| """ |
| This module defines the mpf, mpc classes, and standard functions for |
| operating with them. |
| """ |
| __docformat__ = 'plaintext' |
|
|
| import functools |
|
|
| import re |
|
|
| from .ctx_base import StandardBaseContext |
|
|
| from .libmp.backend import basestring, BACKEND |
|
|
| from . import libmp |
|
|
| from .libmp import (MPZ, MPZ_ZERO, MPZ_ONE, int_types, repr_dps, |
| round_floor, round_ceiling, dps_to_prec, round_nearest, prec_to_dps, |
| ComplexResult, to_pickable, from_pickable, normalize, |
| from_int, from_float, from_str, to_int, to_float, to_str, |
| from_rational, from_man_exp, |
| fone, fzero, finf, fninf, fnan, |
| mpf_abs, mpf_pos, mpf_neg, mpf_add, mpf_sub, mpf_mul, mpf_mul_int, |
| mpf_div, mpf_rdiv_int, mpf_pow_int, mpf_mod, |
| mpf_eq, mpf_cmp, mpf_lt, mpf_gt, mpf_le, mpf_ge, |
| mpf_hash, mpf_rand, |
| mpf_sum, |
| bitcount, to_fixed, |
| mpc_to_str, |
| mpc_to_complex, mpc_hash, mpc_pos, mpc_is_nonzero, mpc_neg, mpc_conjugate, |
| mpc_abs, mpc_add, mpc_add_mpf, mpc_sub, mpc_sub_mpf, mpc_mul, mpc_mul_mpf, |
| mpc_mul_int, mpc_div, mpc_div_mpf, mpc_pow, mpc_pow_mpf, mpc_pow_int, |
| mpc_mpf_div, |
| mpf_pow, |
| mpf_pi, mpf_degree, mpf_e, mpf_phi, mpf_ln2, mpf_ln10, |
| mpf_euler, mpf_catalan, mpf_apery, mpf_khinchin, |
| mpf_glaisher, mpf_twinprime, mpf_mertens, |
| int_types) |
|
|
| from . import function_docs |
| from . import rational |
|
|
| new = object.__new__ |
|
|
| get_complex = re.compile(r'^\(?(?P<re>[\+\-]?\d*(\.\d*)?(e[\+\-]?\d+)?)??' |
| r'(?P<im>[\+\-]?\d*(\.\d*)?(e[\+\-]?\d+)?j)?\)?$') |
|
|
| if BACKEND == 'sage': |
| from sage.libs.mpmath.ext_main import Context as BaseMPContext |
| |
| import sage.libs.mpmath.ext_main as _mpf_module |
| else: |
| from .ctx_mp_python import PythonMPContext as BaseMPContext |
| from . import ctx_mp_python as _mpf_module |
|
|
| from .ctx_mp_python import _mpf, _mpc, mpnumeric |
|
|
| class MPContext(BaseMPContext, StandardBaseContext): |
| """ |
| Context for multiprecision arithmetic with a global precision. |
| """ |
|
|
| def __init__(ctx): |
| BaseMPContext.__init__(ctx) |
| ctx.trap_complex = False |
| ctx.pretty = False |
| ctx.types = [ctx.mpf, ctx.mpc, ctx.constant] |
| ctx._mpq = rational.mpq |
| ctx.default() |
| StandardBaseContext.__init__(ctx) |
|
|
| ctx.mpq = rational.mpq |
| ctx.init_builtins() |
|
|
| ctx.hyp_summators = {} |
|
|
| ctx._init_aliases() |
|
|
| |
| try: |
| ctx.bernoulli.im_func.func_doc = function_docs.bernoulli |
| ctx.primepi.im_func.func_doc = function_docs.primepi |
| ctx.psi.im_func.func_doc = function_docs.psi |
| ctx.atan2.im_func.func_doc = function_docs.atan2 |
| except AttributeError: |
| |
| ctx.bernoulli.__func__.func_doc = function_docs.bernoulli |
| ctx.primepi.__func__.func_doc = function_docs.primepi |
| ctx.psi.__func__.func_doc = function_docs.psi |
| ctx.atan2.__func__.func_doc = function_docs.atan2 |
|
|
| ctx.digamma.func_doc = function_docs.digamma |
| ctx.cospi.func_doc = function_docs.cospi |
| ctx.sinpi.func_doc = function_docs.sinpi |
|
|
| def init_builtins(ctx): |
|
|
| mpf = ctx.mpf |
| mpc = ctx.mpc |
|
|
| |
| ctx.one = ctx.make_mpf(fone) |
| ctx.zero = ctx.make_mpf(fzero) |
| ctx.j = ctx.make_mpc((fzero,fone)) |
| ctx.inf = ctx.make_mpf(finf) |
| ctx.ninf = ctx.make_mpf(fninf) |
| ctx.nan = ctx.make_mpf(fnan) |
|
|
| eps = ctx.constant(lambda prec, rnd: (0, MPZ_ONE, 1-prec, 1), |
| "epsilon of working precision", "eps") |
| ctx.eps = eps |
|
|
| |
| ctx.pi = ctx.constant(mpf_pi, "pi", "pi") |
| ctx.ln2 = ctx.constant(mpf_ln2, "ln(2)", "ln2") |
| ctx.ln10 = ctx.constant(mpf_ln10, "ln(10)", "ln10") |
| ctx.phi = ctx.constant(mpf_phi, "Golden ratio phi", "phi") |
| ctx.e = ctx.constant(mpf_e, "e = exp(1)", "e") |
| ctx.euler = ctx.constant(mpf_euler, "Euler's constant", "euler") |
| ctx.catalan = ctx.constant(mpf_catalan, "Catalan's constant", "catalan") |
| ctx.khinchin = ctx.constant(mpf_khinchin, "Khinchin's constant", "khinchin") |
| ctx.glaisher = ctx.constant(mpf_glaisher, "Glaisher's constant", "glaisher") |
| ctx.apery = ctx.constant(mpf_apery, "Apery's constant", "apery") |
| ctx.degree = ctx.constant(mpf_degree, "1 deg = pi / 180", "degree") |
| ctx.twinprime = ctx.constant(mpf_twinprime, "Twin prime constant", "twinprime") |
| ctx.mertens = ctx.constant(mpf_mertens, "Mertens' constant", "mertens") |
|
|
| |
| ctx.sqrt = ctx._wrap_libmp_function(libmp.mpf_sqrt, libmp.mpc_sqrt) |
| ctx.cbrt = ctx._wrap_libmp_function(libmp.mpf_cbrt, libmp.mpc_cbrt) |
| ctx.ln = ctx._wrap_libmp_function(libmp.mpf_log, libmp.mpc_log) |
| ctx.atan = ctx._wrap_libmp_function(libmp.mpf_atan, libmp.mpc_atan) |
| ctx.exp = ctx._wrap_libmp_function(libmp.mpf_exp, libmp.mpc_exp) |
| ctx.expj = ctx._wrap_libmp_function(libmp.mpf_expj, libmp.mpc_expj) |
| ctx.expjpi = ctx._wrap_libmp_function(libmp.mpf_expjpi, libmp.mpc_expjpi) |
| ctx.sin = ctx._wrap_libmp_function(libmp.mpf_sin, libmp.mpc_sin) |
| ctx.cos = ctx._wrap_libmp_function(libmp.mpf_cos, libmp.mpc_cos) |
| ctx.tan = ctx._wrap_libmp_function(libmp.mpf_tan, libmp.mpc_tan) |
| ctx.sinh = ctx._wrap_libmp_function(libmp.mpf_sinh, libmp.mpc_sinh) |
| ctx.cosh = ctx._wrap_libmp_function(libmp.mpf_cosh, libmp.mpc_cosh) |
