maxmax20160403's picture
Upload 39 files
3aa4060
raw
history blame contribute delete
No virus
7.96 kB
import os
import torch
import numpy as np
from torch.utils.data import DataLoader
from torch.utils.tensorboard import SummaryWriter
from tqdm import tqdm
from grad_extend.data import TextMelSpeakerDataset, TextMelSpeakerBatchCollate
from grad_extend.utils import plot_tensor, save_plot, load_model, print_error
from grad.utils import fix_len_compatibility
from grad.model import GradTTS
# 200 frames
out_size = fix_len_compatibility(200)
def train(hps, chkpt_path=None):
print('Initializing logger...')
logger = SummaryWriter(log_dir=hps.train.log_dir)
print('Initializing data loaders...')
train_dataset = TextMelSpeakerDataset(hps.train.train_files)
batch_collate = TextMelSpeakerBatchCollate()
loader = DataLoader(dataset=train_dataset,
batch_size=hps.train.batch_size,
collate_fn=batch_collate,
drop_last=True,
num_workers=8,
shuffle=True)
test_dataset = TextMelSpeakerDataset(hps.train.valid_files)
print('Initializing model...')
model = GradTTS(hps.grad.n_mels, hps.grad.n_vecs, hps.grad.n_pits, hps.grad.n_spks, hps.grad.n_embs,
hps.grad.n_enc_channels, hps.grad.filter_channels,
hps.grad.dec_dim, hps.grad.beta_min, hps.grad.beta_max, hps.grad.pe_scale).cuda()
print('Number of encoder parameters = %.2fm' % (model.encoder.nparams/1e6))
print('Number of decoder parameters = %.2fm' % (model.decoder.nparams/1e6))
# Load Pretrain
if os.path.isfile(hps.train.pretrain):
print("Start from Grad_SVC pretrain model: %s" % hps.train.pretrain)
checkpoint = torch.load(hps.train.pretrain, map_location='cpu')
load_model(model, checkpoint['model'])
hps.train.learning_rate = 2e-5
# fine_tune
model.fine_tune()
else:
print_error(10 * '~' + "No Pretrain Model" + 10 * '~')
print('Initializing optimizer...')
optim = torch.optim.Adam(params=model.parameters(), lr=hps.train.learning_rate)
initepoch = 1
iteration = 0
# Load Continue
if chkpt_path is not None:
print("Resuming from checkpoint: %s" % chkpt_path)
checkpoint = torch.load(chkpt_path, map_location='cpu')
model.load_state_dict(checkpoint['model'])
optim.load_state_dict(checkpoint['optim'])
initepoch = checkpoint['epoch']
iteration = checkpoint['steps']
print('Logging test batch...')
test_batch = test_dataset.sample_test_batch(size=hps.train.test_size)
for i, item in enumerate(test_batch):
mel = item['mel']
logger.add_image(f'image_{i}/ground_truth', plot_tensor(mel.squeeze()),
global_step=0, dataformats='HWC')
save_plot(mel.squeeze(), f'{hps.train.log_dir}/original_{i}.png')
print('Start training...')
skip_diff_train = True
if initepoch >= hps.train.fast_epochs:
skip_diff_train = False
for epoch in range(initepoch, hps.train.full_epochs + 1):
if epoch % hps.train.test_step == 0:
model.eval()
print('Synthesis...')
with torch.no_grad():
for i, item in enumerate(test_batch):
l_vec = item['vec'].shape[0]
d_vec = item['vec'].shape[1]
lengths_fix = fix_len_compatibility(l_vec)
lengths = torch.LongTensor([l_vec]).cuda()
vec = torch.zeros((1, lengths_fix, d_vec), dtype=torch.float32).cuda()
pit = torch.zeros((1, lengths_fix), dtype=torch.float32).cuda()
spk = item['spk'].to(torch.float32).unsqueeze(0).cuda()
vec[0, :l_vec, :] = item['vec']
pit[0, :l_vec] = item['pit']
y_enc, y_dec = model(lengths, vec, pit, spk, n_timesteps=50)
logger.add_image(f'image_{i}/generated_enc',
plot_tensor(y_enc.squeeze().cpu()),
global_step=iteration, dataformats='HWC')
logger.add_image(f'image_{i}/generated_dec',
plot_tensor(y_dec.squeeze().cpu()),
global_step=iteration, dataformats='HWC')
save_plot(y_enc.squeeze().cpu(),
f'{hps.train.log_dir}/generated_enc_{i}.png')
save_plot(y_dec.squeeze().cpu(),
f'{hps.train.log_dir}/generated_dec_{i}.png')
model.train()
prior_losses = []
diff_losses = []
mel_losses = []
spk_losses = []
with tqdm(loader, total=len(train_dataset)//hps.train.batch_size) as progress_bar:
for batch in progress_bar:
model.zero_grad()
lengths = batch['lengths'].cuda()
vec = batch['vec'].cuda()
pit = batch['pit'].cuda()
spk = batch['spk'].cuda()
mel = batch['mel'].cuda()
prior_loss, diff_loss, mel_loss, spk_loss = model.compute_loss(
lengths, vec, pit, spk,
mel, out_size=out_size,
skip_diff=skip_diff_train)
loss = sum([prior_loss, diff_loss, mel_loss, spk_loss])
loss.backward()
enc_grad_norm = torch.nn.utils.clip_grad_norm_(model.encoder.parameters(),
max_norm=1)
dec_grad_norm = torch.nn.utils.clip_grad_norm_(model.decoder.parameters(),
max_norm=1)
optim.step()
logger.add_scalar('training/mel_loss', mel_loss,
global_step=iteration)
logger.add_scalar('training/prior_loss', prior_loss,
global_step=iteration)
logger.add_scalar('training/diffusion_loss', diff_loss,
global_step=iteration)
logger.add_scalar('training/encoder_grad_norm', enc_grad_norm,
global_step=iteration)
logger.add_scalar('training/decoder_grad_norm', dec_grad_norm,
global_step=iteration)
msg = f'Epoch: {epoch}, iteration: {iteration} | '
msg = msg + f'prior_loss: {prior_loss.item():.3f}, '
msg = msg + f'diff_loss: {diff_loss.item():.3f}, '
msg = msg + f'mel_loss: {mel_loss.item():.3f}, '
msg = msg + f'spk_loss: {spk_loss.item():.3f}, '
progress_bar.set_description(msg)
prior_losses.append(prior_loss.item())
diff_losses.append(diff_loss.item())
mel_losses.append(mel_loss.item())
spk_losses.append(spk_loss.item())
iteration += 1
msg = 'Epoch %d: ' % (epoch)
msg += '| spk loss = %.3f ' % np.mean(spk_losses)
msg += '| mel loss = %.3f ' % np.mean(mel_losses)
msg += '| prior loss = %.3f ' % np.mean(prior_losses)
msg += '| diffusion loss = %.3f\n' % np.mean(diff_losses)
with open(f'{hps.train.log_dir}/train.log', 'a') as f:
f.write(msg)
# if (np.mean(prior_losses) < 1.05):
# skip_diff_train = False
if epoch > hps.train.fast_epochs:
skip_diff_train = False
if epoch % hps.train.save_step > 0:
continue
save_path = f"{hps.train.log_dir}/grad_svc_{epoch}.pt"
torch.save({
'model': model.state_dict(),
'optim': optim.state_dict(),
'epoch': epoch,
'steps': iteration,
}, save_path)
print("Saved checkpoint to: %s" % save_path)