import os import tarfile import pyarrow as pa import pytest from datasets import Dataset, concatenate_datasets, load_dataset from datasets.features import Audio, Features, Sequence, Value from ..utils import ( require_sndfile, ) @pytest.fixture() def tar_wav_path(shared_datadir, tmp_path_factory): audio_path = str(shared_datadir / "test_audio_44100.wav") path = tmp_path_factory.mktemp("data") / "audio_data.wav.tar" with tarfile.TarFile(path, "w") as f: f.add(audio_path, arcname=os.path.basename(audio_path)) return path @pytest.fixture() def tar_mp3_path(shared_datadir, tmp_path_factory): audio_path = str(shared_datadir / "test_audio_44100.mp3") path = tmp_path_factory.mktemp("data") / "audio_data.mp3.tar" with tarfile.TarFile(path, "w") as f: f.add(audio_path, arcname=os.path.basename(audio_path)) return path def iter_archive(archive_path): with tarfile.open(archive_path) as tar: for tarinfo in tar: file_path = tarinfo.name file_obj = tar.extractfile(tarinfo) yield file_path, file_obj def test_audio_instantiation(): audio = Audio() assert audio.sampling_rate is None assert audio.mono is True assert audio.id is None assert audio.dtype == "dict" assert audio.pa_type == pa.struct({"bytes": pa.binary(), "path": pa.string()}) assert audio._type == "Audio" def test_audio_feature_type_to_arrow(): features = Features({"audio": Audio()}) assert features.arrow_schema == pa.schema({"audio": Audio().pa_type}) features = Features({"struct_containing_an_audio": {"audio": Audio()}}) assert features.arrow_schema == pa.schema({"struct_containing_an_audio": pa.struct({"audio": Audio().pa_type})}) features = Features({"sequence_of_audios": Sequence(Audio())}) assert features.arrow_schema == pa.schema({"sequence_of_audios": pa.list_(Audio().pa_type)}) @pytest.mark.parametrize( "build_example", [ lambda audio_path: audio_path, lambda audio_path: open(audio_path, "rb").read(), lambda audio_path: {"path": audio_path}, lambda audio_path: {"path": audio_path, "bytes": None}, lambda audio_path: {"path": audio_path, "bytes": open(audio_path, "rb").read()}, lambda audio_path: {"path": None, "bytes": open(audio_path, "rb").read()}, lambda audio_path: {"bytes": open(audio_path, "rb").read()}, lambda audio_path: {"array": [0.1, 0.2, 0.3], "sampling_rate": 16_000}, ], ) def test_audio_feature_encode_example(shared_datadir, build_example): audio_path = str(shared_datadir / "test_audio_44100.wav") audio = Audio() encoded_example = audio.encode_example(build_example(audio_path)) assert isinstance(encoded_example, dict) assert encoded_example.keys() == {"bytes", "path"} assert encoded_example["bytes"] is not None or encoded_example["path"] is not None decoded_example = audio.decode_example(encoded_example) assert decoded_example.keys() == {"path", "array", "sampling_rate"} @pytest.mark.parametrize( "build_example", [ lambda audio_path: {"path": audio_path, "sampling_rate": 16_000}, lambda audio_path: {"path": audio_path, "bytes": None, "sampling_rate": 16_000}, lambda audio_path: {"path": audio_path, "bytes": open(audio_path, "rb").read(), "sampling_rate": 16_000}, lambda audio_path: {"array": [0.1, 0.2, 0.3], "sampling_rate": 16_000}, ], ) def test_audio_feature_encode_example_pcm(shared_datadir, build_example): audio_path = str(shared_datadir / "test_audio_16000.pcm") audio = Audio(sampling_rate=16_000) encoded_example = audio.encode_example(build_example(audio_path)) assert isinstance(encoded_example, dict) assert encoded_example.keys() == {"bytes", "path"} assert encoded_example["bytes"] is not None or encoded_example["path"] is not None decoded_example = audio.decode_example(encoded_example) assert decoded_example.keys() == {"path", "array", "sampling_rate"} @require_sndfile def test_audio_decode_example(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") audio = Audio() decoded_example = audio.decode_example(audio.encode_example(audio_path)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path assert decoded_example["array"].shape == (202311,) assert decoded_example["sampling_rate"] == 44100 with pytest.raises(RuntimeError): Audio(decode=False).decode_example(audio_path) @require_sndfile def test_audio_resampling(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") audio = Audio(sampling_rate=16000) decoded_example = audio.decode_example(audio.encode_example(audio_path)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path assert decoded_example["array"].shape == (73401,) assert decoded_example["sampling_rate"] == 16000 @require_sndfile def test_audio_decode_example_mp3(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.mp3") audio = Audio() decoded_example = audio.decode_example(audio.encode_example(audio_path)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path assert decoded_example["array"].shape == (110592,) assert decoded_example["sampling_rate"] == 44100 @require_sndfile def test_audio_decode_example_opus(shared_datadir): audio_path = str(shared_datadir / "test_audio_48000.opus") audio = Audio() decoded_example = audio.decode_example(audio.encode_example(audio_path)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path assert decoded_example["array"].shape == (48000,) assert decoded_example["sampling_rate"] == 48000 @pytest.mark.parametrize("sampling_rate", [16_000, 48_000]) def test_audio_decode_example_pcm(shared_datadir, sampling_rate): audio_path = str(shared_datadir / "test_audio_16000.pcm") audio_input = {"path": audio_path, "sampling_rate": 16_000} audio = Audio(sampling_rate=sampling_rate) decoded_example = audio.decode_example(audio.encode_example(audio_input)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] is None assert decoded_example["array"].shape == (16208 * sampling_rate // 16_000,) assert decoded_example["sampling_rate"] == sampling_rate @require_sndfile def test_audio_resampling_mp3_different_sampling_rates(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.mp3") audio_path2 = str(shared_datadir / "test_audio_16000.mp3") audio = Audio(sampling_rate=48000) decoded_example = audio.decode_example(audio.encode_example(audio_path)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path assert decoded_example["array"].shape == (120373,) assert decoded_example["sampling_rate"] == 48000 decoded_example = audio.decode_example(audio.encode_example(audio_path2)) assert decoded_example.keys() == {"path", "array", "sampling_rate"} assert decoded_example["path"] == audio_path2 assert decoded_example["array"].shape == (122688,) assert decoded_example["sampling_rate"] == 48000 @require_sndfile def test_dataset_with_audio_feature(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (202311,) assert item["audio"]["sampling_rate"] == 44100 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (202311,) assert batch["audio"][0]["sampling_rate"] == 44100 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (202311,) assert column[0]["sampling_rate"] == 44100 @require_sndfile def test_dataset_with_audio_feature_tar_wav(tar_wav_path): audio_filename = "test_audio_44100.wav" data = {"audio": []} for file_path, file_obj in iter_archive(tar_wav_path): data["audio"].append({"path": file_path, "bytes": file_obj.read()}) break features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_filename assert item["audio"]["array"].shape == (202311,) assert item["audio"]["sampling_rate"] == 44100 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_filename assert batch["audio"][0]["array"].shape == (202311,) assert batch["audio"][0]["sampling_rate"] == 44100 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_filename assert column[0]["array"].shape == (202311,) assert column[0]["sampling_rate"] == 44100 @require_sndfile def test_dataset_with_audio_feature_tar_mp3(tar_mp3_path): audio_filename = "test_audio_44100.mp3" data = {"audio": []} for file_path, file_obj in iter_archive(tar_mp3_path): data["audio"].append({"path": file_path, "bytes": file_obj.read()}) break features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_filename assert item["audio"]["array"].shape == (110592,) assert item["audio"]["sampling_rate"] == 44100 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_filename assert batch["audio"][0]["array"].shape == (110592,) assert batch["audio"][0]["sampling_rate"] == 44100 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_filename assert column[0]["array"].shape == (110592,) assert column[0]["sampling_rate"] == 44100 @require_sndfile def test_dataset_with_audio_feature_with_none(): data = {"audio": [None]} features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"] is None batch = dset[:1] assert len(batch) == 1 assert batch.keys() == {"audio"} assert