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test_datasets_emnist.py 20 kB

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  1. # Copyright 2021 Huawei Technologies Co., Ltd
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. # ==============================================================================
  15. """
  16. Test EMnist dataset operators
  17. """
  18. import os
  19. import matplotlib.pyplot as plt
  20. import numpy as np
  21. import pytest
  22. import mindspore.dataset as ds
  23. import mindspore.dataset.vision.c_transforms as vision
  24. from mindspore import log as logger
  25. DATA_DIR = "../data/dataset/testEMnistDataset"
  26. def load_emnist(path, usage, name):
  27. """
  28. load EMnist data
  29. """
  30. image_path = []
  31. label_path = []
  32. image_ext = "images-idx3-ubyte"
  33. label_ext = "labels-idx1-ubyte"
  34. train_prefix = "emnist-" + name + "-train-"
  35. test_prefix = "emnist-" + name + "-test-"
  36. assert usage in ["train", "test", "all"]
  37. if usage == "train":
  38. image_path.append(os.path.realpath(os.path.join(path, train_prefix + image_ext)))
  39. label_path.append(os.path.realpath(os.path.join(path, train_prefix + label_ext)))
  40. elif usage == "test":
  41. image_path.append(os.path.realpath(os.path.join(path, test_prefix + image_ext)))
  42. label_path.append(os.path.realpath(os.path.join(path, test_prefix + label_ext)))
  43. elif usage == "all":
  44. image_path.append(os.path.realpath(os.path.join(path, test_prefix + image_ext)))
  45. label_path.append(os.path.realpath(os.path.join(path, test_prefix + label_ext)))
  46. image_path.append(os.path.realpath(os.path.join(path, train_prefix + image_ext)))
  47. label_path.append(os.path.realpath(os.path.join(path, train_prefix + label_ext)))
  48. assert len(image_path) == len(label_path)
  49. images = []
  50. labels = []
  51. for i, _ in enumerate(image_path):
  52. with open(image_path[i], 'rb') as image_file:
  53. image_file.read(16)
  54. image = np.fromfile(image_file, dtype=np.uint8)
  55. image = image.reshape(-1, 28, 28, 1)
  56. image[image > 0] = 255 # Perform binarization to maintain consistency with our API
  57. images.append(image)
  58. with open(label_path[i], 'rb') as label_file:
  59. label_file.read(8)
  60. label = np.fromfile(label_file, dtype=np.uint8)
  61. labels.append(label)
  62. images = np.concatenate(images, 0)
  63. labels = np.concatenate(labels, 0)
  64. return images, labels
  65. def visualize_dataset(images, labels):
  66. """
  67. Helper function to visualize the dataset samples
  68. """
  69. num_samples = len(images)
  70. for i in range(num_samples):
  71. plt.subplot(1, num_samples, i + 1)
  72. plt.imshow(images[i].squeeze(), cmap=plt.cm.gray)
  73. plt.title(labels[i])
  74. plt.show()
  75. def test_emnist_content_check():
  76. """
  77. Validate EMnistDataset image readings
  78. """
  79. logger.info("Test EMnistDataset Op with content check")
  80. # train mnist
  81. train_data = ds.EMnistDataset(DATA_DIR, name="mnist", usage="train", num_samples=10, shuffle=False)
  82. images, labels = load_emnist(DATA_DIR, "train", "mnist")
  83. num_iter = 0
  84. # in this example, each dictionary has keys "image" and "label"
  85. image_list, label_list = [], []
  86. for i, data in enumerate(train_data.create_dict_iterator(num_epochs=1, output_numpy=True)):
  87. image_list.append(data["image"])
  88. label_list.append("label {}".format(data["label"]))
  89. np.testing.assert_array_equal(data["image"], images[i])
  90. np.testing.assert_array_equal(data["label"], labels[i])
  91. num_iter += 1
  92. assert num_iter == 10
