launch_utils.py 42.1 KB
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# Copyright (c) 2019 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 functools
import logging
import socket
import time
import os
import signal
import copy
import sys
import subprocess
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import tempfile
import shutil
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from contextlib import closing
import socket
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import warnings
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import six
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import paddle
import paddle.fluid as fluid
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logger = logging.getLogger("root")
logger.propagate = False


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class DistributeMode():
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    """
    There are various mode for fleetrun, each of them is designed for different model.
    """
    COLLECTIVE = 0
    PS = 1
    PS_HETER = 2


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class DeviceMode():
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    """
    Training devices type
    """
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    UNKNOWN = -1
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    CPU = 0
    GPU = 1
    KUNLUN = 2
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    XPU = 2
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class Cluster(object):
    def __init__(self, hdfs):
        self.job_server = None
        self.pods = []
        self.hdfs = None
        self.job_stage_flag = None

    def __str__(self):
        return "job_server:{} pods:{} job_stage_flag:{} hdfs:{}".format(
            self.job_server, [str(pod) for pod in self.pods],
            self.job_stage_flag, self.hdfs)

    def __eq__(self, cluster):
        if len(self.pods) != len(cluster.pods):
            return False

        for a, b in zip(self.pods, cluster.pods):
            if a != b:
                return False

        if self.job_stage_flag != cluster.job_stage_flag:
            return False

        return True

    def __ne__(self, cluster):
        return not self.__eq__(cluster)

    def update_pods(cluster):
        self.pods = copy.copy(cluster.pods)

    def trainers_nranks(self):
        return len(self.trainers_endpoints())

    def pods_nranks(self):
        return len(self.pods)

    def trainers_endpoints(self):
        r = []
        for pod in self.pods:
            for t in pod.trainers:
                r.append(t.endpoint)
        return r

    def pods_endpoints(self):
        r = []
        for pod in self.pods:
            ep = "{}:{}".format(pod.addr, pod.port)
            assert pod.port != None and pod.addr != None, "{} not a valid endpoint".format(
                ep)
            r.append(ep)

        return r

    def get_pod_by_id(self, pod_id):
        for pod in self.pods:
            if str(pod_id) == str(pod.id):
                return pod

        return None


class JobServer(object):
    def __init__(self):
        self.endpoint = None

    def __str__(self):
        return "{}".format(self.endpoint)

    def __eq__(self, j):
        return self.endpint == j.endpoint

    def __ne__(self, j):
        return not self == j


class Trainer(object):
    def __init__(self):
        self.gpus = []
        self.endpoint = None
        self.rank = None

    def __str__(self):
        return "gpu:{} endpoint:{} rank:{}".format(self.gpus, self.endpoint,
                                                   self.rank)

    def __eq__(self, t):
        if len(self.gpus) != len(t.gpus):
            return False

        if self.endpoint != t.endpoint or \
                self.rank != t.rank:
            return False

        for a, b in zip(self.gpus, t.gpus):
            if a != b:
                return False

        return True

    def __ne__(self, t):
        return not self == t

    def rank(self):
        return self.rank


class Pod(object):
    def __init__(self):
        self.rank = None
        self.id = None
        self.addr = None
        self.port = None
        self.trainers = []
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        self.servers = []
        self.workers = []
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        self.heter_workers = []
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        self.gpus = []

    def __str__(self):
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        return "rank:{} id:{} addr:{} port:{} visible_gpu:{} trainers:{} servers:{} \
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            workers:{} heter_workers:{}".format(
            self.rank, self.id, self.addr, self.port, self.gpus, [
                str(t) for t in self.trainers
            ], [str(s) for s in self.servers], [str(w) for w in self.workers],
            [str(h) for h in self.heter_workers])
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    def __eq__(self, pod):
        if self.rank != pod.rank or \
                self.id != pod.id or \
                self.addr != pod.addr or \
                self.port != pod.port:
            logger.debug("pod {} != pod".format(self, pod))
            return False

        if len(self.trainers) != len(pod.trainers):
            logger.debug("trainers {} != {}".format(self.trainers,
                                                    pod.trainers))
            return False

        for i in range(len(self.trainers)):
            if self.trainers[i] != pod.trainers[i]:
                logger.debug("trainer {} != {}".format(self.trainers[i],
                                                       pod.trainers[i]))
                return False

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        if len(self.servers) != len(pod.servers):
            logger.debug("servers {} != {}".format(self.servers, pod.servers))
            return False

        for i in range(len(self.servers)):
            if self.servers[i] != pod.servers[i]:
                logger.debug("servers {} != {}".format(self.servers[i],
                                                       pod.servers[i]))
                return False

        if len(self.workers) != len(pod.workers):
            logger.debug("workers {} != {}".format(self.workers, pod.workers))
            return False

        for i in range(len(self.workers)):
            if self.workers[i] != pod.workers[i]:
                logger.debug("workers {} != {}".format(self.workers[i],
                                                       pod.workers[i]))
                return False

