#!/usr/bin/env bash . ./path.sh || exit 1; # machines configuration CUDA_VISIBLE_DEVICES="7" gpu_num=$(echo $CUDA_VISIBLE_DEVICES | awk -F "," '{print NF}') count=1 # general configuration simu_feats_dir="/nfs/wangjiaming.wjm/EEND_ARK_DATA/dump/simu_data/data" simu_feats_dir_chunk2000="/nfs/wangjiaming.wjm/EEND_ARK_DATA/dump/simu_data_chunk2000/data" callhome_feats_dir_chunk2000="/nfs/wangjiaming.wjm/EEND_ARK_DATA/dump/callhome_chunk2000/data" simu_train_dataset=train simu_valid_dataset=dev callhome_train_dataset=callhome1_allspk callhome_valid_dataset=callhome2_allspk callhome2_wav_scp_file=wav.scp # model average simu_average_2spkr_start=91 simu_average_2spkr_end=100 simu_average_allspkr_start=16 simu_average_allspkr_end=25 callhome_average_start=91 callhome_average_end=100 exp_dir="." input_size=345 stage=5 stop_stage=5 # exp tag tag="exp1" . local/parse_options.sh || exit 1; # Set bash to 'debug' mode, it will exit on : # -e 'error', -u 'undefined variable', -o ... 'error in pipeline', -x 'print commands', set -e set -u set -o pipefail simu_2spkr_diar_config=conf/train_diar_eend_ola_simu_2spkr.yaml simu_allspkr_diar_config=conf/train_diar_eend_ola_simu_allspkr.yaml simu_allspkr_chunk2000_diar_config=conf/train_diar_eend_ola_simu_allspkr_chunk2000.yaml callhome_diar_config=conf/train_diar_eend_ola_callhome_chunk2000.yaml simu_2spkr_model_dir="baseline_$(basename "${simu_2spkr_diar_config}" .yaml)_${tag}" simu_allspkr_model_dir="baseline_$(basename "${simu_allspkr_diar_config}" .yaml)_${tag}" simu_allspkr_chunk2000_model_dir="baseline_$(basename "${simu_allspkr_chunk2000_diar_config}" .yaml)_${tag}" callhome_model_dir="baseline_$(basename "${callhome_diar_config}" .yaml)_${tag}" # simulate mixture data for training and inference if [ ${stage} -le -1 ] && [ ${stop_stage} -ge -1 ]; then echo "stage -1: Simulate mixture data for training and inference" echo "The detail can be found in https://github.com/hitachi-speech/EEND" echo "Before running this step, you should download and compile kaldi and set KALDI_ROOT in this script and path.sh" echo "This stage may take a long time, please waiting..." KALDI_ROOT= ln -s $KALDI_ROOT/egs/wsj/s5/steps steps ln -s $KALDI_ROOT/egs/wsj/s5/utils utils local/run_prepare_shared_eda.sh fi ## Prepare data for training and inference #if [ ${stage} -le 0 ] && [ ${stop_stage} -ge 0 ]; then # echo "stage 0: Prepare data for training and inference" # echo "The detail can be found in https://github.com/hitachi-speech/EEND" # . ./local/ #fi # # Training on simulated two-speaker data world_size=$gpu_num simu_2spkr_ave_id=avg${simu_average_2spkr_start}-${simu_average_2spkr_end} if [ ${stage} -le 1 ] && [ ${stop_stage} -ge 1 ]; then echo "stage 1: Training on simulated two-speaker data" mkdir -p ${exp_dir}/exp/${simu_2spkr_model_dir} mkdir -p ${exp_dir}/exp/${simu_2spkr_model_dir}/log INIT_FILE=${exp_dir}/exp/${simu_2spkr_model_dir}/ddp_init if [ -f $INIT_FILE ];then rm -f $INIT_FILE fi init_method=file://$(readlink -f $INIT_FILE) echo "$0: init method is $init_method" for ((i = 0; i < $gpu_num; ++i)); do { rank=$i local_rank=$i gpu_id=$(echo $CUDA_VISIBLE_DEVICES | cut -d',' -f$[$i+1]) train.py \ --task_name diar \ --gpu_id $gpu_id \ --use_preprocessor false \ --input_size $input_size \ --data_dir ${simu_feats_dir} \ --train_set ${simu_train_dataset} \ --valid_set ${simu_valid_dataset} \ --data_file_names "feats_2spkr.scp" \ --resume true \ --output_dir ${exp_dir}/exp/${simu_2spkr_model_dir} \ --config $simu_2spkr_diar_config \ --ngpu $gpu_num \ --num_worker_count $count \ --dist_init_method $init_method \ --dist_world_size $world_size \ --dist_rank $rank \ --local_rank $local_rank 1> ${exp_dir}/exp/${simu_2spkr_model_dir}/log/train.log.$i 2>&1 } & done wait echo "averaging model parameters into ${exp_dir}/exp/$simu_2spkr_model_dir/$simu_2spkr_ave_id.pb" models=`eval echo ${exp_dir}/exp/${simu_2spkr_model_dir}/{$simu_average_2spkr_start..$simu_average_2spkr_end}epoch.pb` python local/model_averaging.py ${exp_dir}/exp/${simu_2spkr_model_dir}/$simu_2spkr_ave_id.pb $models fi # Training on simulated all-speaker data world_size=$gpu_num simu_allspkr_ave_id=avg${simu_average_allspkr_start}-${simu_average_allspkr_end} if [ ${stage} -le 2 ] && [ ${stop_stage} -ge 2 ]; then echo "stage 2: Training on simulated all-speaker data" mkdir -p ${exp_dir}/exp/${simu_allspkr_model_dir} mkdir -p ${exp_dir}/exp/${simu_allspkr_model_dir}/log INIT_FILE=${exp_dir}/exp/${simu_allspkr_model_dir}/ddp_init if [ -f $INIT_FILE ];then rm -f $INIT_FILE fi init_method=file://$(readlink -f $INIT_FILE) echo "$0: init method is $init_method" for ((i = 0; i < $gpu_num; ++i)); do { rank=$i local_rank=$i gpu_id=$(echo $CUDA_VISIBLE_DEVICES | cut -d',' -f$[$i+1]) train.py \ --task_name diar \ --gpu_id $gpu_id \ --use_preprocessor false \ --input_size $input_size \ --data_dir ${simu_feats_dir} \ --train_set ${simu_train_dataset} \ --valid_set ${simu_valid_dataset} \ --data_file_names "feats.scp" \ --resume true \ --init_param ${exp_dir}/exp/${simu_2spkr_model_dir}/$simu_2spkr_ave_id.pb \ --output_dir ${exp_dir}/exp/${simu_allspkr_model_dir} \ --config $simu_allspkr_diar_config \ --ngpu $gpu_num \ --num_worker_count $count \ --dist_init_method $init_method \ --dist_world_size $world_size \ --dist_rank $rank \ --local_rank $local_rank 1> ${exp_dir}/exp/${simu_allspkr_model_dir}/log/train.log.$i 2>&1 } & done wait echo "averaging model parameters into ${exp_dir}/exp/$simu_allspkr_model_dir/$simu_allspkr_ave_id.pb" models=`eval echo ${exp_dir}/exp/${simu_allspkr_model_dir}/{$simu_average_allspkr_start..$simu_average_allspkr_end}epoch.pb` python local/model_averaging.py ${exp_dir}/exp/${simu_allspkr_model_dir}/$simu_allspkr_ave_id.pb $models fi # Training on simulated all-speaker data with chunk_size=2000 world_size=$gpu_num if [ ${stage} -le 3 ] && [ ${stop_stage} -ge 3 ]; then echo "stage 3: Training on simulated all-speaker data with chunk_size=2000" mkdir -p ${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir} mkdir -p ${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir}/log INIT_FILE=${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir}/ddp_init if [ -f $INIT_FILE ];then rm -f $INIT_FILE fi init_method=file://$(readlink -f $INIT_FILE) echo "$0: init method is $init_method" for ((i = 0; i < $gpu_num; ++i)); do { rank=$i local_rank=$i gpu_id=$(echo $CUDA_VISIBLE_DEVICES | cut -d',' -f$[$i+1]) train.py \ --task_name diar \ --gpu_id $gpu_id \ --use_preprocessor false \ --input_size $input_size \ --data_dir ${simu_feats_dir_chunk2000} \ --train_set ${simu_train_dataset} \ --valid_set ${simu_valid_dataset} \ --data_file_names "feats.scp" \ --resume true \ --init_param ${exp_dir}/exp/${simu_allspkr_model_dir}/$simu_allspkr_ave_id.pb \ --output_dir ${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir} \ --config $simu_allspkr_chunk2000_diar_config \ --ngpu $gpu_num \ --num_worker_count $count \ --dist_init_method $init_method \ --dist_world_size $world_size \ --dist_rank $rank \ --local_rank $local_rank 1> ${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir}/log/train.log.$i 2>&1 } & done wait fi # Training on callhome all-speaker data with chunk_size=2000 world_size=$gpu_num callhome_ave_id=avg${callhome_average_start}-${callhome_average_end} if [ ${stage} -le 4 ] && [ ${stop_stage} -ge 4 ]; then echo "stage 4: Training on callhome all-speaker data with chunk_size=2000" mkdir -p ${exp_dir}/exp/${callhome_model_dir} mkdir -p ${exp_dir}/exp/${callhome_model_dir}/log INIT_FILE=${exp_dir}/exp/${callhome_model_dir}/ddp_init if [ -f $INIT_FILE ];then rm -f $INIT_FILE fi init_method=file://$(readlink -f $INIT_FILE) echo "$0: init method is $init_method" for ((i = 0; i < $gpu_num; ++i)); do { rank=$i local_rank=$i gpu_id=$(echo $CUDA_VISIBLE_DEVICES | cut -d',' -f$[$i+1]) train.py \ --task_name diar \ --gpu_id $gpu_id \ --use_preprocessor false \ --input_size $input_size \ --data_dir ${callhome_feats_dir_chunk2000} \ --train_set ${callhome_train_dataset} \ --valid_set ${callhome_valid_dataset} \ --data_file_names "feats.scp" \ --resume true \ --init_param ${exp_dir}/exp/${simu_allspkr_chunk2000_model_dir}/1epoch.pb \ --output_dir ${exp_dir}/exp/${callhome_model_dir} \ --config $callhome_diar_config \ --ngpu $gpu_num \ --num_worker_count $count \ --dist_init_method $init_method \ --dist_world_size $world_size \ --dist_rank $rank \ --local_rank $local_rank 1> ${exp_dir}/exp/${callhome_model_dir}/log/train.log.$i 2>&1 } & done wait echo "averaging model parameters into ${exp_dir}/exp/$callhome_model_dir/$callhome_ave_id.pb" models=`eval echo ${exp_dir}/exp/${callhome_model_dir}/{$callhome_average_start..$callhome_average_end}epoch.pb` python local/model_averaging.py ${exp_dir}/exp/${callhome_model_dir}/$callhome_ave_id.pb $models fi # inference if [ ${stage} -le 5 ] && [ ${stop_stage} -ge 5 ]; then echo "Inference" mkdir -p ${exp_dir}/exp/${callhome_model_dir}/inference/log CUDA_VISIBLE_DEVICES=$CUDA_VISIBLE_DEVICES python local/infer.py \ --config_file ${exp_dir}/exp/${callhome_model_dir}/config.yaml \ --model_file ${exp_dir}/exp/${callhome_model_dir}/$callhome_ave_id.pb \ --output_rttm_file ${exp_dir}/exp/${callhome_model_dir}/inference/rttm \ --wav_scp_file ${callhome_feats_dir_chunk2000}/${callhome_valid_dataset}/${callhome2_wav_scp_file} 1> ${exp_dir}/exp/${callhome_model_dir}/inference/log/infer.log 2>&1 fi