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from typing import Tuple, Union |
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from torch import Tensor, Size |
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def fold_batch(x: Tensor, nonbatch_ndims: int = 1) -> Tuple[Tensor, Size]: |
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""" |
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Overview: |
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:math:`(T, B, X) \leftarrow (T*B, X)`\ |
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Fold the first (ndim - nonbatch_ndims) dimensions of a tensor as batch dimension.\ |
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This operation is similar to `torch.flatten` but provides an inverse function |
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`unfold_batch` to restore the folded dimensions. |
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Arguments: |
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- x (:obj:`torch.Tensor`): the tensor to fold |
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- nonbatch_ndims (:obj:`int`): the number of dimensions that is not folded as |
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batch dimension. |
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Returns: |
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- x (:obj:`torch.Tensor`): the folded tensor |
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- batch_dims: the folded dimensions of the original tensor, which can be used to |
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reverse the operation |
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Examples: |
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>>> x = torch.ones(10, 20, 5, 4, 8) |
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>>> x, batch_dim = fold_batch(x, 2) |
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>>> x.shape == (1000, 4, 8) |
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>>> batch_dim == (10, 20, 5) |
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""" |
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if nonbatch_ndims > 0: |
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batch_dims = x.shape[:-nonbatch_ndims] |
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x = x.view(-1, *(x.shape[-nonbatch_ndims:])) |
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return x, batch_dims |
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else: |
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batch_dims = x.shape |
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x = x.view(-1) |
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return x, batch_dims |
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def unfold_batch(x: Tensor, batch_dims: Union[Size, Tuple]) -> Tensor: |
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""" |
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Overview: |
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Unfold the batch dimension of a tensor. |
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Arguments: |
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- x (:obj:`torch.Tensor`): the tensor to unfold |
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- batch_dims (:obj:`torch.Size`): the dimensions that are folded |
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Returns: |
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- x (:obj:`torch.Tensor`): the original unfolded tensor |
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Examples: |
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>>> x = torch.ones(10, 20, 5, 4, 8) |
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>>> x, batch_dim = fold_batch(x, 2) |
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>>> x.shape == (1000, 4, 8) |
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>>> batch_dim == (10, 20, 5) |
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>>> x = unfold_batch(x, batch_dim) |
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>>> x.shape == (10, 20, 5, 4, 8) |
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""" |
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return x.view(*batch_dims, *x.shape[1:]) |
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def unsqueeze_repeat(x: Tensor, repeat_times: int, unsqueeze_dim: int = 0) -> Tensor: |
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""" |
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Overview: |
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Squeeze the tensor on `unsqueeze_dim` and then repeat in this dimension for `repeat_times` times.\ |
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This is useful for preproprocessing the input to an model ensemble. |
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Arguments: |
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- x (:obj:`torch.Tensor`): the tensor to squeeze and repeat |
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- repeat_times (:obj:`int`): the times that the tensor is repeatd |
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- unsqueeze_dim (:obj:`int`): the unsqueezed dimension |
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Returns: |
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- x (:obj:`torch.Tensor`): the unsqueezed and repeated tensor |
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Examples: |
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>>> x = torch.ones(64, 6) |
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>>> x = unsqueeze_repeat(x, 4) |
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>>> x.shape == (4, 64, 6) |
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>>> x = torch.ones(64, 6) |
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>>> x = unsqueeze_repeat(x, 4, -1) |
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>>> x.shape == (64, 6, 4) |
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""" |
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assert -1 <= unsqueeze_dim <= len(x.shape), f'unsqueeze_dim should be from {-1} to {len(x.shape)}' |
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x = x.unsqueeze(unsqueeze_dim) |
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repeats = [1] * len(x.shape) |
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repeats[unsqueeze_dim] *= repeat_times |
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return x.repeat(*repeats) |
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