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import math |
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import warnings |
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|
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from torch import Tensor |
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import torch |
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def _no_grad_uniform_(tensor, a, b): |
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with torch.no_grad(): |
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return tensor.uniform_(a, b) |
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def _no_grad_normal_(tensor, mean, std): |
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with torch.no_grad(): |
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return tensor.normal_(mean, std) |
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def _no_grad_trunc_normal_(tensor, mean, std, a, b): |
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def norm_cdf(x): |
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return (1. + math.erf(x / math.sqrt(2.))) / 2. |
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if (mean < a - 2 * std) or (mean > b + 2 * std): |
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warnings.warn("mean is more than 2 std from [a, b] in nn.init.trunc_normal_. " |
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"The distribution of values may be incorrect.", |
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stacklevel=2) |
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with torch.no_grad(): |
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l = norm_cdf((a - mean) / std) |
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u = norm_cdf((b - mean) / std) |
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tensor.uniform_(2 * l - 1, 2 * u - 1) |
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tensor.erfinv_() |
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tensor.mul_(std * math.sqrt(2.)) |
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tensor.add_(mean) |
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tensor.clamp_(min=a, max=b) |
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return tensor |
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def _no_grad_fill_(tensor, val): |
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with torch.no_grad(): |
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return tensor.fill_(val) |
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def _no_grad_zero_(tensor): |
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with torch.no_grad(): |
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return tensor.zero_() |
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def calculate_gain(nonlinearity, param=None): |
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r"""Return the recommended gain value for the given nonlinearity function. |
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The values are as follows: |
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|
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================= ==================================================== |
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nonlinearity gain |
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================= ==================================================== |
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Linear / Identity :math:`1` |
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Conv{1,2,3}D :math:`1` |
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Sigmoid :math:`1` |
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Tanh :math:`\frac{5}{3}` |
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ReLU :math:`\sqrt{2}` |
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Leaky Relu :math:`\sqrt{\frac{2}{1 + \text{negative\_slope}^2}}` |
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SELU :math:`\frac{3}{4}` |
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================= ==================================================== |
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.. warning:: |
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In order to implement `Self-Normalizing Neural Networks`_ , |
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you should use ``nonlinearity='linear'`` instead of ``nonlinearity='selu'``. |
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This gives the initial weights a variance of ``1 / N``, |
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which is necessary to induce a stable fixed point in the forward pass. |
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In contrast, the default gain for ``SELU`` sacrifices the normalisation |
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effect for more stable gradient flow in rectangular layers. |
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Args: |
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nonlinearity: the non-linear function (`nn.functional` name) |
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param: optional parameter for the non-linear function |
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Examples: |
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>>> gain = nn.init.calculate_gain('leaky_relu', 0.2) # leaky_relu with negative_slope=0.2 |
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|
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.. _Self-Normalizing Neural Networks: https://papers.nips.cc/paper/2017/hash/5d44ee6f2c3f71b73125876103c8f6c4-Abstract.html |
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""" |
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linear_fns = ['linear', 'conv1d', 'conv2d', 'conv3d', 'conv_transpose1d', 'conv_transpose2d', 'conv_transpose3d'] |
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if nonlinearity in linear_fns or nonlinearity == 'sigmoid': |
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return 1 |
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elif nonlinearity == 'tanh': |
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return 5.0 / 3 |
