtype1, which lost the metadata: + if np.promote_types(dtype1, dtype2.kind) == dtype2: + res.metadata is None + else: + res.metadata == metadata2 + else: + assert res.metadata is None + + # Try again for byteswapped version + dtype1 = dtype1.newbyteorder() + assert dtype1.metadata == metadata1 + res_bs = np.promote_types(dtype1, dtype2) + assert res_bs == res + assert res_bs.metadata == res.metadata + + def test_can_cast(self): + assert_(np.can_cast(np.int32, np.int64)) + assert_(np.can_cast(np.float64, complex)) + assert_(not np.can_cast(complex, float)) + + assert_(np.can_cast('i8', 'f8')) + assert_(not np.can_cast('i8', 'f4')) + assert_(np.can_cast('i4', 'S11')) + + assert_(np.can_cast('i8', 'i8', 'no')) + assert_(not np.can_cast('i8', 'no')) + + assert_(np.can_cast('i8', 'equiv')) + assert_(not np.can_cast('i8', 'equiv')) + + assert_(np.can_cast('i8', 'safe')) + assert_(not np.can_cast('i4', 'safe')) + + assert_(np.can_cast('i4', 'same_kind')) + assert_(not np.can_cast('u4', 'same_kind')) + + assert_(np.can_cast('u4', 'unsafe')) + + assert_(np.can_cast('bool', 'S5')) + assert_(not np.can_cast('bool', 'S4')) + + assert_(np.can_cast('b', 'S4')) + assert_(not np.can_cast('b', 'S3')) + + assert_(np.can_cast('u1', 'S3')) + assert_(not np.can_cast('u1', 'S2')) + assert_(np.can_cast('u2', 'S5')) + assert_(not np.can_cast('u2', 'S4')) + assert_(np.can_cast('u4', 'S10')) + assert_(not np.can_cast('u4', 'S9')) + assert_(np.can_cast('u8', 'S20')) + assert_(not np.can_cast('u8', 'S19')) + + assert_(np.can_cast('i1', 'S4')) + assert_(not np.can_cast('i1', 'S3')) + assert_(np.can_cast('i2', 'S6')) + assert_(not np.can_cast('i2', 'S5')) + assert_(np.can_cast('i4', 'S11')) + assert_(not np.can_cast('i4', 'S10')) + assert_(np.can_cast('i8', 'S21')) + assert_(not np.can_cast('i8', 'S20')) + + assert_(np.can_cast('bool', 'S5')) + assert_(not np.can_cast('bool', 'S4')) + + assert_(np.can_cast('b', 'U4')) + assert_(not np.can_cast('b', 'U3')) + + assert_(np.can_cast('u1', 'U3')) + assert_(not np.can_cast('u1', 'U2')) + assert_(np.can_cast('u2', 'U5')) + assert_(not np.can_cast('u2', 'U4')) + assert_(np.can_cast('u4', 'U10')) + assert_(not np.can_cast('u4', 'U9')) + assert_(np.can_cast('u8', 'U20')) + assert_(not np.can_cast('u8', 'U19')) + + assert_(np.can_cast('i1', 'U4')) + assert_(not np.can_cast('i1', 'U3')) + assert_(np.can_cast('i2', 'U6')) + assert_(not np.can_cast('i2', 'U5')) + assert_(np.can_cast('i4', 'U11')) + assert_(not np.can_cast('i4', 'U10')) + assert_(np.can_cast('i8', 'U21')) + assert_(not np.can_cast('i8', 'U20')) + + assert_raises(TypeError, np.can_cast, 'i4', None) + assert_raises(TypeError, np.can_cast, None, 'i4') + + # Also test keyword arguments + assert_(np.can_cast(from_=np.int32, to=np.int64)) + + def test_can_cast_simple_to_structured(self): + # Non-structured can only be cast to structured in 'unsafe' mode. + assert_(not np.can_cast('i4', 'i4,i4')) + assert_(not np.can_cast('i4', 'i4,i2')) + assert_(np.can_cast('i4', 'i4,i4', casting='unsafe')) + assert_(np.can_cast('i4', 'i4,i2', casting='unsafe')) + # Even if there is just a single field which is OK. + assert_(not np.can_cast('i2', [('f1', 'i4')])) + assert_(not np.can_cast('i2', [('f1', 'i4')], casting='same_kind')) + assert_(np.can_cast('i2', [('f1', 'i4')], casting='unsafe')) + # It should be the same for recursive structured or subarrays. + assert_(not np.can_cast('i2', [('f1', 'i4,i4')])) + assert_(np.can_cast('i2', [('f1', 'i4,i4')], casting='unsafe')) + assert_(not np.can_cast('i2', [('f1', '(2,3)i4')])) + assert_(np.can_cast('i2', [('f1', '(2,3)i4')], casting='unsafe')) + + def test_can_cast_structured_to_simple(self): + # Need unsafe casting for structured to simple. + assert_(not np.can_cast([('f1', 'i4')], 'i4')) + assert_(np.can_cast([('f1', 'i4')], 'i4', casting='unsafe')) + assert_(np.can_cast([('f1', 'i4')], 'i2', casting='unsafe')) + # Since it is unclear what is being cast, multiple fields to + # single should not work even for unsafe casting. + assert_(not np.can_cast('i4,i4', 'i4', casting='unsafe')) + # But a single field inside a single field is OK. + assert_(not np.can_cast([('f1', [('x', 'i4')])], 'i4')) + assert_(np.can_cast([('f1', [('x', 'i4')])], 'i4', casting='unsafe')) + # And a subarray is fine too - it will just take the first element + # (arguably not very consistently; might also take the first field). + assert_(not np.can_cast([('f0', '(3,)i4')], 'i4')) + assert_(np.can_cast([('f0', '(3,)i4')], 'i4', casting='unsafe')) + # But a structured subarray with multiple fields should fail. + assert_(not np.can_cast([('f0', ('i4,i4'), (2,))], 'i4', + casting='unsafe')) + + def test_can_cast_values(self): + # With NumPy 2 and NEP 50, can_cast errors on Python scalars. We could + # define this as (usually safe) at some point, and already do so + # in `copyto` and ufuncs (but there an error is raised if the integer + # is out of bounds and a warning for out-of-bound floats). + # Raises even for unsafe, previously checked within range (for floats + # that was approximately whether it would overflow to inf). + with pytest.raises(TypeError): + np.can_cast(4, "int8", casting="unsafe") + + with pytest.raises(TypeError): + np.can_cast(4.0, "float64", casting="unsafe") + + with pytest.raises(TypeError): + np.can_cast(4j, "complex128", casting="unsafe") + + + @pytest.mark.parametrize("dtype", + list("?bhilqBHILQefdgFDG") + [rational]) + def test_can_cast_scalars(self, dtype): + # Basic test to ensure that scalars are supported in can-cast + # (does not check behavior exhaustively). + dtype = np.dtype(dtype) + scalar = dtype.type(0) + + assert np.can_cast(scalar, "int64") == np.can_cast(dtype, "int64") + assert np.can_cast(scalar, "float32", casting="unsafe") + + +# Custom exception class to test exception propagation in fromiter +class NIterError(Exception): + pass + + +class TestFromiter: + def makegen(self): + return (x**2 for x in range(24)) + + def test_types(self): + ai32 = np.fromiter(self.makegen(), np.int32) + ai64 = np.fromiter(self.makegen(), np.int64) + af = np.fromiter(self.makegen(), float) + assert_(ai32.dtype == np.dtype(np.int32)) + assert_(ai64.dtype == np.dtype(np.int64)) + assert_(af.dtype == np.dtype(float)) + + def test_lengths(self): + expected = np.array(list(self.makegen())) + a = np.fromiter(self.makegen(), int) + a20 = np.fromiter(self.makegen(), int, 20) + assert_(len(a) == len(expected)) + assert_(len(a20) == 20) + assert_raises(ValueError, np.fromiter, + self.makegen(), int, len(expected) + 10) + + def test_values(self): + expected = np.array(list(self.makegen())) + a = np.fromiter(self.makegen(), int) + a20 = np.fromiter(self.makegen(), int, 20) + assert_(np.all(a == expected, axis=0)) + assert_(np.all(a20 == expected[:20], axis=0)) + + def load_data(self, n, eindex): + # Utility method for the issue 2592 tests. + # Raise an exception at the desired index in the iterator. + for e in range(n): + if e == eindex: + raise NIterError('error at index %s' % eindex) + yield e + + @pytest.mark.parametrize("dtype", [int, object]) + @pytest.mark.parametrize(["count", "error_index"], [(10, 5), (10, 9)]) + def test_2592(self, count, error_index, dtype): + # Test iteration exceptions are correctly raised. The data/generator + # has `count` elements but errors at `error_index` + iterable = self.load_data(count, error_index) + with pytest.raises(NIterError): + np.fromiter(iterable, dtype=dtype, count=count) + + @pytest.mark.parametrize("dtype", ["S", "S0", "V0", "U0"]) + def test_empty_not_structured(self, dtype): + # Note, "S0" could be allowed at some point, so long "S" (without + # any length) is rejected. + with pytest.raises(ValueError, match="Must specify length"): + np.fromiter([], dtype=dtype) + + @pytest.mark.parametrize(["dtype", "data"], + [("d", [1, 2, 3, 4, 5, 6, 7, 8, 9]), + ("O", [1, 2, 3, 4, 5, 6, 7, 8, 9]), + ("i,O", [(1, 2), (5, 4), (2, 3), (9, 8), (6, 7)]), + # subarray dtypes (important because their dimensions end up + # in the result arrays dimension: + ("2i", [(1, 2), (5, 4), (2, 3), (9, 8), (6, 7)]), + (np.dtype(("O", (2, 3))), + [((1, 2, 3), (3, 4, 5)), ((3, 2, 1), (5, 4, 3))])]) + @pytest.mark.parametrize("length_hint", [0, 1]) + def test_growth_and_complicated_dtypes(self, dtype, data, length_hint): + dtype = np.dtype(dtype) + + data = data * 100 # make sure we realloc a bit + + class MyIter: + # Class/example from gh-15789 + def __length_hint__(self): + # only required to be an estimate, this is legal + return length_hint # 0 or 1 + + def __iter__(self): + return iter(data) + + res = np.fromiter(MyIter(), dtype=dtype) + expected = np.array(data, dtype=dtype) + + assert_array_equal(res, expected) + + def test_empty_result(self): + class MyIter: + def __length_hint__(self): + return 10 + + def __iter__(self): + return iter([]) # actual iterator is empty. + + res = np.fromiter(MyIter(), dtype="d") + assert res.shape == (0,) + assert res.dtype == "d" + + def test_too_few_items(self): + msg = "iterator too short: Expected 10 but iterator had only 3 items." + with pytest.raises(ValueError, match=msg): + np.fromiter([1, 2, 3], count=10, dtype=int) + + def test_failed_itemsetting(self): + with pytest.raises(TypeError): + np.fromiter([1, None, 3], dtype=int) + + # The following manages to hit somewhat trickier code paths: + iterable = ((2, 3, 4) for i in range(5)) + with pytest.raises(ValueError): + np.fromiter(iterable, dtype=np.dtype((int, 2))) + +class TestNonzero: + def test_nonzero_trivial(self): + assert_equal(np.count_nonzero(np.array([])), 0) + assert_equal(np.count_nonzero(np.array([], dtype='?')), 0) + assert_equal(np.nonzero(np.array([])), ([],)) + + assert_equal(np.count_nonzero(np.array([0])), 0) + assert_equal(np.count_nonzero(np.array([0], dtype='?')), 0) + assert_equal(np.nonzero(np.array([0])), ([],)) + + assert_equal(np.count_nonzero(np.array([1])), 1) + assert_equal(np.count_nonzero(np.array([1], dtype='?')), 1) + assert_equal(np.nonzero(np.array([1])), ([0],)) + + def test_nonzero_zerodim(self): + err_msg = "Calling nonzero on 0d arrays is not allowed" + with assert_raises_regex(ValueError, err_msg): + np.nonzero(np.array(0)) + with assert_raises_regex(ValueError, err_msg): + np.array(1).nonzero() + + def test_nonzero_onedim(self): + x = np.array([1, 0, 2, -1, 0, 0, 8]) + assert_equal(np.count_nonzero(x), 4) + assert_equal(np.count_nonzero(x), 4) + assert_equal(np.nonzero(x), ([0, 2, 3, 6],)) + + # x = np.array([(1, 2), (0, 0), (1, 1), (-1, 3), (0, 7)], + # dtype=[('a', 'i4'), ('b', 'i2')]) + x = np.array([(1, 2, -5, -3), (0, 0, 2, 7), (1, 1, 0, 1), (-1, 3, 1, 0), (0, 7, 0, 4)], + dtype=[('a', 'i4'), ('b', 'i2'), ('c', 'i1'), ('d', 'i8')]) + assert_equal(np.count_nonzero(x['a']), 3) + assert_equal(np.count_nonzero(x['b']), 4) + assert_equal(np.count_nonzero(x['c']), 3) + assert_equal(np.count_nonzero(x['d']), 4) + assert_equal(np.nonzero(x['a']), ([0, 2, 3],)) + assert_equal(np.nonzero(x['b']), ([0, 2, 3, 4],)) + + def test_nonzero_twodim(self): + x = np.array([[0, 1, 0], [2, 0, 3]]) + assert_equal(np.count_nonzero(x.astype('i1')), 3) + assert_equal(np.count_nonzero(x.astype('i2')), 3) + assert_equal(np.count_nonzero(x.astype('i4')), 3) + assert_equal(np.count_nonzero(x.astype('i8')), 3) + assert_equal(np.nonzero(x), ([0, 1, 1], [1, 0, 2])) + + x = np.eye(3) + assert_equal(np.count_nonzero(x.astype('i1')), 3) + assert_equal(np.count_nonzero(x.astype('i2')), 3) + assert_equal(np.count_nonzero(x.astype('i4')), 3) + assert_equal(np.count_nonzero(x.astype('i8')), 3) + assert_equal(np.nonzero(x), ([0, 1, 2], [0, 1, 2])) + + x = np.array([[(0, 1), (0, 0), (1, 11)], + [(1, 1), (1, 0), (0, 0)], + [(0, 0), (1, 5), (0, 1)]], dtype=[('a', 'f4'), ('b', 'u1')]) + assert_equal(np.count_nonzero(x['a']), 4) + assert_equal(np.count_nonzero(x['b']), 5) + assert_equal(np.nonzero(x['a']), ([0, 1, 1, 2], [2, 0, 1, 1])) + assert_equal(np.nonzero(x['b']), ([0, 0, 1, 2, 2], [0, 2, 0, 1, 2])) + + assert_(not x['a'].T.flags.aligned) + assert_equal(np.count_nonzero(x['a'].T), 4) + assert_equal(np.count_nonzero(x['b'].T), 5) + assert_equal(np.nonzero(x['a'].T), ([0, 1, 1, 2], [1, 1, 2, 0])) + assert_equal(np.nonzero(x['b'].T), ([0, 0, 1, 2, 2], [0, 1, 2, 0, 2])) + + def test_sparse(self): + # test special sparse condition boolean code path + for i in range(20): + c = np.zeros(200, dtype=bool) + c[i::20] = True + assert_equal(np.nonzero(c)[0], np.arange(i, 200 + i, 20)) + + c = np.zeros(400, dtype=bool) + c[10 + i:20 + i] = True + c[20 + i*2] = True + assert_equal(np.nonzero(c)[0], + np.concatenate((np.arange(10 + i, 20 + i), [20 + i*2]))) + + @pytest.mark.parametrize('dtype', [np.float32, np.float64]) + def test_nonzero_float_dtypes(self, dtype): + rng = np.random.default_rng(seed=10) + x = ((2**33)*rng.normal(size=100)).astype(dtype) + x[rng.choice(50, size=100)] = 0 + idxs = np.nonzero(x)[0] + assert_equal(np.array_equal(np.where(x != 0)[0], idxs), True) + + @pytest.mark.parametrize('dtype', [bool, np.int8, np.int16, np.int32, np.int64, + np.uint8, np.uint16, np.uint32, np.uint64]) + def test_nonzero_integer_dtypes(self, dtype): + rng = np.random.default_rng(seed=10) + x = rng.integers(0, 255, size=100).astype(dtype) + x[rng.choice(50, size=100)] = 0 + idxs = np.nonzero(x)[0] + assert_equal(np.array_equal(np.where(x != 0)[0], idxs), True) + + def test_return_type(self): + class C(np.ndarray): + pass + + for view in (C, np.ndarray): + for nd in range(1, 4): + shape = tuple(range(2, 2+nd)) + x = np.arange(np.prod(shape)).reshape(shape).view(view) + for nzx in (np.nonzero(x), x.nonzero()): + for nzx_i in nzx: + assert_(type(nzx_i) is np.ndarray) + assert_(nzx_i.flags.writeable) + + def test_count_nonzero_axis(self): + # Basic check of functionality + m = np.array([[0, 1, 7, 0, 0], [3, 0, 0, 2, 19]]) + + expected = np.array([1, 1, 1, 1, 1]) + assert_equal(np.count_nonzero(m, axis=0), expected) + + expected = np.array([2, 3]) + assert_equal(np.count_nonzero(m, axis=1), expected) + + assert_raises(ValueError, np.count_nonzero, m, axis=(1, 1)) + assert_raises(TypeError, np.count_nonzero, m, axis='foo') + assert_raises(AxisError, np.count_nonzero, m, axis=3) + assert_raises(TypeError, np.count_nonzero, + m, axis=np.array([[1], [2]])) + + def test_count_nonzero_axis_all_dtypes(self): + # More thorough test that the axis argument is respected + # for all dtypes and responds correctly when presented with + # either integer or tuple arguments for axis + msg = "Mismatch for dtype: %s" + + def assert_equal_w_dt(a, b, err_msg): + assert_equal(a.dtype, b.dtype, err_msg=err_msg) + assert_equal(a, b, err_msg=err_msg) + + for dt in np.typecodes['All']: + err_msg = msg % (np.dtype(dt).name,) + + if dt != 'V': + if dt != 'M': + m = np.zeros((3, 3), dtype=dt) + n = np.ones(1, dtype=dt) + + m[0, 0] = n[0] + m[1, 0] = n[0] + + else: # np.zeros doesn't work for np.datetime64 + m = np.array(['1970-01-01'] * 9) + m = m.reshape((3, 3)) + + m[0, 0] = '1970-01-12' + m[1, 0] = '1970-01-12' + m = m.astype(dt) + + expected = np.array([2, 0, 0], dtype=np.intp) + assert_equal_w_dt(np.count_nonzero(m, axis=0), + expected, err_msg=err_msg) + + expected = np.array([1, 1, 0], dtype=np.intp) + assert_equal_w_dt(np.count_nonzero(m, axis=1), + expected, err_msg=err_msg) + + expected = np.array(2) + assert_equal(np.count_nonzero(m, axis=(0, 1)), + expected, err_msg=err_msg) + assert_equal(np.count_nonzero(m, axis=None), + expected, err_msg=err_msg) + assert_equal(np.count_nonzero(m), + expected, err_msg=err_msg) + + if dt == 'V': + # There are no 'nonzero' objects for np.void, so the testing + # setup is slightly different for this dtype + m = np.array([np.void(1)] * 6).reshape((2, 3)) + + expected = np.array([0, 0, 0], dtype=np.intp) + assert_equal_w_dt(np.count_nonzero(m, axis=0), + expected, err_msg=err_msg) + + expected = np.array([0, 0], dtype=np.intp) + assert_equal_w_dt(np.count_nonzero(m, axis=1), + expected, err_msg=err_msg) + + expected = np.array(0) + assert_equal(np.count_nonzero(m, axis=(0, 1)), + expected, err_msg=err_msg) + assert_equal(np.count_nonzero(m, axis=None), + expected, err_msg=err_msg) + assert_equal(np.count_nonzero(m), + expected, err_msg=err_msg) + + def test_count_nonzero_axis_consistent(self): + # Check that the axis behaviour for valid axes in + # non-special cases is consistent (and therefore + # correct) by checking it against an integer array + # that is then casted to the generic object dtype + from itertools import combinations, permutations + + axis = (0, 1, 2, 3) + size = (5, 5, 5, 5) + msg = "Mismatch for axis: %s" + + rng = np.random.RandomState(1234) + m = rng.randint(-100, 100, size=size) + n = m.astype(object) + + for length in range(len(axis)): + for combo in combinations(axis, length): + for perm in permutations(combo): + assert_equal( + np.count_nonzero(m, axis=perm), + np.count_nonzero(n, axis=perm), + err_msg=msg % (perm,)) + + def test_countnonzero_axis_empty(self): + a = np.array([[0, 0, 1], [1, 0, 1]]) + assert_equal(np.count_nonzero(a, axis=()), a.astype(bool)) + + def test_countnonzero_keepdims(self): + a = np.array([[0, 0, 1, 0], + [0, 3, 5, 0], + [7, 9, 2, 0]]) + assert_equal(np.count_nonzero(a, axis=0, keepdims=True), + [[1, 2, 3, 0]]) + assert_equal(np.count_nonzero(a, axis=1, keepdims=True), + [[1], [2], [3]]) + assert_equal(np.count_nonzero(a, keepdims=True), + [[6]]) + + def test_array_method(self): + # Tests that the array method + # call to nonzero works + m = np.array([[1, 0, 0], [4, 0, 6]]) + tgt = [[0, 1, 1], [0, 0, 2]] + + assert_equal(m.nonzero(), tgt) + + def test_nonzero_invalid_object(self): + # gh-9295 + a = np.array([np.array([1, 2]), 3], dtype=object) + assert_raises(ValueError, np.nonzero, a) + + class BoolErrors: + def __bool__(self): + raise ValueError("Not allowed") + + assert_raises(ValueError, np.nonzero, np.array([BoolErrors()])) + + def test_nonzero_sideeffect_safety(self): + # gh-13631 + class FalseThenTrue: + _val = False + def __bool__(self): + try: + return self._val + finally: + self._val = True + + class TrueThenFalse: + _val = True + def __bool__(self): + try: + return self._val + finally: + self._val = False + + # result grows on the second pass + a = np.array([True, FalseThenTrue()]) + assert_raises(RuntimeError, np.nonzero, a) + + a = np.array([[True], [FalseThenTrue()]]) + assert_raises(RuntimeError, np.nonzero, a) + + # result shrinks on the second pass + a = np.array([False, TrueThenFalse()]) + assert_raises(RuntimeError, np.nonzero, a) + + a = np.array([[False], [TrueThenFalse()]]) + assert_raises(RuntimeError, np.nonzero, a) + + def test_nonzero_sideffects_structured_void(self): + # Checks that structured void does not mutate alignment flag of + # original array. + arr = np.zeros(5, dtype="i1,i8,i8") # `ones` may short-circuit + assert arr.flags.aligned # structs are considered "aligned" + assert not arr["f2"].flags.aligned + # make sure that nonzero/count_nonzero do not flip the flag: + np.nonzero(arr) + assert arr.flags.aligned + np.count_nonzero(arr) + assert arr.flags.aligned + + def test_nonzero_exception_safe(self): + # gh-13930 + + class ThrowsAfter: + def __init__(self, iters): + self.iters_left = iters + + def __bool__(self): + if self.iters_left == 0: + raise ValueError("called `iters` times") + + self.iters_left -= 1 + return True + + """ + Test that a ValueError is raised instead of a SystemError + + If the __bool__ function is called after the error state is set, + Python (cpython) will raise a SystemError. + """ + + # assert that an exception in first pass is handled correctly + a = np.array([ThrowsAfter(5)]*10) + assert_raises(ValueError, np.nonzero, a) + + # raise exception in second pass for 1-dimensional loop + a = np.array([ThrowsAfter(15)]*10) + assert_raises(ValueError, np.nonzero, a) + + # raise exception in second pass for n-dimensional loop + a = np.array([[ThrowsAfter(15)]]*10) + assert_raises(ValueError, np.nonzero, a) + + @pytest.mark.skipif(IS_WASM, reason="wasm doesn't have threads") + def test_structured_threadsafety(self): + # Nonzero (and some other functions) should be threadsafe for + # structured datatypes, see gh-15387. This test can behave randomly. + from concurrent.futures import ThreadPoolExecutor + + # Create a deeply nested dtype to make a failure more likely: + dt = np.dtype([("", "f8")]) + dt = np.dtype([("", dt)]) + dt = np.dtype([("", dt)] * 2) + # The array should be large enough to likely run into threading issues + arr = np.random.uniform(size=(5000, 4)).view(dt)[:, 0] + def func(arr): + arr.nonzero() + + tpe = ThreadPoolExecutor(max_workers=8) + futures = [tpe.submit(func, arr) for _ in range(10)] + for f in futures: + f.result() + + assert arr.dtype is dt + + +class TestIndex: + def test_boolean(self): + a = rand(3, 5, 8) + V = rand(5, 8) + g1 = randint(0, 5, size=15) + g2 = randint(0, 8, size=15) + V[g1, g2] = -V[g1, g2] + assert_((np.array([a[0][V > 0], a[1][V > 0], a[2][V > 0]]) == a[:, V > 0]).all()) + + def test_boolean_edgecase(self): + a = np.array([], dtype='int32') + b = np.array([], dtype='bool') + c = a[b] + assert_equal(c, []) + assert_equal(c.dtype, np.dtype('int32')) + + +class TestBinaryRepr: + def test_zero(self): + assert_equal(np.binary_repr(0), '0') + + def test_positive(self): + assert_equal(np.binary_repr(10), '1010') + assert_equal(np.binary_repr(12522), + '11000011101010') + assert_equal(np.binary_repr(10736848), + '101000111101010011010000') + + def test_negative(self): + assert_equal(np.binary_repr(-1), '-1') + assert_equal(np.binary_repr(-10), '-1010') + assert_equal(np.binary_repr(-12522), + '-11000011101010') + assert_equal(np.binary_repr(-10736848), + '-101000111101010011010000') + + def test_sufficient_width(self): + assert_equal(np.binary_repr(0, width=5), '00000') + assert_equal(np.binary_repr(10, width=7), '0001010') + assert_equal(np.binary_repr(-5, width=7), '1111011') + + def test_neg_width_boundaries(self): + # see gh-8670 + + # Ensure that the example in the issue does not + # break before proceeding to a more thorough test. + assert_equal(np.binary_repr(-128, width=8), '10000000') + + for width in range(1, 11): + num = -2**(width - 1) + exp = '1' + (width - 1) * '0' + assert_equal(np.binary_repr(num, width=width), exp) + + def test_large_neg_int64(self): + # See gh-14289. + assert_equal(np.binary_repr(np.int64(-2**62), width=64), + '11' + '0'*62) + + +class TestBaseRepr: + def test_base3(self): + assert_equal(np.base_repr(3**5, 3), '100000') + + def test_positive(self): + assert_equal(np.base_repr(12, 10), '12') + assert_equal(np.base_repr(12, 10, 4), '000012') + assert_equal(np.base_repr(12, 4), '30') + assert_equal(np.base_repr(3731624803700888, 36), '10QR0ROFCEW') + + def test_negative(self): + assert_equal(np.base_repr(-12, 10), '-12') + assert_equal(np.base_repr(-12, 10, 4), '-000012') + assert_equal(np.base_repr(-12, 4), '-30') + + def test_base_range(self): + with assert_raises(ValueError): + np.base_repr(1, 1) + with assert_raises(ValueError): + np.base_repr(1, 37) + + def test_minimal_signed_int(self): + assert_equal(np.base_repr(np.int8(-128)), '-10000000') + + +def _test_array_equal_parametrizations(): + """ + we pre-create arrays as we sometime want to pass the same instance + and sometime not. Passing the same instances may not mean the array are + equal, especially when containing None + """ + # those are 0-d arrays, it used to be a special case + # where (e0 == e0).all() would raise + e0 = np.array(0, dtype="int") + e1 = np.array(1, dtype="float") + # x,y, nan_equal, expected_result + yield (e0, e0.copy(), None, True) + yield (e0, e0.copy(), False, True) + yield (e0, e0.copy(), True, True) + + # + yield (e1, e1.copy(), None, True) + yield (e1, e1.copy(), False, True) + yield (e1, e1.copy(), True, True) + + # Non-nanable – those cannot hold nans + a12 = np.array([1, 2]) + a12b = a12.copy() + a123 = np.array([1, 2, 3]) + a13 = np.array([1, 3]) + a34 = np.array([3, 4]) + + aS1 = np.array(["a"], dtype="S1") + aS1b = aS1.copy() + aS1u4 = np.array([("a", 1)], dtype="S1,u4") + aS1u4b = aS1u4.copy() + + yield (a12, a12b, None, True) + yield (a12, a12, None, True) + yield (a12, a123, None, False) + yield (a12, a34, None, False) + yield (a12, a13, None, False) + yield (aS1, aS1b, None, True) + yield (aS1, aS1, None, True) + + # Non-float dtype - equal_nan should have no effect, + yield (a123, a123, None, True) + yield (a123, a123, False, True) + yield (a123, a123, True, True) + yield (a123, a123.copy(), None, True) + yield (a123, a123.copy(), False, True) + yield (a123, a123.copy(), True, True) + yield (a123.astype("float"), a123.astype("float"), None, True) + yield (a123.astype("float"), a123.astype("float"), False, True) + yield (a123.astype("float"), a123.astype("float"), True, True) + + # these can hold None + b1 = np.array([1, 2, np.nan]) + b2 = np.array([1, np.nan, 2]) + b3 = np.array([1, 2, np.inf]) + b4 = np.array(np.nan) + + # instances are the same + yield (b1, b1, None, False) + yield (b1, b1, False, False) + yield (b1, b1, True, True) + + # equal but not same instance + yield (b1, b1.copy(), None, False) + yield (b1, b1.copy(), False, False) + yield (b1, b1.copy(), True, True) + + # same once stripped of Nan + yield (b1, b2, None, False) + yield (b1, b2, False, False) + yield (b1, b2, True, False) + + # nan's not conflated with inf's + yield (b1, b3, None, False) + yield (b1, b3, False, False) + yield (b1, b3, True, False) + + # all Nan + yield (b4, b4, None, False) + yield (b4, b4, False, False) + yield (b4, b4, True, True) + yield (b4, b4.copy(), None, False) + yield (b4, b4.copy(), False, False) + yield (b4, b4.copy(), True, True) + + t1 = b1.astype("timedelta64") + t2 = b2.astype("timedelta64") + + # Timedeltas are particular + yield (t1, t1, None, False) + yield (t1, t1, False, False) + yield (t1, t1, True, True) + + yield (t1, t1.copy(), None, False) + yield (t1, t1.copy(), False, False) + yield (t1, t1.copy(), True, True) + + yield (t1, t2, None, False) + yield (t1, t2, False, False) + yield (t1, t2, True, False) + + # Multi-dimensional array + md1 = np.array([[0, 1], [np.nan, 1]]) + + yield (md1, md1, None, False) + yield (md1, md1, False, False) + yield (md1, md1, True, True) + yield (md1, md1.copy(), None, False) + yield (md1, md1.copy(), False, False) + yield (md1, md1.copy(), True, True) + # both complexes are nan+nan.j but the same instance + cplx1, cplx2 = [np.array([np.nan + np.nan * 1j])] * 2 + + # only real or img are nan. + cplx3, cplx4 = np.complex64(1, np.nan), np.complex64(np.nan, 1) + + # Complex values + yield (cplx1, cplx2, None, False) + yield (cplx1, cplx2, False, False) + yield (cplx1, cplx2, True, True) + + # Complex values, 1+nan, nan+1j + yield (cplx3, cplx4, None, False) + yield (cplx3, cplx4, False, False) + yield (cplx3, cplx4, True, True) + + +class TestArrayComparisons: + @pytest.mark.parametrize( + "bx,by,equal_nan,expected", _test_array_equal_parametrizations() + ) + def test_array_equal_equal_nan(self, bx, by, equal_nan, expected): + """ + This test array_equal for a few combinations: + + - are the two inputs the same object or not (same object may not + be equal if contains NaNs) + - Whether we should consider or not, NaNs, being equal. + + """ + if equal_nan is None: + res = np.array_equal(bx, by) + else: + res = np.array_equal(bx, by, equal_nan=equal_nan) + assert_(res is expected) + assert_(type(res) is bool) + + def test_array_equal_different_scalar_types(self): + # https://github.com/numpy/numpy/issues/27271 + a = np.array("foo") + b = np.array(1) + assert not np.array_equal(a, b) + assert not np.array_equiv(a, b) + + def test_none_compares_elementwise(self): + a = np.array([None, 1, None], dtype=object) + assert_equal(a == None, [True, False, True]) # noqa: E711 + assert_equal(a != None, [False, True, False]) # noqa: E711 + + a = np.ones(3) + assert_equal(a == None, [False, False, False]) # noqa: E711 + assert_equal(a != None, [True, True, True]) # noqa: E711 + + def test_array_equiv(self): + res = np.array_equiv(np.array([1, 2]), np.array([1, 2])) + assert_(res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([1, 2, 3])) + assert_(not res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([3, 4])) + assert_(not res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([1, 3])) + assert_(not res) + assert_(type(res) is bool) + + res = np.array_equiv(np.array([1, 1]), np.array([1])) + assert_(res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 1]), np.array([[1], [1]])) + assert_(res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([2])) + assert_(not res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([[1], [2]])) + assert_(not res) + assert_(type(res) is bool) + res = np.array_equiv(np.array([1, 2]), np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])) + assert_(not res) + assert_(type(res) is bool) + + @pytest.mark.parametrize("dtype", ["V0", "V3", "V10"]) + def test_compare_unstructured_voids(self, dtype): + zeros = np.zeros(3, dtype=dtype) + + assert_array_equal(zeros, zeros) + assert not (zeros != zeros).any() + + if dtype == "V0": + # Can't test != of actually different data + return + + nonzeros = np.array([b"1", b"2", b"3"], dtype=dtype) + + assert not (zeros == nonzeros).any() + assert (zeros != nonzeros).all() + + +def assert_array_strict_equal(x, y): + assert_array_equal(x, y) + # Check flags, 32 bit arches typically don't provide 16 byte alignment + if ((x.dtype.alignment <= 8 or + np.intp().dtype.itemsize != 4) and + sys.platform != 'win32'): + assert_(x.flags == y.flags) + else: + assert_(x.flags.owndata == y.flags.owndata) + assert_(x.flags.writeable == y.flags.writeable) + assert_(x.flags.c_contiguous == y.flags.c_contiguous) + assert_(x.flags.f_contiguous == y.flags.f_contiguous) + assert_(x.flags.writebackifcopy == y.flags.writebackifcopy) + # check endianness + assert_(x.dtype.isnative == y.dtype.isnative) + + +class TestClip: + def setup_method(self): + self.nr = 5 + self.nc = 3 + + def fastclip(self, a, m, M, out=None, **kwargs): + return a.clip(m, M, out=out, **kwargs) + + def clip(self, a, m, M, out=None): + # use a.choose to verify fastclip result + selector = np.less(a, m) + 2*np.greater(a, M) + return selector.choose((a, m, M), out=out) + + # Handy functions + def _generate_data(self, n, m): + return randn(n, m) + + def _generate_data_complex(self, n, m): + return randn(n, m) + 1.j * rand(n, m) + + def _generate_flt_data(self, n, m): + return (randn(n, m)).astype(np.float32) + + def _neg_byteorder(self, a): + a = np.asarray(a) + if sys.byteorder == 'little': + a = a.astype(a.dtype.newbyteorder('>')) + else: + a = a.astype(a.dtype.newbyteorder('<')) + return a + + def _generate_non_native_data(self, n, m): + data = randn(n, m) + data = self._neg_byteorder(data) + assert_(not data.dtype.isnative) + return data + + def _generate_int_data(self, n, m): + return (10 * rand(n, m)).astype(np.int64) + + def _generate_int32_data(self, n, m): + return (10 * rand(n, m)).astype(np.int32) + + # Now the real test cases + + @pytest.mark.parametrize("dtype", '?bhilqpBHILQPefdgFDGO') + def test_ones_pathological(self, dtype): + # for preservation of behavior described in + # gh-12519; amin > amax behavior may still change + # in the future + arr = np.ones(10, dtype=dtype) + expected = np.zeros(10, dtype=dtype) + actual = np.clip(arr, 1, 0) + if dtype == 'O': + assert actual.tolist() == expected.tolist() + else: + assert_equal(actual, expected) + + def test_simple_double(self): + # Test native double input with scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = 0.1 + M = 0.6 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_simple_int(self): + # Test native int input with scalar min/max. + a = self._generate_int_data(self.nr, self.nc) + a = a.astype(int) + m = -2 + M = 4 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_array_double(self): + # Test native double input with array min/max. + a = self._generate_data(self.nr, self.nc) + m = np.zeros(a.shape) + M = m + 0.5 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_simple_nonnative(self): + # Test non native double input with scalar min/max. + # Test native double input with non native double scalar min/max. + a = self._generate_non_native_data(self.nr, self.nc) + m = -0.5 + M = 0.6 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_equal(ac, act) + + # Test native double input with non native double scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 + M = self._neg_byteorder(0.6) + assert_(not M.dtype.isnative) + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_equal(ac, act) + + def test_simple_complex(self): + # Test native complex input with native double scalar min/max. + # Test native input with complex double scalar min/max. + a = 3 * self._generate_data_complex(self.nr, self.nc) + m = -0.5 + M = 1. + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + # Test native input with complex double scalar min/max. + a = 3 * self._generate_data(self.nr, self.nc) + m = -0.5 + 1.j + M = 1. + 2.j + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_clip_complex(self): + # Address Issue gh-5354 for clipping complex arrays + # Test native complex input without explicit min/max + # ie, either min=None or max=None + a = np.ones(10, dtype=complex) + m = a.min() + M = a.max() + am = self.fastclip(a, m, None) + aM = self.fastclip(a, None, M) + assert_array_strict_equal(am, a) + assert_array_strict_equal(aM, a) + + def test_clip_non_contig(self): + # Test clip for non contiguous native input and native scalar min/max. + a = self._generate_data(self.nr * 2, self.nc * 3) + a = a[::2, ::3] + assert_(not a.flags['F_CONTIGUOUS']) + assert_(not a.flags['C_CONTIGUOUS']) + ac = self.fastclip(a, -1.6, 1.7) + act = self.clip(a, -1.6, 1.7) + assert_array_strict_equal(ac, act) + + def test_simple_out(self): + # Test native double input with scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 + M = 0.6 + ac = np.zeros(a.shape) + act = np.zeros(a.shape) + self.fastclip(a, m, M, ac) + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + @pytest.mark.parametrize("casting", [None, "unsafe"]) + def test_simple_int32_inout(self, casting): + # Test native int32 input with double min/max and int32 out. + a = self._generate_int32_data(self.nr, self.nc) + m = np.float64(0) + M = np.float64(2) + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + if casting is None: + with pytest.raises(TypeError): + self.fastclip(a, m, M, ac, casting=casting) + else: + # explicitly passing "unsafe" will silence warning + self.fastclip(a, m, M, ac, casting=casting) + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_simple_int64_out(self): + # Test native int32 input with int32 scalar min/max and int64 out. + a = self._generate_int32_data(self.nr, self.nc) + m = np.int32(-1) + M = np.int32(1) + ac = np.zeros(a.shape, dtype=np.int64) + act = ac.copy() + self.fastclip(a, m, M, ac) + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_simple_int64_inout(self): + # Test native int32 input with double array min/max and int32 out. + a = self._generate_int32_data(self.nr, self.nc) + m = np.zeros(a.shape, np.float64) + M = np.float64(1) + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + self.fastclip(a, m, M, out=ac, casting="unsafe") + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_simple_int32_out(self): + # Test native double input with scalar min/max and int out. + a = self._generate_data(self.nr, self.nc) + m = -1.0 + M = 2.0 + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + self.fastclip(a, m, M, out=ac, casting="unsafe") + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_simple_inplace_01(self): + # Test native double input with array min/max in-place. + a = self._generate_data(self.nr, self.nc) + ac = a.copy() + m = np.zeros(a.shape) + M = 1.0 + self.fastclip(a, m, M, a) + self.clip(a, m, M, ac) + assert_array_strict_equal(a, ac) + + def test_simple_inplace_02(self): + # Test native double input with scalar min/max in-place. + a = self._generate_data(self.nr, self.nc) + ac = a.copy() + m = -0.5 + M = 0.6 + self.fastclip(a, m, M, a) + self.clip(ac, m, M, ac) + assert_array_strict_equal(a, ac) + + def test_noncontig_inplace(self): + # Test non contiguous double input with double scalar min/max in-place. + a = self._generate_data(self.nr * 2, self.nc * 3) + a = a[::2, ::3] + assert_(not a.flags['F_CONTIGUOUS']) + assert_(not a.flags['C_CONTIGUOUS']) + ac = a.copy() + m = -0.5 + M = 0.6 + self.fastclip(a, m, M, a) + self.clip(ac, m, M, ac) + assert_array_equal(a, ac) + + def test_type_cast_01(self): + # Test native double input with scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 + M = 0.6 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_02(self): + # Test native int32 input with int32 scalar min/max. + a = self._generate_int_data(self.nr, self.nc) + a = a.astype(np.int32) + m = -2 + M = 4 + ac = self.fastclip(a, m, M) + act = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_03(self): + # Test native int32 input with float64 scalar min/max. + a = self._generate_int32_data(self.nr, self.nc) + m = -2 + M = 4 + ac = self.fastclip(a, np.float64(m), np.float64(M)) + act = self.clip(a, np.float64(m), np.float64(M)) + assert_array_strict_equal(ac, act) + + def test_type_cast_04(self): + # Test native int32 input with float32 scalar min/max. + a = self._generate_int32_data(self.nr, self.nc) + m = np.float32(-2) + M = np.float32(4) + act = self.fastclip(a, m, M) + ac = self.clip(a, m, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_05(self): + # Test native int32 with double arrays min/max. + a = self._generate_int_data(self.nr, self.nc) + m = -0.5 + M = 1. + ac = self.fastclip(a, m * np.zeros(a.shape), M) + act = self.clip(a, m * np.zeros(a.shape), M) + assert_array_strict_equal(ac, act) + + def test_type_cast_06(self): + # Test native with NON native scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = 0.5 + m_s = self._neg_byteorder(m) + M = 1. + act = self.clip(a, m_s, M) + ac = self.fastclip(a, m_s, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_07(self): + # Test NON native with native array min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 * np.ones(a.shape) + M = 1. + a_s = self._neg_byteorder(a) + assert_(not a_s.dtype.isnative) + act = a_s.clip(m, M) + ac = self.fastclip(a_s, m, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_08(self): + # Test NON native with native scalar min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 + M = 1. + a_s = self._neg_byteorder(a) + assert_(not a_s.dtype.isnative) + ac = self.fastclip(a_s, m, M) + act = a_s.clip(m, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_09(self): + # Test native with NON native array min/max. + a = self._generate_data(self.nr, self.nc) + m = -0.5 * np.ones(a.shape) + M = 1. + m_s = self._neg_byteorder(m) + assert_(not m_s.dtype.isnative) + ac = self.fastclip(a, m_s, M) + act = self.clip(a, m_s, M) + assert_array_strict_equal(ac, act) + + def test_type_cast_10(self): + # Test native int32 with float min/max and float out for output argument. + a = self._generate_int_data(self.nr, self.nc) + b = np.zeros(a.shape, dtype=np.float32) + m = np.float32(-0.5) + M = np.float32(1) + act = self.clip(a, m, M, out=b) + ac = self.fastclip(a, m, M, out=b) + assert_array_strict_equal(ac, act) + + def test_type_cast_11(self): + # Test non native with native scalar, min/max, out non native + a = self._generate_non_native_data(self.nr, self.nc) + b = a.copy() + b = b.astype(b.dtype.newbyteorder('>')) + bt = b.copy() + m = -0.5 + M = 1. + self.fastclip(a, m, M, out=b) + self.clip(a, m, M, out=bt) + assert_array_strict_equal(b, bt) + + def test_type_cast_12(self): + # Test native int32 input and min/max and float out + a = self._generate_int_data(self.nr, self.nc) + b = np.zeros(a.shape, dtype=np.float32) + m = np.int32(0) + M = np.int32(1) + act = self.clip(a, m, M, out=b) + ac = self.fastclip(a, m, M, out=b) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_simple(self): + # Test native double input with scalar min/max + a = self._generate_data(self.nr, self.nc) + m = -0.5 + M = 0.6 + ac = np.zeros(a.shape) + act = np.zeros(a.shape) + self.fastclip(a, m, M, ac) + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_simple2(self): + # Test native int32 input with double min/max and int32 out + a = self._generate_int32_data(self.nr, self.nc) + m = np.float64(0) + M = np.float64(2) + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + self.fastclip(a, m, M, out=ac, casting="unsafe") + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_simple_int32(self): + # Test native int32 input with int32 scalar min/max and int64 out + a = self._generate_int32_data(self.nr, self.nc) + m = np.int32(-1) + M = np.int32(1) + ac = np.zeros(a.shape, dtype=np.int64) + act = ac.copy() + self.fastclip(a, m, M, ac) + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_array_int32(self): + # Test native int32 input with double array min/max and int32 out + a = self._generate_int32_data(self.nr, self.nc) + m = np.zeros(a.shape, np.float64) + M = np.float64(1) + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + self.fastclip(a, m, M, out=ac, casting="unsafe") + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_array_outint32(self): + # Test native double input with scalar min/max and int out + a = self._generate_data(self.nr, self.nc) + m = -1.0 + M = 2.0 + ac = np.zeros(a.shape, dtype=np.int32) + act = ac.copy() + self.fastclip(a, m, M, out=ac, casting="unsafe") + self.clip(a, m, M, act) + assert_array_strict_equal(ac, act) + + def test_clip_with_out_transposed(self): + # Test that the out argument works when transposed + a = np.arange(16).reshape(4, 4) + out = np.empty_like(a).T + a.clip(4, 10, out=out) + expected = self.clip(a, 4, 10) + assert_array_equal(out, expected) + + def test_clip_with_out_memory_overlap(self): + # Test that the out argument works when it has memory overlap + a = np.arange(16).reshape(4, 4) + ac = a.copy() + a[:-1].clip(4, 10, out=a[1:]) + expected = self.clip(ac[:-1], 4, 10) + assert_array_equal(a[1:], expected) + + def test_clip_inplace_array(self): + # Test native double input with array min/max + a = self._generate_data(self.nr, self.nc) + ac = a.copy() + m = np.zeros(a.shape) + M = 1.0 + self.fastclip(a, m, M, a) + self.clip(a, m, M, ac) + assert_array_strict_equal(a, ac) + + def test_clip_inplace_simple(self): + # Test native double input with scalar min/max + a = self._generate_data(self.nr, self.nc) + ac = a.copy() + m = -0.5 + M = 0.6 + self.fastclip(a, m, M, a) + self.clip(a, m, M, ac) + assert_array_strict_equal(a, ac) + + def test_clip_func_takes_out(self): + # Ensure that the clip() function takes an out=argument. + a = self._generate_data(self.nr, self.nc) + ac = a.copy() + m = -0.5 + M = 0.6 + a2 = np.clip(a, m, M, out=a) + self.clip(a, m, M, ac) + assert_array_strict_equal(a2, ac) + assert_(a2 is a) + + def test_clip_nan(self): + d = np.arange(7.) + assert_equal(d.clip(min=np.nan), np.nan) + assert_equal(d.clip(max=np.nan), np.nan) + assert_equal(d.clip(min=np.nan, max=np.nan), np.nan) + assert_equal(d.clip(min=-2, max=np.nan), np.nan) + assert_equal(d.clip(min=np.nan, max=10), np.nan) + + def test_object_clip(self): + a = np.arange(10, dtype=object) + actual = np.clip(a, 1, 5) + expected = np.array([1, 1, 2, 3, 4, 5, 5, 5, 5, 5]) + assert actual.tolist() == expected.tolist() + + def test_clip_all_none(self): + arr = np.arange(10, dtype=object) + assert_equal(np.clip(arr, None, None), arr) + assert_equal(np.clip(arr), arr) + + def test_clip_invalid_casting(self): + a = np.arange(10, dtype=object) + with assert_raises_regex(ValueError, + 'casting must be one of'): + self.fastclip(a, 1, 8, casting="garbage") + + @pytest.mark.parametrize("amin, amax", [ + # two scalars + (1, 0), + # mix scalar and array + (1, np.zeros(10)), + # two arrays + (np.ones(10), np.zeros(10)), + ]) + def test_clip_value_min_max_flip(self, amin, amax): + a = np.arange(10, dtype=np.int64) + # requirement from ufunc_docstrings.py + expected = np.minimum(np.maximum(a, amin), amax) + actual = np.clip(a, amin, amax) + assert_equal(actual, expected) + + @pytest.mark.parametrize("arr, amin, amax, exp", [ + # for a bug in npy_ObjectClip, based on a + # case produced by hypothesis + (np.zeros(10, dtype=object), + 0, + -2**64+1, + np.full(10, -2**64+1, dtype=object)), + # for bugs in NPY_TIMEDELTA_MAX, based on a case + # produced by hypothesis + (np.zeros(10, dtype='m8') - 1, + 0, + 0, + np.zeros(10, dtype='m8')), + ]) + def test_clip_problem_cases(self, arr, amin, amax, exp): + actual = np.clip(arr, amin, amax) + assert_equal(actual, exp) + + @pytest.mark.parametrize("arr, amin, amax", [ + # problematic scalar nan case from hypothesis + (np.zeros(10, dtype=np.int64), + np.array(np.nan), + np.zeros(10, dtype=np.int32)), + ]) + def test_clip_scalar_nan_propagation(self, arr, amin, amax): + # enforcement of scalar nan propagation for comparisons + # called through clip() + expected = np.minimum(np.maximum(arr, amin), amax) + actual = np.clip(arr, amin, amax) + assert_equal(actual, expected) + + @pytest.mark.xfail(reason="propagation doesn't match spec") + @pytest.mark.parametrize("arr, amin, amax", [ + (np.array([1] * 10, dtype='m8'), + np.timedelta64('NaT'), + np.zeros(10, dtype=np.int32)), + ]) + @pytest.mark.filterwarnings("ignore::DeprecationWarning") + def test_NaT_propagation(self, arr, amin, amax): + # NOTE: the expected function spec doesn't + # propagate NaT, but clip() now does + expected = np.minimum(np.maximum(arr, amin), amax) + actual = np.clip(arr, amin, amax) + assert_equal(actual, expected) + + @given( + data=st.data(), + arr=hynp.arrays( + dtype=hynp.integer_dtypes() | hynp.floating_dtypes(), + shape=hynp.array_shapes() + ) + ) + def test_clip_property(self, data, arr): + """A property-based test using Hypothesis. + + This aims for maximum generality: it could in principle generate *any* + valid inputs to np.clip, and in practice generates much more varied + inputs than human testers come up with. + + Because many of the inputs have tricky dependencies - compatible dtypes + and mutually-broadcastable shapes - we use `st.data()` strategy draw + values *inside* the test function, from strategies we construct based + on previous values. An alternative would be to define a custom strategy + with `@st.composite`, but until we have duplicated code inline is fine. + + That accounts for most of the function; the actual test is just three + lines to calculate and compare actual vs expected results! + """ + numeric_dtypes = hynp.integer_dtypes() | hynp.floating_dtypes() + # Generate shapes for the bounds which can be broadcast with each other + # and with the base shape. Below, we might decide to use scalar bounds, + # but it's clearer to generate these shapes unconditionally in advance. + in_shapes, result_shape = data.draw( + hynp.mutually_broadcastable_shapes( + num_shapes=2, base_shape=arr.shape + ) + ) + # Scalar `nan` is deprecated due to the differing behaviour it shows. + s = numeric_dtypes.flatmap( + lambda x: hynp.from_dtype(x, allow_nan=False)) + amin = data.draw(s | hynp.arrays(dtype=numeric_dtypes, + shape=in_shapes[0], elements={"allow_nan": False})) + amax = data.draw(s | hynp.arrays(dtype=numeric_dtypes, + shape=in_shapes[1], elements={"allow_nan": False})) + + # Then calculate our result and expected result and check that they're + # equal! See gh-12519 and gh-19457 for discussion deciding on this + # property and the result_type argument. + result = np.clip(arr, amin, amax) + t = np.result_type(arr, amin, amax) + expected = np.minimum(amax, np.maximum(arr, amin, dtype=t), dtype=t) + assert result.dtype == t + assert_array_equal(result, expected) + + def test_clip_min_max_args(self): + arr = np.arange(5) + + assert_array_equal(np.clip(arr), arr) + assert_array_equal(np.clip(arr, min=2, max=3), np.clip(arr, 2, 3)) + assert_array_equal(np.clip(arr, min=None, max=2), + np.clip(arr, None, 2)) + + with assert_raises_regex(TypeError, "missing 1 required positional " + "argument: 'a_max'"): + np.clip(arr, 2) + with assert_raises_regex(TypeError, "missing 1 required positional " + "argument: 'a_min'"): + np.clip(arr, a_max=2) + msg = ("Passing `min` or `max` keyword argument when `a_min` and " + "`a_max` are provided is forbidden.") + with assert_raises_regex(ValueError, msg): + np.clip(arr, 2, 3, max=3) + with assert_raises_regex(ValueError, msg): + np.clip(arr, 2, 3, min=2) + + @pytest.mark.parametrize("dtype,min,max", [ + ("int32", -2**32-1, 2**32), + ("int32", -2**320, None), + ("int32", None, 2**300), + ("int32", -1000, 2**32), + ("int32", -2**32-1, 1000), + ("uint8", -1, 129), + ]) + def test_out_of_bound_pyints(self, dtype, min, max): + a = np.arange(10000).astype(dtype) + # Check min only + c = np.clip(a, min=min, max=max) + assert not np.may_share_memory(a, c) + assert c.dtype == a.dtype + if min is not None: + assert (c >= min).all() + if max is not None: + assert (c <= max).all() + +class TestAllclose: + rtol = 1e-5 + atol = 1e-8 + + def setup_method(self): + self.olderr = np.seterr(invalid='ignore') + + def teardown_method(self): + np.seterr(**self.olderr) + + def tst_allclose(self, x, y): + assert_(np.allclose(x, y), "%s and %s not close" % (x, y)) + + def tst_not_allclose(self, x, y): + assert_(not np.allclose(x, y), "%s and %s shouldn't be close" % (x, y)) + + def test_ip_allclose(self): + # Parametric test factory. + arr = np.array([100, 1000]) + aran = np.arange(125).reshape((5, 5, 5)) + + atol = self.atol + rtol = self.rtol + + data = [([1, 0], [1, 0]), + ([atol], [0]), + ([1], [1+rtol+atol]), + (arr, arr + arr*rtol), + (arr, arr + arr*rtol + atol*2), + (aran, aran + aran*rtol), + (np.inf, np.inf), + (np.inf, [np.inf])] + + for (x, y) in data: + self.tst_allclose(x, y) + + def test_ip_not_allclose(self): + # Parametric test factory. + aran = np.arange(125).reshape((5, 5, 5)) + + atol = self.atol + rtol = self.rtol + + data = [([np.inf, 0], [1, np.inf]), + ([np.inf, 0], [1, 0]), + ([np.inf, np.inf], [1, np.inf]), + ([np.inf, np.inf], [1, 0]), + ([-np.inf, 0], [np.inf, 0]), + ([np.nan, 0], [np.nan, 0]), + ([atol*2], [0]), + ([1], [1+rtol+atol*2]), + (aran, aran + aran*atol + atol*2), + (np.array([np.inf, 1]), np.array([0, np.inf]))] + + for (x, y) in data: + self.tst_not_allclose(x, y) + + def test_no_parameter_modification(self): + x = np.array([np.inf, 1]) + y = np.array([0, np.inf]) + np.allclose(x, y) + assert_array_equal(x, np.array([np.inf, 1])) + assert_array_equal(y, np.array([0, np.inf])) + + def test_min_int(self): + # Could make problems because of abs(min_int) == min_int + min_int = np.iinfo(np.int_).min + a = np.array([min_int], dtype=np.int_) + assert_(np.allclose(a, a)) + + def test_equalnan(self): + x = np.array([1.0, np.nan]) + assert_(np.allclose(x, x, equal_nan=True)) + + def test_return_class_is_ndarray(self): + # Issue gh-6475 + # Check that allclose does not preserve subtypes + class Foo(np.ndarray): + def __new__(cls, *args, **kwargs): + return np.array(*args, **kwargs).view(cls) + + a = Foo([1]) + assert_(type(np.allclose(a, a)) is bool) + + +class TestIsclose: + rtol = 1e-5 + atol = 1e-8 + + def _setup(self): + atol = self.atol + rtol = self.rtol + arr = np.array([100, 1000]) + aran = np.arange(125).reshape((5, 5, 5)) + + self.all_close_tests = [ + ([1, 0], [1, 0]), + ([atol], [0]), + ([1], [1 + rtol + atol]), + (arr, arr + arr*rtol), + (arr, arr + arr*rtol + atol), + (aran, aran + aran*rtol), + (np.inf, np.inf), + (np.inf, [np.inf]), + ([np.inf, -np.inf], [np.inf, -np.inf]), + ] + self.none_close_tests = [ + ([np.inf, 0], [1, np.inf]), + ([np.inf, -np.inf], [1, 0]), + ([np.inf, np.inf], [1, -np.inf]), + ([np.inf, np.inf], [1, 0]), + ([np.nan, 0], [np.nan, -np.inf]), + ([atol*2], [0]), + ([1], [1 + rtol + atol*2]), + (aran, aran + rtol*1.1*aran + atol*1.1), + (np.array([np.inf, 1]), np.array([0, np.inf])), + ] + self.some_close_tests = [ + ([np.inf, 0], [np.inf, atol*2]), + ([atol, 1, 1e6*(1 + 2*rtol) + atol], [0, np.nan, 1e6]), + (np.arange(3), [0, 1, 2.1]), + (np.nan, [np.nan, np.nan, np.nan]), + ([0], [atol, np.inf, -np.inf, np.nan]), + (0, [atol, np.inf, -np.inf, np.nan]), + ] + self.some_close_results = [ + [True, False], + [True, False, False], + [True, True, False], + [False, False, False], + [True, False, False, False], + [True, False, False, False], + ] + + def test_ip_isclose(self): + self._setup() + tests = self.some_close_tests + results = self.some_close_results + for (x, y), result in zip(tests, results): + assert_array_equal(np.isclose(x, y), result) + + x = np.array([2.1, 2.1, 2.1, 2.1, 5, np.nan]) + y = np.array([2, 2, 2, 2, np.nan, 5]) + atol = [0.11, 0.09, 1e-8, 1e-8, 1, 1] + rtol = [1e-8, 1e-8, 0.06, 0.04, 1, 1] + expected = np.array([True, False, True, False, False, False]) + assert_array_equal(np.isclose(x, y, rtol=rtol, atol=atol), expected) + + message = "operands could not be broadcast together..." + atol = np.array([1e-8, 1e-8]) + with assert_raises(ValueError, msg=message): + np.isclose(x, y, atol=atol) + + rtol = np.array([1e-5, 1e-5]) + with assert_raises(ValueError, msg=message): + np.isclose(x, y, rtol=rtol) + + def test_nep50_isclose(self): + below_one = float(1.-np.finfo('f8').eps) + f32 = np.array(below_one, 'f4') # This is just 1 at float32 precision + assert f32 > np.array(below_one) + # NEP 50 broadcasting of python scalars + assert f32 == below_one + # Test that it works for isclose arguments too (and that those fail if + # one uses a numpy float64). + assert np.isclose(f32, below_one, atol=0, rtol=0) + assert np.isclose(f32, np.float32(0), atol=below_one) + assert np.isclose(f32, 2, atol=0, rtol=below_one/2) + assert not np.isclose(f32, np.float64(below_one), atol=0, rtol=0) + assert not np.isclose(f32, np.float32(0), atol=np.float64(below_one)) + assert not np.isclose(f32, 2, atol=0, rtol=np.float64(below_one/2)) + + def tst_all_isclose(self, x, y): + assert_(np.all(np.isclose(x, y)), "%s and %s not close" % (x, y)) + + def tst_none_isclose(self, x, y): + msg = "%s and %s shouldn't be close" + assert_(not np.any(np.isclose(x, y)), msg % (x, y)) + + def tst_isclose_allclose(self, x, y): + msg = "isclose.all() and allclose aren't same for %s and %s" + msg2 = "isclose and allclose aren't same for %s and %s" + if np.isscalar(x) and np.isscalar(y): + assert_(np.isclose(x, y) == np.allclose(x, y), msg=msg2 % (x, y)) + else: + assert_array_equal(np.isclose(x, y).all(), np.allclose(x, y), msg % (x, y)) + + def test_ip_all_isclose(self): + self._setup() + for (x, y) in self.all_close_tests: + self.tst_all_isclose(x, y) + + x = np.array([2.3, 3.6, 4.4, np.nan]) + y = np.array([2, 3, 4, np.nan]) + atol = [0.31, 0, 0, 1] + rtol = [0, 0.21, 0.11, 1] + assert np.allclose(x, y, atol=atol, rtol=rtol, equal_nan=True) + assert not np.allclose(x, y, atol=0.1, rtol=0.1, equal_nan=True) + + # Show that gh-14330 is resolved + assert np.allclose([1, 2, float('nan')], [1, 2, float('nan')], + atol=[1, 1, 1], equal_nan=True) + + def test_ip_none_isclose(self): + self._setup() + for (x, y) in self.none_close_tests: + self.tst_none_isclose(x, y) + + def test_ip_isclose_allclose(self): + self._setup() + tests = (self.all_close_tests + self.none_close_tests + + self.some_close_tests) + for (x, y) in tests: + self.tst_isclose_allclose(x, y) + + def test_equal_nan(self): + assert_array_equal(np.isclose(np.nan, np.nan, equal_nan=True), [True]) + arr = np.array([1.0, np.nan]) + assert_array_equal(np.isclose(arr, arr, equal_nan=True), [True, True]) + + def test_masked_arrays(self): + # Make sure to test the output type when arguments are interchanged. + + x = np.ma.masked_where([True, True, False], np.arange(3)) + assert_(type(x) is type(np.isclose(2, x))) + assert_(type(x) is type(np.isclose(x, 2))) + + x = np.ma.masked_where([True, True, False], [np.nan, np.inf, np.nan]) + assert_(type(x) is type(np.isclose(np.inf, x))) + assert_(type(x) is type(np.isclose(x, np.inf))) + + x = np.ma.masked_where([True, True, False], [np.nan, np.nan, np.nan]) + y = np.isclose(np.nan, x, equal_nan=True) + assert_(type(x) is type(y)) + # Ensure that the mask isn't modified... + assert_array_equal([True, True, False], y.mask) + y = np.isclose(x, np.nan, equal_nan=True) + assert_(type(x) is type(y)) + # Ensure that the mask isn't modified... + assert_array_equal([True, True, False], y.mask) + + x = np.ma.masked_where([True, True, False], [np.nan, np.nan, np.nan]) + y = np.isclose(x, x, equal_nan=True) + assert_(type(x) is type(y)) + # Ensure that the mask isn't modified... + assert_array_equal([True, True, False], y.mask) + + def test_scalar_return(self): + assert_(np.isscalar(np.isclose(1, 1))) + + def test_no_parameter_modification(self): + x = np.array([np.inf, 1]) + y = np.array([0, np.inf]) + np.isclose(x, y) + assert_array_equal(x, np.array([np.inf, 1])) + assert_array_equal(y, np.array([0, np.inf])) + + def test_non_finite_scalar(self): + # GH7014, when two scalars are compared the output should also be a + # scalar + assert_(np.isclose(np.inf, -np.inf) is np.False_) + assert_(np.isclose(0, np.inf) is np.False_) + assert_(type(np.isclose(0, np.inf)) is np.bool) + + def test_timedelta(self): + # Allclose currently works for timedelta64 as long as `atol` is + # an integer or also a timedelta64 + a = np.array([[1, 2, 3, "NaT"]], dtype="m8[ns]") + assert np.isclose(a, a, atol=0, equal_nan=True).all() + assert np.isclose(a, a, atol=np.timedelta64(1, "ns"), equal_nan=True).all() + assert np.allclose(a, a, atol=0, equal_nan=True) + assert np.allclose(a, a, atol=np.timedelta64(1, "ns"), equal_nan=True) + + +class TestStdVar: + def setup_method(self): + self.A = np.array([1, -1, 1, -1]) + self.real_var = 1 + + def test_basic(self): + assert_almost_equal(np.var(self.A), self.real_var) + assert_almost_equal(np.std(self.A)**2, self.real_var) + + def test_scalars(self): + assert_equal(np.var(1), 0) + assert_equal(np.std(1), 0) + + def test_ddof1(self): + assert_almost_equal(np.var(self.A, ddof=1), + self.real_var * len(self.A) / (len(self.A) - 1)) + assert_almost_equal(np.std(self.A, ddof=1)**2, + self.real_var*len(self.A) / (len(self.A) - 1)) + + def test_ddof2(self): + assert_almost_equal(np.var(self.A, ddof=2), + self.real_var * len(self.A) / (len(self.A) - 2)) + assert_almost_equal(np.std(self.A, ddof=2)**2, + self.real_var * len(self.A) / (len(self.A) - 2)) + + def test_correction(self): + assert_almost_equal( + np.var(self.A, correction=1), np.var(self.A, ddof=1) + ) + assert_almost_equal( + np.std(self.A, correction=1), np.std(self.A, ddof=1) + ) + + err_msg = "ddof and correction can't be provided simultaneously." + + with assert_raises_regex(ValueError, err_msg): + np.var(self.A, ddof=1, correction=0) + + with assert_raises_regex(ValueError, err_msg): + np.std(self.A, ddof=1, correction=1) + + def test_out_scalar(self): + d = np.arange(10) + out = np.array(0.) + r = np.std(d, out=out) + assert_(r is out) + assert_array_equal(r, out) + r = np.var(d, out=out) + assert_(r is out) + assert_array_equal(r, out) + r = np.mean(d, out=out) + assert_(r is out) + assert_array_equal(r, out) + + +class TestStdVarComplex: + def test_basic(self): + A = np.array([1, 1.j, -1, -1.j]) + real_var = 1 + assert_almost_equal(np.var(A), real_var) + assert_almost_equal(np.std(A)**2, real_var) + + def test_scalars(self): + assert_equal(np.var(1j), 0) + assert_equal(np.std(1j), 0) + + +class TestCreationFuncs: + # Test ones, zeros, empty and full. + + def setup_method(self): + dtypes = {np.dtype(tp) for tp in itertools.chain(*sctypes.values())} + # void, bytes, str + variable_sized = {tp for tp in dtypes if tp.str.endswith('0')} + keyfunc = lambda dtype: dtype.str + self.dtypes = sorted(dtypes - variable_sized | + {np.dtype(tp.str.replace("0", str(i))) + for tp in variable_sized for i in range(1, 10)}, + key=keyfunc) + self.dtypes += [type(dt) for dt in sorted(dtypes, key=keyfunc)] + self.orders = {'C': 'c_contiguous', 'F': 'f_contiguous'} + self.ndims = 10 + + def check_function(self, func, fill_value=None): + par = ((0, 1, 2), + range(self.ndims), + self.orders, + self.dtypes) + fill_kwarg = {} + if fill_value is not None: + fill_kwarg = {'fill_value': fill_value} + + for size, ndims, order, dtype in itertools.product(*par): + shape = ndims * [size] + + is_void = dtype is np.dtypes.VoidDType or ( + isinstance(dtype, np.dtype) and dtype.str.startswith('|V')) + + # do not fill void type + if fill_kwarg and is_void: + continue + + arr = func(shape, order=order, dtype=dtype, + **fill_kwarg) + + if isinstance(dtype, np.dtype): + assert_equal(arr.dtype, dtype) + elif isinstance(dtype, type(np.dtype)): + if dtype in (np.dtypes.StrDType, np.dtypes.BytesDType): + dtype_str = np.dtype(dtype.type).str.replace('0', '1') + assert_equal(arr.dtype, np.dtype(dtype_str)) + else: + assert_equal(arr.dtype, np.dtype(dtype.type)) + assert_(getattr(arr.flags, self.orders[order])) + + if fill_value is not None: + if arr.dtype.str.startswith('|S'): + val = str(fill_value) + else: + val = fill_value + assert_equal(arr, dtype.type(val)) + + def test_zeros(self): + self.check_function(np.zeros) + + def test_ones(self): + self.check_function(np.ones) + + def test_empty(self): + self.check_function(np.empty) + + def test_full(self): + self.check_function(np.full, 0) + self.check_function(np.full, 1) + + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_for_reference_leak(self): + # Make sure we have an object for reference + dim = 1 + beg = sys.getrefcount(dim) + np.zeros([dim]*10) + assert_(sys.getrefcount(dim) == beg) + np.ones([dim]*10) + assert_(sys.getrefcount(dim) == beg) + np.empty([dim]*10) + assert_(sys.getrefcount(dim) == beg) + np.full([dim]*10, 0) + assert_(sys.getrefcount(dim) == beg) + + +class TestLikeFuncs: + '''Test ones_like, zeros_like, empty_like and full_like''' + + def setup_method(self): + self.data = [ + # Array scalars + (np.array(3.), None), + (np.array(3), 'f8'), + # 1D arrays + (np.arange(6, dtype='f4'), None), + (np.arange(6), 'c16'), + # 2D C-layout arrays + (np.arange(6).reshape(2, 3), None), + (np.arange(6).reshape(3, 2), 'i1'), + # 2D F-layout arrays + (np.arange(6).reshape((2, 3), order='F'), None), + (np.arange(6).reshape((3, 2), order='F'), 'i1'), + # 3D C-layout arrays + (np.arange(24).reshape(2, 3, 4), None), + (np.arange(24).reshape(4, 3, 2), 'f4'), + # 3D F-layout arrays + (np.arange(24).reshape((2, 3, 4), order='F'), None), + (np.arange(24).reshape((4, 3, 2), order='F'), 'f4'), + # 3D non-C/F-layout arrays + (np.arange(24).reshape(2, 3, 4).swapaxes(0, 1), None), + (np.arange(24).reshape(4, 3, 2).swapaxes(0, 1), '?'), + ] + self.shapes = [(), (5,), (5,6,), (5,6,7,)] + + def compare_array_value(self, dz, value, fill_value): + if value is not None: + if fill_value: + # Conversion is close to what np.full_like uses + # but we may want to convert directly in the future + # which may result in errors (where this does not). + z = np.array(value).astype(dz.dtype) + assert_(np.all(dz == z)) + else: + assert_(np.all(dz == value)) + + def check_like_function(self, like_function, value, fill_value=False): + if fill_value: + fill_kwarg = {'fill_value': value} + else: + fill_kwarg = {} + for d, dtype in self.data: + # default (K) order, dtype + dz = like_function(d, dtype=dtype, **fill_kwarg) + assert_equal(dz.shape, d.shape) + assert_equal(np.array(dz.strides)*d.dtype.itemsize, + np.array(d.strides)*dz.dtype.itemsize) + assert_equal(d.flags.c_contiguous, dz.flags.c_contiguous) + assert_equal(d.flags.f_contiguous, dz.flags.f_contiguous) + if dtype is None: + assert_equal(dz.dtype, d.dtype) + else: + assert_equal(dz.dtype, np.dtype(dtype)) + self.compare_array_value(dz, value, fill_value) + + # C order, default dtype + dz = like_function(d, order='C', dtype=dtype, **fill_kwarg) + assert_equal(dz.shape, d.shape) + assert_(dz.flags.c_contiguous) + if dtype is None: + assert_equal(dz.dtype, d.dtype) + else: + assert_equal(dz.dtype, np.dtype(dtype)) + self.compare_array_value(dz, value, fill_value) + + # F order, default dtype + dz = like_function(d, order='F', dtype=dtype, **fill_kwarg) + assert_equal(dz.shape, d.shape) + assert_(dz.flags.f_contiguous) + if dtype is None: + assert_equal(dz.dtype, d.dtype) + else: + assert_equal(dz.dtype, np.dtype(dtype)) + self.compare_array_value(dz, value, fill_value) + + # A order + dz = like_function(d, order='A', dtype=dtype, **fill_kwarg) + assert_equal(dz.shape, d.shape) + if d.flags.f_contiguous: + assert_(dz.flags.f_contiguous) + else: + assert_(dz.flags.c_contiguous) + if dtype is None: + assert_equal(dz.dtype, d.dtype) + else: + assert_equal(dz.dtype, np.dtype(dtype)) + self.compare_array_value(dz, value, fill_value) + + # Test the 'shape' parameter + for s in self.shapes: + for o in 'CFA': + sz = like_function(d, dtype=dtype, shape=s, order=o, + **fill_kwarg) + assert_equal(sz.shape, s) + if dtype is None: + assert_equal(sz.dtype, d.dtype) + else: + assert_equal(sz.dtype, np.dtype(dtype)) + if o == 'C' or (o == 'A' and d.flags.c_contiguous): + assert_(sz.flags.c_contiguous) + elif o == 'F' or (o == 'A' and d.flags.f_contiguous): + assert_(sz.flags.f_contiguous) + self.compare_array_value(sz, value, fill_value) + + if (d.ndim != len(s)): + assert_equal(np.argsort(like_function(d, dtype=dtype, + shape=s, order='K', + **fill_kwarg).strides), + np.argsort(np.empty(s, dtype=dtype, + order='C').strides)) + else: + assert_equal(np.argsort(like_function(d, dtype=dtype, + shape=s, order='K', + **fill_kwarg).strides), + np.argsort(d.strides)) + + # Test the 'subok' parameter + class MyNDArray(np.ndarray): + pass + + a = np.array([[1, 2], [3, 4]]).view(MyNDArray) + + b = like_function(a, **fill_kwarg) + assert_(type(b) is MyNDArray) + + b = like_function(a, subok=False, **fill_kwarg) + assert_(type(b) is not MyNDArray) + + # Test invalid dtype + with assert_raises(TypeError): + a = np.array(b"abc") + like_function(a, dtype="S-1", **fill_kwarg) + + def test_ones_like(self): + self.check_like_function(np.ones_like, 1) + + def test_zeros_like(self): + self.check_like_function(np.zeros_like, 0) + + def test_empty_like(self): + self.check_like_function(np.empty_like, None) + + def test_filled_like(self): + self.check_like_function(np.full_like, 0, True) + self.check_like_function(np.full_like, 1, True) + # Large integers may overflow, but using int64 is OK (casts) + # see also gh-27075 + with pytest.raises(OverflowError): + np.full_like(np.ones(3, dtype=np.int8), 1000) + self.check_like_function(np.full_like, np.int64(1000), True) + self.check_like_function(np.full_like, 123.456, True) + # Inf to integer casts cause invalid-value errors: ignore them. + with np.errstate(invalid="ignore"): + self.check_like_function(np.full_like, np.inf, True) + + @pytest.mark.parametrize('likefunc', [np.empty_like, np.full_like, + np.zeros_like, np.ones_like]) + @pytest.mark.parametrize('dtype', [str, bytes]) + def test_dtype_str_bytes(self, likefunc, dtype): + # Regression test for gh-19860 + a = np.arange(16).reshape(2, 8) + b = a[:, ::2] # Ensure b is not contiguous. + kwargs = {'fill_value': ''} if likefunc == np.full_like else {} + result = likefunc(b, dtype=dtype, **kwargs) + if dtype == str: + assert result.strides == (16, 4) + else: + # dtype is bytes + assert result.strides == (4, 1) + + +class TestCorrelate: + def _setup(self, dt): + self.x = np.array([1, 2, 3, 4, 5], dtype=dt) + self.xs = np.arange(1, 20)[::3] + self.y = np.array([-1, -2, -3], dtype=dt) + self.z1 = np.array([-3., -8., -14., -20., -26., -14., -5.], dtype=dt) + self.z1_4 = np.array([-2., -5., -8., -11., -14., -5.], dtype=dt) + self.z1r = np.array([-15., -22., -22., -16., -10., -4., -1.], dtype=dt) + self.z2 = np.array([-5., -14., -26., -20., -14., -8., -3.], dtype=dt) + self.z2r = np.array([-1., -4., -10., -16., -22., -22., -15.], dtype=dt) + self.zs = np.array([-3., -14., -30., -48., -66., -84., + -102., -54., -19.], dtype=dt) + + def test_float(self): + self._setup(float) + z = np.correlate(self.x, self.y, 'full') + assert_array_almost_equal(z, self.z1) + z = np.correlate(self.x, self.y[:-1], 'full') + assert_array_almost_equal(z, self.z1_4) + z = np.correlate(self.y, self.x, 'full') + assert_array_almost_equal(z, self.z2) + z = np.correlate(self.x[::-1], self.y, 'full') + assert_array_almost_equal(z, self.z1r) + z = np.correlate(self.y, self.x[::-1], 'full') + assert_array_almost_equal(z, self.z2r) + z = np.correlate(self.xs, self.y, 'full') + assert_array_almost_equal(z, self.zs) + + def test_object(self): + self._setup(Decimal) + z = np.correlate(self.x, self.y, 'full') + assert_array_almost_equal(z, self.z1) + z = np.correlate(self.y, self.x, 'full') + assert_array_almost_equal(z, self.z2) + + def test_no_overwrite(self): + d = np.ones(100) + k = np.ones(3) + np.correlate(d, k) + assert_array_equal(d, np.ones(100)) + assert_array_equal(k, np.ones(3)) + + def test_complex(self): + x = np.array([1, 2, 3, 4+1j], dtype=complex) + y = np.array([-1, -2j, 3+1j], dtype=complex) + r_z = np.array([3-1j, 6, 8+1j, 11+5j, -5+8j, -4-1j], dtype=complex) + r_z = r_z[::-1].conjugate() + z = np.correlate(y, x, mode='full') + assert_array_almost_equal(z, r_z) + + def test_zero_size(self): + with pytest.raises(ValueError): + np.correlate(np.array([]), np.ones(1000), mode='full') + with pytest.raises(ValueError): + np.correlate(np.ones(1000), np.array([]), mode='full') + + def test_mode(self): + d = np.ones(100) + k = np.ones(3) + default_mode = np.correlate(d, k, mode='valid') + with assert_warns(DeprecationWarning): + valid_mode = np.correlate(d, k, mode='v') + assert_array_equal(valid_mode, default_mode) + # integer mode + with assert_raises(ValueError): + np.correlate(d, k, mode=-1) + assert_array_equal(np.correlate(d, k, mode=0), valid_mode) + # illegal arguments + with assert_raises(TypeError): + np.correlate(d, k, mode=None) + + +class TestConvolve: + def test_object(self): + d = [1.] * 100 + k = [1.] * 3 + assert_array_almost_equal(np.convolve(d, k)[2:-2], np.full(98, 3)) + + def test_no_overwrite(self): + d = np.ones(100) + k = np.ones(3) + np.convolve(d, k) + assert_array_equal(d, np.ones(100)) + assert_array_equal(k, np.ones(3)) + + def test_mode(self): + d = np.ones(100) + k = np.ones(3) + default_mode = np.convolve(d, k, mode='full') + with assert_warns(DeprecationWarning): + full_mode = np.convolve(d, k, mode='f') + assert_array_equal(full_mode, default_mode) + # integer mode + with assert_raises(ValueError): + np.convolve(d, k, mode=-1) + assert_array_equal(np.convolve(d, k, mode=2), full_mode) + # illegal arguments + with assert_raises(TypeError): + np.convolve(d, k, mode=None) + + +class TestArgwhere: + + @pytest.mark.parametrize('nd', [0, 1, 2]) + def test_nd(self, nd): + # get an nd array with multiple elements in every dimension + x = np.empty((2,)*nd, bool) + + # none + x[...] = False + assert_equal(np.argwhere(x).shape, (0, nd)) + + # only one + x[...] = False + x.flat[0] = True + assert_equal(np.argwhere(x).shape, (1, nd)) + + # all but one + x[...] = True + x.flat[0] = False + assert_equal(np.argwhere(x).shape, (x.size - 1, nd)) + + # all + x[...] = True + assert_equal(np.argwhere(x).shape, (x.size, nd)) + + def test_2D(self): + x = np.arange(6).reshape((2, 3)) + assert_array_equal(np.argwhere(x > 1), + [[0, 2], + [1, 0], + [1, 1], + [1, 2]]) + + def test_list(self): + assert_equal(np.argwhere([4, 0, 2, 1, 3]), [[0], [2], [3], [4]]) + + +class TestRoll: + def test_roll1d(self): + x = np.arange(10) + xr = np.roll(x, 2) + assert_equal(xr, np.array([8, 9, 0, 1, 2, 3, 4, 5, 6, 7])) + + def test_roll2d(self): + x2 = np.reshape(np.arange(10), (2, 5)) + x2r = np.roll(x2, 1) + assert_equal(x2r, np.array([[9, 0, 1, 2, 3], [4, 5, 6, 7, 8]])) + + x2r = np.roll(x2, 1, axis=0) + assert_equal(x2r, np.array([[5, 6, 7, 8, 9], [0, 1, 2, 3, 4]])) + + x2r = np.roll(x2, 1, axis=1) + assert_equal(x2r, np.array([[4, 0, 1, 2, 3], [9, 5, 6, 7, 8]])) + + # Roll multiple axes at once. + x2r = np.roll(x2, 1, axis=(0, 1)) + assert_equal(x2r, np.array([[9, 5, 6, 7, 8], [4, 0, 1, 2, 3]])) + + x2r = np.roll(x2, (1, 0), axis=(0, 1)) + assert_equal(x2r, np.array([[5, 6, 7, 8, 9], [0, 1, 2, 3, 4]])) + + x2r = np.roll(x2, (-1, 0), axis=(0, 1)) + assert_equal(x2r, np.array([[5, 6, 7, 8, 9], [0, 1, 2, 3, 4]])) + + x2r = np.roll(x2, (0, 1), axis=(0, 1)) + assert_equal(x2r, np.array([[4, 0, 1, 2, 3], [9, 5, 6, 7, 8]])) + + x2r = np.roll(x2, (0, -1), axis=(0, 1)) + assert_equal(x2r, np.array([[1, 2, 3, 4, 0], [6, 7, 8, 9, 5]])) + + x2r = np.roll(x2, (1, 1), axis=(0, 1)) + assert_equal(x2r, np.array([[9, 5, 6, 7, 8], [4, 0, 1, 2, 3]])) + + x2r = np.roll(x2, (-1, -1), axis=(0, 1)) + assert_equal(x2r, np.array([[6, 7, 8, 9, 5], [1, 2, 3, 4, 0]])) + + # Roll the same axis multiple times. + x2r = np.roll(x2, 1, axis=(0, 0)) + assert_equal(x2r, np.array([[0, 1, 2, 3, 4], [5, 6, 7, 8, 9]])) + + x2r = np.roll(x2, 1, axis=(1, 1)) + assert_equal(x2r, np.array([[3, 4, 0, 1, 2], [8, 9, 5, 6, 7]])) + + # Roll more than one turn in either direction. + x2r = np.roll(x2, 6, axis=1) + assert_equal(x2r, np.array([[4, 0, 1, 2, 3], [9, 5, 6, 7, 8]])) + + x2r = np.roll(x2, -4, axis=1) + assert_equal(x2r, np.array([[4, 0, 1, 2, 3], [9, 5, 6, 7, 8]])) + + def test_roll_empty(self): + x = np.array([]) + assert_equal(np.roll(x, 1), np.array([])) + + def test_roll_unsigned_shift(self): + x = np.arange(4) + shift = np.uint16(2) + assert_equal(np.roll(x, shift), np.roll(x, 2)) + + shift = np.uint64(2**63+2) + assert_equal(np.roll(x, shift), np.roll(x, 2)) + + def test_roll_big_int(self): + x = np.arange(4) + assert_equal(np.roll(x, 2**100), x) + + +class TestRollaxis: + + # expected shape indexed by (axis, start) for array of + # shape (1, 2, 3, 4) + tgtshape = {(0, 0): (1, 2, 3, 4), (0, 1): (1, 2, 3, 4), + (0, 2): (2, 1, 3, 4), (0, 3): (2, 3, 1, 4), + (0, 4): (2, 3, 4, 1), + (1, 0): (2, 1, 3, 4), (1, 1): (1, 2, 3, 4), + (1, 2): (1, 2, 3, 4), (1, 3): (1, 3, 2, 4), + (1, 4): (1, 3, 4, 2), + (2, 0): (3, 1, 2, 4), (2, 1): (1, 3, 2, 4), + (2, 2): (1, 2, 3, 4), (2, 3): (1, 2, 3, 4), + (2, 4): (1, 2, 4, 3), + (3, 0): (4, 1, 2, 3), (3, 1): (1, 4, 2, 3), + (3, 2): (1, 2, 4, 3), (3, 3): (1, 2, 3, 4), + (3, 4): (1, 2, 3, 4)} + + def test_exceptions(self): + a = np.arange(1*2*3*4).reshape(1, 2, 3, 4) + assert_raises(AxisError, np.rollaxis, a, -5, 0) + assert_raises(AxisError, np.rollaxis, a, 0, -5) + assert_raises(AxisError, np.rollaxis, a, 4, 0) + assert_raises(AxisError, np.rollaxis, a, 0, 5) + + def test_results(self): + a = np.arange(1*2*3*4).reshape(1, 2, 3, 4).copy() + aind = np.indices(a.shape) + assert_(a.flags['OWNDATA']) + for (i, j) in self.tgtshape: + # positive axis, positive start + res = np.rollaxis(a, axis=i, start=j) + i0, i1, i2, i3 = aind[np.array(res.shape) - 1] + assert_(np.all(res[i0, i1, i2, i3] == a)) + assert_(res.shape == self.tgtshape[(i, j)], str((i,j))) + assert_(not res.flags['OWNDATA']) + + # negative axis, positive start + ip = i + 1 + res = np.rollaxis(a, axis=-ip, start=j) + i0, i1, i2, i3 = aind[np.array(res.shape) - 1] + assert_(np.all(res[i0, i1, i2, i3] == a)) + assert_(res.shape == self.tgtshape[(4 - ip, j)]) + assert_(not res.flags['OWNDATA']) + + # positive axis, negative start + jp = j + 1 if j < 4 else j + res = np.rollaxis(a, axis=i, start=-jp) + i0, i1, i2, i3 = aind[np.array(res.shape) - 1] + assert_(np.all(res[i0, i1, i2, i3] == a)) + assert_(res.shape == self.tgtshape[(i, 4 - jp)]) + assert_(not res.flags['OWNDATA']) + + # negative axis, negative start + ip = i + 1 + jp = j + 1 if j < 4 else j + res = np.rollaxis(a, axis=-ip, start=-jp) + i0, i1, i2, i3 = aind[np.array(res.shape) - 1] + assert_(np.all(res[i0, i1, i2, i3] == a)) + assert_(res.shape == self.tgtshape[(4 - ip, 4 - jp)]) + assert_(not res.flags['OWNDATA']) + + +class TestMoveaxis: + def test_move_to_end(self): + x = np.random.randn(5, 6, 7) + for source, expected in [(0, (6, 7, 5)), + (1, (5, 7, 6)), + (2, (5, 6, 7)), + (-1, (5, 6, 7))]: + actual = np.moveaxis(x, source, -1).shape + assert_(actual, expected) + + def test_move_new_position(self): + x = np.random.randn(1, 2, 3, 4) + for source, destination, expected in [ + (0, 1, (2, 1, 3, 4)), + (1, 2, (1, 3, 2, 4)), + (1, -1, (1, 3, 4, 2)), + ]: + actual = np.moveaxis(x, source, destination).shape + assert_(actual, expected) + + def test_preserve_order(self): + x = np.zeros((1, 2, 3, 4)) + for source, destination in [ + (0, 0), + (3, -1), + (-1, 3), + ([0, -1], [0, -1]), + ([2, 0], [2, 0]), + (range(4), range(4)), + ]: + actual = np.moveaxis(x, source, destination).shape + assert_(actual, (1, 2, 3, 4)) + + def test_move_multiples(self): + x = np.zeros((0, 1, 2, 3)) + for source, destination, expected in [ + ([0, 1], [2, 3], (2, 3, 0, 1)), + ([2, 3], [0, 1], (2, 3, 0, 1)), + ([0, 1, 2], [2, 3, 0], (2, 3, 0, 1)), + ([3, 0], [1, 0], (0, 3, 1, 2)), + ([0, 3], [0, 1], (0, 3, 1, 2)), + ]: + actual = np.moveaxis(x, source, destination).shape + assert_(actual, expected) + + def test_errors(self): + x = np.random.randn(1, 2, 3) + assert_raises_regex(AxisError, 'source.*out of bounds', + np.moveaxis, x, 3, 0) + assert_raises_regex(AxisError, 'source.*out of bounds', + np.moveaxis, x, -4, 0) + assert_raises_regex(AxisError, 'destination.*out of bounds', + np.moveaxis, x, 0, 5) + assert_raises_regex(ValueError, 'repeated axis in `source`', + np.moveaxis, x, [0, 0], [0, 1]) + assert_raises_regex(ValueError, 'repeated axis in `destination`', + np.moveaxis, x, [0, 1], [1, 1]) + assert_raises_regex(ValueError, 'must have the same number', + np.moveaxis, x, 0, [0, 1]) + assert_raises_regex(ValueError, 'must have the same number', + np.moveaxis, x, [0, 1], [0]) + + def test_array_likes(self): + x = np.ma.zeros((1, 2, 3)) + result = np.moveaxis(x, 0, 0) + assert_(x.shape, result.shape) + assert_(isinstance(result, np.ma.MaskedArray)) + + x = [1, 2, 3] + result = np.moveaxis(x, 0, 0) + assert_(x, list(result)) + assert_(isinstance(result, np.ndarray)) + + +class TestCross: + @pytest.mark.filterwarnings( + "ignore:.*2-dimensional vectors.*:DeprecationWarning" + ) + def test_2x2(self): + u = [1, 2] + v = [3, 4] + z = -2 + cp = np.cross(u, v) + assert_equal(cp, z) + cp = np.cross(v, u) + assert_equal(cp, -z) + + @pytest.mark.filterwarnings( + "ignore:.*2-dimensional vectors.*:DeprecationWarning" + ) + def test_2x3(self): + u = [1, 2] + v = [3, 4, 5] + z = np.array([10, -5, -2]) + cp = np.cross(u, v) + assert_equal(cp, z) + cp = np.cross(v, u) + assert_equal(cp, -z) + + def test_3x3(self): + u = [1, 2, 3] + v = [4, 5, 6] + z = np.array([-3, 6, -3]) + cp = np.cross(u, v) + assert_equal(cp, z) + cp = np.cross(v, u) + assert_equal(cp, -z) + + @pytest.mark.filterwarnings( + "ignore:.*2-dimensional vectors.*:DeprecationWarning" + ) + def test_broadcasting(self): + # Ticket #2624 (Trac #2032) + u = np.tile([1, 2], (11, 1)) + v = np.tile([3, 4], (11, 1)) + z = -2 + assert_equal(np.cross(u, v), z) + assert_equal(np.cross(v, u), -z) + assert_equal(np.cross(u, u), 0) + + u = np.tile([1, 2], (11, 1)).T + v = np.tile([3, 4, 5], (11, 1)) + z = np.tile([10, -5, -2], (11, 1)) + assert_equal(np.cross(u, v, axisa=0), z) + assert_equal(np.cross(v, u.T), -z) + assert_equal(np.cross(v, v), 0) + + u = np.tile([1, 2, 3], (11, 1)).T + v = np.tile([3, 4], (11, 1)).T + z = np.tile([-12, 9, -2], (11, 1)) + assert_equal(np.cross(u, v, axisa=0, axisb=0), z) + assert_equal(np.cross(v.T, u.T), -z) + assert_equal(np.cross(u.T, u.T), 0) + + u = np.tile([1, 2, 3], (5, 1)) + v = np.tile([4, 5, 6], (5, 1)).T + z = np.tile([-3, 6, -3], (5, 1)) + assert_equal(np.cross(u, v, axisb=0), z) + assert_equal(np.cross(v.T, u), -z) + assert_equal(np.cross(u, u), 0) + + @pytest.mark.filterwarnings( + "ignore:.*2-dimensional vectors.*:DeprecationWarning" + ) + def test_broadcasting_shapes(self): + u = np.ones((2, 1, 3)) + v = np.ones((5, 3)) + assert_equal(np.cross(u, v).shape, (2, 5, 3)) + u = np.ones((10, 3, 5)) + v = np.ones((2, 5)) + assert_equal(np.cross(u, v, axisa=1, axisb=0).shape, (10, 5, 3)) + assert_raises(AxisError, np.cross, u, v, axisa=1, axisb=2) + assert_raises(AxisError, np.cross, u, v, axisa=3, axisb=0) + u = np.ones((10, 3, 5, 7)) + v = np.ones((5, 7, 2)) + assert_equal(np.cross(u, v, axisa=1, axisc=2).shape, (10, 5, 3, 7)) + assert_raises(AxisError, np.cross, u, v, axisa=-5, axisb=2) + assert_raises(AxisError, np.cross, u, v, axisa=1, axisb=-4) + # gh-5885 + u = np.ones((3, 4, 2)) + for axisc in range(-2, 2): + assert_equal(np.cross(u, u, axisc=axisc).shape, (3, 4)) + + def test_uint8_int32_mixed_dtypes(self): + # regression test for gh-19138 + u = np.array([[195, 8, 9]], np.uint8) + v = np.array([250, 166, 68], np.int32) + z = np.array([[950, 11010, -30370]], dtype=np.int32) + assert_equal(np.cross(v, u), z) + assert_equal(np.cross(u, v), -z) + + @pytest.mark.parametrize("a, b", [(0, [1, 2]), ([1, 2], 3)]) + def test_zero_dimension(self, a, b): + with pytest.raises(ValueError) as exc: + np.cross(a, b) + assert "At least one array has zero dimension" in str(exc.value) + + +def test_outer_out_param(): + arr1 = np.ones((5,)) + arr2 = np.ones((2,)) + arr3 = np.linspace(-2, 2, 5) + out1 = np.ndarray(shape=(5,5)) + out2 = np.ndarray(shape=(2, 5)) + res1 = np.outer(arr1, arr3, out1) + assert_equal(res1, out1) + assert_equal(np.outer(arr2, arr3, out2), out2) + + +class TestIndices: + + def test_simple(self): + [x, y] = np.indices((4, 3)) + assert_array_equal(x, np.array([[0, 0, 0], + [1, 1, 1], + [2, 2, 2], + [3, 3, 3]])) + assert_array_equal(y, np.array([[0, 1, 2], + [0, 1, 2], + [0, 1, 2], + [0, 1, 2]])) + + def test_single_input(self): + [x] = np.indices((4,)) + assert_array_equal(x, np.array([0, 1, 2, 3])) + + [x] = np.indices((4,), sparse=True) + assert_array_equal(x, np.array([0, 1, 2, 3])) + + def test_scalar_input(self): + assert_array_equal([], np.indices(())) + assert_array_equal([], np.indices((), sparse=True)) + assert_array_equal([[]], np.indices((0,))) + assert_array_equal([[]], np.indices((0,), sparse=True)) + + def test_sparse(self): + [x, y] = np.indices((4,3), sparse=True) + assert_array_equal(x, np.array([[0], [1], [2], [3]])) + assert_array_equal(y, np.array([[0, 1, 2]])) + + @pytest.mark.parametrize("dtype", [np.int32, np.int64, np.float32, np.float64]) + @pytest.mark.parametrize("dims", [(), (0,), (4, 3)]) + def test_return_type(self, dtype, dims): + inds = np.indices(dims, dtype=dtype) + assert_(inds.dtype == dtype) + + for arr in np.indices(dims, dtype=dtype, sparse=True): + assert_(arr.dtype == dtype) + + +class TestRequire: + flag_names = ['C', 'C_CONTIGUOUS', 'CONTIGUOUS', + 'F', 'F_CONTIGUOUS', 'FORTRAN', + 'A', 'ALIGNED', + 'W', 'WRITEABLE', + 'O', 'OWNDATA'] + + def generate_all_false(self, dtype): + arr = np.zeros((2, 2), [('junk', 'i1'), ('a', dtype)]) + arr.setflags(write=False) + a = arr['a'] + assert_(not a.flags['C']) + assert_(not a.flags['F']) + assert_(not a.flags['O']) + assert_(not a.flags['W']) + assert_(not a.flags['A']) + return a + + def set_and_check_flag(self, flag, dtype, arr): + if dtype is None: + dtype = arr.dtype + b = np.require(arr, dtype, [flag]) + assert_(b.flags[flag]) + assert_(b.dtype == dtype) + + # a further call to np.require ought to return the same array + # unless OWNDATA is specified. + c = np.require(b, None, [flag]) + if flag[0] != 'O': + assert_(c is b) + else: + assert_(c.flags[flag]) + + def test_require_each(self): + + id = ['f8', 'i4'] + fd = [None, 'f8', 'c16'] + for idtype, fdtype, flag in itertools.product(id, fd, self.flag_names): + a = self.generate_all_false(idtype) + self.set_and_check_flag(flag, fdtype, a) + + def test_unknown_requirement(self): + a = self.generate_all_false('f8') + assert_raises(KeyError, np.require, a, None, 'Q') + + def test_non_array_input(self): + a = np.require([1, 2, 3, 4], 'i4', ['C', 'A', 'O']) + assert_(a.flags['O']) + assert_(a.flags['C']) + assert_(a.flags['A']) + assert_(a.dtype == 'i4') + assert_equal(a, [1, 2, 3, 4]) + + def test_C_and_F_simul(self): + a = self.generate_all_false('f8') + assert_raises(ValueError, np.require, a, None, ['C', 'F']) + + def test_ensure_array(self): + class ArraySubclass(np.ndarray): + pass + + a = ArraySubclass((2, 2)) + b = np.require(a, None, ['E']) + assert_(type(b) is np.ndarray) + + def test_preserve_subtype(self): + class ArraySubclass(np.ndarray): + pass + + for flag in self.flag_names: + a = ArraySubclass((2, 2)) + self.set_and_check_flag(flag, None, a) + + +class TestBroadcast: + def test_broadcast_in_args(self): + # gh-5881 + arrs = [np.empty((6, 7)), np.empty((5, 6, 1)), np.empty((7,)), + np.empty((5, 1, 7))] + mits = [np.broadcast(*arrs), + np.broadcast(np.broadcast(*arrs[:0]), np.broadcast(*arrs[0:])), + np.broadcast(np.broadcast(*arrs[:1]), np.broadcast(*arrs[1:])), + np.broadcast(np.broadcast(*arrs[:2]), np.broadcast(*arrs[2:])), + np.broadcast(arrs[0], np.broadcast(*arrs[1:-1]), arrs[-1])] + for mit in mits: + assert_equal(mit.shape, (5, 6, 7)) + assert_equal(mit.ndim, 3) + assert_equal(mit.nd, 3) + assert_equal(mit.numiter, 4) + for a, ia in zip(arrs, mit.iters): + assert_(a is ia.base) + + def test_broadcast_single_arg(self): + # gh-6899 + arrs = [np.empty((5, 6, 7))] + mit = np.broadcast(*arrs) + assert_equal(mit.shape, (5, 6, 7)) + assert_equal(mit.ndim, 3) + assert_equal(mit.nd, 3) + assert_equal(mit.numiter, 1) + assert_(arrs[0] is mit.iters[0].base) + + def test_number_of_arguments(self): + arr = np.empty((5,)) + for j in range(70): + arrs = [arr] * j + if j > 64: + assert_raises(ValueError, np.broadcast, *arrs) + else: + mit = np.broadcast(*arrs) + assert_equal(mit.numiter, j) + + def test_broadcast_error_kwargs(self): + #gh-13455 + arrs = [np.empty((5, 6, 7))] + mit = np.broadcast(*arrs) + mit2 = np.broadcast(*arrs, **{}) + assert_equal(mit.shape, mit2.shape) + assert_equal(mit.ndim, mit2.ndim) + assert_equal(mit.nd, mit2.nd) + assert_equal(mit.numiter, mit2.numiter) + assert_(mit.iters[0].base is mit2.iters[0].base) + + assert_raises(ValueError, np.broadcast, 1, **{'x': 1}) + + def test_shape_mismatch_error_message(self): + with pytest.raises(ValueError, match=r"arg 0 with shape \(1, 3\) and " + r"arg 2 with shape \(2,\)"): + np.broadcast([[1, 2, 3]], [[4], [5]], [6, 7]) + + +class TestKeepdims: + + class sub_array(np.ndarray): + def sum(self, axis=None, dtype=None, out=None): + return np.ndarray.sum(self, axis, dtype, out, keepdims=True) + + def test_raise(self): + sub_class = self.sub_array + x = np.arange(30).view(sub_class) + assert_raises(TypeError, np.sum, x, keepdims=True) + + +class TestTensordot: + + def test_zero_dimension(self): + # Test resolution to issue #5663 + a = np.ndarray((3,0)) + b = np.ndarray((0,4)) + td = np.tensordot(a, b, (1, 0)) + assert_array_equal(td, np.dot(a, b)) + assert_array_equal(td, np.einsum('ij,jk', a, b)) + + def test_zero_dimensional(self): + # gh-12130 + arr_0d = np.array(1) + ret = np.tensordot(arr_0d, arr_0d, ([], [])) # contracting no axes is well defined + assert_array_equal(ret, arr_0d) + + +class TestAsType: + + def test_astype(self): + data = [[1, 2], [3, 4]] + actual = np.astype( + np.array(data, dtype=np.int64), np.uint32 + ) + expected = np.array(data, dtype=np.uint32) + + assert_array_equal(actual, expected) + assert_equal(actual.dtype, expected.dtype) + + assert np.shares_memory( + actual, np.astype(actual, actual.dtype, copy=False) + ) + + actual = np.astype(np.int64(10), np.float64) + expected = np.float64(10) + assert_equal(actual, expected) + assert_equal(actual.dtype, expected.dtype) + + with pytest.raises(TypeError, match="Input should be a NumPy array"): + np.astype(data, np.float64) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numerictypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numerictypes.py new file mode 100644 index 0000000000000000000000000000000000000000..db4509b9c28faadcc96444ceebc44ca65e4f3ebd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_numerictypes.py @@ -0,0 +1,620 @@ +import sys +import itertools + +import pytest +import numpy as np +import numpy._core.numerictypes as nt +from numpy._core.numerictypes import ( + issctype, sctype2char, maximum_sctype, sctypes +) +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex, IS_PYPY +) + +# This is the structure of the table used for plain objects: +# +# +-+-+-+ +# |x|y|z| +# +-+-+-+ + +# Structure of a plain array description: +Pdescr = [ + ('x', 'i4', (2,)), + ('y', 'f8', (2, 2)), + ('z', 'u1')] + +# A plain list of tuples with values for testing: +PbufferT = [ + # x y z + ([3, 2], [[6., 4.], [6., 4.]], 8), + ([4, 3], [[7., 5.], [7., 5.]], 9), + ] + + +# This is the structure of the table used for nested objects (DON'T PANIC!): +# +# +-+---------------------------------+-----+----------+-+-+ +# |x|Info |color|info |y|z| +# | +-----+--+----------------+----+--+ +----+-----+ | | +# | |value|y2|Info2 |name|z2| |Name|Value| | | +# | | | +----+-----+--+--+ | | | | | | | +# | | | |name|value|y3|z3| | | | | | | | +# +-+-----+--+----+-----+--+--+----+--+-----+----+-----+-+-+ +# + +# The corresponding nested array description: +Ndescr = [ + ('x', 'i4', (2,)), + ('Info', [ + ('value', 'c16'), + ('y2', 'f8'), + ('Info2', [ + ('name', 'S2'), + ('value', 'c16', (2,)), + ('y3', 'f8', (2,)), + ('z3', 'u4', (2,))]), + ('name', 'S2'), + ('z2', 'b1')]), + ('color', 'S2'), + ('info', [ + ('Name', 'U8'), + ('Value', 'c16')]), + ('y', 'f8', (2, 2)), + ('z', 'u1')] + +NbufferT = [ + # x Info color info y z + # value y2 Info2 name z2 Name Value + # name value y3 z3 + ([3, 2], (6j, 6., (b'nn', [6j, 4j], [6., 4.], [1, 2]), b'NN', True), + b'cc', ('NN', 6j), [[6., 4.], [6., 4.]], 8), + ([4, 3], (7j, 7., (b'oo', [7j, 5j], [7., 5.], [2, 1]), b'OO', False), + b'dd', ('OO', 7j), [[7., 5.], [7., 5.]], 9), + ] + + +byteorder = {'little':'<', 'big':'>'}[sys.byteorder] + +def normalize_descr(descr): + "Normalize a description adding the platform byteorder." + + out = [] + for item in descr: + dtype = item[1] + if isinstance(dtype, str): + if dtype[0] not in ['|', '<', '>']: + onebyte = dtype[1:] == "1" + if onebyte or dtype[0] in ['S', 'V', 'b']: + dtype = "|" + dtype + else: + dtype = byteorder + dtype + if len(item) > 2 and np.prod(item[2]) > 1: + nitem = (item[0], dtype, item[2]) + else: + nitem = (item[0], dtype) + out.append(nitem) + elif isinstance(dtype, list): + l = normalize_descr(dtype) + out.append((item[0], l)) + else: + raise ValueError("Expected a str or list and got %s" % + (type(item))) + return out + + +############################################################ +# Creation tests +############################################################ + +class CreateZeros: + """Check the creation of heterogeneous arrays zero-valued""" + + def test_zeros0D(self): + """Check creation of 0-dimensional objects""" + h = np.zeros((), dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + assert_(h.dtype.fields['x'][0].name[:4] == 'void') + assert_(h.dtype.fields['x'][0].char == 'V') + assert_(h.dtype.fields['x'][0].type == np.void) + # A small check that data is ok + assert_equal(h['z'], np.zeros((), dtype='u1')) + + def test_zerosSD(self): + """Check creation of single-dimensional objects""" + h = np.zeros((2,), dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + assert_(h.dtype['y'].name[:4] == 'void') + assert_(h.dtype['y'].char == 'V') + assert_(h.dtype['y'].type == np.void) + # A small check that data is ok + assert_equal(h['z'], np.zeros((2,), dtype='u1')) + + def test_zerosMD(self): + """Check creation of multi-dimensional objects""" + h = np.zeros((2, 3), dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + assert_(h.dtype['z'].name == 'uint8') + assert_(h.dtype['z'].char == 'B') + assert_(h.dtype['z'].type == np.uint8) + # A small check that data is ok + assert_equal(h['z'], np.zeros((2, 3), dtype='u1')) + + +class TestCreateZerosPlain(CreateZeros): + """Check the creation of heterogeneous arrays zero-valued (plain)""" + _descr = Pdescr + +class TestCreateZerosNested(CreateZeros): + """Check the creation of heterogeneous arrays zero-valued (nested)""" + _descr = Ndescr + + +class CreateValues: + """Check the creation of heterogeneous arrays with values""" + + def test_tuple(self): + """Check creation from tuples""" + h = np.array(self._buffer, dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + if self.multiple_rows: + assert_(h.shape == (2,)) + else: + assert_(h.shape == ()) + + def test_list_of_tuple(self): + """Check creation from list of tuples""" + h = np.array([self._buffer], dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + if self.multiple_rows: + assert_(h.shape == (1, 2)) + else: + assert_(h.shape == (1,)) + + def test_list_of_list_of_tuple(self): + """Check creation from list of list of tuples""" + h = np.array([[self._buffer]], dtype=self._descr) + assert_(normalize_descr(self._descr) == h.dtype.descr) + if self.multiple_rows: + assert_(h.shape == (1, 1, 2)) + else: + assert_(h.shape == (1, 1)) + + +class TestCreateValuesPlainSingle(CreateValues): + """Check the creation of heterogeneous arrays (plain, single row)""" + _descr = Pdescr + multiple_rows = 0 + _buffer = PbufferT[0] + +class TestCreateValuesPlainMultiple(CreateValues): + """Check the creation of heterogeneous arrays (plain, multiple rows)""" + _descr = Pdescr + multiple_rows = 1 + _buffer = PbufferT + +class TestCreateValuesNestedSingle(CreateValues): + """Check the creation of heterogeneous arrays (nested, single row)""" + _descr = Ndescr + multiple_rows = 0 + _buffer = NbufferT[0] + +class TestCreateValuesNestedMultiple(CreateValues): + """Check the creation of heterogeneous arrays (nested, multiple rows)""" + _descr = Ndescr + multiple_rows = 1 + _buffer = NbufferT + + +############################################################ +# Reading tests +############################################################ + +class ReadValuesPlain: + """Check the reading of values in heterogeneous arrays (plain)""" + + def test_access_fields(self): + h = np.array(self._buffer, dtype=self._descr) + if not self.multiple_rows: + assert_(h.shape == ()) + assert_equal(h['x'], np.array(self._buffer[0], dtype='i4')) + assert_equal(h['y'], np.array(self._buffer[1], dtype='f8')) + assert_equal(h['z'], np.array(self._buffer[2], dtype='u1')) + else: + assert_(len(h) == 2) + assert_equal(h['x'], np.array([self._buffer[0][0], + self._buffer[1][0]], dtype='i4')) + assert_equal(h['y'], np.array([self._buffer[0][1], + self._buffer[1][1]], dtype='f8')) + assert_equal(h['z'], np.array([self._buffer[0][2], + self._buffer[1][2]], dtype='u1')) + + +class TestReadValuesPlainSingle(ReadValuesPlain): + """Check the creation of heterogeneous arrays (plain, single row)""" + _descr = Pdescr + multiple_rows = 0 + _buffer = PbufferT[0] + +class TestReadValuesPlainMultiple(ReadValuesPlain): + """Check the values of heterogeneous arrays (plain, multiple rows)""" + _descr = Pdescr + multiple_rows = 1 + _buffer = PbufferT + +class ReadValuesNested: + """Check the reading of values in heterogeneous arrays (nested)""" + + def test_access_top_fields(self): + """Check reading the top fields of a nested array""" + h = np.array(self._buffer, dtype=self._descr) + if not self.multiple_rows: + assert_(h.shape == ()) + assert_equal(h['x'], np.array(self._buffer[0], dtype='i4')) + assert_equal(h['y'], np.array(self._buffer[4], dtype='f8')) + assert_equal(h['z'], np.array(self._buffer[5], dtype='u1')) + else: + assert_(len(h) == 2) + assert_equal(h['x'], np.array([self._buffer[0][0], + self._buffer[1][0]], dtype='i4')) + assert_equal(h['y'], np.array([self._buffer[0][4], + self._buffer[1][4]], dtype='f8')) + assert_equal(h['z'], np.array([self._buffer[0][5], + self._buffer[1][5]], dtype='u1')) + + def test_nested1_acessors(self): + """Check reading the nested fields of a nested array (1st level)""" + h = np.array(self._buffer, dtype=self._descr) + if not self.multiple_rows: + assert_equal(h['Info']['value'], + np.array(self._buffer[1][0], dtype='c16')) + assert_equal(h['Info']['y2'], + np.array(self._buffer[1][1], dtype='f8')) + assert_equal(h['info']['Name'], + np.array(self._buffer[3][0], dtype='U2')) + assert_equal(h['info']['Value'], + np.array(self._buffer[3][1], dtype='c16')) + else: + assert_equal(h['Info']['value'], + np.array([self._buffer[0][1][0], + self._buffer[1][1][0]], + dtype='c16')) + assert_equal(h['Info']['y2'], + np.array([self._buffer[0][1][1], + self._buffer[1][1][1]], + dtype='f8')) + assert_equal(h['info']['Name'], + np.array([self._buffer[0][3][0], + self._buffer[1][3][0]], + dtype='U2')) + assert_equal(h['info']['Value'], + np.array([self._buffer[0][3][1], + self._buffer[1][3][1]], + dtype='c16')) + + def test_nested2_acessors(self): + """Check reading the nested fields of a nested array (2nd level)""" + h = np.array(self._buffer, dtype=self._descr) + if not self.multiple_rows: + assert_equal(h['Info']['Info2']['value'], + np.array(self._buffer[1][2][1], dtype='c16')) + assert_equal(h['Info']['Info2']['z3'], + np.array(self._buffer[1][2][3], dtype='u4')) + else: + assert_equal(h['Info']['Info2']['value'], + np.array([self._buffer[0][1][2][1], + self._buffer[1][1][2][1]], + dtype='c16')) + assert_equal(h['Info']['Info2']['z3'], + np.array([self._buffer[0][1][2][3], + self._buffer[1][1][2][3]], + dtype='u4')) + + def test_nested1_descriptor(self): + """Check access nested descriptors of a nested array (1st level)""" + h = np.array(self._buffer, dtype=self._descr) + assert_(h.dtype['Info']['value'].name == 'complex128') + assert_(h.dtype['Info']['y2'].name == 'float64') + assert_(h.dtype['info']['Name'].name == 'str256') + assert_(h.dtype['info']['Value'].name == 'complex128') + + def test_nested2_descriptor(self): + """Check access nested descriptors of a nested array (2nd level)""" + h = np.array(self._buffer, dtype=self._descr) + assert_(h.dtype['Info']['Info2']['value'].name == 'void256') + assert_(h.dtype['Info']['Info2']['z3'].name == 'void64') + + +class TestReadValuesNestedSingle(ReadValuesNested): + """Check the values of heterogeneous arrays (nested, single row)""" + _descr = Ndescr + multiple_rows = False + _buffer = NbufferT[0] + +class TestReadValuesNestedMultiple(ReadValuesNested): + """Check the values of heterogeneous arrays (nested, multiple rows)""" + _descr = Ndescr + multiple_rows = True + _buffer = NbufferT + +class TestEmptyField: + def test_assign(self): + a = np.arange(10, dtype=np.float32) + a.dtype = [("int", "<0i4"), ("float", "<2f4")] + assert_(a['int'].shape == (5, 0)) + assert_(a['float'].shape == (5, 2)) + + +class TestMultipleFields: + def setup_method(self): + self.ary = np.array([(1, 2, 3, 4), (5, 6, 7, 8)], dtype='i4,f4,i2,c8') + + def _bad_call(self): + return self.ary['f0', 'f1'] + + def test_no_tuple(self): + assert_raises(IndexError, self._bad_call) + + def test_return(self): + res = self.ary[['f0', 'f2']].tolist() + assert_(res == [(1, 3), (5, 7)]) + + +class TestIsSubDType: + # scalar types can be promoted into dtypes + wrappers = [np.dtype, lambda x: x] + + def test_both_abstract(self): + assert_(np.issubdtype(np.floating, np.inexact)) + assert_(not np.issubdtype(np.inexact, np.floating)) + + def test_same(self): + for cls in (np.float32, np.int32): + for w1, w2 in itertools.product(self.wrappers, repeat=2): + assert_(np.issubdtype(w1(cls), w2(cls))) + + def test_subclass(self): + # note we cannot promote floating to a dtype, as it would turn into a + # concrete type + for w in self.wrappers: + assert_(np.issubdtype(w(np.float32), np.floating)) + assert_(np.issubdtype(w(np.float64), np.floating)) + + def test_subclass_backwards(self): + for w in self.wrappers: + assert_(not np.issubdtype(np.floating, w(np.float32))) + assert_(not np.issubdtype(np.floating, w(np.float64))) + + def test_sibling_class(self): + for w1, w2 in itertools.product(self.wrappers, repeat=2): + assert_(not np.issubdtype(w1(np.float32), w2(np.float64))) + assert_(not np.issubdtype(w1(np.float64), w2(np.float32))) + + def test_nondtype_nonscalartype(self): + # See gh-14619 and gh-9505 which introduced the deprecation to fix + # this. These tests are directly taken from gh-9505 + assert not np.issubdtype(np.float32, 'float64') + assert not np.issubdtype(np.float32, 'f8') + assert not np.issubdtype(np.int32, str) + assert not np.issubdtype(np.int32, 'int64') + assert not np.issubdtype(np.str_, 'void') + # for the following the correct spellings are + # np.integer, np.floating, or np.complexfloating respectively: + assert not np.issubdtype(np.int8, int) # np.int8 is never np.int_ + assert not np.issubdtype(np.float32, float) + assert not np.issubdtype(np.complex64, complex) + assert not np.issubdtype(np.float32, "float") + assert not np.issubdtype(np.float64, "f") + + # Test the same for the correct first datatype and abstract one + # in the case of int, float, complex: + assert np.issubdtype(np.float64, 'float64') + assert np.issubdtype(np.float64, 'f8') + assert np.issubdtype(np.str_, str) + assert np.issubdtype(np.int64, 'int64') + assert np.issubdtype(np.void, 'void') + assert np.issubdtype(np.int8, np.integer) + assert np.issubdtype(np.float32, np.floating) + assert np.issubdtype(np.complex64, np.complexfloating) + assert np.issubdtype(np.float64, "float") + assert np.issubdtype(np.float32, "f") + + +class TestIsDType: + """ + Check correctness of `np.isdtype`. The test considers different argument + configurations: `np.isdtype(dtype, k1)` and `np.isdtype(dtype, (k1, k2))` + with concrete dtypes and dtype groups. + """ + dtype_group_dict = { + "signed integer": sctypes["int"], + "unsigned integer": sctypes["uint"], + "integral": sctypes["int"] + sctypes["uint"], + "real floating": sctypes["float"], + "complex floating": sctypes["complex"], + "numeric": ( + sctypes["int"] + sctypes["uint"] + sctypes["float"] + + sctypes["complex"] + ) + } + + @pytest.mark.parametrize( + "dtype,close_dtype", + [ + (np.int64, np.int32), (np.uint64, np.uint32), + (np.float64, np.float32), (np.complex128, np.complex64) + ] + ) + @pytest.mark.parametrize( + "dtype_group", + [ + None, "signed integer", "unsigned integer", "integral", + "real floating", "complex floating", "numeric" + ] + ) + def test_isdtype(self, dtype, close_dtype, dtype_group): + # First check if same dtypes return `true` and different ones + # give `false` (even if they're close in the dtype hierarchy!) + if dtype_group is None: + assert np.isdtype(dtype, dtype) + assert not np.isdtype(dtype, close_dtype) + assert np.isdtype(dtype, (dtype, close_dtype)) + + # Check that dtype and a dtype group that it belongs to + # return `true`, and `false` otherwise. + elif dtype in self.dtype_group_dict[dtype_group]: + assert np.isdtype(dtype, dtype_group) + assert np.isdtype(dtype, (close_dtype, dtype_group)) + else: + assert not np.isdtype(dtype, dtype_group) + + def test_isdtype_invalid_args(self): + with assert_raises_regex(TypeError, r".*must be a NumPy dtype.*"): + np.isdtype("int64", np.int64) + with assert_raises_regex(TypeError, r".*kind argument must.*"): + np.isdtype(np.int64, 1) + with assert_raises_regex(ValueError, r".*not a known kind name.*"): + np.isdtype(np.int64, "int64") + + def test_sctypes_complete(self): + # issue 26439: int32/intc were masking each other on 32-bit builds + assert np.int32 in sctypes['int'] + assert np.intc in sctypes['int'] + assert np.int64 in sctypes['int'] + assert np.uint32 in sctypes['uint'] + assert np.uintc in sctypes['uint'] + assert np.uint64 in sctypes['uint'] + +class TestSctypeDict: + def test_longdouble(self): + assert_(np._core.sctypeDict['float64'] is not np.longdouble) + assert_(np._core.sctypeDict['complex128'] is not np.clongdouble) + + def test_ulong(self): + assert np._core.sctypeDict['ulong'] is np.ulong + assert np.dtype(np.ulong) is np.dtype("ulong") + assert np.dtype(np.ulong).itemsize == np.dtype(np.long).itemsize + + +@pytest.mark.filterwarnings("ignore:.*maximum_sctype.*:DeprecationWarning") +class TestMaximumSctype: + + # note that parametrizing with sctype['int'] and similar would skip types + # with the same size (gh-11923) + + @pytest.mark.parametrize( + 't', [np.byte, np.short, np.intc, np.long, np.longlong] + ) + def test_int(self, t): + assert_equal(maximum_sctype(t), np._core.sctypes['int'][-1]) + + @pytest.mark.parametrize( + 't', [np.ubyte, np.ushort, np.uintc, np.ulong, np.ulonglong] + ) + def test_uint(self, t): + assert_equal(maximum_sctype(t), np._core.sctypes['uint'][-1]) + + @pytest.mark.parametrize('t', [np.half, np.single, np.double, np.longdouble]) + def test_float(self, t): + assert_equal(maximum_sctype(t), np._core.sctypes['float'][-1]) + + @pytest.mark.parametrize('t', [np.csingle, np.cdouble, np.clongdouble]) + def test_complex(self, t): + assert_equal(maximum_sctype(t), np._core.sctypes['complex'][-1]) + + @pytest.mark.parametrize('t', [np.bool, np.object_, np.str_, np.bytes_, + np.void]) + def test_other(self, t): + assert_equal(maximum_sctype(t), t) + + +class Test_sctype2char: + # This function is old enough that we're really just documenting the quirks + # at this point. + + def test_scalar_type(self): + assert_equal(sctype2char(np.double), 'd') + assert_equal(sctype2char(np.long), 'l') + assert_equal(sctype2char(np.int_), np.array(0).dtype.char) + assert_equal(sctype2char(np.str_), 'U') + assert_equal(sctype2char(np.bytes_), 'S') + + def test_other_type(self): + assert_equal(sctype2char(float), 'd') + assert_equal(sctype2char(list), 'O') + assert_equal(sctype2char(np.ndarray), 'O') + + def test_third_party_scalar_type(self): + from numpy._core._rational_tests import rational + assert_raises(KeyError, sctype2char, rational) + assert_raises(KeyError, sctype2char, rational(1)) + + def test_array_instance(self): + assert_equal(sctype2char(np.array([1.0, 2.0])), 'd') + + def test_abstract_type(self): + assert_raises(KeyError, sctype2char, np.floating) + + def test_non_type(self): + assert_raises(ValueError, sctype2char, 1) + +@pytest.mark.parametrize("rep, expected", [ + (np.int32, True), + (list, False), + (1.1, False), + (str, True), + (np.dtype(np.float64), True), + (np.dtype((np.int16, (3, 4))), True), + (np.dtype([('a', np.int8)]), True), + ]) +def test_issctype(rep, expected): + # ensure proper identification of scalar + # data-types by issctype() + actual = issctype(rep) + assert type(actual) is bool + assert_equal(actual, expected) + + +@pytest.mark.skipif(sys.flags.optimize > 1, + reason="no docstrings present to inspect when PYTHONOPTIMIZE/Py_OptimizeFlag > 1") +@pytest.mark.xfail(IS_PYPY, + reason="PyPy cannot modify tp_doc after PyType_Ready") +class TestDocStrings: + def test_platform_dependent_aliases(self): + if np.int64 is np.int_: + assert_('int64' in np.int_.__doc__) + elif np.int64 is np.longlong: + assert_('int64' in np.longlong.__doc__) + + +class TestScalarTypeNames: + # gh-9799 + + numeric_types = [ + np.byte, np.short, np.intc, np.long, np.longlong, + np.ubyte, np.ushort, np.uintc, np.ulong, np.ulonglong, + np.half, np.single, np.double, np.longdouble, + np.csingle, np.cdouble, np.clongdouble, + ] + + def test_names_are_unique(self): + # none of the above may be aliases for each other + assert len(set(self.numeric_types)) == len(self.numeric_types) + + # names must be unique + names = [t.__name__ for t in self.numeric_types] + assert len(set(names)) == len(names) + + @pytest.mark.parametrize('t', numeric_types) + def test_names_reflect_attributes(self, t): + """ Test that names correspond to where the type is under ``np.`` """ + assert getattr(np, t.__name__) is t + + @pytest.mark.parametrize('t', numeric_types) + def test_names_are_undersood_by_dtype(self, t): + """ Test the dtype constructor maps names back to the type """ + assert np.dtype(t.__name__).type is t + + +class TestBoolDefinition: + def test_bool_definition(self): + assert nt.bool is np.bool diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_overrides.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_overrides.py new file mode 100644 index 0000000000000000000000000000000000000000..cd20ceb5ac7f7633bad90272424821ac25258677 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_overrides.py @@ -0,0 +1,797 @@ +import inspect +import sys +import os +import tempfile +from io import StringIO +from unittest import mock +import pickle + +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex) +from numpy.testing.overrides import get_overridable_numpy_array_functions +from numpy._core.overrides import ( + _get_implementing_args, array_function_dispatch, + verify_matching_signatures) + +def _return_not_implemented(self, *args, **kwargs): + return NotImplemented + + +# need to define this at the top level to test pickling +@array_function_dispatch(lambda array: (array,)) +def dispatched_one_arg(array): + """Docstring.""" + return 'original' + + +@array_function_dispatch(lambda array1, array2: (array1, array2)) +def dispatched_two_arg(array1, array2): + """Docstring.""" + return 'original' + + +class TestGetImplementingArgs: + + def test_ndarray(self): + array = np.array(1) + + args = _get_implementing_args([array]) + assert_equal(list(args), [array]) + + args = _get_implementing_args([array, array]) + assert_equal(list(args), [array]) + + args = _get_implementing_args([array, 1]) + assert_equal(list(args), [array]) + + args = _get_implementing_args([1, array]) + assert_equal(list(args), [array]) + + def test_ndarray_subclasses(self): + + class OverrideSub(np.ndarray): + __array_function__ = _return_not_implemented + + class NoOverrideSub(np.ndarray): + pass + + array = np.array(1).view(np.ndarray) + override_sub = np.array(1).view(OverrideSub) + no_override_sub = np.array(1).view(NoOverrideSub) + + args = _get_implementing_args([array, override_sub]) + assert_equal(list(args), [override_sub, array]) + + args = _get_implementing_args([array, no_override_sub]) + assert_equal(list(args), [no_override_sub, array]) + + args = _get_implementing_args( + [override_sub, no_override_sub]) + assert_equal(list(args), [override_sub, no_override_sub]) + + def test_ndarray_and_duck_array(self): + + class Other: + __array_function__ = _return_not_implemented + + array = np.array(1) + other = Other() + + args = _get_implementing_args([other, array]) + assert_equal(list(args), [other, array]) + + args = _get_implementing_args([array, other]) + assert_equal(list(args), [array, other]) + + def test_ndarray_subclass_and_duck_array(self): + + class OverrideSub(np.ndarray): + __array_function__ = _return_not_implemented + + class Other: + __array_function__ = _return_not_implemented + + array = np.array(1) + subarray = np.array(1).view(OverrideSub) + other = Other() + + assert_equal(_get_implementing_args([array, subarray, other]), + [subarray, array, other]) + assert_equal(_get_implementing_args([array, other, subarray]), + [subarray, array, other]) + + def test_many_duck_arrays(self): + + class A: + __array_function__ = _return_not_implemented + + class B(A): + __array_function__ = _return_not_implemented + + class C(A): + __array_function__ = _return_not_implemented + + class D: + __array_function__ = _return_not_implemented + + a = A() + b = B() + c = C() + d = D() + + assert_equal(_get_implementing_args([1]), []) + assert_equal(_get_implementing_args([a]), [a]) + assert_equal(_get_implementing_args([a, 1]), [a]) + assert_equal(_get_implementing_args([a, a, a]), [a]) + assert_equal(_get_implementing_args([a, d, a]), [a, d]) + assert_equal(_get_implementing_args([a, b]), [b, a]) + assert_equal(_get_implementing_args([b, a]), [b, a]) + assert_equal(_get_implementing_args([a, b, c]), [b, c, a]) + assert_equal(_get_implementing_args([a, c, b]), [c, b, a]) + + def test_too_many_duck_arrays(self): + namespace = dict(__array_function__=_return_not_implemented) + types = [type('A' + str(i), (object,), namespace) for i in range(65)] + relevant_args = [t() for t in types] + + actual = _get_implementing_args(relevant_args[:64]) + assert_equal(actual, relevant_args[:64]) + + with assert_raises_regex(TypeError, 'distinct argument types'): + _get_implementing_args(relevant_args) + + +class TestNDArrayArrayFunction: + + def test_method(self): + + class Other: + __array_function__ = _return_not_implemented + + class NoOverrideSub(np.ndarray): + pass + + class OverrideSub(np.ndarray): + __array_function__ = _return_not_implemented + + array = np.array([1]) + other = Other() + no_override_sub = array.view(NoOverrideSub) + override_sub = array.view(OverrideSub) + + result = array.__array_function__(func=dispatched_two_arg, + types=(np.ndarray,), + args=(array, 1.), kwargs={}) + assert_equal(result, 'original') + + result = array.__array_function__(func=dispatched_two_arg, + types=(np.ndarray, Other), + args=(array, other), kwargs={}) + assert_(result is NotImplemented) + + result = array.__array_function__(func=dispatched_two_arg, + types=(np.ndarray, NoOverrideSub), + args=(array, no_override_sub), + kwargs={}) + assert_equal(result, 'original') + + result = array.__array_function__(func=dispatched_two_arg, + types=(np.ndarray, OverrideSub), + args=(array, override_sub), + kwargs={}) + assert_equal(result, 'original') + + with assert_raises_regex(TypeError, 'no implementation found'): + np.concatenate((array, other)) + + expected = np.concatenate((array, array)) + result = np.concatenate((array, no_override_sub)) + assert_equal(result, expected.view(NoOverrideSub)) + result = np.concatenate((array, override_sub)) + assert_equal(result, expected.view(OverrideSub)) + + def test_no_wrapper(self): + # Regular numpy functions have wrappers, but do not presume + # all functions do (array creation ones do not): check that + # we just call the function in that case. + array = np.array(1) + func = lambda x: x * 2 + result = array.__array_function__(func=func, types=(np.ndarray,), + args=(array,), kwargs={}) + assert_equal(result, array * 2) + + def test_wrong_arguments(self): + # Check our implementation guards against wrong arguments. + a = np.array([1, 2]) + with pytest.raises(TypeError, match="args must be a tuple"): + a.__array_function__(np.reshape, (np.ndarray,), a, (2, 1)) + with pytest.raises(TypeError, match="kwargs must be a dict"): + a.__array_function__(np.reshape, (np.ndarray,), (a,), (2, 1)) + + def test_wrong_arguments(self): + # Check our implementation guards against wrong arguments. + a = np.array([1, 2]) + with pytest.raises(TypeError, match="args must be a tuple"): + a.__array_function__(np.reshape, (np.ndarray,), a, (2, 1)) + with pytest.raises(TypeError, match="kwargs must be a dict"): + a.__array_function__(np.reshape, (np.ndarray,), (a,), (2, 1)) + + +class TestArrayFunctionDispatch: + + def test_pickle(self): + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + roundtripped = pickle.loads( + pickle.dumps(dispatched_one_arg, protocol=proto)) + assert_(roundtripped is dispatched_one_arg) + + def test_name_and_docstring(self): + assert_equal(dispatched_one_arg.__name__, 'dispatched_one_arg') + if sys.flags.optimize < 2: + assert_equal(dispatched_one_arg.__doc__, 'Docstring.') + + def test_interface(self): + + class MyArray: + def __array_function__(self, func, types, args, kwargs): + return (self, func, types, args, kwargs) + + original = MyArray() + (obj, func, types, args, kwargs) = dispatched_one_arg(original) + assert_(obj is original) + assert_(func is dispatched_one_arg) + assert_equal(set(types), {MyArray}) + # assert_equal uses the overloaded np.iscomplexobj() internally + assert_(args == (original,)) + assert_equal(kwargs, {}) + + def test_not_implemented(self): + + class MyArray: + def __array_function__(self, func, types, args, kwargs): + return NotImplemented + + array = MyArray() + with assert_raises_regex(TypeError, 'no implementation found'): + dispatched_one_arg(array) + + def test_where_dispatch(self): + + class DuckArray: + def __array_function__(self, ufunc, method, *inputs, **kwargs): + return "overridden" + + array = np.array(1) + duck_array = DuckArray() + + result = np.std(array, where=duck_array) + + assert_equal(result, "overridden") + + +class TestVerifyMatchingSignatures: + + def test_verify_matching_signatures(self): + + verify_matching_signatures(lambda x: 0, lambda x: 0) + verify_matching_signatures(lambda x=None: 0, lambda x=None: 0) + verify_matching_signatures(lambda x=1: 0, lambda x=None: 0) + + with assert_raises(RuntimeError): + verify_matching_signatures(lambda a: 0, lambda b: 0) + with assert_raises(RuntimeError): + verify_matching_signatures(lambda x: 0, lambda x=None: 0) + with assert_raises(RuntimeError): + verify_matching_signatures(lambda x=None: 0, lambda y=None: 0) + with assert_raises(RuntimeError): + verify_matching_signatures(lambda x=1: 0, lambda y=1: 0) + + def test_array_function_dispatch(self): + + with assert_raises(RuntimeError): + @array_function_dispatch(lambda x: (x,)) + def f(y): + pass + + # should not raise + @array_function_dispatch(lambda x: (x,), verify=False) + def f(y): + pass + + +def _new_duck_type_and_implements(): + """Create a duck array type and implements functions.""" + HANDLED_FUNCTIONS = {} + + class MyArray: + def __array_function__(self, func, types, args, kwargs): + if func not in HANDLED_FUNCTIONS: + return NotImplemented + if not all(issubclass(t, MyArray) for t in types): + return NotImplemented + return HANDLED_FUNCTIONS[func](*args, **kwargs) + + def implements(numpy_function): + """Register an __array_function__ implementations.""" + def decorator(func): + HANDLED_FUNCTIONS[numpy_function] = func + return func + return decorator + + return (MyArray, implements) + + +class TestArrayFunctionImplementation: + + def test_one_arg(self): + MyArray, implements = _new_duck_type_and_implements() + + @implements(dispatched_one_arg) + def _(array): + return 'myarray' + + assert_equal(dispatched_one_arg(1), 'original') + assert_equal(dispatched_one_arg(MyArray()), 'myarray') + + def test_optional_args(self): + MyArray, implements = _new_duck_type_and_implements() + + @array_function_dispatch(lambda array, option=None: (array,)) + def func_with_option(array, option='default'): + return option + + @implements(func_with_option) + def my_array_func_with_option(array, new_option='myarray'): + return new_option + + # we don't need to implement every option on __array_function__ + # implementations + assert_equal(func_with_option(1), 'default') + assert_equal(func_with_option(1, option='extra'), 'extra') + assert_equal(func_with_option(MyArray()), 'myarray') + with assert_raises(TypeError): + func_with_option(MyArray(), option='extra') + + # but new options on implementations can't be used + result = my_array_func_with_option(MyArray(), new_option='yes') + assert_equal(result, 'yes') + with assert_raises(TypeError): + func_with_option(MyArray(), new_option='no') + + def test_not_implemented(self): + MyArray, implements = _new_duck_type_and_implements() + + @array_function_dispatch(lambda array: (array,), module='my') + def func(array): + return array + + array = np.array(1) + assert_(func(array) is array) + assert_equal(func.__module__, 'my') + + with assert_raises_regex( + TypeError, "no implementation found for 'my.func'"): + func(MyArray()) + + @pytest.mark.parametrize("name", ["concatenate", "mean", "asarray"]) + def test_signature_error_message_simple(self, name): + func = getattr(np, name) + try: + # all of these functions need an argument: + func() + except TypeError as e: + exc = e + + assert exc.args[0].startswith(f"{name}()") + + def test_signature_error_message(self): + # The lambda function will be named "", but the TypeError + # should show the name as "func" + def _dispatcher(): + return () + + @array_function_dispatch(_dispatcher) + def func(): + pass + + try: + func._implementation(bad_arg=3) + except TypeError as e: + expected_exception = e + + try: + func(bad_arg=3) + raise AssertionError("must fail") + except TypeError as exc: + if exc.args[0].startswith("_dispatcher"): + # We replace the qualname currently, but it used `__name__` + # (relevant functions have the same name and qualname anyway) + pytest.skip("Python version is not using __qualname__ for " + "TypeError formatting.") + + assert exc.args == expected_exception.args + + @pytest.mark.parametrize("value", [234, "this func is not replaced"]) + def test_dispatcher_error(self, value): + # If the dispatcher raises an error, we must not attempt to mutate it + error = TypeError(value) + + def dispatcher(): + raise error + + @array_function_dispatch(dispatcher) + def func(): + return 3 + + try: + func() + raise AssertionError("must fail") + except TypeError as exc: + assert exc is error # unmodified exception + + def test_properties(self): + # Check that str and repr are sensible + func = dispatched_two_arg + assert str(func) == str(func._implementation) + repr_no_id = repr(func).split("at ")[0] + repr_no_id_impl = repr(func._implementation).split("at ")[0] + assert repr_no_id == repr_no_id_impl + + @pytest.mark.parametrize("func", [ + lambda x, y: 0, # no like argument + lambda like=None: 0, # not keyword only + lambda *, like=None, a=3: 0, # not last (not that it matters) + ]) + def test_bad_like_sig(self, func): + # We sanity check the signature, and these should fail. + with pytest.raises(RuntimeError): + array_function_dispatch()(func) + + def test_bad_like_passing(self): + # Cover internal sanity check for passing like as first positional arg + def func(*, like=None): + pass + + func_with_like = array_function_dispatch()(func) + with pytest.raises(TypeError): + func_with_like() + with pytest.raises(TypeError): + func_with_like(like=234) + + def test_too_many_args(self): + # Mainly a unit-test to increase coverage + objs = [] + for i in range(80): + class MyArr: + def __array_function__(self, *args, **kwargs): + return NotImplemented + + objs.append(MyArr()) + + def _dispatch(*args): + return args + + @array_function_dispatch(_dispatch) + def func(*args): + pass + + with pytest.raises(TypeError, match="maximum number"): + func(*objs) + + + +class TestNDArrayMethods: + + def test_repr(self): + # gh-12162: should still be defined even if __array_function__ doesn't + # implement np.array_repr() + + class MyArray(np.ndarray): + def __array_function__(*args, **kwargs): + return NotImplemented + + array = np.array(1).view(MyArray) + assert_equal(repr(array), 'MyArray(1)') + assert_equal(str(array), '1') + + +class TestNumPyFunctions: + + def test_set_module(self): + assert_equal(np.sum.__module__, 'numpy') + assert_equal(np.char.equal.__module__, 'numpy.char') + assert_equal(np.fft.fft.__module__, 'numpy.fft') + assert_equal(np.linalg.solve.__module__, 'numpy.linalg') + + def test_inspect_sum(self): + signature = inspect.signature(np.sum) + assert_('axis' in signature.parameters) + + def test_override_sum(self): + MyArray, implements = _new_duck_type_and_implements() + + @implements(np.sum) + def _(array): + return 'yes' + + assert_equal(np.sum(MyArray()), 'yes') + + def test_sum_on_mock_array(self): + + # We need a proxy for mocks because __array_function__ is only looked + # up in the class dict + class ArrayProxy: + def __init__(self, value): + self.value = value + def __array_function__(self, *args, **kwargs): + return self.value.__array_function__(*args, **kwargs) + def __array__(self, *args, **kwargs): + return self.value.__array__(*args, **kwargs) + + proxy = ArrayProxy(mock.Mock(spec=ArrayProxy)) + proxy.value.__array_function__.return_value = 1 + result = np.sum(proxy) + assert_equal(result, 1) + proxy.value.__array_function__.assert_called_once_with( + np.sum, (ArrayProxy,), (proxy,), {}) + proxy.value.__array__.assert_not_called() + + def test_sum_forwarding_implementation(self): + + class MyArray(np.ndarray): + + def sum(self, axis, out): + return 'summed' + + def __array_function__(self, func, types, args, kwargs): + return super().__array_function__(func, types, args, kwargs) + + # note: the internal implementation of np.sum() calls the .sum() method + array = np.array(1).view(MyArray) + assert_equal(np.sum(array), 'summed') + + +class TestArrayLike: + def setup_method(self): + class MyArray: + def __init__(self, function=None): + self.function = function + + def __array_function__(self, func, types, args, kwargs): + assert func is getattr(np, func.__name__) + try: + my_func = getattr(self, func.__name__) + except AttributeError: + return NotImplemented + return my_func(*args, **kwargs) + + self.MyArray = MyArray + + class MyNoArrayFunctionArray: + def __init__(self, function=None): + self.function = function + + self.MyNoArrayFunctionArray = MyNoArrayFunctionArray + + class MySubclass(np.ndarray): + def __array_function__(self, func, types, args, kwargs): + result = super().__array_function__(func, types, args, kwargs) + return result.view(self.__class__) + + self.MySubclass = MySubclass + + def add_method(self, name, arr_class, enable_value_error=False): + def _definition(*args, **kwargs): + # Check that `like=` isn't propagated downstream + assert 'like' not in kwargs + + if enable_value_error and 'value_error' in kwargs: + raise ValueError + + return arr_class(getattr(arr_class, name)) + setattr(arr_class, name, _definition) + + def func_args(*args, **kwargs): + return args, kwargs + + def test_array_like_not_implemented(self): + self.add_method('array', self.MyArray) + + ref = self.MyArray.array() + + with assert_raises_regex(TypeError, 'no implementation found'): + array_like = np.asarray(1, like=ref) + + _array_tests = [ + ('array', *func_args((1,))), + ('asarray', *func_args((1,))), + ('asanyarray', *func_args((1,))), + ('ascontiguousarray', *func_args((2, 3))), + ('asfortranarray', *func_args((2, 3))), + ('require', *func_args((np.arange(6).reshape(2, 3),), + requirements=['A', 'F'])), + ('empty', *func_args((1,))), + ('full', *func_args((1,), 2)), + ('ones', *func_args((1,))), + ('zeros', *func_args((1,))), + ('arange', *func_args(3)), + ('frombuffer', *func_args(b'\x00' * 8, dtype=int)), + ('fromiter', *func_args(range(3), dtype=int)), + ('fromstring', *func_args('1,2', dtype=int, sep=',')), + ('loadtxt', *func_args(lambda: StringIO('0 1\n2 3'))), + ('genfromtxt', *func_args(lambda: StringIO('1,2.1'), + dtype=[('int', 'i8'), ('float', 'f8')], + delimiter=',')), + ] + + + def test_nep35_functions_as_array_functions(self,): + all_array_functions = get_overridable_numpy_array_functions() + like_array_functions_subset = { + getattr(np, func_name) for func_name, *_ in self.__class__._array_tests + } + assert like_array_functions_subset.issubset(all_array_functions) + + nep35_python_functions = { + np.eye, np.fromfunction, np.full, np.genfromtxt, + np.identity, np.loadtxt, np.ones, np.require, np.tri, + } + assert nep35_python_functions.issubset(all_array_functions) + + nep35_C_functions = { + np.arange, np.array, np.asanyarray, np.asarray, + np.ascontiguousarray, np.asfortranarray, np.empty, + np.frombuffer, np.fromfile, np.fromiter, np.fromstring, + np.zeros, + } + assert nep35_C_functions.issubset(all_array_functions) + + @pytest.mark.parametrize('function, args, kwargs', _array_tests) + @pytest.mark.parametrize('numpy_ref', [True, False]) + def test_array_like(self, function, args, kwargs, numpy_ref): + self.add_method('array', self.MyArray) + self.add_method(function, self.MyArray) + np_func = getattr(np, function) + my_func = getattr(self.MyArray, function) + + if numpy_ref is True: + ref = np.array(1) + else: + ref = self.MyArray.array() + + like_args = tuple(a() if callable(a) else a for a in args) + array_like = np_func(*like_args, **kwargs, like=ref) + + if numpy_ref is True: + assert type(array_like) is np.ndarray + + np_args = tuple(a() if callable(a) else a for a in args) + np_arr = np_func(*np_args, **kwargs) + + # Special-case np.empty to ensure values match + if function == "empty": + np_arr.fill(1) + array_like.fill(1) + + assert_equal(array_like, np_arr) + else: + assert type(array_like) is self.MyArray + assert array_like.function is my_func + + @pytest.mark.parametrize('function, args, kwargs', _array_tests) + @pytest.mark.parametrize('ref', [1, [1], "MyNoArrayFunctionArray"]) + def test_no_array_function_like(self, function, args, kwargs, ref): + self.add_method('array', self.MyNoArrayFunctionArray) + self.add_method(function, self.MyNoArrayFunctionArray) + np_func = getattr(np, function) + + # Instantiate ref if it's the MyNoArrayFunctionArray class + if ref == "MyNoArrayFunctionArray": + ref = self.MyNoArrayFunctionArray.array() + + like_args = tuple(a() if callable(a) else a for a in args) + + with assert_raises_regex(TypeError, + 'The `like` argument must be an array-like that implements'): + np_func(*like_args, **kwargs, like=ref) + + @pytest.mark.parametrize('function, args, kwargs', _array_tests) + def test_subclass(self, function, args, kwargs): + ref = np.array(1).view(self.MySubclass) + np_func = getattr(np, function) + like_args = tuple(a() if callable(a) else a for a in args) + array_like = np_func(*like_args, **kwargs, like=ref) + assert type(array_like) is self.MySubclass + if np_func is np.empty: + return + np_args = tuple(a() if callable(a) else a for a in args) + np_arr = np_func(*np_args, **kwargs) + assert_equal(array_like.view(np.ndarray), np_arr) + + @pytest.mark.parametrize('numpy_ref', [True, False]) + def test_array_like_fromfile(self, numpy_ref): + self.add_method('array', self.MyArray) + self.add_method("fromfile", self.MyArray) + + if numpy_ref is True: + ref = np.array(1) + else: + ref = self.MyArray.array() + + data = np.random.random(5) + + with tempfile.TemporaryDirectory() as tmpdir: + fname = os.path.join(tmpdir, "testfile") + data.tofile(fname) + + array_like = np.fromfile(fname, like=ref) + if numpy_ref is True: + assert type(array_like) is np.ndarray + np_res = np.fromfile(fname, like=ref) + assert_equal(np_res, data) + assert_equal(array_like, np_res) + else: + assert type(array_like) is self.MyArray + assert array_like.function is self.MyArray.fromfile + + def test_exception_handling(self): + self.add_method('array', self.MyArray, enable_value_error=True) + + ref = self.MyArray.array() + + with assert_raises(TypeError): + # Raises the error about `value_error` being invalid first + np.array(1, value_error=True, like=ref) + + @pytest.mark.parametrize('function, args, kwargs', _array_tests) + def test_like_as_none(self, function, args, kwargs): + self.add_method('array', self.MyArray) + self.add_method(function, self.MyArray) + np_func = getattr(np, function) + + like_args = tuple(a() if callable(a) else a for a in args) + # required for loadtxt and genfromtxt to init w/o error. + like_args_exp = tuple(a() if callable(a) else a for a in args) + + array_like = np_func(*like_args, **kwargs, like=None) + expected = np_func(*like_args_exp, **kwargs) + # Special-case np.empty to ensure values match + if function == "empty": + array_like.fill(1) + expected.fill(1) + assert_equal(array_like, expected) + + +def test_function_like(): + # We provide a `__get__` implementation, make sure it works + assert type(np.mean) is np._core._multiarray_umath._ArrayFunctionDispatcher + + class MyClass: + def __array__(self, dtype=None, copy=None): + # valid argument to mean: + return np.arange(3) + + func1 = staticmethod(np.mean) + func2 = np.mean + func3 = classmethod(np.mean) + + m = MyClass() + assert m.func1([10]) == 10 + assert m.func2() == 1 # mean of the arange + with pytest.raises(TypeError, match="unsupported operand type"): + # Tries to operate on the class + m.func3() + + # Manual binding also works (the above may shortcut): + bound = np.mean.__get__(m, MyClass) + assert bound() == 1 + + bound = np.mean.__get__(None, MyClass) # unbound actually + assert bound([10]) == 10 + + bound = np.mean.__get__(MyClass) # classmethod + with pytest.raises(TypeError, match="unsupported operand type"): + bound() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_print.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_print.py new file mode 100644 index 0000000000000000000000000000000000000000..7f16449704a130a7df376f545fecfaf386cb4875 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_print.py @@ -0,0 +1,202 @@ +import sys + +import pytest + +import numpy as np +from numpy.testing import assert_, assert_equal, IS_MUSL +from numpy._core.tests._locales import CommaDecimalPointLocale + + +from io import StringIO + +_REF = {np.inf: 'inf', -np.inf: '-inf', np.nan: 'nan'} + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_float_types(tp): + """ Check formatting. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [0, 1, -1, 1e20]: + assert_equal(str(tp(x)), str(float(x)), + err_msg='Failed str formatting for type %s' % tp) + + if tp(1e16).itemsize > 4: + assert_equal(str(tp(1e16)), str(float('1e16')), + err_msg='Failed str formatting for type %s' % tp) + else: + ref = '1e+16' + assert_equal(str(tp(1e16)), ref, + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_nan_inf_float(tp): + """ Check formatting of nan & inf. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [np.inf, -np.inf, np.nan]: + assert_equal(str(tp(x)), _REF[x], + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('tp', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_types(tp): + """Check formatting of complex types. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [0, 1, -1, 1e20]: + assert_equal(str(tp(x)), str(complex(x)), + err_msg='Failed str formatting for type %s' % tp) + assert_equal(str(tp(x*1j)), str(complex(x*1j)), + err_msg='Failed str formatting for type %s' % tp) + assert_equal(str(tp(x + x*1j)), str(complex(x + x*1j)), + err_msg='Failed str formatting for type %s' % tp) + + if tp(1e16).itemsize > 8: + assert_equal(str(tp(1e16)), str(complex(1e16)), + err_msg='Failed str formatting for type %s' % tp) + else: + ref = '(1e+16+0j)' + assert_equal(str(tp(1e16)), ref, + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('dtype', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_inf_nan(dtype): + """Check inf/nan formatting of complex types.""" + TESTS = { + complex(np.inf, 0): "(inf+0j)", + complex(0, np.inf): "infj", + complex(-np.inf, 0): "(-inf+0j)", + complex(0, -np.inf): "-infj", + complex(np.inf, 1): "(inf+1j)", + complex(1, np.inf): "(1+infj)", + complex(-np.inf, 1): "(-inf+1j)", + complex(1, -np.inf): "(1-infj)", + complex(np.nan, 0): "(nan+0j)", + complex(0, np.nan): "nanj", + complex(-np.nan, 0): "(nan+0j)", + complex(0, -np.nan): "nanj", + complex(np.nan, 1): "(nan+1j)", + complex(1, np.nan): "(1+nanj)", + complex(-np.nan, 1): "(nan+1j)", + complex(1, -np.nan): "(1+nanj)", + } + for c, s in TESTS.items(): + assert_equal(str(dtype(c)), s) + + +# print tests +def _test_redirected_print(x, tp, ref=None): + file = StringIO() + file_tp = StringIO() + stdout = sys.stdout + try: + sys.stdout = file_tp + print(tp(x)) + sys.stdout = file + if ref: + print(ref) + else: + print(x) + finally: + sys.stdout = stdout + + assert_equal(file.getvalue(), file_tp.getvalue(), + err_msg='print failed for type%s' % tp) + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_float_type_print(tp): + """Check formatting when using print """ + for x in [0, 1, -1, 1e20]: + _test_redirected_print(float(x), tp) + + for x in [np.inf, -np.inf, np.nan]: + _test_redirected_print(float(x), tp, _REF[x]) + + if tp(1e16).itemsize > 4: + _test_redirected_print(float(1e16), tp) + else: + ref = '1e+16' + _test_redirected_print(float(1e16), tp, ref) + + +@pytest.mark.parametrize('tp', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_type_print(tp): + """Check formatting when using print """ + # We do not create complex with inf/nan directly because the feature is + # missing in python < 2.6 + for x in [0, 1, -1, 1e20]: + _test_redirected_print(complex(x), tp) + + if tp(1e16).itemsize > 8: + _test_redirected_print(complex(1e16), tp) + else: + ref = '(1e+16+0j)' + _test_redirected_print(complex(1e16), tp, ref) + + _test_redirected_print(complex(np.inf, 1), tp, '(inf+1j)') + _test_redirected_print(complex(-np.inf, 1), tp, '(-inf+1j)') + _test_redirected_print(complex(-np.nan, 1), tp, '(nan+1j)') + + +def test_scalar_format(): + """Test the str.format method with NumPy scalar types""" + tests = [('{0}', True, np.bool), + ('{0}', False, np.bool), + ('{0:d}', 130, np.uint8), + ('{0:d}', 50000, np.uint16), + ('{0:d}', 3000000000, np.uint32), + ('{0:d}', 15000000000000000000, np.uint64), + ('{0:d}', -120, np.int8), + ('{0:d}', -30000, np.int16), + ('{0:d}', -2000000000, np.int32), + ('{0:d}', -7000000000000000000, np.int64), + ('{0:g}', 1.5, np.float16), + ('{0:g}', 1.5, np.float32), + ('{0:g}', 1.5, np.float64), + ('{0:g}', 1.5, np.longdouble), + ('{0:g}', 1.5+0.5j, np.complex64), + ('{0:g}', 1.5+0.5j, np.complex128), + ('{0:g}', 1.5+0.5j, np.clongdouble)] + + for (fmat, val, valtype) in tests: + try: + assert_equal(fmat.format(val), fmat.format(valtype(val)), + "failed with val %s, type %s" % (val, valtype)) + except ValueError as e: + assert_(False, + "format raised exception (fmt='%s', val=%s, type=%s, exc='%s')" % + (fmat, repr(val), repr(valtype), str(e))) + + +# +# Locale tests: scalar types formatting should be independent of the locale +# + +class TestCommaDecimalPointLocale(CommaDecimalPointLocale): + + def test_locale_single(self): + assert_equal(str(np.float32(1.2)), str(float(1.2))) + + def test_locale_double(self): + assert_equal(str(np.double(1.2)), str(float(1.2))) + + @pytest.mark.skipif(IS_MUSL, + reason="test flaky on musllinux") + def test_locale_longdouble(self): + assert_equal(str(np.longdouble('1.2')), str(float(1.2))) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_protocols.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_protocols.py new file mode 100644 index 0000000000000000000000000000000000000000..1709629fa89b3ccc482bad501fd45917b18cbddd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_protocols.py @@ -0,0 +1,45 @@ +import pytest +import warnings +import numpy as np + + +@pytest.mark.filterwarnings("error") +def test_getattr_warning(): + # issue gh-14735: make sure we clear only getattr errors, and let warnings + # through + class Wrapper: + def __init__(self, array): + self.array = array + + def __len__(self): + return len(self.array) + + def __getitem__(self, item): + return type(self)(self.array[item]) + + def __getattr__(self, name): + if name.startswith("__array_"): + warnings.warn("object got converted", UserWarning, stacklevel=1) + + return getattr(self.array, name) + + def __repr__(self): + return "".format(self=self) + + array = Wrapper(np.arange(10)) + with pytest.raises(UserWarning, match="object got converted"): + np.asarray(array) + + +def test_array_called(): + class Wrapper: + val = '0' * 100 + + def __array__(self, dtype=None, copy=None): + return np.array([self.val], dtype=dtype, copy=copy) + + + wrapped = Wrapper() + arr = np.array(wrapped, dtype=str) + assert arr.dtype == 'U100' + assert arr[0] == Wrapper.val diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_records.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_records.py new file mode 100644 index 0000000000000000000000000000000000000000..97946cdb0fa34d372b2d7b8f37ccdd0c84827a8b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_records.py @@ -0,0 +1,540 @@ +import collections.abc +import textwrap +from io import BytesIO +from os import path +from pathlib import Path +import pickle + +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_array_equal, assert_array_almost_equal, + assert_raises, temppath, + ) + + +class TestFromrecords: + def test_fromrecords(self): + r = np.rec.fromrecords([[456, 'dbe', 1.2], [2, 'de', 1.3]], + names='col1,col2,col3') + assert_equal(r[0].item(), (456, 'dbe', 1.2)) + assert_equal(r['col1'].dtype.kind, 'i') + assert_equal(r['col2'].dtype.kind, 'U') + assert_equal(r['col2'].dtype.itemsize, 12) + assert_equal(r['col3'].dtype.kind, 'f') + + def test_fromrecords_0len(self): + """ Verify fromrecords works with a 0-length input """ + dtype = [('a', float), ('b', float)] + r = np.rec.fromrecords([], dtype=dtype) + assert_equal(r.shape, (0,)) + + def test_fromrecords_2d(self): + data = [ + [(1, 2), (3, 4), (5, 6)], + [(6, 5), (4, 3), (2, 1)] + ] + expected_a = [[1, 3, 5], [6, 4, 2]] + expected_b = [[2, 4, 6], [5, 3, 1]] + + # try with dtype + r1 = np.rec.fromrecords(data, dtype=[('a', int), ('b', int)]) + assert_equal(r1['a'], expected_a) + assert_equal(r1['b'], expected_b) + + # try with names + r2 = np.rec.fromrecords(data, names=['a', 'b']) + assert_equal(r2['a'], expected_a) + assert_equal(r2['b'], expected_b) + + assert_equal(r1, r2) + + def test_method_array(self): + r = np.rec.array( + b'abcdefg' * 100, formats='i2,S3,i4', shape=3, byteorder='big' + ) + assert_equal(r[1].item(), (25444, b'efg', 1633837924)) + + def test_method_array2(self): + r = np.rec.array( + [ + (1, 11, 'a'), (2, 22, 'b'), (3, 33, 'c'), (4, 44, 'd'), + (5, 55, 'ex'), (6, 66, 'f'), (7, 77, 'g') + ], + formats='u1,f4,S1' + ) + assert_equal(r[1].item(), (2, 22.0, b'b')) + + def test_recarray_slices(self): + r = np.rec.array( + [ + (1, 11, 'a'), (2, 22, 'b'), (3, 33, 'c'), (4, 44, 'd'), + (5, 55, 'ex'), (6, 66, 'f'), (7, 77, 'g') + ], + formats='u1,f4,S1' + ) + assert_equal(r[1::2][1].item(), (4, 44.0, b'd')) + + def test_recarray_fromarrays(self): + x1 = np.array([1, 2, 3, 4]) + x2 = np.array(['a', 'dd', 'xyz', '12']) + x3 = np.array([1.1, 2, 3, 4]) + r = np.rec.fromarrays([x1, x2, x3], names='a,b,c') + assert_equal(r[1].item(), (2, 'dd', 2.0)) + x1[1] = 34 + assert_equal(r.a, np.array([1, 2, 3, 4])) + + def test_recarray_fromfile(self): + data_dir = path.join(path.dirname(__file__), 'data') + filename = path.join(data_dir, 'recarray_from_file.fits') + fd = open(filename, 'rb') + fd.seek(2880 * 2) + r1 = np.rec.fromfile(fd, formats='f8,i4,S5', shape=3, byteorder='big') + fd.seek(2880 * 2) + r2 = np.rec.array(fd, formats='f8,i4,S5', shape=3, byteorder='big') + fd.seek(2880 * 2) + bytes_array = BytesIO() + bytes_array.write(fd.read()) + bytes_array.seek(0) + r3 = np.rec.fromfile( + bytes_array, formats='f8,i4,S5', shape=3, byteorder='big' + ) + fd.close() + assert_equal(r1, r2) + assert_equal(r2, r3) + + def test_recarray_from_obj(self): + count = 10 + a = np.zeros(count, dtype='O') + b = np.zeros(count, dtype='f8') + c = np.zeros(count, dtype='f8') + for i in range(len(a)): + a[i] = list(range(1, 10)) + + mine = np.rec.fromarrays([a, b, c], names='date,data1,data2') + for i in range(len(a)): + assert_(mine.date[i] == list(range(1, 10))) + assert_(mine.data1[i] == 0.0) + assert_(mine.data2[i] == 0.0) + + def test_recarray_repr(self): + a = np.array([(1, 0.1), (2, 0.2)], + dtype=[('foo', ' 2) & (a < 6)) + xb = np.where((b > 2) & (b < 6)) + ya = ((a > 2) & (a < 6)) + yb = ((b > 2) & (b < 6)) + assert_array_almost_equal(xa, ya.nonzero()) + assert_array_almost_equal(xb, yb.nonzero()) + assert_(np.all(a[ya] > 0.5)) + assert_(np.all(b[yb] > 0.5)) + + def test_endian_where(self): + # GitHub issue #369 + net = np.zeros(3, dtype='>f4') + net[1] = 0.00458849 + net[2] = 0.605202 + max_net = net.max() + test = np.where(net <= 0., max_net, net) + correct = np.array([ 0.60520202, 0.00458849, 0.60520202]) + assert_array_almost_equal(test, correct) + + def test_endian_recarray(self): + # Ticket #2185 + dt = np.dtype([ + ('head', '>u4'), + ('data', '>u4', 2), + ]) + buf = np.recarray(1, dtype=dt) + buf[0]['head'] = 1 + buf[0]['data'][:] = [1, 1] + + h = buf[0]['head'] + d = buf[0]['data'][0] + buf[0]['head'] = h + buf[0]['data'][0] = d + assert_(buf[0]['head'] == 1) + + def test_mem_dot(self): + # Ticket #106 + x = np.random.randn(0, 1) + y = np.random.randn(10, 1) + # Dummy array to detect bad memory access: + _z = np.ones(10) + _dummy = np.empty((0, 10)) + z = np.lib.stride_tricks.as_strided(_z, _dummy.shape, _dummy.strides) + np.dot(x, np.transpose(y), out=z) + assert_equal(_z, np.ones(10)) + # Do the same for the built-in dot: + np._core.multiarray.dot(x, np.transpose(y), out=z) + assert_equal(_z, np.ones(10)) + + def test_arange_endian(self): + # Ticket #111 + ref = np.arange(10) + x = np.arange(10, dtype=' 1 and x['two'] > 2) + + def test_method_args(self): + # Make sure methods and functions have same default axis + # keyword and arguments + funcs1 = ['argmax', 'argmin', 'sum', 'any', 'all', 'cumsum', + 'cumprod', 'prod', 'std', 'var', 'mean', + 'round', 'min', 'max', 'argsort', 'sort'] + funcs2 = ['compress', 'take', 'repeat'] + + for func in funcs1: + arr = np.random.rand(8, 7) + arr2 = arr.copy() + res1 = getattr(arr, func)() + res2 = getattr(np, func)(arr2) + if res1 is None: + res1 = arr + + if res1.dtype.kind in 'uib': + assert_((res1 == res2).all(), func) + else: + assert_(abs(res1-res2).max() < 1e-8, func) + + for func in funcs2: + arr1 = np.random.rand(8, 7) + arr2 = np.random.rand(8, 7) + res1 = None + if func == 'compress': + arr1 = arr1.ravel() + res1 = getattr(arr2, func)(arr1) + else: + arr2 = (15*arr2).astype(int).ravel() + if res1 is None: + res1 = getattr(arr1, func)(arr2) + res2 = getattr(np, func)(arr1, arr2) + assert_(abs(res1-res2).max() < 1e-8, func) + + def test_mem_lexsort_strings(self): + # Ticket #298 + lst = ['abc', 'cde', 'fgh'] + np.lexsort((lst,)) + + def test_fancy_index(self): + # Ticket #302 + x = np.array([1, 2])[np.array([0])] + assert_equal(x.shape, (1,)) + + def test_recarray_copy(self): + # Ticket #312 + dt = [('x', np.int16), ('y', np.float64)] + ra = np.array([(1, 2.3)], dtype=dt) + rb = np.rec.array(ra, dtype=dt) + rb['x'] = 2. + assert_(ra['x'] != rb['x']) + + def test_rec_fromarray(self): + # Ticket #322 + x1 = np.array([[1, 2], [3, 4], [5, 6]]) + x2 = np.array(['a', 'dd', 'xyz']) + x3 = np.array([1.1, 2, 3]) + np.rec.fromarrays([x1, x2, x3], formats="(2,)i4,S3,f8") + + def test_object_array_assign(self): + x = np.empty((2, 2), object) + x.flat[2] = (1, 2, 3) + assert_equal(x.flat[2], (1, 2, 3)) + + def test_ndmin_float64(self): + # Ticket #324 + x = np.array([1, 2, 3], dtype=np.float64) + assert_equal(np.array(x, dtype=np.float32, ndmin=2).ndim, 2) + assert_equal(np.array(x, dtype=np.float64, ndmin=2).ndim, 2) + + def test_ndmin_order(self): + # Issue #465 and related checks + assert_(np.array([1, 2], order='C', ndmin=3).flags.c_contiguous) + assert_(np.array([1, 2], order='F', ndmin=3).flags.f_contiguous) + assert_(np.array(np.ones((2, 2), order='F'), ndmin=3).flags.f_contiguous) + assert_(np.array(np.ones((2, 2), order='C'), ndmin=3).flags.c_contiguous) + + def test_mem_axis_minimization(self): + # Ticket #327 + data = np.arange(5) + data = np.add.outer(data, data) + + def test_mem_float_imag(self): + # Ticket #330 + np.float64(1.0).imag + + def test_dtype_tuple(self): + # Ticket #334 + assert_(np.dtype('i4') == np.dtype(('i4', ()))) + + def test_dtype_posttuple(self): + # Ticket #335 + np.dtype([('col1', '()i4')]) + + def test_numeric_carray_compare(self): + # Ticket #341 + assert_equal(np.array(['X'], 'c'), b'X') + + def test_string_array_size(self): + # Ticket #342 + assert_raises(ValueError, + np.array, [['X'], ['X', 'X', 'X']], '|S1') + + def test_dtype_repr(self): + # Ticket #344 + dt1 = np.dtype(('uint32', 2)) + dt2 = np.dtype(('uint32', (2,))) + assert_equal(dt1.__repr__(), dt2.__repr__()) + + def test_reshape_order(self): + # Make sure reshape order works. + a = np.arange(6).reshape(2, 3, order='F') + assert_equal(a, [[0, 2, 4], [1, 3, 5]]) + a = np.array([[1, 2], [3, 4], [5, 6], [7, 8]]) + b = a[:, 1] + assert_equal(b.reshape(2, 2, order='F'), [[2, 6], [4, 8]]) + + def test_reshape_zero_strides(self): + # Issue #380, test reshaping of zero strided arrays + a = np.ones(1) + a = np.lib.stride_tricks.as_strided(a, shape=(5,), strides=(0,)) + assert_(a.reshape(5, 1).strides[0] == 0) + + def test_reshape_zero_size(self): + # GitHub Issue #2700, setting shape failed for 0-sized arrays + a = np.ones((0, 2)) + a.shape = (-1, 2) + + def test_reshape_trailing_ones_strides(self): + # GitHub issue gh-2949, bad strides for trailing ones of new shape + a = np.zeros(12, dtype=np.int32)[::2] # not contiguous + strides_c = (16, 8, 8, 8) + strides_f = (8, 24, 48, 48) + assert_equal(a.reshape(3, 2, 1, 1).strides, strides_c) + assert_equal(a.reshape(3, 2, 1, 1, order='F').strides, strides_f) + assert_equal(np.array(0, dtype=np.int32).reshape(1, 1).strides, (4, 4)) + + def test_repeat_discont(self): + # Ticket #352 + a = np.arange(12).reshape(4, 3)[:, 2] + assert_equal(a.repeat(3), [2, 2, 2, 5, 5, 5, 8, 8, 8, 11, 11, 11]) + + def test_array_index(self): + # Make sure optimization is not called in this case. + a = np.array([1, 2, 3]) + a2 = np.array([[1, 2, 3]]) + assert_equal(a[np.where(a == 3)], a2[np.where(a2 == 3)]) + + def test_object_argmax(self): + a = np.array([1, 2, 3], dtype=object) + assert_(a.argmax() == 2) + + def test_recarray_fields(self): + # Ticket #372 + dt0 = np.dtype([('f0', 'i4'), ('f1', 'i4')]) + dt1 = np.dtype([('f0', 'i8'), ('f1', 'i8')]) + for a in [np.array([(1, 2), (3, 4)], "i4,i4"), + np.rec.array([(1, 2), (3, 4)], "i4,i4"), + np.rec.array([(1, 2), (3, 4)]), + np.rec.fromarrays([(1, 2), (3, 4)], "i4,i4"), + np.rec.fromarrays([(1, 2), (3, 4)])]: + assert_(a.dtype in [dt0, dt1]) + + def test_random_shuffle(self): + # Ticket #374 + a = np.arange(5).reshape((5, 1)) + b = a.copy() + np.random.shuffle(b) + assert_equal(np.sort(b, axis=0), a) + + def test_refcount_vdot(self): + # Changeset #3443 + _assert_valid_refcount(np.vdot) + + def test_startswith(self): + ca = np.char.array(['Hi', 'There']) + assert_equal(ca.startswith('H'), [True, False]) + + def test_noncommutative_reduce_accumulate(self): + # Ticket #413 + tosubtract = np.arange(5) + todivide = np.array([2.0, 0.5, 0.25]) + assert_equal(np.subtract.reduce(tosubtract), -10) + assert_equal(np.divide.reduce(todivide), 16.0) + assert_array_equal(np.subtract.accumulate(tosubtract), + np.array([0, -1, -3, -6, -10])) + assert_array_equal(np.divide.accumulate(todivide), + np.array([2., 4., 16.])) + + def test_convolve_empty(self): + # Convolve should raise an error for empty input array. + assert_raises(ValueError, np.convolve, [], [1]) + assert_raises(ValueError, np.convolve, [1], []) + + def test_multidim_byteswap(self): + # Ticket #449 + r = np.array([(1, (0, 1, 2))], dtype="i2,3i2") + assert_array_equal(r.byteswap(), + np.array([(256, (0, 256, 512))], r.dtype)) + + def test_string_NULL(self): + # Changeset 3557 + assert_equal(np.array("a\x00\x0b\x0c\x00").item(), + 'a\x00\x0b\x0c') + + def test_junk_in_string_fields_of_recarray(self): + # Ticket #483 + r = np.array([[b'abc']], dtype=[('var1', '|S20')]) + assert_(asbytes(r['var1'][0][0]) == b'abc') + + def test_take_output(self): + # Ensure that 'take' honours output parameter. + x = np.arange(12).reshape((3, 4)) + a = np.take(x, [0, 2], axis=1) + b = np.zeros_like(a) + np.take(x, [0, 2], axis=1, out=b) + assert_array_equal(a, b) + + def test_take_object_fail(self): + # Issue gh-3001 + d = 123. + a = np.array([d, 1], dtype=object) + if HAS_REFCOUNT: + ref_d = sys.getrefcount(d) + try: + a.take([0, 100]) + except IndexError: + pass + if HAS_REFCOUNT: + assert_(ref_d == sys.getrefcount(d)) + + def test_array_str_64bit(self): + # Ticket #501 + s = np.array([1, np.nan], dtype=np.float64) + with np.errstate(all='raise'): + np.array_str(s) # Should succeed + + def test_frompyfunc_endian(self): + # Ticket #503 + from math import radians + uradians = np.frompyfunc(radians, 1, 1) + big_endian = np.array([83.4, 83.5], dtype='>f8') + little_endian = np.array([83.4, 83.5], dtype=' object + # casting succeeds + def rs(): + x = np.ones([484, 286]) + y = np.zeros([484, 286]) + x |= y + + assert_raises(TypeError, rs) + + def test_unicode_scalar(self): + # Ticket #600 + x = np.array(["DROND", "DROND1"], dtype="U6") + el = x[1] + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + new = pickle.loads(pickle.dumps(el, protocol=proto)) + assert_equal(new, el) + + def test_arange_non_native_dtype(self): + # Ticket #616 + for T in ('>f4', ' 0)] = v + + assert_raises(IndexError, ia, x, s, np.zeros(9, dtype=float)) + assert_raises(IndexError, ia, x, s, np.zeros(11, dtype=float)) + + # Old special case (different code path): + assert_raises(ValueError, ia, x.flat, s, np.zeros(9, dtype=float)) + assert_raises(ValueError, ia, x.flat, s, np.zeros(11, dtype=float)) + + def test_mem_scalar_indexing(self): + # Ticket #603 + x = np.array([0], dtype=float) + index = np.array(0, dtype=np.int32) + x[index] + + def test_binary_repr_0_width(self): + assert_equal(np.binary_repr(0, width=3), '000') + + def test_fromstring(self): + assert_equal(np.fromstring("12:09:09", dtype=int, sep=":"), + [12, 9, 9]) + + def test_searchsorted_variable_length(self): + x = np.array(['a', 'aa', 'b']) + y = np.array(['d', 'e']) + assert_equal(x.searchsorted(y), [3, 3]) + + def test_string_argsort_with_zeros(self): + # Check argsort for strings containing zeros. + x = np.frombuffer(b"\x00\x02\x00\x01", dtype="|S2") + assert_array_equal(x.argsort(kind='m'), np.array([1, 0])) + assert_array_equal(x.argsort(kind='q'), np.array([1, 0])) + + def test_string_sort_with_zeros(self): + # Check sort for strings containing zeros. + x = np.frombuffer(b"\x00\x02\x00\x01", dtype="|S2") + y = np.frombuffer(b"\x00\x01\x00\x02", dtype="|S2") + assert_array_equal(np.sort(x, kind="q"), y) + + def test_copy_detection_zero_dim(self): + # Ticket #658 + np.indices((0, 3, 4)).T.reshape(-1, 3) + + def test_flat_byteorder(self): + # Ticket #657 + x = np.arange(10) + assert_array_equal(x.astype('>i4'), x.astype('i4').flat[:], x.astype('i4')): + x = np.array([-1, 0, 1], dtype=dt) + assert_equal(x.flat[0].dtype, x[0].dtype) + + def test_copy_detection_corner_case(self): + # Ticket #658 + np.indices((0, 3, 4)).T.reshape(-1, 3) + + def test_object_array_refcounting(self): + # Ticket #633 + if not hasattr(sys, 'getrefcount'): + return + + # NB. this is probably CPython-specific + + cnt = sys.getrefcount + + a = object() + b = object() + c = object() + + cnt0_a = cnt(a) + cnt0_b = cnt(b) + cnt0_c = cnt(c) + + # -- 0d -> 1-d broadcast slice assignment + + arr = np.zeros(5, dtype=np.object_) + + arr[:] = a + assert_equal(cnt(a), cnt0_a + 5) + + arr[:] = b + assert_equal(cnt(a), cnt0_a) + assert_equal(cnt(b), cnt0_b + 5) + + arr[:2] = c + assert_equal(cnt(b), cnt0_b + 3) + assert_equal(cnt(c), cnt0_c + 2) + + del arr + + # -- 1-d -> 2-d broadcast slice assignment + + arr = np.zeros((5, 2), dtype=np.object_) + arr0 = np.zeros(2, dtype=np.object_) + + arr0[0] = a + assert_(cnt(a) == cnt0_a + 1) + arr0[1] = b + assert_(cnt(b) == cnt0_b + 1) + + arr[:, :] = arr0 + assert_(cnt(a) == cnt0_a + 6) + assert_(cnt(b) == cnt0_b + 6) + + arr[:, 0] = None + assert_(cnt(a) == cnt0_a + 1) + + del arr, arr0 + + # -- 2-d copying + flattening + + arr = np.zeros((5, 2), dtype=np.object_) + + arr[:, 0] = a + arr[:, 1] = b + assert_(cnt(a) == cnt0_a + 5) + assert_(cnt(b) == cnt0_b + 5) + + arr2 = arr.copy() + assert_(cnt(a) == cnt0_a + 10) + assert_(cnt(b) == cnt0_b + 10) + + arr2 = arr[:, 0].copy() + assert_(cnt(a) == cnt0_a + 10) + assert_(cnt(b) == cnt0_b + 5) + + arr2 = arr.flatten() + assert_(cnt(a) == cnt0_a + 10) + assert_(cnt(b) == cnt0_b + 10) + + del arr, arr2 + + # -- concatenate, repeat, take, choose + + arr1 = np.zeros((5, 1), dtype=np.object_) + arr2 = np.zeros((5, 1), dtype=np.object_) + + arr1[...] = a + arr2[...] = b + assert_(cnt(a) == cnt0_a + 5) + assert_(cnt(b) == cnt0_b + 5) + + tmp = np.concatenate((arr1, arr2)) + assert_(cnt(a) == cnt0_a + 5 + 5) + assert_(cnt(b) == cnt0_b + 5 + 5) + + tmp = arr1.repeat(3, axis=0) + assert_(cnt(a) == cnt0_a + 5 + 3*5) + + tmp = arr1.take([1, 2, 3], axis=0) + assert_(cnt(a) == cnt0_a + 5 + 3) + + x = np.array([[0], [1], [0], [1], [1]], int) + tmp = x.choose(arr1, arr2) + assert_(cnt(a) == cnt0_a + 5 + 2) + assert_(cnt(b) == cnt0_b + 5 + 3) + + del tmp # Avoid pyflakes unused variable warning + + def test_mem_custom_float_to_array(self): + # Ticket 702 + class MyFloat: + def __float__(self): + return 1.0 + + tmp = np.atleast_1d([MyFloat()]) + tmp.astype(float) # Should succeed + + def test_object_array_refcount_self_assign(self): + # Ticket #711 + class VictimObject: + deleted = False + + def __del__(self): + self.deleted = True + + d = VictimObject() + arr = np.zeros(5, dtype=np.object_) + arr[:] = d + del d + arr[:] = arr # refcount of 'd' might hit zero here + assert_(not arr[0].deleted) + arr[:] = arr # trying to induce a segfault by doing it again... + assert_(not arr[0].deleted) + + def test_mem_fromiter_invalid_dtype_string(self): + x = [1, 2, 3] + assert_raises(ValueError, + np.fromiter, list(x), dtype='S') + + def test_reduce_big_object_array(self): + # Ticket #713 + oldsize = np.setbufsize(10*16) + a = np.array([None]*161, object) + assert_(not np.any(a)) + np.setbufsize(oldsize) + + def test_mem_0d_array_index(self): + # Ticket #714 + np.zeros(10)[np.array(0)] + + def test_nonnative_endian_fill(self): + # Non-native endian arrays were incorrectly filled with scalars + # before r5034. + if sys.byteorder == 'little': + dtype = np.dtype('>i4') + else: + dtype = np.dtype('data contains non-zero floats + x = np.array([123456789e199], dtype=np.float64) + if IS_PYPY: + x.resize((m, 0), refcheck=False) + else: + x.resize((m, 0)) + y = np.array([123456789e199], dtype=np.float64) + if IS_PYPY: + y.resize((0, n), refcheck=False) + else: + y.resize((0, n)) + + # `dot` should just return zero (m, n) matrix + z = np.dot(x, y) + assert_(np.all(z == 0)) + assert_(z.shape == (m, n)) + + def test_zeros(self): + # Regression test for #1061. + # Set a size which cannot fit into a 64 bits signed integer + sz = 2 ** 64 + with assert_raises_regex(ValueError, + 'Maximum allowed dimension exceeded'): + np.empty(sz) + + def test_huge_arange(self): + # Regression test for #1062. + # Set a size which cannot fit into a 64 bits signed integer + sz = 2 ** 64 + with assert_raises_regex(ValueError, + 'Maximum allowed size exceeded'): + np.arange(sz) + assert_(np.size == sz) + + def test_fromiter_bytes(self): + # Ticket #1058 + a = np.fromiter(list(range(10)), dtype='b') + b = np.fromiter(list(range(10)), dtype='B') + assert_(np.all(a == np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]))) + assert_(np.all(b == np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]))) + + def test_array_from_sequence_scalar_array(self): + # Ticket #1078: segfaults when creating an array with a sequence of + # 0d arrays. + a = np.array((np.ones(2), np.array(2)), dtype=object) + assert_equal(a.shape, (2,)) + assert_equal(a.dtype, np.dtype(object)) + assert_equal(a[0], np.ones(2)) + assert_equal(a[1], np.array(2)) + + a = np.array(((1,), np.array(1)), dtype=object) + assert_equal(a.shape, (2,)) + assert_equal(a.dtype, np.dtype(object)) + assert_equal(a[0], (1,)) + assert_equal(a[1], np.array(1)) + + def test_array_from_sequence_scalar_array2(self): + # Ticket #1081: weird array with strange input... + t = np.array([np.array([]), np.array(0, object)], dtype=object) + assert_equal(t.shape, (2,)) + assert_equal(t.dtype, np.dtype(object)) + + def test_array_too_big(self): + # Ticket #1080. + assert_raises(ValueError, np.zeros, [975]*7, np.int8) + assert_raises(ValueError, np.zeros, [26244]*5, np.int8) + + def test_dtype_keyerrors_(self): + # Ticket #1106. + dt = np.dtype([('f1', np.uint)]) + assert_raises(KeyError, dt.__getitem__, "f2") + assert_raises(IndexError, dt.__getitem__, 1) + assert_raises(TypeError, dt.__getitem__, 0.0) + + def test_lexsort_buffer_length(self): + # Ticket #1217, don't segfault. + a = np.ones(100, dtype=np.int8) + b = np.ones(100, dtype=np.int32) + i = np.lexsort((a[::-1], b)) + assert_equal(i, np.arange(100, dtype=int)) + + def test_object_array_to_fixed_string(self): + # Ticket #1235. + a = np.array(['abcdefgh', 'ijklmnop'], dtype=np.object_) + b = np.array(a, dtype=(np.str_, 8)) + assert_equal(a, b) + c = np.array(a, dtype=(np.str_, 5)) + assert_equal(c, np.array(['abcde', 'ijklm'])) + d = np.array(a, dtype=(np.str_, 12)) + assert_equal(a, d) + e = np.empty((2, ), dtype=(np.str_, 8)) + e[:] = a[:] + assert_equal(a, e) + + def test_unicode_to_string_cast(self): + # Ticket #1240. + a = np.array([['abc', '\u03a3'], + ['asdf', 'erw']], + dtype='U') + assert_raises(UnicodeEncodeError, np.array, a, 'S4') + + def test_unicode_to_string_cast_error(self): + # gh-15790 + a = np.array(['\x80'] * 129, dtype='U3') + assert_raises(UnicodeEncodeError, np.array, a, 'S') + b = a.reshape(3, 43)[:-1, :-1] + assert_raises(UnicodeEncodeError, np.array, b, 'S') + + def test_mixed_string_byte_array_creation(self): + a = np.array(['1234', b'123']) + assert_(a.itemsize == 16) + a = np.array([b'123', '1234']) + assert_(a.itemsize == 16) + a = np.array(['1234', b'123', '12345']) + assert_(a.itemsize == 20) + a = np.array([b'123', '1234', b'12345']) + assert_(a.itemsize == 20) + a = np.array([b'123', '1234', b'1234']) + assert_(a.itemsize == 16) + + def test_misaligned_objects_segfault(self): + # Ticket #1198 and #1267 + a1 = np.zeros((10,), dtype='O,c') + a2 = np.array(['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h', 'i', 'j'], 'S10') + a1['f0'] = a2 + repr(a1) + np.argmax(a1['f0']) + a1['f0'][1] = "FOO" + a1['f0'] = "FOO" + np.array(a1['f0'], dtype='S') + np.nonzero(a1['f0']) + a1.sort() + copy.deepcopy(a1) + + def test_misaligned_scalars_segfault(self): + # Ticket #1267 + s1 = np.array(('a', 'Foo'), dtype='c,O') + s2 = np.array(('b', 'Bar'), dtype='c,O') + s1['f1'] = s2['f1'] + s1['f1'] = 'Baz' + + def test_misaligned_dot_product_objects(self): + # Ticket #1267 + # This didn't require a fix, but it's worth testing anyway, because + # it may fail if .dot stops enforcing the arrays to be BEHAVED + a = np.array([[(1, 'a'), (0, 'a')], [(0, 'a'), (1, 'a')]], dtype='O,c') + b = np.array([[(4, 'a'), (1, 'a')], [(2, 'a'), (2, 'a')]], dtype='O,c') + np.dot(a['f0'], b['f0']) + + def test_byteswap_complex_scalar(self): + # Ticket #1259 and gh-441 + for dtype in [np.dtype('<'+t) for t in np.typecodes['Complex']]: + z = np.array([2.2-1.1j], dtype) + x = z[0] # always native-endian + y = x.byteswap() + if x.dtype.byteorder == z.dtype.byteorder: + # little-endian machine + assert_equal(x, np.frombuffer(y.tobytes(), dtype=dtype.newbyteorder())) + else: + # big-endian machine + assert_equal(x, np.frombuffer(y.tobytes(), dtype=dtype)) + # double check real and imaginary parts: + assert_equal(x.real, y.real.byteswap()) + assert_equal(x.imag, y.imag.byteswap()) + + def test_structured_arrays_with_objects1(self): + # Ticket #1299 + stra = 'aaaa' + strb = 'bbbb' + x = np.array([[(0, stra), (1, strb)]], 'i8,O') + x[x.nonzero()] = x.ravel()[:1] + assert_(x[0, 1] == x[0, 0]) + + @pytest.mark.skipif( + sys.version_info >= (3, 12), + reason="Python 3.12 has immortal refcounts, this test no longer works." + ) + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_structured_arrays_with_objects2(self): + # Ticket #1299 second test + stra = 'aaaa' + strb = 'bbbb' + numb = sys.getrefcount(strb) + numa = sys.getrefcount(stra) + x = np.array([[(0, stra), (1, strb)]], 'i8,O') + x[x.nonzero()] = x.ravel()[:1] + assert_(sys.getrefcount(strb) == numb) + assert_(sys.getrefcount(stra) == numa + 2) + + def test_duplicate_title_and_name(self): + # Ticket #1254 + dtspec = [(('a', 'a'), 'i'), ('b', 'i')] + assert_raises(ValueError, np.dtype, dtspec) + + def test_signed_integer_division_overflow(self): + # Ticket #1317. + def test_type(t): + min = np.array([np.iinfo(t).min]) + min //= -1 + + with np.errstate(over="ignore"): + for t in (np.int8, np.int16, np.int32, np.int64, int): + test_type(t) + + def test_buffer_hashlib(self): + from hashlib import sha256 + + x = np.array([1, 2, 3], dtype=np.dtype('c') + + def test_log1p_compiler_shenanigans(self): + # Check if log1p is behaving on 32 bit intel systems. + assert_(np.isfinite(np.log1p(np.exp2(-53)))) + + def test_fromiter_comparison(self): + a = np.fromiter(list(range(10)), dtype='b') + b = np.fromiter(list(range(10)), dtype='B') + assert_(np.all(a == np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]))) + assert_(np.all(b == np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]))) + + def test_fromstring_crash(self): + # Ticket #1345: the following should not cause a crash + with assert_warns(DeprecationWarning): + np.fromstring(b'aa, aa, 1.0', sep=',') + + def test_ticket_1539(self): + dtypes = [x for x in np._core.sctypeDict.values() + if (issubclass(x, np.number) + and not issubclass(x, np.timedelta64))] + a = np.array([], np.bool) # not x[0] because it is unordered + failures = [] + + for x in dtypes: + b = a.astype(x) + for y in dtypes: + c = a.astype(y) + try: + d = np.dot(b, c) + except TypeError: + failures.append((x, y)) + else: + if d != 0: + failures.append((x, y)) + if failures: + raise AssertionError("Failures: %r" % failures) + + def test_ticket_1538(self): + x = np.finfo(np.float32) + for name in 'eps epsneg max min resolution tiny'.split(): + assert_equal(type(getattr(x, name)), np.float32, + err_msg=name) + + def test_ticket_1434(self): + # Check that the out= argument in var and std has an effect + data = np.array(((1, 2, 3), (4, 5, 6), (7, 8, 9))) + out = np.zeros((3,)) + + ret = data.var(axis=1, out=out) + assert_(ret is out) + assert_array_equal(ret, data.var(axis=1)) + + ret = data.std(axis=1, out=out) + assert_(ret is out) + assert_array_equal(ret, data.std(axis=1)) + + def test_complex_nan_maximum(self): + cnan = complex(0, np.nan) + assert_equal(np.maximum(1, cnan), cnan) + + def test_subclass_int_tuple_assignment(self): + # ticket #1563 + class Subclass(np.ndarray): + def __new__(cls, i): + return np.ones((i,)).view(cls) + + x = Subclass(5) + x[(0,)] = 2 # shouldn't raise an exception + assert_equal(x[0], 2) + + def test_ufunc_no_unnecessary_views(self): + # ticket #1548 + class Subclass(np.ndarray): + pass + x = np.array([1, 2, 3]).view(Subclass) + y = np.add(x, x, x) + assert_equal(id(x), id(y)) + + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_take_refcount(self): + # ticket #939 + a = np.arange(16, dtype=float) + a.shape = (4, 4) + lut = np.ones((5 + 3, 4), float) + rgba = np.empty(shape=a.shape + (4,), dtype=lut.dtype) + c1 = sys.getrefcount(rgba) + try: + lut.take(a, axis=0, mode='clip', out=rgba) + except TypeError: + pass + c2 = sys.getrefcount(rgba) + assert_equal(c1, c2) + + def test_fromfile_tofile_seeks(self): + # On Python 3, tofile/fromfile used to get (#1610) the Python + # file handle out of sync + f0 = tempfile.NamedTemporaryFile() + f = f0.file + f.write(np.arange(255, dtype='u1').tobytes()) + + f.seek(20) + ret = np.fromfile(f, count=4, dtype='u1') + assert_equal(ret, np.array([20, 21, 22, 23], dtype='u1')) + assert_equal(f.tell(), 24) + + f.seek(40) + np.array([1, 2, 3], dtype='u1').tofile(f) + assert_equal(f.tell(), 43) + + f.seek(40) + data = f.read(3) + assert_equal(data, b"\x01\x02\x03") + + f.seek(80) + f.read(4) + data = np.fromfile(f, dtype='u1', count=4) + assert_equal(data, np.array([84, 85, 86, 87], dtype='u1')) + + f.close() + + def test_complex_scalar_warning(self): + for tp in [np.csingle, np.cdouble, np.clongdouble]: + x = tp(1+2j) + assert_warns(ComplexWarning, float, x) + with suppress_warnings() as sup: + sup.filter(ComplexWarning) + assert_equal(float(x), float(x.real)) + + def test_complex_scalar_complex_cast(self): + for tp in [np.csingle, np.cdouble, np.clongdouble]: + x = tp(1+2j) + assert_equal(complex(x), 1+2j) + + def test_complex_boolean_cast(self): + # Ticket #2218 + for tp in [np.csingle, np.cdouble, np.clongdouble]: + x = np.array([0, 0+0.5j, 0.5+0j], dtype=tp) + assert_equal(x.astype(bool), np.array([0, 1, 1], dtype=bool)) + assert_(np.any(x)) + assert_(np.all(x[1:])) + + def test_uint_int_conversion(self): + x = 2**64 - 1 + assert_equal(int(np.uint64(x)), x) + + def test_duplicate_field_names_assign(self): + ra = np.fromiter(((i*3, i*2) for i in range(10)), dtype='i8,f8') + ra.dtype.names = ('f1', 'f2') + repr(ra) # should not cause a segmentation fault + assert_raises(ValueError, setattr, ra.dtype, 'names', ('f1', 'f1')) + + def test_eq_string_and_object_array(self): + # From e-mail thread "__eq__ with str and object" (Keith Goodman) + a1 = np.array(['a', 'b'], dtype=object) + a2 = np.array(['a', 'c']) + assert_array_equal(a1 == a2, [True, False]) + assert_array_equal(a2 == a1, [True, False]) + + def test_nonzero_byteswap(self): + a = np.array([0x80000000, 0x00000080, 0], dtype=np.uint32) + a.dtype = np.float32 + assert_equal(a.nonzero()[0], [1]) + a = a.byteswap() + a = a.view(a.dtype.newbyteorder()) + assert_equal(a.nonzero()[0], [1]) # [0] if nonzero() ignores swap + + def test_empty_mul(self): + a = np.array([1.]) + a[1:1] *= 2 + assert_equal(a, [1.]) + + def test_array_side_effect(self): + # The second use of itemsize was throwing an exception because in + # ctors.c, discover_itemsize was calling PyObject_Length without + # checking the return code. This failed to get the length of the + # number 2, and the exception hung around until something checked + # PyErr_Occurred() and returned an error. + assert_equal(np.dtype('S10').itemsize, 10) + np.array([['abc', 2], ['long ', '0123456789']], dtype=np.bytes_) + assert_equal(np.dtype('S10').itemsize, 10) + + def test_any_float(self): + # all and any for floats + a = np.array([0.1, 0.9]) + assert_(np.any(a)) + assert_(np.all(a)) + + def test_large_float_sum(self): + a = np.arange(10000, dtype='f') + assert_equal(a.sum(dtype='d'), a.astype('d').sum()) + + def test_ufunc_casting_out(self): + a = np.array(1.0, dtype=np.float32) + b = np.array(1.0, dtype=np.float64) + c = np.array(1.0, dtype=np.float32) + np.add(a, b, out=c) + assert_equal(c, 2.0) + + def test_array_scalar_contiguous(self): + # Array scalars are both C and Fortran contiguous + assert_(np.array(1.0).flags.c_contiguous) + assert_(np.array(1.0).flags.f_contiguous) + assert_(np.array(np.float32(1.0)).flags.c_contiguous) + assert_(np.array(np.float32(1.0)).flags.f_contiguous) + + def test_squeeze_contiguous(self): + # Similar to GitHub issue #387 + a = np.zeros((1, 2)).squeeze() + b = np.zeros((2, 2, 2), order='F')[:, :, ::2].squeeze() + assert_(a.flags.c_contiguous) + assert_(a.flags.f_contiguous) + assert_(b.flags.f_contiguous) + + def test_squeeze_axis_handling(self): + # Issue #10779 + # Ensure proper handling of objects + # that don't support axis specification + # when squeezing + + class OldSqueeze(np.ndarray): + + def __new__(cls, + input_array): + obj = np.asarray(input_array).view(cls) + return obj + + # it is perfectly reasonable that prior + # to numpy version 1.7.0 a subclass of ndarray + # might have been created that did not expect + # squeeze to have an axis argument + # NOTE: this example is somewhat artificial; + # it is designed to simulate an old API + # expectation to guard against regression + def squeeze(self): + return super().squeeze() + + oldsqueeze = OldSqueeze(np.array([[1],[2],[3]])) + + # if no axis argument is specified the old API + # expectation should give the correct result + assert_equal(np.squeeze(oldsqueeze), + np.array([1,2,3])) + + # likewise, axis=None should work perfectly well + # with the old API expectation + assert_equal(np.squeeze(oldsqueeze, axis=None), + np.array([1,2,3])) + + # however, specification of any particular axis + # should raise a TypeError in the context of the + # old API specification, even when using a valid + # axis specification like 1 for this array + with assert_raises(TypeError): + # this would silently succeed for array + # subclasses / objects that did not support + # squeeze axis argument handling before fixing + # Issue #10779 + np.squeeze(oldsqueeze, axis=1) + + # check for the same behavior when using an invalid + # axis specification -- in this case axis=0 does not + # have size 1, but the priority should be to raise + # a TypeError for the axis argument and NOT a + # ValueError for squeezing a non-empty dimension + with assert_raises(TypeError): + np.squeeze(oldsqueeze, axis=0) + + # the new API knows how to handle the axis + # argument and will return a ValueError if + # attempting to squeeze an axis that is not + # of length 1 + with assert_raises(ValueError): + np.squeeze(np.array([[1],[2],[3]]), axis=0) + + def test_reduce_contiguous(self): + # GitHub issue #387 + a = np.add.reduce(np.zeros((2, 1, 2)), (0, 1)) + b = np.add.reduce(np.zeros((2, 1, 2)), 1) + assert_(a.flags.c_contiguous) + assert_(a.flags.f_contiguous) + assert_(b.flags.c_contiguous) + + @pytest.mark.skipif(IS_PYSTON, reason="Pyston disables recursion checking") + def test_object_array_self_reference(self): + # Object arrays with references to themselves can cause problems + a = np.array(0, dtype=object) + a[()] = a + assert_raises(RecursionError, int, a) + assert_raises(RecursionError, float, a) + a[()] = None + + @pytest.mark.skipif(IS_PYSTON, reason="Pyston disables recursion checking") + def test_object_array_circular_reference(self): + # Test the same for a circular reference. + a = np.array(0, dtype=object) + b = np.array(0, dtype=object) + a[()] = b + b[()] = a + assert_raises(RecursionError, int, a) + # NumPy has no tp_traverse currently, so circular references + # cannot be detected. So resolve it: + a[()] = None + + # This was causing a to become like the above + a = np.array(0, dtype=object) + a[...] += 1 + assert_equal(a, 1) + + def test_object_array_nested(self): + # but is fine with a reference to a different array + a = np.array(0, dtype=object) + b = np.array(0, dtype=object) + a[()] = b + assert_equal(int(a), int(0)) + assert_equal(float(a), float(0)) + + def test_object_array_self_copy(self): + # An object array being copied into itself DECREF'ed before INCREF'ing + # causing segmentation faults (gh-3787) + a = np.array(object(), dtype=object) + np.copyto(a, a) + if HAS_REFCOUNT: + assert_(sys.getrefcount(a[()]) == 2) + a[()].__class__ # will segfault if object was deleted + + def test_zerosize_accumulate(self): + "Ticket #1733" + x = np.array([[42, 0]], dtype=np.uint32) + assert_equal(np.add.accumulate(x[:-1, 0]), []) + + def test_objectarray_setfield(self): + # Setfield should not overwrite Object fields with non-Object data + x = np.array([1, 2, 3], dtype=object) + assert_raises(TypeError, x.setfield, 4, np.int32, 0) + + def test_setting_rank0_string(self): + "Ticket #1736" + s1 = b"hello1" + s2 = b"hello2" + a = np.zeros((), dtype="S10") + a[()] = s1 + assert_equal(a, np.array(s1)) + a[()] = np.array(s2) + assert_equal(a, np.array(s2)) + + a = np.zeros((), dtype='f4') + a[()] = 3 + assert_equal(a, np.array(3)) + a[()] = np.array(4) + assert_equal(a, np.array(4)) + + def test_string_astype(self): + "Ticket #1748" + s1 = b'black' + s2 = b'white' + s3 = b'other' + a = np.array([[s1], [s2], [s3]]) + assert_equal(a.dtype, np.dtype('S5')) + b = a.astype(np.dtype('S0')) + assert_equal(b.dtype, np.dtype('S5')) + + def test_ticket_1756(self): + # Ticket #1756 + s = b'0123456789abcdef' + a = np.array([s]*5) + for i in range(1, 17): + a1 = np.array(a, "|S%d" % i) + a2 = np.array([s[:i]]*5) + assert_equal(a1, a2) + + def test_fields_strides(self): + "gh-2355" + r = np.frombuffer(b'abcdefghijklmnop'*4*3, dtype='i4,(2,3)u2') + assert_equal(r[0:3:2]['f1'], r['f1'][0:3:2]) + assert_equal(r[0:3:2]['f1'][0], r[0:3:2][0]['f1']) + assert_equal(r[0:3:2]['f1'][0][()], r[0:3:2][0]['f1'][()]) + assert_equal(r[0:3:2]['f1'][0].strides, r[0:3:2][0]['f1'].strides) + + def test_alignment_update(self): + # Check that alignment flag is updated on stride setting + a = np.arange(10) + assert_(a.flags.aligned) + a.strides = 3 + assert_(not a.flags.aligned) + + def test_ticket_1770(self): + "Should not segfault on python 3k" + import numpy as np + try: + a = np.zeros((1,), dtype=[('f1', 'f')]) + a['f1'] = 1 + a['f2'] = 1 + except ValueError: + pass + except Exception: + raise AssertionError + + def test_ticket_1608(self): + "x.flat shouldn't modify data" + x = np.array([[1, 2], [3, 4]]).T + np.array(x.flat) + assert_equal(x, [[1, 3], [2, 4]]) + + def test_pickle_string_overwrite(self): + import re + + data = np.array([1], dtype='b') + blob = pickle.dumps(data, protocol=1) + data = pickle.loads(blob) + + # Check that loads does not clobber interned strings + s = re.sub("a(.)", "\x01\\1", "a_") + assert_equal(s[0], "\x01") + data[0] = 0x6a + s = re.sub("a(.)", "\x01\\1", "a_") + assert_equal(s[0], "\x01") + + def test_pickle_bytes_overwrite(self): + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + data = np.array([1], dtype='b') + data = pickle.loads(pickle.dumps(data, protocol=proto)) + data[0] = 0x7d + bytestring = "\x01 ".encode('ascii') + assert_equal(bytestring[0:1], '\x01'.encode('ascii')) + + def test_pickle_py2_array_latin1_hack(self): + # Check that unpickling hacks in Py3 that support + # encoding='latin1' work correctly. + + # Python2 output for pickle.dumps(numpy.array([129], dtype='b')) + data = b"cnumpy.core.multiarray\n_reconstruct\np0\n(cnumpy\nndarray\np1\n(I0\ntp2\nS'b'\np3\ntp4\nRp5\n(I1\n(I1\ntp6\ncnumpy\ndtype\np7\n(S'i1'\np8\nI0\nI1\ntp9\nRp10\n(I3\nS'|'\np11\nNNNI-1\nI-1\nI0\ntp12\nbI00\nS'\\x81'\np13\ntp14\nb." # noqa + # This should work: + result = pickle.loads(data, encoding='latin1') + assert_array_equal(result, np.array([129]).astype('b')) + # Should not segfault: + assert_raises(Exception, pickle.loads, data, encoding='koi8-r') + + def test_pickle_py2_scalar_latin1_hack(self): + # Check that scalar unpickling hack in Py3 that supports + # encoding='latin1' work correctly. + + # Python2 output for pickle.dumps(...) + datas = [ + # (original, python2_pickle, koi8r_validity) + (np.str_('\u6bd2'), + b"cnumpy.core.multiarray\nscalar\np0\n(cnumpy\ndtype\np1\n(S'U1'\np2\nI0\nI1\ntp3\nRp4\n(I3\nS'<'\np5\nNNNI4\nI4\nI0\ntp6\nbS'\\xd2k\\x00\\x00'\np7\ntp8\nRp9\n.", # noqa + 'invalid'), + + (np.float64(9e123), + b"cnumpy.core.multiarray\nscalar\np0\n(cnumpy\ndtype\np1\n(S'f8'\np2\nI0\nI1\ntp3\nRp4\n(I3\nS'<'\np5\nNNNI-1\nI-1\nI0\ntp6\nbS'O\\x81\\xb7Z\\xaa:\\xabY'\np7\ntp8\nRp9\n.", # noqa + 'invalid'), + + # different 8-bit code point in KOI8-R vs latin1 + (np.bytes_(b'\x9c'), + b"cnumpy.core.multiarray\nscalar\np0\n(cnumpy\ndtype\np1\n(S'S1'\np2\nI0\nI1\ntp3\nRp4\n(I3\nS'|'\np5\nNNNI1\nI1\nI0\ntp6\nbS'\\x9c'\np7\ntp8\nRp9\n.", # noqa + 'different'), + ] + for original, data, koi8r_validity in datas: + result = pickle.loads(data, encoding='latin1') + assert_equal(result, original) + + # Decoding under non-latin1 encoding (e.g.) KOI8-R can + # produce bad results, but should not segfault. + if koi8r_validity == 'different': + # Unicode code points happen to lie within latin1, + # but are different in koi8-r, resulting to silent + # bogus results + result = pickle.loads(data, encoding='koi8-r') + assert_(result != original) + elif koi8r_validity == 'invalid': + # Unicode code points outside latin1, so results + # to an encoding exception + assert_raises( + ValueError, pickle.loads, data, encoding='koi8-r' + ) + else: + raise ValueError(koi8r_validity) + + def test_structured_type_to_object(self): + a_rec = np.array([(0, 1), (3, 2)], dtype='i4,i8') + a_obj = np.empty((2,), dtype=object) + a_obj[0] = (0, 1) + a_obj[1] = (3, 2) + # astype records -> object + assert_equal(a_rec.astype(object), a_obj) + # '=' records -> object + b = np.empty_like(a_obj) + b[...] = a_rec + assert_equal(b, a_obj) + # '=' object -> records + b = np.empty_like(a_rec) + b[...] = a_obj + assert_equal(b, a_rec) + + def test_assign_obj_listoflists(self): + # Ticket # 1870 + # The inner list should get assigned to the object elements + a = np.zeros(4, dtype=object) + b = a.copy() + a[0] = [1] + a[1] = [2] + a[2] = [3] + a[3] = [4] + b[...] = [[1], [2], [3], [4]] + assert_equal(a, b) + # The first dimension should get broadcast + a = np.zeros((2, 2), dtype=object) + a[...] = [[1, 2]] + assert_equal(a, [[1, 2], [1, 2]]) + + @pytest.mark.slow_pypy + def test_memoryleak(self): + # Ticket #1917 - ensure that array data doesn't leak + for i in range(1000): + # 100MB times 1000 would give 100GB of memory usage if it leaks + a = np.empty((100000000,), dtype='i1') + del a + + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_ufunc_reduce_memoryleak(self): + a = np.arange(6) + acnt = sys.getrefcount(a) + np.add.reduce(a) + assert_equal(sys.getrefcount(a), acnt) + + def test_search_sorted_invalid_arguments(self): + # Ticket #2021, should not segfault. + x = np.arange(0, 4, dtype='datetime64[D]') + assert_raises(TypeError, x.searchsorted, 1) + + def test_string_truncation(self): + # Ticket #1990 - Data can be truncated in creation of an array from a + # mixed sequence of numeric values and strings (gh-2583) + for val in [True, 1234, 123.4, complex(1, 234)]: + for tostr, dtype in [(asunicode, "U"), (asbytes, "S")]: + b = np.array([val, tostr('xx')], dtype=dtype) + assert_equal(tostr(b[0]), tostr(val)) + b = np.array([tostr('xx'), val], dtype=dtype) + assert_equal(tostr(b[1]), tostr(val)) + + # test also with longer strings + b = np.array([val, tostr('xxxxxxxxxx')], dtype=dtype) + assert_equal(tostr(b[0]), tostr(val)) + b = np.array([tostr('xxxxxxxxxx'), val], dtype=dtype) + assert_equal(tostr(b[1]), tostr(val)) + + def test_string_truncation_ucs2(self): + # Ticket #2081. Python compiled with two byte unicode + # can lead to truncation if itemsize is not properly + # adjusted for NumPy's four byte unicode. + a = np.array(['abcd']) + assert_equal(a.dtype.itemsize, 16) + + def test_unique_stable(self): + # Ticket #2063 must always choose stable sort for argsort to + # get consistent results + v = np.array(([0]*5 + [1]*6 + [2]*6)*4) + res = np.unique(v, return_index=True) + tgt = (np.array([0, 1, 2]), np.array([ 0, 5, 11])) + assert_equal(res, tgt) + + def test_unicode_alloc_dealloc_match(self): + # Ticket #1578, the mismatch only showed up when running + # python-debug for python versions >= 2.7, and then as + # a core dump and error message. + a = np.array(['abc'], dtype=np.str_)[0] + del a + + def test_refcount_error_in_clip(self): + # Ticket #1588 + a = np.zeros((2,), dtype='>i2').clip(min=0) + x = a + a + # This used to segfault: + y = str(x) + # Check the final string: + assert_(y == "[0 0]") + + def test_searchsorted_wrong_dtype(self): + # Ticket #2189, it used to segfault, so we check that it raises the + # proper exception. + a = np.array([('a', 1)], dtype='S1, int') + assert_raises(TypeError, np.searchsorted, a, 1.2) + # Ticket #2066, similar problem: + dtype = np.rec.format_parser(['i4', 'i4'], [], []) + a = np.recarray((2,), dtype) + a[...] = [(1, 2), (3, 4)] + assert_raises(TypeError, np.searchsorted, a, 1) + + def test_complex64_alignment(self): + # Issue gh-2668 (trac 2076), segfault on sparc due to misalignment + dtt = np.complex64 + arr = np.arange(10, dtype=dtt) + # 2D array + arr2 = np.reshape(arr, (2, 5)) + # Fortran write followed by (C or F) read caused bus error + data_str = arr2.tobytes('F') + data_back = np.ndarray(arr2.shape, + arr2.dtype, + buffer=data_str, + order='F') + assert_array_equal(arr2, data_back) + + def test_structured_count_nonzero(self): + arr = np.array([0, 1]).astype('i4, 2i4')[:1] + count = np.count_nonzero(arr) + assert_equal(count, 0) + + def test_copymodule_preserves_f_contiguity(self): + a = np.empty((2, 2), order='F') + b = copy.copy(a) + c = copy.deepcopy(a) + assert_(b.flags.fortran) + assert_(b.flags.f_contiguous) + assert_(c.flags.fortran) + assert_(c.flags.f_contiguous) + + def test_fortran_order_buffer(self): + import numpy as np + a = np.array([['Hello', 'Foob']], dtype='U5', order='F') + arr = np.ndarray(shape=[1, 2, 5], dtype='U1', buffer=a) + arr2 = np.array([[['H', 'e', 'l', 'l', 'o'], + ['F', 'o', 'o', 'b', '']]]) + assert_array_equal(arr, arr2) + + def test_assign_from_sequence_error(self): + # Ticket #4024. + arr = np.array([1, 2, 3]) + assert_raises(ValueError, arr.__setitem__, slice(None), [9, 9]) + arr.__setitem__(slice(None), [9]) + assert_equal(arr, [9, 9, 9]) + + def test_format_on_flex_array_element(self): + # Ticket #4369. + dt = np.dtype([('date', ' 0: + # unpickling ndarray goes through _frombuffer for protocol 5 + assert b'numpy._core.numeric' in s + else: + assert b'numpy._core.multiarray' in s + + def test_object_casting_errors(self): + # gh-11993 update to ValueError (see gh-16909), since strings can in + # principle be converted to complex, but this string cannot. + arr = np.array(['AAAAA', 18465886.0, 18465886.0], dtype=object) + assert_raises(ValueError, arr.astype, 'c8') + + def test_eff1d_casting(self): + # gh-12711 + x = np.array([1, 2, 4, 7, 0], dtype=np.int16) + res = np.ediff1d(x, to_begin=-99, to_end=np.array([88, 99])) + assert_equal(res, [-99, 1, 2, 3, -7, 88, 99]) + + # The use of safe casting means, that 1<<20 is cast unsafely, an + # error may be better, but currently there is no mechanism for it. + res = np.ediff1d(x, to_begin=(1<<20), to_end=(1<<20)) + assert_equal(res, [0, 1, 2, 3, -7, 0]) + + def test_pickle_datetime64_array(self): + # gh-12745 (would fail with pickle5 installed) + d = np.datetime64('2015-07-04 12:59:59.50', 'ns') + arr = np.array([d]) + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + dumped = pickle.dumps(arr, protocol=proto) + assert_equal(pickle.loads(dumped), arr) + + def test_bad_array_interface(self): + class T: + __array_interface__ = {} + + with assert_raises(ValueError): + np.array([T()]) + + def test_2d__array__shape(self): + class T: + def __array__(self, dtype=None, copy=None): + return np.ndarray(shape=(0,0)) + + # Make sure __array__ is used instead of Sequence methods. + def __iter__(self): + return iter([]) + + def __getitem__(self, idx): + raise AssertionError("__getitem__ was called") + + def __len__(self): + return 0 + + + t = T() + # gh-13659, would raise in broadcasting [x=t for x in result] + arr = np.array([t]) + assert arr.shape == (1, 0, 0) + + @pytest.mark.skipif(sys.maxsize < 2 ** 31 + 1, reason='overflows 32-bit python') + def test_to_ctypes(self): + #gh-14214 + arr = np.zeros((2 ** 31 + 1,), 'b') + assert arr.size * arr.itemsize > 2 ** 31 + c_arr = np.ctypeslib.as_ctypes(arr) + assert_equal(c_arr._length_, arr.size) + + def test_complex_conversion_error(self): + # gh-17068 + with pytest.raises(TypeError, match=r"Unable to convert dtype.*"): + complex(np.array("now", np.datetime64)) + + def test__array_interface__descr(self): + # gh-17068 + dt = np.dtype(dict(names=['a', 'b'], + offsets=[0, 0], + formats=[np.int64, np.int64])) + descr = np.array((1, 1), dtype=dt).__array_interface__['descr'] + assert descr == [('', '|V8')] # instead of [(b'', '|V8')] + + @pytest.mark.skipif(sys.maxsize < 2 ** 31 + 1, reason='overflows 32-bit python') + @requires_memory(free_bytes=9e9) + def test_dot_big_stride(self): + # gh-17111 + # blas stride = stride//itemsize > int32 max + int32_max = np.iinfo(np.int32).max + n = int32_max + 3 + a = np.empty([n], dtype=np.float32) + b = a[::n-1] + b[...] = 1 + assert b.strides[0] > int32_max * b.dtype.itemsize + assert np.dot(b, b) == 2.0 + + def test_frompyfunc_name(self): + # name conversion was failing for python 3 strings + # resulting in the default '?' name. Also test utf-8 + # encoding using non-ascii name. + def cassé(x): + return x + + f = np.frompyfunc(cassé, 1, 1) + assert str(f) == "" + + @pytest.mark.parametrize("operation", [ + 'add', 'subtract', 'multiply', 'floor_divide', + 'conjugate', 'fmod', 'square', 'reciprocal', + 'power', 'absolute', 'negative', 'positive', + 'greater', 'greater_equal', 'less', + 'less_equal', 'equal', 'not_equal', 'logical_and', + 'logical_not', 'logical_or', 'bitwise_and', 'bitwise_or', + 'bitwise_xor', 'invert', 'left_shift', 'right_shift', + 'gcd', 'lcm' + ] + ) + @pytest.mark.parametrize("order", [ + ('b->', 'B->'), + ('h->', 'H->'), + ('i->', 'I->'), + ('l->', 'L->'), + ('q->', 'Q->'), + ] + ) + def test_ufunc_order(self, operation, order): + # gh-18075 + # Ensure signed types before unsigned + def get_idx(string, str_lst): + for i, s in enumerate(str_lst): + if string in s: + return i + raise ValueError(f"{string} not in list") + types = getattr(np, operation).types + assert get_idx(order[0], types) < get_idx(order[1], types), ( + f"Unexpected types order of ufunc in {operation}" + f"for {order}. Possible fix: Use signed before unsigned" + "in generate_umath.py") + + def test_nonbool_logical(self): + # gh-22845 + # create two arrays with bit patterns that do not overlap. + # needs to be large enough to test both SIMD and scalar paths + size = 100 + a = np.frombuffer(b'\x01' * size, dtype=np.bool) + b = np.frombuffer(b'\x80' * size, dtype=np.bool) + expected = np.ones(size, dtype=np.bool) + assert_array_equal(np.logical_and(a, b), expected) + + @pytest.mark.skipif(IS_PYPY, reason="PyPy issue 2742") + def test_gh_23737(self): + with pytest.raises(TypeError, match="not an acceptable base type"): + class Y(np.flexible): + pass + + with pytest.raises(TypeError, match="not an acceptable base type"): + class X(np.flexible, np.ma.core.MaskedArray): + pass + + def test_load_ufunc_pickle(self): + # ufuncs are pickled with a semi-private path in + # numpy.core._multiarray_umath and must be loadable without warning + # despite np.core being deprecated. + test_data = b'\x80\x04\x95(\x00\x00\x00\x00\x00\x00\x00\x8c\x1cnumpy.core._multiarray_umath\x94\x8c\x03add\x94\x93\x94.' # noqa + result = pickle.loads(test_data, encoding='bytes') + assert result is np.add + + def test__array_namespace__(self): + arr = np.arange(2) + + xp = arr.__array_namespace__() + assert xp is np + xp = arr.__array_namespace__(api_version="2021.12") + assert xp is np + xp = arr.__array_namespace__(api_version="2022.12") + assert xp is np + xp = arr.__array_namespace__(api_version="2023.12") + assert xp is np + xp = arr.__array_namespace__(api_version=None) + assert xp is np + + with pytest.raises( + ValueError, + match="Version \"2024.12\" of the Array API Standard " + "is not supported." + ): + arr.__array_namespace__(api_version="2024.12") + + with pytest.raises( + ValueError, + match="Only None and strings are allowed as the Array API version" + ): + arr.__array_namespace__(api_version=2023) + + def test_isin_refcnt_bug(self): + # gh-25295 + for _ in range(1000): + np.isclose(np.int64(2), np.int64(2), atol=1e-15, rtol=1e-300) + + def test_replace_regression(self): + # gh-25513 segfault + carr = np.char.chararray((2,), itemsize=25) + test_strings = [b' 4.52173913043478315E+00', + b' 4.95652173913043548E+00'] + carr[:] = test_strings + out = carr.replace(b"E", b"D") + expected = np.char.chararray((2,), itemsize=25) + expected[:] = [s.replace(b"E", b"D") for s in test_strings] + assert_array_equal(out, expected) + + def test_logspace_base_does_not_determine_dtype(self): + # gh-24957 and cupy/cupy/issues/7946 + start = np.array([0, 2], dtype=np.float16) + stop = np.array([2, 0], dtype=np.float16) + out = np.logspace(start, stop, num=5, axis=1, dtype=np.float32) + expected = np.array([[1., 3.1621094, 10., 31.625, 100.], + [100., 31.625, 10., 3.1621094, 1.]], + dtype=np.float32) + assert_almost_equal(out, expected) + # Check test fails if the calculation is done in float64, as happened + # before when a python float base incorrectly influenced the dtype. + out2 = np.logspace(start, stop, num=5, axis=1, dtype=np.float32, + base=np.array([10.0])) + with pytest.raises(AssertionError, match="not almost equal"): + assert_almost_equal(out2, expected) + + def test_vectorize_fixed_width_string(self): + arr = np.array(["SOme wOrd DŽ ß ᾛ ΣΣ ffi⁵Å Ç Ⅰ"]).astype(np.str_) + f = str.casefold + res = np.vectorize(f, otypes=[arr.dtype])(arr) + assert res.dtype == "U30" + + def test_repeated_square_consistency(self): + # gh-26940 + buf = np.array([-5.171866611150749e-07 + 2.5618634555957426e-07j, + 0, 0, 0, 0, 0]) + # Test buffer with regular and reverse strides + for in_vec in [buf[:3], buf[:3][::-1]]: + expected_res = np.square(in_vec) + # Output vector immediately follows input vector + # to reproduce off-by-one in nomemoverlap check. + for res in [buf[3:], buf[3:][::-1]]: + res = buf[3:] + np.square(in_vec, out=res) + assert_equal(res, expected_res) + + def test_sort_unique_crash(self): + # gh-27037 + for _ in range(4): + vals = np.linspace(0, 1, num=128) + data = np.broadcast_to(vals, (128, 128, 128)) + data = data.transpose(0, 2, 1).copy() + np.unique(data) + + def test_sort_overlap(self): + # gh-27273 + size = 100 + inp = np.linspace(0, size, num=size, dtype=np.intc) + out = np.sort(inp) + assert_equal(inp, out) + + def test_searchsorted_structured(self): + # gh-28190 + x = np.array([(0, 1.)], dtype=[('time', ' None: + cls = np.dtype(code).type + value = cls(str_value) + assert not value.is_integer() + + @pytest.mark.parametrize( + "code", np.typecodes["Float"] + np.typecodes["AllInteger"] + ) + def test_true(self, code: str) -> None: + float_array = np.arange(-5, 5).astype(code) + for value in float_array: + assert value.is_integer() + + @pytest.mark.parametrize("code", np.typecodes["Float"]) + def test_false(self, code: str) -> None: + float_array = np.arange(-5, 5).astype(code) + float_array *= 1.1 + for value in float_array: + if value == 0: + continue + assert not value.is_integer() + + +class TestClassGetItem: + @pytest.mark.parametrize("cls", [ + np.number, + np.integer, + np.inexact, + np.unsignedinteger, + np.signedinteger, + np.floating, + ]) + def test_abc(self, cls: Type[np.number]) -> None: + alias = cls[Any] + assert isinstance(alias, types.GenericAlias) + assert alias.__origin__ is cls + + def test_abc_complexfloating(self) -> None: + alias = np.complexfloating[Any, Any] + assert isinstance(alias, types.GenericAlias) + assert alias.__origin__ is np.complexfloating + + @pytest.mark.parametrize("arg_len", range(4)) + def test_abc_complexfloating_subscript_tuple(self, arg_len: int) -> None: + arg_tup = (Any,) * arg_len + if arg_len in (1, 2): + assert np.complexfloating[arg_tup] + else: + match = f"Too {'few' if arg_len == 0 else 'many'} arguments" + with pytest.raises(TypeError, match=match): + np.complexfloating[arg_tup] + + @pytest.mark.parametrize("cls", [np.generic, np.flexible, np.character]) + def test_abc_non_numeric(self, cls: Type[np.generic]) -> None: + with pytest.raises(TypeError): + cls[Any] + + @pytest.mark.parametrize("code", np.typecodes["All"]) + def test_concrete(self, code: str) -> None: + cls = np.dtype(code).type + with pytest.raises(TypeError): + cls[Any] + + @pytest.mark.parametrize("arg_len", range(4)) + def test_subscript_tuple(self, arg_len: int) -> None: + arg_tup = (Any,) * arg_len + if arg_len == 1: + assert np.number[arg_tup] + else: + with pytest.raises(TypeError): + np.number[arg_tup] + + def test_subscript_scalar(self) -> None: + assert np.number[Any] + + +class TestBitCount: + # derived in part from the cpython test "test_bit_count" + + @pytest.mark.parametrize("itype", sctypes['int']+sctypes['uint']) + def test_small(self, itype): + for a in range(max(np.iinfo(itype).min, 0), 128): + msg = f"Smoke test for {itype}({a}).bit_count()" + assert itype(a).bit_count() == bin(a).count("1"), msg + + def test_bit_count(self): + for exp in [10, 17, 63]: + a = 2**exp + assert np.uint64(a).bit_count() == 1 + assert np.uint64(a - 1).bit_count() == exp + assert np.uint64(a ^ 63).bit_count() == 7 + assert np.uint64((a - 1) ^ 510).bit_count() == exp - 8 + + +class TestDevice: + """ + Test scalar.device attribute and scalar.to_device() method. + """ + scalars = [np.bool(True), np.int64(1), np.uint64(1), np.float64(1.0), + np.complex128(1+1j)] + + @pytest.mark.parametrize("scalar", scalars) + def test_device(self, scalar): + assert scalar.device == "cpu" + + @pytest.mark.parametrize("scalar", scalars) + def test_to_device(self, scalar): + assert scalar.to_device("cpu") is scalar + + @pytest.mark.parametrize("scalar", scalars) + def test___array_namespace__(self, scalar): + assert scalar.__array_namespace__() is np + + +@pytest.mark.parametrize("scalar", [np.bool(True), np.int8(1), np.float64(1)]) +def test_array_wrap(scalar): + # Test scalars array wrap as long as it exists. NumPy itself should + # probably not use it, so it may not be necessary to keep it around. + + arr0d = np.array(3, dtype=np.int8) + # Third argument not passed, None, or True "decays" to scalar. + # (I don't think NumPy would pass `None`, but it seems clear to support) + assert type(scalar.__array_wrap__(arr0d)) is np.int8 + assert type(scalar.__array_wrap__(arr0d, None, None)) is np.int8 + assert type(scalar.__array_wrap__(arr0d, None, True)) is np.int8 + + # Otherwise, result should be the input + assert scalar.__array_wrap__(arr0d, None, False) is arr0d + + # An old bug. A non 0-d array cannot be converted to scalar: + arr1d = np.array([3], dtype=np.int8) + assert scalar.__array_wrap__(arr1d) is arr1d + assert scalar.__array_wrap__(arr1d, None, True) is arr1d diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarbuffer.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarbuffer.py new file mode 100644 index 0000000000000000000000000000000000000000..26cf39530f65e25d87937516280c690cb65fa818 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarbuffer.py @@ -0,0 +1,153 @@ +""" +Test scalar buffer interface adheres to PEP 3118 +""" +import numpy as np +from numpy._core._rational_tests import rational +from numpy._core._multiarray_tests import get_buffer_info +import pytest + +from numpy.testing import assert_, assert_equal, assert_raises + +# PEP3118 format strings for native (standard alignment and byteorder) types +scalars_and_codes = [ + (np.bool, '?'), + (np.byte, 'b'), + (np.short, 'h'), + (np.intc, 'i'), + (np.long, 'l'), + (np.longlong, 'q'), + (np.ubyte, 'B'), + (np.ushort, 'H'), + (np.uintc, 'I'), + (np.ulong, 'L'), + (np.ulonglong, 'Q'), + (np.half, 'e'), + (np.single, 'f'), + (np.double, 'd'), + (np.longdouble, 'g'), + (np.csingle, 'Zf'), + (np.cdouble, 'Zd'), + (np.clongdouble, 'Zg'), +] +scalars_only, codes_only = zip(*scalars_and_codes) + + +class TestScalarPEP3118: + + @pytest.mark.parametrize('scalar', scalars_only, ids=codes_only) + def test_scalar_match_array(self, scalar): + x = scalar() + a = np.array([], dtype=np.dtype(scalar)) + mv_x = memoryview(x) + mv_a = memoryview(a) + assert_equal(mv_x.format, mv_a.format) + + @pytest.mark.parametrize('scalar', scalars_only, ids=codes_only) + def test_scalar_dim(self, scalar): + x = scalar() + mv_x = memoryview(x) + assert_equal(mv_x.itemsize, np.dtype(scalar).itemsize) + assert_equal(mv_x.ndim, 0) + assert_equal(mv_x.shape, ()) + assert_equal(mv_x.strides, ()) + assert_equal(mv_x.suboffsets, ()) + + @pytest.mark.parametrize('scalar, code', scalars_and_codes, ids=codes_only) + def test_scalar_code_and_properties(self, scalar, code): + x = scalar() + expected = dict(strides=(), itemsize=x.dtype.itemsize, ndim=0, + shape=(), format=code, readonly=True) + + mv_x = memoryview(x) + assert self._as_dict(mv_x) == expected + + @pytest.mark.parametrize('scalar', scalars_only, ids=codes_only) + def test_scalar_buffers_readonly(self, scalar): + x = scalar() + with pytest.raises(BufferError, match="scalar buffer is readonly"): + get_buffer_info(x, ["WRITABLE"]) + + def test_void_scalar_structured_data(self): + dt = np.dtype([('name', np.str_, 16), ('grades', np.float64, (2,))]) + x = np.array(('ndarray_scalar', (1.2, 3.0)), dtype=dt)[()] + assert_(isinstance(x, np.void)) + mv_x = memoryview(x) + expected_size = 16 * np.dtype((np.str_, 1)).itemsize + expected_size += 2 * np.dtype(np.float64).itemsize + assert_equal(mv_x.itemsize, expected_size) + assert_equal(mv_x.ndim, 0) + assert_equal(mv_x.shape, ()) + assert_equal(mv_x.strides, ()) + assert_equal(mv_x.suboffsets, ()) + + # check scalar format string against ndarray format string + a = np.array([('Sarah', (8.0, 7.0)), ('John', (6.0, 7.0))], dtype=dt) + assert_(isinstance(a, np.ndarray)) + mv_a = memoryview(a) + assert_equal(mv_x.itemsize, mv_a.itemsize) + assert_equal(mv_x.format, mv_a.format) + + # Check that we do not allow writeable buffer export (technically + # we could allow it sometimes here...) + with pytest.raises(BufferError, match="scalar buffer is readonly"): + get_buffer_info(x, ["WRITABLE"]) + + def _as_dict(self, m): + return dict(strides=m.strides, shape=m.shape, itemsize=m.itemsize, + ndim=m.ndim, format=m.format, readonly=m.readonly) + + def test_datetime_memoryview(self): + # gh-11656 + # Values verified with v1.13.3, shape is not () as in test_scalar_dim + + dt1 = np.datetime64('2016-01-01') + dt2 = np.datetime64('2017-01-01') + expected = dict(strides=(1,), itemsize=1, ndim=1, shape=(8,), + format='B', readonly=True) + v = memoryview(dt1) + assert self._as_dict(v) == expected + + v = memoryview(dt2 - dt1) + assert self._as_dict(v) == expected + + dt = np.dtype([('a', 'uint16'), ('b', 'M8[s]')]) + a = np.empty(1, dt) + # Fails to create a PEP 3118 valid buffer + assert_raises((ValueError, BufferError), memoryview, a[0]) + + # Check that we do not allow writeable buffer export + with pytest.raises(BufferError, match="scalar buffer is readonly"): + get_buffer_info(dt1, ["WRITABLE"]) + + @pytest.mark.parametrize('s', [ + pytest.param("\x32\x32", id="ascii"), + pytest.param("\uFE0F\uFE0F", id="basic multilingual"), + pytest.param("\U0001f4bb\U0001f4bb", id="non-BMP"), + ]) + def test_str_ucs4(self, s): + s = np.str_(s) # only our subclass implements the buffer protocol + + # all the same, characters always encode as ucs4 + expected = dict(strides=(), itemsize=8, ndim=0, shape=(), format='2w', + readonly=True) + + v = memoryview(s) + assert self._as_dict(v) == expected + + # integers of the paltform-appropriate endianness + code_points = np.frombuffer(v, dtype='i4') + + assert_equal(code_points, [ord(c) for c in s]) + + # Check that we do not allow writeable buffer export + with pytest.raises(BufferError, match="scalar buffer is readonly"): + get_buffer_info(s, ["WRITABLE"]) + + def test_user_scalar_fails_buffer(self): + r = rational(1) + with assert_raises(TypeError): + memoryview(r) + + # Check that we do not allow writeable buffer export + with pytest.raises(BufferError, match="scalar buffer is readonly"): + get_buffer_info(r, ["WRITABLE"]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarinherit.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarinherit.py new file mode 100644 index 0000000000000000000000000000000000000000..6693389ac826f568b2d2a3f566576c95758c1bf1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarinherit.py @@ -0,0 +1,105 @@ +""" Test printing of scalar types. + +""" +import pytest + +import numpy as np +from numpy.testing import assert_, assert_raises + + +class A: + pass +class B(A, np.float64): + pass + +class C(B): + pass +class D(C, B): + pass + +class B0(np.float64, A): + pass +class C0(B0): + pass + +class HasNew: + def __new__(cls, *args, **kwargs): + return cls, args, kwargs + +class B1(np.float64, HasNew): + pass + + +class TestInherit: + def test_init(self): + x = B(1.0) + assert_(str(x) == '1.0') + y = C(2.0) + assert_(str(y) == '2.0') + z = D(3.0) + assert_(str(z) == '3.0') + + def test_init2(self): + x = B0(1.0) + assert_(str(x) == '1.0') + y = C0(2.0) + assert_(str(y) == '2.0') + + def test_gh_15395(self): + # HasNew is the second base, so `np.float64` should have priority + x = B1(1.0) + assert_(str(x) == '1.0') + + # previously caused RecursionError!? + with pytest.raises(TypeError): + B1(1.0, 2.0) + + def test_int_repr(self): + # Test that integer repr works correctly for subclasses (gh-27106) + class my_int16(np.int16): + pass + + s = repr(my_int16(3)) + assert s == "my_int16(3)" + +class TestCharacter: + def test_char_radd(self): + # GH issue 9620, reached gentype_add and raise TypeError + np_s = np.bytes_('abc') + np_u = np.str_('abc') + s = b'def' + u = 'def' + assert_(np_s.__radd__(np_s) is NotImplemented) + assert_(np_s.__radd__(np_u) is NotImplemented) + assert_(np_s.__radd__(s) is NotImplemented) + assert_(np_s.__radd__(u) is NotImplemented) + assert_(np_u.__radd__(np_s) is NotImplemented) + assert_(np_u.__radd__(np_u) is NotImplemented) + assert_(np_u.__radd__(s) is NotImplemented) + assert_(np_u.__radd__(u) is NotImplemented) + assert_(s + np_s == b'defabc') + assert_(u + np_u == 'defabc') + + class MyStr(str, np.generic): + # would segfault + pass + + with assert_raises(TypeError): + # Previously worked, but gave completely wrong result + ret = s + MyStr('abc') + + class MyBytes(bytes, np.generic): + # would segfault + pass + + ret = s + MyBytes(b'abc') + assert(type(ret) is type(s)) + assert ret == b"defabc" + + def test_char_repeat(self): + np_s = np.bytes_('abc') + np_u = np.str_('abc') + res_s = b'abc' * 5 + res_u = 'abc' * 5 + assert_(np_s * 5 == res_s) + assert_(np_u * 5 == res_u) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarmath.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarmath.py new file mode 100644 index 0000000000000000000000000000000000000000..63950bb90a92d85f350dd8149adaf6745eab220f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarmath.py @@ -0,0 +1,1165 @@ +import contextlib +import sys +import warnings +import itertools +import operator +import platform +from numpy._utils import _pep440 +import pytest +from hypothesis import given, settings +from hypothesis.strategies import sampled_from +from hypothesis.extra import numpy as hynp + +import numpy as np +from numpy.exceptions import ComplexWarning +from numpy._core._rational_tests import rational +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_almost_equal, + assert_array_equal, IS_PYPY, suppress_warnings, _gen_alignment_data, + assert_warns, check_support_sve, + ) + +types = [np.bool, np.byte, np.ubyte, np.short, np.ushort, np.intc, np.uintc, + np.int_, np.uint, np.longlong, np.ulonglong, + np.single, np.double, np.longdouble, np.csingle, + np.cdouble, np.clongdouble] + +floating_types = np.floating.__subclasses__() +complex_floating_types = np.complexfloating.__subclasses__() + +objecty_things = [object(), None, np.array(None, dtype=object)] + +binary_operators_for_scalars = [ + operator.lt, operator.le, operator.eq, operator.ne, operator.ge, + operator.gt, operator.add, operator.floordiv, operator.mod, + operator.mul, operator.pow, operator.sub, operator.truediv +] +binary_operators_for_scalar_ints = binary_operators_for_scalars + [ + operator.xor, operator.or_, operator.and_ +] + + +# This compares scalarmath against ufuncs. + +class TestTypes: + def test_types(self): + for atype in types: + a = atype(1) + assert_(a == 1, "error with %r: got %r" % (atype, a)) + + def test_type_add(self): + # list of types + for k, atype in enumerate(types): + a_scalar = atype(3) + a_array = np.array([3], dtype=atype) + for l, btype in enumerate(types): + b_scalar = btype(1) + b_array = np.array([1], dtype=btype) + c_scalar = a_scalar + b_scalar + c_array = a_array + b_array + # It was comparing the type numbers, but the new ufunc + # function-finding mechanism finds the lowest function + # to which both inputs can be cast - which produces 'l' + # when you do 'q' + 'b'. The old function finding mechanism + # skipped ahead based on the first argument, but that + # does not produce properly symmetric results... + assert_equal(c_scalar.dtype, c_array.dtype, + "error with types (%d/'%c' + %d/'%c')" % + (k, np.dtype(atype).char, l, np.dtype(btype).char)) + + def test_type_create(self): + for k, atype in enumerate(types): + a = np.array([1, 2, 3], atype) + b = atype([1, 2, 3]) + assert_equal(a, b) + + def test_leak(self): + # test leak of scalar objects + # a leak would show up in valgrind as still-reachable of ~2.6MB + for i in range(200000): + np.add(1, 1) + + +def check_ufunc_scalar_equivalence(op, arr1, arr2): + scalar1 = arr1[()] + scalar2 = arr2[()] + assert isinstance(scalar1, np.generic) + assert isinstance(scalar2, np.generic) + + if arr1.dtype.kind == "c" or arr2.dtype.kind == "c": + comp_ops = {operator.ge, operator.gt, operator.le, operator.lt} + if op in comp_ops and (np.isnan(scalar1) or np.isnan(scalar2)): + pytest.xfail("complex comp ufuncs use sort-order, scalars do not.") + if op == operator.pow and arr2.item() in [-1, 0, 0.5, 1, 2]: + # array**scalar special case can have different result dtype + # (Other powers may have issues also, but are not hit here.) + # TODO: It would be nice to resolve this issue. + pytest.skip("array**2 can have incorrect/weird result dtype") + + # ignore fpe's since they may just mismatch for integers anyway. + with warnings.catch_warnings(), np.errstate(all="ignore"): + # Comparisons DeprecationWarnings replacing errors (2022-03): + warnings.simplefilter("error", DeprecationWarning) + try: + res = op(arr1, arr2) + except Exception as e: + with pytest.raises(type(e)): + op(scalar1, scalar2) + else: + scalar_res = op(scalar1, scalar2) + assert_array_equal(scalar_res, res, strict=True) + + +@pytest.mark.slow +@settings(max_examples=10000, deadline=2000) +@given(sampled_from(binary_operators_for_scalars), + hynp.arrays(dtype=hynp.scalar_dtypes(), shape=()), + hynp.arrays(dtype=hynp.scalar_dtypes(), shape=())) +def test_array_scalar_ufunc_equivalence(op, arr1, arr2): + """ + This is a thorough test attempting to cover important promotion paths + and ensuring that arrays and scalars stay as aligned as possible. + However, if it creates troubles, it should maybe just be removed. + """ + check_ufunc_scalar_equivalence(op, arr1, arr2) + + +@pytest.mark.slow +@given(sampled_from(binary_operators_for_scalars), + hynp.scalar_dtypes(), hynp.scalar_dtypes()) +def test_array_scalar_ufunc_dtypes(op, dt1, dt2): + # Same as above, but don't worry about sampling weird values so that we + # do not have to sample as much + arr1 = np.array(2, dtype=dt1) + arr2 = np.array(3, dtype=dt2) # some power do weird things. + + check_ufunc_scalar_equivalence(op, arr1, arr2) + + +@pytest.mark.parametrize("fscalar", [np.float16, np.float32]) +def test_int_float_promotion_truediv(fscalar): + # Promotion for mixed int and float32/float16 must not go to float64 + i = np.int8(1) + f = fscalar(1) + expected = np.result_type(i, f) + assert (i / f).dtype == expected + assert (f / i).dtype == expected + # But normal int / int true division goes to float64: + assert (i / i).dtype == np.dtype("float64") + # For int16, result has to be ast least float32 (takes ufunc path): + assert (np.int16(1) / f).dtype == np.dtype("float32") + + +class TestBaseMath: + @pytest.mark.xfail(check_support_sve(), reason="gh-22982") + def test_blocked(self): + # test alignments offsets for simd instructions + # alignments for vz + 2 * (vs - 1) + 1 + for dt, sz in [(np.float32, 11), (np.float64, 7), (np.int32, 11)]: + for out, inp1, inp2, msg in _gen_alignment_data(dtype=dt, + type='binary', + max_size=sz): + exp1 = np.ones_like(inp1) + inp1[...] = np.ones_like(inp1) + inp2[...] = np.zeros_like(inp2) + assert_almost_equal(np.add(inp1, inp2), exp1, err_msg=msg) + assert_almost_equal(np.add(inp1, 2), exp1 + 2, err_msg=msg) + assert_almost_equal(np.add(1, inp2), exp1, err_msg=msg) + + np.add(inp1, inp2, out=out) + assert_almost_equal(out, exp1, err_msg=msg) + + inp2[...] += np.arange(inp2.size, dtype=dt) + 1 + assert_almost_equal(np.square(inp2), + np.multiply(inp2, inp2), err_msg=msg) + # skip true divide for ints + if dt != np.int32: + assert_almost_equal(np.reciprocal(inp2), + np.divide(1, inp2), err_msg=msg) + + inp1[...] = np.ones_like(inp1) + np.add(inp1, 2, out=out) + assert_almost_equal(out, exp1 + 2, err_msg=msg) + inp2[...] = np.ones_like(inp2) + np.add(2, inp2, out=out) + assert_almost_equal(out, exp1 + 2, err_msg=msg) + + def test_lower_align(self): + # check data that is not aligned to element size + # i.e doubles are aligned to 4 bytes on i386 + d = np.zeros(23 * 8, dtype=np.int8)[4:-4].view(np.float64) + o = np.zeros(23 * 8, dtype=np.int8)[4:-4].view(np.float64) + assert_almost_equal(d + d, d * 2) + np.add(d, d, out=o) + np.add(np.ones_like(d), d, out=o) + np.add(d, np.ones_like(d), out=o) + np.add(np.ones_like(d), d) + np.add(d, np.ones_like(d)) + + +class TestPower: + def test_small_types(self): + for t in [np.int8, np.int16, np.float16]: + a = t(3) + b = a ** 4 + assert_(b == 81, "error with %r: got %r" % (t, b)) + + def test_large_types(self): + for t in [np.int32, np.int64, np.float32, np.float64, np.longdouble]: + a = t(51) + b = a ** 4 + msg = "error with %r: got %r" % (t, b) + if np.issubdtype(t, np.integer): + assert_(b == 6765201, msg) + else: + assert_almost_equal(b, 6765201, err_msg=msg) + + def test_integers_to_negative_integer_power(self): + # Note that the combination of uint64 with a signed integer + # has common type np.float64. The other combinations should all + # raise a ValueError for integer ** negative integer. + exp = [np.array(-1, dt)[()] for dt in 'bhilq'] + + # 1 ** -1 possible special case + base = [np.array(1, dt)[()] for dt in 'bhilqBHILQ'] + for i1, i2 in itertools.product(base, exp): + if i1.dtype != np.uint64: + assert_raises(ValueError, operator.pow, i1, i2) + else: + res = operator.pow(i1, i2) + assert_(res.dtype.type is np.float64) + assert_almost_equal(res, 1.) + + # -1 ** -1 possible special case + base = [np.array(-1, dt)[()] for dt in 'bhilq'] + for i1, i2 in itertools.product(base, exp): + if i1.dtype != np.uint64: + assert_raises(ValueError, operator.pow, i1, i2) + else: + res = operator.pow(i1, i2) + assert_(res.dtype.type is np.float64) + assert_almost_equal(res, -1.) + + # 2 ** -1 perhaps generic + base = [np.array(2, dt)[()] for dt in 'bhilqBHILQ'] + for i1, i2 in itertools.product(base, exp): + if i1.dtype != np.uint64: + assert_raises(ValueError, operator.pow, i1, i2) + else: + res = operator.pow(i1, i2) + assert_(res.dtype.type is np.float64) + assert_almost_equal(res, .5) + + def test_mixed_types(self): + typelist = [np.int8, np.int16, np.float16, + np.float32, np.float64, np.int8, + np.int16, np.int32, np.int64] + for t1 in typelist: + for t2 in typelist: + a = t1(3) + b = t2(2) + result = a**b + msg = ("error with %r and %r:" + "got %r, expected %r") % (t1, t2, result, 9) + if np.issubdtype(np.dtype(result), np.integer): + assert_(result == 9, msg) + else: + assert_almost_equal(result, 9, err_msg=msg) + + def test_modular_power(self): + # modular power is not implemented, so ensure it errors + a = 5 + b = 4 + c = 10 + expected = pow(a, b, c) # noqa: F841 + for t in (np.int32, np.float32, np.complex64): + # note that 3-operand power only dispatches on the first argument + assert_raises(TypeError, operator.pow, t(a), b, c) + assert_raises(TypeError, operator.pow, np.array(t(a)), b, c) + + +def floordiv_and_mod(x, y): + return (x // y, x % y) + + +def _signs(dt): + if dt in np.typecodes['UnsignedInteger']: + return (+1,) + else: + return (+1, -1) + + +class TestModulus: + + def test_modulus_basic(self): + dt = np.typecodes['AllInteger'] + np.typecodes['Float'] + for op in [floordiv_and_mod, divmod]: + for dt1, dt2 in itertools.product(dt, dt): + for sg1, sg2 in itertools.product(_signs(dt1), _signs(dt2)): + fmt = 'op: %s, dt1: %s, dt2: %s, sg1: %s, sg2: %s' + msg = fmt % (op.__name__, dt1, dt2, sg1, sg2) + a = np.array(sg1*71, dtype=dt1)[()] + b = np.array(sg2*19, dtype=dt2)[()] + div, rem = op(a, b) + assert_equal(div*b + rem, a, err_msg=msg) + if sg2 == -1: + assert_(b < rem <= 0, msg) + else: + assert_(b > rem >= 0, msg) + + def test_float_modulus_exact(self): + # test that float results are exact for small integers. This also + # holds for the same integers scaled by powers of two. + nlst = list(range(-127, 0)) + plst = list(range(1, 128)) + dividend = nlst + [0] + plst + divisor = nlst + plst + arg = list(itertools.product(dividend, divisor)) + tgt = list(divmod(*t) for t in arg) + + a, b = np.array(arg, dtype=int).T + # convert exact integer results from Python to float so that + # signed zero can be used, it is checked. + tgtdiv, tgtrem = np.array(tgt, dtype=float).T + tgtdiv = np.where((tgtdiv == 0.0) & ((b < 0) ^ (a < 0)), -0.0, tgtdiv) + tgtrem = np.where((tgtrem == 0.0) & (b < 0), -0.0, tgtrem) + + for op in [floordiv_and_mod, divmod]: + for dt in np.typecodes['Float']: + msg = 'op: %s, dtype: %s' % (op.__name__, dt) + fa = a.astype(dt) + fb = b.astype(dt) + # use list comprehension so a_ and b_ are scalars + div, rem = zip(*[op(a_, b_) for a_, b_ in zip(fa, fb)]) + assert_equal(div, tgtdiv, err_msg=msg) + assert_equal(rem, tgtrem, err_msg=msg) + + def test_float_modulus_roundoff(self): + # gh-6127 + dt = np.typecodes['Float'] + for op in [floordiv_and_mod, divmod]: + for dt1, dt2 in itertools.product(dt, dt): + for sg1, sg2 in itertools.product((+1, -1), (+1, -1)): + fmt = 'op: %s, dt1: %s, dt2: %s, sg1: %s, sg2: %s' + msg = fmt % (op.__name__, dt1, dt2, sg1, sg2) + a = np.array(sg1*78*6e-8, dtype=dt1)[()] + b = np.array(sg2*6e-8, dtype=dt2)[()] + div, rem = op(a, b) + # Equal assertion should hold when fmod is used + assert_equal(div*b + rem, a, err_msg=msg) + if sg2 == -1: + assert_(b < rem <= 0, msg) + else: + assert_(b > rem >= 0, msg) + + def test_float_modulus_corner_cases(self): + # Check remainder magnitude. + for dt in np.typecodes['Float']: + b = np.array(1.0, dtype=dt) + a = np.nextafter(np.array(0.0, dtype=dt), -b) + rem = operator.mod(a, b) + assert_(rem <= b, 'dt: %s' % dt) + rem = operator.mod(-a, -b) + assert_(rem >= -b, 'dt: %s' % dt) + + # Check nans, inf + with suppress_warnings() as sup: + sup.filter(RuntimeWarning, "invalid value encountered in remainder") + sup.filter(RuntimeWarning, "divide by zero encountered in remainder") + sup.filter(RuntimeWarning, "divide by zero encountered in floor_divide") + sup.filter(RuntimeWarning, "divide by zero encountered in divmod") + sup.filter(RuntimeWarning, "invalid value encountered in divmod") + for dt in np.typecodes['Float']: + fone = np.array(1.0, dtype=dt) + fzer = np.array(0.0, dtype=dt) + finf = np.array(np.inf, dtype=dt) + fnan = np.array(np.nan, dtype=dt) + rem = operator.mod(fone, fzer) + assert_(np.isnan(rem), 'dt: %s' % dt) + # MSVC 2008 returns NaN here, so disable the check. + #rem = operator.mod(fone, finf) + #assert_(rem == fone, 'dt: %s' % dt) + rem = operator.mod(fone, fnan) + assert_(np.isnan(rem), 'dt: %s' % dt) + rem = operator.mod(finf, fone) + assert_(np.isnan(rem), 'dt: %s' % dt) + for op in [floordiv_and_mod, divmod]: + div, mod = op(fone, fzer) + assert_(np.isinf(div)) and assert_(np.isnan(mod)) + + def test_inplace_floordiv_handling(self): + # issue gh-12927 + # this only applies to in-place floordiv //=, because the output type + # promotes to float which does not fit + a = np.array([1, 2], np.int64) + b = np.array([1, 2], np.uint64) + with pytest.raises(TypeError, + match=r"Cannot cast ufunc 'floor_divide' output from"): + a //= b + + +class TestComplexDivision: + def test_zero_division(self): + with np.errstate(all="ignore"): + for t in [np.complex64, np.complex128]: + a = t(0.0) + b = t(1.0) + assert_(np.isinf(b/a)) + b = t(complex(np.inf, np.inf)) + assert_(np.isinf(b/a)) + b = t(complex(np.inf, np.nan)) + assert_(np.isinf(b/a)) + b = t(complex(np.nan, np.inf)) + assert_(np.isinf(b/a)) + b = t(complex(np.nan, np.nan)) + assert_(np.isnan(b/a)) + b = t(0.) + assert_(np.isnan(b/a)) + + def test_signed_zeros(self): + with np.errstate(all="ignore"): + for t in [np.complex64, np.complex128]: + # tupled (numerator, denominator, expected) + # for testing as expected == numerator/denominator + data = ( + (( 0.0,-1.0), ( 0.0, 1.0), (-1.0,-0.0)), + (( 0.0,-1.0), ( 0.0,-1.0), ( 1.0,-0.0)), + (( 0.0,-1.0), (-0.0,-1.0), ( 1.0, 0.0)), + (( 0.0,-1.0), (-0.0, 1.0), (-1.0, 0.0)), + (( 0.0, 1.0), ( 0.0,-1.0), (-1.0, 0.0)), + (( 0.0,-1.0), ( 0.0,-1.0), ( 1.0,-0.0)), + ((-0.0,-1.0), ( 0.0,-1.0), ( 1.0,-0.0)), + ((-0.0, 1.0), ( 0.0,-1.0), (-1.0,-0.0)) + ) + for cases in data: + n = cases[0] + d = cases[1] + ex = cases[2] + result = t(complex(n[0], n[1])) / t(complex(d[0], d[1])) + # check real and imag parts separately to avoid comparison + # in array context, which does not account for signed zeros + assert_equal(result.real, ex[0]) + assert_equal(result.imag, ex[1]) + + def test_branches(self): + with np.errstate(all="ignore"): + for t in [np.complex64, np.complex128]: + # tupled (numerator, denominator, expected) + # for testing as expected == numerator/denominator + data = list() + + # trigger branch: real(fabs(denom)) > imag(fabs(denom)) + # followed by else condition as neither are == 0 + data.append((( 2.0, 1.0), ( 2.0, 1.0), (1.0, 0.0))) + + # trigger branch: real(fabs(denom)) > imag(fabs(denom)) + # followed by if condition as both are == 0 + # is performed in test_zero_division(), so this is skipped + + # trigger else if branch: real(fabs(denom)) < imag(fabs(denom)) + data.append((( 1.0, 2.0), ( 1.0, 2.0), (1.0, 0.0))) + + for cases in data: + n = cases[0] + d = cases[1] + ex = cases[2] + result = t(complex(n[0], n[1])) / t(complex(d[0], d[1])) + # check real and imag parts separately to avoid comparison + # in array context, which does not account for signed zeros + assert_equal(result.real, ex[0]) + assert_equal(result.imag, ex[1]) + + +class TestConversion: + def test_int_from_long(self): + l = [1e6, 1e12, 1e18, -1e6, -1e12, -1e18] + li = [10**6, 10**12, 10**18, -10**6, -10**12, -10**18] + for T in [None, np.float64, np.int64]: + a = np.array(l, dtype=T) + assert_equal([int(_m) for _m in a], li) + + a = np.array(l[:3], dtype=np.uint64) + assert_equal([int(_m) for _m in a], li[:3]) + + def test_iinfo_long_values(self): + for code in 'bBhH': + with pytest.raises(OverflowError): + np.array(np.iinfo(code).max + 1, dtype=code) + + for code in np.typecodes['AllInteger']: + res = np.array(np.iinfo(code).max, dtype=code) + tgt = np.iinfo(code).max + assert_(res == tgt) + + for code in np.typecodes['AllInteger']: + res = np.dtype(code).type(np.iinfo(code).max) + tgt = np.iinfo(code).max + assert_(res == tgt) + + def test_int_raise_behaviour(self): + def overflow_error_func(dtype): + dtype(np.iinfo(dtype).max + 1) + + for code in [np.int_, np.uint, np.longlong, np.ulonglong]: + assert_raises(OverflowError, overflow_error_func, code) + + def test_int_from_infinite_longdouble(self): + # gh-627 + x = np.longdouble(np.inf) + assert_raises(OverflowError, int, x) + with suppress_warnings() as sup: + sup.record(ComplexWarning) + x = np.clongdouble(np.inf) + assert_raises(OverflowError, int, x) + assert_equal(len(sup.log), 1) + + @pytest.mark.skipif(not IS_PYPY, reason="Test is PyPy only (gh-9972)") + def test_int_from_infinite_longdouble___int__(self): + x = np.longdouble(np.inf) + assert_raises(OverflowError, x.__int__) + with suppress_warnings() as sup: + sup.record(ComplexWarning) + x = np.clongdouble(np.inf) + assert_raises(OverflowError, x.__int__) + assert_equal(len(sup.log), 1) + + @pytest.mark.skipif(np.finfo(np.double) == np.finfo(np.longdouble), + reason="long double is same as double") + @pytest.mark.skipif(platform.machine().startswith("ppc"), + reason="IBM double double") + def test_int_from_huge_longdouble(self): + # Produce a longdouble that would overflow a double, + # use exponent that avoids bug in Darwin pow function. + exp = np.finfo(np.double).maxexp - 1 + huge_ld = 2 * 1234 * np.longdouble(2) ** exp + huge_i = 2 * 1234 * 2 ** exp + assert_(huge_ld != np.inf) + assert_equal(int(huge_ld), huge_i) + + def test_int_from_longdouble(self): + x = np.longdouble(1.5) + assert_equal(int(x), 1) + x = np.longdouble(-10.5) + assert_equal(int(x), -10) + + def test_numpy_scalar_relational_operators(self): + # All integer + for dt1 in np.typecodes['AllInteger']: + assert_(1 > np.array(0, dtype=dt1)[()], "type %s failed" % (dt1,)) + assert_(not 1 < np.array(0, dtype=dt1)[()], "type %s failed" % (dt1,)) + + for dt2 in np.typecodes['AllInteger']: + assert_(np.array(1, dtype=dt1)[()] > np.array(0, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1)[()] < np.array(0, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + + #Unsigned integers + for dt1 in 'BHILQP': + assert_(-1 < np.array(1, dtype=dt1)[()], "type %s failed" % (dt1,)) + assert_(not -1 > np.array(1, dtype=dt1)[()], "type %s failed" % (dt1,)) + assert_(-1 != np.array(1, dtype=dt1)[()], "type %s failed" % (dt1,)) + + #unsigned vs signed + for dt2 in 'bhilqp': + assert_(np.array(1, dtype=dt1)[()] > np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1)[()] < np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + assert_(np.array(1, dtype=dt1)[()] != np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + + #Signed integers and floats + for dt1 in 'bhlqp' + np.typecodes['Float']: + assert_(1 > np.array(-1, dtype=dt1)[()], "type %s failed" % (dt1,)) + assert_(not 1 < np.array(-1, dtype=dt1)[()], "type %s failed" % (dt1,)) + assert_(-1 == np.array(-1, dtype=dt1)[()], "type %s failed" % (dt1,)) + + for dt2 in 'bhlqp' + np.typecodes['Float']: + assert_(np.array(1, dtype=dt1)[()] > np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + assert_(not np.array(1, dtype=dt1)[()] < np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + assert_(np.array(-1, dtype=dt1)[()] == np.array(-1, dtype=dt2)[()], + "type %s and %s failed" % (dt1, dt2)) + + def test_scalar_comparison_to_none(self): + # Scalars should just return False and not give a warnings. + # The comparisons are flagged by pep8, ignore that. + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', FutureWarning) + assert_(not np.float32(1) == None) # noqa: E711 + assert_(not np.str_('test') == None) # noqa: E711 + # This is dubious (see below): + assert_(not np.datetime64('NaT') == None) # noqa: E711 + + assert_(np.float32(1) != None) # noqa: E711 + assert_(np.str_('test') != None) # noqa: E711 + # This is dubious (see below): + assert_(np.datetime64('NaT') != None) # noqa: E711 + assert_(len(w) == 0) + + # For documentation purposes, this is why the datetime is dubious. + # At the time of deprecation this was no behaviour change, but + # it has to be considered when the deprecations are done. + assert_(np.equal(np.datetime64('NaT'), None)) + + +#class TestRepr: +# def test_repr(self): +# for t in types: +# val = t(1197346475.0137341) +# val_repr = repr(val) +# val2 = eval(val_repr) +# assert_equal( val, val2 ) + + +class TestRepr: + def _test_type_repr(self, t): + finfo = np.finfo(t) + last_fraction_bit_idx = finfo.nexp + finfo.nmant + last_exponent_bit_idx = finfo.nexp + storage_bytes = np.dtype(t).itemsize*8 + # could add some more types to the list below + for which in ['small denorm', 'small norm']: + # Values from https://en.wikipedia.org/wiki/IEEE_754 + constr = np.array([0x00]*storage_bytes, dtype=np.uint8) + if which == 'small denorm': + byte = last_fraction_bit_idx // 8 + bytebit = 7-(last_fraction_bit_idx % 8) + constr[byte] = 1 << bytebit + elif which == 'small norm': + byte = last_exponent_bit_idx // 8 + bytebit = 7-(last_exponent_bit_idx % 8) + constr[byte] = 1 << bytebit + else: + raise ValueError('hmm') + val = constr.view(t)[0] + val_repr = repr(val) + val2 = t(eval(val_repr)) + if not (val2 == 0 and val < 1e-100): + assert_equal(val, val2) + + def test_float_repr(self): + # long double test cannot work, because eval goes through a python + # float + for t in [np.float32, np.float64]: + self._test_type_repr(t) + + +if not IS_PYPY: + # sys.getsizeof() is not valid on PyPy + class TestSizeOf: + + def test_equal_nbytes(self): + for type in types: + x = type(0) + assert_(sys.getsizeof(x) > x.nbytes) + + def test_error(self): + d = np.float32() + assert_raises(TypeError, d.__sizeof__, "a") + + +class TestMultiply: + def test_seq_repeat(self): + # Test that basic sequences get repeated when multiplied with + # numpy integers. And errors are raised when multiplied with others. + # Some of this behaviour may be controversial and could be open for + # change. + accepted_types = set(np.typecodes["AllInteger"]) + deprecated_types = {'?'} + forbidden_types = ( + set(np.typecodes["All"]) - accepted_types - deprecated_types) + forbidden_types -= {'V'} # can't default-construct void scalars + + for seq_type in (list, tuple): + seq = seq_type([1, 2, 3]) + for numpy_type in accepted_types: + i = np.dtype(numpy_type).type(2) + assert_equal(seq * i, seq * int(i)) + assert_equal(i * seq, int(i) * seq) + + for numpy_type in deprecated_types: + i = np.dtype(numpy_type).type() + assert_equal( + assert_warns(DeprecationWarning, operator.mul, seq, i), + seq * int(i)) + assert_equal( + assert_warns(DeprecationWarning, operator.mul, i, seq), + int(i) * seq) + + for numpy_type in forbidden_types: + i = np.dtype(numpy_type).type() + assert_raises(TypeError, operator.mul, seq, i) + assert_raises(TypeError, operator.mul, i, seq) + + def test_no_seq_repeat_basic_array_like(self): + # Test that an array-like which does not know how to be multiplied + # does not attempt sequence repeat (raise TypeError). + # See also gh-7428. + class ArrayLike: + def __init__(self, arr): + self.arr = arr + + def __array__(self, dtype=None, copy=None): + return self.arr + + # Test for simple ArrayLike above and memoryviews (original report) + for arr_like in (ArrayLike(np.ones(3)), memoryview(np.ones(3))): + assert_array_equal(arr_like * np.float32(3.), np.full(3, 3.)) + assert_array_equal(np.float32(3.) * arr_like, np.full(3, 3.)) + assert_array_equal(arr_like * np.int_(3), np.full(3, 3)) + assert_array_equal(np.int_(3) * arr_like, np.full(3, 3)) + + +class TestNegative: + def test_exceptions(self): + a = np.ones((), dtype=np.bool)[()] + assert_raises(TypeError, operator.neg, a) + + def test_result(self): + types = np.typecodes['AllInteger'] + np.typecodes['AllFloat'] + with suppress_warnings() as sup: + sup.filter(RuntimeWarning) + for dt in types: + a = np.ones((), dtype=dt)[()] + if dt in np.typecodes['UnsignedInteger']: + st = np.dtype(dt).type + max = st(np.iinfo(dt).max) + assert_equal(operator.neg(a), max) + else: + assert_equal(operator.neg(a) + a, 0) + +class TestSubtract: + def test_exceptions(self): + a = np.ones((), dtype=np.bool)[()] + assert_raises(TypeError, operator.sub, a, a) + + def test_result(self): + types = np.typecodes['AllInteger'] + np.typecodes['AllFloat'] + with suppress_warnings() as sup: + sup.filter(RuntimeWarning) + for dt in types: + a = np.ones((), dtype=dt)[()] + assert_equal(operator.sub(a, a), 0) + + +class TestAbs: + def _test_abs_func(self, absfunc, test_dtype): + x = test_dtype(-1.5) + assert_equal(absfunc(x), 1.5) + x = test_dtype(0.0) + res = absfunc(x) + # assert_equal() checks zero signedness + assert_equal(res, 0.0) + x = test_dtype(-0.0) + res = absfunc(x) + assert_equal(res, 0.0) + + x = test_dtype(np.finfo(test_dtype).max) + assert_equal(absfunc(x), x.real) + + with suppress_warnings() as sup: + sup.filter(UserWarning) + x = test_dtype(np.finfo(test_dtype).tiny) + assert_equal(absfunc(x), x.real) + + x = test_dtype(np.finfo(test_dtype).min) + assert_equal(absfunc(x), -x.real) + + @pytest.mark.parametrize("dtype", floating_types + complex_floating_types) + def test_builtin_abs(self, dtype): + if ( + sys.platform == "cygwin" and dtype == np.clongdouble and + ( + _pep440.parse(platform.release().split("-")[0]) + < _pep440.Version("3.3.0") + ) + ): + pytest.xfail( + reason="absl is computed in double precision on cygwin < 3.3" + ) + self._test_abs_func(abs, dtype) + + @pytest.mark.parametrize("dtype", floating_types + complex_floating_types) + def test_numpy_abs(self, dtype): + if ( + sys.platform == "cygwin" and dtype == np.clongdouble and + ( + _pep440.parse(platform.release().split("-")[0]) + < _pep440.Version("3.3.0") + ) + ): + pytest.xfail( + reason="absl is computed in double precision on cygwin < 3.3" + ) + self._test_abs_func(np.abs, dtype) + +class TestBitShifts: + + @pytest.mark.parametrize('type_code', np.typecodes['AllInteger']) + @pytest.mark.parametrize('op', + [operator.rshift, operator.lshift], ids=['>>', '<<']) + def test_shift_all_bits(self, type_code, op): + """Shifts where the shift amount is the width of the type or wider """ + # gh-2449 + dt = np.dtype(type_code) + nbits = dt.itemsize * 8 + for val in [5, -5]: + for shift in [nbits, nbits + 4]: + val_scl = np.array(val).astype(dt)[()] + shift_scl = dt.type(shift) + res_scl = op(val_scl, shift_scl) + if val_scl < 0 and op is operator.rshift: + # sign bit is preserved + assert_equal(res_scl, -1) + else: + assert_equal(res_scl, 0) + + # Result on scalars should be the same as on arrays + val_arr = np.array([val_scl]*32, dtype=dt) + shift_arr = np.array([shift]*32, dtype=dt) + res_arr = op(val_arr, shift_arr) + assert_equal(res_arr, res_scl) + + +class TestHash: + @pytest.mark.parametrize("type_code", np.typecodes['AllInteger']) + def test_integer_hashes(self, type_code): + scalar = np.dtype(type_code).type + for i in range(128): + assert hash(i) == hash(scalar(i)) + + @pytest.mark.parametrize("type_code", np.typecodes['AllFloat']) + def test_float_and_complex_hashes(self, type_code): + scalar = np.dtype(type_code).type + for val in [np.pi, np.inf, 3, 6.]: + numpy_val = scalar(val) + # Cast back to Python, in case the NumPy scalar has less precision + if numpy_val.dtype.kind == 'c': + val = complex(numpy_val) + else: + val = float(numpy_val) + assert val == numpy_val + assert hash(val) == hash(numpy_val) + + if hash(float(np.nan)) != hash(float(np.nan)): + # If Python distinguishes different NaNs we do so too (gh-18833) + assert hash(scalar(np.nan)) != hash(scalar(np.nan)) + + @pytest.mark.parametrize("type_code", np.typecodes['Complex']) + def test_complex_hashes(self, type_code): + # Test some complex valued hashes specifically: + scalar = np.dtype(type_code).type + for val in [np.pi+1j, np.inf-3j, 3j, 6.+1j]: + numpy_val = scalar(val) + assert hash(complex(numpy_val)) == hash(numpy_val) + + +@contextlib.contextmanager +def recursionlimit(n): + o = sys.getrecursionlimit() + try: + sys.setrecursionlimit(n) + yield + finally: + sys.setrecursionlimit(o) + + +@given(sampled_from(objecty_things), + sampled_from(binary_operators_for_scalar_ints), + sampled_from(types + [rational])) +def test_operator_object_left(o, op, type_): + try: + with recursionlimit(200): + op(o, type_(1)) + except TypeError: + pass + + +@given(sampled_from(objecty_things), + sampled_from(binary_operators_for_scalar_ints), + sampled_from(types + [rational])) +def test_operator_object_right(o, op, type_): + try: + with recursionlimit(200): + op(type_(1), o) + except TypeError: + pass + + +@given(sampled_from(binary_operators_for_scalars), + sampled_from(types), + sampled_from(types)) +def test_operator_scalars(op, type1, type2): + try: + op(type1(1), type2(1)) + except TypeError: + pass + + +@pytest.mark.parametrize("op", binary_operators_for_scalars) +@pytest.mark.parametrize("sctype", [np.longdouble, np.clongdouble]) +def test_longdouble_operators_with_obj(sctype, op): + # This is/used to be tricky, because NumPy generally falls back to + # using the ufunc via `np.asarray()`, this effectively might do: + # longdouble + None + # -> asarray(longdouble) + np.array(None, dtype=object) + # -> asarray(longdouble).astype(object) + np.array(None, dtype=object) + # And after getting the scalars in the inner loop: + # -> longdouble + None + # + # That would recurse infinitely. Other scalars return the python object + # on cast, so this type of things works OK. + # + # As of NumPy 2.1, this has been consolidated into the np.generic binops + # and now checks `.item()`. That also allows the below path to work now. + try: + op(sctype(3), None) + except TypeError: + pass + try: + op(None, sctype(3)) + except TypeError: + pass + + +@pytest.mark.parametrize("op", [operator.add, operator.pow, operator.sub]) +@pytest.mark.parametrize("sctype", [np.longdouble, np.clongdouble]) +def test_longdouble_with_arrlike(sctype, op): + # As of NumPy 2.1, longdouble behaves like other types and can coerce + # e.g. lists. (Not necessarily better, but consistent.) + assert_array_equal(op(sctype(3), [1, 2]), op(3, np.array([1, 2]))) + assert_array_equal(op([1, 2], sctype(3)), op(np.array([1, 2]), 3)) + + +@pytest.mark.parametrize("op", binary_operators_for_scalars) +@pytest.mark.parametrize("sctype", [np.longdouble, np.clongdouble]) +@np.errstate(all="ignore") +def test_longdouble_operators_with_large_int(sctype, op): + # (See `test_longdouble_operators_with_obj` for why longdouble is special) + # NEP 50 means that the result is clearly a (c)longdouble here: + if sctype == np.clongdouble and op in [operator.mod, operator.floordiv]: + # The above operators are not support for complex though... + with pytest.raises(TypeError): + op(sctype(3), 2**64) + with pytest.raises(TypeError): + op(sctype(3), 2**64) + else: + assert op(sctype(3), -2**64) == op(sctype(3), sctype(-2**64)) + assert op(2**64, sctype(3)) == op(sctype(2**64), sctype(3)) + + +@pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) +@pytest.mark.parametrize("operation", [ + lambda min, max: max + max, + lambda min, max: min - max, + lambda min, max: max * max], ids=["+", "-", "*"]) +def test_scalar_integer_operation_overflow(dtype, operation): + st = np.dtype(dtype).type + min = st(np.iinfo(dtype).min) + max = st(np.iinfo(dtype).max) + + with pytest.warns(RuntimeWarning, match="overflow encountered"): + operation(min, max) + + +@pytest.mark.parametrize("dtype", np.typecodes["Integer"]) +@pytest.mark.parametrize("operation", [ + lambda min, neg_1: -min, + lambda min, neg_1: abs(min), + lambda min, neg_1: min * neg_1, + pytest.param(lambda min, neg_1: min // neg_1, + marks=pytest.mark.skip(reason="broken on some platforms"))], + ids=["neg", "abs", "*", "//"]) +def test_scalar_signed_integer_overflow(dtype, operation): + # The minimum signed integer can "overflow" for some additional operations + st = np.dtype(dtype).type + min = st(np.iinfo(dtype).min) + neg_1 = st(-1) + + with pytest.warns(RuntimeWarning, match="overflow encountered"): + operation(min, neg_1) + + +@pytest.mark.parametrize("dtype", np.typecodes["UnsignedInteger"]) +def test_scalar_unsigned_integer_overflow(dtype): + val = np.dtype(dtype).type(8) + with pytest.warns(RuntimeWarning, match="overflow encountered"): + -val + + zero = np.dtype(dtype).type(0) + -zero # does not warn + +@pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) +@pytest.mark.parametrize("operation", [ + lambda val, zero: val // zero, + lambda val, zero: val % zero, ], ids=["//", "%"]) +def test_scalar_integer_operation_divbyzero(dtype, operation): + st = np.dtype(dtype).type + val = st(100) + zero = st(0) + + with pytest.warns(RuntimeWarning, match="divide by zero"): + operation(val, zero) + + +ops_with_names = [ + ("__lt__", "__gt__", operator.lt, True), + ("__le__", "__ge__", operator.le, True), + ("__eq__", "__eq__", operator.eq, True), + # Note __op__ and __rop__ may be identical here: + ("__ne__", "__ne__", operator.ne, True), + ("__gt__", "__lt__", operator.gt, True), + ("__ge__", "__le__", operator.ge, True), + ("__floordiv__", "__rfloordiv__", operator.floordiv, False), + ("__truediv__", "__rtruediv__", operator.truediv, False), + ("__add__", "__radd__", operator.add, False), + ("__mod__", "__rmod__", operator.mod, False), + ("__mul__", "__rmul__", operator.mul, False), + ("__pow__", "__rpow__", operator.pow, False), + ("__sub__", "__rsub__", operator.sub, False), +] + + +@pytest.mark.parametrize(["__op__", "__rop__", "op", "cmp"], ops_with_names) +@pytest.mark.parametrize("sctype", [np.float32, np.float64, np.longdouble]) +def test_subclass_deferral(sctype, __op__, __rop__, op, cmp): + """ + This test covers scalar subclass deferral. Note that this is exceedingly + complicated, especially since it tends to fall back to the array paths and + these additionally add the "array priority" mechanism. + + The behaviour was modified subtly in 1.22 (to make it closer to how Python + scalars work). Due to its complexity and the fact that subclassing NumPy + scalars is probably a bad idea to begin with. There is probably room + for adjustments here. + """ + class myf_simple1(sctype): + pass + + class myf_simple2(sctype): + pass + + def op_func(self, other): + return __op__ + + def rop_func(self, other): + return __rop__ + + myf_op = type("myf_op", (sctype,), {__op__: op_func, __rop__: rop_func}) + + # inheritance has to override, or this is correctly lost: + res = op(myf_simple1(1), myf_simple2(2)) + assert type(res) == sctype or type(res) == np.bool + assert op(myf_simple1(1), myf_simple2(2)) == op(1, 2) # inherited + + # Two independent subclasses do not really define an order. This could + # be attempted, but we do not since Python's `int` does neither: + assert op(myf_op(1), myf_simple1(2)) == __op__ + assert op(myf_simple1(1), myf_op(2)) == op(1, 2) # inherited + + +def test_longdouble_complex(): + # Simple test to check longdouble and complex combinations, since these + # need to go through promotion, which longdouble needs to be careful about. + x = np.longdouble(1) + assert x + 1j == 1+1j + assert 1j + x == 1+1j + + +@pytest.mark.parametrize(["__op__", "__rop__", "op", "cmp"], ops_with_names) +@pytest.mark.parametrize("subtype", [float, int, complex, np.float16]) +def test_pyscalar_subclasses(subtype, __op__, __rop__, op, cmp): + # This tests that python scalar subclasses behave like a float64 (if they + # don't override it). + # In an earlier version of NEP 50, they behaved like the Python buildins. + def op_func(self, other): + return __op__ + + def rop_func(self, other): + return __rop__ + + # Check that deferring is indicated using `__array_ufunc__`: + myt = type("myt", (subtype,), + {__op__: op_func, __rop__: rop_func, "__array_ufunc__": None}) + + # Just like normally, we should never presume we can modify the float. + assert op(myt(1), np.float64(2)) == __op__ + assert op(np.float64(1), myt(2)) == __rop__ + + if op in {operator.mod, operator.floordiv} and subtype == complex: + return # module is not support for complex. Do not test. + + if __rop__ == __op__: + return + + # When no deferring is indicated, subclasses are handled normally. + myt = type("myt", (subtype,), {__rop__: rop_func}) + behaves_like = lambda x: np.array(subtype(x))[()] + + # Check for float32, as a float subclass float64 may behave differently + res = op(myt(1), np.float16(2)) + expected = op(behaves_like(1), np.float16(2)) + assert res == expected + assert type(res) == type(expected) + res = op(np.float32(2), myt(1)) + expected = op(np.float32(2), behaves_like(1)) + assert res == expected + assert type(res) == type(expected) + + # Same check for longdouble (compare via dtype to accept float64 when + # longdouble has the identical size), which is currently not perfectly + # consistent. + res = op(myt(1), np.longdouble(2)) + expected = op(behaves_like(1), np.longdouble(2)) + assert res == expected + assert np.dtype(type(res)) == np.dtype(type(expected)) + res = op(np.float32(2), myt(1)) + expected = op(np.float32(2), behaves_like(1)) + assert res == expected + assert np.dtype(type(res)) == np.dtype(type(expected)) + + +def test_truediv_int(): + # This should work, as the result is float: + assert np.uint8(3) / 123454 == np.float64(3) / 123454 + + +@pytest.mark.slow +@pytest.mark.parametrize("op", + # TODO: Power is a bit special, but here mostly bools seem to behave oddly + [op for op in binary_operators_for_scalars if op is not operator.pow]) +@pytest.mark.parametrize("sctype", types) +@pytest.mark.parametrize("other_type", [float, int, complex]) +@pytest.mark.parametrize("rop", [True, False]) +def test_scalar_matches_array_op_with_pyscalar(op, sctype, other_type, rop): + # Check that the ufunc path matches by coercing to an array explicitly + val1 = sctype(2) + val2 = other_type(2) + + if rop: + _op = op + op = lambda x, y: _op(y, x) + + try: + res = op(val1, val2) + except TypeError: + try: + expected = op(np.asarray(val1), val2) + raise AssertionError("ufunc didn't raise.") + except TypeError: + return + else: + expected = op(np.asarray(val1), val2) + + # Note that we only check dtype equivalency, as ufuncs may pick the lower + # dtype if they are equivalent. + assert res == expected + if isinstance(val1, float) and other_type is complex and rop: + # Python complex accepts float subclasses, so we don't get a chance + # and the result may be a Python complex (thus, the `np.array()``) + assert np.array(res).dtype == expected.dtype + else: + assert res.dtype == expected.dtype diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarprint.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarprint.py new file mode 100644 index 0000000000000000000000000000000000000000..b6872c2b482be32bc5b7528258e4a917a3e311c8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_scalarprint.py @@ -0,0 +1,423 @@ +""" Test printing of scalar types. + +""" +import code +import platform +import pytest +import sys + +from tempfile import TemporaryFile +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex, IS_MUSL) + +class TestRealScalars: + def test_str(self): + svals = [0.0, -0.0, 1, -1, np.inf, -np.inf, np.nan] + styps = [np.float16, np.float32, np.float64, np.longdouble] + wanted = [ + ['0.0', '0.0', '0.0', '0.0' ], + ['-0.0', '-0.0', '-0.0', '-0.0'], + ['1.0', '1.0', '1.0', '1.0' ], + ['-1.0', '-1.0', '-1.0', '-1.0'], + ['inf', 'inf', 'inf', 'inf' ], + ['-inf', '-inf', '-inf', '-inf'], + ['nan', 'nan', 'nan', 'nan']] + + for wants, val in zip(wanted, svals): + for want, styp in zip(wants, styps): + msg = 'for str({}({}))'.format(np.dtype(styp).name, repr(val)) + assert_equal(str(styp(val)), want, err_msg=msg) + + def test_scalar_cutoffs(self): + # test that both the str and repr of np.float64 behaves + # like python floats in python3. + def check(v): + assert_equal(str(np.float64(v)), str(v)) + assert_equal(str(np.float64(v)), repr(v)) + assert_equal(repr(np.float64(v)), f"np.float64({v!r})") + assert_equal(repr(np.float64(v)), f"np.float64({v})") + + # check we use the same number of significant digits + check(1.12345678901234567890) + check(0.0112345678901234567890) + + # check switch from scientific output to positional and back + check(1e-5) + check(1e-4) + check(1e15) + check(1e16) + + def test_py2_float_print(self): + # gh-10753 + # In python2, the python float type implements an obsolete method + # tp_print, which overrides tp_repr and tp_str when using "print" to + # output to a "real file" (ie, not a StringIO). Make sure we don't + # inherit it. + x = np.double(0.1999999999999) + with TemporaryFile('r+t') as f: + print(x, file=f) + f.seek(0) + output = f.read() + assert_equal(output, str(x) + '\n') + # In python2 the value float('0.1999999999999') prints with reduced + # precision as '0.2', but we want numpy's np.double('0.1999999999999') + # to print the unique value, '0.1999999999999'. + + # gh-11031 + # Only in the python2 interactive shell and when stdout is a "real" + # file, the output of the last command is printed to stdout without + # Py_PRINT_RAW (unlike the print statement) so `>>> x` and `>>> print + # x` are potentially different. Make sure they are the same. The only + # way I found to get prompt-like output is using an actual prompt from + # the 'code' module. Again, must use tempfile to get a "real" file. + + # dummy user-input which enters one line and then ctrl-Ds. + def userinput(): + yield 'np.sqrt(2)' + raise EOFError + gen = userinput() + input_func = lambda prompt="": next(gen) + + with TemporaryFile('r+t') as fo, TemporaryFile('r+t') as fe: + orig_stdout, orig_stderr = sys.stdout, sys.stderr + sys.stdout, sys.stderr = fo, fe + + code.interact(local={'np': np}, readfunc=input_func, banner='') + + sys.stdout, sys.stderr = orig_stdout, orig_stderr + + fo.seek(0) + capture = fo.read().strip() + + assert_equal(capture, repr(np.sqrt(2))) + + def test_dragon4(self): + # these tests are adapted from Ryan Juckett's dragon4 implementation, + # see dragon4.c for details. + + fpos32 = lambda x, **k: np.format_float_positional(np.float32(x), **k) + fsci32 = lambda x, **k: np.format_float_scientific(np.float32(x), **k) + fpos64 = lambda x, **k: np.format_float_positional(np.float64(x), **k) + fsci64 = lambda x, **k: np.format_float_scientific(np.float64(x), **k) + + preckwd = lambda prec: {'unique': False, 'precision': prec} + + assert_equal(fpos32('1.0'), "1.") + assert_equal(fsci32('1.0'), "1.e+00") + assert_equal(fpos32('10.234'), "10.234") + assert_equal(fpos32('-10.234'), "-10.234") + assert_equal(fsci32('10.234'), "1.0234e+01") + assert_equal(fsci32('-10.234'), "-1.0234e+01") + assert_equal(fpos32('1000.0'), "1000.") + assert_equal(fpos32('1.0', precision=0), "1.") + assert_equal(fsci32('1.0', precision=0), "1.e+00") + assert_equal(fpos32('10.234', precision=0), "10.") + assert_equal(fpos32('-10.234', precision=0), "-10.") + assert_equal(fsci32('10.234', precision=0), "1.e+01") + assert_equal(fsci32('-10.234', precision=0), "-1.e+01") + assert_equal(fpos32('10.234', precision=2), "10.23") + assert_equal(fsci32('-10.234', precision=2), "-1.02e+01") + assert_equal(fsci64('9.9999999999999995e-08', **preckwd(16)), + '9.9999999999999995e-08') + assert_equal(fsci64('9.8813129168249309e-324', **preckwd(16)), + '9.8813129168249309e-324') + assert_equal(fsci64('9.9999999999999694e-311', **preckwd(16)), + '9.9999999999999694e-311') + + + # test rounding + # 3.1415927410 is closest float32 to np.pi + assert_equal(fpos32('3.14159265358979323846', **preckwd(10)), + "3.1415927410") + assert_equal(fsci32('3.14159265358979323846', **preckwd(10)), + "3.1415927410e+00") + assert_equal(fpos64('3.14159265358979323846', **preckwd(10)), + "3.1415926536") + assert_equal(fsci64('3.14159265358979323846', **preckwd(10)), + "3.1415926536e+00") + # 299792448 is closest float32 to 299792458 + assert_equal(fpos32('299792458.0', **preckwd(5)), "299792448.00000") + assert_equal(fsci32('299792458.0', **preckwd(5)), "2.99792e+08") + assert_equal(fpos64('299792458.0', **preckwd(5)), "299792458.00000") + assert_equal(fsci64('299792458.0', **preckwd(5)), "2.99792e+08") + + assert_equal(fpos32('3.14159265358979323846', **preckwd(25)), + "3.1415927410125732421875000") + assert_equal(fpos64('3.14159265358979323846', **preckwd(50)), + "3.14159265358979311599796346854418516159057617187500") + assert_equal(fpos64('3.14159265358979323846'), "3.141592653589793") + + + # smallest numbers + assert_equal(fpos32(0.5**(126 + 23), unique=False, precision=149), + "0.00000000000000000000000000000000000000000000140129846432" + "4817070923729583289916131280261941876515771757068283889791" + "08268586060148663818836212158203125") + + assert_equal(fpos64(5e-324, unique=False, precision=1074), + "0.00000000000000000000000000000000000000000000000000000000" + "0000000000000000000000000000000000000000000000000000000000" + "0000000000000000000000000000000000000000000000000000000000" + "0000000000000000000000000000000000000000000000000000000000" + "0000000000000000000000000000000000000000000000000000000000" + "0000000000000000000000000000000000049406564584124654417656" + "8792868221372365059802614324764425585682500675507270208751" + "8652998363616359923797965646954457177309266567103559397963" + "9877479601078187812630071319031140452784581716784898210368" + "8718636056998730723050006387409153564984387312473397273169" + "6151400317153853980741262385655911710266585566867681870395" + "6031062493194527159149245532930545654440112748012970999954" + "1931989409080416563324524757147869014726780159355238611550" + "1348035264934720193790268107107491703332226844753335720832" + "4319360923828934583680601060115061698097530783422773183292" + "4790498252473077637592724787465608477820373446969953364701" + "7972677717585125660551199131504891101451037862738167250955" + "8373897335989936648099411642057026370902792427675445652290" + "87538682506419718265533447265625") + + # largest numbers + f32x = np.finfo(np.float32).max + assert_equal(fpos32(f32x, **preckwd(0)), + "340282346638528859811704183484516925440.") + assert_equal(fpos64(np.finfo(np.float64).max, **preckwd(0)), + "1797693134862315708145274237317043567980705675258449965989" + "1747680315726078002853876058955863276687817154045895351438" + "2464234321326889464182768467546703537516986049910576551282" + "0762454900903893289440758685084551339423045832369032229481" + "6580855933212334827479782620414472316873817718091929988125" + "0404026184124858368.") + # Warning: In unique mode only the integer digits necessary for + # uniqueness are computed, the rest are 0. + assert_equal(fpos32(f32x), + "340282350000000000000000000000000000000.") + + # Further tests of zero-padding vs rounding in different combinations + # of unique, fractional, precision, min_digits + # precision can only reduce digits, not add them. + # min_digits can only extend digits, not reduce them. + assert_equal(fpos32(f32x, unique=True, fractional=True, precision=0), + "340282350000000000000000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=True, precision=4), + "340282350000000000000000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=True, min_digits=0), + "340282346638528859811704183484516925440.") + assert_equal(fpos32(f32x, unique=True, fractional=True, min_digits=4), + "340282346638528859811704183484516925440.0000") + assert_equal(fpos32(f32x, unique=True, fractional=True, + min_digits=4, precision=4), + "340282346638528859811704183484516925440.0000") + assert_raises(ValueError, fpos32, f32x, unique=True, fractional=False, + precision=0) + assert_equal(fpos32(f32x, unique=True, fractional=False, precision=4), + "340300000000000000000000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=False, precision=20), + "340282350000000000000000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=False, min_digits=4), + "340282350000000000000000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=False, + min_digits=20), + "340282346638528859810000000000000000000.") + assert_equal(fpos32(f32x, unique=True, fractional=False, + min_digits=15), + "340282346638529000000000000000000000000.") + assert_equal(fpos32(f32x, unique=False, fractional=False, precision=4), + "340300000000000000000000000000000000000.") + # test that unique rounding is preserved when precision is supplied + # but no extra digits need to be printed (gh-18609) + a = np.float64.fromhex('-1p-97') + assert_equal(fsci64(a, unique=True), '-6.310887241768095e-30') + assert_equal(fsci64(a, unique=False, precision=15), + '-6.310887241768094e-30') + assert_equal(fsci64(a, unique=True, precision=15), + '-6.310887241768095e-30') + assert_equal(fsci64(a, unique=True, min_digits=15), + '-6.310887241768095e-30') + assert_equal(fsci64(a, unique=True, precision=15, min_digits=15), + '-6.310887241768095e-30') + # adds/remove digits in unique mode with unbiased rnding + assert_equal(fsci64(a, unique=True, precision=14), + '-6.31088724176809e-30') + assert_equal(fsci64(a, unique=True, min_digits=16), + '-6.3108872417680944e-30') + assert_equal(fsci64(a, unique=True, precision=16), + '-6.310887241768095e-30') + assert_equal(fsci64(a, unique=True, min_digits=14), + '-6.310887241768095e-30') + # test min_digits in unique mode with different rounding cases + assert_equal(fsci64('1e120', min_digits=3), '1.000e+120') + assert_equal(fsci64('1e100', min_digits=3), '1.000e+100') + + # test trailing zeros + assert_equal(fpos32('1.0', unique=False, precision=3), "1.000") + assert_equal(fpos64('1.0', unique=False, precision=3), "1.000") + assert_equal(fsci32('1.0', unique=False, precision=3), "1.000e+00") + assert_equal(fsci64('1.0', unique=False, precision=3), "1.000e+00") + assert_equal(fpos32('1.5', unique=False, precision=3), "1.500") + assert_equal(fpos64('1.5', unique=False, precision=3), "1.500") + assert_equal(fsci32('1.5', unique=False, precision=3), "1.500e+00") + assert_equal(fsci64('1.5', unique=False, precision=3), "1.500e+00") + # gh-10713 + assert_equal(fpos64('324', unique=False, precision=5, + fractional=False), "324.00") + + available_float_dtypes = [np.float16, np.float32, np.float64, np.float128]\ + if hasattr(np, 'float128') else [np.float16, np.float32, np.float64] + + @pytest.mark.parametrize("tp", available_float_dtypes) + def test_dragon4_positional_interface(self, tp): + # test is flaky for musllinux on np.float128 + if IS_MUSL and tp == np.float128: + pytest.skip("Skipping flaky test of float128 on musllinux") + + fpos = np.format_float_positional + + # test padding + assert_equal(fpos(tp('1.0'), pad_left=4, pad_right=4), " 1. ") + assert_equal(fpos(tp('-1.0'), pad_left=4, pad_right=4), " -1. ") + assert_equal(fpos(tp('-10.2'), + pad_left=4, pad_right=4), " -10.2 ") + + # test fixed (non-unique) mode + assert_equal(fpos(tp('1.0'), unique=False, precision=4), "1.0000") + + @pytest.mark.parametrize("tp", available_float_dtypes) + def test_dragon4_positional_interface_trim(self, tp): + # test is flaky for musllinux on np.float128 + if IS_MUSL and tp == np.float128: + pytest.skip("Skipping flaky test of float128 on musllinux") + + fpos = np.format_float_positional + # test trimming + # trim of 'k' or '.' only affects non-unique mode, since unique + # mode will not output trailing 0s. + assert_equal(fpos(tp('1.'), unique=False, precision=4, trim='k'), + "1.0000") + + assert_equal(fpos(tp('1.'), unique=False, precision=4, trim='.'), + "1.") + assert_equal(fpos(tp('1.2'), unique=False, precision=4, trim='.'), + "1.2" if tp != np.float16 else "1.2002") + + assert_equal(fpos(tp('1.'), unique=False, precision=4, trim='0'), + "1.0") + assert_equal(fpos(tp('1.2'), unique=False, precision=4, trim='0'), + "1.2" if tp != np.float16 else "1.2002") + assert_equal(fpos(tp('1.'), trim='0'), "1.0") + + assert_equal(fpos(tp('1.'), unique=False, precision=4, trim='-'), + "1") + assert_equal(fpos(tp('1.2'), unique=False, precision=4, trim='-'), + "1.2" if tp != np.float16 else "1.2002") + assert_equal(fpos(tp('1.'), trim='-'), "1") + assert_equal(fpos(tp('1.001'), precision=1, trim='-'), "1") + + @pytest.mark.parametrize("tp", available_float_dtypes) + @pytest.mark.parametrize("pad_val", [10**5, np.iinfo("int32").max]) + def test_dragon4_positional_interface_overflow(self, tp, pad_val): + # test is flaky for musllinux on np.float128 + if IS_MUSL and tp == np.float128: + pytest.skip("Skipping flaky test of float128 on musllinux") + + fpos = np.format_float_positional + + #gh-28068 + with pytest.raises(RuntimeError, + match="Float formating result too large"): + fpos(tp('1.047'), unique=False, precision=pad_val) + + with pytest.raises(RuntimeError, + match="Float formating result too large"): + fpos(tp('1.047'), precision=2, pad_left=pad_val) + + with pytest.raises(RuntimeError, + match="Float formating result too large"): + fpos(tp('1.047'), precision=2, pad_right=pad_val) + + @pytest.mark.parametrize("tp", available_float_dtypes) + def test_dragon4_scientific_interface(self, tp): + # test is flaky for musllinux on np.float128 + if IS_MUSL and tp == np.float128: + pytest.skip("Skipping flaky test of float128 on musllinux") + + fsci = np.format_float_scientific + + # test exp_digits + assert_equal(fsci(tp('1.23e1'), exp_digits=5), "1.23e+00001") + + # test fixed (non-unique) mode + assert_equal(fsci(tp('1.0'), unique=False, precision=4), + "1.0000e+00") + + @pytest.mark.skipif(not platform.machine().startswith("ppc64"), + reason="only applies to ppc float128 values") + def test_ppc64_ibm_double_double128(self): + # check that the precision decreases once we get into the subnormal + # range. Unlike float64, this starts around 1e-292 instead of 1e-308, + # which happens when the first double is normal and the second is + # subnormal. + x = np.float128('2.123123123123123123123123123123123e-286') + got = [str(x/np.float128('2e' + str(i))) for i in range(0,40)] + expected = [ + "1.06156156156156156156156156156157e-286", + "1.06156156156156156156156156156158e-287", + "1.06156156156156156156156156156159e-288", + "1.0615615615615615615615615615616e-289", + "1.06156156156156156156156156156157e-290", + "1.06156156156156156156156156156156e-291", + "1.0615615615615615615615615615616e-292", + "1.0615615615615615615615615615615e-293", + "1.061561561561561561561561561562e-294", + "1.06156156156156156156156156155e-295", + "1.0615615615615615615615615616e-296", + "1.06156156156156156156156156e-297", + "1.06156156156156156156156157e-298", + "1.0615615615615615615615616e-299", + "1.06156156156156156156156e-300", + "1.06156156156156156156155e-301", + "1.0615615615615615615616e-302", + "1.061561561561561561562e-303", + "1.06156156156156156156e-304", + "1.0615615615615615618e-305", + "1.06156156156156156e-306", + "1.06156156156156157e-307", + "1.0615615615615616e-308", + "1.06156156156156e-309", + "1.06156156156157e-310", + "1.0615615615616e-311", + "1.06156156156e-312", + "1.06156156154e-313", + "1.0615615616e-314", + "1.06156156e-315", + "1.06156155e-316", + "1.061562e-317", + "1.06156e-318", + "1.06155e-319", + "1.0617e-320", + "1.06e-321", + "1.04e-322", + "1e-323", + "0.0", + "0.0"] + assert_equal(got, expected) + + # Note: we follow glibc behavior, but it (or gcc) might not be right. + # In particular we can get two values that print the same but are not + # equal: + a = np.float128('2')/np.float128('3') + b = np.float128(str(a)) + assert_equal(str(a), str(b)) + assert_(a != b) + + def float32_roundtrip(self): + # gh-9360 + x = np.float32(1024 - 2**-14) + y = np.float32(1024 - 2**-13) + assert_(repr(x) != repr(y)) + assert_equal(np.float32(repr(x)), x) + assert_equal(np.float32(repr(y)), y) + + def float64_vs_python(self): + # gh-2643, gh-6136, gh-6908 + assert_equal(repr(np.float64(0.1)), repr(0.1)) + assert_(repr(np.float64(0.20000000000000004)) != repr(0.2)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_shape_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_shape_base.py new file mode 100644 index 0000000000000000000000000000000000000000..8ae0125e5b175f684d71579976b9e40dbc7cf523 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_shape_base.py @@ -0,0 +1,860 @@ +import pytest +import numpy as np +from numpy._core import ( + array, arange, atleast_1d, atleast_2d, atleast_3d, block, vstack, hstack, + newaxis, concatenate, stack + ) +from numpy.exceptions import AxisError +from numpy._core.shape_base import (_block_dispatcher, _block_setup, + _block_concatenate, _block_slicing) +from numpy.testing import ( + assert_, assert_raises, assert_array_equal, assert_equal, + assert_raises_regex, assert_warns, IS_PYPY + ) + + +class TestAtleast1d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_1d(a), atleast_1d(b)] + desired = [array([1]), array([2])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [array([1, 2]), array([2, 3])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_r1array(self): + """ Test to make sure equivalent Travis O's r1array function + """ + assert_(atleast_1d(3).shape == (1,)) + assert_(atleast_1d(3j).shape == (1,)) + assert_(atleast_1d(3.0).shape == (1,)) + assert_(atleast_1d([[2, 3], [4, 5]]).shape == (2, 2)) + + +class TestAtleast2d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_2d(a), atleast_2d(b)] + desired = [array([[1]]), array([[2]])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [array([[1, 2]]), array([[2, 3]])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_r2array(self): + """ Test to make sure equivalent Travis O's r2array function + """ + assert_(atleast_2d(3).shape == (1, 1)) + assert_(atleast_2d([3j, 1]).shape == (1, 2)) + assert_(atleast_2d([[[3, 1], [4, 5]], [[3, 5], [1, 2]]]).shape == (2, 2, 2)) + + +class TestAtleast3d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_3d(a), atleast_3d(b)] + desired = [array([[[1]]]), array([[[2]]])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [array([[[1], [2]]]), array([[[2], [3]]])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [a[:,:, newaxis], b[:,:, newaxis]] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + +class TestHstack: + def test_non_iterable(self): + assert_raises(TypeError, hstack, 1) + + def test_empty_input(self): + assert_raises(ValueError, hstack, ()) + + def test_0D_array(self): + a = array(1) + b = array(2) + res = hstack([a, b]) + desired = array([1, 2]) + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1]) + b = array([2]) + res = hstack([a, b]) + desired = array([1, 2]) + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1], [2]]) + b = array([[1], [2]]) + res = hstack([a, b]) + desired = array([[1, 1], [2, 2]]) + assert_array_equal(res, desired) + + def test_generator(self): + with pytest.raises(TypeError, match="arrays to stack must be"): + hstack(np.arange(3) for _ in range(2)) + with pytest.raises(TypeError, match="arrays to stack must be"): + hstack((x for x in np.ones((3, 2)))) + + def test_casting_and_dtype(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.hstack((a, b), casting="unsafe", dtype=np.int64) + expected_res = np.array([1, 2, 3, 2, 3, 4]) + assert_array_equal(res, expected_res) + + def test_casting_and_dtype_type_error(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + with pytest.raises(TypeError): + hstack((a, b), casting="safe", dtype=np.int64) + + +class TestVstack: + def test_non_iterable(self): + assert_raises(TypeError, vstack, 1) + + def test_empty_input(self): + assert_raises(ValueError, vstack, ()) + + def test_0D_array(self): + a = array(1) + b = array(2) + res = vstack([a, b]) + desired = array([[1], [2]]) + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1]) + b = array([2]) + res = vstack([a, b]) + desired = array([[1], [2]]) + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1], [2]]) + b = array([[1], [2]]) + res = vstack([a, b]) + desired = array([[1], [2], [1], [2]]) + assert_array_equal(res, desired) + + def test_2D_array2(self): + a = array([1, 2]) + b = array([1, 2]) + res = vstack([a, b]) + desired = array([[1, 2], [1, 2]]) + assert_array_equal(res, desired) + + def test_generator(self): + with pytest.raises(TypeError, match="arrays to stack must be"): + vstack(np.arange(3) for _ in range(2)) + + def test_casting_and_dtype(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.vstack((a, b), casting="unsafe", dtype=np.int64) + expected_res = np.array([[1, 2, 3], [2, 3, 4]]) + assert_array_equal(res, expected_res) + + def test_casting_and_dtype_type_error(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + with pytest.raises(TypeError): + vstack((a, b), casting="safe", dtype=np.int64) + + + +class TestConcatenate: + def test_returns_copy(self): + a = np.eye(3) + b = np.concatenate([a]) + b[0, 0] = 2 + assert b[0, 0] != a[0, 0] + + def test_exceptions(self): + # test axis must be in bounds + for ndim in [1, 2, 3]: + a = np.ones((1,)*ndim) + np.concatenate((a, a), axis=0) # OK + assert_raises(AxisError, np.concatenate, (a, a), axis=ndim) + assert_raises(AxisError, np.concatenate, (a, a), axis=-(ndim + 1)) + + # Scalars cannot be concatenated + assert_raises(ValueError, concatenate, (0,)) + assert_raises(ValueError, concatenate, (np.array(0),)) + + # dimensionality must match + assert_raises_regex( + ValueError, + r"all the input arrays must have same number of dimensions, but " + r"the array at index 0 has 1 dimension\(s\) and the array at " + r"index 1 has 2 dimension\(s\)", + np.concatenate, (np.zeros(1), np.zeros((1, 1)))) + + # test shapes must match except for concatenation axis + a = np.ones((1, 2, 3)) + b = np.ones((2, 2, 3)) + axis = list(range(3)) + for i in range(3): + np.concatenate((a, b), axis=axis[0]) # OK + assert_raises_regex( + ValueError, + "all the input array dimensions except for the concatenation axis " + "must match exactly, but along dimension {}, the array at " + "index 0 has size 1 and the array at index 1 has size 2" + .format(i), + np.concatenate, (a, b), axis=axis[1]) + assert_raises(ValueError, np.concatenate, (a, b), axis=axis[2]) + a = np.moveaxis(a, -1, 0) + b = np.moveaxis(b, -1, 0) + axis.append(axis.pop(0)) + + # No arrays to concatenate raises ValueError + assert_raises(ValueError, concatenate, ()) + + def test_concatenate_axis_None(self): + a = np.arange(4, dtype=np.float64).reshape((2, 2)) + b = list(range(3)) + c = ['x'] + r = np.concatenate((a, a), axis=None) + assert_equal(r.dtype, a.dtype) + assert_equal(r.ndim, 1) + r = np.concatenate((a, b), axis=None) + assert_equal(r.size, a.size + len(b)) + assert_equal(r.dtype, a.dtype) + r = np.concatenate((a, b, c), axis=None, dtype="U") + d = array(['0.0', '1.0', '2.0', '3.0', + '0', '1', '2', 'x']) + assert_array_equal(r, d) + + out = np.zeros(a.size + len(b)) + r = np.concatenate((a, b), axis=None) + rout = np.concatenate((a, b), axis=None, out=out) + assert_(out is rout) + assert_equal(r, rout) + + def test_large_concatenate_axis_None(self): + # When no axis is given, concatenate uses flattened versions. + # This also had a bug with many arrays (see gh-5979). + x = np.arange(1, 100) + r = np.concatenate(x, None) + assert_array_equal(x, r) + + # Once upon a time, this was the same as `axis=None` now it fails + # (with an unspecified error, as multiple things are wrong here) + with pytest.raises(ValueError): + np.concatenate(x, 100) + + def test_concatenate(self): + # Test concatenate function + # One sequence returns unmodified (but as array) + r4 = list(range(4)) + assert_array_equal(concatenate((r4,)), r4) + # Any sequence + assert_array_equal(concatenate((tuple(r4),)), r4) + assert_array_equal(concatenate((array(r4),)), r4) + # 1D default concatenation + r3 = list(range(3)) + assert_array_equal(concatenate((r4, r3)), r4 + r3) + # Mixed sequence types + assert_array_equal(concatenate((tuple(r4), r3)), r4 + r3) + assert_array_equal(concatenate((array(r4), r3)), r4 + r3) + # Explicit axis specification + assert_array_equal(concatenate((r4, r3), 0), r4 + r3) + # Including negative + assert_array_equal(concatenate((r4, r3), -1), r4 + r3) + # 2D + a23 = array([[10, 11, 12], [13, 14, 15]]) + a13 = array([[0, 1, 2]]) + res = array([[10, 11, 12], [13, 14, 15], [0, 1, 2]]) + assert_array_equal(concatenate((a23, a13)), res) + assert_array_equal(concatenate((a23, a13), 0), res) + assert_array_equal(concatenate((a23.T, a13.T), 1), res.T) + assert_array_equal(concatenate((a23.T, a13.T), -1), res.T) + # Arrays much match shape + assert_raises(ValueError, concatenate, (a23.T, a13.T), 0) + # 3D + res = arange(2 * 3 * 7).reshape((2, 3, 7)) + a0 = res[..., :4] + a1 = res[..., 4:6] + a2 = res[..., 6:] + assert_array_equal(concatenate((a0, a1, a2), 2), res) + assert_array_equal(concatenate((a0, a1, a2), -1), res) + assert_array_equal(concatenate((a0.T, a1.T, a2.T), 0), res.T) + + out = res.copy() + rout = concatenate((a0, a1, a2), 2, out=out) + assert_(out is rout) + assert_equal(res, rout) + + @pytest.mark.skipif(IS_PYPY, reason="PYPY handles sq_concat, nb_add differently than cpython") + def test_operator_concat(self): + import operator + a = array([1, 2]) + b = array([3, 4]) + n = [1,2] + res = array([1, 2, 3, 4]) + assert_raises(TypeError, operator.concat, a, b) + assert_raises(TypeError, operator.concat, a, n) + assert_raises(TypeError, operator.concat, n, a) + assert_raises(TypeError, operator.concat, a, 1) + assert_raises(TypeError, operator.concat, 1, a) + + def test_bad_out_shape(self): + a = array([1, 2]) + b = array([3, 4]) + + assert_raises(ValueError, concatenate, (a, b), out=np.empty(5)) + assert_raises(ValueError, concatenate, (a, b), out=np.empty((4,1))) + assert_raises(ValueError, concatenate, (a, b), out=np.empty((1,4))) + concatenate((a, b), out=np.empty(4)) + + @pytest.mark.parametrize("axis", [None, 0]) + @pytest.mark.parametrize("out_dtype", ["c8", "f4", "f8", ">f8", "i8", "S4"]) + @pytest.mark.parametrize("casting", + ['no', 'equiv', 'safe', 'same_kind', 'unsafe']) + def test_out_and_dtype(self, axis, out_dtype, casting): + # Compare usage of `out=out` with `dtype=out.dtype` + out = np.empty(4, dtype=out_dtype) + to_concat = (array([1.1, 2.2]), array([3.3, 4.4])) + + if not np.can_cast(to_concat[0], out_dtype, casting=casting): + with assert_raises(TypeError): + concatenate(to_concat, out=out, axis=axis, casting=casting) + with assert_raises(TypeError): + concatenate(to_concat, dtype=out.dtype, + axis=axis, casting=casting) + else: + res_out = concatenate(to_concat, out=out, + axis=axis, casting=casting) + res_dtype = concatenate(to_concat, dtype=out.dtype, + axis=axis, casting=casting) + assert res_out is out + assert_array_equal(out, res_dtype) + assert res_dtype.dtype == out_dtype + + with assert_raises(TypeError): + concatenate(to_concat, out=out, dtype=out_dtype, axis=axis) + + @pytest.mark.parametrize("axis", [None, 0]) + @pytest.mark.parametrize("string_dt", ["S", "U", "S0", "U0"]) + @pytest.mark.parametrize("arrs", + [([0.],), ([0.], [1]), ([0], ["string"], [1.])]) + def test_dtype_with_promotion(self, arrs, string_dt, axis): + # Note that U0 and S0 should be deprecated eventually and changed to + # actually give the empty string result (together with `np.array`) + res = np.concatenate(arrs, axis=axis, dtype=string_dt, casting="unsafe") + # The actual dtype should be identical to a cast (of a double array): + assert res.dtype == np.array(1.).astype(string_dt).dtype + + @pytest.mark.parametrize("axis", [None, 0]) + def test_string_dtype_does_not_inspect(self, axis): + with pytest.raises(TypeError): + np.concatenate(([None], [1]), dtype="S", axis=axis) + with pytest.raises(TypeError): + np.concatenate(([None], [1]), dtype="U", axis=axis) + + @pytest.mark.parametrize("axis", [None, 0]) + def test_subarray_error(self, axis): + with pytest.raises(TypeError, match=".