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test_timer_hook.py 4.2 kB

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  1. # Copyright (c) Alibaba, Inc. and its affiliates.
  2. import os
  3. import shutil
  4. import tempfile
  5. import unittest
  6. import json
  7. import numpy as np
  8. import torch
  9. from torch import nn
  10. from torch.optim import SGD
  11. from torch.optim.lr_scheduler import MultiStepLR
  12. from modelscope.trainers import build_trainer
  13. from modelscope.utils.constant import LogKeys, ModelFile, TrainerStages
  14. from modelscope.utils.test_utils import create_dummy_test_dataset
  15. dummy_dataset = create_dummy_test_dataset(
  16. np.random.random(size=(5, )), np.random.randint(0, 4, (1, )), 10)
  17. class DummyModel(nn.Module):
  18. def __init__(self):
  19. super().__init__()
  20. self.linear = nn.Linear(5, 4)
  21. self.bn = nn.BatchNorm1d(4)
  22. def forward(self, feat, labels):
  23. x = self.linear(feat)
  24. x = self.bn(x)
  25. loss = torch.sum(x)
  26. return dict(logits=x, loss=loss)
  27. class IterTimerHookTest(unittest.TestCase):
  28. def setUp(self):
  29. print(('Testing %s.%s' % (type(self).__name__, self._testMethodName)))
  30. self.tmp_dir = tempfile.TemporaryDirectory().name
  31. if not os.path.exists(self.tmp_dir):
  32. os.makedirs(self.tmp_dir)
  33. def tearDown(self):
  34. super().tearDown()
  35. shutil.rmtree(self.tmp_dir)
  36. def test_iter_time_hook(self):
  37. json_cfg = {
  38. 'task': 'image_classification',
  39. 'train': {
  40. 'work_dir': self.tmp_dir,
  41. 'dataloader': {
  42. 'batch_size_per_gpu': 2,
  43. 'workers_per_gpu': 1
  44. },
  45. 'hooks': [{
  46. 'type': 'IterTimerHook',
  47. }]
  48. }
  49. }
  50. config_path = os.path.join(self.tmp_dir, ModelFile.CONFIGURATION)
  51. with open(config_path, 'w') as f:
  52. json.dump(json_cfg, f)
  53. model = DummyModel()
  54. optimizer = SGD(model.parameters(), lr=0.01)
  55. lr_scheduler = MultiStepLR(optimizer, milestones=[2, 4])
  56. trainer_name = 'EpochBasedTrainer'
  57. kwargs = dict(
  58. cfg_file=config_path,
  59. model=model,
  60. train_dataset=dummy_dataset,
  61. optimizers=(optimizer, lr_scheduler),
  62. max_epochs=5)
  63. trainer = build_trainer(trainer_name, kwargs)
  64. train_dataloader = trainer._build_dataloader_with_dataset(
  65. trainer.train_dataset, **trainer.cfg.train.get('dataloader', {}))
  66. trainer.register_optimizers_hook()
  67. trainer.register_hook_from_cfg(trainer.cfg.train.hooks)
  68. trainer.data_loader = train_dataloader
  69. trainer.invoke_hook(TrainerStages.before_run)
  70. for i in range(trainer._epoch, trainer._max_epochs):
  71. trainer.invoke_hook(TrainerStages.before_train_epoch)
  72. for _, data_batch in enumerate(train_dataloader):
  73. trainer.invoke_hook(TrainerStages.before_train_iter)
  74. trainer.train_step(trainer.model, data_batch)
  75. trainer.invoke_hook(TrainerStages.after_train_iter)
  76. self.assertIn(LogKeys.DATA_LOAD_TIME,
  77. trainer.log_buffer.val_history)
  78. self.assertIn(LogKeys.ITER_TIME,
  79. trainer.log_buffer.val_history)
  80. self.assertIn(LogKeys.LOSS, trainer.log_buffer.val_history)
  81. trainer.invoke_hook(TrainerStages.after_train_epoch)
  82. target_len = 5
  83. self.assertEqual(
  84. len(trainer.log_buffer.val_history[LogKeys.DATA_LOAD_TIME]),
  85. target_len)
  86. self.assertEqual(
  87. len(trainer.log_buffer.val_history[LogKeys.ITER_TIME]),
  88. target_len)
  89. self.assertEqual(
  90. len(trainer.log_buffer.val_history[LogKeys.LOSS]), target_len)
  91. self.assertEqual(
  92. len(trainer.log_buffer.n_history[LogKeys.DATA_LOAD_TIME]),
  93. target_len)
  94. self.assertEqual(
  95. len(trainer.log_buffer.n_history[LogKeys.ITER_TIME]),
  96. target_len)
  97. self.assertEqual(
  98. len(trainer.log_buffer.n_history[LogKeys.LOSS]), target_len)
  99. trainer.invoke_hook(TrainerStages.after_run)
  100. if __name__ == '__main__':
  101. unittest.main()