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#561 Feature/sg 193 extend output formator

Merged
Ghost merged 1 commits into Deci-AI:master from deci-ai:feature/SG-193-extend_detection_target_transform
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  1. import unittest
  2. import torch
  3. from super_gradients import Trainer
  4. from super_gradients.common.decorators.factory_decorator import resolve_param
  5. from super_gradients.common.factories.activations_type_factory import ActivationsTypeFactory
  6. from super_gradients.training import models
  7. from super_gradients.training.dataloaders.dataloaders import classification_test_dataloader
  8. from super_gradients.training.losses import LabelSmoothingCrossEntropyLoss
  9. from super_gradients.training.metrics import Accuracy, Top5
  10. from torch import nn
  11. class FactoriesTest(unittest.TestCase):
  12. def test_training_with_factories(self):
  13. trainer = Trainer("test_train_with_factories")
  14. net = models.get("resnet18", num_classes=5)
  15. train_params = {
  16. "max_epochs": 2,
  17. "lr_updates": [1],
  18. "lr_decay_factor": 0.1,
  19. "lr_mode": "step",
  20. "lr_warmup_epochs": 0,
  21. "initial_lr": 0.1,
  22. "loss": "cross_entropy",
  23. "optimizer": "torch.optim.ASGD", # use an optimizer by factory
  24. "criterion_params": {},
  25. "optimizer_params": {"lambd": 0.0001, "alpha": 0.75},
  26. "train_metrics_list": ["Accuracy", "Top5"], # use a metric by factory
  27. "valid_metrics_list": ["Accuracy", "Top5"], # use a metric by factory
  28. "metric_to_watch": "Accuracy",
  29. "greater_metric_to_watch_is_better": True,
  30. }
  31. trainer.train(model=net, training_params=train_params, train_loader=classification_test_dataloader(), valid_loader=classification_test_dataloader())
  32. self.assertIsInstance(trainer.train_metrics.Accuracy, Accuracy)
  33. self.assertIsInstance(trainer.valid_metrics.Top5, Top5)
  34. self.assertIsInstance(trainer.optimizer, torch.optim.ASGD)
  35. def test_training_with_factories_with_typos(self):
  36. trainer = Trainer("test_train_with_factories_with_typos")
  37. net = models.get("Resnet___18", num_classes=5)
  38. train_params = {
  39. "max_epochs": 2,
  40. "lr_updates": [1],
  41. "lr_decay_factor": 0.1,
  42. "lr_mode": "step",
  43. "lr_warmup_epochs": 0,
  44. "initial_lr": 0.1,
  45. "loss": "crossEnt_ropy",
  46. "optimizer": "AdAm_", # use an optimizer by factory
  47. "criterion_params": {},
  48. "train_metrics_list": ["accur_acy", "Top_5"], # use a metric by factory
  49. "valid_metrics_list": ["aCCuracy", "Top5"], # use a metric by factory
  50. "metric_to_watch": "Accurac_Y",
  51. "greater_metric_to_watch_is_better": True,
  52. }
  53. trainer.train(model=net, training_params=train_params, train_loader=classification_test_dataloader(), valid_loader=classification_test_dataloader())
  54. self.assertIsInstance(trainer.train_metrics.Accuracy, Accuracy)
  55. self.assertIsInstance(trainer.valid_metrics.Top5, Top5)
  56. self.assertIsInstance(trainer.optimizer, torch.optim.Adam)
  57. self.assertIsInstance(trainer.criterion, LabelSmoothingCrossEntropyLoss)
  58. def test_activations_factory(self):
  59. class DummyModel(nn.Module):
  60. @resolve_param("activation_in_head", ActivationsTypeFactory())
  61. def __init__(self, activation_in_head):
  62. super().__init__()
  63. self.activation_in_head = activation_in_head()
  64. model = DummyModel(activation_in_head="leaky_relu")
  65. self.assertIsInstance(model.activation_in_head, nn.LeakyReLU)
  66. if __name__ == "__main__":
  67. unittest.main()
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