| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| import copy |
| import os |
| from math import ceil |
| from typing import Any, Dict, List, Optional, Union |
|
|
| import numpy as np |
| import torch |
| from lightning.pytorch import Trainer |
| from omegaconf import DictConfig, OmegaConf, open_dict |
| from torch.utils.data import DataLoader |
|
|
| from nemo.collections.asr.data import audio_to_text_dataset |
| from nemo.collections.asr.data.audio_to_text import _AudioTextDataset |
| from nemo.collections.asr.data.audio_to_text_dali import AudioToCharDALIDataset, DALIOutputs |
| from nemo.collections.asr.data.audio_to_text_lhotse import LhotseSpeechToTextBpeDataset |
| from nemo.collections.asr.losses.rnnt import RNNTLoss, resolve_rnnt_default_loss_name |
| from nemo.collections.asr.metrics.wer import WER |
| from nemo.collections.asr.models.asr_model import ASRModel, ExportableEncDecModel |
| from nemo.collections.asr.modules.rnnt import RNNTDecoderJoint |
| from nemo.collections.asr.parts.mixins import ( |
| ASRModuleMixin, |
| ASRTranscriptionMixin, |
| TranscribeConfig, |
| TranscriptionReturnType, |
| ) |
| from nemo.collections.asr.parts.preprocessing.segment import ChannelSelectorType |
| from nemo.collections.asr.parts.submodules.rnnt_decoding import RNNTDecoding, RNNTDecodingConfig |
| from nemo.collections.asr.parts.utils.asr_batching import get_semi_sorted_batch_sampler |
| from nemo.collections.asr.parts.utils.rnnt_utils import Hypothesis |
| from nemo.collections.asr.parts.utils.timestamp_utils import process_timestamp_outputs |
| from nemo.collections.common.data.lhotse import get_lhotse_dataloader_from_config |
| from nemo.collections.common.parts.preprocessing.parsers import make_parser |
| from nemo.core.classes.common import PretrainedModelInfo, typecheck |
| from nemo.core.classes.mixins import AccessMixin |
| from nemo.core.neural_types import AcousticEncodedRepresentation, AudioSignal, LengthsType, NeuralType, SpectrogramType |
| from nemo.utils import logging |
|
|
|
|
| class EncDecRNNTModel(ASRModel, ASRModuleMixin, ExportableEncDecModel, ASRTranscriptionMixin): |
| """Base class for encoder decoder RNNT-based models.""" |
|
|
| def __init__(self, cfg: DictConfig, trainer: Trainer = None): |
| |
| |
| self.world_size = 1 |
| if trainer is not None: |
| self.world_size = trainer.world_size |
|
|
| super().__init__(cfg=cfg, trainer=trainer) |
|
|
| |
| self.preprocessor = EncDecRNNTModel.from_config_dict(self.cfg.preprocessor) |
| self.encoder = EncDecRNNTModel.from_config_dict(self.cfg.encoder) |
|
|
| |
| with open_dict(self.cfg.decoder): |
| self.cfg.decoder.vocab_size = len(self.cfg.labels) |
|
|
| with open_dict(self.cfg.joint): |
| self.cfg.joint.num_classes = len(self.cfg.labels) |
| self.cfg.joint.vocabulary = self.cfg.labels |
| self.cfg.joint.jointnet.encoder_hidden = self.cfg.model_defaults.enc_hidden |
| self.cfg.joint.jointnet.pred_hidden = self.cfg.model_defaults.pred_hidden |
|
|
| self.decoder = EncDecRNNTModel.from_config_dict(self.cfg.decoder) |
| self.joint = EncDecRNNTModel.from_config_dict(self.cfg.joint) |
|
|
| |
| loss_name, loss_kwargs = self.extract_rnnt_loss_cfg(self.cfg.get("loss", None)) |
|
|
| num_classes = self.joint.num_classes_with_blank - 1 |
|
|
| if loss_name == 'tdt': |
| num_classes = num_classes - self.joint.num_extra_outputs |
|
|
| self.loss = RNNTLoss( |
| num_classes=num_classes, |
| loss_name=loss_name, |
| loss_kwargs=loss_kwargs, |
| reduction=self.cfg.get("rnnt_reduction", "mean_batch"), |
| ) |
|
|
| if hasattr(self.cfg, 'spec_augment') and self._cfg.spec_augment is not None: |
| self.spec_augmentation = EncDecRNNTModel.from_config_dict(self.cfg.spec_augment) |
| else: |
| self.spec_augmentation = None |
|
|
| self.cfg.decoding = self.set_decoding_type_according_to_loss(self.cfg.decoding) |
| |
| self.decoding = RNNTDecoding( |
| decoding_cfg=self.cfg.decoding, |
| decoder=self.decoder, |
| joint=self.joint, |
| vocabulary=self.joint.vocabulary, |
| ) |
| |
| self.wer = WER( |
| decoding=self.decoding, |
| batch_dim_index=0, |
| use_cer=self._cfg.get('use_cer', False), |
| log_prediction=self._cfg.get('log_prediction', True), |
| dist_sync_on_step=True, |
| ) |
|
|
| |
| if 'compute_eval_loss' in self.cfg: |
| self.compute_eval_loss = self.cfg.compute_eval_loss |
| else: |
| self.compute_eval_loss = True |
|
|
| |
| if self.joint.fuse_loss_wer or ( |
| self.decoding.joint_fused_batch_size is not None and self.decoding.joint_fused_batch_size > 0 |
| ): |
| self.joint.set_loss(self.loss) |
| self.joint.set_wer(self.wer) |
|
|
| |
| self.setup_optim_normalization() |
|
|
| |
| self.setup_optimization_flags() |
|
|
| |
| self.setup_adapters() |
|
|
| def setup_optim_normalization(self): |
| """ |
| Helper method to setup normalization of certain parts of the model prior to the optimization step. |
| |
| Supported pre-optimization normalizations are as follows: |
| |
| .. code-block:: yaml |
| |
| # Variation Noise injection |
| model: |
| variational_noise: |
| std: 0.0 |