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        return True

    def __ne__(self, pod):
        return not self == pod

    def parse_response(self, res_pods):
        pass

    def rank(self):
        return self.rank

    def get_visible_gpus(self):
        r = ""
        for g in self.gpus:
            r += "{},".format(g)

        assert r != "", "this pod {} can't see any gpus".format(self)

        r = r[:-1]
        return r


def get_logger(log_level=20, name="root"):
    logger = logging.getLogger(name)
    logger.setLevel(log_level)

    log_handler = logging.StreamHandler()
    log_format = logging.Formatter(
        '%(levelname)s %(asctime)s %(filename)s:%(lineno)d] %(message)s')
    log_handler.setFormatter(log_format)
    logger.addHandler(log_handler)

    return logger


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def get_cluster(node_ips, node_ip, trainer_endpoints, device_mode,
                devices_per_proc):
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    assert type(trainer_endpoints) is list, "trainer_endpoints must be list"
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    cluster = Cluster(hdfs=None)
    trainer_rank = 0
    for node_rank, ip in enumerate(node_ips):
        pod = Pod()
        pod.rank = node_rank
        pod.addr = ip
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        cur_node_endpoints = trainer_endpoints[node_rank]
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        # when use paddlecloud, endpoints may > devices_per_proc(user_defined)
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        assert len(cur_node_endpoints) >= len(
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            devices_per_proc
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        ), "current trainer_endpoints size should be greater equal than selected_gpus size."
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        for i in range(len(devices_per_proc)):
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            trainer = Trainer()
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            if device_mode == DeviceMode.GPU:
                if isinstance(devices_per_proc[i], (list, tuple)):
                    trainer.gpus.extend(devices_per_proc[i])
                else:
                    trainer.gpus.append(devices_per_proc[i])
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            elif device_mode == DeviceMode.XPU:
                if isinstance(devices_per_proc[i], (list, tuple)):
                    trainer.gpus.extend(devices_per_proc[i])
                else:
                    trainer.gpus.extend(devices_per_proc[i])
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            trainer.endpoint = "%s" % (cur_node_endpoints[i])
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            trainer.rank = trainer_rank
            trainer_rank += 1

            pod.trainers.append(trainer)
        cluster.pods.append(pod)

    pod_rank = node_ips.index(node_ip)
    return cluster, cluster.pods[pod_rank]


def terminate_local_procs(procs):
    for p in procs:
        if p.proc.poll() is None:
            p.proc.terminate()
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            if p.log_fn:
                p.log_fn.close()
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            logger.debug("terminate process id:{}".format(p.proc.pid))

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    # wait all process terminiated
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    time.sleep(3)
    for step in range(0, 50):
        alive = False
        for p in procs:
            if p.proc.poll() is None:  # not termniate
                os.kill(p.proc.pid, signal.SIGKILL)
                alive = True

        if not alive:
            logger.info("terminate all the procs")
            return

        time.sleep(3)

    logger.fatal("can't kill all process and exit")
    exit(1)


def get_host_name_ip():
    try:
        host_name = socket.gethostname()
        host_ip = socket.gethostbyname(host_name)
        return host_name, host_ip
    except:
        return None


def add_arguments(argname, type, default, help, argparser, **kwargs):
    """Add argparse's argument.
    Usage:
    .. code-block:: python
        parser = argparse.ArgumentParser()
        add_argument("name", str, "Jonh", "User name.", parser)
        args = parser.parse_args()
    """
    type = distutils.util.strtobool if type == bool else type
    argparser.add_argument(
        "--" + argname,
        default=default,
        type=type,
        help=help + ' Default: %(default)s.',
        **kwargs)


def find_free_ports(num):
    def __free_port():
        with closing(socket.socket(socket.AF_INET, socket.SOCK_STREAM)) as s:
            s.bind(('', 0))
            return s.getsockname()[1]

    port_set = set()
    step = 0
    while True:
        port = __free_port()
        if port not in port_set:
            port_set.add(port)

        if len(port_set) >= num:
            return port_set

        step += 1
        if step > 100:
            print(
                "can't find avilable port and use the specified static port now!"
            )
            return None

    return None


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def get_ports(num, offset):
    if os.environ.get('FLAGS_START_PORT') is None:
        ports = find_free_ports(num)
        if ports is not None:
            ports = list(ports)
    else:
        start_port = os.environ.get('FLAGS_START_PORT')
        ports = range(start_port + offset, start_port + offset + num, 1)
    return ports


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def pretty_print_envs(envs, header=None):
    spacing = 2
    max_k = 40
    max_v = 45

    for k, v in envs.items():
        max_k = max(max_k, len(k))

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    h_format = "    " + "|{{:>{}s}}{}{{:^{}s}}|\n".format(max_k, " " * spacing,
                                                          max_v)
    l_format = "    " + "|{{:>{}s}}{{}}{{:^{}s}}|\n".format(max_k, max_v)
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    length = max_k + max_v + spacing

