added tests folder

This commit is contained in:
Schmieder, Jacob
2024-09-30 16:03:27 +00:00
parent 5f6f681edf
commit 6326d0f156
6 changed files with 211 additions and 3 deletions
+96
View File
@@ -0,0 +1,96 @@
import pytest
from scraibe.audio import AudioProcessor
import torch
DEVICE = torch.device("cuda" if torch.cuda.is_available() else "cpu")
TEST_WAVEFORM = torch.sin(torch.randn(160000)).to(DEVICE)
TEST_SR = 16000
SAMPLE_RATE = 16000
NORMALIZATION_FACTOR = 32768
@pytest.fixture
def probe_audio_processor():
"""Fixture for creating an instance of the AudioProcessor class with test waveform and sample rate.
This fixture is used to create an instance of the AudioProcessor class with a predfined test waveform and sample rate (TEST_SR). It returns the instantiated AudioProcessor , which can bes used as a
dependency in other test functions.
Returns:
AudioProcessor (obj): An instance of the AudioProcessor class with the test waveform and sample rate.
"""
return AudioProcessor(TEST_WAVEFORM, TEST_SR)
def test_AudioProcessor_init(probe_audio_processor):
"""
Test the initialization of the AudioProcessor class.
This test verifies that the AUdioProcessor class is correctly initialized with the provided waveform and sample rate. It checks whether the instantiated AhdioProcessor object has the correct attributes
and whether the waveform and sample rate match the expected values.
Args:
probe_audio_processor (obj): An instance of the AudioProcessor class to be tested.
Returns:
None
"""
assert isinstance(probe_audio_processor, AudioProcessor)
assert probe_audio_processor.waveform.device == TEST_WAVEFORM.device
assert torch.equal(probe_audio_processor.waveform, TEST_WAVEFORM)
assert probe_audio_processor.sr == TEST_SR
def test_cut(probe_audio_processor):
"""Test the cut function of the AudioProcessor class.
This test verifies that the cut function correctly extracts a segment of audio data from
the waveform, given start and end indices. It checks whether the size of the extracted segment matches
the expected size based on the provided start and end indices and the sample rate.
Returns:
None
"""
start = 4
end = 7
trimmed_waveform = probe_audio_processor.cut(start, end)
expected_size = int((end - start) * TEST_SR)
real_size = trimmed_waveform.size(0)
assert real_size == expected_size
# assert AudioProcessor(TEST_WAVEFORM, TEST_SR).cut(start, end).size() == int((end - start) * TEST_SR)
def test_audio_processor_invalid_sr():
"""Test the behavior of AudioProcessor when an invalid smaple rate is provided.
This test verifies that the AudioProcessor constructor raises a ValueError when an invalid sample rate is provided. It uses the pytest.raises context manager to check if the ValueError is raised when initializing an
AudioProcessor object with an invalid sample rate.
Returns:
None
"""
with pytest.raises(ValueError):
AudioProcessor(TEST_WAVEFORM, [44100, 48000])
def test_audio_processor_SAMPLE_RATE():
"""Test the default sample rate of the AudioProcessor class.
This test verifies that the default sample rate of the AudioProcessor class matches the expected value defined by the constant SAMPLE_RATE. It instantiates an AudioProcessor object with a test waveform
and checks whether the sample rate attribute (sr) of the AudioProcessor object equals the predefined constant SAMPLE_RATE.
Returns:
None
"""
probe_audio_processor = AudioProcessor(TEST_WAVEFORM)
assert probe_audio_processor.sr == SAMPLE_RATE
@@ -19,19 +19,19 @@ def test_scraibe_init(create_scraibe_instance):
def test_scraibe_autotranscribe(create_scraibe_instance):
model = create_scraibe_instance
transcript = model.autotranscribe('./audio_test_2.mp4')
transcript = model.autotranscribe('tests/audio_test_2.mp4')
assert isinstance(transcript, Transcript)
def test_scraibe_diarization(create_scraibe_instance):
model = create_scraibe_instance
diarisation_result = model.diarization('./audio_test_2.mp4')
diarisation_result = model.diarization('tests/audio_test_2.mp4')
assert isinstance(diarisation_result, dict)
def test_scraibe_transcribe(create_scraibe_instance):
model = create_scraibe_instance
transcription_result = model.transcribe('./audio_test_2.mp4')
transcription_result = model.transcribe('tests/audio_test_2.mp4')
assert isinstance(transcription_result, str)
+32
View File
@@ -0,0 +1,32 @@
import pytest
from scraibe import Diariser
@pytest.fixture
def diariser_instance():
"""Fixture for creating an instance of the Diariser class with mocked token.
