| import json |
| import warnings |
| from typing import Callable, Optional |
|
|
| import numpy as np |
|
|
| import tiledb |
| import tiledb.cc as lt |
|
|
| from .dataframe_ import create_dim |
|
|
|
|
| def open(uri, mode="r", key=None, attr=None, config=None, timestamp=None, ctx=None): |
| """ |
| Open a TileDB array at the given URI |
| |
| :param uri: any TileDB supported URI |
| :param timestamp: array timestamp to open, int or None. |
| See the TileDB `time traveling <https://docs.tiledb.com/main/how-to/arrays/reading-arrays/time-traveling>`_ |
| documentation for detailed functionality description. |
| :param key: encryption key, str or None |
| :param str mode: (default 'r') Open the array object in read 'r', write 'w', modify exclusive 'm' mode, or delete 'd' mode |
| :param attr: attribute name to select from a multi-attribute array, str or None |
| :param config: TileDB config dictionary, dict or None |
| :return: open TileDB {Sparse,Dense}Array object |
| """ |
| return tiledb.Array.load_typed( |
| uri, |
| mode=mode, |
| key=key, |
| timestamp=timestamp, |
| attr=attr, |
| ctx=_get_ctx(ctx, config), |
| ) |
|
|
|
|
| def save(uri, array, **kwargs): |
| """ |
| Save array-like object at the given URI. |
| |
| :param uri: str or None |
| :param array: array-like object convertible to NumPy |
| :param kwargs: optional keyword args will be forwarded to tiledb.Array constructor |
| :return: |
| """ |
| |
| return from_numpy(uri, array, **kwargs) |
|
|
|
|
| def empty_like(uri, arr, config=None, key=None, tile=None, ctx=None, dtype=None): |
| """ |
| Create and return an empty, writeable DenseArray with schema based on |
| a NumPy-array like object. |
| |
| :param uri: array URI |
| :param arr: NumPy ndarray, or shape tuple |
| :param config: (optional, deprecated) configuration to apply to *new* Ctx |
| :param key: (optional) encryption key, if applicable |
| :param tile: (optional) tiling of generated array |
| :param ctx: (optional) TileDB Ctx |
| :param dtype: (optional) required if arr is a shape tuple |
| :return: |
| """ |
| ctx = _get_ctx(ctx, config) |
| if isinstance(arr, tuple): |
| if dtype is None: |
| raise ValueError("dtype must be valid data type (e.g. np.int32), not None") |
| schema = schema_like(shape=arr, tile=tile, ctx=ctx, dtype=dtype) |
| else: |
| schema = schema_like(arr, tile=tile, ctx=ctx) |
| tiledb.DenseArray.create(uri, schema, key=key, ctx=ctx) |
| return tiledb.DenseArray(uri, mode="w", key=key, ctx=ctx) |
|
|
|
|
| def from_numpy(uri, array, config=None, ctx=None, **kwargs): |
| """ |
| Write a NumPy array into a TileDB DenseArray, |
| returning a readonly DenseArray instance. |
| |
| :param str uri: URI for the TileDB array (any supported TileDB URI) |
| :param numpy.ndarray array: dense numpy array to persist |
| :param config: TileDB config dictionary, dict or None |
| :param tiledb.Ctx ctx: A TileDB Context |
| :param kwargs: additional arguments to pass to the DenseArray constructor |
| :rtype: tiledb.DenseArray |
| :return: An open DenseArray (read mode) with a single anonymous attribute |
| :raises TypeError: cannot convert ``uri`` to unicode string |
| :raises: :py:exc:`tiledb.TileDBError` |
| |
| :Keyword Arguments: |
| |
| * **full_domain** - Dimensions should be created with full range of the dtype (default: False) |
| * **mode** - Creation mode, one of 'ingest' (default), 'schema_only', 'append' |
| * **append_dim** - The dimension along which the Numpy array is append (default: 0). |
| * **start_idx** - The starting index to append to. By default, append to the end of the existing data. |
| * **timestamp** - Write TileDB array at specific timestamp. |
| * **dim_dtype** - Dimension data type, default np.uint64 |
| * **attr_name** - Attribute name, default empty string |
| * **tile** - Tile extent for each dimension, default None |
| |