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    border = "    +" + "".join(["="] * length) + "+"
    line = "    +" + "".join(["-"] * length) + "+"
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    draws = ""
    draws += border + "\n"

    if header:
        draws += h_format.format(header[0], header[1])
    else:
        draws += h_format.format("fleetrun Distributed Envs", "Value")

    draws += line + "\n"

    for k, v in envs.items():
        if isinstance(v, str) and len(v) >= max_v:
            str_v = "... " + v[-41:]
        else:
            str_v = v

        draws += l_format.format(k, " " * spacing, str(str_v))

    draws += border

    _str = "\n{}\n".format(draws)
    return _str


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class TrainerProc(object):
    def __init__(self):
        self.proc = None
        self.log_fn = None
        self.log_offset = None
        self.rank = None
        self.local_rank = None
        self.cmd = None


def start_local_trainers(cluster,
                         pod,
                         training_script,
                         training_script_args,
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                         log_dir=None,
                         envs=None):

    if envs is None:
        current_env = copy.copy(os.environ.copy())
    else:
        current_env = copy.copy(envs)

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    # 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.
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    current_env.pop("http_proxy", None)
    current_env.pop("https_proxy", None)

    procs = []
    for idx, t in enumerate(pod.trainers):
        proc_env = {
            "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())
        }

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        if fluid.core.is_compiled_with_cuda() and len(t.gpus) > 0:
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            proc_env["FLAGS_selected_gpus"] = "%s" % ",".join(
                [str(g) for g in t.gpus])
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        elif fluid.core.is_compiled_with_xpu() and len(t.gpus) > 0:
            proc_env["FLAGS_selected_xpus"] = "%s" % ",".join(
                [str(g) for g in t.gpus])
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        current_env.update(proc_env)

        cmd = [sys.executable, "-u", training_script] + training_script_args

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        logger.debug("start trainer proc{}  env:{}".format(cmd, current_env))

        if idx == 0:
            logger.info("Local start {} processes. First process distributed "
                        "environment info (Only For Debug): {}".format(
                            len(pod.trainers),
                            pretty_print_envs(proc_env, ("Distributed Envs",
                                                         "Value"))))
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            logger.info(
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                "details abouts PADDLE_TRAINER_ENDPOINTS can be found in {}/endpoints.log, and detail running logs maybe found in {}/workerlog.0".
                format(log_dir, log_dir))
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        fn = None
        if log_dir is not None:
            os.system("mkdir -p {}".format(log_dir))
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            if os.path.exists("%s/endpoints.log" % log_dir):
                os.system("rm -f {}/endpoints.log".format(log_dir))
            with open("%s/endpoints.log" % log_dir, "w") as f:
                f.write("PADDLE_TRAINER_ENDPOINTS: \n")
                f.write("\n".join(cluster.trainers_endpoints()))
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            fn = open("%s/workerlog.%d" % (log_dir, idx), "a")
            proc = subprocess.Popen(cmd, env=current_env, stdout=fn, stderr=fn)
        else:
            proc = subprocess.Popen(cmd, env=current_env)

        tp = TrainerProc()
        tp.proc = proc
        tp.rank = t.rank
        tp.local_rank = idx
        tp.log_fn = fn
        tp.log_offset = fn.tell() if fn else None
        tp.cmd = cmd

        procs.append(tp)

    return procs


def pull_worker_log(tp):
    if tp.log_fn:
        with open(tp.log_fn.name, 'r') as fin:
            fin.seek(tp.log_offset, 0)
            for line in fin:
                try:
                    sys.stdout.write(line)
                except UnicodeEncodeError:
                    sys.stdout.write(
                        'UnicodeEncodeError occurs at this line. '
                        'Please refer to the original log file "%s"\n' %
                        tp.log_fn.name)
            tp.log_offset = fin.tell()


def watch_local_trainers(procs, nranks):
    try:
        error = False
        error_rank = []
        # wait all process finish or one error
        alive = False
        for p in procs:
            if p.log_fn and p.local_rank == 0:
                pull_worker_log(p)

            ret = p.proc.poll()
            if ret is None:
                alive = True
            elif ret != 0:
                error = True
                error_rank.append(p.rank)

        if error:
            terminate_local_procs(procs)
            exit(1)

    except KeyboardInterrupt:
        logger.warning("KeyboardInterrupt, exit")
        terminate_local_procs(procs)
        raise
    except SystemExit:
        logger.error(
            "ABORT!!! Out of all {} trainers, the trainer process with rank={} was aborted. Please check its log.".
            format(nranks, error_rank))
        terminate_local_procs(procs)
        raise
    except:
        logger.error(
            "ABORT!!! Out of all {} trainers, the trainer process with rank={} was aborted. Please check its log.".
            format(nranks, error_rank))
        terminate_local_procs(procs)
        raise

