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train.py 12 KB

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  1. #!/usr/bin/env python3
  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. #
  9. import collections
  10. import os
  11. import torch
  12. import math
  13. from fairseq import data, options, utils
  14. from fairseq.meters import AverageMeter, StopwatchMeter, TimeMeter
  15. from fairseq.multiprocessing_trainer import MultiprocessingTrainer
  16. def main():
  17. parser = options.get_parser('Trainer')
  18. dataset_args = options.add_dataset_args(parser)
  19. dataset_args.add_argument('--max-tokens', default=6000, type=int, metavar='N',
  20. help='maximum number of tokens in a batch')
  21. dataset_args.add_argument('--max-sentences', type=int, metavar='N',
  22. help='maximum number of sentences in a batch')
  23. dataset_args.add_argument('--train-subset', default='train', metavar='SPLIT',
  24. choices=['train', 'valid', 'test'],
  25. help='data subset to use for training (train, valid, test)')
  26. dataset_args.add_argument('--valid-subset', default='valid', metavar='SPLIT',
  27. help='comma separated list of data subsets '
  28. ' to use for validation (train, valid, valid1,test, test1)')
  29. dataset_args.add_argument('--max-sentences-valid', type=int, metavar='N',
  30. help='maximum number of sentences in a validation batch')
  31. options.add_optimization_args(parser)
  32. options.add_checkpoint_args(parser)
  33. options.add_model_args(parser)
  34. args = utils.parse_args_and_arch(parser)
  35. if args.no_progress_bar and args.log_format is None:
  36. args.log_format = 'simple'
  37. if args.max_sentences_valid is None:
  38. args.max_sentences_valid = args.max_sentences
  39. if not os.path.exists(args.save_dir):
  40. os.makedirs(args.save_dir)
  41. torch.manual_seed(args.seed)
  42. # Load dataset
  43. splits = ['train', 'valid']
  44. if data.has_binary_files(args.data, splits):
  45. dataset = data.load_dataset(args.data, splits, args.source_lang, args.target_lang)
  46. else:
  47. dataset = data.load_raw_text_dataset(args.data, splits, args.source_lang, args.target_lang)
  48. if args.source_lang is None or args.target_lang is None:
  49. # record inferred languages in args, so that it's saved in checkpoints
  50. args.source_lang, args.target_lang = dataset.src, dataset.dst
  51. if not torch.cuda.is_available():
  52. raise NotImplementedError('Training on CPU is not supported')
  53. args.num_gpus = torch.cuda.device_count()
  54. print(args)
  55. print('| [{}] dictionary: {} types'.format(dataset.src, len(dataset.src_dict)))
  56. print('| [{}] dictionary: {} types'.format(dataset.dst, len(dataset.dst_dict)))
  57. for split in splits:
  58. print('| {} {} {} examples'.format(args.data, split, len(dataset.splits[split])))
  59. print('| using {} GPUs (with max tokens per GPU = {} and max sentences per GPU = {})'.format(
  60. args.num_gpus, args.max_tokens, args.max_sentences))
  61. # Build model and criterion
  62. model = utils.build_model(args, dataset.src_dict, dataset.dst_dict)
  63. criterion = utils.build_criterion(args, dataset.src_dict, dataset.dst_dict)
  64. print('| model {}, criterion {}'.format(args.arch, criterion.__class__.__name__))
  65. print('| num. model params: {}'.format(sum(p.data.numel() for p in model.parameters())))
  66. # The max number of positions can be different for train and valid
  67. # e.g., RNNs may support more positions at test time than seen in training
  68. max_positions_train = (
  69. min(args.max_source_positions, model.max_encoder_positions()),
  70. min(args.max_target_positions, model.max_decoder_positions())
  71. )
  72. max_positions_valid = (model.max_encoder_positions(), model.max_decoder_positions())
  73. # Start multiprocessing
