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| """ |
| Flashlight decoders. |
| """ |
|
|
| import gc |
| import itertools as it |
| import os.path as osp |
| from typing import List |
| import warnings |
| from collections import deque, namedtuple |
|
|
| import numpy as np |
| import torch |
| from examples.speech_recognition.data.replabels import unpack_replabels |
| from fairseq import tasks |
| from fairseq.utils import apply_to_sample |
| from omegaconf import open_dict |
| from fairseq.dataclass.utils import convert_namespace_to_omegaconf |
|
|
|
|
| try: |
| from flashlight.lib.text.dictionary import create_word_dict, load_words |
| from flashlight.lib.sequence.criterion import CpuViterbiPath, get_data_ptr_as_bytes |
| from flashlight.lib.text.decoder import ( |
| CriterionType, |
| LexiconDecoderOptions, |
| KenLM, |
| LM, |
| LMState, |
| SmearingMode, |
| Trie, |
| LexiconDecoder, |
| ) |
| except: |
| warnings.warn( |
| "flashlight python bindings are required to use this functionality. Please install from https://github.com/facebookresearch/flashlight/tree/master/bindings/python" |
| ) |
| LM = object |
| LMState = object |
|
|
|
|
| class W2lDecoder(object): |
| def __init__(self, args, tgt_dict): |
| self.tgt_dict = tgt_dict |
| self.vocab_size = len(tgt_dict) |
| self.nbest = args.nbest |
|
|
| |
| self.criterion_type = CriterionType.CTC |
| self.blank = ( |
| tgt_dict.index("<ctc_blank>") |
| if "<ctc_blank>" in tgt_dict.indices |
| else tgt_dict.bos() |
| ) |
| if "<sep>" in tgt_dict.indices: |
| self.silence = tgt_dict.index("<sep>") |
| elif "|" in tgt_dict.indices: |
| self.silence = tgt_dict.index("|") |
| else: |
| self.silence = tgt_dict.eos() |
| self.asg_transitions = None |
|
|
| def generate(self, models, sample, **unused): |
| """Generate a batch of inferences.""" |
| |
| |
| encoder_input = { |
| k: v for k, v in sample["net_input"].items() if k != "prev_output_tokens" |
| } |
| emissions = self.get_emissions(models, encoder_input) |
| return self.decode(emissions) |
|
|
| def get_emissions(self, models, encoder_input): |
| """Run encoder and normalize emissions""" |
| model = models[0] |
| encoder_out = model(**encoder_input) |
| if hasattr(model, "get_logits"): |
| emissions = model.get_logits(encoder_out) |
| else: |
| emissions = model.get_normalized_probs(encoder_out, log_probs=True) |
| return emissions.transpose(0, 1).float().cpu().contiguous() |
|
|
| def get_tokens(self, idxs): |
| """Normalize tokens by handling CTC blank, ASG replabels, etc.""" |
| idxs = (g[0] for g in it.groupby(idxs)) |
| idxs = filter(lambda x: x != self.blank, idxs) |
| return torch.LongTensor(list(idxs)) |
|
|
|
|
| class W2lViterbiDecoder(W2lDecoder): |
| def __init__(self, args, tgt_dict): |
| super().__init__(args, tgt_dict) |
|
|
| def decode(self, emissions): |
| B, T, N = emissions.size() |
| hypos = [] |
| if self.asg_transitions is None: |
| transitions = torch.FloatTensor(N, N).zero_() |
| else: |
| transitions = torch.FloatTensor(self.asg_transitions).view(N, N) |
| viterbi_path = torch.IntTensor(B, T) |
| workspace = torch.ByteTensor(CpuViterbiPath.get_workspace_size(B, T, N)) |
| CpuViterbiPath.compute( |
| B, |
| T, |
| N, |
| get_data_ptr_as_bytes(emissions), |
| get_data_ptr_as_bytes(transitions), |
| get_data_ptr_as_bytes(viterbi_path), |
| get_data_ptr_as_bytes(workspace), |
| ) |
| return [ |
| [{"tokens": self.get_tokens(viterbi_path[b].tolist()), "score": 0}] |
| for b in range(B) |
| ] |
|
|
|
|
| class W2lKenLMDecoder(W2lDecoder): |
| def __init__(self, args, tgt_dict): |