    return alive
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def get_gpus(gpus):
    if gpus is None:
        gpus_num = fluid.core.get_cuda_device_count()
        res_gpus = [str(x) for x in range(0, gpus_num)]
    else:
        cuda_visible_devices = os.getenv("CUDA_VISIBLE_DEVICES")
        if cuda_visible_devices is None or cuda_visible_devices == "":
            res_gpus = [x.strip() for x in gpus.split(',')]
        else:
            # change gpus into relative values
            # e.g. CUDA_VISIBLE_DEVICES=4,5,6,7; args.gpus=4,5,6,7;
            # therefore gpus=0,1,2,3
            cuda_visible_devices_list = cuda_visible_devices.split(',')
            for x in gpus.split(','):
                assert x in cuda_visible_devices_list, "Can't find "\
                    "your gpus %s in CUDA_VISIBLE_DEVICES[%s]."\
                    % (x, cuda_visible_devices)
            res_gpus = [
                cuda_visible_devices_list.index(x.strip())
                for x in gpus.split(',')
            ]
            logger.info("Change selected_gpus into reletive values. --ips:{} "
                        "will change into relative_ips:{} according to your "
                        "CUDA_VISIBLE_DEVICES:{}".format(
                            gpus, res_gpus, cuda_visible_devices_list))

    return res_gpus


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def get_xpus(xpus):
    if xpus is None:
        xpus_num = fluid.core.get_xpu_device_count()
        res_xpus = [str(x) for x in range(0, xpus_num)]
    else:
        xpu_visible_devices = os.getenv("XPU_VISIBLE_DEVICES")
        if xpu_visible_devices is None or xpu_visible_devices == "":
            res_xpus = [x.strip() for x in xpus.split(',')]
        else:
            # change xpus into relative values
            # e.g. XPU_VISIBLE_DEVICES=4,5,6,7; args.xpus=4,5,6,7;
            # therefore xpus=0,1,2,3
            xpu_visible_devices_list = xpu_visible_devices.split(',')
            for x in xpus.split(','):
                assert x in xpu_visible_devices_list, "Can't find "\
                    "your xpus %s in XPU_VISIBLE_DEVICES[%s]."\
                    % (x, xpu_visible_devices)
            res_xpus = [
                xpu_visible_devices_list.index(x.strip())
                for x in xpus.split(',')
            ]
            logger.info("Change selected_xpus into reletive values. --ips:{} "
                        "will change into relative_ips:{} according to your "
                        "XPU_VISIBLE_DEVICES:{}".format(
                            xpus, res_xpus, xpu_visible_devices_list))

    return res_xpus


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def get_device_mode():
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    if fluid.core.is_compiled_with_cuda() and fluid.core.get_cuda_device_count(
    ) > 0:
        print("launch train in GPU mode")
        return DeviceMode.GPU
    elif fluid.core.is_compiled_with_xpu() and fluid.core.get_xpu_device_count(
    ) > 0:
        print("launch train in XPU mode")
        return DeviceMode.XPU
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    print("launch train in CPU mode")
    return DeviceMode.CPU
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def get_device_proc_info(args):
    # device_mode
    device_mode = get_device_mode()

    # devices
    devices_per_proc = []
    if device_mode == DeviceMode.GPU:
        gpus = get_gpus(args.gpus)
        if args.nproc_per_node is not None:
            assert (len(gpus) % int(args.nproc_per_node)) ==0, \
                "gpus' number:{} mod args.nproc_per_node:{} must == 0".format(len(gpus), arg.nproc_per_node)

            n = int(len(gpus) / int(args.nproc_per_node))
            devices_per_proc = [
                gpus[i:i + n] for i in six.moves.range(0, len(gpus), n)
            ]
        else:
            devices_per_proc = gpus
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    elif device_mode == DeviceMode.XPU:
        xpus = get_xpus(args.xpus)
        if args.nproc_per_node is not None:
            assert (len(xpus) % int(args.nproc_per_node)) == 0, \
                "xpus' number:{} mod args.nproc_per_node:{} must == 0".format(len(xpus), arg.nproc_per_node)

            n = int(len(xpus) / int(args.nproc_per_node))
            devices_per_proc = [
                xpus[i:i + n] for i in six.moves.range(0, len(xpus), n)
            ]
        else:
            devices_per_proc = xpus
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    elif device_mode == DeviceMode.CPU:
        if args.nproc_per_node is None:
            devices_per_proc = [0]
        else:
            devices_per_proc = [x for x in range(0, args.nproc_per_node)]
    else:
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        assert False, "Can't support device_mode:{}, support only cpu|gpu|xpu now.".format(
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            device_mode)

    return (device_mode, devices_per_proc)


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def direct_start(args):
    # run ps-cpu mode on paddlecloud, using given envs
    cmd = [sys.executable, "-u", args.training_script] + \
        args.training_script_args
    proc = subprocess.Popen(cmd)
    proc.wait()
    return


def get_custom_endpoints(origin_endpoints, offset=0):
    """
    origin_endpoint: ip:port
    user_define_endpoint: ip:(port+offset)
    """
    assert origin_endpoints != None
    paddle_user_define_endpoints_list = []
    for ip_port in origin_endpoints.split(","):
        ip = ip_port.split(":")[0]
        port = ip_port.split(":")[1]
        new_port = int(port) + offset
        paddle_user_define_endpoints_list.append(":".join((ip, str(new_port))))
    paddle_user_define_endpoints = ",".join(paddle_user_define_endpoints_list)
    return paddle_user_define_endpoints


def cloud_ps_heter_env_set(args):
    environs = {}

    paddle_trainer_endpoints = os.getenv("TRAINER_IP_PORT_LIST", "")
    assert paddle_trainer_endpoints != None

    paddle_pserver_endpoints = os.getenv("PSERVER_IP_PORT_LIST", "")
    assert paddle_pserver_endpoints != None