| start_step: 0 |
| |
| # Joint - Length normalization |
| model: |
| normalize_joint_txu: false |
| |
| # Encoder Network - gradient normalization |
| model: |
| normalize_encoder_norm: false |
| |
| # Decoder / Prediction Network - gradient normalization |
| model: |
| normalize_decoder_norm: false |
| |
| # Joint - gradient normalization |
| model: |
| normalize_joint_norm: false |
| """ |
| |
| if hasattr(self.cfg, 'variational_noise'): |
| self._optim_variational_noise_std = self.cfg['variational_noise'].get('std', 0) |
| self._optim_variational_noise_start = self.cfg['variational_noise'].get('start_step', 0) |
| else: |
| self._optim_variational_noise_std = 0 |
| self._optim_variational_noise_start = 0 |
|
|
| |
| self._optim_normalize_joint_txu = self.cfg.get('normalize_joint_txu', False) |
| self._optim_normalize_txu = None |
|
|
| |
| self._optim_normalize_encoder_norm = self.cfg.get('normalize_encoder_norm', False) |
|
|
| |
| self._optim_normalize_decoder_norm = self.cfg.get('normalize_decoder_norm', False) |
|
|
| |
| self._optim_normalize_joint_norm = self.cfg.get('normalize_joint_norm', False) |
|
|
| def extract_rnnt_loss_cfg(self, cfg: Optional[DictConfig]): |
| """ |
| Helper method to extract the rnnt loss name, and potentially its kwargs |
| to be passed. |
| |
| Args: |
| cfg: Should contain `loss_name` as a string which is resolved to a RNNT loss name. |
| If the default should be used, then `default` can be used. |
| Optionally, one can pass additional kwargs to the loss function. The subdict |
| should have a keyname as follows : `{loss_name}_kwargs`. |
| |
| Note that whichever loss_name is selected, that corresponding kwargs will be |
| selected. For the "default" case, the "{resolved_default}_kwargs" will be used. |
| |
| Examples: |
| .. code-block:: yaml |
| |
| loss_name: "default" |
| warprnnt_numba_kwargs: |
| kwargs2: some_other_val |
| |
| Returns: |
| A tuple, the resolved loss name as well as its kwargs (if found). |
| """ |
| if cfg is None: |
| cfg = DictConfig({}) |
|
|
| loss_name = cfg.get("loss_name", "default") |
|
|
| if loss_name == "default": |
| loss_name = resolve_rnnt_default_loss_name() |
|
|
| loss_kwargs = cfg.get(f"{loss_name}_kwargs", None) |
|
|
| logging.info(f"Using RNNT Loss : {loss_name}\n" f"Loss {loss_name}_kwargs: {loss_kwargs}") |
|
|
| return loss_name, loss_kwargs |
|
|
| def set_decoding_type_according_to_loss(self, decoding_cfg): |
| loss_name, loss_kwargs = self.extract_rnnt_loss_cfg(self.cfg.get("loss", None)) |
|
|
| if loss_name == 'tdt': |
| decoding_cfg.durations = loss_kwargs.durations |
| elif loss_name == 'multiblank_rnnt': |
| decoding_cfg.big_blank_durations = loss_kwargs.big_blank_durations |
|
|
| return decoding_cfg |
|
|
| @torch.no_grad() |
| def transcribe( |
| self, |
| audio: Union[str, List[str], np.ndarray, DataLoader], |
| use_lhotse: bool = True, |
| batch_size: int = 4, |
| return_hypotheses: bool = False, |
| partial_hypothesis: Optional[List['Hypothesis']] = None, |
| num_workers: int = 0, |
| channel_selector: Optional[ChannelSelectorType] = None, |
| augmentor: DictConfig = None, |
| verbose: bool = True, |
| timestamps: Optional[bool] = None, |
| override_config: Optional[TranscribeConfig] = None, |
| ) -> TranscriptionReturnType: |
| """ |
| Uses greedy decoding to transcribe audio files. Use this method for debugging and prototyping. |
| |
| Args: |
| audio: (a single or list) of paths to audio files or a np.ndarray/tensor audio array or path |
| to a manifest file. |
| Can also be a dataloader object that provides values that can be consumed by the model. |
| Recommended length per file is between 5 and 25 seconds. \ |
| But it is possible to pass a few hours long file if enough GPU memory is available. |
| use_lhotse: (bool) If audio is not a dataloder, defines whether to create a lhotse dataloader or a |
| non-lhotse dataloader. |
| batch_size: (int) batch size to use during inference. \ |
| Bigger will result in better throughput performance but would use more memory. |
| return_hypotheses: (bool) Either return hypotheses or text |
| With hypotheses can do some postprocessing like getting timestamp or rescoring |
| partial_hypothesis: Optional[List['Hypothesis']] - A list of partial hypotheses to be used during rnnt |
| decoding. This is useful for streaming rnnt decoding. If this is not None, then the length of this |
| list should be equal to the length of the audio list. |
| num_workers: (int) number of workers for DataLoader |
| channel_selector (int | Iterable[int] | str): select a single channel or a subset of channels |
| from multi-channel audio. If set to `'average'`, it performs averaging across channels. |
| Disabled if set to `None`. Defaults to `None`. Uses zero-based indexing. |
| augmentor: (DictConfig): Augment audio samples during transcription if augmentor is applied. |
| verbose: (bool) whether to display tqdm progress bar |
| timestamps: Optional(Bool): timestamps will be returned if set to True as part of hypothesis object |
