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from collections import namedtuple |
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import warnings |
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import torch |
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from torch import Tensor |
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from ... import _VF |
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from ..._jit_internal import Optional |
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from typing import List, Tuple, Union, Iterable |
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__all__ = ['PackedSequence', 'invert_permutation', 'pack_padded_sequence', 'pad_packed_sequence', 'pad_sequence', |
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'unpad_sequence', 'pack_sequence', 'unpack_sequence'] |
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PackedSequence_ = namedtuple('PackedSequence_', |
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['data', 'batch_sizes', 'sorted_indices', 'unsorted_indices']) |
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PackedSequence_.__annotations__ = {'data': torch.Tensor, 'batch_sizes': torch.Tensor, |
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'sorted_indices': Optional[torch.Tensor], |
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'unsorted_indices': Optional[torch.Tensor]} |
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def bind(optional, fn): |
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if optional is None: |
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return None |
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return fn(optional) |
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class PackedSequence(PackedSequence_): |
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r"""Holds the data and list of :attr:`batch_sizes` of a packed sequence. |
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All RNN modules accept packed sequences as inputs. |
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Note: |
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Instances of this class should never be created manually. They are meant |
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to be instantiated by functions like :func:`pack_padded_sequence`. |
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Batch sizes represent the number elements at each sequence step in |
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the batch, not the varying sequence lengths passed to |
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:func:`pack_padded_sequence`. For instance, given data ``abc`` and ``x`` |
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the :class:`PackedSequence` would contain data ``axbc`` with |
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``batch_sizes=[2,1,1]``. |
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Attributes: |
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data (Tensor): Tensor containing packed sequence |
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batch_sizes (Tensor): Tensor of integers holding |
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information about the batch size at each sequence step |
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sorted_indices (Tensor, optional): Tensor of integers holding how this |
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:class:`PackedSequence` is constructed from sequences. |
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unsorted_indices (Tensor, optional): Tensor of integers holding how this |
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to recover the original sequences with correct order. |
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.. note:: |
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:attr:`data` can be on arbitrary device and of arbitrary dtype. |
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:attr:`sorted_indices` and :attr:`unsorted_indices` must be ``torch.int64`` |
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tensors on the same device as :attr:`data`. |
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However, :attr:`batch_sizes` should always be a CPU ``torch.int64`` tensor. |
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This invariant is maintained throughout :class:`PackedSequence` class, |
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and all functions that construct a `:class:PackedSequence` in PyTorch |
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(i.e., they only pass in tensors conforming to this constraint). |
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""" |
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def __new__(cls, data, batch_sizes=None, sorted_indices=None, unsorted_indices=None): |
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return super(PackedSequence, cls).__new__( |
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cls, |
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*_packed_sequence_init_args(data, batch_sizes, sorted_indices, |
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unsorted_indices)) |
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def pin_memory(self): |
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return type(self)(self.data.pin_memory(), self.batch_sizes, |
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bind(self.sorted_indices, lambda t: t.pin_memory()), |
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bind(self.unsorted_indices, lambda t: t.pin_memory())) |
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def cuda(self, *args, **kwargs): |
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ex = torch.tensor((), dtype=self.data.dtype, device=self.data.device).to(*args, **kwargs) |
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if ex.is_cuda: |
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return self.to(*args, **kwargs) |
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return self.to(*args, device='cuda', **kwargs) |
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def cpu(self, *args, **kwargs): |
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ex = torch.tensor((), dtype=self.data.dtype, device=self.data.device).to(*args, **kwargs) |
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if ex.device.type == 'cpu': |
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return self.to(*args, **kwargs) |
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return self.to(*args, device='cpu', **kwargs) |
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def double(self): |
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return self.to(dtype=torch.double) |
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def float(self): |
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return self.to(dtype=torch.float) |
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def half(self): |
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return self.to(dtype=torch.half) |
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def long(self): |
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return self.to(dtype=torch.long) |
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def int(self): |
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return self.to(dtype=torch.int) |
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def short(self): |
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return self.to(dtype=torch.short) |
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def char(self): |