    # hard code for paddlecloud custom-framework
    avilable_ports = os.getenv("TRAINER_PORTS", "").split(",")
    assert len(
        avilable_ports
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    ) >= 2, "set paddle_ports_num >= 2 in config.ini for paddlecloud job submit"
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    # hard code for paddlecloud custom-framework
    trainers_num = len(paddle_pserver_endpoints.split(","))
    assert trainers_num != 0
    environs["PADDLE_TRAINERS_NUM"] = trainers_num
    environs["TRAINERS_NUM"] = trainers_num

    # hard code for paddlecloud custom-framework
    environs["PADDLE_HETER_TRAINER_IP_PORT_LIST"] = paddle_trainer_endpoints
    environs["PADDLE_PSERVERS_IP_PORT_LIST"] = paddle_pserver_endpoints
    environs["PADDLE_TRAINER_ENDPOINTS"] = get_custom_endpoints(
        paddle_pserver_endpoints, 1)
    heter_worker_num = len(paddle_trainer_endpoints.split(","))
    if (args.heter_worker_num != None) and (
            heter_worker_num != args.heter_worker_num):
        warnings.warn(
            "Your fleetrun setting: heter_worker_num is {}, but we find {} device can be used, this setting has been changed.".
            format(args.heter_worker_num, heter_worker_num))
        args.heter_worker_num = heter_worker_num

    for k, v in environs.items():
        os.environ[k] = str(v)
    logger.info("Set heter parameter server env: {}".format(
        pretty_print_envs(environs)))


class ParameterServerLauncher(object):
    def __init__(self, args, distribute_mode):
        self.args = args
        self.distribute_mode = distribute_mode
        self.server_num = 0
        self.worker_num = 0
        self.heter_worker_num = 0

        self.server_endpoints = ""
        self.server_endpoints_ips = []
        self.server_endpoints_port = []

        self.worker_endpoints = ""
        self.worker_endpoints_ips = []
        self.worker_endpoints_port = []

        self.heter_worker_endpoints = ""
        self.heter_worker_endpoints_ips = []
        self.heter_worker_endpoints_port = []

        self.is_local = True
        self.current_node_ip = ""

        self.get_role_endpoints(args)

    def get_role_endpoints(self, args):
        # get server envs
        if args.server_num:
            self.server_num = args.server_num
            if args.servers:
                assert len(
                    args.servers.split(",")
                ) == self.server_num, "The server_num and servers doesn't match. Expect servers endpoints num epual to server_num, but received servers enpoint num: {} and server_num {}".format(
                    len(args.servers.split(",")), self.server_num)
                self.server_endpoints = args.servers
            else:
                ports = get_ports(self.server_num, 0)
                self.server_endpoints = ",".join(
                    ["127.0.0.1:" + str(x) for x in ports])
        else:
            assert args.servers != "", "The setting of Parameter-Server must has server_num or servers."
            self.server_endpoints = args.servers
            self.server_num = len(self.server_endpoints.split(","))

        # get worker envs
        if args.worker_num:
            self.worker_num = args.worker_num
            if args.workers:
                assert len(
                    args.workers.split(",")
                ) == self.worker_num, "The worker_num and workers doesn't match. Expect workers endpoints num epual to worker_num, but received workers enpoint num: {} and worker_num {}".format(
                    len(args.workers.split(",")), self.worker_num)

                self.worker_endpoints = args.workers
            else:
                ports = get_ports(self.worker_num, self.server_num)
                self.worker_endpoints = ",".join(
                    ["127.0.0.1:" + str(x) for x in ports])
        else:
            assert args.workers != "", "The setting of Parameter-Server must has worker_num or workers."
            worker_endpoints_ips = [
                x.strip().split(":")[0] for x in args.workers.split(",")
            ]
            self.worker_num = len(worker_endpoints_ips)
            worker_endpoints_len = [
                len(x.strip().split(":")) for x in args.workers.split(",")
            ]

            if 1 in worker_endpoints_len:
                # if no port value in worker_endpoints, will set default port values.
                start_port = 6170
                worker_endpoints_port = range(
                    start_port + self.server_num,
                    start_port + self.server_num + self.worker_num, 1)
                # create endpoints str
                worker_endpoints = []
                for i in range(self.worker_num):
                    worker_endpoints.append(":".join((worker_endpoints_ips[
                        i], str(worker_endpoints_port[i]))))
                self.worker_endpoints = ",".join(worker_endpoints)
            else:
                self.worker_endpoints = args.workers

