FunASR/egs/callhome/diarization/sond/run.sh
2023-08-01 20:19:58 +08:00

1003 lines
44 KiB
Bash

#!/usr/bin/env bash
. ./path.sh || exit 1;
# This recipe aims at reimplement the results of SOND on Callhome corpus which is represented in
# [1] TOLD: A Novel Two-stage Overlap-aware Framework for Speaker Diarization, ICASSP 2023
# You can also use it on other dataset such AliMeeting to reproduce the results in
# [2] Speaker Overlap-aware Neural Diarization for Multi-party Meeting Analysis, EMNLP 2022
# We recommend you run this script stage by stage.
# environment configuration
kaldi_root=
if [ -z "${kaldi_root}" ]; then
echo "We need kaldi to prepare dataset, extract fbank features, please install kaldi first and set kaldi_root."
echo "Kaldi installation guide can be found at https://kaldi-asr.org/"
exit;
fi
if [ ! -e local ]; then
ln -s ${kaldi_root}/egs/callhome_diarization/v2/local ./local
fi
if [ ! -e utils ]; then
ln -s ${kaldi_root}/egs/callhome_diarization/v2/utils ./utils
fi
# machines configuration
gpu_devices="6,7"
gpu_num=2
count=1
# general configuration
stage=3
stop_stage=3
# number of jobs for data process
nj=16
sr=8000
# dataset related
data_root=
# experiment configuration
lang=en
feats_type=fbank
datadir=data
dumpdir=dump
expdir=exp
train_cmd=utils/run.pl
# training related
tag=""
train_set=simu_swbd_sre
valid_set=callhome1
train_config=conf/EAND_ResNet34_SAN_L4N512_None_FFN_FSMN_L6N512_bce_dia_loss_01.yaml
token_list=${datadir}/token_list/powerset_label_n16k4.txt
init_param=
freeze_param=
# inference related
inference_model=valid.der.ave_5best.pth
inference_config=conf/basic_inference.yaml
inference_tag=""
test_sets="callhome1"
gpu_inference=true # Whether to perform gpu decoding, set false for cpu decoding
# number of jobs for inference
# for gpu decoding, inference_nj=ngpu*njob; for cpu decoding, inference_nj=njob
njob=5
infer_cmd=utils/run.pl
told_max_iter=2
. utils/parse_options.sh || exit 1;
model_dir="$(basename "${train_config}" .yaml)_${feats_type}_${lang}${tag}"
# you can set gpu num for decoding here
gpuid_list=$gpu_devices # set gpus for decoding, the same as training stage by default
ngpu=$(echo $gpuid_list | awk -F "," '{print NF}')
if ${gpu_inference}; then
inference_nj=$[${ngpu}*${njob}]
_ngpu=1
else
inference_nj=$njob
_ngpu=0
fi
# Prepare datasets
if [ ${stage} -le 0 ] && [ ${stop_stage} -ge 0 ]; then
# 1. Prepare a collection of NIST SRE data.
echp "Stage 0: Prepare a collection of NIST SRE data."
local/make_sre.sh $data_root ${datadir}
# 2.a Prepare SWB.
local/make_swbd2_phase1.pl ${data_root}/LDC98S75 \
${datadir}/swbd2_phase1_train
local/make_swbd2_phase2.pl $data_root/LDC99S79 \
${datadir}/swbd2_phase2_train
local/make_swbd2_phase3.pl $data_root/LDC2002S06 \
${datadir}/swbd2_phase3_train
local/make_swbd_cellular1.pl $data_root/LDC2001S13 \
${datadir}/swbd_cellular1_train
local/make_swbd_cellular2.pl $data_root/LDC2004S07 \
${datadir}/swbd_cellular2_train
# 2.b combine all swbd data.
utils/combine_data.sh ${datadir}/swbd \
${datadir}/swbd2_phase1_train ${datadir}/swbd2_phase2_train ${datadir}/swbd2_phase3_train \
${datadir}/swbd_cellular1_train ${datadir}/swbd_cellular2_train
utils/validate_data_dir.sh --no-text --no-feats ${datadir}/swbd
utils/fix_data_dir.sh ${datadir}/swbd
utils/combine_data.sh ${datadir}/swbd_sre ${datadir}/swbd ${datadir}/sre
utils/validate_data_dir.sh --no-text --no-feats ${datadir}/swbd_sre
utils/fix_data_dir.sh ${datadir}/swbd_sre
# 3. Prepare the Callhome portion of NIST SRE 2000.
local/make_callhome.sh /nfs/wangjiaming.wjm/speech-data/NIST/LDC2001S97 ${datadir}/
fi
if [ ${stage} -le 1 ] && [ ${stop_stage} -ge 1 ]; then
echo "Stage 1: Dump sph file to wav"
export PATH=${kaldi_root}/tools/sph2pipe/:${PATH}
if [ ! -f ${kaldi_root}/tools/sph2pipe/sph2pipe ]; then
echo "Can not find sph2pipe in ${kaldi_root}/tools/sph2pipe/,"
echo "please install sph2pipe and put it in the right place."
exit;
fi
for dset in callhome1 callhome2 swbd_sre; do
echo "Stage 1: start to dump ${dset}."
