| SpeechLM2 |
| ================================ |
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| .. note:: |
| The SpeechLM2 collection is still in active development and the code is likely to keep changing. |
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| SpeechLM2 refers to a collection that augments pre-trained Large Language Models (LLMs) with speech understanding and generation capabilities. |
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| This collection is designed to be compact, efficient, and to support easy swapping of different LLMs backed by HuggingFace AutoModel. |
| It has a first-class support for using dynamic batch sizes via Lhotse and various model parallelism techniques (e.g., FSDP2, Tensor Parallel, Sequence Parallel) via PyTorch DTensor API. |
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| We currently support six main model types: |
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| * **SALM** (Speech-Augmented Language Model) - a simple but effective approach to augmenting pre-trained LLMs with speech understanding capabilities. |
| * **DuplexS2SModel** - a full-duplex speech-to-speech model with an ASR encoder, directly predicting discrete audio codes. |
| * **DuplexS2SSpeechDecoderModel** - a variant of DuplexS2SModel with a separate transformer decoder for speech generation. |
| * **DuplexEARTTS** - a ready-to-use duplex text-to-speech model that supports user interruption via a special text interruption token. |
| * **DuplexSTTModel** - a decoder model to generate agent text in duplex, in response to both user speech and text inputs. |
| * **NemotronVoiceChat** - an *inference-only* pipeline that seamlessly merges `DuplexSTTModel` and `DuplexEARTTS` to deliver an end-to-end, full-duplex conversational agent with high-fidelity speech generation. |
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| Using Pretrained Models |
| ----------------------- |
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| After :ref:`installing NeMo<installation>`, you can load and use a pretrained speechlm2 model as follows: |
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| .. code-block:: python |
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| import nemo.collections.speechlm2 as slm |
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| # Load a pretrained SALM model |
| model = slm.models.SALM.from_pretrained("model_name_or_path") |
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| # Set model to evaluation mode |
| model = model.eval() |
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| Inference with Pretrained Models |
| -------------------------------- |
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| SALM |
| **** |
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| You can run inference using the loaded pretrained SALM model: |
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| .. code-block:: python |
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| import torch |
| import soundfile as sf |
| from nemo.collections.audio.parts.utils.transforms import resample |
| import nemo.collections.speechlm2 as slm |
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| model = slm.models.SALM.from_pretrained("path/to/pretrained_checkpoint").eval() |
| |
| # Load audio file |
| audio_path = "path/to/audio.wav" |
| audio_signal, sample_rate = sf.read(audio_path) |
| audio_signal = torch.tensor(audio_signal).unsqueeze(0) |
| |
| # Resample if needed |
| if sample_rate != 16000: # Most models expect 16kHz audio |
| audio_signal = resample(audio_signal, sample_rate, 16000) |
| sample_rate = 16000 |
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| # Prepare audio for model |
| audio_signal = audio_signal.to(model.device) |
| audio_len = torch.tensor([audio_signal.shape[1]], device=model.device) |
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| # Create a prompt for SALM model inference |
| # The audio_locator_tag is a special token that will be replaced with audio embeddings |
| prompt = [{"role": "user", "content": f"{model.audio_locator_tag}"}] |
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| # Generate response |
| with torch.no_grad(): |
| output = model.generate( |
| prompts=[prompt], |
| audios=audio_signal, |
| audio_lens=audio_len, |
| generation_config=None # You can customize generation parameters here |
| ) |
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| # Process the output tokens |
| response = model.tokenizer.ids_to_text(output[0]) |
| print(f"Model response: {response}") |
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| DuplexS2SModel |
| ************** |
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| You can run inference using the loaded pretrained DuplexS2SModel: |
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| .. code-block:: python |
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| import torch |
| import soundfile as sf |
| from nemo.collections.audio.parts.utils.transforms import resample |
| import nemo.collections.speechlm2 as slm |
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| model = slm.models.DuplexS2SModel.from_pretrained("path/to/pretrained_checkpoint").eval() |
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| # Load audio file |
| audio_path = "path/to/audio.wav" |
| audio_signal, sample_rate = sf.read(audio_path) |
| audio_signal = torch.tensor(audio_signal).unsqueeze(0) |
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| # Resample if needed |
| if sample_rate != 16000: # Most models expect 16kHz audio |
| audio_signal = resample(audio_signal, sample_rate, 16000) |
| sample_rate = 16000 |
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| # Prepare audio for model |
| audio_signal = audio_signal.to(model.device) |
| audio_len = torch.tensor([audio_signal.shape[1]], device=model.device) |
