# 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. """ Training use fluid with one node only. """ from __future__ import print_function import os import paddle.fluid as fluid from paddle.fluid.incubate.fleet.parameter_server.distribute_transpiler import fleet from paddle.fluid.incubate.fleet.parameter_server.distribute_transpiler.distributed_strategy import StrategyFactory from paddle.fluid.incubate.fleet.base.role_maker import PaddleCloudRoleMaker from paddle.fluid.incubate.fleet.base.role_maker import MPISymetricRoleMaker from fleetrec.core.utils import envs from fleetrec.core.trainers.transpiler_trainer import TranspileTrainer class ClusterTrainer(TranspileTrainer): def processor_register(self): #role = PaddleCloudRoleMaker() role = MPISymetricRoleMaker() fleet.init(role) if fleet.is_server(): self.regist_context_processor('uninit', self.instance) self.regist_context_processor('init_pass', self.init) self.regist_context_processor('server_pass', self.server) else: self.regist_context_processor('uninit', self.instance) self.regist_context_processor('init_pass', self.init) self.regist_context_processor('startup_pass', self.startup) if envs.get_platform() == "LINUX" and envs.get_global_env("dataset_class", None, "train.reader") != "DataLoader": self.regist_context_processor('train_pass', self.dataset_train) else: self.regist_context_processor( 'train_pass', self.dataloader_train) self.regist_context_processor('infer_pass', self.infer) self.regist_context_processor('terminal_pass', self.terminal) def build_strategy(self): mode = envs.get_runtime_environ("train.trainer.strategy") assert mode in ["async", "geo", "sync", "half_async"] strategy = None if mode == "async": strategy = StrategyFactory.create_async_strategy() elif mode == "geo": push_num = envs.get_global_env("train.strategy.mode.push_num", 100) strategy = StrategyFactory.create_geo_strategy(push_num) elif mode == "sync": strategy = StrategyFactory.create_sync_strategy() elif mode == "half_async": strategy = StrategyFactory.create_half_async_strategy() assert strategy is not None self.strategy = strategy return strategy def init(self, context): self.model.train_net() optimizer = self.model.optimizer() optimizer_name = envs.get_global_env( "hyper_parameters.optimizer", None, "train.model") if optimizer_name not in ["", "sgd", "SGD", "Sgd"]: os.environ["FLAGS_communicator_is_sgd_optimizer"] = '0' strategy = self.build_strategy() optimizer = fleet.distributed_optimizer(optimizer, strategy) optimizer.minimize(self.model.get_cost_op()) if fleet.is_server(): context['status'] = 'server_pass' else: self.fetch_vars = [] self.fetch_alias = [] self.fetch_period = self.model.get_fetch_period() metrics = self.model.get_metrics() if metrics: self.fetch_vars = metrics.values() self.fetch_alias = metrics.keys() context['status'] = 'startup_pass' def server(self, context): fleet.init_server() fleet.run_server() context['is_exit'] = True def startup(self, context): self._exe.run(fleet.startup_program) context['status'] = 'train_pass' def dataloader_train(self, context): fleet.init_worker() reader = self._get_dataloader() epochs = envs.get_global_env("train.epochs") program = fluid.compiler.CompiledProgram( fleet.main_program).with_data_parallel( loss_name=self.model.get_cost_op().name, build_strategy=self.strategy.get_build_strategy(), exec_strategy=self.strategy.get_execute_strategy()) metrics_varnames = [] metrics_format = [] metrics_format.append("{}: {{}}".format("epoch")) metrics_format.append("{}: {{}}".format("batch")) for name, var in self.model.get_metrics().items(): metrics_varnames.append(var.name) metrics_format.append("{}: {{}}".format(name)) metrics_format = ", ".join(metrics_format) for epoch in range(epochs): reader.start() batch_id = 0 try: while True: metrics_rets = self._exe.run( program=program, fetch_list=metrics_varnames) metrics = [epoch, batch_id] metrics.extend(metrics_rets) if batch_id % self.fetch_period == 0 and batch_id != 0: print(metrics_format.format(*metrics)) batch_id += 1 except fluid.core.EOFException: reader.reset() self.save(epoch, "train", is_fleet=True) fleet.stop_worker() context['status'] = 'infer_pass' def dataset_train(self, context): fleet.init_worker() dataset = self._get_dataset() epochs = envs.get_global_env("train.epochs") for i in range(epochs): self._exe.train_from_dataset(program=fluid.default_main_program(), dataset=dataset, fetch_list=self.fetch_vars, fetch_info=self.fetch_alias, print_period=self.fetch_period) self.save(i, "train", is_fleet=True) fleet.stop_worker() context['status'] = 'infer_pass' def terminal(self, context): for model in self.increment_models: print("epoch :{}, dir: {}".format(model[0], model[1])) context['is_exit'] = True