import numpy from cupy import cuda from cupy._creation.basic import _new_like_order_and_strides from cupy._core import internal def _update_shape(a, shape): if shape is None and a is not None: shape = a.shape elif isinstance(shape, int): shape = (shape,) else: shape = tuple(shape) return shape def empty_pinned(shape, dtype=float, order='C'): """Returns a new, uninitialized NumPy array with the given shape and dtype. This is a convenience function which is just :func:`numpy.empty`, except that the underlying memory is pinned/pagelocked. Args: shape (int or tuple of ints): Dimensionalities of the array. dtype: Data type specifier. order ({'C', 'F'}): Row-major (C-style) or column-major (Fortran-style) order. Returns: numpy.ndarray: A new array with elements not initialized. .. seealso:: :func:`numpy.empty` """ shape = _update_shape(None, shape) nbytes = internal.prod(shape) * numpy.dtype(dtype).itemsize mem = cuda.alloc_pinned_memory(nbytes) out = numpy.ndarray(shape, dtype=dtype, buffer=mem, order=order) return out def empty_like_pinned(a, dtype=None, order='K', subok=None, shape=None): """Returns a new, uninitialized NumPy array with the same shape and dtype as those of the given array. This is a convenience function which is just :func:`numpy.empty_like`, except that the underlying memory is pinned/pagelocked. This function currently does not support ``subok`` option. Args: a (numpy.ndarray or cupy.ndarray): Base array. dtype: Data type specifier. The data type of ``a`` is used by default. order ({'C', 'F', 'A', or 'K'}): 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: Not supported yet, must be None. shape (int or tuple of ints): 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. Returns: numpy.ndarray: A new array with same shape and dtype of ``a`` with elements not initialized. .. seealso:: :func:`numpy.empty_like` """ # We're kinda duplicating the code here because order='K' needs special # treatment: strides need to be computed if subok is not None: raise TypeError('subok is not supported yet') if dtype is None: dtype = a.dtype shape = _update_shape(a, shape) order, strides, _ = _new_like_order_and_strides( a, dtype, order, shape, get_memptr=False) nbytes = internal.prod(shape) * numpy.dtype(dtype).itemsize mem = cuda.alloc_pinned_memory(nbytes) out = numpy.ndarray(shape, dtype=dtype, buffer=mem, strides=strides, order=order) return out def zeros_pinned(shape, dtype=float, order='C'): """Returns a new, zero-initialized NumPy array with the given shape and dtype. This is a convenience function which is just :func:`numpy.zeros`, except that the underlying memory is pinned/pagelocked. Args: shape (int or tuple of ints): Dimensionalities of the array. dtype: Data type specifier. order ({'C', 'F'}): Row-major (C-style) or column-major (Fortran-style) order. Returns: numpy.ndarray: An array filled with zeros. .. seealso:: :func:`numpy.zeros` """ out = empty_pinned(shape, dtype, order) numpy.copyto(out, 0, casting='unsafe') return out def zeros_like_pinned(a, dtype=None, order='K', subok=None, shape=None): """Returns a new, zero-initialized NumPy array with the same shape and dtype as those of the given array. This is a convenience function which is just :func:`numpy.zeros_like`, except that the underlying memory is pinned/pagelocked. This function currently does not support ``subok`` option. Args: a (numpy.ndarray or cupy.ndarray): Base array. dtype: Data type specifier. The dtype of ``a`` is used by default. order ({'C', 'F', 'A', or 'K'}): 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: Not supported yet, must be None. shape (int or tuple of ints): 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. Returns: numpy.ndarray: An array filled with zeros. .. seealso:: :func:`numpy.zeros_like` """ # NOQA out = empty_like_pinned(a, dtype, order, subok, shape) numpy.copyto(out, 0, casting='unsafe') return out