torch.nn.utils.rnn.pack_padded_sequence
-
torch.nn.utils.rnn.pack_padded_sequence(input, lengths, batch_first=False, enforce_sorted=True)
[source] -
Packs a Tensor containing padded sequences of variable length.
input
can be of sizeT x B x *
whereT
is the length of the longest sequence (equal tolengths[0]
),B
is the batch size, and*
is any number of dimensions (including 0). Ifbatch_first
isTrue
,B x T x *
input
is expected.For unsorted sequences, use
enforce_sorted = False
. Ifenforce_sorted
isTrue
, the sequences should be sorted by length in a decreasing order, i.e.input[:,0]
should be the longest sequence, andinput[:,B-1]
the shortest one.enforce_sorted = True
is only necessary for ONNX export.Note
This function accepts any input that has at least two dimensions. You can apply it to pack the labels, and use the output of the RNN with them to compute the loss directly. A Tensor can be retrieved from a
PackedSequence
object by accessing its.data
attribute.- Parameters
-
- input (Tensor) – padded batch of variable length sequences.
- lengths (Tensor or list(int)) – list of sequence lengths of each batch element (must be on the CPU if provided as a tensor).
-
batch_first (bool, optional) – if
True
, the input is expected inB x T x *
format. -
enforce_sorted (bool, optional) – if
True
, the input is expected to contain sequences sorted by length in a decreasing order. IfFalse
, the input will get sorted unconditionally. Default:True
.
- Returns
-
a
PackedSequence
object
© 2019 Torch Contributors
Licensed under the 3-clause BSD License.
https://pytorch.org/docs/1.8.0/generated/torch.nn.utils.rnn.pack_padded_sequence.html