# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """ Usage: Host a trained paddle model with one line command Example: python -m paddle_serving_server.serve --model ./serving_server_model --port 9292 """ import argparse import os from multiprocessing import Pool, Process from paddle_serving_server_gpu import serve_args from flask import Flask, request def start_gpu_card_model(index, gpuid, args): # pylint: disable=doc-string-missing gpuid = int(gpuid) device = "gpu" port = args.port if gpuid == -1: device = "cpu" elif gpuid >= 0: port = args.port + index thread_num = args.thread model = args.model mem_optim = args.mem_optim_off is False ir_optim = args.ir_optim max_body_size = args.max_body_size use_multilang = args.use_multilang workdir = args.workdir if gpuid >= 0: workdir = "{}_{}".format(args.workdir, gpuid) if model == "": print("You must specify your serving model") exit(-1) import paddle_serving_server_gpu as serving op_maker = serving.OpMaker() read_op = op_maker.create('general_reader') general_infer_op = op_maker.create('general_infer') general_response_op = op_maker.create('general_response') op_seq_maker = serving.OpSeqMaker() op_seq_maker.add_op(read_op) op_seq_maker.add_op(general_infer_op) op_seq_maker.add_op(general_response_op) if use_multilang: server = serving.MultiLangServer() else: server = serving.Server() server.set_op_sequence(op_seq_maker.get_op_sequence()) server.set_num_threads(thread_num) server.set_memory_optimize(mem_optim) server.set_ir_optimize(ir_optim) server.set_max_body_size(max_body_size) if args.use_trt: server.set_trt() if args.use_lite: server.set_lite() device = "arm" if args.use_xpu: server.set_xpu() if args.product_name != None: server.set_product_name(args.product_name) if args.container_id != None: server.set_container_id(args.container_id) server.load_model_config(model) server.prepare_server(workdir=workdir, port=port, device=device) if gpuid >= 0: server.set_gpuid(gpuid) server.run_server() def start_multi_card(args): # pylint: disable=doc-string-missing gpus = "" if args.gpu_ids == "": gpus = [] else: gpus = args.gpu_ids.split(",") if "CUDA_VISIBLE_DEVICES" in os.environ: env_gpus = os.environ["CUDA_VISIBLE_DEVICES"].split(",") for ids in gpus: if int(ids) >= len(env_gpus): print( " Max index of gpu_ids out of range, the number of CUDA_VISIBLE_DEVICES is {}." .format(len(env_gpus))) exit(-1) else: env_gpus = [] if args.use_lite: print("run arm server.") start_gpu_card_model(-1, -1, args) elif len(gpus) <= 0: print("gpu_ids not set, going to run cpu service.") start_gpu_card_model(-1, -1, args) else: gpu_processes = [] for i, gpu_id in enumerate(gpus): p = Process( target=start_gpu_card_model, args=( i, gpu_id, args, )) gpu_processes.append(p) for p in gpu_processes: p.start() for p in gpu_processes: p.join() if __name__ == "__main__": args = serve_args() if args.name == "None": start_multi_card(args) else: from .web_service import WebService web_service = WebService(name=args.name) web_service.load_model_config(args.model) gpu_ids = args.gpu_ids if gpu_ids == "": if "CUDA_VISIBLE_DEVICES" in os.environ: gpu_ids = os.environ["CUDA_VISIBLE_DEVICES"] if len(gpu_ids) > 0: web_service.set_gpus(gpu_ids) web_service.prepare_server( workdir=args.workdir, port=args.port, device=args.device) web_service.run_rpc_service() app_instance = Flask(__name__) @app_instance.before_first_request def init(): web_service._launch_web_service() service_name = "/" + web_service.name + "/prediction" @app_instance.route(service_name, methods=["POST"]) def run(): return web_service.get_prediction(request) app_instance.run(host="0.0.0.0", port=web_service.port, threaded=False, processes=4)