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2110 lines
84 KiB
Python
2110 lines
84 KiB
Python
"""Functional interface"""
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import warnings
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import math
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from operator import mul
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from functools import reduce
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import torch
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from torch._C import _infer_size, _add_docstr
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from . import _functions
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from .modules import utils
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from ._functions.padding import ConstantPadNd
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from ._functions import vision
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from ._functions.thnn.fold import Col2Im, Im2Col
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from .modules.utils import _single, _pair, _triple, _list_with_default
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from . import grad
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conv1d = _add_docstr(torch.conv1d, r"""
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conv1d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1) -> Tensor
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Applies a 1D convolution over an input signal composed of several input
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planes.
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See :class:`~torch.nn.Conv1d` for details and output shape.
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Args:
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input: input tensor of shape :math:`minibatch \times in\_channels \times iW`
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weight: filters of shape :math:`out\_channels \times \frac{in\_channels}{groups} \times kW`
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bias: optional bias of shape (:math:`out\_channels`). Default: ``None``
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stride: the stride of the convolving kernel. Can be a single number or
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a one-element tuple `(sW,)`. Default: 1
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a one-element tuple `(padW,)`. Default: 0
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dilation: the spacing between kernel elements. Can be a single number or
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a one-element tuple `(dW,)`. Default: 1
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groups: split input into groups, :math:`in\_channels` should be divisible by
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the number of groups. Default: 1
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Examples::
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>>> filters = torch.randn(33, 16, 3)
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>>> inputs = torch.randn(20, 16, 50)
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>>> F.conv1d(inputs, filters)
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""")
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conv2d = _add_docstr(torch.conv2d, r"""
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conv2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1) -> Tensor
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Applies a 2D convolution over an input image composed of several input
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planes.
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See :class:`~torch.nn.Conv2d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iH \times iW`)
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weight: filters of shape (:math:`out\_channels \times \frac{in\_channels}{groups} \times kH \times kW`)
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bias: optional bias tensor of shape (:math:`out\_channels`). Default: ``None``
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stride: the stride of the convolving kernel. Can be a single number or a
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tuple `(sH, sW)`. Default: 1
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a tuple `(padH, padW)`. Default: 0
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dilation: the spacing between kernel elements. Can be a single number or
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a tuple `(dH, dW)`. Default: 1
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groups: split input into groups, :math:`in\_channels` should be divisible by the
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number of groups. Default: 1
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Examples::
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>>> # With square kernels and equal stride
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>>> filters = torch.randn(8,4,3,3)
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>>> inputs = torch.randn(1,4,5,5)
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>>> F.conv2d(inputs, filters, padding=1)
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""")
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conv3d = _add_docstr(torch.conv3d, r"""
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conv3d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1) -> Tensor
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Applies a 3D convolution over an input image composed of several input
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planes.
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See :class:`~torch.nn.Conv3d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iT \times iH \times iW`)
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weight: filters of shape (:math:`out\_channels \times \frac{in\_channels}{groups} \times kT \times kH \times kW`)
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bias: optional bias tensor of shape (:math:`out\_channels`). Default: None
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stride: the stride of the convolving kernel. Can be a single number or a
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tuple `(sT, sH, sW)`. Default: 1
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a tuple `(padT, padH, padW)`. Default: 0
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dilation: the spacing between kernel elements. Can be a single number or
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a tuple `(dT, dH, dW)`. Default: 1
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groups: split input into groups, :math:`in\_channels` should be divisible by
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the number of groups. Default: 1
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Examples::
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>>> filters = torch.randn(33, 16, 3, 3, 3)
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>>> inputs = torch.randn(20, 16, 50, 10, 20)
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>>> F.conv3d(inputs, filters)
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""")
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conv_transpose1d = _add_docstr(torch.conv_transpose1d, r"""
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conv_transpose1d(input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1) -> Tensor
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Applies a 1D transposed convolution operator over an input signal
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composed of several input planes, sometimes also called "deconvolution".
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See :class:`~torch.nn.ConvTranspose1d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iW`)
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weight: filters of shape (:math:`in\_channels \times \frac{out\_channels}{groups} \times kW`)
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bias: optional bias of shape (:math:`out\_channels`). Default: None
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stride: the stride of the convolving kernel. Can be a single number or a
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tuple ``(sW,)``. Default: 1
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padding: ``kernel_size - 1 - padding`` zero-padding will be added to both
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sides of each dimension in the input. Can be a single number or a tuple
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``(padW,)``. Default: 0
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output_padding: additional size added to one side of each dimension in the
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output shape. Can be a single number or a tuple ``(out_padW)``. Default: 0
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groups: split input into groups, :math:`in\_channels` should be divisible by the
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number of groups. Default: 1
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dilation: the spacing between kernel elements. Can be a single number or
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a tuple ``(dW,)``. Default: 1
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Examples::
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>>> inputs = torch.randn(20, 16, 50)
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>>> weights = torch.randn(16, 33, 5)
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>>> F.conv_transpose1d(inputs, weights)
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""")
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conv_transpose2d = _add_docstr(torch.conv_transpose2d, r"""
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conv_transpose2d(input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1) -> Tensor
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Applies a 2D transposed convolution operator over an input image
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composed of several input planes, sometimes also called "deconvolution".
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See :class:`~torch.nn.ConvTranspose2d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iH \times iW`)
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weight: filters of shape (:math:`in\_channels \times \frac{out\_channels}{groups} \times kH \times kW`)
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bias: optional bias of shape (:math:`out\_channels`). Default: None
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stride: the stride of the convolving kernel. Can be a single number or a
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tuple ``(sH, sW)``. Default: 1
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padding: ``kernel_size - 1 - padding`` zero-padding will be added to both
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sides of each dimension in the input. Can be a single number or a tuple
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``(padH, padW)``. Default: 0
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output_padding: additional size added to one side of each dimension in the
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output shape. Can be a single number or a tuple ``(out_padH, out_padW)``.
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Default: 0
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groups: split input into groups, :math:`in\_channels` should be divisible by the
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number of groups. Default: 1
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dilation: the spacing between kernel elements. Can be a single number or
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a tuple ``(dH, dW)``. Default: 1
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Examples::
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>>> # With square kernels and equal stride
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>>> inputs = torch.randn(1, 4, 5, 5)
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>>> weights = torch.randn(4, 8, 3, 3)
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>>> F.conv_transpose2d(inputs, weights, padding=1)
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""")
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conv_transpose3d = _add_docstr(torch.conv_transpose3d, r"""
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conv_transpose3d(input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1) -> Tensor
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Applies a 3D transposed convolution operator over an input image
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composed of several input planes, sometimes also called "deconvolution"
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See :class:`~torch.nn.ConvTranspose3d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iT \times iH \times iW`)
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weight: filters of shape (:math:`in\_channels \times \frac{out\_channels}{groups} \times kT \times kH \times kW`)
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bias: optional bias of shape (:math:`out\_channels`). Default: None
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stride: the stride of the convolving kernel. Can be a single number or a
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tuple ``(sT, sH, sW)``. Default: 1
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padding: ``kernel_size - 1 - padding`` zero-padding will be added to both
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sides of each dimension in the input. Can be a single number or a tuple
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``(padT, padH, padW)``. Default: 0
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output_padding: additional size added to one side of each dimension in the
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output shape. Can be a single number or a tuple
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``(out_padT, out_padH, out_padW)``. Default: 0
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groups: split input into groups, :math:`in\_channels` should be divisible by the
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number of groups. Default: 1
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dilation: the spacing between kernel elements. Can be a single number or
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a tuple `(dT, dH, dW)`. Default: 1
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Examples::
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>>> inputs = torch.randn(20, 16, 50, 10, 20)
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>>> weights = torch.randn(16, 33, 3, 3, 3)
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>>> F.conv_transpose3d(inputs, weights)
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""")
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def conv_tbc(input, weight, bias, pad=0):
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r"""Applies a 1-dimensional sequence convolution over an input sequence.
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Input and output dimensions are (Time, Batch, Channels) - hence TBC.
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Args:
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input: input tensor of shape (:math:`\text{sequence length} \times batch \times in\_channels`)
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weight: filter of shape (:math:`\text{kernel width} \times in\_channels \times out\_channels`)
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bias: bias of shape (:math:`out\_channels`)
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pad: number of timesteps to pad
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"""
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return input.conv_tbc(weight, bias, pad)
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# Pooling
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avg_pool1d = _add_docstr(torch.avg_pool1d, r"""
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avg_pool1d(input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True) -> Tensor
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Applies a 1D average pooling over an input signal composed of several
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input planes.
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See :class:`~torch.nn.AvgPool1d` for details and output shape.
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Args:
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input: input tensor of shape (:math:`minibatch \times in\_channels \times iW`)
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kernel_size: the size of the window. Can be a single number or a
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tuple `(kW,)`
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stride: the stride of the window. Can be a single number or a tuple
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`(sW,)`. Default: :attr:`kernel_size`
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a tuple `(padW,)`. Default: 0
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ceil_mode: when True, will use `ceil` instead of `floor` to compute the
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output shape. Default: ``False``
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count_include_pad: when True, will include the zero-padding in the
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averaging calculation. Default: ``True``
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Example::
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>>> # pool of square window of size=3, stride=2
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>>> input = torch.tensor([[[1,2,3,4,5,6,7]]])
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>>> F.avg_pool1d(input, kernel_size=3, stride=2)
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tensor([[[ 2., 4., 6.]]])
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""")
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avg_pool2d = _add_docstr(torch._C._nn.avg_pool2d, r"""
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avg_pool2d(input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True) -> Tensor
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Applies 2D average-pooling operation in :math:`kH \times kW` regions by step size
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:math:`sH \times sW` steps. The number of output features is equal to the number of
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input planes.
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See :class:`~torch.nn.AvgPool2d` for details and output shape.
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Args:
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input: input tensor (:math:`minibatch \times in\_channels \times iH \times iW`)
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kernel_size: size of the pooling region. Can be a single number or a
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tuple (:math:`kH \times kW`)
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stride: stride of the pooling operation. Can be a single number or a
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tuple `(sH, sW)`. Default: :attr:`kernel_size`
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a tuple `(padH, padW)`. Default: 0
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ceil_mode: when True, will use `ceil` instead of `floor` in the formula
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to compute the output shape. Default: ``False``
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count_include_pad: when True, will include the zero-padding in the
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averaging calculation. Default: ``True``
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""")
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avg_pool3d = _add_docstr(torch._C._nn.avg_pool3d, r"""
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avg_pool3d(input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True) -> Tensor
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Applies 3D average-pooling operation in :math:`kT \times kH \times kW` regions by step
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size :math:`sT \times sH \times sW` steps. The number of output features is equal to
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:math:`\lfloor\frac{\text{input planes}}{sT}\rfloor`.
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See :class:`~torch.nn.AvgPool3d` for details and output shape.
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Args:
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input: input tensor (:math:`minibatch \times in\_channels \times iT \times iH \times iW`)
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kernel_size: size of the pooling region. Can be a single number or a
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tuple (:math:`kT \times kH \times kW`)
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stride: stride of the pooling operation. Can be a single number or a
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tuple `(sT, sH, sW)`. Default: :attr:`kernel_size`
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padding: implicit zero paddings on both sides of the input. Can be a
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single number or a tuple `(padT, padH, padW)`, Default: 0
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ceil_mode: when True, will use `ceil` instead of `floor` in the formula
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to compute the output shape
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count_include_pad: when True, will include the zero-padding in the
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averaging calculation
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""")
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def fractional_max_pool2d(input, kernel_size, output_size=None,
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output_ratio=None, return_indices=False,
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_random_samples=None):
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r"""Applies 2D fractional max pooling over an input signal composed of several input planes.
