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lightning_av.py
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import itertools
import math
from collections import namedtuple
from typing import List, Tuple
import sentencepiece as spm
import torch
import torchaudio
from models.conformer_rnnt import conformer_rnnt
from models.emformer_rnnt import emformer_rnnt
from models.fusion import fusion_module
from models.resnet import video_resnet
from models.resnet1d import audio_resnet
from pytorch_lightning import LightningModule
from schedulers import WarmupCosineScheduler
from torchaudio.models import Hypothesis, RNNTBeamSearch
_expected_spm_vocab_size = 1023
AVBatch = namedtuple("AVBatch", ["audios", "videos", "audio_lengths", "video_lengths", "targets", "target_lengths"])
def post_process_hypos(
hypos: List[Hypothesis], sp_model: spm.SentencePieceProcessor
) -> List[Tuple[str, float, List[int], List[int]]]:
tokens_idx = 0
score_idx = 3
post_process_remove_list = [
sp_model.unk_id(),
sp_model.eos_id(),
sp_model.pad_id(),
]
filtered_hypo_tokens = [
[token_index for token_index in h[tokens_idx][1:] if token_index not in post_process_remove_list] for h in hypos
]
hypos_str = [sp_model.decode(s) for s in filtered_hypo_tokens]
hypos_ids = [h[tokens_idx][1:] for h in hypos]
hypos_score = [[math.exp(h[score_idx])] for h in hypos]
nbest_batch = list(zip(hypos_str, hypos_score, hypos_ids))
return nbest_batch
class AVConformerRNNTModule(LightningModule):
def __init__(self, args=None, sp_model=None):
super().__init__()
self.save_hyperparameters(args)
self.args = args
self.sp_model = sp_model
spm_vocab_size = self.sp_model.get_piece_size()
assert spm_vocab_size == _expected_spm_vocab_size, (
"The model returned by conformer_rnnt_base expects a SentencePiece model of "
f"vocabulary size {_expected_spm_vocab_size}, but the given SentencePiece model has a vocabulary size "
f"of {spm_vocab_size}. Please provide a correctly configured SentencePiece model."
)
self.blank_idx = spm_vocab_size
self.audio_frontend = audio_resnet()
self.video_frontend = video_resnet()
self.fusion = fusion_module()
frontend_params = [self.video_frontend.parameters(), self.audio_frontend.parameters()]
fusion_params = [self.fusion.parameters()]
if args.mode == "online":
self.model = emformer_rnnt()
if args.mode == "offline":
self.model = conformer_rnnt()
self.loss = torchaudio.transforms.RNNTLoss(reduction="sum")
self.optimizer = torch.optim.AdamW(
itertools.chain(*([self.model.parameters()] + frontend_params + fusion_params)),
lr=8e-4,
weight_decay=0.06,
betas=(0.9, 0.98),
)
def _step(self, batch, _, step_type):
if batch is None:
return None
prepended_targets = batch.targets.new_empty([batch.targets.size(0), batch.targets.size(1) + 1])
prepended_targets[:, 1:] = batch.targets
prepended_targets[:, 0] = self.blank_idx
prepended_target_lengths = batch.target_lengths + 1
video_features = self.video_frontend(batch.videos)
audio_features = self.audio_frontend(batch.audios)
output, src_lengths, _, _ = self.model(
self.fusion(torch.cat([video_features, audio_features], dim=-1)),
batch.video_lengths,
prepended_targets,
prepended_target_lengths,
)
loss = self.loss(output, batch.targets, src_lengths, batch.target_lengths)
self.log(f"Losses/{step_type}_loss", loss, on_step=True, on_epoch=True)
return loss
def configure_optimizers(self):
self.warmup_lr_scheduler = WarmupCosineScheduler(
self.optimizer,
10,
self.args.epochs,
len(self.trainer.datamodule.train_dataloader()) / self.trainer.num_devices / self.trainer.num_nodes,
)
self.lr_scheduler_interval = "step"
return (
[self.optimizer],
[{"scheduler": self.warmup_lr_scheduler, "interval": self.lr_scheduler_interval}],
)
def forward(self, batch):
decoder = RNNTBeamSearch(self.model, self.blank_idx)
video_features = self.video_frontend(batch.videos.to(self.device))
audio_features = self.audio_frontend(batch.audios.to(self.device))
hypotheses = decoder(
self.fusion(torch.cat([video_features, audio_features], dim=-1)),
batch.video_lengths.to(self.device),
beam_width=20,
)
return post_process_hypos(hypotheses, self.sp_model)[0][0]
def training_step(self, batch, batch_idx):
loss = self._step(batch, batch_idx, "train")
batch_size = batch.videos.size(0)
batch_sizes = self.all_gather(batch_size)
loss *= batch_sizes.size(0) / batch_sizes.sum() # world size / batch size
self.log("monitoring_step", torch.tensor(self.global_step, dtype=torch.float32))
return loss
def validation_step(self, batch, batch_idx):
return self._step(batch, batch_idx, "val")
def test_step(self, batch, batch_idx):
return self._step(batch, batch_idx, "test")