272 lines
9.1 KiB
Python
272 lines
9.1 KiB
Python
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"""
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Utilities that manipulate strides to achieve desirable effects.
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An explanation of strides can be found in the "ndarray.rst" file in the
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NumPy reference guide.
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"""
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from __future__ import division, absolute_import, print_function
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import numpy as np
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from numpy.core.overrides import array_function_dispatch
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__all__ = ['broadcast_to', 'broadcast_arrays']
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class DummyArray(object):
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"""Dummy object that just exists to hang __array_interface__ dictionaries
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and possibly keep alive a reference to a base array.
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"""
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def __init__(self, interface, base=None):
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self.__array_interface__ = interface
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self.base = base
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def _maybe_view_as_subclass(original_array, new_array):
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if type(original_array) is not type(new_array):
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# if input was an ndarray subclass and subclasses were OK,
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# then view the result as that subclass.
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new_array = new_array.view(type=type(original_array))
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# Since we have done something akin to a view from original_array, we
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# should let the subclass finalize (if it has it implemented, i.e., is
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# not None).
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if new_array.__array_finalize__:
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new_array.__array_finalize__(original_array)
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return new_array
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def as_strided(x, shape=None, strides=None, subok=False, writeable=True):
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"""
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Create a view into the array with the given shape and strides.
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.. warning:: This function has to be used with extreme care, see notes.
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Parameters
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----------
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x : ndarray
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Array to create a new.
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shape : sequence of int, optional
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The shape of the new array. Defaults to ``x.shape``.
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strides : sequence of int, optional
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The strides of the new array. Defaults to ``x.strides``.
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subok : bool, optional
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.. versionadded:: 1.10
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If True, subclasses are preserved.
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writeable : bool, optional
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.. versionadded:: 1.12
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If set to False, the returned array will always be readonly.
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Otherwise it will be writable if the original array was. It
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is advisable to set this to False if possible (see Notes).
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Returns
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-------
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view : ndarray
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See also
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--------
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broadcast_to: broadcast an array to a given shape.
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reshape : reshape an array.
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Notes
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-----
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``as_strided`` creates a view into the array given the exact strides
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and shape. This means it manipulates the internal data structure of
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ndarray and, if done incorrectly, the array elements can point to
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invalid memory and can corrupt results or crash your program.
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It is advisable to always use the original ``x.strides`` when
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calculating new strides to avoid reliance on a contiguous memory
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layout.
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Furthermore, arrays created with this function often contain self
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overlapping memory, so that two elements are identical.
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Vectorized write operations on such arrays will typically be
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unpredictable. They may even give different results for small, large,
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or transposed arrays.
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Since writing to these arrays has to be tested and done with great
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care, you may want to use ``writeable=False`` to avoid accidental write
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operations.
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For these reasons it is advisable to avoid ``as_strided`` when
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possible.
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"""
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# first convert input to array, possibly keeping subclass
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x = np.array(x, copy=False, subok=subok)
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interface = dict(x.__array_interface__)
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if shape is not None:
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interface['shape'] = tuple(shape)
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if strides is not None:
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interface['strides'] = tuple(strides)
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array = np.asarray(DummyArray(interface, base=x))
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# The route via `__interface__` does not preserve structured
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# dtypes. Since dtype should remain unchanged, we set it explicitly.
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array.dtype = x.dtype
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view = _maybe_view_as_subclass(x, array)
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if view.flags.writeable and not writeable:
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view.flags.writeable = False
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return view
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def _broadcast_to(array, shape, subok, readonly):
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shape = tuple(shape) if np.iterable(shape) else (shape,)
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array = np.array(array, copy=False, subok=subok)
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if not shape and array.shape:
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raise ValueError('cannot broadcast a non-scalar to a scalar array')
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if any(size < 0 for size in shape):
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raise ValueError('all elements of broadcast shape must be non-'
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'negative')
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extras = []
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it = np.nditer(
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(array,), flags=['multi_index', 'refs_ok', 'zerosize_ok'] + extras,
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op_flags=['readonly'], itershape=shape, order='C')
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with it:
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# never really has writebackifcopy semantics
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broadcast = it.itviews[0]
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result = _maybe_view_as_subclass(array, broadcast)
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# In a future version this will go away
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if not readonly and array.flags._writeable_no_warn:
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result.flags.writeable = True
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result.flags._warn_on_write = True
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return result
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def _broadcast_to_dispatcher(array, shape, subok=None):
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return (array,)
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@array_function_dispatch(_broadcast_to_dispatcher, module='numpy')
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def broadcast_to(array, shape, subok=False):
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"""Broadcast an array to a new shape.
