# Copyright 2019 Huawei Technologies Co., Ltd # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """ Test Cifar10 and Cifar100 dataset operators """ import os import pytest import numpy as np import matplotlib.pyplot as plt import mindspore.dataset as ds from mindspore import log as logger DATA_DIR_10 = "../data/dataset/testCifar10Data" DATA_DIR_100 = "../data/dataset/testCifar100Data" def load_cifar(path, kind="cifar10"): """ load Cifar10/100 data """ raw = np.empty(0, dtype=np.uint8) for file_name in os.listdir(path): if file_name.endswith(".bin"): with open(os.path.join(path, file_name), mode='rb') as file: raw = np.append(raw, np.fromfile(file, dtype=np.uint8), axis=0) if kind == "cifar10": raw = raw.reshape(-1, 3073) labels = raw[:, 0] images = raw[:, 1:] elif kind == "cifar100": raw = raw.reshape(-1, 3074) labels = raw[:, :2] images = raw[:, 2:] else: raise ValueError("Invalid parameter value") images = images.reshape(-1, 3, 32, 32) images = images.transpose(0, 2, 3, 1) return images, labels def visualize_dataset(images, labels): """ Helper function to visualize the dataset samples """ num_samples = len(images) for i in range(num_samples): plt.subplot(1, num_samples, i + 1) plt.imshow(images[i]) plt.title(labels[i]) plt.show() ### Testcases for Cifar10Dataset Op ### def test_cifar10_content_check(): """ Validate Cifar10Dataset image readings """ logger.info("Test Cifar10Dataset Op with content check") data1 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=100, shuffle=False) images, labels = load_cifar(DATA_DIR_10) num_iter = 0 # in this example, each dictionary has keys "image" and "label" for i, d in enumerate(data1.create_dict_iterator()): np.testing.assert_array_equal(d["image"], images[i]) np.testing.assert_array_equal(d["label"], labels[i]) num_iter += 1 assert num_iter == 100 def test_cifar10_basic(): """ Validate CIFAR10 """ logger.info("Test Cifar10Dataset Op") # case 0: test loading the whole dataset data0 = ds.Cifar10Dataset(DATA_DIR_10) num_iter0 = 0 for _ in data0.create_dict_iterator(): num_iter0 += 1 assert num_iter0 == 10000 # case 1: test num_samples data1 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=100) num_iter1 = 0 for _ in data1.create_dict_iterator(): num_iter1 += 1 assert num_iter1 == 100 # case 2: test num_parallel_workers data2 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=50, num_parallel_workers=1) num_iter2 = 0 for _ in data2.create_dict_iterator(): num_iter2 += 1 assert num_iter2 == 50 # case 3: test repeat data3 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=100) data3 = data3.repeat(3) num_iter3 = 0 for _ in data3.create_dict_iterator(): num_iter3 += 1 assert num_iter3 == 300 # case 4: test batch with drop_remainder=False data4 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=100) assert data4.get_dataset_size() == 100 assert data4.get_batch_size() == 1 data4 = data4.batch(batch_size=7) # drop_remainder is default to be False assert data4.get_dataset_size() == 15 assert data4.get_batch_size() == 7 num_iter4 = 0 for _ in data4.create_dict_iterator(): num_iter4 += 1 assert num_iter4 == 15 # case 5: test batch with drop_remainder=True data5 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=100) assert data5.get_dataset_size() == 100 assert data5.get_batch_size() == 1 data5 = data5.batch(batch_size=7, drop_remainder=True) # the rest of incomplete batch will be dropped assert data5.get_dataset_size() == 14 assert data5.get_batch_size() == 7 num_iter5 = 0 for _ in data5.create_dict_iterator(): num_iter5 += 1 assert num_iter5 == 14 def test_cifar10_pk_sampler(): """ Test Cifar10Dataset with PKSampler """ logger.info("Test Cifar10Dataset Op with PKSampler") golden = [0, 0, 0, 1, 1, 1, 2, 2, 2, 3, 3, 3, 4, 4, 4, 5, 5, 5, 6, 6, 6, 7, 7, 7, 8, 8, 8, 9, 9, 9] sampler = ds.PKSampler(3) data = ds.Cifar10Dataset(DATA_DIR_10, sampler=sampler) num_iter = 0 label_list = [] for item in data.create_dict_iterator(): label_list.append(item["label"]) num_iter += 1 np.testing.assert_array_equal(golden, label_list) assert num_iter == 30 def test_cifar10_sequential_sampler(): """ Test Cifar10Dataset with SequentialSampler """ logger.info("Test Cifar10Dataset Op with SequentialSampler") num_samples = 30 sampler = ds.SequentialSampler(num_samples=num_samples) data1 = ds.Cifar10Dataset(DATA_DIR_10, sampler=sampler) data2 = ds.Cifar10Dataset(DATA_DIR_10, shuffle=False, num_samples=num_samples) num_iter = 0 for item1, item2 in zip(data1.create_dict_iterator(), data2.create_dict_iterator()): np.testing.assert_equal(item1["label"], item2["label"]) num_iter += 1 assert num_iter == num_samples def test_cifar10_exception(): """ Test error cases for Cifar10Dataset """ logger.info("Test error cases for Cifar10Dataset") error_msg_1 = "sampler and shuffle cannot be specified at the same time" with pytest.raises(RuntimeError, match=error_msg_1): ds.Cifar10Dataset(DATA_DIR_10, shuffle=False, sampler=ds.PKSampler(3)) error_msg_2 = "sampler and sharding cannot be specified at the same time" with pytest.raises(RuntimeError, match=error_msg_2): ds.Cifar10Dataset(DATA_DIR_10, sampler=ds.PKSampler(3), num_shards=2, shard_id=0) error_msg_3 = "num_shards is specified and currently requires shard_id as well" with pytest.raises(RuntimeError, match=error_msg_3): ds.Cifar10Dataset(DATA_DIR_10, num_shards=10) error_msg_4 = "shard_id is specified but num_shards is not" with pytest.raises(RuntimeError, match=error_msg_4): ds.Cifar10Dataset(DATA_DIR_10, shard_id=0) error_msg_5 = "Input shard_id is not within the required interval" with pytest.raises(ValueError, match=error_msg_5): ds.Cifar10Dataset(DATA_DIR_10, num_shards=2, shard_id=-1) with pytest.raises(ValueError, match=error_msg_5): ds.Cifar10Dataset(DATA_DIR_10, num_shards=2, shard_id=5) error_msg_6 = "num_parallel_workers exceeds" with pytest.raises(ValueError, match=error_msg_6): ds.Cifar10Dataset(DATA_DIR_10, shuffle=False, num_parallel_workers=0) with pytest.raises(ValueError, match=error_msg_6): ds.Cifar10Dataset(DATA_DIR_10, shuffle=False, num_parallel_workers=88) def test_cifar10_visualize(plot=False): """ Visualize Cifar10Dataset results """ logger.info("Test Cifar10Dataset visualization") data1 = ds.Cifar10Dataset(DATA_DIR_10, num_samples=10, shuffle=False) num_iter = 0 image_list, label_list = [], [] for item in data1.create_dict_iterator(): image = item["image"] label = item["label"] image_list.append(image) label_list.append("label {}".format(label)) assert isinstance(image, np.ndarray) assert image.shape == (32, 32, 3) assert image.dtype == np.uint8 assert label.dtype == np.uint32 num_iter += 1 assert num_iter == 10 if plot: visualize_dataset(image_list, label_list) ### Testcases for Cifar100Dataset Op ### def test_cifar100_content_check(): """ Validate Cifar100Dataset image readings """ logger.info("Test Cifar100Dataset with content check") data1 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=100, shuffle=False) images, labels = load_cifar(DATA_DIR_100, kind="cifar100") num_iter = 0 # in this example, each dictionary has keys "image", "coarse_label" and "fine_image" for i, d in enumerate(data1.create_dict_iterator()): np.testing.assert_array_equal(d["image"], images[i]) np.testing.assert_array_equal(d["coarse_label"], labels[i][0]) np.testing.assert_array_equal(d["fine_label"], labels[i][1]) num_iter += 1 assert num_iter == 100 def test_cifar100_basic(): """ Test Cifar100Dataset """ logger.info("Test Cifar100Dataset") # case 1: test num_samples data1 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=100) num_iter1 = 0 for _ in data1.create_dict_iterator(): num_iter1 += 1 assert num_iter1 == 100 # case 2: test repeat data1 = data1.repeat(2) num_iter2 = 0 for _ in data1.create_dict_iterator(): num_iter2 += 1 assert num_iter2 == 200 # case 3: test