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Source code for torch.nn.modules.activation

import warnings
from typing import Optional, Tuple

import torch
from torch import Tensor
from .linear import NonDynamicallyQuantizableLinear
from torch.nn.init import constant_, xavier_normal_, xavier_uniform_
from torch.nn.parameter import Parameter
from .module import Module
from .. import functional as F

__all__ = ['Threshold', 'ReLU', 'RReLU', 'Hardtanh', 'ReLU6', 'Sigmoid', 'Hardsigmoid', 'Tanh',
           'SiLU', 'Mish', 'Hardswish', 'ELU', 'CELU', 'SELU', 'GLU', 'GELU', 'Hardshrink', 'LeakyReLU',
           'LogSigmoid', 'Softplus', 'Softshrink', 'MultiheadAttention', 'PReLU', 'Softsign', 'Tanhshrink',
           'Softmin', 'Softmax', 'Softmax2d', 'LogSoftmax']


[docs]class Threshold(Module): r"""Thresholds each element of the input Tensor. Threshold is defined as: .. math:: y = \begin{cases} x, &\text{ if } x > \text{threshold} \\ \text{value}, &\text{ otherwise } \end{cases} Args: threshold: The value to threshold at value: The value to replace with inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. Examples:: >>> m = nn.Threshold(0.1, 20) >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['threshold', 'value', 'inplace'] threshold: float value: float inplace: bool def __init__(self, threshold: float, value: float, inplace: bool = False) -> None: super().__init__() self.threshold = threshold self.value = value self.inplace = inplace # TODO: check in THNN (if inplace == True, then assert value <= threshold) def forward(self, input: Tensor) -> Tensor: return F.threshold(input, self.threshold, self.value, self.inplace) def extra_repr(self): inplace_str = ', inplace=True' if self.inplace else '' return f'threshold={self.threshold}, value={self.value}{inplace_str}'
[docs]class ReLU(Module): r"""Applies the rectified linear unit function element-wise: :math:`\text{ReLU}(x) = (x)^+ = \max(0, x)` Args: inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/ReLU.png Examples:: >>> m = nn.ReLU() >>> input = torch.randn(2) >>> output = m(input) An implementation of CReLU - https://arxiv.org/abs/1603.05201 >>> m = nn.ReLU() >>> input = torch.randn(2).unsqueeze(0) >>> output = torch.cat((m(input), m(-input))) """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace: bool = False): super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.relu(input, inplace=self.inplace) def extra_repr(self) -> str: inplace_str = 'inplace=True' if self.inplace else '' return inplace_str
[docs]class RReLU(Module): r"""Applies the randomized leaky rectified linear unit function, element-wise, as described in the paper: `Empirical Evaluation of Rectified Activations in Convolutional Network`_. The function is defined as: .. math:: \text{RReLU}(x) = \begin{cases} x & \text{if } x \geq 0 \\ ax & \text{ otherwise } \end{cases} where :math:`a` is randomly sampled from uniform distribution :math:`\mathcal{U}(\text{lower}, \text{upper})` during training while during evaluation :math:`a` is fixed with :math:`a = \frac{\text{lower} + \text{upper}}{2}`. See: https://arxiv.org/pdf/1505.00853.pdf Args: lower: lower bound of the uniform distribution. Default: :math:`\frac{1}{8}` upper: upper bound of the uniform distribution. Default: :math:`\frac{1}{3}` inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/RReLU.png Examples:: >>> m = nn.RReLU(0.1, 0.3) >>> input = torch.randn(2) >>> output = m(input) .. _`Empirical Evaluation of Rectified Activations in Convolutional Network`: https://arxiv.org/abs/1505.00853 """ __constants__ = ['lower', 'upper', 'inplace'] lower: float upper: float inplace: bool def __init__( self, lower: float = 1. / 8, upper: float = 1. / 3, inplace: bool = False ): super().__init__() self.lower = lower self.upper = upper self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.rrelu(input, self.lower, self.upper, self.training, self.inplace) def extra_repr(self): inplace_str = ', inplace=True' if self.inplace else '' return f'lower={self.lower}, upper={self.upper}{inplace_str}'
[docs]class Hardtanh(Module): r"""Applies the HardTanh function element-wise. HardTanh is defined as: .. math:: \text{HardTanh}(x) = \begin{cases} \text{max\_val} & \text{ if } x > \text{ max\_val } \\ \text{min\_val} & \text{ if } x < \text{ min\_val } \\ x & \text{ otherwise } \\ \end{cases} Args: min_val: minimum value of the linear region range. Default: -1 max_val: maximum value of the linear region range. Default: 1 inplace: can optionally do the operation in-place. Default: ``False`` Keyword arguments :attr:`min_value` and :attr:`max_value` have been deprecated in favor of :attr:`min_val` and :attr:`max_val`. Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Hardtanh.png Examples:: >>> m = nn.Hardtanh(-2, 2) >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['min_val', 'max_val', 'inplace'] min_val: float max_val: float inplace: bool def __init__( self, min_val: float = -1., max_val: float = 1., inplace: bool = False, min_value: Optional[float] = None, max_value: Optional[float] = None ) -> None: super().__init__() if min_value is not None: warnings.warn("keyword argument min_value is deprecated and rename to min_val") min_val = min_value if max_value is not None: warnings.warn("keyword argument max_value is deprecated and rename to max_val") max_val = max_value self.min_val = min_val self.max_val = max_val self.inplace = inplace assert self.max_val > self.min_val def forward(self, input: Tensor) -> Tensor: return F.hardtanh(input, self.min_val, self.max_val, self.inplace) def extra_repr(self) -> str: inplace_str = ', inplace=True' if self.inplace else '' return f'min_val={self.min_val}, max_val={self.max_val}{inplace_str}'
