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egs/aspire/s5/local/chain/tuning/run_blstm_asp_1.sh
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#!/bin/bash set -e # based on run_blstm_7b.sh # but has lesser number of parameters (20 million) # configs for 'chain' affix= stage=11 # assuming you already ran the xent systems and the chain tdnn system train_stage=-10 get_egs_stage=-10 dir=exp/chain/blstm_asp1 decode_iter= # training options num_epochs=4 remove_egs=false common_egs_dir=exp/chain/blstm_7b/egs num_data_reps=3 min_seg_len= frames_per_eg=150 # End configuration section. echo "$0 $@" # Print the command line for logging . ./cmd.sh . ./path.sh . ./utils/parse_options.sh if ! cuda-compiled; then cat <<EOF && exit 1 This script is intended to be used with GPUs but you have not compiled Kaldi with CUDA If you want to use GPUs (and have them), go to src/, and configure and make on a machine where "nvcc" is installed. EOF fi dir=${dir}${affix:+_$affix} ali_dir=exp/tri5a_rvb_ali treedir=exp/chain/tri6_tree_11000 lang=data/lang_chain # The iVector-extraction and feature-dumping parts are the same as the standard # nnet3 setup, and you can skip them by setting "--stage 8" if you have already # run those things. local/nnet3/run_ivector_common.sh --stage $stage --num-data-reps 3|| exit 1; if [ $stage -le 7 ]; then # Create a version of the lang/ directory that has one state per phone in the # topo file. [note, it really has two states.. the first one is only repeated # once, the second one has zero or more repeats.] rm -rf $lang cp -r data/lang $lang silphonelist=$(cat $lang/phones/silence.csl) || exit 1; nonsilphonelist=$(cat $lang/phones/nonsilence.csl) || exit 1; # Use our special topology... note that later on may have to tune this # topology. steps/nnet3/chain/gen_topo.py $nonsilphonelist $silphonelist >$lang/topo fi if [ $stage -le 8 ]; then # Build a tree using our new topology. # we build the tree using clean features (data/train) rather than # the augmented features (data/train_rvb) to get better alignments steps/nnet3/chain/build_tree.sh --frame-subsampling-factor 3 \ --leftmost-questions-truncate -1 \ --cmd "$train_cmd" 11000 data/train $lang exp/tri5a $treedir fi if [ -z $min_seg_len ]; then min_seg_len=$(python -c "print ($frames_per_eg+5)/100.0") fi if [ $stage -le 9 ]; then [ -d data/train_rvb_min${min_seg_len}_hires ] && rm -rf data/train_rvb_min${min_seg_len}_hires steps/cleanup/combine_short_segments.py --minimum-duration $min_seg_len \ --input-data-dir data/train_rvb_hires \ --output-data-dir data/train_rvb_min${min_seg_len}_hires #extract ivectors for the new data steps/online/nnet2/copy_data_dir.sh --utts-per-spk-max 2 \ data/train_rvb_min${min_seg_len}_hires data/train_rvb_min${min_seg_len}_hires_max2 ivectordir=exp/nnet3/ivectors_train_min${min_seg_len} if [[ $(hostname -f) == *.clsp.jhu.edu ]]; then # this shows how you can split across multiple file-systems. utils/create_split_dir.pl /export/b0{1,2,3,4}/$USER/kaldi-data/egs/aspire/s5/$ivectordir/storage $ivectordir/storage fi steps/online/nnet2/extract_ivectors_online.sh --cmd "$train_cmd" --nj 200 \ data/train_rvb_min${min_seg_len}_hires_max2 \ exp/nnet3/extractor $ivectordir || exit 1; # combine the non-hires features for alignments/lattices [ -d data/train_min${min_seg_len} ] && rm -r data/train_min${min_seg_len}; utt_prefix="THISISUNIQUESTRING_" spk_prefix="THISISUNIQUESTRING_" utils/copy_data_dir.sh --spk-prefix "$spk_prefix" --utt-prefix "$utt_prefix" \ data/train data/train_temp_for_lats steps/cleanup/combine_short_segments.py --minimum-duration $min_seg_len \ --input-data-dir data/train_temp_for_lats \ --output-data-dir data/train_min${min_seg_len} fi if [ $stage -le 10 ]; then # Get the alignments as lattices (gives the chain training more freedom). # use the same num-jobs as the alignments nj=200 lat_dir=exp/tri5a_min${min_seg_len}_lats steps/align_fmllr_lats.sh --nj $nj --cmd "$train_cmd" data/train_min${min_seg_len} \ data/lang exp/tri5a $lat_dir rm -f $lat_dir/fsts.*.gz # save space rvb_lat_dir=exp/tri5a_rvb_min${min_seg_len}_lats mkdir -p $rvb_lat_dir/temp/ lattice-copy "ark:gunzip -c $lat_dir/lat.