mv ${datadir}/${dset}/wav.scp ${datadir}/${dset}/sph.scp
mkdir -p ${dumpdir}/${dset}/wavs
python -Wignore script/dump_pipe_wav.py ${datadir}/${dset}/sph.scp ${dumpdir}/${dset}/wavs \
--sr ${sr} --nj ${nj} --no_pbar
find `pwd`/${dumpdir}/${dset}/wavs -iname "*.wav" | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/${dset}/wav.scp
done
fi
if [ ${stage} -le 2 ] && [ ${stop_stage} -ge 2 ]; then
echo "Stage 2: Extract non-overlap segments from callhome dataset"
for dset in callhome1 callhome2; do
echo "Stage 2: Extracting non-overlap segments for "${dset}
mkdir -p ${dumpdir}/${dset}/nonoverlap_0s
python -Wignore script/extract_nonoverlap_segments.py \
${datadir}/${dset}/wav.scp ${datadir}/${dset}/ref.rttm ${dumpdir}/${dset}/nonoverlap_0s \
--min_dur 0 --max_spk_num 8 --sr ${sr} --no_pbar --nj ${nj}
mkdir -p ${datadir}/${dset}/nonoverlap_0s
find `pwd`/${dumpdir}/${dset}/nonoverlap_0s | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/${dset}/nonoverlap_0s/wav.scp
awk -F'[/.]' '{print $(NF-1),$(NF-2)}' ${datadir}/${dset}/nonoverlap_0s/wav.scp > ${datadir}/${dset}/nonoverlap_0s/utt2spk
echo "Done."
done
fi
if [ ${stage} -le 3 ] && [ ${stop_stage} -ge 3 ]; then
echo "Stage 3: Generate concatenated waveforms for each speaker in switchboard, sre and callhome1"
mkdir swb_sre_resources
wget --no-check-certificate -P swb_sre_resources/ https://isv-data.oss-cn-hangzhou.aliyuncs.com/ics/MaaS/Speaker_Diar/swb_sre_resources/noise.scp
wget --no-check-certificate -P swb_sre_resources/ https://isv-data.oss-cn-hangzhou.aliyuncs.com/ics/MaaS/Speaker_Diar/swb_sre_resources/swbd_sre_tdnn_vad_segments
mkdir ${datadir}/swbd_sre/none_silence
ln -s swb_sre_resources/swbd_sre_tdnn_vad_segments ${datadir}/swbd_sre/none_silence/segments
cp ${datadir}/swbd_sre/wav.scp ${datadir}/swbd_sre/none_silence/reco.scp
mkdir -p ${dumpdir}/swbd_sre/none_silence
python -Wignore script/remove_silence_from_wav.py \
${datadir}/swbd_sre/none_silence ${dumpdir}/swbd_sre/none_silence --nj ${nj} --sr 8000
# The utterance number in wav.scp may be different from reco.scp,
# since some recordings don't appear in the segments file, may due to the VAD
echo "find wavs_nosil"
find `pwd`/${dumpdir}/swbd_sre/none_silence -iname "*.wav" | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/swbd_sre/none_silence/wav.scp
echo "concat spk segments"
ln -s ${datadir}/swbd_sre/utt2spk ${datadir}/swbd_sre/none_silence/utt2spk
echo "Stage 3: Start to concatnate waveforms for speakers in switchboard and sre"
python -Wignore egs/callhome/concat_spk_segs.py \
${datadir}/swbd_sre/none_silence ${dumpdir}/swbd_sre/spk_wavs --nj ${nj} --sr 8000
echo "Stage 3: Start to concatnate waveforms for speakers in callhome1"
# only use callhome1 as training set to simulate data
python -Wignore egs/callhome/concat_spk_segs.py \
${datadir}/callhome1/nonoverlap_0s ${dumpdir}/callhome1/spk_wavs --nj ${nj} --sr 8000
fi
# simulate data with the pattern of callhome1
if [ ${stage} -le 4 ] && [ ${stop_stage} -ge 4 ]; then
echo "Stage 4: Start to simulate recordings."
if [ ! -e ${dumpdir}/musan ]; then
echo "Stage 4-1: Start to download MUSAN noises from openslr"
wget --no-check-certificate -P ${dumpdir}/musan https://www.openslr.org/resources/17/musan.tar.gz
tar -C ${dumpdir}/musan -xvf ${dumpdir}/musan/musan.tar.gz
fi
if [ ! -e ${dumpdir}/rirs ]; then
echo "Stage 4-2: Start to download RIRs from openslr"
wget --no-check-certificate -P ${dumpdir}/rirs https://www.openslr.org/resources/28/rirs_noises.zip
unzip ${dumpdir}/rirs/rirs_noises.zip -d ${dumpdir}/rirs
fi
mkdir -p ${datadir}/simu_swbd_sre
# only use background noises instead of all noises in MUSAN.
sed "s:/path/to/musan/:`pwd`/${dumpdir}/musan/:g" swb_sre_resources/noise.scp > ${datadir}/simu_swbd_sre/noise.scp
# use simulated RIRs.
find `pwd`/${dumpdir}/rirs/RIRS_NOISES/simulated_rirs/ -iname "*.wav" | sort | awk -F'[/.]' '{print $(NF-3)"-"$(NF-1), $0}' > ${datadir}/simu_swbd_sre/rirs.scp
cp ${datadir}/callhome1/{ref.rttm,reco2num_spk} ${datadir}/simu_swbd_sre
find `pwd`/${dumpdir}/swbd_sre/spk_wavs -iname "*.wav" | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/simu_swbd_sre/spk2wav.scp
echo "Stage 4-3: Start to simulate recordings with variable speakers as Callhome1 patterns."
