# Copyright 2021 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. # ============================================================================== import pytest import mindspore.dataset as ds from mindspore import log as logger DATA_DIR = "../data/dataset/testIMDBDataset" def test_imdb_basic(): """ Feature: Test IMDB Dataset. Description: read data from all file. Expectation: the data is processed successfully. """ logger.info("Test Case basic") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, shuffle=False) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 8 content = ["train_pos_0.txt", "train_pos_1.txt", "train_neg_0.txt", "train_neg_1.txt", "test_pos_0.txt", "test_pos_1.txt", "test_neg_0.txt", "test_neg_1.txt"] label = [1, 1, 0, 0, 1, 1, 0, 0] num_iter = 0 for index, item in enumerate(data1.create_dict_iterator(num_epochs=1, output_numpy=True)): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" strs = item["text"].item().decode("utf8") logger.info("text is {}".format(strs)) logger.info("label is {}".format(item["label"])) assert strs == content[index] assert label[index] == int(item["label"]) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 8 def test_imdb_test(): """ Feature: Test IMDB Dataset. Description: read data from test file. Expectation: the data is processed successfully. """ logger.info("Test Case test") # define parameters repeat_count = 1 usage = "test" # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, usage=usage, shuffle=False) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 4 content = ["test_pos_0.txt", "test_pos_1.txt", "test_neg_0.txt", "test_neg_1.txt"] label = [1, 1, 0, 0] num_iter = 0 for index, item in enumerate(data1.create_dict_iterator(num_epochs=1, output_numpy=True)): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" strs = item["text"].item().decode("utf8") logger.info("text is {}".format(strs)) logger.info("label is {}".format(item["label"])) assert strs == content[index] assert label[index] == int(item["label"]) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 4 def test_imdb_train(): """ Feature: Test IMDB Dataset. Description: read data from train file. Expectation: the data is processed successfully. """ logger.info("Test Case train") # define parameters repeat_count = 1 usage = "train" # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, usage=usage, shuffle=False) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 4 content = ["train_pos_0.txt", "train_pos_1.txt", "train_neg_0.txt", "train_neg_1.txt"] label = [1, 1, 0, 0] num_iter = 0 for index, item in enumerate(data1.create_dict_iterator(num_epochs=1, output_numpy=True)): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" strs = item["text"].item().decode("utf8") logger.info("text is {}".format(strs)) logger.info("label is {}".format(item["label"])) assert strs == content[index] assert label[index] == int(item["label"]) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 4 def test_imdb_num_samples(): """ Feature: Test IMDB Dataset. Description: read data from all file with num_samples=10 and num_parallel_workers=2. Expectation: the data is processed successfully. """ logger.info("Test Case numSamples") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, num_samples=6, num_parallel_workers=2) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 6 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 6 random_sampler = ds.RandomSampler(num_samples=3, replacement=True) data1 = ds.IMDBDataset(DATA_DIR, num_parallel_workers=2, sampler=random_sampler) num_iter = 0 for _ in data1.create_dict_iterator(num_epochs=1, output_numpy=True): num_iter += 1 assert num_iter == 3 random_sampler = ds.RandomSampler(num_samples=3, replacement=False) data1 = ds.IMDBDataset(DATA_DIR, num_parallel_workers=2, sampler=random_sampler) num_iter = 0 for _ in data1.create_dict_iterator(num_epochs=1, output_numpy=True): num_iter += 1 assert num_iter == 3 def test_imdb_num_shards(): """ Feature: Test IMDB Dataset. Description: read data from all file with num_shards=2 and shard_id=1. Expectation: the data is processed successfully. """ logger.info("Test Case numShards") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, num_shards=2, shard_id=1) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 4 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 4 def test_imdb_shard_id(): """ Feature: Test IMDB Dataset. Description: read data from all file with num_shards=4 and shard_id=1. Expectation: the data is processed successfully. """ logger.info("Test Case withShardID") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, num_shards=2, shard_id=0) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 4 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 4 def test_imdb_no_shuffle(): """ Feature: Test IMDB Dataset. Description: read data from all file with shuffle=False. Expectation: the data is processed successfully. """ logger.info("Test Case