num_parallel_workers data2 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=100, num_parallel_workers=1) num_iter3 = 0 for _ in data2.create_dict_iterator(): num_iter3 += 1 assert num_iter3 == 100 # case 4: test batch with drop_remainder=False data3 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=100) assert data3.get_dataset_size() == 100 assert data3.get_batch_size() == 1 data3 = data3.batch(batch_size=3) assert data3.get_dataset_size() == 34 assert data3.get_batch_size() == 3 num_iter4 = 0 for _ in data3.create_dict_iterator(): num_iter4 += 1 assert num_iter4 == 34 # case 4: test batch with drop_remainder=True data4 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=100) data4 = data4.batch(batch_size=3, drop_remainder=True) assert data4.get_dataset_size() == 33 assert data4.get_batch_size() == 3 num_iter5 = 0 for _ in data4.create_dict_iterator(): num_iter5 += 1 assert num_iter5 == 33 def test_cifar100_pk_sampler(): """ Test Cifar100Dataset with PKSampler """ logger.info("Test Cifar100Dataset with PKSampler") golden = [i for i in range(20)] sampler = ds.PKSampler(1) data = ds.Cifar100Dataset(DATA_DIR_100, sampler=sampler) num_iter = 0 label_list = [] for item in data.create_dict_iterator(): label_list.append(item["coarse_label"]) num_iter += 1 np.testing.assert_array_equal(golden, label_list) assert num_iter == 20 def test_cifar100_exception(): """ Test error cases for Cifar100Dataset """ logger.info("Test error cases for Cifar100Dataset") error_msg_1 = "sampler and shuffle cannot be specified at the same time" with pytest.raises(RuntimeError, match=error_msg_1): ds.Cifar100Dataset(DATA_DIR_100, shuffle=False, sampler=ds.PKSampler(3)) error_msg_2 = "sampler and sharding cannot be specified at the same time" with pytest.raises(RuntimeError, match=error_msg_2): ds.Cifar100Dataset(DATA_DIR_100, sampler=ds.PKSampler(3), num_shards=2, shard_id=0) error_msg_3 = "num_shards is specified and currently requires shard_id as well" with pytest.raises(RuntimeError, match=error_msg_3): ds.Cifar100Dataset(DATA_DIR_100, num_shards=10) error_msg_4 = "shard_id is specified but num_shards is not" with pytest.raises(RuntimeError, match=error_msg_4): ds.Cifar100Dataset(DATA_DIR_100, shard_id=0) error_msg_5 = "Input shard_id is not within the required interval" with pytest.raises(ValueError, match=error_msg_5): ds.Cifar100Dataset(DATA_DIR_100, num_shards=2, shard_id=-1) with pytest.raises(ValueError, match=error_msg_5): ds.Cifar10Dataset(DATA_DIR_100, num_shards=2, shard_id=5) error_msg_6 = "num_parallel_workers exceeds" with pytest.raises(ValueError, match=error_msg_6): ds.Cifar100Dataset(DATA_DIR_100, shuffle=False, num_parallel_workers=0) with pytest.raises(ValueError, match=error_msg_6): ds.Cifar100Dataset(DATA_DIR_100, shuffle=False, num_parallel_workers=88) def test_cifar100_visualize(plot=False): """ Visualize Cifar100Dataset results """ logger.info("Test Cifar100Dataset visualization") data1 = ds.Cifar100Dataset(DATA_DIR_100, num_samples=10, shuffle=False) num_iter = 0 image_list, label_list = [], [] for item in data1.create_dict_iterator(): image = item["image"] coarse_label = item["coarse_label"] fine_label = item["fine_label"] image_list.append(image) label_list.append("coarse_label {}\nfine_label {}".format(coarse_label, fine_label)) assert isinstance(image, np.ndarray) assert image.shape == (32, 32, 3) assert image.dtype == np.uint8 assert coarse_label.dtype == np.uint32 assert fine_label.dtype == np.uint32 num_iter += 1 assert num_iter == 10 if plot: visualize_dataset(image_list, label_list) if __name__ == '__main__': test_cifar10_content_check() test_cifar10_basic() test_cifar10_pk_sampler() test_cifar10_sequential_sampler() test_cifar10_exception() test_cifar10_visualize(plot=False) test_cifar100_content_check() test_cifar100_basic() test_cifar100_pk_sampler() test_cifar100_exception() test_cifar100_visualize(plot=False)