# average duration of callhome is 125s, about 20 chunk with silence
# simulating 22500 (45 jobs x 500 reco) recordings, without random_assign and random_shift_interval
for i in $(seq 0 44); do
cmd="python -Wignore egs/callhome/simu_whole_recordings.py \
${datadir}/simu_swbd_sre \
${dumpdir}/simu_swbd_sre/wavs \
--corpus_name simu_swbd_sre --task_id $i --total_mix 500 --sr 8000 --no_bar &"
echo $cmd
eval $cmd
done
wait;
echo "Stage 4-4: Start to simulate recordings with fixed speakers as Callhome1 patterns."
# simulating 30000 (30 jobs x 1000 reco) recordings for different speaker number 2, 3, 4
for n_spk in $(seq 2 4); do
mkdir -p /home/neo.dzh/corpus/simu_swbd_sre/${n_spk}spk_wavs
for i in $(seq 0 29); do
cmd="python -Wignore egs/callhome/simu_whole_recordings.py \
${datadir}/simu_swbd_sre \
${dumpdir}/simu_swbd_sre/${n_spk}spk_wavs \
--random_assign_spk --random_interval --spk_num ${n_spk} \
--corpus_name simu_swbd_sre --task_id $i --total_mix 1000 --sr 8000 --no_bar &"
echo $cmd
eval $cmd
done
wait;
done
find `pwd`/${dumpdir}/simu_swbd_sre -iname "*.wav" | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/simu_swbd_sre/wav.scp
awk '{print $1,$1}' ${datadir}/simu_swbd_sre/wav.scp > ${datadir}/simu_swbd_sre/utt2spk
find `pwd`/${dumpdir}/simu_swbd_sre -iname "*.rttm" | sort | awk -F'[/.]' '{print $(NF-1),$0}' > ${datadir}/simu_swbd_sre/rttm.scp
fi
if [ ${stage} -le 5 ] && [ ${stop_stage} -ge 5 ]; then
echo "Stage 5: Generate fbank features"
home_path=`pwd`
cd ${kaldi_root}/egs/callhome_diarization/v2 || exit
. ./cmd.sh
. ./path.sh
for dset in simu_swbd_sre callhome1 callhome2; do
steps/make_fbank.sh --write-utt2num-frames true --fbank-config conf/fbank.conf --nj ${nj} --cmd "$train_cmd" \
${datadir}/${dset} ${expdir}/make_fbank/${dset} ${dumpdir}/${dset}/fbank
utils/fix_data_dir.sh ${datadir}/${dset}
done
for dset in swbd_sre/none_silence callhome1/nonoverlap_0s callhome2/nonoverlap_0s; do
steps/make_fbank.sh --write-utt2num-frames true --fbank-config conf/fbank.conf --nj ${nj} --cmd "$train_cmd" \
${datadir}/${dset} ${expdir}/make_fbank/${dset} ${dumpdir}/${dset}/fbank
utils/fix_data_dir.sh ${datadir}/${dset}
done
cd ${home_path} || exit
fi
if [ ${stage} -le 6 ] && [ ${stop_stage} -ge 6 ]; then
echo "Stage 6: Extract speaker embeddings."
git lfs install
git clone https://www.modelscope.cn/damo/speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch.git
mv speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch ${expdir}/
sv_exp_dir=exp/speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch
sed "s/input_size: null/input_size: 80/g" ${sv_exp_dir}/sv.yaml > ${sv_exp_dir}/sv_fbank.yaml
for dset in swbd_sre/none_silence callhome1/nonoverlap_0s callhome2/nonoverlap_0s; do
key_file=${datadir}/${dset}/feats.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
_logdir=${dumpdir}/${dset}/xvecs
mkdir -p ${_logdir}
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/sv_inference.JOB.log \
python -m funasr.bin.sv_inference_launch \
--batch_size 1 \
--ngpu "${_ngpu}" \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${key_file},speech,kaldi_ark" \
--key_file "${_logdir}"/keys.JOB.scp \
--sv_train_config ${sv_exp_dir}/sv_fbank.yaml \
--sv_model_file ${sv_exp_dir}/sv.pth \
--output_dir "${_logdir}"/output.JOB
cat ${_logdir}/output.*/xvector.scp | sort > ${datadir}/${dset}/utt2xvec
done
fi
if [ ${stage} -le 7 ] && [ ${stop_stage} -ge 7 ]; then
echo "Stage 7: Generate label files."
for dset in simu_swbd_sre callhome1 callhome2; do
echo "Stage 7: Generate labels for ${dset}."
python -Wignore script/calc_real_meeting_frame_labels.py \
${datadir}/${dset} ${dumpdir}/${dset}/labels \
--n_spk 8 --frame_shift 0.01 --nj 16 --sr 8000
find `pwd`/${dumpdir}/${dset}/labels -iname "*.lbl.mat" | awk -F'[/.]' '{print $(NF-2),$0}' | sort > ${datadir}/${dset}/labels.scp
done
fi
if [ ${stage} -le 8 ] && [ ${stop_stage} -ge 8 ]; then
echo "Stage 8: Make training and evaluation files."
