# This config contains the default values for training 16kHz NeMo Audio Codec model # If you want to train model on other dataset, you can change config values according to your dataset. # Most dataset-specific arguments are in the head of the config file, see below. name: AudioCodec max_epochs: ??? max_steps: 200000 # Adjust batch size based on GPU memory batch_size: 32 # When doing weighted sampling with multiple manifests, this defines how many training steps are in an epoch. # If null, then weighted sampling is disabled. weighted_sampling_steps_per_epoch: null # Dataset metadata for each manifest # https://github.com/NVIDIA/NeMo/blob/main/nemo/collections/tts/data/vocoder_dataset.py#L39-L41 train_ds_meta: ??? val_ds_meta: ??? log_ds_meta: ??? log_dir: ??? # Modify these values based on your sample rate sample_rate: 16000 train_n_samples: 16000 down_sample_rates: [2, 4, 5, 5] up_sample_rates: [5, 5, 4, 2] # The number of samples per encoded audio frame. Should be the product of the down_sample_rates. # For example 2 * 4 * 5 * 5 = 200. => frame_rate = 16000/200 = 80 samples_per_frame: 200 model: max_epochs: ${max_epochs} steps_per_epoch: ${weighted_sampling_steps_per_epoch} max_steps: ${max_steps} sample_rate: ${sample_rate} samples_per_frame: ${samples_per_frame} mel_loss_l1_scale: 1.0 mel_loss_l2_scale: 1.0 stft_loss_scale: 0.0 time_domain_loss_scale: 0.1 # Probability of updating the discriminator during each training step # For example, update the discriminator 2/3 times (2 updates for every 3 batches) disc_updates_per_period: 2 disc_update_period: 3 # All resolutions for reconstruction loss, ordered [num_fft, hop_length, window_length] loss_resolutions: [ [32, 8, 32], [64, 16, 64], [128, 32, 128], [256, 64, 256], [512, 128, 512], [1024, 256, 1024], [2048, 512, 2048] ] mel_loss_dims: [64, 64, 64, 64, 64, 64, 64] mel_loss_log_guard: 1E-5 stft_loss_log_guard: 1.0 train_ds: dataset: _target_: nemo.collections.tts.data.vocoder_dataset.VocoderDataset weighted_sampling_steps_per_epoch: ${weighted_sampling_steps_per_epoch} sample_rate: ${sample_rate} n_samples: ${train_n_samples} min_duration: 1.01 max_duration: null dataset_meta: ${train_ds_meta} dataloader_params: batch_size: ${batch_size} drop_last: true num_workers: 4 validation_ds: dataset: _target_: nemo.collections.tts.data.vocoder_dataset.VocoderDataset sample_rate: ${sample_rate} n_samples: null min_duration: null max_duration: null trunc_duration: 10.0 # Only use the first 10 seconds of audio for computing validation loss dataset_meta: ${val_ds_meta} dataloader_params: batch_size: 8 num_workers: 2 # Configures how audio samples are generated and saved during training. # Remove this section to disable logging. log_config: log_dir: ${log_dir} log_epochs: [1, 2, 3, 4, 5, 6] epoch_frequency: 1 log_tensorboard: false log_wandb: false generators: - _target_: nemo.collections.tts.parts.utils.callbacks.AudioCodecArtifactGenerator log_audio: true log_encoding: false log_dequantized: false dataset: _target_: nemo.collections.tts.data.vocoder_dataset.VocoderDataset sample_rate: ${sample_rate} n_samples: null min_duration: null max_duration: null trunc_duration: 15.0 # Only log the first 15 seconds of generated audio. dataset_meta: ${log_ds_meta} dataloader_params: batch_size: 4 num_workers: 2 audio_encoder: _target_: nemo.collections.tts.modules.encodec_modules.SEANetEncoder down_sample_rates: ${down_sample_rates} audio_decoder: _target_: nemo.collections.tts.modules.encodec_modules.SEANetDecoder up_sample_rates: ${up_sample_rates} vector_quantizer: _target_: nemo.collections.tts.modules.encodec_modules.ResidualVectorQuantizer num_codebooks: 8 discriminator: _target_: nemo.collections.tts.modules.encodec_modules.MultiResolutionDiscriminatorSTFT resolutions: [[128, 32, 128], [256, 64, 256], [512, 128, 512], [1024, 256, 1024], [2048, 512, 2048]] generator_loss: _target_: nemo.collections.tts.losses.audio_codec_loss.GeneratorSquaredLoss discriminator_loss: _target_: nemo.collections.tts.losses.audio_codec_loss.DiscriminatorSquaredLoss optim: _target_: torch.optim.AdamW lr: 1e-4 betas: [0.8, 0.9] sched: name: StepLR gamma: 0.999996 step_size: 1 # Parameters above are tuned based on 8 GPUs with bs 32 for librilight dataset, based on number of GPUs, those parameters need to be updated accordingly trainer: num_nodes: 1 devices: 1 accelerator: gpu strategy: ddp_find_unused_parameters_true precision: 32 # Vector quantization only works with 32-bit precision. max_steps: ${max_steps} max_epochs: ${max_epochs} accumulate_grad_batches: 1 enable_checkpointing: False # Provided by exp_manager logger: false # Provided by exp_manager log_every_n_steps: 100 check_val_every_n_epoch: 1 benchmark: false exp_manager: exp_dir: null name: ${name} create_tensorboard_logger: true create_checkpoint_callback: true create_wandb_logger: false checkpoint_callback_params: monitor: val_loss resume_if_exists: false resume_ignore_no_checkpoint: false