  93. # train byclass
  94. train_data = ds.EMnistDataset(DATA_DIR, name="byclass", usage="train", num_samples=10, shuffle=False)
  95. images, labels = load_emnist(DATA_DIR, "train", "byclass")
  96. num_iter = 0
  97. # in this example, each dictionary has keys "image" and "label"
  98. image_list, label_list = [], []
  99. for i, data in enumerate(train_data.create_dict_iterator(num_epochs=1, output_numpy=True)):
  100. image_list.append(data["image"])
  101. label_list.append("label {}".format(data["label"]))
  102. np.testing.assert_array_equal(data["image"], images[i])
  103. np.testing.assert_array_equal(data["label"], labels[i])
  104. num_iter += 1
  105. assert num_iter == 10
  106. # test
  107. test_data = ds.EMnistDataset(DATA_DIR, name="mnist", usage="test", num_samples=10, shuffle=False)
  108. images, labels = load_emnist(DATA_DIR, "test", "mnist")
  109. num_iter = 0
  110. # in this example, each dictionary has keys "image" and "label"
  111. image_list, label_list = [], []
  112. for i, data in enumerate(test_data.create_dict_iterator(num_epochs=1, output_numpy=True)):
  113. image_list.append(data["image"])
  114. label_list.append("label {}".format(data["label"]))
  115. np.testing.assert_array_equal(data["image"], images[i])
  116. np.testing.assert_array_equal(data["label"], labels[i])
  117. num_iter += 1
  118. assert num_iter == 10
  119. def test_emnist_basic():
  120. """
  121. Validate EMnistDataset
  122. """
  123. logger.info("Test EMnistDataset Op")
  124. # case 1: test loading whole dataset
  125. train_data = ds.EMnistDataset(DATA_DIR, "mnist", "train")
  126. num_iter1 = 0
  127. for _ in train_data.create_dict_iterator(num_epochs=1):
  128. num_iter1 += 1
  129. assert num_iter1 == 10
  130. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test")
  131. num_iter = 0
  132. for _ in test_data.create_dict_iterator(num_epochs=1):
  133. num_iter += 1
  134. assert num_iter == 10
  135. # case 2: test num_samples
  136. train_data = ds.EMnistDataset(DATA_DIR, "byclass", "train", num_samples=5)
  137. num_iter2 = 0
  138. for _ in train_data.create_dict_iterator(num_epochs=1):
  139. num_iter2 += 1
  140. assert num_iter2 == 5
  141. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=5)
  142. num_iter2 = 0
  143. for _ in test_data.create_dict_iterator(num_epochs=1):
  144. num_iter2 += 1
  145. assert num_iter2 == 5
  146. # case 3: test repeat
  147. train_data = ds.EMnistDataset(DATA_DIR, "byclass", "train", num_samples=2)
  148. train_data = train_data.repeat(5)
  149. num_iter3 = 0
  150. for _ in train_data.create_dict_iterator(num_epochs=1):
  151. num_iter3 += 1
  152. assert num_iter3 == 10
  153. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=2)
  154. test_data = test_data.repeat(5)
  155. num_iter3 = 0
  156. for _ in test_data.create_dict_iterator(num_epochs=1):
  157. num_iter3 += 1
  158. assert num_iter3 == 10
  159. # case 4: test batch with drop_remainder=False
  160. train_data = ds.EMnistDataset(DATA_DIR, "byclass", "train", num_samples=10)
  161. assert train_data.get_dataset_size() == 10
  162. assert train_data.get_batch_size() == 1
  163. train_data = train_data.batch(batch_size=7) # drop_remainder is default to be False
  164. assert train_data.get_dataset_size() == 2
  165. assert train_data.get_batch_size() == 7
  166. num_iter4 = 0
  167. for _ in train_data.create_dict_iterator(num_epochs=1):
  168. num_iter4 += 1
  169. assert num_iter4 == 2
  170. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=10)
  171. assert test_data.get_dataset_size() == 10
  172. assert test_data.get_batch_size() == 1
