# Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import os import pytest import torch from lhotse import CutSet, SupervisionSegment from lhotse.testing.dummies import dummy_cut, dummy_recording from transformers import GenerationConfig from nemo.collections.common.data.lhotse import NeMoMultimodalConversation from nemo.collections.common.data.lhotse.text_adapters import AudioTurn, TextTurn from nemo.collections.common.data.utils import move_data_to_device from nemo.collections.common.prompts import PromptFormatter from nemo.collections.speechlm2.data import SALMDataset from nemo.collections.speechlm2.models.salm_asr_decoder import SALMWithAsrDecoder if torch.cuda.is_available(): torch.set_default_device('cuda') def resolve_pretrained_models(): if os.path.exists("/home/TestData/speechlm/pretrained_models"): # CI pre-cached paths: return { "pretrained_llm": "/home/TestData/speechlm/pretrained_models/TinyLlama--TinyLlama_v1.1", "pretrained_asr": "/home/TestData/speechlm/pretrained_models/parakeet-tdt-0.6b-v2.nemo", } else: # HF URLs: return { "pretrained_asr": "nvidia/parakeet-tdt-0.6b-v2", "pretrained_llm": "TinyLlama/TinyLlama_v1.1", } AUDIO_LOCATOR_TAG = "<|audioplaceholder|>" PROMPT = "llama2" @pytest.fixture(scope="session") def model(): cfg = { **resolve_pretrained_models(), "pretrained_weights": True, "prompt_format": PROMPT, "audio_locator_tag": AUDIO_LOCATOR_TAG, "perception": { "target": "nemo.collections.speechlm2.modules.perception.AudioTranscriptionPerceptionModule", "output_dim": 2048, "asr": { "encoder": { "_target_": "nemo.collections.asr.modules.ConformerEncoder", "att_context_size": [-1, -1], "causal_downsampling": False, "conv_context_size": None, "conv_kernel_size": 9, "conv_norm_type": "batch_norm", "d_model": 1024, "dropout": 0.1, "dropout_att": 0.1, "dropout_emb": 0.0, "dropout_pre_encoder": 0.1, "feat_in": 128, "feat_out": -1, "ff_expansion_factor": 4, "n_heads": 8, "n_layers": 2, "pos_emb_max_len": 5000, "self_attention_model": "rel_pos", "subsampling": "dw_striding", "subsampling_conv_channels": 256, "subsampling_factor": 8, }, "preprocessor": { "_target_": "nemo.collections.asr.modules.AudioToMelSpectrogramPreprocessor", "dither": 1e-05, "features": 128, "frame_splicing": 1, "log": True, "n_fft": 512, "normalize": "per_feature", "pad_to": 0, "pad_value": 0.0, "sample_rate": 16000, "window": "hann", "window_size": 0.025, "window_stride": 0.01, }, }, "modality_adapter": { "_target_": "nemo.collections.speechlm2.modules.perception.IdentityConnector", "d_model": 1024, }, }, "optimizer": {"_target_": "torch.optim.AdamW"}, } model = SALMWithAsrDecoder(cfg) if torch.cuda.is_available(): model.to("cuda") return model @pytest.fixture(scope="session") def dataset(model): return SALMDataset(model.tokenizer) @pytest.fixture(scope="session") def prompt_formatter(model): return PromptFormatter.resolve(PROMPT)(model.tokenizer) @pytest.fixture(scope="session") def training_cutset_batch(): cut = dummy_cut(0, recording=dummy_recording(0, with_data=True)) cut.supervisions = [ SupervisionSegment( id=cut.id, recording_id=cut.recording_id, start=0, duration=1.0, text='Some text transcription.' ) ] return CutSet( [ NeMoMultimodalConversation( id="example-0", turns=[ TextTurn(role="user", value="Repeat after me:"), AudioTurn(role="user", cut=cut, audio_locator_tag=AUDIO_LOCATOR_TAG), TextTurn(role="assistant", value=cut.supervisions[0].text), ], token_equivalent_duration=0.08, ) ] ) def test_salm_dataset(dataset, prompt_formatter, training_cutset_batch): # This first step pre-tokenizes the examples, usually handled within `get_lhotse_dataloder_from_config`. training_cutset_batch = training_cutset_batch.map(lambda c: c.apply_prompt_format(prompt_formatter), apply_fn=None) # fmt: off tokenized = training_cutset_batch[0].input_ids assert ( prompt_formatter.tokenizer.tokenizer.decode(tokenized) == f" [INST] Repeat after me: {AUDIO_LOCATOR_TAG} [/INST] Some text transcription. " ) # fmt: on batch = dataset[training_cutset_batch] for key in ("audios", "audio_lens", "input_ids", "loss_mask"): assert key in batch assert torch.is_tensor(batch[key]) def test_salm_training_step(model, dataset, prompt_formatter, training_cutset_batch): training_cutset_batch = training_cutset_batch.map(lambda c: c.apply_prompt_format(prompt_formatter), apply_fn=None) batch = dataset[training_cutset_batch] batch = move_data_to_device(batch, device=model.device) results = model.training_step(batch, batch_idx=0) assert torch.is_tensor(results["loss"]) assert not torch.isnan(results["loss"]) assert results["loss"] > 0 def test_salm_validation_step(model, dataset, prompt_formatter, training_cutset_batch): model.on_validation_epoch_start() training_cutset_batch = training_cutset_batch.map(lambda c: c.apply_prompt_format(prompt_formatter), apply_fn=None) batch = dataset[training_cutset_batch] batch = move_data_to_device(batch, device=model.device) results = model.validation_step({"dummy_val_set": batch}, batch_idx=0) assert results is None def test_salm_generation(model): answer = model.generate( prompts=[ [ {"role": "user", "slots": {"message": f"Repeat after me: {AUDIO_LOCATOR_TAG}"}}, ] ], audios=torch.randn(1, 16000), audio_lens=torch.tensor([16000]), max_new_tokens=4, ) assert answer.shape == (1, 4) assert answer.dtype == torch.long assert (answer >= 0).all() assert (answer < model.text_vocab_size).all() def test_salm_generation_audios_via_prompt(model, tmp_path): audio_path = tmp_path / "audio.wav" dummy_cut(0, with_data=True).save_audio(audio_path) answer = model.generate( prompts=[ [{"role": "user", "content": f"Repeat after me: {AUDIO_LOCATOR_TAG}", "audio": [audio_path]}], [ { "role": "user", "content": f"Repeat after me: {AUDIO_LOCATOR_TAG} and {AUDIO_LOCATOR_TAG}", "audio": [audio_path, audio_path], } ], ], generation_config=GenerationConfig(max_new_tokens=4), ) assert answer.shape == (2, 4) assert answer.dtype == torch.long assert (answer >= 0).all() assert (answer < model.text_vocab_size).all() def test_salm_generation_prompts_as_tensor(model): answer = model.generate( prompts=torch.tensor([[1, 2, 3, 4, 5, 6, 7, model.audio_locator_tag_id]]), audios=torch.randn(1, 16000), audio_lens=torch.tensor([16000]), max_new_tokens=4, ) assert answer.shape == (1, 4) assert answer.dtype == torch.long assert (answer >= 0).all() assert (answer < model.text_vocab_size).all()