vall-e/vall_e/train.py

198 lines
6.1 KiB
Python
Executable File

# todo: clean this mess up
from .config import cfg
from .data import create_train_val_dataloader
from .emb import qnt
from .utils import setup_logging, to_device, trainer, flatten_dict, do_gc
from .data import fold_inputs, unfold_outputs
from .utils.distributed import is_global_leader
import auraloss
import json
import logging
import random
import torch
import torch.nn.functional as F
import traceback
import shutil
from collections import defaultdict
from tqdm import tqdm
import argparse
_logger = logging.getLogger(__name__)
mel_stft_loss = auraloss.freq.MelSTFTLoss(cfg.sample_rate, device="cpu")
def train_feeder(engine, batch):
with torch.autocast("cuda", dtype=cfg.trainer.dtype, enabled=cfg.trainer.amp):
batch_size = len(batch["text"])
engine.current_batch_size = batch_size
engine(
text_list=batch["text"],
proms_list=batch["proms"],
resps_list=batch["resps"],
lang_list=batch["lang"],
tone_list=batch["tone"],
task_list=batch["task"],
training=True,
)
losses = engine.gather_attribute("loss")
stat = engine.gather_attribute("stats")
loss = torch.stack([*losses.values()]).sum()
stats = {}
stats |= {k: v.item() for k, v in losses.items()}
stats |= {k: v.item() for k, v in stat.items()}
engine.tokens_processed += sum([ text.shape[0] for text in batch["text"] ])
engine.tokens_processed += sum([ resps.shape[0] for resps in batch["resps"] ])
return loss, stats
@torch.inference_mode()
def run_eval(engines, eval_name, dl):
stats = defaultdict(list)
stats['loss'] = []
def process( name, batch, resps_list ):
for speaker, path, ref, hyp, prom, task in zip(batch["spkr_name"], batch["path"], batch["resps"], resps_list, batch["proms"], batch["task"]):
if len(hyp) == 0:
continue
filename = f'{speaker}_{path.parts[-1]}'
if task != "tts":
filename = f"{filename}_{task}"
# flatten prom
if not isinstance(prom, torch.Tensor) and prom is not None:
prom = torch.concat([ p for p in prom if isinstance(p, torch.Tensor) ])
# to-do, refine the output dir to be sane-er
ref_path = (cfg.log_dir / str(engines.global_step) / "ref" / filename).with_suffix(".wav")
hyp_path = (cfg.log_dir / str(engines.global_step) / name / eval_name / filename).with_suffix(".wav")
prom_path = (cfg.log_dir / str(engines.global_step) / name / "prom" / filename).with_suffix(".wav")
hyp_path.parent.mkdir(parents=True, exist_ok=True)
ref_path.parent.mkdir(parents=True, exist_ok=True)
prom_path.parent.mkdir(parents=True, exist_ok=True)
ref_audio, sr = qnt.decode_to_file(ref, ref_path)
hyp_audio, sr = qnt.decode_to_file(hyp, hyp_path)
if prom is not None:
prom_audio, sr = qnt.decode_to_file(prom, prom_path)
# pseudo loss calculation since we don't get the logits during eval
min_length = min( ref_audio.shape[-1], hyp_audio.shape[-1] )
ref_audio = ref_audio[..., 0:min_length]
hyp_audio = hyp_audio[..., 0:min_length]
stats['loss'].append(mel_stft_loss(hyp_audio[None, :, :], ref_audio[None, :, :]).item())
processed = 0
while processed < cfg.evaluation.size:
batch = to_device(next(iter(dl)), cfg.device)
# limit to eval batch size in the event we somehow have a weird dataloader
for key in batch.keys():
batch[key] = batch[key][:cfg.evaluation.batch_size]
processed += len(batch["text"])
for name in engines:
engine = engines[name]
# to-do: eval for text tasks
for i, task in batch["task"]:
if task == "stt":
batch["task"][i] = "tts"
kwargs = dict(
text_list=batch["text"],
prom_list=batch["proms"],
lang_list=batch["lang"],
task_list=batch["task"],
)
if engine.hyper_config.experimental.hf:
resps_list = engine( **kwargs )
elif "len" in engine.hyper_config.capabilities:
len_list = engine( **kwargs, max_steps=10 ) # don't need more than that
len_list = [ min( l, cfg.evaluation.steps ) for l in len_list ]
resps_list = engine( **kwargs, len_list=len_list, max_levels=cfg.evaluation.nar_levels )
else:
if "ar" in engine.hyper_config.capabilities:
resps_list = engine( **kwargs, max_steps=cfg.evaluation.steps, sampling_temperature=cfg.evaluation.ar_temperature)
else:
resps_list = [ resp[:, 0] for resp in batch["resps"] ]
if "nar" in engine.hyper_config.capabilities:
resps_list = engine( **kwargs, resps_list=resps_list, sampling_temperature=cfg.evaluation.nar_temperature, max_levels=cfg.evaluation.nar_levels )
process( name, batch, resps_list )
stats = {k: sum(v) / len(v) for k, v in stats.items()}
engines_stats = {
f'{name}.{eval_name}': stats,
"it": engines.global_step,
}
#engines_stats['epoch'] = iteration * cfg.hyperparameters.gradient_accumulation_steps / len(dl)
_logger.info(f"Validation Metrics: {json.dumps(engines_stats)}.")
def train():
parser = argparse.ArgumentParser("VALL-E TTS")
parser.add_argument("--eval", action="store_true", default=None)
args, unknown = parser.parse_known_args()
# create log folder
setup_logging(cfg.log_dir)
# copy config yaml to backup
if cfg.yaml_path is not None and is_global_leader():
shutil.copy( cfg.yaml_path, cfg.log_dir / "config.yaml" )
train_dl, subtrain_dl, val_dl = create_train_val_dataloader()
def eval_fn(engines):
do_gc()
engines.eval()
# wrapped in a try block because it's sometimes prone to breaking
try:
run_eval(engines, "subtrain", subtrain_dl)
run_eval(engines, "val", val_dl)
except Exception as e:
_logger.warning(f"Error occurred while performing eval: {str(e)}")
_logger.warning(traceback.format_exc())
engines.train()
qnt.unload_model()
do_gc()
qnt.unload_model()
if args.eval:
return eval_fn(engines=trainer.load_engines())
"""
if cfg.trainer.load_webui:
from .webui import start
start(lock=False)
"""
trainer.train(
train_dl=train_dl,
train_feeder=train_feeder,
eval_fn=eval_fn,
)
if __name__ == "__main__":
# to-do: for DDP, spawn multiprocess instead of requiring `torchrun --nnodes=1 --nproc-per-node=4 -m vall_e.train yaml="./data/config.yaml"`
train()