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egs/tedlium/s5/local/online/run_nnet2_ms.sh 5.84 KB
8dcb6dfcb   Yannick Estève   first commit
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  #!/bin/bash
  
  # This is the "multi-splice" version of the online-nnet2 training script.
  # It's currently the best recipe.
  # You'll notice that we splice over successively larger windows as we go deeper
  # into the network.
  
  . ./cmd.sh
  
  
  stage=0
  train_stage=-10
  use_gpu=true
  dir=exp/nnet2_online/nnet_ms_a
  
  set -e
  . ./cmd.sh
  . ./path.sh
  . ./utils/parse_options.sh
  
  
  if $use_gpu; then
    if ! cuda-compiled; then
      cat <<EOF && exit 1
  This script is intended to be used with GPUs but you have not compiled Kaldi with CUDA
  If you want to use GPUs (and have them), go to src/, and configure and make on a machine
  where "nvcc" is installed.  Otherwise, call this script with --use-gpu false
  EOF
    fi
    parallel_opts="--gpu 1 --config conf/no_k20.conf --allow-k20 false"
  #that config is like the default config in the text of queue.pl, but adding the following lines.
  #default allow_k20=true
  #option allow_k20=true
  #option allow_k20=false -l 'hostname=!g01&!g02&!b06'
    num_threads=1
    minibatch_size=512
    # the _a is in case I want to change the parameters.
  else
    # Use 4 nnet jobs just like run_4d_gpu.sh so the results should be
    # almost the same, but this may be a little bit slow.
    num_threads=16
    minibatch_size=128
    parallel_opts="--num-threads $num_threads"
  fi
  
  # do the common parts of the script.
  local/online/run_nnet2_common.sh --stage $stage
  
  
  if [ $stage -le 7 ]; then
    if [[ $(hostname -f) == *.clsp.jhu.edu ]] && [ ! -d $dir/egs/storage ]; then
      utils/create_split_dir.pl \
       /export/b0{3,4,5,6}/$USER/kaldi-data/egs/tedlium-$(date +'%m_%d_%H_%M')/s5/$dir/egs/storage $dir/egs/storage
    fi
  
    # The size of the system is kept rather small
    # this is because we want it to be small enough that we could plausibly run it
    # in real-time.
    steps/nnet2/train_multisplice_accel2.sh --stage $train_stage \
      --num-epochs 8 --num-jobs-initial 3 --num-jobs-final 18 \
      --num-hidden-layers 6 --splice-indexes "layer0/-2:-1:0:1:2 layer1/-1:2 layer3/-3:3 layer4/-7:2" \
      --feat-type raw \
      --online-ivector-dir exp/nnet2_online/ivectors_train_hires \
      --cmvn-opts "--norm-means=false --norm-vars=false" \
      --num-threads "$num_threads" \
      --minibatch-size "$minibatch_size" \
      --parallel-opts "$parallel_opts" \
      --io-opts "--max-jobs-run 12" \
      --initial-effective-lrate 0.0015 --final-effective-lrate 0.00015 \
      --cmd "$decode_cmd" \
      --pnorm-input-dim 3500 \
      --pnorm-output-dim 350 \
      --mix-up 12000 \
      data/train_hires data/lang exp/tri3 $dir  || exit 1;
  fi
  
  if [ $stage -le 8 ]; then
    # dump iVectors for the testing data.
    for decode_set in dev test; do
        num_jobs=`cat data/${decode_set}_hires/utt2spk|cut -d' ' -f2|sort -u|wc -l`
        steps/online/nnet2/extract_ivectors_online.sh --cmd "$train_cmd" --nj $num_jobs \
          data/${decode_set}_hires exp/nnet2_online/extractor exp/nnet2_online/ivectors_${decode_set}_hires || exit 1;
    done
  fi
  
  if [ $stage -le 9 ]; then
    # this does offline decoding that should give about the same results as the
    # real online decoding (the one with --per-utt true)
    for decode_set in dev test; do
        num_jobs=`cat data/${decode_set}_hires/utt2spk|cut -d' ' -f2|sort -u|wc -l`
        decode_dir=$dir/decode_${decode_set}
        steps/nnet2/decode.sh --nj $num_jobs --cmd "$decode_cmd" --config conf/decode.config \
          --online-ivector-dir exp/nnet2_online/ivectors_${decode_set}_hires \
          exp/tri3/graph data/${decode_set}_hires $decode_dir || exit 1;
        steps/lmrescore_const_arpa.sh data/lang_test data/lang_rescore data/${decode_set}_hires $decode_dir $decode_dir.rescore || exit 1
    done
  fi
  
  
  if [ $stage -le 10 ]; then
    # If this setup used PLP features, we'd have to give the option --feature-type plp
    # to the script below.
    steps/online/nnet2/prepare_online_decoding.sh --mfcc-config conf/mfcc_hires.conf \
      data/lang exp/nnet2_online/extractor "$dir" ${dir}_online || exit 1;
  fi
  wait;
  
  if [ $stage -le 11 ]; then
    # do the actual online decoding with iVectors, carrying info forward from
    # previous utterances of the same speaker.
    for decode_set in dev test; do
      num_jobs=`cat data/${decode_set}_hires/utt2spk|cut -d' ' -f2|sort -u|wc -l`
      decode_dir=${dir}_online/decode_${decode_set}
      steps/online/nnet2/decode.sh --config conf/decode.config --cmd "$decode_cmd" --nj $num_jobs \
        exp/tri3/graph data/${decode_set}_hires $decode_dir || exit 1;
      steps/lmrescore_const_arpa.sh data/lang_test data/lang_rescore data/${decode_set}_hires $decode_dir $decode_dir.rescore || exit 1
    done
  fi
  
  if [ $stage -le 12 ]; then
    # this version of the decoding treats each utterance separately
    # without carrying forward speaker information.
    for decode_set in dev test; do
        num_jobs=`cat data/${decode_set}_hires/utt2spk|cut -d' ' -f2|sort -u|wc -l`
        decode_dir=${dir}_online/decode_${decode_set}_utt
        steps/online/nnet2/decode.sh --config conf/decode.config --cmd "$decode_cmd" --nj $num_jobs \
          --per-utt true exp/tri3/graph data/${decode_set}_hires $decode_dir || exit 1;
        steps/lmrescore_const_arpa.sh data/lang_test data/lang_rescore data/${decode_set}_hires $decode_dir $decode_dir.rescore || exit 1
    done
  fi
  
  if [ $stage -le 13 ]; then
    # this version of the decoding treats each utterance separately
    # without carrying forward speaker information, but looks to the end
    # of the utterance while computing the iVector (--online false)
    for decode_set in dev test; do
        num_jobs=`cat data/${decode_set}_hires/utt2spk|cut -d' ' -f2|sort -u|wc -l`
        decode_dir=${dir}_online/decode_${decode_set}_utt_offline
        steps/online/nnet2/decode.sh --config conf/decode.config --cmd "$decode_cmd" --nj $num_jobs \
          --per-utt true --online false exp/tri3/graph data/${decode_set}_hires \
            $decode_dir || exit 1;
        steps/lmrescore_const_arpa.sh data/lang_test data/lang_rescore data/${decode_set}_hires $decode_dir $decode_dir.rescore || exit 1
    done
  fi
  wait;
  exit 0;