mirror of
https://github.com/k2-fsa/icefall.git
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747 lines
23 KiB
Python
747 lines
23 KiB
Python
# Copyright 2020 Xiaomi Corp. (authors: Fangjun Kuang
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# Mingshuang Luo)
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#
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# See ../../../../LICENSE for clarification regarding multiple authors
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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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from dataclasses import dataclass
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from typing import Dict, List, Optional
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import k2
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import torch
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from model import Transducer
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from icefall.decode import one_best_decoding
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from icefall.utils import get_texts
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def fast_beam_search(
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model: Transducer,
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decoding_graph: k2.Fsa,
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encoder_out: torch.Tensor,
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encoder_out_lens: torch.Tensor,
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beam: float,
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max_states: int,
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max_contexts: int,
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) -> List[List[int]]:
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"""It limits the maximum number of symbols per frame to 1.
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Args:
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model:
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An instance of `Transducer`.
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decoding_graph:
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Decoding graph used for decoding, may be a TrivialGraph or a HLG.
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encoder_out:
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A tensor of shape (N, T, C) from the encoder.
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encoder_out_lens:
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A tensor of shape (N,) containing the number of frames in `encoder_out`
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before padding.
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beam:
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Beam value, similar to the beam used in Kaldi..
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max_states:
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Max states per stream per frame.
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max_contexts:
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Max contexts pre stream per frame.
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Returns:
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Return the decoded result.
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"""
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assert encoder_out.ndim == 3
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context_size = model.decoder.context_size
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vocab_size = model.decoder.vocab_size
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unk_id = model.decoder.unk_id
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B, T, C = encoder_out.shape
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config = k2.RnntDecodingConfig(
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vocab_size=vocab_size,
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decoder_history_len=context_size,
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beam=beam,
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max_contexts=max_contexts,
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max_states=max_states,
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)
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individual_streams = []
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for i in range(B):
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individual_streams.append(k2.RnntDecodingStream(decoding_graph))
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decoding_streams = k2.RnntDecodingStreams(individual_streams, config)
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for t in range(T):
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# shape is a RaggedShape of shape (B, context)
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# contexts is a Tensor of shape (shape.NumElements(), context_size)
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shape, contexts = decoding_streams.get_contexts()
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# `nn.Embedding()` in torch below v1.7.1 supports only torch.int64
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contexts = contexts.to(torch.int64)
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# decoder_out is of shape (shape.NumElements(), 1, decoder_out_dim)
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decoder_out = model.decoder(contexts, need_pad=False)
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# current_encoder_out is of shape
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# (shape.NumElements(), 1, encoder_out_dim)
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# fmt: off
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current_encoder_out = torch.index_select(
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encoder_out[:, t:t + 1, :], 0, shape.row_ids(1)
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)
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# fmt: on
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logits = model.joiner(
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current_encoder_out.unsqueeze(2), decoder_out.unsqueeze(1)
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)
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logits = logits.squeeze(1).squeeze(1)
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log_probs = logits.log_softmax(dim=-1)
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decoding_streams.advance(log_probs)
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decoding_streams.terminate_and_flush_to_streams()
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lattice = decoding_streams.format_output(encoder_out_lens.tolist())
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best_path = one_best_decoding(lattice)
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hyps = get_texts(best_path)
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new_hyps = []
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for hyp in hyps:
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hyp = [idx for idx in hyp if idx != unk_id]
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new_hyps.append(hyp)
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return new_hyps
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def greedy_search(
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model: Transducer, encoder_out: torch.Tensor, max_sym_per_frame: int
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) -> List[int]:
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"""Greedy search for a single utterance.
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Args:
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model:
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An instance of `Transducer`.
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encoder_out:
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A tensor of shape (N, T, C) from the encoder. Support only N==1 for now.
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max_sym_per_frame:
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Maximum number of symbols per frame. If it is set to 0, the WER
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would be 100%.
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Returns:
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Return the decoded result.
