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| import copy |
| import json |
| import os |
|
|
| import tempfile |
|
|
| import lightning.pytorch as pl |
| import numpy as np |
| import pytest |
| import soundfile as sf |
| import torch |
| from omegaconf import DictConfig, ListConfig |
|
|
| from nemo.collections.asr.data import audio_to_label |
| from nemo.collections.asr.models import EncDecClassificationModel, EncDecFrameClassificationModel, configs |
| from nemo.utils.config_utils import assert_dataclass_signature_match |
|
|
|
|
| @pytest.fixture() |
| def speech_classification_model(): |
| preprocessor = {'cls': 'nemo.collections.asr.modules.AudioToMelSpectrogramPreprocessor', 'params': dict({})} |
| encoder = { |
| 'cls': 'nemo.collections.asr.modules.ConvASREncoder', |
| 'params': { |
| 'feat_in': 64, |
| 'activation': 'relu', |
| 'conv_mask': True, |
| 'jasper': [ |
| { |
| 'filters': 32, |
| 'repeat': 1, |
| 'kernel': [1], |
| 'stride': [1], |
| 'dilation': [1], |
| 'dropout': 0.0, |
| 'residual': False, |
| 'separable': True, |
| 'se': True, |
| 'se_context_size': -1, |
| } |
| ], |
| }, |
| } |
|
|
| decoder = { |
| 'cls': 'nemo.collections.asr.modules.ConvASRDecoderClassification', |
| 'params': { |
| 'feat_in': 32, |
| 'num_classes': 30, |
| }, |
| } |
|
|
| modelConfig = DictConfig( |
| { |
| 'preprocessor': DictConfig(preprocessor), |
| 'encoder': DictConfig(encoder), |
| 'decoder': DictConfig(decoder), |
| 'labels': ListConfig(["dummy_cls_{}".format(i + 1) for i in range(30)]), |
| } |
| ) |
| model = EncDecClassificationModel(cfg=modelConfig) |
| return model |
|
|
|
|
| @pytest.fixture() |
| def frame_classification_model(): |
| preprocessor = {'cls': 'nemo.collections.asr.modules.AudioToMelSpectrogramPreprocessor', 'params': dict({})} |
| encoder = { |
| 'cls': 'nemo.collections.asr.modules.ConvASREncoder', |
| 'params': { |
| 'feat_in': 64, |
| 'activation': 'relu', |
| 'conv_mask': True, |
| 'jasper': [ |
| { |
| 'filters': 32, |
| 'repeat': 1, |
| 'kernel': [1], |
| 'stride': [1], |
| 'dilation': [1], |
| 'dropout': 0.0, |
| 'residual': False, |
| 'separable': True, |
| 'se': True, |
| 'se_context_size': -1, |
| } |
| ], |
| }, |
| } |
|
|
| decoder = { |
| 'cls': 'nemo.collections.common.parts.MultiLayerPerceptron', |
| 'params': { |
| 'hidden_size': 32, |
| 'num_classes': 5, |
| }, |
| } |
|
|
| optim = { |
| 'name': 'sgd', |
| 'lr': 0.01, |
| 'weight_decay': 0.001, |
| 'momentum': 0.9, |
| } |
|
|
| modelConfig = DictConfig( |
| { |
| 'preprocessor': DictConfig(preprocessor), |
| 'encoder': DictConfig(encoder), |
| 'decoder': DictConfig(decoder), |
| 'optim': DictConfig(optim), |
| 'labels': ListConfig(["0", "1"]), |
| } |
| ) |
| model = EncDecFrameClassificationModel(cfg=modelConfig) |
| return model |
|
|
|
|
| class TestEncDecClassificationModel: |
| @pytest.mark.unit |
| def test_constructor(self, speech_classification_model): |
| asr_model = speech_classification_model.train() |
|
|
| conv_cnt = (64 * 32 * 1 + 32) + (64 * 1 * 1 + 32) |
| bn_cnt = (4 * 32) * 2 |
| dec_cnt = 32 * 30 + 30 |
|
|
| param_count = conv_cnt + bn_cnt + dec_cnt |
| assert asr_model.num_weights == param_count |
|
|
| |
| confdict = asr_model.to_config_dict() |
| instance2 = EncDecClassificationModel.from_config_dict(confdict) |
|
|
| assert isinstance(instance2, EncDecClassificationModel) |
|
|
| @pytest.mark.unit |
| def test_forward(self, speech_classification_model): |
| asr_model = speech_classification_model.eval() |
|
|
