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run.py
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# 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.
import os
import subprocess
import sys
import argparse
import tempfile
import copy
from paddlerec.core.factory import TrainerFactory
from paddlerec.core.utils import envs
from paddlerec.core.utils import util
from paddlerec.core.utils import validation
engines = {}
device = ["CPU", "GPU"]
engine_choices = [
"TRAIN", "SINGLE_TRAIN", "INFER", "SINGLE_INFER", "LOCAL_CLUSTER",
"LOCAL_CLUSTER_TRAIN", "CLUSTER_TRAIN"
]
def engine_registry():
engines["TRANSPILER"] = {}
engines["PSLIB"] = {}
engines["TRANSPILER"]["TRAIN"] = single_train_engine
engines["TRANSPILER"]["SINGLE_TRAIN"] = single_train_engine
engines["TRANSPILER"]["INFER"] = single_infer_engine
engines["TRANSPILER"]["SINGLE_INFER"] = single_infer_engine
engines["TRANSPILER"]["LOCAL_CLUSTER"] = local_cluster_engine
engines["TRANSPILER"]["LOCAL_CLUSTER_TRAIN"] = local_cluster_engine
engines["TRANSPILER"]["CLUSTER"] = cluster_engine
engines["PSLIB"]["SINGLE_TRAIN"] = local_mpi_engine
engines["PSLIB"]["TRAIN"] = local_mpi_engine
engines["PSLIB"]["LOCAL_CLUSTER_TRAIN"] = local_mpi_engine
engines["PSLIB"]["LOCAL_CLUSTER"] = local_mpi_engine
engines["PSLIB"]["CLUSTER_TRAIN"] = cluster_mpi_engine
engines["PSLIB"]["CLUSTER"] = cluster_mpi_engine
def get_inters_from_yaml(file, filters):
_envs = envs.load_yaml(file)
flattens = envs.flatten_environs(_envs)
inters = {}
for k, v in flattens.items():
for f in filters:
if k.startswith(f):
inters[k] = v
return inters
def get_all_inters_from_yaml(file, filters):
_envs = envs.load_yaml(file)
all_flattens = {}
def fatten_env_namespace(namespace_nests, local_envs):
for k, v in local_envs.items():
if isinstance(v, dict):
nests = copy.deepcopy(namespace_nests)
nests.append(k)
fatten_env_namespace(nests, v)
elif (k == "dataset" or k == "phase" or
k == "runner") and isinstance(v, list):
for i in v:
if i.get("name") is None:
raise ValueError("name must be in dataset list. ", v)
nests = copy.deepcopy(namespace_nests)
nests.append(k)
nests.append(i["name"])
fatten_env_namespace(nests, i)
else:
global_k = ".".join(namespace_nests + [k])
all_flattens[global_k] = v
fatten_env_namespace([], _envs)
ret = {}
for k, v in all_flattens.items():
for f in filters:
if k.startswith(f):
ret[k] = v
return ret
def get_modes(running_config):
if not isinstance(running_config, dict):
raise ValueError("get_modes arguments must be [dict]")
modes = running_config.get("mode")
if not modes:
raise ValueError("yaml mast have config: mode")
if isinstance(modes, str):
modes = [modes]
return modes
def get_engine(args, running_config, mode):
transpiler = get_transpiler()
engine_class = ".".join(["runner", mode, "class"])
engine_device = ".".join(["runner", mode, "device"])
device_gpu_choices = ".".join(["runner", mode, "selected_gpus"])
engine = running_config.get(engine_class, None)
if engine is None:
raise ValueError("not find {} in yaml, please check".format(
mode, engine_class))
device = running_config.get(engine_device, None)
engine = engine.upper()
device = device.upper()
if device is None:
print("not find device be specified in yaml, set CPU as default")
device = "CPU"
if device == "GPU":
selected_gpus = running_config.get(device_gpu_choices, None)
if selected_gpus is None:
print(
"not find selected_gpus be specified in yaml, set `0` as default"
)
selected_gpus = "0"
else:
print("selected_gpus {} will be specified for running".format(
selected_gpus))
selected_gpus_num = len(selected_gpus.split(","))
if selected_gpus_num > 1:
engine = "LOCAL_CLUSTER"
if engine not in engine_choices:
raise ValueError("{} can not be chosen in {}".format(engine_class,
engine_choices))
run_engine = engines[transpiler].get(engine, None)
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):
if cluster_envs is None:
cluster_envs = {}
envs.set_runtime_environs(cluster_envs)
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 single_train_engine(args):
run_extras = get_all_inters_from_yaml(args.model, ["runner."])