  74. trainer = MultiprocessingTrainer(args, model, criterion)
  75. # Load the latest checkpoint if one is available
  76. checkpoint_path = os.path.join(args.save_dir, args.restore_file)
  77. extra_state = trainer.load_checkpoint(checkpoint_path)
  78. if extra_state is not None:
  79. epoch = extra_state['epoch']
  80. batch_offset = extra_state['batch_offset']
  81. print('| loaded checkpoint {} (epoch {})'.format(checkpoint_path, epoch))
  82. if batch_offset == 0:
  83. epoch += 1
  84. else:
  85. epoch, batch_offset = 1, 0
  86. # Train until the learning rate gets too small
  87. val_loss = None
  88. max_epoch = args.max_epoch or math.inf
  89. lr = trainer.get_lr()
  90. train_meter = StopwatchMeter()
  91. train_meter.start()
  92. while lr > args.min_lr and epoch <= max_epoch:
  93. # train for one epoch
  94. train(args, epoch, batch_offset, trainer, dataset, max_positions_train)
  95. # evaluate on validate set
  96. for k, subset in enumerate(args.valid_subset.split(',')):
  97. val_loss = validate(args, epoch, trainer, dataset, max_positions_valid, subset)
  98. if k == 0:
  99. if not args.no_save:
  100. # save checkpoint
  101. save_checkpoint(trainer, args, epoch, 0, val_loss)
  102. # only use first validation loss to update the learning schedule
  103. lr = trainer.lr_step(val_loss, epoch)
  104. epoch += 1
  105. batch_offset = 0
  106. train_meter.stop()
  107. print('| done training in {:.1f} seconds'.format(train_meter.sum))
  108. # Stop multiprocessing
  109. trainer.stop()
  110. def get_perplexity(loss):
  111. try:
  112. return round(math.pow(2, loss), 2)
  113. except OverflowError:
  114. return float('inf')
  115. def train(args, epoch, batch_offset, trainer, dataset, max_positions):
  116. """Train the model for one epoch."""
  117. seed = args.seed + epoch
  118. torch.manual_seed(seed)
  119. trainer.set_seed(seed)
  120. itr = dataset.train_dataloader(
  121. args.train_subset, num_workers=args.workers,
  122. max_tokens=args.max_tokens, max_sentences=args.max_sentences,
  123. max_positions=max_positions, seed=seed, epoch=epoch,
  124. sample_without_replacement=args.sample_without_replacement,
  125. sort_by_source_size=(epoch <= args.curriculum))
  126. loss_meter = AverageMeter()
  127. nll_loss_meter = AverageMeter()
  128. bsz_meter = AverageMeter() # sentences per batch
  129. wpb_meter = AverageMeter() # words per batch
  130. wps_meter = TimeMeter() # words per second
  131. clip_meter = AverageMeter() # % of updates clipped
  132. extra_meters = collections.defaultdict(lambda: AverageMeter())
  133. lr = trainer.get_lr()
  134. with utils.build_progress_bar(args, itr, epoch) as t:
  135. for i, sample in data.skip_group_enumerator(t, args.num_gpus, batch_offset):
  136. loss_dict = trainer.train_step(sample)
  137. loss = loss_dict['loss']
  138. del loss_dict['loss'] # don't include in extra_meters or extra_postfix
  139. ntokens = sum(s['ntokens'] for s in sample)
  140. if 'nll_loss' in loss_dict:
  141. nll_loss = loss_dict['nll_loss']
  142. nll_loss_meter.update(nll_loss, ntokens)
  143. nsentences = sum(s['net_input']['src_tokens'].size(0) for s in sample)
  144. loss_meter.update(loss, nsentences if args.sentence_avg else ntokens)
  145. bsz_meter.update(nsentences)
  146. wpb_meter.update(ntokens)
  147. wps_meter.update(ntokens)
  148. clip_meter.update(1 if loss_dict['gnorm'] > args.clip_norm else 0)
  149. extra_postfix = []
  150. for k, v in loss_dict.items():
  151. extra_meters[k].update(v)
  152. extra_postfix.append((k, extra_meters[k].avg))
  153. t.log(collections.OrderedDict([
  154. ('loss', loss_meter),
  155. ('wps', round(wps_meter.avg)),
  156. ('wpb', round(wpb_meter.avg)),
  157. ('bsz', round(bsz_meter.avg)),
  158. ('lr', lr),
  159. ('clip', '{:.0%}'.format(clip_meter.avg)),