| ctx.tanh = ctx._wrap_libmp_function(libmp.mpf_tanh, libmp.mpc_tanh) |
| ctx.asin = ctx._wrap_libmp_function(libmp.mpf_asin, libmp.mpc_asin) |
| ctx.acos = ctx._wrap_libmp_function(libmp.mpf_acos, libmp.mpc_acos) |
| ctx.atan = ctx._wrap_libmp_function(libmp.mpf_atan, libmp.mpc_atan) |
| ctx.asinh = ctx._wrap_libmp_function(libmp.mpf_asinh, libmp.mpc_asinh) |
| ctx.acosh = ctx._wrap_libmp_function(libmp.mpf_acosh, libmp.mpc_acosh) |
| ctx.atanh = ctx._wrap_libmp_function(libmp.mpf_atanh, libmp.mpc_atanh) |
| ctx.sinpi = ctx._wrap_libmp_function(libmp.mpf_sin_pi, libmp.mpc_sin_pi) |
| ctx.cospi = ctx._wrap_libmp_function(libmp.mpf_cos_pi, libmp.mpc_cos_pi) |
| ctx.floor = ctx._wrap_libmp_function(libmp.mpf_floor, libmp.mpc_floor) |
| ctx.ceil = ctx._wrap_libmp_function(libmp.mpf_ceil, libmp.mpc_ceil) |
| ctx.nint = ctx._wrap_libmp_function(libmp.mpf_nint, libmp.mpc_nint) |
| ctx.frac = ctx._wrap_libmp_function(libmp.mpf_frac, libmp.mpc_frac) |
| ctx.fib = ctx.fibonacci = ctx._wrap_libmp_function(libmp.mpf_fibonacci, libmp.mpc_fibonacci) |
|
|
| ctx.gamma = ctx._wrap_libmp_function(libmp.mpf_gamma, libmp.mpc_gamma) |
| ctx.rgamma = ctx._wrap_libmp_function(libmp.mpf_rgamma, libmp.mpc_rgamma) |
| ctx.loggamma = ctx._wrap_libmp_function(libmp.mpf_loggamma, libmp.mpc_loggamma) |
| ctx.fac = ctx.factorial = ctx._wrap_libmp_function(libmp.mpf_factorial, libmp.mpc_factorial) |
|
|
| ctx.digamma = ctx._wrap_libmp_function(libmp.mpf_psi0, libmp.mpc_psi0) |
| ctx.harmonic = ctx._wrap_libmp_function(libmp.mpf_harmonic, libmp.mpc_harmonic) |
| ctx.ei = ctx._wrap_libmp_function(libmp.mpf_ei, libmp.mpc_ei) |
| ctx.e1 = ctx._wrap_libmp_function(libmp.mpf_e1, libmp.mpc_e1) |
| ctx._ci = ctx._wrap_libmp_function(libmp.mpf_ci, libmp.mpc_ci) |
| ctx._si = ctx._wrap_libmp_function(libmp.mpf_si, libmp.mpc_si) |
| ctx.ellipk = ctx._wrap_libmp_function(libmp.mpf_ellipk, libmp.mpc_ellipk) |
| ctx._ellipe = ctx._wrap_libmp_function(libmp.mpf_ellipe, libmp.mpc_ellipe) |
| ctx.agm1 = ctx._wrap_libmp_function(libmp.mpf_agm1, libmp.mpc_agm1) |
| ctx._erf = ctx._wrap_libmp_function(libmp.mpf_erf, None) |
| ctx._erfc = ctx._wrap_libmp_function(libmp.mpf_erfc, None) |
| ctx._zeta = ctx._wrap_libmp_function(libmp.mpf_zeta, libmp.mpc_zeta) |
| ctx._altzeta = ctx._wrap_libmp_function(libmp.mpf_altzeta, libmp.mpc_altzeta) |
|
|
| |
| ctx.sqrt = getattr(ctx, "_sage_sqrt", ctx.sqrt) |
| ctx.exp = getattr(ctx, "_sage_exp", ctx.exp) |
| ctx.ln = getattr(ctx, "_sage_ln", ctx.ln) |
| ctx.cos = getattr(ctx, "_sage_cos", ctx.cos) |
| ctx.sin = getattr(ctx, "_sage_sin", ctx.sin) |
|
|
| def to_fixed(ctx, x, prec): |
| return x.to_fixed(prec) |
|
|
| def hypot(ctx, x, y): |
| r""" |
| Computes the Euclidean norm of the vector `(x, y)`, equal |
| to `\sqrt{x^2 + y^2}`. Both `x` and `y` must be real.""" |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| return ctx.make_mpf(libmp.mpf_hypot(x._mpf_, y._mpf_, *ctx._prec_rounding)) |
|
|
| def _gamma_upper_int(ctx, n, z): |
| n = int(ctx._re(n)) |
| if n == 0: |
| return ctx.e1(z) |
| if not hasattr(z, '_mpf_'): |
| raise NotImplementedError |
| prec, rounding = ctx._prec_rounding |
| real, imag = libmp.mpf_expint(n, z._mpf_, prec, rounding, gamma=True) |
| if imag is None: |
| return ctx.make_mpf(real) |
| else: |
| return ctx.make_mpc((real, imag)) |
|
|
| def _expint_int(ctx, n, z): |
| n = int(n) |
| if n == 1: |
| return ctx.e1(z) |
| if not hasattr(z, '_mpf_'): |
| raise NotImplementedError |
| prec, rounding = ctx._prec_rounding |
| real, imag = libmp.mpf_expint(n, z._mpf_, prec, rounding) |
| if imag is None: |
| return ctx.make_mpf(real) |
| else: |
| return ctx.make_mpc((real, imag)) |
|
|
| def _nthroot(ctx, x, n): |
| if hasattr(x, '_mpf_'): |
| try: |
| return ctx.make_mpf(libmp.mpf_nthroot(x._mpf_, n, *ctx._prec_rounding)) |
| except ComplexResult: |
| if ctx.trap_complex: |
| raise |
| x = (x._mpf_, libmp.fzero) |
| else: |
| x = x._mpc_ |
| return ctx.make_mpc(libmp.mpc_nthroot(x, n, *ctx._prec_rounding)) |
|
|
| def _besselj(ctx, n, z): |
| prec, rounding = ctx._prec_rounding |
| if hasattr(z, '_mpf_'): |
| return ctx.make_mpf(libmp.mpf_besseljn(n, z._mpf_, prec, rounding)) |
| elif hasattr(z, '_mpc_'): |
| return ctx.make_mpc(libmp.mpc_besseljn(n, z._mpc_, prec, rounding)) |
|
|
| def _agm(ctx, a, b=1): |
| prec, rounding = ctx._prec_rounding |
| if hasattr(a, '_mpf_') and hasattr(b, '_mpf_'): |
| try: |
| v = libmp.mpf_agm(a._mpf_, b._mpf_, prec, rounding) |
| return ctx.make_mpf(v) |
| except ComplexResult: |
| pass |
| if hasattr(a, '_mpf_'): a = (a._mpf_, libmp.fzero) |
| else: a = a._mpc_ |
| if hasattr(b, '_mpf_'): b = (b._mpf_, libmp.fzero) |
| else: b = b._mpc_ |
| return ctx.make_mpc(libmp.mpc_agm(a, b, prec, rounding)) |
|
|
| def bernoulli(ctx, n): |
| return ctx.make_mpf(libmp.mpf_bernoulli(int(n), *ctx._prec_rounding)) |
|
|
| def _zeta_int(ctx, n): |
| return ctx.make_mpf(libmp.mpf_zeta_int(int(n), *ctx._prec_rounding)) |
|
|
| def atan2(ctx, y, x): |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| return ctx.make_mpf(libmp.mpf_atan2(y._mpf_, x._mpf_, *ctx._prec_rounding)) |
|
|
| def psi(ctx, m, z): |