This fixture is used to create an instance of the the Diariser class with a mocked token returned by the _get_token method. It patches the _get_token method of the Diariser class
using unit.test.mock.patch.object, ensuring that it returns a predetrmined value ('personal Hugging-Face token'). The mocked Diariser object is retunrned and can be used as a dependency in otehr tests.
Returns:
Diariser(Obj): An instance of the Diariser class with a mocked token.
"""
# with mock.patch.object(Diariser, '_get_token', return_value = 'HF_TOKEN' ):
return Diariser('pyannote')
def test_Diariser_init(diariser_instance):
"""Test the initialization of the Diariser class.
This test verifies that the Diariser class is correctly initialized with the specified model.
It checks whether the 'model' attribute of the instantiated Diariser object equals 'pyannote'.
Args:
diariser_instance (obj): instance of the Diariser class
Returns:
None
"""
assert diariser_instance.model == 'pyannote'
+80
View File
@@ -0,0 +1,80 @@
import pytest
from scraibe import (Transcriber, WhisperTranscriber,
FasterWhisperTranscriber, load_transcriber)
import torch
DEVICE = torch.device("cuda" if torch.cuda.is_available() else "cpu")
TEST_WAVEFORM = "Hello World"
"""
@pytest.mark.parametrize("audio_file, expected_transcription",[("path_to_test_audiofile", "test_transcription")] )
@patch("scraibe.Transcriber.load_model")
def test_transcriber(mock_load_model, audio_file, expected_transcription):
Args:
mock_load_model (_type_): _description_
audio_file (_type_): _description_
expected_transcription (_type_): _description_
mock_model = mock_load_model.return_value
mock_model.transcribe.return_value ={"text": expected_transcription}
transcriber = Transcriber.load_model(model="medium")
transcription_result = transcriber.transcribe(audio=audio_file)
assert transcription_result == expected_transcription """
@pytest.fixture
def whisper_instance():
return load_transcriber('tiny', whisper_type='whisper')
@pytest.fixture
def faster_whisper_instance():
return load_transcriber('tiny', whisper_type='faster-whisper')
def test_whisper_base_initialization(whisper_instance):
assert isinstance(whisper_instance, Transcriber)
def test_faster_whisper_base_initialization(faster_whisper_instance):
assert isinstance(faster_whisper_instance, Transcriber)
def test_whisper_transcriber_initialization(whisper_instance):
assert isinstance(whisper_instance, WhisperTranscriber)
def test_faster_whisper_transcriber_initialization(faster_whisper_instance):
assert isinstance(faster_whisper_instance, FasterWhisperTranscriber)
def test_wrong_transcriber_initialization():
with pytest.raises(ValueError):
load_transcriber('tiny', whisper_type='wrong_whisper')
def test_get_whisper_kwargs():
kwargs = {"arg1": 1, "arg3": 3}
valid_kwargs = Transcriber._get_whisper_kwargs(**kwargs)
assert not valid_kwargs == {"arg1": 1, "arg3": 3}
def test_whisper_transcribe(whisper_instance):
model = whisper_instance
# mocker.patch.object(transcriber_instance.model, 'transcribe', return_value={'Hello, World !'} )
transcript = model.transcribe('tests/audio_test_2.mp4')
assert isinstance(transcript, str)
def test_faster_whisper_transcribe(faster_whisper_instance):
model = faster_whisper_instance
# mocker.patch.object(transcriber_instance.model, 'transcribe', return_value={'Hello, World !'} )
transcript = model.transcribe('tests/audio_test_2.mp4')
assert isinstance(transcript, str)