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Scripts/steps/nnet2/train_block.sh 17.6 KB
ec85f8892   bigot benjamin   first commit
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  #!/bin/bash
  
  # Copyright 2012  Johns Hopkins University (Author: Daniel Povey).  Apache 2.0.
  # this is as train_tanh3.sh but for on top of fbank feats-- we have block-diagonal
  # transforms for the first few layers, on separate frequency bands.
  # Otherwise it's tanh.
  
  # Begin configuration section.
  cmd=run.pl
  num_epochs=15      # Number of epochs during which we reduce
                     # the learning rate; number of iteration is worked out from this.
  num_epochs_extra=5 # Number of epochs after we stop reducing
                     # the learning rate.
  num_iters_final=20 # Maximum number of final iterations to give to the
                     # optimization over the validation set.
  initial_learning_rate=0.04
  final_learning_rate=0.004
  bias_stddev=0.0
  shrink_interval=5 # shrink every $shrink_interval iters except while we are 
                    # still adding layers, when we do it every iter.
  shrink=true
  num_frames_shrink=2000 # note: must be <= --num-frames-diagnostic option to get_egs.sh, if
                         # given.
  softmax_learning_rate_factor=0.5 # Train this layer half as fast as the other layers.
  
  hidden_layer_dim=300 #  You may want this larger, e.g. 1024 or 2048.
  
  minibatch_size=128 # by default use a smallish minibatch size for neural net
                     # training; this controls instability which would otherwise
                     # be a problem with multi-threaded update.  Note: it also
                     # interacts with the "preconditioned" update which generally
                     # works better with larger minibatch size, so it's not
                     # completely cost free.
  
  samples_per_iter=200000 # each iteration of training, see this many samples
                          # per job.  This option is passed to get_egs.sh
  num_jobs_nnet=16   # Number of neural net jobs to run in parallel.  This option
                     # is passed to get_egs.sh.
  get_egs_stage=0
  spk_vecs_dir=
  
  shuffle_buffer_size=5000 # This "buffer_size" variable controls randomization of the samples
                  # on each iter.  You could set it to 0 or to a large value for complete
                  # randomization, but this would both consume memory and cause spikes in
                  # disk I/O.  Smaller is easier on disk and memory but less random.  It's
                  # not a huge deal though, as samples are anyway randomized right at the start.
  
  add_layers_period=2 # by default, add new layers every 2 iterations.
  
  num_block_layers=2
  num_normal_layers=2
  block_size=10
  block_shift=5
  
  stage=-5
  
  io_opts="-tc 5" # for jobs with a lot of I/O, limits the number running at one time. 
  splice_width=7 # meaning +- 7 frames on each side for second LDA
  randprune=4.0 # speeds up LDA.
  alpha=4.0
  max_change=10.0
  mix_up=0 # Number of components to mix up to (should be > #tree leaves, if
          # specified.)
  num_threads=16
  parallel_opts="-pe smp $num_threads"  # using a smallish #threads by default, out of stability concerns.
    # note: parallel_opts doesn't automatically get adjusted if you adjust num-threads.
  cleanup=true
  egs_dir=
  lda_opts=
  egs_opts=
  # End configuration section.
  
  
  echo "$0 $@"  # Print the command line for logging
  
  if [ -f path.sh ]; then . ./path.sh; fi
  . parse_options.sh || exit 1;
  