mode = envs.get_runtime_environ("mode")
trainer_class = ".".join(["runner", mode, "trainer_class"])
fleet_class = ".".join(["runner", mode, "fleet_mode"])
device_class = ".".join(["runner", mode, "device"])
selected_gpus_class = ".".join(["runner", mode, "selected_gpus"])
trainer = run_extras.get(trainer_class, "GeneralTrainer")
fleet_mode = run_extras.get(fleet_class, "ps")
device = run_extras.get(device_class, "cpu")
selected_gpus = run_extras.get(selected_gpus_class, "0")
executor_mode = "train"
single_envs = {}
if device.upper() == "GPU":
selected_gpus_num = len(selected_gpus.split(","))
if selected_gpus_num != 1:
raise ValueError(
"Single Mode Only Support One GPU, Set Local Cluster Mode to use Multi-GPUS"
)
single_envs["selsected_gpus"] = selected_gpus
single_envs["FLAGS_selected_gpus"] = selected_gpus
single_envs["train.trainer.trainer"] = trainer
single_envs["fleet_mode"] = fleet_mode
single_envs["train.trainer.executor_mode"] = executor_mode
single_envs["train.trainer.threads"] = "2"
single_envs["train.trainer.platform"] = envs.get_platform()
single_envs["train.trainer.engine"] = "single"
set_runtime_envs(single_envs, args.model)
trainer = TrainerFactory.create(args.model)
return trainer
def single_infer_engine(args):
_envs = envs.load_yaml(args.model)
run_extras = get_all_inters_from_yaml(args.model, ["runner."])
mode = envs.get_runtime_environ("mode")
trainer_class = ".".join(["runner", mode, "trainer_class"])
fleet_class = ".".join(["runner", mode, "fleet_mode"])
device_class = ".".join(["runner", mode, "device"])
selected_gpus_class = ".".join(["runner", mode, "selected_gpus"])
trainer = run_extras.get(trainer_class, "GeneralTrainer")
fleet_mode = run_extras.get(fleet_class, "ps")
device = run_extras.get(device_class, "cpu")
selected_gpus = run_extras.get(selected_gpus_class, "0")
executor_mode = "infer"
single_envs = {}
if device.upper() == "GPU":
selected_gpus_num = len(selected_gpus.split(","))
if selected_gpus_num != 1:
raise ValueError(
"Single Mode Only Support One GPU, Set Local Cluster Mode to use Multi-GPUS"
)
single_envs["selsected_gpus"] = selected_gpus
single_envs["FLAGS_selected_gpus"] = selected_gpus
single_envs["train.trainer.trainer"] = trainer
single_envs["train.trainer.executor_mode"] = executor_mode
single_envs["fleet_mode"] = fleet_mode
single_envs["train.trainer.threads"] = "2"
single_envs["train.trainer.platform"] = envs.get_platform()
single_envs["train.trainer.engine"] = "single"
set_runtime_envs(single_envs, args.model)
trainer = TrainerFactory.create(args.model)
return trainer
def cluster_engine(args):
def master():
role = "MASTER"
from paddlerec.core.engine.cluster.cluster import ClusterEngine
_envs = envs.load_yaml(args.backend)
flattens = envs.flatten_environs(_envs, "_")
flattens["engine_role"] = role
flattens["engine_run_config"] = args.model
flattens["engine_temp_path"] = tempfile.mkdtemp()
envs.set_runtime_environs(flattens)
print(envs.pretty_print_envs(flattens, ("Submit Envs", "Value")))
launch = ClusterEngine(None, args.model)
return launch
def worker():
role = "WORKER"
_envs = envs.load_yaml(args.model)
run_extras = get_all_inters_from_yaml(args.model,
["train.", "runner."])