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Fractional MaxPooling is described in detail in the paper `Fractional MaxPooling`_ by Ben Graham
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The max-pooling operation is applied in :math:`kH \times kW` regions by a stochastic
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step size determined by the target output size.
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The number of output features is equal to the number of input planes.
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Args:
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kernel_size: the size of the window to take a max over.
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Can be a single number :math:`k` (for a square kernel of :math:`k \times k`)
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or a tuple (:math:`kH \times kW`)
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output_size: the target output size of the image of the form :math:`oH \times oW`.
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Can be a tuple `(oH, oW)` or a single number :math:`oH` for a square image :math:`oH \times oH`
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output_ratio: If one wants to have an output size as a ratio of the input size, this option can be given.
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This has to be a number or tuple in the range (0, 1)
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return_indices: if ``True``, will return the indices along with the outputs.
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Useful to pass to `max_unpool2d`.
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Examples::
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>>> input = torch.randn(20, 16, 50, 32)
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>>> # pool of square window of size=3, and target output size 13x12
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>>> F.fractional_max_pool2d(input, 3, output_size=(13, 12))
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>>> # pool of square window and target output size being half of input image size
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>>> F.fractional_max_pool2d(input, 3, output_ratio=(0.5, 0.5))
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.. _Fractional MaxPooling:
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http://arxiv.org/abs/1412.6071
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"""
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if output_size is None and output_ratio is None:
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raise ValueError("fractional_max_pool2d requires specifying either "
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"an output_size, or a output_ratio")
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if output_size is None:
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output_ratio = _pair(output_ratio)
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output_size = (int(input.size(2) * output_ratio[0]),
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int(input.size(3) * output_ratio[1]))
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if _random_samples is None:
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_random_samples = input.new(input.size(0), input.size(1), 2).uniform_()
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ret = torch._C._nn.fractional_max_pool2d(input, kernel_size, output_size, _random_samples)
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return ret if return_indices else ret[0]
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def max_pool1d(input, kernel_size, stride=None, padding=0, dilation=1,
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ceil_mode=False, return_indices=False):
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r"""Applies a 1D max pooling over an input signal composed of several input
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planes.
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See :class:`~torch.nn.MaxPool1d` for details.
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"""
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ret = torch.max_pool1d(input, kernel_size, stride, padding, dilation, ceil_mode)
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return ret if return_indices else ret[0]
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def max_pool2d(input, kernel_size, stride=None, padding=0, dilation=1,
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ceil_mode=False, return_indices=False):
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r"""Applies a 2D max pooling over an input signal composed of several input
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planes.
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See :class:`~torch.nn.MaxPool2d` for details.
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"""
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ret = torch._C._nn.max_pool2d(input, kernel_size, stride, padding, dilation, ceil_mode)
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return ret if return_indices else ret[0]
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def max_pool3d(input, kernel_size, stride=None, padding=0, dilation=1,
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ceil_mode=False, return_indices=False):
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r"""Applies a 3D max pooling over an input signal composed of several input
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planes.
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See :class:`~torch.nn.MaxPool3d` for details.
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"""
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ret = torch._C._nn.max_pool3d(input, kernel_size, stride, padding, dilation, ceil_mode)
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return ret if return_indices else ret[0]
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def _unpool_output_size(input, kernel_size, stride, padding, output_size):
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input_size = input.size()
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default_size = []
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for d in range(len(kernel_size)):
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default_size.append((input_size[d + 2] - 1) * stride[d] +
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kernel_size[d] - 2 * padding[d])
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if output_size is None:
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return default_size
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output_size = list(output_size)
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if len(output_size) == len(kernel_size) + 2:
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output_size = output_size[2:]
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if len(output_size) != len(kernel_size):
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raise ValueError("output_size should be a sequence containing "
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"{} or {} elements, but it has a length of '{}'"
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.format(len(kernel_size), len(kernel_size) + 2,
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len(output_size)))
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for d in range(len(kernel_size)):
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min_size = default_size[d] - stride[d]
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max_size = default_size[d] + stride[d]
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if not (min_size < output_size[d] < max_size):
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raise ValueError(
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'invalid output_size "{}" (dim {} must be between {} and {})'
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.format(output_size, d, min_size, max_size))
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return output_size
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def max_unpool1d(input, indices, kernel_size, stride=None, padding=0,
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output_size=None):
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r"""Computes a partial inverse of :class:`MaxPool1d`.
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See :class:`~torch.nn.MaxUnpool1d` for details.
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"""
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kernel_size = _single(kernel_size)
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stride = _single(stride or kernel_size)
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padding = _single(padding)
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output_size = _unpool_output_size(input, kernel_size, stride, padding,
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output_size)
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return torch._C._nn.max_unpool2d(input.unsqueeze(3), indices.unsqueeze(3), output_size + [1]).squeeze(3)
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def max_unpool2d(input, indices, kernel_size, stride=None, padding=0,
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output_size=None):
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r"""Computes a partial inverse of :class:`MaxPool2d`.
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|
|
See :class:`~torch.nn.MaxUnpool2d` for details.
|
|
"""
|
|
kernel_size = _pair(kernel_size)
|
|
stride = _pair(stride or kernel_size)
|
|
padding = _pair(padding)
|
|
output_size = _unpool_output_size(input, kernel_size, stride, padding,
|
|
output_size)
|
|
return torch._C._nn.max_unpool2d(input, indices, output_size)
|
|
|
|
|
|
def max_unpool3d(input, indices, kernel_size, stride=None, padding=0,
|
|
output_size=None):
|
|
r"""Computes a partial inverse of :class:`MaxPool3d`.
|
|
|
|
See :class:`~torch.nn.MaxUnpool3d` for details.
|
|
"""
|
|
kernel_size = _triple(kernel_size)
|
|
stride = _triple(stride or kernel_size)
|
|
padding = _triple(padding)
|
|
output_size = _unpool_output_size(input, kernel_size, stride, padding,
|
|
output_size)
|
|
return torch._C._nn.max_unpool3d(input, indices, output_size, stride, padding)
|
|
|
|
|
|
def lp_pool2d(input, norm_type, kernel_size, stride=None, ceil_mode=False):
|
|
r"""Applies a 2D power-average pooling over an input signal composed of
|
|
several input planes. If the sum of all inputs to the power of `p` is
|
|
zero, the gradient is set to zero as well.
|
|
|
|
See :class:`~torch.nn.LPPool2d` for details.
|
|
"""
|
|
kw, kh = utils._pair(kernel_size)
|
|
out = avg_pool2d(input.pow(norm_type), kernel_size, stride, 0, ceil_mode)
|
|
return (torch.sign(out) * relu(torch.abs(out))).mul(kw * kh).pow(1. / norm_type)
|
|
|
|
|
|
def lp_pool1d(input, norm_type, kernel_size, stride=None, ceil_mode=False):
|
|
r"""Applies a 1D power-average pooling over an input signal composed of
|
|
several input planes. If the sum of all inputs to the power of `p` is
|
|
zero, the gradient is set to zero as well.
|
|
|
|
See :class:`~torch.nn.LPPool1d` for details.
|
|
"""
|
|
out = avg_pool1d(input.pow(norm_type), kernel_size, stride, 0, ceil_mode)
|
|
return (torch.sign(out) * relu(torch.abs(out))).mul(kernel_size).pow(1. / norm_type)
|
|
|
|
|
|
def adaptive_max_pool1d(input, output_size, return_indices=False):
|
|
r"""Applies a 1D adaptive max pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveMaxPool1d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer)
|
|
return_indices: whether to return pooling indices. Default: ``False``
|
|
"""
|
|
ret = torch.adaptive_max_pool1d(input, output_size)
|
|
return ret if return_indices else ret[0]
|
|
|
|
|
|
def adaptive_max_pool2d(input, output_size, return_indices=False):
|
|
r"""Applies a 2D adaptive max pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveMaxPool2d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer or
|
|
double-integer tuple)
|
|
return_indices: whether to return pooling indices. Default: ``False``
|
|
"""
|
|
output_size = _list_with_default(output_size, input.size())
|
|
ret = torch._C._nn.adaptive_max_pool2d(input, output_size)
|
|
return ret if return_indices else ret[0]
|
|
|
|
|
|
def adaptive_max_pool3d(input, output_size, return_indices=False):
|
|
r"""Applies a 3D adaptive max pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveMaxPool3d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer or
|
|
triple-integer tuple)
|
|
return_indices: whether to return pooling indices. Default: ``False``
|
|
"""
|
|
output_size = _list_with_default(output_size, input.size())
|
|
ret = torch._C._nn.adaptive_max_pool3d(input, output_size)
|
|
return ret if return_indices else ret[0]
|
|
|
|
|
|
adaptive_avg_pool1d = _add_docstr(torch.adaptive_avg_pool1d, r"""
|
|
adaptive_avg_pool1d(input, output_size) -> Tensor
|
|
|
|
Applies a 1D adaptive average pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveAvgPool1d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer)
|
|
""")
|
|
|
|
|
|
def adaptive_avg_pool2d(input, output_size):
|
|
r"""
|
|
Applies a 2D adaptive average pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveAvgPool2d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer or
|
|
double-integer tuple)
|
|
"""
|
|
output_size = _list_with_default(output_size, input.size())
|
|
return torch._C._nn.adaptive_avg_pool2d(input, output_size)
|
|
|
|
|
|
def adaptive_avg_pool3d(input, output_size):
|
|
r"""
|
|
Applies a 3D adaptive average pooling over an input signal composed of
|
|
several input planes.
|
|
|
|
See :class:`~torch.nn.AdaptiveAvgPool3d` for details and output shape.
|
|
|
|
Args:
|
|
output_size: the target output size (single integer or
|
|
triple-integer tuple)
|
|
"""
|
|
output_size = _list_with_default(output_size, input.size())
|
|
return torch._C._nn.adaptive_avg_pool3d(input, output_size)
|
|
|
|
|
|
# Activation functions
|
|
def dropout(input, p=0.5, training=False, inplace=False):
|
|
return _functions.dropout.Dropout.apply(input, p, training, inplace)
|
|
|
|
|
|
def alpha_dropout(input, p=0.5, training=False):
|
|
r"""Applies alpha dropout to the input.
|
|
|
|
See :class:`~torch.nn.AlphaDropout` for details.
|
|
|
|
Args:
|
|
p (float, optional): the drop probability. Default: 0.5
|
|
training (bool, optional): switch between training and evaluation mode. Default: ``False``
|
|
"""
|
|
if p < 0 or p > 1:
|
|
raise ValueError("dropout probability has to be between 0 and 1, "
|
|
"but got {}".format(p))
|
|
|
|
if p == 0 or not training:
|
|
return input
|
|
|
|
alpha = -1.7580993408473766
|
|
keep_prob = 1 - p
|
|
# TODO avoid casting to byte after resize
|
|
noise = input.data.new().resize_(input.size())
|
|
noise.bernoulli_(p)
|
|
noise = noise.byte()
|
|
|
|
output = input.masked_fill(noise, alpha)
|
|
|
|
a = (keep_prob + alpha ** 2 * keep_prob * (1 - keep_prob)) ** (-0.5)
|
|
b = -a * alpha * (1 - keep_prob)
|
|
|
|
return output.mul_(a).add_(b)
|
|
|
|
|
|
def dropout2d(input, p=0.5, training=False, inplace=False):
|
|
return _functions.dropout.FeatureDropout.apply(input, p, training, inplace)
|
|
|
|
|
|
def dropout3d(input, p=0.5, training=False, inplace=False):
|
|
return _functions.dropout.FeatureDropout.apply(input, p, training, inplace)
|
|
|
|
|
|
def threshold(input, threshold, value, inplace=False):
|
|
r"""Thresholds each element of the input Tensor.
