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train.py 12 KB

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  1. #!/usr/bin/env python3 -u
  2. # Copyright (c) 2017-present, Facebook, Inc.
  3. # All rights reserved.
  4. #
  5. # This source code is licensed under the license found in the LICENSE file in
  6. # the root directory of this source tree. An additional grant of patent rights
  7. # can be found in the PATENTS file in the same directory.
  8. import collections
  9. import os
  10. import math
  11. import torch
  12. from fairseq import criterions, data, models, options, progress_bar
  13. from fairseq.fp16_trainer import FP16Trainer
  14. from fairseq.trainer import Trainer
  15. from fairseq.meters import AverageMeter, StopwatchMeter
  16. def main(args):
  17. print(args)
  18. if not torch.cuda.is_available():
  19. raise NotImplementedError('Training on CPU is not supported')
  20. torch.cuda.set_device(args.device_id)
  21. torch.manual_seed(args.seed)
  22. # Load dataset
  23. splits = ['train', 'valid']
  24. dataset = load_dataset(args, splits)
  25. print('| [{}] dictionary: {} types'.format(dataset.src, len(dataset.src_dict)))
  26. print('| [{}] dictionary: {} types'.format(dataset.dst, len(dataset.dst_dict)))
  27. for split in splits:
  28. print('| {} {} {} examples'.format(args.data, split, len(dataset.splits[split])))
  29. # Build model and criterion
  30. model = models.build_model(args, dataset.src_dict, dataset.dst_dict)
  31. criterion = criterions.build_criterion(args, dataset.src_dict, dataset.dst_dict)
  32. print('| model {}, criterion {}'.format(args.arch, criterion.__class__.__name__))
  33. print('| num. model params: {}'.format(sum(p.data.numel() for p in model.parameters())))
  34. # Build trainer
  35. if args.fp16:
  36. trainer = FP16Trainer(args, model, criterion)
  37. else:
  38. if torch.cuda.get_device_capability(0)[0] >= 7:
  39. print('| NOTICE: your device may support faster training with --fp16')
  40. trainer = Trainer(args, model, criterion)
  41. print('| training on {} GPUs'.format(args.distributed_world_size))
  42. print('| max tokens per GPU = {} and max sentences per GPU = {}'.format(
  43. args.max_tokens,
  44. args.max_sentences,
  45. ))
  46. # Initialize dataloader
  47. train_dataloader = dataset.train_dataloader_generator(
  48. args.train_subset,
  49. max_tokens=args.max_tokens,
  50. max_sentences=args.max_sentences,
  51. max_positions=(
  52. min(args.max_source_positions, trainer.get_model().max_encoder_positions()),
  53. min(args.max_target_positions, trainer.get_model().max_decoder_positions())
  54. ),
  55. seed=args.seed,
  56. sample_without_replacement=args.sample_without_replacement,
  57. shard_id=args.distributed_rank,
  58. num_shards=args.distributed_world_size,
  59. )
  60. # Load the latest checkpoint if one is available
  61. epoch = load_checkpoint(args, trainer, train_dataloader)
  62. # Send a dummy batch to warm the caching allocator
  63. dummy_batch = data.get_dummy_batch(args.max_tokens, dataset.src_dict, dataset.dst_dict)
  64. trainer.dummy_train_step(dummy_batch)
  65. # Train until the learning rate gets too small
  66. max_epoch = args.max_epoch or math.inf
  67. max_update = args.max_update or math.inf
  68. lr = trainer.get_lr()
  69. train_meter = StopwatchMeter()
  70. train_meter.start()
  71. while lr > args.min_lr and epoch <= max_epoch and trainer.get_num_updates() < max_update:
  72. # train for one epoch
  73. train(args, trainer, next(train_dataloader), epoch)
  74. # evaluate on validate set
  75. first_val_loss = None
  76. if epoch % args.validate_interval == 0:
  77. for k, subset in enumerate(args.valid_subset.split(',')):
  78. val_loss = validate(args, trainer, dataset, subset, epoch)
  79. if k == 0:
  80. first_val_loss = val_loss
  81. # only use first validation loss to update the learning rate
  82. lr = trainer.lr_step(epoch, first_val_loss)
  83. # save checkpoint
  84. if not args.no_save and epoch % args.save_interval == 0:
  85. save_checkpoint(trainer, args, epoch, first_val_loss)
  86. epoch += 1
  87. train_meter.stop()
  88. print('| done training in {:.1f} seconds'.format(train_meter.sum))
  89. def load_dataset(args, splits):
  90. if data.has_binary_files(args.data, splits):
  91. dataset = data.load_dataset(args.data, splits, args.source_lang, args.target_lang)
  92. else:
  93. dataset = data.load_raw_text_dataset(args.data, splits, args.source_lang, args.target_lang)
  94. if args.source_lang is None or args.target_lang is None:
  95. # record inferred languages in args, so that it's saved in checkpoints
  96. args.source_lang, args.target_lang = dataset.src, dataset.dst
  97. return dataset
  98. def train(args, trainer, itr, epoch):
  99. """Train the model for one epoch."""