# dump simulated data in training mode (randomly shuffle the speaker order).
data_dir=${datadir}/simu_swbd_sre/files_for_dump
mkdir ${data_dir}
cp ${datadir}/simu_swbd_sre/{feats.scp,labels.scp} ${data_dir}/
cp ${datadir}/swbd_sre/none_silence/{utt2spk,utt2xvec,utt2num_frames} ${data_dir}/
# dump data with the window length of 1600 frames and hop length of 400 frames.
echo "Stage 8: start to dump for simu_swbd_sre."
for i in $(seq 0 49); do
cmd="python -Wignore script/dump_meeting_chunks.py --dir ${data_dir} \
--out ${dumpdir}/simu_swbd_sre/dumped_files/data --n_spk 16 --no_pbar --sr 8000 --mode train \
--chunk_size 1600 --chunk_shift 400 \
--task_id ${i} --task_size 2250 &"
echo $cmd
eval $cmd
done
wait;
mkdir -p ${datadir}/simu_swbd_sre/dumped_files
cat ${dumpdir}/simu_swbd_sre/dumped_files/data_parts*_feat.scp | sort > ${datadir}/simu_swbd_sre/dumped_files/feats.scp
cat ${dumpdir}/simu_swbd_sre/dumped_files/data_parts*_xvec.scp | sort > ${datadir}/simu_swbd_sre/dumped_files/profile.scp
cat ${dumpdir}/simu_swbd_sre/dumped_files/data_parts*_label.scp | sort > ${datadir}/simu_swbd_sre/dumped_files/label.scp
mkdir -p ${expdir}/simu_swbd_sre_states
awk '{print $1,"1600"}' ${datadir}/simu_swbd_sre/dumped_files/feats.scp | shuf > ${expdir}/simu_swbd_sre_states/speech_shape
# dump callhome1 data in training mode.
data_dir=${datadir}/callhome1/files_for_dump
mkdir ${data_dir}
# filter out zero duration segments
LC_ALL=C awk '{if ($5 > 0){print $0}}' ${datadir}/callhome1/ref.rttm > ${data_dir}/ref.rttm
cp ${datadir}/callhome1/{feats.scp,labels.scp} ${data_dir}/
cp ${datadir}/callhome1/nonoverlap_0s/{utt2spk,utt2xvec,utt2num_frames} ${data_dir}/
echo "Stage 8: start to dump for callhome1."
python -Wignore script/dump_meeting_chunks.py --dir ${data_dir} \
--out ${dumpdir}/callhome1/dumped_files/data --n_spk 16 --no_pbar --sr 8000 --mode test \
--chunk_size 1600 --chunk_shift 400 --add_mid_to_speaker true
mkdir -p ${datadir}/callhome1/dumped_files
cat ${dumpdir}/callhome1/dumped_files/data_parts*_feat.scp | sort > ${datadir}/callhome1/dumped_files/feats.scp
cat ${dumpdir}/callhome1/dumped_files/data_parts*_xvec.scp | sort > ${datadir}/callhome1/dumped_files/profile.scp
cat ${dumpdir}/callhome1/dumped_files/data_parts*_label.scp | sort > ${datadir}/callhome1/dumped_files/label.scp
mkdir -p ${expdir}/callhome1_states
awk '{print $1,"1600"}' ${datadir}/callhome1/dumped_files/feats.scp | shuf > ${expdir}/callhome1_states/speech_shape
python -Wignore script/convert_rttm_to_seg_file.py --rttm_scp ${data_dir}/ref.rttm --seg_file ${data_dir}/org_vad.txt
# dump callhome2 data in test mode.
data_dir=${datadir}/callhome2/files_for_dump
mkdir ${data_dir}
# filter out zero duration segments
LC_ALL=C awk '{if ($5 > 0){print $0}}' ${datadir}/callhome2/ref.rttm > ${data_dir}/ref.rttm
cp ${datadir}/callhome2/{feats.scp,labels.scp} ${data_dir}/
cp ${datadir}/callhome2/nonoverlap_0s/{utt2spk,utt2xvec,utt2num_frames} ${data_dir}/
echo "Stage 8: start to dump for callhome2."
python -Wignore script/dump_meeting_chunks.py --dir ${data_dir} \
--out ${dumpdir}/callhome2/dumped_files/data --n_spk 16 --no_pbar --sr 8000 --mode test \
--chunk_size 1600 --chunk_shift 400 --add_mid_to_speaker true
mkdir -p ${datadir}/callhome2/dumped_files
cat ${dumpdir}/callhome2/dumped_files/data_parts*_feat.scp | sort > ${datadir}/callhome2/dumped_files/feats.scp
cat ${dumpdir}/callhome2/dumped_files/data_parts*_xvec.scp | sort > ${datadir}/callhome2/dumped_files/profile.scp
cat ${dumpdir}/callhome2/dumped_files/data_parts*_label.scp | sort > ${datadir}/callhome2/dumped_files/label.scp
mkdir -p ${expdir}/callhome2_states
awk '{print $1,"1600"}' ${datadir}/callhome2/dumped_files/feats.scp | shuf > ${expdir}/callhome2_states/speech_shape
python -Wignore script/convert_rttm_to_seg_file.py --rttm_scp ${data_dir}/ref.rttm --seg_file ${data_dir}/org_vad.txt