  
  if [ $# != 4 ]; then
    echo "Usage: $0 [opts] <data> <lang> <ali-dir> <exp-dir>"
    echo " e.g.: $0 data/train data/lang exp/tri3_ali exp/tri4_nnet"
    echo ""
    echo "Main options (for others, see top of script file)"
    echo "  --config <config-file>                           # config file containing options"
    echo "  --cmd (utils/run.pl|utils/queue.pl <queue opts>) # how to run jobs."
    echo "  --num-epochs <#epochs|15>                        # Number of epochs of main training"
    echo "                                                   # while reducing learning rate (determines #iterations, together"
    echo "                                                   # with --samples-per-iter and --num-jobs-nnet)"
    echo "  --num-epochs-extra <#epochs-extra|5>             # Number of extra epochs of training"
    echo "                                                   # after learning rate fully reduced"
    echo "  --initial-learning-rate <initial-learning-rate|0.02> # Learning rate at start of training, e.g. 0.02 for small"
    echo "                                                       # data, 0.01 for large data"
    echo "  --final-learning-rate  <final-learning-rate|0.004>   # Learning rate at end of training, e.g. 0.004 for small"
    echo "                                                   # data, 0.001 for large data"
    echo "  --num-hidden-layers <#hidden-layers|2>           # Number of hidden layers, e.g. 2 for 3 hours of data, 4 for 100hrs"
    echo "  --initial-num-hidden-layers <#hidden-layers|1>   # Number of hidden layers to start with."
    echo "  --add-layers-period <#iters|2>                   # Number of iterations between adding hidden layers"
    echo "  --mix-up <#pseudo-gaussians|0>                   # Can be used to have multiple targets in final output layer,"
    echo "                                                   # per context-dependent state.  Try a number several times #states."
    echo "  --num-jobs-nnet <num-jobs|8>                     # Number of parallel jobs to use for main neural net"
    echo "                                                   # training (will affect results as well as speed; try 8, 16)"
    echo "                                                   # Note: if you increase this, you may want to also increase"
    echo "                                                   # the learning rate."
    echo "  --num-threads <num-threads|16>                   # Number of parallel threads per job (will affect results"
    echo "                                                   # as well as speed; may interact with batch size; if you increase"
    echo "                                                   # this, you may want to decrease the batch size."
    echo "  --parallel-opts <opts|\"-pe smp 16\">            # extra options to pass to e.g. queue.pl for processes that"
    echo "                                                   # use multiple threads."
    echo "  --io-opts <opts|\"-tc 10\">                      # Options given to e.g. queue.pl for jobs that do a lot of I/O."
    echo "  --minibatch-size <minibatch-size|128>            # Size of minibatch to process (note: product with --num-threads"
    echo "                                                   # should not get too large, e.g. >2k)."
    echo "  --samples-per-iter <#samples|400000>             # Number of samples of data to process per iteration, per"
    echo "                                                   # process."
    echo "  --splice-width <width|4>                         # Number of frames on each side to append for feature input"
    echo "                                                   # (note: we splice processed, typically 40-dimensional frames"
    echo "  --lda-dim <dim|250>                              # Dimension to reduce spliced features to with LDA"
    echo "  --num-iters-final <#iters|10>                    # Number of final iterations to give to nnet-combine-fast to "
    echo "                                                   # interpolate parameters (the weights are learned with a validation set)"
    echo "  --num-utts-subset <#utts|300>                    # Number of utterances in subsets used for validation and diagnostics"
    echo "                                                   # (the validation subset is held out from training)"
    echo "  --num-frames-diagnostic <#frames|4000>           # Number of frames used in computing (train,valid) diagnostics"
    echo "  --num-valid-frames-combine <#frames|10000>       # Number of frames used in getting combination weights at the"
    echo "                                                   # very end."
    echo "  --stage <stage|-9>                               # Used to run a partially-completed training process from somewhere in"
    echo "                                                   # the middle."
    
    exit 1;
  fi
  
  data=$1
  lang=$2
  alidir=$3
  dir=$4
  
  # Check some files.
  for f in $data/feats.scp $lang/L.fst $alidir/ali.1.gz $alidir/final.mdl $alidir/tree; do
    [ ! -f $f ] && echo "$0: no such file $f" && exit 1;
  done
  
  
  # Set some variables.
  num_leaves=`gmm-info $alidir/final.mdl 2>/dev/null | awk '/number of pdfs/{print $NF}'` || exit 1;
  
  nj=`cat $alidir/num_jobs` || exit 1;  # number of jobs in alignment dir...
  # in this dir we'll have just one job.
  sdata=$data/split$nj
  utils/split_data.sh $data $nj
  
  mkdir -p $dir/log
  echo $nj > $dir/num_jobs
  splice_opts=`cat $alidir/splice_opts 2>/dev/null`
  cp $alidir/splice_opts $dir 2>/dev/null
  cp $alidir/tree $dir
  
