import argparse import os import subprocess import tempfile import yaml from paddlerec.core.factory import TrainerFactory from paddlerec.core.utils import envs from paddlerec.core.utils import util engines = {} device = ["CPU", "GPU"] clusters = ["SINGLE", "LOCAL_CLUSTER", "CLUSTER"] custom_model = ['tdm'] model_name = "" def engine_registry(): cpu = {"TRANSPILER": {}, "PSLIB": {}} cpu["TRANSPILER"]["SINGLE"] = single_engine cpu["TRANSPILER"]["LOCAL_CLUSTER"] = local_cluster_engine cpu["TRANSPILER"]["CLUSTER"] = cluster_engine cpu["PSLIB"]["SINGLE"] = local_mpi_engine cpu["PSLIB"]["LOCAL_CLUSTER"] = local_mpi_engine cpu["PSLIB"]["CLUSTER"] = cluster_mpi_engine gpu = {"TRANSPILER": {}, "PSLIB": {}} gpu["TRANSPILER"]["SINGLE"] = single_engine engines["CPU"] = cpu engines["GPU"] = gpu def get_engine(args): device = args.device d_engine = engines[device] transpiler = get_transpiler() engine = args.engine run_engine = d_engine[transpiler].get(engine, None) if run_engine is None: raise ValueError( "engine {} can not be supported on device: {}".format(engine, device)) return run_engine def get_transpiler(): FNULL = open(os.devnull, 'w') cmd = ["python", "-c", "import paddle.fluid as fluid; fleet_ptr = fluid.core.Fleet(); [fleet_ptr.copy_table_by_feasign(10, 10, [2020, 1010])];"] proc = subprocess.Popen(cmd, stdout=FNULL, stderr=FNULL, cwd=os.getcwd()) ret = proc.wait() if ret == -11: return "PSLIB" else: return "TRANSPILER" def set_runtime_envs(cluster_envs, engine_yaml): def get_engine_extras(): with open(engine_yaml, 'r') as rb: _envs = yaml.load(rb.read(), Loader=yaml.FullLoader) flattens = envs.flatten_environs(_envs) engine_extras = {} for k, v in flattens.items(): if k.startswith("train.trainer."): engine_extras[k] = v return engine_extras if cluster_envs is None: cluster_envs = {} engine_extras = get_engine_extras() if "train.trainer.threads" in engine_extras and "CPU_NUM" in cluster_envs: cluster_envs["CPU_NUM"] = engine_extras["train.trainer.threads"] envs.set_runtime_environs(cluster_envs) envs.set_runtime_environs(engine_extras) need_print = {} for k, v in os.environ.items(): if k.startswith("train.trainer."): need_print[k] = v print(envs.pretty_print_envs(need_print, ("Runtime Envs", "Value"))) def get_trainer_prefix(args): if model_name in custom_model: return model_name.upper() return "" def single_engine(args): trainer = get_trainer_prefix(args) + "SingleTrainer" single_envs = {} single_envs["train.trainer.trainer"] = trainer single_envs["train.trainer.threads"] = "2" single_envs["train.trainer.engine"] = "single" single_envs["train.trainer.device"] = args.device single_envs["train.trainer.platform"] = envs.get_platform() print("use {} engine to run model: {}".format(trainer, args.model)) set_runtime_envs(single_envs, args.model) trainer = TrainerFactory.create(args.model) return trainer def cluster_engine(args): def update_workspace(cluster_envs): workspace = cluster_envs.get("engine_workspace", None) if not workspace: return # is fleet inner models if workspace.startswith("paddlerec."): fleet_package = envs.get_runtime_environ("PACKAGE_BASE") workspace_dir = workspace.split("paddlerec.")[1].replace(".", "/") path = os.path.join(fleet_package, workspace_dir) else: path = workspace for name, value in cluster_envs.items(): if isinstance(value, str): value = value.replace("{workspace}", path) cluster_envs[name] = value def master(): from paddlerec.core.engine.cluster.cluster import ClusterEngine with open(args.backend, 'r') as rb: _envs = yaml.load(rb.read(), Loader=yaml.FullLoader) flattens = envs.flatten_environs(_envs, "_") flattens["engine_role"] = args.role flattens["engine_run_config"] = args.model flattens["engine_temp_path"] = tempfile.mkdtemp() update_workspace(flattens) envs.set_runtime_environs(flattens) print(envs.pretty_print_envs(flattens, ("Submit Runtime Envs", "Value"))) launch = ClusterEngine(None, args.model) return launch def worker(): trainer = get_trainer_prefix(args) + "ClusterTrainer" cluster_envs = {} cluster_envs["train.trainer.trainer"] = trainer cluster_envs["train.trainer.engine"] = "cluster" cluster_envs["train.trainer.device"] = args.device cluster_envs["train.trainer.platform"] = envs.get_platform() print("launch {} engine with cluster to with model: {}".format( trainer, args.model)) set_runtime_envs(cluster_envs, args.model) trainer = TrainerFactory.create(args.model) return trainer if args.role == "WORKER": return worker() else: return master() def cluster_mpi_engine(args): print("launch cluster engine with cluster to run model: {}".format(args.model)) cluster_envs = {} cluster_envs["train.trainer.trainer"] = "CtrCodingTrainer" cluster_envs["train.trainer.device"] = args.device cluster_envs["train.trainer.platform"] = envs.get_platform() set_runtime_envs(cluster_envs, args.model) trainer = TrainerFactory.create(args.model) return trainer def local_cluster_engine(args): from paddlerec.core.engine.local_cluster import LocalClusterEngine trainer = get_trainer_prefix(args) + "ClusterTrainer" cluster_envs = {} cluster_envs["server_num"] = 1 cluster_envs["worker_num"] = 1 cluster_envs["start_port"] = envs.find_free_port() cluster_envs["log_dir"] = "logs" cluster_envs["train.trainer.trainer"] = trainer cluster_envs["train.trainer.strategy"] = "async" cluster_envs["train.trainer.threads"] = "2" cluster_envs["train.trainer.engine"] = "local_cluster" cluster_envs["train.trainer.device"] = args.device cluster_envs["train.trainer.platform"] = envs.get_platform() cluster_envs["CPU_NUM"] = "2" print("launch {} engine with cluster to run model: {}".format(trainer, args.model)) set_runtime_envs(cluster_envs, args.model) launch = LocalClusterEngine(cluster_envs, args.model) return launch def local_mpi_engine(args): print("launch cluster engine with cluster to run model: {}".format(args.model)) from paddlerec.core.engine.local_mpi import LocalMPIEngine print("use 1X1 MPI ClusterTraining at localhost to run model: {}".format(args.model)) mpi = util.run_which("mpirun") if not mpi: raise RuntimeError("can not find mpirun, please check environment") cluster_envs = {} cluster_envs["mpirun"] = mpi cluster_envs["train.trainer.trainer"] = "CtrCodingTrainer" cluster_envs["log_dir"] = "logs" cluster_envs["train.trainer.engine"] = "local_cluster" cluster_envs["train.trainer.device"] = args.device cluster_envs["train.trainer.platform"] = envs.get_platform() set_runtime_envs(cluster_envs, args.model) launch = LocalMPIEngine(cluster_envs, args.model) return launch def get_abs_model(model): if model.startswith("paddlerec."): fleet_base = envs.get_runtime_environ("PACKAGE_BASE") workspace_dir = model.split("paddlerec.")[1].replace(".", "/") path = os.path.join(fleet_base, workspace_dir, "config.yaml") else: if not os.path.isfile(model): raise IOError("model config: {} invalid".format(model)) path = model return path if __name__ == "__main__": parser = argparse.ArgumentParser(description='paddle-rec run') parser.add_argument("-m", "--model", type=str) parser.add_argument("-e", "--engine", type=str, choices=["single", "local_cluster", "cluster", "tdm_single", "tdm_local_cluster", "tdm_cluster"]) parser.add_argument("-d", "--device", type=str, choices=["cpu", "gpu"], default="cpu") parser.add_argument("-b", "--backend", type=str, default=None) parser.add_argument("-r", "--role", type=str, choices=["master", "worker"], default="master") abs_dir = os.path.dirname(os.path.abspath(__file__)) envs.set_runtime_environs({"PACKAGE_BASE": abs_dir}) args = parser.parse_args() args.engine = args.engine.upper() args.device = args.device.upper() args.role = args.role.upper() model_name = args.model.split('.')[-1] args.model = get_abs_model(args.model) engine_registry() which_engine = get_engine(args) engine = which_engine(args) engine.run()