[docs]class ReLU6(Hardtanh): r"""Applies the element-wise function: .. math:: \text{ReLU6}(x) = \min(\max(0,x), 6) Args: inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/ReLU6.png Examples:: >>> m = nn.ReLU6() >>> input = torch.randn(2) >>> output = m(input) """ def __init__(self, inplace: bool = False): super().__init__(0., 6., inplace) def extra_repr(self) -> str: inplace_str = 'inplace=True' if self.inplace else '' return inplace_str
[docs]class Sigmoid(Module): r"""Applies the element-wise function: .. math:: \text{Sigmoid}(x) = \sigma(x) = \frac{1}{1 + \exp(-x)} Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Sigmoid.png Examples:: >>> m = nn.Sigmoid() >>> input = torch.randn(2) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: return torch.sigmoid(input)
[docs]class Hardsigmoid(Module): r"""Applies the Hardsigmoid function element-wise. Hardsigmoid is defined as: .. math:: \text{Hardsigmoid}(x) = \begin{cases} 0 & \text{if~} x \le -3, \\ 1 & \text{if~} x \ge +3, \\ x / 6 + 1 / 2 & \text{otherwise} \end{cases} Args: inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Hardsigmoid.png Examples:: >>> m = nn.Hardsigmoid() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace : bool = False) -> None: super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.hardsigmoid(input, self.inplace)
[docs]class Tanh(Module): r"""Applies the Hyperbolic Tangent (Tanh) function element-wise. Tanh is defined as: .. math:: \text{Tanh}(x) = \tanh(x) = \frac{\exp(x) - \exp(-x)} {\exp(x) + \exp(-x)} Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Tanh.png Examples:: >>> m = nn.Tanh() >>> input = torch.randn(2) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: return torch.tanh(input)
[docs]class SiLU(Module): r"""Applies the Sigmoid Linear Unit (SiLU) function, element-wise. The SiLU function is also known as the swish function. .. math:: \text{silu}(x) = x * \sigma(x), \text{where } \sigma(x) \text{ is the logistic sigmoid.} .. note:: See `Gaussian Error Linear Units (GELUs) <https://arxiv.org/abs/1606.08415>`_ where the SiLU (Sigmoid Linear Unit) was originally coined, and see `Sigmoid-Weighted Linear Units for Neural Network Function Approximation in Reinforcement Learning <https://arxiv.org/abs/1702.03118>`_ and `Swish: a Self-Gated Activation Function <https://arxiv.org/abs/1710.05941v1>`_ where the SiLU was experimented with later. Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/SiLU.png Examples:: >>> m = nn.SiLU() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace: bool = False): super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.silu(input, inplace=self.inplace) def extra_repr(self) -> str: inplace_str = 'inplace=True' if self.inplace else '' return inplace_str
[docs]class Mish(Module): r"""Applies the Mish function, element-wise. Mish: A Self Regularized Non-Monotonic Neural Activation Function. .. math:: \text{Mish}(x) = x * \text{Tanh}(\text{Softplus}(x)) .. note:: See `Mish: A Self Regularized Non-Monotonic Neural Activation Function <https://arxiv.org/abs/1908.08681>`_ Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Mish.png Examples:: >>> m = nn.Mish() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace: bool = False): super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.mish(input, inplace=self.inplace) def extra_repr(self) -> str: inplace_str = 'inplace=True' if self.inplace else '' return inplace_str
[docs]class Hardswish(Module): r"""Applies the Hardswish function, element-wise, as described in the paper: `Searching for MobileNetV3 <https://arxiv.org/abs/1905.02244>`_. Hardswish is defined as: .. math:: \text{Hardswish}(x) = \begin{cases} 0 & \text{if~} x \le -3, \\ x & \text{if~} x \ge +3, \\ x \cdot (x + 3) /6 & \text{otherwise} \end{cases} Args: inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Hardswish.png Examples:: >>> m = nn.Hardswish() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace : bool = False) -> None: super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.hardswish(input, self.inplace)
[docs]class ELU(Module): r"""Applies the Exponential Linear Unit (ELU) function, element-wise, as described in the paper: `Fast and Accurate Deep Network Learning by Exponential Linear Units (ELUs) <https://arxiv.org/abs/1511.07289>`__. ELU is defined as: .. math:: \text{ELU}(x) = \begin{cases} x, & \text{ if } x > 0\\ \alpha * (\exp(x) - 1), & \text{ if } x \leq 0 \end{cases} Args: alpha: the :math:`\alpha` value for the ELU formulation. Default: 1.0 inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/ELU.png Examples:: >>> m = nn.ELU() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['alpha', 'inplace'] alpha: float inplace: bool def __init__(self, alpha: float = 1., inplace: bool = False) -> None: super().__init__() self.alpha = alpha self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.elu(input, self.alpha, self.inplace) def extra_repr(self) -> str: inplace_str = ', inplace=True' if self.inplace else '' return f'alpha={self.alpha}{inplace_str}'