  
  # Get list of validation utterances. 
  awk '{print $1}' $data/utt2spk | utils/shuffle_list.pl | head -$num_utts_subset \
      > $dir/valid_uttlist || exit 1;
  awk '{print $1}' $data/utt2spk | utils/filter_scp.pl --exclude $dir/valid_uttlist | \
       head -$num_utts_subset > $dir/train_subset_uttlist || exit 1;
  
  
  if [ $stage -le -4 ]; then
    echo "$0: calling get_lda.sh"
    steps/nnet2/get_lda_block.sh --block-size $block_size --block-shift $block_shift \
      $lda_opts --splice-width $splice_width --cmd "$cmd" $data $lang $alidir $dir || exit 1;
  fi
  
  # these files will have been written by get_lda_block.sh
  feat_dim=`cat $dir/feat_dim` || exit 1;
  lda_dim=`cat $dir/lda_dim` || exit 1;
  num_blocks=`cat $dir/num_blocks` || exit 1;
  
  if [ $stage -le -3 ] && [ -z "$egs_dir" ]; then
    echo "$0: calling get_egs.sh"
    [ ! -z $spk_vecs_dir ] && spk_vecs_opt="--spk-vecs-dir $spk_vecs_dir";
    steps/nnet2/get_egs.sh $spk_vecs_opt --samples-per-iter $samples_per_iter --num-jobs-nnet $num_jobs_nnet \
        --splice-width $splice_width --stage $get_egs_stage --cmd "$cmd" $egs_opts --feat-type raw \
        $data $lang $alidir $dir || exit 1;
  fi
  
  if [ -z $egs_dir ]; then
    egs_dir=$dir/egs
  fi
  
  iters_per_epoch=`cat $egs_dir/iters_per_epoch`  || exit 1;
  ! [ $num_jobs_nnet -eq `cat $egs_dir/num_jobs_nnet` ] && \
    echo "$0: Warning: using --num-jobs-nnet=`cat $egs_dir/num_jobs_nnet` from $egs_dir"
  num_jobs_nnet=`cat $egs_dir/num_jobs_nnet`
  
  
  if [ $stage -le -2 ]; then
    echo "$0: initializing neural net";
  
    hidden_block_size=`perl -e "print int(sqrt(($hidden_layer_dim*$hidden_layer_dim)/$num_blocks));"`
    echo "Hidden block size is $hidden_block_size"
    hidden_block_dim=$[$hidden_block_size*$num_blocks]
    block_stddev=`perl -e "print 1.0/sqrt($block_size);"`
    hidden_block_stddev=`perl -e "print 1.0/sqrt($hidden_block_size);"`
    first_hidden_layer_stddev=`perl -e "print 1.0/sqrt($hidden_block_dim);"`
    stddev=`perl -e "print 1.0/sqrt($hidden_layer_dim);"`
  
    
    cat >$dir/nnet.config <<EOF
  SpliceComponent input-dim=$feat_dim left-context=$splice_width right-context=$splice_width
  FixedAffineComponent matrix=$dir/lda.mat
  BlockAffineComponentPreconditioned input-dim=$lda_dim output-dim=$hidden_block_dim alpha=$alpha learning-rate=$initial_learning_rate num-blocks=$num_blocks param-stddev=$block_stddev bias-stddev=$bias_stddev
  TanhComponent dim=$hidden_block_dim
  EOF
    for n in `seq 2 $num_block_layers`; do
      cat >>$dir/nnet.config <<EOF
  BlockAffineComponentPreconditioned input-dim=$hidden_block_dim output-dim=$hidden_block_dim alpha=$alpha num-blocks=$num_blocks learning-rate=$initial_learning_rate param-stddev=$hidden_block_stddev bias-stddev=$bias_stddev
  TanhComponent dim=$hidden_block_dim
  EOF
    done
    cat >>$dir/nnet.config <<EOF
  AffineComponentPreconditioned input-dim=$hidden_block_dim output-dim=$hidden_layer_dim alpha=$alpha max-change=$max_change learning-rate=$initial_learning_rate param-stddev=$first_hidden_layer_stddev bias-stddev=$bias_stddev
  TanhComponent dim=$hidden_layer_dim
  EOF
    for n in `seq 2 $num_normal_layers`; do
    cat >>$dir/nnet.config <<EOF
  AffineComponentPreconditioned input-dim=$hidden_layer_dim output-dim=$hidden_layer_dim alpha=$alpha max-change=$max_change learning-rate=$initial_learning_rate param-stddev=$stddev bias-stddev=$bias_stddev
  TanhComponent dim=$hidden_layer_dim
  EOF
    done
  