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elif nonlinearity == 'relu': |
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return math.sqrt(2.0) |
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elif nonlinearity == 'leaky_relu': |
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if param is None: |
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negative_slope = 0.01 |
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elif not isinstance(param, bool) and isinstance(param, int) or isinstance(param, float): |
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negative_slope = param |
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else: |
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raise ValueError("negative_slope {} not a valid number".format(param)) |
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return math.sqrt(2.0 / (1 + negative_slope ** 2)) |
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elif nonlinearity == 'selu': |
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return 3.0 / 4 |
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else: |
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raise ValueError("Unsupported nonlinearity {}".format(nonlinearity)) |
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def uniform_(tensor: Tensor, a: float = 0., b: float = 1.) -> Tensor: |
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r"""Fills the input Tensor with values drawn from the uniform |
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distribution :math:`\mathcal{U}(a, b)`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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a: the lower bound of the uniform distribution |
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b: the upper bound of the uniform distribution |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.uniform_(w) |
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""" |
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if torch.overrides.has_torch_function_variadic(tensor): |
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return torch.overrides.handle_torch_function(uniform_, (tensor,), tensor=tensor, a=a, b=b) |
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return _no_grad_uniform_(tensor, a, b) |
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def normal_(tensor: Tensor, mean: float = 0., std: float = 1.) -> Tensor: |
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r"""Fills the input Tensor with values drawn from the normal |
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distribution :math:`\mathcal{N}(\text{mean}, \text{std}^2)`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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mean: the mean of the normal distribution |
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std: the standard deviation of the normal distribution |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.normal_(w) |
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""" |
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if torch.overrides.has_torch_function_variadic(tensor): |
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return torch.overrides.handle_torch_function(normal_, (tensor,), tensor=tensor, mean=mean, std=std) |
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return _no_grad_normal_(tensor, mean, std) |
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def trunc_normal_(tensor: Tensor, mean: float = 0., std: float = 1., a: float = -2., b: float = 2.) -> Tensor: |
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r"""Fills the input Tensor with values drawn from a truncated |
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normal distribution. The values are effectively drawn from the |
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normal distribution :math:`\mathcal{N}(\text{mean}, \text{std}^2)` |
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with values outside :math:`[a, b]` redrawn until they are within |
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the bounds. The method used for generating the random values works |
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best when :math:`a \leq \text{mean} \leq b`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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mean: the mean of the normal distribution |
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std: the standard deviation of the normal distribution |
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a: the minimum cutoff value |
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b: the maximum cutoff value |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.trunc_normal_(w) |
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""" |
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return _no_grad_trunc_normal_(tensor, mean, std, a, b) |
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def constant_(tensor: Tensor, val: float) -> Tensor: |
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r"""Fills the input Tensor with the value :math:`\text{val}`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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val: the value to fill the tensor with |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.constant_(w, 0.3) |
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""" |
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if torch.overrides.has_torch_function_variadic(tensor): |
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return torch.overrides.handle_torch_function(constant_, (tensor,), tensor=tensor, val=val) |
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return _no_grad_fill_(tensor, val) |
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def ones_(tensor: Tensor) -> Tensor: |
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r"""Fills the input Tensor with the scalar value `1`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.ones_(w) |
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""" |
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return _no_grad_fill_(tensor, 1.) |
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def zeros_(tensor: Tensor) -> Tensor: |
