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solver.py
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solver.py
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import os
import time
import numpy as np
import torch
from logger.saver import Saver
from logger import utils
def test(args, model, loss_func, loader_test, saver):
print(' [*] testing...')
model.eval()
# losses
test_loss = 0.
test_loss_rss = 0.
test_loss_uv = 0.
# intialization
num_batches = len(loader_test)
rtf_all = []
# run
with torch.no_grad():
for bidx, data in enumerate(loader_test):
fn = data['name'][0]
print('--------')
print('{}/{} - {}'.format(bidx, num_batches, fn))
# unpack data
for k in data.keys():
if k != 'name':
data[k] = data[k].to(args.device)
print('>>', data['name'][0])
# forward
st_time = time.time()
signal, _, (s_h, s_n) = model(data['units'], data['f0'], data['volume'], data['spk_id'])
ed_time = time.time()
# crop
min_len = np.min([signal.shape[1], data['audio'].shape[1]])
signal = signal[:,:min_len]
data['audio'] = data['audio'][:,:min_len]
# RTF
run_time = ed_time - st_time
song_time = data['audio'].shape[-1] / args.data.sampling_rate
rtf = run_time / song_time
print('RTF: {} | {} / {}'.format(rtf, run_time, song_time))
rtf_all.append(rtf)
# loss
loss = loss_func(signal, data['audio'])
test_loss += loss.item()
# log
saver.log_audio({fn+'/gt.wav': data['audio'], fn+'/pred.wav': signal})
# report
test_loss /= num_batches
# check
print(' [test_loss] test_loss:', test_loss)
print(' Real Time Factor', np.mean(rtf_all))
return test_loss
def train(args, initial_global_step, model, optimizer, loss_func, loader_train, loader_test):
# saver
saver = Saver(args, initial_global_step=initial_global_step)
# model size
params_count = utils.get_network_paras_amount({'model': model})
saver.log_info('--- model size ---')
saver.log_info(params_count)
# run
num_batches = len(loader_train)
model.train()
saver.log_info('======= start training =======')
for epoch in range(args.train.epochs):
for batch_idx, data in enumerate(loader_train):
saver.global_step_increment()
optimizer.zero_grad()
# unpack data
for k in data.keys():
if k != 'name':
data[k] = data[k].to(args.device)
# forward
signal, _, (s_h, s_n) = model(data['units'].float(), data['f0'], data['volume'], data['spk_id'], infer=False)
# loss
loss = loss_func(signal, data['audio'])
# handle nan loss
if torch.isnan(loss):
raise ValueError(' [x] nan loss ')
else:
# backpropagate
loss.backward()
optimizer.step()
# log loss
if saver.global_step % args.train.interval_log == 0:
saver.log_info(
'epoch: {} | {:3d}/{:3d} | {} | batch/s: {:.2f} | loss: {:.3f} | time: {} | step: {}'.format(
epoch,
batch_idx,
num_batches,
args.env.expdir,
args.train.interval_log/saver.get_interval_time(),
loss.item(),
saver.get_total_time(),
saver.global_step
)
)
saver.log_value({
'train/loss': loss.item()
})
# validation
if saver.global_step % args.train.interval_val == 0:
optimizer_save = optimizer if args.train.save_opt else None
# save latest
saver.save_model(model, optimizer_save, postfix=f'{saver.global_step}')
# run testing set
test_loss = test(args, model, loss_func, loader_test, saver)
# log loss
saver.log_info(
' --- <validation> --- \nloss: {:.3f}. '.format(
test_loss,
)
)
saver.log_value({
'validation/loss': test_loss
})
model.train()