|
|
|
|
See :class:`~torch.nn.Threshold` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch._C._nn.threshold_(input, threshold, value)
|
|
return torch._C._nn.threshold(input, threshold, value)
|
|
|
|
|
|
threshold_ = _add_docstr(torch._C._nn.threshold_, r"""
|
|
threshold_(input, threshold, value) -> Tensor
|
|
|
|
In-place version of :func:`~threshold`.
|
|
""")
|
|
|
|
|
|
def relu(input, inplace=False):
|
|
r"""relu(input, inplace=False) -> Tensor
|
|
|
|
Applies the rectified linear unit function element-wise. See
|
|
:class:`~torch.nn.ReLU` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch.relu_(input)
|
|
return torch.relu(input)
|
|
|
|
|
|
relu_ = _add_docstr(torch.relu_, r"""
|
|
relu_(input) -> Tensor
|
|
|
|
In-place version of :func:`~relu`.
|
|
""")
|
|
|
|
|
|
def glu(input, dim=-1):
|
|
r"""
|
|
glu(input, dim=-1) -> Tensor
|
|
|
|
The gated linear unit. Computes:
|
|
|
|
.. math ::
|
|
|
|
H = A \times \sigma(B)
|
|
|
|
where `input` is split in half along `dim` to form `A` and `B`.
|
|
|
|
See `Language Modeling with Gated Convolutional Networks <https://arxiv.org/abs/1612.08083>`_.
|
|
|
|
Args:
|
|
input (Tensor): input tensor
|
|
dim (int): dimension on which to split the input
|
|
"""
|
|
if input.dim() == 0:
|
|
raise RuntimeError("glu does not suppport scalars because halving size must be even")
|
|
return torch._C._nn.glu(input, dim)
|
|
|
|
|
|
def hardtanh(input, min_val=-1., max_val=1., inplace=False):
|
|
r"""
|
|
hardtanh(input, min_val=-1., max_val=1., inplace=False) -> Tensor
|
|
|
|
Applies the HardTanh function element-wise. See :class:`~torch.nn.Hardtanh` for more
|
|
details.
|
|
"""
|
|
if inplace:
|
|
return torch._C._nn.hardtanh_(input, min_val, max_val)
|
|
return torch._C._nn.hardtanh(input, min_val, max_val)
|
|
|
|
|
|
hardtanh_ = _add_docstr(torch._C._nn.hardtanh_, r"""
|
|
hardtanh_(input, min_val=-1., max_val=1.) -> Tensor
|
|
|
|
In-place version of :func:`~hardtanh`.
|
|
""")
|
|
|
|
|
|
def relu6(input, inplace=False):
|
|
r"""relu6(input, inplace=False) -> Tensor
|
|
|
|
Applies the element-wise function :math:`\text{ReLU6}(x) = \min(\max(0,x), 6)`.
|
|
|
|
See :class:`~torch.nn.ReLU6` for more details.
|
|
"""
|
|
return hardtanh(input, 0, 6, inplace)
|
|
|
|
|
|
def elu(input, alpha=1., inplace=False):
|
|
r"""Applies element-wise,
|
|
:math:`\text{ELU}(x) = \max(0,x) + \min(0, \alpha * (\exp(x) - 1))`.
|
|
|
|
See :class:`~torch.nn.ELU` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch._C._nn.elu_(input, alpha)
|
|
return torch._C._nn.elu(input, alpha)
|
|
|
|
|
|
elu_ = _add_docstr(torch._C._nn.elu_, r"""
|
|
elu_(input, alpha=1.) -> Tensor
|
|
|
|
In-place version of :func:`~elu`.
|
|
""")
|
|
|
|
|
|
def selu(input, inplace=False):
|
|
r"""selu(input, inplace=False) -> Tensor
|
|
|
|
Applies element-wise,
|
|
:math:`\text{SELU}(x) = scale * (\max(0,x) + \min(0, \alpha * (\exp(x) - 1)))`,
|
|
with :math:`\alpha=1.6732632423543772848170429916717` and
|
|
:math:`scale=1.0507009873554804934193349852946`.
|
|
|
|
See :class:`~torch.nn.SELU` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch.selu_(input)
|
|
return torch.selu(input)
|
|
|
|
selu_ = _add_docstr(torch.selu_, r"""
|
|
selu_(input) -> Tensor
|
|
|
|
In-place version of :func:`~selu`.
|
|
""")
|
|
|
|
|
|
def leaky_relu(input, negative_slope=0.01, inplace=False):
|
|
r"""
|
|
leaky_relu(input, negative_slope=0.01, inplace=False) -> Tensor
|
|
|
|
Applies element-wise,
|
|
:math:`\text{LeakyReLU}(x) = \max(0, x) + \text{negative_slope} * \min(0, x)`
|
|
|
|
See :class:`~torch.nn.LeakyReLU` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch._C._nn.leaky_relu_(input, negative_slope)
|
|
return torch._C._nn.leaky_relu(input, negative_slope)
|
|
|
|
|
|
leaky_relu_ = _add_docstr(torch._C._nn.leaky_relu_, r"""
|
|
leaky_relu_(input, negative_slope=0.01) -> Tensor
|
|
|
|
In-place version of :func:`~leaky_relu`.
|
|
""")
|
|
|
|
|
|
prelu = _add_docstr(torch._C._nn.prelu, r"""
|
|
prelu(input, weight) -> Tensor
|
|
|
|
Applies element-wise the function
|
|
:math:`\text{PReLU}(x) = \max(0,x) + \text{weight} * \min(0,x)` where weight is a
|
|
learnable parameter.
|
|
|
|
See :class:`~torch.nn.PReLU` for more details.
|
|
""")
|
|
|
|
|
|
def rrelu(input, lower=1. / 8, upper=1. / 3, training=False, inplace=False):
|
|
r"""rrelu(input, lower=1./8, upper=1./3, training=False, inplace=False) -> Tensor
|
|
|
|
Randomized leaky ReLU.
|
|
|
|
See :class:`~torch.nn.RReLU` for more details.
|
|
"""
|
|
if inplace:
|
|
return torch.rrelu_(input, lower, upper, training)
|
|
return torch.rrelu(input, lower, upper, training)
|
|
|
|
|
|
rrelu_ = _add_docstr(torch.rrelu_, r"""
|
|
rrelu_(input, lower=1./8, upper=1./3, training=False) -> Tensor
|
|
|
|
In-place version of :func:`~rrelu`.
|
|
""")
|
|
|
|
logsigmoid = _add_docstr(torch._C._nn.log_sigmoid, r"""
|
|
logsigmoid(input) -> Tensor
|
|
|
|
Applies element-wise :math:`\text{LogSigmoid}(x) = \log \left(\frac{1}{1 + \exp(-x_i)}\right)`
|
|
|
|
See :class:`~torch.nn.LogSigmoid` for more details.
|
|
""")
|
|
|
|
|
|
def hardshrink(input, lambd=0.5):
|
|
r"""
|
|
hardshrink(input, lambd=0.5) -> Tensor
|
|
|
|
Applies the hard shrinkage function element-wise
|
|
|
|
See :class:`~torch.nn.Hardshrink` for more details.
|
|
"""
|
|
return torch.hardshrink(input, lambd)
|
|
|
|
|
|
def tanhshrink(input):
|
|
r"""tanhshrink(input) -> Tensor
|
|
|
|
Applies element-wise, :math:`\text{Tanhshrink}(x) = x - \text{Tanh}(x)`
|
|
|
|
See :class:`~torch.nn.Tanhshrink` for more details.
|
|
"""
|
|
return input - input.tanh()
|
|
|
|
|
|
def softsign(input):
|
|
r"""softsign(input) -> Tensor
|
|
|
|
Applies element-wise, the function :math:`\text{SoftSign}(x) = \frac{x}{1 + |x|}`
|
|
|
|
See :class:`~torch.nn.Softsign` for more details.
|
|
"""
|
|
return input / (input.abs() + 1)
|
|
|
|
|
|
softplus = _add_docstr(torch._C._nn.softplus, r"""
|
|
softplus(input, beta=1, threshold=20) -> Tensor
|
|
""")
|
|
|
|
|
|
def _get_softmax_dim(name, ndim, stacklevel):
|
|
warnings.warn("Implicit dimension choice for " + name + " has been deprecated. "
|
|
"Change the call to include dim=X as an argument.", stacklevel=stacklevel)
|
|
if ndim == 0 or ndim == 1 or ndim == 3:
|
|
return 0
|
|
else:
|
|
return 1
|
|
|
|
|
|
def softmin(input, dim=None, _stacklevel=3):
|
|
r"""Applies a softmin function.
|
|
|
|
Note that :math:`\text{Softmin}(x) = \text{Softmax}(-x)`. See softmax definition for mathematical formula.
|
|
|
|
See :class:`~torch.nn.Softmin` for more details.
|
|
|
|
Arguments:
|
|
input (Tensor): input
|
|
dim (int): A dimension along which softmin will be computed (so every slice
|
|
along dim will sum to 1).
|
|
"""
|
|
if dim is None:
|
|
dim = _get_softmax_dim('softmin', input.dim(), _stacklevel)
|
|
return -input.softmax(dim)
|
|
|
|
|
|
def softmax(input, dim=None, _stacklevel=3):
|
|
r"""Applies a softmax function.
|
|
|
|
Softmax is defined as:
|
|
|
|
:math:`\text{Softmax}(x_{i}) = \frac{exp(x_i)}{\sum_j exp(x_j)}`
|
|
|
|
It is applied to all slices along dim, and will re-scale them so that the elements
|
|
lie in the range `(0, 1)` and sum to 1.
|
|
|
|
See :class:`~torch.nn.Softmax` for more details.
|
|
|
|
Arguments:
|
|
input (Tensor): input
|
|
dim (int): A dimension along which softmax will be computed.
|
|
|
|
.. note::
|
|
This function doesn't work directly with NLLLoss,
|
|
which expects the Log to be computed between the Softmax and itself.
|
|
Use log_softmax instead (it's faster and has better numerical properties).
|
|
|
|
"""
|
|
if dim is None:
|
|
dim = _get_softmax_dim('softmax', input.dim(), _stacklevel)
|
|
return input.softmax(dim)
|
|
|
|
|
|
def _sample_gumbel(shape, eps=1e-10, out=None):
|
|
"""
|
|
Sample from Gumbel(0, 1)
|
|
|
|
based on
|
|
https://github.com/ericjang/gumbel-softmax/blob/3c8584924603869e90ca74ac20a6a03d99a91ef9/Categorical%20VAE.ipynb ,
|
|
(MIT license)
|
|
"""
|
|
U = out.resize_(shape).uniform_() if out is not None else torch.rand(shape)
|
|
return - torch.log(eps - torch.log(U + eps))
|
|
|
|
|
|
def _gumbel_softmax_sample(logits, tau=1, eps=1e-10):
|
|
"""
|
|
Draw a sample from the Gumbel-Softmax distribution
|
|
|
|
based on
|
|
https://github.com/ericjang/gumbel-softmax/blob/3c8584924603869e90ca74ac20a6a03d99a91ef9/Categorical%20VAE.ipynb
|
|
(MIT license)
|
|
"""
|
|
dims = logits.dim()
|
|
gumbel_noise = _sample_gumbel(logits.size(), eps=eps, out=logits.data.new())
|
|
y = logits + gumbel_noise
|
|
return softmax(y / tau, dims - 1)
|
|
|
|
|
|
def gumbel_softmax(logits, tau=1, hard=False, eps=1e-10):
|
|
r"""
|
|
Sample from the Gumbel-Softmax distribution and optionally discretize.
|
|
|
|
Args:
|
|
logits: `[batch_size, num_features]` unnormalized log probabilities
|
|
tau: non-negative scalar temperature
|
|
hard: if ``True``, the returned samples will be discretized as one-hot vectors,
|
|
but will be differentiated as if it is the soft sample in autograd
|
|
|
|
Returns:
|
|
Sampled tensor of shape ``batch_size x num_features`` from the Gumbel-Softmax distribution.