noShuffle") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, shuffle=False) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 8 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 8 def test_imdb_true_shuffle(): """ Feature: Test IMDB Dataset. Description: read data from all file with shuffle=True. Expectation: the data is processed successfully. """ logger.info("Test Case extraShuffle") # define parameters repeat_count = 2 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, shuffle=True) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 16 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 16 def test_random_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with sampler=ds.RandomSampler(). Expectation: the data is processed successfully. """ logger.info("Test Case RandomSampler") # define parameters repeat_count = 1 # apply dataset operations sampler = ds.RandomSampler() data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 8 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 8 def test_distributed_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with sampler=ds.DistributedSampler(). Expectation: the data is processed successfully. """ logger.info("Test Case DistributedSampler") # define parameters repeat_count = 1 # apply dataset operations sampler = ds.DistributedSampler(4, 1) data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 2 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 2 def test_pk_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with sampler=ds.PKSampler(). Expectation: the data is processed successfully. """ logger.info("Test Case PKSampler") # define parameters repeat_count = 1 # apply dataset operations sampler = ds.PKSampler(3) data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 6 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 6 def test_subset_random_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with sampler=ds.SubsetRandomSampler(). Expectation: the data is processed successfully. """ logger.info("Test Case SubsetRandomSampler") # define parameters repeat_count = 1 # apply dataset operations indices = [0, 3, 1, 2, 5, 4] sampler = ds.SubsetRandomSampler(indices) data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 6 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 6 def test_weighted_random_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with sampler=ds.WeightedRandomSampler(). Expectation: the data is processed successfully. """ logger.info("Test Case WeightedRandomSampler") # define parameters repeat_count = 1 # apply dataset operations weights = [1.0, 0.1, 0.02, 0.3, 0.4, 0.05] sampler = ds.WeightedRandomSampler(weights, 6) data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(repeat_count) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 6 num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 6 def test_weighted_random_sampler_exception(): """ Feature: Test IMDB Dataset. Description: read data from all file with random sampler exception. Expectation: the data is processed successfully. """ logger.info("Test error cases for WeightedRandomSampler") error_msg_1 = "type of weights element must be number" with pytest.raises(TypeError, match=error_msg_1): weights = "" ds.WeightedRandomSampler(weights) error_msg_2 = "type of weights element must be number" with pytest.raises(TypeError, match=error_msg_2): weights = (0.9, 0.8, 1.1) ds.WeightedRandomSampler(weights) error_msg_3 = "WeightedRandomSampler: weights vector must not be empty" with pytest.raises(RuntimeError, match=error_msg_3): weights = [] sampler = ds.WeightedRandomSampler(weights) sampler.parse() error_msg_4 = "WeightedRandomSampler: weights vector must not contain negative numbers, got: " with pytest.raises(RuntimeError, match=error_msg_4): weights = [1.0, 0.1, 0.02, 0.3, -0.4] sampler = ds.WeightedRandomSampler(weights) sampler.parse() error_msg_5 = "WeightedRandomSampler: elements of weights vector must not be all zero" with pytest.raises(RuntimeError, match=error_msg_5): weights = [0, 0, 0, 0, 0] sampler = ds.WeightedRandomSampler(weights) sampler.parse() def test_chained_sampler_with_random_sequential_repeat(): """ Feature: Test IMDB Dataset. Description: read data from all file with Random and Sequential, with repeat. Expectation: the data is processed successfully. """ logger.info("Test Case Chained Sampler - Random and Sequential, with repeat") # Create chained sampler, random and sequential sampler = ds.RandomSampler() child_sampler = ds.SequentialSampler() sampler.add_child(child_sampler) # Create IMDBDataset with sampler data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.repeat(count=3) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 24 # Verify number of iterations num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 24 def test_chained_sampler_with_distribute_random_batch_then_repeat(): """ Feature: Test IMDB Dataset. Description: read data from all file with Distributed and Random, with batch then repeat. Expectation: the data is processed successfully. """ logger.info("Test Case Chained