fi
# Training Stage, phase 1, pretraining on simulated data with frozen encoder parameters.
# This training may cost about 1.8 days.
if [ ${stage} -le 10 ] && [ ${stop_stage} -ge 10 ]; then
echo "stage 10: training phase 1, pretraining on simulated data"
world_size=$gpu_num # run on one machine
mkdir -p ${expdir}/${model_dir}
mkdir -p ${expdir}/${model_dir}/log
mkdir -p /tmp/${model_dir}
INIT_FILE=/tmp/${model_dir}/ddp_init
if [ -f $INIT_FILE ];then
rm -f $INIT_FILE
fi
init_opt=""
if [ ! -z "${init_param}" ]; then
init_opt="--init_param ${init_param}"
echo ${init_opt}
fi
freeze_opt=""
if [ ! -z "${freeze_param}" ]; then
freeze_opt="--freeze_param ${freeze_param}"
echo ${freeze_opt}
fi
init_method=file://$(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 $gpu_devices | cut -d',' -f$[$i+1])
diar_train.py \
--gpu_id $gpu_id \
--use_preprocessor false \
--token_type char \
--token_list $token_list \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/feats.scp,speech,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/profile.scp,profile,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--train_shape_file ${expdir}/${train_set}_states/speech_shape \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/feats.scp,speech,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/profile.scp,profile,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--valid_shape_file ${expdir}/${valid_set}_states/speech_shape \
--init_param ${expdir}/speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch/sv.pth:encoder:encoder \
--unused_parameters true \
--freeze_param encoder \
${init_opt} \
${freeze_opt} \
--ignore_init_mismatch true \
--resume true \
--output_dir ${expdir}/${model_dir} \
--config $train_config \
--ngpu $gpu_num \
--num_worker_count $count \
--multiprocessing_distributed true \
--dist_init_method $init_method \
--dist_world_size $world_size \
--dist_rank $rank \
--local_rank $local_rank 1> ${expdir}/${model_dir}/log/train.log.$i 2>&1
} &
done
echo "Training log can be found at ${expdir}/${model_dir}/log/train.log.*"
wait
fi
# evaluate for pretrained model
if [ ${stage} -le 11 ] && [ ${stop_stage} -ge 11 ]; then
echo "stage 11: evaluation for phase-1 model."
for dset in ${test_sets}; do
echo "Processing for $dset"
exp_model_dir=${expdir}/${model_dir}
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${exp_model_dir}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
if [ -d ${_dir} ]; then
echo "WARNING: ${_dir} is already exists."
fi
mkdir -p "${_logdir}"
_data="${datadir}/${dset}/dumped_files"
key_file=${_data}/feats.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
_opt=
if [ ! -z "${inference_config}" ]; then
_opt="--config ${inference_config}"
fi
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
echo "Inference log can be found at ${_logdir}/inference.*.log"
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/inference.JOB.log \
python -m funasr.bin.diar_inference_launch \
--batch_size 1 \
--ngpu "${_ngpu}" \
--njob ${njob} \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${_data}/feats.scp,speech,kaldi_ark" \
--data_path_and_name_and_type "${_data}/profile.scp,profile,kaldi_ark" \
--key_file "${_logdir}"/keys.JOB.scp \
--diar_train_config "${exp_model_dir}"/config.yaml \
--diar_model_file "${exp_model_dir}"/"${inference_model}" \
--output_dir "${_logdir}"/output.JOB \
--mode sond ${_opt}
done
fi
# Scoring for pretrained model, you may get a DER like 13.73 16.25
# 13.73: with oracle VAD, 16.25: with only SOND outputs, aka, system VAD.
if [ ${stage} -le 12 ] && [ ${stop_stage} -ge 12 ]; then
echo "stage 12: Scoring phase-1 models"
if [ ! -e dscore ]; then
git clone https://github.com/nryant/dscore.git
# add intervaltree to setup.py
fi
for dset in ${test_sets}; do
echo "stage 12: Scoring for ${dset}"
diar_exp=${expdir}/${model_dir}
_data="${datadir}/${dset}"
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${diar_exp}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
cat ${_logdir}/*/labels.txt | sort > ${_dir}/labels.txt
cmd="python -Wignore script/convert_label_to_rttm.py ${_dir}/labels.txt ${datadir}/${dset}/files_for_dump/org_vad.txt ${_dir}/sys.rttm \
--ignore_len 10 --no_pbar --smooth_size 83 --vote_prob 0.5 --n_spk 16"
# echo ${cmd}
eval ${cmd}
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.ref_vad
OVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.sys_vad
SysVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
echo -e "${inference_model} ${OVAD_DER} ${SysVAD_DER}" | tee -a ${_dir}/results.txt
done
fi
# Training Stage, phase 2, training on simulated data without frozen parameters.
# For V100-16G, please set batch_size to 8 in the config, and use 4 GPU to train the model with options like --gpu_devices 4,5,6,7 --gpu_num 4.
# For V100-32G, please set batch_size to 16 in the config, and use 2 GPU to train the model with options like --gpu_devices 4,5,6,7 --gpu_num 2.
