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test_ms_dataset.py 4.5 kB

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  1. import unittest
  2. import datasets as hfdata
  3. from modelscope.models import Model
  4. from modelscope.msdatasets import MsDataset
  5. from modelscope.preprocessors import SequenceClassificationPreprocessor
  6. from modelscope.preprocessors.base import Preprocessor
  7. from modelscope.utils.test_utils import require_tf, require_torch, test_level
  8. class ImgPreprocessor(Preprocessor):
  9. def __init__(self, *args, **kwargs):
  10. super().__init__(*args, **kwargs)
  11. self.path_field = kwargs.pop('image_path', 'image_path')
  12. self.width = kwargs.pop('width', 'width')
  13. self.height = kwargs.pop('height', 'width')
  14. def __call__(self, data):
  15. import cv2
  16. image_path = data.get(self.path_field)
  17. if not image_path:
  18. return None
  19. img = cv2.imread(image_path)
  20. return {
  21. 'image':
  22. cv2.resize(img,
  23. (data.get(self.height, 128), data.get(self.width, 128)))
  24. }
  25. class MsDatasetTest(unittest.TestCase):
  26. @unittest.skipUnless(test_level() >= 1, 'skip test in current test level')
  27. def test_ds_basic(self):
  28. ms_ds_full = MsDataset.load('squad', namespace='damotest')
  29. ms_ds_full_hf = hfdata.load_dataset('squad')
  30. ms_ds_train = MsDataset.load(
  31. 'squad', namespace='damotest', split='train')
  32. ms_ds_train_hf = hfdata.load_dataset('squad', split='train')
  33. ms_image_train = MsDataset.from_hf_dataset(
  34. hfdata.load_dataset('beans', split='train'))
  35. self.assertEqual(ms_ds_full['train'][0], ms_ds_full_hf['train'][0])
  36. self.assertEqual(ms_ds_full['validation'][0],
  37. ms_ds_full_hf['validation'][0])
  38. self.assertEqual(ms_ds_train[0], ms_ds_train_hf[0])
  39. print(next(iter(ms_ds_full['train'])))
  40. print(next(iter(ms_ds_train)))
  41. print(next(iter(ms_image_train)))
  42. @unittest.skipUnless(test_level() >= 1, 'skip test in current test level')
  43. @require_torch
  44. def test_to_torch_dataset_text(self):
  45. model_id = 'damo/bert-base-sst2'
  46. nlp_model = Model.from_pretrained(model_id)
  47. preprocessor = SequenceClassificationPreprocessor(
  48. nlp_model.model_dir,
  49. first_sequence='context',
  50. second_sequence=None)
  51. ms_ds_train = MsDataset.load(
  52. 'squad', namespace='damotest', split='train')
  53. pt_dataset = ms_ds_train.to_torch_dataset(preprocessors=preprocessor)
  54. import torch
  55. dataloader = torch.utils.data.DataLoader(pt_dataset, batch_size=5)
  56. print(next(iter(dataloader)))
  57. @unittest.skipUnless(test_level() >= 1, 'skip test in current test level')
  58. @require_tf
  59. def test_to_tf_dataset_text(self):
  60. import tensorflow as tf
  61. tf.compat.v1.enable_eager_execution()
  62. model_id = 'damo/bert-base-sst2'
  63. nlp_model = Model.from_pretrained(model_id)
  64. preprocessor = SequenceClassificationPreprocessor(
  65. nlp_model.model_dir,
  66. first_sequence='context',
  67. second_sequence=None)
  68. ms_ds_train = MsDataset.load(
  69. 'squad', namespace='damotest', split='train')
  70. tf_dataset = ms_ds_train.to_tf_dataset(
  71. batch_size=5,
  72. shuffle=True,
  73. preprocessors=preprocessor,
  74. drop_remainder=True)
  75. print(next(iter(tf_dataset)))
  76. @unittest.skipUnless(test_level() >= 2, 'skip test in current test level')
  77. @require_torch
  78. def test_to_torch_dataset_img(self):
  79. ms_image_train = MsDataset.load(
  80. 'beans', namespace='damotest', split='train')
  81. pt_dataset = ms_image_train.to_torch_dataset(
  82. preprocessors=ImgPreprocessor(
  83. image_path='image_file_path', label='labels'))
  84. import torch
  85. dataloader = torch.utils.data.DataLoader(pt_dataset, batch_size=5)
  86. print(next(iter(dataloader)))
  87. @unittest.skipUnless(test_level() >= 2, 'skip test in current test level')
  88. @require_tf
  89. def test_to_tf_dataset_img(self):
  90. import tensorflow as tf
  91. tf.compat.v1.enable_eager_execution()
  92. ms_image_train = MsDataset.load(
  93. 'beans', namespace='damotest', split='train')
  94. tf_dataset = ms_image_train.to_tf_dataset(
  95. batch_size=5,
  96. shuffle=True,
  97. preprocessors=ImgPreprocessor(image_path='image_file_path'),
  98. drop_remainder=True,
  99. label_cols='labels')
  100. print(next(iter(tf_dataset)))
  101. if __name__ == '__main__':
  102. unittest.main()