    cat >>$dir/nnet.config <<EOF
  AffineComponentPreconditioned input-dim=$hidden_layer_dim output-dim=$num_leaves alpha=$alpha max-change=$max_change learning-rate=$initial_learning_rate param-stddev=0 bias-stddev=0
  SoftmaxComponent dim=$num_leaves
  EOF
  
    $cmd $dir/log/nnet_init.log \
      nnet-am-init $alidir/tree $lang/topo "nnet-init $dir/nnet.config -|" \
      $dir/0.mdl || exit 1;
  fi
  
  if [ $stage -le -1 ]; then
    echo "Training transition probabilities and setting priors"
    $cmd $dir/log/train_trans.log \
      nnet-train-transitions $dir/0.mdl "ark:gunzip -c $alidir/ali.*.gz|" $dir/0.mdl \
      || exit 1;
  fi
  
  num_iters_reduce=$[$num_epochs * $iters_per_epoch];
  num_iters_extra=$[$num_epochs_extra * $iters_per_epoch];
  num_iters=$[$num_iters_reduce+$num_iters_extra]
  
  echo "$0: Will train for $num_epochs + $num_epochs_extra epochs, equalling "
  echo "$0: $num_iters_reduce + $num_iters_extra = $num_iters iterations, "
  echo "$0: (while reducing learning rate) + (with constant learning rate)."
  
  # This is when we decide to mix up from: halfway between when we've finished
  # adding the hidden layers and the end of training.
  mix_up_iter=$[$num_iters/2]
  
  x=0
  while [ $x -lt $num_iters ]; do
    if [ $x -ge 0 ] && [ $stage -le $x ]; then
      # Set off jobs doing some diagnostics, in the background.
      $cmd $dir/log/compute_prob_valid.$x.log \
        nnet-compute-prob $dir/$x.mdl ark:$egs_dir/valid_diagnostic.egs &
      $cmd $dir/log/compute_prob_train.$x.log \
        nnet-compute-prob $dir/$x.mdl ark:$egs_dir/train_diagnostic.egs &
      if [ $x -gt 0 ] && [ ! -f $dir/log/mix_up.$[$x-1].log ]; then
        $cmd $dir/log/progress.$x.log \
          nnet-show-progress $dir/$[$x-1].mdl $dir/$x.mdl ark:$egs_dir/train_diagnostic.egs &
      fi
      
      echo "Training neural net (pass $x)"
      mdl=$dir/$x.mdl
      
      $cmd $parallel_opts JOB=1:$num_jobs_nnet $dir/log/train.$x.JOB.log \
        nnet-shuffle-egs --buffer-size=$shuffle_buffer_size --srand=$x \
        ark:$egs_dir/egs.JOB.$[$x%$iters_per_epoch].ark ark:- \| \
        nnet-train-parallel --num-threads=$num_threads \
           --minibatch-size=$minibatch_size --srand=$x "$mdl" \
          ark:- $dir/$[$x+1].JOB.mdl \
        || exit 1;
  
      nnets_list=
      for n in `seq 1 $num_jobs_nnet`; do
        nnets_list="$nnets_list $dir/$[$x+1].$n.mdl"
      done
  
      learning_rate=`perl -e '($x,$n,$i,$f)=@ARGV; print ($x >= $n ? $f : $i*exp($x*log($f/$i)/$n));' $[$x+1] $num_iters_reduce $initial_learning_rate $final_learning_rate`;
      softmax_learning_rate=`perl -e "print $learning_rate * $softmax_learning_rate_factor;"`;
      nnet-am-info $dir/$[$x+1].1.mdl > $dir/foo  2>/dev/null || exit 1
      nu=`cat $dir/foo | grep num-updatable-components | awk '{print $2}'`
      na=`cat $dir/foo | grep -v Fixed | grep AffineComponent | wc -l` 
      # na is number of last updatable AffineComponent layer [one-based, counting only
      # updatable components.]
      lr_string="$learning_rate"
      for n in `seq 2 $nu`; do 
        if [ $n -eq $na ] || [ $n -eq $[$na-1] ]; then lr=$softmax_learning_rate;
        else lr=$learning_rate; fi
        lr_string="$lr_string:$lr"
      done
      
