コード例 #1
0
def test_datasetdict_from_csv(split, features, keep_in_memory, csv_path,
                              tmp_path):
    if split:
        path = {split: csv_path}
    else:
        split = "train"
        path = {"train": csv_path, "test": csv_path}
    cache_dir = tmp_path / "cache"
    # CSV file loses col_1 string dtype information: default now is "int64" instead of "string"
    default_expected_features = {
        "col_1": "int64",
        "col_2": "int64",
        "col_3": "float64"
    }
    expected_features = features.copy(
    ) if features else default_expected_features
    features = Features(
        {feature: Value(dtype)
         for feature, dtype in features.items()}) if features else None
    with assert_arrow_memory_increases(
    ) if keep_in_memory else assert_arrow_memory_doesnt_increase():
        dataset = DatasetDict.from_csv(path,
                                       features=features,
                                       cache_dir=cache_dir,
                                       keep_in_memory=keep_in_memory)
    assert isinstance(dataset, DatasetDict)
    dataset = dataset[split]
    assert dataset.num_rows == 4
    assert dataset.num_columns == 3
    assert dataset.column_names == ["col_1", "col_2", "col_3"]
    assert dataset.split == split
    for feature, expected_dtype in expected_features.items():
        assert dataset.features[feature].dtype == expected_dtype
コード例 #2
0
def test_datasetdict_from_json(
    split,
    features,
    keep_in_memory,
    jsonl_path,
    tmp_path,
):
    file_path = jsonl_path
    field = None
    if split:
        path = {split: file_path}
    else:
        split = "train"
        path = {"train": file_path, "test": file_path}
    cache_dir = tmp_path / "cache"
    default_expected_features = {
        "col_1": "string",
        "col_2": "int64",
        "col_3": "float64"
    }
    expected_features = features.copy(
    ) if features else default_expected_features
    features = Features(
        {feature: Value(dtype)
         for feature, dtype in features.items()}) if features else None
    with assert_arrow_memory_increases(
    ) if keep_in_memory else assert_arrow_memory_doesnt_increase():
        dataset = DatasetDict.from_json(path,
                                        features=features,
                                        cache_dir=cache_dir,
                                        keep_in_memory=keep_in_memory,
                                        field=field)
    assert isinstance(dataset, DatasetDict)
    dataset = dataset[split]
    assert dataset.num_rows == 4
    assert dataset.num_columns == 3
    assert dataset.column_names == ["col_1", "col_2", "col_3"]
    assert dataset.split == split
    for feature, expected_dtype in expected_features.items():
        assert dataset.features[feature].dtype == expected_dtype