# This file is generated, do not modify it! # # To update this file, run the update masked docs script as follows: # # python tools/update_masked_docs.py # # The script must be called from an environment where the development # version of torch package can be imported and is functional. # amax_docstring = """amax(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns maximum of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of maximum operation, which is used to start the reduction, depends on input dtype. For instance, for float32, uint8, and int32 dtypes, the identity values are ``-inf``, ``0``, and ``-2147483648``, respectively. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in maximum computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of maximum operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.amax(input, 1, mask=mask) tensor([ -1, -9223372036854775808]) """ amin_docstring = """amin(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns minimum of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of minimum operation, which is used to start the reduction, depends on input dtype. For instance, for float32, uint8, and int32 dtypes, the identity values are ``inf``, ``255``, and ``2147483647``, respectively. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in minimum computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of minimum operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.amin(input, 1, mask=mask) tensor([ -3, 9223372036854775807]) """ argmax_docstring = """argmax(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns argmax of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of argmax operation, which is used to start the reduction, depends on input dtype. For instance, for float32, uint8, and int32 dtypes, the identity values are ``-inf``, ``0``, and ``-2147483648``, respectively. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in argmax computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of argmax operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which argmax is computed. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.argmax(input, 1, mask=mask) tensor([2, 0]) """ argmin_docstring = """argmin(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns argmin of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of argmin operation, which is used to start the reduction, depends on input dtype. For instance, for float32, uint8, and int32 dtypes, the identity values are ``inf``, ``255``, and ``2147483647``, respectively. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in argmin computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of argmin operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which argmin is computed. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.argmin(input, 1, mask=mask) tensor([0, 0]) """ cumprod_docstring = """cumprod(input, dim, *, dtype=None, mask=None) -> Tensor Returns cumulative_prod of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. Cumsum of i-th element in ``x`` is defined as ``prod(x[:i])``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in cumulative_prod computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the cumulative_prod output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which cumulative_prod is computed. Keyword args: dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.cumprod(input, 1, mask=mask) tensor([[-3., -3., 3.], [ 1., 1., 1.]]) """ cumsum_docstring = """cumsum(input, dim, *, dtype=None, mask=None) -> Tensor Returns cumulative_sum of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. Cumsum of i-th element in ``x`` is defined as ``sum(x[:i])``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in cumulative_sum computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the cumulative_sum output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which cumulative_sum is computed. Keyword args: dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.cumsum(input, 1, mask=mask) tensor([[-3., -3., -4.], [ 0., 0., 0.]]) """ log_softmax_docstring = """log_softmax(input, dim, *, dtype=None, mask=None) -> Tensor Returns log_softmax of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. LogSoftmax of i-th element in ``x`` is defined as ``log(exp(x[i])/sum(exp(x)))``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in log_softmax computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the log_softmax output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which log_softmax is computed. Keyword args: dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.log_softmax(input, 1, mask=mask) tensor([[-2.1269, -inf, -0.1269], [ nan, nan, nan]]) """ logsumexp_docstring = """logsumexp(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns logsumexp of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of logsumexp operation, which is used to start the reduction, is ``-2147483648``. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in logsumexp computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of logsumexp operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.logsumexp(input, 1, mask=mask) tensor([ 0, -9223372036854775808]) """ mean_docstring = """mean(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns mean of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. By definition, the identity value of a mean operation is the mean value of the tensor. If all elements of the input tensor along given dimension(s) :attr:`dim` are masked-out, the identity value of the mean is undefined. Due to this ambiguity, the elements of output tensor with strided layout, that correspond to fully masked-out elements, have ``nan`` values. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in mean computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of mean operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.mean(input, 1, mask=mask) tensor([-2., nan]) """ median_docstring = """median(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns median of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. By definition, the identity value of a median operation is the median value of the tensor. If all elements of the input tensor along given dimension(s) :attr:`dim` are masked-out, the identity value of the median is undefined. Due to this ambiguity, the elements of output tensor with strided layout, that correspond to fully masked-out elements, have ``nan`` values. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in median computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of median operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which median is computed. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.median(input, 1, mask=mask) tensor([-3., nan]) """ norm_docstring = """norm(input, ord, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns norm of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of norm operation, which is used to start the reduction, is ``0.0``, except for ``ord=-inf`` it is ``inf``. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in norm computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of norm operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor ord (int, float, optional): the order of vector norm. Default: 2. See :func:`torch.linalg.vector_norm` for a list of supported norms. dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.norm(input, 2.0, 1, mask=mask) tensor([3.1623, 0.0000]) """ normalize_docstring = """normalize(input, ord, dim, *, eps=1e-12, dtype=None, mask=None) -> Tensor Returns normalize of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. Normalize of i-th element in ``x`` is defined as ``x[i]/max(norm(x, p), eps)``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in normalize computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the normalize output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor ord (int, float): the order of vector norm. Default: 2. See :func:`torch.linalg.vector_norm` for a list of supported norms. dim (int): the dimension along which normalize is computed. Keyword args: eps (float, optional): small value to avoid division by zero. Default: 1e-12. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.normalize(input, 2.0, 1, mask=mask) tensor([[-0.9487, 0.0000, -0.3162], [ 0.0000, 0.0000, 0.0000]]) """ prod_docstring = """prod(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns product of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of product operation, which is used to start the reduction, is ``1``. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in product computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of product operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.prod(input, 1, mask=mask) tensor([3, 1]) """ softmax_docstring = """softmax(input, dim, *, dtype=None, mask=None) -> Tensor Returns softmax of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. Softmax of i-th element in ``x`` is defined as ``exp(x[i])/sum(exp(x))``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in softmax computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the softmax output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which softmax is computed. Keyword args: dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.softmax(input, 1, mask=mask) tensor([[0.1192, 0.0000, 0.8808], [ nan, nan, nan]]) """ softmin_docstring = """softmin(input, dim, *, dtype=None, mask=None) -> Tensor Returns softmin of all the slices in the :attr:`input` tensor along :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. Let ``x`` be a sequence of unmasked elements of one-dimensional slice of the :attr:`input` tensor. Softmin of i-th element in ``x`` is defined as ``exp(-x[i])/sum(exp(-x))``. The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in softmin computation, otherwise the element is ignored. The values of masked-out elements of the output tensor have undefined value: it may or may not be set to zero or nan; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the softmin output tensor can be computed as ``torch.broadcast_to(mask, input.shape)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int): the dimension along which softmin is computed. Keyword args: dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> input tensor([[-3., -2., -1.], [ 0., 1., 2.]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.softmin(input, 1, mask=mask) tensor([[0.8808, 0.0000, 0.1192], [ nan, nan, nan]]) """ std_docstring = """std(input, dim, unbiased, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns standard_deviation of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of sample standard deviation operation is undefined. The elements of output tensor with strided layout, that correspond to fully masked-out elements, have ``nan`` values. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in standard_deviation computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of standard_deviation operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. unbiased (bool): when True, use Bessel’s correction, otherwise, compute the uncorrected sample variance. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.std(input, 1, False, mask=mask) tensor([1., nan]) """ sum_docstring = """sum(input, dim, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns sum of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of sum operation, which is used to start the reduction, is ``0``. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in sum computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of sum operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.sum(input, 1, mask=mask) tensor([-4, 0]) """ var_docstring = """var(input, dim, unbiased, *, keepdim=False, dtype=None, mask=None) -> Tensor Returns variance of all the elements in the :attr:`input` tensor along the given dimension(s) :attr:`dim` while the :attr:`input` elements are masked out according to the boolean tensor :attr:`mask`. The identity value of sample variance operation is undefined. The elements of output tensor with strided layout, that correspond to fully masked-out elements, have ``nan`` values. If :attr:`keepdim` is ``True``, the output tensor is of the same size as :attr:`input` except in the dimension(s) :attr:`dim` where it is of size 1. Otherwise, :attr:`dim` is squeezed (see :func:`torch.squeeze`), resulting in the output tensor having 1 (or ``len(dim)``) fewer dimension(s). The boolean tensor :attr:`mask` defines the "validity" of :attr:`input` tensor elements: if :attr:`mask` element is True then the corresponding element in :attr:`input` tensor will be included in variance computation, otherwise the element is ignored. When all elements of :attr:`input` along the given dimension :attr:`dim` are ignored (fully masked-out), the corresponding element of the output tensor will have undefined value: it may or may not correspond to the identity value of variance operation; the choice may correspond to the value that leads to the most efficient storage of :attr:`output` tensor. The mask of the output tensor can be computed as ``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim, dtype=torch.bool)``. The shapes of the :attr:`mask` tensor and the :attr:`input` tensor don't need to match, but they must be :ref:`broadcastable ` and the dimensionality of the :attr:`mask` tensor must not be greater than of the :attr:`input` tensor. Args: input (Tensor): the input tensor dim (int or tuple of ints, optional): the dimension or dimensions to reduce. Default: None that is equivalent to ``tuple(range(input.ndim))``. unbiased (bool): when True, use Bessel’s correction, otherwise, compute the uncorrected sample variance. Keyword args: keepdim (bool, optional): whether the output tensor has :attr:`dim` retained or not. Default: False. dtype (:class:`torch.dtype`, optional): the desired data type of returned tensor. If specified, the input tensor is casted to :attr:`dtype` before the operation is performed. Default: None. mask (:class:`torch.Tensor`, optional): the boolean tensor containing the binary mask of validity of input tensor elements. Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``. Example:: >>> input = tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> input tensor([[-3, -2, -1], [ 0, 1, 2]]) >>> mask = tensor([[ True, False, True], [False, False, False]]) >>> mask tensor([[ True, False, True], [False, False, False]]) >>> torch.masked._ops.var(input, 1, False, mask=mask) tensor([1., nan]) """