| z = ctx.convert(z) |
| m = int(m) |
| if ctx._is_real_type(z): |
| return ctx.make_mpf(libmp.mpf_psi(m, z._mpf_, *ctx._prec_rounding)) |
| else: |
| return ctx.make_mpc(libmp.mpc_psi(m, z._mpc_, *ctx._prec_rounding)) |
|
|
| def cos_sin(ctx, x, **kwargs): |
| if type(x) not in ctx.types: |
| x = ctx.convert(x) |
| prec, rounding = ctx._parse_prec(kwargs) |
| if hasattr(x, '_mpf_'): |
| c, s = libmp.mpf_cos_sin(x._mpf_, prec, rounding) |
| return ctx.make_mpf(c), ctx.make_mpf(s) |
| elif hasattr(x, '_mpc_'): |
| c, s = libmp.mpc_cos_sin(x._mpc_, prec, rounding) |
| return ctx.make_mpc(c), ctx.make_mpc(s) |
| else: |
| return ctx.cos(x, **kwargs), ctx.sin(x, **kwargs) |
|
|
| def cospi_sinpi(ctx, x, **kwargs): |
| if type(x) not in ctx.types: |
| x = ctx.convert(x) |
| prec, rounding = ctx._parse_prec(kwargs) |
| if hasattr(x, '_mpf_'): |
| c, s = libmp.mpf_cos_sin_pi(x._mpf_, prec, rounding) |
| return ctx.make_mpf(c), ctx.make_mpf(s) |
| elif hasattr(x, '_mpc_'): |
| c, s = libmp.mpc_cos_sin_pi(x._mpc_, prec, rounding) |
| return ctx.make_mpc(c), ctx.make_mpc(s) |
| else: |
| return ctx.cos(x, **kwargs), ctx.sin(x, **kwargs) |
|
|
| def clone(ctx): |
| """ |
| Create a copy of the context, with the same working precision. |
| """ |
| a = ctx.__class__() |
| a.prec = ctx.prec |
| return a |
|
|
| |
| |
|
|
| def _is_real_type(ctx, x): |
| if hasattr(x, '_mpc_') or type(x) is complex: |
| return False |
| return True |
|
|
| def _is_complex_type(ctx, x): |
| if hasattr(x, '_mpc_') or type(x) is complex: |
| return True |
| return False |
|
|
| def isnan(ctx, x): |
| """ |
| Return *True* if *x* is a NaN (not-a-number), or for a complex |
| number, whether either the real or complex part is NaN; |
| otherwise return *False*:: |
| |
| >>> from mpmath import * |
| >>> isnan(3.14) |
| False |
| >>> isnan(nan) |
| True |
| >>> isnan(mpc(3.14,2.72)) |
| False |
| >>> isnan(mpc(3.14,nan)) |
| True |
| |
| """ |
| if hasattr(x, "_mpf_"): |
| return x._mpf_ == fnan |
| if hasattr(x, "_mpc_"): |
| return fnan in x._mpc_ |
| if isinstance(x, int_types) or isinstance(x, rational.mpq): |
| return False |
| x = ctx.convert(x) |
| if hasattr(x, '_mpf_') or hasattr(x, '_mpc_'): |
| return ctx.isnan(x) |
| raise TypeError("isnan() needs a number as input") |
|
|
| def isfinite(ctx, x): |
| """ |
| Return *True* if *x* is a finite number, i.e. neither |
| an infinity or a NaN. |
| |
| >>> from mpmath import * |
| >>> isfinite(inf) |
| False |
| >>> isfinite(-inf) |
| False |
| >>> isfinite(3) |
| True |
| >>> isfinite(nan) |
| False |
| >>> isfinite(3+4j) |
| True |
| >>> isfinite(mpc(3,inf)) |
| False |
| >>> isfinite(mpc(nan,3)) |
| False |
| |
| """ |
| if ctx.isinf(x) or ctx.isnan(x): |
| return False |
| return True |
|
|
| def isnpint(ctx, x): |
| """ |
| Determine if *x* is a nonpositive integer. |
| """ |
| if not x: |
| return True |
| if hasattr(x, '_mpf_'): |
| sign, man, exp, bc = x._mpf_ |
| return sign and exp >= 0 |
| if hasattr(x, '_mpc_'): |
| return not x.imag and ctx.isnpint(x.real) |
| if type(x) in int_types: |
| return x <= 0 |
| if isinstance(x, ctx.mpq): |
| p, q = x._mpq_ |
| if not p: |
| return True |
| return q == 1 and p <= 0 |
| return ctx.isnpint(ctx.convert(x)) |
|
|
| def __str__(ctx): |
| lines = ["Mpmath settings:", |
| (" mp.prec = %s" % ctx.prec).ljust(30) + "[default: 53]", |
| (" mp.dps = %s" % ctx.dps).ljust(30) + "[default: 15]", |
| (" mp.trap_complex = %s" % ctx.trap_complex).ljust(30) + "[default: False]", |
| ] |
| return "\n".join(lines) |
|
|
| @property |
| def _repr_digits(ctx): |
| return repr_dps(ctx._prec) |
|
|
| @property |
| def _str_digits(ctx): |
| return ctx._dps |
|
|
| def extraprec(ctx, n, normalize_output=False): |
| """ |
| The block |
| |
| with extraprec(n): |
| <code> |
| |
| increases the precision n bits, executes <code>, and then |
| restores the precision. |
| |
| extraprec(n)(f) returns a decorated version of the function f |
| that increases the working precision by n bits before execution, |
| and restores the parent precision afterwards. With |
| normalize_output=True, it rounds the return value to the parent |
| precision. |
| """ |
| return PrecisionManager(ctx, lambda p: p + n, None, normalize_output) |
|
|
| def extradps(ctx, n, normalize_output=False): |
| """ |
| This function is analogous to extraprec (see documentation) |
| but changes the decimal precision instead of the number of bits. |
| """ |
| return PrecisionManager(ctx, None, lambda d: d + n, normalize_output) |
|
|
| def workprec(ctx, n, normalize_output=False): |
| """ |
| The block |
| |
| with workprec(n): |
| <code> |
| |
| sets the precision to n bits, executes <code>, and then restores |
| the precision. |
| |
| workprec(n)(f) returns a decorated version of the function f |
| that sets the precision to n bits before execution, |
| and restores the precision afterwards. With normalize_output=True, |
| it rounds the return value to the parent precision. |
| """ |
| return PrecisionManager(ctx, lambda p: n, None, normalize_output) |
|
|
| def workdps(ctx, n, normalize_output=False): |
| """ |
| This function is analogous to workprec (see documentation) |