  173. test_data = test_data.batch(
  174. batch_size=7) # drop_remainder is default to be False
  175. assert test_data.get_dataset_size() == 2
  176. assert test_data.get_batch_size() == 7
  177. num_iter4 = 0
  178. for _ in test_data.create_dict_iterator(num_epochs=1):
  179. num_iter4 += 1
  180. assert num_iter4 == 2
  181. # case 5: test batch with drop_remainder=True
  182. train_data = ds.EMnistDataset(DATA_DIR, "byclass", "train", num_samples=10)
  183. assert train_data.get_dataset_size() == 10
  184. assert train_data.get_batch_size() == 1
  185. train_data = train_data.batch(batch_size=7, drop_remainder=True) # the rest of incomplete batch will be dropped
  186. assert train_data.get_dataset_size() == 1
  187. assert train_data.get_batch_size() == 7
  188. num_iter5 = 0
  189. for _ in train_data.create_dict_iterator(num_epochs=1):
  190. num_iter5 += 1
  191. assert num_iter5 == 1
  192. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=10)
  193. assert test_data.get_dataset_size() == 10
  194. assert test_data.get_batch_size() == 1
  195. test_data = test_data.batch(batch_size=7, drop_remainder=True) # the rest of incomplete batch will be dropped
  196. assert test_data.get_dataset_size() == 1
  197. assert test_data.get_batch_size() == 7
  198. num_iter5 = 0
  199. for _ in test_data.create_dict_iterator(num_epochs=1):
  200. num_iter5 += 1
  201. assert num_iter5 == 1
  202. # case 6: test get_col_names
  203. dataset = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=10)
  204. assert dataset.get_col_names() == ["image", "label"]
  205. def test_emnist_pk_sampler():
  206. """
  207. Test EMnistDataset with PKSampler
  208. """
  209. logger.info("Test EMnistDataset Op with PKSampler")
  210. golden = [0, 0, 0, 1, 1, 1]
  211. sampler = ds.PKSampler(3)
  212. train_data = ds.EMnistDataset(DATA_DIR, "mnist", "train", sampler=sampler)
  213. num_iter = 0
  214. label_list = []
  215. for item in train_data.create_dict_iterator(num_epochs=1, output_numpy=True):
  216. label_list.append(item["label"])
  217. num_iter += 1
  218. np.testing.assert_array_equal(golden, label_list)
  219. assert num_iter == 6
  220. sampler = ds.PKSampler(3)
  221. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "train", sampler=sampler)
  222. num_iter = 0
  223. label_list = []
  224. for item in test_data.create_dict_iterator(num_epochs=1, output_numpy=True):
  225. label_list.append(item["label"])
  226. num_iter += 1
  227. np.testing.assert_array_equal(golden, label_list)
  228. assert num_iter == 6
  229. def test_emnist_sequential_sampler():
  230. """
  231. Test EMnistDataset with SequentialSampler
  232. """
  233. logger.info("Test EMnistDataset Op with SequentialSampler")
  234. num_samples = 10
  235. sampler = ds.SequentialSampler(num_samples=num_samples)
  236. train_data1 = ds.EMnistDataset(DATA_DIR, "mnist", "train", sampler=sampler)
  237. train_data2 = ds.EMnistDataset(DATA_DIR, "mnist", "train", shuffle=False, num_samples=num_samples)
  238. label_list1, label_list2 = [], []
  239. num_iter = 0
  240. for item1, item2 in zip(train_data1.create_dict_iterator(num_epochs=1),
  241. train_data2.create_dict_iterator(num_epochs=1)):
  242. label_list1.append(item1["label"].asnumpy())
  243. label_list2.append(item2["label"].asnumpy())
  244. num_iter += 1
  245. np.testing.assert_array_equal(label_list1, label_list2)
  246. assert num_iter == num_samples
  247. num_samples = 10
  248. sampler = ds.SequentialSampler(num_samples=num_samples)
  249. test_data1 = ds.EMnistDataset(DATA_DIR, "mnist", "test", sampler=sampler)
  250. test_data2 = ds.EMnistDataset(DATA_DIR, "mnist", "test", shuffle=False, num_samples=num_samples)