[docs]class CELU(Module): r"""Applies the element-wise function: .. math:: \text{CELU}(x) = \max(0,x) + \min(0, \alpha * (\exp(x/\alpha) - 1)) More details can be found in the paper `Continuously Differentiable Exponential Linear Units`_ . Args: alpha: the :math:`\alpha` value for the CELU formulation. Default: 1.0 inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/CELU.png Examples:: >>> m = nn.CELU() >>> input = torch.randn(2) >>> output = m(input) .. _`Continuously Differentiable Exponential Linear Units`: https://arxiv.org/abs/1704.07483 """ __constants__ = ['alpha', 'inplace'] alpha: float inplace: bool def __init__(self, alpha: float = 1., inplace: bool = False) -> None: super().__init__() self.alpha = alpha self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.celu(input, self.alpha, self.inplace) def extra_repr(self) -> str: inplace_str = ', inplace=True' if self.inplace else '' return f'alpha={self.alpha}{inplace_str}'
[docs]class SELU(Module): r"""Applied element-wise, as: .. math:: \text{SELU}(x) = \text{scale} * (\max(0,x) + \min(0, \alpha * (\exp(x) - 1))) with :math:`\alpha = 1.6732632423543772848170429916717` and :math:`\text{scale} = 1.0507009873554804934193349852946`. .. warning:: When using ``kaiming_normal`` or ``kaiming_normal_`` for initialisation, ``nonlinearity='linear'`` should be used instead of ``nonlinearity='selu'`` in order to get `Self-Normalizing Neural Networks`_. See :func:`torch.nn.init.calculate_gain` for more information. More details can be found in the paper `Self-Normalizing Neural Networks`_ . Args: inplace (bool, optional): can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/SELU.png Examples:: >>> m = nn.SELU() >>> input = torch.randn(2) >>> output = m(input) .. _Self-Normalizing Neural Networks: https://arxiv.org/abs/1706.02515 """ __constants__ = ['inplace'] inplace: bool def __init__(self, inplace: bool = False) -> None: super().__init__() self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.selu(input, self.inplace) def extra_repr(self) -> str: inplace_str = 'inplace=True' if self.inplace else '' return inplace_str
[docs]class GLU(Module): r"""Applies the gated linear unit function :math:`{GLU}(a, b)= a \otimes \sigma(b)` where :math:`a` is the first half of the input matrices and :math:`b` is the second half. Args: dim (int): the dimension on which to split the input. Default: -1 Shape: - Input: :math:`(\ast_1, N, \ast_2)` where `*` means, any number of additional dimensions - Output: :math:`(\ast_1, M, \ast_2)` where :math:`M=N/2` Examples:: >>> m = nn.GLU() >>> input = torch.randn(4, 2) >>> output = m(input) """ __constants__ = ['dim'] dim: int def __init__(self, dim: int = -1) -> None: super().__init__() self.dim = dim def forward(self, input: Tensor) -> Tensor: return F.glu(input, self.dim) def extra_repr(self) -> str: return f'dim={self.dim}'
[docs]class GELU(Module): r"""Applies the Gaussian Error Linear Units function: .. math:: \text{GELU}(x) = x * \Phi(x) where :math:`\Phi(x)` is the Cumulative Distribution Function for Gaussian Distribution. When the approximate argument is 'tanh', Gelu is estimated with: .. math:: \text{GELU}(x) = 0.5 * x * (1 + \text{Tanh}(\sqrt{2 / \pi} * (x + 0.044715 * x^3))) Args: approximate (str, optional): the gelu approximation algorithm to use: ``'none'`` | ``'tanh'``. Default: ``'none'`` Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/GELU.png Examples:: >>> m = nn.GELU() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['approximate'] approximate: str def __init__(self, approximate: str = 'none') -> None: super().__init__() self.approximate = approximate def forward(self, input: Tensor) -> Tensor: return F.gelu(input, approximate=self.approximate) def extra_repr(self) -> str: return f'approximate={repr(self.approximate)}'
[docs]class Hardshrink(Module): r"""Applies the Hard Shrinkage (Hardshrink) function element-wise. Hardshrink is defined as: .. math:: \text{HardShrink}(x) = \begin{cases} x, & \text{ if } x > \lambda \\ x, & \text{ if } x < -\lambda \\ 0, & \text{ otherwise } \end{cases} Args: lambd: the :math:`\lambda` value for the Hardshrink formulation. Default: 0.5 Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Hardshrink.png Examples:: >>> m = nn.Hardshrink() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['lambd'] lambd: float def __init__(self, lambd: float = 0.5) -> None: super().__init__() self.lambd = lambd def forward(self, input: Tensor) -> Tensor: return F.hardshrink(input, self.lambd) def extra_repr(self) -> str: return f'{self.lambd}'
[docs]class LeakyReLU(Module): r"""Applies the element-wise function: .. math:: \text{LeakyReLU}(x) = \max(0, x) + \text{negative\_slope} * \min(0, x) or .. math:: \text{LeakyReLU}(x) = \begin{cases} x, & \text{ if } x \geq 0 \\ \text{negative\_slope} \times x, & \text{ otherwise } \end{cases} Args: negative_slope: Controls the angle of the negative slope (which is used for negative input values). Default: 1e-2 inplace: can optionally do the operation in-place. Default: ``False`` Shape: - Input: :math:`(*)` where `*` means, any number of additional dimensions - Output: :math:`(*)`, same shape as the input .. image:: ../scripts/activation_images/LeakyReLU.png Examples:: >>> m = nn.LeakyReLU(0.1) >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['inplace', 'negative_slope'] inplace: bool negative_slope: float def __init__(self, negative_slope: float = 1e-2, inplace: bool = False) -> None: super().__init__() self.negative_slope = negative_slope self.inplace = inplace def forward(self, input: Tensor) -> Tensor: return F.leaky_relu(input, self.negative_slope, self.inplace) def extra_repr(self) -> str: inplace_str = ', inplace=True' if self.inplace else '' return f'negative_slope={self.negative_slope}{inplace_str}'