| asr_model.preprocessor.featurizer.dither = 0.0 |
| asr_model.preprocessor.featurizer.pad_to = 0 |
|
|
| input_signal = torch.randn(size=(4, 512)) |
| length = torch.randint(low=321, high=500, size=[4]) |
|
|
| with torch.no_grad(): |
| |
| logprobs_instance = [] |
| for i in range(input_signal.size(0)): |
| logprobs_ins = asr_model.forward( |
| input_signal=input_signal[i : i + 1], input_signal_length=length[i : i + 1] |
| ) |
| logprobs_instance.append(logprobs_ins) |
| logprobs_instance = torch.cat(logprobs_instance, 0) |
|
|
| |
| logprobs_batch = asr_model.forward(input_signal=input_signal, input_signal_length=length) |
|
|
| assert logprobs_instance.shape == logprobs_batch.shape |
| diff = torch.mean(torch.abs(logprobs_instance - logprobs_batch)) |
| assert diff <= 1e-6 |
| diff = torch.max(torch.abs(logprobs_instance - logprobs_batch)) |
| assert diff <= 1e-6 |
|
|
| @pytest.mark.unit |
| def test_vocab_change(self, speech_classification_model): |
| asr_model = speech_classification_model.train() |
|
|
| old_labels = copy.deepcopy(asr_model._cfg.labels) |
| nw1 = asr_model.num_weights |
| asr_model.change_labels(new_labels=old_labels) |
| |
| assert nw1 == asr_model.num_weights |
| new_labels = copy.deepcopy(old_labels) |
| new_labels.append('dummy_cls_31') |
| new_labels.append('dummy_cls_32') |
| new_labels.append('dummy_cls_33') |
| asr_model.change_labels(new_labels=new_labels) |
| |
| assert asr_model.num_weights == nw1 + 3 * (asr_model.decoder._feat_in + 1) |
|
|
| @pytest.mark.unit |
| def test_transcription(self, speech_classification_model, test_data_dir): |
| |
| audio_filenames = ['an22-flrp-b.wav', 'an90-fbbh-b.wav'] |
| audio_paths = [os.path.join(test_data_dir, "asr", "train", "an4", "wav", fp) for fp in audio_filenames] |
|
|
| model = speech_classification_model.eval() |
|
|
| |
| results = model.transcribe(audio_paths, batch_size=2) |
| assert len(results) == 2 |
| assert results[0].shape == torch.Size([1]) |
|
|
| |
| model._accuracy.top_k = [5] |
| results = model.transcribe(audio_paths, batch_size=2) |
| assert len(results) == 2 |
| assert results[0].shape == torch.Size([5]) |
|
|
| |
| model._accuracy.top_k = [1, 5] |
| results = model.transcribe(audio_paths, batch_size=2) |
| assert len(results) == 2 |
| assert results[0].shape == torch.Size([2, 1]) |
| assert results[1].shape == torch.Size([2, 5]) |
| assert model._accuracy.top_k == [1, 5] |
|
|
| |
| model._accuracy.top_k = [1] |
| results = model.transcribe(audio_paths, batch_size=2, logprobs=True) |
| assert len(results) == 2 |
| assert results[0].shape == torch.Size([len(model.cfg.labels)]) |
|
|
| |
| model._accuracy.top_k = [5] |
| results = model.transcribe(audio_paths, batch_size=2, logprobs=True) |
| assert len(results) == 2 |
| assert results[0].shape == torch.Size([len(model.cfg.labels)]) |
|
|
| @pytest.mark.unit |
| def test_EncDecClassificationDatasetConfig_for_AudioToSpeechLabelDataset(self): |
| |
| IGNORE_ARGS = [ |
| 'is_tarred', |
| 'num_workers', |
| 'batch_size', |
| 'tarred_audio_filepaths', |
| 'shuffle', |
| 'pin_memory', |
| 'drop_last', |
| 'tarred_shard_strategy', |
| 'shuffle_n', |
| |
| 'featurizer', |
| |
| 'vad_stream', |
| 'int_values', |
| 'sample_rate', |
| 'normalize_audio', |
| 'augmentor', |
| 'bucketing_batch_size', |
| 'bucketing_strategy', |
| 'bucketing_weights', |
| ] |
|
|
| REMAP_ARGS = {'trim_silence': 'trim'} |
|
|
| result = assert_dataclass_signature_match( |
| audio_to_label.AudioToSpeechLabelDataset, |
| configs.EncDecClassificationDatasetConfig, |