Sampler - Distributed and Random, with batch then repeat") # Create chained sampler, distributed and random sampler = ds.DistributedSampler(num_shards=4, shard_id=3) child_sampler = ds.RandomSampler() sampler.add_child(child_sampler) # Create IMDBDataset with sampler data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) data1 = data1.batch(batch_size=5, drop_remainder=True) data1 = data1.repeat(count=3) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 0 # Verify number of iterations num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) # Note: Each of the 4 shards has 44/4=11 samples # Note: Number of iterations is (11/5 = 2) * 3 = 6 assert num_iter == 0 def test_chained_sampler_with_weighted_random_pk_sampler(): """ Feature: Test IMDB Dataset. Description: read data from all file with WeightedRandom and PKSampler. Expectation: the data is processed successfully. """ logger.info("Test Case Chained Sampler - WeightedRandom and PKSampler") # Create chained sampler, WeightedRandom and PKSampler weights = [1.0, 0.1, 0.02, 0.3, 0.4, 0.05] sampler = ds.WeightedRandomSampler(weights=weights, num_samples=6) child_sampler = ds.PKSampler(num_val=3) # Number of elements per class is 3 (and there are 4 classes) sampler.add_child(child_sampler) # Create IMDBDataset with sampler data1 = ds.IMDBDataset(DATA_DIR, sampler=sampler) # Verify dataset size data1_size = data1.get_dataset_size() logger.info("dataset size is: {}".format(data1_size)) assert data1_size == 6 # Verify number of iterations num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) # Note: WeightedRandomSampler produces 12 samples # Note: Child PKSampler produces 12 samples assert num_iter == 6 def test_imdb_rename(): """ Feature: Test IMDB Dataset. Description: read data from all file with rename. Expectation: the data is processed successfully. """ logger.info("Test Case rename") # define parameters repeat_count = 1 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, num_samples=8) data1 = data1.repeat(repeat_count) num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 8 data1 = data1.rename(input_columns=["text"], output_columns="text2") num_iter = 0 for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text2"])) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 8 def test_imdb_zip(): """ Feature: Test IMDB Dataset. Description: read data from all file with zip. Expectation: the data is processed successfully. """ logger.info("Test Case zip") # define parameters repeat_count = 2 # apply dataset operations data1 = ds.IMDBDataset(DATA_DIR, num_samples=4) data2 = ds.IMDBDataset(DATA_DIR, num_samples=4) data1 = data1.repeat(repeat_count) # rename dataset2 for no conflict data2 = data2.rename(input_columns=["text", "label"], output_columns=["text1", "label1"]) data3 = ds.zip((data1, data2)) num_iter = 0 for item in data3.create_dict_iterator(num_epochs=1, output_numpy=True): # each data is a dictionary # in this example, each dictionary has keys "text" and "label" logger.info("text is {}".format(item["text"].item().decode("utf8"))) logger.info("label is {}".format(item["label"])) num_iter += 1 logger.info("Number of data in data1: {}".format(num_iter)) assert num_iter == 4 def test_imdb_exception(): """ Feature: Test IMDB Dataset. Description: read data from all file with exception. Expectation: the data is processed successfully. """ logger.info("Test imdb exception") def exception_func(item): raise Exception("Error occur!") def exception_func2(text, label): raise Exception("Error occur!") try: data = ds.IMDBDataset(DATA_DIR) data = data.map(operations=exception_func, input_columns=["text"], num_parallel_workers=1) for _ in data.__iter__(): pass assert False except RuntimeError as e: assert "map operation: [PyFunc] failed. The corresponding data files" in str(e) try: data = ds.IMDBDataset(DATA_DIR) data = data.map(operations=exception_func2, input_columns=["text", "label"], output_columns=["text", "label", "label1"], column_order=["text", "label", "label1"], num_parallel_workers=1) for _ in data.__iter__(): pass assert False except RuntimeError as e: assert "map operation: [PyFunc] failed. The corresponding data files" in str(e) data_dir_invalid = "../data/dataset/IMDBDATASET" try: data = ds.IMDBDataset(data_dir_invalid) for _ in data.__iter__(): pass assert False except ValueError as e: assert "does not exist or is not a directory or permission denied" in str(e) if __name__ == '__main__': test_imdb_basic() test_imdb_test() test_imdb_train() test_imdb_num_samples() test_random_sampler() test_distributed_sampler() test_pk_sampler() test_subset_random_sampler() test_weighted_random_sampler() test_weighted_random_sampler_exception() test_chained_sampler_with_random_sequential_repeat() test_chained_sampler_with_distribute_random_batch_then_repeat() test_chained_sampler_with_weighted_random_pk_sampler() test_imdb_num_shards() test_imdb_shard_id() test_imdb_no_shuffle() test_imdb_true_shuffle() test_imdb_rename() test_imdb_zip() test_imdb_exception()