164 lines
5.4 KiB
Python
164 lines
5.4 KiB
Python
from torch.utils.tensorboard import SummaryWriter
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from collections import defaultdict
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import json
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import os
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import shutil
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import torch
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import torchvision
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import numpy as np
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from termcolor import colored
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FORMAT_CONFIG = {
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'rl': {
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'train': [
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('episode', 'E', 'int'), ('step', 'S', 'int'),
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('duration', 'D', 'time'), ('episode_reward', 'R', 'float'),
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('batch_reward', 'BR', 'float'), ('actor_loss', 'ALOSS', 'float'),
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('critic_loss', 'CLOSS', 'float'), ('ae_loss', 'RLOSS', 'float')
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],
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'eval': [('step', 'S', 'int'), ('episode_reward', 'ER', 'float')]
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}
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}
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class AverageMeter(object):
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def __init__(self):
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self._sum = 0
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self._count = 0
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def update(self, value, n=1):
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self._sum += value
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self._count += n
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def value(self):
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return self._sum / max(1, self._count)
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class MetersGroup(object):
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def __init__(self, file_name, formating):
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self._file_name = file_name
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if os.path.exists(file_name):
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os.remove(file_name)
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self._formating = formating
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self._meters = defaultdict(AverageMeter)
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def log(self, key, value, n=1):
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self._meters[key].update(value, n)
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def _prime_meters(self):
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data = dict()
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for key, meter in self._meters.items():
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if key.startswith('train'):
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key = key[len('train') + 1:]
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else:
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key = key[len('eval') + 1:]
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key = key.replace('/', '_')
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data[key] = meter.value()
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return data
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def _dump_to_file(self, data):
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with open(self._file_name, 'a') as f:
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f.write(json.dumps(data) + '\n')
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def _format(self, key, value, ty):
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template = '%s: '
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if ty == 'int':
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template += '%d'
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elif ty == 'float':
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template += '%.04f'
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elif ty == 'time':
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template += '%.01f s'
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else:
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raise 'invalid format type: %s' % ty
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return template % (key, value)
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def _dump_to_console(self, data, prefix):
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prefix = colored(prefix, 'yellow' if prefix == 'train' else 'green')
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pieces = ['{:5}'.format(prefix)]
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for key, disp_key, ty in self._formating:
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value = data.get(key, 0)
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pieces.append(self._format(disp_key, value, ty))
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print('| %s' % (' | '.join(pieces)))
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def dump(self, step, prefix):
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if len(self._meters) == 0:
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return
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data = self._prime_meters()
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data['step'] = step
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self._dump_to_file(data)
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self._dump_to_console(data, prefix)
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self._meters.clear()
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class Logger(object):
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def __init__(self, log_dir, use_tb=True, config='rl'):
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self._log_dir = log_dir
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if use_tb:
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tb_dir = os.path.join(log_dir, 'tb')
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if os.path.exists(tb_dir):
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shutil.rmtree(tb_dir)
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self._sw = SummaryWriter(tb_dir)
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else:
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self._sw = None
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self._train_mg = MetersGroup(
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os.path.join(log_dir, 'train.log'),
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formating=FORMAT_CONFIG[config]['train']
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)
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self._eval_mg = MetersGroup(
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os.path.join(log_dir, 'eval.log'),
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formating=FORMAT_CONFIG[config]['eval']
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)
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def _try_sw_log(self, key, value, step):
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if self._sw is not None:
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self._sw.add_scalar(key, value, step)
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def _try_sw_log_image(self, key, image, step):
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if self._sw is not None:
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assert image.dim() == 3
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grid = torchvision.utils.make_grid(image.unsqueeze(1))
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self._sw.add_image(key, grid, step)
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def _try_sw_log_video(self, key, frames, step):
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if self._sw is not None:
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frames = torch.from_numpy(np.array(frames))
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frames = frames.unsqueeze(0)
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self._sw.add_video(key, frames, step, fps=30)
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def _try_sw_log_histogram(self, key, histogram, step):
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if self._sw is not None:
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self._sw.add_histogram(key, histogram, step)
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def log(self, key, value, step, n=1):
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assert key.startswith('train') or key.startswith('eval')
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if type(value) == torch.Tensor:
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value = value.item()
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self._try_sw_log(key, value / n, step)
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mg = self._train_mg if key.startswith('train') else self._eval_mg
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mg.log(key, value, n)
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def log_param(self, key, param, step):
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self.log_histogram(key + '_w', param.weight.data, step)
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if hasattr(param.weight, 'grad') and param.weight.grad is not None:
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self.log_histogram(key + '_w_g', param.weight.grad.data, step)
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if hasattr(param, 'bias'):
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self.log_histogram(key + '_b', param.bias.data, step)
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if hasattr(param.bias, 'grad') and param.bias.grad is not None:
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self.log_histogram(key + '_b_g', param.bias.grad.data, step)
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def log_image(self, key, image, step):
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assert key.startswith('train') or key.startswith('eval')
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self._try_sw_log_image(key, image, step)
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def log_video(self, key, frames, step):
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assert key.startswith('train') or key.startswith('eval')
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self._try_sw_log_video(key, frames, step)
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def log_histogram(self, key, histogram, step):
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assert key.startswith('train') or key.startswith('eval')
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self._try_sw_log_histogram(key, histogram, step)
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def dump(self, step):
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self._train_mg.dump(step, 'train')
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self._eval_mg.dump(step, 'eval')
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