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Parameters
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----------
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array : array_like
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The array to broadcast.
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shape : tuple
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The shape of the desired array.
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subok : bool, optional
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If True, then sub-classes will be passed-through, otherwise
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the returned array will be forced to be a base-class array (default).
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Returns
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-------
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broadcast : array
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A readonly view on the original array with the given shape. It is
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typically not contiguous. Furthermore, more than one element of a
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broadcasted array may refer to a single memory location.
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Raises
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------
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ValueError
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If the array is not compatible with the new shape according to NumPy's
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broadcasting rules.
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Notes
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-----
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.. versionadded:: 1.10.0
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Examples
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--------
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>>> x = np.array([1, 2, 3])
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>>> np.broadcast_to(x, (3, 3))
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array([[1, 2, 3],
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[1, 2, 3],
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[1, 2, 3]])
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"""
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return _broadcast_to(array, shape, subok=subok, readonly=True)
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def _broadcast_shape(*args):
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"""Returns the shape of the arrays that would result from broadcasting the
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supplied arrays against each other.
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"""
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# use the old-iterator because np.nditer does not handle size 0 arrays
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# consistently
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b = np.broadcast(*args[:32])
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# unfortunately, it cannot handle 32 or more arguments directly
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for pos in range(32, len(args), 31):
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# ironically, np.broadcast does not properly handle np.broadcast
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# objects (it treats them as scalars)
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# use broadcasting to avoid allocating the full array
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b = broadcast_to(0, b.shape)
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b = np.broadcast(b, *args[pos:(pos + 31)])
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return b.shape
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def _broadcast_arrays_dispatcher(*args, **kwargs):
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return args
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@array_function_dispatch(_broadcast_arrays_dispatcher, module='numpy')
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def broadcast_arrays(*args, **kwargs):
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"""
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Broadcast any number of arrays against each other.
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Parameters
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----------
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`*args` : array_likes
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The arrays to broadcast.
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subok : bool, optional
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If True, then sub-classes will be passed-through, otherwise
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the returned arrays will be forced to be a base-class array (default).
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Returns
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-------
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broadcasted : list of arrays
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These arrays are views on the original arrays. They are typically
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not contiguous. Furthermore, more than one element of a
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broadcasted array may refer to a single memory location. If you need
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to write to the arrays, make copies first. While you can set the
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``writable`` flag True, writing to a single output value may end up
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changing more than one location in the output array.
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.. deprecated:: 1.17
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The output is currently marked so that if written to, a deprecation
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warning will be emitted. A future version will set the
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``writable`` flag False so writing to it will raise an error.
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Examples
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--------
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>>> x = np.array([[1,2,3]])
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>>> y = np.array([[4],[5]])
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>>> np.broadcast_arrays(x, y)
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[array([[1, 2, 3],
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[1, 2, 3]]), array([[4, 4, 4],
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[5, 5, 5]])]
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Here is a useful idiom for getting contiguous copies instead of
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non-contiguous views.
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>>> [np.array(a) for a in np.broadcast_arrays(x, y)]
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[array([[1, 2, 3],
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[1, 2, 3]]), array([[4, 4, 4],
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[5, 5, 5]])]
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"""
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# nditer is not used here to avoid the limit of 32 arrays.
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# Otherwise, something like the following one-liner would suffice:
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# return np.nditer(args, flags=['multi_index', 'zerosize_ok'],
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# order='C').itviews
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subok = kwargs.pop('subok', False)
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if kwargs:
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raise TypeError('broadcast_arrays() got an unexpected keyword '
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'argument {!r}'.format(list(kwargs.keys())[0]))
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args = [np.array(_m, copy=False, subok=subok) for _m in args]
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shape = _broadcast_shape(*args)
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if all(array.shape == shape for array in args):
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# Common case where nothing needs to be broadcasted.
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return args
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return [_broadcast_to(array, shape, subok=subok, readonly=False)
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for array in args]
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