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return self.to(dtype=torch.int8) |
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def byte(self): |
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return self.to(dtype=torch.uint8) |
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def to(self, *args, **kwargs): |
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r"""Performs dtype and/or device conversion on `self.data`. |
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It has similar signature as :meth:`torch.Tensor.to`, except optional |
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arguments like `non_blocking` and `copy` should be passed as kwargs, |
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not args, or they will not apply to the index tensors. |
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.. note:: |
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If the ``self.data`` Tensor already has the correct :class:`torch.dtype` |
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and :class:`torch.device`, then ``self`` is returned. |
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Otherwise, returns a copy with the desired configuration. |
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""" |
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data = self.data.to(*args, **kwargs) |
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if data is self.data: |
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return self |
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else: |
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kwargs = {k : v for k, v in filter(lambda t: t[0] != 'device' and t[0] != 'dtype', kwargs.items())} |
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sorted_indices = bind(self.sorted_indices, lambda t: t.to(data.device, **kwargs)) |
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unsorted_indices = bind(self.unsorted_indices, lambda t: t.to(data.device, **kwargs)) |
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return type(self)(data, self.batch_sizes, sorted_indices, unsorted_indices) |
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@property |
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def is_cuda(self): |
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r"""Returns true if `self.data` stored on a gpu""" |
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return self.data.is_cuda |
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def is_pinned(self): |
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r"""Returns true if `self.data` stored on in pinned memory""" |
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return self.data.is_pinned() |
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def _packed_sequence_init_args( |
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data: Tensor, |
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batch_sizes: Optional[Tensor] = None, |
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sorted_indices: Optional[Tensor] = None, |
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unsorted_indices: Optional[Tensor] = None, |
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) -> Tuple[Tensor, Tensor, Optional[Tensor], Optional[Tensor]]: |
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if unsorted_indices is None: |
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unsorted_indices = invert_permutation(sorted_indices) |
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if batch_sizes is not None: |
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if batch_sizes.device.type != 'cpu': |
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raise ValueError( |
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"batch_sizes should always be on CPU. " |
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"Instances of PackedSequence should never be created manually. " |
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"They should be instantiated by functions like pack_sequence " |
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"and pack_padded_sequences in nn.utils.rnn. " |
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"https://pytorch.org/docs/stable/nn.html#torch.nn.utils.rnn.pack_sequence") |
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return data, batch_sizes, sorted_indices, unsorted_indices |
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else: |
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assert isinstance(data, (list, tuple)) and len(data) == 2 |
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return data[0], data[1], sorted_indices, unsorted_indices |
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def _packed_sequence_init( |
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data: Tensor, |
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batch_sizes: Optional[Tensor] = None, |
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sorted_indices: Optional[Tensor] = None, |
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unsorted_indices: Optional[Tensor] = None, |
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) -> PackedSequence: |
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data, batch_sizes, sorted_indices, unsorted_indices = _packed_sequence_init_args( |
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data, batch_sizes, sorted_indices, unsorted_indices) |
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return PackedSequence(data, batch_sizes, sorted_indices, unsorted_indices) |
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def invert_permutation(permutation: Optional[Tensor]) -> Optional[Tensor]: |
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if permutation is None: |
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return None |
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output = torch.empty_like(permutation, memory_format=torch.legacy_contiguous_format) |
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output.scatter_(0, permutation, |
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torch.arange(0, permutation.numel(), device=permutation.device)) |
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return output |
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def pack_padded_sequence( |
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input: Tensor, |
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lengths: Tensor, |
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batch_first: bool = False, |
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enforce_sorted: bool = True, |
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) -> PackedSequence: |
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r"""Packs a Tensor containing padded sequences of variable length. |
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:attr:`input` can be of size ``T x B x *`` where `T` is the length of the |
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longest sequence (equal to ``lengths[0]``), ``B`` is the batch size, and |
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``*`` is any number of dimensions (including 0). If ``batch_first`` is |
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``True``, ``B x T x *`` :attr:`input` is expected. |
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For unsorted sequences, use `enforce_sorted = False`. If :attr:`enforce_sorted` is |
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``True``, the sequences should be sorted by length in a decreasing order, i.e. |