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r"""Fills the input Tensor with the scalar value `0`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.zeros_(w) |
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""" |
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return _no_grad_zero_(tensor) |
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def eye_(tensor): |
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r"""Fills the 2-dimensional input `Tensor` with the identity |
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matrix. Preserves the identity of the inputs in `Linear` layers, where as |
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many inputs are preserved as possible. |
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Args: |
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tensor: a 2-dimensional `torch.Tensor` |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.eye_(w) |
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""" |
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if tensor.ndimension() != 2: |
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raise ValueError("Only tensors with 2 dimensions are supported") |
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with torch.no_grad(): |
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torch.eye(*tensor.shape, out=tensor, requires_grad=tensor.requires_grad) |
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return tensor |
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def dirac_(tensor, groups=1): |
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r"""Fills the {3, 4, 5}-dimensional input `Tensor` with the Dirac |
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delta function. Preserves the identity of the inputs in `Convolutional` |
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layers, where as many input channels are preserved as possible. In case |
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of groups>1, each group of channels preserves identity |
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Args: |
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tensor: a {3, 4, 5}-dimensional `torch.Tensor` |
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groups (int, optional): number of groups in the conv layer (default: 1) |
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Examples: |
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>>> w = torch.empty(3, 16, 5, 5) |
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>>> nn.init.dirac_(w) |
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>>> w = torch.empty(3, 24, 5, 5) |
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>>> nn.init.dirac_(w, 3) |
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""" |
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dimensions = tensor.ndimension() |
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if dimensions not in [3, 4, 5]: |
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raise ValueError("Only tensors with 3, 4, or 5 dimensions are supported") |
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sizes = tensor.size() |
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if sizes[0] % groups != 0: |
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raise ValueError('dim 0 must be divisible by groups') |
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out_chans_per_grp = sizes[0] // groups |
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min_dim = min(out_chans_per_grp, sizes[1]) |
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with torch.no_grad(): |
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tensor.zero_() |
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for g in range(groups): |
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for d in range(min_dim): |
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if dimensions == 3: |
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tensor[g * out_chans_per_grp + d, d, tensor.size(2) // 2] = 1 |
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elif dimensions == 4: |
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tensor[g * out_chans_per_grp + d, d, tensor.size(2) // 2, |
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tensor.size(3) // 2] = 1 |
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else: |
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tensor[g * out_chans_per_grp + d, d, tensor.size(2) // 2, |
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tensor.size(3) // 2, tensor.size(4) // 2] = 1 |
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return tensor |
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def _calculate_fan_in_and_fan_out(tensor): |
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dimensions = tensor.dim() |
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if dimensions < 2: |
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raise ValueError("Fan in and fan out can not be computed for tensor with fewer than 2 dimensions") |
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num_input_fmaps = tensor.size(1) |
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num_output_fmaps = tensor.size(0) |
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receptive_field_size = 1 |
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if tensor.dim() > 2: |
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for s in tensor.shape[2:]: |
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receptive_field_size *= s |
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fan_in = num_input_fmaps * receptive_field_size |
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fan_out = num_output_fmaps * receptive_field_size |
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return fan_in, fan_out |
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def xavier_uniform_(tensor: Tensor, gain: float = 1.) -> Tensor: |
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r"""Fills the input `Tensor` with values according to the method |
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described in `Understanding the difficulty of training deep feedforward |
