#!/usr/bin/env bash # 运行示例:CUDA_VISIBLE_DEVICES=0 bash run_benchmark.sh ${run_mode} ${bs_item} ${fp_item} 500 ${model_mode} # 参数说明 function _set_params(){ run_mode=${1:-"sp"} # 单卡sp|多卡mp batch_size=${2:-"64"} fp_item=${3:-"fp32"} # fp32|fp16 max_epoch=${4:-"10"} # 可选,如果需要修改代码提前中断 model_item=${5:-"model_item"} run_log_path=${TRAIN_LOG_DIR:-$(pwd)} # TRAIN_LOG_DIR 后续QA设置该参数 # 日志解析所需参数 base_batch_size=${batch_size} mission_name="OCR" direction_id="0" ips_unit="images/sec" skip_steps=2 # 解析日志,有些模型前几个step耗时长,需要跳过 (必填) keyword="ips:" # 解析日志,筛选出数据所在行的关键字 (必填) index="1" model_name=${model_item}_bs${batch_size}_${fp_item} # model_item 用于yml文件名匹配,model_name 用于数据入库前端展示 # 以下不用修改 device=${CUDA_VISIBLE_DEVICES//,/ } arr=(${device}) num_gpu_devices=${#arr[*]} log_file=${run_log_path}/${model_item}_${run_mode}_bs${batch_size}_${fp_item}_${num_gpu_devices} } function _train(){ echo "Train on ${num_gpu_devices} GPUs" echo "current CUDA_VISIBLE_DEVICES=$CUDA_VISIBLE_DEVICES, gpus=$num_gpu_devices, batch_size=$batch_size" train_cmd="-c configs/det/${model_item}.yml -o Train.loader.batch_size_per_card=${batch_size} Global.epoch_num=${max_epoch} Global.eval_batch_step=[0,20000] Global.print_batch_step=2" case ${run_mode} in sp) train_cmd="python tools/train.py "${train_cmd}"" ;; mp) rm -rf ./mylog train_cmd="python -m paddle.distributed.launch --log_dir=./mylog --gpus=$CUDA_VISIBLE_DEVICES tools/train.py ${train_cmd}" ;; *) echo "choose run_mode(sp or mp)"; exit 1; esac # 以下不用修改 echo ${train_cmd} timeout 15m ${train_cmd} > ${log_file} 2>&1 if [ $? -ne 0 ];then echo -e "${model_name}, FAIL" export job_fail_flag=1 else echo -e "${model_name}, SUCCESS" export job_fail_flag=0 fi if [ $run_mode = "mp" -a -d mylog ]; then rm ${log_file} cp mylog/workerlog.0 ${log_file} fi } source ${BENCHMARK_ROOT}/scripts/run_model.sh # 在该脚本中会对符合benchmark规范的log使用analysis.py 脚本进行性能数据解析;该脚本在连调时可从benchmark repo中下载https://github.com/PaddlePaddle/benchmark/blob/master/scripts/run_model.sh;如果不联调只想要产出训练log可以注掉本行,提交时需打开 _set_params $@ #_train # 如果只想产出训练log,不解析,可取消注释 _run # 该函数在run_model.sh中,执行时会调用_train; 如果不联调只想要产出训练log可以注掉本行,提交时需打开