model: # Every name/path here starting with 'pretrained' is used to initialize the model weights. pretrained_llm: Qwen/Qwen3-1.7B pretrained_asr: nvidia/canary-1b-flash pretrained_weights: True # When False, we use pretrained_name to load the architecture, but with random init # Regexp (re.compile) patterns matching parameters to be frozen. freeze_params: # Frozen LLM - "^llm\\..+$" # LLM - "^embed_tokens\\..+$" # LLM embedding is moved # Frozen pretrained ASR (only the modality adapter layers are trainable) - "^perception\\.preprocessor\\..+$" - "^perception\\.encoder\\..+$" prevent_freeze_params: [] # Use to make specific submodules trainable; overrides freeze_params prompt_format: qwen audio_locator_tag: "<|audioplaceholder|>" # placeholder token for audio turn is expected # Note: Uncomment the block below to enable LoRA on LLM via HuggingFace PEFT library. # It will automatically freeze LLM parameters even if freeze_params was unused, # and prevent freezing any parameter that has the string '.lora_' in its name. # lora: # task_type: CAUSAL_LM # r: 128 # lora_alpha: 256 # lora_dropout: 0.01 # # target_modules are only necessary if the `pretrained_llm` is not yet registered in PEFT library # target_modules: ["q_proj", "v_proj"] perception: target: nemo.collections.speechlm2.modules.perception.AudioPerceptionModule output_dim: 2048 modality_adapter: _target_: nemo.collections.speechlm2.modules.perception.IdentityConnector d_model: 1024 # spec_augment: # _target_: nemo.collections.asr.modules.SpectrogramAugmentation # freq_masks: 2 # set to zero to disable it # time_masks: 10 # set to zero to disable it # freq_width: 27 # time_width: 5 # 5 frames = 50ms optimizer: _target_: torch.optim.AdamW lr: 5e-4 betas: [0.9, 0.98] weight_decay: 1e-3 foreach: true # set to false if having issues with tensor-parallelism lr_scheduler: _target_: nemo.core.optim.lr_scheduler.CosineAnnealing warmup_steps: 1000 min_lr: 1e-6 max_steps: ${trainer.max_steps} trainer: devices: -1 accelerator: gpu num_nodes: 1 precision: bf16-true logger: False # logger provided by exp_manager enable_checkpointing: False use_distributed_sampler: False max_steps: 100000 limit_train_batches: 5000 # "epoch" size val_check_interval: ${trainer.limit_train_batches} limit_val_batches: 10 log_every_n_steps: 10 num_sanity_val_steps: 1 gradient_clip_val: 1.0 accumulate_grad_batches: 1 strategy: # Replace DDPStrategy with ModelParallelStrategy to enable model parallelism _target_: lightning.pytorch.strategies.DDPStrategy gradient_as_bucket_view: true find_unused_parameters: true # _target_: lightning.pytorch.strategies.ModelParallelStrategy # tensor_parallel_size: 1 # data_parallel_size: 8 # This is FSDP2 data: train_ds: sample_rate: 16000 prompt_format: ${model.prompt_format} token_equivalent_duration: 0.08 input_cfg: - type: lhotse_as_conversation cuts_path: ??? # needs to be set audio_locator_tag: ${model.audio_locator_tag} tags: # Uncomment below line to include a system prompt for supported models (e.g. Llama; not Qwen). # system_prompt: "some system prompt" context: "Repeat after me, typing in lowercase." seed: 42 shuffle: true shard_seed: "randomized" num_workers: 1 batch_size: 4 # Optional bucketing: # batch_size: null # use_bucketing: true # use_multimodal_sampling: true # measure_total_length: true # Note: `batch_tokens`, `bucket_duration_bins`, and `max_tokens` all represent tokens as # the sum of input audio frames and output text tokens. Number of audio frames is # calculated using `token_equivalent_duration`. # batch_tokens: 4000 # max_tokens: 2048 # bucket_duration_bins: [64, 128, 256, 384, 512, 768, 1024, 1280, 1536, 2048] # num_buckets: 10 # bucket_buffer_size: 5000 validation_ds: # The entries under 'datasets' are a list of separate dataloaders. # The structure is : {} # They inherit all settings from validation_ds, but can individually override them. prompt_format: ${model.prompt_format} token_equivalent_duration: 0.08 datasets: val_set_0: # rename to your dataset name, add more as needed input_cfg: - type: lhotse_as_conversation cuts_path: ??? # needs to be set audio_locator_tag: ${model.audio_locator_tag} tags: # Uncomment below line to include a system prompt for supported models (e.g. Llama; not Qwen). # system_prompt: "some system prompt" context: "Repeat after me, typing in lowercase." sample_rate: 16000 batch_size: 1 seed: 42 shard_seed: "randomized" exp_manager: exp_dir: null explicit_log_dir: salm_results/ name: salm create_tensorboard_logger: false create_checkpoint_callback: true use_datetime_version: true max_time_per_run: 00:03:50:00 resume_from_checkpoint: null # The path to a checkpoint file to continue the training, restores the whole state including the epoch, step, LR schedulers, apex, etc. # you need to set these two to True to continue the training resume_if_exists: true resume_ignore_no_checkpoint: true # You may use this section to create a W&B logger create_wandb_logger: false wandb_logger_kwargs: name: development-run project: salm resume: true checkpoint_callback_params: filename: "{step}" monitor: val_acc mode: max every_n_train_steps: null every_n_epochs: 1 save_top_k: 1 always_save_nemo: false save_nemo_on_train_end: false