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``input[:,0]`` should be the longest sequence, and ``input[:,B-1]`` the shortest |
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one. `enforce_sorted = True` is only necessary for ONNX export. |
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Note: |
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This function accepts any input that has at least two dimensions. You |
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can apply it to pack the labels, and use the output of the RNN with |
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them to compute the loss directly. A Tensor can be retrieved from |
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a :class:`PackedSequence` object by accessing its ``.data`` attribute. |
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Args: |
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input (Tensor): padded batch of variable length sequences. |
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lengths (Tensor or list(int)): list of sequence lengths of each batch |
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element (must be on the CPU if provided as a tensor). |
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batch_first (bool, optional): if ``True``, the input is expected in ``B x T x *`` |
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format. |
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enforce_sorted (bool, optional): if ``True``, the input is expected to |
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contain sequences sorted by length in a decreasing order. If |
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``False``, the input will get sorted unconditionally. Default: ``True``. |
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Returns: |
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a :class:`PackedSequence` object |
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""" |
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if torch._C._get_tracing_state() and not isinstance(lengths, torch.Tensor): |
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warnings.warn('pack_padded_sequence has been called with a Python list of ' |
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'sequence lengths. The tracer cannot track the data flow of Python ' |
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'values, and it will treat them as constants, likely rendering ' |
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'the trace incorrect for any other combination of lengths.', |
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stacklevel=2) |
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lengths = torch.as_tensor(lengths, dtype=torch.int64) |
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if enforce_sorted: |
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sorted_indices = None |
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else: |
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lengths, sorted_indices = torch.sort(lengths, descending=True) |
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sorted_indices = sorted_indices.to(input.device) |
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batch_dim = 0 if batch_first else 1 |
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input = input.index_select(batch_dim, sorted_indices) |
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data, batch_sizes = \ |
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_VF._pack_padded_sequence(input, lengths, batch_first) |
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return _packed_sequence_init(data, batch_sizes, sorted_indices, None) |
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def pad_packed_sequence( |
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sequence: PackedSequence, |
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batch_first: bool = False, |
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padding_value: float = 0.0, |
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total_length: Optional[int] = None, |
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) -> Tuple[Tensor, Tensor]: |
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r"""Pads a packed batch of variable length sequences. |
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It is an inverse operation to :func:`pack_padded_sequence`. |
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The returned Tensor's data will be of size ``T x B x *``, where `T` is the length |
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of the longest sequence and `B` is the batch size. If ``batch_first`` is True, |
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the data will be transposed into ``B x T x *`` format. |
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Example: |
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>>> from torch.nn.utils.rnn import pack_padded_sequence, pad_packed_sequence |
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>>> seq = torch.tensor([[1,2,0], [3,0,0], [4,5,6]]) |
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>>> lens = [2, 1, 3] |
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>>> packed = pack_padded_sequence(seq, lens, batch_first=True, enforce_sorted=False) |
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>>> packed |
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PackedSequence(data=tensor([4, 1, 3, 5, 2, 6]), batch_sizes=tensor([3, 2, 1]), |
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sorted_indices=tensor([2, 0, 1]), unsorted_indices=tensor([1, 2, 0])) |
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>>> seq_unpacked, lens_unpacked = pad_packed_sequence(packed, batch_first=True) |
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>>> seq_unpacked |
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tensor([[1, 2, 0], |
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[3, 0, 0], |
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[4, 5, 6]]) |
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>>> lens_unpacked |
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tensor([2, 1, 3]) |
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.. note:: |
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:attr:`total_length` is useful to implement the |
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``pack sequence -> recurrent network -> unpack sequence`` pattern in a |
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:class:`~torch.nn.Module` wrapped in :class:`~torch.nn.DataParallel`. |
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See :ref:`this FAQ section <pack-rnn-unpack-with-data-parallelism>` for |
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details. |
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Args: |
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sequence (PackedSequence): batch to pad |
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batch_first (bool, optional): if ``True``, the output will be in ``B x T x *`` |
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format. |
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padding_value (float, optional): values for padded elements. |
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total_length (int, optional): if not ``None``, the output will be padded to |
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have length :attr:`total_length`. This method will throw :class:`ValueError` |