      $cmd $dir/log/average.$x.log \
        nnet-am-average $nnets_list - \| \
        nnet-am-copy --learning-rates=$lr_string - $dir/$[$x+1].mdl || exit 1;
  
      if $shrink && [ $[$x % $shrink_interval] -eq 0 ]; then
        mb=$[($num_frames_shrink+$num_threads-1)/$num_threads]
        $cmd $parallel_opts $dir/log/shrink.$x.log \
          nnet-subset-egs --n=$num_frames_shrink --randomize-order=true --srand=$x \
            ark:$egs_dir/train_diagnostic.egs ark:-  \| \
          nnet-combine-fast --num-threads=$num_threads --verbose=3 --minibatch-size=$mb \
            $dir/$[$x+1].mdl ark:- $dir/$[$x+1].mdl || exit 1;
      else
        # On other iters, do nnet-am-fix which is much faster and has roughly
        # the same effect.
        nnet-am-fix $dir/$[$x+1].mdl $dir/$[$x+1].mdl 2>$dir/log/fix.$x.log 
      fi
  
      if [ "$mix_up" -gt 0 ] && [ $x -eq $mix_up_iter ]; then
        # mix up.
        echo Mixing up from $num_leaves to $mix_up components
        $cmd $dir/log/mix_up.$x.log \
          nnet-am-mixup --min-count=10 --num-mixtures=$mix_up \
          $dir/$[$x+1].mdl $dir/$[$x+1].mdl || exit 1;
      fi
      rm $nnets_list
    fi
    x=$[$x+1]
  done
  
  # Now do combination.
  # At the end, final.mdl will be a combination of the last e.g. 10 models.
  nnets_list=()
  if [ $num_iters_final -gt $num_iters_extra ]; then
    echo "Setting num_iters_final=$num_iters_extra"
  fi
  start=$[$num_iters-$num_iters_final+1]
  for x in `seq $start $num_iters`; do
    idx=$[$x-$start]
    if [ $x -gt $mix_up_iter ]; then
      nnets_list[$idx]=$dir/$x.mdl # "nnet-am-copy --remove-dropout=true $dir/$x.mdl - |"
    fi
  done
  
  if [ $stage -le $num_iters ]; then
    num_egs=`nnet-copy-egs ark:$egs_dir/combine.egs ark:/dev/null 2>&1 | tail -n 1 | awk '{print $NF}'`
    mb=$[($num_egs+$num_threads-1)/$num_threads]
    $cmd $parallel_opts $dir/log/combine.log \
      nnet-combine-fast --num-threads=$num_threads --verbose=3 --minibatch-size=$mb \
      "${nnets_list[@]}" ark:$egs_dir/combine.egs $dir/final.mdl || exit 1;
  fi
  
  # Compute the probability of the final, combined model with
  # the same subset we used for the previous compute_probs, as the
  # different subsets will lead to different probs.
  $cmd $dir/log/compute_prob_valid.final.log \
    nnet-compute-prob $dir/final.mdl ark:$egs_dir/valid_diagnostic.egs &
  $cmd $dir/log/compute_prob_train.final.log \
    nnet-compute-prob $dir/final.mdl ark:$egs_dir/train_diagnostic.egs &
  
  sleep 2
  
  echo Done
  
  if $cleanup; then
    echo Cleaning up data
    if [ $egs_dir == "$dir/egs" ]; then
      echo Removing training examples
      rm $dir/egs/egs*
    fi
    echo Removing most of the models
    for x in `seq 0 $num_iters`; do
      if [ $[$x%10] -ne 0 ] && [ $x -lt $[$num_iters-$num_iters_final+1] ]; then 
         # delete all but every 10th model; don't delete the ones which combine to form the final model.
        rm $dir/$x.mdl
      fi
    done
  fi