| (output.timestep['segment']/output.timestep['word']). Refer to `Hypothesis` class for more details. |
| Default is None and would retain the previous state set by using self.change_decoding_strategy(). |
| override_config: (Optional[TranscribeConfig]) override transcription config pre-defined by the user. |
| **Note**: All other arguments in the function will be ignored if override_config is passed. |
| You should call this argument as `model.transcribe(audio, override_config=TranscribeConfig(...))`. |
| |
| Returns: |
| Returns a tuple of 2 items - |
| * A list of greedy transcript texts / Hypothesis |
| * An optional list of beam search transcript texts / Hypothesis / NBestHypothesis. |
| """ |
|
|
| timestamps = timestamps or (override_config.timestamps if override_config is not None else None) |
| if timestamps is not None: |
| need_change_decoding = False |
| if timestamps or (override_config is not None and override_config.timestamps): |
| logging.info( |
| "Timestamps requested, setting decoding timestamps to True. Capture them in Hypothesis object, \ |
| with output[0][idx].timestep['word'/'segment'/'char']" |
| ) |
| return_hypotheses = True |
| if self.cfg.decoding.get("compute_timestamps", None) is not True: |
| |
| need_change_decoding = True |
| with open_dict(self.cfg.decoding): |
| self.cfg.decoding.compute_timestamps = True |
| else: |
| return_hypotheses = False |
| if self.cfg.decoding.get("compute_timestamps", None) is not False: |
| |
| need_change_decoding = True |
| with open_dict(self.cfg.decoding): |
| self.cfg.decoding.compute_timestamps = False |
|
|
| if need_change_decoding: |
| self.change_decoding_strategy(self.cfg.decoding, verbose=False) |
|
|
| return super().transcribe( |
| audio=audio, |
| use_lhotse=use_lhotse, |
| batch_size=batch_size, |
| return_hypotheses=return_hypotheses, |
| num_workers=num_workers, |
| channel_selector=channel_selector, |
| augmentor=augmentor, |
| verbose=verbose, |
| timestamps=timestamps, |
| override_config=override_config, |
| |
| partial_hypothesis=partial_hypothesis, |
| ) |
|
|
| def change_vocabulary(self, new_vocabulary: List[str], decoding_cfg: Optional[DictConfig] = None): |
| """ |
| Changes vocabulary used during RNNT decoding process. Use this method when fine-tuning a |
| pre-trained model. This method changes only decoder and leaves encoder and pre-processing |
| modules unchanged. For example, you would use it if you want to use pretrained encoder when |
| fine-tuning on data in another language, or when you'd need model to learn capitalization, |
| punctuation and/or special characters. |
| |
| Args: |
| new_vocabulary: list with new vocabulary. Must contain at least 2 elements. Typically, \ |
| this is target alphabet. |
| decoding_cfg: A config for the decoder, which is optional. If the decoding type |
| needs to be changed (from say Greedy to Beam decoding etc), the config can be passed here. |
| |
| Returns: None |
| |
| """ |
| if self.joint.vocabulary == new_vocabulary: |
| logging.warning(f"Old {self.joint.vocabulary} and new {new_vocabulary} match. Not changing anything.") |
| else: |
| if new_vocabulary is None or len(new_vocabulary) == 0: |
| raise ValueError(f'New vocabulary must be non-empty list of chars. But I got: {new_vocabulary}') |
|
|
| joint_config = self.joint.to_config_dict() |
| new_joint_config = copy.deepcopy(joint_config) |
| new_joint_config['vocabulary'] = new_vocabulary |
| new_joint_config['num_classes'] = len(new_vocabulary) |
| del self.joint |
| self.joint = EncDecRNNTModel.from_config_dict(new_joint_config) |
|
|
| decoder_config = self.decoder.to_config_dict() |
| new_decoder_config = copy.deepcopy(decoder_config) |
| new_decoder_config.vocab_size = len(new_vocabulary) |
| del self.decoder |
| self.decoder = EncDecRNNTModel.from_config_dict(new_decoder_config) |
|
|
| del self.loss |
| loss_name, loss_kwargs = self.extract_rnnt_loss_cfg(self.cfg.get('loss', None)) |
| self.loss = RNNTLoss( |
| num_classes=self.joint.num_classes_with_blank - 1, loss_name=loss_name, loss_kwargs=loss_kwargs |
| ) |
|
|
| if decoding_cfg is None: |
| |
| decoding_cfg = self.cfg.decoding |
|
|
| |
| decoding_cls = OmegaConf.structured(RNNTDecodingConfig) |
| decoding_cls = OmegaConf.create(OmegaConf.to_container(decoding_cls)) |
| decoding_cfg = OmegaConf.merge(decoding_cls, decoding_cfg) |
| decoding_cfg = self.set_decoding_type_according_to_loss(decoding_cfg) |
|
|
| self.decoding = RNNTDecoding( |
| decoding_cfg=decoding_cfg, |
| decoder=self.decoder, |
| joint=self.joint, |
| vocabulary=self.joint.vocabulary, |
| ) |
|
|
| self.wer = WER( |
| decoding=self.decoding, |
| batch_dim_index=self.wer.batch_dim_index, |
| use_cer=self.wer.use_cer, |
| log_prediction=self.wer.log_prediction, |
| dist_sync_on_step=True, |
| ) |
|
|
| |
| if self.joint.fuse_loss_wer or ( |
| self.decoding.joint_fused_batch_size is not None and self.decoding.joint_fused_batch_size > 0 |
| ): |
| self.joint.set_loss(self.loss) |
| self.joint.set_wer(self.wer) |
|
|
| |