| but changes the decimal precision instead of the number of bits. |
| """ |
| return PrecisionManager(ctx, None, lambda d: n, normalize_output) |
|
|
| def autoprec(ctx, f, maxprec=None, catch=(), verbose=False): |
| r""" |
| Return a wrapped copy of *f* that repeatedly evaluates *f* |
| with increasing precision until the result converges to the |
| full precision used at the point of the call. |
| |
| This heuristically protects against rounding errors, at the cost of |
| roughly a 2x slowdown compared to manually setting the optimal |
| precision. This method can, however, easily be fooled if the results |
| from *f* depend "discontinuously" on the precision, for instance |
| if catastrophic cancellation can occur. Therefore, :func:`~mpmath.autoprec` |
| should be used judiciously. |
| |
| **Examples** |
| |
| Many functions are sensitive to perturbations of the input arguments. |
| If the arguments are decimal numbers, they may have to be converted |
| to binary at a much higher precision. If the amount of required |
| extra precision is unknown, :func:`~mpmath.autoprec` is convenient:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15 |
| >>> mp.pretty = True |
| >>> besselj(5, 125 * 10**28) # Exact input |
| -8.03284785591801e-17 |
| >>> besselj(5, '1.25e30') # Bad |
| 7.12954868316652e-16 |
| >>> autoprec(besselj)(5, '1.25e30') # Good |
| -8.03284785591801e-17 |
| |
| The following fails to converge because `\sin(\pi) = 0` whereas all |
| finite-precision approximations of `\pi` give nonzero values:: |
| |
| >>> autoprec(sin)(pi) # doctest: +IGNORE_EXCEPTION_DETAIL |
| Traceback (most recent call last): |
| ... |
| NoConvergence: autoprec: prec increased to 2910 without convergence |
| |
| As the following example shows, :func:`~mpmath.autoprec` can protect against |
| cancellation, but is fooled by too severe cancellation:: |
| |
| >>> x = 1e-10 |
| >>> exp(x)-1; expm1(x); autoprec(lambda t: exp(t)-1)(x) |
| 1.00000008274037e-10 |
| 1.00000000005e-10 |
| 1.00000000005e-10 |
| >>> x = 1e-50 |
| >>> exp(x)-1; expm1(x); autoprec(lambda t: exp(t)-1)(x) |
| 0.0 |
| 1.0e-50 |
| 0.0 |
| |
| With *catch*, an exception or list of exceptions to intercept |
| may be specified. The raised exception is interpreted |
| as signaling insufficient precision. This permits, for example, |
| evaluating a function where a too low precision results in a |
| division by zero:: |
| |
| >>> f = lambda x: 1/(exp(x)-1) |
| >>> f(1e-30) |
| Traceback (most recent call last): |
| ... |
| ZeroDivisionError |
| >>> autoprec(f, catch=ZeroDivisionError)(1e-30) |
| 1.0e+30 |
| |
| |
| """ |
| def f_autoprec_wrapped(*args, **kwargs): |
| prec = ctx.prec |
| if maxprec is None: |
| maxprec2 = ctx._default_hyper_maxprec(prec) |
| else: |
| maxprec2 = maxprec |
| try: |
| ctx.prec = prec + 10 |
| try: |
| v1 = f(*args, **kwargs) |
| except catch: |
| v1 = ctx.nan |
| prec2 = prec + 20 |
| while 1: |
| ctx.prec = prec2 |
| try: |
| v2 = f(*args, **kwargs) |
| except catch: |
| v2 = ctx.nan |
| if v1 == v2: |
| break |
| err = ctx.mag(v2-v1) - ctx.mag(v2) |
| if err < (-prec): |
| break |
| if verbose: |
| print("autoprec: target=%s, prec=%s, accuracy=%s" \ |
| % (prec, prec2, -err)) |
| v1 = v2 |
| if prec2 >= maxprec2: |
| raise ctx.NoConvergence(\ |
| "autoprec: prec increased to %i without convergence"\ |
| % prec2) |
| prec2 += int(prec2*2) |
| prec2 = min(prec2, maxprec2) |
| finally: |
| ctx.prec = prec |
| return +v2 |
| return f_autoprec_wrapped |
|
|
| def nstr(ctx, x, n=6, **kwargs): |
| """ |
| Convert an ``mpf`` or ``mpc`` to a decimal string literal with *n* |
| significant digits. The small default value for *n* is chosen to |
| make this function useful for printing collections of numbers |
| (lists, matrices, etc). |
| |
| If *x* is a list or tuple, :func:`~mpmath.nstr` is applied recursively |
| to each element. For unrecognized classes, :func:`~mpmath.nstr` |
| simply returns ``str(x)``. |
| |
| The companion function :func:`~mpmath.nprint` prints the result |
| instead of returning it. |
| |
| The keyword arguments *strip_zeros*, *min_fixed*, *max_fixed* |
| and *show_zero_exponent* are forwarded to :func:`~mpmath.libmp.to_str`. |
| |
| The number will be printed in fixed-point format if the position |
| of the leading digit is strictly between min_fixed |
| (default = min(-dps/3,-5)) and max_fixed (default = dps). |
| |
| To force fixed-point format always, set min_fixed = -inf, |
| max_fixed = +inf. To force floating-point format, set |
| min_fixed >= max_fixed. |
| |
| >>> from mpmath import * |
| >>> nstr([+pi, ldexp(1,-500)]) |
| '[3.14159, 3.05494e-151]' |
| >>> nprint([+pi, ldexp(1,-500)]) |
| [3.14159, 3.05494e-151] |
| >>> nstr(mpf("5e-10"), 5) |
| '5.0e-10' |
| >>> nstr(mpf("5e-10"), 5, strip_zeros=False) |
| '5.0000e-10' |
| >>> nstr(mpf("5e-10"), 5, strip_zeros=False, min_fixed=-11) |
| '0.00000000050000' |
| >>> nstr(mpf(0), 5, show_zero_exponent=True) |
| '0.0e+0' |
| |
| """ |
| if isinstance(x, list): |
| return "[%s]" % (", ".join(ctx.nstr(c, n, **kwargs) for c in x)) |
| if isinstance(x, tuple): |
| return "(%s)" % (", ".join(ctx.nstr(c, n, **kwargs) for c in x)) |
| if hasattr(x, '_mpf_'): |