|
|
If ``hard=True``, the returned samples will be one-hot, otherwise they will
|
|
be probability distributions that sum to 1 across features
|
|
|
|
Constraints:
|
|
|
|
- Currently only work on 2D input :attr:`logits` tensor of shape ``batch_size x num_features``
|
|
|
|
Based on
|
|
https://github.com/ericjang/gumbel-softmax/blob/3c8584924603869e90ca74ac20a6a03d99a91ef9/Categorical%20VAE.ipynb ,
|
|
(MIT license)
|
|
"""
|
|
shape = logits.size()
|
|
assert len(shape) == 2
|
|
y_soft = _gumbel_softmax_sample(logits, tau=tau, eps=eps)
|
|
if hard:
|
|
_, k = y_soft.max(-1)
|
|
# this bit is based on
|
|
# https://discuss.pytorch.org/t/stop-gradients-for-st-gumbel-softmax/530/5
|
|
y_hard = logits.new_zeros(*shape).scatter_(-1, k.view(-1, 1), 1.0)
|
|
# this cool bit of code achieves two things:
|
|
# - makes the output value exactly one-hot (since we add then
|
|
# subtract y_soft value)
|
|
# - makes the gradient equal to y_soft gradient (since we strip
|
|
# all other gradients)
|
|
y = y_hard - y_soft.detach() + y_soft
|
|
else:
|
|
y = y_soft
|
|
return y
|
|
|
|
|
|
def log_softmax(input, dim=None, _stacklevel=3):
|
|
r"""Applies a softmax followed by a logarithm.
|
|
|
|
While mathematically equivalent to log(softmax(x)), doing these two
|
|
operations separately is slower, and numerically unstable. This function
|
|
uses an alternative formulation to compute the output and gradient correctly.
|
|
|
|
See :class:`~torch.nn.LogSoftmax` for more details.
|
|
|
|
Arguments:
|
|
input (Tensor): input
|
|
dim (int): A dimension along which log_softmax will be computed.
|
|
"""
|
|
if dim is None:
|
|
dim = _get_softmax_dim('log_softmax', input.dim(), _stacklevel)
|
|
return input.log_softmax(dim)
|
|
|
|
|
|
softshrink = _add_docstr(torch._C._nn.softshrink, r"""
|
|
softshrink(input, lambd=0.5) -> Tensor
|
|
|
|
Applies the soft shrinkage function elementwise
|
|
|
|
See :class:`~torch.nn.Softshrink` for more details.
|
|
""")
|
|
|
|
|
|
def tanh(input):
|
|
r"""tanh(input) -> Tensor
|
|
|
|
Applies element-wise,
|
|
:math:`\text{Tanh}(x) = \tanh(x) = \frac{\exp(x) - \exp(-x)}{\exp(x) + \exp(-x)}`
|
|
|
|
See :class:`~torch.nn.Tanh` for more details.
|
|
"""
|
|
return input.tanh()
|
|
|
|
|
|
def sigmoid(input):
|
|
r"""sigmoid(input) -> Tensor
|
|
|
|
Applies the element-wise function :math:`\text{Sigmoid}(x) = \frac{1}{1 + \exp(-x)}`
|
|
|
|
See :class:`~torch.nn.Sigmoid` for more details.
|
|
"""
|
|
return input.sigmoid()
|
|
|
|
|
|
# etc.
|
|
|
|
def linear(input, weight, bias=None):
|
|
r"""
|
|
Applies a linear transformation to the incoming data: :math:`y = xA^T + b`.
|
|
|
|
Shape:
|
|
|
|
- Input: :math:`(N, *, in\_features)` where `*` means any number of
|
|
additional dimensions
|
|
- Weight: :math:`(out\_features, in\_features)`
|
|
- Bias: :math:`(out\_features)`
|
|
- Output: :math:`(N, *, out\_features)`
|
|
"""
|
|
if input.dim() == 2 and bias is not None:
|
|
# fused op is marginally faster
|
|
return torch.addmm(bias, input, weight.t())
|
|
|
|
output = input.matmul(weight.t())
|
|
if bias is not None:
|
|
output += bias
|
|
return output
|
|
|
|
|
|
def bilinear(input1, input2, weight, bias=None):
|
|
return torch.bilinear(input1, input2, weight, bias)
|
|
|
|
|
|
def embedding(input, weight, padding_idx=None, max_norm=None, norm_type=2,
|
|
scale_grad_by_freq=False, sparse=False):
|
|
r"""A simple lookup table that looks up embeddings in a fixed dictionary and size.
|
|
|
|
This module is often used to retrieve word embeddings using indices.
|
|
The input to the module is a list of indices, and the embedding matrix,
|
|
and the output is the corresponding word embeddings.
|
|
|
|
See :class:`torch.nn.Embedding` for more details.
|
|
|
|
Args:
|
|
input (LongTensor): Tensor containing indices into the embedding matrix
|
|
weight (Tensor): The embedding matrix
|
|
Number of rows should correspond to the maximum possible index + 1,
|
|
number of columns is the embedding size
|
|
padding_idx (int, optional): If given, pads the output with the embedding vector at :attr:`padding_idx`
|
|
(initialized to zeros) whenever it encounters the index.
|
|
max_norm (float, optional): If given, will renormalize the embedding vectors to have a norm lesser than
|
|
this before extracting. Note: this will modify :attr:`weight` in-place.
|
|
norm_type (float, optional): The p of the p-norm to compute for the max_norm option. Default ``2``.
|
|
scale_grad_by_freq (boolean, optional): if given, this will scale gradients by the inverse of frequency of
|
|
the words in the mini-batch. Default ``False``.
|
|
sparse (bool, optional): if ``True``, gradient w.r.t. :attr:`weight` will be a sparse tensor. See Notes under
|
|
:class:`torch.nn.Embedding` for more details regarding sparse gradients.
|
|
|
|
Shape:
|
|
- Input: LongTensor of arbitrary shape containing the indices to extract
|
|
- Weight: Embedding matrix of floating point type with shape `(V, embedding_dim)`,
|
|
where V = maximum index + 1 and embedding_dim = the embedding size
|
|
- Output: `(*, embedding_dim)`, where `*` is the input shape
|
|
|
|
Examples::
|
|
|
|
>>> # a batch of 2 samples of 4 indices each
|
|
>>> input = torch.tensor([[1,2,4,5],[4,3,2,9]])
|
|
>>> # an embedding matrix containing 10 tensors of size 3
|
|
>>> embedding_matrix = torch.rand(10, 3)
|
|
>>> F.embedding(input, embedding_matrix)
|
|
tensor([[[ 0.8490, 0.9625, 0.6753],
|
|
[ 0.9666, 0.7761, 0.6108],
|
|
[ 0.6246, 0.9751, 0.3618],
|
|
[ 0.4161, 0.2419, 0.7383]],
|
|
|
|
[[ 0.6246, 0.9751, 0.3618],
|
|
[ 0.0237, 0.7794, 0.0528],
|
|
[ 0.9666, 0.7761, 0.6108],
|
|
[ 0.3385, 0.8612, 0.1867]]])
|
|
|
|
>>> # example with padding_idx
|
|
>>> weights = torch.rand(10, 3)
|
|
>>> weights[0, :].zero_()
|
|
>>> embedding_matrix = weights
|
|
>>> input = torch.tensor([[0,2,0,5]])
|
|
>>> F.embedding(input, embedding_matrix, padding_idx=0)
|
|
tensor([[[ 0.0000, 0.0000, 0.0000],
|
|
[ 0.5609, 0.5384, 0.8720],
|
|
[ 0.0000, 0.0000, 0.0000],
|
|
[ 0.6262, 0.2438, 0.7471]]])
|
|
"""
|
|
input = input.contiguous()
|
|
if padding_idx is not None:
|
|
if padding_idx > 0:
|
|
assert padding_idx < weight.size(0), 'Padding_idx must be within num_embeddings'
|
|
elif padding_idx < 0:
|
|
assert padding_idx >= -weight.size(0), 'Padding_idx must be within num_embeddings'
|
|
padding_idx = weight.size(0) + padding_idx
|
|
elif padding_idx is None:
|
|
padding_idx = -1
|
|
if max_norm is not None:
|
|
with torch.no_grad():
|
|
torch.embedding_renorm_(weight, input, max_norm, norm_type)
|
|
return torch.embedding(weight, input, padding_idx, scale_grad_by_freq, sparse)
|
|
|
|
|
|
def embedding_bag(input, weight, offsets=None, max_norm=None, norm_type=2,
|
|
scale_grad_by_freq=False, mode='mean', sparse=False):
|
|
r"""Computes sums or means of 'bags' of embeddings, without instantiating the
|
|
intermediate embeddings.
|
|
|
|
See :class:`torch.nn.EmbeddingBag` for more details.
|
|
|
|
Args:
|
|
input (LongTensor): Tensor containing bags of indices into the embedding matrix
|
|
weight (Tensor): The embedding matrix
|
|
Number of rows should correspond to the maximum possible index + 1,
|
|
number of columns is the embedding size
|
|
offsets (LongTensor, optional): Only used when :attr:`input` is 1D. :attr:`offsets` determines
|
|
the starting index position of each bag (sequence) in :attr:`input`.
|
|
max_norm (float, optional): If given, will renormalize the embedding vectors to have a norm lesser than
|
|
this before extracting. Note: this will modify :attr:`weight` in-place.
|
|
norm_type (float, optional): The ``p`` in the ``p``-norm to compute for the max_norm option. Default ``2``.
|
|
scale_grad_by_freq (boolean, optional): if given, this will scale gradients by the inverse of frequency of
|
|
the words in the mini-batch. Default ``False``.
|
|
Note: this option is not supported when ``mode="max"``.
|
|
mode (string, optional): ``"sum"``, ``"mean"`` or ``"max"``. Specifies the way to reduce the bag.
|
|
Default: ``"mean"``
|
|
sparse (bool, optional): if ``True``, gradient w.r.t. :attr:`weight` will be a sparse tensor. See Notes under
|
|
:class:`torch.nn.Embedding` for more details regarding sparse gradients.
|
|
Note: this option is not supported when ``mode="max"``.
|
|
|
|
Shape:
|
|
|
|
- :attr:`input` (LongTensor) and :attr:`offsets` (LongTensor, optional)
|
|
|
|
- If :attr:`input` is 2D of shape ``B x N``,
|
|
|
|
it will be treated as ``B`` bags (sequences) each of fixed length ``N``, and
|
|
this will return ``B`` values aggregated in a way depending on the :attr:`mode`.
|
|
:attr:`offsets` is ignored and required to be ``None`` in this case.
|
|
|
|
- If :attr:`input` is 1D of shape ``N``,
|
|
|
|
it will be treated as a concatenation of multiple bags (sequences).
|
|
:attr:`offsets` is required to be a 1D tensor containing the
|
|
starting index positions of each bag in :attr:`input`. Therefore,
|
|
for :attr:`offsets` of shape ``B``, :attr:`input` will be viewed as
|
|
having ``B`` bags. Empty bags (i.e., having 0-length) will have
|
|
returned vectors filled by zeros.
