# network architecture # encoder related encoder: conformer encoder_conf: output_size: 256 # dimension of attention attention_heads: 4 linear_units: 2048 # the number of units of position-wise feed forward num_blocks: 12 # the number of encoder blocks dropout_rate: 0.1 positional_dropout_rate: 0.1 attention_dropout_rate: 0.0 input_layer: conv2d # encoder architecture type normalize_before: true pos_enc_layer_type: rel_pos selfattention_layer_type: rel_selfattn activation_type: swish macaron_style: true use_cnn_module: true cnn_module_kernel: 15 # decoder related decoder: transformer decoder_conf: attention_heads: 4 linear_units: 2048 num_blocks: 6 dropout_rate: 0.1 positional_dropout_rate: 0.1 self_attention_dropout_rate: 0.0 src_attention_dropout_rate: 0.0 # hybrid CTC/attention model_conf: ctc_weight: 0.3 lsm_weight: 0.1 # label smoothing option length_normalized_loss: false # minibatch related batch_type: length batch_bins: 25000 num_workers: 16 # optimization related accum_grad: 1 grad_clip: 5 max_epoch: 50 val_scheduler_criterion: - valid - acc best_model_criterion: - - valid - acc - max keep_nbest_models: 10 optim: adam optim_conf: lr: 0.0005 scheduler: warmuplr scheduler_conf: warmup_steps: 30000 specaug: specaug specaug_conf: apply_time_warp: true time_warp_window: 5 time_warp_mode: bicubic apply_freq_mask: true freq_mask_width_range: - 0 - 30 num_freq_mask: 2 apply_time_mask: true time_mask_width_range: - 0 - 40 num_time_mask: 2 log_interval: 50 normalize: None