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neural networks` - Glorot, X. & Bengio, Y. (2010), using a uniform |
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distribution. The resulting tensor will have values sampled from |
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:math:`\mathcal{U}(-a, a)` where |
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|
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.. math:: |
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a = \text{gain} \times \sqrt{\frac{6}{\text{fan\_in} + \text{fan\_out}}} |
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Also known as Glorot initialization. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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gain: an optional scaling factor |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.xavier_uniform_(w, gain=nn.init.calculate_gain('relu')) |
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""" |
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fan_in, fan_out = _calculate_fan_in_and_fan_out(tensor) |
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std = gain * math.sqrt(2.0 / float(fan_in + fan_out)) |
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a = math.sqrt(3.0) * std |
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return _no_grad_uniform_(tensor, -a, a) |
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def xavier_normal_(tensor: Tensor, gain: float = 1.) -> Tensor: |
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r"""Fills the input `Tensor` with values according to the method |
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described in `Understanding the difficulty of training deep feedforward |
|
neural networks` - Glorot, X. & Bengio, Y. (2010), using a normal |
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distribution. The resulting tensor will have values sampled from |
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:math:`\mathcal{N}(0, \text{std}^2)` where |
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|
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.. math:: |
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\text{std} = \text{gain} \times \sqrt{\frac{2}{\text{fan\_in} + \text{fan\_out}}} |
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Also known as Glorot initialization. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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gain: an optional scaling factor |
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|
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.xavier_normal_(w) |
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""" |
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fan_in, fan_out = _calculate_fan_in_and_fan_out(tensor) |
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std = gain * math.sqrt(2.0 / float(fan_in + fan_out)) |
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return _no_grad_normal_(tensor, 0., std) |
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def _calculate_correct_fan(tensor, mode): |
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mode = mode.lower() |
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valid_modes = ['fan_in', 'fan_out'] |
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if mode not in valid_modes: |
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raise ValueError("Mode {} not supported, please use one of {}".format(mode, valid_modes)) |
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fan_in, fan_out = _calculate_fan_in_and_fan_out(tensor) |
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return fan_in if mode == 'fan_in' else fan_out |
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def kaiming_uniform_( |
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tensor: Tensor, a: float = 0, mode: str = 'fan_in', nonlinearity: str = 'leaky_relu' |
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): |
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r"""Fills the input `Tensor` with values according to the method |
|
described in `Delving deep into rectifiers: Surpassing human-level |
|
performance on ImageNet classification` - He, K. et al. (2015), using a |
|
uniform distribution. The resulting tensor will have values sampled from |
|
:math:`\mathcal{U}(-\text{bound}, \text{bound})` where |
|
|
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.. math:: |
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\text{bound} = \text{gain} \times \sqrt{\frac{3}{\text{fan\_mode}}} |
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|
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Also known as He initialization. |
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|
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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a: the negative slope of the rectifier used after this layer (only |
|
used with ``'leaky_relu'``) |
|
mode: either ``'fan_in'`` (default) or ``'fan_out'``. Choosing ``'fan_in'`` |
|
preserves the magnitude of the variance of the weights in the |
|
forward pass. Choosing ``'fan_out'`` preserves the magnitudes in the |
|
backwards pass. |
|
nonlinearity: the non-linear function (`nn.functional` name), |
|
recommended to use only with ``'relu'`` or ``'leaky_relu'`` (default). |
|
|
|
Examples: |
|
>>> w = torch.empty(3, 5) |
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>>> nn.init.kaiming_uniform_(w, mode='fan_in', nonlinearity='relu') |
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""" |
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if torch.overrides.has_torch_function_variadic(tensor): |
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return torch.overrides.handle_torch_function( |
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kaiming_uniform_, |
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(tensor,), |
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tensor=tensor, |
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a=a, |
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mode=mode, |
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nonlinearity=nonlinearity) |
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|
