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| """ |
| This file implemented unit tests for loading all pretrained AlignerModel NGC checkpoints and generating Mel-spectrograms. |
| The test duration breakdowns are shown below. In general, each test for a single model is ~24 seconds on an NVIDIA RTX A6000. |
| """ |
| import pytest |
| import torch |
|
|
| from nemo.collections.tts.models import AlignerModel |
|
|
| available_models = [model.pretrained_model_name for model in AlignerModel.list_available_models()] |
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|
| @pytest.fixture(params=available_models, ids=available_models) |
| def pretrained_model(request, get_language_id_from_pretrained_model_name): |
| model_name = request.param |
| language_id = get_language_id_from_pretrained_model_name(model_name) |
| model = AlignerModel.from_pretrained(model_name=model_name) |
| return model, language_id |
|
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|
|
| @pytest.mark.nightly |
| def test_inference(pretrained_model, audio_text_pair_example_english): |
| model, _ = pretrained_model |
| audio, audio_len, text_raw = audio_text_pair_example_english |
|
|
| |
| spec, spec_len = model.preprocessor(input_signal=audio, length=audio_len) |
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| text_normalized = model.normalizer.normalize(text_raw, punct_post_process=True) |
| text_tokens = model.tokenizer(text_normalized) |
| text = torch.tensor(text_tokens, device=spec.device).unsqueeze(0).long() |
| text_len = torch.tensor(len(text_tokens), device=spec.device).unsqueeze(0).long() |
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| |
| _, _ = model(spec=spec, spec_len=spec_len, text=text, text_len=text_len) |
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|