[docs]class LogSigmoid(Module): r"""Applies the element-wise function: .. math:: \text{LogSigmoid}(x) = \log\left(\frac{ 1 }{ 1 + \exp(-x)}\right) Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/LogSigmoid.png Examples:: >>> m = nn.LogSigmoid() >>> input = torch.randn(2) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: return F.logsigmoid(input)
[docs]class Softplus(Module): r"""Applies the Softplus function :math:`\text{Softplus}(x) = \frac{1}{\beta} * \log(1 + \exp(\beta * x))` element-wise. SoftPlus is a smooth approximation to the ReLU function and can be used to constrain the output of a machine to always be positive. For numerical stability the implementation reverts to the linear function when :math:`input \times \beta > threshold`. Args: beta: the :math:`\beta` value for the Softplus formulation. Default: 1 threshold: values above this revert to a linear function. Default: 20 Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Softplus.png Examples:: >>> m = nn.Softplus() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['beta', 'threshold'] beta: int threshold: int def __init__(self, beta: int = 1, threshold: int = 20) -> None: super().__init__() self.beta = beta self.threshold = threshold def forward(self, input: Tensor) -> Tensor: return F.softplus(input, self.beta, self.threshold) def extra_repr(self) -> str: return f'beta={self.beta}, threshold={self.threshold}'
[docs]class Softshrink(Module): r"""Applies the soft shrinkage function elementwise: .. math:: \text{SoftShrinkage}(x) = \begin{cases} x - \lambda, & \text{ if } x > \lambda \\ x + \lambda, & \text{ if } x < -\lambda \\ 0, & \text{ otherwise } \end{cases} Args: lambd: the :math:`\lambda` (must be no less than zero) value for the Softshrink formulation. Default: 0.5 Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Softshrink.png Examples:: >>> m = nn.Softshrink() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['lambd'] lambd: float def __init__(self, lambd: float = 0.5) -> None: super().__init__() self.lambd = lambd def forward(self, input: Tensor) -> Tensor: return F.softshrink(input, self.lambd) def extra_repr(self) -> str: return str(self.lambd)
def _check_arg_device(x: Optional[torch.Tensor]) -> bool: if x is not None: return x.device.type in ["cpu", "cuda", torch.utils.backend_registration._privateuse1_backend_name] return True def _arg_requires_grad(x: Optional[torch.Tensor]) -> bool: if x is not None: return x.requires_grad return False def _is_make_fx_tracing(): if not torch.jit.is_scripting(): torch_dispatch_mode_stack = torch.utils._python_dispatch._get_current_dispatch_mode_stack() return any(type(x) == torch.fx.experimental.proxy_tensor.ProxyTorchDispatchMode for x in torch_dispatch_mode_stack) else: return False
[docs]class MultiheadAttention(Module): r"""Allows the model to jointly attend to information from different representation subspaces as described in the paper: `Attention Is All You Need <https://arxiv.org/abs/1706.03762>`_. Multi-Head Attention is defined as: .. math:: \text{MultiHead}(Q, K, V) = \text{Concat}(head_1,\dots,head_h)W^O where :math:`head_i = \text{Attention}(QW_i^Q, KW_i^K, VW_i^V)`. ``nn.MultiHeadAttention`` will use the optimized implementations of ``scaled_dot_product_attention()`` when possible. In addition to support for the new ``scaled_dot_product_attention()`` function, for speeding up Inference, MHA will use fastpath inference with support for Nested Tensors, iff: - self attention is being computed (i.e., ``query``, ``key``, and ``value`` are the same tensor). - inputs are batched (3D) with ``batch_first==True`` - Either autograd is disabled (using ``torch.inference_mode`` or ``torch.no_grad``) or no tensor argument ``requires_grad`` - training is disabled (using ``.eval()``) - ``add_bias_kv`` is ``False`` - ``add_zero_attn`` is ``False`` - ``batch_first`` is ``True`` and the input is batched - ``kdim`` and ``vdim`` are equal to ``embed_dim`` - if a `NestedTensor <https://pytorch.org/docs/stable/nested.html>`_ is passed, neither ``key_padding_mask`` nor ``attn_mask`` is passed - autocast is disabled If the optimized inference fastpath implementation is in use, a `NestedTensor <https://pytorch.org/docs/stable/nested.html>`_ can be passed for ``query``/``key``/``value`` to represent padding more efficiently than using a padding mask. In this case, a `NestedTensor <https://pytorch.org/docs/stable/nested.html>`_ will be returned, and an additional speedup proportional to the fraction of the input that is padding can be expected. Args: embed_dim: Total dimension of the model. num_heads: Number of parallel attention heads. Note that ``embed_dim`` will be split across ``num_heads`` (i.e. each head will have dimension ``embed_dim // num_heads``). dropout: Dropout probability on ``attn_output_weights``. Default: ``0.0`` (no dropout). bias: If specified, adds bias to input / output projection layers. Default: ``True``. add_bias_kv: If specified, adds bias to the key and value sequences at dim=0. Default: ``False``. add_zero_attn: If specified, adds a new