  251. label_list1, label_list2 = [], []
  252. num_iter = 0
  253. for item1, item2 in zip(test_data1.create_dict_iterator(num_epochs=1),
  254. test_data2.create_dict_iterator(num_epochs=1)):
  255. label_list1.append(item1["label"].asnumpy())
  256. label_list2.append(item2["label"].asnumpy())
  257. num_iter += 1
  258. np.testing.assert_array_equal(label_list1, label_list2)
  259. assert num_iter == num_samples
  260. def test_emnist_exception():
  261. """
  262. Test error cases for EMnistDataset
  263. """
  264. logger.info("Test error cases for EMnistDataset")
  265. error_msg_1 = "sampler and shuffle cannot be specified at the same time"
  266. with pytest.raises(RuntimeError, match=error_msg_1):
  267. ds.EMnistDataset(DATA_DIR, "byclass", "train", shuffle=False, sampler=ds.PKSampler(3))
  268. ds.EMnistDataset(DATA_DIR, "mnist", "test", shuffle=False, sampler=ds.PKSampler(3))
  269. error_msg_2 = "sampler and sharding cannot be specified at the same time"
  270. with pytest.raises(RuntimeError, match=error_msg_2):
  271. ds.EMnistDataset(DATA_DIR, "mnist", "train", sampler=ds.PKSampler(3), num_shards=2, shard_id=0)
  272. ds.EMnistDataset(DATA_DIR, "mnist", "test", sampler=ds.PKSampler(3), num_shards=2, shard_id=0)
  273. error_msg_3 = "num_shards is specified and currently requires shard_id as well"
  274. with pytest.raises(RuntimeError, match=error_msg_3):
  275. ds.EMnistDataset(DATA_DIR, "byclass", "train", num_shards=10)
  276. ds.EMnistDataset(DATA_DIR, "mnist", "test", num_shards=10)
  277. error_msg_4 = "shard_id is specified but num_shards is not"
  278. with pytest.raises(RuntimeError, match=error_msg_4):
  279. ds.EMnistDataset(DATA_DIR, "mnist", "train", shard_id=0)
  280. ds.EMnistDataset(DATA_DIR, "mnist", "test", shard_id=0)
  281. error_msg_5 = "Input shard_id is not within the required interval"
  282. with pytest.raises(ValueError, match=error_msg_5):
  283. ds.EMnistDataset(DATA_DIR, "byclass", "train", num_shards=5, shard_id=-1)
  284. ds.EMnistDataset(DATA_DIR, "mnist", "test", num_shards=5, shard_id=-1)
  285. with pytest.raises(ValueError, match=error_msg_5):
  286. ds.EMnistDataset(DATA_DIR, "mnist", "train", num_shards=5, shard_id=5)
  287. ds.EMnistDataset(DATA_DIR, "mnist", "test", num_shards=5, shard_id=5)
  288. with pytest.raises(ValueError, match=error_msg_5):
  289. ds.EMnistDataset(DATA_DIR, "byclass", "train", num_shards=2, shard_id=5)
  290. ds.EMnistDataset(DATA_DIR, "mnist", "test", num_shards=2, shard_id=5)
  291. error_msg_6 = "num_parallel_workers exceeds"
  292. with pytest.raises(ValueError, match=error_msg_6):
  293. ds.EMnistDataset(DATA_DIR, "mnist", "train", shuffle=False, num_parallel_workers=0)
  294. ds.EMnistDataset(DATA_DIR, "mnist", "test", shuffle=False, num_parallel_workers=0)
  295. with pytest.raises(ValueError, match=error_msg_6):
  296. ds.EMnistDataset(DATA_DIR, "byclass", "train", shuffle=False, num_parallel_workers=256)
  297. ds.EMnistDataset(DATA_DIR, "mnist", "test", shuffle=False, num_parallel_workers=256)
  298. with pytest.raises(ValueError, match=error_msg_6):
  299. ds.EMnistDataset(DATA_DIR, "mnist", "train", shuffle=False, num_parallel_workers=-2)
  300. ds.EMnistDataset(DATA_DIR, "mnist", "test", shuffle=False, num_parallel_workers=-2)
  301. error_msg_7 = "Argument shard_id"
  302. with pytest.raises(TypeError, match=error_msg_7):
  303. ds.EMnistDataset(DATA_DIR, "mnist", "train", num_shards=2, shard_id="0")
  304. ds.EMnistDataset(DATA_DIR, "mnist", "test", num_shards=2, shard_id="0")
  305. def exception_func(item):
  306. raise Exception("Error occur!")