*subarray dtype"): + np.concatenate(([1], [1]), dtype="(2,)i", axis=axis) + + +def test_stack(): + # non-iterable input + assert_raises(TypeError, stack, 1) + + # 0d input + for input_ in [(1, 2, 3), + [np.int32(1), np.int32(2), np.int32(3)], + [np.array(1), np.array(2), np.array(3)]]: + assert_array_equal(stack(input_), [1, 2, 3]) + # 1d input examples + a = np.array([1, 2, 3]) + b = np.array([4, 5, 6]) + r1 = array([[1, 2, 3], [4, 5, 6]]) + assert_array_equal(np.stack((a, b)), r1) + assert_array_equal(np.stack((a, b), axis=1), r1.T) + # all input types + assert_array_equal(np.stack([a, b]), r1) + assert_array_equal(np.stack(array([a, b])), r1) + # all shapes for 1d input + arrays = [np.random.randn(3) for _ in range(10)] + axes = [0, 1, -1, -2] + expected_shapes = [(10, 3), (3, 10), (3, 10), (10, 3)] + for axis, expected_shape in zip(axes, expected_shapes): + assert_equal(np.stack(arrays, axis).shape, expected_shape) + assert_raises_regex(AxisError, 'out of bounds', stack, arrays, axis=2) + assert_raises_regex(AxisError, 'out of bounds', stack, arrays, axis=-3) + # all shapes for 2d input + arrays = [np.random.randn(3, 4) for _ in range(10)] + axes = [0, 1, 2, -1, -2, -3] + expected_shapes = [(10, 3, 4), (3, 10, 4), (3, 4, 10), + (3, 4, 10), (3, 10, 4), (10, 3, 4)] + for axis, expected_shape in zip(axes, expected_shapes): + assert_equal(np.stack(arrays, axis).shape, expected_shape) + # empty arrays + assert_(stack([[], [], []]).shape == (3, 0)) + assert_(stack([[], [], []], axis=1).shape == (0, 3)) + # out + out = np.zeros_like(r1) + np.stack((a, b), out=out) + assert_array_equal(out, r1) + # edge cases + assert_raises_regex(ValueError, 'need at least one array', stack, []) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [1, np.arange(3)]) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(3), 1]) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(3), 1], axis=1) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.zeros((3, 3)), np.zeros(3)], axis=1) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(2), np.arange(3)]) + + # do not accept generators + with pytest.raises(TypeError, match="arrays to stack must be"): + stack(x for x in range(3)) + + #casting and dtype test + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.stack((a, b), axis=1, casting="unsafe", dtype=np.int64) + expected_res = np.array([[1, 2], [2, 3], [3, 4]]) + assert_array_equal(res, expected_res) + #casting and dtype with TypeError + with assert_raises(TypeError): + stack((a, b), dtype=np.int64, axis=1, casting="safe") + + +def test_unstack(): + a = np.arange(24).reshape((2, 3, 4)) + + for stacks in [np.unstack(a), + np.unstack(a, axis=0), + np.unstack(a, axis=-3)]: + assert isinstance(stacks, tuple) + assert len(stacks) == 2 + assert_array_equal(stacks[0], a[0]) + assert_array_equal(stacks[1], a[1]) + + for stacks in [np.unstack(a, axis=1), + np.unstack(a, axis=-2)]: + assert isinstance(stacks, tuple) + assert len(stacks) == 3 + assert_array_equal(stacks[0], a[:, 0]) + assert_array_equal(stacks[1], a[:, 1]) + assert_array_equal(stacks[2], a[:, 2]) + + for stacks in [np.unstack(a, axis=2), + np.unstack(a, axis=-1)]: + assert isinstance(stacks, tuple) + assert len(stacks) == 4 + assert_array_equal(stacks[0], a[:, :, 0]) + assert_array_equal(stacks[1], a[:, :, 1]) + assert_array_equal(stacks[2], a[:, :, 2]) + assert_array_equal(stacks[3], a[:, :, 3]) + + assert_raises(ValueError, np.unstack, a, axis=3) + assert_raises(ValueError, np.unstack, a, axis=-4) + assert_raises(ValueError, np.unstack, np.array(0), axis=0) + + +@pytest.mark.parametrize("axis", [0]) +@pytest.mark.parametrize("out_dtype", ["c8", "f4", "f8", ">f8", "i8"]) +@pytest.mark.parametrize("casting", + ['no', 'equiv', 'safe', 'same_kind', 'unsafe']) +def test_stack_out_and_dtype(axis, out_dtype, casting): + to_concat = (array([1, 2]), array([3, 4])) + res = array([[1, 2], [3, 4]]) + out = np.zeros_like(res) + + if not np.can_cast(to_concat[0], out_dtype, casting=casting): + with assert_raises(TypeError): + stack(to_concat, dtype=out_dtype, + axis=axis, casting=casting) + else: + res_out = stack(to_concat, out=out, + axis=axis, casting=casting) + res_dtype = stack(to_concat, dtype=out_dtype, + axis=axis, casting=casting) + assert res_out is out + assert_array_equal(out, res_dtype) + assert res_dtype.dtype == out_dtype + + with assert_raises(TypeError): + stack(to_concat, out=out, dtype=out_dtype, axis=axis) + + +class TestBlock: + @pytest.fixture(params=['block', 'force_concatenate', 'force_slicing']) + def block(self, request): + # blocking small arrays and large arrays go through different paths. + # the algorithm is triggered depending on the number of element + # copies required. + # We define a test fixture that forces most tests to go through + # both code paths. + # Ultimately, this should be removed if a single algorithm is found + # to be faster for both small and large arrays. + def _block_force_concatenate(arrays): + arrays, list_ndim, result_ndim, _ = _block_setup(arrays) + return _block_concatenate(arrays, list_ndim, result_ndim) + + def _block_force_slicing(arrays): + arrays, list_ndim, result_ndim, _ = _block_setup(arrays) + return _block_slicing(arrays, list_ndim, result_ndim) + + if request.param == 'force_concatenate': + return _block_force_concatenate + elif request.param == 'force_slicing': + return _block_force_slicing + elif request.param == 'block': + return block + else: + raise ValueError('Unknown blocking request. There is a typo in the tests.') + + def test_returns_copy(self, block): + a = np.eye(3) + b = block(a) + b[0, 0] = 2 + assert b[0, 0] != a[0, 0] + + def test_block_total_size_estimate(self, block): + _, _, _, total_size = _block_setup([1]) + assert total_size == 1 + + _, _, _, total_size = _block_setup([[1]]) + assert total_size == 1 + + _, _, _, total_size = _block_setup([[1, 1]]) + assert total_size == 2 + + _, _, _, total_size = _block_setup([[1], [1]]) + assert total_size == 2 + + _, _, _, total_size = _block_setup([[1, 2], [3, 4]]) + assert total_size == 4 + + def test_block_simple_row_wise(self, block): + a_2d = np.ones((2, 2)) + b_2d = 2 * a_2d + desired = np.array([[1, 1, 2, 2], + [1, 1, 2, 2]]) + result = block([a_2d, b_2d]) + assert_equal(desired, result) + + def test_block_simple_column_wise(self, block): + a_2d = np.ones((2, 2)) + b_2d = 2 * a_2d + expected = np.array([[1, 1], + [1, 1], + [2, 2], + [2, 2]]) + result = block([[a_2d], [b_2d]]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_row_wise(self, block): + # # # 1-D vectors are treated as row arrays + a = np.array([1, 2, 3]) + b = np.array([2, 3, 4]) + expected = np.array([1, 2, 3, 2, 3, 4]) + result = block([a, b]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_multiple_rows(self, block): + a = np.array([1, 2, 3]) + b = np.array([2, 3, 4]) + expected = np.array([[1, 2, 3, 2, 3, 4], + [1, 2, 3, 2, 3, 4]]) + result = block([[a, b], [a, b]]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_column_wise(self, block): + # # # 1-D vectors are treated as row arrays + a_1d = np.array([1, 2, 3]) + b_1d = np.array([2, 3, 4]) + expected = np.array([[1, 2, 3], + [2, 3, 4]]) + result = block([[a_1d], [b_1d]]) + assert_equal(expected, result) + + def test_block_mixed_1d_and_2d(self, block): + a_2d = np.ones((2, 2)) + b_1d = np.array([2, 2]) + result = block([[a_2d], [b_1d]]) + expected = np.array([[1, 1], + [1, 1], + [2, 2]]) + assert_equal(expected, result) + + def test_block_complicated(self, block): + # a bit more complicated + one_2d = np.array([[1, 1, 1]]) + two_2d = np.array([[2, 2, 2]]) + three_2d = np.array([[3, 3, 3, 3, 3, 3]]) + four_1d = np.array([4, 4, 4, 4, 4, 4]) + five_0d = np.array(5) + six_1d = np.array([6, 6, 6, 6, 6]) + zero_2d = np.zeros((2, 6)) + + expected = np.array([[1, 1, 1, 2, 2, 2], + [3, 3, 3, 3, 3, 3], + [4, 4, 4, 4, 4, 4], + [5, 6, 6, 6, 6, 6], + [0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0]]) + + result = block([[one_2d, two_2d], + [three_2d], + [four_1d], + [five_0d, six_1d], + [zero_2d]]) + assert_equal(result, expected) + + def test_nested(self, block): + one = np.array([1, 1, 1]) + two = np.array([[2, 2, 2], [2, 2, 2], [2, 2, 2]]) + three = np.array([3, 3, 3]) + four = np.array([4, 4, 4]) + five = np.array(5) + six = np.array([6, 6, 6, 6, 6]) + zero = np.zeros((2, 6)) + + result = block([ + [ + block([ + [one], + [three], + [four] + ]), + two + ], + [five, six], + [zero] + ]) + expected = np.array([[1, 1, 1, 2, 2, 2], + [3, 3, 3, 2, 2, 2], + [4, 4, 4, 2, 2, 2], + [5, 6, 6, 6, 6, 6], + [0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0]]) + + assert_equal(result, expected) + + def test_3d(self, block): + a000 = np.ones((2, 2, 2), int) * 1 + + a100 = np.ones((3, 2, 2), int) * 2 + a010 = np.ones((2, 3, 2), int) * 3 + a001 = np.ones((2, 2, 3), int) * 4 + + a011 = np.ones((2, 3, 3), int) * 5 + a101 = np.ones((3, 2, 3), int) * 6 + a110 = np.ones((3, 3, 2), int) * 7 + + a111 = np.ones((3, 3, 3), int) * 8 + + result = block([ + [ + [a000, a001], + [a010, a011], + ], + [ + [a100, a101], + [a110, a111], + ] + ]) + expected = array([[[1, 1, 4, 4, 4], + [1, 1, 4, 4, 4], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5]], + + [[1, 1, 4, 4, 4], + [1, 1, 4, 4, 4], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]]]) + + assert_array_equal(result, expected) + + def test_block_with_mismatched_shape(self, block): + a = np.array([0, 0]) + b = np.eye(2) + assert_raises(ValueError, block, [a, b]) + assert_raises(ValueError, block, [b, a]) + + to_block = [[np.ones((2,3)), np.ones((2,2))], + [np.ones((2,2)), np.ones((2,2))]] + assert_raises(ValueError, block, to_block) + def test_no_lists(self, block): + assert_equal(block(1), np.array(1)) + assert_equal(block(np.eye(3)), np.eye(3)) + + def test_invalid_nesting(self, block): + msg = 'depths are mismatched' + assert_raises_regex(ValueError, msg, block, [1, [2]]) + assert_raises_regex(ValueError, msg, block, [1, []]) + assert_raises_regex(ValueError, msg, block, [[1], 2]) + assert_raises_regex(ValueError, msg, block, [[], 2]) + assert_raises_regex(ValueError, msg, block, [ + [[1], [2]], + [[3, 4]], + [5] # missing brackets + ]) + + def test_empty_lists(self, block): + assert_raises_regex(ValueError, 'empty', block, []) + assert_raises_regex(ValueError, 'empty', block, [[]]) + assert_raises_regex(ValueError, 'empty', block, [[1], []]) + + def test_tuple(self, block): + assert_raises_regex(TypeError, 'tuple', block, ([1, 2], [3, 4])) + assert_raises_regex(TypeError, 'tuple', block, [(1, 2), (3, 4)]) + + def test_different_ndims(self, block): + a = 1. + b = 2 * np.ones((1, 2)) + c = 3 * np.ones((1, 1, 3)) + + result = block([a, b, c]) + expected = np.array([[[1., 2., 2., 3., 3., 3.]]]) + + assert_equal(result, expected) + + def test_different_ndims_depths(self, block): + a = 1. + b = 2 * np.ones((1, 2)) + c = 3 * np.ones((1, 2, 3)) + + result = block([[a, b], [c]]) + expected = np.array([[[1., 2., 2.], + [3., 3., 3.], + [3., 3., 3.]]]) + + assert_equal(result, expected) + + def test_block_memory_order(self, block): + # 3D + arr_c = np.zeros((3,)*3, order='C') + arr_f = np.zeros((3,)*3, order='F') + + b_c = [[[arr_c, arr_c], + [arr_c, arr_c]], + [[arr_c, arr_c], + [arr_c, arr_c]]] + + b_f = [[[arr_f, arr_f], + [arr_f, arr_f]], + [[arr_f, arr_f], + [arr_f, arr_f]]] + + assert block(b_c).flags['C_CONTIGUOUS'] + assert block(b_f).flags['F_CONTIGUOUS'] + + arr_c = np.zeros((3, 3), order='C') + arr_f = np.zeros((3, 3), order='F') + # 2D + b_c = [[arr_c, arr_c], + [arr_c, arr_c]] + + b_f = [[arr_f, arr_f], + [arr_f, arr_f]] + + assert block(b_c).flags['C_CONTIGUOUS'] + assert block(b_f).flags['F_CONTIGUOUS'] + + +def test_block_dispatcher(): + class ArrayLike: + pass + a = ArrayLike() + b = ArrayLike() + c = ArrayLike() + assert_equal(list(_block_dispatcher(a)), [a]) + assert_equal(list(_block_dispatcher([a])), [a]) + assert_equal(list(_block_dispatcher([a, b])), [a, b]) + assert_equal(list(_block_dispatcher([[a], [b, [c]]])), [a, b, c]) + # don't recurse into non-lists + assert_equal(list(_block_dispatcher((a, b))), [(a, b)]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd.py new file mode 100644 index 0000000000000000000000000000000000000000..a3127ec9d3c15816c71ea132fd9b07607152b24f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd.py @@ -0,0 +1,1335 @@ +# NOTE: Please avoid the use of numpy.testing since NPYV intrinsics +# may be involved in their functionality. +import itertools +import math +import operator +import re +import pytest +from numpy._core._simd import targets, clear_floatstatus, get_floatstatus +from numpy._core._multiarray_umath import __cpu_baseline__ + +def check_floatstatus(divbyzero=False, overflow=False, + underflow=False, invalid=False, + all=False): + #define NPY_FPE_DIVIDEBYZERO 1 + #define NPY_FPE_OVERFLOW 2 + #define NPY_FPE_UNDERFLOW 4 + #define NPY_FPE_INVALID 8 + err = get_floatstatus() + ret = (all or divbyzero) and (err & 1) != 0 + ret |= (all or overflow) and (err & 2) != 0 + ret |= (all or underflow) and (err & 4) != 0 + ret |= (all or invalid) and (err & 8) != 0 + return ret + +class _Test_Utility: + # submodule of the desired SIMD extension, e.g. targets["AVX512F"] + npyv = None + # the current data type suffix e.g. 's8' + sfx = None + # target name can be 'baseline' or one or more of CPU features + target_name = None + + def __getattr__(self, attr): + """ + To call NPV intrinsics without the attribute 'npyv' and + auto suffixing intrinsics according to class attribute 'sfx' + """ + return getattr(self.npyv, attr + "_" + self.sfx) + + def _x2(self, intrin_name): + return getattr(self.npyv, f"{intrin_name}_{self.sfx}x2") + + def _data(self, start=None, count=None, reverse=False): + """ + Create list of consecutive numbers according to number of vector's lanes. + """ + if start is None: + start = 1 + if count is None: + count = self.nlanes + rng = range(start, start + count) + if reverse: + rng = reversed(rng) + if self._is_fp(): + return [x / 1.0 for x in rng] + return list(rng) + + def _is_unsigned(self): + return self.sfx[0] == 'u' + + def _is_signed(self): + return self.sfx[0] == 's' + + def _is_fp(self): + return self.sfx[0] == 'f' + + def _scalar_size(self): + return int(self.sfx[1:]) + + def _int_clip(self, seq): + if self._is_fp(): + return seq + max_int = self._int_max() + min_int = self._int_min() + return [min(max(v, min_int), max_int) for v in seq] + + def _int_max(self): + if self._is_fp(): + return None + max_u = self._to_unsigned(self.setall(-1))[0] + if self._is_signed(): + return max_u // 2 + return max_u + + def _int_min(self): + if self._is_fp(): + return None + if self._is_unsigned(): + return 0 + return -(self._int_max() + 1) + + def _true_mask(self): + max_unsig = getattr(self.npyv, "setall_u" + self.sfx[1:])(-1) + return max_unsig[0] + + def _to_unsigned(self, vector): + if isinstance(vector, (list, tuple)): + return getattr(self.npyv, "load_u" + self.sfx[1:])(vector) + else: + sfx = vector.__name__.replace("npyv_", "") + if sfx[0] == "b": + cvt_intrin = "cvt_u{0}_b{0}" + else: + cvt_intrin = "reinterpret_u{0}_{1}" + return getattr(self.npyv, cvt_intrin.format(sfx[1:], sfx))(vector) + + def _pinfinity(self): + return float("inf") + + def _ninfinity(self): + return -float("inf") + + def _nan(self): + return float("nan") + + def _cpu_features(self): + target = self.target_name + if target == "baseline": + target = __cpu_baseline__ + else: + target = target.split('__') # multi-target separator + return ' '.join(target) + +class _SIMD_BOOL(_Test_Utility): + """ + To test all boolean vector types at once + """ + def _nlanes(self): + return getattr(self.npyv, "nlanes_u" + self.sfx[1:]) + + def _data(self, start=None, count=None, reverse=False): + true_mask = self._true_mask() + rng = range(self._nlanes()) + if reverse: + rng = reversed(rng) + return [true_mask if x % 2 else 0 for x in rng] + + def _load_b(self, data): + len_str = self.sfx[1:] + load = getattr(self.npyv, "load_u" + len_str) + cvt = getattr(self.npyv, f"cvt_b{len_str}_u{len_str}") + return cvt(load(data)) + + def test_operators_logical(self): + """ + Logical operations for boolean types. + Test intrinsics: + npyv_xor_##SFX, npyv_and_##SFX, npyv_or_##SFX, npyv_not_##SFX, + npyv_andc_b8, npvy_orc_b8, nvpy_xnor_b8 + """ + data_a = self._data() + data_b = self._data(reverse=True) + vdata_a = self._load_b(data_a) + vdata_b = self._load_b(data_b) + + data_and = [a & b for a, b in zip(data_a, data_b)] + vand = getattr(self, "and")(vdata_a, vdata_b) + assert vand == data_and + + data_or = [a | b for a, b in zip(data_a, data_b)] + vor = getattr(self, "or")(vdata_a, vdata_b) + assert vor == data_or + + data_xor = [a ^ b for a, b in zip(data_a, data_b)] + vxor = self.xor(vdata_a, vdata_b) + assert vxor == data_xor + + vnot = getattr(self, "not")(vdata_a) + assert vnot == data_b + + # among the boolean types, andc, orc and xnor only support b8 + if self.sfx not in ("b8"): + return + + data_andc = [(a & ~b) & 0xFF for a, b in zip(data_a, data_b)] + vandc = self.andc(vdata_a, vdata_b) + assert data_andc == vandc + + data_orc = [(a | ~b) & 0xFF for a, b in zip(data_a, data_b)] + vorc = self.orc(vdata_a, vdata_b) + assert data_orc == vorc + + data_xnor = [~(a ^ b) & 0xFF for a, b in zip(data_a, data_b)] + vxnor = self.xnor(vdata_a, vdata_b) + assert data_xnor == vxnor + + def test_tobits(self): + data2bits = lambda data: sum([int(x != 0) << i for i, x in enumerate(data, 0)]) + for data in (self._data(), self._data(reverse=True)): + vdata = self._load_b(data) + data_bits = data2bits(data) + tobits = self.tobits(vdata) + bin_tobits = bin(tobits) + assert bin_tobits == bin(data_bits) + + def test_pack(self): + """ + Pack multiple vectors into one + Test intrinsics: + npyv_pack_b8_b16 + npyv_pack_b8_b32 + npyv_pack_b8_b64 + """ + if self.sfx not in ("b16", "b32", "b64"): + return + # create the vectors + data = self._data() + rdata = self._data(reverse=True) + vdata = self._load_b(data) + vrdata = self._load_b(rdata) + pack_simd = getattr(self.npyv, f"pack_b8_{self.sfx}") + # for scalar execution, concatenate the elements of the multiple lists + # into a single list (spack) and then iterate over the elements of + # the created list applying a mask to capture the first byte of them. + if self.sfx == "b16": + spack = [(i & 0xFF) for i in (list(rdata) + list(data))] + vpack = pack_simd(vrdata, vdata) + elif self.sfx == "b32": + spack = [(i & 0xFF) for i in (2*list(rdata) + 2*list(data))] + vpack = pack_simd(vrdata, vrdata, vdata, vdata) + elif self.sfx == "b64": + spack = [(i & 0xFF) for i in (4*list(rdata) + 4*list(data))] + vpack = pack_simd(vrdata, vrdata, vrdata, vrdata, + vdata, vdata, vdata, vdata) + assert vpack == spack + + @pytest.mark.parametrize("intrin", ["any", "all"]) + @pytest.mark.parametrize("data", ( + [-1, 0], + [0, -1], + [-1], + [0] + )) + def test_operators_crosstest(self, intrin, data): + """ + Test intrinsics: + npyv_any_##SFX + npyv_all_##SFX + """ + data_a = self._load_b(data * self._nlanes()) + func = eval(intrin) + intrin = getattr(self, intrin) + desired = func(data_a) + simd = intrin(data_a) + assert not not simd == desired + +class _SIMD_INT(_Test_Utility): + """ + To test all integer vector types at once + """ + def test_operators_shift(self): + if self.sfx in ("u8", "s8"): + return + + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + for count in range(self._scalar_size()): + # load to cast + data_shl_a = self.load([a << count for a in data_a]) + # left shift + shl = self.shl(vdata_a, count) + assert shl == data_shl_a + # load to cast + data_shr_a = self.load([a >> count for a in data_a]) + # right shift + shr = self.shr(vdata_a, count) + assert shr == data_shr_a + + # shift by zero or max or out-range immediate constant is not applicable and illogical + for count in range(1, self._scalar_size()): + # load to cast + data_shl_a = self.load([a << count for a in data_a]) + # left shift by an immediate constant + shli = self.shli(vdata_a, count) + assert shli == data_shl_a + # load to cast + data_shr_a = self.load([a >> count for a in data_a]) + # right shift by an immediate constant + shri = self.shri(vdata_a, count) + assert shri == data_shr_a + + def test_arithmetic_subadd_saturated(self): + if self.sfx in ("u32", "s32", "u64", "s64"): + return + + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + data_adds = self._int_clip([a + b for a, b in zip(data_a, data_b)]) + adds = self.adds(vdata_a, vdata_b) + assert adds == data_adds + + data_subs = self._int_clip([a - b for a, b in zip(data_a, data_b)]) + subs = self.subs(vdata_a, vdata_b) + assert subs == data_subs + + def test_math_max_min(self): + data_a = self._data() + data_b = self._data(self.nlanes) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + data_max = [max(a, b) for a, b in zip(data_a, data_b)] + simd_max = self.max(vdata_a, vdata_b) + assert simd_max == data_max + + data_min = [min(a, b) for a, b in zip(data_a, data_b)] + simd_min = self.min(vdata_a, vdata_b) + assert simd_min == data_min + + @pytest.mark.parametrize("start", [-100, -10000, 0, 100, 10000]) + def test_reduce_max_min(self, start): + """ + Test intrinsics: + npyv_reduce_max_##sfx + npyv_reduce_min_##sfx + """ + vdata_a = self.load(self._data(start)) + assert self.reduce_max(vdata_a) == max(vdata_a) + assert self.reduce_min(vdata_a) == min(vdata_a) + + +class _SIMD_FP32(_Test_Utility): + """ + To only test single precision + """ + def test_conversions(self): + """ + Round to nearest even integer, assume CPU control register is set to rounding. + Test intrinsics: + npyv_round_s32_##SFX + """ + features = self._cpu_features() + if not self.npyv.simd_f64 and re.match(r".*(NEON|ASIMD)", features): + # very costly to emulate nearest even on Armv7 + # instead we round halves to up. e.g. 0.5 -> 1, -0.5 -> -1 + _round = lambda v: int(v + (0.5 if v >= 0 else -0.5)) + else: + _round = round + vdata_a = self.load(self._data()) + vdata_a = self.sub(vdata_a, self.setall(0.5)) + data_round = [_round(x) for x in vdata_a] + vround = self.round_s32(vdata_a) + assert vround == data_round + +class _SIMD_FP64(_Test_Utility): + """ + To only test double precision + """ + def test_conversions(self): + """ + Round to nearest even integer, assume CPU control register is set to rounding. + Test intrinsics: + npyv_round_s32_##SFX + """ + vdata_a = self.load(self._data()) + vdata_a = self.sub(vdata_a, self.setall(0.5)) + vdata_b = self.mul(vdata_a, self.setall(-1.5)) + data_round = [round(x) for x in list(vdata_a) + list(vdata_b)] + vround = self.round_s32(vdata_a, vdata_b) + assert vround == data_round + +class _SIMD_FP(_Test_Utility): + """ + To test all float vector types at once + """ + def test_arithmetic_fused(self): + vdata_a, vdata_b, vdata_c = [self.load(self._data())]*3 + vdata_cx2 = self.add(vdata_c, vdata_c) + # multiply and add, a*b + c + data_fma = self.load([a * b + c for a, b, c in zip(vdata_a, vdata_b, vdata_c)]) + fma = self.muladd(vdata_a, vdata_b, vdata_c) + assert fma == data_fma + # multiply and subtract, a*b - c + fms = self.mulsub(vdata_a, vdata_b, vdata_c) + data_fms = self.sub(data_fma, vdata_cx2) + assert fms == data_fms + # negate multiply and add, -(a*b) + c + nfma = self.nmuladd(vdata_a, vdata_b, vdata_c) + data_nfma = self.sub(vdata_cx2, data_fma) + assert nfma == data_nfma + # negate multiply and subtract, -(a*b) - c + nfms = self.nmulsub(vdata_a, vdata_b, vdata_c) + data_nfms = self.mul(data_fma, self.setall(-1)) + assert nfms == data_nfms + # multiply, add for odd elements and subtract even elements. + # (a * b) -+ c + fmas = list(self.muladdsub(vdata_a, vdata_b, vdata_c)) + assert fmas[0::2] == list(data_fms)[0::2] + assert fmas[1::2] == list(data_fma)[1::2] + + def test_abs(self): + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + data = self._data() + vdata = self.load(self._data()) + + abs_cases = ((-0, 0), (ninf, pinf), (pinf, pinf), (nan, nan)) + for case, desired in abs_cases: + data_abs = [desired]*self.nlanes + vabs = self.abs(self.setall(case)) + assert vabs == pytest.approx(data_abs, nan_ok=True) + + vabs = self.abs(self.mul(vdata, self.setall(-1))) + assert vabs == data + + def test_sqrt(self): + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + data = self._data() + vdata = self.load(self._data()) + + sqrt_cases = ((-0.0, -0.0), (0.0, 0.0), (-1.0, nan), (ninf, nan), (pinf, pinf)) + for case, desired in sqrt_cases: + data_sqrt = [desired]*self.nlanes + sqrt = self.sqrt(self.setall(case)) + assert sqrt == pytest.approx(data_sqrt, nan_ok=True) + + data_sqrt = self.load([math.sqrt(x) for x in data]) # load to truncate precision + sqrt = self.sqrt(vdata) + assert sqrt == data_sqrt + + def test_square(self): + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + data = self._data() + vdata = self.load(self._data()) + # square + square_cases = ((nan, nan), (pinf, pinf), (ninf, pinf)) + for case, desired in square_cases: + data_square = [desired]*self.nlanes + square = self.square(self.setall(case)) + assert square == pytest.approx(data_square, nan_ok=True) + + data_square = [x*x for x in data] + square = self.square(vdata) + assert square == data_square + + @pytest.mark.parametrize("intrin, func", [("ceil", math.ceil), + ("trunc", math.trunc), ("floor", math.floor), ("rint", round)]) + def test_rounding(self, intrin, func): + """ + Test intrinsics: + npyv_rint_##SFX + npyv_ceil_##SFX + npyv_trunc_##SFX + npyv_floor##SFX + """ + intrin_name = intrin + intrin = getattr(self, intrin) + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + # special cases + round_cases = ((nan, nan), (pinf, pinf), (ninf, ninf)) + for case, desired in round_cases: + data_round = [desired]*self.nlanes + _round = intrin(self.setall(case)) + assert _round == pytest.approx(data_round, nan_ok=True) + + for x in range(0, 2**20, 256**2): + for w in (-1.05, -1.10, -1.15, 1.05, 1.10, 1.15): + data = self.load([(x+a)*w for a in range(self.nlanes)]) + data_round = [func(x) for x in data] + _round = intrin(data) + assert _round == data_round + + # test large numbers + for i in ( + 1.1529215045988576e+18, 4.6116860183954304e+18, + 5.902958103546122e+20, 2.3611832414184488e+21 + ): + x = self.setall(i) + y = intrin(x) + data_round = [func(n) for n in x] + assert y == data_round + + # signed zero + if intrin_name == "floor": + data_szero = (-0.0,) + else: + data_szero = (-0.0, -0.25, -0.30, -0.45, -0.5) + + for w in data_szero: + _round = self._to_unsigned(intrin(self.setall(w))) + data_round = self._to_unsigned(self.setall(-0.0)) + assert _round == data_round + + @pytest.mark.parametrize("intrin", [ + "max", "maxp", "maxn", "min", "minp", "minn" + ]) + def test_max_min(self, intrin): + """ + Test intrinsics: + npyv_max_##sfx + npyv_maxp_##sfx + npyv_maxn_##sfx + npyv_min_##sfx + npyv_minp_##sfx + npyv_minn_##sfx + npyv_reduce_max_##sfx + npyv_reduce_maxp_##sfx + npyv_reduce_maxn_##sfx + npyv_reduce_min_##sfx + npyv_reduce_minp_##sfx + npyv_reduce_minn_##sfx + """ + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + chk_nan = {"xp": 1, "np": 1, "nn": 2, "xn": 2}.get(intrin[-2:], 0) + func = eval(intrin[:3]) + reduce_intrin = getattr(self, "reduce_" + intrin) + intrin = getattr(self, intrin) + hf_nlanes = self.nlanes//2 + + cases = ( + ([0.0, -0.0], [-0.0, 0.0]), + ([10, -10], [10, -10]), + ([pinf, 10], [10, ninf]), + ([10, pinf], [ninf, 10]), + ([10, -10], [10, -10]), + ([-10, 10], [-10, 10]) + ) + for op1, op2 in cases: + vdata_a = self.load(op1*hf_nlanes) + vdata_b = self.load(op2*hf_nlanes) + data = func(vdata_a, vdata_b) + simd = intrin(vdata_a, vdata_b) + assert simd == data + data = func(vdata_a) + simd = reduce_intrin(vdata_a) + assert simd == data + + if not chk_nan: + return + if chk_nan == 1: + test_nan = lambda a, b: ( + b if math.isnan(a) else a if math.isnan(b) else b + ) + else: + test_nan = lambda a, b: ( + nan if math.isnan(a) or math.isnan(b) else b + ) + cases = ( + (nan, 10), + (10, nan), + (nan, pinf), + (pinf, nan), + (nan, nan) + ) + for op1, op2 in cases: + vdata_ab = self.load([op1, op2]*hf_nlanes) + data = test_nan(op1, op2) + simd = reduce_intrin(vdata_ab) + assert simd == pytest.approx(data, nan_ok=True) + vdata_a = self.setall(op1) + vdata_b = self.setall(op2) + data = [data] * self.nlanes + simd = intrin(vdata_a, vdata_b) + assert simd == pytest.approx(data, nan_ok=True) + + def test_reciprocal(self): + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + data = self._data() + vdata = self.load(self._data()) + + recip_cases = ((nan, nan), (pinf, 0.0), (ninf, -0.0), (0.0, pinf), (-0.0, ninf)) + for case, desired in recip_cases: + data_recip = [desired]*self.nlanes + recip = self.recip(self.setall(case)) + assert recip == pytest.approx(data_recip, nan_ok=True) + + data_recip = self.load([1/x for x in data]) # load to truncate precision + recip = self.recip(vdata) + assert recip == data_recip + + def test_special_cases(self): + """ + Compare Not NaN. Test intrinsics: + npyv_notnan_##SFX + """ + nnan = self.notnan(self.setall(self._nan())) + assert nnan == [0]*self.nlanes + + @pytest.mark.parametrize("intrin_name", [ + "rint", "trunc", "ceil", "floor" + ]) + def test_unary_invalid_fpexception(self, intrin_name): + intrin = getattr(self, intrin_name) + for d in [float("nan"), float("inf"), -float("inf")]: + v = self.setall(d) + clear_floatstatus() + intrin(v) + assert check_floatstatus(invalid=True) is False + + @pytest.mark.parametrize('py_comp,np_comp', [ + (operator.lt, "cmplt"), + (operator.le, "cmple"), + (operator.gt, "cmpgt"), + (operator.ge, "cmpge"), + (operator.eq, "cmpeq"), + (operator.ne, "cmpneq") + ]) + def test_comparison_with_nan(self, py_comp, np_comp): + pinf, ninf, nan = self._pinfinity(), self._ninfinity(), self._nan() + mask_true = self._true_mask() + + def to_bool(vector): + return [lane == mask_true for lane in vector] + + intrin = getattr(self, np_comp) + cmp_cases = ((0, nan), (nan, 0), (nan, nan), (pinf, nan), + (ninf, nan), (-0.0, +0.0)) + for case_operand1, case_operand2 in cmp_cases: + data_a = [case_operand1]*self.nlanes + data_b = [case_operand2]*self.nlanes + vdata_a = self.setall(case_operand1) + vdata_b = self.setall(case_operand2) + vcmp = to_bool(intrin(vdata_a, vdata_b)) + data_cmp = [py_comp(a, b) for a, b in zip(data_a, data_b)] + assert vcmp == data_cmp + + @pytest.mark.parametrize("intrin", ["any", "all"]) + @pytest.mark.parametrize("data", ( + [float("nan"), 0], + [0, float("nan")], + [float("nan"), 1], + [1, float("nan")], + [float("nan"), float("nan")], + [0.0, -0.0], + [-0.0, 0.0], + [1.0, -0.0] + )) + def test_operators_crosstest(self, intrin, data): + """ + Test intrinsics: + npyv_any_##SFX + npyv_all_##SFX + """ + data_a = self.load(data * self.nlanes) + func = eval(intrin) + intrin = getattr(self, intrin) + desired = func(data_a) + simd = intrin(data_a) + assert not not simd == desired + +class _SIMD_ALL(_Test_Utility): + """ + To test all vector types at once + """ + def test_memory_load(self): + data = self._data() + # unaligned load + load_data = self.load(data) + assert load_data == data + # aligned load + loada_data = self.loada(data) + assert loada_data == data + # stream load + loads_data = self.loads(data) + assert loads_data == data + # load lower part + loadl = self.loadl(data) + loadl_half = list(loadl)[:self.nlanes//2] + data_half = data[:self.nlanes//2] + assert loadl_half == data_half + assert loadl != data # detect overflow + + def test_memory_store(self): + data = self._data() + vdata = self.load(data) + # unaligned store + store = [0] * self.nlanes + self.store(store, vdata) + assert store == data + # aligned store + store_a = [0] * self.nlanes + self.storea(store_a, vdata) + assert store_a == data + # stream store + store_s = [0] * self.nlanes + self.stores(store_s, vdata) + assert store_s == data + # store lower part + store_l = [0] * self.nlanes + self.storel(store_l, vdata) + assert store_l[:self.nlanes//2] == data[:self.nlanes//2] + assert store_l != vdata # detect overflow + # store higher part + store_h = [0] * self.nlanes + self.storeh(store_h, vdata) + assert store_h[:self.nlanes//2] == data[self.nlanes//2:] + assert store_h != vdata # detect overflow + + @pytest.mark.parametrize("intrin, elsizes, scale, fill", [ + ("self.load_tillz, self.load_till", (32, 64), 1, [0xffff]), + ("self.load2_tillz, self.load2_till", (32, 64), 2, [0xffff, 0x7fff]), + ]) + def test_memory_partial_load(self, intrin, elsizes, scale, fill): + if self._scalar_size() not in elsizes: + return + npyv_load_tillz, npyv_load_till = eval(intrin) + data = self._data() + lanes = list(range(1, self.nlanes + 1)) + lanes += [self.nlanes**2, self.nlanes**4] # test out of range + for n in lanes: + load_till = npyv_load_till(data, n, *fill) + load_tillz = npyv_load_tillz(data, n) + n *= scale + data_till = data[:n] + fill * ((self.nlanes-n) // scale) + assert load_till == data_till + data_tillz = data[:n] + [0] * (self.nlanes-n) + assert load_tillz == data_tillz + + @pytest.mark.parametrize("intrin, elsizes, scale", [ + ("self.store_till", (32, 64), 1), + ("self.store2_till", (32, 64), 2), + ]) + def test_memory_partial_store(self, intrin, elsizes, scale): + if self._scalar_size() not in elsizes: + return + npyv_store_till = eval(intrin) + data = self._data() + data_rev = self._data(reverse=True) + vdata = self.load(data) + lanes = list(range(1, self.nlanes + 1)) + lanes += [self.nlanes**2, self.nlanes**4] + for n in lanes: + data_till = data_rev.copy() + data_till[:n*scale] = data[:n*scale] + store_till = self._data(reverse=True) + npyv_store_till(store_till, n, vdata) + assert store_till == data_till + + @pytest.mark.parametrize("intrin, elsizes, scale", [ + ("self.loadn", (32, 64), 1), + ("self.loadn2", (32, 64), 2), + ]) + def test_memory_noncont_load(self, intrin, elsizes, scale): + if self._scalar_size() not in elsizes: + return + npyv_loadn = eval(intrin) + for stride in range(-64, 64): + if stride < 0: + data = self._data(stride, -stride*self.nlanes) + data_stride = list(itertools.chain( + *zip(*[data[-i::stride] for i in range(scale, 0, -1)]) + )) + elif stride == 0: + data = self._data() + data_stride = data[0:scale] * (self.nlanes//scale) + else: + data = self._data(count=stride*self.nlanes) + data_stride = list(itertools.chain( + *zip(*[data[i::stride] for i in range(scale)])) + ) + data_stride = self.load(data_stride) # cast unsigned + loadn = npyv_loadn(data, stride) + assert loadn == data_stride + + @pytest.mark.parametrize("intrin, elsizes, scale, fill", [ + ("self.loadn_tillz, self.loadn_till", (32, 64), 1, [0xffff]), + ("self.loadn2_tillz, self.loadn2_till", (32, 64), 2, [0xffff, 0x7fff]), + ]) + def test_memory_noncont_partial_load(self, intrin, elsizes, scale, fill): + if self._scalar_size() not in elsizes: + return + npyv_loadn_tillz, npyv_loadn_till = eval(intrin) + lanes = list(range(1, self.nlanes + 1)) + lanes += [self.nlanes**2, self.nlanes**4] + for stride in range(-64, 64): + if stride < 0: + data = self._data(stride, -stride*self.nlanes) + data_stride = list(itertools.chain( + *zip(*[data[-i::stride] for i in range(scale, 0, -1)]) + )) + elif stride == 0: + data = self._data() + data_stride = data[0:scale] * (self.nlanes//scale) + else: + data = self._data(count=stride*self.nlanes) + data_stride = list(itertools.chain( + *zip(*[data[i::stride] for i in range(scale)]) + )) + data_stride = list(self.load(data_stride)) # cast unsigned + for n in lanes: + nscale = n * scale + llanes = self.nlanes - nscale + data_stride_till = ( + data_stride[:nscale] + fill * (llanes//scale) + ) + loadn_till = npyv_loadn_till(data, stride, n, *fill) + assert loadn_till == data_stride_till + data_stride_tillz = data_stride[:nscale] + [0] * llanes + loadn_tillz = npyv_loadn_tillz(data, stride, n) + assert loadn_tillz == data_stride_tillz + + @pytest.mark.parametrize("intrin, elsizes, scale", [ + ("self.storen", (32, 64), 1), + ("self.storen2", (32, 64), 2), + ]) + def test_memory_noncont_store(self, intrin, elsizes, scale): + if self._scalar_size() not in elsizes: + return + npyv_storen = eval(intrin) + data = self._data() + vdata = self.load(data) + hlanes = self.nlanes // scale + for stride in range(1, 64): + data_storen = [0xff] * stride * self.nlanes + for s in range(0, hlanes*stride, stride): + i = (s//stride)*scale + data_storen[s:s+scale] = data[i:i+scale] + storen = [0xff] * stride * self.nlanes + storen += [0x7f]*64 + npyv_storen(storen, stride, vdata) + assert storen[:-64] == data_storen + assert storen[-64:] == [0x7f]*64 # detect overflow + + for stride in range(-64, 0): + data_storen = [0xff] * -stride * self.nlanes + for s in range(0, hlanes*stride, stride): + i = (s//stride)*scale + data_storen[s-scale:s or None] = data[i:i+scale] + storen = [0x7f]*64 + storen += [0xff] * -stride * self.nlanes + npyv_storen(storen, stride, vdata) + assert storen[64:] == data_storen + assert storen[:64] == [0x7f]*64 # detect overflow + # stride 0 + data_storen = [0x7f] * self.nlanes + storen = data_storen.copy() + data_storen[0:scale] = data[-scale:] + npyv_storen(storen, 0, vdata) + assert storen == data_storen + + @pytest.mark.parametrize("intrin, elsizes, scale", [ + ("self.storen_till", (32, 64), 1), + ("self.storen2_till", (32, 64), 2), + ]) + def test_memory_noncont_partial_store(self, intrin, elsizes, scale): + if self._scalar_size() not in elsizes: + return + npyv_storen_till = eval(intrin) + data = self._data() + vdata = self.load(data) + lanes = list(range(1, self.nlanes + 1)) + lanes += [self.nlanes**2, self.nlanes**4] + hlanes = self.nlanes // scale + for stride in range(1, 64): + for n in lanes: + data_till = [0xff] * stride * self.nlanes + tdata = data[:n*scale] + [0xff] * (self.nlanes-n*scale) + for s in range(0, hlanes*stride, stride)[:n]: + i = (s//stride)*scale + data_till[s:s+scale] = tdata[i:i+scale] + storen_till = [0xff] * stride * self.nlanes + storen_till += [0x7f]*64 + npyv_storen_till(storen_till, stride, n, vdata) + assert storen_till[:-64] == data_till + assert storen_till[-64:] == [0x7f]*64 # detect overflow + + for stride in range(-64, 0): + for n in lanes: + data_till = [0xff] * -stride * self.nlanes + tdata = data[:n*scale] + [0xff] * (self.nlanes-n*scale) + for s in range(0, hlanes*stride, stride)[:n]: + i = (s//stride)*scale + data_till[s-scale:s or None] = tdata[i:i+scale] + storen_till = [0x7f]*64 + storen_till += [0xff] * -stride * self.nlanes + npyv_storen_till(storen_till, stride, n, vdata) + assert storen_till[64:] == data_till + assert storen_till[:64] == [0x7f]*64 # detect overflow + + # stride 0 + for n in lanes: + data_till = [0x7f] * self.nlanes + storen_till = data_till.copy() + data_till[0:scale] = data[:n*scale][-scale:] + npyv_storen_till(storen_till, 0, n, vdata) + assert storen_till == data_till + + @pytest.mark.parametrize("intrin, table_size, elsize", [ + ("self.lut32", 32, 32), + ("self.lut16", 16, 64) + ]) + def test_lut(self, intrin, table_size, elsize): + """ + Test lookup table intrinsics: + npyv_lut32_##sfx + npyv_lut16_##sfx + """ + if elsize != self._scalar_size(): + return + intrin = eval(intrin) + idx_itrin = getattr(self.npyv, f"setall_u{elsize}") + table = range(0, table_size) + for i in table: + broadi = self.setall(i) + idx = idx_itrin(i) + lut = intrin(table, idx) + assert lut == broadi + + def test_misc(self): + broadcast_zero = self.zero() + assert broadcast_zero == [0] * self.nlanes + for i in range(1, 10): + broadcasti = self.setall(i) + assert broadcasti == [i] * self.nlanes + + data_a, data_b = self._data(), self._data(reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + # py level of npyv_set_* don't support ignoring the extra specified lanes or + # fill non-specified lanes with zero. + vset = self.set(*data_a) + assert vset == data_a + # py level of npyv_setf_* don't support ignoring the extra specified lanes or + # fill non-specified lanes with the specified scalar. + vsetf = self.setf(10, *data_a) + assert vsetf == data_a + + # We're testing the sanity of _simd's type-vector, + # reinterpret* intrinsics itself are tested via compiler + # during the build of _simd module + sfxes = ["u8", "s8", "u16", "s16", "u32", "s32", "u64", "s64"] + if self.npyv.simd_f64: + sfxes.append("f64") + if self.npyv.simd_f32: + sfxes.append("f32") + for sfx in sfxes: + vec_name = getattr(self, "reinterpret_" + sfx)(vdata_a).__name__ + assert vec_name == "npyv_" + sfx + + # select & mask operations + select_a = self.select(self.cmpeq(self.zero(), self.zero()), vdata_a, vdata_b) + assert select_a == data_a + select_b = self.select(self.cmpneq(self.zero(), self.zero()), vdata_a, vdata_b) + assert select_b == data_b + + # test extract elements + assert self.extract0(vdata_b) == vdata_b[0] + + # cleanup intrinsic is only used with AVX for + # zeroing registers to avoid the AVX-SSE transition penalty, + # so nothing to test here + self.npyv.cleanup() + + def test_reorder(self): + data_a, data_b = self._data(), self._data(reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + # lower half part + data_a_lo = data_a[:self.nlanes//2] + data_b_lo = data_b[:self.nlanes//2] + # higher half part + data_a_hi = data_a[self.nlanes//2:] + data_b_hi = data_b[self.nlanes//2:] + # combine two lower parts + combinel = self.combinel(vdata_a, vdata_b) + assert combinel == data_a_lo + data_b_lo + # combine two higher parts + combineh = self.combineh(vdata_a, vdata_b) + assert combineh == data_a_hi + data_b_hi + # combine x2 + combine = self.combine(vdata_a, vdata_b) + assert combine == (data_a_lo + data_b_lo, data_a_hi + data_b_hi) + + # zip(interleave) + data_zipl = self.load([ + v for p in zip(data_a_lo, data_b_lo) for v in p + ]) + data_ziph = self.load([ + v for p in zip(data_a_hi, data_b_hi) for v in p + ]) + vzip = self.zip(vdata_a, vdata_b) + assert vzip == (data_zipl, data_ziph) + vzip = [0]*self.nlanes*2 + self._x2("store")(vzip, (vdata_a, vdata_b)) + assert vzip == list(data_zipl) + list(data_ziph) + + # unzip(deinterleave) + unzip = self.unzip(data_zipl, data_ziph) + assert unzip == (data_a, data_b) + unzip = self._x2("load")(list(data_zipl) + list(data_ziph)) + assert unzip == (data_a, data_b) + + def test_reorder_rev64(self): + # Reverse elements of each 64-bit lane + ssize = self._scalar_size() + if ssize == 64: + return + data_rev64 = [ + y for x in range(0, self.nlanes, 64//ssize) + for y in reversed(range(x, x + 64//ssize)) + ] + rev64 = self.rev64(self.load(range(self.nlanes))) + assert rev64 == data_rev64 + + def test_reorder_permi128(self): + """ + Test permuting elements for each 128-bit lane. + npyv_permi128_##sfx + """ + ssize = self._scalar_size() + if ssize < 32: + return + data = self.load(self._data()) + permn = 128//ssize + permd = permn-1 + nlane128 = self.nlanes//permn + shfl = [0, 1] if ssize == 64 else [0, 2, 4, 6] + for i in range(permn): + indices = [(i >> shf) & permd for shf in shfl] + vperm = self.permi128(data, *indices) + data_vperm = [ + data[j + (e & -permn)] + for e, j in enumerate(indices*nlane128) + ] + assert vperm == data_vperm + + @pytest.mark.parametrize('func, intrin', [ + (operator.lt, "cmplt"), + (operator.le, "cmple"), + (operator.gt, "cmpgt"), + (operator.ge, "cmpge"), + (operator.eq, "cmpeq") + ]) + def test_operators_comparison(self, func, intrin): + if self._is_fp(): + data_a = self._data() + else: + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + intrin = getattr(self, intrin) + + mask_true = self._true_mask() + def to_bool(vector): + return [lane == mask_true for lane in vector] + + data_cmp = [func(a, b) for a, b in zip(data_a, data_b)] + cmp = to_bool(intrin(vdata_a, vdata_b)) + assert cmp == data_cmp + + def test_operators_logical(self): + if self._is_fp(): + data_a = self._data() + else: + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + if self._is_fp(): + data_cast_a = self._to_unsigned(vdata_a) + data_cast_b = self._to_unsigned(vdata_b) + cast, cast_data = self._to_unsigned, self._to_unsigned + else: + data_cast_a, data_cast_b = data_a, data_b + cast, cast_data = lambda a: a, self.load + + data_xor = cast_data([a ^ b for a, b in zip(data_cast_a, data_cast_b)]) + vxor = cast(self.xor(vdata_a, vdata_b)) + assert vxor == data_xor + + data_or = cast_data([a | b for a, b in zip(data_cast_a, data_cast_b)]) + vor = cast(getattr(self, "or")(vdata_a, vdata_b)) + assert vor == data_or + + data_and = cast_data([a & b for a, b in zip(data_cast_a, data_cast_b)]) + vand = cast(getattr(self, "and")(vdata_a, vdata_b)) + assert vand == data_and + + data_not = cast_data([~a for a in data_cast_a]) + vnot = cast(getattr(self, "not")(vdata_a)) + assert vnot == data_not + + if self.sfx not in ("u8"): + return + data_andc = [a & ~b for a, b in zip(data_cast_a, data_cast_b)] + vandc = cast(self.andc(vdata_a, vdata_b)) + assert vandc == data_andc + + @pytest.mark.parametrize("intrin", ["any", "all"]) + @pytest.mark.parametrize("data", ( + [1, 2, 3, 4], + [-1, -2, -3, -4], + [0, 1, 2, 3, 4], + [0x7f, 0x7fff, 0x7fffffff, 0x7fffffffffffffff], + [0, -1, -2, -3, 4], + [0], + [1], + [-1] + )) + def test_operators_crosstest(self, intrin, data): + """ + Test intrinsics: + npyv_any_##SFX + npyv_all_##SFX + """ + data_a = self.load(data * self.nlanes) + func = eval(intrin) + intrin = getattr(self, intrin) + desired = func(data_a) + simd = intrin(data_a) + assert not not simd == desired + + def test_conversion_boolean(self): + bsfx = "b" + self.sfx[1:] + to_boolean = getattr(self.npyv, "cvt_%s_%s" % (bsfx, self.sfx)) + from_boolean = getattr(self.npyv, "cvt_%s_%s" % (self.sfx, bsfx)) + + false_vb = to_boolean(self.setall(0)) + true_vb = self.cmpeq(self.setall(0), self.setall(0)) + assert false_vb != true_vb + + false_vsfx = from_boolean(false_vb) + true_vsfx = from_boolean(true_vb) + assert false_vsfx != true_vsfx + + def test_conversion_expand(self): + """ + Test expand intrinsics: + npyv_expand_u16_u8 + npyv_expand_u32_u16 + """ + if self.sfx not in ("u8", "u16"): + return + totype = self.sfx[0]+str(int(self.sfx[1:])*2) + expand = getattr(self.npyv, f"expand_{totype}_{self.sfx}") + # close enough from the edge to detect any deviation + data = self._data(self._int_max() - self.nlanes) + vdata = self.load(data) + edata = expand(vdata) + # lower half part + data_lo = data[:self.nlanes//2] + # higher half part + data_hi = data[self.nlanes//2:] + assert edata == (data_lo, data_hi) + + def test_arithmetic_subadd(self): + if self._is_fp(): + data_a = self._data() + else: + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + # non-saturated + data_add = self.load([a + b for a, b in zip(data_a, data_b)]) # load to cast + add = self.add(vdata_a, vdata_b) + assert add == data_add + data_sub = self.load([a - b for a, b in zip(data_a, data_b)]) + sub = self.sub(vdata_a, vdata_b) + assert sub == data_sub + + def test_arithmetic_mul(self): + if self.sfx in ("u64", "s64"): + return + + if self._is_fp(): + data_a = self._data() + else: + data_a = self._data(self._int_max() - self.nlanes) + data_b = self._data(self._int_min(), reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + data_mul = self.load([a * b for a, b in zip(data_a, data_b)]) + mul = self.mul(vdata_a, vdata_b) + assert mul == data_mul + + def test_arithmetic_div(self): + if not self._is_fp(): + return + + data_a, data_b = self._data(), self._data(reverse=True) + vdata_a, vdata_b = self.load(data_a), self.load(data_b) + + # load to truncate f64 to precision of f32 + data_div = self.load([a / b for a, b in zip(data_a, data_b)]) + div = self.div(vdata_a, vdata_b) + assert div == data_div + + def test_arithmetic_intdiv(self): + """ + Test integer division intrinsics: + npyv_divisor_##sfx + npyv_divc_##sfx + """ + if self._is_fp(): + return + + int_min = self._int_min() + def trunc_div(a, d): + """ + Divide towards zero works with large integers > 2^53, + and wrap around overflow similar to what C does. + """ + if d == -1 and a == int_min: + return a + sign_a, sign_d = a < 0, d < 0 + if a == 0 or sign_a == sign_d: + return a // d + return (a + sign_d - sign_a) // d + 1 + + data = [1, -int_min] # to test overflow + data += range(0, 2**8, 2**5) + data += range(0, 2**8, 2**5-1) + bsize = self._scalar_size() + if bsize > 8: + data += range(2**8, 2**16, 2**13) + data += range(2**8, 2**16, 2**13-1) + if bsize > 16: + data += range(2**16, 2**32, 2**29) + data += range(2**16, 2**32, 2**29-1) + if bsize > 32: + data += range(2**32, 2**64, 2**61) + data += range(2**32, 2**64, 2**61-1) + # negate + data += [-x for x in data] + for dividend, divisor in itertools.product(data, data): + divisor = self.setall(divisor)[0] # cast + if divisor == 0: + continue + dividend = self.load(self._data(dividend)) + data_divc = [trunc_div(a, divisor) for a in dividend] + divisor_parms = self.divisor(divisor) + divc = self.divc(dividend, divisor_parms) + assert divc == data_divc + + def test_arithmetic_reduce_sum(self): + """ + Test reduce sum intrinsics: + npyv_sum_##sfx + """ + if self.sfx not in ("u32", "u64", "f32", "f64"): + return + # reduce sum + data = self._data() + vdata = self.load(data) + + data_sum = sum(data) + vsum = self.sum(vdata) + assert vsum == data_sum + + def test_arithmetic_reduce_sumup(self): + """ + Test extend reduce sum intrinsics: + npyv_sumup_##sfx + """ + if self.sfx not in ("u8", "u16"): + return + rdata = (0, self.nlanes, self._int_min(), self._int_max()-self.nlanes) + for r in rdata: + data = self._data(r) + vdata = self.load(data) + data_sum = sum(data) + vsum = self.sumup(vdata) + assert vsum == data_sum + + def test_mask_conditional(self): + """ + Conditional addition and subtraction for all supported data types. + Test intrinsics: + npyv_ifadd_##SFX, npyv_ifsub_##SFX + """ + vdata_a = self.load(self._data()) + vdata_b = self.load(self._data(reverse=True)) + true_mask = self.cmpeq(self.zero(), self.zero()) + false_mask = self.cmpneq(self.zero(), self.zero()) + + data_sub = self.sub(vdata_b, vdata_a) + ifsub = self.ifsub(true_mask, vdata_b, vdata_a, vdata_b) + assert ifsub == data_sub + ifsub = self.ifsub(false_mask, vdata_a, vdata_b, vdata_b) + assert ifsub == vdata_b + + data_add = self.add(vdata_b, vdata_a) + ifadd = self.ifadd(true_mask, vdata_b, vdata_a, vdata_b) + assert ifadd == data_add + ifadd = self.ifadd(false_mask, vdata_a, vdata_b, vdata_b) + assert ifadd == vdata_b + + if not self._is_fp(): + return + data_div = self.div(vdata_b, vdata_a) + ifdiv = self.ifdiv(true_mask, vdata_b, vdata_a, vdata_b) + assert ifdiv == data_div + ifdivz = self.ifdivz(true_mask, vdata_b, vdata_a) + assert ifdivz == data_div + ifdiv = self.ifdiv(false_mask, vdata_a, vdata_b, vdata_b) + assert ifdiv == vdata_b + ifdivz = self.ifdivz(false_mask, vdata_a, vdata_b) + assert ifdivz == self.zero() + +bool_sfx = ("b8", "b16", "b32", "b64") +int_sfx = ("u8", "s8", "u16", "s16", "u32", "s32", "u64", "s64") +fp_sfx = ("f32", "f64") +all_sfx = int_sfx + fp_sfx +tests_registry = { + bool_sfx: _SIMD_BOOL, + int_sfx : _SIMD_INT, + fp_sfx : _SIMD_FP, + ("f32",): _SIMD_FP32, + ("f64",): _SIMD_FP64, + all_sfx : _SIMD_ALL +} +for target_name, npyv in targets.items(): + simd_width = npyv.simd if npyv else '' + pretty_name = target_name.split('__') # multi-target separator + if len(pretty_name) > 1: + # multi-target + pretty_name = f"({' '.join(pretty_name)})" + else: + pretty_name = pretty_name[0] + + skip = "" + skip_sfx = dict() + if not npyv: + skip = f"target '{pretty_name}' isn't supported by current machine" + elif not npyv.simd: + skip = f"target '{pretty_name}' isn't supported by NPYV" + else: + if not npyv.simd_f32: + skip_sfx["f32"] = f"target '{pretty_name}' "\ + "doesn't support single-precision" + if not npyv.simd_f64: + skip_sfx["f64"] = f"target '{pretty_name}' doesn't"\ + "support double-precision" + + for sfxes, cls in tests_registry.items(): + for sfx in sfxes: + skip_m = skip_sfx.get(sfx, skip) + inhr = (cls,) + attr = dict(npyv=targets[target_name], sfx=sfx, target_name=target_name) + tcls = type(f"Test{cls.__name__}_{simd_width}_{target_name}_{sfx}", inhr, attr) + if skip_m: + pytest.mark.skip(reason=skip_m)(tcls) + globals()[tcls.__name__] = tcls diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd_module.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd_module.py new file mode 100644 index 0000000000000000000000000000000000000000..6bd68c22e1931e885081530913ea685325e94f96 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_simd_module.py @@ -0,0 +1,101 @@ +import pytest +from numpy._core._simd import targets +""" +This testing unit only for checking the sanity of common functionality, +therefore all we need is just to take one submodule that represents any +of enabled SIMD extensions to run the test on it and the second submodule +required to run only one check related to the possibility of mixing +the data types among each submodule. +""" +npyvs = [npyv_mod for npyv_mod in targets.values() if npyv_mod and npyv_mod.simd] +npyv, npyv2 = (npyvs + [None, None])[:2] + +unsigned_sfx = ["u8", "u16", "u32", "u64"] +signed_sfx = ["s8", "s16", "s32", "s64"] +fp_sfx = [] +if npyv and npyv.simd_f32: + fp_sfx.append("f32") +if npyv and npyv.simd_f64: + fp_sfx.append("f64") + +int_sfx = unsigned_sfx + signed_sfx +all_sfx = unsigned_sfx + int_sfx + +@pytest.mark.skipif(not npyv, reason="could not find any SIMD extension with NPYV support") +class Test_SIMD_MODULE: + + @pytest.mark.parametrize('sfx', all_sfx) + def test_num_lanes(self, sfx): + nlanes = getattr(npyv, "nlanes_" + sfx) + vector = getattr(npyv, "setall_" + sfx)(1) + assert len(vector) == nlanes + + @pytest.mark.parametrize('sfx', all_sfx) + def test_type_name(self, sfx): + vector = getattr(npyv, "setall_" + sfx)(1) + assert vector.__name__ == "npyv_" + sfx + + def test_raises(self): + a, b = [npyv.setall_u32(1)]*2 + for sfx in all_sfx: + vcb = lambda intrin: getattr(npyv, f"{intrin}_{sfx}") + pytest.raises(TypeError, vcb("add"), a) + pytest.raises(TypeError, vcb("add"), a, b, a) + pytest.raises(TypeError, vcb("setall")) + pytest.raises(TypeError, vcb("setall"), [1]) + pytest.raises(TypeError, vcb("load"), 1) + pytest.raises(ValueError, vcb("load"), [1]) + pytest.raises(ValueError, vcb("store"), [1], getattr(npyv, f"reinterpret_{sfx}_u32")(a)) + + @pytest.mark.skipif(not npyv2, reason=( + "could not find a second SIMD extension with NPYV support" + )) + def test_nomix(self): + # mix among submodules isn't allowed + a = npyv.setall_u32(1) + a2 = npyv2.setall_u32(1) + pytest.raises(TypeError, npyv.add_u32, a2, a2) + pytest.raises(TypeError, npyv2.add_u32, a, a) + + @pytest.mark.parametrize('sfx', unsigned_sfx) + def test_unsigned_overflow(self, sfx): + nlanes = getattr(npyv, "nlanes_" + sfx) + maxu = (1 << int(sfx[1:])) - 1 + maxu_72 = (1 << 72) - 1 + lane = getattr(npyv, "setall_" + sfx)(maxu_72)[0] + assert lane == maxu + lanes = getattr(npyv, "load_" + sfx)([maxu_72] * nlanes) + assert lanes == [maxu] * nlanes + lane = getattr(npyv, "setall_" + sfx)(-1)[0] + assert lane == maxu + lanes = getattr(npyv, "load_" + sfx)([-1] * nlanes) + assert lanes == [maxu] * nlanes + + @pytest.mark.parametrize('sfx', signed_sfx) + def test_signed_overflow(self, sfx): + nlanes = getattr(npyv, "nlanes_" + sfx) + maxs_72 = (1 << 71) - 1 + lane = getattr(npyv, "setall_" + sfx)(maxs_72)[0] + assert lane == -1 + lanes = getattr(npyv, "load_" + sfx)([maxs_72] * nlanes) + assert lanes == [-1] * nlanes + mins_72 = -1 << 71 + lane = getattr(npyv, "setall_" + sfx)(mins_72)[0] + assert lane == 0 + lanes = getattr(npyv, "load_" + sfx)([mins_72] * nlanes) + assert lanes == [0] * nlanes + + def test_truncate_f32(self): + if not npyv.simd_f32: + pytest.skip("F32 isn't support by the SIMD extension") + f32 = npyv.setall_f32(0.1)[0] + assert f32 != 0.1 + assert round(f32, 1) == 0.1 + + def test_compare(self): + data_range = range(0, npyv.nlanes_u32) + vdata = npyv.load_u32(data_range) + assert vdata == list(data_range) + assert vdata == tuple(data_range) + for i in data_range: + assert vdata[i] == data_range[i] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_stringdtype.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_stringdtype.py new file mode 100644 index 0000000000000000000000000000000000000000..45d8088156c92a3fb873064d9a922e32541d05b6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_stringdtype.py @@ -0,0 +1,1833 @@ +import concurrent.futures +import copy +import itertools +import os +import string +import pickle +import sys +import tempfile + +import numpy as np +import pytest + +from numpy.dtypes import StringDType +from numpy._core.tests._natype import pd_NA +from numpy.testing import assert_array_equal, IS_WASM, IS_PYPY + + +@pytest.fixture +def string_list(): + return ["abc", "def", "ghi" * 10, "A¢☃€ 😊" * 100, "Abc" * 1000, "DEF"] + + +@pytest.fixture +def random_string_list(): + chars = list(string.ascii_letters + string.digits) + chars = np.array(chars, dtype="U1") + ret = np.random.choice(chars, size=100 * 10, replace=True) + return ret.view("U100") + + +@pytest.fixture(params=[True, False]) +def coerce(request): + return request.param + + +@pytest.fixture( + params=["unset", None, pd_NA, np.nan, float("nan"), "__nan__"], + ids=["unset", "None", "pandas.NA", "np.nan", "float('nan')", "string nan"], +) +def na_object(request): + return request.param + + +def get_dtype(na_object, coerce=True): + # explicit is check for pd_NA because != with pd_NA returns pd_NA + if na_object is pd_NA or na_object != "unset": + return StringDType(na_object=na_object, coerce=coerce) + else: + return StringDType(coerce=coerce) + + +@pytest.fixture() +def dtype(na_object, coerce): + return get_dtype(na_object, coerce) + + +# second copy for cast tests to do a cartesian product over dtypes +@pytest.fixture(params=[True, False]) +def coerce2(request): + return request.param + + +@pytest.fixture( + params=["unset", None, pd_NA, np.nan, float("nan"), "__nan__"], + ids=["unset", "None", "pandas.NA", "np.nan", "float('nan')", "string nan"], +) +def na_object2(request): + return request.param + + +@pytest.fixture() +def dtype2(na_object2, coerce2): + # explicit is check for pd_NA because != with pd_NA returns pd_NA + if na_object2 is pd_NA or na_object2 != "unset": + return StringDType(na_object=na_object2, coerce=coerce2) + else: + return StringDType(coerce=coerce2) + + +def test_dtype_creation(): + hashes = set() + dt = StringDType() + assert not hasattr(dt, "na_object") and dt.coerce is True + hashes.add(hash(dt)) + + dt = StringDType(na_object=None) + assert dt.na_object is None and dt.coerce is True + hashes.add(hash(dt)) + + dt = StringDType(coerce=False) + assert not hasattr(dt, "na_object") and dt.coerce is False + hashes.add(hash(dt)) + + dt = StringDType(na_object=None, coerce=False) + assert dt.na_object is None and dt.coerce is False + hashes.add(hash(dt)) + + assert len(hashes) == 4 + + dt = np.dtype("T") + assert dt == StringDType() + assert dt.kind == "T" + assert dt.char == "T" + + hashes.add(hash(dt)) + assert len(hashes) == 4 + + +def test_dtype_equality(dtype): + assert dtype == dtype + for ch in "SU": + assert dtype != np.dtype(ch) + assert dtype != np.dtype(f"{ch}8") + + +def test_dtype_repr(dtype): + if not hasattr(dtype, "na_object") and dtype.coerce: + assert repr(dtype) == "StringDType()" + elif dtype.coerce: + assert repr(dtype) == f"StringDType(na_object={dtype.na_object!r})" + elif not hasattr(dtype, "na_object"): + assert repr(dtype) == "StringDType(coerce=False)" + else: + assert ( + repr(dtype) + == f"StringDType(na_object={dtype.na_object!r}, coerce=False)" + ) + + +def test_create_with_na(dtype): + if not hasattr(dtype, "na_object"): + pytest.skip("does not have an na object") + na_val = dtype.na_object + string_list = ["hello", na_val, "world"] + arr = np.array(string_list, dtype=dtype) + assert str(arr) == "[" + " ".join([repr(s) for s in string_list]) + "]" + assert arr[1] is dtype.na_object + + +@pytest.mark.parametrize("i", list(range(5))) +def test_set_replace_na(i): + # Test strings of various lengths can be set to NaN and then replaced. + s_empty = "" + s_short = "0123456789" + s_medium = "abcdefghijklmnopqrstuvwxyz" + s_long = "-=+" * 100 + strings = [s_medium, s_empty, s_short, s_medium, s_long] + a = np.array(strings, StringDType(na_object=np.nan)) + for s in [a[i], s_medium+s_short, s_short, s_empty, s_long]: + a[i] = np.nan + assert np.isnan(a[i]) + a[i] = s + assert a[i] == s + assert_array_equal(a, strings[:i] + [s] + strings[i+1:]) + + +def test_null_roundtripping(): + data = ["hello\0world", "ABC\0DEF\0\0"] + arr = np.array(data, dtype="T") + assert data[0] == arr[0] + assert data[1] == arr[1] + + +def test_string_too_large_error(): + arr = np.array(["a", "b", "c"], dtype=StringDType()) + with pytest.raises(MemoryError): + arr * (2**63 - 2) + + +@pytest.mark.parametrize( + "data", + [ + ["abc", "def", "ghi"], + ["🤣", "📵", "😰"], + ["🚜", "🙃", "😾"], + ["😹", "🚠", "🚌"], + ], +) +def test_array_creation_utf8(dtype, data): + arr = np.array(data, dtype=dtype) + assert str(arr) == "[" + " ".join(["'" + str(d) + "'" for d in data]) + "]" + assert arr.dtype == dtype + + +@pytest.mark.parametrize( + "data", + [ + [1, 2, 3], + [b"abc", b"def", b"ghi"], + [object, object, object], + ], +) +def test_scalars_string_conversion(data, dtype): + try: + str_vals = [str(d.decode('utf-8')) for d in data] + except AttributeError: + str_vals = [str(d) for d in data] + if dtype.coerce: + assert_array_equal( + np.array(data, dtype=dtype), + np.array(str_vals, dtype=dtype), + ) + else: + with pytest.raises(ValueError): + np.array(data, dtype=dtype) + + +@pytest.mark.parametrize( + ("strings"), + [ + ["this", "is", "an", "array"], + ["€", "", "😊"], + ["A¢☃€ 😊", " A☃€¢😊", "☃€😊 A¢", "😊☃A¢ €"], + ], +) +def test_self_casts(dtype, dtype2, strings): + if hasattr(dtype, "na_object"): + strings = strings + [dtype.na_object] + elif hasattr(dtype2, "na_object"): + strings = strings + [""] + arr = np.array(strings, dtype=dtype) + newarr = arr.astype(dtype2) + + if hasattr(dtype, "na_object") and not hasattr(dtype2, "na_object"): + assert newarr[-1] == str(dtype.na_object) + with pytest.raises(TypeError): + arr.astype(dtype2, casting="safe") + elif hasattr(dtype, "na_object") and hasattr(dtype2, "na_object"): + assert newarr[-1] is dtype2.na_object + arr.astype(dtype2, casting="safe") + elif hasattr(dtype2, "na_object"): + assert newarr[-1] == "" + arr.astype(dtype2, casting="safe") + else: + arr.astype(dtype2, casting="safe") + + if hasattr(dtype, "na_object") and hasattr(dtype2, "na_object"): + na1 = dtype.na_object + na2 = dtype2.na_object + if (na1 is not na2 and + # check for pd_NA first because bool(pd_NA) is an error + ((na1 is pd_NA or na2 is pd_NA) or + # the second check is a NaN check, spelled this way + # to avoid errors from math.isnan and np.isnan + (na1 != na2 and not (na1 != na1 and na2 != na2)))): + with pytest.raises(TypeError): + arr[:-1] == newarr[:-1] + return + assert_array_equal(arr[:-1], newarr[:-1]) + + +@pytest.mark.parametrize( + ("strings"), + [ + ["this", "is", "an", "array"], + ["€", "", "😊"], + ["A¢☃€ 😊", " A☃€¢😊", "☃€😊 A¢", "😊☃A¢ €"], + ], +) +class TestStringLikeCasts: + def test_unicode_casts(self, dtype, strings): + arr = np.array(strings, dtype=np.str_).astype(dtype) + expected = np.array(strings, dtype=dtype) + assert_array_equal(arr, expected) + + arr_as_U8 = expected.astype("U8") + assert_array_equal(arr_as_U8, np.array(strings, dtype="U8")) + assert_array_equal(arr_as_U8.astype(dtype), arr) + arr_as_U3 = expected.astype("U3") + assert_array_equal(arr_as_U3, np.array(strings, dtype="U3")) + assert_array_equal( + arr_as_U3.astype(dtype), + np.array([s[:3] for s in strings], dtype=dtype), + ) + + def test_void_casts(self, dtype, strings): + sarr = np.array(strings, dtype=dtype) + utf8_bytes = [s.encode("utf-8") for s in strings] + void_dtype = f"V{max([len(s) for s in utf8_bytes])}" + varr = np.array(utf8_bytes, dtype=void_dtype) + assert_array_equal(varr, sarr.astype(void_dtype)) + assert_array_equal(varr.astype(dtype), sarr) + + def test_bytes_casts(self, dtype, strings): + sarr = np.array(strings, dtype=dtype) + try: + utf8_bytes = [s.encode("ascii") for s in strings] + bytes_dtype = f"S{max([len(s) for s in utf8_bytes])}" + barr = np.array(utf8_bytes, dtype=bytes_dtype) + assert_array_equal(barr, sarr.astype(bytes_dtype)) + assert_array_equal(barr.astype(dtype), sarr) + if dtype.coerce: + barr = np.array(utf8_bytes, dtype=dtype) + assert_array_equal(barr, sarr) + barr = np.array(utf8_bytes, dtype="O") + assert_array_equal(barr.astype(dtype), sarr) + else: + with pytest.raises(ValueError): + np.array(utf8_bytes, dtype=dtype) + except UnicodeEncodeError: + with pytest.raises(UnicodeEncodeError): + sarr.astype("S20") + + +def test_additional_unicode_cast(random_string_list, dtype): + arr = np.array(random_string_list, dtype=dtype) + # test that this short-circuits correctly + assert_array_equal(arr, arr.astype(arr.dtype)) + # tests the casts via the comparison promoter + assert_array_equal(arr, arr.astype(random_string_list.dtype)) + + +def test_insert_scalar(dtype, string_list): + """Test that inserting a scalar works.""" + arr = np.array(string_list, dtype=dtype) + scalar_instance = "what" + arr[1] = scalar_instance + assert_array_equal( + arr, + np.array(string_list[:1] + ["what"] + string_list[2:], dtype=dtype), + ) + + +comparison_operators = [ + np.equal, + np.not_equal, + np.greater, + np.greater_equal, + np.less, + np.less_equal, +] + + +@pytest.mark.parametrize("op", comparison_operators) +@pytest.mark.parametrize("o_dtype", [np.str_, object, StringDType()]) +def test_comparisons(string_list, dtype, op, o_dtype): + sarr = np.array(string_list, dtype=dtype) + oarr = np.array(string_list, dtype=o_dtype) + + # test that comparison operators work + res = op(sarr, sarr) + ores = op(oarr, oarr) + # test that promotion works as well + orres = op(sarr, oarr) + olres = op(oarr, sarr) + + assert_array_equal(res, ores) + assert_array_equal(res, orres) + assert_array_equal(res, olres) + + # test we get the correct answer for unequal length strings + sarr2 = np.array([s + "2" for s in string_list], dtype=dtype) + oarr2 = np.array([s + "2" for s in string_list], dtype=o_dtype) + + res = op(sarr, sarr2) + ores = op(oarr, oarr2) + olres = op(oarr, sarr2) + orres = op(sarr, oarr2) + + assert_array_equal(res, ores) + assert_array_equal(res, olres) + assert_array_equal(res, orres) + + res = op(sarr2, sarr) + ores = op(oarr2, oarr) + olres = op(oarr2, sarr) + orres = op(sarr2, oarr) + + assert_array_equal(res, ores) + assert_array_equal(res, olres) + assert_array_equal(res, orres) + + +def test_isnan(dtype, string_list): + if not hasattr(dtype, "na_object"): + pytest.skip("no na support") + sarr = np.array(string_list + [dtype.na_object], dtype=dtype) + is_nan = isinstance(dtype.na_object, float) and np.isnan(dtype.na_object) + bool_errors = 0 + try: + bool(dtype.na_object) + except TypeError: + bool_errors = 1 + if is_nan or bool_errors: + # isnan is only true when na_object is a NaN + assert_array_equal( + np.isnan(sarr), + np.array([0] * len(string_list) + [1], dtype=np.bool), + ) + else: + assert not np.any(np.isnan(sarr)) + + +def test_pickle(dtype, string_list): + arr = np.array(string_list, dtype=dtype) + + with tempfile.NamedTemporaryFile("wb", delete=False) as f: + pickle.dump([arr, dtype], f) + + with open(f.name, "rb") as f: + res = pickle.load(f) + + assert_array_equal(res[0], arr) + assert res[1] == dtype + + os.remove(f.name) + + +def test_stdlib_copy(dtype, string_list): + arr = np.array(string_list, dtype=dtype) + + assert_array_equal(copy.copy(arr), arr) + assert_array_equal(copy.deepcopy(arr), arr) + + +@pytest.mark.parametrize( + "strings", + [ + ["left", "right", "leftovers", "righty", "up", "down"], + [ + "left" * 10, + "right" * 10, + "leftovers" * 10, + "righty" * 10, + "up" * 10, + ], + ["🤣🤣", "🤣", "📵", "😰"], + ["🚜", "🙃", "😾"], + ["😹", "🚠", "🚌"], + ["A¢☃€ 😊", " A☃€¢😊", "☃€😊 A¢", "😊☃A¢ €"], + ], +) +def test_sort(dtype, strings): + """Test that sorting matches python's internal sorting.""" + + def test_sort(strings, arr_sorted): + arr = np.array(strings, dtype=dtype) + na_object = getattr(arr.dtype, "na_object", "") + if na_object is None and None in strings: + with pytest.raises( + ValueError, + match="Cannot compare null that is not a nan-like value", + ): + np.argsort(arr) + argsorted = None + elif na_object is pd_NA or na_object != '': + argsorted = None + else: + argsorted = np.argsort(arr) + np.random.default_rng().shuffle(arr) + if na_object is None and None in strings: + with pytest.raises( + ValueError, + match="Cannot compare null that is not a nan-like value", + ): + arr.sort() + else: + arr.sort() + assert np.array_equal(arr, arr_sorted, equal_nan=True) + if argsorted is not None: + assert np.array_equal(argsorted, np.argsort(strings)) + + + # make a copy so we don't mutate the lists in the fixture + strings = strings.copy() + arr_sorted = np.array(sorted(strings), dtype=dtype) + test_sort(strings, arr_sorted) + + if not hasattr(dtype, "na_object"): + return + + # make sure NAs get sorted to the end of the array and string NAs get + # sorted like normal strings + strings.insert(0, dtype.na_object) + strings.insert(2, dtype.na_object) + # can't use append because doing that with NA converts + # the result to object dtype + if not isinstance(dtype.na_object, str): + arr_sorted = np.array( + arr_sorted.tolist() + [dtype.na_object, dtype.na_object], + dtype=dtype, + ) + else: + arr_sorted = np.array(sorted(strings), dtype=dtype) + + test_sort(strings, arr_sorted) + + +@pytest.mark.parametrize( + "strings", + [ + ["A¢☃€ 😊", " A☃€¢😊", "☃€😊 A¢", "😊☃A¢ €"], + ["A¢☃€ 😊", "", " ", " "], + ["", "a", "😸", "ááðfáíóåéë"], + ], +) +def test_nonzero(strings, na_object): + dtype = get_dtype(na_object) + arr = np.array(strings, dtype=dtype) + is_nonzero = np.array( + [i for i, item in enumerate(strings) if len(item) != 0]) + assert_array_equal(arr.nonzero()[0], is_nonzero) + + if na_object is not pd_NA and na_object == 'unset': + return + + strings_with_na = np.array(strings + [na_object], dtype=dtype) + is_nan = np.isnan(np.array([dtype.na_object], dtype=dtype))[0] + + if is_nan: + assert strings_with_na.nonzero()[0][-1] == 4 + else: + assert strings_with_na.nonzero()[0][-1] == 3 + + # check that the casting to bool and nonzero give consistent results + assert_array_equal(strings_with_na[strings_with_na.nonzero()], + strings_with_na[strings_with_na.astype(bool)]) + + +def test_where(string_list, na_object): + dtype = get_dtype(na_object) + a = np.array(string_list, dtype=dtype) + b = a[::-1] + res = np.where([True, False, True, False, True, False], a, b) + assert_array_equal(res, [a[0], b[1], a[2], b[3], a[4], b[5]]) + + +def test_fancy_indexing(string_list): + sarr = np.array(string_list, dtype="T") + assert_array_equal(sarr, sarr[np.arange(sarr.shape[0])]) + + inds = [ + [True, True], + [0, 1], + ..., + np.array([0, 1], dtype='uint8'), + ] + + lops = [ + ['a'*25, 'b'*25], + ['', ''], + ['hello', 'world'], + ['hello', 'world'*25], + ] + + # see gh-27003 and gh-27053 + for ind in inds: + for lop in lops: + a = np.array(lop, dtype="T") + assert_array_equal(a[ind], a) + rop = ['d'*25, 'e'*25] + for b in [rop, np.array(rop, dtype="T")]: + a[ind] = b + assert_array_equal(a, b) + assert a[0] == 'd'*25 + + +def test_creation_functions(): + assert_array_equal(np.zeros(3, dtype="T"), ["", "", ""]) + assert_array_equal(np.empty(3, dtype="T"), ["", "", ""]) + + assert np.zeros(3, dtype="T")[0] == "" + assert np.empty(3, dtype="T")[0] == "" + + +def test_concatenate(string_list): + sarr = np.array(string_list, dtype="T") + sarr_cat = np.array(string_list + string_list, dtype="T") + + assert_array_equal(np.concatenate([sarr], axis=0), sarr) + + +def test_resize_method(string_list): + sarr = np.array(string_list, dtype="T") + if IS_PYPY: + sarr.resize(len(string_list)+3, refcheck=False) + else: + sarr.resize(len(string_list)+3) + assert_array_equal(sarr, np.array(string_list + ['']*3, dtype="T")) + + +def test_create_with_copy_none(string_list): + arr = np.array(string_list, dtype=StringDType()) + # create another stringdtype array with an arena that has a different + # in-memory layout than the first array + arr_rev = np.array(string_list[::-1], dtype=StringDType()) + + # this should create a copy and the resulting array + # shouldn't share an allocator or arena with arr_rev, despite + # explicitly passing arr_rev.dtype + arr_copy = np.array(arr, copy=None, dtype=arr_rev.dtype) + np.testing.assert_array_equal(arr, arr_copy) + assert arr_copy.base is None + + with pytest.raises(ValueError, match="Unable to avoid copy"): + np.array(arr, copy=False, dtype=arr_rev.dtype) + + # because we're using arr's dtype instance, the view is safe + arr_view = np.array(arr, copy=None, dtype=arr.dtype) + np.testing.assert_array_equal(arr, arr) + np.testing.assert_array_equal(arr_view[::-1], arr_rev) + assert arr_view is arr + + +def test_astype_copy_false(): + orig_dt = StringDType() + arr = np.array(["hello", "world"], dtype=StringDType()) + assert not arr.astype(StringDType(coerce=False), copy=False).dtype.coerce + + assert arr.astype(orig_dt, copy=False).dtype is orig_dt + +@pytest.mark.parametrize( + "strings", + [ + ["left", "right", "leftovers", "righty", "up", "down"], + ["🤣🤣", "🤣", "📵", "😰"], + ["🚜", "🙃", "😾"], + ["😹", "🚠", "🚌"], + ["A¢☃€ 😊", " A☃€¢😊", "☃€😊 A¢", "😊☃A¢ €"], + ], +) +def test_argmax(strings): + """Test that argmax/argmin matches what python calculates.""" + arr = np.array(strings, dtype="T") + assert np.argmax(arr) == strings.index(max(strings)) + assert np.argmin(arr) == strings.index(min(strings)) + + +@pytest.mark.parametrize( + "arrfunc,expected", + [ + [np.sort, None], + [np.nonzero, (np.array([], dtype=np.int_),)], + [np.argmax, 0], + [np.argmin, 0], + ], +) +def test_arrfuncs_zeros(arrfunc, expected): + arr = np.zeros(10, dtype="T") + result = arrfunc(arr) + if expected is None: + expected = arr + assert_array_equal(result, expected, strict=True) + + +@pytest.mark.parametrize( + ("strings", "cast_answer", "any_answer", "all_answer"), + [ + [["hello", "world"], [True, True], True, True], + [["", ""], [False, False], False, False], + [["hello", ""], [True, False], True, False], + [["", "world"], [False, True], True, False], + ], +) +def test_cast_to_bool(strings, cast_answer, any_answer, all_answer): + sarr = np.array(strings, dtype="T") + assert_array_equal(sarr.astype("bool"), cast_answer) + + assert np.any(sarr) == any_answer + assert np.all(sarr) == all_answer + + +@pytest.mark.parametrize( + ("strings", "cast_answer"), + [ + [[True, True], ["True", "True"]], + [[False, False], ["False", "False"]], + [[True, False], ["True", "False"]], + [[False, True], ["False", "True"]], + ], +) +def test_cast_from_bool(strings, cast_answer): + barr = np.array(strings, dtype=bool) + assert_array_equal(barr.astype("T"), np.array(cast_answer, dtype="T")) + + +@pytest.mark.parametrize("bitsize", [8, 16, 32, 64]) +@pytest.mark.parametrize("signed", [True, False]) +def test_sized_integer_casts(bitsize, signed): + idtype = f"int{bitsize}" + if signed: + inp = [-(2**p - 1) for p in reversed(range(bitsize - 1))] + inp += [2**p - 1 for p in range(1, bitsize - 1)] + else: + idtype = "u" + idtype + inp = [2**p - 1 for p in range(bitsize)] + ainp = np.array(inp, dtype=idtype) + assert_array_equal(ainp, ainp.astype("T").astype(idtype)) + + # safe casting works + ainp.astype("T", casting="safe") + + with pytest.raises(TypeError): + ainp.astype("T").astype(idtype, casting="safe") + + oob = [str(2**bitsize), str(-(2**bitsize))] + with pytest.raises(OverflowError): + np.array(oob, dtype="T").astype(idtype) + + with pytest.raises(ValueError): + np.array(["1", np.nan, "3"], + dtype=StringDType(na_object=np.nan)).astype(idtype) + + +@pytest.mark.parametrize("typename", ["byte", "short", "int", "longlong"]) +@pytest.mark.parametrize("signed", ["", "u"]) +def test_unsized_integer_casts(typename, signed): + idtype = f"{signed}{typename}" + + inp = [1, 2, 3, 4] + ainp = np.array(inp, dtype=idtype) + assert_array_equal(ainp, ainp.astype("T").astype(idtype)) + + +@pytest.mark.parametrize( + "typename", + [ + pytest.param( + "longdouble", + marks=pytest.mark.xfail( + np.dtypes.LongDoubleDType() != np.dtypes.Float64DType(), + reason="numpy lacks an ld2a implementation", + strict=True, + ), + ), + "float64", + "float32", + "float16", + ], +) +def test_float_casts(typename): + inp = [1.1, 2.8, -3.2, 2.7e4] + ainp = np.array(inp, dtype=typename) + assert_array_equal(ainp, ainp.astype("T").astype(typename)) + + inp = [0.1] + sres = np.array(inp, dtype=typename).astype("T") + res = sres.astype(typename) + assert_array_equal(np.array(inp, dtype=typename), res) + assert sres[0] == "0.1" + + if typename == "longdouble": + # let's not worry about platform-dependent rounding of longdouble + return + + fi = np.finfo(typename) + + inp = [1e-324, fi.smallest_subnormal, -1e-324, -fi.smallest_subnormal] + eres = [0, fi.smallest_subnormal, -0, -fi.smallest_subnormal] + res = np.array(inp, dtype=typename).astype("T").astype(typename) + assert_array_equal(eres, res) + + inp = [2e308, fi.max, -2e308, fi.min] + eres = [np.inf, fi.max, -np.inf, fi.min] + res = np.array(inp, dtype=typename).astype("T").astype(typename) + assert_array_equal(eres, res) + + +@pytest.mark.parametrize( + "typename", + [ + "csingle", + "cdouble", + pytest.param( + "clongdouble", + marks=pytest.mark.xfail( + np.dtypes.CLongDoubleDType() != np.dtypes.Complex128DType(), + reason="numpy lacks an ld2a implementation", + strict=True, + ), + ), + ], +) +def test_cfloat_casts(typename): + inp = [1.1 + 1.1j, 2.8 + 2.8j, -3.2 - 3.2j, 2.7e4 + 2.7e4j] + ainp = np.array(inp, dtype=typename) + assert_array_equal(ainp, ainp.astype("T").astype(typename)) + + inp = [0.1 + 0.1j] + sres = np.array(inp, dtype=typename).astype("T") + res = sres.astype(typename) + assert_array_equal(np.array(inp, dtype=typename), res) + assert sres[0] == "(0.1+0.1j)" + + +def test_take(string_list): + sarr = np.array(string_list, dtype="T") + res = sarr.take(np.arange(len(string_list))) + assert_array_equal(sarr, res) + + # make sure it also works for out + out = np.empty(len(string_list), dtype="T") + out[0] = "hello" + res = sarr.take(np.arange(len(string_list)), out=out) + assert res is out + assert_array_equal(sarr, res) + + +@pytest.mark.parametrize("use_out", [True, False]) +@pytest.mark.parametrize( + "ufunc_name,func", + [ + ("min", min), + ("max", max), + ], +) +def test_ufuncs_minmax(string_list, ufunc_name, func, use_out): + """Test that the min/max ufuncs match Python builtin min/max behavior.""" + arr = np.array(string_list, dtype="T") + uarr = np.array(string_list, dtype=str) + res = np.array(func(string_list), dtype="T") + assert_array_equal(getattr(arr, ufunc_name)(), res) + + ufunc = getattr(np, ufunc_name + "imum") + + if use_out: + res = ufunc(arr, arr, out=arr) + else: + res = ufunc(arr, arr) + + assert_array_equal(uarr, res) + assert_array_equal(getattr(arr, ufunc_name)(), func(string_list)) + + +def test_max_regression(): + arr = np.array(['y', 'y', 'z'], dtype="T") + assert arr.max() == 'z' + + +@pytest.mark.parametrize("use_out", [True, False]) +@pytest.mark.parametrize( + "other_strings", + [ + ["abc", "def" * 500, "ghi" * 16, "🤣" * 100, "📵", "😰"], + ["🚜", "🙃", "😾", "😹", "🚠", "🚌"], + ["🥦", "¨", "⨯", "∰ ", "⨌ ", "⎶ "], + ], +) +def test_ufunc_add(dtype, string_list, other_strings, use_out): + arr1 = np.array(string_list, dtype=dtype) + arr2 = np.array(other_strings, dtype=dtype) + result = np.array([a + b for a, b in zip(arr1, arr2)], dtype=dtype) + + if use_out: + res = np.add(arr1, arr2, out=arr1) + else: + res = np.add(arr1, arr2) + + assert_array_equal(res, result) + + if not hasattr(dtype, "na_object"): + return + + is_nan = isinstance(dtype.na_object, float) and np.isnan(dtype.na_object) + is_str = isinstance(dtype.na_object, str) + bool_errors = 0 + try: + bool(dtype.na_object) + except TypeError: + bool_errors = 1 + + arr1 = np.array([dtype.na_object] + string_list, dtype=dtype) + arr2 = np.array(other_strings + [dtype.na_object], dtype=dtype) + + if is_nan or bool_errors or is_str: + res = np.add(arr1, arr2) + assert_array_equal(res[1:-1], arr1[1:-1] + arr2[1:-1]) + if not is_str: + assert res[0] is dtype.na_object and res[-1] is dtype.na_object + else: + assert res[0] == dtype.na_object + arr2[0] + assert res[-1] == arr1[-1] + dtype.na_object + else: + with pytest.raises(ValueError): + np.add(arr1, arr2) + + +def test_ufunc_add_reduce(dtype): + values = ["a", "this is a long string", "c"] + arr = np.array(values, dtype=dtype) + out = np.empty((), dtype=dtype) + + expected = np.array("".join(values), dtype=dtype) + assert_array_equal(np.add.reduce(arr), expected) + + np.add.reduce(arr, out=out) + assert_array_equal(out, expected) + + +def test_add_promoter(string_list): + arr = np.array(string_list, dtype=StringDType()) + lresult = np.array(["hello" + s for s in string_list], dtype=StringDType()) + rresult = np.array([s + "hello" for s in string_list], dtype=StringDType()) + + for op in ["hello", np.str_("hello"), np.array(["hello"])]: + assert_array_equal(op + arr, lresult) + assert_array_equal(arr + op, rresult) + + # The promoter should be able to handle things if users pass `dtype=` + res = np.add("hello", string_list, dtype=StringDType) + assert res.dtype == StringDType() + + # The promoter should not kick in if users override the input, + # which means arr is cast, this fails because of the unknown length. + with pytest.raises(TypeError, match="cannot cast dtype"): + np.add(arr, "add", signature=("U", "U", None), casting="unsafe") + + # But it must simply reject the following: + with pytest.raises(TypeError, match=".*did not contain a loop"): + np.add(arr, "add", signature=(None, "U", None)) + + with pytest.raises(TypeError, match=".*did not contain a loop"): + np.add("a", "b", signature=("U", "U", StringDType)) + + +def test_add_no_legacy_promote_with_signature(): + # Possibly misplaced, but useful to test with string DType. We check that + # if there is clearly no loop found, a stray `dtype=` doesn't break things + # Regression test for the bad error in gh-26735 + # (If legacy promotion is gone, this can be deleted...) + with pytest.raises(TypeError, match=".*did not contain a loop"): + np.add("3", 6, dtype=StringDType) + + +def test_add_promoter_reduce(): + # Exact TypeError could change, but ensure StringDtype doesn't match + with pytest.raises(TypeError, match="the resolved dtypes are not"): + np.add.reduce(np.array(["a", "b"], dtype="U")) + + # On the other hand, using `dtype=T` in the *ufunc* should work. + np.add.reduce(np.array(["a", "b"], dtype="U"), dtype=np.dtypes.StringDType) + + +def test_multiply_reduce(): + # At the time of writing (NumPy 2.0) this is very limited (and rather + # ridiculous anyway). But it works and actually makes some sense... + # (NumPy does not allow non-scalar initial values) + repeats = np.array([2, 3, 4]) + val = "school-🚌" + res = np.multiply.reduce(repeats, initial=val, dtype=np.dtypes.StringDType) + assert res == val * np.prod(repeats) + + +def test_multiply_two_string_raises(): + arr = np.array(["hello", "world"], dtype="T") + with pytest.raises(np._core._exceptions._UFuncNoLoopError): + np.multiply(arr, arr) + + +@pytest.mark.parametrize("use_out", [True, False]) +@pytest.mark.parametrize("other", [2, [2, 1, 3, 4, 1, 3]]) +@pytest.mark.parametrize( + "other_dtype", + [ + None, + "int8", + "int16", + "int32", + "int64", + "uint8", + "uint16", + "uint32", + "uint64", + "short", + "int", + "intp", + "long", + "longlong", + "ushort", + "uint", + "uintp", + "ulong", + "ulonglong", + ], +) +def test_ufunc_multiply(dtype, string_list, other, other_dtype, use_out): + """Test the two-argument ufuncs match python builtin behavior.""" + arr = np.array(string_list, dtype=dtype) + if other_dtype is not None: + other_dtype = np.dtype(other_dtype) + try: + len(other) + result = [s * o for s, o in zip(string_list, other)] + other = np.array(other) + if other_dtype is not None: + other = other.astype(other_dtype) + except TypeError: + if other_dtype is not None: + other = other_dtype.type(other) + result = [s * other for s in string_list] + + if use_out: + arr_cache = arr.copy() + lres = np.multiply(arr, other, out=arr) + assert_array_equal(lres, result) + arr[:] = arr_cache + assert lres is arr + arr *= other + assert_array_equal(arr, result) + arr[:] = arr_cache + rres = np.multiply(other, arr, out=arr) + assert rres is arr + assert_array_equal(rres, result) + else: + lres = arr * other + assert_array_equal(lres, result) + rres = other * arr + assert_array_equal(rres, result) + + if not hasattr(dtype, "na_object"): + return + + is_nan = np.isnan(np.array([dtype.na_object], dtype=dtype))[0] + is_str = isinstance(dtype.na_object, str) + bool_errors = 0 + try: + bool(dtype.na_object) + except TypeError: + bool_errors = 1 + + arr = np.array(string_list + [dtype.na_object], dtype=dtype) + + try: + len(other) + other = np.append(other, 3) + if other_dtype is not None: + other = other.astype(other_dtype) + except TypeError: + pass + + if is_nan or bool_errors or is_str: + for res in [arr * other, other * arr]: + assert_array_equal(res[:-1], result) + if not is_str: + assert res[-1] is dtype.na_object + else: + try: + assert res[-1] == dtype.na_object * other[-1] + except (IndexError, TypeError): + assert res[-1] == dtype.na_object * other + else: + with pytest.raises(TypeError): + arr * other + with pytest.raises(TypeError): + other * arr + + +def test_findlike_promoters(): + r = "Wally" + l = "Where's Wally?" + s = np.int32(3) + e = np.int8(13) + for dtypes in [("T", "U"), ("U", "T")]: + for function, answer in [ + (np.strings.index, 8), + (np.strings.endswith, True), + ]: + assert answer == function( + np.array(l, dtype=dtypes[0]), np.array(r, dtype=dtypes[1]), s, e + ) + + +def test_strip_promoter(): + arg = ["Hello!!!!", "Hello??!!"] + strip_char = "!" + answer = ["Hello", "Hello??"] + for dtypes in [("T", "U"), ("U", "T")]: + result = np.strings.strip( + np.array(arg, dtype=dtypes[0]), + np.array(strip_char, dtype=dtypes[1]) + ) + assert_array_equal(result, answer) + assert result.dtype.char == "T" + + +def test_replace_promoter(): + arg = ["Hello, planet!", "planet, Hello!"] + old = "planet" + new = "world" + answer = ["Hello, world!", "world, Hello!"] + for dtypes in itertools.product("TU", repeat=3): + if dtypes == ("U", "U", "U"): + continue + answer_arr = np.strings.replace( + np.array(arg, dtype=dtypes[0]), + np.array(old, dtype=dtypes[1]), + np.array(new, dtype=dtypes[2]), + ) + assert_array_equal(answer_arr, answer) + assert answer_arr.dtype.char == "T" + + +def test_center_promoter(): + arg = ["Hello", "planet!"] + fillchar = "/" + for dtypes in [("T", "U"), ("U", "T")]: + answer = np.strings.center( + np.array(arg, dtype=dtypes[0]), 9, np.array(fillchar, dtype=dtypes[1]) + ) + assert_array_equal(answer, ["//Hello//", "/planet!/"]) + assert answer.dtype.char == "T" + + +DATETIME_INPUT = [ + np.datetime64("1923-04-14T12:43:12"), + np.datetime64("1994-06-21T14:43:15"), + np.datetime64("2001-10-15T04:10:32"), + np.datetime64("NaT"), + np.datetime64("1995-11-25T16:02:16"), + np.datetime64("2005-01-04T03:14:12"), + np.datetime64("2041-12-03T14:05:03"), +] + + +TIMEDELTA_INPUT = [ + np.timedelta64(12358, "s"), + np.timedelta64(23, "s"), + np.timedelta64(74, "s"), + np.timedelta64("NaT"), + np.timedelta64(23, "s"), + np.timedelta64(73, "s"), + np.timedelta64(7, "s"), +] + + +@pytest.mark.parametrize( + "input_data, input_dtype", + [ + (DATETIME_INPUT, "M8[s]"), + (TIMEDELTA_INPUT, "m8[s]") + ] +) +def test_datetime_timedelta_cast(dtype, input_data, input_dtype): + + a = np.array(input_data, dtype=input_dtype) + + has_na = hasattr(dtype, "na_object") + is_str = isinstance(getattr(dtype, "na_object", None), str) + + if not has_na or is_str: + a = np.delete(a, 3) + + sa = a.astype(dtype) + ra = sa.astype(a.dtype) + + if has_na and not is_str: + assert sa[3] is dtype.na_object + assert np.isnat(ra[3]) + + assert_array_equal(a, ra) + + if has_na and not is_str: + # don't worry about comparing how NaT is converted + sa = np.delete(sa, 3) + a = np.delete(a, 3) + + if input_dtype.startswith("M"): + assert_array_equal(sa, a.astype("U")) + else: + # The timedelta to unicode cast produces strings + # that aren't round-trippable and we don't want to + # reproduce that behavior in stringdtype + assert_array_equal(sa, a.astype("int64").astype("U")) + + +def test_nat_casts(): + s = 'nat' + all_nats = itertools.product(*zip(s.upper(), s.lower())) + all_nats = list(map(''.join, all_nats)) + NaT_dt = np.datetime64('NaT') + NaT_td = np.timedelta64('NaT') + for na_object in [np._NoValue, None, np.nan, 'nat', '']: + # numpy treats empty string and all case combinations of 'nat' as NaT + dtype = StringDType(na_object=na_object) + arr = np.array([''] + all_nats, dtype=dtype) + dt_array = arr.astype('M8[s]') + td_array = arr.astype('m8[s]') + assert_array_equal(dt_array, NaT_dt) + assert_array_equal(td_array, NaT_td) + + if na_object is np._NoValue: + output_object = 'NaT' + else: + output_object = na_object + + for arr in [dt_array, td_array]: + assert_array_equal( + arr.astype(dtype), + np.array([output_object]*arr.size, dtype=dtype)) + + +def test_nat_conversion(): + for nat in [np.datetime64("NaT", "s"), np.timedelta64("NaT", "s")]: + with pytest.raises(ValueError, match="string coercion is disabled"): + np.array(["a", nat], dtype=StringDType(coerce=False)) + + +def test_growing_strings(dtype): + # growing a string leads to a heap allocation, this tests to make sure + # we do that bookkeeping correctly for all possible starting cases + data = [ + "hello", # a short string + "abcdefghijklmnopqestuvwxyz", # a medium heap-allocated string + "hello" * 200, # a long heap-allocated string + ] + + arr = np.array(data, dtype=dtype) + uarr = np.array(data, dtype=str) + + for _ in range(5): + arr = arr + arr + uarr = uarr + uarr + + assert_array_equal(arr, uarr) + + +@pytest.mark.skipif(IS_WASM, reason="no threading support in wasm") +def test_threaded_access_and_mutation(dtype, random_string_list): + # this test uses an RNG and may crash or cause deadlocks if there is a + # threading bug + rng = np.random.default_rng(0x4D3D3D3) + + def func(arr): + rnd = rng.random() + # either write to random locations in the array, compute a ufunc, or + # re-initialize the array + if rnd < 0.25: + num = np.random.randint(0, arr.size) + arr[num] = arr[num] + "hello" + elif rnd < 0.5: + if rnd < 0.375: + np.add(arr, arr) + else: + np.add(arr, arr, out=arr) + elif rnd < 0.75: + if rnd < 0.875: + np.multiply(arr, np.int64(2)) + else: + np.multiply(arr, np.int64(2), out=arr) + else: + arr[:] = random_string_list + + with concurrent.futures.ThreadPoolExecutor(max_workers=8) as tpe: + arr = np.array(random_string_list, dtype=dtype) + futures = [tpe.submit(func, arr) for _ in range(500)] + + for f in futures: + f.result() + + +UFUNC_TEST_DATA = [ + "hello" * 10, + "Ae¢☃€ 😊" * 20, + "entry\nwith\nnewlines", + "entry\twith\ttabs", +] + + +@pytest.fixture +def string_array(dtype): + return np.array(UFUNC_TEST_DATA, dtype=dtype) + + +@pytest.fixture +def unicode_array(): + return np.array(UFUNC_TEST_DATA, dtype=np.str_) + + +NAN_PRESERVING_FUNCTIONS = [ + "capitalize", + "expandtabs", + "lower", + "lstrip", + "rstrip", + "splitlines", + "strip", + "swapcase", + "title", + "upper", +] + +BOOL_OUTPUT_FUNCTIONS = [ + "isalnum", + "isalpha", + "isdigit", + "islower", + "isspace", + "istitle", + "isupper", + "isnumeric", + "isdecimal", +] + +UNARY_FUNCTIONS = [ + "str_len", + "capitalize", + "expandtabs", + "isalnum", + "isalpha", + "isdigit", + "islower", + "isspace", + "istitle", + "isupper", + "lower", + "lstrip", + "rstrip", + "splitlines", + "strip", + "swapcase", + "title", + "upper", + "isnumeric", + "isdecimal", + "isalnum", + "islower", + "istitle", + "isupper", +] + +UNIMPLEMENTED_VEC_STRING_FUNCTIONS = [ + "capitalize", + "expandtabs", + "lower", + "splitlines", + "swapcase", + "title", + "upper", +] + +ONLY_IN_NP_CHAR = [ + "join", + "split", + "rsplit", + "splitlines" +] + + +@pytest.mark.parametrize("function_name", UNARY_FUNCTIONS) +def test_unary(string_array, unicode_array, function_name): + if function_name in ONLY_IN_NP_CHAR: + func = getattr(np.char, function_name) + else: + func = getattr(np.strings, function_name) + dtype = string_array.dtype + sres = func(string_array) + ures = func(unicode_array) + if sres.dtype == StringDType(): + ures = ures.astype(StringDType()) + assert_array_equal(sres, ures) + + if not hasattr(dtype, "na_object"): + return + + is_nan = np.isnan(np.array([dtype.na_object], dtype=dtype))[0] + is_str = isinstance(dtype.na_object, str) + na_arr = np.insert(string_array, 0, dtype.na_object) + + if function_name in UNIMPLEMENTED_VEC_STRING_FUNCTIONS: + if not is_str: + # to avoid these errors we'd need to add NA support to _vec_string + with pytest.raises((ValueError, TypeError)): + func(na_arr) + else: + if function_name == "splitlines": + assert func(na_arr)[0] == func(dtype.na_object)[()] + else: + assert func(na_arr)[0] == func(dtype.na_object) + return + if function_name == "str_len" and not is_str: + # str_len always errors for any non-string null, even NA ones because + # it has an integer result + with pytest.raises(ValueError): + func(na_arr) + return + if function_name in BOOL_OUTPUT_FUNCTIONS: + if is_nan: + assert func(na_arr)[0] is np.False_ + elif is_str: + assert func(na_arr)[0] == func(dtype.na_object) + else: + with pytest.raises(ValueError): + func(na_arr) + return + if not (is_nan or is_str): + with pytest.raises(ValueError): + func(na_arr) + return + res = func(na_arr) + if is_nan and function_name in NAN_PRESERVING_FUNCTIONS: + assert res[0] is dtype.na_object + elif is_str: + assert res[0] == func(dtype.na_object) + + +unicode_bug_fail = pytest.mark.xfail( + reason="unicode output width is buggy", strict=True +) + +# None means that the argument is a string array +BINARY_FUNCTIONS = [ + ("add", (None, None)), + ("multiply", (None, 2)), + ("mod", ("format: %s", None)), + ("center", (None, 25)), + ("count", (None, "A")), + ("encode", (None, "UTF-8")), + ("endswith", (None, "lo")), + ("find", (None, "A")), + ("index", (None, "e")), + ("join", ("-", None)), + ("ljust", (None, 12)), + ("lstrip", (None, "A")), + ("partition", (None, "A")), + ("replace", (None, "A", "B")), + ("rfind", (None, "A")), + ("rindex", (None, "e")), + ("rjust", (None, 12)), + ("rsplit", (None, "A")), + ("rstrip", (None, "A")), + ("rpartition", (None, "A")), + ("split", (None, "A")), + ("strip", (None, "A")), + ("startswith", (None, "A")), + ("zfill", (None, 12)), +] + +PASSES_THROUGH_NAN_NULLS = [ + "add", + "center", + "ljust", + "multiply", + "replace", + "rjust", + "strip", + "lstrip", + "rstrip", + "replace" + "zfill", +] + +NULLS_ARE_FALSEY = [ + "startswith", + "endswith", +] + +NULLS_ALWAYS_ERROR = [ + "count", + "find", + "rfind", +] + +SUPPORTS_NULLS = ( + PASSES_THROUGH_NAN_NULLS + + NULLS_ARE_FALSEY + + NULLS_ALWAYS_ERROR +) + + +def call_func(func, args, array, sanitize=True): + if args == (None, None): + return func(array, array) + if args[0] is None: + if sanitize: + san_args = tuple( + np.array(arg, dtype=array.dtype) if isinstance(arg, str) else + arg for arg in args[1:] + ) + else: + san_args = args[1:] + return func(array, *san_args) + if args[1] is None: + return func(args[0], array) + # shouldn't ever happen + assert 0 + + +@pytest.mark.parametrize("function_name, args", BINARY_FUNCTIONS) +def test_binary(string_array, unicode_array, function_name, args): + if function_name in ONLY_IN_NP_CHAR: + func = getattr(np.char, function_name) + else: + func = getattr(np.strings, function_name) + sres = call_func(func, args, string_array) + ures = call_func(func, args, unicode_array, sanitize=False) + if not isinstance(sres, tuple) and sres.dtype == StringDType(): + ures = ures.astype(StringDType()) + assert_array_equal(sres, ures) + + dtype = string_array.dtype + if function_name not in SUPPORTS_NULLS or not hasattr(dtype, "na_object"): + return + + na_arr = np.insert(string_array, 0, dtype.na_object) + is_nan = np.isnan(np.array([dtype.na_object], dtype=dtype))[0] + is_str = isinstance(dtype.na_object, str) + should_error = not (is_nan or is_str) + + if ( + (function_name in NULLS_ALWAYS_ERROR and not is_str) + or (function_name in PASSES_THROUGH_NAN_NULLS and should_error) + or (function_name in NULLS_ARE_FALSEY and should_error) + ): + with pytest.raises((ValueError, TypeError)): + call_func(func, args, na_arr) + return + + res = call_func(func, args, na_arr) + + if is_str: + assert res[0] == call_func(func, args, na_arr[:1]) + elif function_name in NULLS_ARE_FALSEY: + assert res[0] is np.False_ + elif function_name in PASSES_THROUGH_NAN_NULLS: + assert res[0] is dtype.na_object + else: + # shouldn't ever get here + assert 0 + + +@pytest.mark.parametrize("function, expected", [ + (np.strings.find, [[2, -1], [1, -1]]), + (np.strings.startswith, [[False, False], [True, False]])]) +@pytest.mark.parametrize("start, stop", [ + (1, 4), + (np.int8(1), np.int8(4)), + (np.array([1, 1], dtype='u2'), np.array([4, 4], dtype='u2'))]) +def test_non_default_start_stop(function, start, stop, expected): + a = np.array([["--🐍--", "--🦜--"], + ["-🐍---", "-🦜---"]], "T") + indx = function(a, "🐍", start, stop) + assert_array_equal(indx, expected) + + +@pytest.mark.parametrize("count", [2, np.int8(2), np.array([2, 2], 'u2')]) +def test_replace_non_default_repeat(count): + a = np.array(["🐍--", "🦜-🦜-"], "T") + result = np.strings.replace(a, "🦜-", "🦜†", count) + assert_array_equal(result, np.array(["🐍--", "🦜†🦜†"], "T")) + + +def test_strip_ljust_rjust_consistency(string_array, unicode_array): + rjs = np.char.rjust(string_array, 1000) + rju = np.char.rjust(unicode_array, 1000) + + ljs = np.char.ljust(string_array, 1000) + lju = np.char.ljust(unicode_array, 1000) + + assert_array_equal( + np.char.lstrip(rjs), + np.char.lstrip(rju).astype(StringDType()), + ) + + assert_array_equal( + np.char.rstrip(ljs), + np.char.rstrip(lju).astype(StringDType()), + ) + + assert_array_equal( + np.char.strip(ljs), + np.char.strip(lju).astype(StringDType()), + ) + + assert_array_equal( + np.char.strip(rjs), + np.char.strip(rju).astype(StringDType()), + ) + + +def test_unset_na_coercion(): + # a dtype instance with an unset na object is compatible + # with a dtype that has one set + + # this test uses the "add" and "equal" ufunc but all ufuncs that + # accept more than one string argument and produce a string should + # behave this way + # TODO: generalize to more ufuncs + inp = ["hello", "world"] + arr = np.array(inp, dtype=StringDType(na_object=None)) + for op_dtype in [None, StringDType(), StringDType(coerce=False), + StringDType(na_object=None)]: + if op_dtype is None: + op = "2" + else: + op = np.array("2", dtype=op_dtype) + res = arr + op + assert_array_equal(res, ["hello2", "world2"]) + + # dtype instances with distinct explicitly set NA objects are incompatible + for op_dtype in [StringDType(na_object=pd_NA), StringDType(na_object="")]: + op = np.array("2", dtype=op_dtype) + with pytest.raises(TypeError): + arr + op + + # comparisons only consider the na_object + for op_dtype in [None, StringDType(), StringDType(coerce=True), + StringDType(na_object=None)]: + if op_dtype is None: + op = inp + else: + op = np.array(inp, dtype=op_dtype) + assert_array_equal(arr, op) + + for op_dtype in [StringDType(na_object=pd_NA), + StringDType(na_object=np.nan)]: + op = np.array(inp, dtype=op_dtype) + with pytest.raises(TypeError): + arr == op + + +def test_repeat(string_array): + res = string_array.repeat(1000) + # Create an empty array with expanded dimension, and fill it. Then, + # reshape it to the expected result. + expected = np.empty_like(string_array, shape=string_array.shape + (1000,)) + expected[...] = string_array[:, np.newaxis] + expected = expected.reshape(-1) + + assert_array_equal(res, expected, strict=True) + + +@pytest.mark.parametrize("tile", [1, 6, (2, 5)]) +def test_accumulation(string_array, tile): + """Accumulation is odd for StringDType but tests dtypes with references. + """ + # Fill with mostly empty strings to not create absurdly big strings + arr = np.zeros_like(string_array, shape=(100,)) + arr[:len(string_array)] = string_array + arr[-len(string_array):] = string_array + + # Bloat size a bit (get above thresholds and test >1 ndim). + arr = np.tile(string_array, tile) + + res = np.add.accumulate(arr, axis=0) + res_obj = np.add.accumulate(arr.astype(object), axis=0) + assert_array_equal(res, res_obj.astype(arr.dtype), strict=True) + + if arr.ndim > 1: + res = np.add.accumulate(arr, axis=-1) + res_obj = np.add.accumulate(arr.astype(object), axis=-1) + + assert_array_equal(res, res_obj.astype(arr.dtype), strict=True) + + +class TestImplementation: + """Check that strings are stored in the arena when possible. + + This tests implementation details, so should be adjusted if + the implementation changes. + """ + + @classmethod + def setup_class(self): + self.MISSING = 0x80 + self.INITIALIZED = 0x40 + self.OUTSIDE_ARENA = 0x20 + self.LONG = 0x10 + self.dtype = StringDType(na_object=np.nan) + self.sizeofstr = self.dtype.itemsize + sp = self.dtype.itemsize // 2 # pointer size = sizeof(size_t) + # Below, size is not strictly correct, since it really uses + # 7 (or 3) bytes, but good enough for the tests here. + self.view_dtype = np.dtype([ + ('offset', f'u{sp}'), + ('size', f'u{sp // 2}'), + ('xsiz', f'V{sp // 2 - 1}'), + ('size_and_flags', 'u1'), + ] if sys.byteorder == 'little' else [ + ('size_and_flags', 'u1'), + ('xsiz', f'V{sp // 2 - 1}'), + ('size', f'u{sp // 2}'), + ('offset', f'u{sp}'), + ]) + self.s_empty = "" + self.s_short = "01234" + self.s_medium = "abcdefghijklmnopqrstuvwxyz" + self.s_long = "-=+" * 100 + self.a = np.array( + [self.s_empty, self.s_short, self.s_medium, self.s_long], + self.dtype) + + def get_view(self, a): + # Cannot view a StringDType as anything else directly, since + # it has references. So, we use a stride trick hack. + from numpy.lib._stride_tricks_impl import DummyArray + interface = dict(a.__array_interface__) + interface['descr'] = self.view_dtype.descr + interface['typestr'] = self.view_dtype.str + return np.asarray(DummyArray(interface, base=a)) + + def get_flags(self, a): + return self.get_view(a)['size_and_flags'] & 0xf0 + + def is_short(self, a): + return self.get_flags(a) == self.INITIALIZED | self.OUTSIDE_ARENA + + def is_on_heap(self, a): + return self.get_flags(a) == (self.INITIALIZED + | self.OUTSIDE_ARENA + | self.LONG) + + def is_missing(self, a): + return self.get_flags(a) & self.MISSING == self.MISSING + + def in_arena(self, a): + return (self.get_flags(a) & (self.INITIALIZED | self.OUTSIDE_ARENA) + == self.INITIALIZED) + + def test_setup(self): + is_short = self.is_short(self.a) + length = np.strings.str_len(self.a) + assert_array_equal(is_short, (length > 0) & (length <= 15)) + assert_array_equal(self.in_arena(self.a), [False, False, True, True]) + assert_array_equal(self.is_on_heap(self.a), False) + assert_array_equal(self.is_missing(self.a), False) + view = self.get_view(self.a) + sizes = np.where(is_short, view['size_and_flags'] & 0xf, + view['size']) + assert_array_equal(sizes, np.strings.str_len(self.a)) + assert_array_equal(view['xsiz'][2:], + np.void(b'\x00' * (self.sizeofstr // 4 - 1))) + # Check that the medium string uses only 1 byte for its length + # in the arena, while the long string takes 8 (or 4). + offsets = view['offset'] + assert offsets[2] == 1 + assert offsets[3] == 1 + len(self.s_medium) + self.sizeofstr // 2 + + def test_empty(self): + e = np.empty((3,), self.dtype) + assert_array_equal(self.get_flags(e), 0) + assert_array_equal(e, "") + + def test_zeros(self): + z = np.zeros((2,), self.dtype) + assert_array_equal(self.get_flags(z), 0) + assert_array_equal(z, "") + + def test_copy(self): + for c in [self.a.copy(), copy.copy(self.a), copy.deepcopy(self.a)]: + assert_array_equal(self.get_flags(c), self.get_flags(self.a)) + assert_array_equal(c, self.a) + offsets = self.get_view(c)['offset'] + assert offsets[2] == 1 + assert offsets[3] == 1 + len(self.s_medium) + self.sizeofstr // 2 + + def test_arena_use_with_setting(self): + c = np.zeros_like(self.a) + assert_array_equal(self.get_flags(c), 0) + c[:] = self.a + assert_array_equal(self.get_flags(c), self.get_flags(self.a)) + assert_array_equal(c, self.a) + + def test_arena_reuse_with_setting(self): + c = self.a.copy() + c[:] = self.a + assert_array_equal(self.get_flags(c), self.get_flags(self.a)) + assert_array_equal(c, self.a) + + def test_arena_reuse_after_missing(self): + c = self.a.copy() + c[:] = np.nan + assert np.all(self.is_missing(c)) + # Replacing with the original strings, the arena should be reused. + c[:] = self.a + assert_array_equal(self.get_flags(c), self.get_flags(self.a)) + assert_array_equal(c, self.a) + + def test_arena_reuse_after_empty(self): + c = self.a.copy() + c[:] = "" + assert_array_equal(c, "") + # Replacing with the original strings, the arena should be reused. + c[:] = self.a + assert_array_equal(self.get_flags(c), self.get_flags(self.a)) + assert_array_equal(c, self.a) + + def test_arena_reuse_for_shorter(self): + c = self.a.copy() + # A string slightly shorter than the shortest in the arena + # should be used for all strings in the arena. + c[:] = self.s_medium[:-1] + assert_array_equal(c, self.s_medium[:-1]) + # first empty string in original was never initialized, so + # filling it in now leaves it initialized inside the arena. + # second string started as a short string so it can never live + # in the arena. + in_arena = np.array([True, False, True, True]) + assert_array_equal(self.in_arena(c), in_arena) + # But when a short string is replaced, it will go on the heap. + assert_array_equal(self.is_short(c), False) + assert_array_equal(self.is_on_heap(c), ~in_arena) + # We can put the originals back, and they'll still fit, + # and short strings are back as short strings + c[:] = self.a + assert_array_equal(c, self.a) + assert_array_equal(self.in_arena(c), in_arena) + assert_array_equal(self.is_short(c), self.is_short(self.a)) + assert_array_equal(self.is_on_heap(c), False) + + def test_arena_reuse_if_possible(self): + c = self.a.copy() + # A slightly longer string will not fit in the arena for + # the medium string, but will fit for the longer one. + c[:] = self.s_medium + "±" + assert_array_equal(c, self.s_medium + "±") + in_arena_exp = np.strings.str_len(self.a) >= len(self.s_medium) + 1 + # first entry started uninitialized and empty, so filling it leaves + # it in the arena + in_arena_exp[0] = True + assert not np.all(in_arena_exp == self.in_arena(self.a)) + assert_array_equal(self.in_arena(c), in_arena_exp) + assert_array_equal(self.is_short(c), False) + assert_array_equal(self.is_on_heap(c), ~in_arena_exp) + # And once outside arena, it stays outside, since offset is lost. + # But short strings are used again. + c[:] = self.a + is_short_exp = self.is_short(self.a) + assert_array_equal(c, self.a) + assert_array_equal(self.in_arena(c), in_arena_exp) + assert_array_equal(self.is_short(c), is_short_exp) + assert_array_equal(self.is_on_heap(c), ~in_arena_exp & ~is_short_exp) + + def test_arena_no_reuse_after_short(self): + c = self.a.copy() + # If we replace a string with a short string, it cannot + # go into the arena after because the offset is lost. + c[:] = self.s_short + assert_array_equal(c, self.s_short) + assert_array_equal(self.in_arena(c), False) + c[:] = self.a + assert_array_equal(c, self.a) + assert_array_equal(self.in_arena(c), False) + assert_array_equal(self.is_on_heap(c), self.in_arena(self.a)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_strings.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_strings.py new file mode 100644 index 0000000000000000000000000000000000000000..1aca4102d188554c776c80eeca651c7ab0b4b722 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_strings.py @@ -0,0 +1,1289 @@ +import sys +import pytest + +import operator +import numpy as np + +from numpy.testing import assert_array_equal, assert_raises, IS_PYPY +from numpy.testing._private.utils import requires_memory + +COMPARISONS = [ + (operator.eq, np.equal, "=="), + (operator.ne, np.not_equal, "!="), + (operator.lt, np.less, "<"), + (operator.le, np.less_equal, "<="), + (operator.gt, np.greater, ">"), + (operator.ge, np.greater_equal, ">="), +] + +MAX = np.iinfo(np.int64).max + +IS_PYPY_LT_7_3_16 = IS_PYPY and sys.implementation.version < (7, 3, 16) + +@pytest.mark.parametrize(["op", "ufunc", "sym"], COMPARISONS) +def test_mixed_string_comparison_ufuncs_fail(op, ufunc, sym): + arr_string = np.array(["a", "b"], dtype="S") + arr_unicode = np.array(["a", "c"], dtype="U") + + with pytest.raises(TypeError, match="did not contain a loop"): + ufunc(arr_string, arr_unicode) + + with pytest.raises(TypeError, match="did not contain a loop"): + ufunc(arr_unicode, arr_string) + +@pytest.mark.parametrize(["op", "ufunc", "sym"], COMPARISONS) +def test_mixed_string_comparisons_ufuncs_with_cast(op, ufunc, sym): + arr_string = np.array(["a", "b"], dtype="S") + arr_unicode = np.array(["a", "c"], dtype="U") + + # While there is no loop, manual casting is acceptable: + res1 = ufunc(arr_string, arr_unicode, signature="UU->?", casting="unsafe") + res2 = ufunc(arr_string, arr_unicode, signature="SS->?", casting="unsafe") + + expected = op(arr_string.astype("U"), arr_unicode) + assert_array_equal(res1, expected) + assert_array_equal(res2, expected) + + +@pytest.mark.parametrize(["op", "ufunc", "sym"], COMPARISONS) +@pytest.mark.parametrize("dtypes", [ + ("S2", "S2"), ("S2", "S10"), + ("U1"), (">U1", ">U1"), + ("U10")]) +@pytest.mark.parametrize("aligned", [True, False]) +def test_string_comparisons(op, ufunc, sym, dtypes, aligned): + # ensure native byte-order for the first view to stay within unicode range + native_dt = np.dtype(dtypes[0]).newbyteorder("=") + arr = np.arange(2**15).view(native_dt).astype(dtypes[0]) + if not aligned: + # Make `arr` unaligned: + new = np.zeros(arr.nbytes + 1, dtype=np.uint8)[1:].view(dtypes[0]) + new[...] = arr + arr = new + + arr2 = arr.astype(dtypes[1], copy=True) + np.random.shuffle(arr2) + arr[0] = arr2[0] # make sure one matches + + expected = [op(d1, d2) for d1, d2 in zip(arr.tolist(), arr2.tolist())] + assert_array_equal(op(arr, arr2), expected) + assert_array_equal(ufunc(arr, arr2), expected) + assert_array_equal( + np.char.compare_chararrays(arr, arr2, sym, False), expected + ) + + expected = [op(d2, d1) for d1, d2 in zip(arr.tolist(), arr2.tolist())] + assert_array_equal(op(arr2, arr), expected) + assert_array_equal(ufunc(arr2, arr), expected) + assert_array_equal( + np.char.compare_chararrays(arr2, arr, sym, False), expected + ) + + +@pytest.mark.parametrize(["op", "ufunc", "sym"], COMPARISONS) +@pytest.mark.parametrize("dtypes", [ + ("S2", "S2"), ("S2", "S10"), ("U10")]) +def test_string_comparisons_empty(op, ufunc, sym, dtypes): + arr = np.empty((1, 0, 1, 5), dtype=dtypes[0]) + arr2 = np.empty((100, 1, 0, 1), dtype=dtypes[1]) + + expected = np.empty(np.broadcast_shapes(arr.shape, arr2.shape), dtype=bool) + assert_array_equal(op(arr, arr2), expected) + assert_array_equal(ufunc(arr, arr2), expected) + assert_array_equal( + np.char.compare_chararrays(arr, arr2, sym, False), expected + ) + + +@pytest.mark.parametrize("str_dt", ["S", "U"]) +@pytest.mark.parametrize("float_dt", np.typecodes["AllFloat"]) +def test_float_to_string_cast(str_dt, float_dt): + float_dt = np.dtype(float_dt) + fi = np.finfo(float_dt) + arr = np.array([np.nan, np.inf, -np.inf, fi.max, fi.min], dtype=float_dt) + expected = ["nan", "inf", "-inf", str(fi.max), str(fi.min)] + if float_dt.kind == "c": + expected = [f"({r}+0j)" for r in expected] + + res = arr.astype(str_dt) + assert_array_equal(res, np.array(expected, dtype=str_dt)) + + +@pytest.mark.parametrize("str_dt", "US") +@pytest.mark.parametrize("size", [-1, np.iinfo(np.intc).max]) +def test_string_size_dtype_errors(str_dt, size): + if size > 0: + size = size // np.dtype(f"{str_dt}1").itemsize + 1 + + with pytest.raises(ValueError): + np.dtype((str_dt, size)) + with pytest.raises(TypeError): + np.dtype(f"{str_dt}{size}") + + +@pytest.mark.parametrize("str_dt", "US") +def test_string_size_dtype_large_repr(str_dt): + size = np.iinfo(np.intc).max // np.dtype(f"{str_dt}1").itemsize + size_str = str(size) + + dtype = np.dtype((str_dt, size)) + assert size_str in dtype.str + assert size_str in str(dtype) + assert size_str in repr(dtype) + + +@pytest.mark.slow +@requires_memory(2 * np.iinfo(np.intc).max) +@pytest.mark.parametrize("str_dt", "US") +def test_large_string_coercion_error(str_dt): + very_large = np.iinfo(np.intc).max // np.dtype(f"{str_dt}1").itemsize + try: + large_string = "A" * (very_large + 1) + except Exception: + # We may not be able to create this Python string on 32bit. + pytest.skip("python failed to create huge string") + + class MyStr: + def __str__(self): + return large_string + + try: + # TypeError from NumPy, or OverflowError from 32bit Python. + with pytest.raises((TypeError, OverflowError)): + np.array([large_string], dtype=str_dt) + + # Same as above, but input has to be converted to a string. + with pytest.raises((TypeError, OverflowError)): + np.array([MyStr()], dtype=str_dt) + except MemoryError: + # Catch memory errors, because `requires_memory` would do so. + raise AssertionError("Ops should raise before any large allocation.") + +@pytest.mark.slow +@requires_memory(2 * np.iinfo(np.intc).max) +@pytest.mark.parametrize("str_dt", "US") +def test_large_string_addition_error(str_dt): + very_large = np.iinfo(np.intc).max // np.dtype(f"{str_dt}1").itemsize + + a = np.array(["A" * very_large], dtype=str_dt) + b = np.array("B", dtype=str_dt) + try: + with pytest.raises(TypeError): + np.add(a, b) + with pytest.raises(TypeError): + np.add(a, a) + except MemoryError: + # Catch memory errors, because `requires_memory` would do so. + raise AssertionError("Ops should raise before any large allocation.") + + +def test_large_string_cast(): + very_large = np.iinfo(np.intc).max // 4 + # Could be nice to test very large path, but it makes too many huge + # allocations right now (need non-legacy cast loops for this). + # a = np.array([], dtype=np.dtype(("S", very_large))) + # assert a.astype("U").dtype.itemsize == very_large * 4 + + a = np.array([], dtype=np.dtype(("S", very_large + 1))) + # It is not perfect but OK if this raises a MemoryError during setup + # (this happens due clunky code and/or buffer setup.) + with pytest.raises((TypeError, MemoryError)): + a.astype("U") + + +@pytest.mark.parametrize("dt", ["S", "U", "T"]) +class TestMethods: + + @pytest.mark.parametrize("in1,in2,out", [ + ("", "", ""), + ("abc", "abc", "abcabc"), + ("12345", "12345", "1234512345"), + ("MixedCase", "MixedCase", "MixedCaseMixedCase"), + ("12345 \0 ", "12345 \0 ", "12345 \0 12345 \0 "), + ("UPPER", "UPPER", "UPPERUPPER"), + (["abc", "def"], ["hello", "world"], ["abchello", "defworld"]), + ]) + def test_add(self, in1, in2, out, dt): + in1 = np.array(in1, dtype=dt) + in2 = np.array(in2, dtype=dt) + out = np.array(out, dtype=dt) + assert_array_equal(np.strings.add(in1, in2), out) + + @pytest.mark.parametrize("in1,in2,out", [ + ("abc", 3, "abcabcabc"), + ("abc", 0, ""), + ("abc", -1, ""), + (["abc", "def"], [1, 4], ["abc", "defdefdefdef"]), + ]) + def test_multiply(self, in1, in2, out, dt): + in1 = np.array(in1, dtype=dt) + out = np.array(out, dtype=dt) + assert_array_equal(np.strings.multiply(in1, in2), out) + + def test_multiply_raises(self, dt): + with pytest.raises(TypeError, match="unsupported type"): + np.strings.multiply(np.array("abc", dtype=dt), 3.14) + + with pytest.raises(MemoryError): + np.strings.multiply(np.array("abc", dtype=dt), sys.maxsize) + + @pytest.mark.parametrize("i_dt", [np.int8, np.int16, np.int32, + np.int64, np.int_]) + def test_multiply_integer_dtypes(self, i_dt, dt): + a = np.array("abc", dtype=dt) + i = np.array(3, dtype=i_dt) + res = np.array("abcabcabc", dtype=dt) + assert_array_equal(np.strings.multiply(a, i), res) + + @pytest.mark.parametrize("in_,out", [ + ("", False), + ("a", True), + ("A", True), + ("\n", False), + ("abc", True), + ("aBc123", False), + ("abc\n", False), + (["abc", "aBc123"], [True, False]), + ]) + def test_isalpha(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isalpha(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('', False), + ('a', True), + ('A', True), + ('\n', False), + ('123abc456', True), + ('a1b3c', True), + ('aBc000 ', False), + ('abc\n', False), + ]) + def test_isalnum(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isalnum(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ("", False), + ("a", False), + ("0", True), + ("012345", True), + ("012345a", False), + (["a", "012345"], [False, True]), + ]) + def test_isdigit(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isdigit(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ("", False), + ("a", False), + ("1", False), + (" ", True), + ("\t", True), + ("\r", True), + ("\n", True), + (" \t\r \n", True), + (" \t\r\na", False), + (["\t1", " \t\r \n"], [False, True]) + ]) + def test_isspace(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isspace(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('', False), + ('a', True), + ('A', False), + ('\n', False), + ('abc', True), + ('aBc', False), + ('abc\n', True), + ]) + def test_islower(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.islower(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('', False), + ('a', False), + ('A', True), + ('\n', False), + ('ABC', True), + ('AbC', False), + ('ABC\n', True), + ]) + def test_isupper(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isupper(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('', False), + ('a', False), + ('A', True), + ('\n', False), + ('A Titlecased Line', True), + ('A\nTitlecased Line', True), + ('A Titlecased, Line', True), + ('Not a capitalized String', False), + ('Not\ta Titlecase String', False), + ('Not--a Titlecase String', False), + ('NOT', False), + ]) + def test_istitle(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.istitle(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ("", 0), + ("abc", 3), + ("12345", 5), + ("MixedCase", 9), + ("12345 \x00 ", 8), + ("UPPER", 5), + (["abc", "12345 \x00 "], [3, 8]), + ]) + def test_str_len(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.str_len(in_), out) + + @pytest.mark.parametrize("a,sub,start,end,out", [ + ("abcdefghiabc", "abc", 0, None, 0), + ("abcdefghiabc", "abc", 1, None, 9), + ("abcdefghiabc", "def", 4, None, -1), + ("abc", "", 0, None, 0), + ("abc", "", 3, None, 3), + ("abc", "", 4, None, -1), + ("rrarrrrrrrrra", "a", 0, None, 2), + ("rrarrrrrrrrra", "a", 4, None, 12), + ("rrarrrrrrrrra", "a", 4, 6, -1), + ("", "", 0, None, 0), + ("", "", 1, 1, -1), + ("", "", MAX, 0, -1), + ("", "xx", 0, None, -1), + ("", "xx", 1, 1, -1), + ("", "xx", MAX, 0, -1), + pytest.param(99*"a" + "b", "b", 0, None, 99, + id="99*a+b-b-0-None-99"), + pytest.param(98*"a" + "ba", "ba", 0, None, 98, + id="98*a+ba-ba-0-None-98"), + pytest.param(100*"a", "b", 0, None, -1, + id="100*a-b-0-None--1"), + pytest.param(30000*"a" + 100*"b", 100*"b", 0, None, 30000, + id="30000*a+100*b-100*b-0-None-30000"), + pytest.param(30000*"a", 100*"b", 0, None, -1, + id="30000*a-100*b-0-None--1"), + pytest.param(15000*"a" + 15000*"b", 15000*"b", 0, None, 15000, + id="15000*a+15000*b-15000*b-0-None-15000"), + pytest.param(15000*"a" + 15000*"b", 15000*"c", 0, None, -1, + id="15000*a+15000*b-15000*c-0-None--1"), + (["abcdefghiabc", "rrarrrrrrrrra"], ["def", "arr"], [0, 3], + None, [3, -1]), + ("Ae¢☃€ 😊" * 2, "😊", 0, None, 6), + ("Ae¢☃€ 😊" * 2, "😊", 7, None, 13), + pytest.param("A" * (2 ** 17), r"[\w]+\Z", 0, None, -1, + id=r"A*2**17-[\w]+\Z-0-None--1"), + ]) + def test_find(self, a, sub, start, end, out, dt): + if "😊" in a and dt == "S": + pytest.skip("Bytes dtype does not support non-ascii input") + a = np.array(a, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.find(a, sub, start, end), out) + + @pytest.mark.parametrize("a,sub,start,end,out", [ + ("abcdefghiabc", "abc", 0, None, 9), + ("abcdefghiabc", "", 0, None, 12), + ("abcdefghiabc", "abcd", 0, None, 0), + ("abcdefghiabc", "abcz", 0, None, -1), + ("abc", "", 0, None, 3), + ("abc", "", 3, None, 3), + ("abc", "", 4, None, -1), + ("rrarrrrrrrrra", "a", 0, None, 12), + ("rrarrrrrrrrra", "a", 4, None, 12), + ("rrarrrrrrrrra", "a", 4, 6, -1), + (["abcdefghiabc", "rrarrrrrrrrra"], ["abc", "a"], [0, 0], + None, [9, 12]), + ("Ae¢☃€ 😊" * 2, "😊", 0, None, 13), + ("Ae¢☃€ 😊" * 2, "😊", 0, 7, 6), + ]) + def test_rfind(self, a, sub, start, end, out, dt): + if "😊" in a and dt == "S": + pytest.skip("Bytes dtype does not support non-ascii input") + a = np.array(a, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.rfind(a, sub, start, end), out) + + @pytest.mark.parametrize("a,sub,start,end,out", [ + ("aaa", "a", 0, None, 3), + ("aaa", "b", 0, None, 0), + ("aaa", "a", 1, None, 2), + ("aaa", "a", 10, None, 0), + ("aaa", "a", -1, None, 1), + ("aaa", "a", -10, None, 3), + ("aaa", "a", 0, 1, 1), + ("aaa", "a", 0, 10, 3), + ("aaa", "a", 0, -1, 2), + ("aaa", "a", 0, -10, 0), + ("aaa", "", 1, None, 3), + ("aaa", "", 3, None, 1), + ("aaa", "", 10, None, 0), + ("aaa", "", -1, None, 2), + ("aaa", "", -10, None, 4), + ("aaa", "aaaa", 0, None, 0), + pytest.param(98*"a" + "ba", "ba", 0, None, 1, + id="98*a+ba-ba-0-None-1"), + pytest.param(30000*"a" + 100*"b", 100*"b", 0, None, 1, + id="30000*a+100*b-100*b-0-None-1"), + pytest.param(30000*"a", 100*"b", 0, None, 0, + id="30000*a-100*b-0-None-0"), + pytest.param(30000*"a" + 100*"ab", "ab", 0, None, 100, + id="30000*a+100*ab-ab-0-None-100"), + pytest.param(15000*"a" + 15000*"b", 15000*"b", 0, None, 1, + id="15000*a+15000*b-15000*b-0-None-1"), + pytest.param(15000*"a" + 15000*"b", 15000*"c", 0, None, 0, + id="15000*a+15000*b-15000*c-0-None-0"), + ("", "", 0, None, 1), + ("", "", 1, 1, 0), + ("", "", MAX, 0, 0), + ("", "xx", 0, None, 0), + ("", "xx", 1, 1, 0), + ("", "xx", MAX, 0, 0), + (["aaa", ""], ["a", ""], [0, 0], None, [3, 1]), + ("Ae¢☃€ 😊" * 100, "😊", 0, None, 100), + ]) + def test_count(self, a, sub, start, end, out, dt): + if "😊" in a and dt == "S": + pytest.skip("Bytes dtype does not support non-ascii input") + a = np.array(a, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.count(a, sub, start, end), out) + + @pytest.mark.parametrize("a,prefix,start,end,out", [ + ("hello", "he", 0, None, True), + ("hello", "hello", 0, None, True), + ("hello", "hello world", 0, None, False), + ("hello", "", 0, None, True), + ("hello", "ello", 0, None, False), + ("hello", "ello", 1, None, True), + ("hello", "o", 4, None, True), + ("hello", "o", 5, None, False), + ("hello", "", 5, None, True), + ("hello", "lo", 6, None, False), + ("helloworld", "lowo", 3, None, True), + ("helloworld", "lowo", 3, 7, True), + ("helloworld", "lowo", 3, 6, False), + ("", "", 0, 1, True), + ("", "", 0, 0, True), + ("", "", 1, 0, False), + ("hello", "he", 0, -1, True), + ("hello", "he", -53, -1, True), + ("hello", "hello", 0, -1, False), + ("hello", "hello world", -1, -10, False), + ("hello", "ello", -5, None, False), + ("hello", "ello", -4, None, True), + ("hello", "o", -2, None, False), + ("hello", "o", -1, None, True), + ("hello", "", -3, -3, True), + ("hello", "lo", -9, None, False), + (["hello", ""], ["he", ""], [0, 0], None, [True, True]), + ]) + def test_startswith(self, a, prefix, start, end, out, dt): + a = np.array(a, dtype=dt) + prefix = np.array(prefix, dtype=dt) + assert_array_equal(np.strings.startswith(a, prefix, start, end), out) + + @pytest.mark.parametrize("a,suffix,start,end,out", [ + ("hello", "lo", 0, None, True), + ("hello", "he", 0, None, False), + ("hello", "", 0, None, True), + ("hello", "hello world", 0, None, False), + ("helloworld", "worl", 0, None, False), + ("helloworld", "worl", 3, 9, True), + ("helloworld", "world", 3, 12, True), + ("helloworld", "lowo", 1, 7, True), + ("helloworld", "lowo", 2, 7, True), + ("helloworld", "lowo", 3, 7, True), + ("helloworld", "lowo", 4, 7, False), + ("helloworld", "lowo", 3, 8, False), + ("ab", "ab", 0, 1, False), + ("ab", "ab", 0, 0, False), + ("", "", 0, 1, True), + ("", "", 0, 0, True), + ("", "", 1, 0, False), + ("hello", "lo", -2, None, True), + ("hello", "he", -2, None, False), + ("hello", "", -3, -3, True), + ("hello", "hello world", -10, -2, False), + ("helloworld", "worl", -6, None, False), + ("helloworld", "worl", -5, -1, True), + ("helloworld", "worl", -5, 9, True), + ("helloworld", "world", -7, 12, True), + ("helloworld", "lowo", -99, -3, True), + ("helloworld", "lowo", -8, -3, True), + ("helloworld", "lowo", -7, -3, True), + ("helloworld", "lowo", 3, -4, False), + ("helloworld", "lowo", -8, -2, False), + (["hello", "helloworld"], ["lo", "worl"], [0, -6], None, + [True, False]), + ]) + def test_endswith(self, a, suffix, start, end, out, dt): + a = np.array(a, dtype=dt) + suffix = np.array(suffix, dtype=dt) + assert_array_equal(np.strings.endswith(a, suffix, start, end), out) + + @pytest.mark.parametrize("a,chars,out", [ + ("", None, ""), + (" hello ", None, "hello "), + ("hello", None, "hello"), + (" \t\n\r\f\vabc \t\n\r\f\v", None, "abc \t\n\r\f\v"), + ([" hello ", "hello"], None, ["hello ", "hello"]), + ("", "", ""), + ("", "xyz", ""), + ("hello", "", "hello"), + ("xyzzyhelloxyzzy", "xyz", "helloxyzzy"), + ("hello", "xyz", "hello"), + ("xyxz", "xyxz", ""), + ("xyxzx", "x", "yxzx"), + (["xyzzyhelloxyzzy", "hello"], ["xyz", "xyz"], + ["helloxyzzy", "hello"]), + (["ba", "ac", "baa", "bba"], "b", ["a", "ac", "aa", "a"]), + ]) + def test_lstrip(self, a, chars, out, dt): + a = np.array(a, dtype=dt) + out = np.array(out, dtype=dt) + if chars is not None: + chars = np.array(chars, dtype=dt) + assert_array_equal(np.strings.lstrip(a, chars), out) + else: + assert_array_equal(np.strings.lstrip(a), out) + + @pytest.mark.parametrize("a,chars,out", [ + ("", None, ""), + (" hello ", None, " hello"), + ("hello", None, "hello"), + (" \t\n\r\f\vabc \t\n\r\f\v", None, " \t\n\r\f\vabc"), + ([" hello ", "hello"], None, [" hello", "hello"]), + ("", "", ""), + ("", "xyz", ""), + ("hello", "", "hello"), + (["hello ", "abcdefghijklmnop"], None, + ["hello", "abcdefghijklmnop"]), + ("xyzzyhelloxyzzy", "xyz", "xyzzyhello"), + ("hello", "xyz", "hello"), + ("xyxz", "xyxz", ""), + (" ", None, ""), + ("xyxzx", "x", "xyxz"), + (["xyzzyhelloxyzzy", "hello"], ["xyz", "xyz"], + ["xyzzyhello", "hello"]), + (["ab", "ac", "aab", "abb"], "b", ["a", "ac", "aa", "a"]), + ]) + def test_rstrip(self, a, chars, out, dt): + a = np.array(a, dtype=dt) + out = np.array(out, dtype=dt) + if chars is not None: + chars = np.array(chars, dtype=dt) + assert_array_equal(np.strings.rstrip(a, chars), out) + else: + assert_array_equal(np.strings.rstrip(a), out) + + @pytest.mark.parametrize("a,chars,out", [ + ("", None, ""), + (" hello ", None, "hello"), + ("hello", None, "hello"), + (" \t\n\r\f\vabc \t\n\r\f\v", None, "abc"), + ([" hello ", "hello"], None, ["hello", "hello"]), + ("", "", ""), + ("", "xyz", ""), + ("hello", "", "hello"), + ("xyzzyhelloxyzzy", "xyz", "hello"), + ("hello", "xyz", "hello"), + ("xyxz", "xyxz", ""), + ("xyxzx", "x", "yxz"), + (["xyzzyhelloxyzzy", "hello"], ["xyz", "xyz"], + ["hello", "hello"]), + (["bab", "ac", "baab", "bbabb"], "b", ["a", "ac", "aa", "a"]), + ]) + def test_strip(self, a, chars, out, dt): + a = np.array(a, dtype=dt) + if chars is not None: + chars = np.array(chars, dtype=dt) + out = np.array(out, dtype=dt) + assert_array_equal(np.strings.strip(a, chars), out) + + @pytest.mark.parametrize("buf,old,new,count,res", [ + ("", "", "", -1, ""), + ("", "", "A", -1, "A"), + ("", "A", "", -1, ""), + ("", "A", "A", -1, ""), + ("", "", "", 100, ""), + ("", "", "A", 100, "A"), + ("A", "", "", -1, "A"), + ("A", "", "*", -1, "*A*"), + ("A", "", "*1", -1, "*1A*1"), + ("A", "", "*-#", -1, "*-#A*-#"), + ("AA", "", "*-", -1, "*-A*-A*-"), + ("AA", "", "*-", -1, "*-A*-A*-"), + ("AA", "", "*-", 4, "*-A*-A*-"), + ("AA", "", "*-", 3, "*-A*-A*-"), + ("AA", "", "*-", 2, "*-A*-A"), + ("AA", "", "*-", 1, "*-AA"), + ("AA", "", "*-", 0, "AA"), + ("A", "A", "", -1, ""), + ("AAA", "A", "", -1, ""), + ("AAA", "A", "", -1, ""), + ("AAA", "A", "", 4, ""), + ("AAA", "A", "", 3, ""), + ("AAA", "A", "", 2, "A"), + ("AAA", "A", "", 1, "AA"), + ("AAA", "A", "", 0, "AAA"), + ("AAAAAAAAAA", "A", "", -1, ""), + ("ABACADA", "A", "", -1, "BCD"), + ("ABACADA", "A", "", -1, "BCD"), + ("ABACADA", "A", "", 5, "BCD"), + ("ABACADA", "A", "", 4, "BCD"), + ("ABACADA", "A", "", 3, "BCDA"), + ("ABACADA", "A", "", 2, "BCADA"), + ("ABACADA", "A", "", 1, "BACADA"), + ("ABACADA", "A", "", 0, "ABACADA"), + ("ABCAD", "A", "", -1, "BCD"), + ("ABCADAA", "A", "", -1, "BCD"), + ("BCD", "A", "", -1, "BCD"), + ("*************", "A", "", -1, "*************"), + ("^"+"A"*1000+"^", "A", "", 999, "^A^"), + ("the", "the", "", -1, ""), + ("theater", "the", "", -1, "ater"), + ("thethe", "the", "", -1, ""), + ("thethethethe", "the", "", -1, ""), + ("theatheatheathea", "the", "", -1, "aaaa"), + ("that", "the", "", -1, "that"), + ("thaet", "the", "", -1, "thaet"), + ("here and there", "the", "", -1, "here and re"), + ("here and there and there", "the", "", -1, "here and re and re"), + ("here and there and there", "the", "", 3, "here and re and re"), + ("here and there and there", "the", "", 2, "here and re and re"), + ("here and there and there", "the", "", 1, "here and re and there"), + ("here and there and there", "the", "", 0, "here and there and there"), + ("here and there and there", "the", "", -1, "here and re and re"), + ("abc", "the", "", -1, "abc"), + ("abcdefg", "the", "", -1, "abcdefg"), + ("bbobob", "bob", "", -1, "bob"), + ("bbobobXbbobob", "bob", "", -1, "bobXbob"), + ("aaaaaaabob", "bob", "", -1, "aaaaaaa"), + ("aaaaaaa", "bob", "", -1, "aaaaaaa"), + ("Who goes there?", "o", "o", -1, "Who goes there?"), + ("Who goes there?", "o", "O", -1, "WhO gOes there?"), + ("Who goes there?", "o", "O", -1, "WhO gOes there?"), + ("Who goes there?", "o", "O", 3, "WhO gOes there?"), + ("Who goes there?", "o", "O", 2, "WhO gOes there?"), + ("Who goes there?", "o", "O", 1, "WhO goes there?"), + ("Who goes there?", "o", "O", 0, "Who goes there?"), + ("Who goes there?", "a", "q", -1, "Who goes there?"), + ("Who goes there?", "W", "w", -1, "who goes there?"), + ("WWho goes there?WW", "W", "w", -1, "wwho goes there?ww"), + ("Who goes there?", "?", "!", -1, "Who goes there!"), + ("Who goes there??", "?", "!", -1, "Who goes there!!"), + ("Who goes there?", ".", "!", -1, "Who goes there?"), + ("This is a tissue", "is", "**", -1, "Th** ** a t**sue"), + ("This is a tissue", "is", "**", -1, "Th** ** a t**sue"), + ("This is a tissue", "is", "**", 4, "Th** ** a t**sue"), + ("This is a tissue", "is", "**", 3, "Th** ** a t**sue"), + ("This is a tissue", "is", "**", 2, "Th** ** a tissue"), + ("This is a tissue", "is", "**", 1, "Th** is a tissue"), + ("This is a tissue", "is", "**", 0, "This is a tissue"), + ("bobob", "bob", "cob", -1, "cobob"), + ("bobobXbobobob", "bob", "cob", -1, "cobobXcobocob"), + ("bobob", "bot", "bot", -1, "bobob"), + ("Reykjavik", "k", "KK", -1, "ReyKKjaviKK"), + ("Reykjavik", "k", "KK", -1, "ReyKKjaviKK"), + ("Reykjavik", "k", "KK", 2, "ReyKKjaviKK"), + ("Reykjavik", "k", "KK", 1, "ReyKKjavik"), + ("Reykjavik", "k", "KK", 0, "Reykjavik"), + ("A.B.C.", ".", "----", -1, "A----B----C----"), + ("Reykjavik", "q", "KK", -1, "Reykjavik"), + ("spam, spam, eggs and spam", "spam", "ham", -1, + "ham, ham, eggs and ham"), + ("spam, spam, eggs and spam", "spam", "ham", -1, + "ham, ham, eggs and ham"), + ("spam, spam, eggs and spam", "spam", "ham", 4, + "ham, ham, eggs and ham"), + ("spam, spam, eggs and spam", "spam", "ham", 3, + "ham, ham, eggs and ham"), + ("spam, spam, eggs and spam", "spam", "ham", 2, + "ham, ham, eggs and spam"), + ("spam, spam, eggs and spam", "spam", "ham", 1, + "ham, spam, eggs and spam"), + ("spam, spam, eggs and spam", "spam", "ham", 0, + "spam, spam, eggs and spam"), + ("bobobob", "bobob", "bob", -1, "bobob"), + ("bobobobXbobobob", "bobob", "bob", -1, "bobobXbobob"), + ("BOBOBOB", "bob", "bobby", -1, "BOBOBOB"), + ("one!two!three!", "!", "@", 1, "one@two!three!"), + ("one!two!three!", "!", "", -1, "onetwothree"), + ("one!two!three!", "!", "@", 2, "one@two@three!"), + ("one!two!three!", "!", "@", 3, "one@two@three@"), + ("one!two!three!", "!", "@", 4, "one@two@three@"), + ("one!two!three!", "!", "@", 0, "one!two!three!"), + ("one!two!three!", "!", "@", -1, "one@two@three@"), + ("one!two!three!", "x", "@", -1, "one!two!three!"), + ("one!two!three!", "x", "@", 2, "one!two!three!"), + ("abc", "", "-", -1, "-a-b-c-"), + ("abc", "", "-", 3, "-a-b-c"), + ("abc", "", "-", 0, "abc"), + ("abc", "ab", "--", 0, "abc"), + ("abc", "xy", "--", -1, "abc"), + (["abbc", "abbd"], "b", "z", [1, 2], ["azbc", "azzd"]), + ]) + def test_replace(self, buf, old, new, count, res, dt): + if "😊" in buf and dt == "S": + pytest.skip("Bytes dtype does not support non-ascii input") + buf = np.array(buf, dtype=dt) + old = np.array(old, dtype=dt) + new = np.array(new, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.replace(buf, old, new, count), res) + + @pytest.mark.parametrize("buf,sub,start,end,res", [ + ("abcdefghiabc", "", 0, None, 0), + ("abcdefghiabc", "def", 0, None, 3), + ("abcdefghiabc", "abc", 0, None, 0), + ("abcdefghiabc", "abc", 1, None, 9), + ]) + def test_index(self, buf, sub, start, end, res, dt): + buf = np.array(buf, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.index(buf, sub, start, end), res) + + @pytest.mark.parametrize("buf,sub,start,end", [ + ("abcdefghiabc", "hib", 0, None), + ("abcdefghiab", "abc", 1, None), + ("abcdefghi", "ghi", 8, None), + ("abcdefghi", "ghi", -1, None), + ("rrarrrrrrrrra", "a", 4, 6), + ]) + def test_index_raises(self, buf, sub, start, end, dt): + buf = np.array(buf, dtype=dt) + sub = np.array(sub, dtype=dt) + with pytest.raises(ValueError, match="substring not found"): + np.strings.index(buf, sub, start, end) + + @pytest.mark.parametrize("buf,sub,start,end,res", [ + ("abcdefghiabc", "", 0, None, 12), + ("abcdefghiabc", "def", 0, None, 3), + ("abcdefghiabc", "abc", 0, None, 9), + ("abcdefghiabc", "abc", 0, -1, 0), + ]) + def test_rindex(self, buf, sub, start, end, res, dt): + buf = np.array(buf, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.rindex(buf, sub, start, end), res) + + @pytest.mark.parametrize("buf,sub,start,end", [ + ("abcdefghiabc", "hib", 0, None), + ("defghiabc", "def", 1, None), + ("defghiabc", "abc", 0, -1), + ("abcdefghi", "ghi", 0, 8), + ("abcdefghi", "ghi", 0, -1), + ("rrarrrrrrrrra", "a", 4, 6), + ]) + def test_rindex_raises(self, buf, sub, start, end, dt): + buf = np.array(buf, dtype=dt) + sub = np.array(sub, dtype=dt) + with pytest.raises(ValueError, match="substring not found"): + np.strings.rindex(buf, sub, start, end) + + @pytest.mark.parametrize("buf,tabsize,res", [ + ("abc\rab\tdef\ng\thi", 8, "abc\rab def\ng hi"), + ("abc\rab\tdef\ng\thi", 4, "abc\rab def\ng hi"), + ("abc\r\nab\tdef\ng\thi", 8, "abc\r\nab def\ng hi"), + ("abc\r\nab\tdef\ng\thi", 4, "abc\r\nab def\ng hi"), + ("abc\r\nab\r\ndef\ng\r\nhi", 4, "abc\r\nab\r\ndef\ng\r\nhi"), + (" \ta\n\tb", 1, " a\n b"), + ]) + def test_expandtabs(self, buf, tabsize, res, dt): + buf = np.array(buf, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.expandtabs(buf, tabsize), res) + + def test_expandtabs_raises_overflow(self, dt): + with pytest.raises(OverflowError, match="new string is too long"): + np.strings.expandtabs(np.array("\ta\n\tb", dtype=dt), sys.maxsize) + np.strings.expandtabs(np.array("\ta\n\tb", dtype=dt), 2**61) + + FILL_ERROR = "The fill character must be exactly one character long" + + def test_center_raises_multiple_character_fill(self, dt): + buf = np.array("abc", dtype=dt) + fill = np.array("**", dtype=dt) + with pytest.raises(TypeError, match=self.FILL_ERROR): + np.strings.center(buf, 10, fill) + + def test_ljust_raises_multiple_character_fill(self, dt): + buf = np.array("abc", dtype=dt) + fill = np.array("**", dtype=dt) + with pytest.raises(TypeError, match=self.FILL_ERROR): + np.strings.ljust(buf, 10, fill) + + def test_rjust_raises_multiple_character_fill(self, dt): + buf = np.array("abc", dtype=dt) + fill = np.array("**", dtype=dt) + with pytest.raises(TypeError, match=self.FILL_ERROR): + np.strings.rjust(buf, 10, fill) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('abc', 10, ' ', ' abc '), + ('abc', 6, ' ', ' abc '), + ('abc', 3, ' ', 'abc'), + ('abc', 2, ' ', 'abc'), + ('abc', 10, '*', '***abc****'), + ]) + def test_center(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.center(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('abc', 10, ' ', 'abc '), + ('abc', 6, ' ', 'abc '), + ('abc', 3, ' ', 'abc'), + ('abc', 2, ' ', 'abc'), + ('abc', 10, '*', 'abc*******'), + ]) + def test_ljust(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.ljust(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('abc', 10, ' ', ' abc'), + ('abc', 6, ' ', ' abc'), + ('abc', 3, ' ', 'abc'), + ('abc', 2, ' ', 'abc'), + ('abc', 10, '*', '*******abc'), + ]) + def test_rjust(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.rjust(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,width,res", [ + ('123', 2, '123'), + ('123', 3, '123'), + ('0123', 4, '0123'), + ('+123', 3, '+123'), + ('+123', 4, '+123'), + ('+123', 5, '+0123'), + ('+0123', 5, '+0123'), + ('-123', 3, '-123'), + ('-123', 4, '-123'), + ('-0123', 5, '-0123'), + ('000', 3, '000'), + ('34', 1, '34'), + ('0034', 4, '0034'), + ]) + def test_zfill(self, buf, width, res, dt): + buf = np.array(buf, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.zfill(buf, width), res) + + @pytest.mark.parametrize("buf,sep,res1,res2,res3", [ + ("this is the partition method", "ti", "this is the par", + "ti", "tion method"), + ("http://www.python.org", "://", "http", "://", "www.python.org"), + ("http://www.python.org", "?", "http://www.python.org", "", ""), + ("http://www.python.org", "http://", "", "http://", "www.python.org"), + ("http://www.python.org", "org", "http://www.python.", "org", ""), + ("http://www.python.org", ["://", "?", "http://", "org"], + ["http", "http://www.python.org", "", "http://www.python."], + ["://", "", "http://", "org"], + ["www.python.org", "", "www.python.org", ""]), + ("mississippi", "ss", "mi", "ss", "issippi"), + ("mississippi", "i", "m", "i", "ssissippi"), + ("mississippi", "w", "mississippi", "", ""), + ]) + def test_partition(self, buf, sep, res1, res2, res3, dt): + buf = np.array(buf, dtype=dt) + sep = np.array(sep, dtype=dt) + res1 = np.array(res1, dtype=dt) + res2 = np.array(res2, dtype=dt) + res3 = np.array(res3, dtype=dt) + act1, act2, act3 = np.strings.partition(buf, sep) + assert_array_equal(act1, res1) + assert_array_equal(act2, res2) + assert_array_equal(act3, res3) + assert_array_equal(act1 + act2 + act3, buf) + + @pytest.mark.parametrize("buf,sep,res1,res2,res3", [ + ("this is the partition method", "ti", "this is the parti", + "ti", "on method"), + ("http://www.python.org", "://", "http", "://", "www.python.org"), + ("http://www.python.org", "?", "", "", "http://www.python.org"), + ("http://www.python.org", "http://", "", "http://", "www.python.org"), + ("http://www.python.org", "org", "http://www.python.", "org", ""), + ("http://www.python.org", ["://", "?", "http://", "org"], + ["http", "", "", "http://www.python."], + ["://", "", "http://", "org"], + ["www.python.org", "http://www.python.org", "www.python.org", ""]), + ("mississippi", "ss", "missi", "ss", "ippi"), + ("mississippi", "i", "mississipp", "i", ""), + ("mississippi", "w", "", "", "mississippi"), + ]) + def test_rpartition(self, buf, sep, res1, res2, res3, dt): + buf = np.array(buf, dtype=dt) + sep = np.array(sep, dtype=dt) + res1 = np.array(res1, dtype=dt) + res2 = np.array(res2, dtype=dt) + res3 = np.array(res3, dtype=dt) + act1, act2, act3 = np.strings.rpartition(buf, sep) + assert_array_equal(act1, res1) + assert_array_equal(act2, res2) + assert_array_equal(act3, res3) + assert_array_equal(act1 + act2 + act3, buf) + + +@pytest.mark.parametrize("dt", ["U", "T"]) +class TestMethodsWithUnicode: + @pytest.mark.parametrize("in_,out", [ + ("", False), + ("a", False), + ("0", True), + ("\u2460", False), # CIRCLED DIGIT 1 + ("\xbc", False), # VULGAR FRACTION ONE QUARTER + ("\u0660", True), # ARABIC_INDIC DIGIT ZERO + ("012345", True), + ("012345a", False), + (["0", "a"], [True, False]), + ]) + def test_isdecimal_unicode(self, in_, out, dt): + buf = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isdecimal(buf), out) + + @pytest.mark.parametrize("in_,out", [ + ("", False), + ("a", False), + ("0", True), + ("\u2460", True), # CIRCLED DIGIT 1 + ("\xbc", True), # VULGAR FRACTION ONE QUARTER + ("\u0660", True), # ARABIC_INDIC DIGIT ZERO + ("012345", True), + ("012345a", False), + (["0", "a"], [True, False]), + ]) + def test_isnumeric_unicode(self, in_, out, dt): + buf = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isnumeric(buf), out) + + @pytest.mark.parametrize("buf,old,new,count,res", [ + ("...\u043c......<", "<", "<", -1, "...\u043c......<"), + ("Ae¢☃€ 😊" * 2, "A", "B", -1, "Be¢☃€ 😊Be¢☃€ 😊"), + ("Ae¢☃€ 😊" * 2, "😊", "B", -1, "Ae¢☃€ BAe¢☃€ B"), + ]) + def test_replace_unicode(self, buf, old, new, count, res, dt): + buf = np.array(buf, dtype=dt) + old = np.array(old, dtype=dt) + new = np.array(new, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.replace(buf, old, new, count), res) + + @pytest.mark.parametrize("in_", [ + '\U00010401', + '\U00010427', + '\U00010429', + '\U0001044E', + '\U0001D7F6', + '\U00011066', + '\U000104A0', + pytest.param('\U0001F107', marks=pytest.mark.xfail( + sys.platform == 'win32' and IS_PYPY_LT_7_3_16, + reason="PYPY bug in Py_UNICODE_ISALNUM", + strict=True)), + ]) + def test_isalnum_unicode(self, in_, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isalnum(in_), True) + + @pytest.mark.parametrize("in_,out", [ + ('\u1FFc', False), + ('\u2167', False), + ('\U00010401', False), + ('\U00010427', False), + ('\U0001F40D', False), + ('\U0001F46F', False), + ('\u2177', True), + pytest.param('\U00010429', True, marks=pytest.mark.xfail( + sys.platform == 'win32' and IS_PYPY_LT_7_3_16, + reason="PYPY bug in Py_UNICODE_ISLOWER", + strict=True)), + ('\U0001044E', True), + ]) + def test_islower_unicode(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.islower(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('\u1FFc', False), + ('\u2167', True), + ('\U00010401', True), + ('\U00010427', True), + ('\U0001F40D', False), + ('\U0001F46F', False), + ('\u2177', False), + pytest.param('\U00010429', False, marks=pytest.mark.xfail( + sys.platform == 'win32' and IS_PYPY_LT_7_3_16, + reason="PYPY bug in Py_UNICODE_ISUPPER", + strict=True)), + ('\U0001044E', False), + ]) + def test_isupper_unicode(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.isupper(in_), out) + + @pytest.mark.parametrize("in_,out", [ + ('\u1FFc', True), + ('Greek \u1FFcitlecases ...', True), + pytest.param('\U00010401\U00010429', True, marks=pytest.mark.xfail( + sys.platform == 'win32' and IS_PYPY_LT_7_3_16, + reason="PYPY bug in Py_UNICODE_ISISTITLE", + strict=True)), + ('\U00010427\U0001044E', True), + pytest.param('\U00010429', False, marks=pytest.mark.xfail( + sys.platform == 'win32' and IS_PYPY_LT_7_3_16, + reason="PYPY bug in Py_UNICODE_ISISTITLE", + strict=True)), + ('\U0001044E', False), + ('\U0001F40D', False), + ('\U0001F46F', False), + ]) + def test_istitle_unicode(self, in_, out, dt): + in_ = np.array(in_, dtype=dt) + assert_array_equal(np.strings.istitle(in_), out) + + @pytest.mark.parametrize("buf,sub,start,end,res", [ + ("Ae¢☃€ 😊" * 2, "😊", 0, None, 6), + ("Ae¢☃€ 😊" * 2, "😊", 7, None, 13), + ]) + def test_index_unicode(self, buf, sub, start, end, res, dt): + buf = np.array(buf, dtype=dt) + sub = np.array(sub, dtype=dt) + assert_array_equal(np.strings.index(buf, sub, start, end), res) + + def test_index_raises_unicode(self, dt): + with pytest.raises(ValueError, match="substring not found"): + np.strings.index("Ae¢☃€ 😊", "😀") + + @pytest.mark.parametrize("buf,res", [ + ("Ae¢☃€ \t 😊", "Ae¢☃€ 😊"), + ("\t\U0001044E", " \U0001044E"), + ]) + def test_expandtabs(self, buf, res, dt): + buf = np.array(buf, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.expandtabs(buf), res) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('x', 2, '\U0001044E', 'x\U0001044E'), + ('x', 3, '\U0001044E', '\U0001044Ex\U0001044E'), + ('x', 4, '\U0001044E', '\U0001044Ex\U0001044E\U0001044E'), + ]) + def test_center(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.center(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('x', 2, '\U0001044E', 'x\U0001044E'), + ('x', 3, '\U0001044E', 'x\U0001044E\U0001044E'), + ('x', 4, '\U0001044E', 'x\U0001044E\U0001044E\U0001044E'), + ]) + def test_ljust(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.ljust(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,width,fillchar,res", [ + ('x', 2, '\U0001044E', '\U0001044Ex'), + ('x', 3, '\U0001044E', '\U0001044E\U0001044Ex'), + ('x', 4, '\U0001044E', '\U0001044E\U0001044E\U0001044Ex'), + ]) + def test_rjust(self, buf, width, fillchar, res, dt): + buf = np.array(buf, dtype=dt) + fillchar = np.array(fillchar, dtype=dt) + res = np.array(res, dtype=dt) + assert_array_equal(np.strings.rjust(buf, width, fillchar), res) + + @pytest.mark.parametrize("buf,sep,res1,res2,res3", [ + ("āāāāĀĀĀĀ", "Ă", "āāāāĀĀĀĀ", "", ""), + ("āāāāĂĀĀĀĀ", "Ă", "āāāā", "Ă", "ĀĀĀĀ"), + ("āāāāĂĂĀĀĀĀ", "ĂĂ", "āāāā", "ĂĂ", "ĀĀĀĀ"), + ("𐌁𐌁𐌁𐌁𐌀𐌀𐌀𐌀", "𐌂", "𐌁𐌁𐌁𐌁𐌀𐌀𐌀𐌀", "", ""), + ("𐌁𐌁𐌁𐌁𐌂𐌀𐌀𐌀𐌀", "𐌂", "𐌁𐌁𐌁𐌁", "𐌂", "𐌀𐌀𐌀𐌀"), + ("𐌁𐌁𐌁𐌁𐌂𐌂𐌀𐌀𐌀𐌀", "𐌂𐌂", "𐌁𐌁𐌁𐌁", "𐌂𐌂", "𐌀𐌀𐌀𐌀"), + ("𐌁𐌁𐌁𐌁𐌂𐌂𐌂𐌂𐌀𐌀𐌀𐌀", "𐌂𐌂𐌂𐌂", "𐌁𐌁𐌁𐌁", "𐌂𐌂𐌂𐌂", "𐌀𐌀𐌀𐌀"), + ]) + def test_partition(self, buf, sep, res1, res2, res3, dt): + buf = np.array(buf, dtype=dt) + sep = np.array(sep, dtype=dt) + res1 = np.array(res1, dtype=dt) + res2 = np.array(res2, dtype=dt) + res3 = np.array(res3, dtype=dt) + act1, act2, act3 = np.strings.partition(buf, sep) + assert_array_equal(act1, res1) + assert_array_equal(act2, res2) + assert_array_equal(act3, res3) + assert_array_equal(act1 + act2 + act3, buf) + + @pytest.mark.parametrize("buf,sep,res1,res2,res3", [ + ("āāāāĀĀĀĀ", "Ă", "", "", "āāāāĀĀĀĀ"), + ("āāāāĂĀĀĀĀ", "Ă", "āāāā", "Ă", "ĀĀĀĀ"), + ("āāāāĂĂĀĀĀĀ", "ĂĂ", "āāāā", "ĂĂ", "ĀĀĀĀ"), + ("𐌁𐌁𐌁𐌁𐌀𐌀𐌀𐌀", "𐌂", "", "", "𐌁𐌁𐌁𐌁𐌀𐌀𐌀𐌀"), + ("𐌁𐌁𐌁𐌁𐌂𐌀𐌀𐌀𐌀", "𐌂", "𐌁𐌁𐌁𐌁", "𐌂", "𐌀𐌀𐌀𐌀"), + ("𐌁𐌁𐌁𐌁𐌂𐌂𐌀𐌀𐌀𐌀", "𐌂𐌂", "𐌁𐌁𐌁𐌁", "𐌂𐌂", "𐌀𐌀𐌀𐌀"), + ]) + def test_rpartition(self, buf, sep, res1, res2, res3, dt): + buf = np.array(buf, dtype=dt) + sep = np.array(sep, dtype=dt) + res1 = np.array(res1, dtype=dt) + res2 = np.array(res2, dtype=dt) + res3 = np.array(res3, dtype=dt) + act1, act2, act3 = np.strings.rpartition(buf, sep) + assert_array_equal(act1, res1) + assert_array_equal(act2, res2) + assert_array_equal(act3, res3) + assert_array_equal(act1 + act2 + act3, buf) + + @pytest.mark.parametrize("method", ["strip", "lstrip", "rstrip"]) + @pytest.mark.parametrize( + "source,strip", + [ + ("λμ", "μ"), + ("λμ", "λ"), + ("λ"*5 + "μ"*2, "μ"), + ("λ" * 5 + "μ" * 2, "λ"), + ("λ" * 5 + "A" + "μ" * 2, "μλ"), + ("λμ" * 5, "μ"), + ("λμ" * 5, "λ"), + ]) + def test_strip_functions_unicode(self, source, strip, method, dt): + src_array = np.array([source], dtype=dt) + + npy_func = getattr(np.strings, method) + py_func = getattr(str, method) + + expected = np.array([py_func(source, strip)], dtype=dt) + actual = npy_func(src_array, strip) + + assert_array_equal(actual, expected) + + +class TestMixedTypeMethods: + def test_center(self): + buf = np.array("😊", dtype="U") + fill = np.array("*", dtype="S") + res = np.array("*😊*", dtype="U") + assert_array_equal(np.strings.center(buf, 3, fill), res) + + buf = np.array("s", dtype="S") + fill = np.array("*", dtype="U") + res = np.array("*s*", dtype="S") + assert_array_equal(np.strings.center(buf, 3, fill), res) + + with pytest.raises(ValueError, match="'ascii' codec can't encode"): + buf = np.array("s", dtype="S") + fill = np.array("😊", dtype="U") + np.strings.center(buf, 3, fill) + + def test_ljust(self): + buf = np.array("😊", dtype="U") + fill = np.array("*", dtype="S") + res = np.array("😊**", dtype="U") + assert_array_equal(np.strings.ljust(buf, 3, fill), res) + + buf = np.array("s", dtype="S") + fill = np.array("*", dtype="U") + res = np.array("s**", dtype="S") + assert_array_equal(np.strings.ljust(buf, 3, fill), res) + + with pytest.raises(ValueError, match="'ascii' codec can't encode"): + buf = np.array("s", dtype="S") + fill = np.array("😊", dtype="U") + np.strings.ljust(buf, 3, fill) + + def test_rjust(self): + buf = np.array("😊", dtype="U") + fill = np.array("*", dtype="S") + res = np.array("**😊", dtype="U") + assert_array_equal(np.strings.rjust(buf, 3, fill), res) + + buf = np.array("s", dtype="S") + fill = np.array("*", dtype="U") + res = np.array("**s", dtype="S") + assert_array_equal(np.strings.rjust(buf, 3, fill), res) + + with pytest.raises(ValueError, match="'ascii' codec can't encode"): + buf = np.array("s", dtype="S") + fill = np.array("😊", dtype="U") + np.strings.rjust(buf, 3, fill) + + +class TestUnicodeOnlyMethodsRaiseWithBytes: + def test_isdecimal_raises(self): + in_ = np.array(b"1") + with assert_raises(TypeError): + np.strings.isdecimal(in_) + + def test_isnumeric_bytes(self): + in_ = np.array(b"1") + with assert_raises(TypeError): + np.strings.isnumeric(in_) + + +def check_itemsize(n_elem, dt): + if dt == "T": + return np.dtype(dt).itemsize + if dt == "S": + return n_elem + if dt == "U": + return n_elem * 4 + +@pytest.mark.parametrize("dt", ["S", "U", "T"]) +class TestReplaceOnArrays: + + def test_replace_count_and_size(self, dt): + a = np.array(["0123456789" * i for i in range(4)], dtype=dt) + r1 = np.strings.replace(a, "5", "ABCDE") + assert r1.dtype.itemsize == check_itemsize(3*10 + 3*4, dt) + r1_res = np.array(["01234ABCDE6789" * i for i in range(4)], dtype=dt) + assert_array_equal(r1, r1_res) + r2 = np.strings.replace(a, "5", "ABCDE", 1) + assert r2.dtype.itemsize == check_itemsize(3*10 + 4, dt) + r3 = np.strings.replace(a, "5", "ABCDE", 0) + assert r3.dtype.itemsize == a.dtype.itemsize + assert_array_equal(r3, a) + # Negative values mean to replace all. + r4 = np.strings.replace(a, "5", "ABCDE", -1) + assert r4.dtype.itemsize == check_itemsize(3*10 + 3*4, dt) + assert_array_equal(r4, r1) + # We can do count on an element-by-element basis. + r5 = np.strings.replace(a, "5", "ABCDE", [-1, -1, -1, 1]) + assert r5.dtype.itemsize == check_itemsize(3*10 + 4, dt) + assert_array_equal(r5, np.array( + ["01234ABCDE6789" * i for i in range(3)] + + ["01234ABCDE6789" + "0123456789" * 2], dtype=dt)) + + def test_replace_broadcasting(self, dt): + a = np.array("0,0,0", dtype=dt) + r1 = np.strings.replace(a, "0", "1", np.arange(3)) + assert r1.dtype == a.dtype + assert_array_equal(r1, np.array(["0,0,0", "1,0,0", "1,1,0"], dtype=dt)) + r2 = np.strings.replace(a, "0", [["1"], ["2"]], np.arange(1, 4)) + assert_array_equal(r2, np.array([["1,0,0", "1,1,0", "1,1,1"], + ["2,0,0", "2,2,0", "2,2,2"]], + dtype=dt)) + r3 = np.strings.replace(a, ["0", "0,0", "0,0,0"], "X") + assert_array_equal(r3, np.array(["X,X,X", "X,0", "X"], dtype=dt)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_ufunc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_ufunc.py new file mode 100644 index 0000000000000000000000000000000000000000..7ca2f21df36393084ccb52745bd44cc251496170 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_ufunc.py @@ -0,0 +1,3201 @@ +import warnings +import itertools +import sys +import ctypes as ct +import pickle + +import pytest +from pytest import param + +import numpy as np +import numpy._core.umath as ncu +import numpy._core._umath_tests as umt +import numpy.linalg._umath_linalg as uml +import numpy._core._operand_flag_tests as opflag_tests +import numpy._core._rational_tests as _rational_tests +from numpy.exceptions import AxisError +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_array_equal, + assert_almost_equal, assert_array_almost_equal, assert_no_warnings, + assert_allclose, HAS_REFCOUNT, suppress_warnings, IS_WASM, IS_PYPY, + ) +from numpy.testing._private.utils import requires_memory + + +UNARY_UFUNCS = [obj for obj in np._core.umath.__dict__.values() + if isinstance(obj, np.ufunc)] +UNARY_OBJECT_UFUNCS = [uf for uf in UNARY_UFUNCS if "O->O" in uf.types] + +# Remove functions that do not support `floats` +UNARY_OBJECT_UFUNCS.remove(np.bitwise_count) + + +class TestUfuncKwargs: + def test_kwarg_exact(self): + assert_raises(TypeError, np.add, 1, 2, castingx='safe') + assert_raises(TypeError, np.add, 1, 2, dtypex=int) + assert_raises(TypeError, np.add, 1, 2, extobjx=[4096]) + assert_raises(TypeError, np.add, 1, 2, outx=None) + assert_raises(TypeError, np.add, 1, 2, sigx='ii->i') + assert_raises(TypeError, np.add, 1, 2, signaturex='ii->i') + assert_raises(TypeError, np.add, 1, 2, subokx=False) + assert_raises(TypeError, np.add, 1, 2, wherex=[True]) + + def test_sig_signature(self): + assert_raises(TypeError, np.add, 1, 2, sig='ii->i', + signature='ii->i') + + def test_sig_dtype(self): + assert_raises(TypeError, np.add, 1, 2, sig='ii->i', + dtype=int) + assert_raises(TypeError, np.add, 1, 2, signature='ii->i', + dtype=int) + + def test_extobj_removed(self): + assert_raises(TypeError, np.add, 1, 2, extobj=[4096]) + + +class TestUfuncGenericLoops: + """Test generic loops. + + The loops to be tested are: + + PyUFunc_ff_f_As_dd_d + PyUFunc_ff_f + PyUFunc_dd_d + PyUFunc_gg_g + PyUFunc_FF_F_As_DD_D + PyUFunc_DD_D + PyUFunc_FF_F + PyUFunc_GG_G + PyUFunc_OO_O + PyUFunc_OO_O_method + PyUFunc_f_f_As_d_d + PyUFunc_d_d + PyUFunc_f_f + PyUFunc_g_g + PyUFunc_F_F_As_D_D + PyUFunc_F_F + PyUFunc_D_D + PyUFunc_G_G + PyUFunc_O_O + PyUFunc_O_O_method + PyUFunc_On_Om + + Where: + + f -- float + d -- double + g -- long double + F -- complex float + D -- complex double + G -- complex long double + O -- python object + + It is difficult to assure that each of these loops is entered from the + Python level as the special cased loops are a moving target and the + corresponding types are architecture dependent. We probably need to + define C level testing ufuncs to get at them. For the time being, I've + just looked at the signatures registered in the build directory to find + relevant functions. + + """ + np_dtypes = [ + (np.single, np.single), (np.single, np.double), + (np.csingle, np.csingle), (np.csingle, np.cdouble), + (np.double, np.double), (np.longdouble, np.longdouble), + (np.cdouble, np.cdouble), (np.clongdouble, np.clongdouble)] + + @pytest.mark.parametrize('input_dtype,output_dtype', np_dtypes) + def test_unary_PyUFunc(self, input_dtype, output_dtype, f=np.exp, x=0, y=1): + xs = np.full(10, input_dtype(x), dtype=output_dtype) + ys = f(xs)[::2] + assert_allclose(ys, y) + assert_equal(ys.dtype, output_dtype) + + def f2(x, y): + return x**y + + @pytest.mark.parametrize('input_dtype,output_dtype', np_dtypes) + def test_binary_PyUFunc(self, input_dtype, output_dtype, f=f2, x=0, y=1): + xs = np.full(10, input_dtype(x), dtype=output_dtype) + ys = f(xs, xs)[::2] + assert_allclose(ys, y) + assert_equal(ys.dtype, output_dtype) + + # class to use in testing object method loops + class foo: + def conjugate(self): + return np.bool(1) + + def logical_xor(self, obj): + return np.bool(1) + + def test_unary_PyUFunc_O_O(self): + x = np.ones(10, dtype=object) + assert_(np.all(np.abs(x) == 1)) + + def test_unary_PyUFunc_O_O_method_simple(self, foo=foo): + x = np.full(10, foo(), dtype=object) + assert_(np.all(np.conjugate(x) == True)) + + def test_binary_PyUFunc_OO_O(self): + x = np.ones(10, dtype=object) + assert_(np.all(np.add(x, x) == 2)) + + def test_binary_PyUFunc_OO_O_method(self, foo=foo): + x = np.full(10, foo(), dtype=object) + assert_(np.all(np.logical_xor(x, x))) + + def test_binary_PyUFunc_On_Om_method(self, foo=foo): + x = np.full((10, 2, 3), foo(), dtype=object) + assert_(np.all(np.logical_xor(x, x))) + + def test_python_complex_conjugate(self): + # The conjugate ufunc should fall back to calling the method: + arr = np.array([1+2j, 3-4j], dtype="O") + assert isinstance(arr[0], complex) + res = np.conjugate(arr) + assert res.dtype == np.dtype("O") + assert_array_equal(res, np.array([1-2j, 3+4j], dtype="O")) + + @pytest.mark.parametrize("ufunc", UNARY_OBJECT_UFUNCS) + def test_unary_PyUFunc_O_O_method_full(self, ufunc): + """Compare the result of the object loop with non-object one""" + val = np.float64(np.pi/4) + + class MyFloat(np.float64): + def __getattr__(self, attr): + try: + return super().__getattr__(attr) + except AttributeError: + return lambda: getattr(np._core.umath, attr)(val) + + # Use 0-D arrays, to ensure the same element call + num_arr = np.array(val, dtype=np.float64) + obj_arr = np.array(MyFloat(val), dtype="O") + + with np.errstate(all="raise"): + try: + res_num = ufunc(num_arr) + except Exception as exc: + with assert_raises(type(exc)): + ufunc(obj_arr) + else: + res_obj = ufunc(obj_arr) + assert_array_almost_equal(res_num.astype("O"), res_obj) + + +def _pickleable_module_global(): + pass + + +class TestUfunc: + def test_pickle(self): + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + assert_(pickle.loads(pickle.dumps(np.sin, + protocol=proto)) is np.sin) + + # Check that ufunc not defined in the top level numpy namespace + # such as numpy._core._rational_tests.test_add can also be pickled + res = pickle.loads(pickle.dumps(_rational_tests.test_add, + protocol=proto)) + assert_(res is _rational_tests.test_add) + + def test_pickle_withstring(self): + astring = (b"cnumpy.core\n_ufunc_reconstruct\np0\n" + b"(S'numpy._core.umath'\np1\nS'cos'\np2\ntp3\nRp4\n.") + assert_(pickle.loads(astring) is np.cos) + + @pytest.mark.skipif(IS_PYPY, reason="'is' check does not work on PyPy") + def test_pickle_name_is_qualname(self): + # This tests that a simplification of our ufunc pickle code will + # lead to allowing qualnames as names. Future ufuncs should + # possible add a specific qualname, or a hook into pickling instead + # (dask+numba may benefit). + _pickleable_module_global.ufunc = umt._pickleable_module_global_ufunc + + obj = pickle.loads(pickle.dumps(_pickleable_module_global.ufunc)) + assert obj is umt._pickleable_module_global_ufunc + + def test_reduceat_shifting_sum(self): + L = 6 + x = np.arange(L) + idx = np.array(list(zip(np.arange(L - 2), np.arange(L - 2) + 2))).ravel() + assert_array_equal(np.add.reduceat(x, idx)[::2], [1, 3, 5, 7]) + + def test_all_ufunc(self): + """Try to check presence and results of all ufuncs. + + The list of ufuncs comes from generate_umath.py and is as follows: + + ===== ==== ============= =============== ======================== + done args function types notes + ===== ==== ============= =============== ======================== + n 1 conjugate nums + O + n 1 absolute nums + O complex -> real + n 1 negative nums + O + n 1 sign nums + O -> int + n 1 invert bool + ints + O flts raise an error + n 1 degrees real + M cmplx raise an error + n 1 radians real + M cmplx raise an error + n 1 arccos flts + M + n 1 arccosh flts + M + n 1 arcsin flts + M + n 1 arcsinh flts + M + n 1 arctan flts + M + n 1 arctanh flts + M + n 1 cos flts + M + n 1 sin flts + M + n 1 tan flts + M + n 1 cosh flts + M + n 1 sinh flts + M + n 1 tanh flts + M + n 1 exp flts + M + n 1 expm1 flts + M + n 1 log flts + M + n 1 log10 flts + M + n 1 log1p flts + M + n 1 sqrt flts + M real x < 0 raises error + n 1 ceil real + M + n 1 trunc real + M + n 1 floor real + M + n 1 fabs real + M + n 1 rint flts + M + n 1 isnan flts -> bool + n 1 isinf flts -> bool + n 1 isfinite flts -> bool + n 1 signbit real -> bool + n 1 modf real -> (frac, int) + n 1 logical_not bool + nums + M -> bool + n 2 left_shift ints + O flts raise an error + n 2 right_shift ints + O flts raise an error + n 2 add bool + nums + O boolean + is || + n 2 subtract bool + nums + O boolean - is ^ + n 2 multiply bool + nums + O boolean * is & + n 2 divide nums + O + n 2 floor_divide nums + O + n 2 true_divide nums + O bBhH -> f, iIlLqQ -> d + n 2 fmod nums + M + n 2 power nums + O + n 2 greater bool + nums + O -> bool + n 2 greater_equal bool + nums + O -> bool + n 2 less bool + nums + O -> bool + n 2 less_equal bool + nums + O -> bool + n 2 equal bool + nums + O -> bool + n 2 not_equal bool + nums + O -> bool + n 2 logical_and bool + nums + M -> bool + n 2 logical_or bool + nums + M -> bool + n 2 logical_xor bool + nums + M -> bool + n 2 maximum bool + nums + O + n 2 minimum bool + nums + O + n 2 bitwise_and bool + ints + O flts raise an error + n 2 bitwise_or bool + ints + O flts raise an error + n 2 bitwise_xor bool + ints + O flts raise an error + n 2 arctan2 real + M + n 2 remainder ints + real + O + n 2 hypot real + M + ===== ==== ============= =============== ======================== + + Types other than those listed will be accepted, but they are cast to + the smallest compatible type for which the function is defined. The + casting rules are: + + bool -> int8 -> float32 + ints -> double + + """ + pass + + # from include/numpy/ufuncobject.h + size_inferred = 2 + can_ignore = 4 + def test_signature0(self): + # the arguments to test_signature are: nin, nout, core_signature + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(i),(i)->()") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 1, 0)) + assert_equal(ixs, (0, 0)) + assert_equal(flags, (self.size_inferred,)) + assert_equal(sizes, (-1,)) + + def test_signature1(self): + # empty core signature; treat as plain ufunc (with trivial core) + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(),()->()") + assert_equal(enabled, 0) + assert_equal(num_dims, (0, 0, 0)) + assert_equal(ixs, ()) + assert_equal(flags, ()) + assert_equal(sizes, ()) + + def test_signature2(self): + # more complicated names for variables + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(i1,i2),(J_1)->(_kAB)") + assert_equal(enabled, 1) + assert_equal(num_dims, (2, 1, 1)) + assert_equal(ixs, (0, 1, 2, 3)) + assert_equal(flags, (self.size_inferred,)*4) + assert_equal(sizes, (-1, -1, -1, -1)) + + def test_signature3(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(i1, i12), (J_1)->(i12, i2)") + assert_equal(enabled, 1) + assert_equal(num_dims, (2, 1, 2)) + assert_equal(ixs, (0, 1, 2, 1, 3)) + assert_equal(flags, (self.size_inferred,)*4) + assert_equal(sizes, (-1, -1, -1, -1)) + + def test_signature4(self): + # matrix_multiply signature from _umath_tests + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(n,k),(k,m)->(n,m)") + assert_equal(enabled, 1) + assert_equal(num_dims, (2, 2, 2)) + assert_equal(ixs, (0, 1, 1, 2, 0, 2)) + assert_equal(flags, (self.size_inferred,)*3) + assert_equal(sizes, (-1, -1, -1)) + + def test_signature5(self): + # matmul signature from _umath_tests + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 2, 1, "(n?,k),(k,m?)->(n?,m?)") + assert_equal(enabled, 1) + assert_equal(num_dims, (2, 2, 2)) + assert_equal(ixs, (0, 1, 1, 2, 0, 2)) + assert_equal(flags, (self.size_inferred | self.can_ignore, + self.size_inferred, + self.size_inferred | self.can_ignore)) + assert_equal(sizes, (-1, -1, -1)) + + def test_signature6(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 1, 1, "(3)->()") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 0)) + assert_equal(ixs, (0,)) + assert_equal(flags, (0,)) + assert_equal(sizes, (3,)) + + def test_signature7(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 3, 1, "(3),(03,3),(n)->(9)") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 2, 1, 1)) + assert_equal(ixs, (0, 0, 0, 1, 2)) + assert_equal(flags, (0, self.size_inferred, 0)) + assert_equal(sizes, (3, -1, 9)) + + def test_signature8(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 3, 1, "(3?),(3?,3?),(n)->(9)") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 2, 1, 1)) + assert_equal(ixs, (0, 0, 0, 1, 2)) + assert_equal(flags, (self.can_ignore, self.size_inferred, 0)) + assert_equal(sizes, (3, -1, 9)) + + def test_signature9(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 1, 1, "( 3) -> ( )") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 0)) + assert_equal(ixs, (0,)) + assert_equal(flags, (0,)) + assert_equal(sizes, (3,)) + + def test_signature10(self): + enabled, num_dims, ixs, flags, sizes = umt.test_signature( + 3, 1, "( 3? ) , (3? , 3?) ,(n )-> ( 9)") + assert_equal(enabled, 1) + assert_equal(num_dims, (1, 2, 1, 1)) + assert_equal(ixs, (0, 0, 0, 1, 2)) + assert_equal(flags, (self.can_ignore, self.size_inferred, 0)) + assert_equal(sizes, (3, -1, 9)) + + def test_signature_failure_extra_parenthesis(self): + with assert_raises(ValueError): + umt.test_signature(2, 1, "((i)),(i)->()") + + def test_signature_failure_mismatching_parenthesis(self): + with assert_raises(ValueError): + umt.test_signature(2, 1, "(i),)i(->()") + + def test_signature_failure_signature_missing_input_arg(self): + with assert_raises(ValueError): + umt.test_signature(2, 1, "(i),->()") + + def test_signature_failure_signature_missing_output_arg(self): + with assert_raises(ValueError): + umt.test_signature(2, 2, "(i),(i)->()") + + def test_get_signature(self): + assert_equal(np.vecdot.signature, "(n),(n)->()") + + def test_forced_sig(self): + a = 0.5*np.arange(3, dtype='f8') + assert_equal(np.add(a, 0.5), [0.5, 1, 1.5]) + with pytest.warns(DeprecationWarning): + assert_equal(np.add(a, 0.5, sig='i', casting='unsafe'), [0, 0, 1]) + assert_equal(np.add(a, 0.5, sig='ii->i', casting='unsafe'), [0, 0, 1]) + with pytest.warns(DeprecationWarning): + assert_equal(np.add(a, 0.5, sig=('i4',), casting='unsafe'), + [0, 0, 1]) + assert_equal(np.add(a, 0.5, sig=('i4', 'i4', 'i4'), + casting='unsafe'), [0, 0, 1]) + + b = np.zeros((3,), dtype='f8') + np.add(a, 0.5, out=b) + assert_equal(b, [0.5, 1, 1.5]) + b[:] = 0 + with pytest.warns(DeprecationWarning): + np.add(a, 0.5, sig='i', out=b, casting='unsafe') + assert_equal(b, [0, 0, 1]) + b[:] = 0 + np.add(a, 0.5, sig='ii->i', out=b, casting='unsafe') + assert_equal(b, [0, 0, 1]) + b[:] = 0 + with pytest.warns(DeprecationWarning): + np.add(a, 0.5, sig=('i4',), out=b, casting='unsafe') + assert_equal(b, [0, 0, 1]) + b[:] = 0 + np.add(a, 0.5, sig=('i4', 'i4', 'i4'), out=b, casting='unsafe') + assert_equal(b, [0, 0, 1]) + + def test_signature_all_None(self): + # signature all None, is an acceptable alternative (since 1.21) + # to not providing a signature. + res1 = np.add([3], [4], sig=(None, None, None)) + res2 = np.add([3], [4]) + assert_array_equal(res1, res2) + res1 = np.maximum([3], [4], sig=(None, None, None)) + res2 = np.maximum([3], [4]) + assert_array_equal(res1, res2) + + with pytest.raises(TypeError): + # special case, that would be deprecated anyway, so errors: + np.add(3, 4, signature=(None,)) + + def test_signature_dtype_type(self): + # Since that will be the normal behaviour (past NumPy 1.21) + # we do support the types already: + float_dtype = type(np.dtype(np.float64)) + np.add(3, 4, signature=(float_dtype, float_dtype, None)) + + @pytest.mark.parametrize("get_kwarg", [ + lambda dt: dict(dtype=dt), + lambda dt: dict(signature=(dt, None, None))]) + def test_signature_dtype_instances_allowed(self, get_kwarg): + # We allow certain dtype instances when there is a clear singleton + # and the given one is equivalent; mainly for backcompat. + int64 = np.dtype("int64") + int64_2 = pickle.loads(pickle.dumps(int64)) + # Relies on pickling behavior, if assert fails just remove test... + assert int64 is not int64_2 + + assert np.add(1, 2, **get_kwarg(int64_2)).dtype == int64 + td = np.timedelta(2, "s") + assert np.add(td, td, **get_kwarg("m8")).dtype == "m8[s]" + + @pytest.mark.parametrize("get_kwarg", [ + param(lambda x: dict(dtype=x), id="dtype"), + param(lambda x: dict(signature=(x, None, None)), id="signature")]) + def test_signature_dtype_instances_allowed(self, get_kwarg): + msg = "The `dtype` and `signature` arguments to ufuncs" + + with pytest.raises(TypeError, match=msg): + np.add(3, 5, **get_kwarg(np.dtype("int64").newbyteorder())) + with pytest.raises(TypeError, match=msg): + np.add(3, 5, **get_kwarg(np.dtype("m8[ns]"))) + with pytest.raises(TypeError, match=msg): + np.add(3, 5, **get_kwarg("m8[ns]")) + + @pytest.mark.parametrize("casting", ["unsafe", "same_kind", "safe"]) + def test_partial_signature_mismatch(self, casting): + # If the second argument matches already, no need to specify it: + res = np.ldexp(np.float32(1.), np.int_(2), dtype="d") + assert res.dtype == "d" + res = np.ldexp(np.float32(1.), np.int_(2), signature=(None, None, "d")) + assert res.dtype == "d" + + # ldexp only has a loop for long input as second argument, overriding + # the output cannot help with that (no matter the casting) + with pytest.raises(TypeError): + np.ldexp(1., np.uint64(3), dtype="d") + with pytest.raises(TypeError): + np.ldexp(1., np.uint64(3), signature=(None, None, "d")) + + def test_partial_signature_mismatch_with_cache(self): + with pytest.raises(TypeError): + np.add(np.float16(1), np.uint64(2), sig=("e", "d", None)) + # Ensure e,d->None is in the dispatching cache (double loop) + np.add(np.float16(1), np.float64(2)) + # The error must still be raised: + with pytest.raises(TypeError): + np.add(np.float16(1), np.uint64(2), sig=("e", "d", None)) + + def test_use_output_signature_for_all_arguments(self): + # Test that providing only `dtype=` or `signature=(None, None, dtype)` + # is sufficient if falling back to a homogeneous signature works. + # In this case, the `intp, intp -> intp` loop is chosen. + res = np.power(1.5, 2.8, dtype=np.intp, casting="unsafe") + assert res == 1 # the cast happens first. + res = np.power(1.5, 2.8, signature=(None, None, np.intp), + casting="unsafe") + assert res == 1 + with pytest.raises(TypeError): + # the unsafe casting would normally cause errors though: + np.power(1.5, 2.8, dtype=np.intp) + + def test_signature_errors(self): + with pytest.raises(TypeError, + match="the signature object to ufunc must be a string or"): + np.add(3, 4, signature=123.) # neither a string nor a tuple + + with pytest.raises(ValueError): + # bad symbols that do not translate to dtypes + np.add(3, 4, signature="%^->#") + + with pytest.raises(ValueError): + np.add(3, 4, signature=b"ii-i") # incomplete and byte string + + with pytest.raises(ValueError): + np.add(3, 4, signature="ii>i") # incomplete string + + with pytest.raises(ValueError): + np.add(3, 4, signature=(None, "f8")) # bad length + + with pytest.raises(UnicodeDecodeError): + np.add(3, 4, signature=b"\xff\xff->i") + + def test_forced_dtype_times(self): + # Signatures only set the type numbers (not the actual loop dtypes) + # so using `M` in a signature/dtype should generally work: + a = np.array(['2010-01-02', '1999-03-14', '1833-03'], dtype='>M8[D]') + np.maximum(a, a, dtype="M") + np.maximum.reduce(a, dtype="M") + + arr = np.arange(10, dtype="m8[s]") + np.add(arr, arr, dtype="m") + np.maximum(arr, arr, dtype="m") + + @pytest.mark.parametrize("ufunc", [np.add, np.sqrt]) + def test_cast_safety(self, ufunc): + """Basic test for the safest casts, because ufuncs inner loops can + indicate a cast-safety as well (which is normally always "no"). + """ + def call_ufunc(arr, **kwargs): + return ufunc(*(arr,) * ufunc.nin, **kwargs) + + arr = np.array([1., 2., 3.], dtype=np.float32) + arr_bs = arr.astype(arr.dtype.newbyteorder()) + expected = call_ufunc(arr) + # Normally, a "no" cast: + res = call_ufunc(arr, casting="no") + assert_array_equal(expected, res) + # Byte-swapping is not allowed with "no" though: + with pytest.raises(TypeError): + call_ufunc(arr_bs, casting="no") + + # But is allowed with "equiv": + res = call_ufunc(arr_bs, casting="equiv") + assert_array_equal(expected, res) + + # Casting to float64 is safe, but not equiv: + with pytest.raises(TypeError): + call_ufunc(arr_bs, dtype=np.float64, casting="equiv") + + # but it is safe cast: + res = call_ufunc(arr_bs, dtype=np.float64, casting="safe") + expected = call_ufunc(arr.astype(np.float64)) # upcast + assert_array_equal(expected, res) + + @pytest.mark.parametrize("ufunc", [np.add, np.equal]) + def test_cast_safety_scalar(self, ufunc): + # We test add and equal, because equal has special scalar handling + # Note that the "equiv" casting behavior should maybe be considered + # a current implementation detail. + with pytest.raises(TypeError): + # this picks an integer loop, which is not safe + ufunc(3., 4., dtype=int, casting="safe") + + with pytest.raises(TypeError): + # We accept python float as float64 but not float32 for equiv. + ufunc(3., 4., dtype="float32", casting="equiv") + + # Special case for object and equal (note that equiv implies safe) + ufunc(3, 4, dtype=object, casting="equiv") + # Picks a double loop for both, first is equiv, second safe: + ufunc(np.array([3.]), 3., casting="equiv") + ufunc(np.array([3.]), 3, casting="safe") + ufunc(np.array([3]), 3, casting="equiv") + + def test_cast_safety_scalar_special(self): + # We allow this (and it succeeds) via object, although the equiv + # part may not be important. + np.equal(np.array([3]), 2**300, casting="equiv") + + def test_true_divide(self): + a = np.array(10) + b = np.array(20) + tgt = np.array(0.5) + + for tc in 'bhilqBHILQefdgFDG': + dt = np.dtype(tc) + aa = a.astype(dt) + bb = b.astype(dt) + + # Check result value and dtype. + for x, y in itertools.product([aa, -aa], [bb, -bb]): + + # Check with no output type specified + if tc in 'FDG': + tgt = complex(x)/complex(y) + else: + tgt = float(x)/float(y) + + res = np.true_divide(x, y) + rtol = max(np.finfo(res).resolution, 1e-15) + assert_allclose(res, tgt, rtol=rtol) + + if tc in 'bhilqBHILQ': + assert_(res.dtype.name == 'float64') + else: + assert_(res.dtype.name == dt.name ) + + # Check with output type specified. This also checks for the + # incorrect casts in issue gh-3484 because the unary '-' does + # not change types, even for unsigned types, Hence casts in the + # ufunc from signed to unsigned and vice versa will lead to + # errors in the values. + for tcout in 'bhilqBHILQ': + dtout = np.dtype(tcout) + assert_raises(TypeError, np.true_divide, x, y, dtype=dtout) + + for tcout in 'efdg': + dtout = np.dtype(tcout) + if tc in 'FDG': + # Casting complex to float is not allowed + assert_raises(TypeError, np.true_divide, x, y, dtype=dtout) + else: + tgt = float(x)/float(y) + rtol = max(np.finfo(dtout).resolution, 1e-15) + # The value of tiny for double double is NaN + with suppress_warnings() as sup: + sup.filter(UserWarning) + if not np.isnan(np.finfo(dtout).tiny): + atol = max(np.finfo(dtout).tiny, 3e-308) + else: + atol = 3e-308 + # Some test values result in invalid for float16 + # and the cast to it may overflow to inf. + with np.errstate(invalid='ignore', over='ignore'): + res = np.true_divide(x, y, dtype=dtout) + if not np.isfinite(res) and tcout == 'e': + continue + assert_allclose(res, tgt, rtol=rtol, atol=atol) + assert_(res.dtype.name == dtout.name) + + for tcout in 'FDG': + dtout = np.dtype(tcout) + tgt = complex(x)/complex(y) + rtol = max(np.finfo(dtout).resolution, 1e-15) + # The value of tiny for double double is NaN + with suppress_warnings() as sup: + sup.filter(UserWarning) + if not np.isnan(np.finfo(dtout).tiny): + atol = max(np.finfo(dtout).tiny, 3e-308) + else: + atol = 3e-308 + res = np.true_divide(x, y, dtype=dtout) + if not np.isfinite(res): + continue + assert_allclose(res, tgt, rtol=rtol, atol=atol) + assert_(res.dtype.name == dtout.name) + + # Check booleans + a = np.ones((), dtype=np.bool) + res = np.true_divide(a, a) + assert_(res == 1.0) + assert_(res.dtype.name == 'float64') + res = np.true_divide(~a, a) + assert_(res == 0.0) + assert_(res.dtype.name == 'float64') + + def test_sum_stability(self): + a = np.ones(500, dtype=np.float32) + assert_almost_equal((a / 10.).sum() - a.size / 10., 0, 4) + + a = np.ones(500, dtype=np.float64) + assert_almost_equal((a / 10.).sum() - a.size / 10., 0, 13) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_sum(self): + for dt in (int, np.float16, np.float32, np.float64, np.longdouble): + for v in (0, 1, 2, 7, 8, 9, 15, 16, 19, 127, + 128, 1024, 1235): + # warning if sum overflows, which it does in float16 + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter("always", RuntimeWarning) + + tgt = dt(v * (v + 1) / 2) + overflow = not np.isfinite(tgt) + assert_equal(len(w), 1 * overflow) + + d = np.arange(1, v + 1, dtype=dt) + + assert_almost_equal(np.sum(d), tgt) + assert_equal(len(w), 2 * overflow) + + assert_almost_equal(np.sum(d[::-1]), tgt) + assert_equal(len(w), 3 * overflow) + + d = np.ones(500, dtype=dt) + assert_almost_equal(np.sum(d[::2]), 250.) + assert_almost_equal(np.sum(d[1::2]), 250.) + assert_almost_equal(np.sum(d[::3]), 167.) + assert_almost_equal(np.sum(d[1::3]), 167.) + assert_almost_equal(np.sum(d[::-2]), 250.) + assert_almost_equal(np.sum(d[-1::-2]), 250.) + assert_almost_equal(np.sum(d[::-3]), 167.) + assert_almost_equal(np.sum(d[-1::-3]), 167.) + # sum with first reduction entry != 0 + d = np.ones((1,), dtype=dt) + d += d + assert_almost_equal(d, 2.) + + def test_sum_complex(self): + for dt in (np.complex64, np.complex128, np.clongdouble): + for v in (0, 1, 2, 7, 8, 9, 15, 16, 19, 127, + 128, 1024, 1235): + tgt = dt(v * (v + 1) / 2) - dt((v * (v + 1) / 2) * 1j) + d = np.empty(v, dtype=dt) + d.real = np.arange(1, v + 1) + d.imag = -np.arange(1, v + 1) + assert_almost_equal(np.sum(d), tgt) + assert_almost_equal(np.sum(d[::-1]), tgt) + + d = np.ones(500, dtype=dt) + 1j + assert_almost_equal(np.sum(d[::2]), 250. + 250j) + assert_almost_equal(np.sum(d[1::2]), 250. + 250j) + assert_almost_equal(np.sum(d[::3]), 167. + 167j) + assert_almost_equal(np.sum(d[1::3]), 167. + 167j) + assert_almost_equal(np.sum(d[::-2]), 250. + 250j) + assert_almost_equal(np.sum(d[-1::-2]), 250. + 250j) + assert_almost_equal(np.sum(d[::-3]), 167. + 167j) + assert_almost_equal(np.sum(d[-1::-3]), 167. + 167j) + # sum with first reduction entry != 0 + d = np.ones((1,), dtype=dt) + 1j + d += d + assert_almost_equal(d, 2. + 2j) + + def test_sum_initial(self): + # Integer, single axis + assert_equal(np.sum([3], initial=2), 5) + + # Floating point + assert_almost_equal(np.sum([0.2], initial=0.1), 0.3) + + # Multiple non-adjacent axes + assert_equal(np.sum(np.ones((2, 3, 5), dtype=np.int64), axis=(0, 2), initial=2), + [12, 12, 12]) + + def test_sum_where(self): + # More extensive tests done in test_reduction_with_where. + assert_equal(np.sum([[1., 2.], [3., 4.]], where=[True, False]), 4.) + assert_equal(np.sum([[1., 2.], [3., 4.]], axis=0, initial=5., + where=[True, False]), [9., 5.]) + + def test_vecdot(self): + arr1 = np.arange(6).reshape((2, 3)) + arr2 = np.arange(3).reshape((1, 3)) + + actual = np.vecdot(arr1, arr2) + expected = np.array([5, 14]) + + assert_array_equal(actual, expected) + + actual2 = np.vecdot(arr1.T, arr2.T, axis=-2) + assert_array_equal(actual2, expected) + + actual3 = np.vecdot(arr1.astype("object"), arr2) + assert_array_equal(actual3, expected.astype("object")) + + def test_matvec(self): + arr1 = np.arange(6).reshape((2, 3)) + arr2 = np.arange(3).reshape((1, 3)) + + actual = np.matvec(arr1, arr2) + expected = np.array([[5, 14]]) + + assert_array_equal(actual, expected) + + actual2 = np.matvec(arr1.T, arr2.T, axes=[(-1, -2), -2, -1]) + assert_array_equal(actual2, expected) + + actual3 = np.matvec(arr1.astype("object"), arr2) + assert_array_equal(actual3, expected.astype("object")) + + @pytest.mark.parametrize("vec", [ + np.array([[1., 2., 3.], [4., 5., 6.]]), + np.array([[1., 2j, 3.], [4., 5., 6j]]), + np.array([[1., 2., 3.], [4., 5., 6.]], dtype=object), + np.array([[1., 2j, 3.], [4., 5., 6j]], dtype=object)]) + @pytest.mark.parametrize("matrix", [ + None, + np.array([[1.+1j, 0.5, -0.5j], + [0.25, 2j, 0.], + [4., 0., -1j]])]) + def test_vecmatvec_identity(self, matrix, vec): + """Check that (x†A)x equals x†(Ax).""" + mat = matrix if matrix is not None else np.eye(3) + matvec = np.matvec(mat, vec) # Ax + vecmat = np.vecmat(vec, mat) # x†A + if matrix is None: + assert_array_equal(matvec, vec) + assert_array_equal(vecmat.conj(), vec) + assert_array_equal(matvec, (mat @ vec[..., np.newaxis]).squeeze(-1)) + assert_array_equal(vecmat, (vec[..., np.newaxis].mT.conj() + @ mat).squeeze(-2)) + expected = np.einsum('...i,ij,...j', vec.conj(), mat, vec) + vec_matvec = (vec.conj() * matvec).sum(-1) + vecmat_vec = (vecmat * vec).sum(-1) + assert_array_equal(vec_matvec, expected) + assert_array_equal(vecmat_vec, expected) + + @pytest.mark.parametrize("ufunc, shape1, shape2, conj", [ + (np.vecdot, (3,), (3,), True), + (np.vecmat, (3,), (3, 1), True), + (np.matvec, (1, 3), (3,), False), + (np.matmul, (1, 3), (3, 1), False), + ]) + def test_vecdot_matvec_vecmat_complex(self, ufunc, shape1, shape2, conj): + arr1 = np.array([1, 2j, 3]) + arr2 = np.array([1, 2, 3]) + + actual1 = ufunc(arr1.reshape(shape1), arr2.reshape(shape2)) + expected1 = np.array(((arr1.conj() if conj else arr1) * arr2).sum(), + ndmin=min(len(shape1), len(shape2))) + assert_array_equal(actual1, expected1) + # This would fail for conj=True, since matmul omits the conjugate. + if not conj: + assert_array_equal(arr1.reshape(shape1) @ arr2.reshape(shape2), + expected1) + + actual2 = ufunc(arr2.reshape(shape1), arr1.reshape(shape2)) + expected2 = np.array(((arr2.conj() if conj else arr2) * arr1).sum(), + ndmin=min(len(shape1), len(shape2))) + assert_array_equal(actual2, expected2) + + actual3 = ufunc(arr1.reshape(shape1).astype("object"), + arr2.reshape(shape2).astype("object")) + expected3 = expected1.astype(object) + assert_array_equal(actual3, expected3) + + def test_vecdot_subclass(self): + class MySubclass(np.ndarray): + pass + + arr1 = np.arange(6).reshape((2, 3)).view(MySubclass) + arr2 = np.arange(3).reshape((1, 3)).view(MySubclass) + result = np.vecdot(arr1, arr2) + assert isinstance(result, MySubclass) + + def test_vecdot_object_no_conjugate(self): + arr = np.array(["1", "2"], dtype=object) + with pytest.raises(AttributeError, match="conjugate"): + np.vecdot(arr, arr) + + def test_vecdot_object_breaks_outer_loop_on_error(self): + arr1 = np.ones((3, 3)).astype(object) + arr2 = arr1.copy() + arr2[1, 1] = None + out = np.zeros(3).astype(object) + with pytest.raises(TypeError, match=r"\*: 'float' and 'NoneType'"): + np.vecdot(arr1, arr2, out=out) + assert out[0] == 3 + assert out[1] == out[2] == 0 + + def test_broadcast(self): + msg = "broadcast" + a = np.arange(4).reshape((2, 1, 2)) + b = np.arange(4).reshape((1, 2, 2)) + assert_array_equal(np.vecdot(a, b), np.sum(a*b, axis=-1), err_msg=msg) + msg = "extend & broadcast loop dimensions" + b = np.arange(4).reshape((2, 2)) + assert_array_equal(np.vecdot(a, b), np.sum(a*b, axis=-1), err_msg=msg) + # Broadcast in core dimensions should fail + a = np.arange(8).reshape((4, 2)) + b = np.arange(4).reshape((4, 1)) + assert_raises(ValueError, np.vecdot, a, b) + # Extend core dimensions should fail + a = np.arange(8).reshape((4, 2)) + b = np.array(7) + assert_raises(ValueError, np.vecdot, a, b) + # Broadcast should fail + a = np.arange(2).reshape((2, 1, 1)) + b = np.arange(3).reshape((3, 1, 1)) + assert_raises(ValueError, np.vecdot, a, b) + + # Writing to a broadcasted array with overlap should warn, gh-2705 + a = np.arange(2) + b = np.arange(4).reshape((2, 2)) + u, v = np.broadcast_arrays(a, b) + assert_equal(u.strides[0], 0) + x = u + v + with warnings.catch_warnings(record=True) as w: + warnings.simplefilter("always") + u += v + assert_equal(len(w), 1) + assert_(x[0, 0] != u[0, 0]) + + # Output reduction should not be allowed. + # See gh-15139 + a = np.arange(6).reshape(3, 2) + b = np.ones(2) + out = np.empty(()) + assert_raises(ValueError, np.vecdot, a, b, out) + out2 = np.empty(3) + c = np.vecdot(a, b, out2) + assert_(c is out2) + + def test_out_broadcasts(self): + # For ufuncs and gufuncs (not for reductions), we currently allow + # the output to cause broadcasting of the input arrays. + # both along dimensions with shape 1 and dimensions which do not + # exist at all in the inputs. + arr = np.arange(3).reshape(1, 3) + out = np.empty((5, 4, 3)) + np.add(arr, arr, out=out) + assert (out == np.arange(3) * 2).all() + + # The same holds for gufuncs (gh-16484) + np.vecdot(arr, arr, out=out) + # the result would be just a scalar `5`, but is broadcast fully: + assert (out == 5).all() + + @pytest.mark.parametrize(["arr", "out"], [ + ([2], np.empty(())), + ([1, 2], np.empty(1)), + (np.ones((4, 3)), np.empty((4, 1)))], + ids=["(1,)->()", "(2,)->(1,)", "(4, 3)->(4, 1)"]) + def test_out_broadcast_errors(self, arr, out): + # Output is (currently) allowed to broadcast inputs, but it cannot be + # smaller than the actual result. + with pytest.raises(ValueError, match="non-broadcastable"): + np.positive(arr, out=out) + + with pytest.raises(ValueError, match="non-broadcastable"): + np.add(np.ones(()), arr, out=out) + + def test_type_cast(self): + msg = "type cast" + a = np.arange(6, dtype='short').reshape((2, 3)) + assert_array_equal(np.vecdot(a, a), np.sum(a*a, axis=-1), + err_msg=msg) + msg = "type cast on one argument" + a = np.arange(6).reshape((2, 3)) + b = a + 0.1 + assert_array_almost_equal(np.vecdot(a, b), np.sum(a*b, axis=-1), + err_msg=msg) + + def test_endian(self): + msg = "big endian" + a = np.arange(6, dtype='>i4').reshape((2, 3)) + assert_array_equal(np.vecdot(a, a), np.sum(a*a, axis=-1), + err_msg=msg) + msg = "little endian" + a = np.arange(6, dtype='()' + a = np.arange(27.).reshape((3, 3, 3)) + b = np.arange(10., 19.).reshape((3, 1, 3)) + # basic tests on inputs (outputs tested below with matrix_multiply). + c = np.vecdot(a, b) + assert_array_equal(c, (a * b).sum(-1)) + # default + c = np.vecdot(a, b, axes=[(-1,), (-1,), ()]) + assert_array_equal(c, (a * b).sum(-1)) + # integers ok for single axis. + c = np.vecdot(a, b, axes=[-1, -1, ()]) + assert_array_equal(c, (a * b).sum(-1)) + # mix fine + c = np.vecdot(a, b, axes=[(-1,), -1, ()]) + assert_array_equal(c, (a * b).sum(-1)) + # can omit last axis. + c = np.vecdot(a, b, axes=[-1, -1]) + assert_array_equal(c, (a * b).sum(-1)) + # can pass in other types of integer (with __index__ protocol) + c = np.vecdot(a, b, axes=[np.int8(-1), np.array(-1, dtype=np.int32)]) + assert_array_equal(c, (a * b).sum(-1)) + # swap some axes + c = np.vecdot(a, b, axes=[0, 0]) + assert_array_equal(c, (a * b).sum(0)) + c = np.vecdot(a, b, axes=[0, 2]) + assert_array_equal(c, (a.transpose(1, 2, 0) * b).sum(-1)) + # Check errors for improperly constructed axes arguments. + # should have list. + assert_raises(TypeError, np.vecdot, a, b, axes=-1) + # needs enough elements + assert_raises(ValueError, np.vecdot, a, b, axes=[-1]) + # should pass in indices. + assert_raises(TypeError, np.vecdot, a, b, axes=[-1.0, -1.0]) + assert_raises(TypeError, np.vecdot, a, b, axes=[(-1.0,), -1]) + assert_raises(TypeError, np.vecdot, a, b, axes=[None, 1]) + # cannot pass an index unless there is only one dimension + # (output is wrong in this case) + assert_raises(AxisError, np.vecdot, a, b, axes=[-1, -1, -1]) + # or pass in generally the wrong number of axes + assert_raises(AxisError, np.vecdot, a, b, axes=[-1, -1, (-1,)]) + assert_raises(AxisError, np.vecdot, a, b, axes=[-1, (-2, -1), ()]) + # axes need to have same length. + assert_raises(ValueError, np.vecdot, a, b, axes=[0, 1]) + + # matrix_multiply signature: '(m,n),(n,p)->(m,p)' + mm = umt.matrix_multiply + a = np.arange(12).reshape((2, 3, 2)) + b = np.arange(8).reshape((2, 2, 2, 1)) + 1 + # Sanity check. + c = mm(a, b) + assert_array_equal(c, np.matmul(a, b)) + # Default axes. + c = mm(a, b, axes=[(-2, -1), (-2, -1), (-2, -1)]) + assert_array_equal(c, np.matmul(a, b)) + # Default with explicit axes. + c = mm(a, b, axes=[(1, 2), (2, 3), (2, 3)]) + assert_array_equal(c, np.matmul(a, b)) + # swap some axes. + c = mm(a, b, axes=[(0, -1), (1, 2), (-2, -1)]) + assert_array_equal(c, np.matmul(a.transpose(1, 0, 2), + b.transpose(0, 3, 1, 2))) + # Default with output array. + c = np.empty((2, 2, 3, 1)) + d = mm(a, b, out=c, axes=[(1, 2), (2, 3), (2, 3)]) + assert_(c is d) + assert_array_equal(c, np.matmul(a, b)) + # Transposed output array + c = np.empty((1, 2, 2, 3)) + d = mm(a, b, out=c, axes=[(-2, -1), (-2, -1), (3, 0)]) + assert_(c is d) + assert_array_equal(c, np.matmul(a, b).transpose(3, 0, 1, 2)) + # Check errors for improperly constructed axes arguments. + # wrong argument + assert_raises(TypeError, mm, a, b, axis=1) + # axes should be list + assert_raises(TypeError, mm, a, b, axes=1) + assert_raises(TypeError, mm, a, b, axes=((-2, -1), (-2, -1), (-2, -1))) + # list needs to have right length + assert_raises(ValueError, mm, a, b, axes=[]) + assert_raises(ValueError, mm, a, b, axes=[(-2, -1)]) + # list should not contain None, or lists + assert_raises(TypeError, mm, a, b, axes=[None, None, None]) + assert_raises(TypeError, + mm, a, b, axes=[[-2, -1], [-2, -1], [-2, -1]]) + assert_raises(TypeError, + mm, a, b, axes=[(-2, -1), (-2, -1), [-2, -1]]) + assert_raises(TypeError, mm, a, b, axes=[(-2, -1), (-2, -1), None]) + # single integers are AxisErrors if more are required + assert_raises(AxisError, mm, a, b, axes=[-1, -1, -1]) + assert_raises(AxisError, mm, a, b, axes=[(-2, -1), (-2, -1), -1]) + # tuples should not have duplicated values + assert_raises(ValueError, mm, a, b, axes=[(-2, -1), (-2, -1), (-2, -2)]) + # arrays should have enough axes. + z = np.zeros((2, 2)) + assert_raises(ValueError, mm, z, z[0]) + assert_raises(ValueError, mm, z, z, out=z[:, 0]) + assert_raises(ValueError, mm, z[1], z, axes=[0, 1]) + assert_raises(ValueError, mm, z, z, out=z[0], axes=[0, 1]) + # Regular ufuncs should not accept axes. + assert_raises(TypeError, np.add, 1., 1., axes=[0]) + # should be able to deal with bad unrelated kwargs. + assert_raises(TypeError, mm, z, z, axes=[0, 1], parrot=True) + + def test_axis_argument(self): + # vecdot signature: '(n),(n)->()' + a = np.arange(27.).reshape((3, 3, 3)) + b = np.arange(10., 19.).reshape((3, 1, 3)) + c = np.vecdot(a, b) + assert_array_equal(c, (a * b).sum(-1)) + c = np.vecdot(a, b, axis=-1) + assert_array_equal(c, (a * b).sum(-1)) + out = np.zeros_like(c) + d = np.vecdot(a, b, axis=-1, out=out) + assert_(d is out) + assert_array_equal(d, c) + c = np.vecdot(a, b, axis=0) + assert_array_equal(c, (a * b).sum(0)) + # Sanity checks on innerwt and cumsum. + a = np.arange(6).reshape((2, 3)) + b = np.arange(10, 16).reshape((2, 3)) + w = np.arange(20, 26).reshape((2, 3)) + assert_array_equal(umt.innerwt(a, b, w, axis=0), + np.sum(a * b * w, axis=0)) + assert_array_equal(umt.cumsum(a, axis=0), np.cumsum(a, axis=0)) + assert_array_equal(umt.cumsum(a, axis=-1), np.cumsum(a, axis=-1)) + out = np.empty_like(a) + b = umt.cumsum(a, out=out, axis=0) + assert_(out is b) + assert_array_equal(b, np.cumsum(a, axis=0)) + b = umt.cumsum(a, out=out, axis=1) + assert_(out is b) + assert_array_equal(b, np.cumsum(a, axis=-1)) + # Check errors. + # Cannot pass in both axis and axes. + assert_raises(TypeError, np.vecdot, a, b, axis=0, axes=[0, 0]) + # Not an integer. + assert_raises(TypeError, np.vecdot, a, b, axis=[0]) + # more than 1 core dimensions. + mm = umt.matrix_multiply + assert_raises(TypeError, mm, a, b, axis=1) + # Output wrong size in axis. + out = np.empty((1, 2, 3), dtype=a.dtype) + assert_raises(ValueError, umt.cumsum, a, out=out, axis=0) + # Regular ufuncs should not accept axis. + assert_raises(TypeError, np.add, 1., 1., axis=0) + + def test_keepdims_argument(self): + # vecdot signature: '(n),(n)->()' + a = np.arange(27.).reshape((3, 3, 3)) + b = np.arange(10., 19.).reshape((3, 1, 3)) + c = np.vecdot(a, b) + assert_array_equal(c, (a * b).sum(-1)) + c = np.vecdot(a, b, keepdims=False) + assert_array_equal(c, (a * b).sum(-1)) + c = np.vecdot(a, b, keepdims=True) + assert_array_equal(c, (a * b).sum(-1, keepdims=True)) + out = np.zeros_like(c) + d = np.vecdot(a, b, keepdims=True, out=out) + assert_(d is out) + assert_array_equal(d, c) + # Now combined with axis and axes. + c = np.vecdot(a, b, axis=-1, keepdims=False) + assert_array_equal(c, (a * b).sum(-1, keepdims=False)) + c = np.vecdot(a, b, axis=-1, keepdims=True) + assert_array_equal(c, (a * b).sum(-1, keepdims=True)) + c = np.vecdot(a, b, axis=0, keepdims=False) + assert_array_equal(c, (a * b).sum(0, keepdims=False)) + c = np.vecdot(a, b, axis=0, keepdims=True) + assert_array_equal(c, (a * b).sum(0, keepdims=True)) + c = np.vecdot(a, b, axes=[(-1,), (-1,), ()], keepdims=False) + assert_array_equal(c, (a * b).sum(-1)) + c = np.vecdot(a, b, axes=[(-1,), (-1,), (-1,)], keepdims=True) + assert_array_equal(c, (a * b).sum(-1, keepdims=True)) + c = np.vecdot(a, b, axes=[0, 0], keepdims=False) + assert_array_equal(c, (a * b).sum(0)) + c = np.vecdot(a, b, axes=[0, 0, 0], keepdims=True) + assert_array_equal(c, (a * b).sum(0, keepdims=True)) + c = np.vecdot(a, b, axes=[0, 2], keepdims=False) + assert_array_equal(c, (a.transpose(1, 2, 0) * b).sum(-1)) + c = np.vecdot(a, b, axes=[0, 2], keepdims=True) + assert_array_equal(c, (a.transpose(1, 2, 0) * b).sum(-1, + keepdims=True)) + c = np.vecdot(a, b, axes=[0, 2, 2], keepdims=True) + assert_array_equal(c, (a.transpose(1, 2, 0) * b).sum(-1, + keepdims=True)) + c = np.vecdot(a, b, axes=[0, 2, 0], keepdims=True) + assert_array_equal(c, (a * b.transpose(2, 0, 1)).sum(0, keepdims=True)) + # Hardly useful, but should work. + c = np.vecdot(a, b, axes=[0, 2, 1], keepdims=True) + assert_array_equal(c, (a.transpose(1, 0, 2) * b.transpose(0, 2, 1)) + .sum(1, keepdims=True)) + # Check with two core dimensions. + a = np.eye(3) * np.arange(4.)[:, np.newaxis, np.newaxis] + expected = uml.det(a) + c = uml.det(a, keepdims=False) + assert_array_equal(c, expected) + c = uml.det(a, keepdims=True) + assert_array_equal(c, expected[:, np.newaxis, np.newaxis]) + a = np.eye(3) * np.arange(4.)[:, np.newaxis, np.newaxis] + expected_s, expected_l = uml.slogdet(a) + cs, cl = uml.slogdet(a, keepdims=False) + assert_array_equal(cs, expected_s) + assert_array_equal(cl, expected_l) + cs, cl = uml.slogdet(a, keepdims=True) + assert_array_equal(cs, expected_s[:, np.newaxis, np.newaxis]) + assert_array_equal(cl, expected_l[:, np.newaxis, np.newaxis]) + # Sanity check on innerwt. + a = np.arange(6).reshape((2, 3)) + b = np.arange(10, 16).reshape((2, 3)) + w = np.arange(20, 26).reshape((2, 3)) + assert_array_equal(umt.innerwt(a, b, w, keepdims=True), + np.sum(a * b * w, axis=-1, keepdims=True)) + assert_array_equal(umt.innerwt(a, b, w, axis=0, keepdims=True), + np.sum(a * b * w, axis=0, keepdims=True)) + # Check errors. + # Not a boolean + assert_raises(TypeError, np.vecdot, a, b, keepdims='true') + # More than 1 core dimension, and core output dimensions. + mm = umt.matrix_multiply + assert_raises(TypeError, mm, a, b, keepdims=True) + assert_raises(TypeError, mm, a, b, keepdims=False) + # Regular ufuncs should not accept keepdims. + assert_raises(TypeError, np.add, 1., 1., keepdims=False) + + def test_innerwt(self): + a = np.arange(6).reshape((2, 3)) + b = np.arange(10, 16).reshape((2, 3)) + w = np.arange(20, 26).reshape((2, 3)) + assert_array_equal(umt.innerwt(a, b, w), np.sum(a*b*w, axis=-1)) + a = np.arange(100, 124).reshape((2, 3, 4)) + b = np.arange(200, 224).reshape((2, 3, 4)) + w = np.arange(300, 324).reshape((2, 3, 4)) + assert_array_equal(umt.innerwt(a, b, w), np.sum(a*b*w, axis=-1)) + + def test_innerwt_empty(self): + """Test generalized ufunc with zero-sized operands""" + a = np.array([], dtype='f8') + b = np.array([], dtype='f8') + w = np.array([], dtype='f8') + assert_array_equal(umt.innerwt(a, b, w), np.sum(a*b*w, axis=-1)) + + def test_cross1d(self): + """Test with fixed-sized signature.""" + a = np.eye(3) + assert_array_equal(umt.cross1d(a, a), np.zeros((3, 3))) + out = np.zeros((3, 3)) + result = umt.cross1d(a[0], a, out) + assert_(result is out) + assert_array_equal(result, np.vstack((np.zeros(3), a[2], -a[1]))) + assert_raises(ValueError, umt.cross1d, np.eye(4), np.eye(4)) + assert_raises(ValueError, umt.cross1d, a, np.arange(4.)) + # Wrong output core dimension. + assert_raises(ValueError, umt.cross1d, a, np.arange(3.), np.zeros((3, 4))) + # Wrong output broadcast dimension (see gh-15139). + assert_raises(ValueError, umt.cross1d, a, np.arange(3.), np.zeros(3)) + + def test_can_ignore_signature(self): + # Comparing the effects of ? in signature: + # matrix_multiply: (m,n),(n,p)->(m,p) # all must be there. + # matmul: (m?,n),(n,p?)->(m?,p?) # allow missing m, p. + mat = np.arange(12).reshape((2, 3, 2)) + single_vec = np.arange(2) + col_vec = single_vec[:, np.newaxis] + col_vec_array = np.arange(8).reshape((2, 2, 2, 1)) + 1 + # matrix @ single column vector with proper dimension + mm_col_vec = umt.matrix_multiply(mat, col_vec) + # matmul does the same thing + matmul_col_vec = umt.matmul(mat, col_vec) + assert_array_equal(matmul_col_vec, mm_col_vec) + # matrix @ vector without dimension making it a column vector. + # matrix multiply fails -> missing core dim. + assert_raises(ValueError, umt.matrix_multiply, mat, single_vec) + # matmul mimicker passes, and returns a vector. + matmul_col = umt.matmul(mat, single_vec) + assert_array_equal(matmul_col, mm_col_vec.squeeze()) + # Now with a column array: same as for column vector, + # broadcasting sensibly. + mm_col_vec = umt.matrix_multiply(mat, col_vec_array) + matmul_col_vec = umt.matmul(mat, col_vec_array) + assert_array_equal(matmul_col_vec, mm_col_vec) + # As above, but for row vector + single_vec = np.arange(3) + row_vec = single_vec[np.newaxis, :] + row_vec_array = np.arange(24).reshape((4, 2, 1, 1, 3)) + 1 + # row vector @ matrix + mm_row_vec = umt.matrix_multiply(row_vec, mat) + matmul_row_vec = umt.matmul(row_vec, mat) + assert_array_equal(matmul_row_vec, mm_row_vec) + # single row vector @ matrix + assert_raises(ValueError, umt.matrix_multiply, single_vec, mat) + matmul_row = umt.matmul(single_vec, mat) + assert_array_equal(matmul_row, mm_row_vec.squeeze()) + # row vector array @ matrix + mm_row_vec = umt.matrix_multiply(row_vec_array, mat) + matmul_row_vec = umt.matmul(row_vec_array, mat) + assert_array_equal(matmul_row_vec, mm_row_vec) + # Now for vector combinations + # row vector @ column vector + col_vec = row_vec.T + col_vec_array = row_vec_array.swapaxes(-2, -1) + mm_row_col_vec = umt.matrix_multiply(row_vec, col_vec) + matmul_row_col_vec = umt.matmul(row_vec, col_vec) + assert_array_equal(matmul_row_col_vec, mm_row_col_vec) + # single row vector @ single col vector + assert_raises(ValueError, umt.matrix_multiply, single_vec, single_vec) + matmul_row_col = umt.matmul(single_vec, single_vec) + assert_array_equal(matmul_row_col, mm_row_col_vec.squeeze()) + # row vector array @ matrix + mm_row_col_array = umt.matrix_multiply(row_vec_array, col_vec_array) + matmul_row_col_array = umt.matmul(row_vec_array, col_vec_array) + assert_array_equal(matmul_row_col_array, mm_row_col_array) + # Finally, check that things are *not* squeezed if one gives an + # output. + out = np.zeros_like(mm_row_col_array) + out = umt.matrix_multiply(row_vec_array, col_vec_array, out=out) + assert_array_equal(out, mm_row_col_array) + out[:] = 0 + out = umt.matmul(row_vec_array, col_vec_array, out=out) + assert_array_equal(out, mm_row_col_array) + # And check one cannot put missing dimensions back. + out = np.zeros_like(mm_row_col_vec) + assert_raises(ValueError, umt.matrix_multiply, single_vec, single_vec, + out) + # But fine for matmul, since it is just a broadcast. + out = umt.matmul(single_vec, single_vec, out) + assert_array_equal(out, mm_row_col_vec.squeeze()) + + def test_matrix_multiply(self): + self.compare_matrix_multiply_results(np.int64) + self.compare_matrix_multiply_results(np.double) + + def test_matrix_multiply_umath_empty(self): + res = umt.matrix_multiply(np.ones((0, 10)), np.ones((10, 0))) + assert_array_equal(res, np.zeros((0, 0))) + res = umt.matrix_multiply(np.ones((10, 0)), np.ones((0, 10))) + assert_array_equal(res, np.zeros((10, 10))) + + def compare_matrix_multiply_results(self, tp): + d1 = np.array(np.random.rand(2, 3, 4), dtype=tp) + d2 = np.array(np.random.rand(2, 3, 4), dtype=tp) + msg = "matrix multiply on type %s" % d1.dtype.name + + def permute_n(n): + if n == 1: + return ([0],) + ret = () + base = permute_n(n-1) + for perm in base: + for i in range(n): + new = perm + [n-1] + new[n-1] = new[i] + new[i] = n-1 + ret += (new,) + return ret + + def slice_n(n): + if n == 0: + return ((),) + ret = () + base = slice_n(n-1) + for sl in base: + ret += (sl+(slice(None),),) + ret += (sl+(slice(0, 1),),) + return ret + + def broadcastable(s1, s2): + return s1 == s2 or s1 == 1 or s2 == 1 + + permute_3 = permute_n(3) + slice_3 = slice_n(3) + ((slice(None, None, -1),)*3,) + + ref = True + for p1 in permute_3: + for p2 in permute_3: + for s1 in slice_3: + for s2 in slice_3: + a1 = d1.transpose(p1)[s1] + a2 = d2.transpose(p2)[s2] + ref = ref and a1.base is not None + ref = ref and a2.base is not None + if (a1.shape[-1] == a2.shape[-2] and + broadcastable(a1.shape[0], a2.shape[0])): + assert_array_almost_equal( + umt.matrix_multiply(a1, a2), + np.sum(a2[..., np.newaxis].swapaxes(-3, -1) * + a1[..., np.newaxis,:], axis=-1), + err_msg=msg + ' %s %s' % (str(a1.shape), + str(a2.shape))) + + assert_equal(ref, True, err_msg="reference check") + + def test_euclidean_pdist(self): + a = np.arange(12, dtype=float).reshape(4, 3) + out = np.empty((a.shape[0] * (a.shape[0] - 1) // 2,), dtype=a.dtype) + umt.euclidean_pdist(a, out) + b = np.sqrt(np.sum((a[:, None] - a)**2, axis=-1)) + b = b[~np.tri(a.shape[0], dtype=bool)] + assert_almost_equal(out, b) + # An output array is required to determine p with signature (n,d)->(p) + assert_raises(ValueError, umt.euclidean_pdist, a) + + def test_cumsum(self): + a = np.arange(10) + result = umt.cumsum(a) + assert_array_equal(result, a.cumsum()) + + def test_object_logical(self): + a = np.array([3, None, True, False, "test", ""], dtype=object) + assert_equal(np.logical_or(a, None), + np.array([x or None for x in a], dtype=object)) + assert_equal(np.logical_or(a, True), + np.array([x or True for x in a], dtype=object)) + assert_equal(np.logical_or(a, 12), + np.array([x or 12 for x in a], dtype=object)) + assert_equal(np.logical_or(a, "blah"), + np.array([x or "blah" for x in a], dtype=object)) + + assert_equal(np.logical_and(a, None), + np.array([x and None for x in a], dtype=object)) + assert_equal(np.logical_and(a, True), + np.array([x and True for x in a], dtype=object)) + assert_equal(np.logical_and(a, 12), + np.array([x and 12 for x in a], dtype=object)) + assert_equal(np.logical_and(a, "blah"), + np.array([x and "blah" for x in a], dtype=object)) + + assert_equal(np.logical_not(a), + np.array([not x for x in a], dtype=object)) + + assert_equal(np.logical_or.reduce(a), 3) + assert_equal(np.logical_and.reduce(a), None) + + def test_object_comparison(self): + class HasComparisons: + def __eq__(self, other): + return '==' + + arr0d = np.array(HasComparisons()) + assert_equal(arr0d == arr0d, True) + assert_equal(np.equal(arr0d, arr0d), True) # normal behavior is a cast + + arr1d = np.array([HasComparisons()]) + assert_equal(arr1d == arr1d, np.array([True])) + assert_equal(np.equal(arr1d, arr1d), np.array([True])) # normal behavior is a cast + assert_equal(np.equal(arr1d, arr1d, dtype=object), np.array(['=='])) + + def test_object_array_reduction(self): + # Reductions on object arrays + a = np.array(['a', 'b', 'c'], dtype=object) + assert_equal(np.sum(a), 'abc') + assert_equal(np.max(a), 'c') + assert_equal(np.min(a), 'a') + a = np.array([True, False, True], dtype=object) + assert_equal(np.sum(a), 2) + assert_equal(np.prod(a), 0) + assert_equal(np.any(a), True) + assert_equal(np.all(a), False) + assert_equal(np.max(a), True) + assert_equal(np.min(a), False) + assert_equal(np.array([[1]], dtype=object).sum(), 1) + assert_equal(np.array([[[1, 2]]], dtype=object).sum((0, 1)), [1, 2]) + assert_equal(np.array([1], dtype=object).sum(initial=1), 2) + assert_equal(np.array([[1], [2, 3]], dtype=object) + .sum(initial=[0], where=[False, True]), [0, 2, 3]) + + def test_object_array_accumulate_inplace(self): + # Checks that in-place accumulates work, see also gh-7402 + arr = np.ones(4, dtype=object) + arr[:] = [[1] for i in range(4)] + # Twice reproduced also for tuples: + np.add.accumulate(arr, out=arr) + np.add.accumulate(arr, out=arr) + assert_array_equal(arr, + np.array([[1]*i for i in [1, 3, 6, 10]], dtype=object), + ) + + # And the same if the axis argument is used + arr = np.ones((2, 4), dtype=object) + arr[0, :] = [[2] for i in range(4)] + np.add.accumulate(arr, out=arr, axis=-1) + np.add.accumulate(arr, out=arr, axis=-1) + assert_array_equal(arr[0, :], + np.array([[2]*i for i in [1, 3, 6, 10]], dtype=object), + ) + + def test_object_array_accumulate_failure(self): + # Typical accumulation on object works as expected: + res = np.add.accumulate(np.array([1, 0, 2], dtype=object)) + assert_array_equal(res, np.array([1, 1, 3], dtype=object)) + # But errors are propagated from the inner-loop if they occur: + with pytest.raises(TypeError): + np.add.accumulate([1, None, 2]) + + def test_object_array_reduceat_inplace(self): + # Checks that in-place reduceats work, see also gh-7465 + arr = np.empty(4, dtype=object) + arr[:] = [[1] for i in range(4)] + out = np.empty(4, dtype=object) + out[:] = [[1] for i in range(4)] + np.add.reduceat(arr, np.arange(4), out=arr) + np.add.reduceat(arr, np.arange(4), out=arr) + assert_array_equal(arr, out) + + # And the same if the axis argument is used + arr = np.ones((2, 4), dtype=object) + arr[0, :] = [[2] for i in range(4)] + out = np.ones((2, 4), dtype=object) + out[0, :] = [[2] for i in range(4)] + np.add.reduceat(arr, np.arange(4), out=arr, axis=-1) + np.add.reduceat(arr, np.arange(4), out=arr, axis=-1) + assert_array_equal(arr, out) + + def test_object_array_reduceat_failure(self): + # Reduceat works as expected when no invalid operation occurs (None is + # not involved in an operation here) + res = np.add.reduceat(np.array([1, None, 2], dtype=object), [1, 2]) + assert_array_equal(res, np.array([None, 2], dtype=object)) + # But errors when None would be involved in an operation: + with pytest.raises(TypeError): + np.add.reduceat([1, None, 2], [0, 2]) + + def test_zerosize_reduction(self): + # Test with default dtype and object dtype + for a in [[], np.array([], dtype=object)]: + assert_equal(np.sum(a), 0) + assert_equal(np.prod(a), 1) + assert_equal(np.any(a), False) + assert_equal(np.all(a), True) + assert_raises(ValueError, np.max, a) + assert_raises(ValueError, np.min, a) + + def test_axis_out_of_bounds(self): + a = np.array([False, False]) + assert_raises(AxisError, a.all, axis=1) + a = np.array([False, False]) + assert_raises(AxisError, a.all, axis=-2) + + a = np.array([False, False]) + assert_raises(AxisError, a.any, axis=1) + a = np.array([False, False]) + assert_raises(AxisError, a.any, axis=-2) + + def test_scalar_reduction(self): + # The functions 'sum', 'prod', etc allow specifying axis=0 + # even for scalars + assert_equal(np.sum(3, axis=0), 3) + assert_equal(np.prod(3.5, axis=0), 3.5) + assert_equal(np.any(True, axis=0), True) + assert_equal(np.all(False, axis=0), False) + assert_equal(np.max(3, axis=0), 3) + assert_equal(np.min(2.5, axis=0), 2.5) + + # Check scalar behaviour for ufuncs without an identity + assert_equal(np.power.reduce(3), 3) + + # Make sure that scalars are coming out from this operation + assert_(type(np.prod(np.float32(2.5), axis=0)) is np.float32) + assert_(type(np.sum(np.float32(2.5), axis=0)) is np.float32) + assert_(type(np.max(np.float32(2.5), axis=0)) is np.float32) + assert_(type(np.min(np.float32(2.5), axis=0)) is np.float32) + + # check if scalars/0-d arrays get cast + assert_(type(np.any(0, axis=0)) is np.bool) + + # assert that 0-d arrays get wrapped + class MyArray(np.ndarray): + pass + a = np.array(1).view(MyArray) + assert_(type(np.any(a)) is MyArray) + + def test_casting_out_param(self): + # Test that it's possible to do casts on output + a = np.ones((200, 100), np.int64) + b = np.ones((200, 100), np.int64) + c = np.ones((200, 100), np.float64) + np.add(a, b, out=c) + assert_equal(c, 2) + + a = np.zeros(65536) + b = np.zeros(65536, dtype=np.float32) + np.subtract(a, 0, out=b) + assert_equal(b, 0) + + def test_where_param(self): + # Test that the where= ufunc parameter works with regular arrays + a = np.arange(7) + b = np.ones(7) + c = np.zeros(7) + np.add(a, b, out=c, where=(a % 2 == 1)) + assert_equal(c, [0, 2, 0, 4, 0, 6, 0]) + + a = np.arange(4).reshape(2, 2) + 2 + np.power(a, [2, 3], out=a, where=[[0, 1], [1, 0]]) + assert_equal(a, [[2, 27], [16, 5]]) + # Broadcasting the where= parameter + np.subtract(a, 2, out=a, where=[True, False]) + assert_equal(a, [[0, 27], [14, 5]]) + + def test_where_param_buffer_output(self): + # This test is temporarily skipped because it requires + # adding masking features to the nditer to work properly + + # With casting on output + a = np.ones(10, np.int64) + b = np.ones(10, np.int64) + c = 1.5 * np.ones(10, np.float64) + np.add(a, b, out=c, where=[1, 0, 0, 1, 0, 0, 1, 1, 1, 0]) + assert_equal(c, [2, 1.5, 1.5, 2, 1.5, 1.5, 2, 2, 2, 1.5]) + + def test_where_param_alloc(self): + # With casting and allocated output + a = np.array([1], dtype=np.int64) + m = np.array([True], dtype=bool) + assert_equal(np.sqrt(a, where=m), [1]) + + # No casting and allocated output + a = np.array([1], dtype=np.float64) + m = np.array([True], dtype=bool) + assert_equal(np.sqrt(a, where=m), [1]) + + def test_where_with_broadcasting(self): + # See gh-17198 + a = np.random.random((5000, 4)) + b = np.random.random((5000, 1)) + + where = a > 0.3 + out = np.full_like(a, 0) + np.less(a, b, where=where, out=out) + b_where = np.broadcast_to(b, a.shape)[where] + assert_array_equal((a[where] < b_where), out[where].astype(bool)) + assert not out[~where].any() # outside mask, out remains all 0 + + @staticmethod + def identityless_reduce_arrs(): + yield np.empty((2, 3, 4), order='C') + yield np.empty((2, 3, 4), order='F') + # Mixed order (reduce order differs outer) + yield np.empty((2, 4, 3), order='C').swapaxes(1, 2) + # Reversed order + yield np.empty((2, 3, 4), order='C')[::-1, ::-1, ::-1] + # Not contiguous + yield np.empty((3, 5, 4), order='C').swapaxes(1, 2)[1:, 1:, 1:] + # Not contiguous and not aligned + a = np.empty((3*4*5*8 + 1,), dtype='i1') + a = a[1:].view(dtype='f8') + a.shape = (3, 4, 5) + a = a[1:, 1:, 1:] + yield a + + @pytest.mark.parametrize("a", identityless_reduce_arrs()) + @pytest.mark.parametrize("pos", [(1, 0, 0), (0, 1, 0), (0, 0, 1)]) + def test_identityless_reduction(self, a, pos): + # np.minimum.reduce is an identityless reduction + a[...] = 1 + a[pos] = 0 + + for axis in [None, (0, 1), (0, 2), (1, 2), 0, 1, 2, ()]: + if axis is None: + axes = np.array([], dtype=np.intp) + else: + axes = np.delete(np.arange(a.ndim), axis) + + expected_pos = tuple(np.array(pos)[axes]) + expected = np.ones(np.array(a.shape)[axes]) + expected[expected_pos] = 0 + + res = np.minimum.reduce(a, axis=axis) + assert_equal(res, expected, strict=True) + + res = np.full_like(res, np.nan) + np.minimum.reduce(a, axis=axis, out=res) + assert_equal(res, expected, strict=True) + + @requires_memory(6 * 1024**3) + @pytest.mark.skipif(sys.maxsize < 2**32, + reason="test array too large for 32bit platform") + def test_identityless_reduction_huge_array(self): + # Regression test for gh-20921 (copying identity incorrectly failed) + arr = np.zeros((2, 2**31), 'uint8') + arr[:, 0] = [1, 3] + arr[:, -1] = [4, 1] + res = np.maximum.reduce(arr, axis=0) + del arr + assert res[0] == 3 + assert res[-1] == 4 + + def test_reduce_identity_depends_on_loop(self): + """ + The type of the result should always depend on the selected loop, not + necessarily the output (only relevant for object arrays). + """ + # For an object loop, the default value 0 with type int is used: + assert type(np.add.reduce([], dtype=object)) is int + out = np.array(None, dtype=object) + # When the loop is float64 but `out` is object this does not happen, + # the result is float64 cast to object (which gives Python `float`). + np.add.reduce([], out=out, dtype=np.float64) + assert type(out[()]) is float + + def test_initial_reduction(self): + # np.minimum.reduce is an identityless reduction + + # For cases like np.maximum(np.abs(...), initial=0) + # More generally, a supremum over non-negative numbers. + assert_equal(np.maximum.reduce([], initial=0), 0) + + # For cases like reduction of an empty array over the reals. + assert_equal(np.minimum.reduce([], initial=np.inf), np.inf) + assert_equal(np.maximum.reduce([], initial=-np.inf), -np.inf) + + # Random tests + assert_equal(np.minimum.reduce([5], initial=4), 4) + assert_equal(np.maximum.reduce([4], initial=5), 5) + assert_equal(np.maximum.reduce([5], initial=4), 5) + assert_equal(np.minimum.reduce([4], initial=5), 4) + + # Check initial=None raises ValueError for both types of ufunc reductions + assert_raises(ValueError, np.minimum.reduce, [], initial=None) + assert_raises(ValueError, np.add.reduce, [], initial=None) + # Also in the somewhat special object case: + with pytest.raises(ValueError): + np.add.reduce([], initial=None, dtype=object) + + # Check that np._NoValue gives default behavior. + assert_equal(np.add.reduce([], initial=np._NoValue), 0) + + # Check that initial kwarg behaves as intended for dtype=object + a = np.array([10], dtype=object) + res = np.add.reduce(a, initial=5) + assert_equal(res, 15) + + def test_empty_reduction_and_identity(self): + arr = np.zeros((0, 5)) + # OK, since the reduction itself is *not* empty, the result is + assert np.true_divide.reduce(arr, axis=1).shape == (0,) + # Not OK, the reduction itself is empty and we have no identity + with pytest.raises(ValueError): + np.true_divide.reduce(arr, axis=0) + + # Test that an empty reduction fails also if the result is empty + arr = np.zeros((0, 0, 5)) + with pytest.raises(ValueError): + np.true_divide.reduce(arr, axis=1) + + # Division reduction makes sense with `initial=1` (empty or not): + res = np.true_divide.reduce(arr, axis=1, initial=1) + assert_array_equal(res, np.ones((0, 5))) + + @pytest.mark.parametrize('axis', (0, 1, None)) + @pytest.mark.parametrize('where', (np.array([False, True, True]), + np.array([[True], [False], [True]]), + np.array([[True, False, False], + [False, True, False], + [False, True, True]]))) + def test_reduction_with_where(self, axis, where): + a = np.arange(9.).reshape(3, 3) + a_copy = a.copy() + a_check = np.zeros_like(a) + np.positive(a, out=a_check, where=where) + + res = np.add.reduce(a, axis=axis, where=where) + check = a_check.sum(axis) + assert_equal(res, check) + # Check we do not overwrite elements of a internally. + assert_array_equal(a, a_copy) + + @pytest.mark.parametrize(('axis', 'where'), + ((0, np.array([True, False, True])), + (1, [True, True, False]), + (None, True))) + @pytest.mark.parametrize('initial', (-np.inf, 5.)) + def test_reduction_with_where_and_initial(self, axis, where, initial): + a = np.arange(9.).reshape(3, 3) + a_copy = a.copy() + a_check = np.full(a.shape, -np.inf) + np.positive(a, out=a_check, where=where) + + res = np.maximum.reduce(a, axis=axis, where=where, initial=initial) + check = a_check.max(axis, initial=initial) + assert_equal(res, check) + + def test_reduction_where_initial_needed(self): + a = np.arange(9.).reshape(3, 3) + m = [False, True, False] + assert_raises(ValueError, np.maximum.reduce, a, where=m) + + def test_identityless_reduction_nonreorderable(self): + a = np.array([[8.0, 2.0, 2.0], [1.0, 0.5, 0.25]]) + + res = np.divide.reduce(a, axis=0) + assert_equal(res, [8.0, 4.0, 8.0]) + + res = np.divide.reduce(a, axis=1) + assert_equal(res, [2.0, 8.0]) + + res = np.divide.reduce(a, axis=()) + assert_equal(res, a) + + assert_raises(ValueError, np.divide.reduce, a, axis=(0, 1)) + + def test_reduce_zero_axis(self): + # If we have a n x m array and do a reduction with axis=1, then we are + # doing n reductions, and each reduction takes an m-element array. For + # a reduction operation without an identity, then: + # n > 0, m > 0: fine + # n = 0, m > 0: fine, doing 0 reductions of m-element arrays + # n > 0, m = 0: can't reduce a 0-element array, ValueError + # n = 0, m = 0: can't reduce a 0-element array, ValueError (for + # consistency with the above case) + # This test doesn't actually look at return values, it just checks to + # make sure that error we get an error in exactly those cases where we + # expect one, and assumes the calculations themselves are done + # correctly. + + def ok(f, *args, **kwargs): + f(*args, **kwargs) + + def err(f, *args, **kwargs): + assert_raises(ValueError, f, *args, **kwargs) + + def t(expect, func, n, m): + expect(func, np.zeros((n, m)), axis=1) + expect(func, np.zeros((m, n)), axis=0) + expect(func, np.zeros((n // 2, n // 2, m)), axis=2) + expect(func, np.zeros((n // 2, m, n // 2)), axis=1) + expect(func, np.zeros((n, m // 2, m // 2)), axis=(1, 2)) + expect(func, np.zeros((m // 2, n, m // 2)), axis=(0, 2)) + expect(func, np.zeros((m // 3, m // 3, m // 3, + n // 2, n // 2)), + axis=(0, 1, 2)) + # Check what happens if the inner (resp. outer) dimensions are a + # mix of zero and non-zero: + expect(func, np.zeros((10, m, n)), axis=(0, 1)) + expect(func, np.zeros((10, n, m)), axis=(0, 2)) + expect(func, np.zeros((m, 10, n)), axis=0) + expect(func, np.zeros((10, m, n)), axis=1) + expect(func, np.zeros((10, n, m)), axis=2) + + # np.maximum is just an arbitrary ufunc with no reduction identity + assert_equal(np.maximum.identity, None) + t(ok, np.maximum.reduce, 30, 30) + t(ok, np.maximum.reduce, 0, 30) + t(err, np.maximum.reduce, 30, 0) + t(err, np.maximum.reduce, 0, 0) + err(np.maximum.reduce, []) + np.maximum.reduce(np.zeros((0, 0)), axis=()) + + # all of the combinations are fine for a reduction that has an + # identity + t(ok, np.add.reduce, 30, 30) + t(ok, np.add.reduce, 0, 30) + t(ok, np.add.reduce, 30, 0) + t(ok, np.add.reduce, 0, 0) + np.add.reduce([]) + np.add.reduce(np.zeros((0, 0)), axis=()) + + # OTOH, accumulate always makes sense for any combination of n and m, + # because it maps an m-element array to an m-element array. These + # tests are simpler because accumulate doesn't accept multiple axes. + for uf in (np.maximum, np.add): + uf.accumulate(np.zeros((30, 0)), axis=0) + uf.accumulate(np.zeros((0, 30)), axis=0) + uf.accumulate(np.zeros((30, 30)), axis=0) + uf.accumulate(np.zeros((0, 0)), axis=0) + + def test_safe_casting(self): + # In old versions of numpy, in-place operations used the 'unsafe' + # casting rules. In versions >= 1.10, 'same_kind' is the + # default and an exception is raised instead of a warning. + # when 'same_kind' is not satisfied. + a = np.array([1, 2, 3], dtype=int) + # Non-in-place addition is fine + assert_array_equal(assert_no_warnings(np.add, a, 1.1), + [2.1, 3.1, 4.1]) + assert_raises(TypeError, np.add, a, 1.1, out=a) + + def add_inplace(a, b): + a += b + + assert_raises(TypeError, add_inplace, a, 1.1) + # Make sure that explicitly overriding the exception is allowed: + assert_no_warnings(np.add, a, 1.1, out=a, casting="unsafe") + assert_array_equal(a, [2, 3, 4]) + + def test_ufunc_custom_out(self): + # Test ufunc with built in input types and custom output type + + a = np.array([0, 1, 2], dtype='i8') + b = np.array([0, 1, 2], dtype='i8') + c = np.empty(3, dtype=_rational_tests.rational) + + # Output must be specified so numpy knows what + # ufunc signature to look for + result = _rational_tests.test_add(a, b, c) + target = np.array([0, 2, 4], dtype=_rational_tests.rational) + assert_equal(result, target) + + # The new resolution means that we can (usually) find custom loops + # as long as they match exactly: + result = _rational_tests.test_add(a, b) + assert_equal(result, target) + + # This works even more generally, so long the default common-dtype + # promoter works out: + result = _rational_tests.test_add(a, b.astype(np.uint16), out=c) + assert_equal(result, target) + + # This scalar path used to go into legacy promotion, but doesn't now: + result = _rational_tests.test_add(a, np.uint16(2)) + target = np.array([2, 3, 4], dtype=_rational_tests.rational) + assert_equal(result, target) + + def test_operand_flags(self): + a = np.arange(16, dtype=int).reshape(4, 4) + b = np.arange(9, dtype=int).reshape(3, 3) + opflag_tests.inplace_add(a[:-1, :-1], b) + assert_equal(a, np.array([[0, 2, 4, 3], [7, 9, 11, 7], + [14, 16, 18, 11], [12, 13, 14, 15]])) + + a = np.array(0) + opflag_tests.inplace_add(a, 3) + assert_equal(a, 3) + opflag_tests.inplace_add(a, [3, 4]) + assert_equal(a, 10) + + def test_struct_ufunc(self): + import numpy._core._struct_ufunc_tests as struct_ufunc + + a = np.array([(1, 2, 3)], dtype='u8,u8,u8') + b = np.array([(1, 2, 3)], dtype='u8,u8,u8') + + result = struct_ufunc.add_triplet(a, b) + assert_equal(result, np.array([(2, 4, 6)], dtype='u8,u8,u8')) + assert_raises(RuntimeError, struct_ufunc.register_fail) + + def test_custom_ufunc(self): + a = np.array( + [_rational_tests.rational(1, 2), + _rational_tests.rational(1, 3), + _rational_tests.rational(1, 4)], + dtype=_rational_tests.rational) + b = np.array( + [_rational_tests.rational(1, 2), + _rational_tests.rational(1, 3), + _rational_tests.rational(1, 4)], + dtype=_rational_tests.rational) + + result = _rational_tests.test_add_rationals(a, b) + expected = np.array( + [_rational_tests.rational(1), + _rational_tests.rational(2, 3), + _rational_tests.rational(1, 2)], + dtype=_rational_tests.rational) + assert_equal(result, expected) + + def test_custom_ufunc_forced_sig(self): + # gh-9351 - looking for a non-first userloop would previously hang + with assert_raises(TypeError): + np.multiply(_rational_tests.rational(1), 1, + signature=(_rational_tests.rational, int, None)) + + def test_custom_array_like(self): + + class MyThing: + __array_priority__ = 1000 + + rmul_count = 0 + getitem_count = 0 + + def __init__(self, shape): + self.shape = shape + + def __len__(self): + return self.shape[0] + + def __getitem__(self, i): + MyThing.getitem_count += 1 + if not isinstance(i, tuple): + i = (i,) + if len(i) > self.ndim: + raise IndexError("boo") + + return MyThing(self.shape[len(i):]) + + def __rmul__(self, other): + MyThing.rmul_count += 1 + return self + + np.float64(5)*MyThing((3, 3)) + assert_(MyThing.rmul_count == 1, MyThing.rmul_count) + assert_(MyThing.getitem_count <= 2, MyThing.getitem_count) + + @pytest.mark.parametrize("a", ( + np.arange(10, dtype=int), + np.arange(10, dtype=_rational_tests.rational), + )) + def test_ufunc_at_basic(self, a): + + aa = a.copy() + np.add.at(aa, [2, 5, 2], 1) + assert_equal(aa, [0, 1, 4, 3, 4, 6, 6, 7, 8, 9]) + + with pytest.raises(ValueError): + # missing second operand + np.add.at(aa, [2, 5, 3]) + + aa = a.copy() + np.negative.at(aa, [2, 5, 3]) + assert_equal(aa, [0, 1, -2, -3, 4, -5, 6, 7, 8, 9]) + + aa = a.copy() + b = np.array([100, 100, 100]) + np.add.at(aa, [2, 5, 2], b) + assert_equal(aa, [0, 1, 202, 3, 4, 105, 6, 7, 8, 9]) + + with pytest.raises(ValueError): + # extraneous second operand + np.negative.at(a, [2, 5, 3], [1, 2, 3]) + + with pytest.raises(ValueError): + # second operand cannot be converted to an array + np.add.at(a, [2, 5, 3], [[1, 2], 1]) + + # ufuncs with indexed loops for performance in ufunc.at + indexed_ufuncs = [np.add, np.subtract, np.multiply, np.floor_divide, + np.maximum, np.minimum, np.fmax, np.fmin] + + @pytest.mark.parametrize( + "typecode", np.typecodes['AllInteger'] + np.typecodes['Float']) + @pytest.mark.parametrize("ufunc", indexed_ufuncs) + def test_ufunc_at_inner_loops(self, typecode, ufunc): + if ufunc is np.divide and typecode in np.typecodes['AllInteger']: + # Avoid divide-by-zero and inf for integer divide + a = np.ones(100, dtype=typecode) + indx = np.random.randint(100, size=30, dtype=np.intp) + vals = np.arange(1, 31, dtype=typecode) + else: + a = np.ones(1000, dtype=typecode) + indx = np.random.randint(1000, size=3000, dtype=np.intp) + vals = np.arange(3000, dtype=typecode) + atag = a.copy() + # Do the calculation twice and compare the answers + with warnings.catch_warnings(record=True) as w_at: + warnings.simplefilter('always') + ufunc.at(a, indx, vals) + with warnings.catch_warnings(record=True) as w_loop: + warnings.simplefilter('always') + for i, v in zip(indx, vals): + # Make sure all the work happens inside the ufunc + # in order to duplicate error/warning handling + ufunc(atag[i], v, out=atag[i:i+1], casting="unsafe") + assert_equal(atag, a) + # If w_loop warned, make sure w_at warned as well + if len(w_loop) > 0: + # + assert len(w_at) > 0 + assert w_at[0].category == w_loop[0].category + assert str(w_at[0].message)[:10] == str(w_loop[0].message)[:10] + + @pytest.mark.parametrize("typecode", np.typecodes['Complex']) + @pytest.mark.parametrize("ufunc", [np.add, np.subtract, np.multiply]) + def test_ufunc_at_inner_loops_complex(self, typecode, ufunc): + a = np.ones(10, dtype=typecode) + indx = np.concatenate([np.ones(6, dtype=np.intp), + np.full(18, 4, dtype=np.intp)]) + value = a.dtype.type(1j) + ufunc.at(a, indx, value) + expected = np.ones_like(a) + if ufunc is np.multiply: + expected[1] = expected[4] = -1 + else: + expected[1] += 6 * (value if ufunc is np.add else -value) + expected[4] += 18 * (value if ufunc is np.add else -value) + + assert_array_equal(a, expected) + + def test_ufunc_at_ellipsis(self): + # Make sure the indexed loop check does not choke on iters + # with subspaces + arr = np.zeros(5) + np.add.at(arr, slice(None), np.ones(5)) + assert_array_equal(arr, np.ones(5)) + + def test_ufunc_at_negative(self): + arr = np.ones(5, dtype=np.int32) + indx = np.arange(5) + umt.indexed_negative.at(arr, indx) + # If it is [-1, -1, -1, -100, 0] then the regular strided loop was used + assert np.all(arr == [-1, -1, -1, -200, -1]) + + def test_ufunc_at_large(self): + # issue gh-23457 + indices = np.zeros(8195, dtype=np.int16) + b = np.zeros(8195, dtype=float) + b[0] = 10 + b[1] = 5 + b[8192:] = 100 + a = np.zeros(1, dtype=float) + np.add.at(a, indices, b) + assert a[0] == b.sum() + + def test_cast_index_fastpath(self): + arr = np.zeros(10) + values = np.ones(100000) + # index must be cast, which may be buffered in chunks: + index = np.zeros(len(values), dtype=np.uint8) + np.add.at(arr, index, values) + assert arr[0] == len(values) + + @pytest.mark.parametrize("value", [ + np.ones(1), np.ones(()), np.float64(1.), 1.]) + def test_ufunc_at_scalar_value_fastpath(self, value): + arr = np.zeros(1000) + # index must be cast, which may be buffered in chunks: + index = np.repeat(np.arange(1000), 2) + np.add.at(arr, index, value) + assert_array_equal(arr, np.full_like(arr, 2 * value)) + + def test_ufunc_at_multiD(self): + a = np.arange(9).reshape(3, 3) + b = np.array([[100, 100, 100], [200, 200, 200], [300, 300, 300]]) + np.add.at(a, (slice(None), [1, 2, 1]), b) + assert_equal(a, [[0, 201, 102], [3, 404, 205], [6, 607, 308]]) + + a = np.arange(27).reshape(3, 3, 3) + b = np.array([100, 200, 300]) + np.add.at(a, (slice(None), slice(None), [1, 2, 1]), b) + assert_equal(a, + [[[0, 401, 202], + [3, 404, 205], + [6, 407, 208]], + + [[9, 410, 211], + [12, 413, 214], + [15, 416, 217]], + + [[18, 419, 220], + [21, 422, 223], + [24, 425, 226]]]) + + a = np.arange(9).reshape(3, 3) + b = np.array([[100, 100, 100], [200, 200, 200], [300, 300, 300]]) + np.add.at(a, ([1, 2, 1], slice(None)), b) + assert_equal(a, [[0, 1, 2], [403, 404, 405], [206, 207, 208]]) + + a = np.arange(27).reshape(3, 3, 3) + b = np.array([100, 200, 300]) + np.add.at(a, (slice(None), [1, 2, 1], slice(None)), b) + assert_equal(a, + [[[0, 1, 2], + [203, 404, 605], + [106, 207, 308]], + + [[9, 10, 11], + [212, 413, 614], + [115, 216, 317]], + + [[18, 19, 20], + [221, 422, 623], + [124, 225, 326]]]) + + a = np.arange(9).reshape(3, 3) + b = np.array([100, 200, 300]) + np.add.at(a, (0, [1, 2, 1]), b) + assert_equal(a, [[0, 401, 202], [3, 4, 5], [6, 7, 8]]) + + a = np.arange(27).reshape(3, 3, 3) + b = np.array([100, 200, 300]) + np.add.at(a, ([1, 2, 1], 0, slice(None)), b) + assert_equal(a, + [[[0, 1, 2], + [3, 4, 5], + [6, 7, 8]], + + [[209, 410, 611], + [12, 13, 14], + [15, 16, 17]], + + [[118, 219, 320], + [21, 22, 23], + [24, 25, 26]]]) + + a = np.arange(27).reshape(3, 3, 3) + b = np.array([100, 200, 300]) + np.add.at(a, (slice(None), slice(None), slice(None)), b) + assert_equal(a, + [[[100, 201, 302], + [103, 204, 305], + [106, 207, 308]], + + [[109, 210, 311], + [112, 213, 314], + [115, 216, 317]], + + [[118, 219, 320], + [121, 222, 323], + [124, 225, 326]]]) + + def test_ufunc_at_0D(self): + a = np.array(0) + np.add.at(a, (), 1) + assert_equal(a, 1) + + assert_raises(IndexError, np.add.at, a, 0, 1) + assert_raises(IndexError, np.add.at, a, [], 1) + + def test_ufunc_at_dtypes(self): + # Test mixed dtypes + a = np.arange(10) + np.power.at(a, [1, 2, 3, 2], 3.5) + assert_equal(a, np.array([0, 1, 4414, 46, 4, 5, 6, 7, 8, 9])) + + def test_ufunc_at_boolean(self): + # Test boolean indexing and boolean ufuncs + a = np.arange(10) + index = a % 2 == 0 + np.equal.at(a, index, [0, 2, 4, 6, 8]) + assert_equal(a, [1, 1, 1, 3, 1, 5, 1, 7, 1, 9]) + + # Test unary operator + a = np.arange(10, dtype='u4') + np.invert.at(a, [2, 5, 2]) + assert_equal(a, [0, 1, 2, 3, 4, 5 ^ 0xffffffff, 6, 7, 8, 9]) + + def test_ufunc_at_advanced(self): + # Test empty subspace + orig = np.arange(4) + a = orig[:, None][:, 0:0] + np.add.at(a, [0, 1], 3) + assert_array_equal(orig, np.arange(4)) + + # Test with swapped byte order + index = np.array([1, 2, 1], np.dtype('i').newbyteorder()) + values = np.array([1, 2, 3, 4], np.dtype('f').newbyteorder()) + np.add.at(values, index, 3) + assert_array_equal(values, [1, 8, 6, 4]) + + # Test exception thrown + values = np.array(['a', 1], dtype=object) + assert_raises(TypeError, np.add.at, values, [0, 1], 1) + assert_array_equal(values, np.array(['a', 1], dtype=object)) + + # Test multiple output ufuncs raise error, gh-5665 + assert_raises(ValueError, np.modf.at, np.arange(10), [1]) + + # Test maximum + a = np.array([1, 2, 3]) + np.maximum.at(a, [0], 0) + assert_equal(a, np.array([1, 2, 3])) + + @pytest.mark.parametrize("dtype", + np.typecodes['AllInteger'] + np.typecodes['Float']) + @pytest.mark.parametrize("ufunc", + [np.add, np.subtract, np.divide, np.minimum, np.maximum]) + def test_at_negative_indexes(self, dtype, ufunc): + a = np.arange(0, 10).astype(dtype) + indxs = np.array([-1, 1, -1, 2]).astype(np.intp) + vals = np.array([1, 5, 2, 10], dtype=a.dtype) + + expected = a.copy() + for i, v in zip(indxs, vals): + expected[i] = ufunc(expected[i], v) + + ufunc.at(a, indxs, vals) + assert_array_equal(a, expected) + assert np.all(indxs == [-1, 1, -1, 2]) + + def test_at_not_none_signature(self): + # Test ufuncs with non-trivial signature raise a TypeError + a = np.ones((2, 2, 2)) + b = np.ones((1, 2, 2)) + assert_raises(TypeError, np.matmul.at, a, [0], b) + + a = np.array([[[1, 2], [3, 4]]]) + assert_raises(TypeError, np.linalg._umath_linalg.det.at, a, [0]) + + def test_at_no_loop_for_op(self): + # str dtype does not have a ufunc loop for np.add + arr = np.ones(10, dtype=str) + with pytest.raises(np._core._exceptions._UFuncNoLoopError): + np.add.at(arr, [0, 1], [0, 1]) + + def test_at_output_casting(self): + arr = np.array([-1]) + np.equal.at(arr, [0], [0]) + assert arr[0] == 0 + + def test_at_broadcast_failure(self): + arr = np.arange(5) + with pytest.raises(ValueError): + np.add.at(arr, [0, 1], [1, 2, 3]) + + + def test_reduce_arguments(self): + f = np.add.reduce + d = np.ones((5,2), dtype=int) + o = np.ones((2,), dtype=d.dtype) + r = o * 5 + assert_equal(f(d), r) + # a, axis=0, dtype=None, out=None, keepdims=False + assert_equal(f(d, axis=0), r) + assert_equal(f(d, 0), r) + assert_equal(f(d, 0, dtype=None), r) + assert_equal(f(d, 0, dtype='i'), r) + assert_equal(f(d, 0, 'i'), r) + assert_equal(f(d, 0, None), r) + assert_equal(f(d, 0, None, out=None), r) + assert_equal(f(d, 0, None, out=o), r) + assert_equal(f(d, 0, None, o), r) + assert_equal(f(d, 0, None, None), r) + assert_equal(f(d, 0, None, None, keepdims=False), r) + assert_equal(f(d, 0, None, None, True), r.reshape((1,) + r.shape)) + assert_equal(f(d, 0, None, None, False, 0), r) + assert_equal(f(d, 0, None, None, False, initial=0), r) + assert_equal(f(d, 0, None, None, False, 0, True), r) + assert_equal(f(d, 0, None, None, False, 0, where=True), r) + # multiple keywords + assert_equal(f(d, axis=0, dtype=None, out=None, keepdims=False), r) + assert_equal(f(d, 0, dtype=None, out=None, keepdims=False), r) + assert_equal(f(d, 0, None, out=None, keepdims=False), r) + assert_equal(f(d, 0, None, out=None, keepdims=False, initial=0, + where=True), r) + + # too little + assert_raises(TypeError, f) + # too much + assert_raises(TypeError, f, d, 0, None, None, False, 0, True, 1) + # invalid axis + assert_raises(TypeError, f, d, "invalid") + assert_raises(TypeError, f, d, axis="invalid") + assert_raises(TypeError, f, d, axis="invalid", dtype=None, + keepdims=True) + # invalid dtype + assert_raises(TypeError, f, d, 0, "invalid") + assert_raises(TypeError, f, d, dtype="invalid") + assert_raises(TypeError, f, d, dtype="invalid", out=None) + # invalid out + assert_raises(TypeError, f, d, 0, None, "invalid") + assert_raises(TypeError, f, d, out="invalid") + assert_raises(TypeError, f, d, out="invalid", dtype=None) + # keepdims boolean, no invalid value + # assert_raises(TypeError, f, d, 0, None, None, "invalid") + # assert_raises(TypeError, f, d, keepdims="invalid", axis=0, dtype=None) + # invalid mix + assert_raises(TypeError, f, d, 0, keepdims="invalid", dtype="invalid", + out=None) + + # invalid keyword + assert_raises(TypeError, f, d, axis=0, dtype=None, invalid=0) + assert_raises(TypeError, f, d, invalid=0) + assert_raises(TypeError, f, d, 0, keepdims=True, invalid="invalid", + out=None) + assert_raises(TypeError, f, d, axis=0, dtype=None, keepdims=True, + out=None, invalid=0) + assert_raises(TypeError, f, d, axis=0, dtype=None, + out=None, invalid=0) + + def test_structured_equal(self): + # https://github.com/numpy/numpy/issues/4855 + + class MyA(np.ndarray): + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return getattr(ufunc, method)(*(input.view(np.ndarray) + for input in inputs), **kwargs) + a = np.arange(12.).reshape(4,3) + ra = a.view(dtype=('f8,f8,f8')).squeeze() + mra = ra.view(MyA) + + target = np.array([ True, False, False, False], dtype=bool) + assert_equal(np.all(target == (mra == ra[0])), True) + + def test_scalar_equal(self): + # Scalar comparisons should always work, without deprecation warnings. + # even when the ufunc fails. + a = np.array(0.) + b = np.array('a') + assert_(a != b) + assert_(b != a) + assert_(not (a == b)) + assert_(not (b == a)) + + def test_NotImplemented_not_returned(self): + # See gh-5964 and gh-2091. Some of these functions are not operator + # related and were fixed for other reasons in the past. + binary_funcs = [ + np.power, np.add, np.subtract, np.multiply, np.divide, + np.true_divide, np.floor_divide, np.bitwise_and, np.bitwise_or, + np.bitwise_xor, np.left_shift, np.right_shift, np.fmax, + np.fmin, np.fmod, np.hypot, np.logaddexp, np.logaddexp2, + np.maximum, np.minimum, np.mod, + np.greater, np.greater_equal, np.less, np.less_equal, + np.equal, np.not_equal] + + a = np.array('1') + b = 1 + c = np.array([1., 2.]) + for f in binary_funcs: + assert_raises(TypeError, f, a, b) + assert_raises(TypeError, f, c, a) + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or]) # logical_xor object loop is bad + @pytest.mark.parametrize("signature", + [(None, None, object), (object, None, None), + (None, object, None)]) + def test_logical_ufuncs_object_signatures(self, ufunc, signature): + a = np.array([True, None, False], dtype=object) + res = ufunc(a, a, signature=signature) + assert res.dtype == object + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or, np.logical_xor]) + @pytest.mark.parametrize("signature", + [(bool, None, object), (object, None, bool), + (None, object, bool)]) + def test_logical_ufuncs_mixed_object_signatures(self, ufunc, signature): + # Most mixed signatures fail (except those with bool out, e.g. `OO->?