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if 0 in tensor.shape: |
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warnings.warn("Initializing zero-element tensors is a no-op") |
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return tensor |
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fan = _calculate_correct_fan(tensor, mode) |
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gain = calculate_gain(nonlinearity, a) |
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std = gain / math.sqrt(fan) |
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bound = math.sqrt(3.0) * std |
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with torch.no_grad(): |
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return tensor.uniform_(-bound, bound) |
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|
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def kaiming_normal_( |
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tensor: Tensor, a: float = 0, mode: str = 'fan_in', nonlinearity: str = 'leaky_relu' |
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): |
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r"""Fills the input `Tensor` with values according to the method |
|
described in `Delving deep into rectifiers: Surpassing human-level |
|
performance on ImageNet classification` - He, K. et al. (2015), using a |
|
normal distribution. The resulting tensor will have values sampled from |
|
:math:`\mathcal{N}(0, \text{std}^2)` where |
|
|
|
.. math:: |
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\text{std} = \frac{\text{gain}}{\sqrt{\text{fan\_mode}}} |
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|
|
Also known as He initialization. |
|
|
|
Args: |
|
tensor: an n-dimensional `torch.Tensor` |
|
a: the negative slope of the rectifier used after this layer (only |
|
used with ``'leaky_relu'``) |
|
mode: either ``'fan_in'`` (default) or ``'fan_out'``. Choosing ``'fan_in'`` |
|
preserves the magnitude of the variance of the weights in the |
|
forward pass. Choosing ``'fan_out'`` preserves the magnitudes in the |
|
backwards pass. |
|
nonlinearity: the non-linear function (`nn.functional` name), |
|
recommended to use only with ``'relu'`` or ``'leaky_relu'`` (default). |
|
|
|
Examples: |
|
>>> w = torch.empty(3, 5) |
|
>>> nn.init.kaiming_normal_(w, mode='fan_out', nonlinearity='relu') |
|
""" |
|
if 0 in tensor.shape: |
|
warnings.warn("Initializing zero-element tensors is a no-op") |
|
return tensor |
|
fan = _calculate_correct_fan(tensor, mode) |
|
gain = calculate_gain(nonlinearity, a) |
|
std = gain / math.sqrt(fan) |
|
with torch.no_grad(): |
|
return tensor.normal_(0, std) |
|
|
|
|
|
def orthogonal_(tensor, gain=1): |
|
r"""Fills the input `Tensor` with a (semi) orthogonal matrix, as |
|
described in `Exact solutions to the nonlinear dynamics of learning in deep |
|
linear neural networks` - Saxe, A. et al. (2013). The input tensor must have |
|
at least 2 dimensions, and for tensors with more than 2 dimensions the |
|
trailing dimensions are flattened. |
|
|
|
Args: |
|
tensor: an n-dimensional `torch.Tensor`, where :math:`n \geq 2` |
|
gain: optional scaling factor |
|
|
|
Examples: |
|
>>> # xdoctest: +REQUIRES(env:TORCH_DOCTEST_LAPACK) |
|
>>> w = torch.empty(3, 5) |
|
>>> nn.init.orthogonal_(w) |
|
""" |
|
if tensor.ndimension() < 2: |
|
raise ValueError("Only tensors with 2 or more dimensions are supported") |
|
|
|
if tensor.numel() == 0: |
|
|
|
return tensor |
|
rows = tensor.size(0) |
|
cols = tensor.numel() // rows |
|
flattened = tensor.new(rows, cols).normal_(0, 1) |
|
|
|
if rows < cols: |
|
flattened.t_() |
|
|
|
|
|
q, r = torch.linalg.qr(flattened) |
|
|
|
d = torch.diag(r, 0) |
|
ph = d.sign() |
|
q *= ph |
|
|
|
if rows < cols: |
|
q.t_() |
|
|
|
with torch.no_grad(): |
|
tensor.view_as(q).copy_(q) |
|
tensor.mul_(gain) |
|
return tensor |
|
|
|
|
|
def sparse_(tensor, sparsity, std=0.01): |
|
r"""Fills the 2D input `Tensor` as a sparse matrix, where the |
|
non-zero elements will be drawn from the normal distribution |
|
:math:`\mathcal{N}(0, 0.01)`, as described in `Deep learning via |
|
Hessian-free optimization` - Martens, J. (2010). |
|
|
|
Args: |
|
tensor: an n-dimensional `torch.Tensor` |
|
sparsity: The fraction of elements in each column to be set to zero |
|
std: the standard deviation of the normal distribution used to generate |
|
the non-zero values |
|
|
|
Examples: |
|
>>> w = torch.empty(3, 5) |
|
>>> nn.init.sparse_(w, sparsity=0.1) |
|
""" |
|
if tensor.ndimension() != 2: |
|
raise ValueError("Only tensors with 2 dimensions are supported") |
|
|
|
rows, cols = tensor.shape |
|
num_zeros = int(math.ceil(sparsity * rows)) |
|
|
|
with torch.no_grad(): |
|
tensor.normal_(0, std) |
|
for col_idx in range(cols): |
|
row_indices = torch.randperm(rows) |
|
zero_indices = row_indices[:num_zeros] |
|
tensor[zero_indices, col_idx] = 0 |
|
return tensor |
|
|
|
|
|
|
|
def _make_deprecate(meth): |
|
new_name = meth.__name__ |
|
old_name = new_name[:-1] |
|
|
|
def deprecated_init(*args, **kwargs): |
|
warnings.warn("nn.init.{} is now deprecated in favor of nn.init.{}." |
|
.format(old_name, new_name), stacklevel=2) |
|
return meth(*args, **kwargs) |
|
|
|
deprecated_init.__doc__ = r""" |
|
{old_name}(...) |
|
|
|
.. warning:: |
|
This method is now deprecated in favor of :func:`torch.nn.init.{new_name}`. |
|
|
|
See :func:`~torch.nn.init.{new_name}` for details.""".format( |
|
old_name=old_name, new_name=new_name) |
|
deprecated_init.__name__ = old_name |
|
return deprecated_init |
|
|
|
|
|
uniform = _make_deprecate(uniform_) |
|
normal = _make_deprecate(normal_) |
|
constant = _make_deprecate(constant_) |
|
eye = _make_deprecate(eye_) |
|
dirac = _make_deprecate(dirac_) |
|
xavier_uniform = _make_deprecate(xavier_uniform_) |
|
xavier_normal = _make_deprecate(xavier_normal_) |
|
kaiming_uniform = _make_deprecate(kaiming_uniform_) |
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kaiming_normal = _make_deprecate(kaiming_normal_) |
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orthogonal = _make_deprecate(orthogonal_) |
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sparse = _make_deprecate(sparse_) |
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|