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        # get http_port
        if args.http_port:
            self.http_port = args.http_port
        else:
            http_port = get_ports(1, self.server_num + self.worker_num)
            http_ip = self.server_endpoints.split(",")[0].split(":")[0]
            self.http_port = http_ip + ":" + str(http_port[0])

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        # get heter worker envs
        if self.distribute_mode == DistributeMode.PS_HETER:
            if args.heter_worker_num:
                self.heter_worker_num = args.heter_worker_num
                if args.heter_workers:
                    assert len(
                        args.heter_workers.split(",")
                    ) == self.heter_worker_num, "The heter_worker_num and heter_workers doesn't match. Expect heter_workers endpoints num epual to heter_worker_num, but received heter_workers enpoint num: {} and heter_worker_num {}".format(
                        len(args.heter_workers.split(",")),
                        self.heter_worker_num)
                    self.heter_worker_endpoints = args.heter_workers
                else:
                    ports = get_ports(self.heter_worker_num,
                                      self.server_num + self.worker_num)
                    self.heter_worker_endpoints = ",".join(
                        ["127.0.0.1:" + str(x) for x in ports])
            else:
                assert args.heter_workers != "", "The setting of Parameter-Server heter mode must has heter_worker_num or heter_workers."
                self.heter_worker_endpoints = args.heter_workers
                self.heter_worker_num = len(
                    self.heter_worker_endpoints.split(","))

        # check local or user define
        self.server_endpoints_ips = [
            x.strip().split(":")[0] for x in self.server_endpoints.split(",")
        ]
        self.worker_endpoints_ips = [
            x.strip().split(":")[0] for x in self.worker_endpoints.split(",")
        ]
        self.server_endpoints_port = [
            x.strip().split(":")[1] for x in self.server_endpoints.split(",")
        ]
        self.worker_endpoints_port = [
            x.strip().split(":")[1] for x in self.worker_endpoints.split(",")
        ]
        self.node_ips = list(
            set(self.server_endpoints_ips + self.worker_endpoints_ips))
        if self.distribute_mode == DistributeMode.PS_HETER:
            self.heter_worker_endpoints_ips = [
                x.strip().split(":")[0]
                for x in self.heter_worker_endpoints.split(",")
            ]
            self.heter_worker_endpoints_port = [
                x.strip().split(":")[1]
                for x in self.heter_worker_endpoints.split(",")
            ]
            self.node_ips = list(
                set(self.node_ips + self.heter_worker_endpoints_ips))

        if len(set(self.node_ips)) == 1:
            self.is_local = True
            self.current_node_ip = self.node_ips[0]
        else:
            self.is_local = False
            pod_ip = os.getenv("POD_IP", None)
            if pod_ip == None:
                _, self.current_node_ip = get_host_name_ip()
            else:
                self.current_node_ip = pod_ip
            assert self.current_node_ip in self.node_ips, "Can't find your local ip {%s} in args.servers and args.workers ips: {%s}" \
                % (self.current_node_ip, self.node_ips)
        self.node_rank = self.node_ips.index(self.current_node_ip)

        logger.debug(
            "parsed from args: node_ips:{} current_node_ip:{} node_rank:{}".
            format(self.node_ips, self.current_node_ip, self.node_rank))

    def start_ps(self):
        cluster = Cluster(hdfs=None)
        server_rank = 0
        worker_rank = 0
        heter_worker_rank = 0

        for node_rank, ip in enumerate(self.node_ips):
            pod = Pod()
            pod.rank = node_rank
            pod.addr = ip
            for i in range(len(self.server_endpoints_ips)):
                if ip == self.server_endpoints_ips[i]:
                    server = Trainer()
                    server.endpoint = "%s:%s" % (ip,
                                                 self.server_endpoints_port[i])
                    server.rank = server_rank
                    server_rank += 1
                    pod.servers.append(server)
            for j in range(len(self.worker_endpoints_ips)):
                if ip == self.worker_endpoints_ips[j]:
                    worker = Trainer()
                    worker.endpoint = "%s:%s" % (ip,
                                                 self.worker_endpoints_port[j])
                    worker.rank = worker_rank
                    worker_rank += 1
                    pod.workers.append(worker)
            for k in range(len(self.heter_worker_endpoints_ips)):
                if ip == self.heter_worker_endpoints_ips[k]:
                    heter_worker = Trainer()
                    heter_worker.endpoint = "%s:%s" % (
                        ip, self.heter_worker_endpoints_port[k])
                    heter_worker.rank = heter_worker_rank
                    heter_worker_rank += 1
                    pod.heter_workers.append(heter_worker)

            cluster.pods.append(pod)

        pod = cluster.pods[self.node_rank]
        self.gloo_rendezvous_dir = tempfile.mkdtemp()

        # 3. subproces start
        self.procs = {"worker": [], "server": [], "heter_worker": []}
        self.cmds = {"worker": [], "server": [], "heter_worker": []}
        self.log_fns = {"worker": [], "server": [], "heter_worker": []}

        self.start_pod_server(self.args, pod)
        self.start_pod_worker(self.args, pod)
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        if self.distribute_mode == DistributeMode.PS_HETER:
            self.start_pod_heter_worker(self.args, pod)
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        logger.info(
            "Please check servers, workers and heter_worker logs in {}/workerlog.*, {}/serverlog.* and {}/heterlog.*".
            format(self.args.log_dir, self.args.log_dir, self.args.log_dir))