`) + a = np.array([True, None, False]) + with pytest.raises(TypeError): + ufunc(a, a, signature=signature) + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or, np.logical_xor]) + def test_logical_ufuncs_support_anything(self, ufunc): + # The logical ufuncs support even input that can't be promoted: + a = np.array(b'1', dtype="V3") + c = np.array([1., 2.]) + assert_array_equal(ufunc(a, c), ufunc([True, True], True)) + assert ufunc.reduce(a) == True + # check that the output has no effect: + out = np.zeros(2, dtype=np.int32) + expected = ufunc([True, True], True).astype(out.dtype) + assert_array_equal(ufunc(a, c, out=out), expected) + out = np.zeros((), dtype=np.int32) + assert ufunc.reduce(a, out=out) == True + # Last check, test reduction when out and a match (the complexity here + # is that the "i,i->?" may seem right, but should not match. + a = np.array([3], dtype="i") + out = np.zeros((), dtype=a.dtype) + assert ufunc.reduce(a, out=out) == 1 + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or, np.logical_xor]) + @pytest.mark.parametrize("dtype", ["S", "U"]) + @pytest.mark.parametrize("values", [["1", "hi", "0"], ["", ""]]) + def test_logical_ufuncs_supports_string(self, ufunc, dtype, values): + # note that values are either all true or all false + arr = np.array(values, dtype=dtype) + obj_arr = np.array(values, dtype=object) + res = ufunc(arr, arr) + expected = ufunc(obj_arr, obj_arr, dtype=bool) + + assert_array_equal(res, expected) + + res = ufunc.reduce(arr) + expected = ufunc.reduce(obj_arr, dtype=bool) + assert_array_equal(res, expected) + + @pytest.mark.parametrize("ufunc", + [np.logical_and, np.logical_or, np.logical_xor]) + def test_logical_ufuncs_out_cast_check(self, ufunc): + a = np.array('1') + c = np.array([1., 2.]) + out = a.copy() + with pytest.raises(TypeError): + # It would be safe, but not equiv casting: + ufunc(a, c, out=out, casting="equiv") + + def test_reducelike_byteorder_resolution(self): + # See gh-20699, byte-order changes need some extra care in the type + # resolution to make the following succeed: + arr_be = np.arange(10, dtype=">i8") + arr_le = np.arange(10, dtype="i + if 'O' in typ or '?' in typ: + continue + inp, out = typ.split('->') + args = [np.ones((3, 3), t) for t in inp] + with warnings.catch_warnings(record=True): + warnings.filterwarnings("always") + res = ufunc(*args) + if isinstance(res, tuple): + outs = tuple(out) + assert len(res) == len(outs) + for r, t in zip(res, outs): + assert r.dtype == np.dtype(t) + else: + assert res.dtype == np.dtype(out) + +@pytest.mark.parametrize('ufunc', [getattr(np, x) for x in dir(np) + if isinstance(getattr(np, x), np.ufunc)]) +def test_ufunc_noncontiguous(ufunc): + ''' + Check that contiguous and non-contiguous calls to ufuncs + have the same results for values in range(9) + ''' + for typ in ufunc.types: + # types is a list of strings like ii->i + if any(set('O?mM') & set(typ)): + # bool, object, datetime are too irregular for this simple test + continue + inp, out = typ.split('->') + args_c = [np.empty((6, 6), t) for t in inp] + # non contiguous (2, 3 step on the two dimensions) + args_n = [np.empty((12, 18), t)[::2, ::3] for t in inp] + # alignment != itemsize is possible. So create an array with such + # an odd step manually. + args_o = [] + for t in inp: + orig_dt = np.dtype(t) + off_dt = f"S{orig_dt.alignment}" # offset by alignment + dtype = np.dtype([("_", off_dt), ("t", orig_dt)], align=False) + args_o.append(np.empty((6, 6), dtype=dtype)["t"]) + for a in args_c + args_n + args_o: + a.flat = range(1, 37) + + with warnings.catch_warnings(record=True): + warnings.filterwarnings("always") + res_c = ufunc(*args_c) + res_n = ufunc(*args_n) + res_o = ufunc(*args_o) + if len(out) == 1: + res_c = (res_c,) + res_n = (res_n,) + res_o = (res_o,) + for c_ar, n_ar, o_ar in zip(res_c, res_n, res_o): + dt = c_ar.dtype + if np.issubdtype(dt, np.floating): + # for floating point results allow a small fuss in comparisons + # since different algorithms (libm vs. intrinsics) can be used + # for different input strides + res_eps = np.finfo(dt).eps + tol = 3*res_eps + assert_allclose(res_c, res_n, atol=tol, rtol=tol) + assert_allclose(res_c, res_o, atol=tol, rtol=tol) + else: + assert_equal(c_ar, n_ar) + assert_equal(c_ar, o_ar) + + +@pytest.mark.parametrize('ufunc', [np.sign, np.equal]) +def test_ufunc_warn_with_nan(ufunc): + # issue gh-15127 + # test that calling certain ufuncs with a non-standard `nan` value does not + # emit a warning + # `b` holds a 64 bit signaling nan: the most significant bit of the + # significand is zero. + b = np.array([0x7ff0000000000001], 'i8').view('f8') + assert np.isnan(b) + if ufunc.nin == 1: + ufunc(b) + elif ufunc.nin == 2: + ufunc(b, b.copy()) + else: + raise ValueError('ufunc with more than 2 inputs') + + +@pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") +def test_ufunc_out_casterrors(): + # Tests that casting errors are correctly reported and buffers are + # cleared. + # The following array can be added to itself as an object array, but + # the result cannot be cast to an integer output: + value = 123 # relies on python cache (leak-check will still find it) + arr = np.array([value] * int(ncu.BUFSIZE * 1.5) + + ["string"] + + [value] * int(1.5 * ncu.BUFSIZE), dtype=object) + out = np.ones(len(arr), dtype=np.intp) + + count = sys.getrefcount(value) + with pytest.raises(ValueError): + # Output casting failure: + np.add(arr, arr, out=out, casting="unsafe") + + assert count == sys.getrefcount(value) + # output is unchanged after the error, this shows that the iteration + # was aborted (this is not necessarily defined behaviour) + assert out[-1] == 1 + + with pytest.raises(ValueError): + # Input casting failure: + np.add(arr, arr, out=out, dtype=np.intp, casting="unsafe") + + assert count == sys.getrefcount(value) + # output is unchanged after the error, this shows that the iteration + # was aborted (this is not necessarily defined behaviour) + assert out[-1] == 1 + + +@pytest.mark.parametrize("bad_offset", [0, int(ncu.BUFSIZE * 1.5)]) +def test_ufunc_input_casterrors(bad_offset): + value = 123 + arr = np.array([value] * bad_offset + + ["string"] + + [value] * int(1.5 * ncu.BUFSIZE), dtype=object) + with pytest.raises(ValueError): + # Force cast inputs, but the buffered cast of `arr` to intp fails: + np.add(arr, arr, dtype=np.intp, casting="unsafe") + + +@pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") +@pytest.mark.parametrize("bad_offset", [0, int(ncu.BUFSIZE * 1.5)]) +def test_ufunc_input_floatingpoint_error(bad_offset): + value = 123 + arr = np.array([value] * bad_offset + + [np.nan] + + [value] * int(1.5 * ncu.BUFSIZE)) + with np.errstate(invalid="raise"), pytest.raises(FloatingPointError): + # Force cast inputs, but the buffered cast of `arr` to intp fails: + np.add(arr, arr, dtype=np.intp, casting="unsafe") + + +def test_trivial_loop_invalid_cast(): + # This tests the fast-path "invalid cast", see gh-19904. + with pytest.raises(TypeError, + match="cast ufunc 'add' input 0"): + # the void dtype definitely cannot cast to double: + np.add(np.array(1, "i,i"), 3, signature="dd->d") + + +@pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") +@pytest.mark.parametrize("offset", + [0, ncu.BUFSIZE//2, int(1.5*ncu.BUFSIZE)]) +def test_reduce_casterrors(offset): + # Test reporting of casting errors in reductions, we test various + # offsets to where the casting error will occur, since these may occur + # at different places during the reduction procedure. For example + # the first item may be special. + value = 123 # relies on python cache (leak-check will still find it) + arr = np.array([value] * offset + + ["string"] + + [value] * int(1.5 * ncu.BUFSIZE), dtype=object) + out = np.array(-1, dtype=np.intp) + + count = sys.getrefcount(value) + with pytest.raises(ValueError, match="invalid literal"): + # This is an unsafe cast, but we currently always allow that. + # Note that the double loop is picked, but the cast fails. + # `initial=None` disables the use of an identity here to test failures + # while copying the first values path (not used when identity exists). + np.add.reduce(arr, dtype=np.intp, out=out, initial=None) + assert count == sys.getrefcount(value) + # If an error occurred during casting, the operation is done at most until + # the error occurs (the result of which would be `value * offset`) and -1 + # if the error happened immediately. + # This does not define behaviour, the output is invalid and thus undefined + assert out[()] < value * offset + + +def test_object_reduce_cleanup_on_failure(): + # Test cleanup, including of the initial value (manually provided or not) + with pytest.raises(TypeError): + np.add.reduce([1, 2, None], initial=4) + + with pytest.raises(TypeError): + np.add.reduce([1, 2, None]) + + +@pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") +@pytest.mark.parametrize("method", + [np.add.accumulate, np.add.reduce, + pytest.param(lambda x: np.add.reduceat(x, [0]), id="reduceat"), + pytest.param(lambda x: np.log.at(x, [2]), id="at")]) +def test_ufunc_methods_floaterrors(method): + # adding inf and -inf (or log(-inf) creates an invalid float and warns + arr = np.array([np.inf, 0, -np.inf]) + with np.errstate(all="warn"): + with pytest.warns(RuntimeWarning, match="invalid value"): + method(arr) + + arr = np.array([np.inf, 0, -np.inf]) + with np.errstate(all="raise"): + with pytest.raises(FloatingPointError): + method(arr) + + +def _check_neg_zero(value): + if value != 0.0: + return False + if not np.signbit(value.real): + return False + if value.dtype.kind == "c": + return np.signbit(value.imag) + return True + +@pytest.mark.parametrize("dtype", np.typecodes["AllFloat"]) +def test_addition_negative_zero(dtype): + dtype = np.dtype(dtype) + if dtype.kind == "c": + neg_zero = dtype.type(complex(-0.0, -0.0)) + else: + neg_zero = dtype.type(-0.0) + + arr = np.array(neg_zero) + arr2 = np.array(neg_zero) + + assert _check_neg_zero(arr + arr2) + # In-place ops may end up on a different path (reduce path) see gh-21211 + arr += arr2 + assert _check_neg_zero(arr) + + +@pytest.mark.parametrize("dtype", np.typecodes["AllFloat"]) +@pytest.mark.parametrize("use_initial", [True, False]) +def test_addition_reduce_negative_zero(dtype, use_initial): + dtype = np.dtype(dtype) + if dtype.kind == "c": + neg_zero = dtype.type(complex(-0.0, -0.0)) + else: + neg_zero = dtype.type(-0.0) + + kwargs = {} + if use_initial: + kwargs["initial"] = neg_zero + else: + pytest.xfail("-0. propagation in sum currently requires initial") + + # Test various length, in case SIMD paths or chunking play a role. + # 150 extends beyond the pairwise blocksize; probably not important. + for i in range(0, 150): + arr = np.array([neg_zero] * i, dtype=dtype) + res = np.sum(arr, **kwargs) + if i > 0 or use_initial: + assert _check_neg_zero(res) + else: + # `sum([])` should probably be 0.0 and not -0.0 like `sum([-0.0])` + assert not np.signbit(res.real) + assert not np.signbit(res.imag) + + +@pytest.mark.parametrize(["dt1", "dt2"], + [("S", "U"), ("U", "S"), ("S", "d"), ("S", "V"), ("U", "l")]) +def test_addition_string_types(dt1, dt2): + arr1 = np.array([1234234], dtype=dt1) + arr2 = np.array([b"423"], dtype=dt2) + with pytest.raises(np._core._exceptions.UFuncTypeError) as exc: + np.add(arr1, arr2) + + +@pytest.mark.parametrize("order1,order2", + [(">", ">"), ("<", "<"), (">", "<"), ("<", ">")]) +def test_addition_unicode_inverse_byte_order(order1, order2): + element = 'abcd' + arr1 = np.array([element], dtype=f"{order1}U4") + arr2 = np.array([element], dtype=f"{order2}U4") + result = arr1 + arr2 + assert result == 2*element + + +@pytest.mark.parametrize("dtype", [np.int8, np.int16, np.int32, np.int64]) +def test_find_non_long_args(dtype): + element = 'abcd' + start = dtype(0) + end = dtype(len(element)) + arr = np.array([element]) + result = np._core.umath.find(arr, "a", start, end) + assert result.dtype == np.dtype("intp") + assert result == 0 + + +def test_find_access_past_buffer(): + # This checks that no read past the string buffer occurs in + # string_fastsearch.h. The buffer class makes sure this is checked. + # To see it in action, you can remove the checks in the buffer and + # this test will produce an 'Invalid read' if run under valgrind. + arr = np.array([b'abcd', b'ebcd']) + result = np._core.umath.find(arr, b'cde', 0, np.iinfo(np.int64).max) + assert np.all(result == -1) + + +class TestLowlevelAPIAccess: + def test_resolve_dtypes_basic(self): + # Basic test for dtype resolution: + i4 = np.dtype("i4") + f4 = np.dtype("f4") + f8 = np.dtype("f8") + + r = np.add.resolve_dtypes((i4, f4, None)) + assert r == (f8, f8, f8) + + # Signature uses the same logic to parse as ufunc (less strict) + # the following is "same-kind" casting so works: + r = np.add.resolve_dtypes(( + i4, i4, None), signature=(None, None, "f4")) + assert r == (f4, f4, f4) + + # Check NEP 50 "weak" promotion also: + r = np.add.resolve_dtypes((f4, int, None)) + assert r == (f4, f4, f4) + + with pytest.raises(TypeError): + np.add.resolve_dtypes((i4, f4, None), casting="no") + + def test_resolve_dtypes_comparison(self): + i4 = np.dtype("i4") + i8 = np.dtype("i8") + b = np.dtype("?") + r = np.equal.resolve_dtypes((i4, i8, None)) + assert r == (i8, i8, b) + + def test_weird_dtypes(self): + S0 = np.dtype("S0") + # S0 is often converted by NumPy to S1, but not here: + r = np.equal.resolve_dtypes((S0, S0, None)) + assert r == (S0, S0, np.dtype(bool)) + + # Subarray dtypes are weird and may not work fully, we preserve them + # leading to a TypeError (currently no equal loop for void/structured) + dts = np.dtype("10i") + with pytest.raises(TypeError): + np.equal.resolve_dtypes((dts, dts, None)) + + def test_resolve_dtypes_reduction(self): + i2 = np.dtype("i2") + default_int_ = np.dtype(np.int_) + # Check special addition resolution: + res = np.add.resolve_dtypes((None, i2, None), reduction=True) + assert res == (default_int_, default_int_, default_int_) + + def test_resolve_dtypes_reduction_no_output(self): + i4 = np.dtype("i4") + with pytest.raises(TypeError): + # May be allowable at some point? + np.add.resolve_dtypes((i4, i4, i4), reduction=True) + + @pytest.mark.parametrize("dtypes", [ + (np.dtype("i"), np.dtype("i")), + (None, np.dtype("i"), np.dtype("f")), + (np.dtype("i"), None, np.dtype("f")), + ("i4", "i4", None)]) + def test_resolve_dtypes_errors(self, dtypes): + with pytest.raises(TypeError): + np.add.resolve_dtypes(dtypes) + + def test_resolve_dtypes_reduction_errors(self): + i2 = np.dtype("i2") + + with pytest.raises(TypeError): + np.add.resolve_dtypes((None, i2, i2)) + + with pytest.raises(TypeError): + np.add.signature((None, None, "i4")) + + @pytest.mark.skipif(not hasattr(ct, "pythonapi"), + reason="`ctypes.pythonapi` required for capsule unpacking.") + def test_loop_access(self): + # This is a basic test for the full strided loop access + data_t = ct.c_char_p * 2 + dim_t = ct.c_ssize_t * 1 + strides_t = ct.c_ssize_t * 2 + strided_loop_t = ct.CFUNCTYPE( + ct.c_int, ct.c_void_p, data_t, dim_t, strides_t, ct.c_void_p) + + class call_info_t(ct.Structure): + _fields_ = [ + ("strided_loop", strided_loop_t), + ("context", ct.c_void_p), + ("auxdata", ct.c_void_p), + ("requires_pyapi", ct.c_byte), + ("no_floatingpoint_errors", ct.c_byte), + ] + + i4 = np.dtype("i4") + dt, call_info_obj = np.negative._resolve_dtypes_and_context((i4, i4)) + assert dt == (i4, i4) # can be used without casting + + # Fill in the rest of the information: + np.negative._get_strided_loop(call_info_obj) + + ct.pythonapi.PyCapsule_GetPointer.restype = ct.c_void_p + call_info = ct.pythonapi.PyCapsule_GetPointer( + ct.py_object(call_info_obj), + ct.c_char_p(b"numpy_1.24_ufunc_call_info")) + + call_info = ct.cast(call_info, ct.POINTER(call_info_t)).contents + + arr = np.arange(10, dtype=i4) + call_info.strided_loop( + call_info.context, + data_t(arr.ctypes.data, arr.ctypes.data), + arr.ctypes.shape, # is a C-array with 10 here + strides_t(arr.ctypes.strides[0], arr.ctypes.strides[0]), + call_info.auxdata) + + # We just directly called the negative inner-loop in-place: + assert_array_equal(arr, -np.arange(10, dtype=i4)) + + @pytest.mark.parametrize("strides", [1, (1, 2, 3), (1, "2")]) + def test__get_strided_loop_errors_bad_strides(self, strides): + i4 = np.dtype("i4") + dt, call_info = np.negative._resolve_dtypes_and_context((i4, i4)) + + with pytest.raises(TypeError, match="fixed_strides.*tuple.*or None"): + np.negative._get_strided_loop(call_info, fixed_strides=strides) + + def test__get_strided_loop_errors_bad_call_info(self): + i4 = np.dtype("i4") + dt, call_info = np.negative._resolve_dtypes_and_context((i4, i4)) + + with pytest.raises(ValueError, match="PyCapsule"): + np.negative._get_strided_loop("not the capsule!") + + with pytest.raises(TypeError, match=".*incompatible context"): + np.add._get_strided_loop(call_info) + + np.negative._get_strided_loop(call_info) + with pytest.raises(TypeError): + # cannot call it a second time: + np.negative._get_strided_loop(call_info) + + def test_long_arrays(self): + t = np.zeros((1029, 917), dtype=np.single) + t[0][0] = 1 + t[28][414] = 1 + tc = np.cos(t) + assert_equal(tc[0][0], tc[28][414]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath.py new file mode 100644 index 0000000000000000000000000000000000000000..4d56c785d5a726b5b08ce639e55fcaf1166eeb43 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath.py @@ -0,0 +1,4897 @@ +import platform +import warnings +import fnmatch +import itertools +import pytest +import sys +import operator +from fractions import Fraction +from functools import reduce +from collections import namedtuple + +import numpy._core.umath as ncu +from numpy._core import _umath_tests as ncu_tests, sctypes +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_raises_regex, + assert_array_equal, assert_almost_equal, assert_array_almost_equal, + assert_array_max_ulp, assert_allclose, assert_no_warnings, suppress_warnings, + _gen_alignment_data, assert_array_almost_equal_nulp, IS_WASM, IS_MUSL, + IS_PYPY, HAS_REFCOUNT + ) +from numpy.testing._private.utils import _glibc_older_than + +UFUNCS = [obj for obj in np._core.umath.__dict__.values() + if isinstance(obj, np.ufunc)] + +UFUNCS_UNARY = [ + uf for uf in UFUNCS if uf.nin == 1 +] +UFUNCS_UNARY_FP = [ + uf for uf in UFUNCS_UNARY if 'f->f' in uf.types +] + +UFUNCS_BINARY = [ + uf for uf in UFUNCS if uf.nin == 2 +] +UFUNCS_BINARY_ACC = [ + uf for uf in UFUNCS_BINARY if hasattr(uf, "accumulate") and uf.nout == 1 +] + +def interesting_binop_operands(val1, val2, dtype): + """ + Helper to create "interesting" operands to cover common code paths: + * scalar inputs + * only first "values" is an array (e.g. scalar division fast-paths) + * Longer array (SIMD) placing the value of interest at different positions + * Oddly strided arrays which may not be SIMD compatible + + It does not attempt to cover unaligned access or mixed dtypes. + These are normally handled by the casting/buffering machinery. + + This is not a fixture (currently), since I believe a fixture normally + only yields once? + """ + fill_value = 1 # could be a parameter, but maybe not an optional one? + + arr1 = np.full(10003, dtype=dtype, fill_value=fill_value) + arr2 = np.full(10003, dtype=dtype, fill_value=fill_value) + + arr1[0] = val1 + arr2[0] = val2 + + extractor = lambda res: res + yield arr1[0], arr2[0], extractor, "scalars" + + extractor = lambda res: res + yield arr1[0, ...], arr2[0, ...], extractor, "scalar-arrays" + + # reset array values to fill_value: + arr1[0] = fill_value + arr2[0] = fill_value + + for pos in [0, 1, 2, 3, 4, 5, -1, -2, -3, -4]: + arr1[pos] = val1 + arr2[pos] = val2 + + extractor = lambda res: res[pos] + yield arr1, arr2, extractor, f"off-{pos}" + yield arr1, arr2[pos], extractor, f"off-{pos}-with-scalar" + + arr1[pos] = fill_value + arr2[pos] = fill_value + + for stride in [-1, 113]: + op1 = arr1[::stride] + op2 = arr2[::stride] + op1[10] = val1 + op2[10] = val2 + + extractor = lambda res: res[10] + yield op1, op2, extractor, f"stride-{stride}" + + op1[10] = fill_value + op2[10] = fill_value + + +def on_powerpc(): + """ True if we are running on a Power PC platform.""" + return platform.processor() == 'powerpc' or \ + platform.machine().startswith('ppc') + + +def bad_arcsinh(): + """The blocklisted trig functions are not accurate on aarch64/PPC for + complex256. Rather than dig through the actual problem skip the + test. This should be fixed when we can move past glibc2.17 + which is the version in manylinux2014 + """ + if platform.machine() == 'aarch64': + x = 1.78e-10 + elif on_powerpc(): + x = 2.16e-10 + else: + return False + v1 = np.arcsinh(np.float128(x)) + v2 = np.arcsinh(np.complex256(x)).real + # The eps for float128 is 1-e33, so this is way bigger + return abs((v1 / v2) - 1.0) > 1e-23 + + +class _FilterInvalids: + def setup_method(self): + self.olderr = np.seterr(invalid='ignore') + + def teardown_method(self): + np.seterr(**self.olderr) + + +class TestConstants: + def test_pi(self): + assert_allclose(ncu.pi, 3.141592653589793, 1e-15) + + def test_e(self): + assert_allclose(ncu.e, 2.718281828459045, 1e-15) + + def test_euler_gamma(self): + assert_allclose(ncu.euler_gamma, 0.5772156649015329, 1e-15) + + +class TestOut: + def test_out_subok(self): + for subok in (True, False): + a = np.array(0.5) + o = np.empty(()) + + r = np.add(a, 2, o, subok=subok) + assert_(r is o) + r = np.add(a, 2, out=o, subok=subok) + assert_(r is o) + r = np.add(a, 2, out=(o,), subok=subok) + assert_(r is o) + + d = np.array(5.7) + o1 = np.empty(()) + o2 = np.empty((), dtype=np.int32) + + r1, r2 = np.frexp(d, o1, None, subok=subok) + assert_(r1 is o1) + r1, r2 = np.frexp(d, None, o2, subok=subok) + assert_(r2 is o2) + r1, r2 = np.frexp(d, o1, o2, subok=subok) + assert_(r1 is o1) + assert_(r2 is o2) + + r1, r2 = np.frexp(d, out=(o1, None), subok=subok) + assert_(r1 is o1) + r1, r2 = np.frexp(d, out=(None, o2), subok=subok) + assert_(r2 is o2) + r1, r2 = np.frexp(d, out=(o1, o2), subok=subok) + assert_(r1 is o1) + assert_(r2 is o2) + + with assert_raises(TypeError): + # Out argument must be tuple, since there are multiple outputs. + r1, r2 = np.frexp(d, out=o1, subok=subok) + + assert_raises(TypeError, np.add, a, 2, o, o, subok=subok) + assert_raises(TypeError, np.add, a, 2, o, out=o, subok=subok) + assert_raises(TypeError, np.add, a, 2, None, out=o, subok=subok) + assert_raises(ValueError, np.add, a, 2, out=(o, o), subok=subok) + assert_raises(ValueError, np.add, a, 2, out=(), subok=subok) + assert_raises(TypeError, np.add, a, 2, [], subok=subok) + assert_raises(TypeError, np.add, a, 2, out=[], subok=subok) + assert_raises(TypeError, np.add, a, 2, out=([],), subok=subok) + o.flags.writeable = False + assert_raises(ValueError, np.add, a, 2, o, subok=subok) + assert_raises(ValueError, np.add, a, 2, out=o, subok=subok) + assert_raises(ValueError, np.add, a, 2, out=(o,), subok=subok) + + def test_out_wrap_subok(self): + class ArrayWrap(np.ndarray): + __array_priority__ = 10 + + def __new__(cls, arr): + return np.asarray(arr).view(cls).copy() + + def __array_wrap__(self, arr, context=None, return_scalar=False): + return arr.view(type(self)) + + for subok in (True, False): + a = ArrayWrap([0.5]) + + r = np.add(a, 2, subok=subok) + if subok: + assert_(isinstance(r, ArrayWrap)) + else: + assert_(type(r) == np.ndarray) + + r = np.add(a, 2, None, subok=subok) + if subok: + assert_(isinstance(r, ArrayWrap)) + else: + assert_(type(r) == np.ndarray) + + r = np.add(a, 2, out=None, subok=subok) + if subok: + assert_(isinstance(r, ArrayWrap)) + else: + assert_(type(r) == np.ndarray) + + r = np.add(a, 2, out=(None,), subok=subok) + if subok: + assert_(isinstance(r, ArrayWrap)) + else: + assert_(type(r) == np.ndarray) + + d = ArrayWrap([5.7]) + o1 = np.empty((1,)) + o2 = np.empty((1,), dtype=np.int32) + + r1, r2 = np.frexp(d, o1, subok=subok) + if subok: + assert_(isinstance(r2, ArrayWrap)) + else: + assert_(type(r2) == np.ndarray) + + r1, r2 = np.frexp(d, o1, None, subok=subok) + if subok: + assert_(isinstance(r2, ArrayWrap)) + else: + assert_(type(r2) == np.ndarray) + + r1, r2 = np.frexp(d, None, o2, subok=subok) + if subok: + assert_(isinstance(r1, ArrayWrap)) + else: + assert_(type(r1) == np.ndarray) + + r1, r2 = np.frexp(d, out=(o1, None), subok=subok) + if subok: + assert_(isinstance(r2, ArrayWrap)) + else: + assert_(type(r2) == np.ndarray) + + r1, r2 = np.frexp(d, out=(None, o2), subok=subok) + if subok: + assert_(isinstance(r1, ArrayWrap)) + else: + assert_(type(r1) == np.ndarray) + + with assert_raises(TypeError): + # Out argument must be tuple, since there are multiple outputs. + r1, r2 = np.frexp(d, out=o1, subok=subok) + + @pytest.mark.skipif(not HAS_REFCOUNT, reason="Python lacks refcounts") + def test_out_wrap_no_leak(self): + # Regression test for gh-26545 + class ArrSubclass(np.ndarray): + pass + + arr = np.arange(10).view(ArrSubclass) + + arr *= 1 + assert sys.getrefcount(arr) == 2 + + +class TestComparisons: + import operator + + @pytest.mark.parametrize('dtype', sctypes['uint'] + sctypes['int'] + + sctypes['float'] + [np.bool]) + @pytest.mark.parametrize('py_comp,np_comp', [ + (operator.lt, np.less), + (operator.le, np.less_equal), + (operator.gt, np.greater), + (operator.ge, np.greater_equal), + (operator.eq, np.equal), + (operator.ne, np.not_equal) + ]) + def test_comparison_functions(self, dtype, py_comp, np_comp): + # Initialize input arrays + if dtype == np.bool: + a = np.random.choice(a=[False, True], size=1000) + b = np.random.choice(a=[False, True], size=1000) + scalar = True + else: + a = np.random.randint(low=1, high=10, size=1000).astype(dtype) + b = np.random.randint(low=1, high=10, size=1000).astype(dtype) + scalar = 5 + np_scalar = np.dtype(dtype).type(scalar) + a_lst = a.tolist() + b_lst = b.tolist() + + # (Binary) Comparison (x1=array, x2=array) + comp_b = np_comp(a, b).view(np.uint8) + comp_b_list = [int(py_comp(x, y)) for x, y in zip(a_lst, b_lst)] + + # (Scalar1) Comparison (x1=scalar, x2=array) + comp_s1 = np_comp(np_scalar, b).view(np.uint8) + comp_s1_list = [int(py_comp(scalar, x)) for x in b_lst] + + # (Scalar2) Comparison (x1=array, x2=scalar) + comp_s2 = np_comp(a, np_scalar).view(np.uint8) + comp_s2_list = [int(py_comp(x, scalar)) for x in a_lst] + + # Sequence: Binary, Scalar1 and Scalar2 + assert_(comp_b.tolist() == comp_b_list, + f"Failed comparison ({py_comp.__name__})") + assert_(comp_s1.tolist() == comp_s1_list, + f"Failed comparison ({py_comp.__name__})") + assert_(comp_s2.tolist() == comp_s2_list, + f"Failed comparison ({py_comp.__name__})") + + def test_ignore_object_identity_in_equal(self): + # Check comparing identical objects whose comparison + # is not a simple boolean, e.g., arrays that are compared elementwise. + a = np.array([np.array([1, 2, 3]), None], dtype=object) + assert_raises(ValueError, np.equal, a, a) + + # Check error raised when comparing identical non-comparable objects. + class FunkyType: + def __eq__(self, other): + raise TypeError("I won't compare") + + a = np.array([FunkyType()]) + assert_raises(TypeError, np.equal, a, a) + + # Check identity doesn't override comparison mismatch. + a = np.array([np.nan], dtype=object) + assert_equal(np.equal(a, a), [False]) + + def test_ignore_object_identity_in_not_equal(self): + # Check comparing identical objects whose comparison + # is not a simple boolean, e.g., arrays that are compared elementwise. + a = np.array([np.array([1, 2, 3]), None], dtype=object) + assert_raises(ValueError, np.not_equal, a, a) + + # Check error raised when comparing identical non-comparable objects. + class FunkyType: + def __ne__(self, other): + raise TypeError("I won't compare") + + a = np.array([FunkyType()]) + assert_raises(TypeError, np.not_equal, a, a) + + # Check identity doesn't override comparison mismatch. + a = np.array([np.nan], dtype=object) + assert_equal(np.not_equal(a, a), [True]) + + def test_error_in_equal_reduce(self): + # gh-20929 + # make sure np.equal.reduce raises a TypeError if an array is passed + # without specifying the dtype + a = np.array([0, 0]) + assert_equal(np.equal.reduce(a, dtype=bool), True) + assert_raises(TypeError, np.equal.reduce, a) + + def test_object_dtype(self): + assert np.equal(1, [1], dtype=object).dtype == object + assert np.equal(1, [1], signature=(None, None, "O")).dtype == object + + def test_object_nonbool_dtype_error(self): + # bool output dtype is fine of course: + assert np.equal(1, [1], dtype=bool).dtype == bool + + # but the following are examples do not have a loop: + with pytest.raises(TypeError, match="No loop matching"): + np.equal(1, 1, dtype=np.int64) + + with pytest.raises(TypeError, match="No loop matching"): + np.equal(1, 1, sig=(None, None, "l")) + + @pytest.mark.parametrize("dtypes", ["qQ", "Qq"]) + @pytest.mark.parametrize('py_comp, np_comp', [ + (operator.lt, np.less), + (operator.le, np.less_equal), + (operator.gt, np.greater), + (operator.ge, np.greater_equal), + (operator.eq, np.equal), + (operator.ne, np.not_equal) + ]) + @pytest.mark.parametrize("vals", [(2**60, 2**60+1), (2**60+1, 2**60)]) + def test_large_integer_direct_comparison( + self, dtypes, py_comp, np_comp, vals): + # Note that float(2**60) + 1 == float(2**60). + a1 = np.array([2**60], dtype=dtypes[0]) + a2 = np.array([2**60 + 1], dtype=dtypes[1]) + expected = py_comp(2**60, 2**60+1) + + assert py_comp(a1, a2) == expected + assert np_comp(a1, a2) == expected + # Also check the scalars: + s1 = a1[0] + s2 = a2[0] + assert isinstance(s1, np.integer) + assert isinstance(s2, np.integer) + # The Python operator here is mainly interesting: + assert py_comp(s1, s2) == expected + assert np_comp(s1, s2) == expected + + @pytest.mark.parametrize("dtype", np.typecodes['UnsignedInteger']) + @pytest.mark.parametrize('py_comp_func, np_comp_func', [ + (operator.lt, np.less), + (operator.le, np.less_equal), + (operator.gt, np.greater), + (operator.ge, np.greater_equal), + (operator.eq, np.equal), + (operator.ne, np.not_equal) + ]) + @pytest.mark.parametrize("flip", [True, False]) + def test_unsigned_signed_direct_comparison( + self, dtype, py_comp_func, np_comp_func, flip): + if flip: + py_comp = lambda x, y: py_comp_func(y, x) + np_comp = lambda x, y: np_comp_func(y, x) + else: + py_comp = py_comp_func + np_comp = np_comp_func + + arr = np.array([np.iinfo(dtype).max], dtype=dtype) + expected = py_comp(int(arr[0]), -1) + + assert py_comp(arr, -1) == expected + assert np_comp(arr, -1) == expected + + scalar = arr[0] + assert isinstance(scalar, np.integer) + # The Python operator here is mainly interesting: + assert py_comp(scalar, -1) == expected + assert np_comp(scalar, -1) == expected + + +class TestAdd: + def test_reduce_alignment(self): + # gh-9876 + # make sure arrays with weird strides work with the optimizations in + # pairwise_sum_@TYPE@. On x86, the 'b' field will count as aligned at a + # 4 byte offset, even though its itemsize is 8. + a = np.zeros(2, dtype=[('a', np.int32), ('b', np.float64)]) + a['a'] = -1 + assert_equal(a['b'].sum(), 0) + + +class TestDivision: + def test_division_int(self): + # int division should follow Python + x = np.array([5, 10, 90, 100, -5, -10, -90, -100, -120]) + if 5 / 10 == 0.5: + assert_equal(x / 100, [0.05, 0.1, 0.9, 1, + -0.05, -0.1, -0.9, -1, -1.2]) + else: + assert_equal(x / 100, [0, 0, 0, 1, -1, -1, -1, -1, -2]) + assert_equal(x // 100, [0, 0, 0, 1, -1, -1, -1, -1, -2]) + assert_equal(x % 100, [5, 10, 90, 0, 95, 90, 10, 0, 80]) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize("dtype,ex_val", itertools.product( + sctypes['int'] + sctypes['uint'], ( + ( + # dividend + "np.array(range(fo.max-lsize, fo.max)).astype(dtype)," + # divisors + "np.arange(lsize).astype(dtype)," + # scalar divisors + "range(15)" + ), + ( + # dividend + "np.arange(fo.min, fo.min+lsize).astype(dtype)," + # divisors + "np.arange(lsize//-2, lsize//2).astype(dtype)," + # scalar divisors + "range(fo.min, fo.min + 15)" + ), ( + # dividend + "np.array(range(fo.max-lsize, fo.max)).astype(dtype)," + # divisors + "np.arange(lsize).astype(dtype)," + # scalar divisors + "[1,3,9,13,neg, fo.min+1, fo.min//2, fo.max//3, fo.max//4]" + ) + ) + )) + def test_division_int_boundary(self, dtype, ex_val): + fo = np.iinfo(dtype) + neg = -1 if fo.min < 0 else 1 + # Large enough to test SIMD loops and remainder elements + lsize = 512 + 7 + a, b, divisors = eval(ex_val) + a_lst, b_lst = a.tolist(), b.tolist() + + c_div = lambda n, d: ( + 0 if d == 0 else ( + fo.min if (n and n == fo.min and d == -1) else n//d + ) + ) + with np.errstate(divide='ignore'): + ac = a.copy() + ac //= b + div_ab = a // b + div_lst = [c_div(x, y) for x, y in zip(a_lst, b_lst)] + + msg = "Integer arrays floor division check (//)" + assert all(div_ab == div_lst), msg + msg_eq = "Integer arrays floor division check (//=)" + assert all(ac == div_lst), msg_eq + + for divisor in divisors: + ac = a.copy() + with np.errstate(divide='ignore', over='ignore'): + div_a = a // divisor + ac //= divisor + div_lst = [c_div(i, divisor) for i in a_lst] + + assert all(div_a == div_lst), msg + assert all(ac == div_lst), msg_eq + + with np.errstate(divide='raise', over='raise'): + if 0 in b: + # Verify overflow case + with pytest.raises(FloatingPointError, + match="divide by zero encountered in floor_divide"): + a // b + else: + a // b + if fo.min and fo.min in a: + with pytest.raises(FloatingPointError, + match='overflow encountered in floor_divide'): + a // -1 + elif fo.min: + a // -1 + with pytest.raises(FloatingPointError, + match="divide by zero encountered in floor_divide"): + a // 0 + with pytest.raises(FloatingPointError, + match="divide by zero encountered in floor_divide"): + ac = a.copy() + ac //= 0 + + np.array([], dtype=dtype) // 0 + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize("dtype,ex_val", itertools.product( + sctypes['int'] + sctypes['uint'], ( + "np.array([fo.max, 1, 2, 1, 1, 2, 3], dtype=dtype)", + "np.array([fo.min, 1, -2, 1, 1, 2, -3]).astype(dtype)", + "np.arange(fo.min, fo.min+(100*10), 10, dtype=dtype)", + "np.array(range(fo.max-(100*7), fo.max, 7)).astype(dtype)", + ) + )) + def test_division_int_reduce(self, dtype, ex_val): + fo = np.iinfo(dtype) + a = eval(ex_val) + lst = a.tolist() + c_div = lambda n, d: ( + 0 if d == 0 or (n and n == fo.min and d == -1) else n//d + ) + + with np.errstate(divide='ignore'): + div_a = np.floor_divide.reduce(a) + div_lst = reduce(c_div, lst) + msg = "Reduce floor integer division check" + assert div_a == div_lst, msg + + with np.errstate(divide='raise', over='raise'): + with pytest.raises(FloatingPointError, + match="divide by zero encountered in reduce"): + np.floor_divide.reduce(np.arange(-100, 100).astype(dtype)) + if fo.min: + with pytest.raises(FloatingPointError, + match='overflow encountered in reduce'): + np.floor_divide.reduce( + np.array([fo.min, 1, -1], dtype=dtype) + ) + + @pytest.mark.parametrize( + "dividend,divisor,quotient", + [(np.timedelta64(2,'Y'), np.timedelta64(2,'M'), 12), + (np.timedelta64(2,'Y'), np.timedelta64(-2,'M'), -12), + (np.timedelta64(-2,'Y'), np.timedelta64(2,'M'), -12), + (np.timedelta64(-2,'Y'), np.timedelta64(-2,'M'), 12), + (np.timedelta64(2,'M'), np.timedelta64(-2,'Y'), -1), + (np.timedelta64(2,'Y'), np.timedelta64(0,'M'), 0), + (np.timedelta64(2,'Y'), 2, np.timedelta64(1,'Y')), + (np.timedelta64(2,'Y'), -2, np.timedelta64(-1,'Y')), + (np.timedelta64(-2,'Y'), 2, np.timedelta64(-1,'Y')), + (np.timedelta64(-2,'Y'), -2, np.timedelta64(1,'Y')), + (np.timedelta64(-2,'Y'), -2, np.timedelta64(1,'Y')), + (np.timedelta64(-2,'Y'), -3, np.timedelta64(0,'Y')), + (np.timedelta64(-2,'Y'), 0, np.timedelta64('Nat','Y')), + ]) + def test_division_int_timedelta(self, dividend, divisor, quotient): + # If either divisor is 0 or quotient is Nat, check for division by 0 + if divisor and (isinstance(quotient, int) or not np.isnat(quotient)): + msg = "Timedelta floor division check" + assert dividend // divisor == quotient, msg + + # Test for arrays as well + msg = "Timedelta arrays floor division check" + dividend_array = np.array([dividend]*5) + quotient_array = np.array([quotient]*5) + assert all(dividend_array // divisor == quotient_array), msg + else: + if IS_WASM: + pytest.skip("fp errors don't work in wasm") + with np.errstate(divide='raise', invalid='raise'): + with pytest.raises(FloatingPointError): + dividend // divisor + + def test_division_complex(self): + # check that implementation is correct + msg = "Complex division implementation check" + x = np.array([1. + 1.*1j, 1. + .5*1j, 1. + 2.*1j], dtype=np.complex128) + assert_almost_equal(x**2/x, x, err_msg=msg) + # check overflow, underflow + msg = "Complex division overflow/underflow check" + x = np.array([1.e+110, 1.e-110], dtype=np.complex128) + y = x**2/x + assert_almost_equal(y/x, [1, 1], err_msg=msg) + + def test_zero_division_complex(self): + with np.errstate(invalid="ignore", divide="ignore"): + x = np.array([0.0], dtype=np.complex128) + y = 1.0/x + assert_(np.isinf(y)[0]) + y = complex(np.inf, np.nan)/x + assert_(np.isinf(y)[0]) + y = complex(np.nan, np.inf)/x + assert_(np.isinf(y)[0]) + y = complex(np.inf, np.inf)/x + assert_(np.isinf(y)[0]) + y = 0.0/x + assert_(np.isnan(y)[0]) + + def test_floor_division_complex(self): + # check that floor division, divmod and remainder raises type errors + x = np.array([.9 + 1j, -.1 + 1j, .9 + .5*1j, .9 + 2.*1j], dtype=np.complex128) + with pytest.raises(TypeError): + x // 7 + with pytest.raises(TypeError): + np.divmod(x, 7) + with pytest.raises(TypeError): + np.remainder(x, 7) + + def test_floor_division_signed_zero(self): + # Check that the sign bit is correctly set when dividing positive and + # negative zero by one. + x = np.zeros(10) + assert_equal(np.signbit(x//1), 0) + assert_equal(np.signbit((-x)//1), 1) + + @pytest.mark.skipif(hasattr(np.__config__, "blas_ssl2_info"), + reason="gh-22982") + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize('dtype', np.typecodes['Float']) + def test_floor_division_errors(self, dtype): + fnan = np.array(np.nan, dtype=dtype) + fone = np.array(1.0, dtype=dtype) + fzer = np.array(0.0, dtype=dtype) + finf = np.array(np.inf, dtype=dtype) + # divide by zero error check + with np.errstate(divide='raise', invalid='ignore'): + assert_raises(FloatingPointError, np.floor_divide, fone, fzer) + with np.errstate(divide='ignore', invalid='raise'): + np.floor_divide(fone, fzer) + + # The following already contain a NaN and should not warn + with np.errstate(all='raise'): + np.floor_divide(fnan, fone) + np.floor_divide(fone, fnan) + np.floor_divide(fnan, fzer) + np.floor_divide(fzer, fnan) + + @pytest.mark.parametrize('dtype', np.typecodes['Float']) + def test_floor_division_corner_cases(self, dtype): + # test corner cases like 1.0//0.0 for errors and return vals + x = np.zeros(10, dtype=dtype) + y = np.ones(10, dtype=dtype) + fnan = np.array(np.nan, dtype=dtype) + fone = np.array(1.0, dtype=dtype) + fzer = np.array(0.0, dtype=dtype) + finf = np.array(np.inf, dtype=dtype) + with suppress_warnings() as sup: + sup.filter(RuntimeWarning, "invalid value encountered in floor_divide") + div = np.floor_divide(fnan, fone) + assert(np.isnan(div)), "div: %s" % div + div = np.floor_divide(fone, fnan) + assert(np.isnan(div)), "div: %s" % div + div = np.floor_divide(fnan, fzer) + assert(np.isnan(div)), "div: %s" % div + # verify 1.0//0.0 computations return inf + with np.errstate(divide='ignore'): + z = np.floor_divide(y, x) + assert_(np.isinf(z).all()) + +def floor_divide_and_remainder(x, y): + return (np.floor_divide(x, y), np.remainder(x, y)) + + +def _signs(dt): + if dt in np.typecodes['UnsignedInteger']: + return (+1,) + else: + return (+1, -1) + + +class TestRemainder: + + def test_remainder_basic(self): + dt = np.typecodes['AllInteger'] + np.typecodes['Float'] + for op in [floor_divide_and_remainder, np.divmod]: + for dt1, dt2 in itertools.product(dt, dt): + for sg1, sg2 in itertools.product(_signs(dt1), _signs(dt2)): + fmt = 'op: %s, dt1: %s, dt2: %s, sg1: %s, sg2: %s' + msg = fmt % (op.__name__, dt1, dt2, sg1, sg2) + a = np.array(sg1*71, dtype=dt1) + b = np.array(sg2*19, dtype=dt2) + div, rem = op(a, b) + assert_equal(div*b + rem, a, err_msg=msg) + if sg2 == -1: + assert_(b < rem <= 0, msg) + else: + assert_(b > rem >= 0, msg) + + def test_float_remainder_exact(self): + # test that float results are exact for small integers. This also + # holds for the same integers scaled by powers of two. + nlst = list(range(-127, 0)) + plst = list(range(1, 128)) + dividend = nlst + [0] + plst + divisor = nlst + plst + arg = list(itertools.product(dividend, divisor)) + tgt = list(divmod(*t) for t in arg) + + a, b = np.array(arg, dtype=int).T + # convert exact integer results from Python to float so that + # signed zero can be used, it is checked. + tgtdiv, tgtrem = np.array(tgt, dtype=float).T + tgtdiv = np.where((tgtdiv == 0.0) & ((b < 0) ^ (a < 0)), -0.0, tgtdiv) + tgtrem = np.where((tgtrem == 0.0) & (b < 0), -0.0, tgtrem) + + for op in [floor_divide_and_remainder, np.divmod]: + for dt in np.typecodes['Float']: + msg = 'op: %s, dtype: %s' % (op.__name__, dt) + fa = a.astype(dt) + fb = b.astype(dt) + div, rem = op(fa, fb) + assert_equal(div, tgtdiv, err_msg=msg) + assert_equal(rem, tgtrem, err_msg=msg) + + def test_float_remainder_roundoff(self): + # gh-6127 + dt = np.typecodes['Float'] + for op in [floor_divide_and_remainder, np.divmod]: + for dt1, dt2 in itertools.product(dt, dt): + for sg1, sg2 in itertools.product((+1, -1), (+1, -1)): + fmt = 'op: %s, dt1: %s, dt2: %s, sg1: %s, sg2: %s' + msg = fmt % (op.__name__, dt1, dt2, sg1, sg2) + a = np.array(sg1*78*6e-8, dtype=dt1) + b = np.array(sg2*6e-8, dtype=dt2) + div, rem = op(a, b) + # Equal assertion should hold when fmod is used + assert_equal(div*b + rem, a, err_msg=msg) + if sg2 == -1: + assert_(b < rem <= 0, msg) + else: + assert_(b > rem >= 0, msg) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.xfail(sys.platform.startswith("darwin"), + reason="MacOS seems to not give the correct 'invalid' warning for " + "`fmod`. Hopefully, others always do.") + @pytest.mark.parametrize('dtype', np.typecodes['Float']) + def test_float_divmod_errors(self, dtype): + # Check valid errors raised for divmod and remainder + fzero = np.array(0.0, dtype=dtype) + fone = np.array(1.0, dtype=dtype) + finf = np.array(np.inf, dtype=dtype) + fnan = np.array(np.nan, dtype=dtype) + # since divmod is combination of both remainder and divide + # ops it will set both dividebyzero and invalid flags + with np.errstate(divide='raise', invalid='ignore'): + assert_raises(FloatingPointError, np.divmod, fone, fzero) + with np.errstate(divide='ignore', invalid='raise'): + assert_raises(FloatingPointError, np.divmod, fone, fzero) + with np.errstate(invalid='raise'): + assert_raises(FloatingPointError, np.divmod, fzero, fzero) + with np.errstate(invalid='raise'): + assert_raises(FloatingPointError, np.divmod, finf, finf) + with np.errstate(divide='ignore', invalid='raise'): + assert_raises(FloatingPointError, np.divmod, finf, fzero) + with np.errstate(divide='raise', invalid='ignore'): + # inf / 0 does not set any flags, only the modulo creates a NaN + np.divmod(finf, fzero) + + @pytest.mark.skipif(hasattr(np.__config__, "blas_ssl2_info"), + reason="gh-22982") + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.xfail(sys.platform.startswith("darwin"), + reason="MacOS seems to not give the correct 'invalid' warning for " + "`fmod`. Hopefully, others always do.") + @pytest.mark.parametrize('dtype', np.typecodes['Float']) + @pytest.mark.parametrize('fn', [np.fmod, np.remainder]) + def test_float_remainder_errors(self, dtype, fn): + fzero = np.array(0.0, dtype=dtype) + fone = np.array(1.0, dtype=dtype) + finf = np.array(np.inf, dtype=dtype) + fnan = np.array(np.nan, dtype=dtype) + + # The following already contain a NaN and should not warn. + with np.errstate(all='raise'): + with pytest.raises(FloatingPointError, + match="invalid value"): + fn(fone, fzero) + fn(fnan, fzero) + fn(fzero, fnan) + fn(fone, fnan) + fn(fnan, fone) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_float_remainder_overflow(self): + a = np.finfo(np.float64).tiny + with np.errstate(over='ignore', invalid='ignore'): + div, mod = np.divmod(4, a) + np.isinf(div) + assert_(mod == 0) + with np.errstate(over='raise', invalid='ignore'): + assert_raises(FloatingPointError, np.divmod, 4, a) + with np.errstate(invalid='raise', over='ignore'): + assert_raises(FloatingPointError, np.divmod, 4, a) + + def test_float_divmod_corner_cases(self): + # check nan cases + for dt in np.typecodes['Float']: + fnan = np.array(np.nan, dtype=dt) + fone = np.array(1.0, dtype=dt) + fzer = np.array(0.0, dtype=dt) + finf = np.array(np.inf, dtype=dt) + with suppress_warnings() as sup: + sup.filter(RuntimeWarning, "invalid value encountered in divmod") + sup.filter(RuntimeWarning, "divide by zero encountered in divmod") + div, rem = np.divmod(fone, fzer) + assert(np.isinf(div)), 'dt: %s, div: %s' % (dt, rem) + assert(np.isnan(rem)), 'dt: %s, rem: %s' % (dt, rem) + div, rem = np.divmod(fzer, fzer) + assert(np.isnan(rem)), 'dt: %s, rem: %s' % (dt, rem) + assert_(np.isnan(div)), 'dt: %s, rem: %s' % (dt, rem) + div, rem = np.divmod(finf, finf) + assert(np.isnan(div)), 'dt: %s, rem: %s' % (dt, rem) + assert(np.isnan(rem)), 'dt: %s, rem: %s' % (dt, rem) + div, rem = np.divmod(finf, fzer) + assert(np.isinf(div)), 'dt: %s, rem: %s' % (dt, rem) + assert(np.isnan(rem)), 'dt: %s, rem: %s' % (dt, rem) + div, rem = np.divmod(fnan, fone) + assert(np.isnan(rem)), "dt: %s, rem: %s" % (dt, rem) + assert(np.isnan(div)), "dt: %s, rem: %s" % (dt, rem) + div, rem = np.divmod(fone, fnan) + assert(np.isnan(rem)), "dt: %s, rem: %s" % (dt, rem) + assert(np.isnan(div)), "dt: %s, rem: %s" % (dt, rem) + div, rem = np.divmod(fnan, fzer) + assert(np.isnan(rem)), "dt: %s, rem: %s" % (dt, rem) + assert(np.isnan(div)), "dt: %s, rem: %s" % (dt, rem) + + def test_float_remainder_corner_cases(self): + # Check remainder magnitude. + for dt in np.typecodes['Float']: + fone = np.array(1.0, dtype=dt) + fzer = np.array(0.0, dtype=dt) + fnan = np.array(np.nan, dtype=dt) + b = np.array(1.0, dtype=dt) + a = np.nextafter(np.array(0.0, dtype=dt), -b) + rem = np.remainder(a, b) + assert_(rem <= b, 'dt: %s' % dt) + rem = np.remainder(-a, -b) + assert_(rem >= -b, 'dt: %s' % dt) + + # Check nans, inf + with suppress_warnings() as sup: + sup.filter(RuntimeWarning, "invalid value encountered in remainder") + sup.filter(RuntimeWarning, "invalid value encountered in fmod") + for dt in np.typecodes['Float']: + fone = np.array(1.0, dtype=dt) + fzer = np.array(0.0, dtype=dt) + finf = np.array(np.inf, dtype=dt) + fnan = np.array(np.nan, dtype=dt) + rem = np.remainder(fone, fzer) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + # MSVC 2008 returns NaN here, so disable the check. + #rem = np.remainder(fone, finf) + #assert_(rem == fone, 'dt: %s, rem: %s' % (dt, rem)) + rem = np.remainder(finf, fone) + fmod = np.fmod(finf, fone) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, fmod)) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + rem = np.remainder(finf, finf) + fmod = np.fmod(finf, fone) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, fmod)) + rem = np.remainder(finf, fzer) + fmod = np.fmod(finf, fzer) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, fmod)) + rem = np.remainder(fone, fnan) + fmod = np.fmod(fone, fnan) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, fmod)) + rem = np.remainder(fnan, fzer) + fmod = np.fmod(fnan, fzer) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, rem)) + rem = np.remainder(fnan, fone) + fmod = np.fmod(fnan, fone) + assert_(np.isnan(rem), 'dt: %s, rem: %s' % (dt, rem)) + assert_(np.isnan(fmod), 'dt: %s, fmod: %s' % (dt, rem)) + + +class TestDivisionIntegerOverflowsAndDivideByZero: + result_type = namedtuple('result_type', + ['nocast', 'casted']) + helper_lambdas = { + 'zero': lambda dtype: 0, + 'min': lambda dtype: np.iinfo(dtype).min, + 'neg_min': lambda dtype: -np.iinfo(dtype).min, + 'min-zero': lambda dtype: (np.iinfo(dtype).min, 0), + 'neg_min-zero': lambda dtype: (-np.iinfo(dtype).min, 0), + } + overflow_results = { + np.remainder: result_type( + helper_lambdas['zero'], helper_lambdas['zero']), + np.fmod: result_type( + helper_lambdas['zero'], helper_lambdas['zero']), + operator.mod: result_type( + helper_lambdas['zero'], helper_lambdas['zero']), + operator.floordiv: result_type( + helper_lambdas['min'], helper_lambdas['neg_min']), + np.floor_divide: result_type( + helper_lambdas['min'], helper_lambdas['neg_min']), + np.divmod: result_type( + helper_lambdas['min-zero'], helper_lambdas['neg_min-zero']) + } + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize("dtype", np.typecodes["Integer"]) + def test_signed_division_overflow(self, dtype): + to_check = interesting_binop_operands(np.iinfo(dtype).min, -1, dtype) + for op1, op2, extractor, operand_identifier in to_check: + with pytest.warns(RuntimeWarning, match="overflow encountered"): + res = op1 // op2 + + assert res.dtype == op1.dtype + assert extractor(res) == np.iinfo(op1.dtype).min + + # Remainder is well defined though, and does not warn: + res = op1 % op2 + assert res.dtype == op1.dtype + assert extractor(res) == 0 + # Check fmod as well: + res = np.fmod(op1, op2) + assert extractor(res) == 0 + + # Divmod warns for the division part: + with pytest.warns(RuntimeWarning, match="overflow encountered"): + res1, res2 = np.divmod(op1, op2) + + assert res1.dtype == res2.dtype == op1.dtype + assert extractor(res1) == np.iinfo(op1.dtype).min + assert extractor(res2) == 0 + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize("dtype", np.typecodes["AllInteger"]) + def test_divide_by_zero(self, dtype): + # Note that the return value cannot be well defined here, but NumPy + # currently uses 0 consistently. This could be changed. + to_check = interesting_binop_operands(1, 0, dtype) + for op1, op2, extractor, operand_identifier in to_check: + with pytest.warns(RuntimeWarning, match="divide by zero"): + res = op1 // op2 + + assert res.dtype == op1.dtype + assert extractor(res) == 0 + + with pytest.warns(RuntimeWarning, match="divide by zero"): + res1, res2 = np.divmod(op1, op2) + + assert res1.dtype == res2.dtype == op1.dtype + assert extractor(res1) == 0 + assert extractor(res2) == 0 + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize("dividend_dtype", sctypes['int']) + @pytest.mark.parametrize("divisor_dtype", sctypes['int']) + @pytest.mark.parametrize("operation", + [np.remainder, np.fmod, np.divmod, np.floor_divide, + operator.mod, operator.floordiv]) + @np.errstate(divide='warn', over='warn') + def test_overflows(self, dividend_dtype, divisor_dtype, operation): + # SIMD tries to perform the operation on as many elements as possible + # that is a multiple of the register's size. We resort to the + # default implementation for the leftover elements. + # We try to cover all paths here. + arrays = [np.array([np.iinfo(dividend_dtype).min]*i, + dtype=dividend_dtype) for i in range(1, 129)] + divisor = np.array([-1], dtype=divisor_dtype) + # If dividend is a larger type than the divisor (`else` case), + # then, result will be a larger type than dividend and will not + # result in an overflow for `divmod` and `floor_divide`. + if np.dtype(dividend_dtype).itemsize >= np.dtype( + divisor_dtype).itemsize and operation in ( + np.divmod, np.floor_divide, operator.floordiv): + with pytest.warns( + RuntimeWarning, + match="overflow encountered in"): + result = operation( + dividend_dtype(np.iinfo(dividend_dtype).min), + divisor_dtype(-1) + ) + assert result == self.overflow_results[operation].nocast( + dividend_dtype) + + # Arrays + for a in arrays: + # In case of divmod, we need to flatten the result + # column first as we get a column vector of quotient and + # remainder and a normal flatten of the expected result. + with pytest.warns( + RuntimeWarning, + match="overflow encountered in"): + result = np.array(operation(a, divisor)).flatten('f') + expected_array = np.array( + [self.overflow_results[operation].nocast( + dividend_dtype)]*len(a)).flatten() + assert_array_equal(result, expected_array) + else: + # Scalars + result = operation( + dividend_dtype(np.iinfo(dividend_dtype).min), + divisor_dtype(-1) + ) + assert result == self.overflow_results[operation].casted( + dividend_dtype) + + # Arrays + for a in arrays: + # See above comment on flatten + result = np.array(operation(a, divisor)).flatten('f') + expected_array = np.array( + [self.overflow_results[operation].casted( + dividend_dtype)]*len(a)).flatten() + assert_array_equal(result, expected_array) + + +class TestCbrt: + def test_cbrt_scalar(self): + assert_almost_equal((np.cbrt(np.float32(-2.5)**3)), -2.5) + + def test_cbrt(self): + x = np.array([1., 2., -3., np.inf, -np.inf]) + assert_almost_equal(np.cbrt(x**3), x) + + assert_(np.isnan(np.cbrt(np.nan))) + assert_equal(np.cbrt(np.inf), np.inf) + assert_equal(np.cbrt(-np.inf), -np.inf) + + +class TestPower: + def test_power_float(self): + x = np.array([1., 2., 3.]) + assert_equal(x**0, [1., 1., 1.]) + assert_equal(x**1, x) + assert_equal(x**2, [1., 4., 9.]) + y = x.copy() + y **= 2 + assert_equal(y, [1., 4., 9.]) + assert_almost_equal(x**(-1), [1., 0.5, 1./3]) + assert_almost_equal(x**(0.5), [1., ncu.sqrt(2), ncu.sqrt(3)]) + + for out, inp, msg in _gen_alignment_data(dtype=np.float32, + type='unary', + max_size=11): + exp = [ncu.sqrt(i) for i in inp] + assert_almost_equal(inp**(0.5), exp, err_msg=msg) + np.sqrt(inp, out=out) + assert_equal(out, exp, err_msg=msg) + + for out, inp, msg in _gen_alignment_data(dtype=np.float64, + type='unary', + max_size=7): + exp = [ncu.sqrt(i) for i in inp] + assert_almost_equal(inp**(0.5), exp, err_msg=msg) + np.sqrt(inp, out=out) + assert_equal(out, exp, err_msg=msg) + + def test_power_complex(self): + x = np.array([1+2j, 2+3j, 3+4j]) + assert_equal(x**0, [1., 1., 1.]) + assert_equal(x**1, x) + assert_almost_equal(x**2, [-3+4j, -5+12j, -7+24j]) + assert_almost_equal(x**3, [(1+2j)**3, (2+3j)**3, (3+4j)**3]) + assert_almost_equal(x**4, [(1+2j)**4, (2+3j)**4, (3+4j)**4]) + assert_almost_equal(x**(-1), [1/(1+2j), 1/(2+3j), 1/(3+4j)]) + assert_almost_equal(x**(-2), [1/(1+2j)**2, 1/(2+3j)**2, 1/(3+4j)**2]) + assert_almost_equal(x**(-3), [(-11+2j)/125, (-46-9j)/2197, + (-117-44j)/15625]) + assert_almost_equal(x**(0.5), [ncu.sqrt(1+2j), ncu.sqrt(2+3j), + ncu.sqrt(3+4j)]) + norm = 1./((x**14)[0]) + assert_almost_equal(x**14 * norm, + [i * norm for i in [-76443+16124j, 23161315+58317492j, + 5583548873 + 2465133864j]]) + + # Ticket #836 + def assert_complex_equal(x, y): + assert_array_equal(x.real, y.real) + assert_array_equal(x.imag, y.imag) + + for z in [complex(0, np.inf), complex(1, np.inf)]: + z = np.array([z], dtype=np.complex128) + with np.errstate(invalid="ignore"): + assert_complex_equal(z**1, z) + assert_complex_equal(z**2, z*z) + assert_complex_equal(z**3, z*z*z) + + def test_power_zero(self): + # ticket #1271 + zero = np.array([0j]) + one = np.array([1+0j]) + cnan = np.array([complex(np.nan, np.nan)]) + # FIXME cinf not tested. + #cinf = np.array([complex(np.inf, 0)]) + + def assert_complex_equal(x, y): + x, y = np.asarray(x), np.asarray(y) + assert_array_equal(x.real, y.real) + assert_array_equal(x.imag, y.imag) + + # positive powers + for p in [0.33, 0.5, 1, 1.5, 2, 3, 4, 5, 6.6]: + assert_complex_equal(np.power(zero, p), zero) + + # zero power + assert_complex_equal(np.power(zero, 0), one) + with np.errstate(invalid="ignore"): + assert_complex_equal(np.power(zero, 0+1j), cnan) + + # negative power + for p in [0.33, 0.5, 1, 1.5, 2, 3, 4, 5, 6.6]: + assert_complex_equal(np.power(zero, -p), cnan) + assert_complex_equal(np.power(zero, -1+0.2j), cnan) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_zero_power_nonzero(self): + # Testing 0^{Non-zero} issue 18378 + zero = np.array([0.0+0.0j]) + cnan = np.array([complex(np.nan, np.nan)]) + + def assert_complex_equal(x, y): + assert_array_equal(x.real, y.real) + assert_array_equal(x.imag, y.imag) + + #Complex powers with positive real part will not generate a warning + assert_complex_equal(np.power(zero, 1+4j), zero) + assert_complex_equal(np.power(zero, 2-3j), zero) + #Testing zero values when real part is greater than zero + assert_complex_equal(np.power(zero, 1+1j), zero) + assert_complex_equal(np.power(zero, 1+0j), zero) + assert_complex_equal(np.power(zero, 1-1j), zero) + #Complex powers will negative real part or 0 (provided imaginary + # part is not zero) will generate a NAN and hence a RUNTIME warning + with pytest.warns(expected_warning=RuntimeWarning) as r: + assert_complex_equal(np.power(zero, -1+1j), cnan) + assert_complex_equal(np.power(zero, -2-3j), cnan) + assert_complex_equal(np.power(zero, -7+0j), cnan) + assert_complex_equal(np.power(zero, 0+1j), cnan) + assert_complex_equal(np.power(zero, 0-1j), cnan) + assert len(r) == 5 + + def test_fast_power(self): + x = np.array([1, 2, 3], np.int16) + res = x**2.0 + assert_((x**2.00001).dtype is res.dtype) + assert_array_equal(res, [1, 4, 9]) + # check the inplace operation on the casted copy doesn't mess with x + assert_(not np.may_share_memory(res, x)) + assert_array_equal(x, [1, 2, 3]) + + # Check that the fast path ignores 1-element not 0-d arrays + res = x ** np.array([[[2]]]) + assert_equal(res.shape, (1, 1, 3)) + + def test_integer_power(self): + a = np.array([15, 15], 'i8') + b = np.power(a, a) + assert_equal(b, [437893890380859375, 437893890380859375]) + + def test_integer_power_with_integer_zero_exponent(self): + dtypes = np.typecodes['Integer'] + for dt in dtypes: + arr = np.arange(-10, 10, dtype=dt) + assert_equal(np.power(arr, 0), np.ones_like(arr)) + + dtypes = np.typecodes['UnsignedInteger'] + for dt in dtypes: + arr = np.arange(10, dtype=dt) + assert_equal(np.power(arr, 0), np.ones_like(arr)) + + def test_integer_power_of_1(self): + dtypes = np.typecodes['AllInteger'] + for dt in dtypes: + arr = np.arange(10, dtype=dt) + assert_equal(np.power(1, arr), np.ones_like(arr)) + + def test_integer_power_of_zero(self): + dtypes = np.typecodes['AllInteger'] + for dt in dtypes: + arr = np.arange(1, 10, dtype=dt) + assert_equal(np.power(0, arr), np.zeros_like(arr)) + + def test_integer_to_negative_power(self): + dtypes = np.typecodes['Integer'] + for dt in dtypes: + a = np.array([0, 1, 2, 3], dtype=dt) + b = np.array([0, 1, 2, -3], dtype=dt) + one = np.array(1, dtype=dt) + minusone = np.array(-1, dtype=dt) + assert_raises(ValueError, np.power, a, b) + assert_raises(ValueError, np.power, a, minusone) + assert_raises(ValueError, np.power, one, b) + assert_raises(ValueError, np.power, one, minusone) + + def test_float_to_inf_power(self): + for dt in [np.float32, np.float64]: + a = np.array([1, 1, 2, 2, -2, -2, np.inf, -np.inf], dt) + b = np.array([np.inf, -np.inf, np.inf, -np.inf, + np.inf, -np.inf, np.inf, -np.inf], dt) + r = np.array([1, 1, np.inf, 0, np.inf, 0, np.inf, 0], dt) + assert_equal(np.power(a, b), r) + + def test_power_fast_paths(self): + # gh-26055 + for dt in [np.float32, np.float64]: + a = np.array([0, 1.1, 2, 12e12, -10., np.inf, -np.inf], dt) + expected = np.array([0.0, 1.21, 4., 1.44e+26, 100, np.inf, np.inf]) + result = np.power(a, 2.) + assert_array_max_ulp(result, expected.astype(dt), maxulp=1) + + a = np.array([0, 1.1, 2, 12e12], dt) + expected = np.sqrt(a).astype(dt) + result = np.power(a, 0.5) + assert_array_max_ulp(result, expected, maxulp=1) + + +class TestFloat_power: + def test_type_conversion(self): + arg_type = '?bhilBHILefdgFDG' + res_type = 'ddddddddddddgDDG' + for dtin, dtout in zip(arg_type, res_type): + msg = "dtin: %s, dtout: %s" % (dtin, dtout) + arg = np.ones(1, dtype=dtin) + res = np.float_power(arg, arg) + assert_(res.dtype.name == np.dtype(dtout).name, msg) + + +class TestLog2: + @pytest.mark.parametrize('dt', ['f', 'd', 'g']) + def test_log2_values(self, dt): + x = [1, 2, 4, 8, 16, 32, 64, 128, 256, 512, 1024] + y = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10] + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_almost_equal(np.log2(xf), yf) + + @pytest.mark.parametrize("i", range(1, 65)) + def test_log2_ints(self, i): + # a good log2 implementation should provide this, + # might fail on OS with bad libm + v = np.log2(2.**i) + assert_equal(v, float(i), err_msg='at exponent %d' % i) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_log2_special(self): + assert_equal(np.log2(1.), 0.) + assert_equal(np.log2(np.inf), np.inf) + assert_(np.isnan(np.log2(np.nan))) + + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + assert_(np.isnan(np.log2(-1.))) + assert_(np.isnan(np.log2(-np.inf))) + assert_equal(np.log2(0.), -np.inf) + assert_(w[0].category is RuntimeWarning) + assert_(w[1].category is RuntimeWarning) + assert_(w[2].category is RuntimeWarning) + + +class TestExp2: + def test_exp2_values(self): + x = [1, 2, 4, 8, 16, 32, 64, 128, 256, 512, 1024] + y = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10] + for dt in ['f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_almost_equal(np.exp2(yf), xf) + + +class TestLogAddExp2(_FilterInvalids): + # Need test for intermediate precisions + def test_logaddexp2_values(self): + x = [1, 2, 3, 4, 5] + y = [5, 4, 3, 2, 1] + z = [6, 6, 6, 6, 6] + for dt, dec_ in zip(['f', 'd', 'g'], [6, 15, 15]): + xf = np.log2(np.array(x, dtype=dt)) + yf = np.log2(np.array(y, dtype=dt)) + zf = np.log2(np.array(z, dtype=dt)) + assert_almost_equal(np.logaddexp2(xf, yf), zf, decimal=dec_) + + def test_logaddexp2_range(self): + x = [1000000, -1000000, 1000200, -1000200] + y = [1000200, -1000200, 1000000, -1000000] + z = [1000200, -1000000, 1000200, -1000000] + for dt in ['f', 'd', 'g']: + logxf = np.array(x, dtype=dt) + logyf = np.array(y, dtype=dt) + logzf = np.array(z, dtype=dt) + assert_almost_equal(np.logaddexp2(logxf, logyf), logzf) + + def test_inf(self): + inf = np.inf + x = [inf, -inf, inf, -inf, inf, 1, -inf, 1] + y = [inf, inf, -inf, -inf, 1, inf, 1, -inf] + z = [inf, inf, inf, -inf, inf, inf, 1, 1] + with np.errstate(invalid='raise'): + for dt in ['f', 'd', 'g']: + logxf = np.array(x, dtype=dt) + logyf = np.array(y, dtype=dt) + logzf = np.array(z, dtype=dt) + assert_equal(np.logaddexp2(logxf, logyf), logzf) + + def test_nan(self): + assert_(np.isnan(np.logaddexp2(np.nan, np.inf))) + assert_(np.isnan(np.logaddexp2(np.inf, np.nan))) + assert_(np.isnan(np.logaddexp2(np.nan, 0))) + assert_(np.isnan(np.logaddexp2(0, np.nan))) + assert_(np.isnan(np.logaddexp2(np.nan, np.nan))) + + def test_reduce(self): + assert_equal(np.logaddexp2.identity, -np.inf) + assert_equal(np.logaddexp2.reduce([]), -np.inf) + assert_equal(np.logaddexp2.reduce([-np.inf]), -np.inf) + assert_equal(np.logaddexp2.reduce([-np.inf, 0]), 0) + + +class TestLog: + def test_log_values(self): + x = [1, 2, 4, 8, 16, 32, 64, 128, 256, 512, 1024] + y = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10] + for dt in ['f', 'd', 'g']: + log2_ = 0.69314718055994530943 + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt)*log2_ + assert_almost_equal(np.log(xf), yf) + + # test aliasing(issue #17761) + x = np.array([2, 0.937500, 3, 0.947500, 1.054697]) + xf = np.log(x) + assert_almost_equal(np.log(x, out=x), xf) + + def test_log_values_maxofdtype(self): + # test log() of max for dtype does not raise + dtypes = [np.float32, np.float64] + # This is failing at least on linux aarch64 (see gh-25460), and on most + # other non x86-64 platforms checking `longdouble` isn't too useful as + # it's an alias for float64. + if platform.machine() == 'x86_64': + dtypes += [np.longdouble] + + for dt in dtypes: + with np.errstate(all='raise'): + x = np.finfo(dt).max + np.log(x) + + def test_log_strides(self): + np.random.seed(42) + strides = np.array([-4,-3,-2,-1,1,2,3,4]) + sizes = np.arange(2,100) + for ii in sizes: + x_f64 = np.float64(np.random.uniform(low=0.01, high=100.0,size=ii)) + x_special = x_f64.copy() + x_special[3:-1:4] = 1.0 + y_true = np.log(x_f64) + y_special = np.log(x_special) + for jj in strides: + assert_array_almost_equal_nulp(np.log(x_f64[::jj]), y_true[::jj], nulp=2) + assert_array_almost_equal_nulp(np.log(x_special[::jj]), y_special[::jj], nulp=2) + + # Reference values were computed with mpmath, with mp.dps = 200. + @pytest.mark.parametrize( + 'z, wref', + [(1 + 1e-12j, 5e-25 + 1e-12j), + (1.000000000000001 + 3e-08j, + 1.5602230246251546e-15 + 2.999999999999996e-08j), + (0.9999995000000417 + 0.0009999998333333417j, + 7.831475869017683e-18 + 0.001j), + (0.9999999999999996 + 2.999999999999999e-08j, + 5.9107901499372034e-18 + 3e-08j), + (0.99995000042 - 0.009999833j, + -7.015159763822903e-15 - 0.009999999665816696j)], + ) + def test_log_precision_float64(self, z, wref): + w = np.log(z) + assert_allclose(w, wref, rtol=1e-15) + + # Reference values were computed with mpmath, with mp.dps = 200. + @pytest.mark.parametrize( + 'z, wref', + [(np.complex64(1.0 + 3e-6j), np.complex64(4.5e-12+3e-06j)), + (np.complex64(1.0 - 2e-5j), np.complex64(1.9999999e-10 - 2e-5j)), + (np.complex64(0.9999999 + 1e-06j), + np.complex64(-1.192088e-07+1.0000001e-06j))], + ) + def test_log_precision_float32(self, z, wref): + w = np.log(z) + assert_allclose(w, wref, rtol=1e-6) + + +class TestExp: + def test_exp_values(self): + x = [1, 2, 4, 8, 16, 32, 64, 128, 256, 512, 1024] + y = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10] + for dt in ['f', 'd', 'g']: + log2_ = 0.69314718055994530943 + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt)*log2_ + assert_almost_equal(np.exp(yf), xf) + + def test_exp_strides(self): + np.random.seed(42) + strides = np.array([-4,-3,-2,-1,1,2,3,4]) + sizes = np.arange(2,100) + for ii in sizes: + x_f64 = np.float64(np.random.uniform(low=0.01, high=709.1,size=ii)) + y_true = np.exp(x_f64) + for jj in strides: + assert_array_almost_equal_nulp(np.exp(x_f64[::jj]), y_true[::jj], nulp=2) + +class TestSpecialFloats: + def test_exp_values(self): + with np.errstate(under='raise', over='raise'): + x = [np.nan, np.nan, np.inf, 0.] + y = [np.nan, -np.nan, np.inf, -np.inf] + for dt in ['e', 'f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_equal(np.exp(yf), xf) + + # See: https://github.com/numpy/numpy/issues/19192 + @pytest.mark.xfail( + _glibc_older_than("2.17"), + reason="Older glibc versions may not raise appropriate FP exceptions" + ) + def test_exp_exceptions(self): + with np.errstate(over='raise'): + assert_raises(FloatingPointError, np.exp, np.float16(11.0899)) + assert_raises(FloatingPointError, np.exp, np.float32(100.)) + assert_raises(FloatingPointError, np.exp, np.float32(1E19)) + assert_raises(FloatingPointError, np.exp, np.float64(800.)) + assert_raises(FloatingPointError, np.exp, np.float64(1E19)) + + with np.errstate(under='raise'): + assert_raises(FloatingPointError, np.exp, np.float16(-17.5)) + assert_raises(FloatingPointError, np.exp, np.float32(-1000.)) + assert_raises(FloatingPointError, np.exp, np.float32(-1E19)) + assert_raises(FloatingPointError, np.exp, np.float64(-1000.)) + assert_raises(FloatingPointError, np.exp, np.float64(-1E19)) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_log_values(self): + with np.errstate(all='ignore'): + x = [np.nan, np.nan, np.inf, np.nan, -np.inf, np.nan] + y = [np.nan, -np.nan, np.inf, -np.inf, 0.0, -1.0] + y1p = [np.nan, -np.nan, np.inf, -np.inf, -1.0, -2.0] + for dt in ['e', 'f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + yf1p = np.array(y1p, dtype=dt) + assert_equal(np.log(yf), xf) + assert_equal(np.log2(yf), xf) + assert_equal(np.log10(yf), xf) + assert_equal(np.log1p(yf1p), xf) + + with np.errstate(divide='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.log, + np.array(0.0, dtype=dt)) + assert_raises(FloatingPointError, np.log2, + np.array(0.0, dtype=dt)) + assert_raises(FloatingPointError, np.log10, + np.array(0.0, dtype=dt)) + assert_raises(FloatingPointError, np.log1p, + np.array(-1.0, dtype=dt)) + + with np.errstate(invalid='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.log, + np.array(-np.inf, dtype=dt)) + assert_raises(FloatingPointError, np.log, + np.array(-1.0, dtype=dt)) + assert_raises(FloatingPointError, np.log2, + np.array(-np.inf, dtype=dt)) + assert_raises(FloatingPointError, np.log2, + np.array(-1.0, dtype=dt)) + assert_raises(FloatingPointError, np.log10, + np.array(-np.inf, dtype=dt)) + assert_raises(FloatingPointError, np.log10, + np.array(-1.0, dtype=dt)) + assert_raises(FloatingPointError, np.log1p, + np.array(-np.inf, dtype=dt)) + assert_raises(FloatingPointError, np.log1p, + np.array(-2.0, dtype=dt)) + + # See https://github.com/numpy/numpy/issues/18005 + with assert_no_warnings(): + a = np.array(1e9, dtype='float32') + np.log(a) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize('dtype', ['e', 'f', 'd', 'g']) + def test_sincos_values(self, dtype): + with np.errstate(all='ignore'): + x = [np.nan, np.nan, np.nan, np.nan] + y = [np.nan, -np.nan, np.inf, -np.inf] + xf = np.array(x, dtype=dtype) + yf = np.array(y, dtype=dtype) + assert_equal(np.sin(yf), xf) + assert_equal(np.cos(yf), xf) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.xfail( + sys.platform.startswith("darwin"), + reason="underflow is triggered for scalar 'sin'" + ) + def test_sincos_underflow(self): + with np.errstate(under='raise'): + underflow_trigger = np.array( + float.fromhex("0x1.f37f47a03f82ap-511"), + dtype=np.float64 + ) + np.sin(underflow_trigger) + np.cos(underflow_trigger) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.parametrize('callable', [np.sin, np.cos]) + @pytest.mark.parametrize('dtype', ['e', 'f', 'd']) + @pytest.mark.parametrize('value', [np.inf, -np.inf]) + def test_sincos_errors(self, callable, dtype, value): + with np.errstate(invalid='raise'): + assert_raises(FloatingPointError, callable, + np.array([value], dtype=dtype)) + + @pytest.mark.parametrize('callable', [np.sin, np.cos]) + @pytest.mark.parametrize('dtype', ['f', 'd']) + @pytest.mark.parametrize('stride', [-1, 1, 2, 4, 5]) + def test_sincos_overlaps(self, callable, dtype, stride): + N = 100 + M = N // abs(stride) + rng = np.random.default_rng(42) + x = rng.standard_normal(N, dtype) + y = callable(x[::stride]) + callable(x[::stride], out=x[:M]) + assert_equal(x[:M], y) + + @pytest.mark.parametrize('dt', ['e', 'f', 'd', 'g']) + def test_sqrt_values(self, dt): + with np.errstate(all='ignore'): + x = [np.nan, np.nan, np.inf, np.nan, 0.] + y = [np.nan, -np.nan, np.inf, -np.inf, 0.] + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_equal(np.sqrt(yf), xf) + + # with np.errstate(invalid='raise'): + # assert_raises( + # FloatingPointError, np.sqrt, np.array(-100., dtype=dt) + # ) + + def test_abs_values(self): + x = [np.nan, np.nan, np.inf, np.inf, 0., 0., 1.0, 1.0] + y = [np.nan, -np.nan, np.inf, -np.inf, 0., -0., -1.0, 1.0] + for dt in ['e', 'f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_equal(np.abs(yf), xf) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_square_values(self): + x = [np.nan, np.nan, np.inf, np.inf] + y = [np.nan, -np.nan, np.inf, -np.inf] + with np.errstate(all='ignore'): + for dt in ['e', 'f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_equal(np.square(yf), xf) + + with np.errstate(over='raise'): + assert_raises(FloatingPointError, np.square, + np.array(1E3, dtype='e')) + assert_raises(FloatingPointError, np.square, + np.array(1E32, dtype='f')) + assert_raises(FloatingPointError, np.square, + np.array(1E200, dtype='d')) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_reciprocal_values(self): + with np.errstate(all='ignore'): + x = [np.nan, np.nan, 0.0, -0.0, np.inf, -np.inf] + y = [np.nan, -np.nan, np.inf, -np.inf, 0., -0.] + for dt in ['e', 'f', 'd', 'g']: + xf = np.array(x, dtype=dt) + yf = np.array(y, dtype=dt) + assert_equal(np.reciprocal(yf), xf) + + with np.errstate(divide='raise'): + for dt in ['e', 'f', 'd', 'g']: + assert_raises(FloatingPointError, np.reciprocal, + np.array(-0.0, dtype=dt)) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_tan(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, 0.0, -0.0, np.inf, -np.inf] + out = [np.nan, np.nan, 0.0, -0.0, np.nan, np.nan] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.tan(in_arr), out_arr) + + with np.errstate(invalid='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.tan, + np.array(np.inf, dtype=dt)) + assert_raises(FloatingPointError, np.tan, + np.array(-np.inf, dtype=dt)) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_arcsincos(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.nan, np.nan] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.arcsin(in_arr), out_arr) + assert_equal(np.arccos(in_arr), out_arr) + + for callable in [np.arcsin, np.arccos]: + for value in [np.inf, -np.inf, 2.0, -2.0]: + for dt in ['e', 'f', 'd']: + with np.errstate(invalid='raise'): + assert_raises(FloatingPointError, callable, + np.array(value, dtype=dt)) + + def test_arctan(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan] + out = [np.nan, np.nan] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.arctan(in_arr), out_arr) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_sinh(self): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.inf, -np.inf] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.sinh(in_arr), out_arr) + + with np.errstate(over='raise'): + assert_raises(FloatingPointError, np.sinh, + np.array(12.0, dtype='e')) + assert_raises(FloatingPointError, np.sinh, + np.array(120.0, dtype='f')) + assert_raises(FloatingPointError, np.sinh, + np.array(1200.0, dtype='d')) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif('bsd' in sys.platform, + reason="fallback implementation may not raise, see gh-2487") + def test_cosh(self): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.inf, np.inf] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.cosh(in_arr), out_arr) + + with np.errstate(over='raise'): + assert_raises(FloatingPointError, np.cosh, + np.array(12.0, dtype='e')) + assert_raises(FloatingPointError, np.cosh, + np.array(120.0, dtype='f')) + assert_raises(FloatingPointError, np.cosh, + np.array(1200.0, dtype='d')) + + def test_tanh(self): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, 1.0, -1.0] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_array_max_ulp(np.tanh(in_arr), out_arr, 3) + + def test_arcsinh(self): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.inf, -np.inf] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.arcsinh(in_arr), out_arr) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_arccosh(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, np.inf, -np.inf, 1.0, 0.0] + out = [np.nan, np.nan, np.inf, np.nan, 0.0, np.nan] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.arccosh(in_arr), out_arr) + + for value in [0.0, -np.inf]: + with np.errstate(invalid='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.arccosh, + np.array(value, dtype=dt)) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_arctanh(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, np.inf, -np.inf, 1.0, -1.0, 2.0] + out = [np.nan, np.nan, np.nan, np.nan, np.inf, -np.inf, np.nan] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.arctanh(in_arr), out_arr) + + for value in [1.01, np.inf, -np.inf, 1.0, -1.0]: + with np.errstate(invalid='raise', divide='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.arctanh, + np.array(value, dtype=dt)) + + # Make sure glibc < 2.18 atanh is not used, issue 25087 + assert np.signbit(np.arctanh(-1j).real) + + # See: https://github.com/numpy/numpy/issues/20448 + @pytest.mark.xfail( + _glibc_older_than("2.17"), + reason="Older glibc versions may not raise appropriate FP exceptions" + ) + def test_exp2(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.inf, 0.0] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.exp2(in_arr), out_arr) + + for value in [2000.0, -2000.0]: + with np.errstate(over='raise', under='raise'): + for dt in ['e', 'f', 'd']: + assert_raises(FloatingPointError, np.exp2, + np.array(value, dtype=dt)) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + def test_expm1(self): + with np.errstate(all='ignore'): + in_ = [np.nan, -np.nan, np.inf, -np.inf] + out = [np.nan, np.nan, np.inf, -1.0] + for dt in ['e', 'f', 'd']: + in_arr = np.array(in_, dtype=dt) + out_arr = np.array(out, dtype=dt) + assert_equal(np.expm1(in_arr), out_arr) + + for value in [200.0, 2000.0]: + with np.errstate(over='raise'): + for dt in ['e', 'f']: + assert_raises(FloatingPointError, np.expm1, + np.array(value, dtype=dt)) + + # test to ensure no spurious FP exceptions are raised due to SIMD + INF_INVALID_ERR = [ + np.cos, np.sin, np.tan, np.arccos, np.arcsin, np.spacing, np.arctanh + ] + NEG_INVALID_ERR = [ + np.log, np.log2, np.log10, np.log1p, np.sqrt, np.arccosh, + np.arctanh + ] + ONE_INVALID_ERR = [ + np.arctanh, + ] + LTONE_INVALID_ERR = [ + np.arccosh, + ] + BYZERO_ERR = [ + np.log, np.log2, np.log10, np.reciprocal, np.arccosh + ] + + @pytest.mark.parametrize("ufunc", UFUNCS_UNARY_FP) + @pytest.mark.parametrize("dtype", ('e', 'f', 'd')) + @pytest.mark.parametrize("data, escape", ( + ([0.03], LTONE_INVALID_ERR), + ([0.03]*32, LTONE_INVALID_ERR), + # neg + ([-1.0], NEG_INVALID_ERR), + ([-1.0]*32, NEG_INVALID_ERR), + # flat + ([1.0], ONE_INVALID_ERR), + ([1.0]*32, ONE_INVALID_ERR), + # zero + ([0.0], BYZERO_ERR), + ([0.0]*32, BYZERO_ERR), + ([-0.0], BYZERO_ERR), + ([-0.0]*32, BYZERO_ERR), + # nan + ([0.5, 0.5, 0.5, np.nan], LTONE_INVALID_ERR), + ([0.5, 0.5, 0.5, np.nan]*32, LTONE_INVALID_ERR), + ([np.nan, 1.0, 1.0, 1.0], ONE_INVALID_ERR), + ([np.nan, 1.0, 1.0, 1.0]*32, ONE_INVALID_ERR), + ([np.nan], []), + ([np.nan]*32, []), + # inf + ([0.5, 0.5, 0.5, np.inf], INF_INVALID_ERR + LTONE_INVALID_ERR), + ([0.5, 0.5, 0.5, np.inf]*32, INF_INVALID_ERR + LTONE_INVALID_ERR), + ([np.inf, 1.0, 1.0, 1.0], INF_INVALID_ERR), + ([np.inf, 1.0, 1.0, 1.0]*32, INF_INVALID_ERR), + ([np.inf], INF_INVALID_ERR), + ([np.inf]*32, INF_INVALID_ERR), + # ninf + ([0.5, 0.5, 0.5, -np.inf], + NEG_INVALID_ERR + INF_INVALID_ERR + LTONE_INVALID_ERR), + ([0.5, 0.5, 0.5, -np.inf]*32, + NEG_INVALID_ERR + INF_INVALID_ERR + LTONE_INVALID_ERR), + ([-np.inf, 1.0, 1.0, 1.0], NEG_INVALID_ERR + INF_INVALID_ERR), + ([-np.inf, 1.0, 1.0, 1.0]*32, NEG_INVALID_ERR + INF_INVALID_ERR), + ([-np.inf], NEG_INVALID_ERR + INF_INVALID_ERR), + ([-np.inf]*32, NEG_INVALID_ERR + INF_INVALID_ERR), + )) + def test_unary_spurious_fpexception(self, ufunc, dtype, data, escape): + if escape and ufunc in escape: + return + # FIXME: NAN raises FP invalid exception: + # - ceil/float16 on MSVC:32-bit + # - spacing/float16 on almost all platforms + if ufunc in (np.spacing, np.ceil) and dtype == 'e': + return + array = np.array(data, dtype=dtype) + with assert_no_warnings(): + ufunc(array) + + @pytest.mark.parametrize("dtype", ('e', 'f', 'd')) + def test_divide_spurious_fpexception(self, dtype): + dt = np.dtype(dtype) + dt_info = np.finfo(dt) + subnorm = dt_info.smallest_subnormal + # Verify a bug fix caused due to filling the remaining lanes of the + # partially loaded dividend SIMD vector with ones, which leads to + # raising an overflow warning when the divisor is denormal. + # see https://github.com/numpy/numpy/issues/25097 + with assert_no_warnings(): + np.zeros(128 + 1, dtype=dt) / subnorm + +class TestFPClass: + @pytest.mark.parametrize("stride", [-5, -4, -3, -2, -1, 1, + 2, 4, 5, 6, 7, 8, 9, 10]) + def test_fpclass(self, stride): + arr_f64 = np.array([np.nan, -np.nan, np.inf, -np.inf, -1.0, 1.0, -0.0, 0.0, 2.2251e-308, -2.2251e-308], dtype='d') + arr_f32 = np.array([np.nan, -np.nan, np.inf, -np.inf, -1.0, 1.0, -0.0, 0.0, 1.4013e-045, -1.4013e-045], dtype='f') + nan = np.array([True, True, False, False, False, False, False, False, False, False]) + inf = np.array([False, False, True, True, False, False, False, False, False, False]) + sign = np.array([False, True, False, True, True, False, True, False, False, True]) + finite = np.array([False, False, False, False, True, True, True, True, True, True]) + assert_equal(np.isnan(arr_f32[::stride]), nan[::stride]) + assert_equal(np.isnan(arr_f64[::stride]), nan[::stride]) + assert_equal(np.isinf(arr_f32[::stride]), inf[::stride]) + assert_equal(np.isinf(arr_f64[::stride]), inf[::stride]) + if platform.machine() == 'riscv64': + # On RISC-V, many operations that produce NaNs, such as converting + # a -NaN from f64 to f32, return a canonical NaN. The canonical + # NaNs are always positive. See section 11.3 NaN Generation and + # Propagation of the RISC-V Unprivileged ISA for more details. + # We disable the sign test on riscv64 for -np.nan as we + # cannot assume that its sign will be honoured in these tests. + arr_f64_rv = np.copy(arr_f64) + arr_f32_rv = np.copy(arr_f32) + arr_f64_rv[1] = -1.0 + arr_f32_rv[1] = -1.0 + assert_equal(np.signbit(arr_f32_rv[::stride]), sign[::stride]) + assert_equal(np.signbit(arr_f64_rv[::stride]), sign[::stride]) + else: + assert_equal(np.signbit(arr_f32[::stride]), sign[::stride]) + assert_equal(np.signbit(arr_f64[::stride]), sign[::stride]) + assert_equal(np.isfinite(arr_f32[::stride]), finite[::stride]) + assert_equal(np.isfinite(arr_f64[::stride]), finite[::stride]) + + @pytest.mark.parametrize("dtype", ['d', 'f']) + def test_fp_noncontiguous(self, dtype): + data = np.array([np.nan, -np.nan, np.inf, -np.inf, -1.0, + 1.0, -0.0, 0.0, 2.2251e-308, + -2.2251e-308], dtype=dtype) + nan = np.array([True, True, False, False, False, False, + False, False, False, False]) + inf = np.array([False, False, True, True, False, False, + False, False, False, False]) + sign = np.array([False, True, False, True, True, False, + True, False, False, True]) + finite = np.array([False, False, False, False, True, True, + True, True, True, True]) + out = np.ndarray(data.shape, dtype='bool') + ncontig_in = data[1::3] + ncontig_out = out[1::3] + contig_in = np.array(ncontig_in) + + if platform.machine() == 'riscv64': + # Disable the -np.nan signbit tests on riscv64. See comments in + # test_fpclass for more details. + data_rv = np.copy(data) + data_rv[1] = -1.0 + ncontig_sign_in = data_rv[1::3] + contig_sign_in = np.array(ncontig_sign_in) + else: + ncontig_sign_in = ncontig_in + contig_sign_in = contig_in + + assert_equal(ncontig_in.flags.c_contiguous, False) + assert_equal(ncontig_out.flags.c_contiguous, False) + assert_equal(contig_in.flags.c_contiguous, True) + assert_equal(ncontig_sign_in.flags.c_contiguous, False) + assert_equal(contig_sign_in.flags.c_contiguous, True) + # ncontig in, ncontig out + assert_equal(np.isnan(ncontig_in, out=ncontig_out), nan[1::3]) + assert_equal(np.isinf(ncontig_in, out=ncontig_out), inf[1::3]) + assert_equal(np.signbit(ncontig_sign_in, out=ncontig_out), sign[1::3]) + assert_equal(np.isfinite(ncontig_in, out=ncontig_out), finite[1::3]) + # contig in, ncontig out + assert_equal(np.isnan(contig_in, out=ncontig_out), nan[1::3]) + assert_equal(np.isinf(contig_in, out=ncontig_out), inf[1::3]) + assert_equal(np.signbit(contig_sign_in, out=ncontig_out), sign[1::3]) + assert_equal(np.isfinite(contig_in, out=ncontig_out), finite[1::3]) + # ncontig in, contig out + assert_equal(np.isnan(ncontig_in), nan[1::3]) + assert_equal(np.isinf(ncontig_in), inf[1::3]) + assert_equal(np.signbit(ncontig_sign_in), sign[1::3]) + assert_equal(np.isfinite(ncontig_in), finite[1::3]) + # contig in, contig out, nd stride + data_split = np.array(np.array_split(data, 2)) + nan_split = np.array(np.array_split(nan, 2)) + inf_split = np.array(np.array_split(inf, 2)) + sign_split = np.array(np.array_split(sign, 2)) + finite_split = np.array(np.array_split(finite, 2)) + assert_equal(np.isnan(data_split), nan_split) + assert_equal(np.isinf(data_split), inf_split) + if platform.machine() == 'riscv64': + data_split_rv = np.array(np.array_split(data_rv, 2)) + assert_equal(np.signbit(data_split_rv), sign_split) + else: + assert_equal(np.signbit(data_split), sign_split) + assert_equal(np.isfinite(data_split), finite_split) + +class TestLDExp: + @pytest.mark.parametrize("stride", [-4,-2,-1,1,2,4]) + @pytest.mark.parametrize("dtype", ['f', 'd']) + def test_ldexp(self, dtype, stride): + mant = np.array([0.125, 0.25, 0.5, 1., 1., 2., 4., 8.], dtype=dtype) + exp = np.array([3, 2, 1, 0, 0, -1, -2, -3], dtype='i') + out = np.zeros(8, dtype=dtype) + assert_equal(np.ldexp(mant[::stride], exp[::stride], out=out[::stride]), np.ones(8, dtype=dtype)[::stride]) + assert_equal(out[::stride], np.ones(8, dtype=dtype)[::stride]) + +class TestFRExp: + @pytest.mark.parametrize("stride", [-4,-2,-1,1,2,4]) + @pytest.mark.parametrize("dtype", ['f', 'd']) + @pytest.mark.skipif(not sys.platform.startswith('linux'), + reason="np.frexp gives different answers for NAN/INF on windows and linux") + @pytest.mark.xfail(IS_MUSL, reason="gh23049") + def test_frexp(self, dtype, stride): + arr = np.array([np.nan, np.nan, np.inf, -np.inf, 0.0, -0.0, 1.0, -1.0], dtype=dtype) + mant_true = np.array([np.nan, np.nan, np.inf, -np.inf, 0.0, -0.0, 0.5, -0.5], dtype=dtype) + exp_true = np.array([0, 0, 0, 0, 0, 0, 1, 1], dtype='i') + out_mant = np.ones(8, dtype=dtype) + out_exp = 2*np.ones(8, dtype='i') + mant, exp = np.frexp(arr[::stride], out=(out_mant[::stride], out_exp[::stride])) + assert_equal(mant_true[::stride], mant) + assert_equal(exp_true[::stride], exp) + assert_equal(out_mant[::stride], mant_true[::stride]) + assert_equal(out_exp[::stride], exp_true[::stride]) + +# func : [maxulperror, low, high] +avx_ufuncs = {'sqrt' :[1, 0., 100.], + 'absolute' :[0, -100., 100.], + 'reciprocal' :[1, 1., 100.], + 'square' :[1, -100., 100.], + 'rint' :[0, -100., 100.], + 'floor' :[0, -100., 100.], + 'ceil' :[0, -100., 100.], + 'trunc' :[0, -100., 100.]} + +class TestAVXUfuncs: + def test_avx_based_ufunc(self): + strides = np.array([-4,-3,-2,-1,1,2,3,4]) + np.random.seed(42) + for func, prop in avx_ufuncs.items(): + maxulperr = prop[0] + minval = prop[1] + maxval = prop[2] + # various array sizes to ensure masking in AVX is tested + for size in range(1,32): + myfunc = getattr(np, func) + x_f32 = np.random.uniform(low=minval, high=maxval, + size=size).astype(np.float32) + x_f64 = x_f32.astype(np.float64) + x_f128 = x_f32.astype(np.longdouble) + y_true128 = myfunc(x_f128) + if maxulperr == 0: + assert_equal(myfunc(x_f32), y_true128.astype(np.float32)) + assert_equal(myfunc(x_f64), y_true128.astype(np.float64)) + else: + assert_array_max_ulp(myfunc(x_f32), + y_true128.astype(np.float32), + maxulp=maxulperr) + assert_array_max_ulp(myfunc(x_f64), + y_true128.astype(np.float64), + maxulp=maxulperr) + # various strides to test gather instruction + if size > 1: + y_true32 = myfunc(x_f32) + y_true64 = myfunc(x_f64) + for jj in strides: + assert_equal(myfunc(x_f64[::jj]), y_true64[::jj]) + assert_equal(myfunc(x_f32[::jj]), y_true32[::jj]) + +class TestAVXFloat32Transcendental: + def test_exp_float32(self): + np.random.seed(42) + x_f32 = np.float32(np.random.uniform(low=0.0,high=88.1,size=1000000)) + x_f64 = np.float64(x_f32) + assert_array_max_ulp(np.exp(x_f32), np.float32(np.exp(x_f64)), maxulp=3) + + def test_log_float32(self): + np.random.seed(42) + x_f32 = np.float32(np.random.uniform(low=0.0,high=1000,size=1000000)) + x_f64 = np.float64(x_f32) + assert_array_max_ulp(np.log(x_f32), np.float32(np.log(x_f64)), maxulp=4) + + def test_sincos_float32(self): + np.random.seed(42) + N = 1000000 + M = np.int_(N/20) + index = np.random.randint(low=0, high=N, size=M) + x_f32 = np.float32(np.random.uniform(low=-100.,high=100.,size=N)) + if not _glibc_older_than("2.17"): + # test coverage for elements > 117435.992f for which glibc is used + # this is known to be problematic on old glibc, so skip it there + x_f32[index] = np.float32(10E+10*np.random.rand(M)) + x_f64 = np.float64(x_f32) + assert_array_max_ulp(np.sin(x_f32), np.float32(np.sin(x_f64)), maxulp=2) + assert_array_max_ulp(np.cos(x_f32), np.float32(np.cos(x_f64)), maxulp=2) + # test aliasing(issue #17761) + tx_f32 = x_f32.copy() + assert_array_max_ulp(np.sin(x_f32, out=x_f32), np.float32(np.sin(x_f64)), maxulp=2) + assert_array_max_ulp(np.cos(tx_f32, out=tx_f32), np.float32(np.cos(x_f64)), maxulp=2) + + def test_strided_float32(self): + np.random.seed(42) + strides = np.array([-4,-3,-2,-1,1,2,3,4]) + sizes = np.arange(2,100) + for ii in sizes: + x_f32 = np.float32(np.random.uniform(low=0.01,high=88.1,size=ii)) + x_f32_large = x_f32.copy() + x_f32_large[3:-1:4] = 120000.0 + exp_true = np.exp(x_f32) + log_true = np.log(x_f32) + sin_true = np.sin(x_f32_large) + cos_true = np.cos(x_f32_large) + for jj in strides: + assert_array_almost_equal_nulp(np.exp(x_f32[::jj]), exp_true[::jj], nulp=2) + assert_array_almost_equal_nulp(np.log(x_f32[::jj]), log_true[::jj], nulp=2) + assert_array_almost_equal_nulp(np.sin(x_f32_large[::jj]), sin_true[::jj], nulp=2) + assert_array_almost_equal_nulp(np.cos(x_f32_large[::jj]), cos_true[::jj], nulp=2) + +class TestLogAddExp(_FilterInvalids): + def test_logaddexp_values(self): + x = [1, 2, 3, 4, 5] + y = [5, 4, 3, 2, 1] + z = [6, 6, 6, 6, 6] + for dt, dec_ in zip(['f', 'd', 'g'], [6, 15, 15]): + xf = np.log(np.array(x, dtype=dt)) + yf = np.log(np.array(y, dtype=dt)) + zf = np.log(np.array(z, dtype=dt)) + assert_almost_equal(np.logaddexp(xf, yf), zf, decimal=dec_) + + def test_logaddexp_range(self): + x = [1000000, -1000000, 1000200, -1000200] + y = [1000200, -1000200, 1000000, -1000000] + z = [1000200, -1000000, 1000200, -1000000] + for dt in ['f', 'd', 'g']: + logxf = np.array(x, dtype=dt) + logyf = np.array(y, dtype=dt) + logzf = np.array(z, dtype=dt) + assert_almost_equal(np.logaddexp(logxf, logyf), logzf) + + def test_inf(self): + inf = np.inf + x = [inf, -inf, inf, -inf, inf, 1, -inf, 1] + y = [inf, inf, -inf, -inf, 1, inf, 1, -inf] + z = [inf, inf, inf, -inf, inf, inf, 1, 1] + with np.errstate(invalid='raise'): + for dt in ['f', 'd', 'g']: + logxf = np.array(x, dtype=dt) + logyf = np.array(y, dtype=dt) + logzf = np.array(z, dtype=dt) + assert_equal(np.logaddexp(logxf, logyf), logzf) + + def test_nan(self): + assert_(np.isnan(np.logaddexp(np.nan, np.inf))) + assert_(np.isnan(np.logaddexp(np.inf, np.nan))) + assert_(np.isnan(np.logaddexp(np.nan, 0))) + assert_(np.isnan(np.logaddexp(0, np.nan))) + assert_(np.isnan(np.logaddexp(np.nan, np.nan))) + + def test_reduce(self): + assert_equal(np.logaddexp.identity, -np.inf) + assert_equal(np.logaddexp.reduce([]), -np.inf) + + +class TestLog1p: + def test_log1p(self): + assert_almost_equal(ncu.log1p(0.2), ncu.log(1.2)) + assert_almost_equal(ncu.log1p(1e-6), ncu.log(1+1e-6)) + + def test_special(self): + with np.errstate(invalid="ignore", divide="ignore"): + assert_equal(ncu.log1p(np.nan), np.nan) + assert_equal(ncu.log1p(np.inf), np.inf) + assert_equal(ncu.log1p(-1.), -np.inf) + assert_equal(ncu.log1p(-2.), np.nan) + assert_equal(ncu.log1p(-np.inf), np.nan) + + +class TestExpm1: + def test_expm1(self): + assert_almost_equal(ncu.expm1(0.2), ncu.exp(0.2)-1) + assert_almost_equal(ncu.expm1(1e-6), ncu.exp(1e-6)-1) + + def test_special(self): + assert_equal(ncu.expm1(np.inf), np.inf) + assert_equal(ncu.expm1(0.), 0.) + assert_equal(ncu.expm1(-0.), -0.) + assert_equal(ncu.expm1(np.inf), np.inf) + assert_equal(ncu.expm1(-np.inf), -1.) + + def test_complex(self): + x = np.asarray(1e-12) + assert_allclose(x, ncu.expm1(x)) + x = x.astype(np.complex128) + assert_allclose(x, ncu.expm1(x)) + + +class TestHypot: + def test_simple(self): + assert_almost_equal(ncu.hypot(1, 1), ncu.sqrt(2)) + assert_almost_equal(ncu.hypot(0, 0), 0) + + def test_reduce(self): + assert_almost_equal(ncu.hypot.reduce([3.0, 4.0]), 5.0) + assert_almost_equal(ncu.hypot.reduce([3.0, 4.0, 0]), 5.0) + assert_almost_equal(ncu.hypot.reduce([9.0, 12.0, 20.0]), 25.0) + assert_equal(ncu.hypot.reduce([]), 0.0) + + +def assert_hypot_isnan(x, y): + with np.errstate(invalid='ignore'): + assert_(np.isnan(ncu.hypot(x, y)), + "hypot(%s, %s) is %s, not nan" % (x, y, ncu.hypot(x, y))) + + +def assert_hypot_isinf(x, y): + with np.errstate(invalid='ignore'): + assert_(np.isinf(ncu.hypot(x, y)), + "hypot(%s, %s) is %s, not inf" % (x, y, ncu.hypot(x, y))) + + +class TestHypotSpecialValues: + def test_nan_outputs(self): + assert_hypot_isnan(np.nan, np.nan) + assert_hypot_isnan(np.nan, 1) + + def test_nan_outputs2(self): + assert_hypot_isinf(np.nan, np.inf) + assert_hypot_isinf(np.inf, np.nan) + assert_hypot_isinf(np.inf, 0) + assert_hypot_isinf(0, np.inf) + assert_hypot_isinf(np.inf, np.inf) + assert_hypot_isinf(np.inf, 23.0) + + def test_no_fpe(self): + assert_no_warnings(ncu.hypot, np.inf, 0) + + +def assert_arctan2_isnan(x, y): + assert_(np.isnan(ncu.arctan2(x, y)), "arctan(%s, %s) is %s, not nan" % (x, y, ncu.arctan2(x, y))) + + +def assert_arctan2_ispinf(x, y): + assert_((np.isinf(ncu.arctan2(x, y)) and ncu.arctan2(x, y) > 0), "arctan(%s, %s) is %s, not +inf" % (x, y, ncu.arctan2(x, y))) + + +def assert_arctan2_isninf(x, y): + assert_((np.isinf(ncu.arctan2(x, y)) and ncu.arctan2(x, y) < 0), "arctan(%s, %s) is %s, not -inf" % (x, y, ncu.arctan2(x, y))) + + +def assert_arctan2_ispzero(x, y): + assert_((ncu.arctan2(x, y) == 0 and not np.signbit(ncu.arctan2(x, y))), "arctan(%s, %s) is %s, not +0" % (x, y, ncu.arctan2(x, y))) + + +def assert_arctan2_isnzero(x, y): + assert_((ncu.arctan2(x, y) == 0 and np.signbit(ncu.arctan2(x, y))), "arctan(%s, %s) is %s, not -0" % (x, y, ncu.arctan2(x, y))) + + +class TestArctan2SpecialValues: + def test_one_one(self): + # atan2(1, 1) returns pi/4. + assert_almost_equal(ncu.arctan2(1, 1), 0.25 * np.pi) + assert_almost_equal(ncu.arctan2(-1, 1), -0.25 * np.pi) + assert_almost_equal(ncu.arctan2(1, -1), 0.75 * np.pi) + + def test_zero_nzero(self): + # atan2(+-0, -0) returns +-pi. + assert_almost_equal(ncu.arctan2(ncu.PZERO, ncu.NZERO), np.pi) + assert_almost_equal(ncu.arctan2(ncu.NZERO, ncu.NZERO), -np.pi) + + def test_zero_pzero(self): + # atan2(+-0, +0) returns +-0. + assert_arctan2_ispzero(ncu.PZERO, ncu.PZERO) + assert_arctan2_isnzero(ncu.NZERO, ncu.PZERO) + + def test_zero_negative(self): + # atan2(+-0, x) returns +-pi for x < 0. + assert_almost_equal(ncu.arctan2(ncu.PZERO, -1), np.pi) + assert_almost_equal(ncu.arctan2(ncu.NZERO, -1), -np.pi) + + def test_zero_positive(self): + # atan2(+-0, x) returns +-0 for x > 0. + assert_arctan2_ispzero(ncu.PZERO, 1) + assert_arctan2_isnzero(ncu.NZERO, 1) + + def test_positive_zero(self): + # atan2(y, +-0) returns +pi/2 for y > 0. + assert_almost_equal(ncu.arctan2(1, ncu.PZERO), 0.5 * np.pi) + assert_almost_equal(ncu.arctan2(1, ncu.NZERO), 0.5 * np.pi) + + def test_negative_zero(self): + # atan2(y, +-0) returns -pi/2 for y < 0. + assert_almost_equal(ncu.arctan2(-1, ncu.PZERO), -0.5 * np.pi) + assert_almost_equal(ncu.arctan2(-1, ncu.NZERO), -0.5 * np.pi) + + def test_any_ninf(self): + # atan2(+-y, -infinity) returns +-pi for finite y > 0. + assert_almost_equal(ncu.arctan2(1, -np.inf), np.pi) + assert_almost_equal(ncu.arctan2(-1, -np.inf), -np.pi) + + def test_any_pinf(self): + # atan2(+-y, +infinity) returns +-0 for finite y > 0. + assert_arctan2_ispzero(1, np.inf) + assert_arctan2_isnzero(-1, np.inf) + + def test_inf_any(self): + # atan2(+-infinity, x) returns +-pi/2 for finite x. + assert_almost_equal(ncu.arctan2( np.inf, 1), 0.5 * np.pi) + assert_almost_equal(ncu.arctan2(-np.inf, 1), -0.5 * np.pi) + + def test_inf_ninf(self): + # atan2(+-infinity, -infinity) returns +-3*pi/4. + assert_almost_equal(ncu.arctan2( np.inf, -np.inf), 0.75 * np.pi) + assert_almost_equal(ncu.arctan2(-np.inf, -np.inf), -0.75 * np.pi) + + def test_inf_pinf(self): + # atan2(+-infinity, +infinity) returns +-pi/4. + assert_almost_equal(ncu.arctan2( np.inf, np.inf), 0.25 * np.pi) + assert_almost_equal(ncu.arctan2(-np.inf, np.inf), -0.25 * np.pi) + + def test_nan_any(self): + # atan2(nan, x) returns nan for any x, including inf + assert_arctan2_isnan(np.nan, np.inf) + assert_arctan2_isnan(np.inf, np.nan) + assert_arctan2_isnan(np.nan, np.nan) + + +class TestLdexp: + def _check_ldexp(self, tp): + assert_almost_equal(ncu.ldexp(np.array(2., np.float32), + np.array(3, tp)), 16.) + assert_almost_equal(ncu.ldexp(np.array(2., np.float64), + np.array(3, tp)), 16.) + assert_almost_equal(ncu.ldexp(np.array(2., np.longdouble), + np.array(3, tp)), 16.) + + def test_ldexp(self): + # The default Python int type should work + assert_almost_equal(ncu.ldexp(2., 3), 16.) + # The following int types should all be accepted + self._check_ldexp(np.int8) + self._check_ldexp(np.int16) + self._check_ldexp(np.int32) + self._check_ldexp('i') + self._check_ldexp('l') + + def test_ldexp_overflow(self): + # silence warning emitted on overflow + with np.errstate(over="ignore"): + imax = np.iinfo(np.dtype('l')).max + imin = np.iinfo(np.dtype('l')).min + assert_equal(ncu.ldexp(2., imax), np.inf) + assert_equal(ncu.ldexp(2., imin), 0) + + +class TestMaximum(_FilterInvalids): + def test_reduce(self): + dflt = np.typecodes['AllFloat'] + dint = np.typecodes['AllInteger'] + seq1 = np.arange(11) + seq2 = seq1[::-1] + func = np.maximum.reduce + for dt in dint: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 10) + assert_equal(func(tmp2), 10) + for dt in dflt: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 10) + assert_equal(func(tmp2), 10) + tmp1[::2] = np.nan + tmp2[::2] = np.nan + assert_equal(func(tmp1), np.nan) + assert_equal(func(tmp2), np.nan) + + def test_reduce_complex(self): + assert_equal(np.maximum.reduce([1, 2j]), 1) + assert_equal(np.maximum.reduce([1+3j, 2j]), 1+3j) + + def test_float_nans(self): + nan = np.nan + arg1 = np.array([0, nan, nan]) + arg2 = np.array([nan, 0, nan]) + out = np.array([nan, nan, nan]) + assert_equal(np.maximum(arg1, arg2), out) + + def test_object_nans(self): + # Multiple checks to give this a chance to + # fail if cmp is used instead of rich compare. + # Failure cannot be guaranteed. + for i in range(1): + x = np.array(float('nan'), object) + y = 1.0 + z = np.array(float('nan'), object) + assert_(np.maximum(x, y) == 1.0) + assert_(np.maximum(z, y) == 1.0) + + def test_complex_nans(self): + nan = np.nan + for cnan in [complex(nan, 0), complex(0, nan), complex(nan, nan)]: + arg1 = np.array([0, cnan, cnan], dtype=complex) + arg2 = np.array([cnan, 0, cnan], dtype=complex) + out = np.array([nan, nan, nan], dtype=complex) + assert_equal(np.maximum(arg1, arg2), out) + + def test_object_array(self): + arg1 = np.arange(5, dtype=object) + arg2 = arg1 + 1 + assert_equal(np.maximum(arg1, arg2), arg2) + + def test_strided_array(self): + arr1 = np.array([-4.0, 1.0, 10.0, 0.0, np.nan, -np.nan, np.inf, -np.inf]) + arr2 = np.array([-2.0,-1.0, np.nan, 1.0, 0.0, np.nan, 1.0, -3.0]) + maxtrue = np.array([-2.0, 1.0, np.nan, 1.0, np.nan, np.nan, np.inf, -3.0]) + out = np.ones(8) + out_maxtrue = np.array([-2.0, 1.0, 1.0, 10.0, 1.0, 1.0, np.nan, 1.0]) + assert_equal(np.maximum(arr1,arr2), maxtrue) + assert_equal(np.maximum(arr1[::2],arr2[::2]), maxtrue[::2]) + assert_equal(np.maximum(arr1[:4:], arr2[::2]), np.array([-2.0, np.nan, 10.0, 1.0])) + assert_equal(np.maximum(arr1[::3], arr2[:3:]), np.array([-2.0, 0.0, np.nan])) + assert_equal(np.maximum(arr1[:6:2], arr2[::3], out=out[::3]), np.array([-2.0, 10., np.nan])) + assert_equal(out, out_maxtrue) + + def test_precision(self): + dtypes = [np.float16, np.float32, np.float64, np.longdouble] + + for dt in dtypes: + dtmin = np.finfo(dt).min + dtmax = np.finfo(dt).max + d1 = dt(0.1) + d1_next = np.nextafter(d1, np.inf) + + test_cases = [ + # v1 v2 expected + (dtmin, -np.inf, dtmin), + (dtmax, -np.inf, dtmax), + (d1, d1_next, d1_next), + (dtmax, np.nan, np.nan), + ] + + for v1, v2, expected in test_cases: + assert_equal(np.maximum([v1], [v2]), [expected]) + assert_equal(np.maximum.reduce([v1, v2]), expected) + + +class TestMinimum(_FilterInvalids): + def test_reduce(self): + dflt = np.typecodes['AllFloat'] + dint = np.typecodes['AllInteger'] + seq1 = np.arange(11) + seq2 = seq1[::-1] + func = np.minimum.reduce + for dt in dint: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 0) + assert_equal(func(tmp2), 0) + for dt in dflt: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 0) + assert_equal(func(tmp2), 0) + tmp1[::2] = np.nan + tmp2[::2] = np.nan + assert_equal(func(tmp1), np.nan) + assert_equal(func(tmp2), np.nan) + + def test_reduce_complex(self): + assert_equal(np.minimum.reduce([1, 2j]), 2j) + assert_equal(np.minimum.reduce([1+3j, 2j]), 2j) + + def test_float_nans(self): + nan = np.nan + arg1 = np.array([0, nan, nan]) + arg2 = np.array([nan, 0, nan]) + out = np.array([nan, nan, nan]) + assert_equal(np.minimum(arg1, arg2), out) + + def test_object_nans(self): + # Multiple checks to give this a chance to + # fail if cmp is used instead of rich compare. + # Failure cannot be guaranteed. + for i in range(1): + x = np.array(float('nan'), object) + y = 1.0 + z = np.array(float('nan'), object) + assert_(np.minimum(x, y) == 1.0) + assert_(np.minimum(z, y) == 1.0) + + def test_complex_nans(self): + nan = np.nan + for cnan in [complex(nan, 0), complex(0, nan), complex(nan, nan)]: + arg1 = np.array([0, cnan, cnan], dtype=complex) + arg2 = np.array([cnan, 0, cnan], dtype=complex) + out = np.array([nan, nan, nan], dtype=complex) + assert_equal(np.minimum(arg1, arg2), out) + + def test_object_array(self): + arg1 = np.arange(5, dtype=object) + arg2 = arg1 + 1 + assert_equal(np.minimum(arg1, arg2), arg1) + + def test_strided_array(self): + arr1 = np.array([-4.0, 1.0, 10.0, 0.0, np.nan, -np.nan, np.inf, -np.inf]) + arr2 = np.array([-2.0,-1.0, np.nan, 1.0, 0.0, np.nan, 1.0, -3.0]) + mintrue = np.array([-4.0, -1.0, np.nan, 0.0, np.nan, np.nan, 1.0, -np.inf]) + out = np.ones(8) + out_mintrue = np.array([-4.0, 1.0, 1.0, 1.0, 1.0, 1.0, np.nan, 1.0]) + assert_equal(np.minimum(arr1,arr2), mintrue) + assert_equal(np.minimum(arr1[::2],arr2[::2]), mintrue[::2]) + assert_equal(np.minimum(arr1[:4:], arr2[::2]), np.array([-4.0, np.nan, 0.0, 0.0])) + assert_equal(np.minimum(arr1[::3], arr2[:3:]), np.array([-4.0, -1.0, np.nan])) + assert_equal(np.minimum(arr1[:6:2], arr2[::3], out=out[::3]), np.array([-4.0, 1.0, np.nan])) + assert_equal(out, out_mintrue) + + def test_precision(self): + dtypes = [np.float16, np.float32, np.float64, np.longdouble] + + for dt in dtypes: + dtmin = np.finfo(dt).min + dtmax = np.finfo(dt).max + d1 = dt(0.1) + d1_next = np.nextafter(d1, np.inf) + + test_cases = [ + # v1 v2 expected + (dtmin, np.inf, dtmin), + (dtmax, np.inf, dtmax), + (d1, d1_next, d1), + (dtmin, np.nan, np.nan), + ] + + for v1, v2, expected in test_cases: + assert_equal(np.minimum([v1], [v2]), [expected]) + assert_equal(np.minimum.reduce([v1, v2]), expected) + + +class TestFmax(_FilterInvalids): + def test_reduce(self): + dflt = np.typecodes['AllFloat'] + dint = np.typecodes['AllInteger'] + seq1 = np.arange(11) + seq2 = seq1[::-1] + func = np.fmax.reduce + for dt in dint: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 10) + assert_equal(func(tmp2), 10) + for dt in dflt: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 10) + assert_equal(func(tmp2), 10) + tmp1[::2] = np.nan + tmp2[::2] = np.nan + assert_equal(func(tmp1), 9) + assert_equal(func(tmp2), 9) + + def test_reduce_complex(self): + assert_equal(np.fmax.reduce([1, 2j]), 1) + assert_equal(np.fmax.reduce([1+3j, 2j]), 1+3j) + + def test_float_nans(self): + nan = np.nan + arg1 = np.array([0, nan, nan]) + arg2 = np.array([nan, 0, nan]) + out = np.array([0, 0, nan]) + assert_equal(np.fmax(arg1, arg2), out) + + def test_complex_nans(self): + nan = np.nan + for cnan in [complex(nan, 0), complex(0, nan), complex(nan, nan)]: + arg1 = np.array([0, cnan, cnan], dtype=complex) + arg2 = np.array([cnan, 0, cnan], dtype=complex) + out = np.array([0, 0, nan], dtype=complex) + assert_equal(np.fmax(arg1, arg2), out) + + def test_precision(self): + dtypes = [np.float16, np.float32, np.float64, np.longdouble] + + for dt in dtypes: + dtmin = np.finfo(dt).min + dtmax = np.finfo(dt).max + d1 = dt(0.1) + d1_next = np.nextafter(d1, np.inf) + + test_cases = [ + # v1 v2 expected + (dtmin, -np.inf, dtmin), + (dtmax, -np.inf, dtmax), + (d1, d1_next, d1_next), + (dtmax, np.nan, dtmax), + ] + + for v1, v2, expected in test_cases: + assert_equal(np.fmax([v1], [v2]), [expected]) + assert_equal(np.fmax.reduce([v1, v2]), expected) + + +class TestFmin(_FilterInvalids): + def test_reduce(self): + dflt = np.typecodes['AllFloat'] + dint = np.typecodes['AllInteger'] + seq1 = np.arange(11) + seq2 = seq1[::-1] + func = np.fmin.reduce + for dt in dint: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 0) + assert_equal(func(tmp2), 0) + for dt in dflt: + tmp1 = seq1.astype(dt) + tmp2 = seq2.astype(dt) + assert_equal(func(tmp1), 0) + assert_equal(func(tmp2), 0) + tmp1[::2] = np.nan + tmp2[::2] = np.nan + assert_equal(func(tmp1), 1) + assert_equal(func(tmp2), 1) + + def test_reduce_complex(self): + assert_equal(np.fmin.reduce([1, 2j]), 2j) + assert_equal(np.fmin.reduce([1+3j, 2j]), 2j) + + def test_float_nans(self): + nan = np.nan + arg1 = np.array([0, nan, nan]) + arg2 = np.array([nan, 0, nan]) + out = np.array([0, 0, nan]) + assert_equal(np.fmin(arg1, arg2), out) + + def test_complex_nans(self): + nan = np.nan + for cnan in [complex(nan, 0), complex(0, nan), complex(nan, nan)]: + arg1 = np.array([0, cnan, cnan], dtype=complex) + arg2 = np.array([cnan, 0, cnan], dtype=complex) + out = np.array([0, 0, nan], dtype=complex) + assert_equal(np.fmin(arg1, arg2), out) + + def test_precision(self): + dtypes = [np.float16, np.float32, np.float64, np.longdouble] + + for dt in dtypes: + dtmin = np.finfo(dt).min + dtmax = np.finfo(dt).max + d1 = dt(0.1) + d1_next = np.nextafter(d1, np.inf) + + test_cases = [ + # v1 v2 expected + (dtmin, np.inf, dtmin), + (dtmax, np.inf, dtmax), + (d1, d1_next, d1), + (dtmin, np.nan, dtmin), + ] + + for v1, v2, expected in test_cases: + assert_equal(np.fmin([v1], [v2]), [expected]) + assert_equal(np.fmin.reduce([v1, v2]), expected) + + +class TestBool: + def test_exceptions(self): + a = np.ones(1, dtype=np.bool) + assert_raises(TypeError, np.negative, a) + assert_raises(TypeError, np.positive, a) + assert_raises(TypeError, np.subtract, a, a) + + def test_truth_table_logical(self): + # 2, 3 and 4 serves as true values + input1 = [0, 0, 3, 2] + input2 = [0, 4, 0, 2] + + typecodes = (np.typecodes['AllFloat'] + + np.typecodes['AllInteger'] + + '?') # boolean + for dtype in map(np.dtype, typecodes): + arg1 = np.asarray(input1, dtype=dtype) + arg2 = np.asarray(input2, dtype=dtype) + + # OR + out = [False, True, True, True] + for func in (np.logical_or, np.maximum): + assert_equal(func(arg1, arg2).astype(bool), out) + # AND + out = [False, False, False, True] + for func in (np.logical_and, np.minimum): + assert_equal(func(arg1, arg2).astype(bool), out) + # XOR + out = [False, True, True, False] + for func in (np.logical_xor, np.not_equal): + assert_equal(func(arg1, arg2).astype(bool), out) + + def test_truth_table_bitwise(self): + arg1 = [False, False, True, True] + arg2 = [False, True, False, True] + + out = [False, True, True, True] + assert_equal(np.bitwise_or(arg1, arg2), out) + + out = [False, False, False, True] + assert_equal(np.bitwise_and(arg1, arg2), out) + + out = [False, True, True, False] + assert_equal(np.bitwise_xor(arg1, arg2), out) + + def test_reduce(self): + none = np.array([0, 0, 0, 0], bool) + some = np.array([1, 0, 1, 1], bool) + every = np.array([1, 1, 1, 1], bool) + empty = np.array([], bool) + + arrs = [none, some, every, empty] + + for arr in arrs: + assert_equal(np.logical_and.reduce(arr), all(arr)) + + for arr in arrs: + assert_equal(np.logical_or.reduce(arr), any(arr)) + + for arr in arrs: + assert_equal(np.logical_xor.reduce(arr), arr.sum() % 2 == 1) + + +class TestBitwiseUFuncs: + + _all_ints_bits = [ + np.dtype(c).itemsize * 8 for c in np.typecodes["AllInteger"]] + bitwise_types = [ + np.dtype(c) for c in '?' + np.typecodes["AllInteger"] + 'O'] + bitwise_bits = [ + 2, # boolean type + *_all_ints_bits, # All integers + max(_all_ints_bits) + 1, # Object_ type + ] + + def test_values(self): + for dt in self.bitwise_types: + zeros = np.array([0], dtype=dt) + ones = np.array([-1]).astype(dt) + msg = "dt = '%s'" % dt.char + + assert_equal(np.bitwise_not(zeros), ones, err_msg=msg) + assert_equal(np.bitwise_not(ones), zeros, err_msg=msg) + + assert_equal(np.bitwise_or(zeros, zeros), zeros, err_msg=msg) + assert_equal(np.bitwise_or(zeros, ones), ones, err_msg=msg) + assert_equal(np.bitwise_or(ones, zeros), ones, err_msg=msg) + assert_equal(np.bitwise_or(ones, ones), ones, err_msg=msg) + + assert_equal(np.bitwise_xor(zeros, zeros), zeros, err_msg=msg) + assert_equal(np.bitwise_xor(zeros, ones), ones, err_msg=msg) + assert_equal(np.bitwise_xor(ones, zeros), ones, err_msg=msg) + assert_equal(np.bitwise_xor(ones, ones), zeros, err_msg=msg) + + assert_equal(np.bitwise_and(zeros, zeros), zeros, err_msg=msg) + assert_equal(np.bitwise_and(zeros, ones), zeros, err_msg=msg) + assert_equal(np.bitwise_and(ones, zeros), zeros, err_msg=msg) + assert_equal(np.bitwise_and(ones, ones), ones, err_msg=msg) + + def test_types(self): + for dt in self.bitwise_types: + zeros = np.array([0], dtype=dt) + ones = np.array([-1]).astype(dt) + msg = "dt = '%s'" % dt.char + + assert_(np.bitwise_not(zeros).dtype == dt, msg) + assert_(np.bitwise_or(zeros, zeros).dtype == dt, msg) + assert_(np.bitwise_xor(zeros, zeros).dtype == dt, msg) + assert_(np.bitwise_and(zeros, zeros).dtype == dt, msg) + + def test_identity(self): + assert_(np.bitwise_or.identity == 0, 'bitwise_or') + assert_(np.bitwise_xor.identity == 0, 'bitwise_xor') + assert_(np.bitwise_and.identity == -1, 'bitwise_and') + + def test_reduction(self): + binary_funcs = (np.bitwise_or, np.bitwise_xor, np.bitwise_and) + + for dt in self.bitwise_types: + zeros = np.array([0], dtype=dt) + ones = np.array([-1]).astype(dt) + for f in binary_funcs: + msg = "dt: '%s', f: '%s'" % (dt, f) + assert_equal(f.reduce(zeros), zeros, err_msg=msg) + assert_equal(f.reduce(ones), ones, err_msg=msg) + + # Test empty reduction, no object dtype + for dt in self.bitwise_types[:-1]: + # No object array types + empty = np.array([], dtype=dt) + for f in binary_funcs: + msg = "dt: '%s', f: '%s'" % (dt, f) + tgt = np.array(f.identity).astype(dt) + res = f.reduce(empty) + assert_equal(res, tgt, err_msg=msg) + assert_(res.dtype == tgt.dtype, msg) + + # Empty object arrays use the identity. Note that the types may + # differ, the actual type used is determined by the assign_identity + # function and is not the same as the type returned by the identity + # method. + for f in binary_funcs: + msg = "dt: '%s'" % (f,) + empty = np.array([], dtype=object) + tgt = f.identity + res = f.reduce(empty) + assert_equal(res, tgt, err_msg=msg) + + # Non-empty object arrays do not use the identity + for f in binary_funcs: + msg = "dt: '%s'" % (f,) + btype = np.array([True], dtype=object) + assert_(type(f.reduce(btype)) is bool, msg) + + @pytest.mark.parametrize("input_dtype_obj, bitsize", + zip(bitwise_types, bitwise_bits)) + def test_bitwise_count(self, input_dtype_obj, bitsize): + input_dtype = input_dtype_obj.type + + for i in range(1, bitsize): + num = 2**i - 1 + msg = f"bitwise_count for {num}" + assert i == np.bitwise_count(input_dtype(num)), msg + if np.issubdtype( + input_dtype, np.signedinteger) or input_dtype == np.object_: + assert i == np.bitwise_count(input_dtype(-num)), msg + + a = np.array([2**i-1 for i in range(1, bitsize)], dtype=input_dtype) + bitwise_count_a = np.bitwise_count(a) + expected = np.arange(1, bitsize, dtype=input_dtype) + + msg = f"array bitwise_count for {input_dtype}" + assert all(bitwise_count_a == expected), msg + + +class TestInt: + def test_logical_not(self): + x = np.ones(10, dtype=np.int16) + o = np.ones(10 * 2, dtype=bool) + tgt = o.copy() + tgt[::2] = False + os = o[::2] + assert_array_equal(np.logical_not(x, out=os), False) + assert_array_equal(o, tgt) + + +class TestFloatingPoint: + def test_floating_point(self): + assert_equal(ncu.FLOATING_POINT_SUPPORT, 1) + + +class TestDegrees: + def test_degrees(self): + assert_almost_equal(ncu.degrees(np.pi), 180.0) + assert_almost_equal(ncu.degrees(-0.5*np.pi), -90.0) + + +class TestRadians: + def test_radians(self): + assert_almost_equal(ncu.radians(180.0), np.pi) + assert_almost_equal(ncu.radians(-90.0), -0.5*np.pi) + + +class TestHeavside: + def test_heaviside(self): + x = np.array([[-30.0, -0.1, 0.0, 0.2], [7.5, np.nan, np.inf, -np.inf]]) + expectedhalf = np.array([[0.0, 0.0, 0.5, 1.0], [1.0, np.nan, 1.0, 0.0]]) + expected1 = expectedhalf.copy() + expected1[0, 2] = 1 + + h = ncu.heaviside(x, 0.5) + assert_equal(h, expectedhalf) + + h = ncu.heaviside(x, 1.0) + assert_equal(h, expected1) + + x = x.astype(np.float32) + + h = ncu.heaviside(x, np.float32(0.5)) + assert_equal(h, expectedhalf.astype(np.float32)) + + h = ncu.heaviside(x, np.float32(1.0)) + assert_equal(h, expected1.astype(np.float32)) + + +class TestSign: + def test_sign(self): + a = np.array([np.inf, -np.inf, np.nan, 0.0, 3.0, -3.0]) + out = np.zeros(a.shape) + tgt = np.array([1., -1., np.nan, 0.0, 1.0, -1.0]) + + with np.errstate(invalid='ignore'): + res = ncu.sign(a) + assert_equal(res, tgt) + res = ncu.sign(a, out) + assert_equal(res, tgt) + assert_equal(out, tgt) + + def test_sign_complex(self): + a = np.array([ + np.inf, -np.inf, complex(0, np.inf), complex(0, -np.inf), + complex(np.inf, np.inf), complex(np.inf, -np.inf), # nan + np.nan, complex(0, np.nan), complex(np.nan, np.nan), # nan + 0.0, # 0. + 3.0, -3.0, -2j, 3.0+4.0j, -8.0+6.0j + ]) + out = np.zeros(a.shape, a.dtype) + tgt = np.array([ + 1., -1., 1j, -1j, + ] + [complex(np.nan, np.nan)] * 5 + [ + 0.0, + 1.0, -1.0, -1j, 0.6+0.8j, -0.8+0.6j]) + + with np.errstate(invalid='ignore'): + res = ncu.sign(a) + assert_equal(res, tgt) + res = ncu.sign(a, out) + assert_(res is out) + assert_equal(res, tgt) + + def test_sign_dtype_object(self): + # In reference to github issue #6229 + + foo = np.array([-.1, 0, .1]) + a = np.sign(foo.astype(object)) + b = np.sign(foo) + + assert_array_equal(a, b) + + def test_sign_dtype_nan_object(self): + # In reference to github issue #6229 + def test_nan(): + foo = np.array([np.nan]) + # FIXME: a not used + a = np.sign(foo.astype(object)) + + assert_raises(TypeError, test_nan) + +class TestMinMax: + def test_minmax_blocked(self): + # simd tests on max/min, test all alignments, slow but important + # for 2 * vz + 2 * (vs - 1) + 1 (unrolled once) + for dt, sz in [(np.float32, 15), (np.float64, 7)]: + for out, inp, msg in _gen_alignment_data(dtype=dt, type='unary', + max_size=sz): + for i in range(inp.size): + inp[:] = np.arange(inp.size, dtype=dt) + inp[i] = np.nan + emsg = lambda: '%r\n%s' % (inp, msg) + with suppress_warnings() as sup: + sup.filter(RuntimeWarning, + "invalid value encountered in reduce") + assert_(np.isnan(inp.max()), msg=emsg) + assert_(np.isnan(inp.min()), msg=emsg) + + inp[i] = 1e10 + assert_equal(inp.max(), 1e10, err_msg=msg) + inp[i] = -1e10 + assert_equal(inp.min(), -1e10, err_msg=msg) + + def test_lower_align(self): + # check data that is not aligned to element size + # i.e doubles are aligned to 4 bytes on i386 + d = np.zeros(23 * 8, dtype=np.int8)[4:-4].view(np.float64) + assert_equal(d.max(), d[0]) + assert_equal(d.min(), d[0]) + + def test_reduce_reorder(self): + # gh 10370, 11029 Some compilers reorder the call to npy_getfloatstatus + # and put it before the call to an intrinsic function that causes + # invalid status to be set. Also make sure warnings are not emitted + for n in (2, 4, 8, 16, 32): + for dt in (np.float32, np.float16, np.complex64): + for r in np.diagflat(np.array([np.nan] * n, dtype=dt)): + assert_equal(np.min(r), np.nan) + + def test_minimize_no_warns(self): + a = np.minimum(np.nan, 1) + assert_equal(a, np.nan) + + +class TestAbsoluteNegative: + def test_abs_neg_blocked(self): + # simd tests on abs, test all alignments for vz + 2 * (vs - 1) + 1 + for dt, sz in [(np.float32, 11), (np.float64, 5)]: + for out, inp, msg in _gen_alignment_data(dtype=dt, type='unary', + max_size=sz): + tgt = [ncu.absolute(i) for i in inp] + np.absolute(inp, out=out) + assert_equal(out, tgt, err_msg=msg) + assert_((out >= 0).all()) + + tgt = [-1*(i) for i in inp] + np.negative(inp, out=out) + assert_equal(out, tgt, err_msg=msg) + + for v in [np.nan, -np.inf, np.inf]: + for i in range(inp.size): + d = np.arange(inp.size, dtype=dt) + inp[:] = -d + inp[i] = v + d[i] = -v if v == -np.inf else v + assert_array_equal(np.abs(inp), d, err_msg=msg) + np.abs(inp, out=out) + assert_array_equal(out, d, err_msg=msg) + + assert_array_equal(-inp, -1*inp, err_msg=msg) + d = -1 * inp + np.negative(inp, out=out) + assert_array_equal(out, d, err_msg=msg) + + def test_lower_align(self): + # check data that is not aligned to element size + # i.e doubles are aligned to 4 bytes on i386 + d = np.zeros(23 * 8, dtype=np.int8)[4:-4].view(np.float64) + assert_equal(np.abs(d), d) + assert_equal(np.negative(d), -d) + np.negative(d, out=d) + np.negative(np.ones_like(d), out=d) + np.abs(d, out=d) + np.abs(np.ones_like(d), out=d) + + @pytest.mark.parametrize("dtype", ['d', 'f', 'int32', 'int64']) + @pytest.mark.parametrize("big", [True, False]) + def test_noncontiguous(self, dtype, big): + data = np.array([-1.0, 1.0, -0.0, 0.0, 2.2251e-308, -2.5, 2.5, -6, + 6, -2.2251e-308, -8, 10], dtype=dtype) + expect = np.array([1.0, -1.0, 0.0, -0.0, -2.2251e-308, 2.5, -2.5, 6, + -6, 2.2251e-308, 8, -10], dtype=dtype) + if big: + data = np.repeat(data, 10) + expect = np.repeat(expect, 10) + out = np.ndarray(data.shape, dtype=dtype) + ncontig_in = data[1::2] + ncontig_out = out[1::2] + contig_in = np.array(ncontig_in) + # contig in, contig out + assert_array_equal(np.negative(contig_in), expect[1::2]) + # contig in, ncontig out + assert_array_equal(np.negative(contig_in, out=ncontig_out), + expect[1::2]) + # ncontig in, contig out + assert_array_equal(np.negative(ncontig_in), expect[1::2]) + # ncontig in, ncontig out + assert_array_equal(np.negative(ncontig_in, out=ncontig_out), + expect[1::2]) + # contig in, contig out, nd stride + data_split = np.array(np.array_split(data, 2)) + expect_split = np.array(np.array_split(expect, 2)) + assert_equal(np.negative(data_split), expect_split) + + +class TestPositive: + def test_valid(self): + valid_dtypes = [int, float, complex, object] + for dtype in valid_dtypes: + x = np.arange(5, dtype=dtype) + result = np.positive(x) + assert_equal(x, result, err_msg=str(dtype)) + + def test_invalid(self): + with assert_raises(TypeError): + np.positive(True) + with assert_raises(TypeError): + np.positive(np.datetime64('2000-01-01')) + with assert_raises(TypeError): + np.positive(np.array(['foo'], dtype=str)) + with assert_raises(TypeError): + np.positive(np.array(['bar'], dtype=object)) + + +class TestSpecialMethods: + def test_wrap(self): + + class with_wrap: + def __array__(self, dtype=None, copy=None): + return np.zeros(1) + + def __array_wrap__(self, arr, context, return_scalar): + r = with_wrap() + r.arr = arr + r.context = context + return r + + a = with_wrap() + x = ncu.minimum(a, a) + assert_equal(x.arr, np.zeros(1)) + func, args, i = x.context + assert_(func is ncu.minimum) + assert_equal(len(args), 2) + assert_equal(args[0], a) + assert_equal(args[1], a) + assert_equal(i, 0) + + def test_wrap_out(self): + # Calling convention for out should not affect how special methods are + # called + + class StoreArrayPrepareWrap(np.ndarray): + _wrap_args = None + _prepare_args = None + + def __new__(cls): + return np.zeros(()).view(cls) + + def __array_wrap__(self, obj, context, return_scalar): + self._wrap_args = context[1] + return obj + + @property + def args(self): + # We need to ensure these are fetched at the same time, before + # any other ufuncs are called by the assertions + return self._wrap_args + + def __repr__(self): + return "a" # for short test output + + def do_test(f_call, f_expected): + a = StoreArrayPrepareWrap() + + f_call(a) + + w = a.args + expected = f_expected(a) + try: + assert w == expected + except AssertionError as e: + # assert_equal produces truly useless error messages + raise AssertionError("\n".join([ + "Bad arguments passed in ufunc call", + " expected: {}".format(expected), + " __array_wrap__ got: {}".format(w) + ])) + + # method not on the out argument + do_test(lambda a: np.add(a, 0), lambda a: (a, 0)) + do_test(lambda a: np.add(a, 0, None), lambda a: (a, 0)) + do_test(lambda a: np.add(a, 0, out=None), lambda a: (a, 0)) + do_test(lambda a: np.add(a, 0, out=(None,)), lambda a: (a, 0)) + + # method on the out argument + do_test(lambda a: np.add(0, 0, a), lambda a: (0, 0, a)) + do_test(lambda a: np.add(0, 0, out=a), lambda a: (0, 0, a)) + do_test(lambda a: np.add(0, 0, out=(a,)), lambda a: (0, 0, a)) + + # Also check the where mask handling: + do_test(lambda a: np.add(a, 0, where=False), lambda a: (a, 0)) + do_test(lambda a: np.add(0, 0, a, where=False), lambda a: (0, 0, a)) + + def test_wrap_with_iterable(self): + # test fix for bug #1026: + + class with_wrap(np.ndarray): + __array_priority__ = 10 + + def __new__(cls): + return np.asarray(1).view(cls).copy() + + def __array_wrap__(self, arr, context, return_scalar): + return arr.view(type(self)) + + a = with_wrap() + x = ncu.multiply(a, (1, 2, 3)) + assert_(isinstance(x, with_wrap)) + assert_array_equal(x, np.array((1, 2, 3))) + + def test_priority_with_scalar(self): + # test fix for bug #826: + + class A(np.ndarray): + __array_priority__ = 10 + + def __new__(cls): + return np.asarray(1.0, 'float64').view(cls).copy() + + a = A() + x = np.float64(1)*a + assert_(isinstance(x, A)) + assert_array_equal(x, np.array(1)) + + def test_priority(self): + + class A: + def __array__(self, dtype=None, copy=None): + return np.zeros(1) + + def __array_wrap__(self, arr, context, return_scalar): + r = type(self)() + r.arr = arr + r.context = context + return r + + class B(A): + __array_priority__ = 20. + + class C(A): + __array_priority__ = 40. + + x = np.zeros(1) + a = A() + b = B() + c = C() + f = ncu.minimum + assert_(type(f(x, x)) is np.ndarray) + assert_(type(f(x, a)) is A) + assert_(type(f(x, b)) is B) + assert_(type(f(x, c)) is C) + assert_(type(f(a, x)) is A) + assert_(type(f(b, x)) is B) + assert_(type(f(c, x)) is C) + + assert_(type(f(a, a)) is A) + assert_(type(f(a, b)) is B) + assert_(type(f(b, a)) is B) + assert_(type(f(b, b)) is B) + assert_(type(f(b, c)) is C) + assert_(type(f(c, b)) is C) + assert_(type(f(c, c)) is C) + + assert_(type(ncu.exp(a) is A)) + assert_(type(ncu.exp(b) is B)) + assert_(type(ncu.exp(c) is C)) + + def test_failing_wrap(self): + + class A: + def __array__(self, dtype=None, copy=None): + return np.zeros(2) + + def __array_wrap__(self, arr, context, return_scalar): + raise RuntimeError + + a = A() + assert_raises(RuntimeError, ncu.maximum, a, a) + assert_raises(RuntimeError, ncu.maximum.reduce, a) + + def test_failing_out_wrap(self): + + singleton = np.array([1.0]) + + class Ok(np.ndarray): + def __array_wrap__(self, obj, context, return_scalar): + return singleton + + class Bad(np.ndarray): + def __array_wrap__(self, obj, context, return_scalar): + raise RuntimeError + + ok = np.empty(1).view(Ok) + bad = np.empty(1).view(Bad) + # double-free (segfault) of "ok" if "bad" raises an exception + for i in range(10): + assert_raises(RuntimeError, ncu.frexp, 1, ok, bad) + + def test_none_wrap(self): + # Tests that issue #8507 is resolved. Previously, this would segfault + + class A: + def __array__(self, dtype=None, copy=None): + return np.zeros(1) + + def __array_wrap__(self, arr, context=None, return_scalar=False): + return None + + a = A() + assert_equal(ncu.maximum(a, a), None) + + def test_default_prepare(self): + + class with_wrap: + __array_priority__ = 10 + + def __array__(self, dtype=None, copy=None): + return np.zeros(1) + + def __array_wrap__(self, arr, context, return_scalar): + return arr + + a = with_wrap() + x = ncu.minimum(a, a) + assert_equal(x, np.zeros(1)) + assert_equal(type(x), np.ndarray) + + def test_array_too_many_args(self): + + class A: + def __array__(self, dtype, context, copy=None): + return np.zeros(1) + + a = A() + assert_raises_regex(TypeError, '2 required positional', np.sum, a) + + def test_ufunc_override(self): + # check override works even with instance with high priority. + class A: + def __array_ufunc__(self, func, method, *inputs, **kwargs): + return self, func, method, inputs, kwargs + + class MyNDArray(np.ndarray): + __array_priority__ = 100 + + a = A() + b = np.array([1]).view(MyNDArray) + res0 = np.multiply(a, b) + res1 = np.multiply(b, b, out=a) + + # self + assert_equal(res0[0], a) + assert_equal(res1[0], a) + assert_equal(res0[1], np.multiply) + assert_equal(res1[1], np.multiply) + assert_equal(res0[2], '__call__') + assert_equal(res1[2], '__call__') + assert_equal(res0[3], (a, b)) + assert_equal(res1[3], (b, b)) + assert_equal(res0[4], {}) + assert_equal(res1[4], {'out': (a,)}) + + def test_ufunc_override_mro(self): + + # Some multi arg functions for testing. + def tres_mul(a, b, c): + return a * b * c + + def quatro_mul(a, b, c, d): + return a * b * c * d + + # Make these into ufuncs. + three_mul_ufunc = np.frompyfunc(tres_mul, 3, 1) + four_mul_ufunc = np.frompyfunc(quatro_mul, 4, 1) + + class A: + def __array_ufunc__(self, func, method, *inputs, **kwargs): + return "A" + + class ASub(A): + def __array_ufunc__(self, func, method, *inputs, **kwargs): + return "ASub" + + class B: + def __array_ufunc__(self, func, method, *inputs, **kwargs): + return "B" + + class C: + def __init__(self): + self.count = 0 + + def __array_ufunc__(self, func, method, *inputs, **kwargs): + self.count += 1 + return NotImplemented + + class CSub(C): + def __array_ufunc__(self, func, method, *inputs, **kwargs): + self.count += 1 + return NotImplemented + + a = A() + a_sub = ASub() + b = B() + c = C() + + # Standard + res = np.multiply(a, a_sub) + assert_equal(res, "ASub") + res = np.multiply(a_sub, b) + assert_equal(res, "ASub") + + # With 1 NotImplemented + res = np.multiply(c, a) + assert_equal(res, "A") + assert_equal(c.count, 1) + # Check our counter works, so we can trust tests below. + res = np.multiply(c, a) + assert_equal(c.count, 2) + + # Both NotImplemented. + c = C() + c_sub = CSub() + assert_raises(TypeError, np.multiply, c, c_sub) + assert_equal(c.count, 1) + assert_equal(c_sub.count, 1) + c.count = c_sub.count = 0 + assert_raises(TypeError, np.multiply, c_sub, c) + assert_equal(c.count, 1) + assert_equal(c_sub.count, 1) + c.count = 0 + assert_raises(TypeError, np.multiply, c, c) + assert_equal(c.count, 1) + c.count = 0 + assert_raises(TypeError, np.multiply, 2, c) + assert_equal(c.count, 1) + + # Ternary testing. + assert_equal(three_mul_ufunc(a, 1, 2), "A") + assert_equal(three_mul_ufunc(1, a, 2), "A") + assert_equal(three_mul_ufunc(1, 2, a), "A") + + assert_equal(three_mul_ufunc(a, a, 6), "A") + assert_equal(three_mul_ufunc(a, 2, a), "A") + assert_equal(three_mul_ufunc(a, 2, b), "A") + assert_equal(three_mul_ufunc(a, 2, a_sub), "ASub") + assert_equal(three_mul_ufunc(a, a_sub, 3), "ASub") + c.count = 0 + assert_equal(three_mul_ufunc(c, a_sub, 3), "ASub") + assert_equal(c.count, 1) + c.count = 0 + assert_equal(three_mul_ufunc(1, a_sub, c), "ASub") + assert_equal(c.count, 0) + + c.count = 0 + assert_equal(three_mul_ufunc(a, b, c), "A") + assert_equal(c.count, 0) + c_sub.count = 0 + assert_equal(three_mul_ufunc(a, b, c_sub), "A") + assert_equal(c_sub.count, 0) + assert_equal(three_mul_ufunc(1, 2, b), "B") + + assert_raises(TypeError, three_mul_ufunc, 1, 2, c) + assert_raises(TypeError, three_mul_ufunc, c_sub, 2, c) + assert_raises(TypeError, three_mul_ufunc, c_sub, 2, 3) + + # Quaternary testing. + assert_equal(four_mul_ufunc(a, 1, 2, 3), "A") + assert_equal(four_mul_ufunc(1, a, 2, 3), "A") + assert_equal(four_mul_ufunc(1, 1, a, 3), "A") + assert_equal(four_mul_ufunc(1, 1, 2, a), "A") + + assert_equal(four_mul_ufunc(a, b, 2, 3), "A") + assert_equal(four_mul_ufunc(1, a, 2, b), "A") + assert_equal(four_mul_ufunc(b, 1, a, 3), "B") + assert_equal(four_mul_ufunc(a_sub, 1, 2, a), "ASub") + assert_equal(four_mul_ufunc(a, 1, 2, a_sub), "ASub") + + c = C() + c_sub = CSub() + assert_raises(TypeError, four_mul_ufunc, 1, 2, 3, c) + assert_equal(c.count, 1) + c.count = 0 + assert_raises(TypeError, four_mul_ufunc, 1, 2, c_sub, c) + assert_equal(c_sub.count, 1) + assert_equal(c.count, 1) + c2 = C() + c.count = c_sub.count = 0 + assert_raises(TypeError, four_mul_ufunc, 1, c, c_sub, c2) + assert_equal(c_sub.count, 1) + assert_equal(c.count, 1) + assert_equal(c2.count, 0) + c.count = c2.count = c_sub.count = 0 + assert_raises(TypeError, four_mul_ufunc, c2, c, c_sub, c) + assert_equal(c_sub.count, 1) + assert_equal(c.count, 0) + assert_equal(c2.count, 1) + + def test_ufunc_override_methods(self): + + class A: + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return self, ufunc, method, inputs, kwargs + + # __call__ + a = A() + with assert_raises(TypeError): + np.multiply.__call__(1, a, foo='bar', answer=42) + res = np.multiply.__call__(1, a, subok='bar', where=42) + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], '__call__') + assert_equal(res[3], (1, a)) + assert_equal(res[4], {'subok': 'bar', 'where': 42}) + + # __call__, wrong args + assert_raises(TypeError, np.multiply, a) + assert_raises(TypeError, np.multiply, a, a, a, a) + assert_raises(TypeError, np.multiply, a, a, sig='a', signature='a') + assert_raises(TypeError, ncu_tests.inner1d, a, a, axis=0, axes=[0, 0]) + + # reduce, positional args + res = np.multiply.reduce(a, 'axis0', 'dtype0', 'out0', 'keep0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'reduce') + assert_equal(res[3], (a,)) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'keepdims': 'keep0', + 'axis': 'axis0'}) + + # reduce, kwargs + res = np.multiply.reduce(a, axis='axis0', dtype='dtype0', out='out0', + keepdims='keep0', initial='init0', + where='where0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'reduce') + assert_equal(res[3], (a,)) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'keepdims': 'keep0', + 'axis': 'axis0', + 'initial': 'init0', + 'where': 'where0'}) + + # reduce, output equal to None removed, but not other explicit ones, + # even if they are at their default value. + res = np.multiply.reduce(a, 0, None, None, False) + assert_equal(res[4], {'axis': 0, 'dtype': None, 'keepdims': False}) + res = np.multiply.reduce(a, out=None, axis=0, keepdims=True) + assert_equal(res[4], {'axis': 0, 'keepdims': True}) + res = np.multiply.reduce(a, None, out=(None,), dtype=None) + assert_equal(res[4], {'axis': None, 'dtype': None}) + res = np.multiply.reduce(a, 0, None, None, False, 2, True) + assert_equal(res[4], {'axis': 0, 'dtype': None, 'keepdims': False, + 'initial': 2, 'where': True}) + # np._NoValue ignored for initial + res = np.multiply.reduce(a, 0, None, None, False, + np._NoValue, True) + assert_equal(res[4], {'axis': 0, 'dtype': None, 'keepdims': False, + 'where': True}) + # None kept for initial, True for where. + res = np.multiply.reduce(a, 0, None, None, False, None, True) + assert_equal(res[4], {'axis': 0, 'dtype': None, 'keepdims': False, + 'initial': None, 'where': True}) + + # reduce, wrong args + assert_raises(ValueError, np.multiply.reduce, a, out=()) + assert_raises(ValueError, np.multiply.reduce, a, out=('out0', 'out1')) + assert_raises(TypeError, np.multiply.reduce, a, 'axis0', axis='axis0') + + # accumulate, pos args + res = np.multiply.accumulate(a, 'axis0', 'dtype0', 'out0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'accumulate') + assert_equal(res[3], (a,)) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'axis': 'axis0'}) + + # accumulate, kwargs + res = np.multiply.accumulate(a, axis='axis0', dtype='dtype0', + out='out0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'accumulate') + assert_equal(res[3], (a,)) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'axis': 'axis0'}) + + # accumulate, output equal to None removed. + res = np.multiply.accumulate(a, 0, None, None) + assert_equal(res[4], {'axis': 0, 'dtype': None}) + res = np.multiply.accumulate(a, out=None, axis=0, dtype='dtype1') + assert_equal(res[4], {'axis': 0, 'dtype': 'dtype1'}) + res = np.multiply.accumulate(a, None, out=(None,), dtype=None) + assert_equal(res[4], {'axis': None, 'dtype': None}) + + # accumulate, wrong args + assert_raises(ValueError, np.multiply.accumulate, a, out=()) + assert_raises(ValueError, np.multiply.accumulate, a, + out=('out0', 'out1')) + assert_raises(TypeError, np.multiply.accumulate, a, + 'axis0', axis='axis0') + + # reduceat, pos args + res = np.multiply.reduceat(a, [4, 2], 'axis0', 'dtype0', 'out0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'reduceat') + assert_equal(res[3], (a, [4, 2])) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'axis': 'axis0'}) + + # reduceat, kwargs + res = np.multiply.reduceat(a, [4, 2], axis='axis0', dtype='dtype0', + out='out0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'reduceat') + assert_equal(res[3], (a, [4, 2])) + assert_equal(res[4], {'dtype':'dtype0', + 'out': ('out0',), + 'axis': 'axis0'}) + + # reduceat, output equal to None removed. + res = np.multiply.reduceat(a, [4, 2], 0, None, None) + assert_equal(res[4], {'axis': 0, 'dtype': None}) + res = np.multiply.reduceat(a, [4, 2], axis=None, out=None, dtype='dt') + assert_equal(res[4], {'axis': None, 'dtype': 'dt'}) + res = np.multiply.reduceat(a, [4, 2], None, None, out=(None,)) + assert_equal(res[4], {'axis': None, 'dtype': None}) + + # reduceat, wrong args + assert_raises(ValueError, np.multiply.reduce, a, [4, 2], out=()) + assert_raises(ValueError, np.multiply.reduce, a, [4, 2], + out=('out0', 'out1')) + assert_raises(TypeError, np.multiply.reduce, a, [4, 2], + 'axis0', axis='axis0') + + # outer + res = np.multiply.outer(a, 42) + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'outer') + assert_equal(res[3], (a, 42)) + assert_equal(res[4], {}) + + # outer, wrong args + assert_raises(TypeError, np.multiply.outer, a) + assert_raises(TypeError, np.multiply.outer, a, a, a, a) + assert_raises(TypeError, np.multiply.outer, a, a, sig='a', signature='a') + + # at + res = np.multiply.at(a, [4, 2], 'b0') + assert_equal(res[0], a) + assert_equal(res[1], np.multiply) + assert_equal(res[2], 'at') + assert_equal(res[3], (a, [4, 2], 'b0')) + + # at, wrong args + assert_raises(TypeError, np.multiply.at, a) + assert_raises(TypeError, np.multiply.at, a, a, a, a) + + def test_ufunc_override_out(self): + + class A: + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return kwargs + + class B: + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return kwargs + + a = A() + b = B() + res0 = np.multiply(a, b, 'out_arg') + res1 = np.multiply(a, b, out='out_arg') + res2 = np.multiply(2, b, 'out_arg') + res3 = np.multiply(3, b, out='out_arg') + res4 = np.multiply(a, 4, 'out_arg') + res5 = np.multiply(a, 5, out='out_arg') + + assert_equal(res0['out'][0], 'out_arg') + assert_equal(res1['out'][0], 'out_arg') + assert_equal(res2['out'][0], 'out_arg') + assert_equal(res3['out'][0], 'out_arg') + assert_equal(res4['out'][0], 'out_arg') + assert_equal(res5['out'][0], 'out_arg') + + # ufuncs with multiple output modf and frexp. + res6 = np.modf(a, 'out0', 'out1') + res7 = np.frexp(a, 'out0', 'out1') + assert_equal(res6['out'][0], 'out0') + assert_equal(res6['out'][1], 'out1') + assert_equal(res7['out'][0], 'out0') + assert_equal(res7['out'][1], 'out1') + + # While we're at it, check that default output is never passed on. + assert_(np.sin(a, None) == {}) + assert_(np.sin(a, out=None) == {}) + assert_(np.sin(a, out=(None,)) == {}) + assert_(np.modf(a, None) == {}) + assert_(np.modf(a, None, None) == {}) + assert_(np.modf(a, out=(None, None)) == {}) + with assert_raises(TypeError): + # Out argument must be tuple, since there are multiple outputs. + np.modf(a, out=None) + + # don't give positional and output argument, or too many arguments. + # wrong number of arguments in the tuple is an error too. + assert_raises(TypeError, np.multiply, a, b, 'one', out='two') + assert_raises(TypeError, np.multiply, a, b, 'one', 'two') + assert_raises(ValueError, np.multiply, a, b, out=('one', 'two')) + assert_raises(TypeError, np.multiply, a, out=()) + assert_raises(TypeError, np.modf, a, 'one', out=('two', 'three')) + assert_raises(TypeError, np.modf, a, 'one', 'two', 'three') + assert_raises(ValueError, np.modf, a, out=('one', 'two', 'three')) + assert_raises(ValueError, np.modf, a, out=('one',)) + + def test_ufunc_override_where(self): + + class OverriddenArrayOld(np.ndarray): + + def _unwrap(self, objs): + cls = type(self) + result = [] + for obj in objs: + if isinstance(obj, cls): + obj = np.array(obj) + elif type(obj) != np.ndarray: + return NotImplemented + result.append(obj) + return result + + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + + inputs = self._unwrap(inputs) + if inputs is NotImplemented: + return NotImplemented + + kwargs = kwargs.copy() + if "out" in kwargs: + kwargs["out"] = self._unwrap(kwargs["out"]) + if kwargs["out"] is NotImplemented: + return NotImplemented + + r = super().__array_ufunc__(ufunc, method, *inputs, **kwargs) + if r is not NotImplemented: + r = r.view(type(self)) + + return r + + class OverriddenArrayNew(OverriddenArrayOld): + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + + kwargs = kwargs.copy() + if "where" in kwargs: + kwargs["where"] = self._unwrap((kwargs["where"], )) + if kwargs["where"] is NotImplemented: + return NotImplemented + else: + kwargs["where"] = kwargs["where"][0] + + r = super().__array_ufunc__(ufunc, method, *inputs, **kwargs) + if r is not NotImplemented: + r = r.view(type(self)) + + return r + + ufunc = np.negative + + array = np.array([1, 2, 3]) + where = np.array([True, False, True]) + expected = ufunc(array, where=where) + + with pytest.raises(TypeError): + ufunc(array, where=where.view(OverriddenArrayOld)) + + result_1 = ufunc( + array, + where=where.view(OverriddenArrayNew) + ) + assert isinstance(result_1, OverriddenArrayNew) + assert np.all(np.array(result_1) == expected, where=where) + + result_2 = ufunc( + array.view(OverriddenArrayNew), + where=where.view(OverriddenArrayNew) + ) + assert isinstance(result_2, OverriddenArrayNew) + assert np.all(np.array(result_2) == expected, where=where) + + def test_ufunc_override_exception(self): + + class A: + def __array_ufunc__(self, *a, **kwargs): + raise ValueError("oops") + + a = A() + assert_raises(ValueError, np.negative, 1, out=a) + assert_raises(ValueError, np.negative, a) + assert_raises(ValueError, np.divide, 1., a) + + def test_ufunc_override_not_implemented(self): + + class A: + def __array_ufunc__(self, *args, **kwargs): + return NotImplemented + + msg = ("operand type(s) all returned NotImplemented from " + "__array_ufunc__(, '__call__', <*>): 'A'") + with assert_raises_regex(TypeError, fnmatch.translate(msg)): + np.negative(A()) + + msg = ("operand type(s) all returned NotImplemented from " + "__array_ufunc__(, '__call__', <*>, , " + "out=(1,)): 'A', 'object', 'int'") + with assert_raises_regex(TypeError, fnmatch.translate(msg)): + np.add(A(), object(), out=1) + + def test_ufunc_override_disabled(self): + + class OptOut: + __array_ufunc__ = None + + opt_out = OptOut() + + # ufuncs always raise + msg = "operand 'OptOut' does not support ufuncs" + with assert_raises_regex(TypeError, msg): + np.add(opt_out, 1) + with assert_raises_regex(TypeError, msg): + np.add(1, opt_out) + with assert_raises_regex(TypeError, msg): + np.negative(opt_out) + + # opt-outs still hold even when other arguments have pathological + # __array_ufunc__ implementations + + class GreedyArray: + def __array_ufunc__(self, *args, **kwargs): + return self + + greedy = GreedyArray() + assert_(np.negative(greedy) is greedy) + with assert_raises_regex(TypeError, msg): + np.add(greedy, opt_out) + with assert_raises_regex(TypeError, msg): + np.add(greedy, 1, out=opt_out) + + def test_gufunc_override(self): + # gufunc are just ufunc instances, but follow a different path, + # so check __array_ufunc__ overrides them properly. + class A: + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + return self, ufunc, method, inputs, kwargs + + inner1d = ncu_tests.inner1d + a = A() + res = inner1d(a, a) + assert_equal(res[0], a) + assert_equal(res[1], inner1d) + assert_equal(res[2], '__call__') + assert_equal(res[3], (a, a)) + assert_equal(res[4], {}) + + res = inner1d(1, 1, out=a) + assert_equal(res[0], a) + assert_equal(res[1], inner1d) + assert_equal(res[2], '__call__') + assert_equal(res[3], (1, 1)) + assert_equal(res[4], {'out': (a,)}) + + # wrong number of arguments in the tuple is an error too. + assert_raises(TypeError, inner1d, a, out='two') + assert_raises(TypeError, inner1d, a, a, 'one', out='two') + assert_raises(TypeError, inner1d, a, a, 'one', 'two') + assert_raises(ValueError, inner1d, a, a, out=('one', 'two')) + assert_raises(ValueError, inner1d, a, a, out=()) + + def test_ufunc_override_with_super(self): + # NOTE: this class is used in doc/source/user/basics.subclassing.rst + # if you make any changes here, do update it there too. + class A(np.ndarray): + def __array_ufunc__(self, ufunc, method, *inputs, out=None, **kwargs): + args = [] + in_no = [] + for i, input_ in enumerate(inputs): + if isinstance(input_, A): + in_no.append(i) + args.append(input_.view(np.ndarray)) + else: + args.append(input_) + + outputs = out + out_no = [] + if outputs: + out_args = [] + for j, output in enumerate(outputs): + if isinstance(output, A): + out_no.append(j) + out_args.append(output.view(np.ndarray)) + else: + out_args.append(output) + kwargs['out'] = tuple(out_args) + else: + outputs = (None,) * ufunc.nout + + info = {} + if in_no: + info['inputs'] = in_no + if out_no: + info['outputs'] = out_no + + results = super().__array_ufunc__(ufunc, method, + *args, **kwargs) + if results is NotImplemented: + return NotImplemented + + if method == 'at': + if isinstance(inputs[0], A): + inputs[0].info = info + return + + if ufunc.nout == 1: + results = (results,) + + results = tuple((np.asarray(result).view(A) + if output is None else output) + for result, output in zip(results, outputs)) + if results and isinstance(results[0], A): + results[0].info = info + + return results[0] if len(results) == 1 else results + + class B: + def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): + if any(isinstance(input_, A) for input_ in inputs): + return "A!" + else: + return NotImplemented + + d = np.arange(5.) + # 1 input, 1 output + a = np.arange(5.).view(A) + b = np.sin(a) + check = np.sin(d) + assert_(np.all(check == b)) + assert_equal(b.info, {'inputs': [0]}) + b = np.sin(d, out=(a,)) + assert_(np.all(check == b)) + assert_equal(b.info, {'outputs': [0]}) + assert_(b is a) + a = np.arange(5.).view(A) + b = np.sin(a, out=a) + assert_(np.all(check == b)) + assert_equal(b.info, {'inputs': [0], 'outputs': [0]}) + + # 1 input, 2 outputs + a = np.arange(5.).view(A) + b1, b2 = np.modf(a) + assert_equal(b1.info, {'inputs': [0]}) + b1, b2 = np.modf(d, out=(None, a)) + assert_(b2 is a) + assert_equal(b1.info, {'outputs': [1]}) + a = np.arange(5.).view(A) + b = np.arange(5.).view(A) + c1, c2 = np.modf(a, out=(a, b)) + assert_(c1 is a) + assert_(c2 is b) + assert_equal(c1.info, {'inputs': [0], 'outputs': [0, 1]}) + + # 2 input, 1 output + a = np.arange(5.).view(A) + b = np.arange(5.).view(A) + c = np.add(a, b, out=a) + assert_(c is a) + assert_equal(c.info, {'inputs': [0, 1], 'outputs': [0]}) + # some tests with a non-ndarray subclass + a = np.arange(5.) + b = B() + assert_(a.__array_ufunc__(np.add, '__call__', a, b) is NotImplemented) + assert_(b.__array_ufunc__(np.add, '__call__', a, b) is NotImplemented) + assert_raises(TypeError, np.add, a, b) + a = a.view(A) + assert_(a.__array_ufunc__(np.add, '__call__', a, b) is NotImplemented) + assert_(b.__array_ufunc__(np.add, '__call__', a, b) == "A!") + assert_(np.add(a, b) == "A!") + # regression check for gh-9102 -- tests ufunc.reduce implicitly. + d = np.array([[1, 2, 3], [1, 2, 3]]) + a = d.view(A) + c = a.any() + check = d.any() + assert_equal(c, check) + assert_(c.info, {'inputs': [0]}) + c = a.max() + check = d.max() + assert_equal(c, check) + assert_(c.info, {'inputs': [0]}) + b = np.array(0).view(A) + c = a.max(out=b) + assert_equal(c, check) + assert_(c is b) + assert_(c.info, {'inputs': [0], 'outputs': [0]}) + check = a.max(axis=0) + b = np.zeros_like(check).view(A) + c = a.max(axis=0, out=b) + assert_equal(c, check) + assert_(c is b) + assert_(c.info, {'inputs': [0], 'outputs': [0]}) + # simple explicit tests of reduce, accumulate, reduceat + check = np.add.reduce(d, axis=1) + c = np.add.reduce(a, axis=1) + assert_equal(c, check) + assert_(c.info, {'inputs': [0]}) + b = np.zeros_like(c) + c = np.add.reduce(a, 1, None, b) + assert_equal(c, check) + assert_(c is b) + assert_(c.info, {'inputs': [0], 'outputs': [0]}) + check = np.add.accumulate(d, axis=0) + c = np.add.accumulate(a, axis=0) + assert_equal(c, check) + assert_(c.info, {'inputs': [0]}) + b = np.zeros_like(c) + c = np.add.accumulate(a, 0, None, b) + assert_equal(c, check) + assert_(c is b) + assert_(c.info, {'inputs': [0], 'outputs': [0]}) + indices = [0, 2, 1] + check = np.add.reduceat(d, indices, axis=1) + c = np.add.reduceat(a, indices, axis=1) + assert_equal(c, check) + assert_(c.info, {'inputs': [0]}) + b = np.zeros_like(c) + c = np.add.reduceat(a, indices, 1, None, b) + assert_equal(c, check) + assert_(c is b) + assert_(c.info, {'inputs': [0], 'outputs': [0]}) + # and a few tests for at + d = np.array([[1, 2, 3], [1, 2, 3]]) + check = d.copy() + a = d.copy().view(A) + np.add.at(check, ([0, 1], [0, 2]), 1.) + np.add.at(a, ([0, 1], [0, 2]), 1.) + assert_equal(a, check) + assert_(a.info, {'inputs': [0]}) + b = np.array(1.).view(A) + a = d.copy().view(A) + np.add.at(a, ([0, 1], [0, 2]), b) + assert_equal(a, check) + assert_(a.info, {'inputs': [0, 2]}) + + def test_array_ufunc_direct_call(self): + # This is mainly a regression test for gh-24023 (shouldn't segfault) + a = np.array(1) + with pytest.raises(TypeError): + a.__array_ufunc__() + + # No kwargs means kwargs may be NULL on the C-level + with pytest.raises(TypeError): + a.__array_ufunc__(1, 2) + + # And the same with a valid call: + res = a.__array_ufunc__(np.add, "__call__", a, a) + assert_array_equal(res, a + a) + + def test_ufunc_docstring(self): + original_doc = np.add.__doc__ + new_doc = "new docs" + expected_dict = ( + {} if IS_PYPY else {"__module__": "numpy", "__qualname__": "add"} + ) + + np.add.__doc__ = new_doc + assert np.add.__doc__ == new_doc + assert np.add.__dict__["__doc__"] == new_doc + + del np.add.__doc__ + assert np.add.__doc__ == original_doc + assert np.add.__dict__ == expected_dict + + np.add.__dict__["other"] = 1 + np.add.__dict__["__doc__"] = new_doc + assert np.add.__doc__ == new_doc + + del np.add.__dict__["__doc__"] + assert np.add.__doc__ == original_doc + del np.add.__dict__["other"] + assert np.add.__dict__ == expected_dict + + +class TestChoose: + def test_mixed(self): + c = np.array([True, True]) + a = np.array([True, True]) + assert_equal(np.choose(c, (a, 1)), np.array([1, 1])) + + +class TestRationalFunctions: + def test_lcm(self): + self._test_lcm_inner(np.int16) + self._test_lcm_inner(np.uint16) + + def test_lcm_object(self): + self._test_lcm_inner(np.object_) + + def test_gcd(self): + self._test_gcd_inner(np.int16) + self._test_lcm_inner(np.uint16) + + def test_gcd_object(self): + self._test_gcd_inner(np.object_) + + def _test_lcm_inner(self, dtype): + # basic use + a = np.array([12, 120], dtype=dtype) + b = np.array([20, 200], dtype=dtype) + assert_equal(np.lcm(a, b), [60, 600]) + + if not issubclass(dtype, np.unsignedinteger): + # negatives are ignored + a = np.array([12, -12, 12, -12], dtype=dtype) + b = np.array([20, 20, -20, -20], dtype=dtype) + assert_equal(np.lcm(a, b), [60]*4) + + # reduce + a = np.array([3, 12, 20], dtype=dtype) + assert_equal(np.lcm.reduce([3, 12, 20]), 60) + + # broadcasting, and a test including 0 + a = np.arange(6).astype(dtype) + b = 20 + assert_equal(np.lcm(a, b), [0, 20, 20, 60, 20, 20]) + + def _test_gcd_inner(self, dtype): + # basic use + a = np.array([12, 120], dtype=dtype) + b = np.array([20, 200], dtype=dtype) + assert_equal(np.gcd(a, b), [4, 40]) + + if not issubclass(dtype, np.unsignedinteger): + # negatives are ignored + a = np.array([12, -12, 12, -12], dtype=dtype) + b = np.array([20, 20, -20, -20], dtype=dtype) + assert_equal(np.gcd(a, b), [4]*4) + + # reduce + a = np.array([15, 25, 35], dtype=dtype) + assert_equal(np.gcd.reduce(a), 5) + + # broadcasting, and a test including 0 + a = np.arange(6).astype(dtype) + b = 20 + assert_equal(np.gcd(a, b), [20, 1, 2, 1, 4, 5]) + + def test_lcm_overflow(self): + # verify that we don't overflow when a*b does overflow + big = np.int32(np.iinfo(np.int32).max // 11) + a = 2*big + b = 5*big + assert_equal(np.lcm(a, b), 10*big) + + def test_gcd_overflow(self): + for dtype in (np.int32, np.int64): + # verify that we don't overflow when taking abs(x) + # not relevant for lcm, where the result is unrepresentable anyway + a = dtype(np.iinfo(dtype).min) # negative power of two + q = -(a // 4) + assert_equal(np.gcd(a, q*3), q) + assert_equal(np.gcd(a, -q*3), q) + + def test_decimal(self): + from decimal import Decimal + a = np.array([1, 1, -1, -1]) * Decimal('0.20') + b = np.array([1, -1, 1, -1]) * Decimal('0.12') + + assert_equal(np.gcd(a, b), 4*[Decimal('0.04')]) + assert_equal(np.lcm(a, b), 4*[Decimal('0.60')]) + + def test_float(self): + # not well-defined on float due to rounding errors + assert_raises(TypeError, np.gcd, 0.3, 0.4) + assert_raises(TypeError, np.lcm, 0.3, 0.4) + + def test_huge_integers(self): + # Converting to an array first is a bit different as it means we + # have an explicit object dtype: + assert_equal(np.array(2**200), 2**200) + # Special promotion rules should ensure that this also works for + # two Python integers (even if slow). + # (We do this for comparisons, as the result is always bool and + # we also special case array comparisons with Python integers) + np.equal(2**200, 2**200) + + # But, we cannot do this when it would affect the result dtype: + with pytest.raises(OverflowError): + np.gcd(2**100, 3**100) + + # Asking for `object` explicitly is fine, though: + assert np.gcd(2**100, 3**100, dtype=object) == 1 + + # As of now, the below work, because it is using arrays (which + # will be object arrays) + a = np.array(2**100 * 3**5) + b = np.array([2**100 * 5**7, 2**50 * 3**10]) + assert_equal(np.gcd(a, b), [2**100, 2**50 * 3**5]) + assert_equal(np.lcm(a, b), [2**100 * 3**5 * 5**7, 2**100 * 3**10]) + + def test_inf_and_nan(self): + inf = np.array([np.inf], dtype=np.object_) + assert_raises(ValueError, np.gcd, inf, 1) + assert_raises(ValueError, np.gcd, 1, inf) + assert_raises(ValueError, np.gcd, np.nan, inf) + assert_raises(TypeError, np.gcd, 4, float(np.inf)) + + + +class TestRoundingFunctions: + + def test_object_direct(self): + """ test direct implementation of these magic methods """ + class C: + def __floor__(self): + return 1 + def __ceil__(self): + return 2 + def __trunc__(self): + return 3 + + arr = np.array([C(), C()]) + assert_equal(np.floor(arr), [1, 1]) + assert_equal(np.ceil(arr), [2, 2]) + assert_equal(np.trunc(arr), [3, 3]) + + def test_object_indirect(self): + """ test implementations via __float__ """ + class C: + def __float__(self): + return -2.5 + + arr = np.array([C(), C()]) + assert_equal(np.floor(arr), [-3, -3]) + assert_equal(np.ceil(arr), [-2, -2]) + with pytest.raises(TypeError): + np.trunc(arr) # consistent with math.trunc + + def test_fraction(self): + f = Fraction(-4, 3) + assert_equal(np.floor(f), -2) + assert_equal(np.ceil(f), -1) + assert_equal(np.trunc(f), -1) + + @pytest.mark.parametrize('func', [np.floor, np.ceil, np.trunc]) + @pytest.mark.parametrize('dtype', [np.bool, np.float64, np.float32, + np.int64, np.uint32]) + def test_output_dtype(self, func, dtype): + arr = np.array([-2, 0, 4, 8]).astype(dtype) + result = func(arr) + assert_equal(arr, result) + assert result.dtype == dtype + + +class TestComplexFunctions: + funcs = [np.arcsin, np.arccos, np.arctan, np.arcsinh, np.arccosh, + np.arctanh, np.sin, np.cos, np.tan, np.exp, + np.exp2, np.log, np.sqrt, np.log10, np.log2, + np.log1p] + + def test_it(self): + for f in self.funcs: + if f is np.arccosh: + x = 1.5 + else: + x = .5 + fr = f(x) + fz = f(complex(x)) + assert_almost_equal(fz.real, fr, err_msg='real part %s' % f) + assert_almost_equal(fz.imag, 0., err_msg='imag part %s' % f) + + @pytest.mark.xfail(IS_WASM, reason="doesn't work") + def test_precisions_consistent(self): + z = 1 + 1j + for f in self.funcs: + fcf = f(np.csingle(z)) + fcd = f(np.cdouble(z)) + fcl = f(np.clongdouble(z)) + assert_almost_equal(fcf, fcd, decimal=6, err_msg='fch-fcd %s' % f) + assert_almost_equal(fcl, fcd, decimal=15, err_msg='fch-fcl %s' % f) + + @pytest.mark.xfail(IS_WASM, reason="doesn't work") + def test_branch_cuts(self): + # check branch cuts and continuity on them + _check_branch_cut(np.log, -0.5, 1j, 1, -1, True) + _check_branch_cut(np.log2, -0.5, 1j, 1, -1, True) + _check_branch_cut(np.log10, -0.5, 1j, 1, -1, True) + _check_branch_cut(np.log1p, -1.5, 1j, 1, -1, True) + _check_branch_cut(np.sqrt, -0.5, 1j, 1, -1, True) + + _check_branch_cut(np.arcsin, [ -2, 2], [1j, 1j], 1, -1, True) + _check_branch_cut(np.arccos, [ -2, 2], [1j, 1j], 1, -1, True) + _check_branch_cut(np.arctan, [0-2j, 2j], [1, 1], -1, 1, True) + + _check_branch_cut(np.arcsinh, [0-2j, 2j], [1, 1], -1, 1, True) + _check_branch_cut(np.arccosh, [ -1, 0.5], [1j, 1j], 1, -1, True) + _check_branch_cut(np.arctanh, [ -2, 2], [1j, 1j], 1, -1, True) + + # check against bogus branch cuts: assert continuity between quadrants + _check_branch_cut(np.arcsin, [0-2j, 2j], [ 1, 1], 1, 1) + _check_branch_cut(np.arccos, [0-2j, 2j], [ 1, 1], 1, 1) + _check_branch_cut(np.arctan, [ -2, 2], [1j, 1j], 1, 1) + + _check_branch_cut(np.arcsinh, [ -2, 2, 0], [1j, 1j, 1], 1, 1) + _check_branch_cut(np.arccosh, [0-2j, 2j, 2], [1, 1, 1j], 1, 1) + _check_branch_cut(np.arctanh, [0-2j, 2j, 0], [1, 1, 1j], 1, 1) + + @pytest.mark.xfail(IS_WASM, reason="doesn't work") + def test_branch_cuts_complex64(self): + # check branch cuts and continuity on them + _check_branch_cut(np.log, -0.5, 1j, 1, -1, True, np.complex64) + _check_branch_cut(np.log2, -0.5, 1j, 1, -1, True, np.complex64) + _check_branch_cut(np.log10, -0.5, 1j, 1, -1, True, np.complex64) + _check_branch_cut(np.log1p, -1.5, 1j, 1, -1, True, np.complex64) + _check_branch_cut(np.sqrt, -0.5, 1j, 1, -1, True, np.complex64) + + _check_branch_cut(np.arcsin, [ -2, 2], [1j, 1j], 1, -1, True, np.complex64) + _check_branch_cut(np.arccos, [ -2, 2], [1j, 1j], 1, -1, True, np.complex64) + _check_branch_cut(np.arctan, [0-2j, 2j], [1, 1], -1, 1, True, np.complex64) + + _check_branch_cut(np.arcsinh, [0-2j, 2j], [1, 1], -1, 1, True, np.complex64) + _check_branch_cut(np.arccosh, [ -1, 0.5], [1j, 1j], 1, -1, True, np.complex64) + _check_branch_cut(np.arctanh, [ -2, 2], [1j, 1j], 1, -1, True, np.complex64) + + # check against bogus branch cuts: assert continuity between quadrants + _check_branch_cut(np.arcsin, [0-2j, 2j], [ 1, 1], 1, 1, False, np.complex64) + _check_branch_cut(np.arccos, [0-2j, 2j], [ 1, 1], 1, 1, False, np.complex64) + _check_branch_cut(np.arctan, [ -2, 2], [1j, 1j], 1, 1, False, np.complex64) + + _check_branch_cut(np.arcsinh, [ -2, 2, 0], [1j, 1j, 1], 1, 1, False, np.complex64) + _check_branch_cut(np.arccosh, [0-2j, 2j, 2], [1, 1, 1j], 1, 1, False, np.complex64) + _check_branch_cut(np.arctanh, [0-2j, 2j, 0], [1, 1, 1j], 1, 1, False, np.complex64) + + def test_against_cmath(self): + import cmath + + points = [-1-1j, -1+1j, +1-1j, +1+1j] + name_map = {'arcsin': 'asin', 'arccos': 'acos', 'arctan': 'atan', + 'arcsinh': 'asinh', 'arccosh': 'acosh', 'arctanh': 'atanh'} + atol = 4*np.finfo(complex).eps + for func in self.funcs: + fname = func.__name__.split('.')[-1] + cname = name_map.get(fname, fname) + try: + cfunc = getattr(cmath, cname) + except AttributeError: + continue + for p in points: + a = complex(func(np.complex128(p))) + b = cfunc(p) + assert_( + abs(a - b) < atol, + "%s %s: %s; cmath: %s" % (fname, p, a, b) + ) + + @pytest.mark.xfail( + # manylinux2014 uses glibc2.17 + _glibc_older_than("2.18"), + reason="Older glibc versions are imprecise (maybe passes with SIMD?)" + ) + @pytest.mark.xfail(IS_WASM, reason="doesn't work") + @pytest.mark.parametrize('dtype', [ + np.complex64, np.complex128, np.clongdouble + ]) + def test_loss_of_precision(self, dtype): + """Check loss of precision in complex arc* functions""" + if dtype is np.clongdouble and platform.machine() != 'x86_64': + # Failures on musllinux, aarch64, s390x, ppc64le (see gh-17554) + pytest.skip('Only works reliably for x86-64 and recent glibc') + + # Check against known-good functions + + info = np.finfo(dtype) + real_dtype = dtype(0.).real.dtype + eps = info.eps + + def check(x, rtol): + x = x.astype(real_dtype) + + z = x.astype(dtype) + d = np.absolute(np.arcsinh(x)/np.arcsinh(z).real - 1) + assert_(np.all(d < rtol), (np.argmax(d), x[np.argmax(d)], d.max(), + 'arcsinh')) + + z = (1j*x).astype(dtype) + d = np.absolute(np.arcsinh(x)/np.arcsin(z).imag - 1) + assert_(np.all(d < rtol), (np.argmax(d), x[np.argmax(d)], d.max(), + 'arcsin')) + + z = x.astype(dtype) + d = np.absolute(np.arctanh(x)/np.arctanh(z).real - 1) + assert_(np.all(d < rtol), (np.argmax(d), x[np.argmax(d)], d.max(), + 'arctanh')) + + z = (1j*x).astype(dtype) + d = np.absolute(np.arctanh(x)/np.arctan(z).imag - 1) + assert_(np.all(d < rtol), (np.argmax(d), x[np.argmax(d)], d.max(), + 'arctan')) + + # The switchover was chosen as 1e-3; hence there can be up to + # ~eps/1e-3 of relative cancellation error before it + + x_series = np.logspace(-20, -3.001, 200) + x_basic = np.logspace(-2.999, 0, 10, endpoint=False) + + if dtype is np.clongdouble: + if bad_arcsinh(): + pytest.skip("Trig functions of np.clongdouble values known " + "to be inaccurate on aarch64 and PPC for some " + "compilation configurations.") + # It's not guaranteed that the system-provided arc functions + # are accurate down to a few epsilons. (Eg. on Linux 64-bit) + # So, give more leeway for long complex tests here: + check(x_series, 50.0*eps) + else: + check(x_series, 2.1*eps) + check(x_basic, 2.0*eps/1e-3) + + # Check a few points + + z = np.array([1e-5*(1+1j)], dtype=dtype) + p = 9.999999999333333333e-6 + 1.000000000066666666e-5j + d = np.absolute(1-np.arctanh(z)/p) + assert_(np.all(d < 1e-15)) + + p = 1.0000000000333333333e-5 + 9.999999999666666667e-6j + d = np.absolute(1-np.arcsinh(z)/p) + assert_(np.all(d < 1e-15)) + + p = 9.999999999333333333e-6j + 1.000000000066666666e-5 + d = np.absolute(1-np.arctan(z)/p) + assert_(np.all(d < 1e-15)) + + p = 1.0000000000333333333e-5j + 9.999999999666666667e-6 + d = np.absolute(1-np.arcsin(z)/p) + assert_(np.all(d < 1e-15)) + + # Check continuity across switchover points + + def check(func, z0, d=1): + z0 = np.asarray(z0, dtype=dtype) + zp = z0 + abs(z0) * d * eps * 2 + zm = z0 - abs(z0) * d * eps * 2 + assert_(np.all(zp != zm), (zp, zm)) + + # NB: the cancellation error at the switchover is at least eps + good = (abs(func(zp) - func(zm)) < 2*eps) + assert_(np.all(good), (func, z0[~good])) + + for func in (np.arcsinh, np.arcsinh, np.arcsin, np.arctanh, np.arctan): + pts = [rp+1j*ip for rp in (-1e-3, 0, 1e-3) for ip in(-1e-3, 0, 1e-3) + if rp != 0 or ip != 0] + check(func, pts, 1) + check(func, pts, 1j) + check(func, pts, 1+1j) + + @np.errstate(all="ignore") + def test_promotion_corner_cases(self): + for func in self.funcs: + assert func(np.float16(1)).dtype == np.float16 + # Integer to low precision float promotion is a dubious choice: + assert func(np.uint8(1)).dtype == np.float16 + assert func(np.int16(1)).dtype == np.float32 + + +class TestAttributes: + def test_attributes(self): + add = ncu.add + assert_equal(add.__name__, 'add') + assert_(add.ntypes >= 18) # don't fail if types added + assert_('ii->i' in add.types) + assert_equal(add.nin, 2) + assert_equal(add.nout, 1) + assert_equal(add.identity, 0) + + def test_doc(self): + # don't bother checking the long list of kwargs, which are likely to + # change + assert_(ncu.add.__doc__.startswith( + "add(x1, x2, /, out=None, *, where=True")) + assert_(ncu.frexp.__doc__.startswith( + "frexp(x[, out1, out2], / [, out=(None, None)], *, where=True")) + + +class TestSubclass: + + def test_subclass_op(self): + + class simple(np.ndarray): + def __new__(subtype, shape): + self = np.ndarray.__new__(subtype, shape, dtype=object) + self.fill(0) + return self + + a = simple((3, 4)) + assert_equal(a+a, a) + + +class TestFrompyfunc: + + def test_identity(self): + def mul(a, b): + return a * b + + # with identity=value + mul_ufunc = np.frompyfunc(mul, nin=2, nout=1, identity=1) + assert_equal(mul_ufunc.reduce([2, 3, 4]), 24) + assert_equal(mul_ufunc.reduce(np.ones((2, 2)), axis=(0, 1)), 1) + assert_equal(mul_ufunc.reduce([]), 1) + + # with identity=None (reorderable) + mul_ufunc = np.frompyfunc(mul, nin=2, nout=1, identity=None) + assert_equal(mul_ufunc.reduce([2, 3, 4]), 24) + assert_equal(mul_ufunc.reduce(np.ones((2, 2)), axis=(0, 1)), 1) + assert_raises(ValueError, lambda: mul_ufunc.reduce([])) + + # with no identity (not reorderable) + mul_ufunc = np.frompyfunc(mul, nin=2, nout=1) + assert_equal(mul_ufunc.reduce([2, 3, 4]), 24) + assert_raises(ValueError, lambda: mul_ufunc.reduce(np.ones((2, 2)), axis=(0, 1))) + assert_raises(ValueError, lambda: mul_ufunc.reduce([])) + + +def _check_branch_cut(f, x0, dx, re_sign=1, im_sign=-1, sig_zero_ok=False, + dtype=complex): + """ + Check for a branch cut in a function. + + Assert that `x0` lies on a branch cut of function `f` and `f` is + continuous from the direction `dx`. + + Parameters + ---------- + f : func + Function to check + x0 : array-like + Point on branch cut + dx : array-like + Direction to check continuity in + re_sign, im_sign : {1, -1} + Change of sign of the real or imaginary part expected + sig_zero_ok : bool + Whether to check if the branch cut respects signed zero (if applicable) + dtype : dtype + Dtype to check (should be complex) + + """ + x0 = np.atleast_1d(x0).astype(dtype) + dx = np.atleast_1d(dx).astype(dtype) + + if np.dtype(dtype).char == 'F': + scale = np.finfo(dtype).eps * 1e2 + atol = np.float32(1e-2) + else: + scale = np.finfo(dtype).eps * 1e3 + atol = 1e-4 + + y0 = f(x0) + yp = f(x0 + dx*scale*np.absolute(x0)/np.absolute(dx)) + ym = f(x0 - dx*scale*np.absolute(x0)/np.absolute(dx)) + + assert_(np.all(np.absolute(y0.real - yp.real) < atol), (y0, yp)) + assert_(np.all(np.absolute(y0.imag - yp.imag) < atol), (y0, yp)) + assert_(np.all(np.absolute(y0.real - ym.real*re_sign) < atol), (y0, ym)) + assert_(np.all(np.absolute(y0.imag - ym.imag*im_sign) < atol), (y0, ym)) + + if sig_zero_ok: + # check that signed zeros also work as a displacement + jr = (x0.real == 0) & (dx.real != 0) + ji = (x0.imag == 0) & (dx.imag != 0) + if np.any(jr): + x = x0[jr] + x.real = ncu.NZERO + ym = f(x) + assert_(np.all(np.absolute(y0[jr].real - ym.real*re_sign) < atol), (y0[jr], ym)) + assert_(np.all(np.absolute(y0[jr].imag - ym.imag*im_sign) < atol), (y0[jr], ym)) + + if np.any(ji): + x = x0[ji] + x.imag = ncu.NZERO + ym = f(x) + assert_(np.all(np.absolute(y0[ji].real - ym.real*re_sign) < atol), (y0[ji], ym)) + assert_(np.all(np.absolute(y0[ji].imag - ym.imag*im_sign) < atol), (y0[ji], ym)) + +def test_copysign(): + assert_(np.copysign(1, -1) == -1) + with np.errstate(divide="ignore"): + assert_(1 / np.copysign(0, -1) < 0) + assert_(1 / np.copysign(0, 1) > 0) + assert_(np.signbit(np.copysign(np.nan, -1))) + assert_(not np.signbit(np.copysign(np.nan, 1))) + +def _test_nextafter(t): + one = t(1) + two = t(2) + zero = t(0) + eps = np.finfo(t).eps + assert_(np.nextafter(one, two) - one == eps) + assert_(np.nextafter(one, zero) - one < 0) + assert_(np.isnan(np.nextafter(np.nan, one))) + assert_(np.isnan(np.nextafter(one, np.nan))) + assert_(np.nextafter(one, one) == one) + +def test_nextafter(): + return _test_nextafter(np.float64) + + +def test_nextafterf(): + return _test_nextafter(np.float32) + + +@pytest.mark.skipif(np.finfo(np.double) == np.finfo(np.longdouble), + reason="long double is same as double") +@pytest.mark.xfail(condition=platform.machine().startswith("ppc64"), + reason="IBM double double") +def test_nextafterl(): + return _test_nextafter(np.longdouble) + + +def test_nextafter_0(): + for t, direction in itertools.product(np._core.sctypes['float'], (1, -1)): + # The value of tiny for double double is NaN, so we need to pass the + # assert + with suppress_warnings() as sup: + sup.filter(UserWarning) + if not np.isnan(np.finfo(t).tiny): + tiny = np.finfo(t).tiny + assert_( + 0. < direction * np.nextafter(t(0), t(direction)) < tiny) + assert_equal(np.nextafter(t(0), t(direction)) / t(2.1), direction * 0.0) + +def _test_spacing(t): + one = t(1) + eps = np.finfo(t).eps + nan = t(np.nan) + inf = t(np.inf) + with np.errstate(invalid='ignore'): + assert_equal(np.spacing(one), eps) + assert_(np.isnan(np.spacing(nan))) + assert_(np.isnan(np.spacing(inf))) + assert_(np.isnan(np.spacing(-inf))) + assert_(np.spacing(t(1e30)) != 0) + +def test_spacing(): + return _test_spacing(np.float64) + +def test_spacingf(): + return _test_spacing(np.float32) + + +@pytest.mark.skipif(np.finfo(np.double) == np.finfo(np.longdouble), + reason="long double is same as double") +@pytest.mark.xfail(condition=platform.machine().startswith("ppc64"), + reason="IBM double double") +def test_spacingl(): + return _test_spacing(np.longdouble) + +def test_spacing_gfortran(): + # Reference from this fortran file, built with gfortran 4.3.3 on linux + # 32bits: + # PROGRAM test_spacing + # INTEGER, PARAMETER :: SGL = SELECTED_REAL_KIND(p=6, r=37) + # INTEGER, PARAMETER :: DBL = SELECTED_REAL_KIND(p=13, r=200) + # + # WRITE(*,*) spacing(0.00001_DBL) + # WRITE(*,*) spacing(1.0_DBL) + # WRITE(*,*) spacing(1000._DBL) + # WRITE(*,*) spacing(10500._DBL) + # + # WRITE(*,*) spacing(0.00001_SGL) + # WRITE(*,*) spacing(1.0_SGL) + # WRITE(*,*) spacing(1000._SGL) + # WRITE(*,*) spacing(10500._SGL) + # END PROGRAM + ref = {np.float64: [1.69406589450860068E-021, + 2.22044604925031308E-016, + 1.13686837721616030E-013, + 1.81898940354585648E-012], + np.float32: [9.09494702E-13, + 1.19209290E-07, + 6.10351563E-05, + 9.76562500E-04]} + + for dt, dec_ in zip([np.float32, np.float64], (10, 20)): + x = np.array([1e-5, 1, 1000, 10500], dtype=dt) + assert_array_almost_equal(np.spacing(x), ref[dt], decimal=dec_) + +def test_nextafter_vs_spacing(): + # XXX: spacing does not handle long double yet + for t in [np.float32, np.float64]: + for _f in [1, 1e-5, 1000]: + f = t(_f) + f1 = t(_f + 1) + assert_(np.nextafter(f, f1) - f == np.spacing(f)) + +def test_pos_nan(): + """Check np.nan is a positive nan.""" + assert_(np.signbit(np.nan) == 0) + +def test_reduceat(): + """Test bug in reduceat when structured arrays are not copied.""" + db = np.dtype([('name', 'S11'), ('time', np.int64), ('value', np.float32)]) + a = np.empty([100], dtype=db) + a['name'] = 'Simple' + a['time'] = 10 + a['value'] = 100 + indx = [0, 7, 15, 25] + + h2 = [] + val1 = indx[0] + for val2 in indx[1:]: + h2.append(np.add.reduce(a['value'][val1:val2])) + val1 = val2 + h2.append(np.add.reduce(a['value'][val1:])) + h2 = np.array(h2) + + # test buffered -- this should work + h1 = np.add.reduceat(a['value'], indx) + assert_array_almost_equal(h1, h2) + + # This is when the error occurs. + # test no buffer + np.setbufsize(32) + h1 = np.add.reduceat(a['value'], indx) + np.setbufsize(ncu.UFUNC_BUFSIZE_DEFAULT) + assert_array_almost_equal(h1, h2) + +def test_reduceat_empty(): + """Reduceat should work with empty arrays""" + indices = np.array([], 'i4') + x = np.array([], 'f8') + result = np.add.reduceat(x, indices) + assert_equal(result.dtype, x.dtype) + assert_equal(result.shape, (0,)) + # Another case with a slightly different zero-sized shape + x = np.ones((5, 2)) + result = np.add.reduceat(x, [], axis=0) + assert_equal(result.dtype, x.dtype) + assert_equal(result.shape, (0, 2)) + result = np.add.reduceat(x, [], axis=1) + assert_equal(result.dtype, x.dtype) + assert_equal(result.shape, (5, 0)) + +def test_complex_nan_comparisons(): + nans = [complex(np.nan, 0), complex(0, np.nan), complex(np.nan, np.nan)] + fins = [complex(1, 0), complex(-1, 0), complex(0, 1), complex(0, -1), + complex(1, 1), complex(-1, -1), complex(0, 0)] + + with np.errstate(invalid='ignore'): + for x in nans + fins: + x = np.array([x]) + for y in nans + fins: + y = np.array([y]) + + if np.isfinite(x) and np.isfinite(y): + continue + + assert_equal(x < y, False, err_msg="%r < %r" % (x, y)) + assert_equal(x > y, False, err_msg="%r > %r" % (x, y)) + assert_equal(x <= y, False, err_msg="%r <= %r" % (x, y)) + assert_equal(x >= y, False, err_msg="%r >= %r" % (x, y)) + assert_equal(x == y, False, err_msg="%r == %r" % (x, y)) + + +def test_rint_big_int(): + # np.rint bug for large integer values on Windows 32-bit and MKL + # https://github.com/numpy/numpy/issues/6685 + val = 4607998452777363968 + # This is exactly representable in floating point + assert_equal(val, int(float(val))) + # Rint should not change the value + assert_equal(val, np.rint(val)) + + +@pytest.mark.parametrize('ftype', [np.float32, np.float64]) +def test_memoverlap_accumulate(ftype): + # Reproduces bug https://github.com/numpy/numpy/issues/15597 + arr = np.array([0.61, 0.60, 0.77, 0.41, 0.19], dtype=ftype) + out_max = np.array([0.61, 0.61, 0.77, 0.77, 0.77], dtype=ftype) + out_min = np.array([0.61, 0.60, 0.60, 0.41, 0.19], dtype=ftype) + assert_equal(np.maximum.accumulate(arr), out_max) + assert_equal(np.minimum.accumulate(arr), out_min) + +@pytest.mark.parametrize("ufunc, dtype", [ + (ufunc, t[0]) + for ufunc in UFUNCS_BINARY_ACC + for t in ufunc.types + if t[-1] == '?' and t[0] not in 'DFGMmO' +]) +def test_memoverlap_accumulate_cmp(ufunc, dtype): + if ufunc.signature: + pytest.skip('For generic signatures only') + for size in (2, 8, 32, 64, 128, 256): + arr = np.array([0, 1, 1]*size, dtype=dtype) + acc = ufunc.accumulate(arr, dtype='?') + acc_u8 = acc.view(np.uint8) + exp = np.array(list(itertools.accumulate(arr, ufunc)), dtype=np.uint8) + assert_equal(exp, acc_u8) + +@pytest.mark.parametrize("ufunc, dtype", [ + (ufunc, t[0]) + for ufunc in UFUNCS_BINARY_ACC + for t in ufunc.types + if t[0] == t[1] and t[0] == t[-1] and t[0] not in 'DFGMmO?' +]) +def test_memoverlap_accumulate_symmetric(ufunc, dtype): + if ufunc.signature: + pytest.skip('For generic signatures only') + with np.errstate(all='ignore'): + for size in (2, 8, 32, 64, 128, 256): + arr = np.array([0, 1, 2]*size).astype(dtype) + acc = ufunc.accumulate(arr, dtype=dtype) + exp = np.array(list(itertools.accumulate(arr, ufunc)), dtype=dtype) + assert_equal(exp, acc) + +def test_signaling_nan_exceptions(): + with assert_no_warnings(): + a = np.ndarray(shape=(), dtype='float32', buffer=b'\x00\xe0\xbf\xff') + np.isnan(a) + +@pytest.mark.parametrize("arr", [ + np.arange(2), + np.matrix([0, 1]), + np.matrix([[0, 1], [2, 5]]), + ]) +def test_outer_subclass_preserve(arr): + # for gh-8661 + class foo(np.ndarray): + pass + actual = np.multiply.outer(arr.view(foo), arr.view(foo)) + assert actual.__class__.__name__ == 'foo' + +def test_outer_bad_subclass(): + class BadArr1(np.ndarray): + def __array_finalize__(self, obj): + # The outer call reshapes to 3 dims, try to do a bad reshape. + if self.ndim == 3: + self.shape = self.shape + (1,) + + class BadArr2(np.ndarray): + def __array_finalize__(self, obj): + if isinstance(obj, BadArr2): + # outer inserts 1-sized dims. In that case disturb them. + if self.shape[-1] == 1: + self.shape = self.shape[::-1] + + for cls in [BadArr1, BadArr2]: + arr = np.ones((2, 3)).view(cls) + with assert_raises(TypeError) as a: + # The first array gets reshaped (not the second one) + np.add.outer(arr, [1, 2]) + + # This actually works, since we only see the reshaping error: + arr = np.ones((2, 3)).view(cls) + assert type(np.add.outer([1, 2], arr)) is cls + +def test_outer_exceeds_maxdims(): + deep = np.ones((1,) * 33) + with assert_raises(ValueError): + np.add.outer(deep, deep) + +def test_bad_legacy_ufunc_silent_errors(): + # legacy ufuncs can't report errors and NumPy can't check if the GIL + # is released. So NumPy has to check after the GIL is released just to + # cover all bases. `np.power` uses/used to use this. + arr = np.arange(3).astype(np.float64) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error(arr, arr) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + # not contiguous means the fast-path cannot be taken + non_contig = arr.repeat(20).reshape(-1, 6)[:, ::2] + ncu_tests.always_error(non_contig, arr) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error.outer(arr, arr) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error.reduce(arr) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error.reduceat(arr, [0, 1]) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error.accumulate(arr) + + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error.at(arr, [0, 1, 2], arr) + + +@pytest.mark.parametrize('x1', [np.arange(3.0), [0.0, 1.0, 2.0]]) +def test_bad_legacy_gufunc_silent_errors(x1): + # Verify that an exception raised in a gufunc loop propagates correctly. + # The signature of always_error_gufunc is '(i),()->()'. + with pytest.raises(RuntimeError, match=r"How unexpected :\)!"): + ncu_tests.always_error_gufunc(x1, 0.0) + + +class TestAddDocstring: + @pytest.mark.skipif(sys.flags.optimize == 2, reason="Python running -OO") + @pytest.mark.skipif(IS_PYPY, reason="PyPy does not modify tp_doc") + def test_add_same_docstring(self): + # test for attributes (which are C-level defined) + ncu.add_docstring(np.ndarray.flat, np.ndarray.flat.__doc__) + + # And typical functions: + def func(): + """docstring""" + return + + ncu.add_docstring(func, func.__doc__) + + @pytest.mark.skipif(sys.flags.optimize == 2, reason="Python running -OO") + def test_different_docstring_fails(self): + # test for attributes (which are C-level defined) + with assert_raises(RuntimeError): + ncu.add_docstring(np.ndarray.flat, "different docstring") + + # And typical functions: + def func(): + """docstring""" + return + + with assert_raises(RuntimeError): + ncu.add_docstring(func, "different docstring") + + +class TestAdd_newdoc_ufunc: + @pytest.mark.filterwarnings("ignore:_add_newdoc_ufunc:DeprecationWarning") + def test_ufunc_arg(self): + assert_raises(TypeError, ncu._add_newdoc_ufunc, 2, "blah") + assert_raises(ValueError, ncu._add_newdoc_ufunc, np.add, "blah") + + @pytest.mark.filterwarnings("ignore:_add_newdoc_ufunc:DeprecationWarning") + def test_string_arg(self): + assert_raises(TypeError, ncu._add_newdoc_ufunc, np.add, 3) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_accuracy.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_accuracy.py new file mode 100644 index 0000000000000000000000000000000000000000..ccc55a0a2e1633d5a5087933d82b721eb1bf78b3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_accuracy.py @@ -0,0 +1,121 @@ +import numpy as np +import os +from os import path +import sys +import pytest +from ctypes import c_longlong, c_double, c_float, c_int, cast, pointer, POINTER +from numpy.testing import assert_array_max_ulp +from numpy.testing._private.utils import _glibc_older_than +from numpy._core._multiarray_umath import __cpu_features__ + +UNARY_UFUNCS = [obj for obj in np._core.umath.__dict__.values() if + isinstance(obj, np.ufunc)] +UNARY_OBJECT_UFUNCS = [uf for uf in UNARY_UFUNCS if "O->O" in uf.types] + +# Remove functions that do not support `floats` +UNARY_OBJECT_UFUNCS.remove(np.invert) +UNARY_OBJECT_UFUNCS.remove(np.bitwise_count) + +IS_AVX = __cpu_features__.get('AVX512F', False) or \ + (__cpu_features__.get('FMA3', False) and __cpu_features__.get('AVX2', False)) + +IS_AVX512FP16 = __cpu_features__.get('AVX512FP16', False) + +# only run on linux with AVX, also avoid old glibc (numpy/numpy#20448). +runtest = (sys.platform.startswith('linux') + and IS_AVX and not _glibc_older_than("2.17")) +platform_skip = pytest.mark.skipif(not runtest, + reason="avoid testing inconsistent platform " + "library implementations") + +# convert string to hex function taken from: +# https://stackoverflow.com/questions/1592158/convert-hex-to-float # +def convert(s, datatype="np.float32"): + i = int(s, 16) # convert from hex to a Python int + if (datatype == "np.float64"): + cp = pointer(c_longlong(i)) # make this into a c long long integer + fp = cast(cp, POINTER(c_double)) # cast the int pointer to a double pointer + else: + cp = pointer(c_int(i)) # make this into a c integer + fp = cast(cp, POINTER(c_float)) # cast the int pointer to a float pointer + + return fp.contents.value # dereference the pointer, get the float + +str_to_float = np.vectorize(convert) + +class TestAccuracy: + @platform_skip + def test_validate_transcendentals(self): + with np.errstate(all='ignore'): + data_dir = path.join(path.dirname(__file__), 'data') + files = os.listdir(data_dir) + files = list(filter(lambda f: f.endswith('.csv'), files)) + for filename in files: + filepath = path.join(data_dir, filename) + with open(filepath) as fid: + file_without_comments = ( + r for r in fid if r[0] not in ('$', '#') + ) + data = np.genfromtxt(file_without_comments, + dtype=('|S39','|S39','|S39',int), + names=('type','input','output','ulperr'), + delimiter=',', + skip_header=1) + npname = path.splitext(filename)[0].split('-')[3] + npfunc = getattr(np, npname) + for datatype in np.unique(data['type']): + data_subset = data[data['type'] == datatype] + inval = np.array(str_to_float(data_subset['input'].astype(str), data_subset['type'].astype(str)), dtype=eval(datatype)) + outval = np.array(str_to_float(data_subset['output'].astype(str), data_subset['type'].astype(str)), dtype=eval(datatype)) + perm = np.random.permutation(len(inval)) + inval = inval[perm] + outval = outval[perm] + maxulperr = data_subset['ulperr'].max() + assert_array_max_ulp(npfunc(inval), outval, maxulperr) + + @pytest.mark.skipif(IS_AVX512FP16, + reason = "SVML FP16 have slightly higher ULP errors") + @pytest.mark.parametrize("ufunc", UNARY_OBJECT_UFUNCS) + def test_validate_fp16_transcendentals(self, ufunc): + with np.errstate(all='ignore'): + arr = np.arange(65536, dtype=np.int16) + datafp16 = np.frombuffer(arr.tobytes(), dtype=np.float16) + datafp32 = datafp16.astype(np.float32) + assert_array_max_ulp(ufunc(datafp16), ufunc(datafp32), + maxulp=1, dtype=np.float16) + + @pytest.mark.skipif(not IS_AVX512FP16, + reason="lower ULP only apply for SVML FP16") + def test_validate_svml_fp16(self): + max_ulp_err = { + "arccos": 2.54, + "arccosh": 2.09, + "arcsin": 3.06, + "arcsinh": 1.51, + "arctan": 2.61, + "arctanh": 1.88, + "cbrt": 1.57, + "cos": 1.43, + "cosh": 1.33, + "exp2": 1.33, + "exp": 1.27, + "expm1": 0.53, + "log": 1.80, + "log10": 1.27, + "log1p": 1.88, + "log2": 1.80, + "sin": 1.88, + "sinh": 2.05, + "tan": 2.26, + "tanh": 3.00, + } + + with np.errstate(all='ignore'): + arr = np.arange(65536, dtype=np.int16) + datafp16 = np.frombuffer(arr.tobytes(), dtype=np.float16) + datafp32 = datafp16.astype(np.float32) + for func in max_ulp_err: + ufunc = getattr(np, func) + ulp = np.ceil(max_ulp_err[func]) + assert_array_max_ulp(ufunc(datafp16), ufunc(datafp32), + maxulp=ulp, dtype=np.float16) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_complex.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_complex.py new file mode 100644 index 0000000000000000000000000000000000000000..cc54c16da2e3e70595188c285c12257131ea9287 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_core/tests/test_umath_complex.py @@ -0,0 +1,622 @@ +import sys +import platform +import pytest + +import numpy as np +# import the c-extension module directly since _arg is not exported via umath +import numpy._core._multiarray_umath as ncu +from numpy.testing import ( + assert_raises, assert_equal, assert_array_equal, assert_almost_equal, assert_array_max_ulp + ) + +# TODO: branch cuts (use Pauli code) +# TODO: conj 'symmetry' +# TODO: FPU exceptions + +# At least on Windows the results of many complex functions are not conforming +# to the C99 standard. See ticket 1574. +# Ditto for Solaris (ticket 1642) and OS X on PowerPC. +#FIXME: this will probably change when we require full C99 compatibility +with np.errstate(all='ignore'): + functions_seem_flaky = ((np.exp(complex(np.inf, 0)).imag != 0) + or (np.log(complex(ncu.NZERO, 0)).imag != np.pi)) +# TODO: replace with a check on whether platform-provided C99 funcs are used +xfail_complex_tests = (not sys.platform.startswith('linux') or functions_seem_flaky) + +# TODO This can be xfail when the generator functions are got rid of. +platform_skip = pytest.mark.skipif(xfail_complex_tests, + reason="Inadequate C99 complex support") + + + +class TestCexp: + def test_simple(self): + check = check_complex_value + f = np.exp + + check(f, 1, 0, np.exp(1), 0, False) + check(f, 0, 1, np.cos(1), np.sin(1), False) + + ref = np.exp(1) * complex(np.cos(1), np.sin(1)) + check(f, 1, 1, ref.real, ref.imag, False) + + @platform_skip + def test_special_values(self): + # C99: Section G 6.3.1 + + check = check_complex_value + f = np.exp + + # cexp(+-0 + 0i) is 1 + 0i + check(f, ncu.PZERO, 0, 1, 0, False) + check(f, ncu.NZERO, 0, 1, 0, False) + + # cexp(x + infi) is nan + nani for finite x and raises 'invalid' FPU + # exception + check(f, 1, np.inf, np.nan, np.nan) + check(f, -1, np.inf, np.nan, np.nan) + check(f, 0, np.inf, np.nan, np.nan) + + # cexp(inf + 0i) is inf + 0i + check(f, np.inf, 0, np.inf, 0) + + # cexp(-inf + yi) is +0 * (cos(y) + i sin(y)) for finite y + check(f, -np.inf, 1, ncu.PZERO, ncu.PZERO) + check(f, -np.inf, 0.75 * np.pi, ncu.NZERO, ncu.PZERO) + + # cexp(inf + yi) is +inf * (cos(y) + i sin(y)) for finite y + check(f, np.inf, 1, np.inf, np.inf) + check(f, np.inf, 0.75 * np.pi, -np.inf, np.inf) + + # cexp(-inf + inf i) is +-0 +- 0i (signs unspecified) + def _check_ninf_inf(dummy): + msgform = "cexp(-inf, inf) is (%f, %f), expected (+-0, +-0)" + with np.errstate(invalid='ignore'): + z = f(np.array(complex(-np.inf, np.inf))) + if z.real != 0 or z.imag != 0: + raise AssertionError(msgform % (z.real, z.imag)) + + _check_ninf_inf(None) + + # cexp(inf + inf i) is +-inf + NaNi and raised invalid FPU ex. + def _check_inf_inf(dummy): + msgform = "cexp(inf, inf) is (%f, %f), expected (+-inf, nan)" + with np.errstate(invalid='ignore'): + z = f(np.array(complex(np.inf, np.inf))) + if not np.isinf(z.real) or not np.isnan(z.imag): + raise AssertionError(msgform % (z.real, z.imag)) + + _check_inf_inf(None) + + # cexp(-inf + nan i) is +-0 +- 0i + def _check_ninf_nan(dummy): + msgform = "cexp(-inf, nan) is (%f, %f), expected (+-0, +-0)" + with np.errstate(invalid='ignore'): + z = f(np.array(complex(-np.inf, np.nan))) + if z.real != 0 or z.imag != 0: + raise AssertionError(msgform % (z.real, z.imag)) + + _check_ninf_nan(None) + + # cexp(inf + nan i) is +-inf + nan + def _check_inf_nan(dummy): + msgform = "cexp(-inf, nan) is (%f, %f), expected (+-inf, nan)" + with np.errstate(invalid='ignore'): + z = f(np.array(complex(np.inf, np.nan))) + if not np.isinf(z.real) or not np.isnan(z.imag): + raise AssertionError(msgform % (z.real, z.imag)) + + _check_inf_nan(None) + + # cexp(nan + yi) is nan + nani for y != 0 (optional: raises invalid FPU + # ex) + check(f, np.nan, 1, np.nan, np.nan) + check(f, np.nan, -1, np.nan, np.nan) + + check(f, np.nan, np.inf, np.nan, np.nan) + check(f, np.nan, -np.inf, np.nan, np.nan) + + # cexp(nan + nani) is nan + nani + check(f, np.nan, np.nan, np.nan, np.nan) + + # TODO This can be xfail when the generator functions are got rid of. + @pytest.mark.skip(reason="cexp(nan + 0I) is wrong on most platforms") + def test_special_values2(self): + # XXX: most implementations get it wrong here (including glibc <= 2.10) + # cexp(nan + 0i) is nan + 0i + check = check_complex_value + f = np.exp + + check(f, np.nan, 0, np.nan, 0) + +class TestClog: + def test_simple(self): + x = np.array([1+0j, 1+2j]) + y_r = np.log(np.abs(x)) + 1j * np.angle(x) + y = np.log(x) + assert_almost_equal(y, y_r) + + @platform_skip + @pytest.mark.skipif(platform.machine() == "armv5tel", reason="See gh-413.") + def test_special_values(self): + xl = [] + yl = [] + + # From C99 std (Sec 6.3.2) + # XXX: check exceptions raised + # --- raise for invalid fails. + + # clog(-0 + i0) returns -inf + i pi and raises the 'divide-by-zero' + # floating-point exception. + with np.errstate(divide='raise'): + x = np.array([ncu.NZERO], dtype=complex) + y = complex(-np.inf, np.pi) + assert_raises(FloatingPointError, np.log, x) + with np.errstate(divide='ignore'): + assert_almost_equal(np.log(x), y) + + xl.append(x) + yl.append(y) + + # clog(+0 + i0) returns -inf + i0 and raises the 'divide-by-zero' + # floating-point exception. + with np.errstate(divide='raise'): + x = np.array([0], dtype=complex) + y = complex(-np.inf, 0) + assert_raises(FloatingPointError, np.log, x) + with np.errstate(divide='ignore'): + assert_almost_equal(np.log(x), y) + + xl.append(x) + yl.append(y) + + # clog(x + i inf returns +inf + i pi /2, for finite x. + x = np.array([complex(1, np.inf)], dtype=complex) + y = complex(np.inf, 0.5 * np.pi) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + x = np.array([complex(-1, np.inf)], dtype=complex) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(x + iNaN) returns NaN + iNaN and optionally raises the + # 'invalid' floating- point exception, for finite x. + with np.errstate(invalid='raise'): + x = np.array([complex(1., np.nan)], dtype=complex) + y = complex(np.nan, np.nan) + #assert_raises(FloatingPointError, np.log, x) + with np.errstate(invalid='ignore'): + assert_almost_equal(np.log(x), y) + + xl.append(x) + yl.append(y) + + with np.errstate(invalid='raise'): + x = np.array([np.inf + 1j * np.nan], dtype=complex) + #assert_raises(FloatingPointError, np.log, x) + with np.errstate(invalid='ignore'): + assert_almost_equal(np.log(x), y) + + xl.append(x) + yl.append(y) + + # clog(- inf + iy) returns +inf + ipi , for finite positive-signed y. + x = np.array([-np.inf + 1j], dtype=complex) + y = complex(np.inf, np.pi) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(+ inf + iy) returns +inf + i0, for finite positive-signed y. + x = np.array([np.inf + 1j], dtype=complex) + y = complex(np.inf, 0) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(- inf + i inf) returns +inf + i3pi /4. + x = np.array([complex(-np.inf, np.inf)], dtype=complex) + y = complex(np.inf, 0.75 * np.pi) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(+ inf + i inf) returns +inf + ipi /4. + x = np.array([complex(np.inf, np.inf)], dtype=complex) + y = complex(np.inf, 0.25 * np.pi) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(+/- inf + iNaN) returns +inf + iNaN. + x = np.array([complex(np.inf, np.nan)], dtype=complex) + y = complex(np.inf, np.nan) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + x = np.array([complex(-np.inf, np.nan)], dtype=complex) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(NaN + iy) returns NaN + iNaN and optionally raises the + # 'invalid' floating-point exception, for finite y. + x = np.array([complex(np.nan, 1)], dtype=complex) + y = complex(np.nan, np.nan) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(NaN + i inf) returns +inf + iNaN. + x = np.array([complex(np.nan, np.inf)], dtype=complex) + y = complex(np.inf, np.nan) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(NaN + iNaN) returns NaN + iNaN. + x = np.array([complex(np.nan, np.nan)], dtype=complex) + y = complex(np.nan, np.nan) + assert_almost_equal(np.log(x), y) + xl.append(x) + yl.append(y) + + # clog(conj(z)) = conj(clog(z)). + xa = np.array(xl, dtype=complex) + ya = np.array(yl, dtype=complex) + with np.errstate(divide='ignore'): + for i in range(len(xa)): + assert_almost_equal(np.log(xa[i].conj()), ya[i].conj()) + + +class TestCsqrt: + + def test_simple(self): + # sqrt(1) + check_complex_value(np.sqrt, 1, 0, 1, 0) + + # sqrt(1i) + rres = 0.5*np.sqrt(2) + ires = rres + check_complex_value(np.sqrt, 0, 1, rres, ires, False) + + # sqrt(-1) + check_complex_value(np.sqrt, -1, 0, 0, 1) + + def test_simple_conjugate(self): + ref = np.conj(np.sqrt(complex(1, 1))) + + def f(z): + return np.sqrt(np.conj(z)) + + check_complex_value(f, 1, 1, ref.real, ref.imag, False) + + #def test_branch_cut(self): + # _check_branch_cut(f, -1, 0, 1, -1) + + @platform_skip + def test_special_values(self): + # C99: Sec G 6.4.2 + + check = check_complex_value + f = np.sqrt + + # csqrt(+-0 + 0i) is 0 + 0i + check(f, ncu.PZERO, 0, 0, 0) + check(f, ncu.NZERO, 0, 0, 0) + + # csqrt(x + infi) is inf + infi for any x (including NaN) + check(f, 1, np.inf, np.inf, np.inf) + check(f, -1, np.inf, np.inf, np.inf) + + check(f, ncu.PZERO, np.inf, np.inf, np.inf) + check(f, ncu.NZERO, np.inf, np.inf, np.inf) + check(f, np.inf, np.inf, np.inf, np.inf) + check(f, -np.inf, np.inf, np.inf, np.inf) + check(f, -np.nan, np.inf, np.inf, np.inf) + + # csqrt(x + nani) is nan + nani for any finite x + check(f, 1, np.nan, np.nan, np.nan) + check(f, -1, np.nan, np.nan, np.nan) + check(f, 0, np.nan, np.nan, np.nan) + + # csqrt(-inf + yi) is +0 + infi for any finite y > 0 + check(f, -np.inf, 1, ncu.PZERO, np.inf) + + # csqrt(inf + yi) is +inf + 0i for any finite y > 0 + check(f, np.inf, 1, np.inf, ncu.PZERO) + + # csqrt(-inf + nani) is nan +- infi (both +i infi are valid) + def _check_ninf_nan(dummy): + msgform = "csqrt(-inf, nan) is (%f, %f), expected (nan, +-inf)" + z = np.sqrt(np.array(complex(-np.inf, np.nan))) + #Fixme: ugly workaround for isinf bug. + with np.errstate(invalid='ignore'): + if not (np.isnan(z.real) and np.isinf(z.imag)): + raise AssertionError(msgform % (z.real, z.imag)) + + _check_ninf_nan(None) + + # csqrt(+inf + nani) is inf + nani + check(f, np.inf, np.nan, np.inf, np.nan) + + # csqrt(nan + yi) is nan + nani for any finite y (infinite handled in x + # + nani) + check(f, np.nan, 0, np.nan, np.nan) + check(f, np.nan, 1, np.nan, np.nan) + check(f, np.nan, np.nan, np.nan, np.nan) + + # XXX: check for conj(csqrt(z)) == csqrt(conj(z)) (need to fix branch + # cuts first) + +class TestCpow: + def setup_method(self): + self.olderr = np.seterr(invalid='ignore') + + def teardown_method(self): + np.seterr(**self.olderr) + + def test_simple(self): + x = np.array([1+1j, 0+2j, 1+2j, np.inf, np.nan]) + y_r = x ** 2 + y = np.power(x, 2) + assert_almost_equal(y, y_r) + + def test_scalar(self): + x = np.array([1, 1j, 2, 2.5+.37j, np.inf, np.nan]) + y = np.array([1, 1j, -0.5+1.5j, -0.5+1.5j, 2, 3]) + lx = list(range(len(x))) + + # Hardcode the expected `builtins.complex` values, + # as complex exponentiation is broken as of bpo-44698 + p_r = [ + 1+0j, + 0.20787957635076193+0j, + 0.35812203996480685+0.6097119028618724j, + 0.12659112128185032+0.48847676699581527j, + complex(np.inf, np.nan), + complex(np.nan, np.nan), + ] + + n_r = [x[i] ** y[i] for i in lx] + for i in lx: + assert_almost_equal(n_r[i], p_r[i], err_msg='Loop %d\n' % i) + + def test_array(self): + x = np.array([1, 1j, 2, 2.5+.37j, np.inf, np.nan]) + y = np.array([1, 1j, -0.5+1.5j, -0.5+1.5j, 2, 3]) + lx = list(range(len(x))) + + # Hardcode the expected `builtins.complex` values, + # as complex exponentiation is broken as of bpo-44698 + p_r = [ + 1+0j, + 0.20787957635076193+0j, + 0.35812203996480685+0.6097119028618724j, + 0.12659112128185032+0.48847676699581527j, + complex(np.inf, np.nan), + complex(np.nan, np.nan), + ] + + n_r = x ** y + for i in lx: + assert_almost_equal(n_r[i], p_r[i], err_msg='Loop %d\n' % i) + +class TestCabs: + def setup_method(self): + self.olderr = np.seterr(invalid='ignore') + + def teardown_method(self): + np.seterr(**self.olderr) + + def test_simple(self): + x = np.array([1+1j, 0+2j, 1+2j, np.inf, np.nan]) + y_r = np.array([np.sqrt(2.), 2, np.sqrt(5), np.inf, np.nan]) + y = np.abs(x) + assert_almost_equal(y, y_r) + + def test_fabs(self): + # Test that np.abs(x +- 0j) == np.abs(x) (as mandated by C99 for cabs) + x = np.array([1+0j], dtype=complex) + assert_array_equal(np.abs(x), np.real(x)) + + x = np.array([complex(1, ncu.NZERO)], dtype=complex) + assert_array_equal(np.abs(x), np.real(x)) + + x = np.array([complex(np.inf, ncu.NZERO)], dtype=complex) + assert_array_equal(np.abs(x), np.real(x)) + + x = np.array([complex(np.nan, ncu.NZERO)], dtype=complex) + assert_array_equal(np.abs(x), np.real(x)) + + def test_cabs_inf_nan(self): + x, y = [], [] + + # cabs(+-nan + nani) returns nan + x.append(np.nan) + y.append(np.nan) + check_real_value(np.abs, np.nan, np.nan, np.nan) + + x.append(np.nan) + y.append(-np.nan) + check_real_value(np.abs, -np.nan, np.nan, np.nan) + + # According to C99 standard, if exactly one of the real/part is inf and + # the other nan, then cabs should return inf + x.append(np.inf) + y.append(np.nan) + check_real_value(np.abs, np.inf, np.nan, np.inf) + + x.append(-np.inf) + y.append(np.nan) + check_real_value(np.abs, -np.inf, np.nan, np.inf) + + # cabs(conj(z)) == conj(cabs(z)) (= cabs(z)) + def f(a): + return np.abs(np.conj(a)) + + def g(a, b): + return np.abs(complex(a, b)) + + xa = np.array(x, dtype=complex) + assert len(xa) == len(x) == len(y) + for xi, yi in zip(x, y): + ref = g(xi, yi) + check_real_value(f, xi, yi, ref) + +class TestCarg: + def test_simple(self): + check_real_value(ncu._arg, 1, 0, 0, False) + check_real_value(ncu._arg, 0, 1, 0.5*np.pi, False) + + check_real_value(ncu._arg, 1, 1, 0.25*np.pi, False) + check_real_value(ncu._arg, ncu.PZERO, ncu.PZERO, ncu.PZERO) + + # TODO This can be xfail when the generator functions are got rid of. + @pytest.mark.skip( + reason="Complex arithmetic with signed zero fails on most platforms") + def test_zero(self): + # carg(-0 +- 0i) returns +- pi + check_real_value(ncu._arg, ncu.NZERO, ncu.PZERO, np.pi, False) + check_real_value(ncu._arg, ncu.NZERO, ncu.NZERO, -np.pi, False) + + # carg(+0 +- 0i) returns +- 0 + check_real_value(ncu._arg, ncu.PZERO, ncu.PZERO, ncu.PZERO) + check_real_value(ncu._arg, ncu.PZERO, ncu.NZERO, ncu.NZERO) + + # carg(x +- 0i) returns +- 0 for x > 0 + check_real_value(ncu._arg, 1, ncu.PZERO, ncu.PZERO, False) + check_real_value(ncu._arg, 1, ncu.NZERO, ncu.NZERO, False) + + # carg(x +- 0i) returns +- pi for x < 0 + check_real_value(ncu._arg, -1, ncu.PZERO, np.pi, False) + check_real_value(ncu._arg, -1, ncu.NZERO, -np.pi, False) + + # carg(+- 0 + yi) returns pi/2 for y > 0 + check_real_value(ncu._arg, ncu.PZERO, 1, 0.5 * np.pi, False) + check_real_value(ncu._arg, ncu.NZERO, 1, 0.5 * np.pi, False) + + # carg(+- 0 + yi) returns -pi/2 for y < 0 + check_real_value(ncu._arg, ncu.PZERO, -1, 0.5 * np.pi, False) + check_real_value(ncu._arg, ncu.NZERO, -1, -0.5 * np.pi, False) + + #def test_branch_cuts(self): + # _check_branch_cut(ncu._arg, -1, 1j, -1, 1) + + def test_special_values(self): + # carg(-np.inf +- yi) returns +-pi for finite y > 0 + check_real_value(ncu._arg, -np.inf, 1, np.pi, False) + check_real_value(ncu._arg, -np.inf, -1, -np.pi, False) + + # carg(np.inf +- yi) returns +-0 for finite y > 0 + check_real_value(ncu._arg, np.inf, 1, ncu.PZERO, False) + check_real_value(ncu._arg, np.inf, -1, ncu.NZERO, False) + + # carg(x +- np.infi) returns +-pi/2 for finite x + check_real_value(ncu._arg, 1, np.inf, 0.5 * np.pi, False) + check_real_value(ncu._arg, 1, -np.inf, -0.5 * np.pi, False) + + # carg(-np.inf +- np.infi) returns +-3pi/4 + check_real_value(ncu._arg, -np.inf, np.inf, 0.75 * np.pi, False) + check_real_value(ncu._arg, -np.inf, -np.inf, -0.75 * np.pi, False) + + # carg(np.inf +- np.infi) returns +-pi/4 + check_real_value(ncu._arg, np.inf, np.inf, 0.25 * np.pi, False) + check_real_value(ncu._arg, np.inf, -np.inf, -0.25 * np.pi, False) + + # carg(x + yi) returns np.nan if x or y is nan + check_real_value(ncu._arg, np.nan, 0, np.nan, False) + check_real_value(ncu._arg, 0, np.nan, np.nan, False) + + check_real_value(ncu._arg, np.nan, np.inf, np.nan, False) + check_real_value(ncu._arg, np.inf, np.nan, np.nan, False) + + +def check_real_value(f, x1, y1, x, exact=True): + z1 = np.array([complex(x1, y1)]) + if exact: + assert_equal(f(z1), x) + else: + assert_almost_equal(f(z1), x) + + +def check_complex_value(f, x1, y1, x2, y2, exact=True): + z1 = np.array([complex(x1, y1)]) + z2 = complex(x2, y2) + with np.errstate(invalid='ignore'): + if exact: + assert_equal(f(z1), z2) + else: + assert_almost_equal(f(z1), z2) + +class TestSpecialComplexAVX: + @pytest.mark.parametrize("stride", [-4,-2,-1,1,2,4]) + @pytest.mark.parametrize("astype", [np.complex64, np.complex128]) + def test_array(self, stride, astype): + arr = np.array([complex(np.nan , np.nan), + complex(np.nan , np.inf), + complex(np.inf , np.nan), + complex(np.inf , np.inf), + complex(0. , np.inf), + complex(np.inf , 0.), + complex(0. , 0.), + complex(0. , np.nan), + complex(np.nan , 0.)], dtype=astype) + abs_true = np.array([np.nan, np.inf, np.inf, np.inf, np.inf, np.inf, 0., np.nan, np.nan], dtype=arr.real.dtype) + sq_true = np.array([complex(np.nan, np.nan), + complex(np.nan, np.nan), + complex(np.nan, np.nan), + complex(np.nan, np.inf), + complex(-np.inf, np.nan), + complex(np.inf, np.nan), + complex(0., 0.), + complex(np.nan, np.nan), + complex(np.nan, np.nan)], dtype=astype) + with np.errstate(invalid='ignore'): + assert_equal(np.abs(arr[::stride]), abs_true[::stride]) + assert_equal(np.square(arr[::stride]), sq_true[::stride]) + +class TestComplexAbsoluteAVX: + @pytest.mark.parametrize("arraysize", [1,2,3,4,5,6,7,8,9,10,11,13,15,17,18,19]) + @pytest.mark.parametrize("stride", [-4,-3,-2,-1,1,2,3,4]) + @pytest.mark.parametrize("astype", [np.complex64, np.complex128]) + # test to ensure masking and strides work as intended in the AVX implementation + def test_array(self, arraysize, stride, astype): + arr = np.ones(arraysize, dtype=astype) + abs_true = np.ones(arraysize, dtype=arr.real.dtype) + assert_equal(np.abs(arr[::stride]), abs_true[::stride]) + +# Testcase taken as is from https://github.com/numpy/numpy/issues/16660 +class TestComplexAbsoluteMixedDTypes: + @pytest.mark.parametrize("stride", [-4,-3,-2,-1,1,2,3,4]) + @pytest.mark.parametrize("astype", [np.complex64, np.complex128]) + @pytest.mark.parametrize("func", ['abs', 'square', 'conjugate']) + + def test_array(self, stride, astype, func): + dtype = [('template_id', 'U') + uni_arr2 = str_arr.astype(').itemsize` instead.", + "byte_bounds": "Now it's available under `np.lib.array_utils.byte_bounds`", + "compare_chararrays": + "It's still available as `np.char.compare_chararrays`.", + "format_parser": "It's still available as `np.rec.format_parser`.", + "alltrue": "Use `np.all` instead.", + "sometrue": "Use `np.any` instead.", +} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_expired_attrs_2_0.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_expired_attrs_2_0.pyi new file mode 100644 index 0000000000000000000000000000000000000000..05c630c9b76703490541ff97a7f4b92f278045eb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_expired_attrs_2_0.pyi @@ -0,0 +1,63 @@ +from typing import Final, TypedDict, final, type_check_only + +@final +@type_check_only +class _ExpiredAttributesType(TypedDict): + geterrobj: str + seterrobj: str + cast: str + source: str + lookfor: str + who: str + fastCopyAndTranspose: str + set_numeric_ops: str + NINF: str + PINF: str + NZERO: str + PZERO: str + add_newdoc: str + add_docstring: str + add_newdoc_ufunc: str + compat: str + safe_eval: str + float_: str + complex_: str + longfloat: str + singlecomplex: str + cfloat: str + longcomplex: str + clongfloat: str + string_: str + unicode_: str + Inf: str + Infinity: str + NaN: str + infty: str + issctype: str + maximum_sctype: str + obj2sctype: str + sctype2char: str + sctypes: str + issubsctype: str + set_string_function: str + asfarray: str + issubclass_: str + tracemalloc_domain: str + mat: str + recfromcsv: str + recfromtxt: str + deprecate: str + deprecate_with_doc: str + disp: str + find_common_type: str + round_: str + get_array_wrap: str + DataSource: str + nbytes: str + byte_bounds: str + compare_chararrays: str + format_parser: str + alltrue: str + sometrue: str + +__expired_attributes__: Final[_ExpiredAttributesType] = ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.py new file mode 100644 index 0000000000000000000000000000000000000000..a1474177fef88fc8c68524f7fc04965ee7f89b05 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.py @@ -0,0 +1,95 @@ +""" +Module defining global singleton classes. + +This module raises a RuntimeError if an attempt to reload it is made. In that +way the identities of the classes defined here are fixed and will remain so +even if numpy itself is reloaded. In particular, a function like the following +will still work correctly after numpy is reloaded:: + + def foo(arg=np._NoValue): + if arg is np._NoValue: + ... + +That was not the case when the singleton classes were defined in the numpy +``__init__.py`` file. See gh-7844 for a discussion of the reload problem that +motivated this module. + +""" +import enum + +from ._utils import set_module as _set_module + +__all__ = ['_NoValue', '_CopyMode'] + + +# Disallow reloading this module so as to preserve the identities of the +# classes defined here. +if '_is_loaded' in globals(): + raise RuntimeError('Reloading numpy._globals is not allowed') +_is_loaded = True + + +class _NoValueType: + """Special keyword value. + + The instance of this class may be used as the default value assigned to a + keyword if no other obvious default (e.g., `None`) is suitable, + + Common reasons for using this keyword are: + + - A new keyword is added to a function, and that function forwards its + inputs to another function or method which can be defined outside of + NumPy. For example, ``np.std(x)`` calls ``x.std``, so when a ``keepdims`` + keyword was added that could only be forwarded if the user explicitly + specified ``keepdims``; downstream array libraries may not have added + the same keyword, so adding ``x.std(..., keepdims=keepdims)`` + unconditionally could have broken previously working code. + - A keyword is being deprecated, and a deprecation warning must only be + emitted when the keyword is used. + + """ + __instance = None + def __new__(cls): + # ensure that only one instance exists + if not cls.__instance: + cls.__instance = super().__new__(cls) + return cls.__instance + + def __repr__(self): + return "" + + +_NoValue = _NoValueType() + + +@_set_module("numpy") +class _CopyMode(enum.Enum): + """ + An enumeration for the copy modes supported + by numpy.copy() and numpy.array(). The following three modes are supported, + + - ALWAYS: This means that a deep copy of the input + array will always be taken. + - IF_NEEDED: This means that a deep copy of the input + array will be taken only if necessary. + - NEVER: This means that the deep copy will never be taken. + If a copy cannot be avoided then a `ValueError` will be + raised. + + Note that the buffer-protocol could in theory do copies. NumPy currently + assumes an object exporting the buffer protocol will never do this. + """ + + ALWAYS = True + NEVER = False + IF_NEEDED = 2 + + def __bool__(self): + # For backwards compatibility + if self == _CopyMode.ALWAYS: + return True + + if self == _CopyMode.NEVER: + return False + + raise ValueError(f"{self} is neither True nor False.") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.pyi new file mode 100644 index 0000000000000000000000000000000000000000..b2231a9636b0863be24555734d66df6da3464ac4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_globals.pyi @@ -0,0 +1,17 @@ +__all__ = ["_CopyMode", "_NoValue"] + +import enum +from typing import Final, final + +@final +class _CopyMode(enum.Enum): + ALWAYS = True + NEVER = False + IF_NEEDED = 2 + + def __bool__(self, /) -> bool: ... + +@final +class _NoValueType: ... + +_NoValue: Final[_NoValueType] = ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.py new file mode 100644 index 0000000000000000000000000000000000000000..fe380dc828a59791ccc1805283d8a15fedc35f89 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.py @@ -0,0 +1,200 @@ +""" +Pytest test running. + +This module implements the ``test()`` function for NumPy modules. The usual +boiler plate for doing that is to put the following in the module +``__init__.py`` file:: + + from numpy._pytesttester import PytestTester + test = PytestTester(__name__) + del PytestTester + + +Warnings filtering and other runtime settings should be dealt with in the +``pytest.ini`` file in the numpy repo root. The behavior of the test depends on +whether or not that file is found as follows: + +* ``pytest.ini`` is present (develop mode) + All warnings except those explicitly filtered out are raised as error. +* ``pytest.ini`` is absent (release mode) + DeprecationWarnings and PendingDeprecationWarnings are ignored, other + warnings are passed through. + +In practice, tests run from the numpy repo are run in development mode with +``spin``, through the standard ``spin test`` invocation or from an inplace +build with ``pytest numpy``. + +This module is imported by every numpy subpackage, so lies at the top level to +simplify circular import issues. For the same reason, it contains no numpy +imports at module scope, instead importing numpy within function calls. +""" +import sys +import os + +__all__ = ['PytestTester'] + + +def _show_numpy_info(): + import numpy as np + + print("NumPy version %s" % np.__version__) + info = np.lib._utils_impl._opt_info() + print("NumPy CPU features: ", (info if info else 'nothing enabled')) + + +class PytestTester: + """ + Pytest test runner. + + A test function is typically added to a package's __init__.py like so:: + + from numpy._pytesttester import PytestTester + test = PytestTester(__name__).test + del PytestTester + + Calling this test function finds and runs all tests associated with the + module and all its sub-modules. + + Attributes + ---------- + module_name : str + Full path to the package to test. + + Parameters + ---------- + module_name : module name + The name of the module to test. + + Notes + ----- + Unlike the previous ``nose``-based implementation, this class is not + publicly exposed as it performs some ``numpy``-specific warning + suppression. + + """ + def __init__(self, module_name): + self.module_name = module_name + self.__module__ = module_name + + def __call__(self, label='fast', verbose=1, extra_argv=None, + doctests=False, coverage=False, durations=-1, tests=None): + """ + Run tests for module using pytest. + + Parameters + ---------- + label : {'fast', 'full'}, optional + Identifies the tests to run. When set to 'fast', tests decorated + with `pytest.mark.slow` are skipped, when 'full', the slow marker + is ignored. + verbose : int, optional + Verbosity value for test outputs, in the range 1-3. Default is 1. + extra_argv : list, optional + List with any extra arguments to pass to pytests. + doctests : bool, optional + .. note:: Not supported + coverage : bool, optional + If True, report coverage of NumPy code. Default is False. + Requires installation of (pip) pytest-cov. + durations : int, optional + If < 0, do nothing, If 0, report time of all tests, if > 0, + report the time of the slowest `timer` tests. Default is -1. + tests : test or list of tests + Tests to be executed with pytest '--pyargs' + + Returns + ------- + result : bool + Return True on success, false otherwise. + + Notes + ----- + Each NumPy module exposes `test` in its namespace to run all tests for + it. For example, to run all tests for numpy.lib: + + >>> np.lib.test() #doctest: +SKIP + + Examples + -------- + >>> result = np.lib.test() #doctest: +SKIP + ... + 1023 passed, 2 skipped, 6 deselected, 1 xfailed in 10.39 seconds + >>> result + True + + """ + import pytest + import warnings + + module = sys.modules[self.module_name] + module_path = os.path.abspath(module.__path__[0]) + + # setup the pytest arguments + pytest_args = ["-l"] + + # offset verbosity. The "-q" cancels a "-v". + pytest_args += ["-q"] + + if sys.version_info < (3, 12): + with warnings.catch_warnings(): + warnings.simplefilter("always") + # Filter out distutils cpu warnings (could be localized to + # distutils tests). ASV has problems with top level import, + # so fetch module for suppression here. + from numpy.distutils import cpuinfo + + # Filter out annoying import messages. Want these in both develop and + # release mode. + pytest_args += [ + "-W ignore:Not importing directory", + "-W ignore:numpy.dtype size changed", + "-W ignore:numpy.ufunc size changed", + "-W ignore::UserWarning:cpuinfo", + ] + + # When testing matrices, ignore their PendingDeprecationWarnings + pytest_args += [ + "-W ignore:the matrix subclass is not", + "-W ignore:Importing from numpy.matlib is", + ] + + if doctests: + pytest_args += ["--doctest-modules"] + + if extra_argv: + pytest_args += list(extra_argv) + + if verbose > 1: + pytest_args += ["-" + "v"*(verbose - 1)] + + if coverage: + pytest_args += ["--cov=" + module_path] + + if label == "fast": + # not importing at the top level to avoid circular import of module + from numpy.testing import IS_PYPY + if IS_PYPY: + pytest_args += ["-m", "not slow and not slow_pypy"] + else: + pytest_args += ["-m", "not slow"] + + elif label != "full": + pytest_args += ["-m", label] + + if durations >= 0: + pytest_args += ["--durations=%s" % durations] + + if tests is None: + tests = [self.module_name] + + pytest_args += ["--pyargs"] + list(tests) + + # run tests. + _show_numpy_info() + + try: + code = pytest.main(pytest_args) + except SystemExit as exc: + code = exc.code + + return code == 0 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.pyi new file mode 100644 index 0000000000000000000000000000000000000000..f5db633fcd56fa76c1435fbb9b8a93ef7a5edd5c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_pytesttester.pyi @@ -0,0 +1,18 @@ +from collections.abc import Iterable +from typing import Literal as L + +__all__ = ["PytestTester"] + +class PytestTester: + module_name: str + def __init__(self, module_name: str) -> None: ... + def __call__( + self, + label: L["fast", "full"] = ..., + verbose: int = ..., + extra_argv: None | Iterable[str] = ..., + doctests: L[False] = ..., + coverage: bool = ..., + durations: int = ..., + tests: None | Iterable[str] = ..., + ) -> bool: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..dd9b133ddf881ab8b301738e841d2789b7946390 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/__init__.py @@ -0,0 +1,154 @@ +"""Private counterpart of ``numpy.typing``.""" + +from __future__ import annotations + +from ._nested_sequence import ( + _NestedSequence as _NestedSequence, +) +from ._nbit_base import ( + NBitBase as NBitBase, + _8Bit as _8Bit, + _16Bit as _16Bit, + _32Bit as _32Bit, + _64Bit as _64Bit, + _80Bit as _80Bit, + _96Bit as _96Bit, + _128Bit as _128Bit, + _256Bit as _256Bit, +) +from ._nbit import ( + _NBitByte as _NBitByte, + _NBitShort as _NBitShort, + _NBitIntC as _NBitIntC, + _NBitIntP as _NBitIntP, + _NBitInt as _NBitInt, + _NBitLong as _NBitLong, + _NBitLongLong as _NBitLongLong, + _NBitHalf as _NBitHalf, + _NBitSingle as _NBitSingle, + _NBitDouble as _NBitDouble, + _NBitLongDouble as _NBitLongDouble, +) +from ._char_codes import ( + _BoolCodes as _BoolCodes, + _UInt8Codes as _UInt8Codes, + _UInt16Codes as _UInt16Codes, + _UInt32Codes as _UInt32Codes, + _UInt64Codes as _UInt64Codes, + _Int8Codes as _Int8Codes, + _Int16Codes as _Int16Codes, + _Int32Codes as _Int32Codes, + _Int64Codes as _Int64Codes, + _Float16Codes as _Float16Codes, + _Float32Codes as _Float32Codes, + _Float64Codes as _Float64Codes, + _Complex64Codes as _Complex64Codes, + _Complex128Codes as _Complex128Codes, + _ByteCodes as _ByteCodes, + _ShortCodes as _ShortCodes, + _IntCCodes as _IntCCodes, + _IntPCodes as _IntPCodes, + _IntCodes as _IntCodes, + _LongCodes as _LongCodes, + _LongLongCodes as _LongLongCodes, + _UByteCodes as _UByteCodes, + _UShortCodes as _UShortCodes, + _UIntCCodes as _UIntCCodes, + _UIntPCodes as _UIntPCodes, + _UIntCodes as _UIntCodes, + _ULongCodes as _ULongCodes, + _ULongLongCodes as _ULongLongCodes, + _HalfCodes as _HalfCodes, + _SingleCodes as _SingleCodes, + _DoubleCodes as _DoubleCodes, + _LongDoubleCodes as _LongDoubleCodes, + _CSingleCodes as _CSingleCodes, + _CDoubleCodes as _CDoubleCodes, + _CLongDoubleCodes as _CLongDoubleCodes, + _DT64Codes as _DT64Codes, + _TD64Codes as _TD64Codes, + _StrCodes as _StrCodes, + _BytesCodes as _BytesCodes, + _VoidCodes as _VoidCodes, + _ObjectCodes as _ObjectCodes, + _StringCodes as _StringCodes, + _UnsignedIntegerCodes as _UnsignedIntegerCodes, + _SignedIntegerCodes as _SignedIntegerCodes, + _IntegerCodes as _IntegerCodes, + _FloatingCodes as _FloatingCodes, + _ComplexFloatingCodes as _ComplexFloatingCodes, + _InexactCodes as _InexactCodes, + _NumberCodes as _NumberCodes, + _CharacterCodes as _CharacterCodes, + _FlexibleCodes as _FlexibleCodes, + _GenericCodes as _GenericCodes, +) +from ._scalars import ( + _CharLike_co as _CharLike_co, + _BoolLike_co as _BoolLike_co, + _UIntLike_co as _UIntLike_co, + _IntLike_co as _IntLike_co, + _FloatLike_co as _FloatLike_co, + _ComplexLike_co as _ComplexLike_co, + _TD64Like_co as _TD64Like_co, + _NumberLike_co as _NumberLike_co, + _ScalarLike_co as _ScalarLike_co, + _VoidLike_co as _VoidLike_co, +) +from ._shape import ( + _Shape as _Shape, + _ShapeLike as _ShapeLike, +) +from ._dtype_like import ( + DTypeLike as DTypeLike, + _DTypeLike as _DTypeLike, + _SupportsDType as _SupportsDType, + _VoidDTypeLike as _VoidDTypeLike, + _DTypeLikeBool as _DTypeLikeBool, + _DTypeLikeUInt as _DTypeLikeUInt, + _DTypeLikeInt as _DTypeLikeInt, + _DTypeLikeFloat as _DTypeLikeFloat, + _DTypeLikeComplex as _DTypeLikeComplex, + _DTypeLikeTD64 as _DTypeLikeTD64, + _DTypeLikeDT64 as _DTypeLikeDT64, + _DTypeLikeObject as _DTypeLikeObject, + _DTypeLikeVoid as _DTypeLikeVoid, + _DTypeLikeStr as _DTypeLikeStr, + _DTypeLikeBytes as _DTypeLikeBytes, + _DTypeLikeComplex_co as _DTypeLikeComplex_co, +) +from ._array_like import ( + NDArray as NDArray, + ArrayLike as ArrayLike, + _ArrayLike as _ArrayLike, + _ArrayLikeInt as _ArrayLikeInt, + _ArrayLikeBool_co as _ArrayLikeBool_co, + _ArrayLikeUInt_co as _ArrayLikeUInt_co, + _ArrayLikeInt_co as _ArrayLikeInt_co, + _ArrayLikeFloat_co as _ArrayLikeFloat_co, + _ArrayLikeFloat64_co as _ArrayLikeFloat64_co, + _ArrayLikeComplex_co as _ArrayLikeComplex_co, + _ArrayLikeComplex128_co as _ArrayLikeComplex128_co, + _ArrayLikeNumber_co as _ArrayLikeNumber_co, + _ArrayLikeTD64_co as _ArrayLikeTD64_co, + _ArrayLikeDT64_co as _ArrayLikeDT64_co, + _ArrayLikeObject_co as _ArrayLikeObject_co, + _ArrayLikeVoid_co as _ArrayLikeVoid_co, + _ArrayLikeStr_co as _ArrayLikeStr_co, + _ArrayLikeBytes_co as _ArrayLikeBytes_co, + _ArrayLikeString_co as _ArrayLikeString_co, + _ArrayLikeAnyString_co as _ArrayLikeAnyString_co, + _ArrayLikeUnknown as _ArrayLikeUnknown, + _FiniteNestedSequence as _FiniteNestedSequence, + _SupportsArray as _SupportsArray, + _SupportsArrayFunc as _SupportsArrayFunc, + _UnknownType as _UnknownType, +) + +from ._ufunc import ( + _UFunc_Nin1_Nout1 as _UFunc_Nin1_Nout1, + _UFunc_Nin2_Nout1 as _UFunc_Nin2_Nout1, + _UFunc_Nin1_Nout2 as _UFunc_Nin1_Nout2, + _UFunc_Nin2_Nout2 as _UFunc_Nin2_Nout2, + _GUFunc_Nin2_Nout1 as _GUFunc_Nin2_Nout1, +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..bff8b8228f84b4a47c6d5e54b6895037bc6127b5 Binary files /dev/null and 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b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_add_docstring.py new file mode 100644 index 0000000000000000000000000000000000000000..68e362b6925f5278ba4bbb7e92b7e4eb92b42dc2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_add_docstring.py @@ -0,0 +1,153 @@ +"""A module for creating docstrings for sphinx ``data`` domains.""" + +import re +import textwrap + +from ._array_like import NDArray + +_docstrings_list = [] + + +def add_newdoc(name: str, value: str, doc: str) -> None: + """Append ``_docstrings_list`` with a docstring for `name`. + + Parameters + ---------- + name : str + The name of the object. + value : str + A string-representation of the object. + doc : str + The docstring of the object. + + """ + _docstrings_list.append((name, value, doc)) + + +def _parse_docstrings() -> str: + """Convert all docstrings in ``_docstrings_list`` into a single + sphinx-legible text block. + + """ + type_list_ret = [] + for name, value, doc in _docstrings_list: + s = textwrap.dedent(doc).replace("\n", "\n ") + + # Replace sections by rubrics + lines = s.split("\n") + new_lines = [] + indent = "" + for line in lines: + m = re.match(r'^(\s+)[-=]+\s*$', line) + if m and new_lines: + prev = textwrap.dedent(new_lines.pop()) + if prev == "Examples": + indent = "" + new_lines.append(f'{m.group(1)}.. rubric:: {prev}') + else: + indent = 4 * " " + new_lines.append(f'{m.group(1)}.. admonition:: {prev}') + new_lines.append("") + else: + new_lines.append(f"{indent}{line}") + + s = "\n".join(new_lines) + s_block = f""".. data:: {name}\n :value: {value}\n {s}""" + type_list_ret.append(s_block) + return "\n".join(type_list_ret) + + +add_newdoc('ArrayLike', 'typing.Union[...]', + """ + A `~typing.Union` representing objects that can be coerced + into an `~numpy.ndarray`. + + Among others this includes the likes of: + + * Scalars. + * (Nested) sequences. + * Objects implementing the `~class.__array__` protocol. + + .. versionadded:: 1.20 + + See Also + -------- + :term:`array_like`: + Any scalar or sequence that can be interpreted as an ndarray. + + Examples + -------- + .. code-block:: python + + >>> import numpy as np + >>> import numpy.typing as npt + + >>> def as_array(a: npt.ArrayLike) -> np.ndarray: + ... return np.array(a) + + """) + +add_newdoc('DTypeLike', 'typing.Union[...]', + """ + A `~typing.Union` representing objects that can be coerced + into a `~numpy.dtype`. + + Among others this includes the likes of: + + * :class:`type` objects. + * Character codes or the names of :class:`type` objects. + * Objects with the ``.dtype`` attribute. + + .. versionadded:: 1.20 + + See Also + -------- + :ref:`Specifying and constructing data types ` + A comprehensive overview of all objects that can be coerced + into data types. + + Examples + -------- + .. code-block:: python + + >>> import numpy as np + >>> import numpy.typing as npt + + >>> def as_dtype(d: npt.DTypeLike) -> np.dtype: + ... return np.dtype(d) + + """) + +add_newdoc('NDArray', repr(NDArray), + """ + A `np.ndarray[tuple[int, ...], np.dtype[+ScalarType]] ` + type alias :term:`generic ` w.r.t. its + `dtype.type `. + + Can be used during runtime for typing arrays with a given dtype + and unspecified shape. + + .. versionadded:: 1.21 + + Examples + -------- + .. code-block:: python + + >>> import numpy as np + >>> import numpy.typing as npt + + >>> print(npt.NDArray) + numpy.ndarray[tuple[int, ...], numpy.dtype[+_ScalarType_co]] + + >>> print(npt.NDArray[np.float64]) + numpy.ndarray[tuple[int, ...], numpy.dtype[numpy.float64]] + + >>> NDArrayInt = npt.NDArray[np.int_] + >>> a: NDArrayInt = np.arange(10) + + >>> def func(a: npt.ArrayLike) -> npt.NDArray[Any]: + ... return np.array(a) + + """) + +_docstrings = _parse_docstrings() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_array_like.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_array_like.py new file mode 100644 index 0000000000000000000000000000000000000000..7798e5d5d751451a9e87720d4e995f35a93fe6d3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_array_like.py @@ -0,0 +1,192 @@ +from __future__ import annotations + +import sys +from collections.abc import Collection, Callable, Sequence +from typing import Any, Protocol, TypeAlias, TypeVar, runtime_checkable, TYPE_CHECKING + +import numpy as np +from numpy import ( + ndarray, + dtype, + generic, + unsignedinteger, + integer, + floating, + complexfloating, + number, + timedelta64, + datetime64, + object_, + void, + str_, + bytes_, +) +from ._nbit_base import _32Bit, _64Bit +from ._nested_sequence import _NestedSequence +from ._shape import _Shape + +if TYPE_CHECKING: + StringDType = np.dtypes.StringDType +else: + # at runtime outside of type checking importing this from numpy.dtypes + # would lead to a circular import + from numpy._core.multiarray import StringDType + +_T = TypeVar("_T") +_ScalarType = TypeVar("_ScalarType", bound=generic) +_ScalarType_co = TypeVar("_ScalarType_co", bound=generic, covariant=True) +_DType = TypeVar("_DType", bound=dtype[Any]) +_DType_co = TypeVar("_DType_co", covariant=True, bound=dtype[Any]) + +NDArray: TypeAlias = ndarray[_Shape, dtype[_ScalarType_co]] + +# The `_SupportsArray` protocol only cares about the default dtype +# (i.e. `dtype=None` or no `dtype` parameter at all) of the to-be returned +# array. +# Concrete implementations of the protocol are responsible for adding +# any and all remaining overloads +@runtime_checkable +class _SupportsArray(Protocol[_DType_co]): + def __array__(self) -> ndarray[Any, _DType_co]: ... + + +@runtime_checkable +class _SupportsArrayFunc(Protocol): + """A protocol class representing `~class.__array_function__`.""" + def __array_function__( + self, + func: Callable[..., Any], + types: Collection[type[Any]], + args: tuple[Any, ...], + kwargs: dict[str, Any], + ) -> object: ... + + +# TODO: Wait until mypy supports recursive objects in combination with typevars +_FiniteNestedSequence: TypeAlias = ( + _T + | Sequence[_T] + | Sequence[Sequence[_T]] + | Sequence[Sequence[Sequence[_T]]] + | Sequence[Sequence[Sequence[Sequence[_T]]]] +) + +# A subset of `npt.ArrayLike` that can be parametrized w.r.t. `np.generic` +_ArrayLike: TypeAlias = ( + _SupportsArray[dtype[_ScalarType]] + | _NestedSequence[_SupportsArray[dtype[_ScalarType]]] +) + +# A union representing array-like objects; consists of two typevars: +# One representing types that can be parametrized w.r.t. `np.dtype` +# and another one for the rest +_DualArrayLike: TypeAlias = ( + _SupportsArray[_DType] + | _NestedSequence[_SupportsArray[_DType]] + | _T + | _NestedSequence[_T] +) + +if sys.version_info >= (3, 12): + from collections.abc import Buffer as _Buffer +else: + @runtime_checkable + class _Buffer(Protocol): + def __buffer__(self, flags: int, /) -> memoryview: ... + +ArrayLike: TypeAlias = _Buffer | _DualArrayLike[ + dtype[Any], + bool | int | float | complex | str | bytes, +] + +# `ArrayLike_co`: array-like objects that can be coerced into `X` +# given the casting rules `same_kind` +_ArrayLikeBool_co: TypeAlias = _DualArrayLike[ + dtype[np.bool], + bool, +] +_ArrayLikeUInt_co: TypeAlias = _DualArrayLike[ + dtype[np.bool] | dtype[unsignedinteger[Any]], + bool, +] +_ArrayLikeInt_co: TypeAlias = _DualArrayLike[ + dtype[np.bool] | dtype[integer[Any]], + bool | int, +] +_ArrayLikeFloat_co: TypeAlias = _DualArrayLike[ + dtype[np.bool] | dtype[integer[Any]] | dtype[floating[Any]], + bool | int | float, +] +_ArrayLikeComplex_co: TypeAlias = _DualArrayLike[ + ( + dtype[np.bool] + | dtype[integer[Any]] + | dtype[floating[Any]] + | dtype[complexfloating[Any, Any]] + ), + bool | int | float | complex, +] +_ArrayLikeNumber_co: TypeAlias = _DualArrayLike[ + dtype[np.bool] | dtype[number[Any]], + bool | int | float | complex, +] +_ArrayLikeTD64_co: TypeAlias = _DualArrayLike[ + dtype[np.bool] | dtype[integer[Any]] | dtype[timedelta64], + bool | int, +] +_ArrayLikeDT64_co: TypeAlias = ( + _SupportsArray[dtype[datetime64]] + | _NestedSequence[_SupportsArray[dtype[datetime64]]] +) +_ArrayLikeObject_co: TypeAlias = ( + _SupportsArray[dtype[object_]] + | _NestedSequence[_SupportsArray[dtype[object_]]] +) + +_ArrayLikeVoid_co: TypeAlias = ( + _SupportsArray[dtype[void]] + | _NestedSequence[_SupportsArray[dtype[void]]] +) +_ArrayLikeStr_co: TypeAlias = _DualArrayLike[ + dtype[str_], + str, +] +_ArrayLikeBytes_co: TypeAlias = _DualArrayLike[ + dtype[bytes_], + bytes, +] +_ArrayLikeString_co: TypeAlias = _DualArrayLike[ + StringDType, + str +] +_ArrayLikeAnyString_co: TypeAlias = ( + _ArrayLikeStr_co | + _ArrayLikeBytes_co | + _ArrayLikeString_co +) + +__Float64_co: TypeAlias = np.floating[_64Bit] | np.float32 | np.float16 | np.integer | np.bool +__Complex128_co: TypeAlias = np.number[_64Bit] | np.number[_32Bit] | np.float16 | np.integer | np.bool +_ArrayLikeFloat64_co: TypeAlias = _DualArrayLike[dtype[__Float64_co], float | int] +_ArrayLikeComplex128_co: TypeAlias = _DualArrayLike[dtype[__Complex128_co], complex | float | int] + +# NOTE: This includes `builtins.bool`, but not `numpy.bool`. +_ArrayLikeInt: TypeAlias = _DualArrayLike[ + dtype[integer[Any]], + int, +] + +# Extra ArrayLike type so that pyright can deal with NDArray[Any] +# Used as the first overload, should only match NDArray[Any], +# not any actual types. +# https://github.com/numpy/numpy/pull/22193 +if sys.version_info >= (3, 11): + from typing import Never as _UnknownType +else: + from typing import NoReturn as _UnknownType + + +_ArrayLikeUnknown: TypeAlias = _DualArrayLike[ + dtype[_UnknownType], + _UnknownType, +] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_callable.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_callable.pyi new file mode 100644 index 0000000000000000000000000000000000000000..75af1ae8efba4f5eb875719a81497309345e66b9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_callable.pyi @@ -0,0 +1,365 @@ +""" +A module with various ``typing.Protocol`` subclasses that implement +the ``__call__`` magic method. + +See the `Mypy documentation`_ on protocols for more details. + +.. _`Mypy documentation`: https://mypy.readthedocs.io/en/stable/protocols.html#callback-protocols + +""" + +from typing import ( + TypeAlias, + TypeVar, + final, + overload, + Any, + NoReturn, + Protocol, + type_check_only, +) + +import numpy as np +from numpy import ( + generic, + number, + integer, + unsignedinteger, + signedinteger, + int8, + int_, + floating, + float64, + complexfloating, + complex128, +) +from ._nbit import _NBitInt +from ._scalars import ( + _BoolLike_co, + _IntLike_co, + _NumberLike_co, +) +from . import NBitBase +from ._array_like import NDArray +from ._nested_sequence import _NestedSequence + +_T1 = TypeVar("_T1") +_T2 = TypeVar("_T2") +_T1_contra = TypeVar("_T1_contra", contravariant=True) +_T2_contra = TypeVar("_T2_contra", contravariant=True) + +_2Tuple: TypeAlias = tuple[_T1, _T1] + +_NBit1 = TypeVar("_NBit1", bound=NBitBase) +_NBit2 = TypeVar("_NBit2", bound=NBitBase) + +_IntType = TypeVar("_IntType", bound=integer[Any]) +_FloatType = TypeVar("_FloatType", bound=floating[Any]) +_NumberType = TypeVar("_NumberType", bound=number[Any]) +_NumberType_co = TypeVar("_NumberType_co", covariant=True, bound=number[Any]) +_GenericType_co = TypeVar("_GenericType_co", covariant=True, bound=generic) + +@type_check_only +class _BoolOp(Protocol[_GenericType_co]): + @overload + def __call__(self, other: _BoolLike_co, /) -> _GenericType_co: ... + @overload # platform dependent + def __call__(self, other: int, /) -> int_: ... + @overload + def __call__(self, other: float, /) -> float64: ... + @overload + def __call__(self, other: complex, /) -> complex128: ... + @overload + def __call__(self, other: _NumberType, /) -> _NumberType: ... + +@type_check_only +class _BoolBitOp(Protocol[_GenericType_co]): + @overload + def __call__(self, other: _BoolLike_co, /) -> _GenericType_co: ... + @overload # platform dependent + def __call__(self, other: int, /) -> int_: ... + @overload + def __call__(self, other: _IntType, /) -> _IntType: ... + +@type_check_only +class _BoolSub(Protocol): + # Note that `other: bool` is absent here + @overload + def __call__(self, other: bool, /) -> NoReturn: ... + @overload # platform dependent + def __call__(self, other: int, /) -> int_: ... + @overload + def __call__(self, other: float, /) -> float64: ... + @overload + def __call__(self, other: complex, /) -> complex128: ... + @overload + def __call__(self, other: _NumberType, /) -> _NumberType: ... + +@type_check_only +class _BoolTrueDiv(Protocol): + @overload + def __call__(self, other: float | _IntLike_co, /) -> float64: ... + @overload + def __call__(self, other: complex, /) -> complex128: ... + @overload + def __call__(self, other: _NumberType, /) -> _NumberType: ... + +@type_check_only +class _BoolMod(Protocol): + @overload + def __call__(self, other: _BoolLike_co, /) -> int8: ... + @overload # platform dependent + def __call__(self, other: int, /) -> int_: ... + @overload + def __call__(self, other: float, /) -> float64: ... + @overload + def __call__(self, other: _IntType, /) -> _IntType: ... + @overload + def __call__(self, other: _FloatType, /) -> _FloatType: ... + +@type_check_only +class _BoolDivMod(Protocol): + @overload + def __call__(self, other: _BoolLike_co, /) -> _2Tuple[int8]: ... + @overload # platform dependent + def __call__(self, other: int, /) -> _2Tuple[int_]: ... + @overload + def __call__(self, other: float, /) -> _2Tuple[np.float64]: ... + @overload + def __call__(self, other: _IntType, /) -> _2Tuple[_IntType]: ... + @overload + def __call__(self, other: _FloatType, /) -> _2Tuple[_FloatType]: ... + +@type_check_only +class _IntTrueDiv(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> floating[_NBit1]: ... + @overload + def __call__(self, other: int, /) -> floating[_NBit1] | floating[_NBitInt]: ... + @overload + def __call__(self, other: float, /) -> floating[_NBit1] | float64: ... + @overload + def __call__( + self, other: complex, / + ) -> complexfloating[_NBit1, _NBit1] | complex128: ... + @overload + def __call__( + self, other: integer[_NBit2], / + ) -> floating[_NBit1] | floating[_NBit2]: ... + +@type_check_only +class _UnsignedIntOp(Protocol[_NBit1]): + # NOTE: `uint64 + signedinteger -> float64` + @overload + def __call__(self, other: int, /) -> unsignedinteger[_NBit1]: ... + @overload + def __call__(self, other: float, /) -> float64: ... + @overload + def __call__(self, other: complex, /) -> complex128: ... + @overload + def __call__(self, other: unsignedinteger[_NBit2], /) -> unsignedinteger[_NBit1] | unsignedinteger[_NBit2]: ... + @overload + def __call__(self, other: signedinteger, /) -> Any: ... + +@type_check_only +class _UnsignedIntBitOp(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> unsignedinteger[_NBit1]: ... + @overload + def __call__(self, other: int, /) -> signedinteger[Any]: ... + @overload + def __call__(self, other: signedinteger[Any], /) -> signedinteger[Any]: ... + @overload + def __call__( + self, other: unsignedinteger[_NBit2], / + ) -> unsignedinteger[_NBit1] | unsignedinteger[_NBit2]: ... + +@type_check_only +class _UnsignedIntMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> unsignedinteger[_NBit1]: ... + @overload + def __call__(self, other: int | signedinteger[Any], /) -> Any: ... + @overload + def __call__(self, other: float, /) -> floating[_NBit1] | float64: ... + @overload + def __call__( + self, other: unsignedinteger[_NBit2], / + ) -> unsignedinteger[_NBit1] | unsignedinteger[_NBit2]: ... + +@type_check_only +class _UnsignedIntDivMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> _2Tuple[signedinteger[_NBit1]]: ... + @overload + def __call__(self, other: int | signedinteger[Any], /) -> _2Tuple[Any]: ... + @overload + def __call__(self, other: float, /) -> _2Tuple[floating[_NBit1]] | _2Tuple[float64]: ... + @overload + def __call__( + self, other: unsignedinteger[_NBit2], / + ) -> _2Tuple[unsignedinteger[_NBit1]] | _2Tuple[unsignedinteger[_NBit2]]: ... + +@type_check_only +class _SignedIntOp(Protocol[_NBit1]): + @overload + def __call__(self, other: int, /) -> signedinteger[_NBit1]: ... + @overload + def __call__(self, other: float, /) -> float64: ... + @overload + def __call__(self, other: complex, /) -> complex128: ... + @overload + def __call__(self, other: signedinteger[_NBit2], /) -> signedinteger[_NBit1] | signedinteger[_NBit2]: ... + +@type_check_only +class _SignedIntBitOp(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> signedinteger[_NBit1]: ... + @overload + def __call__(self, other: int, /) -> signedinteger[_NBit1] | int_: ... + @overload + def __call__( + self, other: signedinteger[_NBit2], / + ) -> signedinteger[_NBit1] | signedinteger[_NBit2]: ... + +@type_check_only +class _SignedIntMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> signedinteger[_NBit1]: ... + @overload + def __call__(self, other: int, /) -> signedinteger[_NBit1] | int_: ... + @overload + def __call__(self, other: float, /) -> floating[_NBit1] | float64: ... + @overload + def __call__( + self, other: signedinteger[_NBit2], / + ) -> signedinteger[_NBit1] | signedinteger[_NBit2]: ... + +@type_check_only +class _SignedIntDivMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> _2Tuple[signedinteger[_NBit1]]: ... + @overload + def __call__(self, other: int, /) -> _2Tuple[signedinteger[_NBit1]] | _2Tuple[int_]: ... + @overload + def __call__(self, other: float, /) -> _2Tuple[floating[_NBit1]] | _2Tuple[float64]: ... + @overload + def __call__( + self, other: signedinteger[_NBit2], / + ) -> _2Tuple[signedinteger[_NBit1]] | _2Tuple[signedinteger[_NBit2]]: ... + +@type_check_only +class _FloatOp(Protocol[_NBit1]): + @overload + def __call__(self, other: int, /) -> floating[_NBit1]: ... + @overload + def __call__(self, other: float, /) -> floating[_NBit1] | float64: ... + @overload + def __call__( + self, other: complex, / + ) -> complexfloating[_NBit1, _NBit1] | complex128: ... + @overload + def __call__( + self, other: integer[_NBit2] | floating[_NBit2], / + ) -> floating[_NBit1] | floating[_NBit2]: ... + +@type_check_only +class _FloatMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> floating[_NBit1]: ... + @overload + def __call__(self, other: int, /) -> floating[_NBit1] | floating[_NBitInt]: ... + @overload + def __call__(self, other: float, /) -> floating[_NBit1] | float64: ... + @overload + def __call__( + self, other: integer[_NBit2] | floating[_NBit2], / + ) -> floating[_NBit1] | floating[_NBit2]: ... + +class _FloatDivMod(Protocol[_NBit1]): + @overload + def __call__(self, other: bool, /) -> _2Tuple[floating[_NBit1]]: ... + @overload + def __call__( + self, other: int, / + ) -> _2Tuple[floating[_NBit1]] | _2Tuple[floating[_NBitInt]]: ... + @overload + def __call__( + self, other: float, / + ) -> _2Tuple[floating[_NBit1]] | _2Tuple[float64]: ... + @overload + def __call__( + self, other: integer[_NBit2] | floating[_NBit2], / + ) -> _2Tuple[floating[_NBit1]] | _2Tuple[floating[_NBit2]]: ... + +@type_check_only +class _NumberOp(Protocol): + def __call__(self, other: _NumberLike_co, /) -> Any: ... + +@final +@type_check_only +class _SupportsLT(Protocol): + def __lt__(self, other: Any, /) -> Any: ... + +@final +@type_check_only +class _SupportsLE(Protocol): + def __le__(self, other: Any, /) -> Any: ... + +@final +@type_check_only +class _SupportsGT(Protocol): + def __gt__(self, other: Any, /) -> Any: ... + +@final +@type_check_only +class _SupportsGE(Protocol): + def __ge__(self, other: Any, /) -> Any: ... + +@final +@type_check_only +class _ComparisonOpLT(Protocol[_T1_contra, _T2_contra]): + @overload + def __call__(self, other: _T1_contra, /) -> np.bool: ... + @overload + def __call__(self, other: _T2_contra, /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _NestedSequence[_SupportsGT], /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _SupportsGT, /) -> np.bool: ... + +@final +@type_check_only +class _ComparisonOpLE(Protocol[_T1_contra, _T2_contra]): + @overload + def __call__(self, other: _T1_contra, /) -> np.bool: ... + @overload + def __call__(self, other: _T2_contra, /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _NestedSequence[_SupportsGE], /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _SupportsGE, /) -> np.bool: ... + +@final +@type_check_only +class _ComparisonOpGT(Protocol[_T1_contra, _T2_contra]): + @overload + def __call__(self, other: _T1_contra, /) -> np.bool: ... + @overload + def __call__(self, other: _T2_contra, /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _NestedSequence[_SupportsLT], /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _SupportsLT, /) -> np.bool: ... + +@final +@type_check_only +class _ComparisonOpGE(Protocol[_T1_contra, _T2_contra]): + @overload + def __call__(self, other: _T1_contra, /) -> np.bool: ... + @overload + def __call__(self, other: _T2_contra, /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _NestedSequence[_SupportsGT], /) -> NDArray[np.bool]: ... + @overload + def __call__(self, other: _SupportsGT, /) -> np.bool: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_char_codes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_char_codes.py new file mode 100644 index 0000000000000000000000000000000000000000..56154c7af3833cc19baab5a4c562601974168012 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_char_codes.py @@ -0,0 +1,214 @@ +from typing import Literal + +_BoolCodes = Literal[ + "bool", "bool_", + "?", "|?", "=?", "?", + "b1", "|b1", "=b1", "b1", +] # fmt: skip + +_UInt8Codes = Literal["uint8", "u1", "|u1", "=u1", "u1"] +_UInt16Codes = Literal["uint16", "u2", "|u2", "=u2", "u2"] +_UInt32Codes = Literal["uint32", "u4", "|u4", "=u4", "u4"] +_UInt64Codes = Literal["uint64", "u8", "|u8", "=u8", "u8"] + +_Int8Codes = Literal["int8", "i1", "|i1", "=i1", "i1"] +_Int16Codes = Literal["int16", "i2", "|i2", "=i2", "i2"] +_Int32Codes = Literal["int32", "i4", "|i4", "=i4", "i4"] +_Int64Codes = Literal["int64", "i8", "|i8", "=i8", "i8"] + +_Float16Codes = Literal["float16", "f2", "|f2", "=f2", "f2"] +_Float32Codes = Literal["float32", "f4", "|f4", "=f4", "f4"] +_Float64Codes = Literal["float64", "f8", "|f8", "=f8", "f8"] + +_Complex64Codes = Literal["complex64", "c8", "|c8", "=c8", "c8"] +_Complex128Codes = Literal["complex128", "c16", "|c16", "=c16", "c16"] + +_ByteCodes = Literal["byte", "b", "|b", "=b", "b"] +_ShortCodes = Literal["short", "h", "|h", "=h", "h"] +_IntCCodes = Literal["intc", "i", "|i", "=i", "i"] +_IntPCodes = Literal["intp", "int", "int_", "n", "|n", "=n", "n"] +_LongCodes = Literal["long", "l", "|l", "=l", "l"] +_IntCodes = _IntPCodes +_LongLongCodes = Literal["longlong", "q", "|q", "=q", "q"] + +_UByteCodes = Literal["ubyte", "B", "|B", "=B", "B"] +_UShortCodes = Literal["ushort", "H", "|H", "=H", "H"] +_UIntCCodes = Literal["uintc", "I", "|I", "=I", "I"] +_UIntPCodes = Literal["uintp", "uint", "N", "|N", "=N", "N"] +_ULongCodes = Literal["ulong", "L", "|L", "=L", "L"] +_UIntCodes = _UIntPCodes +_ULongLongCodes = Literal["ulonglong", "Q", "|Q", "=Q", "Q"] + +_HalfCodes = Literal["half", "e", "|e", "=e", "e"] +_SingleCodes = Literal["single", "f", "|f", "=f", "f"] +_DoubleCodes = Literal["double", "float", "d", "|d", "=d", "d"] +_LongDoubleCodes = Literal["longdouble", "g", "|g", "=g", "g"] + +_CSingleCodes = Literal["csingle", "F", "|F", "=F", "F"] +_CDoubleCodes = Literal["cdouble", "complex", "D", "|D", "=D", "D"] +_CLongDoubleCodes = Literal["clongdouble", "G", "|G", "=G", "G"] + +_StrCodes = Literal["str", "str_", "unicode", "U", "|U", "=U", "U"] +_BytesCodes = Literal["bytes", "bytes_", "S", "|S", "=S", "S"] +_VoidCodes = Literal["void", "V", "|V", "=V", "V"] +_ObjectCodes = Literal["object", "object_", "O", "|O", "=O", "O"] + +_DT64Codes = Literal[ + "datetime64", "|datetime64", "=datetime64", + "datetime64", + "datetime64[Y]", "|datetime64[Y]", "=datetime64[Y]", + "datetime64[Y]", + "datetime64[M]", "|datetime64[M]", "=datetime64[M]", + "datetime64[M]", + "datetime64[W]", "|datetime64[W]", "=datetime64[W]", + "datetime64[W]", + "datetime64[D]", "|datetime64[D]", "=datetime64[D]", + "datetime64[D]", + "datetime64[h]", "|datetime64[h]", "=datetime64[h]", + "datetime64[h]", + "datetime64[m]", "|datetime64[m]", "=datetime64[m]", + "datetime64[m]", + "datetime64[s]", "|datetime64[s]", "=datetime64[s]", + "datetime64[s]", + "datetime64[ms]", "|datetime64[ms]", "=datetime64[ms]", + "datetime64[ms]", + "datetime64[us]", "|datetime64[us]", "=datetime64[us]", + "datetime64[us]", + "datetime64[ns]", "|datetime64[ns]", "=datetime64[ns]", + "datetime64[ns]", + "datetime64[ps]", "|datetime64[ps]", "=datetime64[ps]", + "datetime64[ps]", + "datetime64[fs]", "|datetime64[fs]", "=datetime64[fs]", + "datetime64[fs]", + "datetime64[as]", "|datetime64[as]", "=datetime64[as]", + "datetime64[as]", + "M", "|M", "=M", "M", + "M8", "|M8", "=M8", "M8", + "M8[Y]", "|M8[Y]", "=M8[Y]", "M8[Y]", + "M8[M]", "|M8[M]", "=M8[M]", "M8[M]", + "M8[W]", "|M8[W]", "=M8[W]", "M8[W]", + "M8[D]", "|M8[D]", "=M8[D]", "M8[D]", + "M8[h]", "|M8[h]", "=M8[h]", "M8[h]", + "M8[m]", "|M8[m]", "=M8[m]", "M8[m]", + "M8[s]", "|M8[s]", "=M8[s]", "M8[s]", + "M8[ms]", "|M8[ms]", "=M8[ms]", "M8[ms]", + "M8[us]", "|M8[us]", "=M8[us]", "M8[us]", + "M8[ns]", "|M8[ns]", "=M8[ns]", "M8[ns]", + "M8[ps]", "|M8[ps]", "=M8[ps]", "M8[ps]", + "M8[fs]", "|M8[fs]", "=M8[fs]", "M8[fs]", + "M8[as]", "|M8[as]", "=M8[as]", "M8[as]", +] +_TD64Codes = Literal[ + "timedelta64", "|timedelta64", "=timedelta64", + "timedelta64", + "timedelta64[Y]", "|timedelta64[Y]", "=timedelta64[Y]", + "timedelta64[Y]", + "timedelta64[M]", "|timedelta64[M]", "=timedelta64[M]", + "timedelta64[M]", + "timedelta64[W]", "|timedelta64[W]", "=timedelta64[W]", + "timedelta64[W]", + "timedelta64[D]", "|timedelta64[D]", "=timedelta64[D]", + "timedelta64[D]", + "timedelta64[h]", "|timedelta64[h]", "=timedelta64[h]", + "timedelta64[h]", + "timedelta64[m]", "|timedelta64[m]", "=timedelta64[m]", + "timedelta64[m]", + "timedelta64[s]", "|timedelta64[s]", "=timedelta64[s]", + "timedelta64[s]", + "timedelta64[ms]", "|timedelta64[ms]", "=timedelta64[ms]", + "timedelta64[ms]", + "timedelta64[us]", "|timedelta64[us]", "=timedelta64[us]", + "timedelta64[us]", + "timedelta64[ns]", "|timedelta64[ns]", "=timedelta64[ns]", + "timedelta64[ns]", + "timedelta64[ps]", "|timedelta64[ps]", "=timedelta64[ps]", + "timedelta64[ps]", + "timedelta64[fs]", "|timedelta64[fs]", "=timedelta64[fs]", + "timedelta64[fs]", + "timedelta64[as]", "|timedelta64[as]", "=timedelta64[as]", + "timedelta64[as]", + "m", "|m", "=m", "m", + "m8", "|m8", "=m8", "m8", + "m8[Y]", "|m8[Y]", "=m8[Y]", "m8[Y]", + "m8[M]", "|m8[M]", "=m8[M]", "m8[M]", + "m8[W]", "|m8[W]", "=m8[W]", "m8[W]", + "m8[D]", "|m8[D]", "=m8[D]", "m8[D]", + "m8[h]", "|m8[h]", "=m8[h]", "m8[h]", + "m8[m]", "|m8[m]", "=m8[m]", "m8[m]", + "m8[s]", "|m8[s]", "=m8[s]", "m8[s]", + "m8[ms]", "|m8[ms]", "=m8[ms]", "m8[ms]", + "m8[us]", "|m8[us]", "=m8[us]", "m8[us]", + "m8[ns]", "|m8[ns]", "=m8[ns]", "m8[ns]", + "m8[ps]", "|m8[ps]", "=m8[ps]", "m8[ps]", + "m8[fs]", "|m8[fs]", "=m8[fs]", "m8[fs]", + "m8[as]", "|m8[as]", "=m8[as]", "m8[as]", +] + +# NOTE: `StringDType' has no scalar type, and therefore has no name that can +# be passed to the `dtype` constructor +_StringCodes = Literal["T", "|T", "=T", "T"] + +# NOTE: Nested literals get flattened and de-duplicated at runtime, which isn't +# the case for a `Union` of `Literal`s. +# So even though they're equivalent when type-checking, they differ at runtime. +# Another advantage of nesting, is that they always have a "flat" +# `Literal.__args__`, which is a tuple of *literally* all its literal values. + +_UnsignedIntegerCodes = Literal[ + _UInt8Codes, + _UInt16Codes, + _UInt32Codes, + _UInt64Codes, + _UIntCodes, + _UByteCodes, + _UShortCodes, + _UIntCCodes, + _ULongCodes, + _ULongLongCodes, +] +_SignedIntegerCodes = Literal[ + _Int8Codes, + _Int16Codes, + _Int32Codes, + _Int64Codes, + _IntCodes, + _ByteCodes, + _ShortCodes, + _IntCCodes, + _LongCodes, + _LongLongCodes, +] +_FloatingCodes = Literal[ + _Float16Codes, + _Float32Codes, + _Float64Codes, + _LongDoubleCodes, + _HalfCodes, + _SingleCodes, + _DoubleCodes, + _LongDoubleCodes +] +_ComplexFloatingCodes = Literal[ + _Complex64Codes, + _Complex128Codes, + _CSingleCodes, + _CDoubleCodes, + _CLongDoubleCodes, +] +_IntegerCodes = Literal[_UnsignedIntegerCodes, _SignedIntegerCodes] +_InexactCodes = Literal[_FloatingCodes, _ComplexFloatingCodes] +_NumberCodes = Literal[_IntegerCodes, _InexactCodes] + +_CharacterCodes = Literal[_StrCodes, _BytesCodes] +_FlexibleCodes = Literal[_VoidCodes, _CharacterCodes] + +_GenericCodes = Literal[ + _BoolCodes, + _NumberCodes, + _FlexibleCodes, + _DT64Codes, + _TD64Codes, + _ObjectCodes, + # TODO: add `_StringCodes` once it has a scalar type + # _StringCodes, +] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_dtype_like.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_dtype_like.py new file mode 100644 index 0000000000000000000000000000000000000000..4d08089081d6af6c18d1f31aebf874bb6caf1390 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_dtype_like.py @@ -0,0 +1,249 @@ +from collections.abc import Sequence # noqa: F811 +from typing import ( + Any, + TypeAlias, + TypeVar, + Protocol, + TypedDict, + runtime_checkable, +) + +import numpy as np + +from ._shape import _ShapeLike + +from ._char_codes import ( + _BoolCodes, + _UInt8Codes, + _UInt16Codes, + _UInt32Codes, + _UInt64Codes, + _Int8Codes, + _Int16Codes, + _Int32Codes, + _Int64Codes, + _Float16Codes, + _Float32Codes, + _Float64Codes, + _Complex64Codes, + _Complex128Codes, + _ByteCodes, + _ShortCodes, + _IntCCodes, + _LongCodes, + _LongLongCodes, + _IntPCodes, + _IntCodes, + _UByteCodes, + _UShortCodes, + _UIntCCodes, + _ULongCodes, + _ULongLongCodes, + _UIntPCodes, + _UIntCodes, + _HalfCodes, + _SingleCodes, + _DoubleCodes, + _LongDoubleCodes, + _CSingleCodes, + _CDoubleCodes, + _CLongDoubleCodes, + _DT64Codes, + _TD64Codes, + _StrCodes, + _BytesCodes, + _VoidCodes, + _ObjectCodes, +) + +_SCT = TypeVar("_SCT", bound=np.generic) +_DType_co = TypeVar("_DType_co", covariant=True, bound=np.dtype[Any]) + +_DTypeLikeNested: TypeAlias = Any # TODO: wait for support for recursive types + + +# Mandatory keys +class _DTypeDictBase(TypedDict): + names: Sequence[str] + formats: Sequence[_DTypeLikeNested] + + +# Mandatory + optional keys +class _DTypeDict(_DTypeDictBase, total=False): + # Only `str` elements are usable as indexing aliases, + # but `titles` can in principle accept any object + offsets: Sequence[int] + titles: Sequence[Any] + itemsize: int + aligned: bool + + +# A protocol for anything with the dtype attribute +@runtime_checkable +class _SupportsDType(Protocol[_DType_co]): + @property + def dtype(self) -> _DType_co: ... + + +# A subset of `npt.DTypeLike` that can be parametrized w.r.t. `np.generic` +_DTypeLike: TypeAlias = ( + np.dtype[_SCT] + | type[_SCT] + | _SupportsDType[np.dtype[_SCT]] +) + + +# Would create a dtype[np.void] +_VoidDTypeLike: TypeAlias = ( + # (flexible_dtype, itemsize) + tuple[_DTypeLikeNested, int] + # (fixed_dtype, shape) + | tuple[_DTypeLikeNested, _ShapeLike] + # [(field_name, field_dtype, field_shape), ...] + # + # The type here is quite broad because NumPy accepts quite a wide + # range of inputs inside the list; see the tests for some + # examples. + | list[Any] + # {'names': ..., 'formats': ..., 'offsets': ..., 'titles': ..., + # 'itemsize': ...} + | _DTypeDict + # (base_dtype, new_dtype) + | tuple[_DTypeLikeNested, _DTypeLikeNested] +) + +# Anything that can be coerced into numpy.dtype. +# Reference: https://docs.scipy.org/doc/numpy/reference/arrays.dtypes.html +DTypeLike: TypeAlias = ( + np.dtype[Any] + # default data type (float64) + | None + # array-scalar types and generic types + | type[Any] # NOTE: We're stuck with `type[Any]` due to object dtypes + # anything with a dtype attribute + | _SupportsDType[np.dtype[Any]] + # character codes, type strings or comma-separated fields, e.g., 'float64' + | str + | _VoidDTypeLike +) + +# NOTE: while it is possible to provide the dtype as a dict of +# dtype-like objects (e.g. `{'field1': ..., 'field2': ..., ...}`), +# this syntax is officially discouraged and +# therefore not included in the type-union defining `DTypeLike`. +# +# See https://github.com/numpy/numpy/issues/16891 for more details. + +# Aliases for commonly used dtype-like objects. +# Note that the precision of `np.number` subclasses is ignored herein. +_DTypeLikeBool: TypeAlias = ( + type[bool] + | type[np.bool] + | np.dtype[np.bool] + | _SupportsDType[np.dtype[np.bool]] + | _BoolCodes +) +_DTypeLikeUInt: TypeAlias = ( + type[np.unsignedinteger[Any]] + | np.dtype[np.unsignedinteger[Any]] + | _SupportsDType[np.dtype[np.unsignedinteger[Any]]] + | _UInt8Codes + | _UInt16Codes + | _UInt32Codes + | _UInt64Codes + | _UByteCodes + | _UShortCodes + | _UIntCCodes + | _LongCodes + | _ULongLongCodes + | _UIntPCodes + | _UIntCodes +) +_DTypeLikeInt: TypeAlias = ( + type[int] + | type[np.signedinteger[Any]] + | np.dtype[np.signedinteger[Any]] + | _SupportsDType[np.dtype[np.signedinteger[Any]]] + | _Int8Codes + | _Int16Codes + | _Int32Codes + | _Int64Codes + | _ByteCodes + | _ShortCodes + | _IntCCodes + | _LongCodes + | _LongLongCodes + | _IntPCodes + | _IntCodes +) +_DTypeLikeFloat: TypeAlias = ( + type[float] + | type[np.floating[Any]] + | np.dtype[np.floating[Any]] + | _SupportsDType[np.dtype[np.floating[Any]]] + | _Float16Codes + | _Float32Codes + | _Float64Codes + | _HalfCodes + | _SingleCodes + | _DoubleCodes + | _LongDoubleCodes +) +_DTypeLikeComplex: TypeAlias = ( + type[complex] + | type[np.complexfloating[Any]] + | np.dtype[np.complexfloating[Any]] + | _SupportsDType[np.dtype[np.complexfloating[Any]]] + | _Complex64Codes + | _Complex128Codes + | _CSingleCodes + | _CDoubleCodes + | _CLongDoubleCodes +) +_DTypeLikeDT64: TypeAlias = ( + type[np.timedelta64] + | np.dtype[np.timedelta64] + | _SupportsDType[np.dtype[np.timedelta64]] + | _TD64Codes +) +_DTypeLikeTD64: TypeAlias = ( + type[np.datetime64] + | np.dtype[np.datetime64] + | _SupportsDType[np.dtype[np.datetime64]] + | _DT64Codes +) +_DTypeLikeStr: TypeAlias = ( + type[str] + | type[np.str_] + | np.dtype[np.str_] + | _SupportsDType[np.dtype[np.str_]] + | _StrCodes +) +_DTypeLikeBytes: TypeAlias = ( + type[bytes] + | type[np.bytes_] + | np.dtype[np.bytes_] + | _SupportsDType[np.dtype[np.bytes_]] + | _BytesCodes +) +_DTypeLikeVoid: TypeAlias = ( + type[np.void] + | np.dtype[np.void] + | _SupportsDType[np.dtype[np.void]] + | _VoidCodes + | _VoidDTypeLike +) +_DTypeLikeObject: TypeAlias = ( + type + | np.dtype[np.object_] + | _SupportsDType[np.dtype[np.object_]] + | _ObjectCodes +) + +_DTypeLikeComplex_co: TypeAlias = ( + _DTypeLikeBool + | _DTypeLikeUInt + | _DTypeLikeInt + | _DTypeLikeFloat + | _DTypeLikeComplex +) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_extended_precision.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_extended_precision.py new file mode 100644 index 0000000000000000000000000000000000000000..7246b47d0ee1724f5697ec3e80965f6f5ec48330 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_extended_precision.py @@ -0,0 +1,27 @@ +"""A module with platform-specific extended precision +`numpy.number` subclasses. + +The subclasses are defined here (instead of ``__init__.pyi``) such +that they can be imported conditionally via the numpy's mypy plugin. +""" + +import numpy as np +from . import ( + _80Bit, + _96Bit, + _128Bit, + _256Bit, +) + +uint128 = np.unsignedinteger[_128Bit] +uint256 = np.unsignedinteger[_256Bit] +int128 = np.signedinteger[_128Bit] +int256 = np.signedinteger[_256Bit] +float80 = np.floating[_80Bit] +float96 = np.floating[_96Bit] +float128 = np.floating[_128Bit] +float256 = np.floating[_256Bit] +complex160 = np.complexfloating[_80Bit, _80Bit] +complex192 = np.complexfloating[_96Bit, _96Bit] +complex256 = np.complexfloating[_128Bit, _128Bit] +complex512 = np.complexfloating[_256Bit, _256Bit] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit.py new file mode 100644 index 0000000000000000000000000000000000000000..70cfdede8025790a08b516b466a58c6dc34af68a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit.py @@ -0,0 +1,19 @@ +"""A module with the precisions of platform-specific `~numpy.number`s.""" + +from typing import TypeAlias +from ._nbit_base import _8Bit, _16Bit, _32Bit, _64Bit, _96Bit, _128Bit + + +# To-be replaced with a `npt.NBitBase` subclass by numpy's mypy plugin +_NBitByte: TypeAlias = _8Bit +_NBitShort: TypeAlias = _16Bit +_NBitIntC: TypeAlias = _32Bit +_NBitIntP: TypeAlias = _32Bit | _64Bit +_NBitInt: TypeAlias = _NBitIntP +_NBitLong: TypeAlias = _32Bit | _64Bit +_NBitLongLong: TypeAlias = _64Bit + +_NBitHalf: TypeAlias = _16Bit +_NBitSingle: TypeAlias = _32Bit +_NBitDouble: TypeAlias = _64Bit +_NBitLongDouble: TypeAlias = _64Bit | _96Bit | _128Bit diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit_base.py new file mode 100644 index 0000000000000000000000000000000000000000..4f764757c4ea6e421d509dabc94e72b1ccea8b73 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nbit_base.py @@ -0,0 +1,100 @@ +"""A module with the precisions of generic `~numpy.number` types.""" +from .._utils import set_module +from typing import final + + +@final # Disallow the creation of arbitrary `NBitBase` subclasses +@set_module("numpy.typing") +class NBitBase: + """ + A type representing `numpy.number` precision during static type checking. + + Used exclusively for the purpose static type checking, `NBitBase` + represents the base of a hierarchical set of subclasses. + Each subsequent subclass is herein used for representing a lower level + of precision, *e.g.* ``64Bit > 32Bit > 16Bit``. + + .. versionadded:: 1.20 + + Examples + -------- + Below is a typical usage example: `NBitBase` is herein used for annotating + a function that takes a float and integer of arbitrary precision + as arguments and returns a new float of whichever precision is largest + (*e.g.* ``np.float16 + np.int64 -> np.float64``). + + .. code-block:: python + + >>> from __future__ import annotations + >>> from typing import TypeVar, TYPE_CHECKING + >>> import numpy as np + >>> import numpy.typing as npt + + >>> S = TypeVar("S", bound=npt.NBitBase) + >>> T = TypeVar("T", bound=npt.NBitBase) + + >>> def add(a: np.floating[S], b: np.integer[T]) -> np.floating[S | T]: + ... return a + b + + >>> a = np.float16() + >>> b = np.int64() + >>> out = add(a, b) + + >>> if TYPE_CHECKING: + ... reveal_locals() + ... # note: Revealed local types are: + ... # note: a: numpy.floating[numpy.typing._16Bit*] + ... # note: b: numpy.signedinteger[numpy.typing._64Bit*] + ... # note: out: numpy.floating[numpy.typing._64Bit*] + + """ + + def __init_subclass__(cls) -> None: + allowed_names = { + "NBitBase", "_256Bit", "_128Bit", "_96Bit", "_80Bit", + "_64Bit", "_32Bit", "_16Bit", "_8Bit", + } + if cls.__name__ not in allowed_names: + raise TypeError('cannot inherit from final class "NBitBase"') + super().__init_subclass__() + +@final +@set_module("numpy._typing") +# Silence errors about subclassing a `@final`-decorated class +class _256Bit(NBitBase): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _128Bit(_256Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _96Bit(_128Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _80Bit(_96Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _64Bit(_80Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _32Bit(_64Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _16Bit(_32Bit): # type: ignore[misc] + pass + +@final +@set_module("numpy._typing") +class _8Bit(_16Bit): # type: ignore[misc] + pass diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nested_sequence.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nested_sequence.py new file mode 100644 index 0000000000000000000000000000000000000000..23667fd46d8953a12345c19132164d071461521e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_nested_sequence.py @@ -0,0 +1,89 @@ +"""A module containing the `_NestedSequence` protocol.""" + +from __future__ import annotations + +from typing import ( + Any, + TypeVar, + Protocol, + runtime_checkable, + TYPE_CHECKING, +) + +if TYPE_CHECKING: + from collections.abc import Iterator + +__all__ = ["_NestedSequence"] + +_T_co = TypeVar("_T_co", covariant=True) + + +@runtime_checkable +class _NestedSequence(Protocol[_T_co]): + """A protocol for representing nested sequences. + + Warning + ------- + `_NestedSequence` currently does not work in combination with typevars, + *e.g.* ``def func(a: _NestedSequnce[T]) -> T: ...``. + + See Also + -------- + collections.abc.Sequence + ABCs for read-only and mutable :term:`sequences`. + + Examples + -------- + .. code-block:: python + + >>> from __future__ import annotations + + >>> from typing import TYPE_CHECKING + >>> import numpy as np + >>> from numpy._typing import _NestedSequence + + >>> def get_dtype(seq: _NestedSequence[float]) -> np.dtype[np.float64]: + ... return np.asarray(seq).dtype + + >>> a = get_dtype([1.0]) + >>> b = get_dtype([[1.0]]) + >>> c = get_dtype([[[1.0]]]) + >>> d = get_dtype([[[[1.0]]]]) + + >>> if TYPE_CHECKING: + ... reveal_locals() + ... # note: Revealed local types are: + ... # note: a: numpy.dtype[numpy.floating[numpy._typing._64Bit]] + ... # note: b: numpy.dtype[numpy.floating[numpy._typing._64Bit]] + ... # note: c: numpy.dtype[numpy.floating[numpy._typing._64Bit]] + ... # note: d: numpy.dtype[numpy.floating[numpy._typing._64Bit]] + + """ + + def __len__(self, /) -> int: + """Implement ``len(self)``.""" + raise NotImplementedError + + def __getitem__(self, index: int, /) -> _T_co | _NestedSequence[_T_co]: + """Implement ``self[x]``.""" + raise NotImplementedError + + def __contains__(self, x: object, /) -> bool: + """Implement ``x in self``.""" + raise NotImplementedError + + def __iter__(self, /) -> Iterator[_T_co | _NestedSequence[_T_co]]: + """Implement ``iter(self)``.""" + raise NotImplementedError + + def __reversed__(self, /) -> Iterator[_T_co | _NestedSequence[_T_co]]: + """Implement ``reversed(self)``.""" + raise NotImplementedError + + def count(self, value: Any, /) -> int: + """Return the number of occurrences of `value`.""" + raise NotImplementedError + + def index(self, value: Any, /) -> int: + """Return the first index of `value`.""" + raise NotImplementedError diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_scalars.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_scalars.py new file mode 100644 index 0000000000000000000000000000000000000000..97316d0209baddb5bd6c6038087a6eaf98bd0c52 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_scalars.py @@ -0,0 +1,27 @@ +from typing import Any, TypeAlias + +import numpy as np + +# NOTE: `_StrLike_co` and `_BytesLike_co` are pointless, as `np.str_` and +# `np.bytes_` are already subclasses of their builtin counterpart + +_CharLike_co: TypeAlias = str | bytes + +# The 6 `Like_co` type-aliases below represent all scalars that can be +# coerced into `` (with the casting rule `same_kind`) +_BoolLike_co: TypeAlias = bool | np.bool +_UIntLike_co: TypeAlias = np.unsignedinteger[Any] | _BoolLike_co +_IntLike_co: TypeAlias = int | np.integer[Any] | _BoolLike_co +_FloatLike_co: TypeAlias = float | np.floating[Any] | _IntLike_co +_ComplexLike_co: TypeAlias = ( + complex + | np.complexfloating[Any, Any] + | _FloatLike_co +) +_TD64Like_co: TypeAlias = np.timedelta64 | _IntLike_co + +_NumberLike_co: TypeAlias = int | float | complex | np.number[Any] | np.bool +_ScalarLike_co: TypeAlias = int | float | complex | str | bytes | np.generic + +# `_VoidLike_co` is technically not a scalar, but it's close enough +_VoidLike_co: TypeAlias = tuple[Any, ...] | np.void diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_shape.