Round3Fight / rnnt_models.py
Tyl3rDrden's picture
Upload folder using huggingface_hub
578b6a8 verified
# Copyright (c) 2020, NVIDIA CORPORATION. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
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):
# Get global rank and total number of GPU workers for IterableDataset partitioning, if applicable
# Global_rank and local_rank is set by LightningModule in Lightning 1.2.0
self.world_size = 1
if trainer is not None:
self.world_size = trainer.world_size
super().__init__(cfg=cfg, trainer=trainer)
# Initialize components
self.preprocessor = EncDecRNNTModel.from_config_dict(self.cfg.preprocessor)
self.encoder = EncDecRNNTModel.from_config_dict(self.cfg.encoder)
# Update config values required by components dynamically
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)
# Setup RNNT Loss
loss_name, loss_kwargs = self.extract_rnnt_loss_cfg(self.cfg.get("loss", None))
num_classes = self.joint.num_classes_with_blank - 1 # for standard RNNT and multi-blank
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)
# Setup decoding objects
self.decoding = RNNTDecoding(
decoding_cfg=self.cfg.decoding,
decoder=self.decoder,
joint=self.joint,
vocabulary=self.joint.vocabulary,
)
# Setup WER calculation
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,
)
# Whether to compute loss during evaluation
if 'compute_eval_loss' in self.cfg:
self.compute_eval_loss = self.cfg.compute_eval_loss
else:
self.compute_eval_loss = True
# Setup fused Joint step if flag is set
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)
# Setup optimization normalization (if provided in config)
self.setup_optim_normalization()
# Setup optional Optimization flags
self.setup_optimization_flags()
# Setup encoder adapters (from ASRAdapterModelMixin)
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
"""
# setting up the variational noise for the decoder
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
# Setup normalized gradients for model joint by T x U scaling factor (joint length normalization)
self._optim_normalize_joint_txu = self.cfg.get('normalize_joint_txu', False)
self._optim_normalize_txu = None
# Setup normalized encoder norm for model
self._optim_normalize_encoder_norm = self.cfg.get('normalize_encoder_norm', False)
# Setup normalized decoder norm for model
self._optim_normalize_decoder_norm = self.cfg.get('normalize_decoder_norm', False)
# Setup normalized joint norm for model
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:
# compute_timestamps None, False or non-existent -> change to 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:
# compute_timestamps None, True or non-existent -> change to 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,
# Additional arguments
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:
# Assume same decoding config as before
decoding_cfg = self.cfg.decoding
# Assert the decoding config with all hyper parameters
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,
)
# Setup fused Joint step
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)
# Update config
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:
# Assume same decoding config as before
logging.info("No `decoding_cfg` passed when changing decoding strategy, using internal config")
decoding_cfg = self.cfg.decoding
# Assert the decoding config with all hyper parameters
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,
)
# Setup fused Joint step
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)
# Update config
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]):
# Automatically inject args from model config to dataloader config
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,
# During transcription, the model is initially loaded on the CPU.
# To ensure the correct global_rank and world_size are set,
# these values must be passed from the configuration.
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):
# DALI Dataset implements dataloader interface
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'):
# support datasets that are lists of entries
collate_fn = dataset.datasets[0].collate_fn
else:
# support datasets that are lists of lists
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)}"
)
# set batch_size and batch_sampler to None to disable automatic batching
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
# preserve config
self._update_dataset_config(dataset_name='train', config=train_data_config)
self._train_dl = self._setup_dataloader_from_config(config=train_data_config)
# Need to set this because if using an IterableDataset, the length of the dataloader is the total number
# of samples rather than the number of batches, and this messes up the tqdm progress bar.
# So we set the number of steps manually (to the correct number) to fix this.
if (
self._train_dl is not None
and hasattr(self._train_dl, 'dataset')
and isinstance(self._train_dl.dataset, torch.utils.data.IterableDataset)
):
# We also need to check if limit_train_batches is already set.
# If it's an int, we assume that the user has set it to something sane, i.e. <= # training batches,
# and don't change it. Otherwise, adjust batches accordingly if it's a float (including 1.0)
self._trainer.limit_train_batches=(5000*16) # i want 5000 global steps with a batch size of 32 with 16 accumulation steps, which means 5000 global steps
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
# preserve config
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
# preserve config
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,
)
# Spec augment is not applied during evaluation/testing
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
# PTL-specific methods
def training_step(self, batch, batch_nb):
# Reset access registry
if AccessMixin.is_access_enabled(self.model_guid):
AccessMixin.reset_registry(self)
signal, signal_len, transcript, transcript_len = batch
# forward() only performs encoder forward
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
# During training, loss must be computed, so decoder forward is necessary
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 experimental fused Joint-Loss-WER is not used
if not self.joint.fuse_loss_wer:
# Compute full joint and loss
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
)
# Add auxiliary losses, if registered
loss_value = self.add_auxiliary_losses(loss_value)
# Reset access registry
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 experimental fused Joint-Loss-WER is used
if (sample_id + 1) % log_every_n_steps == 0:
compute_wer = True
else:
compute_wer = False
# Fused joint step
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,
)
# Add auxiliary losses, if registered
loss_value = self.add_auxiliary_losses(loss_value)
# Reset access registry
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})
# Log items
self.log_dict(tensorboard_logs)
# Preserve batch acoustic model T and language model U parameters if normalizing
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
# forward() only performs encoder forward
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
# forward() only performs encoder forward
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 experimental fused Joint-Loss-WER is not used
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:
# If experimental fused Joint-Loss-WER is used
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
# Fused joint step
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,
)
# cleanup memory
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)
# add biasing requests to the decoding computer
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
# remove biasing requests from the decoding computer
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)
# EncDecRNNTModel is exported in 2 parts
def list_export_subnets(self):
return ['encoder', 'decoder_joint']
# for export
@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