# Copyright FunASR (https://github.com/alibaba-damo-academy/FunASR). All Rights Reserved. # MIT License (https://opensource.org/licenses/MIT) # which gpu to train or finetune export CUDA_VISIBLE_DEVICES="0" gpu_num=$(echo $CUDA_VISIBLE_DEVICES | awk -F "," '{print NF}') # data dir, which contains: train.json, val.json, tokens.jsonl/tokens.txt, am.mvn #data_dir="/Users/zhifu/funasr1.0/data/list" ## generate jsonl from wav.scp and text.txt #python -m funasr.datasets.audio_datasets.scp2jsonl \ #++scp_file_list='["/Users/zhifu/funasr1.0/test_local/wav.scp", "/Users/zhifu/funasr1.0/test_local/text.txt"]' \ #++data_type_list='["source", "target"]' \ #++jsonl_file_out=/Users/zhifu/funasr1.0/test_local/audio_datasets.jsonl train_data="/nfs/maziyang.mzy/data/librispeech/librispeech_train_960h.jsonl" val_data="/nfs/maziyang.mzy/data/librispeech/librispeech_dev_other_filtered.jsonl" # exp output dir output_dir="/nfs/zhifu.gzf/ckpt/exp/llm_asr_whisper_vicuna_exp1" log_file="${output_dir}/log.txt" workspace=`pwd` config="whisper_vicuna_linear.yaml" init_param="${output_dir}/model.pt" mkdir -p ${output_dir} echo "log_file: ${log_file}" deepspeed_config=${workspace}/../../ds_stage1.json DISTRIBUTED_ARGS=" --nnodes ${WORLD_SIZE:-1} \ --nproc_per_node $gpu_num \ --node_rank ${RANK:-0} \ --master_addr ${MASTER_ADDR:-127.0.0.1} \ --master_port ${MASTER_PORT:-26669} " echo $DISTRIBUTED_ARGS torchrun $DISTRIBUTED_ARGS \ ../../../funasr/bin/train_ds.py \ --config-path "${workspace}/conf" \ --config-name "${config}" \ ++train_data_set_list="${train_data}" \ ++valid_data_set_list="${val_data}" \ ++dataset_conf.batch_size=4 \ ++dataset_conf.num_workers=4 \ ++train_conf.max_epoch=15 \ ++train_conf.use_deepspeed=false \ ++train_conf.deepspeed_config=${deepspeed_config} \ ++optim_conf.lr=0.0001 \ ++init_param="${init_param}" \ ++output_dir="${output_dir}" &> ${log_file} &