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_shape.py new file mode 100644 index 0000000000000000000000000000000000000000..2b854d65153ace1a17b16d132dc6b263fadd1a0c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_shape.py @@ -0,0 +1,7 @@ +from collections.abc import Sequence +from typing import SupportsIndex, TypeAlias + +_Shape: TypeAlias = tuple[int, ...] + +# Anything that can be coerced to a shape tuple +_ShapeLike: TypeAlias = SupportsIndex | Sequence[SupportsIndex] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.py new file mode 100644 index 0000000000000000000000000000000000000000..d0573c8f5463e14d24286dba24f6d658445416b1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.py @@ -0,0 +1,7 @@ +from .. import ufunc + +_UFunc_Nin1_Nout1 = ufunc +_UFunc_Nin2_Nout1 = ufunc +_UFunc_Nin1_Nout2 = ufunc +_UFunc_Nin2_Nout2 = ufunc +_GUFunc_Nin2_Nout1 = ufunc diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.pyi new file mode 100644 index 0000000000000000000000000000000000000000..b5ac0ff635dd61b06cc99b31a3e132c49b7711e9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/_typing/_ufunc.pyi @@ -0,0 +1,942 @@ +"""A module with private type-check-only `numpy.ufunc` subclasses. + +The signatures of the ufuncs are too varied to reasonably type +with a single class. So instead, `ufunc` has been expanded into +four private subclasses, one for each combination of +`~ufunc.nin` and `~ufunc.nout`. +""" + +from typing import ( + Any, + Generic, + Literal, + NoReturn, + Protocol, + SupportsIndex, + TypeAlias, + TypedDict, + TypeVar, + overload, + type_check_only, +) + +from typing_extensions import LiteralString, Unpack + +import numpy as np +from numpy import _CastingKind, _OrderKACF, ufunc +from numpy.typing import NDArray + +from ._array_like import ArrayLike, _ArrayLikeBool_co, _ArrayLikeInt_co +from ._dtype_like import DTypeLike +from ._scalars import _ScalarLike_co +from ._shape import _ShapeLike + +_T = TypeVar("_T") +_2Tuple: TypeAlias = tuple[_T, _T] +_3Tuple: TypeAlias = tuple[_T, _T, _T] +_4Tuple: TypeAlias = tuple[_T, _T, _T, _T] + +_2PTuple: TypeAlias = tuple[_T, _T, Unpack[tuple[_T, ...]]] +_3PTuple: TypeAlias = tuple[_T, _T, _T, Unpack[tuple[_T, ...]]] +_4PTuple: TypeAlias = tuple[_T, _T, _T, _T, Unpack[tuple[_T, ...]]] + +_NTypes = TypeVar("_NTypes", bound=int, covariant=True) +_IDType = TypeVar("_IDType", covariant=True) +_NameType = TypeVar("_NameType", bound=LiteralString, covariant=True) +_Signature = TypeVar("_Signature", bound=LiteralString, covariant=True) + +_NIn = TypeVar("_NIn", bound=int, covariant=True) +_NOut = TypeVar("_NOut", bound=int, covariant=True) +_ReturnType_co = TypeVar("_ReturnType_co", covariant=True) +_ArrayType = TypeVar("_ArrayType", bound=np.ndarray[Any, Any]) + + +@type_check_only +class _SupportsArrayUFunc(Protocol): + def __array_ufunc__( + self, + ufunc: ufunc, + method: Literal["__call__", "reduce", "reduceat", "accumulate", "outer", "at"], + *inputs: Any, + **kwargs: Any, + ) -> Any: ... + +@type_check_only +class _UFunc3Kwargs(TypedDict, total=False): + where: _ArrayLikeBool_co | None + casting: _CastingKind + order: _OrderKACF + subok: bool + signature: _3Tuple[str | None] | str | None + +# NOTE: `reduce`, `accumulate`, `reduceat` and `outer` raise a ValueError for +# ufuncs that don't accept two input arguments and return one output argument. +# In such cases the respective methods return `NoReturn` + +# NOTE: Similarly, `at` won't be defined for ufuncs that return +# multiple outputs; in such cases `at` is typed to return `NoReturn` + +# NOTE: If 2 output types are returned then `out` must be a +# 2-tuple of arrays. Otherwise `None` or a plain array are also acceptable + +# pyright: reportIncompatibleMethodOverride=false + +@type_check_only +class _UFunc_Nin1_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] + @property + def __name__(self) -> _NameType: ... + @property + def __qualname__(self) -> _NameType: ... + @property + def ntypes(self) -> _NTypes: ... + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[1]: ... + @property + def nout(self) -> Literal[1]: ... + @property + def nargs(self) -> Literal[2]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + __x1: _ScalarLike_co, + out: None = ..., + *, + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _2Tuple[None | str] = ..., + ) -> Any: ... + @overload + def __call__( + self, + __x1: ArrayLike, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + *, + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _2Tuple[None | str] = ..., + ) -> NDArray[Any]: ... + @overload + def __call__( + self, + __x1: _SupportsArrayUFunc, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + *, + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _2Tuple[None | str] = ..., + ) -> Any: ... + + def at( + self, + a: _SupportsArrayUFunc, + indices: _ArrayLikeInt_co, + /, + ) -> None: ... + + def reduce(self, *args, **kwargs) -> NoReturn: ... + def accumulate(self, *args, **kwargs) -> NoReturn: ... + def reduceat(self, *args, **kwargs) -> NoReturn: ... + def outer(self, *args, **kwargs) -> NoReturn: ... + +@type_check_only +class _UFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] + @property + def __name__(self) -> _NameType: ... + @property + def __qualname__(self) -> _NameType: ... + @property + def ntypes(self) -> _NTypes: ... + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[2]: ... + @property + def nout(self) -> Literal[1]: ... + @property + def nargs(self) -> Literal[3]: ... + @property + def signature(self) -> None: ... + + @overload # (scalar, scalar) -> scalar + def __call__( + self, + x1: _ScalarLike_co, + x2: _ScalarLike_co, + /, + out: None = None, + *, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> Any: ... + @overload # (array-like, array) -> array + def __call__( + self, + x1: ArrayLike, + x2: NDArray[np.generic], + /, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + *, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array, array-like) -> array + def __call__( + self, + x1: NDArray[np.generic], + x2: ArrayLike, + /, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + *, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array-like, array-like, out=array) -> array + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + /, + out: NDArray[np.generic] | tuple[NDArray[np.generic]], + *, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array-like, array-like) -> array | scalar + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + /, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + *, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any] | Any: ... + + def at( + self, + a: NDArray[Any], + indices: _ArrayLikeInt_co, + b: ArrayLike, + /, + ) -> None: ... + + def reduce( + self, + array: ArrayLike, + axis: None | _ShapeLike = ..., + dtype: DTypeLike = ..., + out: None | NDArray[Any] = ..., + keepdims: bool = ..., + initial: Any = ..., + where: _ArrayLikeBool_co = ..., + ) -> Any: ... + + def accumulate( + self, + array: ArrayLike, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None | NDArray[Any] = ..., + ) -> NDArray[Any]: ... + + def reduceat( + self, + array: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None | NDArray[Any] = ..., + ) -> NDArray[Any]: ... + + @overload # (scalar, scalar) -> scalar + def outer( + self, + A: _ScalarLike_co, + B: _ScalarLike_co, + /, + *, + out: None = None, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> Any: ... + @overload # (array-like, array) -> array + def outer( + self, + A: ArrayLike, + B: NDArray[np.generic], + /, + *, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array, array-like) -> array + def outer( + self, + A: NDArray[np.generic], + B: ArrayLike, + /, + *, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array-like, array-like, out=array) -> array + def outer( + self, + A: ArrayLike, + B: ArrayLike, + /, + *, + out: NDArray[np.generic] | tuple[NDArray[np.generic]], + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any]: ... + @overload # (array-like, array-like) -> array | scalar + def outer( + self, + A: ArrayLike, + B: ArrayLike, + /, + *, + out: NDArray[np.generic] | tuple[NDArray[np.generic]] | None = None, + dtype: DTypeLike | None = None, + **kwds: Unpack[_UFunc3Kwargs], + ) -> NDArray[Any] | Any: ... + +@type_check_only +class _UFunc_Nin1_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] + @property + def __name__(self) -> _NameType: ... + @property + def __qualname__(self) -> _NameType: ... + @property + def ntypes(self) -> _NTypes: ... + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[1]: ... + @property + def nout(self) -> Literal[2]: ... + @property + def nargs(self) -> Literal[3]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + __x1: _ScalarLike_co, + __out1: None = ..., + __out2: None = ..., + *, + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _3Tuple[None | str] = ..., + ) -> _2Tuple[Any]: ... + @overload + def __call__( + self, + __x1: ArrayLike, + __out1: None | NDArray[Any] = ..., + __out2: None | NDArray[Any] = ..., + *, + out: _2Tuple[NDArray[Any]] = ..., + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _3Tuple[None | str] = ..., + ) -> _2Tuple[NDArray[Any]]: ... + @overload + def __call__( + self, + __x1: _SupportsArrayUFunc, + __out1: None | NDArray[Any] = ..., + __out2: None | NDArray[Any] = ..., + *, + out: _2Tuple[NDArray[Any]] = ..., + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _3Tuple[None | str] = ..., + ) -> _2Tuple[Any]: ... + + def at(self, *args, **kwargs) -> NoReturn: ... + def reduce(self, *args, **kwargs) -> NoReturn: ... + def accumulate(self, *args, **kwargs) -> NoReturn: ... + def reduceat(self, *args, **kwargs) -> NoReturn: ... + def outer(self, *args, **kwargs) -> NoReturn: ... + +@type_check_only +class _UFunc_Nin2_Nout2(ufunc, Generic[_NameType, _NTypes, _IDType]): # type: ignore[misc] + @property + def __name__(self) -> _NameType: ... + @property + def __qualname__(self) -> _NameType: ... + @property + def ntypes(self) -> _NTypes: ... + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[2]: ... + @property + def nout(self) -> Literal[2]: ... + @property + def nargs(self) -> Literal[4]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + __x1: _ScalarLike_co, + __x2: _ScalarLike_co, + __out1: None = ..., + __out2: None = ..., + *, + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _4Tuple[None | str] = ..., + ) -> _2Tuple[Any]: ... + @overload + def __call__( + self, + __x1: ArrayLike, + __x2: ArrayLike, + __out1: None | NDArray[Any] = ..., + __out2: None | NDArray[Any] = ..., + *, + out: _2Tuple[NDArray[Any]] = ..., + where: None | _ArrayLikeBool_co = ..., + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _4Tuple[None | str] = ..., + ) -> _2Tuple[NDArray[Any]]: ... + + def at(self, *args, **kwargs) -> NoReturn: ... + def reduce(self, *args, **kwargs) -> NoReturn: ... + def accumulate(self, *args, **kwargs) -> NoReturn: ... + def reduceat(self, *args, **kwargs) -> NoReturn: ... + def outer(self, *args, **kwargs) -> NoReturn: ... + +@type_check_only +class _GUFunc_Nin2_Nout1(ufunc, Generic[_NameType, _NTypes, _IDType, _Signature]): # type: ignore[misc] + @property + def __name__(self) -> _NameType: ... + @property + def __qualname__(self) -> _NameType: ... + @property + def ntypes(self) -> _NTypes: ... + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[2]: ... + @property + def nout(self) -> Literal[1]: ... + @property + def nargs(self) -> Literal[3]: ... + @property + def signature(self) -> _Signature: ... + + # Scalar for 1D array-likes; ndarray otherwise + @overload + def __call__( + self, + __x1: ArrayLike, + __x2: ArrayLike, + out: None = ..., + *, + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _3Tuple[None | str] = ..., + axes: list[_2Tuple[SupportsIndex]] = ..., + ) -> Any: ... + @overload + def __call__( + self, + __x1: ArrayLike, + __x2: ArrayLike, + out: NDArray[Any] | tuple[NDArray[Any]], + *, + casting: _CastingKind = ..., + order: _OrderKACF = ..., + dtype: DTypeLike = ..., + subok: bool = ..., + signature: str | _3Tuple[None | str] = ..., + axes: list[_2Tuple[SupportsIndex]] = ..., + ) -> NDArray[Any]: ... + + def at(self, *args, **kwargs) -> NoReturn: ... + def reduce(self, *args, **kwargs) -> NoReturn: ... + def accumulate(self, *args, **kwargs) -> NoReturn: ... + def reduceat(self, *args, **kwargs) -> NoReturn: ... + def outer(self, *args, **kwargs) -> NoReturn: ... + +@type_check_only +class _PyFunc_Kwargs_Nargs2(TypedDict, total=False): + where: None | _ArrayLikeBool_co + casting: _CastingKind + order: _OrderKACF + dtype: DTypeLike + subok: bool + signature: str | tuple[DTypeLike, DTypeLike] + +@type_check_only +class _PyFunc_Kwargs_Nargs3(TypedDict, total=False): + where: None | _ArrayLikeBool_co + casting: _CastingKind + order: _OrderKACF + dtype: DTypeLike + subok: bool + signature: str | tuple[DTypeLike, DTypeLike, DTypeLike] + +@type_check_only +class _PyFunc_Kwargs_Nargs3P(TypedDict, total=False): + where: None | _ArrayLikeBool_co + casting: _CastingKind + order: _OrderKACF + dtype: DTypeLike + subok: bool + signature: str | _3PTuple[DTypeLike] + +@type_check_only +class _PyFunc_Kwargs_Nargs4P(TypedDict, total=False): + where: None | _ArrayLikeBool_co + casting: _CastingKind + order: _OrderKACF + dtype: DTypeLike + subok: bool + signature: str | _4PTuple[DTypeLike] + +@type_check_only +class _PyFunc_Nin1_Nout1(ufunc, Generic[_ReturnType_co, _IDType]): # type: ignore[misc] + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[1]: ... + @property + def nout(self) -> Literal[1]: ... + @property + def nargs(self) -> Literal[2]: ... + @property + def ntypes(self) -> Literal[1]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + x1: _ScalarLike_co, + /, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs2], + ) -> _ReturnType_co: ... + @overload + def __call__( + self, + x1: ArrayLike, + /, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs2], + ) -> _ReturnType_co | NDArray[np.object_]: ... + @overload + def __call__( + self, + x1: ArrayLike, + /, + out: _ArrayType | tuple[_ArrayType], + **kwargs: Unpack[_PyFunc_Kwargs_Nargs2], + ) -> _ArrayType: ... + @overload + def __call__( + self, + x1: _SupportsArrayUFunc, + /, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs2], + ) -> Any: ... + + def at(self, a: _SupportsArrayUFunc, ixs: _ArrayLikeInt_co, /) -> None: ... + def reduce(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def accumulate(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def reduceat(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def outer(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + +@type_check_only +class _PyFunc_Nin2_Nout1(ufunc, Generic[_ReturnType_co, _IDType]): # type: ignore[misc] + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> Literal[2]: ... + @property + def nout(self) -> Literal[1]: ... + @property + def nargs(self) -> Literal[3]: ... + @property + def ntypes(self) -> Literal[1]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + x1: _ScalarLike_co, + x2: _ScalarLike_co, + /, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ReturnType_co: ... + @overload + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + /, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ReturnType_co | NDArray[np.object_]: ... + @overload + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + /, + out: _ArrayType | tuple[_ArrayType], + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ArrayType: ... + @overload + def __call__( + self, + x1: _SupportsArrayUFunc, + x2: _SupportsArrayUFunc | ArrayLike, + /, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> Any: ... + @overload + def __call__( + self, + x1: ArrayLike, + x2: _SupportsArrayUFunc, + /, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> Any: ... + + def at(self, a: _SupportsArrayUFunc, ixs: _ArrayLikeInt_co, b: ArrayLike, /) -> None: ... + + @overload + def reduce( + self, + array: ArrayLike, + axis: None | _ShapeLike, + dtype: DTypeLike, + out: _ArrayType, + /, + keepdims: bool = ..., + initial: _ScalarLike_co = ..., + where: _ArrayLikeBool_co = ..., + ) -> _ArrayType: ... + @overload + def reduce( + self, + /, + array: ArrayLike, + axis: None | _ShapeLike = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayType | tuple[_ArrayType], + keepdims: bool = ..., + initial: _ScalarLike_co = ..., + where: _ArrayLikeBool_co = ..., + ) -> _ArrayType: ... + @overload + def reduce( + self, + /, + array: ArrayLike, + axis: None | _ShapeLike = ..., + dtype: DTypeLike = ..., + out: None = ..., + *, + keepdims: Literal[True], + initial: _ScalarLike_co = ..., + where: _ArrayLikeBool_co = ..., + ) -> NDArray[np.object_]: ... + @overload + def reduce( + self, + /, + array: ArrayLike, + axis: None | _ShapeLike = ..., + dtype: DTypeLike = ..., + out: None = ..., + keepdims: bool = ..., + initial: _ScalarLike_co = ..., + where: _ArrayLikeBool_co = ..., + ) -> _ReturnType_co | NDArray[np.object_]: ... + + @overload + def reduceat( + self, + array: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex, + dtype: DTypeLike, + out: _ArrayType, + /, + ) -> _ArrayType: ... + @overload + def reduceat( + self, + /, + array: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayType | tuple[_ArrayType], + ) -> _ArrayType: ... + @overload + def reduceat( + self, + /, + array: ArrayLike, + indices: _ArrayLikeInt_co, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None = ..., + ) -> NDArray[np.object_]: ... + @overload + def reduceat( + self, + /, + array: _SupportsArrayUFunc, + indices: _ArrayLikeInt_co, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + ) -> Any: ... + + @overload + def accumulate( + self, + array: ArrayLike, + axis: SupportsIndex, + dtype: DTypeLike, + out: _ArrayType, + /, + ) -> _ArrayType: ... + @overload + def accumulate( + self, + array: ArrayLike, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + *, + out: _ArrayType | tuple[_ArrayType], + ) -> _ArrayType: ... + @overload + def accumulate( + self, + /, + array: ArrayLike, + axis: SupportsIndex = ..., + dtype: DTypeLike = ..., + out: None = ..., + ) -> NDArray[np.object_]: ... + + @overload + def outer( + self, + A: _ScalarLike_co, + B: _ScalarLike_co, + /, *, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ReturnType_co: ... + @overload + def outer( + self, + A: ArrayLike, + B: ArrayLike, + /, *, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ReturnType_co | NDArray[np.object_]: ... + @overload + def outer( + self, + A: ArrayLike, + B: ArrayLike, + /, *, + out: _ArrayType, + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> _ArrayType: ... + @overload + def outer( + self, + A: _SupportsArrayUFunc, + B: _SupportsArrayUFunc | ArrayLike, + /, *, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> Any: ... + @overload + def outer( + self, + A: _ScalarLike_co, + B: _SupportsArrayUFunc | ArrayLike, + /, *, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3], + ) -> Any: ... + +@type_check_only +class _PyFunc_Nin3P_Nout1(ufunc, Generic[_ReturnType_co, _IDType, _NIn]): # type: ignore[misc] + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> _NIn: ... + @property + def nout(self) -> Literal[1]: ... + @property + def ntypes(self) -> Literal[1]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + x1: _ScalarLike_co, + x2: _ScalarLike_co, + x3: _ScalarLike_co, + /, + *xs: _ScalarLike_co, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs4P], + ) -> _ReturnType_co: ... + @overload + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + x3: ArrayLike, + /, + *xs: ArrayLike, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs4P], + ) -> _ReturnType_co | NDArray[np.object_]: ... + @overload + def __call__( + self, + x1: ArrayLike, + x2: ArrayLike, + x3: ArrayLike, + /, + *xs: ArrayLike, + out: _ArrayType | tuple[_ArrayType], + **kwargs: Unpack[_PyFunc_Kwargs_Nargs4P], + ) -> _ArrayType: ... + @overload + def __call__( + self, + x1: _SupportsArrayUFunc | ArrayLike, + x2: _SupportsArrayUFunc | ArrayLike, + x3: _SupportsArrayUFunc | ArrayLike, + /, + *xs: _SupportsArrayUFunc | ArrayLike, + out: None | NDArray[Any] | tuple[NDArray[Any]] = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs4P], + ) -> Any: ... + + def at(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def reduce(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def accumulate(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def reduceat(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def outer(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + +@type_check_only +class _PyFunc_Nin1P_Nout2P(ufunc, Generic[_ReturnType_co, _IDType, _NIn, _NOut]): # type: ignore[misc] + @property + def identity(self) -> _IDType: ... + @property + def nin(self) -> _NIn: ... + @property + def nout(self) -> _NOut: ... + @property + def ntypes(self) -> Literal[1]: ... + @property + def signature(self) -> None: ... + + @overload + def __call__( + self, + x1: _ScalarLike_co, + /, + *xs: _ScalarLike_co, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3P], + ) -> _2PTuple[_ReturnType_co]: ... + @overload + def __call__( + self, + x1: ArrayLike, + /, + *xs: ArrayLike, + out: None = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3P], + ) -> _2PTuple[_ReturnType_co | NDArray[np.object_]]: ... + @overload + def __call__( + self, + x1: ArrayLike, + /, + *xs: ArrayLike, + out: _2PTuple[_ArrayType], + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3P], + ) -> _2PTuple[_ArrayType]: ... + @overload + def __call__( + self, + x1: _SupportsArrayUFunc | ArrayLike, + /, + *xs: _SupportsArrayUFunc | ArrayLike, + out: None | _2PTuple[NDArray[Any]] = ..., + **kwargs: Unpack[_PyFunc_Kwargs_Nargs3P], + ) -> Any: ... + + def at(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def reduce(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def accumulate(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def reduceat(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... + def outer(self, /, *args: Any, **kwargs: Any) -> NoReturn: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/compat/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/compat/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..729265aa9c27736861dc16d803ae7c186f2958c4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/compat/__init__.py @@ -0,0 +1,29 @@ +""" +Compatibility module. + +This module contains duplicated code from Python itself or 3rd party +extensions, which may be included for the following reasons: + + * compatibility + * we may only need a small subset of the copied library/module + +This module is deprecated since 1.26.0 and will be removed in future versions. + +""" + +import warnings + +from .._utils import _inspect +from .._utils._inspect import getargspec, formatargspec +from . import py3k +from .py3k import * + +warnings.warn( + "`np.compat`, which was used during the Python 2 to 3 transition," + " is deprecated since 1.26.0, and will be removed", + DeprecationWarning, stacklevel=2 +) + +__all__ = [] +__all__.extend(_inspect.__all__) +__all__.extend(py3k.__all__) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/compat/tests/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/compat/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/conftest.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/conftest.py new file mode 100644 index 0000000000000000000000000000000000000000..0eb42d1103e4a59c389ac36a8077fea4d0a8f7de --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/conftest.py @@ -0,0 +1,261 @@ +""" +Pytest configuration and fixtures for the Numpy test suite. +""" +import os +import string +import sys +import tempfile +from contextlib import contextmanager +import warnings + +import hypothesis +import pytest +import numpy +import numpy as np + +from numpy._core._multiarray_tests import get_fpu_mode +from numpy._core.tests._natype import pd_NA +from numpy.testing._private.utils import NOGIL_BUILD, get_stringdtype_dtype + +try: + from scipy_doctest.conftest import dt_config + HAVE_SCPDT = True +except ModuleNotFoundError: + HAVE_SCPDT = False + + +_old_fpu_mode = None +_collect_results = {} + +# Use a known and persistent tmpdir for hypothesis' caches, which +# can be automatically cleared by the OS or user. +hypothesis.configuration.set_hypothesis_home_dir( + os.path.join(tempfile.gettempdir(), ".hypothesis") +) + +# We register two custom profiles for Numpy - for details see +# https://hypothesis.readthedocs.io/en/latest/settings.html +# The first is designed for our own CI runs; the latter also +# forces determinism and is designed for use via np.test() +hypothesis.settings.register_profile( + name="numpy-profile", deadline=None, print_blob=True, +) +hypothesis.settings.register_profile( + name="np.test() profile", + deadline=None, print_blob=True, database=None, derandomize=True, + suppress_health_check=list(hypothesis.HealthCheck), +) +# Note that the default profile is chosen based on the presence +# of pytest.ini, but can be overridden by passing the +# --hypothesis-profile=NAME argument to pytest. +_pytest_ini = os.path.join(os.path.dirname(__file__), "..", "pytest.ini") +hypothesis.settings.load_profile( + "numpy-profile" if os.path.isfile(_pytest_ini) else "np.test() profile" +) + +# The experimentalAPI is used in _umath_tests +os.environ["NUMPY_EXPERIMENTAL_DTYPE_API"] = "1" + +def pytest_configure(config): + config.addinivalue_line("markers", + "valgrind_error: Tests that are known to error under valgrind.") + config.addinivalue_line("markers", + "leaks_references: Tests that are known to leak references.") + config.addinivalue_line("markers", + "slow: Tests that are very slow.") + config.addinivalue_line("markers", + "slow_pypy: Tests that are very slow on pypy.") + + +def pytest_addoption(parser): + parser.addoption("--available-memory", action="store", default=None, + help=("Set amount of memory available for running the " + "test suite. This can result to tests requiring " + "especially large amounts of memory to be skipped. " + "Equivalent to setting environment variable " + "NPY_AVAILABLE_MEM. Default: determined" + "automatically.")) + + +gil_enabled_at_start = True +if NOGIL_BUILD: + gil_enabled_at_start = sys._is_gil_enabled() + + +def pytest_sessionstart(session): + available_mem = session.config.getoption('available_memory') + if available_mem is not None: + os.environ['NPY_AVAILABLE_MEM'] = available_mem + + +def pytest_terminal_summary(terminalreporter, exitstatus, config): + if NOGIL_BUILD and not gil_enabled_at_start and sys._is_gil_enabled(): + tr = terminalreporter + tr.ensure_newline() + tr.section("GIL re-enabled", sep="=", red=True, bold=True) + tr.line("The GIL was re-enabled at runtime during the tests.") + tr.line("This can happen with no test failures if the RuntimeWarning") + tr.line("raised by Python when this happens is filtered by a test.") + tr.line("") + tr.line("Please ensure all new C modules declare support for running") + tr.line("without the GIL. Any new tests that intentionally imports ") + tr.line("code that re-enables the GIL should do so in a subprocess.") + pytest.exit("GIL re-enabled during tests", returncode=1) + +#FIXME when yield tests are gone. +@pytest.hookimpl() +def pytest_itemcollected(item): + """ + Check FPU precision mode was not changed during test collection. + + The clumsy way we do it here is mainly necessary because numpy + still uses yield tests, which can execute code at test collection + time. + """ + global _old_fpu_mode + + mode = get_fpu_mode() + + if _old_fpu_mode is None: + _old_fpu_mode = mode + elif mode != _old_fpu_mode: + _collect_results[item] = (_old_fpu_mode, mode) + _old_fpu_mode = mode + + +@pytest.fixture(scope="function", autouse=True) +def check_fpu_mode(request): + """ + Check FPU precision mode was not changed during the test. + """ + old_mode = get_fpu_mode() + yield + new_mode = get_fpu_mode() + + if old_mode != new_mode: + raise AssertionError("FPU precision mode changed from {0:#x} to {1:#x}" + " during the test".format(old_mode, new_mode)) + + collect_result = _collect_results.get(request.node) + if collect_result is not None: + old_mode, new_mode = collect_result + raise AssertionError("FPU precision mode changed from {0:#x} to {1:#x}" + " when collecting the test".format(old_mode, + new_mode)) + + +@pytest.fixture(autouse=True) +def add_np(doctest_namespace): + doctest_namespace['np'] = numpy + +@pytest.fixture(autouse=True) +def env_setup(monkeypatch): + monkeypatch.setenv('PYTHONHASHSEED', '0') + + +if HAVE_SCPDT: + + @contextmanager + def warnings_errors_and_rng(test=None): + """Filter out the wall of DeprecationWarnings. + """ + msgs = ["The numpy.linalg.linalg", + "The numpy.fft.helper", + "dep_util", + "pkg_resources", + "numpy.core.umath", + "msvccompiler", + "Deprecated call", + "numpy.core", + "`np.compat`", + "Importing from numpy.matlib", + "This function is deprecated.", # random_integers + "Data type alias 'a'", # numpy.rec.fromfile + "Arrays of 2-dimensional vectors", # matlib.cross + "`in1d` is deprecated", ] + msg = "|".join(msgs) + + msgs_r = [ + "invalid value encountered", + "divide by zero encountered" + ] + msg_r = "|".join(msgs_r) + + with warnings.catch_warnings(): + warnings.filterwarnings( + 'ignore', category=DeprecationWarning, message=msg + ) + warnings.filterwarnings( + 'ignore', category=RuntimeWarning, message=msg_r + ) + yield + + # find and check doctests under this context manager + dt_config.user_context_mgr = warnings_errors_and_rng + + # numpy specific tweaks from refguide-check + dt_config.rndm_markers.add('#uninitialized') + dt_config.rndm_markers.add('# uninitialized') + + # make the checker pick on mismatched dtypes + dt_config.strict_check = True + + import doctest + dt_config.optionflags = doctest.NORMALIZE_WHITESPACE | doctest.ELLIPSIS + + # recognize the StringDType repr + dt_config.check_namespace['StringDType'] = numpy.dtypes.StringDType + + # temporary skips + dt_config.skiplist = { + 'numpy.savez', # unclosed file + 'numpy.matlib.savez', + 'numpy.__array_namespace_info__', + 'numpy.matlib.__array_namespace_info__', + } + + # xfail problematic tutorials + dt_config.pytest_extra_xfail = { + 'how-to-verify-bug.rst': '', + 'c-info.ufunc-tutorial.rst': '', + 'basics.interoperability.rst': 'needs pandas', + 'basics.dispatch.rst': 'errors out in /testing/overrides.py', + 'basics.subclassing.rst': '.. testcode:: admonitions not understood', + 'misc.rst': 'manipulates warnings', + } + + # ignores are for things fail doctest collection (optionals etc) + dt_config.pytest_extra_ignore = [ + 'numpy/distutils', + 'numpy/_core/cversions.py', + 'numpy/_pyinstaller', + 'numpy/random/_examples', + 'numpy/compat', + 'numpy/f2py/_backends/_distutils.py', + ] + + +@pytest.fixture +def random_string_list(): + chars = list(string.ascii_letters + string.digits) + chars = np.array(chars, dtype="U1") + ret = np.random.choice(chars, size=100 * 10, replace=True) + return ret.view("U100") + + +@pytest.fixture(params=[True, False]) +def coerce(request): + return request.param + + +@pytest.fixture( + params=["unset", None, pd_NA, np.nan, float("nan"), "__nan__"], + ids=["unset", "None", "pandas.NA", "np.nan", "float('nan')", "string nan"], +) +def na_object(request): + return request.param + + +@pytest.fixture() +def dtype(na_object, coerce): + return get_stringdtype_dtype(na_object, coerce) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e7d3c678b429dbde0333d4e79a6d2a860c6d678f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__init__.py @@ -0,0 +1,32 @@ +""" +The `numpy.core` submodule exists solely for backward compatibility +purposes. The original `core` was renamed to `_core` and made private. +`numpy.core` will be removed in the future. +""" +from numpy import _core +from ._utils import _raise_warning + + +# We used to use `np.core._ufunc_reconstruct` to unpickle. +# This is unnecessary, but old pickles saved before 1.20 will be using it, +# and there is no reason to break loading them. +def _ufunc_reconstruct(module, name): + # The `fromlist` kwarg is required to ensure that `mod` points to the + # inner-most module rather than the parent package when module name is + # nested. This makes it possible to pickle non-toplevel ufuncs such as + # scipy.special.expit for instance. + mod = __import__(module, fromlist=[name]) + return getattr(mod, name) + + +# force lazy-loading of submodules to ensure a warning is printed + +__all__ = ["arrayprint", "defchararray", "_dtype_ctypes", "_dtype", + "einsumfunc", "fromnumeric", "function_base", "getlimits", + "_internal", "multiarray", "_multiarray_umath", "numeric", + "numerictypes", "overrides", "records", "shape_base", "umath"] + +def __getattr__(attr_name): + attr = getattr(_core, attr_name) + _raise_warning(attr_name) + return attr diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..00c03170658b1e3eb4cd5bd466cc5d93fd4bb659 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/__init__.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/_utils.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/_utils.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..3e39dfd6d586b16d936445fbc42f6e21723b6c1d Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/__pycache__/_utils.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..613a1d259a1567dd28e5524b6a85a4556c16dce8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import _dtype + from ._utils import _raise_warning + ret = getattr(_dtype, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core._dtype' has no attribute {attr_name}") + _raise_warning(attr_name, "_dtype") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype.pyi new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype_ctypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype_ctypes.py new file mode 100644 index 0000000000000000000000000000000000000000..0dadd7949ecb2ad34c4342d590df9dcf7d32bd06 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype_ctypes.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import _dtype_ctypes + from ._utils import _raise_warning + ret = getattr(_dtype_ctypes, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core._dtype_ctypes' has no attribute {attr_name}") + _raise_warning(attr_name, "_dtype_ctypes") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype_ctypes.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_dtype_ctypes.pyi new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_internal.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_internal.py new file mode 100644 index 0000000000000000000000000000000000000000..7755c7c35505af3f326b22c1e6a9a4052f2a5750 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_internal.py @@ -0,0 +1,25 @@ +from numpy._core import _internal + +# Build a new array from the information in a pickle. +# Note that the name numpy.core._internal._reconstruct is embedded in +# pickles of ndarrays made with NumPy before release 1.0 +# so don't remove the name here, or you'll +# break backward compatibility. +def _reconstruct(subtype, shape, dtype): + from numpy import ndarray + return ndarray.__new__(subtype, shape, dtype) + + +# Pybind11 (in versions <= 2.11.1) imports _dtype_from_pep3118 from the +# _internal submodule, therefore it must be importable without a warning. +_dtype_from_pep3118 = _internal._dtype_from_pep3118 + +def __getattr__(attr_name): + from numpy._core import _internal + from ._utils import _raise_warning + ret = getattr(_internal, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core._internal' has no attribute {attr_name}") + _raise_warning(attr_name, "_internal") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_multiarray_umath.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_multiarray_umath.py new file mode 100644 index 0000000000000000000000000000000000000000..04cc88229aac72690f516956352ba2c398bde703 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_multiarray_umath.py @@ -0,0 +1,55 @@ +from numpy._core import _multiarray_umath +from numpy import ufunc + +for item in _multiarray_umath.__dir__(): + # ufuncs appear in pickles with a path in numpy.core._multiarray_umath + # and so must import from this namespace without warning or error + attr = getattr(_multiarray_umath, item) + if isinstance(attr, ufunc): + globals()[item] = attr + + +def __getattr__(attr_name): + from numpy._core import _multiarray_umath + from ._utils import _raise_warning + + if attr_name in {"_ARRAY_API", "_UFUNC_API"}: + from numpy.version import short_version + import textwrap + import traceback + import sys + + msg = textwrap.dedent(f""" + A module that was compiled using NumPy 1.x cannot be run in + NumPy {short_version} as it may crash. To support both 1.x and 2.x + versions of NumPy, modules must be compiled with NumPy 2.0. + Some module may need to rebuild instead e.g. with 'pybind11>=2.12'. + + If you are a user of the module, the easiest solution will be to + downgrade to 'numpy<2' or try to upgrade the affected module. + We expect that some modules will need time to support NumPy 2. + + """) + tb_msg = "Traceback (most recent call last):" + for line in traceback.format_stack()[:-1]: + if "frozen importlib" in line: + continue + tb_msg += line + + # Also print the message (with traceback). This is because old versions + # of NumPy unfortunately set up the import to replace (and hide) the + # error. The traceback shouldn't be needed, but e.g. pytest plugins + # seem to swallow it and we should be failing anyway... + sys.stderr.write(msg + tb_msg) + raise ImportError(msg) + + ret = getattr(_multiarray_umath, attr_name, None) + if ret is None: + raise AttributeError( + "module 'numpy.core._multiarray_umath' has no attribute " + f"{attr_name}") + _raise_warning(attr_name, "_multiarray_umath") + return ret + + +del _multiarray_umath, ufunc diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_utils.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..5f47f4ba46f8c503803518e15be255f7fea26cb5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/_utils.py @@ -0,0 +1,21 @@ +import warnings + + +def _raise_warning(attr: str, submodule: str | None = None) -> None: + new_module = "numpy._core" + old_module = "numpy.core" + if submodule is not None: + new_module = f"{new_module}.{submodule}" + old_module = f"{old_module}.{submodule}" + warnings.warn( + f"{old_module} is deprecated and has been renamed to {new_module}. " + "The numpy._core namespace contains private NumPy internals and its " + "use is discouraged, as NumPy internals can change without warning in " + "any release. In practice, most real-world usage of numpy.core is to " + "access functionality in the public NumPy API. If that is the case, " + "use the public NumPy API. If not, you are using NumPy internals. " + "If you would still like to access an internal attribute, " + f"use {new_module}.{attr}.", + DeprecationWarning, + stacklevel=3 + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/arrayprint.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/arrayprint.py new file mode 100644 index 0000000000000000000000000000000000000000..4e746546acf0b4df905b0c1117bdd40f0033e615 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/arrayprint.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import arrayprint + from ._utils import _raise_warning + ret = getattr(arrayprint, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.arrayprint' has no attribute {attr_name}") + _raise_warning(attr_name, "arrayprint") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/defchararray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/defchararray.py new file mode 100644 index 0000000000000000000000000000000000000000..ffab82acff5b1cd02858900a158ff57215b79d46 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/defchararray.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import defchararray + from ._utils import _raise_warning + ret = getattr(defchararray, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.defchararray' has no attribute {attr_name}") + _raise_warning(attr_name, "defchararray") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/einsumfunc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/einsumfunc.py new file mode 100644 index 0000000000000000000000000000000000000000..74aa410ff4b5ba9c58799bcfed5a1cfe41823358 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/einsumfunc.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import einsumfunc + from ._utils import _raise_warning + ret = getattr(einsumfunc, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.einsumfunc' has no attribute {attr_name}") + _raise_warning(attr_name, "einsumfunc") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/fromnumeric.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/fromnumeric.py new file mode 100644 index 0000000000000000000000000000000000000000..1ea11d799d6f7a1548f7241e041e2a2ea06d7736 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/fromnumeric.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import fromnumeric + from ._utils import _raise_warning + ret = getattr(fromnumeric, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.fromnumeric' has no attribute {attr_name}") + _raise_warning(attr_name, "fromnumeric") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/function_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/function_base.py new file mode 100644 index 0000000000000000000000000000000000000000..20e098b6fe4448d479928c9676aa99c8533453af --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/function_base.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import function_base + from ._utils import _raise_warning + ret = getattr(function_base, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.function_base' has no attribute {attr_name}") + _raise_warning(attr_name, "function_base") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/getlimits.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/getlimits.py new file mode 100644 index 0000000000000000000000000000000000000000..faa084ae77705613f4870dfdd9eab45532364b37 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/getlimits.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import getlimits + from ._utils import _raise_warning + ret = getattr(getlimits, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.getlimits' has no attribute {attr_name}") + _raise_warning(attr_name, "getlimits") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/multiarray.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/multiarray.py new file mode 100644 index 0000000000000000000000000000000000000000..0290c852a8ab06c68f05a469a11f861af56290e6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/multiarray.py @@ -0,0 +1,24 @@ +from numpy._core import multiarray + +# these must import without warning or error from numpy.core.multiarray to +# support old pickle files +for item in ["_reconstruct", "scalar"]: + globals()[item] = getattr(multiarray, item) + +# Pybind11 (in versions <= 2.11.1) imports _ARRAY_API from the multiarray +# submodule as a part of NumPy initialization, therefore it must be importable +# without a warning. +_ARRAY_API = multiarray._ARRAY_API + +def __getattr__(attr_name): + from numpy._core import multiarray + from ._utils import _raise_warning + ret = getattr(multiarray, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.multiarray' has no attribute {attr_name}") + _raise_warning(attr_name, "multiarray") + return ret + + +del multiarray diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numeric.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..af0658d4fb66bea99d3fcfe4dccb273b299a54d0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numeric.py @@ -0,0 +1,11 @@ +def __getattr__(attr_name): + from numpy._core import numeric + from ._utils import _raise_warning + + sentinel = object() + ret = getattr(numeric, attr_name, sentinel) + if ret is sentinel: + raise AttributeError( + f"module 'numpy.core.numeric' has no attribute {attr_name}") + _raise_warning(attr_name, "numeric") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numerictypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numerictypes.py new file mode 100644 index 0000000000000000000000000000000000000000..0e887cbf30ad5bf27fd7025876bfb5854427efe0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/numerictypes.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import numerictypes + from ._utils import _raise_warning + ret = getattr(numerictypes, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.numerictypes' has no attribute {attr_name}") + _raise_warning(attr_name, "numerictypes") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.py new file mode 100644 index 0000000000000000000000000000000000000000..3297999c5b01fcc89552421f7925594331a8d983 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import overrides + from ._utils import _raise_warning + ret = getattr(overrides, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.overrides' has no attribute {attr_name}") + _raise_warning(attr_name, "overrides") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.pyi new file mode 100644 index 0000000000000000000000000000000000000000..fab3512626f86841897fb903fdef84fa32366db7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/overrides.pyi @@ -0,0 +1,7 @@ +# NOTE: At runtime, this submodule dynamically re-exports any `numpy._core.overrides` +# member, and issues a `DeprecationWarning` when accessed. But since there is no +# `__dir__` or `__all__` present, these annotations would be unverifiable. Because +# this module is also deprecated in favor of `numpy._core`, and therefore not part of +# the public API, we omit the "re-exports", which in practice would require literal +# duplication of the stubs in order for the `@deprecated` decorator to be understood +# by type-checkers. diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/records.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/records.py new file mode 100644 index 0000000000000000000000000000000000000000..94c0d26926a00edb8de76937b927c7190515d904 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/records.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import records + from ._utils import _raise_warning + ret = getattr(records, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.records' has no attribute {attr_name}") + _raise_warning(attr_name, "records") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/shape_base.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/shape_base.py new file mode 100644 index 0000000000000000000000000000000000000000..10b8712c8b969360ed01c51140dbe84103f26bc3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/shape_base.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import shape_base + from ._utils import _raise_warning + ret = getattr(shape_base, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.shape_base' has no attribute {attr_name}") + _raise_warning(attr_name, "shape_base") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/umath.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/umath.py new file mode 100644 index 0000000000000000000000000000000000000000..6ef031d7d62a5ce80c79b34d90d8ba76b110a208 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/core/umath.py @@ -0,0 +1,9 @@ +def __getattr__(attr_name): + from numpy._core import umath + from ._utils import _raise_warning + ret = getattr(umath, attr_name, None) + if ret is None: + raise AttributeError( + f"module 'numpy.core.umath' has no attribute {attr_name}") + _raise_warning(attr_name, "umath") + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.py new file mode 100644 index 0000000000000000000000000000000000000000..f607773444c0d06cfa0a9b00def9c1c54df652cc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.py @@ -0,0 +1,602 @@ +""" +============================ +``ctypes`` Utility Functions +============================ + +See Also +-------- +load_library : Load a C library. +ndpointer : Array restype/argtype with verification. +as_ctypes : Create a ctypes array from an ndarray. +as_array : Create an ndarray from a ctypes array. + +References +---------- +.. [1] "SciPy Cookbook: ctypes", https://scipy-cookbook.readthedocs.io/items/Ctypes.html + +Examples +-------- +Load the C library: + +>>> _lib = np.ctypeslib.load_library('libmystuff', '.') #doctest: +SKIP + +Our result type, an ndarray that must be of type double, be 1-dimensional +and is C-contiguous in memory: + +>>> array_1d_double = np.ctypeslib.ndpointer( +... dtype=np.double, +... ndim=1, flags='CONTIGUOUS') #doctest: +SKIP + +Our C-function typically takes an array and updates its values +in-place. For example:: + + void foo_func(double* x, int length) + { + int i; + for (i = 0; i < length; i++) { + x[i] = i*i; + } + } + +We wrap it using: + +>>> _lib.foo_func.restype = None #doctest: +SKIP +>>> _lib.foo_func.argtypes = [array_1d_double, c_int] #doctest: +SKIP + +Then, we're ready to call ``foo_func``: + +>>> out = np.empty(15, dtype=np.double) +>>> _lib.foo_func(out, len(out)) #doctest: +SKIP + +""" +__all__ = ['load_library', 'ndpointer', 'c_intp', 'as_ctypes', 'as_array', + 'as_ctypes_type'] + +import os +import numpy as np +from numpy._core.multiarray import _flagdict, flagsobj + +try: + import ctypes +except ImportError: + ctypes = None + +if ctypes is None: + def _dummy(*args, **kwds): + """ + Dummy object that raises an ImportError if ctypes is not available. + + Raises + ------ + ImportError + If ctypes is not available. + + """ + raise ImportError("ctypes is not available.") + load_library = _dummy + as_ctypes = _dummy + as_array = _dummy + from numpy import intp as c_intp + _ndptr_base = object +else: + import numpy._core._internal as nic + c_intp = nic._getintp_ctype() + del nic + _ndptr_base = ctypes.c_void_p + + # Adapted from Albert Strasheim + def load_library(libname, loader_path): + """ + It is possible to load a library using + + >>> lib = ctypes.cdll[] # doctest: +SKIP + + But there are cross-platform considerations, such as library file extensions, + plus the fact Windows will just load the first library it finds with that name. + NumPy supplies the load_library function as a convenience. + + .. versionchanged:: 1.20.0 + Allow libname and loader_path to take any + :term:`python:path-like object`. + + Parameters + ---------- + libname : path-like + Name of the library, which can have 'lib' as a prefix, + but without an extension. + loader_path : path-like + Where the library can be found. + + Returns + ------- + ctypes.cdll[libpath] : library object + A ctypes library object + + Raises + ------ + OSError + If there is no library with the expected extension, or the + library is defective and cannot be loaded. + """ + # Convert path-like objects into strings + libname = os.fsdecode(libname) + loader_path = os.fsdecode(loader_path) + + ext = os.path.splitext(libname)[1] + if not ext: + import sys + import sysconfig + # Try to load library with platform-specific name, otherwise + # default to libname.[so|dll|dylib]. Sometimes, these files are + # built erroneously on non-linux platforms. + base_ext = ".so" + if sys.platform.startswith("darwin"): + base_ext = ".dylib" + elif sys.platform.startswith("win"): + base_ext = ".dll" + libname_ext = [libname + base_ext] + so_ext = sysconfig.get_config_var("EXT_SUFFIX") + if not so_ext == base_ext: + libname_ext.insert(0, libname + so_ext) + else: + libname_ext = [libname] + + loader_path = os.path.abspath(loader_path) + if not os.path.isdir(loader_path): + libdir = os.path.dirname(loader_path) + else: + libdir = loader_path + + for ln in libname_ext: + libpath = os.path.join(libdir, ln) + if os.path.exists(libpath): + try: + return ctypes.cdll[libpath] + except OSError: + ## defective lib file + raise + ## if no successful return in the libname_ext loop: + raise OSError("no file with expected extension") + + +def _num_fromflags(flaglist): + num = 0 + for val in flaglist: + num += _flagdict[val] + return num + +_flagnames = ['C_CONTIGUOUS', 'F_CONTIGUOUS', 'ALIGNED', 'WRITEABLE', + 'OWNDATA', 'WRITEBACKIFCOPY'] +def _flags_fromnum(num): + res = [] + for key in _flagnames: + value = _flagdict[key] + if (num & value): + res.append(key) + return res + + +class _ndptr(_ndptr_base): + @classmethod + def from_param(cls, obj): + if not isinstance(obj, np.ndarray): + raise TypeError("argument must be an ndarray") + if cls._dtype_ is not None \ + and obj.dtype != cls._dtype_: + raise TypeError("array must have data type %s" % cls._dtype_) + if cls._ndim_ is not None \ + and obj.ndim != cls._ndim_: + raise TypeError("array must have %d dimension(s)" % cls._ndim_) + if cls._shape_ is not None \ + and obj.shape != cls._shape_: + raise TypeError("array must have shape %s" % str(cls._shape_)) + if cls._flags_ is not None \ + and ((obj.flags.num & cls._flags_) != cls._flags_): + raise TypeError("array must have flags %s" % + _flags_fromnum(cls._flags_)) + return obj.ctypes + + +class _concrete_ndptr(_ndptr): + """ + Like _ndptr, but with `_shape_` and `_dtype_` specified. + + Notably, this means the pointer has enough information to reconstruct + the array, which is not generally true. + """ + def _check_retval_(self): + """ + This method is called when this class is used as the .restype + attribute for a shared-library function, to automatically wrap the + pointer into an array. + """ + return self.contents + + @property + def contents(self): + """ + Get an ndarray viewing the data pointed to by this pointer. + + This mirrors the `contents` attribute of a normal ctypes pointer + """ + full_dtype = np.dtype((self._dtype_, self._shape_)) + full_ctype = ctypes.c_char * full_dtype.itemsize + buffer = ctypes.cast(self, ctypes.POINTER(full_ctype)).contents + return np.frombuffer(buffer, dtype=full_dtype).squeeze(axis=0) + + +# Factory for an array-checking class with from_param defined for +# use with ctypes argtypes mechanism +_pointer_type_cache = {} +def ndpointer(dtype=None, ndim=None, shape=None, flags=None): + """ + Array-checking restype/argtypes. + + An ndpointer instance is used to describe an ndarray in restypes + and argtypes specifications. This approach is more flexible than + using, for example, ``POINTER(c_double)``, since several restrictions + can be specified, which are verified upon calling the ctypes function. + These include data type, number of dimensions, shape and flags. If a + given array does not satisfy the specified restrictions, + a ``TypeError`` is raised. + + Parameters + ---------- + dtype : data-type, optional + Array data-type. + ndim : int, optional + Number of array dimensions. + shape : tuple of ints, optional + Array shape. + flags : str or tuple of str + Array flags; may be one or more of: + + - C_CONTIGUOUS / C / CONTIGUOUS + - F_CONTIGUOUS / F / FORTRAN + - OWNDATA / O + - WRITEABLE / W + - ALIGNED / A + - WRITEBACKIFCOPY / X + + Returns + ------- + klass : ndpointer type object + A type object, which is an ``_ndtpr`` instance containing + dtype, ndim, shape and flags information. + + Raises + ------ + TypeError + If a given array does not satisfy the specified restrictions. + + Examples + -------- + >>> clib.somefunc.argtypes = [np.ctypeslib.ndpointer(dtype=np.float64, + ... ndim=1, + ... flags='C_CONTIGUOUS')] + ... #doctest: +SKIP + >>> clib.somefunc(np.array([1, 2, 3], dtype=np.float64)) + ... #doctest: +SKIP + + """ + + # normalize dtype to dtype | None + if dtype is not None: + dtype = np.dtype(dtype) + + # normalize flags to int | None + num = None + if flags is not None: + if isinstance(flags, str): + flags = flags.split(',') + elif isinstance(flags, (int, np.integer)): + num = flags + flags = _flags_fromnum(num) + elif isinstance(flags, flagsobj): + num = flags.num + flags = _flags_fromnum(num) + if num is None: + try: + flags = [x.strip().upper() for x in flags] + except Exception as e: + raise TypeError("invalid flags specification") from e + num = _num_fromflags(flags) + + # normalize shape to tuple | None + if shape is not None: + try: + shape = tuple(shape) + except TypeError: + # single integer -> 1-tuple + shape = (shape,) + + cache_key = (dtype, ndim, shape, num) + + try: + return _pointer_type_cache[cache_key] + except KeyError: + pass + + # produce a name for the new type + if dtype is None: + name = 'any' + elif dtype.names is not None: + name = str(id(dtype)) + else: + name = dtype.str + if ndim is not None: + name += "_%dd" % ndim + if shape is not None: + name += "_"+"x".join(str(x) for x in shape) + if flags is not None: + name += "_"+"_".join(flags) + + if dtype is not None and shape is not None: + base = _concrete_ndptr + else: + base = _ndptr + + klass = type("ndpointer_%s"%name, (base,), + {"_dtype_": dtype, + "_shape_" : shape, + "_ndim_" : ndim, + "_flags_" : num}) + _pointer_type_cache[cache_key] = klass + return klass + + +if ctypes is not None: + def _ctype_ndarray(element_type, shape): + """ Create an ndarray of the given element type and shape """ + for dim in shape[::-1]: + element_type = dim * element_type + # prevent the type name include np.ctypeslib + element_type.__module__ = None + return element_type + + + def _get_scalar_type_map(): + """ + Return a dictionary mapping native endian scalar dtype to ctypes types + """ + ct = ctypes + simple_types = [ + ct.c_byte, ct.c_short, ct.c_int, ct.c_long, ct.c_longlong, + ct.c_ubyte, ct.c_ushort, ct.c_uint, ct.c_ulong, ct.c_ulonglong, + ct.c_float, ct.c_double, + ct.c_bool, + ] + return {np.dtype(ctype): ctype for ctype in simple_types} + + + _scalar_type_map = _get_scalar_type_map() + + + def _ctype_from_dtype_scalar(dtype): + # swapping twice ensure that `=` is promoted to <, >, or | + dtype_with_endian = dtype.newbyteorder('S').newbyteorder('S') + dtype_native = dtype.newbyteorder('=') + try: + ctype = _scalar_type_map[dtype_native] + except KeyError as e: + raise NotImplementedError( + "Converting {!r} to a ctypes type".format(dtype) + ) from None + + if dtype_with_endian.byteorder == '>': + ctype = ctype.__ctype_be__ + elif dtype_with_endian.byteorder == '<': + ctype = ctype.__ctype_le__ + + return ctype + + + def _ctype_from_dtype_subarray(dtype): + element_dtype, shape = dtype.subdtype + ctype = _ctype_from_dtype(element_dtype) + return _ctype_ndarray(ctype, shape) + + + def _ctype_from_dtype_structured(dtype): + # extract offsets of each field + field_data = [] + for name in dtype.names: + field_dtype, offset = dtype.fields[name][:2] + field_data.append((offset, name, _ctype_from_dtype(field_dtype))) + + # ctypes doesn't care about field order + field_data = sorted(field_data, key=lambda f: f[0]) + + if len(field_data) > 1 and all(offset == 0 for offset, name, ctype in field_data): + # union, if multiple fields all at address 0 + size = 0 + _fields_ = [] + for offset, name, ctype in field_data: + _fields_.append((name, ctype)) + size = max(size, ctypes.sizeof(ctype)) + + # pad to the right size + if dtype.itemsize != size: + _fields_.append(('', ctypes.c_char * dtype.itemsize)) + + # we inserted manual padding, so always `_pack_` + return type('union', (ctypes.Union,), dict( + _fields_=_fields_, + _pack_=1, + __module__=None, + )) + else: + last_offset = 0 + _fields_ = [] + for offset, name, ctype in field_data: + padding = offset - last_offset + if padding < 0: + raise NotImplementedError("Overlapping fields") + if padding > 0: + _fields_.append(('', ctypes.c_char * padding)) + + _fields_.append((name, ctype)) + last_offset = offset + ctypes.sizeof(ctype) + + + padding = dtype.itemsize - last_offset + if padding > 0: + _fields_.append(('', ctypes.c_char * padding)) + + # we inserted manual padding, so always `_pack_` + return type('struct', (ctypes.Structure,), dict( + _fields_=_fields_, + _pack_=1, + __module__=None, + )) + + + def _ctype_from_dtype(dtype): + if dtype.fields is not None: + return _ctype_from_dtype_structured(dtype) + elif dtype.subdtype is not None: + return _ctype_from_dtype_subarray(dtype) + else: + return _ctype_from_dtype_scalar(dtype) + + + def as_ctypes_type(dtype): + r""" + Convert a dtype into a ctypes type. + + Parameters + ---------- + dtype : dtype + The dtype to convert + + Returns + ------- + ctype + A ctype scalar, union, array, or struct + + Raises + ------ + NotImplementedError + If the conversion is not possible + + Notes + ----- + This function does not losslessly round-trip in either direction. + + ``np.dtype(as_ctypes_type(dt))`` will: + + - insert padding fields + - reorder fields to be sorted by offset + - discard field titles + + ``as_ctypes_type(np.dtype(ctype))`` will: + + - discard the class names of `ctypes.Structure`\ s and + `ctypes.Union`\ s + - convert single-element `ctypes.Union`\ s into single-element + `ctypes.Structure`\ s + - insert padding fields + + Examples + -------- + Converting a simple dtype: + + >>> dt = np.dtype('int8') + >>> ctype = np.ctypeslib.as_ctypes_type(dt) + >>> ctype + + + Converting a structured dtype: + + >>> dt = np.dtype([('x', 'i4'), ('y', 'f4')]) + >>> ctype = np.ctypeslib.as_ctypes_type(dt) + >>> ctype + + + """ + return _ctype_from_dtype(np.dtype(dtype)) + + + def as_array(obj, shape=None): + """ + Create a numpy array from a ctypes array or POINTER. + + The numpy array shares the memory with the ctypes object. + + The shape parameter must be given if converting from a ctypes POINTER. + The shape parameter is ignored if converting from a ctypes array + + Examples + -------- + Converting a ctypes integer array: + + >>> import ctypes + >>> ctypes_array = (ctypes.c_int * 5)(0, 1, 2, 3, 4) + >>> np_array = np.ctypeslib.as_array(ctypes_array) + >>> np_array + array([0, 1, 2, 3, 4], dtype=int32) + + Converting a ctypes POINTER: + + >>> import ctypes + >>> buffer = (ctypes.c_int * 5)(0, 1, 2, 3, 4) + >>> pointer = ctypes.cast(buffer, ctypes.POINTER(ctypes.c_int)) + >>> np_array = np.ctypeslib.as_array(pointer, (5,)) + >>> np_array + array([0, 1, 2, 3, 4], dtype=int32) + + """ + if isinstance(obj, ctypes._Pointer): + # convert pointers to an array of the desired shape + if shape is None: + raise TypeError( + 'as_array() requires a shape argument when called on a ' + 'pointer') + p_arr_type = ctypes.POINTER(_ctype_ndarray(obj._type_, shape)) + obj = ctypes.cast(obj, p_arr_type).contents + + return np.asarray(obj) + + + def as_ctypes(obj): + """ + Create and return a ctypes object from a numpy array. Actually + anything that exposes the __array_interface__ is accepted. + + Examples + -------- + Create ctypes object from inferred int ``np.array``: + + >>> inferred_int_array = np.array([1, 2, 3]) + >>> c_int_array = np.ctypeslib.as_ctypes(inferred_int_array) + >>> type(c_int_array) + + >>> c_int_array[:] + [1, 2, 3] + + Create ctypes object from explicit 8 bit unsigned int ``np.array`` : + + >>> exp_int_array = np.array([1, 2, 3], dtype=np.uint8) + >>> c_int_array = np.ctypeslib.as_ctypes(exp_int_array) + >>> type(c_int_array) + + >>> c_int_array[:] + [1, 2, 3] + + """ + ai = obj.__array_interface__ + if ai["strides"]: + raise TypeError("strided arrays not supported") + if ai["version"] != 3: + raise TypeError("only __array_interface__ version 3 supported") + addr, readonly = ai["data"] + if readonly: + raise TypeError("readonly arrays unsupported") + + # can't use `_dtype((ai["typestr"], ai["shape"]))` here, as it overflows + # dtype.itemsize (gh-14214) + ctype_scalar = as_ctypes_type(ai["typestr"]) + result_type = _ctype_ndarray(ctype_scalar, ai["shape"]) + result = result_type.from_address(addr) + result.__keep = obj + return result diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.pyi new file mode 100644 index 0000000000000000000000000000000000000000..fd5d994510711887c0a8eaa4734425c2b25530c9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/ctypeslib.pyi @@ -0,0 +1,250 @@ +# NOTE: Numpy's mypy plugin is used for importing the correct +# platform-specific `ctypes._SimpleCData[int]` sub-type +import ctypes +from ctypes import c_int64 as _c_intp + +from _typeshed import StrOrBytesPath +from collections.abc import Iterable, Sequence +from typing import ( + Literal as L, + Any, + TypeAlias, + TypeVar, + Generic, + overload, + ClassVar, +) + +import numpy as np +from numpy import ( + ndarray, + dtype, + generic, + byte, + short, + intc, + long, + longlong, + ubyte, + ushort, + uintc, + ulong, + ulonglong, + single, + double, + longdouble, + void, +) +from numpy._core._internal import _ctypes +from numpy._core.multiarray import flagsobj +from numpy._typing import ( + # Arrays + NDArray, + _ArrayLike, + + # Shapes + _Shape, + _ShapeLike, + + # DTypes + DTypeLike, + _DTypeLike, + _VoidDTypeLike, + _BoolCodes, + _UByteCodes, + _UShortCodes, + _UIntCCodes, + _ULongCodes, + _ULongLongCodes, + _ByteCodes, + _ShortCodes, + _IntCCodes, + _LongCodes, + _LongLongCodes, + _SingleCodes, + _DoubleCodes, + _LongDoubleCodes, +) + +__all__ = ["load_library", "ndpointer", "c_intp", "as_ctypes", "as_array", "as_ctypes_type"] + +# TODO: Add a proper `_Shape` bound once we've got variadic typevars +_DType = TypeVar("_DType", bound=dtype[Any]) +_DTypeOptional = TypeVar("_DTypeOptional", bound=None | dtype[Any]) +_SCT = TypeVar("_SCT", bound=generic) + +_FlagsKind: TypeAlias = L[ + 'C_CONTIGUOUS', 'CONTIGUOUS', 'C', + 'F_CONTIGUOUS', 'FORTRAN', 'F', + 'ALIGNED', 'A', + 'WRITEABLE', 'W', + 'OWNDATA', 'O', + 'WRITEBACKIFCOPY', 'X', +] + +# TODO: Add a shape typevar once we have variadic typevars (PEP 646) +class _ndptr(ctypes.c_void_p, Generic[_DTypeOptional]): + # In practice these 4 classvars are defined in the dynamic class + # returned by `ndpointer` + _dtype_: ClassVar[_DTypeOptional] + _shape_: ClassVar[None] + _ndim_: ClassVar[None | int] + _flags_: ClassVar[None | list[_FlagsKind]] + + @overload + @classmethod + def from_param(cls: type[_ndptr[None]], obj: NDArray[Any]) -> _ctypes[Any]: ... + @overload + @classmethod + def from_param(cls: type[_ndptr[_DType]], obj: ndarray[Any, _DType]) -> _ctypes[Any]: ... + +class _concrete_ndptr(_ndptr[_DType]): + _dtype_: ClassVar[_DType] + _shape_: ClassVar[tuple[int, ...]] + @property + def contents(self) -> ndarray[_Shape, _DType]: ... + +def load_library(libname: StrOrBytesPath, loader_path: StrOrBytesPath) -> ctypes.CDLL: ... + +c_intp = _c_intp + +@overload +def ndpointer( + dtype: None = ..., + ndim: int = ..., + shape: None | _ShapeLike = ..., + flags: None | _FlagsKind | Iterable[_FlagsKind] | int | flagsobj = ..., +) -> type[_ndptr[None]]: ... +@overload +def ndpointer( + dtype: _DTypeLike[_SCT], + ndim: int = ..., + *, + shape: _ShapeLike, + flags: None | _FlagsKind | Iterable[_FlagsKind] | int | flagsobj = ..., +) -> type[_concrete_ndptr[dtype[_SCT]]]: ... +@overload +def ndpointer( + dtype: DTypeLike, + ndim: int = ..., + *, + shape: _ShapeLike, + flags: None | _FlagsKind | Iterable[_FlagsKind] | int | flagsobj = ..., +) -> type[_concrete_ndptr[dtype[Any]]]: ... +@overload +def ndpointer( + dtype: _DTypeLike[_SCT], + ndim: int = ..., + shape: None = ..., + flags: None | _FlagsKind | Iterable[_FlagsKind] | int | flagsobj = ..., +) -> type[_ndptr[dtype[_SCT]]]: ... +@overload +def ndpointer( + dtype: DTypeLike, + ndim: int = ..., + shape: None = ..., + flags: None | _FlagsKind | Iterable[_FlagsKind] | int | flagsobj = ..., +) -> type[_ndptr[dtype[Any]]]: ... + +@overload +def as_ctypes_type(dtype: _BoolCodes | _DTypeLike[np.bool] | type[ctypes.c_bool]) -> type[ctypes.c_bool]: ... +@overload +def as_ctypes_type(dtype: _ByteCodes | _DTypeLike[byte] | type[ctypes.c_byte]) -> type[ctypes.c_byte]: ... +@overload +def as_ctypes_type(dtype: _ShortCodes | _DTypeLike[short] | type[ctypes.c_short]) -> type[ctypes.c_short]: ... +@overload +def as_ctypes_type(dtype: _IntCCodes | _DTypeLike[intc] | type[ctypes.c_int]) -> type[ctypes.c_int]: ... +@overload +def as_ctypes_type(dtype: _LongCodes | _DTypeLike[long] | type[ctypes.c_long]) -> type[ctypes.c_long]: ... +@overload +def as_ctypes_type(dtype: type[int]) -> type[c_intp]: ... +@overload +def as_ctypes_type(dtype: _LongLongCodes | _DTypeLike[longlong] | type[ctypes.c_longlong]) -> type[ctypes.c_longlong]: ... +@overload +def as_ctypes_type(dtype: _UByteCodes | _DTypeLike[ubyte] | type[ctypes.c_ubyte]) -> type[ctypes.c_ubyte]: ... +@overload +def as_ctypes_type(dtype: _UShortCodes | _DTypeLike[ushort] | type[ctypes.c_ushort]) -> type[ctypes.c_ushort]: ... +@overload +def as_ctypes_type(dtype: _UIntCCodes | _DTypeLike[uintc] | type[ctypes.c_uint]) -> type[ctypes.c_uint]: ... +@overload +def as_ctypes_type(dtype: _ULongCodes | _DTypeLike[ulong] | type[ctypes.c_ulong]) -> type[ctypes.c_ulong]: ... +@overload +def as_ctypes_type(dtype: _ULongLongCodes | _DTypeLike[ulonglong] | type[ctypes.c_ulonglong]) -> type[ctypes.c_ulonglong]: ... +@overload +def as_ctypes_type(dtype: _SingleCodes | _DTypeLike[single] | type[ctypes.c_float]) -> type[ctypes.c_float]: ... +@overload +def as_ctypes_type(dtype: _DoubleCodes | _DTypeLike[double] | type[float | ctypes.c_double]) -> type[ctypes.c_double]: ... +@overload +def as_ctypes_type(dtype: _LongDoubleCodes | _DTypeLike[longdouble] | type[ctypes.c_longdouble]) -> type[ctypes.c_longdouble]: ... +@overload +def as_ctypes_type(dtype: _VoidDTypeLike) -> type[Any]: ... # `ctypes.Union` or `ctypes.Structure` +@overload +def as_ctypes_type(dtype: str) -> type[Any]: ... + +@overload +def as_array(obj: ctypes._PointerLike, shape: Sequence[int]) -> NDArray[Any]: ... +@overload +def as_array(obj: _ArrayLike[_SCT], shape: None | _ShapeLike = ...) -> NDArray[_SCT]: ... +@overload +def as_array(obj: object, shape: None | _ShapeLike = ...) -> NDArray[Any]: ... + +@overload +def as_ctypes(obj: np.bool) -> ctypes.c_bool: ... +@overload +def as_ctypes(obj: byte) -> ctypes.c_byte: ... +@overload +def as_ctypes(obj: short) -> ctypes.c_short: ... +@overload +def as_ctypes(obj: intc) -> ctypes.c_int: ... +@overload +def as_ctypes(obj: long) -> ctypes.c_long: ... +@overload +def as_ctypes(obj: longlong) -> ctypes.c_longlong: ... +@overload +def as_ctypes(obj: ubyte) -> ctypes.c_ubyte: ... +@overload +def as_ctypes(obj: ushort) -> ctypes.c_ushort: ... +@overload +def as_ctypes(obj: uintc) -> ctypes.c_uint: ... +@overload +def as_ctypes(obj: ulong) -> ctypes.c_ulong: ... +@overload +def as_ctypes(obj: ulonglong) -> ctypes.c_ulonglong: ... +@overload +def as_ctypes(obj: single) -> ctypes.c_float: ... +@overload +def as_ctypes(obj: double) -> ctypes.c_double: ... +@overload +def as_ctypes(obj: longdouble) -> ctypes.c_longdouble: ... +@overload +def as_ctypes(obj: void) -> Any: ... # `ctypes.Union` or `ctypes.Structure` +@overload +def as_ctypes(obj: NDArray[np.bool]) -> ctypes.Array[ctypes.c_bool]: ... +@overload +def as_ctypes(obj: NDArray[byte]) -> ctypes.Array[ctypes.c_byte]: ... +@overload +def as_ctypes(obj: NDArray[short]) -> ctypes.Array[ctypes.c_short]: ... +@overload +def as_ctypes(obj: NDArray[intc]) -> ctypes.Array[ctypes.c_int]: ... +@overload +def as_ctypes(obj: NDArray[long]) -> ctypes.Array[ctypes.c_long]: ... +@overload +def as_ctypes(obj: NDArray[longlong]) -> ctypes.Array[ctypes.c_longlong]: ... +@overload +def as_ctypes(obj: NDArray[ubyte]) -> ctypes.Array[ctypes.c_ubyte]: ... +@overload +def as_ctypes(obj: NDArray[ushort]) -> ctypes.Array[ctypes.c_ushort]: ... +@overload +def as_ctypes(obj: NDArray[uintc]) -> ctypes.Array[ctypes.c_uint]: ... +@overload +def as_ctypes(obj: NDArray[ulong]) -> ctypes.Array[ctypes.c_ulong]: ... +@overload +def as_ctypes(obj: NDArray[ulonglong]) -> ctypes.Array[ctypes.c_ulonglong]: ... +@overload +def as_ctypes(obj: NDArray[single]) -> ctypes.Array[ctypes.c_float]: ... +@overload +def as_ctypes(obj: NDArray[double]) -> ctypes.Array[ctypes.c_double]: ... +@overload +def as_ctypes(obj: NDArray[longdouble]) -> ctypes.Array[ctypes.c_longdouble]: ... +@overload +def as_ctypes(obj: NDArray[void]) -> ctypes.Array[Any]: ... # `ctypes.Union` or `ctypes.Structure` diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.py new file mode 100644 index 0000000000000000000000000000000000000000..550a29e18f292e65600108804636b833c75d1be4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.py @@ -0,0 +1,41 @@ +""" +This module is home to specific dtypes related functionality and their classes. +For more general information about dtypes, also see `numpy.dtype` and +:ref:`arrays.dtypes`. + +Similar to the builtin ``types`` module, this submodule defines types (classes) +that are not widely used directly. + +.. versionadded:: NumPy 1.25 + + The dtypes module is new in NumPy 1.25. Previously DType classes were + only accessible indirectly. + + +DType classes +------------- + +The following are the classes of the corresponding NumPy dtype instances and +NumPy scalar types. The classes can be used in ``isinstance`` checks and can +also be instantiated or used directly. Direct use of these classes is not +typical, since their scalar counterparts (e.g. ``np.float64``) or strings +like ``"float64"`` can be used. +""" + +# See doc/source/reference/routines.dtypes.rst for module-level docs + +__all__ = [] + + +def _add_dtype_helper(DType, alias): + # Function to add DTypes a bit more conveniently without channeling them + # through `numpy._core._multiarray_umath` namespace or similar. + from numpy import dtypes + + setattr(dtypes, DType.__name__, DType) + __all__.append(DType.__name__) + + if alias: + alias = alias.removeprefix("numpy.dtypes.") + setattr(dtypes, alias, DType) + __all__.append(alias) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.pyi new file mode 100644 index 0000000000000000000000000000000000000000..11e5611653fa616d96148bba378b486b8fbf33d5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/dtypes.pyi @@ -0,0 +1,607 @@ +# ruff: noqa: ANN401 +from types import MemberDescriptorType +from typing import Any, ClassVar, Generic, NoReturn, TypeAlias, final, type_check_only +from typing import Literal as L + +from typing_extensions import LiteralString, Self, TypeVar + +import numpy as np + +__all__ = [ # noqa: RUF022 + 'BoolDType', + 'Int8DType', + 'ByteDType', + 'UInt8DType', + 'UByteDType', + 'Int16DType', + 'ShortDType', + 'UInt16DType', + 'UShortDType', + 'Int32DType', + 'IntDType', + 'UInt32DType', + 'UIntDType', + 'Int64DType', + 'LongDType', + 'UInt64DType', + 'ULongDType', + 'LongLongDType', + 'ULongLongDType', + 'Float16DType', + 'Float32DType', + 'Float64DType', + 'LongDoubleDType', + 'Complex64DType', + 'Complex128DType', + 'CLongDoubleDType', + 'ObjectDType', + 'BytesDType', + 'StrDType', + 'VoidDType', + 'DateTime64DType', + 'TimeDelta64DType', + 'StringDType', +] + +# Helper base classes (typing-only) + +_SCT_co = TypeVar("_SCT_co", bound=np.generic, covariant=True) + +@type_check_only +class _SimpleDType(np.dtype[_SCT_co], Generic[_SCT_co]): # type: ignore[misc] # pyright: ignore[reportGeneralTypeIssues] + names: None # pyright: ignore[reportIncompatibleVariableOverride] + def __new__(cls, /) -> Self: ... + def __getitem__(self, key: Any, /) -> NoReturn: ... + @property + def base(self) -> np.dtype[_SCT_co]: ... + @property + def fields(self) -> None: ... + @property + def isalignedstruct(self) -> L[False]: ... + @property + def isnative(self) -> L[True]: ... + @property + def ndim(self) -> L[0]: ... + @property + def shape(self) -> tuple[()]: ... + @property + def subdtype(self) -> None: ... + +@type_check_only +class _LiteralDType(_SimpleDType[_SCT_co], Generic[_SCT_co]): # type: ignore[misc] + @property + def flags(self) -> L[0]: ... + @property + def hasobject(self) -> L[False]: ... + +# Helper mixins (typing-only): + +_KindT_co = TypeVar("_KindT_co", bound=LiteralString, covariant=True) +_CharT_co = TypeVar("_CharT_co", bound=LiteralString, covariant=True) +_NumT_co = TypeVar("_NumT_co", bound=int, covariant=True) + +@type_check_only +class _TypeCodes(Generic[_KindT_co, _CharT_co, _NumT_co]): + @final + @property + def kind(self) -> _KindT_co: ... + @final + @property + def char(self) -> _CharT_co: ... + @final + @property + def num(self) -> _NumT_co: ... + +@type_check_only +class _NoOrder: + @final + @property + def byteorder(self) -> L["|"]: ... + +@type_check_only +class _NativeOrder: + @final + @property + def byteorder(self) -> L["="]: ... + +_DataSize_co = TypeVar("_DataSize_co", bound=int, covariant=True) +_ItemSize_co = TypeVar("_ItemSize_co", bound=int, covariant=True, default=int) + +@type_check_only +class _NBit(Generic[_DataSize_co, _ItemSize_co]): + @final + @property + def alignment(self) -> _DataSize_co: ... + @final + @property + def itemsize(self) -> _ItemSize_co: ... + +@type_check_only +class _8Bit(_NoOrder, _NBit[L[1], L[1]]): ... + +# Boolean: + +@final +class BoolDType( # type: ignore[misc] + _TypeCodes[L["b"], L["?"], L[0]], + _8Bit, + _LiteralDType[np.bool], +): + @property + def name(self) -> L["bool"]: ... + @property + def str(self) -> L["|b1"]: ... + +# Sized integers: + +@final +class Int8DType( # type: ignore[misc] + _TypeCodes[L["i"], L["b"], L[1]], + _8Bit, + _LiteralDType[np.int8], +): + @property + def name(self) -> L["int8"]: ... + @property + def str(self) -> L["|i1"]: ... + +@final +class UInt8DType( # type: ignore[misc] + _TypeCodes[L["u"], L["B"], L[2]], + _8Bit, + _LiteralDType[np.uint8], +): + @property + def name(self) -> L["uint8"]: ... + @property + def str(self) -> L["|u1"]: ... + +@final +class Int16DType( # type: ignore[misc] + _TypeCodes[L["i"], L["h"], L[3]], + _NativeOrder, + _NBit[L[2], L[2]], + _LiteralDType[np.int16], +): + @property + def name(self) -> L["int16"]: ... + @property + def str(self) -> L["i2"]: ... + +@final +class UInt16DType( # type: ignore[misc] + _TypeCodes[L["u"], L["H"], L[4]], + _NativeOrder, + _NBit[L[2], L[2]], + _LiteralDType[np.uint16], +): + @property + def name(self) -> L["uint16"]: ... + @property + def str(self) -> L["u2"]: ... + +@final +class Int32DType( # type: ignore[misc] + _TypeCodes[L["i"], L["i", "l"], L[5, 7]], + _NativeOrder, + _NBit[L[4], L[4]], + _LiteralDType[np.int32], +): + @property + def name(self) -> L["int32"]: ... + @property + def str(self) -> L["i4"]: ... + +@final +class UInt32DType( # type: ignore[misc] + _TypeCodes[L["u"], L["I", "L"], L[6, 8]], + _NativeOrder, + _NBit[L[4], L[4]], + _LiteralDType[np.uint32], +): + @property + def name(self) -> L["uint32"]: ... + @property + def str(self) -> L["u4"]: ... + +@final +class Int64DType( # type: ignore[misc] + _TypeCodes[L["i"], L["l", "q"], L[7, 9]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.int64], +): + @property + def name(self) -> L["int64"]: ... + @property + def str(self) -> L["i8"]: ... + +@final +class UInt64DType( # type: ignore[misc] + _TypeCodes[L["u"], L["L", "Q"], L[8, 10]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.uint64], +): + @property + def name(self) -> L["uint64"]: ... + @property + def str(self) -> L["u8"]: ... + +# Standard C-named version/alias: +# NOTE: Don't make these `Final`: it will break stubtest +ByteDType = Int8DType +UByteDType = UInt8DType +ShortDType = Int16DType +UShortDType = UInt16DType + +@final +class IntDType( # type: ignore[misc] + _TypeCodes[L["i"], L["i"], L[5]], + _NativeOrder, + _NBit[L[4], L[4]], + _LiteralDType[np.intc], +): + @property + def name(self) -> L["int32"]: ... + @property + def str(self) -> L["i4"]: ... + +@final +class UIntDType( # type: ignore[misc] + _TypeCodes[L["u"], L["I"], L[6]], + _NativeOrder, + _NBit[L[4], L[4]], + _LiteralDType[np.uintc], +): + @property + def name(self) -> L["uint32"]: ... + @property + def str(self) -> L["u4"]: ... + +@final +class LongDType( # type: ignore[misc] + _TypeCodes[L["i"], L["l"], L[7]], + _NativeOrder, + _NBit[L[4, 8], L[4, 8]], + _LiteralDType[np.long], +): + @property + def name(self) -> L["int32", "int64"]: ... + @property + def str(self) -> L["i4", "i8"]: ... + +@final +class ULongDType( # type: ignore[misc] + _TypeCodes[L["u"], L["L"], L[8]], + _NativeOrder, + _NBit[L[4, 8], L[4, 8]], + _LiteralDType[np.ulong], +): + @property + def name(self) -> L["uint32", "uint64"]: ... + @property + def str(self) -> L["u4", "u8"]: ... + +@final +class LongLongDType( # type: ignore[misc] + _TypeCodes[L["i"], L["q"], L[9]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.longlong], +): + @property + def name(self) -> L["int64"]: ... + @property + def str(self) -> L["i8"]: ... + +@final +class ULongLongDType( # type: ignore[misc] + _TypeCodes[L["u"], L["Q"], L[10]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.ulonglong], +): + @property + def name(self) -> L["uint64"]: ... + @property + def str(self) -> L["u8"]: ... + +# Floats: + +@final +class Float16DType( # type: ignore[misc] + _TypeCodes[L["f"], L["e"], L[23]], + _NativeOrder, + _NBit[L[2], L[2]], + _LiteralDType[np.float16], +): + @property + def name(self) -> L["float16"]: ... + @property + def str(self) -> L["f2"]: ... + +@final +class Float32DType( # type: ignore[misc] + _TypeCodes[L["f"], L["f"], L[11]], + _NativeOrder, + _NBit[L[4], L[4]], + _LiteralDType[np.float32], +): + @property + def name(self) -> L["float32"]: ... + @property + def str(self) -> L["f4"]: ... + +@final +class Float64DType( # type: ignore[misc] + _TypeCodes[L["f"], L["d"], L[12]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.float64], +): + @property + def name(self) -> L["float64"]: ... + @property + def str(self) -> L["f8"]: ... + +@final +class LongDoubleDType( # type: ignore[misc] + _TypeCodes[L["f"], L["g"], L[13]], + _NativeOrder, + _NBit[L[8, 12, 16], L[8, 12, 16]], + _LiteralDType[np.longdouble], +): + @property + def name(self) -> L["float64", "float96", "float128"]: ... + @property + def str(self) -> L["f8", "f12", "f16"]: ... + +# Complex: + +@final +class Complex64DType( # type: ignore[misc] + _TypeCodes[L["c"], L["F"], L[14]], + _NativeOrder, + _NBit[L[4], L[8]], + _LiteralDType[np.complex64], +): + @property + def name(self) -> L["complex64"]: ... + @property + def str(self) -> L["c8"]: ... + +@final +class Complex128DType( # type: ignore[misc] + _TypeCodes[L["c"], L["D"], L[15]], + _NativeOrder, + _NBit[L[8], L[16]], + _LiteralDType[np.complex128], +): + @property + def name(self) -> L["complex128"]: ... + @property + def str(self) -> L["c16"]: ... + +@final +class CLongDoubleDType( # type: ignore[misc] + _TypeCodes[L["c"], L["G"], L[16]], + _NativeOrder, + _NBit[L[8, 12, 16], L[16, 24, 32]], + _LiteralDType[np.clongdouble], +): + @property + def name(self) -> L["complex128", "complex192", "complex256"]: ... + @property + def str(self) -> L["c16", "c24", "c32"]: ... + +# Python objects: + +@final +class ObjectDType( # type: ignore[misc] + _TypeCodes[L["O"], L["O"], L[17]], + _NoOrder, + _NBit[L[8], L[8]], + _SimpleDType[np.object_], +): + @property + def hasobject(self) -> L[True]: ... + @property + def name(self) -> L["object"]: ... + @property + def str(self) -> L["|O"]: ... + +# Flexible: + +@final +class BytesDType( # type: ignore[misc] + _TypeCodes[L["S"], L["S"], L[18]], + _NoOrder, + _NBit[L[1],_ItemSize_co], + _SimpleDType[np.bytes_], + Generic[_ItemSize_co], +): + def __new__(cls, size: _ItemSize_co, /) -> BytesDType[_ItemSize_co]: ... + @property + def hasobject(self) -> L[False]: ... + @property + def name(self) -> LiteralString: ... + @property + def str(self) -> LiteralString: ... + +@final +class StrDType( # type: ignore[misc] + _TypeCodes[L["U"], L["U"], L[19]], + _NativeOrder, + _NBit[L[4],_ItemSize_co], + _SimpleDType[np.str_], + Generic[_ItemSize_co], +): + def __new__(cls, size: _ItemSize_co, /) -> StrDType[_ItemSize_co]: ... + @property + def hasobject(self) -> L[False]: ... + @property + def name(self) -> LiteralString: ... + @property + def str(self) -> LiteralString: ... + +@final +class VoidDType( # type: ignore[misc] + _TypeCodes[L["V"], L["V"], L[20]], + _NoOrder, + _NBit[L[1], _ItemSize_co], + np.dtype[np.void], # pyright: ignore[reportGeneralTypeIssues] + Generic[_ItemSize_co], +): + # NOTE: `VoidDType(...)` raises a `TypeError` at the moment + def __new__(cls, length: _ItemSize_co, /) -> NoReturn: ... + @property + def base(self) -> Self: ... + @property + def isalignedstruct(self) -> L[False]: ... + @property + def isnative(self) -> L[True]: ... + @property + def ndim(self) -> L[0]: ... + @property + def shape(self) -> tuple[()]: ... + @property + def subdtype(self) -> None: ... + @property + def name(self) -> LiteralString: ... + @property + def str(self) -> LiteralString: ... + +# Other: + +_DateUnit: TypeAlias = L["Y", "M", "W", "D"] +_TimeUnit: TypeAlias = L["h", "m", "s", "ms", "us", "ns", "ps", "fs", "as"] +_DateTimeUnit: TypeAlias = _DateUnit | _TimeUnit + +@final +class DateTime64DType( # type: ignore[misc] + _TypeCodes[L["M"], L["M"], L[21]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.datetime64], +): + # NOTE: `DateTime64DType(...)` raises a `TypeError` at the moment + # TODO: Once implemented, don't forget the`unit: L["μs"]` overload. + def __new__(cls, unit: _DateTimeUnit, /) -> NoReturn: ... + @property + def name(self) -> L[ + "datetime64", + "datetime64[Y]", + "datetime64[M]", + "datetime64[W]", + "datetime64[D]", + "datetime64[h]", + "datetime64[m]", + "datetime64[s]", + "datetime64[ms]", + "datetime64[us]", + "datetime64[ns]", + "datetime64[ps]", + "datetime64[fs]", + "datetime64[as]", + ]: ... + @property + def str(self) -> L[ + "M8", + "M8[Y]", + "M8[M]", + "M8[W]", + "M8[D]", + "M8[h]", + "M8[m]", + "M8[s]", + "M8[ms]", + "M8[us]", + "M8[ns]", + "M8[ps]", + "M8[fs]", + "M8[as]", + ]: ... + +@final +class TimeDelta64DType( # type: ignore[misc] + _TypeCodes[L["m"], L["m"], L[22]], + _NativeOrder, + _NBit[L[8], L[8]], + _LiteralDType[np.timedelta64], +): + # NOTE: `TimeDelta64DType(...)` raises a `TypeError` at the moment + # TODO: Once implemented, don't forget to overload on `unit: L["μs"]`. + def __new__(cls, unit: _DateTimeUnit, /) -> NoReturn: ... + @property + def name(self) -> L[ + "timedelta64", + "timedelta64[Y]", + "timedelta64[M]", + "timedelta64[W]", + "timedelta64[D]", + "timedelta64[h]", + "timedelta64[m]", + "timedelta64[s]", + "timedelta64[ms]", + "timedelta64[us]", + "timedelta64[ns]", + "timedelta64[ps]", + "timedelta64[fs]", + "timedelta64[as]", + ]: ... + @property + def str(self) -> L[ + "m8", + "m8[Y]", + "m8[M]", + "m8[W]", + "m8[D]", + "m8[h]", + "m8[m]", + "m8[s]", + "m8[ms]", + "m8[us]", + "m8[ns]", + "m8[ps]", + "m8[fs]", + "m8[as]", + ]: ... + +@final +class StringDType( # type: ignore[misc] + _TypeCodes[L["T"], L["T"], L[2056]], + _NativeOrder, + _NBit[L[8], L[16]], + # TODO: Replace the (invalid) `str` with the scalar type, once implemented + np.dtype[str], # type: ignore[type-var] # pyright: ignore[reportGeneralTypeIssues,reportInvalidTypeArguments] +): + @property + def coerce(self) -> L[True]: ... + na_object: ClassVar[MemberDescriptorType] # does not get instantiated + + # + def __new__(cls, /) -> StringDType: ... + def __getitem__(self, key: Any, /) -> NoReturn: ... + @property + def base(self) -> StringDType: ... + @property + def fields(self) -> None: ... + @property + def hasobject(self) -> L[True]: ... + @property + def isalignedstruct(self) -> L[False]: ... + @property + def isnative(self) -> L[True]: ... + @property + def name(self) -> L["StringDType64", "StringDType128"]: ... + @property + def ndim(self) -> L[0]: ... + @property + def shape(self) -> tuple[()]: ... + @property + def str(self) -> L["|T8", "|T16"]: ... + @property + def subdtype(self) -> None: ... + @property + def type(self) -> type[str]: ... # type: ignore[valid-type] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.py new file mode 100644 index 0000000000000000000000000000000000000000..9bf74fc4d0a3b11464e9fa660cf1de7fade4bb18 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.py @@ -0,0 +1,247 @@ +""" +Exceptions and Warnings (:mod:`numpy.exceptions`) +================================================= + +General exceptions used by NumPy. Note that some exceptions may be module +specific, such as linear algebra errors. + +.. versionadded:: NumPy 1.25 + + The exceptions module is new in NumPy 1.25. Older exceptions remain + available through the main NumPy namespace for compatibility. + +.. currentmodule:: numpy.exceptions + +Warnings +-------- +.. autosummary:: + :toctree: generated/ + + ComplexWarning Given when converting complex to real. + VisibleDeprecationWarning Same as a DeprecationWarning, but more visible. + RankWarning Issued when the design matrix is rank deficient. + +Exceptions +---------- +.. autosummary:: + :toctree: generated/ + + AxisError Given when an axis was invalid. + DTypePromotionError Given when no common dtype could be found. + TooHardError Error specific to `numpy.shares_memory`. + +""" + + +__all__ = [ + "ComplexWarning", "VisibleDeprecationWarning", "ModuleDeprecationWarning", + "TooHardError", "AxisError", "DTypePromotionError"] + + +# Disallow reloading this module so as to preserve the identities of the +# classes defined here. +if '_is_loaded' in globals(): + raise RuntimeError('Reloading numpy._globals is not allowed') +_is_loaded = True + + +class ComplexWarning(RuntimeWarning): + """ + The warning raised when casting a complex dtype to a real dtype. + + As implemented, casting a complex number to a real discards its imaginary + part, but this behavior may not be what the user actually wants. + + """ + pass + + +class ModuleDeprecationWarning(DeprecationWarning): + """Module deprecation warning. + + .. warning:: + + This warning should not be used, since nose testing is not relevant + anymore. + + The nose tester turns ordinary Deprecation warnings into test failures. + That makes it hard to deprecate whole modules, because they get + imported by default. So this is a special Deprecation warning that the + nose tester will let pass without making tests fail. + + """ + pass + + +class VisibleDeprecationWarning(UserWarning): + """Visible deprecation warning. + + By default, python will not show deprecation warnings, so this class + can be used when a very visible warning is helpful, for example because + the usage is most likely a user bug. + + """ + pass + + +class RankWarning(RuntimeWarning): + """Matrix rank warning. + + Issued by polynomial functions when the design matrix is rank deficient. + + """ + pass + + +# Exception used in shares_memory() +class TooHardError(RuntimeError): + """max_work was exceeded. + + This is raised whenever the maximum number of candidate solutions + to consider specified by the ``max_work`` parameter is exceeded. + Assigning a finite number to max_work may have caused the operation + to fail. + + """ + pass + + +class AxisError(ValueError, IndexError): + """Axis supplied was invalid. + + This is raised whenever an ``axis`` parameter is specified that is larger + than the number of array dimensions. + For compatibility with code written against older numpy versions, which + raised a mixture of :exc:`ValueError` and :exc:`IndexError` for this + situation, this exception subclasses both to ensure that + ``except ValueError`` and ``except IndexError`` statements continue + to catch ``AxisError``. + + Parameters + ---------- + axis : int or str + The out of bounds axis or a custom exception message. + If an axis is provided, then `ndim` should be specified as well. + ndim : int, optional + The number of array dimensions. + msg_prefix : str, optional + A prefix for the exception message. + + Attributes + ---------- + axis : int, optional + The out of bounds axis or ``None`` if a custom exception + message was provided. This should be the axis as passed by + the user, before any normalization to resolve negative indices. + + .. versionadded:: 1.22 + ndim : int, optional + The number of array dimensions or ``None`` if a custom exception + message was provided. + + .. versionadded:: 1.22 + + + Examples + -------- + >>> import numpy as np + >>> array_1d = np.arange(10) + >>> np.cumsum(array_1d, axis=1) + Traceback (most recent call last): + ... + numpy.exceptions.AxisError: axis 1 is out of bounds for array of dimension 1 + + Negative axes are preserved: + + >>> np.cumsum(array_1d, axis=-2) + Traceback (most recent call last): + ... + numpy.exceptions.AxisError: axis -2 is out of bounds for array of dimension 1 + + The class constructor generally takes the axis and arrays' + dimensionality as arguments: + + >>> print(np.exceptions.AxisError(2, 1, msg_prefix='error')) + error: axis 2 is out of bounds for array of dimension 1 + + Alternatively, a custom exception message can be passed: + + >>> print(np.exceptions.AxisError('Custom error message')) + Custom error message + + """ + + __slots__ = ("axis", "ndim", "_msg") + + def __init__(self, axis, ndim=None, msg_prefix=None): + if ndim is msg_prefix is None: + # single-argument form: directly set the error message + self._msg = axis + self.axis = None + self.ndim = None + else: + self._msg = msg_prefix + self.axis = axis + self.ndim = ndim + + def __str__(self): + axis = self.axis + ndim = self.ndim + + if axis is ndim is None: + return self._msg + else: + msg = f"axis {axis} is out of bounds for array of dimension {ndim}" + if self._msg is not None: + msg = f"{self._msg}: {msg}" + return msg + + +class DTypePromotionError(TypeError): + """Multiple DTypes could not be converted to a common one. + + This exception derives from ``TypeError`` and is raised whenever dtypes + cannot be converted to a single common one. This can be because they + are of a different category/class or incompatible instances of the same + one (see Examples). + + Notes + ----- + Many functions will use promotion to find the correct result and + implementation. For these functions the error will typically be chained + with a more specific error indicating that no implementation was found + for the input dtypes. + + Typically promotion should be considered "invalid" between the dtypes of + two arrays when `arr1 == arr2` can safely return all ``False`` because the + dtypes are fundamentally different. + + Examples + -------- + Datetimes and complex numbers are incompatible classes and cannot be + promoted: + + >>> import numpy as np + >>> np.result_type(np.dtype("M8[s]"), np.complex128) # doctest: +IGNORE_EXCEPTION_DETAIL + Traceback (most recent call last): + ... + DTypePromotionError: The DType could not + be promoted by . This means that no common + DType exists for the given inputs. For example they cannot be stored in a + single array unless the dtype is `object`. The full list of DTypes is: + (, ) + + For example for structured dtypes, the structure can mismatch and the + same ``DTypePromotionError`` is given when two structured dtypes with + a mismatch in their number of fields is given: + + >>> dtype1 = np.dtype([("field1", np.float64), ("field2", np.int64)]) + >>> dtype2 = np.dtype([("field1", np.float64)]) + >>> np.promote_types(dtype1, dtype2) # doctest: +IGNORE_EXCEPTION_DETAIL + Traceback (most recent call last): + ... + DTypePromotionError: field names `('field1', 'field2')` and `('field1',)` + mismatch. + + """ # NOQA + pass diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.pyi new file mode 100644 index 0000000000000000000000000000000000000000..7caa96c4673c0ab35b7d470ae100a82ea466ba39 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/exceptions.pyi @@ -0,0 +1,25 @@ +from typing import overload + +__all__ = [ + "ComplexWarning", + "VisibleDeprecationWarning", + "ModuleDeprecationWarning", + "TooHardError", + "AxisError", + "DTypePromotionError", +] + +class ComplexWarning(RuntimeWarning): ... +class ModuleDeprecationWarning(DeprecationWarning): ... +class VisibleDeprecationWarning(UserWarning): ... +class RankWarning(RuntimeWarning): ... +class TooHardError(RuntimeError): ... +class DTypePromotionError(TypeError): ... + +class AxisError(ValueError, IndexError): + axis: None | int + ndim: None | int + @overload + def __init__(self, axis: str, ndim: None = ..., msg_prefix: None = ...) -> None: ... + @overload + def __init__(self, axis: int, ndim: int, msg_prefix: None | str = ...) -> None: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..8bf1d637ec0c394d249f4e24d2c778915306a244 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.py @@ -0,0 +1,87 @@ +"""Fortran to Python Interface Generator. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the terms +of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +__all__ = ['run_main', 'get_include'] + +import sys +import subprocess +import os +import warnings + +from numpy.exceptions import VisibleDeprecationWarning +from . import f2py2e +from . import diagnose + +run_main = f2py2e.run_main +main = f2py2e.main + + +def get_include(): + """ + Return the directory that contains the ``fortranobject.c`` and ``.h`` files. + + .. note:: + + This function is not needed when building an extension with + `numpy.distutils` directly from ``.f`` and/or ``.pyf`` files + in one go. + + Python extension modules built with f2py-generated code need to use + ``fortranobject.c`` as a source file, and include the ``fortranobject.h`` + header. This function can be used to obtain the directory containing + both of these files. + + Returns + ------- + include_path : str + Absolute path to the directory containing ``fortranobject.c`` and + ``fortranobject.h``. + + Notes + ----- + .. versionadded:: 1.21.1 + + Unless the build system you are using has specific support for f2py, + building a Python extension using a ``.pyf`` signature file is a two-step + process. For a module ``mymod``: + + * Step 1: run ``python -m numpy.f2py mymod.pyf --quiet``. This + generates ``mymodmodule.c`` and (if needed) + ``mymod-f2pywrappers.f`` files next to ``mymod.pyf``. + * Step 2: build your Python extension module. This requires the + following source files: + + * ``mymodmodule.c`` + * ``mymod-f2pywrappers.f`` (if it was generated in Step 1) + * ``fortranobject.c`` + + See Also + -------- + numpy.get_include : function that returns the numpy include directory + + """ + return os.path.join(os.path.dirname(__file__), 'src') + + +def __getattr__(attr): + + # Avoid importing things that aren't needed for building + # which might import the main numpy module + if attr == "test": + from numpy._pytesttester import PytestTester + test = PytestTester(__name__) + return test + + else: + raise AttributeError("module {!r} has no attribute " + "{!r}".format(__name__, attr)) + + +def __dir__(): + return list(globals().keys() | {"test"}) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..9cf1247f77976664992c0403a98bf3d9c23e639b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__init__.pyi @@ -0,0 +1,42 @@ +from _typeshed import StrOrBytesPath +import subprocess +from collections.abc import Iterable +from typing import Literal as L, overload, TypedDict, type_check_only + +__all__ = ["run_main", "get_include"] + +@type_check_only +class _F2PyDictBase(TypedDict): + csrc: list[str] + h: list[str] + +@type_check_only +class _F2PyDict(_F2PyDictBase, total=False): + fsrc: list[str] + ltx: list[str] + +def run_main(comline_list: Iterable[str]) -> dict[str, _F2PyDict]: ... + +@overload +def compile( + source: str | bytes, + modulename: str = ..., + extra_args: str | list[str] = ..., + verbose: bool = ..., + source_fn: StrOrBytesPath | None = ..., + extension: L[".f", ".f90"] = ..., + full_output: L[False] = ..., +) -> int: ... +@overload +def compile( + source: str | bytes, + modulename: str = ..., + extra_args: str | list[str] = ..., + verbose: bool = ..., + source_fn: StrOrBytesPath | None = ..., + extension: L[".f", ".f90"] = ..., + *, + full_output: L[True], +) -> subprocess.CompletedProcess[bytes]: ... + +def get_include() -> str: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__main__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__main__.py new file mode 100644 index 0000000000000000000000000000000000000000..936a753a2796896667aa782277be41b40af061d3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__main__.py @@ -0,0 +1,5 @@ +# See: +# https://web.archive.org/web/20140822061353/http://cens.ioc.ee/projects/f2py2e +from numpy.f2py.f2py2e import main + +main() diff --git 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b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__pycache__/use_rules.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__version__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__version__.py new file mode 100644 index 0000000000000000000000000000000000000000..e20d7c1dbb38807d248ff886e30425e7ff597299 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/__version__.py @@ -0,0 +1 @@ +from numpy.version import version diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e91393c14be39b20d5e94e262e91a05052681318 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__init__.py @@ -0,0 +1,9 @@ +def f2py_build_generator(name): + if name == "meson": + from ._meson import MesonBackend + return MesonBackend + elif name == "distutils": + from ._distutils import DistutilsBackend + return DistutilsBackend + else: + raise ValueError(f"Unknown backend: {name}") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..4357a70829fca770568bb6a5c6bf853e4099e915 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/__pycache__/__init__.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_backend.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_backend.py new file mode 100644 index 0000000000000000000000000000000000000000..a7d43d2587b2f4886372f44c9bac7f5b840d7612 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_backend.py @@ -0,0 +1,46 @@ +from __future__ import annotations + +from abc import ABC, abstractmethod + + +class Backend(ABC): + def __init__( + self, + modulename, + sources, + extra_objects, + build_dir, + include_dirs, + library_dirs, + libraries, + define_macros, + undef_macros, + f2py_flags, + sysinfo_flags, + fc_flags, + flib_flags, + setup_flags, + remove_build_dir, + extra_dat, + ): + self.modulename = modulename + self.sources = sources + self.extra_objects = extra_objects + self.build_dir = build_dir + self.include_dirs = include_dirs + self.library_dirs = library_dirs + self.libraries = libraries + self.define_macros = define_macros + self.undef_macros = undef_macros + self.f2py_flags = f2py_flags + self.sysinfo_flags = sysinfo_flags + self.fc_flags = fc_flags + self.flib_flags = flib_flags + self.setup_flags = setup_flags + self.remove_build_dir = remove_build_dir + self.extra_dat = extra_dat + + @abstractmethod + def compile(self) -> None: + """Compile the wrapper.""" + pass diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_distutils.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_distutils.py new file mode 100644 index 0000000000000000000000000000000000000000..aa7680a07ff9f3cd96226989fc66762f12d4e92e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_distutils.py @@ -0,0 +1,75 @@ +from ._backend import Backend + +from numpy.distutils.core import setup, Extension +from numpy.distutils.system_info import get_info +from numpy.distutils.misc_util import dict_append +from numpy.exceptions import VisibleDeprecationWarning +import os +import sys +import shutil +import warnings + + +class DistutilsBackend(Backend): + def __init__(sef, *args, **kwargs): + warnings.warn( + "\ndistutils has been deprecated since NumPy 1.26.x\n" + "Use the Meson backend instead, or generate wrappers" + " without -c and use a custom build script", + VisibleDeprecationWarning, + stacklevel=2, + ) + super().__init__(*args, **kwargs) + + def compile(self): + num_info = {} + if num_info: + self.include_dirs.extend(num_info.get("include_dirs", [])) + ext_args = { + "name": self.modulename, + "sources": self.sources, + "include_dirs": self.include_dirs, + "library_dirs": self.library_dirs, + "libraries": self.libraries, + "define_macros": self.define_macros, + "undef_macros": self.undef_macros, + "extra_objects": self.extra_objects, + "f2py_options": self.f2py_flags, + } + + if self.sysinfo_flags: + for n in self.sysinfo_flags: + i = get_info(n) + if not i: + print( + f"No {n!r} resources found" + "in system (try `f2py --help-link`)" + ) + dict_append(ext_args, **i) + + ext = Extension(**ext_args) + + sys.argv = [sys.argv[0]] + self.setup_flags + sys.argv.extend( + [ + "build", + "--build-temp", + self.build_dir, + "--build-base", + self.build_dir, + "--build-platlib", + ".", + "--disable-optimization", + ] + ) + + if self.fc_flags: + sys.argv.extend(["config_fc"] + self.fc_flags) + if self.flib_flags: + sys.argv.extend(["build_ext"] + self.flib_flags) + + setup(ext_modules=[ext]) + + if self.remove_build_dir and os.path.exists(self.build_dir): + print(f"Removing build directory {self.build_dir}") + shutil.rmtree(self.build_dir) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_meson.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_meson.py new file mode 100644 index 0000000000000000000000000000000000000000..9195e51f02fd8769775f5fb07caa67bb82583758 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/_meson.py @@ -0,0 +1,233 @@ +from __future__ import annotations + +import os +import errno +import shutil +import subprocess +import sys +import re +from pathlib import Path + +from ._backend import Backend +from string import Template +from itertools import chain + + + +class MesonTemplate: + """Template meson build file generation class.""" + + def __init__( + self, + modulename: str, + sources: list[Path], + deps: list[str], + libraries: list[str], + library_dirs: list[Path], + include_dirs: list[Path], + object_files: list[Path], + linker_args: list[str], + fortran_args: list[str], + build_type: str, + python_exe: str, + ): + self.modulename = modulename + self.build_template_path = ( + Path(__file__).parent.absolute() / "meson.build.template" + ) + self.sources = sources + self.deps = deps + self.libraries = libraries + self.library_dirs = library_dirs + if include_dirs is not None: + self.include_dirs = include_dirs + else: + self.include_dirs = [] + self.substitutions = {} + self.objects = object_files + # Convert args to '' wrapped variant for meson + self.fortran_args = [ + f"'{x}'" if not (x.startswith("'") and x.endswith("'")) else x + for x in fortran_args + ] + self.pipeline = [ + self.initialize_template, + self.sources_substitution, + self.deps_substitution, + self.include_substitution, + self.libraries_substitution, + self.fortran_args_substitution, + ] + self.build_type = build_type + self.python_exe = python_exe + self.indent = " " * 21 + + def meson_build_template(self) -> str: + if not self.build_template_path.is_file(): + raise FileNotFoundError( + errno.ENOENT, + "Meson build template" + f" {self.build_template_path.absolute()}" + " does not exist.", + ) + return self.build_template_path.read_text() + + def initialize_template(self) -> None: + self.substitutions["modulename"] = self.modulename + self.substitutions["buildtype"] = self.build_type + self.substitutions["python"] = self.python_exe + + def sources_substitution(self) -> None: + self.substitutions["source_list"] = ",\n".join( + [f"{self.indent}'''{source}'''," for source in self.sources] + ) + + def deps_substitution(self) -> None: + self.substitutions["dep_list"] = f",\n{self.indent}".join( + [f"{self.indent}dependency('{dep}')," for dep in self.deps] + ) + + def libraries_substitution(self) -> None: + self.substitutions["lib_dir_declarations"] = "\n".join( + [ + f"lib_dir_{i} = declare_dependency(link_args : ['''-L{lib_dir}'''])" + for i, lib_dir in enumerate(self.library_dirs) + ] + ) + + self.substitutions["lib_declarations"] = "\n".join( + [ + f"{lib.replace('.','_')} = declare_dependency(link_args : ['-l{lib}'])" + for lib in self.libraries + ] + ) + + self.substitutions["lib_list"] = f"\n{self.indent}".join( + [f"{self.indent}{lib.replace('.','_')}," for lib in self.libraries] + ) + self.substitutions["lib_dir_list"] = f"\n{self.indent}".join( + [f"{self.indent}lib_dir_{i}," for i in range(len(self.library_dirs))] + ) + + def include_substitution(self) -> None: + self.substitutions["inc_list"] = f",\n{self.indent}".join( + [f"{self.indent}'''{inc}'''," for inc in self.include_dirs] + ) + + def fortran_args_substitution(self) -> None: + if self.fortran_args: + self.substitutions["fortran_args"] = ( + f"{self.indent}fortran_args: [{', '.join(list(self.fortran_args))}]," + ) + else: + self.substitutions["fortran_args"] = "" + + def generate_meson_build(self): + for node in self.pipeline: + node() + template = Template(self.meson_build_template()) + meson_build = template.substitute(self.substitutions) + meson_build = re.sub(r",,", ",", meson_build) + return meson_build + + +class MesonBackend(Backend): + def __init__(self, *args, **kwargs): + super().__init__(*args, **kwargs) + self.dependencies = self.extra_dat.get("dependencies", []) + self.meson_build_dir = "bbdir" + self.build_type = ( + "debug" if any("debug" in flag for flag in self.fc_flags) else "release" + ) + self.fc_flags = _get_flags(self.fc_flags) + + def _move_exec_to_root(self, build_dir: Path): + walk_dir = Path(build_dir) / self.meson_build_dir + path_objects = chain( + walk_dir.glob(f"{self.modulename}*.so"), + walk_dir.glob(f"{self.modulename}*.pyd"), + ) + # Same behavior as distutils + # https://github.com/numpy/numpy/issues/24874#issuecomment-1835632293 + for path_object in path_objects: + dest_path = Path.cwd() / path_object.name + if dest_path.exists(): + dest_path.unlink() + shutil.copy2(path_object, dest_path) + os.remove(path_object) + + def write_meson_build(self, build_dir: Path) -> None: + """Writes the meson build file at specified location""" + meson_template = MesonTemplate( + self.modulename, + self.sources, + self.dependencies, + self.libraries, + self.library_dirs, + self.include_dirs, + self.extra_objects, + self.flib_flags, + self.fc_flags, + self.build_type, + sys.executable, + ) + src = meson_template.generate_meson_build() + Path(build_dir).mkdir(parents=True, exist_ok=True) + meson_build_file = Path(build_dir) / "meson.build" + meson_build_file.write_text(src) + return meson_build_file + + def _run_subprocess_command(self, command, cwd): + subprocess.run(command, cwd=cwd, check=True) + + def run_meson(self, build_dir: Path): + setup_command = ["meson", "setup", self.meson_build_dir] + self._run_subprocess_command(setup_command, build_dir) + compile_command = ["meson", "compile", "-C", self.meson_build_dir] + self._run_subprocess_command(compile_command, build_dir) + + def compile(self) -> None: + self.sources = _prepare_sources(self.modulename, self.sources, self.build_dir) + self.write_meson_build(self.build_dir) + self.run_meson(self.build_dir) + self._move_exec_to_root(self.build_dir) + + +def _prepare_sources(mname, sources, bdir): + extended_sources = sources.copy() + Path(bdir).mkdir(parents=True, exist_ok=True) + # Copy sources + for source in sources: + if Path(source).exists() and Path(source).is_file(): + shutil.copy(source, bdir) + generated_sources = [ + Path(f"{mname}module.c"), + Path(f"{mname}-f2pywrappers2.f90"), + Path(f"{mname}-f2pywrappers.f"), + ] + bdir = Path(bdir) + for generated_source in generated_sources: + if generated_source.exists(): + shutil.copy(generated_source, bdir / generated_source.name) + extended_sources.append(generated_source.name) + generated_source.unlink() + extended_sources = [ + Path(source).name + for source in extended_sources + if not Path(source).suffix == ".pyf" + ] + return extended_sources + + +def _get_flags(fc_flags): + flag_values = [] + flag_pattern = re.compile(r"--f(77|90)flags=(.*)") + for flag in fc_flags: + match_result = flag_pattern.match(flag) + if match_result: + values = match_result.group(2).strip().split() + values = [val.strip("'\"") for val in values] + flag_values.extend(values) + # Hacky way to preserve order of flags + unique_flags = list(dict.fromkeys(flag_values)) + return unique_flags diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/meson.build.template b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/meson.build.template new file mode 100644 index 0000000000000000000000000000000000000000..fdcc1b17ce2118543266526c129d3a0a718eae63 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_backends/meson.build.template @@ -0,0 +1,55 @@ +project('${modulename}', + ['c', 'fortran'], + version : '0.1', + meson_version: '>= 1.1.0', + default_options : [ + 'warning_level=1', + 'buildtype=${buildtype}' + ]) +fc = meson.get_compiler('fortran') + +py = import('python').find_installation('''${python}''', pure: false) +py_dep = py.dependency() + +incdir_numpy = run_command(py, + ['-c', 'import os; os.chdir(".."); import numpy; print(numpy.get_include())'], + check : true +).stdout().strip() + +incdir_f2py = run_command(py, + ['-c', 'import os; os.chdir(".."); import numpy.f2py; print(numpy.f2py.get_include())'], + check : true +).stdout().strip() + +inc_np = include_directories(incdir_numpy) +np_dep = declare_dependency(include_directories: inc_np) + +incdir_f2py = incdir_numpy / '..' / '..' / 'f2py' / 'src' +inc_f2py = include_directories(incdir_f2py) +fortranobject_c = incdir_f2py / 'fortranobject.c' + +inc_np = include_directories(incdir_numpy, incdir_f2py) +# gh-25000 +quadmath_dep = fc.find_library('quadmath', required: false) + +${lib_declarations} +${lib_dir_declarations} + +py.extension_module('${modulename}', + [ +${source_list}, + fortranobject_c + ], + include_directories: [ + inc_np, +${inc_list} + ], + dependencies : [ + py_dep, + quadmath_dep, +${dep_list} +${lib_list} +${lib_dir_list} + ], +${fortran_args} + install : true) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_isocbind.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_isocbind.py new file mode 100644 index 0000000000000000000000000000000000000000..3043c5d9163f7101d165ca08e33adf0970547612 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_isocbind.py @@ -0,0 +1,62 @@ +""" +ISO_C_BINDING maps for f2py2e. +Only required declarations/macros/functions will be used. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +# These map to keys in c2py_map, via forced casting for now, see gh-25229 +iso_c_binding_map = { + 'integer': { + 'c_int': 'int', + 'c_short': 'short', # 'short' <=> 'int' for now + 'c_long': 'long', # 'long' <=> 'int' for now + 'c_long_long': 'long_long', + 'c_signed_char': 'signed_char', + 'c_size_t': 'unsigned', # size_t <=> 'unsigned' for now + 'c_int8_t': 'signed_char', # int8_t <=> 'signed_char' for now + 'c_int16_t': 'short', # int16_t <=> 'short' for now + 'c_int32_t': 'int', # int32_t <=> 'int' for now + 'c_int64_t': 'long_long', + 'c_int_least8_t': 'signed_char', # int_least8_t <=> 'signed_char' for now + 'c_int_least16_t': 'short', # int_least16_t <=> 'short' for now + 'c_int_least32_t': 'int', # int_least32_t <=> 'int' for now + 'c_int_least64_t': 'long_long', + 'c_int_fast8_t': 'signed_char', # int_fast8_t <=> 'signed_char' for now + 'c_int_fast16_t': 'short', # int_fast16_t <=> 'short' for now + 'c_int_fast32_t': 'int', # int_fast32_t <=> 'int' for now + 'c_int_fast64_t': 'long_long', + 'c_intmax_t': 'long_long', # intmax_t <=> 'long_long' for now + 'c_intptr_t': 'long', # intptr_t <=> 'long' for now + 'c_ptrdiff_t': 'long', # ptrdiff_t <=> 'long' for now + }, + 'real': { + 'c_float': 'float', + 'c_double': 'double', + 'c_long_double': 'long_double' + }, + 'complex': { + 'c_float_complex': 'complex_float', + 'c_double_complex': 'complex_double', + 'c_long_double_complex': 'complex_long_double' + }, + 'logical': { + 'c_bool': 'unsigned_char' # _Bool <=> 'unsigned_char' for now + }, + 'character': { + 'c_char': 'char' + } +} + +# TODO: See gh-25229 +isoc_c2pycode_map = {} +iso_c2py_map = {} + +isoc_kindmap = {} +for fortran_type, c_type_dict in iso_c_binding_map.items(): + for c_type in c_type_dict.keys(): + isoc_kindmap[c_type] = fortran_type diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_src_pyf.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_src_pyf.py new file mode 100644 index 0000000000000000000000000000000000000000..ce59a35fed3d5fd1b704e7d826a63bbc5ee76a0e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/_src_pyf.py @@ -0,0 +1,240 @@ +import os +import re + +# START OF CODE VENDORED FROM `numpy.distutils.from_template` +############################################################# +""" +process_file(filename) + + takes templated file .xxx.src and produces .xxx file where .xxx + is .pyf .f90 or .f using the following template rules: + + '<..>' denotes a template. + + All function and subroutine blocks in a source file with names that + contain '<..>' will be replicated according to the rules in '<..>'. + + The number of comma-separated words in '<..>' will determine the number of + replicates. + + '<..>' may have two different forms, named and short. For example, + + named: + where anywhere inside a block '

' will be replaced with + 'd', 's', 'z', and 'c' for each replicate of the block. + + <_c> is already defined: <_c=s,d,c,z> + <_t> is already defined: <_t=real,double precision,complex,double complex> + + short: + , a short form of the named, useful when no

appears inside + a block. + + In general, '<..>' contains a comma separated list of arbitrary + expressions. If these expression must contain a comma|leftarrow|rightarrow, + then prepend the comma|leftarrow|rightarrow with a backslash. + + If an expression matches '\\' then it will be replaced + by -th expression. + + Note that all '<..>' forms in a block must have the same number of + comma-separated entries. + + Predefined named template rules: + + + + + +""" + +routine_start_re = re.compile(r'(\n|\A)(( (\$|\*))|)\s*(subroutine|function)\b', re.I) +routine_end_re = re.compile(r'\n\s*end\s*(subroutine|function)\b.*(\n|\Z)', re.I) +function_start_re = re.compile(r'\n (\$|\*)\s*function\b', re.I) + +def parse_structure(astr): + """ Return a list of tuples for each function or subroutine each + tuple is the start and end of a subroutine or function to be + expanded. + """ + + spanlist = [] + ind = 0 + while True: + m = routine_start_re.search(astr, ind) + if m is None: + break + start = m.start() + if function_start_re.match(astr, start, m.end()): + while True: + i = astr.rfind('\n', ind, start) + if i==-1: + break + start = i + if astr[i:i+7]!='\n $': + break + start += 1 + m = routine_end_re.search(astr, m.end()) + ind = end = m and m.end()-1 or len(astr) + spanlist.append((start, end)) + return spanlist + +template_re = re.compile(r"<\s*(\w[\w\d]*)\s*>") +named_re = re.compile(r"<\s*(\w[\w\d]*)\s*=\s*(.*?)\s*>") +list_re = re.compile(r"<\s*((.*?))\s*>") + +def find_repl_patterns(astr): + reps = named_re.findall(astr) + names = {} + for rep in reps: + name = rep[0].strip() or unique_key(names) + repl = rep[1].replace(r'\,', '@comma@') + thelist = conv(repl) + names[name] = thelist + return names + +def find_and_remove_repl_patterns(astr): + names = find_repl_patterns(astr) + astr = re.subn(named_re, '', astr)[0] + return astr, names + +item_re = re.compile(r"\A\\(?P\d+)\Z") +def conv(astr): + b = astr.split(',') + l = [x.strip() for x in b] + for i in range(len(l)): + m = item_re.match(l[i]) + if m: + j = int(m.group('index')) + l[i] = l[j] + return ','.join(l) + +def unique_key(adict): + """ Obtain a unique key given a dictionary.""" + allkeys = list(adict.keys()) + done = False + n = 1 + while not done: + newkey = '__l%s' % (n) + if newkey in allkeys: + n += 1 + else: + done = True + return newkey + + +template_name_re = re.compile(r'\A\s*(\w[\w\d]*)\s*\Z') +def expand_sub(substr, names): + substr = substr.replace(r'\>', '@rightarrow@') + substr = substr.replace(r'\<', '@leftarrow@') + lnames = find_repl_patterns(substr) + substr = named_re.sub(r"<\1>", substr) # get rid of definition templates + + def listrepl(mobj): + thelist = conv(mobj.group(1).replace(r'\,', '@comma@')) + if template_name_re.match(thelist): + return "<%s>" % (thelist) + name = None + for key in lnames.keys(): # see if list is already in dictionary + if lnames[key] == thelist: + name = key + if name is None: # this list is not in the dictionary yet + name = unique_key(lnames) + lnames[name] = thelist + return "<%s>" % name + + substr = list_re.sub(listrepl, substr) # convert all lists to named templates + # newnames are constructed as needed + + numsubs = None + base_rule = None + rules = {} + for r in template_re.findall(substr): + if r not in rules: + thelist = lnames.get(r, names.get(r, None)) + if thelist is None: + raise ValueError('No replicates found for <%s>' % (r)) + if r not in names and not thelist.startswith('_'): + names[r] = thelist + rule = [i.replace('@comma@', ',') for i in thelist.split(',')] + num = len(rule) + + if numsubs is None: + numsubs = num + rules[r] = rule + base_rule = r + elif num == numsubs: + rules[r] = rule + else: + print("Mismatch in number of replacements (base <{}={}>) " + "for <{}={}>. Ignoring.".format(base_rule, ','.join(rules[base_rule]), r, thelist)) + if not rules: + return substr + + def namerepl(mobj): + name = mobj.group(1) + return rules.get(name, (k+1)*[name])[k] + + newstr = '' + for k in range(numsubs): + newstr += template_re.sub(namerepl, substr) + '\n\n' + + newstr = newstr.replace('@rightarrow@', '>') + newstr = newstr.replace('@leftarrow@', '<') + return newstr + +def process_str(allstr): + newstr = allstr + writestr = '' + + struct = parse_structure(newstr) + + oldend = 0 + names = {} + names.update(_special_names) + for sub in struct: + cleanedstr, defs = find_and_remove_repl_patterns(newstr[oldend:sub[0]]) + writestr += cleanedstr + names.update(defs) + writestr += expand_sub(newstr[sub[0]:sub[1]], names) + oldend = sub[1] + writestr += newstr[oldend:] + + return writestr + +include_src_re = re.compile(r"(\n|\A)\s*include\s*['\"](?P[\w\d./\\]+\.src)['\"]", re.I) + +def resolve_includes(source): + d = os.path.dirname(source) + with open(source) as fid: + lines = [] + for line in fid: + m = include_src_re.match(line) + if m: + fn = m.group('name') + if not os.path.isabs(fn): + fn = os.path.join(d, fn) + if os.path.isfile(fn): + lines.extend(resolve_includes(fn)) + else: + lines.append(line) + else: + lines.append(line) + return lines + +def process_file(source): + lines = resolve_includes(source) + return process_str(''.join(lines)) + +_special_names = find_repl_patterns(''' +<_c=s,d,c,z> +<_t=real,double precision,complex,double complex> + + + + + +''') + +# END OF CODE VENDORED FROM `numpy.distutils.from_template` +########################################################### diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/auxfuncs.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/auxfuncs.py new file mode 100644 index 0000000000000000000000000000000000000000..e926a52d1b51fdfd62a7d3cbe8311c63d7f9e22f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/auxfuncs.py @@ -0,0 +1,1000 @@ +""" +Auxiliary functions for f2py2e. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy (BSD style) LICENSE. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +import pprint +import sys +import re +import types +from functools import reduce + +from . import __version__ +from . import cfuncs +from .cfuncs import errmess + +__all__ = [ + 'applyrules', 'debugcapi', 'dictappend', 'errmess', 'gentitle', + 'getargs2', 'getcallprotoargument', 'getcallstatement', + 'getfortranname', 'getpymethoddef', 'getrestdoc', 'getusercode', + 'getusercode1', 'getdimension', 'hasbody', 'hascallstatement', 'hascommon', + 'hasexternals', 'hasinitvalue', 'hasnote', 'hasresultnote', + 'isallocatable', 'isarray', 'isarrayofstrings', + 'ischaracter', 'ischaracterarray', 'ischaracter_or_characterarray', + 'iscomplex', 'iscstyledirective', + 'iscomplexarray', 'iscomplexfunction', 'iscomplexfunction_warn', + 'isdouble', 'isdummyroutine', 'isexternal', 'isfunction', + 'isfunction_wrap', 'isint1', 'isint1array', 'isinteger', 'isintent_aux', + 'isintent_c', 'isintent_callback', 'isintent_copy', 'isintent_dict', + 'isintent_hide', 'isintent_in', 'isintent_inout', 'isintent_inplace', + 'isintent_nothide', 'isintent_out', 'isintent_overwrite', 'islogical', + 'islogicalfunction', 'islong_complex', 'islong_double', + 'islong_doublefunction', 'islong_long', 'islong_longfunction', + 'ismodule', 'ismoduleroutine', 'isoptional', 'isprivate', 'isvariable', + 'isrequired', 'isroutine', 'isscalar', 'issigned_long_longarray', + 'isstring', 'isstringarray', 'isstring_or_stringarray', 'isstringfunction', + 'issubroutine', 'get_f2py_modulename', 'issubroutine_wrap', 'isthreadsafe', + 'isunsigned', 'isunsigned_char', 'isunsigned_chararray', + 'isunsigned_long_long', 'isunsigned_long_longarray', 'isunsigned_short', + 'isunsigned_shortarray', 'l_and', 'l_not', 'l_or', 'outmess', 'replace', + 'show', 'stripcomma', 'throw_error', 'isattr_value', 'getuseblocks', + 'process_f2cmap_dict', 'containscommon' +] + + +f2py_version = __version__.version + + +show = pprint.pprint + +options = {} +debugoptions = [] +wrapfuncs = 1 + + +def outmess(t): + if options.get('verbose', 1): + sys.stdout.write(t) + + +def debugcapi(var): + return 'capi' in debugoptions + + +def _ischaracter(var): + return 'typespec' in var and var['typespec'] == 'character' and \ + not isexternal(var) + + +def _isstring(var): + return 'typespec' in var and var['typespec'] == 'character' and \ + not isexternal(var) + + +def ischaracter_or_characterarray(var): + return _ischaracter(var) and 'charselector' not in var + + +def ischaracter(var): + return ischaracter_or_characterarray(var) and not isarray(var) + + +def ischaracterarray(var): + return ischaracter_or_characterarray(var) and isarray(var) + + +def isstring_or_stringarray(var): + return _ischaracter(var) and 'charselector' in var + + +def isstring(var): + return isstring_or_stringarray(var) and not isarray(var) + + +def isstringarray(var): + return isstring_or_stringarray(var) and isarray(var) + + +def isarrayofstrings(var): # obsolete? + # leaving out '*' for now so that `character*(*) a(m)` and `character + # a(m,*)` are treated differently. Luckily `character**` is illegal. + return isstringarray(var) and var['dimension'][-1] == '(*)' + + +def isarray(var): + return 'dimension' in var and not isexternal(var) + + +def isscalar(var): + return not (isarray(var) or isstring(var) or isexternal(var)) + + +def iscomplex(var): + return isscalar(var) and \ + var.get('typespec') in ['complex', 'double complex'] + + +def islogical(var): + return isscalar(var) and var.get('typespec') == 'logical' + + +def isinteger(var): + return isscalar(var) and var.get('typespec') == 'integer' + + +def isreal(var): + return isscalar(var) and var.get('typespec') == 'real' + + +def get_kind(var): + try: + return var['kindselector']['*'] + except KeyError: + try: + return var['kindselector']['kind'] + except KeyError: + pass + + +def isint1(var): + return var.get('typespec') == 'integer' \ + and get_kind(var) == '1' and not isarray(var) + + +def islong_long(var): + if not isscalar(var): + return 0 + if var.get('typespec') not in ['integer', 'logical']: + return 0 + return get_kind(var) == '8' + + +def isunsigned_char(var): + if not isscalar(var): + return 0 + if var.get('typespec') != 'integer': + return 0 + return get_kind(var) == '-1' + + +def isunsigned_short(var): + if not isscalar(var): + return 0 + if var.get('typespec') != 'integer': + return 0 + return get_kind(var) == '-2' + + +def isunsigned(var): + if not isscalar(var): + return 0 + if var.get('typespec') != 'integer': + return 0 + return get_kind(var) == '-4' + + +def isunsigned_long_long(var): + if not isscalar(var): + return 0 + if var.get('typespec') != 'integer': + return 0 + return get_kind(var) == '-8' + + +def isdouble(var): + if not isscalar(var): + return 0 + if not var.get('typespec') == 'real': + return 0 + return get_kind(var) == '8' + + +def islong_double(var): + if not isscalar(var): + return 0 + if not var.get('typespec') == 'real': + return 0 + return get_kind(var) == '16' + + +def islong_complex(var): + if not iscomplex(var): + return 0 + return get_kind(var) == '32' + + +def iscomplexarray(var): + return isarray(var) and \ + var.get('typespec') in ['complex', 'double complex'] + + +def isint1array(var): + return isarray(var) and var.get('typespec') == 'integer' \ + and get_kind(var) == '1' + + +def isunsigned_chararray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '-1' + + +def isunsigned_shortarray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '-2' + + +def isunsignedarray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '-4' + + +def isunsigned_long_longarray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '-8' + + +def issigned_chararray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '1' + + +def issigned_shortarray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '2' + + +def issigned_array(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '4' + + +def issigned_long_longarray(var): + return isarray(var) and var.get('typespec') in ['integer', 'logical']\ + and get_kind(var) == '8' + + +def isallocatable(var): + return 'attrspec' in var and 'allocatable' in var['attrspec'] + + +def ismutable(var): + return not ('dimension' not in var or isstring(var)) + + +def ismoduleroutine(rout): + return 'modulename' in rout + + +def ismodule(rout): + return 'block' in rout and 'module' == rout['block'] + + +def isfunction(rout): + return 'block' in rout and 'function' == rout['block'] + + +def isfunction_wrap(rout): + if isintent_c(rout): + return 0 + return wrapfuncs and isfunction(rout) and (not isexternal(rout)) + + +def issubroutine(rout): + return 'block' in rout and 'subroutine' == rout['block'] + + +def issubroutine_wrap(rout): + if isintent_c(rout): + return 0 + return issubroutine(rout) and hasassumedshape(rout) + +def isattr_value(var): + return 'value' in var.get('attrspec', []) + + +def hasassumedshape(rout): + if rout.get('hasassumedshape'): + return True + for a in rout['args']: + for d in rout['vars'].get(a, {}).get('dimension', []): + if d == ':': + rout['hasassumedshape'] = True + return True + return False + + +def requiresf90wrapper(rout): + return ismoduleroutine(rout) or hasassumedshape(rout) + + +def isroutine(rout): + return isfunction(rout) or issubroutine(rout) + + +def islogicalfunction(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return islogical(rout['vars'][a]) + return 0 + + +def islong_longfunction(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return islong_long(rout['vars'][a]) + return 0 + + +def islong_doublefunction(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return islong_double(rout['vars'][a]) + return 0 + + +def iscomplexfunction(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return iscomplex(rout['vars'][a]) + return 0 + + +def iscomplexfunction_warn(rout): + if iscomplexfunction(rout): + outmess("""\ + ************************************************************** + Warning: code with a function returning complex value + may not work correctly with your Fortran compiler. + When using GNU gcc/g77 compilers, codes should work + correctly for callbacks with: + f2py -c -DF2PY_CB_RETURNCOMPLEX + **************************************************************\n""") + return 1 + return 0 + + +def isstringfunction(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return isstring(rout['vars'][a]) + return 0 + + +def hasexternals(rout): + return 'externals' in rout and rout['externals'] + + +def isthreadsafe(rout): + return 'f2pyenhancements' in rout and \ + 'threadsafe' in rout['f2pyenhancements'] + + +def hasvariables(rout): + return 'vars' in rout and rout['vars'] + + +def isoptional(var): + return ('attrspec' in var and 'optional' in var['attrspec'] and + 'required' not in var['attrspec']) and isintent_nothide(var) + + +def isexternal(var): + return 'attrspec' in var and 'external' in var['attrspec'] + + +def getdimension(var): + dimpattern = r"\((.*?)\)" + if 'attrspec' in var.keys(): + if any('dimension' in s for s in var['attrspec']): + return [re.findall(dimpattern, v) for v in var['attrspec']][0] + + +def isrequired(var): + return not isoptional(var) and isintent_nothide(var) + + +def iscstyledirective(f2py_line): + directives = {"callstatement", "callprotoargument", "pymethoddef"} + return any(directive in f2py_line.lower() for directive in directives) + + +def isintent_in(var): + if 'intent' not in var: + return 1 + if 'hide' in var['intent']: + return 0 + if 'inplace' in var['intent']: + return 0 + if 'in' in var['intent']: + return 1 + if 'out' in var['intent']: + return 0 + if 'inout' in var['intent']: + return 0 + if 'outin' in var['intent']: + return 0 + return 1 + + +def isintent_inout(var): + return ('intent' in var and ('inout' in var['intent'] or + 'outin' in var['intent']) and 'in' not in var['intent'] and + 'hide' not in var['intent'] and 'inplace' not in var['intent']) + + +def isintent_out(var): + return 'out' in var.get('intent', []) + + +def isintent_hide(var): + return ('intent' in var and ('hide' in var['intent'] or + ('out' in var['intent'] and 'in' not in var['intent'] and + (not l_or(isintent_inout, isintent_inplace)(var))))) + + +def isintent_nothide(var): + return not isintent_hide(var) + + +def isintent_c(var): + return 'c' in var.get('intent', []) + + +def isintent_cache(var): + return 'cache' in var.get('intent', []) + + +def isintent_copy(var): + return 'copy' in var.get('intent', []) + + +def isintent_overwrite(var): + return 'overwrite' in var.get('intent', []) + + +def isintent_callback(var): + return 'callback' in var.get('intent', []) + + +def isintent_inplace(var): + return 'inplace' in var.get('intent', []) + + +def isintent_aux(var): + return 'aux' in var.get('intent', []) + + +def isintent_aligned4(var): + return 'aligned4' in var.get('intent', []) + + +def isintent_aligned8(var): + return 'aligned8' in var.get('intent', []) + + +def isintent_aligned16(var): + return 'aligned16' in var.get('intent', []) + + +isintent_dict = {isintent_in: 'INTENT_IN', isintent_inout: 'INTENT_INOUT', + isintent_out: 'INTENT_OUT', isintent_hide: 'INTENT_HIDE', + isintent_cache: 'INTENT_CACHE', + isintent_c: 'INTENT_C', isoptional: 'OPTIONAL', + isintent_inplace: 'INTENT_INPLACE', + isintent_aligned4: 'INTENT_ALIGNED4', + isintent_aligned8: 'INTENT_ALIGNED8', + isintent_aligned16: 'INTENT_ALIGNED16', + } + + +def isprivate(var): + return 'attrspec' in var and 'private' in var['attrspec'] + + +def isvariable(var): + # heuristic to find public/private declarations of filtered subroutines + if len(var) == 1 and 'attrspec' in var and \ + var['attrspec'][0] in ('public', 'private'): + is_var = False + else: + is_var = True + return is_var + +def hasinitvalue(var): + return '=' in var + + +def hasinitvalueasstring(var): + if not hasinitvalue(var): + return 0 + return var['='][0] in ['"', "'"] + + +def hasnote(var): + return 'note' in var + + +def hasresultnote(rout): + if not isfunction(rout): + return 0 + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if a in rout['vars']: + return hasnote(rout['vars'][a]) + return 0 + + +def hascommon(rout): + return 'common' in rout + + +def containscommon(rout): + if hascommon(rout): + return 1 + if hasbody(rout): + for b in rout['body']: + if containscommon(b): + return 1 + return 0 + + +def containsmodule(block): + if ismodule(block): + return 1 + if not hasbody(block): + return 0 + for b in block['body']: + if containsmodule(b): + return 1 + return 0 + + +def hasbody(rout): + return 'body' in rout + + +def hascallstatement(rout): + return getcallstatement(rout) is not None + + +def istrue(var): + return 1 + + +def isfalse(var): + return 0 + + +class F2PYError(Exception): + pass + + +class throw_error: + + def __init__(self, mess): + self.mess = mess + + def __call__(self, var): + mess = '\n\n var = %s\n Message: %s\n' % (var, self.mess) + raise F2PYError(mess) + + +def l_and(*f): + l1, l2 = 'lambda v', [] + for i in range(len(f)): + l1 = '%s,f%d=f[%d]' % (l1, i, i) + l2.append('f%d(v)' % (i)) + return eval('%s:%s' % (l1, ' and '.join(l2))) + + +def l_or(*f): + l1, l2 = 'lambda v', [] + for i in range(len(f)): + l1 = '%s,f%d=f[%d]' % (l1, i, i) + l2.append('f%d(v)' % (i)) + return eval('%s:%s' % (l1, ' or '.join(l2))) + + +def l_not(f): + return eval('lambda v,f=f:not f(v)') + + +def isdummyroutine(rout): + try: + return rout['f2pyenhancements']['fortranname'] == '' + except KeyError: + return 0 + + +def getfortranname(rout): + try: + name = rout['f2pyenhancements']['fortranname'] + if name == '': + raise KeyError + if not name: + errmess('Failed to use fortranname from %s\n' % + (rout['f2pyenhancements'])) + raise KeyError + except KeyError: + name = rout['name'] + return name + + +def getmultilineblock(rout, blockname, comment=1, counter=0): + try: + r = rout['f2pyenhancements'].get(blockname) + except KeyError: + return + if not r: + return + if counter > 0 and isinstance(r, str): + return + if isinstance(r, list): + if counter >= len(r): + return + r = r[counter] + if r[:3] == "'''": + if comment: + r = '\t/* start ' + blockname + \ + ' multiline (' + repr(counter) + ') */\n' + r[3:] + else: + r = r[3:] + if r[-3:] == "'''": + if comment: + r = r[:-3] + '\n\t/* end multiline (' + repr(counter) + ')*/' + else: + r = r[:-3] + else: + errmess("%s multiline block should end with `'''`: %s\n" + % (blockname, repr(r))) + return r + + +def getcallstatement(rout): + return getmultilineblock(rout, 'callstatement') + + +def getcallprotoargument(rout, cb_map={}): + r = getmultilineblock(rout, 'callprotoargument', comment=0) + if r: + return r + if hascallstatement(rout): + outmess( + 'warning: callstatement is defined without callprotoargument\n') + return + from .capi_maps import getctype + arg_types, arg_types2 = [], [] + if l_and(isstringfunction, l_not(isfunction_wrap))(rout): + arg_types.extend(['char*', 'size_t']) + for n in rout['args']: + var = rout['vars'][n] + if isintent_callback(var): + continue + if n in cb_map: + ctype = cb_map[n] + '_typedef' + else: + ctype = getctype(var) + if l_and(isintent_c, l_or(isscalar, iscomplex))(var): + pass + elif isstring(var): + pass + else: + if not isattr_value(var): + ctype = ctype + '*' + if (isstring(var) + or isarrayofstrings(var) # obsolete? + or isstringarray(var)): + arg_types2.append('size_t') + arg_types.append(ctype) + + proto_args = ','.join(arg_types + arg_types2) + if not proto_args: + proto_args = 'void' + return proto_args + + +def getusercode(rout): + return getmultilineblock(rout, 'usercode') + + +def getusercode1(rout): + return getmultilineblock(rout, 'usercode', counter=1) + + +def getpymethoddef(rout): + return getmultilineblock(rout, 'pymethoddef') + + +def getargs(rout): + sortargs, args = [], [] + if 'args' in rout: + args = rout['args'] + if 'sortvars' in rout: + for a in rout['sortvars']: + if a in args: + sortargs.append(a) + for a in args: + if a not in sortargs: + sortargs.append(a) + else: + sortargs = rout['args'] + return args, sortargs + + +def getargs2(rout): + sortargs, args = [], rout.get('args', []) + auxvars = [a for a in rout['vars'].keys() if isintent_aux(rout['vars'][a]) + and a not in args] + args = auxvars + args + if 'sortvars' in rout: + for a in rout['sortvars']: + if a in args: + sortargs.append(a) + for a in args: + if a not in sortargs: + sortargs.append(a) + else: + sortargs = auxvars + rout['args'] + return args, sortargs + + +def getrestdoc(rout): + if 'f2pymultilines' not in rout: + return None + k = None + if rout['block'] == 'python module': + k = rout['block'], rout['name'] + return rout['f2pymultilines'].get(k, None) + + +def gentitle(name): + ln = (80 - len(name) - 6) // 2 + return '/*%s %s %s*/' % (ln * '*', name, ln * '*') + + +def flatlist(lst): + if isinstance(lst, list): + return reduce(lambda x, y, f=flatlist: x + f(y), lst, []) + return [lst] + + +def stripcomma(s): + if s and s[-1] == ',': + return s[:-1] + return s + + +def replace(str, d, defaultsep=''): + if isinstance(d, list): + return [replace(str, _m, defaultsep) for _m in d] + if isinstance(str, list): + return [replace(_m, d, defaultsep) for _m in str] + for k in 2 * list(d.keys()): + if k == 'separatorsfor': + continue + if 'separatorsfor' in d and k in d['separatorsfor']: + sep = d['separatorsfor'][k] + else: + sep = defaultsep + if isinstance(d[k], list): + str = str.replace('#%s#' % (k), sep.join(flatlist(d[k]))) + else: + str = str.replace('#%s#' % (k), d[k]) + return str + + +def dictappend(rd, ar): + if isinstance(ar, list): + for a in ar: + rd = dictappend(rd, a) + return rd + for k in ar.keys(): + if k[0] == '_': + continue + if k in rd: + if isinstance(rd[k], str): + rd[k] = [rd[k]] + if isinstance(rd[k], list): + if isinstance(ar[k], list): + rd[k] = rd[k] + ar[k] + else: + rd[k].append(ar[k]) + elif isinstance(rd[k], dict): + if isinstance(ar[k], dict): + if k == 'separatorsfor': + for k1 in ar[k].keys(): + if k1 not in rd[k]: + rd[k][k1] = ar[k][k1] + else: + rd[k] = dictappend(rd[k], ar[k]) + else: + rd[k] = ar[k] + return rd + + +def applyrules(rules, d, var={}): + ret = {} + if isinstance(rules, list): + for r in rules: + rr = applyrules(r, d, var) + ret = dictappend(ret, rr) + if '_break' in rr: + break + return ret + if '_check' in rules and (not rules['_check'](var)): + return ret + if 'need' in rules: + res = applyrules({'needs': rules['need']}, d, var) + if 'needs' in res: + cfuncs.append_needs(res['needs']) + + for k in rules.keys(): + if k == 'separatorsfor': + ret[k] = rules[k] + continue + if isinstance(rules[k], str): + ret[k] = replace(rules[k], d) + elif isinstance(rules[k], list): + ret[k] = [] + for i in rules[k]: + ar = applyrules({k: i}, d, var) + if k in ar: + ret[k].append(ar[k]) + elif k[0] == '_': + continue + elif isinstance(rules[k], dict): + ret[k] = [] + for k1 in rules[k].keys(): + if isinstance(k1, types.FunctionType) and k1(var): + if isinstance(rules[k][k1], list): + for i in rules[k][k1]: + if isinstance(i, dict): + res = applyrules({'supertext': i}, d, var) + if 'supertext' in res: + i = res['supertext'] + else: + i = '' + ret[k].append(replace(i, d)) + else: + i = rules[k][k1] + if isinstance(i, dict): + res = applyrules({'supertext': i}, d) + if 'supertext' in res: + i = res['supertext'] + else: + i = '' + ret[k].append(replace(i, d)) + else: + errmess('applyrules: ignoring rule %s.\n' % repr(rules[k])) + if isinstance(ret[k], list): + if len(ret[k]) == 1: + ret[k] = ret[k][0] + if ret[k] == []: + del ret[k] + return ret + +_f2py_module_name_match = re.compile(r'\s*python\s*module\s*(?P[\w_]+)', + re.I).match +_f2py_user_module_name_match = re.compile(r'\s*python\s*module\s*(?P[\w_]*?' + r'__user__[\w_]*)', re.I).match + +def get_f2py_modulename(source): + name = None + with open(source) as f: + for line in f: + m = _f2py_module_name_match(line) + if m: + if _f2py_user_module_name_match(line): # skip *__user__* names + continue + name = m.group('name') + break + return name + +def getuseblocks(pymod): + all_uses = [] + for inner in pymod['body']: + for modblock in inner['body']: + if modblock.get('use'): + all_uses.extend([x for x in modblock.get("use").keys() if "__" not in x]) + return all_uses + +def process_f2cmap_dict(f2cmap_all, new_map, c2py_map, verbose = False): + """ + Update the Fortran-to-C type mapping dictionary with new mappings and + return a list of successfully mapped C types. + + This function integrates a new mapping dictionary into an existing + Fortran-to-C type mapping dictionary. It ensures that all keys are in + lowercase and validates new entries against a given C-to-Python mapping + dictionary. Redefinitions and invalid entries are reported with a warning. + + Parameters + ---------- + f2cmap_all : dict + The existing Fortran-to-C type mapping dictionary that will be updated. + It should be a dictionary of dictionaries where the main keys represent + Fortran types and the nested dictionaries map Fortran type specifiers + to corresponding C types. + + new_map : dict + A dictionary containing new type mappings to be added to `f2cmap_all`. + The structure should be similar to `f2cmap_all`, with keys representing + Fortran types and values being dictionaries of type specifiers and their + C type equivalents. + + c2py_map : dict + A dictionary used for validating the C types in `new_map`. It maps C + types to corresponding Python types and is used to ensure that the C + types specified in `new_map` are valid. + + verbose : boolean + A flag used to provide information about the types mapped + + Returns + ------- + tuple of (dict, list) + The updated Fortran-to-C type mapping dictionary and a list of + successfully mapped C types. + """ + f2cmap_mapped = [] + + new_map_lower = {} + for k, d1 in new_map.items(): + d1_lower = {k1.lower(): v1 for k1, v1 in d1.items()} + new_map_lower[k.lower()] = d1_lower + + for k, d1 in new_map_lower.items(): + if k not in f2cmap_all: + f2cmap_all[k] = {} + + for k1, v1 in d1.items(): + if v1 in c2py_map: + if k1 in f2cmap_all[k]: + outmess( + "\tWarning: redefinition of {'%s':{'%s':'%s'->'%s'}}\n" + % (k, k1, f2cmap_all[k][k1], v1) + ) + f2cmap_all[k][k1] = v1 + if verbose: + outmess('\tMapping "%s(kind=%s)" to "%s"\n' % (k, k1, v1)) + f2cmap_mapped.append(v1) + else: + if verbose: + errmess( + "\tIgnoring map {'%s':{'%s':'%s'}}: '%s' must be in %s\n" + % (k, k1, v1, v1, list(c2py_map.keys())) + ) + + return f2cmap_all, f2cmap_mapped diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/capi_maps.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/capi_maps.py new file mode 100644 index 0000000000000000000000000000000000000000..83e5b1ba945a794f21e4c8e92caa8645ea42294f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/capi_maps.py @@ -0,0 +1,821 @@ +""" +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +from . import __version__ +f2py_version = __version__.version + +import copy +import re +import os +from .crackfortran import markoutercomma +from . import cb_rules +from ._isocbind import iso_c_binding_map, isoc_c2pycode_map, iso_c2py_map + +# The environment provided by auxfuncs.py is needed for some calls to eval. +# As the needed functions cannot be determined by static inspection of the +# code, it is safest to use import * pending a major refactoring of f2py. +from .auxfuncs import * + +__all__ = [ + 'getctype', 'getstrlength', 'getarrdims', 'getpydocsign', + 'getarrdocsign', 'getinit', 'sign2map', 'routsign2map', 'modsign2map', + 'cb_sign2map', 'cb_routsign2map', 'common_sign2map', 'process_f2cmap_dict' +] + + +depargs = [] +lcb_map = {} +lcb2_map = {} +# forced casting: mainly caused by the fact that Python or Numeric +# C/APIs do not support the corresponding C types. +c2py_map = {'double': 'float', + 'float': 'float', # forced casting + 'long_double': 'float', # forced casting + 'char': 'int', # forced casting + 'signed_char': 'int', # forced casting + 'unsigned_char': 'int', # forced casting + 'short': 'int', # forced casting + 'unsigned_short': 'int', # forced casting + 'int': 'int', # forced casting + 'long': 'int', + 'long_long': 'long', + 'unsigned': 'int', # forced casting + 'complex_float': 'complex', # forced casting + 'complex_double': 'complex', + 'complex_long_double': 'complex', # forced casting + 'string': 'string', + 'character': 'bytes', + } + +c2capi_map = {'double': 'NPY_DOUBLE', + 'float': 'NPY_FLOAT', + 'long_double': 'NPY_LONGDOUBLE', + 'char': 'NPY_BYTE', + 'unsigned_char': 'NPY_UBYTE', + 'signed_char': 'NPY_BYTE', + 'short': 'NPY_SHORT', + 'unsigned_short': 'NPY_USHORT', + 'int': 'NPY_INT', + 'unsigned': 'NPY_UINT', + 'long': 'NPY_LONG', + 'unsigned_long': 'NPY_ULONG', + 'long_long': 'NPY_LONGLONG', + 'unsigned_long_long': 'NPY_ULONGLONG', + 'complex_float': 'NPY_CFLOAT', + 'complex_double': 'NPY_CDOUBLE', + 'complex_long_double': 'NPY_CDOUBLE', + 'string': 'NPY_STRING', + 'character': 'NPY_STRING'} + +c2pycode_map = {'double': 'd', + 'float': 'f', + 'long_double': 'g', + 'char': 'b', + 'unsigned_char': 'B', + 'signed_char': 'b', + 'short': 'h', + 'unsigned_short': 'H', + 'int': 'i', + 'unsigned': 'I', + 'long': 'l', + 'unsigned_long': 'L', + 'long_long': 'q', + 'unsigned_long_long': 'Q', + 'complex_float': 'F', + 'complex_double': 'D', + 'complex_long_double': 'G', + 'string': 'S', + 'character': 'c'} + +# https://docs.python.org/3/c-api/arg.html#building-values +c2buildvalue_map = {'double': 'd', + 'float': 'f', + 'char': 'b', + 'signed_char': 'b', + 'short': 'h', + 'int': 'i', + 'long': 'l', + 'long_long': 'L', + 'complex_float': 'N', + 'complex_double': 'N', + 'complex_long_double': 'N', + 'string': 'y', + 'character': 'c'} + +f2cmap_all = {'real': {'': 'float', '4': 'float', '8': 'double', + '12': 'long_double', '16': 'long_double'}, + 'integer': {'': 'int', '1': 'signed_char', '2': 'short', + '4': 'int', '8': 'long_long', + '-1': 'unsigned_char', '-2': 'unsigned_short', + '-4': 'unsigned', '-8': 'unsigned_long_long'}, + 'complex': {'': 'complex_float', '8': 'complex_float', + '16': 'complex_double', '24': 'complex_long_double', + '32': 'complex_long_double'}, + 'complexkind': {'': 'complex_float', '4': 'complex_float', + '8': 'complex_double', '12': 'complex_long_double', + '16': 'complex_long_double'}, + 'logical': {'': 'int', '1': 'char', '2': 'short', '4': 'int', + '8': 'long_long'}, + 'double complex': {'': 'complex_double'}, + 'double precision': {'': 'double'}, + 'byte': {'': 'char'}, + } + +# Add ISO_C handling +c2pycode_map.update(isoc_c2pycode_map) +c2py_map.update(iso_c2py_map) +f2cmap_all, _ = process_f2cmap_dict(f2cmap_all, iso_c_binding_map, c2py_map) +# End ISO_C handling +f2cmap_default = copy.deepcopy(f2cmap_all) + +f2cmap_mapped = [] + +def load_f2cmap_file(f2cmap_file): + global f2cmap_all, f2cmap_mapped + + f2cmap_all = copy.deepcopy(f2cmap_default) + + if f2cmap_file is None: + # Default value + f2cmap_file = '.f2py_f2cmap' + if not os.path.isfile(f2cmap_file): + return + + # User defined additions to f2cmap_all. + # f2cmap_file must contain a dictionary of dictionaries, only. For + # example, {'real':{'low':'float'}} means that Fortran 'real(low)' is + # interpreted as C 'float'. This feature is useful for F90/95 users if + # they use PARAMETERS in type specifications. + try: + outmess('Reading f2cmap from {!r} ...\n'.format(f2cmap_file)) + with open(f2cmap_file) as f: + d = eval(f.read().lower(), {}, {}) + f2cmap_all, f2cmap_mapped = process_f2cmap_dict(f2cmap_all, d, c2py_map, True) + outmess('Successfully applied user defined f2cmap changes\n') + except Exception as msg: + errmess('Failed to apply user defined f2cmap changes: %s. Skipping.\n' % (msg)) + + +cformat_map = {'double': '%g', + 'float': '%g', + 'long_double': '%Lg', + 'char': '%d', + 'signed_char': '%d', + 'unsigned_char': '%hhu', + 'short': '%hd', + 'unsigned_short': '%hu', + 'int': '%d', + 'unsigned': '%u', + 'long': '%ld', + 'unsigned_long': '%lu', + 'long_long': '%ld', + 'complex_float': '(%g,%g)', + 'complex_double': '(%g,%g)', + 'complex_long_double': '(%Lg,%Lg)', + 'string': '\\"%s\\"', + 'character': "'%c'", + } + +# Auxiliary functions + + +def getctype(var): + """ + Determines C type + """ + ctype = 'void' + if isfunction(var): + if 'result' in var: + a = var['result'] + else: + a = var['name'] + if a in var['vars']: + return getctype(var['vars'][a]) + else: + errmess('getctype: function %s has no return value?!\n' % a) + elif issubroutine(var): + return ctype + elif ischaracter_or_characterarray(var): + return 'character' + elif isstring_or_stringarray(var): + return 'string' + elif 'typespec' in var and var['typespec'].lower() in f2cmap_all: + typespec = var['typespec'].lower() + f2cmap = f2cmap_all[typespec] + ctype = f2cmap[''] # default type + if 'kindselector' in var: + if '*' in var['kindselector']: + try: + ctype = f2cmap[var['kindselector']['*']] + except KeyError: + errmess('getctype: "%s %s %s" not supported.\n' % + (var['typespec'], '*', var['kindselector']['*'])) + elif 'kind' in var['kindselector']: + if typespec + 'kind' in f2cmap_all: + f2cmap = f2cmap_all[typespec + 'kind'] + try: + ctype = f2cmap[var['kindselector']['kind']] + except KeyError: + if typespec in f2cmap_all: + f2cmap = f2cmap_all[typespec] + try: + ctype = f2cmap[str(var['kindselector']['kind'])] + except KeyError: + errmess('getctype: "%s(kind=%s)" is mapped to C "%s" (to override define dict(%s = dict(%s="")) in %s/.f2py_f2cmap file).\n' + % (typespec, var['kindselector']['kind'], ctype, + typespec, var['kindselector']['kind'], os.getcwd())) + else: + if not isexternal(var): + errmess('getctype: No C-type found in "%s", assuming void.\n' % var) + return ctype + + +def f2cexpr(expr): + """Rewrite Fortran expression as f2py supported C expression. + + Due to the lack of a proper expression parser in f2py, this + function uses a heuristic approach that assumes that Fortran + arithmetic expressions are valid C arithmetic expressions when + mapping Fortran function calls to the corresponding C function/CPP + macros calls. + + """ + # TODO: support Fortran `len` function with optional kind parameter + expr = re.sub(r'\blen\b', 'f2py_slen', expr) + return expr + + +def getstrlength(var): + if isstringfunction(var): + if 'result' in var: + a = var['result'] + else: + a = var['name'] + if a in var['vars']: + return getstrlength(var['vars'][a]) + else: + errmess('getstrlength: function %s has no return value?!\n' % a) + if not isstring(var): + errmess( + 'getstrlength: expected a signature of a string but got: %s\n' % (repr(var))) + len = '1' + if 'charselector' in var: + a = var['charselector'] + if '*' in a: + len = a['*'] + elif 'len' in a: + len = f2cexpr(a['len']) + if re.match(r'\(\s*(\*|:)\s*\)', len) or re.match(r'(\*|:)', len): + if isintent_hide(var): + errmess('getstrlength:intent(hide): expected a string with defined length but got: %s\n' % ( + repr(var))) + len = '-1' + return len + + +def getarrdims(a, var, verbose=0): + ret = {} + if isstring(var) and not isarray(var): + ret['size'] = getstrlength(var) + ret['rank'] = '0' + ret['dims'] = '' + elif isscalar(var): + ret['size'] = '1' + ret['rank'] = '0' + ret['dims'] = '' + elif isarray(var): + dim = copy.copy(var['dimension']) + ret['size'] = '*'.join(dim) + try: + ret['size'] = repr(eval(ret['size'])) + except Exception: + pass + ret['dims'] = ','.join(dim) + ret['rank'] = repr(len(dim)) + ret['rank*[-1]'] = repr(len(dim) * [-1])[1:-1] + for i in range(len(dim)): # solve dim for dependencies + v = [] + if dim[i] in depargs: + v = [dim[i]] + else: + for va in depargs: + if re.match(r'.*?\b%s\b.*' % va, dim[i]): + v.append(va) + for va in v: + if depargs.index(va) > depargs.index(a): + dim[i] = '*' + break + ret['setdims'], i = '', -1 + for d in dim: + i = i + 1 + if d not in ['*', ':', '(*)', '(:)']: + ret['setdims'] = '%s#varname#_Dims[%d]=%s,' % ( + ret['setdims'], i, d) + if ret['setdims']: + ret['setdims'] = ret['setdims'][:-1] + ret['cbsetdims'], i = '', -1 + for d in var['dimension']: + i = i + 1 + if d not in ['*', ':', '(*)', '(:)']: + ret['cbsetdims'] = '%s#varname#_Dims[%d]=%s,' % ( + ret['cbsetdims'], i, d) + elif isintent_in(var): + outmess('getarrdims:warning: assumed shape array, using 0 instead of %r\n' + % (d)) + ret['cbsetdims'] = '%s#varname#_Dims[%d]=%s,' % ( + ret['cbsetdims'], i, 0) + elif verbose: + errmess( + 'getarrdims: If in call-back function: array argument %s must have bounded dimensions: got %s\n' % (repr(a), repr(d))) + if ret['cbsetdims']: + ret['cbsetdims'] = ret['cbsetdims'][:-1] +# if not isintent_c(var): +# var['dimension'].reverse() + return ret + + +def getpydocsign(a, var): + global lcb_map + if isfunction(var): + if 'result' in var: + af = var['result'] + else: + af = var['name'] + if af in var['vars']: + return getpydocsign(af, var['vars'][af]) + else: + errmess('getctype: function %s has no return value?!\n' % af) + return '', '' + sig, sigout = a, a + opt = '' + if isintent_in(var): + opt = 'input' + elif isintent_inout(var): + opt = 'in/output' + out_a = a + if isintent_out(var): + for k in var['intent']: + if k[:4] == 'out=': + out_a = k[4:] + break + init = '' + ctype = getctype(var) + + if hasinitvalue(var): + init, showinit = getinit(a, var) + init = ', optional\\n Default: %s' % showinit + if isscalar(var): + if isintent_inout(var): + sig = '%s : %s rank-0 array(%s,\'%s\')%s' % (a, opt, c2py_map[ctype], + c2pycode_map[ctype], init) + else: + sig = '%s : %s %s%s' % (a, opt, c2py_map[ctype], init) + sigout = '%s : %s' % (out_a, c2py_map[ctype]) + elif isstring(var): + if isintent_inout(var): + sig = '%s : %s rank-0 array(string(len=%s),\'c\')%s' % ( + a, opt, getstrlength(var), init) + else: + sig = '%s : %s string(len=%s)%s' % ( + a, opt, getstrlength(var), init) + sigout = '%s : string(len=%s)' % (out_a, getstrlength(var)) + elif isarray(var): + dim = var['dimension'] + rank = repr(len(dim)) + sig = '%s : %s rank-%s array(\'%s\') with bounds (%s)%s' % (a, opt, rank, + c2pycode_map[ + ctype], + ','.join(dim), init) + if a == out_a: + sigout = '%s : rank-%s array(\'%s\') with bounds (%s)'\ + % (a, rank, c2pycode_map[ctype], ','.join(dim)) + else: + sigout = '%s : rank-%s array(\'%s\') with bounds (%s) and %s storage'\ + % (out_a, rank, c2pycode_map[ctype], ','.join(dim), a) + elif isexternal(var): + ua = '' + if a in lcb_map and lcb_map[a] in lcb2_map and 'argname' in lcb2_map[lcb_map[a]]: + ua = lcb2_map[lcb_map[a]]['argname'] + if not ua == a: + ua = ' => %s' % ua + else: + ua = '' + sig = '%s : call-back function%s' % (a, ua) + sigout = sig + else: + errmess( + 'getpydocsign: Could not resolve docsignature for "%s".\n' % a) + return sig, sigout + + +def getarrdocsign(a, var): + ctype = getctype(var) + if isstring(var) and (not isarray(var)): + sig = '%s : rank-0 array(string(len=%s),\'c\')' % (a, + getstrlength(var)) + elif isscalar(var): + sig = '%s : rank-0 array(%s,\'%s\')' % (a, c2py_map[ctype], + c2pycode_map[ctype],) + elif isarray(var): + dim = var['dimension'] + rank = repr(len(dim)) + sig = '%s : rank-%s array(\'%s\') with bounds (%s)' % (a, rank, + c2pycode_map[ + ctype], + ','.join(dim)) + return sig + + +def getinit(a, var): + if isstring(var): + init, showinit = '""', "''" + else: + init, showinit = '', '' + if hasinitvalue(var): + init = var['='] + showinit = init + if iscomplex(var) or iscomplexarray(var): + ret = {} + + try: + v = var["="] + if ',' in v: + ret['init.r'], ret['init.i'] = markoutercomma( + v[1:-1]).split('@,@') + else: + v = eval(v, {}, {}) + ret['init.r'], ret['init.i'] = str(v.real), str(v.imag) + except Exception: + raise ValueError( + 'getinit: expected complex number `(r,i)\' but got `%s\' as initial value of %r.' % (init, a)) + if isarray(var): + init = '(capi_c.r=%s,capi_c.i=%s,capi_c)' % ( + ret['init.r'], ret['init.i']) + elif isstring(var): + if not init: + init, showinit = '""', "''" + if init[0] == "'": + init = '"%s"' % (init[1:-1].replace('"', '\\"')) + if init[0] == '"': + showinit = "'%s'" % (init[1:-1]) + return init, showinit + + +def get_elsize(var): + if isstring(var) or isstringarray(var): + elsize = getstrlength(var) + # override with user-specified length when available: + elsize = var['charselector'].get('f2py_len', elsize) + return elsize + if ischaracter(var) or ischaracterarray(var): + return '1' + # for numerical types, PyArray_New* functions ignore specified + # elsize, so we just return 1 and let elsize be determined at + # runtime, see fortranobject.c + return '1' + + +def sign2map(a, var): + """ + varname,ctype,atype + init,init.r,init.i,pytype + vardebuginfo,vardebugshowvalue,varshowvalue + varrformat + + intent + """ + out_a = a + if isintent_out(var): + for k in var['intent']: + if k[:4] == 'out=': + out_a = k[4:] + break + ret = {'varname': a, 'outvarname': out_a, 'ctype': getctype(var)} + intent_flags = [] + for f, s in isintent_dict.items(): + if f(var): + intent_flags.append('F2PY_%s' % s) + if intent_flags: + # TODO: Evaluate intent_flags here. + ret['intent'] = '|'.join(intent_flags) + else: + ret['intent'] = 'F2PY_INTENT_IN' + if isarray(var): + ret['varrformat'] = 'N' + elif ret['ctype'] in c2buildvalue_map: + ret['varrformat'] = c2buildvalue_map[ret['ctype']] + else: + ret['varrformat'] = 'O' + ret['init'], ret['showinit'] = getinit(a, var) + if hasinitvalue(var) and iscomplex(var) and not isarray(var): + ret['init.r'], ret['init.i'] = markoutercomma( + ret['init'][1:-1]).split('@,@') + if isexternal(var): + ret['cbnamekey'] = a + if a in lcb_map: + ret['cbname'] = lcb_map[a] + ret['maxnofargs'] = lcb2_map[lcb_map[a]]['maxnofargs'] + ret['nofoptargs'] = lcb2_map[lcb_map[a]]['nofoptargs'] + ret['cbdocstr'] = lcb2_map[lcb_map[a]]['docstr'] + ret['cblatexdocstr'] = lcb2_map[lcb_map[a]]['latexdocstr'] + else: + ret['cbname'] = a + errmess('sign2map: Confused: external %s is not in lcb_map%s.\n' % ( + a, list(lcb_map.keys()))) + if isstring(var): + ret['length'] = getstrlength(var) + if isarray(var): + ret = dictappend(ret, getarrdims(a, var)) + dim = copy.copy(var['dimension']) + if ret['ctype'] in c2capi_map: + ret['atype'] = c2capi_map[ret['ctype']] + ret['elsize'] = get_elsize(var) + # Debug info + if debugcapi(var): + il = [isintent_in, 'input', isintent_out, 'output', + isintent_inout, 'inoutput', isrequired, 'required', + isoptional, 'optional', isintent_hide, 'hidden', + iscomplex, 'complex scalar', + l_and(isscalar, l_not(iscomplex)), 'scalar', + isstring, 'string', isarray, 'array', + iscomplexarray, 'complex array', isstringarray, 'string array', + iscomplexfunction, 'complex function', + l_and(isfunction, l_not(iscomplexfunction)), 'function', + isexternal, 'callback', + isintent_callback, 'callback', + isintent_aux, 'auxiliary', + ] + rl = [] + for i in range(0, len(il), 2): + if il[i](var): + rl.append(il[i + 1]) + if isstring(var): + rl.append('slen(%s)=%s' % (a, ret['length'])) + if isarray(var): + ddim = ','.join( + map(lambda x, y: '%s|%s' % (x, y), var['dimension'], dim)) + rl.append('dims(%s)' % ddim) + if isexternal(var): + ret['vardebuginfo'] = 'debug-capi:%s=>%s:%s' % ( + a, ret['cbname'], ','.join(rl)) + else: + ret['vardebuginfo'] = 'debug-capi:%s %s=%s:%s' % ( + ret['ctype'], a, ret['showinit'], ','.join(rl)) + if isscalar(var): + if ret['ctype'] in cformat_map: + ret['vardebugshowvalue'] = 'debug-capi:%s=%s' % ( + a, cformat_map[ret['ctype']]) + if isstring(var): + ret['vardebugshowvalue'] = 'debug-capi:slen(%s)=%%d %s=\\"%%s\\"' % ( + a, a) + if isexternal(var): + ret['vardebugshowvalue'] = 'debug-capi:%s=%%p' % (a) + if ret['ctype'] in cformat_map: + ret['varshowvalue'] = '#name#:%s=%s' % (a, cformat_map[ret['ctype']]) + ret['showvalueformat'] = '%s' % (cformat_map[ret['ctype']]) + if isstring(var): + ret['varshowvalue'] = '#name#:slen(%s)=%%d %s=\\"%%s\\"' % (a, a) + ret['pydocsign'], ret['pydocsignout'] = getpydocsign(a, var) + if hasnote(var): + ret['note'] = var['note'] + return ret + + +def routsign2map(rout): + """ + name,NAME,begintitle,endtitle + rname,ctype,rformat + routdebugshowvalue + """ + global lcb_map + name = rout['name'] + fname = getfortranname(rout) + ret = {'name': name, + 'texname': name.replace('_', '\\_'), + 'name_lower': name.lower(), + 'NAME': name.upper(), + 'begintitle': gentitle(name), + 'endtitle': gentitle('end of %s' % name), + 'fortranname': fname, + 'FORTRANNAME': fname.upper(), + 'callstatement': getcallstatement(rout) or '', + 'usercode': getusercode(rout) or '', + 'usercode1': getusercode1(rout) or '', + } + if '_' in fname: + ret['F_FUNC'] = 'F_FUNC_US' + else: + ret['F_FUNC'] = 'F_FUNC' + if '_' in name: + ret['F_WRAPPEDFUNC'] = 'F_WRAPPEDFUNC_US' + else: + ret['F_WRAPPEDFUNC'] = 'F_WRAPPEDFUNC' + lcb_map = {} + if 'use' in rout: + for u in rout['use'].keys(): + if u in cb_rules.cb_map: + for un in cb_rules.cb_map[u]: + ln = un[0] + if 'map' in rout['use'][u]: + for k in rout['use'][u]['map'].keys(): + if rout['use'][u]['map'][k] == un[0]: + ln = k + break + lcb_map[ln] = un[1] + elif rout.get('externals'): + errmess('routsign2map: Confused: function %s has externals %s but no "use" statement.\n' % ( + ret['name'], repr(rout['externals']))) + ret['callprotoargument'] = getcallprotoargument(rout, lcb_map) or '' + if isfunction(rout): + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + ret['rname'] = a + ret['pydocsign'], ret['pydocsignout'] = getpydocsign(a, rout) + ret['ctype'] = getctype(rout['vars'][a]) + if hasresultnote(rout): + ret['resultnote'] = rout['vars'][a]['note'] + rout['vars'][a]['note'] = ['See elsewhere.'] + if ret['ctype'] in c2buildvalue_map: + ret['rformat'] = c2buildvalue_map[ret['ctype']] + else: + ret['rformat'] = 'O' + errmess('routsign2map: no c2buildvalue key for type %s\n' % + (repr(ret['ctype']))) + if debugcapi(rout): + if ret['ctype'] in cformat_map: + ret['routdebugshowvalue'] = 'debug-capi:%s=%s' % ( + a, cformat_map[ret['ctype']]) + if isstringfunction(rout): + ret['routdebugshowvalue'] = 'debug-capi:slen(%s)=%%d %s=\\"%%s\\"' % ( + a, a) + if isstringfunction(rout): + ret['rlength'] = getstrlength(rout['vars'][a]) + if ret['rlength'] == '-1': + errmess('routsign2map: expected explicit specification of the length of the string returned by the fortran function %s; taking 10.\n' % ( + repr(rout['name']))) + ret['rlength'] = '10' + if hasnote(rout): + ret['note'] = rout['note'] + rout['note'] = ['See elsewhere.'] + return ret + + +def modsign2map(m): + """ + modulename + """ + if ismodule(m): + ret = {'f90modulename': m['name'], + 'F90MODULENAME': m['name'].upper(), + 'texf90modulename': m['name'].replace('_', '\\_')} + else: + ret = {'modulename': m['name'], + 'MODULENAME': m['name'].upper(), + 'texmodulename': m['name'].replace('_', '\\_')} + ret['restdoc'] = getrestdoc(m) or [] + if hasnote(m): + ret['note'] = m['note'] + ret['usercode'] = getusercode(m) or '' + ret['usercode1'] = getusercode1(m) or '' + if m['body']: + ret['interface_usercode'] = getusercode(m['body'][0]) or '' + else: + ret['interface_usercode'] = '' + ret['pymethoddef'] = getpymethoddef(m) or '' + if 'gil_used' in m: + ret['gil_used'] = m['gil_used'] + if 'coutput' in m: + ret['coutput'] = m['coutput'] + if 'f2py_wrapper_output' in m: + ret['f2py_wrapper_output'] = m['f2py_wrapper_output'] + return ret + + +def cb_sign2map(a, var, index=None): + ret = {'varname': a} + ret['varname_i'] = ret['varname'] + ret['ctype'] = getctype(var) + if ret['ctype'] in c2capi_map: + ret['atype'] = c2capi_map[ret['ctype']] + ret['elsize'] = get_elsize(var) + if ret['ctype'] in cformat_map: + ret['showvalueformat'] = '%s' % (cformat_map[ret['ctype']]) + if isarray(var): + ret = dictappend(ret, getarrdims(a, var)) + ret['pydocsign'], ret['pydocsignout'] = getpydocsign(a, var) + if hasnote(var): + ret['note'] = var['note'] + var['note'] = ['See elsewhere.'] + return ret + + +def cb_routsign2map(rout, um): + """ + name,begintitle,endtitle,argname + ctype,rctype,maxnofargs,nofoptargs,returncptr + """ + ret = {'name': 'cb_%s_in_%s' % (rout['name'], um), + 'returncptr': ''} + if isintent_callback(rout): + if '_' in rout['name']: + F_FUNC = 'F_FUNC_US' + else: + F_FUNC = 'F_FUNC' + ret['callbackname'] = '%s(%s,%s)' \ + % (F_FUNC, + rout['name'].lower(), + rout['name'].upper(), + ) + ret['static'] = 'extern' + else: + ret['callbackname'] = ret['name'] + ret['static'] = 'static' + ret['argname'] = rout['name'] + ret['begintitle'] = gentitle(ret['name']) + ret['endtitle'] = gentitle('end of %s' % ret['name']) + ret['ctype'] = getctype(rout) + ret['rctype'] = 'void' + if ret['ctype'] == 'string': + ret['rctype'] = 'void' + else: + ret['rctype'] = ret['ctype'] + if ret['rctype'] != 'void': + if iscomplexfunction(rout): + ret['returncptr'] = """ +#ifdef F2PY_CB_RETURNCOMPLEX +return_value= +#endif +""" + else: + ret['returncptr'] = 'return_value=' + if ret['ctype'] in cformat_map: + ret['showvalueformat'] = '%s' % (cformat_map[ret['ctype']]) + if isstringfunction(rout): + ret['strlength'] = getstrlength(rout) + if isfunction(rout): + if 'result' in rout: + a = rout['result'] + else: + a = rout['name'] + if hasnote(rout['vars'][a]): + ret['note'] = rout['vars'][a]['note'] + rout['vars'][a]['note'] = ['See elsewhere.'] + ret['rname'] = a + ret['pydocsign'], ret['pydocsignout'] = getpydocsign(a, rout) + if iscomplexfunction(rout): + ret['rctype'] = """ +#ifdef F2PY_CB_RETURNCOMPLEX +#ctype# +#else +void +#endif +""" + else: + if hasnote(rout): + ret['note'] = rout['note'] + rout['note'] = ['See elsewhere.'] + nofargs = 0 + nofoptargs = 0 + if 'args' in rout and 'vars' in rout: + for a in rout['args']: + var = rout['vars'][a] + if l_or(isintent_in, isintent_inout)(var): + nofargs = nofargs + 1 + if isoptional(var): + nofoptargs = nofoptargs + 1 + ret['maxnofargs'] = repr(nofargs) + ret['nofoptargs'] = repr(nofoptargs) + if hasnote(rout) and isfunction(rout) and 'result' in rout: + ret['routnote'] = rout['note'] + rout['note'] = ['See elsewhere.'] + return ret + + +def common_sign2map(a, var): # obsolete + ret = {'varname': a, 'ctype': getctype(var)} + if isstringarray(var): + ret['ctype'] = 'char' + if ret['ctype'] in c2capi_map: + ret['atype'] = c2capi_map[ret['ctype']] + ret['elsize'] = get_elsize(var) + if ret['ctype'] in cformat_map: + ret['showvalueformat'] = '%s' % (cformat_map[ret['ctype']]) + if isarray(var): + ret = dictappend(ret, getarrdims(a, var)) + elif isstring(var): + ret['size'] = getstrlength(var) + ret['rank'] = '1' + ret['pydocsign'], ret['pydocsignout'] = getpydocsign(a, var) + if hasnote(var): + ret['note'] = var['note'] + var['note'] = ['See elsewhere.'] + # for strings this returns 0-rank but actually is 1-rank + ret['arrdocstr'] = getarrdocsign(a, var) + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/cfuncs.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/cfuncs.py new file mode 100644 index 0000000000000000000000000000000000000000..6856416fd04ab2c87cbec959020e8ddc1713564b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/cfuncs.py @@ -0,0 +1,1552 @@ +""" +C declarations, CPP macros, and C functions for f2py2e. +Only required declarations/macros/functions will be used. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +import sys +import copy + +from . import __version__ + +f2py_version = __version__.version + + +def errmess(s: str) -> None: + """ + Write an error message to stderr. + + This indirection is needed because sys.stderr might not always be available (see #26862). + """ + if sys.stderr is not None: + sys.stderr.write(s) + +##################### Definitions ################## + +outneeds = {'includes0': [], 'includes': [], 'typedefs': [], 'typedefs_generated': [], + 'userincludes': [], + 'cppmacros': [], 'cfuncs': [], 'callbacks': [], 'f90modhooks': [], + 'commonhooks': []} +needs = {} +includes0 = {'includes0': '/*need_includes0*/'} +includes = {'includes': '/*need_includes*/'} +userincludes = {'userincludes': '/*need_userincludes*/'} +typedefs = {'typedefs': '/*need_typedefs*/'} +typedefs_generated = {'typedefs_generated': '/*need_typedefs_generated*/'} +cppmacros = {'cppmacros': '/*need_cppmacros*/'} +cfuncs = {'cfuncs': '/*need_cfuncs*/'} +callbacks = {'callbacks': '/*need_callbacks*/'} +f90modhooks = {'f90modhooks': '/*need_f90modhooks*/', + 'initf90modhooksstatic': '/*initf90modhooksstatic*/', + 'initf90modhooksdynamic': '/*initf90modhooksdynamic*/', + } +commonhooks = {'commonhooks': '/*need_commonhooks*/', + 'initcommonhooks': '/*need_initcommonhooks*/', + } + +############ Includes ################### + +includes0['math.h'] = '#include ' +includes0['string.h'] = '#include ' +includes0['setjmp.h'] = '#include ' + +includes['arrayobject.h'] = '''#define PY_ARRAY_UNIQUE_SYMBOL PyArray_API +#include "arrayobject.h"''' +includes['npy_math.h'] = '#include "numpy/npy_math.h"' + +includes['arrayobject.h'] = '#include "fortranobject.h"' +includes['stdarg.h'] = '#include ' + +############# Type definitions ############### + +typedefs['unsigned_char'] = 'typedef unsigned char unsigned_char;' +typedefs['unsigned_short'] = 'typedef unsigned short unsigned_short;' +typedefs['unsigned_long'] = 'typedef unsigned long unsigned_long;' +typedefs['signed_char'] = 'typedef signed char signed_char;' +typedefs['long_long'] = """ +#if defined(NPY_OS_WIN32) +typedef __int64 long_long; +#else +typedef long long long_long; +typedef unsigned long long unsigned_long_long; +#endif +""" +typedefs['unsigned_long_long'] = """ +#if defined(NPY_OS_WIN32) +typedef __uint64 long_long; +#else +typedef unsigned long long unsigned_long_long; +#endif +""" +typedefs['long_double'] = """ +#ifndef _LONG_DOUBLE +typedef long double long_double; +#endif +""" +typedefs[ + 'complex_long_double'] = 'typedef struct {long double r,i;} complex_long_double;' +typedefs['complex_float'] = 'typedef struct {float r,i;} complex_float;' +typedefs['complex_double'] = 'typedef struct {double r,i;} complex_double;' +typedefs['string'] = """typedef char * string;""" +typedefs['character'] = """typedef char character;""" + + +############### CPP macros #################### +cppmacros['CFUNCSMESS'] = """ +#ifdef DEBUGCFUNCS +#define CFUNCSMESS(mess) fprintf(stderr,\"debug-capi:\"mess); +#define CFUNCSMESSPY(mess,obj) CFUNCSMESS(mess) \\ + PyObject_Print((PyObject *)obj,stderr,Py_PRINT_RAW);\\ + fprintf(stderr,\"\\n\"); +#else +#define CFUNCSMESS(mess) +#define CFUNCSMESSPY(mess,obj) +#endif +""" +cppmacros['F_FUNC'] = """ +#if defined(PREPEND_FORTRAN) +#if defined(NO_APPEND_FORTRAN) +#if defined(UPPERCASE_FORTRAN) +#define F_FUNC(f,F) _##F +#else +#define F_FUNC(f,F) _##f +#endif +#else +#if defined(UPPERCASE_FORTRAN) +#define F_FUNC(f,F) _##F##_ +#else +#define F_FUNC(f,F) _##f##_ +#endif +#endif +#else +#if defined(NO_APPEND_FORTRAN) +#if defined(UPPERCASE_FORTRAN) +#define F_FUNC(f,F) F +#else +#define F_FUNC(f,F) f +#endif +#else +#if defined(UPPERCASE_FORTRAN) +#define F_FUNC(f,F) F##_ +#else +#define F_FUNC(f,F) f##_ +#endif +#endif +#endif +#if defined(UNDERSCORE_G77) +#define F_FUNC_US(f,F) F_FUNC(f##_,F##_) +#else +#define F_FUNC_US(f,F) F_FUNC(f,F) +#endif +""" +cppmacros['F_WRAPPEDFUNC'] = """ +#if defined(PREPEND_FORTRAN) +#if defined(NO_APPEND_FORTRAN) +#if defined(UPPERCASE_FORTRAN) +#define F_WRAPPEDFUNC(f,F) _F2PYWRAP##F +#else +#define F_WRAPPEDFUNC(f,F) _f2pywrap##f +#endif +#else +#if defined(UPPERCASE_FORTRAN) +#define F_WRAPPEDFUNC(f,F) _F2PYWRAP##F##_ +#else +#define F_WRAPPEDFUNC(f,F) _f2pywrap##f##_ +#endif +#endif +#else +#if defined(NO_APPEND_FORTRAN) +#if defined(UPPERCASE_FORTRAN) +#define F_WRAPPEDFUNC(f,F) F2PYWRAP##F +#else +#define F_WRAPPEDFUNC(f,F) f2pywrap##f +#endif +#else +#if defined(UPPERCASE_FORTRAN) +#define F_WRAPPEDFUNC(f,F) F2PYWRAP##F##_ +#else +#define F_WRAPPEDFUNC(f,F) f2pywrap##f##_ +#endif +#endif +#endif +#if defined(UNDERSCORE_G77) +#define F_WRAPPEDFUNC_US(f,F) F_WRAPPEDFUNC(f##_,F##_) +#else +#define F_WRAPPEDFUNC_US(f,F) F_WRAPPEDFUNC(f,F) +#endif +""" +cppmacros['F_MODFUNC'] = """ +#if defined(F90MOD2CCONV1) /*E.g. Compaq Fortran */ +#if defined(NO_APPEND_FORTRAN) +#define F_MODFUNCNAME(m,f) $ ## m ## $ ## f +#else +#define F_MODFUNCNAME(m,f) $ ## m ## $ ## f ## _ +#endif +#endif + +#if defined(F90MOD2CCONV2) /*E.g. IBM XL Fortran, not tested though */ +#if defined(NO_APPEND_FORTRAN) +#define F_MODFUNCNAME(m,f) __ ## m ## _MOD_ ## f +#else +#define F_MODFUNCNAME(m,f) __ ## m ## _MOD_ ## f ## _ +#endif +#endif + +#if defined(F90MOD2CCONV3) /*E.g. MIPSPro Compilers */ +#if defined(NO_APPEND_FORTRAN) +#define F_MODFUNCNAME(m,f) f ## .in. ## m +#else +#define F_MODFUNCNAME(m,f) f ## .in. ## m ## _ +#endif +#endif +/* +#if defined(UPPERCASE_FORTRAN) +#define F_MODFUNC(m,M,f,F) F_MODFUNCNAME(M,F) +#else +#define F_MODFUNC(m,M,f,F) F_MODFUNCNAME(m,f) +#endif +*/ + +#define F_MODFUNC(m,f) (*(f2pymodstruct##m##.##f)) +""" +cppmacros['SWAPUNSAFE'] = """ +#define SWAP(a,b) (size_t)(a) = ((size_t)(a) ^ (size_t)(b));\\ + (size_t)(b) = ((size_t)(a) ^ (size_t)(b));\\ + (size_t)(a) = ((size_t)(a) ^ (size_t)(b)) +""" +cppmacros['SWAP'] = """ +#define SWAP(a,b,t) {\\ + t *c;\\ + c = a;\\ + a = b;\\ + b = c;} +""" +# cppmacros['ISCONTIGUOUS']='#define ISCONTIGUOUS(m) (PyArray_FLAGS(m) & +# NPY_ARRAY_C_CONTIGUOUS)' +cppmacros['PRINTPYOBJERR'] = """ +#define PRINTPYOBJERR(obj)\\ + fprintf(stderr,\"#modulename#.error is related to \");\\ + PyObject_Print((PyObject *)obj,stderr,Py_PRINT_RAW);\\ + fprintf(stderr,\"\\n\"); +""" +cppmacros['MINMAX'] = """ +#ifndef max +#define max(a,b) ((a > b) ? (a) : (b)) +#endif +#ifndef min +#define min(a,b) ((a < b) ? (a) : (b)) +#endif +#ifndef MAX +#define MAX(a,b) ((a > b) ? (a) : (b)) +#endif +#ifndef MIN +#define MIN(a,b) ((a < b) ? (a) : (b)) +#endif +""" +cppmacros['len..'] = """ +/* See fortranobject.h for definitions. The macros here are provided for BC. */ +#define rank f2py_rank +#define shape f2py_shape +#define fshape f2py_shape +#define len f2py_len +#define flen f2py_flen +#define slen f2py_slen +#define size f2py_size +""" +cppmacros['pyobj_from_char1'] = r""" +#define pyobj_from_char1(v) (PyLong_FromLong(v)) +""" +cppmacros['pyobj_from_short1'] = r""" +#define pyobj_from_short1(v) (PyLong_FromLong(v)) +""" +needs['pyobj_from_int1'] = ['signed_char'] +cppmacros['pyobj_from_int1'] = r""" +#define pyobj_from_int1(v) (PyLong_FromLong(v)) +""" +cppmacros['pyobj_from_long1'] = r""" +#define pyobj_from_long1(v) (PyLong_FromLong(v)) +""" +needs['pyobj_from_long_long1'] = ['long_long'] +cppmacros['pyobj_from_long_long1'] = """ +#ifdef HAVE_LONG_LONG +#define pyobj_from_long_long1(v) (PyLong_FromLongLong(v)) +#else +#warning HAVE_LONG_LONG is not available. Redefining pyobj_from_long_long. +#define pyobj_from_long_long1(v) (PyLong_FromLong(v)) +#endif +""" +needs['pyobj_from_long_double1'] = ['long_double'] +cppmacros['pyobj_from_long_double1'] = """ +#define pyobj_from_long_double1(v) (PyFloat_FromDouble(v))""" +cppmacros['pyobj_from_double1'] = """ +#define pyobj_from_double1(v) (PyFloat_FromDouble(v))""" +cppmacros['pyobj_from_float1'] = """ +#define pyobj_from_float1(v) (PyFloat_FromDouble(v))""" +needs['pyobj_from_complex_long_double1'] = ['complex_long_double'] +cppmacros['pyobj_from_complex_long_double1'] = """ +#define pyobj_from_complex_long_double1(v) (PyComplex_FromDoubles(v.r,v.i))""" +needs['pyobj_from_complex_double1'] = ['complex_double'] +cppmacros['pyobj_from_complex_double1'] = """ +#define pyobj_from_complex_double1(v) (PyComplex_FromDoubles(v.r,v.i))""" +needs['pyobj_from_complex_float1'] = ['complex_float'] +cppmacros['pyobj_from_complex_float1'] = """ +#define pyobj_from_complex_float1(v) (PyComplex_FromDoubles(v.r,v.i))""" +needs['pyobj_from_string1'] = ['string'] +cppmacros['pyobj_from_string1'] = """ +#define pyobj_from_string1(v) (PyUnicode_FromString((char *)v))""" +needs['pyobj_from_string1size'] = ['string'] +cppmacros['pyobj_from_string1size'] = """ +#define pyobj_from_string1size(v,len) (PyUnicode_FromStringAndSize((char *)v, len))""" +needs['TRYPYARRAYTEMPLATE'] = ['PRINTPYOBJERR'] +cppmacros['TRYPYARRAYTEMPLATE'] = """ +/* New SciPy */ +#define TRYPYARRAYTEMPLATECHAR case NPY_STRING: *(char *)(PyArray_DATA(arr))=*v; break; +#define TRYPYARRAYTEMPLATELONG case NPY_LONG: *(long *)(PyArray_DATA(arr))=*v; break; +#define TRYPYARRAYTEMPLATEOBJECT case NPY_OBJECT: PyArray_SETITEM(arr,PyArray_DATA(arr),pyobj_from_ ## ctype ## 1(*v)); break; + +#define TRYPYARRAYTEMPLATE(ctype,typecode) \\ + PyArrayObject *arr = NULL;\\ + if (!obj) return -2;\\ + if (!PyArray_Check(obj)) return -1;\\ + if (!(arr=(PyArrayObject *)obj)) {fprintf(stderr,\"TRYPYARRAYTEMPLATE:\");PRINTPYOBJERR(obj);return 0;}\\ + if (PyArray_DESCR(arr)->type==typecode) {*(ctype *)(PyArray_DATA(arr))=*v; return 1;}\\ + switch (PyArray_TYPE(arr)) {\\ + case NPY_DOUBLE: *(npy_double *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_INT: *(npy_int *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_LONG: *(npy_long *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_FLOAT: *(npy_float *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_CDOUBLE: *(npy_double *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_CFLOAT: *(npy_float *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_BOOL: *(npy_bool *)(PyArray_DATA(arr))=(*v!=0); break;\\ + case NPY_UBYTE: *(npy_ubyte *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_BYTE: *(npy_byte *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_SHORT: *(npy_short *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_USHORT: *(npy_ushort *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_UINT: *(npy_uint *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_ULONG: *(npy_ulong *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_LONGLONG: *(npy_longlong *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_ULONGLONG: *(npy_ulonglong *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_LONGDOUBLE: *(npy_longdouble *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_CLONGDOUBLE: *(npy_longdouble *)(PyArray_DATA(arr))=*v; break;\\ + case NPY_OBJECT: PyArray_SETITEM(arr, PyArray_DATA(arr), pyobj_from_ ## ctype ## 1(*v)); break;\\ + default: return -2;\\ + };\\ + return 1 +""" + +needs['TRYCOMPLEXPYARRAYTEMPLATE'] = ['PRINTPYOBJERR'] +cppmacros['TRYCOMPLEXPYARRAYTEMPLATE'] = """ +#define TRYCOMPLEXPYARRAYTEMPLATEOBJECT case NPY_OBJECT: PyArray_SETITEM(arr, PyArray_DATA(arr), pyobj_from_complex_ ## ctype ## 1((*v))); break; +#define TRYCOMPLEXPYARRAYTEMPLATE(ctype,typecode)\\ + PyArrayObject *arr = NULL;\\ + if (!obj) return -2;\\ + if (!PyArray_Check(obj)) return -1;\\ + if (!(arr=(PyArrayObject *)obj)) {fprintf(stderr,\"TRYCOMPLEXPYARRAYTEMPLATE:\");PRINTPYOBJERR(obj);return 0;}\\ + if (PyArray_DESCR(arr)->type==typecode) {\\ + *(ctype *)(PyArray_DATA(arr))=(*v).r;\\ + *(ctype *)(PyArray_DATA(arr)+sizeof(ctype))=(*v).i;\\ + return 1;\\ + }\\ + switch (PyArray_TYPE(arr)) {\\ + case NPY_CDOUBLE: *(npy_double *)(PyArray_DATA(arr))=(*v).r;\\ + *(npy_double *)(PyArray_DATA(arr)+sizeof(npy_double))=(*v).i;\\ + break;\\ + case NPY_CFLOAT: *(npy_float *)(PyArray_DATA(arr))=(*v).r;\\ + *(npy_float *)(PyArray_DATA(arr)+sizeof(npy_float))=(*v).i;\\ + break;\\ + case NPY_DOUBLE: *(npy_double *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_LONG: *(npy_long *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_FLOAT: *(npy_float *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_INT: *(npy_int *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_SHORT: *(npy_short *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_UBYTE: *(npy_ubyte *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_BYTE: *(npy_byte *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_BOOL: *(npy_bool *)(PyArray_DATA(arr))=((*v).r!=0 && (*v).i!=0); break;\\ + case NPY_USHORT: *(npy_ushort *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_UINT: *(npy_uint *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_ULONG: *(npy_ulong *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_LONGLONG: *(npy_longlong *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_ULONGLONG: *(npy_ulonglong *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_LONGDOUBLE: *(npy_longdouble *)(PyArray_DATA(arr))=(*v).r; break;\\ + case NPY_CLONGDOUBLE: *(npy_longdouble *)(PyArray_DATA(arr))=(*v).r;\\ + *(npy_longdouble *)(PyArray_DATA(arr)+sizeof(npy_longdouble))=(*v).i;\\ + break;\\ + case NPY_OBJECT: PyArray_SETITEM(arr, PyArray_DATA(arr), pyobj_from_complex_ ## ctype ## 1((*v))); break;\\ + default: return -2;\\ + };\\ + return -1; +""" +# cppmacros['NUMFROMARROBJ']=""" +# define NUMFROMARROBJ(typenum,ctype) \\ +# if (PyArray_Check(obj)) arr = (PyArrayObject *)obj;\\ +# else arr = (PyArrayObject *)PyArray_ContiguousFromObject(obj,typenum,0,0);\\ +# if (arr) {\\ +# if (PyArray_TYPE(arr)==NPY_OBJECT) {\\ +# if (!ctype ## _from_pyobj(v,(PyArray_DESCR(arr)->getitem)(PyArray_DATA(arr)),\"\"))\\ +# goto capi_fail;\\ +# } else {\\ +# (PyArray_DESCR(arr)->cast[typenum])(PyArray_DATA(arr),1,(char*)v,1,1);\\ +# }\\ +# if ((PyObject *)arr != obj) { Py_DECREF(arr); }\\ +# return 1;\\ +# } +# """ +# XXX: Note that CNUMFROMARROBJ is identical with NUMFROMARROBJ +# cppmacros['CNUMFROMARROBJ']=""" +# define CNUMFROMARROBJ(typenum,ctype) \\ +# if (PyArray_Check(obj)) arr = (PyArrayObject *)obj;\\ +# else arr = (PyArrayObject *)PyArray_ContiguousFromObject(obj,typenum,0,0);\\ +# if (arr) {\\ +# if (PyArray_TYPE(arr)==NPY_OBJECT) {\\ +# if (!ctype ## _from_pyobj(v,(PyArray_DESCR(arr)->getitem)(PyArray_DATA(arr)),\"\"))\\ +# goto capi_fail;\\ +# } else {\\ +# (PyArray_DESCR(arr)->cast[typenum])((void *)(PyArray_DATA(arr)),1,(void *)(v),1,1);\\ +# }\\ +# if ((PyObject *)arr != obj) { Py_DECREF(arr); }\\ +# return 1;\\ +# } +# """ + + +needs['GETSTRFROMPYTUPLE'] = ['STRINGCOPYN', 'PRINTPYOBJERR'] +cppmacros['GETSTRFROMPYTUPLE'] = """ +#define GETSTRFROMPYTUPLE(tuple,index,str,len) {\\ + PyObject *rv_cb_str = PyTuple_GetItem((tuple),(index));\\ + if (rv_cb_str == NULL)\\ + goto capi_fail;\\ + if (PyBytes_Check(rv_cb_str)) {\\ + str[len-1]='\\0';\\ + STRINGCOPYN((str),PyBytes_AS_STRING((PyBytesObject*)rv_cb_str),(len));\\ + } else {\\ + PRINTPYOBJERR(rv_cb_str);\\ + PyErr_SetString(#modulename#_error,\"string object expected\");\\ + goto capi_fail;\\ + }\\ + } +""" +cppmacros['GETSCALARFROMPYTUPLE'] = """ +#define GETSCALARFROMPYTUPLE(tuple,index,var,ctype,mess) {\\ + if ((capi_tmp = PyTuple_GetItem((tuple),(index)))==NULL) goto capi_fail;\\ + if (!(ctype ## _from_pyobj((var),capi_tmp,mess)))\\ + goto capi_fail;\\ + } +""" + +cppmacros['FAILNULL'] = """\ +#define FAILNULL(p) do { \\ + if ((p) == NULL) { \\ + PyErr_SetString(PyExc_MemoryError, "NULL pointer found"); \\ + goto capi_fail; \\ + } \\ +} while (0) +""" +needs['MEMCOPY'] = ['string.h', 'FAILNULL'] +cppmacros['MEMCOPY'] = """ +#define MEMCOPY(to,from,n)\\ + do { FAILNULL(to); FAILNULL(from); (void)memcpy(to,from,n); } while (0) +""" +cppmacros['STRINGMALLOC'] = """ +#define STRINGMALLOC(str,len)\\ + if ((str = (string)malloc(len+1)) == NULL) {\\ + PyErr_SetString(PyExc_MemoryError, \"out of memory\");\\ + goto capi_fail;\\ + } else {\\ + (str)[len] = '\\0';\\ + } +""" +cppmacros['STRINGFREE'] = """ +#define STRINGFREE(str) do {if (!(str == NULL)) free(str);} while (0) +""" +needs['STRINGPADN'] = ['string.h'] +cppmacros['STRINGPADN'] = """ +/* +STRINGPADN replaces null values with padding values from the right. + +`to` must have size of at least N bytes. + +If the `to[N-1]` has null value, then replace it and all the +preceding, nulls with the given padding. + +STRINGPADN(to, N, PADDING, NULLVALUE) is an inverse operation. +*/ +#define STRINGPADN(to, N, NULLVALUE, PADDING) \\ + do { \\ + int _m = (N); \\ + char *_to = (to); \\ + for (_m -= 1; _m >= 0 && _to[_m] == NULLVALUE; _m--) { \\ + _to[_m] = PADDING; \\ + } \\ + } while (0) +""" +needs['STRINGCOPYN'] = ['string.h', 'FAILNULL'] +cppmacros['STRINGCOPYN'] = """ +/* +STRINGCOPYN copies N bytes. + +`to` and `from` buffers must have sizes of at least N bytes. +*/ +#define STRINGCOPYN(to,from,N) \\ + do { \\ + int _m = (N); \\ + char *_to = (to); \\ + char *_from = (from); \\ + FAILNULL(_to); FAILNULL(_from); \\ + (void)strncpy(_to, _from, _m); \\ + } while (0) +""" +needs['STRINGCOPY'] = ['string.h', 'FAILNULL'] +cppmacros['STRINGCOPY'] = """ +#define STRINGCOPY(to,from)\\ + do { FAILNULL(to); FAILNULL(from); (void)strcpy(to,from); } while (0) +""" +cppmacros['CHECKGENERIC'] = """ +#define CHECKGENERIC(check,tcheck,name) \\ + if (!(check)) {\\ + PyErr_SetString(#modulename#_error,\"(\"tcheck\") failed for \"name);\\ + /*goto capi_fail;*/\\ + } else """ +cppmacros['CHECKARRAY'] = """ +#define CHECKARRAY(check,tcheck,name) \\ + if (!(check)) {\\ + PyErr_SetString(#modulename#_error,\"(\"tcheck\") failed for \"name);\\ + /*goto capi_fail;*/\\ + } else """ +cppmacros['CHECKSTRING'] = """ +#define CHECKSTRING(check,tcheck,name,show,var)\\ + if (!(check)) {\\ + char errstring[256];\\ + sprintf(errstring, \"%s: \"show, \"(\"tcheck\") failed for \"name, slen(var), var);\\ + PyErr_SetString(#modulename#_error, errstring);\\ + /*goto capi_fail;*/\\ + } else """ +cppmacros['CHECKSCALAR'] = """ +#define CHECKSCALAR(check,tcheck,name,show,var)\\ + if (!(check)) {\\ + char errstring[256];\\ + sprintf(errstring, \"%s: \"show, \"(\"tcheck\") failed for \"name, var);\\ + PyErr_SetString(#modulename#_error,errstring);\\ + /*goto capi_fail;*/\\ + } else """ +# cppmacros['CHECKDIMS']=""" +# define CHECKDIMS(dims,rank) \\ +# for (int i=0;i<(rank);i++)\\ +# if (dims[i]<0) {\\ +# fprintf(stderr,\"Unspecified array argument requires a complete dimension specification.\\n\");\\ +# goto capi_fail;\\ +# } +# """ +cppmacros[ + 'ARRSIZE'] = '#define ARRSIZE(dims,rank) (_PyArray_multiply_list(dims,rank))' +cppmacros['OLDPYNUM'] = """ +#ifdef OLDPYNUM +#error You need to install NumPy version 0.13 or higher. See https://scipy.org/install.html +#endif +""" + +# Defining the correct value to indicate thread-local storage in C without +# running a compile-time check (which we have no control over in generated +# code used outside of NumPy) is hard. Therefore we support overriding this +# via an external define - the f2py-using package can then use the same +# compile-time checks as we use for `NPY_TLS` when building NumPy (see +# scipy#21860 for an example of that). +# +# __STDC_NO_THREADS__ should not be coupled to the availability of _Thread_local. +# In case we get a bug report, guard it with __STDC_NO_THREADS__ after all. +# +# `thread_local` has become a keyword in C23, but don't try to use that yet +# (too new, doing so while C23 support is preliminary will likely cause more +# problems than it solves). +# +# Note: do not try to use `threads.h`, its availability is very low +# *and* threads.h isn't actually used where `F2PY_THREAD_LOCAL_DECL` is +# in the generated code. See gh-27718 for more details. +cppmacros["F2PY_THREAD_LOCAL_DECL"] = """ +#ifndef F2PY_THREAD_LOCAL_DECL +#if defined(_MSC_VER) +#define F2PY_THREAD_LOCAL_DECL __declspec(thread) +#elif defined(NPY_OS_MINGW) +#define F2PY_THREAD_LOCAL_DECL __thread +#elif defined(__STDC_VERSION__) && (__STDC_VERSION__ >= 201112L) +#define F2PY_THREAD_LOCAL_DECL _Thread_local +#elif defined(__GNUC__) \\ + && (__GNUC__ > 4 || (__GNUC__ == 4 && (__GNUC_MINOR__ >= 4))) +#define F2PY_THREAD_LOCAL_DECL __thread +#endif +#endif +""" +################# C functions ############### + +cfuncs['calcarrindex'] = """ +static int calcarrindex(int *i,PyArrayObject *arr) { + int k,ii = i[0]; + for (k=1; k < PyArray_NDIM(arr); k++) + ii += (ii*(PyArray_DIM(arr,k) - 1)+i[k]); /* assuming contiguous arr */ + return ii; +}""" +cfuncs['calcarrindextr'] = """ +static int calcarrindextr(int *i,PyArrayObject *arr) { + int k,ii = i[PyArray_NDIM(arr)-1]; + for (k=1; k < PyArray_NDIM(arr); k++) + ii += (ii*(PyArray_DIM(arr,PyArray_NDIM(arr)-k-1) - 1)+i[PyArray_NDIM(arr)-k-1]); /* assuming contiguous arr */ + return ii; +}""" +cfuncs['forcomb'] = """ +static struct { int nd;npy_intp *d;int *i,*i_tr,tr; } forcombcache; +static int initforcomb(npy_intp *dims,int nd,int tr) { + int k; + if (dims==NULL) return 0; + if (nd<0) return 0; + forcombcache.nd = nd; + forcombcache.d = dims; + forcombcache.tr = tr; + if ((forcombcache.i = (int *)malloc(sizeof(int)*nd))==NULL) return 0; + if ((forcombcache.i_tr = (int *)malloc(sizeof(int)*nd))==NULL) return 0; + for (k=1;k PyArray_NBYTES(arr)) { + n = PyArray_NBYTES(arr); + } + STRINGCOPYN(buf, str, n); + return 1; + } +capi_fail: + PRINTPYOBJERR(obj); + PyErr_SetString(#modulename#_error, \"try_pyarr_from_string failed\"); + return 0; +} +""" +needs['string_from_pyobj'] = ['string', 'STRINGMALLOC', 'STRINGCOPYN'] +cfuncs['string_from_pyobj'] = """ +/* + Create a new string buffer `str` of at most length `len` from a + Python string-like object `obj`. + + The string buffer has given size (len) or the size of inistr when len==-1. + + The string buffer is padded with blanks: in Fortran, trailing blanks + are insignificant contrary to C nulls. + */ +static int +string_from_pyobj(string *str, int *len, const string inistr, PyObject *obj, + const char *errmess) +{ + PyObject *tmp = NULL; + string buf = NULL; + npy_intp n = -1; +#ifdef DEBUGCFUNCS +fprintf(stderr,\"string_from_pyobj(str='%s',len=%d,inistr='%s',obj=%p)\\n\", + (char*)str, *len, (char *)inistr, obj); +#endif + if (obj == Py_None) { + n = strlen(inistr); + buf = inistr; + } + else if (PyArray_Check(obj)) { + PyArrayObject *arr = (PyArrayObject *)obj; + if (!ISCONTIGUOUS(arr)) { + PyErr_SetString(PyExc_ValueError, + \"array object is non-contiguous.\"); + goto capi_fail; + } + n = PyArray_NBYTES(arr); + buf = PyArray_DATA(arr); + n = strnlen(buf, n); + } + else { + if (PyBytes_Check(obj)) { + tmp = obj; + Py_INCREF(tmp); + } + else if (PyUnicode_Check(obj)) { + tmp = PyUnicode_AsASCIIString(obj); + } + else { + PyObject *tmp2; + tmp2 = PyObject_Str(obj); + if (tmp2) { + tmp = PyUnicode_AsASCIIString(tmp2); + Py_DECREF(tmp2); + } + else { + tmp = NULL; + } + } + if (tmp == NULL) goto capi_fail; + n = PyBytes_GET_SIZE(tmp); + buf = PyBytes_AS_STRING(tmp); + } + if (*len == -1) { + /* TODO: change the type of `len` so that we can remove this */ + if (n > NPY_MAX_INT) { + PyErr_SetString(PyExc_OverflowError, + "object too large for a 32-bit int"); + goto capi_fail; + } + *len = n; + } + else if (*len < n) { + /* discard the last (len-n) bytes of input buf */ + n = *len; + } + if (n < 0 || *len < 0 || buf == NULL) { + goto capi_fail; + } + STRINGMALLOC(*str, *len); // *str is allocated with size (*len + 1) + if (n < *len) { + /* + Pad fixed-width string with nulls. The caller will replace + nulls with blanks when the corresponding argument is not + intent(c). + */ + memset(*str + n, '\\0', *len - n); + } + STRINGCOPYN(*str, buf, n); + Py_XDECREF(tmp); + return 1; +capi_fail: + Py_XDECREF(tmp); + { + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = #modulename#_error; + } + PyErr_SetString(err, errmess); + } + return 0; +} +""" + +cfuncs['character_from_pyobj'] = """ +static int +character_from_pyobj(character* v, PyObject *obj, const char *errmess) { + if (PyBytes_Check(obj)) { + /* empty bytes has trailing null, so dereferencing is always safe */ + *v = PyBytes_AS_STRING(obj)[0]; + return 1; + } else if (PyUnicode_Check(obj)) { + PyObject* tmp = PyUnicode_AsASCIIString(obj); + if (tmp != NULL) { + *v = PyBytes_AS_STRING(tmp)[0]; + Py_DECREF(tmp); + return 1; + } + } else if (PyArray_Check(obj)) { + PyArrayObject* arr = (PyArrayObject*)obj; + if (F2PY_ARRAY_IS_CHARACTER_COMPATIBLE(arr)) { + *v = PyArray_BYTES(arr)[0]; + return 1; + } else if (F2PY_IS_UNICODE_ARRAY(arr)) { + // TODO: update when numpy will support 1-byte and + // 2-byte unicode dtypes + PyObject* tmp = PyUnicode_FromKindAndData( + PyUnicode_4BYTE_KIND, + PyArray_BYTES(arr), + (PyArray_NBYTES(arr)>0?1:0)); + if (tmp != NULL) { + if (character_from_pyobj(v, tmp, errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + } + } else if (PySequence_Check(obj)) { + PyObject* tmp = PySequence_GetItem(obj,0); + if (tmp != NULL) { + if (character_from_pyobj(v, tmp, errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + } + { + /* TODO: This error (and most other) error handling needs cleaning. */ + char mess[F2PY_MESSAGE_BUFFER_SIZE]; + strcpy(mess, errmess); + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = PyExc_TypeError; + Py_INCREF(err); + } + else { + Py_INCREF(err); + PyErr_Clear(); + } + sprintf(mess + strlen(mess), + " -- expected str|bytes|sequence-of-str-or-bytes, got "); + f2py_describe(obj, mess + strlen(mess)); + PyErr_SetString(err, mess); + Py_DECREF(err); + } + return 0; +} +""" + +# TODO: These should be dynamically generated, too many mapped to int things, +# see note in _isocbind.py +needs['char_from_pyobj'] = ['int_from_pyobj'] +cfuncs['char_from_pyobj'] = """ +static int +char_from_pyobj(char* v, PyObject *obj, const char *errmess) { + int i = 0; + if (int_from_pyobj(&i, obj, errmess)) { + *v = (char)i; + return 1; + } + return 0; +} +""" + + +needs['signed_char_from_pyobj'] = ['int_from_pyobj', 'signed_char'] +cfuncs['signed_char_from_pyobj'] = """ +static int +signed_char_from_pyobj(signed_char* v, PyObject *obj, const char *errmess) { + int i = 0; + if (int_from_pyobj(&i, obj, errmess)) { + *v = (signed_char)i; + return 1; + } + return 0; +} +""" + + +needs['short_from_pyobj'] = ['int_from_pyobj'] +cfuncs['short_from_pyobj'] = """ +static int +short_from_pyobj(short* v, PyObject *obj, const char *errmess) { + int i = 0; + if (int_from_pyobj(&i, obj, errmess)) { + *v = (short)i; + return 1; + } + return 0; +} +""" + + +cfuncs['int_from_pyobj'] = """ +static int +int_from_pyobj(int* v, PyObject *obj, const char *errmess) +{ + PyObject* tmp = NULL; + + if (PyLong_Check(obj)) { + *v = Npy__PyLong_AsInt(obj); + return !(*v == -1 && PyErr_Occurred()); + } + + tmp = PyNumber_Long(obj); + if (tmp) { + *v = Npy__PyLong_AsInt(tmp); + Py_DECREF(tmp); + return !(*v == -1 && PyErr_Occurred()); + } + + if (PyComplex_Check(obj)) { + PyErr_Clear(); + tmp = PyObject_GetAttrString(obj,\"real\"); + } + else if (PyBytes_Check(obj) || PyUnicode_Check(obj)) { + /*pass*/; + } + else if (PySequence_Check(obj)) { + PyErr_Clear(); + tmp = PySequence_GetItem(obj, 0); + } + + if (tmp) { + if (int_from_pyobj(v, tmp, errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + + { + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = #modulename#_error; + } + PyErr_SetString(err, errmess); + } + return 0; +} +""" + + +cfuncs['long_from_pyobj'] = """ +static int +long_from_pyobj(long* v, PyObject *obj, const char *errmess) { + PyObject* tmp = NULL; + + if (PyLong_Check(obj)) { + *v = PyLong_AsLong(obj); + return !(*v == -1 && PyErr_Occurred()); + } + + tmp = PyNumber_Long(obj); + if (tmp) { + *v = PyLong_AsLong(tmp); + Py_DECREF(tmp); + return !(*v == -1 && PyErr_Occurred()); + } + + if (PyComplex_Check(obj)) { + PyErr_Clear(); + tmp = PyObject_GetAttrString(obj,\"real\"); + } + else if (PyBytes_Check(obj) || PyUnicode_Check(obj)) { + /*pass*/; + } + else if (PySequence_Check(obj)) { + PyErr_Clear(); + tmp = PySequence_GetItem(obj, 0); + } + + if (tmp) { + if (long_from_pyobj(v, tmp, errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + { + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = #modulename#_error; + } + PyErr_SetString(err, errmess); + } + return 0; +} +""" + + +needs['long_long_from_pyobj'] = ['long_long'] +cfuncs['long_long_from_pyobj'] = """ +static int +long_long_from_pyobj(long_long* v, PyObject *obj, const char *errmess) +{ + PyObject* tmp = NULL; + + if (PyLong_Check(obj)) { + *v = PyLong_AsLongLong(obj); + return !(*v == -1 && PyErr_Occurred()); + } + + tmp = PyNumber_Long(obj); + if (tmp) { + *v = PyLong_AsLongLong(tmp); + Py_DECREF(tmp); + return !(*v == -1 && PyErr_Occurred()); + } + + if (PyComplex_Check(obj)) { + PyErr_Clear(); + tmp = PyObject_GetAttrString(obj,\"real\"); + } + else if (PyBytes_Check(obj) || PyUnicode_Check(obj)) { + /*pass*/; + } + else if (PySequence_Check(obj)) { + PyErr_Clear(); + tmp = PySequence_GetItem(obj, 0); + } + + if (tmp) { + if (long_long_from_pyobj(v, tmp, errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + { + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = #modulename#_error; + } + PyErr_SetString(err,errmess); + } + return 0; +} +""" + + +needs['long_double_from_pyobj'] = ['double_from_pyobj', 'long_double'] +cfuncs['long_double_from_pyobj'] = """ +static int +long_double_from_pyobj(long_double* v, PyObject *obj, const char *errmess) +{ + double d=0; + if (PyArray_CheckScalar(obj)){ + if PyArray_IsScalar(obj, LongDouble) { + PyArray_ScalarAsCtype(obj, v); + return 1; + } + else if (PyArray_Check(obj) && PyArray_TYPE(obj) == NPY_LONGDOUBLE) { + (*v) = *((npy_longdouble *)PyArray_DATA(obj)); + return 1; + } + } + if (double_from_pyobj(&d, obj, errmess)) { + *v = (long_double)d; + return 1; + } + return 0; +} +""" + + +cfuncs['double_from_pyobj'] = """ +static int +double_from_pyobj(double* v, PyObject *obj, const char *errmess) +{ + PyObject* tmp = NULL; + if (PyFloat_Check(obj)) { + *v = PyFloat_AsDouble(obj); + return !(*v == -1.0 && PyErr_Occurred()); + } + + tmp = PyNumber_Float(obj); + if (tmp) { + *v = PyFloat_AsDouble(tmp); + Py_DECREF(tmp); + return !(*v == -1.0 && PyErr_Occurred()); + } + + if (PyComplex_Check(obj)) { + PyErr_Clear(); + tmp = PyObject_GetAttrString(obj,\"real\"); + } + else if (PyBytes_Check(obj) || PyUnicode_Check(obj)) { + /*pass*/; + } + else if (PySequence_Check(obj)) { + PyErr_Clear(); + tmp = PySequence_GetItem(obj, 0); + } + + if (tmp) { + if (double_from_pyobj(v,tmp,errmess)) {Py_DECREF(tmp); return 1;} + Py_DECREF(tmp); + } + { + PyObject* err = PyErr_Occurred(); + if (err==NULL) err = #modulename#_error; + PyErr_SetString(err,errmess); + } + return 0; +} +""" + + +needs['float_from_pyobj'] = ['double_from_pyobj'] +cfuncs['float_from_pyobj'] = """ +static int +float_from_pyobj(float* v, PyObject *obj, const char *errmess) +{ + double d=0.0; + if (double_from_pyobj(&d,obj,errmess)) { + *v = (float)d; + return 1; + } + return 0; +} +""" + + +needs['complex_long_double_from_pyobj'] = ['complex_long_double', 'long_double', + 'complex_double_from_pyobj', 'npy_math.h'] +cfuncs['complex_long_double_from_pyobj'] = """ +static int +complex_long_double_from_pyobj(complex_long_double* v, PyObject *obj, const char *errmess) +{ + complex_double cd = {0.0,0.0}; + if (PyArray_CheckScalar(obj)){ + if PyArray_IsScalar(obj, CLongDouble) { + PyArray_ScalarAsCtype(obj, v); + return 1; + } + else if (PyArray_Check(obj) && PyArray_TYPE(obj)==NPY_CLONGDOUBLE) { + (*v).r = npy_creall(*(((npy_clongdouble *)PyArray_DATA(obj)))); + (*v).i = npy_cimagl(*(((npy_clongdouble *)PyArray_DATA(obj)))); + return 1; + } + } + if (complex_double_from_pyobj(&cd,obj,errmess)) { + (*v).r = (long_double)cd.r; + (*v).i = (long_double)cd.i; + return 1; + } + return 0; +} +""" + + +needs['complex_double_from_pyobj'] = ['complex_double', 'npy_math.h'] +cfuncs['complex_double_from_pyobj'] = """ +static int +complex_double_from_pyobj(complex_double* v, PyObject *obj, const char *errmess) { + Py_complex c; + if (PyComplex_Check(obj)) { + c = PyComplex_AsCComplex(obj); + (*v).r = c.real; + (*v).i = c.imag; + return 1; + } + if (PyArray_IsScalar(obj, ComplexFloating)) { + if (PyArray_IsScalar(obj, CFloat)) { + npy_cfloat new; + PyArray_ScalarAsCtype(obj, &new); + (*v).r = (double)npy_crealf(new); + (*v).i = (double)npy_cimagf(new); + } + else if (PyArray_IsScalar(obj, CLongDouble)) { + npy_clongdouble new; + PyArray_ScalarAsCtype(obj, &new); + (*v).r = (double)npy_creall(new); + (*v).i = (double)npy_cimagl(new); + } + else { /* if (PyArray_IsScalar(obj, CDouble)) */ + PyArray_ScalarAsCtype(obj, v); + } + return 1; + } + if (PyArray_CheckScalar(obj)) { /* 0-dim array or still array scalar */ + PyArrayObject *arr; + if (PyArray_Check(obj)) { + arr = (PyArrayObject *)PyArray_Cast((PyArrayObject *)obj, NPY_CDOUBLE); + } + else { + arr = (PyArrayObject *)PyArray_FromScalar(obj, PyArray_DescrFromType(NPY_CDOUBLE)); + } + if (arr == NULL) { + return 0; + } + (*v).r = npy_creal(*(((npy_cdouble *)PyArray_DATA(arr)))); + (*v).i = npy_cimag(*(((npy_cdouble *)PyArray_DATA(arr)))); + Py_DECREF(arr); + return 1; + } + /* Python does not provide PyNumber_Complex function :-( */ + (*v).i = 0.0; + if (PyFloat_Check(obj)) { + (*v).r = PyFloat_AsDouble(obj); + return !((*v).r == -1.0 && PyErr_Occurred()); + } + if (PyLong_Check(obj)) { + (*v).r = PyLong_AsDouble(obj); + return !((*v).r == -1.0 && PyErr_Occurred()); + } + if (PySequence_Check(obj) && !(PyBytes_Check(obj) || PyUnicode_Check(obj))) { + PyObject *tmp = PySequence_GetItem(obj,0); + if (tmp) { + if (complex_double_from_pyobj(v,tmp,errmess)) { + Py_DECREF(tmp); + return 1; + } + Py_DECREF(tmp); + } + } + { + PyObject* err = PyErr_Occurred(); + if (err==NULL) + err = PyExc_TypeError; + PyErr_SetString(err,errmess); + } + return 0; +} +""" + + +needs['complex_float_from_pyobj'] = [ + 'complex_float', 'complex_double_from_pyobj'] +cfuncs['complex_float_from_pyobj'] = """ +static int +complex_float_from_pyobj(complex_float* v,PyObject *obj,const char *errmess) +{ + complex_double cd={0.0,0.0}; + if (complex_double_from_pyobj(&cd,obj,errmess)) { + (*v).r = (float)cd.r; + (*v).i = (float)cd.i; + return 1; + } + return 0; +} +""" + + +cfuncs['try_pyarr_from_character'] = """ +static int try_pyarr_from_character(PyObject* obj, character* v) { + PyArrayObject *arr = (PyArrayObject*)obj; + if (!obj) return -2; + if (PyArray_Check(obj)) { + if (F2PY_ARRAY_IS_CHARACTER_COMPATIBLE(arr)) { + *(character *)(PyArray_DATA(arr)) = *v; + return 1; + } + } + { + char mess[F2PY_MESSAGE_BUFFER_SIZE]; + PyObject* err = PyErr_Occurred(); + if (err == NULL) { + err = PyExc_ValueError; + strcpy(mess, "try_pyarr_from_character failed" + " -- expected bytes array-scalar|array, got "); + f2py_describe(obj, mess + strlen(mess)); + PyErr_SetString(err, mess); + } + } + return 0; +} +""" + +needs['try_pyarr_from_char'] = ['pyobj_from_char1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_char'] = 'static int try_pyarr_from_char(PyObject* obj,char* v) {\n TRYPYARRAYTEMPLATE(char,\'c\');\n}\n' +needs['try_pyarr_from_signed_char'] = ['TRYPYARRAYTEMPLATE', 'unsigned_char'] +cfuncs[ + 'try_pyarr_from_unsigned_char'] = 'static int try_pyarr_from_unsigned_char(PyObject* obj,unsigned_char* v) {\n TRYPYARRAYTEMPLATE(unsigned_char,\'b\');\n}\n' +needs['try_pyarr_from_signed_char'] = ['TRYPYARRAYTEMPLATE', 'signed_char'] +cfuncs[ + 'try_pyarr_from_signed_char'] = 'static int try_pyarr_from_signed_char(PyObject* obj,signed_char* v) {\n TRYPYARRAYTEMPLATE(signed_char,\'1\');\n}\n' +needs['try_pyarr_from_short'] = ['pyobj_from_short1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_short'] = 'static int try_pyarr_from_short(PyObject* obj,short* v) {\n TRYPYARRAYTEMPLATE(short,\'s\');\n}\n' +needs['try_pyarr_from_int'] = ['pyobj_from_int1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_int'] = 'static int try_pyarr_from_int(PyObject* obj,int* v) {\n TRYPYARRAYTEMPLATE(int,\'i\');\n}\n' +needs['try_pyarr_from_long'] = ['pyobj_from_long1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_long'] = 'static int try_pyarr_from_long(PyObject* obj,long* v) {\n TRYPYARRAYTEMPLATE(long,\'l\');\n}\n' +needs['try_pyarr_from_long_long'] = [ + 'pyobj_from_long_long1', 'TRYPYARRAYTEMPLATE', 'long_long'] +cfuncs[ + 'try_pyarr_from_long_long'] = 'static int try_pyarr_from_long_long(PyObject* obj,long_long* v) {\n TRYPYARRAYTEMPLATE(long_long,\'L\');\n}\n' +needs['try_pyarr_from_float'] = ['pyobj_from_float1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_float'] = 'static int try_pyarr_from_float(PyObject* obj,float* v) {\n TRYPYARRAYTEMPLATE(float,\'f\');\n}\n' +needs['try_pyarr_from_double'] = ['pyobj_from_double1', 'TRYPYARRAYTEMPLATE'] +cfuncs[ + 'try_pyarr_from_double'] = 'static int try_pyarr_from_double(PyObject* obj,double* v) {\n TRYPYARRAYTEMPLATE(double,\'d\');\n}\n' +needs['try_pyarr_from_complex_float'] = [ + 'pyobj_from_complex_float1', 'TRYCOMPLEXPYARRAYTEMPLATE', 'complex_float'] +cfuncs[ + 'try_pyarr_from_complex_float'] = 'static int try_pyarr_from_complex_float(PyObject* obj,complex_float* v) {\n TRYCOMPLEXPYARRAYTEMPLATE(float,\'F\');\n}\n' +needs['try_pyarr_from_complex_double'] = [ + 'pyobj_from_complex_double1', 'TRYCOMPLEXPYARRAYTEMPLATE', 'complex_double'] +cfuncs[ + 'try_pyarr_from_complex_double'] = 'static int try_pyarr_from_complex_double(PyObject* obj,complex_double* v) {\n TRYCOMPLEXPYARRAYTEMPLATE(double,\'D\');\n}\n' + + +needs['create_cb_arglist'] = ['CFUNCSMESS', 'PRINTPYOBJERR', 'MINMAX'] +# create the list of arguments to be used when calling back to python +cfuncs['create_cb_arglist'] = """ +static int +create_cb_arglist(PyObject* fun, PyTupleObject* xa , const int maxnofargs, + const int nofoptargs, int *nofargs, PyTupleObject **args, + const char *errmess) +{ + PyObject *tmp = NULL; + PyObject *tmp_fun = NULL; + Py_ssize_t tot, opt, ext, siz, i, di = 0; + CFUNCSMESS(\"create_cb_arglist\\n\"); + tot=opt=ext=siz=0; + /* Get the total number of arguments */ + if (PyFunction_Check(fun)) { + tmp_fun = fun; + Py_INCREF(tmp_fun); + } + else { + di = 1; + if (PyObject_HasAttrString(fun,\"im_func\")) { + tmp_fun = PyObject_GetAttrString(fun,\"im_func\"); + } + else if (PyObject_HasAttrString(fun,\"__call__\")) { + tmp = PyObject_GetAttrString(fun,\"__call__\"); + if (PyObject_HasAttrString(tmp,\"im_func\")) + tmp_fun = PyObject_GetAttrString(tmp,\"im_func\"); + else { + tmp_fun = fun; /* built-in function */ + Py_INCREF(tmp_fun); + tot = maxnofargs; + if (PyCFunction_Check(fun)) { + /* In case the function has a co_argcount (like on PyPy) */ + di = 0; + } + if (xa != NULL) + tot += PyTuple_Size((PyObject *)xa); + } + Py_XDECREF(tmp); + } + else if (PyFortran_Check(fun) || PyFortran_Check1(fun)) { + tot = maxnofargs; + if (xa != NULL) + tot += PyTuple_Size((PyObject *)xa); + tmp_fun = fun; + Py_INCREF(tmp_fun); + } + else if (F2PyCapsule_Check(fun)) { + tot = maxnofargs; + if (xa != NULL) + ext = PyTuple_Size((PyObject *)xa); + if(ext>0) { + fprintf(stderr,\"extra arguments tuple cannot be used with PyCapsule call-back\\n\"); + goto capi_fail; + } + tmp_fun = fun; + Py_INCREF(tmp_fun); + } + } + + if (tmp_fun == NULL) { + fprintf(stderr, + \"Call-back argument must be function|instance|instance.__call__|f2py-function \" + \"but got %s.\\n\", + ((fun == NULL) ? \"NULL\" : Py_TYPE(fun)->tp_name)); + goto capi_fail; + } + + if (PyObject_HasAttrString(tmp_fun,\"__code__\")) { + if (PyObject_HasAttrString(tmp = PyObject_GetAttrString(tmp_fun,\"__code__\"),\"co_argcount\")) { + PyObject *tmp_argcount = PyObject_GetAttrString(tmp,\"co_argcount\"); + Py_DECREF(tmp); + if (tmp_argcount == NULL) { + goto capi_fail; + } + tot = PyLong_AsSsize_t(tmp_argcount) - di; + Py_DECREF(tmp_argcount); + } + } + /* Get the number of optional arguments */ + if (PyObject_HasAttrString(tmp_fun,\"__defaults__\")) { + if (PyTuple_Check(tmp = PyObject_GetAttrString(tmp_fun,\"__defaults__\"))) + opt = PyTuple_Size(tmp); + Py_XDECREF(tmp); + } + /* Get the number of extra arguments */ + if (xa != NULL) + ext = PyTuple_Size((PyObject *)xa); + /* Calculate the size of call-backs argument list */ + siz = MIN(maxnofargs+ext,tot); + *nofargs = MAX(0,siz-ext); + +#ifdef DEBUGCFUNCS + fprintf(stderr, + \"debug-capi:create_cb_arglist:maxnofargs(-nofoptargs),\" + \"tot,opt,ext,siz,nofargs = %d(-%d), %zd, %zd, %zd, %zd, %d\\n\", + maxnofargs, nofoptargs, tot, opt, ext, siz, *nofargs); +#endif + + if (siz < tot-opt) { + fprintf(stderr, + \"create_cb_arglist: Failed to build argument list \" + \"(siz) with enough arguments (tot-opt) required by \" + \"user-supplied function (siz,tot,opt=%zd, %zd, %zd).\\n\", + siz, tot, opt); + goto capi_fail; + } + + /* Initialize argument list */ + *args = (PyTupleObject *)PyTuple_New(siz); + for (i=0;i<*nofargs;i++) { + Py_INCREF(Py_None); + PyTuple_SET_ITEM((PyObject *)(*args),i,Py_None); + } + if (xa != NULL) + for (i=(*nofargs);i 0: + if outneeds[n][0] not in needs: + out.append(outneeds[n][0]) + del outneeds[n][0] + else: + flag = 0 + for k in outneeds[n][1:]: + if k in needs[outneeds[n][0]]: + flag = 1 + break + if flag: + outneeds[n] = outneeds[n][1:] + [outneeds[n][0]] + else: + out.append(outneeds[n][0]) + del outneeds[n][0] + if saveout and (0 not in map(lambda x, y: x == y, saveout, outneeds[n])) \ + and outneeds[n] != []: + print(n, saveout) + errmess( + 'get_needs: no progress in sorting needs, probably circular dependence, skipping.\n') + out = out + saveout + break + saveout = copy.copy(outneeds[n]) + if out == []: + out = [n] + res[n] = out + return res diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/common_rules.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/common_rules.py new file mode 100644 index 0000000000000000000000000000000000000000..64347b737454fe1bae544b6630de2729157d7f71 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/common_rules.py @@ -0,0 +1,146 @@ +""" +Build common block mechanism for f2py2e. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +from . import __version__ +f2py_version = __version__.version + +from .auxfuncs import ( + hasbody, hascommon, hasnote, isintent_hide, outmess, getuseblocks +) +from . import capi_maps +from . import func2subr +from .crackfortran import rmbadname + + +def findcommonblocks(block, top=1): + ret = [] + if hascommon(block): + for key, value in block['common'].items(): + vars_ = {v: block['vars'][v] for v in value} + ret.append((key, value, vars_)) + elif hasbody(block): + for b in block['body']: + ret = ret + findcommonblocks(b, 0) + if top: + tret = [] + names = [] + for t in ret: + if t[0] not in names: + names.append(t[0]) + tret.append(t) + return tret + return ret + + +def buildhooks(m): + ret = {'commonhooks': [], 'initcommonhooks': [], + 'docs': ['"COMMON blocks:\\n"']} + fwrap = [''] + + def fadd(line, s=fwrap): + s[0] = '%s\n %s' % (s[0], line) + chooks = [''] + + def cadd(line, s=chooks): + s[0] = '%s\n%s' % (s[0], line) + ihooks = [''] + + def iadd(line, s=ihooks): + s[0] = '%s\n%s' % (s[0], line) + doc = [''] + + def dadd(line, s=doc): + s[0] = '%s\n%s' % (s[0], line) + for (name, vnames, vars) in findcommonblocks(m): + lower_name = name.lower() + hnames, inames = [], [] + for n in vnames: + if isintent_hide(vars[n]): + hnames.append(n) + else: + inames.append(n) + if hnames: + outmess('\t\tConstructing COMMON block support for "%s"...\n\t\t %s\n\t\t Hidden: %s\n' % ( + name, ','.join(inames), ','.join(hnames))) + else: + outmess('\t\tConstructing COMMON block support for "%s"...\n\t\t %s\n' % ( + name, ','.join(inames))) + fadd('subroutine f2pyinit%s(setupfunc)' % name) + for usename in getuseblocks(m): + fadd(f'use {usename}') + fadd('external setupfunc') + for n in vnames: + fadd(func2subr.var2fixfortran(vars, n)) + if name == '_BLNK_': + fadd('common %s' % (','.join(vnames))) + else: + fadd('common /%s/ %s' % (name, ','.join(vnames))) + fadd('call setupfunc(%s)' % (','.join(inames))) + fadd('end\n') + cadd('static FortranDataDef f2py_%s_def[] = {' % (name)) + idims = [] + for n in inames: + ct = capi_maps.getctype(vars[n]) + elsize = capi_maps.get_elsize(vars[n]) + at = capi_maps.c2capi_map[ct] + dm = capi_maps.getarrdims(n, vars[n]) + if dm['dims']: + idims.append('(%s)' % (dm['dims'])) + else: + idims.append('') + dms = dm['dims'].strip() + if not dms: + dms = '-1' + cadd('\t{\"%s\",%s,{{%s}},%s, %s},' + % (n, dm['rank'], dms, at, elsize)) + cadd('\t{NULL}\n};') + inames1 = rmbadname(inames) + inames1_tps = ','.join(['char *' + s for s in inames1]) + cadd('static void f2py_setup_%s(%s) {' % (name, inames1_tps)) + cadd('\tint i_f2py=0;') + for n in inames1: + cadd('\tf2py_%s_def[i_f2py++].data = %s;' % (name, n)) + cadd('}') + if '_' in lower_name: + F_FUNC = 'F_FUNC_US' + else: + F_FUNC = 'F_FUNC' + cadd('extern void %s(f2pyinit%s,F2PYINIT%s)(void(*)(%s));' + % (F_FUNC, lower_name, name.upper(), + ','.join(['char*'] * len(inames1)))) + cadd('static void f2py_init_%s(void) {' % name) + cadd('\t%s(f2pyinit%s,F2PYINIT%s)(f2py_setup_%s);' + % (F_FUNC, lower_name, name.upper(), name)) + cadd('}\n') + iadd('\ttmp = PyFortranObject_New(f2py_%s_def,f2py_init_%s);' % (name, name)) + iadd('\tif (tmp == NULL) return NULL;') + iadd('\tif (F2PyDict_SetItemString(d, \"%s\", tmp) == -1) return NULL;' + % name) + iadd('\tPy_DECREF(tmp);') + tname = name.replace('_', '\\_') + dadd('\\subsection{Common block \\texttt{%s}}\n' % (tname)) + dadd('\\begin{description}') + for n in inames: + dadd('\\item[]{{}\\verb@%s@{}}' % + (capi_maps.getarrdocsign(n, vars[n]))) + if hasnote(vars[n]): + note = vars[n]['note'] + if isinstance(note, list): + note = '\n'.join(note) + dadd('--- %s' % (note)) + dadd('\\end{description}') + ret['docs'].append( + '"\t/%s/ %s\\n"' % (name, ','.join(map(lambda v, d: v + d, inames, idims)))) + ret['commonhooks'] = chooks + ret['initcommonhooks'] = ihooks + ret['latexdoc'] = doc[0] + if len(ret['docs']) <= 1: + ret['docs'] = '' + return ret, fwrap[0] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/crackfortran.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/crackfortran.py new file mode 100644 index 0000000000000000000000000000000000000000..3ea1888df113686fb36f2c0cafed0786f12411a6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/crackfortran.py @@ -0,0 +1,3746 @@ +""" +crackfortran --- read fortran (77,90) code and extract declaration information. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. + + +Usage of crackfortran: +====================== +Command line keys: -quiet,-verbose,-fix,-f77,-f90,-show,-h + -m ,--ignore-contains +Functions: crackfortran, crack2fortran +The following Fortran statements/constructions are supported +(or will be if needed): + block data,byte,call,character,common,complex,contains,data, + dimension,double complex,double precision,end,external,function, + implicit,integer,intent,interface,intrinsic, + logical,module,optional,parameter,private,public, + program,real,(sequence?),subroutine,type,use,virtual, + include,pythonmodule +Note: 'virtual' is mapped to 'dimension'. +Note: 'implicit integer (z) static (z)' is 'implicit static (z)' (this is minor bug). +Note: code after 'contains' will be ignored until its scope ends. +Note: 'common' statement is extended: dimensions are moved to variable definitions +Note: f2py directive: f2py is read as +Note: pythonmodule is introduced to represent Python module + +Usage: + `postlist=crackfortran(files)` + `postlist` contains declaration information read from the list of files `files`. + `crack2fortran(postlist)` returns a fortran code to be saved to pyf-file + + `postlist` has the following structure: + *** it is a list of dictionaries containing `blocks': + B = {'block','body','vars','parent_block'[,'name','prefix','args','result', + 'implicit','externals','interfaced','common','sortvars', + 'commonvars','note']} + B['block'] = 'interface' | 'function' | 'subroutine' | 'module' | + 'program' | 'block data' | 'type' | 'pythonmodule' | + 'abstract interface' + B['body'] --- list containing `subblocks' with the same structure as `blocks' + B['parent_block'] --- dictionary of a parent block: + C['body'][]['parent_block'] is C + B['vars'] --- dictionary of variable definitions + B['sortvars'] --- dictionary of variable definitions sorted by dependence (independent first) + B['name'] --- name of the block (not if B['block']=='interface') + B['prefix'] --- prefix string (only if B['block']=='function') + B['args'] --- list of argument names if B['block']== 'function' | 'subroutine' + B['result'] --- name of the return value (only if B['block']=='function') + B['implicit'] --- dictionary {'a':,'b':...} | None + B['externals'] --- list of variables being external + B['interfaced'] --- list of variables being external and defined + B['common'] --- dictionary of common blocks (list of objects) + B['commonvars'] --- list of variables used in common blocks (dimensions are moved to variable definitions) + B['from'] --- string showing the 'parents' of the current block + B['use'] --- dictionary of modules used in current block: + {:{['only':<0|1>],['map':{:,...}]}} + B['note'] --- list of LaTeX comments on the block + B['f2pyenhancements'] --- optional dictionary + {'threadsafe':'','fortranname':, + 'callstatement':|, + 'callprotoargument':, + 'usercode':|, + 'pymethoddef:' + } + B['entry'] --- dictionary {entryname:argslist,..} + B['varnames'] --- list of variable names given in the order of reading the + Fortran code, useful for derived types. + B['saved_interface'] --- a string of scanned routine signature, defines explicit interface + *** Variable definition is a dictionary + D = B['vars'][] = + {'typespec'[,'attrspec','kindselector','charselector','=','typename']} + D['typespec'] = 'byte' | 'character' | 'complex' | 'double complex' | + 'double precision' | 'integer' | 'logical' | 'real' | 'type' + D['attrspec'] --- list of attributes (e.g. 'dimension()', + 'external','intent(in|out|inout|hide|c|callback|cache|aligned4|aligned8|aligned16)', + 'optional','required', etc) + K = D['kindselector'] = {['*','kind']} (only if D['typespec'] = + 'complex' | 'integer' | 'logical' | 'real' ) + C = D['charselector'] = {['*','len','kind','f2py_len']} + (only if D['typespec']=='character') + D['='] --- initialization expression string + D['typename'] --- name of the type if D['typespec']=='type' + D['dimension'] --- list of dimension bounds + D['intent'] --- list of intent specifications + D['depend'] --- list of variable names on which current variable depends on + D['check'] --- list of C-expressions; if C-expr returns zero, exception is raised + D['note'] --- list of LaTeX comments on the variable + *** Meaning of kind/char selectors (few examples): + D['typespec>']*K['*'] + D['typespec'](kind=K['kind']) + character*C['*'] + character(len=C['len'],kind=C['kind'], f2py_len=C['f2py_len']) + (see also fortran type declaration statement formats below) + +Fortran 90 type declaration statement format (F77 is subset of F90) +==================================================================== +(Main source: IBM XL Fortran 5.1 Language Reference Manual) +type declaration = [[]::] + = byte | + character[] | + complex[] | + double complex | + double precision | + integer[] | + logical[] | + real[] | + type() + = * | + ([len=][,[kind=]]) | + (kind=[,len=]) + = * | + ([kind=]) + = comma separated list of attributes. + Only the following attributes are used in + building up the interface: + external + (parameter --- affects '=' key) + optional + intent + Other attributes are ignored. + = in | out | inout + = comma separated list of dimension bounds. + = [[*][()] | [()]*] + [// | =] [,] + +In addition, the following attributes are used: check,depend,note + +TODO: + * Apply 'parameter' attribute (e.g. 'integer parameter :: i=2' 'real x(i)' + -> 'real x(2)') + The above may be solved by creating appropriate preprocessor program, for example. + +""" +import sys +import string +import fileinput +import re +import os +import copy +import platform +import codecs +from pathlib import Path +try: + import charset_normalizer +except ImportError: + charset_normalizer = None + +from . import __version__ + +# The environment provided by auxfuncs.py is needed for some calls to eval. +# As the needed functions cannot be determined by static inspection of the +# code, it is safest to use import * pending a major refactoring of f2py. +from .auxfuncs import * +from . import symbolic + +f2py_version = __version__.version + +# Global flags: +strictf77 = 1 # Ignore `!' comments unless line[0]=='!' +sourcecodeform = 'fix' # 'fix','free' +quiet = 0 # Be verbose if 0 (Obsolete: not used any more) +verbose = 1 # Be quiet if 0, extra verbose if > 1. +tabchar = 4 * ' ' +pyffilename = '' +f77modulename = '' +skipemptyends = 0 # for old F77 programs without 'program' statement +ignorecontains = 1 +dolowercase = 1 +debug = [] + +# Global variables +beginpattern = '' +currentfilename = '' +expectbegin = 1 +f90modulevars = {} +filepositiontext = '' +gotnextfile = 1 +groupcache = None +groupcounter = 0 +grouplist = {groupcounter: []} +groupname = '' +include_paths = [] +neededmodule = -1 +onlyfuncs = [] +previous_context = None +skipblocksuntil = -1 +skipfuncs = [] +skipfunctions = [] +usermodules = [] + + +def reset_global_f2py_vars(): + global groupcounter, grouplist, neededmodule, expectbegin + global skipblocksuntil, usermodules, f90modulevars, gotnextfile + global filepositiontext, currentfilename, skipfunctions, skipfuncs + global onlyfuncs, include_paths, previous_context + global strictf77, sourcecodeform, quiet, verbose, tabchar, pyffilename + global f77modulename, skipemptyends, ignorecontains, dolowercase, debug + + # flags + strictf77 = 1 + sourcecodeform = 'fix' + quiet = 0 + verbose = 1 + tabchar = 4 * ' ' + pyffilename = '' + f77modulename = '' + skipemptyends = 0 + ignorecontains = 1 + dolowercase = 1 + debug = [] + # variables + groupcounter = 0 + grouplist = {groupcounter: []} + neededmodule = -1 + expectbegin = 1 + skipblocksuntil = -1 + usermodules = [] + f90modulevars = {} + gotnextfile = 1 + filepositiontext = '' + currentfilename = '' + skipfunctions = [] + skipfuncs = [] + onlyfuncs = [] + include_paths = [] + previous_context = None + + +def outmess(line, flag=1): + global filepositiontext + + if not verbose: + return + if not quiet: + if flag: + sys.stdout.write(filepositiontext) + sys.stdout.write(line) + +re._MAXCACHE = 50 +defaultimplicitrules = {} +for c in "abcdefghopqrstuvwxyz$_": + defaultimplicitrules[c] = {'typespec': 'real'} +for c in "ijklmn": + defaultimplicitrules[c] = {'typespec': 'integer'} +badnames = {} +invbadnames = {} +for n in ['int', 'double', 'float', 'char', 'short', 'long', 'void', 'case', 'while', + 'return', 'signed', 'unsigned', 'if', 'for', 'typedef', 'sizeof', 'union', + 'struct', 'static', 'register', 'new', 'break', 'do', 'goto', 'switch', + 'continue', 'else', 'inline', 'extern', 'delete', 'const', 'auto', + 'len', 'rank', 'shape', 'index', 'slen', 'size', '_i', + 'max', 'min', + 'flen', 'fshape', + 'string', 'complex_double', 'float_double', 'stdin', 'stderr', 'stdout', + 'type', 'default']: + badnames[n] = n + '_bn' + invbadnames[n + '_bn'] = n + + +def rmbadname1(name): + if name in badnames: + errmess('rmbadname1: Replacing "%s" with "%s".\n' % + (name, badnames[name])) + return badnames[name] + return name + + +def rmbadname(names): + return [rmbadname1(_m) for _m in names] + + +def undo_rmbadname1(name): + if name in invbadnames: + errmess('undo_rmbadname1: Replacing "%s" with "%s".\n' + % (name, invbadnames[name])) + return invbadnames[name] + return name + + +def undo_rmbadname(names): + return [undo_rmbadname1(_m) for _m in names] + + +_has_f_header = re.compile(r'-\*-\s*fortran\s*-\*-', re.I).search +_has_f90_header = re.compile(r'-\*-\s*f90\s*-\*-', re.I).search +_has_fix_header = re.compile(r'-\*-\s*fix\s*-\*-', re.I).search +_free_f90_start = re.compile(r'[^c*]\s*[^\s\d\t]', re.I).match + +# Extensions +COMMON_FREE_EXTENSIONS = ['.f90', '.f95', '.f03', '.f08'] +COMMON_FIXED_EXTENSIONS = ['.for', '.ftn', '.f77', '.f'] + + +def openhook(filename, mode): + """Ensures that filename is opened with correct encoding parameter. + + This function uses charset_normalizer package, when available, for + determining the encoding of the file to be opened. When charset_normalizer + is not available, the function detects only UTF encodings, otherwise, ASCII + encoding is used as fallback. + """ + # Reads in the entire file. Robust detection of encoding. + # Correctly handles comments or late stage unicode characters + # gh-22871 + if charset_normalizer is not None: + encoding = charset_normalizer.from_path(filename).best().encoding + else: + # hint: install charset_normalizer for correct encoding handling + # No need to read the whole file for trying with startswith + nbytes = min(32, os.path.getsize(filename)) + with open(filename, 'rb') as fhandle: + raw = fhandle.read(nbytes) + if raw.startswith(codecs.BOM_UTF8): + encoding = 'UTF-8-SIG' + elif raw.startswith((codecs.BOM_UTF32_LE, codecs.BOM_UTF32_BE)): + encoding = 'UTF-32' + elif raw.startswith((codecs.BOM_LE, codecs.BOM_BE)): + encoding = 'UTF-16' + else: + # Fallback, without charset_normalizer + encoding = 'ascii' + return open(filename, mode, encoding=encoding) + + +def is_free_format(fname): + """Check if file is in free format Fortran.""" + # f90 allows both fixed and free format, assuming fixed unless + # signs of free format are detected. + result = False + if Path(fname).suffix.lower() in COMMON_FREE_EXTENSIONS: + result = True + with openhook(fname, 'r') as fhandle: + line = fhandle.readline() + n = 15 # the number of non-comment lines to scan for hints + if _has_f_header(line): + n = 0 + elif _has_f90_header(line): + n = 0 + result = True + while n > 0 and line: + if line[0] != '!' and line.strip(): + n -= 1 + if (line[0] != '\t' and _free_f90_start(line[:5])) or line[-2:-1] == '&': + result = True + break + line = fhandle.readline() + return result + + +# Read fortran (77,90) code +def readfortrancode(ffile, dowithline=show, istop=1): + """ + Read fortran codes from files and + 1) Get rid of comments, line continuations, and empty lines; lower cases. + 2) Call dowithline(line) on every line. + 3) Recursively call itself when statement \"include ''\" is met. + """ + global gotnextfile, filepositiontext, currentfilename, sourcecodeform, strictf77 + global beginpattern, quiet, verbose, dolowercase, include_paths + + if not istop: + saveglobals = gotnextfile, filepositiontext, currentfilename, sourcecodeform, strictf77,\ + beginpattern, quiet, verbose, dolowercase + if ffile == []: + return + localdolowercase = dolowercase + # cont: set to True when the content of the last line read + # indicates statement continuation + cont = False + finalline = '' + ll = '' + includeline = re.compile( + r'\s*include\s*(\'|")(?P[^\'"]*)(\'|")', re.I) + cont1 = re.compile(r'(?P.*)&\s*\Z') + cont2 = re.compile(r'(\s*&|)(?P.*)') + mline_mark = re.compile(r".*?'''") + if istop: + dowithline('', -1) + ll, l1 = '', '' + spacedigits = [' '] + [str(_m) for _m in range(10)] + filepositiontext = '' + fin = fileinput.FileInput(ffile, openhook=openhook) + while True: + try: + l = fin.readline() + except UnicodeDecodeError as msg: + raise Exception( + f'readfortrancode: reading {fin.filename()}#{fin.lineno()}' + f' failed with\n{msg}.\nIt is likely that installing charset_normalizer' + ' package will help f2py determine the input file encoding' + ' correctly.') + if not l: + break + if fin.isfirstline(): + filepositiontext = '' + currentfilename = fin.filename() + gotnextfile = 1 + l1 = l + strictf77 = 0 + sourcecodeform = 'fix' + ext = os.path.splitext(currentfilename)[1] + if Path(currentfilename).suffix.lower() in COMMON_FIXED_EXTENSIONS and \ + not (_has_f90_header(l) or _has_fix_header(l)): + strictf77 = 1 + elif is_free_format(currentfilename) and not _has_fix_header(l): + sourcecodeform = 'free' + if strictf77: + beginpattern = beginpattern77 + else: + beginpattern = beginpattern90 + outmess('\tReading file %s (format:%s%s)\n' + % (repr(currentfilename), sourcecodeform, + strictf77 and ',strict' or '')) + + l = l.expandtabs().replace('\xa0', ' ') + # Get rid of newline characters + while not l == '': + if l[-1] not in "\n\r\f": + break + l = l[:-1] + # Do not lower for directives, gh-2547, gh-27697, gh-26681 + is_f2py_directive = False + # Unconditionally remove comments + (l, rl) = split_by_unquoted(l, '!') + l += ' ' + if rl[:5].lower() == '!f2py': # f2py directive + l, _ = split_by_unquoted(l + 4 * ' ' + rl[5:], '!') + is_f2py_directive = True + if l.strip() == '': # Skip empty line + if sourcecodeform == 'free': + # In free form, a statement continues in the next line + # that is not a comment line [3.3.2.4^1], lines with + # blanks are comment lines [3.3.2.3^1]. Hence, the + # line continuation flag must retain its state. + pass + else: + # In fixed form, statement continuation is determined + # by a non-blank character at the 6-th position. Empty + # line indicates a start of a new statement + # [3.3.3.3^1]. Hence, the line continuation flag must + # be reset. + cont = False + continue + if sourcecodeform == 'fix': + if l[0] in ['*', 'c', '!', 'C', '#']: + if l[1:5].lower() == 'f2py': # f2py directive + l = ' ' + l[5:] + is_f2py_directive = True + else: # Skip comment line + cont = False + is_f2py_directive = False + continue + elif strictf77: + if len(l) > 72: + l = l[:72] + if l[0] not in spacedigits: + raise Exception('readfortrancode: Found non-(space,digit) char ' + 'in the first column.\n\tAre you sure that ' + 'this code is in fix form?\n\tline=%s' % repr(l)) + + if (not cont or strictf77) and (len(l) > 5 and not l[5] == ' '): + # Continuation of a previous line + ll = ll + l[6:] + finalline = '' + origfinalline = '' + else: + r = cont1.match(l) + if r: + l = r.group('line') # Continuation follows .. + if cont: + ll = ll + cont2.match(l).group('line') + finalline = '' + origfinalline = '' + else: + # clean up line beginning from possible digits. + l = ' ' + l[5:] + # f2py directives are already stripped by this point + if localdolowercase: + finalline = ll.lower() + else: + finalline = ll + origfinalline = ll + ll = l + + elif sourcecodeform == 'free': + if not cont and ext == '.pyf' and mline_mark.match(l): + l = l + '\n' + while True: + lc = fin.readline() + if not lc: + errmess( + 'Unexpected end of file when reading multiline\n') + break + l = l + lc + if mline_mark.match(lc): + break + l = l.rstrip() + r = cont1.match(l) + if r: + l = r.group('line') # Continuation follows .. + if cont: + ll = ll + cont2.match(l).group('line') + finalline = '' + origfinalline = '' + else: + if localdolowercase: + # only skip lowering for C style constructs + # gh-2547, gh-27697, gh-26681, gh-28014 + finalline = ll.lower() if not (is_f2py_directive and iscstyledirective(ll)) else ll + else: + finalline = ll + origfinalline = ll + ll = l + cont = (r is not None) + else: + raise ValueError( + "Flag sourcecodeform must be either 'fix' or 'free': %s" % repr(sourcecodeform)) + filepositiontext = 'Line #%d in %s:"%s"\n\t' % ( + fin.filelineno() - 1, currentfilename, l1) + m = includeline.match(origfinalline) + if m: + fn = m.group('name') + if os.path.isfile(fn): + readfortrancode(fn, dowithline=dowithline, istop=0) + else: + include_dirs = [ + os.path.dirname(currentfilename)] + include_paths + foundfile = 0 + for inc_dir in include_dirs: + fn1 = os.path.join(inc_dir, fn) + if os.path.isfile(fn1): + foundfile = 1 + readfortrancode(fn1, dowithline=dowithline, istop=0) + break + if not foundfile: + outmess('readfortrancode: could not find include file %s in %s. Ignoring.\n' % ( + repr(fn), os.pathsep.join(include_dirs))) + else: + dowithline(finalline) + l1 = ll + # Last line should never have an f2py directive anyway + if localdolowercase: + finalline = ll.lower() + else: + finalline = ll + origfinalline = ll + filepositiontext = 'Line #%d in %s:"%s"\n\t' % ( + fin.filelineno() - 1, currentfilename, l1) + m = includeline.match(origfinalline) + if m: + fn = m.group('name') + if os.path.isfile(fn): + readfortrancode(fn, dowithline=dowithline, istop=0) + else: + include_dirs = [os.path.dirname(currentfilename)] + include_paths + foundfile = 0 + for inc_dir in include_dirs: + fn1 = os.path.join(inc_dir, fn) + if os.path.isfile(fn1): + foundfile = 1 + readfortrancode(fn1, dowithline=dowithline, istop=0) + break + if not foundfile: + outmess('readfortrancode: could not find include file %s in %s. Ignoring.\n' % ( + repr(fn), os.pathsep.join(include_dirs))) + else: + dowithline(finalline) + filepositiontext = '' + fin.close() + if istop: + dowithline('', 1) + else: + gotnextfile, filepositiontext, currentfilename, sourcecodeform, strictf77,\ + beginpattern, quiet, verbose, dolowercase = saveglobals + +# Crack line +beforethisafter = r'\s*(?P%s(?=\s*(\b(%s)\b)))' + \ + r'\s*(?P(\b(%s)\b))' + \ + r'\s*(?P%s)\s*\Z' +## +fortrantypes = r'character|logical|integer|real|complex|double\s*(precision\s*(complex|)|complex)|type(?=\s*\([\w\s,=(*)]*\))|byte' +typespattern = re.compile( + beforethisafter % ('', fortrantypes, fortrantypes, '.*'), re.I), 'type' +typespattern4implicit = re.compile(beforethisafter % ( + '', fortrantypes + '|static|automatic|undefined', fortrantypes + '|static|automatic|undefined', '.*'), re.I) +# +functionpattern = re.compile(beforethisafter % ( + r'([a-z]+[\w\s(=*+-/)]*?|)', 'function', 'function', '.*'), re.I), 'begin' +subroutinepattern = re.compile(beforethisafter % ( + r'[a-z\s]*?', 'subroutine', 'subroutine', '.*'), re.I), 'begin' +# modulepattern=re.compile(beforethisafter%('[a-z\s]*?','module','module','.*'),re.I),'begin' +# +groupbegins77 = r'program|block\s*data' +beginpattern77 = re.compile( + beforethisafter % ('', groupbegins77, groupbegins77, '.*'), re.I), 'begin' +groupbegins90 = groupbegins77 + \ + r'|module(?!\s*procedure)|python\s*module|(abstract|)\s*interface|' + \ + r'type(?!\s*\()' +beginpattern90 = re.compile( + beforethisafter % ('', groupbegins90, groupbegins90, '.*'), re.I), 'begin' +groupends = (r'end|endprogram|endblockdata|endmodule|endpythonmodule|' + r'endinterface|endsubroutine|endfunction') +endpattern = re.compile( + beforethisafter % ('', groupends, groupends, '.*'), re.I), 'end' +# block, the Fortran 2008 construct needs special handling in the rest of the file +endifs = r'end\s*(if|do|where|select|while|forall|associate|' + \ + r'critical|enum|team)' +endifpattern = re.compile( + beforethisafter % (r'[\w]*?', endifs, endifs, '.*'), re.I), 'endif' +# +moduleprocedures = r'module\s*procedure' +moduleprocedurepattern = re.compile( + beforethisafter % ('', moduleprocedures, moduleprocedures, '.*'), re.I), \ + 'moduleprocedure' +implicitpattern = re.compile( + beforethisafter % ('', 'implicit', 'implicit', '.*'), re.I), 'implicit' +dimensionpattern = re.compile(beforethisafter % ( + '', 'dimension|virtual', 'dimension|virtual', '.*'), re.I), 'dimension' +externalpattern = re.compile( + beforethisafter % ('', 'external', 'external', '.*'), re.I), 'external' +optionalpattern = re.compile( + beforethisafter % ('', 'optional', 'optional', '.*'), re.I), 'optional' +requiredpattern = re.compile( + beforethisafter % ('', 'required', 'required', '.*'), re.I), 'required' +publicpattern = re.compile( + beforethisafter % ('', 'public', 'public', '.*'), re.I), 'public' +privatepattern = re.compile( + beforethisafter % ('', 'private', 'private', '.*'), re.I), 'private' +intrinsicpattern = re.compile( + beforethisafter % ('', 'intrinsic', 'intrinsic', '.*'), re.I), 'intrinsic' +intentpattern = re.compile(beforethisafter % ( + '', 'intent|depend|note|check', 'intent|depend|note|check', r'\s*\(.*?\).*'), re.I), 'intent' +parameterpattern = re.compile( + beforethisafter % ('', 'parameter', 'parameter', r'\s*\(.*'), re.I), 'parameter' +datapattern = re.compile( + beforethisafter % ('', 'data', 'data', '.*'), re.I), 'data' +callpattern = re.compile( + beforethisafter % ('', 'call', 'call', '.*'), re.I), 'call' +entrypattern = re.compile( + beforethisafter % ('', 'entry', 'entry', '.*'), re.I), 'entry' +callfunpattern = re.compile( + beforethisafter % ('', 'callfun', 'callfun', '.*'), re.I), 'callfun' +commonpattern = re.compile( + beforethisafter % ('', 'common', 'common', '.*'), re.I), 'common' +usepattern = re.compile( + beforethisafter % ('', 'use', 'use', '.*'), re.I), 'use' +containspattern = re.compile( + beforethisafter % ('', 'contains', 'contains', ''), re.I), 'contains' +formatpattern = re.compile( + beforethisafter % ('', 'format', 'format', '.*'), re.I), 'format' +# Non-fortran and f2py-specific statements +f2pyenhancementspattern = re.compile(beforethisafter % ('', 'threadsafe|fortranname|callstatement|callprotoargument|usercode|pymethoddef', + 'threadsafe|fortranname|callstatement|callprotoargument|usercode|pymethoddef', '.*'), re.I | re.S), 'f2pyenhancements' +multilinepattern = re.compile( + r"\s*(?P''')(?P.*?)(?P''')\s*\Z", re.S), 'multiline' +## + +def split_by_unquoted(line, characters): + """ + Splits the line into (line[:i], line[i:]), + where i is the index of first occurrence of one of the characters + not within quotes, or len(line) if no such index exists + """ + assert not (set('"\'') & set(characters)), "cannot split by unquoted quotes" + r = re.compile( + r"\A(?P({single_quoted}|{double_quoted}|{not_quoted})*)" + r"(?P{char}.*)\Z".format( + not_quoted="[^\"'{}]".format(re.escape(characters)), + char="[{}]".format(re.escape(characters)), + single_quoted=r"('([^'\\]|(\\.))*')", + double_quoted=r'("([^"\\]|(\\.))*")')) + m = r.match(line) + if m: + d = m.groupdict() + return (d["before"], d["after"]) + return (line, "") + +def _simplifyargs(argsline): + a = [] + for n in markoutercomma(argsline).split('@,@'): + for r in '(),': + n = n.replace(r, '_') + a.append(n) + return ','.join(a) + +crackline_re_1 = re.compile(r'\s*(?P\b[a-z]+\w*\b)\s*=.*', re.I) +crackline_bind_1 = re.compile(r'\s*(?P\b[a-z]+\w*\b)\s*=.*', re.I) +crackline_bindlang = re.compile(r'\s*bind\(\s*(?P[^,]+)\s*,\s*name\s*=\s*"(?P[^"]+)"\s*\)', re.I) + +def crackline(line, reset=0): + """ + reset=-1 --- initialize + reset=0 --- crack the line + reset=1 --- final check if mismatch of blocks occurred + + Cracked data is saved in grouplist[0]. + """ + global beginpattern, groupcounter, groupname, groupcache, grouplist + global filepositiontext, currentfilename, neededmodule, expectbegin + global skipblocksuntil, skipemptyends, previous_context, gotnextfile + + _, has_semicolon = split_by_unquoted(line, ";") + if has_semicolon and not (f2pyenhancementspattern[0].match(line) or + multilinepattern[0].match(line)): + # XXX: non-zero reset values need testing + assert reset == 0, repr(reset) + # split line on unquoted semicolons + line, semicolon_line = split_by_unquoted(line, ";") + while semicolon_line: + crackline(line, reset) + line, semicolon_line = split_by_unquoted(semicolon_line[1:], ";") + crackline(line, reset) + return + if reset < 0: + groupcounter = 0 + groupname = {groupcounter: ''} + groupcache = {groupcounter: {}} + grouplist = {groupcounter: []} + groupcache[groupcounter]['body'] = [] + groupcache[groupcounter]['vars'] = {} + groupcache[groupcounter]['block'] = '' + groupcache[groupcounter]['name'] = '' + neededmodule = -1 + skipblocksuntil = -1 + return + if reset > 0: + fl = 0 + if f77modulename and neededmodule == groupcounter: + fl = 2 + while groupcounter > fl: + outmess('crackline: groupcounter=%s groupname=%s\n' % + (repr(groupcounter), repr(groupname))) + outmess( + 'crackline: Mismatch of blocks encountered. Trying to fix it by assuming "end" statement.\n') + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 + if f77modulename and neededmodule == groupcounter: + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 # end interface + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 # end module + neededmodule = -1 + return + if line == '': + return + flag = 0 + for pat in [dimensionpattern, externalpattern, intentpattern, optionalpattern, + requiredpattern, + parameterpattern, datapattern, publicpattern, privatepattern, + intrinsicpattern, + endifpattern, endpattern, + formatpattern, + beginpattern, functionpattern, subroutinepattern, + implicitpattern, typespattern, commonpattern, + callpattern, usepattern, containspattern, + entrypattern, + f2pyenhancementspattern, + multilinepattern, + moduleprocedurepattern + ]: + m = pat[0].match(line) + if m: + break + flag = flag + 1 + if not m: + re_1 = crackline_re_1 + if 0 <= skipblocksuntil <= groupcounter: + return + if 'externals' in groupcache[groupcounter]: + for name in groupcache[groupcounter]['externals']: + if name in invbadnames: + name = invbadnames[name] + if 'interfaced' in groupcache[groupcounter] and name in groupcache[groupcounter]['interfaced']: + continue + m1 = re.match( + r'(?P[^"]*)\b%s\b\s*@\(@(?P[^@]*)@\)@.*\Z' % name, markouterparen(line), re.I) + if m1: + m2 = re_1.match(m1.group('before')) + a = _simplifyargs(m1.group('args')) + if m2: + line = 'callfun %s(%s) result (%s)' % ( + name, a, m2.group('result')) + else: + line = 'callfun %s(%s)' % (name, a) + m = callfunpattern[0].match(line) + if not m: + outmess( + 'crackline: could not resolve function call for line=%s.\n' % repr(line)) + return + analyzeline(m, 'callfun', line) + return + if verbose > 1 or (verbose == 1 and currentfilename.lower().endswith('.pyf')): + previous_context = None + outmess('crackline:%d: No pattern for line\n' % (groupcounter)) + return + elif pat[1] == 'end': + if 0 <= skipblocksuntil < groupcounter: + groupcounter = groupcounter - 1 + if skipblocksuntil <= groupcounter: + return + if groupcounter <= 0: + raise Exception('crackline: groupcounter(=%s) is nonpositive. ' + 'Check the blocks.' + % (groupcounter)) + m1 = beginpattern[0].match(line) + if (m1) and (not m1.group('this') == groupname[groupcounter]): + raise Exception('crackline: End group %s does not match with ' + 'previous Begin group %s\n\t%s' % + (repr(m1.group('this')), repr(groupname[groupcounter]), + filepositiontext) + ) + if skipblocksuntil == groupcounter: + skipblocksuntil = -1 + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 + if not skipemptyends: + expectbegin = 1 + elif pat[1] == 'begin': + if 0 <= skipblocksuntil <= groupcounter: + groupcounter = groupcounter + 1 + return + gotnextfile = 0 + analyzeline(m, pat[1], line) + expectbegin = 0 + elif pat[1] == 'endif': + pass + elif pat[1] == 'moduleprocedure': + analyzeline(m, pat[1], line) + elif pat[1] == 'contains': + if ignorecontains: + return + if 0 <= skipblocksuntil <= groupcounter: + return + skipblocksuntil = groupcounter + else: + if 0 <= skipblocksuntil <= groupcounter: + return + analyzeline(m, pat[1], line) + + +def markouterparen(line): + l = '' + f = 0 + for c in line: + if c == '(': + f = f + 1 + if f == 1: + l = l + '@(@' + continue + elif c == ')': + f = f - 1 + if f == 0: + l = l + '@)@' + continue + l = l + c + return l + + +def markoutercomma(line, comma=','): + l = '' + f = 0 + before, after = split_by_unquoted(line, comma + '()') + l += before + while after: + if (after[0] == comma) and (f == 0): + l += '@' + comma + '@' + else: + l += after[0] + if after[0] == '(': + f += 1 + elif after[0] == ')': + f -= 1 + before, after = split_by_unquoted(after[1:], comma + '()') + l += before + assert not f, repr((f, line, l)) + return l + +def unmarkouterparen(line): + r = line.replace('@(@', '(').replace('@)@', ')') + return r + + +def appenddecl(decl, decl2, force=1): + if not decl: + decl = {} + if not decl2: + return decl + if decl is decl2: + return decl + for k in list(decl2.keys()): + if k == 'typespec': + if force or k not in decl: + decl[k] = decl2[k] + elif k == 'attrspec': + for l in decl2[k]: + decl = setattrspec(decl, l, force) + elif k == 'kindselector': + decl = setkindselector(decl, decl2[k], force) + elif k == 'charselector': + decl = setcharselector(decl, decl2[k], force) + elif k in ['=', 'typename']: + if force or k not in decl: + decl[k] = decl2[k] + elif k == 'note': + pass + elif k in ['intent', 'check', 'dimension', 'optional', + 'required', 'depend']: + errmess('appenddecl: "%s" not implemented.\n' % k) + else: + raise Exception('appenddecl: Unknown variable definition key: ' + + str(k)) + return decl + +selectpattern = re.compile( + r'\s*(?P(@\(@.*?@\)@|\*[\d*]+|\*\s*@\(@.*?@\)@|))(?P.*)\Z', re.I) +typedefpattern = re.compile( + r'(?:,(?P[\w(),]+))?(::)?(?P\b[a-z$_][\w$]*\b)' + r'(?:\((?P[\w,]*)\))?\Z', re.I) +nameargspattern = re.compile( + r'\s*(?P\b[\w$]+\b)\s*(@\(@\s*(?P[\w\s,]*)\s*@\)@|)\s*((result(\s*@\(@\s*(?P\b[\w$]+\b)\s*@\)@|))|(bind\s*@\(@\s*(?P(?:(?!@\)@).)*)\s*@\)@))*\s*\Z', re.I) +operatorpattern = re.compile( + r'\s*(?P(operator|assignment))' + r'@\(@\s*(?P[^)]+)\s*@\)@\s*\Z', re.I) +callnameargspattern = re.compile( + r'\s*(?P\b[\w$]+\b)\s*@\(@\s*(?P.*)\s*@\)@\s*\Z', re.I) +real16pattern = re.compile( + r'([-+]?(?:\d+(?:\.\d*)?|\d*\.\d+))[dD]((?:[-+]?\d+)?)') +real8pattern = re.compile( + r'([-+]?((?:\d+(?:\.\d*)?|\d*\.\d+))[eE]((?:[-+]?\d+)?)|(\d+\.\d*))') + +_intentcallbackpattern = re.compile(r'intent\s*\(.*?\bcallback\b', re.I) + + +def _is_intent_callback(vdecl): + for a in vdecl.get('attrspec', []): + if _intentcallbackpattern.match(a): + return 1 + return 0 + + +def _resolvetypedefpattern(line): + line = ''.join(line.split()) # removes whitespace + m1 = typedefpattern.match(line) + print(line, m1) + if m1: + attrs = m1.group('attributes') + attrs = [a.lower() for a in attrs.split(',')] if attrs else [] + return m1.group('name'), attrs, m1.group('params') + return None, [], None + +def parse_name_for_bind(line): + pattern = re.compile(r'bind\(\s*(?P[^,]+)(?:\s*,\s*name\s*=\s*["\'](?P[^"\']+)["\']\s*)?\)', re.I) + match = pattern.search(line) + bind_statement = None + if match: + bind_statement = match.group(0) + # Remove the 'bind' construct from the line. + line = line[:match.start()] + line[match.end():] + return line, bind_statement + +def _resolvenameargspattern(line): + line, bind_cname = parse_name_for_bind(line) + line = markouterparen(line) + m1 = nameargspattern.match(line) + if m1: + return m1.group('name'), m1.group('args'), m1.group('result'), bind_cname + m1 = operatorpattern.match(line) + if m1: + name = m1.group('scheme') + '(' + m1.group('name') + ')' + return name, [], None, None + m1 = callnameargspattern.match(line) + if m1: + return m1.group('name'), m1.group('args'), None, None + return None, [], None, None + + +def analyzeline(m, case, line): + """ + Reads each line in the input file in sequence and updates global vars. + + Effectively reads and collects information from the input file to the + global variable groupcache, a dictionary containing info about each part + of the fortran module. + + At the end of analyzeline, information is filtered into the correct dict + keys, but parameter values and dimensions are not yet interpreted. + """ + global groupcounter, groupname, groupcache, grouplist, filepositiontext + global currentfilename, f77modulename, neededinterface, neededmodule + global expectbegin, gotnextfile, previous_context + + block = m.group('this') + if case != 'multiline': + previous_context = None + if expectbegin and case not in ['begin', 'call', 'callfun', 'type'] \ + and not skipemptyends and groupcounter < 1: + newname = os.path.basename(currentfilename).split('.')[0] + outmess( + 'analyzeline: no group yet. Creating program group with name "%s".\n' % newname) + gotnextfile = 0 + groupcounter = groupcounter + 1 + groupname[groupcounter] = 'program' + groupcache[groupcounter] = {} + grouplist[groupcounter] = [] + groupcache[groupcounter]['body'] = [] + groupcache[groupcounter]['vars'] = {} + groupcache[groupcounter]['block'] = 'program' + groupcache[groupcounter]['name'] = newname + groupcache[groupcounter]['from'] = 'fromsky' + expectbegin = 0 + if case in ['begin', 'call', 'callfun']: + # Crack line => block,name,args,result + block = block.lower() + if re.match(r'block\s*data', block, re.I): + block = 'block data' + elif re.match(r'python\s*module', block, re.I): + block = 'python module' + elif re.match(r'abstract\s*interface', block, re.I): + block = 'abstract interface' + if block == 'type': + name, attrs, _ = _resolvetypedefpattern(m.group('after')) + groupcache[groupcounter]['vars'][name] = dict(attrspec = attrs) + args = [] + result = None + else: + name, args, result, bindcline = _resolvenameargspattern(m.group('after')) + if name is None: + if block == 'block data': + name = '_BLOCK_DATA_' + else: + name = '' + if block not in ['interface', 'block data', 'abstract interface']: + outmess('analyzeline: No name/args pattern found for line.\n') + + previous_context = (block, name, groupcounter) + if args: + args = rmbadname([x.strip() + for x in markoutercomma(args).split('@,@')]) + else: + args = [] + if '' in args: + while '' in args: + args.remove('') + outmess( + 'analyzeline: argument list is malformed (missing argument).\n') + + # end of crack line => block,name,args,result + needmodule = 0 + needinterface = 0 + + if case in ['call', 'callfun']: + needinterface = 1 + if 'args' not in groupcache[groupcounter]: + return + if name not in groupcache[groupcounter]['args']: + return + for it in grouplist[groupcounter]: + if it['name'] == name: + return + if name in groupcache[groupcounter]['interfaced']: + return + block = {'call': 'subroutine', 'callfun': 'function'}[case] + if f77modulename and neededmodule == -1 and groupcounter <= 1: + neededmodule = groupcounter + 2 + needmodule = 1 + if block not in ['interface', 'abstract interface']: + needinterface = 1 + # Create new block(s) + groupcounter = groupcounter + 1 + groupcache[groupcounter] = {} + grouplist[groupcounter] = [] + if needmodule: + if verbose > 1: + outmess('analyzeline: Creating module block %s\n' % + repr(f77modulename), 0) + groupname[groupcounter] = 'module' + groupcache[groupcounter]['block'] = 'python module' + groupcache[groupcounter]['name'] = f77modulename + groupcache[groupcounter]['from'] = '' + groupcache[groupcounter]['body'] = [] + groupcache[groupcounter]['externals'] = [] + groupcache[groupcounter]['interfaced'] = [] + groupcache[groupcounter]['vars'] = {} + groupcounter = groupcounter + 1 + groupcache[groupcounter] = {} + grouplist[groupcounter] = [] + if needinterface: + if verbose > 1: + outmess('analyzeline: Creating additional interface block (groupcounter=%s).\n' % ( + groupcounter), 0) + groupname[groupcounter] = 'interface' + groupcache[groupcounter]['block'] = 'interface' + groupcache[groupcounter]['name'] = 'unknown_interface' + groupcache[groupcounter]['from'] = '%s:%s' % ( + groupcache[groupcounter - 1]['from'], groupcache[groupcounter - 1]['name']) + groupcache[groupcounter]['body'] = [] + groupcache[groupcounter]['externals'] = [] + groupcache[groupcounter]['interfaced'] = [] + groupcache[groupcounter]['vars'] = {} + groupcounter = groupcounter + 1 + groupcache[groupcounter] = {} + grouplist[groupcounter] = [] + groupname[groupcounter] = block + groupcache[groupcounter]['block'] = block + if not name: + name = 'unknown_' + block.replace(' ', '_') + groupcache[groupcounter]['prefix'] = m.group('before') + groupcache[groupcounter]['name'] = rmbadname1(name) + groupcache[groupcounter]['result'] = result + if groupcounter == 1: + groupcache[groupcounter]['from'] = currentfilename + else: + if f77modulename and groupcounter == 3: + groupcache[groupcounter]['from'] = '%s:%s' % ( + groupcache[groupcounter - 1]['from'], currentfilename) + else: + groupcache[groupcounter]['from'] = '%s:%s' % ( + groupcache[groupcounter - 1]['from'], groupcache[groupcounter - 1]['name']) + for k in list(groupcache[groupcounter].keys()): + if not groupcache[groupcounter][k]: + del groupcache[groupcounter][k] + + groupcache[groupcounter]['args'] = args + groupcache[groupcounter]['body'] = [] + groupcache[groupcounter]['externals'] = [] + groupcache[groupcounter]['interfaced'] = [] + groupcache[groupcounter]['vars'] = {} + groupcache[groupcounter]['entry'] = {} + # end of creation + if block == 'type': + groupcache[groupcounter]['varnames'] = [] + + if case in ['call', 'callfun']: # set parents variables + if name not in groupcache[groupcounter - 2]['externals']: + groupcache[groupcounter - 2]['externals'].append(name) + groupcache[groupcounter]['vars'] = copy.deepcopy( + groupcache[groupcounter - 2]['vars']) + try: + del groupcache[groupcounter]['vars'][name][ + groupcache[groupcounter]['vars'][name]['attrspec'].index('external')] + except Exception: + pass + if block in ['function', 'subroutine']: # set global attributes + # name is fortran name + if bindcline: + bindcdat = re.search(crackline_bindlang, bindcline) + if bindcdat: + groupcache[groupcounter]['bindlang'] = {name : {}} + groupcache[groupcounter]['bindlang'][name]["lang"] = bindcdat.group('lang') + if bindcdat.group('lang_name'): + groupcache[groupcounter]['bindlang'][name]["name"] = bindcdat.group('lang_name') + try: + groupcache[groupcounter]['vars'][name] = appenddecl( + groupcache[groupcounter]['vars'][name], groupcache[groupcounter - 2]['vars']['']) + except Exception: + pass + if case == 'callfun': # return type + if result and result in groupcache[groupcounter]['vars']: + if not name == result: + groupcache[groupcounter]['vars'][name] = appenddecl( + groupcache[groupcounter]['vars'][name], groupcache[groupcounter]['vars'][result]) + # if groupcounter>1: # name is interfaced + try: + groupcache[groupcounter - 2]['interfaced'].append(name) + except Exception: + pass + if block == 'function': + t = typespattern[0].match(m.group('before') + ' ' + name) + if t: + typespec, selector, attr, edecl = cracktypespec0( + t.group('this'), t.group('after')) + updatevars(typespec, selector, attr, edecl) + + if case in ['call', 'callfun']: + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 # end routine + grouplist[groupcounter - 1].append(groupcache[groupcounter]) + grouplist[groupcounter - 1][-1]['body'] = grouplist[groupcounter] + del grouplist[groupcounter] + groupcounter = groupcounter - 1 # end interface + + elif case == 'entry': + name, args, result, _= _resolvenameargspattern(m.group('after')) + if name is not None: + if args: + args = rmbadname([x.strip() + for x in markoutercomma(args).split('@,@')]) + else: + args = [] + assert result is None, repr(result) + groupcache[groupcounter]['entry'][name] = args + previous_context = ('entry', name, groupcounter) + elif case == 'type': + typespec, selector, attr, edecl = cracktypespec0( + block, m.group('after')) + last_name = updatevars(typespec, selector, attr, edecl) + if last_name is not None: + previous_context = ('variable', last_name, groupcounter) + elif case in ['dimension', 'intent', 'optional', 'required', 'external', 'public', 'private', 'intrinsic']: + edecl = groupcache[groupcounter]['vars'] + ll = m.group('after').strip() + i = ll.find('::') + if i < 0 and case == 'intent': + i = markouterparen(ll).find('@)@') - 2 + ll = ll[:i + 1] + '::' + ll[i + 1:] + i = ll.find('::') + if ll[i:] == '::' and 'args' in groupcache[groupcounter]: + outmess('All arguments will have attribute %s%s\n' % + (m.group('this'), ll[:i])) + ll = ll + ','.join(groupcache[groupcounter]['args']) + if i < 0: + i = 0 + pl = '' + else: + pl = ll[:i].strip() + ll = ll[i + 2:] + ch = markoutercomma(pl).split('@,@') + if len(ch) > 1: + pl = ch[0] + outmess('analyzeline: cannot handle multiple attributes without type specification. Ignoring %r.\n' % ( + ','.join(ch[1:]))) + last_name = None + + for e in [x.strip() for x in markoutercomma(ll).split('@,@')]: + m1 = namepattern.match(e) + if not m1: + if case in ['public', 'private']: + k = '' + else: + print(m.groupdict()) + outmess('analyzeline: no name pattern found in %s statement for %s. Skipping.\n' % ( + case, repr(e))) + continue + else: + k = rmbadname1(m1.group('name')) + if case in ['public', 'private'] and \ + (k == 'operator' or k == 'assignment'): + k += m1.group('after') + if k not in edecl: + edecl[k] = {} + if case == 'dimension': + ap = case + m1.group('after') + if case == 'intent': + ap = m.group('this') + pl + if _intentcallbackpattern.match(ap): + if k not in groupcache[groupcounter]['args']: + if groupcounter > 1: + if '__user__' not in groupcache[groupcounter - 2]['name']: + outmess( + 'analyzeline: missing __user__ module (could be nothing)\n') + # fixes ticket 1693 + if k != groupcache[groupcounter]['name']: + outmess('analyzeline: appending intent(callback) %s' + ' to %s arguments\n' % (k, groupcache[groupcounter]['name'])) + groupcache[groupcounter]['args'].append(k) + else: + errmess( + 'analyzeline: intent(callback) %s is ignored\n' % (k)) + else: + errmess('analyzeline: intent(callback) %s is already' + ' in argument list\n' % (k)) + if case in ['optional', 'required', 'public', 'external', 'private', 'intrinsic']: + ap = case + if 'attrspec' in edecl[k]: + edecl[k]['attrspec'].append(ap) + else: + edecl[k]['attrspec'] = [ap] + if case == 'external': + if groupcache[groupcounter]['block'] == 'program': + outmess('analyzeline: ignoring program arguments\n') + continue + if k not in groupcache[groupcounter]['args']: + continue + if 'externals' not in groupcache[groupcounter]: + groupcache[groupcounter]['externals'] = [] + groupcache[groupcounter]['externals'].append(k) + last_name = k + groupcache[groupcounter]['vars'] = edecl + if last_name is not None: + previous_context = ('variable', last_name, groupcounter) + elif case == 'moduleprocedure': + groupcache[groupcounter]['implementedby'] = \ + [x.strip() for x in m.group('after').split(',')] + elif case == 'parameter': + edecl = groupcache[groupcounter]['vars'] + ll = m.group('after').strip()[1:-1] + last_name = None + for e in markoutercomma(ll).split('@,@'): + try: + k, initexpr = [x.strip() for x in e.split('=')] + except Exception: + outmess( + 'analyzeline: could not extract name,expr in parameter statement "%s" of "%s"\n' % (e, ll)) + continue + params = get_parameters(edecl) + k = rmbadname1(k) + if k not in edecl: + edecl[k] = {} + if '=' in edecl[k] and (not edecl[k]['='] == initexpr): + outmess('analyzeline: Overwriting the value of parameter "%s" ("%s") with "%s".\n' % ( + k, edecl[k]['='], initexpr)) + t = determineexprtype(initexpr, params) + if t: + if t.get('typespec') == 'real': + tt = list(initexpr) + for m in real16pattern.finditer(initexpr): + tt[m.start():m.end()] = list( + initexpr[m.start():m.end()].lower().replace('d', 'e')) + initexpr = ''.join(tt) + elif t.get('typespec') == 'complex': + initexpr = initexpr[1:].lower().replace('d', 'e').\ + replace(',', '+1j*(') + try: + v = eval(initexpr, {}, params) + except (SyntaxError, NameError, TypeError) as msg: + errmess('analyzeline: Failed to evaluate %r. Ignoring: %s\n' + % (initexpr, msg)) + continue + edecl[k]['='] = repr(v) + if 'attrspec' in edecl[k]: + edecl[k]['attrspec'].append('parameter') + else: + edecl[k]['attrspec'] = ['parameter'] + last_name = k + groupcache[groupcounter]['vars'] = edecl + if last_name is not None: + previous_context = ('variable', last_name, groupcounter) + elif case == 'implicit': + if m.group('after').strip().lower() == 'none': + groupcache[groupcounter]['implicit'] = None + elif m.group('after'): + if 'implicit' in groupcache[groupcounter]: + impl = groupcache[groupcounter]['implicit'] + else: + impl = {} + if impl is None: + outmess( + 'analyzeline: Overwriting earlier "implicit none" statement.\n') + impl = {} + for e in markoutercomma(m.group('after')).split('@,@'): + decl = {} + m1 = re.match( + r'\s*(?P.*?)\s*(\(\s*(?P[a-z-, ]+)\s*\)\s*|)\Z', e, re.I) + if not m1: + outmess( + 'analyzeline: could not extract info of implicit statement part "%s"\n' % (e)) + continue + m2 = typespattern4implicit.match(m1.group('this')) + if not m2: + outmess( + 'analyzeline: could not extract types pattern of implicit statement part "%s"\n' % (e)) + continue + typespec, selector, attr, edecl = cracktypespec0( + m2.group('this'), m2.group('after')) + kindselect, charselect, typename = cracktypespec( + typespec, selector) + decl['typespec'] = typespec + decl['kindselector'] = kindselect + decl['charselector'] = charselect + decl['typename'] = typename + for k in list(decl.keys()): + if not decl[k]: + del decl[k] + for r in markoutercomma(m1.group('after')).split('@,@'): + if '-' in r: + try: + begc, endc = [x.strip() for x in r.split('-')] + except Exception: + outmess( + 'analyzeline: expected "-" instead of "%s" in range list of implicit statement\n' % r) + continue + else: + begc = endc = r.strip() + if not len(begc) == len(endc) == 1: + outmess( + 'analyzeline: expected "-" instead of "%s" in range list of implicit statement (2)\n' % r) + continue + for o in range(ord(begc), ord(endc) + 1): + impl[chr(o)] = decl + groupcache[groupcounter]['implicit'] = impl + elif case == 'data': + ll = [] + dl = '' + il = '' + f = 0 + fc = 1 + inp = 0 + for c in m.group('after'): + if not inp: + if c == "'": + fc = not fc + if c == '/' and fc: + f = f + 1 + continue + if c == '(': + inp = inp + 1 + elif c == ')': + inp = inp - 1 + if f == 0: + dl = dl + c + elif f == 1: + il = il + c + elif f == 2: + dl = dl.strip() + if dl.startswith(','): + dl = dl[1:].strip() + ll.append([dl, il]) + dl = c + il = '' + f = 0 + if f == 2: + dl = dl.strip() + if dl.startswith(','): + dl = dl[1:].strip() + ll.append([dl, il]) + vars = groupcache[groupcounter].get('vars', {}) + last_name = None + for l in ll: + l[0], l[1] = l[0].strip(), l[1].strip() + if l[0].startswith(','): + l[0] = l[0][1:] + if l[0].startswith('('): + outmess('analyzeline: implied-DO list "%s" is not supported. Skipping.\n' % l[0]) + continue + for idx, v in enumerate(rmbadname([x.strip() for x in markoutercomma(l[0]).split('@,@')])): + if v.startswith('('): + outmess('analyzeline: implied-DO list "%s" is not supported. Skipping.\n' % v) + # XXX: subsequent init expressions may get wrong values. + # Ignoring since data statements are irrelevant for + # wrapping. + continue + if '!' in l[1]: + # Fixes gh-24746 pyf generation + # XXX: This essentially ignores the value for generating the pyf which is fine: + # integer dimension(3) :: mytab + # common /mycom/ mytab + # Since in any case it is initialized in the Fortran code + outmess('Comment line in declaration "%s" is not supported. Skipping.\n' % l[1]) + continue + vars.setdefault(v, {}) + vtype = vars[v].get('typespec') + vdim = getdimension(vars[v]) + matches = re.findall(r"\(.*?\)", l[1]) if vtype == 'complex' else l[1].split(',') + try: + new_val = "(/{}/)".format(", ".join(matches)) if vdim else matches[idx] + except IndexError: + # gh-24746 + # Runs only if above code fails. Fixes the line + # DATA IVAR1, IVAR2, IVAR3, IVAR4, EVAR5 /4*0,0.0D0/ + # by expanding to ['0', '0', '0', '0', '0.0d0'] + if any("*" in m for m in matches): + expanded_list = [] + for match in matches: + if "*" in match: + try: + multiplier, value = match.split("*") + expanded_list.extend([value.strip()] * int(multiplier)) + except ValueError: # if int(multiplier) fails + expanded_list.append(match.strip()) + else: + expanded_list.append(match.strip()) + matches = expanded_list + new_val = "(/{}/)".format(", ".join(matches)) if vdim else matches[idx] + current_val = vars[v].get('=') + if current_val and (current_val != new_val): + outmess('analyzeline: changing init expression of "%s" ("%s") to "%s"\n' % (v, current_val, new_val)) + vars[v]['='] = new_val + last_name = v + groupcache[groupcounter]['vars'] = vars + if last_name: + previous_context = ('variable', last_name, groupcounter) + elif case == 'common': + line = m.group('after').strip() + if not line[0] == '/': + line = '//' + line + + cl = [] + [_, bn, ol] = re.split('/', line, maxsplit=2) + bn = bn.strip() + if not bn: + bn = '_BLNK_' + cl.append([bn, ol]) + commonkey = {} + if 'common' in groupcache[groupcounter]: + commonkey = groupcache[groupcounter]['common'] + for c in cl: + if c[0] not in commonkey: + commonkey[c[0]] = [] + for i in [x.strip() for x in markoutercomma(c[1]).split('@,@')]: + if i: + commonkey[c[0]].append(i) + groupcache[groupcounter]['common'] = commonkey + previous_context = ('common', bn, groupcounter) + elif case == 'use': + m1 = re.match( + r'\A\s*(?P\b\w+\b)\s*((,(\s*\bonly\b\s*:|(?P))\s*(?P.