#!/bin/bash CUR_DIR=${PWD} ROOT_DIR=../../ # 提供可稳定复现性能的脚本,默认在标准docker环境内py37执行: # collect env info bash ${ROOT_DIR}/utils/pd_env_collect.sh #cat pd_env.txt # 1 安装该模型需要的依赖 (如需开启优化策略请注明) #pushd ${ROOT_DIR}/tools; make; popd #source ${ROOT_DIR}/tools/venv/bin/activate #pushd ${ROOT_DIR}; bash setup.sh; popd # 2 拷贝该模型需要数据、预训练模型 # 执行目录:需说明 #pushd ${ROOT_DIR}/examples/aishell/s1 pushd ${ROOT_DIR}/examples/tiny/s1 mkdir -p exp/log . path.sh #bash local/data.sh &> exp/log/data.log # 3 批量运行(如不方便批量,1,2需放到单个模型中) model_mode_list=(conformer transformer) fp_item_list=(fp32) bs_item_list=(32 64 96) for model_mode in ${model_mode_list[@]}; do for fp_item in ${fp_item_list[@]}; do for bs_item in ${bs_item_list[@]} do echo "index is speed, 1gpus, begin, ${model_name}" run_mode=sp CUDA_VISIBLE_DEVICES=0 bash ${CUR_DIR}/run_benchmark.sh ${run_mode} ${bs_item} ${fp_item} 500 ${model_mode} # (5min) sleep 60 echo "index is speed, 8gpus, run_mode is multi_process, begin, ${model_name}" run_mode=mp CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 bash ${CUR_DIR}/run_benchmark.sh ${run_mode} ${bs_item} ${fp_item} 500 ${model_mode} sleep 60 done done done popd # aishell/s1