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"""
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assert encoder_out.ndim == 3
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# support only batch_size == 1 for now
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assert encoder_out.size(0) == 1, encoder_out.size(0)
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blank_id = model.decoder.blank_id
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unk_id = model.decoder.unk_id
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context_size = model.decoder.context_size
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device = model.device
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decoder_input = torch.tensor(
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[blank_id] * context_size, device=device, dtype=torch.int64
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).reshape(1, context_size)
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decoder_out = model.decoder(decoder_input, need_pad=False)
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T = encoder_out.size(1)
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t = 0
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hyp = [blank_id] * context_size
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# Maximum symbols per utterance.
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max_sym_per_utt = 1000
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# symbols per frame
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sym_per_frame = 0
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# symbols per utterance decoded so far
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sym_per_utt = 0
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while t < T and sym_per_utt < max_sym_per_utt:
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if sym_per_frame >= max_sym_per_frame:
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sym_per_frame = 0
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t += 1
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continue
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# fmt: off
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current_encoder_out = encoder_out[:, t:t+1, :].unsqueeze(2)
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# fmt: on
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logits = model.joiner(current_encoder_out, decoder_out.unsqueeze(1))
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# logits is (1, 1, 1, vocab_size)
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y = logits.argmax().item()
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if y != blank_id and y != unk_id:
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hyp.append(y)
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decoder_input = torch.tensor(
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[hyp[-context_size:]], device=device
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).reshape(1, context_size)
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decoder_out = model.decoder(decoder_input, need_pad=False)
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sym_per_utt += 1
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sym_per_frame += 1
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else:
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sym_per_frame = 0
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t += 1
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hyp = hyp[context_size:] # remove blanks
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return hyp
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def greedy_search_batch(
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model: Transducer, encoder_out: torch.Tensor
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) -> List[List[int]]:
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"""Greedy search in batch mode. It hardcodes --max-sym-per-frame=1.
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Args:
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model:
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The transducer model.
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encoder_out:
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Output from the encoder. Its shape is (N, T, C), where N >= 1.
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Returns:
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Return a list-of-list integers containing the decoded results.
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len(ans) equals to encoder_out.size(0).
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"""
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assert encoder_out.ndim == 3
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assert encoder_out.size(0) >= 1, encoder_out.size(0)
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device = model.device
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batch_size = encoder_out.size(0)
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T = encoder_out.size(1)
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blank_id = model.decoder.blank_id
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unk_id = model.decoder.unk_id
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context_size = model.decoder.context_size
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hyps = [[blank_id] * context_size for _ in range(batch_size)]
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decoder_input = torch.tensor(
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hyps,
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device=device,
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dtype=torch.int64,
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) # (batch_size, context_size)
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decoder_out = model.decoder(decoder_input, need_pad=False)
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# decoder_out: (batch_size, 1, decoder_out_dim)
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for t in range(T):
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current_encoder_out = encoder_out[:, t : t + 1, :].unsqueeze(2) # noqa
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# current_encoder_out's shape: (batch_size, 1, 1, encoder_out_dim)
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logits = model.joiner(current_encoder_out, decoder_out.unsqueeze(1))
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# logits'shape (batch_size, 1, 1, vocab_size)
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logits = logits.squeeze(1).squeeze(1) # (batch_size, vocab_size)
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assert logits.ndim == 2, logits.shape
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y = logits.argmax(dim=1).tolist()
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emitted = False
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for i, v in enumerate(y):
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if v != blank_id and v != unk_id:
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hyps[i].append(v)
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emitted = True
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if emitted:
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# update decoder output
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decoder_input = [h[-context_size:] for h in hyps]
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decoder_input = torch.tensor(decoder_input, device=device)
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decoder_out = model.decoder(decoder_input, need_pad=False)
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ans = [h[context_size:] for h in hyps]
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return ans
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@dataclass
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class Hypothesis:
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# The predicted tokens so far.
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# Newly predicted tokens are appended to `ys`.
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ys: List[int]
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# The log prob of ys.
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# It contains only one entry.
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log_prob: torch.Tensor
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@property
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def key(self) -> str:
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"""Return a string representation of self.ys"""
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return "_".join(map(str, self.ys))
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class HypothesisList(object):
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def __init__(self, data: Optional[Dict[str, Hypothesis]] = None) -> None:
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"""
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Args:
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data:
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A dict of Hypotheses. Its key is its `value.key`.
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"""
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if data is None:
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self._data = {}
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else:
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self._data = data
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@property
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def data(self) -> Dict[str, Hypothesis]:
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return self._data
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def add(self, hyp: Hypothesis) -> None:
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"""Add a Hypothesis to `self`.