| with open_dict(self.cfg.joint): |
| self.cfg.joint = new_joint_config |
|
|
| with open_dict(self.cfg.decoder): |
| self.cfg.decoder = new_decoder_config |
|
|
| with open_dict(self.cfg.decoding): |
| self.cfg.decoding = decoding_cfg |
|
|
| ds_keys = ['train_ds', 'validation_ds', 'test_ds'] |
| for key in ds_keys: |
| if key in self.cfg: |
| with open_dict(self.cfg[key]): |
| self.cfg[key]['labels'] = OmegaConf.create(new_vocabulary) |
|
|
| logging.info(f"Changed decoder to output to {self.joint.vocabulary} vocabulary.") |
|
|
| def change_decoding_strategy(self, decoding_cfg: DictConfig, verbose=True): |
| """ |
| Changes decoding strategy used during RNNT decoding process. |
| |
| Args: |
| decoding_cfg: A config for the decoder, which is optional. If the decoding type |
| needs to be changed (from say Greedy to Beam decoding etc), the config can be passed here. |
| verbose: (bool) whether to display logging information |
| """ |
| if decoding_cfg is None: |
| |
| logging.info("No `decoding_cfg` passed when changing decoding strategy, using internal config") |
| decoding_cfg = self.cfg.decoding |
|
|
| |
| decoding_cls = OmegaConf.structured(RNNTDecodingConfig) |
| decoding_cls = OmegaConf.create(OmegaConf.to_container(decoding_cls)) |
| decoding_cfg = OmegaConf.merge(decoding_cls, decoding_cfg) |
| decoding_cfg = self.set_decoding_type_according_to_loss(decoding_cfg) |
|
|
| self.decoding = RNNTDecoding( |
| decoding_cfg=decoding_cfg, |
| decoder=self.decoder, |
| joint=self.joint, |
| vocabulary=self.joint.vocabulary, |
| ) |
|
|
| self.wer = WER( |
| decoding=self.decoding, |
| batch_dim_index=self.wer.batch_dim_index, |
| use_cer=self.wer.use_cer, |
| log_prediction=self.wer.log_prediction, |
| dist_sync_on_step=True, |
| ) |
|
|
| |
| if self.joint.fuse_loss_wer or ( |
| self.decoding.joint_fused_batch_size is not None and self.decoding.joint_fused_batch_size > 0 |
| ): |
| self.joint.set_loss(self.loss) |
| self.joint.set_wer(self.wer) |
|
|
| self.joint.temperature = decoding_cfg.get('temperature', 1.0) |
|
|
| |
| with open_dict(self.cfg.decoding): |
| self.cfg.decoding = decoding_cfg |
|
|
| if verbose: |
| logging.info(f"Changed decoding strategy to \n{OmegaConf.to_yaml(self.cfg.decoding)}") |
|
|
| def _setup_dataloader_from_config(self, config: Optional[Dict]): |
| |
| audio_to_text_dataset.inject_dataloader_value_from_model_config(self.cfg, config, key='sample_rate') |
| audio_to_text_dataset.inject_dataloader_value_from_model_config(self.cfg, config, key='labels') |
|
|
| if config.get("use_lhotse"): |
| return get_lhotse_dataloader_from_config( |
| config, |
| |
| |
| |
| global_rank=self.global_rank if not config.get("do_transcribe", False) else config.get("global_rank"), |
| world_size=self.world_size if not config.get("do_transcribe", False) else config.get("world_size"), |
| dataset=LhotseSpeechToTextBpeDataset( |
| tokenizer=make_parser( |
| labels=config.get('labels', None), |
| name=config.get('parser', 'en'), |
| unk_id=config.get('unk_index', -1), |
| blank_id=config.get('blank_index', -1), |
| do_normalize=config.get('normalize_transcripts', False), |
| ), |
| return_cuts=config.get("do_transcribe", False), |
| ), |
| ) |
|
|
| dataset = audio_to_text_dataset.get_audio_to_text_char_dataset_from_config( |
| config=config, |
| local_rank=self.local_rank, |
| global_rank=self.global_rank, |
| world_size=self.world_size, |
| preprocessor_cfg=self._cfg.get("preprocessor", None), |
| ) |
|
|
| if dataset is None: |
| return None |
|
|
| if isinstance(dataset, AudioToCharDALIDataset): |
| |
| return dataset |
|
|
| shuffle = config['shuffle'] |
| if isinstance(dataset, torch.utils.data.IterableDataset): |
| shuffle = False |
|
|
| if hasattr(dataset, 'collate_fn'): |
| collate_fn = dataset.collate_fn |
| elif hasattr(dataset.datasets[0], 'collate_fn'): |
| |
| collate_fn = dataset.datasets[0].collate_fn |
| else: |
| |
| collate_fn = dataset.datasets[0].datasets[0].collate_fn |
|
|
| batch_sampler = None |
| if config.get('use_semi_sorted_batching', False): |
| if not isinstance(dataset, _AudioTextDataset): |
| raise RuntimeError( |
| "Semi Sorted Batch sampler can be used with AudioToCharDataset or AudioToBPEDataset " |
| f"but found dataset of type {type(dataset)}" |
| ) |
| |
| batch_sampler = get_semi_sorted_batch_sampler(self, dataset, config) |
| config['batch_size'] = None |
| config['drop_last'] = False |
| shuffle = False |
|
|
| return torch.utils.data.DataLoader( |
| dataset=dataset, |
| batch_size=config['batch_size'], |
| sampler=batch_sampler, |
| batch_sampler=None, |
| collate_fn=collate_fn, |
| drop_last=config.get('drop_last', False), |
| shuffle=shuffle, |
| num_workers=config.get('num_workers', 0), |
| pin_memory=config.get('pin_memory', False), |
| ) |
|
|
| def setup_training_data(self, train_data_config: Optional[Union[DictConfig, Dict]]): |
| """ |
| Sets up the training data loader via a Dict-like object. |
| |
| Args: |
| train_data_config: A config that contains the information regarding construction |