| Additionally, arguments accepted by ArraySchema constructor can also be passed to customize the underlying array schema. |
| |
| **Example:** |
| |
| >>> import tiledb, numpy as np, tempfile |
| >>> with tempfile.TemporaryDirectory() as tmp: |
| ... # Creates array 'array' on disk. |
| ... with tiledb.from_numpy(tmp + "/array", np.array([1.0, 2.0, 3.0])) as A: |
| ... pass |
| """ |
| if not isinstance(array, np.ndarray): |
| raise Exception("from_numpy is only currently supported for numpy.ndarray") |
|
|
| ctx = _get_ctx(ctx, config) |
| mode = kwargs.pop("mode", "ingest") |
| timestamp = kwargs.pop("timestamp", None) |
| sparse = kwargs.pop("sparse", False) |
|
|
| if sparse: |
| raise tiledb.TileDBError("from_numpy only supports dense arrays") |
|
|
| if mode not in ("ingest", "schema_only", "append"): |
| raise tiledb.TileDBError(f"Invalid mode specified ('{mode}')") |
|
|
| if mode in ("ingest", "schema_only"): |
| try: |
| with tiledb.Array.load_typed(uri): |
| raise tiledb.TileDBError(f"Array URI '{uri}' already exists!") |
| except tiledb.TileDBError: |
| pass |
|
|
| if mode == "append": |
| kwargs["append_dim"] = kwargs.get("append_dim", 0) |
| if tiledb.ArraySchema.load(uri).sparse: |
| raise tiledb.TileDBError("Cannot append to sparse array") |
|
|
| if mode in ("ingest", "schema_only"): |
| schema = _schema_like_numpy(array, ctx, **kwargs) |
| tiledb.Array.create(uri, schema) |
|
|
| if mode in ("ingest", "append"): |
| kwargs["mode"] = mode |
| with tiledb.open(uri, mode="w", ctx=ctx, timestamp=timestamp) as arr: |
| |
| if array.dtype == object: |
| arr[:] = array |
| else: |
| arr.write_direct(np.ascontiguousarray(array), **kwargs) |
|
|
| return tiledb.DenseArray(uri, mode="r", ctx=ctx) |
|
|
|
|
| def array_exists(uri, isdense=False, issparse=False, ctx=None): |
| """ |
| Check if arrays exists and is open-able at the given URI |
| |
| :param str uri: URI for the TileDB array (any supported TileDB URI) |
| :param bool isdense: (optional) Restrict to dense array types |
| :param bool issparse: (optional) Restrict to sparse array types |
| :param ctx: (optional) TileDB Ctx |
| """ |
| ctx = _get_ctx(ctx) |
| |
| |
| |
| |
| if tiledb.object_type(uri, ctx) != "array": |
| return False |
| try: |
| with tiledb.open(uri, ctx=ctx) as a: |
| if isdense: |
| return not a.schema.sparse |
| if issparse: |
| return a.schema.sparse |
| return True |
| except tiledb.TileDBError as exc: |
| if ( |
| exc.args[0] |
| == "[TileDB::Array] Error: Cannot open array; Array does not exist." |
| ): |
| return False |
| else: |
| raise |
|
|
|
|
| def array_fragments(uri, include_mbrs=False, ctx=None): |
| """ |
| Creates a `FragmentInfoList` object, which is an ordered list of `FragmentInfo` |
| objects, representing all fragments in the array at the given URI. |
| |
| The returned object contain the following attributes: |
| - `uri`: URIs of fragments |
| - `version`: Fragment version of each fragment |
| - `nonempty_domain`: Non-empty domain of each fragment |
| - `cell_num`: Number of cells in each fragment |
| - `timestamp_range`: Timestamp range of when each fragment was written |
| - `sparse`: For each fragment, True if fragment is sparse, else False |
| - `has_consolidated_metadata`: For each fragment, True if fragment has consolidated fragment metadata, else False |
| - `unconsolidated_metadata_num`: Number of unconsolidated metadata fragments in each fragment |
| - `to_vacuum`: URIs of already consolidated fragments to vacuum |
| - `mbrs`: The mimimum bounding rectangle of each fragment; only present when `include_mbrs=True` |
| |
| :param str uri: URI for the TileDB array (any supported TileDB URI) |
| :param bool include_mbrs: Include minimum bouding rectangles in result; this is disabled by default for optimize time and space |
| :param ctx: (optional) TileDB Ctx |
| :return: FragmentInfoList |
| """ |
| return tiledb.FragmentInfoList(uri, include_mbrs, ctx) |