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If `hyp` already exists in `self`, its probability is updated using
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`log-sum-exp` with the existed one.
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Args:
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hyp:
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The hypothesis to be added.
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"""
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key = hyp.key
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if key in self:
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old_hyp = self._data[key] # shallow copy
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torch.logaddexp(
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old_hyp.log_prob, hyp.log_prob, out=old_hyp.log_prob
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)
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else:
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self._data[key] = hyp
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def get_most_probable(self, length_norm: bool = False) -> Hypothesis:
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"""Get the most probable hypothesis, i.e., the one with
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the largest `log_prob`.
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Args:
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length_norm:
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If True, the `log_prob` of a hypothesis is normalized by the
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number of tokens in it.
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Returns:
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Return the hypothesis that has the largest `log_prob`.
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"""
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if length_norm:
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return max(
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self._data.values(), key=lambda hyp: hyp.log_prob / len(hyp.ys)
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)
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else:
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return max(self._data.values(), key=lambda hyp: hyp.log_prob)
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def remove(self, hyp: Hypothesis) -> None:
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"""Remove a given hypothesis.
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Caution:
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`self` is modified **in-place**.
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Args:
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hyp:
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The hypothesis to be removed from `self`.
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Note: It must be contained in `self`. Otherwise,
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an exception is raised.
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"""
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key = hyp.key
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assert key in self, f"{key} does not exist"
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del self._data[key]
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def filter(self, threshold: torch.Tensor) -> "HypothesisList":
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"""Remove all Hypotheses whose log_prob is less than threshold.
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Caution:
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`self` is not modified. Instead, a new HypothesisList is returned.
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Returns:
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Return a new HypothesisList containing all hypotheses from `self`
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with `log_prob` being greater than the given `threshold`.
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"""
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ans = HypothesisList()
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for _, hyp in self._data.items():
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if hyp.log_prob > threshold:
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ans.add(hyp) # shallow copy
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return ans
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def topk(self, k: int) -> "HypothesisList":
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"""Return the top-k hypothesis."""
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hyps = list(self._data.items())
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hyps = sorted(hyps, key=lambda h: h[1].log_prob, reverse=True)[:k]
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ans = HypothesisList(dict(hyps))
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return ans
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def __contains__(self, key: str):
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return key in self._data
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def __iter__(self):
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return iter(self._data.values())
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def __len__(self) -> int:
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return len(self._data)
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def __str__(self) -> str:
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s = []
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for key in self:
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s.append(key)
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return ", ".join(s)
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def _get_hyps_shape(hyps: List[HypothesisList]) -> k2.RaggedShape:
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"""Return a ragged shape with axes [utt][num_hyps].
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Args:
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hyps:
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len(hyps) == batch_size. It contains the current hypothesis for
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each utterance in the batch.
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Returns:
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Return a ragged shape with 2 axes [utt][num_hyps]. Note that
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the shape is on CPU.
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"""
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num_hyps = [len(h) for h in hyps]
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# torch.cumsum() is inclusive sum, so we put a 0 at the beginning
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# to get exclusive sum later.
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num_hyps.insert(0, 0)
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num_hyps = torch.tensor(num_hyps)
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row_splits = torch.cumsum(num_hyps, dim=0, dtype=torch.int32)
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ans = k2.ragged.create_ragged_shape2(
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row_splits=row_splits, cached_tot_size=row_splits[-1].item()
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)
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return ans
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def modified_beam_search(
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model: Transducer,
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encoder_out: torch.Tensor,
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beam: int = 4,
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) -> List[List[int]]:
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"""Beam search in batch mode with --max-sym-per-frame=1 being hardcoded.
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Args:
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model:
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The transducer model.
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encoder_out:
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Output from the encoder. Its shape is (N, T, C).
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beam:
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Number of active paths during the beam search.
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Returns:
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Return a list-of-list of token IDs. ans[i] is the decoding results
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for the i-th utterance.