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if :attr:`total_length` is less than the max sequence length in |
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:attr:`sequence`. |
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Returns: |
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Tuple of Tensor containing the padded sequence, and a Tensor |
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containing the list of lengths of each sequence in the batch. |
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Batch elements will be re-ordered as they were ordered originally when |
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the batch was passed to ``pack_padded_sequence`` or ``pack_sequence``. |
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""" |
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max_seq_length = sequence.batch_sizes.size(0) |
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if total_length is not None: |
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if total_length < max_seq_length: |
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raise ValueError("Expected total_length to be at least the length " |
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"of the longest sequence in input, but got " |
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"total_length={} and max sequence length being {}" |
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.format(total_length, max_seq_length)) |
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max_seq_length = total_length |
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padded_output, lengths = _VF._pad_packed_sequence( |
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sequence.data, sequence.batch_sizes, batch_first, padding_value, max_seq_length) |
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unsorted_indices = sequence.unsorted_indices |
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if unsorted_indices is not None: |
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batch_dim = 0 if batch_first else 1 |
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return padded_output.index_select(batch_dim, unsorted_indices), lengths[unsorted_indices.cpu()] |
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return padded_output, lengths |
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def pad_sequence( |
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sequences: Union[Tensor, List[Tensor]], |
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batch_first: bool = False, |
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padding_value: float = 0.0, |
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) -> Tensor: |
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r"""Pad a list of variable length Tensors with ``padding_value`` |
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``pad_sequence`` stacks a list of Tensors along a new dimension, |
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and pads them to equal length. For example, if the input is list of |
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sequences with size ``L x *`` and if batch_first is False, and ``T x B x *`` |
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otherwise. |
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`B` is batch size. It is equal to the number of elements in ``sequences``. |
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`T` is length of the longest sequence. |
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`L` is length of the sequence. |
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`*` is any number of trailing dimensions, including none. |
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Example: |
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>>> from torch.nn.utils.rnn import pad_sequence |
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>>> a = torch.ones(25, 300) |
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>>> b = torch.ones(22, 300) |
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>>> c = torch.ones(15, 300) |
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>>> pad_sequence([a, b, c]).size() |
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torch.Size([25, 3, 300]) |
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Note: |
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This function returns a Tensor of size ``T x B x *`` or ``B x T x *`` |
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where `T` is the length of the longest sequence. This function assumes |
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trailing dimensions and type of all the Tensors in sequences are same. |
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Args: |
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sequences (list[Tensor]): list of variable length sequences. |
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batch_first (bool, optional): output will be in ``B x T x *`` if True, or in |
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``T x B x *`` otherwise. Default: False. |
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padding_value (float, optional): value for padded elements. Default: 0. |
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Returns: |
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Tensor of size ``T x B x *`` if :attr:`batch_first` is ``False``. |
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Tensor of size ``B x T x *`` otherwise |
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""" |
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if not (torch.jit.is_tracing() or torch.jit.is_scripting()): |
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if not isinstance(sequences, Iterable): |
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msg = ('pad_sequence: Expected iterable for input sequences, but got arg of type: ' |
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f'{type(sequences)}') |
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raise RuntimeError(msg) |
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sequences = tuple(sequences) |
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else: |
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if isinstance(sequences, torch.Tensor): |
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sequences = sequences.unbind(0) |
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return torch._C._nn.pad_sequence(sequences, batch_first, padding_value) |
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def unpad_sequence( |
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padded_sequences: Tensor, |
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lengths: Tensor, |
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batch_first: bool = False, |
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) -> List[Tensor]: |
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r"""Unpad padded Tensor into a list of variable length Tensors |
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``unpad_sequence`` unstacks padded Tensor into a list of variable length Tensors. |
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Example: |
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>>> from torch.nn.utils.rnn import pad_sequence, unpad_sequence |
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>>> a = torch.ones(25, 300) |
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>>> b = torch.ones(22, 300) |
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>>> c = torch.ones(15, 300) |
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>>> sequences = [a, b, c] |