trainer_class = run_extras.get(
"runner." + _envs["mode"] + ".trainer_class", None)
if trainer_class:
trainer = trainer_class
else:
trainer = "GeneralTrainer"
executor_mode = "train"
distributed_strategy = run_extras.get(
"runner." + _envs["mode"] + ".distribute_strategy", "async")
selected_gpus = run_extras.get(
"runner." + _envs["mode"] + ".selected_gpus", "0")
fleet_mode = run_extras.get("runner." + _envs["mode"] + ".fleet_mode",
"ps")
cluster_envs = {}
cluster_envs["selected_gpus"] = selected_gpus
cluster_envs["fleet_mode"] = fleet_mode
cluster_envs["train.trainer.trainer"] = trainer
cluster_envs["train.trainer.executor_mode"] = executor_mode
cluster_envs["train.trainer.engine"] = "cluster"
cluster_envs["train.trainer.strategy"] = distributed_strategy
cluster_envs["train.trainer.threads"] = envs.get_runtime_environ(
"CPU_NUM")
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
role = os.getenv("PADDLE_PADDLEREC_ROLE", "MASTER")
if 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.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
_envs = envs.load_yaml(args.model)
run_extras = get_all_inters_from_yaml(args.model, ["train.", "runner."])
trainer_class = run_extras.get("runner." + _envs["mode"] + ".runner_class",
None)
if trainer_class:
trainer = trainer_class
else:
trainer = "GeneralTrainer"
executor_mode = "train"
distributed_strategy = run_extras.get(
"runner." + _envs["mode"] + ".distribute_strategy", "async")
worker_num = run_extras.get("runner." + _envs["mode"] + ".worker_num", 1)
server_num = run_extras.get("runner." + _envs["mode"] + ".server_num", 1)
selected_gpus = run_extras.get(
"runner." + _envs["mode"] + ".selected_gpus", "0")
fleet_mode = run_extras.get("runner." + _envs["mode"] + ".fleet_mode", "")
if fleet_mode == "":
device = run_extras.get("runner." + _envs["mode"] + ".device", "cpu")
if len(selected_gpus.split(",")) > 1 and device.upper() == "GPU":
fleet_mode = "COLLECTIVE"
else:
fleet_mode = "PS"
cluster_envs = {}
cluster_envs["server_num"] = server_num
cluster_envs["worker_num"] = worker_num
cluster_envs["selected_gpus"] = selected_gpus
cluster_envs["start_port"] = envs.find_free_port()
cluster_envs["fleet_mode"] = fleet_mode
cluster_envs["log_dir"] = "logs"
cluster_envs["train.trainer.trainer"] = trainer
cluster_envs["train.trainer.executor_mode"] = executor_mode
cluster_envs["train.trainer.strategy"] = distributed_strategy
cluster_envs["train.trainer.threads"] = "2"
cluster_envs["train.trainer.engine"] = "local_cluster"
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")
_envs = envs.load_yaml(args.model)
run_extras = get_all_inters_from_yaml(args.model, ["train.", "runner."])
trainer_class = run_extras.get("runner." + _envs["mode"] + ".runner_class",
None)
executor_mode = "train"
distributed_strategy = run_extras.get(
"runner." + _envs["mode"] + ".distribute_strategy", "async")
fleet_mode = run_extras.get("runner." + _envs["mode"] + ".fleet_mode",
"ps")
if trainer_class:
trainer = trainer_class
else:
trainer = "GeneralTrainer"
cluster_envs = {}
cluster_envs["mpirun"] = mpi
cluster_envs["train.trainer.trainer"] = trainer
cluster_envs["log_dir"] = "logs"
cluster_envs["train.trainer.engine"] = "local_cluster"
cluster_envs["train.trainer.executor_mode"] = executor_mode
cluster_envs["fleet_mode"] = fleet_mode
cluster_envs["train.trainer.strategy"] = distributed_strategy
cluster_envs["train.trainer.threads"] = "2"
cluster_envs["train.trainer.engine"] = "local_cluster"
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."):
dir = envs.paddlerec_adapter(model)
path = os.path.join(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("-b", "--backend", type=str, default=None)
abs_dir = os.path.dirname(os.path.abspath(__file__))
envs.set_runtime_environs({"PACKAGE_BASE": abs_dir})
args = parser.parse_args()
args.model = get_abs_model(args.model)
if not validation.yaml_validation(args.model):
sys.exit(-1)
engine_registry()
running_config = get_all_inters_from_yaml(args.model, ["mode", "runner."])
modes = get_modes(running_config)
for mode in modes:
envs.set_runtime_environs({"mode": mode})
which_engine = get_engine(args, running_config, mode)
engine = which_engine(args)
engine.run()