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"""
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assert encoder_out.ndim == 3, encoder_out.shape
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batch_size = encoder_out.size(0)
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T = encoder_out.size(1)
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blank_id = model.decoder.blank_id
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unk_id = model.decoder.unk_id
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context_size = model.decoder.context_size
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device = model.device
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B = [HypothesisList() for _ in range(batch_size)]
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for i in range(batch_size):
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B[i].add(
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Hypothesis(
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ys=[blank_id] * context_size,
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log_prob=torch.zeros(1, dtype=torch.float32, device=device),
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)
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)
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for t in range(T):
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current_encoder_out = encoder_out[:, t : t + 1, :].unsqueeze(2) # noqa
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# current_encoder_out's shape is (batch_size, 1, 1, encoder_out_dim)
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hyps_shape = _get_hyps_shape(B).to(device)
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A = [list(b) for b in B]
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B = [HypothesisList() for _ in range(batch_size)]
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ys_log_probs = torch.cat(
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[hyp.log_prob.reshape(1, 1) for hyps in A for hyp in hyps]
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) # (num_hyps, 1)
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decoder_input = torch.tensor(
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[hyp.ys[-context_size:] for hyps in A for hyp in hyps],
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device=device,
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dtype=torch.int64,
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) # (num_hyps, context_size)
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decoder_out = model.decoder(decoder_input, need_pad=False).unsqueeze(1)
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# decoder_output is of shape (num_hyps, 1, 1, decoder_output_dim)
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# Note: For torch 1.7.1 and below, it requires a torch.int64 tensor
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# as index, so we use `to(torch.int64)` below.
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current_encoder_out = torch.index_select(
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current_encoder_out,
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dim=0,
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index=hyps_shape.row_ids(1).to(torch.int64),
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) # (num_hyps, 1, 1, encoder_out_dim)
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logits = model.joiner(
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current_encoder_out,
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decoder_out,
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) # (num_hyps, 1, 1, vocab_size)
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logits = logits.squeeze(1).squeeze(1) # (num_hyps, vocab_size)
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log_probs = logits.log_softmax(dim=-1) # (num_hyps, vocab_size)
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log_probs.add_(ys_log_probs)
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vocab_size = log_probs.size(-1)
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log_probs = log_probs.reshape(-1)
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row_splits = hyps_shape.row_splits(1) * vocab_size
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log_probs_shape = k2.ragged.create_ragged_shape2(
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row_splits=row_splits, cached_tot_size=log_probs.numel()
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)
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ragged_log_probs = k2.RaggedTensor(
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shape=log_probs_shape, value=log_probs
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)
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for i in range(batch_size):
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topk_log_probs, topk_indexes = ragged_log_probs[i].topk(beam)
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topk_hyp_indexes = torch.div(
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topk_indexes, vocab_size, rounding_mode="trunc"
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)
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topk_hyp_indexes = topk_hyp_indexes.tolist()
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topk_token_indexes = (topk_indexes % vocab_size).tolist()
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for k in range(len(topk_hyp_indexes)):
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hyp_idx = topk_hyp_indexes[k]
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hyp = A[i][hyp_idx]
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new_ys = hyp.ys[:]
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new_token = topk_token_indexes[k]
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if new_token != blank_id and new_token != unk_id:
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new_ys.append(new_token)
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new_log_prob = topk_log_probs[k]
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new_hyp = Hypothesis(ys=new_ys, log_prob=new_log_prob)
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B[i].add(new_hyp)
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best_hyps = [b.get_most_probable(length_norm=True) for b in B]
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|
ans = [h.ys[context_size:] for h in best_hyps]
|
|
|
|
return ans
|
|
|
|
|
|
def _deprecated_modified_beam_search(
|
|
model: Transducer,
|
|
encoder_out: torch.Tensor,
|
|
beam: int = 4,
|
|
) -> List[int]:
|
|
"""It limits the maximum number of symbols per frame to 1.
|
|
|
|
It decodes only one utterance at a time. We keep it only for reference.
|
|
The function :func:`modified_beam_search` should be preferred as it
|
|
supports batch decoding.
|
|
|
|
|
|
Args:
|
|
model:
|
|
An instance of `Transducer`.
|
|
encoder_out:
|
|
A tensor of shape (N, T, C) from the encoder. Support only N==1 for now.
|
|
beam:
|
|
Beam size.
|
|
Returns:
|
|
Return the decoded result.