  100. # Set seed based on args.seed and the epoch number so that we get
  101. # reproducible results when resuming from checkpoints
  102. seed = args.seed + epoch
  103. torch.manual_seed(seed)
  104. # reset training meters
  105. for k in ['train_loss', 'train_nll_loss', 'wps', 'ups', 'wpb', 'bsz', 'clip']:
  106. meter = trainer.get_meter(k)
  107. if meter is not None:
  108. meter.reset()
  109. # update parameters every N batches
  110. if epoch <= len(args.update_freq):
  111. update_freq = args.update_freq[epoch - 1]
  112. else:
  113. update_freq = args.update_freq[-1]
  114. extra_meters = collections.defaultdict(lambda: AverageMeter())
  115. max_update = args.max_update or math.inf
  116. num_batches = len(itr)
  117. progress = progress_bar.build_progress_bar(args, itr, epoch, no_progress_bar='simple')
  118. for i, sample in enumerate(progress):
  119. if i < num_batches - 1 and (i + 1) % update_freq > 0:
  120. # buffer updates according to --update-freq
  121. trainer.train_step(sample, update_params=False)
  122. continue
  123. else:
  124. log_output = trainer.train_step(sample, update_params=True)
  125. # log mid-epoch stats
  126. stats = get_training_stats(trainer)
  127. for k, v in log_output.items():
  128. if k in ['loss', 'nll_loss', 'sample_size']:
  129. continue # these are already logged above
  130. if 'loss' in k:
  131. extra_meters[k].update(v, log_output['sample_size'])
  132. else:
  133. extra_meters[k].update(v)
  134. stats[k] = extra_meters[k].avg
  135. progress.log(stats)
  136. # ignore the first mini-batch in words-per-second calculation
  137. if i == 0:
  138. trainer.get_meter('wps').reset()
  139. if trainer.get_num_updates() >= max_update:
  140. break
  141. # log end-of-epoch stats
  142. stats = get_training_stats(trainer)
  143. for k, meter in extra_meters.items():
  144. stats[k] = meter.avg
  145. progress.print(stats)
  146. def get_training_stats(trainer):
  147. stats = collections.OrderedDict()
  148. stats['loss'] = '{:.3f}'.format(trainer.get_meter('train_loss').avg)
  149. if trainer.get_meter('train_nll_loss').count > 0:
  150. nll_loss = trainer.get_meter('train_nll_loss').avg
  151. stats['nll_loss'] = '{:.3f}'.format(nll_loss)
  152. else:
  153. nll_loss = trainer.get_meter('train_loss').avg
  154. stats['ppl'] = get_perplexity(nll_loss)
  155. stats['wps'] = round(trainer.get_meter('wps').avg)
  156. stats['ups'] = '{:.1f}'.format(trainer.get_meter('ups').avg)
  157. stats['wpb'] = round(trainer.get_meter('wpb').avg)
  158. stats['bsz'] = round(trainer.get_meter('bsz').avg)
  159. stats['num_updates'] = trainer.get_num_updates()
  160. stats['lr'] = trainer.get_lr()
  161. stats['gnorm'] = '{:.3f}'.format(trainer.get_meter('gnorm').avg)
  162. stats['clip'] = '{:.0%}'.format(trainer.get_meter('clip').avg)
  163. stats['oom'] = trainer.get_meter('oom').avg
  164. if trainer.get_meter('loss_scale') is not None:
  165. stats['loss_scale'] = '{:.3f}'.format(trainer.get_meter('loss_scale').avg)
  166. stats['wall'] = round(trainer.get_meter('wall').elapsed_time)
  167. return stats
  168. def validate(args, trainer, dataset, subset, epoch):
  169. """Evaluate the model on the validation set and return the average loss."""