|
|
|
|
- :attr:`weight` (Tensor): the learnable weights of the module of
|
|
shape ``(num_embeddings x embedding_dim)``
|
|
|
|
- :attr:`output`: aggregated embedding values of shape ``B x embedding_dim``
|
|
|
|
Examples::
|
|
|
|
>>> # an Embedding module containing 10 tensors of size 3
|
|
>>> embedding_matrix = torch.rand(10, 3)
|
|
>>> # a batch of 2 samples of 4 indices each
|
|
>>> input = torch.tensor([1,2,4,5,4,3,2,9])
|
|
>>> offsets = torch.tensor([0,4])
|
|
>>> F.embedding_bag(embedding_matrix, input, offsets)
|
|
tensor([[ 0.3397, 0.3552, 0.5545],
|
|
[ 0.5893, 0.4386, 0.5882]])
|
|
"""
|
|
# Check for backward compatibility.
|
|
# Used to be embedding_bag(weight, input, ...)
|
|
# Now is embedding_bag(input, weight, ...)
|
|
if weight.dtype == torch.long and input.is_floating_point():
|
|
warnings.warn("Argument order of nn.functional.embedding_bag was changed. "
|
|
"Usage `embedding_bag(weight, input, ...)` is deprecated, "
|
|
"and should now be `embedding_bag(input, weight, ...)`.")
|
|
weight, input = input, weight
|
|
|
|
if input.dim() == 2:
|
|
if offsets is not None:
|
|
raise ValueError("if input is 2D, then offsets has to be None"
|
|
", as input is treated is a mini-batch of"
|
|
" fixed length sequences. However, found "
|
|
"offsets of type {}".format(type(offsets)))
|
|
else:
|
|
offsets = torch.arange(0, input.numel(), input.size(1),
|
|
dtype=torch.long, device=input.device)
|
|
|
|
input = input.view(-1)
|
|
elif input.dim() == 1:
|
|
if offsets is None:
|
|
raise ValueError("offsets has to be a 1D Tensor but got None")
|
|
if offsets.dim() != 1:
|
|
raise ValueError("offsets has to be a 1D Tensor")
|
|
if offsets[0].item() != 0:
|
|
raise ValueError("offsets[0] has to be 0, i.e., the first sequence "
|
|
"in the mini-batch has to start from position 0. "
|
|
"However, got {}".format(offsets[0].item()))
|
|
if offsets[-1].item() > input.size(0):
|
|
raise ValueError("offsets[-1] can not be greater than input's length"
|
|
" ({}), but got offsets[-1] of {}"
|
|
.format(input.size(0), offsets[-1].item()))
|
|
else:
|
|
raise ValueError("input has to be 1D or 2D Tensor,"
|
|
" but got Tensor of dimension {}".format(input.dim()))
|
|
|
|
if mode == 'sum':
|
|
mode = 0
|
|
elif mode == 'mean':
|
|
mode = 1
|
|
elif mode == 'max':
|
|
mode = 2
|
|
|
|
if scale_grad_by_freq:
|
|
raise ValueError("max mode does not support scaling the gradient by the frequency")
|
|
|
|
if sparse:
|
|
raise ValueError("max mode does not support sparse weights")
|
|
|
|
else:
|
|
raise ValueError("mode has to be one of sum or mean")
|
|
|
|
if max_norm is not None:
|
|
with torch.no_grad():
|
|
torch.embedding_renorm_(weight, input, max_norm, norm_type)
|
|
|
|
ret, _, _, _ = torch.embedding_bag(
|
|
weight,
|
|
input,
|
|
offsets,
|
|
scale_grad_by_freq,
|
|
mode,
|
|
sparse)
|
|
return ret
|
|
|
|
|
|
def batch_norm(input, running_mean, running_var, weight=None, bias=None,
|
|
training=False, momentum=0.1, eps=1e-5):
|
|
r"""Applies Batch Normalization for each channel across a batch of data.
|
|
|
|
See :class:`~torch.nn.BatchNorm1d`, :class:`~torch.nn.BatchNorm2d`,
|
|
:class:`~torch.nn.BatchNorm3d` for details.
|
|
"""
|
|
if training:
|
|
size = list(input.size())
|
|
if reduce(mul, size[2:], size[0]) == 1:
|
|
raise ValueError('Expected more than 1 value per channel when training, got input size {}'.format(size))
|
|
return torch.batch_norm(
|
|
input, weight, bias, running_mean, running_var,
|
|
training, momentum, eps, torch.backends.cudnn.enabled
|
|
)
|
|
|
|
|
|
def instance_norm(input, running_mean=None, running_var=None, weight=None,
|
|
bias=None, use_input_stats=True, momentum=0.1, eps=1e-5):
|
|
r"""Applies Instance Normalization for each channel in each data sample in a
|
|
batch.
|
|
|
|
See :class:`~torch.nn.InstanceNorm1d`, :class:`~torch.nn.InstanceNorm2d`,
|
|
:class:`~torch.nn.InstanceNorm3d` for details.
|
|
"""
|
|
if not use_input_stats and (running_mean is None or running_var is None):
|
|
raise ValueError('Expected running_mean and running_var to be not None when use_input_stats=False')
|
|
|
|
b, c = input.size(0), input.size(1)
|
|
if weight is not None:
|
|
weight = weight.repeat(b)
|
|
if bias is not None:
|
|
bias = bias.repeat(b)
|
|
|
|
import torch.onnx.symbolic
|
|
|
|
@torch.onnx.symbolic_override_first_arg_based(torch.onnx.symbolic.instance_norm)
|
|
def _instance_norm(input, running_mean=None, running_var=None, weight=None,
|
|
bias=None, use_input_stats=None, momentum=None, eps=None):
|
|
# Repeat stored stats and affine transform params if necessary
|
|
if running_mean is not None:
|
|
running_mean_orig = running_mean
|
|
running_mean = running_mean_orig.repeat(b)
|
|
if running_var is not None:
|
|
running_var_orig = running_var
|
|
running_var = running_var_orig.repeat(b)
|
|
|
|
# Apply instance norm
|
|
input_reshaped = input.contiguous().view(1, b * c, *input.size()[2:])
|
|
|
|
out = batch_norm(
|
|
input_reshaped, running_mean, running_var, weight=weight, bias=bias,
|
|
training=use_input_stats, momentum=momentum, eps=eps)
|
|
|
|
# Reshape and copy back
|
|
if running_mean is not None:
|
|
running_mean_orig.copy_(running_mean.view(b, c).mean(0, keepdim=False))
|
|
if running_var is not None:
|
|
running_var_orig.copy_(running_var.view(b, c).mean(0, keepdim=False))
|
|
|
|
return out.view(b, c, *input.size()[2:])
|
|
return _instance_norm(input, running_mean=running_mean,
|
|
running_var=running_var, weight=weight, bias=bias,
|
|
use_input_stats=use_input_stats, momentum=momentum,
|
|
eps=eps)
|
|
|
|
|
|
def layer_norm(input, normalized_shape, weight=None, bias=None, eps=1e-5):
|
|
r"""Applies Layer Normalization for last certain number of dimensions.
|
|
|
|
See :class:`~torch.nn.LayerNorm` for details.
|
|
"""
|
|
return torch.layer_norm(input, normalized_shape, weight, bias, eps,
|
|
torch.backends.cudnn.enabled)
|
|
|
|
|
|
def group_norm(input, num_groups, weight=None, bias=None, eps=1e-5):
|
|
r"""Applies Group Normalization for last certain number of dimensions.
|
|
|
|
See :class:`~torch.nn.GroupNorm` for details.
|
|
"""
|
|
return torch.group_norm(input, num_groups, weight, bias, eps,
|
|
torch.backends.cudnn.enabled)
|
|
|
|
|
|
def local_response_norm(input, size, alpha=1e-4, beta=0.75, k=1):
|
|
r"""Applies local response normalization over an input signal composed of
|
|
several input planes, where channels occupy the second dimension.
|
|
Applies normalization across channels.
|
|
|
|
See :class:`~torch.nn.LocalResponseNorm` for details.
|
|
"""
|
|
dim = input.dim()
|
|
if dim < 3:
|
|
raise ValueError('Expected 3D or higher dimensionality \
|
|
input (got {} dimensions)'.format(dim))
|
|
div = input.mul(input).unsqueeze(1)
|
|
if dim == 3:
|
|
div = pad(div, (0, 0, size // 2, (size - 1) // 2))
|
|
div = avg_pool2d(div, (size, 1), stride=1).squeeze(1)
|
|
else:
|
|
sizes = input.size()
|
|
div = div.view(sizes[0], 1, sizes[1], sizes[2], -1)
|
|
div = pad(div, (0, 0, 0, 0, size // 2, (size - 1) // 2))
|
|
div = avg_pool3d(div, (size, 1, 1), stride=1).squeeze(1)
|
|
div = div.view(sizes)
|
|
div = div.mul(alpha).add(k).pow(beta)
|
|
return input / div
|
|
|
|
|
|
# loss
|
|
|
|
|
|
def nll_loss(input, target, weight=None, size_average=True, ignore_index=-100, reduce=True):
|
|
r"""The negative log likelihood loss.
|
|
|
|
See :class:`~torch.nn.NLLLoss` for details.
|
|
|
|
Args:
|
|
input: :math:`(N, C)` where `C = number of classes` or :math:`(N, C, H, W)`
|
|
in case of 2D Loss, or :math:`(N, C, d_1, d_2, ..., d_K)` where :math:`K > 1`
|
|
in the case of K-dimensional loss.
|
|
target: :math:`(N)` where each value is :math:`0 \leq \text{targets}[i] \leq C-1`,
|
|
or :math:`(N, d_1, d_2, ..., d_K)` where :math:`K \geq 1` for
|
|
K-dimensional loss.
|
|
weight (Tensor, optional): a manual rescaling weight given to each
|
|
class. If given, has to be a Tensor of size `C`
|
|
size_average (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch. If :attr:`size_average`
|
|
is ``False``, the losses are summed for each minibatch. Default: ``True``
|
|
ignore_index (int, optional): Specifies a target value that is ignored
|
|
and does not contribute to the input gradient. When :attr:`size_average` is
|
|
``True``, the loss is averaged over non-ignored targets. Default: -100
|
|
|
|
Example::
|
|
|
|
>>> # input is of size N x C = 3 x 5
|
|
>>> input = torch.randn(3, 5, requires_grad=True)
|
|
>>> # each element in target has to have 0 <= value < C
|
|
>>> target = torch.tensor([1, 0, 4])
|
|
>>> output = F.nll_loss(F.log_softmax(input), target)
|
|
>>> output.backward()
|
|
"""
|
|
dim = input.dim()
|
|
if dim < 2:
|
|
raise ValueError('Expected 2 or more dimensions (got {})'.format(dim))
|
|
|
|
if input.size(0) != target.size(0):
|
|
raise ValueError('Expected input batch_size ({}) to match target batch_size ({}).'
|
|
.format(input.size(0), target.size(0)))
|
|
if dim == 2:
|
|
return torch._C._nn.nll_loss(input, target, weight, size_average, ignore_index, reduce)
|
|
elif dim == 4:
|
|
return torch._C._nn.nll_loss2d(input, target, weight, size_average, ignore_index, reduce)
|
|
elif dim == 3 or dim > 4:
|
|
n = input.size(0)
|
|
c = input.size(1)
|
|
out_size = (n,) + input.size()[2:]
|
|
if target.size()[1:] != input.size()[2:]:
|
|
raise ValueError('Expected target size {}, got {}'.format(
|
|
out_size, target.size()))
|
|
input = input.contiguous().view(n, c, 1, -1)
|
|
target = target.contiguous().view(n, 1, -1)
|
|
if reduce:
|
|
return torch._C._nn.nll_loss2d(input, target, weight, size_average, ignore_index, reduce)
|
|
out = torch._C._nn.nll_loss2d(input, target, weight, size_average, ignore_index, reduce)
|
|
return out.view(out_size)
|
|
|
|
|
|
def poisson_nll_loss(input, target, log_input=True, full=False, size_average=True, eps=1e-8, reduce=True):
|
|
r"""Poisson negative log likelihood loss.
|
|
|
|
See :class:`~torch.nn.PoissonNLLLoss` for details.
|
|
|
|
Args:
|
|
input: expectation of underlying Poisson distribution.
|
|
target: random sample :math:`target \sim \text{Poisson}(input)`.