  307. error_msg_8 = "The corresponding data files"
  308. with pytest.raises(RuntimeError, match=error_msg_8):
  309. data = ds.EMnistDataset(DATA_DIR, "mnist", "train")
  310. data = data.map(operations=exception_func, input_columns=["image"], num_parallel_workers=1)
  311. for _ in data.__iter__():
  312. pass
  313. with pytest.raises(RuntimeError, match=error_msg_8):
  314. data = ds.EMnistDataset(DATA_DIR, "mnist", "train")
  315. data = data.map(operations=vision.Decode(), input_columns=["image"], num_parallel_workers=1)
  316. for _ in data.__iter__():
  317. pass
  318. with pytest.raises(RuntimeError, match=error_msg_8):
  319. data = ds.EMnistDataset(DATA_DIR, "mnist", "train")
  320. data = data.map(operations=exception_func, input_columns=["label"], num_parallel_workers=1)
  321. for _ in data.__iter__():
  322. pass
  323. def test_emnist_visualize(plot=False):
  324. """
  325. Visualize EMnistDataset results
  326. """
  327. logger.info("Test EMnistDataset visualization")
  328. train_data = ds.EMnistDataset(DATA_DIR, "mnist", "train", num_samples=10, shuffle=False)
  329. num_iter = 0
  330. image_list, label_list = [], []
  331. for item in train_data.create_dict_iterator(num_epochs=1, output_numpy=True):
  332. image = item["image"]
  333. label = item["label"]
  334. image_list.append(image)
  335. label_list.append("label {}".format(label))
  336. assert isinstance(image, np.ndarray)
  337. assert image.shape == (28, 28, 1)
  338. assert image.dtype == np.uint8
  339. assert label.dtype == np.uint32
  340. num_iter += 1
  341. assert num_iter == 10
  342. if plot:
  343. visualize_dataset(image_list, label_list)
  344. test_data = ds.EMnistDataset(DATA_DIR, "mnist", "test", num_samples=10, shuffle=False)
  345. num_iter = 0
  346. image_list, label_list = [], []
  347. for item in test_data.create_dict_iterator(num_epochs=1, output_numpy=True):
  348. image = item["image"]
  349. label = item["label"]
  350. image_list.append(image)
  351. label_list.append("label {}".format(label))
  352. assert isinstance(image, np.ndarray)
  353. assert image.shape == (28, 28, 1)
  354. assert image.dtype == np.uint8
  355. assert label.dtype == np.uint32
  356. num_iter += 1
  357. assert num_iter == 10
  358. if plot:
  359. visualize_dataset(image_list, label_list)
  360. def test_emnist_usage():
  361. """
  362. Validate EMnistDataset image readings
  363. """
  364. logger.info("Test EMnistDataset usage flag")
  365. def test_config(usage, emnist_path=None):
  366. emnist_path = DATA_DIR if emnist_path is None else emnist_path
  367. try:
  368. data = ds.EMnistDataset(emnist_path, "mnist", usage=usage, shuffle=False)
  369. num_rows = 0
  370. for _ in data.create_dict_iterator(num_epochs=1, output_numpy=True):
  371. num_rows += 1
  372. except (ValueError, TypeError, RuntimeError) as e:
  373. return str(e)
  374. return num_rows
  375. assert test_config("train") == 10
  376. assert test_config("test") == 10
  377. assert test_config("all") == 20
  378. assert "usage is not within the valid set of ['train', 'test', 'all']" in test_config("invalid")
  379. assert "Argument usage with value ['list'] is not of type [<class 'str'>]" in test_config(["list"])
  380. # change this directory to the folder that contains all emnist files
  381. all_files_path = None
  382. # the following tests on the entire datasets
  383. if all_files_path is not None:
  384. assert test_config("train", all_files_path) == 10000
  385. assert test_config("test", all_files_path) == 60000
  386. assert test_config("all", all_files_path) == 70000
  387. assert ds.EMnistDataset(all_files_path, "mnist", usage="test").get_dataset_size() == 10000
  388. assert ds.EMnistDataset(all_files_path, "mnist", usage="test").get_dataset_size() == 60000
  389. assert ds.EMnistDataset(all_files_path, "mnist", usage="all").get_dataset_size() == 70000
  390. def test_emnist_name():
  391. """
  392. Validate EMnistDataset image readings
  393. """
  394. def test_config(name, usage, emnist_path=None):
  395. emnist_path = DATA_DIR if emnist_path is None else emnist_path
  396. try:
  397. data = ds.EMnistDataset(emnist_path, name, usage=usage, shuffle=False)
  398. num_rows = 0
  399. for _ in data.create_dict_iterator(num_epochs=1, output_numpy=True):
  400. num_rows += 1
  401. except (ValueError, TypeError, RuntimeError) as e:
  402. return str(e)
  403. return num_rows
  404. assert test_config("mnist", "train") == 10
  405. assert test_config("mnist", "test") == 10
  406. assert test_config("byclass", "train") == 10
  407. assert "name is not within the valid set of " + \
  408. "['byclass', 'bymerge', 'balanced', 'letters', 'digits', 'mnist']" in test_config("invalid", "train")
  409. assert "Argument name with value ['list'] is not of type [<class 'str'>]" in test_config(["list"], "train")
  410. if __name__ == '__main__':
  411. test_emnist_content_check()
  412. test_emnist_basic()
  413. test_emnist_pk_sampler()
  414. test_emnist_sequential_sampler()
  415. test_emnist_exception()
  416. test_emnist_visualize(plot=True)
  417. test_emnist_usage()
  418. test_emnist_name()