| ignore_args=IGNORE_ARGS, |
| remap_args=REMAP_ARGS, |
| ) |
| signatures_match, cls_subset, dataclass_subset = result |
|
|
| assert signatures_match |
| assert cls_subset is None |
| assert dataclass_subset is None |
|
|
|
|
| class TestEncDecFrameClassificationModel(TestEncDecClassificationModel): |
| @pytest.mark.parametrize(["logits_len", "labels_len"], [(20, 10), (21, 10), (19, 10), (20, 9), (20, 11)]) |
| @pytest.mark.unit |
| def test_reshape_labels(self, frame_classification_model, logits_len, labels_len): |
| model = frame_classification_model.eval() |
|
|
| logits = torch.ones(4, logits_len, 2) |
| labels = torch.ones(4, labels_len) |
| logits_len = torch.tensor([6, 7, 8, 9]) |
| labels_len = torch.tensor([5, 6, 7, 8]) |
| labels_new, labels_len_new = model.reshape_labels( |
| logits=logits, labels=labels, logits_len=logits_len, labels_len=labels_len |
| ) |
| assert labels_new.size(1) == logits.size(1) |
| assert torch.equal(labels_len_new, torch.tensor([6, 7, 8, 9])) |
|
|
| @pytest.mark.unit |
| def test_EncDecClassificationDatasetConfig_for_AudioToMultiSpeechLabelDataset(self): |
| |
| IGNORE_ARGS = [ |
| 'is_tarred', |
| 'num_workers', |
| 'batch_size', |
| 'tarred_audio_filepaths', |
| 'shuffle', |
| 'pin_memory', |
| 'drop_last', |
| 'tarred_shard_strategy', |
| 'shuffle_n', |
| |
| 'featurizer', |
| |
| 'vad_stream', |
| 'int_values', |
| 'sample_rate', |
| 'normalize_audio', |
| 'augmentor', |
| 'bucketing_batch_size', |
| 'bucketing_strategy', |
| 'bucketing_weights', |
| 'delimiter', |
| 'normalize_audio_db', |
| 'normalize_audio_db_target', |
| 'window_length_in_sec', |
| 'shift_length_in_sec', |
| ] |
|
|
| REMAP_ARGS = {'trim_silence': 'trim'} |
|
|
| result = assert_dataclass_signature_match( |
| audio_to_label.AudioToMultiLabelDataset, |
| configs.EncDecClassificationDatasetConfig, |
| ignore_args=IGNORE_ARGS, |
| remap_args=REMAP_ARGS, |
| ) |
| signatures_match, cls_subset, dataclass_subset = result |
|
|
| assert signatures_match |
| assert cls_subset is None |
| assert dataclass_subset is None |
|
|
| @pytest.mark.unit |
| def test_frame_classification_model(self, frame_classification_model: EncDecFrameClassificationModel): |
| with tempfile.TemporaryDirectory() as temp_dir: |
| |
| audio = np.random.randn(16000 * 1) |
| |
| audio_path = os.path.join(temp_dir, "audio.wav") |
| sf.write(audio_path, audio, 16000) |
|
|
| dummy_labels = "0 0 0 0 1 1 1 1 0 0 0 0" |
|
|
| dummy_sample = { |
| "audio_filepath": audio_path, |
| "offset": 0.0, |
| "duration": 1.0, |
| "label": dummy_labels, |
| } |
|
|
| |
| manifest_path = os.path.join(temp_dir, "dummy_manifest.json") |
| with open(manifest_path, "w") as f: |
| for i in range(4): |
| f.write(json.dumps(dummy_sample) + "\n") |
|
|
| dataloader_cfg = { |
| "batch_size": 2, |
| "manifest_filepath": manifest_path, |
| "sample_rate": 16000, |
| "num_workers": 0, |
| "shuffle": False, |
| "labels": ["0", "1"], |
| } |
|
|
| trainer_cfg = { |
| "max_epochs": 1, |
| "devices": 1, |
| "accelerator": "auto", |
| } |
|
|
| optim = { |
| 'name': 'sgd', |
| 'lr': 0.01, |
| 'weight_decay': 0.001, |
| 'momentum': 0.9, |
| } |
|
|
| trainer = pl.Trainer(**trainer_cfg) |
| frame_classification_model.set_trainer(trainer) |
| frame_classification_model.setup_optimization(DictConfig(optim)) |
| frame_classification_model.setup_training_data(dataloader_cfg) |
| frame_classification_model.setup_validation_data(dataloader_cfg) |
|
|
| trainer.fit(frame_classification_model) |
|
|