| |
| __set_seed1: !apply:random.seed [1986] |
| __set_seed2: !apply:numpy.random.seed [1986] |
| __set_seed3: !apply:torch.manual_seed [1986] |
| __set_seed4: !apply:torch.cuda.manual_seed_all [1986] |
|
|
| |
| sample_rate: 24000 |
| llm_input_size: 896 |
| llm_output_size: 896 |
| spk_embed_dim: 192 |
| qwen_pretrain_path: '' |
| token_frame_rate: 25 |
| token_mel_ratio: 2 |
|
|
| |
| chunk_size: 25 |
| num_decoding_left_chunks: 1 |
|
|
| |
| |
| |
| llm: !new:cosyvoice.llm.llm.Qwen2LM |
| llm_input_size: !ref <llm_input_size> |
| llm_output_size: !ref <llm_output_size> |
| speech_token_size: 6561 |
| length_normalized_loss: True |
| lsm_weight: 0 |
| mix_ratio: [5, 15] |
| llm: !new:cosyvoice.llm.llm.Qwen2Encoder |
| pretrain_path: !ref <qwen_pretrain_path> |
| sampling: !name:cosyvoice.utils.common.ras_sampling |
| top_p: 0.8 |
| top_k: 25 |
| win_size: 10 |
| tau_r: 0.1 |
|
|
| flow: !new:cosyvoice.flow.flow.CausalMaskedDiffWithXvec |
| input_size: 512 |
| output_size: 80 |
| spk_embed_dim: !ref <spk_embed_dim> |
| output_type: 'mel' |
| vocab_size: 6561 |
| input_frame_rate: !ref <token_frame_rate> |
| only_mask_loss: True |
| token_mel_ratio: !ref <token_mel_ratio> |
| pre_lookahead_len: 3 |
| encoder: !new:cosyvoice.transformer.upsample_encoder.UpsampleConformerEncoder |
| output_size: 512 |
| attention_heads: 8 |
| linear_units: 2048 |
| num_blocks: 6 |
| dropout_rate: 0.1 |
| positional_dropout_rate: 0.1 |
| attention_dropout_rate: 0.1 |
| normalize_before: True |
| input_layer: 'linear' |
| pos_enc_layer_type: 'rel_pos_espnet' |
| selfattention_layer_type: 'rel_selfattn' |
| input_size: 512 |
| use_cnn_module: False |
| macaron_style: False |
| static_chunk_size: !ref <chunk_size> |
| decoder: !new:cosyvoice.flow.flow_matching.CausalConditionalCFM |
| in_channels: 240 |
| n_spks: 1 |
| spk_emb_dim: 80 |
| cfm_params: !new:omegaconf.DictConfig |
| content: |
| sigma_min: 1e-06 |
| solver: 'euler' |
| t_scheduler: 'cosine' |
| training_cfg_rate: 0.2 |
| inference_cfg_rate: 0.7 |
| reg_loss_type: 'l1' |
| estimator: !new:cosyvoice.flow.decoder.CausalConditionalDecoder |
| in_channels: 320 |
| out_channels: 80 |
| channels: [256] |
| dropout: 0.0 |
| attention_head_dim: 64 |
| n_blocks: 4 |
| num_mid_blocks: 12 |
| num_heads: 8 |
| act_fn: 'gelu' |
| static_chunk_size: !ref <chunk_size> * <token_mel_ratio> |
| num_decoding_left_chunks: !ref <num_decoding_left_chunks> |
|
|
| hift: !new:cosyvoice.hifigan.generator.HiFTGenerator |
| in_channels: 80 |
| base_channels: 512 |
| nb_harmonics: 8 |
| sampling_rate: !ref <sample_rate> |
| nsf_alpha: 0.1 |
| nsf_sigma: 0.003 |
| nsf_voiced_threshold: 10 |
| upsample_rates: [8, 5, 3] |
| upsample_kernel_sizes: [16, 11, 7] |
| istft_params: |
| n_fft: 16 |
| hop_len: 4 |
| resblock_kernel_sizes: [3, 7, 11] |
| resblock_dilation_sizes: [[1, 3, 5], [1, 3, 5], [1, 3, 5]] |
| source_resblock_kernel_sizes: [7, 7, 11] |
| source_resblock_dilation_sizes: [[1, 3, 5], [1, 3, 5], [1, 3, 5]] |
| lrelu_slope: 0.1 |
| audio_limit: 0.99 |
| f0_predictor: !new:cosyvoice.hifigan.f0_predictor.ConvRNNF0Predictor |
| num_class: 1 |
| in_channels: 80 |
| cond_channels: 512 |
|
|
| |