| super().__init__(args, tgt_dict) |
|
|
| self.unit_lm = getattr(args, "unit_lm", False) |
|
|
| if args.lexicon: |
| self.lexicon = load_words(args.lexicon) |
| self.word_dict = create_word_dict(self.lexicon) |
| self.unk_word = self.word_dict.get_index("<unk>") |
|
|
| self.lm = KenLM(args.kenlm_model, self.word_dict) |
| self.trie = Trie(self.vocab_size, self.silence) |
|
|
| start_state = self.lm.start(False) |
| for i, (word, spellings) in enumerate(self.lexicon.items()): |
| word_idx = self.word_dict.get_index(word) |
| _, score = self.lm.score(start_state, word_idx) |
| for spelling in spellings: |
| spelling_idxs = [tgt_dict.index(token) for token in spelling] |
| assert ( |
| tgt_dict.unk() not in spelling_idxs |
| ), f"{spelling} {spelling_idxs}" |
| self.trie.insert(spelling_idxs, word_idx, score) |
| self.trie.smear(SmearingMode.MAX) |
|
|
| self.decoder_opts = LexiconDecoderOptions( |
| beam_size=args.beam, |
| beam_size_token=int(getattr(args, "beam_size_token", len(tgt_dict))), |
| beam_threshold=args.beam_threshold, |
| lm_weight=args.lm_weight, |
| word_score=args.word_score, |
| unk_score=args.unk_weight, |
| sil_score=args.sil_weight, |
| log_add=False, |
| criterion_type=self.criterion_type, |
| ) |
|
|
| if self.asg_transitions is None: |
| N = 768 |
| |
| self.asg_transitions = [] |
|
|
| self.decoder = LexiconDecoder( |
| self.decoder_opts, |
| self.trie, |
| self.lm, |
| self.silence, |
| self.blank, |
| self.unk_word, |
| self.asg_transitions, |
| self.unit_lm, |
| ) |
| else: |
| assert args.unit_lm, "lexicon free decoding can only be done with a unit language model" |
| from flashlight.lib.text.decoder import LexiconFreeDecoder, LexiconFreeDecoderOptions |
|
|
| d = {w: [[w]] for w in tgt_dict.symbols} |
| self.word_dict = create_word_dict(d) |
| self.lm = KenLM(args.kenlm_model, self.word_dict) |
| self.decoder_opts = LexiconFreeDecoderOptions( |
| beam_size=args.beam, |
| beam_size_token=int(getattr(args, "beam_size_token", len(tgt_dict))), |
| beam_threshold=args.beam_threshold, |
| lm_weight=args.lm_weight, |
| sil_score=args.sil_weight, |
| log_add=False, |
| criterion_type=self.criterion_type, |
| ) |
| self.decoder = LexiconFreeDecoder( |
| self.decoder_opts, self.lm, self.silence, self.blank, [] |
| ) |
|
|
| def get_timesteps(self, token_idxs: List[int]) -> List[int]: |
| """Returns frame numbers corresponding to every non-blank token. |
| |
| Parameters |
| ---------- |
| token_idxs : List[int] |
| IDs of decoded tokens. |
| |
| Returns |
| ------- |
| List[int] |
| Frame numbers corresponding to every non-blank token. |
| """ |
| timesteps = [] |
| for i, token_idx in enumerate(token_idxs): |
| if token_idx == self.blank: |
| continue |
| if i == 0 or token_idx != token_idxs[i-1]: |
| timesteps.append(i) |
| return timesteps |
|
|
| def decode(self, emissions): |
| B, T, N = emissions.size() |
| hypos = [] |
| for b in range(B): |
| emissions_ptr = emissions.data_ptr() + 4 * b * emissions.stride(0) |
| results = self.decoder.decode(emissions_ptr, T, N) |
|
|
| nbest_results = results[: self.nbest] |
| hypos.append( |
| [ |
| { |
| "tokens": self.get_tokens(result.tokens), |
| "score": result.score, |
| "timesteps": self.get_timesteps(result.tokens), |
| "words": [ |
| self.word_dict.get_entry(x) for x in result.words if x >= 0 |
| ], |
| } |
| for result in nbest_results |
| ] |
| ) |
| return hypos |
|
|
|
|
| FairseqLMState = namedtuple("FairseqLMState", ["prefix", "incremental_state", "probs"]) |
|
|
|
|
| class FairseqLM(LM): |
| def __init__(self, dictionary, model): |
