#!/usr/bin/env bash source test_tipc/common_func.sh FILENAME=$1 # $MODE be one of {'lite_train_lite_infer' 'lite_train_whole_infer' 'whole_train_whole_infer', 'whole_infer'} MODE=$2 dataline=$(awk 'NR>=1{print}' $FILENAME) # Parse params IFS=$'\n' lines=(${dataline}) # Training params task_name=$(parse_first_value "${lines[1]}") model_name=$(parse_second_value "${lines[1]}") python=$(func_parser_value "${lines[2]}") gpu_list=$(func_parser_value "${lines[3]}") train_use_gpu_key=$(func_parser_key "${lines[4]}") train_use_gpu_value=$(func_parser_value "${lines[4]}") autocast_list=$(func_parser_value "${lines[5]}") autocast_key=$(func_parser_key "${lines[5]}") epoch_key=$(func_parser_key "${lines[6]}") epoch_num=$(func_parser_params "${lines[6]}") save_model_key=$(func_parser_key "${lines[7]}") train_batch_key=$(func_parser_key "${lines[8]}") train_batch_value=$(func_parser_params "${lines[8]}") pretrain_model_key=$(func_parser_key "${lines[9]}") pretrain_model_value=$(func_parser_value "${lines[9]}") train_model_name=$(func_parser_value "${lines[10]}") train_infer_img_dir=$(parse_first_value "${lines[11]}") train_infer_img_file_list=$(parse_second_value "${lines[11]}") train_param_key1=$(func_parser_key "${lines[12]}") train_param_value1=$(func_parser_value "${lines[12]}") trainer_list=$(func_parser_value "${lines[14]}") trainer_norm=$(func_parser_key "${lines[15]}") norm_trainer=$(func_parser_value "${lines[15]}") pact_key=$(func_parser_key "${lines[16]}") pact_trainer=$(func_parser_value "${lines[16]}") fpgm_key=$(func_parser_key "${lines[17]}") fpgm_trainer=$(func_parser_value "${lines[17]}") distill_key=$(func_parser_key "${lines[18]}") distill_trainer=$(func_parser_value "${lines[18]}") trainer_key1=$(func_parser_key "${lines[19]}") trainer_value1=$(func_parser_value "${lines[19]}") trainer_key2=$(func_parser_key "${lines[20]}") trainer_value2=$(func_parser_value "${lines[20]}") eval_py=$(func_parser_value "${lines[23]}") eval_key1=$(func_parser_key "${lines[24]}") eval_value1=$(func_parser_value "${lines[24]}") save_infer_key=$(func_parser_key "${lines[27]}") export_weight=$(func_parser_key "${lines[28]}") export_shape_key=$(func_parser_key "${lines[29]}") export_shape_value=$(func_parser_value "${lines[29]}") norm_export=$(func_parser_value "${lines[30]}") pact_export=$(func_parser_value "${lines[31]}") fpgm_export=$(func_parser_value "${lines[32]}") distill_export=$(func_parser_value "${lines[33]}") export_key1=$(func_parser_key "${lines[34]}") export_value1=$(func_parser_value "${lines[34]}") export_key2=$(func_parser_key "${lines[35]}") export_value2=$(func_parser_value "${lines[35]}") inference_dir=$(func_parser_value "${lines[36]}") # Params of inference model infer_model_dir_list=$(func_parser_value "${lines[37]}") infer_export_list=$(func_parser_value "${lines[38]}") infer_is_quant=$(func_parser_value "${lines[39]}") # Inference params inference_py=$(func_parser_value "${lines[40]}") use_gpu_key=$(func_parser_key "${lines[41]}") use_gpu_list=$(func_parser_value "${lines[41]}") use_mkldnn_key=$(func_parser_key "${lines[42]}") use_mkldnn_list=$(func_parser_value "${lines[42]}") cpu_threads_key=$(func_parser_key "${lines[43]}") cpu_threads_list=$(func_parser_value "${lines[43]}") batch_size_key=$(func_parser_key "${lines[44]}") batch_size_list=$(func_parser_value "${lines[44]}") use_trt_key=$(func_parser_key "${lines[45]}") use_trt_list=$(func_parser_value "${lines[45]}") precision_key=$(func_parser_key "${lines[46]}") precision_list=$(func_parser_value "${lines[46]}") infer_model_key=$(func_parser_key "${lines[47]}") file_list_key=$(func_parser_key "${lines[48]}") infer_img_dir=$(parse_first_value "${lines[48]}") infer_img_file_list=$(parse_second_value "${lines[48]}") save_log_key=$(func_parser_key "${lines[49]}") benchmark_key=$(func_parser_key "${lines[50]}") benchmark_value=$(func_parser_value "${lines[50]}") infer_key1=$(func_parser_key "${lines[51]}") infer_value1=$(func_parser_value "${lines[51]}") infer_key2=$(func_parser_key "${lines[52]}") infer_value2=$(func_parser_value "${lines[52]}") OUT_PATH="./test_tipc/output/${task_name}/${model_name}/${MODE}" mkdir -p ${OUT_PATH} status_log="${OUT_PATH}/results_python.log" echo "------------------------ ${MODE} ------------------------" >> "${status_log}" # Parse extra args parse_extra_args "${lines[@]}" for params in ${extra_args[*]}; do IFS=':' arr=(${params}) key=${arr[0]} value=${arr[1]} : done function func_inference() { local IFS='|' local _python=$1 local _script="$2" local _model_dir="$3" local _log_path="$4" local _img_dir="$5" local _file_list="$6" # Do inference for use_gpu in ${use_gpu_list[*]}; do if [ ${use_gpu} = 'False' ] || [ ${use_gpu} = 'cpu' ]; then for use_mkldnn in ${use_mkldnn_list[*]}; do if [ ${use_mkldnn} = 'False' ]; then continue fi for threads in ${cpu_threads_list[*]}; do for batch_size in ${batch_size_list[*]}; do for precision in ${precision_list[*]}; do if [ ${use_mkldnn} = 'False' ] && [ ${precision} = 'fp16' ]; then continue fi # Skip when enable fp16 but disable mkldnn set_precision=$(func_set_params "${precision_key}" "${precision}") _save_log_path="${_log_path}/python_infer_cpu_usemkldnn_${use_mkldnn}_threads_${threads}_precision_${precision}_batchsize_${batch_size}.log" infer_value1="${_log_path}/python_infer_cpu_usemkldnn_${use_mkldnn}_threads_${threads}_precision_${precision}_batchsize_${batch_size}_results" set_device=$(func_set_params "${use_gpu_key}" "${use_gpu}") set_mkldnn=$(func_set_params "${use_mkldnn_key}" "${use_mkldnn}") set_benchmark=$(func_set_params "${benchmark_key}" "${benchmark_value}") set_batchsize=$(func_set_params "${batch_size_key}" "${batch_size}") set_cpu_threads=$(func_set_params "${cpu_threads_key}" "${threads}") set_model_dir=$(func_set_params "${infer_model_key}" "${_model_dir}") set_infer_params1=$(func_set_params "${infer_key1}" "${infer_value1}") set_infer_params2=$(func_set_params "${infer_key2}" "${infer_value2}") cmd="${_python} ${_script} ${file_list_key} ${_img_dir} ${_file_list} ${set_device} ${set_mkldnn} ${set_cpu_threads} ${set_model_dir} ${set_batchsize} ${set_benchmark} ${set_precision} ${set_infer_params1} ${set_infer_params2}" echo ${cmd} run_command "${cmd}" "${_save_log_path}" last_status=${PIPESTATUS[0]} status_check ${last_status} "${cmd}" "${status_log}" "${model_name}" done done done done elif [ ${use_gpu} = 'True' ] || [ ${use_gpu} = 'gpu' ]; then for use_trt in ${use_trt_list[*]}; do for precision in ${precision_list[*]}; do if [ ${precision} = 'fp16' ] && [ ${use_trt} = 'False' ]; then continue fi # Skip when enable fp16 but disable trt for batch_size in ${batch_size_list[*]}; do _save_log_path="${_log_path}/python_infer_gpu_usetrt_${use_trt}_precision_${precision}_batchsize_${batch_size}.log" infer_value1="${_log_path}/python_infer_gpu_usetrt_${use_trt}_precision_${precision}_batchsize_${batch_size}_results" set_device=$(func_set_params "${use_gpu_key}" "${use_gpu}") set_benchmark=$(func_set_params "${benchmark_key}" "${benchmark_value}") set_batchsize=$(func_set_params "${batch_size_key}" "${batch_size}") set_tensorrt=$(func_set_params "${use_trt_key}" "${use_trt}") set_precision=$(func_set_params "${precision_key}" "${precision}") set_model_dir=$(func_set_params "${infer_model_key}" "${_model_dir}") set_infer_params1=$(func_set_params "${infer_key1}" "${infer_value1}") set_infer_params2=$(func_set_params "${infer_key2}" "${infer_value2}") cmd="${_python} ${_script} ${file_list_key} ${_img_dir} ${_file_list} ${set_device} ${set_tensorrt} ${set_precision} ${set_model_dir} ${set_batchsize} ${set_benchmark} ${set_infer_params2}" echo ${cmd} run_command "${cmd}" "${_save_log_path}" last_status=${PIPESTATUS[0]} status_check $last_status "${cmd}" "${status_log}" "${model_name}" done done done else echo "Currently, hardwares other than CPU and GPU are not supported!" fi done } if [ ${MODE} = 'whole_infer' ]; then GPUID=$3 if [ ${#GPUID} -le 0 ]; then env="" else env="export CUDA_VISIBLE_DEVICES=${GPUID}" fi if [ ${infer_model_dir_list} == 'null' ]; then echo -e "\033[33m No inference model is specified! \033[0m" exit 1 fi # Set CUDA_VISIBLE_DEVICES eval ${env} export count=0 IFS='|' infer_run_exports=(${infer_export_list}) for infer_model in ${infer_model_dir_list[*]}; do # Run export if [ ${infer_run_exports[count]} != 'null' ]; then save_infer_dir="${infer_model}/static" set_export_weight=$(func_set_params "${export_weight}" "${infer_model}") set_export_shape=$(func_set_params "${export_shape_key}" "${export_shape_value}") set_save_infer_key=$(func_set_params "${save_infer_key}" "${save_infer_dir}") export_cmd="${python} ${infer_run_exports[count]} ${set_export_weight} ${set_save_infer_key} ${set_export_shape}" echo ${infer_run_exports[count]} eval ${export_cmd} status_export=$? status_check ${status_export} "${export_cmd}" "${status_log}" "${model_name}" else save_infer_dir=${infer_model} fi # Run inference func_inference "${python}" "${inference_py}" "${save_infer_dir}" "${OUT_PATH}" "${infer_img_dir}" "${infer_img_file_list}" count=$((${count} + 1)) done else IFS='|' export count=0 USE_GPU_KEY=(${train_use_gpu_value}) for gpu in ${gpu_list[*]}; do train_use_gpu=${USE_GPU_KEY[count]} count=$((${count} + 1)) ips="" if [ ${gpu} = '-1' ]; then env="" elif [ ${#gpu} -le 1 ]; then env="export CUDA_VISIBLE_DEVICES=${gpu}" eval ${env} elif [ ${#gpu} -le 15 ]; then IFS=',' array=(${gpu}) env="export CUDA_VISIBLE_DEVICES=${array[0]}" IFS='|' else IFS=';' array=(${gpu}) ips=${array[0]} gpu=${array[1]} IFS='|' env="" fi for autocast in ${autocast_list[*]}; do if [ ${autocast} = 'amp' ]; then set_amp_config="Global.use_amp=True Global.scale_loss=1024.0 Global.use_dynamic_loss_scaling=True" else set_amp_config="" fi for trainer in ${trainer_list[*]}; do if [ ${trainer} = ${pact_key} ]; then run_train=${pact_trainer} run_export=${pact_export} elif [ ${trainer} = "${fpgm_key}" ]; then run_train=${fpgm_trainer} run_export=${fpgm_export} elif [ ${trainer} = "${distill_key}" ]; then run_train=${distill_trainer} run_export=${distill_export} elif [ ${trainer} = ${trainer_key1} ]; then run_train=${trainer_value1} run_export=${export_value1} elif [[ ${trainer} = ${trainer_key2} ]]; then run_train=${trainer_value2} run_export=${export_value2} else run_train=${norm_trainer} run_export=${norm_export} fi if [ ${run_train} = 'null' ]; then continue fi set_autocast=$(func_set_params "${autocast_key}" "${autocast}") set_epoch=$(func_set_params "${epoch_key}" "${epoch_num}") set_pretrain=$(func_set_params "${pretrain_model_key}" "${pretrain_model_value}") set_batchsize=$(func_set_params "${train_batch_key}" "${train_batch_value}") set_train_params1=$(func_set_params "${train_param_key1}" "${train_param_value1}") set_use_gpu=$(func_set_params "${train_use_gpu_key}" "${train_use_gpu}") # If length of