| return to_str(x._mpf_, n, **kwargs) |
| if hasattr(x, '_mpc_'): |
| return "(" + mpc_to_str(x._mpc_, n, **kwargs) + ")" |
| if isinstance(x, basestring): |
| return repr(x) |
| if isinstance(x, ctx.matrix): |
| return x.__nstr__(n, **kwargs) |
| return str(x) |
|
|
| def _convert_fallback(ctx, x, strings): |
| if strings and isinstance(x, basestring): |
| if 'j' in x.lower(): |
| x = x.lower().replace(' ', '') |
| match = get_complex.match(x) |
| re = match.group('re') |
| if not re: |
| re = 0 |
| im = match.group('im').rstrip('j') |
| return ctx.mpc(ctx.convert(re), ctx.convert(im)) |
| if hasattr(x, "_mpi_"): |
| a, b = x._mpi_ |
| if a == b: |
| return ctx.make_mpf(a) |
| else: |
| raise ValueError("can only create mpf from zero-width interval") |
| raise TypeError("cannot create mpf from " + repr(x)) |
|
|
| def mpmathify(ctx, *args, **kwargs): |
| return ctx.convert(*args, **kwargs) |
|
|
| def _parse_prec(ctx, kwargs): |
| if kwargs: |
| if kwargs.get('exact'): |
| return 0, 'f' |
| prec, rounding = ctx._prec_rounding |
| if 'rounding' in kwargs: |
| rounding = kwargs['rounding'] |
| if 'prec' in kwargs: |
| prec = kwargs['prec'] |
| if prec == ctx.inf: |
| return 0, 'f' |
| else: |
| prec = int(prec) |
| elif 'dps' in kwargs: |
| dps = kwargs['dps'] |
| if dps == ctx.inf: |
| return 0, 'f' |
| prec = dps_to_prec(dps) |
| return prec, rounding |
| return ctx._prec_rounding |
|
|
| _exact_overflow_msg = "the exact result does not fit in memory" |
|
|
| _hypsum_msg = """hypsum() failed to converge to the requested %i bits of accuracy |
| using a working precision of %i bits. Try with a higher maxprec, |
| maxterms, or set zeroprec.""" |
|
|
| def hypsum(ctx, p, q, flags, coeffs, z, accurate_small=True, **kwargs): |
| if hasattr(z, "_mpf_"): |
| key = p, q, flags, 'R' |
| v = z._mpf_ |
| elif hasattr(z, "_mpc_"): |
| key = p, q, flags, 'C' |
| v = z._mpc_ |
| if key not in ctx.hyp_summators: |
| ctx.hyp_summators[key] = libmp.make_hyp_summator(key)[1] |
| summator = ctx.hyp_summators[key] |
| prec = ctx.prec |
| maxprec = kwargs.get('maxprec', ctx._default_hyper_maxprec(prec)) |
| extraprec = 50 |
| epsshift = 25 |
| |
| |
| |
| magnitude_check = {} |
| max_total_jump = 0 |
| for i, c in enumerate(coeffs): |
| if flags[i] == 'Z': |
| if i >= p and c <= 0: |
| ok = False |
| for ii, cc in enumerate(coeffs[:p]): |
| |
| if flags[ii] == 'Z' and cc <= 0 and c <= cc: |
| ok = True |
| if not ok: |
| raise ZeroDivisionError("pole in hypergeometric series") |
| continue |
| n, d = ctx.nint_distance(c) |
| n = -int(n) |
| d = -d |
| if i >= p and n >= 0 and d > 4: |
| if n in magnitude_check: |
| magnitude_check[n] += d |
| else: |
| magnitude_check[n] = d |
| extraprec = max(extraprec, d - prec + 60) |
| max_total_jump += abs(d) |
| while 1: |
| if extraprec > maxprec: |
| raise ValueError(ctx._hypsum_msg % (prec, prec+extraprec)) |
| wp = prec + extraprec |
| if magnitude_check: |
| mag_dict = dict((n,None) for n in magnitude_check) |
| else: |
| mag_dict = {} |
| zv, have_complex, magnitude = summator(coeffs, v, prec, wp, \ |
| epsshift, mag_dict, **kwargs) |
| cancel = -magnitude |
| jumps_resolved = True |
| if extraprec < max_total_jump: |
| for n in mag_dict.values(): |
| if (n is None) or (n < prec): |
| jumps_resolved = False |
| break |
| accurate = (cancel < extraprec-25-5 or not accurate_small) |
| if jumps_resolved: |
| if accurate: |
| break |
| |
| zeroprec = kwargs.get('zeroprec') |
| if zeroprec is not None: |
| if cancel > zeroprec: |
| if have_complex: |
| return ctx.mpc(0) |
| else: |
| return ctx.zero |
|
|
| |
| |
| extraprec *= 2 |
| |
| epsshift += 5 |
| extraprec += 5 |
|
|
| if type(zv) is tuple: |
| if have_complex: |
| return ctx.make_mpc(zv) |
| else: |
| return ctx.make_mpf(zv) |
| else: |
| return zv |
|
|
| def ldexp(ctx, x, n): |
| r""" |
| Computes `x 2^n` efficiently. No rounding is performed. |
| The argument `x` must be a real floating-point number (or |
| possible to convert into one) and `n` must be a Python ``int``. |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> ldexp(1, 10) |
| mpf('1024.0') |
| >>> ldexp(1, -3) |
| mpf('0.125') |
| |
| """ |
| x = ctx.convert(x) |
| return ctx.make_mpf(libmp.mpf_shift(x._mpf_, n)) |
|
|
| def frexp(ctx, x): |
| r""" |
| Given a real number `x`, returns `(y, n)` with `y \in [0.5, 1)`, |
| `n` a Python integer, and such that `x = y 2^n`. No rounding is |
| performed. |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> frexp(7.5) |
| (mpf('0.9375'), 3) |
| |
| """ |
| x = ctx.convert(x) |
| y, n = libmp.mpf_frexp(x._mpf_) |
| return ctx.make_mpf(y), n |
|
|
| def fneg(ctx, x, **kwargs): |
| """ |
| Negates the number *x*, giving a floating-point result, optionally |
| using a custom precision and rounding mode. |
| |
| See the documentation of :func:`~mpmath.fadd` for a detailed description |
| of how to specify precision and rounding. |
| |
| **Examples** |
| |
| An mpmath number is returned:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fneg(2.5) |
| mpf('-2.5') |
| >>> fneg(-5+2j) |
| mpc(real='5.0', imag='-2.0') |
| |
| Precise control over rounding is possible:: |
| |