|
|
|
|
| def consolidate(uri, config=None, ctx=None, fragment_uris=None, timestamp=None): |
| """Consolidates TileDB array fragments for improved read performance |
| |
| :param str uri: URI to the TileDB Array |
| :param str key: (default None) Key to decrypt array if the array is encrypted |
| :param tiledb.Config config: The TileDB Config with consolidation parameters set |
| :param tiledb.Ctx ctx: (default None) The TileDB Context |
| :param fragment_uris: (default None) Consolidate the array using a list of fragment file names |
| :param timestamp: (default None) If not None, consolidate the array using the given tuple(int, int) UNIX seconds range (inclusive). This argument will be ignored if `fragment_uris` is passed. |
| :rtype: str or bytes |
| :return: path (URI) to the consolidated TileDB Array |
| :raises TypeError: cannot convert path to unicode string |
| :raises: :py:exc:`tiledb.TileDBError` |
| |
| Rather than passing the timestamp into this function, it may be set with |
| the config parameters `"sm.vacuum.timestamp_start"`and |
| `"sm.vacuum.timestamp_end"` which takes in a time in UNIX seconds. If both |
| are set then this function's `timestamp` argument will be used. |
| |
| **Example:** |
| |
| >>> import tiledb, tempfile, numpy as np, os |
| >>> path = tempfile.mkdtemp() |
| |
| >>> with tiledb.from_numpy(path, np.zeros(4), timestamp=1) as A: |
| ... pass |
| >>> with tiledb.open(path, 'w', timestamp=2) as A: |
| ... A[:] = np.ones(4, dtype=np.int64) |
| >>> with tiledb.open(path, 'w', timestamp=3) as A: |
| ... A[:] = np.ones(4, dtype=np.int64) |
| >>> with tiledb.open(path, 'w', timestamp=4) as A: |
| ... A[:] = np.ones(4, dtype=np.int64) |
| >>> len(tiledb.array_fragments(path)) |
| 4 |
| |
| >>> fragment_names = [ |
| ... os.path.basename(f) for f in tiledb.array_fragments(path).uri |
| ... ] |
| >>> array_uri = tiledb.consolidate( |
| ... path, fragment_uris=[fragment_names[1], fragment_names[3]] |
| ... ) |
| >>> len(tiledb.array_fragments(path)) |
| 3 |
| |
| """ |
| ctx = _get_ctx(ctx) |
| if config is None: |
| config = lt.Config() |
|
|
| arr = lt.Array(ctx, uri, lt.QueryType.WRITE) |
|
|
| if fragment_uris is not None: |
| if timestamp is not None: |
| warnings.warn( |
| "The `timestamp` argument will be ignored and only fragments " |
| "passed to `fragment_uris` will be consolidated", |
| DeprecationWarning, |
| ) |
| return arr.consolidate(ctx, fragment_uris, config) |
| elif timestamp is not None: |
| return arr.consolidate(ctx, timestamp, config) |
| else: |
| return arr.consolidate(ctx, config) |
|
|
|
|
| def vacuum(uri, config=None, ctx=None, timestamp=None): |
| """ |
| Vacuum underlying array fragments after consolidation. |
| |
| :param str uri: URI of array to be vacuumed |
| :param config: Override the context configuration for vacuuming. |
| Defaults to None, inheriting the context parameters. |
| :param (ctx: tiledb.Ctx, optional): Context. Defaults to |
| `tiledb.default_ctx()`. |
| :raises TypeError: cannot convert `uri` to unicode string |
| :raises: :py:exc:`tiledb.TileDBError` |
| |
| This operation of this function is controlled by |
| the `"sm.vacuum.mode"` parameter, which accepts the values ``fragments``, |
| ``fragment_meta``, and ``array_meta``. Rather than passing the timestamp |
| into this function, it may be set by using `"sm.vacuum.timestamp_start"`and |
| `"sm.vacuum.timestamp_end"` which takes in a time in UNIX seconds. If both |
| are set then this function's `timestamp` argument will be used. |
| |
| **Example:** |
| |
| >>> import tiledb, numpy as np |
| >>> import tempfile |
| >>> path = tempfile.mkdtemp() |
| >>> with tiledb.from_numpy(path, np.random.rand(4)) as A: |
| ... pass # make sure to close |
| >>> with tiledb.open(path, 'w') as A: |
| ... for i in range(4): |
| ... A[:] = np.ones(4, dtype=np.int64) * i |
| >>> paths = tiledb.VFS().ls(path) |