        # 4. wait for finish training
        if len(self.procs["worker"]) > 0:
            # if node has worker procs
            # only wait worker to finish here
            for i, proc in enumerate(self.procs["worker"]):
                self.procs["worker"][i].proc.wait()
                if len(self.log_fns["worker"]) > 0:
                    self.log_fns["worker"][i].close()
            logger.info(
                "all workers exit, going to finish parameter server and heter_worker."
            )
            if len(self.procs["heter_worker"]) > 0:
                for i, proc in enumerate(self.procs["heter_worker"]):
                    self.log_fns["heter_worker"][i].close()
                    self.procs["heter_worker"][i].proc.terminate()
                logger.info("all heter_worker are killed")

            if len(self.procs["server"]) > 0:
                for i, proc in enumerate(self.procs["server"]):
                    self.log_fns["server"][i].close()
                    self.procs["server"][i].proc.terminate()
                logger.info("all parameter server are killed")

        else:
            # if node has not worker procs
            # blocking training process
            if len(self.procs["server"]) > 0:
                for i, proc in enumerate(self.procs["server"]):
                    self.procs["server"][i].proc.wait()

            if len(self.procs["heter_worker"]) > 0:
                for i, proc in enumerate(self.procs["heter_worker"]):
                    self.procs["heter_worker"][i].proc.wait()

        if os.path.exists(self.gloo_rendezvous_dir):
            shutil.rmtree(self.gloo_rendezvous_dir)

    def start_pod_server(self, args, pod):
        default_env = os.environ.copy()
        current_env = copy.copy(default_env)
        current_env.pop("http_proxy", None)
        current_env.pop("https_proxy", None)
        for idx, cur_server in enumerate(pod.servers):
            proc_env = {
                "PADDLE_PSERVERS_IP_PORT_LIST": self.server_endpoints,
                "PADDLE_TRAINER_ENDPOINTS": self.worker_endpoints,
                "PADDLE_HETER_TRAINER_IP_PORT_LIST":
                self.heter_worker_endpoints,
                "PADDLE_PORT": cur_server.endpoint.split(":")[1],
                "TRAINING_ROLE": "PSERVER",
                "PADDLE_TRAINERS_NUM": str(self.worker_num),
                "POD_IP": cur_server.endpoint.split(":")[0],
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                "PADDLE_WITH_GLOO": str(os.getenv("PADDLE_WITH_GLOO", "0")),
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                "PADDLE_GLOO_RENDEZVOUS": "3",
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                "PADDLE_GLOO_FS_PATH": self.gloo_rendezvous_dir,
                "PADDLE_GLOO_HTTP_ENDPOINT": self.http_port
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            }
            current_env.update(proc_env)

            cmd = [sys.executable, "-u", args.training_script
                   ] + args.training_script_args
            self.cmds["server"].append(cmd)

            if idx == 0:
                logger.info(
                    "Local server start {} processes. First process distributed "
                    "environment info (Only For Debug): {}".format(
                        len(pod.servers),
                        pretty_print_envs(proc_env, ("Distributed Envs", "Value"
                                                     ))))

            if args.log_dir is not None:
                os.system("mkdir -p {}".format(args.log_dir))
                fn = open("%s/serverlog.%d" % (args.log_dir, idx), "w")
                self.log_fns["server"].append(fn)
                proc = subprocess.Popen(
                    cmd, env=current_env, stdout=fn, stderr=fn)
            else:
                proc = subprocess.Popen(cmd, env=current_env)

            tp = TrainerProc()
            tp.proc = proc
            tp.rank = cur_server.rank
            tp.local_rank = idx
            tp.log_fn = fn
            tp.log_offset = fn.tell() if fn else None
            tp.cmd = cmd

            self.procs["server"].append(tp)

    def start_pod_worker(self, args, pod):
        default_env = os.environ.copy()
        current_env = copy.copy(default_env)
        current_env.pop("http_proxy", None)
        current_env.pop("https_proxy", None)

        heter_device_num = 0
        device_list = []
        if fluid.core.is_compiled_with_cuda():
            device_list = get_gpus(args.gpus)
            heter_device_num = len(device_list)
        elif fluid.core.is_compiled_with_xpu():
            heter_device_num = fluid.core.get_xpu_device_count()
            device_list = [str(x) for x in range(0, heter_device_num)]