|
|
log_input: if ``True`` the loss is computed as
|
|
:math:`\exp(\text{input}) - \text{target} * \text{input}`, if ``False`` then loss is
|
|
:math:`\text{input} - \text{target} * \log(\text{input}+\text{eps})`. Default: ``True``
|
|
full: whether to compute full loss, i. e. to add the Stirling
|
|
approximation term. Default: ``False``
|
|
:math:`\text{target} * \log(\text{target}) - \text{target} + 0.5 * \log(2 * \pi * \text{target})`.
|
|
size_average: By default, the losses are averaged over observations for
|
|
each minibatch. However, if the field :attr:`size_average` is set to ``False``,
|
|
the losses are instead summed for each minibatch. Default: ``True``
|
|
eps (float, optional): Small value to avoid evaluation of :math:`\log(0)` when
|
|
:attr:`log_input`=``False``. Default: 1e-8
|
|
reduce (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch, or summed, depending on
|
|
:attr:`size_average`. When reduce is ``False``, returns a loss per batch
|
|
instead and ignores :attr:`size_average`. Default: ``True``
|
|
"""
|
|
if log_input:
|
|
loss = torch.exp(input) - target * input
|
|
else:
|
|
loss = input - target * torch.log(input + eps)
|
|
if full:
|
|
mask = target > 1
|
|
loss[mask] += (target * torch.log(target) - target + 0.5 * torch.log(2 * math.pi * target))[mask]
|
|
if not reduce:
|
|
return loss
|
|
if size_average:
|
|
return torch.mean(loss)
|
|
return torch.sum(loss)
|
|
|
|
|
|
kl_div = _add_docstr(torch._C._nn.kl_div, r"""
|
|
kl_div(input, target, size_average=True) -> Tensor
|
|
|
|
The `Kullback-Leibler divergence`_ Loss.
|
|
|
|
See :class:`~torch.nn.KLDivLoss` for details.
|
|
|
|
Args:
|
|
input: Tensor of arbitrary shape
|
|
target: Tensor of the same shape as input
|
|
size_average: if ``True`` the output is divided by the number of elements
|
|
in input tensor. Default: ``True``
|
|
reduce (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch, or summed, depending on
|
|
size_average. When reduce is ``False``, returns a loss per input/target
|
|
element instead and ignores :attr:`size_average`. Default: ``True``
|
|
|
|
""")
|
|
|
|
|
|
def cross_entropy(input, target, weight=None, size_average=True, ignore_index=-100, reduce=True):
|
|
r"""This criterion combines `log_softmax` and `nll_loss` in a single
|
|
function.
|
|
|
|
See :class:`~torch.nn.CrossEntropyLoss` for details.
|
|
|
|
Args:
|
|
input (Tensor) : :math:`(N, C)` where `C = number of classes` or :math:`(N, C, H, W)`
|
|
in case of 2D Loss, or :math:`(N, C, d_1, d_2, ..., d_K)` where :math:`K > 1`
|
|
in the case of K-dimensional loss.
|
|
target (Tensor) : :math:`(N)` where each value is :math:`0 \leq \text{targets}[i] \leq C-1`,
|
|
or :math:`(N, d_1, d_2, ..., d_K)` where :math:`K \geq 1` for
|
|
K-dimensional loss.
|
|
weight (Tensor, optional): a manual rescaling weight given to each
|
|
class. If given, has to be a Tensor of size `C`
|
|
size_average (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch. However, if the field
|
|
:attr:`size_average` is set to ``False``, the losses are instead summed
|
|
for each minibatch. Ignored if :attr:`reduce` is ``False``. Default: ``True``
|
|
ignore_index (int, optional): Specifies a target value that is ignored
|
|
and does not contribute to the input gradient. When :attr:`size_average` is
|
|
``True``, the loss is averaged over non-ignored targets. Default: -100
|
|
reduce (bool, optional): By default, the losses are averaged or summed over
|
|
observations for each minibatch depending on :attr:`size_average`. When :attr:`reduce`
|
|
is ``False``, returns a loss per batch instead and ignores
|
|
:attr:`size_average`. Default: ``True``
|
|
|
|
Examples::
|
|
|
|
>>> input = torch.randn(3, 5, requires_grad=True)
|
|
>>> target = torch.randint(5, (3,), dtype=torch.int64)
|
|
>>> loss = F.cross_entropy(input, target)
|
|
>>> loss.backward()
|
|
"""
|
|
return nll_loss(log_softmax(input, 1), target, weight, size_average, ignore_index, reduce)
|
|
|
|
|
|
def binary_cross_entropy(input, target, weight=None, size_average=True, reduce=True):
|
|
r"""Function that measures the Binary Cross Entropy
|
|
between the target and the output.
|
|
|
|
See :class:`~torch.nn.BCELoss` for details.
|
|
|
|
Args:
|
|
input: Tensor of arbitrary shape
|
|
target: Tensor of the same shape as input
|
|
weight (Tensor, optional): a manual rescaling weight
|
|
if provided it's repeated to match input tensor shape
|
|
size_average (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch. However, if the field
|
|
:attr:`size_average` is set to ``False``, the losses are instead summed
|
|
for each minibatch. Default: ``True``
|
|
reduce (bool, optional): By default, the losses are averaged or summed over
|
|
observations for each minibatch depending on :attr:`size_average`. When :attr:`reduce`
|
|
is ``False``, returns a loss per input/target element instead and ignores
|
|
:attr:`size_average`. Default: ``True``
|
|
|
|
Examples::
|
|
|
|
>>> input = torch.randn((3, 2), requires_grad=True)
|
|
>>> target = torch.rand((3, 2), requires_grad=False)
|
|
>>> loss = F.binary_cross_entropy(F.sigmoid(input), target)
|
|
>>> loss.backward()
|
|
"""
|
|
if not (target.size() == input.size()):
|
|
warnings.warn("Using a target size ({}) that is different to the input size ({}) is deprecated. "
|
|
"Please ensure they have the same size.".format(target.size(), input.size()))
|
|
if input.nelement() != target.nelement():
|
|
raise ValueError("Target and input must have the same number of elements. target nelement ({}) "
|
|
"!= input nelement ({})".format(target.nelement(), input.nelement()))
|
|
|
|
if weight is not None:
|
|
new_size = _infer_size(target.size(), weight.size())
|
|
weight = weight.expand(new_size)
|
|
|
|
return torch._C._nn.binary_cross_entropy(input, target, weight, size_average, reduce)
|
|
|
|
|
|
def binary_cross_entropy_with_logits(input, target, weight=None, size_average=True, reduce=True, pos_weight=None):
|
|
r"""Function that measures Binary Cross Entropy between target and output
|
|
logits.
|
|
|
|
See :class:`~torch.nn.BCEWithLogitsLoss` for details.
|
|
|
|
Args:
|
|
input: Tensor of arbitrary shape
|
|
target: Tensor of the same shape as input
|
|
weight (Tensor, optional): a manual rescaling weight
|
|
if provided it's repeated to match input tensor shape
|
|
size_average (bool, optional): By default, the losses are averaged
|
|
over observations for each minibatch. However, if the field
|
|
:attr:`size_average` is set to ``False``, the losses are instead summed
|
|
for each minibatch. Default: ``True``
|
|
reduce (bool, optional): By default, the losses are averaged or summed over
|
|
observations for each minibatch depending on :attr:`size_average`. When :attr:`reduce`
|
|
is ``False``, returns a loss per input/target element instead and ignores
|
|
:attr:`size_average`. Default: ``True``
|
|
pos_weight (Tensor, optional): a weight of positive examples.
|
|
Must be a vector with length equal to the number of classes.
|
|
|
|
Examples::
|
|
|
|
>>> input = torch.randn(3, requires_grad=True)
|
|
>>> target = torch.empty(3).random_(2)
|
|
>>> loss = F.binary_cross_entropy_with_logits(input, target)
|
|
>>> loss.backward()
|
|
"""
|
|
if not (target.size() == input.size()):
|
|
raise ValueError("Target size ({}) must be the same as input size ({})".format(target.size(), input.size()))
|
|
|
|
max_val = (-input).clamp(min=0)
|
|
|
|
if pos_weight is None:
|
|
loss = input - input * target + max_val + ((-max_val).exp() + (-input - max_val).exp()).log()
|
|
else:
|
|
log_weight = 1 + (pos_weight - 1) * target
|
|
loss = input - input * target + log_weight * (max_val + ((-max_val).exp() + (-input - max_val).exp()).log())
|
|
|
|
if weight is not None:
|
|
loss = loss * weight
|
|
|
|
if not reduce:
|
|
return loss
|
|
elif size_average:
|
|
return loss.mean()
|
|
else:
|
|
return loss.sum()
|
|
|
|
|
|
def _pointwise_loss(lambd, lambd_optimized, input, target, size_average=True, reduce=True):
|
|
if target.requires_grad:
|
|
d = lambd(input, target)
|
|
if not reduce:
|
|
return d
|
|
return torch.mean(d) if size_average else torch.sum(d)
|
|
else:
|
|
return lambd_optimized(input, target, size_average, reduce)
|
|
|
|
|
|
smooth_l1_loss = _add_docstr(torch._C._nn.smooth_l1_loss, r"""
|
|
smooth_l1_loss(input, target, size_average=True, reduce=True) -> Tensor
|
|
|
|
Function that uses a squared term if the absolute
|
|
element-wise error falls below 1 and an L1 term otherwise.
|
|
|
|
See :class:`~torch.nn.SmoothL1Loss` for details.
|
|
""")
|
|
|
|
|
|
def l1_loss(input, target, size_average=True, reduce=True):
|
|
r"""l1_loss(input, target, size_average=True, reduce=True) -> Tensor
|
|
|
|
Function that takes the mean element-wise absolute value difference.
|
|
|
|
See :class:`~torch.nn.L1Loss` for details.
|
|
"""
|
|
return _pointwise_loss(lambda a, b: torch.abs(a - b), torch._C._nn.l1_loss,
|
|
input, target, size_average, reduce)
|
|
|
|
|
|
def mse_loss(input, target, size_average=True, reduce=True):
|
|
r"""mse_loss(input, target, size_average=True, reduce=True) -> Tensor
|
|
|
|
Measures the element-wise mean squared error.
|
|
|
|
See :class:`~torch.nn.MSELoss` for details.
|
|
"""
|
|
return _pointwise_loss(lambda a, b: (a - b) ** 2, torch._C._nn.mse_loss,
|
|
input, target, size_average, reduce)
|
|
|
|
|
|
def margin_ranking_loss(input1, input2, target, margin=0, size_average=True, reduce=True):
|
|
r"""margin_ranking_loss(input1, input2, target, margin=0, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.MarginRankingLoss` for details.
|
|
"""
|
|
if input1.dim() == 0 or input2.dim() == 0 or target.dim() == 0:
|
|
raise RuntimeError(("margin_ranking_loss does not support scalars, got sizes: "
|
|
"input1: {}, input2: {}, target: {} ".format(input1.size(), input2.size(), target.size())))
|
|
return torch.margin_ranking_loss(input1, input2, target, margin, size_average, reduce)
|
|
|
|
|
|
def hinge_embedding_loss(input, target, margin=1.0, size_average=True, reduce=True):
|
|
r"""hinge_embedding_loss(input, target, margin=1.0, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.HingeEmbeddingLoss` for details.
|
|
"""
|
|
return torch.hinge_embedding_loss(input, target, margin, size_average, reduce)
|
|
|
|
|
|
multilabel_margin_loss = _add_docstr(torch._C._nn.multilabel_margin_loss, r"""
|
|
multilabel_margin_loss(input, target, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.MultiLabelMarginLoss` for details.
