forked from camenduru/ai-voice-cloning
reordered things so it uses fresh data and not last-updated data
This commit is contained in:
parent
ce3866d0cd
commit
d312019d05
181
src/utils.py
181
src/utils.py
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@ -552,6 +552,11 @@ class TrainingState():
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self.last_info_check_at = 0
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self.statistics = []
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self.losses = []
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self.metrics = {
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'step': "",
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'rate': "",
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'loss': "",
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}
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self.loss_milestones = [ 1.0, 0.15, 0.05 ]
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@ -691,7 +696,37 @@ class TrainingState():
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lapsed = False
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message = None
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if line.find('%|') > 0:
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if line.find('INFO: [epoch:') >= 0:
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# to-do, actually validate this works, and probably kill training when it's found, the model's dead by this point
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if ': nan' in line:
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should_return = True
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print("! NAN DETECTED !")
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self.buffer.append("! NAN DETECTED !")
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# easily rip out our stats...
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match = re.findall(r'\b([a-z_0-9]+?)\b: +?([0-9]\.[0-9]+?e[+-]\d+|[\d,]+)\b', line)
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if match and len(match) > 0:
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for k, v in match:
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self.info[k] = float(v.replace(",", ""))
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self.load_losses(update=True)
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should_return = True
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elif line.find('Saving models and training states') >= 0:
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self.checkpoint = self.checkpoint + 1
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percent = self.checkpoint / float(self.checkpoints)
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message = f'[{self.checkpoint}/{self.checkpoints}] Saving checkpoint...'
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if progress is not None:
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progress(percent, message)
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print(f'{"{:.3f}".format(percent*100)}% {message}')
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self.buffer.append(f'{"{:.3f}".format(percent*100)}% {message}')
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self.cleanup_old(keep=keep_x_past_datasets)
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elif line.find('%|') > 0:
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match = re.findall(r'(\d+)%\|(.+?)\| (\d+|\?)\/(\d+|\?) \[(.+?)<(.+?), +(.+?)\]', line)
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if match and len(match) > 0:
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match = match[0]
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@ -722,63 +757,8 @@ class TrainingState():
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except Exception as e:
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pass
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metric_step = [f"{self.epoch}/{self.epochs}", f"{self.it}/{self.its}", f"{step}/{steps}"]
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metric_step = ", ".join(metric_step)
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metric_rate = []
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if self.epoch_rate:
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metric_rate.append(self.epoch_rate)
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if self.it_rate:
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metric_rate.append(self.it_rate)
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metric_rate = ", ".join(metric_rate)
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eta_hhmmss = "?"
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if self.eta_hhmmss:
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eta_hhmmss = self.eta_hhmmss
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else:
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try:
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eta = (self.its - self.it) * (self.it_time_deltas / self.it_taken)
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eta = str(timedelta(seconds=int(eta)))
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eta_hhmmss = eta
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except Exception as e:
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pass
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metric_loss = []
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if len(self.losses) > 0:
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metric_loss.append(f'Loss: {"{:3f}".format(self.losses[-1]["value"])}')
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if len(self.losses) >= 2:
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# i can probably do a """riemann sum""" to get a better derivative, but the instantaneous one works fine
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d1_loss = self.losses[-1]["value"]
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d2_loss = self.losses[-2]["value"]
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dloss = d2_loss - d1_loss
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d1_step = self.losses[-1]["step"]
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d2_step = self.losses[-2]["step"]
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dstep = d2_step - d1_step
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# don't bother if the loss went up
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if dloss < 0:
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its_remain = self.its - self.it
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inst_deriv = dloss / dstep
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next_milestone = None
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for milestone in self.loss_milestones:
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if d1_loss > milestone:
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next_milestone = milestone
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break
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if next_milestone:
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# tfw can do simple calculus but not basic algebra in my head
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est_its = (next_milestone - d1_loss) * (dstep / dloss)
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metric_loss.append(f'Est. milestone {next_milestone} in: {int(est_its)}its')
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else:
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est_loss = inst_deriv * its_remain + d1_loss
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metric_loss.append(f'Est. final loss: {"{:3f}".format(est_loss)}')
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metric_loss = ", ".join(metric_loss)
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message = f'[{metric_step}] [{metric_rate}] [ETA: {eta_hhmmss}] [{metric_loss}]'
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self.metrics['step'] = [f"{self.epoch}/{self.epochs}", f"{self.it}/{self.its}", f"{step}/{steps}"]
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self.metrics['step'] = ", ".join(self.metrics['step'])
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if lapsed:
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self.epoch = self.epoch + 1
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@ -799,6 +779,61 @@ class TrainingState():
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except Exception as e:
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pass
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self.metrics['rate'] = []
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if self.epoch_rate:
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self.metrics['rate'].append(self.epoch_rate)
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if self.it_rate:
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self.metrics['rate'].append(self.it_rate)
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self.metrics['rate'] = ", ".join(self.metrics['rate'])
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eta_hhmmss = "?"