batch of zeros to the key and value sequences at dim=1. Default: ``False``. kdim: Total number of features for keys. Default: ``None`` (uses ``kdim=embed_dim``). vdim: Total number of features for values. Default: ``None`` (uses ``vdim=embed_dim``). batch_first: If ``True``, then the input and output tensors are provided as (batch, seq, feature). Default: ``False`` (seq, batch, feature). Examples:: >>> # xdoctest: +SKIP >>> multihead_attn = nn.MultiheadAttention(embed_dim, num_heads) >>> attn_output, attn_output_weights = multihead_attn(query, key, value) .. _`FlashAttention: Fast and Memory-Efficient Exact Attention with IO-Awareness`: https://arxiv.org/abs/2205.14135 """ __constants__ = ['batch_first'] bias_k: Optional[torch.Tensor] bias_v: Optional[torch.Tensor] def __init__(self, embed_dim, num_heads, dropout=0., bias=True, add_bias_kv=False, add_zero_attn=False, kdim=None, vdim=None, batch_first=False, device=None, dtype=None) -> None: if embed_dim <= 0 or num_heads <= 0: raise ValueError( f"embed_dim and num_heads must be greater than 0," f" got embed_dim={embed_dim} and num_heads={num_heads} instead" ) factory_kwargs = {'device': device, 'dtype': dtype} super().__init__() self.embed_dim = embed_dim self.kdim = kdim if kdim is not None else embed_dim self.vdim = vdim if vdim is not None else embed_dim self._qkv_same_embed_dim = self.kdim == embed_dim and self.vdim == embed_dim self.num_heads = num_heads self.dropout = dropout self.batch_first = batch_first self.head_dim = embed_dim // num_heads assert self.head_dim * num_heads == self.embed_dim, "embed_dim must be divisible by num_heads" if not self._qkv_same_embed_dim: self.q_proj_weight = Parameter(torch.empty((embed_dim, embed_dim), **factory_kwargs)) self.k_proj_weight = Parameter(torch.empty((embed_dim, self.kdim), **factory_kwargs)) self.v_proj_weight = Parameter(torch.empty((embed_dim, self.vdim), **factory_kwargs)) self.register_parameter('in_proj_weight', None) else: self.in_proj_weight = Parameter(torch.empty((3 * embed_dim, embed_dim), **factory_kwargs)) self.register_parameter('q_proj_weight', None) self.register_parameter('k_proj_weight', None) self.register_parameter('v_proj_weight', None) if bias: self.in_proj_bias = Parameter(torch.empty(3 * embed_dim, **factory_kwargs)) else: self.register_parameter('in_proj_bias', None) self.out_proj = NonDynamicallyQuantizableLinear(embed_dim, embed_dim, bias=bias, **factory_kwargs) if add_bias_kv: self.bias_k = Parameter(torch.empty((1, 1, embed_dim), **factory_kwargs)) self.bias_v = Parameter(torch.empty((1, 1, embed_dim), **factory_kwargs)) else: self.bias_k = self.bias_v = None self.add_zero_attn = add_zero_attn self._reset_parameters() def _reset_parameters(self): if self._qkv_same_embed_dim: xavier_uniform_(self.in_proj_weight) else: xavier_uniform_(self.q_proj_weight) xavier_uniform_(self.k_proj_weight) xavier_uniform_(self.v_proj_weight) if self.in_proj_bias is not None: constant_(self.in_proj_bias, 0.) constant_(self.out_proj.bias, 0.) if self.bias_k is not None: xavier_normal_(self.bias_k) if self.bias_v is not None: xavier_normal_(self.bias_v) def __setstate__(self, state): # Support loading old MultiheadAttention checkpoints generated by v1.1.0 if '_qkv_same_embed_dim' not in state: state['_qkv_same_embed_dim'] = True super().__setstate__(state)
[docs] def forward( self, query: Tensor, key: Tensor, value: Tensor, key_padding_mask: Optional[Tensor] = None, need_weights: bool = True, attn_mask: Optional[Tensor] = None, average_attn_weights: bool = True, is_causal : bool = False) -> Tuple[Tensor, Optional[Tensor]]: r""" Args: query: Query embeddings of shape :math:`(L, E_q)` for unbatched input, :math:`(L, N, E_q)` when ``batch_first=False`` or :math:`(N, L, E_q)` when ``batch_first=True``, where :math:`L` is the target sequence length, :math:`N` is the batch size, and :math:`E_q` is the query embedding dimension ``embed_dim``. Queries are compared against key-value pairs to produce the output. See "Attention Is All You Need" for more details. key: Key embeddings of shape :math:`(S, E_k)` for unbatched input, :math:`(S, N, E_k)` when ``batch_first=False`` or :math:`(N, S, E_k)` when ``batch_first=True``, where :math:`S` is the source sequence length, :math:`N` is the batch size, and :math:`E_k` is the key embedding dimension ``kdim``. See "Attention Is All You Need" for more details. value: Value embeddings of shape :math:`(S, E_v)` for unbatched input, :math:`(S, N, E_v)` when ``batch_first=False`` or :math:`(N, S, E_v)` when ``batch_first=True``, where :math:`S` is the source sequence length, :math:`N` is the batch size, and :math:`E_v` is the value embedding dimension ``vdim``. See "Attention Is All You Need" for more details. key_padding_mask: If specified, a mask of shape :math:`(N, S)` indicating which elements within ``key`` to ignore for the purpose of attention (i.e. treat as "padding"). For unbatched `query`, shape should be :math:`(S)`. Binary and float masks are supported. For a binary mask, a ``True`` value indicates that the corresponding ``key`` value will be ignored for the purpose of attention. For a float mask, it will be directly added to the corresponding ``key`` value. need_weights: If specified, returns ``attn_output_weights`` in addition to ``attn_outputs``. Set ``need_weights=False`` to use the optimized ``scaled_dot_product_attention`` and achieve the best performance