| >>> x = fadd(2, 1e-100, exact=True) |
| >>> fneg(x) |
| mpf('-2.0') |
| >>> fneg(x, rounding='f') |
| mpf('-2.0000000000000004') |
| |
| Negating with and without roundoff:: |
| |
| >>> n = 200000000000000000000001 |
| >>> print(int(-mpf(n))) |
| -200000000000000016777216 |
| >>> print(int(fneg(n))) |
| -200000000000000016777216 |
| >>> print(int(fneg(n, prec=log(n,2)+1))) |
| -200000000000000000000001 |
| >>> print(int(fneg(n, dps=log(n,10)+1))) |
| -200000000000000000000001 |
| >>> print(int(fneg(n, prec=inf))) |
| -200000000000000000000001 |
| >>> print(int(fneg(n, dps=inf))) |
| -200000000000000000000001 |
| >>> print(int(fneg(n, exact=True))) |
| -200000000000000000000001 |
| |
| """ |
| prec, rounding = ctx._parse_prec(kwargs) |
| x = ctx.convert(x) |
| if hasattr(x, '_mpf_'): |
| return ctx.make_mpf(mpf_neg(x._mpf_, prec, rounding)) |
| if hasattr(x, '_mpc_'): |
| return ctx.make_mpc(mpc_neg(x._mpc_, prec, rounding)) |
| raise ValueError("Arguments need to be mpf or mpc compatible numbers") |
|
|
| def fadd(ctx, x, y, **kwargs): |
| """ |
| Adds the numbers *x* and *y*, giving a floating-point result, |
| optionally using a custom precision and rounding mode. |
| |
| The default precision is the working precision of the context. |
| You can specify a custom precision in bits by passing the *prec* keyword |
| argument, or by providing an equivalent decimal precision with the *dps* |
| keyword argument. If the precision is set to ``+inf``, or if the flag |
| *exact=True* is passed, an exact addition with no rounding is performed. |
| |
| When the precision is finite, the optional *rounding* keyword argument |
| specifies the direction of rounding. Valid options are ``'n'`` for |
| nearest (default), ``'f'`` for floor, ``'c'`` for ceiling, ``'d'`` |
| for down, ``'u'`` for up. |
| |
| **Examples** |
| |
| Using :func:`~mpmath.fadd` with precision and rounding control:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fadd(2, 1e-20) |
| mpf('2.0') |
| >>> fadd(2, 1e-20, rounding='u') |
| mpf('2.0000000000000004') |
| >>> nprint(fadd(2, 1e-20, prec=100), 25) |
| 2.00000000000000000001 |
| >>> nprint(fadd(2, 1e-20, dps=15), 25) |
| 2.0 |
| >>> nprint(fadd(2, 1e-20, dps=25), 25) |
| 2.00000000000000000001 |
| >>> nprint(fadd(2, 1e-20, exact=True), 25) |
| 2.00000000000000000001 |
| |
| Exact addition avoids cancellation errors, enforcing familiar laws |
| of numbers such as `x+y-x = y`, which don't hold in floating-point |
| arithmetic with finite precision:: |
| |
| >>> x, y = mpf(2), mpf('1e-1000') |
| >>> print(x + y - x) |
| 0.0 |
| >>> print(fadd(x, y, prec=inf) - x) |
| 1.0e-1000 |
| >>> print(fadd(x, y, exact=True) - x) |
| 1.0e-1000 |
| |
| Exact addition can be inefficient and may be impossible to perform |
| with large magnitude differences:: |
| |
| >>> fadd(1, '1e-100000000000000000000', prec=inf) |
| Traceback (most recent call last): |
| ... |
| OverflowError: the exact result does not fit in memory |
| |
| """ |
| prec, rounding = ctx._parse_prec(kwargs) |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| try: |
| if hasattr(x, '_mpf_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpf(mpf_add(x._mpf_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_add_mpf(y._mpc_, x._mpf_, prec, rounding)) |
| if hasattr(x, '_mpc_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpc(mpc_add_mpf(x._mpc_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_add(x._mpc_, y._mpc_, prec, rounding)) |
| except (ValueError, OverflowError): |
| raise OverflowError(ctx._exact_overflow_msg) |
| raise ValueError("Arguments need to be mpf or mpc compatible numbers") |
|
|
| def fsub(ctx, x, y, **kwargs): |
| """ |
| Subtracts the numbers *x* and *y*, giving a floating-point result, |
| optionally using a custom precision and rounding mode. |
| |
| See the documentation of :func:`~mpmath.fadd` for a detailed description |
| of how to specify precision and rounding. |
| |
| **Examples** |
| |
| Using :func:`~mpmath.fsub` with precision and rounding control:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fsub(2, 1e-20) |
| mpf('2.0') |
| >>> fsub(2, 1e-20, rounding='d') |
| mpf('1.9999999999999998') |
| >>> nprint(fsub(2, 1e-20, prec=100), 25) |
| 1.99999999999999999999 |
| >>> nprint(fsub(2, 1e-20, dps=15), 25) |
| 2.0 |
| >>> nprint(fsub(2, 1e-20, dps=25), 25) |
| 1.99999999999999999999 |
| >>> nprint(fsub(2, 1e-20, exact=True), 25) |
| 1.99999999999999999999 |
| |
| Exact subtraction avoids cancellation errors, enforcing familiar laws |
| of numbers such as `x-y+y = x`, which don't hold in floating-point |
| arithmetic with finite precision:: |
| |
| >>> x, y = mpf(2), mpf('1e1000') |
| >>> print(x - y + y) |
| 0.0 |
| >>> print(fsub(x, y, prec=inf) + y) |
| 2.0 |
| >>> print(fsub(x, y, exact=True) + y) |
| 2.0 |
| |
| Exact addition can be inefficient and may be impossible to perform |
| with large magnitude differences:: |
| |
| >>> fsub(1, '1e-100000000000000000000', prec=inf) |
| Traceback (most recent call last): |
| ... |
| OverflowError: the exact result does not fit in memory |
| |
| """ |
| prec, rounding = ctx._parse_prec(kwargs) |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| try: |