isinstance(batch["audio"], list) and all(item is None for item in batch["audio"]) column = dset["audio"] assert len(column) == 1 assert isinstance(column, list) and all(item is None for item in column) # nested tests data = {"audio": [[None]]} features = Features({"audio": Sequence(Audio())}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert all(i is None for i in item["audio"]) data = {"nested": [{"audio": None}]} features = Features({"nested": {"audio": Audio()}}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"nested"} assert item["nested"].keys() == {"audio"} assert item["nested"]["audio"] is None @require_sndfile def test_resampling_at_loading_dataset_with_audio_feature(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio(sampling_rate=16000)}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (73401,) assert item["audio"]["sampling_rate"] == 16000 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (73401,) assert batch["audio"][0]["sampling_rate"] == 16000 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (73401,) assert column[0]["sampling_rate"] == 16000 @require_sndfile def test_resampling_at_loading_dataset_with_audio_feature_mp3(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.mp3") data = {"audio": [audio_path]} features = Features({"audio": Audio(sampling_rate=16000)}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (40125,) assert item["audio"]["sampling_rate"] == 16000 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (40125,) assert batch["audio"][0]["sampling_rate"] == 16000 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (40125,) assert column[0]["sampling_rate"] == 16000 @require_sndfile def test_resampling_after_loading_dataset_with_audio_feature(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item["audio"]["sampling_rate"] == 44100 dset = dset.cast_column("audio", Audio(sampling_rate=16000)) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (73401,) assert item["audio"]["sampling_rate"] == 16000 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (73401,) assert batch["audio"][0]["sampling_rate"] == 16000 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (73401,) assert column[0]["sampling_rate"] == 16000 @require_sndfile def test_resampling_after_loading_dataset_with_audio_feature_mp3(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.mp3") data = {"audio": [audio_path]} features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item["audio"]["sampling_rate"] == 44100 dset = dset.cast_column("audio", Audio(sampling_rate=16000)) item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (40125,) assert item["audio"]["sampling_rate"] == 16000 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (40125,) assert batch["audio"][0]["sampling_rate"] == 16000 column = dset["audio"] assert len(column) == 1 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (40125,) assert column[0]["sampling_rate"] == 16000 @pytest.mark.parametrize( "build_data", [ lambda audio_path: {"audio": [audio_path]}, lambda audio_path: {"audio": [open(audio_path, "rb").read()]}, lambda audio_path: {"audio": [{"path": audio_path}]}, lambda audio_path: {"audio": [{"path": audio_path, "bytes": None}]}, lambda audio_path: {"audio": [{"path": audio_path, "bytes": open(audio_path, "rb").read()}]}, lambda audio_path: {"audio": [{"path": None, "bytes": open(audio_path, "rb").read()}]}, lambda audio_path: {"audio": [{"bytes": open(audio_path, "rb").read()}]}, ], ) def test_dataset_cast_to_audio_features(shared_datadir, build_data): audio_path = str(shared_datadir / "test_audio_44100.wav") data = build_data(audio_path) dset = Dataset.from_dict(data) item = dset.cast(Features({"audio": Audio()}))[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} item = dset.cast_column("audio", Audio())[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} def test_dataset_concatenate_audio_features(shared_datadir): # we use a different data structure between 1 and 2 to make sure they are compatible with each other audio_path = str(shared_datadir / "test_audio_44100.wav") data1 = {"audio": [audio_path]} dset1 = Dataset.from_dict(data1, features=Features({"audio": Audio()})) data2 = {"audio": [{"bytes": open(audio_path, "rb").read()}]} dset2 = Dataset.from_dict(data2, features=Features({"audio": Audio()})) concatenated_dataset = concatenate_datasets([dset1, dset2]) assert len(concatenated_dataset) == len(dset1) + len(dset2) assert concatenated_dataset[0]["audio"]["array"].shape == dset1[0]["audio"]["array"].shape assert concatenated_dataset[1]["audio"]["array"].shape == dset2[0]["audio"]["array"].shape def test_dataset_concatenate_nested_audio_features(shared_datadir): # we use a different data structure between 1 and 2 to make sure they are compatible with each other audio_path = str(shared_datadir / "test_audio_44100.wav") features = Features({"list_of_structs_of_audios": [{"audio": Audio()}]}) data1 = {"list_of_structs_of_audios": [[{"audio": audio_path}]]} dset1 = Dataset.from_dict(data1, features=features) data2 = {"list_of_structs_of_audios": [[{"audio": {"bytes": open(audio_path, "rb").read()}}]]} dset2 = Dataset.from_dict(data2, features=features) concatenated_dataset = concatenate_datasets([dset1, dset2]) assert len(concatenated_dataset) == len(dset1) + len(dset2) assert ( concatenated_dataset[0]["list_of_structs_of_audios"][0]["audio"]["array"].shape == dset1[0]["list_of_structs_of_audios"][0]["audio"]["array"].shape ) assert ( concatenated_dataset[1]["list_of_structs_of_audios"][0]["audio"]["array"].shape == dset2[0]["list_of_structs_of_audios"][0]["audio"]["array"].shape ) @require_sndfile def test_dataset_with_audio_feature_map_is_not_decoded(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path], "text": ["Hello"]} features = Features({"audio": Audio(), "text": Value("string")}) dset = Dataset.from_dict(data, features=features) expected_audio = features.encode_batch(data)["audio"][0] for item in dset.cast_column("audio", Audio(decode=False)): assert item.keys() == {"audio", "text"} assert item == {"audio": expected_audio, "text": "Hello"} def process_text(example): example["text"] = example["text"] + " World!" return example processed_dset = dset.map(process_text) for item in processed_dset.cast_column("audio", Audio(decode=False)): assert item.keys() == {"audio", "text"} assert item == {"audio": expected_audio, "text": "Hello World!"} @require_sndfile def test_dataset_with_audio_feature_map_is_decoded(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path], "text": ["Hello"]} features = Features({"audio": Audio(), "text": Value("string")}) dset = Dataset.from_dict(data, features=features) def process_audio_sampling_rate_by_example(example): example["double_sampling_rate"] = 2 * example["audio"]["sampling_rate"] return example decoded_dset = dset.map(process_audio_sampling_rate_by_example) for item in decoded_dset.cast_column("audio", Audio(decode=False)): assert item.keys() == {"audio", "text", "double_sampling_rate"} assert item["double_sampling_rate"] == 88200 def process_audio_sampling_rate_by_batch(batch): double_sampling_rates = [] for audio in batch["audio"]: double_sampling_rates.append(2 * audio["sampling_rate"]) batch["double_sampling_rate"] = double_sampling_rates return batch decoded_dset = dset.map(process_audio_sampling_rate_by_batch, batched=True) for item in decoded_dset.cast_column("audio", Audio(decode=False)): assert item.keys() == {"audio", "text", "double_sampling_rate"} assert item["double_sampling_rate"] == 88200 @require_sndfile def test_formatted_dataset_with_audio_feature(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path, audio_path]} features = Features({"audio": Audio()}) dset = Dataset.from_dict(data, features=features) with dset.formatted_as("numpy"): item = dset[0] assert item.keys() == {"audio"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (202311,) assert item["audio"]["sampling_rate"] == 44100 batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (202311,) assert batch["audio"][0]["sampling_rate"] == 44100 column = dset["audio"] assert len(column) == 2 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (202311,) assert column[0]["sampling_rate"] == 44100 with dset.formatted_as("pandas"): item = dset[0] assert item.shape == (1, 1) assert item.columns == ["audio"] assert item["audio"][0].keys() == {"path", "array", "sampling_rate"} assert item["audio"][0]["path"] == audio_path assert item["audio"][0]["array"].shape == (202311,) assert item["audio"][0]["sampling_rate"] == 44100 batch = dset[:1] assert batch.shape == (1, 1) assert batch.columns == ["audio"] assert