  170. # Initialize dataloader
  171. max_positions_valid = (
  172. trainer.get_model().max_encoder_positions(),
  173. trainer.get_model().max_decoder_positions(),
  174. )
  175. itr = dataset.eval_dataloader(
  176. subset,
  177. max_tokens=args.max_tokens,
  178. max_sentences=args.max_sentences_valid,
  179. max_positions=max_positions_valid,
  180. skip_invalid_size_inputs_valid_test=args.skip_invalid_size_inputs_valid_test,
  181. descending=True, # largest batch first to warm the caching allocator
  182. shard_id=args.distributed_rank,
  183. num_shards=args.distributed_world_size,
  184. )
  185. progress = progress_bar.build_progress_bar(
  186. args, itr, epoch,
  187. prefix='valid on \'{}\' subset'.format(subset),
  188. no_progress_bar='simple'
  189. )
  190. # reset validation loss meters
  191. for k in ['valid_loss', 'valid_nll_loss']:
  192. meter = trainer.get_meter(k)
  193. if meter is not None:
  194. meter.reset()
  195. extra_meters = collections.defaultdict(lambda: AverageMeter())
  196. for sample in progress:
  197. log_output = trainer.valid_step(sample)
  198. # log mid-validation stats
  199. stats = get_valid_stats(trainer)
  200. for k, v in log_output.items():
  201. if k in ['loss', 'nll_loss', 'sample_size']:
  202. continue
  203. extra_meters[k].update(v)
  204. stats[k] = extra_meters[k].avg
  205. progress.log(stats)
  206. # log validation stats
  207. stats = get_valid_stats(trainer)
  208. for k, meter in extra_meters.items():
  209. stats[k] = meter.avg
  210. progress.print(stats)
  211. return stats['valid_loss']
  212. def get_valid_stats(trainer):
  213. stats = collections.OrderedDict()
  214. stats['valid_loss'] = trainer.get_meter('valid_loss').avg
  215. if trainer.get_meter('valid_nll_loss').count > 0:
  216. nll_loss = trainer.get_meter('valid_nll_loss').avg
  217. stats['valid_nll_loss'] = nll_loss
  218. else:
  219. nll_loss = trainer.get_meter('valid_loss').avg
  220. stats['valid_ppl'] = get_perplexity(nll_loss)
  221. return stats
  222. def get_perplexity(loss):
  223. try:
  224. return '{:.2f}'.format(math.pow(2, loss))
  225. except OverflowError:
  226. return float('inf')
  227. def save_checkpoint(trainer, args, epoch, val_loss=None):
  228. extra_state = {
  229. 'epoch': epoch,
  230. 'val_loss': val_loss,
  231. 'wall_time': trainer.get_meter('wall').elapsed_time,
  232. }
  233. if not args.no_epoch_checkpoints:
  234. epoch_filename = os.path.join(args.save_dir, 'checkpoint{}.pt'.format(epoch))
  235. trainer.save_checkpoint(epoch_filename, extra_state)
  236. assert val_loss is not None
  237. if not hasattr(save_checkpoint, 'best') or val_loss < save_checkpoint.best:
  238. save_checkpoint.best = val_loss
  239. best_filename = os.path.join(args.save_dir, 'checkpoint_best.pt')
  240. trainer.save_checkpoint(best_filename, extra_state)
  241. last_filename = os.path.join(args.save_dir, 'checkpoint_last.pt')
  242. trainer.save_checkpoint(last_filename, extra_state)
  243. def load_checkpoint(args, trainer, train_dataloader):
  244. os.makedirs(args.save_dir, exist_ok=True)
  245. checkpoint_path = os.path.join(args.save_dir, args.restore_file)
  246. epoch = 1
  247. if os.path.isfile(checkpoint_path):
  248. extra_state = trainer.load_checkpoint(checkpoint_path)
  249. if extra_state is not None:
  250. epoch = extra_state['epoch']
  251. print('| loaded checkpoint {} (epoch {})'.format(checkpoint_path, epoch))
  252. trainer.lr_step(epoch)
  253. for i in range(epoch):
  254. _ = next(train_dataloader)
  255. epoch += 1
  256. trainer.get_meter('wall').reset(init=extra_state.get('wall_time', 0))
  257. return epoch
  258. if __name__ == '__main__':
  259. parser = options.get_training_parser()
  260. args = options.parse_args_and_arch(parser)
  261. if args.distributed_port > 0 or args.distributed_init_method is not None:
  262. from distributed_train import main as distributed_main
  263. distributed_main(args)
  264. elif args.distributed_world_size > 1:
  265. from multiprocessing_train import main as multiprocessing_main
  266. multiprocessing_main(args)
  267. else:
  268. main(args)
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