|
|
""")
|
|
|
|
soft_margin_loss = _add_docstr(torch._C._nn.soft_margin_loss, r"""
|
|
soft_margin_loss(input, target, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.SoftMarginLoss` for details.
|
|
""")
|
|
|
|
|
|
def multilabel_soft_margin_loss(input, target, weight=None, size_average=True, reduce=True):
|
|
r"""multilabel_soft_margin_loss(input, target, weight=None, size_average=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.MultiLabelSoftMarginLoss` for details.
|
|
"""
|
|
input = torch.sigmoid(input)
|
|
return binary_cross_entropy(input, target, weight, size_average, reduce)
|
|
|
|
|
|
def cosine_embedding_loss(input1, input2, target, margin=0, size_average=True, reduce=True):
|
|
r"""cosine_embedding_loss(input1, input2, target, margin=0, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.CosineEmbeddingLoss` for details.
|
|
"""
|
|
return torch.cosine_embedding_loss(input1, input2, target, margin, size_average, reduce)
|
|
|
|
|
|
def multi_margin_loss(input, target, p=1, margin=1, weight=None, size_average=True, reduce=True):
|
|
r"""multi_margin_loss(input, target, p=1, margin=1, weight=None, size_average=True, reduce=True) -> Tensor
|
|
|
|
See :class:`~torch.nn.MultiMarginLoss` for details.
|
|
"""
|
|
if p != 1 and p != 2:
|
|
raise ValueError('only p == 1 and p == 2 supported')
|
|
if weight is not None and weight.dim() != 1:
|
|
raise ValueError('weight must be one-dimensional')
|
|
|
|
return torch._C._nn.multi_margin_loss(input, target, p, margin, weight, size_average, reduce)
|
|
|
|
|
|
def pixel_shuffle(input, upscale_factor):
|
|
r"""Rearranges elements in a tensor of shape :math:`[*, C*r^2, H, W]` to a
|
|
tensor of shape :math:`[C, H*r, W*r]`.
|
|
|
|
See :class:`~torch.nn.PixelShuffle` for details.
|
|
|
|
Args:
|
|
input (Tensor): Input
|
|
upscale_factor (int): factor to increase spatial resolution by
|
|
|
|
Examples::
|
|
|
|
>>> ps = nn.PixelShuffle(3)
|
|
>>> input = torch.empty(1, 9, 4, 4)
|
|
>>> output = ps(input)
|
|
>>> print(output.size())
|
|
torch.Size([1, 1, 12, 12])
|
|
"""
|
|
batch_size, channels, in_height, in_width = input.size()
|
|
channels //= upscale_factor ** 2
|
|
|
|
out_height = in_height * upscale_factor
|
|
out_width = in_width * upscale_factor
|
|
|
|
input_view = input.contiguous().view(
|
|
batch_size, channels, upscale_factor, upscale_factor,
|
|
in_height, in_width)
|
|
|
|
shuffle_out = input_view.permute(0, 1, 4, 2, 5, 3).contiguous()
|
|
return shuffle_out.view(batch_size, channels, out_height, out_width)
|
|
|
|
|
|
def upsample(input, size=None, scale_factor=None, mode='nearest', align_corners=None):
|
|
r"""Upsamples the input to either the given :attr:`size` or the given
|
|
:attr:`scale_factor`
|
|
|
|
The algorithm used for upsampling is determined by :attr:`mode`.
|
|
|
|
Currently temporal, spatial and volumetric upsampling are supported, i.e.
|
|
expected inputs are 3-D, 4-D or 5-D in shape.
|
|
|
|
The input dimensions are interpreted in the form:
|
|
`mini-batch x channels x [optional depth] x [optional height] x width`.
|
|
|
|
The modes available for upsampling are: `nearest`, `linear` (3D-only),
|
|
`bilinear` (4D-only), `trilinear` (5D-only)
|
|
|
|
Args:
|
|
input (Tensor): the input tensor
|
|
size (int or Tuple[int] or Tuple[int, int] or Tuple[int, int, int]):
|
|
output spatial size.
|
|
scale_factor (int): multiplier for spatial size. Has to be an integer.
|
|
mode (string): algorithm used for upsampling:
|
|
'nearest' | 'linear' | 'bilinear' | 'trilinear'. Default: 'nearest'
|
|
align_corners (bool, optional): if True, the corner pixels of the input
|
|
and output tensors are aligned, and thus preserving the values at
|
|
those pixels. This only has effect when :attr:`mode` is `linear`,
|
|
`bilinear`, or `trilinear`. Default: False
|
|
|
|
.. warning::
|
|
With ``align_corners = True``, the linearly interpolating modes
|
|
(`linear`, `bilinear`, and `trilinear`) don't proportionally align the
|
|
output and input pixels, and thus the output values can depend on the
|
|
input size. This was the default behavior for these modes up to version
|
|
0.3.1. Since then, the default behavior is ``align_corners = False``.
|
|
See :class:`~torch.nn.Upsample` for concrete examples on how this
|
|
affects the outputs.
|
|
|
|
"""
|
|
from numbers import Integral
|
|
from .modules.utils import _ntuple
|
|
|
|
def _check_size_scale_factor():
|
|
if size is None and scale_factor is None:
|
|
raise ValueError('either size or scale_factor should be defined')
|
|
if size is not None and scale_factor is not None:
|
|
raise ValueError('only one of size or scale_factor should be defined')
|
|
if scale_factor is not None and not isinstance(scale_factor, (Integral, tuple)):
|
|
raise ValueError('scale_factor must be of integer type or a tuple of integer types')
|
|
|
|
def _scale_factor(dim):
|
|
_check_size_scale_factor()
|
|
if scale_factor is not None and not isinstance(scale_factor, Integral):
|
|
raise ValueError('scale_factor must be a single Integer value for nearest neighbor sampling')
|
|
if scale_factor is not None:
|
|
return scale_factor
|
|
sizes = _ntuple(dim)(size)
|
|
computed_scale_factor = sizes[0] // input.size(2)
|
|
for d in range(dim):
|
|
if sizes[d] % input.size(d + 2) != 0:
|
|
raise RuntimeError("output size specified in UpsamplingNearest "
|
|
"({}) has to be divisible by the input size, but got: "
|
|
"{}".format('x'.join(map(str, sizes)),
|
|
'x'.join(map(str, input.size()))))
|
|
if sizes[d] // input.size(d + 2) != computed_scale_factor:
|
|
raise RuntimeError("input aspect ratio doesn't match the output ratio")
|
|
|
|
return computed_scale_factor
|
|
|
|
def _output_size(dim):
|
|
_check_size_scale_factor()
|
|
if size is not None:
|
|
return size
|
|
scale_factors = _ntuple(dim)(scale_factor)
|
|
return [input.size(i + 2) * scale_factors[i] for i in range(dim)]
|
|
|
|
if mode == 'nearest':
|
|
if align_corners is not None:
|
|
raise ValueError("align_corners option can only be set with the "
|
|
"interpolating modes: linear | bilinear | trilinear")
|
|
else:
|
|
if align_corners is None:
|
|
warnings.warn("Default upsampling behavior when mode={} is changed "
|
|
"to align_corners=False since 0.4.0. Please specify "
|
|
"align_corners=True if the old behavior is desired. "
|
|
"See the documentation of nn.Upsample for details.".format(mode))
|
|
align_corners = False
|
|
|
|
if input.dim() == 3 and mode == 'nearest':
|
|
return torch._C._nn.upsample_nearest1d(input, _scale_factor(1))
|
|
elif input.dim() == 4 and mode == 'nearest':
|
|
return torch._C._nn.upsample_nearest2d(input, _scale_factor(2))
|
|
elif input.dim() == 5 and mode == 'nearest':
|
|
return torch._C._nn.upsample_nearest3d(input, _scale_factor(3))
|
|
elif input.dim() == 3 and mode == 'linear':
|
|
return torch._C._nn.upsample_linear1d(input, _output_size(1), align_corners)
|
|
elif input.dim() == 3 and mode == 'bilinear':
|
|
raise NotImplementedError("Got 3D input, but bilinear mode needs 4D input")
|
|
elif input.dim() == 3 and mode == 'trilinear':
|
|
raise NotImplementedError("Got 3D input, but trilinear mode needs 5D input")
|
|
elif input.dim() == 4 and mode == 'linear':
|
|
raise NotImplementedError("Got 4D input, but linear mode needs 3D input")
|
|
elif input.dim() == 4 and mode == 'bilinear':
|
|
return torch._C._nn.upsample_bilinear2d(input, _output_size(2), align_corners)
|
|
elif input.dim() == 4 and mode == 'trilinear':
|
|
raise NotImplementedError("Got 4D input, but trilinear mode needs 5D input")
|
|
elif input.dim() == 5 and mode == 'linear':
|
|
raise NotImplementedError("Got 5D input, but linear mode needs 3D input")
|
|
elif input.dim() == 5 and mode == 'bilinear':
|
|
raise NotImplementedError("Got 5D input, but bilinear mode needs 4D input")
|
|
elif input.dim() == 5 and mode == 'trilinear':
|
|
return torch._C._nn.upsample_trilinear3d(input, _output_size(3), align_corners)
|
|
else:
|
|
raise NotImplementedError("Input Error: Only 3D, 4D and 5D input Tensors supported"
|
|
" (got {}D) for the modes: nearest | linear | bilinear | trilinear"
|
|
" (got {})".format(input.dim(), mode))
|
|
|
|
|
|
def upsample_nearest(input, size=None, scale_factor=None):
|
|
r"""Upsamples the input, using nearest neighbours' pixel values.
|
|
|
|
.. warning::
|
|
This function is deprecated in favor of :func:`torch.nn.functional.upsample`.
|
|
This is equivalent with ``nn.functional.upsample(..., mode='nearest')``.
|
|
|
|
Currently spatial and volumetric upsampling are supported (i.e. expected
|
|
inputs are 4 or 5 dimensional).
|
|
|
|
Args:
|
|
input (Tensor): input
|
|
size (int or Tuple[int, int] or Tuple[int, int, int]): output spatia
|
|
size.
|
|
scale_factor (int): multiplier for spatial size. Has to be an integer.
|
|
"""
|
|
# DeprecationWarning is ignored by default
|
|
warnings.warn("nn.functional.upsample_nearest is deprecated. Use nn.functional.upsample instead.")
|
|
return upsample(input, size, scale_factor, mode='nearest')
|
|
|
|
|
|
def upsample_bilinear(input, size=None, scale_factor=None):
|
|
r"""Upsamples the input, using bilinear upsampling.
|
|
|
|
.. warning::
|
|
This function is deprecated in favor of :func:`torch.nn.functional.upsample`.
|
|
This is equivalent with
|
|
``nn.functional.upsample(..., mode='bilinear', align_corners=True)``.
|
|
|
|
Expected inputs are spatial (4 dimensional). Use `upsample_trilinear` fo
|
|
volumetric (5 dimensional) inputs.
|
|
|
|
Args:
|
|
input (Tensor): input
|
|
size (int or Tuple[int, int]): output spatial size.
|
|
scale_factor (int or Tuple[int, int]): multiplier for spatial size
|
|
"""
|
|
# DeprecationWarning is ignored by default
|
|
warnings.warn("nn.functional.upsample_bilinear is deprecated. Use nn.functional.upsample instead.")
|
|
return upsample(input, size, scale_factor, mode='bilinear', align_corners=True)
|
|
|
|
|
|
def grid_sample(input, grid, mode='bilinear', padding_mode='zeros'):
|
|
r"""Given an :attr:`input` and a flow-field :attr:`grid`, computes the
|
|
`output` using input pixel locations from the grid.
|
|
|
|
Uses bilinear interpolation to sample the input pixels.
|
|
Currently, only spatial (4 dimensional) and volumetric (5 dimensional)
|
|
inputs are supported.
|
|
|
|
For each output location, :attr:`grid` has `x`, `y`
|
|
input pixel locations which are used to compute output.