| of an ASR Training dataset. |
| |
| Supported Datasets: |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text_dali.AudioToCharDALIDataset` |
| """ |
| if 'shuffle' not in train_data_config: |
| train_data_config['shuffle'] = True |
|
|
| |
| self._update_dataset_config(dataset_name='train', config=train_data_config) |
|
|
| self._train_dl = self._setup_dataloader_from_config(config=train_data_config) |
|
|
| |
| |
| |
|
|
| if ( |
| self._train_dl is not None |
| and hasattr(self._train_dl, 'dataset') |
| and isinstance(self._train_dl.dataset, torch.utils.data.IterableDataset) |
| ): |
| |
| |
| |
| self._trainer.limit_train_batches=(5000*16) |
|
|
| def setup_validation_data(self, val_data_config: Optional[Union[DictConfig, Dict]]): |
| """ |
| Sets up the validation data loader via a Dict-like object. |
| |
| Args: |
| val_data_config: A config that contains the information regarding construction |
| of an ASR Training dataset. |
| |
| Supported Datasets: |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text_dali.AudioToCharDALIDataset` |
| """ |
| if 'shuffle' not in val_data_config: |
| val_data_config['shuffle'] = False |
|
|
| |
| self._update_dataset_config(dataset_name='validation', config=val_data_config) |
|
|
| self._validation_dl = self._setup_dataloader_from_config(config=val_data_config) |
|
|
| def setup_test_data(self, test_data_config: Optional[Union[DictConfig, Dict]]): |
| """ |
| Sets up the test data loader via a Dict-like object. |
| |
| Args: |
| test_data_config: A config that contains the information regarding construction |
| of an ASR Training dataset. |
| |
| Supported Datasets: |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.AudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToCharDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text.TarredAudioToBPEDataset` |
| - :class:`~nemo.collections.asr.data.audio_to_text_dali.AudioToCharDALIDataset` |
| """ |
| if 'shuffle' not in test_data_config: |
| test_data_config['shuffle'] = False |
|
|
| |
| self._update_dataset_config(dataset_name='test', config=test_data_config) |
|
|
| self._test_dl = self._setup_dataloader_from_config(config=test_data_config) |
|
|
| @property |
| def input_types(self) -> Optional[Dict[str, NeuralType]]: |
| if hasattr(self.preprocessor, '_sample_rate'): |
| input_signal_eltype = AudioSignal(freq=self.preprocessor._sample_rate) |
| else: |
| input_signal_eltype = AudioSignal() |
|
|
| return { |
| "input_signal": NeuralType(('B', 'T'), input_signal_eltype, optional=True), |
| "input_signal_length": NeuralType(tuple('B'), LengthsType(), optional=True), |
| "processed_signal": NeuralType(('B', 'D', 'T'), SpectrogramType(), optional=True), |
| "processed_signal_length": NeuralType(tuple('B'), LengthsType(), optional=True), |
| } |
|
|
| @property |
| def output_types(self) -> Optional[Dict[str, NeuralType]]: |
| return { |
| "outputs": NeuralType(('B', 'D', 'T'), AcousticEncodedRepresentation()), |
| "encoded_lengths": NeuralType(tuple('B'), LengthsType()), |
| } |
|
|
| @typecheck() |
| def forward( |
| self, input_signal=None, input_signal_length=None, processed_signal=None, processed_signal_length=None |
| ): |
| """ |
| Forward pass of the model. Note that for RNNT Models, the forward pass of the model is a 3 step process, |
| and this method only performs the first step - forward of the acoustic model. |
| |
| Please refer to the `training_step` in order to see the full `forward` step for training - which |
| performs the forward of the acoustic model, the prediction network and then the joint network. |
| Finally, it computes the loss and possibly compute the detokenized text via the `decoding` step. |
| |
| Please refer to the `validation_step` in order to see the full `forward` step for inference - which |
| performs the forward of the acoustic model, the prediction network and then the joint network. |
| Finally, it computes the decoded tokens via the `decoding` step and possibly compute the batch metrics. |
| |
| Args: |
| input_signal: Tensor that represents a batch of raw audio signals, |
| of shape [B, T]. T here represents timesteps, with 1 second of audio represented as |
| `self.sample_rate` number of floating point values. |
| input_signal_length: Vector of length B, that contains the individual lengths of the audio |
| sequences. |
| processed_signal: Tensor that represents a batch of processed audio signals, |
| of shape (B, D, T) that has undergone processing via some DALI preprocessor. |
| processed_signal_length: Vector of length B, that contains the individual lengths of the |
| processed audio sequences. |
| |
| Returns: |
| A tuple of 2 elements - |
| 1) The log probabilities tensor of shape [B, T, D]. |
| 2) The lengths of the acoustic sequence after propagation through the encoder, of shape [B]. |
| """ |
| has_input_signal = input_signal is not None and input_signal_length is not None |
| has_processed_signal = processed_signal is not None and processed_signal_length is not None |