| mel_spec_transform1: !name:matcha.utils.audio.mel_spectrogram |
| n_fft: 1920 |
| num_mels: 80 |
| sampling_rate: !ref <sample_rate> |
| hop_size: 480 |
| win_size: 1920 |
| fmin: 0 |
| fmax: null |
| center: False |
| hifigan: !new:cosyvoice.hifigan.hifigan.HiFiGan |
| generator: !ref <hift> |
| discriminator: !new:cosyvoice.hifigan.discriminator.MultipleDiscriminator |
| mpd: !new:matcha.hifigan.models.MultiPeriodDiscriminator |
| mrd: !new:cosyvoice.hifigan.discriminator.MultiResSpecDiscriminator |
| mel_spec_transform: [ |
| !ref <mel_spec_transform1> |
| ] |
|
|
| |
| parquet_opener: !name:cosyvoice.dataset.processor.parquet_opener |
| get_tokenizer: !name:cosyvoice.tokenizer.tokenizer.get_qwen_tokenizer |
| token_path: !ref <qwen_pretrain_path> |
| skip_special_tokens: True |
| allowed_special: 'all' |
| tokenize: !name:cosyvoice.dataset.processor.tokenize |
| get_tokenizer: !ref <get_tokenizer> |
| allowed_special: !ref <allowed_special> |
| filter: !name:cosyvoice.dataset.processor.filter |
| max_length: 40960 |
| min_length: 100 |
| token_max_length: 200 |
| token_min_length: 1 |
| resample: !name:cosyvoice.dataset.processor.resample |
| resample_rate: !ref <sample_rate> |
| truncate: !name:cosyvoice.dataset.processor.truncate |
| truncate_length: 24480 |
| feat_extractor: !name:matcha.utils.audio.mel_spectrogram |
| n_fft: 1920 |
| num_mels: 80 |
| sampling_rate: !ref <sample_rate> |
| hop_size: 480 |
| win_size: 1920 |
| fmin: 0 |
| fmax: 8000 |
| center: False |
| compute_fbank: !name:cosyvoice.dataset.processor.compute_fbank |
| feat_extractor: !ref <feat_extractor> |
| compute_f0: !name:cosyvoice.dataset.processor.compute_f0 |
| sample_rate: !ref <sample_rate> |
| hop_size: 480 |
| parse_embedding: !name:cosyvoice.dataset.processor.parse_embedding |
| normalize: True |
| shuffle: !name:cosyvoice.dataset.processor.shuffle |
| shuffle_size: 1000 |
| sort: !name:cosyvoice.dataset.processor.sort |
| sort_size: 500 |
| batch: !name:cosyvoice.dataset.processor.batch |
| batch_type: 'dynamic' |
| max_frames_in_batch: 2000 |
| padding: !name:cosyvoice.dataset.processor.padding |
| use_spk_embedding: False |
|
|
|
|
| |
| data_pipeline: [ |
| !ref <parquet_opener>, |
| !ref <tokenize>, |
| !ref <filter>, |
| !ref <resample>, |
| !ref <compute_fbank>, |
| !ref <parse_embedding>, |
| !ref <shuffle>, |
| !ref <sort>, |
| !ref <batch>, |
| !ref <padding>, |
| ] |
| data_pipeline_gan: [ |
| !ref <parquet_opener>, |
| !ref <tokenize>, |
| !ref <filter>, |
| !ref <resample>, |
| !ref <truncate>, |
| !ref <compute_fbank>, |
| !ref <compute_f0>, |
| !ref <parse_embedding>, |
| !ref <shuffle>, |
| !ref <sort>, |
| !ref <batch>, |
| !ref <padding>, |
| ] |
|
|
| |
| train_conf: |
| optim: adam |
| optim_conf: |
| lr: 1e-5 |
| scheduler: constantlr |
| scheduler_conf: |
| warmup_steps: 2500 |
| max_epoch: 200 |
| grad_clip: 5 |
| accum_grad: 2 |
| log_interval: 100 |
| save_per_step: -1 |
|
|
| |
| train_conf_gan: |
| optim: adam |
| optim_conf: |
| lr: 0.0002 |
| scheduler: constantlr |
| optim_d: adam |
| optim_conf_d: |
| lr: 0.0002 |
| scheduler_d: constantlr |
| max_epoch: 200 |
| grad_clip: 5 |
| accum_grad: 1 |
| log_interval: 100 |
| save_per_step: -1 |