  160. ] + extra_postfix))
  161. if i == 0:
  162. # ignore the first mini-batch in words-per-second calculation
  163. wps_meter.reset()
  164. if args.save_interval > 0 and (i + 1) % args.save_interval == 0:
  165. save_checkpoint(trainer, args, epoch, i + 1)
  166. t.print(collections.OrderedDict([
  167. ('train loss', round(loss_meter.avg, 2)),
  168. ('train ppl', get_perplexity(nll_loss_meter.avg
  169. if nll_loss_meter.count > 0
  170. else loss_meter.avg)),
  171. ('s/checkpoint', round(wps_meter.elapsed_time)),
  172. ('words/s', round(wps_meter.avg)),
  173. ('words/batch', round(wpb_meter.avg)),
  174. ('bsz', round(bsz_meter.avg)),
  175. ('lr', lr),
  176. ('clip', '{:3.0f}%'.format(clip_meter.avg * 100)),
  177. ] + [
  178. (k, meter.avg)
  179. for k, meter in extra_meters.items()
  180. ]))
  181. def save_checkpoint(trainer, args, epoch, batch_offset, val_loss):
  182. extra_state = {
  183. 'epoch': epoch,
  184. 'batch_offset': batch_offset,
  185. 'val_loss': val_loss,
  186. }
  187. if batch_offset == 0:
  188. if not args.no_epoch_checkpoints:
  189. epoch_filename = os.path.join(args.save_dir, 'checkpoint{}.pt'.format(epoch))
  190. trainer.save_checkpoint(epoch_filename, extra_state)
  191. assert val_loss is not None
  192. if not hasattr(save_checkpoint, 'best') or val_loss < save_checkpoint.best:
  193. save_checkpoint.best = val_loss
  194. best_filename = os.path.join(args.save_dir, 'checkpoint_best.pt')
  195. trainer.save_checkpoint(best_filename, extra_state)
  196. elif not args.no_epoch_checkpoints:
  197. epoch_filename = os.path.join(
  198. args.save_dir, 'checkpoint{}_{}.pt'.format(epoch, batch_offset))
  199. trainer.save_checkpoint(epoch_filename, extra_state)
  200. last_filename = os.path.join(args.save_dir, 'checkpoint_last.pt')
  201. trainer.save_checkpoint(last_filename, extra_state)
  202. def validate(args, epoch, trainer, dataset, max_positions, subset):
  203. """Evaluate the model on the validation set and return the average loss."""
  204. itr = dataset.eval_dataloader(
  205. subset, max_tokens=args.max_tokens, max_sentences=args.max_sentences_valid,
  206. max_positions=max_positions,
  207. skip_invalid_size_inputs_valid_test=args.skip_invalid_size_inputs_valid_test,
  208. descending=True, # largest batch first to warm the caching allocator
  209. )
  210. loss_meter = AverageMeter()
  211. nll_loss_meter = AverageMeter()
  212. extra_meters = collections.defaultdict(lambda: AverageMeter())
  213. prefix = 'valid on \'{}\' subset'.format(subset)
  214. with utils.build_progress_bar(args, itr, epoch, prefix) as t:
  215. for _, sample in data.skip_group_enumerator(t, args.num_gpus):
  216. loss_dict = trainer.valid_step(sample)
  217. ntokens = sum(s['ntokens'] for s in sample)
  218. loss = loss_dict['loss']
  219. del loss_dict['loss'] # don't include in extra_meters or extra_postfix
  220. if 'nll_loss' in loss_dict:
  221. nll_loss = loss_dict['nll_loss']
  222. nll_loss_meter.update(nll_loss, ntokens)
  223. loss_meter.update(loss, ntokens)
  224. extra_postfix = []
  225. for k, v in loss_dict.items():
  226. extra_meters[k].update(v)
  227. extra_postfix.append((k, extra_meters[k].avg))
  228. t.log(collections.OrderedDict([
  229. ('valid loss', round(loss_meter.avg, 2)),
  230. ] + extra_postfix))
  231. t.print(collections.OrderedDict([
  232. ('valid loss', round(loss_meter.avg, 2)),
  233. ('valid ppl', get_perplexity(nll_loss_meter.avg
  234. if nll_loss_meter.count > 0
  235. else loss_meter.avg)),
  236. ] + [
  237. (k, meter.avg)
  238. for k, meter in extra_meters.items()
  239. ]))
  240. # update and return the learning rate
  241. return loss_meter.avg
  242. if __name__ == '__main__':
  243. main()
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