| if (has_input_signal ^ has_processed_signal) is False: |
| raise ValueError( |
| f"{self} Arguments ``input_signal`` and ``input_signal_length`` are mutually exclusive " |
| " with ``processed_signal`` and ``processed_signal_len`` arguments." |
| ) |
|
|
| if not has_processed_signal: |
| processed_signal, processed_signal_length = self.preprocessor( |
| input_signal=input_signal, |
| length=input_signal_length, |
| ) |
|
|
| |
| if self.spec_augmentation is not None and self.training: |
| processed_signal = self.spec_augmentation(input_spec=processed_signal, length=processed_signal_length) |
|
|
| encoded, encoded_len = self.encoder(audio_signal=processed_signal, length=processed_signal_length) |
| return encoded, encoded_len |
|
|
| |
| def training_step(self, batch, batch_nb): |
| |
| if AccessMixin.is_access_enabled(self.model_guid): |
| AccessMixin.reset_registry(self) |
|
|
| signal, signal_len, transcript, transcript_len = batch |
|
|
| |
| if isinstance(batch, DALIOutputs) and batch.has_processed_signal: |
| encoded, encoded_len = self.forward(processed_signal=signal, processed_signal_length=signal_len) |
| else: |
| encoded, encoded_len = self.forward(input_signal=signal, input_signal_length=signal_len) |
| del signal |
|
|
| |
| decoder, target_length, states = self.decoder(targets=transcript, target_length=transcript_len) |
|
|
| if hasattr(self, '_trainer') and self._trainer is not None: |
| log_every_n_steps = self._trainer.log_every_n_steps |
| sample_id = self._trainer.global_step |
| else: |
| log_every_n_steps = 1 |
| sample_id = batch_nb |
|
|
| |
| if not self.joint.fuse_loss_wer: |
| |
| joint = self.joint(encoder_outputs=encoded, decoder_outputs=decoder) |
| loss_value = self.loss( |
| log_probs=joint, targets=transcript, input_lengths=encoded_len, target_lengths=target_length |
| ) |
|
|
| |
| loss_value = self.add_auxiliary_losses(loss_value) |
|
|
| |
| if AccessMixin.is_access_enabled(self.model_guid): |
| AccessMixin.reset_registry(self) |
|
|
| tensorboard_logs = { |
| 'train_loss': loss_value, |
| 'learning_rate': self._optimizer.param_groups[0]['lr'], |
| 'global_step': torch.tensor(self.trainer.global_step, dtype=torch.float32), |
| } |
|
|
| if (sample_id + 1) % log_every_n_steps == 0: |
| self.wer.update( |
| predictions=encoded, |
| predictions_lengths=encoded_len, |
| targets=transcript, |
| targets_lengths=transcript_len, |
| ) |
| _, scores, words = self.wer.compute() |
| self.wer.reset() |
| tensorboard_logs.update({'training_batch_wer': scores.float() / words}) |
|
|
| else: |
| |
| if (sample_id + 1) % log_every_n_steps == 0: |
| compute_wer = True |
| else: |
| compute_wer = False |
|
|
| |
| loss_value, wer, _, _ = self.joint( |
| encoder_outputs=encoded, |
| decoder_outputs=decoder, |
| encoder_lengths=encoded_len, |
| transcripts=transcript, |
| transcript_lengths=transcript_len, |
| compute_wer=compute_wer, |
| ) |
|
|
| |
| loss_value = self.add_auxiliary_losses(loss_value) |
|
|
| |
| if AccessMixin.is_access_enabled(self.model_guid): |
| AccessMixin.reset_registry(self) |
|
|
| tensorboard_logs = { |
| 'train_loss': loss_value, |
| 'learning_rate': self._optimizer.param_groups[0]['lr'], |
| 'global_step': torch.tensor(self.trainer.global_step, dtype=torch.float32), |
| } |
|
|
| if compute_wer: |
| tensorboard_logs.update({'training_batch_wer': wer}) |
|
|
| |
| self.log_dict(tensorboard_logs) |
|
|
| |
| if self._optim_normalize_joint_txu: |
| self._optim_normalize_txu = [encoded_len.max(), transcript_len.max()] |
|
|
| return {'loss': loss_value} |
|
|
| def predict_step(self, batch, batch_idx, dataloader_idx=0): |
| signal, signal_len, transcript, transcript_len, sample_id = batch |
|
|
| |
| if isinstance(batch, DALIOutputs) and batch.has_processed_signal: |
| encoded, encoded_len = self.forward(processed_signal=signal, processed_signal_length=signal_len) |
| else: |
| encoded, encoded_len = self.forward(input_signal=signal, input_signal_length=signal_len) |
| del signal |
|
|
| best_hyp_text = self.decoding.rnnt_decoder_predictions_tensor( |
| encoder_output=encoded, encoded_lengths=encoded_len, return_hypotheses=True |
| ) |
|
|
| if isinstance(sample_id, torch.Tensor): |
| sample_id = sample_id.cpu().detach().numpy() |
| return list(zip(sample_id, best_hyp_text)) |
|
|
| def validation_pass(self, batch, batch_idx, dataloader_idx=0): |
| signal, signal_len, transcript, transcript_len = batch |
|
|
| |
| if isinstance(batch, DALIOutputs) and batch.has_processed_signal: |
| encoded, encoded_len = self.forward(processed_signal=signal, processed_signal_length=signal_len) |
| else: |
| encoded, encoded_len = self.forward(input_signal=signal, input_signal_length=signal_len) |
| del signal |
|
|
| tensorboard_logs = {} |
|
|
| |
| if not self.joint.fuse_loss_wer: |
| if self.compute_eval_loss: |
| decoder, target_length, states = self.decoder(targets=transcript, target_length=transcript_len) |
| joint = self.joint(encoder_outputs=encoded, decoder_outputs=decoder) |
|
|
| loss_value = self.loss( |
