# Copyright (c) 2021 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. from __future__ import print_function import unittest import time import paddle import paddle.fluid as fluid import copy import os import subprocess from paddle.distributed.utils.launch_utils import find_free_ports, watch_local_trainers, get_cluster, TrainerProc from paddle.fluid.framework import _test_eager_guard def get_cluster_from_args(selected_gpus): cluster_node_ips = '127.0.0.1' node_ip = '127.0.0.1' node_ips = [x.strip() for x in cluster_node_ips.split(',')] node_ips.index(node_ip) free_ports = None free_ports = find_free_ports(len(selected_gpus)) if free_ports is not None: free_ports = list(free_ports) trainer_endpoints = [] for ip in node_ips: trainer_endpoints.append(["%s:%d" % (ip, port) for port in free_ports]) return get_cluster(node_ips, node_ip, trainer_endpoints, selected_gpus) def get_gpus(selected_gpus): selected_gpus = [x.strip() for x in selected_gpus.split(',')] return selected_gpus def start_local_trainers_cpu(trainer_endpoints, training_script, training_script_args, log_dir=None): current_env = copy.copy(os.environ.copy()) current_env.pop("http_proxy", None) current_env.pop("https_proxy", None) procs = [] n_rank = len(trainer_endpoints) print(trainer_endpoints) for rank_id, endpoint in enumerate(trainer_endpoints): proc_env = { "PADDLE_DISTRI_BACKEND": "gloo", "PADDLE_TRAINER_ID": "%d" % rank_id, "PADDLE_CURRENT_ENDPOINT": "%s" % endpoint, "PADDLE_TRAINERS_NUM": "%d" % n_rank, "PADDLE_TRAINER_ENDPOINTS": ",".join(trainer_endpoints) } current_env.update(proc_env) print("trainer proc env:{}".format(current_env)) assert os.getenv('WITH_COVERAGE', 'OFF') == 'OFF', "Gloo don't support WITH_COVERAGE." cmd = "python -u " + training_script print("start trainer proc:{} env:{}".format(cmd, proc_env)) fn = None proc = subprocess.Popen(cmd.split(" "), env=current_env) tp = TrainerProc() tp.proc = proc tp.rank = rank_id tp.log_fn = fn tp.cmd = cmd procs.append(tp) return procs def start_local_trainers(cluster, pod, training_script, training_script_args, eager_mode=True, log_dir=None): current_env = copy.copy(os.environ.copy()) #paddle broadcast ncclUniqueId use socket, and #proxy maybe make trainers unreachable, so delete them. #if we set them to "", grpc will log error message "bad uri" #so just delete them. current_env.pop("http_proxy", None) current_env.pop("https_proxy", None) procs = [] for t in pod.trainers: proc_env = { "FLAGS_selected_gpus": "%s" % ",".join([str(g) for g in t.gpus]), "PADDLE_TRAINER_ID": "%d" % t.rank, "PADDLE_CURRENT_ENDPOINT": "%s" % t.endpoint, "PADDLE_TRAINERS_NUM": "%d" % cluster.trainers_nranks(), "PADDLE_TRAINER_ENDPOINTS": ",".join(cluster.trainers_endpoints()) } if not eager_mode: proc_env["FLAGS_enable_eager_mode"] = "%d" % 0 current_env.update(proc_env) print("trainer proc env:{}".format(current_env)) if os.getenv('WITH_COVERAGE', 'OFF') == 'ON': cmd = "python -m coverage run --branch -p " + training_script else: cmd = "python -u " + training_script print("start trainer proc:{} env:{}".format(cmd, proc_env)) fn = None proc = subprocess.Popen(cmd.split(" "), env=current_env) tp = TrainerProc() tp.proc = proc tp.rank = t.rank tp.log_fn = fn tp.cmd = cmd procs.append(tp) return procs class TestMultipleGpus(unittest.TestCase): def run_mnist_2gpu(self, target_file_name, eager_mode=True): if not fluid.core.is_compiled_with_cuda( ) or fluid.core.get_cuda_device_count() == 0: return selected_gpus = get_gpus('0,1') cluster = None pod = None cluster, pod = get_cluster_from_args(selected_gpus) procs = start_local_trainers(cluster, pod, eager_mode=eager_mode, training_script=target_file_name, training_script_args=[]) while True: alive = watch_local_trainers(procs, cluster.trainers_endpoints()) if not alive: print("Local procs complete, POD info:{}".format(pod)) break time.sleep(3) class TestMultipleWithGloo(unittest.TestCase): def run_mnist_2cpu(self, target_file_name): cluster, pod = get_cluster_from_args( [0, 1]) #tmp use. for getting trainer_nranks() procs = start_local_trainers_cpu(cluster.trainers_endpoints(), training_script=target_file_name, training_script_args=[]) while True: alive = watch_local_trainers(procs, cluster.trainers_nranks()) if not alive: print("Local procs complete, POD info:{}".format(pod)) break time.sleep(3) class TestDataParallelGradientCheck(TestMultipleGpus): def test_multiple_gpus_dynamic(self): self.run_mnist_2gpu('parallel_dygraph_gradient_check.py', eager_mode=False) class TestDataParallelWithPyLayer(TestMultipleGpus): def test_parallel_dygraph_dataparallel_with_pylayer(self): self.run_mnist_2gpu('parallel_dygraph_dataparallel_with_pylayer.py') self.run_mnist_2gpu('parallel_dygraph_dataparallel_with_pylayer.py', eager_mode=False) class TestGradientCheckInEagerMode(TestMultipleGpus): def test_multiple_gpus_dynamic(self): self.run_mnist_2gpu('parallel_dygraph_gradient_check_in_eager_mode.py') if __name__ == "__main__": os.environ["FLAGS_enable_eager_mode"] = "1" unittest.main()