| LM.__init__(self) |
| self.dictionary = dictionary |
| self.model = model |
| self.unk = self.dictionary.unk() |
|
|
| self.save_incremental = False |
| self.max_cache = 20_000 |
|
|
| model.cuda() |
| model.eval() |
| model.make_generation_fast_() |
|
|
| self.states = {} |
| self.stateq = deque() |
|
|
| def start(self, start_with_nothing): |
| state = LMState() |
| prefix = torch.LongTensor([[self.dictionary.eos()]]) |
| incremental_state = {} if self.save_incremental else None |
| with torch.no_grad(): |
| res = self.model(prefix.cuda(), incremental_state=incremental_state) |
| probs = self.model.get_normalized_probs(res, log_probs=True, sample=None) |
|
|
| if incremental_state is not None: |
| incremental_state = apply_to_sample(lambda x: x.cpu(), incremental_state) |
| self.states[state] = FairseqLMState( |
| prefix.numpy(), incremental_state, probs[0, -1].cpu().numpy() |
| ) |
| self.stateq.append(state) |
|
|
| return state |
|
|
| def score(self, state: LMState, token_index: int, no_cache: bool = False): |
| """ |
| Evaluate language model based on the current lm state and new word |
| Parameters: |
| ----------- |
| state: current lm state |
| token_index: index of the word |
| (can be lexicon index then you should store inside LM the |
| mapping between indices of lexicon and lm, or lm index of a word) |
| |
| Returns: |
| -------- |
| (LMState, float): pair of (new state, score for the current word) |
| """ |
| curr_state = self.states[state] |
|
|
| def trim_cache(targ_size): |
| while len(self.stateq) > targ_size: |
| rem_k = self.stateq.popleft() |
| rem_st = self.states[rem_k] |
| rem_st = FairseqLMState(rem_st.prefix, None, None) |
| self.states[rem_k] = rem_st |
|
|
| if curr_state.probs is None: |
| new_incremental_state = ( |
| curr_state.incremental_state.copy() |
| if curr_state.incremental_state is not None |
| else None |
| ) |
| with torch.no_grad(): |
| if new_incremental_state is not None: |
| new_incremental_state = apply_to_sample( |
| lambda x: x.cuda(), new_incremental_state |
| ) |
| elif self.save_incremental: |
| new_incremental_state = {} |
|
|
| res = self.model( |
| torch.from_numpy(curr_state.prefix).cuda(), |
| incremental_state=new_incremental_state, |
| ) |
| probs = self.model.get_normalized_probs( |
| res, log_probs=True, sample=None |
| ) |
|
|
| if new_incremental_state is not None: |
| new_incremental_state = apply_to_sample( |
| lambda x: x.cpu(), new_incremental_state |
| ) |
|
|
| curr_state = FairseqLMState( |
| curr_state.prefix, new_incremental_state, probs[0, -1].cpu().numpy() |
| ) |
|
|
| if not no_cache: |
| self.states[state] = curr_state |
| self.stateq.append(state) |
|
|
| score = curr_state.probs[token_index].item() |
|
|
| trim_cache(self.max_cache) |
|
|
| outstate = state.child(token_index) |
| if outstate not in self.states and not no_cache: |
| prefix = np.concatenate( |
| [curr_state.prefix, torch.LongTensor([[token_index]])], -1 |
| ) |
| incr_state = curr_state.incremental_state |
|
|
| self.states[outstate] = FairseqLMState(prefix, incr_state, None) |
|
|
| if token_index == self.unk: |
| score = float("-inf") |
|
|
| return outstate, score |
|
|
| def finish(self, state: LMState): |
| """ |
| Evaluate eos for language model based on the current lm state |
| |
| Returns: |
| -------- |
| (LMState, float): pair of (new state, score for the current word) |
| """ |
| return self.score(state, self.dictionary.eos()) |
|
|
| def empty_cache(self): |
| self.states = {} |
| self.stateq = deque() |
| gc.collect() |
|
|
|
|
| class W2lFairseqLMDecoder(W2lDecoder): |