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| # Run offline inference |
| results = model.offline_inference( |
| input_signal=audio_signal, |
| input_signal_lens=audio_len |
| ) |
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| # Decode text and audio tokens |
| transcription = results["text"][0] |
| audio = results["audio"][0] |
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| DuplexSTTModel |
| ************** |
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| You can run inference using the loaded pretrained DuplexSTTModel: |
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| .. code-block:: python |
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| import torch |
| import soundfile as sf |
| from nemo.collections.audio.parts.utils.transforms import resample |
| import nemo.collections.speechlm2 as slm |
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| model = slm.models.DuplexSTTModel.from_pretrained("path/to/pretrained_checkpoint").eval() |
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| # Load audio file |
| audio_path = "path/to/audio.wav" |
| audio_signal, sample_rate = sf.read(audio_path) |
| audio_signal = torch.tensor(audio_signal).unsqueeze(0) |
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| # Resample if needed |
| if sample_rate != 16000: |
| audio_signal = resample(audio_signal, sample_rate, 16000) |
| sample_rate = 16000 |
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| # Prepare audio for model |
| audio_signal = audio_signal.to(model.device) |
| audio_len = torch.tensor([audio_signal.shape[1]], device=model.device) |
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| # Run offline inference - generates text output only |
| results = model.offline_inference( |
| input_signal=audio_signal, |
| input_signal_lens=audio_len |
| ) |
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| # Decode text tokens |
| transcription = results["text"][0] |
| print(f"Transcription: {transcription}") |
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| DuplexEARTTS |
| ************ |
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| Because `DuplexEARTTS` relies on precise token padding and EOS placement to handle potential user interruptions, inference and evaluation are handled via the `duplex_eartts_eval.py` script following the MagpieTTS dataset format recipe. |
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| The evaluation script processes a `JSONL` file where each line is a dictionary containing the text, the reference audio for the speaker, and the desired output audio filename. |
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| **JSONL Format Examples:** |
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| Single-Turn format (evaluates a continuous string): |
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| .. code-block:: json |
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| {"text": "Like really quickly and then they run off.", "context_audio_filepath": "speaker_1.wav", "audio_filepath": "audio_1.wav"} |
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| Multi-Turn format (evaluates sequential conversational turns, padded incrementally): |
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| .. code-block:: json |
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| {"text": ["Yes.", "Sure.", "Right.", "I get what you’re saying."], "context_audio_filepath": "speaker_2.wav", "audio_filepath": "audio_2.wav"} |
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| **Running the Evaluation/Inference Script:** |
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| .. code-block:: bash |
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| python examples/speechlm2/duplex_eartts_eval.py \ |
| --config-path=conf/ \ |
| --config-name=duplex_eartts.yaml \ |
| ++checkpoint_path=/path/to/duplex_eartts/model.ckpt \ |
| ++datasets_json_path=/path/to/evalset_config.jsonl \ |
| ++out_dir=/path/to/output/audio_samples/ \ |
| ++user_custom_speaker_reference=/path/to/optional_override_speaker.wav |
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| The script will decode the text, apply the target speaker conditioning, generate the resulting audio waveforms into `out_dir`, and compute ASR intelligibility metrics (CER/WER) on the generated speech. |
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| NemotronVoiceChat |
| ***************** |
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| You can evaluate and run full-duplex inference using the `NemotronVoiceChat` pipeline. This model natively chains the `DuplexSTTModel` with the `DuplexEARTTS` speech decoder for an end-to-end response: |
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| .. code-block:: python |
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| import torch |
| import soundfile as sf |
| from nemo.collections.audio.parts.utils.transforms import resample |
| import nemo.collections.speechlm2 as slm |
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| model = slm.models.NemotronVoiceChat.from_pretrained("path/to/pretrained_checkpoint").eval() |
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| # Load user audio prompt |
| audio_path = "path/to/user_audio.wav" |
| audio_signal, sample_rate = sf.read(audio_path) |
| audio_signal = torch.tensor(audio_signal).unsqueeze(0) |
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| # Resample to the source_sample_rate (usually 16kHz for STT perception) |
| if sample_rate != 16000: |
| audio_signal = resample(audio_signal, sample_rate, 16000) |
| sample_rate = 16000 |
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| # Prepare audio for model |
| audio_signal = audio_signal.to(model.device) |
| audio_len = torch.tensor([audio_signal.shape[1]], device=model.device) |