*))|)\s*\Z', m.group('after'), re.I) + if m1: + mm = m1.groupdict() + if 'use' not in groupcache[groupcounter]: + groupcache[groupcounter]['use'] = {} + name = m1.group('name') + groupcache[groupcounter]['use'][name] = {} + isonly = 0 + if 'list' in mm and mm['list'] is not None: + if 'notonly' in mm and mm['notonly'] is None: + isonly = 1 + groupcache[groupcounter]['use'][name]['only'] = isonly + ll = [x.strip() for x in mm['list'].split(',')] + rl = {} + for l in ll: + if '=' in l: + m2 = re.match( + r'\A\s*(?P\b\w+\b)\s*=\s*>\s*(?P\b\w+\b)\s*\Z', l, re.I) + if m2: + rl[m2.group('local').strip()] = m2.group( + 'use').strip() + else: + outmess( + 'analyzeline: Not local=>use pattern found in %s\n' % repr(l)) + else: + rl[l] = l + groupcache[groupcounter]['use'][name]['map'] = rl + else: + pass + else: + print(m.groupdict()) + outmess('analyzeline: Could not crack the use statement.\n') + elif case in ['f2pyenhancements']: + if 'f2pyenhancements' not in groupcache[groupcounter]: + groupcache[groupcounter]['f2pyenhancements'] = {} + d = groupcache[groupcounter]['f2pyenhancements'] + if m.group('this') == 'usercode' and 'usercode' in d: + if isinstance(d['usercode'], str): + d['usercode'] = [d['usercode']] + d['usercode'].append(m.group('after')) + else: + d[m.group('this')] = m.group('after') + elif case == 'multiline': + if previous_context is None: + if verbose: + outmess('analyzeline: No context for multiline block.\n') + return + gc = groupcounter + appendmultiline(groupcache[gc], + previous_context[:2], + m.group('this')) + else: + if verbose > 1: + print(m.groupdict()) + outmess('analyzeline: No code implemented for line.\n') + + +def appendmultiline(group, context_name, ml): + if 'f2pymultilines' not in group: + group['f2pymultilines'] = {} + d = group['f2pymultilines'] + if context_name not in d: + d[context_name] = [] + d[context_name].append(ml) + return + + +def cracktypespec0(typespec, ll): + selector = None + attr = None + if re.match(r'double\s*complex', typespec, re.I): + typespec = 'double complex' + elif re.match(r'double\s*precision', typespec, re.I): + typespec = 'double precision' + else: + typespec = typespec.strip().lower() + m1 = selectpattern.match(markouterparen(ll)) + if not m1: + outmess( + 'cracktypespec0: no kind/char_selector pattern found for line.\n') + return + d = m1.groupdict() + for k in list(d.keys()): + d[k] = unmarkouterparen(d[k]) + if typespec in ['complex', 'integer', 'logical', 'real', 'character', 'type']: + selector = d['this'] + ll = d['after'] + i = ll.find('::') + if i >= 0: + attr = ll[:i].strip() + ll = ll[i + 2:] + return typespec, selector, attr, ll +##### +namepattern = re.compile(r'\s*(?P\b\w+\b)\s*(?P.*)\s*\Z', re.I) +kindselector = re.compile( + r'\s*(\(\s*(kind\s*=)?\s*(?P.*)\s*\)|\*\s*(?P.*?))\s*\Z', re.I) +charselector = re.compile( + r'\s*(\((?P.*)\)|\*\s*(?P.*))\s*\Z', re.I) +lenkindpattern = re.compile( + r'\s*(kind\s*=\s*(?P.*?)\s*(@,@\s*len\s*=\s*(?P.*)|)' + r'|(len\s*=\s*|)(?P.*?)\s*(@,@\s*(kind\s*=\s*|)(?P.*)' + r'|(f2py_len\s*=\s*(?P.*))|))\s*\Z', re.I) +lenarraypattern = re.compile( + r'\s*(@\(@\s*(?!/)\s*(?P.*?)\s*@\)@\s*\*\s*(?P.*?)|(\*\s*(?P.*?)|)\s*(@\(@\s*(?!/)\s*(?P.*?)\s*@\)@|))\s*(=\s*(?P.*?)|(@\(@|)/\s*(?P.*?)\s*/(@\)@|)|)\s*\Z', re.I) + + +def removespaces(expr): + expr = expr.strip() + if len(expr) <= 1: + return expr + expr2 = expr[0] + for i in range(1, len(expr) - 1): + if (expr[i] == ' ' and + ((expr[i + 1] in "()[]{}=+-/* ") or + (expr[i - 1] in "()[]{}=+-/* "))): + continue + expr2 = expr2 + expr[i] + expr2 = expr2 + expr[-1] + return expr2 + + +def markinnerspaces(line): + """ + The function replace all spaces in the input variable line which are + surrounded with quotation marks, with the triplet "@_@". + + For instance, for the input "a 'b c'" the function returns "a 'b@_@c'" + + Parameters + ---------- + line : str + + Returns + ------- + str + + """ + fragment = '' + inside = False + current_quote = None + escaped = '' + for c in line: + if escaped == '\\' and c in ['\\', '\'', '"']: + fragment += c + escaped = c + continue + if not inside and c in ['\'', '"']: + current_quote = c + if c == current_quote: + inside = not inside + elif c == ' ' and inside: + fragment += '@_@' + continue + fragment += c + escaped = c # reset to non-backslash + return fragment + + +def updatevars(typespec, selector, attrspec, entitydecl): + """ + Returns last_name, the variable name without special chars, parenthesis + or dimension specifiers. + + Alters groupcache to add the name, typespec, attrspec (and possibly value) + of current variable. + """ + global groupcache, groupcounter + + last_name = None + kindselect, charselect, typename = cracktypespec(typespec, selector) + # Clean up outer commas, whitespace and undesired chars from attrspec + if attrspec: + attrspec = [x.strip() for x in markoutercomma(attrspec).split('@,@')] + l = [] + c = re.compile(r'(?P[a-zA-Z]+)') + for a in attrspec: + if not a: + continue + m = c.match(a) + if m: + s = m.group('start').lower() + a = s + a[len(s):] + l.append(a) + attrspec = l + el = [x.strip() for x in markoutercomma(entitydecl).split('@,@')] + el1 = [] + for e in el: + for e1 in [x.strip() for x in markoutercomma(removespaces(markinnerspaces(e)), comma=' ').split('@ @')]: + if e1: + el1.append(e1.replace('@_@', ' ')) + for e in el1: + m = namepattern.match(e) + if not m: + outmess( + 'updatevars: no name pattern found for entity=%s. Skipping.\n' % (repr(e))) + continue + ename = rmbadname1(m.group('name')) + edecl = {} + if ename in groupcache[groupcounter]['vars']: + edecl = groupcache[groupcounter]['vars'][ename].copy() + not_has_typespec = 'typespec' not in edecl + if not_has_typespec: + edecl['typespec'] = typespec + elif typespec and (not typespec == edecl['typespec']): + outmess('updatevars: attempt to change the type of "%s" ("%s") to "%s". Ignoring.\n' % ( + ename, edecl['typespec'], typespec)) + if 'kindselector' not in edecl: + edecl['kindselector'] = copy.copy(kindselect) + elif kindselect: + for k in list(kindselect.keys()): + if k in edecl['kindselector'] and (not kindselect[k] == edecl['kindselector'][k]): + outmess('updatevars: attempt to change the kindselector "%s" of "%s" ("%s") to "%s". Ignoring.\n' % ( + k, ename, edecl['kindselector'][k], kindselect[k])) + else: + edecl['kindselector'][k] = copy.copy(kindselect[k]) + if 'charselector' not in edecl and charselect: + if not_has_typespec: + edecl['charselector'] = charselect + else: + errmess('updatevars:%s: attempt to change empty charselector to %r. Ignoring.\n' + % (ename, charselect)) + elif charselect: + for k in list(charselect.keys()): + if k in edecl['charselector'] and (not charselect[k] == edecl['charselector'][k]): + outmess('updatevars: attempt to change the charselector "%s" of "%s" ("%s") to "%s". Ignoring.\n' % ( + k, ename, edecl['charselector'][k], charselect[k])) + else: + edecl['charselector'][k] = copy.copy(charselect[k]) + if 'typename' not in edecl: + edecl['typename'] = typename + elif typename and (not edecl['typename'] == typename): + outmess('updatevars: attempt to change the typename of "%s" ("%s") to "%s". Ignoring.\n' % ( + ename, edecl['typename'], typename)) + if 'attrspec' not in edecl: + edecl['attrspec'] = copy.copy(attrspec) + elif attrspec: + for a in attrspec: + if a not in edecl['attrspec']: + edecl['attrspec'].append(a) + else: + edecl['typespec'] = copy.copy(typespec) + edecl['kindselector'] = copy.copy(kindselect) + edecl['charselector'] = copy.copy(charselect) + edecl['typename'] = typename + edecl['attrspec'] = copy.copy(attrspec) + if 'external' in (edecl.get('attrspec') or []) and e in groupcache[groupcounter]['args']: + if 'externals' not in groupcache[groupcounter]: + groupcache[groupcounter]['externals'] = [] + groupcache[groupcounter]['externals'].append(e) + if m.group('after'): + m1 = lenarraypattern.match(markouterparen(m.group('after'))) + if m1: + d1 = m1.groupdict() + for lk in ['len', 'array', 'init']: + if d1[lk + '2'] is not None: + d1[lk] = d1[lk + '2'] + del d1[lk + '2'] + for k in list(d1.keys()): + if d1[k] is not None: + d1[k] = unmarkouterparen(d1[k]) + else: + del d1[k] + + if 'len' in d1 and 'array' in d1: + if d1['len'] == '': + d1['len'] = d1['array'] + del d1['array'] + elif typespec == 'character': + if ('charselector' not in edecl) or (not edecl['charselector']): + edecl['charselector'] = {} + if 'len' in edecl['charselector']: + del edecl['charselector']['len'] + edecl['charselector']['*'] = d1['len'] + del d1['len'] + else: + d1['array'] = d1['array'] + ',' + d1['len'] + del d1['len'] + errmess('updatevars: "%s %s" is mapped to "%s %s(%s)"\n' % ( + typespec, e, typespec, ename, d1['array'])) + + if 'len' in d1: + if typespec in ['complex', 'integer', 'logical', 'real']: + if ('kindselector' not in edecl) or (not edecl['kindselector']): + edecl['kindselector'] = {} + edecl['kindselector']['*'] = d1['len'] + del d1['len'] + elif typespec == 'character': + if ('charselector' not in edecl) or (not edecl['charselector']): + edecl['charselector'] = {} + if 'len' in edecl['charselector']: + del edecl['charselector']['len'] + edecl['charselector']['*'] = d1['len'] + del d1['len'] + + if 'init' in d1: + if '=' in edecl and (not edecl['='] == d1['init']): + outmess('updatevars: attempt to change the init expression of "%s" ("%s") to "%s". Ignoring.\n' % ( + ename, edecl['='], d1['init'])) + else: + edecl['='] = d1['init'] + + if 'array' in d1: + dm = 'dimension(%s)' % d1['array'] + if 'attrspec' not in edecl or (not edecl['attrspec']): + edecl['attrspec'] = [dm] + else: + edecl['attrspec'].append(dm) + for dm1 in edecl['attrspec']: + if dm1[:9] == 'dimension' and dm1 != dm: + del edecl['attrspec'][-1] + errmess('updatevars:%s: attempt to change %r to %r. Ignoring.\n' + % (ename, dm1, dm)) + break + + else: + outmess('updatevars: could not crack entity declaration "%s". Ignoring.\n' % ( + ename + m.group('after'))) + for k in list(edecl.keys()): + if not edecl[k]: + del edecl[k] + groupcache[groupcounter]['vars'][ename] = edecl + if 'varnames' in groupcache[groupcounter]: + groupcache[groupcounter]['varnames'].append(ename) + last_name = ename + return last_name + + +def cracktypespec(typespec, selector): + kindselect = None + charselect = None + typename = None + if selector: + if typespec in ['complex', 'integer', 'logical', 'real']: + kindselect = kindselector.match(selector) + if not kindselect: + outmess( + 'cracktypespec: no kindselector pattern found for %s\n' % (repr(selector))) + return + kindselect = kindselect.groupdict() + kindselect['*'] = kindselect['kind2'] + del kindselect['kind2'] + for k in list(kindselect.keys()): + if not kindselect[k]: + del kindselect[k] + for k, i in list(kindselect.items()): + kindselect[k] = rmbadname1(i) + elif typespec == 'character': + charselect = charselector.match(selector) + if not charselect: + outmess( + 'cracktypespec: no charselector pattern found for %s\n' % (repr(selector))) + return + charselect = charselect.groupdict() + charselect['*'] = charselect['charlen'] + del charselect['charlen'] + if charselect['lenkind']: + lenkind = lenkindpattern.match( + markoutercomma(charselect['lenkind'])) + lenkind = lenkind.groupdict() + for lk in ['len', 'kind']: + if lenkind[lk + '2']: + lenkind[lk] = lenkind[lk + '2'] + charselect[lk] = lenkind[lk] + del lenkind[lk + '2'] + if lenkind['f2py_len'] is not None: + # used to specify the length of assumed length strings + charselect['f2py_len'] = lenkind['f2py_len'] + del charselect['lenkind'] + for k in list(charselect.keys()): + if not charselect[k]: + del charselect[k] + for k, i in list(charselect.items()): + charselect[k] = rmbadname1(i) + elif typespec == 'type': + typename = re.match(r'\s*\(\s*(?P\w+)\s*\)', selector, re.I) + if typename: + typename = typename.group('name') + else: + outmess('cracktypespec: no typename found in %s\n' % + (repr(typespec + selector))) + else: + outmess('cracktypespec: no selector used for %s\n' % + (repr(selector))) + return kindselect, charselect, typename +###### + + +def setattrspec(decl, attr, force=0): + if not decl: + decl = {} + if not attr: + return decl + if 'attrspec' not in decl: + decl['attrspec'] = [attr] + return decl + if force: + decl['attrspec'].append(attr) + if attr in decl['attrspec']: + return decl + if attr == 'static' and 'automatic' not in decl['attrspec']: + decl['attrspec'].append(attr) + elif attr == 'automatic' and 'static' not in decl['attrspec']: + decl['attrspec'].append(attr) + elif attr == 'public': + if 'private' not in decl['attrspec']: + decl['attrspec'].append(attr) + elif attr == 'private': + if 'public' not in decl['attrspec']: + decl['attrspec'].append(attr) + else: + decl['attrspec'].append(attr) + return decl + + +def setkindselector(decl, sel, force=0): + if not decl: + decl = {} + if not sel: + return decl + if 'kindselector' not in decl: + decl['kindselector'] = sel + return decl + for k in list(sel.keys()): + if force or k not in decl['kindselector']: + decl['kindselector'][k] = sel[k] + return decl + + +def setcharselector(decl, sel, force=0): + if not decl: + decl = {} + if not sel: + return decl + if 'charselector' not in decl: + decl['charselector'] = sel + return decl + + for k in list(sel.keys()): + if force or k not in decl['charselector']: + decl['charselector'][k] = sel[k] + return decl + + +def getblockname(block, unknown='unknown'): + if 'name' in block: + return block['name'] + return unknown + +# post processing + + +def setmesstext(block): + global filepositiontext + + try: + filepositiontext = 'In: %s:%s\n' % (block['from'], block['name']) + except Exception: + pass + + +def get_usedict(block): + usedict = {} + if 'parent_block' in block: + usedict = get_usedict(block['parent_block']) + if 'use' in block: + usedict.update(block['use']) + return usedict + + +def get_useparameters(block, param_map=None): + global f90modulevars + + if param_map is None: + param_map = {} + usedict = get_usedict(block) + if not usedict: + return param_map + for usename, mapping in list(usedict.items()): + usename = usename.lower() + if usename not in f90modulevars: + outmess('get_useparameters: no module %s info used by %s\n' % + (usename, block.get('name'))) + continue + mvars = f90modulevars[usename] + params = get_parameters(mvars) + if not params: + continue + # XXX: apply mapping + if mapping: + errmess('get_useparameters: mapping for %s not impl.\n' % (mapping)) + for k, v in list(params.items()): + if k in param_map: + outmess('get_useparameters: overriding parameter %s with' + ' value from module %s\n' % (repr(k), repr(usename))) + param_map[k] = v + + return param_map + + +def postcrack2(block, tab='', param_map=None): + global f90modulevars + + if not f90modulevars: + return block + if isinstance(block, list): + ret = [postcrack2(g, tab=tab + '\t', param_map=param_map) + for g in block] + return ret + setmesstext(block) + outmess('%sBlock: %s\n' % (tab, block['name']), 0) + + if param_map is None: + param_map = get_useparameters(block) + + if param_map is not None and 'vars' in block: + vars = block['vars'] + for n in list(vars.keys()): + var = vars[n] + if 'kindselector' in var: + kind = var['kindselector'] + if 'kind' in kind: + val = kind['kind'] + if val in param_map: + kind['kind'] = param_map[val] + new_body = [postcrack2(b, tab=tab + '\t', param_map=param_map) + for b in block['body']] + block['body'] = new_body + + return block + + +def postcrack(block, args=None, tab=''): + """ + TODO: + function return values + determine expression types if in argument list + """ + global usermodules, onlyfunctions + + if isinstance(block, list): + gret = [] + uret = [] + for g in block: + setmesstext(g) + g = postcrack(g, tab=tab + '\t') + # sort user routines to appear first + if 'name' in g and '__user__' in g['name']: + uret.append(g) + else: + gret.append(g) + return uret + gret + setmesstext(block) + if not isinstance(block, dict) and 'block' not in block: + raise Exception('postcrack: Expected block dictionary instead of ' + + str(block)) + if 'name' in block and not block['name'] == 'unknown_interface': + outmess('%sBlock: %s\n' % (tab, block['name']), 0) + block = analyzeargs(block) + block = analyzecommon(block) + block['vars'] = analyzevars(block) + block['sortvars'] = sortvarnames(block['vars']) + if block.get('args'): + args = block['args'] + block['body'] = analyzebody(block, args, tab=tab) + + userisdefined = [] + if 'use' in block: + useblock = block['use'] + for k in list(useblock.keys()): + if '__user__' in k: + userisdefined.append(k) + else: + useblock = {} + name = '' + if 'name' in block: + name = block['name'] + # and not userisdefined: # Build a __user__ module + if block.get('externals'): + interfaced = [] + if 'interfaced' in block: + interfaced = block['interfaced'] + mvars = copy.copy(block['vars']) + if name: + mname = name + '__user__routines' + else: + mname = 'unknown__user__routines' + if mname in userisdefined: + i = 1 + while '%s_%i' % (mname, i) in userisdefined: + i = i + 1 + mname = '%s_%i' % (mname, i) + interface = {'block': 'interface', 'body': [], + 'vars': {}, 'name': name + '_user_interface'} + for e in block['externals']: + if e in interfaced: + edef = [] + j = -1 + for b in block['body']: + j = j + 1 + if b['block'] == 'interface': + i = -1 + for bb in b['body']: + i = i + 1 + if 'name' in bb and bb['name'] == e: + edef = copy.copy(bb) + del b['body'][i] + break + if edef: + if not b['body']: + del block['body'][j] + del interfaced[interfaced.index(e)] + break + interface['body'].append(edef) + else: + if e in mvars and not isexternal(mvars[e]): + interface['vars'][e] = mvars[e] + if interface['vars'] or interface['body']: + block['interfaced'] = interfaced + mblock = {'block': 'python module', 'body': [ + interface], 'vars': {}, 'name': mname, 'interfaced': block['externals']} + useblock[mname] = {} + usermodules.append(mblock) + if useblock: + block['use'] = useblock + return block + + +def sortvarnames(vars): + indep = [] + dep = [] + for v in list(vars.keys()): + if 'depend' in vars[v] and vars[v]['depend']: + dep.append(v) + else: + indep.append(v) + n = len(dep) + i = 0 + while dep: # XXX: How to catch dependence cycles correctly? + v = dep[0] + fl = 0 + for w in dep[1:]: + if w in vars[v]['depend']: + fl = 1 + break + if fl: + dep = dep[1:] + [v] + i = i + 1 + if i > n: + errmess('sortvarnames: failed to compute dependencies because' + ' of cyclic dependencies between ' + + ', '.join(dep) + '\n') + indep = indep + dep + break + else: + indep.append(v) + dep = dep[1:] + n = len(dep) + i = 0 + return indep + + +def analyzecommon(block): + if not hascommon(block): + return block + commonvars = [] + for k in list(block['common'].keys()): + comvars = [] + for e in block['common'][k]: + m = re.match( + r'\A\s*\b(?P.*?)\b\s*(\((?P.*?)\)|)\s*\Z', e, re.I) + if m: + dims = [] + if m.group('dims'): + dims = [x.strip() + for x in markoutercomma(m.group('dims')).split('@,@')] + n = rmbadname1(m.group('name').strip()) + if n in block['vars']: + if 'attrspec' in block['vars'][n]: + block['vars'][n]['attrspec'].append( + 'dimension(%s)' % (','.join(dims))) + else: + block['vars'][n]['attrspec'] = [ + 'dimension(%s)' % (','.join(dims))] + else: + if dims: + block['vars'][n] = { + 'attrspec': ['dimension(%s)' % (','.join(dims))]} + else: + block['vars'][n] = {} + if n not in commonvars: + commonvars.append(n) + else: + n = e + errmess( + 'analyzecommon: failed to extract "[()]" from "%s" in common /%s/.\n' % (e, k)) + comvars.append(n) + block['common'][k] = comvars + if 'commonvars' not in block: + block['commonvars'] = commonvars + else: + block['commonvars'] = block['commonvars'] + commonvars + return block + + +def analyzebody(block, args, tab=''): + global usermodules, skipfuncs, onlyfuncs, f90modulevars + + setmesstext(block) + + maybe_private = { + key: value + for key, value in block['vars'].items() + if 'attrspec' not in value or 'public' not in value['attrspec'] + } + + body = [] + for b in block['body']: + b['parent_block'] = block + if b['block'] in ['function', 'subroutine']: + if args is not None and b['name'] not in args: + continue + else: + as_ = b['args'] + # Add private members to skipfuncs for gh-23879 + if b['name'] in maybe_private.keys(): + skipfuncs.append(b['name']) + if b['name'] in skipfuncs: + continue + if onlyfuncs and b['name'] not in onlyfuncs: + continue + b['saved_interface'] = crack2fortrangen( + b, '\n' + ' ' * 6, as_interface=True) + + else: + as_ = args + b = postcrack(b, as_, tab=tab + '\t') + if b['block'] in ['interface', 'abstract interface'] and \ + not b['body'] and not b.get('implementedby'): + if 'f2pyenhancements' not in b: + continue + if b['block'].replace(' ', '') == 'pythonmodule': + usermodules.append(b) + else: + if b['block'] == 'module': + f90modulevars[b['name']] = b['vars'] + body.append(b) + return body + + +def buildimplicitrules(block): + setmesstext(block) + implicitrules = defaultimplicitrules + attrrules = {} + if 'implicit' in block: + if block['implicit'] is None: + implicitrules = None + if verbose > 1: + outmess( + 'buildimplicitrules: no implicit rules for routine %s.\n' % repr(block['name'])) + else: + for k in list(block['implicit'].keys()): + if block['implicit'][k].get('typespec') not in ['static', 'automatic']: + implicitrules[k] = block['implicit'][k] + else: + attrrules[k] = block['implicit'][k]['typespec'] + return implicitrules, attrrules + + +def myeval(e, g=None, l=None): + """ Like `eval` but returns only integers and floats """ + r = eval(e, g, l) + if type(r) in [int, float]: + return r + raise ValueError('r=%r' % (r)) + +getlincoef_re_1 = re.compile(r'\A\b\w+\b\Z', re.I) + + +def getlincoef(e, xset): # e = a*x+b ; x in xset + """ + Obtain ``a`` and ``b`` when ``e == "a*x+b"``, where ``x`` is a symbol in + xset. + + >>> getlincoef('2*x + 1', {'x'}) + (2, 1, 'x') + >>> getlincoef('3*x + x*2 + 2 + 1', {'x'}) + (5, 3, 'x') + >>> getlincoef('0', {'x'}) + (0, 0, None) + >>> getlincoef('0*x', {'x'}) + (0, 0, 'x') + >>> getlincoef('x*x', {'x'}) + (None, None, None) + + This can be tricked by sufficiently complex expressions + + >>> getlincoef('(x - 0.5)*(x - 1.5)*(x - 1)*x + 2*x + 3', {'x'}) + (2.0, 3.0, 'x') + """ + try: + c = int(myeval(e, {}, {})) + return 0, c, None + except Exception: + pass + if getlincoef_re_1.match(e): + return 1, 0, e + len_e = len(e) + for x in xset: + if len(x) > len_e: + continue + if re.search(r'\w\s*\([^)]*\b' + x + r'\b', e): + # skip function calls having x as an argument, e.g max(1, x) + continue + re_1 = re.compile(r'(?P.*?)\b' + x + r'\b(?P.*)', re.I) + m = re_1.match(e) + if m: + try: + m1 = re_1.match(e) + while m1: + ee = '%s(%s)%s' % ( + m1.group('before'), 0, m1.group('after')) + m1 = re_1.match(ee) + b = myeval(ee, {}, {}) + m1 = re_1.match(e) + while m1: + ee = '%s(%s)%s' % ( + m1.group('before'), 1, m1.group('after')) + m1 = re_1.match(ee) + a = myeval(ee, {}, {}) - b + m1 = re_1.match(e) + while m1: + ee = '%s(%s)%s' % ( + m1.group('before'), 0.5, m1.group('after')) + m1 = re_1.match(ee) + c = myeval(ee, {}, {}) + # computing another point to be sure that expression is linear + m1 = re_1.match(e) + while m1: + ee = '%s(%s)%s' % ( + m1.group('before'), 1.5, m1.group('after')) + m1 = re_1.match(ee) + c2 = myeval(ee, {}, {}) + if (a * 0.5 + b == c and a * 1.5 + b == c2): + return a, b, x + except Exception: + pass + break + return None, None, None + + +word_pattern = re.compile(r'\b[a-z][\w$]*\b', re.I) + + +def _get_depend_dict(name, vars, deps): + if name in vars: + words = vars[name].get('depend', []) + + if '=' in vars[name] and not isstring(vars[name]): + for word in word_pattern.findall(vars[name]['=']): + # The word_pattern may return values that are not + # only variables, they can be string content for instance + if word not in words and word in vars and word != name: + words.append(word) + for word in words[:]: + for w in deps.get(word, []) \ + or _get_depend_dict(word, vars, deps): + if w not in words: + words.append(w) + else: + outmess('_get_depend_dict: no dependence info for %s\n' % (repr(name))) + words = [] + deps[name] = words + return words + + +def _calc_depend_dict(vars): + names = list(vars.keys()) + depend_dict = {} + for n in names: + _get_depend_dict(n, vars, depend_dict) + return depend_dict + + +def get_sorted_names(vars): + depend_dict = _calc_depend_dict(vars) + names = [] + for name in list(depend_dict.keys()): + if not depend_dict[name]: + names.append(name) + del depend_dict[name] + while depend_dict: + for name, lst in list(depend_dict.items()): + new_lst = [n for n in lst if n in depend_dict] + if not new_lst: + names.append(name) + del depend_dict[name] + else: + depend_dict[name] = new_lst + return [name for name in names if name in vars] + + +def _kind_func(string): + # XXX: return something sensible. + if string[0] in "'\"": + string = string[1:-1] + if real16pattern.match(string): + return 8 + elif real8pattern.match(string): + return 4 + return 'kind(' + string + ')' + + +def _selected_int_kind_func(r): + # XXX: This should be processor dependent + m = 10 ** r + if m <= 2 ** 8: + return 1 + if m <= 2 ** 16: + return 2 + if m <= 2 ** 32: + return 4 + if m <= 2 ** 63: + return 8 + if m <= 2 ** 128: + return 16 + return -1 + + +def _selected_real_kind_func(p, r=0, radix=0): + # XXX: This should be processor dependent + # This is only verified for 0 <= p <= 20, possibly good for p <= 33 and above + if p < 7: + return 4 + if p < 16: + return 8 + machine = platform.machine().lower() + if machine.startswith(('aarch64', 'alpha', 'arm64', 'loongarch', 'mips', 'power', 'ppc', 'riscv', 's390x', 'sparc')): + if p <= 33: + return 16 + else: + if p < 19: + return 10 + elif p <= 33: + return 16 + return -1 + + +def get_parameters(vars, global_params={}): + params = copy.copy(global_params) + g_params = copy.copy(global_params) + for name, func in [('kind', _kind_func), + ('selected_int_kind', _selected_int_kind_func), + ('selected_real_kind', _selected_real_kind_func), ]: + if name not in g_params: + g_params[name] = func + param_names = [] + for n in get_sorted_names(vars): + if 'attrspec' in vars[n] and 'parameter' in vars[n]['attrspec']: + param_names.append(n) + kind_re = re.compile(r'\bkind\s*\(\s*(?P.*)\s*\)', re.I) + selected_int_kind_re = re.compile( + r'\bselected_int_kind\s*\(\s*(?P.*)\s*\)', re.I) + selected_kind_re = re.compile( + r'\bselected_(int|real)_kind\s*\(\s*(?P.*)\s*\)', re.I) + for n in param_names: + if '=' in vars[n]: + v = vars[n]['='] + if islogical(vars[n]): + v = v.lower() + for repl in [ + ('.false.', 'False'), + ('.true.', 'True'), + # TODO: test .eq., .neq., etc replacements. + ]: + v = v.replace(*repl) + + v = kind_re.sub(r'kind("\1")', v) + v = selected_int_kind_re.sub(r'selected_int_kind(\1)', v) + + # We need to act according to the data. + # The easy case is if the data has a kind-specifier, + # then we may easily remove those specifiers. + # However, it may be that the user uses other specifiers...(!) + is_replaced = False + + if 'kindselector' in vars[n]: + # Remove kind specifier (including those defined + # by parameters) + if 'kind' in vars[n]['kindselector']: + orig_v_len = len(v) + v = v.replace('_' + vars[n]['kindselector']['kind'], '') + # Again, this will be true if even a single specifier + # has been replaced, see comment above. + is_replaced = len(v) < orig_v_len + + if not is_replaced: + if not selected_kind_re.match(v): + v_ = v.split('_') + # In case there are additive parameters + if len(v_) > 1: + v = ''.join(v_[:-1]).lower().replace(v_[-1].lower(), '') + + # Currently this will not work for complex numbers. + # There is missing code for extracting a complex number, + # which may be defined in either of these: + # a) (Re, Im) + # b) cmplx(Re, Im) + # c) dcmplx(Re, Im) + # d) cmplx(Re, Im, ) + + if isdouble(vars[n]): + tt = list(v) + for m in real16pattern.finditer(v): + tt[m.start():m.end()] = list( + v[m.start():m.end()].lower().replace('d', 'e')) + v = ''.join(tt) + + elif iscomplex(vars[n]): + outmess(f'get_parameters[TODO]: ' + f'implement evaluation of complex expression {v}\n') + + dimspec = ([s.removeprefix('dimension').strip() + for s in vars[n]['attrspec'] + if s.startswith('dimension')] or [None])[0] + + # Handle _dp for gh-6624 + # Also fixes gh-20460 + if real16pattern.search(v): + v = 8 + elif real8pattern.search(v): + v = 4 + try: + params[n] = param_eval(v, g_params, params, dimspec=dimspec) + except Exception as msg: + params[n] = v + outmess(f'get_parameters: got "{msg}" on {n!r}\n') + + if isstring(vars[n]) and isinstance(params[n], int): + params[n] = chr(params[n]) + nl = n.lower() + if nl != n: + params[nl] = params[n] + else: + print(vars[n]) + outmess(f'get_parameters:parameter {n!r} does not have value?!\n') + return params + + +def _eval_length(length, params): + if length in ['(:)', '(*)', '*']: + return '(*)' + return _eval_scalar(length, params) + + +_is_kind_number = re.compile(r'\d+_').match + + +def _eval_scalar(value, params): + if _is_kind_number(value): + value = value.split('_')[0] + try: + # TODO: use symbolic from PR #19805 + value = eval(value, {}, params) + value = (repr if isinstance(value, str) else str)(value) + except (NameError, SyntaxError, TypeError): + return value + except Exception as msg: + errmess('"%s" in evaluating %r ' + '(available names: %s)\n' + % (msg, value, list(params.keys()))) + return value + + +def analyzevars(block): + """ + Sets correct dimension information for each variable/parameter + """ + + global f90modulevars + + setmesstext(block) + implicitrules, attrrules = buildimplicitrules(block) + vars = copy.copy(block['vars']) + if block['block'] == 'function' and block['name'] not in vars: + vars[block['name']] = {} + if '' in block['vars']: + del vars[''] + if 'attrspec' in block['vars']['']: + gen = block['vars']['']['attrspec'] + for n in set(vars) | set(b['name'] for b in block['body']): + for k in ['public', 'private']: + if k in gen: + vars[n] = setattrspec(vars.get(n, {}), k) + svars = [] + args = block['args'] + for a in args: + try: + vars[a] + svars.append(a) + except KeyError: + pass + for n in list(vars.keys()): + if n not in args: + svars.append(n) + + params = get_parameters(vars, get_useparameters(block)) + # At this point, params are read and interpreted, but + # the params used to define vars are not yet parsed + dep_matches = {} + name_match = re.compile(r'[A-Za-z][\w$]*').match + for v in list(vars.keys()): + m = name_match(v) + if m: + n = v[m.start():m.end()] + try: + dep_matches[n] + except KeyError: + dep_matches[n] = re.compile(r'.*\b%s\b' % (v), re.I).match + for n in svars: + if n[0] in list(attrrules.keys()): + vars[n] = setattrspec(vars[n], attrrules[n[0]]) + if 'typespec' not in vars[n]: + if not('attrspec' in vars[n] and 'external' in vars[n]['attrspec']): + if implicitrules: + ln0 = n[0].lower() + for k in list(implicitrules[ln0].keys()): + if k == 'typespec' and implicitrules[ln0][k] == 'undefined': + continue + if k not in vars[n]: + vars[n][k] = implicitrules[ln0][k] + elif k == 'attrspec': + for l in implicitrules[ln0][k]: + vars[n] = setattrspec(vars[n], l) + elif n in block['args']: + outmess('analyzevars: typespec of variable %s is not defined in routine %s.\n' % ( + repr(n), block['name'])) + if 'charselector' in vars[n]: + if 'len' in vars[n]['charselector']: + l = vars[n]['charselector']['len'] + try: + l = str(eval(l, {}, params)) + except Exception: + pass + vars[n]['charselector']['len'] = l + + if 'kindselector' in vars[n]: + if 'kind' in vars[n]['kindselector']: + l = vars[n]['kindselector']['kind'] + try: + l = str(eval(l, {}, params)) + except Exception: + pass + vars[n]['kindselector']['kind'] = l + + dimension_exprs = {} + if 'attrspec' in vars[n]: + attr = vars[n]['attrspec'] + attr.reverse() + vars[n]['attrspec'] = [] + dim, intent, depend, check, note = None, None, None, None, None + for a in attr: + if a[:9] == 'dimension': + dim = (a[9:].strip())[1:-1] + elif a[:6] == 'intent': + intent = (a[6:].strip())[1:-1] + elif a[:6] == 'depend': + depend = (a[6:].strip())[1:-1] + elif a[:5] == 'check': + check = (a[5:].strip())[1:-1] + elif a[:4] == 'note': + note = (a[4:].strip())[1:-1] + else: + vars[n] = setattrspec(vars[n], a) + if intent: + if 'intent' not in vars[n]: + vars[n]['intent'] = [] + for c in [x.strip() for x in markoutercomma(intent).split('@,@')]: + # Remove spaces so that 'in out' becomes 'inout' + tmp = c.replace(' ', '') + if tmp not in vars[n]['intent']: + vars[n]['intent'].append(tmp) + intent = None + if note: + note = note.replace('\\n\\n', '\n\n') + note = note.replace('\\n ', '\n') + if 'note' not in vars[n]: + vars[n]['note'] = [note] + else: + vars[n]['note'].append(note) + note = None + if depend is not None: + if 'depend' not in vars[n]: + vars[n]['depend'] = [] + for c in rmbadname([x.strip() for x in markoutercomma(depend).split('@,@')]): + if c not in vars[n]['depend']: + vars[n]['depend'].append(c) + depend = None + if check is not None: + if 'check' not in vars[n]: + vars[n]['check'] = [] + for c in [x.strip() for x in markoutercomma(check).split('@,@')]: + if c not in vars[n]['check']: + vars[n]['check'].append(c) + check = None + if dim and 'dimension' not in vars[n]: + vars[n]['dimension'] = [] + for d in rmbadname( + [x.strip() for x in markoutercomma(dim).split('@,@')] + ): + # d is the expression inside the dimension declaration + # Evaluate `d` with respect to params + try: + # the dimension for this variable depends on a + # previously defined parameter + d = param_parse(d, params) + except (ValueError, IndexError, KeyError): + outmess( + 'analyzevars: could not parse dimension for ' + f'variable {d!r}\n' + ) + + dim_char = ':' if d == ':' else '*' + if d == dim_char: + dl = [dim_char] + else: + dl = markoutercomma(d, ':').split('@:@') + if len(dl) == 2 and '*' in dl: # e.g. dimension(5:*) + dl = ['*'] + d = '*' + if len(dl) == 1 and dl[0] != dim_char: + dl = ['1', dl[0]] + if len(dl) == 2: + d1, d2 = map(symbolic.Expr.parse, dl) + dsize = d2 - d1 + 1 + d = dsize.tostring(language=symbolic.Language.C) + # find variables v that define d as a linear + # function, `d == a * v + b`, and store + # coefficients a and b for further analysis. + solver_and_deps = {} + for v in block['vars']: + s = symbolic.as_symbol(v) + if dsize.contains(s): + try: + a, b = dsize.linear_solve(s) + + def solve_v(s, a=a, b=b): + return (s - b) / a + + all_symbols = set(a.symbols()) + all_symbols.update(b.symbols()) + except RuntimeError as msg: + # d is not a linear function of v, + # however, if v can be determined + # from d using other means, + # implement the corresponding + # solve_v function here. + solve_v = None + all_symbols = set(dsize.symbols()) + v_deps = set( + s.data for s in all_symbols + if s.data in vars) + solver_and_deps[v] = solve_v, list(v_deps) + # Note that dsize may contain symbols that are + # not defined in block['vars']. Here we assume + # these correspond to Fortran/C intrinsic + # functions or that are defined by other + # means. We'll let the compiler validate the + # definiteness of such symbols. + dimension_exprs[d] = solver_and_deps + vars[n]['dimension'].append(d) + + if 'check' not in vars[n] and 'args' in block and n in block['args']: + # n is an argument that has no checks defined. Here we + # generate some consistency checks for n, and when n is an + # array, generate checks for its dimensions and construct + # initialization expressions. + n_deps = vars[n].get('depend', []) + n_checks = [] + n_is_input = l_or(isintent_in, isintent_inout, + isintent_inplace)(vars[n]) + if isarray(vars[n]): # n is array + for i, d in enumerate(vars[n]['dimension']): + coeffs_and_deps = dimension_exprs.get(d) + if coeffs_and_deps is None: + # d is `:` or `*` or a constant expression + pass + elif n_is_input: + # n is an input array argument and its shape + # may define variables used in dimension + # specifications. + for v, (solver, deps) in coeffs_and_deps.items(): + def compute_deps(v, deps): + for v1 in coeffs_and_deps.get(v, [None, []])[1]: + if v1 not in deps: + deps.add(v1) + compute_deps(v1, deps) + all_deps = set() + compute_deps(v, all_deps) + if (v in n_deps + or '=' in vars[v] + or 'depend' in vars[v]): + # Skip a variable that + # - n depends on + # - has user-defined initialization expression + # - has user-defined dependencies + continue + if solver is not None and v not in all_deps: + # v can be solved from d, hence, we + # make it an optional argument with + # initialization expression: + is_required = False + init = solver(symbolic.as_symbol( + f'shape({n}, {i})')) + init = init.tostring( + language=symbolic.Language.C) + vars[v]['='] = init + # n needs to be initialized before v. So, + # making v dependent on n and on any + # variables in solver or d. + vars[v]['depend'] = [n] + deps + if 'check' not in vars[v]: + # add check only when no + # user-specified checks exist + vars[v]['check'] = [ + f'shape({n}, {i}) == {d}'] + else: + # d is a non-linear function on v, + # hence, v must be a required input + # argument that n will depend on + is_required = True + if 'intent' not in vars[v]: + vars[v]['intent'] = [] + if 'in' not in vars[v]['intent']: + vars[v]['intent'].append('in') + # v needs to be initialized before n + n_deps.append(v) + n_checks.append( + f'shape({n}, {i}) == {d}') + v_attr = vars[v].get('attrspec', []) + if not ('optional' in v_attr + or 'required' in v_attr): + v_attr.append( + 'required' if is_required else 'optional') + if v_attr: + vars[v]['attrspec'] = v_attr + if coeffs_and_deps is not None: + # extend v dependencies with ones specified in attrspec + for v, (solver, deps) in coeffs_and_deps.items(): + v_deps = vars[v].get('depend', []) + for aa in vars[v].get('attrspec', []): + if aa.startswith('depend'): + aa = ''.join(aa.split()) + v_deps.extend(aa[7:-1].split(',')) + if v_deps: + vars[v]['depend'] = list(set(v_deps)) + if n not in v_deps: + n_deps.append(v) + elif isstring(vars[n]): + if 'charselector' in vars[n]: + if '*' in vars[n]['charselector']: + length = _eval_length(vars[n]['charselector']['*'], + params) + vars[n]['charselector']['*'] = length + elif 'len' in vars[n]['charselector']: + length = _eval_length(vars[n]['charselector']['len'], + params) + del vars[n]['charselector']['len'] + vars[n]['charselector']['*'] = length + if n_checks: + vars[n]['check'] = n_checks + if n_deps: + vars[n]['depend'] = list(set(n_deps)) + + if '=' in vars[n]: + if 'attrspec' not in vars[n]: + vars[n]['attrspec'] = [] + if ('optional' not in vars[n]['attrspec']) and \ + ('required' not in vars[n]['attrspec']): + vars[n]['attrspec'].append('optional') + if 'depend' not in vars[n]: + vars[n]['depend'] = [] + for v, m in list(dep_matches.items()): + if m(vars[n]['=']): + vars[n]['depend'].append(v) + if not vars[n]['depend']: + del vars[n]['depend'] + if isscalar(vars[n]): + vars[n]['='] = _eval_scalar(vars[n]['='], params) + + for n in list(vars.keys()): + if n == block['name']: # n is block name + if 'note' in vars[n]: + block['note'] = vars[n]['note'] + if block['block'] == 'function': + if 'result' in block and block['result'] in vars: + vars[n] = appenddecl(vars[n], vars[block['result']]) + if 'prefix' in block: + pr = block['prefix'] + pr1 = pr.replace('pure', '') + ispure = (not pr == pr1) + pr = pr1.replace('recursive', '') + isrec = (not pr == pr1) + m = typespattern[0].match(pr) + if m: + typespec, selector, attr, edecl = cracktypespec0( + m.group('this'), m.group('after')) + kindselect, charselect, typename = cracktypespec( + typespec, selector) + vars[n]['typespec'] = typespec + try: + if block['result']: + vars[block['result']]['typespec'] = typespec + except Exception: + pass + if kindselect: + if 'kind' in kindselect: + try: + kindselect['kind'] = eval( + kindselect['kind'], {}, params) + except Exception: + pass + vars[n]['kindselector'] = kindselect + if charselect: + vars[n]['charselector'] = charselect + if typename: + vars[n]['typename'] = typename + if ispure: + vars[n] = setattrspec(vars[n], 'pure') + if isrec: + vars[n] = setattrspec(vars[n], 'recursive') + else: + outmess( + 'analyzevars: prefix (%s) were not used\n' % repr(block['prefix'])) + if block['block'] not in ['module', 'pythonmodule', 'python module', 'block data']: + if 'commonvars' in block: + neededvars = copy.copy(block['args'] + block['commonvars']) + else: + neededvars = copy.copy(block['args']) + for n in list(vars.keys()): + if l_or(isintent_callback, isintent_aux)(vars[n]): + neededvars.append(n) + if 'entry' in block: + neededvars.extend(list(block['entry'].keys())) + for k in list(block['entry'].keys()): + for n in block['entry'][k]: + if n not in neededvars: + neededvars.append(n) + if block['block'] == 'function': + if 'result' in block: + neededvars.append(block['result']) + else: + neededvars.append(block['name']) + if block['block'] in ['subroutine', 'function']: + name = block['name'] + if name in vars and 'intent' in vars[name]: + block['intent'] = vars[name]['intent'] + if block['block'] == 'type': + neededvars.extend(list(vars.keys())) + for n in list(vars.keys()): + if n not in neededvars: + del vars[n] + return vars + + +analyzeargs_re_1 = re.compile(r'\A[a-z]+[\w$]*\Z', re.I) + + +def param_eval(v, g_params, params, dimspec=None): + """ + Creates a dictionary of indices and values for each parameter in a + parameter array to be evaluated later. + + WARNING: It is not possible to initialize multidimensional array + parameters e.g. dimension(-3:1, 4, 3:5) at this point. This is because in + Fortran initialization through array constructor requires the RESHAPE + intrinsic function. Since the right-hand side of the parameter declaration + is not executed in f2py, but rather at the compiled c/fortran extension, + later, it is not possible to execute a reshape of a parameter array. + One issue remains: if the user wants to access the array parameter from + python, we should either + 1) allow them to access the parameter array using python standard indexing + (which is often incompatible with the original fortran indexing) + 2) allow the parameter array to be accessed in python as a dictionary with + fortran indices as keys + We are choosing 2 for now. + """ + if dimspec is None: + try: + p = eval(v, g_params, params) + except Exception as msg: + p = v + outmess(f'param_eval: got "{msg}" on {v!r}\n') + return p + + # This is an array parameter. + # First, we parse the dimension information + if len(dimspec) < 2 or dimspec[::len(dimspec)-1] != "()": + raise ValueError(f'param_eval: dimension {dimspec} can\'t be parsed') + dimrange = dimspec[1:-1].split(',') + if len(dimrange) == 1: + # e.g. dimension(2) or dimension(-1:1) + dimrange = dimrange[0].split(':') + # now, dimrange is a list of 1 or 2 elements + if len(dimrange) == 1: + bound = param_parse(dimrange[0], params) + dimrange = range(1, int(bound)+1) + else: + lbound = param_parse(dimrange[0], params) + ubound = param_parse(dimrange[1], params) + dimrange = range(int(lbound), int(ubound)+1) + else: + raise ValueError('param_eval: multidimensional array parameters ' + f'{dimspec} not supported') + + # Parse parameter value + v = (v[2:-2] if v.startswith('(/') else v).split(',') + v_eval = [] + for item in v: + try: + item = eval(item, g_params, params) + except Exception as msg: + outmess(f'param_eval: got "{msg}" on {item!r}\n') + v_eval.append(item) + + p = dict(zip(dimrange, v_eval)) + + return p + + +def param_parse(d, params): + """Recursively parse array dimensions. + + Parses the declaration of an array variable or parameter + `dimension` keyword, and is called recursively if the + dimension for this array is a previously defined parameter + (found in `params`). + + Parameters + ---------- + d : str + Fortran expression describing the dimension of an array. + params : dict + Previously parsed parameters declared in the Fortran source file. + + Returns + ------- + out : str + Parsed dimension expression. + + Examples + -------- + + * If the line being analyzed is + + `integer, parameter, dimension(2) :: pa = (/ 3, 5 /)` + + then `d = 2` and we return immediately, with + + >>> d = '2' + >>> param_parse(d, params) + 2 + + * If the line being analyzed is + + `integer, parameter, dimension(pa) :: pb = (/1, 2, 3/)` + + then `d = 'pa'`; since `pa` is a previously parsed parameter, + and `pa = 3`, we call `param_parse` recursively, to obtain + + >>> d = 'pa' + >>> params = {'pa': 3} + >>> param_parse(d, params) + 3 + + * If the line being analyzed is + + `integer, parameter, dimension(pa(1)) :: pb = (/1, 2, 3/)` + + then `d = 'pa(1)'`; since `pa` is a previously parsed parameter, + and `pa(1) = 3`, we call `param_parse` recursively, to obtain + + >>> d = 'pa(1)' + >>> params = dict(pa={1: 3, 2: 5}) + >>> param_parse(d, params) + 3 + """ + if "(" in d: + # this dimension expression is an array + dname = d[:d.find("(")] + ddims = d[d.find("(")+1:d.rfind(")")] + # this dimension expression is also a parameter; + # parse it recursively + index = int(param_parse(ddims, params)) + return str(params[dname][index]) + elif d in params: + return str(params[d]) + else: + for p in params: + re_1 = re.compile( + r'(?P.*?)\b' + p + r'\b(?P.*)', re.I + ) + m = re_1.match(d) + while m: + d = m.group('before') + \ + str(params[p]) + m.group('after') + m = re_1.match(d) + return d + + +def expr2name(a, block, args=[]): + orig_a = a + a_is_expr = not analyzeargs_re_1.match(a) + if a_is_expr: # `a` is an expression + implicitrules, attrrules = buildimplicitrules(block) + at = determineexprtype(a, block['vars'], implicitrules) + na = 'e_' + for c in a: + c = c.lower() + if c not in string.ascii_lowercase + string.digits: + c = '_' + na = na + c + if na[-1] == '_': + na = na + 'e' + else: + na = na + '_e' + a = na + while a in block['vars'] or a in block['args']: + a = a + 'r' + if a in args: + k = 1 + while a + str(k) in args: + k = k + 1 + a = a + str(k) + if a_is_expr: + block['vars'][a] = at + else: + if a not in block['vars']: + if orig_a in block['vars']: + block['vars'][a] = block['vars'][orig_a] + else: + block['vars'][a] = {} + if 'externals' in block and orig_a in block['externals'] + block['interfaced']: + block['vars'][a] = setattrspec(block['vars'][a], 'external') + return a + + +def analyzeargs(block): + setmesstext(block) + implicitrules, _ = buildimplicitrules(block) + if 'args' not in block: + block['args'] = [] + args = [] + for a in block['args']: + a = expr2name(a, block, args) + args.append(a) + block['args'] = args + if 'entry' in block: + for k, args1 in list(block['entry'].items()): + for a in args1: + if a not in block['vars']: + block['vars'][a] = {} + + for b in block['body']: + if b['name'] in args: + if 'externals' not in block: + block['externals'] = [] + if b['name'] not in block['externals']: + block['externals'].append(b['name']) + if 'result' in block and block['result'] not in block['vars']: + block['vars'][block['result']] = {} + return block + +determineexprtype_re_1 = re.compile(r'\A\(.+?,.+?\)\Z', re.I) +determineexprtype_re_2 = re.compile(r'\A[+-]?\d+(_(?P\w+)|)\Z', re.I) +determineexprtype_re_3 = re.compile( + r'\A[+-]?[\d.]+[-\d+de.]*(_(?P\w+)|)\Z', re.I) +determineexprtype_re_4 = re.compile(r'\A\(.*\)\Z', re.I) +determineexprtype_re_5 = re.compile(r'\A(?P\w+)\s*\(.*?\)\s*\Z', re.I) + + +def _ensure_exprdict(r): + if isinstance(r, int): + return {'typespec': 'integer'} + if isinstance(r, float): + return {'typespec': 'real'} + if isinstance(r, complex): + return {'typespec': 'complex'} + if isinstance(r, dict): + return r + raise AssertionError(repr(r)) + + +def determineexprtype(expr, vars, rules={}): + if expr in vars: + return _ensure_exprdict(vars[expr]) + expr = expr.strip() + if determineexprtype_re_1.match(expr): + return {'typespec': 'complex'} + m = determineexprtype_re_2.match(expr) + if m: + if 'name' in m.groupdict() and m.group('name'): + outmess( + 'determineexprtype: selected kind types not supported (%s)\n' % repr(expr)) + return {'typespec': 'integer'} + m = determineexprtype_re_3.match(expr) + if m: + if 'name' in m.groupdict() and m.group('name'): + outmess( + 'determineexprtype: selected kind types not supported (%s)\n' % repr(expr)) + return {'typespec': 'real'} + for op in ['+', '-', '*', '/']: + for e in [x.strip() for x in markoutercomma(expr, comma=op).split('@' + op + '@')]: + if e in vars: + return _ensure_exprdict(vars[e]) + t = {} + if determineexprtype_re_4.match(expr): # in parenthesis + t = determineexprtype(expr[1:-1], vars, rules) + else: + m = determineexprtype_re_5.match(expr) + if m: + rn = m.group('name') + t = determineexprtype(m.group('name'), vars, rules) + if t and 'attrspec' in t: + del t['attrspec'] + if not t: + if rn[0] in rules: + return _ensure_exprdict(rules[rn[0]]) + if expr[0] in '\'"': + return {'typespec': 'character', 'charselector': {'*': '*'}} + if not t: + outmess( + 'determineexprtype: could not determine expressions (%s) type.\n' % (repr(expr))) + return t + +###### + + +def crack2fortrangen(block, tab='\n', as_interface=False): + global skipfuncs, onlyfuncs + + setmesstext(block) + ret = '' + if isinstance(block, list): + for g in block: + if g and g['block'] in ['function', 'subroutine']: + if g['name'] in skipfuncs: + continue + if onlyfuncs and g['name'] not in onlyfuncs: + continue + ret = ret + crack2fortrangen(g, tab, as_interface=as_interface) + return ret + prefix = '' + name = '' + args = '' + blocktype = block['block'] + if blocktype == 'program': + return '' + argsl = [] + if 'name' in block: + name = block['name'] + if 'args' in block: + vars = block['vars'] + for a in block['args']: + a = expr2name(a, block, argsl) + if not isintent_callback(vars[a]): + argsl.append(a) + if block['block'] == 'function' or argsl: + args = '(%s)' % ','.join(argsl) + f2pyenhancements = '' + if 'f2pyenhancements' in block: + for k in list(block['f2pyenhancements'].keys()): + f2pyenhancements = '%s%s%s %s' % ( + f2pyenhancements, tab + tabchar, k, block['f2pyenhancements'][k]) + intent_lst = block.get('intent', [])[:] + if blocktype == 'function' and 'callback' in intent_lst: + intent_lst.remove('callback') + if intent_lst: + f2pyenhancements = '%s%sintent(%s) %s' %\ + (f2pyenhancements, tab + tabchar, + ','.join(intent_lst), name) + use = '' + if 'use' in block: + use = use2fortran(block['use'], tab + tabchar) + common = '' + if 'common' in block: + common = common2fortran(block['common'], tab + tabchar) + if name == 'unknown_interface': + name = '' + result = '' + if 'result' in block: + result = ' result (%s)' % block['result'] + if block['result'] not in argsl: + argsl.append(block['result']) + body = crack2fortrangen(block['body'], tab + tabchar, as_interface=as_interface) + vars = vars2fortran( + block, block['vars'], argsl, tab + tabchar, as_interface=as_interface) + mess = '' + if 'from' in block and not as_interface: + mess = '! in %s' % block['from'] + if 'entry' in block: + entry_stmts = '' + for k, i in list(block['entry'].items()): + entry_stmts = '%s%sentry %s(%s)' \ + % (entry_stmts, tab + tabchar, k, ','.join(i)) + body = body + entry_stmts + if blocktype == 'block data' and name == '_BLOCK_DATA_': + name = '' + ret = '%s%s%s %s%s%s %s%s%s%s%s%s%send %s %s' % ( + tab, prefix, blocktype, name, args, result, mess, f2pyenhancements, use, vars, common, body, tab, blocktype, name) + return ret + + +def common2fortran(common, tab=''): + ret = '' + for k in list(common.keys()): + if k == '_BLNK_': + ret = '%s%scommon %s' % (ret, tab, ','.join(common[k])) + else: + ret = '%s%scommon /%s/ %s' % (ret, tab, k, ','.join(common[k])) + return ret + + +def use2fortran(use, tab=''): + ret = '' + for m in list(use.keys()): + ret = '%s%suse %s,' % (ret, tab, m) + if use[m] == {}: + if ret and ret[-1] == ',': + ret = ret[:-1] + continue + if 'only' in use[m] and use[m]['only']: + ret = '%s only:' % (ret) + if 'map' in use[m] and use[m]['map']: + c = ' ' + for k in list(use[m]['map'].keys()): + if k == use[m]['map'][k]: + ret = '%s%s%s' % (ret, c, k) + c = ',' + else: + ret = '%s%s%s=>%s' % (ret, c, k, use[m]['map'][k]) + c = ',' + if ret and ret[-1] == ',': + ret = ret[:-1] + return ret + + +def true_intent_list(var): + lst = var['intent'] + ret = [] + for intent in lst: + try: + f = globals()['isintent_%s' % intent] + except KeyError: + pass + else: + if f(var): + ret.append(intent) + return ret + + +def vars2fortran(block, vars, args, tab='', as_interface=False): + setmesstext(block) + ret = '' + nout = [] + for a in args: + if a in block['vars']: + nout.append(a) + if 'commonvars' in block: + for a in block['commonvars']: + if a in vars: + if a not in nout: + nout.append(a) + else: + errmess( + 'vars2fortran: Confused?!: "%s" is not defined in vars.\n' % a) + if 'varnames' in block: + nout.extend(block['varnames']) + if not as_interface: + for a in list(vars.keys()): + if a not in nout: + nout.append(a) + for a in nout: + if 'depend' in vars[a]: + for d in vars[a]['depend']: + if d in vars and 'depend' in vars[d] and a in vars[d]['depend']: + errmess( + 'vars2fortran: Warning: cross-dependence between variables "%s" and "%s"\n' % (a, d)) + if 'externals' in block and a in block['externals']: + if isintent_callback(vars[a]): + ret = '%s%sintent(callback) %s' % (ret, tab, a) + ret = '%s%sexternal %s' % (ret, tab, a) + if isoptional(vars[a]): + ret = '%s%soptional %s' % (ret, tab, a) + if a in vars and 'typespec' not in vars[a]: + continue + cont = 1 + for b in block['body']: + if a == b['name'] and b['block'] == 'function': + cont = 0 + break + if cont: + continue + if a not in vars: + show(vars) + outmess('vars2fortran: No definition for argument "%s".\n' % a) + continue + if a == block['name']: + if block['block'] != 'function' or block.get('result'): + # 1) skip declaring a variable that name matches with + # subroutine name + # 2) skip declaring function when its type is + # declared via `result` construction + continue + if 'typespec' not in vars[a]: + if 'attrspec' in vars[a] and 'external' in vars[a]['attrspec']: + if a in args: + ret = '%s%sexternal %s' % (ret, tab, a) + continue + show(vars[a]) + outmess('vars2fortran: No typespec for argument "%s".\n' % a) + continue + vardef = vars[a]['typespec'] + if vardef == 'type' and 'typename' in vars[a]: + vardef = '%s(%s)' % (vardef, vars[a]['typename']) + selector = {} + if 'kindselector' in vars[a]: + selector = vars[a]['kindselector'] + elif 'charselector' in vars[a]: + selector = vars[a]['charselector'] + if '*' in selector: + if selector['*'] in ['*', ':']: + vardef = '%s*(%s)' % (vardef, selector['*']) + else: + vardef = '%s*%s' % (vardef, selector['*']) + else: + if 'len' in selector: + vardef = '%s(len=%s' % (vardef, selector['len']) + if 'kind' in selector: + vardef = '%s,kind=%s)' % (vardef, selector['kind']) + else: + vardef = '%s)' % (vardef) + elif 'kind' in selector: + vardef = '%s(kind=%s)' % (vardef, selector['kind']) + c = ' ' + if 'attrspec' in vars[a]: + attr = [l for l in vars[a]['attrspec'] + if l not in ['external']] + if as_interface and 'intent(in)' in attr and 'intent(out)' in attr: + # In Fortran, intent(in, out) are conflicting while + # intent(in, out) can be specified only via + # `!f2py intent(out) ..`. + # So, for the Fortran interface, we'll drop + # intent(out) to resolve the conflict. + attr.remove('intent(out)') + if attr: + vardef = '%s, %s' % (vardef, ','.join(attr)) + c = ',' + if 'dimension' in vars[a]: + vardef = '%s%sdimension(%s)' % ( + vardef, c, ','.join(vars[a]['dimension'])) + c = ',' + if 'intent' in vars[a]: + lst = true_intent_list(vars[a]) + if lst: + vardef = '%s%sintent(%s)' % (vardef, c, ','.join(lst)) + c = ',' + if 'check' in vars[a]: + vardef = '%s%scheck(%s)' % (vardef, c, ','.join(vars[a]['check'])) + c = ',' + if 'depend' in vars[a]: + vardef = '%s%sdepend(%s)' % ( + vardef, c, ','.join(vars[a]['depend'])) + c = ',' + if '=' in vars[a]: + v = vars[a]['='] + if vars[a]['typespec'] in ['complex', 'double complex']: + try: + v = eval(v) + v = '(%s,%s)' % (v.real, v.imag) + except Exception: + pass + vardef = '%s :: %s=%s' % (vardef, a, v) + else: + vardef = '%s :: %s' % (vardef, a) + ret = '%s%s%s' % (ret, tab, vardef) + return ret +###### + + +# We expose post_processing_hooks as global variable so that +# user-libraries could register their own hooks to f2py. +post_processing_hooks = [] + + +def crackfortran(files): + global usermodules, post_processing_hooks + + outmess('Reading fortran codes...\n', 0) + readfortrancode(files, crackline) + outmess('Post-processing...\n', 0) + usermodules = [] + postlist = postcrack(grouplist[0]) + outmess('Applying post-processing hooks...\n', 0) + for hook in post_processing_hooks: + outmess(f' {hook.__name__}\n', 0) + postlist = traverse(postlist, hook) + outmess('Post-processing (stage 2)...\n', 0) + postlist = postcrack2(postlist) + return usermodules + postlist + + +def crack2fortran(block): + global f2py_version + + pyf = crack2fortrangen(block) + '\n' + header = """! -*- f90 -*- +! Note: the context of this file is case sensitive. +""" + footer = """ +! This file was auto-generated with f2py (version:%s). +! See: +! https://web.archive.org/web/20140822061353/http://cens.ioc.ee/projects/f2py2e +""" % (f2py_version) + return header + pyf + footer + + +def _is_visit_pair(obj): + return (isinstance(obj, tuple) + and len(obj) == 2 + and isinstance(obj[0], (int, str))) + + +def traverse(obj, visit, parents=[], result=None, *args, **kwargs): + '''Traverse f2py data structure with the following visit function: + + def visit(item, parents, result, *args, **kwargs): + """ + + parents is a list of key-"f2py data structure" pairs from which + items are taken from. + + result is a f2py data structure that is filled with the + return value of the visit function. + + item is 2-tuple (index, value) if parents[-1][1] is a list + item is 2-tuple (key, value) if parents[-1][1] is a dict + + The return value of visit must be None, or of the same kind as + item, that is, if parents[-1] is a list, the return value must + be 2-tuple (new_index, new_value), or if parents[-1] is a + dict, the return value must be 2-tuple (new_key, new_value). + + If new_index or new_value is None, the return value of visit + is ignored, that is, it will not be added to the result. + + If the return value is None, the content of obj will be + traversed, otherwise not. + """ + ''' + + if _is_visit_pair(obj): + if obj[0] == 'parent_block': + # avoid infinite recursion + return obj + new_result = visit(obj, parents, result, *args, **kwargs) + if new_result is not None: + assert _is_visit_pair(new_result) + return new_result + parent = obj + result_key, obj = obj + else: + parent = (None, obj) + result_key = None + + if isinstance(obj, list): + new_result = [] + for index, value in enumerate(obj): + new_index, new_item = traverse((index, value), visit, + parents=parents + [parent], + result=result, *args, **kwargs) + if new_index is not None: + new_result.append(new_item) + elif isinstance(obj, dict): + new_result = dict() + for key, value in obj.items(): + new_key, new_value = traverse((key, value), visit, + parents=parents + [parent], + result=result, *args, **kwargs) + if new_key is not None: + new_result[new_key] = new_value + else: + new_result = obj + + if result_key is None: + return new_result + return result_key, new_result + + +def character_backward_compatibility_hook(item, parents, result, + *args, **kwargs): + """Previously, Fortran character was incorrectly treated as + character*1. This hook fixes the usage of the corresponding + variables in `check`, `dimension`, `=`, and `callstatement` + expressions. + + The usage of `char*` in `callprotoargument` expression can be left + unchanged because C `character` is C typedef of `char`, although, + new implementations should use `character*` in the corresponding + expressions. + + See https://github.com/numpy/numpy/pull/19388 for more information. + + """ + parent_key, parent_value = parents[-1] + key, value = item + + def fix_usage(varname, value): + value = re.sub(r'[*]\s*\b' + varname + r'\b', varname, value) + value = re.sub(r'\b' + varname + r'\b\s*[\[]\s*0\s*[\]]', + varname, value) + return value + + if parent_key in ['dimension', 'check']: + assert parents[-3][0] == 'vars' + vars_dict = parents[-3][1] + elif key == '=': + assert parents[-2][0] == 'vars' + vars_dict = parents[-2][1] + else: + vars_dict = None + + new_value = None + if vars_dict is not None: + new_value = value + for varname, vd in vars_dict.items(): + if ischaracter(vd): + new_value = fix_usage(varname, new_value) + elif key == 'callstatement': + vars_dict = parents[-2][1]['vars'] + new_value = value + for varname, vd in vars_dict.items(): + if ischaracter(vd): + # replace all occurrences of `` with + # `&` in argument passing + new_value = re.sub( + r'(? `{new_value}`\n', 1) + return (key, new_value) + + +post_processing_hooks.append(character_backward_compatibility_hook) + + +if __name__ == "__main__": + files = [] + funcs = [] + f = 1 + f2 = 0 + f3 = 0 + showblocklist = 0 + for l in sys.argv[1:]: + if l == '': + pass + elif l[0] == ':': + f = 0 + elif l == '-quiet': + quiet = 1 + verbose = 0 + elif l == '-verbose': + verbose = 2 + quiet = 0 + elif l == '-fix': + if strictf77: + outmess( + 'Use option -f90 before -fix if Fortran 90 code is in fix form.\n', 0) + skipemptyends = 1 + sourcecodeform = 'fix' + elif l == '-skipemptyends': + skipemptyends = 1 + elif l == '--ignore-contains': + ignorecontains = 1 + elif l == '-f77': + strictf77 = 1 + sourcecodeform = 'fix' + elif l == '-f90': + strictf77 = 0 + sourcecodeform = 'free' + skipemptyends = 1 + elif l == '-h': + f2 = 1 + elif l == '-show': + showblocklist = 1 + elif l == '-m': + f3 = 1 + elif l[0] == '-': + errmess('Unknown option %s\n' % repr(l)) + elif f2: + f2 = 0 + pyffilename = l + elif f3: + f3 = 0 + f77modulename = l + elif f: + try: + open(l).close() + files.append(l) + except OSError as detail: + errmess(f'OSError: {detail!s}\n') + else: + funcs.append(l) + if not strictf77 and f77modulename and not skipemptyends: + outmess("""\ + Warning: You have specified module name for non Fortran 77 code that + should not need one (expect if you are scanning F90 code for non + module blocks but then you should use flag -skipemptyends and also + be sure that the files do not contain programs without program + statement). +""", 0) + + postlist = crackfortran(files) + if pyffilename: + outmess('Writing fortran code to file %s\n' % repr(pyffilename), 0) + pyf = crack2fortran(postlist) + with open(pyffilename, 'w') as f: + f.write(pyf) + if showblocklist: + show(postlist) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/diagnose.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/diagnose.py new file mode 100644 index 0000000000000000000000000000000000000000..523c2c679d9edf78b7d82bf77904348f0f99a3e8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/diagnose.py @@ -0,0 +1,154 @@ +#!/usr/bin/env python3 +import os +import sys +import tempfile + + +def run_command(cmd): + print('Running %r:' % (cmd)) + os.system(cmd) + print('------') + + +def run(): + _path = os.getcwd() + os.chdir(tempfile.gettempdir()) + print('------') + print('os.name=%r' % (os.name)) + print('------') + print('sys.platform=%r' % (sys.platform)) + print('------') + print('sys.version:') + print(sys.version) + print('------') + print('sys.prefix:') + print(sys.prefix) + print('------') + print('sys.path=%r' % (':'.join(sys.path))) + print('------') + + try: + import numpy + has_newnumpy = 1 + except ImportError as e: + print('Failed to import new numpy:', e) + has_newnumpy = 0 + + try: + from numpy.f2py import f2py2e + has_f2py2e = 1 + except ImportError as e: + print('Failed to import f2py2e:', e) + has_f2py2e = 0 + + try: + import numpy.distutils + has_numpy_distutils = 2 + except ImportError: + try: + import numpy_distutils + has_numpy_distutils = 1 + except ImportError as e: + print('Failed to import numpy_distutils:', e) + has_numpy_distutils = 0 + + if has_newnumpy: + try: + print('Found new numpy version %r in %s' % + (numpy.__version__, numpy.__file__)) + except Exception as msg: + print('error:', msg) + print('------') + + if has_f2py2e: + try: + print('Found f2py2e version %r in %s' % + (f2py2e.__version__.version, f2py2e.__file__)) + except Exception as msg: + print('error:', msg) + print('------') + + if has_numpy_distutils: + try: + if has_numpy_distutils == 2: + print('Found numpy.distutils version %r in %r' % ( + numpy.distutils.__version__, + numpy.distutils.__file__)) + else: + print('Found numpy_distutils version %r in %r' % ( + numpy_distutils.numpy_distutils_version.numpy_distutils_version, + numpy_distutils.__file__)) + print('------') + except Exception as msg: + print('error:', msg) + print('------') + try: + if has_numpy_distutils == 1: + print( + 'Importing numpy_distutils.command.build_flib ...', end=' ') + import numpy_distutils.command.build_flib as build_flib + print('ok') + print('------') + try: + print( + 'Checking availability of supported Fortran compilers:') + for compiler_class in build_flib.all_compilers: + compiler_class(verbose=1).is_available() + print('------') + except Exception as msg: + print('error:', msg) + print('------') + except Exception as msg: + print( + 'error:', msg, '(ignore it, build_flib is obsolete for numpy.distutils 0.2.2 and up)') + print('------') + try: + if has_numpy_distutils == 2: + print('Importing numpy.distutils.fcompiler ...', end=' ') + import numpy.distutils.fcompiler as fcompiler + else: + print('Importing numpy_distutils.fcompiler ...', end=' ') + import numpy_distutils.fcompiler as fcompiler + print('ok') + print('------') + try: + print('Checking availability of supported Fortran compilers:') + fcompiler.show_fcompilers() + print('------') + except Exception as msg: + print('error:', msg) + print('------') + except Exception as msg: + print('error:', msg) + print('------') + try: + if has_numpy_distutils == 2: + print('Importing numpy.distutils.cpuinfo ...', end=' ') + from numpy.distutils.cpuinfo import cpuinfo + print('ok') + print('------') + else: + try: + print( + 'Importing numpy_distutils.command.cpuinfo ...', end=' ') + from numpy_distutils.command.cpuinfo import cpuinfo + print('ok') + print('------') + except Exception as msg: + print('error:', msg, '(ignore it)') + print('Importing numpy_distutils.cpuinfo ...', end=' ') + from numpy_distutils.cpuinfo import cpuinfo + print('ok') + print('------') + cpu = cpuinfo() + print('CPU information:', end=' ') + for name in dir(cpuinfo): + if name[0] == '_' and name[1] != '_' and getattr(cpu, name[1:])(): + print(name[1:], end=' ') + print('------') + except Exception as msg: + print('error:', msg) + print('------') + os.chdir(_path) +if __name__ == "__main__": + run() diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f2py2e.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f2py2e.py new file mode 100644 index 0000000000000000000000000000000000000000..c0f801e06c7fc0f9d9634c695028edd333f6502b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f2py2e.py @@ -0,0 +1,783 @@ +""" + +f2py2e - Fortran to Python C/API generator. 2nd Edition. + See __usage__ below. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +import sys +import os +import pprint +import re +import argparse + +from . import crackfortran +from . import rules +from . import cb_rules +from . import auxfuncs +from . import cfuncs +from . import f90mod_rules +from . import __version__ +from . import capi_maps +from .cfuncs import errmess +from numpy.f2py._backends import f2py_build_generator + +f2py_version = __version__.version +numpy_version = __version__.version + +# outmess=sys.stdout.write +show = pprint.pprint +outmess = auxfuncs.outmess +MESON_ONLY_VER = (sys.version_info >= (3, 12)) + +__usage__ =\ +f"""Usage: + +1) To construct extension module sources: + + f2py [] [[[only:]||[skip:]] \\ + ] \\ + [: ...] + +2) To compile fortran files and build extension modules: + + f2py -c [, , ] + +3) To generate signature files: + + f2py -h ...< same options as in (1) > + +Description: This program generates a Python C/API file (module.c) + that contains wrappers for given fortran functions so that they + can be called from Python. With the -c option the corresponding + extension modules are built. + +Options: + + -h Write signatures of the fortran routines to file + and exit. You can then edit and use it instead + of . If ==stdout then the + signatures are printed to stdout. + Names of fortran routines for which Python C/API + functions will be generated. Default is all that are found + in . + Paths to fortran/signature files that will be scanned for + in order to determine their signatures. + skip: Ignore fortran functions that follow until `:'. + only: Use only fortran functions that follow until `:'. + : Get back to mode. + + -m Name of the module; f2py generates a Python/C API + file module.c or extension module . + Default is 'untitled'. + + '-include

' Writes additional headers in the C wrapper, can be passed + multiple times, generates #include
each time. + + --[no-]lower Do [not] lower the cases in . By default, + --lower is assumed with -h key, and --no-lower without -h key. + + --build-dir All f2py generated files are created in . + Default is tempfile.mkdtemp(). + + --overwrite-signature Overwrite existing signature file. + + --[no-]latex-doc Create (or not) module.tex. + Default is --no-latex-doc. + --short-latex Create 'incomplete' LaTeX document (without commands + \\documentclass, \\tableofcontents, and \\begin{{document}}, + \\end{{document}}). + + --[no-]rest-doc Create (or not) module.rst. + Default is --no-rest-doc. + + --debug-capi Create C/API code that reports the state of the wrappers + during runtime. Useful for debugging. + + --[no-]wrap-functions Create Fortran subroutine wrappers to Fortran 77 + functions. --wrap-functions is default because it ensures + maximum portability/compiler independence. + + --[no-]freethreading-compatible Create a module that declares it does or + doesn't require the GIL. The default is + --freethreading-compatible for backward + compatibility. Inspect the Fortran code you are wrapping for + thread safety issues before passing + --no-freethreading-compatible, as f2py does not analyze + fortran code for thread safety issues. + + --include-paths ::... Search include files from the given + directories. + + --help-link [..] List system resources found by system_info.py. See also + --link- switch below. [..] is optional list + of resources names. E.g. try 'f2py --help-link lapack_opt'. + + --f2cmap Load Fortran-to-Python KIND specification from the given + file. Default: .f2py_f2cmap in current directory. + + --quiet Run quietly. + --verbose Run with extra verbosity. + --skip-empty-wrappers Only generate wrapper files when needed. + -v Print f2py version ID and exit. + + +build backend options (only effective with -c) +[NO_MESON] is used to indicate an option not meant to be used +with the meson backend or above Python 3.12: + + --fcompiler= Specify Fortran compiler type by vendor [NO_MESON] + --compiler= Specify distutils C compiler type [NO_MESON] + + --help-fcompiler List available Fortran compilers and exit [NO_MESON] + --f77exec= Specify the path to F77 compiler [NO_MESON] + --f90exec= Specify the path to F90 compiler [NO_MESON] + --f77flags= Specify F77 compiler flags + --f90flags= Specify F90 compiler flags + --opt= Specify optimization flags [NO_MESON] + --arch= Specify architecture specific optimization flags [NO_MESON] + --noopt Compile without optimization [NO_MESON] + --noarch Compile without arch-dependent optimization [NO_MESON] + --debug Compile with debugging information + + --dep + Specify a meson dependency for the module. This may + be passed multiple times for multiple dependencies. + Dependencies are stored in a list for further processing. + + Example: --dep lapack --dep scalapack + This will identify "lapack" and "scalapack" as dependencies + and remove them from argv, leaving a dependencies list + containing ["lapack", "scalapack"]. + + --backend + Specify the build backend for the compilation process. + The supported backends are 'meson' and 'distutils'. + If not specified, defaults to 'distutils'. On + Python 3.12 or higher, the default is 'meson'. + +Extra options (only effective with -c): + + --link- Link extension module with as defined + by numpy.distutils/system_info.py. E.g. to link + with optimized LAPACK libraries (vecLib on MacOSX, + ATLAS elsewhere), use --link-lapack_opt. + See also --help-link switch. [NO_MESON] + + -L/path/to/lib/ -l + -D -U + -I/path/to/include/ + .o .so .a + + Using the following macros may be required with non-gcc Fortran + compilers: + -DPREPEND_FORTRAN -DNO_APPEND_FORTRAN -DUPPERCASE_FORTRAN + + When using -DF2PY_REPORT_ATEXIT, a performance report of F2PY + interface is printed out at exit (platforms: Linux). + + When using -DF2PY_REPORT_ON_ARRAY_COPY=, a message is + sent to stderr whenever F2PY interface makes a copy of an + array. Integer sets the threshold for array sizes when + a message should be shown. + +Version: {f2py_version} +numpy Version: {numpy_version} +License: NumPy license (see LICENSE.txt in the NumPy source code) +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +https://numpy.org/doc/stable/f2py/index.html\n""" + + +def scaninputline(inputline): + files, skipfuncs, onlyfuncs, debug = [], [], [], [] + f, f2, f3, f5, f6, f8, f9, f10 = 1, 0, 0, 0, 0, 0, 0, 0 + verbose = 1 + emptygen = True + dolc = -1 + dolatexdoc = 0 + dorestdoc = 0 + wrapfuncs = 1 + buildpath = '.' + include_paths, freethreading_compatible, inputline = get_newer_options(inputline) + signsfile, modulename = None, None + options = {'buildpath': buildpath, + 'coutput': None, + 'f2py_wrapper_output': None} + for l in inputline: + if l == '': + pass + elif l == 'only:': + f = 0 + elif l == 'skip:': + f = -1 + elif l == ':': + f = 1 + elif l[:8] == '--debug-': + debug.append(l[8:]) + elif l == '--lower': + dolc = 1 + elif l == '--build-dir': + f6 = 1 + elif l == '--no-lower': + dolc = 0 + elif l == '--quiet': + verbose = 0 + elif l == '--verbose': + verbose += 1 + elif l == '--latex-doc': + dolatexdoc = 1 + elif l == '--no-latex-doc': + dolatexdoc = 0 + elif l == '--rest-doc': + dorestdoc = 1 + elif l == '--no-rest-doc': + dorestdoc = 0 + elif l == '--wrap-functions': + wrapfuncs = 1 + elif l == '--no-wrap-functions': + wrapfuncs = 0 + elif l == '--short-latex': + options['shortlatex'] = 1 + elif l == '--coutput': + f8 = 1 + elif l == '--f2py-wrapper-output': + f9 = 1 + elif l == '--f2cmap': + f10 = 1 + elif l == '--overwrite-signature': + options['h-overwrite'] = 1 + elif l == '-h': + f2 = 1 + elif l == '-m': + f3 = 1 + elif l[:2] == '-v': + print(f2py_version) + sys.exit() + elif l == '--show-compilers': + f5 = 1 + elif l[:8] == '-include': + cfuncs.outneeds['userincludes'].append(l[9:-1]) + cfuncs.userincludes[l[9:-1]] = '#include ' + l[8:] + elif l == '--skip-empty-wrappers': + emptygen = False + elif l[0] == '-': + errmess('Unknown option %s\n' % repr(l)) + sys.exit() + elif f2: + f2 = 0 + signsfile = l + elif f3: + f3 = 0 + modulename = l + elif f6: + f6 = 0 + buildpath = l + elif f8: + f8 = 0 + options["coutput"] = l + elif f9: + f9 = 0 + options["f2py_wrapper_output"] = l + elif f10: + f10 = 0 + options["f2cmap_file"] = l + elif f == 1: + try: + with open(l): + pass + files.append(l) + except OSError as detail: + errmess(f'OSError: {detail!s}. Skipping file "{l!s}".\n') + elif f == -1: + skipfuncs.append(l) + elif f == 0: + onlyfuncs.append(l) + if not f5 and not files and not modulename: + print(__usage__) + sys.exit() + if not os.path.isdir(buildpath): + if not verbose: + outmess('Creating build directory %s\n' % (buildpath)) + os.mkdir(buildpath) + if signsfile: + signsfile = os.path.join(buildpath, signsfile) + if signsfile and os.path.isfile(signsfile) and 'h-overwrite' not in options: + errmess( + 'Signature file "%s" exists!!! Use --overwrite-signature to overwrite.\n' % (signsfile)) + sys.exit() + + options['emptygen'] = emptygen + options['debug'] = debug + options['verbose'] = verbose + if dolc == -1 and not signsfile: + options['do-lower'] = 0 + else: + options['do-lower'] = dolc + if modulename: + options['module'] = modulename + if signsfile: + options['signsfile'] = signsfile + if onlyfuncs: + options['onlyfuncs'] = onlyfuncs + if skipfuncs: + options['skipfuncs'] = skipfuncs + options['dolatexdoc'] = dolatexdoc + options['dorestdoc'] = dorestdoc + options['wrapfuncs'] = wrapfuncs + options['buildpath'] = buildpath + options['include_paths'] = include_paths + options['requires_gil'] = not freethreading_compatible + options.setdefault('f2cmap_file', None) + return files, options + + +def callcrackfortran(files, options): + rules.options = options + crackfortran.debug = options['debug'] + crackfortran.verbose = options['verbose'] + if 'module' in options: + crackfortran.f77modulename = options['module'] + if 'skipfuncs' in options: + crackfortran.skipfuncs = options['skipfuncs'] + if 'onlyfuncs' in options: + crackfortran.onlyfuncs = options['onlyfuncs'] + crackfortran.include_paths[:] = options['include_paths'] + crackfortran.dolowercase = options['do-lower'] + postlist = crackfortran.crackfortran(files) + if 'signsfile' in options: + outmess('Saving signatures to file "%s"\n' % (options['signsfile'])) + pyf = crackfortran.crack2fortran(postlist) + if options['signsfile'][-6:] == 'stdout': + sys.stdout.write(pyf) + else: + with open(options['signsfile'], 'w') as f: + f.write(pyf) + if options["coutput"] is None: + for mod in postlist: + mod["coutput"] = "%smodule.c" % mod["name"] + else: + for mod in postlist: + mod["coutput"] = options["coutput"] + if options["f2py_wrapper_output"] is None: + for mod in postlist: + mod["f2py_wrapper_output"] = "%s-f2pywrappers.f" % mod["name"] + else: + for mod in postlist: + mod["f2py_wrapper_output"] = options["f2py_wrapper_output"] + for mod in postlist: + if options["requires_gil"]: + mod['gil_used'] = 'Py_MOD_GIL_USED' + else: + mod['gil_used'] = 'Py_MOD_GIL_NOT_USED' + return postlist + + +def buildmodules(lst): + cfuncs.buildcfuncs() + outmess('Building modules...\n') + modules, mnames, isusedby = [], [], {} + for item in lst: + if '__user__' in item['name']: + cb_rules.buildcallbacks(item) + else: + if 'use' in item: + for u in item['use'].keys(): + if u not in isusedby: + isusedby[u] = [] + isusedby[u].append(item['name']) + modules.append(item) + mnames.append(item['name']) + ret = {} + for module, name in zip(modules, mnames): + if name in isusedby: + outmess('\tSkipping module "%s" which is used by %s.\n' % ( + name, ','.join('"%s"' % s for s in isusedby[name]))) + else: + um = [] + if 'use' in module: + for u in module['use'].keys(): + if u in isusedby and u in mnames: + um.append(modules[mnames.index(u)]) + else: + outmess( + f'\tModule "{name}" uses nonexisting "{u}" ' + 'which will be ignored.\n') + ret[name] = {} + dict_append(ret[name], rules.buildmodule(module, um)) + return ret + + +def dict_append(d_out, d_in): + for (k, v) in d_in.items(): + if k not in d_out: + d_out[k] = [] + if isinstance(v, list): + d_out[k] = d_out[k] + v + else: + d_out[k].append(v) + + +def run_main(comline_list): + """ + Equivalent to running:: + + f2py + + where ``=string.join(,' ')``, but in Python. Unless + ``-h`` is used, this function returns a dictionary containing + information on generated modules and their dependencies on source + files. + + You cannot build extension modules with this function, that is, + using ``-c`` is not allowed. Use the ``compile`` command instead. + + Examples + -------- + The command ``f2py -m scalar scalar.f`` can be executed from Python as + follows. + + .. literalinclude:: ../../source/f2py/code/results/run_main_session.dat + :language: python + + """ + crackfortran.reset_global_f2py_vars() + f2pydir = os.path.dirname(os.path.abspath(cfuncs.__file__)) + fobjhsrc = os.path.join(f2pydir, 'src', 'fortranobject.h') + fobjcsrc = os.path.join(f2pydir, 'src', 'fortranobject.c') + # gh-22819 -- begin + parser = make_f2py_compile_parser() + args, comline_list = parser.parse_known_args(comline_list) + pyf_files, _ = filter_files("", "[.]pyf([.]src|)", comline_list) + # Checks that no existing modulename is defined in a pyf file + # TODO: Remove all this when scaninputline is replaced + if args.module_name: + if "-h" in comline_list: + modname = ( + args.module_name + ) # Directly use from args when -h is present + else: + modname = validate_modulename( + pyf_files, args.module_name + ) # Validate modname when -h is not present + comline_list += ['-m', modname] # needed for the rest of scaninputline + # gh-22819 -- end + files, options = scaninputline(comline_list) + auxfuncs.options = options + capi_maps.load_f2cmap_file(options['f2cmap_file']) + postlist = callcrackfortran(files, options) + isusedby = {} + for plist in postlist: + if 'use' in plist: + for u in plist['use'].keys(): + if u not in isusedby: + isusedby[u] = [] + isusedby[u].append(plist['name']) + for plist in postlist: + if plist['block'] == 'python module' and '__user__' in plist['name']: + if plist['name'] in isusedby: + # if not quiet: + outmess( + f'Skipping Makefile build for module "{plist["name"]}" ' + 'which is used by {}\n'.format( + ','.join(f'"{s}"' for s in isusedby[plist['name']]))) + if 'signsfile' in options: + if options['verbose'] > 1: + outmess( + 'Stopping. Edit the signature file and then run f2py on the signature file: ') + outmess('%s %s\n' % + (os.path.basename(sys.argv[0]), options['signsfile'])) + return + for plist in postlist: + if plist['block'] != 'python module': + if 'python module' not in options: + errmess( + 'Tip: If your original code is Fortran source then you must use -m option.\n') + raise TypeError('All blocks must be python module blocks but got %s' % ( + repr(plist['block']))) + auxfuncs.debugoptions = options['debug'] + f90mod_rules.options = options + auxfuncs.wrapfuncs = options['wrapfuncs'] + + ret = buildmodules(postlist) + + for mn in ret.keys(): + dict_append(ret[mn], {'csrc': fobjcsrc, 'h': fobjhsrc}) + return ret + + +def filter_files(prefix, suffix, files, remove_prefix=None): + """ + Filter files by prefix and suffix. + """ + filtered, rest = [], [] + match = re.compile(prefix + r'.*' + suffix + r'\Z').match + if remove_prefix: + ind = len(prefix) + else: + ind = 0 + for file in [x.strip() for x in files]: + if match(file): + filtered.append(file[ind:]) + else: + rest.append(file) + return filtered, rest + + +def get_prefix(module): + p = os.path.dirname(os.path.dirname(module.__file__)) + return p + + +class CombineIncludePaths(argparse.Action): + def __call__(self, parser, namespace, values, option_string=None): + include_paths_set = set(getattr(namespace, 'include_paths', []) or []) + if option_string == "--include_paths": + outmess("Use --include-paths or -I instead of --include_paths which will be removed") + if option_string == "--include-paths" or option_string == "--include_paths": + include_paths_set.update(values.split(':')) + else: + include_paths_set.add(values) + namespace.include_paths = list(include_paths_set) + +def f2py_parser(): + parser = argparse.ArgumentParser(add_help=False) + parser.add_argument("-I", dest="include_paths", action=CombineIncludePaths) + parser.add_argument("--include-paths", dest="include_paths", action=CombineIncludePaths) + parser.add_argument("--include_paths", dest="include_paths", action=CombineIncludePaths) + parser.add_argument("--freethreading-compatible", dest="ftcompat", action=argparse.BooleanOptionalAction) + return parser + +def get_newer_options(iline): + iline = (' '.join(iline)).split() + parser = f2py_parser() + args, remain = parser.parse_known_args(iline) + ipaths = args.include_paths + if args.include_paths is None: + ipaths = [] + return ipaths, args.ftcompat, remain + +def make_f2py_compile_parser(): + parser = argparse.ArgumentParser(add_help=False) + parser.add_argument("--dep", action="append", dest="dependencies") + parser.add_argument("--backend", choices=['meson', 'distutils'], default='distutils') + parser.add_argument("-m", dest="module_name") + return parser + +def preparse_sysargv(): + # To keep backwards bug compatibility, newer flags are handled by argparse, + # and `sys.argv` is passed to the rest of `f2py` as is. + parser = make_f2py_compile_parser() + + args, remaining_argv = parser.parse_known_args() + sys.argv = [sys.argv[0]] + remaining_argv + + backend_key = args.backend + if MESON_ONLY_VER and backend_key == 'distutils': + outmess("Cannot use distutils backend with Python>=3.12," + " using meson backend instead.\n") + backend_key = "meson" + + return { + "dependencies": args.dependencies or [], + "backend": backend_key, + "modulename": args.module_name, + } + +def run_compile(): + """ + Do it all in one call! + """ + import tempfile + + # Collect dependency flags, preprocess sys.argv + argy = preparse_sysargv() + modulename = argy["modulename"] + if modulename is None: + modulename = 'untitled' + dependencies = argy["dependencies"] + backend_key = argy["backend"] + build_backend = f2py_build_generator(backend_key) + + i = sys.argv.index('-c') + del sys.argv[i] + + remove_build_dir = 0 + try: + i = sys.argv.index('--build-dir') + except ValueError: + i = None + if i is not None: + build_dir = sys.argv[i + 1] + del sys.argv[i + 1] + del sys.argv[i] + else: + remove_build_dir = 1 + build_dir = tempfile.mkdtemp() + + _reg1 = re.compile(r'--link-') + sysinfo_flags = [_m for _m in sys.argv[1:] if _reg1.match(_m)] + sys.argv = [_m for _m in sys.argv if _m not in sysinfo_flags] + if sysinfo_flags: + sysinfo_flags = [f[7:] for f in sysinfo_flags] + + _reg2 = re.compile( + r'--((no-|)(wrap-functions|lower|freethreading-compatible)|debug-capi|quiet|skip-empty-wrappers)|-include') + f2py_flags = [_m for _m in sys.argv[1:] if _reg2.match(_m)] + sys.argv = [_m for _m in sys.argv if _m not in f2py_flags] + f2py_flags2 = [] + fl = 0 + for a in sys.argv[1:]: + if a in ['only:', 'skip:']: + fl = 1 + elif a == ':': + fl = 0 + if fl or a == ':': + f2py_flags2.append(a) + if f2py_flags2 and f2py_flags2[-1] != ':': + f2py_flags2.append(':') + f2py_flags.extend(f2py_flags2) + sys.argv = [_m for _m in sys.argv if _m not in f2py_flags2] + _reg3 = re.compile( + r'--((f(90)?compiler(-exec|)|compiler)=|help-compiler)') + flib_flags = [_m for _m in sys.argv[1:] if _reg3.match(_m)] + sys.argv = [_m for _m in sys.argv if _m not in flib_flags] + # TODO: Once distutils is dropped completely, i.e. min_ver >= 3.12, unify into --fflags + reg_f77_f90_flags = re.compile(r'--f(77|90)flags=') + reg_distutils_flags = re.compile(r'--((f(77|90)exec|opt|arch)=|(debug|noopt|noarch|help-fcompiler))') + fc_flags = [_m for _m in sys.argv[1:] if reg_f77_f90_flags.match(_m)] + distutils_flags = [_m for _m in sys.argv[1:] if reg_distutils_flags.match(_m)] + if not (MESON_ONLY_VER or backend_key == 'meson'): + fc_flags.extend(distutils_flags) + sys.argv = [_m for _m in sys.argv if _m not in (fc_flags + distutils_flags)] + + del_list = [] + for s in flib_flags: + v = '--fcompiler=' + if s[:len(v)] == v: + if MESON_ONLY_VER or backend_key == 'meson': + outmess( + "--fcompiler cannot be used with meson," + "set compiler with the FC environment variable\n" + ) + else: + from numpy.distutils import fcompiler + fcompiler.load_all_fcompiler_classes() + allowed_keys = list(fcompiler.fcompiler_class.keys()) + nv = ov = s[len(v):].lower() + if ov not in allowed_keys: + vmap = {} # XXX + try: + nv = vmap[ov] + except KeyError: + if ov not in vmap.values(): + print('Unknown vendor: "%s"' % (s[len(v):])) + nv = ov + i = flib_flags.index(s) + flib_flags[i] = '--fcompiler=' + nv + continue + for s in del_list: + i = flib_flags.index(s) + del flib_flags[i] + assert len(flib_flags) <= 2, repr(flib_flags) + + _reg5 = re.compile(r'--(verbose)') + setup_flags = [_m for _m in sys.argv[1:] if _reg5.match(_m)] + sys.argv = [_m for _m in sys.argv if _m not in setup_flags] + + if '--quiet' in f2py_flags: + setup_flags.append('--quiet') + + # Ugly filter to remove everything but sources + sources = sys.argv[1:] + f2cmapopt = '--f2cmap' + if f2cmapopt in sys.argv: + i = sys.argv.index(f2cmapopt) + f2py_flags.extend(sys.argv[i:i + 2]) + del sys.argv[i + 1], sys.argv[i] + sources = sys.argv[1:] + + pyf_files, _sources = filter_files("", "[.]pyf([.]src|)", sources) + sources = pyf_files + _sources + modulename = validate_modulename(pyf_files, modulename) + extra_objects, sources = filter_files('', '[.](o|a|so|dylib)', sources) + library_dirs, sources = filter_files('-L', '', sources, remove_prefix=1) + libraries, sources = filter_files('-l', '', sources, remove_prefix=1) + undef_macros, sources = filter_files('-U', '', sources, remove_prefix=1) + define_macros, sources = filter_files('-D', '', sources, remove_prefix=1) + for i in range(len(define_macros)): + name_value = define_macros[i].split('=', 1) + if len(name_value) == 1: + name_value.append(None) + if len(name_value) == 2: + define_macros[i] = tuple(name_value) + else: + print('Invalid use of -D:', name_value) + + # Construct wrappers / signatures / things + if backend_key == 'meson': + if not pyf_files: + outmess('Using meson backend\nWill pass --lower to f2py\nSee https://numpy.org/doc/stable/f2py/buildtools/meson.html\n') + f2py_flags.append('--lower') + run_main(f" {' '.join(f2py_flags)} -m {modulename} {' '.join(sources)}".split()) + else: + run_main(f" {' '.join(f2py_flags)} {' '.join(pyf_files)}".split()) + + # Order matters here, includes are needed for run_main above + include_dirs, _, sources = get_newer_options(sources) + # Now use the builder + builder = build_backend( + modulename, + sources, + extra_objects, + build_dir, + include_dirs, + library_dirs, + libraries, + define_macros, + undef_macros, + f2py_flags, + sysinfo_flags, + fc_flags, + flib_flags, + setup_flags, + remove_build_dir, + {"dependencies": dependencies}, + ) + + builder.compile() + + +def validate_modulename(pyf_files, modulename='untitled'): + if len(pyf_files) > 1: + raise ValueError("Only one .pyf file per call") + if pyf_files: + pyff = pyf_files[0] + pyf_modname = auxfuncs.get_f2py_modulename(pyff) + if modulename != pyf_modname: + outmess( + f"Ignoring -m {modulename}.\n" + f"{pyff} defines {pyf_modname} to be the modulename.\n" + ) + modulename = pyf_modname + return modulename + +def main(): + if '--help-link' in sys.argv[1:]: + sys.argv.remove('--help-link') + if MESON_ONLY_VER: + outmess("Use --dep for meson builds\n") + else: + from numpy.distutils.system_info import show_all + show_all() + return + + if '-c' in sys.argv[1:]: + run_compile() + else: + run_main(sys.argv[1:]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f90mod_rules.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f90mod_rules.py new file mode 100644 index 0000000000000000000000000000000000000000..b1cd1532065744822991d7d1f4c9a29a216dede9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/f90mod_rules.py @@ -0,0 +1,270 @@ +""" +Build F90 module support for f2py2e. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +__version__ = "$Revision: 1.27 $"[10:-1] + +f2py_version = 'See `f2py -v`' + +import numpy as np + +from . import capi_maps +from . import func2subr +from .crackfortran import undo_rmbadname, undo_rmbadname1 + +# The environment provided by auxfuncs.py is needed for some calls to eval. +# As the needed functions cannot be determined by static inspection of the +# code, it is safest to use import * pending a major refactoring of f2py. +from .auxfuncs import * + +options = {} + + +def findf90modules(m): + if ismodule(m): + return [m] + if not hasbody(m): + return [] + ret = [] + for b in m['body']: + if ismodule(b): + ret.append(b) + else: + ret = ret + findf90modules(b) + return ret + +fgetdims1 = """\ + external f2pysetdata + logical ns + integer r,i + integer(%d) s(*) + ns = .FALSE. + if (allocated(d)) then + do i=1,r + if ((size(d,i).ne.s(i)).and.(s(i).ge.0)) then + ns = .TRUE. + end if + end do + if (ns) then + deallocate(d) + end if + end if + if ((.not.allocated(d)).and.(s(1).ge.1)) then""" % np.intp().itemsize + +fgetdims2 = """\ + end if + if (allocated(d)) then + do i=1,r + s(i) = size(d,i) + end do + end if + flag = 1 + call f2pysetdata(d,allocated(d))""" + +fgetdims2_sa = """\ + end if + if (allocated(d)) then + do i=1,r + s(i) = size(d,i) + end do + !s(r) must be equal to len(d(1)) + end if + flag = 2 + call f2pysetdata(d,allocated(d))""" + + +def buildhooks(pymod): + from . import rules + ret = {'f90modhooks': [], 'initf90modhooks': [], 'body': [], + 'need': ['F_FUNC', 'arrayobject.h'], + 'separatorsfor': {'includes0': '\n', 'includes': '\n'}, + 'docs': ['"Fortran 90/95 modules:\\n"'], + 'latexdoc': []} + fhooks = [''] + + def fadd(line, s=fhooks): + s[0] = '%s\n %s' % (s[0], line) + doc = [''] + + def dadd(line, s=doc): + s[0] = '%s\n%s' % (s[0], line) + + usenames = getuseblocks(pymod) + for m in findf90modules(pymod): + sargs, fargs, efargs, modobjs, notvars, onlyvars = [], [], [], [], [ + m['name']], [] + sargsp = [] + ifargs = [] + mfargs = [] + if hasbody(m): + for b in m['body']: + notvars.append(b['name']) + for n in m['vars'].keys(): + var = m['vars'][n] + + if (n not in notvars and isvariable(var)) and (not l_or(isintent_hide, isprivate)(var)): + onlyvars.append(n) + mfargs.append(n) + outmess('\t\tConstructing F90 module support for "%s"...\n' % + (m['name'])) + if len(onlyvars) == 0 and len(notvars) == 1 and m['name'] in notvars: + outmess(f"\t\t\tSkipping {m['name']} since there are no public vars/func in this module...\n") + continue + + # gh-25186 + if m['name'] in usenames and containscommon(m): + outmess(f"\t\t\tSkipping {m['name']} since it is in 'use' and contains a common block...\n") + continue + if onlyvars: + outmess('\t\t Variables: %s\n' % (' '.join(onlyvars))) + chooks = [''] + + def cadd(line, s=chooks): + s[0] = '%s\n%s' % (s[0], line) + ihooks = [''] + + def iadd(line, s=ihooks): + s[0] = '%s\n%s' % (s[0], line) + + vrd = capi_maps.modsign2map(m) + cadd('static FortranDataDef f2py_%s_def[] = {' % (m['name'])) + dadd('\\subsection{Fortran 90/95 module \\texttt{%s}}\n' % (m['name'])) + if hasnote(m): + note = m['note'] + if isinstance(note, list): + note = '\n'.join(note) + dadd(note) + if onlyvars: + dadd('\\begin{description}') + for n in onlyvars: + var = m['vars'][n] + modobjs.append(n) + ct = capi_maps.getctype(var) + at = capi_maps.c2capi_map[ct] + dm = capi_maps.getarrdims(n, var) + dms = dm['dims'].replace('*', '-1').strip() + dms = dms.replace(':', '-1').strip() + if not dms: + dms = '-1' + use_fgetdims2 = fgetdims2 + cadd('\t{"%s",%s,{{%s}},%s, %s},' % + (undo_rmbadname1(n), dm['rank'], dms, at, + capi_maps.get_elsize(var))) + dadd('\\item[]{{}\\verb@%s@{}}' % + (capi_maps.getarrdocsign(n, var))) + if hasnote(var): + note = var['note'] + if isinstance(note, list): + note = '\n'.join(note) + dadd('--- %s' % (note)) + if isallocatable(var): + fargs.append('f2py_%s_getdims_%s' % (m['name'], n)) + efargs.append(fargs[-1]) + sargs.append( + 'void (*%s)(int*,npy_intp*,void(*)(char*,npy_intp*),int*)' % (n)) + sargsp.append('void (*)(int*,npy_intp*,void(*)(char*,npy_intp*),int*)') + iadd('\tf2py_%s_def[i_f2py++].func = %s;' % (m['name'], n)) + fadd('subroutine %s(r,s,f2pysetdata,flag)' % (fargs[-1])) + fadd('use %s, only: d => %s\n' % + (m['name'], undo_rmbadname1(n))) + fadd('integer flag\n') + fhooks[0] = fhooks[0] + fgetdims1 + dms = range(1, int(dm['rank']) + 1) + fadd(' allocate(d(%s))\n' % + (','.join(['s(%s)' % i for i in dms]))) + fhooks[0] = fhooks[0] + use_fgetdims2 + fadd('end subroutine %s' % (fargs[-1])) + else: + fargs.append(n) + sargs.append('char *%s' % (n)) + sargsp.append('char*') + iadd('\tf2py_%s_def[i_f2py++].data = %s;' % (m['name'], n)) + if onlyvars: + dadd('\\end{description}') + if hasbody(m): + for b in m['body']: + if not isroutine(b): + outmess("f90mod_rules.buildhooks:" + f" skipping {b['block']} {b['name']}\n") + continue + modobjs.append('%s()' % (b['name'])) + b['modulename'] = m['name'] + api, wrap = rules.buildapi(b) + if isfunction(b): + fhooks[0] = fhooks[0] + wrap + fargs.append('f2pywrap_%s_%s' % (m['name'], b['name'])) + ifargs.append(func2subr.createfuncwrapper(b, signature=1)) + else: + if wrap: + fhooks[0] = fhooks[0] + wrap + fargs.append('f2pywrap_%s_%s' % (m['name'], b['name'])) + ifargs.append( + func2subr.createsubrwrapper(b, signature=1)) + else: + fargs.append(b['name']) + mfargs.append(fargs[-1]) + api['externroutines'] = [] + ar = applyrules(api, vrd) + ar['docs'] = [] + ar['docshort'] = [] + ret = dictappend(ret, ar) + cadd(('\t{"%s",-1,{{-1}},0,0,NULL,(void *)' + 'f2py_rout_#modulename#_%s_%s,' + 'doc_f2py_rout_#modulename#_%s_%s},') + % (b['name'], m['name'], b['name'], m['name'], b['name'])) + sargs.append('char *%s' % (b['name'])) + sargsp.append('char *') + iadd('\tf2py_%s_def[i_f2py++].data = %s;' % + (m['name'], b['name'])) + cadd('\t{NULL}\n};\n') + iadd('}') + ihooks[0] = 'static void f2py_setup_%s(%s) {\n\tint i_f2py=0;%s' % ( + m['name'], ','.join(sargs), ihooks[0]) + if '_' in m['name']: + F_FUNC = 'F_FUNC_US' + else: + F_FUNC = 'F_FUNC' + iadd('extern void %s(f2pyinit%s,F2PYINIT%s)(void (*)(%s));' + % (F_FUNC, m['name'], m['name'].upper(), ','.join(sargsp))) + iadd('static void f2py_init_%s(void) {' % (m['name'])) + iadd('\t%s(f2pyinit%s,F2PYINIT%s)(f2py_setup_%s);' + % (F_FUNC, m['name'], m['name'].upper(), m['name'])) + iadd('}\n') + ret['f90modhooks'] = ret['f90modhooks'] + chooks + ihooks + ret['initf90modhooks'] = ['\tPyDict_SetItemString(d, "%s", PyFortranObject_New(f2py_%s_def,f2py_init_%s));' % ( + m['name'], m['name'], m['name'])] + ret['initf90modhooks'] + fadd('') + fadd('subroutine f2pyinit%s(f2pysetupfunc)' % (m['name'])) + if mfargs: + for a in undo_rmbadname(mfargs): + fadd('use %s, only : %s' % (m['name'], a)) + if ifargs: + fadd(' '.join(['interface'] + ifargs)) + fadd('end interface') + fadd('external f2pysetupfunc') + if efargs: + for a in undo_rmbadname(efargs): + fadd('external %s' % (a)) + fadd('call f2pysetupfunc(%s)' % (','.join(undo_rmbadname(fargs)))) + fadd('end subroutine f2pyinit%s\n' % (m['name'])) + + dadd('\n'.join(ret['latexdoc']).replace( + r'\subsection{', r'\subsubsection{')) + + ret['latexdoc'] = [] + ret['docs'].append('"\t%s --- %s"' % (m['name'], + ','.join(undo_rmbadname(modobjs)))) + + ret['routine_defs'] = '' + ret['doc'] = [] + ret['docshort'] = [] + ret['latexdoc'] = doc[0] + if len(ret['docs']) <= 1: + ret['docs'] = '' + return ret, fhooks[0] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/func2subr.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/func2subr.py new file mode 100644 index 0000000000000000000000000000000000000000..b9aa9fc007cb8efdfdd13138671f0412d45d63a2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/func2subr.py @@ -0,0 +1,323 @@ +""" + +Rules for building C/API module with f2py2e. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +import copy + +from .auxfuncs import ( + getfortranname, isexternal, isfunction, isfunction_wrap, isintent_in, + isintent_out, islogicalfunction, ismoduleroutine, isscalar, + issubroutine, issubroutine_wrap, outmess, show +) + +from ._isocbind import isoc_kindmap + +def var2fixfortran(vars, a, fa=None, f90mode=None): + if fa is None: + fa = a + if a not in vars: + show(vars) + outmess('var2fixfortran: No definition for argument "%s".\n' % a) + return '' + if 'typespec' not in vars[a]: + show(vars[a]) + outmess('var2fixfortran: No typespec for argument "%s".\n' % a) + return '' + vardef = vars[a]['typespec'] + if vardef == 'type' and 'typename' in vars[a]: + vardef = '%s(%s)' % (vardef, vars[a]['typename']) + selector = {} + lk = '' + if 'kindselector' in vars[a]: + selector = vars[a]['kindselector'] + lk = 'kind' + elif 'charselector' in vars[a]: + selector = vars[a]['charselector'] + lk = 'len' + if '*' in selector: + if f90mode: + if selector['*'] in ['*', ':', '(*)']: + vardef = '%s(len=*)' % (vardef) + else: + vardef = '%s(%s=%s)' % (vardef, lk, selector['*']) + else: + if selector['*'] in ['*', ':']: + vardef = '%s*(%s)' % (vardef, selector['*']) + else: + vardef = '%s*%s' % (vardef, selector['*']) + else: + if 'len' in selector: + vardef = '%s(len=%s' % (vardef, selector['len']) + if 'kind' in selector: + vardef = '%s,kind=%s)' % (vardef, selector['kind']) + else: + vardef = '%s)' % (vardef) + elif 'kind' in selector: + vardef = '%s(kind=%s)' % (vardef, selector['kind']) + + vardef = '%s %s' % (vardef, fa) + if 'dimension' in vars[a]: + vardef = '%s(%s)' % (vardef, ','.join(vars[a]['dimension'])) + return vardef + +def useiso_c_binding(rout): + useisoc = False + for key, value in rout['vars'].items(): + kind_value = value.get('kindselector', {}).get('kind') + if kind_value in isoc_kindmap: + return True + return useisoc + +def createfuncwrapper(rout, signature=0): + assert isfunction(rout) + + extra_args = [] + vars = rout['vars'] + for a in rout['args']: + v = rout['vars'][a] + for i, d in enumerate(v.get('dimension', [])): + if d == ':': + dn = 'f2py_%s_d%s' % (a, i) + dv = dict(typespec='integer', intent=['hide']) + dv['='] = 'shape(%s, %s)' % (a, i) + extra_args.append(dn) + vars[dn] = dv + v['dimension'][i] = dn + rout['args'].extend(extra_args) + need_interface = bool(extra_args) + + ret = [''] + + def add(line, ret=ret): + ret[0] = '%s\n %s' % (ret[0], line) + name = rout['name'] + fortranname = getfortranname(rout) + f90mode = ismoduleroutine(rout) + newname = '%sf2pywrap' % (name) + + if newname not in vars: + vars[newname] = vars[name] + args = [newname] + rout['args'][1:] + else: + args = [newname] + rout['args'] + + l_tmpl = var2fixfortran(vars, name, '@@@NAME@@@', f90mode) + if l_tmpl[:13] == 'character*(*)': + if f90mode: + l_tmpl = 'character(len=10)' + l_tmpl[13:] + else: + l_tmpl = 'character*10' + l_tmpl[13:] + charselect = vars[name]['charselector'] + if charselect.get('*', '') == '(*)': + charselect['*'] = '10' + + l1 = l_tmpl.replace('@@@NAME@@@', newname) + rl = None + + useisoc = useiso_c_binding(rout) + sargs = ', '.join(args) + if f90mode: + # gh-23598 fix warning + # Essentially, this gets called again with modules where the name of the + # function is added to the arguments, which is not required, and removed + sargs = sargs.replace(f"{name}, ", '') + args = [arg for arg in args if arg != name] + rout['args'] = args + add('subroutine f2pywrap_%s_%s (%s)' % + (rout['modulename'], name, sargs)) + if not signature: + add('use %s, only : %s' % (rout['modulename'], fortranname)) + if useisoc: + add('use iso_c_binding') + else: + add('subroutine f2pywrap%s (%s)' % (name, sargs)) + if useisoc: + add('use iso_c_binding') + if not need_interface: + add('external %s' % (fortranname)) + rl = l_tmpl.replace('@@@NAME@@@', '') + ' ' + fortranname + + if need_interface: + for line in rout['saved_interface'].split('\n'): + if line.lstrip().startswith('use ') and '__user__' not in line: + add(line) + + args = args[1:] + dumped_args = [] + for a in args: + if isexternal(vars[a]): + add('external %s' % (a)) + dumped_args.append(a) + for a in args: + if a in dumped_args: + continue + if isscalar(vars[a]): + add(var2fixfortran(vars, a, f90mode=f90mode)) + dumped_args.append(a) + for a in args: + if a in dumped_args: + continue + if isintent_in(vars[a]): + add(var2fixfortran(vars, a, f90mode=f90mode)) + dumped_args.append(a) + for a in args: + if a in dumped_args: + continue + add(var2fixfortran(vars, a, f90mode=f90mode)) + + add(l1) + if rl is not None: + add(rl) + + if need_interface: + if f90mode: + # f90 module already defines needed interface + pass + else: + add('interface') + add(rout['saved_interface'].lstrip()) + add('end interface') + + sargs = ', '.join([a for a in args if a not in extra_args]) + + if not signature: + if islogicalfunction(rout): + add('%s = .not.(.not.%s(%s))' % (newname, fortranname, sargs)) + else: + add('%s = %s(%s)' % (newname, fortranname, sargs)) + if f90mode: + add('end subroutine f2pywrap_%s_%s' % (rout['modulename'], name)) + else: + add('end') + return ret[0] + + +def createsubrwrapper(rout, signature=0): + assert issubroutine(rout) + + extra_args = [] + vars = rout['vars'] + for a in rout['args']: + v = rout['vars'][a] + for i, d in enumerate(v.get('dimension', [])): + if d == ':': + dn = 'f2py_%s_d%s' % (a, i) + dv = dict(typespec='integer', intent=['hide']) + dv['='] = 'shape(%s, %s)' % (a, i) + extra_args.append(dn) + vars[dn] = dv + v['dimension'][i] = dn + rout['args'].extend(extra_args) + need_interface = bool(extra_args) + + ret = [''] + + def add(line, ret=ret): + ret[0] = '%s\n %s' % (ret[0], line) + name = rout['name'] + fortranname = getfortranname(rout) + f90mode = ismoduleroutine(rout) + + args = rout['args'] + + useisoc = useiso_c_binding(rout) + sargs = ', '.join(args) + if f90mode: + add('subroutine f2pywrap_%s_%s (%s)' % + (rout['modulename'], name, sargs)) + if useisoc: + add('use iso_c_binding') + if not signature: + add('use %s, only : %s' % (rout['modulename'], fortranname)) + else: + add('subroutine f2pywrap%s (%s)' % (name, sargs)) + if useisoc: + add('use iso_c_binding') + if not need_interface: + add('external %s' % (fortranname)) + + if need_interface: + for line in rout['saved_interface'].split('\n'): + if line.lstrip().startswith('use ') and '__user__' not in line: + add(line) + + dumped_args = [] + for a in args: + if isexternal(vars[a]): + add('external %s' % (a)) + dumped_args.append(a) + for a in args: + if a in dumped_args: + continue + if isscalar(vars[a]): + add(var2fixfortran(vars, a, f90mode=f90mode)) + dumped_args.append(a) + for a in args: + if a in dumped_args: + continue + add(var2fixfortran(vars, a, f90mode=f90mode)) + + if need_interface: + if f90mode: + # f90 module already defines needed interface + pass + else: + add('interface') + for line in rout['saved_interface'].split('\n'): + if line.lstrip().startswith('use ') and '__user__' in line: + continue + add(line) + add('end interface') + + sargs = ', '.join([a for a in args if a not in extra_args]) + + if not signature: + add('call %s(%s)' % (fortranname, sargs)) + if f90mode: + add('end subroutine f2pywrap_%s_%s' % (rout['modulename'], name)) + else: + add('end') + return ret[0] + + +def assubr(rout): + if isfunction_wrap(rout): + fortranname = getfortranname(rout) + name = rout['name'] + outmess('\t\tCreating wrapper for Fortran function "%s"("%s")...\n' % ( + name, fortranname)) + rout = copy.copy(rout) + fname = name + rname = fname + if 'result' in rout: + rname = rout['result'] + rout['vars'][fname] = rout['vars'][rname] + fvar = rout['vars'][fname] + if not isintent_out(fvar): + if 'intent' not in fvar: + fvar['intent'] = [] + fvar['intent'].append('out') + flag = 1 + for i in fvar['intent']: + if i.startswith('out='): + flag = 0 + break + if flag: + fvar['intent'].append('out=%s' % (rname)) + rout['args'][:] = [fname] + rout['args'] + return rout, createfuncwrapper(rout) + if issubroutine_wrap(rout): + fortranname = getfortranname(rout) + name = rout['name'] + outmess('\t\tCreating wrapper for Fortran subroutine "%s"("%s")...\n' + % (name, fortranname)) + rout = copy.copy(rout) + return rout, createsubrwrapper(rout) + return rout, '' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/rules.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/rules.py new file mode 100644 index 0000000000000000000000000000000000000000..84137811a4462b03e8e4e72d09564fbbc4086ecb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/rules.py @@ -0,0 +1,1578 @@ +""" + +Rules for building C/API module with f2py2e. + +Here is a skeleton of a new wrapper function (13Dec2001): + +wrapper_function(args) + declarations + get_python_arguments, say, `a' and `b' + + get_a_from_python + if (successful) { + + get_b_from_python + if (successful) { + + callfortran + if (successful) { + + put_a_to_python + if (successful) { + + put_b_to_python + if (successful) { + + buildvalue = ... + + } + + } + + } + + } + cleanup_b + + } + cleanup_a + + return buildvalue + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +import os +import sys +import time +import copy +from pathlib import Path + +# __version__.version is now the same as the NumPy version +from . import __version__ + +from .auxfuncs import ( + applyrules, debugcapi, dictappend, errmess, gentitle, getargs2, + hascallstatement, hasexternals, hasinitvalue, hasnote, + hasresultnote, isarray, isarrayofstrings, ischaracter, + ischaracterarray, ischaracter_or_characterarray, iscomplex, + iscomplexarray, iscomplexfunction, iscomplexfunction_warn, + isdummyroutine, isexternal, isfunction, isfunction_wrap, isint1, + isint1array, isintent_aux, isintent_c, isintent_callback, + isintent_copy, isintent_hide, isintent_inout, isintent_nothide, + isintent_out, isintent_overwrite, islogical, islong_complex, + islong_double, islong_doublefunction, islong_long, + islong_longfunction, ismoduleroutine, isoptional, isrequired, + isscalar, issigned_long_longarray, isstring, isstringarray, + isstringfunction, issubroutine, isattr_value, + issubroutine_wrap, isthreadsafe, isunsigned, isunsigned_char, + isunsigned_chararray, isunsigned_long_long, + isunsigned_long_longarray, isunsigned_short, isunsigned_shortarray, + l_and, l_not, l_or, outmess, replace, stripcomma, requiresf90wrapper +) + +from . import capi_maps +from . import cfuncs +from . import common_rules +from . import use_rules +from . import f90mod_rules +from . import func2subr + +f2py_version = __version__.version +numpy_version = __version__.version + +options = {} +sepdict = {} +# for k in ['need_cfuncs']: sepdict[k]=',' +for k in ['decl', + 'frompyobj', + 'cleanupfrompyobj', + 'topyarr', 'method', + 'pyobjfrom', 'closepyobjfrom', + 'freemem', + 'userincludes', + 'includes0', 'includes', 'typedefs', 'typedefs_generated', + 'cppmacros', 'cfuncs', 'callbacks', + 'latexdoc', + 'restdoc', + 'routine_defs', 'externroutines', + 'initf2pywraphooks', + 'commonhooks', 'initcommonhooks', + 'f90modhooks', 'initf90modhooks']: + sepdict[k] = '\n' + +#################### Rules for C/API module ################# + +generationtime = int(os.environ.get('SOURCE_DATE_EPOCH', time.time())) +module_rules = { + 'modulebody': """\ +/* File: #modulename#module.c + * This file is auto-generated with f2py (version:#f2py_version#). + * f2py is a Fortran to Python Interface Generator (FPIG), Second Edition, + * written by Pearu Peterson . + * Generation date: """ + time.asctime(time.gmtime(generationtime)) + """ + * Do not edit this file directly unless you know what you are doing!!! + */ + +#ifdef __cplusplus +extern \"C\" { +#endif + +#ifndef PY_SSIZE_T_CLEAN +#define PY_SSIZE_T_CLEAN +#endif /* PY_SSIZE_T_CLEAN */ + +/* Unconditionally included */ +#include +#include + +""" + gentitle("See f2py2e/cfuncs.py: includes") + """ +#includes# +#includes0# + +""" + gentitle("See f2py2e/rules.py: mod_rules['modulebody']") + """ +static PyObject *#modulename#_error; +static PyObject *#modulename#_module; + +""" + gentitle("See f2py2e/cfuncs.py: typedefs") + """ +#typedefs# + +""" + gentitle("See f2py2e/cfuncs.py: typedefs_generated") + """ +#typedefs_generated# + +""" + gentitle("See f2py2e/cfuncs.py: cppmacros") + """ +#cppmacros# + +""" + gentitle("See f2py2e/cfuncs.py: cfuncs") + """ +#cfuncs# + +""" + gentitle("See f2py2e/cfuncs.py: userincludes") + """ +#userincludes# + +""" + gentitle("See f2py2e/capi_rules.py: usercode") + """ +#usercode# + +/* See f2py2e/rules.py */ +#externroutines# + +""" + gentitle("See f2py2e/capi_rules.py: usercode1") + """ +#usercode1# + +""" + gentitle("See f2py2e/cb_rules.py: buildcallback") + """ +#callbacks# + +""" + gentitle("See f2py2e/rules.py: buildapi") + """ +#body# + +""" + gentitle("See f2py2e/f90mod_rules.py: buildhooks") + """ +#f90modhooks# + +""" + gentitle("See f2py2e/rules.py: module_rules['modulebody']") + """ + +""" + gentitle("See f2py2e/common_rules.py: buildhooks") + """ +#commonhooks# + +""" + gentitle("See f2py2e/rules.py") + """ + +static FortranDataDef f2py_routine_defs[] = { +#routine_defs# + {NULL} +}; + +static PyMethodDef f2py_module_methods[] = { +#pymethoddef# + {NULL,NULL} +}; + +static struct PyModuleDef moduledef = { + PyModuleDef_HEAD_INIT, + "#modulename#", + NULL, + -1, + f2py_module_methods, + NULL, + NULL, + NULL, + NULL +}; + +PyMODINIT_FUNC PyInit_#modulename#(void) { + int i; + PyObject *m,*d, *s, *tmp; + m = #modulename#_module = PyModule_Create(&moduledef); + Py_SET_TYPE(&PyFortran_Type, &PyType_Type); + import_array(); + if (PyErr_Occurred()) + {PyErr_SetString(PyExc_ImportError, \"can't initialize module #modulename# (failed to import numpy)\"); return m;} + d = PyModule_GetDict(m); + s = PyUnicode_FromString(\"#f2py_version#\"); + PyDict_SetItemString(d, \"__version__\", s); + Py_DECREF(s); + s = PyUnicode_FromString( + \"This module '#modulename#' is auto-generated with f2py (version:#f2py_version#).\\nFunctions:\\n\"\n#docs#\".\"); + PyDict_SetItemString(d, \"__doc__\", s); + Py_DECREF(s); + s = PyUnicode_FromString(\"""" + numpy_version + """\"); + PyDict_SetItemString(d, \"__f2py_numpy_version__\", s); + Py_DECREF(s); + #modulename#_error = PyErr_NewException (\"#modulename#.error\", NULL, NULL); + /* + * Store the error object inside the dict, so that it could get deallocated. + * (in practice, this is a module, so it likely will not and cannot.) + */ + PyDict_SetItemString(d, \"_#modulename#_error\", #modulename#_error); + Py_DECREF(#modulename#_error); + for(i=0;f2py_routine_defs[i].name!=NULL;i++) { + tmp = PyFortranObject_NewAsAttr(&f2py_routine_defs[i]); + PyDict_SetItemString(d, f2py_routine_defs[i].name, tmp); + Py_DECREF(tmp); + } +#initf2pywraphooks# +#initf90modhooks# +#initcommonhooks# +#interface_usercode# + +#if Py_GIL_DISABLED + // signal whether this module supports running with the GIL disabled + PyUnstable_Module_SetGIL(m , #gil_used#); +#endif + +#ifdef F2PY_REPORT_ATEXIT + if (! PyErr_Occurred()) + on_exit(f2py_report_on_exit,(void*)\"#modulename#\"); +#endif + + if (PyType_Ready(&PyFortran_Type) < 0) { + return NULL; + } + + return m; +} +#ifdef __cplusplus +} +#endif +""", + 'separatorsfor': {'latexdoc': '\n\n', + 'restdoc': '\n\n'}, + 'latexdoc': ['\\section{Module \\texttt{#texmodulename#}}\n', + '#modnote#\n', + '#latexdoc#'], + 'restdoc': ['Module #modulename#\n' + '=' * 80, + '\n#restdoc#'] +} + +defmod_rules = [ + {'body': '/*eof body*/', + 'method': '/*eof method*/', + 'externroutines': '/*eof externroutines*/', + 'routine_defs': '/*eof routine_defs*/', + 'initf90modhooks': '/*eof initf90modhooks*/', + 'initf2pywraphooks': '/*eof initf2pywraphooks*/', + 'initcommonhooks': '/*eof initcommonhooks*/', + 'latexdoc': '', + 'restdoc': '', + 'modnote': {hasnote: '#note#', l_not(hasnote): ''}, + } +] + +routine_rules = { + 'separatorsfor': sepdict, + 'body': """ +#begintitle# +static char doc_#apiname#[] = \"\\\n#docreturn##name#(#docsignatureshort#)\\n\\nWrapper for ``#name#``.\\\n\\n#docstrsigns#\"; +/* #declfortranroutine# */ +static PyObject *#apiname#(const PyObject *capi_self, + PyObject *capi_args, + PyObject *capi_keywds, + #functype# (*f2py_func)(#callprotoargument#)) { + PyObject * volatile capi_buildvalue = NULL; + volatile int f2py_success = 1; +#decl# + static char *capi_kwlist[] = {#kwlist##kwlistopt##kwlistxa#NULL}; +#usercode# +#routdebugenter# +#ifdef F2PY_REPORT_ATEXIT +f2py_start_clock(); +#endif + if (!PyArg_ParseTupleAndKeywords(capi_args,capi_keywds,\\ + \"#argformat#|#keyformat##xaformat#:#pyname#\",\\ + capi_kwlist#args_capi##keys_capi##keys_xa#))\n return NULL; +#frompyobj# +/*end of frompyobj*/ +#ifdef F2PY_REPORT_ATEXIT +f2py_start_call_clock(); +#endif +#callfortranroutine# +if (PyErr_Occurred()) + f2py_success = 0; +#ifdef F2PY_REPORT_ATEXIT +f2py_stop_call_clock(); +#endif +/*end of callfortranroutine*/ + if (f2py_success) { +#pyobjfrom# +/*end of pyobjfrom*/ + CFUNCSMESS(\"Building return value.\\n\"); + capi_buildvalue = Py_BuildValue(\"#returnformat#\"#return#); +/*closepyobjfrom*/ +#closepyobjfrom# + } /*if (f2py_success) after callfortranroutine*/ +/*cleanupfrompyobj*/ +#cleanupfrompyobj# + if (capi_buildvalue == NULL) { +#routdebugfailure# + } else { +#routdebugleave# + } + CFUNCSMESS(\"Freeing memory.\\n\"); +#freemem# +#ifdef F2PY_REPORT_ATEXIT +f2py_stop_clock(); +#endif + return capi_buildvalue; +} +#endtitle# +""", + 'routine_defs': '#routine_def#', + 'initf2pywraphooks': '#initf2pywraphook#', + 'externroutines': '#declfortranroutine#', + 'doc': '#docreturn##name#(#docsignature#)', + 'docshort': '#docreturn##name#(#docsignatureshort#)', + 'docs': '" #docreturn##name#(#docsignature#)\\n"\n', + 'need': ['arrayobject.h', 'CFUNCSMESS', 'MINMAX'], + 'cppmacros': {debugcapi: '#define DEBUGCFUNCS'}, + 'latexdoc': ['\\subsection{Wrapper function \\texttt{#texname#}}\n', + """ +\\noindent{{}\\verb@#docreturn##name#@{}}\\texttt{(#latexdocsignatureshort#)} +#routnote# + +#latexdocstrsigns# +"""], + 'restdoc': ['Wrapped function ``#name#``\n' + '-' * 80, + + ] +} + +################## Rules for C/API function ############## + +rout_rules = [ + { # Init + 'separatorsfor': {'callfortranroutine': '\n', 'routdebugenter': '\n', 'decl': '\n', + 'routdebugleave': '\n', 'routdebugfailure': '\n', + 'setjmpbuf': ' || ', + 'docstrreq': '\n', 'docstropt': '\n', 'docstrout': '\n', + 'docstrcbs': '\n', 'docstrsigns': '\\n"\n"', + 'latexdocstrsigns': '\n', + 'latexdocstrreq': '\n', 'latexdocstropt': '\n', + 'latexdocstrout': '\n', 'latexdocstrcbs': '\n', + }, + 'kwlist': '', 'kwlistopt': '', 'callfortran': '', 'callfortranappend': '', + 'docsign': '', 'docsignopt': '', 'decl': '/*decl*/', + 'freemem': '/*freemem*/', + 'docsignshort': '', 'docsignoptshort': '', + 'docstrsigns': '', 'latexdocstrsigns': '', + 'docstrreq': '\\nParameters\\n----------', + 'docstropt': '\\nOther Parameters\\n----------------', + 'docstrout': '\\nReturns\\n-------', + 'docstrcbs': '\\nNotes\\n-----\\nCall-back functions::\\n', + 'latexdocstrreq': '\\noindent Required arguments:', + 'latexdocstropt': '\\noindent Optional arguments:', + 'latexdocstrout': '\\noindent Return objects:', + 'latexdocstrcbs': '\\noindent Call-back functions:', + 'args_capi': '', 'keys_capi': '', 'functype': '', + 'frompyobj': '/*frompyobj*/', + # this list will be reversed + 'cleanupfrompyobj': ['/*end of cleanupfrompyobj*/'], + 'pyobjfrom': '/*pyobjfrom*/', + # this list will be reversed + 'closepyobjfrom': ['/*end of closepyobjfrom*/'], + 'topyarr': '/*topyarr*/', 'routdebugleave': '/*routdebugleave*/', + 'routdebugenter': '/*routdebugenter*/', + 'routdebugfailure': '/*routdebugfailure*/', + 'callfortranroutine': '/*callfortranroutine*/', + 'argformat': '', 'keyformat': '', 'need_cfuncs': '', + 'docreturn': '', 'return': '', 'returnformat': '', 'rformat': '', + 'kwlistxa': '', 'keys_xa': '', 'xaformat': '', 'docsignxa': '', 'docsignxashort': '', + 'initf2pywraphook': '', + 'routnote': {hasnote: '--- #note#', l_not(hasnote): ''}, + }, { + 'apiname': 'f2py_rout_#modulename#_#name#', + 'pyname': '#modulename#.#name#', + 'decl': '', + '_check': l_not(ismoduleroutine) + }, { + 'apiname': 'f2py_rout_#modulename#_#f90modulename#_#name#', + 'pyname': '#modulename#.#f90modulename#.#name#', + 'decl': '', + '_check': ismoduleroutine + }, { # Subroutine + 'functype': 'void', + 'declfortranroutine': {l_and(l_not(l_or(ismoduleroutine, isintent_c)), l_not(isdummyroutine)): 'extern void #F_FUNC#(#fortranname#,#FORTRANNAME#)(#callprotoargument#);', + l_and(l_not(ismoduleroutine), isintent_c, l_not(isdummyroutine)): 'extern void #fortranname#(#callprotoargument#);', + ismoduleroutine: '', + isdummyroutine: '' + }, + 'routine_def': { + l_not(l_or(ismoduleroutine, isintent_c, isdummyroutine)): + ' {\"#name#\",-1,{{-1}},0,0,(char *)' + ' #F_FUNC#(#fortranname#,#FORTRANNAME#),' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + l_and(l_not(ismoduleroutine), isintent_c, l_not(isdummyroutine)): + ' {\"#name#\",-1,{{-1}},0,0,(char *)#fortranname#,' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + l_and(l_not(ismoduleroutine), isdummyroutine): + ' {\"#name#\",-1,{{-1}},0,0,NULL,' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + }, + 'need': {l_and(l_not(l_or(ismoduleroutine, isintent_c)), l_not(isdummyroutine)): 'F_FUNC'}, + 'callfortranroutine': [ + {debugcapi: [ + """ fprintf(stderr,\"debug-capi:Fortran subroutine `#fortranname#(#callfortran#)\'\\n\");"""]}, + {hasexternals: """\ + if (#setjmpbuf#) { + f2py_success = 0; + } else {"""}, + {isthreadsafe: ' Py_BEGIN_ALLOW_THREADS'}, + {hascallstatement: ''' #callstatement#; + /*(*f2py_func)(#callfortran#);*/'''}, + {l_not(l_or(hascallstatement, isdummyroutine)) + : ' (*f2py_func)(#callfortran#);'}, + {isthreadsafe: ' Py_END_ALLOW_THREADS'}, + {hasexternals: """ }"""} + ], + '_check': l_and(issubroutine, l_not(issubroutine_wrap)), + }, { # Wrapped function + 'functype': 'void', + 'declfortranroutine': {l_not(l_or(ismoduleroutine, isdummyroutine)): 'extern void #F_WRAPPEDFUNC#(#name_lower#,#NAME#)(#callprotoargument#);', + isdummyroutine: '', + }, + + 'routine_def': { + l_not(l_or(ismoduleroutine, isdummyroutine)): + ' {\"#name#\",-1,{{-1}},0,0,(char *)' + ' #F_WRAPPEDFUNC#(#name_lower#,#NAME#),' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + isdummyroutine: + ' {\"#name#\",-1,{{-1}},0,0,NULL,' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + }, + 'initf2pywraphook': {l_not(l_or(ismoduleroutine, isdummyroutine)): ''' + { + extern #ctype# #F_FUNC#(#name_lower#,#NAME#)(void); + PyObject* o = PyDict_GetItemString(d,"#name#"); + tmp = F2PyCapsule_FromVoidPtr((void*)#F_WRAPPEDFUNC#(#name_lower#,#NAME#),NULL); + PyObject_SetAttrString(o,"_cpointer", tmp); + Py_DECREF(tmp); + s = PyUnicode_FromString("#name#"); + PyObject_SetAttrString(o,"__name__", s); + Py_DECREF(s); + } + '''}, + 'need': {l_not(l_or(ismoduleroutine, isdummyroutine)): ['F_WRAPPEDFUNC', 'F_FUNC']}, + 'callfortranroutine': [ + {debugcapi: [ + """ fprintf(stderr,\"debug-capi:Fortran subroutine `f2pywrap#name_lower#(#callfortran#)\'\\n\");"""]}, + {hasexternals: """\ + if (#setjmpbuf#) { + f2py_success = 0; + } else {"""}, + {isthreadsafe: ' Py_BEGIN_ALLOW_THREADS'}, + {l_not(l_or(hascallstatement, isdummyroutine)) + : ' (*f2py_func)(#callfortran#);'}, + {hascallstatement: + ' #callstatement#;\n /*(*f2py_func)(#callfortran#);*/'}, + {isthreadsafe: ' Py_END_ALLOW_THREADS'}, + {hasexternals: ' }'} + ], + '_check': isfunction_wrap, + }, { # Wrapped subroutine + 'functype': 'void', + 'declfortranroutine': {l_not(l_or(ismoduleroutine, isdummyroutine)): 'extern void #F_WRAPPEDFUNC#(#name_lower#,#NAME#)(#callprotoargument#);', + isdummyroutine: '', + }, + + 'routine_def': { + l_not(l_or(ismoduleroutine, isdummyroutine)): + ' {\"#name#\",-1,{{-1}},0,0,(char *)' + ' #F_WRAPPEDFUNC#(#name_lower#,#NAME#),' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + isdummyroutine: + ' {\"#name#\",-1,{{-1}},0,0,NULL,' + ' (f2py_init_func)#apiname#,doc_#apiname#},', + }, + 'initf2pywraphook': {l_not(l_or(ismoduleroutine, isdummyroutine)): ''' + { + extern void #F_FUNC#(#name_lower#,#NAME#)(void); + PyObject* o = PyDict_GetItemString(d,"#name#"); + tmp = F2PyCapsule_FromVoidPtr((void*)#F_FUNC#(#name_lower#,#NAME#),NULL); + PyObject_SetAttrString(o,"_cpointer", tmp); + Py_DECREF(tmp); + s = PyUnicode_FromString("#name#"); + PyObject_SetAttrString(o,"__name__", s); + Py_DECREF(s); + } + '''}, + 'need': {l_not(l_or(ismoduleroutine, isdummyroutine)): ['F_WRAPPEDFUNC', 'F_FUNC']}, + 'callfortranroutine': [ + {debugcapi: [ + """ fprintf(stderr,\"debug-capi:Fortran subroutine `f2pywrap#name_lower#(#callfortran#)\'\\n\");"""]}, + {hasexternals: """\ + if (#setjmpbuf#) { + f2py_success = 0; + } else {"""}, + {isthreadsafe: ' Py_BEGIN_ALLOW_THREADS'}, + {l_not(l_or(hascallstatement, isdummyroutine)) + : ' (*f2py_func)(#callfortran#);'}, + {hascallstatement: + ' #callstatement#;\n /*(*f2py_func)(#callfortran#);*/'}, + {isthreadsafe: ' Py_END_ALLOW_THREADS'}, + {hasexternals: ' }'} + ], + '_check': issubroutine_wrap, + }, { # Function + 'functype': '#ctype#', + 'docreturn': {l_not(isintent_hide): '#rname#,'}, + 'docstrout': '#pydocsignout#', + 'latexdocstrout': ['\\item[]{{}\\verb@#pydocsignout#@{}}', + {hasresultnote: '--- #resultnote#'}], + 'callfortranroutine': [{l_and(debugcapi, isstringfunction): """\ +#ifdef USESCOMPAQFORTRAN + fprintf(stderr,\"debug-capi:Fortran function #ctype# #fortranname#(#callcompaqfortran#)\\n\"); +#else + fprintf(stderr,\"debug-capi:Fortran function #ctype# #fortranname#(#callfortran#)\\n\"); +#endif +"""}, + {l_and(debugcapi, l_not(isstringfunction)): """\ + fprintf(stderr,\"debug-capi:Fortran function #ctype# #fortranname#(#callfortran#)\\n\"); +"""} + ], + '_check': l_and(isfunction, l_not(isfunction_wrap)) + }, { # Scalar function + 'declfortranroutine': {l_and(l_not(l_or(ismoduleroutine, isintent_c)), l_not(isdummyroutine)): 'extern #ctype# #F_FUNC#(#fortranname#,#FORTRANNAME#)(#callprotoargument#);', + l_and(l_not(ismoduleroutine), isintent_c, l_not(isdummyroutine)): 'extern #ctype# #fortranname#(#callprotoargument#);', + isdummyroutine: '' + }, + 'routine_def': { + l_and(l_not(l_or(ismoduleroutine, isintent_c)), + l_not(isdummyroutine)): + (' {\"#name#\",-1,{{-1}},0,0,(char *)' + ' #F_FUNC#(#fortranname#,#FORTRANNAME#),' + ' (f2py_init_func)#apiname#,doc_#apiname#},'), + l_and(l_not(ismoduleroutine), isintent_c, l_not(isdummyroutine)): + (' {\"#name#\",-1,{{-1}},0,0,(char *)#fortranname#,' + ' (f2py_init_func)#apiname#,doc_#apiname#},'), + isdummyroutine: + ' {\"#name#\",-1,{{-1}},0,0,NULL,' + '(f2py_init_func)#apiname#,doc_#apiname#},', + }, + 'decl': [{iscomplexfunction_warn: ' #ctype# #name#_return_value={0,0};', + l_not(iscomplexfunction): ' #ctype# #name#_return_value=0;'}, + {iscomplexfunction: + ' PyObject *#name#_return_value_capi = Py_None;'} + ], + 'callfortranroutine': [ + {hasexternals: """\ + if (#setjmpbuf#) { + f2py_success = 0; + } else {"""}, + {isthreadsafe: ' Py_BEGIN_ALLOW_THREADS'}, + {hascallstatement: ''' #callstatement#; +/* #name#_return_value = (*f2py_func)(#callfortran#);*/ +'''}, + {l_not(l_or(hascallstatement, isdummyroutine)) + : ' #name#_return_value = (*f2py_func)(#callfortran#);'}, + {isthreadsafe: ' Py_END_ALLOW_THREADS'}, + {hasexternals: ' }'}, + {l_and(debugcapi, iscomplexfunction) + : ' fprintf(stderr,"#routdebugshowvalue#\\n",#name#_return_value.r,#name#_return_value.i);'}, + {l_and(debugcapi, l_not(iscomplexfunction)): ' fprintf(stderr,"#routdebugshowvalue#\\n",#name#_return_value);'}], + 'pyobjfrom': {iscomplexfunction: ' #name#_return_value_capi = pyobj_from_#ctype#1(#name#_return_value);'}, + 'need': [{l_not(isdummyroutine): 'F_FUNC'}, + {iscomplexfunction: 'pyobj_from_#ctype#1'}, + {islong_longfunction: 'long_long'}, + {islong_doublefunction: 'long_double'}], + 'returnformat': {l_not(isintent_hide): '#rformat#'}, + 'return': {iscomplexfunction: ',#name#_return_value_capi', + l_not(l_or(iscomplexfunction, isintent_hide)): ',#name#_return_value'}, + '_check': l_and(isfunction, l_not(isstringfunction), l_not(isfunction_wrap)) + }, { # String function # in use for --no-wrap + 'declfortranroutine': 'extern void #F_FUNC#(#fortranname#,#FORTRANNAME#)(#callprotoargument#);', + 'routine_def': {l_not(l_or(ismoduleroutine, isintent_c)): + ' {\"#name#\",-1,{{-1}},0,0,(char *)#F_FUNC#(#fortranname#,#FORTRANNAME#),(f2py_init_func)#apiname#,doc_#apiname#},', + l_and(l_not(ismoduleroutine), isintent_c): + ' {\"#name#\",-1,{{-1}},0,0,(char *)#fortranname#,(f2py_init_func)#apiname#,doc_#apiname#},' + }, + 'decl': [' #ctype# #name#_return_value = NULL;', + ' int #name#_return_value_len = 0;'], + 'callfortran':'#name#_return_value,#name#_return_value_len,', + 'callfortranroutine':[' #name#_return_value_len = #rlength#;', + ' if ((#name#_return_value = (string)malloc(' + + '#name#_return_value_len+1) == NULL) {', + ' PyErr_SetString(PyExc_MemoryError, \"out of memory\");', + ' f2py_success = 0;', + ' } else {', + " (#name#_return_value)[#name#_return_value_len] = '\\0';", + ' }', + ' if (f2py_success) {', + {hasexternals: """\ + if (#setjmpbuf#) { + f2py_success = 0; + } else {"""}, + {isthreadsafe: ' Py_BEGIN_ALLOW_THREADS'}, + """\ +#ifdef USESCOMPAQFORTRAN + (*f2py_func)(#callcompaqfortran#); +#else + (*f2py_func)(#callfortran#); +#endif +""", + {isthreadsafe: ' Py_END_ALLOW_THREADS'}, + {hasexternals: ' }'}, + {debugcapi: + ' fprintf(stderr,"#routdebugshowvalue#\\n",#name#_return_value_len,#name#_return_value);'}, + ' } /* if (f2py_success) after (string)malloc */', + ], + 'returnformat': '#rformat#', + 'return': ',#name#_return_value', + 'freemem': ' STRINGFREE(#name#_return_value);', + 'need': ['F_FUNC', '#ctype#', 'STRINGFREE'], + '_check':l_and(isstringfunction, l_not(isfunction_wrap)) # ???obsolete + }, + { # Debugging + 'routdebugenter': ' fprintf(stderr,"debug-capi:Python C/API function #modulename#.#name#(#docsignature#)\\n");', + 'routdebugleave': ' fprintf(stderr,"debug-capi:Python C/API function #modulename#.#name#: successful.\\n");', + 'routdebugfailure': ' fprintf(stderr,"debug-capi:Python C/API function #modulename#.#name#: failure.\\n");', + '_check': debugcapi + } +] + +################ Rules for arguments ################## + +typedef_need_dict = {islong_long: 'long_long', + islong_double: 'long_double', + islong_complex: 'complex_long_double', + isunsigned_char: 'unsigned_char', + isunsigned_short: 'unsigned_short', + isunsigned: 'unsigned', + isunsigned_long_long: 'unsigned_long_long', + isunsigned_chararray: 'unsigned_char', + isunsigned_shortarray: 'unsigned_short', + isunsigned_long_longarray: 'unsigned_long_long', + issigned_long_longarray: 'long_long', + isint1: 'signed_char', + ischaracter_or_characterarray: 'character', + } + +aux_rules = [ + { + 'separatorsfor': sepdict + }, + { # Common + 'frompyobj': [' /* Processing auxiliary variable #varname# */', + {debugcapi: ' fprintf(stderr,"#vardebuginfo#\\n");'}, ], + 'cleanupfrompyobj': ' /* End of cleaning variable #varname# */', + 'need': typedef_need_dict, + }, + # Scalars (not complex) + { # Common + 'decl': ' #ctype# #varname# = 0;', + 'need': {hasinitvalue: 'math.h'}, + 'frompyobj': {hasinitvalue: ' #varname# = #init#;'}, + '_check': l_and(isscalar, l_not(iscomplex)), + }, + { + 'return': ',#varname#', + 'docstrout': '#pydocsignout#', + 'docreturn': '#outvarname#,', + 'returnformat': '#varrformat#', + '_check': l_and(isscalar, l_not(iscomplex), isintent_out), + }, + # Complex scalars + { # Common + 'decl': ' #ctype# #varname#;', + 'frompyobj': {hasinitvalue: ' #varname#.r = #init.r#, #varname#.i = #init.i#;'}, + '_check': iscomplex + }, + # String + { # Common + 'decl': [' #ctype# #varname# = NULL;', + ' int slen(#varname#);', + ], + 'need':['len..'], + '_check':isstring + }, + # Array + { # Common + 'decl': [' #ctype# *#varname# = NULL;', + ' npy_intp #varname#_Dims[#rank#] = {#rank*[-1]#};', + ' const int #varname#_Rank = #rank#;', + ], + 'need':['len..', {hasinitvalue: 'forcomb'}, {hasinitvalue: 'CFUNCSMESS'}], + '_check': isarray + }, + # Scalararray + { # Common + '_check': l_and(isarray, l_not(iscomplexarray)) + }, { # Not hidden + '_check': l_and(isarray, l_not(iscomplexarray), isintent_nothide) + }, + # Integer*1 array + {'need': '#ctype#', + '_check': isint1array, + '_depend': '' + }, + # Integer*-1 array + {'need': '#ctype#', + '_check': l_or(isunsigned_chararray, isunsigned_char), + '_depend': '' + }, + # Integer*-2 array + {'need': '#ctype#', + '_check': isunsigned_shortarray, + '_depend': '' + }, + # Integer*-8 array + {'need': '#ctype#', + '_check': isunsigned_long_longarray, + '_depend': '' + }, + # Complexarray + {'need': '#ctype#', + '_check': iscomplexarray, + '_depend': '' + }, + # Stringarray + { + 'callfortranappend': {isarrayofstrings: 'flen(#varname#),'}, + 'need': 'string', + '_check': isstringarray + } +] + +arg_rules = [ + { + 'separatorsfor': sepdict + }, + { # Common + 'frompyobj': [' /* Processing variable #varname# */', + {debugcapi: ' fprintf(stderr,"#vardebuginfo#\\n");'}, ], + 'cleanupfrompyobj': ' /* End of cleaning variable #varname# */', + '_depend': '', + 'need': typedef_need_dict, + }, + # Doc signatures + { + 'docstropt': {l_and(isoptional, isintent_nothide): '#pydocsign#'}, + 'docstrreq': {l_and(isrequired, isintent_nothide): '#pydocsign#'}, + 'docstrout': {isintent_out: '#pydocsignout#'}, + 'latexdocstropt': {l_and(isoptional, isintent_nothide): ['\\item[]{{}\\verb@#pydocsign#@{}}', + {hasnote: '--- #note#'}]}, + 'latexdocstrreq': {l_and(isrequired, isintent_nothide): ['\\item[]{{}\\verb@#pydocsign#@{}}', + {hasnote: '--- #note#'}]}, + 'latexdocstrout': {isintent_out: ['\\item[]{{}\\verb@#pydocsignout#@{}}', + {l_and(hasnote, isintent_hide): '--- #note#', + l_and(hasnote, isintent_nothide): '--- See above.'}]}, + 'depend': '' + }, + # Required/Optional arguments + { + 'kwlist': '"#varname#",', + 'docsign': '#varname#,', + '_check': l_and(isintent_nothide, l_not(isoptional)) + }, + { + 'kwlistopt': '"#varname#",', + 'docsignopt': '#varname#=#showinit#,', + 'docsignoptshort': '#varname#,', + '_check': l_and(isintent_nothide, isoptional) + }, + # Docstring/BuildValue + { + 'docreturn': '#outvarname#,', + 'returnformat': '#varrformat#', + '_check': isintent_out + }, + # Externals (call-back functions) + { # Common + 'docsignxa': {isintent_nothide: '#varname#_extra_args=(),'}, + 'docsignxashort': {isintent_nothide: '#varname#_extra_args,'}, + 'docstropt': {isintent_nothide: '#varname#_extra_args : input tuple, optional\\n Default: ()'}, + 'docstrcbs': '#cbdocstr#', + 'latexdocstrcbs': '\\item[] #cblatexdocstr#', + 'latexdocstropt': {isintent_nothide: '\\item[]{{}\\verb@#varname#_extra_args := () input tuple@{}} --- Extra arguments for call-back function {{}\\verb@#varname#@{}}.'}, + 'decl': [' #cbname#_t #varname#_cb = { Py_None, NULL, 0 };', + ' #cbname#_t *#varname#_cb_ptr = &#varname#_cb;', + ' PyTupleObject *#varname#_xa_capi = NULL;', + {l_not(isintent_callback): + ' #cbname#_typedef #varname#_cptr;'} + ], + 'kwlistxa': {isintent_nothide: '"#varname#_extra_args",'}, + 'argformat': {isrequired: 'O'}, + 'keyformat': {isoptional: 'O'}, + 'xaformat': {isintent_nothide: 'O!'}, + 'args_capi': {isrequired: ',&#varname#_cb.capi'}, + 'keys_capi': {isoptional: ',&#varname#_cb.capi'}, + 'keys_xa': ',&PyTuple_Type,&#varname#_xa_capi', + 'setjmpbuf': '(setjmp(#varname#_cb.jmpbuf))', + 'callfortran': {l_not(isintent_callback): '#varname#_cptr,'}, + 'need': ['#cbname#', 'setjmp.h'], + '_check':isexternal + }, + { + 'frompyobj': [{l_not(isintent_callback): """\ +if(F2PyCapsule_Check(#varname#_cb.capi)) { + #varname#_cptr = F2PyCapsule_AsVoidPtr(#varname#_cb.capi); +} else { + #varname#_cptr = #cbname#; +} +"""}, {isintent_callback: """\ +if (#varname#_cb.capi==Py_None) { + #varname#_cb.capi = PyObject_GetAttrString(#modulename#_module,\"#varname#\"); + if (#varname#_cb.capi) { + if (#varname#_xa_capi==NULL) { + if (PyObject_HasAttrString(#modulename#_module,\"#varname#_extra_args\")) { + PyObject* capi_tmp = PyObject_GetAttrString(#modulename#_module,\"#varname#_extra_args\"); + if (capi_tmp) { + #varname#_xa_capi = (PyTupleObject *)PySequence_Tuple(capi_tmp); + Py_DECREF(capi_tmp); + } + else { + #varname#_xa_capi = (PyTupleObject *)Py_BuildValue(\"()\"); + } + if (#varname#_xa_capi==NULL) { + PyErr_SetString(#modulename#_error,\"Failed to convert #modulename#.#varname#_extra_args to tuple.\\n\"); + return NULL; + } + } + } + } + if (#varname#_cb.capi==NULL) { + PyErr_SetString(#modulename#_error,\"Callback #varname# not defined (as an argument or module #modulename# attribute).\\n\"); + return NULL; + } +} +"""}, + """\ + if (create_cb_arglist(#varname#_cb.capi,#varname#_xa_capi,#maxnofargs#,#nofoptargs#,&#varname#_cb.nofargs,&#varname#_cb.args_capi,\"failed in processing argument list for call-back #varname#.\")) { +""", + {debugcapi: ["""\ + fprintf(stderr,\"debug-capi:Assuming %d arguments; at most #maxnofargs#(-#nofoptargs#) is expected.\\n\",#varname#_cb.nofargs); + CFUNCSMESSPY(\"for #varname#=\",#varname#_cb.capi);""", + {l_not(isintent_callback): """ fprintf(stderr,\"#vardebugshowvalue# (call-back in C).\\n\",#cbname#);"""}]}, + """\ + CFUNCSMESS(\"Saving callback variables for `#varname#`.\\n\"); + #varname#_cb_ptr = swap_active_#cbname#(#varname#_cb_ptr);""", + ], + 'cleanupfrompyobj': + """\ + CFUNCSMESS(\"Restoring callback variables for `#varname#`.\\n\"); + #varname#_cb_ptr = swap_active_#cbname#(#varname#_cb_ptr); + Py_DECREF(#varname#_cb.args_capi); + }""", + 'need': ['SWAP', 'create_cb_arglist'], + '_check':isexternal, + '_depend':'' + }, + # Scalars (not complex) + { # Common + 'decl': ' #ctype# #varname# = 0;', + 'pyobjfrom': {debugcapi: ' fprintf(stderr,"#vardebugshowvalue#\\n",#varname#);'}, + 'callfortran': {l_or(isintent_c, isattr_value): '#varname#,', l_not(l_or(isintent_c, isattr_value)): '&#varname#,'}, + 'return': {isintent_out: ',#varname#'}, + '_check': l_and(isscalar, l_not(iscomplex)) + }, { + 'need': {hasinitvalue: 'math.h'}, + '_check': l_and(isscalar, l_not(iscomplex)), + }, { # Not hidden + 'decl': ' PyObject *#varname#_capi = Py_None;', + 'argformat': {isrequired: 'O'}, + 'keyformat': {isoptional: 'O'}, + 'args_capi': {isrequired: ',&#varname#_capi'}, + 'keys_capi': {isoptional: ',&#varname#_capi'}, + 'pyobjfrom': {isintent_inout: """\ + f2py_success = try_pyarr_from_#ctype#(#varname#_capi,&#varname#); + if (f2py_success) {"""}, + 'closepyobjfrom': {isintent_inout: " } /*if (f2py_success) of #varname# pyobjfrom*/"}, + 'need': {isintent_inout: 'try_pyarr_from_#ctype#'}, + '_check': l_and(isscalar, l_not(iscomplex), l_not(isstring), + isintent_nothide) + }, { + 'frompyobj': [ + # hasinitvalue... + # if pyobj is None: + # varname = init + # else + # from_pyobj(varname) + # + # isoptional and noinitvalue... + # if pyobj is not None: + # from_pyobj(varname) + # else: + # varname is uninitialized + # + # ... + # from_pyobj(varname) + # + {hasinitvalue: ' if (#varname#_capi == Py_None) #varname# = #init#; else', + '_depend': ''}, + {l_and(isoptional, l_not(hasinitvalue)): ' if (#varname#_capi != Py_None)', + '_depend': ''}, + {l_not(islogical): '''\ + f2py_success = #ctype#_from_pyobj(&#varname#,#varname#_capi,"#pyname#() #nth# (#varname#) can\'t be converted to #ctype#"); + if (f2py_success) {'''}, + {islogical: '''\ + #varname# = (#ctype#)PyObject_IsTrue(#varname#_capi); + f2py_success = 1; + if (f2py_success) {'''}, + ], + 'cleanupfrompyobj': ' } /*if (f2py_success) of #varname#*/', + 'need': {l_not(islogical): '#ctype#_from_pyobj'}, + '_check': l_and(isscalar, l_not(iscomplex), isintent_nothide), + '_depend': '' + }, { # Hidden + 'frompyobj': {hasinitvalue: ' #varname# = #init#;'}, + 'need': typedef_need_dict, + '_check': l_and(isscalar, l_not(iscomplex), isintent_hide), + '_depend': '' + }, { # Common + 'frompyobj': {debugcapi: ' fprintf(stderr,"#vardebugshowvalue#\\n",#varname#);'}, + '_check': l_and(isscalar, l_not(iscomplex)), + '_depend': '' + }, + # Complex scalars + { # Common + 'decl': ' #ctype# #varname#;', + 'callfortran': {isintent_c: '#varname#,', l_not(isintent_c): '&#varname#,'}, + 'pyobjfrom': {debugcapi: ' fprintf(stderr,"#vardebugshowvalue#\\n",#varname#.r,#varname#.i);'}, + 'return': {isintent_out: ',#varname#_capi'}, + '_check': iscomplex + }, { # Not hidden + 'decl': ' PyObject *#varname#_capi = Py_None;', + 'argformat': {isrequired: 'O'}, + 'keyformat': {isoptional: 'O'}, + 'args_capi': {isrequired: ',&#varname#_capi'}, + 'keys_capi': {isoptional: ',&#varname#_capi'}, + 'need': {isintent_inout: 'try_pyarr_from_#ctype#'}, + 'pyobjfrom': {isintent_inout: """\ + f2py_success = try_pyarr_from_#ctype#(#varname#_capi,&#varname#); + if (f2py_success) {"""}, + 'closepyobjfrom': {isintent_inout: " } /*if (f2py_success) of #varname# pyobjfrom*/"}, + '_check': l_and(iscomplex, isintent_nothide) + }, { + 'frompyobj': [{hasinitvalue: ' if (#varname#_capi==Py_None) {#varname#.r = #init.r#, #varname#.i = #init.i#;} else'}, + {l_and(isoptional, l_not(hasinitvalue)) + : ' if (#varname#_capi != Py_None)'}, + ' f2py_success = #ctype#_from_pyobj(&#varname#,#varname#_capi,"#pyname#() #nth# (#varname#) can\'t be converted to #ctype#");' + '\n if (f2py_success) {'], + 'cleanupfrompyobj': ' } /*if (f2py_success) of #varname# frompyobj*/', + 'need': ['#ctype#_from_pyobj'], + '_check': l_and(iscomplex, isintent_nothide), + '_depend': '' + }, { # Hidden + 'decl': {isintent_out: ' PyObject *#varname#_capi = Py_None;'}, + '_check': l_and(iscomplex, isintent_hide) + }, { + 'frompyobj': {hasinitvalue: ' #varname#.r = #init.r#, #varname#.i = #init.i#;'}, + '_check': l_and(iscomplex, isintent_hide), + '_depend': '' + }, { # Common + 'pyobjfrom': {isintent_out: ' #varname#_capi = pyobj_from_#ctype#1(#varname#);'}, + 'need': ['pyobj_from_#ctype#1'], + '_check': iscomplex + }, { + 'frompyobj': {debugcapi: ' fprintf(stderr,"#vardebugshowvalue#\\n",#varname#.r,#varname#.i);'}, + '_check': iscomplex, + '_depend': '' + }, + # String + { # Common + 'decl': [' #ctype# #varname# = NULL;', + ' int slen(#varname#);', + ' PyObject *#varname#_capi = Py_None;'], + 'callfortran':'#varname#,', + 'callfortranappend':'slen(#varname#),', + 'pyobjfrom':[ + {debugcapi: + ' fprintf(stderr,' + '"#vardebugshowvalue#\\n",slen(#varname#),#varname#);'}, + # The trailing null value for Fortran is blank. + {l_and(isintent_out, l_not(isintent_c)): + " STRINGPADN(#varname#, slen(#varname#), ' ', '\\0');"}, + ], + 'return': {isintent_out: ',#varname#'}, + 'need': ['len..', + {l_and(isintent_out, l_not(isintent_c)): 'STRINGPADN'}], + '_check': isstring + }, { # Common + 'frompyobj': [ + """\ + slen(#varname#) = #elsize#; + f2py_success = #ctype#_from_pyobj(&#varname#,&slen(#varname#),#init#,""" +"""#varname#_capi,\"#ctype#_from_pyobj failed in converting #nth#""" +"""`#varname#\' of #pyname# to C #ctype#\"); + if (f2py_success) {""", + # The trailing null value for Fortran is blank. + {l_not(isintent_c): + " STRINGPADN(#varname#, slen(#varname#), '\\0', ' ');"}, + ], + 'cleanupfrompyobj': """\ + STRINGFREE(#varname#); + } /*if (f2py_success) of #varname#*/""", + 'need': ['#ctype#_from_pyobj', 'len..', 'STRINGFREE', + {l_not(isintent_c): 'STRINGPADN'}], + '_check':isstring, + '_depend':'' + }, { # Not hidden + 'argformat': {isrequired: 'O'}, + 'keyformat': {isoptional: 'O'}, + 'args_capi': {isrequired: ',&#varname#_capi'}, + 'keys_capi': {isoptional: ',&#varname#_capi'}, + 'pyobjfrom': [ + {l_and(isintent_inout, l_not(isintent_c)): + " STRINGPADN(#varname#, slen(#varname#), ' ', '\\0');"}, + {isintent_inout: '''\ + f2py_success = try_pyarr_from_#ctype#(#varname#_capi, #varname#, + slen(#varname#)); + if (f2py_success) {'''}], + 'closepyobjfrom': {isintent_inout: ' } /*if (f2py_success) of #varname# pyobjfrom*/'}, + 'need': {isintent_inout: 'try_pyarr_from_#ctype#', + l_and(isintent_inout, l_not(isintent_c)): 'STRINGPADN'}, + '_check': l_and(isstring, isintent_nothide) + }, { # Hidden + '_check': l_and(isstring, isintent_hide) + }, { + 'frompyobj': {debugcapi: ' fprintf(stderr,"#vardebugshowvalue#\\n",slen(#varname#),#varname#);'}, + '_check': isstring, + '_depend': '' + }, + # Array + { # Common + 'decl': [' #ctype# *#varname# = NULL;', + ' npy_intp #varname#_Dims[#rank#] = {#rank*[-1]#};', + ' const int #varname#_Rank = #rank#;', + ' PyArrayObject *capi_#varname#_as_array = NULL;', + ' int capi_#varname#_intent = 0;', + {isstringarray: ' int slen(#varname#) = 0;'}, + ], + 'callfortran':'#varname#,', + 'callfortranappend': {isstringarray: 'slen(#varname#),'}, + 'return': {isintent_out: ',capi_#varname#_as_array'}, + 'need': 'len..', + '_check': isarray + }, { # intent(overwrite) array + 'decl': ' int capi_overwrite_#varname# = 1;', + 'kwlistxa': '"overwrite_#varname#",', + 'xaformat': 'i', + 'keys_xa': ',&capi_overwrite_#varname#', + 'docsignxa': 'overwrite_#varname#=1,', + 'docsignxashort': 'overwrite_#varname#,', + 'docstropt': 'overwrite_#varname# : input int, optional\\n Default: 1', + '_check': l_and(isarray, isintent_overwrite), + }, { + 'frompyobj': ' capi_#varname#_intent |= (capi_overwrite_#varname#?0:F2PY_INTENT_COPY);', + '_check': l_and(isarray, isintent_overwrite), + '_depend': '', + }, + { # intent(copy) array + 'decl': ' int capi_overwrite_#varname# = 0;', + 'kwlistxa': '"overwrite_#varname#",', + 'xaformat': 'i', + 'keys_xa': ',&capi_overwrite_#varname#', + 'docsignxa': 'overwrite_#varname#=0,', + 'docsignxashort': 'overwrite_#varname#,', + 'docstropt': 'overwrite_#varname# : input int, optional\\n Default: 0', + '_check': l_and(isarray, isintent_copy), + }, { + 'frompyobj': ' capi_#varname#_intent |= (capi_overwrite_#varname#?0:F2PY_INTENT_COPY);', + '_check': l_and(isarray, isintent_copy), + '_depend': '', + }, { + 'need': [{hasinitvalue: 'forcomb'}, {hasinitvalue: 'CFUNCSMESS'}], + '_check': isarray, + '_depend': '' + }, { # Not hidden + 'decl': ' PyObject *#varname#_capi = Py_None;', + 'argformat': {isrequired: 'O'}, + 'keyformat': {isoptional: 'O'}, + 'args_capi': {isrequired: ',&#varname#_capi'}, + 'keys_capi': {isoptional: ',&#varname#_capi'}, + '_check': l_and(isarray, isintent_nothide) + }, { + 'frompyobj': [ + ' #setdims#;', + ' capi_#varname#_intent |= #intent#;', + (' const char * capi_errmess = "#modulename#.#pyname#:' + ' failed to create array from the #nth# `#varname#`";'), + {isintent_hide: + ' capi_#varname#_as_array = ndarray_from_pyobj(' + ' #atype#,#elsize#,#varname#_Dims,#varname#_Rank,' + ' capi_#varname#_intent,Py_None,capi_errmess);'}, + {isintent_nothide: + ' capi_#varname#_as_array = ndarray_from_pyobj(' + ' #atype#,#elsize#,#varname#_Dims,#varname#_Rank,' + ' capi_#varname#_intent,#varname#_capi,capi_errmess);'}, + """\ + if (capi_#varname#_as_array == NULL) { + PyObject* capi_err = PyErr_Occurred(); + if (capi_err == NULL) { + capi_err = #modulename#_error; + PyErr_SetString(capi_err, capi_errmess); + } + } else { + #varname# = (#ctype# *)(PyArray_DATA(capi_#varname#_as_array)); +""", + {isstringarray: + ' slen(#varname#) = f2py_itemsize(#varname#);'}, + {hasinitvalue: [ + {isintent_nothide: + ' if (#varname#_capi == Py_None) {'}, + {isintent_hide: ' {'}, + {iscomplexarray: ' #ctype# capi_c;'}, + """\ + int *_i,capi_i=0; + CFUNCSMESS(\"#name#: Initializing #varname#=#init#\\n\"); + if (initforcomb(PyArray_DIMS(capi_#varname#_as_array), + PyArray_NDIM(capi_#varname#_as_array),1)) { + while ((_i = nextforcomb())) + #varname#[capi_i++] = #init#; /* fortran way */ + } else { + PyObject *exc, *val, *tb; + PyErr_Fetch(&exc, &val, &tb); + PyErr_SetString(exc ? exc : #modulename#_error, + \"Initialization of #nth# #varname# failed (initforcomb).\"); + npy_PyErr_ChainExceptionsCause(exc, val, tb); + f2py_success = 0; + } + } + if (f2py_success) {"""]}, + ], + 'cleanupfrompyobj': [ # note that this list will be reversed + ' } ' + '/* if (capi_#varname#_as_array == NULL) ... else of #varname# */', + {l_not(l_or(isintent_out, isintent_hide)): """\ + if((PyObject *)capi_#varname#_as_array!=#varname#_capi) { + Py_XDECREF(capi_#varname#_as_array); }"""}, + {l_and(isintent_hide, l_not(isintent_out)) + : """ Py_XDECREF(capi_#varname#_as_array);"""}, + {hasinitvalue: ' } /*if (f2py_success) of #varname# init*/'}, + ], + '_check': isarray, + '_depend': '' + }, + # Scalararray + { # Common + '_check': l_and(isarray, l_not(iscomplexarray)) + }, { # Not hidden + '_check': l_and(isarray, l_not(iscomplexarray), isintent_nothide) + }, + # Integer*1 array + {'need': '#ctype#', + '_check': isint1array, + '_depend': '' + }, + # Integer*-1 array + {'need': '#ctype#', + '_check': isunsigned_chararray, + '_depend': '' + }, + # Integer*-2 array + {'need': '#ctype#', + '_check': isunsigned_shortarray, + '_depend': '' + }, + # Integer*-8 array + {'need': '#ctype#', + '_check': isunsigned_long_longarray, + '_depend': '' + }, + # Complexarray + {'need': '#ctype#', + '_check': iscomplexarray, + '_depend': '' + }, + # Character + { + 'need': 'string', + '_check': ischaracter, + }, + # Character array + { + 'need': 'string', + '_check': ischaracterarray, + }, + # Stringarray + { + 'callfortranappend': {isarrayofstrings: 'flen(#varname#),'}, + 'need': 'string', + '_check': isstringarray + } +] + +################# Rules for checking ############### + +check_rules = [ + { + 'frompyobj': {debugcapi: ' fprintf(stderr,\"debug-capi:Checking `#check#\'\\n\");'}, + 'need': 'len..' + }, { + 'frompyobj': ' CHECKSCALAR(#check#,\"#check#\",\"#nth# #varname#\",\"#varshowvalue#\",#varname#) {', + 'cleanupfrompyobj': ' } /*CHECKSCALAR(#check#)*/', + 'need': 'CHECKSCALAR', + '_check': l_and(isscalar, l_not(iscomplex)), + '_break': '' + }, { + 'frompyobj': ' CHECKSTRING(#check#,\"#check#\",\"#nth# #varname#\",\"#varshowvalue#\",#varname#) {', + 'cleanupfrompyobj': ' } /*CHECKSTRING(#check#)*/', + 'need': 'CHECKSTRING', + '_check': isstring, + '_break': '' + }, { + 'need': 'CHECKARRAY', + 'frompyobj': ' CHECKARRAY(#check#,\"#check#\",\"#nth# #varname#\") {', + 'cleanupfrompyobj': ' } /*CHECKARRAY(#check#)*/', + '_check': isarray, + '_break': '' + }, { + 'need': 'CHECKGENERIC', + 'frompyobj': ' CHECKGENERIC(#check#,\"#check#\",\"#nth# #varname#\") {', + 'cleanupfrompyobj': ' } /*CHECKGENERIC(#check#)*/', + } +] + +########## Applying the rules. No need to modify what follows ############# + +#################### Build C/API module ####################### + + +def buildmodule(m, um): + """ + Return + """ + outmess(' Building module "%s"...\n' % (m['name'])) + ret = {} + mod_rules = defmod_rules[:] + vrd = capi_maps.modsign2map(m) + rd = dictappend({'f2py_version': f2py_version}, vrd) + funcwrappers = [] + funcwrappers2 = [] # F90 codes + for n in m['interfaced']: + nb = None + for bi in m['body']: + if bi['block'] not in ['interface', 'abstract interface']: + errmess('buildmodule: Expected interface block. Skipping.\n') + continue + for b in bi['body']: + if b['name'] == n: + nb = b + break + + if not nb: + print( + 'buildmodule: Could not find the body of interfaced routine "%s". Skipping.\n' % (n), file=sys.stderr) + continue + nb_list = [nb] + if 'entry' in nb: + for k, a in nb['entry'].items(): + nb1 = copy.deepcopy(nb) + del nb1['entry'] + nb1['name'] = k + nb1['args'] = a + nb_list.append(nb1) + for nb in nb_list: + # requiresf90wrapper must be called before buildapi as it + # rewrites assumed shape arrays as automatic arrays. + isf90 = requiresf90wrapper(nb) + # options is in scope here + if options['emptygen']: + b_path = options['buildpath'] + m_name = vrd['modulename'] + outmess(' Generating possibly empty wrappers"\n') + Path(f"{b_path}/{vrd['coutput']}").touch() + if isf90: + # f77 + f90 wrappers + outmess(f' Maybe empty "{m_name}-f2pywrappers2.f90"\n') + Path(f'{b_path}/{m_name}-f2pywrappers2.f90').touch() + outmess(f' Maybe empty "{m_name}-f2pywrappers.f"\n') + Path(f'{b_path}/{m_name}-f2pywrappers.f').touch() + else: + # only f77 wrappers + outmess(f' Maybe empty "{m_name}-f2pywrappers.f"\n') + Path(f'{b_path}/{m_name}-f2pywrappers.f').touch() + api, wrap = buildapi(nb) + if wrap: + if isf90: + funcwrappers2.append(wrap) + else: + funcwrappers.append(wrap) + ar = applyrules(api, vrd) + rd = dictappend(rd, ar) + + # Construct COMMON block support + cr, wrap = common_rules.buildhooks(m) + if wrap: + funcwrappers.append(wrap) + ar = applyrules(cr, vrd) + rd = dictappend(rd, ar) + + # Construct F90 module support + mr, wrap = f90mod_rules.buildhooks(m) + if wrap: + funcwrappers2.append(wrap) + ar = applyrules(mr, vrd) + rd = dictappend(rd, ar) + + for u in um: + ar = use_rules.buildusevars(u, m['use'][u['name']]) + rd = dictappend(rd, ar) + + needs = cfuncs.get_needs() + # Add mapped definitions + needs['typedefs'] += [cvar for cvar in capi_maps.f2cmap_mapped # + if cvar in typedef_need_dict.values()] + code = {} + for n in needs.keys(): + code[n] = [] + for k in needs[n]: + c = '' + if k in cfuncs.includes0: + c = cfuncs.includes0[k] + elif k in cfuncs.includes: + c = cfuncs.includes[k] + elif k in cfuncs.userincludes: + c = cfuncs.userincludes[k] + elif k in cfuncs.typedefs: + c = cfuncs.typedefs[k] + elif k in cfuncs.typedefs_generated: + c = cfuncs.typedefs_generated[k] + elif k in cfuncs.cppmacros: + c = cfuncs.cppmacros[k] + elif k in cfuncs.cfuncs: + c = cfuncs.cfuncs[k] + elif k in cfuncs.callbacks: + c = cfuncs.callbacks[k] + elif k in cfuncs.f90modhooks: + c = cfuncs.f90modhooks[k] + elif k in cfuncs.commonhooks: + c = cfuncs.commonhooks[k] + else: + errmess('buildmodule: unknown need %s.\n' % (repr(k))) + continue + code[n].append(c) + mod_rules.append(code) + for r in mod_rules: + if ('_check' in r and r['_check'](m)) or ('_check' not in r): + ar = applyrules(r, vrd, m) + rd = dictappend(rd, ar) + ar = applyrules(module_rules, rd) + + fn = os.path.join(options['buildpath'], vrd['coutput']) + ret['csrc'] = fn + with open(fn, 'w') as f: + f.write(ar['modulebody'].replace('\t', 2 * ' ')) + outmess(' Wrote C/API module "%s" to file "%s"\n' % (m['name'], fn)) + + if options['dorestdoc']: + fn = os.path.join( + options['buildpath'], vrd['modulename'] + 'module.rest') + with open(fn, 'w') as f: + f.write('.. -*- rest -*-\n') + f.write('\n'.join(ar['restdoc'])) + outmess(' ReST Documentation is saved to file "%s/%smodule.rest"\n' % + (options['buildpath'], vrd['modulename'])) + if options['dolatexdoc']: + fn = os.path.join( + options['buildpath'], vrd['modulename'] + 'module.tex') + ret['ltx'] = fn + with open(fn, 'w') as f: + f.write( + '%% This file is auto-generated with f2py (version:%s)\n' % (f2py_version)) + if 'shortlatex' not in options: + f.write( + '\\documentclass{article}\n\\usepackage{a4wide}\n\\begin{document}\n\\tableofcontents\n\n') + f.write('\n'.join(ar['latexdoc'])) + if 'shortlatex' not in options: + f.write('\\end{document}') + outmess(' Documentation is saved to file "%s/%smodule.tex"\n' % + (options['buildpath'], vrd['modulename'])) + if funcwrappers: + wn = os.path.join(options['buildpath'], vrd['f2py_wrapper_output']) + ret['fsrc'] = wn + with open(wn, 'w') as f: + f.write('C -*- fortran -*-\n') + f.write( + 'C This file is autogenerated with f2py (version:%s)\n' % (f2py_version)) + f.write( + 'C It contains Fortran 77 wrappers to fortran functions.\n') + lines = [] + for l in ('\n\n'.join(funcwrappers) + '\n').split('\n'): + if 0 <= l.find('!') < 66: + # don't split comment lines + lines.append(l + '\n') + elif l and l[0] == ' ': + while len(l) >= 66: + lines.append(l[:66] + '\n &') + l = l[66:] + lines.append(l + '\n') + else: + lines.append(l + '\n') + lines = ''.join(lines).replace('\n &\n', '\n') + f.write(lines) + outmess(' Fortran 77 wrappers are saved to "%s"\n' % (wn)) + if funcwrappers2: + wn = os.path.join( + options['buildpath'], '%s-f2pywrappers2.f90' % (vrd['modulename'])) + ret['fsrc'] = wn + with open(wn, 'w') as f: + f.write('! -*- f90 -*-\n') + f.write( + '! This file is autogenerated with f2py (version:%s)\n' % (f2py_version)) + f.write( + '! It contains Fortran 90 wrappers to fortran functions.\n') + lines = [] + for l in ('\n\n'.join(funcwrappers2) + '\n').split('\n'): + if 0 <= l.find('!') < 72: + # don't split comment lines + lines.append(l + '\n') + elif len(l) > 72 and l[0] == ' ': + lines.append(l[:72] + '&\n &') + l = l[72:] + while len(l) > 66: + lines.append(l[:66] + '&\n &') + l = l[66:] + lines.append(l + '\n') + else: + lines.append(l + '\n') + lines = ''.join(lines).replace('\n &\n', '\n') + f.write(lines) + outmess(' Fortran 90 wrappers are saved to "%s"\n' % (wn)) + return ret + +################## Build C/API function ############# + +stnd = {1: 'st', 2: 'nd', 3: 'rd', 4: 'th', 5: 'th', + 6: 'th', 7: 'th', 8: 'th', 9: 'th', 0: 'th'} + + +def buildapi(rout): + rout, wrap = func2subr.assubr(rout) + args, depargs = getargs2(rout) + capi_maps.depargs = depargs + var = rout['vars'] + + if ismoduleroutine(rout): + outmess(' Constructing wrapper function "%s.%s"...\n' % + (rout['modulename'], rout['name'])) + else: + outmess(' Constructing wrapper function "%s"...\n' % (rout['name'])) + # Routine + vrd = capi_maps.routsign2map(rout) + rd = dictappend({}, vrd) + for r in rout_rules: + if ('_check' in r and r['_check'](rout)) or ('_check' not in r): + ar = applyrules(r, vrd, rout) + rd = dictappend(rd, ar) + + # Args + nth, nthk = 0, 0 + savevrd = {} + for a in args: + vrd = capi_maps.sign2map(a, var[a]) + if isintent_aux(var[a]): + _rules = aux_rules + else: + _rules = arg_rules + if not isintent_hide(var[a]): + if not isoptional(var[a]): + nth = nth + 1 + vrd['nth'] = repr(nth) + stnd[nth % 10] + ' argument' + else: + nthk = nthk + 1 + vrd['nth'] = repr(nthk) + stnd[nthk % 10] + ' keyword' + else: + vrd['nth'] = 'hidden' + savevrd[a] = vrd + for r in _rules: + if '_depend' in r: + continue + if ('_check' in r and r['_check'](var[a])) or ('_check' not in r): + ar = applyrules(r, vrd, var[a]) + rd = dictappend(rd, ar) + if '_break' in r: + break + for a in depargs: + if isintent_aux(var[a]): + _rules = aux_rules + else: + _rules = arg_rules + vrd = savevrd[a] + for r in _rules: + if '_depend' not in r: + continue + if ('_check' in r and r['_check'](var[a])) or ('_check' not in r): + ar = applyrules(r, vrd, var[a]) + rd = dictappend(rd, ar) + if '_break' in r: + break + if 'check' in var[a]: + for c in var[a]['check']: + vrd['check'] = c + ar = applyrules(check_rules, vrd, var[a]) + rd = dictappend(rd, ar) + if isinstance(rd['cleanupfrompyobj'], list): + rd['cleanupfrompyobj'].reverse() + if isinstance(rd['closepyobjfrom'], list): + rd['closepyobjfrom'].reverse() + rd['docsignature'] = stripcomma(replace('#docsign##docsignopt##docsignxa#', + {'docsign': rd['docsign'], + 'docsignopt': rd['docsignopt'], + 'docsignxa': rd['docsignxa']})) + optargs = stripcomma(replace('#docsignopt##docsignxa#', + {'docsignxa': rd['docsignxashort'], + 'docsignopt': rd['docsignoptshort']} + )) + if optargs == '': + rd['docsignatureshort'] = stripcomma( + replace('#docsign#', {'docsign': rd['docsign']})) + else: + rd['docsignatureshort'] = replace('#docsign#[#docsignopt#]', + {'docsign': rd['docsign'], + 'docsignopt': optargs, + }) + rd['latexdocsignatureshort'] = rd['docsignatureshort'].replace('_', '\\_') + rd['latexdocsignatureshort'] = rd[ + 'latexdocsignatureshort'].replace(',', ', ') + cfs = stripcomma(replace('#callfortran##callfortranappend#', { + 'callfortran': rd['callfortran'], 'callfortranappend': rd['callfortranappend']})) + if len(rd['callfortranappend']) > 1: + rd['callcompaqfortran'] = stripcomma(replace('#callfortran# 0,#callfortranappend#', { + 'callfortran': rd['callfortran'], 'callfortranappend': rd['callfortranappend']})) + else: + rd['callcompaqfortran'] = cfs + rd['callfortran'] = cfs + if isinstance(rd['docreturn'], list): + rd['docreturn'] = stripcomma( + replace('#docreturn#', {'docreturn': rd['docreturn']})) + ' = ' + rd['docstrsigns'] = [] + rd['latexdocstrsigns'] = [] + for k in ['docstrreq', 'docstropt', 'docstrout', 'docstrcbs']: + if k in rd and isinstance(rd[k], list): + rd['docstrsigns'] = rd['docstrsigns'] + rd[k] + k = 'latex' + k + if k in rd and isinstance(rd[k], list): + rd['latexdocstrsigns'] = rd['latexdocstrsigns'] + rd[k][0:1] +\ + ['\\begin{description}'] + rd[k][1:] +\ + ['\\end{description}'] + + ar = applyrules(routine_rules, rd) + if ismoduleroutine(rout): + outmess(' %s\n' % (ar['docshort'])) + else: + outmess(' %s\n' % (ar['docshort'])) + return ar, wrap + + +#################### EOF rules.py ####################### diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.c b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.c new file mode 100644 index 0000000000000000000000000000000000000000..4e2aa370b643e62db1955673b9f8922da6721ebe --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.c @@ -0,0 +1,1423 @@ +#define FORTRANOBJECT_C +#include "fortranobject.h" + +#ifdef __cplusplus +extern "C" { +#endif + +#include +#include +#include + +/* + This file implements: FortranObject, array_from_pyobj, copy_ND_array + + Author: Pearu Peterson + $Revision: 1.52 $ + $Date: 2005/07/11 07:44:20 $ +*/ + +int +F2PyDict_SetItemString(PyObject *dict, char *name, PyObject *obj) +{ + if (obj == NULL) { + fprintf(stderr, "Error loading %s\n", name); + if (PyErr_Occurred()) { + PyErr_Print(); + PyErr_Clear(); + } + return -1; + } + return PyDict_SetItemString(dict, name, obj); +} + +/* + * Python-only fallback for thread-local callback pointers + */ +void * +F2PySwapThreadLocalCallbackPtr(char *key, void *ptr) +{ + PyObject *local_dict, *value; + void *prev; + + local_dict = PyThreadState_GetDict(); + if (local_dict == NULL) { + Py_FatalError( + "F2PySwapThreadLocalCallbackPtr: PyThreadState_GetDict " + "failed"); + } + + value = PyDict_GetItemString(local_dict, key); + if (value != NULL) { + prev = PyLong_AsVoidPtr(value); + if (PyErr_Occurred()) { + Py_FatalError( + "F2PySwapThreadLocalCallbackPtr: PyLong_AsVoidPtr failed"); + } + } + else { + prev = NULL; + } + + value = PyLong_FromVoidPtr((void *)ptr); + if (value == NULL) { + Py_FatalError( + "F2PySwapThreadLocalCallbackPtr: PyLong_FromVoidPtr failed"); + } + + if (PyDict_SetItemString(local_dict, key, value) != 0) { + Py_FatalError( + "F2PySwapThreadLocalCallbackPtr: PyDict_SetItemString failed"); + } + + Py_DECREF(value); + + return prev; +} + +void * +F2PyGetThreadLocalCallbackPtr(char *key) +{ + PyObject *local_dict, *value; + void *prev; + + local_dict = PyThreadState_GetDict(); + if (local_dict == NULL) { + Py_FatalError( + "F2PyGetThreadLocalCallbackPtr: PyThreadState_GetDict failed"); + } + + value = PyDict_GetItemString(local_dict, key); + if (value != NULL) { + prev = PyLong_AsVoidPtr(value); + if (PyErr_Occurred()) { + Py_FatalError( + "F2PyGetThreadLocalCallbackPtr: PyLong_AsVoidPtr failed"); + } + } + else { + prev = NULL; + } + + return prev; +} + +static PyArray_Descr * +get_descr_from_type_and_elsize(const int type_num, const int elsize) { + PyArray_Descr * descr = PyArray_DescrFromType(type_num); + if (type_num == NPY_STRING) { + // PyArray_DescrFromType returns descr with elsize = 0. + PyArray_DESCR_REPLACE(descr); + if (descr == NULL) { + return NULL; + } + PyDataType_SET_ELSIZE(descr, elsize); + } + return descr; +} + +/************************* FortranObject *******************************/ + +typedef PyObject *(*fortranfunc)(PyObject *, PyObject *, PyObject *, void *); + +PyObject * +PyFortranObject_New(FortranDataDef *defs, f2py_void_func init) +{ + int i; + PyFortranObject *fp = NULL; + PyObject *v = NULL; + if (init != NULL) { /* Initialize F90 module objects */ + (*(init))(); + } + fp = PyObject_New(PyFortranObject, &PyFortran_Type); + if (fp == NULL) { + return NULL; + } + if ((fp->dict = PyDict_New()) == NULL) { + Py_DECREF(fp); + return NULL; + } + fp->len = 0; + while (defs[fp->len].name != NULL) { + fp->len++; + } + if (fp->len == 0) { + goto fail; + } + fp->defs = defs; + for (i = 0; i < fp->len; i++) { + if (fp->defs[i].rank == -1) { /* Is Fortran routine */ + v = PyFortranObject_NewAsAttr(&(fp->defs[i])); + if (v == NULL) { + goto fail; + } + PyDict_SetItemString(fp->dict, fp->defs[i].name, v); + Py_XDECREF(v); + } + else if ((fp->defs[i].data) != + NULL) { /* Is Fortran variable or array (not allocatable) */ + PyArray_Descr * + descr = get_descr_from_type_and_elsize(fp->defs[i].type, + fp->defs[i].elsize); + if (descr == NULL) { + goto fail; + } + v = PyArray_NewFromDescr(&PyArray_Type, descr, fp->defs[i].rank, + fp->defs[i].dims.d, NULL, fp->defs[i].data, + NPY_ARRAY_FARRAY, NULL); + if (v == NULL) { + Py_DECREF(descr); + goto fail; + } + PyDict_SetItemString(fp->dict, fp->defs[i].name, v); + Py_XDECREF(v); + } + } + return (PyObject *)fp; +fail: + Py_XDECREF(fp); + return NULL; +} + +PyObject * +PyFortranObject_NewAsAttr(FortranDataDef *defs) +{ /* used for calling F90 module routines */ + PyFortranObject *fp = NULL; + fp = PyObject_New(PyFortranObject, &PyFortran_Type); + if (fp == NULL) + return NULL; + if ((fp->dict = PyDict_New()) == NULL) { + PyObject_Del(fp); + return NULL; + } + fp->len = 1; + fp->defs = defs; + if (defs->rank == -1) { + PyDict_SetItemString(fp->dict, "__name__", PyUnicode_FromFormat("function %s", defs->name)); + } else if (defs->rank == 0) { + PyDict_SetItemString(fp->dict, "__name__", PyUnicode_FromFormat("scalar %s", defs->name)); + } else { + PyDict_SetItemString(fp->dict, "__name__", PyUnicode_FromFormat("array %s", defs->name)); + } + return (PyObject *)fp; +} + +/* Fortran methods */ + +static void +fortran_dealloc(PyFortranObject *fp) +{ + Py_XDECREF(fp->dict); + PyObject_Del(fp); +} + +/* Returns number of bytes consumed from buf, or -1 on error. */ +static Py_ssize_t +format_def(char *buf, Py_ssize_t size, FortranDataDef def) +{ + char *p = buf; + int i; + npy_intp n; + + n = PyOS_snprintf(p, size, "array(%" NPY_INTP_FMT, def.dims.d[0]); + if (n < 0 || n >= size) { + return -1; + } + p += n; + size -= n; + + for (i = 1; i < def.rank; i++) { + n = PyOS_snprintf(p, size, ",%" NPY_INTP_FMT, def.dims.d[i]); + if (n < 0 || n >= size) { + return -1; + } + p += n; + size -= n; + } + + if (size <= 0) { + return -1; + } + + *p++ = ')'; + size--; + + if (def.data == NULL) { + static const char notalloc[] = ", not allocated"; + if ((size_t)size < sizeof(notalloc)) { + return -1; + } + memcpy(p, notalloc, sizeof(notalloc)); + p += sizeof(notalloc); + size -= sizeof(notalloc); + } + + return p - buf; +} + +static PyObject * +fortran_doc(FortranDataDef def) +{ + char *buf, *p; + PyObject *s = NULL; + Py_ssize_t n, origsize, size = 100; + + if (def.doc != NULL) { + size += strlen(def.doc); + } + origsize = size; + buf = p = (char *)PyMem_Malloc(size); + if (buf == NULL) { + return PyErr_NoMemory(); + } + + if (def.rank == -1) { + if (def.doc) { + n = strlen(def.doc); + if (n > size) { + goto fail; + } + memcpy(p, def.doc, n); + p += n; + size -= n; + } + else { + n = PyOS_snprintf(p, size, "%s - no docs available", def.name); + if (n < 0 || n >= size) { + goto fail; + } + p += n; + size -= n; + } + } + else { + PyArray_Descr *d = PyArray_DescrFromType(def.type); + n = PyOS_snprintf(p, size, "%s : '%c'-", def.name, d->type); + Py_DECREF(d); + if (n < 0 || n >= size) { + goto fail; + } + p += n; + size -= n; + + if (def.data == NULL) { + n = format_def(p, size, def); + if (n < 0) { + goto fail; + } + p += n; + size -= n; + } + else if (def.rank > 0) { + n = format_def(p, size, def); + if (n < 0) { + goto fail; + } + p += n; + size -= n; + } + else { + n = strlen("scalar"); + if (size < n) { + goto fail; + } + memcpy(p, "scalar", n); + p += n; + size -= n; + } + } + if (size <= 1) { + goto fail; + } + *p++ = '\n'; + size--; + + /* p now points one beyond the last character of the string in buf */ + s = PyUnicode_FromStringAndSize(buf, p - buf); + + PyMem_Free(buf); + return s; + +fail: + fprintf(stderr, + "fortranobject.c: fortran_doc: len(p)=%zd>%zd=size:" + " too long docstring required, increase size\n", + p - buf, origsize); + PyMem_Free(buf); + return NULL; +} + +static FortranDataDef *save_def; /* save pointer of an allocatable array */ +static void +set_data(char *d, npy_intp *f) +{ /* callback from Fortran */ + if (*f) /* In fortran f=allocated(d) */ + save_def->data = d; + else + save_def->data = NULL; + /* printf("set_data: d=%p,f=%d\n",d,*f); */ +} + +static PyObject * +fortran_getattr(PyFortranObject *fp, char *name) +{ + int i, j, k, flag; + if (fp->dict != NULL) { + PyObject *v = _PyDict_GetItemStringWithError(fp->dict, name); + if (v == NULL && PyErr_Occurred()) { + return NULL; + } + else if (v != NULL) { + Py_INCREF(v); + return v; + } + } + for (i = 0, j = 1; i < fp->len && (j = strcmp(name, fp->defs[i].name)); + i++) + ; + if (j == 0) + if (fp->defs[i].rank != -1) { /* F90 allocatable array */ + if (fp->defs[i].func == NULL) + return NULL; + for (k = 0; k < fp->defs[i].rank; ++k) fp->defs[i].dims.d[k] = -1; + save_def = &fp->defs[i]; + (*(fp->defs[i].func))(&fp->defs[i].rank, fp->defs[i].dims.d, + set_data, &flag); + if (flag == 2) + k = fp->defs[i].rank + 1; + else + k = fp->defs[i].rank; + if (fp->defs[i].data != NULL) { /* array is allocated */ + PyObject *v = PyArray_New( + &PyArray_Type, k, fp->defs[i].dims.d, fp->defs[i].type, + NULL, fp->defs[i].data, 0, NPY_ARRAY_FARRAY, NULL); + if (v == NULL) + return NULL; + /* Py_INCREF(v); */ + return v; + } + else { /* array is not allocated */ + Py_RETURN_NONE; + } + } + if (strcmp(name, "__dict__") == 0) { + Py_INCREF(fp->dict); + return fp->dict; + } + if (strcmp(name, "__doc__") == 0) { + PyObject *s = PyUnicode_FromString(""), *s2, *s3; + for (i = 0; i < fp->len; i++) { + s2 = fortran_doc(fp->defs[i]); + s3 = PyUnicode_Concat(s, s2); + Py_DECREF(s2); + Py_DECREF(s); + s = s3; + } + if (PyDict_SetItemString(fp->dict, name, s)) + return NULL; + return s; + } + if ((strcmp(name, "_cpointer") == 0) && (fp->len == 1)) { + PyObject *cobj = + F2PyCapsule_FromVoidPtr((void *)(fp->defs[0].data), NULL); + if (PyDict_SetItemString(fp->dict, name, cobj)) + return NULL; + return cobj; + } + PyObject *str, *ret; + str = PyUnicode_FromString(name); + ret = PyObject_GenericGetAttr((PyObject *)fp, str); + Py_DECREF(str); + return ret; +} + +static int +fortran_setattr(PyFortranObject *fp, char *name, PyObject *v) +{ + int i, j, flag; + PyArrayObject *arr = NULL; + for (i = 0, j = 1; i < fp->len && (j = strcmp(name, fp->defs[i].name)); + i++) + ; + if (j == 0) { + if (fp->defs[i].rank == -1) { + PyErr_SetString(PyExc_AttributeError, + "over-writing fortran routine"); + return -1; + } + if (fp->defs[i].func != NULL) { /* is allocatable array */ + npy_intp dims[F2PY_MAX_DIMS]; + int k; + save_def = &fp->defs[i]; + if (v != Py_None) { /* set new value (reallocate if needed -- + see f2py generated code for more + details ) */ + for (k = 0; k < fp->defs[i].rank; k++) dims[k] = -1; + if ((arr = array_from_pyobj(fp->defs[i].type, dims, + fp->defs[i].rank, F2PY_INTENT_IN, + v)) == NULL) + return -1; + (*(fp->defs[i].func))(&fp->defs[i].rank, PyArray_DIMS(arr), + set_data, &flag); + } + else { /* deallocate */ + for (k = 0; k < fp->defs[i].rank; k++) dims[k] = 0; + (*(fp->defs[i].func))(&fp->defs[i].rank, dims, set_data, + &flag); + for (k = 0; k < fp->defs[i].rank; k++) dims[k] = -1; + } + memcpy(fp->defs[i].dims.d, dims, + fp->defs[i].rank * sizeof(npy_intp)); + } + else { /* not allocatable array */ + if ((arr = array_from_pyobj(fp->defs[i].type, fp->defs[i].dims.d, + fp->defs[i].rank, F2PY_INTENT_IN, + v)) == NULL) + return -1; + } + if (fp->defs[i].data != + NULL) { /* copy Python object to Fortran array */ + npy_intp s = PyArray_MultiplyList(fp->defs[i].dims.d, + PyArray_NDIM(arr)); + if (s == -1) + s = PyArray_MultiplyList(PyArray_DIMS(arr), PyArray_NDIM(arr)); + if (s < 0 || (memcpy(fp->defs[i].data, PyArray_DATA(arr), + s * PyArray_ITEMSIZE(arr))) == NULL) { + if ((PyObject *)arr != v) { + Py_DECREF(arr); + } + return -1; + } + if ((PyObject *)arr != v) { + Py_DECREF(arr); + } + } + else + return (fp->defs[i].func == NULL ? -1 : 0); + return 0; /* successful */ + } + if (fp->dict == NULL) { + fp->dict = PyDict_New(); + if (fp->dict == NULL) + return -1; + } + if (v == NULL) { + int rv = PyDict_DelItemString(fp->dict, name); + if (rv < 0) + PyErr_SetString(PyExc_AttributeError, + "delete non-existing fortran attribute"); + return rv; + } + else + return PyDict_SetItemString(fp->dict, name, v); +} + +static PyObject * +fortran_call(PyFortranObject *fp, PyObject *arg, PyObject *kw) +{ + int i = 0; + /* printf("fortran call + name=%s,func=%p,data=%p,%p\n",fp->defs[i].name, + fp->defs[i].func,fp->defs[i].data,&fp->defs[i].data); */ + if (fp->defs[i].rank == -1) { /* is Fortran routine */ + if (fp->defs[i].func == NULL) { + PyErr_Format(PyExc_RuntimeError, "no function to call"); + return NULL; + } + else if (fp->defs[i].data == NULL) + /* dummy routine */ + return (*((fortranfunc)(fp->defs[i].func)))((PyObject *)fp, arg, + kw, NULL); + else + return (*((fortranfunc)(fp->defs[i].func)))( + (PyObject *)fp, arg, kw, (void *)fp->defs[i].data); + } + PyErr_Format(PyExc_TypeError, "this fortran object is not callable"); + return NULL; +} + +static PyObject * +fortran_repr(PyFortranObject *fp) +{ + PyObject *name = NULL, *repr = NULL; + name = PyObject_GetAttrString((PyObject *)fp, "__name__"); + PyErr_Clear(); + if (name != NULL && PyUnicode_Check(name)) { + repr = PyUnicode_FromFormat("", name); + } + else { + repr = PyUnicode_FromString(""); + } + Py_XDECREF(name); + return repr; +} + +PyTypeObject PyFortran_Type = { + PyVarObject_HEAD_INIT(NULL, 0).tp_name = "fortran", + .tp_basicsize = sizeof(PyFortranObject), + .tp_dealloc = (destructor)fortran_dealloc, + .tp_getattr = (getattrfunc)fortran_getattr, + .tp_setattr = (setattrfunc)fortran_setattr, + .tp_repr = (reprfunc)fortran_repr, + .tp_call = (ternaryfunc)fortran_call, +}; + +/************************* f2py_report_atexit *******************************/ + +#ifdef F2PY_REPORT_ATEXIT +static int passed_time = 0; +static int passed_counter = 0; +static int passed_call_time = 0; +static struct timeb start_time; +static struct timeb stop_time; +static struct timeb start_call_time; +static struct timeb stop_call_time; +static int cb_passed_time = 0; +static int cb_passed_counter = 0; +static int cb_passed_call_time = 0; +static struct timeb cb_start_time; +static struct timeb cb_stop_time; +static struct timeb cb_start_call_time; +static struct timeb cb_stop_call_time; + +extern void +f2py_start_clock(void) +{ + ftime(&start_time); +} +extern void +f2py_start_call_clock(void) +{ + f2py_stop_clock(); + ftime(&start_call_time); +} +extern void +f2py_stop_clock(void) +{ + ftime(&stop_time); + passed_time += 1000 * (stop_time.time - start_time.time); + passed_time += stop_time.millitm - start_time.millitm; +} +extern void +f2py_stop_call_clock(void) +{ + ftime(&stop_call_time); + passed_call_time += 1000 * (stop_call_time.time - start_call_time.time); + passed_call_time += stop_call_time.millitm - start_call_time.millitm; + passed_counter += 1; + f2py_start_clock(); +} + +extern void +f2py_cb_start_clock(void) +{ + ftime(&cb_start_time); +} +extern void +f2py_cb_start_call_clock(void) +{ + f2py_cb_stop_clock(); + ftime(&cb_start_call_time); +} +extern void +f2py_cb_stop_clock(void) +{ + ftime(&cb_stop_time); + cb_passed_time += 1000 * (cb_stop_time.time - cb_start_time.time); + cb_passed_time += cb_stop_time.millitm - cb_start_time.millitm; +} +extern void +f2py_cb_stop_call_clock(void) +{ + ftime(&cb_stop_call_time); + cb_passed_call_time += + 1000 * (cb_stop_call_time.time - cb_start_call_time.time); + cb_passed_call_time += + cb_stop_call_time.millitm - cb_start_call_time.millitm; + cb_passed_counter += 1; + f2py_cb_start_clock(); +} + +static int f2py_report_on_exit_been_here = 0; +extern void +f2py_report_on_exit(int exit_flag, void *name) +{ + if (f2py_report_on_exit_been_here) { + fprintf(stderr, " %s\n", (char *)name); + return; + } + f2py_report_on_exit_been_here = 1; + fprintf(stderr, " /-----------------------\\\n"); + fprintf(stderr, " < F2PY performance report >\n"); + fprintf(stderr, " \\-----------------------/\n"); + fprintf(stderr, "Overall time spent in ...\n"); + fprintf(stderr, "(a) wrapped (Fortran/C) functions : %8d msec\n", + passed_call_time); + fprintf(stderr, "(b) f2py interface, %6d calls : %8d msec\n", + passed_counter, passed_time); + fprintf(stderr, "(c) call-back (Python) functions : %8d msec\n", + cb_passed_call_time); + fprintf(stderr, "(d) f2py call-back interface, %6d calls : %8d msec\n", + cb_passed_counter, cb_passed_time); + + fprintf(stderr, + "(e) wrapped (Fortran/C) functions (actual) : %8d msec\n\n", + passed_call_time - cb_passed_call_time - cb_passed_time); + fprintf(stderr, + "Use -DF2PY_REPORT_ATEXIT_DISABLE to disable this message.\n"); + fprintf(stderr, "Exit status: %d\n", exit_flag); + fprintf(stderr, "Modules : %s\n", (char *)name); +} +#endif + +/********************** report on array copy ****************************/ + +#ifdef F2PY_REPORT_ON_ARRAY_COPY +static void +f2py_report_on_array_copy(PyArrayObject *arr) +{ + const npy_intp arr_size = PyArray_Size((PyObject *)arr); + if (arr_size > F2PY_REPORT_ON_ARRAY_COPY) { + fprintf(stderr, + "copied an array: size=%ld, elsize=%" NPY_INTP_FMT "\n", + arr_size, (npy_intp)PyArray_ITEMSIZE(arr)); + } +} +static void +f2py_report_on_array_copy_fromany(void) +{ + fprintf(stderr, "created an array from object\n"); +} + +#define F2PY_REPORT_ON_ARRAY_COPY_FROMARR \ + f2py_report_on_array_copy((PyArrayObject *)arr) +#define F2PY_REPORT_ON_ARRAY_COPY_FROMANY f2py_report_on_array_copy_fromany() +#else +#define F2PY_REPORT_ON_ARRAY_COPY_FROMARR +#define F2PY_REPORT_ON_ARRAY_COPY_FROMANY +#endif + +/************************* array_from_obj *******************************/ + +/* + * File: array_from_pyobj.c + * + * Description: + * ------------ + * Provides array_from_pyobj function that returns a contiguous array + * object with the given dimensions and required storage order, either + * in row-major (C) or column-major (Fortran) order. The function + * array_from_pyobj is very flexible about its Python object argument + * that can be any number, list, tuple, or array. + * + * array_from_pyobj is used in f2py generated Python extension + * modules. + * + * Author: Pearu Peterson + * Created: 13-16 January 2002 + * $Id: fortranobject.c,v 1.52 2005/07/11 07:44:20 pearu Exp $ + */ + +static int check_and_fix_dimensions(const PyArrayObject* arr, + const int rank, + npy_intp *dims, + const char *errmess); + +static int +find_first_negative_dimension(const int rank, const npy_intp *dims) +{ + int i; + for (i = 0; i < rank; ++i) { + if (dims[i] < 0) { + return i; + } + } + return -1; +} + +#ifdef DEBUG_COPY_ND_ARRAY +void +dump_dims(int rank, npy_intp const *dims) +{ + int i; + printf("["); + for (i = 0; i < rank; ++i) { + printf("%3" NPY_INTP_FMT, dims[i]); + } + printf("]\n"); +} +void +dump_attrs(const PyArrayObject *obj) +{ + const PyArrayObject_fields *arr = (const PyArrayObject_fields *)obj; + int rank = PyArray_NDIM(arr); + npy_intp size = PyArray_Size((PyObject *)arr); + printf("\trank = %d, flags = %d, size = %" NPY_INTP_FMT "\n", rank, + arr->flags, size); + printf("\tstrides = "); + dump_dims(rank, arr->strides); + printf("\tdimensions = "); + dump_dims(rank, arr->dimensions); +} +#endif + +#define SWAPTYPE(a, b, t) \ + { \ + t c; \ + c = (a); \ + (a) = (b); \ + (b) = c; \ + } + +static int +swap_arrays(PyArrayObject *obj1, PyArrayObject *obj2) +{ + PyArrayObject_fields *arr1 = (PyArrayObject_fields *)obj1, + *arr2 = (PyArrayObject_fields *)obj2; + SWAPTYPE(arr1->data, arr2->data, char *); + SWAPTYPE(arr1->nd, arr2->nd, int); + SWAPTYPE(arr1->dimensions, arr2->dimensions, npy_intp *); + SWAPTYPE(arr1->strides, arr2->strides, npy_intp *); + SWAPTYPE(arr1->base, arr2->base, PyObject *); + SWAPTYPE(arr1->descr, arr2->descr, PyArray_Descr *); + SWAPTYPE(arr1->flags, arr2->flags, int); + /* SWAPTYPE(arr1->weakreflist,arr2->weakreflist,PyObject*); */ + return 0; +} + +#define ARRAY_ISCOMPATIBLE(arr,type_num) \ + ((PyArray_ISINTEGER(arr) && PyTypeNum_ISINTEGER(type_num)) || \ + (PyArray_ISFLOAT(arr) && PyTypeNum_ISFLOAT(type_num)) || \ + (PyArray_ISCOMPLEX(arr) && PyTypeNum_ISCOMPLEX(type_num)) || \ + (PyArray_ISBOOL(arr) && PyTypeNum_ISBOOL(type_num)) || \ + (PyArray_ISSTRING(arr) && PyTypeNum_ISSTRING(type_num))) + +static int +get_elsize(PyObject *obj) { + /* + get_elsize determines array itemsize from a Python object. Returns + elsize if successful, -1 otherwise. + + Supported types of the input are: numpy.ndarray, bytes, str, tuple, + list. + */ + + if (PyArray_Check(obj)) { + return PyArray_ITEMSIZE((PyArrayObject *)obj); + } else if (PyBytes_Check(obj)) { + return PyBytes_GET_SIZE(obj); + } else if (PyUnicode_Check(obj)) { + return PyUnicode_GET_LENGTH(obj); + } else if (PySequence_Check(obj)) { + PyObject* fast = PySequence_Fast(obj, "f2py:fortranobject.c:get_elsize"); + if (fast != NULL) { + Py_ssize_t i, n = PySequence_Fast_GET_SIZE(fast); + int sz, elsize = 0; + for (i=0; i elsize) { + elsize = sz; + } + } + Py_DECREF(fast); + return elsize; + } + } + return -1; +} + +extern PyArrayObject * +ndarray_from_pyobj(const int type_num, + const int elsize_, + npy_intp *dims, + const int rank, + const int intent, + PyObject *obj, + const char *errmess) { + /* + * Return an array with given element type and shape from a Python + * object while taking into account the usage intent of the array. + * + * - element type is defined by type_num and elsize + * - shape is defined by dims and rank + * + * ndarray_from_pyobj is used to convert Python object arguments + * to numpy ndarrays with given type and shape that data is passed + * to interfaced Fortran or C functions. + * + * errmess (if not NULL), contains a prefix of an error message + * for an exception to be triggered within this function. + * + * Negative elsize value means that elsize is to be determined + * from the Python object in runtime. + * + * Note on strings + * --------------- + * + * String type (type_num == NPY_STRING) does not have fixed + * element size and, by default, the type object sets it to + * 0. Therefore, for string types, one has to use elsize + * argument. For other types, elsize value is ignored. + * + * NumPy defines the type of a fixed-width string as + * dtype('S'). In addition, there is also dtype('c'), that + * appears as dtype('S1') (these have the same type_num value), + * but is actually different (.char attribute is either 'S' or + * 'c', respectively). + * + * In Fortran, character arrays and strings are different + * concepts. The relation between Fortran types, NumPy dtypes, + * and type_num-elsize pairs, is defined as follows: + * + * character*5 foo | dtype('S5') | elsize=5, shape=() + * character(5) foo | dtype('S1') | elsize=1, shape=(5) + * character*5 foo(n) | dtype('S5') | elsize=5, shape=(n,) + * character(5) foo(n) | dtype('S1') | elsize=1, shape=(5, n) + * character*(*) foo | dtype('S') | elsize=-1, shape=() + * + * Note about reference counting + * ----------------------------- + * + * If the caller returns the array to Python, it must be done with + * Py_BuildValue("N",arr). Otherwise, if obj!=arr then the caller + * must call Py_DECREF(arr). + * + * Note on intent(cache,out,..) + * ---------------------------- + * Don't expect correct data when returning intent(cache) array. + * + */ + char mess[F2PY_MESSAGE_BUFFER_SIZE]; + PyArrayObject *arr = NULL; + int elsize = (elsize_ < 0 ? get_elsize(obj) : elsize_); + if (elsize < 0) { + if (errmess != NULL) { + strcpy(mess, errmess); + } + sprintf(mess + strlen(mess), + " -- failed to determine element size from %s", + Py_TYPE(obj)->tp_name); + PyErr_SetString(PyExc_SystemError, mess); + return NULL; + } + PyArray_Descr * descr = get_descr_from_type_and_elsize(type_num, elsize); // new reference + if (descr == NULL) { + return NULL; + } + elsize = PyDataType_ELSIZE(descr); + if ((intent & F2PY_INTENT_HIDE) + || ((intent & F2PY_INTENT_CACHE) && (obj == Py_None)) + || ((intent & F2PY_OPTIONAL) && (obj == Py_None)) + ) { + /* intent(cache), optional, intent(hide) */ + int ineg = find_first_negative_dimension(rank, dims); + if (ineg >= 0) { + int i; + strcpy(mess, "failed to create intent(cache|hide)|optional array" + "-- must have defined dimensions but got ("); + for(i = 0; i < rank; ++i) + sprintf(mess + strlen(mess), "%" NPY_INTP_FMT ",", dims[i]); + strcat(mess, ")"); + PyErr_SetString(PyExc_ValueError, mess); + Py_DECREF(descr); + return NULL; + } + arr = (PyArrayObject *) \ + PyArray_NewFromDescr(&PyArray_Type, descr, rank, dims, + NULL, NULL, !(intent & F2PY_INTENT_C), NULL); + if (arr == NULL) { + Py_DECREF(descr); + return NULL; + } + if (PyArray_ITEMSIZE(arr) != elsize) { + strcpy(mess, "failed to create intent(cache|hide)|optional array"); + sprintf(mess+strlen(mess)," -- expected elsize=%d got %" NPY_INTP_FMT, elsize, (npy_intp)PyArray_ITEMSIZE(arr)); + PyErr_SetString(PyExc_ValueError,mess); + Py_DECREF(arr); + return NULL; + } + if (!(intent & F2PY_INTENT_CACHE)) { + PyArray_FILLWBYTE(arr, 0); + } + return arr; + } + + if (PyArray_Check(obj)) { + arr = (PyArrayObject *)obj; + if (intent & F2PY_INTENT_CACHE) { + /* intent(cache) */ + if (PyArray_ISONESEGMENT(arr) + && PyArray_ITEMSIZE(arr) >= elsize) { + if (check_and_fix_dimensions(arr, rank, dims, errmess)) { + Py_DECREF(descr); + return NULL; + } + if (intent & F2PY_INTENT_OUT) + Py_INCREF(arr); + Py_DECREF(descr); + return arr; + } + strcpy(mess, "failed to initialize intent(cache) array"); + if (!PyArray_ISONESEGMENT(arr)) + strcat(mess, " -- input must be in one segment"); + if (PyArray_ITEMSIZE(arr) < elsize) + sprintf(mess + strlen(mess), + " -- expected at least elsize=%d but got " + "%" NPY_INTP_FMT, + elsize, (npy_intp)PyArray_ITEMSIZE(arr)); + PyErr_SetString(PyExc_ValueError, mess); + Py_DECREF(descr); + return NULL; + } + + /* here we have always intent(in) or intent(inout) or intent(inplace) + */ + + if (check_and_fix_dimensions(arr, rank, dims, errmess)) { + Py_DECREF(descr); + return NULL; + } + /* + printf("intent alignment=%d\n", F2PY_GET_ALIGNMENT(intent)); + printf("alignment check=%d\n", F2PY_CHECK_ALIGNMENT(arr, intent)); + int i; + for (i=1;i<=16;i++) + printf("i=%d isaligned=%d\n", i, ARRAY_ISALIGNED(arr, i)); + */ + if ((! (intent & F2PY_INTENT_COPY)) && + PyArray_ITEMSIZE(arr) == elsize && + ARRAY_ISCOMPATIBLE(arr,type_num) && + F2PY_CHECK_ALIGNMENT(arr, intent)) { + if ((intent & F2PY_INTENT_INOUT || intent & F2PY_INTENT_INPLACE) + ? ((intent & F2PY_INTENT_C) ? PyArray_ISCARRAY(arr) : PyArray_ISFARRAY(arr)) + : ((intent & F2PY_INTENT_C) ? PyArray_ISCARRAY_RO(arr) : PyArray_ISFARRAY_RO(arr))) { + if ((intent & F2PY_INTENT_OUT)) { + Py_INCREF(arr); + } + /* Returning input array */ + Py_DECREF(descr); + return arr; + } + } + if (intent & F2PY_INTENT_INOUT) { + strcpy(mess, "failed to initialize intent(inout) array"); + /* Must use PyArray_IS*ARRAY because intent(inout) requires + * writable input */ + if ((intent & F2PY_INTENT_C) && !PyArray_ISCARRAY(arr)) + strcat(mess, " -- input not contiguous"); + if (!(intent & F2PY_INTENT_C) && !PyArray_ISFARRAY(arr)) + strcat(mess, " -- input not fortran contiguous"); + if (PyArray_ITEMSIZE(arr) != elsize) + sprintf(mess + strlen(mess), + " -- expected elsize=%d but got %" NPY_INTP_FMT, + elsize, + (npy_intp)PyArray_ITEMSIZE(arr) + ); + if (!(ARRAY_ISCOMPATIBLE(arr, type_num))) { + sprintf(mess + strlen(mess), + " -- input '%c' not compatible to '%c'", + PyArray_DESCR(arr)->type, descr->type); + } + if (!(F2PY_CHECK_ALIGNMENT(arr, intent))) + sprintf(mess + strlen(mess), " -- input not %d-aligned", + F2PY_GET_ALIGNMENT(intent)); + PyErr_SetString(PyExc_ValueError, mess); + Py_DECREF(descr); + return NULL; + } + + /* here we have always intent(in) or intent(inplace) */ + + { + PyArrayObject * retarr = (PyArrayObject *) \ + PyArray_NewFromDescr(&PyArray_Type, descr, PyArray_NDIM(arr), PyArray_DIMS(arr), + NULL, NULL, !(intent & F2PY_INTENT_C), NULL); + if (retarr==NULL) { + Py_DECREF(descr); + return NULL; + } + F2PY_REPORT_ON_ARRAY_COPY_FROMARR; + if (PyArray_CopyInto(retarr, arr)) { + Py_DECREF(retarr); + return NULL; + } + if (intent & F2PY_INTENT_INPLACE) { + if (swap_arrays(arr,retarr)) { + Py_DECREF(retarr); + return NULL; /* XXX: set exception */ + } + Py_XDECREF(retarr); + if (intent & F2PY_INTENT_OUT) + Py_INCREF(arr); + } else { + arr = retarr; + } + } + return arr; + } + + if ((intent & F2PY_INTENT_INOUT) || (intent & F2PY_INTENT_INPLACE) || + (intent & F2PY_INTENT_CACHE)) { + PyErr_Format(PyExc_TypeError, + "failed to initialize intent(inout|inplace|cache) " + "array, input '%s' object is not an array", + Py_TYPE(obj)->tp_name); + Py_DECREF(descr); + return NULL; + } + + { + F2PY_REPORT_ON_ARRAY_COPY_FROMANY; + arr = (PyArrayObject *)PyArray_FromAny( + obj, descr, 0, 0, + ((intent & F2PY_INTENT_C) ? NPY_ARRAY_CARRAY + : NPY_ARRAY_FARRAY) | + NPY_ARRAY_FORCECAST, + NULL); + // Warning: in the case of NPY_STRING, PyArray_FromAny may + // reset descr->elsize, e.g. dtype('S0') becomes dtype('S1'). + if (arr == NULL) { + Py_DECREF(descr); + return NULL; + } + if (type_num != NPY_STRING && PyArray_ITEMSIZE(arr) != elsize) { + // This is internal sanity tests: elsize has been set to + // descr->elsize in the beginning of this function. + strcpy(mess, "failed to initialize intent(in) array"); + sprintf(mess + strlen(mess), + " -- expected elsize=%d got %" NPY_INTP_FMT, elsize, + (npy_intp)PyArray_ITEMSIZE(arr)); + PyErr_SetString(PyExc_ValueError, mess); + Py_DECREF(arr); + return NULL; + } + if (check_and_fix_dimensions(arr, rank, dims, errmess)) { + Py_DECREF(arr); + return NULL; + } + return arr; + } +} + +extern PyArrayObject * +array_from_pyobj(const int type_num, + npy_intp *dims, + const int rank, + const int intent, + PyObject *obj) { + /* + Same as ndarray_from_pyobj but with elsize determined from type, + if possible. Provided for backward compatibility. + */ + PyArray_Descr* descr = PyArray_DescrFromType(type_num); + int elsize = PyDataType_ELSIZE(descr); + Py_DECREF(descr); + return ndarray_from_pyobj(type_num, elsize, dims, rank, intent, obj, NULL); +} + +/*****************************************/ +/* Helper functions for array_from_pyobj */ +/*****************************************/ + +static int +check_and_fix_dimensions(const PyArrayObject* arr, const int rank, + npy_intp *dims, const char *errmess) +{ + /* + * This function fills in blanks (that are -1's) in dims list using + * the dimensions from arr. It also checks that non-blank dims will + * match with the corresponding values in arr dimensions. + * + * Returns 0 if the function is successful. + * + * If an error condition is detected, an exception is set and 1 is + * returned. + */ + char mess[F2PY_MESSAGE_BUFFER_SIZE]; + const npy_intp arr_size = + (PyArray_NDIM(arr)) ? PyArray_Size((PyObject *)arr) : 1; +#ifdef DEBUG_COPY_ND_ARRAY + dump_attrs(arr); + printf("check_and_fix_dimensions:init: dims="); + dump_dims(rank, dims); +#endif + if (rank > PyArray_NDIM(arr)) { /* [1,2] -> [[1],[2]]; 1 -> [[1]] */ + npy_intp new_size = 1; + int free_axe = -1; + int i; + npy_intp d; + /* Fill dims where -1 or 0; check dimensions; calc new_size; */ + for (i = 0; i < PyArray_NDIM(arr); ++i) { + d = PyArray_DIM(arr, i); + if (dims[i] >= 0) { + if (d > 1 && dims[i] != d) { + PyErr_Format( + PyExc_ValueError, + "%d-th dimension must be fixed to %" NPY_INTP_FMT + " but got %" NPY_INTP_FMT "\n", + i, dims[i], d); + return 1; + } + if (!dims[i]) + dims[i] = 1; + } + else { + dims[i] = d ? d : 1; + } + new_size *= dims[i]; + } + for (i = PyArray_NDIM(arr); i < rank; ++i) + if (dims[i] > 1) { + PyErr_Format(PyExc_ValueError, + "%d-th dimension must be %" NPY_INTP_FMT + " but got 0 (not defined).\n", + i, dims[i]); + return 1; + } + else if (free_axe < 0) + free_axe = i; + else + dims[i] = 1; + if (free_axe >= 0) { + dims[free_axe] = arr_size / new_size; + new_size *= dims[free_axe]; + } + if (new_size != arr_size) { + PyErr_Format(PyExc_ValueError, + "unexpected array size: new_size=%" NPY_INTP_FMT + ", got array with arr_size=%" NPY_INTP_FMT + " (maybe too many free indices)\n", + new_size, arr_size); + return 1; + } + } + else if (rank == PyArray_NDIM(arr)) { + npy_intp new_size = 1; + int i; + npy_intp d; + for (i = 0; i < rank; ++i) { + d = PyArray_DIM(arr, i); + if (dims[i] >= 0) { + if (d > 1 && d != dims[i]) { + if (errmess != NULL) { + strcpy(mess, errmess); + } + sprintf(mess + strlen(mess), + " -- %d-th dimension must be fixed to %" + NPY_INTP_FMT " but got %" NPY_INTP_FMT, + i, dims[i], d); + PyErr_SetString(PyExc_ValueError, mess); + return 1; + } + if (!dims[i]) + dims[i] = 1; + } + else + dims[i] = d; + new_size *= dims[i]; + } + if (new_size != arr_size) { + PyErr_Format(PyExc_ValueError, + "unexpected array size: new_size=%" NPY_INTP_FMT + ", got array with arr_size=%" NPY_INTP_FMT "\n", + new_size, arr_size); + return 1; + } + } + else { /* [[1,2]] -> [[1],[2]] */ + int i, j; + npy_intp d; + int effrank; + npy_intp size; + for (i = 0, effrank = 0; i < PyArray_NDIM(arr); ++i) + if (PyArray_DIM(arr, i) > 1) + ++effrank; + if (dims[rank - 1] >= 0) + if (effrank > rank) { + PyErr_Format(PyExc_ValueError, + "too many axes: %d (effrank=%d), " + "expected rank=%d\n", + PyArray_NDIM(arr), effrank, rank); + return 1; + } + + for (i = 0, j = 0; i < rank; ++i) { + while (j < PyArray_NDIM(arr) && PyArray_DIM(arr, j) < 2) ++j; + if (j >= PyArray_NDIM(arr)) + d = 1; + else + d = PyArray_DIM(arr, j++); + if (dims[i] >= 0) { + if (d > 1 && d != dims[i]) { + if (errmess != NULL) { + strcpy(mess, errmess); + } + sprintf(mess + strlen(mess), + " -- %d-th dimension must be fixed to %" + NPY_INTP_FMT " but got %" NPY_INTP_FMT + " (real index=%d)\n", + i, dims[i], d, j-1); + PyErr_SetString(PyExc_ValueError, mess); + return 1; + } + if (!dims[i]) + dims[i] = 1; + } + else + dims[i] = d; + } + + for (i = rank; i < PyArray_NDIM(arr); + ++i) { /* [[1,2],[3,4]] -> [1,2,3,4] */ + while (j < PyArray_NDIM(arr) && PyArray_DIM(arr, j) < 2) ++j; + if (j >= PyArray_NDIM(arr)) + d = 1; + else + d = PyArray_DIM(arr, j++); + dims[rank - 1] *= d; + } + for (i = 0, size = 1; i < rank; ++i) size *= dims[i]; + if (size != arr_size) { + char msg[200]; + int len; + snprintf(msg, sizeof(msg), + "unexpected array size: size=%" NPY_INTP_FMT + ", arr_size=%" NPY_INTP_FMT + ", rank=%d, effrank=%d, arr.nd=%d, dims=[", + size, arr_size, rank, effrank, PyArray_NDIM(arr)); + for (i = 0; i < rank; ++i) { + len = strlen(msg); + snprintf(msg + len, sizeof(msg) - len, " %" NPY_INTP_FMT, + dims[i]); + } + len = strlen(msg); + snprintf(msg + len, sizeof(msg) - len, " ], arr.dims=["); + for (i = 0; i < PyArray_NDIM(arr); ++i) { + len = strlen(msg); + snprintf(msg + len, sizeof(msg) - len, " %" NPY_INTP_FMT, + PyArray_DIM(arr, i)); + } + len = strlen(msg); + snprintf(msg + len, sizeof(msg) - len, " ]\n"); + PyErr_SetString(PyExc_ValueError, msg); + return 1; + } + } +#ifdef DEBUG_COPY_ND_ARRAY + printf("check_and_fix_dimensions:end: dims="); + dump_dims(rank, dims); +#endif + return 0; +} + +/* End of file: array_from_pyobj.c */ + +/************************* copy_ND_array *******************************/ + +extern int +copy_ND_array(const PyArrayObject *arr, PyArrayObject *out) +{ + F2PY_REPORT_ON_ARRAY_COPY_FROMARR; + return PyArray_CopyInto(out, (PyArrayObject *)arr); +} + +/********************* Various utility functions ***********************/ + +extern int +f2py_describe(PyObject *obj, char *buf) { + /* + Write the description of a Python object to buf. The caller must + provide buffer with size sufficient to write the description. + + Return 1 on success. + */ + char localbuf[F2PY_MESSAGE_BUFFER_SIZE]; + if (PyBytes_Check(obj)) { + sprintf(localbuf, "%d-%s", (npy_int)PyBytes_GET_SIZE(obj), Py_TYPE(obj)->tp_name); + } else if (PyUnicode_Check(obj)) { + sprintf(localbuf, "%d-%s", (npy_int)PyUnicode_GET_LENGTH(obj), Py_TYPE(obj)->tp_name); + } else if (PyArray_CheckScalar(obj)) { + PyArrayObject* arr = (PyArrayObject*)obj; + sprintf(localbuf, "%c%" NPY_INTP_FMT "-%s-scalar", PyArray_DESCR(arr)->kind, PyArray_ITEMSIZE(arr), Py_TYPE(obj)->tp_name); + } else if (PyArray_Check(obj)) { + int i; + PyArrayObject* arr = (PyArrayObject*)obj; + strcpy(localbuf, "("); + for (i=0; ikind, PyArray_ITEMSIZE(arr), Py_TYPE(obj)->tp_name); + } else if (PySequence_Check(obj)) { + sprintf(localbuf, "%d-%s", (npy_int)PySequence_Length(obj), Py_TYPE(obj)->tp_name); + } else { + sprintf(localbuf, "%s instance", Py_TYPE(obj)->tp_name); + } + // TODO: detect the size of buf and make sure that size(buf) >= size(localbuf). + strcpy(buf, localbuf); + return 1; +} + +extern npy_intp +f2py_size_impl(PyArrayObject* var, ...) +{ + npy_intp sz = 0; + npy_intp dim; + npy_intp rank; + va_list argp; + va_start(argp, var); + dim = va_arg(argp, npy_int); + if (dim==-1) + { + sz = PyArray_SIZE(var); + } + else + { + rank = PyArray_NDIM(var); + if (dim>=1 && dim<=rank) + sz = PyArray_DIM(var, dim-1); + else + fprintf(stderr, "f2py_size: 2nd argument value=%" NPY_INTP_FMT + " fails to satisfy 1<=value<=%" NPY_INTP_FMT + ". Result will be 0.\n", dim, rank); + } + va_end(argp); + return sz; +} + +/*********************************************/ +/* Compatibility functions for Python >= 3.0 */ +/*********************************************/ + +PyObject * +F2PyCapsule_FromVoidPtr(void *ptr, void (*dtor)(PyObject *)) +{ + PyObject *ret = PyCapsule_New(ptr, NULL, dtor); + if (ret == NULL) { + PyErr_Clear(); + } + return ret; +} + +void * +F2PyCapsule_AsVoidPtr(PyObject *obj) +{ + void *ret = PyCapsule_GetPointer(obj, NULL); + if (ret == NULL) { + PyErr_Clear(); + } + return ret; +} + +int +F2PyCapsule_Check(PyObject *ptr) +{ + return PyCapsule_CheckExact(ptr); +} + +#ifdef __cplusplus +} +#endif +/************************* EOF fortranobject.c *******************************/ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.h b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.h new file mode 100644 index 0000000000000000000000000000000000000000..4aed2f60891b9e9ea2c16373b5959b0a346e7470 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/src/fortranobject.h @@ -0,0 +1,173 @@ +#ifndef Py_FORTRANOBJECT_H +#define Py_FORTRANOBJECT_H +#ifdef __cplusplus +extern "C" { +#endif + +#include + +#ifndef NPY_NO_DEPRECATED_API +#define NPY_NO_DEPRECATED_API NPY_API_VERSION +#endif +#ifdef FORTRANOBJECT_C +#define NO_IMPORT_ARRAY +#endif +#define PY_ARRAY_UNIQUE_SYMBOL _npy_f2py_ARRAY_API +#include "numpy/arrayobject.h" +#include "numpy/npy_3kcompat.h" + +#ifdef F2PY_REPORT_ATEXIT +#include +// clang-format off +extern void f2py_start_clock(void); +extern void f2py_stop_clock(void); +extern void f2py_start_call_clock(void); +extern void f2py_stop_call_clock(void); +extern void f2py_cb_start_clock(void); +extern void f2py_cb_stop_clock(void); +extern void f2py_cb_start_call_clock(void); +extern void f2py_cb_stop_call_clock(void); +extern void f2py_report_on_exit(int, void *); +// clang-format on +#endif + +#ifdef DMALLOC +#include "dmalloc.h" +#endif + +/* Fortran object interface */ + +/* +123456789-123456789-123456789-123456789-123456789-123456789-123456789-12 + +PyFortranObject represents various Fortran objects: +Fortran (module) routines, COMMON blocks, module data. + +Author: Pearu Peterson +*/ + +#define F2PY_MAX_DIMS 40 +#define F2PY_MESSAGE_BUFFER_SIZE 300 // Increase on "stack smashing detected" + +typedef void (*f2py_set_data_func)(char *, npy_intp *); +typedef void (*f2py_void_func)(void); +typedef void (*f2py_init_func)(int *, npy_intp *, f2py_set_data_func, int *); + +/*typedef void* (*f2py_c_func)(void*,...);*/ + +typedef void *(*f2pycfunc)(void); + +typedef struct { + char *name; /* attribute (array||routine) name */ + int rank; /* array rank, 0 for scalar, max is F2PY_MAX_DIMS, + || rank=-1 for Fortran routine */ + struct { + npy_intp d[F2PY_MAX_DIMS]; + } dims; /* dimensions of the array, || not used */ + int type; /* PyArray_ || not used */ + int elsize; /* Element size || not used */ + char *data; /* pointer to array || Fortran routine */ + f2py_init_func func; /* initialization function for + allocatable arrays: + func(&rank,dims,set_ptr_func,name,len(name)) + || C/API wrapper for Fortran routine */ + char *doc; /* documentation string; only recommended + for routines. */ +} FortranDataDef; + +typedef struct { + PyObject_HEAD + int len; /* Number of attributes */ + FortranDataDef *defs; /* An array of FortranDataDef's */ + PyObject *dict; /* Fortran object attribute dictionary */ +} PyFortranObject; + +#define PyFortran_Check(op) (Py_TYPE(op) == &PyFortran_Type) +#define PyFortran_Check1(op) (0 == strcmp(Py_TYPE(op)->tp_name, "fortran")) + +extern PyTypeObject PyFortran_Type; +extern int +F2PyDict_SetItemString(PyObject *dict, char *name, PyObject *obj); +extern PyObject * +PyFortranObject_New(FortranDataDef *defs, f2py_void_func init); +extern PyObject * +PyFortranObject_NewAsAttr(FortranDataDef *defs); + +PyObject * +F2PyCapsule_FromVoidPtr(void *ptr, void (*dtor)(PyObject *)); +void * +F2PyCapsule_AsVoidPtr(PyObject *obj); +int +F2PyCapsule_Check(PyObject *ptr); + +extern void * +F2PySwapThreadLocalCallbackPtr(char *key, void *ptr); +extern void * +F2PyGetThreadLocalCallbackPtr(char *key); + +#define ISCONTIGUOUS(m) (PyArray_FLAGS(m) & NPY_ARRAY_C_CONTIGUOUS) +#define F2PY_INTENT_IN 1 +#define F2PY_INTENT_INOUT 2 +#define F2PY_INTENT_OUT 4 +#define F2PY_INTENT_HIDE 8 +#define F2PY_INTENT_CACHE 16 +#define F2PY_INTENT_COPY 32 +#define F2PY_INTENT_C 64 +#define F2PY_OPTIONAL 128 +#define F2PY_INTENT_INPLACE 256 +#define F2PY_INTENT_ALIGNED4 512 +#define F2PY_INTENT_ALIGNED8 1024 +#define F2PY_INTENT_ALIGNED16 2048 + +#define ARRAY_ISALIGNED(ARR, SIZE) ((size_t)(PyArray_DATA(ARR)) % (SIZE) == 0) +#define F2PY_ALIGN4(intent) (intent & F2PY_INTENT_ALIGNED4) +#define F2PY_ALIGN8(intent) (intent & F2PY_INTENT_ALIGNED8) +#define F2PY_ALIGN16(intent) (intent & F2PY_INTENT_ALIGNED16) + +#define F2PY_GET_ALIGNMENT(intent) \ + (F2PY_ALIGN4(intent) \ + ? 4 \ + : (F2PY_ALIGN8(intent) ? 8 : (F2PY_ALIGN16(intent) ? 16 : 1))) +#define F2PY_CHECK_ALIGNMENT(arr, intent) \ + ARRAY_ISALIGNED(arr, F2PY_GET_ALIGNMENT(intent)) +#define F2PY_ARRAY_IS_CHARACTER_COMPATIBLE(arr) ((PyArray_DESCR(arr)->type_num == NPY_STRING && PyArray_ITEMSIZE(arr) >= 1) \ + || PyArray_DESCR(arr)->type_num == NPY_UINT8) +#define F2PY_IS_UNICODE_ARRAY(arr) (PyArray_DESCR(arr)->type_num == NPY_UNICODE) + +extern PyArrayObject * +ndarray_from_pyobj(const int type_num, const int elsize_, npy_intp *dims, + const int rank, const int intent, PyObject *obj, + const char *errmess); + +extern PyArrayObject * +array_from_pyobj(const int type_num, npy_intp *dims, const int rank, + const int intent, PyObject *obj); +extern int +copy_ND_array(const PyArrayObject *in, PyArrayObject *out); + +#ifdef DEBUG_COPY_ND_ARRAY +extern void +dump_attrs(const PyArrayObject *arr); +#endif + + extern int f2py_describe(PyObject *obj, char *buf); + + /* Utility CPP macros and functions that can be used in signature file + expressions. See signature-file.rst for documentation. + */ + +#define f2py_itemsize(var) (PyArray_ITEMSIZE(capi_ ## var ## _as_array)) +#define f2py_size(var, ...) f2py_size_impl((PyArrayObject *)(capi_ ## var ## _as_array), ## __VA_ARGS__, -1) +#define f2py_rank(var) var ## _Rank +#define f2py_shape(var,dim) var ## _Dims[dim] +#define f2py_len(var) f2py_shape(var,0) +#define f2py_fshape(var,dim) f2py_shape(var,rank(var)-dim-1) +#define f2py_flen(var) f2py_fshape(var,0) +#define f2py_slen(var) capi_ ## var ## _len + + extern npy_intp f2py_size_impl(PyArrayObject* var, ...); + +#ifdef __cplusplus +} +#endif +#endif /* !Py_FORTRANOBJECT_H */ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/symbolic.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/symbolic.py new file mode 100644 index 0000000000000000000000000000000000000000..63d277d9b01d487175bbb078ce7a4bfadd2ad917 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/symbolic.py @@ -0,0 +1,1517 @@ +"""Fortran/C symbolic expressions + +References: +- J3/21-007: Draft Fortran 202x. https://j3-fortran.org/doc/year/21/21-007.pdf + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" + +# To analyze Fortran expressions to solve dimensions specifications, +# for instances, we implement a minimal symbolic engine for parsing +# expressions into a tree of expression instances. As a first +# instance, we care only about arithmetic expressions involving +# integers and operations like addition (+), subtraction (-), +# multiplication (*), division (Fortran / is Python //, Fortran // is +# concatenate), and exponentiation (**). In addition, .pyf files may +# contain C expressions that support here is implemented as well. +# +# TODO: support logical constants (Op.BOOLEAN) +# TODO: support logical operators (.AND., ...) +# TODO: support defined operators (.MYOP., ...) +# +__all__ = ['Expr'] + + +import re +import warnings +from enum import Enum +from math import gcd + + +class Language(Enum): + """ + Used as Expr.tostring language argument. + """ + Python = 0 + Fortran = 1 + C = 2 + + +class Op(Enum): + """ + Used as Expr op attribute. + """ + INTEGER = 10 + REAL = 12 + COMPLEX = 15 + STRING = 20 + ARRAY = 30 + SYMBOL = 40 + TERNARY = 100 + APPLY = 200 + INDEXING = 210 + CONCAT = 220 + RELATIONAL = 300 + TERMS = 1000 + FACTORS = 2000 + REF = 3000 + DEREF = 3001 + + +class RelOp(Enum): + """ + Used in Op.RELATIONAL expression to specify the function part. + """ + EQ = 1 + NE = 2 + LT = 3 + LE = 4 + GT = 5 + GE = 6 + + @classmethod + def fromstring(cls, s, language=Language.C): + if language is Language.Fortran: + return {'.eq.': RelOp.EQ, '.ne.': RelOp.NE, + '.lt.': RelOp.LT, '.le.': RelOp.LE, + '.gt.': RelOp.GT, '.ge.': RelOp.GE}[s.lower()] + return {'==': RelOp.EQ, '!=': RelOp.NE, '<': RelOp.LT, + '<=': RelOp.LE, '>': RelOp.GT, '>=': RelOp.GE}[s] + + def tostring(self, language=Language.C): + if language is Language.Fortran: + return {RelOp.EQ: '.eq.', RelOp.NE: '.ne.', + RelOp.LT: '.lt.', RelOp.LE: '.le.', + RelOp.GT: '.gt.', RelOp.GE: '.ge.'}[self] + return {RelOp.EQ: '==', RelOp.NE: '!=', + RelOp.LT: '<', RelOp.LE: '<=', + RelOp.GT: '>', RelOp.GE: '>='}[self] + + +class ArithOp(Enum): + """ + Used in Op.APPLY expression to specify the function part. + """ + POS = 1 + NEG = 2 + ADD = 3 + SUB = 4 + MUL = 5 + DIV = 6 + POW = 7 + + +class OpError(Exception): + pass + + +class Precedence(Enum): + """ + Used as Expr.tostring precedence argument. + """ + ATOM = 0 + POWER = 1 + UNARY = 2 + PRODUCT = 3 + SUM = 4 + LT = 6 + EQ = 7 + LAND = 11 + LOR = 12 + TERNARY = 13 + ASSIGN = 14 + TUPLE = 15 + NONE = 100 + + +integer_types = (int,) +number_types = (int, float) + + +def _pairs_add(d, k, v): + # Internal utility method for updating terms and factors data. + c = d.get(k) + if c is None: + d[k] = v + else: + c = c + v + if c: + d[k] = c + else: + del d[k] + + +class ExprWarning(UserWarning): + pass + + +def ewarn(message): + warnings.warn(message, ExprWarning, stacklevel=2) + + +class Expr: + """Represents a Fortran expression as a op-data pair. + + Expr instances are hashable and sortable. + """ + + @staticmethod + def parse(s, language=Language.C): + """Parse a Fortran expression to a Expr. + """ + return fromstring(s, language=language) + + def __init__(self, op, data): + assert isinstance(op, Op) + + # sanity checks + if op is Op.INTEGER: + # data is a 2-tuple of numeric object and a kind value + # (default is 4) + assert isinstance(data, tuple) and len(data) == 2 + assert isinstance(data[0], int) + assert isinstance(data[1], (int, str)), data + elif op is Op.REAL: + # data is a 2-tuple of numeric object and a kind value + # (default is 4) + assert isinstance(data, tuple) and len(data) == 2 + assert isinstance(data[0], float) + assert isinstance(data[1], (int, str)), data + elif op is Op.COMPLEX: + # data is a 2-tuple of constant expressions + assert isinstance(data, tuple) and len(data) == 2 + elif op is Op.STRING: + # data is a 2-tuple of quoted string and a kind value + # (default is 1) + assert isinstance(data, tuple) and len(data) == 2 + assert (isinstance(data[0], str) + and data[0][::len(data[0])-1] in ('""', "''", '@@')) + assert isinstance(data[1], (int, str)), data + elif op is Op.SYMBOL: + # data is any hashable object + assert hash(data) is not None + elif op in (Op.ARRAY, Op.CONCAT): + # data is a tuple of expressions + assert isinstance(data, tuple) + assert all(isinstance(item, Expr) for item in data), data + elif op in (Op.TERMS, Op.FACTORS): + # data is {:} where dict values + # are nonzero Python integers + assert isinstance(data, dict) + elif op is Op.APPLY: + # data is (, , ) where + # operands are Expr instances + assert isinstance(data, tuple) and len(data) == 3 + # function is any hashable object + assert hash(data[0]) is not None + assert isinstance(data[1], tuple) + assert isinstance(data[2], dict) + elif op is Op.INDEXING: + # data is (, ) + assert isinstance(data, tuple) and len(data) == 2 + # function is any hashable object + assert hash(data[0]) is not None + elif op is Op.TERNARY: + # data is (, , ) + assert isinstance(data, tuple) and len(data) == 3 + elif op in (Op.REF, Op.DEREF): + # data is Expr instance + assert isinstance(data, Expr) + elif op is Op.RELATIONAL: + # data is (, , ) + assert isinstance(data, tuple) and len(data) == 3 + else: + raise NotImplementedError( + f'unknown op or missing sanity check: {op}') + + self.op = op + self.data = data + + def __eq__(self, other): + return (isinstance(other, Expr) + and self.op is other.op + and self.data == other.data) + + def __hash__(self): + if self.op in (Op.TERMS, Op.FACTORS): + data = tuple(sorted(self.data.items())) + elif self.op is Op.APPLY: + data = self.data[:2] + tuple(sorted(self.data[2].items())) + else: + data = self.data + return hash((self.op, data)) + + def __lt__(self, other): + if isinstance(other, Expr): + if self.op is not other.op: + return self.op.value < other.op.value + if self.op in (Op.TERMS, Op.FACTORS): + return (tuple(sorted(self.data.items())) + < tuple(sorted(other.data.items()))) + if self.op is Op.APPLY: + if self.data[:2] != other.data[:2]: + return self.data[:2] < other.data[:2] + return tuple(sorted(self.data[2].items())) < tuple( + sorted(other.data[2].items())) + return self.data < other.data + return NotImplemented + + def __le__(self, other): return self == other or self < other + + def __gt__(self, other): return not (self <= other) + + def __ge__(self, other): return not (self < other) + + def __repr__(self): + return f'{type(self).__name__}({self.op}, {self.data!r})' + + def __str__(self): + return self.tostring() + + def tostring(self, parent_precedence=Precedence.NONE, + language=Language.Fortran): + """Return a string representation of Expr. + """ + if self.op in (Op.INTEGER, Op.REAL): + precedence = (Precedence.SUM if self.data[0] < 0 + else Precedence.ATOM) + r = str(self.data[0]) + (f'_{self.data[1]}' + if self.data[1] != 4 else '') + elif self.op is Op.COMPLEX: + r = ', '.join(item.tostring(Precedence.TUPLE, language=language) + for item in self.data) + r = '(' + r + ')' + precedence = Precedence.ATOM + elif self.op is Op.SYMBOL: + precedence = Precedence.ATOM + r = str(self.data) + elif self.op is Op.STRING: + r = self.data[0] + if self.data[1] != 1: + r = self.data[1] + '_' + r + precedence = Precedence.ATOM + elif self.op is Op.ARRAY: + r = ', '.join(item.tostring(Precedence.TUPLE, language=language) + for item in self.data) + r = '[' + r + ']' + precedence = Precedence.ATOM + elif self.op is Op.TERMS: + terms = [] + for term, coeff in sorted(self.data.items()): + if coeff < 0: + op = ' - ' + coeff = -coeff + else: + op = ' + ' + if coeff == 1: + term = term.tostring(Precedence.SUM, language=language) + else: + if term == as_number(1): + term = str(coeff) + else: + term = f'{coeff} * ' + term.tostring( + Precedence.PRODUCT, language=language) + if terms: + terms.append(op) + elif op == ' - ': + terms.append('-') + terms.append(term) + r = ''.join(terms) or '0' + precedence = Precedence.SUM if terms else Precedence.ATOM + elif self.op is Op.FACTORS: + factors = [] + tail = [] + for base, exp in sorted(self.data.items()): + op = ' * ' + if exp == 1: + factor = base.tostring(Precedence.PRODUCT, + language=language) + elif language is Language.C: + if exp in range(2, 10): + factor = base.tostring(Precedence.PRODUCT, + language=language) + factor = ' * '.join([factor] * exp) + elif exp in range(-10, 0): + factor = base.tostring(Precedence.PRODUCT, + language=language) + tail += [factor] * -exp + continue + else: + factor = base.tostring(Precedence.TUPLE, + language=language) + factor = f'pow({factor}, {exp})' + else: + factor = base.tostring(Precedence.POWER, + language=language) + f' ** {exp}' + if factors: + factors.append(op) + factors.append(factor) + if tail: + if not factors: + factors += ['1'] + factors += ['/', '(', ' * '.join(tail), ')'] + r = ''.join(factors) or '1' + precedence = Precedence.PRODUCT if factors else Precedence.ATOM + elif self.op is Op.APPLY: + name, args, kwargs = self.data + if name is ArithOp.DIV and language is Language.C: + numer, denom = [arg.tostring(Precedence.PRODUCT, + language=language) + for arg in args] + r = f'{numer} / {denom}' + precedence = Precedence.PRODUCT + else: + args = [arg.tostring(Precedence.TUPLE, language=language) + for arg in args] + args += [k + '=' + v.tostring(Precedence.NONE) + for k, v in kwargs.items()] + r = f'{name}({", ".join(args)})' + precedence = Precedence.ATOM + elif self.op is Op.INDEXING: + name = self.data[0] + args = [arg.tostring(Precedence.TUPLE, language=language) + for arg in self.data[1:]] + r = f'{name}[{", ".join(args)}]' + precedence = Precedence.ATOM + elif self.op is Op.CONCAT: + args = [arg.tostring(Precedence.PRODUCT, language=language) + for arg in self.data] + r = " // ".join(args) + precedence = Precedence.PRODUCT + elif self.op is Op.TERNARY: + cond, expr1, expr2 = [a.tostring(Precedence.TUPLE, + language=language) + for a in self.data] + if language is Language.C: + r = f'({cond}?{expr1}:{expr2})' + elif language is Language.Python: + r = f'({expr1} if {cond} else {expr2})' + elif language is Language.Fortran: + r = f'merge({expr1}, {expr2}, {cond})' + else: + raise NotImplementedError( + f'tostring for {self.op} and {language}') + precedence = Precedence.ATOM + elif self.op is Op.REF: + r = '&' + self.data.tostring(Precedence.UNARY, language=language) + precedence = Precedence.UNARY + elif self.op is Op.DEREF: + r = '*' + self.data.tostring(Precedence.UNARY, language=language) + precedence = Precedence.UNARY + elif self.op is Op.RELATIONAL: + rop, left, right = self.data + precedence = (Precedence.EQ if rop in (RelOp.EQ, RelOp.NE) + else Precedence.LT) + left = left.tostring(precedence, language=language) + right = right.tostring(precedence, language=language) + rop = rop.tostring(language=language) + r = f'{left} {rop} {right}' + else: + raise NotImplementedError(f'tostring for op {self.op}') + if parent_precedence.value < precedence.value: + # If parent precedence is higher than operand precedence, + # operand will be enclosed in parenthesis. + return '(' + r + ')' + return r + + def __pos__(self): + return self + + def __neg__(self): + return self * -1 + + def __add__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + if self.op is other.op: + if self.op in (Op.INTEGER, Op.REAL): + return as_number( + self.data[0] + other.data[0], + max(self.data[1], other.data[1])) + if self.op is Op.COMPLEX: + r1, i1 = self.data + r2, i2 = other.data + return as_complex(r1 + r2, i1 + i2) + if self.op is Op.TERMS: + r = Expr(self.op, dict(self.data)) + for k, v in other.data.items(): + _pairs_add(r.data, k, v) + return normalize(r) + if self.op is Op.COMPLEX and other.op in (Op.INTEGER, Op.REAL): + return self + as_complex(other) + elif self.op in (Op.INTEGER, Op.REAL) and other.op is Op.COMPLEX: + return as_complex(self) + other + elif self.op is Op.REAL and other.op is Op.INTEGER: + return self + as_real(other, kind=self.data[1]) + elif self.op is Op.INTEGER and other.op is Op.REAL: + return as_real(self, kind=other.data[1]) + other + return as_terms(self) + as_terms(other) + return NotImplemented + + def __radd__(self, other): + if isinstance(other, number_types): + return as_number(other) + self + return NotImplemented + + def __sub__(self, other): + return self + (-other) + + def __rsub__(self, other): + if isinstance(other, number_types): + return as_number(other) - self + return NotImplemented + + def __mul__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + if self.op is other.op: + if self.op in (Op.INTEGER, Op.REAL): + return as_number(self.data[0] * other.data[0], + max(self.data[1], other.data[1])) + elif self.op is Op.COMPLEX: + r1, i1 = self.data + r2, i2 = other.data + return as_complex(r1 * r2 - i1 * i2, r1 * i2 + r2 * i1) + + if self.op is Op.FACTORS: + r = Expr(self.op, dict(self.data)) + for k, v in other.data.items(): + _pairs_add(r.data, k, v) + return normalize(r) + elif self.op is Op.TERMS: + r = Expr(self.op, {}) + for t1, c1 in self.data.items(): + for t2, c2 in other.data.items(): + _pairs_add(r.data, t1 * t2, c1 * c2) + return normalize(r) + + if self.op is Op.COMPLEX and other.op in (Op.INTEGER, Op.REAL): + return self * as_complex(other) + elif other.op is Op.COMPLEX and self.op in (Op.INTEGER, Op.REAL): + return as_complex(self) * other + elif self.op is Op.REAL and other.op is Op.INTEGER: + return self * as_real(other, kind=self.data[1]) + elif self.op is Op.INTEGER and other.op is Op.REAL: + return as_real(self, kind=other.data[1]) * other + + if self.op is Op.TERMS: + return self * as_terms(other) + elif other.op is Op.TERMS: + return as_terms(self) * other + + return as_factors(self) * as_factors(other) + return NotImplemented + + def __rmul__(self, other): + if isinstance(other, number_types): + return as_number(other) * self + return NotImplemented + + def __pow__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + if other.op is Op.INTEGER: + exponent = other.data[0] + # TODO: other kind not used + if exponent == 0: + return as_number(1) + if exponent == 1: + return self + if exponent > 0: + if self.op is Op.FACTORS: + r = Expr(self.op, {}) + for k, v in self.data.items(): + r.data[k] = v * exponent + return normalize(r) + return self * (self ** (exponent - 1)) + elif exponent != -1: + return (self ** (-exponent)) ** -1 + return Expr(Op.FACTORS, {self: exponent}) + return as_apply(ArithOp.POW, self, other) + return NotImplemented + + def __truediv__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + # Fortran / is different from Python /: + # - `/` is a truncate operation for integer operands + return normalize(as_apply(ArithOp.DIV, self, other)) + return NotImplemented + + def __rtruediv__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + return other / self + return NotImplemented + + def __floordiv__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + # Fortran // is different from Python //: + # - `//` is a concatenate operation for string operands + return normalize(Expr(Op.CONCAT, (self, other))) + return NotImplemented + + def __rfloordiv__(self, other): + other = as_expr(other) + if isinstance(other, Expr): + return other // self + return NotImplemented + + def __call__(self, *args, **kwargs): + # In Fortran, parenthesis () are use for both function call as + # well as indexing operations. + # + # TODO: implement a method for deciding when __call__ should + # return an INDEXING expression. + return as_apply(self, *map(as_expr, args), + **dict((k, as_expr(v)) for k, v in kwargs.items())) + + def __getitem__(self, index): + # Provided to support C indexing operations that .pyf files + # may contain. + index = as_expr(index) + if not isinstance(index, tuple): + index = index, + if len(index) > 1: + ewarn(f'C-index should be a single expression but got `{index}`') + return Expr(Op.INDEXING, (self,) + index) + + def substitute(self, symbols_map): + """Recursively substitute symbols with values in symbols map. + + Symbols map is a dictionary of symbol-expression pairs. + """ + if self.op is Op.SYMBOL: + value = symbols_map.get(self) + if value is None: + return self + m = re.match(r'\A(@__f2py_PARENTHESIS_(\w+)_\d+@)\Z', self.data) + if m: + # complement to fromstring method + items, paren = m.groups() + if paren in ['ROUNDDIV', 'SQUARE']: + return as_array(value) + assert paren == 'ROUND', (paren, value) + return value + if self.op in (Op.INTEGER, Op.REAL, Op.STRING): + return self + if self.op in (Op.ARRAY, Op.COMPLEX): + return Expr(self.op, tuple(item.substitute(symbols_map) + for item in self.data)) + if self.op is Op.CONCAT: + return normalize(Expr(self.op, tuple(item.substitute(symbols_map) + for item in self.data))) + if self.op is Op.TERMS: + r = None + for term, coeff in self.data.items(): + if r is None: + r = term.substitute(symbols_map) * coeff + else: + r += term.substitute(symbols_map) * coeff + if r is None: + ewarn('substitute: empty TERMS expression interpreted as' + ' int-literal 0') + return as_number(0) + return r + if self.op is Op.FACTORS: + r = None + for base, exponent in self.data.items(): + if r is None: + r = base.substitute(symbols_map) ** exponent + else: + r *= base.substitute(symbols_map) ** exponent + if r is None: + ewarn('substitute: empty FACTORS expression interpreted' + ' as int-literal 1') + return as_number(1) + return r + if self.op is Op.APPLY: + target, args, kwargs = self.data + if isinstance(target, Expr): + target = target.substitute(symbols_map) + args = tuple(a.substitute(symbols_map) for a in args) + kwargs = dict((k, v.substitute(symbols_map)) + for k, v in kwargs.items()) + return normalize(Expr(self.op, (target, args, kwargs))) + if self.op is Op.INDEXING: + func = self.data[0] + if isinstance(func, Expr): + func = func.substitute(symbols_map) + args = tuple(a.substitute(symbols_map) for a in self.data[1:]) + return normalize(Expr(self.op, (func,) + args)) + if self.op is Op.TERNARY: + operands = tuple(a.substitute(symbols_map) for a in self.data) + return normalize(Expr(self.op, operands)) + if self.op in (Op.REF, Op.DEREF): + return normalize(Expr(self.op, self.data.substitute(symbols_map))) + if self.op is Op.RELATIONAL: + rop, left, right = self.data + left = left.substitute(symbols_map) + right = right.substitute(symbols_map) + return normalize(Expr(self.op, (rop, left, right))) + raise NotImplementedError(f'substitute method for {self.op}: {self!r}') + + def traverse(self, visit, *args, **kwargs): + """Traverse expression tree with visit function. + + The visit function is applied to an expression with given args + and kwargs. + + Traverse call returns an expression returned by visit when not + None, otherwise return a new normalized expression with + traverse-visit sub-expressions. + """ + result = visit(self, *args, **kwargs) + if result is not None: + return result + + if self.op in (Op.INTEGER, Op.REAL, Op.STRING, Op.SYMBOL): + return self + elif self.op in (Op.COMPLEX, Op.ARRAY, Op.CONCAT, Op.TERNARY): + return normalize(Expr(self.op, tuple( + item.traverse(visit, *args, **kwargs) + for item in self.data))) + elif self.op in (Op.TERMS, Op.FACTORS): + data = {} + for k, v in self.data.items(): + k = k.traverse(visit, *args, **kwargs) + v = (v.traverse(visit, *args, **kwargs) + if isinstance(v, Expr) else v) + if k in data: + v = data[k] + v + data[k] = v + return normalize(Expr(self.op, data)) + elif self.op is Op.APPLY: + obj = self.data[0] + func = (obj.traverse(visit, *args, **kwargs) + if isinstance(obj, Expr) else obj) + operands = tuple(operand.traverse(visit, *args, **kwargs) + for operand in self.data[1]) + kwoperands = dict((k, v.traverse(visit, *args, **kwargs)) + for k, v in self.data[2].items()) + return normalize(Expr(self.op, (func, operands, kwoperands))) + elif self.op is Op.INDEXING: + obj = self.data[0] + obj = (obj.traverse(visit, *args, **kwargs) + if isinstance(obj, Expr) else obj) + indices = tuple(index.traverse(visit, *args, **kwargs) + for index in self.data[1:]) + return normalize(Expr(self.op, (obj,) + indices)) + elif self.op in (Op.REF, Op.DEREF): + return normalize(Expr(self.op, + self.data.traverse(visit, *args, **kwargs))) + elif self.op is Op.RELATIONAL: + rop, left, right = self.data + left = left.traverse(visit, *args, **kwargs) + right = right.traverse(visit, *args, **kwargs) + return normalize(Expr(self.op, (rop, left, right))) + raise NotImplementedError(f'traverse method for {self.op}') + + def contains(self, other): + """Check if self contains other. + """ + found = [] + + def visit(expr, found=found): + if found: + return expr + elif expr == other: + found.append(1) + return expr + + self.traverse(visit) + + return len(found) != 0 + + def symbols(self): + """Return a set of symbols contained in self. + """ + found = set() + + def visit(expr, found=found): + if expr.op is Op.SYMBOL: + found.add(expr) + + self.traverse(visit) + + return found + + def polynomial_atoms(self): + """Return a set of expressions used as atoms in polynomial self. + """ + found = set() + + def visit(expr, found=found): + if expr.op is Op.FACTORS: + for b in expr.data: + b.traverse(visit) + return expr + if expr.op in (Op.TERMS, Op.COMPLEX): + return + if expr.op is Op.APPLY and isinstance(expr.data[0], ArithOp): + if expr.data[0] is ArithOp.POW: + expr.data[1][0].traverse(visit) + return expr + return + if expr.op in (Op.INTEGER, Op.REAL): + return expr + + found.add(expr) + + if expr.op in (Op.INDEXING, Op.APPLY): + return expr + + self.traverse(visit) + + return found + + def linear_solve(self, symbol): + """Return a, b such that a * symbol + b == self. + + If self is not linear with respect to symbol, raise RuntimeError. + """ + b = self.substitute({symbol: as_number(0)}) + ax = self - b + a = ax.substitute({symbol: as_number(1)}) + + zero, _ = as_numer_denom(a * symbol - ax) + + if zero != as_number(0): + raise RuntimeError(f'not a {symbol}-linear equation:' + f' {a} * {symbol} + {b} == {self}') + return a, b + + +def normalize(obj): + """Normalize Expr and apply basic evaluation methods. + """ + if not isinstance(obj, Expr): + return obj + + if obj.op is Op.TERMS: + d = {} + for t, c in obj.data.items(): + if c == 0: + continue + if t.op is Op.COMPLEX and c != 1: + t = t * c + c = 1 + if t.op is Op.TERMS: + for t1, c1 in t.data.items(): + _pairs_add(d, t1, c1 * c) + else: + _pairs_add(d, t, c) + if len(d) == 0: + # TODO: determine correct kind + return as_number(0) + elif len(d) == 1: + (t, c), = d.items() + if c == 1: + return t + return Expr(Op.TERMS, d) + + if obj.op is Op.FACTORS: + coeff = 1 + d = {} + for b, e in obj.data.items(): + if e == 0: + continue + if b.op is Op.TERMS and isinstance(e, integer_types) and e > 1: + # expand integer powers of sums + b = b * (b ** (e - 1)) + e = 1 + + if b.op in (Op.INTEGER, Op.REAL): + if e == 1: + coeff *= b.data[0] + elif e > 0: + coeff *= b.data[0] ** e + else: + _pairs_add(d, b, e) + elif b.op is Op.FACTORS: + if e > 0 and isinstance(e, integer_types): + for b1, e1 in b.data.items(): + _pairs_add(d, b1, e1 * e) + else: + _pairs_add(d, b, e) + else: + _pairs_add(d, b, e) + if len(d) == 0 or coeff == 0: + # TODO: determine correct kind + assert isinstance(coeff, number_types) + return as_number(coeff) + elif len(d) == 1: + (b, e), = d.items() + if e == 1: + t = b + else: + t = Expr(Op.FACTORS, d) + if coeff == 1: + return t + return Expr(Op.TERMS, {t: coeff}) + elif coeff == 1: + return Expr(Op.FACTORS, d) + else: + return Expr(Op.TERMS, {Expr(Op.FACTORS, d): coeff}) + + if obj.op is Op.APPLY and obj.data[0] is ArithOp.DIV: + dividend, divisor = obj.data[1] + t1, c1 = as_term_coeff(dividend) + t2, c2 = as_term_coeff(divisor) + if isinstance(c1, integer_types) and isinstance(c2, integer_types): + g = gcd(c1, c2) + c1, c2 = c1//g, c2//g + else: + c1, c2 = c1/c2, 1 + + if t1.op is Op.APPLY and t1.data[0] is ArithOp.DIV: + numer = t1.data[1][0] * c1 + denom = t1.data[1][1] * t2 * c2 + return as_apply(ArithOp.DIV, numer, denom) + + if t2.op is Op.APPLY and t2.data[0] is ArithOp.DIV: + numer = t2.data[1][1] * t1 * c1 + denom = t2.data[1][0] * c2 + return as_apply(ArithOp.DIV, numer, denom) + + d = dict(as_factors(t1).data) + for b, e in as_factors(t2).data.items(): + _pairs_add(d, b, -e) + numer, denom = {}, {} + for b, e in d.items(): + if e > 0: + numer[b] = e + else: + denom[b] = -e + numer = normalize(Expr(Op.FACTORS, numer)) * c1 + denom = normalize(Expr(Op.FACTORS, denom)) * c2 + + if denom.op in (Op.INTEGER, Op.REAL) and denom.data[0] == 1: + # TODO: denom kind not used + return numer + return as_apply(ArithOp.DIV, numer, denom) + + if obj.op is Op.CONCAT: + lst = [obj.data[0]] + for s in obj.data[1:]: + last = lst[-1] + if ( + last.op is Op.STRING + and s.op is Op.STRING + and last.data[0][0] in '"\'' + and s.data[0][0] == last.data[0][-1] + ): + new_last = as_string(last.data[0][:-1] + s.data[0][1:], + max(last.data[1], s.data[1])) + lst[-1] = new_last + else: + lst.append(s) + if len(lst) == 1: + return lst[0] + return Expr(Op.CONCAT, tuple(lst)) + + if obj.op is Op.TERNARY: + cond, expr1, expr2 = map(normalize, obj.data) + if cond.op is Op.INTEGER: + return expr1 if cond.data[0] else expr2 + return Expr(Op.TERNARY, (cond, expr1, expr2)) + + return obj + + +def as_expr(obj): + """Convert non-Expr objects to Expr objects. + """ + if isinstance(obj, complex): + return as_complex(obj.real, obj.imag) + if isinstance(obj, number_types): + return as_number(obj) + if isinstance(obj, str): + # STRING expression holds string with boundary quotes, hence + # applying repr: + return as_string(repr(obj)) + if isinstance(obj, tuple): + return tuple(map(as_expr, obj)) + return obj + + +def as_symbol(obj): + """Return object as SYMBOL expression (variable or unparsed expression). + """ + return Expr(Op.SYMBOL, obj) + + +def as_number(obj, kind=4): + """Return object as INTEGER or REAL constant. + """ + if isinstance(obj, int): + return Expr(Op.INTEGER, (obj, kind)) + if isinstance(obj, float): + return Expr(Op.REAL, (obj, kind)) + if isinstance(obj, Expr): + if obj.op in (Op.INTEGER, Op.REAL): + return obj + raise OpError(f'cannot convert {obj} to INTEGER or REAL constant') + + +def as_integer(obj, kind=4): + """Return object as INTEGER constant. + """ + if isinstance(obj, int): + return Expr(Op.INTEGER, (obj, kind)) + if isinstance(obj, Expr): + if obj.op is Op.INTEGER: + return obj + raise OpError(f'cannot convert {obj} to INTEGER constant') + + +def as_real(obj, kind=4): + """Return object as REAL constant. + """ + if isinstance(obj, int): + return Expr(Op.REAL, (float(obj), kind)) + if isinstance(obj, float): + return Expr(Op.REAL, (obj, kind)) + if isinstance(obj, Expr): + if obj.op is Op.REAL: + return obj + elif obj.op is Op.INTEGER: + return Expr(Op.REAL, (float(obj.data[0]), kind)) + raise OpError(f'cannot convert {obj} to REAL constant') + + +def as_string(obj, kind=1): + """Return object as STRING expression (string literal constant). + """ + return Expr(Op.STRING, (obj, kind)) + + +def as_array(obj): + """Return object as ARRAY expression (array constant). + """ + if isinstance(obj, Expr): + obj = obj, + return Expr(Op.ARRAY, obj) + + +def as_complex(real, imag=0): + """Return object as COMPLEX expression (complex literal constant). + """ + return Expr(Op.COMPLEX, (as_expr(real), as_expr(imag))) + + +def as_apply(func, *args, **kwargs): + """Return object as APPLY expression (function call, constructor, etc.) + """ + return Expr(Op.APPLY, + (func, tuple(map(as_expr, args)), + dict((k, as_expr(v)) for k, v in kwargs.items()))) + + +def as_ternary(cond, expr1, expr2): + """Return object as TERNARY expression (cond?expr1:expr2). + """ + return Expr(Op.TERNARY, (cond, expr1, expr2)) + + +def as_ref(expr): + """Return object as referencing expression. + """ + return Expr(Op.REF, expr) + + +def as_deref(expr): + """Return object as dereferencing expression. + """ + return Expr(Op.DEREF, expr) + + +def as_eq(left, right): + return Expr(Op.RELATIONAL, (RelOp.EQ, left, right)) + + +def as_ne(left, right): + return Expr(Op.RELATIONAL, (RelOp.NE, left, right)) + + +def as_lt(left, right): + return Expr(Op.RELATIONAL, (RelOp.LT, left, right)) + + +def as_le(left, right): + return Expr(Op.RELATIONAL, (RelOp.LE, left, right)) + + +def as_gt(left, right): + return Expr(Op.RELATIONAL, (RelOp.GT, left, right)) + + +def as_ge(left, right): + return Expr(Op.RELATIONAL, (RelOp.GE, left, right)) + + +def as_terms(obj): + """Return expression as TERMS expression. + """ + if isinstance(obj, Expr): + obj = normalize(obj) + if obj.op is Op.TERMS: + return obj + if obj.op is Op.INTEGER: + return Expr(Op.TERMS, {as_integer(1, obj.data[1]): obj.data[0]}) + if obj.op is Op.REAL: + return Expr(Op.TERMS, {as_real(1, obj.data[1]): obj.data[0]}) + return Expr(Op.TERMS, {obj: 1}) + raise OpError(f'cannot convert {type(obj)} to terms Expr') + + +def as_factors(obj): + """Return expression as FACTORS expression. + """ + if isinstance(obj, Expr): + obj = normalize(obj) + if obj.op is Op.FACTORS: + return obj + if obj.op is Op.TERMS: + if len(obj.data) == 1: + (term, coeff), = obj.data.items() + if coeff == 1: + return Expr(Op.FACTORS, {term: 1}) + return Expr(Op.FACTORS, {term: 1, Expr.number(coeff): 1}) + if (obj.op is Op.APPLY + and obj.data[0] is ArithOp.DIV + and not obj.data[2]): + return Expr(Op.FACTORS, {obj.data[1][0]: 1, obj.data[1][1]: -1}) + return Expr(Op.FACTORS, {obj: 1}) + raise OpError(f'cannot convert {type(obj)} to terms Expr') + + +def as_term_coeff(obj): + """Return expression as term-coefficient pair. + """ + if isinstance(obj, Expr): + obj = normalize(obj) + if obj.op is Op.INTEGER: + return as_integer(1, obj.data[1]), obj.data[0] + if obj.op is Op.REAL: + return as_real(1, obj.data[1]), obj.data[0] + if obj.op is Op.TERMS: + if len(obj.data) == 1: + (term, coeff), = obj.data.items() + return term, coeff + # TODO: find common divisor of coefficients + if obj.op is Op.APPLY and obj.data[0] is ArithOp.DIV: + t, c = as_term_coeff(obj.data[1][0]) + return as_apply(ArithOp.DIV, t, obj.data[1][1]), c + return obj, 1 + raise OpError(f'cannot convert {type(obj)} to term and coeff') + + +def as_numer_denom(obj): + """Return expression as numer-denom pair. + """ + if isinstance(obj, Expr): + obj = normalize(obj) + if obj.op in (Op.INTEGER, Op.REAL, Op.COMPLEX, Op.SYMBOL, + Op.INDEXING, Op.TERNARY): + return obj, as_number(1) + elif obj.op is Op.APPLY: + if obj.data[0] is ArithOp.DIV and not obj.data[2]: + numers, denoms = map(as_numer_denom, obj.data[1]) + return numers[0] * denoms[1], numers[1] * denoms[0] + return obj, as_number(1) + elif obj.op is Op.TERMS: + numers, denoms = [], [] + for term, coeff in obj.data.items(): + n, d = as_numer_denom(term) + n = n * coeff + numers.append(n) + denoms.append(d) + numer, denom = as_number(0), as_number(1) + for i in range(len(numers)): + n = numers[i] + for j in range(len(numers)): + if i != j: + n *= denoms[j] + numer += n + denom *= denoms[i] + if denom.op in (Op.INTEGER, Op.REAL) and denom.data[0] < 0: + numer, denom = -numer, -denom + return numer, denom + elif obj.op is Op.FACTORS: + numer, denom = as_number(1), as_number(1) + for b, e in obj.data.items(): + bnumer, bdenom = as_numer_denom(b) + if e > 0: + numer *= bnumer ** e + denom *= bdenom ** e + elif e < 0: + numer *= bdenom ** (-e) + denom *= bnumer ** (-e) + return numer, denom + raise OpError(f'cannot convert {type(obj)} to numer and denom') + + +def _counter(): + # Used internally to generate unique dummy symbols + counter = 0 + while True: + counter += 1 + yield counter + + +COUNTER = _counter() + + +def eliminate_quotes(s): + """Replace quoted substrings of input string. + + Return a new string and a mapping of replacements. + """ + d = {} + + def repl(m): + kind, value = m.groups()[:2] + if kind: + # remove trailing underscore + kind = kind[:-1] + p = {"'": "SINGLE", '"': "DOUBLE"}[value[0]] + k = f'{kind}@__f2py_QUOTES_{p}_{COUNTER.__next__()}@' + d[k] = value + return k + + new_s = re.sub(r'({kind}_|)({single_quoted}|{double_quoted})'.format( + kind=r'\w[\w\d_]*', + single_quoted=r"('([^'\\]|(\\.))*')", + double_quoted=r'("([^"\\]|(\\.))*")'), + repl, s) + + assert '"' not in new_s + assert "'" not in new_s + + return new_s, d + + +def insert_quotes(s, d): + """Inverse of eliminate_quotes. + """ + for k, v in d.items(): + kind = k[:k.find('@')] + if kind: + kind += '_' + s = s.replace(k, kind + v) + return s + + +def replace_parenthesis(s): + """Replace substrings of input that are enclosed in parenthesis. + + Return a new string and a mapping of replacements. + """ + # Find a parenthesis pair that appears first. + + # Fortran deliminator are `(`, `)`, `[`, `]`, `(/', '/)`, `/`. + # We don't handle `/` deliminator because it is not a part of an + # expression. + left, right = None, None + mn_i = len(s) + for left_, right_ in (('(/', '/)'), + '()', + '{}', # to support C literal structs + '[]'): + i = s.find(left_) + if i == -1: + continue + if i < mn_i: + mn_i = i + left, right = left_, right_ + + if left is None: + return s, {} + + i = mn_i + j = s.find(right, i) + + while s.count(left, i + 1, j) != s.count(right, i + 1, j): + j = s.find(right, j + 1) + if j == -1: + raise ValueError(f'Mismatch of {left+right} parenthesis in {s!r}') + + p = {'(': 'ROUND', '[': 'SQUARE', '{': 'CURLY', '(/': 'ROUNDDIV'}[left] + + k = f'@__f2py_PARENTHESIS_{p}_{COUNTER.__next__()}@' + v = s[i+len(left):j] + r, d = replace_parenthesis(s[j+len(right):]) + d[k] = v + return s[:i] + k + r, d + + +def _get_parenthesis_kind(s): + assert s.startswith('@__f2py_PARENTHESIS_'), s + return s.split('_')[4] + + +def unreplace_parenthesis(s, d): + """Inverse of replace_parenthesis. + """ + for k, v in d.items(): + p = _get_parenthesis_kind(k) + left = dict(ROUND='(', SQUARE='[', CURLY='{', ROUNDDIV='(/')[p] + right = dict(ROUND=')', SQUARE=']', CURLY='}', ROUNDDIV='/)')[p] + s = s.replace(k, left + v + right) + return s + + +def fromstring(s, language=Language.C): + """Create an expression from a string. + + This is a "lazy" parser, that is, only arithmetic operations are + resolved, non-arithmetic operations are treated as symbols. + """ + r = _FromStringWorker(language=language).parse(s) + if isinstance(r, Expr): + return r + raise ValueError(f'failed to parse `{s}` to Expr instance: got `{r}`') + + +class _Pair: + # Internal class to represent a pair of expressions + + def __init__(self, left, right): + self.left = left + self.right = right + + def substitute(self, symbols_map): + left, right = self.left, self.right + if isinstance(left, Expr): + left = left.substitute(symbols_map) + if isinstance(right, Expr): + right = right.substitute(symbols_map) + return _Pair(left, right) + + def __repr__(self): + return f'{type(self).__name__}({self.left}, {self.right})' + + +class _FromStringWorker: + + def __init__(self, language=Language.C): + self.original = None + self.quotes_map = None + self.language = language + + def finalize_string(self, s): + return insert_quotes(s, self.quotes_map) + + def parse(self, inp): + self.original = inp + unquoted, self.quotes_map = eliminate_quotes(inp) + return self.process(unquoted) + + def process(self, s, context='expr'): + """Parse string within the given context. + + The context may define the result in case of ambiguous + expressions. For instance, consider expressions `f(x, y)` and + `(x, y) + (a, b)` where `f` is a function and pair `(x, y)` + denotes complex number. Specifying context as "args" or + "expr", the subexpression `(x, y)` will be parse to an + argument list or to a complex number, respectively. + """ + if isinstance(s, (list, tuple)): + return type(s)(self.process(s_, context) for s_ in s) + + assert isinstance(s, str), (type(s), s) + + # replace subexpressions in parenthesis with f2py @-names + r, raw_symbols_map = replace_parenthesis(s) + r = r.strip() + + def restore(r): + # restores subexpressions marked with f2py @-names + if isinstance(r, (list, tuple)): + return type(r)(map(restore, r)) + return unreplace_parenthesis(r, raw_symbols_map) + + # comma-separated tuple + if ',' in r: + operands = restore(r.split(',')) + if context == 'args': + return tuple(self.process(operands)) + if context == 'expr': + if len(operands) == 2: + # complex number literal + return as_complex(*self.process(operands)) + raise NotImplementedError( + f'parsing comma-separated list (context={context}): {r}') + + # ternary operation + m = re.match(r'\A([^?]+)[?]([^:]+)[:](.+)\Z', r) + if m: + assert context == 'expr', context + oper, expr1, expr2 = restore(m.groups()) + oper = self.process(oper) + expr1 = self.process(expr1) + expr2 = self.process(expr2) + return as_ternary(oper, expr1, expr2) + + # relational expression + if self.language is Language.Fortran: + m = re.match( + r'\A(.+)\s*[.](eq|ne|lt|le|gt|ge)[.]\s*(.+)\Z', r, re.I) + else: + m = re.match( + r'\A(.+)\s*([=][=]|[!][=]|[<][=]|[<]|[>][=]|[>])\s*(.+)\Z', r) + if m: + left, rop, right = m.groups() + if self.language is Language.Fortran: + rop = '.' + rop + '.' + left, right = self.process(restore((left, right))) + rop = RelOp.fromstring(rop, language=self.language) + return Expr(Op.RELATIONAL, (rop, left, right)) + + # keyword argument + m = re.match(r'\A(\w[\w\d_]*)\s*[=](.*)\Z', r) + if m: + keyname, value = m.groups() + value = restore(value) + return _Pair(keyname, self.process(value)) + + # addition/subtraction operations + operands = re.split(r'((? 1: + result = self.process(restore(operands[0] or '0')) + for op, operand in zip(operands[1::2], operands[2::2]): + operand = self.process(restore(operand)) + op = op.strip() + if op == '+': + result += operand + else: + assert op == '-' + result -= operand + return result + + # string concatenate operation + if self.language is Language.Fortran and '//' in r: + operands = restore(r.split('//')) + return Expr(Op.CONCAT, + tuple(self.process(operands))) + + # multiplication/division operations + operands = re.split(r'(?<=[@\w\d_])\s*([*]|/)', + (r if self.language is Language.C + else r.replace('**', '@__f2py_DOUBLE_STAR@'))) + if len(operands) > 1: + operands = restore(operands) + if self.language is not Language.C: + operands = [operand.replace('@__f2py_DOUBLE_STAR@', '**') + for operand in operands] + # Expression is an arithmetic product + result = self.process(operands[0]) + for op, operand in zip(operands[1::2], operands[2::2]): + operand = self.process(operand) + op = op.strip() + if op == '*': + result *= operand + else: + assert op == '/' + result /= operand + return result + + # referencing/dereferencing + if r.startswith(('*', '&')): + op = {'*': Op.DEREF, '&': Op.REF}[r[0]] + operand = self.process(restore(r[1:])) + return Expr(op, operand) + + # exponentiation operations + if self.language is not Language.C and '**' in r: + operands = list(reversed(restore(r.split('**')))) + result = self.process(operands[0]) + for operand in operands[1:]: + operand = self.process(operand) + result = operand ** result + return result + + # int-literal-constant + m = re.match(r'\A({digit_string})({kind}|)\Z'.format( + digit_string=r'\d+', + kind=r'_(\d+|\w[\w\d_]*)'), r) + if m: + value, _, kind = m.groups() + if kind and kind.isdigit(): + kind = int(kind) + return as_integer(int(value), kind or 4) + + # real-literal-constant + m = re.match(r'\A({significant}({exponent}|)|\d+{exponent})({kind}|)\Z' + .format( + significant=r'[.]\d+|\d+[.]\d*', + exponent=r'[edED][+-]?\d+', + kind=r'_(\d+|\w[\w\d_]*)'), r) + if m: + value, _, _, kind = m.groups() + if kind and kind.isdigit(): + kind = int(kind) + value = value.lower() + if 'd' in value: + return as_real(float(value.replace('d', 'e')), kind or 8) + return as_real(float(value), kind or 4) + + # string-literal-constant with kind parameter specification + if r in self.quotes_map: + kind = r[:r.find('@')] + return as_string(self.quotes_map[r], kind or 1) + + # array constructor or literal complex constant or + # parenthesized expression + if r in raw_symbols_map: + paren = _get_parenthesis_kind(r) + items = self.process(restore(raw_symbols_map[r]), + 'expr' if paren == 'ROUND' else 'args') + if paren == 'ROUND': + if isinstance(items, Expr): + return items + if paren in ['ROUNDDIV', 'SQUARE']: + # Expression is a array constructor + if isinstance(items, Expr): + items = (items,) + return as_array(items) + + # function call/indexing + m = re.match(r'\A(.+)\s*(@__f2py_PARENTHESIS_(ROUND|SQUARE)_\d+@)\Z', + r) + if m: + target, args, paren = m.groups() + target = self.process(restore(target)) + args = self.process(restore(args)[1:-1], 'args') + if not isinstance(args, tuple): + args = args, + if paren == 'ROUND': + kwargs = dict((a.left, a.right) for a in args + if isinstance(a, _Pair)) + args = tuple(a for a in args if not isinstance(a, _Pair)) + # Warning: this could also be Fortran indexing operation.. + return as_apply(target, *args, **kwargs) + else: + # Expression is a C/Python indexing operation + # (e.g. used in .pyf files) + assert paren == 'SQUARE' + return target[args] + + # Fortran standard conforming identifier + m = re.match(r'\A\w[\w\d_]*\Z', r) + if m: + return as_symbol(r) + + # fall-back to symbol + r = self.finalize_string(restore(r)) + ewarn( + f'fromstring: treating {r!r} as symbol (original={self.original})') + return as_symbol(r) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..5ecb68077b943bf401a3ef268656a67c094078ea --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/__init__.py @@ -0,0 +1,15 @@ +from numpy.testing import IS_WASM, IS_EDITABLE +import pytest + +if IS_WASM: + pytest.skip( + "WASM/Pyodide does not use or support Fortran", + allow_module_level=True + ) + + +if IS_EDITABLE: + pytest.skip( + "Editable install doesn't support tests with a compile step", + allow_module_level=True + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/foo.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/foo.f90 new file mode 100644 index 0000000000000000000000000000000000000000..76d16aae2b57160228f41c00128ac0067eaf5249 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/foo.f90 @@ -0,0 +1,34 @@ +module ops_module + + abstract interface + subroutine op(x, y, z) + integer, intent(in) :: x, y + integer, intent(out) :: z + end subroutine + end interface + +contains + + subroutine foo(x, y, r1, r2) + integer, intent(in) :: x, y + integer, intent(out) :: r1, r2 + procedure (op) add1, add2 + procedure (op), pointer::p + p=>add1 + call p(x, y, r1) + p=>add2 + call p(x, y, r2) + end subroutine +end module + +subroutine add1(x, y, z) + integer, intent(in) :: x, y + integer, intent(out) :: z + z = x + y +end subroutine + +subroutine add2(x, y, z) + integer, intent(in) :: x, y + integer, intent(out) :: z + z = x + 2 * y +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/gh18403_mod.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/gh18403_mod.f90 new file mode 100644 index 0000000000000000000000000000000000000000..36791e469f5aee1d5fe15b121abeb9c62a45fadf --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/abstract_interface/gh18403_mod.f90 @@ -0,0 +1,6 @@ +module test + abstract interface + subroutine foo() + end subroutine + end interface +end module test diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/array_from_pyobj/wrapmodule.c b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/array_from_pyobj/wrapmodule.c new file mode 100644 index 0000000000000000000000000000000000000000..b66672a43e21dd0641bb29085db716181f5e94ce --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/array_from_pyobj/wrapmodule.c @@ -0,0 +1,235 @@ +/* + * This file was auto-generated with f2py (version:2_1330) and hand edited by + * Pearu for testing purposes. Do not edit this file unless you know what you + * are doing!!! + */ + +#ifdef __cplusplus +extern "C" { +#endif + +/*********************** See f2py2e/cfuncs.py: includes ***********************/ + +#define PY_SSIZE_T_CLEAN +#include +#include "fortranobject.h" +#include + +static PyObject *wrap_error; +static PyObject *wrap_module; + +/************************************ call ************************************/ +static char doc_f2py_rout_wrap_call[] = "\ +Function signature:\n\ + arr = call(type_num,dims,intent,obj)\n\ +Required arguments:\n" +" type_num : input int\n" +" dims : input int-sequence\n" +" intent : input int\n" +" obj : input python object\n" +"Return objects:\n" +" arr : array"; +static PyObject *f2py_rout_wrap_call(PyObject *capi_self, + PyObject *capi_args) { + PyObject * volatile capi_buildvalue = NULL; + int type_num = 0; + int elsize = 0; + npy_intp *dims = NULL; + PyObject *dims_capi = Py_None; + int rank = 0; + int intent = 0; + PyArrayObject *capi_arr_tmp = NULL; + PyObject *arr_capi = Py_None; + int i; + + if (!PyArg_ParseTuple(capi_args,"iiOiO|:wrap.call",\ + &type_num,&elsize,&dims_capi,&intent,&arr_capi)) + return NULL; + rank = PySequence_Length(dims_capi); + dims = malloc(rank*sizeof(npy_intp)); + for (i=0;ikind, + PyArray_DESCR(arr)->type, + PyArray_TYPE(arr), + PyArray_ITEMSIZE(arr), + PyDataType_ALIGNMENT(PyArray_DESCR(arr)), + PyArray_FLAGS(arr), + PyArray_ITEMSIZE(arr)); +} + +static PyMethodDef f2py_module_methods[] = { + + {"call",f2py_rout_wrap_call,METH_VARARGS,doc_f2py_rout_wrap_call}, + {"array_attrs",f2py_rout_wrap_attrs,METH_VARARGS,doc_f2py_rout_wrap_attrs}, + {NULL,NULL} +}; + +static struct PyModuleDef moduledef = { + PyModuleDef_HEAD_INIT, + "test_array_from_pyobj_ext", + NULL, + -1, + f2py_module_methods, + NULL, + NULL, + NULL, + NULL +}; + +PyMODINIT_FUNC PyInit_test_array_from_pyobj_ext(void) { + PyObject *m,*d, *s; + m = wrap_module = PyModule_Create(&moduledef); + Py_SET_TYPE(&PyFortran_Type, &PyType_Type); + import_array(); + if (PyErr_Occurred()) + Py_FatalError("can't initialize module wrap (failed to import numpy)"); + d = PyModule_GetDict(m); + s = PyUnicode_FromString("This module 'wrap' is auto-generated with f2py (version:2_1330).\nFunctions:\n" + " arr = call(type_num,dims,intent,obj)\n" + "."); + PyDict_SetItemString(d, "__doc__", s); + wrap_error = PyErr_NewException ("wrap.error", NULL, NULL); + Py_DECREF(s); + +#define ADDCONST(NAME, CONST) \ + s = PyLong_FromLong(CONST); \ + PyDict_SetItemString(d, NAME, s); \ + Py_DECREF(s) + + ADDCONST("F2PY_INTENT_IN", F2PY_INTENT_IN); + ADDCONST("F2PY_INTENT_INOUT", F2PY_INTENT_INOUT); + ADDCONST("F2PY_INTENT_OUT", F2PY_INTENT_OUT); + ADDCONST("F2PY_INTENT_HIDE", F2PY_INTENT_HIDE); + ADDCONST("F2PY_INTENT_CACHE", F2PY_INTENT_CACHE); + ADDCONST("F2PY_INTENT_COPY", F2PY_INTENT_COPY); + ADDCONST("F2PY_INTENT_C", F2PY_INTENT_C); + ADDCONST("F2PY_OPTIONAL", F2PY_OPTIONAL); + ADDCONST("F2PY_INTENT_INPLACE", F2PY_INTENT_INPLACE); + ADDCONST("NPY_BOOL", NPY_BOOL); + ADDCONST("NPY_BYTE", NPY_BYTE); + ADDCONST("NPY_UBYTE", NPY_UBYTE); + ADDCONST("NPY_SHORT", NPY_SHORT); + ADDCONST("NPY_USHORT", NPY_USHORT); + ADDCONST("NPY_INT", NPY_INT); + ADDCONST("NPY_UINT", NPY_UINT); + ADDCONST("NPY_INTP", NPY_INTP); + ADDCONST("NPY_UINTP", NPY_UINTP); + ADDCONST("NPY_LONG", NPY_LONG); + ADDCONST("NPY_ULONG", NPY_ULONG); + ADDCONST("NPY_LONGLONG", NPY_LONGLONG); + ADDCONST("NPY_ULONGLONG", NPY_ULONGLONG); + ADDCONST("NPY_FLOAT", NPY_FLOAT); + ADDCONST("NPY_DOUBLE", NPY_DOUBLE); + ADDCONST("NPY_LONGDOUBLE", NPY_LONGDOUBLE); + ADDCONST("NPY_CFLOAT", NPY_CFLOAT); + ADDCONST("NPY_CDOUBLE", NPY_CDOUBLE); + ADDCONST("NPY_CLONGDOUBLE", NPY_CLONGDOUBLE); + ADDCONST("NPY_OBJECT", NPY_OBJECT); + ADDCONST("NPY_STRING", NPY_STRING); + ADDCONST("NPY_UNICODE", NPY_UNICODE); + ADDCONST("NPY_VOID", NPY_VOID); + ADDCONST("NPY_NTYPES_LEGACY", NPY_NTYPES_LEGACY); + ADDCONST("NPY_NOTYPE", NPY_NOTYPE); + ADDCONST("NPY_USERDEF", NPY_USERDEF); + + ADDCONST("CONTIGUOUS", NPY_ARRAY_C_CONTIGUOUS); + ADDCONST("FORTRAN", NPY_ARRAY_F_CONTIGUOUS); + ADDCONST("OWNDATA", NPY_ARRAY_OWNDATA); + ADDCONST("FORCECAST", NPY_ARRAY_FORCECAST); + ADDCONST("ENSURECOPY", NPY_ARRAY_ENSURECOPY); + ADDCONST("ENSUREARRAY", NPY_ARRAY_ENSUREARRAY); + ADDCONST("ALIGNED", NPY_ARRAY_ALIGNED); + ADDCONST("WRITEABLE", NPY_ARRAY_WRITEABLE); + ADDCONST("WRITEBACKIFCOPY", NPY_ARRAY_WRITEBACKIFCOPY); + + ADDCONST("BEHAVED", NPY_ARRAY_BEHAVED); + ADDCONST("BEHAVED_NS", NPY_ARRAY_BEHAVED_NS); + ADDCONST("CARRAY", NPY_ARRAY_CARRAY); + ADDCONST("FARRAY", NPY_ARRAY_FARRAY); + ADDCONST("CARRAY_RO", NPY_ARRAY_CARRAY_RO); + ADDCONST("FARRAY_RO", NPY_ARRAY_FARRAY_RO); + ADDCONST("DEFAULT", NPY_ARRAY_DEFAULT); + ADDCONST("UPDATE_ALL", NPY_ARRAY_UPDATE_ALL); + +#undef ADDCONST + + if (PyErr_Occurred()) + Py_FatalError("can't initialize module wrap"); + +#ifdef F2PY_REPORT_ATEXIT + on_exit(f2py_report_on_exit,(void*)"array_from_pyobj.wrap.call"); +#endif + +#if Py_GIL_DISABLED + // signal whether this module supports running with the GIL disabled + PyUnstable_Module_SetGIL(m, Py_MOD_GIL_NOT_USED); +#endif + + return m; +} +#ifdef __cplusplus +} +#endif diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/.f2py_f2cmap b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/.f2py_f2cmap new file mode 100644 index 0000000000000000000000000000000000000000..2665f89b52d2f17ce7b0a857bea73ec5fab2df88 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/.f2py_f2cmap @@ -0,0 +1 @@ +dict(real=dict(rk="double")) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_free.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_free.f90 new file mode 100644 index 0000000000000000000000000000000000000000..b301710f5dda005e67e40cc21a5e0d62d0ec116a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_free.f90 @@ -0,0 +1,34 @@ + +subroutine sum(x, res) + implicit none + real, intent(in) :: x(:) + real, intent(out) :: res + + integer :: i + + !print *, "sum: size(x) = ", size(x) + + res = 0.0 + + do i = 1, size(x) + res = res + x(i) + enddo + +end subroutine sum + +function fsum(x) result (res) + implicit none + real, intent(in) :: x(:) + real :: res + + integer :: i + + !print *, "fsum: size(x) = ", size(x) + + res = 0.0 + + do i = 1, size(x) + res = res + x(i) + enddo + +end function fsum diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_mod.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_mod.f90 new file mode 100644 index 0000000000000000000000000000000000000000..cbe6317ed8f39f8a633b058a4ab64fe1797ea7b0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_mod.f90 @@ -0,0 +1,41 @@ + +module mod + +contains + +subroutine sum(x, res) + implicit none + real, intent(in) :: x(:) + real, intent(out) :: res + + integer :: i + + !print *, "sum: size(x) = ", size(x) + + res = 0.0 + + do i = 1, size(x) + res = res + x(i) + enddo + +end subroutine sum + +function fsum(x) result (res) + implicit none + real, intent(in) :: x(:) + real :: res + + integer :: i + + !print *, "fsum: size(x) = ", size(x) + + res = 0.0 + + do i = 1, size(x) + res = res + x(i) + enddo + +end function fsum + + +end module mod diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_use.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_use.f90 new file mode 100644 index 0000000000000000000000000000000000000000..337465ac540440fc8e8e10d23757af202e8a52a4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/foo_use.f90 @@ -0,0 +1,19 @@ +subroutine sum_with_use(x, res) + use precision + + implicit none + + real(kind=rk), intent(in) :: x(:) + real(kind=rk), intent(out) :: res + + integer :: i + + !print *, "size(x) = ", size(x) + + res = 0.0 + + do i = 1, size(x) + res = res + x(i) + enddo + + end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/precision.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/precision.f90 new file mode 100644 index 0000000000000000000000000000000000000000..ed6c70cbbe7dadfd50b616a8cc1570939ef5afd8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/assumed_shape/precision.f90 @@ -0,0 +1,4 @@ +module precision + integer, parameter :: rk = selected_real_kind(8) + integer, parameter :: ik = selected_real_kind(4) +end module diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/block_docstring/foo.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/block_docstring/foo.f new file mode 100644 index 0000000000000000000000000000000000000000..c8315f12ce0f5cf3dbc4c965ad8843d0c10441cd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/block_docstring/foo.f @@ -0,0 +1,6 @@ + SUBROUTINE FOO() + INTEGER BAR(2, 3) + + COMMON /BLOCK/ BAR + RETURN + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/foo.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/foo.f new file mode 100644 index 0000000000000000000000000000000000000000..ba397bb38133faa8d502807368074e6b296749b9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/foo.f @@ -0,0 +1,62 @@ + subroutine t(fun,a) + integer a +cf2py intent(out) a + external fun + call fun(a) + end + + subroutine func(a) +cf2py intent(in,out) a + integer a + a = a + 11 + end + + subroutine func0(a) +cf2py intent(out) a + integer a + a = 11 + end + + subroutine t2(a) +cf2py intent(callback) fun + integer a +cf2py intent(out) a + external fun + call fun(a) + end + + subroutine string_callback(callback, a) + external callback + double precision callback + double precision a + character*1 r +cf2py intent(out) a + r = 'r' + a = callback(r) + end + + subroutine string_callback_array(callback, cu, lencu, a) + external callback + integer callback + integer lencu + character*8 cu(lencu) + integer a +cf2py intent(out) a + + a = callback(cu, lencu) + end + + subroutine hidden_callback(a, r) + external global_f +cf2py intent(callback, hide) global_f + integer a, r, global_f +cf2py intent(out) r + r = global_f(a) + end + + subroutine hidden_callback2(a, r) + external global_f + integer a, r, global_f +cf2py intent(out) r + r = global_f(a) + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh17797.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh17797.f90 new file mode 100644 index 0000000000000000000000000000000000000000..49853afd766a90e521104081bf77236a252d3c70 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh17797.f90 @@ -0,0 +1,7 @@ +function gh17797(f, y) result(r) + external f + integer(8) :: r, f + integer(8), dimension(:) :: y + r = f(0) + r = r + sum(y) +end function gh17797 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh18335.