| if hasattr(x, '_mpf_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpf(mpf_sub(x._mpf_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_sub((x._mpf_, fzero), y._mpc_, prec, rounding)) |
| if hasattr(x, '_mpc_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpc(mpc_sub_mpf(x._mpc_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_sub(x._mpc_, y._mpc_, prec, rounding)) |
| except (ValueError, OverflowError): |
| raise OverflowError(ctx._exact_overflow_msg) |
| raise ValueError("Arguments need to be mpf or mpc compatible numbers") |
|
|
| def fmul(ctx, x, y, **kwargs): |
| """ |
| Multiplies the numbers *x* and *y*, giving a floating-point result, |
| optionally using a custom precision and rounding mode. |
| |
| See the documentation of :func:`~mpmath.fadd` for a detailed description |
| of how to specify precision and rounding. |
| |
| **Examples** |
| |
| The result is an mpmath number:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fmul(2, 5.0) |
| mpf('10.0') |
| >>> fmul(0.5j, 0.5) |
| mpc(real='0.0', imag='0.25') |
| |
| Avoiding roundoff:: |
| |
| >>> x, y = 10**10+1, 10**15+1 |
| >>> print(x*y) |
| 10000000001000010000000001 |
| >>> print(mpf(x) * mpf(y)) |
| 1.0000000001e+25 |
| >>> print(int(mpf(x) * mpf(y))) |
| 10000000001000011026399232 |
| >>> print(int(fmul(x, y))) |
| 10000000001000011026399232 |
| >>> print(int(fmul(x, y, dps=25))) |
| 10000000001000010000000001 |
| >>> print(int(fmul(x, y, exact=True))) |
| 10000000001000010000000001 |
| |
| Exact multiplication with complex numbers can be inefficient and may |
| be impossible to perform with large magnitude differences between |
| real and imaginary parts:: |
| |
| >>> x = 1+2j |
| >>> y = mpc(2, '1e-100000000000000000000') |
| >>> fmul(x, y) |
| mpc(real='2.0', imag='4.0') |
| >>> fmul(x, y, rounding='u') |
| mpc(real='2.0', imag='4.0000000000000009') |
| >>> fmul(x, y, exact=True) |
| Traceback (most recent call last): |
| ... |
| OverflowError: the exact result does not fit in memory |
| |
| """ |
| prec, rounding = ctx._parse_prec(kwargs) |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| try: |
| if hasattr(x, '_mpf_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpf(mpf_mul(x._mpf_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_mul_mpf(y._mpc_, x._mpf_, prec, rounding)) |
| if hasattr(x, '_mpc_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpc(mpc_mul_mpf(x._mpc_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_mul(x._mpc_, y._mpc_, prec, rounding)) |
| except (ValueError, OverflowError): |
| raise OverflowError(ctx._exact_overflow_msg) |
| raise ValueError("Arguments need to be mpf or mpc compatible numbers") |
|
|
| def fdiv(ctx, x, y, **kwargs): |
| """ |
| Divides the numbers *x* and *y*, giving a floating-point result, |
| optionally using a custom precision and rounding mode. |
| |
| See the documentation of :func:`~mpmath.fadd` for a detailed description |
| of how to specify precision and rounding. |
| |
| **Examples** |
| |
| The result is an mpmath number:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fdiv(3, 2) |
| mpf('1.5') |
| >>> fdiv(2, 3) |
| mpf('0.66666666666666663') |
| >>> fdiv(2+4j, 0.5) |
| mpc(real='4.0', imag='8.0') |
| |
| The rounding direction and precision can be controlled:: |
| |
| >>> fdiv(2, 3, dps=3) # Should be accurate to at least 3 digits |
| mpf('0.6666259765625') |
| >>> fdiv(2, 3, rounding='d') |
| mpf('0.66666666666666663') |
| >>> fdiv(2, 3, prec=60) |
| mpf('0.66666666666666667') |
| >>> fdiv(2, 3, rounding='u') |
| mpf('0.66666666666666674') |
| |
| Checking the error of a division by performing it at higher precision:: |
| |
| >>> fdiv(2, 3) - fdiv(2, 3, prec=100) |
| mpf('-3.7007434154172148e-17') |
| |
| Unlike :func:`~mpmath.fadd`, :func:`~mpmath.fmul`, etc., exact division is not |
| allowed since the quotient of two floating-point numbers generally |
| does not have an exact floating-point representation. (In the |
| future this might be changed to allow the case where the division |
| is actually exact.) |
| |
| >>> fdiv(2, 3, exact=True) |
| Traceback (most recent call last): |
| ... |
| ValueError: division is not an exact operation |
| |
| """ |
| prec, rounding = ctx._parse_prec(kwargs) |
| if not prec: |
| raise ValueError("division is not an exact operation") |
| x = ctx.convert(x) |
| y = ctx.convert(y) |
| if hasattr(x, '_mpf_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpf(mpf_div(x._mpf_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_div((x._mpf_, fzero), y._mpc_, prec, rounding)) |
| if hasattr(x, '_mpc_'): |
| if hasattr(y, '_mpf_'): |
| return ctx.make_mpc(mpc_div_mpf(x._mpc_, y._mpf_, prec, rounding)) |
| if hasattr(y, '_mpc_'): |
| return ctx.make_mpc(mpc_div(x._mpc_, y._mpc_, prec, rounding)) |
| raise ValueError("Arguments need to be mpf or mpc compatible numbers") |
|
|
| def nint_distance(ctx, x): |
| r""" |
| Return `(n,d)` where `n` is the nearest integer to `x` and `d` is |
| an estimate of `\log_2(|x-n|)`. If `d < 0`, `-d` gives the precision |
| (measured in bits) lost to cancellation when computing `x-n`. |
| |
| >>> from mpmath import * |