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>>> padded_sequences = pad_sequence(sequences) |
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>>> lengths = torch.as_tensor([v.size(0) for v in sequences]) |
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>>> unpadded_sequences = unpad_sequence(padded_sequences, lengths) |
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>>> torch.allclose(sequences[0], unpadded_sequences[0]) |
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True |
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>>> torch.allclose(sequences[1], unpadded_sequences[1]) |
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True |
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>>> torch.allclose(sequences[2], unpadded_sequences[2]) |
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True |
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Args: |
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padded_sequences (Tensor): padded sequences. |
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lengths (Tensor): length of original (unpadded) sequences. |
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batch_first (bool, optional): whether batch dimension first or not. Default: False. |
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Returns: |
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a list of :class:`Tensor` objects |
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""" |
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unpadded_sequences = [] |
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if not batch_first: |
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padded_sequences.transpose_(0, 1) |
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max_length = padded_sequences.shape[1] |
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idx = torch.arange(max_length) |
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for seq, length in zip(padded_sequences, lengths): |
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mask = idx < length |
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unpacked_seq = seq[mask] |
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unpadded_sequences.append(unpacked_seq) |
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return unpadded_sequences |
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def pack_sequence(sequences: List[Tensor], enforce_sorted: bool = True) -> PackedSequence: |
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r"""Packs a list of variable length Tensors |
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Consecutive call of the next functions: ``pad_sequence``, ``pack_padded_sequence``. |
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``sequences`` should be a list of Tensors of size ``L x *``, where `L` is |
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the length of a sequence and `*` is any number of trailing dimensions, |
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including zero. |
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For unsorted sequences, use `enforce_sorted = False`. If ``enforce_sorted`` |
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is ``True``, the sequences should be sorted in the order of decreasing length. |
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``enforce_sorted = True`` is only necessary for ONNX export. |
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Example: |
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>>> from torch.nn.utils.rnn import pack_sequence |
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>>> a = torch.tensor([1,2,3]) |
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>>> b = torch.tensor([4,5]) |
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>>> c = torch.tensor([6]) |
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>>> pack_sequence([a, b, c]) |
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PackedSequence(data=tensor([1, 4, 6, 2, 5, 3]), batch_sizes=tensor([3, 2, 1]), sorted_indices=None, unsorted_indices=None) |
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Args: |
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sequences (list[Tensor]): A list of sequences of decreasing length. |
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enforce_sorted (bool, optional): if ``True``, checks that the input |
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contains sequences sorted by length in a decreasing order. If |
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``False``, this condition is not checked. Default: ``True``. |
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Returns: |
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a :class:`PackedSequence` object |
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""" |
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lengths = torch.as_tensor([v.size(0) for v in sequences]) |
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return pack_padded_sequence(pad_sequence(sequences), lengths, enforce_sorted=enforce_sorted) |
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def unpack_sequence(packed_sequences: PackedSequence) -> List[Tensor]: |
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r"""Unpacks PackedSequence into a list of variable length Tensors |
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``packed_sequences`` should be a PackedSequence object. |
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Example: |
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>>> from torch.nn.utils.rnn import pack_sequence, unpack_sequence |
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>>> a = torch.tensor([1,2,3]) |
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>>> b = torch.tensor([4,5]) |
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>>> c = torch.tensor([6]) |
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>>> sequences = [a, b, c] |
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>>> print(sequences) |
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[tensor([1, 2, 3]), tensor([4, 5]), tensor([6])] |
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>>> packed_sequences = pack_sequence(sequences) |
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>>> print(packed_sequences) |
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PackedSequence(data=tensor([1, 4, 6, 2, 5, 3]), batch_sizes=tensor([3, 2, 1]), sorted_indices=None, unsorted_indices=None) |
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>>> unpacked_sequences = unpack_sequence(packed_sequences) |
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>>> print(unpacked_sequences) |
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[tensor([1, 2, 3]), tensor([4, 5]), tensor([6])] |
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Args: |
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packed_sequences (PackedSequence): A PackedSequence object. |
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Returns: |
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a list of :class:`Tensor` objects |
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""" |
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padded_sequences, lengths = pad_packed_sequence(packed_sequences, batch_first=True) |
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unpacked_sequences = unpad_sequence(padded_sequences, lengths, batch_first=True) |
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return unpacked_sequences |
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