for MHA. Default: ``True``. attn_mask: If specified, a 2D or 3D mask preventing attention to certain positions. Must be of shape :math:`(L, S)` or :math:`(N\cdot\text{num\_heads}, L, S)`, where :math:`N` is the batch size, :math:`L` is the target sequence length, and :math:`S` is the source sequence length. A 2D mask will be broadcasted across the batch while a 3D mask allows for a different mask for each entry in the batch. Binary and float masks are supported. For a binary mask, a ``True`` value indicates that the corresponding position is not allowed to attend. For a float mask, the mask values will be added to the attention weight. If both attn_mask and key_padding_mask are supplied, their types should match. average_attn_weights: If true, indicates that the returned ``attn_weights`` should be averaged across heads. Otherwise, ``attn_weights`` are provided separately per head. Note that this flag only has an effect when ``need_weights=True``. Default: ``True`` (i.e. average weights across heads) is_causal: If specified, applies a causal mask as attention mask. Default: ``False``. Warning: ``is_causal`` provides a hint that ``attn_mask`` is the causal mask. Providing incorrect hints can result in incorrect execution, including forward and backward compatibility. Outputs: - **attn_output** - Attention outputs of shape :math:`(L, E)` when input is unbatched, :math:`(L, N, E)` when ``batch_first=False`` or :math:`(N, L, E)` when ``batch_first=True``, where :math:`L` is the target sequence length, :math:`N` is the batch size, and :math:`E` is the embedding dimension ``embed_dim``. - **attn_output_weights** - Only returned when ``need_weights=True``. If ``average_attn_weights=True``, returns attention weights averaged across heads of shape :math:`(L, S)` when input is unbatched or :math:`(N, L, S)`, where :math:`N` is the batch size, :math:`L` is the target sequence length, and :math:`S` is the source sequence length. If ``average_attn_weights=False``, returns attention weights per head of shape :math:`(\text{num\_heads}, L, S)` when input is unbatched or :math:`(N, \text{num\_heads}, L, S)`. .. note:: `batch_first` argument is ignored for unbatched inputs. """ why_not_fast_path = '' if ((attn_mask is not None and torch.is_floating_point(attn_mask)) or (key_padding_mask is not None) and torch.is_floating_point(key_padding_mask)): why_not_fast_path = "floating-point masks are not supported for fast path." is_batched = query.dim() == 3 key_padding_mask = F._canonical_mask( mask=key_padding_mask, mask_name="key_padding_mask", other_type=F._none_or_dtype(attn_mask), other_name="attn_mask", target_type=query.dtype ) attn_mask = F._canonical_mask( mask=attn_mask, mask_name="attn_mask", other_type=None, other_name="", target_type=query.dtype, check_other=False, ) if not is_batched: why_not_fast_path = f"input not batched; expected query.dim() of 3 but got {query.dim()}" elif query is not key or key is not value: # When lifting this restriction, don't forget to either # enforce that the dtypes all match or test cases where # they don't! why_not_fast_path = "non-self attention was used (query, key, and value are not the same Tensor)" elif self.in_proj_bias is not None and query.dtype != self.in_proj_bias.dtype: why_not_fast_path = f"dtypes of query ({query.dtype}) and self.in_proj_bias ({self.in_proj_bias.dtype}) don't match" elif self.in_proj_weight is None: why_not_fast_path = "in_proj_weight was None" elif query.dtype != self.in_proj_weight.dtype: # this case will fail anyway, but at least they'll get a useful error message. why_not_fast_path = f"dtypes of query ({query.dtype}) and self.in_proj_weight ({self.in_proj_weight.dtype}) don't match" elif self.training: why_not_fast_path = "training is enabled" elif (self.num_heads % 2) != 0: why_not_fast_path = "self.num_heads is not even" elif not self.batch_first: why_not_fast_path = "batch_first was not True" elif self.bias_k is not None: why_not_fast_path = "self.bias_k was not None" elif self.bias_v is not None: why_not_fast_path = "self.bias_v was not None" elif self.add_zero_attn: why_not_fast_path = "add_zero_attn was enabled" elif not self._qkv_same_embed_dim: why_not_fast_path = "_qkv_same_embed_dim was not True" elif query.is_nested and (key_padding_mask is not None or attn_mask is not None): why_not_fast_path = "supplying both src_key_padding_mask and src_mask at the same time \ is not supported with NestedTensor input" elif torch.is_autocast_enabled(): why_not_fast_path = "autocast is enabled" if not why_not_fast_path: tensor_args = ( query, key, value, self.in_proj_weight, self.in_proj_bias, self.out_proj.weight, self.out_proj.bias, ) # We have to use list comprehensions below because TorchScript does not support # generator expressions. if torch.overrides.has_torch_function(tensor_args): why_not_fast_path = "some Tensor argument has_torch_function" elif _is_make_fx_tracing(): why_not_fast_path = "we are running make_fx tracing" elif not all(_check_arg_device(x) for x in tensor_args): why_not_fast_path = ("some Tensor argument's device is neither one of " f"cpu, cuda or {torch.utils.backend_registration._privateuse1_backend_name}") elif torch.is_grad_enabled() and any(_arg_requires_grad(x) for x in tensor_args): why_not_fast_path = ("grad is enabled and at least one of query or the " "input/output projection weights or biases requires_grad") if not