batch["audio"][0].keys() == {"path", "array", "sampling_rate"} assert batch["audio"][0]["path"] == audio_path assert batch["audio"][0]["array"].shape == (202311,) assert batch["audio"][0]["sampling_rate"] == 44100 column = dset["audio"] assert len(column) == 2 assert column[0].keys() == {"path", "array", "sampling_rate"} assert column[0]["path"] == audio_path assert column[0]["array"].shape == (202311,) assert column[0]["sampling_rate"] == 44100 @pytest.fixture def jsonl_audio_dataset_path(shared_datadir, tmp_path_factory): import json audio_path = str(shared_datadir / "test_audio_44100.wav") data = [{"audio": audio_path, "text": "Hello world!"}] path = str(tmp_path_factory.mktemp("data") / "audio_dataset.jsonl") with open(path, "w") as f: for item in data: f.write(json.dumps(item) + "\n") return path @require_sndfile @pytest.mark.parametrize("streaming", [False, True]) def test_load_dataset_with_audio_feature(streaming, jsonl_audio_dataset_path, shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data_files = jsonl_audio_dataset_path features = Features({"audio": Audio(), "text": Value("string")}) dset = load_dataset("json", split="train", data_files=data_files, features=features, streaming=streaming) item = dset[0] if not streaming else next(iter(dset)) assert item.keys() == {"audio", "text"} assert item["audio"].keys() == {"path", "array", "sampling_rate"} assert item["audio"]["path"] == audio_path assert item["audio"]["array"].shape == (202311,) assert item["audio"]["sampling_rate"] == 44100 @require_sndfile @pytest.mark.integration def test_dataset_with_audio_feature_loaded_from_cache(): # load first time ds = load_dataset("patrickvonplaten/librispeech_asr_dummy", "clean") # load from cache ds = load_dataset("patrickvonplaten/librispeech_asr_dummy", "clean", split="validation") assert isinstance(ds, Dataset) def test_dataset_with_audio_feature_undecoded(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio(decode=False)}) dset = Dataset.from_dict(data, features=features) item = dset[0] assert item.keys() == {"audio"} assert item["audio"] == {"path": audio_path, "bytes": None} batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0] == {"path": audio_path, "bytes": None} column = dset["audio"] assert len(column) == 1 assert column[0] == {"path": audio_path, "bytes": None} def test_formatted_dataset_with_audio_feature_undecoded(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio(decode=False)}) dset = Dataset.from_dict(data, features=features) with dset.formatted_as("numpy"): item = dset[0] assert item.keys() == {"audio"} assert item["audio"] == {"path": audio_path, "bytes": None} batch = dset[:1] assert batch.keys() == {"audio"} assert len(batch["audio"]) == 1 assert batch["audio"][0] == {"path": audio_path, "bytes": None} column = dset["audio"] assert len(column) == 1 assert column[0] == {"path": audio_path, "bytes": None} with dset.formatted_as("pandas"): item = dset[0] assert item.shape == (1, 1) assert item.columns == ["audio"] assert item["audio"][0] == {"path": audio_path, "bytes": None} batch = dset[:1] assert batch.shape == (1, 1) assert batch.columns == ["audio"] assert batch["audio"][0] == {"path": audio_path, "bytes": None} column = dset["audio"] assert len(column) == 1 assert column[0] == {"path": audio_path, "bytes": None} def test_dataset_with_audio_feature_map_undecoded(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") data = {"audio": [audio_path]} features = Features({"audio": Audio(decode=False)}) dset = Dataset.from_dict(data, features=features) def assert_audio_example_undecoded(example): assert example["audio"] == {"path": audio_path, "bytes": None} dset.map(assert_audio_example_undecoded) def assert_audio_batch_undecoded(batch): for audio in batch["audio"]: assert audio == {"path": audio_path, "bytes": None} dset.map(assert_audio_batch_undecoded, batched=True) def test_audio_embed_storage(shared_datadir): audio_path = str(shared_datadir / "test_audio_44100.wav") example = {"bytes": None, "path": audio_path} storage = pa.array([example], type=pa.struct({"bytes": pa.binary(), "path": pa.string()})) embedded_storage = Audio().embed_storage(storage) embedded_example = embedded_storage.to_pylist()[0] assert embedded_example == {"bytes": open(audio_path, "rb").read(), "path": "test_audio_44100.wav"}