|
|
In the case of 5D inputs, :attr:`grid` has `x`, `y`, `z` pixel locations.
|
|
|
|
.. Note::
|
|
To avoid confusion in notation, let's note that `x` corresponds to the `width` dimension `IW`,
|
|
`y` corresponds to the height dimension `IH` and `z` corresponds to the `depth` dimension `ID`.
|
|
|
|
:attr:`grid` has values in the range of `[-1, 1]`. This is because the
|
|
pixel locations are normalized by the input height and width.
|
|
|
|
For example, values: x: -1, y: -1 is the left-top pixel of the input, and
|
|
values: x: 1, y: 1 is the right-bottom pixel of the input.
|
|
|
|
If :attr:`grid` has values outside the range of `[-1, 1]`, those locations
|
|
are handled as defined by `padding_mode`. Options are `zeros` or `border`,
|
|
defining those locations to use 0 or image border values as contribution
|
|
to the bilinear interpolation.
|
|
|
|
.. Note:: This function is used in building Spatial Transformer Networks
|
|
|
|
Args:
|
|
input (Tensor): input batch (N x C x IH x IW) or (N x C x ID x IH x IW)
|
|
grid (Tensor): flow-field of size (N x OH x OW x 2) or (N x OD x OH x OW x 3)
|
|
padding_mode (str): padding mode for outside grid values
|
|
'zeros' | 'border'. Default: 'zeros'
|
|
|
|
Returns:
|
|
output (Tensor): output Tensor
|
|
|
|
"""
|
|
if mode != 'bilinear':
|
|
raise NotImplementedError("nn.functional.grid_sample got unsupported mode: '{}'".format(mode))
|
|
return vision.grid_sampler(input, grid, padding_mode)
|
|
|
|
|
|
def affine_grid(theta, size):
|
|
r"""Generates a 2d flow field, given a batch of affine matrices :attr:`theta`
|
|
Generally used in conjunction with :func:`grid_sample` to
|
|
implement Spatial Transformer Networks.
|
|
|
|
Args:
|
|
theta (Tensor): input batch of affine matrices (:math:`N \times 2 \times 3`)
|
|
size (torch.Size): the target output image size (:math:`N \times C \times H \times W`)
|
|
Example: torch.Size((32, 3, 24, 24))
|
|
|
|
Returns:
|
|
output (Tensor): output Tensor of size (:math:`N \times H \times W \times 2`)
|
|
"""
|
|
return vision.affine_grid_generator(theta, size)
|
|
|
|
|
|
def pad(input, pad, mode='constant', value=0):
|
|
r"""Pads tensor.
|
|
|
|
`Nd` constant padding: The number of dimensions to pad is
|
|
:math:`\left\lfloor\frac{len(padding)}{2}\right\rfloor` and the dimensions that get padded begins with the
|
|
last dimension and moves forward. See below for examples.
|
|
|
|
`1D`, `2D` and `3D` "reflect" / "replicate" padding:
|
|
for 1D:
|
|
3D input tensor with padding of the form `(padLeft, padRight)`
|
|
for 2D:
|
|
4D input tensor with padding of the form `(padLeft, padRight, padTop, padBottom)`.
|
|
for 3D:
|
|
5D input tensor with padding of the form
|
|
`(padLeft, padRight, padTop, padBottom, padFront, padBack)`. No "reflect" implementation.
|
|
|
|
See :class:`torch.nn.ConstantPad2d`, :class:`torch.nn.ReflectionPad2d`, and
|
|
:class:`torch.nn.ReplicationPad2d` for concrete examples on how each of the
|
|
padding modes works.
|
|
|
|
Args:
|
|
input (Tensor): `Nd` tensor
|
|
pad (tuple): m-elem tuple, where :math:`\frac{m}{2} \leq` input dimensions and :math:`m` is even.
|
|
mode: 'constant', 'reflect' or 'replicate'. Default: 'constant'
|
|
value: fill value for 'constant' padding. Default: 0
|
|
|
|
Examples::
|
|
|
|
>>> t4d = torch.empty(3, 3, 4, 2)
|
|
>>> p1d = (1, 1) # pad last dim by 1 on each side
|
|
>>> out = F.pad(t4d, p1d, "constant", 0) # effectively zero padding
|
|
>>> print(out.data.size())
|
|
torch.Size([3, 3, 4, 4])
|
|
>>> p2d = (1, 1, 2, 2) # pad last dim by (1, 1) and 2nd to last by (2, 2)
|
|
>>> out = F.pad(t4d, p2d, "constant", 0)
|
|
>>> print(out.data.size())
|
|
torch.Size([3, 3, 8, 4])
|
|
>>> t4d = torch.empty(3, 3, 4, 2)
|
|
>>> p3d = (0, 1, 2, 1, 3, 3) # pad by (0, 1), (2, 1), and (3, 3)
|
|
>>> out = F.pad(t4d, p3d, "constant", 0)
|
|
>>> print(out.data.size())
|
|
torch.Size([3, 9, 7, 3])
|
|
|
|
"""
|
|
assert len(pad) % 2 == 0, 'Padding length must be divisible by 2'
|
|
assert len(pad) // 2 <= input.dim(), 'Padding length too large'
|
|
if mode == 'constant':
|
|
return ConstantPadNd.apply(input, pad, value)
|
|
else:
|
|
assert value == 0, 'Padding mode "{}"" doesn\'t take in value argument'.format(mode)
|
|
if input.dim() == 3:
|
|
assert len(pad) == 2, '3D tensors expect 2 values for padding'
|
|
if mode == 'reflect':
|
|
return torch._C._nn.reflection_pad1d(input, pad)
|
|
elif mode == 'replicate':
|
|
return torch._C._nn.replication_pad1d(input, pad)
|
|
elif input.dim() == 4:
|
|
assert len(pad) == 4, '4D tensors expect 4 values for padding'
|
|
if mode == 'reflect':
|
|
return torch._C._nn.reflection_pad2d(input, pad)
|
|
elif mode == 'replicate':
|
|
return torch._C._nn.replication_pad2d(input, pad)
|
|
elif input.dim() == 5:
|
|
assert len(pad) == 6, '5D tensors expect 6 values for padding'
|
|
if mode == 'reflect':
|
|
raise NotImplementedError
|
|
elif mode == 'replicate':
|
|
return torch._C._nn.replication_pad3d(input, pad)
|
|
else:
|
|
raise NotImplementedError("Only 3D, 4D, 5D padding with non-constant padding are supported for now")
|
|
|
|
|
|
# distance
|
|
|
|
def pairwise_distance(x1, x2, p=2, eps=1e-6, keepdim=False):
|
|
r"""
|
|
See :class:`torch.nn.PairwiseDistance` for details
|
|
"""
|
|
return torch.pairwise_distance(x1, x2, p, eps, keepdim)
|
|
|
|
|
|
def cosine_similarity(x1, x2, dim=1, eps=1e-8):
|
|
r"""Returns cosine similarity between x1 and x2, computed along dim.
|
|
|
|
.. math ::
|
|
\text{similarity} = \dfrac{x_1 \cdot x_2}{\max(\Vert x_1 \Vert _2 \cdot \Vert x_2 \Vert _2, \epsilon)}
|
|
|
|
Args:
|
|
x1 (Tensor): First input.
|
|
x2 (Tensor): Second input (of size matching x1).
|
|
dim (int, optional): Dimension of vectors. Default: 1
|
|
eps (float, optional): Small value to avoid division by zero.
|
|
Default: 1e-8
|
|
|
|
Shape:
|
|
- Input: :math:`(\ast_1, D, \ast_2)` where D is at position `dim`.
|
|
- Output: :math:`(\ast_1, \ast_2)` where 1 is at position `dim`.
|
|
|
|
Example::
|
|
|
|
>>> input1 = torch.randn(100, 128)
|
|
>>> input2 = torch.randn(100, 128)
|
|
>>> output = F.cosine_similarity(input1, input2)
|
|
>>> print(output)
|
|
"""
|
|
w12 = torch.sum(x1 * x2, dim)
|
|
w1 = torch.norm(x1, 2, dim)
|
|
w2 = torch.norm(x2, 2, dim)
|
|
return w12 / (w1 * w2).clamp(min=eps)
|
|
|
|
|
|
def triplet_margin_loss(anchor, positive, negative, margin=1.0, p=2, eps=1e-6, swap=False, size_average=True,
|
|
reduce=True):
|
|
r"""
|
|
See :class:`~torch.nn.TripletMarginLoss` for details
|
|
"""
|
|
return torch.triplet_margin_loss(anchor, positive, negative, margin, p, eps,
|
|
swap, size_average, reduce)
|
|
|
|
|
|
def normalize(input, p=2, dim=1, eps=1e-12):
|
|
r"""Performs :math:`L_p` normalization of inputs over specified dimension.
|
|
|
|
Does:
|
|
|
|
.. math::
|
|
v = \frac{v}{\max(\lVert v \rVert_p, \epsilon)}
|
|
|
|
for each subtensor v over dimension dim of input. Each subtensor is
|
|
flattened into a vector, i.e. :math:`\lVert v \rVert_p` is not a matrix
|
|
norm.
|
|
|
|
With default arguments normalizes over the second dimension with Euclidean
|
|
norm.
|
|
|
|
Args:
|
|
input: input tensor of any shape
|
|
p (float): the exponent value in the norm formulation. Default: 2
|
|
dim (int): the dimension to reduce. Default: 1
|
|
eps (float): small value to avoid division by zero. Default: 1e-12
|
|
"""
|
|
return input / input.norm(p, dim, True).clamp(min=eps).expand_as(input)
|
|
|
|
|
|
def assert_int_or_pair(arg, arg_name, message):
|
|
assert isinstance(arg, int) or len(arg) == 2, message.format(arg_name)
|
|
|
|
|
|
def unfold(input, kernel_size, dilation=1, padding=0, stride=1):
|
|
r"""Creates array of convolution patches from :math:`(N,C,H,W)`-tensor
|
|
|
|
See :class:`torch.nn.Unfold` for details
|
|
"""
|
|
|
|
if input is not None and input.dim() == 4:
|
|
msg = '{} must be int or 2-tuple for 4D input'
|
|
assert_int_or_pair(kernel_size, 'kernel_size', msg)
|
|
assert_int_or_pair(dilation, 'dilation', msg)
|
|
assert_int_or_pair(padding, 'padding', msg)
|
|
assert_int_or_pair(stride, 'stride', msg)
|
|
|
|
return Im2Col.apply(input, _pair(kernel_size),
|
|
_pair(dilation), _pair(padding), _pair(stride))
|
|
else:
|
|
raise NotImplementedError("Input Error: Only 4D input Tensors supported (got {}D)".format(input.dim()))
|
|
|
|
|
|
def fold(input, output_size, kernel_size, dilation=1, padding=0, stride=1):
|
|
r"""Combines array of convolution patches to :math:`(N,C,H,W)`-tensor
|
|
|
|
See :class:`torch.nn.Fold` for details
|
|
"""
|
|
if input is not None and input.dim() == 3:
|
|
msg = '{} must be int or 2-tuple for 3D input'
|
|
assert_int_or_pair(output_size, 'output_size', msg)
|
|
assert_int_or_pair(kernel_size, 'kernel_size', msg)
|
|
assert_int_or_pair(dilation, 'dilation', msg)
|
|
assert_int_or_pair(padding, 'padding', msg)
|
|
assert_int_or_pair(stride, 'stride', msg)
|
|
|
|
return Col2Im.apply(input, _pair(output_size), _pair(kernel_size),
|
|
_pair(dilation), _pair(padding), _pair(stride))
|
|
else:
|
|
raise NotImplementedError("Input Error: Only 3D input Tensors supported (got {}D)".format(input.dim()))
|