|
|
"""
|
|
|
|
assert encoder_out.ndim == 3
|
|
|
|
# support only batch_size == 1 for now
|
|
assert encoder_out.size(0) == 1, encoder_out.size(0)
|
|
blank_id = model.decoder.blank_id
|
|
unk_id = model.decoder.unk_id
|
|
context_size = model.decoder.context_size
|
|
|
|
device = model.device
|
|
|
|
T = encoder_out.size(1)
|
|
|
|
B = HypothesisList()
|
|
B.add(
|
|
Hypothesis(
|
|
ys=[blank_id] * context_size,
|
|
log_prob=torch.zeros(1, dtype=torch.float32, device=device),
|
|
)
|
|
)
|
|
|
|
for t in range(T):
|
|
# fmt: off
|
|
current_encoder_out = encoder_out[:, t:t+1, :].unsqueeze(2)
|
|
# current_encoder_out is of shape (1, 1, 1, encoder_out_dim)
|
|
# fmt: on
|
|
A = list(B)
|
|
B = HypothesisList()
|
|
|
|
ys_log_probs = torch.cat([hyp.log_prob.reshape(1, 1) for hyp in A])
|
|
# ys_log_probs is of shape (num_hyps, 1)
|
|
|
|
decoder_input = torch.tensor(
|
|
[hyp.ys[-context_size:] for hyp in A],
|
|
device=device,
|
|
dtype=torch.int64,
|
|
)
|
|
# decoder_input is of shape (num_hyps, context_size)
|
|
|
|
decoder_out = model.decoder(decoder_input, need_pad=False).unsqueeze(1)
|
|
# decoder_output is of shape (num_hyps, 1, 1, decoder_output_dim)
|
|
|
|
current_encoder_out = current_encoder_out.expand(
|
|
decoder_out.size(0), 1, 1, -1
|
|
) # (num_hyps, 1, 1, encoder_out_dim)
|
|
|
|
logits = model.joiner(
|
|
current_encoder_out,
|
|
decoder_out,
|
|
)
|
|
# logits is of shape (num_hyps, 1, 1, vocab_size)
|
|
logits = logits.squeeze(1).squeeze(1)
|
|
|
|
# now logits is of shape (num_hyps, vocab_size)
|
|
log_probs = logits.log_softmax(dim=-1)
|
|
|
|
log_probs.add_(ys_log_probs)
|
|
|
|
log_probs = log_probs.reshape(-1)
|
|
topk_log_probs, topk_indexes = log_probs.topk(beam)
|
|
|
|
# topk_hyp_indexes are indexes into `A`
|
|
topk_hyp_indexes = topk_indexes // logits.size(-1)
|
|
topk_token_indexes = topk_indexes % logits.size(-1)
|
|
|
|
topk_hyp_indexes = topk_hyp_indexes.tolist()
|
|
topk_token_indexes = topk_token_indexes.tolist()
|
|
|
|
for i in range(len(topk_hyp_indexes)):
|
|
hyp = A[topk_hyp_indexes[i]]
|
|
new_ys = hyp.ys[:]
|
|
new_token = topk_token_indexes[i]
|
|
if new_token != blank_id and new_token != unk_id:
|
|
new_ys.append(new_token)
|
|
new_log_prob = topk_log_probs[i]
|
|
new_hyp = Hypothesis(ys=new_ys, log_prob=new_log_prob)
|
|
B.add(new_hyp)
|
|
|
|
best_hyp = B.get_most_probable(length_norm=True)
|
|
ys = best_hyp.ys[context_size:] # [context_size:] to remove blanks
|
|
|
|
return ys
|
|
|
|
|
|
def beam_search(
|
|
model: Transducer,
|
|
encoder_out: torch.Tensor,
|
|
beam: int = 4,
|
|
) -> List[int]:
|
|
"""
|
|
It implements Algorithm 1 in https://arxiv.org/pdf/1211.3711.pdf
|
|
|
|
espnet/nets/beam_search_transducer.py#L247 is used as a reference.
|
|
|
|
Args:
|
|
model:
|
|
An instance of `Transducer`.
|
|
encoder_out:
|
|
A tensor of shape (N, T, C) from the encoder. Support only N==1 for now.
|
|
beam:
|
|
Beam size.
|
|
Returns:
|
|
Return the decoded result.