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh18335.f90 new file mode 100644 index 0000000000000000000000000000000000000000..92b6d7540c827d20c7d2169c56f14653954d7ff9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh18335.f90 @@ -0,0 +1,17 @@ + ! When gh18335_workaround is defined as an extension, + ! the issue cannot be reproduced. + !subroutine gh18335_workaround(f, y) + ! implicit none + ! external f + ! integer(kind=1) :: y(1) + ! call f(y) + !end subroutine gh18335_workaround + + function gh18335(f) result (r) + implicit none + external f + integer(kind=1) :: y(1), r + y(1) = 123 + call f(y) + r = y(1) + end function gh18335 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.f new file mode 100644 index 0000000000000000000000000000000000000000..ba727a10a07ebec77845f8a67746cf5d5bb3d32a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.f @@ -0,0 +1,10 @@ + SUBROUTINE FOO(FUN,R) + EXTERNAL FUN + INTEGER I + REAL*8 R, FUN +Cf2py intent(out) r + R = 0D0 + DO I=-5,5 + R = R + FUN(I) + ENDDO + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.pyf new file mode 100644 index 0000000000000000000000000000000000000000..f12011153370b022a2686222655a12245a1eb14e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh25211.pyf @@ -0,0 +1,18 @@ +python module __user__routines + interface + function fun(i) result (r) + integer :: i + real*8 :: r + end function fun + end interface +end python module __user__routines + +python module callback2 + interface + subroutine foo(f,r) + use __user__routines, f=>fun + external f + real*8 intent(out) :: r + end subroutine foo + end interface +end python module callback2 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh26681.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh26681.f90 new file mode 100644 index 0000000000000000000000000000000000000000..00c0ec93df059b0d1952471fae440016abbac3e5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/callback/gh26681.f90 @@ -0,0 +1,18 @@ +module utils + implicit none + contains + subroutine my_abort(message) + implicit none + character(len=*), intent(in) :: message + !f2py callstatement PyErr_SetString(PyExc_ValueError, message);f2py_success = 0; + !f2py callprotoargument char* + write(0,*) "THIS SHOULD NOT APPEAR" + stop 1 + end subroutine my_abort + + subroutine do_something(message) + !f2py intent(callback, hide) mypy_abort + character(len=*), intent(in) :: message + call mypy_abort(message) + end subroutine do_something +end module utils diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/gh_22819.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/gh_22819.pyf new file mode 100644 index 0000000000000000000000000000000000000000..8eb5bb106a366ec214944c19e53d9788c0596e55 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/gh_22819.pyf @@ -0,0 +1,6 @@ +python module test_22819 + interface + subroutine hello() + end subroutine hello + end interface +end python module test_22819 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hi77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hi77.f new file mode 100644 index 0000000000000000000000000000000000000000..8b916ebe0459eb812baad694aa671011a1381f8a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hi77.f @@ -0,0 +1,3 @@ + SUBROUTINE HI + PRINT*, "HELLO WORLD" + END SUBROUTINE diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hiworld.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hiworld.f90 new file mode 100644 index 0000000000000000000000000000000000000000..981f877547a4caec513a15dea1401bbc98ce3f23 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/cli/hiworld.f90 @@ -0,0 +1,3 @@ +function hi() + print*, "Hello World" +end function diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/block.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/block.f new file mode 100644 index 0000000000000000000000000000000000000000..7ea7968fe935182bd17a697b316569546937b715 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/block.f @@ -0,0 +1,11 @@ + SUBROUTINE INITCB + DOUBLE PRECISION LONG + CHARACTER STRING + INTEGER OK + + COMMON /BLOCK/ LONG, STRING, OK + LONG = 1.0 + STRING = '2' + OK = 3 + RETURN + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/gh19161.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/gh19161.f90 new file mode 100644 index 0000000000000000000000000000000000000000..a2f40735ad66a3cb70cfc10a3938882c77ff54ea --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/common/gh19161.f90 @@ -0,0 +1,10 @@ +module typedefmod + use iso_fortran_env, only: real32 +end module typedefmod + +module data + use typedefmod, only: real32 + implicit none + real(kind=real32) :: x + common/test/x +end module data diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/accesstype.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/accesstype.f90 new file mode 100644 index 0000000000000000000000000000000000000000..e2cbd445daf57f21e2d727f42a3891ec28725175 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/accesstype.f90 @@ -0,0 +1,13 @@ +module foo + public + type, private, bind(c) :: a + integer :: i + end type a + type, bind(c) :: b_ + integer :: j + end type b_ + public :: b_ + type :: c + integer :: k + end type c +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/common_with_division.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/common_with_division.f new file mode 100644 index 0000000000000000000000000000000000000000..4aa12cf6dcee9b4936d10f1c5d55f8d59762062a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/common_with_division.f @@ -0,0 +1,17 @@ + subroutine common_with_division + integer lmu,lb,lub,lpmin + parameter (lmu=1) + parameter (lb=20) +c crackfortran fails to parse this +c parameter (lub=(lb-1)*lmu+1) +c crackfortran can successfully parse this though + parameter (lub=lb*lmu-lmu+1) + parameter (lpmin=2) + +c crackfortran fails to parse this correctly +c common /mortmp/ ctmp((lub*(lub+1)*(lub+1))/lpmin+1) + + common /mortmp/ ctmp(lub/lpmin+1) + + return + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_common.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_common.f new file mode 100644 index 0000000000000000000000000000000000000000..5ffd865c837997f8aae2d8faebfd519df61d8cd2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_common.f @@ -0,0 +1,8 @@ + BLOCK DATA PARAM_INI + COMMON /MYCOM/ MYDATA + DATA MYDATA /0/ + END + SUBROUTINE SUB1 + COMMON /MYCOM/ MYDATA + MYDATA = MYDATA + 1 + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_multiplier.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_multiplier.f new file mode 100644 index 0000000000000000000000000000000000000000..19ff8a83e97b7a1fa9ef82a2f4d5241ec422cb01 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_multiplier.f @@ -0,0 +1,5 @@ + BLOCK DATA MYBLK + IMPLICIT DOUBLE PRECISION (A-H,O-Z) + COMMON /MYCOM/ IVAR1, IVAR2, IVAR3, IVAR4, EVAR5 + DATA IVAR1, IVAR2, IVAR3, IVAR4, EVAR5 /2*3,2*2,0.0D0/ + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_stmts.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_stmts.f90 new file mode 100644 index 0000000000000000000000000000000000000000..576c5e485baf209aea79f566fc09cb20138a0a25 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_stmts.f90 @@ -0,0 +1,20 @@ +! gh-23276 +module cmplxdat + implicit none + integer :: i, j + real :: x, y + real, dimension(2) :: z + real(kind=8) :: pi + complex(kind=8), target :: medium_ref_index + complex(kind=8), target :: ref_index_one, ref_index_two + complex(kind=8), dimension(2) :: my_array + real(kind=8), dimension(3) :: my_real_array = (/1.0d0, 2.0d0, 3.0d0/) + + data i, j / 2, 3 / + data x, y / 1.5, 2.0 / + data z / 3.5, 7.0 / + data medium_ref_index / (1.d0, 0.d0) / + data ref_index_one, ref_index_two / (13.0d0, 21.0d0), (-30.0d0, 43.0d0) / + data my_array / (1.0d0, 2.0d0), (-3.0d0, 4.0d0) / + data pi / 3.1415926535897932384626433832795028841971693993751058209749445923078164062d0 / +end module cmplxdat diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_with_comments.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_with_comments.f new file mode 100644 index 0000000000000000000000000000000000000000..4128f004e840087ab8e08a06c76995b249a561b0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/data_with_comments.f @@ -0,0 +1,8 @@ + BLOCK DATA PARAM_INI + COMMON /MYCOM/ MYTAB + INTEGER MYTAB(3) + DATA MYTAB/ + * 0, ! 1 and more commenty stuff + * 4, ! 2 + * 0 / + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/foo_deps.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/foo_deps.f90 new file mode 100644 index 0000000000000000000000000000000000000000..e327b25c81986b2191fc740991ca9e907b5b0fb6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/foo_deps.f90 @@ -0,0 +1,6 @@ +module foo + type bar + character(len = 4) :: text + end type bar + type(bar), parameter :: abar = bar('abar') +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh15035.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh15035.f new file mode 100644 index 0000000000000000000000000000000000000000..1bb2e6745952cb10067116e9ae3337c8314061ee --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh15035.f @@ -0,0 +1,16 @@ + subroutine subb(k) + real(8), intent(inout) :: k(:) + k=k+1 + endsubroutine + + subroutine subc(w,k) + real(8), intent(in) :: w(:) + real(8), intent(out) :: k(size(w)) + k=w+1 + endsubroutine + + function t0(value) + character value + character t0 + t0 = value + endfunction diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh17859.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh17859.f new file mode 100644 index 0000000000000000000000000000000000000000..995953845c5eb1b4fa2bdf70c18e0296d38e5252 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh17859.f @@ -0,0 +1,12 @@ + integer(8) function external_as_statement(fcn) + implicit none + external fcn + integer(8) :: fcn + external_as_statement = fcn(0) + end + + integer(8) function external_as_attribute(fcn) + implicit none + integer(8), external :: fcn + external_as_attribute = fcn(0) + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh22648.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh22648.pyf new file mode 100644 index 0000000000000000000000000000000000000000..b3454f18635fc8fe2b8ea5d15f85a9d77af9a22b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh22648.pyf @@ -0,0 +1,7 @@ +python module iri16py ! in + interface ! in :iri16py + block data ! in :iri16py:iridreg_modified.for + COMMON /fircom/ eden,tabhe,tabla,tabmo,tabza,tabfl + end block data + end interface +end python module iri16py diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23533.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23533.f new file mode 100644 index 0000000000000000000000000000000000000000..db522afa7d2fdd09e26f2d02a649a659d9ed7d60 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23533.f @@ -0,0 +1,5 @@ + SUBROUTINE EXAMPLE( ) + IF( .TRUE. ) THEN + CALL DO_SOMETHING() + END IF ! ** .TRUE. ** + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598.f90 new file mode 100644 index 0000000000000000000000000000000000000000..e0dffb5ef29e3d5ba853ff4dfeda57b2bed6a9dc --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598.f90 @@ -0,0 +1,4 @@ +integer function intproduct(a, b) result(res) + integer, intent(in) :: a, b + res = a*b +end function diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598Warn.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598Warn.f90 new file mode 100644 index 0000000000000000000000000000000000000000..3b44efc5ef16e9f7e1105229371ae48ecc069ee5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23598Warn.f90 @@ -0,0 +1,11 @@ +module test_bug + implicit none + private + public :: intproduct + +contains + integer function intproduct(a, b) result(res) + integer, intent(in) :: a, b + res = a*b + end function +end module diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23879.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23879.f90 new file mode 100644 index 0000000000000000000000000000000000000000..fac262d53c9d3f0f3a5ba1138594f5b694b95717 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh23879.f90 @@ -0,0 +1,20 @@ +module gh23879 + implicit none + private + public :: foo + + contains + + subroutine foo(a, b) + integer, intent(in) :: a + integer, intent(out) :: b + b = a + call bar(b) + end subroutine + + subroutine bar(x) + integer, intent(inout) :: x + x = 2*x + end subroutine + + end module gh23879 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh27697.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh27697.f90 new file mode 100644 index 0000000000000000000000000000000000000000..a5eae4e79b25cd086df4ea2aa26d39ae48a8ca88 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh27697.f90 @@ -0,0 +1,12 @@ +module utils + implicit none + contains + subroutine my_abort(message) + implicit none + character(len=*), intent(in) :: message + !f2py callstatement PyErr_SetString(PyExc_ValueError, message);f2py_success = 0; + !f2py callprotoargument char* + write(0,*) "THIS SHOULD NOT APPEAR" + stop 1 + end subroutine my_abort +end module utils diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh2848.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh2848.f90 new file mode 100644 index 0000000000000000000000000000000000000000..31ea9327a4d9134011cfc668cc88961968756d77 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/gh2848.f90 @@ -0,0 +1,13 @@ + subroutine gh2848( & + ! first 2 parameters + par1, par2,& + ! last 2 parameters + par3, par4) + + integer, intent(in) :: par1, par2 + integer, intent(out) :: par3, par4 + + par3 = par1 + par4 = par2 + + end subroutine gh2848 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/operators.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/operators.f90 new file mode 100644 index 0000000000000000000000000000000000000000..1d060a3d2bd5abd12732e6003cec53f36baeba7c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/operators.f90 @@ -0,0 +1,49 @@ +module foo + type bar + character(len = 32) :: item + end type bar + interface operator(.item.) + module procedure item_int, item_real + end interface operator(.item.) + interface operator(==) + module procedure items_are_equal + end interface operator(==) + interface assignment(=) + module procedure get_int, get_real + end interface assignment(=) +contains + function item_int(val) result(elem) + integer, intent(in) :: val + type(bar) :: elem + + write(elem%item, "(I32)") val + end function item_int + + function item_real(val) result(elem) + real, intent(in) :: val + type(bar) :: elem + + write(elem%item, "(1PE32.12)") val + end function item_real + + function items_are_equal(val1, val2) result(equal) + type(bar), intent(in) :: val1, val2 + logical :: equal + + equal = (val1%item == val2%item) + end function items_are_equal + + subroutine get_real(rval, item) + real, intent(out) :: rval + type(bar), intent(in) :: item + + read(item%item, *) rval + end subroutine get_real + + subroutine get_int(rval, item) + integer, intent(out) :: rval + type(bar), intent(in) :: item + + read(item%item, *) rval + end subroutine get_int +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/privatemod.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/privatemod.f90 new file mode 100644 index 0000000000000000000000000000000000000000..2674c214767b33663e51ee1d32ad7a1792c92680 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/privatemod.f90 @@ -0,0 +1,11 @@ +module foo + private + integer :: a + public :: setA + integer :: b +contains + subroutine setA(v) + integer, intent(in) :: v + a = v + end subroutine setA +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/publicmod.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/publicmod.f90 new file mode 100644 index 0000000000000000000000000000000000000000..1db76e3fe06828ba0d1b640720ec70422cde6872 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/publicmod.f90 @@ -0,0 +1,10 @@ +module foo + public + integer, private :: a + public :: setA +contains + subroutine setA(v) + integer, intent(in) :: v + a = v + end subroutine setA +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/pubprivmod.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/pubprivmod.f90 new file mode 100644 index 0000000000000000000000000000000000000000..46bef7cb91122281ddac7d0f0474c2c01b2a5e6f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/pubprivmod.f90 @@ -0,0 +1,10 @@ +module foo + public + integer, private :: a + integer :: b +contains + subroutine setA(v) + integer, intent(in) :: v + a = v + end subroutine setA +end module foo diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/unicode_comment.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/unicode_comment.f90 new file mode 100644 index 0000000000000000000000000000000000000000..13515ce98c50e88a03004161fb135e8502005a82 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/crackfortran/unicode_comment.f90 @@ -0,0 +1,4 @@ +subroutine foo(x) + real(8), intent(in) :: x + ! Écrit à l'écran la valeur de x +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/.f2py_f2cmap b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/.f2py_f2cmap new file mode 100644 index 0000000000000000000000000000000000000000..a4425f8876f5b7ec9c72a11862a8cd4574d33ea8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/.f2py_f2cmap @@ -0,0 +1 @@ +dict(real=dict(real32='float', real64='double'), integer=dict(int64='long_long')) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/isoFortranEnvMap.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/isoFortranEnvMap.f90 new file mode 100644 index 0000000000000000000000000000000000000000..1e1dc1d4054b36d2b2d9104e8d6ab708361bfbe8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/f2cmap/isoFortranEnvMap.f90 @@ -0,0 +1,9 @@ + subroutine func1(n, x, res) + use, intrinsic :: iso_fortran_env, only: int64, real64 + implicit none + integer(int64), intent(in) :: n + real(real64), intent(in) :: x(n) + real(real64), intent(out) :: res +!f2py intent(hide) :: n + res = sum(x) + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/isocintrin/isoCtests.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/isocintrin/isoCtests.f90 new file mode 100644 index 0000000000000000000000000000000000000000..765f7c1ce6608a0c8588b6c20edd052e2d3e07bf --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/isocintrin/isoCtests.f90 @@ -0,0 +1,34 @@ + module coddity + use iso_c_binding, only: c_double, c_int, c_int64_t + implicit none + contains + subroutine c_add(a, b, c) bind(c, name="c_add") + real(c_double), intent(in) :: a, b + real(c_double), intent(out) :: c + c = a + b + end subroutine c_add + ! gh-9693 + function wat(x, y) result(z) bind(c) + integer(c_int), intent(in) :: x, y + integer(c_int) :: z + + z = x + 7 + end function wat + ! gh-25207 + subroutine c_add_int64(a, b, c) bind(c) + integer(c_int64_t), intent(in) :: a, b + integer(c_int64_t), intent(out) :: c + c = a + b + end subroutine c_add_int64 + ! gh-25207 + subroutine add_arr(A, B, C) + integer(c_int64_t), intent(in) :: A(3) + integer(c_int64_t), intent(in) :: B(3) + integer(c_int64_t), intent(out) :: C(3) + integer :: j + + do j = 1, 3 + C(j) = A(j)+B(j) + end do + end subroutine + end module coddity diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/kind/foo.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/kind/foo.f90 new file mode 100644 index 0000000000000000000000000000000000000000..d3d15cfb20a15004ed86e45dc91792d1c089033a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/kind/foo.f90 @@ -0,0 +1,20 @@ + + +subroutine selectedrealkind(p, r, res) + implicit none + + integer, intent(in) :: p, r + !f2py integer :: r=0 + integer, intent(out) :: res + res = selected_real_kind(p, r) + +end subroutine + +subroutine selectedintkind(p, res) + implicit none + + integer, intent(in) :: p + integer, intent(out) :: res + res = selected_int_kind(p) + +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo.f new file mode 100644 index 0000000000000000000000000000000000000000..c34742578f8551729fdc3474d86e92c87e2868d2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo.f @@ -0,0 +1,5 @@ + subroutine bar11(a) +cf2py intent(out) a + integer a + a = 11 + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_fixed.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_fixed.f90 new file mode 100644 index 0000000000000000000000000000000000000000..7543a6acb7375872388cb9f2ced109db5faa17b0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_fixed.f90 @@ -0,0 +1,8 @@ + module foo_fixed + contains + subroutine bar12(a) +!f2py intent(out) a + integer a + a = 12 + end subroutine bar12 + end module foo_fixed diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_free.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_free.f90 new file mode 100644 index 0000000000000000000000000000000000000000..c1b641f13ec2943b9dd23ba85beecda738b51825 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/mixed/foo_free.f90 @@ -0,0 +1,8 @@ +module foo_free +contains + subroutine bar13(a) + !f2py intent(out) a + integer a + a = 13 + end subroutine bar13 +end module foo_free diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/data.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/data.f90 new file mode 100644 index 0000000000000000000000000000000000000000..483d13ceb95c08bf38b74d8218932fc109792b09 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/data.f90 @@ -0,0 +1,8 @@ +module data + real(8) :: shift +contains + subroutine set_shift(in_shift) + real(8), intent(in) :: in_shift + shift = in_shift + end subroutine set_shift +end module data diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/use_data.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/use_data.f90 new file mode 100644 index 0000000000000000000000000000000000000000..b3fae8b875d03d75199f4cf06d544edb4aab1a89 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh25337/use_data.f90 @@ -0,0 +1,6 @@ +subroutine shift_a(dim_a, a) + use data, only: shift + integer, intent(in) :: dim_a + real(8), intent(inout), dimension(dim_a) :: a + a = a + shift +end subroutine shift_a diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_no_public_entities.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_no_public_entities.f90 new file mode 100644 index 0000000000000000000000000000000000000000..07adce591f35756ca2fe2f3e2dd38fcaf01d2fad --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_no_public_entities.f90 @@ -0,0 +1,21 @@ + module mod2 + implicit none + private mod2_func1 + contains + + subroutine mod2_func1() + print*, "mod2_func1" + end subroutine mod2_func1 + + end module mod2 + + module mod1 + implicit none + private :: mod1_func1 + contains + + subroutine mod1_func1() + print*, "mod1_func1" + end subroutine mod1_func1 + + end module mod1 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_one_public_routine.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_one_public_routine.f90 new file mode 100644 index 0000000000000000000000000000000000000000..b7fb95b010a6657df3abeed4c71466b82dcfdab3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/gh26920/two_mods_with_one_public_routine.f90 @@ -0,0 +1,21 @@ + module mod2 + implicit none + PUBLIC :: mod2_func1 + contains + + subroutine mod2_func1() + print*, "mod2_func1" + end subroutine mod2_func1 + + end module mod2 + + module mod1 + implicit none + PUBLIC :: mod1_func1 + contains + + subroutine mod1_func1() + print*, "mod1_func1" + end subroutine mod1_func1 + + end module mod1 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/module_data_docstring.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/module_data_docstring.f90 new file mode 100644 index 0000000000000000000000000000000000000000..4505e0cbc31e50a75df94b30cd53cf923659379d --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/module_data_docstring.f90 @@ -0,0 +1,12 @@ +module mod + integer :: i + integer :: x(4) + real, dimension(2,3) :: a + real, allocatable, dimension(:,:) :: b +contains + subroutine foo + integer :: k + k = 1 + a(1,2) = a(1,2)+3 + end subroutine foo +end module mod diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/use_modules.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/use_modules.f90 new file mode 100644 index 0000000000000000000000000000000000000000..aa40c86ca39d1dbcfacca9dcb2addbc6ede73140 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/modules/use_modules.f90 @@ -0,0 +1,20 @@ +module mathops + implicit none +contains + function add(a, b) result(c) + integer, intent(in) :: a, b + integer :: c + c = a + b + end function add +end module mathops + +module useops + use mathops, only: add + implicit none +contains + function sum_and_double(a, b) result(d) + integer, intent(in) :: a, b + integer :: d + d = 2 * add(a, b) + end function sum_and_double +end module useops diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/negative_bounds/issue_20853.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/negative_bounds/issue_20853.f90 new file mode 100644 index 0000000000000000000000000000000000000000..bf1fa92853316cc31f825c024855088f42577a1c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/negative_bounds/issue_20853.f90 @@ -0,0 +1,7 @@ +subroutine foo(is_, ie_, arr, tout) + implicit none + integer :: is_,ie_ + real, intent(in) :: arr(is_:ie_) + real, intent(out) :: tout(is_:ie_) + tout = arr +end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_array.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_array.f90 new file mode 100644 index 0000000000000000000000000000000000000000..9a6bf81610d41cf5f480d6e3c25fd7ab4cf5bfff --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_array.f90 @@ -0,0 +1,45 @@ +! Check that parameter arrays are correctly intercepted. +subroutine foo_array(x, y, z) + implicit none + integer, parameter :: dp = selected_real_kind(15) + integer, parameter :: pa = 2 + integer, parameter :: intparamarray(2) = (/ 3, 5 /) + integer, dimension(pa), parameter :: pb = (/ 2, 10 /) + integer, parameter, dimension(intparamarray(1)) :: pc = (/ 2, 10, 20 /) + real(dp), parameter :: doubleparamarray(3) = (/ 3.14_dp, 4._dp, 6.44_dp /) + real(dp), intent(inout) :: x(intparamarray(1)) + real(dp), intent(inout) :: y(intparamarray(2)) + real(dp), intent(out) :: z + + x = x/pb(2) + y = y*pc(2) + z = doubleparamarray(1)*doubleparamarray(2) + doubleparamarray(3) + + return +end subroutine + +subroutine foo_array_any_index(x, y) + implicit none + integer, parameter :: dp = selected_real_kind(15) + integer, parameter, dimension(-1:1) :: myparamarray = (/ 6, 3, 1 /) + integer, parameter, dimension(2) :: nested = (/ 2, 0 /) + integer, parameter :: dim = 2 + real(dp), intent(in) :: x(myparamarray(-1)) + real(dp), intent(out) :: y(nested(1), myparamarray(nested(dim))) + + y = reshape(x, (/nested(1), myparamarray(nested(2))/)) + + return +end subroutine + +subroutine foo_array_delims(x) + implicit none + integer, parameter :: dp = selected_real_kind(15) + integer, parameter, dimension(2) :: myparamarray = (/ (6), 1 /) + integer, parameter, dimension(3) :: test = (/2, 1, (3)/) + real(dp), intent(out) :: x + + x = myparamarray(1)+test(3) + + return +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_both.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_both.f90 new file mode 100644 index 0000000000000000000000000000000000000000..ac90cedc525a6172a9b72f3bc76f57b79d641b6c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_both.f90 @@ -0,0 +1,57 @@ +! Check that parameters are correct intercepted. +! Constants with comma separations are commonly +! used, for instance Pi = 3._dp +subroutine foo(x) + implicit none + integer, parameter :: sp = selected_real_kind(6) + integer, parameter :: dp = selected_real_kind(15) + integer, parameter :: ii = selected_int_kind(9) + integer, parameter :: il = selected_int_kind(18) + real(dp), intent(inout) :: x + dimension x(3) + real(sp), parameter :: three_s = 3._sp + real(dp), parameter :: three_d = 3._dp + integer(ii), parameter :: three_i = 3_ii + integer(il), parameter :: three_l = 3_il + x(1) = x(1) + x(2) * three_s * three_i + x(3) * three_d * three_l + x(2) = x(2) * three_s + x(3) = x(3) * three_l + return +end subroutine + + +subroutine foo_no(x) + implicit none + integer, parameter :: sp = selected_real_kind(6) + integer, parameter :: dp = selected_real_kind(15) + integer, parameter :: ii = selected_int_kind(9) + integer, parameter :: il = selected_int_kind(18) + real(dp), intent(inout) :: x + dimension x(3) + real(sp), parameter :: three_s = 3. + real(dp), parameter :: three_d = 3. + integer(ii), parameter :: three_i = 3 + integer(il), parameter :: three_l = 3 + x(1) = x(1) + x(2) * three_s * three_i + x(3) * three_d * three_l + x(2) = x(2) * three_s + x(3) = x(3) * three_l + return +end subroutine + +subroutine foo_sum(x) + implicit none + integer, parameter :: sp = selected_real_kind(6) + integer, parameter :: dp = selected_real_kind(15) + integer, parameter :: ii = selected_int_kind(9) + integer, parameter :: il = selected_int_kind(18) + real(dp), intent(inout) :: x + dimension x(3) + real(sp), parameter :: three_s = 2._sp + 1._sp + real(dp), parameter :: three_d = 1._dp + 2._dp + integer(ii), parameter :: three_i = 2_ii + 1_ii + integer(il), parameter :: three_l = 1_il + 2_il + x(1) = x(1) + x(2) * three_s * three_i + x(3) * three_d * three_l + x(2) = x(2) * three_s + x(3) = x(3) * three_l + return +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_compound.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_compound.f90 new file mode 100644 index 0000000000000000000000000000000000000000..e51f5e9b2fb166a6b7d9cba57af03617024b7f2a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_compound.f90 @@ -0,0 +1,15 @@ +! Check that parameters are correct intercepted. +! Constants with comma separations are commonly +! used, for instance Pi = 3._dp +subroutine foo_compound_int(x) + implicit none + integer, parameter :: ii = selected_int_kind(9) + integer(ii), intent(inout) :: x + dimension x(3) + integer(ii), parameter :: three = 3_ii + integer(ii), parameter :: two = 2_ii + integer(ii), parameter :: six = three * 1_ii * two + + x(1) = x(1) + x(2) + x(3) * six + return +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_integer.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_integer.f90 new file mode 100644 index 0000000000000000000000000000000000000000..aaa83d2eb241274231130b6243ca2c970b5664e0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_integer.f90 @@ -0,0 +1,22 @@ +! Check that parameters are correct intercepted. +! Constants with comma separations are commonly +! used, for instance Pi = 3._dp +subroutine foo_int(x) + implicit none + integer, parameter :: ii = selected_int_kind(9) + integer(ii), intent(inout) :: x + dimension x(3) + integer(ii), parameter :: three = 3_ii + x(1) = x(1) + x(2) + x(3) * three + return +end subroutine + +subroutine foo_long(x) + implicit none + integer, parameter :: ii = selected_int_kind(18) + integer(ii), intent(inout) :: x + dimension x(3) + integer(ii), parameter :: three = 3_ii + x(1) = x(1) + x(2) + x(3) * three + return +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_non_compound.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_non_compound.f90 new file mode 100644 index 0000000000000000000000000000000000000000..62c9a5b943cb768c9270a04d1dbf36d526a4e6e8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_non_compound.f90 @@ -0,0 +1,23 @@ +! Check that parameters are correct intercepted. +! Specifically that types of constants without +! compound kind specs are correctly inferred +! adapted Gibbs iteration code from pymc +! for this test case +subroutine foo_non_compound_int(x) + implicit none + integer, parameter :: ii = selected_int_kind(9) + + integer(ii) maxiterates + parameter (maxiterates=2) + + integer(ii) maxseries + parameter (maxseries=2) + + integer(ii) wasize + parameter (wasize=maxiterates*maxseries) + integer(ii), intent(inout) :: x + dimension x(wasize) + + x(1) = x(1) + x(2) + x(3) + x(4) * wasize + return +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_real.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_real.f90 new file mode 100644 index 0000000000000000000000000000000000000000..02ac9dd993b39dbb69a233ed1f0d031f15f84639 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/parameter/constant_real.f90 @@ -0,0 +1,23 @@ +! Check that parameters are correct intercepted. +! Constants with comma separations are commonly +! used, for instance Pi = 3._dp +subroutine foo_single(x) + implicit none + integer, parameter :: rp = selected_real_kind(6) + real(rp), intent(inout) :: x + dimension x(3) + real(rp), parameter :: three = 3._rp + x(1) = x(1) + x(2) + x(3) * three + return +end subroutine + +subroutine foo_double(x) + implicit none + integer, parameter :: rp = selected_real_kind(15) + real(rp), intent(inout) :: x + dimension x(3) + real(rp), parameter :: three = 3._rp + x(1) = x(1) + x(2) + x(3) * three + return +end subroutine + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/quoted_character/foo.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/quoted_character/foo.f new file mode 100644 index 0000000000000000000000000000000000000000..9dc1cfa4446d8c05c0fc0bb1c69360a687d003c3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/quoted_character/foo.f @@ -0,0 +1,14 @@ + SUBROUTINE FOO(OUT1, OUT2, OUT3, OUT4, OUT5, OUT6) + CHARACTER SINGLE, DOUBLE, SEMICOL, EXCLA, OPENPAR, CLOSEPAR + PARAMETER (SINGLE="'", DOUBLE='"', SEMICOL=';', EXCLA="!", + 1 OPENPAR="(", CLOSEPAR=")") + CHARACTER OUT1, OUT2, OUT3, OUT4, OUT5, OUT6 +Cf2py intent(out) OUT1, OUT2, OUT3, OUT4, OUT5, OUT6 + OUT1 = SINGLE + OUT2 = DOUBLE + OUT3 = SEMICOL + OUT4 = EXCLA + OUT5 = OPENPAR + OUT6 = CLOSEPAR + RETURN + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/AB.inc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/AB.inc new file mode 100644 index 0000000000000000000000000000000000000000..8a02f631f43a15f17f65280d651aa46e9cdb7510 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/AB.inc @@ -0,0 +1 @@ +real(8) b, n, m diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/assignOnlyModule.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/assignOnlyModule.f90 new file mode 100644 index 0000000000000000000000000000000000000000..479ac7980c226ac19a8d97dd2e43f8833d95e66e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/assignOnlyModule.f90 @@ -0,0 +1,25 @@ + MODULE MOD_TYPES + INTEGER, PARAMETER :: SP = SELECTED_REAL_KIND(6, 37) + INTEGER, PARAMETER :: DP = SELECTED_REAL_KIND(15, 307) + END MODULE +! + MODULE F_GLOBALS + USE MOD_TYPES + IMPLICIT NONE + INTEGER, PARAMETER :: N_MAX = 16 + INTEGER, PARAMETER :: I_MAX = 18 + INTEGER, PARAMETER :: J_MAX = 72 + REAL(SP) :: XREF + END MODULE F_GLOBALS +! + SUBROUTINE DUMMY () +! + USE F_GLOBALS + USE MOD_TYPES + IMPLICIT NONE +! + REAL(SP) :: MINIMAL + MINIMAL = 0.01*XREF + RETURN +! + END SUBROUTINE DUMMY diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/datonly.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/datonly.f90 new file mode 100644 index 0000000000000000000000000000000000000000..67fc4aca82e3fd4aa9ebb4f725d1b13761dbade9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/datonly.f90 @@ -0,0 +1,17 @@ +module datonly + implicit none + integer, parameter :: max_value = 100 + real, dimension(:), allocatable :: data_array +end module datonly + +module dat + implicit none + integer, parameter :: max_= 1009 +end module dat + +subroutine simple_subroutine(ain, aout) + use dat, only: max_ + integer, intent(in) :: ain + integer, intent(out) :: aout + aout = ain + max_ +end subroutine simple_subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77comments.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77comments.f new file mode 100644 index 0000000000000000000000000000000000000000..452a01a14439b1e7a9a731a31d7f720992826698 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77comments.f @@ -0,0 +1,26 @@ + SUBROUTINE TESTSUB( + & INPUT1, INPUT2, !Input + & OUTPUT1, OUTPUT2) !Output + + IMPLICIT NONE + INTEGER, INTENT(IN) :: INPUT1, INPUT2 + INTEGER, INTENT(OUT) :: OUTPUT1, OUTPUT2 + + OUTPUT1 = INPUT1 + INPUT2 + OUTPUT2 = INPUT1 * INPUT2 + + RETURN + END SUBROUTINE TESTSUB + + SUBROUTINE TESTSUB2(OUTPUT) + IMPLICIT NONE + INTEGER, PARAMETER :: N = 10 ! Array dimension + REAL, INTENT(OUT) :: OUTPUT(N) + INTEGER :: I + + DO I = 1, N + OUTPUT(I) = I * 2.0 + END DO + + RETURN + END diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77fixedform.f95 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77fixedform.f95 new file mode 100644 index 0000000000000000000000000000000000000000..e47a13f7e851969f30aa38344377c5ec90708839 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f77fixedform.f95 @@ -0,0 +1,5 @@ +C This is an invalid file, but it does compile with -ffixed-form + subroutine mwe( + & x) + real x + end subroutine mwe diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f90continuation.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f90continuation.f90 new file mode 100644 index 0000000000000000000000000000000000000000..879e716bbec69e94a28745ecc0d8f9c7a8ea02eb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/f90continuation.f90 @@ -0,0 +1,9 @@ +SUBROUTINE TESTSUB(INPUT1, & ! Hello +! commenty +INPUT2, OUTPUT1, OUTPUT2) ! more comments + INTEGER, INTENT(IN) :: INPUT1, INPUT2 + INTEGER, INTENT(OUT) :: OUTPUT1, OUTPUT2 + OUTPUT1 = INPUT1 + & + INPUT2 + OUTPUT2 = INPUT1 * INPUT2 +END SUBROUTINE TESTSUB diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/incfile.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/incfile.f90 new file mode 100644 index 0000000000000000000000000000000000000000..276ef3a67352b29d37985529ad550b45f68456f0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/incfile.f90 @@ -0,0 +1,5 @@ +function add(n,m) result(b) + implicit none + include 'AB.inc' + b = n + m +end function add diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/inout.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/inout.f90 new file mode 100644 index 0000000000000000000000000000000000000000..80cdad90cec56de2226979fa0c9b0f9dfa39c7c9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/inout.f90 @@ -0,0 +1,9 @@ +! Check that intent(in out) translates as intent(inout). +! The separation seems to be a common usage. + subroutine foo(x) + implicit none + real(4), intent(in out) :: x + dimension x(3) + x(1) = x(1) + x(2) + x(3) + return + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/lower_f2py_fortran.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/lower_f2py_fortran.f90 new file mode 100644 index 0000000000000000000000000000000000000000..1c4b8c192b1b2783a4f5c2275731106c2a6109f2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/regression/lower_f2py_fortran.f90 @@ -0,0 +1,5 @@ +subroutine inquire_next(IU) + IMPLICIT NONE + integer :: IU + !f2py intent(in) IU +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo77.f new file mode 100644 index 0000000000000000000000000000000000000000..facae1016a39010cca10929837d0a95c44376e21 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo77.f @@ -0,0 +1,45 @@ + function t0(value) + character value + character t0 + t0 = value + end + function t1(value) + character*1 value + character*1 t1 + t1 = value + end + function t5(value) + character*5 value + character*5 t5 + t5 = value + end + function ts(value) + character*(*) value + character*(*) ts + ts = value + end + + subroutine s0(t0,value) + character value + character t0 +cf2py intent(out) t0 + t0 = value + end + subroutine s1(t1,value) + character*1 value + character*1 t1 +cf2py intent(out) t1 + t1 = value + end + subroutine s5(t5,value) + character*5 value + character*5 t5 +cf2py intent(out) t5 + t5 = value + end + subroutine ss(ts,value) + character*(*) value + character*10 ts +cf2py intent(out) ts + ts = value + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo90.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo90.f90 new file mode 100644 index 0000000000000000000000000000000000000000..36182bcf2dd71649130f5afe7ef665ac80d64af9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_character/foo90.f90 @@ -0,0 +1,48 @@ +module f90_return_char + contains + function t0(value) + character :: value + character :: t0 + t0 = value + end function t0 + function t1(value) + character(len=1) :: value + character(len=1) :: t1 + t1 = value + end function t1 + function t5(value) + character(len=5) :: value + character(len=5) :: t5 + t5 = value + end function t5 + function ts(value) + character(len=*) :: value + character(len=10) :: ts + ts = value + end function ts + + subroutine s0(t0,value) + character :: value + character :: t0 +!f2py intent(out) t0 + t0 = value + end subroutine s0 + subroutine s1(t1,value) + character(len=1) :: value + character(len=1) :: t1 +!f2py intent(out) t1 + t1 = value + end subroutine s1 + subroutine s5(t5,value) + character(len=5) :: value + character(len=5) :: t5 +!f2py intent(out) t5 + t5 = value + end subroutine s5 + subroutine ss(ts,value) + character(len=*) :: value + character(len=10) :: ts +!f2py intent(out) ts + ts = value + end subroutine ss +end module f90_return_char diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo77.f new file mode 100644 index 0000000000000000000000000000000000000000..37a1ec845ecacc7fbc228f1ee5f628ec73075c12 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo77.f @@ -0,0 +1,45 @@ + function t0(value) + complex value + complex t0 + t0 = value + end + function t8(value) + complex*8 value + complex*8 t8 + t8 = value + end + function t16(value) + complex*16 value + complex*16 t16 + t16 = value + end + function td(value) + double complex value + double complex td + td = value + end + + subroutine s0(t0,value) + complex value + complex t0 +cf2py intent(out) t0 + t0 = value + end + subroutine s8(t8,value) + complex*8 value + complex*8 t8 +cf2py intent(out) t8 + t8 = value + end + subroutine s16(t16,value) + complex*16 value + complex*16 t16 +cf2py intent(out) t16 + t16 = value + end + subroutine sd(td,value) + double complex value + double complex td +cf2py intent(out) td + td = value + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo90.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo90.f90 new file mode 100644 index 0000000000000000000000000000000000000000..adc27b470538bc663416fb512a29c4b2bbe8d3dd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_complex/foo90.f90 @@ -0,0 +1,48 @@ +module f90_return_complex + contains + function t0(value) + complex :: value + complex :: t0 + t0 = value + end function t0 + function t8(value) + complex(kind=4) :: value + complex(kind=4) :: t8 + t8 = value + end function t8 + function t16(value) + complex(kind=8) :: value + complex(kind=8) :: t16 + t16 = value + end function t16 + function td(value) + double complex :: value + double complex :: td + td = value + end function td + + subroutine s0(t0,value) + complex :: value + complex :: t0 +!f2py intent(out) t0 + t0 = value + end subroutine s0 + subroutine s8(t8,value) + complex(kind=4) :: value + complex(kind=4) :: t8 +!f2py intent(out) t8 + t8 = value + end subroutine s8 + subroutine s16(t16,value) + complex(kind=8) :: value + complex(kind=8) :: t16 +!f2py intent(out) t16 + t16 = value + end subroutine s16 + subroutine sd(td,value) + double complex :: value + double complex :: td +!f2py intent(out) td + td = value + end subroutine sd +end module f90_return_complex diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo77.f new file mode 100644 index 0000000000000000000000000000000000000000..1ab895b9ac340ca91c5d3a4080334bab9f033a55 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo77.f @@ -0,0 +1,56 @@ + function t0(value) + integer value + integer t0 + t0 = value + end + function t1(value) + integer*1 value + integer*1 t1 + t1 = value + end + function t2(value) + integer*2 value + integer*2 t2 + t2 = value + end + function t4(value) + integer*4 value + integer*4 t4 + t4 = value + end + function t8(value) + integer*8 value + integer*8 t8 + t8 = value + end + + subroutine s0(t0,value) + integer value + integer t0 +cf2py intent(out) t0 + t0 = value + end + subroutine s1(t1,value) + integer*1 value + integer*1 t1 +cf2py intent(out) t1 + t1 = value + end + subroutine s2(t2,value) + integer*2 value + integer*2 t2 +cf2py intent(out) t2 + t2 = value + end + subroutine s4(t4,value) + integer*4 value + integer*4 t4 +cf2py intent(out) t4 + t4 = value + end + subroutine s8(t8,value) + integer*8 value + integer*8 t8 +cf2py intent(out) t8 + t8 = value + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo90.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo90.f90 new file mode 100644 index 0000000000000000000000000000000000000000..ba9249aa20f941dbf00f060ad5d7e8820745b0f4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_integer/foo90.f90 @@ -0,0 +1,59 @@ +module f90_return_integer + contains + function t0(value) + integer :: value + integer :: t0 + t0 = value + end function t0 + function t1(value) + integer(kind=1) :: value + integer(kind=1) :: t1 + t1 = value + end function t1 + function t2(value) + integer(kind=2) :: value + integer(kind=2) :: t2 + t2 = value + end function t2 + function t4(value) + integer(kind=4) :: value + integer(kind=4) :: t4 + t4 = value + end function t4 + function t8(value) + integer(kind=8) :: value + integer(kind=8) :: t8 + t8 = value + end function t8 + + subroutine s0(t0,value) + integer :: value + integer :: t0 +!f2py intent(out) t0 + t0 = value + end subroutine s0 + subroutine s1(t1,value) + integer(kind=1) :: value + integer(kind=1) :: t1 +!f2py intent(out) t1 + t1 = value + end subroutine s1 + subroutine s2(t2,value) + integer(kind=2) :: value + integer(kind=2) :: t2 +!f2py intent(out) t2 + t2 = value + end subroutine s2 + subroutine s4(t4,value) + integer(kind=4) :: value + integer(kind=4) :: t4 +!f2py intent(out) t4 + t4 = value + end subroutine s4 + subroutine s8(t8,value) + integer(kind=8) :: value + integer(kind=8) :: t8 +!f2py intent(out) t8 + t8 = value + end subroutine s8 +end module f90_return_integer diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo77.f new file mode 100644 index 0000000000000000000000000000000000000000..ef530145fedf8b5cf3a05bdf0a46a4e22150007b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo77.f @@ -0,0 +1,56 @@ + function t0(value) + logical value + logical t0 + t0 = value + end + function t1(value) + logical*1 value + logical*1 t1 + t1 = value + end + function t2(value) + logical*2 value + logical*2 t2 + t2 = value + end + function t4(value) + logical*4 value + logical*4 t4 + t4 = value + end +c function t8(value) +c logical*8 value +c logical*8 t8 +c t8 = value +c end + + subroutine s0(t0,value) + logical value + logical t0 +cf2py intent(out) t0 + t0 = value + end + subroutine s1(t1,value) + logical*1 value + logical*1 t1 +cf2py intent(out) t1 + t1 = value + end + subroutine s2(t2,value) + logical*2 value + logical*2 t2 +cf2py intent(out) t2 + t2 = value + end + subroutine s4(t4,value) + logical*4 value + logical*4 t4 +cf2py intent(out) t4 + t4 = value + end +c subroutine s8(t8,value) +c logical*8 value +c logical*8 t8 +cf2py intent(out) t8 +c t8 = value +c end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo90.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo90.f90 new file mode 100644 index 0000000000000000000000000000000000000000..a4526468e3719140f0ed7d50a5f3a31d78d1d2de --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_logical/foo90.f90 @@ -0,0 +1,59 @@ +module f90_return_logical + contains + function t0(value) + logical :: value + logical :: t0 + t0 = value + end function t0 + function t1(value) + logical(kind=1) :: value + logical(kind=1) :: t1 + t1 = value + end function t1 + function t2(value) + logical(kind=2) :: value + logical(kind=2) :: t2 + t2 = value + end function t2 + function t4(value) + logical(kind=4) :: value + logical(kind=4) :: t4 + t4 = value + end function t4 + function t8(value) + logical(kind=8) :: value + logical(kind=8) :: t8 + t8 = value + end function t8 + + subroutine s0(t0,value) + logical :: value + logical :: t0 +!f2py intent(out) t0 + t0 = value + end subroutine s0 + subroutine s1(t1,value) + logical(kind=1) :: value + logical(kind=1) :: t1 +!f2py intent(out) t1 + t1 = value + end subroutine s1 + subroutine s2(t2,value) + logical(kind=2) :: value + logical(kind=2) :: t2 +!f2py intent(out) t2 + t2 = value + end subroutine s2 + subroutine s4(t4,value) + logical(kind=4) :: value + logical(kind=4) :: t4 +!f2py intent(out) t4 + t4 = value + end subroutine s4 + subroutine s8(t8,value) + logical(kind=8) :: value + logical(kind=8) :: t8 +!f2py intent(out) t8 + t8 = value + end subroutine s8 +end module f90_return_logical diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo77.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo77.f new file mode 100644 index 0000000000000000000000000000000000000000..bf43dbf11773d8282f3b9a7d7c4ba9da23ee6f27 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo77.f @@ -0,0 +1,45 @@ + function t0(value) + real value + real t0 + t0 = value + end + function t4(value) + real*4 value + real*4 t4 + t4 = value + end + function t8(value) + real*8 value + real*8 t8 + t8 = value + end + function td(value) + double precision value + double precision td + td = value + end + + subroutine s0(t0,value) + real value + real t0 +cf2py intent(out) t0 + t0 = value + end + subroutine s4(t4,value) + real*4 value + real*4 t4 +cf2py intent(out) t4 + t4 = value + end + subroutine s8(t8,value) + real*8 value + real*8 t8 +cf2py intent(out) t8 + t8 = value + end + subroutine sd(td,value) + double precision value + double precision td +cf2py intent(out) td + td = value + end diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo90.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo90.f90 new file mode 100644 index 0000000000000000000000000000000000000000..df9719980f2861678d5c1e4b0529a9eb0e375021 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/return_real/foo90.f90 @@ -0,0 +1,48 @@ +module f90_return_real + contains + function t0(value) + real :: value + real :: t0 + t0 = value + end function t0 + function t4(value) + real(kind=4) :: value + real(kind=4) :: t4 + t4 = value + end function t4 + function t8(value) + real(kind=8) :: value + real(kind=8) :: t8 + t8 = value + end function t8 + function td(value) + double precision :: value + double precision :: td + td = value + end function td + + subroutine s0(t0,value) + real :: value + real :: t0 +!f2py intent(out) t0 + t0 = value + end subroutine s0 + subroutine s4(t4,value) + real(kind=4) :: value + real(kind=4) :: t4 +!f2py intent(out) t4 + t4 = value + end subroutine s4 + subroutine s8(t8,value) + real(kind=8) :: value + real(kind=8) :: t8 +!f2py intent(out) t8 + t8 = value + end subroutine s8 + subroutine sd(td,value) + double precision :: value + double precision :: td +!f2py intent(out) td + td = value + end subroutine sd +end module f90_return_real diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.f new file mode 100644 index 0000000000000000000000000000000000000000..89be972d341966170c9f1a36af1f098e62dd4174 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.f @@ -0,0 +1,5 @@ + REAL*8 FUNCTION FUNCFORTRANNAME(A,B) + REAL*8 A, B + FUNCFORTRANNAME = A + B + RETURN + END FUNCTION diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.pyf new file mode 100644 index 0000000000000000000000000000000000000000..8730ca6a67edd4dea8df456369e5f8ef4cb5f831 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/funcfortranname.pyf @@ -0,0 +1,11 @@ +python module funcfortranname ! in + interface ! in :funcfortranname + function funcfortranname_default(a,b) ! in :funcfortranname:funcfortranname.f + fortranname funcfortranname + real*8 :: a + real*8 :: b + real*8 :: funcfortranname_default + real*8, intent(out) :: funcfortranname + end function funcfortranname_default + end interface +end python module funcfortranname diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.f new file mode 100644 index 0000000000000000000000000000000000000000..1d1eeaeb5a4588141e15c19b3b8e70fef6425f1a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.f @@ -0,0 +1,4 @@ + SUBROUTINE SUBROUT(A,B,C) + REAL*8 A, B, C + C = A + B + END SUBROUTINE diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.pyf new file mode 100644 index 0000000000000000000000000000000000000000..e27cbe1c7455d47ea312966c997bbcf5f690be74 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/routines/subrout.pyf @@ -0,0 +1,10 @@ +python module subrout ! in + interface ! in :subrout + subroutine subrout_default(a,b,c) ! in :subrout:subrout.f + fortranname subrout + real*8 :: a + real*8 :: b + real*8, intent(out) :: c + end subroutine subrout_default + end interface +end python module subrout diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/size/foo.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/size/foo.f90 new file mode 100644 index 0000000000000000000000000000000000000000..5b66f8c430d79a8438ad062466a97cf8c00dfb16 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/size/foo.f90 @@ -0,0 +1,44 @@ + +subroutine foo(a, n, m, b) + implicit none + + real, intent(in) :: a(n, m) + integer, intent(in) :: n, m + real, intent(out) :: b(size(a, 1)) + + integer :: i + + do i = 1, size(b) + b(i) = sum(a(i,:)) + enddo +end subroutine + +subroutine trans(x,y) + implicit none + real, intent(in), dimension(:,:) :: x + real, intent(out), dimension( size(x,2), size(x,1) ) :: y + integer :: N, M, i, j + N = size(x,1) + M = size(x,2) + DO i=1,N + do j=1,M + y(j,i) = x(i,j) + END DO + END DO +end subroutine trans + +subroutine flatten(x,y) + implicit none + real, intent(in), dimension(:,:) :: x + real, intent(out), dimension( size(x) ) :: y + integer :: N, M, i, j, k + N = size(x,1) + M = size(x,2) + k = 1 + DO i=1,N + do j=1,M + y(k) = x(i,j) + k = k + 1 + END DO + END DO +end subroutine flatten diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/char.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/char.f90 new file mode 100644 index 0000000000000000000000000000000000000000..bb7985ce50f2aa252aaca96aba6ef5d5f5d51844 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/char.f90 @@ -0,0 +1,29 @@ +MODULE char_test + +CONTAINS + +SUBROUTINE change_strings(strings, n_strs, out_strings) + IMPLICIT NONE + + ! Inputs + INTEGER, INTENT(IN) :: n_strs + CHARACTER, INTENT(IN), DIMENSION(2,n_strs) :: strings + CHARACTER, INTENT(OUT), DIMENSION(2,n_strs) :: out_strings + +!f2py INTEGER, INTENT(IN) :: n_strs +!f2py CHARACTER, INTENT(IN), DIMENSION(2,n_strs) :: strings +!f2py CHARACTER, INTENT(OUT), DIMENSION(2,n_strs) :: strings + + ! Misc. + INTEGER*4 :: j + + + DO j=1, n_strs + out_strings(1,j) = strings(1,j) + out_strings(2,j) = 'A' + END DO + +END SUBROUTINE change_strings + +END MODULE char_test + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/fixed_string.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/fixed_string.f90 new file mode 100644 index 0000000000000000000000000000000000000000..7fd1585430fb05f84fb850ef4656d94e8a0804e9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/fixed_string.f90 @@ -0,0 +1,34 @@ +function sint(s) result(i) + implicit none + character(len=*) :: s + integer :: j, i + i = 0 + do j=len(s), 1, -1 + if (.not.((i.eq.0).and.(s(j:j).eq.' '))) then + i = i + ichar(s(j:j)) * 10 ** (j - 1) + endif + end do + return + end function sint + + function test_in_bytes4(a) result (i) + implicit none + integer :: sint + character(len=4) :: a + integer :: i + i = sint(a) + a(1:1) = 'A' + return + end function test_in_bytes4 + + function test_inout_bytes4(a) result (i) + implicit none + integer :: sint + character(len=4), intent(inout) :: a + integer :: i + if (a(1:1).ne.' ') then + a(1:1) = 'E' + endif + i = sint(a) + return + end function test_inout_bytes4 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24008.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24008.f new file mode 100644 index 0000000000000000000000000000000000000000..ab64cf771f68bbcecc8ac2d5d649545fc357e15b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24008.f @@ -0,0 +1,8 @@ + SUBROUTINE GREET(NAME, GREETING) + CHARACTER NAME*(*), GREETING*(*) + CHARACTER*(50) MESSAGE + + MESSAGE = 'Hello, ' // NAME // ', ' // GREETING +c$$$ PRINT *, MESSAGE + + END SUBROUTINE GREET diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24662.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24662.f90 new file mode 100644 index 0000000000000000000000000000000000000000..ca53413cc9b48f1c8d476d329eb4b773695dd08c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh24662.f90 @@ -0,0 +1,7 @@ +subroutine string_inout_optional(output) + implicit none + character*(32), optional, intent(inout) :: output + if (present(output)) then + output="output string" + endif +end subroutine diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.f90 new file mode 100644 index 0000000000000000000000000000000000000000..db1c7100d2ab812de5d212c1bbd255cf2ae60be3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.f90 @@ -0,0 +1,14 @@ +subroutine charint(trans, info) + character, intent(in) :: trans + integer, intent(out) :: info + if (trans == 'N') then + info = 1 + else if (trans == 'T') then + info = 2 + else if (trans == 'C') then + info = 3 + else + info = -1 + end if + +end subroutine charint diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.pyf new file mode 100644 index 0000000000000000000000000000000000000000..7b9609071bce3e775703b12c430f411af09e6eee --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286.pyf @@ -0,0 +1,12 @@ +python module _char_handling_test + interface + subroutine charint(trans, info) + callstatement (*f2py_func)(&trans, &info) + callprotoargument char*, int* + + character, intent(in), check(trans=='N'||trans=='T'||trans=='C') :: trans = 'N' + integer intent(out) :: info + + end subroutine charint + end interface +end python module _char_handling_test diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286_bc.pyf b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286_bc.pyf new file mode 100644 index 0000000000000000000000000000000000000000..e7b10fa9215e88e56794e9c73d0b13872cbd953c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/gh25286_bc.pyf @@ -0,0 +1,12 @@ +python module _char_handling_test + interface + subroutine charint(trans, info) + callstatement (*f2py_func)(&trans, &info) + callprotoargument char*, int* + + character, intent(in), check(*trans=='N'||*trans=='T'||*trans=='C') :: trans = 'N' + integer intent(out) :: info + + end subroutine charint + end interface +end python module _char_handling_test diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/scalar_string.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/scalar_string.f90 new file mode 100644 index 0000000000000000000000000000000000000000..f8f076172ab48ca4834d631b362f47ca374db5e4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/scalar_string.f90 @@ -0,0 +1,9 @@ +MODULE string_test + + character(len=8) :: string + character string77 * 8 + + character(len=12), dimension(5,7) :: strarr + character strarr77(5,7) * 12 + +END MODULE string_test diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/string.f b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/string.f new file mode 100644 index 0000000000000000000000000000000000000000..5210ca4dc054de60488e45baa12b6c8bc89fc9eb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/string/string.f @@ -0,0 +1,12 @@ +C FILE: STRING.F + SUBROUTINE FOO(A,B,C,D) + CHARACTER*5 A, B + CHARACTER*(*) C,D +Cf2py intent(in) a,c +Cf2py intent(inout) b,d + A(1:1) = 'A' + B(1:1) = 'B' + C(1:1) = 'C' + D(1:1) = 'D' + END +C END OF FILE STRING.F diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/value_attrspec/gh21665.f90 b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/value_attrspec/gh21665.f90 new file mode 100644 index 0000000000000000000000000000000000000000..7d9dc0fd4acbc081f55edfafb5dea981dcf279d5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/src/value_attrspec/gh21665.f90 @@ -0,0 +1,9 @@ +module fortfuncs + implicit none +contains + subroutine square(x,y) + integer, intent(in), value :: x + integer, intent(out) :: y + y = x*x + end subroutine square +end module fortfuncs diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_abstract_interface.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_abstract_interface.py new file mode 100644 index 0000000000000000000000000000000000000000..0bc38b51f95d71dcd4a4b9c723211e1c4398c966 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_abstract_interface.py @@ -0,0 +1,24 @@ +import pytest +from . import util +from numpy.f2py import crackfortran +from numpy.testing import IS_WASM + + +@pytest.mark.skipif(IS_WASM, reason="Cannot start subprocess") +@pytest.mark.slow +class TestAbstractInterface(util.F2PyTest): + sources = [util.getpath("tests", "src", "abstract_interface", "foo.f90")] + + skip = ["add1", "add2"] + + def test_abstract_interface(self): + assert self.module.ops_module.foo(3, 5) == (8, 13) + + def test_parse_abstract_interface(self): + # Test gh18403 + fpath = util.getpath("tests", "src", "abstract_interface", + "gh18403_mod.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + assert len(mod[0]["body"]) == 1 + assert mod[0]["body"][0]["block"] == "abstract interface" diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_array_from_pyobj.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_array_from_pyobj.py new file mode 100644 index 0000000000000000000000000000000000000000..41ed2c7a0dfe7e40fcb99553757c41c0dfde7349 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_array_from_pyobj.py @@ -0,0 +1,677 @@ +import sys +import copy +import platform +import pytest +from pathlib import Path + +import numpy as np + +from numpy._core._type_aliases import c_names_dict as _c_names_dict +from . import util + +wrap = None + +# Extend core typeinfo with CHARACTER to test dtype('c') +c_names_dict = dict( + CHARACTER=np.dtype("c"), + **_c_names_dict +) + + +def get_testdir(): + testroot = Path(__file__).resolve().parent / "src" + return testroot / "array_from_pyobj" + +def setup_module(): + """ + Build the required testing extension module + + """ + global wrap + + if wrap is None: + src = [ + get_testdir() / "wrapmodule.c", + ] + wrap = util.build_meson(src, module_name = "test_array_from_pyobj_ext") + + +def flags_info(arr): + flags = wrap.array_attrs(arr)[6] + return flags2names(flags) + + +def flags2names(flags): + info = [] + for flagname in [ + "CONTIGUOUS", + "FORTRAN", + "OWNDATA", + "ENSURECOPY", + "ENSUREARRAY", + "ALIGNED", + "NOTSWAPPED", + "WRITEABLE", + "WRITEBACKIFCOPY", + "UPDATEIFCOPY", + "BEHAVED", + "BEHAVED_RO", + "CARRAY", + "FARRAY", + ]: + if abs(flags) & getattr(wrap, flagname, 0): + info.append(flagname) + return info + + +class Intent: + def __init__(self, intent_list=[]): + self.intent_list = intent_list[:] + flags = 0 + for i in intent_list: + if i == "optional": + flags |= wrap.F2PY_OPTIONAL + else: + flags |= getattr(wrap, "F2PY_INTENT_" + i.upper()) + self.flags = flags + + def __getattr__(self, name): + name = name.lower() + if name == "in_": + name = "in" + return self.__class__(self.intent_list + [name]) + + def __str__(self): + return "intent(%s)" % (",".join(self.intent_list)) + + def __repr__(self): + return "Intent(%r)" % (self.intent_list) + + def is_intent(self, *names): + return all(name in self.intent_list for name in names) + + def is_intent_exact(self, *names): + return len(self.intent_list) == len(names) and self.is_intent(*names) + + +intent = Intent() + +_type_names = [ + "BOOL", + "BYTE", + "UBYTE", + "SHORT", + "USHORT", + "INT", + "UINT", + "LONG", + "ULONG", + "LONGLONG", + "ULONGLONG", + "FLOAT", + "DOUBLE", + "CFLOAT", + "STRING1", + "STRING5", + "CHARACTER", +] + +_cast_dict = {"BOOL": ["BOOL"]} +_cast_dict["BYTE"] = _cast_dict["BOOL"] + ["BYTE"] +_cast_dict["UBYTE"] = _cast_dict["BOOL"] + ["UBYTE"] +_cast_dict["BYTE"] = ["BYTE"] +_cast_dict["UBYTE"] = ["UBYTE"] +_cast_dict["SHORT"] = _cast_dict["BYTE"] + ["UBYTE", "SHORT"] +_cast_dict["USHORT"] = _cast_dict["UBYTE"] + ["BYTE", "USHORT"] +_cast_dict["INT"] = _cast_dict["SHORT"] + ["USHORT", "INT"] +_cast_dict["UINT"] = _cast_dict["USHORT"] + ["SHORT", "UINT"] + +_cast_dict["LONG"] = _cast_dict["INT"] + ["LONG"] +_cast_dict["ULONG"] = _cast_dict["UINT"] + ["ULONG"] + +_cast_dict["LONGLONG"] = _cast_dict["LONG"] + ["LONGLONG"] +_cast_dict["ULONGLONG"] = _cast_dict["ULONG"] + ["ULONGLONG"] + +_cast_dict["FLOAT"] = _cast_dict["SHORT"] + ["USHORT", "FLOAT"] +_cast_dict["DOUBLE"] = _cast_dict["INT"] + ["UINT", "FLOAT", "DOUBLE"] + +_cast_dict["CFLOAT"] = _cast_dict["FLOAT"] + ["CFLOAT"] + +_cast_dict['STRING1'] = ['STRING1'] +_cast_dict['STRING5'] = ['STRING5'] +_cast_dict['CHARACTER'] = ['CHARACTER'] + +# 32 bit system malloc typically does not provide the alignment required by +# 16 byte long double types this means the inout intent cannot be satisfied +# and several tests fail as the alignment flag can be randomly true or false +# when numpy gains an aligned allocator the tests could be enabled again +# +# Furthermore, on macOS ARM64, LONGDOUBLE is an alias for DOUBLE. +if ((np.intp().dtype.itemsize != 4 or np.clongdouble().dtype.alignment <= 8) + and sys.platform != "win32" + and (platform.system(), platform.processor()) != ("Darwin", "arm")): + _type_names.extend(["LONGDOUBLE", "CDOUBLE", "CLONGDOUBLE"]) + _cast_dict["LONGDOUBLE"] = _cast_dict["LONG"] + [ + "ULONG", + "FLOAT", + "DOUBLE", + "LONGDOUBLE", + ] + _cast_dict["CLONGDOUBLE"] = _cast_dict["LONGDOUBLE"] + [ + "CFLOAT", + "CDOUBLE", + "CLONGDOUBLE", + ] + _cast_dict["CDOUBLE"] = _cast_dict["DOUBLE"] + ["CFLOAT", "CDOUBLE"] + + +class Type: + _type_cache = {} + + def __new__(cls, name): + if isinstance(name, np.dtype): + dtype0 = name + name = None + for n, i in c_names_dict.items(): + if not isinstance(i, type) and dtype0.type is i.type: + name = n + break + obj = cls._type_cache.get(name.upper(), None) + if obj is not None: + return obj + obj = object.__new__(cls) + obj._init(name) + cls._type_cache[name.upper()] = obj + return obj + + def _init(self, name): + self.NAME = name.upper() + + if self.NAME == 'CHARACTER': + info = c_names_dict[self.NAME] + self.type_num = wrap.NPY_STRING + self.elsize = 1 + self.dtype = np.dtype('c') + elif self.NAME.startswith('STRING'): + info = c_names_dict[self.NAME[:6]] + self.type_num = wrap.NPY_STRING + self.elsize = int(self.NAME[6:] or 0) + self.dtype = np.dtype(f'S{self.elsize}') + else: + info = c_names_dict[self.NAME] + self.type_num = getattr(wrap, 'NPY_' + self.NAME) + self.elsize = info.itemsize + self.dtype = np.dtype(info.type) + + assert self.type_num == info.num + self.type = info.type + self.dtypechar = info.char + + def __repr__(self): + return (f"Type({self.NAME})|type_num={self.type_num}," + f" dtype={self.dtype}," + f" type={self.type}, elsize={self.elsize}," + f" dtypechar={self.dtypechar}") + + def cast_types(self): + return [self.__class__(_m) for _m in _cast_dict[self.NAME]] + + def all_types(self): + return [self.__class__(_m) for _m in _type_names] + + def smaller_types(self): + bits = c_names_dict[self.NAME].alignment + types = [] + for name in _type_names: + if c_names_dict[name].alignment < bits: + types.append(Type(name)) + return types + + def equal_types(self): + bits = c_names_dict[self.NAME].alignment + types = [] + for name in _type_names: + if name == self.NAME: + continue + if c_names_dict[name].alignment == bits: + types.append(Type(name)) + return types + + def larger_types(self): + bits = c_names_dict[self.NAME].alignment + types = [] + for name in _type_names: + if c_names_dict[name].alignment > bits: + types.append(Type(name)) + return types + + +class Array: + + def __repr__(self): + return (f'Array({self.type}, {self.dims}, {self.intent},' + f' {self.obj})|arr={self.arr}') + + def __init__(self, typ, dims, intent, obj): + self.type = typ + self.dims = dims + self.intent = intent + self.obj_copy = copy.deepcopy(obj) + self.obj = obj + + # arr.dtypechar may be different from typ.dtypechar + self.arr = wrap.call(typ.type_num, + typ.elsize, + dims, intent.flags, obj) + + assert isinstance(self.arr, np.ndarray) + + self.arr_attr = wrap.array_attrs(self.arr) + + if len(dims) > 1: + if self.intent.is_intent("c"): + assert (intent.flags & wrap.F2PY_INTENT_C) + assert not self.arr.flags["FORTRAN"] + assert self.arr.flags["CONTIGUOUS"] + assert (not self.arr_attr[6] & wrap.FORTRAN) + else: + assert (not intent.flags & wrap.F2PY_INTENT_C) + assert self.arr.flags["FORTRAN"] + assert not self.arr.flags["CONTIGUOUS"] + assert (self.arr_attr[6] & wrap.FORTRAN) + + if obj is None: + self.pyarr = None + self.pyarr_attr = None + return + + if intent.is_intent("cache"): + assert isinstance(obj, np.ndarray), repr(type(obj)) + self.pyarr = np.array(obj).reshape(*dims).copy() + else: + self.pyarr = np.array( + np.array(obj, dtype=typ.dtypechar).reshape(*dims), + order=self.intent.is_intent("c") and "C" or "F", + ) + assert self.pyarr.dtype == typ + self.pyarr.setflags(write=self.arr.flags["WRITEABLE"]) + assert self.pyarr.flags["OWNDATA"], (obj, intent) + self.pyarr_attr = wrap.array_attrs(self.pyarr) + + if len(dims) > 1: + if self.intent.is_intent("c"): + assert not self.pyarr.flags["FORTRAN"] + assert self.pyarr.flags["CONTIGUOUS"] + assert (not self.pyarr_attr[6] & wrap.FORTRAN) + else: + assert self.pyarr.flags["FORTRAN"] + assert not self.pyarr.flags["CONTIGUOUS"] + assert (self.pyarr_attr[6] & wrap.FORTRAN) + + assert self.arr_attr[1] == self.pyarr_attr[1] # nd + assert self.arr_attr[2] == self.pyarr_attr[2] # dimensions + if self.arr_attr[1] <= 1: + assert self.arr_attr[3] == self.pyarr_attr[3], repr(( + self.arr_attr[3], + self.pyarr_attr[3], + self.arr.tobytes(), + self.pyarr.tobytes(), + )) # strides + assert self.arr_attr[5][-2:] == self.pyarr_attr[5][-2:], repr(( + self.arr_attr[5], self.pyarr_attr[5] + )) # descr + assert self.arr_attr[6] == self.pyarr_attr[6], repr(( + self.arr_attr[6], + self.pyarr_attr[6], + flags2names(0 * self.arr_attr[6] - self.pyarr_attr[6]), + flags2names(self.arr_attr[6]), + intent, + )) # flags + + if intent.is_intent("cache"): + assert self.arr_attr[5][3] >= self.type.elsize + else: + assert self.arr_attr[5][3] == self.type.elsize + assert (self.arr_equal(self.pyarr, self.arr)) + + if isinstance(self.obj, np.ndarray): + if typ.elsize == Type(obj.dtype).elsize: + if not intent.is_intent("copy") and self.arr_attr[1] <= 1: + assert self.has_shared_memory() + + def arr_equal(self, arr1, arr2): + if arr1.shape != arr2.shape: + return False + return (arr1 == arr2).all() + + def __str__(self): + return str(self.arr) + + def has_shared_memory(self): + """Check that created array shares data with input array.""" + if self.obj is self.arr: + return True + if not isinstance(self.obj, np.ndarray): + return False + obj_attr = wrap.array_attrs(self.obj) + return obj_attr[0] == self.arr_attr[0] + + +class TestIntent: + def test_in_out(self): + assert str(intent.in_.out) == "intent(in,out)" + assert intent.in_.c.is_intent("c") + assert not intent.in_.c.is_intent_exact("c") + assert intent.in_.c.is_intent_exact("c", "in") + assert intent.in_.c.is_intent_exact("in", "c") + assert not intent.in_.is_intent("c") + + +class TestSharedMemory: + + @pytest.fixture(autouse=True, scope="class", params=_type_names) + def setup_type(self, request): + request.cls.type = Type(request.param) + request.cls.array = lambda self, dims, intent, obj: Array( + Type(request.param), dims, intent, obj) + + @property + def num2seq(self): + if self.type.NAME.startswith('STRING'): + elsize = self.type.elsize + return ['1' * elsize, '2' * elsize] + return [1, 2] + + @property + def num23seq(self): + if self.type.NAME.startswith('STRING'): + elsize = self.type.elsize + return [['1' * elsize, '2' * elsize, '3' * elsize], + ['4' * elsize, '5' * elsize, '6' * elsize]] + return [[1, 2, 3], [4, 5, 6]] + + def test_in_from_2seq(self): + a = self.array([2], intent.in_, self.num2seq) + assert not a.has_shared_memory() + + def test_in_from_2casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num2seq, dtype=t.dtype) + a = self.array([len(self.num2seq)], intent.in_, obj) + if t.elsize == self.type.elsize: + assert a.has_shared_memory(), repr((self.type.dtype, t.dtype)) + else: + assert not a.has_shared_memory() + + @pytest.mark.parametrize("write", ["w", "ro"]) + @pytest.mark.parametrize("order", ["C", "F"]) + @pytest.mark.parametrize("inp", ["2seq", "23seq"]) + def test_in_nocopy(self, write, order, inp): + """Test if intent(in) array can be passed without copies""" + seq = getattr(self, "num" + inp) + obj = np.array(seq, dtype=self.type.dtype, order=order) + obj.setflags(write=(write == 'w')) + a = self.array(obj.shape, + ((order == 'C' and intent.in_.c) or intent.in_), obj) + assert a.has_shared_memory() + + def test_inout_2seq(self): + obj = np.array(self.num2seq, dtype=self.type.dtype) + a = self.array([len(self.num2seq)], intent.inout, obj) + assert a.has_shared_memory() + + try: + a = self.array([2], intent.in_.inout, self.num2seq) + except TypeError as msg: + if not str(msg).startswith( + "failed to initialize intent(inout|inplace|cache) array"): + raise + else: + raise SystemError("intent(inout) should have failed on sequence") + + def test_f_inout_23seq(self): + obj = np.array(self.num23seq, dtype=self.type.dtype, order="F") + shape = (len(self.num23seq), len(self.num23seq[0])) + a = self.array(shape, intent.in_.inout, obj) + assert a.has_shared_memory() + + obj = np.array(self.num23seq, dtype=self.type.dtype, order="C") + shape = (len(self.num23seq), len(self.num23seq[0])) + try: + a = self.array(shape, intent.in_.inout, obj) + except ValueError as msg: + if not str(msg).startswith( + "failed to initialize intent(inout) array"): + raise + else: + raise SystemError( + "intent(inout) should have failed on improper array") + + def test_c_inout_23seq(self): + obj = np.array(self.num23seq, dtype=self.type.dtype) + shape = (len(self.num23seq), len(self.num23seq[0])) + a = self.array(shape, intent.in_.c.inout, obj) + assert a.has_shared_memory() + + def test_in_copy_from_2casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num2seq, dtype=t.dtype) + a = self.array([len(self.num2seq)], intent.in_.copy, obj) + assert not a.has_shared_memory() + + def test_c_in_from_23seq(self): + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_, + self.num23seq) + assert not a.has_shared_memory() + + def test_in_from_23casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num23seq, dtype=t.dtype) + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_, obj) + assert not a.has_shared_memory() + + def test_f_in_from_23casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num23seq, dtype=t.dtype, order="F") + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_, obj) + if t.elsize == self.type.elsize: + assert a.has_shared_memory() + else: + assert not a.has_shared_memory() + + def test_c_in_from_23casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num23seq, dtype=t.dtype) + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_.c, obj) + if t.elsize == self.type.elsize: + assert a.has_shared_memory() + else: + assert not a.has_shared_memory() + + def test_f_copy_in_from_23casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num23seq, dtype=t.dtype, order="F") + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_.copy, + obj) + assert not a.has_shared_memory() + + def test_c_copy_in_from_23casttype(self): + for t in self.type.cast_types(): + obj = np.array(self.num23seq, dtype=t.dtype) + a = self.array( + [len(self.num23seq), len(self.num23seq[0])], intent.in_.c.copy, + obj) + assert not a.has_shared_memory() + + def test_in_cache_from_2casttype(self): + for t in self.type.all_types(): + if t.elsize != self.type.elsize: + continue + obj = np.array(self.num2seq, dtype=t.dtype) + shape = (len(self.num2seq), ) + a = self.array(shape, intent.in_.c.cache, obj) + assert a.has_shared_memory() + + a = self.array(shape, intent.in_.cache, obj) + assert a.has_shared_memory() + + obj = np.array(self.num2seq, dtype=t.dtype, order="F") + a = self.array(shape, intent.in_.c.cache, obj) + assert a.has_shared_memory() + + a = self.array(shape, intent.in_.cache, obj) + assert a.has_shared_memory(), repr(t.dtype) + + try: + a = self.array(shape, intent.in_.cache, obj[::-1]) + except ValueError as msg: + if not str(msg).startswith( + "failed to initialize intent(cache) array"): + raise + else: + raise SystemError( + "intent(cache) should have failed on multisegmented array") + + def test_in_cache_from_2casttype_failure(self): + for t in self.type.all_types(): + if t.NAME == 'STRING': + # string elsize is 0, so skipping the test + continue + if t.elsize >= self.type.elsize: + continue + is_int = np.issubdtype(t.dtype, np.integer) + if is_int and int(self.num2seq[0]) > np.iinfo(t.dtype).max: + # skip test if num2seq would trigger an overflow error + continue + obj = np.array(self.num2seq, dtype=t.dtype) + shape = (len(self.num2seq), ) + try: + self.array(shape, intent.in_.cache, obj) # Should succeed + except ValueError as msg: + if not str(msg).startswith( + "failed to initialize intent(cache) array"): + raise + else: + raise SystemError( + "intent(cache) should have failed on smaller array") + + def test_cache_hidden(self): + shape = (2, ) + a = self.array(shape, intent.cache.hide, None) + assert a.arr.shape == shape + + shape = (2, 3) + a = self.array(shape, intent.cache.hide, None) + assert a.arr.shape == shape + + shape = (-1, 3) + try: + a = self.array(shape, intent.cache.hide, None) + except ValueError as msg: + if not str(msg).startswith( + "failed to create intent(cache|hide)|optional array"): + raise + else: + raise SystemError( + "intent(cache) should have failed on undefined dimensions") + + def test_hidden(self): + shape = (2, ) + a = self.array(shape, intent.hide, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + + shape = (2, 3) + a = self.array(shape, intent.hide, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + assert a.arr.flags["FORTRAN"] and not a.arr.flags["CONTIGUOUS"] + + shape = (2, 3) + a = self.array(shape, intent.c.hide, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + assert not a.arr.flags["FORTRAN"] and a.arr.flags["CONTIGUOUS"] + + shape = (-1, 3) + try: + a = self.array(shape, intent.hide, None) + except ValueError as msg: + if not str(msg).startswith( + "failed to create intent(cache|hide)|optional array"): + raise + else: + raise SystemError( + "intent(hide) should have failed on undefined dimensions") + + def test_optional_none(self): + shape = (2, ) + a = self.array(shape, intent.optional, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + + shape = (2, 3) + a = self.array(shape, intent.optional, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + assert a.arr.flags["FORTRAN"] and not a.arr.flags["CONTIGUOUS"] + + shape = (2, 3) + a = self.array(shape, intent.c.optional, None) + assert a.arr.shape == shape + assert a.arr_equal(a.arr, np.zeros(shape, dtype=self.type.dtype)) + assert not a.arr.flags["FORTRAN"] and a.arr.flags["CONTIGUOUS"] + + def test_optional_from_2seq(self): + obj = self.num2seq + shape = (len(obj), ) + a = self.array(shape, intent.optional, obj) + assert a.arr.shape == shape + assert not a.has_shared_memory() + + def test_optional_from_23seq(self): + obj = self.num23seq + shape = (len(obj), len(obj[0])) + a = self.array(shape, intent.optional, obj) + assert a.arr.shape == shape + assert not a.has_shared_memory() + + a = self.array(shape, intent.optional.c, obj) + assert a.arr.shape == shape + assert not a.has_shared_memory() + + def test_inplace(self): + obj = np.array(self.num23seq, dtype=self.type.dtype) + assert not obj.flags["FORTRAN"] and obj.flags["CONTIGUOUS"] + shape = obj.shape + a = self.array(shape, intent.inplace, obj) + assert obj[1][2] == a.arr[1][2], repr((obj, a.arr)) + a.arr[1][2] = 54 + assert obj[1][2] == a.arr[1][2] == np.array(54, dtype=self.type.dtype) + assert a.arr is obj + assert obj.flags["FORTRAN"] # obj attributes are changed inplace! + assert not obj.flags["CONTIGUOUS"] + + def test_inplace_from_casttype(self): + for t in self.type.cast_types(): + if t is self.type: + continue + obj = np.array(self.num23seq, dtype=t.dtype) + assert obj.dtype.type == t.type + assert obj.dtype.type is not self.type.type + assert not obj.flags["FORTRAN"] and obj.flags["CONTIGUOUS"] + shape = obj.shape + a = self.array(shape, intent.inplace, obj) + assert obj[1][2] == a.arr[1][2], repr((obj, a.arr)) + a.arr[1][2] = 54 + assert obj[1][2] == a.arr[1][2] == np.array(54, + dtype=self.type.dtype) + assert a.arr is obj + assert obj.flags["FORTRAN"] # obj attributes changed inplace! + assert not obj.flags["CONTIGUOUS"] + assert obj.dtype.type is self.type.type # obj changed inplace! diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_assumed_shape.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_assumed_shape.py new file mode 100644 index 0000000000000000000000000000000000000000..d4664cf88cbe9701105a5d428332e3aa0d623930 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_assumed_shape.py @@ -0,0 +1,49 @@ +import os +import pytest +import tempfile + +from . import util + + +class TestAssumedShapeSumExample(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "assumed_shape", "foo_free.f90"), + util.getpath("tests", "src", "assumed_shape", "foo_use.f90"), + util.getpath("tests", "src", "assumed_shape", "precision.f90"), + util.getpath("tests", "src", "assumed_shape", "foo_mod.f90"), + util.getpath("tests", "src", "assumed_shape", ".f2py_f2cmap"), + ] + + @pytest.mark.slow + def test_all(self): + r = self.module.fsum([1, 2]) + assert r == 3 + r = self.module.sum([1, 2]) + assert r == 3 + r = self.module.sum_with_use([1, 2]) + assert r == 3 + + r = self.module.mod.sum([1, 2]) + assert r == 3 + r = self.module.mod.fsum([1, 2]) + assert r == 3 + + +class TestF2cmapOption(TestAssumedShapeSumExample): + def setup_method(self): + # Use a custom file name for .f2py_f2cmap + self.sources = list(self.sources) + f2cmap_src = self.sources.pop(-1) + + self.f2cmap_file = tempfile.NamedTemporaryFile(delete=False) + with open(f2cmap_src, "rb") as f: + self.f2cmap_file.write(f.read()) + self.f2cmap_file.close() + + self.sources.append(self.f2cmap_file.name) + self.options = ["--f2cmap", self.f2cmap_file.name] + + super().setup_method() + + def teardown_method(self): + os.unlink(self.f2cmap_file.name) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_block_docstring.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_block_docstring.py new file mode 100644 index 0000000000000000000000000000000000000000..16b5559e8e42da3fdcf0890fc08fb0a248bd69c1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_block_docstring.py @@ -0,0 +1,18 @@ +import sys +import pytest +from . import util + +from numpy.testing import IS_PYPY + + +@pytest.mark.slow +class TestBlockDocString(util.F2PyTest): + sources = [util.getpath("tests", "src", "block_docstring", "foo.f")] + + @pytest.mark.skipif(sys.platform == "win32", + reason="Fails with MinGW64 Gfortran (Issue #9673)") + @pytest.mark.xfail(IS_PYPY, + reason="PyPy cannot modify tp_doc after PyType_Ready") + def test_block_docstring(self): + expected = "bar : 'i'-array(2,3)\n" + assert self.module.block.__doc__ == expected diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_callback.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_callback.py new file mode 100644 index 0000000000000000000000000000000000000000..4a9ed484a4a4a370f0c2d82d6a3d5b6f7ab5582e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_callback.py @@ -0,0 +1,261 @@ +import math +import textwrap +import sys +import pytest +import threading +import traceback +import time +import platform + +import numpy as np +from numpy.testing import IS_PYPY +from . import util + + +class TestF77Callback(util.F2PyTest): + sources = [util.getpath("tests", "src", "callback", "foo.f")] + + @pytest.mark.parametrize("name", "t,t2".split(",")) + @pytest.mark.slow + def test_all(self, name): + self.check_function(name) + + @pytest.mark.xfail(IS_PYPY, + reason="PyPy cannot modify tp_doc after PyType_Ready") + def test_docstring(self): + expected = textwrap.dedent("""\ + a = t(fun,[fun_extra_args]) + + Wrapper for ``t``. + + Parameters + ---------- + fun : call-back function + + Other Parameters + ---------------- + fun_extra_args : input tuple, optional + Default: () + + Returns + ------- + a : int + + Notes + ----- + Call-back functions:: + + def fun(): return a + Return objects: + a : int + """) + assert self.module.t.__doc__ == expected + + def check_function(self, name): + t = getattr(self.module, name) + r = t(lambda: 4) + assert r == 4 + r = t(lambda a: 5, fun_extra_args=(6, )) + assert r == 5 + r = t(lambda a: a, fun_extra_args=(6, )) + assert r == 6 + r = t(lambda a: 5 + a, fun_extra_args=(7, )) + assert r == 12 + r = t(lambda a: math.degrees(a), fun_extra_args=(math.pi, )) + assert r == 180 + r = t(math.degrees, fun_extra_args=(math.pi, )) + assert r == 180 + + r = t(self.module.func, fun_extra_args=(6, )) + assert r == 17 + r = t(self.module.func0) + assert r == 11 + r = t(self.module.func0._cpointer) + assert r == 11 + + class A: + def __call__(self): + return 7 + + def mth(self): + return 9 + + a = A() + r = t(a) + assert r == 7 + r = t(a.mth) + assert r == 9 + + @pytest.mark.skipif(sys.platform == 'win32', + reason='Fails with MinGW64 Gfortran (Issue #9673)') + def test_string_callback(self): + def callback(code): + if code == "r": + return 0 + else: + return 1 + + f = self.module.string_callback + r = f(callback) + assert r == 0 + + @pytest.mark.skipif(sys.platform == 'win32', + reason='Fails with MinGW64 Gfortran (Issue #9673)') + def test_string_callback_array(self): + # See gh-10027 + cu1 = np.zeros((1, ), "S8") + cu2 = np.zeros((1, 8), "c") + cu3 = np.array([""], "S8") + + def callback(cu, lencu): + if cu.shape != (lencu,): + return 1 + if cu.dtype != "S8": + return 2 + if not np.all(cu == b""): + return 3 + return 0 + + f = self.module.string_callback_array + for cu in [cu1, cu2, cu3]: + res = f(callback, cu, cu.size) + assert res == 0 + + def test_threadsafety(self): + # Segfaults if the callback handling is not threadsafe + + errors = [] + + def cb(): + # Sleep here to make it more likely for another thread + # to call their callback at the same time. + time.sleep(1e-3) + + # Check reentrancy + r = self.module.t(lambda: 123) + assert r == 123 + + return 42 + + def runner(name): + try: + for j in range(50): + r = self.module.t(cb) + assert r == 42 + self.check_function(name) + except Exception: + errors.append(traceback.format_exc()) + + threads = [ + threading.Thread(target=runner, args=(arg, )) + for arg in ("t", "t2") for n in range(20) + ] + + for t in threads: + t.start() + + for t in threads: + t.join() + + errors = "\n\n".join(errors) + if errors: + raise AssertionError(errors) + + def test_hidden_callback(self): + try: + self.module.hidden_callback(2) + except Exception as msg: + assert str(msg).startswith("Callback global_f not defined") + + try: + self.module.hidden_callback2(2) + except Exception as msg: + assert str(msg).startswith("cb: Callback global_f not defined") + + self.module.global_f = lambda x: x + 1 + r = self.module.hidden_callback(2) + assert r == 3 + + self.module.global_f = lambda x: x + 2 + r = self.module.hidden_callback(2) + assert r == 4 + + del self.module.global_f + try: + self.module.hidden_callback(2) + except Exception as msg: + assert str(msg).startswith("Callback global_f not defined") + + self.module.global_f = lambda x=0: x + 3 + r = self.module.hidden_callback(2) + assert r == 5 + + # reproducer of gh18341 + r = self.module.hidden_callback2(2) + assert r == 3 + + +class TestF77CallbackPythonTLS(TestF77Callback): + """ + Callback tests using Python thread-local storage instead of + compiler-provided + """ + + options = ["-DF2PY_USE_PYTHON_TLS"] + + +class TestF90Callback(util.F2PyTest): + sources = [util.getpath("tests", "src", "callback", "gh17797.f90")] + + @pytest.mark.slow + def test_gh17797(self): + def incr(x): + return x + 123 + + y = np.array([1, 2, 3], dtype=np.int64) + r = self.module.gh17797(incr, y) + assert r == 123 + 1 + 2 + 3 + + +class TestGH18335(util.F2PyTest): + """The reproduction of the reported issue requires specific input that + extensions may break the issue conditions, so the reproducer is + implemented as a separate test class. Do not extend this test with + other tests! + """ + sources = [util.getpath("tests", "src", "callback", "gh18335.f90")] + + @pytest.mark.slow + def test_gh18335(self): + def foo(x): + x[0] += 1 + + r = self.module.gh18335(foo) + assert r == 123 + 1 + + +class TestGH25211(util.F2PyTest): + sources = [util.getpath("tests", "src", "callback", "gh25211.f"), + util.getpath("tests", "src", "callback", "gh25211.pyf")] + module_name = "callback2" + + def test_gh25211(self): + def bar(x): + return x*x + + res = self.module.foo(bar) + assert res == 110 + + +@pytest.mark.slow +@pytest.mark.xfail(condition=(platform.system().lower() == 'darwin'), + run=False, + reason="Callback aborts cause CI failures on macOS") +class TestCBFortranCallstatement(util.F2PyTest): + sources = [util.getpath("tests", "src", "callback", "gh26681.f90")] + options = ['--lower'] + + def test_callstatement_fortran(self): + with pytest.raises(ValueError, match='helpme') as exc: + self.module.mypy_abort = self.module.utils.my_abort + self.module.utils.do_something('helpme') diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_character.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_character.py new file mode 100644 index 0000000000000000000000000000000000000000..da00fa9e27cd4dff6d7af9642067a0a162cfbbb0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_character.py @@ -0,0 +1,639 @@ +import pytest +import textwrap +from numpy.testing import assert_array_equal, assert_equal, assert_raises +import numpy as np +from numpy.f2py.tests import util + + +@pytest.mark.slow +class TestCharacterString(util.F2PyTest): + # options = ['--debug-capi', '--build-dir', '/tmp/test-build-f2py'] + suffix = '.f90' + fprefix = 'test_character_string' + length_list = ['1', '3', 'star'] + + code = '' + for length in length_list: + fsuffix = length + clength = dict(star='(*)').get(length, length) + + code += textwrap.dedent(f""" + + subroutine {fprefix}_input_{fsuffix}(c, o, n) + character*{clength}, intent(in) :: c + integer n + !f2py integer, depend(c), intent(hide) :: n = slen(c) + integer*1, dimension(n) :: o + !f2py intent(out) o + o = transfer(c, o) + end subroutine {fprefix}_input_{fsuffix} + + subroutine {fprefix}_output_{fsuffix}(c, o, n) + character*{clength}, intent(out) :: c + integer n + integer*1, dimension(n), intent(in) :: o + !f2py integer, depend(o), intent(hide) :: n = len(o) + c = transfer(o, c) + end subroutine {fprefix}_output_{fsuffix} + + subroutine {fprefix}_array_input_{fsuffix}(c, o, m, n) + integer m, i, n + character*{clength}, intent(in), dimension(m) :: c + !f2py integer, depend(c), intent(hide) :: m = len(c) + !f2py integer, depend(c), intent(hide) :: n = f2py_itemsize(c) + integer*1, dimension(m, n), intent(out) :: o + do i=1,m + o(i, :) = transfer(c(i), o(i, :)) + end do + end subroutine {fprefix}_array_input_{fsuffix} + + subroutine {fprefix}_array_output_{fsuffix}(c, o, m, n) + character*{clength}, intent(out), dimension(m) :: c + integer n + integer*1, dimension(m, n), intent(in) :: o + !f2py character(f2py_len=n) :: c + !f2py integer, depend(o), intent(hide) :: m = len(o) + !f2py integer, depend(o), intent(hide) :: n = shape(o, 1) + do i=1,m + c(i) = transfer(o(i, :), c(i)) + end do + end subroutine {fprefix}_array_output_{fsuffix} + + subroutine {fprefix}_2d_array_input_{fsuffix}(c, o, m1, m2, n) + integer m1, m2, i, j, n + character*{clength}, intent(in), dimension(m1, m2) :: c + !f2py integer, depend(c), intent(hide) :: m1 = len(c) + !f2py integer, depend(c), intent(hide) :: m2 = shape(c, 1) + !f2py integer, depend(c), intent(hide) :: n = f2py_itemsize(c) + integer*1, dimension(m1, m2, n), intent(out) :: o + do i=1,m1 + do j=1,m2 + o(i, j, :) = transfer(c(i, j), o(i, j, :)) + end do + end do + end subroutine {fprefix}_2d_array_input_{fsuffix} + """) + + @pytest.mark.parametrize("length", length_list) + def test_input(self, length): + fsuffix = {'(*)': 'star'}.get(length, length) + f = getattr(self.module, self.fprefix + '_input_' + fsuffix) + + a = {'1': 'a', '3': 'abc', 'star': 'abcde' * 3}[length] + + assert_array_equal(f(a), np.array(list(map(ord, a)), dtype='u1')) + + @pytest.mark.parametrize("length", length_list[:-1]) + def test_output(self, length): + fsuffix = length + f = getattr(self.module, self.fprefix + '_output_' + fsuffix) + + a = {'1': 'a', '3': 'abc'}[length] + + assert_array_equal(f(np.array(list(map(ord, a)), dtype='u1')), + a.encode()) + + @pytest.mark.parametrize("length", length_list) + def test_array_input(self, length): + fsuffix = length + f = getattr(self.module, self.fprefix + '_array_input_' + fsuffix) + + a = np.array([{'1': 'a', '3': 'abc', 'star': 'abcde' * 3}[length], + {'1': 'A', '3': 'ABC', 'star': 'ABCDE' * 3}[length], + ], dtype='S') + + expected = np.array([list(s) for s in a], dtype='u1') + assert_array_equal(f(a), expected) + + @pytest.mark.parametrize("length", length_list) + def test_array_output(self, length): + fsuffix = length + f = getattr(self.module, self.fprefix + '_array_output_' + fsuffix) + + expected = np.array( + [{'1': 'a', '3': 'abc', 'star': 'abcde' * 3}[length], + {'1': 'A', '3': 'ABC', 'star': 'ABCDE' * 3}[length]], dtype='S') + + a = np.array([list(s) for s in expected], dtype='u1') + assert_array_equal(f(a), expected) + + @pytest.mark.parametrize("length", length_list) + def test_2d_array_input(self, length): + fsuffix = length + f = getattr(self.module, self.fprefix + '_2d_array_input_' + fsuffix) + + a = np.array([[{'1': 'a', '3': 'abc', 'star': 'abcde' * 3}[length], + {'1': 'A', '3': 'ABC', 'star': 'ABCDE' * 3}[length]], + [{'1': 'f', '3': 'fgh', 'star': 'fghij' * 3}[length], + {'1': 'F', '3': 'FGH', 'star': 'FGHIJ' * 3}[length]]], + dtype='S') + expected = np.array([[list(item) for item in row] for row in a], + dtype='u1', order='F') + assert_array_equal(f(a), expected) + + +class TestCharacter(util.F2PyTest): + # options = ['--debug-capi', '--build-dir', '/tmp/test-build-f2py'] + suffix = '.f90' + fprefix = 'test_character' + + code = textwrap.dedent(f""" + subroutine {fprefix}_input(c, o) + character, intent(in) :: c + integer*1 o + !f2py intent(out) o + o = transfer(c, o) + end subroutine {fprefix}_input + + subroutine {fprefix}_output(c, o) + character :: c + integer*1, intent(in) :: o + !f2py intent(out) c + c = transfer(o, c) + end subroutine {fprefix}_output + + subroutine {fprefix}_input_output(c, o) + character, intent(in) :: c + character o + !f2py intent(out) o + o = c + end subroutine {fprefix}_input_output + + subroutine {fprefix}_inout(c, n) + character :: c, n + !f2py intent(in) n + !f2py intent(inout) c + c = n + end subroutine {fprefix}_inout + + function {fprefix}_return(o) result (c) + character :: c + character, intent(in) :: o + c = transfer(o, c) + end function {fprefix}_return + + subroutine {fprefix}_array_input(c, o) + character, intent(in) :: c(3) + integer*1 o(3) + !f2py intent(out) o + integer i + do i=1,3 + o(i) = transfer(c(i), o(i)) + end do + end subroutine {fprefix}_array_input + + subroutine {fprefix}_2d_array_input(c, o) + character, intent(in) :: c(2, 3) + integer*1 o(2, 3) + !f2py intent(out) o + integer i, j + do i=1,2 + do j=1,3 + o(i, j) = transfer(c(i, j), o(i, j)) + end do + end do + end subroutine {fprefix}_2d_array_input + + subroutine {fprefix}_array_output(c, o) + character :: c(3) + integer*1, intent(in) :: o(3) + !f2py intent(out) c + do i=1,3 + c(i) = transfer(o(i), c(i)) + end do + end subroutine {fprefix}_array_output + + subroutine {fprefix}_array_inout(c, n) + character :: c(3), n(3) + !f2py intent(in) n(3) + !f2py intent(inout) c(3) + do i=1,3 + c(i) = n(i) + end do + end subroutine {fprefix}_array_inout + + subroutine {fprefix}_2d_array_inout(c, n) + character :: c(2, 3), n(2, 3) + !f2py intent(in) n(2, 3) + !f2py intent(inout) c(2. 3) + integer i, j + do i=1,2 + do j=1,3 + c(i, j) = n(i, j) + end do + end do + end subroutine {fprefix}_2d_array_inout + + function {fprefix}_array_return(o) result (c) + character, dimension(3) :: c + character, intent(in) :: o(3) + do i=1,3 + c(i) = o(i) + end do + end function {fprefix}_array_return + + function {fprefix}_optional(o) result (c) + character, intent(in) :: o + !f2py character o = "a" + character :: c + c = o + end function {fprefix}_optional + """) + + @pytest.mark.parametrize("dtype", ['c', 'S1']) + def test_input(self, dtype): + f = getattr(self.module, self.fprefix + '_input') + + assert_equal(f(np.array('a', dtype=dtype)), ord('a')) + assert_equal(f(np.array(b'a', dtype=dtype)), ord('a')) + assert_equal(f(np.array(['a'], dtype=dtype)), ord('a')) + assert_equal(f(np.array('abc', dtype=dtype)), ord('a')) + assert_equal(f(np.array([['a']], dtype=dtype)), ord('a')) + + def test_input_varia(self): + f = getattr(self.module, self.fprefix + '_input') + + assert_equal(f('a'), ord('a')) + assert_equal(f(b'a'), ord(b'a')) + assert_equal(f(''), 0) + assert_equal(f(b''), 0) + assert_equal(f(b'\0'), 0) + assert_equal(f('ab'), ord('a')) + assert_equal(f(b'ab'), ord('a')) + assert_equal(f(['a']), ord('a')) + + assert_equal(f(np.array(b'a')), ord('a')) + assert_equal(f(np.array([b'a'])), ord('a')) + a = np.array('a') + assert_equal(f(a), ord('a')) + a = np.array(['a']) + assert_equal(f(a), ord('a')) + + try: + f([]) + except IndexError as msg: + if not str(msg).endswith(' got 0-list'): + raise + else: + raise SystemError(f'{f.__name__} should have failed on empty list') + + try: + f(97) + except TypeError as msg: + if not str(msg).endswith(' got int instance'): + raise + else: + raise SystemError(f'{f.__name__} should have failed on int value') + + @pytest.mark.parametrize("dtype", ['c', 'S1', 'U1']) + def test_array_input(self, dtype): + f = getattr(self.module, self.fprefix + '_array_input') + + assert_array_equal(f(np.array(['a', 'b', 'c'], dtype=dtype)), + np.array(list(map(ord, 'abc')), dtype='i1')) + assert_array_equal(f(np.array([b'a', b'b', b'c'], dtype=dtype)), + np.array(list(map(ord, 'abc')), dtype='i1')) + + def test_array_input_varia(self): + f = getattr(self.module, self.fprefix + '_array_input') + assert_array_equal(f(['a', 'b', 'c']), + np.array(list(map(ord, 'abc')), dtype='i1')) + assert_array_equal(f([b'a', b'b', b'c']), + np.array(list(map(ord, 'abc')), dtype='i1')) + + try: + f(['a', 'b', 'c', 'd']) + except ValueError as msg: + if not str(msg).endswith( + 'th dimension must be fixed to 3 but got 4'): + raise + else: + raise SystemError( + f'{f.__name__} should have failed on wrong input') + + @pytest.mark.parametrize("dtype", ['c', 'S1', 'U1']) + def test_2d_array_input(self, dtype): + f = getattr(self.module, self.fprefix + '_2d_array_input') + + a = np.array([['a', 'b', 'c'], + ['d', 'e', 'f']], dtype=dtype, order='F') + expected = a.view(np.uint32 if dtype == 'U1' else np.uint8) + assert_array_equal(f(a), expected) + + def test_output(self): + f = getattr(self.module, self.fprefix + '_output') + + assert_equal(f(ord(b'a')), b'a') + assert_equal(f(0), b'\0') + + def test_array_output(self): + f = getattr(self.module, self.fprefix + '_array_output') + + assert_array_equal(f(list(map(ord, 'abc'))), + np.array(list('abc'), dtype='S1')) + + def test_input_output(self): + f = getattr(self.module, self.fprefix + '_input_output') + + assert_equal(f(b'a'), b'a') + assert_equal(f('a'), b'a') + assert_equal(f(''), b'\0') + + @pytest.mark.parametrize("dtype", ['c', 'S1']) + def test_inout(self, dtype): + f = getattr(self.module, self.fprefix + '_inout') + + a = np.array(list('abc'), dtype=dtype) + f(a, 'A') + assert_array_equal(a, np.array(list('Abc'), dtype=a.dtype)) + f(a[1:], 'B') + assert_array_equal(a, np.array(list('ABc'), dtype=a.dtype)) + + a = np.array(['abc'], dtype=dtype) + f(a, 'A') + assert_array_equal(a, np.array(['Abc'], dtype=a.dtype)) + + def test_inout_varia(self): + f = getattr(self.module, self.fprefix + '_inout') + a = np.array('abc', dtype='S3') + f(a, 'A') + assert_array_equal(a, np.array('Abc', dtype=a.dtype)) + + a = np.array(['abc'], dtype='S3') + f(a, 'A') + assert_array_equal(a, np.array(['Abc'], dtype=a.dtype)) + + try: + f('abc', 'A') + except ValueError as msg: + if not str(msg).endswith(' got 3-str'): + raise + else: + raise SystemError(f'{f.__name__} should have failed on str value') + + @pytest.mark.parametrize("dtype", ['c', 'S1']) + def test_array_inout(self, dtype): + f = getattr(self.module, self.fprefix + '_array_inout') + n = np.array(['A', 'B', 'C'], dtype=dtype, order='F') + + a = np.array(['a', 'b', 'c'], dtype=dtype, order='F') + f(a, n) + assert_array_equal(a, n) + + a = np.array(['a', 'b', 'c', 'd'], dtype=dtype) + f(a[1:], n) + assert_array_equal(a, np.array(['a', 'A', 'B', 'C'], dtype=dtype)) + + a = np.array([['a', 'b', 'c']], dtype=dtype, order='F') + f(a, n) + assert_array_equal(a, np.array([['A', 'B', 'C']], dtype=dtype)) + + a = np.array(['a', 'b', 'c', 'd'], dtype=dtype, order='F') + try: + f(a, n) + except ValueError as msg: + if not str(msg).endswith( + 'th dimension must be fixed to 3 but got 4'): + raise + else: + raise SystemError( + f'{f.__name__} should have failed on wrong input') + + @pytest.mark.parametrize("dtype", ['c', 'S1']) + def test_2d_array_inout(self, dtype): + f = getattr(self.module, self.fprefix + '_2d_array_inout') + n = np.array([['A', 'B', 'C'], + ['D', 'E', 'F']], + dtype=dtype, order='F') + a = np.array([['a', 'b', 'c'], + ['d', 'e', 'f']], + dtype=dtype, order='F') + f(a, n) + assert_array_equal(a, n) + + def test_return(self): + f = getattr(self.module, self.fprefix + '_return') + + assert_equal(f('a'), b'a') + + @pytest.mark.skip('fortran function returning array segfaults') + def test_array_return(self): + f = getattr(self.module, self.fprefix + '_array_return') + + a = np.array(list('abc'), dtype='S1') + assert_array_equal(f(a), a) + + def test_optional(self): + f = getattr(self.module, self.fprefix + '_optional') + + assert_equal(f(), b"a") + assert_equal(f(b'B'), b"B") + + +class TestMiscCharacter(util.F2PyTest): + # options = ['--debug-capi', '--build-dir', '/tmp/test-build-f2py'] + suffix = '.f90' + fprefix = 'test_misc_character' + + code = textwrap.dedent(f""" + subroutine {fprefix}_gh18684(x, y, m) + character(len=5), dimension(m), intent(in) :: x + character*5, dimension(m), intent(out) :: y + integer i, m + !f2py integer, intent(hide), depend(x) :: m = f2py_len(x) + do i=1,m + y(i) = x(i) + end do + end subroutine {fprefix}_gh18684 + + subroutine {fprefix}_gh6308(x, i) + integer i + !f2py check(i>=0 && i<12) i + character*5 name, x + common name(12) + name(i + 1) = x + end subroutine {fprefix}_gh6308 + + subroutine {fprefix}_gh4519(x) + character(len=*), intent(in) :: x(:) + !f2py intent(out) x + integer :: i + ! Uncomment for debug printing: + !do i=1, size(x) + ! print*, "x(",i,")=", x(i) + !end do + end subroutine {fprefix}_gh4519 + + pure function {fprefix}_gh3425(x) result (y) + character(len=*), intent(in) :: x + character(len=len(x)) :: y + integer :: i + do i = 1, len(x) + j = iachar(x(i:i)) + if (j>=iachar("a") .and. j<=iachar("z") ) then + y(i:i) = achar(j-32) + else + y(i:i) = x(i:i) + endif + end do + end function {fprefix}_gh3425 + + subroutine {fprefix}_character_bc_new(x, y, z) + character, intent(in) :: x + character, intent(out) :: y + !f2py character, depend(x) :: y = x + !f2py character, dimension((x=='a'?1:2)), depend(x), intent(out) :: z + character, dimension(*) :: z + !f2py character, optional, check(x == 'a' || x == 'b') :: x = 'a' + !f2py callstatement (*f2py_func)(&x, &y, z) + !f2py callprotoargument character*, character*, character* + if (y.eq.x) then + y = x + else + y = 'e' + endif + z(1) = 'c' + end subroutine {fprefix}_character_bc_new + + subroutine {fprefix}_character_bc_old(x, y, z) + character, intent(in) :: x + character, intent(out) :: y + !f2py character, depend(x) :: y = x[0] + !f2py character, dimension((*x=='a'?1:2)), depend(x), intent(out) :: z + character, dimension(*) :: z + !f2py character, optional, check(*x == 'a' || x[0] == 'b') :: x = 'a' + !f2py callstatement (*f2py_func)(x, y, z) + !f2py callprotoargument char*, char*, char* + if (y.eq.x) then + y = x + else + y = 'e' + endif + z(1) = 'c' + end subroutine {fprefix}_character_bc_old + """) + + @pytest.mark.slow + def test_gh18684(self): + # Test character(len=5) and character*5 usages + f = getattr(self.module, self.fprefix + '_gh18684') + x = np.array(["abcde", "fghij"], dtype='S5') + y = f(x) + + assert_array_equal(x, y) + + def test_gh6308(self): + # Test character string array in a common block + f = getattr(self.module, self.fprefix + '_gh6308') + + assert_equal(self.module._BLNK_.name.dtype, np.dtype('S5')) + assert_equal(len(self.module._BLNK_.name), 12) + f("abcde", 0) + assert_equal(self.module._BLNK_.name[0], b"abcde") + f("12345", 5) + assert_equal(self.module._BLNK_.name[5], b"12345") + + def test_gh4519(self): + # Test array of assumed length strings + f = getattr(self.module, self.fprefix + '_gh4519') + + for x, expected in [ + ('a', dict(shape=(), dtype=np.dtype('S1'))), + ('text', dict(shape=(), dtype=np.dtype('S4'))), + (np.array(['1', '2', '3'], dtype='S1'), + dict(shape=(3,), dtype=np.dtype('S1'))), + (['1', '2', '34'], + dict(shape=(3,), dtype=np.dtype('S2'))), + (['', ''], dict(shape=(2,), dtype=np.dtype('S1')))]: + r = f(x) + for k, v in expected.items(): + assert_equal(getattr(r, k), v) + + def test_gh3425(self): + # Test returning a copy of assumed length string + f = getattr(self.module, self.fprefix + '_gh3425') + # f is equivalent to bytes.upper + + assert_equal(f('abC'), b'ABC') + assert_equal(f(''), b'') + assert_equal(f('abC12d'), b'ABC12D') + + @pytest.mark.parametrize("state", ['new', 'old']) + def test_character_bc(self, state): + f = getattr(self.module, self.fprefix + '_character_bc_' + state) + + c, a = f() + assert_equal(c, b'a') + assert_equal(len(a), 1) + + c, a = f(b'b') + assert_equal(c, b'b') + assert_equal(len(a), 2) + + assert_raises(Exception, lambda: f(b'c')) + + +class TestStringScalarArr(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "scalar_string.f90")] + + def test_char(self): + for out in (self.module.string_test.string, + self.module.string_test.string77): + expected = () + assert out.shape == expected + expected = '|S8' + assert out.dtype == expected + + def test_char_arr(self): + for out in (self.module.string_test.strarr, + self.module.string_test.strarr77): + expected = (5,7) + assert out.shape == expected + expected = '|S12' + assert out.dtype == expected + +class TestStringAssumedLength(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "gh24008.f")] + + def test_gh24008(self): + self.module.greet("joe", "bob") + +@pytest.mark.slow +class TestStringOptionalInOut(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "gh24662.f90")] + + def test_gh24662(self): + self.module.string_inout_optional() + a = np.array('hi', dtype='S32') + self.module.string_inout_optional(a) + assert "output string" in a.tobytes().decode() + with pytest.raises(Exception): + aa = "Hi" + self.module.string_inout_optional(aa) + + +@pytest.mark.slow +class TestNewCharHandling(util.F2PyTest): + # from v1.24 onwards, gh-19388 + sources = [ + util.getpath("tests", "src", "string", "gh25286.pyf"), + util.getpath("tests", "src", "string", "gh25286.f90") + ] + module_name = "_char_handling_test" + + def test_gh25286(self): + info = self.module.charint('T') + assert info == 2 + +@pytest.mark.slow +class TestBCCharHandling(util.F2PyTest): + # SciPy style, "incorrect" bindings with a hook + sources = [ + util.getpath("tests", "src", "string", "gh25286_bc.pyf"), + util.getpath("tests", "src", "string", "gh25286.f90") + ] + module_name = "_char_handling_test" + + def test_gh25286(self): + info = self.module.charint('T') + assert info == 2 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_common.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_common.py new file mode 100644 index 0000000000000000000000000000000000000000..09bd6147f0f3e72fb0eaca4c9e60d8be2b5b2b57 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_common.py @@ -0,0 +1,20 @@ +import pytest +import numpy as np +from . import util + +@pytest.mark.slow +class TestCommonBlock(util.F2PyTest): + sources = [util.getpath("tests", "src", "common", "block.f")] + + def test_common_block(self): + self.module.initcb() + assert self.module.block.long_bn == np.array(1.0, dtype=np.float64) + assert self.module.block.string_bn == np.array("2", dtype="|S1") + assert self.module.block.ok == np.array(3, dtype=np.int32) + + +class TestCommonWithUse(util.F2PyTest): + sources = [util.getpath("tests", "src", "common", "gh19161.f90")] + + def test_common_gh19161(self): + assert self.module.data.x == 0 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_crackfortran.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_crackfortran.py new file mode 100644 index 0000000000000000000000000000000000000000..965a6b0f87e8005b22f2e205ffa0579dfaf62b08 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_crackfortran.py @@ -0,0 +1,418 @@ +import importlib +import time +import pytest +import numpy as np +from numpy.f2py.crackfortran import markinnerspaces, nameargspattern +from . import util +from numpy.f2py import crackfortran +import textwrap +import contextlib +import io + + +class TestNoSpace(util.F2PyTest): + # issue gh-15035: add handling for endsubroutine, endfunction with no space + # between "end" and the block name + sources = [util.getpath("tests", "src", "crackfortran", "gh15035.f")] + + def test_module(self): + k = np.array([1, 2, 3], dtype=np.float64) + w = np.array([1, 2, 3], dtype=np.float64) + self.module.subb(k) + assert np.allclose(k, w + 1) + self.module.subc([w, k]) + assert np.allclose(k, w + 1) + assert self.module.t0("23") == b"2" + + +class TestPublicPrivate: + def test_defaultPrivate(self): + fpath = util.getpath("tests", "src", "crackfortran", "privatemod.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + mod = mod[0] + assert "private" in mod["vars"]["a"]["attrspec"] + assert "public" not in mod["vars"]["a"]["attrspec"] + assert "private" in mod["vars"]["b"]["attrspec"] + assert "public" not in mod["vars"]["b"]["attrspec"] + assert "private" not in mod["vars"]["seta"]["attrspec"] + assert "public" in mod["vars"]["seta"]["attrspec"] + + def test_defaultPublic(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "publicmod.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + mod = mod[0] + assert "private" in mod["vars"]["a"]["attrspec"] + assert "public" not in mod["vars"]["a"]["attrspec"] + assert "private" not in mod["vars"]["seta"]["attrspec"] + assert "public" in mod["vars"]["seta"]["attrspec"] + + def test_access_type(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "accesstype.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + tt = mod[0]['vars'] + assert set(tt['a']['attrspec']) == {'private', 'bind(c)'} + assert set(tt['b_']['attrspec']) == {'public', 'bind(c)'} + assert set(tt['c']['attrspec']) == {'public'} + + def test_nowrap_private_proceedures(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "gh23879.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + pyf = crackfortran.crack2fortran(mod) + assert 'bar' not in pyf + +class TestModuleProcedure: + def test_moduleOperators(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "operators.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + mod = mod[0] + assert "body" in mod and len(mod["body"]) == 9 + assert mod["body"][1]["name"] == "operator(.item.)" + assert "implementedby" in mod["body"][1] + assert mod["body"][1]["implementedby"] == \ + ["item_int", "item_real"] + assert mod["body"][2]["name"] == "operator(==)" + assert "implementedby" in mod["body"][2] + assert mod["body"][2]["implementedby"] == ["items_are_equal"] + assert mod["body"][3]["name"] == "assignment(=)" + assert "implementedby" in mod["body"][3] + assert mod["body"][3]["implementedby"] == \ + ["get_int", "get_real"] + + def test_notPublicPrivate(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "pubprivmod.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + mod = mod[0] + assert mod['vars']['a']['attrspec'] == ['private', ] + assert mod['vars']['b']['attrspec'] == ['public', ] + assert mod['vars']['seta']['attrspec'] == ['public', ] + + +class TestExternal(util.F2PyTest): + # issue gh-17859: add external attribute support + sources = [util.getpath("tests", "src", "crackfortran", "gh17859.f")] + + def test_external_as_statement(self): + def incr(x): + return x + 123 + + r = self.module.external_as_statement(incr) + assert r == 123 + + def test_external_as_attribute(self): + def incr(x): + return x + 123 + + r = self.module.external_as_attribute(incr) + assert r == 123 + + +class TestCrackFortran(util.F2PyTest): + # gh-2848: commented lines between parameters in subroutine parameter lists + sources = [util.getpath("tests", "src", "crackfortran", "gh2848.f90"), + util.getpath("tests", "src", "crackfortran", "common_with_division.f") + ] + + def test_gh2848(self): + r = self.module.gh2848(1, 2) + assert r == (1, 2) + + def test_common_with_division(self): + assert len(self.module.mortmp.ctmp) == 11 + +class TestMarkinnerspaces: + # gh-14118: markinnerspaces does not handle multiple quotations + + def test_do_not_touch_normal_spaces(self): + test_list = ["a ", " a", "a b c", "'abcdefghij'"] + for i in test_list: + assert markinnerspaces(i) == i + + def test_one_relevant_space(self): + assert markinnerspaces("a 'b c' \\' \\'") == "a 'b@_@c' \\' \\'" + assert markinnerspaces(r'a "b c" \" \"') == r'a "b@_@c" \" \"' + + def test_ignore_inner_quotes(self): + assert markinnerspaces("a 'b c\" \" d' e") == "a 'b@_@c\"@_@\"@_@d' e" + assert markinnerspaces("a \"b c' ' d\" e") == "a \"b@_@c'@_@'@_@d\" e" + + def test_multiple_relevant_spaces(self): + assert markinnerspaces("a 'b c' 'd e'") == "a 'b@_@c' 'd@_@e'" + assert markinnerspaces(r'a "b c" "d e"') == r'a "b@_@c" "d@_@e"' + + +class TestDimSpec(util.F2PyTest): + """This test suite tests various expressions that are used as dimension + specifications. + + There exists two usage cases where analyzing dimensions + specifications are important. + + In the first case, the size of output arrays must be defined based + on the inputs to a Fortran function. Because Fortran supports + arbitrary bases for indexing, for instance, `arr(lower:upper)`, + f2py has to evaluate an expression `upper - lower + 1` where + `lower` and `upper` are arbitrary expressions of input parameters. + The evaluation is performed in C, so f2py has to translate Fortran + expressions to valid C expressions (an alternative approach is + that a developer specifies the corresponding C expressions in a + .pyf file). + + In the second case, when user provides an input array with a given + size but some hidden parameters used in dimensions specifications + need to be determined based on the input array size. This is a + harder problem because f2py has to solve the inverse problem: find + a parameter `p` such that `upper(p) - lower(p) + 1` equals to the + size of input array. In the case when this equation cannot be + solved (e.g. because the input array size is wrong), raise an + error before calling the Fortran function (that otherwise would + likely crash Python process when the size of input arrays is + wrong). f2py currently supports this case only when the equation + is linear with respect to unknown parameter. + + """ + + suffix = ".f90" + + code_template = textwrap.dedent(""" + function get_arr_size_{count}(a, n) result (length) + integer, intent(in) :: n + integer, dimension({dimspec}), intent(out) :: a + integer length + length = size(a) + end function + + subroutine get_inv_arr_size_{count}(a, n) + integer :: n + ! the value of n is computed in f2py wrapper + !f2py intent(out) n + integer, dimension({dimspec}), intent(in) :: a + if (a({first}).gt.0) then + ! print*, "a=", a + endif + end subroutine + """) + + linear_dimspecs = [ + "n", "2*n", "2:n", "n/2", "5 - n/2", "3*n:20", "n*(n+1):n*(n+5)", + "2*n, n" + ] + nonlinear_dimspecs = ["2*n:3*n*n+2*n"] + all_dimspecs = linear_dimspecs + nonlinear_dimspecs + + code = "" + for count, dimspec in enumerate(all_dimspecs): + lst = [(d.split(":")[0] if ":" in d else "1") for d in dimspec.split(',')] + code += code_template.format( + count=count, + dimspec=dimspec, + first=", ".join(lst), + ) + + @pytest.mark.parametrize("dimspec", all_dimspecs) + @pytest.mark.slow + def test_array_size(self, dimspec): + + count = self.all_dimspecs.index(dimspec) + get_arr_size = getattr(self.module, f"get_arr_size_{count}") + + for n in [1, 2, 3, 4, 5]: + sz, a = get_arr_size(n) + assert a.size == sz + + @pytest.mark.parametrize("dimspec", all_dimspecs) + def test_inv_array_size(self, dimspec): + + count = self.all_dimspecs.index(dimspec) + get_arr_size = getattr(self.module, f"get_arr_size_{count}") + get_inv_arr_size = getattr(self.module, f"get_inv_arr_size_{count}") + + for n in [1, 2, 3, 4, 5]: + sz, a = get_arr_size(n) + if dimspec in self.nonlinear_dimspecs: + # one must specify n as input, the call we'll ensure + # that a and n are compatible: + n1 = get_inv_arr_size(a, n) + else: + # in case of linear dependence, n can be determined + # from the shape of a: + n1 = get_inv_arr_size(a) + # n1 may be different from n (for instance, when `a` size + # is a function of some `n` fraction) but it must produce + # the same sized array + sz1, _ = get_arr_size(n1) + assert sz == sz1, (n, n1, sz, sz1) + + +class TestModuleDeclaration: + def test_dependencies(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "foo_deps.f90") + mod = crackfortran.crackfortran([str(fpath)]) + assert len(mod) == 1 + assert mod[0]["vars"]["abar"]["="] == "bar('abar')" + + +class TestEval(util.F2PyTest): + def test_eval_scalar(self): + eval_scalar = crackfortran._eval_scalar + + assert eval_scalar('123', {}) == '123' + assert eval_scalar('12 + 3', {}) == '15' + assert eval_scalar('a + b', dict(a=1, b=2)) == '3' + assert eval_scalar('"123"', {}) == "'123'" + + +class TestFortranReader(util.F2PyTest): + @pytest.mark.parametrize("encoding", + ['ascii', 'utf-8', 'utf-16', 'utf-32']) + def test_input_encoding(self, tmp_path, encoding): + # gh-635 + f_path = tmp_path / f"input_with_{encoding}_encoding.f90" + with f_path.open('w', encoding=encoding) as ff: + ff.write(""" + subroutine foo() + end subroutine foo + """) + mod = crackfortran.crackfortran([str(f_path)]) + assert mod[0]['name'] == 'foo' + + +@pytest.mark.slow +class TestUnicodeComment(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "unicode_comment.f90")] + + @pytest.mark.skipif( + (importlib.util.find_spec("charset_normalizer") is None), + reason="test requires charset_normalizer which is not installed", + ) + def test_encoding_comment(self): + self.module.foo(3) + + +class TestNameArgsPatternBacktracking: + @pytest.mark.parametrize( + ['adversary'], + [ + ('@)@bind@(@',), + ('@)@bind @(@',), + ('@)@bind foo bar baz@(@',) + ] + ) + def test_nameargspattern_backtracking(self, adversary): + '''address ReDOS vulnerability: + https://github.com/numpy/numpy/issues/23338''' + trials_per_batch = 12 + batches_per_regex = 4 + start_reps, end_reps = 15, 25 + for ii in range(start_reps, end_reps): + repeated_adversary = adversary * ii + # test times in small batches. + # this gives us more chances to catch a bad regex + # while still catching it before too long if it is bad + for _ in range(batches_per_regex): + times = [] + for _ in range(trials_per_batch): + t0 = time.perf_counter() + mtch = nameargspattern.search(repeated_adversary) + times.append(time.perf_counter() - t0) + # our pattern should be much faster than 0.2s per search + # it's unlikely that a bad regex will pass even on fast CPUs + assert np.median(times) < 0.2 + assert not mtch + # if the adversary is capped with @)@, it becomes acceptable + # according to the old version of the regex. + # that should still be true. + good_version_of_adversary = repeated_adversary + '@)@' + assert nameargspattern.search(good_version_of_adversary) + +class TestFunctionReturn(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "gh23598.f90")] + + @pytest.mark.slow + def test_function_rettype(self): + # gh-23598 + assert self.module.intproduct(3, 4) == 12 + + +class TestFortranGroupCounters(util.F2PyTest): + def test_end_if_comment(self): + # gh-23533 + fpath = util.getpath("tests", "src", "crackfortran", "gh23533.f") + try: + crackfortran.crackfortran([str(fpath)]) + except Exception as exc: + assert False, f"'crackfortran.crackfortran' raised an exception {exc}" + + +class TestF77CommonBlockReader: + def test_gh22648(self, tmp_path): + fpath = util.getpath("tests", "src", "crackfortran", "gh22648.pyf") + with contextlib.redirect_stdout(io.StringIO()) as stdout_f2py: + mod = crackfortran.crackfortran([str(fpath)]) + assert "Mismatch" not in stdout_f2py.getvalue() + +class TestParamEval: + # issue gh-11612, array parameter parsing + def test_param_eval_nested(self): + v = '(/3.14, 4./)' + g_params = dict(kind=crackfortran._kind_func, + selected_int_kind=crackfortran._selected_int_kind_func, + selected_real_kind=crackfortran._selected_real_kind_func) + params = {'dp': 8, 'intparamarray': {1: 3, 2: 5}, + 'nested': {1: 1, 2: 2, 3: 3}} + dimspec = '(2)' + ret = crackfortran.param_eval(v, g_params, params, dimspec=dimspec) + assert ret == {1: 3.14, 2: 4.0} + + def test_param_eval_nonstandard_range(self): + v = '(/ 6, 3, 1 /)' + g_params = dict(kind=crackfortran._kind_func, + selected_int_kind=crackfortran._selected_int_kind_func, + selected_real_kind=crackfortran._selected_real_kind_func) + params = {} + dimspec = '(-1:1)' + ret = crackfortran.param_eval(v, g_params, params, dimspec=dimspec) + assert ret == {-1: 6, 0: 3, 1: 1} + + def test_param_eval_empty_range(self): + v = '6' + g_params = dict(kind=crackfortran._kind_func, + selected_int_kind=crackfortran._selected_int_kind_func, + selected_real_kind=crackfortran._selected_real_kind_func) + params = {} + dimspec = '' + pytest.raises(ValueError, crackfortran.param_eval, v, g_params, params, + dimspec=dimspec) + + def test_param_eval_non_array_param(self): + v = '3.14_dp' + g_params = dict(kind=crackfortran._kind_func, + selected_int_kind=crackfortran._selected_int_kind_func, + selected_real_kind=crackfortran._selected_real_kind_func) + params = {} + ret = crackfortran.param_eval(v, g_params, params, dimspec=None) + assert ret == '3.14_dp' + + def test_param_eval_too_many_dims(self): + v = 'reshape((/ (i, i=1, 250) /), (/5, 10, 5/))' + g_params = dict(kind=crackfortran._kind_func, + selected_int_kind=crackfortran._selected_int_kind_func, + selected_real_kind=crackfortran._selected_real_kind_func) + params = {} + dimspec = '(0:4, 3:12, 5)' + pytest.raises(ValueError, crackfortran.param_eval, v, g_params, params, + dimspec=dimspec) + +@pytest.mark.slow +class TestLowerF2PYDirective(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "gh27697.f90")] + options = ['--lower'] + + def test_no_lower_fail(self): + with pytest.raises(ValueError, match='aborting directly') as exc: + self.module.utils.my_abort('aborting directly') diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_data.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_data.py new file mode 100644 index 0000000000000000000000000000000000000000..e2a425084a55198adc3075cbb11347334b08ed76 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_data.py @@ -0,0 +1,70 @@ +import pytest +import numpy as np + +from . import util +from numpy.f2py.crackfortran import crackfortran + + +class TestData(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "data_stmts.f90")] + + # For gh-23276 + @pytest.mark.slow + def test_data_stmts(self): + assert self.module.cmplxdat.i == 2 + assert self.module.cmplxdat.j == 3 + assert self.module.cmplxdat.x == 1.5 + assert self.module.cmplxdat.y == 2.0 + assert self.module.cmplxdat.pi == 3.1415926535897932384626433832795028841971693993751058209749445923078164062 + assert self.module.cmplxdat.medium_ref_index == np.array(1.+0.j) + assert np.all(self.module.cmplxdat.z == np.array([3.5, 7.0])) + assert np.all(self.module.cmplxdat.my_array == np.array([ 1.+2.j, -3.+4.j])) + assert np.all(self.module.cmplxdat.my_real_array == np.array([ 1., 2., 3.])) + assert np.all(self.module.cmplxdat.ref_index_one == np.array([13.0 + 21.0j])) + assert np.all(self.module.cmplxdat.ref_index_two == np.array([-30.0 + 43.0j])) + + def test_crackedlines(self): + mod = crackfortran(self.sources) + assert mod[0]['vars']['x']['='] == '1.5' + assert mod[0]['vars']['y']['='] == '2.0' + assert mod[0]['vars']['pi']['='] == '3.1415926535897932384626433832795028841971693993751058209749445923078164062d0' + assert mod[0]['vars']['my_real_array']['='] == '(/1.0d0, 2.0d0, 3.0d0/)' + assert mod[0]['vars']['ref_index_one']['='] == '(13.0d0, 21.0d0)' + assert mod[0]['vars']['ref_index_two']['='] == '(-30.0d0, 43.0d0)' + assert mod[0]['vars']['my_array']['='] == '(/(1.0d0, 2.0d0), (-3.0d0, 4.0d0)/)' + assert mod[0]['vars']['z']['='] == '(/3.5, 7.0/)' + +class TestDataF77(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "data_common.f")] + + # For gh-23276 + def test_data_stmts(self): + assert self.module.mycom.mydata == 0 + + def test_crackedlines(self): + mod = crackfortran(str(self.sources[0])) + print(mod[0]['vars']) + assert mod[0]['vars']['mydata']['='] == '0' + + +class TestDataMultiplierF77(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "data_multiplier.f")] + + # For gh-23276 + def test_data_stmts(self): + assert self.module.mycom.ivar1 == 3 + assert self.module.mycom.ivar2 == 3 + assert self.module.mycom.ivar3 == 2 + assert self.module.mycom.ivar4 == 2 + assert self.module.mycom.evar5 == 0 + + +class TestDataWithCommentsF77(util.F2PyTest): + sources = [util.getpath("tests", "src", "crackfortran", "data_with_comments.f")] + + # For gh-23276 + def test_data_stmts(self): + assert len(self.module.mycom.mytab) == 3 + assert self.module.mycom.mytab[0] == 0 + assert self.module.mycom.mytab[1] == 4 + assert self.module.mycom.mytab[2] == 0 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_docs.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_docs.py new file mode 100644 index 0000000000000000000000000000000000000000..efba7ea40ee661b4e42a05766504d378bcf3d7e2 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_docs.py @@ -0,0 +1,59 @@ +import pytest +import numpy as np +from numpy.testing import assert_array_equal, assert_equal +from . import util +from pathlib import Path + +def get_docdir(): + parents = Path(__file__).resolve().parents + try: + # Assumes that spin is used to run tests + nproot = parents[8] + except IndexError: + docdir = None + else: + docdir = nproot / "doc" / "source" / "f2py" / "code" + if docdir and docdir.is_dir(): + return docdir + # Assumes that an editable install is used to run tests + return parents[3] / "doc" / "source" / "f2py" / "code" + +pytestmark = pytest.mark.skipif( + not get_docdir().is_dir(), + reason=f"Could not find f2py documentation sources" + f"({get_docdir()} does not exist)", +) + +def _path(*args): + return get_docdir().joinpath(*args) + +@pytest.mark.slow +class TestDocAdvanced(util.F2PyTest): + # options = ['--debug-capi', '--build-dir', '/tmp/build-f2py'] + sources = [_path('asterisk1.f90'), _path('asterisk2.f90'), + _path('ftype.f')] + + def test_asterisk1(self): + foo = self.module.foo1 + assert_equal(foo(), b'123456789A12') + + def test_asterisk2(self): + foo = self.module.foo2 + assert_equal(foo(2), b'12') + assert_equal(foo(12), b'123456789A12') + assert_equal(foo(20), b'123456789A123456789B') + + def test_ftype(self): + ftype = self.module + ftype.foo() + assert_equal(ftype.data.a, 0) + ftype.data.a = 3 + ftype.data.x = [1, 2, 3] + assert_equal(ftype.data.a, 3) + assert_array_equal(ftype.data.x, + np.array([1, 2, 3], dtype=np.float32)) + ftype.data.x[1] = 45 + assert_array_equal(ftype.data.x, + np.array([1, 45, 3], dtype=np.float32)) + + # TODO: implement test methods for other example Fortran codes diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2cmap.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2cmap.py new file mode 100644 index 0000000000000000000000000000000000000000..6596ada33a5454398427f3b605862dd1bae9cab4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2cmap.py @@ -0,0 +1,15 @@ +from . import util +import numpy as np + +class TestF2Cmap(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "f2cmap", "isoFortranEnvMap.f90"), + util.getpath("tests", "src", "f2cmap", ".f2py_f2cmap") + ] + + # gh-15095 + def test_gh15095(self): + inp = np.ones(3) + out = self.module.func1(inp) + exp_out = 3 + assert out == exp_out diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2py2e.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2py2e.py new file mode 100644 index 0000000000000000000000000000000000000000..3f321418f403ff628b859e3037fdd3e0f6bbd320 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_f2py2e.py @@ -0,0 +1,964 @@ +import re +import shlex +import subprocess +import sys +import textwrap +from pathlib import Path +from collections import namedtuple + +import platform + +import pytest + +from . import util +from numpy.f2py.f2py2e import main as f2pycli +from numpy.testing._private.utils import NOGIL_BUILD + +####################### +# F2PY Test utilities # +###################### + +# Tests for CLI commands which call meson will fail if no compilers are present, these are to be skipped + +def compiler_check_f2pycli(): + if not util.has_fortran_compiler(): + pytest.skip("CLI command needs a Fortran compiler") + else: + f2pycli() + +######################### +# CLI utils and classes # +######################### + +PPaths = namedtuple("PPaths", "finp, f90inp, pyf, wrap77, wrap90, cmodf") + + +def get_io_paths(fname_inp, mname="untitled"): + """Takes in a temporary file for testing and returns the expected output and input paths + + Here expected output is essentially one of any of the possible generated + files. + + ..note:: + + Since this does not actually run f2py, none of these are guaranteed to + exist, and module names are typically incorrect + + Parameters + ---------- + fname_inp : str + The input filename + mname : str, optional + The name of the module, untitled by default + + Returns + ------- + genp : NamedTuple PPaths + The possible paths which are generated, not all of which exist + """ + bpath = Path(fname_inp) + return PPaths( + finp=bpath.with_suffix(".f"), + f90inp=bpath.with_suffix(".f90"), + pyf=bpath.with_suffix(".pyf"), + wrap77=bpath.with_name(f"{mname}-f2pywrappers.f"), + wrap90=bpath.with_name(f"{mname}-f2pywrappers2.f90"), + cmodf=bpath.with_name(f"{mname}module.c"), + ) + + +################ +# CLI Fixtures # +################ + + +@pytest.fixture(scope="session") +def hello_world_f90(tmpdir_factory): + """Generates a single f90 file for testing""" + fdat = util.getpath("tests", "src", "cli", "hiworld.f90").read_text() + fn = tmpdir_factory.getbasetemp() / "hello.f90" + fn.write_text(fdat, encoding="ascii") + return fn + + +@pytest.fixture(scope="session") +def gh23598_warn(tmpdir_factory): + """F90 file for testing warnings in gh23598""" + fdat = util.getpath("tests", "src", "crackfortran", "gh23598Warn.f90").read_text() + fn = tmpdir_factory.getbasetemp() / "gh23598Warn.f90" + fn.write_text(fdat, encoding="ascii") + return fn + + +@pytest.fixture(scope="session") +def gh22819_cli(tmpdir_factory): + """F90 file for testing disallowed CLI arguments in ghff819""" + fdat = util.getpath("tests", "src", "cli", "gh_22819.pyf").read_text() + fn = tmpdir_factory.getbasetemp() / "gh_22819.pyf" + fn.write_text(fdat, encoding="ascii") + return fn + + +@pytest.fixture(scope="session") +def hello_world_f77(tmpdir_factory): + """Generates a single f77 file for testing""" + fdat = util.getpath("tests", "src", "cli", "hi77.f").read_text() + fn = tmpdir_factory.getbasetemp() / "hello.f" + fn.write_text(fdat, encoding="ascii") + return fn + + +@pytest.fixture(scope="session") +def retreal_f77(tmpdir_factory): + """Generates a single f77 file for testing""" + fdat = util.getpath("tests", "src", "return_real", "foo77.f").read_text() + fn = tmpdir_factory.getbasetemp() / "foo.f" + fn.write_text(fdat, encoding="ascii") + return fn + +@pytest.fixture(scope="session") +def f2cmap_f90(tmpdir_factory): + """Generates a single f90 file for testing""" + fdat = util.getpath("tests", "src", "f2cmap", "isoFortranEnvMap.f90").read_text() + f2cmap = util.getpath("tests", "src", "f2cmap", ".f2py_f2cmap").read_text() + fn = tmpdir_factory.getbasetemp() / "f2cmap.f90" + fmap = tmpdir_factory.getbasetemp() / "mapfile" + fn.write_text(fdat, encoding="ascii") + fmap.write_text(f2cmap, encoding="ascii") + return fn + +######### +# Tests # +######### + +def test_gh22819_cli(capfd, gh22819_cli, monkeypatch): + """Check that module names are handled correctly + gh-22819 + Essentially, the -m name cannot be used to import the module, so the module + named in the .pyf needs to be used instead + + CLI :: -m and a .pyf file + """ + ipath = Path(gh22819_cli) + monkeypatch.setattr(sys, "argv", f"f2py -m blah {ipath}".split()) + with util.switchdir(ipath.parent): + f2pycli() + gen_paths = [item.name for item in ipath.parent.rglob("*") if item.is_file()] + assert "blahmodule.c" not in gen_paths # shouldn't be generated + assert "blah-f2pywrappers.f" not in gen_paths + assert "test_22819-f2pywrappers.f" in gen_paths + assert "test_22819module.c" in gen_paths + assert "Ignoring blah" + + +def test_gh22819_many_pyf(capfd, gh22819_cli, monkeypatch): + """Only one .pyf file allowed + gh-22819 + CLI :: .pyf files + """ + ipath = Path(gh22819_cli) + monkeypatch.setattr(sys, "argv", f"f2py -m blah {ipath} hello.pyf".split()) + with util.switchdir(ipath.parent): + with pytest.raises(ValueError, match="Only one .pyf file per call"): + f2pycli() + + +def test_gh23598_warn(capfd, gh23598_warn, monkeypatch): + foutl = get_io_paths(gh23598_warn, mname="test") + ipath = foutl.f90inp + monkeypatch.setattr( + sys, "argv", + f'f2py {ipath} -m test'.split()) + + with util.switchdir(ipath.parent): + f2pycli() # Generate files + wrapper = foutl.wrap90.read_text() + assert "intproductf2pywrap, intpr" not in wrapper + + +def test_gen_pyf(capfd, hello_world_f90, monkeypatch): + """Ensures that a signature file is generated via the CLI + CLI :: -h + """ + ipath = Path(hello_world_f90) + opath = Path(hello_world_f90).stem + ".pyf" + monkeypatch.setattr(sys, "argv", f'f2py -h {opath} {ipath}'.split()) + + with util.switchdir(ipath.parent): + f2pycli() # Generate wrappers + out, _ = capfd.readouterr() + assert "Saving signatures to file" in out + assert Path(f'{opath}').exists() + + +def test_gen_pyf_stdout(capfd, hello_world_f90, monkeypatch): + """Ensures that a signature file can be dumped to stdout + CLI :: -h + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -h stdout {ipath}'.split()) + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Saving signatures to file" in out + assert "function hi() ! in " in out + + +def test_gen_pyf_no_overwrite(capfd, hello_world_f90, monkeypatch): + """Ensures that the CLI refuses to overwrite signature files + CLI :: -h without --overwrite-signature + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -h faker.pyf {ipath}'.split()) + + with util.switchdir(ipath.parent): + Path("faker.pyf").write_text("Fake news", encoding="ascii") + with pytest.raises(SystemExit): + f2pycli() # Refuse to overwrite + _, err = capfd.readouterr() + assert "Use --overwrite-signature to overwrite" in err + + +@pytest.mark.skipif(sys.version_info <= (3, 12), reason="Python 3.12 required") +def test_untitled_cli(capfd, hello_world_f90, monkeypatch): + """Check that modules are named correctly + + CLI :: defaults + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f"f2py --backend meson -c {ipath}".split()) + with util.switchdir(ipath.parent): + compiler_check_f2pycli() + out, _ = capfd.readouterr() + assert "untitledmodule.c" in out + + +@pytest.mark.skipif((platform.system() != 'Linux') or (sys.version_info <= (3, 12)), reason='Compiler and 3.12 required') +def test_no_py312_distutils_fcompiler(capfd, hello_world_f90, monkeypatch): + """Check that no distutils imports are performed on 3.12 + CLI :: --fcompiler --help-link --backend distutils + """ + MNAME = "hi" + foutl = get_io_paths(hello_world_f90, mname=MNAME) + ipath = foutl.f90inp + monkeypatch.setattr( + sys, "argv", f"f2py {ipath} -c --fcompiler=gfortran -m {MNAME}".split() + ) + with util.switchdir(ipath.parent): + compiler_check_f2pycli() + out, _ = capfd.readouterr() + assert "--fcompiler cannot be used with meson" in out + monkeypatch.setattr( + sys, "argv", "f2py --help-link".split() + ) + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Use --dep for meson builds" in out + MNAME = "hi2" # Needs to be different for a new -c + monkeypatch.setattr( + sys, "argv", f"f2py {ipath} -c -m {MNAME} --backend distutils".split() + ) + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Cannot use distutils backend with Python>=3.12" in out + + +@pytest.mark.xfail +def test_f2py_skip(capfd, retreal_f77, monkeypatch): + """Tests that functions can be skipped + CLI :: skip: + """ + foutl = get_io_paths(retreal_f77, mname="test") + ipath = foutl.finp + toskip = "t0 t4 t8 sd s8 s4" + remaining = "td s0" + monkeypatch.setattr( + sys, "argv", + f'f2py {ipath} -m test skip: {toskip}'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, err = capfd.readouterr() + for skey in toskip.split(): + assert ( + f'buildmodule: Could not found the body of interfaced routine "{skey}". Skipping.' + in err) + for rkey in remaining.split(): + assert f'Constructing wrapper function "{rkey}"' in out + + +def test_f2py_only(capfd, retreal_f77, monkeypatch): + """Test that functions can be kept by only: + CLI :: only: + """ + foutl = get_io_paths(retreal_f77, mname="test") + ipath = foutl.finp + toskip = "t0 t4 t8 sd s8 s4" + tokeep = "td s0" + monkeypatch.setattr( + sys, "argv", + f'f2py {ipath} -m test only: {tokeep}'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, err = capfd.readouterr() + for skey in toskip.split(): + assert ( + f'buildmodule: Could not find the body of interfaced routine "{skey}". Skipping.' + in err) + for rkey in tokeep.split(): + assert f'Constructing wrapper function "{rkey}"' in out + + +def test_file_processing_switch(capfd, hello_world_f90, retreal_f77, + monkeypatch): + """Tests that it is possible to return to file processing mode + CLI :: : + BUG: numpy-gh #20520 + """ + foutl = get_io_paths(retreal_f77, mname="test") + ipath = foutl.finp + toskip = "t0 t4 t8 sd s8 s4" + ipath2 = Path(hello_world_f90) + tokeep = "td s0 hi" # hi is in ipath2 + mname = "blah" + monkeypatch.setattr( + sys, + "argv", + f'f2py {ipath} -m {mname} only: {tokeep} : {ipath2}'.split( + ), + ) + + with util.switchdir(ipath.parent): + f2pycli() + out, err = capfd.readouterr() + for skey in toskip.split(): + assert ( + f'buildmodule: Could not find the body of interfaced routine "{skey}". Skipping.' + in err) + for rkey in tokeep.split(): + assert f'Constructing wrapper function "{rkey}"' in out + + +def test_mod_gen_f77(capfd, hello_world_f90, monkeypatch): + """Checks the generation of files based on a module name + CLI :: -m + """ + MNAME = "hi" + foutl = get_io_paths(hello_world_f90, mname=MNAME) + ipath = foutl.f90inp + monkeypatch.setattr(sys, "argv", f'f2py {ipath} -m {MNAME}'.split()) + with util.switchdir(ipath.parent): + f2pycli() + + # Always generate C module + assert Path.exists(foutl.cmodf) + # File contains a function, check for F77 wrappers + assert Path.exists(foutl.wrap77) + + +def test_mod_gen_gh25263(capfd, hello_world_f77, monkeypatch): + """Check that pyf files are correctly generated with module structure + CLI :: -m -h pyf_file + BUG: numpy-gh #20520 + """ + MNAME = "hi" + foutl = get_io_paths(hello_world_f77, mname=MNAME) + ipath = foutl.finp + monkeypatch.setattr(sys, "argv", f'f2py {ipath} -m {MNAME} -h hi.pyf'.split()) + with util.switchdir(ipath.parent): + f2pycli() + with Path('hi.pyf').open() as hipyf: + pyfdat = hipyf.read() + assert "python module hi" in pyfdat + + +def test_lower_cmod(capfd, hello_world_f77, monkeypatch): + """Lowers cases by flag or when -h is present + + CLI :: --[no-]lower + """ + foutl = get_io_paths(hello_world_f77, mname="test") + ipath = foutl.finp + capshi = re.compile(r"HI\(\)") + capslo = re.compile(r"hi\(\)") + # Case I: --lower is passed + monkeypatch.setattr(sys, "argv", f'f2py {ipath} -m test --lower'.split()) + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert capslo.search(out) is not None + assert capshi.search(out) is None + # Case II: --no-lower is passed + monkeypatch.setattr(sys, "argv", + f'f2py {ipath} -m test --no-lower'.split()) + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert capslo.search(out) is None + assert capshi.search(out) is not None + + +def test_lower_sig(capfd, hello_world_f77, monkeypatch): + """Lowers cases in signature files by flag or when -h is present + + CLI :: --[no-]lower -h + """ + foutl = get_io_paths(hello_world_f77, mname="test") + ipath = foutl.finp + # Signature files + capshi = re.compile(r"Block: HI") + capslo = re.compile(r"Block: hi") + # Case I: --lower is implied by -h + # TODO: Clean up to prevent passing --overwrite-signature + monkeypatch.setattr( + sys, + "argv", + f'f2py {ipath} -h {foutl.pyf} -m test --overwrite-signature'.split(), + ) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert capslo.search(out) is not None + assert capshi.search(out) is None + + # Case II: --no-lower overrides -h + monkeypatch.setattr( + sys, + "argv", + f'f2py {ipath} -h {foutl.pyf} -m test --overwrite-signature --no-lower' + .split(), + ) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert capslo.search(out) is None + assert capshi.search(out) is not None + + +def test_build_dir(capfd, hello_world_f90, monkeypatch): + """Ensures that the build directory can be specified + + CLI :: --build-dir + """ + ipath = Path(hello_world_f90) + mname = "blah" + odir = "tttmp" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --build-dir {odir}'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert f"Wrote C/API module \"{mname}\"" in out + + +def test_overwrite(capfd, hello_world_f90, monkeypatch): + """Ensures that the build directory can be specified + + CLI :: --overwrite-signature + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr( + sys, "argv", + f'f2py -h faker.pyf {ipath} --overwrite-signature'.split()) + + with util.switchdir(ipath.parent): + Path("faker.pyf").write_text("Fake news", encoding="ascii") + f2pycli() + out, _ = capfd.readouterr() + assert "Saving signatures to file" in out + + +def test_latexdoc(capfd, hello_world_f90, monkeypatch): + """Ensures that TeX documentation is written out + + CLI :: --latex-doc + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --latex-doc'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Documentation is saved to file" in out + with Path(f"{mname}module.tex").open() as otex: + assert "\\documentclass" in otex.read() + + +def test_nolatexdoc(capfd, hello_world_f90, monkeypatch): + """Ensures that TeX documentation is written out + + CLI :: --no-latex-doc + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --no-latex-doc'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Documentation is saved to file" not in out + + +def test_shortlatex(capfd, hello_world_f90, monkeypatch): + """Ensures that truncated documentation is written out + + TODO: Test to ensure this has no effect without --latex-doc + CLI :: --latex-doc --short-latex + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr( + sys, + "argv", + f'f2py -m {mname} {ipath} --latex-doc --short-latex'.split(), + ) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Documentation is saved to file" in out + with Path(f"./{mname}module.tex").open() as otex: + assert "\\documentclass" not in otex.read() + + +def test_restdoc(capfd, hello_world_f90, monkeypatch): + """Ensures that RsT documentation is written out + + CLI :: --rest-doc + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --rest-doc'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "ReST Documentation is saved to file" in out + with Path(f"./{mname}module.rest").open() as orst: + assert r".. -*- rest -*-" in orst.read() + + +def test_norestexdoc(capfd, hello_world_f90, monkeypatch): + """Ensures that TeX documentation is written out + + CLI :: --no-rest-doc + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --no-rest-doc'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "ReST Documentation is saved to file" not in out + + +def test_debugcapi(capfd, hello_world_f90, monkeypatch): + """Ensures that debugging wrappers are written + + CLI :: --debug-capi + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --debug-capi'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + with Path(f"./{mname}module.c").open() as ocmod: + assert r"#define DEBUGCFUNCS" in ocmod.read() + + +@pytest.mark.skip(reason="Consistently fails on CI; noisy so skip not xfail.") +def test_debugcapi_bld(hello_world_f90, monkeypatch): + """Ensures that debugging wrappers work + + CLI :: --debug-capi -c + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} -c --debug-capi'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + cmd_run = shlex.split(f"{sys.executable} -c \"import blah; blah.hi()\"") + rout = subprocess.run(cmd_run, capture_output=True, encoding='UTF-8') + eout = ' Hello World\n' + eerr = textwrap.dedent("""\ +debug-capi:Python C/API function blah.hi() +debug-capi:float hi=:output,hidden,scalar +debug-capi:hi=0 +debug-capi:Fortran subroutine `f2pywraphi(&hi)' +debug-capi:hi=0 +debug-capi:Building return value. +debug-capi:Python C/API function blah.hi: successful. +debug-capi:Freeing memory. + """) + assert rout.stdout == eout + assert rout.stderr == eerr + + +def test_wrapfunc_def(capfd, hello_world_f90, monkeypatch): + """Ensures that fortran subroutine wrappers for F77 are included by default + + CLI :: --[no]-wrap-functions + """ + # Implied + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", f'f2py -m {mname} {ipath}'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert r"Fortran 77 wrappers are saved to" in out + + # Explicit + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --wrap-functions'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert r"Fortran 77 wrappers are saved to" in out + + +def test_nowrapfunc(capfd, hello_world_f90, monkeypatch): + """Ensures that fortran subroutine wrappers for F77 can be disabled + + CLI :: --no-wrap-functions + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr(sys, "argv", + f'f2py -m {mname} {ipath} --no-wrap-functions'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert r"Fortran 77 wrappers are saved to" not in out + + +def test_inclheader(capfd, hello_world_f90, monkeypatch): + """Add to the include directories + + CLI :: -include + TODO: Document this in the help string + """ + ipath = Path(hello_world_f90) + mname = "blah" + monkeypatch.setattr( + sys, + "argv", + f'f2py -m {mname} {ipath} -include -include '. + split(), + ) + + with util.switchdir(ipath.parent): + f2pycli() + with Path(f"./{mname}module.c").open() as ocmod: + ocmr = ocmod.read() + assert "#include " in ocmr + assert "#include " in ocmr + + +def test_inclpath(): + """Add to the include directories + + CLI :: --include-paths + """ + # TODO: populate + pass + + +def test_hlink(): + """Add to the include directories + + CLI :: --help-link + """ + # TODO: populate + pass + + +def test_f2cmap(capfd, f2cmap_f90, monkeypatch): + """Check that Fortran-to-Python KIND specs can be passed + + CLI :: --f2cmap + """ + ipath = Path(f2cmap_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} --f2cmap mapfile'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "Reading f2cmap from 'mapfile' ..." in out + assert "Mapping \"real(kind=real32)\" to \"float\"" in out + assert "Mapping \"real(kind=real64)\" to \"double\"" in out + assert "Mapping \"integer(kind=int64)\" to \"long_long\"" in out + assert "Successfully applied user defined f2cmap changes" in out + + +def test_quiet(capfd, hello_world_f90, monkeypatch): + """Reduce verbosity + + CLI :: --quiet + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} --quiet'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert len(out) == 0 + + +def test_verbose(capfd, hello_world_f90, monkeypatch): + """Increase verbosity + + CLI :: --verbose + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} --verbose'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + out, _ = capfd.readouterr() + assert "analyzeline" in out + + +def test_version(capfd, monkeypatch): + """Ensure version + + CLI :: -v + """ + monkeypatch.setattr(sys, "argv", 'f2py -v'.split()) + # TODO: f2py2e should not call sys.exit() after printing the version + with pytest.raises(SystemExit): + f2pycli() + out, _ = capfd.readouterr() + import numpy as np + assert np.__version__ == out.strip() + + +@pytest.mark.skip(reason="Consistently fails on CI; noisy so skip not xfail.") +def test_npdistop(hello_world_f90, monkeypatch): + """ + CLI :: -c + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} -c'.split()) + + with util.switchdir(ipath.parent): + f2pycli() + cmd_run = shlex.split(f"{sys.executable} -c \"import blah; blah.hi()\"") + rout = subprocess.run(cmd_run, capture_output=True, encoding='UTF-8') + eout = ' Hello World\n' + assert rout.stdout == eout + + +@pytest.mark.skipif((platform.system() != 'Linux') or sys.version_info <= (3, 12), + reason='Compiler and Python 3.12 or newer required') +def test_no_freethreading_compatible(hello_world_f90, monkeypatch): + """ + CLI :: --no-freethreading-compatible + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} -c --no-freethreading-compatible'.split()) + + with util.switchdir(ipath.parent): + compiler_check_f2pycli() + cmd = f"{sys.executable} -c \"import blah; blah.hi();" + if NOGIL_BUILD: + cmd += "import sys; assert sys._is_gil_enabled() is True\"" + else: + cmd += "\"" + cmd_run = shlex.split(cmd) + rout = subprocess.run(cmd_run, capture_output=True, encoding='UTF-8') + eout = ' Hello World\n' + assert rout.stdout == eout + if NOGIL_BUILD: + assert "The global interpreter lock (GIL) has been enabled to load module 'blah'" in rout.stderr + assert rout.returncode == 0 + + +@pytest.mark.skipif((platform.system() != 'Linux') or sys.version_info <= (3, 12), + reason='Compiler and Python 3.12 or newer required') +def test_freethreading_compatible(hello_world_f90, monkeypatch): + """ + CLI :: --freethreading_compatible + """ + ipath = Path(hello_world_f90) + monkeypatch.setattr(sys, "argv", f'f2py -m blah {ipath} -c --freethreading-compatible'.split()) + + with util.switchdir(ipath.parent): + compiler_check_f2pycli() + cmd = f"{sys.executable} -c \"import blah; blah.hi();" + if NOGIL_BUILD: + cmd += "import sys; assert sys._is_gil_enabled() is False\"" + else: + cmd += "\"" + cmd_run = shlex.split(cmd) + rout = subprocess.run(cmd_run, capture_output=True, encoding='UTF-8') + eout = ' Hello World\n' + assert rout.stdout == eout + assert rout.stderr == "" + assert rout.returncode == 0 + + +# Numpy distutils flags +# TODO: These should be tested separately + +def test_npd_fcompiler(): + """ + CLI :: -c --fcompiler + """ + # TODO: populate + pass + + +def test_npd_compiler(): + """ + CLI :: -c --compiler + """ + # TODO: populate + pass + + +def test_npd_help_fcompiler(): + """ + CLI :: -c --help-fcompiler + """ + # TODO: populate + pass + + +def test_npd_f77exec(): + """ + CLI :: -c --f77exec + """ + # TODO: populate + pass + + +def test_npd_f90exec(): + """ + CLI :: -c --f90exec + """ + # TODO: populate + pass + + +def test_npd_f77flags(): + """ + CLI :: -c --f77flags + """ + # TODO: populate + pass + + +def test_npd_f90flags(): + """ + CLI :: -c --f90flags + """ + # TODO: populate + pass + + +def test_npd_opt(): + """ + CLI :: -c --opt + """ + # TODO: populate + pass + + +def test_npd_arch(): + """ + CLI :: -c --arch + """ + # TODO: populate + pass + + +def test_npd_noopt(): + """ + CLI :: -c --noopt + """ + # TODO: populate + pass + + +def test_npd_noarch(): + """ + CLI :: -c --noarch + """ + # TODO: populate + pass + + +def test_npd_debug(): + """ + CLI :: -c --debug + """ + # TODO: populate + pass + + +def test_npd_link_auto(): + """ + CLI :: -c --link- + """ + # TODO: populate + pass + + +def test_npd_lib(): + """ + CLI :: -c -L/path/to/lib/ -l + """ + # TODO: populate + pass + + +def test_npd_define(): + """ + CLI :: -D + """ + # TODO: populate + pass + + +def test_npd_undefine(): + """ + CLI :: -U + """ + # TODO: populate + pass + + +def test_npd_incl(): + """ + CLI :: -I/path/to/include/ + """ + # TODO: populate + pass + + +def test_npd_linker(): + """ + CLI :: .o .so .a + """ + # TODO: populate + pass diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_isoc.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_isoc.py new file mode 100644 index 0000000000000000000000000000000000000000..97f71e6c854cb1d9f9a9acc508b15df0b8123822 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_isoc.py @@ -0,0 +1,53 @@ +from . import util +import numpy as np +import pytest +from numpy.testing import assert_allclose + +class TestISOC(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "isocintrin", "isoCtests.f90"), + ] + + # gh-24553 + @pytest.mark.slow + def test_c_double(self): + out = self.module.coddity.c_add(1, 2) + exp_out = 3 + assert out == exp_out + + # gh-9693 + def test_bindc_function(self): + out = self.module.coddity.wat(1, 20) + exp_out = 8 + assert out == exp_out + + # gh-25207 + def test_bindc_kinds(self): + out = self.module.coddity.c_add_int64(1, 20) + exp_out = 21 + assert out == exp_out + + # gh-25207 + def test_bindc_add_arr(self): + a = np.array([1,2,3]) + b = np.array([1,2,3]) + out = self.module.coddity.add_arr(a, b) + exp_out = a*2 + assert_allclose(out, exp_out) + + +def test_process_f2cmap_dict(): + from numpy.f2py.auxfuncs import process_f2cmap_dict + + f2cmap_all = {"integer": {"8": "rubbish_type"}} + new_map = {"INTEGER": {"4": "int"}} + c2py_map = {"int": "int", "rubbish_type": "long"} + + exp_map, exp_maptyp = ({"integer": {"8": "rubbish_type", "4": "int"}}, ["int"]) + + # Call the function + res_map, res_maptyp = process_f2cmap_dict(f2cmap_all, new_map, c2py_map) + + # Assert the result is as expected + assert res_map == exp_map + assert res_maptyp == exp_maptyp diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_kind.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_kind.py new file mode 100644 index 0000000000000000000000000000000000000000..a8403ca3660686df4a0d612218cdb80b92cec0c8 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_kind.py @@ -0,0 +1,49 @@ +import sys +import pytest +import platform + +from numpy.f2py.crackfortran import ( + _selected_int_kind_func as selected_int_kind, + _selected_real_kind_func as selected_real_kind, +) +from . import util + + +class TestKind(util.F2PyTest): + sources = [util.getpath("tests", "src", "kind", "foo.f90")] + + @pytest.mark.skipif(sys.maxsize < 2 ** 31 + 1, + reason="Fails for 32 bit machines") + def test_int(self): + """Test `int` kind_func for integers up to 10**40.""" + selectedintkind = self.module.selectedintkind + + for i in range(40): + assert selectedintkind(i) == selected_int_kind( + i + ), f"selectedintkind({i}): expected {selected_int_kind(i)!r} but got {selectedintkind(i)!r}" + + def test_real(self): + """ + Test (processor-dependent) `real` kind_func for real numbers + of up to 31 digits precision (extended/quadruple). + """ + selectedrealkind = self.module.selectedrealkind + + for i in range(32): + assert selectedrealkind(i) == selected_real_kind( + i + ), f"selectedrealkind({i}): expected {selected_real_kind(i)!r} but got {selectedrealkind(i)!r}" + + @pytest.mark.xfail(platform.machine().lower().startswith("ppc"), + reason="Some PowerPC may not support full IEEE 754 precision") + def test_quad_precision(self): + """ + Test kind_func for quadruple precision [`real(16)`] of 32+ digits . + """ + selectedrealkind = self.module.selectedrealkind + + for i in range(32, 40): + assert selectedrealkind(i) == selected_real_kind( + i + ), f"selectedrealkind({i}): expected {selected_real_kind(i)!r} but got {selectedrealkind(i)!r}" diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_mixed.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_mixed.py new file mode 100644 index 0000000000000000000000000000000000000000..688c1630fda60853d4213107e33e90f17be70d80 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_mixed.py @@ -0,0 +1,33 @@ +import textwrap +import pytest + +from numpy.testing import IS_PYPY +from . import util + + +class TestMixed(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "mixed", "foo.f"), + util.getpath("tests", "src", "mixed", "foo_fixed.f90"), + util.getpath("tests", "src", "mixed", "foo_free.f90"), + ] + + @pytest.mark.slow + def test_all(self): + assert self.module.bar11() == 11 + assert self.module.foo_fixed.bar12() == 12 + assert self.module.foo_free.bar13() == 13 + + @pytest.mark.xfail(IS_PYPY, + reason="PyPy cannot modify tp_doc after PyType_Ready") + def test_docstring(self): + expected = textwrap.dedent("""\ + a = bar11() + + Wrapper for ``bar11``. + + Returns + ------- + a : int + """) + assert self.module.bar11.__doc__ == expected diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_modules.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_modules.py new file mode 100644 index 0000000000000000000000000000000000000000..436e0c70001795e292cbb6a5cb022dc0378301ca --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_modules.py @@ -0,0 +1,81 @@ +import pytest +import textwrap + +from . import util +from numpy.testing import IS_PYPY + + +@pytest.mark.slow +class TestModuleFilterPublicEntities(util.F2PyTest): + sources = [ + util.getpath( + "tests", "src", "modules", "gh26920", + "two_mods_with_one_public_routine.f90" + ) + ] + # we filter the only public function mod2 + only = ["mod1_func1", ] + + def test_gh26920(self): + # if it compiles and can be loaded, things are fine + pass + + +@pytest.mark.slow +class TestModuleWithoutPublicEntities(util.F2PyTest): + sources = [ + util.getpath( + "tests", "src", "modules", "gh26920", + "two_mods_with_no_public_entities.f90" + ) + ] + only = ["mod1_func1", ] + + def test_gh26920(self): + # if it compiles and can be loaded, things are fine + pass + + +@pytest.mark.slow +class TestModuleDocString(util.F2PyTest): + sources = [util.getpath("tests", "src", "modules", "module_data_docstring.f90")] + + @pytest.mark.xfail(IS_PYPY, reason="PyPy cannot modify tp_doc after PyType_Ready") + def test_module_docstring(self): + assert self.module.mod.__doc__ == textwrap.dedent( + """\ + i : 'i'-scalar + x : 'i'-array(4) + a : 'f'-array(2,3) + b : 'f'-array(-1,-1), not allocated\x00 + foo()\n + Wrapper for ``foo``.\n\n""" + ) + + +@pytest.mark.slow +class TestModuleAndSubroutine(util.F2PyTest): + module_name = "example" + sources = [ + util.getpath("tests", "src", "modules", "gh25337", "data.f90"), + util.getpath("tests", "src", "modules", "gh25337", "use_data.f90"), + ] + + def test_gh25337(self): + self.module.data.set_shift(3) + assert "data" in dir(self.module) + + +@pytest.mark.slow +class TestUsedModule(util.F2PyTest): + module_name = "fmath" + sources = [ + util.getpath("tests", "src", "modules", "use_modules.f90"), + ] + + def test_gh25867(self): + compiled_mods = [x for x in dir(self.module) if "__" not in x] + assert "useops" in compiled_mods + assert self.module.useops.sum_and_double(3, 7) == 20 + assert "mathops" in compiled_mods + assert self.module.mathops.add(3, 7) == 10 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_parameter.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_parameter.py new file mode 100644 index 0000000000000000000000000000000000000000..154131f49f7bc2b0bcee8f9e9104c98e98d7af3c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_parameter.py @@ -0,0 +1,130 @@ +import pytest + +import numpy as np + +from . import util + + +class TestParameters(util.F2PyTest): + # Check that intent(in out) translates as intent(inout) + sources = [ + util.getpath("tests", "src", "parameter", "constant_real.f90"), + util.getpath("tests", "src", "parameter", "constant_integer.f90"), + util.getpath("tests", "src", "parameter", "constant_both.f90"), + util.getpath("tests", "src", "parameter", "constant_compound.f90"), + util.getpath("tests", "src", "parameter", "constant_non_compound.f90"), + util.getpath("tests", "src", "parameter", "constant_array.f90"), + ] + + @pytest.mark.slow + def test_constant_real_single(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float32)[::2] + pytest.raises(ValueError, self.module.foo_single, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float32) + self.module.foo_single(x) + assert np.allclose(x, [0 + 1 + 2 * 3, 1, 2]) + + @pytest.mark.slow + def test_constant_real_double(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float64)[::2] + pytest.raises(ValueError, self.module.foo_double, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float64) + self.module.foo_double(x) + assert np.allclose(x, [0 + 1 + 2 * 3, 1, 2]) + + @pytest.mark.slow + def test_constant_compound_int(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.int32)[::2] + pytest.raises(ValueError, self.module.foo_compound_int, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.int32) + self.module.foo_compound_int(x) + assert np.allclose(x, [0 + 1 + 2 * 6, 1, 2]) + + @pytest.mark.slow + def test_constant_non_compound_int(self): + # check values + x = np.arange(4, dtype=np.int32) + self.module.foo_non_compound_int(x) + assert np.allclose(x, [0 + 1 + 2 + 3 * 4, 1, 2, 3]) + + @pytest.mark.slow + def test_constant_integer_int(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.int32)[::2] + pytest.raises(ValueError, self.module.foo_int, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.int32) + self.module.foo_int(x) + assert np.allclose(x, [0 + 1 + 2 * 3, 1, 2]) + + @pytest.mark.slow + def test_constant_integer_long(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.int64)[::2] + pytest.raises(ValueError, self.module.foo_long, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.int64) + self.module.foo_long(x) + assert np.allclose(x, [0 + 1 + 2 * 3, 1, 2]) + + @pytest.mark.slow + def test_constant_both(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float64)[::2] + pytest.raises(ValueError, self.module.foo, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float64) + self.module.foo(x) + assert np.allclose(x, [0 + 1 * 3 * 3 + 2 * 3 * 3, 1 * 3, 2 * 3]) + + @pytest.mark.slow + def test_constant_no(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float64)[::2] + pytest.raises(ValueError, self.module.foo_no, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float64) + self.module.foo_no(x) + assert np.allclose(x, [0 + 1 * 3 * 3 + 2 * 3 * 3, 1 * 3, 2 * 3]) + + @pytest.mark.slow + def test_constant_sum(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float64)[::2] + pytest.raises(ValueError, self.module.foo_sum, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float64) + self.module.foo_sum(x) + assert np.allclose(x, [0 + 1 * 3 * 3 + 2 * 3 * 3, 1 * 3, 2 * 3]) + + def test_constant_array(self): + x = np.arange(3, dtype=np.float64) + y = np.arange(5, dtype=np.float64) + z = self.module.foo_array(x, y) + assert np.allclose(x, [0.0, 1./10, 2./10]) + assert np.allclose(y, [0.0, 1.*10, 2.*10, 3.*10, 4.*10]) + assert np.allclose(z, 19.0) + + def test_constant_array_any_index(self): + x = np.arange(6, dtype=np.float64) + y = self.module.foo_array_any_index(x) + assert np.allclose(y, x.reshape((2, 3), order='F')) + + def test_constant_array_delims(self): + x = self.module.foo_array_delims() + assert x == 9 + diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_pyf_src.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_pyf_src.py new file mode 100644 index 0000000000000000000000000000000000000000..f77ded2f31d4443c1bda42bb1c21f79fa100ce23 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_pyf_src.py @@ -0,0 +1,44 @@ +# This test is ported from numpy.distutils +from numpy.f2py._src_pyf import process_str +from numpy.testing import assert_equal + + +pyf_src = """ +python module foo + <_rd=real,double precision> + interface + subroutine foosub(tol) + <_rd>, intent(in,out) :: tol + end subroutine foosub + end interface +end python module foo +""" + +expected_pyf = """ +python module foo + interface + subroutine sfoosub(tol) + real, intent(in,out) :: tol + end subroutine sfoosub + subroutine dfoosub(tol) + double precision, intent(in,out) :: tol + end subroutine dfoosub + end interface +end python module foo +""" + + +def normalize_whitespace(s): + """ + Remove leading and trailing whitespace, and convert internal + stretches of whitespace to a single space. + """ + return ' '.join(s.split()) + + +def test_from_template(): + """Regression test for gh-10712.""" + pyf = process_str(pyf_src) + normalized_pyf = normalize_whitespace(pyf) + normalized_expected_pyf = normalize_whitespace(expected_pyf) + assert_equal(normalized_pyf, normalized_expected_pyf) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_quoted_character.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_quoted_character.py new file mode 100644 index 0000000000000000000000000000000000000000..85e83a781e7b55b8e14e780de12d694858b4a236 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_quoted_character.py @@ -0,0 +1,17 @@ +"""See https://github.com/numpy/numpy/pull/10676. + +""" +import sys +import pytest + +from . import util + + +class TestQuotedCharacter(util.F2PyTest): + sources = [util.getpath("tests", "src", "quoted_character", "foo.f")] + + @pytest.mark.skipif(sys.platform == "win32", + reason="Fails with MinGW64 Gfortran (Issue #9673)") + @pytest.mark.slow + def test_quoted_character(self): + assert self.module.foo() == (b"'", b'"', b";", b"!", b"(", b")") diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_regression.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_regression.py new file mode 100644 index 0000000000000000000000000000000000000000..c62f82ac3fc0f3292af475f2f725674a17e96fd1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_regression.py @@ -0,0 +1,174 @@ +import os +import pytest +import platform + +import numpy as np +import numpy.testing as npt + +from . import util + + +class TestIntentInOut(util.F2PyTest): + # Check that intent(in out) translates as intent(inout) + sources = [util.getpath("tests", "src", "regression", "inout.f90")] + + @pytest.mark.slow + def test_inout(self): + # non-contiguous should raise error + x = np.arange(6, dtype=np.float32)[::2] + pytest.raises(ValueError, self.module.foo, x) + + # check values with contiguous array + x = np.arange(3, dtype=np.float32) + self.module.foo(x) + assert np.allclose(x, [3, 1, 2]) + + +class TestDataOnlyMultiModule(util.F2PyTest): + # Check that modules without subroutines work + sources = [util.getpath("tests", "src", "regression", "datonly.f90")] + + @pytest.mark.slow + def test_mdat(self): + assert self.module.datonly.max_value == 100 + assert self.module.dat.max_ == 1009 + int_in = 5 + assert self.module.simple_subroutine(5) == 1014 + + +class TestNegativeBounds(util.F2PyTest): + # Check that negative bounds work correctly + sources = [util.getpath("tests", "src", "negative_bounds", "issue_20853.f90")] + + @pytest.mark.slow + def test_negbound(self): + xvec = np.arange(12) + xlow = -6 + xhigh = 4 + # Calculate the upper bound, + # Keeping the 1 index in mind + def ubound(xl, xh): + return xh - xl + 1 + rval = self.module.foo(is_=xlow, ie_=xhigh, + arr=xvec[:ubound(xlow, xhigh)]) + expval = np.arange(11, dtype = np.float32) + assert np.allclose(rval, expval) + + +class TestNumpyVersionAttribute(util.F2PyTest): + # Check that th attribute __f2py_numpy_version__ is present + # in the compiled module and that has the value np.__version__. + sources = [util.getpath("tests", "src", "regression", "inout.f90")] + + @pytest.mark.slow + def test_numpy_version_attribute(self): + + # Check that self.module has an attribute named "__f2py_numpy_version__" + assert hasattr(self.module, "__f2py_numpy_version__") + + # Check that the attribute __f2py_numpy_version__ is a string + assert isinstance(self.module.__f2py_numpy_version__, str) + + # Check that __f2py_numpy_version__ has the value numpy.__version__ + assert np.__version__ == self.module.__f2py_numpy_version__ + + +def test_include_path(): + incdir = np.f2py.get_include() + fnames_in_dir = os.listdir(incdir) + for fname in ("fortranobject.c", "fortranobject.h"): + assert fname in fnames_in_dir + + +class TestIncludeFiles(util.F2PyTest): + sources = [util.getpath("tests", "src", "regression", "incfile.f90")] + options = [f"-I{util.getpath('tests', 'src', 'regression')}", + f"--include-paths {util.getpath('tests', 'src', 'regression')}"] + + @pytest.mark.slow + def test_gh25344(self): + exp = 7.0 + res = self.module.add(3.0, 4.0) + assert exp == res + +class TestF77Comments(util.F2PyTest): + # Check that comments are stripped from F77 continuation lines + sources = [util.getpath("tests", "src", "regression", "f77comments.f")] + + @pytest.mark.slow + def test_gh26148(self): + x1 = np.array(3, dtype=np.int32) + x2 = np.array(5, dtype=np.int32) + res=self.module.testsub(x1, x2) + assert(res[0] == 8) + assert(res[1] == 15) + + @pytest.mark.slow + def test_gh26466(self): + # Check that comments after PARAMETER directions are stripped + expected = np.arange(1, 11, dtype=np.float32)*2 + res=self.module.testsub2() + npt.assert_allclose(expected, res) + +class TestF90Contiuation(util.F2PyTest): + # Check that comments are stripped from F90 continuation lines + sources = [util.getpath("tests", "src", "regression", "f90continuation.f90")] + + @pytest.mark.slow + def test_gh26148b(self): + x1 = np.array(3, dtype=np.int32) + x2 = np.array(5, dtype=np.int32) + res=self.module.testsub(x1, x2) + assert(res[0] == 8) + assert(res[1] == 15) + +class TestLowerF2PYDirectives(util.F2PyTest): + # Check variables are cased correctly + sources = [util.getpath("tests", "src", "regression", "lower_f2py_fortran.f90")] + + @pytest.mark.slow + def test_gh28014(self): + self.module.inquire_next(3) + assert True + +@pytest.mark.slow +def test_gh26623(): + # Including libraries with . should not generate an incorrect meson.build + try: + aa = util.build_module( + [util.getpath("tests", "src", "regression", "f90continuation.f90")], + ["-lfoo.bar"], + module_name="Blah", + ) + except RuntimeError as rerr: + assert "lparen got assign" not in str(rerr) + + +@pytest.mark.slow +@pytest.mark.skipif(platform.system() not in ['Linux', 'Darwin'], reason='Unsupported on this platform for now') +def test_gh25784(): + # Compile dubious file using passed flags + try: + aa = util.build_module( + [util.getpath("tests", "src", "regression", "f77fixedform.f95")], + options=[ + # Meson will collect and dedup these to pass to fortran_args: + "--f77flags='-ffixed-form -O2'", + "--f90flags=\"-ffixed-form -Og\"", + ], + module_name="Blah", + ) + except ImportError as rerr: + assert "unknown_subroutine_" in str(rerr) + + +@pytest.mark.slow +class TestAssignmentOnlyModules(util.F2PyTest): + # Ensure that variables are exposed without functions or subroutines in a module + sources = [util.getpath("tests", "src", "regression", "assignOnlyModule.f90")] + + @pytest.mark.slow + def test_gh27167(self): + assert (self.module.f_globals.n_max == 16) + assert (self.module.f_globals.i_max == 18) + assert (self.module.f_globals.j_max == 72) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_character.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_character.py new file mode 100644 index 0000000000000000000000000000000000000000..078d445a6df6eb37c36e1dc73c4b2a13e250825c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_character.py @@ -0,0 +1,46 @@ +import pytest + +from numpy import array +from . import util +import platform + +IS_S390X = platform.machine() == "s390x" + + +@pytest.mark.slow +class TestReturnCharacter(util.F2PyTest): + def check_function(self, t, tname): + if tname in ["t0", "t1", "s0", "s1"]: + assert t("23") == b"2" + r = t("ab") + assert r == b"a" + r = t(array("ab")) + assert r == b"a" + r = t(array(77, "u1")) + assert r == b"M" + elif tname in ["ts", "ss"]: + assert t(23) == b"23" + assert t("123456789abcdef") == b"123456789a" + elif tname in ["t5", "s5"]: + assert t(23) == b"23" + assert t("ab") == b"ab" + assert t("123456789abcdef") == b"12345" + else: + raise NotImplementedError + + +class TestFReturnCharacter(TestReturnCharacter): + sources = [ + util.getpath("tests", "src", "return_character", "foo77.f"), + util.getpath("tests", "src", "return_character", "foo90.f90"), + ] + + @pytest.mark.xfail(IS_S390X, reason="callback returns ' '") + @pytest.mark.parametrize("name", "t0,t1,t5,s0,s1,s5,ss".split(",")) + def test_all_f77(self, name): + self.check_function(getattr(self.module, name), name) + + @pytest.mark.xfail(IS_S390X, reason="callback returns ' '") + @pytest.mark.parametrize("name", "t0,t1,t5,ts,s0,s1,s5,ss".split(",")) + def test_all_f90(self, name): + self.check_function(getattr(self.module.f90_return_char, name), name) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_complex.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_complex.py new file mode 100644 index 0000000000000000000000000000000000000000..17811f5d98f94ef1d865e49ccd22046051fd68e5 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_complex.py @@ -0,0 +1,66 @@ +import pytest + +from numpy import array +from . import util + + +@pytest.mark.slow +class TestReturnComplex(util.F2PyTest): + def check_function(self, t, tname): + if tname in ["t0", "t8", "s0", "s8"]: + err = 1e-5 + else: + err = 0.0 + assert abs(t(234j) - 234.0j) <= err + assert abs(t(234.6) - 234.6) <= err + assert abs(t(234) - 234.0) <= err + assert abs(t(234.6 + 3j) - (234.6 + 3j)) <= err + # assert abs(t('234')-234.)<=err + # assert abs(t('234.6')-234.6)<=err + assert abs(t(-234) + 234.0) <= err + assert abs(t([234]) - 234.0) <= err + assert abs(t((234, )) - 234.0) <= err + assert abs(t(array(234)) - 234.0) <= err + assert abs(t(array(23 + 4j, "F")) - (23 + 4j)) <= err + assert abs(t(array([234])) - 234.0) <= err + assert abs(t(array([[234]])) - 234.0) <= err + assert abs(t(array([234]).astype("b")) + 22.0) <= err + assert abs(t(array([234], "h")) - 234.0) <= err + assert abs(t(array([234], "i")) - 234.0) <= err + assert abs(t(array([234], "l")) - 234.0) <= err + assert abs(t(array([234], "q")) - 234.0) <= err + assert abs(t(array([234], "f")) - 234.0) <= err + assert abs(t(array([234], "d")) - 234.0) <= err + assert abs(t(array([234 + 3j], "F")) - (234 + 3j)) <= err + assert abs(t(array([234], "D")) - 234.0) <= err + + # pytest.raises(TypeError, t, array([234], 'S1')) + pytest.raises(TypeError, t, "abc") + + pytest.raises(IndexError, t, []) + pytest.raises(IndexError, t, ()) + + pytest.raises(TypeError, t, t) + pytest.raises(TypeError, t, {}) + + try: + r = t(10**400) + assert repr(r) in ["(inf+0j)", "(Infinity+0j)"] + except OverflowError: + pass + + +class TestFReturnComplex(TestReturnComplex): + sources = [ + util.getpath("tests", "src", "return_complex", "foo77.f"), + util.getpath("tests", "src", "return_complex", "foo90.f90"), + ] + + @pytest.mark.parametrize("name", "t0,t8,t16,td,s0,s8,s16,sd".split(",")) + def test_all_f77(self, name): + self.check_function(getattr(self.module, name), name) + + @pytest.mark.parametrize("name", "t0,t8,t16,td,s0,s8,s16,sd".split(",")) + def test_all_f90(self, name): + self.check_function(getattr(self.module.f90_return_complex, name), + name) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_integer.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_integer.py new file mode 100644 index 0000000000000000000000000000000000000000..428afec4a0efa9f70acd158f610fdee104dbe82a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_integer.py @@ -0,0 +1,54 @@ +import pytest + +from numpy import array +from . import util + + +@pytest.mark.slow +class TestReturnInteger(util.F2PyTest): + def check_function(self, t, tname): + assert t(123) == 123 + assert t(123.6) == 123 + assert t("123") == 123 + assert t(-123) == -123 + assert t([123]) == 123 + assert t((123, )) == 123 + assert t(array(123)) == 123 + assert t(array(123, "b")) == 123 + assert t(array(123, "h")) == 123 + assert t(array(123, "i")) == 123 + assert t(array(123, "l")) == 123 + assert t(array(123, "B")) == 123 + assert t(array(123, "f")) == 123 + assert t(array(123, "d")) == 123 + + # pytest.raises(ValueError, t, array([123],'S3')) + pytest.raises(ValueError, t, "abc") + + pytest.raises(IndexError, t, []) + pytest.raises(IndexError, t, ()) + + pytest.raises(Exception, t, t) + pytest.raises(Exception, t, {}) + + if tname in ["t8", "s8"]: + pytest.raises(OverflowError, t, 100000000000000000000000) + pytest.raises(OverflowError, t, 10000000011111111111111.23) + + +class TestFReturnInteger(TestReturnInteger): + sources = [ + util.getpath("tests", "src", "return_integer", "foo77.f"), + util.getpath("tests", "src", "return_integer", "foo90.f90"), + ] + + @pytest.mark.parametrize("name", + "t0,t1,t2,t4,t8,s0,s1,s2,s4,s8".split(",")) + def test_all_f77(self, name): + self.check_function(getattr(self.module, name), name) + + @pytest.mark.parametrize("name", + "t0,t1,t2,t4,t8,s0,s1,s2,s4,s8".split(",")) + def test_all_f90(self, name): + self.check_function(getattr(self.module.f90_return_integer, name), + name) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_logical.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_logical.py new file mode 100644 index 0000000000000000000000000000000000000000..92fb902af4ddd269d67c427bc5090aabc35513dd --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_logical.py @@ -0,0 +1,64 @@ +import pytest + +from numpy import array +from . import util + + +class TestReturnLogical(util.F2PyTest): + def check_function(self, t): + assert t(True) == 1 + assert t(False) == 0 + assert t(0) == 0 + assert t(None) == 0 + assert t(0.0) == 0 + assert t(0j) == 0 + assert t(1j) == 1 + assert t(234) == 1 + assert t(234.6) == 1 + assert t(234.6 + 3j) == 1 + assert t("234") == 1 + assert t("aaa") == 1 + assert t("") == 0 + assert t([]) == 0 + assert t(()) == 0 + assert t({}) == 0 + assert t(t) == 1 + assert t(-234) == 1 + assert t(10**100) == 1 + assert t([234]) == 1 + assert t((234, )) == 1 + assert t(array(234)) == 1 + assert t(array([234])) == 1 + assert t(array([[234]])) == 1 + assert t(array([127], "b")) == 1 + assert t(array([234], "h")) == 1 + assert t(array([234], "i")) == 1 + assert t(array([234], "l")) == 1 + assert t(array([234], "f")) == 1 + assert t(array([234], "d")) == 1 + assert t(array([234 + 3j], "F")) == 1 + assert t(array([234], "D")) == 1 + assert t(array(0)) == 0 + assert t(array([0])) == 0 + assert t(array([[0]])) == 0 + assert t(array([0j])) == 0 + assert t(array([1])) == 1 + pytest.raises(ValueError, t, array([0, 0])) + + +class TestFReturnLogical(TestReturnLogical): + sources = [ + util.getpath("tests", "src", "return_logical", "foo77.f"), + util.getpath("tests", "src", "return_logical", "foo90.f90"), + ] + + @pytest.mark.slow + @pytest.mark.parametrize("name", "t0,t1,t2,t4,s0,s1,s2,s4".split(",")) + def test_all_f77(self, name): + self.check_function(getattr(self.module, name)) + + @pytest.mark.slow + @pytest.mark.parametrize("name", + "t0,t1,t2,t4,t8,s0,s1,s2,s4,s8".split(",")) + def test_all_f90(self, name): + self.check_function(getattr(self.module.f90_return_logical, name)) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_real.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_real.py new file mode 100644 index 0000000000000000000000000000000000000000..25b638890a961dd69441cc5b27ea1b384c2811de --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_return_real.py @@ -0,0 +1,107 @@ +import platform +import pytest + +from numpy import array +from numpy.testing import IS_64BIT +from . import util + + +@pytest.mark.slow +class TestReturnReal(util.F2PyTest): + def check_function(self, t, tname): + if tname in ["t0", "t4", "s0", "s4"]: + err = 1e-5 + else: + err = 0.0 + assert abs(t(234) - 234.0) <= err + assert abs(t(234.6) - 234.6) <= err + assert abs(t("234") - 234) <= err + assert abs(t("234.6") - 234.6) <= err + assert abs(t(-234) + 234) <= err + assert abs(t([234]) - 234) <= err + assert abs(t((234, )) - 234.0) <= err + assert abs(t(array(234)) - 234.0) <= err + assert abs(t(array(234).astype("b")) + 22) <= err + assert abs(t(array(234, "h")) - 234.0) <= err + assert abs(t(array(234, "i")) - 234.0) <= err + assert abs(t(array(234, "l")) - 234.0) <= err + assert abs(t(array(234, "B")) - 234.0) <= err + assert abs(t(array(234, "f")) - 234.0) <= err + assert abs(t(array(234, "d")) - 234.0) <= err + if tname in ["t0", "t4", "s0", "s4"]: + assert t(1e200) == t(1e300) # inf + + # pytest.raises(ValueError, t, array([234], 'S1')) + pytest.raises(ValueError, t, "abc") + + pytest.raises(IndexError, t, []) + pytest.raises(IndexError, t, ()) + + pytest.raises(Exception, t, t) + pytest.raises(Exception, t, {}) + + try: + r = t(10**400) + assert repr(r) in ["inf", "Infinity"] + except OverflowError: + pass + + +@pytest.mark.skipif( + platform.system() == "Darwin", + reason="Prone to error when run with numpy/f2py/tests on mac os, " + "but not when run in isolation", +) +@pytest.mark.skipif( + not IS_64BIT, reason="32-bit builds are buggy" +) +class TestCReturnReal(TestReturnReal): + suffix = ".pyf" + module_name = "c_ext_return_real" + code = """ +python module c_ext_return_real +usercode \'\'\' +float t4(float value) { return value; } +void s4(float *t4, float value) { *t4 = value; } +double t8(double value) { return value; } +void s8(double *t8, double value) { *t8 = value; } +\'\'\' +interface + function t4(value) + real*4 intent(c) :: t4,value + end + function t8(value) + real*8 intent(c) :: t8,value + end + subroutine s4(t4,value) + intent(c) s4 + real*4 intent(out) :: t4 + real*4 intent(c) :: value + end + subroutine s8(t8,value) + intent(c) s8 + real*8 intent(out) :: t8 + real*8 intent(c) :: value + end +end interface +end python module c_ext_return_real + """ + + @pytest.mark.parametrize("name", "t4,t8,s4,s8".split(",")) + def test_all(self, name): + self.check_function(getattr(self.module, name), name) + + +class TestFReturnReal(TestReturnReal): + sources = [ + util.getpath("tests", "src", "return_real", "foo77.f"), + util.getpath("tests", "src", "return_real", "foo90.f90"), + ] + + @pytest.mark.parametrize("name", "t0,t4,t8,td,s0,s4,s8,sd".split(",")) + def test_all_f77(self, name): + self.check_function(getattr(self.module, name), name) + + @pytest.mark.parametrize("name", "t0,t4,t8,td,s0,s4,s8,sd".split(",")) + def test_all_f90(self, name): + self.check_function(getattr(self.module.f90_return_real, name), name) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_routines.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_routines.py new file mode 100644 index 0000000000000000000000000000000000000000..d6ab475d899e105c5194537cf537c1fe3b71e1e9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_routines.py @@ -0,0 +1,28 @@ +import pytest +from . import util + + +@pytest.mark.slow +class TestRenamedFunc(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "routines", "funcfortranname.f"), + util.getpath("tests", "src", "routines", "funcfortranname.pyf"), + ] + module_name = "funcfortranname" + + def test_gh25799(self): + assert dir(self.module) + assert self.module.funcfortranname_default(200, 12) == 212 + + +@pytest.mark.slow +class TestRenamedSubroutine(util.F2PyTest): + sources = [ + util.getpath("tests", "src", "routines", "subrout.f"), + util.getpath("tests", "src", "routines", "subrout.pyf"), + ] + module_name = "subrout" + + def test_renamed_subroutine(self): + assert dir(self.module) + assert self.module.subrout_default(200, 12) == 212 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_semicolon_split.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_semicolon_split.py new file mode 100644 index 0000000000000000000000000000000000000000..8a9eb87435016ac69be071253ea25335b66f61a9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_semicolon_split.py @@ -0,0 +1,74 @@ +import platform +import pytest + +from numpy.testing import IS_64BIT + +from . import util + + +@pytest.mark.skipif( + platform.system() == "Darwin", + reason="Prone to error when run with numpy/f2py/tests on mac os, " + "but not when run in isolation", +) +@pytest.mark.skipif( + not IS_64BIT, reason="32-bit builds are buggy" +) +class TestMultiline(util.F2PyTest): + suffix = ".pyf" + module_name = "multiline" + code = f""" +python module {module_name} + usercode ''' +void foo(int* x) {{ + char dummy = ';'; + *x = 42; +}} +''' + interface + subroutine foo(x) + intent(c) foo + integer intent(out) :: x + end subroutine foo + end interface +end python module {module_name} + """ + + def test_multiline(self): + assert self.module.foo() == 42 + + +@pytest.mark.skipif( + platform.system() == "Darwin", + reason="Prone to error when run with numpy/f2py/tests on mac os, " + "but not when run in isolation", +) +@pytest.mark.skipif( + not IS_64BIT, reason="32-bit builds are buggy" +) +@pytest.mark.slow +class TestCallstatement(util.F2PyTest): + suffix = ".pyf" + module_name = "callstatement" + code = f""" +python module {module_name} + usercode ''' +void foo(int* x) {{ +}} +''' + interface + subroutine foo(x) + intent(c) foo + integer intent(out) :: x + callprotoargument int* + callstatement {{ & + ; & + x = 42; & + }} + end subroutine foo + end interface +end python module {module_name} + """ + + def test_callstatement(self): + assert self.module.foo() == 42 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_size.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_size.py new file mode 100644 index 0000000000000000000000000000000000000000..b354711b457f5ed9920ba1d0118aba64ac90fc74 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_size.py @@ -0,0 +1,44 @@ +import pytest +import numpy as np + +from . import util + + +class TestSizeSumExample(util.F2PyTest): + sources = [util.getpath("tests", "src", "size", "foo.f90")] + + @pytest.mark.slow + def test_all(self): + r = self.module.foo([[]]) + assert r == [0] + + r = self.module.foo([[1, 2]]) + assert r == [3] + + r = self.module.foo([[1, 2], [3, 4]]) + assert np.allclose(r, [3, 7]) + + r = self.module.foo([[1, 2], [3, 4], [5, 6]]) + assert np.allclose(r, [3, 7, 11]) + + @pytest.mark.slow + def test_transpose(self): + r = self.module.trans([[]]) + assert np.allclose(r.T, np.array([[]])) + + r = self.module.trans([[1, 2]]) + assert np.allclose(r, [[1.], [2.]]) + + r = self.module.trans([[1, 2, 3], [4, 5, 6]]) + assert np.allclose(r, [[1, 4], [2, 5], [3, 6]]) + + @pytest.mark.slow + def test_flatten(self): + r = self.module.flatten([[]]) + assert np.allclose(r, []) + + r = self.module.flatten([[1, 2]]) + assert np.allclose(r, [1, 2]) + + r = self.module.flatten([[1, 2, 3], [4, 5, 6]]) + assert np.allclose(r, [1, 2, 3, 4, 5, 6]) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_string.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_string.py new file mode 100644 index 0000000000000000000000000000000000000000..1888f649f543c9965461ef79bb40b1ca18118ea6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_string.py @@ -0,0 +1,98 @@ +import pytest +import numpy as np +from . import util + + +class TestString(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "char.f90")] + + @pytest.mark.slow + def test_char(self): + strings = np.array(["ab", "cd", "ef"], dtype="c").T + inp, out = self.module.char_test.change_strings( + strings, strings.shape[1]) + assert inp == pytest.approx(strings) + expected = strings.copy() + expected[1, :] = "AAA" + assert out == pytest.approx(expected) + + +class TestDocStringArguments(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "string.f")] + + def test_example(self): + a = np.array(b"123\0\0") + b = np.array(b"123\0\0") + c = np.array(b"123") + d = np.array(b"123") + + self.module.foo(a, b, c, d) + + assert a.tobytes() == b"123\0\0" + assert b.tobytes() == b"B23\0\0" + assert c.tobytes() == b"123" + assert d.tobytes() == b"D23" + + +class TestFixedString(util.F2PyTest): + sources = [util.getpath("tests", "src", "string", "fixed_string.f90")] + + @staticmethod + def _sint(s, start=0, end=None): + """Return the content of a string buffer as integer value. + + For example: + _sint('1234') -> 4321 + _sint('123A') -> 17321 + """ + if isinstance(s, np.ndarray): + s = s.tobytes() + elif isinstance(s, str): + s = s.encode() + assert isinstance(s, bytes) + if end is None: + end = len(s) + i = 0 + for j in range(start, min(end, len(s))): + i += s[j] * 10**j + return i + + def _get_input(self, intent="in"): + if intent in ["in"]: + yield "" + yield "1" + yield "1234" + yield "12345" + yield b"" + yield b"\0" + yield b"1" + yield b"\01" + yield b"1\0" + yield b"1234" + yield b"12345" + yield np.ndarray((), np.bytes_, buffer=b"") # array(b'', dtype='|S0') + yield np.array(b"") # array(b'', dtype='|S1') + yield np.array(b"\0") + yield np.array(b"1") + yield np.array(b"1\0") + yield np.array(b"\01") + yield np.array(b"1234") + yield np.array(b"123\0") + yield np.array(b"12345") + + def test_intent_in(self): + for s in self._get_input(): + r = self.module.test_in_bytes4(s) + # also checks that s is not changed inplace + expected = self._sint(s, end=4) + assert r == expected, s + + def test_intent_inout(self): + for s in self._get_input(intent="inout"): + rest = self._sint(s, start=4) + r = self.module.test_inout_bytes4(s) + expected = self._sint(s, end=4) + assert r == expected + + # check that the rest of input string is preserved + assert rest == self._sint(s, start=4) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_symbolic.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_symbolic.py new file mode 100644 index 0000000000000000000000000000000000000000..8452783111ebe7130d17301d228eb5708e9eced7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_symbolic.py @@ -0,0 +1,494 @@ +import pytest + +from numpy.f2py.symbolic import ( + Expr, + Op, + ArithOp, + Language, + as_symbol, + as_number, + as_string, + as_array, + as_complex, + as_terms, + as_factors, + eliminate_quotes, + insert_quotes, + fromstring, + as_expr, + as_apply, + as_numer_denom, + as_ternary, + as_ref, + as_deref, + normalize, + as_eq, + as_ne, + as_lt, + as_gt, + as_le, + as_ge, +) +from . import util + + +class TestSymbolic(util.F2PyTest): + def test_eliminate_quotes(self): + def worker(s): + r, d = eliminate_quotes(s) + s1 = insert_quotes(r, d) + assert s1 == s + + for kind in ["", "mykind_"]: + worker(kind + '"1234" // "ABCD"') + worker(kind + '"1234" // ' + kind + '"ABCD"') + worker(kind + "\"1234\" // 'ABCD'") + worker(kind + '"1234" // ' + kind + "'ABCD'") + worker(kind + '"1\\"2\'AB\'34"') + worker("a = " + kind + "'1\\'2\"AB\"34'") + + def test_sanity(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + + assert x.op == Op.SYMBOL + assert repr(x) == "Expr(Op.SYMBOL, 'x')" + assert x == x + assert x != y + assert hash(x) is not None + + n = as_number(123) + m = as_number(456) + assert n.op == Op.INTEGER + assert repr(n) == "Expr(Op.INTEGER, (123, 4))" + assert n == n + assert n != m + assert hash(n) is not None + + fn = as_number(12.3) + fm = as_number(45.6) + assert fn.op == Op.REAL + assert repr(fn) == "Expr(Op.REAL, (12.3, 4))" + assert fn == fn + assert fn != fm + assert hash(fn) is not None + + c = as_complex(1, 2) + c2 = as_complex(3, 4) + assert c.op == Op.COMPLEX + assert repr(c) == ("Expr(Op.COMPLEX, (Expr(Op.INTEGER, (1, 4))," + " Expr(Op.INTEGER, (2, 4))))") + assert c == c + assert c != c2 + assert hash(c) is not None + + s = as_string("'123'") + s2 = as_string('"ABC"') + assert s.op == Op.STRING + assert repr(s) == "Expr(Op.STRING, (\"'123'\", 1))", repr(s) + assert s == s + assert s != s2 + + a = as_array((n, m)) + b = as_array((n, )) + assert a.op == Op.ARRAY + assert repr(a) == ("Expr(Op.ARRAY, (Expr(Op.INTEGER, (123, 4))," + " Expr(Op.INTEGER, (456, 4))))") + assert a == a + assert a != b + + t = as_terms(x) + u = as_terms(y) + assert t.op == Op.TERMS + assert repr(t) == "Expr(Op.TERMS, {Expr(Op.SYMBOL, 'x'): 1})" + assert t == t + assert t != u + assert hash(t) is not None + + v = as_factors(x) + w = as_factors(y) + assert v.op == Op.FACTORS + assert repr(v) == "Expr(Op.FACTORS, {Expr(Op.SYMBOL, 'x'): 1})" + assert v == v + assert w != v + assert hash(v) is not None + + t = as_ternary(x, y, z) + u = as_ternary(x, z, y) + assert t.op == Op.TERNARY + assert t == t + assert t != u + assert hash(t) is not None + + e = as_eq(x, y) + f = as_lt(x, y) + assert e.op == Op.RELATIONAL + assert e == e + assert e != f + assert hash(e) is not None + + def test_tostring_fortran(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + n = as_number(123) + m = as_number(456) + a = as_array((n, m)) + c = as_complex(n, m) + + assert str(x) == "x" + assert str(n) == "123" + assert str(a) == "[123, 456]" + assert str(c) == "(123, 456)" + + assert str(Expr(Op.TERMS, {x: 1})) == "x" + assert str(Expr(Op.TERMS, {x: 2})) == "2 * x" + assert str(Expr(Op.TERMS, {x: -1})) == "-x" + assert str(Expr(Op.TERMS, {x: -2})) == "-2 * x" + assert str(Expr(Op.TERMS, {x: 1, y: 1})) == "x + y" + assert str(Expr(Op.TERMS, {x: -1, y: -1})) == "-x - y" + assert str(Expr(Op.TERMS, {x: 2, y: 3})) == "2 * x + 3 * y" + assert str(Expr(Op.TERMS, {x: -2, y: 3})) == "-2 * x + 3 * y" + assert str(Expr(Op.TERMS, {x: 2, y: -3})) == "2 * x - 3 * y" + + assert str(Expr(Op.FACTORS, {x: 1})) == "x" + assert str(Expr(Op.FACTORS, {x: 2})) == "x ** 2" + assert str(Expr(Op.FACTORS, {x: -1})) == "x ** -1" + assert str(Expr(Op.FACTORS, {x: -2})) == "x ** -2" + assert str(Expr(Op.FACTORS, {x: 1, y: 1})) == "x * y" + assert str(Expr(Op.FACTORS, {x: 2, y: 3})) == "x ** 2 * y ** 3" + + v = Expr(Op.FACTORS, {x: 2, Expr(Op.TERMS, {x: 1, y: 1}): 3}) + assert str(v) == "x ** 2 * (x + y) ** 3", str(v) + v = Expr(Op.FACTORS, {x: 2, Expr(Op.FACTORS, {x: 1, y: 1}): 3}) + assert str(v) == "x ** 2 * (x * y) ** 3", str(v) + + assert str(Expr(Op.APPLY, ("f", (), {}))) == "f()" + assert str(Expr(Op.APPLY, ("f", (x, ), {}))) == "f(x)" + assert str(Expr(Op.APPLY, ("f", (x, y), {}))) == "f(x, y)" + assert str(Expr(Op.INDEXING, ("f", x))) == "f[x]" + + assert str(as_ternary(x, y, z)) == "merge(y, z, x)" + assert str(as_eq(x, y)) == "x .eq. y" + assert str(as_ne(x, y)) == "x .ne. y" + assert str(as_lt(x, y)) == "x .lt. y" + assert str(as_le(x, y)) == "x .le. y" + assert str(as_gt(x, y)) == "x .gt. y" + assert str(as_ge(x, y)) == "x .ge. y" + + def test_tostring_c(self): + language = Language.C + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + n = as_number(123) + + assert Expr(Op.FACTORS, {x: 2}).tostring(language=language) == "x * x" + assert (Expr(Op.FACTORS, { + x + y: 2 + }).tostring(language=language) == "(x + y) * (x + y)") + assert Expr(Op.FACTORS, { + x: 12 + }).tostring(language=language) == "pow(x, 12)" + + assert as_apply(ArithOp.DIV, x, + y).tostring(language=language) == "x / y" + assert (as_apply(ArithOp.DIV, x, + x + y).tostring(language=language) == "x / (x + y)") + assert (as_apply(ArithOp.DIV, x - y, x + + y).tostring(language=language) == "(x - y) / (x + y)") + assert (x + (x - y) / (x + y) + + n).tostring(language=language) == "123 + x + (x - y) / (x + y)" + + assert as_ternary(x, y, z).tostring(language=language) == "(x?y:z)" + assert as_eq(x, y).tostring(language=language) == "x == y" + assert as_ne(x, y).tostring(language=language) == "x != y" + assert as_lt(x, y).tostring(language=language) == "x < y" + assert as_le(x, y).tostring(language=language) == "x <= y" + assert as_gt(x, y).tostring(language=language) == "x > y" + assert as_ge(x, y).tostring(language=language) == "x >= y" + + def test_operations(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + + assert x + x == Expr(Op.TERMS, {x: 2}) + assert x - x == Expr(Op.INTEGER, (0, 4)) + assert x + y == Expr(Op.TERMS, {x: 1, y: 1}) + assert x - y == Expr(Op.TERMS, {x: 1, y: -1}) + assert x * x == Expr(Op.FACTORS, {x: 2}) + assert x * y == Expr(Op.FACTORS, {x: 1, y: 1}) + + assert +x == x + assert -x == Expr(Op.TERMS, {x: -1}), repr(-x) + assert 2 * x == Expr(Op.TERMS, {x: 2}) + assert 2 + x == Expr(Op.TERMS, {x: 1, as_number(1): 2}) + assert 2 * x + 3 * y == Expr(Op.TERMS, {x: 2, y: 3}) + assert (x + y) * 2 == Expr(Op.TERMS, {x: 2, y: 2}) + + assert x**2 == Expr(Op.FACTORS, {x: 2}) + assert (x + y)**2 == Expr( + Op.TERMS, + { + Expr(Op.FACTORS, {x: 2}): 1, + Expr(Op.FACTORS, {y: 2}): 1, + Expr(Op.FACTORS, { + x: 1, + y: 1 + }): 2, + }, + ) + assert (x + y) * x == x**2 + x * y + assert (x + y)**2 == x**2 + 2 * x * y + y**2 + assert (x + y)**2 + (x - y)**2 == 2 * x**2 + 2 * y**2 + assert (x + y) * z == x * z + y * z + assert z * (x + y) == x * z + y * z + + assert (x / 2) == as_apply(ArithOp.DIV, x, as_number(2)) + assert (2 * x / 2) == x + assert (3 * x / 2) == as_apply(ArithOp.DIV, 3 * x, as_number(2)) + assert (4 * x / 2) == 2 * x + assert (5 * x / 2) == as_apply(ArithOp.DIV, 5 * x, as_number(2)) + assert (6 * x / 2) == 3 * x + assert ((3 * 5) * x / 6) == as_apply(ArithOp.DIV, 5 * x, as_number(2)) + assert (30 * x**2 * y**4 / (24 * x**3 * y**3)) == as_apply( + ArithOp.DIV, 5 * y, 4 * x) + assert ((15 * x / 6) / 5) == as_apply(ArithOp.DIV, x, + as_number(2)), (15 * x / 6) / 5 + assert (x / (5 / x)) == as_apply(ArithOp.DIV, x**2, as_number(5)) + + assert (x / 2.0) == Expr(Op.TERMS, {x: 0.5}) + + s = as_string('"ABC"') + t = as_string('"123"') + + assert s // t == Expr(Op.STRING, ('"ABC123"', 1)) + assert s // x == Expr(Op.CONCAT, (s, x)) + assert x // s == Expr(Op.CONCAT, (x, s)) + + c = as_complex(1.0, 2.0) + assert -c == as_complex(-1.0, -2.0) + assert c + c == as_expr((1 + 2j) * 2) + assert c * c == as_expr((1 + 2j)**2) + + def test_substitute(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + a = as_array((x, y)) + + assert x.substitute({x: y}) == y + assert (x + y).substitute({x: z}) == y + z + assert (x * y).substitute({x: z}) == y * z + assert (x**4).substitute({x: z}) == z**4 + assert (x / y).substitute({x: z}) == z / y + assert x.substitute({x: y + z}) == y + z + assert a.substitute({x: y + z}) == as_array((y + z, y)) + + assert as_ternary(x, y, + z).substitute({x: y + z}) == as_ternary(y + z, y, z) + assert as_eq(x, y).substitute({x: y + z}) == as_eq(y + z, y) + + def test_fromstring(self): + + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + f = as_symbol("f") + s = as_string('"ABC"') + t = as_string('"123"') + a = as_array((x, y)) + + assert fromstring("x") == x + assert fromstring("+ x") == x + assert fromstring("- x") == -x + assert fromstring("x + y") == x + y + assert fromstring("x + 1") == x + 1 + assert fromstring("x * y") == x * y + assert fromstring("x * 2") == x * 2 + assert fromstring("x / y") == x / y + assert fromstring("x ** 2", language=Language.Python) == x**2 + assert fromstring("x ** 2 ** 3", language=Language.Python) == x**2**3 + assert fromstring("(x + y) * z") == (x + y) * z + + assert fromstring("f(x)") == f(x) + assert fromstring("f(x,y)") == f(x, y) + assert fromstring("f[x]") == f[x] + assert fromstring("f[x][y]") == f[x][y] + + assert fromstring('"ABC"') == s + assert (normalize( + fromstring('"ABC" // "123" ', + language=Language.Fortran)) == s // t) + assert fromstring('f("ABC")') == f(s) + assert fromstring('MYSTRKIND_"ABC"') == as_string('"ABC"', "MYSTRKIND") + + assert fromstring("(/x, y/)") == a, fromstring("(/x, y/)") + assert fromstring("f((/x, y/))") == f(a) + assert fromstring("(/(x+y)*z/)") == as_array(((x + y) * z, )) + + assert fromstring("123") == as_number(123) + assert fromstring("123_2") == as_number(123, 2) + assert fromstring("123_myintkind") == as_number(123, "myintkind") + + assert fromstring("123.0") == as_number(123.0, 4) + assert fromstring("123.0_4") == as_number(123.0, 4) + assert fromstring("123.0_8") == as_number(123.0, 8) + assert fromstring("123.0e0") == as_number(123.0, 4) + assert fromstring("123.0d0") == as_number(123.0, 8) + assert fromstring("123d0") == as_number(123.0, 8) + assert fromstring("123e-0") == as_number(123.0, 4) + assert fromstring("123d+0") == as_number(123.0, 8) + assert fromstring("123.0_myrealkind") == as_number(123.0, "myrealkind") + assert fromstring("3E4") == as_number(30000.0, 4) + + assert fromstring("(1, 2)") == as_complex(1, 2) + assert fromstring("(1e2, PI)") == as_complex(as_number(100.0), + as_symbol("PI")) + + assert fromstring("[1, 2]") == as_array((as_number(1), as_number(2))) + + assert fromstring("POINT(x, y=1)") == as_apply(as_symbol("POINT"), + x, + y=as_number(1)) + assert fromstring( + 'PERSON(name="John", age=50, shape=(/34, 23/))') == as_apply( + as_symbol("PERSON"), + name=as_string('"John"'), + age=as_number(50), + shape=as_array((as_number(34), as_number(23))), + ) + + assert fromstring("x?y:z") == as_ternary(x, y, z) + + assert fromstring("*x") == as_deref(x) + assert fromstring("**x") == as_deref(as_deref(x)) + assert fromstring("&x") == as_ref(x) + assert fromstring("(*x) * (*y)") == as_deref(x) * as_deref(y) + assert fromstring("(*x) * *y") == as_deref(x) * as_deref(y) + assert fromstring("*x * *y") == as_deref(x) * as_deref(y) + assert fromstring("*x**y") == as_deref(x) * as_deref(y) + + assert fromstring("x == y") == as_eq(x, y) + assert fromstring("x != y") == as_ne(x, y) + assert fromstring("x < y") == as_lt(x, y) + assert fromstring("x > y") == as_gt(x, y) + assert fromstring("x <= y") == as_le(x, y) + assert fromstring("x >= y") == as_ge(x, y) + + assert fromstring("x .eq. y", language=Language.Fortran) == as_eq(x, y) + assert fromstring("x .ne. y", language=Language.Fortran) == as_ne(x, y) + assert fromstring("x .lt. y", language=Language.Fortran) == as_lt(x, y) + assert fromstring("x .gt. y", language=Language.Fortran) == as_gt(x, y) + assert fromstring("x .le. y", language=Language.Fortran) == as_le(x, y) + assert fromstring("x .ge. y", language=Language.Fortran) == as_ge(x, y) + + def test_traverse(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + f = as_symbol("f") + + # Use traverse to substitute a symbol + def replace_visit(s, r=z): + if s == x: + return r + + assert x.traverse(replace_visit) == z + assert y.traverse(replace_visit) == y + assert z.traverse(replace_visit) == z + assert (f(y)).traverse(replace_visit) == f(y) + assert (f(x)).traverse(replace_visit) == f(z) + assert (f[y]).traverse(replace_visit) == f[y] + assert (f[z]).traverse(replace_visit) == f[z] + assert (x + y + z).traverse(replace_visit) == (2 * z + y) + assert (x + + f(y, x - z)).traverse(replace_visit) == (z + + f(y, as_number(0))) + assert as_eq(x, y).traverse(replace_visit) == as_eq(z, y) + + # Use traverse to collect symbols, method 1 + function_symbols = set() + symbols = set() + + def collect_symbols(s): + if s.op is Op.APPLY: + oper = s.data[0] + function_symbols.add(oper) + if oper in symbols: + symbols.remove(oper) + elif s.op is Op.SYMBOL and s not in function_symbols: + symbols.add(s) + + (x + f(y, x - z)).traverse(collect_symbols) + assert function_symbols == {f} + assert symbols == {x, y, z} + + # Use traverse to collect symbols, method 2 + def collect_symbols2(expr, symbols): + if expr.op is Op.SYMBOL: + symbols.add(expr) + + symbols = set() + (x + f(y, x - z)).traverse(collect_symbols2, symbols) + assert symbols == {x, y, z, f} + + # Use traverse to partially collect symbols + def collect_symbols3(expr, symbols): + if expr.op is Op.APPLY: + # skip traversing function calls + return expr + if expr.op is Op.SYMBOL: + symbols.add(expr) + + symbols = set() + (x + f(y, x - z)).traverse(collect_symbols3, symbols) + assert symbols == {x} + + def test_linear_solve(self): + x = as_symbol("x") + y = as_symbol("y") + z = as_symbol("z") + + assert x.linear_solve(x) == (as_number(1), as_number(0)) + assert (x + 1).linear_solve(x) == (as_number(1), as_number(1)) + assert (2 * x).linear_solve(x) == (as_number(2), as_number(0)) + assert (2 * x + 3).linear_solve(x) == (as_number(2), as_number(3)) + assert as_number(3).linear_solve(x) == (as_number(0), as_number(3)) + assert y.linear_solve(x) == (as_number(0), y) + assert (y * z).linear_solve(x) == (as_number(0), y * z) + + assert (x + y).linear_solve(x) == (as_number(1), y) + assert (z * x + y).linear_solve(x) == (z, y) + assert ((z + y) * x + y).linear_solve(x) == (z + y, y) + assert (z * y * x + y).linear_solve(x) == (z * y, y) + + pytest.raises(RuntimeError, lambda: (x * x).linear_solve(x)) + + def test_as_numer_denom(self): + x = as_symbol("x") + y = as_symbol("y") + n = as_number(123) + + assert as_numer_denom(x) == (x, as_number(1)) + assert as_numer_denom(x / n) == (x, n) + assert as_numer_denom(n / x) == (n, x) + assert as_numer_denom(x / y) == (x, y) + assert as_numer_denom(x * y) == (x * y, as_number(1)) + assert as_numer_denom(n + x / y) == (x + n * y, y) + assert as_numer_denom(n + x / (y - x / n)) == (y * n**2, y * n - x) + + def test_polynomial_atoms(self): + x = as_symbol("x") + y = as_symbol("y") + n = as_number(123) + + assert x.polynomial_atoms() == {x} + assert n.polynomial_atoms() == set() + assert (y[x]).polynomial_atoms() == {y[x]} + assert (y(x)).polynomial_atoms() == {y(x)} + assert (y(x) + x).polynomial_atoms() == {y(x), x} + assert (y(x) * x[y]).polynomial_atoms() == {y(x), x[y]} + assert (y(x)**x).polynomial_atoms() == {y(x)} diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_value_attrspec.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_value_attrspec.py new file mode 100644 index 0000000000000000000000000000000000000000..1f3fa676ba8cf37e443b3a4e06f31d8f8306bfe7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/test_value_attrspec.py @@ -0,0 +1,14 @@ +import pytest + +from . import util + +class TestValueAttr(util.F2PyTest): + sources = [util.getpath("tests", "src", "value_attrspec", "gh21665.f90")] + + # gh-21665 + @pytest.mark.slow + def test_gh21665(self): + inp = 2 + out = self.module.fortfuncs.square(inp) + exp_out = 4 + assert out == exp_out diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/util.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/util.py new file mode 100644 index 0000000000000000000000000000000000000000..e2fcc1ba39d49fd77045b5d037a3ac91c3352e1b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/tests/util.py @@ -0,0 +1,441 @@ +""" +Utility functions for + +- building and importing modules on test time, using a temporary location +- detecting if compilers are present +- determining paths to tests + +""" +import glob +import os +import sys +import subprocess +import tempfile +import shutil +import atexit +import pytest +import contextlib +import numpy +import concurrent.futures + +from pathlib import Path +from numpy._utils import asunicode +from numpy.testing import temppath, IS_WASM +from importlib import import_module +from numpy.f2py._backends._meson import MesonBackend + +# +# Check if compilers are available at all... +# + +def check_language(lang, code_snippet=None): + if sys.platform == "win32": + pytest.skip("No Fortran tests on Windows (Issue #25134)", allow_module_level=True) + tmpdir = tempfile.mkdtemp() + try: + meson_file = os.path.join(tmpdir, "meson.build") + with open(meson_file, "w") as f: + f.write("project('check_compilers')\n") + f.write(f"add_languages('{lang}')\n") + if code_snippet: + f.write(f"{lang}_compiler = meson.get_compiler('{lang}')\n") + f.write(f"{lang}_code = '''{code_snippet}'''\n") + f.write( + f"_have_{lang}_feature =" + f"{lang}_compiler.compiles({lang}_code," + f" name: '{lang} feature check')\n" + ) + try: + runmeson = subprocess.run( + ["meson", "setup", "btmp"], + check=False, + cwd=tmpdir, + capture_output=True, + ) + except subprocess.CalledProcessError: + pytest.skip("meson not present, skipping compiler dependent test", allow_module_level=True) + return runmeson.returncode == 0 + finally: + shutil.rmtree(tmpdir) + + +fortran77_code = ''' +C Example Fortran 77 code + PROGRAM HELLO + PRINT *, 'Hello, Fortran 77!' + END +''' + +fortran90_code = ''' +! Example Fortran 90 code +program hello90 + type :: greeting + character(len=20) :: text + end type greeting + + type(greeting) :: greet + greet%text = 'hello, fortran 90!' + print *, greet%text +end program hello90 +''' + +# Dummy class for caching relevant checks +class CompilerChecker: + def __init__(self): + self.compilers_checked = False + self.has_c = False + self.has_f77 = False + self.has_f90 = False + + def check_compilers(self): + if (not self.compilers_checked) and (not sys.platform == "cygwin"): + with concurrent.futures.ThreadPoolExecutor() as executor: + futures = [ + executor.submit(check_language, "c"), + executor.submit(check_language, "fortran", fortran77_code), + executor.submit(check_language, "fortran", fortran90_code) + ] + + self.has_c = futures[0].result() + self.has_f77 = futures[1].result() + self.has_f90 = futures[2].result() + + self.compilers_checked = True + +if not IS_WASM: + checker = CompilerChecker() + checker.check_compilers() + +def has_c_compiler(): + return checker.has_c + +def has_f77_compiler(): + return checker.has_f77 + +def has_f90_compiler(): + return checker.has_f90 + +def has_fortran_compiler(): + return (checker.has_f90 and checker.has_f77) + + +# +# Maintaining a temporary module directory +# + +_module_dir = None +_module_num = 5403 + +if sys.platform == "cygwin": + NUMPY_INSTALL_ROOT = Path(__file__).parent.parent.parent + _module_list = list(NUMPY_INSTALL_ROOT.glob("**/*.dll")) + + +def _cleanup(): + global _module_dir + if _module_dir is not None: + try: + sys.path.remove(_module_dir) + except ValueError: + pass + try: + shutil.rmtree(_module_dir) + except OSError: + pass + _module_dir = None + + +def get_module_dir(): + global _module_dir + if _module_dir is None: + _module_dir = tempfile.mkdtemp() + atexit.register(_cleanup) + if _module_dir not in sys.path: + sys.path.insert(0, _module_dir) + return _module_dir + + +def get_temp_module_name(): + # Assume single-threaded, and the module dir usable only by this thread + global _module_num + get_module_dir() + name = "_test_ext_module_%d" % _module_num + _module_num += 1 + if name in sys.modules: + # this should not be possible, but check anyway + raise RuntimeError("Temporary module name already in use.") + return name + + +def _memoize(func): + memo = {} + + def wrapper(*a, **kw): + key = repr((a, kw)) + if key not in memo: + try: + memo[key] = func(*a, **kw) + except Exception as e: + memo[key] = e + raise + ret = memo[key] + if isinstance(ret, Exception): + raise ret + return ret + + wrapper.__name__ = func.__name__ + return wrapper + + +# +# Building modules +# + + +@_memoize +def build_module(source_files, options=[], skip=[], only=[], module_name=None): + """ + Compile and import a f2py module, built from the given files. + + """ + + code = f"import sys; sys.path = {sys.path!r}; import numpy.f2py; numpy.f2py.main()" + + d = get_module_dir() + # gh-27045 : Skip if no compilers are found + if not has_fortran_compiler(): + pytest.skip("No Fortran compiler available") + + # Copy files + dst_sources = [] + f2py_sources = [] + for fn in source_files: + if not os.path.isfile(fn): + raise RuntimeError("%s is not a file" % fn) + dst = os.path.join(d, os.path.basename(fn)) + shutil.copyfile(fn, dst) + dst_sources.append(dst) + + base, ext = os.path.splitext(dst) + if ext in (".f90", ".f95", ".f", ".c", ".pyf"): + f2py_sources.append(dst) + + assert f2py_sources + + # Prepare options + if module_name is None: + module_name = get_temp_module_name() + gil_options = [] + if '--freethreading-compatible' not in options and '--no-freethreading-compatible' not in options: + # default to disabling the GIL if unset in options + gil_options = ['--freethreading-compatible'] + f2py_opts = ["-c", "-m", module_name] + options + gil_options + f2py_sources + f2py_opts += ["--backend", "meson"] + if skip: + f2py_opts += ["skip:"] + skip + if only: + f2py_opts += ["only:"] + only + + # Build + cwd = os.getcwd() + try: + os.chdir(d) + cmd = [sys.executable, "-c", code] + f2py_opts + p = subprocess.Popen(cmd, + stdout=subprocess.PIPE, + stderr=subprocess.STDOUT) + out, err = p.communicate() + if p.returncode != 0: + raise RuntimeError("Running f2py failed: %s\n%s" % + (cmd[4:], asunicode(out))) + finally: + os.chdir(cwd) + + # Partial cleanup + for fn in dst_sources: + os.unlink(fn) + + # Rebase (Cygwin-only) + if sys.platform == "cygwin": + # If someone starts deleting modules after import, this will + # need to change to record how big each module is, rather than + # relying on rebase being able to find that from the files. + _module_list.extend( + glob.glob(os.path.join(d, "{:s}*".format(module_name))) + ) + subprocess.check_call( + ["/usr/bin/rebase", "--database", "--oblivious", "--verbose"] + + _module_list + ) + + # Import + return import_module(module_name) + + +@_memoize +def build_code(source_code, + options=[], + skip=[], + only=[], + suffix=None, + module_name=None): + """ + Compile and import Fortran code using f2py. + + """ + if suffix is None: + suffix = ".f" + with temppath(suffix=suffix) as path: + with open(path, "w") as f: + f.write(source_code) + return build_module([path], + options=options, + skip=skip, + only=only, + module_name=module_name) + + +# +# Building with meson +# + + +class SimplifiedMesonBackend(MesonBackend): + def __init__(self, *args, **kwargs): + super().__init__(*args, **kwargs) + + def compile(self): + self.write_meson_build(self.build_dir) + self.run_meson(self.build_dir) + + +def build_meson(source_files, module_name=None, **kwargs): + """ + Build a module via Meson and import it. + """ + + # gh-27045 : Skip if no compilers are found + if not has_fortran_compiler(): + pytest.skip("No Fortran compiler available") + + build_dir = get_module_dir() + if module_name is None: + module_name = get_temp_module_name() + + # Initialize the MesonBackend + backend = SimplifiedMesonBackend( + modulename=module_name, + sources=source_files, + extra_objects=kwargs.get("extra_objects", []), + build_dir=build_dir, + include_dirs=kwargs.get("include_dirs", []), + library_dirs=kwargs.get("library_dirs", []), + libraries=kwargs.get("libraries", []), + define_macros=kwargs.get("define_macros", []), + undef_macros=kwargs.get("undef_macros", []), + f2py_flags=kwargs.get("f2py_flags", []), + sysinfo_flags=kwargs.get("sysinfo_flags", []), + fc_flags=kwargs.get("fc_flags", []), + flib_flags=kwargs.get("flib_flags", []), + setup_flags=kwargs.get("setup_flags", []), + remove_build_dir=kwargs.get("remove_build_dir", False), + extra_dat=kwargs.get("extra_dat", {}), + ) + + backend.compile() + + # Import the compiled module + sys.path.insert(0, f"{build_dir}/{backend.meson_build_dir}") + return import_module(module_name) + + +# +# Unittest convenience +# + + +class F2PyTest: + code = None + sources = None + options = [] + skip = [] + only = [] + suffix = ".f" + module = None + _has_c_compiler = None + _has_f77_compiler = None + _has_f90_compiler = None + + @property + def module_name(self): + cls = type(self) + return f'_{cls.__module__.rsplit(".",1)[-1]}_{cls.__name__}_ext_module' + + @classmethod + def setup_class(cls): + if sys.platform == "win32": + pytest.skip("Fails with MinGW64 Gfortran (Issue #9673)") + F2PyTest._has_c_compiler = has_c_compiler() + F2PyTest._has_f77_compiler = has_f77_compiler() + F2PyTest._has_f90_compiler = has_f90_compiler() + F2PyTest._has_fortran_compiler = has_fortran_compiler() + + def setup_method(self): + if self.module is not None: + return + + codes = self.sources if self.sources else [] + if self.code: + codes.append(self.suffix) + + needs_f77 = any(str(fn).endswith(".f") for fn in codes) + needs_f90 = any(str(fn).endswith(".f90") for fn in codes) + needs_pyf = any(str(fn).endswith(".pyf") for fn in codes) + + if needs_f77 and not self._has_f77_compiler: + pytest.skip("No Fortran 77 compiler available") + if needs_f90 and not self._has_f90_compiler: + pytest.skip("No Fortran 90 compiler available") + if needs_pyf and not self._has_fortran_compiler: + pytest.skip("No Fortran compiler available") + + # Build the module + if self.code is not None: + self.module = build_code( + self.code, + options=self.options, + skip=self.skip, + only=self.only, + suffix=self.suffix, + module_name=self.module_name, + ) + + if self.sources is not None: + self.module = build_module( + self.sources, + options=self.options, + skip=self.skip, + only=self.only, + module_name=self.module_name, + ) + + +# +# Helper functions +# + + +def getpath(*a): + # Package root + d = Path(numpy.f2py.__file__).parent.resolve() + return d.joinpath(*a) + + +@contextlib.contextmanager +def switchdir(path): + curpath = Path.cwd() + os.chdir(path) + try: + yield + finally: + os.chdir(curpath) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/use_rules.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/use_rules.py new file mode 100644 index 0000000000000000000000000000000000000000..19c111aae56d4919d6e72e17ebaece31d5bafc82 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/f2py/use_rules.py @@ -0,0 +1,106 @@ +""" +Build 'use others module data' mechanism for f2py2e. + +Copyright 1999 -- 2011 Pearu Peterson all rights reserved. +Copyright 2011 -- present NumPy Developers. +Permission to use, modify, and distribute this software is given under the +terms of the NumPy License. + +NO WARRANTY IS EXPRESSED OR IMPLIED. USE AT YOUR OWN RISK. +""" +__version__ = "$Revision: 1.3 $"[10:-1] + +f2py_version = 'See `f2py -v`' + + +from .auxfuncs import ( + applyrules, dictappend, gentitle, hasnote, outmess +) + + +usemodule_rules = { + 'body': """ +#begintitle# +static char doc_#apiname#[] = \"\\\nVariable wrapper signature:\\n\\ +\t #name# = get_#name#()\\n\\ +Arguments:\\n\\ +#docstr#\"; +extern F_MODFUNC(#usemodulename#,#USEMODULENAME#,#realname#,#REALNAME#); +static PyObject *#apiname#(PyObject *capi_self, PyObject *capi_args) { +/*#decl#*/ +\tif (!PyArg_ParseTuple(capi_args, \"\")) goto capi_fail; +printf(\"c: %d\\n\",F_MODFUNC(#usemodulename#,#USEMODULENAME#,#realname#,#REALNAME#)); +\treturn Py_BuildValue(\"\"); +capi_fail: +\treturn NULL; +} +""", + 'method': '\t{\"get_#name#\",#apiname#,METH_VARARGS|METH_KEYWORDS,doc_#apiname#},', + 'need': ['F_MODFUNC'] +} + +################ + + +def buildusevars(m, r): + ret = {} + outmess( + '\t\tBuilding use variable hooks for module "%s" (feature only for F90/F95)...\n' % (m['name'])) + varsmap = {} + revmap = {} + if 'map' in r: + for k in r['map'].keys(): + if r['map'][k] in revmap: + outmess('\t\t\tVariable "%s<=%s" is already mapped by "%s". Skipping.\n' % ( + r['map'][k], k, revmap[r['map'][k]])) + else: + revmap[r['map'][k]] = k + if r.get('only'): + for v in r['map'].keys(): + if r['map'][v] in m['vars']: + + if revmap[r['map'][v]] == v: + varsmap[v] = r['map'][v] + else: + outmess('\t\t\tIgnoring map "%s=>%s". See above.\n' % + (v, r['map'][v])) + else: + outmess( + '\t\t\tNo definition for variable "%s=>%s". Skipping.\n' % (v, r['map'][v])) + else: + for v in m['vars'].keys(): + if v in revmap: + varsmap[v] = revmap[v] + else: + varsmap[v] = v + for v in varsmap.keys(): + ret = dictappend(ret, buildusevar(v, varsmap[v], m['vars'], m['name'])) + return ret + + +def buildusevar(name, realname, vars, usemodulename): + outmess('\t\t\tConstructing wrapper function for variable "%s=>%s"...\n' % ( + name, realname)) + ret = {} + vrd = {'name': name, + 'realname': realname, + 'REALNAME': realname.upper(), + 'usemodulename': usemodulename, + 'USEMODULENAME': usemodulename.upper(), + 'texname': name.replace('_', '\\_'), + 'begintitle': gentitle('%s=>%s' % (name, realname)), + 'endtitle': gentitle('end of %s=>%s' % (name, realname)), + 'apiname': '#modulename#_use_%s_from_%s' % (realname, usemodulename) + } + nummap = {0: 'Ro', 1: 'Ri', 2: 'Rii', 3: 'Riii', 4: 'Riv', + 5: 'Rv', 6: 'Rvi', 7: 'Rvii', 8: 'Rviii', 9: 'Rix'} + vrd['texnamename'] = name + for i in nummap.keys(): + vrd['texnamename'] = vrd['texnamename'].replace(repr(i), nummap[i]) + if hasnote(vars[realname]): + vrd['note'] = vars[realname]['note'] + rd = dictappend({}, vrd) + + print(name, realname, vars[realname]) + ret = applyrules(usemodule_rules, rd) + return ret diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/_helper.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/_helper.pyi new file mode 100644 index 0000000000000000000000000000000000000000..7673c1800a921cf166bf8f104054166a7c8e31be --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/_helper.pyi @@ -0,0 +1,38 @@ +from typing import Any, Final, TypeVar, overload +from typing import Literal as L + +from numpy import complexfloating, floating, generic, integer +from numpy._typing import ArrayLike, NDArray, _ArrayLike, _ArrayLikeComplex_co, _ArrayLikeFloat_co, _ShapeLike + +__all__ = ["fftfreq", "fftshift", "ifftshift", "rfftfreq"] + +_SCT = TypeVar("_SCT", bound=generic) + +### + +integer_types: Final[tuple[type[int], type[integer]]] = ... + +### + +@overload +def fftshift(x: _ArrayLike[_SCT], axes: _ShapeLike | None = None) -> NDArray[_SCT]: ... +@overload +def fftshift(x: ArrayLike, axes: _ShapeLike | None = None) -> NDArray[Any]: ... + +# +@overload +def ifftshift(x: _ArrayLike[_SCT], axes: _ShapeLike | None = None) -> NDArray[_SCT]: ... +@overload +def ifftshift(x: ArrayLike, axes: _ShapeLike | None = None) -> NDArray[Any]: ... + +# +@overload +def fftfreq(n: int | integer, d: _ArrayLikeFloat_co = 1.0, device: L["cpu"] | None = None) -> NDArray[floating]: ... +@overload +def fftfreq(n: int | integer, d: _ArrayLikeComplex_co = 1.0, device: L["cpu"] | None = None) -> NDArray[complexfloating]: ... + +# +@overload +def rfftfreq(n: int | integer, d: _ArrayLikeFloat_co = 1.0, device: L["cpu"] | None = None) -> NDArray[floating]: ... +@overload +def rfftfreq(n: int | integer, d: _ArrayLikeComplex_co = 1.0, device: L["cpu"] | None = None) -> NDArray[complexfloating]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/helper.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/helper.pyi new file mode 100644 index 0000000000000000000000000000000000000000..887cbe7e27c996a1b68624048705c046cd16cc89 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/fft/helper.pyi @@ -0,0 +1,22 @@ +from typing import Any +from typing import Literal as L + +from typing_extensions import deprecated + +import numpy as np +from numpy._typing import ArrayLike, NDArray, _ShapeLike + +from ._helper import integer_types as integer_types + +__all__ = ["fftfreq", "fftshift", "ifftshift", "rfftfreq"] + +### + +@deprecated("Please use `numpy.fft.fftshift` instead.") +def fftshift(x: ArrayLike, axes: _ShapeLike | None = None) -> NDArray[Any]: ... +@deprecated("Please use `numpy.fft.ifftshift` instead.") +def ifftshift(x: ArrayLike, axes: _ShapeLike | None = None) -> NDArray[Any]: ... +@deprecated("Please use `numpy.fft.fftfreq` instead.") +def fftfreq(n: int | np.integer, d: ArrayLike = 1.0, device: L["cpu"] | None = None) -> NDArray[Any]: ... +@deprecated("Please use `numpy.fft.rfftfreq` instead.") +def rfftfreq(n: int | np.integer, d: ArrayLike = 1.0, device: L["cpu"] | None = None) -> NDArray[Any]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.py new file mode 100644 index 0000000000000000000000000000000000000000..7ee194d56b4187e36e5d1727d3853564bf5b37c0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.py @@ -0,0 +1,379 @@ +import warnings + +# 2018-05-29, PendingDeprecationWarning added to matrix.__new__ +# 2020-01-23, numpy 1.19.0 PendingDeprecatonWarning +warnings.warn("Importing from numpy.matlib is deprecated since 1.19.0. " + "The matrix subclass is not the recommended way to represent " + "matrices or deal with linear algebra (see " + "https://docs.scipy.org/doc/numpy/user/numpy-for-matlab-users.html). " + "Please adjust your code to use regular ndarray. ", + PendingDeprecationWarning, stacklevel=2) + +import numpy as np +from numpy.matrixlib.defmatrix import matrix, asmatrix +# Matlib.py contains all functions in the numpy namespace with a few +# replacements. See doc/source/reference/routines.matlib.rst for details. +# Need * as we're copying the numpy namespace. +from numpy import * # noqa: F403 + +__version__ = np.__version__ + +__all__ = np.__all__[:] # copy numpy namespace +__all__ += ['rand', 'randn', 'repmat'] + +def empty(shape, dtype=None, order='C'): + """Return a new matrix of given shape and type, without initializing entries. + + Parameters + ---------- + shape : int or tuple of int + Shape of the empty matrix. + dtype : data-type, optional + Desired output data-type. + order : {'C', 'F'}, optional + Whether to store multi-dimensional data in row-major + (C-style) or column-major (Fortran-style) order in + memory. + + See Also + -------- + numpy.empty : Equivalent array function. + matlib.zeros : Return a matrix of zeros. + matlib.ones : Return a matrix of ones. + + Notes + ----- + Unlike other matrix creation functions (e.g. `matlib.zeros`, + `matlib.ones`), `matlib.empty` does not initialize the values of the + matrix, and may therefore be marginally faster. However, the values + stored in the newly allocated matrix are arbitrary. For reproducible + behavior, be sure to set each element of the matrix before reading. + + Examples + -------- + >>> import numpy.matlib + >>> np.matlib.empty((2, 2)) # filled with random data + matrix([[ 6.76425276e-320, 9.79033856e-307], # random + [ 7.39337286e-309, 3.22135945e-309]]) + >>> np.matlib.empty((2, 2), dtype=int) + matrix([[ 6600475, 0], # random + [ 6586976, 22740995]]) + + """ + return ndarray.__new__(matrix, shape, dtype, order=order) + +def ones(shape, dtype=None, order='C'): + """ + Matrix of ones. + + Return a matrix of given shape and type, filled with ones. + + Parameters + ---------- + shape : {sequence of ints, int} + Shape of the matrix + dtype : data-type, optional + The desired data-type for the matrix, default is np.float64. + order : {'C', 'F'}, optional + Whether to store matrix in C- or Fortran-contiguous order, + default is 'C'. + + Returns + ------- + out : matrix + Matrix of ones of given shape, dtype, and order. + + See Also + -------- + ones : Array of ones. + matlib.zeros : Zero matrix. + + Notes + ----- + If `shape` has length one i.e. ``(N,)``, or is a scalar ``N``, + `out` becomes a single row matrix of shape ``(1,N)``. + + Examples + -------- + >>> np.matlib.ones((2,3)) + matrix([[1., 1., 1.], + [1., 1., 1.]]) + + >>> np.matlib.ones(2) + matrix([[1., 1.]]) + + """ + a = ndarray.__new__(matrix, shape, dtype, order=order) + a.fill(1) + return a + +def zeros(shape, dtype=None, order='C'): + """ + Return a matrix of given shape and type, filled with zeros. + + Parameters + ---------- + shape : int or sequence of ints + Shape of the matrix + dtype : data-type, optional + The desired data-type for the matrix, default is float. + order : {'C', 'F'}, optional + Whether to store the result in C- or Fortran-contiguous order, + default is 'C'. + + Returns + ------- + out : matrix + Zero matrix of given shape, dtype, and order. + + See Also + -------- + numpy.zeros : Equivalent array function. + matlib.ones : Return a matrix of ones. + + Notes + ----- + If `shape` has length one i.e. ``(N,)``, or is a scalar ``N``, + `out` becomes a single row matrix of shape ``(1,N)``. + + Examples + -------- + >>> import numpy.matlib + >>> np.matlib.zeros((2, 3)) + matrix([[0., 0., 0.], + [0., 0., 0.]]) + + >>> np.matlib.zeros(2) + matrix([[0., 0.]]) + + """ + a = ndarray.__new__(matrix, shape, dtype, order=order) + a.fill(0) + return a + +def identity(n,dtype=None): + """ + Returns the square identity matrix of given size. + + Parameters + ---------- + n : int + Size of the returned identity matrix. + dtype : data-type, optional + Data-type of the output. Defaults to ``float``. + + Returns + ------- + out : matrix + `n` x `n` matrix with its main diagonal set to one, + and all other elements zero. + + See Also + -------- + numpy.identity : Equivalent array function. + matlib.eye : More general matrix identity function. + + Examples + -------- + >>> import numpy.matlib + >>> np.matlib.identity(3, dtype=int) + matrix([[1, 0, 0], + [0, 1, 0], + [0, 0, 1]]) + + """ + a = array([1]+n*[0], dtype=dtype) + b = empty((n, n), dtype=dtype) + b.flat = a + return b + +def eye(n,M=None, k=0, dtype=float, order='C'): + """ + Return a matrix with ones on the diagonal and zeros elsewhere. + + Parameters + ---------- + n : int + Number of rows in the output. + M : int, optional + Number of columns in the output, defaults to `n`. + k : int, optional + Index of the diagonal: 0 refers to the main diagonal, + a positive value refers to an upper diagonal, + and a negative value to a lower diagonal. + dtype : dtype, optional + Data-type of the returned matrix. + order : {'C', 'F'}, optional + Whether the output should be stored in row-major (C-style) or + column-major (Fortran-style) order in memory. + + Returns + ------- + I : matrix + A `n` x `M` matrix where all elements are equal to zero, + except for the `k`-th diagonal, whose values are equal to one. + + See Also + -------- + numpy.eye : Equivalent array function. + identity : Square identity matrix. + + Examples + -------- + >>> import numpy.matlib + >>> np.matlib.eye(3, k=1, dtype=float) + matrix([[0., 1., 0.], + [0., 0., 1.], + [0., 0., 0.]]) + + """ + return asmatrix(np.eye(n, M=M, k=k, dtype=dtype, order=order)) + +def rand(*args): + """ + Return a matrix of random values with given shape. + + Create a matrix of the given shape and propagate it with + random samples from a uniform distribution over ``[0, 1)``. + + Parameters + ---------- + \\*args : Arguments + Shape of the output. + If given as N integers, each integer specifies the size of one + dimension. + If given as a tuple, this tuple gives the complete shape. + + Returns + ------- + out : ndarray + The matrix of random values with shape given by `\\*args`. + + See Also + -------- + randn, numpy.random.RandomState.rand + + Examples + -------- + >>> np.random.seed(123) + >>> import numpy.matlib + >>> np.matlib.rand(2, 3) + matrix([[0.69646919, 0.28613933, 0.22685145], + [0.55131477, 0.71946897, 0.42310646]]) + >>> np.matlib.rand((2, 3)) + matrix([[0.9807642 , 0.68482974, 0.4809319 ], + [0.39211752, 0.34317802, 0.72904971]]) + + If the first argument is a tuple, other arguments are ignored: + + >>> np.matlib.rand((2, 3), 4) + matrix([[0.43857224, 0.0596779 , 0.39804426], + [0.73799541, 0.18249173, 0.17545176]]) + + """ + if isinstance(args[0], tuple): + args = args[0] + return asmatrix(np.random.rand(*args)) + +def randn(*args): + """ + Return a random matrix with data from the "standard normal" distribution. + + `randn` generates a matrix filled with random floats sampled from a + univariate "normal" (Gaussian) distribution of mean 0 and variance 1. + + Parameters + ---------- + \\*args : Arguments + Shape of the output. + If given as N integers, each integer specifies the size of one + dimension. If given as a tuple, this tuple gives the complete shape. + + Returns + ------- + Z : matrix of floats + A matrix of floating-point samples drawn from the standard normal + distribution. + + See Also + -------- + rand, numpy.random.RandomState.randn + + Notes + ----- + For random samples from the normal distribution with mean ``mu`` and + standard deviation ``sigma``, use:: + + sigma * np.matlib.randn(...) + mu + + Examples + -------- + >>> np.random.seed(123) + >>> import numpy.matlib + >>> np.matlib.randn(1) + matrix([[-1.0856306]]) + >>> np.matlib.randn(1, 2, 3) + matrix([[ 0.99734545, 0.2829785 , -1.50629471], + [-0.57860025, 1.65143654, -2.42667924]]) + + Two-by-four matrix of samples from the normal distribution with + mean 3 and standard deviation 2.5: + + >>> 2.5 * np.matlib.randn((2, 4)) + 3 + matrix([[1.92771843, 6.16484065, 0.83314899, 1.30278462], + [2.76322758, 6.72847407, 1.40274501, 1.8900451 ]]) + + """ + if isinstance(args[0], tuple): + args = args[0] + return asmatrix(np.random.randn(*args)) + +def repmat(a, m, n): + """ + Repeat a 0-D to 2-D array or matrix MxN times. + + Parameters + ---------- + a : array_like + The array or matrix to be repeated. + m, n : int + The number of times `a` is repeated along the first and second axes. + + Returns + ------- + out : ndarray + The result of repeating `a`. + + Examples + -------- + >>> import numpy.matlib + >>> a0 = np.array(1) + >>> np.matlib.repmat(a0, 2, 3) + array([[1, 1, 1], + [1, 1, 1]]) + + >>> a1 = np.arange(4) + >>> np.matlib.repmat(a1, 2, 2) + array([[0, 1, 2, 3, 0, 1, 2, 3], + [0, 1, 2, 3, 0, 1, 2, 3]]) + + >>> a2 = np.asmatrix(np.arange(6).reshape(2, 3)) + >>> np.matlib.repmat(a2, 2, 3) + matrix([[0, 1, 2, 0, 1, 2, 0, 1, 2], + [3, 4, 5, 3, 4, 5, 3, 4, 5], + [0, 1, 2, 0, 1, 2, 0, 1, 2], + [3, 4, 5, 3, 4, 5, 3, 4, 5]]) + + """ + a = asanyarray(a) + ndim = a.ndim + if ndim == 0: + origrows, origcols = (1, 1) + elif ndim == 1: + origrows, origcols = (1, a.shape[0]) + else: + origrows, origcols = a.shape + rows = origrows * m + cols = origcols * n + c = a.reshape(1, a.size).repeat(m, 0).reshape(rows, origcols).repeat(n, 0) + return c.reshape(rows, cols) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.pyi new file mode 100644 index 0000000000000000000000000000000000000000..c6a10c6327ef1ed0728c6a4d72879b34c9f7f31b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/matlib.pyi @@ -0,0 +1,586 @@ +from typing import Any, Literal, TypeAlias, TypeVar, overload + +import numpy as np +import numpy.typing as npt + +# ruff: noqa: F401 +from numpy import ( + False_, + ScalarType, + True_, + __array_namespace_info__, + __version__, + abs, + absolute, + acos, + acosh, + add, + all, + allclose, + amax, + amin, + angle, + any, + append, + apply_along_axis, + apply_over_axes, + arange, + arccos, + arccosh, + arcsin, + arcsinh, + arctan, + arctan2, + arctanh, + argmax, + argmin, + argpartition, + argsort, + argwhere, + around, + array, + array2string, + array_equal, + array_equiv, + array_repr, + array_split, + array_str, + asanyarray, + asarray, + asarray_chkfinite, + ascontiguousarray, + asfortranarray, + asin, + asinh, + asmatrix, + astype, + atan, + atan2, + atanh, + atleast_1d, + atleast_2d, + atleast_3d, + average, + bartlett, + base_repr, + binary_repr, + bincount, + bitwise_and, + bitwise_count, + bitwise_invert, + bitwise_left_shift, + bitwise_not, + bitwise_or, + bitwise_right_shift, + bitwise_xor, + blackman, + block, + bmat, + bool, + bool_, + broadcast, + broadcast_arrays, + broadcast_shapes, + broadcast_to, + busday_count, + busday_offset, + busdaycalendar, + byte, + bytes_, + c_, + can_cast, + cbrt, + cdouble, + ceil, + char, + character, + choose, + clip, + clongdouble, + column_stack, + common_type, + complex64, + complex128, + complex256, + complexfloating, + compress, + concat, + concatenate, + conj, + conjugate, + convolve, + copy, + copysign, + copyto, + core, + corrcoef, + correlate, + cos, + cosh, + count_nonzero, + cov, + cross, + csingle, + ctypeslib, + cumprod, + cumsum, + cumulative_prod, + cumulative_sum, + datetime64, + datetime_as_string, + datetime_data, + deg2rad, + degrees, + delete, + diag, + diag_indices, + diag_indices_from, + diagflat, + diagonal, + diff, + digitize, + divide, + divmod, + dot, + double, + dsplit, + dstack, + dtype, + dtypes, + e, + ediff1d, + einsum, + einsum_path, + emath, + empty_like, + equal, + errstate, + euler_gamma, + exceptions, + exp, + exp2, + expand_dims, + expm1, + extract, + f2py, + fabs, + fft, + fill_diagonal, + finfo, + fix, + flatiter, + flatnonzero, + flexible, + flip, + fliplr, + flipud, + float16, + float32, + float64, + float128, + float_power, + floating, + floor, + floor_divide, + fmax, + fmin, + fmod, + format_float_positional, + format_float_scientific, + frexp, + from_dlpack, + frombuffer, + fromfile, + fromfunction, + fromiter, + frompyfunc, + fromregex, + fromstring, + full, + full_like, + gcd, + generic, + genfromtxt, + geomspace, + get_include, + get_printoptions, + getbufsize, + geterr, + geterrcall, + gradient, + greater, + greater_equal, + half, + hamming, + hanning, + heaviside, + histogram, + histogram2d, + histogram_bin_edges, + histogramdd, + hsplit, + hstack, + hypot, + i0, + iinfo, + imag, + in1d, + index_exp, + indices, + inexact, + inf, + info, + inner, + insert, + int8, + int16, + int32, + int64, + int_, + intc, + integer, + interp, + intersect1d, + intp, + invert, + is_busday, + isclose, + iscomplex, + iscomplexobj, + isdtype, + isfinite, + isfortran, + isin, + isinf, + isnan, + isnat, + isneginf, + isposinf, + isreal, + isrealobj, + isscalar, + issubdtype, + iterable, + ix_, + kaiser, + kron, + lcm, + ldexp, + left_shift, + less, + less_equal, + lexsort, + lib, + linalg, + linspace, + little_endian, + load, + loadtxt, + log, + log1p, + log2, + log10, + logaddexp, + logaddexp2, + logical_and, + logical_not, + logical_or, + logical_xor, + logspace, + long, + longdouble, + longlong, + ma, + mask_indices, + matmul, + matrix, + matrix_transpose, + matvec, + max, + maximum, + may_share_memory, + mean, + median, + memmap, + meshgrid, + mgrid, + min, + min_scalar_type, + minimum, + mintypecode, + mod, + modf, + moveaxis, + multiply, + nan, + nan_to_num, + nanargmax, + nanargmin, + nancumprod, + nancumsum, + nanmax, + nanmean, + nanmedian, + nanmin, + nanpercentile, + nanprod, + nanquantile, + nanstd, + nansum, + nanvar, + ndarray, + ndenumerate, + ndim, + ndindex, + nditer, + negative, + nested_iters, + newaxis, + nextafter, + nonzero, + not_equal, + number, + object_, + ogrid, + ones_like, + outer, + packbits, + pad, + partition, + percentile, + permute_dims, + pi, + piecewise, + place, + poly, + poly1d, + polyadd, + polyder, + polydiv, + polyfit, + polyint, + polymul, + polynomial, + polysub, + polyval, + positive, + pow, + power, + printoptions, + prod, + promote_types, + ptp, + put, + put_along_axis, + putmask, + quantile, + r_, + rad2deg, + radians, + random, + ravel, + ravel_multi_index, + real, + real_if_close, + rec, + recarray, + reciprocal, + record, + remainder, + repeat, + require, + reshape, + resize, + result_type, + right_shift, + rint, + roll, + rollaxis, + roots, + rot90, + round, + row_stack, + s_, + save, + savetxt, + savez, + savez_compressed, + sctypeDict, + searchsorted, + select, + set_printoptions, + setbufsize, + setdiff1d, + seterr, + seterrcall, + setxor1d, + shape, + shares_memory, + short, + show_config, + show_runtime, + sign, + signbit, + signedinteger, + sin, + sinc, + single, + sinh, + size, + sort, + sort_complex, + spacing, + split, + sqrt, + square, + squeeze, + stack, + std, + str_, + strings, + subtract, + sum, + swapaxes, + take, + take_along_axis, + tan, + tanh, + tensordot, + test, + testing, + tile, + timedelta64, + trace, + transpose, + trapezoid, + trapz, + tri, + tril, + tril_indices, + tril_indices_from, + trim_zeros, + triu, + triu_indices, + triu_indices_from, + true_divide, + trunc, + typecodes, + typename, + typing, + ubyte, + ufunc, + uint, + uint8, + uint16, + uint32, + uint64, + uintc, + uintp, + ulong, + ulonglong, + union1d, + unique, + unique_all, + unique_counts, + unique_inverse, + unique_values, + unpackbits, + unravel_index, + unsignedinteger, + unstack, + unwrap, + ushort, + vander, + var, + vdot, + vecdot, + vecmat, + vectorize, + void, + vsplit, + vstack, + where, + zeros_like, +) +from numpy._typing import _ArrayLike, _DTypeLike + +__all__ = ["rand", "randn", "repmat"] +__all__ += np.__all__ + +### + +_T = TypeVar("_T", bound=np.generic) +_Matrix: TypeAlias = np.matrix[tuple[int, int], np.dtype[_T]] +_Order: TypeAlias = Literal["C", "F"] + +### + +# ruff: noqa: F811 + +# +@overload +def empty(shape: int | tuple[int, int], dtype: None = None, order: _Order = "C") -> _Matrix[np.float64]: ... +@overload +def empty(shape: int | tuple[int, int], dtype: _DTypeLike[_T], order: _Order = "C") -> _Matrix[_T]: ... +@overload +def empty(shape: int | tuple[int, int], dtype: npt.DTypeLike, order: _Order = "C") -> _Matrix[Any]: ... + +# +@overload +def ones(shape: int | tuple[int, int], dtype: None = None, order: _Order = "C") -> _Matrix[np.float64]: ... +@overload +def ones(shape: int | tuple[int, int], dtype: _DTypeLike[_T], order: _Order = "C") -> _Matrix[_T]: ... +@overload +def ones(shape: int | tuple[int, int], dtype: npt.DTypeLike, order: _Order = "C") -> _Matrix[Any]: ... + +# +@overload +def zeros(shape: int | tuple[int, int], dtype: None = None, order: _Order = "C") -> _Matrix[np.float64]: ... +@overload +def zeros(shape: int | tuple[int, int], dtype: _DTypeLike[_T], order: _Order = "C") -> _Matrix[_T]: ... +@overload +def zeros(shape: int | tuple[int, int], dtype: npt.DTypeLike, order: _Order = "C") -> _Matrix[Any]: ... + +# +@overload +def identity(n: int, dtype: None = None) -> _Matrix[np.float64]: ... +@overload +def identity(n: int, dtype: _DTypeLike[_T]) -> _Matrix[_T]: ... +@overload +def identity(n: int, dtype: npt.DTypeLike | None = None) -> _Matrix[Any]: ... + +# +@overload +def eye( + n: int, + M: int | None = None, + k: int = 0, + dtype: type[np.float64] | None = ..., + order: _Order = "C", +) -> _Matrix[np.float64]: ... +@overload +def eye(n: int, M: int | None, k: int, dtype: _DTypeLike[_T], order: _Order = "C") -> _Matrix[_T]: ... +@overload +def eye(n: int, M: int | None = None, k: int = 0, *, dtype: _DTypeLike[_T], order: _Order = "C") -> _Matrix[_T]: ... +@overload +def eye(n: int, M: int | None = None, k: int = 0, dtype: npt.DTypeLike = ..., order: _Order = "C") -> _Matrix[Any]: ... + +# +@overload +def rand(arg: int | tuple[()] | tuple[int] | tuple[int, int], /) -> _Matrix[np.float64]: ... +@overload +def rand(arg: int, /, *args: int) -> _Matrix[np.float64]: ... + +# +@overload +def randn(arg: int | tuple[()] | tuple[int] | tuple[int, int], /) -> _Matrix[np.float64]: ... +@overload +def randn(arg: int, /, *args: int) -> _Matrix[np.float64]: ... + +# +@overload +def repmat(a: _Matrix[_T], m: int, n: int) -> _Matrix[_T]: ... +@overload +def repmat(a: _ArrayLike[_T], m: int, n: int) -> npt.NDArray[_T]: ... +@overload +def repmat(a: npt.ArrayLike, m: int, n: int) -> npt.NDArray[Any]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..b22ade5e28a8cbdfab954a1216af3bf97389d683 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.py @@ -0,0 +1,187 @@ +""" +A sub-package for efficiently dealing with polynomials. + +Within the documentation for this sub-package, a "finite power series," +i.e., a polynomial (also referred to simply as a "series") is represented +by a 1-D numpy array of the polynomial's coefficients, ordered from lowest +order term to highest. For example, array([1,2,3]) represents +``P_0 + 2*P_1 + 3*P_2``, where P_n is the n-th order basis polynomial +applicable to the specific module in question, e.g., `polynomial` (which +"wraps" the "standard" basis) or `chebyshev`. For optimal performance, +all operations on polynomials, including evaluation at an argument, are +implemented as operations on the coefficients. Additional (module-specific) +information can be found in the docstring for the module of interest. + +This package provides *convenience classes* for each of six different kinds +of polynomials: + +======================== ================ +**Name** **Provides** +======================== ================ +`~polynomial.Polynomial` Power series +`~chebyshev.Chebyshev` Chebyshev series +`~legendre.Legendre` Legendre series +`~laguerre.Laguerre` Laguerre series +`~hermite.Hermite` Hermite series +`~hermite_e.HermiteE` HermiteE series +======================== ================ + +These *convenience classes* provide a consistent interface for creating, +manipulating, and fitting data with polynomials of different bases. +The convenience classes are the preferred interface for the `~numpy.polynomial` +package, and are available from the ``numpy.polynomial`` namespace. +This eliminates the need to navigate to the corresponding submodules, e.g. +``np.polynomial.Polynomial`` or ``np.polynomial.Chebyshev`` instead of +``np.polynomial.polynomial.Polynomial`` or +``np.polynomial.chebyshev.Chebyshev``, respectively. +The classes provide a more consistent and concise interface than the +type-specific functions defined in the submodules for each type of polynomial. +For example, to fit a Chebyshev polynomial with degree ``1`` to data given +by arrays ``xdata`` and ``ydata``, the +`~chebyshev.Chebyshev.fit` class method:: + + >>> from numpy.polynomial import Chebyshev + >>> xdata = [1, 2, 3, 4] + >>> ydata = [1, 4, 9, 16] + >>> c = Chebyshev.fit(xdata, ydata, deg=1) + +is preferred over the `chebyshev.chebfit` function from the +``np.polynomial.chebyshev`` module:: + + >>> from numpy.polynomial.chebyshev import chebfit + >>> c = chebfit(xdata, ydata, deg=1) + +See :doc:`routines.polynomials.classes` for more details. + +Convenience Classes +=================== + +The following lists the various constants and methods common to all of +the classes representing the various kinds of polynomials. In the following, +the term ``Poly`` represents any one of the convenience classes (e.g. +`~polynomial.Polynomial`, `~chebyshev.Chebyshev`, `~hermite.Hermite`, etc.) +while the lowercase ``p`` represents an **instance** of a polynomial class. + +Constants +--------- + +- ``Poly.domain`` -- Default domain +- ``Poly.window`` -- Default window +- ``Poly.basis_name`` -- String used to represent the basis +- ``Poly.maxpower`` -- Maximum value ``n`` such that ``p**n`` is allowed +- ``Poly.nickname`` -- String used in printing + +Creation +-------- + +Methods for creating polynomial instances. + +- ``Poly.basis(degree)`` -- Basis polynomial of given degree +- ``Poly.identity()`` -- ``p`` where ``p(x) = x`` for all ``x`` +- ``Poly.fit(x, y, deg)`` -- ``p`` of degree ``deg`` with coefficients + determined by the least-squares fit to the data ``x``, ``y`` +- ``Poly.fromroots(roots)`` -- ``p`` with specified roots +- ``p.copy()`` -- Create a copy of ``p`` + +Conversion +---------- + +Methods for converting a polynomial instance of one kind to another. + +- ``p.cast(Poly)`` -- Convert ``p`` to instance of kind ``Poly`` +- ``p.convert(Poly)`` -- Convert ``p`` to instance of kind ``Poly`` or map + between ``domain`` and ``window`` + +Calculus +-------- +- ``p.deriv()`` -- Take the derivative of ``p`` +- ``p.integ()`` -- Integrate ``p`` + +Validation +---------- +- ``Poly.has_samecoef(p1, p2)`` -- Check if coefficients match +- ``Poly.has_samedomain(p1, p2)`` -- Check if domains match +- ``Poly.has_sametype(p1, p2)`` -- Check if types match +- ``Poly.has_samewindow(p1, p2)`` -- Check if windows match + +Misc +---- +- ``p.linspace()`` -- Return ``x, p(x)`` at equally-spaced points in ``domain`` +- ``p.mapparms()`` -- Return the parameters for the linear mapping between + ``domain`` and ``window``. +- ``p.roots()`` -- Return the roots of ``p``. +- ``p.trim()`` -- Remove trailing coefficients. +- ``p.cutdeg(degree)`` -- Truncate ``p`` to given degree +- ``p.truncate(size)`` -- Truncate ``p`` to given size + +""" +from .polynomial import Polynomial +from .chebyshev import Chebyshev +from .legendre import Legendre +from .hermite import Hermite +from .hermite_e import HermiteE +from .laguerre import Laguerre + +__all__ = [ + "set_default_printstyle", + "polynomial", "Polynomial", + "chebyshev", "Chebyshev", + "legendre", "Legendre", + "hermite", "Hermite", + "hermite_e", "HermiteE", + "laguerre", "Laguerre", +] + + +def set_default_printstyle(style): + """ + Set the default format for the string representation of polynomials. + + Values for ``style`` must be valid inputs to ``__format__``, i.e. 'ascii' + or 'unicode'. + + Parameters + ---------- + style : str + Format string for default printing style. Must be either 'ascii' or + 'unicode'. + + Notes + ----- + The default format depends on the platform: 'unicode' is used on + Unix-based systems and 'ascii' on Windows. This determination is based on + default font support for the unicode superscript and subscript ranges. + + Examples + -------- + >>> p = np.polynomial.Polynomial([1, 2, 3]) + >>> c = np.polynomial.Chebyshev([1, 2, 3]) + >>> np.polynomial.set_default_printstyle('unicode') + >>> print(p) + 1.0 + 2.0·x + 3.0·x² + >>> print(c) + 1.0 + 2.0·T₁(x) + 3.0·T₂(x) + >>> np.polynomial.set_default_printstyle('ascii') + >>> print(p) + 1.0 + 2.0 x + 3.0 x**2 + >>> print(c) + 1.0 + 2.0 T_1(x) + 3.0 T_2(x) + >>> # Formatting supersedes all class/package-level defaults + >>> print(f"{p:unicode}") + 1.0 + 2.0·x + 3.0·x² + """ + if style not in ('unicode', 'ascii'): + raise ValueError( + f"Unsupported format string '{style}'. Valid options are 'ascii' " + f"and 'unicode'" + ) + _use_unicode = True + if style == 'ascii': + _use_unicode = False + from ._polybase import ABCPolyBase + ABCPolyBase._use_unicode = _use_unicode + + +from numpy._pytesttester import PytestTester +test = PytestTester(__name__) +del PytestTester diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..c5dccfe16dee8889508150ecfe963297f24a5fd0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__init__.pyi @@ -0,0 +1,24 @@ +from typing import Final, Literal + +from .polynomial import Polynomial +from .chebyshev import Chebyshev +from .legendre import Legendre +from .hermite import Hermite +from .hermite_e import HermiteE +from .laguerre import Laguerre +from . import polynomial, chebyshev, legendre, hermite, hermite_e, laguerre + +__all__ = [ + "set_default_printstyle", + "polynomial", "Polynomial", + "chebyshev", "Chebyshev", + "legendre", "Legendre", + "hermite", "Hermite", + "hermite_e", "HermiteE", + "laguerre", "Laguerre", +] + +def set_default_printstyle(style: Literal["ascii", "unicode"]) -> None: ... + +from numpy._pytesttester import PytestTester as _PytestTester +test: Final[_PytestTester] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..5e5f3b353657cfc471e57dfa4598d44df1f7eebc Binary files /dev/null and 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0000000000000000000000000000000000000000..1c3d16c6efd7af25ef0cdfc32083802ecce2a92f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polybase.py @@ -0,0 +1,1197 @@ +""" +Abstract base class for the various polynomial Classes. + +The ABCPolyBase class provides the methods needed to implement the common API +for the various polynomial classes. It operates as a mixin, but uses the +abc module from the stdlib, hence it is only available for Python >= 2.6. + +""" +import os +import abc +import numbers +from typing import Callable + +import numpy as np +from . import polyutils as pu + +__all__ = ['ABCPolyBase'] + +class ABCPolyBase(abc.ABC): + """An abstract base class for immutable series classes. + + ABCPolyBase provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' along with the + methods listed below. + + Parameters + ---------- + coef : array_like + Series coefficients in order of increasing degree, i.e., + ``(1, 2, 3)`` gives ``1*P_0(x) + 2*P_1(x) + 3*P_2(x)``, where + ``P_i`` is the basis polynomials of degree ``i``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is the derived class domain. + window : (2,) array_like, optional + Window, see domain for its use. The default value is the + derived class window. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + Attributes + ---------- + coef : (N,) ndarray + Series coefficients in order of increasing degree. + domain : (2,) ndarray + Domain that is mapped to window. + window : (2,) ndarray + Window that domain is mapped to. + symbol : str + Symbol representing the independent variable. + + Class Attributes + ---------------- + maxpower : int + Maximum power allowed, i.e., the largest number ``n`` such that + ``p(x)**n`` is allowed. This is to limit runaway polynomial size. + domain : (2,) ndarray + Default domain of the class. + window : (2,) ndarray + Default window of the class. + + """ + + # Not hashable + __hash__ = None + + # Opt out of numpy ufuncs and Python ops with ndarray subclasses. + __array_ufunc__ = None + + # Limit runaway size. T_n^m has degree n*m + maxpower = 100 + + # Unicode character mappings for improved __str__ + _superscript_mapping = str.maketrans({ + "0": "⁰", + "1": "¹", + "2": "²", + "3": "³", + "4": "⁴", + "5": "⁵", + "6": "⁶", + "7": "⁷", + "8": "⁸", + "9": "⁹" + }) + _subscript_mapping = str.maketrans({ + "0": "₀", + "1": "₁", + "2": "₂", + "3": "₃", + "4": "₄", + "5": "₅", + "6": "₆", + "7": "₇", + "8": "₈", + "9": "₉" + }) + # Some fonts don't support full unicode character ranges necessary for + # the full set of superscripts and subscripts, including common/default + # fonts in Windows shells/terminals. Therefore, default to ascii-only + # printing on windows. + _use_unicode = not os.name == 'nt' + + @property + def symbol(self): + return self._symbol + + @property + @abc.abstractmethod + def domain(self): + pass + + @property + @abc.abstractmethod + def window(self): + pass + + @property + @abc.abstractmethod + def basis_name(self): + pass + + @staticmethod + @abc.abstractmethod + def _add(c1, c2): + pass + + @staticmethod + @abc.abstractmethod + def _sub(c1, c2): + pass + + @staticmethod + @abc.abstractmethod + def _mul(c1, c2): + pass + + @staticmethod + @abc.abstractmethod + def _div(c1, c2): + pass + + @staticmethod + @abc.abstractmethod + def _pow(c, pow, maxpower=None): + pass + + @staticmethod + @abc.abstractmethod + def _val(x, c): + pass + + @staticmethod + @abc.abstractmethod + def _int(c, m, k, lbnd, scl): + pass + + @staticmethod + @abc.abstractmethod + def _der(c, m, scl): + pass + + @staticmethod + @abc.abstractmethod + def _fit(x, y, deg, rcond, full): + pass + + @staticmethod + @abc.abstractmethod + def _line(off, scl): + pass + + @staticmethod + @abc.abstractmethod + def _roots(c): + pass + + @staticmethod + @abc.abstractmethod + def _fromroots(r): + pass + + def has_samecoef(self, other): + """Check if coefficients match. + + Parameters + ---------- + other : class instance + The other class must have the ``coef`` attribute. + + Returns + ------- + bool : boolean + True if the coefficients are the same, False otherwise. + + """ + if len(self.coef) != len(other.coef): + return False + elif not np.all(self.coef == other.coef): + return False + else: + return True + + def has_samedomain(self, other): + """Check if domains match. + + Parameters + ---------- + other : class instance + The other class must have the ``domain`` attribute. + + Returns + ------- + bool : boolean + True if the domains are the same, False otherwise. + + """ + return np.all(self.domain == other.domain) + + def has_samewindow(self, other): + """Check if windows match. + + Parameters + ---------- + other : class instance + The other class must have the ``window`` attribute. + + Returns + ------- + bool : boolean + True if the windows are the same, False otherwise. + + """ + return np.all(self.window == other.window) + + def has_sametype(self, other): + """Check if types match. + + Parameters + ---------- + other : object + Class instance. + + Returns + ------- + bool : boolean + True if other is same class as self + + """ + return isinstance(other, self.__class__) + + def _get_coefficients(self, other): + """Interpret other as polynomial coefficients. + + The `other` argument is checked to see if it is of the same + class as self with identical domain and window. If so, + return its coefficients, otherwise return `other`. + + Parameters + ---------- + other : anything + Object to be checked. + + Returns + ------- + coef + The coefficients of`other` if it is a compatible instance, + of ABCPolyBase, otherwise `other`. + + Raises + ------ + TypeError + When `other` is an incompatible instance of ABCPolyBase. + + """ + if isinstance(other, ABCPolyBase): + if not isinstance(other, self.__class__): + raise TypeError("Polynomial types differ") + elif not np.all(self.domain == other.domain): + raise TypeError("Domains differ") + elif not np.all(self.window == other.window): + raise TypeError("Windows differ") + elif self.symbol != other.symbol: + raise ValueError("Polynomial symbols differ") + return other.coef + return other + + def __init__(self, coef, domain=None, window=None, symbol='x'): + [coef] = pu.as_series([coef], trim=False) + self.coef = coef + + if domain is not None: + [domain] = pu.as_series([domain], trim=False) + if len(domain) != 2: + raise ValueError("Domain has wrong number of elements.") + self.domain = domain + + if window is not None: + [window] = pu.as_series([window], trim=False) + if len(window) != 2: + raise ValueError("Window has wrong number of elements.") + self.window = window + + # Validation for symbol + try: + if not symbol.isidentifier(): + raise ValueError( + "Symbol string must be a valid Python identifier" + ) + # If a user passes in something other than a string, the above + # results in an AttributeError. Catch this and raise a more + # informative exception + except AttributeError: + raise TypeError("Symbol must be a non-empty string") + + self._symbol = symbol + + def __repr__(self): + coef = repr(self.coef)[6:-1] + domain = repr(self.domain)[6:-1] + window = repr(self.window)[6:-1] + name = self.__class__.__name__ + return (f"{name}({coef}, domain={domain}, window={window}, " + f"symbol='{self.symbol}')") + + def __format__(self, fmt_str): + if fmt_str == '': + return self.__str__() + if fmt_str not in ('ascii', 'unicode'): + raise ValueError( + f"Unsupported format string '{fmt_str}' passed to " + f"{self.__class__}.