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initialize_with_dataloaders_test.py 2.1 KB

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  1. import unittest
  2. from super_gradients.common.object_names import Models
  3. from super_gradients.training import models
  4. from super_gradients import Trainer
  5. import torch
  6. from torch.utils.data import TensorDataset, DataLoader
  7. from super_gradients.training.metrics import Accuracy
  8. class InitializeWithDataloadersTest(unittest.TestCase):
  9. def setUp(self):
  10. self.testcase_classes = [0, 1, 2, 3, 4]
  11. train_size, valid_size, test_size = 160, 20, 20
  12. channels, width, height = 3, 224, 224
  13. inp = torch.randn((train_size, channels, width, height))
  14. label = torch.randint(0, len(self.testcase_classes), size=(train_size,))
  15. self.testcase_trainloader = DataLoader(TensorDataset(inp, label))
  16. inp = torch.randn((valid_size, channels, width, height))
  17. label = torch.randint(0, len(self.testcase_classes), size=(valid_size,))
  18. self.testcase_validloader = DataLoader(TensorDataset(inp, label))
  19. inp = torch.randn((test_size, channels, width, height))
  20. label = torch.randint(0, len(self.testcase_classes), size=(test_size,))
  21. self.testcase_testloader = DataLoader(TensorDataset(inp, label))
  22. def test_train_with_dataloaders(self):
  23. trainer = Trainer(experiment_name="test_name")
  24. model = models.get(Models.RESNET18, num_classes=5)
  25. trainer.train(
  26. model=model,
  27. training_params={
  28. "max_epochs": 2,
  29. "lr_updates": [5, 6, 12],
  30. "lr_decay_factor": 0.01,
  31. "lr_mode": "StepLRScheduler",
  32. "initial_lr": 0.01,
  33. "loss": "CrossEntropyLoss",
  34. "optimizer": "SGD",
  35. "optimizer_params": {"weight_decay": 1e-5, "momentum": 0.9},
  36. "train_metrics_list": [Accuracy()],
  37. "valid_metrics_list": [Accuracy()],
  38. "metric_to_watch": "Accuracy",
  39. "greater_metric_to_watch_is_better": True,
  40. },
  41. train_loader=self.testcase_trainloader,
  42. valid_loader=self.testcase_validloader,
  43. )
  44. self.assertTrue(0 < trainer.best_metric < 1)
  45. if __name__ == "__main__":
  46. unittest.main()
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