Module: tf.contrib.legacy_seq2seq
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Deprecated library for creating sequence-to-sequence models in TensorFlow.
Functions
attention_decoder(...)
: RNN decoder with attention for the sequence-to-sequence model.
basic_rnn_seq2seq(...)
: Basic RNN sequence-to-sequence model.
embedding_attention_decoder(...)
: RNN decoder with embedding and attention and a pure-decoding option.
embedding_attention_seq2seq(...)
: Embedding sequence-to-sequence model with attention.
embedding_rnn_decoder(...)
: RNN decoder with embedding and a pure-decoding option.
embedding_rnn_seq2seq(...)
: Embedding RNN sequence-to-sequence model.
embedding_tied_rnn_seq2seq(...)
: Embedding RNN sequence-to-sequence model with tied (shared) parameters.
model_with_buckets(...)
: Create a sequence-to-sequence model with support for bucketing.
one2many_rnn_seq2seq(...)
: One-to-many RNN sequence-to-sequence model (multi-task).
rnn_decoder(...)
: RNN decoder for the sequence-to-sequence model.
sequence_loss(...)
: Weighted cross-entropy loss for a sequence of logits, batch-collapsed.
sequence_loss_by_example(...)
: Weighted cross-entropy loss for a sequence of logits (per example).
tied_rnn_seq2seq(...)
: RNN sequence-to-sequence model with tied encoder and decoder parameters.
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Last updated 2020-10-01 UTC.
[[["Easy to understand","easyToUnderstand","thumb-up"],["Solved my problem","solvedMyProblem","thumb-up"],["Other","otherUp","thumb-up"]],[["Missing the information I need","missingTheInformationINeed","thumb-down"],["Too complicated / too many steps","tooComplicatedTooManySteps","thumb-down"],["Out of date","outOfDate","thumb-down"],["Samples / code issue","samplesCodeIssue","thumb-down"],["Other","otherDown","thumb-down"]],["Last updated 2020-10-01 UTC."],[],[],null,["# Module: tf.contrib.legacy_seq2seq\n\n\u003cbr /\u003e\n\n|------------------------------------------------------------------------------------------------------------------------------|\n| [View source on GitHub](https://github.com/tensorflow/tensorflow/blob/v1.15.0/tensorflow/contrib/legacy_seq2seq/__init__.py) |\n\nDeprecated library for creating sequence-to-sequence models in TensorFlow.\n\nFunctions\n---------\n\n[`attention_decoder(...)`](../../tf/contrib/legacy_seq2seq/attention_decoder): RNN decoder with attention for the sequence-to-sequence model.\n\n[`basic_rnn_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/basic_rnn_seq2seq): Basic RNN sequence-to-sequence model.\n\n[`embedding_attention_decoder(...)`](../../tf/contrib/legacy_seq2seq/embedding_attention_decoder): RNN decoder with embedding and attention and a pure-decoding option.\n\n[`embedding_attention_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/embedding_attention_seq2seq): Embedding sequence-to-sequence model with attention.\n\n[`embedding_rnn_decoder(...)`](../../tf/contrib/legacy_seq2seq/embedding_rnn_decoder): RNN decoder with embedding and a pure-decoding option.\n\n[`embedding_rnn_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/embedding_rnn_seq2seq): Embedding RNN sequence-to-sequence model.\n\n[`embedding_tied_rnn_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/embedding_tied_rnn_seq2seq): Embedding RNN sequence-to-sequence model with tied (shared) parameters.\n\n[`model_with_buckets(...)`](../../tf/contrib/legacy_seq2seq/model_with_buckets): Create a sequence-to-sequence model with support for bucketing.\n\n[`one2many_rnn_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/one2many_rnn_seq2seq): One-to-many RNN sequence-to-sequence model (multi-task).\n\n[`rnn_decoder(...)`](../../tf/contrib/legacy_seq2seq/rnn_decoder): RNN decoder for the sequence-to-sequence model.\n\n[`sequence_loss(...)`](../../tf/contrib/legacy_seq2seq/sequence_loss): Weighted cross-entropy loss for a sequence of logits, batch-collapsed.\n\n[`sequence_loss_by_example(...)`](../../tf/contrib/legacy_seq2seq/sequence_loss_by_example): Weighted cross-entropy loss for a sequence of logits (per example).\n\n[`tied_rnn_seq2seq(...)`](../../tf/contrib/legacy_seq2seq/tied_rnn_seq2seq): RNN sequence-to-sequence model with tied encoder and decoder parameters."]]