ips >= 15, then it is seen as multi-machine. # 15 is the min length of ips info for multi-machine: 0.0.0.0,0.0.0.0 if [ ${#ips} -le 15 ]; then save_dir="${OUT_PATH}/${trainer}_gpus_${gpu}_autocast_${autocast}" nodes=1 else IFS=',' ips_array=(${ips}) IFS='|' nodes=${#ips_array[@]} save_dir="${OUT_PATH}/${trainer}_gpus_${gpu}_autocast_${autocast}_nodes_${nodes}" fi log_path="${OUT_PATH}/${trainer}_gpus_${gpu}_autocast_${autocast}_nodes_${nodes}.log" # Load pretrained model from norm training if current trainer is pact or fpgm trainer. if ([ ${trainer} = ${pact_key} ] || [ ${trainer} = ${fpgm_key} ]) && [ ${nodes} -le 1 ]; then set_pretrain="${load_norm_train_model}" fi set_save_model=$(func_set_params "${save_model_key}" "${save_dir}") if [ ${#gpu} -le 2 ]; then # Train with cpu or single gpu cmd="${python} ${run_train} ${set_use_gpu} ${set_save_model} ${set_epoch} ${set_pretrain} ${set_autocast} ${set_batchsize} ${set_train_params1} ${set_amp_config}" elif [ ${#ips} -le 15 ]; then # Train with multi-gpu cmd="${python} -m paddle.distributed.launch --gpus=${gpu} ${run_train} ${set_use_gpu} ${set_save_model} ${set_epoch} ${set_pretrain} ${set_autocast} ${set_batchsize} ${set_train_params1} ${set_amp_config}" else # Train with multi-machine cmd="${python} -m paddle.distributed.launch --ips=${ips} --gpus=${gpu} ${run_train} ${set_use_gpu} ${set_save_model} ${set_pretrain} ${set_epoch} ${set_autocast} ${set_batchsize} ${set_train_params1} ${set_amp_config}" fi echo ${cmd} # Run train run_command "${cmd}" "${log_path}" status_check $? "${cmd}" "${status_log}" "${model_name}" if [[ "${cmd}" == *'paddle.distributed.launch'* ]]; then cat log/workerlog.0 >> ${log_path} fi set_eval_pretrain=$(func_set_params "${pretrain_model_key}" "${save_dir}/${train_model_name}/model.pdparams") # Save norm trained models to set pretrain for pact training and fpgm training if [ ${trainer} = ${trainer_norm} ] && [ ${nodes} -le 1 ]; then load_norm_train_model=${set_eval_pretrain} fi # Run evaluation if [ ${eval_py} != 'null' ]; then log_path="${OUT_PATH}/${trainer}_gpus_${gpu}_autocast_${autocast}_nodes_${nodes}_eval.log" set_eval_params1=$(func_set_params "${eval_key1}" "${eval_value1}") eval_cmd="${python} ${eval_py} ${set_eval_pretrain} ${set_use_gpu} ${set_eval_params1}" run_command "${eval_cmd}" "${log_path}" status_check $? "${eval_cmd}" "${status_log}" "${model_name}" fi # Run export model if [ ${run_export} != 'null' ]; then log_path="${OUT_PATH}/${trainer}_gpus_${gpu}_autocast_${autocast}_nodes_${nodes}_export.log" save_infer_path="${save_dir}/static" set_export_weight=$(func_set_params "${export_weight}" "${save_dir}/${train_model_name}") set_export_shape=$(func_set_params "${export_shape_key}" "${export_shape_value}") set_save_infer_key=$(func_set_params "${save_infer_key}" "${save_infer_path}") export_cmd="${python} ${run_export} ${set_export_weight} ${set_save_infer_key} ${set_export_shape}" run_command "${export_cmd}" "${log_path}" status_check $? "${export_cmd}" "${status_log}" "${model_name}" # Run inference eval ${env} if [[ ${inference_dir} != 'null' ]] && [[ ${inference_dir} != '##' ]]; then infer_model_dir="${save_infer_path}/${inference_dir}" else infer_model_dir=${save_infer_path} fi func_inference "${python}" "${inference_py}" "${infer_model_dir}" "${OUT_PATH}" "${train_infer_img_dir}" "${train_infer_img_file_list}" eval "unset CUDA_VISIBLE_DEVICES" fi done # Done with: for trainer in ${trainer_list[*]}; do done # Done with: for autocast in ${autocast_list[*]}; do done # Done with: for gpu in ${gpu_list[*]}; do fi # End if [ ${MODE} = 'infer' ]; then