# This training may cost about 3.5 days.
if [ ${stage} -le 13 ] && [ ${stop_stage} -ge 13 ]; then
echo "stage 13: training phase 2, training on simulated data"
world_size=$gpu_num # run on one machine
mkdir -p ${expdir}/${model_dir}_phase2
mkdir -p ${expdir}/${model_dir}_phase2/log
mkdir -p /tmp/${model_dir}_phase2
INIT_FILE=/tmp/${model_dir}_phase2/ddp_init
if [ -f $INIT_FILE ];then
rm -f $INIT_FILE
fi
init_opt=""
if [ ! -z "${init_param}" ]; then
init_opt="--init_param ${init_param}"
echo ${init_opt}
fi
freeze_opt=""
if [ ! -z "${freeze_param}" ]; then
freeze_opt="--freeze_param ${freeze_param}"
echo ${freeze_opt}
fi
phase2_config="$(dirname "${train_config}")/$(basename "${train_config}" .yaml)_phase2.yaml"
init_method=file://$(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 $gpu_devices | cut -d',' -f$[$i+1])
diar_train.py \
--gpu_id $gpu_id \
--use_preprocessor false \
--token_type char \
--token_list $token_list \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/feats.scp,speech,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/profile.scp,profile,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${train_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--train_shape_file ${expdir}/${train_set}_states/speech_shape \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/feats.scp,speech,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/profile.scp,profile,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--valid_shape_file ${expdir}/${valid_set}_states/speech_shape \
--init_param exp/${model_dir}/valid.der.ave_5best.pth \
--unused_parameters true \
${init_opt} \
${freeze_opt} \
--ignore_init_mismatch true \
--resume true \
--output_dir ${expdir}/${model_dir}_phase2 \
--config ${phase2_config} \
--ngpu $gpu_num \
--num_worker_count $count \
--multiprocessing_distributed true \
--dist_init_method $init_method \
--dist_world_size $world_size \
--dist_rank $rank \
--local_rank $local_rank 1> ${expdir}/${model_dir}_phase2/log/train.log.$i 2>&1
} &
done
echo "Training log can be found at ${expdir}/${model_dir}_phase2/log/train.log.*"
wait
fi
# evaluate for phase-2 model
if [ ${stage} -le 14 ] && [ ${stop_stage} -ge 14 ]; then
echo "stage 14: evaluation for phase-2 model ${inference_model}."
for dset in ${test_sets}; do
echo "Processing for $dset"
exp_model_dir=${expdir}/${model_dir}_phase2
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${exp_model_dir}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
if [ -d ${_dir} ]; then
echo "WARNING: ${_dir} is already exists."
fi
mkdir -p "${_logdir}"
_data="${datadir}/${dset}/dumped_files"
key_file=${_data}/feats.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
_opt=
if [ ! -z "${inference_config}" ]; then
_opt="--config ${inference_config}"
fi
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
echo "Inference log can be found at ${_logdir}/inference.*.log"
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/inference.JOB.log \
python -m funasr.bin.diar_inference_launch \
--batch_size 1 \
--ngpu "${_ngpu}" \
--njob ${njob} \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${_data}/feats.scp,speech,kaldi_ark" \
--data_path_and_name_and_type "${_data}/profile.scp,profile,kaldi_ark" \
--key_file "${_logdir}"/keys.JOB.scp \
--diar_train_config "${exp_model_dir}"/config.yaml \
--diar_model_file "${exp_model_dir}"/${inference_model} \
--output_dir "${_logdir}"/output.JOB \
--mode sond ${_opt}
done
fi
# Scoring for pretrained model, you may get a DER like 11.25 15.30
# 11.25: with oracle VAD, 15.30: with only SOND outputs, aka, system VAD.
if [ ${stage} -le 15 ] && [ ${stop_stage} -ge 15 ]; then
echo "stage 15: Scoring phase-2 models"
if [ ! -e dscore ]; then
git clone https://github.com/nryant/dscore.git
# add intervaltree to setup.py
fi
for dset in ${test_sets}; do
echo "stage 15: Scoring for ${dset}"
diar_exp=${expdir}/${model_dir}_phase2
_data="${datadir}/${dset}"
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${diar_exp}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
cat ${_logdir}/*/labels.txt | sort > ${_dir}/labels.txt
cmd="python -Wignore script/convert_label_to_rttm.py ${_dir}/labels.txt ${datadir}/${dset}/files_for_dump/org_vad.txt ${_dir}/sys.rttm \
--ignore_len 10 --no_pbar --smooth_size 83 --vote_prob 0.5 --n_spk 16"
# echo ${cmd}
eval ${cmd}
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.ref_vad
OVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.sys_vad
SysVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
echo -e "${inference_model} ${OVAD_DER} ${SysVAD_DER}" | tee -a ${_dir}/results.txt
done
fi
# Finetune Stage, phase 3, training on callhom1 training set
if [ ${stage} -le 16 ] && [ ${stop_stage} -ge 16 ]; then
echo "stage 16: training phase 3, finetuing on callhome1 real data"
world_size=$gpu_num # run on one machine
mkdir -p ${expdir}/${model_dir}_phase3
mkdir -p ${expdir}/${model_dir}_phase3/log
mkdir -p /tmp/${model_dir}_phase3
INIT_FILE=/tmp/${model_dir}_phase3/ddp_init
if [ -f $INIT_FILE ];then
rm -f $INIT_FILE
fi
init_opt=""
if [ ! -z "${init_param}" ]; then
init_opt="--init_param ${init_param}"
echo ${init_opt}
fi
freeze_opt=""
if [ ! -z "${freeze_param}" ]; then
freeze_opt="--freeze_param ${freeze_param}"
echo ${freeze_opt}
fi
phase3_config="$(dirname "${train_config}")/$(basename "${train_config}" .yaml)_phase3.yaml"
init_method=file://$(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 $gpu_devices | cut -d',' -f$[$i+1])
diar_train.py \
--gpu_id $gpu_id \
--use_preprocessor false \
--token_type char \
--token_list $token_list \
--train_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/feats.scp,speech,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/profile.scp,profile,kaldi_ark \
--train_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--train_shape_file ${expdir}/${valid_set}_states/speech_shape \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/feats.scp,speech,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/profile.scp,profile,kaldi_ark \
--valid_data_path_and_name_and_type ${datadir}/${valid_set}/dumped_files/label.scp,binary_labels,kaldi_ark \
--valid_shape_file ${expdir}/${valid_set}_states/speech_shape \
--init_param exp/${model_dir}_phase2/valid.forward_steps.ave_5best.pth \
--unused_parameters true \
${init_opt} \
${freeze_opt} \
--ignore_init_mismatch true \
--resume true \
--output_dir ${expdir}/${model_dir}_phase3 \
--config ${phase3_config} \
--ngpu $gpu_num \
--num_worker_count $count \
--multiprocessing_distributed true \
--dist_init_method $init_method \
--dist_world_size $world_size \
--dist_rank $rank \
--local_rank $local_rank 1> ${expdir}/${model_dir}_phase3/log/train.log.$i 2>&1
} &
done
echo "Training log can be found at ${expdir}/${model_dir}_phase3/log/train.log.*"
wait
fi
# evaluate for finetuned model
if [ ${stage} -le 17 ] && [ ${stop_stage} -ge 17 ]; then
echo "stage 17: evaluation for finetuned model ${inference_model}."