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if self.eta_hhmmss:
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eta_hhmmss = self.eta_hhmmss
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else:
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try:
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eta = (self.its - self.it) * (self.it_time_deltas / self.it_taken)
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eta = str(timedelta(seconds=int(eta)))
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eta_hhmmss = eta
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except Exception as e:
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pass
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self.metrics['loss'] = []
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if len(self.losses) > 0:
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self.metrics['loss'].append(f'Loss: {"{:3f}".format(self.losses[-1]["value"])}')
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if len(self.losses) >= 2:
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# i can probably do a """riemann sum""" to get a better derivative, but the instantaneous one works fine
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d1_loss = self.losses[-1]["value"]
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d2_loss = self.losses[-2]["value"]
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dloss = d2_loss - d1_loss
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d1_step = self.losses[-1]["step"]
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d2_step = self.losses[-2]["step"]
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dstep = d2_step - d1_step
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# don't bother if the loss went up
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if dloss < 0:
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its_remain = self.its - self.it
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inst_deriv = dloss / dstep
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next_milestone = None
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for milestone in self.loss_milestones:
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if d1_loss > milestone:
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next_milestone = milestone
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break
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if next_milestone:
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# tfw can do simple calculus but not basic algebra in my head
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est_its = (next_milestone - d1_loss) * (dstep / dloss)
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self.metrics['loss'].append(f'Est. milestone {next_milestone} in: {int(est_its)}its')
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else:
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est_loss = inst_deriv * its_remain + d1_loss
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self.metrics['loss'].append(f'Est. final loss: {"{:3f}".format(est_loss)}')
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self.metrics['loss'] = ", ".join(self.metrics['loss'])
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message = f"[{self.metrics['step']}] [{self.metrics['rate']}] [ETA: {eta_hhmmss}] [{self.metrics['loss']}]"
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if message:
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percent = self.it / float(self.its) # self.epoch / float(self.epochs)
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if progress is not None:
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@ -806,36 +841,6 @@ class TrainingState():
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self.buffer.append(f'[{"{:.3f}".format(percent*100)}%] {message}')
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if line.find('INFO: [epoch:') >= 0:
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# to-do, actually validate this works, and probably kill training when it's found, the model's dead by this point
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if ': nan' in line:
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should_return = True
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print("! NAN DETECTED !")
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self.buffer.append("! NAN DETECTED !")
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# easily rip out our stats...
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match = re.findall(r'\b([a-z_0-9]+?)\b: +?([0-9]\.[0-9]+?e[+-]\d+|[\d,]+)\b', line)
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if match and len(match) > 0:
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for k, v in match:
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self.info[k] = float(v.replace(",", ""))
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self.load_losses(update=True)
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should_return = True
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elif line.find('Saving models and training states') >= 0:
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self.checkpoint = self.checkpoint + 1
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percent = self.checkpoint / float(self.checkpoints)
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message = f'[{self.checkpoint}/{self.checkpoints}] Saving checkpoint...'
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if progress is not None:
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progress(percent, message)
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print(f'{"{:.3f}".format(percent*100)}% {message}')
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self.buffer.append(f'{"{:.3f}".format(percent*100)}% {message}')
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self.cleanup_old(keep=keep_x_past_datasets)
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if verbose and not self.training_started:
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should_return = True
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