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202 lines
6.4 KiB
202 lines
6.4 KiB
# Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Scorer interface module."""
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import warnings
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from typing import Any
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from typing import List
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from typing import Tuple
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import paddle
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class ScorerInterface:
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"""Scorer interface for beam search.
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The scorer performs scoring of the all tokens in vocabulary.
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Examples:
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* Search heuristics
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* :class:`scorers.length_bonus.LengthBonus`
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* Decoder networks of the sequence-to-sequence models
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* :class:`transformer.decoder.Decoder`
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* :class:`rnn.decoders.Decoder`
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* Neural language models
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* :class:`lm.transformer.TransformerLM`
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* :class:`lm.default.DefaultRNNLM`
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* :class:`lm.seq_rnn.SequentialRNNLM`
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"""
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def init_state(self, x: paddle.Tensor) -> Any:
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"""Get an initial state for decoding (optional).
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Args:
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x (paddle.Tensor): The encoded feature tensor
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Returns: initial state
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"""
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return None
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def select_state(self, state: Any, i: int, new_id: int=None) -> Any:
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"""Select state with relative ids in the main beam search.
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Args:
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state: Decoder state for prefix tokens
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i (int): Index to select a state in the main beam search
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new_id (int): New label index to select a state if necessary
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Returns:
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state: pruned state
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"""
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return None if state is None else state[i]
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def score(self, y: paddle.Tensor, state: Any,
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x: paddle.Tensor) -> Tuple[paddle.Tensor, Any]:
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"""Score new token (required).
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Args:
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y (paddle.Tensor): 1D paddle.int64 prefix tokens.
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state: Scorer state for prefix tokens
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x (paddle.Tensor): The encoder feature that generates ys.
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Returns:
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tuple[paddle.Tensor, Any]: Tuple of
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scores for next token that has a shape of `(n_vocab)`
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and next state for ys
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"""
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raise NotImplementedError
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def final_score(self, state: Any) -> float:
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"""Score eos (optional).
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Args:
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state: Scorer state for prefix tokens
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Returns:
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float: final score
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"""
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return 0.0
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class BatchScorerInterface(ScorerInterface):
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"""Batch scorer interface."""
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def batch_init_state(self, x: paddle.Tensor) -> Any:
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"""Get an initial state for decoding (optional).
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Args:
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x (paddle.Tensor): The encoded feature tensor
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Returns: initial state
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"""
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return self.init_state(x)
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def batch_score(self,
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ys: paddle.Tensor,
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states: List[Any],
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xs: paddle.Tensor) -> Tuple[paddle.Tensor, List[Any]]:
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"""Score new token batch (required).
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Args:
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ys (paddle.Tensor): paddle.int64 prefix tokens (n_batch, ylen).
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states (List[Any]): Scorer states for prefix tokens.
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xs (paddle.Tensor):
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The encoder feature that generates ys (n_batch, xlen, n_feat).
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Returns:
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tuple[paddle.Tensor, List[Any]]: Tuple of
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batchfied scores for next token with shape of `(n_batch, n_vocab)`
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and next state list for ys.
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"""
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warnings.warn(
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"{} batch score is implemented through for loop not parallelized".
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format(self.__class__.__name__))
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scores = list()
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outstates = list()
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for i, (y, state, x) in enumerate(zip(ys, states, xs)):
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score, outstate = self.score(y, state, x)
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outstates.append(outstate)
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scores.append(score)
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scores = paddle.cat(scores, 0).view(ys.shape[0], -1)
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return scores, outstates
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class PartialScorerInterface(ScorerInterface):
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"""Partial scorer interface for beam search.
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The partial scorer performs scoring when non-partial scorer finished scoring,
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and receives pre-pruned next tokens to score because it is too heavy to score
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all the tokens.
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Score sub-set of tokens, not all.
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Examples:
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* Prefix search for connectionist-temporal-classification models
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* :class:`decoders.scorers.ctc.CTCPrefixScorer`
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"""
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def score_partial(self,
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y: paddle.Tensor,
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next_tokens: paddle.Tensor,
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state: Any,
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x: paddle.Tensor) -> Tuple[paddle.Tensor, Any]:
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"""Score new token (required).
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Args:
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y (paddle.Tensor): 1D prefix token
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next_tokens (paddle.Tensor): paddle.int64 next token to score
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state: decoder state for prefix tokens
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x (paddle.Tensor): The encoder feature that generates ys
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Returns:
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tuple[paddle.Tensor, Any]:
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Tuple of a score tensor for y that has a shape `(len(next_tokens),)`
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and next state for ys
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"""
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raise NotImplementedError
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class BatchPartialScorerInterface(BatchScorerInterface, PartialScorerInterface):
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"""Batch partial scorer interface for beam search."""
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def batch_score_partial(
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self,
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ys: paddle.Tensor,
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next_tokens: paddle.Tensor,
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states: List[Any],
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xs: paddle.Tensor, ) -> Tuple[paddle.Tensor, Any]:
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"""Score new token (required).
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Args:
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ys (paddle.Tensor): paddle.int64 prefix tokens (n_batch, ylen).
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next_tokens (paddle.Tensor): paddle.int64 tokens to score (n_batch, n_token).
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states (List[Any]): Scorer states for prefix tokens.
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xs (paddle.Tensor):
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The encoder feature that generates ys (n_batch, xlen, n_feat).
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Returns:
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tuple[paddle.Tensor, Any]:
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Tuple of a score tensor for ys that has a shape `(n_batch, n_vocab)`
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and next states for ys
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"""
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raise NotImplementedError
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