why_not_fast_path: merged_mask, mask_type = self.merge_masks(attn_mask, key_padding_mask, query) if self.in_proj_bias is not None and self.in_proj_weight is not None: return torch._native_multi_head_attention( query, key, value, self.embed_dim, self.num_heads, self.in_proj_weight, self.in_proj_bias, self.out_proj.weight, self.out_proj.bias, merged_mask, need_weights, average_attn_weights, mask_type) any_nested = query.is_nested or key.is_nested or value.is_nested assert not any_nested, ("MultiheadAttention does not support NestedTensor outside of its fast path. " + f"The fast path was not hit because {why_not_fast_path}") if self.batch_first and is_batched: # make sure that the transpose op does not affect the "is" property if key is value: if query is key: query = key = value = query.transpose(1, 0) else: query, key = (x.transpose(1, 0) for x in (query, key)) value = key else: query, key, value = (x.transpose(1, 0) for x in (query, key, value)) if not self._qkv_same_embed_dim: attn_output, attn_output_weights = F.multi_head_attention_forward( query, key, value, self.embed_dim, self.num_heads, self.in_proj_weight, self.in_proj_bias, self.bias_k, self.bias_v, self.add_zero_attn, self.dropout, self.out_proj.weight, self.out_proj.bias, training=self.training, key_padding_mask=key_padding_mask, need_weights=need_weights, attn_mask=attn_mask, use_separate_proj_weight=True, q_proj_weight=self.q_proj_weight, k_proj_weight=self.k_proj_weight, v_proj_weight=self.v_proj_weight, average_attn_weights=average_attn_weights, is_causal=is_causal) else: attn_output, attn_output_weights = F.multi_head_attention_forward( query, key, value, self.embed_dim, self.num_heads, self.in_proj_weight, self.in_proj_bias, self.bias_k, self.bias_v, self.add_zero_attn, self.dropout, self.out_proj.weight, self.out_proj.bias, training=self.training, key_padding_mask=key_padding_mask, need_weights=need_weights, attn_mask=attn_mask, average_attn_weights=average_attn_weights, is_causal=is_causal) if self.batch_first and is_batched: return attn_output.transpose(1, 0), attn_output_weights else: return attn_output, attn_output_weights
[docs] def merge_masks(self, attn_mask: Optional[Tensor], key_padding_mask: Optional[Tensor], query: Tensor) -> Tuple[Optional[Tensor], Optional[int]]: r""" Determine mask type and combine masks if necessary. If only one mask is provided, that mask and the corresponding mask type will be returned. If both masks are provided, they will be both expanded to shape ``(batch_size, num_heads, seq_len, seq_len)``, combined with logical ``or`` and mask type 2 will be returned Args: attn_mask: attention mask of shape ``(seq_len, seq_len)``, mask type 0 key_padding_mask: padding mask of shape ``(batch_size, seq_len)``, mask type 1 query: query embeddings of shape ``(batch_size, seq_len, embed_dim)`` Returns: merged_mask: merged mask mask_type: merged mask type (0, 1, or 2) """ mask_type: Optional[int] = None merged_mask: Optional[Tensor] = None if key_padding_mask is not None: mask_type = 1 merged_mask = key_padding_mask if attn_mask is not None: # In this branch query can't be a nested tensor, so it has a shape batch_size, seq_len, _ = query.shape mask_type = 2 # Always expands attn_mask to 4D if attn_mask.dim() == 3: attn_mask_expanded = attn_mask.view(batch_size, -1, seq_len, seq_len) else: # attn_mask.dim() == 2: attn_mask_expanded = attn_mask.view(1, 1, seq_len, seq_len).expand(batch_size, self.num_heads, -1, -1) merged_mask = attn_mask_expanded if key_padding_mask is not None: key_padding_mask_expanded = key_padding_mask.view(batch_size, 1, 1, seq_len).expand(-1, self.num_heads, -1, -1) merged_mask = attn_mask_expanded + key_padding_mask_expanded # no attn_mask and no key_padding_mask, returns None, None return merged_mask, mask_type
[docs]class PReLU(Module): r"""Applies the element-wise function: .. math:: \text{PReLU}(x) = \max(0,x) + a * \min(0,x) or .. math:: \text{PReLU}(x) = \begin{cases} x, & \text{ if } x \geq 0 \\ ax, & \text{ otherwise } \end{cases} Here :math:`a` is a learnable parameter. When called without arguments, `nn.PReLU()` uses a single parameter :math:`a` across all input channels. If called with `nn.PReLU(nChannels)`, a separate :math:`a` is used for each input channel. .. note:: weight decay should not be used when learning :math:`a` for good performance. .. note:: Channel dim is the 2nd dim of input. When input has dims < 2, then there is no channel dim and the number of channels = 1. Args: num_parameters (int): number of :math:`a` to learn. Although it takes an int as input, there is only two values are legitimate: 1, or the number of channels at input. Default: 1 init (float): the initial value of :math:`a`. Default: 0.25 Shape: - Input: :math:`( *)` where `*` means, any number of additional dimensions. - Output: :math:`(*)`, same shape as the input. Attributes: weight (Tensor): the learnable weights of shape (:attr:`num_parameters`). .. image:: ../scripts/activation_images/PReLU.png Examples:: >>> m = nn.PReLU() >>> input = torch.randn(2) >>> output = m(input) """ __constants__ = ['num_parameters'] num_parameters: int def __init__(self, num_parameters: int = 1, init: float = 0.25, device=None, dtype=None) -> None: factory_kwargs = {'device': device, 'dtype': dtype} self.num_parameters = num_parameters super().__init__() self.init = init self.weight = Parameter(torch.empty(num_parameters, **factory_kwargs)) self.reset_parameters() def reset_parameters(self): torch.nn.init.constant_(self.weight, self.init) def forward(self, input: Tensor) -> Tensor: return F.prelu(input, self.weight) def extra_repr(self) -> str: return f'num_parameters={self.num_parameters}'