*.gz |" ark,scp:$rvb_lat_dir/temp/lats.ark,$rvb_lat_dir/temp/lats.scp # copy the lattices for the reverberated data rm -f $rvb_lat_dir/temp/combined_lats.scp touch $rvb_lat_dir/temp/combined_lats.scp for i in `seq 1 $num_data_reps`; do cat $rvb_lat_dir/temp/lats.scp | sed -e "s/THISISUNIQUESTRING/rev${i}/g" >> $rvb_lat_dir/temp/combined_lats.scp done sort -u $rvb_lat_dir/temp/combined_lats.scp > $rvb_lat_dir/temp/combined_lats_sorted.scp lattice-copy scp:$rvb_lat_dir/temp/combined_lats_sorted.scp "ark:|gzip -c >$rvb_lat_dir/lat.1.gz" || exit 1; echo "1" > $rvb_lat_dir/num_jobs # copy other files from original lattice dir for f in cmvn_opts final.mdl splice_opts tree; do cp $lat_dir/$f $rvb_lat_dir/$f done fi if [ $stage -le 11 ]; then echo "$0: creating neural net configs"; steps/nnet3/lstm/make_configs.py \ --feat-dir data/train_rvb_hires \ --ivector-dir exp/nnet3/ivectors_train_min${min_seg_len} \ --tree-dir $treedir \ --splice-indexes="-2,-1,0,1,2 0 0" \ --lstm-delay=" [-3,3] [-3,3] [-3,3] " \ --xent-regularize 0.1 \ --include-log-softmax false \ --num-lstm-layers 3 \ --cell-dim 1024 \ --hidden-dim 1024 \ --recurrent-projection-dim 128 \ --non-recurrent-projection-dim 128 \ --label-delay 0 \ --self-repair-scale-nonlinearity 0.00001 \ --self-repair-scale-clipgradient 1.0 \ $dir/configs || exit 1; fi if [ $stage -le 12 ]; then if [[ $(hostname -f) == *.clsp.jhu.edu ]] && [ ! -d $dir/egs/storage ]; then utils/create_split_dir.pl \ /export/b0{5,6,7,8}/$USER/kaldi-data/egs/aspire-$(date +'%m_%d_%H_%M')/s5c/$dir/egs/storage $dir/egs/storage fi touch $dir/egs/.nodelete # keep egs around when that run dies. steps/nnet3/chain/train.py --stage $train_stage \ --cmd "$decode_cmd" \ --feat.online-ivector-dir exp/nnet3/ivectors_train_min${min_seg_len} \ --feat.cmvn-opts "--norm-means=false --norm-vars=false" \ --chain.xent-regularize 0.1 \ --chain.leaky-hmm-coefficient 0.1 \ --chain.l2-regularize 0.00005 \ --chain.apply-deriv-weights false \ --chain.lm-opts="--num-extra-lm-states=2000" \ --trainer.num-chunk-per-minibatch 64 \ --trainer.max-param-change 1.414 \ --egs.stage $get_egs_stage \ --egs.opts "--frames-overlap-per-eg 0" \ --egs.chunk-width $frames_per_eg \ --egs.dir "$common_egs_dir" \ --trainer.frames-per-iter 1500000 \ --trainer.num-epochs $num_epochs \ --trainer.optimization.num-jobs-initial 3 \ --trainer.optimization.num-jobs-final 16 \ --trainer.optimization.initial-effective-lrate 0.001 \ --trainer.optimization.final-effective-lrate 0.0001 \ --trainer.optimization.shrink-value 0.99 \ --trainer.optimization.momentum 0.0 \ --trainer.deriv-truncate-margin 8 \ --cleanup.remove-egs $remove_egs \ --feat-dir data/train_rvb_min${min_seg_len}_hires \ --tree-dir $treedir \ --lat-dir exp/tri5a_rvb_min${min_seg_len}_lats \ --dir $dir || exit 1; fi if [ $stage -le 13 ]; then # Note: it might appear that this $lang directory is mismatched, and it is as # far as the 'topo' is concerned, but this script doesn't read the 'topo' from # the lang directory. utils/mkgraph.sh --self-loop-scale 1.0 data/lang_pp_test $dir $dir/graph_pp fi if [ $stage -le 14 ]; then extra_left_context=$[$chunk_left_context+10] extra_right_context=$[$chunk_right_context+10] # %WER 26.8 | 2120 27220 | 80.2 11.7 8.1 7.0 26.8 76.5 | -0.804 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iterfinal_pp_fg/score_9/penalty_0.0/ local/multi_condition/prep_test_aspire.sh --stage 4 --decode-num-jobs 30 --affix "v7" \ --extra-left-context $extra_left_context \ --extra-right-context $extra_right_context \ --frames-per-chunk $chunk_width \ --acwt 1.0 --post-decode-acwt 10.0 \ --window 10 --overlap 5 \ --sub-speaker-frames 6000 --max-count 75 --ivector-scale 0.75 \ --pass2-decode-opts "--min-active 1000" \ dev_aspire data/lang $dir/graph_pp $dir fi exit 0; #%WER 29.7 | 2120 27214 | 78.0 14.3 7.6 7.7 29.7 78.2 | -0.765 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter300_pp_fg/score_9/penalty_0.0/ctm.filt.filt.sys #%WER 29.0 | 2120 27214 | 78.0 13.1 9.0 7.0 29.0 78.0 | -0.778 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter400_pp_fg/score_9/penalty_0.25/ctm.filt.filt.sys #%WER 28.0 | 2120 27217 | 78.9 12.8 8.2 6.9 28.0 77.7 | -0.819 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter500_pp_fg/score_9/penalty_0.25/ctm.filt.filt.sys #%WER 28.1 | 2120 27214 | 79.0 12.8 8.2 7.2 28.1 77.2 | -0.807 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter600_pp_fg/score_9/penalty_0.25/ctm.filt.filt.sys #%WER 27.1 | 2120 27218 | 79.8 12.2 7.9 7.0 27.1 76.4 | -0.814 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter800_pp_fg/score_9/penalty_0.25/ctm.filt.filt.sys #%WER 26.5 | 2120 27220 | 80.6 12.3 7.0 7.1 26.5 76.1 | -0.804 | exp/chain/blstm_asp_1/decode_dev_aspire_whole_uniformsegmented_win10_over5_v7_iter1300_pp_fg/score_9/penalty_0.0/ctm.filt.filt.sys |