for dset in ${test_sets}; do
echo "Processing for $dset"
exp_model_dir=${expdir}/${model_dir}_phase3
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${exp_model_dir}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
if [ -d ${_dir} ]; then
echo "WARNING: ${_dir} is already exists."
fi
mkdir -p "${_logdir}"
_data="${datadir}/${dset}/dumped_files"
key_file=${_data}/feats.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
_opt=
if [ ! -z "${inference_config}" ]; then
_opt="--config ${inference_config}"
fi
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
echo "Inference log can be found at ${_logdir}/inference.*.log"
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/inference.JOB.log \
python -m funasr.bin.diar_inference_launch \
--batch_size 1 \
--ngpu "${_ngpu}" \
--njob ${njob} \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${_data}/feats.scp,speech,kaldi_ark" \
--data_path_and_name_and_type "${_data}/profile.scp,profile,kaldi_ark" \
--key_file "${_logdir}"/keys.JOB.scp \
--diar_train_config "${exp_model_dir}"/config.yaml \
--diar_model_file "${exp_model_dir}"/${inference_model} \
--output_dir "${_logdir}"/output.JOB \
--mode sond ${_opt}
done
fi
# average 3 4 5 6 7 epoch
# Scoring for pretrained model, you may get a DER like
# 7.21 8.05 on callhome1
# 8.31 9.32 on callhome2
if [ ${stage} -le 18 ] && [ ${stop_stage} -ge 18 ]; then
echo "stage 18: Scoring finetuned models"
if [ ! -e dscore ]; then
git clone https://github.com/nryant/dscore.git
# add intervaltree to setup.py
fi
for dset in ${test_sets}; do
echo "stage 18: Scoring for ${dset}"
diar_exp=${expdir}/${model_dir}_phase3
_data="${datadir}/${dset}"
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${diar_exp}/${_inference_tag}/${inference_model}/${dset}"
_logdir="${_dir}/logdir"
cat ${_logdir}/*/labels.txt | sort > ${_dir}/labels.txt
cmd="python -Wignore script/convert_label_to_rttm.py ${_dir}/labels.txt ${datadir}/${dset}/files_for_dump/org_vad.txt ${_dir}/sys.rttm \
--ignore_len 10 --no_pbar --smooth_size 83 --vote_prob 0.5 --n_spk 16"
echo ${cmd}
eval ${cmd}
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.ref_vad
OVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${_dir}/sys.rttm.sys_vad
SysVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
echo -e "${inference_model} ${OVAD_DER} ${SysVAD_DER}" | tee -a ${_dir}/results.txt
done
fi
if [ ${stage} -le 19 ] && [ ${stop_stage} -ge 19 ]; then
for dset in ${test_sets}; do
echo "stage 19: Evaluating phase-3 system on ${dset} set with medfilter_size=83 clustering=EEND-OLA"
sv_exp_dir=${expdir}/speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch
diar_exp=${expdir}/${model_dir}_phase3
_data="${datadir}/${dset}/dumped_files"
_inference_tag="$(basename "${inference_config}" .yaml)${inference_tag}"
_dir="${diar_exp}/${_inference_tag}/${inference_model}/${dset}"
for iter in `seq 0 ${told_max_iter}`; do
eval_dir=${_dir}/iter_${iter}
if [ $iter -eq 0 ]; then
prev_rttm=${expdir}/EEND-OLA/sys.rttm
else
prev_rttm=${_dir}/iter_$((${iter}-1))/sys.rttm.sys_vad
fi
echo "Use ${prev_rttm} as system outputs."