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| # (Optional) Load an explicit speaker reference audio to condition the agent's voice |
| # speaker_audio, _ = sf.read("path/to/speaker_reference.wav") |
| # speaker_audio = torch.tensor(speaker_audio).unsqueeze(0).to(model.device) |
| # speaker_len = torch.tensor([speaker_audio.shape[1]], device=model.device) |
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| # Note: If an explicit audio reference is not passed into `offline_inference`, |
| # the model relies on the internal config parameters: |
| # 1. model.cfg.inference_speaker_name (Highest priority preset, e.g., 'Megan') |
| # 2. model.cfg.inference_speaker_reference (Fallback audio file path) |
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| # Run full offline inference |
| results = model.offline_inference( |
| input_signal=audio_signal, |
| input_signal_lens=audio_len, |
| # speaker_audio=speaker_audio, # Pass speaker reference if available |
| # speaker_audio_lens=speaker_len |
| ) |
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| # Decode the predicted text and generated speech waveform |
| generated_text = results["text"][0] |
| generated_speech = results["audio"][0] |
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| print(f"Agent response: {generated_text}") |
| # generated_speech can now be saved or played (sampled at model.target_sample_rate) |
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| Training a Model |
| ---------------- |
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| This example demonstrates how to train a SALM model. |
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| .. note:: |
| **NemotronVoiceChat is an inference-only class.** It does not implement a `training_step` and cannot be trained using the pipeline below. To update its underlying capabilities, you must train the `DuplexSTTModel` and `DuplexEARTTS` models independently. |
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| .. code-block:: python |
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| from omegaconf import OmegaConf |
| import torch |
| from lightning.pytorch import Trainer |
| from lightning.pytorch.strategies import ModelParallelStrategy |
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| import nemo.collections.speechlm2 as slm |
| from nemo.collections.speechlm2.data import SALMDataset, DataModule |
| from nemo.utils.exp_manager import exp_manager |
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| # Load configuration |
| config_path = "path/to/config.yaml" # E.g., from examples/speechlm2/conf/salm.yaml |
| cfg = OmegaConf.load(config_path) |
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| # Initialize PyTorch Lightning trainer |
| trainer = Trainer( |
| max_steps=100000, |
| accelerator="gpu", |
| devices=1, |
| precision="bf16-true", |
| strategy=ModelParallelStrategy(data_parallel_size=2, tensor_parallel_size=1), |
| limit_train_batches=1000, |
| val_check_interval=1000, |
| use_distributed_sampler=False, |
| logger=False, |
| enable_checkpointing=False, |
| ) |
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| # Set up experiment manager for logging |
| exp_manager(trainer, cfg.get("exp_manager", None)) |
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| # Initialize model with configuration |
| model = slm.models.SALM(OmegaConf.to_container(cfg.model, resolve=True)) |
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| # Create dataset and datamodule |
| dataset = SALMDataset(tokenizer=model.tokenizer) |
| datamodule = DataModule(cfg.data, tokenizer=model.tokenizer, dataset=dataset) |
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| # Train the model |
| trainer.fit(model, datamodule) |
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| Example Using Command-Line Training Script |
| ------------------------------------------ |
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| Alternatively, you can train a model using the provided training scripts in the examples directory: |
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| .. code-block:: bash |
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| # Train a SALM model |
| python examples/speechlm2/salm_train.py \ |
| --config-path=examples/speechlm2/conf \ |
| --config-name=salm |
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| # For SALM inference/evaluation |
| python examples/speechlm2/salm_eval.py \ |
| pretrained_name=/path/to/checkpoint \ |
| inputs=/path/to/test_manifest \ |
| batch_size=64 \ |
| max_new_tokens=128 \ |
| output_manifest=generations.jsonl |
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| For more detailed information on training at scale, model parallelism, and SLURM-based training, see :doc:`training and scaling <training_and_scaling>`. |
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| Collection Structure |
| -------------------- |
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| The speechlm2 collection is organized into the following key components: |
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| - **Models**: Contains implementations of DuplexS2SModel, DuplexS2SSpeechDecoderModel, DuplexSTTModel, SALM, DuplexEARTTS, and the inference-only NemotronVoiceChat. |
| - **Modules**: Contains audio perception and speech generation modules. |
| - **Data**: Includes dataset classes and data loading utilities. |
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| SpeechLM2 Documentation |
| ----------------------- |
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| For more information, see additional sections in the SpeechLM2 docs: |
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| .. toctree:: |
| :maxdepth: 1 |
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| models |
| datasets |
| configs |
| training_and_scaling |
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