        for idx, cur_worker in enumerate(pod.workers):
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            device_id = "0" if heter_device_num == 0 else str(device_list[
                idx % heter_device_num])
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            proc_env = {
                "PADDLE_PSERVERS_IP_PORT_LIST": self.server_endpoints,
                "PADDLE_TRAINER_ENDPOINTS": self.worker_endpoints,
                "PADDLE_TRAINERS_NUM": str(self.worker_num),
                "PADDLE_HETER_TRAINER_IP_PORT_LIST":
                self.heter_worker_endpoints,
                "TRAINING_ROLE": "TRAINER",
                "PADDLE_TRAINER_ID": str(cur_worker.rank),
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                "PADDLE_WITH_GLOO": str(os.getenv("PADDLE_WITH_GLOO", "0")),
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                "PADDLE_GLOO_RENDEZVOUS": "3",
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                "PADDLE_GLOO_FS_PATH": self.gloo_rendezvous_dir,
                "FLAGS_selected_gpus": "0",
                "FLAGS_selected_xpus": "0",
                "CUDA_VISIBLE_DEVICES": device_id,
                "XPU_VISIBLE_DEVICES": device_id,
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                "PADDLE_GLOO_HTTP_ENDPOINT": self.http_port
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            }
            current_env.update(proc_env)

            cmd = [sys.executable, "-u", args.training_script
                   ] + args.training_script_args
            self.cmds["worker"].append(cmd)

            if idx == 0:
                logger.info(
                    "Local worker start {} processes. First process distributed "
                    "environment info (Only For Debug): {}".format(
                        len(pod.workers),
                        pretty_print_envs(proc_env, ("Distributed Envs", "Value"
                                                     ))))

            if args.log_dir is not None:
                os.system("mkdir -p {}".format(args.log_dir))
                fn = open("%s/workerlog.%d" % (args.log_dir, idx), "w")
                self.log_fns["worker"].append(fn)
                proc = subprocess.Popen(
                    cmd, env=current_env, stdout=fn, stderr=fn)
            else:
                proc = subprocess.Popen(cmd, env=current_env)

            tp = TrainerProc()
            tp.proc = proc
            tp.rank = cur_worker.rank
            tp.local_rank = idx
            tp.log_fn = fn
            tp.log_offset = fn.tell() if fn else None
            tp.cmd = cmd

            self.procs["worker"].append(tp)

    def start_pod_heter_worker(self, args, pod):
        default_env = os.environ.copy()
        current_env = copy.copy(default_env)
        current_env.pop("http_proxy", None)
        current_env.pop("https_proxy", None)

        heter_device_num = 0
        device_list = []
        if fluid.core.is_compiled_with_cuda():
            device_list = get_gpus(args.gpus)
            heter_device_num = len(device_list)
        elif fluid.core.is_compiled_with_xpu():
            heter_device_num = fluid.core.get_xpu_device_count()
            device_list = [str(x) for x in range(0, heter_device_num)]
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        if heter_device_num == 0:
            return
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        for idx, cur_heter_worker in enumerate(pod.heter_workers):
            device_id = str(device_list[idx % heter_device_num])
            proc_env = {
                "PADDLE_PSERVERS_IP_PORT_LIST": self.server_endpoints,
                "PADDLE_TRAINER_ENDPOINTS": self.worker_endpoints,
                "PADDLE_HETER_TRAINER_IP_PORT_LIST":
                self.heter_worker_endpoints,
                "PADDLE_PORT": cur_heter_worker.endpoint.split(":")[1],
                "TRAINING_ROLE": "HETER_TRAINER",
                "PADDLE_TRAINERS_NUM": str(self.worker_num),
                "POD_IP": cur_heter_worker.endpoint.split(":")[0],
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                "PADDLE_WITH_GLOO": str(os.getenv("PADDLE_WITH_GLOO", "0")),
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                "PADDLE_GLOO_RENDEZVOUS": "3",
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                "PADDLE_GLOO_FS_PATH": self.gloo_rendezvous_dir,
                "FLAGS_selected_gpus": "0",
                "FLAGS_selected_xpus": "0",
                "CUDA_VISIBLE_DEVICES": device_id,
                "XPU_VISIBLE_DEVICES": device_id,
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                "PADDLE_GLOO_HTTP_ENDPOINT": self.http_port
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            }
            current_env.update(proc_env)

            cmd = [sys.executable, "-u", args.training_script
                   ] + args.training_script_args
            self.cmds["heter_worker"].append(cmd)

            if idx == 0:
                logger.info(
                    "Local heter_worker start {} processes. First process distributed "
                    "environment info (Only For Debug): {}".format(
                        len(pod.heter_workers),
                        pretty_print_envs(proc_env, ("Distributed Envs", "Value"
                                                     ))))

            if args.log_dir is not None:
                os.system("mkdir -p {}".format(args.log_dir))
                fn = open("%s/heterlog.%d" % (args.log_dir, idx), "w")
                self.log_fns["heter_worker"].append(fn)
                proc = subprocess.Popen(
                    cmd, env=current_env, stdout=fn, stderr=fn)
            else:
                proc = subprocess.Popen(cmd, env=current_env)

            tp = TrainerProc()
            tp.proc = proc
            tp.rank = cur_heter_worker.rank
            tp.local_rank = idx
            tp.log_fn = fn
            tp.log_offset = fn.tell() if fn else None
            tp.cmd = cmd

            self.procs["heter_worker"].append(tp)