| def __init__(self, args, tgt_dict): |
| super().__init__(args, tgt_dict) |
|
|
| self.unit_lm = getattr(args, "unit_lm", False) |
|
|
| self.lexicon = load_words(args.lexicon) if args.lexicon else None |
| self.idx_to_wrd = {} |
|
|
| checkpoint = torch.load(args.kenlm_model, map_location="cpu") |
|
|
| if "cfg" in checkpoint and checkpoint["cfg"] is not None: |
| lm_args = checkpoint["cfg"] |
| else: |
| lm_args = convert_namespace_to_omegaconf(checkpoint["args"]) |
|
|
| with open_dict(lm_args.task): |
| lm_args.task.data = osp.dirname(args.kenlm_model) |
|
|
| task = tasks.setup_task(lm_args.task) |
| model = task.build_model(lm_args.model) |
| model.load_state_dict(checkpoint["model"], strict=False) |
|
|
| self.trie = Trie(self.vocab_size, self.silence) |
|
|
| self.word_dict = task.dictionary |
| self.unk_word = self.word_dict.unk() |
| self.lm = FairseqLM(self.word_dict, model) |
|
|
| if self.lexicon: |
| start_state = self.lm.start(False) |
| for i, (word, spellings) in enumerate(self.lexicon.items()): |
| if self.unit_lm: |
| word_idx = i |
| self.idx_to_wrd[i] = word |
| score = 0 |
| else: |
| word_idx = self.word_dict.index(word) |
| _, score = self.lm.score(start_state, word_idx, no_cache=True) |
|
|
| for spelling in spellings: |
| spelling_idxs = [tgt_dict.index(token) for token in spelling] |
| assert ( |
| tgt_dict.unk() not in spelling_idxs |
| ), f"{spelling} {spelling_idxs}" |
| self.trie.insert(spelling_idxs, word_idx, score) |
| self.trie.smear(SmearingMode.MAX) |
|
|
| self.decoder_opts = LexiconDecoderOptions( |
| beam_size=args.beam, |
| beam_size_token=int(getattr(args, "beam_size_token", len(tgt_dict))), |
| beam_threshold=args.beam_threshold, |
| lm_weight=args.lm_weight, |
| word_score=args.word_score, |
| unk_score=args.unk_weight, |
| sil_score=args.sil_weight, |
| log_add=False, |
| criterion_type=self.criterion_type, |
| ) |
|
|
| self.decoder = LexiconDecoder( |
| self.decoder_opts, |
| self.trie, |
| self.lm, |
| self.silence, |
| self.blank, |
| self.unk_word, |
| [], |
| self.unit_lm, |
| ) |
| else: |
| assert args.unit_lm, "lexicon free decoding can only be done with a unit language model" |
| from flashlight.lib.text.decoder import LexiconFreeDecoder, LexiconFreeDecoderOptions |
|
|
| d = {w: [[w]] for w in tgt_dict.symbols} |
| self.word_dict = create_word_dict(d) |
| self.lm = KenLM(args.kenlm_model, self.word_dict) |
| self.decoder_opts = LexiconFreeDecoderOptions( |
| beam_size=args.beam, |
| beam_size_token=int(getattr(args, "beam_size_token", len(tgt_dict))), |
| beam_threshold=args.beam_threshold, |
| lm_weight=args.lm_weight, |
| sil_score=args.sil_weight, |
| log_add=False, |
| criterion_type=self.criterion_type, |
| ) |
| self.decoder = LexiconFreeDecoder( |
| self.decoder_opts, self.lm, self.silence, self.blank, [] |
| ) |
|
|
| def decode(self, emissions): |
| B, T, N = emissions.size() |
| hypos = [] |
|
|
| def idx_to_word(idx): |
| if self.unit_lm: |
| return self.idx_to_wrd[idx] |
| else: |
| return self.word_dict[idx] |
|
|
| def make_hypo(result): |
| hypo = {"tokens": self.get_tokens(result.tokens), "score": result.score} |
| if self.lexicon: |
| hypo["words"] = [idx_to_word(x) for x in result.words if x >= 0] |
| return hypo |
|
|
| for b in range(B): |
| emissions_ptr = emissions.data_ptr() + 4 * b * emissions.stride(0) |
| results = self.decoder.decode(emissions_ptr, T, N) |
|
|
| nbest_results = results[: self.nbest] |
| hypos.append([make_hypo(result) for result in nbest_results]) |
| self.lm.empty_cache() |
|
|
| return hypos |
|
|