| >>> n, d = nint_distance(5) |
| >>> print(n); print(d) |
| 5 |
| -inf |
| >>> n, d = nint_distance(mpf(5)) |
| >>> print(n); print(d) |
| 5 |
| -inf |
| >>> n, d = nint_distance(mpf(5.00000001)) |
| >>> print(n); print(d) |
| 5 |
| -26 |
| >>> n, d = nint_distance(mpf(4.99999999)) |
| >>> print(n); print(d) |
| 5 |
| -26 |
| >>> n, d = nint_distance(mpc(5,10)) |
| >>> print(n); print(d) |
| 5 |
| 4 |
| >>> n, d = nint_distance(mpc(5,0.000001)) |
| >>> print(n); print(d) |
| 5 |
| -19 |
| |
| """ |
| typx = type(x) |
| if typx in int_types: |
| return int(x), ctx.ninf |
| elif typx is rational.mpq: |
| p, q = x._mpq_ |
| n, r = divmod(p, q) |
| if 2*r >= q: |
| n += 1 |
| elif not r: |
| return n, ctx.ninf |
| |
| d = bitcount(abs(p-n*q)) - bitcount(q) |
| return n, d |
| if hasattr(x, "_mpf_"): |
| re = x._mpf_ |
| im_dist = ctx.ninf |
| elif hasattr(x, "_mpc_"): |
| re, im = x._mpc_ |
| isign, iman, iexp, ibc = im |
| if iman: |
| im_dist = iexp + ibc |
| elif im == fzero: |
| im_dist = ctx.ninf |
| else: |
| raise ValueError("requires a finite number") |
| else: |
| x = ctx.convert(x) |
| if hasattr(x, "_mpf_") or hasattr(x, "_mpc_"): |
| return ctx.nint_distance(x) |
| else: |
| raise TypeError("requires an mpf/mpc") |
| sign, man, exp, bc = re |
| mag = exp+bc |
| |
| if mag < 0: |
| n = 0 |
| re_dist = mag |
| elif man: |
| |
| if exp >= 0: |
| n = man << exp |
| re_dist = ctx.ninf |
| |
| elif exp == -1: |
| n = (man>>1)+1 |
| re_dist = 0 |
| else: |
| d = (-exp-1) |
| t = man >> d |
| if t & 1: |
| t += 1 |
| man = (t<<d) - man |
| else: |
| man -= (t<<d) |
| n = t>>1 |
| re_dist = exp+bitcount(man) |
| if sign: |
| n = -n |
| elif re == fzero: |
| re_dist = ctx.ninf |
| n = 0 |
| else: |
| raise ValueError("requires a finite number") |
| return n, max(re_dist, im_dist) |
|
|
| def fprod(ctx, factors): |
| r""" |
| Calculates a product containing a finite number of factors (for |
| infinite products, see :func:`~mpmath.nprod`). The factors will be |
| converted to mpmath numbers. |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = False |
| >>> fprod([1, 2, 0.5, 7]) |
| mpf('7.0') |
| |
| """ |
| orig = ctx.prec |
| try: |
| v = ctx.one |
| for p in factors: |
| v *= p |
| finally: |
| ctx.prec = orig |
| return +v |
|
|
| def rand(ctx): |
| """ |
| Returns an ``mpf`` with value chosen randomly from `[0, 1)`. |
| The number of randomly generated bits in the mantissa is equal |
| to the working precision. |
| """ |
| return ctx.make_mpf(mpf_rand(ctx._prec)) |
|
|
| def fraction(ctx, p, q): |
| """ |
| Given Python integers `(p, q)`, returns a lazy ``mpf`` representing |
| the fraction `p/q`. The value is updated with the precision. |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15 |
| >>> a = fraction(1,100) |
| >>> b = mpf(1)/100 |
| >>> print(a); print(b) |
| 0.01 |
| 0.01 |
| >>> mp.dps = 30 |
| >>> print(a); print(b) # a will be accurate |
| 0.01 |
| 0.0100000000000000002081668171172 |
| >>> mp.dps = 15 |
| """ |
| return ctx.constant(lambda prec, rnd: from_rational(p, q, prec, rnd), |
| '%s/%s' % (p, q)) |
|
|
| def absmin(ctx, x): |
| return abs(ctx.convert(x)) |
|
|
| def absmax(ctx, x): |
| return abs(ctx.convert(x)) |
|
|
| def _as_points(ctx, x): |
| |
| if hasattr(x, '_mpi_'): |
| a, b = x._mpi_ |
| return [ctx.make_mpf(a), ctx.make_mpf(b)] |
| return x |
|
|
| ''' |
| def _zetasum(ctx, s, a, b): |
| """ |
| Computes sum of k^(-s) for k = a, a+1, ..., b with a, b both small |
| integers. |
| """ |
| a = int(a) |
| b = int(b) |
| s = ctx.convert(s) |
| prec, rounding = ctx._prec_rounding |
| if hasattr(s, '_mpf_'): |
| v = ctx.make_mpf(libmp.mpf_zetasum(s._mpf_, a, b, prec)) |
| elif hasattr(s, '_mpc_'): |
| v = ctx.make_mpc(libmp.mpc_zetasum(s._mpc_, a, b, prec)) |
| return v |
| ''' |
|
|
| def _zetasum_fast(ctx, s, a, n, derivatives=[0], reflect=False): |
| if not (ctx.isint(a) and hasattr(s, "_mpc_")): |
| raise NotImplementedError |
| a = int(a) |
| prec = ctx._prec |
| xs, ys = libmp.mpc_zetasum(s._mpc_, a, n, derivatives, reflect, prec) |
| xs = [ctx.make_mpc(x) for x in xs] |
| ys = [ctx.make_mpc(y) for y in ys] |
| return xs, ys |
|
|
| class PrecisionManager: |
| def __init__(self, ctx, precfun, dpsfun, normalize_output=False): |
| self.ctx = ctx |
| self.precfun = precfun |
| self.dpsfun = dpsfun |
| self.normalize_output = normalize_output |
| def __call__(self, f): |
| @functools.wraps(f) |
| def g(*args, **kwargs): |
| orig = self.ctx.prec |
| try: |
| if self.precfun: |
| self.ctx.prec = self.precfun(self.ctx.prec) |
| else: |
| self.ctx.dps = self.dpsfun(self.ctx.dps) |
| if self.normalize_output: |
| v = f(*args, **kwargs) |
| if type(v) is tuple: |
| return tuple([+a for a in v]) |
| return +v |
| else: |
| return f(*args, **kwargs) |
| finally: |
| self.ctx.prec = orig |
| return g |
| def __enter__(self): |
| self.origp = self.ctx.prec |
| if self.precfun: |
| self.ctx.prec = self.precfun(self.ctx.prec) |
| else: |
| self.ctx.dps = self.dpsfun(self.ctx.dps) |
| def __exit__(self, exc_type, exc_val, exc_tb): |
| self.ctx.prec = self.origp |
| return False |
|
|
|
|
| if __name__ == '__main__': |
| import doctest |
| doctest.testmod() |
|
|