__format__. Valid options are " + f"'ascii' and 'unicode'" + ) + if fmt_str == 'ascii': + return self._generate_string(self._str_term_ascii) + return self._generate_string(self._str_term_unicode) + + def __str__(self): + if self._use_unicode: + return self._generate_string(self._str_term_unicode) + return self._generate_string(self._str_term_ascii) + + def _generate_string(self, term_method): + """ + Generate the full string representation of the polynomial, using + ``term_method`` to generate each polynomial term. + """ + # Get configuration for line breaks + linewidth = np.get_printoptions().get('linewidth', 75) + if linewidth < 1: + linewidth = 1 + out = pu.format_float(self.coef[0]) + + off, scale = self.mapparms() + + scaled_symbol, needs_parens = self._format_term(pu.format_float, + off, scale) + if needs_parens: + scaled_symbol = '(' + scaled_symbol + ')' + + for i, coef in enumerate(self.coef[1:]): + out += " " + power = str(i + 1) + # Polynomial coefficient + # The coefficient array can be an object array with elements that + # will raise a TypeError with >= 0 (e.g. strings or Python + # complex). In this case, represent the coefficient as-is. + try: + if coef >= 0: + next_term = "+ " + pu.format_float(coef, parens=True) + else: + next_term = "- " + pu.format_float(-coef, parens=True) + except TypeError: + next_term = f"+ {coef}" + # Polynomial term + next_term += term_method(power, scaled_symbol) + # Length of the current line with next term added + line_len = len(out.split('\n')[-1]) + len(next_term) + # If not the last term in the polynomial, it will be two + # characters longer due to the +/- with the next term + if i < len(self.coef[1:]) - 1: + line_len += 2 + # Handle linebreaking + if line_len >= linewidth: + next_term = next_term.replace(" ", "\n", 1) + out += next_term + return out + + @classmethod + def _str_term_unicode(cls, i, arg_str): + """ + String representation of single polynomial term using unicode + characters for superscripts and subscripts. + """ + if cls.basis_name is None: + raise NotImplementedError( + "Subclasses must define either a basis_name, or override " + "_str_term_unicode(cls, i, arg_str)" + ) + return (f"·{cls.basis_name}{i.translate(cls._subscript_mapping)}" + f"({arg_str})") + + @classmethod + def _str_term_ascii(cls, i, arg_str): + """ + String representation of a single polynomial term using ** and _ to + represent superscripts and subscripts, respectively. + """ + if cls.basis_name is None: + raise NotImplementedError( + "Subclasses must define either a basis_name, or override " + "_str_term_ascii(cls, i, arg_str)" + ) + return f" {cls.basis_name}_{i}({arg_str})" + + @classmethod + def _repr_latex_term(cls, i, arg_str, needs_parens): + if cls.basis_name is None: + raise NotImplementedError( + "Subclasses must define either a basis name, or override " + "_repr_latex_term(i, arg_str, needs_parens)") + # since we always add parens, we don't care if the expression needs them + return f"{{{cls.basis_name}}}_{{{i}}}({arg_str})" + + @staticmethod + def _repr_latex_scalar(x, parens=False): + # TODO: we're stuck with disabling math formatting until we handle + # exponents in this function + return r'\text{{{}}}'.format(pu.format_float(x, parens=parens)) + + def _format_term(self, scalar_format: Callable, off: float, scale: float): + """ Format a single term in the expansion """ + if off == 0 and scale == 1: + term = self.symbol + needs_parens = False + elif scale == 1: + term = f"{scalar_format(off)} + {self.symbol}" + needs_parens = True + elif off == 0: + term = f"{scalar_format(scale)}{self.symbol}" + needs_parens = True + else: + term = ( + f"{scalar_format(off)} + " + f"{scalar_format(scale)}{self.symbol}" + ) + needs_parens = True + return term, needs_parens + + def _repr_latex_(self): + # get the scaled argument string to the basis functions + off, scale = self.mapparms() + term, needs_parens = self._format_term(self._repr_latex_scalar, + off, scale) + + mute = r"\color{{LightGray}}{{{}}}".format + + parts = [] + for i, c in enumerate(self.coef): + # prevent duplication of + and - signs + if i == 0: + coef_str = f"{self._repr_latex_scalar(c)}" + elif not isinstance(c, numbers.Real): + coef_str = f" + ({self._repr_latex_scalar(c)})" + elif c >= 0: + coef_str = f" + {self._repr_latex_scalar(c, parens=True)}" + else: + coef_str = f" - {self._repr_latex_scalar(-c, parens=True)}" + + # produce the string for the term + term_str = self._repr_latex_term(i, term, needs_parens) + if term_str == '1': + part = coef_str + else: + part = rf"{coef_str}\,{term_str}" + + if c == 0: + part = mute(part) + + parts.append(part) + + if parts: + body = ''.join(parts) + else: + # in case somehow there are no coefficients at all + body = '0' + + return rf"${self.symbol} \mapsto {body}$" + + + + # Pickle and copy + + def __getstate__(self): + ret = self.__dict__.copy() + ret['coef'] = self.coef.copy() + ret['domain'] = self.domain.copy() + ret['window'] = self.window.copy() + ret['symbol'] = self.symbol + return ret + + def __setstate__(self, dict): + self.__dict__ = dict + + # Call + + def __call__(self, arg): + arg = pu.mapdomain(arg, self.domain, self.window) + return self._val(arg, self.coef) + + def __iter__(self): + return iter(self.coef) + + def __len__(self): + return len(self.coef) + + # Numeric properties. + + def __neg__(self): + return self.__class__( + -self.coef, self.domain, self.window, self.symbol + ) + + def __pos__(self): + return self + + def __add__(self, other): + othercoef = self._get_coefficients(other) + try: + coef = self._add(self.coef, othercoef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __sub__(self, other): + othercoef = self._get_coefficients(other) + try: + coef = self._sub(self.coef, othercoef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __mul__(self, other): + othercoef = self._get_coefficients(other) + try: + coef = self._mul(self.coef, othercoef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __truediv__(self, other): + # there is no true divide if the rhs is not a Number, although it + # could return the first n elements of an infinite series. + # It is hard to see where n would come from, though. + if not isinstance(other, numbers.Number) or isinstance(other, bool): + raise TypeError( + f"unsupported types for true division: " + f"'{type(self)}', '{type(other)}'" + ) + return self.__floordiv__(other) + + def __floordiv__(self, other): + res = self.__divmod__(other) + if res is NotImplemented: + return res + return res[0] + + def __mod__(self, other): + res = self.__divmod__(other) + if res is NotImplemented: + return res + return res[1] + + def __divmod__(self, other): + othercoef = self._get_coefficients(other) + try: + quo, rem = self._div(self.coef, othercoef) + except ZeroDivisionError: + raise + except Exception: + return NotImplemented + quo = self.__class__(quo, self.domain, self.window, self.symbol) + rem = self.__class__(rem, self.domain, self.window, self.symbol) + return quo, rem + + def __pow__(self, other): + coef = self._pow(self.coef, other, maxpower=self.maxpower) + res = self.__class__(coef, self.domain, self.window, self.symbol) + return res + + def __radd__(self, other): + try: + coef = self._add(other, self.coef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __rsub__(self, other): + try: + coef = self._sub(other, self.coef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __rmul__(self, other): + try: + coef = self._mul(other, self.coef) + except Exception: + return NotImplemented + return self.__class__(coef, self.domain, self.window, self.symbol) + + def __rdiv__(self, other): + # set to __floordiv__ /. + return self.__rfloordiv__(other) + + def __rtruediv__(self, other): + # An instance of ABCPolyBase is not considered a + # Number. + return NotImplemented + + def __rfloordiv__(self, other): + res = self.__rdivmod__(other) + if res is NotImplemented: + return res + return res[0] + + def __rmod__(self, other): + res = self.__rdivmod__(other) + if res is NotImplemented: + return res + return res[1] + + def __rdivmod__(self, other): + try: + quo, rem = self._div(other, self.coef) + except ZeroDivisionError: + raise + except Exception: + return NotImplemented + quo = self.__class__(quo, self.domain, self.window, self.symbol) + rem = self.__class__(rem, self.domain, self.window, self.symbol) + return quo, rem + + def __eq__(self, other): + res = (isinstance(other, self.__class__) and + np.all(self.domain == other.domain) and + np.all(self.window == other.window) and + (self.coef.shape == other.coef.shape) and + np.all(self.coef == other.coef) and + (self.symbol == other.symbol)) + return res + + def __ne__(self, other): + return not self.__eq__(other) + + # + # Extra methods. + # + + def copy(self): + """Return a copy. + + Returns + ------- + new_series : series + Copy of self. + + """ + return self.__class__(self.coef, self.domain, self.window, self.symbol) + + def degree(self): + """The degree of the series. + + Returns + ------- + degree : int + Degree of the series, one less than the number of coefficients. + + Examples + -------- + + Create a polynomial object for ``1 + 7*x + 4*x**2``: + + >>> poly = np.polynomial.Polynomial([1, 7, 4]) + >>> print(poly) + 1.0 + 7.0·x + 4.0·x² + >>> poly.degree() + 2 + + Note that this method does not check for non-zero coefficients. + You must trim the polynomial to remove any trailing zeroes: + + >>> poly = np.polynomial.Polynomial([1, 7, 0]) + >>> print(poly) + 1.0 + 7.0·x + 0.0·x² + >>> poly.degree() + 2 + >>> poly.trim().degree() + 1 + + """ + return len(self) - 1 + + def cutdeg(self, deg): + """Truncate series to the given degree. + + Reduce the degree of the series to `deg` by discarding the + high order terms. If `deg` is greater than the current degree a + copy of the current series is returned. This can be useful in least + squares where the coefficients of the high degree terms may be very + small. + + Parameters + ---------- + deg : non-negative int + The series is reduced to degree `deg` by discarding the high + order terms. The value of `deg` must be a non-negative integer. + + Returns + ------- + new_series : series + New instance of series with reduced degree. + + """ + return self.truncate(deg + 1) + + def trim(self, tol=0): + """Remove trailing coefficients + + Remove trailing coefficients until a coefficient is reached whose + absolute value greater than `tol` or the beginning of the series is + reached. If all the coefficients would be removed the series is set + to ``[0]``. A new series instance is returned with the new + coefficients. The current instance remains unchanged. + + Parameters + ---------- + tol : non-negative number. + All trailing coefficients less than `tol` will be removed. + + Returns + ------- + new_series : series + New instance of series with trimmed coefficients. + + """ + coef = pu.trimcoef(self.coef, tol) + return self.__class__(coef, self.domain, self.window, self.symbol) + + def truncate(self, size): + """Truncate series to length `size`. + + Reduce the series to length `size` by discarding the high + degree terms. The value of `size` must be a positive integer. This + can be useful in least squares where the coefficients of the + high degree terms may be very small. + + Parameters + ---------- + size : positive int + The series is reduced to length `size` by discarding the high + degree terms. The value of `size` must be a positive integer. + + Returns + ------- + new_series : series + New instance of series with truncated coefficients. + + """ + isize = int(size) + if isize != size or isize < 1: + raise ValueError("size must be a positive integer") + if isize >= len(self.coef): + coef = self.coef + else: + coef = self.coef[:isize] + return self.__class__(coef, self.domain, self.window, self.symbol) + + def convert(self, domain=None, kind=None, window=None): + """Convert series to a different kind and/or domain and/or window. + + Parameters + ---------- + domain : array_like, optional + The domain of the converted series. If the value is None, + the default domain of `kind` is used. + kind : class, optional + The polynomial series type class to which the current instance + should be converted. If kind is None, then the class of the + current instance is used. + window : array_like, optional + The window of the converted series. If the value is None, + the default window of `kind` is used. + + Returns + ------- + new_series : series + The returned class can be of different type than the current + instance and/or have a different domain and/or different + window. + + Notes + ----- + Conversion between domains and class types can result in + numerically ill defined series. + + """ + if kind is None: + kind = self.__class__ + if domain is None: + domain = kind.domain + if window is None: + window = kind.window + return self(kind.identity(domain, window=window, symbol=self.symbol)) + + def mapparms(self): + """Return the mapping parameters. + + The returned values define a linear map ``off + scl*x`` that is + applied to the input arguments before the series is evaluated. The + map depends on the ``domain`` and ``window``; if the current + ``domain`` is equal to the ``window`` the resulting map is the + identity. If the coefficients of the series instance are to be + used by themselves outside this class, then the linear function + must be substituted for the ``x`` in the standard representation of + the base polynomials. + + Returns + ------- + off, scl : float or complex + The mapping function is defined by ``off + scl*x``. + + Notes + ----- + If the current domain is the interval ``[l1, r1]`` and the window + is ``[l2, r2]``, then the linear mapping function ``L`` is + defined by the equations:: + + L(l1) = l2 + L(r1) = r2 + + """ + return pu.mapparms(self.domain, self.window) + + def integ(self, m=1, k=[], lbnd=None): + """Integrate. + + Return a series instance that is the definite integral of the + current series. + + Parameters + ---------- + m : non-negative int + The number of integrations to perform. + k : array_like + Integration constants. The first constant is applied to the + first integration, the second to the second, and so on. The + list of values must less than or equal to `m` in length and any + missing values are set to zero. + lbnd : Scalar + The lower bound of the definite integral. + + Returns + ------- + new_series : series + A new series representing the integral. The domain is the same + as the domain of the integrated series. + + """ + off, scl = self.mapparms() + if lbnd is None: + lbnd = 0 + else: + lbnd = off + scl*lbnd + coef = self._int(self.coef, m, k, lbnd, 1./scl) + return self.__class__(coef, self.domain, self.window, self.symbol) + + def deriv(self, m=1): + """Differentiate. + + Return a series instance of that is the derivative of the current + series. + + Parameters + ---------- + m : non-negative int + Find the derivative of order `m`. + + Returns + ------- + new_series : series + A new series representing the derivative. The domain is the same + as the domain of the differentiated series. + + """ + off, scl = self.mapparms() + coef = self._der(self.coef, m, scl) + return self.__class__(coef, self.domain, self.window, self.symbol) + + def roots(self): + """Return the roots of the series polynomial. + + Compute the roots for the series. Note that the accuracy of the + roots decreases the further outside the `domain` they lie. + + Returns + ------- + roots : ndarray + Array containing the roots of the series. + + """ + roots = self._roots(self.coef) + return pu.mapdomain(roots, self.window, self.domain) + + def linspace(self, n=100, domain=None): + """Return x, y values at equally spaced points in domain. + + Returns the x, y values at `n` linearly spaced points across the + domain. Here y is the value of the polynomial at the points x. By + default the domain is the same as that of the series instance. + This method is intended mostly as a plotting aid. + + Parameters + ---------- + n : int, optional + Number of point pairs to return. The default value is 100. + domain : {None, array_like}, optional + If not None, the specified domain is used instead of that of + the calling instance. It should be of the form ``[beg,end]``. + The default is None which case the class domain is used. + + Returns + ------- + x, y : ndarray + x is equal to linspace(self.domain[0], self.domain[1], n) and + y is the series evaluated at element of x. + + """ + if domain is None: + domain = self.domain + x = np.linspace(domain[0], domain[1], n) + y = self(x) + return x, y + + @classmethod + def fit(cls, x, y, deg, domain=None, rcond=None, full=False, w=None, + window=None, symbol='x'): + """Least squares fit to data. + + Return a series instance that is the least squares fit to the data + `y` sampled at `x`. The domain of the returned instance can be + specified and this will often result in a superior fit with less + chance of ill conditioning. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) + y-coordinates of the M sample points ``(x[i], y[i])``. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + domain : {None, [beg, end], []}, optional + Domain to use for the returned series. If ``None``, + then a minimal domain that covers the points `x` is chosen. If + ``[]`` the class domain is used. The default value was the + class domain in NumPy 1.4 and ``None`` in later versions. + The ``[]`` option was added in numpy 1.5.0. + rcond : float, optional + Relative condition number of the fit. Singular values smaller + than this relative to the largest singular value will be + ignored. The default value is ``len(x)*eps``, where eps is the + relative precision of the float type, about 2e-16 in most + cases. + full : bool, optional + Switch determining nature of return value. When it is False + (the default) just the coefficients are returned, when True + diagnostic information from the singular value decomposition is + also returned. + w : array_like, shape (M,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have + the same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + window : {[beg, end]}, optional + Window to use for the returned series. The default + value is the default class domain + symbol : str, optional + Symbol representing the independent variable. Default is 'x'. + + Returns + ------- + new_series : series + A series that represents the least squares fit to the data and + has the domain and window specified in the call. If the + coefficients for the unscaled and unshifted basis polynomials are + of interest, do ``new_series.convert().coef``. + + [resid, rank, sv, rcond] : list + These values are only returned if ``full == True`` + + - resid -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - sv -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `linalg.lstsq`. + + """ + if domain is None: + domain = pu.getdomain(x) + if domain[0] == domain[1]: + domain[0] -= 1 + domain[1] += 1 + elif type(domain) is list and len(domain) == 0: + domain = cls.domain + + if window is None: + window = cls.window + + xnew = pu.mapdomain(x, domain, window) + res = cls._fit(xnew, y, deg, w=w, rcond=rcond, full=full) + if full: + [coef, status] = res + return ( + cls(coef, domain=domain, window=window, symbol=symbol), status + ) + else: + coef = res + return cls(coef, domain=domain, window=window, symbol=symbol) + + @classmethod + def fromroots(cls, roots, domain=[], window=None, symbol='x'): + """Return series instance that has the specified roots. + + Returns a series representing the product + ``(x - r[0])*(x - r[1])*...*(x - r[n-1])``, where ``r`` is a + list of roots. + + Parameters + ---------- + roots : array_like + List of roots. + domain : {[], None, array_like}, optional + Domain for the resulting series. If None the domain is the + interval from the smallest root to the largest. If [] the + domain is the class domain. The default is []. + window : {None, array_like}, optional + Window for the returned series. If None the class window is + used. The default is None. + symbol : str, optional + Symbol representing the independent variable. Default is 'x'. + + Returns + ------- + new_series : series + Series with the specified roots. + + """ + [roots] = pu.as_series([roots], trim=False) + if domain is None: + domain = pu.getdomain(roots) + elif type(domain) is list and len(domain) == 0: + domain = cls.domain + + if window is None: + window = cls.window + + deg = len(roots) + off, scl = pu.mapparms(domain, window) + rnew = off + scl*roots + coef = cls._fromroots(rnew) / scl**deg + return cls(coef, domain=domain, window=window, symbol=symbol) + + @classmethod + def identity(cls, domain=None, window=None, symbol='x'): + """Identity function. + + If ``p`` is the returned series, then ``p(x) == x`` for all + values of x. + + Parameters + ---------- + domain : {None, array_like}, optional + If given, the array must be of the form ``[beg, end]``, where + ``beg`` and ``end`` are the endpoints of the domain. If None is + given then the class domain is used. The default is None. + window : {None, array_like}, optional + If given, the resulting array must be if the form + ``[beg, end]``, where ``beg`` and ``end`` are the endpoints of + the window. If None is given then the class window is used. The + default is None. + symbol : str, optional + Symbol representing the independent variable. Default is 'x'. + + Returns + ------- + new_series : series + Series of representing the identity. + + """ + if domain is None: + domain = cls.domain + if window is None: + window = cls.window + off, scl = pu.mapparms(window, domain) + coef = cls._line(off, scl) + return cls(coef, domain, window, symbol) + + @classmethod + def basis(cls, deg, domain=None, window=None, symbol='x'): + """Series basis polynomial of degree `deg`. + + Returns the series representing the basis polynomial of degree `deg`. + + Parameters + ---------- + deg : int + Degree of the basis polynomial for the series. Must be >= 0. + domain : {None, array_like}, optional + If given, the array must be of the form ``[beg, end]``, where + ``beg`` and ``end`` are the endpoints of the domain. If None is + given then the class domain is used. The default is None. + window : {None, array_like}, optional + If given, the resulting array must be if the form + ``[beg, end]``, where ``beg`` and ``end`` are the endpoints of + the window. If None is given then the class window is used. The + default is None. + symbol : str, optional + Symbol representing the independent variable. Default is 'x'. + + Returns + ------- + new_series : series + A series with the coefficient of the `deg` term set to one and + all others zero. + + """ + if domain is None: + domain = cls.domain + if window is None: + window = cls.window + ideg = int(deg) + + if ideg != deg or ideg < 0: + raise ValueError("deg must be non-negative integer") + return cls([0]*ideg + [1], domain, window, symbol) + + @classmethod + def cast(cls, series, domain=None, window=None): + """Convert series to series of this class. + + The `series` is expected to be an instance of some polynomial + series of one of the types supported by by the numpy.polynomial + module, but could be some other class that supports the convert + method. + + Parameters + ---------- + series : series + The series instance to be converted. + domain : {None, array_like}, optional + If given, the array must be of the form ``[beg, end]``, where + ``beg`` and ``end`` are the endpoints of the domain. If None is + given then the class domain is used. The default is None. + window : {None, array_like}, optional + If given, the resulting array must be if the form + ``[beg, end]``, where ``beg`` and ``end`` are the endpoints of + the window. If None is given then the class window is used. The + default is None. + + Returns + ------- + new_series : series + A series of the same kind as the calling class and equal to + `series` when evaluated. + + See Also + -------- + convert : similar instance method + + """ + if domain is None: + domain = cls.domain + if window is None: + window = cls.window + return series.convert(domain, cls, window) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polybase.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polybase.pyi new file mode 100644 index 0000000000000000000000000000000000000000..ca7ca628d5140c7584ef42a92fb633625ca8a657 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polybase.pyi @@ -0,0 +1,287 @@ +import abc +import decimal +import numbers +from collections.abc import Iterator, Mapping, Sequence +from typing import ( + Any, + ClassVar, + Final, + Generic, + Literal, + SupportsIndex, + TypeAlias, + TypeGuard, + overload, +) + +import numpy as np +import numpy.typing as npt +from numpy._typing import ( + _FloatLike_co, + _NumberLike_co, + + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, +) + +from ._polytypes import ( + _AnyInt, + _CoefLike_co, + + _Array2, + _Tuple2, + + _Series, + _CoefSeries, + + _SeriesLikeInt_co, + _SeriesLikeCoef_co, + + _ArrayLikeCoefObject_co, + _ArrayLikeCoef_co, +) + +from typing_extensions import LiteralString, TypeVar + + +__all__: Final[Sequence[str]] = ("ABCPolyBase",) + + +_NameCo = TypeVar("_NameCo", bound=LiteralString | None, covariant=True, default=LiteralString | None) +_Self = TypeVar("_Self") +_Other = TypeVar("_Other", bound=ABCPolyBase) + +_AnyOther: TypeAlias = ABCPolyBase | _CoefLike_co | _SeriesLikeCoef_co +_Hundred: TypeAlias = Literal[100] + + +class ABCPolyBase(Generic[_NameCo], metaclass=abc.ABCMeta): + __hash__: ClassVar[None] # type: ignore[assignment] + __array_ufunc__: ClassVar[None] + + maxpower: ClassVar[_Hundred] + _superscript_mapping: ClassVar[Mapping[int, str]] + _subscript_mapping: ClassVar[Mapping[int, str]] + _use_unicode: ClassVar[bool] + + basis_name: _NameCo + coef: _CoefSeries + domain: _Array2[np.inexact[Any] | np.object_] + window: _Array2[np.inexact[Any] | np.object_] + + _symbol: LiteralString + @property + def symbol(self, /) -> LiteralString: ... + + def __init__( + self, + /, + coef: _SeriesLikeCoef_co, + domain: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> None: ... + + @overload + def __call__(self, /, arg: _Other) -> _Other: ... + # TODO: Once `_ShapeType@ndarray` is covariant and bounded (see #26081), + # additionally include 0-d arrays as input types with scalar return type. + @overload + def __call__( + self, + /, + arg: _FloatLike_co | decimal.Decimal | numbers.Real | np.object_, + ) -> np.float64 | np.complex128: ... + @overload + def __call__( + self, + /, + arg: _NumberLike_co | numbers.Complex, + ) -> np.complex128: ... + @overload + def __call__(self, /, arg: _ArrayLikeFloat_co) -> ( + npt.NDArray[np.float64] + | npt.NDArray[np.complex128] + | npt.NDArray[np.object_] + ): ... + @overload + def __call__( + self, + /, + arg: _ArrayLikeComplex_co, + ) -> npt.NDArray[np.complex128] | npt.NDArray[np.object_]: ... + @overload + def __call__( + self, + /, + arg: _ArrayLikeCoefObject_co, + ) -> npt.NDArray[np.object_]: ... + + def __format__(self, fmt_str: str, /) -> str: ... + def __eq__(self, x: object, /) -> bool: ... + def __ne__(self, x: object, /) -> bool: ... + def __neg__(self: _Self, /) -> _Self: ... + def __pos__(self: _Self, /) -> _Self: ... + def __add__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __sub__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __mul__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __truediv__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __floordiv__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __mod__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __divmod__(self: _Self, x: _AnyOther, /) -> _Tuple2[_Self]: ... + def __pow__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __radd__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rsub__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rmul__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rtruediv__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rfloordiv__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rmod__(self: _Self, x: _AnyOther, /) -> _Self: ... + def __rdivmod__(self: _Self, x: _AnyOther, /) -> _Tuple2[_Self]: ... + def __len__(self, /) -> int: ... + def __iter__(self, /) -> Iterator[np.inexact[Any] | object]: ... + def __getstate__(self, /) -> dict[str, Any]: ... + def __setstate__(self, dict: dict[str, Any], /) -> None: ... + + def has_samecoef(self, /, other: ABCPolyBase) -> bool: ... + def has_samedomain(self, /, other: ABCPolyBase) -> bool: ... + def has_samewindow(self, /, other: ABCPolyBase) -> bool: ... + @overload + def has_sametype(self: _Self, /, other: ABCPolyBase) -> TypeGuard[_Self]: ... + @overload + def has_sametype(self, /, other: object) -> Literal[False]: ... + + def copy(self: _Self, /) -> _Self: ... + def degree(self, /) -> int: ... + def cutdeg(self: _Self, /) -> _Self: ... + def trim(self: _Self, /, tol: _FloatLike_co = ...) -> _Self: ... + def truncate(self: _Self, /, size: _AnyInt) -> _Self: ... + + @overload + def convert( + self, + domain: None | _SeriesLikeCoef_co, + kind: type[_Other], + /, + window: None | _SeriesLikeCoef_co = ..., + ) -> _Other: ... + @overload + def convert( + self, + /, + domain: None | _SeriesLikeCoef_co = ..., + *, + kind: type[_Other], + window: None | _SeriesLikeCoef_co = ..., + ) -> _Other: ... + @overload + def convert( + self: _Self, + /, + domain: None | _SeriesLikeCoef_co = ..., + kind: None | type[_Self] = ..., + window: None | _SeriesLikeCoef_co = ..., + ) -> _Self: ... + + def mapparms(self, /) -> _Tuple2[Any]: ... + + def integ( + self: _Self, /, + m: SupportsIndex = ..., + k: _CoefLike_co | _SeriesLikeCoef_co = ..., + lbnd: None | _CoefLike_co = ..., + ) -> _Self: ... + + def deriv(self: _Self, /, m: SupportsIndex = ...) -> _Self: ... + + def roots(self, /) -> _CoefSeries: ... + + def linspace( + self, /, + n: SupportsIndex = ..., + domain: None | _SeriesLikeCoef_co = ..., + ) -> _Tuple2[_Series[np.float64 | np.complex128]]: ... + + @overload + @classmethod + def fit( + cls: type[_Self], /, + x: _SeriesLikeCoef_co, + y: _SeriesLikeCoef_co, + deg: int | _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co = ..., + rcond: _FloatLike_co = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> _Self: ... + @overload + @classmethod + def fit( + cls: type[_Self], /, + x: _SeriesLikeCoef_co, + y: _SeriesLikeCoef_co, + deg: int | _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co = ..., + rcond: _FloatLike_co = ..., + *, + full: Literal[True], + w: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> tuple[_Self, Sequence[np.inexact[Any] | np.int32]]: ... + @overload + @classmethod + def fit( + cls: type[_Self], + x: _SeriesLikeCoef_co, + y: _SeriesLikeCoef_co, + deg: int | _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co, + rcond: _FloatLike_co, + full: Literal[True], /, + w: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> tuple[_Self, Sequence[np.inexact[Any] | np.int32]]: ... + + @classmethod + def fromroots( + cls: type[_Self], /, + roots: _ArrayLikeCoef_co, + domain: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> _Self: ... + + @classmethod + def identity( + cls: type[_Self], /, + domain: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> _Self: ... + + @classmethod + def basis( + cls: type[_Self], /, + deg: _AnyInt, + domain: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + symbol: str = ..., + ) -> _Self: ... + + @classmethod + def cast( + cls: type[_Self], /, + series: ABCPolyBase, + domain: None | _SeriesLikeCoef_co = ..., + window: None | _SeriesLikeCoef_co = ..., + ) -> _Self: ... + + @classmethod + def _str_term_unicode(cls, /, i: str, arg_str: str) -> str: ... + @staticmethod + def _str_term_ascii(i: str, arg_str: str) -> str: ... + @staticmethod + def _repr_latex_term(i: str, arg_str: str, needs_parens: bool) -> str: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polytypes.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polytypes.pyi new file mode 100644 index 0000000000000000000000000000000000000000..b0794eb61831d396c339d54f34dc43c1554657b9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/_polytypes.pyi @@ -0,0 +1,888 @@ +from collections.abc import Callable, Sequence +from typing import ( + Any, + Literal, + NoReturn, + Protocol, + SupportsIndex, + SupportsInt, + TypeAlias, + overload, + type_check_only, +) + +import numpy as np +import numpy.typing as npt +from numpy._typing import ( + # array-likes + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, + _ArrayLikeNumber_co, + _ArrayLikeObject_co, + _NestedSequence, + _SupportsArray, + + # scalar-likes + _IntLike_co, + _FloatLike_co, + _ComplexLike_co, + _NumberLike_co, +) + +from typing_extensions import LiteralString, TypeVar + + +_T = TypeVar("_T") +_T_contra = TypeVar("_T_contra", contravariant=True) +_Self = TypeVar("_Self") +_SCT = TypeVar("_SCT", bound=np.number[Any] | np.bool | np.object_) + +# compatible with e.g. int, float, complex, Decimal, Fraction, and ABCPolyBase +@type_check_only +class _SupportsCoefOps(Protocol[_T_contra]): + def __eq__(self, x: object, /) -> bool: ... + def __ne__(self, x: object, /) -> bool: ... + + def __neg__(self: _Self, /) -> _Self: ... + def __pos__(self: _Self, /) -> _Self: ... + + def __add__(self: _Self, x: _T_contra, /) -> _Self: ... + def __sub__(self: _Self, x: _T_contra, /) -> _Self: ... + def __mul__(self: _Self, x: _T_contra, /) -> _Self: ... + def __pow__(self: _Self, x: _T_contra, /) -> _Self | float: ... + + def __radd__(self: _Self, x: _T_contra, /) -> _Self: ... + def __rsub__(self: _Self, x: _T_contra, /) -> _Self: ... + def __rmul__(self: _Self, x: _T_contra, /) -> _Self: ... + +_Series: TypeAlias = np.ndarray[tuple[int], np.dtype[_SCT]] + +_FloatSeries: TypeAlias = _Series[np.floating[Any]] +_ComplexSeries: TypeAlias = _Series[np.complexfloating[Any, Any]] +_ObjectSeries: TypeAlias = _Series[np.object_] +_CoefSeries: TypeAlias = _Series[np.inexact[Any] | np.object_] + +_FloatArray: TypeAlias = npt.NDArray[np.floating[Any]] +_ComplexArray: TypeAlias = npt.NDArray[np.complexfloating[Any, Any]] +_ObjectArray: TypeAlias = npt.NDArray[np.object_] +_CoefArray: TypeAlias = npt.NDArray[np.inexact[Any] | np.object_] + +_Tuple2: TypeAlias = tuple[_T, _T] +_Array1: TypeAlias = np.ndarray[tuple[Literal[1]], np.dtype[_SCT]] +_Array2: TypeAlias = np.ndarray[tuple[Literal[2]], np.dtype[_SCT]] + +_AnyInt: TypeAlias = SupportsInt | SupportsIndex + +_CoefObjectLike_co: TypeAlias = np.object_ | _SupportsCoefOps[Any] +_CoefLike_co: TypeAlias = _NumberLike_co | _CoefObjectLike_co + +# The term "series" is used here to refer to 1-d arrays of numeric scalars. +_SeriesLikeBool_co: TypeAlias = ( + _SupportsArray[np.dtype[np.bool]] + | Sequence[bool | np.bool] +) +_SeriesLikeInt_co: TypeAlias = ( + _SupportsArray[np.dtype[np.integer[Any] | np.bool]] + | Sequence[_IntLike_co] +) +_SeriesLikeFloat_co: TypeAlias = ( + _SupportsArray[np.dtype[np.floating[Any] | np.integer[Any] | np.bool]] + | Sequence[_FloatLike_co] +) +_SeriesLikeComplex_co: TypeAlias = ( + _SupportsArray[np.dtype[np.inexact[Any] | np.integer[Any] | np.bool]] + | Sequence[_ComplexLike_co] +) +_SeriesLikeObject_co: TypeAlias = ( + _SupportsArray[np.dtype[np.object_]] + | Sequence[_CoefObjectLike_co] +) +_SeriesLikeCoef_co: TypeAlias = ( + _SupportsArray[np.dtype[np.number[Any] | np.bool | np.object_]] + | Sequence[_CoefLike_co] +) + +_ArrayLikeCoefObject_co: TypeAlias = ( + _CoefObjectLike_co + | _SeriesLikeObject_co + | _NestedSequence[_SeriesLikeObject_co] +) +_ArrayLikeCoef_co: TypeAlias = ( + npt.NDArray[np.number[Any] | np.bool | np.object_] + | _ArrayLikeNumber_co + | _ArrayLikeCoefObject_co +) + +_Name_co = TypeVar("_Name_co", bound=LiteralString, covariant=True, default=LiteralString) + +@type_check_only +class _Named(Protocol[_Name_co]): + @property + def __name__(self, /) -> _Name_co: ... + +_Line: TypeAlias = np.ndarray[tuple[Literal[1, 2]], np.dtype[_SCT]] + +@type_check_only +class _FuncLine(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__(self, /, off: _SCT, scl: _SCT) -> _Line[_SCT]: ... + @overload + def __call__(self, /, off: int, scl: int) -> _Line[np.int_] : ... + @overload + def __call__(self, /, off: float, scl: float) -> _Line[np.float64]: ... + @overload + def __call__( + self, + /, + off: complex, + scl: complex, + ) -> _Line[np.complex128]: ... + @overload + def __call__( + self, + /, + off: _SupportsCoefOps[Any], + scl: _SupportsCoefOps[Any], + ) -> _Line[np.object_]: ... + +@type_check_only +class _FuncFromRoots(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__(self, /, roots: _SeriesLikeFloat_co) -> _FloatSeries: ... + @overload + def __call__(self, /, roots: _SeriesLikeComplex_co) -> _ComplexSeries: ... + @overload + def __call__(self, /, roots: _SeriesLikeCoef_co) -> _ObjectSeries: ... + +@type_check_only +class _FuncBinOp(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c1: _SeriesLikeBool_co, + c2: _SeriesLikeBool_co, + ) -> NoReturn: ... + @overload + def __call__( + self, + /, + c1: _SeriesLikeFloat_co, + c2: _SeriesLikeFloat_co, + ) -> _FloatSeries: ... + @overload + def __call__( + self, + /, + c1: _SeriesLikeComplex_co, + c2: _SeriesLikeComplex_co, + ) -> _ComplexSeries: ... + @overload + def __call__( + self, + /, + c1: _SeriesLikeCoef_co, + c2: _SeriesLikeCoef_co, + ) -> _ObjectSeries: ... + +@type_check_only +class _FuncUnOp(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__(self, /, c: _SeriesLikeFloat_co) -> _FloatSeries: ... + @overload + def __call__(self, /, c: _SeriesLikeComplex_co) -> _ComplexSeries: ... + @overload + def __call__(self, /, c: _SeriesLikeCoef_co) -> _ObjectSeries: ... + +@type_check_only +class _FuncPoly2Ortho(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__(self, /, pol: _SeriesLikeFloat_co) -> _FloatSeries: ... + @overload + def __call__(self, /, pol: _SeriesLikeComplex_co) -> _ComplexSeries: ... + @overload + def __call__(self, /, pol: _SeriesLikeCoef_co) -> _ObjectSeries: ... + +@type_check_only +class _FuncPow(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _SeriesLikeFloat_co, + pow: _IntLike_co, + maxpower: None | _IntLike_co = ..., + ) -> _FloatSeries: ... + @overload + def __call__( + self, + /, + c: _SeriesLikeComplex_co, + pow: _IntLike_co, + maxpower: None | _IntLike_co = ..., + ) -> _ComplexSeries: ... + @overload + def __call__( + self, + /, + c: _SeriesLikeCoef_co, + pow: _IntLike_co, + maxpower: None | _IntLike_co = ..., + ) -> _ObjectSeries: ... + +@type_check_only +class _FuncDer(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _ArrayLikeFloat_co, + m: SupportsIndex = ..., + scl: _FloatLike_co = ..., + axis: SupportsIndex = ..., + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + c: _ArrayLikeComplex_co, + m: SupportsIndex = ..., + scl: _ComplexLike_co = ..., + axis: SupportsIndex = ..., + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + c: _ArrayLikeCoef_co, + m: SupportsIndex = ..., + scl: _CoefLike_co = ..., + axis: SupportsIndex = ..., + ) -> _ObjectArray: ... + +@type_check_only +class _FuncInteg(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _ArrayLikeFloat_co, + m: SupportsIndex = ..., + k: _FloatLike_co | _SeriesLikeFloat_co = ..., + lbnd: _FloatLike_co = ..., + scl: _FloatLike_co = ..., + axis: SupportsIndex = ..., + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + c: _ArrayLikeComplex_co, + m: SupportsIndex = ..., + k: _ComplexLike_co | _SeriesLikeComplex_co = ..., + lbnd: _ComplexLike_co = ..., + scl: _ComplexLike_co = ..., + axis: SupportsIndex = ..., + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + c: _ArrayLikeCoef_co, + m: SupportsIndex = ..., + k: _CoefLike_co | _SeriesLikeCoef_co = ..., + lbnd: _CoefLike_co = ..., + scl: _CoefLike_co = ..., + axis: SupportsIndex = ..., + ) -> _ObjectArray: ... + +@type_check_only +class _FuncValFromRoots(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _FloatLike_co, + r: _FloatLike_co, + tensor: bool = ..., + ) -> np.floating[Any]: ... + @overload + def __call__( + self, + /, + x: _NumberLike_co, + r: _NumberLike_co, + tensor: bool = ..., + ) -> np.complexfloating[Any, Any]: ... + @overload + def __call__( + self, + /, + x: _FloatLike_co | _ArrayLikeFloat_co, + r: _ArrayLikeFloat_co, + tensor: bool = ..., + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _NumberLike_co | _ArrayLikeComplex_co, + r: _ArrayLikeComplex_co, + tensor: bool = ..., + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _CoefLike_co | _ArrayLikeCoef_co, + r: _ArrayLikeCoef_co, + tensor: bool = ..., + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: _CoefLike_co, + r: _CoefLike_co, + tensor: bool = ..., + ) -> _SupportsCoefOps[Any]: ... + +@type_check_only +class _FuncVal(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _FloatLike_co, + c: _SeriesLikeFloat_co, + tensor: bool = ..., + ) -> np.floating[Any]: ... + @overload + def __call__( + self, + /, + x: _NumberLike_co, + c: _SeriesLikeComplex_co, + tensor: bool = ..., + ) -> np.complexfloating[Any, Any]: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + c: _ArrayLikeFloat_co, + tensor: bool = ..., + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + c: _ArrayLikeComplex_co, + tensor: bool = ..., + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + c: _ArrayLikeCoef_co, + tensor: bool = ..., + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: _CoefLike_co, + c: _SeriesLikeObject_co, + tensor: bool = ..., + ) -> _SupportsCoefOps[Any]: ... + +@type_check_only +class _FuncVal2D(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _FloatLike_co, + y: _FloatLike_co, + c: _SeriesLikeFloat_co, + ) -> np.floating[Any]: ... + @overload + def __call__( + self, + /, + x: _NumberLike_co, + y: _NumberLike_co, + c: _SeriesLikeComplex_co, + ) -> np.complexfloating[Any, Any]: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + y: _ArrayLikeFloat_co, + c: _ArrayLikeFloat_co, + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + y: _ArrayLikeComplex_co, + c: _ArrayLikeComplex_co, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + y: _ArrayLikeCoef_co, + c: _ArrayLikeCoef_co, + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: _CoefLike_co, + y: _CoefLike_co, + c: _SeriesLikeCoef_co, + ) -> _SupportsCoefOps[Any]: ... + +@type_check_only +class _FuncVal3D(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _FloatLike_co, + y: _FloatLike_co, + z: _FloatLike_co, + c: _SeriesLikeFloat_co + ) -> np.floating[Any]: ... + @overload + def __call__( + self, + /, + x: _NumberLike_co, + y: _NumberLike_co, + z: _NumberLike_co, + c: _SeriesLikeComplex_co, + ) -> np.complexfloating[Any, Any]: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + y: _ArrayLikeFloat_co, + z: _ArrayLikeFloat_co, + c: _ArrayLikeFloat_co, + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + y: _ArrayLikeComplex_co, + z: _ArrayLikeComplex_co, + c: _ArrayLikeComplex_co, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + y: _ArrayLikeCoef_co, + z: _ArrayLikeCoef_co, + c: _ArrayLikeCoef_co, + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: _CoefLike_co, + y: _CoefLike_co, + z: _CoefLike_co, + c: _SeriesLikeCoef_co, + ) -> _SupportsCoefOps[Any]: ... + +_AnyValF: TypeAlias = Callable[ + [npt.ArrayLike, npt.ArrayLike, bool], + _CoefArray, +] + +@type_check_only +class _FuncValND(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + val_f: _AnyValF, + c: _SeriesLikeFloat_co, + /, + *args: _FloatLike_co, + ) -> np.floating[Any]: ... + @overload + def __call__( + self, + val_f: _AnyValF, + c: _SeriesLikeComplex_co, + /, + *args: _NumberLike_co, + ) -> np.complexfloating[Any, Any]: ... + @overload + def __call__( + self, + val_f: _AnyValF, + c: _ArrayLikeFloat_co, + /, + *args: _ArrayLikeFloat_co, + ) -> _FloatArray: ... + @overload + def __call__( + self, + val_f: _AnyValF, + c: _ArrayLikeComplex_co, + /, + *args: _ArrayLikeComplex_co, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + val_f: _AnyValF, + c: _SeriesLikeObject_co, + /, + *args: _CoefObjectLike_co, + ) -> _SupportsCoefOps[Any]: ... + @overload + def __call__( + self, + val_f: _AnyValF, + c: _ArrayLikeCoef_co, + /, + *args: _ArrayLikeCoef_co, + ) -> _ObjectArray: ... + +@type_check_only +class _FuncVander(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + deg: SupportsIndex, + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + deg: SupportsIndex, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + deg: SupportsIndex, + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: npt.ArrayLike, + deg: SupportsIndex, + ) -> _CoefArray: ... + +_AnyDegrees: TypeAlias = Sequence[SupportsIndex] + +@type_check_only +class _FuncVander2D(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + y: _ArrayLikeFloat_co, + deg: _AnyDegrees, + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + y: _ArrayLikeComplex_co, + deg: _AnyDegrees, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + y: _ArrayLikeCoef_co, + deg: _AnyDegrees, + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: npt.ArrayLike, + y: npt.ArrayLike, + deg: _AnyDegrees, + ) -> _CoefArray: ... + +@type_check_only +class _FuncVander3D(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _ArrayLikeFloat_co, + y: _ArrayLikeFloat_co, + z: _ArrayLikeFloat_co, + deg: _AnyDegrees, + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeComplex_co, + y: _ArrayLikeComplex_co, + z: _ArrayLikeComplex_co, + deg: _AnyDegrees, + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + x: _ArrayLikeCoef_co, + y: _ArrayLikeCoef_co, + z: _ArrayLikeCoef_co, + deg: _AnyDegrees, + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + x: npt.ArrayLike, + y: npt.ArrayLike, + z: npt.ArrayLike, + deg: _AnyDegrees, + ) -> _CoefArray: ... + +# keep in sync with the broadest overload of `._FuncVander` +_AnyFuncVander: TypeAlias = Callable[ + [npt.ArrayLike, SupportsIndex], + _CoefArray, +] + +@type_check_only +class _FuncVanderND(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + vander_fs: Sequence[_AnyFuncVander], + points: Sequence[_ArrayLikeFloat_co], + degrees: Sequence[SupportsIndex], + ) -> _FloatArray: ... + @overload + def __call__( + self, + /, + vander_fs: Sequence[_AnyFuncVander], + points: Sequence[_ArrayLikeComplex_co], + degrees: Sequence[SupportsIndex], + ) -> _ComplexArray: ... + @overload + def __call__( + self, + /, + vander_fs: Sequence[_AnyFuncVander], + points: Sequence[ + _ArrayLikeObject_co | _ArrayLikeComplex_co, + ], + degrees: Sequence[SupportsIndex], + ) -> _ObjectArray: ... + @overload + def __call__( + self, + /, + vander_fs: Sequence[_AnyFuncVander], + points: Sequence[npt.ArrayLike], + degrees: Sequence[SupportsIndex], + ) -> _CoefArray: ... + +_FullFitResult: TypeAlias = Sequence[np.inexact[Any] | np.int32] + +@type_check_only +class _FuncFit(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + x: _SeriesLikeFloat_co, + y: _ArrayLikeFloat_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeFloat_co = ..., + ) -> _FloatArray: ... + @overload + def __call__( + self, + x: _SeriesLikeFloat_co, + y: _ArrayLikeFloat_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float, + full: Literal[True], + /, + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_FloatArray, _FullFitResult]: ... + @overload + def __call__( + self, + /, + x: _SeriesLikeFloat_co, + y: _ArrayLikeFloat_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + *, + full: Literal[True], + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_FloatArray, _FullFitResult]: ... + + @overload + def __call__( + self, + /, + x: _SeriesLikeComplex_co, + y: _ArrayLikeComplex_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeFloat_co = ..., + ) -> _ComplexArray: ... + @overload + def __call__( + self, + x: _SeriesLikeComplex_co, + y: _ArrayLikeComplex_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float, + full: Literal[True], + /, + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_ComplexArray, _FullFitResult]: ... + @overload + def __call__( + self, + /, + x: _SeriesLikeComplex_co, + y: _ArrayLikeComplex_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + *, + full: Literal[True], + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_ComplexArray, _FullFitResult]: ... + + @overload + def __call__( + self, + /, + x: _SeriesLikeComplex_co, + y: _ArrayLikeCoef_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeFloat_co = ..., + ) -> _ObjectArray: ... + @overload + def __call__( + self, + x: _SeriesLikeComplex_co, + y: _ArrayLikeCoef_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float, + full: Literal[True], + /, + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_ObjectArray, _FullFitResult]: ... + @overload + def __call__( + self, + /, + x: _SeriesLikeComplex_co, + y: _ArrayLikeCoef_co, + deg: int | _SeriesLikeInt_co, + rcond: None | float = ..., + *, + full: Literal[True], + w: None | _SeriesLikeFloat_co = ..., + ) -> tuple[_ObjectArray, _FullFitResult]: ... + +@type_check_only +class _FuncRoots(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _SeriesLikeFloat_co, + ) -> _Series[np.float64]: ... + @overload + def __call__( + self, + /, + c: _SeriesLikeComplex_co, + ) -> _Series[np.complex128]: ... + @overload + def __call__(self, /, c: _SeriesLikeCoef_co) -> _ObjectSeries: ... + + +_Companion: TypeAlias = np.ndarray[tuple[int, int], np.dtype[_SCT]] + +@type_check_only +class _FuncCompanion(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _SeriesLikeFloat_co, + ) -> _Companion[np.float64]: ... + @overload + def __call__( + self, + /, + c: _SeriesLikeComplex_co, + ) -> _Companion[np.complex128]: ... + @overload + def __call__(self, /, c: _SeriesLikeCoef_co) -> _Companion[np.object_]: ... + +@type_check_only +class _FuncGauss(_Named[_Name_co], Protocol[_Name_co]): + def __call__( + self, + /, + deg: SupportsIndex, + ) -> _Tuple2[_Series[np.float64]]: ... + +@type_check_only +class _FuncWeight(_Named[_Name_co], Protocol[_Name_co]): + @overload + def __call__( + self, + /, + c: _ArrayLikeFloat_co, + ) -> npt.NDArray[np.float64]: ... + @overload + def __call__( + self, + /, + c: _ArrayLikeComplex_co, + ) -> npt.NDArray[np.complex128]: ... + @overload + def __call__(self, /, c: _ArrayLikeCoef_co) -> _ObjectArray: ... + +@type_check_only +class _FuncPts(_Named[_Name_co], Protocol[_Name_co]): + def __call__(self, /, npts: _AnyInt) -> _Series[np.float64]: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.py new file mode 100644 index 0000000000000000000000000000000000000000..837847e45110a9cf5cf202c496c68c5e437c4e67 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.py @@ -0,0 +1,2003 @@ +""" +==================================================== +Chebyshev Series (:mod:`numpy.polynomial.chebyshev`) +==================================================== + +This module provides a number of objects (mostly functions) useful for +dealing with Chebyshev series, including a `Chebyshev` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with such polynomials is in the +docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- + +.. autosummary:: + :toctree: generated/ + + Chebyshev + + +Constants +--------- + +.. autosummary:: + :toctree: generated/ + + chebdomain + chebzero + chebone + chebx + +Arithmetic +---------- + +.. autosummary:: + :toctree: generated/ + + chebadd + chebsub + chebmulx + chebmul + chebdiv + chebpow + chebval + chebval2d + chebval3d + chebgrid2d + chebgrid3d + +Calculus +-------- + +.. autosummary:: + :toctree: generated/ + + chebder + chebint + +Misc Functions +-------------- + +.. autosummary:: + :toctree: generated/ + + chebfromroots + chebroots + chebvander + chebvander2d + chebvander3d + chebgauss + chebweight + chebcompanion + chebfit + chebpts1 + chebpts2 + chebtrim + chebline + cheb2poly + poly2cheb + chebinterpolate + +See also +-------- +`numpy.polynomial` + +Notes +----- +The implementations of multiplication, division, integration, and +differentiation use the algebraic identities [1]_: + +.. math:: + T_n(x) = \\frac{z^n + z^{-n}}{2} \\\\ + z\\frac{dx}{dz} = \\frac{z - z^{-1}}{2}. + +where + +.. math:: x = \\frac{z + z^{-1}}{2}. + +These identities allow a Chebyshev series to be expressed as a finite, +symmetric Laurent series. In this module, this sort of Laurent series +is referred to as a "z-series." + +References +---------- +.. [1] A. T. Benjamin, et al., "Combinatorial Trigonometry with Chebyshev + Polynomials," *Journal of Statistical Planning and Inference 14*, 2008 + (https://web.archive.org/web/20080221202153/https://www.math.hmc.edu/~benjamin/papers/CombTrig.pdf, pg. 4) + +""" +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +__all__ = [ + 'chebzero', 'chebone', 'chebx', 'chebdomain', 'chebline', 'chebadd', + 'chebsub', 'chebmulx', 'chebmul', 'chebdiv', 'chebpow', 'chebval', + 'chebder', 'chebint', 'cheb2poly', 'poly2cheb', 'chebfromroots', + 'chebvander', 'chebfit', 'chebtrim', 'chebroots', 'chebpts1', + 'chebpts2', 'Chebyshev', 'chebval2d', 'chebval3d', 'chebgrid2d', + 'chebgrid3d', 'chebvander2d', 'chebvander3d', 'chebcompanion', + 'chebgauss', 'chebweight', 'chebinterpolate'] + +chebtrim = pu.trimcoef + +# +# A collection of functions for manipulating z-series. These are private +# functions and do minimal error checking. +# + +def _cseries_to_zseries(c): + """Convert Chebyshev series to z-series. + + Convert a Chebyshev series to the equivalent z-series. The result is + never an empty array. The dtype of the return is the same as that of + the input. No checks are run on the arguments as this routine is for + internal use. + + Parameters + ---------- + c : 1-D ndarray + Chebyshev coefficients, ordered from low to high + + Returns + ------- + zs : 1-D ndarray + Odd length symmetric z-series, ordered from low to high. + + """ + n = c.size + zs = np.zeros(2*n-1, dtype=c.dtype) + zs[n-1:] = c/2 + return zs + zs[::-1] + + +def _zseries_to_cseries(zs): + """Convert z-series to a Chebyshev series. + + Convert a z series to the equivalent Chebyshev series. The result is + never an empty array. The dtype of the return is the same as that of + the input. No checks are run on the arguments as this routine is for + internal use. + + Parameters + ---------- + zs : 1-D ndarray + Odd length symmetric z-series, ordered from low to high. + + Returns + ------- + c : 1-D ndarray + Chebyshev coefficients, ordered from low to high. + + """ + n = (zs.size + 1)//2 + c = zs[n-1:].copy() + c[1:n] *= 2 + return c + + +def _zseries_mul(z1, z2): + """Multiply two z-series. + + Multiply two z-series to produce a z-series. + + Parameters + ---------- + z1, z2 : 1-D ndarray + The arrays must be 1-D but this is not checked. + + Returns + ------- + product : 1-D ndarray + The product z-series. + + Notes + ----- + This is simply convolution. If symmetric/anti-symmetric z-series are + denoted by S/A then the following rules apply: + + S*S, A*A -> S + S*A, A*S -> A + + """ + return np.convolve(z1, z2) + + +def _zseries_div(z1, z2): + """Divide the first z-series by the second. + + Divide `z1` by `z2` and return the quotient and remainder as z-series. + Warning: this implementation only applies when both z1 and z2 have the + same symmetry, which is sufficient for present purposes. + + Parameters + ---------- + z1, z2 : 1-D ndarray + The arrays must be 1-D and have the same symmetry, but this is not + checked. + + Returns + ------- + + (quotient, remainder) : 1-D ndarrays + Quotient and remainder as z-series. + + Notes + ----- + This is not the same as polynomial division on account of the desired form + of the remainder. If symmetric/anti-symmetric z-series are denoted by S/A + then the following rules apply: + + S/S -> S,S + A/A -> S,A + + The restriction to types of the same symmetry could be fixed but seems like + unneeded generality. There is no natural form for the remainder in the case + where there is no symmetry. + + """ + z1 = z1.copy() + z2 = z2.copy() + lc1 = len(z1) + lc2 = len(z2) + if lc2 == 1: + z1 /= z2 + return z1, z1[:1]*0 + elif lc1 < lc2: + return z1[:1]*0, z1 + else: + dlen = lc1 - lc2 + scl = z2[0] + z2 /= scl + quo = np.empty(dlen + 1, dtype=z1.dtype) + i = 0 + j = dlen + while i < j: + r = z1[i] + quo[i] = z1[i] + quo[dlen - i] = r + tmp = r*z2 + z1[i:i+lc2] -= tmp + z1[j:j+lc2] -= tmp + i += 1 + j -= 1 + r = z1[i] + quo[i] = r + tmp = r*z2 + z1[i:i+lc2] -= tmp + quo /= scl + rem = z1[i+1:i-1+lc2].copy() + return quo, rem + + +def _zseries_der(zs): + """Differentiate a z-series. + + The derivative is with respect to x, not z. This is achieved using the + chain rule and the value of dx/dz given in the module notes. + + Parameters + ---------- + zs : z-series + The z-series to differentiate. + + Returns + ------- + derivative : z-series + The derivative + + Notes + ----- + The zseries for x (ns) has been multiplied by two in order to avoid + using floats that are incompatible with Decimal and likely other + specialized scalar types. This scaling has been compensated by + multiplying the value of zs by two also so that the two cancels in the + division. + + """ + n = len(zs)//2 + ns = np.array([-1, 0, 1], dtype=zs.dtype) + zs *= np.arange(-n, n+1)*2 + d, r = _zseries_div(zs, ns) + return d + + +def _zseries_int(zs): + """Integrate a z-series. + + The integral is with respect to x, not z. This is achieved by a change + of variable using dx/dz given in the module notes. + + Parameters + ---------- + zs : z-series + The z-series to integrate + + Returns + ------- + integral : z-series + The indefinite integral + + Notes + ----- + The zseries for x (ns) has been multiplied by two in order to avoid + using floats that are incompatible with Decimal and likely other + specialized scalar types. This scaling has been compensated by + dividing the resulting zs by two. + + """ + n = 1 + len(zs)//2 + ns = np.array([-1, 0, 1], dtype=zs.dtype) + zs = _zseries_mul(zs, ns) + div = np.arange(-n, n+1)*2 + zs[:n] /= div[:n] + zs[n+1:] /= div[n+1:] + zs[n] = 0 + return zs + +# +# Chebyshev series functions +# + + +def poly2cheb(pol): + """ + Convert a polynomial to a Chebyshev series. + + Convert an array representing the coefficients of a polynomial (relative + to the "standard" basis) ordered from lowest degree to highest, to an + array of the coefficients of the equivalent Chebyshev series, ordered + from lowest to highest degree. + + Parameters + ---------- + pol : array_like + 1-D array containing the polynomial coefficients + + Returns + ------- + c : ndarray + 1-D array containing the coefficients of the equivalent Chebyshev + series. + + See Also + -------- + cheb2poly + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy import polynomial as P + >>> p = P.Polynomial(range(4)) + >>> p + Polynomial([0., 1., 2., 3.], domain=[-1., 1.], window=[-1., 1.], symbol='x') + >>> c = p.convert(kind=P.Chebyshev) + >>> c + Chebyshev([1. , 3.25, 1. , 0.75], domain=[-1., 1.], window=[-1., ... + >>> P.chebyshev.poly2cheb(range(4)) + array([1. , 3.25, 1. , 0.75]) + + """ + [pol] = pu.as_series([pol]) + deg = len(pol) - 1 + res = 0 + for i in range(deg, -1, -1): + res = chebadd(chebmulx(res), pol[i]) + return res + + +def cheb2poly(c): + """ + Convert a Chebyshev series to a polynomial. + + Convert an array representing the coefficients of a Chebyshev series, + ordered from lowest degree to highest, to an array of the coefficients + of the equivalent polynomial (relative to the "standard" basis) ordered + from lowest to highest degree. + + Parameters + ---------- + c : array_like + 1-D array containing the Chebyshev series coefficients, ordered + from lowest order term to highest. + + Returns + ------- + pol : ndarray + 1-D array containing the coefficients of the equivalent polynomial + (relative to the "standard" basis) ordered from lowest order term + to highest. + + See Also + -------- + poly2cheb + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy import polynomial as P + >>> c = P.Chebyshev(range(4)) + >>> c + Chebyshev([0., 1., 2., 3.], domain=[-1., 1.], window=[-1., 1.], symbol='x') + >>> p = c.convert(kind=P.Polynomial) + >>> p + Polynomial([-2., -8., 4., 12.], domain=[-1., 1.], window=[-1., 1.], ... + >>> P.chebyshev.cheb2poly(range(4)) + array([-2., -8., 4., 12.]) + + """ + from .polynomial import polyadd, polysub, polymulx + + [c] = pu.as_series([c]) + n = len(c) + if n < 3: + return c + else: + c0 = c[-2] + c1 = c[-1] + # i is the current degree of c1 + for i in range(n - 1, 1, -1): + tmp = c0 + c0 = polysub(c[i - 2], c1) + c1 = polyadd(tmp, polymulx(c1)*2) + return polyadd(c0, polymulx(c1)) + + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Chebyshev default domain. +chebdomain = np.array([-1., 1.]) + +# Chebyshev coefficients representing zero. +chebzero = np.array([0]) + +# Chebyshev coefficients representing one. +chebone = np.array([1]) + +# Chebyshev coefficients representing the identity x. +chebx = np.array([0, 1]) + + +def chebline(off, scl): + """ + Chebyshev series whose graph is a straight line. + + Parameters + ---------- + off, scl : scalars + The specified line is given by ``off + scl*x``. + + Returns + ------- + y : ndarray + This module's representation of the Chebyshev series for + ``off + scl*x``. + + See Also + -------- + numpy.polynomial.polynomial.polyline + numpy.polynomial.legendre.legline + numpy.polynomial.laguerre.lagline + numpy.polynomial.hermite.hermline + numpy.polynomial.hermite_e.hermeline + + Examples + -------- + >>> import numpy.polynomial.chebyshev as C + >>> C.chebline(3,2) + array([3, 2]) + >>> C.chebval(-3, C.chebline(3,2)) # should be -3 + -3.0 + + """ + if scl != 0: + return np.array([off, scl]) + else: + return np.array([off]) + + +def chebfromroots(roots): + """ + Generate a Chebyshev series with given roots. + + The function returns the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + in Chebyshev form, where the :math:`r_n` are the roots specified in + `roots`. If a zero has multiplicity n, then it must appear in `roots` + n times. For instance, if 2 is a root of multiplicity three and 3 is a + root of multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. + The roots can appear in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * T_1(x) + ... + c_n * T_n(x) + + The coefficient of the last term is not generally 1 for monic + polynomials in Chebyshev form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of coefficients. If all roots are real then `out` is a + real array, if some of the roots are complex, then `out` is complex + even if all the coefficients in the result are real (see Examples + below). + + See Also + -------- + numpy.polynomial.polynomial.polyfromroots + numpy.polynomial.legendre.legfromroots + numpy.polynomial.laguerre.lagfromroots + numpy.polynomial.hermite.hermfromroots + numpy.polynomial.hermite_e.hermefromroots + + Examples + -------- + >>> import numpy.polynomial.chebyshev as C + >>> C.chebfromroots((-1,0,1)) # x^3 - x relative to the standard basis + array([ 0. , -0.25, 0. , 0.25]) + >>> j = complex(0,1) + >>> C.chebfromroots((-j,j)) # x^2 + 1 relative to the standard basis + array([1.5+0.j, 0. +0.j, 0.5+0.j]) + + """ + return pu._fromroots(chebline, chebmul, roots) + + +def chebadd(c1, c2): + """ + Add one Chebyshev series to another. + + Returns the sum of two Chebyshev series `c1` + `c2`. The arguments + are sequences of coefficients ordered from lowest order term to + highest, i.e., [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Chebyshev series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the Chebyshev series of their sum. + + See Also + -------- + chebsub, chebmulx, chebmul, chebdiv, chebpow + + Notes + ----- + Unlike multiplication, division, etc., the sum of two Chebyshev series + is a Chebyshev series (without having to "reproject" the result onto + the basis set) so addition, just like that of "standard" polynomials, + is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> C.chebadd(c1,c2) + array([4., 4., 4.]) + + """ + return pu._add(c1, c2) + + +def chebsub(c1, c2): + """ + Subtract one Chebyshev series from another. + + Returns the difference of two Chebyshev series `c1` - `c2`. The + sequences of coefficients are from lowest order term to highest, i.e., + [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Chebyshev series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Chebyshev series coefficients representing their difference. + + See Also + -------- + chebadd, chebmulx, chebmul, chebdiv, chebpow + + Notes + ----- + Unlike multiplication, division, etc., the difference of two Chebyshev + series is a Chebyshev series (without having to "reproject" the result + onto the basis set) so subtraction, just like that of "standard" + polynomials, is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> C.chebsub(c1,c2) + array([-2., 0., 2.]) + >>> C.chebsub(c2,c1) # -C.chebsub(c1,c2) + array([ 2., 0., -2.]) + + """ + return pu._sub(c1, c2) + + +def chebmulx(c): + """Multiply a Chebyshev series by x. + + Multiply the polynomial `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of Chebyshev series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + chebadd, chebsub, chebmul, chebdiv, chebpow + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> C.chebmulx([1,2,3]) + array([1. , 2.5, 1. , 1.5]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0]*0 + prd[1] = c[0] + if len(c) > 1: + tmp = c[1:]/2 + prd[2:] = tmp + prd[0:-2] += tmp + return prd + + +def chebmul(c1, c2): + """ + Multiply one Chebyshev series by another. + + Returns the product of two Chebyshev series `c1` * `c2`. The arguments + are sequences of coefficients, from lowest order "term" to highest, + e.g., [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Chebyshev series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Chebyshev series coefficients representing their product. + + See Also + -------- + chebadd, chebsub, chebmulx, chebdiv, chebpow + + Notes + ----- + In general, the (polynomial) product of two C-series results in terms + that are not in the Chebyshev polynomial basis set. Thus, to express + the product as a C-series, it is typically necessary to "reproject" + the product onto said basis set, which typically produces + "unintuitive live" (but correct) results; see Examples section below. + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> C.chebmul(c1,c2) # multiplication requires "reprojection" + array([ 6.5, 12. , 12. , 4. , 1.5]) + + """ + # c1, c2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + z1 = _cseries_to_zseries(c1) + z2 = _cseries_to_zseries(c2) + prd = _zseries_mul(z1, z2) + ret = _zseries_to_cseries(prd) + return pu.trimseq(ret) + + +def chebdiv(c1, c2): + """ + Divide one Chebyshev series by another. + + Returns the quotient-with-remainder of two Chebyshev series + `c1` / `c2`. The arguments are sequences of coefficients from lowest + order "term" to highest, e.g., [1,2,3] represents the series + ``T_0 + 2*T_1 + 3*T_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Chebyshev series coefficients ordered from low to + high. + + Returns + ------- + [quo, rem] : ndarrays + Of Chebyshev series coefficients representing the quotient and + remainder. + + See Also + -------- + chebadd, chebsub, chebmulx, chebmul, chebpow + + Notes + ----- + In general, the (polynomial) division of one C-series by another + results in quotient and remainder terms that are not in the Chebyshev + polynomial basis set. Thus, to express these results as C-series, it + is typically necessary to "reproject" the results onto said basis + set, which typically produces "unintuitive" (but correct) results; + see Examples section below. + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> C.chebdiv(c1,c2) # quotient "intuitive," remainder not + (array([3.]), array([-8., -4.])) + >>> c2 = (0,1,2,3) + >>> C.chebdiv(c2,c1) # neither "intuitive" + (array([0., 2.]), array([-2., -4.])) + + """ + # c1, c2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + if c2[-1] == 0: + raise ZeroDivisionError # FIXME: add message with details to exception + + # note: this is more efficient than `pu._div(chebmul, c1, c2)` + lc1 = len(c1) + lc2 = len(c2) + if lc1 < lc2: + return c1[:1]*0, c1 + elif lc2 == 1: + return c1/c2[-1], c1[:1]*0 + else: + z1 = _cseries_to_zseries(c1) + z2 = _cseries_to_zseries(c2) + quo, rem = _zseries_div(z1, z2) + quo = pu.trimseq(_zseries_to_cseries(quo)) + rem = pu.trimseq(_zseries_to_cseries(rem)) + return quo, rem + + +def chebpow(c, pow, maxpower=16): + """Raise a Chebyshev series to a power. + + Returns the Chebyshev series `c` raised to the power `pow`. The + argument `c` is a sequence of coefficients ordered from low to high. + i.e., [1,2,3] is the series ``T_0 + 2*T_1 + 3*T_2.`` + + Parameters + ---------- + c : array_like + 1-D array of Chebyshev series coefficients ordered from low to + high. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Chebyshev series of power. + + See Also + -------- + chebadd, chebsub, chebmulx, chebmul, chebdiv + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> C.chebpow([1, 2, 3, 4], 2) + array([15.5, 22. , 16. , ..., 12.5, 12. , 8. ]) + + """ + # note: this is more efficient than `pu._pow(chebmul, c1, c2)`, as it + # avoids converting between z and c series repeatedly + + # c is a trimmed copy + [c] = pu.as_series([c]) + power = int(pow) + if power != pow or power < 0: + raise ValueError("Power must be a non-negative integer.") + elif maxpower is not None and power > maxpower: + raise ValueError("Power is too large") + elif power == 0: + return np.array([1], dtype=c.dtype) + elif power == 1: + return c + else: + # This can be made more efficient by using powers of two + # in the usual way. + zs = _cseries_to_zseries(c) + prd = zs + for i in range(2, power + 1): + prd = np.convolve(prd, zs) + return _zseries_to_cseries(prd) + + +def chebder(c, m=1, scl=1, axis=0): + """ + Differentiate a Chebyshev series. + + Returns the Chebyshev series coefficients `c` differentiated `m` times + along `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The argument + `c` is an array of coefficients from low to high degree along each + axis, e.g., [1,2,3] represents the series ``1*T_0 + 2*T_1 + 3*T_2`` + while [[1,2],[1,2]] represents ``1*T_0(x)*T_0(y) + 1*T_1(x)*T_0(y) + + 2*T_0(x)*T_1(y) + 2*T_1(x)*T_1(y)`` if axis=0 is ``x`` and axis=1 is + ``y``. + + Parameters + ---------- + c : array_like + Array of Chebyshev series coefficients. If c is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change of + variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Chebyshev series of the derivative. + + See Also + -------- + chebint + + Notes + ----- + In general, the result of differentiating a C-series needs to be + "reprojected" onto the C-series basis set. Thus, typically, the + result of this function is "unintuitive," albeit correct; see Examples + section below. + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c = (1,2,3,4) + >>> C.chebder(c) + array([14., 12., 24.]) + >>> C.chebder(c,3) + array([96.]) + >>> C.chebder(c,scl=-1) + array([-14., -12., -24.]) + >>> C.chebder(c,2,-1) + array([12., 96.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + c = c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=c.dtype) + for j in range(n, 2, -1): + der[j - 1] = (2*j)*c[j] + c[j - 2] += (j*c[j])/(j - 2) + if n > 1: + der[1] = 4*c[2] + der[0] = c[1] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def chebint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a Chebyshev series. + + Returns the Chebyshev series coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients from low to high degree along each axis, e.g., [1,2,3] + represents the series ``T_0 + 2*T_1 + 3*T_2`` while [[1,2],[1,2]] + represents ``1*T_0(x)*T_0(y) + 1*T_1(x)*T_0(y) + 2*T_0(x)*T_1(y) + + 2*T_1(x)*T_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``. + + Parameters + ---------- + c : array_like + Array of Chebyshev series coefficients. If c is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at zero + is the first value in the list, the value of the second integral + at zero is the second value, etc. If ``k == []`` (the default), + all constants are set to zero. If ``m == 1``, a single scalar can + be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + C-series coefficients of the integral. + + Raises + ------ + ValueError + If ``m < 1``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + chebder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. + Why is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a`- perhaps not what one would have first thought. + + Also note that, in general, the result of integrating a C-series needs + to be "reprojected" onto the C-series basis set. Thus, typically, + the result of this function is "unintuitive," albeit correct; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial import chebyshev as C + >>> c = (1,2,3) + >>> C.chebint(c) + array([ 0.5, -0.5, 0.5, 0.5]) + >>> C.chebint(c,3) + array([ 0.03125 , -0.1875 , 0.04166667, -0.05208333, 0.01041667, # may vary + 0.00625 ]) + >>> C.chebint(c, k=3) + array([ 3.5, -0.5, 0.5, 0.5]) + >>> C.chebint(c,lbnd=-2) + array([ 8.5, -0.5, 0.5, 0.5]) + >>> C.chebint(c,scl=-2) + array([-1., 1., -1., -1.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + k = list(k) + [0]*(cnt - len(k)) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype) + tmp[0] = c[0]*0 + tmp[1] = c[0] + if n > 1: + tmp[2] = c[1]/4 + for j in range(2, n): + tmp[j + 1] = c[j]/(2*(j + 1)) + tmp[j - 1] -= c[j]/(2*(j - 1)) + tmp[0] += k[i] - chebval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def chebval(x, c, tensor=True): + """ + Evaluate a Chebyshev series at points x. + + If `c` is of length `n + 1`, this function returns the value: + + .. math:: p(x) = c_0 * T_0(x) + c_1 * T_1(x) + ... + c_n * T_n(x) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, algebra_like + The shape of the return value is described above. + + See Also + -------- + chebval2d, chebgrid2d, chebval3d, chebgrid3d + + Notes + ----- + The evaluation uses Clenshaw recursion, aka synthetic division. + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + if len(c) == 1: + c0 = c[0] + c1 = 0 + elif len(c) == 2: + c0 = c[0] + c1 = c[1] + else: + x2 = 2*x + c0 = c[-2] + c1 = c[-1] + for i in range(3, len(c) + 1): + tmp = c0 + c0 = c[-i] - c1 + c1 = tmp + c1*x2 + return c0 + c1*x + + +def chebval2d(x, y, c): + """ + Evaluate a 2-D Chebyshev series at points (x, y). + + This function returns the values: + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * T_i(x) * T_j(y) + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` is a 1-D array a one is implicitly appended to its shape to make + it 2-D. The shape of the result will be c.shape[2:] + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and if it isn't an ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than 2 the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional Chebyshev series at points formed + from pairs of corresponding values from `x` and `y`. + + See Also + -------- + chebval, chebgrid2d, chebval3d, chebgrid3d + """ + return pu._valnd(chebval, c, x, y) + + +def chebgrid2d(x, y, c): + """ + Evaluate a 2-D Chebyshev series on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * T_i(a) * T_j(b), + + where the points `(a, b)` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape + y.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j is contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional Chebyshev series at points in the + Cartesian product of `x` and `y`. + + See Also + -------- + chebval, chebval2d, chebval3d, chebgrid3d + """ + return pu._gridnd(chebval, c, x, y) + + +def chebval3d(x, y, z, c): + """ + Evaluate a 3-D Chebyshev series at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * T_i(x) * T_j(y) * T_k(z) + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + ``(x, y, z)``, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + chebval, chebval2d, chebgrid2d, chebgrid3d + """ + return pu._valnd(chebval, c, x, y, z) + + +def chebgrid3d(x, y, z, c): + """ + Evaluate a 3-D Chebyshev series on the Cartesian product of x, y, and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * T_i(a) * T_j(b) * T_k(c) + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + chebval, chebval2d, chebgrid2d, chebval3d + """ + return pu._gridnd(chebval, c, x, y, z) + + +def chebvander(x, deg): + """Pseudo-Vandermonde matrix of given degree. + + Returns the pseudo-Vandermonde matrix of degree `deg` and sample points + `x`. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., i] = T_i(x), + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the degree of the Chebyshev polynomial. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + matrix ``V = chebvander(x, n)``, then ``np.dot(V, c)`` and + ``chebval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of Chebyshev series of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray + The pseudo Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where The last index is the degree of the + corresponding Chebyshev polynomial. The dtype will be the same as + the converted `x`. + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + # Use forward recursion to generate the entries. + v[0] = x*0 + 1 + if ideg > 0: + x2 = 2*x + v[1] = x + for i in range(2, ideg + 1): + v[i] = v[i-1]*x2 - v[i-2] + return np.moveaxis(v, 0, -1) + + +def chebvander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = T_i(x) * T_j(y), + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the degrees of + the Chebyshev polynomials. + + If ``V = chebvander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``chebval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D Chebyshev + series of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + chebvander, chebvander3d, chebval2d, chebval3d + """ + return pu._vander_nd_flat((chebvander, chebvander), (x, y), deg) + + +def chebvander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = T_i(x)*T_j(y)*T_k(z), + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the degrees of the Chebyshev polynomials. + + If ``V = chebvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``chebval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D Chebyshev + series of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + chebvander, chebvander3d, chebval2d, chebval3d + """ + return pu._vander_nd_flat((chebvander, chebvander, chebvander), (x, y, z), deg) + + +def chebfit(x, y, deg, rcond=None, full=False, w=None): + """ + Least squares fit of Chebyshev series to data. + + Return the coefficients of a Chebyshev series of degree `deg` that is the + least squares fit to the data values `y` given at points `x`. If `y` is + 1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple + fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * T_1(x) + ... + c_n * T_n(x), + + where `n` is `deg`. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) or (M, K) + y-coordinates of the sample points. Several data sets of sample + points sharing the same x-coordinates can be fitted at once by + passing in a 2D-array that contains one dataset per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer, + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller than + this relative to the largest singular value will be ignored. The + default value is ``len(x)*eps``, where eps is the relative precision of + the float type, about 2e-16 in most cases. + full : bool, optional + Switch determining nature of return value. When it is False (the + default) just the coefficients are returned, when True diagnostic + information from the singular value decomposition is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (M,) or (M, K) + Chebyshev coefficients ordered from low to high. If `y` was 2-D, + the coefficients for the data in column k of `y` are in column + `k`. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Warns + ----- + RankWarning + The rank of the coefficient matrix in the least-squares fit is + deficient. The warning is only raised if ``full == False``. The + warnings can be turned off by + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.polynomial.polyfit + numpy.polynomial.legendre.legfit + numpy.polynomial.laguerre.lagfit + numpy.polynomial.hermite.hermfit + numpy.polynomial.hermite_e.hermefit + chebval : Evaluates a Chebyshev series. + chebvander : Vandermonde matrix of Chebyshev series. + chebweight : Chebyshev weight function. + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the Chebyshev series `p` that + minimizes the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where :math:`w_j` are the weights. This problem is solved by setting up + as the (typically) overdetermined matrix equation + + .. math:: V(x) * c = w * y, + + where `V` is the weighted pseudo Vandermonde matrix of `x`, `c` are the + coefficients to be solved for, `w` are the weights, and `y` are the + observed values. This equation is then solved using the singular value + decomposition of `V`. + + If some of the singular values of `V` are so small that they are + neglected, then a `~exceptions.RankWarning` will be issued. This means that + the coefficient values may be poorly determined. Using a lower order fit + will usually get rid of the warning. The `rcond` parameter can also be + set to a value smaller than its default, but the resulting fit may be + spurious and have large contributions from roundoff error. + + Fits using Chebyshev series are usually better conditioned than fits + using power series, but much can depend on the distribution of the + sample points and the smoothness of the data. If the quality of the fit + is inadequate splines may be a good alternative. + + References + ---------- + .. [1] Wikipedia, "Curve fitting", + https://en.wikipedia.org/wiki/Curve_fitting + + Examples + -------- + + """ + return pu._fit(chebvander, x, y, deg, rcond, full, w) + + +def chebcompanion(c): + """Return the scaled companion matrix of c. + + The basis polynomials are scaled so that the companion matrix is + symmetric when `c` is a Chebyshev basis polynomial. This provides + better eigenvalue estimates than the unscaled case and for basis + polynomials the eigenvalues are guaranteed to be real if + `numpy.linalg.eigvalsh` is used to obtain them. + + Parameters + ---------- + c : array_like + 1-D array of Chebyshev series coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Scaled companion matrix of dimensions (deg, deg). + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[-c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + scl = np.array([1.] + [np.sqrt(.5)]*(n-1)) + top = mat.reshape(-1)[1::n+1] + bot = mat.reshape(-1)[n::n+1] + top[0] = np.sqrt(.5) + top[1:] = 1/2 + bot[...] = top + mat[:, -1] -= (c[:-1]/c[-1])*(scl/scl[-1])*.5 + return mat + + +def chebroots(c): + """ + Compute the roots of a Chebyshev series. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * T_i(x). + + Parameters + ---------- + c : 1-D array_like + 1-D array of coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the series. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.polynomial.polyroots + numpy.polynomial.legendre.legroots + numpy.polynomial.laguerre.lagroots + numpy.polynomial.hermite.hermroots + numpy.polynomial.hermite_e.hermeroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the series for such + values. Roots with multiplicity greater than 1 will also show larger + errors as the value of the series near such points is relatively + insensitive to errors in the roots. Isolated roots near the origin can + be improved by a few iterations of Newton's method. + + The Chebyshev series basis polynomials aren't powers of `x` so the + results of this function may seem unintuitive. + + Examples + -------- + >>> import numpy.polynomial.chebyshev as cheb + >>> cheb.chebroots((-1, 1,-1, 1)) # T3 - T2 + T1 - T0 has real roots + array([ -5.00000000e-01, 2.60860684e-17, 1.00000000e+00]) # may vary + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([-c[0]/c[1]]) + + # rotated companion matrix reduces error + m = chebcompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +def chebinterpolate(func, deg, args=()): + """Interpolate a function at the Chebyshev points of the first kind. + + Returns the Chebyshev series that interpolates `func` at the Chebyshev + points of the first kind in the interval [-1, 1]. The interpolating + series tends to a minmax approximation to `func` with increasing `deg` + if the function is continuous in the interval. + + Parameters + ---------- + func : function + The function to be approximated. It must be a function of a single + variable of the form ``f(x, a, b, c...)``, where ``a, b, c...`` are + extra arguments passed in the `args` parameter. + deg : int + Degree of the interpolating polynomial + args : tuple, optional + Extra arguments to be used in the function call. Default is no extra + arguments. + + Returns + ------- + coef : ndarray, shape (deg + 1,) + Chebyshev coefficients of the interpolating series ordered from low to + high. + + Examples + -------- + >>> import numpy.polynomial.chebyshev as C + >>> C.chebinterpolate(lambda x: np.tanh(x) + 0.5, 8) + array([ 5.00000000e-01, 8.11675684e-01, -9.86864911e-17, + -5.42457905e-02, -2.71387850e-16, 4.51658839e-03, + 2.46716228e-17, -3.79694221e-04, -3.26899002e-16]) + + Notes + ----- + The Chebyshev polynomials used in the interpolation are orthogonal when + sampled at the Chebyshev points of the first kind. If it is desired to + constrain some of the coefficients they can simply be set to the desired + value after the interpolation, no new interpolation or fit is needed. This + is especially useful if it is known apriori that some of coefficients are + zero. For instance, if the function is even then the coefficients of the + terms of odd degree in the result can be set to zero. + + """ + deg = np.asarray(deg) + + # check arguments. + if deg.ndim > 0 or deg.dtype.kind not in 'iu' or deg.size == 0: + raise TypeError("deg must be an int") + if deg < 0: + raise ValueError("expected deg >= 0") + + order = deg + 1 + xcheb = chebpts1(order) + yfunc = func(xcheb, *args) + m = chebvander(xcheb, deg) + c = np.dot(m.T, yfunc) + c[0] /= order + c[1:] /= 0.5*order + + return c + + +def chebgauss(deg): + """ + Gauss-Chebyshev quadrature. + + Computes the sample points and weights for Gauss-Chebyshev quadrature. + These sample points and weights will correctly integrate polynomials of + degree :math:`2*deg - 1` or less over the interval :math:`[-1, 1]` with + the weight function :math:`f(x) = 1/\\sqrt{1 - x^2}`. + + Parameters + ---------- + deg : int + Number of sample points and weights. It must be >= 1. + + Returns + ------- + x : ndarray + 1-D ndarray containing the sample points. + y : ndarray + 1-D ndarray containing the weights. + + Notes + ----- + The results have only been tested up to degree 100, higher degrees may + be problematic. For Gauss-Chebyshev there are closed form solutions for + the sample points and weights. If n = `deg`, then + + .. math:: x_i = \\cos(\\pi (2 i - 1) / (2 n)) + + .. math:: w_i = \\pi / n + + """ + ideg = pu._as_int(deg, "deg") + if ideg <= 0: + raise ValueError("deg must be a positive integer") + + x = np.cos(np.pi * np.arange(1, 2*ideg, 2) / (2.0*ideg)) + w = np.ones(ideg)*(np.pi/ideg) + + return x, w + + +def chebweight(x): + """ + The weight function of the Chebyshev polynomials. + + The weight function is :math:`1/\\sqrt{1 - x^2}` and the interval of + integration is :math:`[-1, 1]`. The Chebyshev polynomials are + orthogonal, but not normalized, with respect to this weight function. + + Parameters + ---------- + x : array_like + Values at which the weight function will be computed. + + Returns + ------- + w : ndarray + The weight function at `x`. + """ + w = 1./(np.sqrt(1. + x) * np.sqrt(1. - x)) + return w + + +def chebpts1(npts): + """ + Chebyshev points of the first kind. + + The Chebyshev points of the first kind are the points ``cos(x)``, + where ``x = [pi*(k + .5)/npts for k in range(npts)]``. + + Parameters + ---------- + npts : int + Number of sample points desired. + + Returns + ------- + pts : ndarray + The Chebyshev points of the first kind. + + See Also + -------- + chebpts2 + """ + _npts = int(npts) + if _npts != npts: + raise ValueError("npts must be integer") + if _npts < 1: + raise ValueError("npts must be >= 1") + + x = 0.5 * np.pi / _npts * np.arange(-_npts+1, _npts+1, 2) + return np.sin(x) + + +def chebpts2(npts): + """ + Chebyshev points of the second kind. + + The Chebyshev points of the second kind are the points ``cos(x)``, + where ``x = [pi*k/(npts - 1) for k in range(npts)]`` sorted in ascending + order. + + Parameters + ---------- + npts : int + Number of sample points desired. + + Returns + ------- + pts : ndarray + The Chebyshev points of the second kind. + """ + _npts = int(npts) + if _npts != npts: + raise ValueError("npts must be integer") + if _npts < 2: + raise ValueError("npts must be >= 2") + + x = np.linspace(-np.pi, 0, _npts) + return np.cos(x) + + +# +# Chebyshev series class +# + +class Chebyshev(ABCPolyBase): + """A Chebyshev series class. + + The Chebyshev class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + Chebyshev coefficients in order of increasing degree, i.e., + ``(1, 2, 3)`` gives ``1*T_0(x) + 2*T_1(x) + 3*T_2(x)``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [-1., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [-1., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(chebadd) + _sub = staticmethod(chebsub) + _mul = staticmethod(chebmul) + _div = staticmethod(chebdiv) + _pow = staticmethod(chebpow) + _val = staticmethod(chebval) + _int = staticmethod(chebint) + _der = staticmethod(chebder) + _fit = staticmethod(chebfit) + _line = staticmethod(chebline) + _roots = staticmethod(chebroots) + _fromroots = staticmethod(chebfromroots) + + @classmethod + def interpolate(cls, func, deg, domain=None, args=()): + """Interpolate a function at the Chebyshev points of the first kind. + + Returns the series that interpolates `func` at the Chebyshev points of + the first kind scaled and shifted to the `domain`. The resulting series + tends to a minmax approximation of `func` when the function is + continuous in the domain. + + Parameters + ---------- + func : function + The function to be interpolated. It must be a function of a single + variable of the form ``f(x, a, b, c...)``, where ``a, b, c...`` are + extra arguments passed in the `args` parameter. + deg : int + Degree of the interpolating polynomial. + domain : {None, [beg, end]}, optional + Domain over which `func` is interpolated. The default is None, in + which case the domain is [-1, 1]. + args : tuple, optional + Extra arguments to be used in the function call. Default is no + extra arguments. + + Returns + ------- + polynomial : Chebyshev instance + Interpolating Chebyshev instance. + + Notes + ----- + See `numpy.polynomial.chebinterpolate` for more details. + + """ + if domain is None: + domain = cls.domain + xfunc = lambda x: func(pu.mapdomain(x, cls.window, domain), *args) + coef = chebinterpolate(xfunc, deg) + return cls(coef, domain=domain) + + # Virtual properties + domain = np.array(chebdomain) + window = np.array(chebdomain) + basis_name = 'T' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.pyi new file mode 100644 index 0000000000000000000000000000000000000000..067af81d635d75511469f6cd130d774f00391be6 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/chebyshev.pyi @@ -0,0 +1,192 @@ +from collections.abc import Callable, Iterable +from typing import ( + Any, + Concatenate, + Final, + Literal as L, + TypeVar, + overload, +) + +import numpy as np +import numpy.typing as npt +from numpy._typing import _IntLike_co + +from ._polybase import ABCPolyBase +from ._polytypes import ( + _SeriesLikeCoef_co, + _Array1, + _Series, + _Array2, + _CoefSeries, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncGauss, + _FuncInteg, + _FuncLine, + _FuncPoly2Ortho, + _FuncPow, + _FuncPts, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVal2D, + _FuncVal3D, + _FuncValFromRoots, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncWeight, +) +from .polyutils import trimcoef as chebtrim + +__all__ = [ + "chebzero", + "chebone", + "chebx", + "chebdomain", + "chebline", + "chebadd", + "chebsub", + "chebmulx", + "chebmul", + "chebdiv", + "chebpow", + "chebval", + "chebder", + "chebint", + "cheb2poly", + "poly2cheb", + "chebfromroots", + "chebvander", + "chebfit", + "chebtrim", + "chebroots", + "chebpts1", + "chebpts2", + "Chebyshev", + "chebval2d", + "chebval3d", + "chebgrid2d", + "chebgrid3d", + "chebvander2d", + "chebvander3d", + "chebcompanion", + "chebgauss", + "chebweight", + "chebinterpolate", +] + +_SCT = TypeVar("_SCT", bound=np.number[Any] | np.object_) +def _cseries_to_zseries(c: npt.NDArray[_SCT]) -> _Series[_SCT]: ... +def _zseries_to_cseries(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... +def _zseries_mul( + z1: npt.NDArray[_SCT], + z2: npt.NDArray[_SCT], +) -> _Series[_SCT]: ... +def _zseries_div( + z1: npt.NDArray[_SCT], + z2: npt.NDArray[_SCT], +) -> _Series[_SCT]: ... +def _zseries_der(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... +def _zseries_int(zs: npt.NDArray[_SCT]) -> _Series[_SCT]: ... + +poly2cheb: _FuncPoly2Ortho[L["poly2cheb"]] +cheb2poly: _FuncUnOp[L["cheb2poly"]] + +chebdomain: Final[_Array2[np.float64]] +chebzero: Final[_Array1[np.int_]] +chebone: Final[_Array1[np.int_]] +chebx: Final[_Array2[np.int_]] + +chebline: _FuncLine[L["chebline"]] +chebfromroots: _FuncFromRoots[L["chebfromroots"]] +chebadd: _FuncBinOp[L["chebadd"]] +chebsub: _FuncBinOp[L["chebsub"]] +chebmulx: _FuncUnOp[L["chebmulx"]] +chebmul: _FuncBinOp[L["chebmul"]] +chebdiv: _FuncBinOp[L["chebdiv"]] +chebpow: _FuncPow[L["chebpow"]] +chebder: _FuncDer[L["chebder"]] +chebint: _FuncInteg[L["chebint"]] +chebval: _FuncVal[L["chebval"]] +chebval2d: _FuncVal2D[L["chebval2d"]] +chebval3d: _FuncVal3D[L["chebval3d"]] +chebvalfromroots: _FuncValFromRoots[L["chebvalfromroots"]] +chebgrid2d: _FuncVal2D[L["chebgrid2d"]] +chebgrid3d: _FuncVal3D[L["chebgrid3d"]] +chebvander: _FuncVander[L["chebvander"]] +chebvander2d: _FuncVander2D[L["chebvander2d"]] +chebvander3d: _FuncVander3D[L["chebvander3d"]] +chebfit: _FuncFit[L["chebfit"]] +chebcompanion: _FuncCompanion[L["chebcompanion"]] +chebroots: _FuncRoots[L["chebroots"]] +chebgauss: _FuncGauss[L["chebgauss"]] +chebweight: _FuncWeight[L["chebweight"]] +chebpts1: _FuncPts[L["chebpts1"]] +chebpts2: _FuncPts[L["chebpts2"]] + +# keep in sync with `Chebyshev.interpolate` +_RT = TypeVar("_RT", bound=np.number[Any] | np.bool | np.object_) +@overload +def chebinterpolate( + func: np.ufunc, + deg: _IntLike_co, + args: tuple[()] = ..., +) -> npt.NDArray[np.float64 | np.complex128 | np.object_]: ... +@overload +def chebinterpolate( + func: Callable[[npt.NDArray[np.float64]], _RT], + deg: _IntLike_co, + args: tuple[()] = ..., +) -> npt.NDArray[_RT]: ... +@overload +def chebinterpolate( + func: Callable[Concatenate[npt.NDArray[np.float64], ...], _RT], + deg: _IntLike_co, + args: Iterable[Any], +) -> npt.NDArray[_RT]: ... + +_Self = TypeVar("_Self", bound=object) + +class Chebyshev(ABCPolyBase[L["T"]]): + @overload + @classmethod + def interpolate( + cls: type[_Self], + /, + func: Callable[[npt.NDArray[np.float64]], _CoefSeries], + deg: _IntLike_co, + domain: None | _SeriesLikeCoef_co = ..., + args: tuple[()] = ..., + ) -> _Self: ... + @overload + @classmethod + def interpolate( + cls: type[_Self], + /, + func: Callable[ + Concatenate[npt.NDArray[np.float64], ...], + _CoefSeries, + ], + deg: _IntLike_co, + domain: None | _SeriesLikeCoef_co = ..., + *, + args: Iterable[Any], + ) -> _Self: ... + @overload + @classmethod + def interpolate( + cls: type[_Self], + func: Callable[ + Concatenate[npt.NDArray[np.float64], ...], + _CoefSeries, + ], + deg: _IntLike_co, + domain: None | _SeriesLikeCoef_co, + args: Iterable[Any], + /, + ) -> _Self: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.py new file mode 100644 index 0000000000000000000000000000000000000000..24e51dca7fa55c83dfa467013440e160b260d9d9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.py @@ -0,0 +1,1740 @@ +""" +============================================================== +Hermite Series, "Physicists" (:mod:`numpy.polynomial.hermite`) +============================================================== + +This module provides a number of objects (mostly functions) useful for +dealing with Hermite series, including a `Hermite` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with such polynomials is in the +docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- +.. autosummary:: + :toctree: generated/ + + Hermite + +Constants +--------- +.. autosummary:: + :toctree: generated/ + + hermdomain + hermzero + hermone + hermx + +Arithmetic +---------- +.. autosummary:: + :toctree: generated/ + + hermadd + hermsub + hermmulx + hermmul + hermdiv + hermpow + hermval + hermval2d + hermval3d + hermgrid2d + hermgrid3d + +Calculus +-------- +.. autosummary:: + :toctree: generated/ + + hermder + hermint + +Misc Functions +-------------- +.. autosummary:: + :toctree: generated/ + + hermfromroots + hermroots + hermvander + hermvander2d + hermvander3d + hermgauss + hermweight + hermcompanion + hermfit + hermtrim + hermline + herm2poly + poly2herm + +See also +-------- +`numpy.polynomial` + +""" +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +__all__ = [ + 'hermzero', 'hermone', 'hermx', 'hermdomain', 'hermline', 'hermadd', + 'hermsub', 'hermmulx', 'hermmul', 'hermdiv', 'hermpow', 'hermval', + 'hermder', 'hermint', 'herm2poly', 'poly2herm', 'hermfromroots', + 'hermvander', 'hermfit', 'hermtrim', 'hermroots', 'Hermite', + 'hermval2d', 'hermval3d', 'hermgrid2d', 'hermgrid3d', 'hermvander2d', + 'hermvander3d', 'hermcompanion', 'hermgauss', 'hermweight'] + +hermtrim = pu.trimcoef + + +def poly2herm(pol): + """ + poly2herm(pol) + + Convert a polynomial to a Hermite series. + + Convert an array representing the coefficients of a polynomial (relative + to the "standard" basis) ordered from lowest degree to highest, to an + array of the coefficients of the equivalent Hermite series, ordered + from lowest to highest degree. + + Parameters + ---------- + pol : array_like + 1-D array containing the polynomial coefficients + + Returns + ------- + c : ndarray + 1-D array containing the coefficients of the equivalent Hermite + series. + + See Also + -------- + herm2poly + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy.polynomial.hermite import poly2herm + >>> poly2herm(np.arange(4)) + array([1. , 2.75 , 0.5 , 0.375]) + + """ + [pol] = pu.as_series([pol]) + deg = len(pol) - 1 + res = 0 + for i in range(deg, -1, -1): + res = hermadd(hermmulx(res), pol[i]) + return res + + +def herm2poly(c): + """ + Convert a Hermite series to a polynomial. + + Convert an array representing the coefficients of a Hermite series, + ordered from lowest degree to highest, to an array of the coefficients + of the equivalent polynomial (relative to the "standard" basis) ordered + from lowest to highest degree. + + Parameters + ---------- + c : array_like + 1-D array containing the Hermite series coefficients, ordered + from lowest order term to highest. + + Returns + ------- + pol : ndarray + 1-D array containing the coefficients of the equivalent polynomial + (relative to the "standard" basis) ordered from lowest order term + to highest. + + See Also + -------- + poly2herm + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy.polynomial.hermite import herm2poly + >>> herm2poly([ 1. , 2.75 , 0.5 , 0.375]) + array([0., 1., 2., 3.]) + + """ + from .polynomial import polyadd, polysub, polymulx + + [c] = pu.as_series([c]) + n = len(c) + if n == 1: + return c + if n == 2: + c[1] *= 2 + return c + else: + c0 = c[-2] + c1 = c[-1] + # i is the current degree of c1 + for i in range(n - 1, 1, -1): + tmp = c0 + c0 = polysub(c[i - 2], c1*(2*(i - 1))) + c1 = polyadd(tmp, polymulx(c1)*2) + return polyadd(c0, polymulx(c1)*2) + + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Hermite +hermdomain = np.array([-1., 1.]) + +# Hermite coefficients representing zero. +hermzero = np.array([0]) + +# Hermite coefficients representing one. +hermone = np.array([1]) + +# Hermite coefficients representing the identity x. +hermx = np.array([0, 1/2]) + + +def hermline(off, scl): + """ + Hermite series whose graph is a straight line. + + + + Parameters + ---------- + off, scl : scalars + The specified line is given by ``off + scl*x``. + + Returns + ------- + y : ndarray + This module's representation of the Hermite series for + ``off + scl*x``. + + See Also + -------- + numpy.polynomial.polynomial.polyline + numpy.polynomial.chebyshev.chebline + numpy.polynomial.legendre.legline + numpy.polynomial.laguerre.lagline + numpy.polynomial.hermite_e.hermeline + + Examples + -------- + >>> from numpy.polynomial.hermite import hermline, hermval + >>> hermval(0,hermline(3, 2)) + 3.0 + >>> hermval(1,hermline(3, 2)) + 5.0 + + """ + if scl != 0: + return np.array([off, scl/2]) + else: + return np.array([off]) + + +def hermfromroots(roots): + """ + Generate a Hermite series with given roots. + + The function returns the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + in Hermite form, where the :math:`r_n` are the roots specified in `roots`. + If a zero has multiplicity n, then it must appear in `roots` n times. + For instance, if 2 is a root of multiplicity three and 3 is a root of + multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. The + roots can appear in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * H_1(x) + ... + c_n * H_n(x) + + The coefficient of the last term is not generally 1 for monic + polynomials in Hermite form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of coefficients. If all roots are real then `out` is a + real array, if some of the roots are complex, then `out` is complex + even if all the coefficients in the result are real (see Examples + below). + + See Also + -------- + numpy.polynomial.polynomial.polyfromroots + numpy.polynomial.legendre.legfromroots + numpy.polynomial.laguerre.lagfromroots + numpy.polynomial.chebyshev.chebfromroots + numpy.polynomial.hermite_e.hermefromroots + + Examples + -------- + >>> from numpy.polynomial.hermite import hermfromroots, hermval + >>> coef = hermfromroots((-1, 0, 1)) + >>> hermval((-1, 0, 1), coef) + array([0., 0., 0.]) + >>> coef = hermfromroots((-1j, 1j)) + >>> hermval((-1j, 1j), coef) + array([0.+0.j, 0.+0.j]) + + """ + return pu._fromroots(hermline, hermmul, roots) + + +def hermadd(c1, c2): + """ + Add one Hermite series to another. + + Returns the sum of two Hermite series `c1` + `c2`. The arguments + are sequences of coefficients ordered from lowest order term to + highest, i.e., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the Hermite series of their sum. + + See Also + -------- + hermsub, hermmulx, hermmul, hermdiv, hermpow + + Notes + ----- + Unlike multiplication, division, etc., the sum of two Hermite series + is a Hermite series (without having to "reproject" the result onto + the basis set) so addition, just like that of "standard" polynomials, + is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.hermite import hermadd + >>> hermadd([1, 2, 3], [1, 2, 3, 4]) + array([2., 4., 6., 4.]) + + """ + return pu._add(c1, c2) + + +def hermsub(c1, c2): + """ + Subtract one Hermite series from another. + + Returns the difference of two Hermite series `c1` - `c2`. The + sequences of coefficients are from lowest order term to highest, i.e., + [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Hermite series coefficients representing their difference. + + See Also + -------- + hermadd, hermmulx, hermmul, hermdiv, hermpow + + Notes + ----- + Unlike multiplication, division, etc., the difference of two Hermite + series is a Hermite series (without having to "reproject" the result + onto the basis set) so subtraction, just like that of "standard" + polynomials, is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.hermite import hermsub + >>> hermsub([1, 2, 3, 4], [1, 2, 3]) + array([0., 0., 0., 4.]) + + """ + return pu._sub(c1, c2) + + +def hermmulx(c): + """Multiply a Hermite series by x. + + Multiply the Hermite series `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + hermadd, hermsub, hermmul, hermdiv, hermpow + + Notes + ----- + The multiplication uses the recursion relationship for Hermite + polynomials in the form + + .. math:: + + xP_i(x) = (P_{i + 1}(x)/2 + i*P_{i - 1}(x)) + + Examples + -------- + >>> from numpy.polynomial.hermite import hermmulx + >>> hermmulx([1, 2, 3]) + array([2. , 6.5, 1. , 1.5]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0]*0 + prd[1] = c[0]/2 + for i in range(1, len(c)): + prd[i + 1] = c[i]/2 + prd[i - 1] += c[i]*i + return prd + + +def hermmul(c1, c2): + """ + Multiply one Hermite series by another. + + Returns the product of two Hermite series `c1` * `c2`. The arguments + are sequences of coefficients, from lowest order "term" to highest, + e.g., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Hermite series coefficients representing their product. + + See Also + -------- + hermadd, hermsub, hermmulx, hermdiv, hermpow + + Notes + ----- + In general, the (polynomial) product of two C-series results in terms + that are not in the Hermite polynomial basis set. Thus, to express + the product as a Hermite series, it is necessary to "reproject" the + product onto said basis set, which may produce "unintuitive" (but + correct) results; see Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermmul + >>> hermmul([1, 2, 3], [0, 1, 2]) + array([52., 29., 52., 7., 6.]) + + """ + # s1, s2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + + if len(c1) > len(c2): + c = c2 + xs = c1 + else: + c = c1 + xs = c2 + + if len(c) == 1: + c0 = c[0]*xs + c1 = 0 + elif len(c) == 2: + c0 = c[0]*xs + c1 = c[1]*xs + else: + nd = len(c) + c0 = c[-2]*xs + c1 = c[-1]*xs + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = hermsub(c[-i]*xs, c1*(2*(nd - 1))) + c1 = hermadd(tmp, hermmulx(c1)*2) + return hermadd(c0, hermmulx(c1)*2) + + +def hermdiv(c1, c2): + """ + Divide one Hermite series by another. + + Returns the quotient-with-remainder of two Hermite series + `c1` / `c2`. The arguments are sequences of coefficients from lowest + order "term" to highest, e.g., [1,2,3] represents the series + ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + [quo, rem] : ndarrays + Of Hermite series coefficients representing the quotient and + remainder. + + See Also + -------- + hermadd, hermsub, hermmulx, hermmul, hermpow + + Notes + ----- + In general, the (polynomial) division of one Hermite series by another + results in quotient and remainder terms that are not in the Hermite + polynomial basis set. Thus, to express these results as a Hermite + series, it is necessary to "reproject" the results onto the Hermite + basis set, which may produce "unintuitive" (but correct) results; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermdiv + >>> hermdiv([ 52., 29., 52., 7., 6.], [0, 1, 2]) + (array([1., 2., 3.]), array([0.])) + >>> hermdiv([ 54., 31., 52., 7., 6.], [0, 1, 2]) + (array([1., 2., 3.]), array([2., 2.])) + >>> hermdiv([ 53., 30., 52., 7., 6.], [0, 1, 2]) + (array([1., 2., 3.]), array([1., 1.])) + + """ + return pu._div(hermmul, c1, c2) + + +def hermpow(c, pow, maxpower=16): + """Raise a Hermite series to a power. + + Returns the Hermite series `c` raised to the power `pow`. The + argument `c` is a sequence of coefficients ordered from low to high. + i.e., [1,2,3] is the series ``P_0 + 2*P_1 + 3*P_2.`` + + Parameters + ---------- + c : array_like + 1-D array of Hermite series coefficients ordered from low to + high. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Hermite series of power. + + See Also + -------- + hermadd, hermsub, hermmulx, hermmul, hermdiv + + Examples + -------- + >>> from numpy.polynomial.hermite import hermpow + >>> hermpow([1, 2, 3], 2) + array([81., 52., 82., 12., 9.]) + + """ + return pu._pow(hermmul, c, pow, maxpower) + + +def hermder(c, m=1, scl=1, axis=0): + """ + Differentiate a Hermite series. + + Returns the Hermite series coefficients `c` differentiated `m` times + along `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The argument + `c` is an array of coefficients from low to high degree along each + axis, e.g., [1,2,3] represents the series ``1*H_0 + 2*H_1 + 3*H_2`` + while [[1,2],[1,2]] represents ``1*H_0(x)*H_0(y) + 1*H_1(x)*H_0(y) + + 2*H_0(x)*H_1(y) + 2*H_1(x)*H_1(y)`` if axis=0 is ``x`` and axis=1 is + ``y``. + + Parameters + ---------- + c : array_like + Array of Hermite series coefficients. If `c` is multidimensional the + different axis correspond to different variables with the degree in + each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change of + variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Hermite series of the derivative. + + See Also + -------- + hermint + + Notes + ----- + In general, the result of differentiating a Hermite series does not + resemble the same operation on a power series. Thus the result of this + function may be "unintuitive," albeit correct; see Examples section + below. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermder + >>> hermder([ 1. , 0.5, 0.5, 0.5]) + array([1., 2., 3.]) + >>> hermder([-0.5, 1./2., 1./8., 1./12., 1./16.], m=2) + array([1., 2., 3.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + c = c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=c.dtype) + for j in range(n, 0, -1): + der[j - 1] = (2*j)*c[j] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def hermint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a Hermite series. + + Returns the Hermite series coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients from low to high degree along each axis, e.g., [1,2,3] + represents the series ``H_0 + 2*H_1 + 3*H_2`` while [[1,2],[1,2]] + represents ``1*H_0(x)*H_0(y) + 1*H_1(x)*H_0(y) + 2*H_0(x)*H_1(y) + + 2*H_1(x)*H_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``. + + Parameters + ---------- + c : array_like + Array of Hermite series coefficients. If c is multidimensional the + different axis correspond to different variables with the degree in + each axis given by the corresponding index. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at + ``lbnd`` is the first value in the list, the value of the second + integral at ``lbnd`` is the second value, etc. If ``k == []`` (the + default), all constants are set to zero. If ``m == 1``, a single + scalar can be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + Hermite series coefficients of the integral. + + Raises + ------ + ValueError + If ``m < 0``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + hermder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. + Why is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a` - perhaps not what one would have first thought. + + Also note that, in general, the result of integrating a C-series needs + to be "reprojected" onto the C-series basis set. Thus, typically, + the result of this function is "unintuitive," albeit correct; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermint + >>> hermint([1,2,3]) # integrate once, value 0 at 0. + array([1. , 0.5, 0.5, 0.5]) + >>> hermint([1,2,3], m=2) # integrate twice, value & deriv 0 at 0 + array([-0.5 , 0.5 , 0.125 , 0.08333333, 0.0625 ]) # may vary + >>> hermint([1,2,3], k=1) # integrate once, value 1 at 0. + array([2. , 0.5, 0.5, 0.5]) + >>> hermint([1,2,3], lbnd=-1) # integrate once, value 0 at -1 + array([-2. , 0.5, 0.5, 0.5]) + >>> hermint([1,2,3], m=2, k=[1,2], lbnd=-1) + array([ 1.66666667, -0.5 , 0.125 , 0.08333333, 0.0625 ]) # may vary + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + k = list(k) + [0]*(cnt - len(k)) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype) + tmp[0] = c[0]*0 + tmp[1] = c[0]/2 + for j in range(1, n): + tmp[j + 1] = c[j]/(2*(j + 1)) + tmp[0] += k[i] - hermval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def hermval(x, c, tensor=True): + """ + Evaluate an Hermite series at points x. + + If `c` is of length ``n + 1``, this function returns the value: + + .. math:: p(x) = c_0 * H_0(x) + c_1 * H_1(x) + ... + c_n * H_n(x) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, algebra_like + The shape of the return value is described above. + + See Also + -------- + hermval2d, hermgrid2d, hermval3d, hermgrid3d + + Notes + ----- + The evaluation uses Clenshaw recursion, aka synthetic division. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermval + >>> coef = [1,2,3] + >>> hermval(1, coef) + 11.0 + >>> hermval([[1,2],[3,4]], coef) + array([[ 11., 51.], + [115., 203.]]) + + """ + c = np.array(c, ndmin=1, copy=None) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + x2 = x*2 + if len(c) == 1: + c0 = c[0] + c1 = 0 + elif len(c) == 2: + c0 = c[0] + c1 = c[1] + else: + nd = len(c) + c0 = c[-2] + c1 = c[-1] + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = c[-i] - c1*(2*(nd - 1)) + c1 = tmp + c1*x2 + return c0 + c1*x2 + + +def hermval2d(x, y, c): + """ + Evaluate a 2-D Hermite series at points (x, y). + + This function returns the values: + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * H_i(x) * H_j(y) + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` is a 1-D array a one is implicitly appended to its shape to make + it 2-D. The shape of the result will be c.shape[2:] + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and if it isn't an ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than two the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points formed with + pairs of corresponding values from `x` and `y`. + + See Also + -------- + hermval, hermgrid2d, hermval3d, hermgrid3d + + Examples + -------- + >>> from numpy.polynomial.hermite import hermval2d + >>> x = [1, 2] + >>> y = [4, 5] + >>> c = [[1, 2, 3], [4, 5, 6]] + >>> hermval2d(x, y, c) + array([1035., 2883.]) + + """ + return pu._valnd(hermval, c, x, y) + + +def hermgrid2d(x, y, c): + """ + Evaluate a 2-D Hermite series on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * H_i(a) * H_j(b) + + where the points ``(a, b)`` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + hermval, hermval2d, hermval3d, hermgrid3d + + Examples + -------- + >>> from numpy.polynomial.hermite import hermgrid2d + >>> x = [1, 2, 3] + >>> y = [4, 5] + >>> c = [[1, 2, 3], [4, 5, 6]] + >>> hermgrid2d(x, y, c) + array([[1035., 1599.], + [1867., 2883.], + [2699., 4167.]]) + + """ + return pu._gridnd(hermval, c, x, y) + + +def hermval3d(x, y, z, c): + """ + Evaluate a 3-D Hermite series at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * H_i(x) * H_j(y) * H_k(z) + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + ``(x, y, z)``, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + hermval, hermval2d, hermgrid2d, hermgrid3d + + Examples + -------- + >>> from numpy.polynomial.hermite import hermval3d + >>> x = [1, 2] + >>> y = [4, 5] + >>> z = [6, 7] + >>> c = [[[1, 2, 3], [4, 5, 6]], [[7, 8, 9], [10, 11, 12]]] + >>> hermval3d(x, y, z, c) + array([ 40077., 120131.]) + + """ + return pu._valnd(hermval, c, x, y, z) + + +def hermgrid3d(x, y, z, c): + """ + Evaluate a 3-D Hermite series on the Cartesian product of x, y, and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * H_i(a) * H_j(b) * H_k(c) + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + hermval, hermval2d, hermgrid2d, hermval3d + + Examples + -------- + >>> from numpy.polynomial.hermite import hermgrid3d + >>> x = [1, 2] + >>> y = [4, 5] + >>> z = [6, 7] + >>> c = [[[1, 2, 3], [4, 5, 6]], [[7, 8, 9], [10, 11, 12]]] + >>> hermgrid3d(x, y, z, c) + array([[[ 40077., 54117.], + [ 49293., 66561.]], + [[ 72375., 97719.], + [ 88975., 120131.]]]) + + """ + return pu._gridnd(hermval, c, x, y, z) + + +def hermvander(x, deg): + """Pseudo-Vandermonde matrix of given degree. + + Returns the pseudo-Vandermonde matrix of degree `deg` and sample points + `x`. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., i] = H_i(x), + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the degree of the Hermite polynomial. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + array ``V = hermvander(x, n)``, then ``np.dot(V, c)`` and + ``hermval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of Hermite series of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray + The pseudo-Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where The last index is the degree of the + corresponding Hermite polynomial. The dtype will be the same as + the converted `x`. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite import hermvander + >>> x = np.array([-1, 0, 1]) + >>> hermvander(x, 3) + array([[ 1., -2., 2., 4.], + [ 1., 0., -2., -0.], + [ 1., 2., 2., -4.]]) + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + v[0] = x*0 + 1 + if ideg > 0: + x2 = x*2 + v[1] = x2 + for i in range(2, ideg + 1): + v[i] = (v[i-1]*x2 - v[i-2]*(2*(i - 1))) + return np.moveaxis(v, 0, -1) + + +def hermvander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = H_i(x) * H_j(y), + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the degrees of + the Hermite polynomials. + + If ``V = hermvander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``hermval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D Hermite + series of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + hermvander, hermvander3d, hermval2d, hermval3d + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite import hermvander2d + >>> x = np.array([-1, 0, 1]) + >>> y = np.array([-1, 0, 1]) + >>> hermvander2d(x, y, [2, 2]) + array([[ 1., -2., 2., -2., 4., -4., 2., -4., 4.], + [ 1., 0., -2., 0., 0., -0., -2., -0., 4.], + [ 1., 2., 2., 2., 4., 4., 2., 4., 4.]]) + + """ + return pu._vander_nd_flat((hermvander, hermvander), (x, y), deg) + + +def hermvander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = H_i(x)*H_j(y)*H_k(z), + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the degrees of the Hermite polynomials. + + If ``V = hermvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``hermval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D Hermite + series of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + hermvander, hermvander3d, hermval2d, hermval3d + + Examples + -------- + >>> from numpy.polynomial.hermite import hermvander3d + >>> x = np.array([-1, 0, 1]) + >>> y = np.array([-1, 0, 1]) + >>> z = np.array([-1, 0, 1]) + >>> hermvander3d(x, y, z, [0, 1, 2]) + array([[ 1., -2., 2., -2., 4., -4.], + [ 1., 0., -2., 0., 0., -0.], + [ 1., 2., 2., 2., 4., 4.]]) + + """ + return pu._vander_nd_flat((hermvander, hermvander, hermvander), (x, y, z), deg) + + +def hermfit(x, y, deg, rcond=None, full=False, w=None): + """ + Least squares fit of Hermite series to data. + + Return the coefficients of a Hermite series of degree `deg` that is the + least squares fit to the data values `y` given at points `x`. If `y` is + 1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple + fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * H_1(x) + ... + c_n * H_n(x), + + where `n` is `deg`. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) or (M, K) + y-coordinates of the sample points. Several data sets of sample + points sharing the same x-coordinates can be fitted at once by + passing in a 2D-array that contains one dataset per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller than + this relative to the largest singular value will be ignored. The + default value is len(x)*eps, where eps is the relative precision of + the float type, about 2e-16 in most cases. + full : bool, optional + Switch determining nature of return value. When it is False (the + default) just the coefficients are returned, when True diagnostic + information from the singular value decomposition is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (M,) or (M, K) + Hermite coefficients ordered from low to high. If `y` was 2-D, + the coefficients for the data in column k of `y` are in column + `k`. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Warns + ----- + RankWarning + The rank of the coefficient matrix in the least-squares fit is + deficient. The warning is only raised if ``full == False``. The + warnings can be turned off by + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.chebyshev.chebfit + numpy.polynomial.legendre.legfit + numpy.polynomial.laguerre.lagfit + numpy.polynomial.polynomial.polyfit + numpy.polynomial.hermite_e.hermefit + hermval : Evaluates a Hermite series. + hermvander : Vandermonde matrix of Hermite series. + hermweight : Hermite weight function + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the Hermite series `p` that + minimizes the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where the :math:`w_j` are the weights. This problem is solved by + setting up the (typically) overdetermined matrix equation + + .. math:: V(x) * c = w * y, + + where `V` is the weighted pseudo Vandermonde matrix of `x`, `c` are the + coefficients to be solved for, `w` are the weights, `y` are the + observed values. This equation is then solved using the singular value + decomposition of `V`. + + If some of the singular values of `V` are so small that they are + neglected, then a `~exceptions.RankWarning` will be issued. This means that + the coefficient values may be poorly determined. Using a lower order fit + will usually get rid of the warning. The `rcond` parameter can also be + set to a value smaller than its default, but the resulting fit may be + spurious and have large contributions from roundoff error. + + Fits using Hermite series are probably most useful when the data can be + approximated by ``sqrt(w(x)) * p(x)``, where ``w(x)`` is the Hermite + weight. In that case the weight ``sqrt(w(x[i]))`` should be used + together with data values ``y[i]/sqrt(w(x[i]))``. The weight function is + available as `hermweight`. + + References + ---------- + .. [1] Wikipedia, "Curve fitting", + https://en.wikipedia.org/wiki/Curve_fitting + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite import hermfit, hermval + >>> x = np.linspace(-10, 10) + >>> rng = np.random.default_rng() + >>> err = rng.normal(scale=1./10, size=len(x)) + >>> y = hermval(x, [1, 2, 3]) + err + >>> hermfit(x, y, 2) + array([1.02294967, 2.00016403, 2.99994614]) # may vary + + """ + return pu._fit(hermvander, x, y, deg, rcond, full, w) + + +def hermcompanion(c): + """Return the scaled companion matrix of c. + + The basis polynomials are scaled so that the companion matrix is + symmetric when `c` is an Hermite basis polynomial. This provides + better eigenvalue estimates than the unscaled case and for basis + polynomials the eigenvalues are guaranteed to be real if + `numpy.linalg.eigvalsh` is used to obtain them. + + Parameters + ---------- + c : array_like + 1-D array of Hermite series coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Scaled companion matrix of dimensions (deg, deg). + + Examples + -------- + >>> from numpy.polynomial.hermite import hermcompanion + >>> hermcompanion([1, 0, 1]) + array([[0. , 0.35355339], + [0.70710678, 0. ]]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[-.5*c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + scl = np.hstack((1., 1./np.sqrt(2.*np.arange(n - 1, 0, -1)))) + scl = np.multiply.accumulate(scl)[::-1] + top = mat.reshape(-1)[1::n+1] + bot = mat.reshape(-1)[n::n+1] + top[...] = np.sqrt(.5*np.arange(1, n)) + bot[...] = top + mat[:, -1] -= scl*c[:-1]/(2.0*c[-1]) + return mat + + +def hermroots(c): + """ + Compute the roots of a Hermite series. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * H_i(x). + + Parameters + ---------- + c : 1-D array_like + 1-D array of coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the series. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.polynomial.polyroots + numpy.polynomial.legendre.legroots + numpy.polynomial.laguerre.lagroots + numpy.polynomial.chebyshev.chebroots + numpy.polynomial.hermite_e.hermeroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the series for such + values. Roots with multiplicity greater than 1 will also show larger + errors as the value of the series near such points is relatively + insensitive to errors in the roots. Isolated roots near the origin can + be improved by a few iterations of Newton's method. + + The Hermite series basis polynomials aren't powers of `x` so the + results of this function may seem unintuitive. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermroots, hermfromroots + >>> coef = hermfromroots([-1, 0, 1]) + >>> coef + array([0. , 0.25 , 0. , 0.125]) + >>> hermroots(coef) + array([-1.00000000e+00, -1.38777878e-17, 1.00000000e+00]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) <= 1: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([-.5*c[0]/c[1]]) + + # rotated companion matrix reduces error + m = hermcompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +def _normed_hermite_n(x, n): + """ + Evaluate a normalized Hermite polynomial. + + Compute the value of the normalized Hermite polynomial of degree ``n`` + at the points ``x``. + + + Parameters + ---------- + x : ndarray of double. + Points at which to evaluate the function + n : int + Degree of the normalized Hermite function to be evaluated. + + Returns + ------- + values : ndarray + The shape of the return value is described above. + + Notes + ----- + This function is needed for finding the Gauss points and integration + weights for high degrees. The values of the standard Hermite functions + overflow when n >= 207. + + """ + if n == 0: + return np.full(x.shape, 1/np.sqrt(np.sqrt(np.pi))) + + c0 = 0. + c1 = 1./np.sqrt(np.sqrt(np.pi)) + nd = float(n) + for i in range(n - 1): + tmp = c0 + c0 = -c1*np.sqrt((nd - 1.)/nd) + c1 = tmp + c1*x*np.sqrt(2./nd) + nd = nd - 1.0 + return c0 + c1*x*np.sqrt(2) + + +def hermgauss(deg): + """ + Gauss-Hermite quadrature. + + Computes the sample points and weights for Gauss-Hermite quadrature. + These sample points and weights will correctly integrate polynomials of + degree :math:`2*deg - 1` or less over the interval :math:`[-\\inf, \\inf]` + with the weight function :math:`f(x) = \\exp(-x^2)`. + + Parameters + ---------- + deg : int + Number of sample points and weights. It must be >= 1. + + Returns + ------- + x : ndarray + 1-D ndarray containing the sample points. + y : ndarray + 1-D ndarray containing the weights. + + Notes + ----- + The results have only been tested up to degree 100, higher degrees may + be problematic. The weights are determined by using the fact that + + .. math:: w_k = c / (H'_n(x_k) * H_{n-1}(x_k)) + + where :math:`c` is a constant independent of :math:`k` and :math:`x_k` + is the k'th root of :math:`H_n`, and then scaling the results to get + the right value when integrating 1. + + Examples + -------- + >>> from numpy.polynomial.hermite import hermgauss + >>> hermgauss(2) + (array([-0.70710678, 0.70710678]), array([0.88622693, 0.88622693])) + + """ + ideg = pu._as_int(deg, "deg") + if ideg <= 0: + raise ValueError("deg must be a positive integer") + + # first approximation of roots. We use the fact that the companion + # matrix is symmetric in this case in order to obtain better zeros. + c = np.array([0]*deg + [1], dtype=np.float64) + m = hermcompanion(c) + x = la.eigvalsh(m) + + # improve roots by one application of Newton + dy = _normed_hermite_n(x, ideg) + df = _normed_hermite_n(x, ideg - 1) * np.sqrt(2*ideg) + x -= dy/df + + # compute the weights. We scale the factor to avoid possible numerical + # overflow. + fm = _normed_hermite_n(x, ideg - 1) + fm /= np.abs(fm).max() + w = 1/(fm * fm) + + # for Hermite we can also symmetrize + w = (w + w[::-1])/2 + x = (x - x[::-1])/2 + + # scale w to get the right value + w *= np.sqrt(np.pi) / w.sum() + + return x, w + + +def hermweight(x): + """ + Weight function of the Hermite polynomials. + + The weight function is :math:`\\exp(-x^2)` and the interval of + integration is :math:`[-\\inf, \\inf]`. the Hermite polynomials are + orthogonal, but not normalized, with respect to this weight function. + + Parameters + ---------- + x : array_like + Values at which the weight function will be computed. + + Returns + ------- + w : ndarray + The weight function at `x`. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite import hermweight + >>> x = np.arange(-2, 2) + >>> hermweight(x) + array([0.01831564, 0.36787944, 1. , 0.36787944]) + + """ + w = np.exp(-x**2) + return w + + +# +# Hermite series class +# + +class Hermite(ABCPolyBase): + """An Hermite series class. + + The Hermite class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + Hermite coefficients in order of increasing degree, i.e, + ``(1, 2, 3)`` gives ``1*H_0(x) + 2*H_1(x) + 3*H_2(x)``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [-1., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [-1., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(hermadd) + _sub = staticmethod(hermsub) + _mul = staticmethod(hermmul) + _div = staticmethod(hermdiv) + _pow = staticmethod(hermpow) + _val = staticmethod(hermval) + _int = staticmethod(hermint) + _der = staticmethod(hermder) + _fit = staticmethod(hermfit) + _line = staticmethod(hermline) + _roots = staticmethod(hermroots) + _fromroots = staticmethod(hermfromroots) + + # Virtual properties + domain = np.array(hermdomain) + window = np.array(hermdomain) + basis_name = 'H' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.pyi new file mode 100644 index 0000000000000000000000000000000000000000..07db43d0c0006601781cd24ee3269ae2f32a0445 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite.pyi @@ -0,0 +1,106 @@ +from typing import Any, Final, Literal as L, TypeVar + +import numpy as np + +from ._polybase import ABCPolyBase +from ._polytypes import ( + _Array1, + _Array2, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncGauss, + _FuncInteg, + _FuncLine, + _FuncPoly2Ortho, + _FuncPow, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVal2D, + _FuncVal3D, + _FuncValFromRoots, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncWeight, +) +from .polyutils import trimcoef as hermtrim + +__all__ = [ + "hermzero", + "hermone", + "hermx", + "hermdomain", + "hermline", + "hermadd", + "hermsub", + "hermmulx", + "hermmul", + "hermdiv", + "hermpow", + "hermval", + "hermder", + "hermint", + "herm2poly", + "poly2herm", + "hermfromroots", + "hermvander", + "hermfit", + "hermtrim", + "hermroots", + "Hermite", + "hermval2d", + "hermval3d", + "hermgrid2d", + "hermgrid3d", + "hermvander2d", + "hermvander3d", + "hermcompanion", + "hermgauss", + "hermweight", +] + +poly2herm: _FuncPoly2Ortho[L["poly2herm"]] +herm2poly: _FuncUnOp[L["herm2poly"]] + +hermdomain: Final[_Array2[np.float64]] +hermzero: Final[_Array1[np.int_]] +hermone: Final[_Array1[np.int_]] +hermx: Final[_Array2[np.int_]] + +hermline: _FuncLine[L["hermline"]] +hermfromroots: _FuncFromRoots[L["hermfromroots"]] +hermadd: _FuncBinOp[L["hermadd"]] +hermsub: _FuncBinOp[L["hermsub"]] +hermmulx: _FuncUnOp[L["hermmulx"]] +hermmul: _FuncBinOp[L["hermmul"]] +hermdiv: _FuncBinOp[L["hermdiv"]] +hermpow: _FuncPow[L["hermpow"]] +hermder: _FuncDer[L["hermder"]] +hermint: _FuncInteg[L["hermint"]] +hermval: _FuncVal[L["hermval"]] +hermval2d: _FuncVal2D[L["hermval2d"]] +hermval3d: _FuncVal3D[L["hermval3d"]] +hermvalfromroots: _FuncValFromRoots[L["hermvalfromroots"]] +hermgrid2d: _FuncVal2D[L["hermgrid2d"]] +hermgrid3d: _FuncVal3D[L["hermgrid3d"]] +hermvander: _FuncVander[L["hermvander"]] +hermvander2d: _FuncVander2D[L["hermvander2d"]] +hermvander3d: _FuncVander3D[L["hermvander3d"]] +hermfit: _FuncFit[L["hermfit"]] +hermcompanion: _FuncCompanion[L["hermcompanion"]] +hermroots: _FuncRoots[L["hermroots"]] + +_ND = TypeVar("_ND", bound=Any) +def _normed_hermite_n( + x: np.ndarray[_ND, np.dtype[np.float64]], + n: int | np.intp, +) -> np.ndarray[_ND, np.dtype[np.float64]]: ... + +hermgauss: _FuncGauss[L["hermgauss"]] +hermweight: _FuncWeight[L["hermweight"]] + +class Hermite(ABCPolyBase[L["H"]]): ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.py new file mode 100644 index 0000000000000000000000000000000000000000..c820760ef75c1db162b0a6e0897c88ba18582464 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.py @@ -0,0 +1,1642 @@ +""" +=================================================================== +HermiteE Series, "Probabilists" (:mod:`numpy.polynomial.hermite_e`) +=================================================================== + +This module provides a number of objects (mostly functions) useful for +dealing with Hermite_e series, including a `HermiteE` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with such polynomials is in the +docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- +.. autosummary:: + :toctree: generated/ + + HermiteE + +Constants +--------- +.. autosummary:: + :toctree: generated/ + + hermedomain + hermezero + hermeone + hermex + +Arithmetic +---------- +.. autosummary:: + :toctree: generated/ + + hermeadd + hermesub + hermemulx + hermemul + hermediv + hermepow + hermeval + hermeval2d + hermeval3d + hermegrid2d + hermegrid3d + +Calculus +-------- +.. autosummary:: + :toctree: generated/ + + hermeder + hermeint + +Misc Functions +-------------- +.. autosummary:: + :toctree: generated/ + + hermefromroots + hermeroots + hermevander + hermevander2d + hermevander3d + hermegauss + hermeweight + hermecompanion + hermefit + hermetrim + hermeline + herme2poly + poly2herme + +See also +-------- +`numpy.polynomial` + +""" +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +__all__ = [ + 'hermezero', 'hermeone', 'hermex', 'hermedomain', 'hermeline', + 'hermeadd', 'hermesub', 'hermemulx', 'hermemul', 'hermediv', + 'hermepow', 'hermeval', 'hermeder', 'hermeint', 'herme2poly', + 'poly2herme', 'hermefromroots', 'hermevander', 'hermefit', 'hermetrim', + 'hermeroots', 'HermiteE', 'hermeval2d', 'hermeval3d', 'hermegrid2d', + 'hermegrid3d', 'hermevander2d', 'hermevander3d', 'hermecompanion', + 'hermegauss', 'hermeweight'] + +hermetrim = pu.trimcoef + + +def poly2herme(pol): + """ + poly2herme(pol) + + Convert a polynomial to a Hermite series. + + Convert an array representing the coefficients of a polynomial (relative + to the "standard" basis) ordered from lowest degree to highest, to an + array of the coefficients of the equivalent Hermite series, ordered + from lowest to highest degree. + + Parameters + ---------- + pol : array_like + 1-D array containing the polynomial coefficients + + Returns + ------- + c : ndarray + 1-D array containing the coefficients of the equivalent Hermite + series. + + See Also + -------- + herme2poly + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite_e import poly2herme + >>> poly2herme(np.arange(4)) + array([ 2., 10., 2., 3.]) + + """ + [pol] = pu.as_series([pol]) + deg = len(pol) - 1 + res = 0 + for i in range(deg, -1, -1): + res = hermeadd(hermemulx(res), pol[i]) + return res + + +def herme2poly(c): + """ + Convert a Hermite series to a polynomial. + + Convert an array representing the coefficients of a Hermite series, + ordered from lowest degree to highest, to an array of the coefficients + of the equivalent polynomial (relative to the "standard" basis) ordered + from lowest to highest degree. + + Parameters + ---------- + c : array_like + 1-D array containing the Hermite series coefficients, ordered + from lowest order term to highest. + + Returns + ------- + pol : ndarray + 1-D array containing the coefficients of the equivalent polynomial + (relative to the "standard" basis) ordered from lowest order term + to highest. + + See Also + -------- + poly2herme + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import herme2poly + >>> herme2poly([ 2., 10., 2., 3.]) + array([0., 1., 2., 3.]) + + """ + from .polynomial import polyadd, polysub, polymulx + + [c] = pu.as_series([c]) + n = len(c) + if n == 1: + return c + if n == 2: + return c + else: + c0 = c[-2] + c1 = c[-1] + # i is the current degree of c1 + for i in range(n - 1, 1, -1): + tmp = c0 + c0 = polysub(c[i - 2], c1*(i - 1)) + c1 = polyadd(tmp, polymulx(c1)) + return polyadd(c0, polymulx(c1)) + + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Hermite +hermedomain = np.array([-1., 1.]) + +# Hermite coefficients representing zero. +hermezero = np.array([0]) + +# Hermite coefficients representing one. +hermeone = np.array([1]) + +# Hermite coefficients representing the identity x. +hermex = np.array([0, 1]) + + +def hermeline(off, scl): + """ + Hermite series whose graph is a straight line. + + Parameters + ---------- + off, scl : scalars + The specified line is given by ``off + scl*x``. + + Returns + ------- + y : ndarray + This module's representation of the Hermite series for + ``off + scl*x``. + + See Also + -------- + numpy.polynomial.polynomial.polyline + numpy.polynomial.chebyshev.chebline + numpy.polynomial.legendre.legline + numpy.polynomial.laguerre.lagline + numpy.polynomial.hermite.hermline + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeline + >>> from numpy.polynomial.hermite_e import hermeline, hermeval + >>> hermeval(0,hermeline(3, 2)) + 3.0 + >>> hermeval(1,hermeline(3, 2)) + 5.0 + + """ + if scl != 0: + return np.array([off, scl]) + else: + return np.array([off]) + + +def hermefromroots(roots): + """ + Generate a HermiteE series with given roots. + + The function returns the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + in HermiteE form, where the :math:`r_n` are the roots specified in `roots`. + If a zero has multiplicity n, then it must appear in `roots` n times. + For instance, if 2 is a root of multiplicity three and 3 is a root of + multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. The + roots can appear in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * He_1(x) + ... + c_n * He_n(x) + + The coefficient of the last term is not generally 1 for monic + polynomials in HermiteE form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of coefficients. If all roots are real then `out` is a + real array, if some of the roots are complex, then `out` is complex + even if all the coefficients in the result are real (see Examples + below). + + See Also + -------- + numpy.polynomial.polynomial.polyfromroots + numpy.polynomial.legendre.legfromroots + numpy.polynomial.laguerre.lagfromroots + numpy.polynomial.hermite.hermfromroots + numpy.polynomial.chebyshev.chebfromroots + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermefromroots, hermeval + >>> coef = hermefromroots((-1, 0, 1)) + >>> hermeval((-1, 0, 1), coef) + array([0., 0., 0.]) + >>> coef = hermefromroots((-1j, 1j)) + >>> hermeval((-1j, 1j), coef) + array([0.+0.j, 0.+0.j]) + + """ + return pu._fromroots(hermeline, hermemul, roots) + + +def hermeadd(c1, c2): + """ + Add one Hermite series to another. + + Returns the sum of two Hermite series `c1` + `c2`. The arguments + are sequences of coefficients ordered from lowest order term to + highest, i.e., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the Hermite series of their sum. + + See Also + -------- + hermesub, hermemulx, hermemul, hermediv, hermepow + + Notes + ----- + Unlike multiplication, division, etc., the sum of two Hermite series + is a Hermite series (without having to "reproject" the result onto + the basis set) so addition, just like that of "standard" polynomials, + is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeadd + >>> hermeadd([1, 2, 3], [1, 2, 3, 4]) + array([2., 4., 6., 4.]) + + """ + return pu._add(c1, c2) + + +def hermesub(c1, c2): + """ + Subtract one Hermite series from another. + + Returns the difference of two Hermite series `c1` - `c2`. The + sequences of coefficients are from lowest order term to highest, i.e., + [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Hermite series coefficients representing their difference. + + See Also + -------- + hermeadd, hermemulx, hermemul, hermediv, hermepow + + Notes + ----- + Unlike multiplication, division, etc., the difference of two Hermite + series is a Hermite series (without having to "reproject" the result + onto the basis set) so subtraction, just like that of "standard" + polynomials, is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermesub + >>> hermesub([1, 2, 3, 4], [1, 2, 3]) + array([0., 0., 0., 4.]) + + """ + return pu._sub(c1, c2) + + +def hermemulx(c): + """Multiply a Hermite series by x. + + Multiply the Hermite series `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + hermeadd, hermesub, hermemul, hermediv, hermepow + + Notes + ----- + The multiplication uses the recursion relationship for Hermite + polynomials in the form + + .. math:: + + xP_i(x) = (P_{i + 1}(x) + iP_{i - 1}(x))) + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermemulx + >>> hermemulx([1, 2, 3]) + array([2., 7., 2., 3.]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0]*0 + prd[1] = c[0] + for i in range(1, len(c)): + prd[i + 1] = c[i] + prd[i - 1] += c[i]*i + return prd + + +def hermemul(c1, c2): + """ + Multiply one Hermite series by another. + + Returns the product of two Hermite series `c1` * `c2`. The arguments + are sequences of coefficients, from lowest order "term" to highest, + e.g., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Hermite series coefficients representing their product. + + See Also + -------- + hermeadd, hermesub, hermemulx, hermediv, hermepow + + Notes + ----- + In general, the (polynomial) product of two C-series results in terms + that are not in the Hermite polynomial basis set. Thus, to express + the product as a Hermite series, it is necessary to "reproject" the + product onto said basis set, which may produce "unintuitive" (but + correct) results; see Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermemul + >>> hermemul([1, 2, 3], [0, 1, 2]) + array([14., 15., 28., 7., 6.]) + + """ + # s1, s2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + + if len(c1) > len(c2): + c = c2 + xs = c1 + else: + c = c1 + xs = c2 + + if len(c) == 1: + c0 = c[0]*xs + c1 = 0 + elif len(c) == 2: + c0 = c[0]*xs + c1 = c[1]*xs + else: + nd = len(c) + c0 = c[-2]*xs + c1 = c[-1]*xs + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = hermesub(c[-i]*xs, c1*(nd - 1)) + c1 = hermeadd(tmp, hermemulx(c1)) + return hermeadd(c0, hermemulx(c1)) + + +def hermediv(c1, c2): + """ + Divide one Hermite series by another. + + Returns the quotient-with-remainder of two Hermite series + `c1` / `c2`. The arguments are sequences of coefficients from lowest + order "term" to highest, e.g., [1,2,3] represents the series + ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Hermite series coefficients ordered from low to + high. + + Returns + ------- + [quo, rem] : ndarrays + Of Hermite series coefficients representing the quotient and + remainder. + + See Also + -------- + hermeadd, hermesub, hermemulx, hermemul, hermepow + + Notes + ----- + In general, the (polynomial) division of one Hermite series by another + results in quotient and remainder terms that are not in the Hermite + polynomial basis set. Thus, to express these results as a Hermite + series, it is necessary to "reproject" the results onto the Hermite + basis set, which may produce "unintuitive" (but correct) results; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermediv + >>> hermediv([ 14., 15., 28., 7., 6.], [0, 1, 2]) + (array([1., 2., 3.]), array([0.])) + >>> hermediv([ 15., 17., 28., 7., 6.], [0, 1, 2]) + (array([1., 2., 3.]), array([1., 2.])) + + """ + return pu._div(hermemul, c1, c2) + + +def hermepow(c, pow, maxpower=16): + """Raise a Hermite series to a power. + + Returns the Hermite series `c` raised to the power `pow`. The + argument `c` is a sequence of coefficients ordered from low to high. + i.e., [1,2,3] is the series ``P_0 + 2*P_1 + 3*P_2.`` + + Parameters + ---------- + c : array_like + 1-D array of Hermite series coefficients ordered from low to + high. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Hermite series of power. + + See Also + -------- + hermeadd, hermesub, hermemulx, hermemul, hermediv + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermepow + >>> hermepow([1, 2, 3], 2) + array([23., 28., 46., 12., 9.]) + + """ + return pu._pow(hermemul, c, pow, maxpower) + + +def hermeder(c, m=1, scl=1, axis=0): + """ + Differentiate a Hermite_e series. + + Returns the series coefficients `c` differentiated `m` times along + `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The argument + `c` is an array of coefficients from low to high degree along each + axis, e.g., [1,2,3] represents the series ``1*He_0 + 2*He_1 + 3*He_2`` + while [[1,2],[1,2]] represents ``1*He_0(x)*He_0(y) + 1*He_1(x)*He_0(y) + + 2*He_0(x)*He_1(y) + 2*He_1(x)*He_1(y)`` if axis=0 is ``x`` and axis=1 + is ``y``. + + Parameters + ---------- + c : array_like + Array of Hermite_e series coefficients. If `c` is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change of + variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Hermite series of the derivative. + + See Also + -------- + hermeint + + Notes + ----- + In general, the result of differentiating a Hermite series does not + resemble the same operation on a power series. Thus the result of this + function may be "unintuitive," albeit correct; see Examples section + below. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeder + >>> hermeder([ 1., 1., 1., 1.]) + array([1., 2., 3.]) + >>> hermeder([-0.25, 1., 1./2., 1./3., 1./4 ], m=2) + array([1., 2., 3.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + return c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=c.dtype) + for j in range(n, 0, -1): + der[j - 1] = j*c[j] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def hermeint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a Hermite_e series. + + Returns the Hermite_e series coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients from low to high degree along each axis, e.g., [1,2,3] + represents the series ``H_0 + 2*H_1 + 3*H_2`` while [[1,2],[1,2]] + represents ``1*H_0(x)*H_0(y) + 1*H_1(x)*H_0(y) + 2*H_0(x)*H_1(y) + + 2*H_1(x)*H_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``. + + Parameters + ---------- + c : array_like + Array of Hermite_e series coefficients. If c is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at + ``lbnd`` is the first value in the list, the value of the second + integral at ``lbnd`` is the second value, etc. If ``k == []`` (the + default), all constants are set to zero. If ``m == 1``, a single + scalar can be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + Hermite_e series coefficients of the integral. + + Raises + ------ + ValueError + If ``m < 0``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + hermeder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. + Why is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a` - perhaps not what one would have first thought. + + Also note that, in general, the result of integrating a C-series needs + to be "reprojected" onto the C-series basis set. Thus, typically, + the result of this function is "unintuitive," albeit correct; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeint + >>> hermeint([1, 2, 3]) # integrate once, value 0 at 0. + array([1., 1., 1., 1.]) + >>> hermeint([1, 2, 3], m=2) # integrate twice, value & deriv 0 at 0 + array([-0.25 , 1. , 0.5 , 0.33333333, 0.25 ]) # may vary + >>> hermeint([1, 2, 3], k=1) # integrate once, value 1 at 0. + array([2., 1., 1., 1.]) + >>> hermeint([1, 2, 3], lbnd=-1) # integrate once, value 0 at -1 + array([-1., 1., 1., 1.]) + >>> hermeint([1, 2, 3], m=2, k=[1, 2], lbnd=-1) + array([ 1.83333333, 0. , 0.5 , 0.33333333, 0.25 ]) # may vary + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + k = list(k) + [0]*(cnt - len(k)) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype) + tmp[0] = c[0]*0 + tmp[1] = c[0] + for j in range(1, n): + tmp[j + 1] = c[j]/(j + 1) + tmp[0] += k[i] - hermeval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def hermeval(x, c, tensor=True): + """ + Evaluate an HermiteE series at points x. + + If `c` is of length ``n + 1``, this function returns the value: + + .. math:: p(x) = c_0 * He_0(x) + c_1 * He_1(x) + ... + c_n * He_n(x) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + with themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, algebra_like + The shape of the return value is described above. + + See Also + -------- + hermeval2d, hermegrid2d, hermeval3d, hermegrid3d + + Notes + ----- + The evaluation uses Clenshaw recursion, aka synthetic division. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeval + >>> coef = [1,2,3] + >>> hermeval(1, coef) + 3.0 + >>> hermeval([[1,2],[3,4]], coef) + array([[ 3., 14.], + [31., 54.]]) + + """ + c = np.array(c, ndmin=1, copy=None) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + if len(c) == 1: + c0 = c[0] + c1 = 0 + elif len(c) == 2: + c0 = c[0] + c1 = c[1] + else: + nd = len(c) + c0 = c[-2] + c1 = c[-1] + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = c[-i] - c1*(nd - 1) + c1 = tmp + c1*x + return c0 + c1*x + + +def hermeval2d(x, y, c): + """ + Evaluate a 2-D HermiteE series at points (x, y). + + This function returns the values: + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * He_i(x) * He_j(y) + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` is a 1-D array a one is implicitly appended to its shape to make + it 2-D. The shape of the result will be c.shape[2:] + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and if it isn't an ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than two the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points formed with + pairs of corresponding values from `x` and `y`. + + See Also + -------- + hermeval, hermegrid2d, hermeval3d, hermegrid3d + """ + return pu._valnd(hermeval, c, x, y) + + +def hermegrid2d(x, y, c): + """ + Evaluate a 2-D HermiteE series on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * H_i(a) * H_j(b) + + where the points ``(a, b)`` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + hermeval, hermeval2d, hermeval3d, hermegrid3d + """ + return pu._gridnd(hermeval, c, x, y) + + +def hermeval3d(x, y, z, c): + """ + Evaluate a 3-D Hermite_e series at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * He_i(x) * He_j(y) * He_k(z) + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + `(x, y, z)`, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + hermeval, hermeval2d, hermegrid2d, hermegrid3d + """ + return pu._valnd(hermeval, c, x, y, z) + + +def hermegrid3d(x, y, z, c): + """ + Evaluate a 3-D HermiteE series on the Cartesian product of x, y, and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * He_i(a) * He_j(b) * He_k(c) + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + hermeval, hermeval2d, hermegrid2d, hermeval3d + """ + return pu._gridnd(hermeval, c, x, y, z) + + +def hermevander(x, deg): + """Pseudo-Vandermonde matrix of given degree. + + Returns the pseudo-Vandermonde matrix of degree `deg` and sample points + `x`. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., i] = He_i(x), + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the degree of the HermiteE polynomial. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + array ``V = hermevander(x, n)``, then ``np.dot(V, c)`` and + ``hermeval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of HermiteE series of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray + The pseudo-Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where The last index is the degree of the + corresponding HermiteE polynomial. The dtype will be the same as + the converted `x`. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite_e import hermevander + >>> x = np.array([-1, 0, 1]) + >>> hermevander(x, 3) + array([[ 1., -1., 0., 2.], + [ 1., 0., -1., -0.], + [ 1., 1., 0., -2.]]) + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + v[0] = x*0 + 1 + if ideg > 0: + v[1] = x + for i in range(2, ideg + 1): + v[i] = (v[i-1]*x - v[i-2]*(i - 1)) + return np.moveaxis(v, 0, -1) + + +def hermevander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = He_i(x) * He_j(y), + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the degrees of + the HermiteE polynomials. + + If ``V = hermevander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``hermeval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D HermiteE + series of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + hermevander, hermevander3d, hermeval2d, hermeval3d + """ + return pu._vander_nd_flat((hermevander, hermevander), (x, y), deg) + + +def hermevander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then Hehe pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = He_i(x)*He_j(y)*He_k(z), + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the degrees of the HermiteE polynomials. + + If ``V = hermevander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``hermeval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D HermiteE + series of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + hermevander, hermevander3d, hermeval2d, hermeval3d + """ + return pu._vander_nd_flat((hermevander, hermevander, hermevander), (x, y, z), deg) + + +def hermefit(x, y, deg, rcond=None, full=False, w=None): + """ + Least squares fit of Hermite series to data. + + Return the coefficients of a HermiteE series of degree `deg` that is + the least squares fit to the data values `y` given at points `x`. If + `y` is 1-D the returned coefficients will also be 1-D. If `y` is 2-D + multiple fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * He_1(x) + ... + c_n * He_n(x), + + where `n` is `deg`. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) or (M, K) + y-coordinates of the sample points. Several data sets of sample + points sharing the same x-coordinates can be fitted at once by + passing in a 2D-array that contains one dataset per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller than + this relative to the largest singular value will be ignored. The + default value is len(x)*eps, where eps is the relative precision of + the float type, about 2e-16 in most cases. + full : bool, optional + Switch determining nature of return value. When it is False (the + default) just the coefficients are returned, when True diagnostic + information from the singular value decomposition is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (M,) or (M, K) + Hermite coefficients ordered from low to high. If `y` was 2-D, + the coefficients for the data in column k of `y` are in column + `k`. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Warns + ----- + RankWarning + The rank of the coefficient matrix in the least-squares fit is + deficient. The warning is only raised if ``full = False``. The + warnings can be turned off by + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.chebyshev.chebfit + numpy.polynomial.legendre.legfit + numpy.polynomial.polynomial.polyfit + numpy.polynomial.hermite.hermfit + numpy.polynomial.laguerre.lagfit + hermeval : Evaluates a Hermite series. + hermevander : pseudo Vandermonde matrix of Hermite series. + hermeweight : HermiteE weight function. + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the HermiteE series `p` that + minimizes the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where the :math:`w_j` are the weights. This problem is solved by + setting up the (typically) overdetermined matrix equation + + .. math:: V(x) * c = w * y, + + where `V` is the pseudo Vandermonde matrix of `x`, the elements of `c` + are the coefficients to be solved for, and the elements of `y` are the + observed values. This equation is then solved using the singular value + decomposition of `V`. + + If some of the singular values of `V` are so small that they are + neglected, then a `~exceptions.RankWarning` will be issued. This means that + the coefficient values may be poorly determined. Using a lower order fit + will usually get rid of the warning. The `rcond` parameter can also be + set to a value smaller than its default, but the resulting fit may be + spurious and have large contributions from roundoff error. + + Fits using HermiteE series are probably most useful when the data can + be approximated by ``sqrt(w(x)) * p(x)``, where ``w(x)`` is the HermiteE + weight. In that case the weight ``sqrt(w(x[i]))`` should be used + together with data values ``y[i]/sqrt(w(x[i]))``. The weight function is + available as `hermeweight`. + + References + ---------- + .. [1] Wikipedia, "Curve fitting", + https://en.wikipedia.org/wiki/Curve_fitting + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.hermite_e import hermefit, hermeval + >>> x = np.linspace(-10, 10) + >>> rng = np.random.default_rng() + >>> err = rng.normal(scale=1./10, size=len(x)) + >>> y = hermeval(x, [1, 2, 3]) + err + >>> hermefit(x, y, 2) + array([1.02284196, 2.00032805, 2.99978457]) # may vary + + """ + return pu._fit(hermevander, x, y, deg, rcond, full, w) + + +def hermecompanion(c): + """ + Return the scaled companion matrix of c. + + The basis polynomials are scaled so that the companion matrix is + symmetric when `c` is an HermiteE basis polynomial. This provides + better eigenvalue estimates than the unscaled case and for basis + polynomials the eigenvalues are guaranteed to be real if + `numpy.linalg.eigvalsh` is used to obtain them. + + Parameters + ---------- + c : array_like + 1-D array of HermiteE series coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Scaled companion matrix of dimensions (deg, deg). + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[-c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + scl = np.hstack((1., 1./np.sqrt(np.arange(n - 1, 0, -1)))) + scl = np.multiply.accumulate(scl)[::-1] + top = mat.reshape(-1)[1::n+1] + bot = mat.reshape(-1)[n::n+1] + top[...] = np.sqrt(np.arange(1, n)) + bot[...] = top + mat[:, -1] -= scl*c[:-1]/c[-1] + return mat + + +def hermeroots(c): + """ + Compute the roots of a HermiteE series. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * He_i(x). + + Parameters + ---------- + c : 1-D array_like + 1-D array of coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the series. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.polynomial.polyroots + numpy.polynomial.legendre.legroots + numpy.polynomial.laguerre.lagroots + numpy.polynomial.hermite.hermroots + numpy.polynomial.chebyshev.chebroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the series for such + values. Roots with multiplicity greater than 1 will also show larger + errors as the value of the series near such points is relatively + insensitive to errors in the roots. Isolated roots near the origin can + be improved by a few iterations of Newton's method. + + The HermiteE series basis polynomials aren't powers of `x` so the + results of this function may seem unintuitive. + + Examples + -------- + >>> from numpy.polynomial.hermite_e import hermeroots, hermefromroots + >>> coef = hermefromroots([-1, 0, 1]) + >>> coef + array([0., 2., 0., 1.]) + >>> hermeroots(coef) + array([-1., 0., 1.]) # may vary + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) <= 1: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([-c[0]/c[1]]) + + # rotated companion matrix reduces error + m = hermecompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +def _normed_hermite_e_n(x, n): + """ + Evaluate a normalized HermiteE polynomial. + + Compute the value of the normalized HermiteE polynomial of degree ``n`` + at the points ``x``. + + + Parameters + ---------- + x : ndarray of double. + Points at which to evaluate the function + n : int + Degree of the normalized HermiteE function to be evaluated. + + Returns + ------- + values : ndarray + The shape of the return value is described above. + + Notes + ----- + This function is needed for finding the Gauss points and integration + weights for high degrees. The values of the standard HermiteE functions + overflow when n >= 207. + + """ + if n == 0: + return np.full(x.shape, 1/np.sqrt(np.sqrt(2*np.pi))) + + c0 = 0. + c1 = 1./np.sqrt(np.sqrt(2*np.pi)) + nd = float(n) + for i in range(n - 1): + tmp = c0 + c0 = -c1*np.sqrt((nd - 1.)/nd) + c1 = tmp + c1*x*np.sqrt(1./nd) + nd = nd - 1.0 + return c0 + c1*x + + +def hermegauss(deg): + """ + Gauss-HermiteE quadrature. + + Computes the sample points and weights for Gauss-HermiteE quadrature. + These sample points and weights will correctly integrate polynomials of + degree :math:`2*deg - 1` or less over the interval :math:`[-\\inf, \\inf]` + with the weight function :math:`f(x) = \\exp(-x^2/2)`. + + Parameters + ---------- + deg : int + Number of sample points and weights. It must be >= 1. + + Returns + ------- + x : ndarray + 1-D ndarray containing the sample points. + y : ndarray + 1-D ndarray containing the weights. + + Notes + ----- + The results have only been tested up to degree 100, higher degrees may + be problematic. The weights are determined by using the fact that + + .. math:: w_k = c / (He'_n(x_k) * He_{n-1}(x_k)) + + where :math:`c` is a constant independent of :math:`k` and :math:`x_k` + is the k'th root of :math:`He_n`, and then scaling the results to get + the right value when integrating 1. + + """ + ideg = pu._as_int(deg, "deg") + if ideg <= 0: + raise ValueError("deg must be a positive integer") + + # first approximation of roots. We use the fact that the companion + # matrix is symmetric in this case in order to obtain better zeros. + c = np.array([0]*deg + [1]) + m = hermecompanion(c) + x = la.eigvalsh(m) + + # improve roots by one application of Newton + dy = _normed_hermite_e_n(x, ideg) + df = _normed_hermite_e_n(x, ideg - 1) * np.sqrt(ideg) + x -= dy/df + + # compute the weights. We scale the factor to avoid possible numerical + # overflow. + fm = _normed_hermite_e_n(x, ideg - 1) + fm /= np.abs(fm).max() + w = 1/(fm * fm) + + # for Hermite_e we can also symmetrize + w = (w + w[::-1])/2 + x = (x - x[::-1])/2 + + # scale w to get the right value + w *= np.sqrt(2*np.pi) / w.sum() + + return x, w + + +def hermeweight(x): + """Weight function of the Hermite_e polynomials. + + The weight function is :math:`\\exp(-x^2/2)` and the interval of + integration is :math:`[-\\inf, \\inf]`. the HermiteE polynomials are + orthogonal, but not normalized, with respect to this weight function. + + Parameters + ---------- + x : array_like + Values at which the weight function will be computed. + + Returns + ------- + w : ndarray + The weight function at `x`. + """ + w = np.exp(-.5*x**2) + return w + + +# +# HermiteE series class +# + +class HermiteE(ABCPolyBase): + """An HermiteE series class. + + The HermiteE class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + HermiteE coefficients in order of increasing degree, i.e, + ``(1, 2, 3)`` gives ``1*He_0(x) + 2*He_1(X) + 3*He_2(x)``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [-1., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [-1., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(hermeadd) + _sub = staticmethod(hermesub) + _mul = staticmethod(hermemul) + _div = staticmethod(hermediv) + _pow = staticmethod(hermepow) + _val = staticmethod(hermeval) + _int = staticmethod(hermeint) + _der = staticmethod(hermeder) + _fit = staticmethod(hermefit) + _line = staticmethod(hermeline) + _roots = staticmethod(hermeroots) + _fromroots = staticmethod(hermefromroots) + + # Virtual properties + domain = np.array(hermedomain) + window = np.array(hermedomain) + basis_name = 'He' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.pyi new file mode 100644 index 0000000000000000000000000000000000000000..94ad7248f268b9d4e4de1685063187c94db25fd7 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/hermite_e.pyi @@ -0,0 +1,106 @@ +from typing import Any, Final, Literal as L, TypeVar + +import numpy as np + +from ._polybase import ABCPolyBase +from ._polytypes import ( + _Array1, + _Array2, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncGauss, + _FuncInteg, + _FuncLine, + _FuncPoly2Ortho, + _FuncPow, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVal2D, + _FuncVal3D, + _FuncValFromRoots, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncWeight, +) +from .polyutils import trimcoef as hermetrim + +__all__ = [ + "hermezero", + "hermeone", + "hermex", + "hermedomain", + "hermeline", + "hermeadd", + "hermesub", + "hermemulx", + "hermemul", + "hermediv", + "hermepow", + "hermeval", + "hermeder", + "hermeint", + "herme2poly", + "poly2herme", + "hermefromroots", + "hermevander", + "hermefit", + "hermetrim", + "hermeroots", + "HermiteE", + "hermeval2d", + "hermeval3d", + "hermegrid2d", + "hermegrid3d", + "hermevander2d", + "hermevander3d", + "hermecompanion", + "hermegauss", + "hermeweight", +] + +poly2herme: _FuncPoly2Ortho[L["poly2herme"]] +herme2poly: _FuncUnOp[L["herme2poly"]] + +hermedomain: Final[_Array2[np.float64]] +hermezero: Final[_Array1[np.int_]] +hermeone: Final[_Array1[np.int_]] +hermex: Final[_Array2[np.int_]] + +hermeline: _FuncLine[L["hermeline"]] +hermefromroots: _FuncFromRoots[L["hermefromroots"]] +hermeadd: _FuncBinOp[L["hermeadd"]] +hermesub: _FuncBinOp[L["hermesub"]] +hermemulx: _FuncUnOp[L["hermemulx"]] +hermemul: _FuncBinOp[L["hermemul"]] +hermediv: _FuncBinOp[L["hermediv"]] +hermepow: _FuncPow[L["hermepow"]] +hermeder: _FuncDer[L["hermeder"]] +hermeint: _FuncInteg[L["hermeint"]] +hermeval: _FuncVal[L["hermeval"]] +hermeval2d: _FuncVal2D[L["hermeval2d"]] +hermeval3d: _FuncVal3D[L["hermeval3d"]] +hermevalfromroots: _FuncValFromRoots[L["hermevalfromroots"]] +hermegrid2d: _FuncVal2D[L["hermegrid2d"]] +hermegrid3d: _FuncVal3D[L["hermegrid3d"]] +hermevander: _FuncVander[L["hermevander"]] +hermevander2d: _FuncVander2D[L["hermevander2d"]] +hermevander3d: _FuncVander3D[L["hermevander3d"]] +hermefit: _FuncFit[L["hermefit"]] +hermecompanion: _FuncCompanion[L["hermecompanion"]] +hermeroots: _FuncRoots[L["hermeroots"]] + +_ND = TypeVar("_ND", bound=Any) +def _normed_hermite_e_n( + x: np.ndarray[_ND, np.dtype[np.float64]], + n: int | np.intp, +) -> np.ndarray[_ND, np.dtype[np.float64]]: ... + +hermegauss: _FuncGauss[L["hermegauss"]] +hermeweight: _FuncWeight[L["hermeweight"]] + +class HermiteE(ABCPolyBase[L["He"]]): ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.py new file mode 100644 index 0000000000000000000000000000000000000000..b2cc5817c30cb892f58f1c366746b5967670d2ad --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.py @@ -0,0 +1,1675 @@ +""" +================================================== +Laguerre Series (:mod:`numpy.polynomial.laguerre`) +================================================== + +This module provides a number of objects (mostly functions) useful for +dealing with Laguerre series, including a `Laguerre` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with such polynomials is in the +docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- +.. autosummary:: + :toctree: generated/ + + Laguerre + +Constants +--------- +.. autosummary:: + :toctree: generated/ + + lagdomain + lagzero + lagone + lagx + +Arithmetic +---------- +.. autosummary:: + :toctree: generated/ + + lagadd + lagsub + lagmulx + lagmul + lagdiv + lagpow + lagval + lagval2d + lagval3d + laggrid2d + laggrid3d + +Calculus +-------- +.. autosummary:: + :toctree: generated/ + + lagder + lagint + +Misc Functions +-------------- +.. autosummary:: + :toctree: generated/ + + lagfromroots + lagroots + lagvander + lagvander2d + lagvander3d + laggauss + lagweight + lagcompanion + lagfit + lagtrim + lagline + lag2poly + poly2lag + +See also +-------- +`numpy.polynomial` + +""" +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +__all__ = [ + 'lagzero', 'lagone', 'lagx', 'lagdomain', 'lagline', 'lagadd', + 'lagsub', 'lagmulx', 'lagmul', 'lagdiv', 'lagpow', 'lagval', 'lagder', + 'lagint', 'lag2poly', 'poly2lag', 'lagfromroots', 'lagvander', + 'lagfit', 'lagtrim', 'lagroots', 'Laguerre', 'lagval2d', 'lagval3d', + 'laggrid2d', 'laggrid3d', 'lagvander2d', 'lagvander3d', 'lagcompanion', + 'laggauss', 'lagweight'] + +lagtrim = pu.trimcoef + + +def poly2lag(pol): + """ + poly2lag(pol) + + Convert a polynomial to a Laguerre series. + + Convert an array representing the coefficients of a polynomial (relative + to the "standard" basis) ordered from lowest degree to highest, to an + array of the coefficients of the equivalent Laguerre series, ordered + from lowest to highest degree. + + Parameters + ---------- + pol : array_like + 1-D array containing the polynomial coefficients + + Returns + ------- + c : ndarray + 1-D array containing the coefficients of the equivalent Laguerre + series. + + See Also + -------- + lag2poly + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.laguerre import poly2lag + >>> poly2lag(np.arange(4)) + array([ 23., -63., 58., -18.]) + + """ + [pol] = pu.as_series([pol]) + res = 0 + for p in pol[::-1]: + res = lagadd(lagmulx(res), p) + return res + + +def lag2poly(c): + """ + Convert a Laguerre series to a polynomial. + + Convert an array representing the coefficients of a Laguerre series, + ordered from lowest degree to highest, to an array of the coefficients + of the equivalent polynomial (relative to the "standard" basis) ordered + from lowest to highest degree. + + Parameters + ---------- + c : array_like + 1-D array containing the Laguerre series coefficients, ordered + from lowest order term to highest. + + Returns + ------- + pol : ndarray + 1-D array containing the coefficients of the equivalent polynomial + (relative to the "standard" basis) ordered from lowest order term + to highest. + + See Also + -------- + poly2lag + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lag2poly + >>> lag2poly([ 23., -63., 58., -18.]) + array([0., 1., 2., 3.]) + + """ + from .polynomial import polyadd, polysub, polymulx + + [c] = pu.as_series([c]) + n = len(c) + if n == 1: + return c + else: + c0 = c[-2] + c1 = c[-1] + # i is the current degree of c1 + for i in range(n - 1, 1, -1): + tmp = c0 + c0 = polysub(c[i - 2], (c1*(i - 1))/i) + c1 = polyadd(tmp, polysub((2*i - 1)*c1, polymulx(c1))/i) + return polyadd(c0, polysub(c1, polymulx(c1))) + + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Laguerre +lagdomain = np.array([0., 1.]) + +# Laguerre coefficients representing zero. +lagzero = np.array([0]) + +# Laguerre coefficients representing one. +lagone = np.array([1]) + +# Laguerre coefficients representing the identity x. +lagx = np.array([1, -1]) + + +def lagline(off, scl): + """ + Laguerre series whose graph is a straight line. + + Parameters + ---------- + off, scl : scalars + The specified line is given by ``off + scl*x``. + + Returns + ------- + y : ndarray + This module's representation of the Laguerre series for + ``off + scl*x``. + + See Also + -------- + numpy.polynomial.polynomial.polyline + numpy.polynomial.chebyshev.chebline + numpy.polynomial.legendre.legline + numpy.polynomial.hermite.hermline + numpy.polynomial.hermite_e.hermeline + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagline, lagval + >>> lagval(0,lagline(3, 2)) + 3.0 + >>> lagval(1,lagline(3, 2)) + 5.0 + + """ + if scl != 0: + return np.array([off + scl, -scl]) + else: + return np.array([off]) + + +def lagfromroots(roots): + """ + Generate a Laguerre series with given roots. + + The function returns the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + in Laguerre form, where the :math:`r_n` are the roots specified in `roots`. + If a zero has multiplicity n, then it must appear in `roots` n times. + For instance, if 2 is a root of multiplicity three and 3 is a root of + multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. The + roots can appear in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * L_1(x) + ... + c_n * L_n(x) + + The coefficient of the last term is not generally 1 for monic + polynomials in Laguerre form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of coefficients. If all roots are real then `out` is a + real array, if some of the roots are complex, then `out` is complex + even if all the coefficients in the result are real (see Examples + below). + + See Also + -------- + numpy.polynomial.polynomial.polyfromroots + numpy.polynomial.legendre.legfromroots + numpy.polynomial.chebyshev.chebfromroots + numpy.polynomial.hermite.hermfromroots + numpy.polynomial.hermite_e.hermefromroots + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagfromroots, lagval + >>> coef = lagfromroots((-1, 0, 1)) + >>> lagval((-1, 0, 1), coef) + array([0., 0., 0.]) + >>> coef = lagfromroots((-1j, 1j)) + >>> lagval((-1j, 1j), coef) + array([0.+0.j, 0.+0.j]) + + """ + return pu._fromroots(lagline, lagmul, roots) + + +def lagadd(c1, c2): + """ + Add one Laguerre series to another. + + Returns the sum of two Laguerre series `c1` + `c2`. The arguments + are sequences of coefficients ordered from lowest order term to + highest, i.e., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Laguerre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the Laguerre series of their sum. + + See Also + -------- + lagsub, lagmulx, lagmul, lagdiv, lagpow + + Notes + ----- + Unlike multiplication, division, etc., the sum of two Laguerre series + is a Laguerre series (without having to "reproject" the result onto + the basis set) so addition, just like that of "standard" polynomials, + is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagadd + >>> lagadd([1, 2, 3], [1, 2, 3, 4]) + array([2., 4., 6., 4.]) + + """ + return pu._add(c1, c2) + + +def lagsub(c1, c2): + """ + Subtract one Laguerre series from another. + + Returns the difference of two Laguerre series `c1` - `c2`. The + sequences of coefficients are from lowest order term to highest, i.e., + [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Laguerre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Laguerre series coefficients representing their difference. + + See Also + -------- + lagadd, lagmulx, lagmul, lagdiv, lagpow + + Notes + ----- + Unlike multiplication, division, etc., the difference of two Laguerre + series is a Laguerre series (without having to "reproject" the result + onto the basis set) so subtraction, just like that of "standard" + polynomials, is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagsub + >>> lagsub([1, 2, 3, 4], [1, 2, 3]) + array([0., 0., 0., 4.]) + + """ + return pu._sub(c1, c2) + + +def lagmulx(c): + """Multiply a Laguerre series by x. + + Multiply the Laguerre series `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of Laguerre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + lagadd, lagsub, lagmul, lagdiv, lagpow + + Notes + ----- + The multiplication uses the recursion relationship for Laguerre + polynomials in the form + + .. math:: + + xP_i(x) = (-(i + 1)*P_{i + 1}(x) + (2i + 1)P_{i}(x) - iP_{i - 1}(x)) + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagmulx + >>> lagmulx([1, 2, 3]) + array([-1., -1., 11., -9.]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0] + prd[1] = -c[0] + for i in range(1, len(c)): + prd[i + 1] = -c[i]*(i + 1) + prd[i] += c[i]*(2*i + 1) + prd[i - 1] -= c[i]*i + return prd + + +def lagmul(c1, c2): + """ + Multiply one Laguerre series by another. + + Returns the product of two Laguerre series `c1` * `c2`. The arguments + are sequences of coefficients, from lowest order "term" to highest, + e.g., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Laguerre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Laguerre series coefficients representing their product. + + See Also + -------- + lagadd, lagsub, lagmulx, lagdiv, lagpow + + Notes + ----- + In general, the (polynomial) product of two C-series results in terms + that are not in the Laguerre polynomial basis set. Thus, to express + the product as a Laguerre series, it is necessary to "reproject" the + product onto said basis set, which may produce "unintuitive" (but + correct) results; see Examples section below. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagmul + >>> lagmul([1, 2, 3], [0, 1, 2]) + array([ 8., -13., 38., -51., 36.]) + + """ + # s1, s2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + + if len(c1) > len(c2): + c = c2 + xs = c1 + else: + c = c1 + xs = c2 + + if len(c) == 1: + c0 = c[0]*xs + c1 = 0 + elif len(c) == 2: + c0 = c[0]*xs + c1 = c[1]*xs + else: + nd = len(c) + c0 = c[-2]*xs + c1 = c[-1]*xs + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = lagsub(c[-i]*xs, (c1*(nd - 1))/nd) + c1 = lagadd(tmp, lagsub((2*nd - 1)*c1, lagmulx(c1))/nd) + return lagadd(c0, lagsub(c1, lagmulx(c1))) + + +def lagdiv(c1, c2): + """ + Divide one Laguerre series by another. + + Returns the quotient-with-remainder of two Laguerre series + `c1` / `c2`. The arguments are sequences of coefficients from lowest + order "term" to highest, e.g., [1,2,3] represents the series + ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Laguerre series coefficients ordered from low to + high. + + Returns + ------- + [quo, rem] : ndarrays + Of Laguerre series coefficients representing the quotient and + remainder. + + See Also + -------- + lagadd, lagsub, lagmulx, lagmul, lagpow + + Notes + ----- + In general, the (polynomial) division of one Laguerre series by another + results in quotient and remainder terms that are not in the Laguerre + polynomial basis set. Thus, to express these results as a Laguerre + series, it is necessary to "reproject" the results onto the Laguerre + basis set, which may produce "unintuitive" (but correct) results; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagdiv + >>> lagdiv([ 8., -13., 38., -51., 36.], [0, 1, 2]) + (array([1., 2., 3.]), array([0.])) + >>> lagdiv([ 9., -12., 38., -51., 36.], [0, 1, 2]) + (array([1., 2., 3.]), array([1., 1.])) + + """ + return pu._div(lagmul, c1, c2) + + +def lagpow(c, pow, maxpower=16): + """Raise a Laguerre series to a power. + + Returns the Laguerre series `c` raised to the power `pow`. The + argument `c` is a sequence of coefficients ordered from low to high. + i.e., [1,2,3] is the series ``P_0 + 2*P_1 + 3*P_2.`` + + Parameters + ---------- + c : array_like + 1-D array of Laguerre series coefficients ordered from low to + high. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Laguerre series of power. + + See Also + -------- + lagadd, lagsub, lagmulx, lagmul, lagdiv + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagpow + >>> lagpow([1, 2, 3], 2) + array([ 14., -16., 56., -72., 54.]) + + """ + return pu._pow(lagmul, c, pow, maxpower) + + +def lagder(c, m=1, scl=1, axis=0): + """ + Differentiate a Laguerre series. + + Returns the Laguerre series coefficients `c` differentiated `m` times + along `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The argument + `c` is an array of coefficients from low to high degree along each + axis, e.g., [1,2,3] represents the series ``1*L_0 + 2*L_1 + 3*L_2`` + while [[1,2],[1,2]] represents ``1*L_0(x)*L_0(y) + 1*L_1(x)*L_0(y) + + 2*L_0(x)*L_1(y) + 2*L_1(x)*L_1(y)`` if axis=0 is ``x`` and axis=1 is + ``y``. + + Parameters + ---------- + c : array_like + Array of Laguerre series coefficients. If `c` is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change of + variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Laguerre series of the derivative. + + See Also + -------- + lagint + + Notes + ----- + In general, the result of differentiating a Laguerre series does not + resemble the same operation on a power series. Thus the result of this + function may be "unintuitive," albeit correct; see Examples section + below. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagder + >>> lagder([ 1., 1., 1., -3.]) + array([1., 2., 3.]) + >>> lagder([ 1., 0., 0., -4., 3.], m=2) + array([1., 2., 3.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + c = c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=c.dtype) + for j in range(n, 1, -1): + der[j - 1] = -c[j] + c[j - 1] += c[j] + der[0] = -c[1] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def lagint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a Laguerre series. + + Returns the Laguerre series coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients from low to high degree along each axis, e.g., [1,2,3] + represents the series ``L_0 + 2*L_1 + 3*L_2`` while [[1,2],[1,2]] + represents ``1*L_0(x)*L_0(y) + 1*L_1(x)*L_0(y) + 2*L_0(x)*L_1(y) + + 2*L_1(x)*L_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``. + + + Parameters + ---------- + c : array_like + Array of Laguerre series coefficients. If `c` is multidimensional + the different axis correspond to different variables with the + degree in each axis given by the corresponding index. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at + ``lbnd`` is the first value in the list, the value of the second + integral at ``lbnd`` is the second value, etc. If ``k == []`` (the + default), all constants are set to zero. If ``m == 1``, a single + scalar can be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + Laguerre series coefficients of the integral. + + Raises + ------ + ValueError + If ``m < 0``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + lagder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. + Why is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a` - perhaps not what one would have first thought. + + Also note that, in general, the result of integrating a C-series needs + to be "reprojected" onto the C-series basis set. Thus, typically, + the result of this function is "unintuitive," albeit correct; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagint + >>> lagint([1,2,3]) + array([ 1., 1., 1., -3.]) + >>> lagint([1,2,3], m=2) + array([ 1., 0., 0., -4., 3.]) + >>> lagint([1,2,3], k=1) + array([ 2., 1., 1., -3.]) + >>> lagint([1,2,3], lbnd=-1) + array([11.5, 1. , 1. , -3. ]) + >>> lagint([1,2], m=2, k=[1,2], lbnd=-1) + array([ 11.16666667, -5. , -3. , 2. ]) # may vary + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + k = list(k) + [0]*(cnt - len(k)) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype) + tmp[0] = c[0] + tmp[1] = -c[0] + for j in range(1, n): + tmp[j] += c[j] + tmp[j + 1] = -c[j] + tmp[0] += k[i] - lagval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def lagval(x, c, tensor=True): + """ + Evaluate a Laguerre series at points x. + + If `c` is of length ``n + 1``, this function returns the value: + + .. math:: p(x) = c_0 * L_0(x) + c_1 * L_1(x) + ... + c_n * L_n(x) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, algebra_like + The shape of the return value is described above. + + See Also + -------- + lagval2d, laggrid2d, lagval3d, laggrid3d + + Notes + ----- + The evaluation uses Clenshaw recursion, aka synthetic division. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagval + >>> coef = [1, 2, 3] + >>> lagval(1, coef) + -0.5 + >>> lagval([[1, 2],[3, 4]], coef) + array([[-0.5, -4. ], + [-4.5, -2. ]]) + + """ + c = np.array(c, ndmin=1, copy=None) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + if len(c) == 1: + c0 = c[0] + c1 = 0 + elif len(c) == 2: + c0 = c[0] + c1 = c[1] + else: + nd = len(c) + c0 = c[-2] + c1 = c[-1] + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = c[-i] - (c1*(nd - 1))/nd + c1 = tmp + (c1*((2*nd - 1) - x))/nd + return c0 + c1*(1 - x) + + +def lagval2d(x, y, c): + """ + Evaluate a 2-D Laguerre series at points (x, y). + + This function returns the values: + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * L_i(x) * L_j(y) + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` is a 1-D array a one is implicitly appended to its shape to make + it 2-D. The shape of the result will be c.shape[2:] + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and if it isn't an ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than two the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points formed with + pairs of corresponding values from `x` and `y`. + + See Also + -------- + lagval, laggrid2d, lagval3d, laggrid3d + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagval2d + >>> c = [[1, 2],[3, 4]] + >>> lagval2d(1, 1, c) + 1.0 + """ + return pu._valnd(lagval, c, x, y) + + +def laggrid2d(x, y, c): + """ + Evaluate a 2-D Laguerre series on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * L_i(a) * L_j(b) + + where the points ``(a, b)`` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape + y.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j is contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional Chebyshev series at points in the + Cartesian product of `x` and `y`. + + See Also + -------- + lagval, lagval2d, lagval3d, laggrid3d + + Examples + -------- + >>> from numpy.polynomial.laguerre import laggrid2d + >>> c = [[1, 2], [3, 4]] + >>> laggrid2d([0, 1], [0, 1], c) + array([[10., 4.], + [ 3., 1.]]) + + """ + return pu._gridnd(lagval, c, x, y) + + +def lagval3d(x, y, z, c): + """ + Evaluate a 3-D Laguerre series at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * L_i(x) * L_j(y) * L_k(z) + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + ``(x, y, z)``, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + lagval, lagval2d, laggrid2d, laggrid3d + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagval3d + >>> c = [[[1, 2], [3, 4]], [[5, 6], [7, 8]]] + >>> lagval3d(1, 1, 2, c) + -1.0 + + """ + return pu._valnd(lagval, c, x, y, z) + + +def laggrid3d(x, y, z, c): + """ + Evaluate a 3-D Laguerre series on the Cartesian product of x, y, and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * L_i(a) * L_j(b) * L_k(c) + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + lagval, lagval2d, laggrid2d, lagval3d + + Examples + -------- + >>> from numpy.polynomial.laguerre import laggrid3d + >>> c = [[[1, 2], [3, 4]], [[5, 6], [7, 8]]] + >>> laggrid3d([0, 1], [0, 1], [2, 4], c) + array([[[ -4., -44.], + [ -2., -18.]], + [[ -2., -14.], + [ -1., -5.]]]) + + """ + return pu._gridnd(lagval, c, x, y, z) + + +def lagvander(x, deg): + """Pseudo-Vandermonde matrix of given degree. + + Returns the pseudo-Vandermonde matrix of degree `deg` and sample points + `x`. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., i] = L_i(x) + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the degree of the Laguerre polynomial. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + array ``V = lagvander(x, n)``, then ``np.dot(V, c)`` and + ``lagval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of Laguerre series of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray + The pseudo-Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where The last index is the degree of the + corresponding Laguerre polynomial. The dtype will be the same as + the converted `x`. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.laguerre import lagvander + >>> x = np.array([0, 1, 2]) + >>> lagvander(x, 3) + array([[ 1. , 1. , 1. , 1. ], + [ 1. , 0. , -0.5 , -0.66666667], + [ 1. , -1. , -1. , -0.33333333]]) + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + v[0] = x*0 + 1 + if ideg > 0: + v[1] = 1 - x + for i in range(2, ideg + 1): + v[i] = (v[i-1]*(2*i - 1 - x) - v[i-2]*(i - 1))/i + return np.moveaxis(v, 0, -1) + + +def lagvander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = L_i(x) * L_j(y), + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the degrees of + the Laguerre polynomials. + + If ``V = lagvander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``lagval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D Laguerre + series of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + lagvander, lagvander3d, lagval2d, lagval3d + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.laguerre import lagvander2d + >>> x = np.array([0]) + >>> y = np.array([2]) + >>> lagvander2d(x, y, [2, 1]) + array([[ 1., -1., 1., -1., 1., -1.]]) + + """ + return pu._vander_nd_flat((lagvander, lagvander), (x, y), deg) + + +def lagvander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = L_i(x)*L_j(y)*L_k(z), + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the degrees of the Laguerre polynomials. + + If ``V = lagvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``lagval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D Laguerre + series of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + lagvander, lagvander3d, lagval2d, lagval3d + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.laguerre import lagvander3d + >>> x = np.array([0]) + >>> y = np.array([2]) + >>> z = np.array([0]) + >>> lagvander3d(x, y, z, [2, 1, 3]) + array([[ 1., 1., 1., 1., -1., -1., -1., -1., 1., 1., 1., 1., -1., + -1., -1., -1., 1., 1., 1., 1., -1., -1., -1., -1.]]) + + """ + return pu._vander_nd_flat((lagvander, lagvander, lagvander), (x, y, z), deg) + + +def lagfit(x, y, deg, rcond=None, full=False, w=None): + """ + Least squares fit of Laguerre series to data. + + Return the coefficients of a Laguerre series of degree `deg` that is the + least squares fit to the data values `y` given at points `x`. If `y` is + 1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple + fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * L_1(x) + ... + c_n * L_n(x), + + where ``n`` is `deg`. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) or (M, K) + y-coordinates of the sample points. Several data sets of sample + points sharing the same x-coordinates can be fitted at once by + passing in a 2D-array that contains one dataset per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller than + this relative to the largest singular value will be ignored. The + default value is len(x)*eps, where eps is the relative precision of + the float type, about 2e-16 in most cases. + full : bool, optional + Switch determining nature of return value. When it is False (the + default) just the coefficients are returned, when True diagnostic + information from the singular value decomposition is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (M,) or (M, K) + Laguerre coefficients ordered from low to high. If `y` was 2-D, + the coefficients for the data in column *k* of `y` are in column + *k*. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Warns + ----- + RankWarning + The rank of the coefficient matrix in the least-squares fit is + deficient. The warning is only raised if ``full == False``. The + warnings can be turned off by + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.polynomial.polyfit + numpy.polynomial.legendre.legfit + numpy.polynomial.chebyshev.chebfit + numpy.polynomial.hermite.hermfit + numpy.polynomial.hermite_e.hermefit + lagval : Evaluates a Laguerre series. + lagvander : pseudo Vandermonde matrix of Laguerre series. + lagweight : Laguerre weight function. + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the Laguerre series ``p`` that + minimizes the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where the :math:`w_j` are the weights. This problem is solved by + setting up as the (typically) overdetermined matrix equation + + .. math:: V(x) * c = w * y, + + where ``V`` is the weighted pseudo Vandermonde matrix of `x`, ``c`` are the + coefficients to be solved for, `w` are the weights, and `y` are the + observed values. This equation is then solved using the singular value + decomposition of ``V``. + + If some of the singular values of `V` are so small that they are + neglected, then a `~exceptions.RankWarning` will be issued. This means that + the coefficient values may be poorly determined. Using a lower order fit + will usually get rid of the warning. The `rcond` parameter can also be + set to a value smaller than its default, but the resulting fit may be + spurious and have large contributions from roundoff error. + + Fits using Laguerre series are probably most useful when the data can + be approximated by ``sqrt(w(x)) * p(x)``, where ``w(x)`` is the Laguerre + weight. In that case the weight ``sqrt(w(x[i]))`` should be used + together with data values ``y[i]/sqrt(w(x[i]))``. The weight function is + available as `lagweight`. + + References + ---------- + .. [1] Wikipedia, "Curve fitting", + https://en.wikipedia.org/wiki/Curve_fitting + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.laguerre import lagfit, lagval + >>> x = np.linspace(0, 10) + >>> rng = np.random.default_rng() + >>> err = rng.normal(scale=1./10, size=len(x)) + >>> y = lagval(x, [1, 2, 3]) + err + >>> lagfit(x, y, 2) + array([1.00578369, 1.99417356, 2.99827656]) # may vary + + """ + return pu._fit(lagvander, x, y, deg, rcond, full, w) + + +def lagcompanion(c): + """ + Return the companion matrix of c. + + The usual companion matrix of the Laguerre polynomials is already + symmetric when `c` is a basis Laguerre polynomial, so no scaling is + applied. + + Parameters + ---------- + c : array_like + 1-D array of Laguerre series coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Companion matrix of dimensions (deg, deg). + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagcompanion + >>> lagcompanion([1, 2, 3]) + array([[ 1. , -0.33333333], + [-1. , 4.33333333]]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[1 + c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + top = mat.reshape(-1)[1::n+1] + mid = mat.reshape(-1)[0::n+1] + bot = mat.reshape(-1)[n::n+1] + top[...] = -np.arange(1, n) + mid[...] = 2.*np.arange(n) + 1. + bot[...] = top + mat[:, -1] += (c[:-1]/c[-1])*n + return mat + + +def lagroots(c): + """ + Compute the roots of a Laguerre series. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * L_i(x). + + Parameters + ---------- + c : 1-D array_like + 1-D array of coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the series. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.polynomial.polyroots + numpy.polynomial.legendre.legroots + numpy.polynomial.chebyshev.chebroots + numpy.polynomial.hermite.hermroots + numpy.polynomial.hermite_e.hermeroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the series for such + values. Roots with multiplicity greater than 1 will also show larger + errors as the value of the series near such points is relatively + insensitive to errors in the roots. Isolated roots near the origin can + be improved by a few iterations of Newton's method. + + The Laguerre series basis polynomials aren't powers of `x` so the + results of this function may seem unintuitive. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagroots, lagfromroots + >>> coef = lagfromroots([0, 1, 2]) + >>> coef + array([ 2., -8., 12., -6.]) + >>> lagroots(coef) + array([-4.4408921e-16, 1.0000000e+00, 2.0000000e+00]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) <= 1: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([1 + c[0]/c[1]]) + + # rotated companion matrix reduces error + m = lagcompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +def laggauss(deg): + """ + Gauss-Laguerre quadrature. + + Computes the sample points and weights for Gauss-Laguerre quadrature. + These sample points and weights will correctly integrate polynomials of + degree :math:`2*deg - 1` or less over the interval :math:`[0, \\inf]` + with the weight function :math:`f(x) = \\exp(-x)`. + + Parameters + ---------- + deg : int + Number of sample points and weights. It must be >= 1. + + Returns + ------- + x : ndarray + 1-D ndarray containing the sample points. + y : ndarray + 1-D ndarray containing the weights. + + Notes + ----- + The results have only been tested up to degree 100 higher degrees may + be problematic. The weights are determined by using the fact that + + .. math:: w_k = c / (L'_n(x_k) * L_{n-1}(x_k)) + + where :math:`c` is a constant independent of :math:`k` and :math:`x_k` + is the k'th root of :math:`L_n`, and then scaling the results to get + the right value when integrating 1. + + Examples + -------- + >>> from numpy.polynomial.laguerre import laggauss + >>> laggauss(2) + (array([0.58578644, 3.41421356]), array([0.85355339, 0.14644661])) + + """ + ideg = pu._as_int(deg, "deg") + if ideg <= 0: + raise ValueError("deg must be a positive integer") + + # first approximation of roots. We use the fact that the companion + # matrix is symmetric in this case in order to obtain better zeros. + c = np.array([0]*deg + [1]) + m = lagcompanion(c) + x = la.eigvalsh(m) + + # improve roots by one application of Newton + dy = lagval(x, c) + df = lagval(x, lagder(c)) + x -= dy/df + + # compute the weights. We scale the factor to avoid possible numerical + # overflow. + fm = lagval(x, c[1:]) + fm /= np.abs(fm).max() + df /= np.abs(df).max() + w = 1/(fm * df) + + # scale w to get the right value, 1 in this case + w /= w.sum() + + return x, w + + +def lagweight(x): + """Weight function of the Laguerre polynomials. + + The weight function is :math:`exp(-x)` and the interval of integration + is :math:`[0, \\inf]`. The Laguerre polynomials are orthogonal, but not + normalized, with respect to this weight function. + + Parameters + ---------- + x : array_like + Values at which the weight function will be computed. + + Returns + ------- + w : ndarray + The weight function at `x`. + + Examples + -------- + >>> from numpy.polynomial.laguerre import lagweight + >>> x = np.array([0, 1, 2]) + >>> lagweight(x) + array([1. , 0.36787944, 0.13533528]) + + """ + w = np.exp(-x) + return w + +# +# Laguerre series class +# + +class Laguerre(ABCPolyBase): + """A Laguerre series class. + + The Laguerre class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + Laguerre coefficients in order of increasing degree, i.e, + ``(1, 2, 3)`` gives ``1*L_0(x) + 2*L_1(X) + 3*L_2(x)``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [0., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [0., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(lagadd) + _sub = staticmethod(lagsub) + _mul = staticmethod(lagmul) + _div = staticmethod(lagdiv) + _pow = staticmethod(lagpow) + _val = staticmethod(lagval) + _int = staticmethod(lagint) + _der = staticmethod(lagder) + _fit = staticmethod(lagfit) + _line = staticmethod(lagline) + _roots = staticmethod(lagroots) + _fromroots = staticmethod(lagfromroots) + + # Virtual properties + domain = np.array(lagdomain) + window = np.array(lagdomain) + basis_name = 'L' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.pyi new file mode 100644 index 0000000000000000000000000000000000000000..ee81157957482006cde90445fa73cf4223723d5f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/laguerre.pyi @@ -0,0 +1,100 @@ +from typing import Final, Literal as L + +import numpy as np + +from ._polybase import ABCPolyBase +from ._polytypes import ( + _Array1, + _Array2, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncGauss, + _FuncInteg, + _FuncLine, + _FuncPoly2Ortho, + _FuncPow, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVal2D, + _FuncVal3D, + _FuncValFromRoots, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncWeight, +) +from .polyutils import trimcoef as lagtrim + +__all__ = [ + "lagzero", + "lagone", + "lagx", + "lagdomain", + "lagline", + "lagadd", + "lagsub", + "lagmulx", + "lagmul", + "lagdiv", + "lagpow", + "lagval", + "lagder", + "lagint", + "lag2poly", + "poly2lag", + "lagfromroots", + "lagvander", + "lagfit", + "lagtrim", + "lagroots", + "Laguerre", + "lagval2d", + "lagval3d", + "laggrid2d", + "laggrid3d", + "lagvander2d", + "lagvander3d", + "lagcompanion", + "laggauss", + "lagweight", +] + +poly2lag: _FuncPoly2Ortho[L["poly2lag"]] +lag2poly: _FuncUnOp[L["lag2poly"]] + +lagdomain: Final[_Array2[np.float64]] +lagzero: Final[_Array1[np.int_]] +lagone: Final[_Array1[np.int_]] +lagx: Final[_Array2[np.int_]] + +lagline: _FuncLine[L["lagline"]] +lagfromroots: _FuncFromRoots[L["lagfromroots"]] +lagadd: _FuncBinOp[L["lagadd"]] +lagsub: _FuncBinOp[L["lagsub"]] +lagmulx: _FuncUnOp[L["lagmulx"]] +lagmul: _FuncBinOp[L["lagmul"]] +lagdiv: _FuncBinOp[L["lagdiv"]] +lagpow: _FuncPow[L["lagpow"]] +lagder: _FuncDer[L["lagder"]] +lagint: _FuncInteg[L["lagint"]] +lagval: _FuncVal[L["lagval"]] +lagval2d: _FuncVal2D[L["lagval2d"]] +lagval3d: _FuncVal3D[L["lagval3d"]] +lagvalfromroots: _FuncValFromRoots[L["lagvalfromroots"]] +laggrid2d: _FuncVal2D[L["laggrid2d"]] +laggrid3d: _FuncVal3D[L["laggrid3d"]] +lagvander: _FuncVander[L["lagvander"]] +lagvander2d: _FuncVander2D[L["lagvander2d"]] +lagvander3d: _FuncVander3D[L["lagvander3d"]] +lagfit: _FuncFit[L["lagfit"]] +lagcompanion: _FuncCompanion[L["lagcompanion"]] +lagroots: _FuncRoots[L["lagroots"]] +laggauss: _FuncGauss[L["laggauss"]] +lagweight: _FuncWeight[L["lagweight"]] + + +class Laguerre(ABCPolyBase[L["L"]]): ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.py new file mode 100644 index 0000000000000000000000000000000000000000..c2cd3fbfe76021c908b0e5a004f68617c1da6d7f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.py @@ -0,0 +1,1605 @@ +""" +================================================== +Legendre Series (:mod:`numpy.polynomial.legendre`) +================================================== + +This module provides a number of objects (mostly functions) useful for +dealing with Legendre series, including a `Legendre` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with such polynomials is in the +docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- +.. autosummary:: + :toctree: generated/ + + Legendre + +Constants +--------- + +.. autosummary:: + :toctree: generated/ + + legdomain + legzero + legone + legx + +Arithmetic +---------- + +.. autosummary:: + :toctree: generated/ + + legadd + legsub + legmulx + legmul + legdiv + legpow + legval + legval2d + legval3d + leggrid2d + leggrid3d + +Calculus +-------- + +.. autosummary:: + :toctree: generated/ + + legder + legint + +Misc Functions +-------------- + +.. autosummary:: + :toctree: generated/ + + legfromroots + legroots + legvander + legvander2d + legvander3d + leggauss + legweight + legcompanion + legfit + legtrim + legline + leg2poly + poly2leg + +See also +-------- +numpy.polynomial + +""" +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +__all__ = [ + 'legzero', 'legone', 'legx', 'legdomain', 'legline', 'legadd', + 'legsub', 'legmulx', 'legmul', 'legdiv', 'legpow', 'legval', 'legder', + 'legint', 'leg2poly', 'poly2leg', 'legfromroots', 'legvander', + 'legfit', 'legtrim', 'legroots', 'Legendre', 'legval2d', 'legval3d', + 'leggrid2d', 'leggrid3d', 'legvander2d', 'legvander3d', 'legcompanion', + 'leggauss', 'legweight'] + +legtrim = pu.trimcoef + + +def poly2leg(pol): + """ + Convert a polynomial to a Legendre series. + + Convert an array representing the coefficients of a polynomial (relative + to the "standard" basis) ordered from lowest degree to highest, to an + array of the coefficients of the equivalent Legendre series, ordered + from lowest to highest degree. + + Parameters + ---------- + pol : array_like + 1-D array containing the polynomial coefficients + + Returns + ------- + c : ndarray + 1-D array containing the coefficients of the equivalent Legendre + series. + + See Also + -------- + leg2poly + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> import numpy as np + >>> from numpy import polynomial as P + >>> p = P.Polynomial(np.arange(4)) + >>> p + Polynomial([0., 1., 2., 3.], domain=[-1., 1.], window=[-1., 1.], ... + >>> c = P.Legendre(P.legendre.poly2leg(p.coef)) + >>> c + Legendre([ 1. , 3.25, 1. , 0.75], domain=[-1, 1], window=[-1, 1]) # may vary + + """ + [pol] = pu.as_series([pol]) + deg = len(pol) - 1 + res = 0 + for i in range(deg, -1, -1): + res = legadd(legmulx(res), pol[i]) + return res + + +def leg2poly(c): + """ + Convert a Legendre series to a polynomial. + + Convert an array representing the coefficients of a Legendre series, + ordered from lowest degree to highest, to an array of the coefficients + of the equivalent polynomial (relative to the "standard" basis) ordered + from lowest to highest degree. + + Parameters + ---------- + c : array_like + 1-D array containing the Legendre series coefficients, ordered + from lowest order term to highest. + + Returns + ------- + pol : ndarray + 1-D array containing the coefficients of the equivalent polynomial + (relative to the "standard" basis) ordered from lowest order term + to highest. + + See Also + -------- + poly2leg + + Notes + ----- + The easy way to do conversions between polynomial basis sets + is to use the convert method of a class instance. + + Examples + -------- + >>> from numpy import polynomial as P + >>> c = P.Legendre(range(4)) + >>> c + Legendre([0., 1., 2., 3.], domain=[-1., 1.], window=[-1., 1.], symbol='x') + >>> p = c.convert(kind=P.Polynomial) + >>> p + Polynomial([-1. , -3.5, 3. , 7.5], domain=[-1., 1.], window=[-1., ... + >>> P.legendre.leg2poly(range(4)) + array([-1. , -3.5, 3. , 7.5]) + + + """ + from .polynomial import polyadd, polysub, polymulx + + [c] = pu.as_series([c]) + n = len(c) + if n < 3: + return c + else: + c0 = c[-2] + c1 = c[-1] + # i is the current degree of c1 + for i in range(n - 1, 1, -1): + tmp = c0 + c0 = polysub(c[i - 2], (c1*(i - 1))/i) + c1 = polyadd(tmp, (polymulx(c1)*(2*i - 1))/i) + return polyadd(c0, polymulx(c1)) + + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Legendre +legdomain = np.array([-1., 1.]) + +# Legendre coefficients representing zero. +legzero = np.array([0]) + +# Legendre coefficients representing one. +legone = np.array([1]) + +# Legendre coefficients representing the identity x. +legx = np.array([0, 1]) + + +def legline(off, scl): + """ + Legendre series whose graph is a straight line. + + + + Parameters + ---------- + off, scl : scalars + The specified line is given by ``off + scl*x``. + + Returns + ------- + y : ndarray + This module's representation of the Legendre series for + ``off + scl*x``. + + See Also + -------- + numpy.polynomial.polynomial.polyline + numpy.polynomial.chebyshev.chebline + numpy.polynomial.laguerre.lagline + numpy.polynomial.hermite.hermline + numpy.polynomial.hermite_e.hermeline + + Examples + -------- + >>> import numpy.polynomial.legendre as L + >>> L.legline(3,2) + array([3, 2]) + >>> L.legval(-3, L.legline(3,2)) # should be -3 + -3.0 + + """ + if scl != 0: + return np.array([off, scl]) + else: + return np.array([off]) + + +def legfromroots(roots): + """ + Generate a Legendre series with given roots. + + The function returns the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + in Legendre form, where the :math:`r_n` are the roots specified in `roots`. + If a zero has multiplicity n, then it must appear in `roots` n times. + For instance, if 2 is a root of multiplicity three and 3 is a root of + multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. The + roots can appear in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * L_1(x) + ... + c_n * L_n(x) + + The coefficient of the last term is not generally 1 for monic + polynomials in Legendre form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of coefficients. If all roots are real then `out` is a + real array, if some of the roots are complex, then `out` is complex + even if all the coefficients in the result are real (see Examples + below). + + See Also + -------- + numpy.polynomial.polynomial.polyfromroots + numpy.polynomial.chebyshev.chebfromroots + numpy.polynomial.laguerre.lagfromroots + numpy.polynomial.hermite.hermfromroots + numpy.polynomial.hermite_e.hermefromroots + + Examples + -------- + >>> import numpy.polynomial.legendre as L + >>> L.legfromroots((-1,0,1)) # x^3 - x relative to the standard basis + array([ 0. , -0.4, 0. , 0.4]) + >>> j = complex(0,1) + >>> L.legfromroots((-j,j)) # x^2 + 1 relative to the standard basis + array([ 1.33333333+0.j, 0.00000000+0.j, 0.66666667+0.j]) # may vary + + """ + return pu._fromroots(legline, legmul, roots) + + +def legadd(c1, c2): + """ + Add one Legendre series to another. + + Returns the sum of two Legendre series `c1` + `c2`. The arguments + are sequences of coefficients ordered from lowest order term to + highest, i.e., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Legendre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the Legendre series of their sum. + + See Also + -------- + legsub, legmulx, legmul, legdiv, legpow + + Notes + ----- + Unlike multiplication, division, etc., the sum of two Legendre series + is a Legendre series (without having to "reproject" the result onto + the basis set) so addition, just like that of "standard" polynomials, + is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> L.legadd(c1,c2) + array([4., 4., 4.]) + + """ + return pu._add(c1, c2) + + +def legsub(c1, c2): + """ + Subtract one Legendre series from another. + + Returns the difference of two Legendre series `c1` - `c2`. The + sequences of coefficients are from lowest order term to highest, i.e., + [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Legendre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Legendre series coefficients representing their difference. + + See Also + -------- + legadd, legmulx, legmul, legdiv, legpow + + Notes + ----- + Unlike multiplication, division, etc., the difference of two Legendre + series is a Legendre series (without having to "reproject" the result + onto the basis set) so subtraction, just like that of "standard" + polynomials, is simply "component-wise." + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> L.legsub(c1,c2) + array([-2., 0., 2.]) + >>> L.legsub(c2,c1) # -C.legsub(c1,c2) + array([ 2., 0., -2.]) + + """ + return pu._sub(c1, c2) + + +def legmulx(c): + """Multiply a Legendre series by x. + + Multiply the Legendre series `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of Legendre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + legadd, legsub, legmul, legdiv, legpow + + Notes + ----- + The multiplication uses the recursion relationship for Legendre + polynomials in the form + + .. math:: + + xP_i(x) = ((i + 1)*P_{i + 1}(x) + i*P_{i - 1}(x))/(2i + 1) + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> L.legmulx([1,2,3]) + array([ 0.66666667, 2.2, 1.33333333, 1.8]) # may vary + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0]*0 + prd[1] = c[0] + for i in range(1, len(c)): + j = i + 1 + k = i - 1 + s = i + j + prd[j] = (c[i]*j)/s + prd[k] += (c[i]*i)/s + return prd + + +def legmul(c1, c2): + """ + Multiply one Legendre series by another. + + Returns the product of two Legendre series `c1` * `c2`. The arguments + are sequences of coefficients, from lowest order "term" to highest, + e.g., [1,2,3] represents the series ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Legendre series coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of Legendre series coefficients representing their product. + + See Also + -------- + legadd, legsub, legmulx, legdiv, legpow + + Notes + ----- + In general, the (polynomial) product of two C-series results in terms + that are not in the Legendre polynomial basis set. Thus, to express + the product as a Legendre series, it is necessary to "reproject" the + product onto said basis set, which may produce "unintuitive" (but + correct) results; see Examples section below. + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c1 = (1,2,3) + >>> c2 = (3,2) + >>> L.legmul(c1,c2) # multiplication requires "reprojection" + array([ 4.33333333, 10.4 , 11.66666667, 3.6 ]) # may vary + + """ + # s1, s2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + + if len(c1) > len(c2): + c = c2 + xs = c1 + else: + c = c1 + xs = c2 + + if len(c) == 1: + c0 = c[0]*xs + c1 = 0 + elif len(c) == 2: + c0 = c[0]*xs + c1 = c[1]*xs + else: + nd = len(c) + c0 = c[-2]*xs + c1 = c[-1]*xs + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = legsub(c[-i]*xs, (c1*(nd - 1))/nd) + c1 = legadd(tmp, (legmulx(c1)*(2*nd - 1))/nd) + return legadd(c0, legmulx(c1)) + + +def legdiv(c1, c2): + """ + Divide one Legendre series by another. + + Returns the quotient-with-remainder of two Legendre series + `c1` / `c2`. The arguments are sequences of coefficients from lowest + order "term" to highest, e.g., [1,2,3] represents the series + ``P_0 + 2*P_1 + 3*P_2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of Legendre series coefficients ordered from low to + high. + + Returns + ------- + quo, rem : ndarrays + Of Legendre series coefficients representing the quotient and + remainder. + + See Also + -------- + legadd, legsub, legmulx, legmul, legpow + + Notes + ----- + In general, the (polynomial) division of one Legendre series by another + results in quotient and remainder terms that are not in the Legendre + polynomial basis set. Thus, to express these results as a Legendre + series, it is necessary to "reproject" the results onto the Legendre + basis set, which may produce "unintuitive" (but correct) results; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c1 = (1,2,3) + >>> c2 = (3,2,1) + >>> L.legdiv(c1,c2) # quotient "intuitive," remainder not + (array([3.]), array([-8., -4.])) + >>> c2 = (0,1,2,3) + >>> L.legdiv(c2,c1) # neither "intuitive" + (array([-0.07407407, 1.66666667]), array([-1.03703704, -2.51851852])) # may vary + + """ + return pu._div(legmul, c1, c2) + + +def legpow(c, pow, maxpower=16): + """Raise a Legendre series to a power. + + Returns the Legendre series `c` raised to the power `pow`. The + argument `c` is a sequence of coefficients ordered from low to high. + i.e., [1,2,3] is the series ``P_0 + 2*P_1 + 3*P_2.`` + + Parameters + ---------- + c : array_like + 1-D array of Legendre series coefficients ordered from low to + high. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Legendre series of power. + + See Also + -------- + legadd, legsub, legmulx, legmul, legdiv + + """ + return pu._pow(legmul, c, pow, maxpower) + + +def legder(c, m=1, scl=1, axis=0): + """ + Differentiate a Legendre series. + + Returns the Legendre series coefficients `c` differentiated `m` times + along `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The argument + `c` is an array of coefficients from low to high degree along each + axis, e.g., [1,2,3] represents the series ``1*L_0 + 2*L_1 + 3*L_2`` + while [[1,2],[1,2]] represents ``1*L_0(x)*L_0(y) + 1*L_1(x)*L_0(y) + + 2*L_0(x)*L_1(y) + 2*L_1(x)*L_1(y)`` if axis=0 is ``x`` and axis=1 is + ``y``. + + Parameters + ---------- + c : array_like + Array of Legendre series coefficients. If c is multidimensional the + different axis correspond to different variables with the degree in + each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change of + variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Legendre series of the derivative. + + See Also + -------- + legint + + Notes + ----- + In general, the result of differentiating a Legendre series does not + resemble the same operation on a power series. Thus the result of this + function may be "unintuitive," albeit correct; see Examples section + below. + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c = (1,2,3,4) + >>> L.legder(c) + array([ 6., 9., 20.]) + >>> L.legder(c, 3) + array([60.]) + >>> L.legder(c, scl=-1) + array([ -6., -9., -20.]) + >>> L.legder(c, 2,-1) + array([ 9., 60.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + c = c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=c.dtype) + for j in range(n, 2, -1): + der[j - 1] = (2*j - 1)*c[j] + c[j - 2] += c[j] + if n > 1: + der[1] = 3*c[2] + der[0] = c[1] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def legint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a Legendre series. + + Returns the Legendre series coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients from low to high degree along each axis, e.g., [1,2,3] + represents the series ``L_0 + 2*L_1 + 3*L_2`` while [[1,2],[1,2]] + represents ``1*L_0(x)*L_0(y) + 1*L_1(x)*L_0(y) + 2*L_0(x)*L_1(y) + + 2*L_1(x)*L_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``. + + Parameters + ---------- + c : array_like + Array of Legendre series coefficients. If c is multidimensional the + different axis correspond to different variables with the degree in + each axis given by the corresponding index. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at + ``lbnd`` is the first value in the list, the value of the second + integral at ``lbnd`` is the second value, etc. If ``k == []`` (the + default), all constants are set to zero. If ``m == 1``, a single + scalar can be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + Legendre series coefficient array of the integral. + + Raises + ------ + ValueError + If ``m < 0``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + legder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. + Why is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a` - perhaps not what one would have first thought. + + Also note that, in general, the result of integrating a C-series needs + to be "reprojected" onto the C-series basis set. Thus, typically, + the result of this function is "unintuitive," albeit correct; see + Examples section below. + + Examples + -------- + >>> from numpy.polynomial import legendre as L + >>> c = (1,2,3) + >>> L.legint(c) + array([ 0.33333333, 0.4 , 0.66666667, 0.6 ]) # may vary + >>> L.legint(c, 3) + array([ 1.66666667e-02, -1.78571429e-02, 4.76190476e-02, # may vary + -1.73472348e-18, 1.90476190e-02, 9.52380952e-03]) + >>> L.legint(c, k=3) + array([ 3.33333333, 0.4 , 0.66666667, 0.6 ]) # may vary + >>> L.legint(c, lbnd=-2) + array([ 7.33333333, 0.4 , 0.66666667, 0.6 ]) # may vary + >>> L.legint(c, scl=2) + array([ 0.66666667, 0.8 , 1.33333333, 1.2 ]) # may vary + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + k = list(k) + [0]*(cnt - len(k)) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype) + tmp[0] = c[0]*0 + tmp[1] = c[0] + if n > 1: + tmp[2] = c[1]/3 + for j in range(2, n): + t = c[j]/(2*j + 1) + tmp[j + 1] = t + tmp[j - 1] -= t + tmp[0] += k[i] - legval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def legval(x, c, tensor=True): + """ + Evaluate a Legendre series at points x. + + If `c` is of length ``n + 1``, this function returns the value: + + .. math:: p(x) = c_0 * L_0(x) + c_1 * L_1(x) + ... + c_n * L_n(x) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, algebra_like + The shape of the return value is described above. + + See Also + -------- + legval2d, leggrid2d, legval3d, leggrid3d + + Notes + ----- + The evaluation uses Clenshaw recursion, aka synthetic division. + + """ + c = np.array(c, ndmin=1, copy=None) + if c.dtype.char in '?bBhHiIlLqQpP': + c = c.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + if len(c) == 1: + c0 = c[0] + c1 = 0 + elif len(c) == 2: + c0 = c[0] + c1 = c[1] + else: + nd = len(c) + c0 = c[-2] + c1 = c[-1] + for i in range(3, len(c) + 1): + tmp = c0 + nd = nd - 1 + c0 = c[-i] - (c1*(nd - 1))/nd + c1 = tmp + (c1*x*(2*nd - 1))/nd + return c0 + c1*x + + +def legval2d(x, y, c): + """ + Evaluate a 2-D Legendre series at points (x, y). + + This function returns the values: + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * L_i(x) * L_j(y) + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` is a 1-D array a one is implicitly appended to its shape to make + it 2-D. The shape of the result will be c.shape[2:] + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and if it isn't an ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than two the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional Legendre series at points formed + from pairs of corresponding values from `x` and `y`. + + See Also + -------- + legval, leggrid2d, legval3d, leggrid3d + """ + return pu._valnd(legval, c, x, y) + + +def leggrid2d(x, y, c): + """ + Evaluate a 2-D Legendre series on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * L_i(a) * L_j(b) + + where the points ``(a, b)`` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape + y.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j is contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional Chebyshev series at points in the + Cartesian product of `x` and `y`. + + See Also + -------- + legval, legval2d, legval3d, leggrid3d + """ + return pu._gridnd(legval, c, x, y) + + +def legval3d(x, y, z, c): + """ + Evaluate a 3-D Legendre series at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * L_i(x) * L_j(y) * L_k(z) + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + ``(x, y, z)``, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + legval, legval2d, leggrid2d, leggrid3d + """ + return pu._valnd(legval, c, x, y, z) + + +def leggrid3d(x, y, z, c): + """ + Evaluate a 3-D Legendre series on the Cartesian product of x, y, and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * L_i(a) * L_j(b) * L_k(c) + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + legval, legval2d, leggrid2d, legval3d + """ + return pu._gridnd(legval, c, x, y, z) + + +def legvander(x, deg): + """Pseudo-Vandermonde matrix of given degree. + + Returns the pseudo-Vandermonde matrix of degree `deg` and sample points + `x`. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., i] = L_i(x) + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the degree of the Legendre polynomial. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + array ``V = legvander(x, n)``, then ``np.dot(V, c)`` and + ``legval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of Legendre series of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray + The pseudo-Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where The last index is the degree of the + corresponding Legendre polynomial. The dtype will be the same as + the converted `x`. + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + # Use forward recursion to generate the entries. This is not as accurate + # as reverse recursion in this application but it is more efficient. + v[0] = x*0 + 1 + if ideg > 0: + v[1] = x + for i in range(2, ideg + 1): + v[i] = (v[i-1]*x*(2*i - 1) - v[i-2]*(i - 1))/i + return np.moveaxis(v, 0, -1) + + +def legvander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = L_i(x) * L_j(y), + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the degrees of + the Legendre polynomials. + + If ``V = legvander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``legval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D Legendre + series of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + legvander, legvander3d, legval2d, legval3d + """ + return pu._vander_nd_flat((legvander, legvander), (x, y), deg) + + +def legvander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = L_i(x)*L_j(y)*L_k(z), + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the degrees of the Legendre polynomials. + + If ``V = legvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``legval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D Legendre + series of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + legvander, legvander3d, legval2d, legval3d + """ + return pu._vander_nd_flat((legvander, legvander, legvander), (x, y, z), deg) + + +def legfit(x, y, deg, rcond=None, full=False, w=None): + """ + Least squares fit of Legendre series to data. + + Return the coefficients of a Legendre series of degree `deg` that is the + least squares fit to the data values `y` given at points `x`. If `y` is + 1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple + fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * L_1(x) + ... + c_n * L_n(x), + + where `n` is `deg`. + + Parameters + ---------- + x : array_like, shape (M,) + x-coordinates of the M sample points ``(x[i], y[i])``. + y : array_like, shape (M,) or (M, K) + y-coordinates of the sample points. Several data sets of sample + points sharing the same x-coordinates can be fitted at once by + passing in a 2D-array that contains one dataset per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller than + this relative to the largest singular value will be ignored. The + default value is len(x)*eps, where eps is the relative precision of + the float type, about 2e-16 in most cases. + full : bool, optional + Switch determining nature of return value. When it is False (the + default) just the coefficients are returned, when True diagnostic + information from the singular value decomposition is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (M,) or (M, K) + Legendre coefficients ordered from low to high. If `y` was + 2-D, the coefficients for the data in column k of `y` are in + column `k`. If `deg` is specified as a list, coefficients for + terms not included in the fit are set equal to zero in the + returned `coef`. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Warns + ----- + RankWarning + The rank of the coefficient matrix in the least-squares fit is + deficient. The warning is only raised if ``full == False``. The + warnings can be turned off by + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.polynomial.polyfit + numpy.polynomial.chebyshev.chebfit + numpy.polynomial.laguerre.lagfit + numpy.polynomial.hermite.hermfit + numpy.polynomial.hermite_e.hermefit + legval : Evaluates a Legendre series. + legvander : Vandermonde matrix of Legendre series. + legweight : Legendre weight function (= 1). + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the Legendre series `p` that + minimizes the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where :math:`w_j` are the weights. This problem is solved by setting up + as the (typically) overdetermined matrix equation + + .. math:: V(x) * c = w * y, + + where `V` is the weighted pseudo Vandermonde matrix of `x`, `c` are the + coefficients to be solved for, `w` are the weights, and `y` are the + observed values. This equation is then solved using the singular value + decomposition of `V`. + + If some of the singular values of `V` are so small that they are + neglected, then a `~exceptions.RankWarning` will be issued. This means that + the coefficient values may be poorly determined. Using a lower order fit + will usually get rid of the warning. The `rcond` parameter can also be + set to a value smaller than its default, but the resulting fit may be + spurious and have large contributions from roundoff error. + + Fits using Legendre series are usually better conditioned than fits + using power series, but much can depend on the distribution of the + sample points and the smoothness of the data. If the quality of the fit + is inadequate splines may be a good alternative. + + References + ---------- + .. [1] Wikipedia, "Curve fitting", + https://en.wikipedia.org/wiki/Curve_fitting + + Examples + -------- + + """ + return pu._fit(legvander, x, y, deg, rcond, full, w) + + +def legcompanion(c): + """Return the scaled companion matrix of c. + + The basis polynomials are scaled so that the companion matrix is + symmetric when `c` is an Legendre basis polynomial. This provides + better eigenvalue estimates than the unscaled case and for basis + polynomials the eigenvalues are guaranteed to be real if + `numpy.linalg.eigvalsh` is used to obtain them. + + Parameters + ---------- + c : array_like + 1-D array of Legendre series coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Scaled companion matrix of dimensions (deg, deg). + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[-c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + scl = 1./np.sqrt(2*np.arange(n) + 1) + top = mat.reshape(-1)[1::n+1] + bot = mat.reshape(-1)[n::n+1] + top[...] = np.arange(1, n)*scl[:n-1]*scl[1:n] + bot[...] = top + mat[:, -1] -= (c[:-1]/c[-1])*(scl/scl[-1])*(n/(2*n - 1)) + return mat + + +def legroots(c): + """ + Compute the roots of a Legendre series. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * L_i(x). + + Parameters + ---------- + c : 1-D array_like + 1-D array of coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the series. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.polynomial.polyroots + numpy.polynomial.chebyshev.chebroots + numpy.polynomial.laguerre.lagroots + numpy.polynomial.hermite.hermroots + numpy.polynomial.hermite_e.hermeroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the series for such values. + Roots with multiplicity greater than 1 will also show larger errors as + the value of the series near such points is relatively insensitive to + errors in the roots. Isolated roots near the origin can be improved by + a few iterations of Newton's method. + + The Legendre series basis polynomials aren't powers of ``x`` so the + results of this function may seem unintuitive. + + Examples + -------- + >>> import numpy.polynomial.legendre as leg + >>> leg.legroots((1, 2, 3, 4)) # 4L_3 + 3L_2 + 2L_1 + 1L_0, all real roots + array([-0.85099543, -0.11407192, 0.51506735]) # may vary + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([-c[0]/c[1]]) + + # rotated companion matrix reduces error + m = legcompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +def leggauss(deg): + """ + Gauss-Legendre quadrature. + + Computes the sample points and weights for Gauss-Legendre quadrature. + These sample points and weights will correctly integrate polynomials of + degree :math:`2*deg - 1` or less over the interval :math:`[-1, 1]` with + the weight function :math:`f(x) = 1`. + + Parameters + ---------- + deg : int + Number of sample points and weights. It must be >= 1. + + Returns + ------- + x : ndarray + 1-D ndarray containing the sample points. + y : ndarray + 1-D ndarray containing the weights. + + Notes + ----- + The results have only been tested up to degree 100, higher degrees may + be problematic. The weights are determined by using the fact that + + .. math:: w_k = c / (L'_n(x_k) * L_{n-1}(x_k)) + + where :math:`c` is a constant independent of :math:`k` and :math:`x_k` + is the k'th root of :math:`L_n`, and then scaling the results to get + the right value when integrating 1. + + """ + ideg = pu._as_int(deg, "deg") + if ideg <= 0: + raise ValueError("deg must be a positive integer") + + # first approximation of roots. We use the fact that the companion + # matrix is symmetric in this case in order to obtain better zeros. + c = np.array([0]*deg + [1]) + m = legcompanion(c) + x = la.eigvalsh(m) + + # improve roots by one application of Newton + dy = legval(x, c) + df = legval(x, legder(c)) + x -= dy/df + + # compute the weights. We scale the factor to avoid possible numerical + # overflow. + fm = legval(x, c[1:]) + fm /= np.abs(fm).max() + df /= np.abs(df).max() + w = 1/(fm * df) + + # for Legendre we can also symmetrize + w = (w + w[::-1])/2 + x = (x - x[::-1])/2 + + # scale w to get the right value + w *= 2. / w.sum() + + return x, w + + +def legweight(x): + """ + Weight function of the Legendre polynomials. + + The weight function is :math:`1` and the interval of integration is + :math:`[-1, 1]`. The Legendre polynomials are orthogonal, but not + normalized, with respect to this weight function. + + Parameters + ---------- + x : array_like + Values at which the weight function will be computed. + + Returns + ------- + w : ndarray + The weight function at `x`. + """ + w = x*0.0 + 1.0 + return w + +# +# Legendre series class +# + +class Legendre(ABCPolyBase): + """A Legendre series class. + + The Legendre class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + Legendre coefficients in order of increasing degree, i.e., + ``(1, 2, 3)`` gives ``1*P_0(x) + 2*P_1(x) + 3*P_2(x)``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [-1., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [-1., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(legadd) + _sub = staticmethod(legsub) + _mul = staticmethod(legmul) + _div = staticmethod(legdiv) + _pow = staticmethod(legpow) + _val = staticmethod(legval) + _int = staticmethod(legint) + _der = staticmethod(legder) + _fit = staticmethod(legfit) + _line = staticmethod(legline) + _roots = staticmethod(legroots) + _fromroots = staticmethod(legfromroots) + + # Virtual properties + domain = np.array(legdomain) + window = np.array(legdomain) + basis_name = 'P' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.pyi new file mode 100644 index 0000000000000000000000000000000000000000..d81f3e6f54a4f72fd2cbc341f0efaa973aa3195a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/legendre.pyi @@ -0,0 +1,99 @@ +from typing import Final, Literal as L + +import numpy as np + +from ._polybase import ABCPolyBase +from ._polytypes import ( + _Array1, + _Array2, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncGauss, + _FuncInteg, + _FuncLine, + _FuncPoly2Ortho, + _FuncPow, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVal2D, + _FuncVal3D, + _FuncValFromRoots, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncWeight, +) +from .polyutils import trimcoef as legtrim + +__all__ = [ + "legzero", + "legone", + "legx", + "legdomain", + "legline", + "legadd", + "legsub", + "legmulx", + "legmul", + "legdiv", + "legpow", + "legval", + "legder", + "legint", + "leg2poly", + "poly2leg", + "legfromroots", + "legvander", + "legfit", + "legtrim", + "legroots", + "Legendre", + "legval2d", + "legval3d", + "leggrid2d", + "leggrid3d", + "legvander2d", + "legvander3d", + "legcompanion", + "leggauss", + "legweight", +] + +poly2leg: _FuncPoly2Ortho[L["poly2leg"]] +leg2poly: _FuncUnOp[L["leg2poly"]] + +legdomain: Final[_Array2[np.float64]] +legzero: Final[_Array1[np.int_]] +legone: Final[_Array1[np.int_]] +legx: Final[_Array2[np.int_]] + +legline: _FuncLine[L["legline"]] +legfromroots: _FuncFromRoots[L["legfromroots"]] +legadd: _FuncBinOp[L["legadd"]] +legsub: _FuncBinOp[L["legsub"]] +legmulx: _FuncUnOp[L["legmulx"]] +legmul: _FuncBinOp[L["legmul"]] +legdiv: _FuncBinOp[L["legdiv"]] +legpow: _FuncPow[L["legpow"]] +legder: _FuncDer[L["legder"]] +legint: _FuncInteg[L["legint"]] +legval: _FuncVal[L["legval"]] +legval2d: _FuncVal2D[L["legval2d"]] +legval3d: _FuncVal3D[L["legval3d"]] +legvalfromroots: _FuncValFromRoots[L["legvalfromroots"]] +leggrid2d: _FuncVal2D[L["leggrid2d"]] +leggrid3d: _FuncVal3D[L["leggrid3d"]] +legvander: _FuncVander[L["legvander"]] +legvander2d: _FuncVander2D[L["legvander2d"]] +legvander3d: _FuncVander3D[L["legvander3d"]] +legfit: _FuncFit[L["legfit"]] +legcompanion: _FuncCompanion[L["legcompanion"]] +legroots: _FuncRoots[L["legroots"]] +leggauss: _FuncGauss[L["leggauss"]] +legweight: _FuncWeight[L["legweight"]] + +class Legendre(ABCPolyBase[L["P"]]): ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.py new file mode 100644 index 0000000000000000000000000000000000000000..86ea3a5d1d6e030929bc9de2f4744983a2a0417e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.py @@ -0,0 +1,1617 @@ +""" +================================================= +Power Series (:mod:`numpy.polynomial.polynomial`) +================================================= + +This module provides a number of objects (mostly functions) useful for +dealing with polynomials, including a `Polynomial` class that +encapsulates the usual arithmetic operations. (General information +on how this module represents and works with polynomial objects is in +the docstring for its "parent" sub-package, `numpy.polynomial`). + +Classes +------- +.. autosummary:: + :toctree: generated/ + + Polynomial + +Constants +--------- +.. autosummary:: + :toctree: generated/ + + polydomain + polyzero + polyone + polyx + +Arithmetic +---------- +.. autosummary:: + :toctree: generated/ + + polyadd + polysub + polymulx + polymul + polydiv + polypow + polyval + polyval2d + polyval3d + polygrid2d + polygrid3d + +Calculus +-------- +.. autosummary:: + :toctree: generated/ + + polyder + polyint + +Misc Functions +-------------- +.. autosummary:: + :toctree: generated/ + + polyfromroots + polyroots + polyvalfromroots + polyvander + polyvander2d + polyvander3d + polycompanion + polyfit + polytrim + polyline + +See Also +-------- +`numpy.polynomial` + +""" +__all__ = [ + 'polyzero', 'polyone', 'polyx', 'polydomain', 'polyline', 'polyadd', + 'polysub', 'polymulx', 'polymul', 'polydiv', 'polypow', 'polyval', + 'polyvalfromroots', 'polyder', 'polyint', 'polyfromroots', 'polyvander', + 'polyfit', 'polytrim', 'polyroots', 'Polynomial', 'polyval2d', 'polyval3d', + 'polygrid2d', 'polygrid3d', 'polyvander2d', 'polyvander3d', + 'polycompanion'] + +import numpy as np +import numpy.linalg as la +from numpy.lib.array_utils import normalize_axis_index + +from . import polyutils as pu +from ._polybase import ABCPolyBase + +polytrim = pu.trimcoef + +# +# These are constant arrays are of integer type so as to be compatible +# with the widest range of other types, such as Decimal. +# + +# Polynomial default domain. +polydomain = np.array([-1., 1.]) + +# Polynomial coefficients representing zero. +polyzero = np.array([0]) + +# Polynomial coefficients representing one. +polyone = np.array([1]) + +# Polynomial coefficients representing the identity x. +polyx = np.array([0, 1]) + +# +# Polynomial series functions +# + + +def polyline(off, scl): + """ + Returns an array representing a linear polynomial. + + Parameters + ---------- + off, scl : scalars + The "y-intercept" and "slope" of the line, respectively. + + Returns + ------- + y : ndarray + This module's representation of the linear polynomial ``off + + scl*x``. + + See Also + -------- + numpy.polynomial.chebyshev.chebline + numpy.polynomial.legendre.legline + numpy.polynomial.laguerre.lagline + numpy.polynomial.hermite.hermline + numpy.polynomial.hermite_e.hermeline + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> P.polyline(1, -1) + array([ 1, -1]) + >>> P.polyval(1, P.polyline(1, -1)) # should be 0 + 0.0 + + """ + if scl != 0: + return np.array([off, scl]) + else: + return np.array([off]) + + +def polyfromroots(roots): + """ + Generate a monic polynomial with given roots. + + Return the coefficients of the polynomial + + .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n), + + where the :math:`r_n` are the roots specified in `roots`. If a zero has + multiplicity n, then it must appear in `roots` n times. For instance, + if 2 is a root of multiplicity three and 3 is a root of multiplicity 2, + then `roots` looks something like [2, 2, 2, 3, 3]. The roots can appear + in any order. + + If the returned coefficients are `c`, then + + .. math:: p(x) = c_0 + c_1 * x + ... + x^n + + The coefficient of the last term is 1 for monic polynomials in this + form. + + Parameters + ---------- + roots : array_like + Sequence containing the roots. + + Returns + ------- + out : ndarray + 1-D array of the polynomial's coefficients If all the roots are + real, then `out` is also real, otherwise it is complex. (see + Examples below). + + See Also + -------- + numpy.polynomial.chebyshev.chebfromroots + numpy.polynomial.legendre.legfromroots + numpy.polynomial.laguerre.lagfromroots + numpy.polynomial.hermite.hermfromroots + numpy.polynomial.hermite_e.hermefromroots + + Notes + ----- + The coefficients are determined by multiplying together linear factors + of the form ``(x - r_i)``, i.e. + + .. math:: p(x) = (x - r_0) (x - r_1) ... (x - r_n) + + where ``n == len(roots) - 1``; note that this implies that ``1`` is always + returned for :math:`a_n`. + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> P.polyfromroots((-1,0,1)) # x(x - 1)(x + 1) = x^3 - x + array([ 0., -1., 0., 1.]) + >>> j = complex(0,1) + >>> P.polyfromroots((-j,j)) # complex returned, though values are real + array([1.+0.j, 0.+0.j, 1.+0.j]) + + """ + return pu._fromroots(polyline, polymul, roots) + + +def polyadd(c1, c2): + """ + Add one polynomial to another. + + Returns the sum of two polynomials `c1` + `c2`. The arguments are + sequences of coefficients from lowest order term to highest, i.e., + [1,2,3] represents the polynomial ``1 + 2*x + 3*x**2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of polynomial coefficients ordered from low to high. + + Returns + ------- + out : ndarray + The coefficient array representing their sum. + + See Also + -------- + polysub, polymulx, polymul, polydiv, polypow + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c1 = (1, 2, 3) + >>> c2 = (3, 2, 1) + >>> sum = P.polyadd(c1,c2); sum + array([4., 4., 4.]) + >>> P.polyval(2, sum) # 4 + 4(2) + 4(2**2) + 28.0 + + """ + return pu._add(c1, c2) + + +def polysub(c1, c2): + """ + Subtract one polynomial from another. + + Returns the difference of two polynomials `c1` - `c2`. The arguments + are sequences of coefficients from lowest order term to highest, i.e., + [1,2,3] represents the polynomial ``1 + 2*x + 3*x**2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of polynomial coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Of coefficients representing their difference. + + See Also + -------- + polyadd, polymulx, polymul, polydiv, polypow + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c1 = (1, 2, 3) + >>> c2 = (3, 2, 1) + >>> P.polysub(c1,c2) + array([-2., 0., 2.]) + >>> P.polysub(c2, c1) # -P.polysub(c1,c2) + array([ 2., 0., -2.]) + + """ + return pu._sub(c1, c2) + + +def polymulx(c): + """Multiply a polynomial by x. + + Multiply the polynomial `c` by x, where x is the independent + variable. + + + Parameters + ---------- + c : array_like + 1-D array of polynomial coefficients ordered from low to + high. + + Returns + ------- + out : ndarray + Array representing the result of the multiplication. + + See Also + -------- + polyadd, polysub, polymul, polydiv, polypow + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = (1, 2, 3) + >>> P.polymulx(c) + array([0., 1., 2., 3.]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + # The zero series needs special treatment + if len(c) == 1 and c[0] == 0: + return c + + prd = np.empty(len(c) + 1, dtype=c.dtype) + prd[0] = c[0]*0 + prd[1:] = c + return prd + + +def polymul(c1, c2): + """ + Multiply one polynomial by another. + + Returns the product of two polynomials `c1` * `c2`. The arguments are + sequences of coefficients, from lowest order term to highest, e.g., + [1,2,3] represents the polynomial ``1 + 2*x + 3*x**2.`` + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of coefficients representing a polynomial, relative to the + "standard" basis, and ordered from lowest order term to highest. + + Returns + ------- + out : ndarray + Of the coefficients of their product. + + See Also + -------- + polyadd, polysub, polymulx, polydiv, polypow + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c1 = (1, 2, 3) + >>> c2 = (3, 2, 1) + >>> P.polymul(c1, c2) + array([ 3., 8., 14., 8., 3.]) + + """ + # c1, c2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + ret = np.convolve(c1, c2) + return pu.trimseq(ret) + + +def polydiv(c1, c2): + """ + Divide one polynomial by another. + + Returns the quotient-with-remainder of two polynomials `c1` / `c2`. + The arguments are sequences of coefficients, from lowest order term + to highest, e.g., [1,2,3] represents ``1 + 2*x + 3*x**2``. + + Parameters + ---------- + c1, c2 : array_like + 1-D arrays of polynomial coefficients ordered from low to high. + + Returns + ------- + [quo, rem] : ndarrays + Of coefficient series representing the quotient and remainder. + + See Also + -------- + polyadd, polysub, polymulx, polymul, polypow + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c1 = (1, 2, 3) + >>> c2 = (3, 2, 1) + >>> P.polydiv(c1, c2) + (array([3.]), array([-8., -4.])) + >>> P.polydiv(c2, c1) + (array([ 0.33333333]), array([ 2.66666667, 1.33333333])) # may vary + + """ + # c1, c2 are trimmed copies + [c1, c2] = pu.as_series([c1, c2]) + if c2[-1] == 0: + raise ZeroDivisionError # FIXME: add message with details to exception + + # note: this is more efficient than `pu._div(polymul, c1, c2)` + lc1 = len(c1) + lc2 = len(c2) + if lc1 < lc2: + return c1[:1]*0, c1 + elif lc2 == 1: + return c1/c2[-1], c1[:1]*0 + else: + dlen = lc1 - lc2 + scl = c2[-1] + c2 = c2[:-1]/scl + i = dlen + j = lc1 - 1 + while i >= 0: + c1[i:j] -= c2*c1[j] + i -= 1 + j -= 1 + return c1[j+1:]/scl, pu.trimseq(c1[:j+1]) + + +def polypow(c, pow, maxpower=None): + """Raise a polynomial to a power. + + Returns the polynomial `c` raised to the power `pow`. The argument + `c` is a sequence of coefficients ordered from low to high. i.e., + [1,2,3] is the series ``1 + 2*x + 3*x**2.`` + + Parameters + ---------- + c : array_like + 1-D array of array of series coefficients ordered from low to + high degree. + pow : integer + Power to which the series will be raised + maxpower : integer, optional + Maximum power allowed. This is mainly to limit growth of the series + to unmanageable size. Default is 16 + + Returns + ------- + coef : ndarray + Power series of power. + + See Also + -------- + polyadd, polysub, polymulx, polymul, polydiv + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> P.polypow([1, 2, 3], 2) + array([ 1., 4., 10., 12., 9.]) + + """ + # note: this is more efficient than `pu._pow(polymul, c1, c2)`, as it + # avoids calling `as_series` repeatedly + return pu._pow(np.convolve, c, pow, maxpower) + + +def polyder(c, m=1, scl=1, axis=0): + """ + Differentiate a polynomial. + + Returns the polynomial coefficients `c` differentiated `m` times along + `axis`. At each iteration the result is multiplied by `scl` (the + scaling factor is for use in a linear change of variable). The + argument `c` is an array of coefficients from low to high degree along + each axis, e.g., [1,2,3] represents the polynomial ``1 + 2*x + 3*x**2`` + while [[1,2],[1,2]] represents ``1 + 1*x + 2*y + 2*x*y`` if axis=0 is + ``x`` and axis=1 is ``y``. + + Parameters + ---------- + c : array_like + Array of polynomial coefficients. If c is multidimensional the + different axis correspond to different variables with the degree + in each axis given by the corresponding index. + m : int, optional + Number of derivatives taken, must be non-negative. (Default: 1) + scl : scalar, optional + Each differentiation is multiplied by `scl`. The end result is + multiplication by ``scl**m``. This is for use in a linear change + of variable. (Default: 1) + axis : int, optional + Axis over which the derivative is taken. (Default: 0). + + Returns + ------- + der : ndarray + Polynomial coefficients of the derivative. + + See Also + -------- + polyint + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = (1, 2, 3, 4) + >>> P.polyder(c) # (d/dx)(c) + array([ 2., 6., 12.]) + >>> P.polyder(c, 3) # (d**3/dx**3)(c) + array([24.]) + >>> P.polyder(c, scl=-1) # (d/d(-x))(c) + array([ -2., -6., -12.]) + >>> P.polyder(c, 2, -1) # (d**2/d(-x)**2)(c) + array([ 6., 24.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + # astype fails with NA + c = c + 0.0 + cdt = c.dtype + cnt = pu._as_int(m, "the order of derivation") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of derivation must be non-negative") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + c = np.moveaxis(c, iaxis, 0) + n = len(c) + if cnt >= n: + c = c[:1]*0 + else: + for i in range(cnt): + n = n - 1 + c *= scl + der = np.empty((n,) + c.shape[1:], dtype=cdt) + for j in range(n, 0, -1): + der[j - 1] = j*c[j] + c = der + c = np.moveaxis(c, 0, iaxis) + return c + + +def polyint(c, m=1, k=[], lbnd=0, scl=1, axis=0): + """ + Integrate a polynomial. + + Returns the polynomial coefficients `c` integrated `m` times from + `lbnd` along `axis`. At each iteration the resulting series is + **multiplied** by `scl` and an integration constant, `k`, is added. + The scaling factor is for use in a linear change of variable. ("Buyer + beware": note that, depending on what one is doing, one may want `scl` + to be the reciprocal of what one might expect; for more information, + see the Notes section below.) The argument `c` is an array of + coefficients, from low to high degree along each axis, e.g., [1,2,3] + represents the polynomial ``1 + 2*x + 3*x**2`` while [[1,2],[1,2]] + represents ``1 + 1*x + 2*y + 2*x*y`` if axis=0 is ``x`` and axis=1 is + ``y``. + + Parameters + ---------- + c : array_like + 1-D array of polynomial coefficients, ordered from low to high. + m : int, optional + Order of integration, must be positive. (Default: 1) + k : {[], list, scalar}, optional + Integration constant(s). The value of the first integral at zero + is the first value in the list, the value of the second integral + at zero is the second value, etc. If ``k == []`` (the default), + all constants are set to zero. If ``m == 1``, a single scalar can + be given instead of a list. + lbnd : scalar, optional + The lower bound of the integral. (Default: 0) + scl : scalar, optional + Following each integration the result is *multiplied* by `scl` + before the integration constant is added. (Default: 1) + axis : int, optional + Axis over which the integral is taken. (Default: 0). + + Returns + ------- + S : ndarray + Coefficient array of the integral. + + Raises + ------ + ValueError + If ``m < 1``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or + ``np.ndim(scl) != 0``. + + See Also + -------- + polyder + + Notes + ----- + Note that the result of each integration is *multiplied* by `scl`. Why + is this important to note? Say one is making a linear change of + variable :math:`u = ax + b` in an integral relative to `x`. Then + :math:`dx = du/a`, so one will need to set `scl` equal to + :math:`1/a` - perhaps not what one would have first thought. + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = (1, 2, 3) + >>> P.polyint(c) # should return array([0, 1, 1, 1]) + array([0., 1., 1., 1.]) + >>> P.polyint(c, 3) # should return array([0, 0, 0, 1/6, 1/12, 1/20]) + array([ 0. , 0. , 0. , 0.16666667, 0.08333333, # may vary + 0.05 ]) + >>> P.polyint(c, k=3) # should return array([3, 1, 1, 1]) + array([3., 1., 1., 1.]) + >>> P.polyint(c,lbnd=-2) # should return array([6, 1, 1, 1]) + array([6., 1., 1., 1.]) + >>> P.polyint(c,scl=-2) # should return array([0, -2, -2, -2]) + array([ 0., -2., -2., -2.]) + + """ + c = np.array(c, ndmin=1, copy=True) + if c.dtype.char in '?bBhHiIlLqQpP': + # astype doesn't preserve mask attribute. + c = c + 0.0 + cdt = c.dtype + if not np.iterable(k): + k = [k] + cnt = pu._as_int(m, "the order of integration") + iaxis = pu._as_int(axis, "the axis") + if cnt < 0: + raise ValueError("The order of integration must be non-negative") + if len(k) > cnt: + raise ValueError("Too many integration constants") + if np.ndim(lbnd) != 0: + raise ValueError("lbnd must be a scalar.") + if np.ndim(scl) != 0: + raise ValueError("scl must be a scalar.") + iaxis = normalize_axis_index(iaxis, c.ndim) + + if cnt == 0: + return c + + k = list(k) + [0]*(cnt - len(k)) + c = np.moveaxis(c, iaxis, 0) + for i in range(cnt): + n = len(c) + c *= scl + if n == 1 and np.all(c[0] == 0): + c[0] += k[i] + else: + tmp = np.empty((n + 1,) + c.shape[1:], dtype=cdt) + tmp[0] = c[0]*0 + tmp[1] = c[0] + for j in range(1, n): + tmp[j + 1] = c[j]/(j + 1) + tmp[0] += k[i] - polyval(lbnd, tmp) + c = tmp + c = np.moveaxis(c, 0, iaxis) + return c + + +def polyval(x, c, tensor=True): + """ + Evaluate a polynomial at points x. + + If `c` is of length ``n + 1``, this function returns the value + + .. math:: p(x) = c_0 + c_1 * x + ... + c_n * x^n + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `c`. + + If `c` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If + `c` is multidimensional, then the shape of the result depends on the + value of `tensor`. If `tensor` is true the shape will be c.shape[1:] + + x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that + scalars have shape (,). + + Trailing zeros in the coefficients will be used in the evaluation, so + they should be avoided if efficiency is a concern. + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + with themselves and with the elements of `c`. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree n are contained in c[n]. If `c` is multidimensional the + remaining indices enumerate multiple polynomials. In the two + dimensional case the coefficients may be thought of as stored in + the columns of `c`. + tensor : boolean, optional + If True, the shape of the coefficient array is extended with ones + on the right, one for each dimension of `x`. Scalars have dimension 0 + for this action. The result is that every column of coefficients in + `c` is evaluated for every element of `x`. If False, `x` is broadcast + over the columns of `c` for the evaluation. This keyword is useful + when `c` is multidimensional. The default value is True. + + Returns + ------- + values : ndarray, compatible object + The shape of the returned array is described above. + + See Also + -------- + polyval2d, polygrid2d, polyval3d, polygrid3d + + Notes + ----- + The evaluation uses Horner's method. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial.polynomial import polyval + >>> polyval(1, [1,2,3]) + 6.0 + >>> a = np.arange(4).reshape(2,2) + >>> a + array([[0, 1], + [2, 3]]) + >>> polyval(a, [1, 2, 3]) + array([[ 1., 6.], + [17., 34.]]) + >>> coef = np.arange(4).reshape(2, 2) # multidimensional coefficients + >>> coef + array([[0, 1], + [2, 3]]) + >>> polyval([1, 2], coef, tensor=True) + array([[2., 4.], + [4., 7.]]) + >>> polyval([1, 2], coef, tensor=False) + array([2., 7.]) + + """ + c = np.array(c, ndmin=1, copy=None) + if c.dtype.char in '?bBhHiIlLqQpP': + # astype fails with NA + c = c + 0.0 + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray) and tensor: + c = c.reshape(c.shape + (1,)*x.ndim) + + c0 = c[-1] + x*0 + for i in range(2, len(c) + 1): + c0 = c[-i] + c0*x + return c0 + + +def polyvalfromroots(x, r, tensor=True): + """ + Evaluate a polynomial specified by its roots at points x. + + If `r` is of length ``N``, this function returns the value + + .. math:: p(x) = \\prod_{n=1}^{N} (x - r_n) + + The parameter `x` is converted to an array only if it is a tuple or a + list, otherwise it is treated as a scalar. In either case, either `x` + or its elements must support multiplication and addition both with + themselves and with the elements of `r`. + + If `r` is a 1-D array, then ``p(x)`` will have the same shape as `x`. If `r` + is multidimensional, then the shape of the result depends on the value of + `tensor`. If `tensor` is ``True`` the shape will be r.shape[1:] + x.shape; + that is, each polynomial is evaluated at every value of `x`. If `tensor` is + ``False``, the shape will be r.shape[1:]; that is, each polynomial is + evaluated only for the corresponding broadcast value of `x`. Note that + scalars have shape (,). + + Parameters + ---------- + x : array_like, compatible object + If `x` is a list or tuple, it is converted to an ndarray, otherwise + it is left unchanged and treated as a scalar. In either case, `x` + or its elements must support addition and multiplication with + with themselves and with the elements of `r`. + r : array_like + Array of roots. If `r` is multidimensional the first index is the + root index, while the remaining indices enumerate multiple + polynomials. For instance, in the two dimensional case the roots + of each polynomial may be thought of as stored in the columns of `r`. + tensor : boolean, optional + If True, the shape of the roots array is extended with ones on the + right, one for each dimension of `x`. Scalars have dimension 0 for this + action. The result is that every column of coefficients in `r` is + evaluated for every element of `x`. If False, `x` is broadcast over the + columns of `r` for the evaluation. This keyword is useful when `r` is + multidimensional. The default value is True. + + Returns + ------- + values : ndarray, compatible object + The shape of the returned array is described above. + + See Also + -------- + polyroots, polyfromroots, polyval + + Examples + -------- + >>> from numpy.polynomial.polynomial import polyvalfromroots + >>> polyvalfromroots(1, [1, 2, 3]) + 0.0 + >>> a = np.arange(4).reshape(2, 2) + >>> a + array([[0, 1], + [2, 3]]) + >>> polyvalfromroots(a, [-1, 0, 1]) + array([[-0., 0.], + [ 6., 24.]]) + >>> r = np.arange(-2, 2).reshape(2,2) # multidimensional coefficients + >>> r # each column of r defines one polynomial + array([[-2, -1], + [ 0, 1]]) + >>> b = [-2, 1] + >>> polyvalfromroots(b, r, tensor=True) + array([[-0., 3.], + [ 3., 0.]]) + >>> polyvalfromroots(b, r, tensor=False) + array([-0., 0.]) + + """ + r = np.array(r, ndmin=1, copy=None) + if r.dtype.char in '?bBhHiIlLqQpP': + r = r.astype(np.double) + if isinstance(x, (tuple, list)): + x = np.asarray(x) + if isinstance(x, np.ndarray): + if tensor: + r = r.reshape(r.shape + (1,)*x.ndim) + elif x.ndim >= r.ndim: + raise ValueError("x.ndim must be < r.ndim when tensor == False") + return np.prod(x - r, axis=0) + + +def polyval2d(x, y, c): + """ + Evaluate a 2-D polynomial at points (x, y). + + This function returns the value + + .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * x^i * y^j + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars and they + must have the same shape after conversion. In either case, either `x` + and `y` or their elements must support multiplication and addition both + with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points ``(x, y)``, + where `x` and `y` must have the same shape. If `x` or `y` is a list + or tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term + of multi-degree i,j is contained in ``c[i,j]``. If `c` has + dimension greater than two the remaining indices enumerate multiple + sets of coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points formed with + pairs of corresponding values from `x` and `y`. + + See Also + -------- + polyval, polygrid2d, polyval3d, polygrid3d + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = ((1, 2, 3), (4, 5, 6)) + >>> P.polyval2d(1, 1, c) + 21.0 + + """ + return pu._valnd(polyval, c, x, y) + + +def polygrid2d(x, y, c): + """ + Evaluate a 2-D polynomial on the Cartesian product of x and y. + + This function returns the values: + + .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * a^i * b^j + + where the points ``(a, b)`` consist of all pairs formed by taking + `a` from `x` and `b` from `y`. The resulting points form a grid with + `x` in the first dimension and `y` in the second. + + The parameters `x` and `y` are converted to arrays only if they are + tuples or a lists, otherwise they are treated as a scalars. In either + case, either `x` and `y` or their elements must support multiplication + and addition both with themselves and with the elements of `c`. + + If `c` has fewer than two dimensions, ones are implicitly appended to + its shape to make it 2-D. The shape of the result will be c.shape[2:] + + x.shape + y.shape. + + Parameters + ---------- + x, y : array_like, compatible objects + The two dimensional series is evaluated at the points in the + Cartesian product of `x` and `y`. If `x` or `y` is a list or + tuple, it is first converted to an ndarray, otherwise it is left + unchanged and, if it isn't an ndarray, it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + polyval, polyval2d, polyval3d, polygrid3d + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = ((1, 2, 3), (4, 5, 6)) + >>> P.polygrid2d([0, 1], [0, 1], c) + array([[ 1., 6.], + [ 5., 21.]]) + + """ + return pu._gridnd(polyval, c, x, y) + + +def polyval3d(x, y, z, c): + """ + Evaluate a 3-D polynomial at points (x, y, z). + + This function returns the values: + + .