|
|
"""
|
|
assert encoder_out.ndim == 3
|
|
|
|
# support only batch_size == 1 for now
|
|
assert encoder_out.size(0) == 1, encoder_out.size(0)
|
|
blank_id = model.decoder.blank_id
|
|
unk_id = model.decoder.unk_id
|
|
context_size = model.decoder.context_size
|
|
|
|
device = model.device
|
|
|
|
decoder_input = torch.tensor(
|
|
[blank_id] * context_size,
|
|
device=device,
|
|
dtype=torch.int64,
|
|
).reshape(1, context_size)
|
|
|
|
decoder_out = model.decoder(decoder_input, need_pad=False)
|
|
|
|
T = encoder_out.size(1)
|
|
t = 0
|
|
|
|
B = HypothesisList()
|
|
B.add(Hypothesis(ys=[blank_id] * context_size, log_prob=0.0))
|
|
|
|
max_sym_per_utt = 20000
|
|
|
|
sym_per_utt = 0
|
|
|
|
decoder_cache: Dict[str, torch.Tensor] = {}
|
|
|
|
while t < T and sym_per_utt < max_sym_per_utt:
|
|
# fmt: off
|
|
current_encoder_out = encoder_out[:, t:t+1, :].unsqueeze(2)
|
|
# fmt: on
|
|
A = B
|
|
B = HypothesisList()
|
|
|
|
joint_cache: Dict[str, torch.Tensor] = {}
|
|
|
|
# TODO(fangjun): Implement prefix search to update the `log_prob`
|
|
# of hypotheses in A
|
|
|
|
while True:
|
|
y_star = A.get_most_probable()
|
|
A.remove(y_star)
|
|
|
|
cached_key = y_star.key
|
|
|
|
if cached_key not in decoder_cache:
|
|
decoder_input = torch.tensor(
|
|
[y_star.ys[-context_size:]],
|
|
device=device,
|
|
dtype=torch.int64,
|
|
).reshape(1, context_size)
|
|
|
|
decoder_out = model.decoder(decoder_input, need_pad=False)
|
|
decoder_cache[cached_key] = decoder_out
|
|
else:
|
|
decoder_out = decoder_cache[cached_key]
|
|
|
|
cached_key += f"-t-{t}"
|
|
if cached_key not in joint_cache:
|
|
logits = model.joiner(
|
|
current_encoder_out, decoder_out.unsqueeze(1)
|
|
)
|
|
|
|
# TODO(fangjun): Scale the blank posterior
|
|
|
|
log_prob = logits.log_softmax(dim=-1)
|
|
# log_prob is (1, 1, 1, vocab_size)
|
|
log_prob = log_prob.squeeze()
|
|
# Now log_prob is (vocab_size,)
|
|
joint_cache[cached_key] = log_prob
|
|
else:
|
|
log_prob = joint_cache[cached_key]
|
|
|
|
# First, process the blank symbol
|
|
skip_log_prob = log_prob[blank_id]
|
|
new_y_star_log_prob = y_star.log_prob + skip_log_prob
|
|
|
|
# ys[:] returns a copy of ys
|
|
B.add(Hypothesis(ys=y_star.ys[:], log_prob=new_y_star_log_prob))
|
|
|
|
# Second, process other non-blank labels
|
|
values, indices = log_prob.topk(beam + 1)
|
|
for i, v in zip(indices.tolist(), values.tolist()):
|
|
if i == blank_id or i == unk_id:
|
|
continue
|
|
new_ys = y_star.ys + [i]
|
|
new_log_prob = y_star.log_prob + v
|
|
A.add(Hypothesis(ys=new_ys, log_prob=new_log_prob))
|
|
|
|
# Check whether B contains more than "beam" elements more probable
|
|
# than the most probable in A
|
|
A_most_probable = A.get_most_probable()
|
|
|
|
kept_B = B.filter(A_most_probable.log_prob)
|
|
|
|
if len(kept_B) >= beam:
|
|
B = kept_B.topk(beam)
|
|
break
|
|
|
|
t += 1
|
|
|
|
best_hyp = B.get_most_probable(length_norm=True)
|
|
ys = best_hyp.ys[context_size:] # [context_size:] to remove blanks
|
|
return ys
|