| >>> # should be 12 (2 base files + 2*5 fragment+ok files) |
| >>> (); len(paths); () # doctest:+ELLIPSIS |
| (...) |
| >>> () ; tiledb.consolidate(path) ; () # doctest:+ELLIPSIS |
| (...) |
| >>> tiledb.vacuum(path) |
| >>> paths = tiledb.VFS().ls(path) |
| >>> # should now be 4 ( base files + 2 fragment+ok files) |
| >>> (); len(paths); () # doctest:+ELLIPSIS |
| (...) |
| |
| """ |
| ctx = _get_ctx(ctx) |
| if config is None: |
| config = tiledb.Config() |
|
|
| if timestamp is not None: |
| warnings.warn( |
| "Partial vacuuming via timestamp will be deprecrated in " |
| "a future release and replaced by passing in fragment URIs.", |
| DeprecationWarning, |
| ) |
|
|
| if not isinstance(timestamp, tuple) and len(timestamp) != 2: |
| raise TypeError("'timestamp' argument expects tuple(start: int, end: int)") |
|
|
| if timestamp[0] is not None: |
| config["sm.vacuum.timestamp_start"] = timestamp[0] |
| if timestamp[1] is not None: |
| config["sm.vacuum.timestamp_end"] = timestamp[1] |
|
|
| lt.Array.vacuum(ctx, uri, config) |
|
|
|
|
| def schema_like(*args, shape=None, dtype=None, ctx=None, **kwargs): |
| """ |
| Return an ArraySchema corresponding to a NumPy-like object or |
| `shape` and `dtype` kwargs. Users are encouraged to pass 'tile' |
| and 'capacity' keyword arguments as appropriate for a given |
| application. |
| |
| :param A: NumPy array-like object, or TileDB reference URI, optional |
| :param tuple shape: array shape, optional |
| :param dtype: array dtype, optional |
| :param Ctx ctx: TileDB Ctx |
| :param kwargs: additional keyword arguments to pass through, optional |
| :return: tiledb.ArraySchema |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| def is_ndarray_like(arr): |
| return hasattr(arr, "shape") and hasattr(arr, "dtype") and hasattr(arr, "ndim") |
|
|
| |
| dim_dtype = kwargs.pop("dim_dtype", np.uint64) |
| if len(args) == 1: |
| arr = args[0] |
| if not is_ndarray_like(arr): |
| raise ValueError("expected ndarray-like object") |
| schema = _schema_like_numpy(arr, ctx, dim_dtype, tile=kwargs.pop("tile", None)) |
| elif shape and dtype: |
| if np.issubdtype(np.bytes_, dtype): |
| dtype = np.dtype("S") |
| elif np.issubdtype(dtype, np.str_): |
| dtype = np.dtype("U") |
|
|
| ndim = len(shape) |
| tiling = _regularize_tiling(kwargs.pop("tile", None), ndim) |
|
|
| dims = [] |
| for d in range(ndim): |
| |
| |
| tile_extent = tiling[d] if tiling else shape[d] |
| domain = (0, shape[d] - 1) |
| dims.append( |
| tiledb.Dim(domain=domain, tile=tile_extent, dtype=dim_dtype, ctx=ctx) |
| ) |
|
|
| att = tiledb.Attr(dtype=dtype, ctx=ctx) |
| dom = tiledb.Domain(*dims, ctx=ctx) |
| schema = tiledb.ArraySchema(ctx=ctx, domain=dom, attrs=(att,), **kwargs) |
| elif kwargs is not None: |
| raise ValueError |
| else: |
| raise ValueError( |
| "Must provide either ndarray-like object or 'shape' " |
| "and 'dtype' keyword arguments" |
| ) |
|
|
| return schema |
|
|
|
|
| def as_built(return_json_string=False): |
| """ |
| Dumps the TileDB build configuration to a dictionary or string. |
| |
| :param bool return_json_string: Return the output as a string instead of a dictionary |
| :return: dict or str |
| """ |
| res = tiledb.main.as_built_dump() |
|
|
| if return_json_string: |
| return res |
|
|
| return json.loads(res) |
|
|
|
|
| def object_type(uri: str, ctx: tiledb.Ctx = None) -> Optional[str]: |
| """Returns the TileDB object type at the specified URI as a string. |
| |
| :param uri: URI of the TileDB resource |
| :param ctx: The TileDB Context |
| :return: object type string ("array" or "group") or None if invalid TileDB object``` |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| return tiledb.main.object_type(uri, ctx) |
|
|
|
|
| def ls(uri: str, func: Callable, ctx: tiledb.Ctx = None): |
| """Lists TileDB resources and applies a callback that have a prefix of ``uri`` (one level deep). |
| |
