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conformer-rnnt-ami / models /modeling_rnnt.py
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from dataclasses import dataclass
from typing import Optional
import torch
from nemo.collections.asr.models import EncDecRNNTBPEModel
from omegaconf import DictConfig
from transformers.utils import ModelOutput
@dataclass
class RNNTOutput(ModelOutput):
"""
Base class for RNNT outputs.
"""
loss: Optional[torch.FloatTensor] = None
wer: Optional[float] = None
wer_num: Optional[float] = None
wer_denom: Optional[float] = None
# Adapted from https://github.com/NVIDIA/NeMo/blob/66c7677cd4a68d78965d4905dd1febbf5385dff3/nemo/collections/asr/models/rnnt_bpe_models.py#L33
class RNNTBPEModel(EncDecRNNTBPEModel):
def __init__(self, cfg: DictConfig):
super().__init__(cfg=cfg, trainer=None)
def encoding(
self, input_signal=None, input_signal_length=None, processed_signal=None, processed_signal_length=None
):
"""
Forward pass of the acoustic 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 `forward` 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
def forward(self, input_ids, input_lengths=None, labels=None, label_lengths=None):
# encoding() only performs encoder forward
encoded, encoded_len = self.encoding(input_signal=input_ids, input_signal_length=input_lengths)
del input_ids
# During training, loss must be computed, so decoder forward is necessary
decoder, target_length, states = self.decoder(targets=labels, target_length=label_lengths)
# 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=labels, input_lengths=encoded_len, target_lengths=target_length
)
# Add auxiliary losses, if registered
loss_value = self.add_auxiliary_losses(loss_value)
wer = wer_num = wer_denom = None
if not self.training:
self.wer.update(encoded, encoded_len, labels, target_length)
wer, wer_num, wer_denom = self.wer.compute()
self.wer.reset()
else:
# If experimental fused Joint-Loss-WER is used
# Fused joint step
loss_value, wer, wer_num, wer_denom = self.joint(
encoder_outputs=encoded,
decoder_outputs=decoder,
encoder_lengths=encoded_len,
transcripts=labels,
transcript_lengths=label_lengths,
compute_wer=not self.training,
)
# Add auxiliary losses, if registered
loss_value = self.add_auxiliary_losses(loss_value)
return RNNTOutput(loss=loss_value, wer=wer, wer_num=wer_num, wer_denom=wer_denom)
def transcribe(self, input_ids, input_lengths=None, labels=None, label_lengths=None, return_hypotheses: bool = False, partial_hypothesis: Optional = None):
encoded, encoded_len = self.encoding(input_signal=input_ids, input_signal_length=input_lengths)
del input_ids
best_hyp, all_hyp = self.decoding.rnnt_decoder_predictions_tensor(
encoded,
encoded_len,
return_hypotheses=return_hypotheses,
partial_hypotheses=partial_hypothesis,
)
return best_hyp, all_hyp