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * x^i * y^j * z^k + + The parameters `x`, `y`, and `z` are converted to arrays only if + they are tuples or a lists, otherwise they are treated as a scalars and + they must have the same shape after conversion. In either case, either + `x`, `y`, and `z` or their elements must support multiplication and + addition both with themselves and with the elements of `c`. + + If `c` has fewer than 3 dimensions, ones are implicitly appended to its + shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape. + + Parameters + ---------- + x, y, z : array_like, compatible object + The three dimensional series is evaluated at the points + ``(x, y, z)``, where `x`, `y`, and `z` must have the same shape. If + any of `x`, `y`, or `z` is a list or tuple, it is first converted + to an ndarray, otherwise it is left unchanged and if it isn't an + ndarray it is treated as a scalar. + c : array_like + Array of coefficients ordered so that the coefficient of the term of + multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension + greater than 3 the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the multidimensional polynomial on points formed with + triples of corresponding values from `x`, `y`, and `z`. + + See Also + -------- + polyval, polyval2d, polygrid2d, polygrid3d + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = ((1, 2, 3), (4, 5, 6), (7, 8, 9)) + >>> P.polyval3d(1, 1, 1, c) + 45.0 + + """ + return pu._valnd(polyval, c, x, y, z) + + +def polygrid3d(x, y, z, c): + """ + Evaluate a 3-D polynomial on the Cartesian product of x, y and z. + + This function returns the values: + + .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * a^i * b^j * c^k + + where the points ``(a, b, c)`` consist of all triples formed by taking + `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form + a grid with `x` in the first dimension, `y` in the second, and `z` in + the third. + + The parameters `x`, `y`, and `z` are converted to arrays only if they + are tuples or a lists, otherwise they are treated as a scalars. In + either case, either `x`, `y`, and `z` or their elements must support + multiplication and addition both with themselves and with the elements + of `c`. + + If `c` has fewer than three dimensions, ones are implicitly appended to + its shape to make it 3-D. The shape of the result will be c.shape[3:] + + x.shape + y.shape + z.shape. + + Parameters + ---------- + x, y, z : array_like, compatible objects + The three dimensional series is evaluated at the points in the + Cartesian product of `x`, `y`, and `z`. If `x`, `y`, or `z` is a + list or tuple, it is first converted to an ndarray, otherwise it is + left unchanged and, if it isn't an ndarray, it is treated as a + scalar. + c : array_like + Array of coefficients ordered so that the coefficients for terms of + degree i,j are contained in ``c[i,j]``. If `c` has dimension + greater than two the remaining indices enumerate multiple sets of + coefficients. + + Returns + ------- + values : ndarray, compatible object + The values of the two dimensional polynomial at points in the Cartesian + product of `x` and `y`. + + See Also + -------- + polyval, polyval2d, polygrid2d, polyval3d + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = ((1, 2, 3), (4, 5, 6), (7, 8, 9)) + >>> P.polygrid3d([0, 1], [0, 1], [0, 1], c) + array([[ 1., 13.], + [ 6., 51.]]) + + """ + return pu._gridnd(polyval, c, x, y, z) + + +def polyvander(x, deg): + """Vandermonde matrix of given degree. + + Returns the Vandermonde matrix of degree `deg` and sample points + `x`. The Vandermonde matrix is defined by + + .. math:: V[..., i] = x^i, + + where ``0 <= i <= deg``. The leading indices of `V` index the elements of + `x` and the last index is the power of `x`. + + If `c` is a 1-D array of coefficients of length ``n + 1`` and `V` is the + matrix ``V = polyvander(x, n)``, then ``np.dot(V, c)`` and + ``polyval(x, c)`` are the same up to roundoff. This equivalence is + useful both for least squares fitting and for the evaluation of a large + number of polynomials of the same degree and sample points. + + Parameters + ---------- + x : array_like + Array of points. The dtype is converted to float64 or complex128 + depending on whether any of the elements are complex. If `x` is + scalar it is converted to a 1-D array. + deg : int + Degree of the resulting matrix. + + Returns + ------- + vander : ndarray. + The Vandermonde matrix. The shape of the returned matrix is + ``x.shape + (deg + 1,)``, where the last index is the power of `x`. + The dtype will be the same as the converted `x`. + + See Also + -------- + polyvander2d, polyvander3d + + Examples + -------- + The Vandermonde matrix of degree ``deg = 5`` and sample points + ``x = [-1, 2, 3]`` contains the element-wise powers of `x` + from 0 to 5 as its columns. + + >>> from numpy.polynomial import polynomial as P + >>> x, deg = [-1, 2, 3], 5 + >>> P.polyvander(x=x, deg=deg) + array([[ 1., -1., 1., -1., 1., -1.], + [ 1., 2., 4., 8., 16., 32.], + [ 1., 3., 9., 27., 81., 243.]]) + + """ + ideg = pu._as_int(deg, "deg") + if ideg < 0: + raise ValueError("deg must be non-negative") + + x = np.array(x, copy=None, ndmin=1) + 0.0 + dims = (ideg + 1,) + x.shape + dtyp = x.dtype + v = np.empty(dims, dtype=dtyp) + v[0] = x*0 + 1 + if ideg > 0: + v[1] = x + for i in range(2, ideg + 1): + v[i] = v[i-1]*x + return np.moveaxis(v, 0, -1) + + +def polyvander2d(x, y, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y)``. The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (deg[1] + 1)*i + j] = x^i * y^j, + + where ``0 <= i <= deg[0]`` and ``0 <= j <= deg[1]``. The leading indices of + `V` index the points ``(x, y)`` and the last index encodes the powers of + `x` and `y`. + + If ``V = polyvander2d(x, y, [xdeg, ydeg])``, then the columns of `V` + correspond to the elements of a 2-D coefficient array `c` of shape + (xdeg + 1, ydeg + 1) in the order + + .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ... + + and ``np.dot(V, c.flat)`` and ``polyval2d(x, y, c)`` will be the same + up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 2-D polynomials + of the same degrees and sample points. + + Parameters + ---------- + x, y : array_like + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg]. + + Returns + ------- + vander2d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg([1]+1)`. The dtype will be the same + as the converted `x` and `y`. + + See Also + -------- + polyvander, polyvander3d, polyval2d, polyval3d + + Examples + -------- + >>> import numpy as np + + The 2-D pseudo-Vandermonde matrix of degree ``[1, 2]`` and sample + points ``x = [-1, 2]`` and ``y = [1, 3]`` is as follows: + + >>> from numpy.polynomial import polynomial as P + >>> x = np.array([-1, 2]) + >>> y = np.array([1, 3]) + >>> m, n = 1, 2 + >>> deg = np.array([m, n]) + >>> V = P.polyvander2d(x=x, y=y, deg=deg) + >>> V + array([[ 1., 1., 1., -1., -1., -1.], + [ 1., 3., 9., 2., 6., 18.]]) + + We can verify the columns for any ``0 <= i <= m`` and ``0 <= j <= n``: + + >>> i, j = 0, 1 + >>> V[:, (deg[1]+1)*i + j] == x**i * y**j + array([ True, True]) + + The (1D) Vandermonde matrix of sample points ``x`` and degree ``m`` is a + special case of the (2D) pseudo-Vandermonde matrix with ``y`` points all + zero and degree ``[m, 0]``. + + >>> P.polyvander2d(x=x, y=0*x, deg=(m, 0)) == P.polyvander(x=x, deg=m) + array([[ True, True], + [ True, True]]) + + """ + return pu._vander_nd_flat((polyvander, polyvander), (x, y), deg) + + +def polyvander3d(x, y, z, deg): + """Pseudo-Vandermonde matrix of given degrees. + + Returns the pseudo-Vandermonde matrix of degrees `deg` and sample + points ``(x, y, z)``. If `l`, `m`, `n` are the given degrees in `x`, `y`, `z`, + then The pseudo-Vandermonde matrix is defined by + + .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = x^i * y^j * z^k, + + where ``0 <= i <= l``, ``0 <= j <= m``, and ``0 <= j <= n``. The leading + indices of `V` index the points ``(x, y, z)`` and the last index encodes + the powers of `x`, `y`, and `z`. + + If ``V = polyvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns + of `V` correspond to the elements of a 3-D coefficient array `c` of + shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order + + .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},... + + and ``np.dot(V, c.flat)`` and ``polyval3d(x, y, z, c)`` will be the + same up to roundoff. This equivalence is useful both for least squares + fitting and for the evaluation of a large number of 3-D polynomials + of the same degrees and sample points. + + Parameters + ---------- + x, y, z : array_like + Arrays of point coordinates, all of the same shape. The dtypes will + be converted to either float64 or complex128 depending on whether + any of the elements are complex. Scalars are converted to 1-D + arrays. + deg : list of ints + List of maximum degrees of the form [x_deg, y_deg, z_deg]. + + Returns + ------- + vander3d : ndarray + The shape of the returned matrix is ``x.shape + (order,)``, where + :math:`order = (deg[0]+1)*(deg([1]+1)*(deg[2]+1)`. The dtype will + be the same as the converted `x`, `y`, and `z`. + + See Also + -------- + polyvander, polyvander3d, polyval2d, polyval3d + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial import polynomial as P + >>> x = np.asarray([-1, 2, 1]) + >>> y = np.asarray([1, -2, -3]) + >>> z = np.asarray([2, 2, 5]) + >>> l, m, n = [2, 2, 1] + >>> deg = [l, m, n] + >>> V = P.polyvander3d(x=x, y=y, z=z, deg=deg) + >>> V + array([[ 1., 2., 1., 2., 1., 2., -1., -2., -1., + -2., -1., -2., 1., 2., 1., 2., 1., 2.], + [ 1., 2., -2., -4., 4., 8., 2., 4., -4., + -8., 8., 16., 4., 8., -8., -16., 16., 32.], + [ 1., 5., -3., -15., 9., 45., 1., 5., -3., + -15., 9., 45., 1., 5., -3., -15., 9., 45.]]) + + We can verify the columns for any ``0 <= i <= l``, ``0 <= j <= m``, + and ``0 <= k <= n`` + + >>> i, j, k = 2, 1, 0 + >>> V[:, (m+1)*(n+1)*i + (n+1)*j + k] == x**i * y**j * z**k + array([ True, True, True]) + + """ + return pu._vander_nd_flat((polyvander, polyvander, polyvander), (x, y, z), deg) + + +def polyfit(x, y, deg, rcond=None, full=False, w=None): + """ + Least-squares fit of a polynomial to data. + + Return the coefficients of a polynomial of degree `deg` that is the + least squares fit to the data values `y` given at points `x`. If `y` is + 1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple + fits are done, one for each column of `y`, and the resulting + coefficients are stored in the corresponding columns of a 2-D return. + The fitted polynomial(s) are in the form + + .. math:: p(x) = c_0 + c_1 * x + ... + c_n * x^n, + + where `n` is `deg`. + + Parameters + ---------- + x : array_like, shape (`M`,) + x-coordinates of the `M` sample (data) points ``(x[i], y[i])``. + y : array_like, shape (`M`,) or (`M`, `K`) + y-coordinates of the sample points. Several sets of sample points + sharing the same x-coordinates can be (independently) fit with one + call to `polyfit` by passing in for `y` a 2-D array that contains + one data set per column. + deg : int or 1-D array_like + Degree(s) of the fitting polynomials. If `deg` is a single integer + all terms up to and including the `deg`'th term are included in the + fit. For NumPy versions >= 1.11.0 a list of integers specifying the + degrees of the terms to include may be used instead. + rcond : float, optional + Relative condition number of the fit. Singular values smaller + than `rcond`, relative to the largest singular value, will be + ignored. The default value is ``len(x)*eps``, where `eps` is the + relative precision of the platform's float type, about 2e-16 in + most cases. + full : bool, optional + Switch determining the nature of the return value. When ``False`` + (the default) just the coefficients are returned; when ``True``, + diagnostic information from the singular value decomposition (used + to solve the fit's matrix equation) is also returned. + w : array_like, shape (`M`,), optional + Weights. If not None, the weight ``w[i]`` applies to the unsquared + residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are + chosen so that the errors of the products ``w[i]*y[i]`` all have the + same variance. When using inverse-variance weighting, use + ``w[i] = 1/sigma(y[i])``. The default value is None. + + Returns + ------- + coef : ndarray, shape (`deg` + 1,) or (`deg` + 1, `K`) + Polynomial coefficients ordered from low to high. If `y` was 2-D, + the coefficients in column `k` of `coef` represent the polynomial + fit to the data in `y`'s `k`-th column. + + [residuals, rank, singular_values, rcond] : list + These values are only returned if ``full == True`` + + - residuals -- sum of squared residuals of the least squares fit + - rank -- the numerical rank of the scaled Vandermonde matrix + - singular_values -- singular values of the scaled Vandermonde matrix + - rcond -- value of `rcond`. + + For more details, see `numpy.linalg.lstsq`. + + Raises + ------ + RankWarning + Raised if the matrix in the least-squares fit is rank deficient. + The warning is only raised if ``full == False``. The warnings can + be turned off by: + + >>> import warnings + >>> warnings.simplefilter('ignore', np.exceptions.RankWarning) + + See Also + -------- + numpy.polynomial.chebyshev.chebfit + numpy.polynomial.legendre.legfit + numpy.polynomial.laguerre.lagfit + numpy.polynomial.hermite.hermfit + numpy.polynomial.hermite_e.hermefit + polyval : Evaluates a polynomial. + polyvander : Vandermonde matrix for powers. + numpy.linalg.lstsq : Computes a least-squares fit from the matrix. + scipy.interpolate.UnivariateSpline : Computes spline fits. + + Notes + ----- + The solution is the coefficients of the polynomial `p` that minimizes + the sum of the weighted squared errors + + .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2, + + where the :math:`w_j` are the weights. This problem is solved by + setting up the (typically) over-determined matrix equation: + + .. math:: V(x) * c = w * y, + + where `V` is the weighted pseudo Vandermonde matrix of `x`, `c` are the + coefficients to be solved for, `w` are the weights, and `y` are the + observed values. This equation is then solved using the singular value + decomposition of `V`. + + If some of the singular values of `V` are so small that they are + neglected (and `full` == ``False``), a `~exceptions.RankWarning` will be + raised. This means that the coefficient values may be poorly determined. + Fitting to a lower order polynomial will usually get rid of the warning + (but may not be what you want, of course; if you have independent + reason(s) for choosing the degree which isn't working, you may have to: + a) reconsider those reasons, and/or b) reconsider the quality of your + data). The `rcond` parameter can also be set to a value smaller than + its default, but the resulting fit may be spurious and have large + contributions from roundoff error. + + Polynomial fits using double precision tend to "fail" at about + (polynomial) degree 20. Fits using Chebyshev or Legendre series are + generally better conditioned, but much can still depend on the + distribution of the sample points and the smoothness of the data. If + the quality of the fit is inadequate, splines may be a good + alternative. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial import polynomial as P + >>> x = np.linspace(-1,1,51) # x "data": [-1, -0.96, ..., 0.96, 1] + >>> rng = np.random.default_rng() + >>> err = rng.normal(size=len(x)) + >>> y = x**3 - x + err # x^3 - x + Gaussian noise + >>> c, stats = P.polyfit(x,y,3,full=True) + >>> c # c[0], c[1] approx. -1, c[2] should be approx. 0, c[3] approx. 1 + array([ 0.23111996, -1.02785049, -0.2241444 , 1.08405657]) # may vary + >>> stats # note the large SSR, explaining the rather poor results + [array([48.312088]), # may vary + 4, + array([1.38446749, 1.32119158, 0.50443316, 0.28853036]), + 1.1324274851176597e-14] + + Same thing without the added noise + + >>> y = x**3 - x + >>> c, stats = P.polyfit(x,y,3,full=True) + >>> c # c[0], c[1] ~= -1, c[2] should be "very close to 0", c[3] ~= 1 + array([-6.73496154e-17, -1.00000000e+00, 0.00000000e+00, 1.00000000e+00]) + >>> stats # note the minuscule SSR + [array([8.79579319e-31]), + np.int32(4), + array([1.38446749, 1.32119158, 0.50443316, 0.28853036]), + 1.1324274851176597e-14] + + """ + return pu._fit(polyvander, x, y, deg, rcond, full, w) + + +def polycompanion(c): + """ + Return the companion matrix of c. + + The companion matrix for power series cannot be made symmetric by + scaling the basis, so this function differs from those for the + orthogonal polynomials. + + Parameters + ---------- + c : array_like + 1-D array of polynomial coefficients ordered from low to high + degree. + + Returns + ------- + mat : ndarray + Companion matrix of dimensions (deg, deg). + + Examples + -------- + >>> from numpy.polynomial import polynomial as P + >>> c = (1, 2, 3) + >>> P.polycompanion(c) + array([[ 0. , -0.33333333], + [ 1. , -0.66666667]]) + + """ + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + raise ValueError('Series must have maximum degree of at least 1.') + if len(c) == 2: + return np.array([[-c[0]/c[1]]]) + + n = len(c) - 1 + mat = np.zeros((n, n), dtype=c.dtype) + bot = mat.reshape(-1)[n::n+1] + bot[...] = 1 + mat[:, -1] -= c[:-1]/c[-1] + return mat + + +def polyroots(c): + """ + Compute the roots of a polynomial. + + Return the roots (a.k.a. "zeros") of the polynomial + + .. math:: p(x) = \\sum_i c[i] * x^i. + + Parameters + ---------- + c : 1-D array_like + 1-D array of polynomial coefficients. + + Returns + ------- + out : ndarray + Array of the roots of the polynomial. If all the roots are real, + then `out` is also real, otherwise it is complex. + + See Also + -------- + numpy.polynomial.chebyshev.chebroots + numpy.polynomial.legendre.legroots + numpy.polynomial.laguerre.lagroots + numpy.polynomial.hermite.hermroots + numpy.polynomial.hermite_e.hermeroots + + Notes + ----- + The root estimates are obtained as the eigenvalues of the companion + matrix, Roots far from the origin of the complex plane may have large + errors due to the numerical instability of the power series for such + values. Roots with multiplicity greater than 1 will also show larger + errors as the value of the series near such points is relatively + insensitive to errors in the roots. Isolated roots near the origin can + be improved by a few iterations of Newton's method. + + Examples + -------- + >>> import numpy.polynomial.polynomial as poly + >>> poly.polyroots(poly.polyfromroots((-1,0,1))) + array([-1., 0., 1.]) + >>> poly.polyroots(poly.polyfromroots((-1,0,1))).dtype + dtype('float64') + >>> j = complex(0,1) + >>> poly.polyroots(poly.polyfromroots((-j,0,j))) + array([ 0.00000000e+00+0.j, 0.00000000e+00+1.j, 2.77555756e-17-1.j]) # may vary + + """ # noqa: E501 + # c is a trimmed copy + [c] = pu.as_series([c]) + if len(c) < 2: + return np.array([], dtype=c.dtype) + if len(c) == 2: + return np.array([-c[0]/c[1]]) + + # rotated companion matrix reduces error + m = polycompanion(c)[::-1,::-1] + r = la.eigvals(m) + r.sort() + return r + + +# +# polynomial class +# + +class Polynomial(ABCPolyBase): + """A power series class. + + The Polynomial class provides the standard Python numerical methods + '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the + attributes and methods listed below. + + Parameters + ---------- + coef : array_like + Polynomial coefficients in order of increasing degree, i.e., + ``(1, 2, 3)`` give ``1 + 2*x + 3*x**2``. + domain : (2,) array_like, optional + Domain to use. The interval ``[domain[0], domain[1]]`` is mapped + to the interval ``[window[0], window[1]]`` by shifting and scaling. + The default value is [-1., 1.]. + window : (2,) array_like, optional + Window, see `domain` for its use. The default value is [-1., 1.]. + symbol : str, optional + Symbol used to represent the independent variable in string + representations of the polynomial expression, e.g. for printing. + The symbol must be a valid Python identifier. Default value is 'x'. + + .. versionadded:: 1.24 + + """ + # Virtual Functions + _add = staticmethod(polyadd) + _sub = staticmethod(polysub) + _mul = staticmethod(polymul) + _div = staticmethod(polydiv) + _pow = staticmethod(polypow) + _val = staticmethod(polyval) + _int = staticmethod(polyint) + _der = staticmethod(polyder) + _fit = staticmethod(polyfit) + _line = staticmethod(polyline) + _roots = staticmethod(polyroots) + _fromroots = staticmethod(polyfromroots) + + # Virtual properties + domain = np.array(polydomain) + window = np.array(polydomain) + basis_name = None + + @classmethod + def _str_term_unicode(cls, i, arg_str): + if i == '1': + return f"·{arg_str}" + else: + return f"·{arg_str}{i.translate(cls._superscript_mapping)}" + + @staticmethod + def _str_term_ascii(i, arg_str): + if i == '1': + return f" {arg_str}" + else: + return f" {arg_str}**{i}" + + @staticmethod + def _repr_latex_term(i, arg_str, needs_parens): + if needs_parens: + arg_str = rf"\left({arg_str}\right)" + if i == 0: + return '1' + elif i == 1: + return arg_str + else: + return f"{arg_str}^{{{i}}}" diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.pyi new file mode 100644 index 0000000000000000000000000000000000000000..89a8b57185f3e326f8891e71ab2b47f48cd908e9 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polynomial.pyi @@ -0,0 +1,87 @@ +from typing import Final, Literal as L + +import numpy as np +from ._polybase import ABCPolyBase +from ._polytypes import ( + _Array1, + _Array2, + _FuncVal2D, + _FuncVal3D, + _FuncBinOp, + _FuncCompanion, + _FuncDer, + _FuncFit, + _FuncFromRoots, + _FuncInteg, + _FuncLine, + _FuncPow, + _FuncRoots, + _FuncUnOp, + _FuncVal, + _FuncVander, + _FuncVander2D, + _FuncVander3D, + _FuncValFromRoots, +) +from .polyutils import trimcoef as polytrim + +__all__ = [ + "polyzero", + "polyone", + "polyx", + "polydomain", + "polyline", + "polyadd", + "polysub", + "polymulx", + "polymul", + "polydiv", + "polypow", + "polyval", + "polyvalfromroots", + "polyder", + "polyint", + "polyfromroots", + "polyvander", + "polyfit", + "polytrim", + "polyroots", + "Polynomial", + "polyval2d", + "polyval3d", + "polygrid2d", + "polygrid3d", + "polyvander2d", + "polyvander3d", + "polycompanion", +] + +polydomain: Final[_Array2[np.float64]] +polyzero: Final[_Array1[np.int_]] +polyone: Final[_Array1[np.int_]] +polyx: Final[_Array2[np.int_]] + +polyline: _FuncLine[L["Polyline"]] +polyfromroots: _FuncFromRoots[L["polyfromroots"]] +polyadd: _FuncBinOp[L["polyadd"]] +polysub: _FuncBinOp[L["polysub"]] +polymulx: _FuncUnOp[L["polymulx"]] +polymul: _FuncBinOp[L["polymul"]] +polydiv: _FuncBinOp[L["polydiv"]] +polypow: _FuncPow[L["polypow"]] +polyder: _FuncDer[L["polyder"]] +polyint: _FuncInteg[L["polyint"]] +polyval: _FuncVal[L["polyval"]] +polyval2d: _FuncVal2D[L["polyval2d"]] +polyval3d: _FuncVal3D[L["polyval3d"]] +polyvalfromroots: _FuncValFromRoots[L["polyvalfromroots"]] +polygrid2d: _FuncVal2D[L["polygrid2d"]] +polygrid3d: _FuncVal3D[L["polygrid3d"]] +polyvander: _FuncVander[L["polyvander"]] +polyvander2d: _FuncVander2D[L["polyvander2d"]] +polyvander3d: _FuncVander3D[L["polyvander3d"]] +polyfit: _FuncFit[L["polyfit"]] +polycompanion: _FuncCompanion[L["polycompanion"]] +polyroots: _FuncRoots[L["polyroots"]] + +class Polynomial(ABCPolyBase[None]): ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.py new file mode 100644 index 0000000000000000000000000000000000000000..1a6813b786c9bdd7eaa7961b5c50a5b187f7837a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.py @@ -0,0 +1,757 @@ +""" +Utility classes and functions for the polynomial modules. + +This module provides: error and warning objects; a polynomial base class; +and some routines used in both the `polynomial` and `chebyshev` modules. + +Functions +--------- + +.. autosummary:: + :toctree: generated/ + + as_series convert list of array_likes into 1-D arrays of common type. + trimseq remove trailing zeros. + trimcoef remove small trailing coefficients. + getdomain return the domain appropriate for a given set of abscissae. + mapdomain maps points between domains. + mapparms parameters of the linear map between domains. + +""" +import operator +import functools +import warnings + +import numpy as np + +from numpy._core.multiarray import dragon4_positional, dragon4_scientific +from numpy.exceptions import RankWarning + +__all__ = [ + 'as_series', 'trimseq', 'trimcoef', 'getdomain', 'mapdomain', 'mapparms', + 'format_float'] + +# +# Helper functions to convert inputs to 1-D arrays +# +def trimseq(seq): + """Remove small Poly series coefficients. + + Parameters + ---------- + seq : sequence + Sequence of Poly series coefficients. + + Returns + ------- + series : sequence + Subsequence with trailing zeros removed. If the resulting sequence + would be empty, return the first element. The returned sequence may + or may not be a view. + + Notes + ----- + Do not lose the type info if the sequence contains unknown objects. + + """ + if len(seq) == 0 or seq[-1] != 0: + return seq + else: + for i in range(len(seq) - 1, -1, -1): + if seq[i] != 0: + break + return seq[:i+1] + + +def as_series(alist, trim=True): + """ + Return argument as a list of 1-d arrays. + + The returned list contains array(s) of dtype double, complex double, or + object. A 1-d argument of shape ``(N,)`` is parsed into ``N`` arrays of + size one; a 2-d argument of shape ``(M,N)`` is parsed into ``M`` arrays + of size ``N`` (i.e., is "parsed by row"); and a higher dimensional array + raises a Value Error if it is not first reshaped into either a 1-d or 2-d + array. + + Parameters + ---------- + alist : array_like + A 1- or 2-d array_like + trim : boolean, optional + When True, trailing zeros are removed from the inputs. + When False, the inputs are passed through intact. + + Returns + ------- + [a1, a2,...] : list of 1-D arrays + A copy of the input data as a list of 1-d arrays. + + Raises + ------ + ValueError + Raised when `as_series` cannot convert its input to 1-d arrays, or at + least one of the resulting arrays is empty. + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial import polyutils as pu + >>> a = np.arange(4) + >>> pu.as_series(a) + [array([0.]), array([1.]), array([2.]), array([3.])] + >>> b = np.arange(6).reshape((2,3)) + >>> pu.as_series(b) + [array([0., 1., 2.]), array([3., 4., 5.])] + + >>> pu.as_series((1, np.arange(3), np.arange(2, dtype=np.float16))) + [array([1.]), array([0., 1., 2.]), array([0., 1.])] + + >>> pu.as_series([2, [1.1, 0.]]) + [array([2.]), array([1.1])] + + >>> pu.as_series([2, [1.1, 0.]], trim=False) + [array([2.]), array([1.1, 0. ])] + + """ + arrays = [np.array(a, ndmin=1, copy=None) for a in alist] + for a in arrays: + if a.size == 0: + raise ValueError("Coefficient array is empty") + if any(a.ndim != 1 for a in arrays): + raise ValueError("Coefficient array is not 1-d") + if trim: + arrays = [trimseq(a) for a in arrays] + + if any(a.dtype == np.dtype(object) for a in arrays): + ret = [] + for a in arrays: + if a.dtype != np.dtype(object): + tmp = np.empty(len(a), dtype=np.dtype(object)) + tmp[:] = a[:] + ret.append(tmp) + else: + ret.append(a.copy()) + else: + try: + dtype = np.common_type(*arrays) + except Exception as e: + raise ValueError("Coefficient arrays have no common type") from e + ret = [np.array(a, copy=True, dtype=dtype) for a in arrays] + return ret + + +def trimcoef(c, tol=0): + """ + Remove "small" "trailing" coefficients from a polynomial. + + "Small" means "small in absolute value" and is controlled by the + parameter `tol`; "trailing" means highest order coefficient(s), e.g., in + ``[0, 1, 1, 0, 0]`` (which represents ``0 + x + x**2 + 0*x**3 + 0*x**4``) + both the 3-rd and 4-th order coefficients would be "trimmed." + + Parameters + ---------- + c : array_like + 1-d array of coefficients, ordered from lowest order to highest. + tol : number, optional + Trailing (i.e., highest order) elements with absolute value less + than or equal to `tol` (default value is zero) are removed. + + Returns + ------- + trimmed : ndarray + 1-d array with trailing zeros removed. If the resulting series + would be empty, a series containing a single zero is returned. + + Raises + ------ + ValueError + If `tol` < 0 + + Examples + -------- + >>> from numpy.polynomial import polyutils as pu + >>> pu.trimcoef((0,0,3,0,5,0,0)) + array([0., 0., 3., 0., 5.]) + >>> pu.trimcoef((0,0,1e-3,0,1e-5,0,0),1e-3) # item == tol is trimmed + array([0.]) + >>> i = complex(0,1) # works for complex + >>> pu.trimcoef((3e-4,1e-3*(1-i),5e-4,2e-5*(1+i)), 1e-3) + array([0.0003+0.j , 0.001 -0.001j]) + + """ + if tol < 0: + raise ValueError("tol must be non-negative") + + [c] = as_series([c]) + [ind] = np.nonzero(np.abs(c) > tol) + if len(ind) == 0: + return c[:1]*0 + else: + return c[:ind[-1] + 1].copy() + +def getdomain(x): + """ + Return a domain suitable for given abscissae. + + Find a domain suitable for a polynomial or Chebyshev series + defined at the values supplied. + + Parameters + ---------- + x : array_like + 1-d array of abscissae whose domain will be determined. + + Returns + ------- + domain : ndarray + 1-d array containing two values. If the inputs are complex, then + the two returned points are the lower left and upper right corners + of the smallest rectangle (aligned with the axes) in the complex + plane containing the points `x`. If the inputs are real, then the + two points are the ends of the smallest interval containing the + points `x`. + + See Also + -------- + mapparms, mapdomain + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial import polyutils as pu + >>> points = np.arange(4)**2 - 5; points + array([-5, -4, -1, 4]) + >>> pu.getdomain(points) + array([-5., 4.]) + >>> c = np.exp(complex(0,1)*np.pi*np.arange(12)/6) # unit circle + >>> pu.getdomain(c) + array([-1.-1.j, 1.+1.j]) + + """ + [x] = as_series([x], trim=False) + if x.dtype.char in np.typecodes['Complex']: + rmin, rmax = x.real.min(), x.real.max() + imin, imax = x.imag.min(), x.imag.max() + return np.array((complex(rmin, imin), complex(rmax, imax))) + else: + return np.array((x.min(), x.max())) + +def mapparms(old, new): + """ + Linear map parameters between domains. + + Return the parameters of the linear map ``offset + scale*x`` that maps + `old` to `new` such that ``old[i] -> new[i]``, ``i = 0, 1``. + + Parameters + ---------- + old, new : array_like + Domains. Each domain must (successfully) convert to a 1-d array + containing precisely two values. + + Returns + ------- + offset, scale : scalars + The map ``L(x) = offset + scale*x`` maps the first domain to the + second. + + See Also + -------- + getdomain, mapdomain + + Notes + ----- + Also works for complex numbers, and thus can be used to calculate the + parameters required to map any line in the complex plane to any other + line therein. + + Examples + -------- + >>> from numpy.polynomial import polyutils as pu + >>> pu.mapparms((-1,1),(-1,1)) + (0.0, 1.0) + >>> pu.mapparms((1,-1),(-1,1)) + (-0.0, -1.0) + >>> i = complex(0,1) + >>> pu.mapparms((-i,-1),(1,i)) + ((1+1j), (1-0j)) + + """ + oldlen = old[1] - old[0] + newlen = new[1] - new[0] + off = (old[1]*new[0] - old[0]*new[1])/oldlen + scl = newlen/oldlen + return off, scl + +def mapdomain(x, old, new): + """ + Apply linear map to input points. + + The linear map ``offset + scale*x`` that maps the domain `old` to + the domain `new` is applied to the points `x`. + + Parameters + ---------- + x : array_like + Points to be mapped. If `x` is a subtype of ndarray the subtype + will be preserved. + old, new : array_like + The two domains that determine the map. Each must (successfully) + convert to 1-d arrays containing precisely two values. + + Returns + ------- + x_out : ndarray + Array of points of the same shape as `x`, after application of the + linear map between the two domains. + + See Also + -------- + getdomain, mapparms + + Notes + ----- + Effectively, this implements: + + .. math:: + x\\_out = new[0] + m(x - old[0]) + + where + + .. math:: + m = \\frac{new[1]-new[0]}{old[1]-old[0]} + + Examples + -------- + >>> import numpy as np + >>> from numpy.polynomial import polyutils as pu + >>> old_domain = (-1,1) + >>> new_domain = (0,2*np.pi) + >>> x = np.linspace(-1,1,6); x + array([-1. , -0.6, -0.2, 0.2, 0.6, 1. ]) + >>> x_out = pu.mapdomain(x, old_domain, new_domain); x_out + array([ 0. , 1.25663706, 2.51327412, 3.76991118, 5.02654825, # may vary + 6.28318531]) + >>> x - pu.mapdomain(x_out, new_domain, old_domain) + array([0., 0., 0., 0., 0., 0.]) + + Also works for complex numbers (and thus can be used to map any line in + the complex plane to any other line therein). + + >>> i = complex(0,1) + >>> old = (-1 - i, 1 + i) + >>> new = (-1 + i, 1 - i) + >>> z = np.linspace(old[0], old[1], 6); z + array([-1. -1.j , -0.6-0.6j, -0.2-0.2j, 0.2+0.2j, 0.6+0.6j, 1. +1.j ]) + >>> new_z = pu.mapdomain(z, old, new); new_z + array([-1.0+1.j , -0.6+0.6j, -0.2+0.2j, 0.2-0.2j, 0.6-0.6j, 1.0-1.j ]) # may vary + + """ + if type(x) not in (int, float, complex) and not isinstance(x, np.generic): + x = np.asanyarray(x) + off, scl = mapparms(old, new) + return off + scl*x + + +def _nth_slice(i, ndim): + sl = [np.newaxis] * ndim + sl[i] = slice(None) + return tuple(sl) + + +def _vander_nd(vander_fs, points, degrees): + r""" + A generalization of the Vandermonde matrix for N dimensions + + The result is built by combining the results of 1d Vandermonde matrices, + + .. math:: + W[i_0, \ldots, i_M, j_0, \ldots, j_N] = \prod_{k=0}^N{V_k(x_k)[i_0, \ldots, i_M, j_k]} + + where + + .. math:: + N &= \texttt{len(points)} = \texttt{len(degrees)} = \texttt{len(vander\_fs)} \\ + M &= \texttt{points[k].ndim} \\ + V_k &= \texttt{vander\_fs[k]} \\ + x_k &= \texttt{points[k]} \\ + 0 \le j_k &\le \texttt{degrees[k]} + + Expanding the one-dimensional :math:`V_k` functions gives: + + .. math:: + W[i_0, \ldots, i_M, j_0, \ldots, j_N] = \prod_{k=0}^N{B_{k, j_k}(x_k[i_0, \ldots, i_M])} + + where :math:`B_{k,m}` is the m'th basis of the polynomial construction used along + dimension :math:`k`. For a regular polynomial, :math:`B_{k, m}(x) = P_m(x) = x^m`. + + Parameters + ---------- + vander_fs : Sequence[function(array_like, int) -> ndarray] + The 1d vander function to use for each axis, such as ``polyvander`` + points : Sequence[array_like] + Arrays of point coordinates, all of the same shape. The dtypes + will be converted to either float64 or complex128 depending on + whether any of the elements are complex. Scalars are converted to + 1-D arrays. + This must be the same length as `vander_fs`. + degrees : Sequence[int] + The maximum degree (inclusive) to use for each axis. + This must be the same length as `vander_fs`. + + Returns + ------- + vander_nd : ndarray + An array of shape ``points[0].shape + tuple(d + 1 for d in degrees)``. + """ + n_dims = len(vander_fs) + if n_dims != len(points): + raise ValueError( + f"Expected {n_dims} dimensions of sample points, got {len(points)}") + if n_dims != len(degrees): + raise ValueError( + f"Expected {n_dims} dimensions of degrees, got {len(degrees)}") + if n_dims == 0: + raise ValueError("Unable to guess a dtype or shape when no points are given") + + # convert to the same shape and type + points = tuple(np.asarray(tuple(points)) + 0.0) + + # produce the vandermonde matrix for each dimension, placing the last + # axis of each in an independent trailing axis of the output + vander_arrays = ( + vander_fs[i](points[i], degrees[i])[(...,) + _nth_slice(i, n_dims)] + for i in range(n_dims) + ) + + # we checked this wasn't empty already, so no `initial` needed + return functools.reduce(operator.mul, vander_arrays) + + +def _vander_nd_flat(vander_fs, points, degrees): + """ + Like `_vander_nd`, but flattens the last ``len(degrees)`` axes into a single axis + + Used to implement the public ``vanderd`` functions. + """ + v = _vander_nd(vander_fs, points, degrees) + return v.reshape(v.shape[:-len(degrees)] + (-1,)) + + +def _fromroots(line_f, mul_f, roots): + """ + Helper function used to implement the ``fromroots`` functions. + + Parameters + ---------- + line_f : function(float, float) -> ndarray + The ``line`` function, such as ``polyline`` + mul_f : function(array_like, array_like) -> ndarray + The ``mul`` function, such as ``polymul`` + roots + See the ``fromroots`` functions for more detail + """ + if len(roots) == 0: + return np.ones(1) + else: + [roots] = as_series([roots], trim=False) + roots.sort() + p = [line_f(-r, 1) for r in roots] + n = len(p) + while n > 1: + m, r = divmod(n, 2) + tmp = [mul_f(p[i], p[i+m]) for i in range(m)] + if r: + tmp[0] = mul_f(tmp[0], p[-1]) + p = tmp + n = m + return p[0] + + +def _valnd(val_f, c, *args): + """ + Helper function used to implement the ``vald`` functions. + + Parameters + ---------- + val_f : function(array_like, array_like, tensor: bool) -> array_like + The ``val`` function, such as ``polyval`` + c, args + See the ``vald`` functions for more detail + """ + args = [np.asanyarray(a) for a in args] + shape0 = args[0].shape + if not all(a.shape == shape0 for a in args[1:]): + if len(args) == 3: + raise ValueError('x, y, z are incompatible') + elif len(args) == 2: + raise ValueError('x, y are incompatible') + else: + raise ValueError('ordinates are incompatible') + it = iter(args) + x0 = next(it) + + # use tensor on only the first + c = val_f(x0, c) + for xi in it: + c = val_f(xi, c, tensor=False) + return c + + +def _gridnd(val_f, c, *args): + """ + Helper function used to implement the ``gridd`` functions. + + Parameters + ---------- + val_f : function(array_like, array_like, tensor: bool) -> array_like + The ``val`` function, such as ``polyval`` + c, args + See the ``gridd`` functions for more detail + """ + for xi in args: + c = val_f(xi, c) + return c + + +def _div(mul_f, c1, c2): + """ + Helper function used to implement the ``div`` functions. + + Implementation uses repeated subtraction of c2 multiplied by the nth basis. + For some polynomial types, a more efficient approach may be possible. + + Parameters + ---------- + mul_f : function(array_like, array_like) -> array_like + The ``mul`` function, such as ``polymul`` + c1, c2 + See the ``div`` functions for more detail + """ + # c1, c2 are trimmed copies + [c1, c2] = as_series([c1, c2]) + if c2[-1] == 0: + raise ZeroDivisionError # FIXME: add message with details to exception + + lc1 = len(c1) + lc2 = len(c2) + if lc1 < lc2: + return c1[:1]*0, c1 + elif lc2 == 1: + return c1/c2[-1], c1[:1]*0 + else: + quo = np.empty(lc1 - lc2 + 1, dtype=c1.dtype) + rem = c1 + for i in range(lc1 - lc2, - 1, -1): + p = mul_f([0]*i + [1], c2) + q = rem[-1]/p[-1] + rem = rem[:-1] - q*p[:-1] + quo[i] = q + return quo, trimseq(rem) + + +def _add(c1, c2): + """ Helper function used to implement the ``add`` functions. """ + # c1, c2 are trimmed copies + [c1, c2] = as_series([c1, c2]) + if len(c1) > len(c2): + c1[:c2.size] += c2 + ret = c1 + else: + c2[:c1.size] += c1 + ret = c2 + return trimseq(ret) + + +def _sub(c1, c2): + """ Helper function used to implement the ``sub`` functions. """ + # c1, c2 are trimmed copies + [c1, c2] = as_series([c1, c2]) + if len(c1) > len(c2): + c1[:c2.size] -= c2 + ret = c1 + else: + c2 = -c2 + c2[:c1.size] += c1 + ret = c2 + return trimseq(ret) + + +def _fit(vander_f, x, y, deg, rcond=None, full=False, w=None): + """ + Helper function used to implement the ``fit`` functions. + + Parameters + ---------- + vander_f : function(array_like, int) -> ndarray + The 1d vander function, such as ``polyvander`` + c1, c2 + See the ``fit`` functions for more detail + """ + x = np.asarray(x) + 0.0 + y = np.asarray(y) + 0.0 + deg = np.asarray(deg) + + # check arguments. + if deg.ndim > 1 or deg.dtype.kind not in 'iu' or deg.size == 0: + raise TypeError("deg must be an int or non-empty 1-D array of int") + if deg.min() < 0: + raise ValueError("expected deg >= 0") + if x.ndim != 1: + raise TypeError("expected 1D vector for x") + if x.size == 0: + raise TypeError("expected non-empty vector for x") + if y.ndim < 1 or y.ndim > 2: + raise TypeError("expected 1D or 2D array for y") + if len(x) != len(y): + raise TypeError("expected x and y to have same length") + + if deg.ndim == 0: + lmax = deg + order = lmax + 1 + van = vander_f(x, lmax) + else: + deg = np.sort(deg) + lmax = deg[-1] + order = len(deg) + van = vander_f(x, lmax)[:, deg] + + # set up the least squares matrices in transposed form + lhs = van.T + rhs = y.T + if w is not None: + w = np.asarray(w) + 0.0 + if w.ndim != 1: + raise TypeError("expected 1D vector for w") + if len(x) != len(w): + raise TypeError("expected x and w to have same length") + # apply weights. Don't use inplace operations as they + # can cause problems with NA. + lhs = lhs * w + rhs = rhs * w + + # set rcond + if rcond is None: + rcond = len(x)*np.finfo(x.dtype).eps + + # Determine the norms of the design matrix columns. + if issubclass(lhs.dtype.type, np.complexfloating): + scl = np.sqrt((np.square(lhs.real) + np.square(lhs.imag)).sum(1)) + else: + scl = np.sqrt(np.square(lhs).sum(1)) + scl[scl == 0] = 1 + + # Solve the least squares problem. + c, resids, rank, s = np.linalg.lstsq(lhs.T/scl, rhs.T, rcond) + c = (c.T/scl).T + + # Expand c to include non-fitted coefficients which are set to zero + if deg.ndim > 0: + if c.ndim == 2: + cc = np.zeros((lmax+1, c.shape[1]), dtype=c.dtype) + else: + cc = np.zeros(lmax+1, dtype=c.dtype) + cc[deg] = c + c = cc + + # warn on rank reduction + if rank != order and not full: + msg = "The fit may be poorly conditioned" + warnings.warn(msg, RankWarning, stacklevel=2) + + if full: + return c, [resids, rank, s, rcond] + else: + return c + + +def _pow(mul_f, c, pow, maxpower): + """ + Helper function used to implement the ``pow`` functions. + + Parameters + ---------- + mul_f : function(array_like, array_like) -> ndarray + The ``mul`` function, such as ``polymul`` + c : array_like + 1-D array of array of series coefficients + pow, maxpower + See the ``pow`` functions for more detail + """ + # c is a trimmed copy + [c] = as_series([c]) + power = int(pow) + if power != pow or power < 0: + raise ValueError("Power must be a non-negative integer.") + elif maxpower is not None and power > maxpower: + raise ValueError("Power is too large") + elif power == 0: + return np.array([1], dtype=c.dtype) + elif power == 1: + return c + else: + # This can be made more efficient by using powers of two + # in the usual way. + prd = c + for i in range(2, power + 1): + prd = mul_f(prd, c) + return prd + + +def _as_int(x, desc): + """ + Like `operator.index`, but emits a custom exception when passed an + incorrect type + + Parameters + ---------- + x : int-like + Value to interpret as an integer + desc : str + description to include in any error message + + Raises + ------ + TypeError : if x is a float or non-numeric + """ + try: + return operator.index(x) + except TypeError as e: + raise TypeError(f"{desc} must be an integer, received {x}") from e + + +def format_float(x, parens=False): + if not np.issubdtype(type(x), np.floating): + return str(x) + + opts = np.get_printoptions() + + if np.isnan(x): + return opts['nanstr'] + elif np.isinf(x): + return opts['infstr'] + + exp_format = False + if x != 0: + a = np.abs(x) + if a >= 1.e8 or a < 10**min(0, -(opts['precision']-1)//2): + exp_format = True + + trim, unique = '0', True + if opts['floatmode'] == 'fixed': + trim, unique = 'k', False + + if exp_format: + s = dragon4_scientific(x, precision=opts['precision'], + unique=unique, trim=trim, + sign=opts['sign'] == '+') + if parens: + s = '(' + s + ')' + else: + s = dragon4_positional(x, precision=opts['precision'], + fractional=True, + unique=unique, trim=trim, + sign=opts['sign'] == '+') + return s diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.pyi new file mode 100644 index 0000000000000000000000000000000000000000..9299b23975b1ff9c59d36c9e6e804e06d415cf4b --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/polyutils.pyi @@ -0,0 +1,431 @@ +from collections.abc import Callable, Iterable, Sequence +from typing import ( + Any, + Final, + Literal, + SupportsIndex, + TypeAlias, + TypeVar, + overload, +) + +import numpy as np +import numpy.typing as npt +from numpy._typing import ( + _FloatLike_co, + _NumberLike_co, + + _ArrayLikeFloat_co, + _ArrayLikeComplex_co, +) + +from ._polytypes import ( + _AnyInt, + _CoefLike_co, + + _Array2, + _Tuple2, + + _FloatSeries, + _CoefSeries, + _ComplexSeries, + _ObjectSeries, + + _ComplexArray, + _FloatArray, + _CoefArray, + _ObjectArray, + + _SeriesLikeInt_co, + _SeriesLikeFloat_co, + _SeriesLikeComplex_co, + _SeriesLikeCoef_co, + + _ArrayLikeCoef_co, + + _FuncBinOp, + _FuncValND, + _FuncVanderND, +) + +__all__: Final[Sequence[str]] = [ + "as_series", + "format_float", + "getdomain", + "mapdomain", + "mapparms", + "trimcoef", + "trimseq", +] + +_AnyLineF: TypeAlias = Callable[ + [_CoefLike_co, _CoefLike_co], + _CoefArray, +] +_AnyMulF: TypeAlias = Callable[ + [npt.ArrayLike, npt.ArrayLike], + _CoefArray, +] +_AnyVanderF: TypeAlias = Callable[ + [npt.ArrayLike, SupportsIndex], + _CoefArray, +] + +@overload +def as_series( + alist: npt.NDArray[np.integer[Any]] | _FloatArray, + trim: bool = ..., +) -> list[_FloatSeries]: ... +@overload +def as_series( + alist: _ComplexArray, + trim: bool = ..., +) -> list[_ComplexSeries]: ... +@overload +def as_series( + alist: _ObjectArray, + trim: bool = ..., +) -> list[_ObjectSeries]: ... +@overload +def as_series( # type: ignore[overload-overlap] + alist: Iterable[_FloatArray | npt.NDArray[np.integer[Any]]], + trim: bool = ..., +) -> list[_FloatSeries]: ... +@overload +def as_series( + alist: Iterable[_ComplexArray], + trim: bool = ..., +) -> list[_ComplexSeries]: ... +@overload +def as_series( + alist: Iterable[_ObjectArray], + trim: bool = ..., +) -> list[_ObjectSeries]: ... +@overload +def as_series( # type: ignore[overload-overlap] + alist: Iterable[_SeriesLikeFloat_co | float], + trim: bool = ..., +) -> list[_FloatSeries]: ... +@overload +def as_series( + alist: Iterable[_SeriesLikeComplex_co | complex], + trim: bool = ..., +) -> list[_ComplexSeries]: ... +@overload +def as_series( + alist: Iterable[_SeriesLikeCoef_co | object], + trim: bool = ..., +) -> list[_ObjectSeries]: ... + +_T_seq = TypeVar("_T_seq", bound=_CoefArray | Sequence[_CoefLike_co]) +def trimseq(seq: _T_seq) -> _T_seq: ... + +@overload +def trimcoef( # type: ignore[overload-overlap] + c: npt.NDArray[np.integer[Any]] | _FloatArray, + tol: _FloatLike_co = ..., +) -> _FloatSeries: ... +@overload +def trimcoef( + c: _ComplexArray, + tol: _FloatLike_co = ..., +) -> _ComplexSeries: ... +@overload +def trimcoef( + c: _ObjectArray, + tol: _FloatLike_co = ..., +) -> _ObjectSeries: ... +@overload +def trimcoef( # type: ignore[overload-overlap] + c: _SeriesLikeFloat_co | float, + tol: _FloatLike_co = ..., +) -> _FloatSeries: ... +@overload +def trimcoef( + c: _SeriesLikeComplex_co | complex, + tol: _FloatLike_co = ..., +) -> _ComplexSeries: ... +@overload +def trimcoef( + c: _SeriesLikeCoef_co | object, + tol: _FloatLike_co = ..., +) -> _ObjectSeries: ... + +@overload +def getdomain( # type: ignore[overload-overlap] + x: _FloatArray | npt.NDArray[np.integer[Any]], +) -> _Array2[np.float64]: ... +@overload +def getdomain( + x: _ComplexArray, +) -> _Array2[np.complex128]: ... +@overload +def getdomain( + x: _ObjectArray, +) -> _Array2[np.object_]: ... +@overload +def getdomain( # type: ignore[overload-overlap] + x: _SeriesLikeFloat_co | float, +) -> _Array2[np.float64]: ... +@overload +def getdomain( + x: _SeriesLikeComplex_co | complex, +) -> _Array2[np.complex128]: ... +@overload +def getdomain( + x: _SeriesLikeCoef_co | object, +) -> _Array2[np.object_]: ... + +@overload +def mapparms( # type: ignore[overload-overlap] + old: npt.NDArray[np.floating[Any] | np.integer[Any]], + new: npt.NDArray[np.floating[Any] | np.integer[Any]], +) -> _Tuple2[np.floating[Any]]: ... +@overload +def mapparms( + old: npt.NDArray[np.number[Any]], + new: npt.NDArray[np.number[Any]], +) -> _Tuple2[np.complexfloating[Any, Any]]: ... +@overload +def mapparms( + old: npt.NDArray[np.object_ | np.number[Any]], + new: npt.NDArray[np.object_ | np.number[Any]], +) -> _Tuple2[object]: ... +@overload +def mapparms( # type: ignore[overload-overlap] + old: Sequence[float], + new: Sequence[float], +) -> _Tuple2[float]: ... +@overload +def mapparms( + old: Sequence[complex], + new: Sequence[complex], +) -> _Tuple2[complex]: ... +@overload +def mapparms( + old: _SeriesLikeFloat_co, + new: _SeriesLikeFloat_co, +) -> _Tuple2[np.floating[Any]]: ... +@overload +def mapparms( + old: _SeriesLikeComplex_co, + new: _SeriesLikeComplex_co, +) -> _Tuple2[np.complexfloating[Any, Any]]: ... +@overload +def mapparms( + old: _SeriesLikeCoef_co, + new: _SeriesLikeCoef_co, +) -> _Tuple2[object]: ... + +@overload +def mapdomain( # type: ignore[overload-overlap] + x: _FloatLike_co, + old: _SeriesLikeFloat_co, + new: _SeriesLikeFloat_co, +) -> np.floating[Any]: ... +@overload +def mapdomain( + x: _NumberLike_co, + old: _SeriesLikeComplex_co, + new: _SeriesLikeComplex_co, +) -> np.complexfloating[Any, Any]: ... +@overload +def mapdomain( # type: ignore[overload-overlap] + x: npt.NDArray[np.floating[Any] | np.integer[Any]], + old: npt.NDArray[np.floating[Any] | np.integer[Any]], + new: npt.NDArray[np.floating[Any] | np.integer[Any]], +) -> _FloatSeries: ... +@overload +def mapdomain( + x: npt.NDArray[np.number[Any]], + old: npt.NDArray[np.number[Any]], + new: npt.NDArray[np.number[Any]], +) -> _ComplexSeries: ... +@overload +def mapdomain( + x: npt.NDArray[np.object_ | np.number[Any]], + old: npt.NDArray[np.object_ | np.number[Any]], + new: npt.NDArray[np.object_ | np.number[Any]], +) -> _ObjectSeries: ... +@overload +def mapdomain( # type: ignore[overload-overlap] + x: _SeriesLikeFloat_co, + old: _SeriesLikeFloat_co, + new: _SeriesLikeFloat_co, +) -> _FloatSeries: ... +@overload +def mapdomain( + x: _SeriesLikeComplex_co, + old: _SeriesLikeComplex_co, + new: _SeriesLikeComplex_co, +) -> _ComplexSeries: ... +@overload +def mapdomain( + x: _SeriesLikeCoef_co, + old:_SeriesLikeCoef_co, + new: _SeriesLikeCoef_co, +) -> _ObjectSeries: ... +@overload +def mapdomain( + x: _CoefLike_co, + old: _SeriesLikeCoef_co, + new: _SeriesLikeCoef_co, +) -> object: ... + +def _nth_slice( + i: SupportsIndex, + ndim: SupportsIndex, +) -> tuple[None | slice, ...]: ... + +_vander_nd: _FuncVanderND[Literal["_vander_nd"]] +_vander_nd_flat: _FuncVanderND[Literal["_vander_nd_flat"]] + +# keep in sync with `._polytypes._FuncFromRoots` +@overload +def _fromroots( # type: ignore[overload-overlap] + line_f: _AnyLineF, + mul_f: _AnyMulF, + roots: _SeriesLikeFloat_co, +) -> _FloatSeries: ... +@overload +def _fromroots( + line_f: _AnyLineF, + mul_f: _AnyMulF, + roots: _SeriesLikeComplex_co, +) -> _ComplexSeries: ... +@overload +def _fromroots( + line_f: _AnyLineF, + mul_f: _AnyMulF, + roots: _SeriesLikeCoef_co, +) -> _ObjectSeries: ... +@overload +def _fromroots( + line_f: _AnyLineF, + mul_f: _AnyMulF, + roots: _SeriesLikeCoef_co, +) -> _CoefSeries: ... + +_valnd: _FuncValND[Literal["_valnd"]] +_gridnd: _FuncValND[Literal["_gridnd"]] + +# keep in sync with `_polytypes._FuncBinOp` +@overload +def _div( # type: ignore[overload-overlap] + mul_f: _AnyMulF, + c1: _SeriesLikeFloat_co, + c2: _SeriesLikeFloat_co, +) -> _Tuple2[_FloatSeries]: ... +@overload +def _div( + mul_f: _AnyMulF, + c1: _SeriesLikeComplex_co, + c2: _SeriesLikeComplex_co, +) -> _Tuple2[_ComplexSeries]: ... +@overload +def _div( + mul_f: _AnyMulF, + c1: _SeriesLikeCoef_co, + c2: _SeriesLikeCoef_co, +) -> _Tuple2[_ObjectSeries]: ... +@overload +def _div( + mul_f: _AnyMulF, + c1: _SeriesLikeCoef_co, + c2: _SeriesLikeCoef_co, +) -> _Tuple2[_CoefSeries]: ... + +_add: Final[_FuncBinOp] +_sub: Final[_FuncBinOp] + +# keep in sync with `_polytypes._FuncPow` +@overload +def _pow( # type: ignore[overload-overlap] + mul_f: _AnyMulF, + c: _SeriesLikeFloat_co, + pow: _AnyInt, + maxpower: None | _AnyInt = ..., +) -> _FloatSeries: ... +@overload +def _pow( + mul_f: _AnyMulF, + c: _SeriesLikeComplex_co, + pow: _AnyInt, + maxpower: None | _AnyInt = ..., +) -> _ComplexSeries: ... +@overload +def _pow( + mul_f: _AnyMulF, + c: _SeriesLikeCoef_co, + pow: _AnyInt, + maxpower: None | _AnyInt = ..., +) -> _ObjectSeries: ... +@overload +def _pow( + mul_f: _AnyMulF, + c: _SeriesLikeCoef_co, + pow: _AnyInt, + maxpower: None | _AnyInt = ..., +) -> _CoefSeries: ... + +# keep in sync with `_polytypes._FuncFit` +@overload +def _fit( # type: ignore[overload-overlap] + vander_f: _AnyVanderF, + x: _SeriesLikeFloat_co, + y: _ArrayLikeFloat_co, + deg: _SeriesLikeInt_co, + domain: None | _SeriesLikeFloat_co = ..., + rcond: None | _FloatLike_co = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeFloat_co = ..., +) -> _FloatArray: ... +@overload +def _fit( + vander_f: _AnyVanderF, + x: _SeriesLikeComplex_co, + y: _ArrayLikeComplex_co, + deg: _SeriesLikeInt_co, + domain: None | _SeriesLikeComplex_co = ..., + rcond: None | _FloatLike_co = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeComplex_co = ..., +) -> _ComplexArray: ... +@overload +def _fit( + vander_f: _AnyVanderF, + x: _SeriesLikeCoef_co, + y: _ArrayLikeCoef_co, + deg: _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co = ..., + rcond: None | _FloatLike_co = ..., + full: Literal[False] = ..., + w: None | _SeriesLikeCoef_co = ..., +) -> _CoefArray: ... +@overload +def _fit( + vander_f: _AnyVanderF, + x: _SeriesLikeCoef_co, + y: _SeriesLikeCoef_co, + deg: _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co, + rcond: None | _FloatLike_co , + full: Literal[True], + /, + w: None | _SeriesLikeCoef_co = ..., +) -> tuple[_CoefSeries, Sequence[np.inexact[Any] | np.int32]]: ... +@overload +def _fit( + vander_f: _AnyVanderF, + x: _SeriesLikeCoef_co, + y: _SeriesLikeCoef_co, + deg: _SeriesLikeInt_co, + domain: None | _SeriesLikeCoef_co = ..., + rcond: None | _FloatLike_co = ..., + *, + full: Literal[True], + w: None | _SeriesLikeCoef_co = ..., +) -> tuple[_CoefSeries, Sequence[np.inexact[Any] | np.int32]]: ... + +def _as_int(x: SupportsIndex, desc: str) -> int: ... +def format_float(x: _FloatLike_co, parens: bool = ...) -> str: ... diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_chebyshev.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_chebyshev.py new file mode 100644 index 0000000000000000000000000000000000000000..2f54bebfdb27d54f436378e4ab6d6c8f2426dd90 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_chebyshev.py @@ -0,0 +1,619 @@ +"""Tests for chebyshev module. + +""" +from functools import reduce + +import numpy as np +import numpy.polynomial.chebyshev as cheb +from numpy.polynomial.polynomial import polyval +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + + +def trim(x): + return cheb.chebtrim(x, tol=1e-6) + +T0 = [1] +T1 = [0, 1] +T2 = [-1, 0, 2] +T3 = [0, -3, 0, 4] +T4 = [1, 0, -8, 0, 8] +T5 = [0, 5, 0, -20, 0, 16] +T6 = [-1, 0, 18, 0, -48, 0, 32] +T7 = [0, -7, 0, 56, 0, -112, 0, 64] +T8 = [1, 0, -32, 0, 160, 0, -256, 0, 128] +T9 = [0, 9, 0, -120, 0, 432, 0, -576, 0, 256] + +Tlist = [T0, T1, T2, T3, T4, T5, T6, T7, T8, T9] + + +class TestPrivate: + + def test__cseries_to_zseries(self): + for i in range(5): + inp = np.array([2] + [1]*i, np.double) + tgt = np.array([.5]*i + [2] + [.5]*i, np.double) + res = cheb._cseries_to_zseries(inp) + assert_equal(res, tgt) + + def test__zseries_to_cseries(self): + for i in range(5): + inp = np.array([.5]*i + [2] + [.5]*i, np.double) + tgt = np.array([2] + [1]*i, np.double) + res = cheb._zseries_to_cseries(inp) + assert_equal(res, tgt) + + +class TestConstants: + + def test_chebdomain(self): + assert_equal(cheb.chebdomain, [-1, 1]) + + def test_chebzero(self): + assert_equal(cheb.chebzero, [0]) + + def test_chebone(self): + assert_equal(cheb.chebone, [1]) + + def test_chebx(self): + assert_equal(cheb.chebx, [0, 1]) + + +class TestArithmetic: + + def test_chebadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = cheb.chebadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_chebsub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = cheb.chebsub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_chebmulx(self): + assert_equal(cheb.chebmulx([0]), [0]) + assert_equal(cheb.chebmulx([1]), [0, 1]) + for i in range(1, 5): + ser = [0]*i + [1] + tgt = [0]*(i - 1) + [.5, 0, .5] + assert_equal(cheb.chebmulx(ser), tgt) + + def test_chebmul(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(i + j + 1) + tgt[i + j] += .5 + tgt[abs(i - j)] += .5 + res = cheb.chebmul([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_chebdiv(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1] + cj = [0]*j + [1] + tgt = cheb.chebadd(ci, cj) + quo, rem = cheb.chebdiv(tgt, ci) + res = cheb.chebadd(cheb.chebmul(quo, ci), rem) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_chebpow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(cheb.chebmul, [c]*j, np.array([1])) + res = cheb.chebpow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([2.5, 2., 1.5]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = polyval(x, [1., 2., 3.]) + + def test_chebval(self): + #check empty input + assert_equal(cheb.chebval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [polyval(x, c) for c in Tlist] + for i in range(10): + msg = f"At i={i}" + tgt = y[i] + res = cheb.chebval(x, [0]*i + [1]) + assert_almost_equal(res, tgt, err_msg=msg) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(cheb.chebval(x, [1]).shape, dims) + assert_equal(cheb.chebval(x, [1, 0]).shape, dims) + assert_equal(cheb.chebval(x, [1, 0, 0]).shape, dims) + + def test_chebval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, cheb.chebval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = cheb.chebval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = cheb.chebval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_chebval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, cheb.chebval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = cheb.chebval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = cheb.chebval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_chebgrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = cheb.chebgrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = cheb.chebgrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_chebgrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = cheb.chebgrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = cheb.chebgrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_chebint(self): + # check exceptions + assert_raises(TypeError, cheb.chebint, [0], .5) + assert_raises(ValueError, cheb.chebint, [0], -1) + assert_raises(ValueError, cheb.chebint, [0], 1, [0, 0]) + assert_raises(ValueError, cheb.chebint, [0], lbnd=[0]) + assert_raises(ValueError, cheb.chebint, [0], scl=[0]) + assert_raises(TypeError, cheb.chebint, [0], axis=.5) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = cheb.chebint([0], m=i, k=k) + assert_almost_equal(res, [0, 1]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + chebpol = cheb.poly2cheb(pol) + chebint = cheb.chebint(chebpol, m=1, k=[i]) + res = cheb.cheb2poly(chebint) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + chebpol = cheb.poly2cheb(pol) + chebint = cheb.chebint(chebpol, m=1, k=[i], lbnd=-1) + assert_almost_equal(cheb.chebval(-1, chebint), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + chebpol = cheb.poly2cheb(pol) + chebint = cheb.chebint(chebpol, m=1, k=[i], scl=2) + res = cheb.cheb2poly(chebint) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = cheb.chebint(tgt, m=1) + res = cheb.chebint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = cheb.chebint(tgt, m=1, k=[k]) + res = cheb.chebint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = cheb.chebint(tgt, m=1, k=[k], lbnd=-1) + res = cheb.chebint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = cheb.chebint(tgt, m=1, k=[k], scl=2) + res = cheb.chebint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_chebint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([cheb.chebint(c) for c in c2d.T]).T + res = cheb.chebint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([cheb.chebint(c) for c in c2d]) + res = cheb.chebint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([cheb.chebint(c, k=3) for c in c2d]) + res = cheb.chebint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + +class TestDerivative: + + def test_chebder(self): + # check exceptions + assert_raises(TypeError, cheb.chebder, [0], .5) + assert_raises(ValueError, cheb.chebder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = cheb.chebder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = cheb.chebder(cheb.chebint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = cheb.chebder(cheb.chebint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_chebder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([cheb.chebder(c) for c in c2d.T]).T + res = cheb.chebder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([cheb.chebder(c) for c in c2d]) + res = cheb.chebder(c2d, axis=1) + assert_almost_equal(res, tgt) + + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_chebvander(self): + # check for 1d x + x = np.arange(3) + v = cheb.chebvander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], cheb.chebval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = cheb.chebvander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], cheb.chebval(x, coef)) + + def test_chebvander2d(self): + # also tests chebval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = cheb.chebvander2d(x1, x2, [1, 2]) + tgt = cheb.chebval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = cheb.chebvander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_chebvander3d(self): + # also tests chebval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = cheb.chebvander3d(x1, x2, x3, [1, 2, 3]) + tgt = cheb.chebval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = cheb.chebvander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + +class TestFitting: + + def test_chebfit(self): + def f(x): + return x*(x - 1)*(x - 2) + + def f2(x): + return x**4 + x**2 + 1 + + # Test exceptions + assert_raises(ValueError, cheb.chebfit, [1], [1], -1) + assert_raises(TypeError, cheb.chebfit, [[1]], [1], 0) + assert_raises(TypeError, cheb.chebfit, [], [1], 0) + assert_raises(TypeError, cheb.chebfit, [1], [[[1]]], 0) + assert_raises(TypeError, cheb.chebfit, [1, 2], [1], 0) + assert_raises(TypeError, cheb.chebfit, [1], [1, 2], 0) + assert_raises(TypeError, cheb.chebfit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, cheb.chebfit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, cheb.chebfit, [1], [1], [-1,]) + assert_raises(ValueError, cheb.chebfit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, cheb.chebfit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = cheb.chebfit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(cheb.chebval(x, coef3), y) + coef3 = cheb.chebfit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(cheb.chebval(x, coef3), y) + # + coef4 = cheb.chebfit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(cheb.chebval(x, coef4), y) + coef4 = cheb.chebfit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(cheb.chebval(x, coef4), y) + # check things still work if deg is not in strict increasing + coef4 = cheb.chebfit(x, y, [2, 3, 4, 1, 0]) + assert_equal(len(coef4), 5) + assert_almost_equal(cheb.chebval(x, coef4), y) + # + coef2d = cheb.chebfit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = cheb.chebfit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + y[0::2] = 0 + wcoef3 = cheb.chebfit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = cheb.chebfit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = cheb.chebfit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = cheb.chebfit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(cheb.chebfit(x, x, 1), [0, 1]) + assert_almost_equal(cheb.chebfit(x, x, [0, 1]), [0, 1]) + # test fitting only even polynomials + x = np.linspace(-1, 1) + y = f2(x) + coef1 = cheb.chebfit(x, y, 4) + assert_almost_equal(cheb.chebval(x, coef1), y) + coef2 = cheb.chebfit(x, y, [0, 2, 4]) + assert_almost_equal(cheb.chebval(x, coef2), y) + assert_almost_equal(coef1, coef2) + + +class TestInterpolate: + + def f(self, x): + return x * (x - 1) * (x - 2) + + def test_raises(self): + assert_raises(ValueError, cheb.chebinterpolate, self.f, -1) + assert_raises(TypeError, cheb.chebinterpolate, self.f, 10.) + + def test_dimensions(self): + for deg in range(1, 5): + assert_(cheb.chebinterpolate(self.f, deg).shape == (deg + 1,)) + + def test_approximation(self): + + def powx(x, p): + return x**p + + x = np.linspace(-1, 1, 10) + for deg in range(0, 10): + for p in range(0, deg + 1): + c = cheb.chebinterpolate(powx, deg, (p,)) + assert_almost_equal(cheb.chebval(x, c), powx(x, p), decimal=12) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, cheb.chebcompanion, []) + assert_raises(ValueError, cheb.chebcompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(cheb.chebcompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(cheb.chebcompanion([1, 2])[0, 0] == -.5) + + +class TestGauss: + + def test_100(self): + x, w = cheb.chebgauss(100) + + # test orthogonality. Note that the results need to be normalized, + # otherwise the huge values that can arise from fast growing + # functions like Laguerre can be very confusing. + v = cheb.chebvander(x, 99) + vv = np.dot(v.T * w, v) + vd = 1/np.sqrt(vv.diagonal()) + vv = vd[:, None] * vv * vd + assert_almost_equal(vv, np.eye(100)) + + # check that the integral of 1 is correct + tgt = np.pi + assert_almost_equal(w.sum(), tgt) + + +class TestMisc: + + def test_chebfromroots(self): + res = cheb.chebfromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + tgt = [0]*i + [1] + res = cheb.chebfromroots(roots)*2**(i-1) + assert_almost_equal(trim(res), trim(tgt)) + + def test_chebroots(self): + assert_almost_equal(cheb.chebroots([1]), []) + assert_almost_equal(cheb.chebroots([1, 2]), [-.5]) + for i in range(2, 5): + tgt = np.linspace(-1, 1, i) + res = cheb.chebroots(cheb.chebfromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_chebtrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, cheb.chebtrim, coef, -1) + + # Test results + assert_equal(cheb.chebtrim(coef), coef[:-1]) + assert_equal(cheb.chebtrim(coef, 1), coef[:-3]) + assert_equal(cheb.chebtrim(coef, 2), [0]) + + def test_chebline(self): + assert_equal(cheb.chebline(3, 4), [3, 4]) + + def test_cheb2poly(self): + for i in range(10): + assert_almost_equal(cheb.cheb2poly([0]*i + [1]), Tlist[i]) + + def test_poly2cheb(self): + for i in range(10): + assert_almost_equal(cheb.poly2cheb(Tlist[i]), [0]*i + [1]) + + def test_weight(self): + x = np.linspace(-1, 1, 11)[1:-1] + tgt = 1./(np.sqrt(1 + x) * np.sqrt(1 - x)) + res = cheb.chebweight(x) + assert_almost_equal(res, tgt) + + def test_chebpts1(self): + #test exceptions + assert_raises(ValueError, cheb.chebpts1, 1.5) + assert_raises(ValueError, cheb.chebpts1, 0) + + #test points + tgt = [0] + assert_almost_equal(cheb.chebpts1(1), tgt) + tgt = [-0.70710678118654746, 0.70710678118654746] + assert_almost_equal(cheb.chebpts1(2), tgt) + tgt = [-0.86602540378443871, 0, 0.86602540378443871] + assert_almost_equal(cheb.chebpts1(3), tgt) + tgt = [-0.9238795325, -0.3826834323, 0.3826834323, 0.9238795325] + assert_almost_equal(cheb.chebpts1(4), tgt) + + def test_chebpts2(self): + #test exceptions + assert_raises(ValueError, cheb.chebpts2, 1.5) + assert_raises(ValueError, cheb.chebpts2, 1) + + #test points + tgt = [-1, 1] + assert_almost_equal(cheb.chebpts2(2), tgt) + tgt = [-1, 0, 1] + assert_almost_equal(cheb.chebpts2(3), tgt) + tgt = [-1, -0.5, .5, 1] + assert_almost_equal(cheb.chebpts2(4), tgt) + tgt = [-1.0, -0.707106781187, 0, 0.707106781187, 1.0] + assert_almost_equal(cheb.chebpts2(5), tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_classes.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_classes.py new file mode 100644 index 0000000000000000000000000000000000000000..75672a148524d8887663b986ec5d9e6c13d1193a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_classes.py @@ -0,0 +1,607 @@ +"""Test inter-conversion of different polynomial classes. + +This tests the convert and cast methods of all the polynomial classes. + +""" +import operator as op +from numbers import Number + +import pytest +import numpy as np +from numpy.polynomial import ( + Polynomial, Legendre, Chebyshev, Laguerre, Hermite, HermiteE) +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) +from numpy.exceptions import RankWarning + +# +# fixtures +# + +classes = ( + Polynomial, Legendre, Chebyshev, Laguerre, + Hermite, HermiteE + ) +classids = tuple(cls.__name__ for cls in classes) + +@pytest.fixture(params=classes, ids=classids) +def Poly(request): + return request.param + +# +# helper functions +# +random = np.random.random + + +def assert_poly_almost_equal(p1, p2, msg=""): + try: + assert_(np.all(p1.domain == p2.domain)) + assert_(np.all(p1.window == p2.window)) + assert_almost_equal(p1.coef, p2.coef) + except AssertionError: + msg = f"Result: {p1}\nTarget: {p2}" + raise AssertionError(msg) + + +# +# Test conversion methods that depend on combinations of two classes. +# + +Poly1 = Poly +Poly2 = Poly + + +def test_conversion(Poly1, Poly2): + x = np.linspace(0, 1, 10) + coef = random((3,)) + + d1 = Poly1.domain + random((2,))*.25 + w1 = Poly1.window + random((2,))*.25 + p1 = Poly1(coef, domain=d1, window=w1) + + d2 = Poly2.domain + random((2,))*.25 + w2 = Poly2.window + random((2,))*.25 + p2 = p1.convert(kind=Poly2, domain=d2, window=w2) + + assert_almost_equal(p2.domain, d2) + assert_almost_equal(p2.window, w2) + assert_almost_equal(p2(x), p1(x)) + + +def test_cast(Poly1, Poly2): + x = np.linspace(0, 1, 10) + coef = random((3,)) + + d1 = Poly1.domain + random((2,))*.25 + w1 = Poly1.window + random((2,))*.25 + p1 = Poly1(coef, domain=d1, window=w1) + + d2 = Poly2.domain + random((2,))*.25 + w2 = Poly2.window + random((2,))*.25 + p2 = Poly2.cast(p1, domain=d2, window=w2) + + assert_almost_equal(p2.domain, d2) + assert_almost_equal(p2.window, w2) + assert_almost_equal(p2(x), p1(x)) + + +# +# test methods that depend on one class +# + + +def test_identity(Poly): + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + x = np.linspace(d[0], d[1], 11) + p = Poly.identity(domain=d, window=w) + assert_equal(p.domain, d) + assert_equal(p.window, w) + assert_almost_equal(p(x), x) + + +def test_basis(Poly): + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + p = Poly.basis(5, domain=d, window=w) + assert_equal(p.domain, d) + assert_equal(p.window, w) + assert_equal(p.coef, [0]*5 + [1]) + + +def test_fromroots(Poly): + # check that requested roots are zeros of a polynomial + # of correct degree, domain, and window. + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + r = random((5,)) + p1 = Poly.fromroots(r, domain=d, window=w) + assert_equal(p1.degree(), len(r)) + assert_equal(p1.domain, d) + assert_equal(p1.window, w) + assert_almost_equal(p1(r), 0) + + # check that polynomial is monic + pdom = Polynomial.domain + pwin = Polynomial.window + p2 = Polynomial.cast(p1, domain=pdom, window=pwin) + assert_almost_equal(p2.coef[-1], 1) + + +def test_bad_conditioned_fit(Poly): + + x = [0., 0., 1.] + y = [1., 2., 3.] + + # check RankWarning is raised + with pytest.warns(RankWarning) as record: + Poly.fit(x, y, 2) + assert record[0].message.args[0] == "The fit may be poorly conditioned" + + +def test_fit(Poly): + + def f(x): + return x*(x - 1)*(x - 2) + x = np.linspace(0, 3) + y = f(x) + + # check default value of domain and window + p = Poly.fit(x, y, 3) + assert_almost_equal(p.domain, [0, 3]) + assert_almost_equal(p(x), y) + assert_equal(p.degree(), 3) + + # check with given domains and window + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + p = Poly.fit(x, y, 3, domain=d, window=w) + assert_almost_equal(p(x), y) + assert_almost_equal(p.domain, d) + assert_almost_equal(p.window, w) + p = Poly.fit(x, y, [0, 1, 2, 3], domain=d, window=w) + assert_almost_equal(p(x), y) + assert_almost_equal(p.domain, d) + assert_almost_equal(p.window, w) + + # check with class domain default + p = Poly.fit(x, y, 3, []) + assert_equal(p.domain, Poly.domain) + assert_equal(p.window, Poly.window) + p = Poly.fit(x, y, [0, 1, 2, 3], []) + assert_equal(p.domain, Poly.domain) + assert_equal(p.window, Poly.window) + + # check that fit accepts weights. + w = np.zeros_like(x) + z = y + random(y.shape)*.25 + w[::2] = 1 + p1 = Poly.fit(x[::2], z[::2], 3) + p2 = Poly.fit(x, z, 3, w=w) + p3 = Poly.fit(x, z, [0, 1, 2, 3], w=w) + assert_almost_equal(p1(x), p2(x)) + assert_almost_equal(p2(x), p3(x)) + + +def test_equal(Poly): + p1 = Poly([1, 2, 3], domain=[0, 1], window=[2, 3]) + p2 = Poly([1, 1, 1], domain=[0, 1], window=[2, 3]) + p3 = Poly([1, 2, 3], domain=[1, 2], window=[2, 3]) + p4 = Poly([1, 2, 3], domain=[0, 1], window=[1, 2]) + assert_(p1 == p1) + assert_(not p1 == p2) + assert_(not p1 == p3) + assert_(not p1 == p4) + + +def test_not_equal(Poly): + p1 = Poly([1, 2, 3], domain=[0, 1], window=[2, 3]) + p2 = Poly([1, 1, 1], domain=[0, 1], window=[2, 3]) + p3 = Poly([1, 2, 3], domain=[1, 2], window=[2, 3]) + p4 = Poly([1, 2, 3], domain=[0, 1], window=[1, 2]) + assert_(not p1 != p1) + assert_(p1 != p2) + assert_(p1 != p3) + assert_(p1 != p4) + + +def test_add(Poly): + # This checks commutation, not numerical correctness + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = p1 + p2 + assert_poly_almost_equal(p2 + p1, p3) + assert_poly_almost_equal(p1 + c2, p3) + assert_poly_almost_equal(c2 + p1, p3) + assert_poly_almost_equal(p1 + tuple(c2), p3) + assert_poly_almost_equal(tuple(c2) + p1, p3) + assert_poly_almost_equal(p1 + np.array(c2), p3) + assert_poly_almost_equal(np.array(c2) + p1, p3) + assert_raises(TypeError, op.add, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises(TypeError, op.add, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, op.add, p1, Chebyshev([0])) + else: + assert_raises(TypeError, op.add, p1, Polynomial([0])) + + +def test_sub(Poly): + # This checks commutation, not numerical correctness + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = p1 - p2 + assert_poly_almost_equal(p2 - p1, -p3) + assert_poly_almost_equal(p1 - c2, p3) + assert_poly_almost_equal(c2 - p1, -p3) + assert_poly_almost_equal(p1 - tuple(c2), p3) + assert_poly_almost_equal(tuple(c2) - p1, -p3) + assert_poly_almost_equal(p1 - np.array(c2), p3) + assert_poly_almost_equal(np.array(c2) - p1, -p3) + assert_raises(TypeError, op.sub, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises(TypeError, op.sub, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, op.sub, p1, Chebyshev([0])) + else: + assert_raises(TypeError, op.sub, p1, Polynomial([0])) + + +def test_mul(Poly): + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = p1 * p2 + assert_poly_almost_equal(p2 * p1, p3) + assert_poly_almost_equal(p1 * c2, p3) + assert_poly_almost_equal(c2 * p1, p3) + assert_poly_almost_equal(p1 * tuple(c2), p3) + assert_poly_almost_equal(tuple(c2) * p1, p3) + assert_poly_almost_equal(p1 * np.array(c2), p3) + assert_poly_almost_equal(np.array(c2) * p1, p3) + assert_poly_almost_equal(p1 * 2, p1 * Poly([2])) + assert_poly_almost_equal(2 * p1, p1 * Poly([2])) + assert_raises(TypeError, op.mul, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises(TypeError, op.mul, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, op.mul, p1, Chebyshev([0])) + else: + assert_raises(TypeError, op.mul, p1, Polynomial([0])) + + +def test_floordiv(Poly): + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + c3 = list(random((2,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = Poly(c3) + p4 = p1 * p2 + p3 + c4 = list(p4.coef) + assert_poly_almost_equal(p4 // p2, p1) + assert_poly_almost_equal(p4 // c2, p1) + assert_poly_almost_equal(c4 // p2, p1) + assert_poly_almost_equal(p4 // tuple(c2), p1) + assert_poly_almost_equal(tuple(c4) // p2, p1) + assert_poly_almost_equal(p4 // np.array(c2), p1) + assert_poly_almost_equal(np.array(c4) // p2, p1) + assert_poly_almost_equal(2 // p2, Poly([0])) + assert_poly_almost_equal(p2 // 2, 0.5*p2) + assert_raises( + TypeError, op.floordiv, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises( + TypeError, op.floordiv, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, op.floordiv, p1, Chebyshev([0])) + else: + assert_raises(TypeError, op.floordiv, p1, Polynomial([0])) + + +def test_truediv(Poly): + # true division is valid only if the denominator is a Number and + # not a python bool. + p1 = Poly([1,2,3]) + p2 = p1 * 5 + + for stype in np.ScalarType: + if not issubclass(stype, Number) or issubclass(stype, bool): + continue + s = stype(5) + assert_poly_almost_equal(op.truediv(p2, s), p1) + assert_raises(TypeError, op.truediv, s, p2) + for stype in (int, float): + s = stype(5) + assert_poly_almost_equal(op.truediv(p2, s), p1) + assert_raises(TypeError, op.truediv, s, p2) + for stype in [complex]: + s = stype(5, 0) + assert_poly_almost_equal(op.truediv(p2, s), p1) + assert_raises(TypeError, op.truediv, s, p2) + for s in [tuple(), list(), dict(), bool(), np.array([1])]: + assert_raises(TypeError, op.truediv, p2, s) + assert_raises(TypeError, op.truediv, s, p2) + for ptype in classes: + assert_raises(TypeError, op.truediv, p2, ptype(1)) + + +def test_mod(Poly): + # This checks commutation, not numerical correctness + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + c3 = list(random((2,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = Poly(c3) + p4 = p1 * p2 + p3 + c4 = list(p4.coef) + assert_poly_almost_equal(p4 % p2, p3) + assert_poly_almost_equal(p4 % c2, p3) + assert_poly_almost_equal(c4 % p2, p3) + assert_poly_almost_equal(p4 % tuple(c2), p3) + assert_poly_almost_equal(tuple(c4) % p2, p3) + assert_poly_almost_equal(p4 % np.array(c2), p3) + assert_poly_almost_equal(np.array(c4) % p2, p3) + assert_poly_almost_equal(2 % p2, Poly([2])) + assert_poly_almost_equal(p2 % 2, Poly([0])) + assert_raises(TypeError, op.mod, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises(TypeError, op.mod, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, op.mod, p1, Chebyshev([0])) + else: + assert_raises(TypeError, op.mod, p1, Polynomial([0])) + + +def test_divmod(Poly): + # This checks commutation, not numerical correctness + c1 = list(random((4,)) + .5) + c2 = list(random((3,)) + .5) + c3 = list(random((2,)) + .5) + p1 = Poly(c1) + p2 = Poly(c2) + p3 = Poly(c3) + p4 = p1 * p2 + p3 + c4 = list(p4.coef) + quo, rem = divmod(p4, p2) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(p4, c2) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(c4, p2) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(p4, tuple(c2)) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(tuple(c4), p2) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(p4, np.array(c2)) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(np.array(c4), p2) + assert_poly_almost_equal(quo, p1) + assert_poly_almost_equal(rem, p3) + quo, rem = divmod(p2, 2) + assert_poly_almost_equal(quo, 0.5*p2) + assert_poly_almost_equal(rem, Poly([0])) + quo, rem = divmod(2, p2) + assert_poly_almost_equal(quo, Poly([0])) + assert_poly_almost_equal(rem, Poly([2])) + assert_raises(TypeError, divmod, p1, Poly([0], domain=Poly.domain + 1)) + assert_raises(TypeError, divmod, p1, Poly([0], window=Poly.window + 1)) + if Poly is Polynomial: + assert_raises(TypeError, divmod, p1, Chebyshev([0])) + else: + assert_raises(TypeError, divmod, p1, Polynomial([0])) + + +def test_roots(Poly): + d = Poly.domain * 1.25 + .25 + w = Poly.window + tgt = np.linspace(d[0], d[1], 5) + res = np.sort(Poly.fromroots(tgt, domain=d, window=w).roots()) + assert_almost_equal(res, tgt) + # default domain and window + res = np.sort(Poly.fromroots(tgt).roots()) + assert_almost_equal(res, tgt) + + +def test_degree(Poly): + p = Poly.basis(5) + assert_equal(p.degree(), 5) + + +def test_copy(Poly): + p1 = Poly.basis(5) + p2 = p1.copy() + assert_(p1 == p2) + assert_(p1 is not p2) + assert_(p1.coef is not p2.coef) + assert_(p1.domain is not p2.domain) + assert_(p1.window is not p2.window) + + +def test_integ(Poly): + P = Polynomial + # Check defaults + p0 = Poly.cast(P([1*2, 2*3, 3*4])) + p1 = P.cast(p0.integ()) + p2 = P.cast(p0.integ(2)) + assert_poly_almost_equal(p1, P([0, 2, 3, 4])) + assert_poly_almost_equal(p2, P([0, 0, 1, 1, 1])) + # Check with k + p0 = Poly.cast(P([1*2, 2*3, 3*4])) + p1 = P.cast(p0.integ(k=1)) + p2 = P.cast(p0.integ(2, k=[1, 1])) + assert_poly_almost_equal(p1, P([1, 2, 3, 4])) + assert_poly_almost_equal(p2, P([1, 1, 1, 1, 1])) + # Check with lbnd + p0 = Poly.cast(P([1*2, 2*3, 3*4])) + p1 = P.cast(p0.integ(lbnd=1)) + p2 = P.cast(p0.integ(2, lbnd=1)) + assert_poly_almost_equal(p1, P([-9, 2, 3, 4])) + assert_poly_almost_equal(p2, P([6, -9, 1, 1, 1])) + # Check scaling + d = 2*Poly.domain + p0 = Poly.cast(P([1*2, 2*3, 3*4]), domain=d) + p1 = P.cast(p0.integ()) + p2 = P.cast(p0.integ(2)) + assert_poly_almost_equal(p1, P([0, 2, 3, 4])) + assert_poly_almost_equal(p2, P([0, 0, 1, 1, 1])) + + +def test_deriv(Poly): + # Check that the derivative is the inverse of integration. It is + # assumes that the integration has been checked elsewhere. + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + p1 = Poly([1, 2, 3], domain=d, window=w) + p2 = p1.integ(2, k=[1, 2]) + p3 = p1.integ(1, k=[1]) + assert_almost_equal(p2.deriv(1).coef, p3.coef) + assert_almost_equal(p2.deriv(2).coef, p1.coef) + # default domain and window + p1 = Poly([1, 2, 3]) + p2 = p1.integ(2, k=[1, 2]) + p3 = p1.integ(1, k=[1]) + assert_almost_equal(p2.deriv(1).coef, p3.coef) + assert_almost_equal(p2.deriv(2).coef, p1.coef) + + +def test_linspace(Poly): + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + p = Poly([1, 2, 3], domain=d, window=w) + # check default domain + xtgt = np.linspace(d[0], d[1], 20) + ytgt = p(xtgt) + xres, yres = p.linspace(20) + assert_almost_equal(xres, xtgt) + assert_almost_equal(yres, ytgt) + # check specified domain + xtgt = np.linspace(0, 2, 20) + ytgt = p(xtgt) + xres, yres = p.linspace(20, domain=[0, 2]) + assert_almost_equal(xres, xtgt) + assert_almost_equal(yres, ytgt) + + +def test_pow(Poly): + d = Poly.domain + random((2,))*.25 + w = Poly.window + random((2,))*.25 + tgt = Poly([1], domain=d, window=w) + tst = Poly([1, 2, 3], domain=d, window=w) + for i in range(5): + assert_poly_almost_equal(tst**i, tgt) + tgt = tgt * tst + # default domain and window + tgt = Poly([1]) + tst = Poly([1, 2, 3]) + for i in range(5): + assert_poly_almost_equal(tst**i, tgt) + tgt = tgt * tst + # check error for invalid powers + assert_raises(ValueError, op.pow, tgt, 1.5) + assert_raises(ValueError, op.pow, tgt, -1) + + +def test_call(Poly): + P = Polynomial + d = Poly.domain + x = np.linspace(d[0], d[1], 11) + + # Check defaults + p = Poly.cast(P([1, 2, 3])) + tgt = 1 + x*(2 + 3*x) + res = p(x) + assert_almost_equal(res, tgt) + + +def test_call_with_list(Poly): + p = Poly([1, 2, 3]) + x = [-1, 0, 2] + res = p(x) + assert_equal(res, p(np.array(x))) + + +def test_cutdeg(Poly): + p = Poly([1, 2, 3]) + assert_raises(ValueError, p.cutdeg, .5) + assert_raises(ValueError, p.cutdeg, -1) + assert_equal(len(p.cutdeg(3)), 3) + assert_equal(len(p.cutdeg(2)), 3) + assert_equal(len(p.cutdeg(1)), 2) + assert_equal(len(p.cutdeg(0)), 1) + + +def test_truncate(Poly): + p = Poly([1, 2, 3]) + assert_raises(ValueError, p.truncate, .5) + assert_raises(ValueError, p.truncate, 0) + assert_equal(len(p.truncate(4)), 3) + assert_equal(len(p.truncate(3)), 3) + assert_equal(len(p.truncate(2)), 2) + assert_equal(len(p.truncate(1)), 1) + + +def test_trim(Poly): + c = [1, 1e-6, 1e-12, 0] + p = Poly(c) + assert_equal(p.trim().coef, c[:3]) + assert_equal(p.trim(1e-10).coef, c[:2]) + assert_equal(p.trim(1e-5).coef, c[:1]) + + +def test_mapparms(Poly): + # check with defaults. Should be identity. + d = Poly.domain + w = Poly.window + p = Poly([1], domain=d, window=w) + assert_almost_equal([0, 1], p.mapparms()) + # + w = 2*d + 1 + p = Poly([1], domain=d, window=w) + assert_almost_equal([1, 2], p.mapparms()) + + +def test_ufunc_override(Poly): + p = Poly([1, 2, 3]) + x = np.ones(3) + assert_raises(TypeError, np.add, p, x) + assert_raises(TypeError, np.add, x, p) + + +# +# Test class method that only exists for some classes +# + + +class TestInterpolate: + + def f(self, x): + return x * (x - 1) * (x - 2) + + def test_raises(self): + assert_raises(ValueError, Chebyshev.interpolate, self.f, -1) + assert_raises(TypeError, Chebyshev.interpolate, self.f, 10.) + + def test_dimensions(self): + for deg in range(1, 5): + assert_(Chebyshev.interpolate(self.f, deg).degree() == deg) + + def test_approximation(self): + + def powx(x, p): + return x**p + + x = np.linspace(0, 2, 10) + for deg in range(0, 10): + for t in range(0, deg + 1): + p = Chebyshev.interpolate(powx, deg, domain=[0, 2], args=(t,)) + assert_almost_equal(p(x), powx(x, t), decimal=11) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite.py new file mode 100644 index 0000000000000000000000000000000000000000..2188800853f2f5e9a98d2d7087893a7cf11440ef --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite.py @@ -0,0 +1,555 @@ +"""Tests for hermite module. + +""" +from functools import reduce + +import numpy as np +import numpy.polynomial.hermite as herm +from numpy.polynomial.polynomial import polyval +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + +H0 = np.array([1]) +H1 = np.array([0, 2]) +H2 = np.array([-2, 0, 4]) +H3 = np.array([0, -12, 0, 8]) +H4 = np.array([12, 0, -48, 0, 16]) +H5 = np.array([0, 120, 0, -160, 0, 32]) +H6 = np.array([-120, 0, 720, 0, -480, 0, 64]) +H7 = np.array([0, -1680, 0, 3360, 0, -1344, 0, 128]) +H8 = np.array([1680, 0, -13440, 0, 13440, 0, -3584, 0, 256]) +H9 = np.array([0, 30240, 0, -80640, 0, 48384, 0, -9216, 0, 512]) + +Hlist = [H0, H1, H2, H3, H4, H5, H6, H7, H8, H9] + + +def trim(x): + return herm.hermtrim(x, tol=1e-6) + + +class TestConstants: + + def test_hermdomain(self): + assert_equal(herm.hermdomain, [-1, 1]) + + def test_hermzero(self): + assert_equal(herm.hermzero, [0]) + + def test_hermone(self): + assert_equal(herm.hermone, [1]) + + def test_hermx(self): + assert_equal(herm.hermx, [0, .5]) + + +class TestArithmetic: + x = np.linspace(-3, 3, 100) + + def test_hermadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = herm.hermadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermsub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = herm.hermsub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermmulx(self): + assert_equal(herm.hermmulx([0]), [0]) + assert_equal(herm.hermmulx([1]), [0, .5]) + for i in range(1, 5): + ser = [0]*i + [1] + tgt = [0]*(i - 1) + [i, 0, .5] + assert_equal(herm.hermmulx(ser), tgt) + + def test_hermmul(self): + # check values of result + for i in range(5): + pol1 = [0]*i + [1] + val1 = herm.hermval(self.x, pol1) + for j in range(5): + msg = f"At i={i}, j={j}" + pol2 = [0]*j + [1] + val2 = herm.hermval(self.x, pol2) + pol3 = herm.hermmul(pol1, pol2) + val3 = herm.hermval(self.x, pol3) + assert_(len(pol3) == i + j + 1, msg) + assert_almost_equal(val3, val1*val2, err_msg=msg) + + def test_hermdiv(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1] + cj = [0]*j + [1] + tgt = herm.hermadd(ci, cj) + quo, rem = herm.hermdiv(tgt, ci) + res = herm.hermadd(herm.hermmul(quo, ci), rem) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermpow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(herm.hermmul, [c]*j, np.array([1])) + res = herm.hermpow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([2.5, 1., .75]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = polyval(x, [1., 2., 3.]) + + def test_hermval(self): + #check empty input + assert_equal(herm.hermval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [polyval(x, c) for c in Hlist] + for i in range(10): + msg = f"At i={i}" + tgt = y[i] + res = herm.hermval(x, [0]*i + [1]) + assert_almost_equal(res, tgt, err_msg=msg) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(herm.hermval(x, [1]).shape, dims) + assert_equal(herm.hermval(x, [1, 0]).shape, dims) + assert_equal(herm.hermval(x, [1, 0, 0]).shape, dims) + + def test_hermval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, herm.hermval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = herm.hermval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herm.hermval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_hermval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, herm.hermval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = herm.hermval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herm.hermval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_hermgrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = herm.hermgrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herm.hermgrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_hermgrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = herm.hermgrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herm.hermgrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_hermint(self): + # check exceptions + assert_raises(TypeError, herm.hermint, [0], .5) + assert_raises(ValueError, herm.hermint, [0], -1) + assert_raises(ValueError, herm.hermint, [0], 1, [0, 0]) + assert_raises(ValueError, herm.hermint, [0], lbnd=[0]) + assert_raises(ValueError, herm.hermint, [0], scl=[0]) + assert_raises(TypeError, herm.hermint, [0], axis=.5) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = herm.hermint([0], m=i, k=k) + assert_almost_equal(res, [0, .5]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + hermpol = herm.poly2herm(pol) + hermint = herm.hermint(hermpol, m=1, k=[i]) + res = herm.herm2poly(hermint) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + hermpol = herm.poly2herm(pol) + hermint = herm.hermint(hermpol, m=1, k=[i], lbnd=-1) + assert_almost_equal(herm.hermval(-1, hermint), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + hermpol = herm.poly2herm(pol) + hermint = herm.hermint(hermpol, m=1, k=[i], scl=2) + res = herm.herm2poly(hermint) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herm.hermint(tgt, m=1) + res = herm.hermint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herm.hermint(tgt, m=1, k=[k]) + res = herm.hermint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herm.hermint(tgt, m=1, k=[k], lbnd=-1) + res = herm.hermint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herm.hermint(tgt, m=1, k=[k], scl=2) + res = herm.hermint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([herm.hermint(c) for c in c2d.T]).T + res = herm.hermint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herm.hermint(c) for c in c2d]) + res = herm.hermint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herm.hermint(c, k=3) for c in c2d]) + res = herm.hermint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + +class TestDerivative: + + def test_hermder(self): + # check exceptions + assert_raises(TypeError, herm.hermder, [0], .5) + assert_raises(ValueError, herm.hermder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = herm.hermder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = herm.hermder(herm.hermint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = herm.hermder(herm.hermint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([herm.hermder(c) for c in c2d.T]).T + res = herm.hermder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herm.hermder(c) for c in c2d]) + res = herm.hermder(c2d, axis=1) + assert_almost_equal(res, tgt) + + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_hermvander(self): + # check for 1d x + x = np.arange(3) + v = herm.hermvander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], herm.hermval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = herm.hermvander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], herm.hermval(x, coef)) + + def test_hermvander2d(self): + # also tests hermval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = herm.hermvander2d(x1, x2, [1, 2]) + tgt = herm.hermval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = herm.hermvander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_hermvander3d(self): + # also tests hermval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = herm.hermvander3d(x1, x2, x3, [1, 2, 3]) + tgt = herm.hermval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = herm.hermvander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + +class TestFitting: + + def test_hermfit(self): + def f(x): + return x*(x - 1)*(x - 2) + + def f2(x): + return x**4 + x**2 + 1 + + # Test exceptions + assert_raises(ValueError, herm.hermfit, [1], [1], -1) + assert_raises(TypeError, herm.hermfit, [[1]], [1], 0) + assert_raises(TypeError, herm.hermfit, [], [1], 0) + assert_raises(TypeError, herm.hermfit, [1], [[[1]]], 0) + assert_raises(TypeError, herm.hermfit, [1, 2], [1], 0) + assert_raises(TypeError, herm.hermfit, [1], [1, 2], 0) + assert_raises(TypeError, herm.hermfit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, herm.hermfit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, herm.hermfit, [1], [1], [-1,]) + assert_raises(ValueError, herm.hermfit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, herm.hermfit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = herm.hermfit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(herm.hermval(x, coef3), y) + coef3 = herm.hermfit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(herm.hermval(x, coef3), y) + # + coef4 = herm.hermfit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(herm.hermval(x, coef4), y) + coef4 = herm.hermfit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(herm.hermval(x, coef4), y) + # check things still work if deg is not in strict increasing + coef4 = herm.hermfit(x, y, [2, 3, 4, 1, 0]) + assert_equal(len(coef4), 5) + assert_almost_equal(herm.hermval(x, coef4), y) + # + coef2d = herm.hermfit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = herm.hermfit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + y[0::2] = 0 + wcoef3 = herm.hermfit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = herm.hermfit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = herm.hermfit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = herm.hermfit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(herm.hermfit(x, x, 1), [0, .5]) + assert_almost_equal(herm.hermfit(x, x, [0, 1]), [0, .5]) + # test fitting only even Legendre polynomials + x = np.linspace(-1, 1) + y = f2(x) + coef1 = herm.hermfit(x, y, 4) + assert_almost_equal(herm.hermval(x, coef1), y) + coef2 = herm.hermfit(x, y, [0, 2, 4]) + assert_almost_equal(herm.hermval(x, coef2), y) + assert_almost_equal(coef1, coef2) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, herm.hermcompanion, []) + assert_raises(ValueError, herm.hermcompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(herm.hermcompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(herm.hermcompanion([1, 2])[0, 0] == -.25) + + +class TestGauss: + + def test_100(self): + x, w = herm.hermgauss(100) + + # test orthogonality. Note that the results need to be normalized, + # otherwise the huge values that can arise from fast growing + # functions like Laguerre can be very confusing. + v = herm.hermvander(x, 99) + vv = np.dot(v.T * w, v) + vd = 1/np.sqrt(vv.diagonal()) + vv = vd[:, None] * vv * vd + assert_almost_equal(vv, np.eye(100)) + + # check that the integral of 1 is correct + tgt = np.sqrt(np.pi) + assert_almost_equal(w.sum(), tgt) + + +class TestMisc: + + def test_hermfromroots(self): + res = herm.hermfromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + pol = herm.hermfromroots(roots) + res = herm.hermval(roots, pol) + tgt = 0 + assert_(len(pol) == i + 1) + assert_almost_equal(herm.herm2poly(pol)[-1], 1) + assert_almost_equal(res, tgt) + + def test_hermroots(self): + assert_almost_equal(herm.hermroots([1]), []) + assert_almost_equal(herm.hermroots([1, 1]), [-.5]) + for i in range(2, 5): + tgt = np.linspace(-1, 1, i) + res = herm.hermroots(herm.hermfromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermtrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, herm.hermtrim, coef, -1) + + # Test results + assert_equal(herm.hermtrim(coef), coef[:-1]) + assert_equal(herm.hermtrim(coef, 1), coef[:-3]) + assert_equal(herm.hermtrim(coef, 2), [0]) + + def test_hermline(self): + assert_equal(herm.hermline(3, 4), [3, 2]) + + def test_herm2poly(self): + for i in range(10): + assert_almost_equal(herm.herm2poly([0]*i + [1]), Hlist[i]) + + def test_poly2herm(self): + for i in range(10): + assert_almost_equal(herm.poly2herm(Hlist[i]), [0]*i + [1]) + + def test_weight(self): + x = np.linspace(-5, 5, 11) + tgt = np.exp(-x**2) + res = herm.hermweight(x) + assert_almost_equal(res, tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite_e.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite_e.py new file mode 100644 index 0000000000000000000000000000000000000000..2d262a3306222bd79f682b09763b0bd2b90ba8fe --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_hermite_e.py @@ -0,0 +1,556 @@ +"""Tests for hermite_e module. + +""" +from functools import reduce + +import numpy as np +import numpy.polynomial.hermite_e as herme +from numpy.polynomial.polynomial import polyval +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + +He0 = np.array([1]) +He1 = np.array([0, 1]) +He2 = np.array([-1, 0, 1]) +He3 = np.array([0, -3, 0, 1]) +He4 = np.array([3, 0, -6, 0, 1]) +He5 = np.array([0, 15, 0, -10, 0, 1]) +He6 = np.array([-15, 0, 45, 0, -15, 0, 1]) +He7 = np.array([0, -105, 0, 105, 0, -21, 0, 1]) +He8 = np.array([105, 0, -420, 0, 210, 0, -28, 0, 1]) +He9 = np.array([0, 945, 0, -1260, 0, 378, 0, -36, 0, 1]) + +Helist = [He0, He1, He2, He3, He4, He5, He6, He7, He8, He9] + + +def trim(x): + return herme.hermetrim(x, tol=1e-6) + + +class TestConstants: + + def test_hermedomain(self): + assert_equal(herme.hermedomain, [-1, 1]) + + def test_hermezero(self): + assert_equal(herme.hermezero, [0]) + + def test_hermeone(self): + assert_equal(herme.hermeone, [1]) + + def test_hermex(self): + assert_equal(herme.hermex, [0, 1]) + + +class TestArithmetic: + x = np.linspace(-3, 3, 100) + + def test_hermeadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = herme.hermeadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermesub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = herme.hermesub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermemulx(self): + assert_equal(herme.hermemulx([0]), [0]) + assert_equal(herme.hermemulx([1]), [0, 1]) + for i in range(1, 5): + ser = [0]*i + [1] + tgt = [0]*(i - 1) + [i, 0, 1] + assert_equal(herme.hermemulx(ser), tgt) + + def test_hermemul(self): + # check values of result + for i in range(5): + pol1 = [0]*i + [1] + val1 = herme.hermeval(self.x, pol1) + for j in range(5): + msg = f"At i={i}, j={j}" + pol2 = [0]*j + [1] + val2 = herme.hermeval(self.x, pol2) + pol3 = herme.hermemul(pol1, pol2) + val3 = herme.hermeval(self.x, pol3) + assert_(len(pol3) == i + j + 1, msg) + assert_almost_equal(val3, val1*val2, err_msg=msg) + + def test_hermediv(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1] + cj = [0]*j + [1] + tgt = herme.hermeadd(ci, cj) + quo, rem = herme.hermediv(tgt, ci) + res = herme.hermeadd(herme.hermemul(quo, ci), rem) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_hermepow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(herme.hermemul, [c]*j, np.array([1])) + res = herme.hermepow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([4., 2., 3.]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = polyval(x, [1., 2., 3.]) + + def test_hermeval(self): + #check empty input + assert_equal(herme.hermeval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [polyval(x, c) for c in Helist] + for i in range(10): + msg = f"At i={i}" + tgt = y[i] + res = herme.hermeval(x, [0]*i + [1]) + assert_almost_equal(res, tgt, err_msg=msg) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(herme.hermeval(x, [1]).shape, dims) + assert_equal(herme.hermeval(x, [1, 0]).shape, dims) + assert_equal(herme.hermeval(x, [1, 0, 0]).shape, dims) + + def test_hermeval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, herme.hermeval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = herme.hermeval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herme.hermeval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_hermeval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, herme.hermeval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = herme.hermeval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herme.hermeval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_hermegrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = herme.hermegrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herme.hermegrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_hermegrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = herme.hermegrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = herme.hermegrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_hermeint(self): + # check exceptions + assert_raises(TypeError, herme.hermeint, [0], .5) + assert_raises(ValueError, herme.hermeint, [0], -1) + assert_raises(ValueError, herme.hermeint, [0], 1, [0, 0]) + assert_raises(ValueError, herme.hermeint, [0], lbnd=[0]) + assert_raises(ValueError, herme.hermeint, [0], scl=[0]) + assert_raises(TypeError, herme.hermeint, [0], axis=.5) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = herme.hermeint([0], m=i, k=k) + assert_almost_equal(res, [0, 1]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + hermepol = herme.poly2herme(pol) + hermeint = herme.hermeint(hermepol, m=1, k=[i]) + res = herme.herme2poly(hermeint) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + hermepol = herme.poly2herme(pol) + hermeint = herme.hermeint(hermepol, m=1, k=[i], lbnd=-1) + assert_almost_equal(herme.hermeval(-1, hermeint), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + hermepol = herme.poly2herme(pol) + hermeint = herme.hermeint(hermepol, m=1, k=[i], scl=2) + res = herme.herme2poly(hermeint) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herme.hermeint(tgt, m=1) + res = herme.hermeint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herme.hermeint(tgt, m=1, k=[k]) + res = herme.hermeint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herme.hermeint(tgt, m=1, k=[k], lbnd=-1) + res = herme.hermeint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = herme.hermeint(tgt, m=1, k=[k], scl=2) + res = herme.hermeint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermeint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([herme.hermeint(c) for c in c2d.T]).T + res = herme.hermeint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herme.hermeint(c) for c in c2d]) + res = herme.hermeint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herme.hermeint(c, k=3) for c in c2d]) + res = herme.hermeint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + +class TestDerivative: + + def test_hermeder(self): + # check exceptions + assert_raises(TypeError, herme.hermeder, [0], .5) + assert_raises(ValueError, herme.hermeder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = herme.hermeder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = herme.hermeder(herme.hermeint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = herme.hermeder( + herme.hermeint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermeder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([herme.hermeder(c) for c in c2d.T]).T + res = herme.hermeder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([herme.hermeder(c) for c in c2d]) + res = herme.hermeder(c2d, axis=1) + assert_almost_equal(res, tgt) + + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_hermevander(self): + # check for 1d x + x = np.arange(3) + v = herme.hermevander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], herme.hermeval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = herme.hermevander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], herme.hermeval(x, coef)) + + def test_hermevander2d(self): + # also tests hermeval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = herme.hermevander2d(x1, x2, [1, 2]) + tgt = herme.hermeval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = herme.hermevander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_hermevander3d(self): + # also tests hermeval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = herme.hermevander3d(x1, x2, x3, [1, 2, 3]) + tgt = herme.hermeval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = herme.hermevander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + +class TestFitting: + + def test_hermefit(self): + def f(x): + return x*(x - 1)*(x - 2) + + def f2(x): + return x**4 + x**2 + 1 + + # Test exceptions + assert_raises(ValueError, herme.hermefit, [1], [1], -1) + assert_raises(TypeError, herme.hermefit, [[1]], [1], 0) + assert_raises(TypeError, herme.hermefit, [], [1], 0) + assert_raises(TypeError, herme.hermefit, [1], [[[1]]], 0) + assert_raises(TypeError, herme.hermefit, [1, 2], [1], 0) + assert_raises(TypeError, herme.hermefit, [1], [1, 2], 0) + assert_raises(TypeError, herme.hermefit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, herme.hermefit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, herme.hermefit, [1], [1], [-1,]) + assert_raises(ValueError, herme.hermefit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, herme.hermefit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = herme.hermefit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(herme.hermeval(x, coef3), y) + coef3 = herme.hermefit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(herme.hermeval(x, coef3), y) + # + coef4 = herme.hermefit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(herme.hermeval(x, coef4), y) + coef4 = herme.hermefit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(herme.hermeval(x, coef4), y) + # check things still work if deg is not in strict increasing + coef4 = herme.hermefit(x, y, [2, 3, 4, 1, 0]) + assert_equal(len(coef4), 5) + assert_almost_equal(herme.hermeval(x, coef4), y) + # + coef2d = herme.hermefit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = herme.hermefit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + y[0::2] = 0 + wcoef3 = herme.hermefit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = herme.hermefit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = herme.hermefit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = herme.hermefit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(herme.hermefit(x, x, 1), [0, 1]) + assert_almost_equal(herme.hermefit(x, x, [0, 1]), [0, 1]) + # test fitting only even Legendre polynomials + x = np.linspace(-1, 1) + y = f2(x) + coef1 = herme.hermefit(x, y, 4) + assert_almost_equal(herme.hermeval(x, coef1), y) + coef2 = herme.hermefit(x, y, [0, 2, 4]) + assert_almost_equal(herme.hermeval(x, coef2), y) + assert_almost_equal(coef1, coef2) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, herme.hermecompanion, []) + assert_raises(ValueError, herme.hermecompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(herme.hermecompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(herme.hermecompanion([1, 2])[0, 0] == -.5) + + +class TestGauss: + + def test_100(self): + x, w = herme.hermegauss(100) + + # test orthogonality. Note that the results need to be normalized, + # otherwise the huge values that can arise from fast growing + # functions like Laguerre can be very confusing. + v = herme.hermevander(x, 99) + vv = np.dot(v.T * w, v) + vd = 1/np.sqrt(vv.diagonal()) + vv = vd[:, None] * vv * vd + assert_almost_equal(vv, np.eye(100)) + + # check that the integral of 1 is correct + tgt = np.sqrt(2*np.pi) + assert_almost_equal(w.sum(), tgt) + + +class TestMisc: + + def test_hermefromroots(self): + res = herme.hermefromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + pol = herme.hermefromroots(roots) + res = herme.hermeval(roots, pol) + tgt = 0 + assert_(len(pol) == i + 1) + assert_almost_equal(herme.herme2poly(pol)[-1], 1) + assert_almost_equal(res, tgt) + + def test_hermeroots(self): + assert_almost_equal(herme.hermeroots([1]), []) + assert_almost_equal(herme.hermeroots([1, 1]), [-1]) + for i in range(2, 5): + tgt = np.linspace(-1, 1, i) + res = herme.hermeroots(herme.hermefromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_hermetrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, herme.hermetrim, coef, -1) + + # Test results + assert_equal(herme.hermetrim(coef), coef[:-1]) + assert_equal(herme.hermetrim(coef, 1), coef[:-3]) + assert_equal(herme.hermetrim(coef, 2), [0]) + + def test_hermeline(self): + assert_equal(herme.hermeline(3, 4), [3, 4]) + + def test_herme2poly(self): + for i in range(10): + assert_almost_equal(herme.herme2poly([0]*i + [1]), Helist[i]) + + def test_poly2herme(self): + for i in range(10): + assert_almost_equal(herme.poly2herme(Helist[i]), [0]*i + [1]) + + def test_weight(self): + x = np.linspace(-5, 5, 11) + tgt = np.exp(-.5*x**2) + res = herme.hermeweight(x) + assert_almost_equal(res, tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_laguerre.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_laguerre.py new file mode 100644 index 0000000000000000000000000000000000000000..49f7c7e115bec499a04f58c38d803d3e8be1247e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_laguerre.py @@ -0,0 +1,537 @@ +"""Tests for laguerre module. + +""" +from functools import reduce + +import numpy as np +import numpy.polynomial.laguerre as lag +from numpy.polynomial.polynomial import polyval +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + +L0 = np.array([1])/1 +L1 = np.array([1, -1])/1 +L2 = np.array([2, -4, 1])/2 +L3 = np.array([6, -18, 9, -1])/6 +L4 = np.array([24, -96, 72, -16, 1])/24 +L5 = np.array([120, -600, 600, -200, 25, -1])/120 +L6 = np.array([720, -4320, 5400, -2400, 450, -36, 1])/720 + +Llist = [L0, L1, L2, L3, L4, L5, L6] + + +def trim(x): + return lag.lagtrim(x, tol=1e-6) + + +class TestConstants: + + def test_lagdomain(self): + assert_equal(lag.lagdomain, [0, 1]) + + def test_lagzero(self): + assert_equal(lag.lagzero, [0]) + + def test_lagone(self): + assert_equal(lag.lagone, [1]) + + def test_lagx(self): + assert_equal(lag.lagx, [1, -1]) + + +class TestArithmetic: + x = np.linspace(-3, 3, 100) + + def test_lagadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = lag.lagadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_lagsub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = lag.lagsub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_lagmulx(self): + assert_equal(lag.lagmulx([0]), [0]) + assert_equal(lag.lagmulx([1]), [1, -1]) + for i in range(1, 5): + ser = [0]*i + [1] + tgt = [0]*(i - 1) + [-i, 2*i + 1, -(i + 1)] + assert_almost_equal(lag.lagmulx(ser), tgt) + + def test_lagmul(self): + # check values of result + for i in range(5): + pol1 = [0]*i + [1] + val1 = lag.lagval(self.x, pol1) + for j in range(5): + msg = f"At i={i}, j={j}" + pol2 = [0]*j + [1] + val2 = lag.lagval(self.x, pol2) + pol3 = lag.lagmul(pol1, pol2) + val3 = lag.lagval(self.x, pol3) + assert_(len(pol3) == i + j + 1, msg) + assert_almost_equal(val3, val1*val2, err_msg=msg) + + def test_lagdiv(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1] + cj = [0]*j + [1] + tgt = lag.lagadd(ci, cj) + quo, rem = lag.lagdiv(tgt, ci) + res = lag.lagadd(lag.lagmul(quo, ci), rem) + assert_almost_equal(trim(res), trim(tgt), err_msg=msg) + + def test_lagpow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(lag.lagmul, [c]*j, np.array([1])) + res = lag.lagpow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([9., -14., 6.]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = polyval(x, [1., 2., 3.]) + + def test_lagval(self): + #check empty input + assert_equal(lag.lagval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [polyval(x, c) for c in Llist] + for i in range(7): + msg = f"At i={i}" + tgt = y[i] + res = lag.lagval(x, [0]*i + [1]) + assert_almost_equal(res, tgt, err_msg=msg) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(lag.lagval(x, [1]).shape, dims) + assert_equal(lag.lagval(x, [1, 0]).shape, dims) + assert_equal(lag.lagval(x, [1, 0, 0]).shape, dims) + + def test_lagval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, lag.lagval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = lag.lagval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = lag.lagval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_lagval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, lag.lagval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = lag.lagval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = lag.lagval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_laggrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = lag.laggrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = lag.laggrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_laggrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = lag.laggrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = lag.laggrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_lagint(self): + # check exceptions + assert_raises(TypeError, lag.lagint, [0], .5) + assert_raises(ValueError, lag.lagint, [0], -1) + assert_raises(ValueError, lag.lagint, [0], 1, [0, 0]) + assert_raises(ValueError, lag.lagint, [0], lbnd=[0]) + assert_raises(ValueError, lag.lagint, [0], scl=[0]) + assert_raises(TypeError, lag.lagint, [0], axis=.5) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = lag.lagint([0], m=i, k=k) + assert_almost_equal(res, [1, -1]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + lagpol = lag.poly2lag(pol) + lagint = lag.lagint(lagpol, m=1, k=[i]) + res = lag.lag2poly(lagint) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + lagpol = lag.poly2lag(pol) + lagint = lag.lagint(lagpol, m=1, k=[i], lbnd=-1) + assert_almost_equal(lag.lagval(-1, lagint), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + lagpol = lag.poly2lag(pol) + lagint = lag.lagint(lagpol, m=1, k=[i], scl=2) + res = lag.lag2poly(lagint) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = lag.lagint(tgt, m=1) + res = lag.lagint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = lag.lagint(tgt, m=1, k=[k]) + res = lag.lagint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = lag.lagint(tgt, m=1, k=[k], lbnd=-1) + res = lag.lagint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = lag.lagint(tgt, m=1, k=[k], scl=2) + res = lag.lagint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_lagint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([lag.lagint(c) for c in c2d.T]).T + res = lag.lagint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([lag.lagint(c) for c in c2d]) + res = lag.lagint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([lag.lagint(c, k=3) for c in c2d]) + res = lag.lagint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + +class TestDerivative: + + def test_lagder(self): + # check exceptions + assert_raises(TypeError, lag.lagder, [0], .5) + assert_raises(ValueError, lag.lagder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = lag.lagder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = lag.lagder(lag.lagint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = lag.lagder(lag.lagint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_lagder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([lag.lagder(c) for c in c2d.T]).T + res = lag.lagder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([lag.lagder(c) for c in c2d]) + res = lag.lagder(c2d, axis=1) + assert_almost_equal(res, tgt) + + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_lagvander(self): + # check for 1d x + x = np.arange(3) + v = lag.lagvander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], lag.lagval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = lag.lagvander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], lag.lagval(x, coef)) + + def test_lagvander2d(self): + # also tests lagval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = lag.lagvander2d(x1, x2, [1, 2]) + tgt = lag.lagval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = lag.lagvander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_lagvander3d(self): + # also tests lagval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = lag.lagvander3d(x1, x2, x3, [1, 2, 3]) + tgt = lag.lagval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = lag.lagvander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + +class TestFitting: + + def test_lagfit(self): + def f(x): + return x*(x - 1)*(x - 2) + + # Test exceptions + assert_raises(ValueError, lag.lagfit, [1], [1], -1) + assert_raises(TypeError, lag.lagfit, [[1]], [1], 0) + assert_raises(TypeError, lag.lagfit, [], [1], 0) + assert_raises(TypeError, lag.lagfit, [1], [[[1]]], 0) + assert_raises(TypeError, lag.lagfit, [1, 2], [1], 0) + assert_raises(TypeError, lag.lagfit, [1], [1, 2], 0) + assert_raises(TypeError, lag.lagfit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, lag.lagfit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, lag.lagfit, [1], [1], [-1,]) + assert_raises(ValueError, lag.lagfit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, lag.lagfit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = lag.lagfit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(lag.lagval(x, coef3), y) + coef3 = lag.lagfit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(lag.lagval(x, coef3), y) + # + coef4 = lag.lagfit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(lag.lagval(x, coef4), y) + coef4 = lag.lagfit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(lag.lagval(x, coef4), y) + # + coef2d = lag.lagfit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = lag.lagfit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + y[0::2] = 0 + wcoef3 = lag.lagfit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = lag.lagfit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = lag.lagfit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = lag.lagfit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(lag.lagfit(x, x, 1), [1, -1]) + assert_almost_equal(lag.lagfit(x, x, [0, 1]), [1, -1]) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, lag.lagcompanion, []) + assert_raises(ValueError, lag.lagcompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(lag.lagcompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(lag.lagcompanion([1, 2])[0, 0] == 1.5) + + +class TestGauss: + + def test_100(self): + x, w = lag.laggauss(100) + + # test orthogonality. Note that the results need to be normalized, + # otherwise the huge values that can arise from fast growing + # functions like Laguerre can be very confusing. + v = lag.lagvander(x, 99) + vv = np.dot(v.T * w, v) + vd = 1/np.sqrt(vv.diagonal()) + vv = vd[:, None] * vv * vd + assert_almost_equal(vv, np.eye(100)) + + # check that the integral of 1 is correct + tgt = 1.0 + assert_almost_equal(w.sum(), tgt) + + +class TestMisc: + + def test_lagfromroots(self): + res = lag.lagfromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + pol = lag.lagfromroots(roots) + res = lag.lagval(roots, pol) + tgt = 0 + assert_(len(pol) == i + 1) + assert_almost_equal(lag.lag2poly(pol)[-1], 1) + assert_almost_equal(res, tgt) + + def test_lagroots(self): + assert_almost_equal(lag.lagroots([1]), []) + assert_almost_equal(lag.lagroots([0, 1]), [1]) + for i in range(2, 5): + tgt = np.linspace(0, 3, i) + res = lag.lagroots(lag.lagfromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_lagtrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, lag.lagtrim, coef, -1) + + # Test results + assert_equal(lag.lagtrim(coef), coef[:-1]) + assert_equal(lag.lagtrim(coef, 1), coef[:-3]) + assert_equal(lag.lagtrim(coef, 2), [0]) + + def test_lagline(self): + assert_equal(lag.lagline(3, 4), [7, -4]) + + def test_lag2poly(self): + for i in range(7): + assert_almost_equal(lag.lag2poly([0]*i + [1]), Llist[i]) + + def test_poly2lag(self): + for i in range(7): + assert_almost_equal(lag.poly2lag(Llist[i]), [0]*i + [1]) + + def test_weight(self): + x = np.linspace(0, 10, 11) + tgt = np.exp(-x) + res = lag.lagweight(x) + assert_almost_equal(res, tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_legendre.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_legendre.py new file mode 100644 index 0000000000000000000000000000000000000000..9f1c9733a91121e208d7037f8e93b27f0cdbf9bb --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_legendre.py @@ -0,0 +1,568 @@ +"""Tests for legendre module. + +""" +from functools import reduce + +import numpy as np +import numpy.polynomial.legendre as leg +from numpy.polynomial.polynomial import polyval +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + +L0 = np.array([1]) +L1 = np.array([0, 1]) +L2 = np.array([-1, 0, 3])/2 +L3 = np.array([0, -3, 0, 5])/2 +L4 = np.array([3, 0, -30, 0, 35])/8 +L5 = np.array([0, 15, 0, -70, 0, 63])/8 +L6 = np.array([-5, 0, 105, 0, -315, 0, 231])/16 +L7 = np.array([0, -35, 0, 315, 0, -693, 0, 429])/16 +L8 = np.array([35, 0, -1260, 0, 6930, 0, -12012, 0, 6435])/128 +L9 = np.array([0, 315, 0, -4620, 0, 18018, 0, -25740, 0, 12155])/128 + +Llist = [L0, L1, L2, L3, L4, L5, L6, L7, L8, L9] + + +def trim(x): + return leg.legtrim(x, tol=1e-6) + + +class TestConstants: + + def test_legdomain(self): + assert_equal(leg.legdomain, [-1, 1]) + + def test_legzero(self): + assert_equal(leg.legzero, [0]) + + def test_legone(self): + assert_equal(leg.legone, [1]) + + def test_legx(self): + assert_equal(leg.legx, [0, 1]) + + +class TestArithmetic: + x = np.linspace(-1, 1, 100) + + def test_legadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = leg.legadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_legsub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = leg.legsub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_legmulx(self): + assert_equal(leg.legmulx([0]), [0]) + assert_equal(leg.legmulx([1]), [0, 1]) + for i in range(1, 5): + tmp = 2*i + 1 + ser = [0]*i + [1] + tgt = [0]*(i - 1) + [i/tmp, 0, (i + 1)/tmp] + assert_equal(leg.legmulx(ser), tgt) + + def test_legmul(self): + # check values of result + for i in range(5): + pol1 = [0]*i + [1] + val1 = leg.legval(self.x, pol1) + for j in range(5): + msg = f"At i={i}, j={j}" + pol2 = [0]*j + [1] + val2 = leg.legval(self.x, pol2) + pol3 = leg.legmul(pol1, pol2) + val3 = leg.legval(self.x, pol3) + assert_(len(pol3) == i + j + 1, msg) + assert_almost_equal(val3, val1*val2, err_msg=msg) + + def test_legdiv(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1] + cj = [0]*j + [1] + tgt = leg.legadd(ci, cj) + quo, rem = leg.legdiv(tgt, ci) + res = leg.legadd(leg.legmul(quo, ci), rem) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_legpow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(leg.legmul, [c]*j, np.array([1])) + res = leg.legpow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([2., 2., 2.]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = polyval(x, [1., 2., 3.]) + + def test_legval(self): + #check empty input + assert_equal(leg.legval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [polyval(x, c) for c in Llist] + for i in range(10): + msg = f"At i={i}" + tgt = y[i] + res = leg.legval(x, [0]*i + [1]) + assert_almost_equal(res, tgt, err_msg=msg) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(leg.legval(x, [1]).shape, dims) + assert_equal(leg.legval(x, [1, 0]).shape, dims) + assert_equal(leg.legval(x, [1, 0, 0]).shape, dims) + + def test_legval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, leg.legval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = leg.legval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = leg.legval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_legval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises(ValueError, leg.legval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = leg.legval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = leg.legval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_leggrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = leg.leggrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = leg.leggrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_leggrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = leg.leggrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = leg.leggrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_legint(self): + # check exceptions + assert_raises(TypeError, leg.legint, [0], .5) + assert_raises(ValueError, leg.legint, [0], -1) + assert_raises(ValueError, leg.legint, [0], 1, [0, 0]) + assert_raises(ValueError, leg.legint, [0], lbnd=[0]) + assert_raises(ValueError, leg.legint, [0], scl=[0]) + assert_raises(TypeError, leg.legint, [0], axis=.5) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = leg.legint([0], m=i, k=k) + assert_almost_equal(res, [0, 1]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + legpol = leg.poly2leg(pol) + legint = leg.legint(legpol, m=1, k=[i]) + res = leg.leg2poly(legint) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + legpol = leg.poly2leg(pol) + legint = leg.legint(legpol, m=1, k=[i], lbnd=-1) + assert_almost_equal(leg.legval(-1, legint), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + legpol = leg.poly2leg(pol) + legint = leg.legint(legpol, m=1, k=[i], scl=2) + res = leg.leg2poly(legint) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = leg.legint(tgt, m=1) + res = leg.legint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = leg.legint(tgt, m=1, k=[k]) + res = leg.legint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = leg.legint(tgt, m=1, k=[k], lbnd=-1) + res = leg.legint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = leg.legint(tgt, m=1, k=[k], scl=2) + res = leg.legint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_legint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([leg.legint(c) for c in c2d.T]).T + res = leg.legint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([leg.legint(c) for c in c2d]) + res = leg.legint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([leg.legint(c, k=3) for c in c2d]) + res = leg.legint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + def test_legint_zerointord(self): + assert_equal(leg.legint((1, 2, 3), 0), (1, 2, 3)) + + +class TestDerivative: + + def test_legder(self): + # check exceptions + assert_raises(TypeError, leg.legder, [0], .5) + assert_raises(ValueError, leg.legder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = leg.legder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = leg.legder(leg.legint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = leg.legder(leg.legint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_legder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([leg.legder(c) for c in c2d.T]).T + res = leg.legder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([leg.legder(c) for c in c2d]) + res = leg.legder(c2d, axis=1) + assert_almost_equal(res, tgt) + + def test_legder_orderhigherthancoeff(self): + c = (1, 2, 3, 4) + assert_equal(leg.legder(c, 4), [0]) + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_legvander(self): + # check for 1d x + x = np.arange(3) + v = leg.legvander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], leg.legval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = leg.legvander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], leg.legval(x, coef)) + + def test_legvander2d(self): + # also tests polyval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = leg.legvander2d(x1, x2, [1, 2]) + tgt = leg.legval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = leg.legvander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_legvander3d(self): + # also tests polyval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = leg.legvander3d(x1, x2, x3, [1, 2, 3]) + tgt = leg.legval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = leg.legvander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + def test_legvander_negdeg(self): + assert_raises(ValueError, leg.legvander, (1, 2, 3), -1) + + +class TestFitting: + + def test_legfit(self): + def f(x): + return x*(x - 1)*(x - 2) + + def f2(x): + return x**4 + x**2 + 1 + + # Test exceptions + assert_raises(ValueError, leg.legfit, [1], [1], -1) + assert_raises(TypeError, leg.legfit, [[1]], [1], 0) + assert_raises(TypeError, leg.legfit, [], [1], 0) + assert_raises(TypeError, leg.legfit, [1], [[[1]]], 0) + assert_raises(TypeError, leg.legfit, [1, 2], [1], 0) + assert_raises(TypeError, leg.legfit, [1], [1, 2], 0) + assert_raises(TypeError, leg.legfit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, leg.legfit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, leg.legfit, [1], [1], [-1,]) + assert_raises(ValueError, leg.legfit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, leg.legfit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = leg.legfit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(leg.legval(x, coef3), y) + coef3 = leg.legfit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(leg.legval(x, coef3), y) + # + coef4 = leg.legfit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(leg.legval(x, coef4), y) + coef4 = leg.legfit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(leg.legval(x, coef4), y) + # check things still work if deg is not in strict increasing + coef4 = leg.legfit(x, y, [2, 3, 4, 1, 0]) + assert_equal(len(coef4), 5) + assert_almost_equal(leg.legval(x, coef4), y) + # + coef2d = leg.legfit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = leg.legfit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + y[0::2] = 0 + wcoef3 = leg.legfit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = leg.legfit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = leg.legfit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = leg.legfit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(leg.legfit(x, x, 1), [0, 1]) + assert_almost_equal(leg.legfit(x, x, [0, 1]), [0, 1]) + # test fitting only even Legendre polynomials + x = np.linspace(-1, 1) + y = f2(x) + coef1 = leg.legfit(x, y, 4) + assert_almost_equal(leg.legval(x, coef1), y) + coef2 = leg.legfit(x, y, [0, 2, 4]) + assert_almost_equal(leg.legval(x, coef2), y) + assert_almost_equal(coef1, coef2) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, leg.legcompanion, []) + assert_raises(ValueError, leg.legcompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(leg.legcompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(leg.legcompanion([1, 2])[0, 0] == -.5) + + +class TestGauss: + + def test_100(self): + x, w = leg.leggauss(100) + + # test orthogonality. Note that the results need to be normalized, + # otherwise the huge values that can arise from fast growing + # functions like Laguerre can be very confusing. + v = leg.legvander(x, 99) + vv = np.dot(v.T * w, v) + vd = 1/np.sqrt(vv.diagonal()) + vv = vd[:, None] * vv * vd + assert_almost_equal(vv, np.eye(100)) + + # check that the integral of 1 is correct + tgt = 2.0 + assert_almost_equal(w.sum(), tgt) + + +class TestMisc: + + def test_legfromroots(self): + res = leg.legfromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + pol = leg.legfromroots(roots) + res = leg.legval(roots, pol) + tgt = 0 + assert_(len(pol) == i + 1) + assert_almost_equal(leg.leg2poly(pol)[-1], 1) + assert_almost_equal(res, tgt) + + def test_legroots(self): + assert_almost_equal(leg.legroots([1]), []) + assert_almost_equal(leg.legroots([1, 2]), [-.5]) + for i in range(2, 5): + tgt = np.linspace(-1, 1, i) + res = leg.legroots(leg.legfromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_legtrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, leg.legtrim, coef, -1) + + # Test results + assert_equal(leg.legtrim(coef), coef[:-1]) + assert_equal(leg.legtrim(coef, 1), coef[:-3]) + assert_equal(leg.legtrim(coef, 2), [0]) + + def test_legline(self): + assert_equal(leg.legline(3, 4), [3, 4]) + + def test_legline_zeroscl(self): + assert_equal(leg.legline(3, 0), [3]) + + def test_leg2poly(self): + for i in range(10): + assert_almost_equal(leg.leg2poly([0]*i + [1]), Llist[i]) + + def test_poly2leg(self): + for i in range(10): + assert_almost_equal(leg.poly2leg(Llist[i]), [0]*i + [1]) + + def test_weight(self): + x = np.linspace(-1, 1, 11) + tgt = 1. + res = leg.legweight(x) + assert_almost_equal(res, tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polynomial.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polynomial.py new file mode 100644 index 0000000000000000000000000000000000000000..d36b07dbd9536b4c1bd1f3129ae7ccaa2a320ed3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polynomial.py @@ -0,0 +1,647 @@ +"""Tests for polynomial module. + +""" +from functools import reduce +from fractions import Fraction +import numpy as np +import numpy.polynomial.polynomial as poly +import numpy.polynomial.polyutils as pu +import pickle +from copy import deepcopy +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + assert_array_equal, assert_raises_regex, assert_warns) + + +def trim(x): + return poly.polytrim(x, tol=1e-6) + +T0 = [1] +T1 = [0, 1] +T2 = [-1, 0, 2] +T3 = [0, -3, 0, 4] +T4 = [1, 0, -8, 0, 8] +T5 = [0, 5, 0, -20, 0, 16] +T6 = [-1, 0, 18, 0, -48, 0, 32] +T7 = [0, -7, 0, 56, 0, -112, 0, 64] +T8 = [1, 0, -32, 0, 160, 0, -256, 0, 128] +T9 = [0, 9, 0, -120, 0, 432, 0, -576, 0, 256] + +Tlist = [T0, T1, T2, T3, T4, T5, T6, T7, T8, T9] + + +class TestConstants: + + def test_polydomain(self): + assert_equal(poly.polydomain, [-1, 1]) + + def test_polyzero(self): + assert_equal(poly.polyzero, [0]) + + def test_polyone(self): + assert_equal(poly.polyone, [1]) + + def test_polyx(self): + assert_equal(poly.polyx, [0, 1]) + + def test_copy(self): + x = poly.Polynomial([1, 2, 3]) + y = deepcopy(x) + assert_equal(x, y) + + def test_pickle(self): + x = poly.Polynomial([1, 2, 3]) + y = pickle.loads(pickle.dumps(x)) + assert_equal(x, y) + +class TestArithmetic: + + def test_polyadd(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] += 1 + res = poly.polyadd([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_polysub(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(max(i, j) + 1) + tgt[i] += 1 + tgt[j] -= 1 + res = poly.polysub([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_polymulx(self): + assert_equal(poly.polymulx([0]), [0]) + assert_equal(poly.polymulx([1]), [0, 1]) + for i in range(1, 5): + ser = [0]*i + [1] + tgt = [0]*(i + 1) + [1] + assert_equal(poly.polymulx(ser), tgt) + + def test_polymul(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + tgt = np.zeros(i + j + 1) + tgt[i + j] += 1 + res = poly.polymul([0]*i + [1], [0]*j + [1]) + assert_equal(trim(res), trim(tgt), err_msg=msg) + + def test_polydiv(self): + # check zero division + assert_raises(ZeroDivisionError, poly.polydiv, [1], [0]) + + # check scalar division + quo, rem = poly.polydiv([2], [2]) + assert_equal((quo, rem), (1, 0)) + quo, rem = poly.polydiv([2, 2], [2]) + assert_equal((quo, rem), ((1, 1), 0)) + + # check rest. + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + ci = [0]*i + [1, 2] + cj = [0]*j + [1, 2] + tgt = poly.polyadd(ci, cj) + quo, rem = poly.polydiv(tgt, ci) + res = poly.polyadd(poly.polymul(quo, ci), rem) + assert_equal(res, tgt, err_msg=msg) + + def test_polypow(self): + for i in range(5): + for j in range(5): + msg = f"At i={i}, j={j}" + c = np.arange(i + 1) + tgt = reduce(poly.polymul, [c]*j, np.array([1])) + res = poly.polypow(c, j) + assert_equal(trim(res), trim(tgt), err_msg=msg) + +class TestFraction: + + def test_Fraction(self): + # assert we can use Polynomials with coefficients of object dtype + f = Fraction(2, 3) + one = Fraction(1, 1) + zero = Fraction(0, 1) + p = poly.Polynomial([f, f], domain=[zero, one], window=[zero, one]) + + x = 2 * p + p ** 2 + assert_equal(x.coef, np.array([Fraction(16, 9), Fraction(20, 9), + Fraction(4, 9)], dtype=object)) + assert_equal(p.domain, [zero, one]) + assert_equal(p.coef.dtype, np.dtypes.ObjectDType()) + assert_(isinstance(p(f), Fraction)) + assert_equal(p(f), Fraction(10, 9)) + p_deriv = poly.Polynomial([Fraction(2, 3)], domain=[zero, one], + window=[zero, one]) + assert_equal(p.deriv(), p_deriv) + +class TestEvaluation: + # coefficients of 1 + 2*x + 3*x**2 + c1d = np.array([1., 2., 3.]) + c2d = np.einsum('i,j->ij', c1d, c1d) + c3d = np.einsum('i,j,k->ijk', c1d, c1d, c1d) + + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + y = poly.polyval(x, [1., 2., 3.]) + + def test_polyval(self): + #check empty input + assert_equal(poly.polyval([], [1]).size, 0) + + #check normal input) + x = np.linspace(-1, 1) + y = [x**i for i in range(5)] + for i in range(5): + tgt = y[i] + res = poly.polyval(x, [0]*i + [1]) + assert_almost_equal(res, tgt) + tgt = x*(x**2 - 1) + res = poly.polyval(x, [0, -1, 0, 1]) + assert_almost_equal(res, tgt) + + #check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(poly.polyval(x, [1]).shape, dims) + assert_equal(poly.polyval(x, [1, 0]).shape, dims) + assert_equal(poly.polyval(x, [1, 0, 0]).shape, dims) + + #check masked arrays are processed correctly + mask = [False, True, False] + mx = np.ma.array([1, 2, 3], mask=mask) + res = np.polyval([7, 5, 3], mx) + assert_array_equal(res.mask, mask) + + #check subtypes of ndarray are preserved + class C(np.ndarray): + pass + + cx = np.array([1, 2, 3]).view(C) + assert_equal(type(np.polyval([2, 3, 4], cx)), C) + + def test_polyvalfromroots(self): + # check exception for broadcasting x values over root array with + # too few dimensions + assert_raises(ValueError, poly.polyvalfromroots, + [1], [1], tensor=False) + + # check empty input + assert_equal(poly.polyvalfromroots([], [1]).size, 0) + assert_(poly.polyvalfromroots([], [1]).shape == (0,)) + + # check empty input + multidimensional roots + assert_equal(poly.polyvalfromroots([], [[1] * 5]).size, 0) + assert_(poly.polyvalfromroots([], [[1] * 5]).shape == (5, 0)) + + # check scalar input + assert_equal(poly.polyvalfromroots(1, 1), 0) + assert_(poly.polyvalfromroots(1, np.ones((3, 3))).shape == (3,)) + + # check normal input) + x = np.linspace(-1, 1) + y = [x**i for i in range(5)] + for i in range(1, 5): + tgt = y[i] + res = poly.polyvalfromroots(x, [0]*i) + assert_almost_equal(res, tgt) + tgt = x*(x - 1)*(x + 1) + res = poly.polyvalfromroots(x, [-1, 0, 1]) + assert_almost_equal(res, tgt) + + # check that shape is preserved + for i in range(3): + dims = [2]*i + x = np.zeros(dims) + assert_equal(poly.polyvalfromroots(x, [1]).shape, dims) + assert_equal(poly.polyvalfromroots(x, [1, 0]).shape, dims) + assert_equal(poly.polyvalfromroots(x, [1, 0, 0]).shape, dims) + + # check compatibility with factorization + ptest = [15, 2, -16, -2, 1] + r = poly.polyroots(ptest) + x = np.linspace(-1, 1) + assert_almost_equal(poly.polyval(x, ptest), + poly.polyvalfromroots(x, r)) + + # check multidimensional arrays of roots and values + # check tensor=False + rshape = (3, 5) + x = np.arange(-3, 2) + r = np.random.randint(-5, 5, size=rshape) + res = poly.polyvalfromroots(x, r, tensor=False) + tgt = np.empty(r.shape[1:]) + for ii in range(tgt.size): + tgt[ii] = poly.polyvalfromroots(x[ii], r[:, ii]) + assert_equal(res, tgt) + + # check tensor=True + x = np.vstack([x, 2*x]) + res = poly.polyvalfromroots(x, r, tensor=True) + tgt = np.empty(r.shape[1:] + x.shape) + for ii in range(r.shape[1]): + for jj in range(x.shape[0]): + tgt[ii, jj, :] = poly.polyvalfromroots(x[jj], r[:, ii]) + assert_equal(res, tgt) + + def test_polyval2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises_regex(ValueError, 'incompatible', + poly.polyval2d, x1, x2[:2], self.c2d) + + #test values + tgt = y1*y2 + res = poly.polyval2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = poly.polyval2d(z, z, self.c2d) + assert_(res.shape == (2, 3)) + + def test_polyval3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test exceptions + assert_raises_regex(ValueError, 'incompatible', + poly.polyval3d, x1, x2, x3[:2], self.c3d) + + #test values + tgt = y1*y2*y3 + res = poly.polyval3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = poly.polyval3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)) + + def test_polygrid2d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j->ij', y1, y2) + res = poly.polygrid2d(x1, x2, self.c2d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = poly.polygrid2d(z, z, self.c2d) + assert_(res.shape == (2, 3)*2) + + def test_polygrid3d(self): + x1, x2, x3 = self.x + y1, y2, y3 = self.y + + #test values + tgt = np.einsum('i,j,k->ijk', y1, y2, y3) + res = poly.polygrid3d(x1, x2, x3, self.c3d) + assert_almost_equal(res, tgt) + + #test shape + z = np.ones((2, 3)) + res = poly.polygrid3d(z, z, z, self.c3d) + assert_(res.shape == (2, 3)*3) + + +class TestIntegral: + + def test_polyint(self): + # check exceptions + assert_raises(TypeError, poly.polyint, [0], .5) + assert_raises(ValueError, poly.polyint, [0], -1) + assert_raises(ValueError, poly.polyint, [0], 1, [0, 0]) + assert_raises(ValueError, poly.polyint, [0], lbnd=[0]) + assert_raises(ValueError, poly.polyint, [0], scl=[0]) + assert_raises(TypeError, poly.polyint, [0], axis=.5) + assert_raises(TypeError, poly.polyint, [1, 1], 1.) + + # test integration of zero polynomial + for i in range(2, 5): + k = [0]*(i - 2) + [1] + res = poly.polyint([0], m=i, k=k) + assert_almost_equal(res, [0, 1]) + + # check single integration with integration constant + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [1/scl] + res = poly.polyint(pol, m=1, k=[i]) + assert_almost_equal(trim(res), trim(tgt)) + + # check single integration with integration constant and lbnd + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + res = poly.polyint(pol, m=1, k=[i], lbnd=-1) + assert_almost_equal(poly.polyval(-1, res), i) + + # check single integration with integration constant and scaling + for i in range(5): + scl = i + 1 + pol = [0]*i + [1] + tgt = [i] + [0]*i + [2/scl] + res = poly.polyint(pol, m=1, k=[i], scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with default k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = poly.polyint(tgt, m=1) + res = poly.polyint(pol, m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with defined k + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = poly.polyint(tgt, m=1, k=[k]) + res = poly.polyint(pol, m=j, k=list(range(j))) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with lbnd + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = poly.polyint(tgt, m=1, k=[k], lbnd=-1) + res = poly.polyint(pol, m=j, k=list(range(j)), lbnd=-1) + assert_almost_equal(trim(res), trim(tgt)) + + # check multiple integrations with scaling + for i in range(5): + for j in range(2, 5): + pol = [0]*i + [1] + tgt = pol[:] + for k in range(j): + tgt = poly.polyint(tgt, m=1, k=[k], scl=2) + res = poly.polyint(pol, m=j, k=list(range(j)), scl=2) + assert_almost_equal(trim(res), trim(tgt)) + + def test_polyint_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([poly.polyint(c) for c in c2d.T]).T + res = poly.polyint(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([poly.polyint(c) for c in c2d]) + res = poly.polyint(c2d, axis=1) + assert_almost_equal(res, tgt) + + tgt = np.vstack([poly.polyint(c, k=3) for c in c2d]) + res = poly.polyint(c2d, k=3, axis=1) + assert_almost_equal(res, tgt) + + +class TestDerivative: + + def test_polyder(self): + # check exceptions + assert_raises(TypeError, poly.polyder, [0], .5) + assert_raises(ValueError, poly.polyder, [0], -1) + + # check that zeroth derivative does nothing + for i in range(5): + tgt = [0]*i + [1] + res = poly.polyder(tgt, m=0) + assert_equal(trim(res), trim(tgt)) + + # check that derivation is the inverse of integration + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = poly.polyder(poly.polyint(tgt, m=j), m=j) + assert_almost_equal(trim(res), trim(tgt)) + + # check derivation with scaling + for i in range(5): + for j in range(2, 5): + tgt = [0]*i + [1] + res = poly.polyder(poly.polyint(tgt, m=j, scl=2), m=j, scl=.5) + assert_almost_equal(trim(res), trim(tgt)) + + def test_polyder_axis(self): + # check that axis keyword works + c2d = np.random.random((3, 4)) + + tgt = np.vstack([poly.polyder(c) for c in c2d.T]).T + res = poly.polyder(c2d, axis=0) + assert_almost_equal(res, tgt) + + tgt = np.vstack([poly.polyder(c) for c in c2d]) + res = poly.polyder(c2d, axis=1) + assert_almost_equal(res, tgt) + + +class TestVander: + # some random values in [-1, 1) + x = np.random.random((3, 5))*2 - 1 + + def test_polyvander(self): + # check for 1d x + x = np.arange(3) + v = poly.polyvander(x, 3) + assert_(v.shape == (3, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], poly.polyval(x, coef)) + + # check for 2d x + x = np.array([[1, 2], [3, 4], [5, 6]]) + v = poly.polyvander(x, 3) + assert_(v.shape == (3, 2, 4)) + for i in range(4): + coef = [0]*i + [1] + assert_almost_equal(v[..., i], poly.polyval(x, coef)) + + def test_polyvander2d(self): + # also tests polyval2d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3)) + van = poly.polyvander2d(x1, x2, [1, 2]) + tgt = poly.polyval2d(x1, x2, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = poly.polyvander2d([x1], [x2], [1, 2]) + assert_(van.shape == (1, 5, 6)) + + def test_polyvander3d(self): + # also tests polyval3d for non-square coefficient array + x1, x2, x3 = self.x + c = np.random.random((2, 3, 4)) + van = poly.polyvander3d(x1, x2, x3, [1, 2, 3]) + tgt = poly.polyval3d(x1, x2, x3, c) + res = np.dot(van, c.flat) + assert_almost_equal(res, tgt) + + # check shape + van = poly.polyvander3d([x1], [x2], [x3], [1, 2, 3]) + assert_(van.shape == (1, 5, 24)) + + def test_polyvandernegdeg(self): + x = np.arange(3) + assert_raises(ValueError, poly.polyvander, x, -1) + + +class TestCompanion: + + def test_raises(self): + assert_raises(ValueError, poly.polycompanion, []) + assert_raises(ValueError, poly.polycompanion, [1]) + + def test_dimensions(self): + for i in range(1, 5): + coef = [0]*i + [1] + assert_(poly.polycompanion(coef).shape == (i, i)) + + def test_linear_root(self): + assert_(poly.polycompanion([1, 2])[0, 0] == -.5) + + +class TestMisc: + + def test_polyfromroots(self): + res = poly.polyfromroots([]) + assert_almost_equal(trim(res), [1]) + for i in range(1, 5): + roots = np.cos(np.linspace(-np.pi, 0, 2*i + 1)[1::2]) + tgt = Tlist[i] + res = poly.polyfromroots(roots)*2**(i-1) + assert_almost_equal(trim(res), trim(tgt)) + + def test_polyroots(self): + assert_almost_equal(poly.polyroots([1]), []) + assert_almost_equal(poly.polyroots([1, 2]), [-.5]) + for i in range(2, 5): + tgt = np.linspace(-1, 1, i) + res = poly.polyroots(poly.polyfromroots(tgt)) + assert_almost_equal(trim(res), trim(tgt)) + + def test_polyfit(self): + def f(x): + return x*(x - 1)*(x - 2) + + def f2(x): + return x**4 + x**2 + 1 + + # Test exceptions + assert_raises(ValueError, poly.polyfit, [1], [1], -1) + assert_raises(TypeError, poly.polyfit, [[1]], [1], 0) + assert_raises(TypeError, poly.polyfit, [], [1], 0) + assert_raises(TypeError, poly.polyfit, [1], [[[1]]], 0) + assert_raises(TypeError, poly.polyfit, [1, 2], [1], 0) + assert_raises(TypeError, poly.polyfit, [1], [1, 2], 0) + assert_raises(TypeError, poly.polyfit, [1], [1], 0, w=[[1]]) + assert_raises(TypeError, poly.polyfit, [1], [1], 0, w=[1, 1]) + assert_raises(ValueError, poly.polyfit, [1], [1], [-1,]) + assert_raises(ValueError, poly.polyfit, [1], [1], [2, -1, 6]) + assert_raises(TypeError, poly.polyfit, [1], [1], []) + + # Test fit + x = np.linspace(0, 2) + y = f(x) + # + coef3 = poly.polyfit(x, y, 3) + assert_equal(len(coef3), 4) + assert_almost_equal(poly.polyval(x, coef3), y) + coef3 = poly.polyfit(x, y, [0, 1, 2, 3]) + assert_equal(len(coef3), 4) + assert_almost_equal(poly.polyval(x, coef3), y) + # + coef4 = poly.polyfit(x, y, 4) + assert_equal(len(coef4), 5) + assert_almost_equal(poly.polyval(x, coef4), y) + coef4 = poly.polyfit(x, y, [0, 1, 2, 3, 4]) + assert_equal(len(coef4), 5) + assert_almost_equal(poly.polyval(x, coef4), y) + # + coef2d = poly.polyfit(x, np.array([y, y]).T, 3) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + coef2d = poly.polyfit(x, np.array([y, y]).T, [0, 1, 2, 3]) + assert_almost_equal(coef2d, np.array([coef3, coef3]).T) + # test weighting + w = np.zeros_like(x) + yw = y.copy() + w[1::2] = 1 + yw[0::2] = 0 + wcoef3 = poly.polyfit(x, yw, 3, w=w) + assert_almost_equal(wcoef3, coef3) + wcoef3 = poly.polyfit(x, yw, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef3, coef3) + # + wcoef2d = poly.polyfit(x, np.array([yw, yw]).T, 3, w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + wcoef2d = poly.polyfit(x, np.array([yw, yw]).T, [0, 1, 2, 3], w=w) + assert_almost_equal(wcoef2d, np.array([coef3, coef3]).T) + # test scaling with complex values x points whose square + # is zero when summed. + x = [1, 1j, -1, -1j] + assert_almost_equal(poly.polyfit(x, x, 1), [0, 1]) + assert_almost_equal(poly.polyfit(x, x, [0, 1]), [0, 1]) + # test fitting only even Polyendre polynomials + x = np.linspace(-1, 1) + y = f2(x) + coef1 = poly.polyfit(x, y, 4) + assert_almost_equal(poly.polyval(x, coef1), y) + coef2 = poly.polyfit(x, y, [0, 2, 4]) + assert_almost_equal(poly.polyval(x, coef2), y) + assert_almost_equal(coef1, coef2) + + def test_polytrim(self): + coef = [2, -1, 1, 0] + + # Test exceptions + assert_raises(ValueError, poly.polytrim, coef, -1) + + # Test results + assert_equal(poly.polytrim(coef), coef[:-1]) + assert_equal(poly.polytrim(coef, 1), coef[:-3]) + assert_equal(poly.polytrim(coef, 2), [0]) + + def test_polyline(self): + assert_equal(poly.polyline(3, 4), [3, 4]) + + def test_polyline_zero(self): + assert_equal(poly.polyline(3, 0), [3]) + + def test_fit_degenerate_domain(self): + p = poly.Polynomial.fit([1], [2], deg=0) + assert_equal(p.coef, [2.]) + p = poly.Polynomial.fit([1, 1], [2, 2.1], deg=0) + assert_almost_equal(p.coef, [2.05]) + with assert_warns(pu.RankWarning): + p = poly.Polynomial.fit([1, 1], [2, 2.1], deg=1) + + def test_result_type(self): + w = np.array([-1, 1], dtype=np.float32) + p = np.polynomial.Polynomial(w, domain=w, window=w) + v = p(2) + assert_equal(v.dtype, np.float32) + + arr = np.polydiv(1, np.float32(1)) + assert_equal(arr[0].dtype, np.float64) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polyutils.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polyutils.py new file mode 100644 index 0000000000000000000000000000000000000000..e5143ed5c3e4a1651c67b5260cef47112c5ea071 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_polyutils.py @@ -0,0 +1,125 @@ +"""Tests for polyutils module. + +""" +import numpy as np +import numpy.polynomial.polyutils as pu +from numpy.testing import ( + assert_almost_equal, assert_raises, assert_equal, assert_, + ) + + +class TestMisc: + + def test_trimseq(self): + tgt = [1] + for num_trailing_zeros in range(5): + res = pu.trimseq([1] + [0] * num_trailing_zeros) + assert_equal(res, tgt) + + def test_trimseq_empty_input(self): + for empty_seq in [[], np.array([], dtype=np.int32)]: + assert_equal(pu.trimseq(empty_seq), empty_seq) + + def test_as_series(self): + # check exceptions + assert_raises(ValueError, pu.as_series, [[]]) + assert_raises(ValueError, pu.as_series, [[[1, 2]]]) + assert_raises(ValueError, pu.as_series, [[1], ['a']]) + # check common types + types = ['i', 'd', 'O'] + for i in range(len(types)): + for j in range(i): + ci = np.ones(1, types[i]) + cj = np.ones(1, types[j]) + [resi, resj] = pu.as_series([ci, cj]) + assert_(resi.dtype.char == resj.dtype.char) + assert_(resj.dtype.char == types[i]) + + def test_trimcoef(self): + coef = [2, -1, 1, 0] + # Test exceptions + assert_raises(ValueError, pu.trimcoef, coef, -1) + # Test results + assert_equal(pu.trimcoef(coef), coef[:-1]) + assert_equal(pu.trimcoef(coef, 1), coef[:-3]) + assert_equal(pu.trimcoef(coef, 2), [0]) + + def test_vander_nd_exception(self): + # n_dims != len(points) + assert_raises(ValueError, pu._vander_nd, (), (1, 2, 3), [90]) + # n_dims != len(degrees) + assert_raises(ValueError, pu._vander_nd, (), (), [90.65]) + # n_dims == 0 + assert_raises(ValueError, pu._vander_nd, (), (), []) + + def test_div_zerodiv(self): + # c2[-1] == 0 + assert_raises(ZeroDivisionError, pu._div, pu._div, (1, 2, 3), [0]) + + def test_pow_too_large(self): + # power > maxpower + assert_raises(ValueError, pu._pow, (), [1, 2, 3], 5, 4) + +class TestDomain: + + def test_getdomain(self): + # test for real values + x = [1, 10, 3, -1] + tgt = [-1, 10] + res = pu.getdomain(x) + assert_almost_equal(res, tgt) + + # test for complex values + x = [1 + 1j, 1 - 1j, 0, 2] + tgt = [-1j, 2 + 1j] + res = pu.getdomain(x) + assert_almost_equal(res, tgt) + + def test_mapdomain(self): + # test for real values + dom1 = [0, 4] + dom2 = [1, 3] + tgt = dom2 + res = pu.mapdomain(dom1, dom1, dom2) + assert_almost_equal(res, tgt) + + # test for complex values + dom1 = [0 - 1j, 2 + 1j] + dom2 = [-2, 2] + tgt = dom2 + x = dom1 + res = pu.mapdomain(x, dom1, dom2) + assert_almost_equal(res, tgt) + + # test for multidimensional arrays + dom1 = [0, 4] + dom2 = [1, 3] + tgt = np.array([dom2, dom2]) + x = np.array([dom1, dom1]) + res = pu.mapdomain(x, dom1, dom2) + assert_almost_equal(res, tgt) + + # test that subtypes are preserved. + class MyNDArray(np.ndarray): + pass + + dom1 = [0, 4] + dom2 = [1, 3] + x = np.array([dom1, dom1]).view(MyNDArray) + res = pu.mapdomain(x, dom1, dom2) + assert_(isinstance(res, MyNDArray)) + + def test_mapparms(self): + # test for real values + dom1 = [0, 4] + dom2 = [1, 3] + tgt = [1, .5] + res = pu. mapparms(dom1, dom2) + assert_almost_equal(res, tgt) + + # test for complex values + dom1 = [0 - 1j, 2 + 1j] + dom2 = [-2, 2] + tgt = [-1 + 1j, 1 - 1j] + res = pu.mapparms(dom1, dom2) + assert_almost_equal(res, tgt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_printing.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_printing.py new file mode 100644 index 0000000000000000000000000000000000000000..6651f6cd92056f94d19f62cd818eeed642df2b2e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_printing.py @@ -0,0 +1,552 @@ +from math import nan, inf +import pytest +from numpy._core import array, arange, printoptions +import numpy.polynomial as poly +from numpy.testing import assert_equal, assert_ + +# For testing polynomial printing with object arrays +from fractions import Fraction +from decimal import Decimal + + +class TestStrUnicodeSuperSubscripts: + + @pytest.fixture(scope='class', autouse=True) + def use_unicode(self): + poly.set_default_printstyle('unicode') + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·x + 3.0·x²"), + ([-1, 0, 3, -1], "-1.0 + 0.0·x + 3.0·x² - 1.0·x³"), + (arange(12), ("0.0 + 1.0·x + 2.0·x² + 3.0·x³ + 4.0·x⁴ + 5.0·x⁵ + " + "6.0·x⁶ + 7.0·x⁷ +\n8.0·x⁸ + 9.0·x⁹ + 10.0·x¹⁰ + " + "11.0·x¹¹")), + )) + def test_polynomial_str(self, inp, tgt): + p = poly.Polynomial(inp) + res = str(p) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·T₁(x) + 3.0·T₂(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0·T₁(x) + 3.0·T₂(x) - 1.0·T₃(x)"), + (arange(12), ("0.0 + 1.0·T₁(x) + 2.0·T₂(x) + 3.0·T₃(x) + 4.0·T₄(x) + " + "5.0·T₅(x) +\n6.0·T₆(x) + 7.0·T₇(x) + 8.0·T₈(x) + " + "9.0·T₉(x) + 10.0·T₁₀(x) + 11.0·T₁₁(x)")), + )) + def test_chebyshev_str(self, inp, tgt): + res = str(poly.Chebyshev(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·P₁(x) + 3.0·P₂(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0·P₁(x) + 3.0·P₂(x) - 1.0·P₃(x)"), + (arange(12), ("0.0 + 1.0·P₁(x) + 2.0·P₂(x) + 3.0·P₃(x) + 4.0·P₄(x) + " + "5.0·P₅(x) +\n6.0·P₆(x) + 7.0·P₇(x) + 8.0·P₈(x) + " + "9.0·P₉(x) + 10.0·P₁₀(x) + 11.0·P₁₁(x)")), + )) + def test_legendre_str(self, inp, tgt): + res = str(poly.Legendre(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·H₁(x) + 3.0·H₂(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0·H₁(x) + 3.0·H₂(x) - 1.0·H₃(x)"), + (arange(12), ("0.0 + 1.0·H₁(x) + 2.0·H₂(x) + 3.0·H₃(x) + 4.0·H₄(x) + " + "5.0·H₅(x) +\n6.0·H₆(x) + 7.0·H₇(x) + 8.0·H₈(x) + " + "9.0·H₉(x) + 10.0·H₁₀(x) + 11.0·H₁₁(x)")), + )) + def test_hermite_str(self, inp, tgt): + res = str(poly.Hermite(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·He₁(x) + 3.0·He₂(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0·He₁(x) + 3.0·He₂(x) - 1.0·He₃(x)"), + (arange(12), ("0.0 + 1.0·He₁(x) + 2.0·He₂(x) + 3.0·He₃(x) + " + "4.0·He₄(x) + 5.0·He₅(x) +\n6.0·He₆(x) + 7.0·He₇(x) + " + "8.0·He₈(x) + 9.0·He₉(x) + 10.0·He₁₀(x) +\n" + "11.0·He₁₁(x)")), + )) + def test_hermiteE_str(self, inp, tgt): + res = str(poly.HermiteE(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0·L₁(x) + 3.0·L₂(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0·L₁(x) + 3.0·L₂(x) - 1.0·L₃(x)"), + (arange(12), ("0.0 + 1.0·L₁(x) + 2.0·L₂(x) + 3.0·L₃(x) + 4.0·L₄(x) + " + "5.0·L₅(x) +\n6.0·L₆(x) + 7.0·L₇(x) + 8.0·L₈(x) + " + "9.0·L₉(x) + 10.0·L₁₀(x) + 11.0·L₁₁(x)")), + )) + def test_laguerre_str(self, inp, tgt): + res = str(poly.Laguerre(inp)) + assert_equal(res, tgt) + + def test_polynomial_str_domains(self): + res = str(poly.Polynomial([0, 1])) + tgt = '0.0 + 1.0·x' + assert_equal(res, tgt) + + res = str(poly.Polynomial([0, 1], domain=[1, 2])) + tgt = '0.0 + 1.0·(-3.0 + 2.0x)' + assert_equal(res, tgt) + +class TestStrAscii: + + @pytest.fixture(scope='class', autouse=True) + def use_ascii(self): + poly.set_default_printstyle('ascii') + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 x + 3.0 x**2"), + ([-1, 0, 3, -1], "-1.0 + 0.0 x + 3.0 x**2 - 1.0 x**3"), + (arange(12), ("0.0 + 1.0 x + 2.0 x**2 + 3.0 x**3 + 4.0 x**4 + " + "5.0 x**5 + 6.0 x**6 +\n7.0 x**7 + 8.0 x**8 + " + "9.0 x**9 + 10.0 x**10 + 11.0 x**11")), + )) + def test_polynomial_str(self, inp, tgt): + res = str(poly.Polynomial(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 T_1(x) + 3.0 T_2(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0 T_1(x) + 3.0 T_2(x) - 1.0 T_3(x)"), + (arange(12), ("0.0 + 1.0 T_1(x) + 2.0 T_2(x) + 3.0 T_3(x) + " + "4.0 T_4(x) + 5.0 T_5(x) +\n6.0 T_6(x) + 7.0 T_7(x) + " + "8.0 T_8(x) + 9.0 T_9(x) + 10.0 T_10(x) +\n" + "11.0 T_11(x)")), + )) + def test_chebyshev_str(self, inp, tgt): + res = str(poly.Chebyshev(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 P_1(x) + 3.0 P_2(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0 P_1(x) + 3.0 P_2(x) - 1.0 P_3(x)"), + (arange(12), ("0.0 + 1.0 P_1(x) + 2.0 P_2(x) + 3.0 P_3(x) + " + "4.0 P_4(x) + 5.0 P_5(x) +\n6.0 P_6(x) + 7.0 P_7(x) + " + "8.0 P_8(x) + 9.0 P_9(x) + 10.0 P_10(x) +\n" + "11.0 P_11(x)")), + )) + def test_legendre_str(self, inp, tgt): + res = str(poly.Legendre(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 H_1(x) + 3.0 H_2(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0 H_1(x) + 3.0 H_2(x) - 1.0 H_3(x)"), + (arange(12), ("0.0 + 1.0 H_1(x) + 2.0 H_2(x) + 3.0 H_3(x) + " + "4.0 H_4(x) + 5.0 H_5(x) +\n6.0 H_6(x) + 7.0 H_7(x) + " + "8.0 H_8(x) + 9.0 H_9(x) + 10.0 H_10(x) +\n" + "11.0 H_11(x)")), + )) + def test_hermite_str(self, inp, tgt): + res = str(poly.Hermite(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 He_1(x) + 3.0 He_2(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0 He_1(x) + 3.0 He_2(x) - 1.0 He_3(x)"), + (arange(12), ("0.0 + 1.0 He_1(x) + 2.0 He_2(x) + 3.0 He_3(x) + " + "4.0 He_4(x) +\n5.0 He_5(x) + 6.0 He_6(x) + " + "7.0 He_7(x) + 8.0 He_8(x) + 9.0 He_9(x) +\n" + "10.0 He_10(x) + 11.0 He_11(x)")), + )) + def test_hermiteE_str(self, inp, tgt): + res = str(poly.HermiteE(inp)) + assert_equal(res, tgt) + + @pytest.mark.parametrize(('inp', 'tgt'), ( + ([1, 2, 3], "1.0 + 2.0 L_1(x) + 3.0 L_2(x)"), + ([-1, 0, 3, -1], "-1.0 + 0.0 L_1(x) + 3.0 L_2(x) - 1.0 L_3(x)"), + (arange(12), ("0.0 + 1.0 L_1(x) + 2.0 L_2(x) + 3.0 L_3(x) + " + "4.0 L_4(x) + 5.0 L_5(x) +\n6.0 L_6(x) + 7.0 L_7(x) + " + "8.0 L_8(x) + 9.0 L_9(x) + 10.0 L_10(x) +\n" + "11.0 L_11(x)")), + )) + def test_laguerre_str(self, inp, tgt): + res = str(poly.Laguerre(inp)) + assert_equal(res, tgt) + + def test_polynomial_str_domains(self): + res = str(poly.Polynomial([0, 1])) + tgt = '0.0 + 1.0 x' + assert_equal(res, tgt) + + res = str(poly.Polynomial([0, 1], domain=[1, 2])) + tgt = '0.0 + 1.0 (-3.0 + 2.0x)' + assert_equal(res, tgt) + +class TestLinebreaking: + + @pytest.fixture(scope='class', autouse=True) + def use_ascii(self): + poly.set_default_printstyle('ascii') + + def test_single_line_one_less(self): + # With 'ascii' style, len(str(p)) is default linewidth - 1 (i.e. 74) + p = poly.Polynomial([12345678, 12345678, 12345678, 12345678, 123]) + assert_equal(len(str(p)), 74) + assert_equal(str(p), ( + '12345678.0 + 12345678.0 x + 12345678.0 x**2 + ' + '12345678.0 x**3 + 123.0 x**4' + )) + + def test_num_chars_is_linewidth(self): + # len(str(p)) == default linewidth == 75 + p = poly.Polynomial([12345678, 12345678, 12345678, 12345678, 1234]) + assert_equal(len(str(p)), 75) + assert_equal(str(p), ( + '12345678.0 + 12345678.0 x + 12345678.0 x**2 + ' + '12345678.0 x**3 +\n1234.0 x**4' + )) + + def test_first_linebreak_multiline_one_less_than_linewidth(self): + # Multiline str where len(first_line) + len(next_term) == lw - 1 == 74 + p = poly.Polynomial( + [12345678, 12345678, 12345678, 12345678, 1, 12345678] + ) + assert_equal(len(str(p).split('\n')[0]), 74) + assert_equal(str(p), ( + '12345678.0 + 12345678.0 x + 12345678.0 x**2 + ' + '12345678.0 x**3 + 1.0 x**4 +\n12345678.0 x**5' + )) + + def test_first_linebreak_multiline_on_linewidth(self): + # First line is one character longer than previous test + p = poly.Polynomial( + [12345678, 12345678, 12345678, 12345678.12, 1, 12345678] + ) + assert_equal(str(p), ( + '12345678.0 + 12345678.0 x + 12345678.0 x**2 + ' + '12345678.12 x**3 +\n1.0 x**4 + 12345678.0 x**5' + )) + + @pytest.mark.parametrize(('lw', 'tgt'), ( + (75, ('0.0 + 10.0 x + 200.0 x**2 + 3000.0 x**3 + 40000.0 x**4 + ' + '500000.0 x**5 +\n600000.0 x**6 + 70000.0 x**7 + 8000.0 x**8 + ' + '900.0 x**9')), + (45, ('0.0 + 10.0 x + 200.0 x**2 + 3000.0 x**3 +\n40000.0 x**4 + ' + '500000.0 x**5 +\n600000.0 x**6 + 70000.0 x**7 + 8000.0 x**8 +\n' + '900.0 x**9')), + (132, ('0.0 + 10.0 x + 200.0 x**2 + 3000.0 x**3 + 40000.0 x**4 + ' + '500000.0 x**5 + 600000.0 x**6 + 70000.0 x**7 + 8000.0 x**8 + ' + '900.0 x**9')), + )) + def test_linewidth_printoption(self, lw, tgt): + p = poly.Polynomial( + [0, 10, 200, 3000, 40000, 500000, 600000, 70000, 8000, 900] + ) + with printoptions(linewidth=lw): + assert_equal(str(p), tgt) + for line in str(p).split('\n'): + assert_(len(line) < lw) + + +def test_set_default_printoptions(): + p = poly.Polynomial([1, 2, 3]) + c = poly.Chebyshev([1, 2, 3]) + poly.set_default_printstyle('ascii') + assert_equal(str(p), "1.0 + 2.0 x + 3.0 x**2") + assert_equal(str(c), "1.0 + 2.0 T_1(x) + 3.0 T_2(x)") + poly.set_default_printstyle('unicode') + assert_equal(str(p), "1.0 + 2.0·x + 3.0·x²") + assert_equal(str(c), "1.0 + 2.0·T₁(x) + 3.0·T₂(x)") + with pytest.raises(ValueError): + poly.set_default_printstyle('invalid_input') + + +def test_complex_coefficients(): + """Test both numpy and built-in complex.""" + coefs = [0+1j, 1+1j, -2+2j, 3+0j] + # numpy complex + p1 = poly.Polynomial(coefs) + # Python complex + p2 = poly.Polynomial(array(coefs, dtype=object)) + poly.set_default_printstyle('unicode') + assert_equal(str(p1), "1j + (1+1j)·x - (2-2j)·x² + (3+0j)·x³") + assert_equal(str(p2), "1j + (1+1j)·x + (-2+2j)·x² + (3+0j)·x³") + poly.set_default_printstyle('ascii') + assert_equal(str(p1), "1j + (1+1j) x - (2-2j) x**2 + (3+0j) x**3") + assert_equal(str(p2), "1j + (1+1j) x + (-2+2j) x**2 + (3+0j) x**3") + + +@pytest.mark.parametrize(('coefs', 'tgt'), ( + (array([Fraction(1, 2), Fraction(3, 4)], dtype=object), ( + "1/2 + 3/4·x" + )), + (array([1, 2, Fraction(5, 7)], dtype=object), ( + "1 + 2·x + 5/7·x²" + )), + (array([Decimal('1.00'), Decimal('2.2'), 3], dtype=object), ( + "1.00 + 2.2·x + 3·x²" + )), +)) +def test_numeric_object_coefficients(coefs, tgt): + p = poly.Polynomial(coefs) + poly.set_default_printstyle('unicode') + assert_equal(str(p), tgt) + + +@pytest.mark.parametrize(('coefs', 'tgt'), ( + (array([1, 2, 'f'], dtype=object), '1 + 2·x + f·x²'), + (array([1, 2, [3, 4]], dtype=object), '1 + 2·x + [3, 4]·x²'), +)) +def test_nonnumeric_object_coefficients(coefs, tgt): + """ + Test coef fallback for object arrays of non-numeric coefficients. + """ + p = poly.Polynomial(coefs) + poly.set_default_printstyle('unicode') + assert_equal(str(p), tgt) + + +class TestFormat: + def test_format_unicode(self): + poly.set_default_printstyle('ascii') + p = poly.Polynomial([1, 2, 0, -1]) + assert_equal(format(p, 'unicode'), "1.0 + 2.0·x + 0.0·x² - 1.0·x³") + + def test_format_ascii(self): + poly.set_default_printstyle('unicode') + p = poly.Polynomial([1, 2, 0, -1]) + assert_equal( + format(p, 'ascii'), "1.0 + 2.0 x + 0.0 x**2 - 1.0 x**3" + ) + + def test_empty_formatstr(self): + poly.set_default_printstyle('ascii') + p = poly.Polynomial([1, 2, 3]) + assert_equal(format(p), "1.0 + 2.0 x + 3.0 x**2") + assert_equal(f"{p}", "1.0 + 2.0 x + 3.0 x**2") + + def test_bad_formatstr(self): + p = poly.Polynomial([1, 2, 0, -1]) + with pytest.raises(ValueError): + format(p, '.2f') + + +@pytest.mark.parametrize(('poly', 'tgt'), ( + (poly.Polynomial, '1.0 + 2.0·z + 3.0·z²'), + (poly.Chebyshev, '1.0 + 2.0·T₁(z) + 3.0·T₂(z)'), + (poly.Hermite, '1.0 + 2.0·H₁(z) + 3.0·H₂(z)'), + (poly.HermiteE, '1.0 + 2.0·He₁(z) + 3.0·He₂(z)'), + (poly.Laguerre, '1.0 + 2.0·L₁(z) + 3.0·L₂(z)'), + (poly.Legendre, '1.0 + 2.0·P₁(z) + 3.0·P₂(z)'), +)) +def test_symbol(poly, tgt): + p = poly([1, 2, 3], symbol='z') + assert_equal(f"{p:unicode}", tgt) + + +class TestRepr: + def test_polynomial_repr(self): + res = repr(poly.Polynomial([0, 1])) + tgt = ( + "Polynomial([0., 1.], domain=[-1., 1.], window=[-1., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + def test_chebyshev_repr(self): + res = repr(poly.Chebyshev([0, 1])) + tgt = ( + "Chebyshev([0., 1.], domain=[-1., 1.], window=[-1., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + def test_legendre_repr(self): + res = repr(poly.Legendre([0, 1])) + tgt = ( + "Legendre([0., 1.], domain=[-1., 1.], window=[-1., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + def test_hermite_repr(self): + res = repr(poly.Hermite([0, 1])) + tgt = ( + "Hermite([0., 1.], domain=[-1., 1.], window=[-1., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + def test_hermiteE_repr(self): + res = repr(poly.HermiteE([0, 1])) + tgt = ( + "HermiteE([0., 1.], domain=[-1., 1.], window=[-1., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + def test_laguerre_repr(self): + res = repr(poly.Laguerre([0, 1])) + tgt = ( + "Laguerre([0., 1.], domain=[0., 1.], window=[0., 1.], " + "symbol='x')" + ) + assert_equal(res, tgt) + + +class TestLatexRepr: + """Test the latex repr used by Jupyter""" + + @staticmethod + def as_latex(obj): + # right now we ignore the formatting of scalars in our tests, since + # it makes them too verbose. Ideally, the formatting of scalars will + # be fixed such that tests below continue to pass + obj._repr_latex_scalar = lambda x, parens=False: str(x) + try: + return obj._repr_latex_() + finally: + del obj._repr_latex_scalar + + def test_simple_polynomial(self): + # default input + p = poly.Polynomial([1, 2, 3]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0 + 2.0\,x + 3.0\,x^{2}$') + + # translated input + p = poly.Polynomial([1, 2, 3], domain=[-2, 0]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0 + 2.0\,\left(1.0 + x\right) + 3.0\,\left(1.0 + x\right)^{2}$') + + # scaled input + p = poly.Polynomial([1, 2, 3], domain=[-0.5, 0.5]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0 + 2.0\,\left(2.0x\right) + 3.0\,\left(2.0x\right)^{2}$') + + # affine input + p = poly.Polynomial([1, 2, 3], domain=[-1, 0]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0 + 2.0\,\left(1.0 + 2.0x\right) + 3.0\,\left(1.0 + 2.0x\right)^{2}$') + + def test_basis_func(self): + p = poly.Chebyshev([1, 2, 3]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0\,{T}_{0}(x) + 2.0\,{T}_{1}(x) + 3.0\,{T}_{2}(x)$') + # affine input - check no surplus parens are added + p = poly.Chebyshev([1, 2, 3], domain=[-1, 0]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0\,{T}_{0}(1.0 + 2.0x) + 2.0\,{T}_{1}(1.0 + 2.0x) + 3.0\,{T}_{2}(1.0 + 2.0x)$') + + def test_multichar_basis_func(self): + p = poly.HermiteE([1, 2, 3]) + assert_equal(self.as_latex(p), + r'$x \mapsto 1.0\,{He}_{0}(x) + 2.0\,{He}_{1}(x) + 3.0\,{He}_{2}(x)$') + + def test_symbol_basic(self): + # default input + p = poly.Polynomial([1, 2, 3], symbol='z') + assert_equal(self.as_latex(p), + r'$z \mapsto 1.0 + 2.0\,z + 3.0\,z^{2}$') + + # translated input + p = poly.Polynomial([1, 2, 3], domain=[-2, 0], symbol='z') + assert_equal( + self.as_latex(p), + ( + r'$z \mapsto 1.0 + 2.0\,\left(1.0 + z\right) + 3.0\,' + r'\left(1.0 + z\right)^{2}$' + ), + ) + + # scaled input + p = poly.Polynomial([1, 2, 3], domain=[-0.5, 0.5], symbol='z') + assert_equal( + self.as_latex(p), + ( + r'$z \mapsto 1.0 + 2.0\,\left(2.0z\right) + 3.0\,' + r'\left(2.0z\right)^{2}$' + ), + ) + + # affine input + p = poly.Polynomial([1, 2, 3], domain=[-1, 0], symbol='z') + assert_equal( + self.as_latex(p), + ( + r'$z \mapsto 1.0 + 2.0\,\left(1.0 + 2.0z\right) + 3.0\,' + r'\left(1.0 + 2.0z\right)^{2}$' + ), + ) + + def test_numeric_object_coefficients(self): + coefs = array([Fraction(1, 2), Fraction(1)]) + p = poly.Polynomial(coefs) + assert_equal(self.as_latex(p), '$x \\mapsto 1/2 + 1\\,x$') + +SWITCH_TO_EXP = ( + '1.0 + (1.0e-01) x + (1.0e-02) x**2', + '1.2 + (1.2e-01) x + (1.2e-02) x**2', + '1.23 + 0.12 x + (1.23e-02) x**2 + (1.23e-03) x**3', + '1.235 + 0.123 x + (1.235e-02) x**2 + (1.235e-03) x**3', + '1.2346 + 0.1235 x + 0.0123 x**2 + (1.2346e-03) x**3 + (1.2346e-04) x**4', + '1.23457 + 0.12346 x + 0.01235 x**2 + (1.23457e-03) x**3 + ' + '(1.23457e-04) x**4', + '1.234568 + 0.123457 x + 0.012346 x**2 + 0.001235 x**3 + ' + '(1.234568e-04) x**4 + (1.234568e-05) x**5', + '1.2345679 + 0.1234568 x + 0.0123457 x**2 + 0.0012346 x**3 + ' + '(1.2345679e-04) x**4 + (1.2345679e-05) x**5') + +class TestPrintOptions: + """ + Test the output is properly configured via printoptions. + The exponential notation is enabled automatically when the values + are too small or too large. + """ + + @pytest.fixture(scope='class', autouse=True) + def use_ascii(self): + poly.set_default_printstyle('ascii') + + def test_str(self): + p = poly.Polynomial([1/2, 1/7, 1/7*10**8, 1/7*10**9]) + assert_equal(str(p), '0.5 + 0.14285714 x + 14285714.28571429 x**2 ' + '+ (1.42857143e+08) x**3') + + with printoptions(precision=3): + assert_equal(str(p), '0.5 + 0.143 x + 14285714.286 x**2 ' + '+ (1.429e+08) x**3') + + def test_latex(self): + p = poly.Polynomial([1/2, 1/7, 1/7*10**8, 1/7*10**9]) + assert_equal(p._repr_latex_(), + r'$x \mapsto \text{0.5} + \text{0.14285714}\,x + ' + r'\text{14285714.28571429}\,x^{2} + ' + r'\text{(1.42857143e+08)}\,x^{3}$') + + with printoptions(precision=3): + assert_equal(p._repr_latex_(), + r'$x \mapsto \text{0.5} + \text{0.143}\,x + ' + r'\text{14285714.286}\,x^{2} + \text{(1.429e+08)}\,x^{3}$') + + def test_fixed(self): + p = poly.Polynomial([1/2]) + assert_equal(str(p), '0.5') + + with printoptions(floatmode='fixed'): + assert_equal(str(p), '0.50000000') + + with printoptions(floatmode='fixed', precision=4): + assert_equal(str(p), '0.5000') + + def test_switch_to_exp(self): + for i, s in enumerate(SWITCH_TO_EXP): + with printoptions(precision=i): + p = poly.Polynomial([1.23456789*10**-i + for i in range(i//2+3)]) + assert str(p).replace('\n', ' ') == s + + def test_non_finite(self): + p = poly.Polynomial([nan, inf]) + assert str(p) == 'nan + inf x' + assert p._repr_latex_() == r'$x \mapsto \text{nan} + \text{inf}\,x$' + with printoptions(nanstr='NAN', infstr='INF'): + assert str(p) == 'NAN + INF x' + assert p._repr_latex_() == \ + r'$x \mapsto \text{NAN} + \text{INF}\,x$' diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_symbol.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_symbol.py new file mode 100644 index 0000000000000000000000000000000000000000..f985533f9fe8c639f224daead98e31dc6f798cc4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/polynomial/tests/test_symbol.py @@ -0,0 +1,216 @@ +""" +Tests related to the ``symbol`` attribute of the ABCPolyBase class. +""" + +import pytest +import numpy.polynomial as poly +from numpy._core import array +from numpy.testing import assert_equal, assert_raises, assert_ + + +class TestInit: + """ + Test polynomial creation with symbol kwarg. + """ + c = [1, 2, 3] + + def test_default_symbol(self): + p = poly.Polynomial(self.c) + assert_equal(p.symbol, 'x') + + @pytest.mark.parametrize(('bad_input', 'exception'), ( + ('', ValueError), + ('3', ValueError), + (None, TypeError), + (1, TypeError), + )) + def test_symbol_bad_input(self, bad_input, exception): + with pytest.raises(exception): + p = poly.Polynomial(self.c, symbol=bad_input) + + @pytest.mark.parametrize('symbol', ( + 'x', + 'x_1', + 'A', + 'xyz', + 'β', + )) + def test_valid_symbols(self, symbol): + """ + Values for symbol that should pass input validation. + """ + p = poly.Polynomial(self.c, symbol=symbol) + assert_equal(p.symbol, symbol) + + def test_property(self): + """ + 'symbol' attribute is read only. + """ + p = poly.Polynomial(self.c, symbol='x') + with pytest.raises(AttributeError): + p.symbol = 'z' + + def test_change_symbol(self): + p = poly.Polynomial(self.c, symbol='y') + # Create new polynomial from p with different symbol + pt = poly.Polynomial(p.coef, symbol='t') + assert_equal(pt.symbol, 't') + + +class TestUnaryOperators: + p = poly.Polynomial([1, 2, 3], symbol='z') + + def test_neg(self): + n = -self.p + assert_equal(n.symbol, 'z') + + def test_scalarmul(self): + out = self.p * 10 + assert_equal(out.symbol, 'z') + + def test_rscalarmul(self): + out = 10 * self.p + assert_equal(out.symbol, 'z') + + def test_pow(self): + out = self.p ** 3 + assert_equal(out.symbol, 'z') + + +@pytest.mark.parametrize( + 'rhs', + ( + poly.Polynomial([4, 5, 6], symbol='z'), + array([4, 5, 6]), + ), +) +class TestBinaryOperatorsSameSymbol: + """ + Ensure symbol is preserved for numeric operations on polynomials with + the same symbol + """ + p = poly.Polynomial([1, 2, 3], symbol='z') + + def test_add(self, rhs): + out = self.p + rhs + assert_equal(out.symbol, 'z') + + def test_sub(self, rhs): + out = self.p - rhs + assert_equal(out.symbol, 'z') + + def test_polymul(self, rhs): + out = self.p * rhs + assert_equal(out.symbol, 'z') + + def test_divmod(self, rhs): + for out in divmod(self.p, rhs): + assert_equal(out.symbol, 'z') + + def test_radd(self, rhs): + out = rhs + self.p + assert_equal(out.symbol, 'z') + + def test_rsub(self, rhs): + out = rhs - self.p + assert_equal(out.symbol, 'z') + + def test_rmul(self, rhs): + out = rhs * self.p + assert_equal(out.symbol, 'z') + + def test_rdivmod(self, rhs): + for out in divmod(rhs, self.p): + assert_equal(out.symbol, 'z') + + +class TestBinaryOperatorsDifferentSymbol: + p = poly.Polynomial([1, 2, 3], symbol='x') + other = poly.Polynomial([4, 5, 6], symbol='y') + ops = (p.__add__, p.__sub__, p.__mul__, p.__floordiv__, p.__mod__) + + @pytest.mark.parametrize('f', ops) + def test_binops_fails(self, f): + assert_raises(ValueError, f, self.other) + + +class TestEquality: + p = poly.Polynomial([1, 2, 3], symbol='x') + + def test_eq(self): + other = poly.Polynomial([1, 2, 3], symbol='x') + assert_(self.p == other) + + def test_neq(self): + other = poly.Polynomial([1, 2, 3], symbol='y') + assert_(not self.p == other) + + +class TestExtraMethods: + """ + Test other methods for manipulating/creating polynomial objects. + """ + p = poly.Polynomial([1, 2, 3, 0], symbol='z') + + def test_copy(self): + other = self.p.copy() + assert_equal(other.symbol, 'z') + + def test_trim(self): + other = self.p.trim() + assert_equal(other.symbol, 'z') + + def test_truncate(self): + other = self.p.truncate(2) + assert_equal(other.symbol, 'z') + + @pytest.mark.parametrize('kwarg', ( + {'domain': [-10, 10]}, + {'window': [-10, 10]}, + {'kind': poly.Chebyshev}, + )) + def test_convert(self, kwarg): + other = self.p.convert(**kwarg) + assert_equal(other.symbol, 'z') + + def test_integ(self): + other = self.p.integ() + assert_equal(other.symbol, 'z') + + def test_deriv(self): + other = self.p.deriv() + assert_equal(other.symbol, 'z') + + +def test_composition(): + p = poly.Polynomial([3, 2, 1], symbol="t") + q = poly.Polynomial([5, 1, 0, -1], symbol="λ_1") + r = p(q) + assert r.symbol == "λ_1" + + +# +# Class methods that result in new polynomial class instances +# + + +def test_fit(): + x, y = (range(10),)*2 + p = poly.Polynomial.fit(x, y, deg=1, symbol='z') + assert_equal(p.symbol, 'z') + + +def test_froomroots(): + roots = [-2, 2] + p = poly.Polynomial.fromroots(roots, symbol='z') + assert_equal(p.symbol, 'z') + + +def test_identity(): + p = poly.Polynomial.identity(domain=[-1, 1], window=[5, 20], symbol='z') + assert_equal(p.symbol, 'z') + + +def test_basis(): + p = poly.Polynomial.basis(3, symbol='z') + assert_equal(p.symbol, 'z') diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/py.typed b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/py.typed new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..1a439ada8c35a6971b5fa8507381bde63ead8a6e --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.py @@ -0,0 +1,2 @@ +from numpy._core.records import __all__, __doc__ +from numpy._core.records import * diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..605770f7c9c0695bcbe71a3832690d9045a6038c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__init__.pyi @@ -0,0 +1,22 @@ +from numpy._core.records import ( + record, + recarray, + find_duplicate, + format_parser, + fromarrays, + fromrecords, + fromstring, + fromfile, + array, +) +__all__ = [ + "record", + "recarray", + "format_parser", + "fromarrays", + "fromrecords", + "fromstring", + "fromfile", + "array", + "find_duplicate", +] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..cc58be8469c7c1655cbd4c2c8329c3e5da4b82e9 Binary files /dev/null and b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/rec/__pycache__/__init__.cpython-310.pyc differ diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/strings/__pycache__/__init__.cpython-310.pyc b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/strings/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 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b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test__all__.py @@ -0,0 +1,9 @@ + +import collections +import numpy as np + + +def test_no_duplicates_in_np__all__(): + # Regression test for gh-10198. + dups = {k: v for k, v in collections.Counter(np.__all__).items() if v > 1} + assert len(dups) == 0 diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_configtool.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_configtool.py new file mode 100644 index 0000000000000000000000000000000000000000..5215057f644a5573a0ef8938f19f9876b04de2c1 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_configtool.py @@ -0,0 +1,43 @@ +import os +import subprocess +import sysconfig + +import pytest +import numpy as np + +from numpy.testing import IS_WASM + + +is_editable = not bool(np.__path__) +numpy_in_sitepackages = sysconfig.get_path('platlib') in np.__file__ +# We only expect to have a `numpy-config` available if NumPy was installed via +# a build frontend (and not `spin` for example) +if not (numpy_in_sitepackages or is_editable): + pytest.skip("`numpy-config` not expected to be installed", + allow_module_level=True) + + +def check_numpyconfig(arg): + p = subprocess.run(['numpy-config', arg], capture_output=True, text=True) + p.check_returncode() + return p.stdout.strip() + +@pytest.mark.skipif(IS_WASM, reason="wasm interpreter cannot start subprocess") +def test_configtool_version(): + stdout = check_numpyconfig('--version') + assert stdout == np.__version__ + +@pytest.mark.skipif(IS_WASM, reason="wasm interpreter cannot start subprocess") +def test_configtool_cflags(): + stdout = check_numpyconfig('--cflags') + assert stdout.endswith(os.path.join('numpy', '_core', 'include')) + +@pytest.mark.skipif(IS_WASM, reason="wasm interpreter cannot start subprocess") +def test_configtool_pkgconfigdir(): + stdout = check_numpyconfig('--pkgconfigdir') + assert stdout.endswith(os.path.join('numpy', '_core', 'lib', 'pkgconfig')) + + if not is_editable: + # Also check that the .pc file actually exists (unless we're using an + # editable install, then it'll be hiding in the build dir) + assert os.path.exists(os.path.join(stdout, 'numpy.pc')) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_ctypeslib.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_ctypeslib.py new file mode 100644 index 0000000000000000000000000000000000000000..2fd0c042f2caa7af8922c47d4d7d75ec9df549c0 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_ctypeslib.py @@ -0,0 +1,377 @@ +import sys +import sysconfig +import weakref +from pathlib import Path + +import pytest + +import numpy as np +from numpy.ctypeslib import ndpointer, load_library, as_array +from numpy.testing import assert_, assert_array_equal, assert_raises, assert_equal + +try: + import ctypes +except ImportError: + ctypes = None +else: + cdll = None + test_cdll = None + if hasattr(sys, 'gettotalrefcount'): + try: + cdll = load_library( + '_multiarray_umath_d', np._core._multiarray_umath.__file__ + ) + except OSError: + pass + try: + test_cdll = load_library( + '_multiarray_tests', np._core._multiarray_tests.__file__ + ) + except OSError: + pass + if cdll is None: + cdll = load_library( + '_multiarray_umath', np._core._multiarray_umath.__file__) + if test_cdll is None: + test_cdll = load_library( + '_multiarray_tests', np._core._multiarray_tests.__file__ + ) + + c_forward_pointer = test_cdll.forward_pointer + + +@pytest.mark.skipif(ctypes is None, + reason="ctypes not available in this python") +@pytest.mark.skipif(sys.platform == 'cygwin', + reason="Known to fail on cygwin") +class TestLoadLibrary: + def test_basic(self): + loader_path = np._core._multiarray_umath.__file__ + + out1 = load_library('_multiarray_umath', loader_path) + out2 = load_library(Path('_multiarray_umath'), loader_path) + out3 = load_library('_multiarray_umath', Path(loader_path)) + out4 = load_library(b'_multiarray_umath', loader_path) + + assert isinstance(out1, ctypes.CDLL) + assert out1 is out2 is out3 is out4 + + def test_basic2(self): + # Regression for #801: load_library with a full library name + # (including extension) does not work. + try: + so_ext = sysconfig.get_config_var('EXT_SUFFIX') + load_library('_multiarray_umath%s' % so_ext, + np._core._multiarray_umath.__file__) + except ImportError as e: + msg = ("ctypes is not available on this python: skipping the test" + " (import error was: %s)" % str(e)) + print(msg) + + +class TestNdpointer: + def test_dtype(self): + dt = np.intc + p = ndpointer(dtype=dt) + assert_(p.from_param(np.array([1], dt))) + dt = 'i4') + p = ndpointer(dtype=dt) + p.from_param(np.array([1], dt)) + assert_raises(TypeError, p.from_param, + np.array([1], dt.newbyteorder('swap'))) + dtnames = ['x', 'y'] + dtformats = [np.intc, np.float64] + dtdescr = {'names': dtnames, 'formats': dtformats} + dt = np.dtype(dtdescr) + p = ndpointer(dtype=dt) + assert_(p.from_param(np.zeros((10,), dt))) + samedt = np.dtype(dtdescr) + p = ndpointer(dtype=samedt) + assert_(p.from_param(np.zeros((10,), dt))) + dt2 = np.dtype(dtdescr, align=True) + if dt.itemsize != dt2.itemsize: + assert_raises(TypeError, p.from_param, np.zeros((10,), dt2)) + else: + assert_(p.from_param(np.zeros((10,), dt2))) + + def test_ndim(self): + p = ndpointer(ndim=0) + assert_(p.from_param(np.array(1))) + assert_raises(TypeError, p.from_param, np.array([1])) + p = ndpointer(ndim=1) + assert_raises(TypeError, p.from_param, np.array(1)) + assert_(p.from_param(np.array([1]))) + p = ndpointer(ndim=2) + assert_(p.from_param(np.array([[1]]))) + + def test_shape(self): + p = ndpointer(shape=(1, 2)) + assert_(p.from_param(np.array([[1, 2]]))) + assert_raises(TypeError, p.from_param, np.array([[1], [2]])) + p = ndpointer(shape=()) + assert_(p.from_param(np.array(1))) + + def test_flags(self): + x = np.array([[1, 2], [3, 4]], order='F') + p = ndpointer(flags='FORTRAN') + assert_(p.from_param(x)) + p = ndpointer(flags='CONTIGUOUS') + assert_raises(TypeError, p.from_param, x) + p = ndpointer(flags=x.flags.num) + assert_(p.from_param(x)) + assert_raises(TypeError, p.from_param, np.array([[1, 2], [3, 4]])) + + def test_cache(self): + assert_(ndpointer(dtype=np.float64) is ndpointer(dtype=np.float64)) + + # shapes are normalized + assert_(ndpointer(shape=2) is ndpointer(shape=(2,))) + + # 1.12 <= v < 1.16 had a bug that made these fail + assert_(ndpointer(shape=2) is not ndpointer(ndim=2)) + assert_(ndpointer(ndim=2) is not ndpointer(shape=2)) + +@pytest.mark.skipif(ctypes is None, + reason="ctypes not available on this python installation") +class TestNdpointerCFunc: + def test_arguments(self): + """ Test that arguments are coerced from arrays """ + c_forward_pointer.restype = ctypes.c_void_p + c_forward_pointer.argtypes = (ndpointer(ndim=2),) + + c_forward_pointer(np.zeros((2, 3))) + # too many dimensions + assert_raises( + ctypes.ArgumentError, c_forward_pointer, np.zeros((2, 3, 4))) + + @pytest.mark.parametrize( + 'dt', [ + float, + np.dtype(dict( + formats=['u2') + ct = np.ctypeslib.as_ctypes_type(dt) + assert_equal(ct, ctypes.c_uint16.__ctype_be__) + + dt = np.dtype('u2') + ct = np.ctypeslib.as_ctypes_type(dt) + assert_equal(ct, ctypes.c_uint16) + + def test_subarray(self): + dt = np.dtype((np.int32, (2, 3))) + ct = np.ctypeslib.as_ctypes_type(dt) + assert_equal(ct, 2 * (3 * ctypes.c_int32)) + + def test_structure(self): + dt = np.dtype([ + ('a', np.uint16), + ('b', np.uint32), + ]) + + ct = np.ctypeslib.as_ctypes_type(dt) + assert_(issubclass(ct, ctypes.Structure)) + assert_equal(ctypes.sizeof(ct), dt.itemsize) + assert_equal(ct._fields_, [ + ('a', ctypes.c_uint16), + ('b', ctypes.c_uint32), + ]) + + def test_structure_aligned(self): + dt = np.dtype([ + ('a', np.uint16), + ('b', np.uint32), + ], align=True) + + ct = np.ctypeslib.as_ctypes_type(dt) + assert_(issubclass(ct, ctypes.Structure)) + assert_equal(ctypes.sizeof(ct), dt.itemsize) + assert_equal(ct._fields_, [ + ('a', ctypes.c_uint16), + ('', ctypes.c_char * 2), # padding + ('b', ctypes.c_uint32), + ]) + + def test_union(self): + dt = np.dtype(dict( + names=['a', 'b'], + offsets=[0, 0], + formats=[np.uint16, np.uint32] + )) + + ct = np.ctypeslib.as_ctypes_type(dt) + assert_(issubclass(ct, ctypes.Union)) + assert_equal(ctypes.sizeof(ct), dt.itemsize) + assert_equal(ct._fields_, [ + ('a', ctypes.c_uint16), + ('b', ctypes.c_uint32), + ]) + + def test_padded_union(self): + dt = np.dtype(dict( + names=['a', 'b'], + offsets=[0, 0], + formats=[np.uint16, np.uint32], + itemsize=5, + )) + + ct = np.ctypeslib.as_ctypes_type(dt) + assert_(issubclass(ct, ctypes.Union)) + assert_equal(ctypes.sizeof(ct), dt.itemsize) + assert_equal(ct._fields_, [ + ('a', ctypes.c_uint16), + ('b', ctypes.c_uint32), + ('', ctypes.c_char * 5), # padding + ]) + + def test_overlapping(self): + dt = np.dtype(dict( + names=['a', 'b'], + offsets=[0, 2], + formats=[np.uint32, np.uint32] + )) + assert_raises(NotImplementedError, np.ctypeslib.as_ctypes_type, dt) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_lazyloading.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_lazyloading.py new file mode 100644 index 0000000000000000000000000000000000000000..1298fadc5618069776c02f192afcaf742679f860 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_lazyloading.py @@ -0,0 +1,37 @@ +import sys +from importlib.util import LazyLoader, find_spec, module_from_spec +import pytest + + +# Warning raised by _reload_guard() in numpy/__init__.py +@pytest.mark.filterwarnings("ignore:The NumPy module was reloaded") +def test_lazy_load(): + # gh-22045. lazyload doesn't import submodule names into the namespace + # muck with sys.modules to test the importing system + old_numpy = sys.modules.pop("numpy") + + numpy_modules = {} + for mod_name, mod in list(sys.modules.items()): + if mod_name[:6] == "numpy.": + numpy_modules[mod_name] = mod + sys.modules.pop(mod_name) + + try: + # create lazy load of numpy as np + spec = find_spec("numpy") + module = module_from_spec(spec) + sys.modules["numpy"] = module + loader = LazyLoader(spec.loader) + loader.exec_module(module) + np = module + + # test a subpackage import + from numpy.lib import recfunctions # noqa: F401 + + # test triggering the import of the package + np.ndarray + + finally: + if old_numpy: + sys.modules["numpy"] = old_numpy + sys.modules.update(numpy_modules) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_matlib.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_matlib.py new file mode 100644 index 0000000000000000000000000000000000000000..0e93c4848d75432c97189273f4f2e0cbc6c04e20 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_matlib.py @@ -0,0 +1,58 @@ +import numpy as np +import numpy.matlib +from numpy.testing import assert_array_equal, assert_ + +def test_empty(): + x = numpy.matlib.empty((2,)) + assert_(isinstance(x, np.matrix)) + assert_(x.shape, (1, 2)) + +def test_ones(): + assert_array_equal(numpy.matlib.ones((2, 3)), + np.matrix([[ 1., 1., 1.], + [ 1., 1., 1.]])) + + assert_array_equal(numpy.matlib.ones(2), np.matrix([[ 1., 1.]])) + +def test_zeros(): + assert_array_equal(numpy.matlib.zeros((2, 3)), + np.matrix([[ 0., 0., 0.], + [ 0., 0., 0.]])) + + assert_array_equal(numpy.matlib.zeros(2), np.matrix([[ 0., 0.]])) + +def test_identity(): + x = numpy.matlib.identity(2, dtype=int) + assert_array_equal(x, np.matrix([[1, 0], [0, 1]])) + +def test_eye(): + xc = numpy.matlib.eye(3, k=1, dtype=int) + assert_array_equal(xc, np.matrix([[ 0, 1, 0], + [ 0, 0, 1], + [ 0, 0, 0]])) + assert xc.flags.c_contiguous + assert not xc.flags.f_contiguous + + xf = numpy.matlib.eye(3, 4, dtype=int, order='F') + assert_array_equal(xf, np.matrix([[ 1, 0, 0, 0], + [ 0, 1, 0, 0], + [ 0, 0, 1, 0]])) + assert not xf.flags.c_contiguous + assert xf.flags.f_contiguous + +def test_rand(): + x = numpy.matlib.rand(3) + # check matrix type, array would have shape (3,) + assert_(x.ndim == 2) + +def test_randn(): + x = np.matlib.randn(3) + # check matrix type, array would have shape (3,) + assert_(x.ndim == 2) + +def test_repmat(): + a1 = np.arange(4) + x = numpy.matlib.repmat(a1, 2, 2) + y = np.array([[0, 1, 2, 3, 0, 1, 2, 3], + [0, 1, 2, 3, 0, 1, 2, 3]]) + assert_array_equal(x, y) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_config.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_config.py new file mode 100644 index 0000000000000000000000000000000000000000..0e225b2bd7b4c0136e813ce8baf1063d4692ba84 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_config.py @@ -0,0 +1,44 @@ +""" +Check the numpy config is valid. +""" +import numpy as np +import pytest +from unittest.mock import patch + +pytestmark = pytest.mark.skipif( + not hasattr(np.__config__, "_built_with_meson"), + reason="Requires Meson builds", +) + + +class TestNumPyConfigs: + REQUIRED_CONFIG_KEYS = [ + "Compilers", + "Machine Information", + "Python Information", + ] + + @patch("numpy.__config__._check_pyyaml") + def test_pyyaml_not_found(self, mock_yaml_importer): + mock_yaml_importer.side_effect = ModuleNotFoundError() + with pytest.warns(UserWarning): + np.show_config() + + def test_dict_mode(self): + config = np.show_config(mode="dicts") + + assert isinstance(config, dict) + assert all(key in config for key in self.REQUIRED_CONFIG_KEYS), ( + "Required key missing," + " see index of `False` with `REQUIRED_CONFIG_KEYS`" + ) + + def test_invalid_mode(self): + with pytest.raises(AttributeError): + np.show_config(mode="foo") + + def test_warn_to_add_tests(self): + assert len(np.__config__.DisplayModes) == 2, ( + "New mode detected," + " please add UT if applicable and increment this count" + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_version.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_version.py new file mode 100644 index 0000000000000000000000000000000000000000..d3abcb92c1c3d8b16651b0d05d47021912915855 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_numpy_version.py @@ -0,0 +1,54 @@ +""" +Check the numpy version is valid. + +Note that a development version is marked by the presence of 'dev0' or '+' +in the version string, all else is treated as a release. The version string +itself is set from the output of ``git describe`` which relies on tags. + +Examples +-------- + +Valid Development: 1.22.0.dev0 1.22.0.dev0+5-g7999db4df2 1.22.0+5-g7999db4df2 +Valid Release: 1.21.0.rc1, 1.21.0.b1, 1.21.0 +Invalid: 1.22.0.dev, 1.22.0.dev0-5-g7999db4dfB, 1.21.0.d1, 1.21.a + +Note that a release is determined by the version string, which in turn +is controlled by the result of the ``git describe`` command. +""" +import re + +import numpy as np +from numpy.testing import assert_ + + +def test_valid_numpy_version(): + # Verify that the numpy version is a valid one (no .post suffix or other + # nonsense). See gh-6431 for an issue caused by an invalid version. + version_pattern = r"^[0-9]+\.[0-9]+\.[0-9]+(a[0-9]|b[0-9]|rc[0-9])?" + dev_suffix = r"(\.dev[0-9]+(\+git[0-9]+\.[0-9a-f]+)?)?" + res = re.match(version_pattern + dev_suffix + '$', np.__version__) + + assert_(res is not None, np.__version__) + + +def test_short_version(): + # Check numpy.short_version actually exists + if np.version.release: + assert_(np.__version__ == np.version.short_version, + "short_version mismatch in release version") + else: + assert_(np.__version__.split("+")[0] == np.version.short_version, + "short_version mismatch in development version") + + +def test_version_module(): + contents = set([s for s in dir(np.version) if not s.startswith('_')]) + expected = set([ + 'full_version', + 'git_revision', + 'release', + 'short_version', + 'version', + ]) + + assert contents == expected diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_public_api.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_public_api.py new file mode 100644 index 0000000000000000000000000000000000000000..b25818c62d3176026d2a91072bf39e932083b47f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_public_api.py @@ -0,0 +1,810 @@ +import functools +import sys +import sysconfig +import subprocess +import pkgutil +import types +import importlib +import inspect +import warnings + +import numpy as np +import numpy +from numpy.testing import IS_WASM + +import pytest + +try: + import ctypes +except ImportError: + ctypes = None + + +def check_dir(module, module_name=None): + """Returns a mapping of all objects with the wrong __module__ attribute.""" + if module_name is None: + module_name = module.__name__ + results = {} + for name in dir(module): + if name == "core": + continue + item = getattr(module, name) + if (hasattr(item, '__module__') and hasattr(item, '__name__') + and item.__module__ != module_name): + results[name] = item.__module__ + '.' + item.__name__ + return results + + +def test_numpy_namespace(): + # We override dir to not show these members + allowlist = { + 'recarray': 'numpy.rec.recarray', + } + bad_results = check_dir(np) + # pytest gives better error messages with the builtin assert than with + # assert_equal + assert bad_results == allowlist + + +@pytest.mark.skipif(IS_WASM, reason="can't start subprocess") +@pytest.mark.parametrize('name', ['testing']) +def test_import_lazy_import(name): + """Make sure we can actually use the modules we lazy load. + + While not exported as part of the public API, it was accessible. With the + use of __getattr__ and __dir__, this isn't always true It can happen that + an infinite recursion may happen. + + This is the only way I found that would force the failure to appear on the + badly implemented code. + + We also test for the presence of the lazily imported modules in dir + + """ + exe = (sys.executable, '-c', "import numpy; numpy." + name) + result = subprocess.check_output(exe) + assert not result + + # Make sure they are still in the __dir__ + assert name in dir(np) + + +def test_dir_testing(): + """Assert that output of dir has only one "testing/tester" + attribute without duplicate""" + assert len(dir(np)) == len(set(dir(np))) + + +def test_numpy_linalg(): + bad_results = check_dir(np.linalg) + assert bad_results == {} + + +def test_numpy_fft(): + bad_results = check_dir(np.fft) + assert bad_results == {} + + +@pytest.mark.skipif(ctypes is None, + reason="ctypes not available in this python") +def test_NPY_NO_EXPORT(): + cdll = ctypes.CDLL(np._core._multiarray_tests.__file__) + # Make sure an arbitrary NPY_NO_EXPORT function is actually hidden + f = getattr(cdll, 'test_not_exported', None) + assert f is None, ("'test_not_exported' is mistakenly exported, " + "NPY_NO_EXPORT does not work") + + +# Historically NumPy has not used leading underscores for private submodules +# much. This has resulted in lots of things that look like public modules +# (i.e. things that can be imported as `import numpy.somesubmodule.somefile`), +# but were never intended to be public. The PUBLIC_MODULES list contains +# modules that are either public because they were meant to be, or because they +# contain public functions/objects that aren't present in any other namespace +# for whatever reason and therefore should be treated as public. +# +# The PRIVATE_BUT_PRESENT_MODULES list contains modules that look public (lack +# of underscores) but should not be used. For many of those modules the +# current status is fine. For others it may make sense to work on making them +# private, to clean up our public API and avoid confusion. +PUBLIC_MODULES = ['numpy.' + s for s in [ + "ctypeslib", + "dtypes", + "exceptions", + "f2py", + "fft", + "lib", + "lib.array_utils", + "lib.format", + "lib.introspect", + "lib.mixins", + "lib.npyio", + "lib.recfunctions", # note: still needs cleaning, was forgotten for 2.0 + "lib.scimath", + "lib.stride_tricks", + "linalg", + "ma", + "ma.extras", + "ma.mrecords", + "polynomial", + "polynomial.chebyshev", + "polynomial.hermite", + "polynomial.hermite_e", + "polynomial.laguerre", + "polynomial.legendre", + "polynomial.polynomial", + "random", + "strings", + "testing", + "testing.overrides", + "typing", + "typing.mypy_plugin", + "version", +]] +if sys.version_info < (3, 12): + PUBLIC_MODULES += [ + 'numpy.' + s for s in [ + "distutils", + "distutils.cpuinfo", + "distutils.exec_command", + "distutils.misc_util", + "distutils.log", + "distutils.system_info", + ] + ] + + + +PUBLIC_ALIASED_MODULES = [ + "numpy.char", + "numpy.emath", + "numpy.rec", +] + + +PRIVATE_BUT_PRESENT_MODULES = ['numpy.' + s for s in [ + "compat", + "compat.py3k", + "conftest", + "core", + "core.multiarray", + "core.numeric", + "core.umath", + "core.arrayprint", + "core.defchararray", + "core.einsumfunc", + "core.fromnumeric", + "core.function_base", + "core.getlimits", + "core.numerictypes", + "core.overrides", + "core.records", + "core.shape_base", + "f2py.auxfuncs", + "f2py.capi_maps", + "f2py.cb_rules", + "f2py.cfuncs", + "f2py.common_rules", + "f2py.crackfortran", + "f2py.diagnose", + "f2py.f2py2e", + "f2py.f90mod_rules", + "f2py.func2subr", + "f2py.rules", + "f2py.symbolic", + "f2py.use_rules", + "fft.helper", + "lib.user_array", # note: not in np.lib, but probably should just be deleted + "linalg.lapack_lite", + "linalg.linalg", + "ma.core", + "ma.testutils", + "ma.timer_comparison", + "matlib", + "matrixlib", + "matrixlib.defmatrix", + "polynomial.polyutils", + "random.mtrand", + "random.bit_generator", + "testing.print_coercion_tables", +]] +if sys.version_info < (3, 12): + PRIVATE_BUT_PRESENT_MODULES += [ + 'numpy.' + s for s in [ + "distutils.armccompiler", + "distutils.fujitsuccompiler", + "distutils.ccompiler", + 'distutils.ccompiler_opt', + "distutils.command", + "distutils.command.autodist", + "distutils.command.bdist_rpm", + "distutils.command.build", + "distutils.command.build_clib", + "distutils.command.build_ext", + "distutils.command.build_py", + "distutils.command.build_scripts", + "distutils.command.build_src", + "distutils.command.config", + "distutils.command.config_compiler", + "distutils.command.develop", + "distutils.command.egg_info", + "distutils.command.install", + "distutils.command.install_clib", + "distutils.command.install_data", + "distutils.command.install_headers", + "distutils.command.sdist", + "distutils.conv_template", + "distutils.core", + "distutils.extension", + "distutils.fcompiler", + "distutils.fcompiler.absoft", + "distutils.fcompiler.arm", + "distutils.fcompiler.compaq", + "distutils.fcompiler.environment", + "distutils.fcompiler.g95", + "distutils.fcompiler.gnu", + "distutils.fcompiler.hpux", + "distutils.fcompiler.ibm", + "distutils.fcompiler.intel", + "distutils.fcompiler.lahey", + "distutils.fcompiler.mips", + "distutils.fcompiler.nag", + "distutils.fcompiler.none", + "distutils.fcompiler.pathf95", + "distutils.fcompiler.pg", + "distutils.fcompiler.nv", + "distutils.fcompiler.sun", + "distutils.fcompiler.vast", + "distutils.fcompiler.fujitsu", + "distutils.from_template", + "distutils.intelccompiler", + "distutils.lib2def", + "distutils.line_endings", + "distutils.mingw32ccompiler", + "distutils.msvccompiler", + "distutils.npy_pkg_config", + "distutils.numpy_distribution", + "distutils.pathccompiler", + "distutils.unixccompiler", + ] + ] + + +def is_unexpected(name): + """Check if this needs to be considered.""" + if '._' in name or '.tests' in name or '.setup' in name: + return False + + if name in PUBLIC_MODULES: + return False + + if name in PUBLIC_ALIASED_MODULES: + return False + + if name in PRIVATE_BUT_PRESENT_MODULES: + return False + + return True + + +if sys.version_info < (3, 12): + SKIP_LIST = ["numpy.distutils.msvc9compiler"] +else: + SKIP_LIST = [] + + +# suppressing warnings from deprecated modules +@pytest.mark.filterwarnings("ignore:.*np.compat.*:DeprecationWarning") +def test_all_modules_are_expected(): + """ + Test that we don't add anything that looks like a new public module by + accident. Check is based on filenames. + """ + + modnames = [] + for _, modname, ispkg in pkgutil.walk_packages(path=np.__path__, + prefix=np.__name__ + '.', + onerror=None): + if is_unexpected(modname) and modname not in SKIP_LIST: + # We have a name that is new. If that's on purpose, add it to + # PUBLIC_MODULES. We don't expect to have to add anything to + # PRIVATE_BUT_PRESENT_MODULES. Use an underscore in the name! + modnames.append(modname) + + if modnames: + raise AssertionError(f'Found unexpected modules: {modnames}') + + +# Stuff that clearly shouldn't be in the API and is detected by the next test +# below +SKIP_LIST_2 = [ + 'numpy.lib.math', + 'numpy.matlib.char', + 'numpy.matlib.rec', + 'numpy.matlib.emath', + 'numpy.matlib.exceptions', + 'numpy.matlib.math', + 'numpy.matlib.linalg', + 'numpy.matlib.fft', + 'numpy.matlib.random', + 'numpy.matlib.ctypeslib', + 'numpy.matlib.ma', +] +if sys.version_info < (3, 12): + SKIP_LIST_2 += [ + 'numpy.distutils.log.sys', + 'numpy.distutils.log.logging', + 'numpy.distutils.log.warnings', + ] + + +def test_all_modules_are_expected_2(): + """ + Method checking all objects. The pkgutil-based method in + `test_all_modules_are_expected` does not catch imports into a namespace, + only filenames. So this test is more thorough, and checks this like: + + import .lib.scimath as emath + + To check if something in a module is (effectively) public, one can check if + there's anything in that namespace that's a public function/object but is + not exposed in a higher-level namespace. For example for a `numpy.lib` + submodule:: + + mod = np.lib.mixins + for obj in mod.__all__: + if obj in np.__all__: + continue + elif obj in np.lib.__all__: + continue + + else: + print(obj) + + """ + + def find_unexpected_members(mod_name): + members = [] + module = importlib.import_module(mod_name) + if hasattr(module, '__all__'): + objnames = module.__all__ + else: + objnames = dir(module) + + for objname in objnames: + if not objname.startswith('_'): + fullobjname = mod_name + '.' + objname + if isinstance(getattr(module, objname), types.ModuleType): + if is_unexpected(fullobjname): + if fullobjname not in SKIP_LIST_2: + members.append(fullobjname) + + return members + + unexpected_members = find_unexpected_members("numpy") + for modname in PUBLIC_MODULES: + unexpected_members.extend(find_unexpected_members(modname)) + + if unexpected_members: + raise AssertionError("Found unexpected object(s) that look like " + "modules: {}".format(unexpected_members)) + + +def test_api_importable(): + """ + Check that all submodules listed higher up in this file can be imported + + Note that if a PRIVATE_BUT_PRESENT_MODULES entry goes missing, it may + simply need to be removed from the list (deprecation may or may not be + needed - apply common sense). + """ + def check_importable(module_name): + try: + importlib.import_module(module_name) + except (ImportError, AttributeError): + return False + + return True + + module_names = [] + for module_name in PUBLIC_MODULES: + if not check_importable(module_name): + module_names.append(module_name) + + if module_names: + raise AssertionError("Modules in the public API that cannot be " + "imported: {}".format(module_names)) + + for module_name in PUBLIC_ALIASED_MODULES: + try: + eval(module_name) + except AttributeError: + module_names.append(module_name) + + if module_names: + raise AssertionError("Modules in the public API that were not " + "found: {}".format(module_names)) + + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', category=DeprecationWarning) + warnings.filterwarnings('always', category=ImportWarning) + for module_name in PRIVATE_BUT_PRESENT_MODULES: + if not check_importable(module_name): + module_names.append(module_name) + + if module_names: + raise AssertionError("Modules that are not really public but looked " + "public and can not be imported: " + "{}".format(module_names)) + + +@pytest.mark.xfail( + sysconfig.get_config_var("Py_DEBUG") not in (None, 0, "0"), + reason=( + "NumPy possibly built with `USE_DEBUG=True ./tools/travis-test.sh`, " + "which does not expose the `array_api` entry point. " + "See https://github.com/numpy/numpy/pull/19800" + ), +) +def test_array_api_entry_point(): + """ + Entry point for Array API implementation can be found with importlib and + returns the main numpy namespace. + """ + # For a development install that did not go through meson-python, + # the entrypoint will not have been installed. So ensure this test fails + # only if numpy is inside site-packages. + numpy_in_sitepackages = sysconfig.get_path('platlib') in np.__file__ + + eps = importlib.metadata.entry_points() + try: + xp_eps = eps.select(group="array_api") + except AttributeError: + # The select interface for entry_points was introduced in py3.10, + # deprecating its dict interface. We fallback to dict keys for finding + # Array API entry points so that running this test in <=3.9 will + # still work - see https://github.com/numpy/numpy/pull/19800. + xp_eps = eps.get("array_api", []) + if len(xp_eps) == 0: + if numpy_in_sitepackages: + msg = "No entry points for 'array_api' found" + raise AssertionError(msg) from None + return + + try: + ep = next(ep for ep in xp_eps if ep.name == "numpy") + except StopIteration: + if numpy_in_sitepackages: + msg = "'numpy' not in array_api entry points" + raise AssertionError(msg) from None + return + + if ep.value == 'numpy.array_api': + # Looks like the entrypoint for the current numpy build isn't + # installed, but an older numpy is also installed and hence the + # entrypoint is pointing to the old (no longer existing) location. + # This isn't a problem except for when running tests with `spin` or an + # in-place build. + return + + xp = ep.load() + msg = ( + f"numpy entry point value '{ep.value}' " + "does not point to our Array API implementation" + ) + assert xp is numpy, msg + + +def test_main_namespace_all_dir_coherence(): + """ + Checks if `dir(np)` and `np.__all__` are consistent and return + the same content, excluding exceptions and private members. + """ + def _remove_private_members(member_set): + return {m for m in member_set if not m.startswith('_')} + + def _remove_exceptions(member_set): + return member_set.difference({ + "bool" # included only in __dir__ + }) + + all_members = _remove_private_members(np.__all__) + all_members = _remove_exceptions(all_members) + + dir_members = _remove_private_members(np.__dir__()) + dir_members = _remove_exceptions(dir_members) + + assert all_members == dir_members, ( + "Members that break symmetry: " + f"{all_members.symmetric_difference(dir_members)}" + ) + + +@pytest.mark.filterwarnings( + r"ignore:numpy.core(\.\w+)? is deprecated:DeprecationWarning" +) +def test_core_shims_coherence(): + """ + Check that all "semi-public" members of `numpy._core` are also accessible + from `numpy.core` shims. + """ + import numpy.core as core + + for member_name in dir(np._core): + # Skip private and test members. Also if a module is aliased, + # no need to add it to np.core + if ( + member_name.startswith("_") + or member_name in ["tests", "strings"] + or f"numpy.{member_name}" in PUBLIC_ALIASED_MODULES + ): + continue + + member = getattr(np._core, member_name) + + # np.core is a shim and all submodules of np.core are shims + # but we should be able to import everything in those shims + # that are available in the "real" modules in np._core + if inspect.ismodule(member): + submodule = member + submodule_name = member_name + for submodule_member_name in dir(submodule): + # ignore dunder names + if submodule_member_name.startswith("__"): + continue + submodule_member = getattr(submodule, submodule_member_name) + + core_submodule = __import__( + f"numpy.core.{submodule_name}", + fromlist=[submodule_member_name] + ) + + assert submodule_member is getattr( + core_submodule, submodule_member_name + ) + + else: + assert member is getattr(core, member_name) + + +def test_functions_single_location(): + """ + Check that each public function is available from one location only. + + Test performs BFS search traversing NumPy's public API. It flags + any function-like object that is accessible from more that one place. + """ + from typing import Any, Callable, Dict, List, Set, Tuple + from numpy._core._multiarray_umath import ( + _ArrayFunctionDispatcher as dispatched_function + ) + + visited_modules: Set[types.ModuleType] = {np} + visited_functions: Set[Callable[..., Any]] = set() + # Functions often have `__name__` overridden, therefore we need + # to keep track of locations where functions have been found. + functions_original_paths: Dict[Callable[..., Any], str] = dict() + + # Here we aggregate functions with more than one location. + # It must be empty for the test to pass. + duplicated_functions: List[Tuple] = [] + + modules_queue = [np] + + while len(modules_queue) > 0: + + module = modules_queue.pop() + + for member_name in dir(module): + member = getattr(module, member_name) + + # first check if we got a module + if ( + inspect.ismodule(member) and # it's a module + "numpy" in member.__name__ and # inside NumPy + not member_name.startswith("_") and # not private + "numpy._core" not in member.__name__ and # outside _core + # not a legacy or testing module + member_name not in ["f2py", "ma", "testing", "tests"] and + member not in visited_modules # not visited yet + ): + modules_queue.append(member) + visited_modules.add(member) + + # else check if we got a function-like object + elif ( + inspect.isfunction(member) or + isinstance(member, (dispatched_function, np.ufunc)) + ): + if member in visited_functions: + + # skip main namespace functions with aliases + if ( + member.__name__ in [ + "absolute", # np.abs + "arccos", # np.acos + "arccosh", # np.acosh + "arcsin", # np.asin + "arcsinh", # np.asinh + "arctan", # np.atan + "arctan2", # np.atan2 + "arctanh", # np.atanh + "left_shift", # np.bitwise_left_shift + "right_shift", # np.bitwise_right_shift + "conjugate", # np.conj + "invert", # np.bitwise_not & np.bitwise_invert + "remainder", # np.mod + "divide", # np.true_divide + "concatenate", # np.concat + "power", # np.pow + "transpose", # np.permute_dims + ] and + module.__name__ == "numpy" + ): + continue + # skip trimcoef from numpy.polynomial as it is + # duplicated by design. + if ( + member.__name__ == "trimcoef" and + module.__name__.startswith("numpy.polynomial") + ): + continue + + # skip ufuncs that are exported in np.strings as well + if member.__name__ in ( + "add", + "equal", + "not_equal", + "greater", + "greater_equal", + "less", + "less_equal", + ) and module.__name__ == "numpy.strings": + continue + + # numpy.char reexports all numpy.strings functions for + # backwards-compatibility + if module.__name__ == "numpy.char": + continue + + # function is present in more than one location! + duplicated_functions.append( + (member.__name__, + module.__name__, + functions_original_paths[member]) + ) + else: + visited_functions.add(member) + functions_original_paths[member] = module.__name__ + + del visited_functions, visited_modules, functions_original_paths + + assert len(duplicated_functions) == 0, duplicated_functions + + +def test___module___attribute(): + modules_queue = [np] + visited_modules = {np} + visited_functions = set() + incorrect_entries = [] + + while len(modules_queue) > 0: + module = modules_queue.pop() + for member_name in dir(module): + member = getattr(module, member_name) + # first check if we got a module + if ( + inspect.ismodule(member) and # it's a module + "numpy" in member.__name__ and # inside NumPy + not member_name.startswith("_") and # not private + "numpy._core" not in member.__name__ and # outside _core + # not in a skip module list + member_name not in [ + "char", "core", "ctypeslib", "f2py", "ma", "lapack_lite", + "mrecords", "testing", "tests", "polynomial", "typing", + "mtrand", "bit_generator", + ] and + member not in visited_modules # not visited yet + ): + modules_queue.append(member) + visited_modules.add(member) + elif ( + not inspect.ismodule(member) and + hasattr(member, "__name__") and + not member.__name__.startswith("_") and + member.__module__ != module.__name__ and + member not in visited_functions + ): + # skip ufuncs that are exported in np.strings as well + if member.__name__ in ( + "add", "equal", "not_equal", "greater", "greater_equal", + "less", "less_equal", + ) and module.__name__ == "numpy.strings": + continue + + # recarray and record are exported in np and np.rec + if ( + (member.__name__ == "recarray" and module.__name__ == "numpy") or + (member.__name__ == "record" and module.__name__ == "numpy.rec") + ): + continue + + # skip cdef classes + if member.__name__ in ( + "BitGenerator", "Generator", "MT19937", "PCG64", "PCG64DXSM", + "Philox", "RandomState", "SFC64", "SeedSequence", + ): + continue + + incorrect_entries.append( + dict( + Func=member.__name__, + actual=member.__module__, + expected=module.__name__, + ) + ) + visited_functions.add(member) + + if incorrect_entries: + assert len(incorrect_entries) == 0, incorrect_entries + + +def _check___qualname__(obj) -> bool: + qualname = obj.__qualname__ + name = obj.__name__ + module_name = obj.__module__ + assert name == qualname.split(".")[-1] + + module = sys.modules[module_name] + actual_obj = functools.reduce(getattr, qualname.split("."), module) + return ( + actual_obj is obj or + ( + # for bound methods check qualname match + module_name.startswith("numpy.random") and + actual_obj.__qualname__ == qualname + ) + ) + + +def test___qualname___attribute(): + modules_queue = [np] + visited_modules = {np} + visited_functions = set() + incorrect_entries = [] + + while len(modules_queue) > 0: + module = modules_queue.pop() + for member_name in dir(module): + member = getattr(module, member_name) + # first check if we got a module + if ( + inspect.ismodule(member) and # it's a module + "numpy" in member.__name__ and # inside NumPy + not member_name.startswith("_") and # not private + member_name not in [ + "f2py", "ma", "tests", "testing", "typing", + "bit_generator", "ctypeslib", "lapack_lite", + ] and # skip modules + "numpy._core" not in member.__name__ and # outside _core + member not in visited_modules # not visited yet + ): + modules_queue.append(member) + visited_modules.add(member) + elif ( + not inspect.ismodule(member) and + hasattr(member, "__name__") and + not member.__name__.startswith("_") and + not member_name.startswith("_") and + not _check___qualname__(member) and + member not in visited_functions + ): + incorrect_entries.append( + dict( + actual=member.__qualname__, expected=member.__name__, + ) + ) + visited_functions.add(member) + + if incorrect_entries: + assert len(incorrect_entries) == 0, incorrect_entries diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_reloading.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_reloading.py new file mode 100644 index 0000000000000000000000000000000000000000..22bff7212e59288ffe5179655a23985cd29d3b5c --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_reloading.py @@ -0,0 +1,74 @@ +import sys +import subprocess +import textwrap +from importlib import reload +import pickle + +import pytest + +import numpy.exceptions as ex +from numpy.testing import ( + assert_raises, + assert_warns, + assert_, + assert_equal, + IS_WASM, +) + + +def test_numpy_reloading(): + # gh-7844. Also check that relevant globals retain their identity. + import numpy as np + import numpy._globals + + _NoValue = np._NoValue + VisibleDeprecationWarning = ex.VisibleDeprecationWarning + ModuleDeprecationWarning = ex.ModuleDeprecationWarning + + with assert_warns(UserWarning): + reload(np) + assert_(_NoValue is np._NoValue) + assert_(ModuleDeprecationWarning is ex.ModuleDeprecationWarning) + assert_(VisibleDeprecationWarning is ex.VisibleDeprecationWarning) + + assert_raises(RuntimeError, reload, numpy._globals) + with assert_warns(UserWarning): + reload(np) + assert_(_NoValue is np._NoValue) + assert_(ModuleDeprecationWarning is ex.ModuleDeprecationWarning) + assert_(VisibleDeprecationWarning is ex.VisibleDeprecationWarning) + +def test_novalue(): + import numpy as np + for proto in range(2, pickle.HIGHEST_PROTOCOL + 1): + assert_equal(repr(np._NoValue), '') + assert_(pickle.loads(pickle.dumps(np._NoValue, + protocol=proto)) is np._NoValue) + + +@pytest.mark.skipif(IS_WASM, reason="can't start subprocess") +def test_full_reimport(): + """At the time of writing this, it is *not* truly supported, but + apparently enough users rely on it, for it to be an annoying change + when it started failing previously. + """ + # Test within a new process, to ensure that we do not mess with the + # global state during the test run (could lead to cryptic test failures). + # This is generally unsafe, especially, since we also reload the C-modules. + code = textwrap.dedent(r""" + import sys + from pytest import warns + import numpy as np + + for k in list(sys.modules.keys()): + if "numpy" in k: + del sys.modules[k] + + with warns(UserWarning): + import numpy as np + """) + p = subprocess.run([sys.executable, '-c', code], capture_output=True) + if p.returncode: + raise AssertionError( + f"Non-zero return code: {p.returncode!r}\n\n{p.stderr.decode()}" + ) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_scripts.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_scripts.py new file mode 100644 index 0000000000000000000000000000000000000000..892c04eef0bed4b9d92408419c547f8258a005e3 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_scripts.py @@ -0,0 +1,47 @@ +""" Test scripts + +Test that we can run executable scripts that have been installed with numpy. +""" +import sys +import os +import pytest +from os.path import join as pathjoin, isfile, dirname +import subprocess + +import numpy as np +from numpy.testing import assert_equal, IS_WASM + +is_inplace = isfile(pathjoin(dirname(np.__file__), '..', 'setup.py')) + + +def find_f2py_commands(): + if sys.platform == 'win32': + exe_dir = dirname(sys.executable) + if exe_dir.endswith('Scripts'): # virtualenv + return [os.path.join(exe_dir, 'f2py')] + else: + return [os.path.join(exe_dir, "Scripts", 'f2py')] + else: + # Three scripts are installed in Unix-like systems: + # 'f2py', 'f2py{major}', and 'f2py{major.minor}'. For example, + # if installed with python3.9 the scripts would be named + # 'f2py', 'f2py3', and 'f2py3.9'. + version = sys.version_info + major = str(version.major) + minor = str(version.minor) + return ['f2py', 'f2py' + major, 'f2py' + major + '.' + minor] + + +@pytest.mark.skipif(is_inplace, reason="Cannot test f2py command inplace") +@pytest.mark.xfail(reason="Test is unreliable") +@pytest.mark.parametrize('f2py_cmd', find_f2py_commands()) +def test_f2py(f2py_cmd): + # test that we can run f2py script + stdout = subprocess.check_output([f2py_cmd, '-v']) + assert_equal(stdout.strip(), np.__version__.encode('ascii')) + + +@pytest.mark.skipif(IS_WASM, reason="Cannot start subprocess") +def test_pep338(): + stdout = subprocess.check_output([sys.executable, '-mnumpy.f2py', '-v']) + assert_equal(stdout.strip(), np.__version__.encode('ascii')) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_warnings.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_warnings.py new file mode 100644 index 0000000000000000000000000000000000000000..9304c1346cbff578eb57da65f034499cd665ba41 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/tests/test_warnings.py @@ -0,0 +1,76 @@ +""" +Tests which scan for certain occurrences in the code, they may not find +all of these occurrences but should catch almost all. +""" +import pytest + +from pathlib import Path +import ast +import tokenize +import numpy + +class ParseCall(ast.NodeVisitor): + def __init__(self): + self.ls = [] + + def visit_Attribute(self, node): + ast.NodeVisitor.generic_visit(self, node) + self.ls.append(node.attr) + + def visit_Name(self, node): + self.ls.append(node.id) + + +class FindFuncs(ast.NodeVisitor): + def __init__(self, filename): + super().__init__() + self.__filename = filename + + def visit_Call(self, node): + p = ParseCall() + p.visit(node.func) + ast.NodeVisitor.generic_visit(self, node) + + if p.ls[-1] == 'simplefilter' or p.ls[-1] == 'filterwarnings': + if node.args[0].value == "ignore": + raise AssertionError( + "warnings should have an appropriate stacklevel; found in " + "{} on line {}".format(self.__filename, node.lineno)) + + if p.ls[-1] == 'warn' and ( + len(p.ls) == 1 or p.ls[-2] == 'warnings'): + + if "testing/tests/test_warnings.py" == self.__filename: + # This file + return + + # See if stacklevel exists: + if len(node.args) == 3: + return + args = {kw.arg for kw in node.keywords} + if "stacklevel" in args: + return + raise AssertionError( + "warnings should have an appropriate stacklevel; found in " + "{} on line {}".format(self.__filename, node.lineno)) + + +@pytest.mark.slow +def test_warning_calls(): + # combined "ignore" and stacklevel error + base = Path(numpy.__file__).parent + + for path in base.rglob("*.py"): + if base / "testing" in path.parents: + continue + if path == base / "__init__.py": + continue + if path == base / "random" / "__init__.py": + continue + if path == base / "conftest.py": + continue + # use tokenize to auto-detect encoding on systems where no + # default encoding is defined (e.g. LANG='C') + with tokenize.open(str(path)) as file: + tree = ast.parse(file.read()) + FindFuncs(path).visit(tree) diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.py b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.py new file mode 100644 index 0000000000000000000000000000000000000000..9d6a15a56f9b2a905dbbb7058093717dd5c1e967 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.py @@ -0,0 +1,11 @@ + +""" +Module to expose more detailed version info for the installed `numpy` +""" +version = "2.2.6" +__version__ = version +full_version = version + +git_revision = "2b686f659642080e2fc708719385de6e8be0955f" +release = 'dev' not in version and '+' not in version +short_version = version.split("+")[0] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.pyi b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.pyi new file mode 100644 index 0000000000000000000000000000000000000000..52ca38df19183cd8a5d8504100d4ba18730eaba4 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/numpy/version.pyi @@ -0,0 +1,20 @@ +from typing import Final + +from typing_extensions import LiteralString + +__all__ = ( + '__version__', + 'full_version', + 'git_revision', + 'release', + 'short_version', + 'version', +) + +version: Final[LiteralString] +__version__: Final[LiteralString] +full_version: Final[LiteralString] + +git_revision: Final[LiteralString] +release: Final[bool] +short_version: Final[LiteralString] diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/INSTALLER b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/INSTALLER new file mode 100644 index 0000000000000000000000000000000000000000..5c69047b2eb8235994febeeae1da4a82365a240a --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/INSTALLER @@ -0,0 +1 @@ +uv \ No newline at end of file diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/License.txt b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/License.txt new file mode 100644 index 0000000000000000000000000000000000000000..b491c70e0aef319022ded661e111ddbd45b8a17f --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/License.txt @@ -0,0 +1,1568 @@ +End User License Agreement +-------------------------- + + +Preface +------- + +The Software License Agreement in Chapter 1 and the Supplement +in Chapter 2 contain license terms and conditions that govern +the use of NVIDIA software. By accepting this agreement, you +agree to comply with all the terms and conditions applicable +to the product(s) included herein. + + +NVIDIA Driver + + +Description + +This package contains the operating system driver and +fundamental system software components for NVIDIA GPUs. + + +NVIDIA CUDA Toolkit + + +Description + +The NVIDIA CUDA Toolkit provides command-line and graphical +tools for building, debugging and optimizing the performance +of applications accelerated by NVIDIA GPUs, runtime and math +libraries, and documentation including programming guides, +user manuals, and API references. + + +Default Install Location of CUDA Toolkit + +Windows platform: + +%ProgramFiles%\NVIDIA GPU Computing Toolkit\CUDA\v#.# + +Linux platform: + +/usr/local/cuda-#.# + +Mac platform: + +/Developer/NVIDIA/CUDA-#.# + + +NVIDIA CUDA Samples + + +Description + +This package includes over 100+ CUDA examples that demonstrate +various CUDA programming principles, and efficient CUDA +implementation of algorithms in specific application domains. + + +Default Install Location of CUDA Samples + +Windows platform: + +%ProgramData%\NVIDIA Corporation\CUDA Samples\v#.# + +Linux platform: + +/usr/local/cuda-#.#/samples + +and + +$HOME/NVIDIA_CUDA-#.#_Samples + +Mac platform: + +/Developer/NVIDIA/CUDA-#.#/samples + + +NVIDIA Nsight Visual Studio Edition (Windows only) + + +Description + +NVIDIA Nsight Development Platform, Visual Studio Edition is a +development environment integrated into Microsoft Visual +Studio that provides tools for debugging, profiling, analyzing +and optimizing your GPU computing and graphics applications. + + +Default Install Location of Nsight Visual Studio Edition + +Windows platform: + +%ProgramFiles(x86)%\NVIDIA Corporation\Nsight Visual Studio Edition #.# + + +1. 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CUDA Toolkit Supplement to Software License Agreement for +NVIDIA Software Development Kits +------------------------------------------------------------ + + +Release date: August 16, 2018 +----------------------------- + +The terms in this supplement govern your use of the NVIDIA +CUDA Toolkit SDK under the terms of your license agreement +(“Agreement”) as modified by this supplement. Capitalized +terms used but not defined below have the meaning assigned to +them in the Agreement. + +This supplement is an exhibit to the Agreement and is +incorporated as an integral part of the Agreement. In the +event of conflict between the terms in this supplement and the +terms in the Agreement, the terms in this supplement govern. + + +2.1. License Scope + +The SDK is licensed for you to develop applications only for +use in systems with NVIDIA GPUs. + + +2.2. Distribution + +The portions of the SDK that are distributable under the +Agreement are listed in Attachment A. + + +2.3. Operating Systems + +Those portions of the SDK designed exclusively for use on the +Linux or FreeBSD operating systems, or other operating systems +derived from the source code to these operating systems, may +be copied and redistributed for use in accordance with this +Agreement, provided that the object code files are not +modified in any way (except for unzipping of compressed +files). + + +2.4. Audio and Video Encoders and Decoders + +You acknowledge and agree that it is your sole responsibility +to obtain any additional third-party licenses required to +make, have made, use, have used, sell, import, and offer for +sale your products or services that include or incorporate any +third-party software and content relating to audio and/or +video encoders and decoders from, including but not limited +to, Microsoft, Thomson, Fraunhofer IIS, Sisvel S.p.A., +MPEG-LA, and Coding Technologies. NVIDIA does not grant to you +under this Agreement any necessary patent or other rights with +respect to any audio and/or video encoders and decoders. + + +2.5. Licensing + +If the distribution terms in this Agreement are not suitable +for your organization, or for any questions regarding this +Agreement, please contact NVIDIA at +nvidia-compute-license-questions@nvidia.com. + + +2.6. Attachment A + +The following portions of the SDK are distributable under the +Agreement: + +Component + +CUDA Runtime + +Windows + +cudart.dll, cudart_static.lib, cudadevrt.lib + +Mac OSX + +libcudart.dylib, libcudart_static.a, libcudadevrt.a + +Linux + +libcudart.so, libcudart_static.a, libcudadevrt.a + +Android + +libcudart.so, libcudart_static.a, libcudadevrt.a + +Component + +CUDA FFT Library + +Windows + +cufft.dll, cufftw.dll, cufft.lib, cufftw.lib + +Mac OSX + +libcufft.dylib, libcufft_static.a, libcufftw.dylib, +libcufftw_static.a + +Linux + +libcufft.so, libcufft_static.a, libcufftw.so, +libcufftw_static.a + +Android + +libcufft.so, libcufft_static.a, libcufftw.so, +libcufftw_static.a + +Component + +CUDA BLAS Library + +Windows + +cublas.dll, cublasLt.dll + +Mac OSX + +libcublas.dylib, libcublasLt.dylib, libcublas_static.a, +libcublasLt_static.a + +Linux + +libcublas.so, libcublasLt.so, libcublas_static.a, +libcublasLt_static.a + +Android + +libcublas.so, libcublasLt.so, libcublas_static.a, +libcublasLt_static.a + +Component + +NVIDIA "Drop-in" BLAS Library + +Windows + +nvblas.dll + +Mac OSX + +libnvblas.dylib + +Linux + +libnvblas.so + +Component + +CUDA Sparse Matrix Library + +Windows + +cusparse.dll, cusparse.lib + +Mac OSX + +libcusparse.dylib, libcusparse_static.a + +Linux + +libcusparse.so, libcusparse_static.a + +Android + +libcusparse.so, libcusparse_static.a + +Component + +CUDA Linear Solver Library + +Windows + +cusolver.dll, cusolver.lib + +Mac OSX + +libcusolver.dylib, libcusolver_static.a + +Linux + +libcusolver.so, libcusolver_static.a + +Android + +libcusolver.so, libcusolver_static.a + +Component + +CUDA Random Number Generation Library + +Windows + +curand.dll, curand.lib + +Mac OSX + +libcurand.dylib, libcurand_static.a + +Linux + +libcurand.so, libcurand_static.a + +Android + +libcurand.so, libcurand_static.a + +Component + +CUDA Accelerated Graph Library + +Component + +NVIDIA Performance Primitives Library + +Windows + +nppc.dll, nppc.lib, nppial.dll, nppial.lib, nppicc.dll, +nppicc.lib, nppicom.dll, nppicom.lib, nppidei.dll, +nppidei.lib, nppif.dll, nppif.lib, nppig.dll, nppig.lib, +nppim.dll, nppim.lib, nppist.dll, nppist.lib, nppisu.dll, +nppisu.lib, nppitc.dll, nppitc.lib, npps.dll, npps.lib + +Mac OSX + +libnppc.dylib, libnppc_static.a, libnppial.dylib, +libnppial_static.a, libnppicc.dylib, libnppicc_static.a, +libnppicom.dylib, libnppicom_static.a, libnppidei.dylib, +libnppidei_static.a, libnppif.dylib, libnppif_static.a, +libnppig.dylib, libnppig_static.a, libnppim.dylib, +libnppisu_static.a, libnppitc.dylib, libnppitc_static.a, +libnpps.dylib, libnpps_static.a + +Linux + +libnppc.so, libnppc_static.a, libnppial.so, +libnppial_static.a, libnppicc.so, libnppicc_static.a, +libnppicom.so, libnppicom_static.a, libnppidei.so, +libnppidei_static.a, libnppif.so, libnppif_static.a +libnppig.so, libnppig_static.a, libnppim.so, +libnppim_static.a, libnppist.so, libnppist_static.a, +libnppisu.so, libnppisu_static.a, libnppitc.so +libnppitc_static.a, libnpps.so, libnpps_static.a + +Android + +libnppc.so, libnppc_static.a, libnppial.so, +libnppial_static.a, libnppicc.so, libnppicc_static.a, +libnppicom.so, libnppicom_static.a, libnppidei.so, +libnppidei_static.a, libnppif.so, libnppif_static.a +libnppig.so, libnppig_static.a, libnppim.so, +libnppim_static.a, libnppist.so, libnppist_static.a, +libnppisu.so, libnppisu_static.a, libnppitc.so +libnppitc_static.a, libnpps.so, libnpps_static.a + +Component + +NVIDIA JPEG Library + +Linux + +libnvjpeg.so, libnvjpeg_static.a + +Component + +Internal common library required for statically linking to +cuBLAS, cuSPARSE, cuFFT, cuRAND, nvJPEG and NPP + +Mac OSX + +libculibos.a + +Linux + +libculibos.a + +Component + +NVIDIA Runtime Compilation Library and Header + +All + +nvrtc.h + +Windows + +nvrtc.dll, nvrtc-builtins.dll + +Mac OSX + +libnvrtc.dylib, libnvrtc-builtins.dylib + +Linux + +libnvrtc.so, libnvrtc-builtins.so + +Component + +NVIDIA Optimizing Compiler Library + +Windows + +nvvm.dll + +Mac OSX + +libnvvm.dylib + +Linux + +libnvvm.so + +Component + +NVIDIA Common Device Math Functions Library + +Windows + +libdevice.10.bc + +Mac OSX + +libdevice.10.bc + +Linux + +libdevice.10.bc + +Component + +CUDA Occupancy Calculation Header Library + +All + +cuda_occupancy.h + +Component + +CUDA Half Precision Headers + +All + +cuda_fp16.h, cuda_fp16.hpp + +Component + +CUDA Profiling Tools Interface (CUPTI) Library + +Windows + +cupti.dll + +Mac OSX + +libcupti.dylib + +Linux + +libcupti.so + +Component + +NVIDIA Tools Extension Library + +Windows + +nvToolsExt.dll, nvToolsExt.lib + +Mac OSX + +libnvToolsExt.dylib + +Linux + +libnvToolsExt.so + +Component + +NVIDIA CUDA Driver Libraries + +Linux + +libcuda.so, libnvidia-fatbinaryloader.so, +libnvidia-ptxjitcompiler.so + +The NVIDIA CUDA Driver Libraries are only distributable in +applications that meet this criteria: + + 1. The application was developed starting from a NVIDIA CUDA + container obtained from Docker Hub or the NVIDIA GPU + Cloud, and + + 2. The resulting application is packaged as a Docker + container and distributed to users on Docker Hub or the + NVIDIA GPU Cloud only. + + +2.7. Attachment B + + +Additional Licensing Obligations + +The following third party components included in the SOFTWARE +are licensed to Licensee pursuant to the following terms and +conditions: + + 1. Licensee's use of the GDB third party component is + subject to the terms and conditions of GNU GPL v3: + + This product includes copyrighted third-party software licensed + under the terms of the GNU General Public License v3 ("GPL v3"). + All third-party software packages are copyright by their respective + authors. GPL v3 terms and conditions are hereby incorporated into + the Agreement by this reference: http://www.gnu.org/licenses/gpl.txt + + Consistent with these licensing requirements, the software + listed below is provided under the terms of the specified + open source software licenses. To obtain source code for + software provided under licenses that require + redistribution of source code, including the GNU General + Public License (GPL) and GNU Lesser General Public License + (LGPL), contact oss-requests@nvidia.com. This offer is + valid for a period of three (3) years from the date of the + distribution of this product by NVIDIA CORPORATION. + + Component License + CUDA-GDB GPL v3 + + 2. Licensee represents and warrants that any and all third + party licensing and/or royalty payment obligations in + connection with Licensee's use of the H.264 video codecs + are solely the responsibility of Licensee. + + 3. Licensee's use of the Thrust library is subject to the + terms and conditions of the Apache License Version 2.0. + All third-party software packages are copyright by their + respective authors. Apache License Version 2.0 terms and + conditions are hereby incorporated into the Agreement by + this reference. + http://www.apache.org/licenses/LICENSE-2.0.html + + In addition, Licensee acknowledges the following notice: + Thrust includes source code from the Boost Iterator, + Tuple, System, and Random Number libraries. + + Boost Software License - Version 1.0 - August 17th, 2003 + . . . . + + Permission is hereby granted, free of charge, to any person or + organization obtaining a copy of the software and accompanying + documentation covered by this license (the "Software") to use, + reproduce, display, distribute, execute, and transmit the Software, + and to prepare derivative works of the Software, and to permit + third-parties to whom the Software is furnished to do so, all + subject to the following: + + The copyright notices in the Software and this entire statement, + including the above license grant, this restriction and the following + disclaimer, must be included in all copies of the Software, in whole + or in part, and all derivative works of the Software, unless such + copies or derivative works are solely in the form of machine-executable + object code generated by a source language processor. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, + EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF + MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE, TITLE AND + NON-INFRINGEMENT. IN NO EVENT SHALL THE COPYRIGHT HOLDERS OR + ANYONE DISTRIBUTING THE SOFTWARE BE LIABLE FOR ANY DAMAGES OR + OTHER LIABILITY, WHETHER IN CONTRACT, TORT OR OTHERWISE, ARISING + FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR + OTHER DEALINGS IN THE SOFTWARE. + + 4. Licensee's use of the LLVM third party component is + subject to the following terms and conditions: + + ====================================================== + LLVM Release License + ====================================================== + University of Illinois/NCSA + Open Source License + + Copyright (c) 2003-2010 University of Illinois at Urbana-Champaign. + All rights reserved. + + Developed by: + + LLVM Team + + University of Illinois at Urbana-Champaign + + http://llvm.org + + Permission is hereby granted, free of charge, to any person obtaining a copy + of this software and associated documentation files (the "Software"), to + deal with the Software without restriction, including without limitation the + rights to use, copy, modify, merge, publish, distribute, sublicense, and/or + sell copies of the Software, and to permit persons to whom the Software is + furnished to do so, subject to the following conditions: + + * Redistributions of source code must retain the above copyright notice, + this list of conditions and the following disclaimers. + + * Redistributions in binary form must reproduce the above copyright + notice, this list of conditions and the following disclaimers in the + documentation and/or other materials provided with the distribution. + + * Neither the names of the LLVM Team, University of Illinois at Urbana- + Champaign, nor the names of its contributors may be used to endorse or + promote products derived from this Software without specific prior + written permission. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR + IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, + FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL + THE CONTRIBUTORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR + OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, + ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER + DEALINGS WITH THE SOFTWARE. + + 5. Licensee's use (e.g. nvprof) of the PCRE third party + component is subject to the following terms and + conditions: + + ------------ + PCRE LICENCE + ------------ + PCRE is a library of functions to support regular expressions whose syntax + and semantics are as close as possible to those of the Perl 5 language. + Release 8 of PCRE is distributed under the terms of the "BSD" licence, as + specified below. The documentation for PCRE, supplied in the "doc" + directory, is distributed under the same terms as the software itself. The + basic library functions are written in C and are freestanding. Also + included in the distribution is a set of C++ wrapper functions, and a just- + in-time compiler that can be used to optimize pattern matching. These are + both optional features that can be omitted when the library is built. + + THE BASIC LIBRARY FUNCTIONS + --------------------------- + Written by: Philip Hazel + Email local part: ph10 + Email domain: cam.ac.uk + University of Cambridge Computing Service, + Cambridge, England. + Copyright (c) 1997-2012 University of Cambridge + All rights reserved. + + PCRE JUST-IN-TIME COMPILATION SUPPORT + ------------------------------------- + Written by: Zoltan Herczeg + Email local part: hzmester + Emain domain: freemail.hu + Copyright(c) 2010-2012 Zoltan Herczeg + All rights reserved. + + STACK-LESS JUST-IN-TIME COMPILER + -------------------------------- + Written by: Zoltan Herczeg + Email local part: hzmester + Emain domain: freemail.hu + Copyright(c) 2009-2012 Zoltan Herczeg + All rights reserved. + + THE C++ WRAPPER FUNCTIONS + ------------------------- + Contributed by: Google Inc. + Copyright (c) 2007-2012, Google Inc. + All rights reserved. + + THE "BSD" LICENCE + ----------------- + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are met: + + * Redistributions of source code must retain the above copyright notice, + this list of conditions and the following disclaimer. + + * Redistributions in binary form must reproduce the above copyright + notice, this list of conditions and the following disclaimer in the + documentation and/or other materials provided with the distribution. + + * Neither the name of the University of Cambridge nor the name of Google + Inc. nor the names of their contributors may be used to endorse or + promote products derived from this software without specific prior + written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" + AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE + IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE + ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE + LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR + CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF + SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS + INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN + CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) + ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE + POSSIBILITY OF SUCH DAMAGE. + + 6. Some of the cuBLAS library routines were written by or + derived from code written by Vasily Volkov and are subject + to the Modified Berkeley Software Distribution License as + follows: + + Copyright (c) 2007-2009, Regents of the University of California + + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + * Neither the name of the University of California, Berkeley nor + the names of its contributors may be used to endorse or promote + products derived from this software without specific prior + written permission. + + THIS SOFTWARE IS PROVIDED BY THE AUTHOR "AS IS" AND ANY EXPRESS OR + IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED + WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE + DISCLAIMED. IN NO EVENT SHALL THE AUTHOR BE LIABLE FOR ANY DIRECT, + INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES + (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR + SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) + HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, + STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING + IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE + POSSIBILITY OF SUCH DAMAGE. + + 7. Some of the cuBLAS library routines were written by or + derived from code written by Davide Barbieri and are + subject to the Modified Berkeley Software Distribution + License as follows: + + Copyright (c) 2008-2009 Davide Barbieri @ University of Rome Tor Vergata. + + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + * The name of the author may not be used to endorse or promote + products derived from this software without specific prior + written permission. + + THIS SOFTWARE IS PROVIDED BY THE AUTHOR "AS IS" AND ANY EXPRESS OR + IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE IMPLIED + WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE + DISCLAIMED. IN NO EVENT SHALL THE AUTHOR BE LIABLE FOR ANY DIRECT, + INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES + (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR + SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) + HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, + STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING + IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE + POSSIBILITY OF SUCH DAMAGE. + + 8. Some of the cuBLAS library routines were derived from + code developed by the University of Tennessee and are + subject to the Modified Berkeley Software Distribution + License as follows: + + Copyright (c) 2010 The University of Tennessee. + + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer listed in this license in the documentation and/or + other materials provided with the distribution. + * Neither the name of the copyright holders nor the names of its + contributors may be used to endorse or promote products derived + from this software without specific prior written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 9. Some of the cuBLAS library routines were written by or + derived from code written by Jonathan Hogg and are subject + to the Modified Berkeley Software Distribution License as + follows: + + Copyright (c) 2012, The Science and Technology Facilities Council (STFC). + + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + * Neither the name of the STFC nor the names of its contributors + may be used to endorse or promote products derived from this + software without specific prior written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE STFC BE + LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR + CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF + SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR + BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, + WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE + OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN + IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 10. Some of the cuBLAS library routines were written by or + derived from code written by Ahmad M. Abdelfattah, David + Keyes, and Hatem Ltaief, and are subject to the Apache + License, Version 2.0, as follows: + + -- (C) Copyright 2013 King Abdullah University of Science and Technology + Authors: + Ahmad Abdelfattah (ahmad.ahmad@kaust.edu.sa) + David Keyes (david.keyes@kaust.edu.sa) + Hatem Ltaief (hatem.ltaief@kaust.edu.sa) + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions + are met: + + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above copyright + notice, this list of conditions and the following disclaimer in the + documentation and/or other materials provided with the distribution. + * Neither the name of the King Abdullah University of Science and + Technology nor the names of its contributors may be used to endorse + or promote products derived from this software without specific prior + written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + ``AS IS'' AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + HOLDERS OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE + + 11. Some of the cuSPARSE library routines were written by or + derived from code written by Li-Wen Chang and are subject + to the NCSA Open Source License as follows: + + Copyright (c) 2012, University of Illinois. + + All rights reserved. + + Developed by: IMPACT Group, University of Illinois, http://impact.crhc.illinois.edu + + Permission is hereby granted, free of charge, to any person obtaining + a copy of this software and associated documentation files (the + "Software"), to deal with the Software without restriction, including + without limitation the rights to use, copy, modify, merge, publish, + distribute, sublicense, and/or sell copies of the Software, and to + permit persons to whom the Software is furnished to do so, subject to + the following conditions: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimers in the documentation and/or other materials provided + with the distribution. + * Neither the names of IMPACT Group, University of Illinois, nor + the names of its contributors may be used to endorse or promote + products derived from this Software without specific prior + written permission. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, + EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF + MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND + NONINFRINGEMENT. IN NO EVENT SHALL THE CONTRIBUTORS OR COPYRIGHT + HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER + IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR + IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS WITH THE + SOFTWARE. + + 12. Some of the cuRAND library routines were written by or + derived from code written by Mutsuo Saito and Makoto + Matsumoto and are subject to the following license: + + Copyright (c) 2009, 2010 Mutsuo Saito, Makoto Matsumoto and Hiroshima + University. All rights reserved. + + Copyright (c) 2011 Mutsuo Saito, Makoto Matsumoto, Hiroshima + University and University of Tokyo. All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + * Neither the name of the Hiroshima University nor the names of + its contributors may be used to endorse or promote products + derived from this software without specific prior written + permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 13. Some of the cuRAND library routines were derived from + code developed by D. E. Shaw Research and are subject to + the following license: + + Copyright 2010-2011, D. E. Shaw Research. + + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + * Redistributions of source code must retain the above copyright + notice, this list of conditions, and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions, and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + * Neither the name of D. E. Shaw Research nor the names of its + contributors may be used to endorse or promote products derived + from this software without specific prior written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 14. Some of the Math library routines were written by or + derived from code developed by Norbert Juffa and are + subject to the following license: + + Copyright (c) 2015-2017, Norbert Juffa + All rights reserved. + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions + are met: + + 1. Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + + 2. Redistributions in binary form must reproduce the above copyright + notice, this list of conditions and the following disclaimer in the + documentation and/or other materials provided with the distribution. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + HOLDER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 15. Licensee's use of the lz4 third party component is + subject to the following terms and conditions: + + Copyright (C) 2011-2013, Yann Collet. + BSD 2-Clause License (http://www.opensource.org/licenses/bsd-license.php) + + Redistribution and use in source and binary forms, with or without + modification, are permitted provided that the following conditions are + met: + + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following disclaimer + in the documentation and/or other materials provided with the + distribution. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. + + 16. The NPP library uses code from the Boost Math Toolkit, + and is subject to the following license: + + Boost Software License - Version 1.0 - August 17th, 2003 + . . . . + + Permission is hereby granted, free of charge, to any person or + organization obtaining a copy of the software and accompanying + documentation covered by this license (the "Software") to use, + reproduce, display, distribute, execute, and transmit the Software, + and to prepare derivative works of the Software, and to permit + third-parties to whom the Software is furnished to do so, all + subject to the following: + + The copyright notices in the Software and this entire statement, + including the above license grant, this restriction and the following + disclaimer, must be included in all copies of the Software, in whole + or in part, and all derivative works of the Software, unless such + copies or derivative works are solely in the form of machine-executable + object code generated by a source language processor. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, + EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF + MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE, TITLE AND + NON-INFRINGEMENT. IN NO EVENT SHALL THE COPYRIGHT HOLDERS OR + ANYONE DISTRIBUTING THE SOFTWARE BE LIABLE FOR ANY DAMAGES OR + OTHER LIABILITY, WHETHER IN CONTRACT, TORT OR OTHERWISE, ARISING + FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR + OTHER DEALINGS IN THE SOFTWARE. + + 17. Portions of the Nsight Eclipse Edition is subject to the + following license: + + The Eclipse Foundation makes available all content in this plug-in + ("Content"). Unless otherwise indicated below, the Content is provided + to you under the terms and conditions of the Eclipse Public License + Version 1.0 ("EPL"). A copy of the EPL is available at http:// + www.eclipse.org/legal/epl-v10.html. For purposes of the EPL, "Program" + will mean the Content. + + If you did not receive this Content directly from the Eclipse + Foundation, the Content is being redistributed by another party + ("Redistributor") and different terms and conditions may apply to your + use of any object code in the Content. Check the Redistributor's + license that was provided with the Content. If no such license exists, + contact the Redistributor. Unless otherwise indicated below, the terms + and conditions of the EPL still apply to any source code in the + Content and such source code may be obtained at http://www.eclipse.org. + + 18. Some of the cuBLAS library routines uses code from + OpenAI, which is subject to the following license: + + License URL + https://github.com/openai/openai-gemm/blob/master/LICENSE + + License Text + The MIT License + + Copyright (c) 2016 OpenAI (http://openai.com), 2016 Google Inc. + + Permission is hereby granted, free of charge, to any person obtaining a copy + of this software and associated documentation files (the "Software"), to deal + in the Software without restriction, including without limitation the rights + to use, copy, modify, merge, publish, distribute, sublicense, and/or sell + copies of the Software, and to permit persons to whom the Software is + furnished to do so, subject to the following conditions: + + The above copyright notice and this permission notice shall be included in + all copies or substantial portions of the Software. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR + IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, + FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE + AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER + LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, + OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN + THE SOFTWARE. + + 19. Licensee's use of the Visual Studio Setup Configuration + Samples is subject to the following license: + + The MIT License (MIT) + Copyright (C) Microsoft Corporation. All rights reserved. + + Permission is hereby granted, free of charge, to any person + obtaining a copy of this software and associated documentation + files (the "Software"), to deal in the Software without restriction, + including without limitation the rights to use, copy, modify, merge, + publish, distribute, sublicense, and/or sell copies of the Software, + and to permit persons to whom the Software is furnished to do so, + subject to the following conditions: + + The above copyright notice and this permission notice shall be included + in all copies or substantial portions of the Software. + + THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS + OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, + FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE + AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER + LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, + OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE. + + 20. Licensee's use of linmath.h header for CPU functions for + GL vector/matrix operations from lunarG is subject to the + Apache License Version 2.0. + + 21. The DX12-CUDA sample uses the d3dx12.h header, which is + subject to the MIT license . + +----------------- diff --git a/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/METADATA b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/METADATA new file mode 100644 index 0000000000000000000000000000000000000000..783ffef45789467382ada3be6880b21006b96129 --- /dev/null +++ b/Scripts_RSCM_sim_growth_n_climate_to_Yield/.venv/lib/python3.10/site-packages/nvidia_cublas_cu12-12.6.4.1.dist-info/METADATA @@ -0,0 +1,35 @@ +Metadata-Version: 2.1 +Name: nvidia-cublas-cu12 +Version: 12.6.4.1 +Summary: CUBLAS native runtime libraries +Home-page: https://developer.nvidia.com/cuda-zone +Author: Nvidia CUDA Installer Team +Author-email: compute_installer@nvidia.com +License: NVIDIA Proprietary Software +Keywords: cuda,nvidia,runtime,machine learning,deep learning +Classifier: 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