| :param uri: URI of TileDB group object |
| :param func: callback to execute on every listed TileDB resource,\ |
| resource URI and object type label are passed as arguments to the callback |
| :param ctx: A TileDB Context |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| tiledb.main.ls(uri, func, ctx) |
|
|
|
|
| def walk(uri: str, func: Callable, order: str = "preorder", ctx: tiledb.Ctx = None): |
| """Recursively visits TileDB resources and applies a callback to resources that have a prefix of ``uri`` |
| |
| :param uri: URI of TileDB group object |
| :param func: callback to execute on every listed TileDB resource,\ |
| resource URI and object type label are passed as arguments to the callback |
| :param ctx: The TileDB context |
| :param order: 'preorder' (default) or 'postorder' tree traversal |
| :raises ValueError: unknown order |
| :raises: :py:exc:`tiledb.TileDBError` |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| tiledb.main.walk(uri, func, order, ctx) |
|
|
|
|
| def remove(uri: str, ctx: tiledb.Ctx = None): |
| """Removes (deletes) the TileDB object at the specified URI |
| |
| :param uri: URI of the TileDB resource |
| :param ctx: The TileDB Context |
| :raises: :py:exc:`tiledb.TileDBError` |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| tiledb.main.remove(ctx, uri) |
|
|
|
|
| def move(old_uri: str, new_uri: str, ctx: tiledb.Ctx = None): |
| """Moves a TileDB resource (group, array, key-value). |
| |
| :param old_uri: URI of the TileDB resource to move |
| :param new_uri: URI of the destination |
| :param ctx: The TileDB Context |
| :raises: :py:exc:`TileDBError` |
| """ |
| ctx = _get_ctx(ctx) |
|
|
| tiledb.main.move(ctx, old_uri, new_uri) |
|
|
|
|
| def _schema_like_numpy( |
| array, |
| ctx, |
| dim_dtype=np.uint64, |
| attr_name="", |
| full_domain=False, |
| tile=None, |
| **kwargs, |
| ): |
| """ |
| Internal helper function for schema_like to create array schema from |
| NumPy array-like object. |
| """ |
| |
| tiling = _regularize_tiling(tile, array.ndim) |
| dims = [ |
| create_dim( |
| dtype=dim_dtype, |
| values=(0, array.shape[d] - 1), |
| full_domain=full_domain, |
| tile=tiling[d] if tiling else array.shape[d], |
| ctx=ctx, |
| ) |
| for d in range(array.ndim) |
| ] |
| var = False |
| if array.dtype == object: |
| |
| |
| el0 = array.flat[0] |
| if isinstance(el0, bytes): |
| el_dtype = np.dtype("S") |
| var = True |
| elif isinstance(el0, str): |
| el_dtype = np.dtype("U") |
| var = True |
| elif isinstance(el0, np.ndarray): |
| if len(el0.shape) != 1: |
| raise TypeError( |
| "Unsupported sub-array type for Attribute: {} " |
| "(only string arrays and 1D homogeneous NumPy arrays are supported)".format( |
| type(el0) |
| ) |
| ) |
| el_dtype = el0.dtype |
| else: |
| raise TypeError( |
| "Unsupported sub-array type for Attribute: {} " |
| "(only strings and homogeneous-typed NumPy arrays are supported)".format( |
| type(el0) |
| ) |
| ) |
| else: |
| el_dtype = array.dtype |
|
|
| att = tiledb.Attr(dtype=el_dtype, name=attr_name, var=var, ctx=ctx) |
| dom = tiledb.Domain(*dims, ctx=ctx) |
| return tiledb.ArraySchema(ctx=ctx, domain=dom, attrs=(att,), **kwargs) |
|
|
|
|
| def _regularize_tiling(tile, ndim): |
| """ |
| Internal helper function for schema_like and _schema_like_numpy to regularize tiling. |
| """ |
| if not tile: |
| return None |
|
|
| if np.isscalar(tile): |
| return tuple(int(tile) for _ in range(ndim)) |
|
|
| if isinstance(tile, str) or len(tile) != ndim: |
| raise ValueError("'tile' must be iterable and match array dimensionality") |
|
|
| return tuple(tile) |
|
|
|
|
| def _get_ctx(ctx=None, config=None): |
| if ctx: |
| if config: |
| raise ValueError( |
| "Received extra Ctx or Config argument: either one may be provided, but not both" |
| ) |
| elif config: |
| ctx = tiledb.Ctx(tiledb.Config(config)) |
| else: |
| ctx = tiledb.default_ctx() |
| return ctx |
|
|