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https://github.com/AUTOMATIC1111/stable-diffusion-webui.git
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c3c8eef9fd
train: make it possible to make text files with prompts train: rework scheduler so that there's less repeating code in textual inversion and hypernets train: move epochs setting to options
70 lines
2.2 KiB
Python
70 lines
2.2 KiB
Python
import tqdm
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class LearnScheduleIterator:
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def __init__(self, learn_rate, max_steps, cur_step=0):
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"""
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specify learn_rate as "0.001:100, 0.00001:1000, 1e-5:10000" to have lr of 0.001 until step 100, 0.00001 until 1000, 1e-5:10000 until 10000
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"""
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pairs = learn_rate.split(',')
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self.rates = []
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self.it = 0
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self.maxit = 0
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for i, pair in enumerate(pairs):
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tmp = pair.split(':')
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if len(tmp) == 2:
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step = int(tmp[1])
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if step > cur_step:
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self.rates.append((float(tmp[0]), min(step, max_steps)))
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self.maxit += 1
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if step > max_steps:
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return
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elif step == -1:
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self.rates.append((float(tmp[0]), max_steps))
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self.maxit += 1
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return
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else:
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self.rates.append((float(tmp[0]), max_steps))
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self.maxit += 1
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return
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def __iter__(self):
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return self
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def __next__(self):
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if self.it < self.maxit:
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self.it += 1
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return self.rates[self.it - 1]
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else:
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raise StopIteration
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class LearnRateScheduler:
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def __init__(self, learn_rate, max_steps, cur_step=0, verbose=True):
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self.schedules = LearnScheduleIterator(learn_rate, max_steps, cur_step)
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(self.learn_rate, self.end_step) = next(self.schedules)
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self.verbose = verbose
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if self.verbose:
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print(f'Training at rate of {self.learn_rate} until step {self.end_step}')
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self.finished = False
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def apply(self, optimizer, step_number):
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if step_number <= self.end_step:
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return
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try:
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(self.learn_rate, self.end_step) = next(self.schedules)
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except Exception:
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self.finished = True
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return
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if self.verbose:
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tqdm.tqdm.write(f'Training at rate of {self.learn_rate} until step {self.end_step}')
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for pg in optimizer.param_groups:
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pg['lr'] = self.learn_rate
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