[docs]class Softsign(Module): r"""Applies the element-wise function: .. math:: \text{SoftSign}(x) = \frac{x}{ 1 + |x|} Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Softsign.png Examples:: >>> m = nn.Softsign() >>> input = torch.randn(2) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: return F.softsign(input)
[docs]class Tanhshrink(Module): r"""Applies the element-wise function: .. math:: \text{Tanhshrink}(x) = x - \tanh(x) Shape: - Input: :math:`(*)`, where :math:`*` means any number of dimensions. - Output: :math:`(*)`, same shape as the input. .. image:: ../scripts/activation_images/Tanhshrink.png Examples:: >>> m = nn.Tanhshrink() >>> input = torch.randn(2) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: return F.tanhshrink(input)
[docs]class Softmin(Module): r"""Applies the Softmin function to an n-dimensional input Tensor rescaling them so that the elements of the n-dimensional output Tensor lie in the range `[0, 1]` and sum to 1. Softmin is defined as: .. math:: \text{Softmin}(x_{i}) = \frac{\exp(-x_i)}{\sum_j \exp(-x_j)} Shape: - Input: :math:`(*)` where `*` means, any number of additional dimensions - Output: :math:`(*)`, same shape as the input Args: dim (int): A dimension along which Softmin will be computed (so every slice along dim will sum to 1). Returns: a Tensor of the same dimension and shape as the input, with values in the range [0, 1] Examples:: >>> m = nn.Softmin(dim=1) >>> input = torch.randn(2, 3) >>> output = m(input) """ __constants__ = ['dim'] dim: Optional[int] def __init__(self, dim: Optional[int] = None) -> None: super().__init__() self.dim = dim def __setstate__(self, state): super().__setstate__(state) if not hasattr(self, 'dim'): self.dim = None def forward(self, input: Tensor) -> Tensor: return F.softmin(input, self.dim, _stacklevel=5) def extra_repr(self): return f'dim={self.dim}'
[docs]class Softmax(Module): r"""Applies the Softmax function to an n-dimensional input Tensor rescaling them so that the elements of the n-dimensional output Tensor lie in the range [0,1] and sum to 1. Softmax is defined as: .. math:: \text{Softmax}(x_{i}) = \frac{\exp(x_i)}{\sum_j \exp(x_j)} When the input Tensor is a sparse tensor then the unspecified values are treated as ``-inf``. Shape: - Input: :math:`(*)` where `*` means, any number of additional dimensions - Output: :math:`(*)`, same shape as the input Returns: a Tensor of the same dimension and shape as the input with values in the range [0, 1] Args: dim (int): A dimension along which Softmax will be computed (so every slice along dim will sum to 1). .. note:: This module doesn't work directly with NLLLoss, which expects the Log to be computed between the Softmax and itself. Use `LogSoftmax` instead (it's faster and has better numerical properties). Examples:: >>> m = nn.Softmax(dim=1) >>> input = torch.randn(2, 3) >>> output = m(input) """ __constants__ = ['dim'] dim: Optional[int] def __init__(self, dim: Optional[int] = None) -> None: super().__init__() self.dim = dim def __setstate__(self, state): super().__setstate__(state) if not hasattr(self, 'dim'): self.dim = None def forward(self, input: Tensor) -> Tensor: return F.softmax(input, self.dim, _stacklevel=5) def extra_repr(self) -> str: return f'dim={self.dim}'
[docs]class Softmax2d(Module): r"""Applies SoftMax over features to each spatial location. When given an image of ``Channels x Height x Width``, it will apply `Softmax` to each location :math:`(Channels, h_i, w_j)` Shape: - Input: :math:`(N, C, H, W)` or :math:`(C, H, W)`. - Output: :math:`(N, C, H, W)` or :math:`(C, H, W)` (same shape as input) Returns: a Tensor of the same dimension and shape as the input with values in the range [0, 1] Examples:: >>> m = nn.Softmax2d() >>> # you softmax over the 2nd dimension >>> input = torch.randn(2, 3, 12, 13) >>> output = m(input) """ def forward(self, input: Tensor) -> Tensor: if input.dim() not in (3, 4): raise ValueError( f"Softmax2d: expected input to be 3D or 4D, got {input.dim()}D instead" ) return F.softmax(input, -3, _stacklevel=5)
[docs]class LogSoftmax(Module): r"""Applies the :math:`\log(\text{Softmax}(x))` function to an n-dimensional input Tensor. The LogSoftmax formulation can be simplified as: .. math:: \text{LogSoftmax}(x_{i}) = \log\left(\frac{\exp(x_i) }{ \sum_j \exp(x_j)} \right) Shape: - Input: :math:`(*)` where `*` means, any number of additional dimensions - Output: :math:`(*)`, same shape as the input Args: dim (int): A dimension along which LogSoftmax will be computed. Returns: a Tensor of the same dimension and shape as the input with values in the range [-inf, 0) Examples:: >>> m = nn.LogSoftmax(dim=1) >>> input = torch.randn(2, 3) >>> output = m(input) """ __constants__ = ['dim'] dim: Optional[int] def __init__(self, dim: Optional[int] = None) -> None: super().__init__() self.dim = dim def __setstate__(self, state): super().__setstate__(state) if not hasattr(self, 'dim'): self.dim = None def forward(self, input: Tensor) -> Tensor: return F.log_softmax(input, self.dim, _stacklevel=5) def extra_repr(self): return f'dim={self.dim}'

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