transformer.yaml 2.9 KB
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# https://yaml.org/type/float.html
data:
  train_manifest: data/manifest.train.tiny
  dev_manifest: data/manifest.dev
  test_manifest: data/manifest.test
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  min_input_len: 0.05  # second
  max_input_len: 30.0 # second
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  min_output_len: 0.0 # tokens
  max_output_len: 400.0 # tokens
  min_output_input_ratio: 0.01
  max_output_input_ratio: 20.0

collator:
  vocab_filepath: data/vocab.txt
  unit_type: 'spm'
  spm_model_prefix: data/bpe_unigram_8000
  mean_std_filepath: ""
  # augmentation_config: conf/augmentation.json
  batch_size: 10
  raw_wav: True  # use raw_wav or kaldi feature
  specgram_type: fbank #linear, mfcc, fbank
  feat_dim: 80
  delta_delta: False
  dither: 1.0
  target_sample_rate: 16000
  max_freq: None
  n_fft: None
  stride_ms: 10.0
  window_ms: 25.0
  use_dB_normalization: True
  target_dB: -20
  random_seed: 0
  keep_transcription_text: False
  sortagrad: True 
  shuffle_method: batch_shuffle
  num_workers: 2


# network architecture
model:
    cmvn_file: "data/mean_std.json"
    cmvn_file_type: "json"
    # encoder related
    encoder: transformer
    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 input type, you can chose conv2d, conv2d6 and conv2d8
        normalize_before: true

    # 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:
        asr_weight: 0.0
        ctc_weight: 0.0
        lsm_weight: 0.1     # label smoothing option
        length_normalized_loss: false


training:
  n_epoch: 120
  accum_grad: 2
  global_grad_clip: 5.0
  optim: adam
  optim_conf:
    lr: 0.004
    weight_decay: 1e-06
  scheduler: warmuplr     # pytorch v1.1.0+ required
  scheduler_conf:
    warmup_steps: 25000
    lr_decay: 1.0
  log_interval: 5
  checkpoint:
    kbest_n: 50
    latest_n: 5


decoding:
  batch_size: 5
  error_rate_type: char-bleu
  decoding_method: fullsentence  # 'fullsentence', 'simultaneous'
  alpha: 2.5
  beta: 0.3
  beam_size: 10
  cutoff_prob: 1.0
  cutoff_top_n: 0
  num_proc_bsearch: 8
  ctc_weight: 0.5 # ctc weight for attention rescoring decode mode.
  decoding_chunk_size: -1 # decoding chunk size. Defaults to -1.
      # <0: for decoding, use full chunk.
      # >0: for decoding, use fixed chunk size as set.
      # 0: used for training, it's prohibited here. 
  num_decoding_left_chunks: -1  # number of left chunks for decoding. Defaults to -1.
  simulate_streaming: False  # simulate streaming inference. Defaults to False.