| log_probs=joint, targets=transcript, input_lengths=encoded_len, target_lengths=target_length |
| ) |
|
|
| tensorboard_logs['val_loss'] = loss_value |
|
|
| self.wer.update( |
| predictions=encoded, |
| predictions_lengths=encoded_len, |
| targets=transcript, |
| targets_lengths=transcript_len, |
| ) |
| wer, wer_num, wer_denom = self.wer.compute() |
| self.wer.reset() |
|
|
| tensorboard_logs['val_wer_num'] = wer_num |
| tensorboard_logs['val_wer_denom'] = wer_denom |
| tensorboard_logs['val_wer'] = wer |
|
|
| else: |
| |
| compute_wer = True |
|
|
| if self.compute_eval_loss: |
| decoded, target_len, states = self.decoder(targets=transcript, target_length=transcript_len) |
| else: |
| decoded = None |
| target_len = transcript_len |
|
|
| |
| loss_value, wer, wer_num, wer_denom = self.joint( |
| encoder_outputs=encoded, |
| decoder_outputs=decoded, |
| encoder_lengths=encoded_len, |
| transcripts=transcript, |
| transcript_lengths=target_len, |
| compute_wer=compute_wer, |
| ) |
|
|
| if loss_value is not None: |
| tensorboard_logs['val_loss'] = loss_value |
|
|
| tensorboard_logs['val_wer_num'] = wer_num |
| tensorboard_logs['val_wer_denom'] = wer_denom |
| tensorboard_logs['val_wer'] = wer |
|
|
| self.log('global_step', torch.tensor(self.trainer.global_step, dtype=torch.float32)) |
|
|
| return tensorboard_logs |
|
|
| def validation_step(self, batch, batch_idx, dataloader_idx=0): |
| metrics = self.validation_pass(batch, batch_idx, dataloader_idx) |
| if type(self.trainer.val_dataloaders) == list and len(self.trainer.val_dataloaders) > 1: |
| self.validation_step_outputs[dataloader_idx].append(metrics) |
| else: |
| self.validation_step_outputs.append(metrics) |
| return metrics |
|
|
| def test_step(self, batch, batch_idx, dataloader_idx=0): |
| logs = self.validation_pass(batch, batch_idx, dataloader_idx=dataloader_idx) |
| test_logs = {name.replace("val_", "test_"): value for name, value in logs.items()} |
| if type(self.trainer.test_dataloaders) == list and len(self.trainer.test_dataloaders) > 1: |
| self.test_step_outputs[dataloader_idx].append(test_logs) |
| else: |
| self.test_step_outputs.append(test_logs) |
| return test_logs |
|
|
| def multi_validation_epoch_end(self, outputs, dataloader_idx: int = 0): |
| if self.compute_eval_loss: |
| val_loss_mean = torch.stack([x['val_loss'] for x in outputs]).mean() |
| val_loss_log = {'val_loss': val_loss_mean} |
| else: |
| val_loss_log = {} |
| wer_num = torch.stack([x['val_wer_num'] for x in outputs]).sum() |
| wer_denom = torch.stack([x['val_wer_denom'] for x in outputs]).sum() |
| tensorboard_logs = {**val_loss_log, 'val_wer': wer_num.float() / wer_denom} |
| return {**val_loss_log, 'log': tensorboard_logs} |
|
|
| def multi_test_epoch_end(self, outputs, dataloader_idx: int = 0): |
| if self.compute_eval_loss: |
| test_loss_mean = torch.stack([x['test_loss'] for x in outputs]).mean() |
| test_loss_log = {'test_loss': test_loss_mean} |
| else: |
| test_loss_log = {} |
| wer_num = torch.stack([x['test_wer_num'] for x in outputs]).sum() |
| wer_denom = torch.stack([x['test_wer_denom'] for x in outputs]).sum() |
| tensorboard_logs = {**test_loss_log, 'test_wer': wer_num.float() / wer_denom} |
| return {**test_loss_log, 'log': tensorboard_logs} |
|
|
| """ Transcription related methods """ |
|
|
| def _transcribe_forward(self, batch: Any, trcfg: TranscribeConfig): |
| encoded, encoded_len = self.forward(input_signal=batch[0], input_signal_length=batch[1]) |
| output = dict(encoded=encoded, encoded_len=encoded_len) |
| return output |
|
|
| def _transcribe_output_processing( |
| self, outputs, trcfg: TranscribeConfig |
| ) -> Union[List['Hypothesis'], List[List['Hypothesis']]]: |
| encoded = outputs.pop('encoded') |
| encoded_len = outputs.pop('encoded_len') |
|
|
| hyp = self.decoding.rnnt_decoder_predictions_tensor( |
| encoded, |
| encoded_len, |
| return_hypotheses=trcfg.return_hypotheses, |
| partial_hypotheses=trcfg.partial_hypothesis, |
| ) |
| |
| del encoded, encoded_len |
|
|
| if trcfg.timestamps: |
| hyp = process_timestamp_outputs( |
| hyp, self.encoder.subsampling_factor, self.cfg['preprocessor']['window_stride'] |
| ) |
|
|
| return hyp |
|
|
| def _setup_transcribe_dataloader(self, config: Dict) -> 'torch.utils.data.DataLoader': |
| """ |
| Setup function for a temporary data loader which wraps the provided audio file. |
| |
| Args: |
| config: A python dictionary which contains the following keys: |
| paths2audio_files: (a list) of paths to audio files. The files should be relatively short fragments. \ |
| Recommended length per file is between 5 and 25 seconds. |
| batch_size: (int) batch size to use during inference. \ |
| Bigger will result in better throughput performance but would use more memory. |
| temp_dir: (str) A temporary directory where the audio manifest is temporarily |
| stored. |
| |
| Returns: |
| A pytorch DataLoader for the given audio file(s). |
| """ |
| if 'manifest_filepath' in config: |
| manifest_filepath = config['manifest_filepath'] |