echo "Iteration ${iter}, step 1: extracting non-overlap segments"
cmd="python -Wignore script/extract_nonoverlap_segments.py ${datadir}/${dset}/wav.scp \
$prev_rttm ${eval_dir}/nonoverlap_segs/ --min_dur 0.1 --max_spk_num 16 --no_pbar --sr 8000"
# echo ${cmd}
eval ${cmd}
echo "Iteration ${iter}, step 2: make data directory"
mkdir -p ${eval_dir}/data
find `pwd`/${eval_dir}/nonoverlap_segs/ -iname "*.wav" | sort > ${eval_dir}/data/wav.flist
awk -F'[/.]' '{print $(NF-1),$0}' ${eval_dir}/data/wav.flist > ${eval_dir}/data/wav.scp
awk -F'[/.]' '{print $(NF-1),$(NF-2)}' ${eval_dir}/data/wav.flist > ${eval_dir}/data/utt2spk
cp $prev_rttm ${eval_dir}/data/sys.rttm
home_path=`pwd`
echo "Iteration ${iter}, step 3: calc x-vector for each utt"
key_file=${eval_dir}/data/wav.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
_logdir=${eval_dir}/data/xvecs
mkdir -p ${_logdir}
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/sv_inference.JOB.log \
python -m funasr.bin.sv_inference_launch \
--njob ${njob} \
--batch_size 1 \
--ngpu "${_ngpu}" \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${key_file},speech,sound" \
--key_file "${_logdir}"/keys.JOB.scp \
--sv_train_config ${sv_exp_dir}/sv.yaml \
--sv_model_file ${sv_exp_dir}/sv.pth \
--output_dir "${_logdir}"/output.JOB
cat ${_logdir}/output.*/xvector.scp | sort > ${eval_dir}/data/utt2xvec
echo "Iteration ${iter}, step 4: dump x-vector record"
awk '{print $1}' ${_data}/feats.scp > ${eval_dir}/data/idx
python script/dump_speaker_profiles.py --dir ${eval_dir}/data \
--out ${eval_dir}/global_n16 --n_spk 16 --no_pbar --emb_type global
spk_profile=${eval_dir}/global_n16_parts00_xvec.scp
echo "Iteration ${iter}, step 5: perform NN diarization"
_logdir=${eval_dir}/diar
mkdir -p ${_logdir}
key_file=${_data}/feats.scp
num_scp_file="$(<${key_file} wc -l)"
_nj=$([ $inference_nj -le $num_scp_file ] && echo "$inference_nj" || echo "$num_scp_file")
split_scps=
for n in $(seq "${_nj}"); do
split_scps+=" ${_logdir}/keys.${n}.scp"
done
_opt=
if [ ! -z "${inference_config}" ]; then
_opt="--config ${inference_config}"
fi
# shellcheck disable=SC2086
utils/split_scp.pl "${key_file}" ${split_scps}
echo "Inference log can be found at ${_logdir}/inference.*.log"
${infer_cmd} --gpu "${_ngpu}" --max-jobs-run "${_nj}" JOB=1:"${_nj}" "${_logdir}"/inference.JOB.log \
python -m funasr.bin.diar_inference_launch \
--batch_size 1 \
--ngpu "${_ngpu}" \
--njob ${njob} \
--gpuid_list ${gpuid_list} \
--data_path_and_name_and_type "${_data}/feats.scp,speech,kaldi_ark" \
--data_path_and_name_and_type "${spk_profile},profile,kaldi_ark" \
--key_file "${_logdir}"/keys.JOB.scp \
--diar_train_config ${diar_exp}/config.yaml \
--diar_model_file ${diar_exp}/${inference_model} \
--output_dir "${_logdir}"/output.JOB \
--mode sond ${_opt}
echo "Iteration ${iter}, step 6: calc diarization results"
cat ${_logdir}/output.*/labels.txt | sort > ${eval_dir}/labels.txt
cmd="python -Wignore script/convert_label_to_rttm.py ${eval_dir}/labels.txt ${datadir}/${dset}/files_for_dump/org_vad.txt ${eval_dir}/sys.rttm \
--ignore_len 10 --no_pbar --smooth_size 83 --vote_prob 0.5 --n_spk 16"
# echo ${cmd}
eval ${cmd}
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${eval_dir}/sys.rttm.ref_vad
OVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
ref=${datadir}/${dset}/files_for_dump/ref.rttm
sys=${eval_dir}/sys.rttm.sys_vad
SysVAD_DER=$(python -Wignore dscore/score.py -r $ref -s $sys --collar 0.25 2>&1 | grep OVERALL | awk '{print $4}')
echo -e "${inference_model}/iter_${iter} ${OVAD_DER} ${SysVAD_DER}" | tee -a ${eval_dir}/results.txt
done
echo "Done."
done
fi
if [ ${stage} -le 30 ] && [ ${stop_stage} -ge 30 ]; then
echo "stage 30: training phase 1, pretraining on simulated data"
world_size=$gpu_num # run on one machine
mkdir -p ${expdir}/${model_dir}
mkdir -p ${expdir}/${model_dir}/log
mkdir -p /tmp/${model_dir}
INIT_FILE=/tmp/${model_dir}/ddp_init
if [ -f $INIT_FILE ];then
rm -f $INIT_FILE
fi
init_opt=""
if [ ! -z "${init_param}" ]; then
init_opt="--init_param ${init_param}"
echo ${init_opt}
fi
freeze_opt=""
if [ ! -z "${freeze_param}" ]; then
freeze_opt="--freeze_param ${freeze_param}"
echo ${freeze_opt}
fi
init_method=file://$(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 $gpu_devices | cut -d',' -f$[$i+1])
diar_train.py \
--gpu_id $gpu_id \
--use_preprocessor false \
--token_type char \
--token_list $token_list \
--dataset_type large \
--train_data_file ${datadir}/${train_set}/dumped_files/data_file.list \
--valid_data_file ${datadir}/${valid_set}/dumped_files/data_file.list \
--init_param ${expdir}/speech_xvector_sv-en-us-callhome-8k-spk6135-pytorch/sv.pth:encoder:encoder \
--freeze_param encoder \
${init_opt} \
${freeze_opt} \
--ignore_init_mismatch true \
--resume true \
--output_dir ${expdir}/${model_dir} \
--config $train_config \
--ngpu $gpu_num \
--num_worker_count $count \
--multiprocessing_distributed true \
--dist_init_method $init_method \
--dist_world_size $world_size \
--dist_rank $rank \
--local_rank $local_rank 1> ${expdir}/${model_dir}/log/train.log.$i 2>&1
} &
done
echo "Training log can be found at ${expdir}/${model_dir}/log/train.log.*"
wait
fi