| batch_size = config['batch_size'] |
| else: |
| manifest_filepath = os.path.join(config['temp_dir'], 'manifest.json') |
| batch_size = min(config['batch_size'], len(config['paths2audio_files'])) |
|
|
| dl_config = { |
| 'manifest_filepath': manifest_filepath, |
| 'sample_rate': self.preprocessor._sample_rate, |
| 'labels': self.joint.vocabulary, |
| 'batch_size': batch_size, |
| 'trim_silence': False, |
| 'shuffle': False, |
| 'num_workers': config.get('num_workers', min(batch_size, os.cpu_count() - 1)), |
| 'pin_memory': True, |
| } |
|
|
| if config.get("augmentor"): |
| dl_config['augmentor'] = config.get("augmentor") |
|
|
| temporary_datalayer = self._setup_dataloader_from_config(config=DictConfig(dl_config)) |
| return temporary_datalayer |
|
|
| def _transcribe_on_begin(self, audio, trcfg: TranscribeConfig): |
| super()._transcribe_on_begin(audio=audio, trcfg=trcfg) |
| |
| try: |
| biasing_multi_model = self.decoding.decoding.decoding_computer.biasing_multi_model |
| except AttributeError: |
| biasing_multi_model = None |
| if trcfg.partial_hypothesis: |
| for partial_hyp in trcfg.partial_hypothesis: |
| if ( |
| isinstance(partial_hyp, Hypothesis) |
| and partial_hyp.has_biasing_request() |
| and partial_hyp.biasing_cfg.auto_manage_multi_model |
| and partial_hyp.biasing_cfg.multi_model_id is None |
| ): |
| if biasing_multi_model is not None: |
| partial_hyp.biasing_cfg.add_to_multi_model( |
| tokenizer=self.tokenizer, biasing_multi_model=biasing_multi_model |
| ) |
| else: |
| logging.warning("Requested biasing for hypothesis, but multi-model is not found, skipping.") |
|
|
| def _transcribe_on_end(self, trcfg: TranscribeConfig): |
| super()._transcribe_on_end(trcfg=trcfg) |
| try: |
| biasing_multi_model = self.decoding.decoding.decoding_computer.biasing_multi_model |
| except AttributeError: |
| biasing_multi_model = None |
|
|
| |
| if biasing_multi_model is not None and trcfg.partial_hypothesis: |
| for partial_hyp in trcfg.partial_hypothesis: |
| if ( |
| isinstance(partial_hyp, Hypothesis) |
| and partial_hyp.has_biasing_request() |
| and partial_hyp.biasing_cfg.auto_manage_multi_model |
| ): |
| partial_hyp.biasing_cfg.remove_from_multi_model(biasing_multi_model=biasing_multi_model) |
|
|
| def on_after_backward(self): |
| super().on_after_backward() |
| if self._optim_variational_noise_std > 0 and self.global_step >= self._optim_variational_noise_start: |
| for param_name, param in self.decoder.named_parameters(): |
| if param.grad is not None: |
| noise = torch.normal( |
| mean=0.0, |
| std=self._optim_variational_noise_std, |
| size=param.size(), |
| device=param.device, |
| dtype=param.dtype, |
| ) |
| param.grad.data.add_(noise) |
|
|
| if self._optim_normalize_joint_txu: |
| T, U = self._optim_normalize_txu |
| if T is not None and U is not None: |
| for param_name, param in self.encoder.named_parameters(): |
| if param.grad is not None: |
| param.grad.data.div_(U) |
|
|
| for param_name, param in self.decoder.named_parameters(): |
| if param.grad is not None: |
| param.grad.data.div_(T) |
|
|
| if self._optim_normalize_encoder_norm: |
| for param_name, param in self.encoder.named_parameters(): |
| if param.grad is not None: |
| norm = param.grad.norm() |
| param.grad.data.div_(norm) |
|
|
| if self._optim_normalize_decoder_norm: |
| for param_name, param in self.decoder.named_parameters(): |
| if param.grad is not None: |
| norm = param.grad.norm() |
| param.grad.data.div_(norm) |
|
|
| if self._optim_normalize_joint_norm: |
| for param_name, param in self.joint.named_parameters(): |
| if param.grad is not None: |
| norm = param.grad.norm() |
| param.grad.data.div_(norm) |
|
|
| |
| def list_export_subnets(self): |
| return ['encoder', 'decoder_joint'] |
|
|
| |
| @property |
| def decoder_joint(self): |
| return RNNTDecoderJoint(self.decoder, self.joint) |
|
|
| def set_export_config(self, args): |
| if 'decoder_type' in args: |
| if hasattr(self, 'change_decoding_strategy'): |
| self.change_decoding_strategy(decoder_type=args['decoder_type']) |
| else: |
| raise Exception("Model does not have decoder type option") |
| super().set_export_config(args) |
|
|
| @classmethod |
| def list_available_models(cls) -> List[PretrainedModelInfo]: |
| """ |
| This method returns a list of pre-trained model which can be instantiated directly from NVIDIA's NGC cloud. |
| |
| Returns: |
| List of available pre-trained models. |
| """ |
| results = [] |
|
|
| model = PretrainedModelInfo( |
| pretrained_model_name="stt_zh_conformer_transducer_large", |
| description="For details about this model, please visit https://catalog.ngc.nvidia.com/orgs/nvidia/teams/nemo/models/stt_zh_conformer_transducer_large", |
| location="https://api.ngc.nvidia.com/v2/models/nvidia/nemo/stt_zh_conformer_transducer_large/versions/1.8.0/files/stt_zh_conformer_transducer_large.nemo", |
| ) |
| results.append(model) |
|
|
| return results |
|
|
| @property |
| def wer(self): |
| return self._wer |
|
|
| @wer.setter |
| def wer(self, wer): |
| self._wer = wer |
|
|